USD per year
Applied AI Engineer
Location
NAMER, EMEA
Employment Type
Full time
Location Type
Remote
Department
Engineering
Deadline to Apply
February 28, 2026 at 5:00 AM UTC
Compensation
- United States
Base Salary $191.5K – $287.3K • Offers Equity • Offers Bonus
- Canada
Base Salary CA$191.5K – CA$287.3K • Offers Equity • Offers Bonus
- United Kingdom
Base Salary £109.4K – £164.2K • Offers Equity • Offers Bonus We believe all Zapiens should be rewarded competitively and equitably, using practices that are simple and transparent. This philosophy ensures we’re able to find, grow, and retain exceptional people from a broad range of backgrounds. Here’s how we define our compensation principles:
- Competitive: Zapier pays well among the technology sector.
- Equitable: Consistent pay practices; Pay for impact
- Simple: Pay is well understood, and pay practices are built for scale.
- Transparent: Zapiens know how pay works, including how their pay is determined.
A Candidate's compensation package is finalized once the interview process is concluded and accounts for demonstrated experience, job knowledge, skills, abilities, and internal equity. We use a business impact approach to base pay, which means we set pay for all Zapiens based on their demonstrated impact on Zapier’s success. In alignment with that philosophy, the upper half of a pay range is typically reserved for individuals who have consistently demonstrated a high impact in their current role and level while at Zapier. For more information on Zapier’s Total Rewards please click here.
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! Zapier is hiring for an Applied AI Engineer to help us build the future of automation with AI at its core. If you care about shipping real products, solving hard problems with large language models, and creating tools that help others build faster—this is your kind of role. We’re hiring across teams, each with their own flavor of AI work. You’ll work on things like shared libraries, evaluation systems, orchestration patterns, or user-facing features—depending on the team. What they all have in common: you’ll ship to production, own meaningful problems, and make an impact across the company. 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 5+ years of experience in software engineering, with at least 3 of those years dedicated to building distributed, scalable cloud based web applications. You possess strong communication skills, problem-solving abilities, and a drive to deliver outstanding customer experiences for both external users and internal stakeholders.
- You have at least 1 year of experience working with large language models (LLMs) to perform complex tasks in production environments. You experimented with building user facing leveraging agent architectures.
- You’re familiar with underlying technologies like transformer networks, attention mechanisms, and how they contribute to models’ abilities to generate coherent responses, generate function calls, and perform other language tasks.
- You have likely deployed evaluation frameworks for LLMs, with an understanding on performance, reliability, and bias assessment.
- You likely have experience with Retrieval-Augmented Generation (RAG) systems and understand how to optimize knowledge retrieval for improved model accuracy and speed. You likely have experience with different indexing and chunking strategies based on the system’s data and goals, as well as semantic search and vector databases, and how they differ from traditional retrieval methods and databases.
- You have experience working through the full lifecycle of building, testing, deploying, and scaling LLM architectures.
- You can identify and document trade-offs made during the development process. You also have experience building with cloud infrastructure technologies.
- You love shipping to customers. You’ll be on a team focused on understanding customers' needs and translating those needs from specifications into functional,
production-ready code. You know how to balance speed versus quality to support the features we build for our customers.
- 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
- You understand that AI-based applications thrive on data-driven feedback loops,
which will be central to any system you develop. These loops will capture and instrument user data, synthesize core use cases, and implement/test strategies with LLMs to enhance performance.
- You will be responsible for integrating LLMs into software products at Zapier,
which will include setting up the necessary infrastructure to ensure performance, s... (truncated due to length)
Zapier is an automation platform that allows users to connect and automate workflows across over 8,000 apps without the need for coding.
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