About the Role
Senior MLEs lead efforts within the team and broader Delivery Marketplace organization to drive ideation, development and productionization of optimization solutions with real-time and ML-based signals that solve strategically important problems. Some existing problem spaces that the team works on:
- Using statistical/machine learning/forecasting models for demand and supply models
- State of the art prediction models for estimating food preparation times, batching quality as well as time spent by couriers at restaurants picking up items.
- Develop objective function which balances magical user experience and economics of the business
It is a challenging yet rewarding job. You will have a lot of opportunities to work with product managers, data scientists and engineers from other teams. You will guide/mentor a group of MLEs in the end-to-end development cycle from product ideation, model development and productionisation at scale. You will be in-charge of solving Uber scale problems with the right techniques like reinforcement learning/deep learning/optimization methods.
What the Candidate Will Do ----
- Drive the design, development, optimization, and productization of machine learning (ML) solutions and systems that are used to solve strategically important or vaguely defined problems.
- Build ML solutions to improve Delivery marketplace efficiency while delivering magical user experience
- Lead junior ML engineers, provide technical leadership and vision for the team.
- - - - Basic Qualifications ----
- PhD or equivalent experience in Computer Science, Engineering, Mathematics or a related field and 5 years of Software Engineering work experience.
- Experience in programming with a language such as Python, C, C++, Java, or Go.
- Experience with ML packages such as Tensorflow, PyTorch, JAX, and Scikit-Learn.
- Experience with SQL and database systems such as Hive, Kafka, and Cassandra.
- Experience in the development, training, productionisation and monitoring of ML solutions at scale.
- - - - Preferred Qualifications ----
- Experience in modern deep learning architectures and probabilistic models.
- Experience in optimization (RL / Bayes / Bandits) and online learning.
- Experience in causal inference/personalization/ranking
For San Francisco, CA-based roles: The base salary range for this role is USD$185,000 per year - USD$205,500 per year.
For Sunnyvale, CA-based roles: The base salary range for this role is USD$185,000 per year - USD$205,500 per year.