• Cryptocurrency
  • Earnings
  • Enterprise
  • About TechBooky
  • Submit Article
  • Advertise Here
  • Contact Us
TechBooky
  • African
  • AI
  • Metaverse
  • Gadgets
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
  • African
  • AI
  • Metaverse
  • Gadgets
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
TechBooky
Generic selectors
Exact matches only
Search in title
Search in content
Post Type Selectors
Home Artificial Intelligence

Meta Develops AI to Evaluate Other AI Models

Akinola Ajibola by Akinola Ajibola
October 20, 2024
in Artificial Intelligence
Share on FacebookShare on Twitter

To create accurate assessments of the models’ answers, Meta’s “Self-Taught Evaluator” uses the same “chain of thought” method as OpenAI’s o1 models.

Meta, said on Friday that it was launching a number of new AI models from its research division, one of which is a “Self-Taught Evaluator” that might pave the way for a reduction in the amount of human intervention in the AI development process.

The tool’s release comes after Meta first described it in a paper published in August. In that work, Meta explained how the tool uses the same “chain of thought” method as OpenAI’s recently released o1 models to produce accurate assessments of the models’ replies.

This method, which divides difficult issues into more manageable logical steps, seems to increase the precision of answers to difficult problems in disciplines like math, physics, and coding.

The evaluator model was trained by Meta’s researchers using just AI-generated data, excluding human involvement at that point as well.

Two of the Meta researchers working on the project told Reuters that the ability to use AI to evaluate AI reliably provides a glimpse of a potential road toward creating autonomous AI entities that can learn from their own mistakes.

Such agents are envisioned by many in the AI industry as digital assistants that possess the intelligence to do a wide range of activities without the need for human participation.

Self-improving models could eliminate the need for Reinforcement Learning from Human Feedback, a currently employed, frequently costly, and ineffective method that depends on human annotators with specialized knowledge to correctly label data and confirm the accuracy of responses to challenging writing and math problems.

One of the researchers, Jason Weston, stated, “As AI becomes more and more super-human, we hope that it will get better and better at checking its work, so that it will actually be better than the average human.”

According to him, “the idea of being self-taught and able to self-evaluate is basically crucial to the idea of getting to this sort of super-human level of AI,”.

Research on the idea of Reinforcement Learning from AI Feedback, or RLAIF, has also been published by other businesses, such as Google and Anthropic. However, those businesses often don’t make their models available to the general public, unlike Meta.

An upgrade to Meta’s image-identification Segment Anything model, a tool that expedites LLM response production times, and datasets that can help with the development of novel inorganic materials were among the other AI capabilities the business unveiled on Friday.

The goal of many AI specialists is to build digital assistants that are capable of handling a variety of activities without assistance from humans. Meta intends to increase the effectiveness of AI training procedures, which now call for a great deal of human supervision and knowledge, by utilizing self-learning models.

One of the researchers, Jason Weston, expressed hope that as AI develops, it would grow better at checking its own work and may even outperform humans in some situations. He emphasized that achieving a greater degree of AI capabilities requires the ability to learn and assess itself.

Similar ideas are also being investigated by other businesses, such as Google and Anthropic, albeit they typically do not make their models publicly accessible.

In addition to the Self-Taught Evaluator, Meta also made available resources to assist scientists in finding novel materials and an improved version of their image-recognition software.

In the meanwhile, Meta is combining its three creator monetization programs into one program and making adjustments to its Facebook monetization program. The goal of this new strategy is to make it easier for platform builders to generate money.

With different qualifying requirements and application processes, producers can already make money through in-stream advertisements, ads on reels, and performance bonuses. The updated monetization scheme will streamline the onboarding process into a single, cohesive experience by requiring creators to apply just once.

Related Posts:

  • GettyImages-1778706504
    Rumour: Microsoft Developing AI Models to Rival OpenAI
  • 311e7d74e4205b24983de43507b5d21416673b241b147b063c3e46c010f7f6ad
    Blumhouse and Meta Test AI Filmmaking Model
  • acastro_211101_1777_meta_0002
    Meta Opens Up Its AI Model To Go Head-To-Head With ChatGPT
  • LIVESNS6IVOAJL44LHJMGKDVZI
    Open AI's GPT-4.5 is Here for Pro Users
  • meta
    Meta is Developing Its Own AI-Powered Search Engine
  • header_image_mad_img_1753431126
    OpenAI Set To Release GPT-5 in August
  • CopyofNewPPTTemplates-2025-07-08T130434-1751960095601
    Meta Recruits Apple's Top AI Engineer in Talent War
  • Explained-What-is-Meta-AI
    Meta Hires Scale AI Founder for New Superintelligence Labs

Discover more from TechBooky

Subscribe to get the latest posts sent to your email.

Tags: AIai modelsartificial intelligencemeta
Akinola Ajibola

Akinola Ajibola

BROWSE BY CATEGORIES

Select Category

    Receive top tech news directly in your inbox

    subscription from
    Loading

    Freshly Squeezed

    • Google Launches ‘vibe-coding’ App Called Opal July 26, 2025
    • Intel Plans to Spin off Network and Edge Division July 26, 2025
    • Investigation Underway into Starlink Global Outage July 26, 2025
    • Microsoft Look Into Microsoft 365 Admin Centre Outage July 26, 2025
    • FIRS Partners with Banks and Fintechs for VAT Monitoring July 26, 2025
    • X Experiments with Community Notes for Popular Content July 25, 2025

    Browse Archives

    July 2025
    MTWTFSS
     123456
    78910111213
    14151617181920
    21222324252627
    28293031 
    « Jun    

    Quick Links

    • About TechBooky
    • Advertise Here
    • Contact us
    • Submit Article
    • Privacy Policy
    Generic selectors
    Exact matches only
    Search in title
    Search in content
    Post Type Selectors
    • African
    • Artificial Intelligence
    • Gadgets
    • Metaverse
    • Tips
    • About TechBooky
    • Advertise Here
    • Submit Article
    • Contact us

    © 2025 Designed By TechBooky Elite

    Discover more from TechBooky

    Subscribe now to keep reading and get access to the full archive.

    Continue reading

    We use cookies to ensure that we give you the best experience on our website. If you continue to use this site we will assume that you are happy with it.