The Emerging Toolkit for Reliable, High-quality LLM Applications
Offered By: MLOps.community via YouTube
Course Description
Overview
Explore emerging techniques in "LLMOps" for building, tuning, and maintaining high-quality LLM-based applications in this 31-minute conference talk by Matei Zaharia. Discover tools for testing and visualizing LLM results, including those integrated into MLOps frameworks like MLflow. Learn about advanced programming frameworks such as Demonstrate-Search-Predict (DSP) that automatically improve LLM applications based on feedback. Gain insights into controlling LLM outputs and generating better training and evaluation data. Benefit from Zaharia's experience deploying LLMs in various applications at Databricks, including QA bots and code assistants. Understand how these techniques are being incorporated into MLOps products and MLflow to enhance the reliability and quality of LLM applications in high-stakes environments.
Syllabus
The Emerging Toolkit for Reliable, High-quality LLM Applications // Matei Zaharia //LLMs in Prod Con
Taught by
MLOps.community
Related Courses
Predicción del fraude bancario con autoML y PycaretCoursera Project Network via Coursera Clasificación de datos de Satélites con autoML y Pycaret
Coursera Project Network via Coursera Regresión (ML) en la vida real con PyCaret
Coursera Project Network via Coursera ML Pipelines on Google Cloud
Google Cloud via Coursera ML Pipelines on Google Cloud
Pluralsight