Discover how to tackle complex challenges with Simulation for Digital Transformation. Learn to use Python and SimPy to model, analyze, and optimize systems, empowering you to make data-driven decisions and lead impactful digital transformation initiatives with Dartmouth Thayer School of Engineering faculty Vikrant Vaze and Reed Harder.

推荐体验
推荐体验
中级
Basic knowledge of Python
Completion of Dartmouth's 2-week Introduction to Digital Transformation course
推荐体验
推荐体验
中级
Basic knowledge of Python
Completion of Dartmouth's 2-week Introduction to Digital Transformation course
您将获得的技能
- Systems Thinking
- Verification And Validation
- Data Integration
- Complex Problem Solving
- Process Optimization
- Digital Transformation
- Risk Management
- Simulation and Simulation Software
- Event-Driven Programming
- Performance Analysis
- Data-Driven Decision-Making
- Operations Research
- Predictive Analytics
- Probability & Statistics
您将学习的工具
要了解的详细信息

添加到您的领英档案
13 项作业
了解顶级公司的员工如何掌握热门技能

积累特定领域的专业知识
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- 获得可共享的职业证书

该课程共有7个模块
涵盖的内容
2个视频8篇阅读材料1个作业3个非评分实验室
2个视频•总计9分钟
- Course Welcome•3分钟
- Introduction to Using Notebooks•6分钟
8篇阅读材料•总计80分钟
- Course Overview•10分钟
- Who Is Teaching the Course?•10分钟
- Course Goals•10分钟
- Note on Course Order •10分钟
- Assessment and Certificate Completion•10分钟
- Readings and Resources•10分钟
- Navigating Coursera & Finding Help•10分钟
- Preparing for Non-Cognitive and Soft Infrastructure Skills Activities•10分钟
1个作业•总计30分钟
- Getting Started•30分钟
3个非评分实验室•总计180分钟
- Introduction to Using Notebooks•60分钟
- Python Pre-Work Notebook •60分钟
- Loading and Plotting Data in Python•60分钟
Uncertainty is an inherent challenge in digital transformation, where organizations often face unpredictable changes in technology, customer behavior, and market dynamics. Whether deciding on resource allocation, optimizing processes, or assessing risks, handling uncertainty effectively is crucial to success. Probability theory provides a structured way to model this uncertainty, empowering managers to make data-driven decisions and embrace digital transformation with confidence. In this unit, we focus on the role of probability in quantifying and understanding uncertainty. By applying these mathematical principles, learners will develop the skills to predict outcomes, assess risks, and design more informed strategies. From anticipating market shifts to evaluating system performance, probability theory is a foundational tool in navigating the complexities of digital transformation.
涵盖的内容
3个视频5篇阅读材料2个作业3个非评分实验室
3个视频•总计24分钟
- Probability Basics•8分钟
- Discrete Random Variables•8分钟
- Continuous Random Variables•9分钟
5篇阅读材料•总计50分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
- Probability Basics•10分钟
- Discrete Random Variables•10分钟
- Continuous Random Variables•10分钟
2个作业•总计90分钟
- Unit Knowledge Check: Handling Uncertainty•30分钟
- Professional Development: Making Ethical Choices in Data-Driven Roles•60分钟
3个非评分实验室•总计180分钟
- Probability Basics•60分钟
- Discrete Random Variables•60分钟
- Continuous Random Variables•60分钟
At this point in the course, you are able to use analytics to predict future outcomes based on historical data. Now, we will learn how to create a more sophisticated, expansive picture of possible outcomes through the use of simulation. By modeling complicated, interconnected processes, simulation techniques can bridge the gap between predictive and prescriptive analytics: not only can we generate outcomes of various actions, but we are also able to identify which action best solves the problem at hand. Specifically, we will explore discrete event simulation which allows us to incorporate many more variables—to ask many more “what if” questions such as: “What would happen if we made this price adjustment?” or “What would happen if we reduced the time spent on manufacturing that part?” By finding answers to such questions, we can generate more focused information to drive better decision-making and more effectively manage risk.
涵盖的内容
2个视频4篇阅读材料2个作业2个非评分实验室
2个视频•总计15分钟
- What Is Discrete Event Simulation•9分钟
- Generating Random Numbers•7分钟
4篇阅读材料•总计40分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
- What Is Discrete Event Simulation•10分钟
- Generating Random Numbers•10分钟
2个作业•总计60分钟
- Knowledge Check: Discrete Event Simulation•30分钟
- Professional Development: Using Design Thinking for Problem-Solving•30分钟
2个非评分实验室•总计120分钟
- What Is Discrete Event Simulation•60分钟
- Generating Random Numbers•60分钟
By generating random variables from desired distributions, decision-makers can predict outcomes, optimize processes, and evaluate scenarios with precision. Whether it’s forecasting customer behavior or optimizing operational workflows, the ability to simulate random variables forms the foundation of effective predictive and prescriptive analytics. For example, e-commerce platforms use these techniques to simulate purchase behaviors based on historical customer data, while logistics companies rely on them to optimize delivery routes by accounting for variable factors such as traffic and weather. This unit, we will focus on two essential approaches: the inversion method and the rejection method, each with unique strengths suited for different types of distributions.
涵盖的内容
2个视频4篇阅读材料2个作业3个非评分实验室
2个视频•总计15分钟
- Inversion Method•7分钟
- Rejection Method•7分钟
4篇阅读材料•总计40分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
- Inversion Method•10分钟
- Rejection Method•10分钟
2个作业•总计90分钟
- Knowledge Check: Simulating Random Variables with Desired Distributions•30分钟
- Professional Development: Strengthening Empathy for Better Collaboration•60分钟
3个非评分实验室•总计180分钟
- Inversion Method•60分钟
- Rejection Method•60分钟
- End of Module Case Study: Inversion and Rejection Methods•60分钟
Discrete event simulation is a critical tool in digital transformation, enabling organizations to analyze complex systems, manage uncertainty, and make data-driven decisions. This unit builds on foundational knowledge by applying discrete event simulation to real-world scenarios, allowing students to develop complete end-to-end models. These case studies illustrate how simulation can address operational challenges in various industries, from improving customer experience in retail to optimizing manufacturing processes. Students will use Python to implement simulations, applying techniques such as the inversion and rejection methods for generating random variables. By exploring steady-state and non-steady-state systems, students will learn to model customer behavior, optimize operational workflows, and evaluate system performance under uncertainty. These skills are essential for leveraging digital transformation technologies to inform managerial decisions.
涵盖的内容
2个视频4篇阅读材料2个作业2个非评分实验室
2个视频•总计17分钟
- Coffee Shop Case Study•9分钟
- Repair Facility Case Study•8分钟
4篇阅读材料•总计40分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
- Coffee Shop Case Study•10分钟
- Repair Facility Case Study•10分钟
2个作业•总计60分钟
- Knowledge Check•30分钟
- Professional Development: Building Emotional Resilience in Feedback-Heavy Roles•30分钟
2个非评分实验室•总计120分钟
- Coffee Shop Case Study•60分钟
- Repair Facility Case Study•60分钟
Unit 6 brings together all the concepts and techniques learned throughout the course, providing students with the opportunity to develop and analyze complete simulations. The focus is twofold: building trustworthy simulations and exploring the role of simulation in prescriptive analytics. Trustworthy simulations are essential for ensuring that the insights derived from models are accurate, reliable, and actionable. In the context of prescriptive analytics, simulations extend beyond predicting outcomes to recommend actions that optimize decision-making, particularly in complex systems undergoing digital transformation. Note: (if you haven’t taken the Prescriptive Analytics course in this program) Prescriptive analytics uses data, models, and simulations to suggest the best course of action in scenarios with multiple possible outcomes. For example, it can help optimize resource allocation, improve supply chain efficiency, or design customer experiences by running simulations of different strategies and identifying the one that delivers the best results. In this unit, students will use simulation to answer "what-if" and "what-should" questions, equipping them to design solutions that balance trade-offs and achieve organizational goals.
涵盖的内容
2个视频2篇阅读材料2个作业3个非评分实验室
2个视频•总计12分钟
- Building Trustworthy Simulations•7分钟
- Simulation for Prescriptive Analytics•5分钟
2篇阅读材料•总计20分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
2个作业•总计90分钟
- Knowledge Check•30分钟
- Professional Development: Effective Prioritization of Workloads•60分钟
3个非评分实验室•总计180分钟
- Building Trustworthy Simulations•60分钟
- Simulation for Prescriptive Analytics•60分钟
- Case Study: Inventory Simulation•60分钟
The final unit of this course is a practicum that serves as a mini-capstone project, allowing you to consolidate your learning and demonstrate mastery of the tools and techniques introduced throughout the course. This project is your opportunity to apply simulation, cloud-based tools, and data science methodologies to a practical business problem, providing actionable insights that align with digital transformation initiatives.
涵盖的内容
3篇阅读材料2个作业1个非评分实验室
3篇阅读材料•总计30分钟
- Unit Introduction•10分钟
- Activities This Unit•10分钟
- Next Steps•10分钟
2个作业•总计90分钟
- Exit Ticket•30分钟
- Professional Development: Practicing Social Responsibility in a Digital World•60分钟
1个非评分实验室•总计60分钟
- Case Study: Simulating a Radiology Clinic•60分钟
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Founded in 1769, Dartmouth is a member of the Ivy League and consistently ranks among the world’s greatest academic institutions. Dartmouth has forged a singular identity for combining its deep commitment to outstanding undergraduate liberal arts and graduate education with distinguished research and scholarship in the Arts and Sciences and its four leading graduate schools—the Geisel School of Medicine, the Guarini School of Graduate and Advanced Studies, Thayer School of Engineering, and the Tuck School of Business.
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