AI Orchestration: Validation and User Feedback and Performance Metrics
2h 2mIntermediate2025-04-07
Authors
Janani Ravi
Certified Google Cloud Architect and Data Engineer
Course details
Ready to get up to speed with the latest, most cutting-edge trends in AI orchestration? In this course, instructor Janani Ravi provides a comprehensive overview of how to effectively evaluate and integrate user feedback into AI models. Focusing on both traditional models and large language models (LLMs), Janani introduces essential concepts such as validation techniques, performance metrics, user feedback mechanisms, and more. Along the way, get hands-on experience with validating models through cross-validation and k-fold cross-validation, as well as practical applications of performance metrics like accuracy, precision, recall, using reinforcement learning for human feedback, and the BLEU, ROUGE, and METEOR scores for LLM evaluation.
Skills covered
Natural Language Processing (NLP)Artificial Intelligence (AI)One-Off
Concepts
0. Introduction
- 01 - Prerequisites
- 02 - Quick overview of this course
1. Validating ML Models and LLMs
- 03 - Validation in the ML workflow
- 04 - Types of cross-validation
- 05 - Regular and k-fold cross-validation
- 06 - Stratified cross-validation and nested cross-validation
- 07 - K-fold cross-validation
- 08 - Validating LLMs
- 09 - Offline validation
- 10 - Golden datasets
- 11 - Benchmarking
- 12 - AI validating AI
2. Evaluating ML Models and LLMs
- 13 - Evaluating models using metrics
- 14 - Evaluating regression models
- 15 - Evaluating classification models
- 16 - Evaluating clustering models
- 17 - Accuracy precision recall
- 18 - Evaluating large language models (LLMs)
- 19 - Human evaluation
- 20 - Statistical methods for LLM evaluation
- 21 - ROUGE scores
- 22 - BLEU score
- 23 - METEOR score
- 24 - Perplexity
- 25 - Model-based methods for LLM evaluation
- 26 - Natural language inference
- 27 - BLEURT
- 28 - Judge models
- 29 - LLM evaluation
3. Collecting and Using User Feedback in LLMs
- 30 - User feedback in LLMs
- 31 - Implicit and explicit feedback
- 32 - Reinforcement learning
- 33 - Reinforcement learning from human feedback
Conclusion
- 34 - Summary and next steps
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