Personalised Distillation: Empowering Open-Sourced LLMs with Adaptive Learning for Code Generation

28 Oct 2023  ·  Hailin Chen, Amrita Saha, Steven Hoi, Shafiq Joty ·

With the rise of powerful closed-sourced LLMs (ChatGPT, GPT-4), there are increasing interests in distilling the capabilies of close-sourced LLMs to smaller open-sourced LLMs. Previous distillation methods usually prompt ChatGPT to generate a set of instructions and answers, for the student model to learn. However, such standard distillation approach neglects the merits and conditions of the student model. Inspired by modern teaching principles, we design a personalised distillation process, in which the student attempts to solve a task first, then the teacher provides an adaptive refinement for the student to improve. Instead of feeding the student with teacher's prior, personalised distillation enables personalised learning for the student model, as it only learns on examples it makes mistakes upon and learns to improve its own solution. On code generation, personalised distillation consistently outperforms standard distillation with only one third of the data. With only 2.5-3K personalised examples that incur a data-collection cost of 4-6$, we boost CodeGen-mono-16B by 7% to achieve 36.4% pass@1 and StarCoder by 12.2% to achieve 45.8% pass@1 on HumanEval.

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Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Result Benchmark
Code Generation HumanEval CodeGen-Mono 16B (PERsD-combined) Pass@1 36.4 # 68
Code Generation HumanEval CodeGen-Mono 6.1B (PERsD-combined) Pass@1 33.8 # 72
Code Generation HumanEval StarCoder 15.5B (PERsD-combined) Pass@1 45.8 # 50

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