Machine Learning Rock Star – the End-to-End Practice 专项课程
An End-to-End Guide to Leading and Launching ML. This expansive machine learning curriculum is accessible to business-level learners and yet vital to techies as well. It covers both the state-of-the-art techniques and the business-side best practices.
Problem-solving challenges: Form an elevator pitch, build a predictive model by hand in Excel or Google Sheets to visualize how it improves, and more (no exercises involve the use of ML software).
This specialization includes several illuminating software demos of ML in action using SAS products. However, the curriculum is vendor-neutral and universally-applicable. The learnings apply, regardless of which ML software you end up choosing to work with.
In-Depth Yet Accessible
Brought to you by a veteran industry leader who won teaching awards when he was a professor at Columbia University, this specialization stands out as one of the most thorough, engaging, and surprisingly accessible on the subject of ML.
Like a University Course
These three courses are also a good fit for college students, or for those planning for or currently enrolled in an MBA program. The breadth and depth of this specialization is equivalent to one full-semester MBA or graduate-level course.
此课程是 100% 在线学习吗？是否需要现场参加课程？
Is this specialization for data scientists or is it for non-technical, business-level learners?
How technical is this specialization and how much math is involved?
Are the learnings specific to SAS software?
Is this specialization for industry professionals or for university students?
Do I need to take the courses in a specific order?
AI ethics: Is equitable machine learning possible or will predictive models always perpetuate social injustice?