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Control-LLM-Llama3.1-8B-OpenCoder8

This is a fine-tuned model of Llama-3.1-8B-Instruct for coding tasks on OpenCoder SFT dataset described in the paper: Control LLM: Controlled Evolution for Intelligence Retention in LLM.

Code: https://github.com/linkedin/ControlLLM.

Linked Open Source code - training, eval and benchmark

This model is associated with the github: Control-LLM.

Evaluation Results

Here is an overview of the evaluation results and findings:

Hybrid Expansion on OpenCoder

The following diagram illustrates how hybrid expansion works.

Catastrophic Forgetting

Benchmark Results Table

The table below summarizes evaluation results across coding tasks and original capabilities.

Model MB+ MS HE+ HE C-Avg ARC GP MLU MLUP O-Avg Overall
Llama3.1-8B-Ins 70.4 67.7 66.5 70.7 69.1 83.4 29.9 72.4 46.7 60.5 64.8
OpenCoder-8B-Ins 81.2 76.3 78.0 82.3 79.5 8.2 25.4 37.4 11.3 24.6 52.1
Full Param Tune 75.1 69.6 71.3 76.8 73.3 24.4 21.9 43.0 19.2 31.5 52.4
Partial Param Tune 75.7 71.6 74.4 79.3 75.0 70.2 28.1 60.7 32.4 48.3 61.7
Stack Expansion 77.2 72.8 73.2 78.7 75.6 80.0 26.3 66.6 38.2 54.2 64.9
ControlLLM-Hybrid 77.5 73.5 76.2 82.3 77.1 80.9 32.6 68.1 40.3 56.0 66.6

Explanation:

  • MB+: MBPP Plus
  • MS: MBPP Sanitized
  • HE+: HumanEval Plus
  • HE: HumanEval
  • C-Avg: Coding - Size Weighted Average across MB+, MS, HE+, and HE
  • ARC: ARC benchmark
  • GP: GPQA benchmark
  • MLU: MMLU (Massive Multitask Language Understanding)
  • MLUP: MMLU Pro
  • O-Avg: Original Capability - Size Weighted Average across ARC, GPQA, MMLU, and MMLU Pro
  • Overall: Combined average across all tasks
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Datasets used to train ControlLLM/Control-LLM-Llama3.1-8B-OpenCoder8-Instruct

Evaluation results

  • pass_at_1,n=1 (code_instruct) on Code Evaluation Dataset
    self-reported
    0.771
  • pass_at_1,n=1 (humaneval_greedy_instruct) on Code Evaluation Dataset
    self-reported
    0.823
  • pass_at_1,n=1 (humaneval_plus_greedy_instruct) on Code Evaluation Dataset
    self-reported
    0.762
  • pass_at_1,n=1 (mbpp_plus_0shot_instruct) on Code Evaluation Dataset
    self-reported
    0.775
  • pass_at_1,n=1 (mbpp_sanitized_0shot_instruct) on Code Evaluation Dataset
    self-reported
    0.735
  • exact_match,strict-match (original_capability_instruct) on Llama-3.1-8B-Instruct-evals Dataset
    self-reported
    0.560
  • exact_match,strict-match (meta_arc_0shot_instruct) on Llama-3.1-8B-Instruct-evals Dataset
    self-reported
    0.809
  • exact_match,strict-match (meta_gpqa_0shot_cot_instruct) on Llama-3.1-8B-Instruct-evals Dataset
    self-reported
    0.326
  • exact_match,strict-match (meta_mmlu_0shot_instruct) on Llama-3.1-8B-Instruct-evals Dataset
    self-reported
    0.681
  • exact_match,strict-match (meta_mmlu_pro_5shot_instruct) on Llama-3.1-8B-Instruct-evals Dataset
    self-reported
    0.403