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LeapfrogAI Whisper Backend

A LeapfrogAI API-compatible faster-whisper wrapper for audio transcription inferencing across CPU & GPU infrastructures.

Usage

Pre-Requisites

See the LeapfrogAI documentation website for system requirements and dependencies.

Dependent Components

Model Selection

See the Deployment section for the CTranslate2 command for pulling and converting a model for inferencing.

Deployment

To build and deploy the whisper backend Zarf package into an existing UDS Kubernetes cluster:

Important

Execute the following commands from the root of the LeapfrogAI repository

pip install 'ctranslate2'          # Used to download and convert the model weights
pip install 'transformers[torch]'  # Used to download and convert the model weights
make build-whisper LOCAL_VERSION=dev
uds zarf package deploy packages/whisper/zarf-package-whisper-*-dev.tar.zst --confirm

Local Development

To run the vllm backend locally without K8s (starting from the root directory of the repository):

# Install dev and runtime dependencies
make install

# Download and convert model
# Change the MODEL_NAME to change the whisper base
export MODEL_NAME=openai/whisper-base
make download-model

# Start the model backend
make dev