1 00:00:00,000 --> 00:00:06,950 [MUSIC PLAYING] 2 00:00:06,950 --> 00:00:08,950 DAN FREY: Hello, I'm Dan Frey. 3 00:00:08,950 --> 00:00:12,500 And I'm the faculty research director at MIT's D lab. 4 00:00:12,500 --> 00:00:15,920 I'm also principal investigator for the Comprehensive 5 00:00:15,920 --> 00:00:18,980 Initiative on Technology Evaluation, which we 6 00:00:18,980 --> 00:00:22,060 refer to by the acronym CITE. 7 00:00:22,060 --> 00:00:24,460 The CITE program was established in order 8 00:00:24,460 --> 00:00:28,240 to assess and evaluate technologies and products 9 00:00:28,240 --> 00:00:32,920 so that we can better understand which ones perform the best 10 00:00:32,920 --> 00:00:37,270 and also which ones provide the best value given the context. 11 00:00:37,270 --> 00:00:40,750 And better information about process and technologies 12 00:00:40,750 --> 00:00:45,310 also helps us to best implement those technologies 13 00:00:45,310 --> 00:00:48,980 in an international development setting. 14 00:00:48,980 --> 00:00:53,240 Now, this topic is especially important in machine learning. 15 00:00:53,240 --> 00:00:56,450 We understand that these exciting new technologies 16 00:00:56,450 --> 00:01:02,300 can sometimes cause or else propagate certain inequities 17 00:01:02,300 --> 00:01:03,890 or biases. 18 00:01:03,890 --> 00:01:06,050 And there are a number of techniques 19 00:01:06,050 --> 00:01:08,720 that are now emerging from research community that 20 00:01:08,720 --> 00:01:12,800 can help us to mitigate those problems by adjusting 21 00:01:12,800 --> 00:01:15,580 the algorithms or else modifying data 22 00:01:15,580 --> 00:01:21,200 sets in order to provide better, more equitable, and more fair 23 00:01:21,200 --> 00:01:22,730 outcomes. 24 00:01:22,730 --> 00:01:26,120 Now, we hope that you'll engage with us very deeply 25 00:01:26,120 --> 00:01:31,550 in this course and that we'll be able to provide knowledge that 26 00:01:31,550 --> 00:01:35,120 can help you to better implement these techniques 27 00:01:35,120 --> 00:01:37,580 in your own professional endeavors. 28 00:01:37,580 --> 00:01:40,820 Thanks for joining us in this course. 29 00:01:40,820 --> 00:01:44,470 [MUSIC PLAYING]