mdbecker / pydata_2013
PyData Boston 2013 talks: "Intro to scikit-learn" & "Realtime Predictive Analytics: Using scikit-learn and RabbitMQ"
☆11Updated 10 years ago
Related projects ⓘ
Alternatives and complementary repositories for pydata_2013
- Pydata Seattle 2015 Trend Estimation in Time Series Signals Deck + Notebooks☆21Updated 9 years ago
- High Level Kafka Scanner☆19Updated 7 years ago
- ☆34Updated 8 years ago
- Materials for dask talk at PyData NYC☆15Updated 9 years ago
- These are the IPython notebook files for the CSC 432 Spring '13 course.☆23Updated 9 years ago
- Probabilistic Data Structures in Python (originally presented at PyData 2013)☆55Updated 2 years ago
- The Path of the PyData Ninja☆16Updated 9 years ago
- Slides to learn a little natural language processing (NLP) with Python. Written in reST with S5/Docutils.☆28Updated 12 years ago
- Simple validator for submissions to DrivenData competitions☆19Updated 5 years ago
- code and slides for my PyGotham 2016 talk, "Higher-level Natural Language Processing with textacy"☆15Updated 8 years ago
- Fast, easy and intuitive machine learning prototyping.☆124Updated 10 years ago
- Automated NLP sentiment predictions- batteries included, or use your own data☆18Updated 6 years ago
- Material and slides for Boston NLP meetup May 23rd 2016☆17Updated 8 years ago
- A python module that will check for package updates.☆28Updated 3 years ago
- Fetch and plot AWS spot pricing history☆23Updated 8 years ago
- Generating the next read for our book club- with Data Science!☆40Updated 8 years ago
- A simple example of containerized data science with python and Docker.☆51Updated 6 years ago
- A Python library for dealing with splittable files☆42Updated 4 years ago
- Networks meet Finance in Python - July 27 2014☆23Updated 10 years ago
- Python (PyMC) adaptation of the R code from "Doing Bayesian Data Analysis"☆65Updated 7 years ago
- Articles on Data Science, Jupyter, and Pandas☆18Updated 8 years ago
- PyTennessee 2014: Statistical Data Analysis in Python☆85Updated 10 years ago
- Model explanation provides the ability to interpret the effect of the predictors on the composition of an individual score.☆13Updated 3 years ago
- IPython Notebook + D3☆128Updated 9 years ago
- PMML evaluator library for the PostgreSQL database (http://www.postgresql.org/)☆11Updated 9 years ago
- Enhance your feature engineering workflow with Kodiak☆20Updated last year