CapIntel

wealth management

ContextEngineer

CA$120–140k Gatineau, Quebec, Canada
Market Sentiment
HIGH DEMAND

Neural analysis suggests this role is
optimal for Mid candidates.

The Brief

“Context Engineer at CapIntel. Skills: LLM integration, agentic workflows, production reliability, RAG pipelines, context management, AI feature development. Design and implement LLM-powered features into our core application via model APIs. Architect and maintain retrieval-augmented generation (RAG) pipelines”

What You'll Achieve.

make our AI features reliable, accurate, and scalable; directly enhance the advisor and client experience; deliver great work

Industry & Context.

wealth management
Problems you'll solve

problem-solving instincts

What They're Looking For.

Must Have

5+ years of professional software engineering experience, at least 1–2 years working with LLMs in a production context, experience with Python or Node and building API-integrated backend services, Hands-on experience with an orchestration or execution framework, Working knowledge of RAG architecture, Working knowledge of vector databases (e.g. Pinecone, pgVector, AWS OpenSearch), Working knowledge of semantic search, Experience building or consuming REST APIs, Experience integrating with third-party services

Nice to Have

Experience with the Model Context Protocol (MCP) or similar tool-integration standards, Familiarity with LLMOps practices: tracing, observability (e.g. LangSmith, Datadog), and model versioning, Exposure to multi-agent architectures and orchestration patterns, Knowledge of AI output validation, context safety, and governance considerations particularly relevant in regulated industries like financial services, Familiarity with AWS or cloud-based infrastructure, Familiarity with containerised deployments (Docker, Kubernetes)

What You'll Do.

Design and implement LLM-powered features into our core application via model APIs

Architect and maintain retrieval-augmented generation (RAG) pipelines

Manage context window strategy

Design and implement agentic workflows enabling the platform to handle multi-step

Build guardrail and output validation layers

Develop reusable agent primitives

and workflow components

Build evaluation frameworks to measure context effectiveness

and agent reliability in production

Monitor deployed AI systems for failure patterns and implement mitigation strategies

Translate business requirements

and proof of concepts into production AI system specifications

How You'll Work.

Team & Collaboration

embedded in development teams working closely with engineers, product managers, and domain experts across the organization; Collaborate with Product, Product Engineering, Implementation, and Data teams; Comfortable collaborating with cross-functional teams in a fast-paced, high-growth environment; Ability to communicate technical concepts clearly to both technical and non-technical partners

Communication Scope

Ability to communicate technical concepts clearly to both technical and non-technical partners

Full Job Description

CapIntel is a software platform built for wealth management enterprises to help financial advisors explain complex investment strategies to their clients. Advisors at some of the biggest banks across North America are winning trust by using CapIntel to easily compare investments and create compelling, educational presentations. Ultimately, we're focused on investors getting better service, understanding their investments, and feeling at ease knowing their future is secure. Since launching in 2019, CapIntel has seen rapid adoption and industry recognition, earning top placements in Deloitte’s Technology Fast 50 Canada and Fast 500 North America in 2025, ranking us among the fastest-growing technology companies. To support this momentum, we’re growing our team rapidly—investing in people who drive innovation at scale to expand our impact across the North American wealth management industry. About the Role As a Context Engineer at CapIntel, you'll sit at the intersection of AI infrastructure and engineering. You will be responsible for how large language models are integrated into our core platform and how our engineering team adopts agentic workflows. This is a hands-on, production-focused role, not a research one. You'll build the systems that make our AI features reliable, accurate, and scalable for the wealth management enterprises that depend on us. You'll be embedded in development teams working closely with engineers, product managers, and domain experts across the organization to design and deliver LLM-powered capabilities that directly enhance the advisor and client experience. As one of the first practitioners in this discipline at CapIntel, you'll also help define what context engineering looks like here: setting patterns and practices the broader team can build on. This role is ideal for someone who thinks in systems, cares about production reliability over demo-day performance, and is energized by working in a discipline that is evolving quickly. What You'

Free ATS check

Applying for this Context Engineer role?

Most applicants get filtered before a human reads their resume. See if yours makes the cut.

How to Apply on Greenhouse

  • Create a Greenhouse profile before applying — it saves time across multiple applications.
  • Upload your resume as a PDF; the parser handles it better than Word.
  • Answer all knockout questions carefully — wrong answers auto-reject before a human sees you.
  • Enable email notifications to track application status in real time.

ANONYMOUS · UNFILTERED

What do employees actually say about CapIntel?

Real rants from real employees. Read before you apply.

Read Company Rants →