Full stack Engineer - AI
Role details
Job location
Tech stack
Job description
Flow is our internal AI agent platform. This isn't a basic chatbot bolted onto a help center; it is core agentic infrastructure that reaches across our data warehouse, services, and central systems to execute complex work on behalf of the business. Flow powers both internal and client-facing workflows, delivering true automation and replacing traditional ticketing queues with instant, intelligent actions.
We are looking for a Senior Full-Stack Engineer to help us transition Flow from a fast-moving internal product to durable, productionized platform infrastructure. You will own complex features end-to-end-including agent workflows, reasoning UIs, and cross-system integrations-while raising the engineering bar and shaping the technical direction of a small, autonomous team.
This role sits at the intersection of agentic AI and live operational workflows within a regulated fintech environment. The surface area is the entire company, and your impact will be visible within weeks.
- Build Action-Oriented Agent Workflows: Design multi-step orchestration, tool use, and retrieval grounded in our data stores using the Strands Agents SDK.
- Architect End-to-End Features: Own development across a React/TypeScript frontend and Python/FastAPI backend, balancing rapid iteration with platform maintainability.
- Own the Reasoning Layer: Extend our Chain-of-Thought UI to ensure explainability. In a regulated environment, showing why an agent made a decision is a core feature, not a nicety.
- Make Agents Measurably Reliable: Build and extend our evaluation harness (Ragas) and observability platform (Langfuse, with session continuity) so we ship changes based on evidence, not vibes.
- Define Evaluation Strategies: Build custom evaluators, datasets, benchmarks, and automated regression suites to catch quality regressions before they hit production.
- Integrate Systems & Clouds: Connect internal APIs, data warehouses, email, and cross-cloud GCP/AWS services with robust error handling and distributed tracing.
- Industrialize Prototypes: Drive the discover * industrialize * productionize lifecycle, turning promising AI prototypes into hardened, daily-deployed services on CD pipelines.
- Mentor & Lead: Uplift mid-level engineers through code reviews, pair programming, and establishing scalable engineering patterns.
- Collaborate Cross-Functionally: Partner with Product, Ops, Trading, and Treasury to identify high-value workflows worth automating (and ruthlessly deprioritize the ones that aren't).
Frontend
- React, TypeScript
- Micro-frontend architecture
- Chain-of-Thought / Agent-reasoning UI
- Vite, Vitest
Backend & AI
- Python, FastAPI
- Strands Agents SDK (Agent Orchestration)
- AWS Bedrock
- RAG / Advanced Retrieval
- Ragas (Evaluation), Langfuse (LLM Observability)
Infrastructure
- AWS (ECS Fargate, Lambda, API Gateway, S3) with cross-cloud GCP integration
- Terraform, GitHub Actions
- Docker
- Event-driven integration patterns
Requirements
- 5+ years of professional software engineering experience.
- Strong Python Backend Expertise: Deep experience with FastAPI (or Django/Flask), asynchronous programming, clean architecture, and writing production-grade code.
- Strong React & TypeScript Skills: Ability to architect non-trivial frontends with sound state management, performance optimization, and comprehensive testing.
- System Design Judgment: A proven track record of designing scalable, maintainable systems and clearly articulating architectural trade-offs.
- API & Integration Skills: Proficiency with REST, streaming (SSE/WebSockets), and the real-world complexities of stitching together messy upstream systems.
- Data Proficiency: Strong SQL/NoSQL skills, query optimization, and data modeling.
- Testing & Ownership Mindset: You treat testing as a core part of the development lifecycle and proactively drive features from ambiguous ideas to production.
- Excellent Communication: Ability to explain technical decisions to both engineers and non-technical stakeholders, alongside a passion for writing useful documentation.
Nice-to-Haves
- Agentic AI Experience: Hands-on experience with agent orchestration (Strands, LangGraph, AutoGen, or similar), RAG, tool use, and context engineering.
- Production LLM Systems: Familiarity with LLM observability (Langfuse), evaluation (Ragas), token/cost management, and reliability patterns.
- AWS Depth: Experience with Lambda, ECS, Bedrock, or equivalent cloud services (cross-cloud exposure is a major plus).
- Event-Driven Architectures: Experience with event streaming and message brokers.
- Regulated Environments: Experience working within fintech, compliance, or similar sectors with strict data-residency and auditability constraints.
- Micro-frontends & IaC: Experience with micro-frontend architecture and Infrastructure as Code (Terraform/CDK).