Get yourself trained on Apache Spark with with this Online Training Apache Spark with Python – Learn by Doing.
Online Training Apache Spark with Python – Learn by Doing
Would you like to advance your career and learning Apache Spark will help?There’s no doubt Apache Spark is an in-demand skillset with higher pay. This course will help you get there. This course prepares you for job interviews and technical conversations. At the end of this course, you can update your resume or CV with a variety of Apache Spark experiences.Or maybe you need to learn Apache Spark quickly for a current or upcoming project?How can this course help?You will become confident and productive with Apache Spark after taking this course. You need to be confident and productive in Apache Spark to be more valuable.Now, I’m not going to pretend here. You are going to need to put in work. This course puts you in a position to focus on the work you will need to complete.This course uses Python, which is a fun, dynamic programming language perfect for both beginners and industry veterans.At the end of this course, you will have rock solid foundation to accelerate your career and growth in the exciting world of Apache Spark.Why choose this course?Let’s be honest. You can find Apache Spark learning material online for free. Using these free resources is okay for people with extra time.This course saves your time and effort. It is organized in a step-by-step approach that builds upon each previous lessons. PowerPoint presentations are minimal.The intended audience of this course is people who need to learn Spark in a focused, organized fashion. If you want a more academic approach to learning Spark with over 4-5 hours of lectures covering the same material as found here, there are other courses on Udemy which may be better for you.This Apache Spark with Python course emphasizes running source code examples.All source code examples are available for download, so you can execute, experiment and customize for your environment after or during the course.This Apache Spark with Python course covers over 50 hands-on examples. We run them locally first and then deploy them on cloud computing services such as Amazon EC2.The following will be covered and more:What makes Spark a power tool of Big Data and Data Science?Learn the fundamentals of Spark including Resilient Distributed Datasets, Spark Actions and TransformationsRun Spark in a Cluster in your local environment and Amazon EC2Deploy Python applications to a Spark ClusterExplore Spark SQL with CSV, JSON and mySQL (JDBC) data sourcesConvenient links to download all source codeReinforce your understanding through multiple quizzes and lecture recap
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As a society, we spend hundreds of billions of dollars measuring the return on our financial assets. Yet, at the same time, we still haven’t found convincing ways of measuring the return on our investments in developing people.
And I get it: If my bank account pays me 1% a year, I can measure it to the penny. We’ve been collectively trained to expect neat and precise ROI calculations on everything, so when it’s applied to something as seemingly squishy as how effectively people are learning in the workplace, the natural inclination is to throw up our hands and say it can’t be done. But we need to figure this out. In a world where skills beat capital, the winners and losers of the next 30 years will be determined by their ability to attract and develop great talent.
Fortunately, corporate learning & development (L&D), like most business functions, is evolving quickly. We can embrace some level of ambiguity and have rigor when measuring the ROI of learning. It just might look a little different than an M.B.A. would expect to see in an Excel model.