Applying topological data analysis and geometry-based ML
Highlights:
- 00:02:25 - Colleen’s motivation for writing a book, interdisciplinary collaborations, and explaining advanced mathematical tools in accessible ways.
- 00:08:44 - Journey from biology and social sciences to data science, and the integration of different mathematical tools in solving data problems.
- 00:14:13 - Overcoming imposter syndrome and the value of exploring beyond one's field.
- 00:15:02 - The importance of mentorship.
- 00:23:40 - Coping strategies for setbacks in academia and industry.
About the Guest:
Colleen Farrelly is an author and senior data scientist. Her research has focused on network science, topological data analysis, and geometry-based machine learning. She has a master's from the University of Miami and has experience in many fields, including healthcare, biotechnology, nuclear engineering, marketing, and education. Colleen wrote the book, The Shape of Data: Geometry-Based Machine Learning and Data Analysis in R.
Mentions:
Connect with Colleen Farrelly on LinkedIn
Related Links:
The Shape of Data: Geometry-Based Machine Learning and Data Analysis in R
Connect with Us
Margot Gerritsen on LinkedIn
Listen and Subscribe to the WiDS Podcast on Apple Podcasts,Google Podcasts,Spotify,Stitcher
More episodes from "Women in Data Science Worldwide"
Don't miss an episode of “Women in Data Science Worldwide” and subscribe to it in the GetPodcast app.