Data Science
117 TopicsIntroduction to the Data Science Process
We are excited to collaborate with Club for the Future and introduce your students to the data science process. In this free and interactive Excel based curriculum, students use data and a step-by-step data science process to simulate the decision-making process that data scientists in a command center use to give a Go/No-Go signal for a rocket launch.41KViews3likes4CommentsAI-900: Microsoft Azure AI Fundamentals Study Guide
This comprehensive study guide provides a thorough overview of the topics covered in the Microsoft Azure AI Fundamentals (AI-900) exam, including Artificial Intelligence workloads, fundamental principles of machine learning, computer vision and natural language processing workloads. Learn about the exam's intended audience, how to earn the certification, and the skills measured as of April 2022. Discover the important considerations for responsible AI, the capabilities of Azure Machine Learning Studio and more. Get ready to demonstrate your knowledge of AI and ML concepts and related Microsoft Azure services with this helpful study guide.38KViews11likes3CommentsBring Vision to Life with Three Horizons, Data Mesh, Data Lakehouse, and Azure Cloud Scale Analytics
Bring Vision to Life with Three Horizons, Data Mesh, Data Lakehouse, and Azure Cloud Scale Analytics – Plus some bonus concepts! I have not posted in a while so this post is loaded with ideas and concepts to think about. I hope you enjoy it! The structure of the post is a chronological perspective of 4 recent events in my life: 1) Camping on the Olympic Peninsula in WA state, 2) Installation of new windows and external doors in my residential house, 3) Injuring my back (includes a metaphor for how things change over time), and 4) Camping at Kayak Point in Stanwood WA (where I finished writing this). Along with these series of events bookended by Camping trips, I also wanted to mention May 1 st which was International Workers Day (celebrated as Labor Day in September in the US and Canada). To reach the vision of digital transformation through cloud scale analytics we need many more workers (Architects, Developers, DBAs, Data Engineers, Data Scientists, Data Analysts, Data Consumers) and the support of many managers and leaders. Leadership is required so analytical systems can become more distributed and properly staffed to scale vs the centralized and small specialist teams that do not scale. Analytics could be a catalyst for employment with the accelerated building and operating of analytical systems. There is evidence that the structure of the teams working on these analytical systems will need to be more distributed to scale to the level of growth required. When focusing on data management, Data Mesh strives to be more distributed, and Data Lakehouse supports distributed architectures better than the analytical systems of the past. I am optimistic that cloud-based analytical systems supported by these distributed concepts can scale and progress to meet the data management, data engineering, data science, data analysis, and data consumer needs and requirements of many organizations.22KViews6likes1CommentIntroducing Data Science for Beginners
Our team of Azure Cloud Advocates, Program Managers, and Student Ambassadors are pleased to bring a new addition to the For Beginners Curriculum series: Data Science for Beginners. Data Science for Beginners is a free, MIT-licensed open-source curriculum of 20 lessons that focus on the foundations of Data Science and requires no prior knowledge to get started.14KViews6likes2CommentsA Data Science Process, Documentation, and Project Template You Can Use in Your Solutions
In most of the Data Science and AI articles, blogs and papers I read, the focus is on a particular algorithm or math angle to solving a puzzle. And that's awesome - we need LOTS of those. However, even if you figure those out, you have to use them somewhere. You have to run that on some sort of cloud or local system, you have to describe what you're doing, you have to distribute an app, import some data, check a security angle here and there, communicate with a team....you know, DevOps. In this article, I'll show you a complete process, procedures, and free resources to manage your Data Science project from beginning to end.12KViews0likes1Comment