Northwestern Network for Collaborative Intelligence announces strategic leaders - Northwestern Now News
<a href="https://news.google.com/rss/articles/CBMiwgFBVV95cUxPM0VNRU41XzRZTWFGY0Y5VXhyWWt1NXZpeWtmNno2MU8ydDFQQ2N4bmljOFV5bkhodnl4RkFJSGNqVVUtdFdvVkxhRkdyaWw3dEVCaHloQ3Y1TmJIQzZRZF9ENE50MTN2YWJ5Zy04N2Y5U3g1M0s3ck9xdkUxN3N4eGR0Zk1WZjVtd1BFNHBCcWNEVUNFX0xaSDNEZkVMeFBpeXNzN0lyYzFGMnJoVVY0SmVIV2RFWTh3WTZkTHZMSmx0QQ?oc=5" target="_blank">Northwestern Network for Collaborative Intelligence announces strategic leaders</a> <font color="#6f6f6f">Northwestern Now News</font>
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