Back

AI Engineer, Agents & Evaluation

Worldwide Salaried Open

We’re looking for our first AI Engineer focused on agents and evaluation—a foundational hire who will shape how we build, measure, and scale intelligent systems. The Opportunity: Design the Playbook for High-Performance AI Agents We’re tackling one of the hardest—and most important—problems in software engineering: helping developers understand, evolve, and operate complex systems using autonomous and event-driven AI. In this role, you’ll build the evaluation frameworks, task harnesses, and orchestration strategies that make our agents reliable, testable, and genuinely useful. Your work will not only directly improve our agents—it will create reusable benchmarks and artifacts that can inspire new approaches and push forward the broader foundation model ecosystem. If you love designing experiments, building systems, and iterating tightly between theory and code—and you’re excited by a very 0→1, research-engineering style role—this is for you.

What You Will Do

  • Create Task Evaluations That Matter: Design and implement task-specific evaluations that measure and improve agent quality. Each eval should both drive concrete iteration on our agents and spark broader innovation around the task itself.
  • Define Tasks, Datasets, and Harnesses: Clearly specify tasks, collect and curate balanced datasets, and build robust evaluation harnesses that can be used across agents and modeling approaches. There is ample room for architectural design and systems thinking here.
  • Build and Use a Reusable Evaluation Framework: Develop frameworks and tools for running evaluations at scale. Use these frameworks to tune existing agents and to guide the development of new ones in our environment.
  • Explore Agent Orchestration Strategies: Investigate and implement orchestration patterns (tooling, routing, decomposition, multi-agent setups, etc.) that allow agents to tackle increasingly complex, multi-step, and long-horizon tasks.
  • Apply Post-Training Techniques: Experiment with post-training approaches (e.g., fine-tuning, preference optimization, reward shaping, distillation) to produce high-performance models tailored to specific tasks and workflows.
  • Run Experiments End-to-End: Design, run, and analyze experiments with rigor. Turn experimental results into clear recommendations and concrete changes to model configurations, prompts, and system design.
  • Collaborate Deeply Across the Stack: Work closely with founders, product, and infrastructure engineers to ensure evaluations, agents, and platform primitives all reinforce each other.

What You Will Bring

  • MS or Ph.D. in a relevant field (e.g., Computer Science, Machine Learning, NLP) or equivalent practical experience
  • Strong background in machine learning and large language models, ideally including both research and hands-on implementation
  • 2–5 years working with LLM technology, with familiarity across:
  • Prompting and interaction patterns
  • Agent and tool orchestration strategies
  • Evaluation strategies for complex, open-ended tasks
  • Proficiency writing production-quality code, especially in Python; comfort working with TypeScript or modern web/backend stacks
  • Experience designing and running experiments, and interpreting results in messy, real-world settings
  • Self-motivated, comfortable operating in an unstructured, high-ambiguity environment
  • Strong communication skills and the ability to translate vague goals into concrete, testable setups

Bonus Points

  • Experience building agentic systems (tool-using agents, workflows, or multi-agent systems) in real products
  • Prior work on model evaluation frameworks, benchmarking, or reliability/robustness testing
  • Familiarity with modern ML tooling (training/inference stacks, experiment tracking, data pipelines)
  • Contributions to open-source LLM, tooling, or evaluation projects
  • Experience at an early-stage startup or research lab where you owned projects end-to-end

Benefits & Perks

  • Significant equity in an early-stage, venture-backed startup
  • Comprehensive Health Benefits (Medical, Dental, Vision)
  • Flexible PTO to ensure you have the time you need to recharge

Apply tot his job Apply To this Job

More jobs

AI/ML and Data Engineer

Worldwide Salaried

Senior Legal AI Specialist

Worldwide Salaried

US Voice Talent — AI Voice

Worldwide Salaried

Senior AI Architect, IT

Worldwide Salaried

Customer Success Engineering - Data AI

Worldwide Salaried

Intern, Engineering and/or AI

Worldwide Salaried

Remote AI Training for Russian Math Experts

Worldwide Salaried

Senior Strategist - Future of Work & AI Readiness

Worldwide Salaried

Lead Analyst, People Technology & AI

Worldwide Salaried

Sr. Manager, AI Search & Discoverability

Worldwide Salaried

Experienced Customer Service Representative – Work From Home Opportunity at arenaflex

Worldwide Salaried

Customer Service Event Staff – Seasonal Part‑Time Role at arenaflex (Dallas‑Area Athletic & Entertainment Events)

Worldwide Salaried

Front End Developer

Worldwide Salaried

Experienced Data Entry Clerk – Remote Work Opportunity with arenaflex

Worldwide Salaried

Experienced Customer Service Associate – Call Center – Remote, Full Time and Part Time Flex Positions Available in Philadelphia, PA

Worldwide Salaried

Experienced Customer Service Representative (Email Support) – Remote Opportunity at arenaflex

Worldwide Salaried

Health Benefits Business Development Officer

Worldwide Salaried

Experienced Customer Service Representative – Work From Home Opportunity at arenaflex

Worldwide Salaried

Home-Based DCX Financial Planning Analyst

Worldwide Salaried

Production Animal Specialist (Alberta) / Spécialiste en productions animales (Alberta)

Worldwide Salaried