Sep 9–12, 2019
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Schedule: Data, Data Networks, Data Quality sessions

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11:05am11:45am Wednesday, September 11, 2019
Location: LL21 A/B
mayukh bhaowal (Salesforce)
Average rating: ***..
(3.75, 4 ratings)
AI product managers (PMs) are rising. With the shift from the digital revolution to the AI revolution, the old product management workflow and frameworks are crumbling down. Mayukh Bhaowal explores new ways to manage AI products and outlines how AI executive roles are different and what toolbox you'll need to succeed in the era of artificial intelligence. Read more.
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11:55am12:35pm Wednesday, September 11, 2019
Location: LL21 C/D
Joy Rimchala (Intuit), TJ Torres (Intuit), Xiao Xiao (Intuit), Hui Wang (Intuit)
Average rating: *****
(5.00, 1 rating)
Document understanding is a company-wide initiative at Intuit that aims to make data preparation and entry obsolete through the application of computer vision and machine learning. A team of data scientists, Joy Rimchala, TJ Torres, Xiao Xiao, and Hui Wang, detail the design and modeling methodologies used to build this platform as a service. Read more.
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4:50pm5:30pm Wednesday, September 11, 2019
Location: 230 C
Sijun He (Twitter), Ali Mollahosseini (Twitter)
Average rating: ****.
(4.00, 1 rating)
Twitter is what’s happening in the world right now. To connect users with the best content, Twitter needs to build a deep understanding of its noisy and temporal text content. Sijun He and Ali Mollahosseini explore the named entity recognition (NER) system at Twitter and the challenges Twitter faces to build and scale a large-scale deep learning system to annotate 500 million tweets per day. Read more.
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11:05am11:45am Thursday, September 12, 2019
Location: 230 B
Chaitanya Shivade (IBM Research)
Average rating: ****.
(4.00, 1 rating)
Using deep learning models to perform natural language inference (NLI) is a fundamental task in natural language processing. Chaitanya Shivade introduces a recently released dataset, MedNLI, for this task in the clinical domain, describes state-of-the-art models, explores how to adapt these into the healthcare domain, and details applications that can leverage these models. Read more.
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11:05am11:45am Thursday, September 12, 2019
Location: 230 C
Alex Ratner (Snorkel)
Average rating: *****
(5.00, 3 ratings)
Alex Ratner explores programmatic approaches to building, managing, and modeling training data for machine learning (ML) using the open source framework Snorkel. Training data is increasingly one of the key bottlenecks to using modern ML, and Alex outlines recent systems and algorithmic and theoretical advances in building and managing training data for ML. Read more.
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11:55am12:35pm Thursday, September 12, 2019
Location: Expo Hall 3
Vinay Rao (RocketML), Santi Adavani (RocketML)
Average rating: ***..
(3.33, 6 ratings)
Current deep learning approaches require large amounts of labeled data. The creation of labeled data is expensive, error prone, and time consuming. Vinay Rao and Santi Adavani walk you through an effective learning method with minimum labelled data and human intervention. Read more.
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11:55am12:35pm Thursday, September 12, 2019
Location: 230 C
Vijay Gabale (Infilect)
Beyond computer games and neural architecture search, practical applications of deep reinforcement learning (DRL) to improve classical classification or detection tasks are few and far between. Vijay Gabale outlines a technique and some experiences of applying DRL on improving the distribution input datasets to achieve state-of-the-art performance, specifically on object-detection tasks. Read more.
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2:35pm3:15pm Thursday, September 12, 2019
Location: 230 A
Sanji Fernando (Optum)
Average rating: *****
(5.00, 1 rating)
Sanji Fernando explores his experience building, deploying, and operating a deep learning model that improves hospital revenue cycle management, including business alignment, data preparation, model development, model selection, deployment, and operations. Sanji also details key knowledge and opportunities for improvement with deep learning models in healthcare. Read more.
  • Intel AI
  • O'Reilly
  • Amazon Web Services
  • IBM Watson
  • Dataiku
  • Dell Technologies
  • Intuit
  • Gamalon
  • H2O.ai
  • Hewlett Packard Enterprise
  • MapR Technologies
  • Sisu Data
  • Intuit

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