Presented By O’Reilly and Cloudera
Make Data Work
September 11, 2018: Training & Tutorials
September 12–13, 2018: Keynotes & Sessions
New York, NY

Schedule: Transportation and Logistics sessions

9:00am–5:00pm Tuesday, 09/11/2018
Location: 1E 10
Paco Nathan (derwen.ai), Katharina Warzel (EveryMundo), Mike Berger (Mount Sinai Health System), Sam Helmich (Deere & Company), Stephanie Fischer (datanizing GmbH), Maryam Jahanshahi (TapRecruit), Greg Quist (SmartCover Systems), Ann Nguyen (Whole Whale), Steve Otto (Navistar), Jennifer Lim (Cerner), S Anand (Gramener), Ian Brooks (Hortonworks)
Hear practical insights from household brands and global companies: the challenges they tackled, approaches they took, and the benefits—and drawbacks—of their solutions. Read more.
11:20am–12:00pm Wednesday, 09/12/2018
Location: 1A 10 Level: Intermediate
Felix Cheung (Uber)
Average rating: ****.
(4.60, 5 ratings)
Did you know that your Uber rides are powered by Apache Spark? Join Felix Cheung to learn how Uber is building its data platform with Apache Spark at enormous scale and discover the unique challenges the company faced and overcame. Read more.
2:05pm–2:45pm Wednesday, 09/12/2018
Location: 1A 15/16 Level: Intermediate
Ankit Jain (Uber)
Average rating: ***..
(3.00, 3 ratings)
Personalization is a common theme in social networks and ecommerce businesses. Personalization at Uber involves an understanding of how each driver and rider is expected to behave on the platform. Ankit Jain explains how Uber employs deep learning using LSTMs and its huge database to understand and predict the behavior of each and every user on the platform. Read more.
11:20am–12:00pm Thursday, 09/13/2018
Location: 1E 10/11 Level: Non-technical
Average rating: ****.
(4.75, 4 ratings)
Data scientists are hard to hire. But too often, companies struggle to find the right talent only to make avoidable mistakes that cause their best data scientists to leave. From org structure and leadership to tooling, infrastructure, and more, Michelangelo D'Agostino shares concrete (and inexpensive) tips for keeping your data scientists engaged, productive, and adding business value. Read more.
11:20am–12:00pm Thursday, 09/13/2018
Location: 1E 07/08 Level: Beginner
Thomas Weise (Lyft), Mark Grover (Lyft)
Average rating: **...
(2.50, 2 ratings)
Thomas Weise and Mark Grover explain how Lyft uses its streaming platform to detect and respond to anomalous events, using data science tools for machine learning and a process that allows for fast and predictable deployment. Read more.
1:10pm–1:50pm Thursday, 09/13/2018
Location: 1A 21/22 Level: Intermediate
Milene Darnis (Uber)
Average rating: ****.
(4.22, 9 ratings)
Every new launch at Uber is vetted via robust A/B testing. Given the pace at which Uber operates, the metrics needed to assess the impact of experiments constantly evolve. Milene Darnis explains how the team built a scalable and self-serve platform that lets users plug in any metric to analyze. Read more.
1:10pm–1:50pm Thursday, 09/13/2018
Location: 1E 09 Level: Non-technical
Shawn Terry (Komatsu Mining Corp)
Average rating: ****.
(4.50, 2 ratings)
Global heavy equipment manufacturer Komatsu is using IoT data to continuously monitor some of the largest mining equipment to ultimately improve mine performance and efficiencies. Shawn Terry details the company's data journey and explains how it is using advanced analytics and predictive modeling to drive insights on terabytes of IoT data from connected mining equipment. Read more.
1:10pm–1:50pm Thursday, 09/13/2018
Location: 1E 14 Level: Non-technical
Brandy Freitas (Pitney Bowes)
Average rating: ****.
(4.50, 6 ratings)
Data science is an approachable field given the right framing. Often, though, practitioners and executives are describing opportunities using completely different languages. Join Brandy Freitas to develop context and vocabulary around data science topics to help build a culture of data within your organization. Read more.
2:00pm–2:40pm Thursday, 09/13/2018
Location: 1E 09 Level: Beginner
tao huang (JD.com), mang zhang (JD.com), Bing Bai (JD.com)
Average rating: ***..
(3.00, 1 rating)
Tao Huang, Mang Zhang, and 白冰 explain how JD.com uses Alluxio to provide support for ad hoc and real-time stream computing, using Alluxio-compatible HDFS URLs and Alluxio as a pluggable optimization component. To give just one example, one framework, JDPresto, has seen a 10x performance improvement on average. Read more.
2:00pm–2:40pm Thursday, 09/13/2018
Location: 1A 06/07 Level: Intermediate
Ted Malaska (Capital One), Mark Grover (Lyft)
Many details go into building a big data system for speed, from determining a respectable latency until data access and where to store the data to solving multiregion problems—or even knowing just what data you have and where stream processing fits in. Mark Grover and Ted Malaska share challenges, best practices, and lessons learned doing big data processing and analytics at scale and at speed. Read more.
4:20pm–5:00pm Thursday, 09/13/2018
Location: 1E 10/11 Level: Beginner
Yasuyuki Kataoka (NTT Innovation Institute, Inc.)
Average rating: ***..
(3.00, 4 ratings)
One of the challenges of sports data analytics is how to deliver machine intelligence beyond a mere real-time monitoring tool. Yasuyuki Kataoka highlights various real-time machine learning models in both IndyCar and Tour de France, sharing real-time data processing architectures, machine learning models, and demonstrations that deliver meaningful insights for players and fans. Read more.