Staff Machine Learning Engineer

Remote from
USA flag
USA
Salary, yearly, USD
189,308 - 389,753
Employment type
Full Time,
Job posted
Apply before
2 Jul 2026
Experience level
Senior
Views / Applies
14 / 4

About Pinterest

Bring everyone the inspiration to create a life they love.

Actively Hiring
Verified job posting
This job post has been manually reviewed for authenticity and compliance.

AI Summary

Pinterest is seeking a Staff Machine Learning Engineer to lead ML strategy for advertiser and seller experiences. The role involves building recommendation systems, context layers, and feedback loops for agentic AI. Responsibilities include end-to-end ownership of ML initiatives, from problem framing to production deployment. The ideal candidate has 7+ years of experience in large-scale ML systems, with expertise in recommendation, ranking, or agentic AI. This is a high-impact individual contributor role focused on shaping AI-driven advertiser tools.

Role DNA

Job Complexity
Easy Hard
Pace & Pressure
Relaxed Fast-paced
Autonomy Level
Guided Full Ownership
Communication Load
Independent Highly Collaborative
AI Insight The role requires 7+ years of experience, end-to-end ownership of complex ML systems, and expertise in cutting-edge areas like agentic AI and recommendation systems, making it extremely challenging.

Salary Analysis

Median Highly Competitive
USD289,531
US Market
USD150k – USD400k
0 USD440k
AI Insight The offered salary range of $189,308 to $389,753 is highly competitive, reflecting the seniority and specialized skills required. The median of $289,531 is above the typical market range for similar roles, indicating strong compensation.

Key Skills

Machine Learning Recommendation Systems Agentic AI Python Java Large-Scale Data Systems Ranking Personalization Experimentation Mentoring

I am excited to apply for the Staff Machine Learning Engineer position at Pinterest. With over 8 years of experience building large-scale ML systems, including recommendation engines and agentic AI, I am confident in my ability to drive the ML strategy for advertiser and seller experiences. My background includes end-to-end ownership of ML projects, from problem framing to production deployment, and expertise in retrieval, ranking, and personalization.

I have a strong track record of mentoring engineers and raising technical bars, aligning with Pinterest's focus on collaboration and innovation. I am particularly drawn to the opportunity to combine recommendation systems with agentic AI to enhance advertiser productivity. My experience with Python, Java, and large-scale data systems will enable me to contribute immediately.

I am eager to bring my skills to Pinterest and help shape the future of AI-driven advertising tools. Thank you for considering my application.

Describe your experience building and deploying large-scale recommendation systems. What challenges did you face and how did you overcome them?
I led the development of a real-time recommendation system for an e-commerce platform, handling millions of users. Challenges included latency constraints and cold start. We used embeddings for user and item representations and implemented a two-stage retrieval-ranking pipeline. We also used online learning to adapt to new users quickly.
How would you design a feedback loop for an AI agent that recommends next-best actions to advertisers?
I would define explicit feedback (e.g., clicks, conversions) and implicit signals (e.g., time spent). The loop would include A/B testing, counterfactual evaluation, and online learning. I'd also incorporate user satisfaction surveys to capture qualitative feedback.
Explain how you would approach multi-objective optimization in a recommendation system for advertiser tools.
I would use techniques like scalarization with weights, or Pareto optimization. For example, optimizing for both advertiser ROI and user engagement. I'd also use contextual bandits to dynamically balance objectives based on user segments.
Describe a time you mentored junior engineers. What was your approach?
I established regular 1:1s, code reviews, and pair programming sessions. I focused on teaching system design and experimentation rigor. One mentee went on to lead a major ML project after a year of guidance.
How do you ensure responsible AI usage in production systems?
I implement fairness checks, bias audits, and transparency measures. For example, we used disparate impact analysis on recommendation models and added explanation features for users. I also advocate for diverse training data and regular model monitoring.

About Pinterest:

Millions of people around the world come to our platform to find creative ideas, dream about new possibilities and plan for memories that will last a lifetime. At Pinterest, we’re on a mission to bring everyone the inspiration to create a life they love, and that starts with the people behind the product.

Discover a career where you ignite innovation for millions, transform passion into growth opportunities, celebrate each other’s unique experiences and embrace the flexibility to do your best work. Creating a career you love? It’s Possible.

At Pinterest, AI isn’t just a feature, it’s a powerful partner that augments our creativity and amplifies our impact, and we’re looking for candidates who are excited to be a part of that. To get a complete picture of your experience and abilities, we’ll explore your foundational skills and how you collaborate with AI.

Through our interview process, what matters most is that you can always explain your approach, showing us not just what you know, but how you think. You can read more about our AI interview philosophy and how we use AI in our recruiting process here.

The Advertiser and Seller Experience team builds intelligent systems that help Pinterest advertisers and sellers move from insight to action. Our work spans advertiser-facing products such as Ads Manager as well as internal seller productivity tools that help sales teams identify opportunities, prepare customer conversations, troubleshoot campaign performance, and drive advertiser growth. As a Staff Machine Learning Engineer focused on Agentic AI & Recommendations, you will lead the ML strategy and execution for the intelligence layer behind these experiences. You will build recommendation systems, context foundations, and feedback loops that help AI agents understand advertiser and seller goals, surface the right next-best action, and learn from user response over time. This is a high-impact Staff IC role for someone who wants to combine deep recommendation systems expertise with modern agentic AI to shape how Pinterest advertisers and sellers work.

What you’ll do: 

  • Lead the design and implementation of large-scale recommendation and decisioning systems that power proactive advertiser and seller guidance across Ads Manager, Pinterest Business Assistant, Pinnacle, and sales productivity workflows.
  • Build ML foundations for a unified context layer and context agent that transforms campaign, account, performance, market, workflow, and interaction data into reusable signals for agentic experiences.
  • Own recommendation initiatives end-to-end, from problem framing, label and feedback design, feature pipelines, model development, and offline evaluation through production deployment, experimentation, and monitoring.
  • Develop evaluation and feedback loops that measure recommendation quality, user trust, action rates, business impact, and failure modes, then use those learnings to continuously improve models and agent behavior.
  • Apply modern ML techniques such as retrieval and ranking, embeddings, personalization, multi-objective optimization, contextual decisioning, and response modeling to business-critical advertiser and seller workflows.
  • Use AI to accelerate analysis, prototyping, documentation, and experimentation while applying strong judgment, testing, data validation, and review to ensure correctness, reliability, privacy, and customer trust.
  • Mentor engineers and raise the technical bar for ML development, experimentation rigor, responsible AI usage, and production-quality agentic systems across the organization.

What we’re looking for:

  • 7+ years of experience building and deploying large-scale ML systems in production (e.g., ads ranking, recommendation, Agentic AI, or search), with strong end-to-end ownership from problem scoping through evaluation and experimentation, and solid software engineering skills in at least one modern language (e.g., Python, Java) and large-scale data systems.
  • Degree in Computer Science, Mathematics, or a related technical field, or equivalent experience.
  • Strong end-to-end ML ownership, including problem scoping, data and label design, feature engineering, model training, production deployment, offline/online evaluation, experimentation, and monitoring.
  • Deep understanding of recommendation system architectures such as candidate generation, retrieval, ranking, re-ranking, embeddings, vector search, multi-task learning, calibration, contextual bandits, or reinforcement learning.
  • Proven Staff-level technical leadership as a hands-on IC, setting technical direction and driving multi-quarter ML and systems roadmaps, including aligning stakeholders on priorities, trade-offs, and execution plans.
  • Excellent cross-functional communication and collaboration skills, building strong partnerships with product, data science, infra, and partner ML teams to clarify ambiguous problem spaces, co-create solutions, and drive consensus with senior stakeholders.
  • Experience using AI coding assistants (e.g., Cursor, Claude Code) and LLM-powered productivity tools to accelerate development, experimentation, and data exploration, with a clear approach to validation, data protection, and critical review of AI-assisted work.

Relocation Statement:

  • This position is noteligible for relocation assistance. Visit our PinFlex page to learn more about our working model.

In-Office Requirement Statement:

  •  We recognize that the ideal environment for work is situational and may differ across departments. What this looks like day-to-day can vary based on the needs of each organization or role.
  • This role will need to be in the office for in-person collaboration 1 day per week and therefore needs to be in a commutable distance from one of the following offices [Seattle or Bay Area].

#LI-REMOTE

#LI-DM57

At Pinterest we believe the workplace should be equitable, inclusive, and inspiring for every employee. In an effort to provide greater transparency, we are sharing the base salary range for this position. The position is also eligible for equity. Final salary is based on a number of factors including location, travel, relevant prior experience, or particular skills and expertise.

Information regarding the culture at Pinterest and benefits available for this position can be found here.

US based applicants only
$189,308—$389,753 USD

Our Commitment to Inclusion:

Pinterest is an equal opportunity employer and makes employment decisions on the basis of merit. We want to have the best qualified people in every job. All qualified applicants will receive consideration for employment without regard to race, color, ancestry, national origin, religion or religious creed, sex (including pregnancy, childbirth, or related medical conditions), sexual orientation, gender, gender identity, gender expression, age, marital status, status as a protected veteran, physical or mental disability, medical condition, genetic information or characteristics (or those of a family member) or any other consideration made unlawful by applicable federal, state or local laws. We also consider qualified applicants regardless of criminal histories, consistent with legal requirements. If you require a medical or religious accommodation during the job application process, please complete this form for support.

 

Apply now >

This job listing has been manually reviewed by the Jobicy Trust & Safety Team for compliance with our posting guidelines, including verification of the company's legitimacy, accuracy of job details, clarity of remote work policy, and absence of misleading or fraudulent content.

How to apply

Did you apply? Let us know, and we’ll help you track your application.

See a few more

Similar Software Engineering remote jobs

Job Search Safety Tips

Here are some tips to help you search and apply for jobs safely:
Watch out for suspicious jobs Don't apply for jobs that offer high pay for little work or offer to hire you without an interview. Read more ›
Check the employer's profile Make sure you're applying for a trustworthy job by visiting the employer's profile and learning more about them. Read more ›
Protect your information Don't share personal details like your bank account or government-issued ID on suspicious websites or messengers. Read more ›
Report jobs that feel unsafe If you see a job that seems misleading, inappropriate or discriminatory, report it for going against our policies and we'll review it.

Share this job

Jobicy+ Subscription

Jobicy

614 professionals pay to access exclusive and experimental features on Jobicy

Free

USD $0/month

For people just getting started

  • • Unlimited applies and searches
  • • Access on web and mobile apps
  • • Weekly job alerts
  • • Access to additional tools like Bookmarks, Applications, and more

Plus

USD $8/month

Everything in Free, and:

  • • Ad-free experience
  • • Daily job alerts
  • • Personal career consultant
  • • AI-powered job advice
Go to account ›