Fine Tuning Large Language Models - Interview Questions and Answers & Solved Quiz Questions
In this post, I explain Fine Tuning Large Language Models: Fine Tuning, Transfer Learning, Pretraining vs Fine-Tuning, Dataset Curation, Classification, Generation, Entity Matching, Sequence Instructioning), Annotation, Labeling Strategies & Synthetic Data for Domain Adaptation, Fine-Tuning Workflows, Parameter-Efficient Fine-Tuning, Instruction Tuning & Sequential Instruction Fine-Tuning, RLHF, Reward Modeling, and Safety Tuning, Fine-Tuning for Specialized Use Cases: Domain Adaptation & Entity Matching, Adaptive Machine Translation, Model Architectures & Scaling Considerations for Fine-Tuning, Hyperparameters, Optimizers & Practical Recipes (LR, Schedules, Batch Size), Mixed Precision, Memory Optimization, and Distributed Training. If you want my full Fine Tuning LLMs document also including the following topics, you can use the Contact Form (in the right pane) or message me in LinkedIn: Tooling & Frameworks, Offline Metrics, Human Evaluation, and Task-Speci...