Software Engineer, Machine Learning

Why Harvey

Harvey is a secure AI platform for professionals in law, tax, and finance that augments productivity and automates complex workflows. Harvey uses algorithms with reasoning-adept LLMs that have been customized and developed by our expert team of lawyers, engineers and research scientists. We’ve found product market fit and are scaling our team very quickly. Some reasons to join Harvey are:

  • Exceptional product market fit: We have partnered with the largest law firms and professional service providers in the world, including Paul Weiss, A&O Shearman, Ashurst, O'Melveny & Myers, PwC, KKR, and many others.
  • Strategic investors: Raised over $200 million from strategic investors including Sequoia, Google Ventures, Kleiner Perkins, and the OpenAI Startup Fund.
  • World-class team: Harvey is hiring the best talent from DeepMind, Google Brain, Stripe, FAIR, Tesla Autopilot, Glean, Superhuman, Figma, and more.
  • Partnerships: Our engineers and researchers work directly with OpenAI to build the future of generative AI and redefine professional services.
  • Performance: $0-30M ARR in the last 18 months.
  • Compensation: Top of market cash and equity compensation.

Role Overview

As a Software Engineer, Machine Learning 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 San Francisco, CA. We use an in-person work model and offer relocation assistance to new employees.

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 Japan’s 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.

Responsibilities

  • 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.

Qualifications

  • 5+ 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.

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.

Apply for this job
logo Harvey Software Engineering FullTime On-site 📍 San Francisco Apply Now
Your subscription could not be saved. Please try again.
Your subscription has been successful.

Newsletter

Subscribe and stay updated.

Your subscription could not be saved. Please try again.
Your subscription has been successful.

Join our newsletter