(00:00) Intro: Negative connotations in AI (00:21) Synthetic data fills gaps (00:35) Guest introduction (01:23) Importance of data quality (02:14) Data-centric machine learning focus (03:02) Bias mitigation strategies (03:41) Role of human in AI loop (04:34) Synthetic data in AI (05:29) Pre-trained models and data quality (06:02) Experiments with data quality (06:39) Leading AI and research projects (07:24) Explainability in AI models (08:57) Privacy concerns in AI analysis (10:34) Open source model benchmarking (11:33) Motivation for open source contributions (12:28) Long-term open source involvement (13:50) Mentoring in open source projects (15:19) Starting with open source (16:35) Contributing beyond code (17:50) Building community through collaboration (18:48) Power of open source accessibility (19:52) Open source challenges (20:38) Success factors for open source projects (22:58) Career-defining moments (24:49) First encounter with open source (26:28) Introduction to AI through NLP (28:02) Pivoting from PhD to industry (29:02) Career lessons and continuous learning (30:13) Advice for women in tech
Podden och tillhörande omslagsbild på den här sidan tillhör
Women in Data. Innehållet i podden är skapat av Women in Data och inte av,
eller tillsammans med, Poddtoppen.