Courses: Big Data Certification
Big Data Certification Categories
What is Big Data?
All around us, people are generating Big Data. Every message on your phone, every email you write and every post that you like. All that combined is labelled as Big Data and contains a wealth of information. How organisations can reap the benefits of Big Data is the subject of Big Data science. The programs below discuss how structure and unstructured data can be combined to provide valuable information for organisations. Big Data leads to new insights, better decisions and a long-term competitive advantage.
Pink Elephant provides the Big Data courses based on the content of the Big Data Science School. A collection of courses establishes a set of vendor-neutral industry certifications with different areas of specialisation. Founded by best-selling author Thomas Erl, this curriculum enables IT professionals to develop real-world Big Data science proficiency. Because of the vendor-neutral focus of the course materials, the skills acquired by attaining certifications are applicable to any vendor or open-source platform
Why should my organisation use Big Data?
Companies that make data-driven decisions outperform competitors who make decisions based on personal insights. Over the last ten years, data-driven companies have grown tremendously. People with the knowledge and skills to analyze data and build data models, are highly sought after by almost every organisation. With the Big Data courses, you can skill yourself to stay ahead of the market and become a leader in Big Data.
|Big Data Certification|
|Certified Big Data Science Professional||3 Days||$2,995.00||25 Oct|
|Certified Big Data Scientist||5 Days||$3,995.00||Register interest|
TIH Service Catalogue 2017
August 17, 2017
The ‘How’ Of ITIL
July 18, 2017
Critical Success Factors for DevOps
June 1, 2017
How DevOps Can Redefine Your IT Strategy
June 20, 2017
What Is Big Data?
June 13, 2017
Who should do ITIL Certification
June 6, 2017
How ITIL Certification helps in your career
May 31, 2017
DevOps and Legacy Systems
November 30, 2016