text stringlengths 5 20 |
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transformers>=4.40.0 |
trl>=0.8.0 |
peft>=0.11.0 |
bitsandbytes>=0.43.0 |
accelerate>=0.30.0 |
datasets>=2.19.0 |
pyyaml>=6.0 |
sentencepiece |
protobuf |
huggingface-hub |
llama-cpp-python |
numpy |
scikit-learn |
mumble-cleanup training data + code
Reproducibility release for the 2-stage LoRA fine-tune of Qwen/Qwen2.5-0.5B-Instruct that produces the Echo Flow AI transcript-cleanup model. The trained GGUF is published separately at amitashwini/mumble-cleanup-2stage.
What's in this repo
data/synthetic/corpus_50k.jsonl— 50,000 synthetic(raw, clean)transcript pairs from the Echo Flow combinatorial template generator. Each line is a chat-template JSON object:{"messages": [{"role":"system",...}, {"role":"user",...}, {"role":"assistant",...}]}.scripts/— 14 Python scripts: synthetic data generation, MLX training, evaluation, GGUF conversion, and HF upload. See "Pipeline" below.configs/— LoRA training configurations for Hugging Facetrl/PEFT.requirements-train.txt— Python dependencies for the training pipeline.
Pipeline
1. Generate synthetic → scripts/generate_synthetic_corpus.py
2. (optional) domain → scripts/generate_domain_examples.py
3. Prepare MLX data → scripts/prepare_mlx_data.py + scripts/prepare_stage2_data.py
4. Stage 1: pretrain → scripts/train_2stage.py (LoRA on 50k synthetic, lr=2e-4)
5. Stage 2: fine-tune → scripts/train_2stage.py (resume adapter, lr=2e-5 on 688 real)
6. Convert to GGUF → scripts/convert_to_gguf.py (or llama.cpp convert_hf_to_gguf.py + llama-quantize)
7. Evaluate → scripts/compare_models.py
8. Upload to HF → scripts/upload_to_hf.py
Reproducing the 2-stage model
Hardware
Trained on an Apple M4 (16 GB RAM, macOS 26+). The same script works on a CUDA GPU by editing MLX_CONFIG/device flags in train_2stage.py; for CUDA you would use the Hugging Face trl path in train_lora.py instead of mlx_lm.lora.
Environment
python3 -m venv .venv
source .venv/bin/activate
pip install -r requirements-train.txt
Build llama.cpp tools (for GGUF conversion)
cd ../EchoFlow/Vendor/llama.cpp # or your llama.cpp checkout
cmake -S . -B build-tools -DLLAMA_BUILD_TOOLS=ON -DGGML_METAL=ON
cmake --build build-tools --target llama-quantize -j8
Run the full pipeline
# 1. Generate synthetic data (already in this repo at data/synthetic/corpus_50k.jsonl)
python scripts/generate_synthetic_corpus.py \
--output data/synthetic/corpus_50k.jsonl --count 50000 --seed 2026
# 2. Prepare MLX chat-format datasets
python scripts/prepare_mlx_data.py \
--input data/synthetic/corpus_50k.jsonl \
--output data/mlx_dataset --valid-count 200
python scripts/prepare_stage2_data.py \
--output data/mlx_dataset_688 --valid-count 50
# 3. 2-stage LoRA training
python scripts/train_2stage.py
# 4. Fuse + convert to GGUF Q4_K_M
python ../EchoFlow/Vendor/llama.cpp/convert_hf_to_gguf.py \
data/models/mumble-cleanup-2stage/fused \
--outfile data/models/mumble-cleanup-2stage-f16.gguf
../EchoFlow/Vendor/llama.cpp/build-tools/bin/llama-quantize \
data/models/mumble-cleanup-2stage-f16.gguf \
data/models/mumble-cleanup-2stage-q4km.gguf Q4_K_M
# 5. Evaluate
python scripts/compare_models.py \
--baseline path/to/original/mumble-cleanup-q4km.gguf \
--candidate data/models/mumble-cleanup-2stage-q4km.gguf \
--corpus ../EchoFlow/Tests/EchoFlowUIReviewTests/Fixtures/DictationQuality
Expected result: 10/10 pass rate on the golden corpus, SHA-256 fc6409457b8db4b37ef6184ae720a9bffe4df5ac506979ed83d0d53faab158ab, file size 397,807,904 bytes.
Real 688-pair fine-tune data
The stage-2 fine-tune uses adikuma/mumble-cleanup-dataset (688 hand-curated (raw, clean) pairs) — that is not included in this repo to keep the release focused on the data Echo Flow contributed. It is loaded at runtime via:
from datasets import load_dataset
ds = load_dataset("adikuma/mumble-cleanup-dataset")
License
Apache-2.0. The base Qwen2.5-0.5B-Instruct model and the real fine-tune data are both Apache-2.0.
Citation
If you use this data or training pipeline, please cite:
@software{echo_flow_ai_2stage,
title = {Echo Flow AI: 2-stage LoRA fine-tune for speech-to-text cleanup},
author = {Echo Flow},
year = {2026},
url = {https://huggingface.co/amitashwini/mumble-cleanup-2stage}
}
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