Senior Software Engineer - AI Engineering
Mercury
82
STRONG_APPLY
Application materials
AI-tailored 2-page resume and 1-page cover letter for Mercury — Senior Software Engineer - AI Engineering.
Two-stage AI pipeline: generation pass, then strict hiring-manager review. Facts stay truthful; content is reordered and emphasized for this role. Experience stated as 8 years.
AI Qualification
The candidate has a strong background in software engineering with relevant experience in AI and LLM technologies, making them a good fit for the role. However, they may lack specific experience with certain AI deployment trade-offs and hands-on LLM-powered systems in production.
Strengths
- + 8 years of experience in software engineering
- + Strong background in backend development and distributed systems
- + Experience with LLM pipelines and AI technologies
- + Proficient in multiple programming languages including Python and TypeScript
- + Experience with CI/CD and cloud platforms (AWS, GCP)
- + Strong communication skills across technical and non-technical audiences
Missing skills
- − Specific hands-on experience with LLM-powered systems in production (RAG pipelines, agents, eval frameworks)
- − Experience with cost modeling and observability in AI deployments
Seniority
Senior
Location
Remote within Canada or United States
Salary
Not specified
Match
85
Job description
In 1600, William Gilbert published De Magnete—the first systematic study of magnetism. He didn't just theorize; he built instruments, ran experiments, and shared what he learned so that others could go further. Three centuries later, those foundations helped power the modern world.
At Mercury, we're making a deliberate, company-wide bet on AI. Frontier users are already pushing boundaries—building agents, automating workflows, moving fast. But they're doing it in silos. This role exists to change that: to take those scattered experiments and turn them into shared infrastructure, shared context, and shared capability. The goal is a multiplier effect—where the most ambitious AI work inside Mercury lifts the velocity of everyone else.
What you'll do
You'll join a team that has already started building Mercury's internal AI platform and enablement layer. Your work will be to extend, harden, and scale what's in motion, and to help partner teams adopt it.
Extend the AI platform foundation
- Build and evolve MCP servers that connect internal systems and data sources into a coherent interface for agents and engineers.
- Expand and operate our LLM gateway infrastructure: routing, rate limiting, cost attribution, and observability across teams.
- Turn early patterns into durable defaults: shared prompt libraries, guardrails, and policy-as-code so teams can move fast safely.
Strengthen the shared company knowledge layer
- Shape and maintain structured context artifacts—clean, reliable, agent-consumable—so LLMs working in Mercury's systems can reason accurately about our domain.
- Improve internal knowledge discoverability and retrieval so both humans and agents can quickly find accurate answers.
- Partner with domain teams to standardize key sources of truth, and keep them fresh.
Enable faster prototyping and iteration across the company
- Build and refine sandbox environments and tooling that let engineers experiment with AI safely and at speed.
- Create self-service scaffolding so non-engineers—PMs, ops, finance—can prototype and deploy AI-powered workflows with minimal hand-holding.
- Build playgrounds and evaluation harnesses so internal AI agents can be tested and iterated in controlled environments before hitting production.
This list is illustrative. Priorities will shift as we learn; the right person will help choose the next highest-leverage work.
The ideal candidate
- Has 5+ years of backend development experience in complex, production systems—you've built things that other engineers depended on.
- Is fluent across programming languages and can navigate platform engineering, infrastructure, and developer tooling without needing a map.
- Has hands-on experience building LLM-powered systems—RAG pipelines, agents, eval frameworks—and has shipped at least one of these to production.
- Understands the real tradeoffs in AI deployments: cost modeling, observability, latency, and safety—not just the exciting parts.
- Is high-agency and self-directed. You can operate effectively without tightly-defined scope, find the highest-leverage work, and get it done.
- Communicates clearly across technical and non-technical audiences—you can explain what you built and why it matters.
The total rewards package at Mercury includes base salary, equity, and benefits. Our salary and equity ranges are highly competitive within the SaaS and fintech industry and are updated regularly using the most reliable compensation survey data for our industry. New hire offers are made based on a candidate’s experience, expertise, geographic location, and internal pay equity relative to peers.
Our target new hire base salary ranges for this role are the following:
- US employees (any location): $166,600 - $218,700
- Canadian employees (any location): CAD 157,400 - 206,650
Mercury values diversity & belonging and is proud to be an Equal Employment Opportunity employer. All individuals seeking employment at Mercury are considered without regard to race, color, religion, national origin, age, sex, marital status, ancestry, physical or mental disability, veteran status, gender identity, sexual orientation, or any other legally protected characteristic. We are committed to providing reasonable accommodations throughout the recruitment process for applicants with disabilities or special needs. If you need assistance, or an accommodation, please let your recruiter know once you are contacted about a role.
#LI-ES1