Home Technology peripherals It Industry AMD, Intel, Meta, IBM and other units launch AI alliance to promote the development of open AI

AMD, Intel, Meta, IBM and other units launch AI alliance to promote the development of open AI

Aug 07, 2024 pm 07:39 PM
AI

According to news from this website on December 5, in order to cope with the rapid development of technology giants including Microsoft, OpenAI, Google, etc. in the field of artificial intelligence, Meta and IBM jointly established a group of cross-industry, start-up companies, academia, research institutions and government organizations. The Artificial Intelligence Alliance aims to promote the development of open artificial intelligence.

AMD、英特尔、Meta、IBM 等单位发起 AI 联盟,推动开放式 AI 发展

AI Alliance

According to reports, the AI ​​Alliance will work to build and support open technologies across software, models and tools, advocate for developers and scientists to adopt open technologies, and work with organizational and social leaders, policy and regulation Institutions and the public work together to promote innovation in open artificial intelligence. The consortium also plans to establish a governance committee and technical oversight committee to develop overall program standards and guidelines.

Founding members and collaborators

This website query found that the 50 founding members and collaborators of the AI ​​Alliance include:

  1. Science, Technology and Research Agency (A*STAR)
  2. Aitomatic
  3. AMD
  4. Anyscale
  5. Cerebras
  6. CERN
  7. Cleveland Medical Center
  8. Cornell University
  9. Dartmouth University
  10. Dell Technologies
  11. ETH Lausanne
  12. ETH Zurich
  13. Fast.ai
  14. Fenrir, Inc.
  15. FPT Software Inc.
  16. Hebrew University of Jerusalem
  17. Hugging Face?
  18. IBM
  19. Abdel Salam International Center for Theoretical Physics (ICTP)
  20. Imperial College London
  21. IIT Bombay
  22. Institute of Computer Science and Artificial Intelligence
  23. Intel
  24. Keio University
  25. LangChain
  26. LlamaIndex
  27. Linux Foundation
  28. Popular Open Cloud Alliance, run by Boston University and Harvard University
  29. Meta
  30. Mohammed Bin Zayed University of Artificial Intelligence
  31. MLCommons
  32. NASA
  33. National Science Foundation
  34. New York University
  35. NumFOCUS
  36. OpenTeams
  37. Oracle
  38. Partnership on AI
  39. Quansight
  40. Red Hat
  41. Rensselaer Polytechnic Institute
  42. Roadzen
  43. Sakana AI
  44. SB Intuitions
  45. ServiceNow
  46. Silo AI
  47. Simons Foundation
  48. Sony Group
  49. Stability AI
  50. Tog ether AI
  51. Technical University of Munich
  52. School of Computing, Data Science and Society, University of California, Berkeley
  53. University of Illinois at Urbana-Champaign
  54. University of Notre Dame
  55. University of Texas at Austin
  56. University of Tokyo
  57. Yale University

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