Forward Deployed Engineer deploys AI agents for financial services customers, handles onsite integrations in regulated environments, builds connectors and frameworks, and translates customer needs into product insights. Requires 2+ years software engineering with Python, APIs, data pipelines, cloud, and AI experience.
150k – 200k/yr
On-site2+ YOEML Engineering
About the role
What You'll Do
Deploy Bretton's AI agents at banks, fintechs, and payments companies, navigating the security and compliance requirements that come with regulated environments.
Travel onsite to work through last-mile connectivity challenges, from wiring up core banking integrations to resolving edge cases that only surface in live production.
Partner with BSA officers, AML analysts, and risk teams to translate their workflows and regulatory requirements into agent behavior that reflects how their business actually works.
Build the connectors, configuration tools, and internal frameworks that turn one-off customer solutions into repeatable platform capabilities.
Guide customers from demo through go-live as a trusted technical advisor, helping them resolve issues quickly and expand the value they get from Bretton.
Work cross-functionally with engineering, product, and GTM to remove blockers and do whatever it takes to make customers successful.
Diagnose and resolve issues in real deployments by reproducing problems and collaborating with the engineering team to fix them.
Translate customer usage into product insights by sharing customer needs with engineering and product teams and identifying opportunities to turn recurring solutions into product features.
Technical Qualifications
2+ years of experience as a software engineer or similar
Strong backend or data engineering background
Experience with Python, APIs, data pipelines, and cloud infrastructure
Previous experience in a customer-facing technical role (e.g., solutions engineer, forward deployed engineer, or technical implementation role) is a plus
Actively building with LLMs and modern AI systems is a must
Soft Skills
Excellent communication skills
Ability to explain AI systems to non-technical stakeholders
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