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Would you like to inspect the original subtitles? These are the user uploaded subtitles that are being translated: 1 00:00:00,600 --> 00:00:05,550 In this video, we're taking a look at the website social bearing, and you could find it social bearing 2 00:00:05,550 --> 00:00:08,010 dot com now social bearing. 3 00:00:08,280 --> 00:00:09,840 Does Twitter analytics? 4 00:00:10,500 --> 00:00:15,960 So it's a pretty cool website and program we can search by. 5 00:00:16,140 --> 00:00:19,830 If we go to tweets, we can search by keywords, hashtags or web sites. 6 00:00:20,370 --> 00:00:25,200 We could do it by Twitter handles, geolocation people, followers or friends. 7 00:00:26,130 --> 00:00:29,400 So again, this is going to help us go through Twitter. 8 00:00:29,730 --> 00:00:30,820 It's going to run the analytics. 9 00:00:30,850 --> 00:00:33,780 We could find different information about our target. 10 00:00:35,430 --> 00:00:36,840 So let's give this a try here. 11 00:00:37,770 --> 00:00:42,780 So we are going to handle here, I'm going to add human hacker. 12 00:00:43,260 --> 00:00:45,300 OK, Mary, click on Search here. 13 00:00:46,320 --> 00:00:47,670 And we're give this moment to come up. 14 00:00:49,120 --> 00:00:51,220 And let's see what type of information that pulls up. 15 00:00:52,510 --> 00:00:58,150 So right off the bat, this is pretty cool in your mileage is going to vary because it's going to be 16 00:00:58,540 --> 00:01:02,590 depending on, well, how active the person is on Twitter. 17 00:01:03,070 --> 00:01:04,960 Well, we'll give you different information. 18 00:01:05,710 --> 00:01:08,710 So the target they chose is very active on Twitter. 19 00:01:10,060 --> 00:01:14,950 So we could see that there's an image here, we can see the full name, we could see the tagline here, 20 00:01:14,960 --> 00:01:16,120 we could see a link here. 21 00:01:17,200 --> 00:01:18,600 We could see when it was created. 22 00:01:18,610 --> 00:01:19,300 We could see it. 23 00:01:19,300 --> 00:01:29,710 A location tweets tweets per day on average followers followin we could see the ratios for those favored 24 00:01:29,710 --> 00:01:30,250 list. 25 00:01:31,060 --> 00:01:37,420 Last tweet was two days ago and it was by tweet deck the language. 26 00:01:37,870 --> 00:01:40,540 We could see additional information here. 27 00:01:40,540 --> 00:01:47,740 Tweets timeframe, days reach impressions, total retweets, total favorites, replies hidden. 28 00:01:48,610 --> 00:01:54,640 All sorts of great information about this particular user that uses Twitter. 29 00:01:56,680 --> 00:02:03,280 So again, if you're Twitter, I'm sorry, if you're if your target is very active on Twitter, rather, 30 00:02:04,120 --> 00:02:09,130 this is a really cool tool because again, you can see all this wonderful information that we're able 31 00:02:09,130 --> 00:02:14,350 to start gleaming from from that Twitter account and all it took for this case. 32 00:02:14,350 --> 00:02:19,990 You know, say we're going through and we're and we know the person's Twitter handle, we could do it 33 00:02:19,990 --> 00:02:24,670 by their Twitter handle and you could see all the information I'm pulling up here. 34 00:02:26,440 --> 00:02:32,620 Likewise, if they're if you're doing an investigation and you know, there's a certain hashtag related 35 00:02:32,620 --> 00:02:39,970 to it, we can search by hashtag, by subject, by my followers and so on and so forth. 36 00:02:40,030 --> 00:02:43,690 There's a lot of different options that we can run with this. 37 00:02:44,260 --> 00:02:45,250 And again, it's free. 38 00:02:45,400 --> 00:02:50,410 And what's cool is we could also do it by geo location, hash tag location. 39 00:02:50,410 --> 00:02:52,030 We could put the search radius so. 40 00:02:54,020 --> 00:03:01,850 If there's something that happened, say, in Orange County, Los Angeles area, I can put Orange County 41 00:03:02,270 --> 00:03:09,020 in here, I could set the radius and see if anyone tweeted within that radius. 42 00:03:09,590 --> 00:03:18,320 So again, having that granular ability to to do these particular searches is really cool, and it will 43 00:03:18,320 --> 00:03:22,220 make your life a lot easier when you're doing your own investigations. 44 00:03:22,850 --> 00:03:26,180 So it's just another tool to be that we're able to use and leverage. 45 00:03:26,480 --> 00:03:29,240 And again, you can find over social berekum. 46 00:03:29,510 --> 00:03:30,380 Thank you for watching. 47 00:03:30,440 --> 00:03:31,150 I'll see you next week. 4676

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