Brought to you by NumFOCUS Foundation and O’Reilly Media
The official Jupyter Conference
Aug 21-22, 2018: Training
Aug 22-24, 2018: Tutorials & Conference
New York, NY
 
Concourse A
9:00am Serverless machine learning with TensorFlow Vijay Reddy (Google Cloud)
Concourse B
9:00am Hands-on data science with Python Zachary Glassman (The Data Incubator)
Concourse E
9:00am Explore the AWS machine learning platform using Amazon SageMaker Wenming Ye (Amazon Web Services), Miro Enev (NVIDIA)
Concourse F
12:30pm Lunch | Room: Murray Hill A
5:30pm JupyterCon Networking Happy Hour | Room: Tanner Smith’s
9:00am-5:00pm (8h) Training
Serverless machine learning with TensorFlow
Vijay Reddy (Google Cloud)
Vijay Reddy walks you through the process of building machine learning models with TensorFlow. You'll learn about data exploration, feature engineering, model creation, training, evaluation, deployment, and more.
9:00am-5:00pm (8h) Enterprise and organizational adoption, Extensions and customization, Usage and application Training
Hands-on data science with Python
Zachary Glassman (The Data Incubator)
Zachary Glassman leads a hands-on dive into building intelligent business applications using machine learning, walking you through all the steps of developing a machine learning pipeline. You'll explore data cleaning, feature engineering, model building and evaluation, and deployment and extend these models into two applications using real-world datasets.
9:00am-5:00pm (8h) Training
Explore the AWS machine learning platform using Amazon SageMaker
Wenming Ye (Amazon Web Services), Miro Enev (NVIDIA)
Wenming Ye and Miro Enev offer an overview of deep learning along with hands-on Jupyter labs, demos, and instruction. You'll learn how DL is applied in modern business practice and how to leverage building blocks from the Amazon ML family of AI services.
9:00am-5:00pm (8h) Training
Reproducible research best practices (highlighting Kaggle Kernels)
Rachael Tatman (Kaggle)
Rachael Tatman shows you how to take an existing research project and make it fully reproducible using Kaggle Kernels. You'll learn best practices for and get hands-on experience with each of the three components necessary for completely reproducible research.
12:30pm-1:30pm (1h)
Break: Lunch
5:30pm-7:30pm (2h)
JupyterCon Networking Happy Hour
Kick off a great week at JupyterCon by meeting some of your fellow attendees at a casual happy hour.