topspinj / pydata-workshopLinks
"Building a Recommender System from Scratch" Workshop Material for PyDataDC 2018
☆24Updated 6 years ago
Alternatives and similar repositories for pydata-workshop
Users that are interested in pydata-workshop are comparing it to the libraries listed below
Sorting:
- Tutorial covering a new workflow available going from pandas to scikit-learn☆40Updated 2 years ago
- Python data science and machine learning from Ted Petrou with Dunder Data☆55Updated 2 years ago
- Tutorial given at PyData LA 2018☆97Updated 11 months ago
- Pyspark in Google Colab: A simple machine learning (Linear Regression) model☆38Updated 6 years ago
- Python Machine Learning (ML) project that demonstrates the archetypal ML workflow within a Jupyter notebook, with automated model deploym…☆62Updated 2 years ago
- ☆101Updated 7 years ago
- ☆40Updated 8 years ago
- Data Science for Good Projects☆49Updated 6 years ago
- Customer life time analysis (CLV analysis). We are using Gamma-Gamma model to estimate average transaction value for each customer.☆47Updated 7 years ago
- Forecasting Uber demand in NYC neighborhoods☆34Updated 7 years ago
- The art of effective visualization of multi-dimensional data☆159Updated 6 years ago
- Materials for "Docker for Data Science" tutorial presented at PyCon 2018 in Cleveland, OH☆155Updated 4 years ago
- Slides and code examples for H2O tutorials at various events☆56Updated 7 years ago
- Experimenting with and teaching probabilistic programming☆104Updated 3 years ago
- ☆26Updated 4 years ago
- In which I implement some applications of machine learning techniques.☆30Updated 9 years ago
- Extracting LinkedIn comments from any post and export it to Excel file☆23Updated 6 years ago
- ☆155Updated 4 years ago
- DSI Self Study Resources☆18Updated 5 years ago
- Material for my PyData Jupyter & Pandas Workshops, I'm also available for personal in-house trainings on request☆65Updated 3 years ago
- In the customer management lifecycle, customer churn refers to a decision made by the customer about ending the business relationship. It…☆60Updated 2 years ago
- Guide on creating an API for serving your ML model☆66Updated 3 years ago
- Notes and Python scripts for A/B or Split Testing☆142Updated 2 years ago
- Content for the Model Interpretability Tutorial at Pycon US 2019☆41Updated last year
- PyCon 2017 tutorial on time series analysis☆72Updated 8 years ago
- Code and resources for my blog and articles to share Data Science and AI knowledge and learnings with everyone☆211Updated 5 years ago
- Material for Talk at PyData Seattle 2017☆168Updated 7 years ago
- ☆77Updated 7 years ago
- Slides and materials for most of my talks by year☆92Updated last year
- Notebook and slides for my talk at Pydata NYC 2018☆88Updated last year