
Machine learning for operational analytics and business intelligence
Oct 10, 2019 - 00:51:38
Radio and PodcastLive Radio & Podcasts
In this episode of the Data Show , I spoke with Forough Poursabzi-Sangdeh , a postdoctoral researcher at Microsoft Research New York City. Poursabzi works in the interdisciplinary area of interpretable and interactive ma...
It’s time for data scientists to collaborate with researchers in other disciplines is an episode from O'Reilly Data Show Podcast by O'Reilly Media. In this episode of the Data Show , I spoke with Forough Poursabzi-Sangdeh , a postdoctoral r...
This episode belongs to O'Reilly Data Show Podcast.
Use the player on this page to stream the episode online.
Published Mar 28, 2019, 00:36:08 long, audio available.
In this episode of the Data Show , I spoke with Forough Poursabzi-Sangdeh , a postdoctoral researcher at Microsoft Research New York City. Poursabzi works in the interdisciplinary area of interpretable and interactive machine learning. As models and algorithms become more widespread, many important considerations are becoming active research areas: fairness and bias, safety and reliability, security and privacy, and Poursabzi’s area of focus—explainability and interpretability. We had a great conversation spanning many topics, including: Current best practices and state-of-the-art methods used to explain or interpret deep learning—or, more generally, machine learning models. The limitations of current model interpretability methods. The lack of clear/standard metrics for comparing different approaches used for model interpretability Many current AI and machine learning applications augment humans, and, thus, Poursabzi believes it’s important for data scientists to work closely with researchers in other disciplines. The importance of using human subjects in model interpretability studies. Related resources: “Local Interpretable Model-Agnostic Explanations (LIME): An Introduction” “Interpreting predictive models with Skater: Unboxing model opacity” Jacob Ward on “How social science research can inform the design of AI systems” Sharad Goel and Sam Corbett-Davies on “Why it’s hard to design fair machine learning models” “Managing risk in machine learning” : considerations for a world where ML models are becoming mission critical Francesca Lazzeri and Jaya Mathew on “Lessons learned while helping enterprises adopt machine learning” Jerry Overton on “Teaching and implementing data science and AI in the enterprise”
You can listen to It’s time for data scientists to collaborate with researchers in other disciplines online on Radio and Podcast. Open the player on this page to stream the available audio.
It’s time for data scientists to collaborate with researchers in other disciplines is an episode from O'Reilly Data Show Podcast by O'Reilly Media.
This episode is 00:36:08 long.
This episode was published on Mar 28, 2019.
Yes. Use the heart button on the episode page to add it to your favorite episodes list.
Yes. This page shows related episodes from O'Reilly Data Show Podcast when more episodes are available from the podcast feed.
You can listen to It’s time for data scientists to collaborate with researchers in other disciplines on this page when the episode audio is available from the podcast feed.
It’s time for data scientists to collaborate with researchers in other disciplines is from O'Reilly Data Show Podcast by O'Reilly Media.
Published Mar 28, 2019 and 00:36:08 long