Overview
Picture this: You’re a data scientist working for a non-profit organization responding to a natural disaster. You’ve been tasked with analyzing data from multiple sources—satellite imagery, social media posts, and relief agency reports—to identify the most affected areas and allocate resources efficiently. The problem? The data is massive, unstructured, and needs to be processed in real-time. So, with the help of Generative AI, you automate the analysis, summarize critical insights, and create actionable visualizations in hours—saving precious time and ensuring aid reaches those in need faster. This short course was created to help you tackle challenges like these. You’ll learn how to use Generative AI to streamline exploratory data analysis (EDA), automate repetitive processes, and extract meaningful insights efficiently. Whether you’re managing data during a crisis or optimizing daily workflows, this course equips you with practical tools to work smarter, not harder. By completing this course, you’ll gain the skills to immediately apply Generative AI to your data workflows. Automate time-intensive tasks, critically evaluate AI-generated outputs for accuracy, and implement strategies from real-world case studies to make impactful decisions. By the end of this 3-hour course, you will be able to: - Recognize the key capabilities of Generative AI in improving and automating exploratory data analysis (EDA) workflows. - Apply Generative AI tools to automate repetitive tasks in EDA, such as summarizing datasets or generating descriptive statistics. - Analyze outputs generated by Generative AI for accuracy and relevance to ensure ethical and unbiased use in EDA. - Evaluate case studies of Generative AI applications to identify strategies for integrating AI into real-world exploratory data analysis tasks EDA. This course is unique because it integrates practical examples from diverse fields, from disaster response to e-commerce, to illustrate the power of Generative AI. With hands-on practice and a focus on ethical AI use, you’ll not only master the tools but also gain the confidence to apply them responsibly. To be successful in this course, you should have: - A foundational understanding of data analysis concepts. - Familiarity with programming tools like Python. - Some experience with AI platforms such as GitHub Copilot or OpenAI will be helpful but it is not mandatory. This course uses a combination of assessments, including practice quizzes in every lesson to reinforce key takeaways, a hands-on activity using an AI tool to process and analyze a sample dataset, and a final graded assessment to evaluate your understanding of all course concepts. To get the most out of this course, approach it with curiosity and a willingness to experiment. Engage deeply with the lessons, complete the activities, and apply the techniques to your own projects. By the end, you’ll have the skills and confidence to transform how you approach exploratory data analysis!
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