James Mickens

James W. Mickens is an American computer scientist, and the Gordon McKay Professor of Computer Science at Harvard John A. Paulson School of Engineering and Applied Sciences at Harvard University.[1] His research focuses on distributed systems, such as large-scale services, and ways to make them more secure.[2][3][4] He is critical of Machine Learning as a boiler plate solution to most outstanding computational problems.[5]

James Mickens
Alma materGeorgia Institute of Technology, University of Michigan
OccupationProfessor
Known forCybersecurity
Parent(s)

Biography

James Mickens was raised in Atlanta, his father is physicist and mathematician Ronald E. Mickens.[6][7] Mickens received a Ph.D. in Computer Science and Engineering from the University of Michigan in 2008[7] and his B.S. degree in Computer Science from the Georgia Institute of Technology in 2001. He was part of the Distributed Systems group at Microsoft Research in 2009 until 2015, and the Harvard John A. Paulson School of Engineering and Applied Sciences in 2015, where he was awarded tenure in 2019.[8][9] In 2014 until 2015, Mickens was in the MLK Visiting Professors and Scholars Program at Massachusetts Institute of Technology (MIT).[10]

In 2016, he was one of the researchers working on Polaris, a new system designed at MIT to decrease the speed for loading webpages.[11]

Publications

  • Mickens, James W.; Noble, Brian D. (May 2006). EECS Department, University of Michigan. "Exploiting Availability Prediction in Distributed Systems". NSDI'06: Proceedings of the 3rd conference on Networked Systems Design & Implementation. Berkeley, California: USENIX Association. 3: 73–86 via ACM Digital Library, Association for Computing Machinery.
  • Netravali, Ravi; Goyal, Ameesh; Mickens, James; Balakrishnan, Hari (March 2016). "Polaris: Faster Page Loads Using Fine-grained Dependency Tracking". NSDI'16: Proceedings of the 13th Usenix Conference on Networked Systems Design and Implementation. Berkeley, California: USENIX Association: 123–136. ISBN 978-1-931971-29-4 via ACM Digital Library, Association for Computing Machinery.

References

  1. Dizikes, Peter (December 8, 2020). "Straight Talk about Race in Academia". MIT News, Massachusetts Institute of Technology. Retrieved 2021-01-15. ...said James Mickens, the Gordon McKay Professor of Computer Science at Harvard University.
  2. Clarke, Richard A.; Knake, Robert K. (2020-09-15). The Fifth Domain: Defending Our Country, Our Companies, and Ourselves in the Age of Cyber Threats. Penguin. pp. 43–45. ISBN 978-0-525-56198-9.
  3. Milano, Brett; October 7; 2020. "'We need to be more imaginative about cybersecurity than we are right now'". Harvard Law Today. Retrieved 2021-01-15.CS1 maint: numeric names: authors list (link)
  4. "Harvard's Jonathan Zittrain and James Mickens Discuss Cybersecurity". www.techpolicy.com. November 6, 2020. Retrieved 2021-01-15.
  5. Doctorow, Cory (August 20, 2018). "Here's the funniest, most scathing, most informative and most useful talk on AI and security". BoingBoing.net.
  6. Gibson, Lydialyle (2016-02-19). "James Mickens". Harvard Magazine. Retrieved 2021-01-15.
  7. "James Mickens and his father, Ronald Mickens, after James received his PhD in Computer Science Mickens Ronald G4". Ronald E. Mickens Collection, American Institute of Physics. 2016-03-07. Retrieved 2021-01-15.
  8. "Harvard man gets tenure! "I want to thank all of the enemies that I had to destroy to achieve this great honor."". The Book Haven. Stanford University. November 2019. Retrieved 2021-01-15.
  9. "#BlackInTheIvory: Academia's Role in Institutional Racism". MLK Visiting Professors and Scholars Program, Massachusetts Institute of Technology (MIT).
  10. Kohli, Sonali (January 20, 2015). "An MIT professor and Microsoft researcher's advice for black computer scientists". Quartz. Retrieved 2021-01-15.
  11. Wang, Shan (March 9, 2016). "MIT researchers have designed a system that decreases loading time for websites by 34 percent". Nieman Lab. Retrieved 2021-01-15.
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