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A package that evaluates and plots results to test Throughput based on number of draft tokens

Project description

Speculative-Decoding-DraftToken-Analysis

This project analyzes the performance and quality trade-offs in speculative decoding using draft tokens with different model configurations. It compares output speed, semantic similarity, and ROUGE-L scores across varying numbers of draft tokens.

If you've installed using pip,, Run main analysis script (Runs default phi-3-mini-4k-instruct model)

python -m speculative_decoding_metrics.main

If you've installed using pip, You can also specify your preferred model using --model and --prompt

python -m speculative_decoding_metrics.main --model phi-3-mini-4k-instruct --prompt "What are the benefits of AI in education?"

📌 Overview

Speculative decoding is a technique to accelerate language generation by proposing draft tokens before validating them with a larger model. This repo evaluates:

  • Throughput (tokens/sec)
  • Semantic similarity (cosine similarity via sentence embeddings)
  • Text quality (ROUGE-L score)

All experiments are run using:

  • Main model: 8-bit quantized (mlx-community/<model>-8bit)
  • Draft model: 4-bit quantized (mlx-community/<model>-4bit)

📊 Visualized Metrics

Three metrics are plotted against the number of draft tokens:

  1. Tokens per second – Measures generation speed.
  2. Cosine Similarity – Semantic similarity vs baseline (no draft).
  3. ROUGE-L – Overlap-based quality score vs baseline.

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⚙️ Requirements

  • Python 3.8+
  • MLX + mlx_lm
  • SentenceTransformers
  • rouge_score
  • Matplotlib
  • NumPy

Install dependencies using pip

pip install mlx_lm sentence-transformers rouge-score matplotlib numpy

⚙️ Customization

Tailor the analysis to your specific needs:

  • Prompt Modification: Adjust the input prompt within evaluator.py by changing the self.prompt_text variable.
  • Model Selection: Experiment with different MLX-compatible models by modifying the model names in the scripts.
  • Draft Token Range: Alter the range of draft tokens explored in main.py.

🖼️ Example Output

The script will generate plots showcasing the trade-offs between generation speed and output quality as a function of the number of draft tokens used. These visualizations provide insights into the optimal number of draft tokens for different use cases.

🙏 Acknowledgments

This work leverages the following open-source projects:

  • MLX: Developed by Apple.
  • HuggingFace Transformers & SentenceTransformers: Provided by Hugging Face.
  • ROUGE Scoring: Developed by Google Research.

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