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@tensordiffeq
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levimcclenny/README.md

Hi there 👋

I'm currently a PhD Candidate in the Dept. of Electrical Engineering at Texas A&M in College Station. Additionally I'm working with the Army Research Lab on projects of interest to the DoD.

Research Interests

Other Interests

I'm interested in a swath of areas of computer science that aren't directly related to my research, notable examples are:

  • Distributed computing - I love working in distributed environments. The Army Research Lab has granted me an Nvidia DGX Station for my research, which is a platform I use heavily to experiment and build in distributed environments
  • Compilers/IRs - I just find the intersection of hardware and software fascinating. Recently I have been digging into LLVM, MLIR, as well as implementation of assembly in various architectures to include MIPS, x86, and ARM. I'm mostly a high-level programming language guy (Python, R, etc) but I love learning more about the hardware interface, as well as how to take deep-learning implementations to the edge on 'micro' computing devices. Oftentimes these implementations must be executed eithout operating system oversight, and require creative programming
  • Computer Vision - early in my PhD I worked heavily in computer vision with applications in materials informatics, and learned a lot about CV.
  • Writing - Recently, I have been contributing to d2l.ai with this knowledge of CV, Tensorflow, Distributed Computing, etc. The d2l.ai project is an open-source general purpose deep learning textbook covering topics from MLPs to attention mechanisms and online video processing. The textbook is being used at 140+ universities worldwide and is endorsed by high-profiles individuals to include Jensen Huang, CEO of Nvidia. Specifically, I have been contributing code snippets to the Tensorflow implementation of the concepts in the text, as well as contributing technical content on differences between code implementation in Tensorflow, Pytorch, and MXNet.
  • Reviewing - I have taken part in many technical reviews of Manning Publishing books, to include texts on distributed computing and tensorflow, amongst others. Many are in early-stage writing, and technical reviews are anonymous, so I forgo listing specific texts for now.

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Top Langs

Pinned

  1. tensordiffeq/TensorDiffEq tensordiffeq/TensorDiffEq Public

    Efficient and Scalable Physics-Informed Deep Learning and Scientific Machine Learning on top of Tensorflow for multi-worker distributed computing

    Python 106 37

  2. tensordiffeq/tdq-docs tensordiffeq/tdq-docs Public

    Docs for the package TensorDiffEq

    HTML 2 1

  3. d2l-ai/d2l-en d2l-ai/d2l-en Public

    Interactive deep learning book with multi-framework code, math, and discussions. Adopted at 500 universities from 70 countries including Stanford, MIT, Harvard, and Cambridge.

    Python 21.9k 4.1k

  4. SA-PINNs SA-PINNs Public

    Implementation of the paper "Self-Adaptive Physics-Informed Neural Networks using a Soft Attention Mechanism" [AAAI-MLPS 2021]

    Python 138 36

  5. multimodal_transfer_learned_regression multimodal_transfer_learned_regression Public

    Repo for the paper "Deep Multimodal Transfer-Learned Regression in Data-Poor Domains"

    Python 3 1

  6. BoolFilter BoolFilter Public

    R 2