Ethics and Bias in Machine Learning (VIRTUAL EVENT)

London Data Science and Machine Learning
London Data Science and Machine Learning
Public group

Online Event

This event has passed

Details

Dear all,

I am happy to announce our next event that will take place on 26th March. GIVEN THE CORONAVIRUS SITUATION THIS WILL BE A VIRTUAL EVENT (details to follow). There is nothing we can do about the beer & pizzas this time, however there will still be a cool prize for one of the participants, which will post after the event to the lucky winner.

* Session abstract * : As companies become more data-driven and the use of algorithms becomes part of their day-to-day operation, the need to properly assess the risk of any particular use case becomes increasingly important. This talk looks at the difference between ethics and regulation; how to identify and eliminate bias from your models and the importance of training those who work in data science and digital teams in both topics

* Speaker * : David Bloch
David Bloch is a data science professional with over twenty years experience working in data and analytics roles; he has recently joined Domino Data Labs in the position of data science evangelist; tasked with boosting awareness of the platform and product, assisting customers build out their community of expertise in data science and coaching data science leaders on how to build high performing teams. David has previously held executive leadership roles in companies such as Fonterra, Vodafone and Unleashed Software

==
Agenda:

- 18:00-18:15 Welcoming remarks by our sponsor Domino Data Lab
- 18:15-18:45 Ethics and Bias in Machine Learning
- 18:45-19:00 Q&A

Looking forward to virtually seeing you on 26th March!

This meeting will be held over Zoom.

Join Zoom Meeting
https://dominodatalab.zoom.us/j/571741849

Meeting ID:[masked]

One tap mobile
[masked],,[masked]# United Kingdom
[masked],,[masked]# United Kingdom

Dial by your location
[masked] United Kingdom
[masked] United Kingdom
[masked] United Kingdom
[masked] United Kingdom
[masked] United Kingdom
[masked] United Kingdom