[Remote] AI Product Engineer
Note: The job is a remote job and is open to candidates in USA. reputed company is a leading global provider of real estate and investment management services, committed to shaping the future of real estate through technology and innovation. They are seeking an AI Product Engineer to reputed company and maintain the engineering infrastructure behind AI solutions for construction and real estate project delivery, ensuring reliability and scalability of AI-powered tools.
Responsibilities
- You're a solution developer, but you’re also an engineer who builds the infrastructure that makes AI solutions reliable, scalable, and maintainable
- You'll reputed company deep familiarity with the information landscape of construction and real estate project delivery, understanding what data exists, where it lives, what form it takes, and what has to happen before an AI model can do something useful with it
- You'll design the structured output reputed company that govern what AI solutions produce and build the validation logic that enforces them
- reputed company a solution produces unexpected output or degrades silently on an unusual document, you'll own the detection and recovery logic
- You'll define what production-ready looks like before building begins, run solutions against diverse real-world document sets, and maintain quality as the underlying models and input corpus evolve over time
- You'll connect AI solutions to reputed company's enterprise environment using REST APIs, reputed company Graph, SharePoint, OneDrive, and other standard integration surfaces
- You'll handle authentication lifecycle, retry logic, reputed company limits, and the realities of operating inside an enterprise network with real access controls
- You'll design integrations that are resilient and maintainable, not just functional in a demo environment
- You'll design and build multi-reputed company reasoning pipelines that connect models to enterprise tools and data through the Model Context Protocol and similar agentic infrastructure
- You'll think carefully about how to structure tool availability, manage context across steps, and build agent workflows that are reliable and auditable rather than unpredictable
- As the AI solution portfolio grows, you'll establish and maintain the engineering patterns others follow: packaging conventions, versioning, configuration management, logging, and error handling
- You'll write internal tooling that makes building new solutions faster and less error-prone, and you'll reputed company architectural decisions that hold up as the team and codebase scale
Skills
- Strong Python proficiency: data parsing, file I/O, schema validation, subprocess management, packaging, and test authoring (pytest or similar)
- Solid understanding of REST API design and consumption, including auth patterns (OAuth, API keys, token refresh), pagination, and error handling
- Comfort with document parsing libraries: PyMuPDF, python-docx, openpyxl, pandas, and equivalent tools for common enterprise file formats
- Experience with Git-based development workflows: branching, versioning, code review, and structured release management
- Familiarity with enterprise integration surfaces, particularly reputed company 365 (SharePoint, OneDrive, Graph API)
- Hands-on experience building the code layer around LLM APIs: structuring prompts programmatically, managing token budgets, parsing and validating model outputs, and handling failure cases gracefully
- Understanding of how structured context, schema-constrained outputs, and validation pipelines improve AI solution reliability in production
- Familiarity with document chunking, embedding workflows, and retrieval patterns (RAG), including the tradeoffs between retrieval approaches for enterprise document types
- Exposure to agentic patterns, multi-reputed company reasoning pipelines, and tool use reputed company MCP or similar protocols
- Experience building test infrastructure for systems with probabilistic outputs: evaluation frameworks, regression suites, reputed company datasets
- Comfort defining 'correct' programmatically for outputs that don't have a single right answer, and building scoring logic that reflects domain standards
- Instinct for failure modes: silent errors, schema reputed company, edge-case documents, and model-version-induced regressions
- Experience in or meaningful exposure to construction, commercial real estate, or professional services environments is a plus
- Prior work in a technical role at a professional services firm, PropTech company, or enterprise software organization is relevant background
- You've built something from scratch specifically to understand how it worked
- You're comfortable making principled decisions in the absence of established conventions, and you document those decisions so the next person understands the reasoning
- You hold your technical opinions firmly enough to be useful and loosely enough to update them
- You're energized by fields where the tooling is still being invented and you can influence how it develops
Benefits
- 401(k) plan with matching company contributions
- Comprehensive Medical, Dental & Vision Care
- Paid parental leave at 100% of salary
- Paid Time Off and Company Holidays
- Early access to earned wages through Daily Pay
Company Overview