AI is fast, but is it fair? How leaders can tackle bias by design - capita.com
<a href="https://news.google.com/rss/articles/CBMiqAFBVV95cUxPYUEyX3V6OVRONzdVbU11dW9BeHg5RFJHX2dFRXA4aEJvQVJ6cjh1MGV5M3Ytd244ejBqVWdFNUh0ZXFwVVk2Y3V6eDN6RXU0NGJ3bVM2b0FfZi12OEw0Rm4tamZXSi1VODdqZ1JtM1loOHFUaUNZRE1weGUxOVozRDg2MW5fM0d5NkF2V1Ita2RiaXhGd2dfTzdnb29IckI4ME9BdlRaaFg?oc=5" target="_blank">AI is fast, but is it fair? How leaders can tackle bias by design</a> <font color="#6f6f6f">capita.com</font>
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