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Added README to recent events
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4 changes: 2 additions & 2 deletions 2017_01_31_ODSC_London_Meetup/README.md
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### Content

- "H20 Deep Water. Making Deep Learning Accessible to Everyone," from Jo-Fai, H2O.ai data scientist
- "H2O Deep Water - Making Deep Learning Accessible to Everyone" by Jo-fai Chow, H2O.ai Data Scientist

- Deep Water is H2O's integration with multiple open source deep learning libraries such as TensorFlow, MXNet and Caffe. On top of the performance gains from GPU backends, Deep Water naturally inherits all H2O properties in scalability. ease of use and deployment. In this talk, I will go through the motivation and benefits of Deep Water. After that, I will demonstrate how to build and deploy deep learning models with or without programming experience using H2O's R/Python/Flow (Web) interfaces.


- "How to Improve your Recommender System with Deep Learning: A Use Case" from Pierre Gutierrez and Alexandre Hubert, Dataiku data scientists
- "How to Improve your Recommender System with Deep Learning: A Use Case" from Pierre Gutierrez and Alexandre Hubert, Dataiku data scientists

- Recommender systems are paramount for e-business companies. There is an increasing need to take into account all user information to provide the best, most tailored products. One important element is the content that the user actually sees: the visual of the product.
In this talk, we will describe how Dataiku improved an e-business vacation retailer recommender system using the content of images. We’ll explain how to leverage open datasets and pre-trained deep learning models to derive user preference information. This transfer learning approach enables companies to use state-of-the art machine learning methods without having deep learning expertise.
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22 changes: 22 additions & 0 deletions 2017_02_09_Big_Data_Tech_Warsaw_Summit/README.md
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# Big Data Technology Warsaw Summit 2017

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### Event Information

Date: Feb 9, 2017

Conference: [Link](http://bigdatatechwarsaw.eu/)

Place: [Sheraton Warsaw Hotel](https://goo.gl/maps/JkrhW1gavix)

Speakers: Jo-fai (Joe) Chow

---

### Content

- "H2O Deep Water - Making Deep Learning Accessible to Everyone" by Jo-fai Chow, H2O.ai Data Scientist

- Deep Water is H2O's integration with multiple open source deep learning libraries such as TensorFlow, MXNet and Caffe. On top of the performance gains from GPU backends, Deep Water naturally inherits all H2O properties in scalability. ease of use and deployment. In this talk, I will go through the motivation and benefits of Deep Water. After that, I will demonstrate how to build and deploy deep learning models with or without programming experience using H2O's R/Python/Flow (Web) interfaces.

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