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Machine Learning Engineer - Relevance & Learning Systems

Role overview

Qualifications

  • 5-8 years hands-on experience building and shipping ML systems
  • Bachelor’s or Master’s degree in computer science
  • Experience shipping ML systems to production and working on recommendation systems, ranking, personalization or optimization problems
  • Deep knowledge of Python and ML tooling

Responsibilities

  • Build and productionize feedback loops that improve agent performance over time
  • Own the signal pipelines end-to-end: instrument events, build clean labeled datasets, and translate user behaviors into reliable learning signals
  • Design lightweight reinforcement learning / bandit-style approaches where appropriate
  • Design and analyze experiments that validate whether learning system changes actually improve real outcomes

About the company

Wizard logo

Wizard

Computer Software / SaaS

Wizard is using the power of generative AI and rich messaging technologies to revolutionize the shopping experience. Shop smarter with Wizard.

Company details

IndustryComputer Software / SaaS
Company size51 - 200

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Job description

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

  • Build and productionize feedback loops that improve agent performance over time
  • Build the evaluation infrastructure – offline metrics, regression suites, and experiment analysis
  • Own the signal pipelines end-to-end: instrument events, build clean labeled datasets, and translate user behaviors into reliable learning signals
  • Design lightweight reinforcement learning / bandit-style approaches where appropriate
  • Partner closely with product and engineering to define success metrics and optimize for them
  • Design and analyze experiments that validate whether learning system changes actually improve real outcomes
  • Improve ranking, recommendations and decision making within the agent
  • Iterate quickly: Ship → measure → learn → improve 

What Success Looks like

  • You ship quickly and drive measurable improvements in core product metrics
  • You turn noisy user behavior into reliable learning signals that improve the agent over time
  • You own systems end to end and operate comfortably in production

Ideal Background

  • 5-8 years hands on experience building and shipping ML systems
  • Bachelor’s or Master's degree in computer science
  • Experience shipping ML systems to production and have worked on recommendation systems, ranking, personalization or optimization problems
  • Deep knowledge in Python and model ML tooling
  • Pragmatic: you choose simple, effective solutions over theoretically perfect ones

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:

  • Equity in the form of stock options
  • Medical, dental, and vision coverage
  • 401(k) plan
  • Flexible PTO and company holidays
  • Fully remote work within the United States
  • Periodic company offsites and team gatherings

Wizard is committed to fair, transparent, and competitive compensation practices.

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MR

Marcus Rivera

Chief Revenue Officer

m.rivera@company.com
linkedin.com/in/marcusrivera
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