Sep 23–26, 2019
Topics
1A 15/16
1A 01/02
9:00am
SOLD OUT: Big data for managers
Michael Li (The Data Incubator), Gonzalo Diaz (The Data Incubator)
1A 03
9:00am
Recommendation systems using deep learning
Bargava Subramanian (Binaize), Amit Kapoor (narrativeVIZ)
1A 04/05
9:00am
Serverless machine learning with TensorFlow and BigQuery (sponsored by Google Cloud)
Jeff Davis (Google Cloud)
1E 06
1A 17
9:00am
SOLD OUT: Building a serverless big data application on AWS
Jorge Lopez (Amazon Web Services), Radhika Ravirala (Amazon Web Services), Nikki Rouda (Amazon Web Services), Jesse Gebhardt (Amazon Web Services), Rajeev Chakrabarti (Amazon Web Services)
1A 18
9:00am
Expand your data science and machine learning skills with Python, R, SQL, Spark, and TensorFlow
Ian Cook (Cloudera)
1E 07
12:30pm
Lunch
| Room: Lunch
10:30am
Morning break
| Room: Break
3:00pm
Afternoon break
| Room: Break
9:00am-5:00pm (8h)
Data Science, Machine Learning, & AI
Deep dive into specific tools, platforms, or frameworks
Hands-on data science with Python
Michael Cullan (Pragmatic Institute)
Michael Cullan walks you through developing a machine learning pipeline from prototyping to production. You'll learn about data cleaning, feature engineering, model building and evaluation, and deployment and then extend these models into two applications from real-world datasets. All work will be done in Python.
9:00am-5:00pm (8h)
Strata Business Summit
SOLD OUT: Big data for managers
Michael Li (The Data Incubator), Gonzalo Diaz (The Data Incubator)
Michael Li and Gonzalo Diaz provide a nontechnical overview of AI and data science. Learn common techniques, how to apply them in your organization, and common pitfalls to avoid. You’ll pick up the language and develop a framework to be able to effectively engage with technical experts and use their input and analysis for your business’s strategic priorities and decision making.
9:00am-5:00pm (8h)
Data Science, Machine Learning, & AI
Deep Learning, Media and Advertising, Retail and e-commerce
Recommendation systems using deep learning
Bargava Subramanian (Binaize), Amit Kapoor (narrativeVIZ)
Recommendation systems play a significant role—for users, a new world of options; for companies, it drives engagement and satisfaction. Amit Kapoor and Bargava Subramanian walk you through the different paradigms of recommendation systems and introduce you to deep learning-based approaches. You'll gain the practical hands-on knowledge to build, select, deploy, and maintain a recommendation system.
9:00am-5:00pm (8h)
Sponsored
Serverless machine learning with TensorFlow and BigQuery (sponsored by Google Cloud)
Jeff Davis (Google Cloud)
Jeff Davis provides a hands-on introduction to designing and building machine learning models on structured data on Google Cloud Platform. Through a combination of presentations, demos, and hands-on labs, you'll learn machine learning (ML) concepts and how to implement them using both BigQuery Machine Learning and TensorFlow and Keras.
9:00am-5:00pm (8h)
Data Engineering and Architecture
Data Integration and Data Processing, Deep dive into specific tools, platforms, or frameworks
Professional Kafka development
Jesse Anderson (Big Data Institute)
Jesse Anderson offers you an in-depth look at Apache Kafka. You'll learn how Kafka works and how to create real-time systems with it, as well as how to create consumers and publishers. You'll take a look Jesse then walks you through Kafka’s ecosystem, demonstrating how to use tools like Kafka Streams, Kafka Connect, and KSQL.
9:00am-5:00pm (8h)
Data Engineering and Architecture
Cloud Platforms and SaaS, Data Integration and Data Processing, Data, Analytics, and AI Architecture, Deep dive into specific tools, platforms, or frameworks
SOLD OUT: Building a serverless big data application on AWS
Jorge Lopez (Amazon Web Services), Radhika Ravirala (Amazon Web Services), Nikki Rouda (Amazon Web Services), Jesse Gebhardt (Amazon Web Services), Rajeev Chakrabarti (Amazon Web Services)
Serverless technologies let you build and scale applications and services rapidly without the need to provision or manage servers. Join the AWS team to learn how to incorporate serverless concepts into your big data architectures. You'll explore design patterns to ingest, store, and analyze your data as you build a big data application using AWS technologies such as S3, Athena, Kinesis, and more.
9:00am-5:00pm (8h)
Data Science, Machine Learning, & AI
Expand your data science and machine learning skills with Python, R, SQL, Spark, and TensorFlow
Ian Cook (Cloudera)
Advancing your career in data science requires learning new languages and frameworks—but you face an overwhelming array of choices, each with different syntaxes, conventions, and terminology. Ian Cook simplifies the learning process by outlining the abstractions common to these systems. You'll go hands-on exercises to overcome obstacles to getting started using new tools.
9:00am-5:00pm (8h)
Data Science, Machine Learning, & AI
Deep dive into specific tools, platforms, or frameworks, Deep Learning
Machine learning from scratch in TensorFlow
Dylan Bargteil (The Data Incubator)
The TensorFlow library provides for the use of computational graphs with automatic parallelization across resources. This architecture is ideal for implementing neural networks. Dylan Bargteil explores TensorFlow's capabilities in Python, demonstrating how to build machine learning algorithms piece by piece and how to use TensorFlow's Keras API with several hands-on applications.
12:30pm-1:30pm (1h)
Break: Lunch
10:30am-11:00am (30m)
Break: Morning break
3:00pm-3:30pm (30m)
Break: Afternoon break
7:00pm-9:00pm (2h)
Strata Dine-Around
Get to know your fellow attendees over dinner. We've made reservations for you at some of the most sought-after restaurants in town. This is a great chance to make new connections and sample some of the great cuisine New York has to offer.
Presented by
Elite Sponsors
Strategic Sponsors
Zettabyte Sponsors
Contributing Sponsors
Exabyte Sponsors
Content Sponsor
Impact Sponsors
Supporting Sponsor
Non Profit
Contact us
confreg@oreilly.com
For conference registration information and customer service
partners@oreilly.com
For more information on community discounts and trade opportunities with O’Reilly conferences
strataconf@oreilly.com
For information on exhibiting or sponsoring a conference
pr@oreilly.com
For media/analyst press inquires