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NMBL
- Stanford, CA
- www.ryanalcantara.com
- @Ryan_Alcantara_
Highlights
- Pro
Stars
Notes on Scientific Computing for Biomechanics and Motor Control
💪 Models' quality and performance metrics (R2, ICC, LOO, AIC, BF, ...)
📄 Awesome CV is LaTeX template for your outstanding job application
Download a copy of your Garmin Connect data, including stats and GPX tracks.
Python toolbox for biomechanics analysis
My CV built using RMarkdown and the pagedown package.
Github Pages template for academic personal websites, forked from mmistakes/minimal-mistakes
Data and code behind the articles and graphics at FiveThirtyEight
A tutorial showing how to train, convert, and run TensorFlow Lite object detection models on Android devices, the Raspberry Pi, and more!
STAPLE (Shared Tools for Automatic Personalised Lower Extremity modelling) consists of a collection of methods for generating skeletal models from three-dimensional bone geometries, usually segment…
Kalman Filter book using Jupyter Notebook. Focuses on building intuition and experience, not formal proofs. Includes Kalman filters,extended Kalman filters, unscented Kalman filters, particle filte…
Visualizations based on best open science practices.
Free online textbook of Jupyter notebooks for fast.ai Computational Linear Algebra course
Lecture content for UW Software Engineering for Data Scientists
📐 A flexible two-column Jekyll theme perfect for building personal sites, blogs, and portfolios.
Performs a search of PubMed for biomechanics-related publications, categorizes them using a machine learning algorithm trained on ~20,000 publications.
Latex code for making neural networks diagrams
Talks at conferences, meetups, hackathons, and more, plus my speaker rider for good measure.
Gathers machine learning and deep learning models for Stock forecasting including trading bots and simulations
Keras + Hyperopt: A very simple wrapper for convenient hyperparameter optimization
Matlab tools for motion capture analysis, including programmatically running OpenSim, and automatic gap-filling of data.
Baking Machine Learning into Great British Bake Off