Position Summary
This role is the technical lead for MeridianLink’s customer-facing AI product engineering. The Staff Software Engineer - AI Products sits on our AI Products team and owns the architecture and delivery of intelligent features going directly into the hands of credit union clients. This is the first generation of AI-native products at MeridianLink, and this engineer sets the technical bar for how those products are built: from feature architecture and LLM integration patterns to evaluation quality and production reliability. They partner closely with the AI Platform team to leverage foundational infrastructure and with Product Management to translate business intent into well-designed AI features.
Key Competencies
What it means to be a Staff Engineer at MeridianLink
Staff engineers operate across multiple teams or an entire product line. They set technical direction, make architecture and technology decisions that others build against, and raise the engineering floor across the teams they touch. Staff engineers at MeridianLink are active, daily users of AI-assisted development tools -- and go further by building the workflows, tooling, and patterns that make those tools more effective for the teams around them.
Technical Leadership & Architecture
Makes critical architecture and design decisions that span multiple teams or an entire product area
Evaluates technology choices with a clear view of trade-offs at scale, not just for the immediate problem
Drives technical standards and patterns that other engineers can follow without being supervised
Identifies systemic problems before they become incidents
Cross-Team Execution
Provides day-to-day technical direction for one or more scrum teams without holding a management title
Steps into ambiguous, high-stakes technical problems across teams and drives them to resolution -- without being asked
Holds a high bar in code and design review across team boundaries
AI Feature Architecture & Quality
Designs customer-facing AI features with reliability, correctness, and user trust as primary constraints
Defines evaluation and testing standards for LLM-integrated systems, including prompt regression testing, output quality metrics, and human evaluation criteria
Architects AI features to degrade gracefully when model outputs are low-confidence or unexpected, maintaining a reliable user experience in production
Balances AI capability decisions against compliance constraints relevant to regulated financial services
AI Product Engineering
Applies deep practical knowledge of LLM application patterns: prompt engineering, context management, RAG pipelines, agentic workflows, and provider integration
Makes informed decisions about AI capability design: when to use retrieval vs. fine-tuning, when to call the model vs. use deterministic logic, and how to structure multi-step AI workflows
Works fluently across the full stack of AI product delivery -- from backend LLM integration to the frontend surfaces users see
Interfaces with the AI Platform team to consume shared infrastructure and feeds real-world product requirements back into platform prioritization
Product Partnership & Stakeholder Influence
Partners with Product Management to translate business requirements and user needs into concrete AI feature designs, contributing technical feasibility while incorporating market and customer context
Communicates architectural tradeoffs and product constraints clearly to non-technical stakeholders, including product leadership
Produces RFCs and ADRs that capture durable decisions for AI features and serve as shared reference for future product work
Shapes the roadmap of AI feature investment by surfacing technical risk, capacity constraints, and platform dependencies early
Expected Duties
AI Feature Architecture & Technical Direction
Own the reference architecture for customer-facing AI features, including LLM integration patterns, prompt management, context strategies, retrieval design, and response validation
Lead architecture reviews for new AI features, setting the technical standard for how AI capabilities are designed and evaluated before implementation begins
Drive build-vs-integrate decisions for AI feature components, evaluating third-party tooling, platform capabilities, and custom development tradeoffs
Define and document API contracts, data flows, and system integration patterns for AI features that span product surfaces
AI Product Delivery
Contribute directly to AI feature implementation across the full stack: backend LLM integrations in Python, RESTful service design, and frontend surfaces in React and TypeScript
Build and maintain evaluation harnesses and testing frameworks that give the team confidence in AI feature quality before and after release
Establish observability patterns for AI features, including latency tracking, error rates, model quality signals, and user feedback loops
Validate and continuously improve AI-assisted development workflows, using tools like GitHub Copilot and Claude to accelerate team delivery
Platform Collaboration & Compliance Awareness
Work closely with the AI Platform team to leverage shared infrastructure -- vector search, model gateways, prompt management services -- and surface requirements that should be addressed at the platform layer
Apply secure-by-default design practices, including least-privilege access controls, audit logging, and encryption appropriate for systems handling financial member data
Maintain working familiarity with data privacy and compliance expectations relevant to regulated financial services, enabling productive collaboration with compliance stakeholders
Collaborate proactively with the Security team during feature design to ensure AI capabilities meet security requirements before implementation begins
Collaboration & Growing Others
Develop Senior engineers toward Staff-level scope; give them problems and opportunities that stretch them, not just guidance on their current work
Partner with Engineering Managers and Product leadership to align technical decisions with delivery goals
Own the design and maintenance of technical knowledge infrastructure -- RFCs, ADRs, runbooks, onboarding paths -- so teams can operate without needing to escalate
Qualifications: Knowledge, Skills, and Abilities
Required
8+ years of professional software engineering experience, with demonstrated technical leadership across multiple teams or product areas
Proven ability to make and defend architecture decisions at scale
Active daily use of AI-assisted development tools
Bachelor’s degree in Computer Science, Software Engineering, or equivalent experience
Demonstrated experience building and shipping customer-facing AI or LLM-integrated features in production environments
Strong proficiency in Python for backend and service development, including RESTful API design with frameworks such as FastAPI or Django
Hands-on experience with LLM integration patterns, including prompt engineering, context management, RAG pipelines, and provider APIs (e.g., OpenAI, Anthropic)
Experience building and maintaining evaluation frameworks for LLM-based systems, including output quality testing and regression detection
Solid working knowledge of modern frontend development (React, TypeScript) sufficient to contribute to and review AI feature surfaces
Experience deploying and operating applications on AWS, including IAM, managed services, and cloud-native architecture
Preferred
Prior experience building software in a financial services, fintech, or other regulated technology environment
Familiarity with AI compliance and governance considerations applicable to financial institutions (e.g., model risk management, fair lending, NCUA guidance)
Experience with vector databases and semantic search infrastructure (e.g., pgvector, Pinecone, OpenSearch)
Working knowledge of AI evaluation tooling or experiment tracking frameworks (e.g., LangSmith, MLflow, Weights & Biases)
Exposure to agentic workflow patterns, multi-step AI orchestration, or tool-use implementations
What Success Looks Like
A successful hire at this level establishes themselves quickly as the architectural voice for AI feature quality and delivery on the team. In the first few months, they are setting technical direction on active AI features, raising the evaluation bar so the team ships AI capabilities with confidence, and building a productive working relationship with the AI Platform team. Over time, their impact is measured in the quality and reliability of AI features reaching clients, the technical growth of the engineers around them, and how well the team’s AI architecture holds up as the product portfolio expands.
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