Lattice

Senior Software Engineer, AI

Lattice$160K — $185K *
US-AnywhereRemote in United States
Information Technology
5 - 7 years of experience
Job Overview by Ladders

Qualifications

  • 5+ years in software engineering with a focus on production AI/ML systems.
  • Hands-on experience with LLM systems: prompt engineering and evaluation metrics.
  • Strong statistical knowledge for data-driven experiments.
  • Proven ability to build scalable agentic AI systems in production.
  • Solid understanding of AI evaluation frameworks and metrics.
  • Proficient in production-grade Python coding.

Responsibilities

  • Design and implement a comprehensive AI evaluation framework.
  • Define critical metrics for measuring AI performance and user engagement.
  • Create and maintain evaluation datasets and automated scoring systems.
  • Identify factors influencing agent quality improvements.
  • Architect reusable agent infrastructure and workflows.
  • Build and optimize RAG pipelines and retrieval systems.
  • Lead projects from inception to completion, ensuring effective collaboration.

Benefits

  • Medical, dental, and vision insurance.
  • Life and disability insurance.
  • Paid parental leave and generous PTO, including holidays.
  • Commuter and parking accounts, as well as daily office lunches.
  • 401(k) retirement plan with financial planning assistance.
  • Learning and development budget for career growth.
Full Job Description
What You Will Do
Evaluation Infrastructure
  • Design and ship a robust, end-to-end AI evaluation framework, covering offline evals, production tracing, and human-in-the-loop feedback loops, connected across all of Lattice's AI use cases.
  • Define and instrument the metrics that actually matter: agent task completion, hallucination rates, response quality, user engagement, and downstream business outcomes.
  • Build and maintain evaluation datasets, test harnesses, and automated scoring pipelines to catch regressions before they ship.
  • Identify and surface the drivers of agent quality improvement, giving the team clear signals on where to invest.
Agent Architecture & Infrastructure
  • Architect and implement reusable agent infrastructure: multi-turn conversation workflows, recommendation services, LLM DAGs, and standardized agent topology patterns using LangGraph.
  • Build and scale RAG pipelines and retrieval infrastructure, including vector store management and retrieval quality optimization.
  • Make principled build vs. buy decisions across LLM providers, agent frameworks, and evaluation tooling, balancing capability, cost, latency, and vendor risk.
  • Contribute to production AI systems with a strong focus on reliability, observability, and performance, not just prototypes.
Technical Leadership & Collaboration
  • Own projects end-to-end: scope them, drive them to completion, and bring in the right people at the right time.
  • Partner with engineering leads and managers to inform technical direction on agent quality and evaluation strategy you'll be expected to hold intelligent, substantive conversations about methodology, not just implementation.
  • Raise the AI engineering bar across the broader team through code review, documentation, and thoughtful technical debate.
What You Will Bring to the Table
Experience
  • 5+ years of professional software engineering experience with significant time spent on production AI/ML systems.
  • Deep hands-on experience with LLM-based systems: prompt engineering, RAG pipelines, agent orchestration, evaluation metrics, and model fine-tuning.
  • Proven ability to work with data and understand statistics, especially in experiments.
  • Proven ability to build and operate agentic AI systems in production: multi-step workflows, multi-agent topologies, and the failure modes that come with them.
  • Strong command of AI evaluation: you've built eval frameworks before, you know the difference between a good eval and a vanity metric, and you have opinions about it.
  • Production-grade Python engineering: clean, maintainable, testable code.
Technical Skills
  • LangGraph or comparable agent orchestration frameworks. You've built real agent workflows with it, not just tutorials.
  • LangSmith or comparable LLM observability tooling for tracing, evaluation, and debugging.
  • Reads AI papers & blogs regularly and is a trusted source of AI trends.
  • Vector databases (Pinecone or similar) and retrieval system design.
  • AWS ecosystem or other cloud infrastructure (ex GCP). Comfortable with lambdas, queues, and cloud-native architecture.
  • Familiarity with TypeScript is a plus. Our full-stack engineers use it and cross-pollination is valuable.
Ways of Working
  • Clear eyes: you see problems as they are, not as you'd like them to be. You surface hard truths early and address them directly.
  • Ship, shipmate, self: you prioritize the product and your teammates. Low ego, high ownership.
  • You're as comfortable in ambiguity as you are in well-defined problems: early foundations mean you'll encounter both.
  • Strong technical communication: you can debate evaluation methodology with an AI lead and explain it clearly to an EM in the same afternoon.
Nice to Have
  • Experience with RLHF, LoRA, or other model adaptation techniques.
  • Background in traditional ML (supervised/unsupervised, neural networks) and knowing when an LLM is overkill.
  • Experience with MLOps tooling: MLflow, DataDog, CI/CD pipelines for model deployment.
  • Published work, conference talks, or open-source contributions in AI/ML.
  • Experience in HR tech, people analytics, or other domains where data quality and trust are critical.


Location Requirement:
We are not able to hire candidates based in the San Francisco Bay Area or the New York Metro Area for this role.

The estimated annual cash salary for this role is USD $160,000 - $185,000. This position is also eligible for incentive stock options, subject to the terms of Lattice's applicable plans.

Benefits: The Company offers the following benefits for this position, subject to applicable eligibility requirements: Medical insurance; Dental insurance; Vision insurance; Life, AD&D, and Disability Insurance; Emergency Weather Support; Wellness Apps; Paid Parental Leave, Paid Time off inclusive of holidays and sick time; Commuter & Parking Accounts; Lunches in the Office; Internet and Phone Stipend; 401(k) retirement plan; Financial Planning; Learning & Development Budget

Note on Pay Transparency:
Lattice provides an estimate of the compensation for roles that may be hired as required by regulations. Compensation may vary based on (a) location, as Lattice factors in specific location when benchmarking compensation for most roles; (b) individual candidate skills and qualifications; and (c) individual candidate experience. Additionally, Lattice leverages current market data to determine compensation, so posted compensation figures are subject to change as new market data becomes available. The salary, other compensation, and benefits information is accurate as of the date of this posting. Lattice reserves the right to modify this information at any time, subject to applicable law.

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About Lattice

Lattice is a human resources software company that provides tools for performance management, employee engagement, and people analytics. The company was founded in 2015 and has since grown to over 200 employees. Lattice has raised over $25 million in funding and has over 1,800 customers, including Slack, Reddit, and Glossier.
Learn more about Lattice
Size
200 employees
Industry
Founded
2015

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