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glukicov/README.md

Hey there πŸ‘‹

Ask Me Anything !

I am Gleb Lukicov, a machine learning engineer with a passion for MLOps. Visit my homepage to read about my PhD research and ML projects. When I am not de-bugging my code, I am actively engaged in the MLOps Community London as a co-host, πŸ“ tech blogging, or πŸš΄β€β™‚οΈ road cycling. You can contact me for collaborations ideas or questions on LinkedIn.

The projects below contain analysis code used in my PhD thesis and personal ML projects:

1. EDMTracking code to perform Fourier transforms and regression analysis on large datasets.

The Muon g βˆ’ 2 experiment at Fermilab, near Chicago, discovered a tantalising sign of New Physics (a new force of nature!). This was done by measuring a deviation between the experimental and theoretically predicted value of the muon magnetic anomaly. As part of my PhD, I collaborated on the experiment with 200 scientists and engineers. This project contains analysis code to measure the Electric Dipole Moment (EDM) of the muon using the tracking detectors. The oscillation in the number of the observed tracks in the detector can be plotted and fitted, as shown below:

2. llm_pipelines_demo End-to-end demo of local and remote pipelines with Kubeflow and Vertex AI.

To make your systems data-centric and model-agnostic, a robust evaluation framework is essential. Pipelines are particularly useful for this purpose. I demonstrate how to implement local testing using Kubeflow Pipelines to shorten the development cycle using Docker cache, multi-stage builds, dynamic user credentials injection, and experiment tracking on Google Cloud. Also included are infrastructure goodies like GitHub CI/CD & pre-commit config for linting and testing, local scripts with typer, project dependency management with uv, and static checking with mypy. This repo is a companion to this blog post.

3. CadenceAI Your AI-powered cycling companion πŸš΄πŸ»β€β™€πŸ€–οΈπŸš΄β€β™‚

Did you know there are over 1 billion bicycles in the world? The cycling industry is entirely commoditised. However, helpful and personalised advice on training, repair and nutrition is out of reach for most people. Introducing - Cadence AI, your all-in-one AI-powered cycling coach, mechanic, analyst and dietitian.

4. ML_GPU contains personal practice ML code, and Deep Learning on GPUs using scikit-learn, TensorFlow and Keras.

I wrote a practical guide on setting a personal GPU server for Machine Learning with Ubuntu 20.04 avaialbe on the Towards Data Science (TDS) website.

Photo by Caspar Camille Rubin on Unsplash.

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  1. llm_pipelines_demo llm_pipelines_demo Public

    Demo of local and remote pipelines for calling and evaluating LLMs using Kubeflow and Vertex AI.

    Python 4

  2. EDMTracking EDMTracking Public

    Electric Dipole Moment (EDM) analysis code with big-data (Python, C, SQL)

    Jupyter Notebook 2 1

  3. CadenceAI CadenceAI Public

    Your all-in-one AI-powered cycling coach, mechanic, analyst and dietitian πŸš΄β€β™€οΈ πŸ€– πŸš΄β€β™‚οΈ

    CSS 1

  4. ML_GPU ML_GPU Public

    ML practice code: simple ML examples and Deep Learning on GPU

    Jupyter Notebook 3 3