Epstein Videos (3427)

Video files seized from Jeffrey Epstein's properties and released by the U.S. Department of Justice under the Epstein Files Transparency Act. Includes surveillance footage, victim depositions, Ghislaine Maxwell interviews, a covert recording with house manager Alfredo Rodriguez, an interview with Steve Bannon, and Epstein's own audio recordings discussing Bill Gates, Ehud Barak, and Larry Summers. Videos with audio have been transcribed using OpenAI Whisper large-v3. Filter by dataset, duration, format, or search by EFTA ID. Download metadata (JSONL)

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Notable Videos

Covert video recording with Alfredo Rodriguez
Dataset 9 · M4V · 1:23:38
View Full Transcript
Interview with Steve Bannon
Dataset 10 · MOV · 1:57:46
View Full Transcript
Meeting with Ehud Barak and Larry Summers (audio only)
Dataset 10 · MOV · 3:26:56
View Full Transcript
Features Steven Pinker
Dataset 2 · AVI · 0:04 · 2002-02-20

Where are you taking me?

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Ghislaine Maxwell interview
Dataset 9 · MOV · 2:35 · 2020-05-27 · iPhone 7

In any of Mr. Epstein's properties, did you engage in sexual activities with any woman other than when you had three-way sexual activities with Mr. Epstein? I'm sorry, can you repeat the question? At any time in any of Mr. Epstein's properties, did you engage in sexual activities with any woman other than when you had three-way sexual activities with Mr. Epstein? I'm seeing an objection. No. Other than yourself and the blonde and brunette that you have identified as having been involved in three-way sexual activities with Mr. Epstein? Other than myself and the blonde and brunette that you have identified as having been involved in three-way sexual activities with Mr. Epstein? With whom did Mr. Epstein have sexual activities? I wasn't aware that he was having sexual activities with anyone when I was with him, other than myself. I want to be sure that I'm clear. Is it your testimony that... In the 1990s and 2000s, you were not aware that Mr. Epstein was having sexual activities with anyone other than yourself and the blonde and brunette on those few occasions when they were involved with you? That is my testimony. That is correct. In the 1990s and 2000s, you were not aware that Mr. Epstein was having sexual activities with anyone other than yourself and the blonde and brunette on those few occasions when they were involved with you? That is correct. What do you mean, Mr. Epstein? I'm not aware that Mr. Epstein was having sexual activities with you. Are you sure? I've never heard of that. I've heard that. I've heard about it. I've heard you. I've heard that. I've heard that. I've heard you. I've heard that. I've heard that. I've heard that. I've heard that. I've heard that.

Ghislaine Maxwell interview
Dataset 9 · MP4 · 2:26 · 2020-05-27

Were you ever involved in sexual activities in any of Mr. Epstein's properties other than Palm Beach that included the use of sex toys or any kind of mechanical or other device? Were you aware of the presence of sex toys or devices used in sexual activities in Mr. Epstein's Palm Beach house? Jack McCormick Foundation? No. Not that I recall. Okay. Were you aware that there were sex toys or devices used in sexual activities in Mr. Epstein's New York house? No. Were you aware that there were sex toys or devices used in sexual activities in Mr. Epstein's property in the Virgin Islands? Jack DeFore with Foundation? No. Were you aware that there were sex toys or devices used in sexual activities in Mr. Epstein's property in the Virgin Islands? Jack DeFore with Foundation? No. Do you know whether Mr. Epstein possessed sex toys or devices used in sexual activities in the Virgin Islands? Jack DeFore with Foundation? No. Did you ever assist Mr. Epstein in obtaining sex toys or devices used in sexual activities?

Ghislaine Maxwell interview
Dataset 9 · MOV · 0:34 · 2020-05-27 · iPhone 7

Did Mr. Epstein ever ask you to attempt to obtain or secure people to give him massages that were not professional masseuses? No. Do you remember somebody by the name of...

Ghislaine Maxwell interview
Dataset 9 · MP4 · 1:12 · 2016-07-22

I would have no knowledge. I have no knowledge of what you're asking me. Did you ever have conversations with anyone that were intended to convince them to engage in sexual activities with Mr. Epstein? MR. Objective form and foundation. MS. Yes. MR. This has been asked and answered in our previous deposition, by the way. MR. Did you... MS. Yes. MR. Did you ever tell anyone that Mr. Epstein was a scout for Victoria's Secret? MS. I don't recall that saying that.

Ghislaine Maxwell interview
Dataset 9 · MOV · 1:17 · 2016-07-22 · iPhone 7

Do you have any reason to believe that Mr. Epstein engaged in any sexual activity with Annie Farmer? I wouldn't know. Did you ever give a massage to anyone other than Mr. Epstein at any of Mr. Epstein's properties? First of all, I never said I gave Mr. Epstein a massage. I'll ask that question if you want, but I was focusing on people other than Mr. Epstein right now. I didn't give massages. Okay. Let's just tie that down. It is your testimony that you've never given anybody a massage? I have not given anyone a massage. You never gave Mr. Epstein a massage. Is that your testimony? That is my testimony. You never gave Annie Farmer a massage. Is that your testimony? I've never given Annie Farmer a massage.

Ghislaine Maxwell interview
Dataset 9 · M4V · 1:25 · 2016-04-22

to Epstein. It's instated that she can remember. It's instated that she brought, and then you'll see that it's redacted there, and the victim in this case. Let me ask my question. I've got a question pending right now. Are you testifying that you are unaware of any underage, under the age of 18, females coming to Jeffrey Epstein's home to perform massages? Objective form and a foundation. You need to straddle that question for a time zone, because when I was there, when I was present, at the time that I was present, the people that gave Jeffrey, men and women, who gave Jeffrey massages were adults, so over the age of 18. So never in your time at any of Jeffrey Epstein's homes were you present when a female under the age of 18 was there to give Jeffrey Epstein a massage? Objective form and a foundation. First of all, as I said, when I was present... No, it's a yes or no answer. No, it is not a yes or no answer. You can answer the question in full, but please provide a yes or no as an initial matter. I cannot answer a yes or no question to that question, because it's not bounded by any time, and it's not bounded by anything. It's entirely possible that I could have been in a room or even in the vicinity of Palm Beach when somebody came that I would not know. How would I know if somebody was in the house? There's no way I could know. Were you...

Dataset 9 · MP4 · 0:18 · 2019-09-18
Dataset 9 · MP4 · 0:21 · 2019-09-18
Ghislaine Maxwell interview
Dataset 9 · MOV · 0:29 · 2020-05-27 · iPhone 7

At 17 in Florida, so as far as I'm aware, a professional masseuse showed up for a massage. There is nothing inappropriate or incorrect about that. And your mischaracterization of it, I think, is unfortunate. How many teenagers did he have that were professional masseuses that worked in his home? Check the Foreman Foundation. How many? First of all, I'm not aware of teenagers who worked in his home.

Ghislaine Maxwell interview
Dataset 9 · MOV · 0:42 · 2020-05-27 · iPhone 7

Did Jeffrey Epstein have a scheme to recruit underage girls to use them for purposes of sexual massages? Objective, form, and foundation. Can you ask me again, please? Sure. Did Jeffrey Epstein have a scheme to recruit underage girls to use them for sexual massages? Objective, form, and foundation. Can you ask it a different way? Did Jeffrey Epstein have a scheme to recruit underage girls for sexual massages? Objective, form, and foundation. If you know. So, I don't know what you're talking about.

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Dataset 9 · MOV · 11:17 · 2021-11-02 · iPhone 8 · 📍 Lower Manhattan, NY

Hold and sell? Sure.

Dataset 9 · MOV · 1:09 · 2021-11-02 · iPhone 8 · 📍 Lower Manhattan, NY

G-tier, coming down, H-tier, rec area. What's this area called? Missouri area. Is this a SHU visiting area? No, this was for like a regular GP unit visiting. General population? Yeah, because this is a regular GP unit SHU. They've been in the SHU so they never took the regular visiting route. That would be the door leading to the set of cameras next to the elevator for 9-0.

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Dataset 9 · MP4 · 0:18 · 2019-09-18
Dataset 9 · M4V · 1:28

was a young artist working at Epstein's property in 1996 when she says Epstein and his partner, Ghislaine Maxwell, raped her. She says she first went to the NYPD and then to the FBI. It's a whistleblower of a case. I should be honored and congratulated. And instead, I was told, well, that's a lot of money because you weren't even raped. I wasn't raped because I didn't let him rape me. I'm not saying someone being raped is their fault. But I'm saying if Epstein tried to rape you, you could escape unless you were a little girl. Any adult woman could escape. I promise. Because I did. Okay? I escaped it. And the problem is that Brad's pretending that women have no ability or say in their own lives. Like, we're all just like, and everything just happens to us. That's not how women are. That's anti-female. That's anti-feminist. I'm not tolerating it.

Dataset 9 · VOB · 0:14
Dataset 9 · VOB · 17:54

We're police officers in Palm Beach County, Florida. The commissioner of the Florida Bureau of Law Enforcement, Ernie, of his duly consistent agents to witness Detective Joe Ricari, whereas complaint on oath in writing supported by affidavit of a credible witness or witness to witness to witness Detective Joe Ricari,

Palm Beach County police inspection of premises
Dataset 9 · VOB · 17:54
Dataset 9 · VOB · 17:54
Covert video recording with Alfredo Rodriguez
Dataset 9 · M4V · 1:23:38
View Full Transcript
Deposition from 2010-02-17, part 1
Dataset 9 · M4V · 1:30:09
View Full Transcript
Deposition from 2010-02-17, part 2
Dataset 9 · M4V · 1:55:12
View Full Transcript
Dataset 9 · M4V · 2:16

at 10 59 a.m on october 4th 2005 you have six same questions your message will be saved for one day next day's message friday september 9th at 11 6 a.m hey this is uh john your message will be saved for six days next saturday september at 10 8 a.m your message will be saved for friday september 23rd at 9 31 a.m your message will be saved for 20 days yesterday at 5 your message will be saved for 30 days next week today at 10 69 a.m yeah hi hello hi hello hello hello hello hello Yeah, fine. What's the call from? Um, right about here now.

Dataset 9 · M4V · 2:48

I'm talking about my watches, 4.13pm, this will be voicemail recordings from the office line of 5. New messages, to hear new messages, press 1, new messages, message 1, from St. Grimm, you need it, message 2. Hi, this is ******, my dad told me that you came down the house to come to the area, and I'm home now, so you can call me anytime you want to, thank you, bye. Thanks, today. At 1.22pm, to repeat the message, press 1, to save it, press 2, save, message 3. Hi, this is ******, you're at my house last night, I didn't really tell the whole truth about Jeffrey, because my parents are right there, I don't want you guys calling, I'm coming to my house, I will tell you over the phone the truth, so you guys, to save the trip, and I will tell you the truth, so call this number back, ******, my name is ******, thank you, bye. Thanks, today. At 1.31pm, to repeat the message, press 1, to save it, message 4, you need it, message 5, from St. Grimm, you need it, message 6. Hi, this is ******, I was listening for you about Jeffrey, his name is ******, he's been in there with him about a year. So, he's, you can call her on ******, and you can set an appointment, meet up with her, yeah, she doesn't want you at the house, but she said that you can call ******, okay, bye. 5, to go, 5, end of new message, you have no new message. Time I might watch now is 4.15, that was messages. the original message was and the two follow-up calls were

Interview with Alfredo Rodriguez
Dataset 9 · M4V · 13:22
View Full Transcript
Interview with Alfredo Rodriguez
Dataset 9 · M4V · 15:04
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Dataset 9 · VOB · 0:00
Dataset 9 · VOB · 0:00

Did you receive a subpoena that asked you

Dataset 9 · TS · Corrupted
Dataset 9 · TS · 10:04
Dataset 9 · VOB · 1:08
Deposition discussing pornography on computers
Dataset 9 · VOB · 0:01
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Dataset 9 · VOB · 2:15
Dataset 9 · VOB · 26:29:16
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Dataset 9 · M4V · 0:11

Bumper, are you, are you full? You're in the video. Let me take one of you two.

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Dataset 9 · AVI · Corrupted
Dataset 9 · AVI · Corrupted
Dataset 9 · AVI · 0:00
Dataset 9 · AVI · 0:33 · 2011-12-29

All you ladies pop your pussy like this Shake your body, don't stop, don't miss All you ladies pop your pussy like this Shake your body, don't stop, don't miss Just do it, do it, do it, do it, do it now Lick it good, suck this pussy just like you should Right now, lick it good, suck this pussy just like you should My neck, my back, lick my pussy and my crack My neck, my back, lick my pussy and my crack My neck, my back, lick my pussy and my crack

Dataset 9 · MOV · 0:35 · 2011-02-11 · iPhone 4 · 📍 Palm Beach, FL
Dataset 9 · MOV · 0:28 · 2010-12-04 · iPhone 4 · 📍 Miami, FL

Let's go back.

Dataset 9 · AVI · 0:15 · 2012-05-22 · iPhone 4S · 📍 Neuilly-sur-Seine, France

So close!

Dataset 9 · AVI · 3:20
Dataset 9 · AVI · 0:44 · 2011-09-02

I've heard people say that too much of anything is not good for you, baby. But I don't know about that. There's many times that we've loved and we've shared love and made love. It doesn't seem to me like it's enough. It's just not enough, baby. It's just not enough. Oh, baby. Love me. My darling, I can't get enough of your love, baby.

Dataset 9 · WMV · 0:30
Dataset 9 · AVI · 0:07
Dataset 9 · WMV · 0:30
Dataset 9 · AVI · 0:33
Dataset 9 · MOV · 0:06 · 2009-12-17 · iPhone 3GS
Dataset 9 · WMV · 1:59

Has this ever happened to you? Wow, that was really delicious. Yeah, this is a great place. Busting! No wonder I hate you! Wait, it just slipped out. Say goodbye to embarrassing moments like these forever with the Roberts Revolutionary Toot Tone. The amazing Roberts Toot Tone uses patented smart chip technology to turn embarrassing body noises into recognizable cell phone ringtones. And it's super easy to use. Just insert the comfortable self-lubricating Tootone capsule and let her rip. Wow, everything looks delicious. Yeah. Oh, excuse me. It's my broker. Wow, you have a broker. Thanks, Tootone. Do you smell egg salad? The revolutionary Robert's Tootone is perfect for the office. And that's our projected forecast for the fourth quarter. Sorry, I thought I turned that off. You're pretty popular this morning, Dee Dee. I know. Ever since breakfast, my phone's been ringing off the hook. Thank you, Toot Tone. Use it at parties, in an elevator, even at home. The Roberts Toot Tone really puts the fun in bodily function. Phone's for you! Oh, God, it stinks! Gotcha! Sick, man! the revolutionary robert's tooth tone and the new itunes featuring all your favorite songs just relax and let her ring

Dataset 9 · WMV · 0:21

Wait a minute.

Dataset 9 · M4V · 0:00
Dataset 9 · WMV · 1:18

There was once upon a time that to be a Republican in this area of the country felt a little bit like being Gary Cooper in High Noon, outnumbered in a big way. But I remember the story of a fellow who was running for office as a Republican and he was in a rural area and it wasn't known to be Republican and he stopped by a farm to do some campaigning and when the farmer heard he was a Republican his jaw dropped and he said, wait right here till I go get Ma. She's never seen a Republican before. So he got her, and the candidate looked around for a podium from which to give his speech, and the only thing he could find was a pile of that stuff that Bess Truman took 35 years trying to get Harry to call fertilizer. So he got up on the mound, and when they came back, he gave his speech. And at the end of it, the farmer said, that's the first time I ever heard a Republican speech. and the candidate said, that's the first time I've ever given a Republican speech from a Democratic platform.

Dataset 9 · MOV · Corrupted
Dataset 9 · MOV · Corrupted
Dataset 9 · MP4 · 0:18 · 2011-11-03
Dataset 9 · AVI · 2:20 · 2015-11-19 · iPhone 5s · 📍 Torrington, CT

Night prequels all over. Me too, but...

Dataset 9 · MOV · 0:12 · 2015-11-20 · iPhone 6 · 📍 Southbury, CT
Dataset 9 · MOV · 0:14 · 2015-11-20 · iPhone 6 · 📍 Southbury, CT

300 knots and it's up.

Dataset 9 · AVI · 0:54 · 2014-12-14 · iPhone 6

Take you wonder by one Over sideways and under

Dataset 9 · AVI · 0:48 · 2015-11-07 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · AVI · 0:31 · 2015-11-07 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · AVI · 0:25 · 2015-11-07 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · MOV · 0:07 · 2015-10-27 · iPhone 5s · 📍 Little St. James, USVI

Come on The smoke

Dataset 9 · AVI · 0:32 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · AVI · 0:59 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · MOV · 0:23 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · MOV · 0:19 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · MOV · 0:21 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI

ROAR!

Dataset 9 · MOV · 0:22 · 2015-10-28 · iPhone 5s · 📍 Little St. James, USVI
Dataset 9 · AVI · 0:29 · 2015-10-26 · iPhone 5s · 📍 Little St. James, USVI

Thank you for watching.

Dataset 9 · AVI · 0:20 · 2013-12-28 · iPhone 5

Very nice

Features Woody Allen
Dataset 9 · MOV · 0:15 · 2013-12-31 · iPhone 5s

It's the final language to build. Uh-huh. Let me put my helicopter on it. I know. Okay. Got it? We got it.

Features Woody Allen
Dataset 9 · AVI · 0:24 · 2013-12-31 · iPhone 5s

So you just have to hand me the land. That's your job. You want the phone, right? Just tell me. Okay. Sue, take a picture.

Dataset 9 · AVI · 0:28 · 2013-12-23

Tell Phil, the girl that marries him will be a very lucky girl. He's a real man, that's right. He's a regular person. He's a good person. And have a dozen kids.

Dataset 9 · AVI · 0:28 · 2013-12-24 · iPhone 5s

we climbed on top of that i didn't film damn it okay i'm filming now and i said it to you we climbed all over here that's right thank you for okay being cool Okay.

Dataset 9 · MOV · 0:17 · 2013-12-07 · iPhone 5 · 📍 Deerfield Beach, FL

This old man went to the doctor doctors. What's your problem? He says doctor. I want you to lower my sex drive He says at your age. It's all in your head. He's I know I want it lowered

Dataset 9 · MOV · 0:10 · 2013-12-07 · iPhone 5 · 📍 Deerfield Beach, FL

I care about the man who had a penis transplant. His hand rejected it. You want a little battery? Could you have a charger?

Dataset 9 · AVI · 0:37 · 2013-12-07 · iPhone 5 · 📍 Deerfield Beach, FL

This little boy got up during the night to go to the bathroom. And we passed his parents' bedroom. The door was open. So we looked in. And the mother was doing oral sex on the father. He's watching. And then he says to himself, And me, they took to the doctor because I sucked my thumb. Give me another one. You know why Jewish men get circumcised? Because Jewish women won't touch anything. Unless it's 20% or.

Dataset 9 · MOV · 0:13 · 2013-12-07 · iPhone 5 · 📍 Deerfield Beach, FL

You know the difference between a divorce and a circumcision? With a divorce, you get rid of the whole schmuck.

Dataset 9 · AVI · 0:40 · 2013-12-08 · iPhone 5s

It's Karina who does it.

Dataset 9 · M4V · 0:34 · 2013-09-06

Hey Jeffery, here's the solution. Take your cursor, hover over this thumbnail, hold the control key, click, and you'll get this menu. What you want to choose is download linked file ads, and then you can choose, this is also called a right click. So the same thing, if you were to hold two fingers on the trackpad and click, you get the same thing. I hope this answers your question.

Dataset 9 · MP4 · 0:22

This girl has been raped, and the man who took advantage of her is to be punished in public as a warning to others. In this country, thieves have their hands cut off, spies their tongues cut out, and rapists?

Dataset 9 · MOV · 0:10 · 2013-05-09 · iPhone 5 · 📍 Cape Town, South Africa
Dataset 9 · AVI · 0:16 · 2013-04-24 · iPhone 4 · 📍 Bal Harbour, FL

Sometimes it's easier said than done, but famed lawyer Alan Dershowitz is trying to bring that trust back to the attorney-client relationship with an app. He's going to tell us how. And then later on, the earning squad tackling everything from Boeing to Zynga will find out how you should be playing it all.

Dataset 9 · MOV · 0:04 · 2013-04-14 · iPhone 5

Thank you.

Features Bill Gates and Terje Rød-Larsen
Dataset 9 · M4V · 0:02 · 2013-03-20

Here I'll do it again hold your hand up watch so watch

Dataset 9 · MOV · 0:16 · 2013-03-09 · iPhone 4 · 📍 Tortola, BVI

You can see the starboard propeller slipping on the keyway. It could be the shaft is shot or it could just be the key, but most likely it's done damage to the shaft. You should not be able to spin this independently of the shaft like this.

Dataset 9 · AVI · 0:22 · 2015-11-10
Dataset 9 · AVI · 0:03 · 2015-12-29 · iPhone 6s
Dataset 9 · AVI · 0:14 · 2015-12-19 · iPhone 6
Dataset 9 · AVI · 9:03 · 2015-12-20 · iPhone 6s
Dataset 9 · MOV · 0:13 · 2014-01-15 · iPhone 5s
Dataset 9 · M4V · 0:04
Dataset 9 · AVI · 0:54 · 2013-12-16 · iPhone 5

You always have that one in your pocket. Yeah, it's over at some point soon. Nope, I've got this on video. I'm just going to send this to you every day. You can see it? Don't make me look away. It's so clean. It's so clean. You okay? Are you videotaping this? You can look at it. It's sizable. Yeah, but it's perfectly intact. There's no... Yeah, we got it out in one piece. How it looks like a pearl? Yep. Oh, is that what?

Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:00
Dataset 9 · AVI · 0:50 · 2013-11-07 · iPhone 5

Jeffrey, the handle that you're talking about, we can't do one on either end because it'll hit back in here. There's a mechanism right here, this arm. So the only way to do that would be to put the handle dead center. But either way, the right way to grab it is just like this. Just lift it. There was nothing difficult about it. Just put my thumb over here and lift. And as you can see over here, there's actually an angle here that helps guide this little piece upward. So once again, I wouldn't put a handle on it. We can if you want one in the center, but I would just grab it like that and you're done. Let me know what you think. Thanks.

Dataset 9 · AVI · 0:37 · 2013-11-08 · iPhone 5

Larry, this is the Air Gasper. I just saw that we just got in for the Global 5000, and I think it would work perfectly in your airplane. It actually happens to be the same dimension this way as the hole in your airplane. And as you can see here, hopefully you can see it, I'm twisting it tighter. There it is closed off, and then you just twist it like that, and it opens. I'd like to see about getting one of these and trying it out because I think it'll be perfect and be a direct replacement.

Dataset 9 · AVI · 2:59

So, what happened there? What do you mean? Well, why did you get all weird when I put my finger up your ass? Let's, uh, let's back up. Why did you put your finger in my ass? I don't know. We've been married for five years. You've never done that. Well, you know, people do that sometimes. Have you done it before? Yeah, a lot. really yeah sure I'm a nurse dummy I do it to my patients and today I was doing it and I thought hey maybe Louie would like this well I don't so please don't do it again okay okay so you don't want anything put up your ass but you want to stick your dick up mine wait a minute who said that what do you mean don't all guys fantasize about fucking women up the ass i don't really you don't no i never understood that i mean you're a millimeter away from the greatest place on earth why would you want to go when someone's dried out little asshole. Okay, you're kind of putting down my asshole here. I'm sure your asshole is fine. I've never even seen it. Yeah, well, you should. Why? Because I'm your wife. You should see my asshole. You should know everything about me. What if you needed to identify me? You mean, you mean if you have an accident where your teeth are destroyed but your asshole survives all right fine i'll take a look jesus well now never gonna happen

Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:00
Dataset 9 · MOV · 0:12 · 2013-01-20

Happy birthday to you, happy birthday to you, happy birthday dear Jeffrey, happy birthday to you, we love you!

Dataset 9 · AVI · 0:37 · 2013-01-14 · iPhone 5

Jeffrey, this is the two shade system. So the first one is semi-transparent, and I can stop it right here and have it be semi-transparent. But if I let it go all the way, the second shade comes down, as you can see it's traveling, and that's the blackout shade. And you can see it's pretty quick. So when I bring it up, if I just press it once it will bring up both, so you can see the lighter transparent in the blackout now it's transparent i can stop it or just let it keep on going

Dataset 9 · AVI · 0:54 · 2012-11-22 · iPhone 5
Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:16
Dataset 9 · AVI · 0:41
Dataset 9 · 3GP · 0:24 · 2012-07-04

We'll be back. Holy!

Dataset 9 · AVI · 0:32 · 2013-07-16 · iPhone 3GS · 📍 Umbertide, Italy
Dataset 9 · AVI · 1:20 · 2011-12-19

When I look around

Dataset 9 · AVI · 0:54 · 2011-11-11 · iPhone 4S · 📍 Norwood, MA
Dataset 9 · AVI · 0:45 · 2011-11-11 · iPhone 4S · 📍 Norwood, MA
Dataset 9 · AVI · 4:27

One of the most interesting words in the English language today is the word fuck. It is a magical word. Just by its sound it can describe pain, pleasure, hate and love. In language

Dataset 9 · AVI · 0:54 · 2011-10-13

Is that a faceplant? Ballistic, she is going ballistic. She's going back for more. Try to lie down. Oh, oh hey, hey now. Still playful? Oh! Sit on her! Don't think Grushki can say uncle yet. They're getting tangled. Oh, okay.

Dataset 9 · AVI · 0:21 · 2011-09-24 · iPhone 3GS · 📍 Paris 8e, France

Paris is mesmerizing. So pretty. Saturday morning, Place Vendôme. Paris is waiting for you to come back. Bye.

Dataset 9 · M4V · 0:05

That's too much chewing. Ow!

Dataset 9 · M4V · 0:31

Look at that little white one over there. Look, look, look, there's a wolf over there. I'm going to make a face video. I got this too.

Dataset 9 · AVI · 0:30 · 2011-02-15 · MacBookPro5,3

Thank you.

Dataset 9 · AVI · 4:27 · 2013-08-31

One of the most interesting words in the English language today is the word fuck. It is a magical word. Just by its sound it can describe pain, pleasure, hate and love. In language

Dataset 9 · AVI · 1:16

Do you hear that, honey? Yes, it's crazy.

Dataset 9 · AVI · 5:12

After four months of harassing phone calls, Heather and Courtney Kuykendall were afraid to answer their cell phones. The graphic, violent threats came at all hours, forcing the family to change their cell phone numbers. But even that didn't work. They said they were going, you know, to rape her. The Kuykendalls were featured on NBC's Today show.

Features Jeffrey Epstein
Dataset 9 · AVI · 0:47 · 2009-07-05

All righty, quick peek in here. The light should turn on. Oh, okay, okay. And that one is in here? All right, I got to open that door. All right. What the heck?

Dataset 9 · AVI · 0:27 · 2011-01-10
Dataset 9 · AVI · 2:35

words. Your name is Roger, yes? Roger. Ah, that's your name? Roger. Good. And what do you do, Roger? I'm a financial consultant. Consultant, eh? Roger, yes. Yeah, terrific. And, Roger, how's business at the moment? Not bad, thank you. Been a bit quiet lately. How do you mean lately? Since the war, been a bit quiet. Fair enough. Okay, Roger, your special subject tonight is the economies of the European community. Your time starts now. best of luck. Thank you. How much does Greece owe, Roger? $367 billion. Correct. And who do they owe it to? Mostly to the other European economies. Correct. How much does Ireland owe? $865 billion. Correct. And who do they owe it to? Other European economies, mostly. Correct. How much does Spain and Italy owe? $1 trillion each. Correct. Who to? Mainly France, Britain and Germany. Correct. And How are Germany, France and Britain going, Roger? Well, they're struggling a bit, aren't they? Correct. Why? Because they've lent all these vast amounts of money to other European economies that can't possibly pay them back. Correct. So what are they going to do? They're going to have to bail them out. Correct. Where are they getting the money to do that, Roger? That's a good question. I don't know the answer to that one. How much does Portugal owe? Hang on a minute. What was the answer to that earlier question? Just keep answering the questions, Roger. Roger, where is Portugal going to get the money it owes to Germany if Germany can't get back the money that it lent to Italy? Just a minute. What was the answer to the previous question? The question was, how can broke economies lend money to other broke economies who haven't got any money because they can't pay back the money the broke economy lent to the other broke economy and shouldn't have lent it to them in the first place because the broke economy can't pay it back? You're wasting very valuable time, Roger. How much money does Spain owe to Italy? $41 billion, but where are they going to get it? Correct. What does Italy owe to Spain? 27 billion. But they haven't got it. They're broke. Correct. How can they pay each other if neither of them has any money? They're going to get a bailout, aren't they? Correct. And where's the money coming from for the bailout? That's what I'm asking you. Correct. Why are people selling the European currency and buying the US dollar? Because the US economy is so much stronger than the European economy. Correct. Why is that, Roger? Because it's owned by China. Correct, and very well done. And after that round, you've lost a million dollars. I've lost a million dollars? I thought you said well done. Yes, well done. You've only lost a million dollars. That's an extraordinary performance, Roger. I've only lost a million dollars. Very well done. And that's quite good, is it? Excellent. Sell everything immediately. Quickly.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

Alright, so coming through the front door, to the right is the kitchen, which does have a gas range. Not all of them do, only the larger two beds. This is laundry setup, so laundry room, utilities. The left is the den immediately.

Dataset 9 · AVI · 0:42 · 2015-04-04 · iPhone 6

So the left is the den immediately, the controls are here.

Dataset 9 · AVI · 0:37 · 2015-04-04 · iPhone 6

And this is the construction below, so this does face the construction view. This is the green space. And that's downtown Nashville. Downtown. The construction, which will, again, rise up to a few floors below.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

closet. We finished the bedroom.

Dataset 9 · MOV · 0:15 · 2015-04-04 · iPhone 6
Dataset 9 · AVI · 0:26 · 2015-04-04 · iPhone 6

Second bathroom that has the bathtub, very big bathtub, very deep, see?

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

Right walking in, a ton of light, natural light. To your right immediately are the utilities, the washer-dryer space, which is quite massive, and the coat closet. Straight to the den, or office, and to the left is the half-bath with the rooms. Good choice.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

good choice so you have a balcony another closet another closet has the sound system second bed and it has the shades installed that are remote we have no construction on this side that will be a boutique hotel that's not going to be very tall and these

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

Second bed, and it has the shades installed that are remote. We have no construction on this side. That will be a boutique hotel that's not going to be very tall. And these views will never go away. Never long time away. Bathroom, closets.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

So this would be the master bath, it goes right out, half door to the master bedroom. Incredible views, naturally. Really high ceilings. Shades are in, closets are in.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

Look out to the super bright space. You can feel the warmth. This is ridiculous. No construction on this side, just visuals.

Dataset 9 · AVI · 0:54 · 2015-04-04 · iPhone 6

Entry hall, bathroom, straight into the main living area. The kitchen is convection. Gas burner. Basically a very beautiful cooking space. I know what you're going to say. And the views. The patio can be seen from the top.

Dataset 9 · AVI · 0:39 · 2015-04-04 · iPhone 6

and the views. The patio continues from the study to up here. All the ceilings and through here would be the master.

Dataset 9 · MOV · 0:20 · 2015-04-04 · iPhone 6
Dataset 9 · AVI · 1:48

You had a normal life before that, and then suddenly you come out of anesthesia and then you notice that life will no longer be the same. How do you react to that? Yes, first with a lot of unbelief. How do you believe is the right word? Excuse me, what? How do you believe is the right word? What is happening here? Pardon? That was my first warning. I thought, that can't be. That... Excuse me. Excuse me. Excuse me, sir. So... You're trying to... You're trying to trick me. Sorry, sorry, excuse me. I'm really sorry. Excuse me, lady. That also means that, for example, sexuality becomes a big problem. My boyfriend just made it up. I don't blame him for that. Plus the fact that if you deal with sex, It's not only in the physics of the world, but also in the love of words.

Dataset 9 · MOV · 0:06 · 2011-05-14
Dataset 9 · MOV · 0:17 · 1970-01-01
Dataset 9 · MOV · 0:17 · 1970-01-01
Dataset 9 · AVI · 1:11 · 2011-07-28

Thank you.

Dataset 9 · AVI · 0:36 · 2011-08-21 · iPad 2 · 📍 Little St. James, USVI
Dataset 9 · AVI · 0:21 · 2014-02-13 · iPhone 5s · 📍 Sergiyev Posad, Russia

Oh, I didn't take it off. Dusha! Dusha! Dusha! Dusha! Dusha! Good night. Sveta, get dressed.

Dataset 9 · AVI
Dataset 9 · AVI · 0:24 · 2011-08-28
Dataset 9 · MOV
Dataset 9 · AVI · 0:22 · 2014-02-05 · iPhone 5

Jeffrey, that's the original image, the 18 inches across, one, two, three, four spots and 18 inches here. I just think that this line over here should be moved outward of here. You had it originally drawn here. This would be better and then I'll figure out how we're going to cut this out on the seam. Please just send me an email back approving it. Thank you.

Dataset 9 · AVI · 0:30 · 2011-10-17
Dataset 9 · MOV · 0:23 · 2011-11-14 · iPad 2

Motor court, E to be placed, center line, right off the center line.

Dataset 9 · AVI · 0:05 · 2011-12-27

Hi, Happy New Year to all of you. I wish you the best.

Dataset 9 · MOV · 0:08 · 2011-12-30 · iPhone 4S · 📍 Phuket, Thailand

I don't think it feels right, but I'll give you yours.

Dataset 9 · MOV · 0:10 · 2012-01-02 · iPhone 4S · 📍 Bangkok, Thailand

See, I told you, you have to follow. Huh? Look at the beautiful entry. Beautiful. Entry.

Dataset 9 · AVI · 0:42 · 2012-02-17 · iPhone 3GS

Snow, snowing in Tokyo. It is extremely beautiful. It is so, so beautiful. Oh, what is this one? I'm still like amazed, getting here in Tokyo. Yeah, great.

Dataset 9 · M4V · 0:17

Thank you for watching!

Dataset 9 · MP4 · 2:12 · 1997-09-13
Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:17

Barry, I want that damn money. I don't want you dancing. I want the damn money. I don't want any problem. I've had it with you. You hear me? Yes, I hear you. You don't take me seriously. No, I don't. Well, you better start taking me serious now. Okay. Okay, because I'm not fooling around.

Dataset 9 · M4V · 0:23

You might be able to see with Mr. Vellus.

Dataset 9 · AVI · 0:24

You live here? Yes. Well, maybe you know what a zombie is. When a person dies and is buried, it seems there are certain voodoo priests who have the power to bring him back to life. Horrible. It's worse than horrible, because a zombie has no will of his own. You see them sometimes, walking around blindly with dead eyes, following orders, not knowing what they do, not caring. You mean like Democrats?

Dataset 9 · AVI · 0:49 · 2012-07-12 · iPhone 4S · 📍 Paris 8e, France

It's common space.

Dataset 9 · AVI · 0:03 · 2012-08-12

Amen.

Dataset 9 · MOV · 0:11 · 2012-08-13 · iPhone 4S
Dataset 9 · MOV · 0:18 · 2012-08-15 · iPhone 4S

This is the place where we go for lunch, actually at night it's a club. I've never seen so many beautiful girls in one place than here.

Dataset 9 · MOV · 0:15 · 2012-08-16 · iPhone 4S

Okay, this is the spice market, but wait for the surprise, because the surprise will come, not right now.

Dataset 9 · MOV · 0:15 · 2012-08-16 · iPhone 4S

Okay, this is the spice market, but wait for the surprise, because the surprise will come, not right now.

Dataset 9 · MOV · 0:10 · 2012-08-16 · iPhone 4S

We're coming, we're getting closer to the surprise.

Dataset 9 · AVI · 0:40 · 2012-09-04 · iPhone 4 · 📍 Prague, Czech Republic
Dataset 9 · AVI · 0:04 · 2012-11-07
Dataset 9 · AVI · 0:01 · 2012-11-07
Dataset 9 · AVI · 0:05 · 2012-11-07
Dataset 9 · AVI · 2:01 · 2016-05-12 · iPhone 6s

He's going to be back on one day.

Dataset 9 · AVI · 1:55 · 2016-02-02
Dataset 9 · AVI · 1:30 · 2016-03-04 · iPhone 5s
Dataset 9 · AVI · 1:27 · 2016-03-04 · iPhone 5s
Dataset 9 · AVI · 0:23 · 2016-02-19 · iPhone 5s
Dataset 9 · AVI · 0:25 · 2016-02-19 · iPhone 5s
Dataset 9 · AVI · 0:25 · 2016-02-17 · iPhone 5s
Dataset 9 · AVI · 2:49 · 2016-02-17 · iPhone 5s
Dataset 9 · AVI · 0:54 · 2012-08-01 · iPhone 4S

Come on, turtle. I want to see its tongue out a bit. That's funny. Gyps. Hold on. It's hysterical. Look at that. Look how funny that is, everybody. Oh, that's not nice. She doesn't even like it. Listen to the noise she's making. Can you hear the noise? She's making the boy or the girl? I don't know, but someone's like... Oh, it's the boy, of course. Oh, it didn't look much fun. You know you

Dataset 9 · AVI · 0:06 · 2014-06-08
Dataset 9 · AVI · 0:40 · 2016-02-03 · iPhone 6 Plus · 📍 Midtown East, NY

Everyone's missing so we're going to see blueberries here. Blueberry! Blueberry! Hello darling! What are you doing? You're all... Hey! Hey! Yes, are you going to come downstairs with me now? I'm going to go take you and snow with you. Your mommy's not here so you can do whatever I want.

Dataset 9 · AVI · 1:00 · 2016-04-02 · iPhone 6 Plus

Oh boy. Oh my god, look at it, yeah. Oh, you can watch it on that? Yeah. You taking the movie? Yeah. Man, now we're going to find a bucket. Oh boy. We're going to stop. Maybe I won't show this other one. Yeah, stop it. Yeah. I don't know what I'm saying. I'm going to put the one on the top. We've got to find a bucket. You can dump that little one on the bucket. Is it tight in there? Fuck, it's nowhere. Damn! Is it over tight in there? Yeah, he gone, he gone stretch it out. You know? He gone stretch it out. Oh, like put something in there and have a hit? Yeah.

Dataset 9 · MOV · 0:03 · 2013-11-12 · iPhone 5
Dataset 9 · MOV · 0:02 · 2014-02-15 · iPhone 5s
Dataset 9 · AVI · 0:14 · 2014-02-21 · iPhone 5s
Dataset 9 · AVI · 0:32 · 2013-07-16 · iPhone 3GS · 📍 Umbertide, Italy
Dataset 9 · AVI · 0:28 · 2013-07-21 · iPhone 4 · 📍 Lower Manhattan, NY

Mine's next to my fridge. I don't have one. You can do laundry and fridge at the same time. You're ahead of the game. I don't know about that. I live in Woodside. Okay. I own a lot of Chauncey. I just sold it. Oh, cool. Yeah, corner of Chauncey and Lewis. We might even go out there. Yeah. I was in a basketball game. Yeah, I just sold it. Yeah. Asking price is $2.95.

Dataset 9 · AVI · 0:18 · 2014-08-29 · iPhone 5
Dataset 9 · M4V · 0:00
Dataset 9 · MOV · 0:16 · 2014-12-03 · iPhone 6 · 📍 Midtown East, NY
Dataset 9 · AVI · 1:54 · 2015-01-12

Hello, Mr. Epstein. My name is Vladimir Geshtenbein, born in Russia, currently residing in Zurich. At the age of 10, I was one of the first students to be admitted to Talenta, a school for the highly gifted. You would have to pass an IQ test. 130 was the minimum to be accepted. A few years later, while in high school, I decided to leave one year early and prepare for the entrance exams to the ETHZ in self-study. The ETH CET is considered the best university in mainland Europe. I have successfully passed those exams, saved one year and commenced studies in physics. I am a highly effective learner and one of my core strengths is quick comprehension and application. While studying I have discovered poker. I saw this opportunity and took it by heart. My poker career was stellar. Within two years I have studied, developed and applied the best strategy available and rose to the top. Through applying mathematical and statistical concepts, strong logic and the analysis of data provided, I became the biggest winner on the site I played on. At the age of 23 I have cashed out over 1 million dollars and win many major live tournaments around the world. I even started hosting workshops for students to learn from me. I realized that with full dedication and motivation, you can reach anything in life. Despite my success in poker, I don't want to devote my life to a card game. I want to bring something of value, something positive into this world. That's why I'm looking for new opportunities. Thank you for your consideration.

Dataset 9 · AVI · 0:14 · 2015-02-04 · iPhone 5s
Dataset 9 · AVI · 0:30 · 2015-02-06 · iPhone 5s

Thank you for watching.

Dataset 9 · MOV · 0:06 · 2015-04-26
Dataset 9 · MOV · 0:14 · 2014-12-05 · iPhone 6
Dataset 9 · MOV · 0:18 · 2014-12-05 · iPhone 6

So, there are kits. There's an installation program.

Dataset 9 · M4V · 0:03

I got into aviation.

Dataset 9 · M4V · 0:03

The Lord.

Voice of Eva Dubin
Dataset 9 · M4V · 0:06

How did his son die? He had leukemia. What? He had leukemia.

Dataset 9 · AVI · 0:21 · 2015-08-28 · iPhone 5s
Dataset 9 · AVI · 0:26 · 2015-08-28 · iPhone 5s
Dataset 9 · AVI · 1:13 · 2015-08-28 · iPhone 5s
Dataset 9 · MOV · 0:15 · 2015-08-28

Easy.

Dataset 9 · M4V · 0:00
Dataset 9 · AVI · 0:44 · 2014-07-04 · iPhone 5

That's the red, white and blue. That's the closest they can get to the flag. Yeah, in America. Shout out to the flares.

Dataset 9 · M4V · 0:00
Dataset 9 · AVI · 0:36 · 2014-07-10 · iPhone 5s
Dataset 9 · AVI · 0:04 · 2014-09-29 · iPhone 5s

Oh

Dataset 9 · AVI · 0:20 · 2014-09-26 · iPhone 5s
Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:02
Dataset 9 · AVI · 0:10 · 2015-06-23 · iPhone 6 · 📍 Athens, Greece

Need another

Glenn Dubin in Greece, voice of Eva Dubin
Dataset 9 · AVI · 0:35 · 2015-06-23 · iPhone 6 · 📍 Athens, Greece

The Erechtheion The Parthenon The Greek flag Northern part of Athens

Dataset 9 · MOV · 0:12 · 2015-06-21 · iPhone 5s
Dataset 9 · AVI · 0:47 · 2015-03-01 · iPhone 5s

I can do no wrong My noggin Sugar and spuds Me and my

Dataset 9 · AVI · 0:54 · 2015-03-01 · iPhone 5s

Let's lay down.

Dataset 9 · M4V · 0:00
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Dataset 9 · M4V · 0:00
Dataset 9 · MP4 · 0:42 · 2015-09-13

Ba-ba-ba, Shana Tova Ba-ba-ba, Shana Tova Ba-ba-ba, Shana Tova Ba-ba-ba, Shana Tova Ba-ba-ba, Shana Tova Kulam otlim por esharim Achik efer ashi Shana Tova Ba-ba-ba, Shana Tova Kul lanu po, itafu achri yom Priyut ve'aava she'i elanu oton Shana Tova, Ba-ba, Shana Tova Shana Tova Shana Tova Shana Tova

Dataset 9 · AVI · 2:04 · 2015-09-27

Hi, how are you? I'm good, how are you? Good, good.

Dataset 9 · M4V · 0:00
Dataset 9 · MOV · 0:09 · 2015-10-03 · iPhone 6

Thank you.

Alan Dershowitz?
Dataset 9 · MOV · 0:09 · 2015-10-03 · iPhone 6

So, we've got a new color for you. Who wants a new color? Uh, sort of pretty.

Dataset 9 · M4V · 0:00
Dataset 9 · M4V · 0:00
Dataset 9 · MOV · 0:10 · 2014-04-09

NOOOOOOOO-

Dataset 9 · AVI · 0:11 · 2014-07-08 · iPhone 5 · 📍 Fiskebäckskil, Sweden

Thanks for watching!

Dataset 9 · AVI · 0:19 · 2014-07-08 · iPhone 5 · 📍 Fiskebäckskil, Sweden

Where am I going? Midnight swim.

Dataset 9 · AVI · 0:21 · 2014-07-08 · iPhone 5 · 📍 Fiskebäckskil, Sweden

I got BB.

Dataset 9 · MOV · 0:05 · 2014-07-18 · iPhone 5s · 📍 Midtown East, NY
Dataset 9 · AVI · 0:14 · 2014-07-11 · iPhone 5 · 📍 Lysekil, Sweden
Dataset 9 · AVI · 0:40 · 2014-07-14 · iPhone 5
Dataset 9 · MOV · 0:02 · 2014-10-01 · iPhone 5s
Dataset 9 · M4V · 0:09

I love you I love you too

Dataset 9 · M4V · 1:00

Thank you.

Dataset 9 · AVI · 0:11 · 2015-06-28 · iPhone 6 · 📍 Venice, Italy
Dataset 9 · M4V · 0:00
Dataset 9 · MOV · 0:07 · 2015-06-18 · iPhone 6 · 📍 Lexington, VA
Dataset 9 · M4V · 0:00
Voice of Eva Dubin
Dataset 9 · AVI · 0:21 · 2015-06-30 · iPhone 6 · 📍 Fiskebäckskil, Sweden

Good morning from Sweden

Features Glenn Dubin
Dataset 9 · AVI · 0:21 · 2015-07-01 · iPhone 6 · 📍 Fiskebäckskil, Sweden
Dataset 9 · AVI · 0:30 · 2015-01-21 · iPhone 6 · 📍 Upper East Side, NY
Dataset 9 · AVI · 0:21 · 2014-05-11 · iPhone 5c · 📍 Bald Head Island, NC
Dataset 9 · AVI · 0:26 · 2014-05-19
Audio only
Dataset 9 · MP4 · 1:43 · 1999-04-21
Audio only
Dataset 9 · MP4 · 2:12 · 2011-03-04
Dataset 9 · MP4 · 1:37 · 2015-06-06
Audio only
Dataset 9 · MP4 · 3:53 · 2001-08-13
Dataset 9 · M4V · 0:00
Dataset 9 · AVI · 2:04
Dataset 9 · M4V · 0:01
Dataset 9 · AVI · 0:54 · 2014-05-23
Dataset 9 · M4V · 0:00
Dataset 9 · AVI · 3:25
Dataset 9 · AVI · 0:20 · 2014-08-22 · iPhone 5s
Dataset 9 · AVI · 0:46 · 2015-02-21 · iPhone 6 Plus · 📍 Midtown East, NY

Look at the snow. I don't know if you can see the snow. It's like a snow globe. See it go past the camera? It's incredible. Look at that. It's gorgeous. Look at Fifth Avenue. Look at the streets. Look at the rooftops. It's so beautiful, wherever you are, enjoy this incredible Saturday, it's beautiful here today, that's Central Park, believe it or not, love you, enjoy your weather.

Dataset 9 · AVI · 0:18 · 2015-08-09 · iPhone 6

I'll see you in the next video, bye!

Dataset 9 · AVI · 0:19 · 2015-08-12 · iPhone 6 Plus · 📍 Little St. James, USVI
Dataset 9 · MOV · 0:16 · 2015-12-01 · iPhone 6
Dataset 9 · AVI · 0:32 · 2015-11-25 · iPhone 6s
Dataset 9 · MOV · 0:17 · 2015-11-28 · iPhone 6s
Dataset 9 · MOV · 0:25 · 2015-11-28 · iPhone 6s
Dataset 9 · MOV · 0:25 · 2015-11-28 · iPhone 6s
Dataset 9 · MP4 · 3:00:27
Dataset 9 · MP4 · 3:51:29
Dataset 9 · MP4 · 4:08:31
Dataset 9 · MP4 · 2:55:58
Dataset 9 · MP4 · 4:43:40
Dataset 9 · MP4 · 11:13:13
Dataset 9 · MP4 · 10:16:43
Dataset 9 · MP4 · 5:07:45
Dataset 9 · MP4 · 14:22:24
Dataset 9 · MP4 · 4:29:48
Dataset 9 · MP4 · 4:51:47
Dataset 9 · MP4 · 4:34:45
Dataset 9 · MP4 · 4:29:49
Dataset 9 · MP4 · 4:40:37
Dataset 9 · MP4 · 4:53:36
Dataset 9 · MP4 · 29:21
Dataset 9 · MP4 · 4:33:04
Dataset 9 · MP4 · 4:42:56
Dataset 9 · MP4 · 28:21
Dataset 9 · MP4 · 4:33:30
Dataset 9 · MP4 · 3:26:29
Dataset 9 · MP4 · 4:42:31
Dataset 9 · MP4 · 4:50:50
Dataset 9 · MP4 · 22:45
Dataset 9 · MP4 · 3:13:44
Dataset 9 · MP4 · 5:06:12
Dataset 9 · MP4 · 4:50:23
Dataset 9 · MP4 · 4:44:27
Dataset 9 · MP4 · 4:47:39
Dataset 9 · MP4 · 4:31:15
Dataset 9 · MP4 · 4:44:46
Dataset 9 · MP4 · 4:46:34
Dataset 9 · MP4 · 4:38:43
Dataset 9 · MP4 · 4:30:39
Dataset 9 · MP4 · 4:33:58
Dataset 9 · MP4 · 45:17
Dataset 9 · MP4 · 4:49:15
Dataset 9 · MP4 · 4:41:17
Dataset 9 · MP4 · 4:34:32
Dataset 9 · MP4 · 4:21:58
Dataset 9 · MP4 · 4:30:31
Dataset 9 · MP4 · 1:02:22
Dataset 9 · MP4 · 4:57:20
Dataset 9 · MP4 · 4:51:22
Dataset 9 · MP4 · 4:44:20
Dataset 9 · MP4 · 4:51:52
Dataset 9 · MP4 · 4:35:02
Dataset 9 · WMV · 4:40

Kampa also says he was surprised Spain's credit rating was downgraded today by Standard & Poor's. Carol, back to you. Thanks, Gigi. Well, strike three for financial reg reform as all 41 Senate Republicans voted again to block debate. So that's three days in a row. Even so, some of Wall Street's heavyweights say reform is needed. And that includes JPMorgan Chick, the firm which repaid $25 billion in federal aid last year, remained profitable throughout the financial crisis. And last quarter, the bank generated three quarters of first quarter.

Palm Beach County police inspection of premises
Dataset 9 · WMV · 1:14:51
Dataset 9 · WMV · Corrupted
Dataset 9 · WMV · Corrupted
Dataset 9 · MP4 · 26:00 · 2020-09-21
Dataset 9 · MP4 · 2:00 · 2020-09-21
Dataset 9 · MP4 · 11:34

Hold on, hold on. Great. No. Last time we heard the steps weren't pretty. Put a little space between you as you go down on the steps. Don't everyone get on the steps.

Dataset 9 · WMV · 1:40

Does the mailbox have a letter on it? On the side of it. There's two call boxes. Two driveways. It's like a guest house. It's pink in color. Looks like there's three one car garages, a side entrance door. 358. Large statue structure. I think it's good to go.

Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:01
Dataset 10 · MOV · 0:02 · 2019-03-08 · iPhone X
Dataset 10 · MOV · 0:02 · 2019-03-08 · iPhone X
Dataset 10 · MP4 · 10:36 · 2018-02-03
Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:00
Dataset 10 · MOV · 0:07 · 2018-12-28

you

Dataset 10 · M4V · 0:00
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Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:03 · 2019-03-29 · iPhone XS
Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:00
Dataset 10 · M4V · 0:00
Interview with Steve Bannon
Dataset 10 · MOV · 1:57:46 · 2019-04-30
View Full Transcript
Dataset 10 · MP4 · 0:15 · 2017-09-22
Dataset 10 · MP4 · 0:14 · 2017-09-22
Dataset 10 · 3GP · 0:10 · 2012-06-24
Dataset 10 · MOV · 0:52 · 2016-12-24 · iPhone 6

I don't know what you're talking about. I don't know what you're talking about.

Dataset 10 · MOV · 1:15 · 2018-09-24

Well, well, look at this, look at this, well, you know, with background music, there, go for it, give yourself this, give yourself this, look, let's go, let's go, 5.27, look at the televidentes, there, the televidentes, let's go, go for it, go for it, there, with music, Leisa, you're the only one, Look at that thing! Look at that thing! Look at that thing! Let's go to hell! Hey! Hey! What do you think of that? Look at him! Look at him live! Don't crash! Don't crash!

Dataset 10 · MOV · 4:25 · 2019-01-01
Dataset 10 · MOV · 0:41 · 2019-05-25
Dataset 10 · MOV · 3:35 · 2018-11-29

You have your crazy axis and your hot axis. Hot is, as usual, measured from 0 to 10. We're all familiar with that. Crazy is measured from 4 to 10 because, of course, there's no such thing as a woman who's not at least a 4 crazy. So you've got 4 to 10. This is your hot crazy line, right?

Dataset 10 · MOV · 0:24 · 2016-07-10 · iPhone 6
Dataset 10 · MOV · 1:46 · 2016-08-03 · iPhone 6
Dataset 10 · MOV · 1:08 · 2016-08-03 · iPhone 6
Dataset 10 · MOV · 0:15 · 2019-06-21
Dataset 10 · MOV · 0:11 · 2019-06-21

Right, that's what it is.

Dataset 10 · MOV · 0:37 · 2015-04-04 · iPhone 6

And this is the construction below, so this does face the construction view. This is the green space. And that's downtown Nashville. Downtown. The construction, which will, again, rise up to a few floors below.

Dataset 10 · MOV · 1:15 · 2015-04-04 · iPhone 6

Alright, so coming through the front door, to the right is the kitchen, which does have a gas range. Not all of them do, only the larger two beds. This is laundry setup, so laundry room, utilities, to the left is the den immediately, and here Mm-hmm.

Dataset 10 · MOV · 1:07 · 2015-04-04 · iPhone 6

To the left is the guest room and then to the right is the master which does have a pocket door there. This would be the wall that covers down here to there because this is structural and the planks run with the wall so it's just easier to lie down. some new ones, and we rent this speaker system there, which could be raised. Audio, the construction.

Dataset 10 · MP4 · 1:05 · 2019-05-12

People are starting to figure out the scam that is neoconservatism. One news account this week explained that President Trump has begun to wonder about his National Security Advisor, John Bolton. Bolton, you'll remember, led the cheering for the Iraq invasion in 2003. He supported the overthrow of Gaddafi in Libya a couple years later. He pushed for preemptive strikes on Iran and North Korea. He called Russia's actions in the United States in 2016 an active war. He agreed with Bill Kristol on that. He's advocated for regime change in Venezuela, Cuba, Nicaragua. Trump, of course, ran against all of that. Apparently, the president has told people around him this week that John Bolton wants to get him, quote, into a war. Now, we're not in the habit of fact-checking other people's news stories, but in this case, we can confirm that conclusively. Yes, Mr. President, John Bolton does want to get you into a war. It's all he wants. It's what he dreams about. Many wars, if possible. And if you're not careful, he'll do it.

Dataset 10 · MOV · 0:59 · 2015-11-12 · iPhone 6

I like this, it has like a special center for shoes. Yeah. So the other one is not renovated and this one is not, right? Correct. Oh, this is bigger, yeah. And here is no light, right? So you have plug-on light here that works with this switch here. And you also get a lot of light here. Yeah. Thank you so much!

Dataset 10 · MOV · 2:46 · 2015-03-11 · iPhone 6

in all 50 states. It serves more than 60% of the population. Founder and CEO Cyrus Masumi is with me now. So Cyrus, I've heard this described as an open table for doctor appointments. That's pretty much what it is, right? Well, yes, exactly. We're at the beginning of a better healthcare experience. So people can do everything on ZocDoc from finding doctors who accept their insurance to reading reviews, to booking appointments, to even filling out their medical history forms and being reminded about doing all the wellness. But it saves all this time. I mean, you can fill out, you just talked about the paperwork. You can fill that out before you even show up at the doctor's office. So you just go. And you can do it once and never do it again. We pre-fill it out for all the future doctors that you go to. How many people are freaked out about you having all of this information? How many questions do you feel about hacking? Well, patient trust is very important to us at ZocDoc. One of my co-founders and our founding CTO actually came from the financial services industry. So we hold it, it's a very, very important test across the board as a company. And of course, we have patients first. So we hold it very, very important to us across the board as a company. And of course, this is something where we care about it very deeply and we're very, very attuned to it. We have a head of data security who's focused on it. It's very important to us. Now, we, knock on wood, have had a lot of success in the sense that the website's been around for now seven years and we've earned patients' trust. And so patients, when they're giving us this information, they know that it's going to go to the right people and not to the wrong hands. So I mentioned this is 60% of the U.S. population using your product, but you're also now, since about a year, really focused on businesses as well and establishing corporate clients. They're not just individuals, but corporations. How's that going? It's going great. So we've, less than a year, we've already launched now in six different markets. We have had a lot of success because from an employer standpoint, this is a win-win. We help their employees get access to care faster and we save them money. In some cases, we've actually reduced absenteeism close to 11% in some of our employer clients. And of course, they love that. They can make sure that people get to care faster, they're healthier, they save money, and they're at work more. Yeah, more sick days, yeah. Absolutely. So I know that, at least from a user's point of view, I don't pay. So how are you making money? So doctors pay us a monthly subscription fee of $300 per doctor per month. And of course, our employer clients for ZocDoctor Business pay us a subscription fee as well. Okay, so that is the revenue model. Now, I know you've raised total around $100 million since you started, and this, as you point out, is 2007. So what's next? I know you've had buyout offers. I know there's a lot on the market. What's next? I know you've had buyout offers. I know there's a lot on the market. What's next? I know there's a lot on the table. How do you see the next year at ZocDoctor? Well, we just completed our goal of being in all 50 states. And obviously, there's a lot for us to do in order to change healthcare. It's just a pretty lofty goal. It's not going to be a year. It's going to take us some time. But ultimately, we're just hyper-focused on bringing that change.

Dataset 10 · MOV · 0:43 · 2019-02-14

Over the last two weeks, more than 2,000 writers, editors, and other media professionals got laid off. At WeTalks and Zuri, we've been asking ourselves, how can we help? We decided to host a highly curated media mixer to connect talent that got laid off with the New York City most exciting companies that are currently hiring or will be hiring soon. How can you help? Get involved, help Help us spread the word in your network among startup founders and executives that are looking to hire media talent. Join us on February 20th at Company for our Media Mixer. See you then!

Dataset 10 · MOV · 0:06 · 2019-01-14

Hi, checking in from rainy Arizona. How's the island?

Dataset 10 · MOV · 4:25 · 2019-01-01
Dataset 10 · MOV · 0:17 · 2018-06-23 · iPhone X · 📍 Phoenicia, NY

You

Dataset 10 · MOV · 0:08 · 2018-09-01
Features Deepak Chopra
Dataset 10 · MOV · 0:09 · 2016-08-07

You evoke the universe in every act of perception. You are the universe.

Features Deepak Chopra
Dataset 10 · MOV · 0:09 · 2016-08-09

As long as you do not know how you know what you know, you will never know the truth of what you think you know.

Features Deepak Chopra
Dataset 10 · MOV · 0:08 · 2016-08-16

Krishna, what is reality? Reality is experience and the knowing of experience and consciousness. You got it.

Dataset 10 · MOV · 1:06 · 2017-03-25
Dataset 10 · MOV · 2:35 · 2017-06-12

Hey, you can say you good evening. You speak English. It's my night Come on hey say something no What what why not? It's fantastic. Come on It's present see Dutch. Yes No, no, listen English see Spanish Say okay Hey Wendy, listen to me. You think I am stupid. Yes So well, you don't want to speak anymore no Okay, and now oh yes, I want You know you know how to sing know what yes? Where we listen to you It's about wow and you understand Music please we're gonna sing something for you all right, but then don't look at me look at the audience like that Feelings come on No signal Trying to forget all together. Okay. No, please. Come on. You say it's pretty good talent. Okay all together feelings

Features Deepak Chopra
Dataset 10 · MOV · 1:14 · 2017-09-03

I'm resurfacing into social media with all of you after a week's silent retreat with another 150 people. A beautiful experience of awakening to presence. So as I resurface, I want to share with you some couplets from the great Sufi poet Rumi. I am so small, how can this whole universe be inside of me? Small, how can this whole universe be inside of me? Look at your eyes, they are so small and yet they see enormous things. I look into your eyes and see the whole universe not yet born. So today, see the world as I saw it just as I emerged from my silent retreat. Step out of the river of memory and conditioning and see the world as if for the first time.

Features Deepak Chopra
Dataset 10 · MOV · 0:40 · 2018-04-17

The biggest obstacle to knowing yourself is to confuse yourself with your name and your current experience of that which you call your body-mind. The only invariant in every experience is the awareness in which experiences come and go, including the experience of a shifting body-mind and perceptions that go along with it. To know yourself as awareness is self-realization.

Features Deepak Chopra
Dataset 10 · MOV · 0:40 · 2018-06-13

John Jones at the New York Stock Exchange. If you don't know who he is, you should. Paul, why is this a great day? This is a great day because we're going to launch an ETF called the Just 500. Just. And it's based on what the American public thinks should be the social mission and responsibility of corporations in America today. And guess what? It's not just about profits. It's about how you treat your workers and pay them. It's about how you treat your customers. Are you making socially beneficial products? Are you helping your communities? A variety of great things for the societal betterment. Check out our website.

Features Deepak Chopra
Dataset 10 · MOV · 0:44 · 2018-08-31 · iPhone 7 Plus · 📍 Pacific Grove, CA

Awakening to metahuman only requires a shift in identity from the body-mind-ego complex to the awareness in which the body-mind-ego complex and the world appearance are a unified, flexible, creative, spontaneous, evolving process. To be in the awareness in which you can see and shift body-mind-ego and the world as a unified process.

Dataset 10 · MOV · 0:48 · 2018-09-04

Because of your love, I have lost my sobriety. I am intoxicated by the madness of love. In this fog, I have become a stranger to myself. I am so drunk, I have lost the way to my house. In the garden, I see only your face. From trees and blossoms, I inhale only your fragrance. Drunk with the ecstasy of love, I can no longer tell the difference between drunkard and drink, between lover and beloved.

Dataset 10 · MOV · 2:17 · 2018-12-20

There was a group of adults who were taking a computer science course at a community college. And after a few weeks of classes, the professor decided to have some fun one day as a little learning activity. And he divided them by sex and he put the men on one side of the room, women on the other side of the room. He said, I want you all to do a project for the next 10 minutes and I want you to determine what gender computers ought to be. And so they deliberated and so finally here come the men. they have voted, they voted unanimously that computers should be referred to in the feminine gender. And so the professor said, all right, share with me your points. They had four points. They said, the reason why computers should be spoken of in the feminine gender is because no one but their creator understands their internal logic. The second reason is because when computers communicate with each other, they speak in code language that only they and experts can understand. The third reason is because every mistake you make is stored on their hard drive for later retrieval. The fourth reason, these men said, because as soon as you commit to one, you find yourself spending half your paycheck on accessorizing it. Now, but oh, don't laugh too hard because the women, the women had the last word on this subject. The women voted unanimously, computers must be in the masculine gender. Why? As they gave their report, they said, first of all, in order to get their attention, you have to turn them on. Secondly, they have a lot of data but still can't think for themselves. Thirdly, they're supposed to help you solve problems, but half the time they are the problem. And the final reason they gave was because as soon as you commit to one, you realize that if you'd waited a little longer, you could have gotten a better model. Sigh.

Features Deepak Chopra
Dataset 10 · MOV · 0:45 · 2018-12-20

Be aware right now of the space around you and notice how it engulfs every object, including your body-mind, and is also at the same time independent of it. So too, unbounded awareness engulfs and pervades and is independent of every experience in space and time. This is what it means to be in the world and not of it, to be local and non-local, to be a spiritual being having a human experience.

Features Deepak Chopra
Dataset 10 · MOV · 0:45 · 2018-12-20

body as the universe and having the nature of awareness. That saying comes from the Vigyan Bhairava Tantra, a text of Kashmir Shaivism attributed to the first yogi, Lord Shiva, the first yogi. Why does he say that? Everything that we call the world is a sensation in our body. which in turn is an experience in awareness. You and the universe are nothing other than awareness. Knowing this is liberation.

Features Deepak Chopra
Dataset 10 · MOV · 0:38 · 2018-12-31

Today as many seek renewal, I'd like to share a gentle reminder. I am not the body. The body is recycled earth. I am not the breath. The breath is recycled air. I am not my emotions. They are recycled energy. I am not the mind which is recycled information. I am pure consciousness that conceives, governs, constructs and becomes the experience of mind, body and world. Today, resurrect the soul, reinvent the body and reimagine the world. Shivoham.

Features Deepak Chopra
Dataset 10 · MOV · 0:46 · 2019-01-01

Happy New Year. For me, this year, no goals, no plans, no lists, no regrets, no anticipation, no resistance. Being is enough. Or should I say, being in love is enough. A love that radiates like light from the sun. Denied to none, focused on none, is sacred, holy, and healed. Let's manifest that word, sacred, holy, healed, and in love.

Features Deepak Chopra
Dataset 10 · MOV · 0:31 · 2019-01-03

Look at me. Look at yourself in a mirror. Look at your own body, your hand. Look at the changing scenery behind me. Look at a brain on a CAT scan. Everything you see is the interpretation of colorless light in formless being, which is you. That's how you create the universe. Do it consciously.

Dataset 10 · MOV · 0:17 · 2017-10-01 · iPhone 7 Plus

This ship was actually blown up on the beach on the sidewalk. These boats have sank and been blown up above the bulkhead and are now basically on the land.

Dataset 10 · MP4 · 4:35

Hello. It's nice to see you all here. Now, as the more perceptive of you have probably realized by now, this is hell. The devil, good evening. But you can call me Toby, if you like. We try to keep things informal here, as well as informal.

Audio only
Dataset 10 · MOV · 25:14 · 2013-01-26
View Full Transcript
Meeting with Ehud Barak and Larry Summers (audio only)
Dataset 10 · MOV · 3:26:56 · 2013-02-16
View Full Transcript
Dataset 10 · MP4 · 0:12 · 2017-09-22
Dataset 10 · MP4 · 0:11 · 2017-09-22
Dataset 10 · MP4 · 0:19 · 2019-06-28

I'm sorry, that's a good point.

Dataset 10 · MOV · 0:03 · 2019-04-28
Dataset 10 · MOV · 0:02 · 2016-11-22 · iPhone 6s Plus

James right now concerning

Dataset 10 · MOV · 0:03 · 2016-11-22 · iPhone 6s Plus

Need more than

Dataset 10 · MOV · 0:02 · 2018-08-27 · iPhone X
Dataset 10 · MOV · 0:03 · 2016-09-27 · iPhone 7
Dataset 10 · MOV · 1:09 · 2017-07-05 · iPhone 7 Plus
Dataset 10 · MOV · 0:02 · 2018-02-07 · iPhone X · 📍 Carmel Valley, CA
Dataset 10 · MOV · 0:17 · 2017-10-01 · iPhone 7 Plus

This ship was actually blown up on the beach, on the sidewalk. These boats have sank and been blown up above the bulkhead and are now basically on the land.

Dataset 10 · MOV · 0:03 · 2017-10-01 · iPhone 7 Plus
Dataset 10 · MOV · 0:03 · 2017-10-01 · iPhone 7 Plus

In terms of, like, how you can...

Dataset 10 · MOV · 0:02 · 2017-10-01 · iPhone 7 Plus

but then also like

Dataset 10 · MOV · 0:03 · 2017-10-01 · iPhone 7 Plus

...part that all the drywall in the office is being...

Dataset 10 · MOV · 0:02 · 2017-10-01 · iPhone 7 Plus
Dataset 10 · MOV · 0:02 · 2017-10-01 · iPhone 7 Plus
Dataset 10 · MOV · 0:03 · 2017-10-01 · iPhone 7 Plus
Dataset 10 · MOV · 0:02 · 2017-10-01 · iPhone 7 Plus

Good. It's fine.

Dataset 10 · MOV · 0:02 · 2018-01-29 · iPhone X
Dataset 10 · MOV · 0:02 · 2018-03-06 · iPhone X
Dataset 10 · MOV · 0:02 · 2018-03-07 · iPhone X
Dataset 10 · MOV · 0:02 · 2018-03-08 · iPhone X

Okay.

Dataset 10 · MOV · 0:34 · 2017-09-06 · iPhone 6s
Dataset 10 · MOV · 0:02 · 2016-12-24 · iPhone 6s Plus · 📍 Koh Rong Sanloem, Cambodia
Dataset 10 · MOV · 0:02 · 2018-12-30 · iPhone X · 📍 Tulum, Mexico
Dataset 10 · MOV · 0:01 · 2018-09-23 · iPhone X
Dataset 10 · MOV · 0:02 · 2018-10-16 · iPhone X

They're too small, no? Did you hear?

Dataset 10 · MOV · 0:01 · 2018-10-16 · iPhone X

Definitely will bid for the rings.

Dataset 10 · MOV · 0:02 · 2017-10-25 · iPhone 7
Dataset 10 · MOV · 0:02 · 2016-06-22 · iPhone 6s
Dataset 10 · MOV · 0:02 · 2016-06-25 · iPhone 6s
Dataset 10 · MOV · 0:01 · 2016-06-25 · iPhone 6s
Dataset 10 · MOV · 0:01 · 2018-12-13 · iPhone X
Dataset 10 · MOV · 0:01 · 2018-12-13 · iPhone X
Dataset 10 · MOV · 0:32 · 2019-02-18 · iPhone XS

freshwater fish what's that one throw it to the right yeah to the right there's only one right there that big one there see it

Dataset 10 · MOV · 1:20 · 2015-11-15 · iPhone 6

Who, um, is it someone lives still here, or? No, me and my wife own it, we rent it out. Oh, okay, you own it, okay. Yeah. And it's already kind of furnished, right? Yeah. Yeah. I'm so sorry. Yeah, it's nice. Yeah. I like the view, beautiful. The what? The view. Yeah, you can see the statue of liberty. And so bad is everything going to stay here? Yeah. The statue of liberty right there. Oh yeah, nice. Have you been here before? Yeah, I live in actually financial dissident home but little bit further. No, I mean because there's a... Yeah, because there's a... and actually um financially student home but a little bit further no i mean uh yeah because there's a

Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:02 · 2019-03-29 · iPhone XS
Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:03 · 2019-03-29 · iPhone XS
Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:03 · 2019-03-29 · iPhone XS
Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:02 · 2019-03-29 · iPhone XS

We've got a little guest.

Dataset 10 · MOV · 0:01 · 2019-04-13 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-13 · iPhone XS
Dataset 10 · MOV · 0:46 · 2019-04-13 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-28 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-04-28 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-28 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-04-28 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:03 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-04-30 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-05-02 · iPhone XS
Dataset 10 · MOV · 0:03 · 2019-05-02 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-05-03 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-05-03 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-05-03 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-03 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:03 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:03 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-05-04 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-06 · iPhone XS

Okay.

Dataset 10 · MOV · 0:01 · 2019-05-17 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-20 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-25 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-25 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-25 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-26 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-26 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-27 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-05-27 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-06-04 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-08 · iPhone XS
Dataset 10 · MOV · 0:00 · 2019-06-12 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-12 · iPhone XS
Dataset 10 · MOV · 0:01 · 2019-06-12 · iPhone XS
Dataset 10 · MOV · 0:02 · 2019-06-21 · iPhone XS

I'm grateful.

Dataset 10 · MOV · 0:15 · 2019-06-23 · iPhone 8 Plus · 📍 Fiskebäckskil, Sweden
Dataset 10 · MOV · 0:16 · 2019-06-23 · iPhone 8 Plus · 📍 Fiskebäckskil, Sweden
Dataset 10 · MOV · 0:26 · 2019-06-27 · iPhone 8 Plus · 📍 Fiskebäckskil, Sweden
Dataset 10 · MOV · 0:15 · 2019-06-21
Dataset 10 · MOV · 0:42 · 2016-06-28 · iPhone 6

Well, don't you think this was a must with the moon then with the moon Oh, it's just for us. We are in three and two there five And you see those two cubes

Dataset 10 · MOV · 0:31 · 2016-06-29 · iPhone 6

No, I can't give it to you, it's past nine o'clock. Where is it? I'll give it to you here, close by. No, I'm sorry, you know, there's a fine. Pizzeria... Carabubi, what's it called? Ale? Curiguli. Ale? He said, if you want, I'll give it to you here. And what can I do? I'll drink the beer here and I'll eat the pizza at home. I don't understand, what's the point? But this is a... As they say, it's a business. No, but all the... All the places, eh? I mean, I don't know, I don't know, I don't know, I don't know.

Dataset 10 · MOV · 0:05 · 2016-07-03 · iPhone 6 · 📍 Fiskebäckskil, Sweden

Okay, dog speed.

Dataset 10 · MOV · 0:07 · 2016-07-03 · iPhone 6 · 📍 Fiskebäckskil, Sweden

You are the best!

Dataset 10 · MOV · 0:09 · 2016-07-05

Shawnee Moe Shawnee Moe Shawnee Moe! Shawnee Moe!

Celina Dubin?
Dataset 10 · MOV · 0:09 · 2016-07-07 · iPhone 6 · 📍 Fiskebäckskil, Sweden

Selina, always ready to go!

Dataset 10 · MOV · 0:10 · 2016-01-20

Happy birthday to you

Dataset 10 · MOV · 0:30 · 2016-01-03 · iPhone 6
Dataset 10 · MOV · 0:16 · 2016-01-10 · iPhone 6
Dataset 10 · MP4 · 0:05
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Dataset 10 · MP4 · 0:36
Dataset 10 · MP4 · 0:29

Good! Yeah, that's incredible. Lovely. Yep, bring it to camera now. Oh, it's so dynamic. It's incredible. Yep, down the barrel. Okay. Thank you very much. You've got it. Cheers, everybody. The LG Compressor Plus with suction Dyson's top-selling DC29 can't match.

Dataset 10 · MP4 · 1:58

I won't let you come if you don't know why La la la la, I can see it, I can feel it, I can feel it I'm the one, I'm the one, I'm the one I'm a supermodel, you know me, you say mommy Family, international, got makeup on my body I love my head, got my head in my bed I'm the one, I'm the one, I can feel it, I can feel it Look at this, we'll see it through the blood And we can get real nice, we'll see it from above And we got you all night, and we'll be a good vibe We'll see it through the blood I'm always in the party, everybody put up their hands I'll get a devil's business, don't let me take you back I'll don't care if I ever see the thing that I hate I got that body, I got that head, I got that body I'm out of this world, I'm out of this world I'm out of this world

Dataset 10 · MP4 · 0:04
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Dataset 10 · MP4 · 0:24
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Dataset 10 · MP4 · 0:49
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Dataset 10 · MP4 · 0:22
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Dataset 10 · MP4 · 0:20
Dataset 10 · MP4 · 1:34
Dataset 10 · MP4 · 2:35

You push me all day, especially when you turn back Why you, oh me love you, no girl at all, me no put above you Me love it, well me fuck you, me never never see a girl when me love so Turn around so, cock it up yeah, take time now, me cock it up yeah Turn back around now, me wanna see your face, looking at me yeah, looking at me yeah You say, me yama don't find a pussy dey Me love push me hood in dey Especially when you turn back way Me never see a girl pretty so from me born She make me take off the boots me a bomb Me kaki broke, yeah

Dataset 10 · MP4 · 0:27
Dataset 10 · MP4 · 6:29

Just like, just like you

Dataset 10 · MP4 · 1:10

Come on children, why are you standing in the mud to kill the goons? We will call you, but you will not come in the mother's shoes. Long live the son of Bahar, Long live the son of Bahar. There is a hut up there, where is the hut up there? There is no one here to stay. Long live the son of Bahar, Long live the son of Bahar. There is a hut up there, where is the hut up there? O Voshну Bhai, Khut-Hariyaan ki karan Teh bondh parwaande chokre Londe bah, zinda bah, londe bah zinda bah Olo baht, ottay kothra, kothay ottay kai Ike banday ne latan, Chukiyan jaun badhayaan ne lai Londe bah, zinda bah, londe bah zinda bah Olo baht, kothar, kothay ottay ill Muttan baad mileyain teha sambhi laakay mil Londe bah, zinda bah, londe bah zinda bah

Dataset 10 · MP4 · 4:43
Dataset 10 · MP4 · 1:02
Dataset 10 · MP4 · 0:07

Hey, yo, what's going on?

Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 4:59

Lyrics: I like to keep things simple, simple, simple

Dataset 10 · MP4 · 1:42
Dataset 10 · MP4 · 4:43
Dataset 10 · MP4 · 0:13
Dataset 10 · MP4 · 2:35
Dataset 10 · MP4 · 2:07
Dataset 10 · MP4 · 0:21

Yes, yes, yes, yes, Rodrigo Vieira, with the piscinas well open, like the three minus quarters, the choto is shaken up, let's go, guri, hit hair with hair. Ay, he caught me in the iron, the choto was cut forward, look how stupid, he is hanging, he goes up, and the man with a barbara waist, he is thrown in the water, what a choto, and the man comes fighting with strength, let's go, don't flog me, Rodrigo.

Dataset 10 · MP4 · 1:36
Dataset 10 · MP4 · 2:06

but now what you want like you know the cookie for the bag kitty kitty baby get it things to rest because you don't beat it like the 68 jets diamonds and nothing when i'm rocking with you diamonds and nothing when i'm shining with you just keep it white and black as if i'm your sister i'm too hip to hop around time to hit with you i know i get wild

Dataset 10 · MP4 · 8:39
Dataset 10 · MP4 · 0:30
Dataset 10 · MP4 · 4:04
Dataset 10 · MP4 · 4:46
Dataset 10 · MP4 · 2:14

that things will rest I mean sister I'm gonna let y'all out

Dataset 10 · MP4 · 0:47
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Dataset 10 · MP4 · 0:17
Dataset 10 · MP4 · 2:53
Dataset 10 · MP4 · 1:30
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Dataset 10 · MP4 · 3:21

Underneath the Christmas trees, I just want you for my own More than you could ever know Make my wish come true All I want for Christmas Is you

Dataset 10 · MP4 · 0:05
Dataset 10 · MP4 · 0:27

You and me, and me on you, so we don't need, we don't need a barrel Don't take them pennies off, just put them to the side We gon' get that quick shit with that good shit, that dick got you screamin' That broke tight, what you like, my mama's all in your babies Baby, I'm a-changin' life, and do it all in this one

Dataset 10 · MP4 · 0:15

Ta-da!

Dataset 10 · MP4 · 1:46

What about Shaq?

Dataset 10 · MP4 · 0:16
Dataset 10 · MP4 · 3:40

Navidad, es Navidad, toda la tierra se alegra y se entristece la mar. Marinero, ¿a dónde vas? Deja tus redes y reza, mira la estrella pasar. Marinero, marinero, hacen tu...

Dataset 10 · MP4 · 2:53
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Dataset 10 · MP4 · 0:46
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Dataset 10 · MP4 · 2:34

en el mundo que vivimos estamos supuesto a verlo todo pero como llega a una mujer al nivel de satisfacer su sed sexual tomando una culebra poniéndole preservativo para introducirla en su vagina pregunta que yo me hago no hay vibradores no hay consoladores no hay hombres is the question that I ask myself for you to come to experiment with a snake and look I say it the woman for me is the most important thing on this planet and I do not like to speak against them but tell me you woman who is watching this video tell me how a human being is called like that, how the hell can a human being be like that, and end the world in the most drastic way we want, it is no longer enough to turn so many stupidities into social networks, we also have to witness this act of this woman doing this barbarity, for what purpose, that the other women also come and begin to experiment, because today I am not doing it as a preservative, but imagine that tomorrow the feeling, the curiosity, as they have known so much, that they put a yucca that gets into a banana that gets into a piece of rubber that experiences so many shots that they have to go to the gynecologist to do an operation to get that out of there inside imagine that tomorrow this woman will come and lose even more of her head than she has because a person who has good human reason does not do this nonsense if he introduces that animal alive in there and that animal who knows any shot that can be done to him when he comes to even poison her, kill her, or create a new disease, an epidemic that no one knows how we are going to cure her, nor in what way we are going to cure her. Tell me, where are we going to get to? Where are we going to stop? Doing these classes of madness. My God, Lord, listen to me, listen to me. If you believe in God, so do I. And I do not see the time for God to descend from the high heavens and be able to control everything that is happening in this world, because really, we human beings are like a goal that we have not drawn To finish with what is left of the planet Tell me What is it that is needed to see on social media I thought I would have seen everything But this that is here Really did It exceeded At admirable levels My spectators

Dataset 10 · MP4 · 0:22

This girl has been raped, and the man who took advantage of her is to be punished in public as a warning to others. In this country, thieves have their hands cut off, spies their tongues cut out, and rapists?

Dataset 10 · MP4 · 0:26
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One day, Jesus and Satan were talking, and Jesus asked Satan what he was doing to the people here on earth. He answered, I am having fun with them. I teach them to make bombs and to kill, to use weapons, to hate each other, to marry and divorce, I teach them to abuse little children, I teach young people to use drugs, to drink,

Dataset 10 · MP4 · 0:28

I don't know what to say, I don't know what to say

Dataset 10 · MP4 · 1:05
Dataset 10 · MP4 · 2:24

I've been too bad, man.

Dataset 10 · MP4 · 1:40

Me traí de un ala una potranca fina De andar gracioso y de mirada altiva Ancha de nancas y muy presumida Y aunque se arisca yo la tengo que montar Por ahí se dice que no tiene dueño Y aunque tuviera no le tengo miedo Esa potranca me ha quitado el sueño Y esa boquita yo la tengo que besar Yo doy la vida entera Y aunque me tarde la tengo que domar Y aunque redinche yo busco la manera Pero mi silla se la tiene que estrenar Esa la sana y por eso la quiero Sus ojos claros parecen luceros esa poteranca me ha quitado el sueño y esa boquita yo la tengo que besar por esa yegua yo doy la vida entera y aunque me tarde...

Dataset 10 · MP4 · 0:01
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I love you.

Dataset 10 · MP4 · 2:22
Dataset 10 · MP4 · 0:43

Ha, ha, ha, ha, ha, ha, ha, ha, ha.

Dataset 10 · MP4 · 1:02
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Dataset 10 · MP4 · 2:07

Feliz Navidad, Feliz Navidad

Dataset 10 · MP4 · 1:42 · 2026-01-14
Dataset 10 · MP4 · 0:37

Make me happy

Dataset 10 · MP4 · 4:48
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Dataset 10 · MP4 · 0:01 · 2026-01-15
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Make me want you so much I can't hatch

Dataset 10 · MP4 · 0:31
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Dataset 10 · MP4 · 0:01 · 2026-01-14
Dataset 10 · MP4 · 3:09
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Addiction. I can't solve your problems.

Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:18
Dataset 10 · MP4 · 0:54

Lyrics: I love the slide.

Dataset 10 · MP4 · 0:54

I love the slide.

Dataset 10 · MP4 · 0:36

It wasn't nothing

Dataset 10 · MP4 · 0:54
Dataset 10 · MP4 · 0:47
Dataset 10 · MP4 · 0:47

I don't know tonight, you give me every night tonight But we know, we might not get tomorrow, let's do it tonight Don't care what they say, oh I can't wait, nothing is enough I don't know tonight, I want you tonight, I want you, I want you I don't know tonight, I don't care what they say, oh I can't wait, nothing is enough I don't know tonight, I want you tonight, I want you, I want you I don't know tonight, I want you tonight, I want you, I want you

Dataset 10 · MP4 · 0:47
Dataset 10 · MP4 · 0:47
Dataset 10 · MP4 · 0:09

Stand back a bit more.

Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:30

That's the best you can do? Huh? Yes. No, come on. You look like a model, you fellow girl. Well, I'm not a model. Work with the flashes on? Yes. You have to stand back. That's not... Oh, no. But your boobs are sticking out.

Dataset 10 · MP4 · 0:30
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Dataset 10 · MP4 · 0:08

That's a cute picture because you don't even see your face with all the hair in front of it.

Dataset 10 · MP4 · 0:04

That's what I see.

Dataset 10 · MP4 · 0:00 · 2026-01-14
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:41

Like, when somebody's hurt, you don't jump in and say something? Bird. The albatross.

Dataset 10 · MP4 · 0:02
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Dataset 10 · MP4 · 0:31

Hi Look here Look here Say hello tootsie Hello tootsie Say hello tootsie Look here Not choo choo, tootsie Tootsie Not mama Tootsie Tootsie Tootsie

Dataset 10 · MP4 · 0:51

Yes. Haha, that looked pretty wrong.

Dataset 10 · MP4 · 0:54

Lyrics: Call it magic, magic.

Dataset 10 · MP4 · 0:39
Dataset 10 · MP4 · 2:51

Or better yet, go to Times Square Take a picture of me with a Kodak Took my life from negative to positive I just want you to know

Dataset 10 · MP4 · 1:05
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Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:10
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Dataset 10 · MP4 · 2:14

that things will rest I mean sister I'm gonna let y'all out

Dataset 10 · MP4 · 2:24

Contigo hasta el amanecer Como tu te amas Me vamos a darle Lumbiando y bebiendo a la vez Tu tranquila que yo te dare una noche llena de placer Contigo hasta el amanecer

Dataset 10 · MP4 · 1:08

Good night usually means goodbye mirror playing memories in my head

Dataset 10 · MP4 · 1:04
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Dataset 10 · MP4 · 2:24

I've been too bad, man.

Dataset 10 · MP4 · 2:22
Dataset 10 · MP4 · 2:22
Dataset 10 · MP4 · 1:01

Como tu te amas, yo no se Tu tranquila que yo te dare una noche llena de placer Contigo

Dataset 10 · MP4 · 1:01

Como tu te amas, yo no se Tu tranquila que yo te dare una noche llena de placer Contigo

Dataset 10 · MP4 · 1:01

Como tu te amas, yo no se Tu tranquila que yo te dare una noche llena de placer Contigo

Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 3:21
Dataset 10 · MP4 · 3:20
Dataset 10 · MP4 · 3:18

I love you.

Dataset 10 · MP4 · 2:34

And I'll see you next time.

Dataset 10 · MP4 · 1:34
Dataset 10 · MP4 · 5:45
Dataset 10 · MP4 · 3:27
Dataset 10 · MP4 · 3:27
Dataset 10 · MP4 · 2:06

but now what you want like you know the cookie for the bag kitty kitty baby get it things to rest because you don't beat it like the 68 jets diamonds and nothing when i'm rocking with you diamonds and nothing when i'm shining with you just keep it white and black as if i'm your sister i'm too hip to hop around time to hit with you i know i get wild

Dataset 10 · MP4 · 0:58
Dataset 10 · MP4 · 0:18
Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 0:18 · 2026-01-14
Dataset 10 · MP4 · 0:15
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Dataset 10 · MP4 · 2:35
Dataset 10 · MP4 · 0:00 · 2026-01-14
Dataset 10 · MP4 · 1:08
Dataset 10 · MP4 · 0:18
Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 0:03 · 2026-01-14
Dataset 10 · MP4 · 2:19
Dataset 10 · MP4 · 3:00
Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 0:16
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Dataset 10 · MP4 · 3:27
Dataset 10 · MP4 · 7:00

Here is a fruit

Dataset 10 · MP4 · 5:45
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:03
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:01 · 2026-01-14
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Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:01 · 2026-01-14
Dataset 10 · MP4 · 0:02 · 2026-01-14
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Dataset 10 · MP4 · 0:02
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Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-14

Yeah, you find Japanese boy

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02

It doesn't work.

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:03
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:03
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02 · 2026-01-13
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:02

It takes like one year.

Dataset 10 · MP4 · 0:02 · 2026-01-14
Dataset 10 · MP4 · 0:01 · 2026-01-13
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:36
Dataset 10 · MP4 · 2:34

I don't know.

Dataset 10 · MP4 · 1:16

And since we've no place to go, let it snow, let it snow, let it snow. Man, it doesn't show signs of stopping, and I've brought this little corn for popping. The lights have turned way down low, let it snow, let it snow. When we finally kiss goodnight, how I'll keep going out in the storm. But if you really hold me tight All the way home I'll be warm And the fire is slowly dying And my dear, we're still goodbye But as long as you love me so Let it snow, let it snow and snow

Dataset 10 · MP4 · 3:17
Dataset 10 · MP4 · 1:29
Dataset 10 · MP4 · 2:22
Dataset 10 · MP4 · 3:29
Dataset 10 · MP4 · 0:11
Dataset 10 · MP4 · 0:15

But that was all that had to make us still remember

Dataset 10 · MP4 · 0:46
Dataset 10 · MP4 · 1:19
Dataset 10 · MP4 · 4:25
Dataset 10 · MP4 · 0:56
Dataset 10 · MP4 · 1:27
Dataset 10 · MP4 · 2:39
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 3:18

I love you.

Dataset 10 · MP4 · 2:24

Contigo hasta el amanecer Como tu te amas Me vamos a darle Lumbiando y bebiendo a la vez Tu tranquila que yo te dare una noche llena de placer Contigo hasta el amanecer

Dataset 10 · MP4 · 1:01

Lyrics: Como tu te amas, yo no se Tu tranquila que yo te dare una noche llena de placer Contigo

Dataset 10 · MP4 · 3:20
Dataset 10 · MP4 · 7:14
Dataset 10 · MP4 · 2:10
Dataset 10 · MP4 · 9:47
Features Steven Pinker (duplicate of EFTA00003212)
Dataset 10 · MP4 · 0:04

Where are you taking me?

Dataset 10 · MP4 · 0:00 · 2026-01-14
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:42
Dataset 10 · MP4 · 0:14

No, no.

Dataset 10 · MP4 · 0:00 · 2026-01-14
Dataset 10 · MP4 · 0:01 · 2026-01-14

That's a whiff.

Dataset 10 · MP4 · 0:02 · 2026-01-14

No. Yes. You? County? County. Okay.

Dataset 10 · MP4 · 0:01

So

Dataset 10 · MP4 · 0:04
Dataset 10 · MP4 · 0:17
Dataset 10 · MP4 · 0:11

It holds in a regular...

Dataset 10 · MP4 · 0:28
Dataset 10 · MP4 · 37:54 · 2026-01-27
Dataset 10 · MP4 · 23:25
Dataset 10 · MP4 · 30:47
Dataset 10 · MP4 · 0:37

Tiny bubbles make me happy.

Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 2:44:11
Dataset 10 · MP4 · 2:44:00
Dataset 10 · MP4 · 0:51
Dataset 10 · MP4 · 1:59
Dataset 10 · MP4 · 0:51
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Dataset 10 · MP4 · 6:06
Dataset 10 · MP4 · 17:03
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Dataset 10 · MP4 · 17:03
Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:16
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Dataset 10 · MP4 · 0:06
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:13 · 2026-01-27
Dataset 10 · MP4 · 0:26

This is strange. Oh my god.

Dataset 10 · MP4 · 0:17
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Dataset 10 · MP4 · 0:41
Dataset 10 · MP4 · 0:08

Oh, cute. Oh, my God.

Dataset 10 · MP4 · 0:06
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Dataset 10 · MP4 · 0:41
Dataset 10 · MP4 · 0:14
Dataset 10 · MP4 · 0:03

Oh, I bet you looking at the one

Dataset 10 · MP4 · 0:08
Dataset 10 · MP4 · 1:37
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Dataset 10 · MP4 · 1:36
Dataset 10 · MP4 · 0:08

Oh

Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:02 · 2026-01-27
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Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-27

With cameras.

Dataset 10 · MP4 · 0:02

Put your arms up.

Dataset 10 · MP4 · 0:03
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:29

Peace out.

Dataset 10 · MP4 · 0:29

Lyrics: He said, I've been through the year 3000 Not much has changed, but there is underwater And your great-great-great-granddaughter Is divine, you and I He took me to the future in the flux thing And I saw everything, boy bands and another one

Dataset 10 · MP4 · 0:02
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Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:14
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Dataset 10 · MP4 · 0:02

I

Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:00
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:14
Dataset 10 · MP4 · 0:41

I bet you start needing me soon as you see me with someone else, somebody other than you. And I know that it hurts, you know that it hurts your pride, but your thoughts are grass and spring, they're on the other side. I bet you start loving me soon as I...

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:53
Dataset 10 · MP4 · 0:02 · 2026-01-27
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Dataset 10 · MP4 · 1:05
Dataset 10 · MP4 · 0:00 · 2026-01-27
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Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-27

It's so epic Can you imagine when you're at the bottom of the Lod...

Dataset 10 · MP4 · 0:35
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02

smile when you get smile like that

Dataset 10 · MP4 · 0:02

Too late in what sense?

Dataset 10 · MP4 · 0:08
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 1:33
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:09

Top top top top, my dear magic.

Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:02

Think about some strange portrait you're going to take.

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:01

Oh

Dataset 10 · MP4 · 0:01 · 2026-01-27

Look a little happier

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:25
Dataset 10 · MP4 · 0:02

I love your eyes.

Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:09

Yes! Yeah!

Dataset 10 · MP4 · 0:14
Dataset 10 · MP4 · 0:37

Perfect! Bravo!

Dataset 10 · MP4 · 0:51
Dataset 10 · MP4 · 0:02 · 2026-01-27

Being screwed is five o'clock

Dataset 10 · MP4 · 0:02

cameras

Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:12
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:58

This is going to be real nice. It's a lot better than I thought. It's surprising. It's funny, this way it feels like it's better. It's going to be a little bit more comfortable. Any other students that are saying yes?

Dataset 10 · MP4 · 0:02

Look at me like you love me.

Dataset 10 · MP4 · 0:07
Dataset 10 · MP4 · 0:02

Just think about it

Dataset 10 · MP4 · 0:36
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Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:16
Dataset 10 · MP4 · 0:01
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:02

Just think about it.

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02 · 2026-01-27

Yeah, you know

Dataset 10 · MP4 · 0:25
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Dataset 10 · MP4 · 0:02 · 2026-01-27
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Dataset 10 · MP4 · 0:02

Yeah

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 1:32
Dataset 10 · MP4 · 0:35
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Dataset 10 · MP4 · 0:02

What are you going to take?

Dataset 10 · MP4 · 0:02

Give me a toy.

Dataset 10 · MP4 · 0:08
Dataset 10 · MP4 · 0:34
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Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 0:02 · 2026-01-27
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Dataset 10 · MP4 · 0:15
Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MP4 · 0:02

No.

Dataset 10 · MP4 · 0:00 · 2026-01-27
Dataset 10 · MP4 · 0:03
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:02 · 2026-01-27

You got a dollar, okay.

Dataset 10 · MP4 · 0:08
Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02

you love me that's it

Dataset 10 · MP4 · 0:00 · 2026-01-27
Dataset 10 · MP4 · 0:31
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:07

You did it!

Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:02 · 2019-03-29 · iPhone XS
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:00 · 2026-01-27
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:19

I'm 70 years old from another country. What countries are you from? How many places are there? There is no such thing in the world, I think. Okay, even if there is such a thing in the world, maybe in New Zealand or somewhere else. Although it's also strange for me. Are you from Australia? I'm from Australia.

Dataset 10 · MP4 · 0:34
Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 2:32

in the system you go down to your local social security office and you show them your certificate

Dataset 10 · MP4 · 1:14
Dataset 10 · MP4 · 0:02

What do you mean, toy?

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:32
Dataset 10 · MP4 · 0:40
Dataset 10 · MP4 · 0:07

the University for Environmental and Strong Organic Growth.

Dataset 10 · MP4 · 0:25
Dataset 10 · MP4 · 0:02

You can smile, it's okay.

Dataset 10 · MP4 · 0:01 · 2026-01-27

Look a little happier

Dataset 10 · MP4 · 0:12
Dataset 10 · MP4 · 0:02 · 2026-01-27

Good relationship with cameras.

Dataset 10 · MP4 · 0:01 · 2026-01-27
Dataset 10 · MP4 · 0:01 · 2026-01-27

This is very strange to do.

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:11

Even if they are fried, that's what it is.

Dataset 10 · MP4 · 0:02

to food.

Dataset 10 · MP4 · 0:18
Dataset 10 · MP4 · 0:13
Dataset 10 · MP4 · 0:59

I don't even need my dresser. Yeah, I think you definitely don't need your dresser here. Yeah, or clean dresser. Yeah, this place looks crazy. It can be used. And it's also light, yeah? It also has a lot of light. Yeah, and this apartment is very bright because you have very little room in the apartment. And that's how, you know, all day long you have, I wish, if you would have gotten hair, like, a little better, you could have seen how bright it was with almost no sun. Yeah. Let me see. Let me see.

Dataset 10 · MP4 · 0:53
Dataset 10 · MP4 · 0:05
Dataset 10 · MP4 · 0:05
Dataset 10 · MP4 · 0:02 · 2026-01-27

Look how much fun

Dataset 10 · MP4 · 0:27

It's a small memory. Ah, it's true, a memory! Yes, of course, of course, of course. These are the four devices linked to the one in this case. This is the artificial circulation, right? Yes, yes, and that is always Vudosuf. Vudosuf, but now it's black and white, right? Ah yes, you're right, you're right.

Dataset 10 · MP4 · 1:11

closet finished

Dataset 10 · MP4 · 0:26

Second bathroom that has the bathtub, very big bathtub, very deep, see?

Dataset 10 · MP4 · 0:14

Oh my God! Who is taking a photo?

Dataset 10 · MP4 · 0:25
Dataset 10 · MP4 · 0:52
Dataset 10 · MP4 · 0:14

Addiction. How sad money can solve your problems.

Dataset 10 · MP4 · 0:38

This is basically how we close it, right?

Dataset 10 · MP4 · 1:14
Dataset 10 · MP4 · 0:42
Dataset 10 · MP4 · 0:07

the University for Environmental and Strong Organic Growth.

Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:40
Dataset 10 · MP4 · 1:32
Dataset 10 · MP4 · 0:45

That glows like an ember Longs to be loved just by you Be slower than in December

Dataset 10 · MP4 · 0:02 · 2026-01-27
Dataset 10 · MP4 · 0:11
Dataset 10 · MP4 · 0:12
Dataset 10 · MP4 · 0:39
Dataset 10 · MP4 · 0:08
Dataset 10 · MP4 · 0:15
Dataset 10 · MP4 · 0:14

For your love

Dataset 10 · MP4 · 0:10
Dataset 10 · MP4 · 0:14
Dataset 10 · MP4 · 0:24
Dataset 10 · MP4 · 0:51

Don't bite. Don't bite. No, don't bite. What? You're getting it? Okay. Quick, turtle, Jackie. Turtle. Turtle. She won't get you. Ow! No, your teeth are sharp, dog. No, don't bite. But be good. Be good. Wrestle. Wrestle. Don't bite. Don't wrestle. Ride. Jumping. Ellie, don't pull her hair. oh there she is let's be friends she says

Dataset 10 · MP4 · 0:05
Dataset 10 · MP4 · 0:04
Dataset 10 · MP4 · 0:13
Dataset 10 · MP4 · 0:07
Dataset 10 · MP4 · 0:10
Dataset 10 · MP4 · 0:09

It's beautiful, it's very natural.

Dataset 10 · MP4 · 0:06
Dataset 10 · MP4 · 0:24
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Dataset 10 · MP4 · 1:44
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Dataset 10 · MP4 · 0:26
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Dataset 10 · MP4 · 0:22
Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:02
Jack Lang and Jeffrey Epstein in front of the Louvre
Dataset 10 · MOV · 0:02 · 2019-03-29 · iPhone XS
Dataset 10 · MP4 · 23:25
Dataset 10 · MP4 · 30:47
Dataset 10 · MP4 · 0:02

Happy birthday dear Nicky.

Dataset 10 · MP4 · 0:06
Dataset 10 · MP4 · 0:24

Okay, they're right back here. Go closer, go closer. They're right back over there.

Dataset 10 · MP4 · 0:34

Okay, so Darren and I are sitting here. You can hear the echo. I'm pretending I'm talking to Darren. So, hi Darren. So Sarah and Nadia, are you guys having a good time? You can see I have a little sore on my face that I got from some black guy trying to kiss me. It's really disgusting. It was fun. Anyway, I have pictures up on the wall. I had to borrow the scotch tape to get the pictures on the wall. I'll talk to you guys later. Bye.

Dataset 10 · MP4 · 2:34

Can you list for me all the girls that you have met and brought to Jeffrey Epstein's house that were under the age of 18? At the Florentine Foundation. I can only recall my family members that were there, and I could not make a list of anyone else because that list never happened. But I can think of. I'm talking about during the time that you were working for Jeffrey Epstein. Right. can you list all the girls that you found for Jeffrey Epstein that were under the age of 18 to come work for him in any capacity? Check the form of the foundation. So I didn't find gals. I didn't met gals. You choose the word. No, you don't choose the word. If you have a question, ask it. List all of the girls that you met and brought to Jeffrey Epstein's home for the purposes of employment that were under the age of 18. Check the form of the foundation. I've already characterized what my job was, which was to find people, adults, professional people, to do the types of jobs that I listed before. Pool person, secretary, house person, chef, pilot, architect. But I'm talking about individuals under the age of 18, not adult persons, individuals under the age of 18. I only hire and look for people or try to find people to fill professional jobs in professional situations. Correct. uh we i think we've established was 17 and i'm sorry go ahead is she the only individual that you met for purposes of hiring someone for jeffrey that was under the age group take the form of foundation that mischaracterizes their testimony so i didn't hire people i met yes you did i said matt so i interviewed people for jobs that were professional people for professional things and i'm not aware of anyone aside from who clearly was a masseuse aged 17 but that's um you know at least that's how far we know that i can think of that uh fulfilled any professional capacity if for jeffrey list all the people under the age of 18 that you interacted with at any of jeffrey's property i'm not aware of anybody that i interacted with other than Thank you.

Dataset 10 · MP4 · 0:14

The measurements are 84, 56 and 86 centimeters.

Dataset 10 · MP4 · 0:32
Dataset 10 · MP4 · 0:02 · 2026-01-28
Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 0:39

inspector is following the high bus we're still alive driving safely don't look at the camera be serious focus on the bus

Dataset 10 · MP4 · 0:02
Dataset 10 · MP4 · 0:26
Dataset 10 · MP4 · 0:09

¡Feliz Año Nuevo!

Dataset 10 · MP4 · 0:54

One from Shannon. Thanks a lot.

Dataset 10 · MP4 · 0:54

So it does it. All right. Thank you. Bye. Your attention, please. Air Lincoln, flight 111, and United Airlines, flight W631, from Shannon, has arrived.

Dataset 10 · MP4 · 0:05
Dataset 10 · MP4 · 0:12
Dataset 10 · MP4 · 0:33
Dataset 10 · MP4 · 0:34 · 2026-01-28

So Olivia is getting all the flavors of all the jellies. She already got 4 bags, but she thought it wouldn't be enough, so she's getting some more. She's very serious about it. Olivia, how many jelly beans did we get? And then it's just a little part of what we've got.

Ghislaine Maxwell interview
Dataset 10 · MP4 · 1:18

And I had not any idea exactly of the youngest adult employee that I hired for Jeffrey. When you say adult employee, did you ever hire someone that was under the age of 18? Never. Did you ever bring someone who was under, or invite someone who was under the age of 18 to Ray's home, any of his homes? Objective of employment foundation. You can answer. Can you repeat the question? Yes. Did you ever invite anybody under the age of 18 to Jeffrey's home? Same objection. I have a number of friends that have children, friends of mine who have kids. My friends and their kids, I'm sure that I will have invited some of my friends' kids to come, if that's what you're referring to. No, anybody that is not a friend of yours, any female under the age of 18, did you invite them to come to Jeffrey's home? Check the form and foundation. I, again, as I said, I am not aware of having any friends of mine. Did you intervene to Jeffrey Epstein's home when she was under the age of 18?

Ghislaine Maxwell interview
Dataset 10 · MP4 · 0:44

Ms. Maxwell, when did you first meet her? Check the Foreman's Foundation. You can answer. I have no idea when I met her. Do you know how old she was when you met her? I have no idea how old she was when I met her. Is it possible that she was 13 years old when you first met her? Check the Foreman's Foundation. First of all, my mother was Jeffrey's friend, and his mother was Jeffrey's friend. So they may have been in the house. When she was in the house, I have no idea how old she was when she was with her mother. I understand that she was with her mother. I'm asking you if she was 13 years old when you first met her. I have no idea how old she was when... Was she under 18 when you first met her? I have no idea how old she was when she was in the house.

Ghislaine Maxwell interview
Dataset 10 · MP4 · 0:35

Who were the other 17-year-old masseuses you were aware of? I'm not aware of any. Were there any 16-year-old masseuses you were aware of? I'm not aware. Any 15? I just want to be clear. The only person that I'm aware of who claims to have been, you know, we have to, whilst I've established that she was 17, given that she has changed her age so many times, the only person that I'm aware of that was a masseuse at the time when I was present in the house.

Dataset 10 · MP4 · 0:09

It's beautiful, it's very natural.

Dataset 10 · MP4 · 0:07

Your hair and your makeup a little bit? Uh-huh. Okay.

Dataset 10 · MP4 · 0:29
Dataset 10 · MP4 · 0:15

But that was over to make us still remember

Dataset 10 · MP4 · 0:06
Dataset 10 · MP4 · 0:41
Dataset 10 · MP4 · 0:30
Dataset 10 · MP4 · 0:13
Ghislaine Maxwell interview
Dataset 10 · MP4 · 0:35

Who were the other 17-year-old masseuses they were aware of? I'm not aware of any. Were there any 16-year-old masseuses you were aware of? I'm not aware. Any 15? I just want to be clear. The only person that I'm aware of who claims to have been, you know, we have to establish that she was 17, given that she had changed her age so many times. The only person that I am aware of that was a masseuse at the time when I was present in the house.

Dataset 10 · MP4 · 0:01 · 2026-01-28
Dataset 10 · MP4 · 0:09
Dataset 10 · MP4 · 1:36
Dataset 10 · MP4 · 0:13

Hello. Thank you very much, Jeffrey. We are very happy. Thank you. Спасибо. Спасибо.

Dataset 10 · MP4 · 0:19
Dataset 10 · MP4 · 0:14
Dataset 10 · MP4 · 0:45
Dataset 11 · M4V · 0:17

And the man who took advantage of her is to be punished in public as a warning to others. In this country, thieves have their hands cut off. Spies.

Dataset 11 · M4V · 0:00
Dataset 11 · M4V · 0:17
Dataset 11 · M4V · 2:38

The building that I am today was built and completed in 1739. Although I was burned down in 1823 and damaged in a hurricane in 1870, my structure remains solid. I have a massive mahogany altar and my pews, which each has its own door, were rented to the family of my congregation. When the territory didn't have a minister, the governor, who had his own elevated pew, filled in. I am located at 7 North Gadeh, across from Emancipation Garden and Grand Hotel Charlotte Amalia, St. Thomas. In October, my anniversary service. In November, all saints service. Annual soup kitchen, Thanksgiving luncheon. And in December, the Nativity of the Lord, Sunday School Christmas Project, Christmas Candle Lighting, Old Year Service, and in January, New Year Service, and February, Configuration Sunday.