AI Research Engineer – Reinforcement Learning

Job Title: AI Research Engineer – Reinforcement Learning

Location: Bengaluru, Karnataka, India

Job Type: Full Time


Spring BootAI Research Engineer – Reinforcement Learning

Job Overview:

We are seeking a highly motivated AI Research Engineer specializing in Reinforcement Learning (RL) to develop and deploy learning-based control systems for machines, robotics, and autonomous processes in manufacturing. This role involves applying RL algorithms to optimize complex decision-making problems, robotic automation, and predictive control.

Key Responsibilities:

 

• Develop RL-based models for industrial robotics, autonomous systems, and smart manufacturing.

• Implement model-free and model-based RL algorithms for real-time applications.

• Optimize control policies using deep reinforcement learning (DQN, PPO, SAC, TD3, etc.).

• Integrate RL with simulated environments (e.g., MuJoCo, PyBullet, Isaac Gym) and real-world deployment.

• Work on multi-agent RL, imitation learning, and curriculum learning for robotic applications.

• Collaborate with cross-functional teams (hardware, software, and automation engineers) to deploy AI-driven robotics in production environments.

• Develop scalable RL frameworks, leveraging cloud, edge computing, and digital twin technologies.

• Contribute to research and innovation in intelligent control, adaptive learning, and human-AI collaboration.

Qualifications & Experience:

 

Master’s or Ph.D. in Computer Science, Robotics, AI, or a related field.

Over 1 year of experience in RL research, AI-driven control systems, or robotics.

Strong background in deep reinforcement learning (DQN, PPO, SAC, A3C, etc.).

Proficiency in Python, TensorFlow/PyTorch, Gym, Stable-Baselines3, or RLlib.

Experience in robotic simulation environments (MuJoCo, PyBullet, Isaac Gym).

Familiarity with digital twins, real-time control systems, and industrial automation.

Hands-on experience in deploying RL models in real-world machines or robotics.

Bonus Skills:

 

➕ Experience in hardware-in-the-loop (HIL) testing for AI-driven control.

➕ Knowledge of MLOps for RL (model monitoring, retraining, deployment automation).

➕ Strong mathematical foundation in optimal control, Bayesian RL, and multi-agent learning.

➕ Experience working with edge computing for AI in robotics and IoT applications.

 

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How to Apply:

Please submit your resume and cover letter through Submit Resume to apply for this position.

 

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