Reinforcement Learning Engineer
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Job description
This role is part of Bright Vision Technologies' in-house Statement of Work (SOW) engagement. The client, end customer, and employer for this position is Bright Vision Technologies - there is no third-party client, vendor, or implementation partner involved. We do not engage in C2C, 1099, or third-party arrangements for this role. BUT STRICTLY NO C2C/1099/3RD PARTY COMPANIES. ALL OUR ROLES ARE W2 AND NO 3RD PARTY BROKERING PLEASE. Candidates must be willing to work directly as a full-time W2 employee of Bright Vision Technologies and contribute to our in-house SOW deliverables. No new H1B sponsorship is available for this role. However, candidates who are currently on a valid H1B visa and require a transfer are welcome to apply. We will support H1B transfers for qualified candidates. For every role, a technical coding assessment is mandatory. Please apply only if you are confident in your technical abilities and hands-on experience., We are looking for a Reinforcement Learning Engineer to design, train, and deploy RL-based systems for high-impact decision-making problems where supervised learning alone is insufficient. The role requires deep familiarity with modern reinforcement learning algorithms, simulation environments, reward modeling, and the engineering complexity of training and evaluating policies at scale. The ideal candidate has both research depth and engineering pragmatism, with experience taking RL solutions out of the lab and into production where stability, safety, and ongoing improvement are critical. Key Responsibilities
- Design and implement reinforcement learning solutions for sequential decision-making problems in real and simulated environments.
- Develop, calibrate, and maintain simulation environments suitable for large-scale agent training.
- Implement and evaluate modern RL algorithms including policy gradient, actor-critic, off-policy, and offline RL methods.
- Engineer reward functions and shaping strategies that align agent behavior with desired outcomes and safety constraints.
- Apply offline RL and imitation learning techniques where exploration is costly or unsafe.
- Use RLHF, DPO, and related techniques for fine-tuning large language models when relevant.
- Build scalable training infrastructure for distributed RL, including efficient experience collection and replay systems.
- Optimize training stability and sample efficiency through algorithmic and engineering improvements.
- Design rigorous evaluation protocols, including out-of-distribution and adversarial test cases.
- Implement safety mechanisms such as constraint enforcement, conservative policies, and human-in-the-loop oversight.
- Collaborate with applied scientists and product teams to identify high-value RL use cases.
- Monitor deployed policies and models in production for drift, regression, and unintended behaviors, building the alerting and dashboards that surface issues before they meaningfully affect users.
- Document methodology, design decisions, and operational characteristics for internal stakeholders.
- Stay current with RL research and translate promising techniques into production-ready solutions.
Requirements
Do you have experience in Simulation systems?, Do you have a Master's degree?, * Master's or PhD in Computer Science, Machine Learning, or a related field; or equivalent applied experience.
- Six or more years of combined RL research and engineering experience.
- Strong proficiency in Python and modern deep learning frameworks.
- Hands-on experience with at least one major RL library or in-house RL stack.
- Solid understanding of probability, optimization, and the theoretical foundations of RL.
- Experience designing and tuning reward functions in non-trivial environments.
- Familiarity with simulation environments and large-scale experience collection.
- Experience training neural network policies on GPU clusters.
- Strong written and verbal communication skills.
- Track record of shipping or publishing impactful RL work.
Preferred Qualifications
- Experience with RLHF for large language models.
- Familiarity with multi-agent RL or hierarchical RL.
- Exposure to robotics, control systems, or autonomous driving.
- Publications in RL or related research venues.
- Open-source contributions to RL libraries or environments.