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JesseAllardice/README.md

Hi there, I'm Jesse

I'm a Machine Learning Engineer with a background in Maths and Physics

  • I'm currently focused on NLP but am interested in multi-modal learning.

Bio

I am a machine learning engineer with a strong academic background in Physics and a PhD from the University of Cambridge; my research involved building analytical models of quantum phenomena for efficient solar-energy generation. As a result of the novel research, I developed patents for next-generation electronics which I helped put into production with a commercial partner, resulting in a multi-million dollar company valuation.

Whilst at Cambridge, I participated in the highly selective Schmidt Data Science Residency; the programme featured hands-on training, led by industry experts, with a focus on applying the latest in cutting-edge AI tools and libraries to scientific endeavours. Subsequently, I provided data science training to upskill analysts at FTSE 100 companies with residency coordinators at Cambridge Spark and founded a start-up that leveraged deep learning techniques to infer exercise-actions purely from a webcam.

To further my experience in applying machine learning methods to real-world data, I completed a Faculty.ai fellowship project with Upside Saving, a fintech start-up on a mission to help people save money. I implemented natural language processing and deep learning techniques to translate the language of “open banking” into more structured, usable data. In addition to setting the groundwork for future data science projects at Upside, my work unlocked access to a new data insights market, valued at £1Bn globally.

Most recently, I was accepted into the very first AI residency program hosted at Apple, where I was embedded in the Siri natural language understanding team. During this time, I gained extensive experience developing and deploying machine learning software in a production environment. My research focused on utilising fine-tuned large language models for natural language generation and data augmentation.

“Artificial intelligence is revolutionising how humans and machines interact. Through my research I have been able to build technologies with the aim of benefitting us all.”

Connect with me:

   website website    website website

Pinned

  1. Action-Recognition Action-Recognition Public

    Detect type and intensity of an action

    Jupyter Notebook

  2. Action_Recording Action_Recording Public

    Python

  3. GraphPositionalEncoding GraphPositionalEncoding Public

    An exploration of the positional encoding for graph neural networks

    Jupyter Notebook

  4. TrilaterationPointSet TrilaterationPointSet Public

    Code that finds the coordinates that minimise the MSE with respect to the distances measures between the points.

    Jupyter Notebook

  5. EY_DS_Challenge_NNs EY_DS_Challenge_NNs Public

    Neural Network architectures for the EY Data Science competition

    Jupyter Notebook