Managing Data for Effective GenAI Application - MLOps Podcast #216
Offered By: MLOps.community via YouTube
Course Description
Overview
Explore a comprehensive podcast episode featuring QuantumBlack AI by McKinsey's Principal Data Engineer, Anu Arora, and Associate Partner, Anass Bensrhir, discussing the management of data for effective Generative AI applications. Delve into the challenges organizations face when scaling GenAI, with a focus on data as a primary inhibitor. Learn about strengthening data foundations, managing unstructured data, and navigating data lakes and ETL processes. Gain insights on data privacy concerns in the context of Large Language Models (LLMs), balancing LLM adoption risks, and implementing effective LLM strategies. Discover the heavy workload of data engineers and the decision-making process between creating or waiting for AI solutions. Perfect for professionals interested in the intersection of data management and Generative AI applications across industries.
Syllabus
[] Anass and Anu's preferred coffee
[] Takeaways
[] Please like, share, leave a review, and subscribe to our MLOps channels!
[] Huge shout out to our sponsor QuantumBlack!
[] Anu's tech background
[] Anass tech background
[] The landscape of data
[] Dealing with unstructured data
[] Data lakes and ETL processes
[] Data Engineers' Heavy Workload
[] Data privacy and PII in the new LLMs paradigm
[] Balancing LLM Adoption Risk
[] Effective LMS Implementation Strategy
[] Decisions: Create or Wait
[] Wrap up
Taught by
MLOps.community
Related Courses
Google BARD and ChatGPT AI for Increased ProductivityUdemy Bringing LLM to the Enterprise - Training From Scratch or Just Fine-Tune With Cerebras-GPT
Prodramp via YouTube Generative AI and Long-Term Memory for LLMs
James Briggs via YouTube Extractive Q&A With Haystack and FastAPI in Python
James Briggs via YouTube OpenAssistant First Models Are Here! - Open-Source ChatGPT
Yannic Kilcher via YouTube