Skip to content

lintocn/Deep-Learning-Boot-Camp

 
 

Repository files navigation

Deep Learning Winter School, November 2107.

Tel Aviv Deep Learning Bootcamp : http://deep-ml.com.

cuda

About

Tel-Aviv Deep Learning Bootcamp is an intensive (and free!) 5-day program intended to teach you all about deep learning. It is nonprofit focused on advancing data science education and fostering entrepreneurship. The Bootcamp is a prominent venue for graduate students, researchers, and data science professionals. It offers a chance to study the essential and innovative aspects of deep learning.

Participation is via a donation to the A.L.S ASSOCIATION for promoting research of the Amyotrophic Lateral Sclerosis (ALS) disease.

Curriculum

The Bootcamp amalgamates “Theory” and “Practice” – identifying that a deep learning scientist desires a survey of concepts combined with a strong application of practical techniques through labs. Primarily, the foundational material and tools of the Data Science practitioner are presented via Sk-Learn. Topics continue rapidly into exploratory data analysis and classical machine learning, where the data is organized, characterized, and manipulated. From day two, the students move from engineered models into 4 days of Deep Learning.

Bootcamp 5 day structure

The Bootcamp consists of the following folders and files:

  • day 01: Practical machine learning with Python and sk-learn pipelines

  • day 02 PyTORCH and PyCUDA: Neural networks using the GPU, PyCUDA, PyTorch and Matlab

  • day 03: Applied Deep Learning in Python

  • day 04: Convolutional Neural Networks using Keras

  • day 05: Applied Deep Reinforcement Learning in Python

  • docker: a GPU based docker system for the bootcamp

Click to view the full CURRICULUM : http://deep-ml.com/assets/5daydeep/#/3/1

cuda

Meetup:

https://www.meetup.com/TensorFlow-Tel-Aviv/events/241762893/

Registration:

https://www.eventbrite.com/e/5-day-deep-learning-bootcamp-november-2017-als-fund-raising-tickets-37001430274

Requirements

For a docker based system See https://github.com/QuantScientist/Data-Science-ArrayFire-GPU/tree/master/docker

  • Ubuntu Linux 16.04
  • Python 2.7
  • CUDA drivers.Running a CUDA container requires a machine with at least one CUDA-capable GPU and a driver compatible with the CUDA toolkit version you are using.

The HTML slides were created using (You can run this directly from Jupyter):

%%bash jupyter nbconvert \ --to=slides \ --reveal-prefix=https://cdnjs.cloudflare.com/ajax/libs/reveal.js/3.2.0/ \ --output=py05.html \ './05 PyTorch Automatic differentiation.ipynb'

Dependencies

IDE

This project has been realised with PyCharm by JetBrains

Relevant info:

http://deep-ml.com/assets/5daydeep/#/3/1

Author

Shlomo Kashani/ @QuantScientist and many more.

About

A community run, 5-day PyTorch Deep Learning Bootcamp

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 98.5%
  • Python 1.4%
  • Other 0.1%