Instrumentl Logo

Instrumentl

Sr. Software Engineer, GenAI

Reposted 9 Days Ago
Remote
Hiring Remotely in Canada
Senior level
Remote
Hiring Remotely in Canada
Senior level
As a Software Engineer, AI/ML GenAI, you will design and implement AI features, manage embeddings, and optimize AI systems for production deployment while collaborating with product and design teams.
The summary above was generated by AI
Hello, we’re Instrumentl. 👋

Nonprofits do some of the most important work in the world, and most of them are still managing grants in spreadsheets. We're fixing that.

Instrumentl is a profitable, hypergrowth, YC-backed SaaS platform building the operating system for grant-funded organizations. More than 5,500 nonprofits use Instrumentl to discover, track, and win grant funding, from local community organizations to the San Diego Zoo and the University of Alaska. Collectively they’ve moved over $1 billion through our platform.

We're growing more than 40% year over year, customers love us (Ellis PMF 60+), and we're hiring people who want to build something that matters.


About the role:

    You'll join our AI Engineering team as a Senior Engineer embedded in one of our product pods, reporting to our AI Engineering Lead. You'll own AI features for grant discovery end to end, from the data backbone that crawls and structures messy source data, through the RAG and agentic systems that match grants to nonprofits, to production deployment and ongoing evaluation. It's a hands-on, high-ownership seat with direct access to founders and real room to grow as the engineering team scales!

What you will do

    Build agentic AI systems and ship them to production

  • Build tool-using LLM systems that plan, call tools, and run multi-step workflows for tasks like grant discovery, data ingestion, and research assistance.
  • Build agentic data-processing pipelines that crawl the web, pull and dedupe messy source data at scale, and structure it into clean, queryable databases other teams build on.
  • Turn prototypes into resilient production services with clear fallback, cost, and latency budgets.
  • Own RAG and ranking end to end

  • Own RAG end to end: ingestion, chunking and embedding strategy, hybrid retrieval, re-ranking, citations, and grounding.
  • Build ranking and scoring systems that match grants to nonprofits, universities, and foundations using complex relevance techniques.
  • Continuously improve recall and precision and keep indices healthy as the dataset grows.
  • Ship safely and raise the bar

  • Stand up evaluation and observability so our AI is grounded, safe, and cost-effective, and treat LLM behavior as non-deterministic by design rather than as a regular API.
  • Partner directly with founders and your pod on undefined, complex problems with real autonomy.
  • Write clear, maintainable, well-tested code and build reusably so your work expands across teams.

What we're looking for:

    Required

  • 7+ years of professional software engineering experience, with deep, recent, multi-year Python and strong relational database and schema design skills.
  • Solid CS fundamentals and a demonstrated track record of owning complex systems end to end, from design through production reliability.
  • At least 1 year of hands-on experience building with modern LLMs (as an IC).
  • Nice to have
  • Real RAG depth: hybrid search (keyword plus vector), re-ranking or fusion methods, and grounded citations, tuned in production rather than read about.
  • Hands-on with at least one of LangChain, LangGraph, or LlamaIndex.
  • Vector databases beyond pgvector (Pinecone, Qdrant, Milvus).
  • Built end-to-end agentic data-processing systems (crawling, dedup, structuring) with whole-system ownership.
  • Evaluation and observability for AI systems: golden datasets, precision vs. recall, LLM-as-judge, and drift monitoring.
  • Ruby on Rails (our core platform is on Rails), deep SQL, and experience with AWS or GCP, Docker, and CI/CD.
  • Startup experience and comfort operating in fast, scrappy, low-process environments.

Compensation & Benefits

    For US-based candidates, the target salary range for this role is 175,000 - $220,000 USD, plus equity. Final compensation is determined based on experience, skillset, scope of responsibility, interview performance, and geographic location. We’re committed to paying competitively and equitably.

    For candidates based in Canada, compensation varies by province and will be shared by your recruiter early in the process.

    Benefits

  • 100% covered health, dental, and vision insurance for employees (50% for dependents)
  • Generous PTO, including parental leave
  • 401(k)
  • Company laptop and home-office stipend
  • Bi-annual company retreats
  • Instrumentl is evolving rapidly. You’ll always have new challenges and opportunities to grow here.

Instrumentl is an equal opportunity employer. We are committed to building an inclusive workplace and do not discriminate based on race, color, religion, sex, national origin, age, disability, veteran status, sexual orientation, gender identity or expression, genetic information, or any other legally protected status. We encourage candidates from all backgrounds to apply. If you need a reasonable accommodation during the application or interview process, please let us know.

Similar Jobs

Senior level
Big Data • Food • Hardware • Machine Learning • Retail • Automation • Manufacturing
Perform monthly commodity analyses for grains and vegetable oils using supply/demand data and market forecasts; build and manage market intelligence databases; develop and improve constraint-optimization price models and long-range forecasts; support CPRM hedging and coverage strategy decisions; track team KPIs and deliver insights to inform pricing and risk management.
Top Skills: Artificial IntelligenceExcelPythonR
2 Hours Ago
Easy Apply
Remote
Canada
Easy Apply
Mid level
Mid level
Cloud • Security • Software • Cybersecurity • Automation
Build, ship, and maintain backend features enabling AI agents to interact with GitLab. Design GraphQL/REST APIs, extend tests (RSpec), work with PostgreSQL, troubleshoot production issues, and collaborate cross-functionally to integrate AI tooling responsibly.
Top Skills: Background JobsGitlabGraphQLPostgresRest ApisRspecRubyRuby On RailsSQL
2 Hours Ago
Easy Apply
Remote
Canada
Easy Apply
Senior level
Senior level
Cloud • Security • Software • Cybersecurity • Automation
Ownership of backend features for Agentic Tools: design and implement GraphQL/REST APIs, build secure scalable Ruby on Rails services, improve RSpec automated tests, collaborate across product and AI teams, participate in Tier 2 on-call, and shape architecture for AI agent interactions with GitLab.
Top Skills: Gitlab McpGraphQLPythonRestRspecRuby On RailsVue

What you need to know about the Vancouver Tech Scene

Raincouver, Vancity, The Big Smoke — Vancouver is known by many names, and in recent years, it has gained a reputation as a growing hub for both tech and sustainability. Renowned for its natural beauty, the city has become a magnet for professionals eager to create environmental solutions, and with an emphasis on clean technology, renewable energy and environmental innovation, it's attracted companies across various industries, all working toward a shared goal: advancing clean technology.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account