Reinforcement Learning Engineer

MLabs

$130K — $180K *
Finance & Insurance
Less than 5 years of experience
Job Overview by Ladders

Qualifications

  • 5-7 years of production experience with reinforcement learning systems.
  • Proven track record in designing and implementing risk management frameworks.
  • Hands-on experience building policy evaluation loops for machine learning models.
  • Understand key tradeoffs in algorithm choices based on real-world results.
  • Ability to autonomously manage a complex machine learning project end-to-end.

Responsibilities

  • Develop and launch RL-driven trading agents that utilize real capital.
  • Create appropriate reward functions to support aggressive product strategies while limiting risks.
  • Transition existing systems from heuristic-based to learning-based frameworks without disruptions.
  • Establish offline evaluation frameworks to ensure models are validated before live testing.
  • Lead the technical standard of RL implementations in the trading infrastructure.

Benefits

  • Engage in a fast-paced and high-stakes crypto environment.
  • Enjoy true ownership of projects with streamlined decision-making processes.
  • Work alongside a small team of elite developers in a collaborative atmosphere.
Full Job Description
Reinforcement Learning (RL) Engineer

Location: New York (Office)

On-site Full-time

Compensation: Competitive

The organization is seeking a Reinforcement Learning (RL) Engineer to take end-to-end ownership of an RL-driven trading agent. This individual will manage real capital to increase trading volume and user participation within a high-velocity memecoin ecosystem. This is a high-stakes role designed for a "single-owner" expert who can bridge the gap between sophisticated modeling and live financial production. The successful candidate will transition existing heuristic-based systems toward learning-based approaches while enforcing rigorous risk parameters in a 24/7 global market.

Key Responsibilities
  • Autonomous Agent Development: Own the design, shipment, and iteration of an RL-driven trading agent that utilizes real capital to drive ecosystem engagement.
  • Objective Function Design: Design reward functions and policies that align strictly with product goals while implementing and enforcing absolute downside risk constraints.
  • Validation Frameworks: Build robust evaluation and validation frameworks, including simulation and offline analysis, to minimize reliance on live sequential testing.
  • System Transition: Manage the safe transition of existing heuristic-based production systems toward advanced learning-based approaches.
  • Technical Leadership: Serve as the sole RL expert within a small, high-caliber team, maintaining responsibility for the entire lifecycle-from data modeling and deployment to monitoring and safety safeguards.


Interview Process
  1. Recruiter / HR Call: Initial screening to discuss professional background, risk management philosophy, and cultural alignment.
  2. Technical Interview: A deep-dive assessment into RL architecture, simulation frameworks, and live production experience.
  3. Final Interview: A strategic discussion with leadership focusing on mission alignment, role expectations, and long-term objectives.

Requirements
  • Production Experience: Proven track record of deploying autonomous learning systems into production environments that directly controlled capital, pricing, traffic, or resources. Candidates must be able to demonstrate a deep understanding of system failures and subsequent remediation.
  • Risk Management: Hands-on experience designing and enforcing hard risk limits, such as capital caps, loss bounds, and circuit breakers, within a live financial or resource-based system.
  • Evaluation Loop Mastery: Experience building policy evaluation loops from scratch, including simulators, replay, counterfactuals, and shadow deployments, prior to live rollout.
  • Empirical Judgment: Ability to make and defend pragmatic technical tradeoffs (e.g., opting for heuristics over RL or bandits over deep RL) based on empirical results rather than theoretical preference.
  • Operational Independence: Demonstrated experience as the primary owner of a complex ML system within a lean environment, operating without the support of dedicated research organizations or external ML platforms.
  • Work Style: Comfort with an intense, fast-paced environment where expectations are high and impact is immediate. Our client operates primarily in-person.

Benefits
  • High-Stakes Autonomy: Unmatched ownership over an RL agent managing real-world capital and massive user traffic.
  • Scale Exposure: Direct involvement with systems operating at the absolute edge of crypto and financial technology scale.
  • Elite Talent Density: Opportunity to collaborate with a mission-driven group of engineers who value first-principles thinking.
  • Immediate Impact: The ability to ship fast and see real-world results and market reactions instantly.
  • Compensation: A competitive package including Base Salary plus Equity/Tokens.


Due to the high volume of applications we anticipate, we regret that we are unable to provide individual feedback to all candidates. If you do not hear back from us within 4 weeks of your application, please assume that you have not been successful on this occasion. We genuinely appreciate your interest and wish you the best in your job search.

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