Metadata-Version: 2.4
Name: vtt-transcribe
Version: 0.3.0b3
Summary: Transcribe video and audio files to text using OpenAI Whisper with optional speaker diarization
Project-URL: Homepage, https://github.com/JLCodeSource/vtt-transcribe
Project-URL: Repository, https://github.com/JLCodeSource/vtt-transcribe
Project-URL: Issues, https://github.com/JLCodeSource/vtt-transcribe/issues
Project-URL: Changelog, https://github.com/JLCodeSource/vtt-transcribe/blob/main/CHANGELOG.md
Project-URL: Project, https://github.com/users/JLCodeSource/projects/2
Author-email: JLCodeSource <JLCodeSource@gmail.com>
License: BSD-3-Clause
License-File: LICENSE
Keywords: audio,diarization,openai,speech-to-text,subtitles,transcription,video,whisper
Classifier: Development Status :: 4 - Beta
Classifier: Intended Audience :: Developers
Classifier: Intended Audience :: End Users/Desktop
Classifier: License :: OSI Approved :: BSD License
Classifier: Operating System :: OS Independent
Classifier: Programming Language :: Python :: 3
Classifier: Programming Language :: Python :: 3.13
Classifier: Topic :: Multimedia :: Sound/Audio :: Speech
Classifier: Topic :: Multimedia :: Video
Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
Classifier: Topic :: Software Development :: Libraries :: Python Modules
Classifier: Typing :: Typed
Requires-Python: >=3.13
Requires-Dist: moviepy>=2.2.1
Requires-Dist: openai>=2.15.0
Requires-Dist: python-dotenv>=1.0.0
Provides-Extra: build
Requires-Dist: build>=1.0.0; extra == 'build'
Requires-Dist: hatchling>=1.18.0; extra == 'build'
Requires-Dist: twine>=4.0.0; extra == 'build'
Provides-Extra: dev
Requires-Dist: mypy>=1.5.0; extra == 'dev'
Requires-Dist: pre-commit>=3.4.0; extra == 'dev'
Requires-Dist: pytest-cov>=4.1.0; extra == 'dev'
Requires-Dist: pytest>=7.4.0; extra == 'dev'
Requires-Dist: ruff>=0.1.0; extra == 'dev'
Provides-Extra: diarization
Requires-Dist: pyannote-audio>=3.1.0; extra == 'diarization'
Requires-Dist: torch>=2.1.0; extra == 'diarization'
Description-Content-Type: text/markdown

# vtt-transcribe

Takes a video file, extracts or splits the audio, and transcribes the audio to text
using OpenAI's Whisper model (via the `openai` Python client).

This repository provides a small CLI tool (`vtt`) and a set of helper
functions for handling audio extraction, chunking large audio files, and
formatting verbose JSON transcripts into readable timestamped output.

## Features
 - Extract audio from video files (writes `.mp3` by default) or transcribe audio directly (.mp3, .wav, .ogg, .m4a)
 - Prefer minute-aligned chunk durations for large audio files exceeding 25MB API limit
 - Transcribe audio via OpenAI's Whisper API with `verbose_json` response format
 - Speaker diarization using pyannote.audio to identify and label speakers in transcripts
 - Format transcripts into human-friendly lines: `[HH:MM:SS - HH:MM:SS] text` with optional speaker labels
 - Shift chunk-local timestamps into absolute timeline when chunking
 - Keep or delete intermediate audio/chunk files based on flags
 - Interactive speaker review to rename/merge speakers after diarization

## Dependencies
 - Python 3.13+
 - **ffmpeg** (required for video/audio processing via moviepy)
 - moviepy (audio/video helpers)
 - openai (Whisper API client)
 - pyannote.audio (speaker diarization, optional - requires [diarization] extra)
 - torch (required for pyannote.audio)
 - Dev / test: pytest, mypy, ruff, pre-commit, coverage, python-dotenv

## Prerequisites
 - **ffmpeg must be installed** on your system for video/audio processing
 - **Recommended approach**: Use the provided `.devcontainer` which includes:
   - Pre-configured ffmpeg installation
   - GPU support for diarization (if host has NVIDIA GPU + drivers)
   - All Python dependencies
   - VS Code extensions and settings
 - **Manual setup**: If not using devcontainer, ensure ffmpeg is installed:
   - Ubuntu/Debian: `sudo apt-get install ffmpeg`
   - macOS: `brew install ffmpeg`
   - Windows: Download from https://ffmpeg.org/download.html

## Speaker Diarization
 - The speaker diarization feature (`--diarize`) identifies and labels different speakers in audio
 - **Requirements:**
   - Hugging Face token (set `HF_TOKEN` environment variable or use `--hf-token` flag)
   - **User must accept pyannote model access at https://huggingface.co/pyannote/speaker-diarization-3.1**
   - Minimum audio duration: ~10 seconds (shorter files may fail)
 - **GPU Support (Optional):**
   - Can leverage CUDA GPUs for faster processing (10-100x speedup)
   - By default, uses `--device auto` which automatically detects and uses CUDA if available
   - To explicitly control device selection, use `--device cuda` or `--device cpu`
   - .devcontainer handles prerequisites for GPU support
   - Prerequisites for GPU support:
     - NVIDIA GPU with CUDA support
     - NVIDIA drivers installed on the host system
     - `nvidia-container-toolkit` installed on the host (for Docker/devcontainer)
   - If GPU is not available or fails, automatically falls back to CPU



## Quick Start

### Option 1: Using devcontainer (Recommended)
1. Open project in VS Code
2. Install "Dev Containers" extension
3. Click "Reopen in Container" when prompted (or use Command Palette: "Dev Containers: Reopen in Container")
4. The devcontainer includes ffmpeg, GPU support, and all dependencies pre-configured

### Option 2: Manual setup

1. Ensure ffmpeg is installed on your system (see Prerequisites above)

## Installation

### From PyPI (Recommended)

```bash
# Basic installation (transcription only)
pip install vtt-transcribe

# OR: With diarization support
pip install vtt-transcribe[diarization]

# Using uv (faster)
uv pip install vtt-transcribe
uv pip install vtt-transcribe[diarization]
```

> **Note:** Installing with `[diarization]` extras adds large dependencies such as PyTorch and `pyannote.audio`, which significantly increases the download and install size of your environment. The actual diarization model weights are typically downloaded at runtime (e.g., via the Hugging Face cache) on first use, so overall disk usage for diarization (dependencies + cached models) can reach several GB. Only install these extras if you need speaker identification features.

### From Source

1. Ensure ffmpeg is installed on your system (see Prerequisites above)

2. Run the installer which installs `uv` and creates the project's virtual environment:

```bash
# Basic install (transcription only, no diarization)
make install

# OR: Install with diarization support (includes torch + pyannote.audio)
make install-diarization
```

## Upgrading from 0.2.0

**Important:** Version 0.3.0 introduces optional dependencies for speaker diarization. If you are upgrading from 0.2.0 and want to use diarization features, you need to explicitly install the `[diarization]` extra. See the [CHANGELOG](CHANGELOG.md) for detailed upgrade instructions.

## Setup Environment Variables

You can set environment variables in your shell or create a `.env` file in your project directory:

**Option 1: Shell environment**
```bash
export OPENAI_API_KEY="your-openai-key"
export HF_TOKEN="your-huggingface-token"  # Only needed for --diarize
```

**Option 2: .env file (automatically loaded)**
```bash
# Create a .env file in your project directory
echo 'OPENAI_API_KEY="your-openai-key"' > .env
echo 'HF_TOKEN="your-huggingface-token"' >> .env

# For publishing to PyPI (developers only)
echo 'TWINE_USERNAME=__token__' >> .env
echo 'TESTPYPI_API_TOKEN=your-testpypi-token' >> .env
echo 'PYPI_API_TOKEN=your-pypi-token' >> .env
```

The tool will automatically load variables from `.env` if the file exists.

**Publishing Environment Variables (Developers Only):**
- `TWINE_USERNAME`: Should always be `__token__` for PyPI token authentication
- `TESTPYPI_API_TOKEN`: Your TestPyPI API token
- `PYPI_API_TOKEN`: Your PyPI API token
- These are only needed if you're building and publishing packages using `make build`, `make publish-test`, or `make publish`

## Usage

### Command Line

```bash
# Basic transcription
vtt path/to/input.mp4

# With speaker diarization
vtt path/to/input.mp4 --diarize

# Direct audio transcription
vtt path/to/audio.mp3 --diarize

# Using uv run (if installed from source)
uv run vtt path/to/input.mp4
```

### CLI options

**Input/Output:**
 - `input_file`: positional path to the input video or audio file (.mp4, .mp3, .wav, .ogg, .m4a)
 - `-k, --api-key`: OpenAI API key (or set `OPENAI_API_KEY` env var)
 - `-o, --output-audio`: path for extracted audio file (defaults to input name with `.mp3`; not allowed if input is already audio)
 - `-s, --save-transcript`: path to save the transcript (will ensure `.txt` extension)

**Processing Options:**
 - `-f, --force`: re-extract audio even if it already exists
 - `--delete-audio`: delete audio files after transcription (default: keep them)
 - `--scan-chunks`: when input is a chunk file (e.g., `audio_chunk0.mp3`), detect and process all sibling chunks in order

**Diarization Options:**
 - `--diarize`: enable speaker diarization (requires `HF_TOKEN` and model access)
 - `--hf-token`: Hugging Face token for pyannote models (or set `HF_TOKEN` env var)
 - `--device`: device for diarization (`auto`, `cuda`/`gpu`, or `cpu`; default: `auto`)
 - `--diarize-only`: run diarization on existing audio without transcription
 - `--apply-diarization PATH`: apply diarization to an existing transcript file
 - `--no-review-speakers`: skip interactive speaker review (default: review is enabled)

### Makefile targets
 - `make install` — installs `uv` and basic dependencies (transcription only, no diarization)
 - `make install-diarization` — installs `uv` and all dependencies including diarization support
 - `make test` — runs the test suite (`pytest`)
 - `make test-integration` — runs only integration tests
 - `make ruff-check` — runs `ruff check .`
 - `make ruff-fix` — runs `ruff format .` (autoformat where supported)
 - `make mypy` — runs `mypy .` for static typing checks
 - `make lint` — runs both `ruff` and `mypy` (alias for `ruff-check mypy`)
 - `make format` — runs the automatic ruff-format step (`ruff format .`)
 - `make clean` — remove compiled python artifacts
 - `make build` — build distribution packages
 - `make publish-test` — publish to TestPyPI (requires `TESTPYPI_API_TOKEN` in environment)
 - `make publish` — publish to PyPI (requires `PYPI_API_TOKEN` in environment)

### Notes on linting and typing
 - `ruff` is configured in `ruff.toml`. The rule `COM812` is disabled to avoid
	 conflicts with formatters. A per-file ignore exists for tests to allow certain
	 private-member accesses used in unit tests.
 - Some tests use light mypy `# type: ignore[...]` annotations to accommodate
	 test doubles and dynamically injected modules.

### Testing
 - Run the full test suite with `make test`. The project includes comprehensive
	 unit tests for audio extraction, chunking, timestamp formatting, and the CLI
	 wiring.
 - Note: The project has only been tested on Linux (and WSL2)

### Continuous Integration
 - The repository includes a GitHub Actions workflow (`.github/workflows/ci.yml`) that
   runs `make install` followed by `make lint` and `make test` on pushes and pull
   requests to `main`. This mirrors the recommended local `make install` setup.

### Acknowledgements
 - This project was developed with test-driven iterations and linting guidance.
 - Parts of the implementation and assistance during development were produced
	 with help from GitHub Copilot.

### Files of interest
 - [CHANGELOG.md](CHANGELOG.md) — version history and upgrade instructions
 - [main.py](main.py) — CLI entrypoint and `VideoTranscriber` implementation
 - [test_main.py](test_main.py) — main test suite (integration + unit tests)
 - [test_audio_management.py](test_audio_management.py) — audio/chunk management tests
 - [Makefile](Makefile) — convenience commands for dev tooling
 - [ruff.toml](ruff.toml) — ruff configuration
 - [.pre-commit-config.yaml](.pre-commit-config.yaml) — pre-commit hooks for formatting/linting

### Contributing
 - Please run `make format` and `make lint` before submitting a PR.
 - Run `make test` to ensure all tests pass locally.
 - See [CONTRIBUTING.md](CONTRIBUTING.md) for detailed development setup and workflow.

## Building and Publishing (For Maintainers)

The project uses Hatch as the build system. Build artifacts can be created and tested locally:

```bash
# Install build dependencies
make install-build

# Build distribution packages (creates dist/*.whl and dist/*.tar.gz)
make build

# Test publishing to TestPyPI
make publish-test

# Production publish to PyPI (via GitHub Actions on release)
# Tag a release: git tag v0.3.0b1 && git push origin v0.3.0b1
# Create GitHub release (triggers automated publish workflow)
```

For complete build and publish workflow documentation, see [CONTRIBUTING.md](CONTRIBUTING.md).

### License
 - See the `LICENSE` file in the repository root.

