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Data Science Dojo's Podcast Series

Auteur(s): Data Science Dojo
  • Résumé

  • Discover the world of Generative AI and Data Science with our CEO and Chief Data Scientist, Raja Iqbal, in Data Science Dojo's very first podcast series. Join us as we explore diverse topics, break down complex concepts, share learnings and insights, through educational discussions with founders, co-founders, thought leaders and experts in the industry. 

    Tune in to make AI and Data Science trends easy to understand and empower yourself with expert knowledge! 

    © 2023 Data Science Dojo's Podcast Series
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Épisodes
  • Fireside Chat with Data Science and AI Experts: Building Large Language Models Applications with Retrieval-Augmented Generation
    Nov 14 2023

    Join us for an engaging conversation about Large Language Models (LLMs) with a panel of industry leaders: Raja Iqbal (Chief Data Scientist, Data Science Dojo), Taimur Rashid (Chief Business Officer, Redis), Sam Partee (Principal Applied AI Engineer, Redis), and Daniel Svonava (CEO, Superlinked).

    In this era where generative AI and LLMs are reshaping industries, businesses must be equipped to harness their potential fully. This discussion will focus on the common design patterns for LLM applications, especially the Retrieval-Augmented Generation (RAG) framework. The speakers will discuss various strategies for embedding knowledge into these models, using vector databases and knowledge graphs in fetching domain-specific data.

    This discussion aims to not only inspire organizational leaders to reimagine their data strategies in the face of LLMs and generative AI but also to empower technical architects and engineers with practical insights and methodologies.

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    1 h

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