Education Lanes Offers First And Exclusive Course On Big Data And Data Analytics By UC Riverside

Tackling the challenges of Big Data and Data Analytics with 6 months certification course by UC Riverside and Fore School of Management, conducted on Education Lanes

Education Lanes in an exclusive partnership with UC Riverside and Fore School of Management is providing live, interactive, and certified course on Big Data & Data Analytics.

The 6 Months online course, aimed at technical professionals and executives, will tackle state-of-the-art topics in big data ranging from data collection, storage and processing to analytics and visualization, as well as address a range of real world applications.

The course offered through Education Lanes (An initiative by Mahindra Group), provides professional education and training for science, engineering and technology professionals worldwide. This course is project oriented to all disciplines such as oil and gas, marketing and sales, sports, molecular biology, drug-designing, waste management, finance to name a few sectors.

Program Description and Objectives:

  • In Marketing and Sales, Big Data is fast emerging as a potent tool to gain deeper insights into Customer behavior and thereby act as a strong driver in spurring innovation.
  • In manufacturing, operations managers are employing advanced analytics on historical process data to identify patterns and relationships among discrete process steps and inputs, and then optimize the factors that prove to have the greatest effect on yield.
  • Broadly, the course has two parts: one the analytics part and second the technological part. The analytics part is about learning machine learning algorithms and implementing them, the technological part is about learning to work in hadoop ecosystem including NoSQL databases. At the end of this course, given a large dataset from any domain, a participant should:
  1. Be able to clean and transform/process the dataset to make it ready for analysis
  2. Be able to select a subset of appropriate machine learning algorithms that could be applied to get the desired predictive results
  3. Gain sufficient proficiency in tools necessary to implement algorithms
  4. Finally, put to use the tools and techniques to get a reasonable predictive accuracy

This course is project oriented: All tools and data, including hadoop-ecosystem, necessary for learning data-analytics are provided to the participants in advance.

 

Fee structure

The course fee for the programme is Rs 55,000/- + Applicable Tax, Rs. 5000/- Book and Material (Mandatory Fees)

Course Launch Schedule:

  1. Last Date of Admission Fees – 20th February 2017
  2. Technical and Academic Orientation – 25th February 2017
  3. Online Class start date – 26th February 2017

Immediate registration is available at http://www.educationlanes.com/index.php/certificate_in_bigdata_and_data_analytics

The course can be taken by individuals across all industries or by large groups of employees from the same organization.

For general questions, please email info@educationlanes.com

About Education Lanes

Education Lanes is Tech Mahindra Growth Factories’ initiative that offers certificate programmes from premier institutes on a virtual platform. Education Lanes offers a comprehensive direct-to-device education suite with real-time interactive and participative virtual classroom sessions.

Education Lanes provide unique mix of technology enabled delivery and face to face classroom sessions from best experienced faculty and premier Institutes.

We are also offering platform solution (Knowledge Management System) for corporates other than designing and delivering customized programmes

Contact Us:

Tech Mahindra Growth Factories Ltd

248, Okhla Industrial Area, Phase III

New Delhi – 110020, Ph: +91 8377831825

Email: info@educationlanes.com

Facebook: https://www.facebook.com/educationlanes

Twitter: https://twitter.com/EducationLanes

Linkedin: https://www.linkedin.com/company/education-lanes

Leave a Reply

Your email address will not be published. Required fields are marked *