Home › Companies › Mercury › Senior Machine Learning Operations Engineer
Senior Machine Learning Operations Engineer
Mercury · San Francisco, CA, New York, NY, Portland, OR, or Remote within Canada or United States · Remote · Active · $166,600–$208,300 / year · Greenhouse
Job facts
| Field | Value |
|---|---|
| Company | Mercury |
| Title | Senior Machine Learning Operations Engineer |
| Normalized title | - |
| Department / team | Software Engineering |
| Location | San Francisco, CA, United States |
| Work model | Remote / Remote |
| Employment type | - |
| Salary | $166,600–$208,300 / year |
| Status | active |
| ATS provider | Greenhouse |
| Posted / first seen | 2026-06-18 / 2026-06-19 |
| Changed / last seen | 2026-06-19 / 2026-06-19 |
Related slices
| Page | What it contains | Open |
|---|---|---|
| Company jobs | Active postings from Mercury. | Open |
| Company breakdowns | Role, location, ATS, and work model facets for this company. | Open |
| ATS provider jobs | Active postings observed through Greenhouse. | Open |
| Provider filtered search | The same provider as a filtered job collection. | Open |
| City jobs | Active postings in San Francisco. | Open |
| Department jobs | Active postings in Software Engineering. | Open |
| Work model jobs | Active Remote postings. | Open |
| Lifecycle events | Open, update, close, and reopen events for this posting. | Open |
| Original posting | Canonical source or apply URL captured from the ATS. | Open |
Linked records
| Company | Mercury |
| Source | 8fa32b77-c89f-4009-b3c0-fc9e06e9b8bf |
| ATS provider | Greenhouse |
Description
Mercury's use of machine learning in risk decisioning is growing fast in scope and in stakes. Models increasingly drive real-time decisions about fraud and financial crime, and the Machine Learning Platform (MLP) team exists to build a paved path from a trained model to a reliable production deployment, speeding up iteration, and ensuring granular production observability.
MLP owns the production ML lifecycle: the systems that take a model from registry through deployment, real-time inference, observability, and retraining. Our Data Science colleagues author and train the models; we build the platform that lets them register, deploy, and observe those models in production without carrying the operational burden themselves — and we serve low-latency, highly available scores to the decision engine that depends on them. The platform supports business decisioning broadly, with our first use cases focused on fraud risk outcomes.
At Mercury, we are committed to crafting an exceptional banking* experience for startups. Our team is passionately focused on ensuring our products create a safe environment that meets the needs of our customers, administrators, and regulators.
* Mercury is a fintech company, not an FDIC-insured bank. Banking services provided through Choice Financial Group and Column N.A., Members FDIC.
As part of this role, you will:
Build and operate the real-time inference service that scores models for the risk decision engine, with low latency and high availability as first-class requirements
Own model deployment infrastructure — registry and versioning, CI/CD with performance, bias, and consistency checks, shadow mode, and staged rollouts
Build model observability: availability, latency, and error monitoring, plus drift detection as a retraining trigger
Partner with Risk Data Science to take models from a clean development-to-production handoff through to production operation under MLP ownership
Implement experimentation capabilities such as champion/challenger and canary routing, and explainability outputs like SHAP attributions
Feel a strong sense of product ownership and actively seek responsibility — we self-organize on small and medium projects, and we want someone excited to help shape and build a brand-new platform team
The ideal candidate for the role has:
5+ years in machine learning engineering, backend software engineering, MLOps, or a closely related field
Production ML service experience — deploying, serving, and operating models in low-latency, high-availability contexts
Strong backend engineering fundamentals in Python, with API frameworks like FastAPI or Flask
Experience with model deployment and lifecycle tooling: model registries, CI/CD for models, versioning, and staged rollout patterns (shadow, canary, champion/challenger)
Experience building observability and alerting for production services — latency, errors, and ideally model-specific signals like drift
Comfort with the data layer ML depends on: SQL, key-value/low-latency stores (Redis, DynamoDB, or equivalent), and streaming pipelines (Kafka, Kinesis, Redpanda, or equivalent)
Nice to have:
Familiarity with a modern data stack (Snowflake, dbt, Dagster, Airflow, or similar)
Experience operating in a regulated, audit-sensitive, or compliance-adjacent environment
Exposure to functional languages or willingness to work across a stack that includes Haskell, React, and TypeScript
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 - $208,300
Canadian employees (any location): CAD 157,400 - 196,800
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-RA1
Full job record
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| Board ID | 8fa32b77-c89f-4009-b3c0-fc9e06e9b8bf |
| Provider | greenhouse |
| Provider Job Key | 6097372004 |
| Title | Senior Machine Learning Operations Engineer |
| Normalized Title | — |
| Status | active |
| Active | yes |
| Location Text | San Francisco, CA, New York, NY, Portland, OR, or Remote within Canada or United States |
| Department | Software Engineering |
| Team | — |
| Employment Type | — |
| Workplace Type | remote |
| Remote Policy | remote |
| Country | United States |
| Region | CA |
| City | San Francisco |
| Salary Raw | salary ranges for this role are the following: US employees (any location): $166,600 - $208,300 Canadian employees (any location): CAD 157,400 - 196,800 Mercury values diversi |
| Salary Min | 166,600 |
| Salary Max | 208,300 |
| Salary Currency | USD |
| Salary Period | year |
| Source URL | https://job-boards.greenhouse.io/mercury/jobs/6097372004 |
| Apply URL | https://job-boards.greenhouse.io/mercury/jobs/6097372004 |
| First Seen At | 2026-06-19 07:35:49Z |
| Last Seen At | 2026-06-19 07:35:49Z |
| Last Checked At | 2026-06-19 07:35:49Z |
| Last Changed At | 2026-06-19 07:35:49Z |
| Inactive At | — |
| Source Posted At | 2026-06-18 22:45:22Z |
| Source Updated At | 2026-06-18 22:45:22Z |
| Raw Payload Uri | s3://job-postings-prod-raw-590183727216/raw/provider=greenhouse/board=mercury/date=2026-06-19/2026-06-19T07-35-49-498Z-060b1d2055fa50df81444a011fc641fbb462808966ac9b14ea0cc6db820cfafe.json |
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