Sources

What’s Your Route to Enterprise AI Adoption?

  1. S. Moore. "The Data Center Is (Almost) Dead." Gartner, 2019
  2. P. Johnson. Open Source Licenses in 2022: Trends and Predictions, 2022
  3. Congressional Research Service. "Artificial Intelligence and National Security." Federation of American Scientists, 2020
  4. S. O’Meara. "AI researchers in China want to keep the global-sharing culture alive." Nature, 2019
  5. R. Vasconcelos. "Why Big Tech is quietly collaborating on open source AI." TechHQ, 2020
  6. TokenEx. "Tokenization vs. Encryption: Which is Better for Your Business?" TokenEx, 2020
  7. K. Casey. "Hybrid cloud by the numbers, 2020: 10 stats to see." The Enterprises Project, 2020
  8. B. Fowler. Data breaches break record in 2021, 2022
  9. M. Hill The 15 biggest data breaches of the 21st century, 2021
  10. W. D. Heaven. "Predictive policing algorithms are racist. They need to be dismantled." MIT Technology Review, 2020
  11. T. Macaulay. "Studies of racist algorithms don’t break anti-hacking law, court rules." The Next Web, 2020
  12. Forbes Insights Team. "The Power Of Open Source AI." Forbes, 2019
  13. M. Korolov. "AI technology: When to build, when to buy." CIO Magazine, 2019
  14. J. Vincent. "Nvidia’s $40 billion Arm acquisition is about bringing AI down from the cloud." The Verge, 2020
  15. C. Parkey. "Should you buy a commercial machine learning platform or build in-house?." BuiltIn, 2020
  16. J. Hermann and M. Del Balso. "Meet Michelangelo: Uber’s Machine Learning Platform." Uber Engineering, 2017
  17. E. Brumbaugh et al. "Bighead: A Framework-Agnostic, End-to-End Machine Learning Platform." EEE International Conference on Data Science and Advanced Analytics (DSAA), 2019
  18. C. Johnston. "Netflix Never Used Its $1 Million Algorithm Due To Engineering Costs." The Wired, 2012
  19. Cast AI. What is vendor lock-in (and how to break free)?, 2021
  20. P. Lamblin. "MILA and the future of Theano." Google Groups, 2017
  21. V. Kovalevskyi. "Multiple Version of CUDA Libraries On The Same Machine." Kovalevskyi, 2018
  22. D. Sculley et al. "Hidden Technical Debt in Machine Learning Systems." NIPS'15: Proceedings of the 28th International Conference on Neural Information Processing Systems, 2015
  23. Gartner. "Gartner Forecasts Worldwide Public Cloud End-User Spending to Reach Nearly $500 Billion in 2022." Gartner, 2022
  24. Intel. "Machine Learning: The Next Step in Advanced Analytics." Intel, 2020
  25. M. McAteer "Nitpicking Machine Learning Technical Debt", 2020