Founding AI Engineer - Manhattan Labs

Pear Vc
San Francisco, US
On-site

Who this role is best for

Best suited to mid-level engineers with startup experience who can architect AI-native systems in the fintech compliance domain.

Best fit for

  • Engineers who thrive in early-stage environments and own technical decisions.
    — “This is a true founding engineer role
  • Candidates with hands-on experience deploying LLM integrations in production.
    — “Hands-on experience shipping LLM integrations or RAG systems into production
  • Developers comfortable with both backend scalability and regulatory scrutiny.
    — “Harden the platform for enterprise: auth controls, role-based access, audit trails

Things to consider

  • Role requires transitioning an MVP to an enterprise-grade system.
    — “You will take the product from early-stage MVP to a secure, reliable, enterprise-grade system
  • Must be comfortable working directly with founding team on architecture.
    — “Work directly with the founding team to define architecture, technical roadmap, and product direction

How to stand out

  • Showcase past projects where you scaled systems under regulatory constraints.
    — “Proven track record taking a product from 'works locally' to reliable production at growing scale
  • Highlight specific techniques for evaluating AI system accuracy in production.
    — “Own the productionization of AI systems, including evaluation pipelines
  • Demonstrate knowledge of financial data structures beyond basic fintech.
    — “Design, build, and operate RAG and agentic systems over complex financial data
Pace · Fast PacedCollaboration · HighAutonomy · MediumDecision Impact · TeamLevel · Mid

Derived from job-description analysis by Serendipath's career intelligence engine.

What success looks like

  • productionizing AI systems
  • establishing CI/CD practices
  • defining architecture and technical roadmap
Typical background
startup experienceAI-native compliance platform development

Skills & requirements

Required

LLM IntegrationRAG SystemsDocument ProcessingEntity ExtractionAPI DesignAsync Job Processing

Preferred

Agentic ReasoningCutting-edge AI ResearchCi/cd PipelinesIncident Response

Stack & domain

TypeScriptPythonLlm IntegrationsRag SystemsDocument ProcessingEntity ExtractionStructured Data ExtractionApi DesignRelational DatabasesAsync Job Processing SystemsProblem-solvingTeamworkCommunicationProduct IntuitionUser Experience FocusAIComplianceFinancial CrimeRegulatoryFinancial Data

About the role

Original posting from Pear Vc via Ashby

About the team

We’re building the AI-native compliance platform for community banks and financial institutions.

Regulatory pressure is intensifying. Financial crime is becoming more sophisticated. Compliance teams are overwhelmed by manual workflows and fragmented systems. Community banks, despite managing billions in assets, lack the tooling to keep up.

We’re building the intelligence layer that changes that: a system that can answer questions like

“What is our exposure to this entity across all customers?”

  • with a defensible, auditable answer.

Our team includes engineers and researchers from Stanford, Carnegie Mellon, and IIT Madras, and we’re backed by Tier 1 investors and experienced operators who understand the massive opportunity in modernizing financial crime compliance with AI.

Learn more at https://manhattanlabs.co/

.

Description of the role

This is a true founding engineer role. You won’t just ship features - you’ll define the system.

You’ll architect and build an AI-native platform that operates as the investigative brain for compliance teams. This includes agentic reasoning systems, large-scale document ingestion, and user-facing tools that must stand up to regulatory scrutiny.

You will take the product from early-stage MVP to a secure, reliable, enterprise-grade system used by financial institutions.

By reimagining KYB and AML as autonomous intelligence, you'll help build the platform that becomes the default compliance infrastructure for thousands of community banks, that each manage assets worth billions of dollars. You'll work directly with the founding team, own technical decisions, and lay the foundation for a potentially massive and fast-growing SaaS company.

Responsibilities and potential impact

  • Design, build, and operate RAG and agentic systems over complex financial data (corporate registries, sanctions lists, beneficial ownership, adverse media), with clear evaluation metrics for accuracy, latency, and cost
  • Develop scalable backend services for document processing (PDF/OCR/CSV), async job queues, case lifecycle orchestration, and risk scoring with confidence-driven UX and human-in-the-loop controls
  • Own the productionization of AI systems, including evaluation pipelines, dataset/version management, and safe rollout strategies (A/B testing, guardrails, fallback behavior)
  • Harden the platform for enterprise: auth controls, role-based access, audit trails, backups, and monitoring with measurable SLOs
  • Establish CI/CD, deployment pipelines, runbooks, and incident response practices from the ground up
  • Propose and engage in cutting-edge AI research related to our mission, particularly around agentic reasoning over regulatory and financial data
  • Work directly with the founding team to define architecture, technical roadmap, and product direction

Must haves

  • 1+ years of experience on technical projects with startup experience strongly preferred
  • Strong TypeScript and Python skills across modern frontend and backend stacks
  • Hands-on experience shipping LLM integrations or RAG systems into production user-facing products
  • Experience with document processing, entity extraction, and structured data extraction from messy real-world sources
  • Solid grasp of API design, relational databases, and async job processing systems
  • Proven track record taking a product from "works locally" to reliable production at growing scale
  • Debugging instincts across frontend, backend, infra, and data boundaries - and an ownership mindset to match

Nice to haves

  • Knowledge of KYC/KYB/AML workflows, sanctions screening, beneficial ownership data, or regulated fintech
  • Experience with LangChain, LlamaIndex, or similar AI orchestration frameworks
  • Familiarity with banking APIs, core banking systems, or financial data providers
  • Familiarity with OCR and document intelligence pipelines
  • Background in fintech, compliance, RegTech, or other regulated industries
  • Cloud deployment experience and DevOps knowledge in security-sensitive environments
  • Strong product intuition and user experience focus

What we offer

We believe in generous, top-tier compensation and benefits for our employees:

  • Competitive salary and equity
  • 100% health, dental, and vision coverage
  • Commuter stipend
  • Regular team events and off-sites

Source: Pear Vc careers (Ashby)

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