In addition to the many data engineering initiatives at Starbucks, we are also working on many interesting data science initatives. The business scenarios involved in our deep learning initatives include (but are not limited to) planogram analysis (layout of our stores for efficient partner and customer flow) to predicting product pairings (e.g. purchase a caramel machiato and perhaps you would like caramel brownie) via the product components using graph convolutional networks.
For this session, we will be focusing on how we can run distributed Keras (TensorFlow backend) training to perform image analytics. This will be combined with MLflow to showcase the data science lifecycle and how Databricks + MLflow simplifies it.
Vishwanath Subramanian is Director of Data and Analytics Engineering at Starbucks. He has over 15 years of experience with a background in applied analytics, distributed systems, data warehouses, product management and software development. At Starbucks, his key focus is providing Next Generation Analytics for the enterprise, enabling large scale data processing across various platforms and powering Machine Learning workflows for amazing customer experiences.
Denny Lee is a Developer Advocate at Databricks. He is a hands-on distributed systems and data sciences engineer with extensive experience developing internet-scale infrastructure, data platforms, and predictive analytics systems for both on-premise and cloud environments. He also has a Masters of Biomedical Informatics from Oregon Health and Sciences University and has architected and implemented powerful data solutions for enterprise Healthcare customers. His current technical focuses include Distributed Systems, Apache Spark, Deep Learning, Machine Learning, and Genomics.