Job descriptionAbout PureFacts Financial Solutions PureFacts is a revenue performance software company serving wealth management, asset management, and asset servicing firms. We help financial institutions protect, optimize, and grow revenue through a connected platform spanning pricing, billing, compensation, reporting, and transparency. By unifying fragmented data and workflows into a trusted revenue foundation, we help clients improve accuracy, strengthen governance, reduce manual effort, and unlock new growth opportunities.
At PureFacts, we are building an AI-native platform and company. We embed AI, intelligent automation, and agentic workflows across our products and operations to detect anomalies, surface insights, streamline repetitive work, and support faster, better decision‑making. In a highly regulated industry, we believe AI must be practical, governed, and auditable—amplifying human expertise while helping our teams and clients focus on higher‑value, strategic work.
About The Role The AI Engineer (LLM/Agent) will own the conversational layer that describes Purefacts’ ML model outputs to end users, develop a “Revenue Assistant” Agent from R&D through to prototype, and design context architecture grounded in client‑specific pricing data. Builds evaluation and safety frameworks. This role sits at the intersection of machine learning, software engineering, and product, focusing on building intelligent systems that can reason, automate workflows, and augment human decision‑making.
You will play a key role in advancing PureFacts’ AI‑first strategy, developing AI‑powered copilots, agents, and automation tools that reduce manual work, improve productivity, and deliver meaningful client value.
What You’ll Do LLM & Agent Development
Design and build LLM‑powered applications and AI agents for both internal and client‑facing use cases
Develop solutions such as:
AI copilots for internal teams and clients
Intelligent workflow automation agents
Natural language interfaces for data and reporting
Implement prompt engineering, tool usage, and agent orchestration frameworks
AI-First Automation & Use Cases
Identify opportunities to replace manual processes with AI‑driven automation
Build systems that enable users to interact with complex data through natural languageDevelop AI solutions that enhance:
Revenue insights and analytics
Client reporting and communication
Operational efficiency across workflows
System Design & Integration
Integrate LLMs into PureFacts’ SaaS platform and data systems
Build APIs and services to support AI‑powered features
Work with data and engineering teams to ensure secure, scalable, and reliable integrations
Retrieval‑Augmented Generation (RAG) & Data Integration
Design and implement RAG pipelines using structured and unstructured data sources
Work with:
Vector databases (e.g., Pinecone, Weaviate)
Embedding models and semantic search
Ensure accurate, relevant, and context‑aware outputs from AI systems
Evaluation, Testing & Optimization
Develop frameworks to evaluate LLM outputs for quality, accuracy, and reliability
Continuously optimize prompts, models, and workflows
Monitor system performance and implement improvements
AI Infrastructure & Tooling
Leverage and integrate tools such as:
OpenAI, Azure OpenAI, or similar LLM providers
LangChain, LlamaIndex, or agent frameworks
APIs, microservices, and cloud infrastructure
Collaborate with MLOps to ensure scalable and maintainable deployments
Responsible AI & Governance
Ensure AI solutions are secure, compliant, and aligned with responsible AI principles
Address:
Data privacy and security
Model hallucination and reliability
Explainability and transparency
Cross‑Functional Collaboration
Partner with Product, Engineering, and Client teams to translate AI capabilities into business value
Help stakeholders identify opportunities to increase efficiency and reduce manual effort
Communicate technical concepts in a clear, practical way
Qualifications
Experience: 1‑3 years of LLM application development – RAG pipelines, vector databases, agent orchestration (tool‑use, multi‑step reasoning)
Experience with evaluation frameworks for generative AI, and in putting guardrails/safety in regulated contexts
Familiar with agent frameworks (LangGraph or similar)
Hands‑on experience building LLM‑based applications or AI agents
Experience in SaaS, fintech, or data‑driven environments is preferred
Technical Skills
Strong programming skills in Python (required)
Experience with:
LLM APIs (OpenAI, Azure OpenAI, Anthropic, etc.)
Prompt engineering and agent frameworks (LangChain, LlamaIndex, etc.)
APIs and microservices architecture
Data processing (SQL, Python data libraries)
Familiarity with:
Vector databases and embeddings
Cloud platforms (AWS, Azure, GCP)
AI & Agent Expertise
Experience building:
Retrieval‑Augmented Generation (RAG) systems
Multi‑step agent workflows
Tool‑using agents and automation systems
Strong understanding of:
LLM limitations and optimization techniques
Evaluation methods for generative AI
Automation & Product Mindset
Passion for using AI to automate workflows and eliminate low‑value work
Ability to translate AI capabilities into practical, high‑impact solutions
Strong focus on user experience and real‑world application
Communication & Collaboration
Ability to work across technical and non‑technical teams
Strong problem‑solving and systems thinking skills
Clear communication of complex AI concepts
Education
Degree in Computer Science, Engineering, Data Science, or related field
Advanced degree is a plus but not required
Key Success Metrics
Deployment of AI‑powered copilots and agents into production
Reduction in manual effort through AI‑driven automation
Adoption and usage of AI features by internal teams and clients
Quality, reliability, and accuracy of AI-generated outputs
Speed of development and iteration of AI solutions
The Pay Range For This Role Is 80,000 - 100,000 CAD per year (Toronto, Canada).
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