Technical Reviewer - RL Environment Terminal Benchmarking (Agentic AI)

Remote Full-time
This description is a summary of our understanding of the job description. Click on 'Apply' button to find out more. Role Description Mercor is hiring a Technical Reviewer on behalf of a leading AI lab to evaluate and refine benchmarking pipelines for reinforcement learning (RL) environments and agentic AI systems. In this role, you’ll be responsible for reviewing environment design, terminal conditions, and evaluation protocols to ensure accuracy, reproducibility, and fairness in benchmarking. You’ll work closely with researchers and engineers to provide technical feedback that strengthens experimental rigor and system reliability. Qualifications Background in reinforcement learning, computer science, or applied AI research Experience with RL environments Understanding of benchmarking methodologies, terminal conditions, and evaluation metrics for RL tasks Comfortable reading and reviewing codebases in Python (PyTorch/TensorFlow a plus) Strong critical thinking skills and ability to provide structured technical feedback Care deeply about experimental reproducibility, fairness, and standardization in agentic AI Detail-oriented and capable of reviewing both theoretical formulations and implementation details Requirements Review RL environments and evaluate terminal conditions for correctness and consistency Assess benchmarking pipelines for fairness, reproducibility, and alignment with research objectives Provide structured technical feedback on code implementations and documentation Collaborate with researchers to refine evaluation metrics and methodologies Ensure reproducibility by validating results across different runs, seeds, and hardware setups Document findings and recommend improvements for environment design and benchmarking standards Benefits Directly influence the reliability of benchmarking in agentic AI research Work on cutting-edge RL environments that test the limits of intelligent agents Help establish standards for evaluation and reproducibility in a fast-moving field Collaborate with researchers shaping the future of agentic AI systems Pay & Work Structure Classified as a full-time hourly contractor to Mercor Paid weekly via Stripe Connect, based on hours logged 40 hours/week commitment with flexible scheduling Remote and flexible working style
Apply Now →

Similar Jobs

Bilingual Spanish Medical Expert

Remote Full-time

Bilingual Spanish Finance Expert

Remote Full-time

Bilingual Spanish Education Expert

Remote Full-time

Bilingual Spanish Government/Public Policy Expert

Remote Full-time

Bilingual Spanish Marketing Expert

Remote Full-time

Bilingual Spanish Legal Expert

Remote Full-time

Bilingual Italian Medical Expert

Remote Full-time

Bilingual Italian Legal Expert

Remote Full-time

Bilingual German Education Expert

Remote Full-time

Bilingual German Legal Expert

Remote Full-time

Experienced Customer Service Professional – Work from Home Opportunities with arenaflex in Retail and Membership Services

Remote Full-time

Experienced Special Education Assistant for Elementary Students - 2024 School Year

Remote Full-time

Demand Specialist

Remote Full-time

Experienced Customer Service Chat Operator – Remote Work Opportunity in Des Moines, IA for Engaging Online Conversations and Lead Generation

Remote Full-time

**Experienced HRIS Data Entry Associate – Global Mobility and HR Technology Support**

Remote Full-time

Experienced Pharmacy Customer Service Representative for Remote Work Opportunity with arenaflex – Delivering Exceptional Patient Support and Healthcare Solutions

Remote Full-time

Supply Chain (SCM) Implementation Consultant, Senior Consultant (Healthcare Industry) 73 Locations

Remote Full-time

Penetration Tester- Contract (Remote)

Remote Full-time

**Experienced Online Chat Support Specialist – Remote Customer Service Representative**

Remote Full-time

**Experienced Part-Time Remote Customer Service Representative – Southwest Airlines Customer Experience Team**

Remote Full-time
← Back to Home