Analytics Engineer Jobs at SentiLink with Visa Sponsorship
SentiLink builds fraud detection infrastructure for financial institutions, and Analytics Engineer roles sit at the core of that work, translating raw data pipelines into reliable signals. The company has a documented history of sponsoring employment-based visas for technical roles, making it a realistic target if you need sponsorship.
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INTRODUCTION
SentiLink provides innovative identity and risk solutions, empowering institutions and individuals to transact with confidence. We’re building the future of identity verification in the United States, replacing a clunky, ineffective, and expensive status quo with solutions that are 10x faster, smarter, and more accurate. We’ve seen tremendous traction and are growing extremely quickly. Our real-time APIs have helped verify hundreds of millions of identities, starting with financial services and rapidly expanding into new markets. SentiLink is backed by world-class investors including Craft Ventures, Andreessen Horowitz, NYCA, and Max Levchin. We’ve earned recognition from TechCrunch, CNBC, Bloomberg, Forbes, Business Insider, PYMNTS, American Banker, LendIt, and have been named to the Forbes Fintech 50 list every year since 2023. Last but not least, we’ve even made history - we were the first company to go live with the eCBSV and testified before the United States House of Representatives on the future of identity. SentiLink supports a variety of ways to work, ranging from fully remote to in-office. We operate as a digital-first company with strong collaboration across the U.S. and India. We maintain physical offices in Austin, San Francisco, New York City, Seattle, Los Angeles, and Chicago in the U.S., and in Gurugram (Delhi) and Bengaluru in India. If you’re located near one of these offices, we would love for you to spend time in the office regularly. Some roles are hybrid or in-office by design. For example, our engineering team in India works primarily from our Gurugram office.
ROLE
We’re looking for a founding Senior Machine Learning Engineer to help scale and operationalize our ML systems end-to-end. This is a highly technical role focused on building the infrastructure, tooling, and processes that allow our Data Science team to develop, deploy, monitor, and iterate on machine learning models efficiently and safely. This person will be a foundational owner of our ML platform and will define the interfaces between Data Science, Engineering, and Infrastructure. You’ll work on systems that power real-time production ML, ensuring we can confidently ship models, measure their impact, and detect issues early. This is a high-ownership role for someone who wants to build ML systems that power real-world fraud prevention at scale.
Technologies:
Python, SQL, MLflow, Datadog, Grafana, Prometheus, Airflow/Dagster/Prefect, Docker, Kubernetes, AWS, PostgreSQL, Git, CI/CD pipelines, GitHub Actions.
Responsibilities
- Own SentiLink’s real-time ML model monitoring domain, leading the design, implementation, and ongoing improvement of monitoring systems and workflows.
- Own our ML experimentation, model tracking, and versioning infrastructure, ensuring strong reproducibility and visibility across the model lifecycle.
- Drive improvements to the model development process, reducing inefficiencies, improving code quality, resolving DS tooling gaps, and enabling faster iteration.
- Serve as the primary technical owner of key touchpoints and interfaces between Data Science and Engineering/Infrastructure, defining standards and workflows.
- Support efforts to optimize model behavior in production, including latency, reliability, maintainability, and operational best practices.
- Investigate and diagnose model performance issues on an ad-hoc basis, including partner escalations and analysis of model behavior in real-world scenarios.
- Evaluate, prototype, and recommend new ML infrastructure, tools, and data capabilities, partnering with DS to validate impact and support adoption.
REQUIREMENTS
- 5+ years of relevant experience, with a degree in Computer Science, Engineering, Mathematics, or a related technical field.
- Strong software engineering fundamentals, with proficiency in Python and SQL, and strong working knowledge of Git and modern CI/CD workflows.
- Hands-on experience with ML experimentation and model tracking tools.
- Strong proficiency with model monitoring and observability tooling.
- Experience with ML infrastructure and orchestration technologies, such as Docker, Kubernetes, and workflow orchestration frameworks.
- Familiarity with model serving and deployment frameworks.
- Proven experience deploying and operating machine learning models as production services, with an emphasis on reliability and performance.
- Demonstrated ability to build 0-to-1 prototypes and proof-of-concepts, rapidly standing up ML services and experimentation environments.
- Experience designing, building, and optimizing ML pipelines for training, evaluation, and deployment.
- Highly adaptable and able to learn quickly in fast-moving environments with evolving technical requirements.
- Candidates must be legally authorized to work in the United States and must live in the United States.
COMPENSATION
$170,000/year - $240,000/year + equity + benefits [across Senior & Staff level]
PERKS
- Employer paid group health insurance for you and your dependents
- 401(k) plan with employer match (or equivalent for non US-based roles)
- Flexible paid time off
- Regular company-wide in-person events
- Home office stipend, and more!
CORPORATE VALUES
- Follow Through
- Deep Understanding
- Whatever It Takes
- Do Something Smart

INTRODUCTION
SentiLink provides innovative identity and risk solutions, empowering institutions and individuals to transact with confidence. We’re building the future of identity verification in the United States, replacing a clunky, ineffective, and expensive status quo with solutions that are 10x faster, smarter, and more accurate. We’ve seen tremendous traction and are growing extremely quickly. Our real-time APIs have helped verify hundreds of millions of identities, starting with financial services and rapidly expanding into new markets. SentiLink is backed by world-class investors including Craft Ventures, Andreessen Horowitz, NYCA, and Max Levchin. We’ve earned recognition from TechCrunch, CNBC, Bloomberg, Forbes, Business Insider, PYMNTS, American Banker, LendIt, and have been named to the Forbes Fintech 50 list every year since 2023. Last but not least, we’ve even made history - we were the first company to go live with the eCBSV and testified before the United States House of Representatives on the future of identity. SentiLink supports a variety of ways to work, ranging from fully remote to in-office. We operate as a digital-first company with strong collaboration across the U.S. and India. We maintain physical offices in Austin, San Francisco, New York City, Seattle, Los Angeles, and Chicago in the U.S., and in Gurugram (Delhi) and Bengaluru in India. If you’re located near one of these offices, we would love for you to spend time in the office regularly. Some roles are hybrid or in-office by design. For example, our engineering team in India works primarily from our Gurugram office.
ROLE
We’re looking for a founding Senior Machine Learning Engineer to help scale and operationalize our ML systems end-to-end. This is a highly technical role focused on building the infrastructure, tooling, and processes that allow our Data Science team to develop, deploy, monitor, and iterate on machine learning models efficiently and safely. This person will be a foundational owner of our ML platform and will define the interfaces between Data Science, Engineering, and Infrastructure. You’ll work on systems that power real-time production ML, ensuring we can confidently ship models, measure their impact, and detect issues early. This is a high-ownership role for someone who wants to build ML systems that power real-world fraud prevention at scale.
Technologies:
Python, SQL, MLflow, Datadog, Grafana, Prometheus, Airflow/Dagster/Prefect, Docker, Kubernetes, AWS, PostgreSQL, Git, CI/CD pipelines, GitHub Actions.
Responsibilities
- Own SentiLink’s real-time ML model monitoring domain, leading the design, implementation, and ongoing improvement of monitoring systems and workflows.
- Own our ML experimentation, model tracking, and versioning infrastructure, ensuring strong reproducibility and visibility across the model lifecycle.
- Drive improvements to the model development process, reducing inefficiencies, improving code quality, resolving DS tooling gaps, and enabling faster iteration.
- Serve as the primary technical owner of key touchpoints and interfaces between Data Science and Engineering/Infrastructure, defining standards and workflows.
- Support efforts to optimize model behavior in production, including latency, reliability, maintainability, and operational best practices.
- Investigate and diagnose model performance issues on an ad-hoc basis, including partner escalations and analysis of model behavior in real-world scenarios.
- Evaluate, prototype, and recommend new ML infrastructure, tools, and data capabilities, partnering with DS to validate impact and support adoption.
REQUIREMENTS
- 5+ years of relevant experience, with a degree in Computer Science, Engineering, Mathematics, or a related technical field.
- Strong software engineering fundamentals, with proficiency in Python and SQL, and strong working knowledge of Git and modern CI/CD workflows.
- Hands-on experience with ML experimentation and model tracking tools.
- Strong proficiency with model monitoring and observability tooling.
- Experience with ML infrastructure and orchestration technologies, such as Docker, Kubernetes, and workflow orchestration frameworks.
- Familiarity with model serving and deployment frameworks.
- Proven experience deploying and operating machine learning models as production services, with an emphasis on reliability and performance.
- Demonstrated ability to build 0-to-1 prototypes and proof-of-concepts, rapidly standing up ML services and experimentation environments.
- Experience designing, building, and optimizing ML pipelines for training, evaluation, and deployment.
- Highly adaptable and able to learn quickly in fast-moving environments with evolving technical requirements.
- Candidates must be legally authorized to work in the United States and must live in the United States.
COMPENSATION
$170,000/year - $240,000/year + equity + benefits [across Senior & Staff level]
PERKS
- Employer paid group health insurance for you and your dependents
- 401(k) plan with employer match (or equivalent for non US-based roles)
- Flexible paid time off
- Regular company-wide in-person events
- Home office stipend, and more!
CORPORATE VALUES
- Follow Through
- Deep Understanding
- Whatever It Takes
- Do Something Smart
See all 41+ Analytics Engineer at SentiLink jobs
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Get Access To All JobsTips for Finding Analytics Engineer Jobs at SentiLink Jobs
Tailor your portfolio to fraud data
SentiLink's Analytics Engineering work centers on identity and fraud signals, not generalist BI. Showcase projects involving anomaly detection, data modeling for risk workflows, or pipeline work on behavioral datasets before you apply.
Verify your OPT STEM extension eligibility early
Analytics Engineer roles in fintech typically qualify under CIP code 11 or 14 for STEM OPT. Confirm your degree classification with your DSO before accepting an offer, since the 24-month extension requires timely filing with no gaps.
Align your experience with dbt and modern stack norms
SentiLink's job postings consistently reference transformation tooling like dbt and cloud data warehouses. Demonstrating hands-on experience with those tools closes the gap between a generic data background and what hiring managers in this role actually prioritize.
Use Migrate Mate to filter verified sponsoring roles
Not every Analytics Engineer posting at SentiLink will explicitly advertise sponsorship. Use Migrate Mate to surface the roles tied to confirmed sponsorship filings, so you're applying where the path to a visa is already established.
Confirm TN eligibility if you hold Canadian or Mexican citizenship
Analytics Engineer roles can qualify under the TN 'Computer Systems Analyst' category if your duties match the DOL's definition. Have your offer letter specify systems analysis and design functions explicitly, since vague job descriptions are the most common TN denial trigger at the border.
Analytics Engineer at SentiLink jobs are hiring across the US. Find yours.
Find Analytics Engineer at SentiLink JobsFrequently Asked Questions
Does SentiLink sponsor H-1B visas for Analytics Engineers?
SentiLink's documented sponsorship history focuses on EB-2, EB-3, F-1 OPT, and TN visas for technical roles. H-1B sponsorship is not reflected in their recent filings for this function, so if you're relying on H-1B, clarify directly with the recruiter before advancing in the process.
How do I apply for Analytics Engineer jobs at SentiLink?
Apply through SentiLink's careers page or through Migrate Mate, which aggregates their open Analytics Engineer roles alongside verified sponsorship data. Tailor your application to SentiLink's fraud and identity infrastructure focus, and address sponsorship needs clearly in your cover materials so the recruiting team can route your application correctly from the start.
Which visa types are commonly used for Analytics Engineer roles at SentiLink?
SentiLink has sponsored EB-2 and EB-3 Green Card pathways and supports F-1 OPT workers, including STEM OPT extensions, for Analytics Engineer roles. TN status is available for Canadian and Mexican citizens whose job duties align with the Computer Systems Analyst category as defined by DOL. Each path has different timing implications, so discuss your situation early with SentiLink's HR team.
What qualifications and experience does SentiLink expect for Analytics Engineers?
SentiLink typically looks for experience building and maintaining data transformation pipelines, familiarity with SQL and tools like dbt, and comfort working with large-scale structured datasets. Given their fraud detection focus, experience with risk data modeling or identity verification workflows gives your application a meaningful edge over generalist data engineering candidates.
How do I understand the sponsorship filing timeline if I receive an offer from SentiLink?
For EB-2 or EB-3 sponsorship, PERM labor certification through DOL is the first step and can take six months to over a year before an I-140 petition is filed with USCIS. If you're on F-1 OPT, your employer must initiate any cap-subject H-1B petition by the April 1 filing window. Clarify with SentiLink's HR team which pathway applies to your role and when they typically initiate the process.
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