SiteTracker
Product Engineer
Denver, Colorado$85k–$165kfull-timemidAdded today
About this role
Sitetracker seeks a Product Engineer in Denver to design and implement AI-driven features for an enterprise AI harness platform. You'll own end-to-end feature delivery, work with LLMs and AI infrastructure, and collaborate across teams to build scalable, high-throughput solutions that enhance product capabilities.
What you'll do
- Own features and components end-to-end, from technical design through implementation, testing, and monitoring
- Build and implement AI-driven product capabilities using LLMs and AI agents with established security practices
- Design and contribute to fault-tolerant systems that orchestrate multiple AI agents
- Write comprehensive tests for AI systems, including strategies for non-deterministic outputs and quality evaluation
- Collaborate across Product and Engineering teams to communicate dependencies and unblock delivery
- Champion emerging engineering standards for AI development and share knowledge with teammates
What they're looking for
- Full-stack software development and clean code practices
- Large Language Models (LLMs) and AI component integration
- System design for scalability and fault tolerance
- Testing and evaluation methodologies for AI outputs
- Data privacy and security guardrails
- Cross-functional collaboration and communication
- Problem decomposition and iterative solution design
- Code review and technical decision-making
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SiteTracker
SiteTracker provides a SaaS platform designed to optimize project workflows and user adoption. The company is hiring for training and enablement roles focused on delivering customized learning programs that help customers master the platform's capabilities.
View all jobs at SiteTrackerLikely interview questions
- Describe your experience building or integrating Large Language Models into production systems. What challenges did you encounter and how did you address them?
- How would you approach testing AI-driven features where outputs are non-deterministic? What metrics would you use to evaluate quality?