Computer Science and Programming
151K subscribers
632 photos
29 videos
37 files
919 links
Channel specialized for advanced topics of:
* Artificial intelligence,
* Machine Learning,
* Deep Learning,
* Computer Vision,
* Data Science
* Python

Admin: @otchebuch

Memes: @memes_programming

Ads: @Source_Ads,
https://telega.io/c/computer_science
Download Telegram
"100 Days of Machine Learning" tutorial series with codes. Github repo.
Some content example:
* Data Preprocessing,
* Simple Linear Regression,
* Multiple Linear Regression,
* Logistic Regression,
* K nearest neighbours,
* Math Behind Logistic,
* Regression,
* SVM,
.........
* Digging Deeper| Mathplotlib |Pandas |Numpy,
* Heirarchical Clustering

Thanks for Avik Jain for sharing great tutorial
👍3
Mini course in Deep Learning with PyTorch. Jupyter Notebook files and Slides also provided.
Here is some content from repo:
* ML and spiral classification,
* CNN,
* Salsa,
* RNN, Word Language model,
* Generative models,
........
* VAE, regularization
Detailed explanation
👍2
Amazing Google Sheets feature. Did you know this?
👍1
Imrove your skills by Learning and Practicing Python, Machine Learning, Deep Learning (beginner, intermediate, advanced topic). Complete tutorial categorized series from data-flair
👍3
This media is not supported in your browser
VIEW IN TELEGRAM
Faster in Python
with Line-of-Code Completions.
Machine-learning applied to programming in Python.
👍2
Deep Learning lecture
The full deck of (600+) slides, by Professor Gilles Louppe. PDF file available here:
👍1
"One Model to Rule Them All" Christoph Molnar.
Some experienced toughts how to work effectively with your Machine Learning model(project)
👍1
I highly recommend the Cornell University's "Machine Learning for Intelligent Systems (CS4780/ CS5780)" course taught by Associate Professor Kilian Q. Weinberger.
👍2
SafeML ICLR 2019 Workshop accepted papers list. Read and explore new horizons of Machine Learning
Great Tensorflow tutorial Series from Hvass Laboratories, which one of the most dominating Deep Learning Framework with practical examples