Senior Analytics Engineer

Why HarveyHarvey is a secure AI platform for legal and professional services 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, includingPaul Weiss, A&O Shearman,Ashurst, O'Melveny & Myers,PwC, KKR, and many others.Strategic investors: Raised over$500 millionfrom strategic investors including Sequoia, Google Ventures, Kleiner Perkins, and OpenAI.World-class team: Harvey is hiring the besttalentfrom 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: 4x ARR in 2024.Competitive compensation.Role OverviewWe’re looking for a versatile Senior Analytics Engineer to architect the data backbone that powers decision-making at Harvey. With product-market fit already proven and demand surging across diverse customer segments, you’ll design clean, reliable pipelines and semantic data models that turn raw events into immediately usable insights. As the first Analytics Engineer on our team, you’ll choose and implement the right data stack, champion best practices in testing and documentation, and collaborate closely with product, GTM, and leadership to ensure every team can answer its own questions with confidence. If you combine engineering rigor with a love of storytelling through data—and want to shape analytics from the ground up—we’d love to meet you.What You’ll DoDesign and build scalable data models and pipelinesusing dbt to transform raw data into clean, reliable assets that power company-wide analytics and decision-making.Define and implement a robust semantic layer(e.g. LookML/Omni) that standardizes key business metrics, dimensions, and data products, ensuring self-serve capabilities for stakeholders across teams.Partner cross-functionallywith Product, GTM, Finance, and the Exec Team to deliver intuitive, consistent dashboards and analytical tools that surface real-time business health metrics.Establish and champion data modeling standards and best practices, guiding the organization in how to model data for accuracy, usability, and long-term maintainability.Collaborate with engineeringto make key decisions on data architecture, co-design data schemas, and implement orchestration strategies that ensure reliability and performance of the data warehouse.Lead data governance initiatives, ensuring high standards of data quality, consistency, documentation, and access control across the analytics ecosystem.Empower stakeholders with databy making analytical assets easily discoverable, reliable, and well-documented—turning complex datasets into actionable insights for the business.What You Have5+ years of experience in Analytics Engineering, Data Engineering, Data Science, or similar fieldDeep expertise inSQL,dbt,Python, and modern BI/semantic layer tools likeLookerorOmni.Skilled at defining core business and product metrics, uncovering insights, and resolving data inconsistencies across complex systems.Strong familiarity with version control (GitHub), CI/CD, and modern development workflows.Bias for action — you prefer launching usable, iterative data models that deliver immediate value over waiting for perfect solutions.Strong communicator who canbuild trusted partnershipsacross Product, GTM, Finance, and Exec stakeholders.Comfortable working through ambiguity in fast-moving, cross-functional environments.Balancesbig-picture thinkingwith precision in execution — knowing when to sweat the details and when to move quickly.Experience operating in aB2B or commercial setting, with an understanding of customer lifecycle and revenue-driving metrics.BonusEarly employee at a hyper-growth startupExperience with or knowledge of AI and LLMsData Engineering ExperienceExperience managing data warehouse (preferably Snowflake)Experience at world-class enterprise orgs (ex: Brex, Ramp, Stripe, Palantir)Compensation Range$170,000 - $200,000 USDPlease find our CA applicant privacy noticehere.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 emailinginterview-help@harvey.ai.Compensation Range: $170K - $200K

Location: San Francisco

Salary range [USD annually]: None - None