This project focuses on comparing different Reinforcement Learning Algorithms, including monte-carlo, q-learning, lambda q-learning epsilon-greedy variations, etc.
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Updated
Feb 15, 2022 - Python
This project focuses on comparing different Reinforcement Learning Algorithms, including monte-carlo, q-learning, lambda q-learning epsilon-greedy variations, etc.
Autonomously optimizes B2C notifications through intelligent segmentation (MECE + behavioral scoring), LLM-powered content generation (Hinglish templates via Groq), and adaptive timing optimization. Uses Thompson Sampling to learn from every iteration with full causal audit trails—no mock learning, real measurable delta.
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