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nlp-master/CLAUDE.md
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Add manifest.json to .gitignore so it doesn't conflict between machines.
Also add CLAUDE.md for Claude Code guidance.

Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
2026-03-24 02:13:08 +02:00

3.2 KiB

CLAUDE.md

This file provides guidance to Claude Code (claude.ai/code) when working with code in this repository.

Project Overview

NLP Master is a personal audio-to-text pipeline that downloads, transcribes, and summarizes Romanian NLP course lectures from cursuri.aresens.ro/curs/26. It processes ~35 MP3 files (~58 hours total) across 5 modules (6th pending).

Architecture

Three-stage batch pipeline, all driven by a shared manifest.json:

  1. download.py — Logs into the course site (credentials from .env), scrapes module/lecture structure, downloads MP3s to audio/. Updates manifest with download status. Resumable (skips existing files).

  2. transcribe.py — Reads manifest, converts MP3→WAV (16kHz mono via ffmpeg), runs whisper.cpp (whisper-cli.exe) for Romanian speech-to-text. Outputs .txt and .srt to transcripts/. Has a quality gate after the first module. Resumable. Supports --modules 1-3 filter.

  3. summarize.py — Generates Claude-compatible prompts from transcripts (chunks long texts at sentence boundaries with overlap). --compile flag assembles all summaries into SUPORT_CURS.md master study guide. Summaries are in Romanian.

setup_whisper.py — Auto-downloads whisper.cpp (Vulkan build for AMD GPU), ffmpeg, and the Whisper model. Called by run.bat.

run.bat — Windows batch orchestrator: checks prerequisites, auto-installs missing components, creates venv, runs download→transcribe pipeline. Accepts optional module filter argument.

Commands

# Full pipeline (Windows native)
run.bat              # download + transcribe all modules
run.bat 4-5          # transcribe only modules 4-5

# Individual steps (from venv)
python download.py                # download audio files
python transcribe.py              # transcribe all
python transcribe.py --modules 1  # transcribe module 1 only
python summarize.py               # print summary prompts to stdout
python summarize.py --compile     # compile SUPORT_CURS.md from existing summaries

# Setup components individually
python setup_whisper.py whisper   # download whisper.cpp binary
python setup_whisper.py model     # download Whisper model
python setup_whisper.py ffmpeg    # download ffmpeg

Key Design Decisions

  • Platform split: Scripts run on native Windows (whisper.cpp needs Vulkan GPU access). Claude Code runs from WSL2 for summaries.
  • Vulkan, not CUDA: Hardware is AMD Radeon RX 6600M 8GB (RDNA2). whisper.cpp is built with Vulkan backend.
  • Model: ggml-medium-q5_0.bin (quantized medium, fits in 8GB VRAM). Stored in models/.
  • manifest.json is the shared state between all scripts — tracks download/transcribe status per lecture. Checkpointed after each file.
  • Resumability: All scripts skip already-completed files. Safe to re-run after failures or when new modules appear.
  • Environment variables: COURSE_USERNAME and COURSE_PASSWORD in .env. Optional: WHISPER_BIN, WHISPER_MODEL to override paths.

Dependencies

Python packages (in requirements.txt): requests, beautifulsoup4, python-dotenv

External tools (auto-installed by run.bat/setup_whisper.py):

  • whisper.cpp (whisper-cli.exe) with Vulkan support
  • ffmpeg (for MP3→WAV conversion)