CDO and Data Quality Accelerator:Strategy to Implementation

Masterclass:Data Quality,Data Governance,Chief Data Office,Digital Transformation,Data Strategy,Metadata,Data Profiling

CDO and Data Quality Accelerator:Strategy to Implementation
CDO and Data Quality Accelerator:Strategy to Implementation

CDO and Data Quality Accelerator:Strategy to Implementation udemy course

Masterclass:Data Quality,Data Governance,Chief Data Office,Digital Transformation,Data Strategy,Metadata,Data Profiling

In light of the accelerating AI revolution across industries in the past years, it has never been more relevant than it is now that you should improve your digital literacy and upskill yourself with data analytics skillsets. [updated in 2024]

This course features the latest addition of an organisation structure - Chief Data Office which enables an organisation to become data and insights driven, no matter it's in a centralised, hybrid or de-centralised format. You'll be able to understand how each of the Chief Data Office function works and roles and responsibilities underpinned each pillar which covers the key digital concepts you need to know. There is a focus on the end-to-end data quality management lifecycle and best practices in this course which are critical to achieving the vision set out in the data strategy and laying the foundations for advanced analytics use cases such as Artificial Intelligence, Machine Learning, Blockchain, Robotic Automation etc. You will also be able to check your understanding about the key concepts in the exercises and there are rich reading materials for you to better assimilate these concepts.

At the end of the course, you'll be able to grasp an all-round understanding about below concepts:

  • Digital Transformation

  • Chief Data Officer

  • Chief Data Office

  • Centralised Chief Data Office Organisation Structure

  • Data Strategy

  • Data Monetisation

  • Data Governance

  • Data Stewardship

  • Data Quality

  • Data Architecture

  • Data Lifecycle Management

  • Operations Intelligence

  • Advanced Analytics and Data Science

  • Data Quality Objectives

  • 6 Data Quality Dimensions and Examples

  • Roles and Responsibilities of Data Owners and Data Stewards (Data Governance)

  • Data Quality Management Principles

  • Data Quality Management Process Cycle

  • Data Domain

  • ISO 8000

  • Data Profiling

  • Data Profiling Technologies (Informatica, Oracle, SAP and IBM)

  • Metadata

  • Differences Between Technical and Business Metadata

  • Business Validation Rules

  • Data Quality Scorecard (with Informatica example)

  • Tolerance Level

  • Root Cause Analysis

  • Data Cleansing

  • Data Quality Issue Management (with a downloadable issue management log template)

After you complete this course, you will receive a certificate of completion.

So how does this sound to you? I look forward to welcoming you in my course.

Cheers,

Bing