Machine Learning Engineer - Relevance & Learning Systems
Role summary
Wizard, a leading AI Shopping Agent, seeks a Machine Learning Engineer to design and build feedback-driven learning systems that enhance AI agent performance. This role focuses on leveraging real user behavior and interactions to create learning signals and production systems that continuously improve outcomes. Responsibilities include building and operating feedback loops, evaluation infrastructure, and signal pipelines, as well as designing experiments and optimizing product metrics. The ideal candidate has 5-8 years of experience shipping ML systems, particularly in recommendation, ranking, personalization, or optimization, with deep Python knowledge and a pragmatic approach to problem-solving.
About Wizard
Wizard is the top-performing AI Shopping Agent, delivering the best products from across the web with unmatched accuracy, quality, and trust.
The Role
We’re looking for a Machine Learning Engineer to design and build feedback driven learning systems that improve our AI agent over time. This is not a traditional RL research role, we’re focused on building systems that learn from real user behavior and improve production. You’ll be working at the intersection of a live conversational agent and real shopping behavior – the feedback signal quality here is unusually rich compared to traditional search.
You’ll focus on turning user interactions into learning signals, designing practical feedback loops and shipping systems that continuously improve real world outcomes.
What You’ll Do
What Success Looks like
Ideal Background
Compensation & Benefits
The expected base salary range for this role is $225,000 - $280,000 USD, and will vary based on skills, experience, role level, and geographic location. Final compensation will be determined by considering these factors alongside overall role scope and responsibilities.
In addition to base salary, Wizard offers:
Wizard is committed to fair, transparent, and competitive compensation practices.