Data Science at Pinterest - the first 100 Petabytes

data sciencemachine learningbig datadata engineeringscaling

Speaker: Mohammad Shahangian, Pinterest

In this talk, Mohammad Shahangian gives an overview of Pinterest’s data problems as they scaled their data corpus from 0 to 100PB. You’ll learn about: 
- Critical decisions and tradeoffs that went into the original data engineering efforts at Pinterest
- The processes and analytical methods that go into building a data driven product company like Pinterest
- The limitations of data and the approaches Pinterest is taking to solving some of these problems

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