×
Inside Meta’s race to do anything necessary to beat OpenAI
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

OpenAI and Meta are engaged in a high-stakes competition to develop advanced AI systems, with internal Meta documents revealing controversial data acquisition strategies.

The core revelation: Meta executives discussed using pirated content from Library Genesis (LibGen), a book piracy website, to train their AI models while attempting to conceal this usage.

  • Internal communications show Meta’s primary objective was to match GPT-4’s capabilities by any means necessary
  • Company leadership viewed LibGen’s content as “essential” for achieving state-of-the-art performance
  • Executives discussed removing copyright information and metadata from training data to avoid legal complications

Strategic considerations: Meta’s internal deliberations highlight the growing challenge of acquiring sufficient high-quality training data for large language models.

  • The company believed competitors were also utilizing similar data sources for AI training
  • Meta took specific steps to avoid externally citing LibGen data usage
  • The scarcity of legitimate training data has pushed AI companies to explore controversial data acquisition methods

Legal implications: These revelations emerge as part of an ongoing class action lawsuit against Meta regarding AI training data.

  • While portions of the lawsuit were dismissed in 2023, these new documents could strengthen the plaintiffs’ position
  • The documents demonstrate Meta’s awareness of potential legal risks associated with their data acquisition strategy
  • The case highlights the broader industry tension between rapid AI development and copyright compliance

Industry context: The competitive pressure in AI development is creating ethical and legal challenges for major tech companies.

  • Companies face increasing scrutiny over their data collection and usage practices
  • The race to achieve AI supremacy is pushing organizations to make difficult choices about data sourcing
  • This situation exemplifies the growing tension between innovation speed and legal compliance in AI development

Looking ahead: These revelations could trigger increased regulatory attention and force AI companies to reconsider their approach to training data acquisition, potentially slowing development timelines but establishing more sustainable practices for the industry’s future growth.

Inside Meta’s race to beat OpenAI: “We need to learn how to build frontier and win this race”

Recent News

AI courses from Google, Microsoft and more boost skills and résumés for free

As AI becomes critical to business decision-making, professionals can enhance their marketability with free courses teaching essential concepts and applications without requiring technical backgrounds.

Veo 3 brings audio to AI video and tackles the Will Smith Test

Google's latest AI video generation model introduces synchronized audio capabilities, though still struggles with realistic eating sounds when depicting the celebrity in its now-standard benchmark test.

How subtle biases derail LLM evaluations

Study finds language models exhibit pervasive positional preferences and prompt sensitivity when making judgments, raising concerns for their reliability in high-stakes decision-making contexts.