Fematich / mlengine-boilerplate
Repository to quickly get you started with new Machine Learning projects on Google Cloud Platform. More info(slides):
☆63Updated 6 years ago
Related projects ⓘ
Alternatives and complementary repositories for mlengine-boilerplate
- TensorFlow framework for training and serving machine learning models☆196Updated 7 years ago
- ☆35Updated 5 years ago
- Adventures using keras on Google's Cloud ML Engine☆105Updated 7 years ago
- ☆79Updated 6 years ago
- ☆160Updated 7 years ago
- Playing with various deep learning tools and network architectures☆69Updated 7 years ago
- Create a GPU instance on GCP with Jupyter + Keras(Tensorflow) + Nvidia Docker☆39Updated 6 years ago
- Some experiments into explaining complex black box ensemble predictions.☆73Updated 4 years ago
- Just some of my kaggle scripts☆88Updated 9 years ago
- RESTful API hosting xgboost model☆24Updated 7 years ago
- Sample applications built using AWS' Amazon Machine Learning.☆51Updated 7 years ago
- Tensorflow Notebook Examples and Tutorials☆66Updated 5 years ago
- ML model serving app based on APIs☆71Updated 2 years ago
- environment setup for strata conference 2018☆68Updated 6 years ago
- A Tutorial for Serving Tensorflow Models using Kubernetes☆87Updated 3 months ago
- ☆83Updated 4 years ago
- Fully Configured Example of CI/CD For Notebooks On Top Of GCP☆22Updated 2 years ago
- Apache Zeppelin notebooks for Recommendation Engines using Keras and Machine Learning on Apache Spark☆32Updated 7 years ago
- Winning solution for the Kaggle "West Nile Virus" competition (2015)☆30Updated 9 years ago
- Long live PyCon Israel!☆28Updated 6 years ago
- NOTE: skutil is now deprecated. See its sister project: https://github.com/tgsmith61591/skoot. Original description: A set of scikit-lear…☆30Updated 6 years ago
- Install TensorFlow on AWS GPU-instance☆60Updated 8 years ago
- ☆49Updated 5 years ago
- SigOpt wrappers for scikit-learn methods☆75Updated last year
- ☆29Updated last year
- Sample Notebooks for PipelineAI☆44Updated 2 years ago
- Some thoughts on how to use machine learning in production☆72Updated 7 years ago