Certificate in Advanced Big Data and Data Analytics (CABDDA) Meirc Plus Speciality Training

Certificate in Advanced Big Data and Data Analytics (CABDDA)

Why Attend

Big data is a change agent that challenges the ways in which organizational leaders have traditionally made decisions. This course provides participants with the confidence to store, process, analyze and present big data use cases within their organizations. This course provides a multitude of hands-on labs with Spark, a key big data technology used to solve data intensive problems. Participants will gain the knowledge and skills they need to assemble and manage a large-scale big data analytics project. Lastly, participants will work through advanced machine learning and deep learning use cases.

This is our most advanced course in our big data series following Certified Big Data and Data Analytics Practitioner (CBDDAP) and Certificate in Big Data Fundamentals (CBDF). Participants will aim to identify areas within their organization that can be improved through big data use cases, and work on an individual chosen data project during the course. By the end of the course, participants will be able to work through multiple methods and practical approaches to leverage Spark for advanced big data analytics.

Meirc Plus Speciality Training
Quick Enquiry Call Me Back
Overview
Course Methodology

This course will be highly technical with group discussions, hands-on practical exercises, and group activities being the core focus.

Course Objectives

By the end of the course, participants will be able to:

  • Understand key big data technologies, including a deep dive into Apache Spark
  • Describe the main challenges and advantages of Hadoop map-reduce
  • Demonstrate and discuss key technologies for big data storage and compute, such as PostgreSQL and object storage
  • Discuss popular machine learning algorithms, deep learning techniques and the importance of ethics in data analytics and artificial intelligence
  • Deliver a presentation demonstrating the analytics lifecycle and Spark
Target Audience

This is an advanced level course.  It is expected that participants either have a number of years of experience utilizing big data, or have previously attended the Certified Big Data and Data Analytics Practitioner (CBDDAP) course.  This course is ideal for data engineers, AI engineers and data scientists.  Recommended pre-knowledge includes some python programming experience and data visualization practice.  

Target Competencies
  • Big data utilization
  • Big data analytics structures and technologies
  • Ethics and integrity for big data and AI development
  • Big data storage
  • Apache Spark best practices
Course Outline
  • Big Data Analytics Use Cases
    • How can big data projects meet organizational needs
    • Big data examples:
      • Netflix
      • LinkedIn
      • Facebook
      • Google
      • Orbitz
      • Dell
      • Others
    • Best practices in project design
    • Assessing the current state of your organization
    • Choosing datasets for course projects
  • Storing Big Data
    • Big data architectures and paradigms
      • The Hadoop Ecosystem
        • Overview of Hadoop
        • Hadoop Distributed File System (HDFS)
      • Massively parallel processing (MPP) versus distributed in-memory applications
      • RDBMSs vs NoSQL DBs
        • PostgreSQL
        • MongoDB
        • Cassandra
      • Streaming data
    • Data-warehousing versus Data Mart
    • Intro to Apache Spark
    • Big data SQL hands-on-labs
  • Computing Big Data
    • How to access big data
      • Role of cloud computing
      • Data movement risk
      • Networking and co-location
      • Apache Spark lab
    • Big data extract, transform, load (ETL) big data compute technologies
      • Distributed compute
      • High performance clusters vs Apache Spark
      • Streaming: Storm, Spark structured streaming
    • Apache Spark ETL labs
    • Apache Spark data engineering
  • Big Data Advanced Analytics and AI
    • Analytics Lifecycle
    • Apache Spark vs Pandas
    • Big data machine learning & deep learning in Spark
    • Importance of ethics in AI
    • Automl & Hyperparameter tuning
  • Course Big Data Projects
    • Identify analytical opportunities in an organization
      • Define and assess the problem
      • Describe the impact and use of data to address the problem
      • Identify potential data sources
      • Design a data analytics project
    • Access, explore, analyze and visualize chosen dataset for project
    • Present project insights in course
MPC
MPC Certifications
Meirc Professional Certificate (MPC)

MPC certified courses by Meirc Training & Consulting are designed for those willing to challenge themselves and go the extra distance. Participants who fully attend an MPC course and successfully complete the test on the last day, will receive a Meirc Professional Certificate (MPC), in addition to the one they receive for full attendance. MPC certificates are regionally recognized and can be quite valuable when applying for more senior roles within the organization or outside.

List of Certified Courses
Schedule & Fees
Course Contact
Contact me if you have any questions.
I speak English & Arabic!