Home Saudi Arabia Reinforcement Learning Expert Office: Saudi Arabia | United Kingdom Remote: Germany

Home Saudi Arabia Reinforcement Learning Expert Office: Saudi Arabia | United Kingdom Remote: Germany

Reinforcement Learning Expert Office: Saudi Arabia | United Kingdom Remote: Germany

Full time at a Laimoon Verified Company in Saudi Arabia
Posted on December 25, 2024

Job details

Fathom.io a pioneering AI/DataOps company, marking our footprint on the global stage with a presence in Saudi Arabia, Poland, and Norway. As a pre-Series A startup, we are proudly backed by one of the world's leading corporations, underscoring our potential and the innovative spirit driving our mission. Our platform is engineered to address complex business challenges through cutting-edge AI solutions, with a particular emphasis on computer vision technologies. Our ambition is to launch a product that will revolutionize the industry by leveraging advanced computer vision capabilities.We are seeking a highly skilled and independent Reinforcement Learning Engineers with a robust background in technology, especially in AI, DataOps, and most importantly, computer vision. This role demands a creative individual capable of developing innovative computer vision models and algorithms from scratch, adept at applying complex technical concepts to real-world problems.What you'll be doingDevelop and Implement RL Algorithms: Design, develop, and implement advanced reinforcement learning algorithms, including both model-based and model-free approaches such as Q-learning, Deep Q-Networks (DQN), Policy Gradient methods, and Actor-Critic methods.Data Management: Manage and preprocess large datasets to support the training and validation of RL models. Ensure the quality and integrity of data used in RL projects.Model Training and Evaluation: Train, test, and fine-tune RL models using state-of-the-art techniques. Evaluate model performance using appropriate metrics and iterate to improve results.Simulation and Environment Design: Create and maintain simulated environments and scenarios to train RL models effectively. Work with cross-functional teams to integrate RL solutions into real-world applications.Optimization and Deployment: Optimize RL models for performance and scalability. Deploy RL solutions in production environments, ensuring robustness and reliability.Collaboration: Work closely with data scientists, engineers, and domain experts to align RL projects with business needs. Communicate technical concepts to non-technical stakeholders and provide insights on the impact of RL solutions.What We Offer:Competitive salary and benefits package.A dynamic and challenging work environment.Opportunities for professional growth and development.The chance to be part of a supportive and motivated team, dedicated to making a difference.What you'll needEducation: Bachelor's degree in Computer Science, Machine Learning, Artificial Intelligence, or a related field. A Master's or Ph.D. with a focus on machine learning or AI is preferred.Experience:Minimum of 4 years of experience in developing and deploying reinforcement learning algorithms. Proven experience with both model-based and model-free RL techniques is essential.Proficiency in programming languages such as Python.Familiarity with machine learning frameworks and libraries (e.g., TensorFlow, PyTorch, Keras).Experience with RL-specific tools and libraries (e.g., OpenAI Gym, Stable Baselines, RLLib).Strong understanding of RL concepts such as reward functions, exploration-exploitation trade-offs, and policy optimization.Nice to haveOutstanding communication and interpersonal skills.Knowledge of applicable laws, codes, and regulations.We're excited about the future and look forward to potentially having you on our team. Apply today to join our journey of growth and innovation!

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