deepcourse
ml-mipt
deepcourse | ml-mipt | |
---|---|---|
1 | 18 | |
131 | 8 | |
- | - | |
2.6 | 0.0 | |
over 2 years ago | over 1 year ago | |
Jupyter Notebook | Jupyter Notebook | |
Apache License 2.0 | MIT License |
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deepcourse
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From Zero to Research on Deep Learning Vision: in-depth courses + google colab tutorials + Anki cards
![Picture of the website front page with the skill tree](https://github.com/arthurdouillard/deepcourse/blob/master/static/img/deepcourse_prez.png)
ml-mipt
What are some alternatives?
open_clip - An open source implementation of CLIP.
Real-time-Object-Detection-for-Autonomous-Driving-using-Deep-Learning - My Computer Vision project from my Computer Vision Course (Fall 2020) at Goethe University Frankfurt, Germany. Performance comparison between state-of-the-art Object Detection algorithms YOLO and Faster R-CNN based on the Berkeley DeepDrive (BDD100K) Dataset.
kaggle-courses - Courses on Kaggle
MachineLearningWithPython - Get started with Machine Learning with Python - An introduction with Python programming examples
DeepLearningExamples - State-of-the-Art Deep Learning scripts organized by models - easy to train and deploy with reproducible accuracy and performance on enterprise-grade infrastructure.
mlops-course - Learn how to design, develop, deploy and iterate on production-grade ML applications.
hyperlearn - 2-2000x faster ML algos, 50% less memory usage, works on all hardware - new and old.
pytorch-implementations - A collection of paper implementations using the PyTorch framework
ml-course - Open Machine Learning course
Deep-Learning-Computer-Vision - My assignment solutions for Stanford’s CS231n (CNNs for Visual Recognition) and Michigan’s EECS 498-007/598-005 (Deep Learning for Computer Vision), version 2020.
d2l-en - Interactive deep learning book with multi-framework code, math, and discussions. Adopted at 500 universities from 70 countries including Stanford, MIT, Harvard, and Cambridge.
Made-With-ML - Learn how to design, develop, deploy and iterate on production-grade ML applications.