Pragmatic AI Labs

Production ML with Hugging Face

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  • Convert and deploy ML models across GGUF, SafeTensors, and APR formats for GPU, CPU, and browser targets

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Understanding ML model formats and the Sovereign AI Stack. Learn GGUF, SafeTensors, and APR formats for different deployment targets.

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Production infrastructure for ML systems. This module covers the essential MLOps practices needed to deploy and maintain ML models in production environments. Learn how to implement CI/CD pipelines specifically designed for ML workflows, set up comprehensive observability with logs, metrics, and traces, apply cryptographic model signing for supply chain security, and choose optimal deployment patterns based on your infrastructure requirements.

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Real-world projects built with the Sovereign AI Stack. This module demonstrates practical applications through three production projects: Depyler (a Python-to-Rust transpiler with self-improving ML), Whisper.apr (speech-to-text in browser and CLI), and the APR ecosystem tools. Learn how to build self-improving systems using compiler-in-the-loop training, deploy speech recognition to resource-constrained environments, and leverage the full APR toolchain for model conversion and inference.

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Final project deploying Qwen2.5-Coder-0.5B across all three model formats. Students demonstrate mastery of format conversion, CLI deployment, server deployment, and performance benchmarking.

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Pragmatic AI Labs
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Felipe M.

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Jennifer J.

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Larry W.

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Chaitanya A.

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