Job Title: Data Science / ML Engineer
Location: Remote – Latin America - 6 AM – 2 PM Pacific TimeType of Contract: Full-Time
Salary Range: Market Rates
Language Requirements: Professional English
We are seeking a skilled ML Engineer / Data Scientist with strong experience in reinforcement learning environments and AI systems to join our growing team. You will play a key role in designing scalable evaluation frameworks and shaping the behavior of advanced AI models. Your work will directly impact the performance, reliability, and alignment of cutting-edge AI agents.
Key Responsibilities
- Design and implement reinforcement learning (RL) environments for large-scale agent evaluation and experimentation
- Build task generation pipelines, dynamic datasets, and controlled simulation environments with varying complexity
- Develop reward models and verification systems to automatically evaluate model outputs and reasoning paths
- Collaborate with infrastructure teams to ensure systems are scalable, reproducible, and fully instrumented for telemetry
- Design APIs and orchestration frameworks to manage agent lifecycle across environments
- Optimize performance, logging systems, and reward consistency in distributed environments
- Contribute to continuous improvements in evaluation methodologies and AI behavior alignment
Must-Have Qualifications
- 5+ years of experience in Python software engineering
- 3+ years of experience in Data Science, Machine Learning, or Environment Engineering roles
- Strong practical experience working with AI systems, including prompt engineering
- Hands-on experience with AI frameworks such as LangChain, LangGraph, or MCP servers
- Solid understanding of reinforcement learning concepts, including reward modeling, environment dynamics, and agent interaction loops
- Experience working with metrics, instrumentation, and data pipelines for ML or RL systems
- Ability to work 6 AM – 2 PM Pacific Time
Preferred Qualifications
- Experience with tools such as Codex or Claude Code
- Background in integrating AI systems into production environments
- Familiarity with evaluation frameworks for large language models
- Strong self-management and ability to plan and execute work independently
