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Sequential Decision Analytics

Sequential Decision Analytics with Python, Java & Julia: Inventory, Markets, Finance, and Pricing

Sequential decision analytics is at the heart of modern operations research, finance, and business strategy. This course is designed to give you both the theoretical foundations and the practical skills to model, analyze, and solve complex sequential decision-making problems using Python, Java, and Julia.

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Sequential decision analytics is at the heart of modern operations research, finance, and business strategy. This course is designed to give you both the theoretical foundations and the practical skills to model, analyze, and solve complex sequential decision-making problems using Python, Java, and Julia.

We begin with the fundamentals of Markov decision processes (MDPs), stochastic dynamic programming, and reinforcement learning, building a unified framework for modeling uncertainty and adaptivity in decision problems. From there, you will apply these methods to real-world scenarios across multiple domains:

Throughout the course, you will work on hands-on projects implemented in Python, Java, and Julia, giving you exposure to multiple programming environments widely used in academia and industry. Each project is carefully designed to bridge theory with practice, ensuring that you not only understand the algorithms but can also implement them in real-world applications.

By the end of this course, you will be equipped with the tools and intuition to design intelligent decision-making systems across logistics, finance, marketing, and operations. This is a perfect course for engineers, data scientists, operations researchers, and anyone who wants to master the science of making optimal sequential decisions.

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