Senior ML Scientist (Optimization & Reinforcement Learning)
MDA Edge
Location
🇮🇳 India
Type
full_time
Salary
Undisclosed
Posted
1mo ago
Job Description
This a Full Remote job, the offer is available from: India Job Summary: We seek a Senior ML Scientist to drive innovation in AI ML-based dynamic pricing algorithms and personalized offer experiences. This role will focus on designing and implementing advanced machine learning models, including reinforcement learning techniques like Contextual Bandits, Q-learning, SARSA, and more. By leveraging algorithmic expertise in classical ML and statistical methods, you will develop solutions that optimize pricing strategies, improve customer value, and drive measurable business impact.
Qualifications
: • 8+ years in machine learning, 5+ years in reinforcement learning, recommendation systems, pricing algorithms, pattern recognition, or artificial intelligence. • Expertise in classical ML techniques (e.g., Classification, Clustering, Regression) using algorithms like XGBoost, Random Forest, SVM, and KMeans, with hands-on experience in RL methods such as Contextual Bandits, Q-learning, SARSA, and Bayesian approaches for pricing optimization. • Proficiency in handling tabular data, including sparsity, cardinality analysis, standardization, and encoding. • Proficient in Python and SQL (including Window Functions, Group By, Joins, and Partitioning). • Experience with ML frameworks and libraries such as scikit-learn, TensorFlow, and PyTorch • Knowledge of controlled experimentation techniques, including causal A/B testing and multivariate testing.
Key Responsibilities
- Algorithm Development: Conceptualize, design, and implement state-of-the-art ML models for dynamic pricing and personalized recommendations.
- Reinforcement Learning Expertise: Develop and apply RL techniques, including Contextual Bandits, Q-learning, SARSA, and concepts like Thompson Sampling and Bayesian Optimization, to solve pricing and optimization challenges.
- AI Agents for Pricing: Build AI-driven pricing agents that incorporate consumer behavior, demand elasticity, and competitive insights to optimize revenue and conversion.