lgraesser / Intro-to-Neural-Networks-O-Reilly-AI
Introduction to Neural Networks with Keras, O'Reilly Artificial Intelligence Conference 2017, Tutorial
☆18Updated 7 years ago
Alternatives and similar repositories for Intro-to-Neural-Networks-O-Reilly-AI:
Users that are interested in Intro-to-Neural-Networks-O-Reilly-AI are comparing it to the libraries listed below
- Brian Farris' Talk on Reinforcement Learning and Multi-Armed Bandits for the Data Incubator☆30Updated 6 years ago
- This is the Git repo from the O'Reilly AI Conference, NY for the session "Building Game bots using OpenAI's Gym and Universe".☆15Updated 2 years ago
- File repository for the course [Advanced Deep Learning with Keras]. Packt Publishing.☆27Updated 7 years ago
- ☆33Updated 6 years ago
- Notes for Data Science 350 Class☆24Updated 8 years ago
- Code to munge data between Kaggle .tsv Rotten Tomatoes Sentiment Analysis data set and Vowpal Wabbit☆24Updated 10 years ago
- Materials for Mike's PyCon Canada 2016 PySpark Tutorial☆12Updated 8 years ago
- O'Reilly AI training - London 2018☆22Updated 6 years ago
- Companion code for my video course on Practical Python Data Science Techniques, published by Packt Publishing☆33Updated 7 years ago
- Jupyter notebooks and code for Intro to DL talk at Genesys☆14Updated 8 years ago
- Project template for highly effective data science workflows☆29Updated last year
- In-class exercises for Deep Learning course at NYC Data Science Academy☆32Updated 7 years ago
- This library is a wrapper for sklearn and works with data stored using Pandas module.☆17Updated 9 years ago
- A curated list of articles, papers and tools for managing the building and deploying of machine learning models, aka machine learning eng…☆18Updated 6 years ago
- ☆26Updated last year
- Miscellaneous Jupyter Notebooks for my course.☆24Updated 8 years ago
- Examples of how Python can speed up tasks that are cumbersome in Excel☆13Updated 8 years ago
- ☆26Updated 9 years ago
- "Building a Recommender System from Scratch" Workshop Material for PyDataDC 2018☆24Updated 6 years ago
- These are the IPython notebook files for the CSC 432 Spring '13 course.☆23Updated 10 years ago
- ☆15Updated 2 years ago
- In which I implement some applications of machine learning techniques.☆30Updated 8 years ago
- Model explanation provides the ability to interpret the effect of the predictors on the composition of an individual score.☆13Updated 4 years ago
- Common API for all "second gen" AutoML APIs: Auger.AI, Google Cloud AutoML and Azure AutoML☆41Updated 4 months ago
- A couple projects using scikit-learn illustrating project decision making.☆15Updated 8 years ago
- ☆11Updated 8 years ago
- ☆41Updated 9 years ago
- Course material for the Madrid ASDM class on text mining (C09)☆12Updated 5 years ago
- Machines and people collaborating together through Jupyter notebooks.☆18Updated 7 years ago
- Exploring item combinations with a bar chart☆10Updated 4 years ago