Schedule: Data quality, data governance and data lineage sessions
Much of ML in use within companies falls under supervised learning, which means proper training data (or labeled examples) are essential. The rise of deep learning has made this even more pronounced, as many modern neural network architectures rely on large amounts of training data. Issues pertaining to data security, privacy and governance persist and are not necessarily unique to ML applications. But the hunger for large amounts of training data, the advent of new regulations like GDPR, and the importance of managing risk means a stronger emphasis on reproducibility and data lineage are very much needed.
Alistair Croll (Solve For Interesting),
Jennifer Yang (Wells Fargo ECS),
Brian Lynch (TD Bank Group),
Dan Barker (RSA Security),
Rochelle March (Trucost),
Catherine Gu (Stanford University),
Karan Jaswal (Cinchy),
Moto Tohda (Tokyo Century (USA)),
Viridiana Lourdes (Ayasdi),
Peter Swartz (Altana Trade),
Mikheil Nadareishvili (TBC Bank)
Wim Stoop (Cloudera),
Srikanth Venkat (Cloudera)
Andrew Brust (Blue Badge Insights | ZDNet)
Brindaalakshmi K (Independent Consultant)
Neelesh Salian (Stitch Fix)
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