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Interesting technical issues prompted by GDPR and data privacy concerns

Interesting technical issues prompted by GDPR and data privacy concerns

FromLinear Digressions


Interesting technical issues prompted by GDPR and data privacy concerns

FromLinear Digressions

ratings:
Length:
20 minutes
Released:
Feb 17, 2020
Format:
Podcast episode

Description

Data privacy is a huge issue right now, after years of consumers and users gaining awareness of just how much of their personal data is out there and how companies are using it. Policies like GDPR are imposing more stringent rules on who can use what data for what purposes, with an end goal of giving consumers more control and privacy around their data. This episode digs into this topic, but not from a security or legal perspective—this week, we talk about some of the interesting technical challenges introduced by a simple idea: a company should remove a user’s data from their database when that user asks to be removed. We talk about two topics, namely using Bloom filters to efficiently find records in a database (and what Bloom filters are, for that matter) and types of machine learning algorithms that can un-learn their training data when it contains records that need to be deleted.
Released:
Feb 17, 2020
Format:
Podcast episode

Titles in the series (100)

Linear Digressions is a podcast about machine learning and data science. Machine learning is being used to solve a ton of interesting problems, and to accomplish goals that were out of reach even a few short years ago.