Senior Machine Learning Engineer, Toronto

Studiotilt
London
1 month ago
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Senior Machine Learning Engineer, Toronto

Join to apply for theSenior Machine Learning Engineer, Torontorole atTILT.

Tilt

Our mission is to make fashion accessible to all and inspire everyone to dress a little better.We believe e-commerce is in a rut, with brands lost in a decades-long void, lacking innovation, and mindlessly redesigning websites without fixing the real issue making shopping fun and affordable.

Today, we are the UK's biggest live shopping platform focused on making shopping a joyful, social experience that brings people together and helps everyone level up their style.We've raised an $18m Series A, and we're rapidly growing and looking to hire A-players to build the future of shopping.

Your Mission

We are hiring aSenior Machine Learning Engineerfor AI/ML initiatives at Tilt. This is a hands-on role where you'll lead by example, directly contributing to building and scaling AI at Tilt.This is not a management or research position.

You must be prepared to jump into a start-up environment; if you prefer to avoid risks, this isn't the right place for you, so please refrain from applying. We seek passionate, driven individuals eager to learn quickly, work hard, and help us shape the future.

What You'll Do

  • Design, develop and deploy the first-of-their-kind AI-driven features for e-commerce from scratch.
  • Work closely with product, engineering, and design teams to identify and execute high-impact features.
  • Build robust, scalable infrastructure for AI at Tilt.
  • Provide valuable technical guidance for product engineers on building world-class AI systems.
  • Dig deep into existing products, develop plans for improvement and collaborate with the team to execute.

Requirements

You must be an ambitious, curious, relentless and no ego problem-solver excited to build the future of shopping. Additionally:

  • Candidates MUST be ready to join a startup and move fast through interview rounds.
  • Experience taking ML systems from 0 to 1 to large-scale, serving millions of users (LLMs, rec sys, computer vision or NLP).
  • 3+ years of hands-on experience in ML/AI engineering, with proven expertise in building and deploying solutions at scale.
  • Bachelor's degree in a STEM major (mathematics, computer science, engineering).
  • Expertise in Python, PyTorch/TensorFlow and ML frameworks.
  • Comfortable working with our stack (or similar): AWS, OpenSearch, PostgreSQL, Snowflake.
  • Ability to work autonomously to deliver results at a rapid pace.

Bonus

  • Experience with high-traffic, real-time platforms.
  • 1+ years of experience in high-growth, fast-paced environments.

Perks & Benefits

  • Stock Options.
  • MacBook Pro + Tech Budget.
  • Flexible and hybrid working as standard.
  • Canary Wharf office includes gym access.
  • Opportunity for periods of fully remote work, from any location.

Want to join?

Apply with your CV and provide authentic answers to the questions in the application form.

Compensation Range: CA$110K - CA$160K

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

Software Development

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