TLDRocket
Sign in

AI Team & Organization

1 summarised story about AI Team & Organization, each linking back to the original source. Browse all topics →

Sunday, 12 July 2020

What I Do During A Data Science Project To Deliver Success

Eugene Yan 6 years ago

A data scientist describes practices for executing machine learning projects effectively, including conducting literature reviews before design, iterating quickly through experiments with Jupyter notebooks and MLflow, holding daily stand-ups and weekly end-of-day debriefs for team alignment, and conducting regular stakeholder check-ins with demos. The article emphasizes that a week of research into prior work is usually sufficient before starting an MVP, and recommends using simple tools like Flask or FastAPI for demos. The practices aim to prevent common pitfalls such as unnecessary reinvention, poor communication, and building features users don't want.