
Sign up to save your podcasts
Or


Today we’re joined by Parvez Ahammad, head of data science applied research at LinkedIn.
In our conversation, Parvez shares his interesting take on organizing principles for his organization, starting with how data science teams are broadly organized at LinkedIn. We explore how they ensure time investments on long-term projects are managed, how to identify products that can help in a cross-cutting way across multiple lines of business, quantitative methodologies to identify unintended consequences in experimentation, and navigating the tension between research and applied ML teams in an organization. Finally, we discuss differential privacy, and their recently released GreyKite library, an open-source Python library developed to support forecasting.
The complete show note for this episode can be found at twimlai.com/go/492.
By Sam Charrington4.7
419419 ratings
Today we’re joined by Parvez Ahammad, head of data science applied research at LinkedIn.
In our conversation, Parvez shares his interesting take on organizing principles for his organization, starting with how data science teams are broadly organized at LinkedIn. We explore how they ensure time investments on long-term projects are managed, how to identify products that can help in a cross-cutting way across multiple lines of business, quantitative methodologies to identify unintended consequences in experimentation, and navigating the tension between research and applied ML teams in an organization. Finally, we discuss differential privacy, and their recently released GreyKite library, an open-source Python library developed to support forecasting.
The complete show note for this episode can be found at twimlai.com/go/492.

479 Listeners

1,089 Listeners

170 Listeners

302 Listeners

334 Listeners

211 Listeners

201 Listeners

95 Listeners

511 Listeners

131 Listeners

227 Listeners

610 Listeners

25 Listeners

35 Listeners

40 Listeners