The Only Probability Cheatsheet You'll Ever Need
https://static1.squarespace.com/static/54bf3241e4b0f0d81bf7ff36/t/55e9494fe4b011aed10e48e5/1441352015658/probability_cheatsheet.pdf
source: https://github.com/wzchen/probability_cheatsheet
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https://static1.squarespace.com/static/54bf3241e4b0f0d81bf7ff36/t/55e9494fe4b011aed10e48e5/1441352015658/probability_cheatsheet.pdf
source: https://github.com/wzchen/probability_cheatsheet
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Practical Deep Learning for Coders
Deep Learning for Coders with fastai and PyTorch: AI Applications Without a PhD - the book and the course
🎬 8 lessons
⏰ 16 hours
https://course.fast.ai/
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Deep Learning for Coders with fastai and PyTorch: AI Applications Without a PhD - the book and the course
🎬 8 lessons
⏰ 16 hours
https://course.fast.ai/
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Practical Deep Learning for Coders
Practical Deep Learning for Coders - Practical Deep Learning
A free course designed for people with some coding experience, who want to learn how to apply deep learning and machine learning to practical problems.
Undergraduate Machine Learning (Nando de Freitas/University of British Columbia)
Author: prof Nando de Freitas
🎬 33 lessons
⏰ 21 hours
An undergraduate machine learning course. Lectures are filmed and put on YouTube with the slides posted on the course website. The course assignments are posted as well (no solutions, though). De Freitas is now a full-time professor at the University of Oxford and receives praise for his teaching abilities in various forums. Graduate version available.
https://www.cs.ubc.ca/~nando/340-2012/index.php
#machinelearning #datascience #statistics
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Author: prof Nando de Freitas
🎬 33 lessons
⏰ 21 hours
An undergraduate machine learning course. Lectures are filmed and put on YouTube with the slides posted on the course website. The course assignments are posted as well (no solutions, though). De Freitas is now a full-time professor at the University of Oxford and receives praise for his teaching abilities in various forums. Graduate version available.
https://www.cs.ubc.ca/~nando/340-2012/index.php
#machinelearning #datascience #statistics
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YouTube
undergraduate machine learning at UBC 2012
Share your videos with friends, family, and the world
Forwarded from Towards NLP🇺🇦
ACL Year-ROUND Mentorship
Incredible opportunity from NLP community of the Association for Computational Linguistics. The students all over the world can apply and get the mentorship in their research career during the whole year!
You can discuss anything — starting from the choice of the career to the questions how to manage your time and life.
More details here:
https://mentorship.aclweb.org/Home.html
Incredible opportunity from NLP community of the Association for Computational Linguistics. The students all over the world can apply and get the mentorship in their research career during the whole year!
You can discuss anything — starting from the choice of the career to the questions how to manage your time and life.
More details here:
https://mentorship.aclweb.org/Home.html
CS231n: Convolutional Neural Networks for Visual Recognition
Stanford - Spring 2021
These notes accompany the Stanford CS class CS231n: Convolutional Neural Networks for Visual Recognition. You can also find google colab notebooks and all assignments here. For questions/concerns/bug reports, you can submit a pull request directly to their git repo.
🔗 https://cs231n.github.io/
#stanford #cnn #visual recognition
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Stanford - Spring 2021
These notes accompany the Stanford CS class CS231n: Convolutional Neural Networks for Visual Recognition. You can also find google colab notebooks and all assignments here. For questions/concerns/bug reports, you can submit a pull request directly to their git repo.
🔗 https://cs231n.github.io/
#stanford #cnn #visual recognition
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GitHub
GitHub - cs231n/cs231n.github.io: Public facing notes page
Public facing notes page. Contribute to cs231n/cs231n.github.io development by creating an account on GitHub.
Artificial Intelligence course by MIT
Professor: Patrick Winston, Ford Professor of Artificial Intelligence and Computer Science.
🎬 23 lessons
⏰ 17 hours
This course includes interactive demonstrations which are intended to stimulate interest and to help students gain intuition about how artificial intelligence methods work under a variety of circumstances.
🔗 Link to couse
🔗 Link to video lessons 🎬
#ai #artificialintellignece #mit
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Professor: Patrick Winston, Ford Professor of Artificial Intelligence and Computer Science.
🎬 23 lessons
⏰ 17 hours
This course includes interactive demonstrations which are intended to stimulate interest and to help students gain intuition about how artificial intelligence methods work under a variety of circumstances.
🔗 Link to couse
🔗 Link to video lessons 🎬
#ai #artificialintellignece #mit
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MIT OpenCourseWare
Artificial Intelligence | Electrical Engineering and Computer Science | MIT OpenCourseWare
This course introduces students to the basic knowledge representation, problem solving, and learning methods of artificial intelligence. Upon completion of 6.034, students should be able to develop intelligent systems by assembling solutions to concrete computational…
AI Expert Roadmap
Below you find a set of charts demonstrating the paths that you can take and the technologies that you would want to adopt in order to become a data scientist, machine learning or an AI expert.
What is actually pretty cool is that you can click in any part of roadmap and learn more about mentioned concept!
https://i.am.ai/roadmap/
#ai #artificialintellignece #ml #machinelearning #datascience #roadmap
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Below you find a set of charts demonstrating the paths that you can take and the technologies that you would want to adopt in order to become a data scientist, machine learning or an AI expert.
What is actually pretty cool is that you can click in any part of roadmap and learn more about mentioned concept!
https://i.am.ai/roadmap/
#ai #artificialintellignece #ml #machinelearning #datascience #roadmap
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Introduction to Machine Learning Problem Framing
By Google
Estimated Course Length: 1 hour
https://developers.google.com/machine-learning/problem-framing
#machinelearning #ml
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By Google
Estimated Course Length: 1 hour
https://developers.google.com/machine-learning/problem-framing
#machinelearning #ml
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Google for Developers
Introduction to Machine Learning Problem Framing | Google for Developers
30 Days of ML, free Kaggle challenge
Machine learning beginner → Kaggle competitor in 30 days.
Non-coders welcome.
Starts August 2nd!
FAQ
I already have some familiarity with Python and/or Machine Learning. Can I still join the program?
Anyone can join! You’ll get more out of the program if you’re not a very advanced Python user, or if you are relatively new to machine learning.
What is the time commitment for the program?
Assignments should take about 1 hour/day to complete.
How much is the program?
Nothing! All you need is a Kaggle account.
Do I need to bring my own GPU or deep learning workstation?
No, Kaggle provides free hosted notebooks with access to GPUs and TPUs to complete your data science projects.
🔗 https://www.kaggle.com/thirty-days-of-ml
Sign Up for the challenge.
#kaggle #python #machinelearning #ml
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Machine learning beginner → Kaggle competitor in 30 days.
Non-coders welcome.
Starts August 2nd!
FAQ
I already have some familiarity with Python and/or Machine Learning. Can I still join the program?
Anyone can join! You’ll get more out of the program if you’re not a very advanced Python user, or if you are relatively new to machine learning.
What is the time commitment for the program?
Assignments should take about 1 hour/day to complete.
How much is the program?
Nothing! All you need is a Kaggle account.
Do I need to bring my own GPU or deep learning workstation?
No, Kaggle provides free hosted notebooks with access to GPUs and TPUs to complete your data science projects.
🔗 https://www.kaggle.com/thirty-days-of-ml
Sign Up for the challenge.
#kaggle #python #machinelearning #ml
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Kaggle
30 Days of ML
Kaggle is the world’s largest data science community with powerful tools and resources to help you achieve your data science goals.
Forwarded from Graph Machine Learning
Graph Neural Networks: Algorithms and Applications
A great presentation by Jian Tang about GNN basics, training many layers, self-supervised learning and statistical relational learning.
A great presentation by Jian Tang about GNN basics, training many layers, self-supervised learning and statistical relational learning.
Neural Networks and Deep Learning, a free online book.
The book will teach you about:
* Neural networks, a beautiful biologically-inspired programming paradigm which enables a computer to learn from observational data
* Deep learning, a powerful set of techniques for learning in neural networks
http://neuralnetworksanddeeplearning.com/index.html
The book will teach you about:
* Neural networks, a beautiful biologically-inspired programming paradigm which enables a computer to learn from observational data
* Deep learning, a powerful set of techniques for learning in neural networks
http://neuralnetworksanddeeplearning.com/index.html
Forwarded from Cool GitHub repositories
InsightFace: 2D and 3D Face Analysis Project
Good implementation for face recognition, and landmark detection
ArcFace, CosFace, SubCenter-ArcFace, VPL, Partial-FC
https://github.com/deepinsight/insightface
Good implementation for face recognition, and landmark detection
ArcFace, CosFace, SubCenter-ArcFace, VPL, Partial-FC
https://github.com/deepinsight/insightface
GitHub
GitHub - deepinsight/insightface: State-of-the-art 2D and 3D Face Analysis Project
State-of-the-art 2D and 3D Face Analysis Project. Contribute to deepinsight/insightface development by creating an account on GitHub.
CS109 Data Science
By Harvard University
⌛️ 12 weeks
✅ Video lectures
✅ Slides
✅ Lab exercises
🔗 http://cs109.github.io/2015/pages/videos.html
Note: i have issues with first video link but others are fine.
#datascience #pyton #harvard
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By Harvard University
⌛️ 12 weeks
✅ Video lectures
✅ Slides
✅ Lab exercises
🔗 http://cs109.github.io/2015/pages/videos.html
Note: i have issues with first video link but others are fine.
#datascience #pyton #harvard
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cs109.github.io
Class Material
Forwarded from Graph Machine Learning
Graph ML in Industry Workshop
When I wrote top applications of GNNs at the beginning of this year, I had a feeling that graph ML community is mature enough to start being used in industrial companies. Nine months ahead we decided to gather researchers, engineers, and industry professionals to talk about applications of graphs in the companies. Please, join us on 23rd Sept, 17-00 Paris time (free, online, ~3 hours) by registering at the link.
When I wrote top applications of GNNs at the beginning of this year, I had a feeling that graph ML community is mature enough to start being used in industrial companies. Nine months ahead we decided to gather researchers, engineers, and industry professionals to talk about applications of graphs in the companies. Please, join us on 23rd Sept, 17-00 Paris time (free, online, ~3 hours) by registering at the link.
Google
Graph Machine Learning in Industry
Criteo AI Lab is excited to be presenting Graph Machine Learning in Industry. Please join us on Thursday, September 23rd, at 17:00 Paris time. This page will be updated with video links after the workshop.