đ Driving Innovation: Machine Learning in Auto Claims Processing
The MLOps Podcast - En podcast av Dean Pleban @ DagsHub
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In this episode, Dean speaks with MichaĆ Oleszak, an ML engineering manager at Solera. MichaĆ shares insights into how his team is using machine learning to transform the automotive claims process, from recognizing vehicle damages in images to estimating repair costs. The conversation covers the challenges of deploying ML pipelines in production, managing data quality for computer vision tasks, and balancing technical implementation with business needs. MichaĆ also discusses his approach to model evaluation, the benefits of monorepo architecture, and his views on exciting developments in self-supervised learning for computer vision. Join our Discord community: https://discord.gg/tEYvqxwhah --- Timestamps: 00:00 Introduction 00:42 Production for Machine Learning at Solera 03:49 Transitioning from Images to Structured Data 04:58 Combining Deep Learning and Non-Deep Learning Models 05:15 Deployment Process for Machine Learning Models 08:01 Challenges and Solutions in Monorepo Adoption 12:57 Evaluating Model and Pipeline Versions 21:57 Tools for ML Projects: Monorepo, Pants, GitHub Actions 24:04 Data Management and Data Quality 30:14 Challenges in ML Efforts: Data Quality 30:37 Excitement about Self-Supervised Learning and JEPA Architectures 34:45 Controversial Opinion: Importance of Statistics for ML 36:40 Recommendations Links đPrisoners of Geography by Tim Marshall: https://www.amazon.com/Prisoners-Geography-Explain-Everything-Politics/dp/1501121472 âĄïž MichaĆ Oleszak on LinkedIn â https://www.linkedin.com/in/michal-oleszak/ âĄïž MichaĆ Oleszak on Twitter â https://x.com/MichalOleszak đ Check Out Our Website! https://dagshub.com Social Links: âĄïž LinkedIn: https://www.linkedin.com/company/dagshub âĄïž Twitter: https://twitter.com/TheRealDAGsHub âĄïž Dean Pleban: https://twitter.com/DeanPlbn
