Adapting a Model for a New Task
A team has a powerful language model that was trained on a vast collection of internet text. They want to adapt this model to be a helpful coding assistant that can explain code snippets in plain English. Briefly describe the structure of the data you would need to collect for the next training phase to achieve this goal.
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Ch.2 Generative Models - Foundations of Large Language Models
Foundations of Large Language Models
Foundations of Large Language Models Course
Computing Sciences
Ch.4 Alignment - Foundations of Large Language Models
Application in Bloom's Taxonomy
Cognitive Psychology
Psychology
Social Science
Empirical Science
Science
Related
Instruction Fine-Tuning
Potential for Undesirable Content Generation After SFT
Example of SFT: Question-Answering Task
Applicability of Supervised Fine-Tuning
Practical Implementation Challenges of SFT
Maximum Likelihood Estimation (MLE) as the Objective for Supervised Fine-Tuning
Instruction Fine-Tuning as a Technique of SFT
Size and Specialization of SFT Datasets
Generalization as an Outcome of SFT
Characteristics of SFT Datasets
Generalization from Supervised Fine-Tuning
Definition of SFT Datasets
A development team starts with a base language model that has been pre-trained on a massive, general-purpose dataset from the web. To make the model a specialized customer service chatbot, the team initiates a second phase of training. How would the dataset used in this second phase most likely differ from the original pre-training dataset?
Comparison of SFT and Pre-training Datasets
SFT as a Post-Training Phase
Adapting a Model for a New Task
A law firm wants to develop a language model that can take a lengthy legal contract as input and produce a concise, one-paragraph summary highlighting key clauses like the term, liability limits, and governing law. They have a team of paralegals available to create a high-quality dataset of several thousand contract-summary pairs. Which of the following approaches is the most effective and direct way to train the model for this specific task?