Machine Learning Street Talk (MLST) avatar

Dexa/Machine Learning Street Talk (MLST)

Learn more

Neural Agents' Rationale

Edward discusses the importance of neural agents providing sources for their decisions and the need for models to justify their answers. Tim highlights the effectiveness of retrieval augmented hybrid modalities in reducing misinformation.
  • In this clip

  • From this podcast

    Machine Learning Street Talk (MLST) avatar

    Machine Learning Street Talk (MLST)

    #103 - Prof. Edward Grefenstette - Language, Semantics, Philosophy

  • Related Questions

    • Do I get it right that a Retrieval Augmented Generation (RAG) system can retrieve data in addition to its training data as discussed in the episode with Cohere co-founder Nick Frosst on building LLM apps for business and the clip Model Evaluation Insights?

    • Do I get it right that a Retrieval Augmented Generation (RAG) system can retrieve data in addition to its training data, as discussed in the episode with Cohere co-founder Nick Frosst on building LLM apps for business and the clip Model Evaluation Insights?

    • Do I get it right that a Retrieval Augmented Generation (RAG) system can retrieve data in addition to its training data as discussed in the episode with Cohere co-founder Nick Frosst on building LLM apps for business in the episode MLOps for GenAI Applications // Harcharan Kabbay // #256 and the clip Evaluating LLM Responses?

Built by
Charlie AI
© 2024 Machine Learning Street Talk (MLST)TermsPrivacySupport