RAR-files |
linkedin.learning.foundations.of.responsible.ai-xqzt.rar |
100,000,000 |
4F6A19D3 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r00 |
100,000,000 |
54757994 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r01 |
100,000,000 |
2BFF7093 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r02 |
100,000,000 |
C7FF1BD0 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r03 |
100,000,000 |
36D9EAE5 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r04 |
100,000,000 |
C44241FD |
linkedin.learning.foundations.of.responsible.ai-xqzt.r05 |
100,000,000 |
B7DF4A1D |
linkedin.learning.foundations.of.responsible.ai-xqzt.r06 |
100,000,000 |
9508D88E |
linkedin.learning.foundations.of.responsible.ai-xqzt.r07 |
100,000,000 |
7DCD3F79 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r08 |
100,000,000 |
A67196F4 |
linkedin.learning.foundations.of.responsible.ai-xqzt.r09 |
100,000,000 |
0098D54A |
linkedin.learning.foundations.of.responsible.ai-xqzt.r10 |
5,035,656 |
AD2612B8 |
|
Total size: |
1,105,035,656 |
|
|
Archived
files |
01.01-understanding_responsible_ai.mkv
[e2baf9a1a69a22e7]
|
20,490,557 |
09DA18C8 |
02.01-what_is_ai_and_how_does_data_enable_it.mkv
[734d92f52d55db44]
|
28,913,051 |
6E728B70 |
02.02-modern_ai_development.mkv
[9afeb815e5e6349b]
|
32,305,831 |
248EB21A |
02.03-problems_in_ml_that_differ_from_software_engineering.mkv
[db4061f9dd4c920f]
|
39,086,034 |
3ECF7112 |
03.01-big_data_and_where_it_comes_from.mkv
[b63d753933c2269d]
|
47,639,135 |
1F60C93B |
03.02-seeing_trends_in_data.mkv
[89245a2fcf418ae2]
|
38,535,960 |
1D77E0FC |
03.03-building_data_understanding.mkv
[403244626be61e7]
|
15,444,764 |
72C63F10 |
03.04-visualization_and_comparing_data.mkv
[22b961c1dacf8d90]
|
22,484,349 |
747B4F7D |
03.05-storytelling_with_data.mkv
[a867c0d4950ff347]
|
37,562,721 |
15D3767D |
04.01-introduction_to_ethical_ai.mkv
[3b614543426fd7d6]
|
29,892,269 |
48A976F5 |
04.02-ethical_frameworks.mkv
[c41dc63fe186c4b4]
|
34,239,260 |
B47CD259 |
04.03-beneficence_vs._maleficence.mkv
[da7474876b2f5f4d]
|
32,146,081 |
702483D9 |
04.04-calculating_consequences.mkv
[9bd024b22c68a5e6]
|
27,450,389 |
A1B94657 |
04.05-consequence_scanning.mkv
[90abdfc61bd9160b]
|
19,896,436 |
0F668D38 |
04.06-common_good_and_equity.mkv
[d619530e3c29aab4]
|
42,031,723 |
A77DF05B |
05.01-fairness.mkv
[cfc3099f92de2b02]
|
36,631,570 |
C15C08D3 |
05.02-transparency.mkv
[f2d46604793f9b3f]
|
34,844,667 |
CC044D52 |
05.03-accountability.mkv
[f7b34ea0c718b035]
|
42,713,084 |
145CC193 |
05.04-explanations.mkv
[bfbb4178e597b9d7]
|
29,964,422 |
524A0517 |
05.05-interpretability.mkv
[afc8a7121d52ce31]
|
26,889,064 |
BE0CB888 |
05.06-inclusivity.mkv
[5dae8e5d7e4d7c84]
|
30,842,147 |
D26119A5 |
06.01-why_fairness_related_harms.mkv
[b9121a6fcd8ab201]
|
28,652,083 |
7CC65F46 |
06.02-critical_ai_incidents_and_learnings.mkv
[37bc4360f06aadf8]
|
44,635,312 |
63D69C3F |
06.03-bias_in_the_design_and_development_lifecycle.mkv
[7d3fd15b3b8ad752]
|
21,819,374 |
826D14FE |
06.04-causal_reasoning_and_fairness.mkv
[4dabea022650024f]
|
26,987,654 |
59DCF08B |
06.05-risk_mitigation_in_ai.mkv
[bc45903425f3b755]
|
34,363,485 |
C6D800C2 |
06.06-technical_aspects_of_sociotechnical_solutions.mkv
[ccc60b640a945be2]
|
39,897,437 |
21798046 |
07.01-anonymity_and_data_privacy.mkv
[42cc5b92b18f4182]
|
32,727,638 |
4F4C6992 |
07.02-unintended_uses_and_misuses.mkv
[c2c41f76fcc9e237]
|
42,004,388 |
73568B67 |
07.03-unethical_business_cases.mkv
[951f32f894325c5b]
|
41,351,043 |
B4310D16 |
07.04-autonomous_systems_and_society.mkv
[a3b58dc3a62064ae]
|
46,064,469 |
EE1867A2 |
07.05-who_ai_is_developed_for.mkv
[305be2c75d66a88c]
|
51,187,791 |
1479A442 |
08.01-ai_regulation_and_applying_responsible_ai_frameworks.mkv
[974b9ee4ab9cbd6a]
|
25,283,985 |
662DD5E8 |
Ex_Files_Foundations_of_Responsible_AI.zip |
53,683 |
4759402E |
|
Total size: |
1,105,031,856 |
|
|