Why Harvey
At Harvey were transforming how legal and professional services operate not incrementally but end-to-end. By combining frontier agentic AI an enterprise-grade platform and deep domain expertise were reshaping how critical knowledge work gets done for decades to come.
This is a rare chance to help build a generational company at a true inflection point. With 700 customers in 58 countries strong product-market fit and world-class investor support were scaling fast and defining a new category in real time. The work is ambitious the bar is high and the opportunity for growth personal professional and financial is unmatched.
Our team is sharp motivated and deeply committed to the mission. We move fast operate with intensity and take real ownership of the problems we tackle from early thinking to long-term outcomes. We stay close to our customers from leadership to engineers and work together to solve real problems with urgency and care. If you thrive in ambiguity push for excellence and want to help shape the future of work alongside others who raise the bar we invite you to build with us.
At Harvey the future of professional services is being written today and were just getting started.
Role Overview
As an Applied AI Engineer on the Engineering team at Harvey you will own and lead engineering projects across our various product lines. We are looking for individuals who have worked across the stack on incredible products and have experience building products where machine learning models are a core component.
This role is based in New York City NY. We use an in-person work model and offer relocation assistance to new employees.
What Youll Do
Conduct data collection experimentation and analysis to drive algorithmic development for RAG and multi-step AI pipelines.
Zero-to-one product development: rapidly prototype evaluate integrate and test new product features in close partnership with our legal team.
Develop new AI native workflows: implement streaming long-running tasks procedural UX etc. for new AI tasks finding the balance between state-of-the-art and pragmatism.
Representative Projects
Partner with our legal team to design and implement a method for evaluating the correctness of document citations. Use this to build a large dataset of ground-truth citations and then improve our core citation algorithm. You can read about some of our work on evaluation and citations here (1 2 3).
Make targeted improvements to our RAG pipelines to improve answer quality for user questions over corpuses of complex data like massive banks of spreadsheets or Japans tax code.
Design and build systems that leverage state-of-the-art LLMs from multiple model providers including custom models.
Work across the stack and with our legal team to create seamless multi-step AI workflows for complex legal tasks like corporate merger due diligence.
What You Have
7 years of experience (post-BS/MS) in an engineering role.
Experience with shipping a scaled and impactful product powered by machine learning: how to use offline datasets online experiments and recent research to build simple and high performance systems. Prior experience with LLMs and retrieval pipelines is not required.
Track record of shipping reliable products and a strong attention to detail.
Experience building backend platforms that can support multiple product lines.
Grit - experience working at early-stage startups is a plus.
Compensation Range
$238000 $312000 USD
Please find our CA applicant privacy notice here.
#LI-BB1
Harvey is an equal opportunity employer and does not discriminate on the basis of race gender sexual orientation gender identity/expression national origin disability age genetic information veteran status marital status pregnancy or related condition or any other basis protected by law.
We are committed to providing reasonable accommodations to applicants with disabilities and requests can be made by emailing
Required Experience:
Staff IC
Why HarveyAt Harvey were transforming how legal and professional services operate not incrementally but end-to-end. By combining frontier agentic AI an enterprise-grade platform and deep domain expertise were reshaping how critical knowledge work gets done for decades to come.This is a rare chance ...
Why Harvey
At Harvey were transforming how legal and professional services operate not incrementally but end-to-end. By combining frontier agentic AI an enterprise-grade platform and deep domain expertise were reshaping how critical knowledge work gets done for decades to come.
This is a rare chance to help build a generational company at a true inflection point. With 700 customers in 58 countries strong product-market fit and world-class investor support were scaling fast and defining a new category in real time. The work is ambitious the bar is high and the opportunity for growth personal professional and financial is unmatched.
Our team is sharp motivated and deeply committed to the mission. We move fast operate with intensity and take real ownership of the problems we tackle from early thinking to long-term outcomes. We stay close to our customers from leadership to engineers and work together to solve real problems with urgency and care. If you thrive in ambiguity push for excellence and want to help shape the future of work alongside others who raise the bar we invite you to build with us.
At Harvey the future of professional services is being written today and were just getting started.
Role Overview
As an Applied AI Engineer on the Engineering team at Harvey you will own and lead engineering projects across our various product lines. We are looking for individuals who have worked across the stack on incredible products and have experience building products where machine learning models are a core component.
This role is based in New York City NY. We use an in-person work model and offer relocation assistance to new employees.
What Youll Do
Conduct data collection experimentation and analysis to drive algorithmic development for RAG and multi-step AI pipelines.
Zero-to-one product development: rapidly prototype evaluate integrate and test new product features in close partnership with our legal team.
Develop new AI native workflows: implement streaming long-running tasks procedural UX etc. for new AI tasks finding the balance between state-of-the-art and pragmatism.
Representative Projects
Partner with our legal team to design and implement a method for evaluating the correctness of document citations. Use this to build a large dataset of ground-truth citations and then improve our core citation algorithm. You can read about some of our work on evaluation and citations here (1 2 3).
Make targeted improvements to our RAG pipelines to improve answer quality for user questions over corpuses of complex data like massive banks of spreadsheets or Japans tax code.
Design and build systems that leverage state-of-the-art LLMs from multiple model providers including custom models.
Work across the stack and with our legal team to create seamless multi-step AI workflows for complex legal tasks like corporate merger due diligence.
What You Have
7 years of experience (post-BS/MS) in an engineering role.
Experience with shipping a scaled and impactful product powered by machine learning: how to use offline datasets online experiments and recent research to build simple and high performance systems. Prior experience with LLMs and retrieval pipelines is not required.
Track record of shipping reliable products and a strong attention to detail.
Experience building backend platforms that can support multiple product lines.
Grit - experience working at early-stage startups is a plus.
Compensation Range
$238000 $312000 USD
Please find our CA applicant privacy notice here.
#LI-BB1
Harvey is an equal opportunity employer and does not discriminate on the basis of race gender sexual orientation gender identity/expression national origin disability age genetic information veteran status marital status pregnancy or related condition or any other basis protected by law.
We are committed to providing reasonable accommodations to applicants with disabilities and requests can be made by emailing
Required Experience:
Staff IC
View more
View less