What I actually do
This is end-to-end production ML work. I move across problem framing, training data, feature engineering, model training, batch and real-time serving, experiments, rollout, monitoring, debugging, and migration work when old system paths need to be retired.
- Led the shift toward a real-time LightGBM availability model with shadow-mode validation, rollout checks, and better observability; the re-envisioned batch real-time model improved marketplace quality.
- Built thresholding and calibration changes that improved good fill rate and made score-to-product decisions easier to control.
- Integrated new signals such as Kroger balance-on-hand data and Simbe shelf scans, and built forecasting and evaluation surfaces to figure out what was actually true.