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Sr. Applied AI Engineer

Key Facts

Remote From: 
Full time
Senior (5-10 years)
English

Other Skills

  • Governance
  • Communication
  • Mentorship
  • Problem Solving

Roles & Responsibilities

  • 7+ years of software engineering experience, with at least 3 years building distributed, scalable, cloud-based ML/AI systems in production
  • At least 2 years of experience in LLM Ops, ML Ops, or adjacent platform/infrastructure work
  • Experience building shared services, internal platforms, or reusable developer tooling to enable other teams
  • Experience with the full lifecycle of building, testing, deploying, and scaling ML/LLM architectures and cloud infrastructure technologies

Requirements:

  • Build and evolve shared AI Platform capabilities that serve as the foundation for teams building with machine learning and generative AI across Zapier, primarily in TypeScript and Python
  • Improve LLM Ops and ML Ops capabilities, including observability, monitoring, evaluation, deployment workflows, and operational guardrails
  • Design and implement systems to measure and improve the performance, reliability, safety, and cost efficiency of AI-powered experiences
  • Proactively identify tooling gaps and standardize best practices for building, deploying, and monitoring AI-driven experiences across teams

Job description

AI at Zapier

At Zapier, we build and use automation every day to make work more efficient, creative, and human. So if you’re using AI tools while applying here - that’s great! We just ask that you use them responsibly and transparently.

Check out our guidance on How to Collaborate with AI During Zapier’s Hiring Process, including how to use AI tools like ChatGPT, Claude, Gemini, or others during our hiring process - and when not to.


Hi there!

Are you excited about building the platform that makes AI and machine learning development faster, safer, and more reliable across an entire company? We’re thrilled to invite you to join Zapier’s AI Platform team as a Sr. Applied AI Engineer!

As a key member of this team, you’ll help build and evolve the shared infrastructure that powers AI and ML development across Zapier. The AI Platform team owns the common foundations that product and engineering teams rely on when building with machine learning and generative AI - including systems like our LLM proxy server, observability tooling, and ML Ops platform capabilities.

This is a highly leveraged role. Rather than building a single end-user feature, you’ll create the core systems, tooling, and standards that many teams use as their baseline for shipping intelligent products and internal AI-powered workflows. You’ll work at the intersection of platform engineering, applied AI, and developer experience to make it easier for teams across Zapier to build with LLMs and ML systems in a scalable, secure, and production-ready way.

Your work will focus heavily on LLM Ops and ML Ops: improving how models are accessed, monitored, evaluated, deployed, governed, and operated in production. You’ll help define the paved road for teams building with AI at Zapier.

If you’re passionate about large language models & machine learning, developer platforms, operational excellence, and building the systems that make AI usable at scale, we’d love to meet you!

If you’re interested in advancing your career at a fast-growing, profitable, impact-driven company, then read on…

Even though our job description may seem like we're looking for a specific candidate, the role inevitably ends up tailored to the person who applies and joins. Regardless of how well you feel you fit our description, we encourage you to apply if you meet these criteria:

About You

You have 7+ years of experience in software engineering, with at least 3 of those years dedicated to building distributed, scalable, cloud-based ML/AI systems in production environments. You have strong communication skills, sound engineering judgment, and a track record of building reliable systems that other engineers depend on.

You have at least 2 years of experience in LLM Ops, ML Ops, or adjacent platform/infrastructure work. You’re excited by problems like model access, inference reliability, observability, experiment management, evaluations, deployment workflows, governance, and production monitoring.

You have experience building shared services, internal platforms, or reusable developer tooling that enable other teams to move faster. You enjoy creating strong abstractions, reducing duplication, and improving standards across an organization.

You have experience of working through the full lifecycle of building, testing, deploying, and scaling ML/ LLM architectures.

You can identify and document trade-offs made during the development of AI/ML systems. You also have experience building with cloud infrastructure technologies.

You love enabling others. You’re energized by building infrastructure and tooling that make product engineers and ML practitioners more effective. You think deeply about developer experience and know that the best platforms are both powerful and easy to adopt.

You embody our values. At Zapier, our values are at the heart of how we work together and how we think about our customers. In our remote setting, they help develop trust and ensure we work and collaborate to democratize automation.

Things You’ll Do

  • Build and evolve shared AI Platform capabilities that serve as the foundation for teams building with machine learning and generative AI across Zapier.

  • You will work mostly in TypeScript & Python. Experience isn’t strictly required, but it is a big plus. Comfort with typed languages and modern backend practices is a must.

  • Improve our LLM Ops and ML Ops capabilities, including observability, monitoring, evaluation, deployment workflows, and operational guardrails.

  • Design and implement systems that help teams measure and improve the performance, reliability, safety, and cost efficiency of AI-powered experiences.

  • Proactively identify tooling gaps and work across teams to standardize best practices for building, deploying, and monitoring AI-driven experiences.

  • Collaborate closely with engineers across product, infra, and data teams to ensure our AI components are reusable, well-documented, and easy to adopt company-wide.

  • Evaluate emerging tools, models, and patterns in the AI ecosystem, and help determine which ones should be incorporated into Zapier’s shared platform.

Application Deadline:

The anticipated application window is 30 days from the date job is posted, unless the number of applicants requires it to close sooner or later, or if the position is filled.

Even though we’re an all-remote company, we still need to be thoughtful about where we have Zapiens working. Check out this resource for a list of countries where we currently cannot have Zapiens permanently working.

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