SAP MDG Training

  • 5 - 6 weeks
  • 45 Hours
  • 3400+ Student Enrolled
4.7

img

Live Instructor Online Training

Learn From SAP Experts
  • Certified SAP Experts for more than 10+ years.
SAP MDG Online Training

Have Queries? Ask our Experts

+91 9922848898

Course Overview

A vital part of SAP's ecosystem, SAP MDG is designed to ensure data compliance, accuracy, and consistency. Everything you need to know about this module, from its foundations to its sophisticated features, is covered in our SAP MDG certification training. With the help of this structured and user-friendly SAP MDG online training, you can grow into an expert in every aspect of data management. You may learn at your own pace and without being limited by geography with our SAP MDG training.

Gaining expertise in the SAP MDG module confers a tactical benefit by ensuring data integrity and quality within an organization. Our certification programs are designed to prepare you for the challenges of data management, and we provide competitive SAP MDG course fees to make your journey accessible.

What is MDG?

SAP Master Data Governance (MDG) is a master data management solution that provides out-of-the-box domain-specific master data governance that allows you to centrally produce, modify, distribute, or combine master data across your whole corporate system environment.

SAP MDG act as "Single Source of Truth" for Master Data which provides centralized governance to keep one version of data flowing across the enterprise.

In Technical terms: Master Data Governance (MDG) is a strategic process and a set of tools that ensure the consistent, accurate and reliable management of an organization's critical data. Master data is vital information shared between various corporate divisions and systems about clients, goods, suppliers, personnel and other important entities. Master data is created, validated, modified and archived throughout its lifecycle and data governance policies, rules and standards are defined as part of MDG. This governance system intends to promote data-driven decision-making, enforce data compliance with laws and industry standards and boost data quality. In terms of technology, MDG depends on a combination of data models, data profiling, data quality tools and data integration mechanisms to make it easier to align master data across diverse systems and applications. It applies the principles of data stewardship and data ownership allocating duties for data maintenance and purification to specific individuals or organizations.

MDG systems often include a central database for managing and governing master data. Data workflows and approval processes are used in these solutions to verify that data modifications follow predetermined rules and laws. To discover and eliminate duplicate or incorrect entries advanced matching and regrouping methods are used.

Features Of SAP MDG
sap MDG

1.Consistency: Master Data and Custom Objects (NWBC): In SAP MDG, the focus is not only on managing standard master data entities like customers, vendors and products but also on handling custom objects specific to your organization's needs. This ensures that even data related to unique business processes or objects can be managed in a consistent manner. The NWBC (NetWeaver Business Client) provides a user-friendly interface for working with custom objects making it easier for users to maintain and view data consistently across various custom entities.

2.Integration: SAP MDG is designed to seamlessly integrate with both SAP and non-SAP systems within your landscape. This integration capability ensures that master data is synchronized across different applications, avoiding data barriers and inconsistencies. Whether you are using multiple SAP systems or have external applications in your landscape, SAP MDG facilitates smooth data exchange, promoting a unified and balanced data environment.

3.Flexibility and Customization: MDG provides flexibility to adapt to your organization's unique requirements. You can customize data models, workflows and validation rules to fit your business processes precisely. Currently SAP supports BP.MM.FL Customer Vendor Flexible enough to create your own master data.

4.Data Replication and Distribution: MDG enables you to synchronize master data with various systems across your organization. This means that updates made in MDG can be distributed to relevant systems ensuring data consistency and avoid conflicts.

5.Data Versioning and Auditing: MDG records changes to master data over time and preserves a history of all changes. This feature is beneficial for compliance and audit purposes, ensuring data governance and accountability.

6.Business Partner Integration: SAP MDG can integrate with other SAP applications like SAP Customer Relationship Management (CRM) or SAP Supplier Relationship Management (SRM). This integration ensures that master data is consistent and available throughout the SAP landscape.

SAP MDG Core Functionalities

1.Central Governance: Central Governance is a fundamental feature of SAP MDG that enables organizations to manage master data from a single, centralized location. By consolidating data governance activities into a central hub, businesses can establish standardized processes, data models, and business rules for managing master data entities like customers, vendors, products, and more. Central Governance helps maintain data integrity, enforce data policies, and ensure compliance with regulatory requirements across the organization. It also promotes data consistency and transparency, allowing stakeholders to access accurate and up-to-date information easily.

2.Consolidation: Consolidation in SAP MDG refers to the process of merging and deduplicating master data records to create a single, accurate and complete version of the data. When dealing with master data, especially in large organizations or after buying or selling, duplicate records can be a common challenge. MDG's consolidation functionality identifies and groups duplicate data allowing data stewards to review and merge them into a single golden record. This ensures that the organization operates with consistent, reliable and de-duplicated data minimizing errors and redundancy.

3.Data Quality and Process Analytics: Data quality is a critical aspect of master data management, as inaccurate or incomplete data can lead to incorrect decisions and inefficiencies. SAP MDG includes data quality management capabilities that assess the quality of master data based on predefined rules and validations. These checks ensure that the data meets certain quality standards before being approved for use. Additionally, MDG offers process analytics, which provide insights into the data governance workflows and processes. Data stewards and administrators can monitor the progress of data requests, identify bottlenecks, and gain visibility into the overall data management performance. This helps in continuously improving data governance processes and maintaining data of high quality.

4.Mass Processing: Mass Processing in SAP MDG facilitates the ability to make bulk changes or updates to master data. When businesses need to update multiple records simultaneously, manually updating them one by one can be time-consuming and prone to errors. Mass Processing allows users to apply changes to a large number of master data records quickly and efficiently. This feature is particularly valuable during data migration, system upgrades, or when there are policy changes that affect a significant portion of the master data. Mass Processing helps save time, improves data accuracy, and streamlines data management processes.

How SAP MDG Is More Beneficial Than Any Other Cloud Computing Data Management Solutions:

There are several other Cloud Computing Data Management solutions available in the market, including Teradata Vantage, HPE GreenLake, Amazon RDS, Google Cloud Storage, IBM Cloudant. While these solutions offer some benefits they still fall short when compared to SAP MDG.

For instance, Teradata Vantage is a powerful analytical database that can handle large volumes of data and complex queries efficiently but it is expensive to implement and maintain, especially for small or mid-sized businesses. Similarly, HPE GreenLake offers a flexible and scalable consumption-based pricing model but may have limited availability in some regions.Amazon RDS offers a fully managed database service but it is highly scalable and reliable and can be complex and may involve additional efforts. Google Cloud Storage provides scalable and durable object storage but the costs may increase for high-volume data storage and retrieval. IBM Cloudant offers seamless replication and synchronization across multiple data centers but potentially requiring careful consideration and analysis of usage patterns.

Here's a comparison between SAP MDG and other Cloud Computing Data Management solutions:

Aspect SAP MDG Other Cloud Data Management Solutions
Data Integration Supports master data Data integration capabilities differ
Deployment Model On-premises and cloud Cloud-based, some on-premises options
Data Quality Management Integrated data quality Data quality features may vary
Cloud Storage Options SAP HANA Cloud Storage Varied cloud storage services
Data Security and Compliance Strong security features Compliance support may differ
Licensing Model Proprietary licensing Licensing models may differ
Industry Focus Suitable for industries Solutions cater to various industries
Master Data Governance - Introduction

Master Data Governance (MDG) is a strategic framework and set of practices aimed at managing an organization's critical data assets in a controlled and consistent manner. These data assets often referred to as "master data," include essential information such as customer records, product details, employee profiles and other core entities that are used across various departments and systems within an organization. The primary objective of Master Data Governance is to ensure that this vital data is accurate, reliable, up-to-date and aligned with the overall business goals and strategies.

MDG involves establishing and enforcing standardized policies, processes and workflows for creating, updating, maintaining and distributing master data. It addresses challenges related to data quality, integrity and reliability which can significantly impact business operations and decision-making if left unaddressed. Through effective MDG practices, organizations can prevent data inconsistencies, duplication and errors that may arise from data entry, integration and usage across different systems and departments.

Master Data Governance typically involves collaboration among various stakeholders including business users, data stewards, IT teams and management. It often employs technology solutions such as data governance tools and data management platforms to streamline and automate data-related processes. By implementing Master Data Governance, organizations can enhance data visibility, reduce operational inefficiencies, improve regulatory compliance and ultimately derive greater value from their data assets. It serves as a foundation for successful data-driven initiatives and enables organizations to make informed decisions with confidence.

Data Modelling

Data modeling is an important technique in information systems and database administration. It involves creating abstract representations of real-world entities, their relationships and the rules governing those relationships to facilitate efficient data storage, retrieval and manipulation. By employing standardized techniques and tools data modeling helps bridge the gap between business requirements and technical implementations ensuring that data is structured coherently and accurately. This practice helps in developing a clear understanding of data flow enabling organizations to organize their information effectively. Data modeling encompasses conceptual, logical and physical phases, wherein the conceptual phase defines the overall scope and initial structure, the logical phase refines this into a more detailed blueprint, and the physical phase involves translating the model into an actual database schema.

Types of Data Models:

Conceptual Data Model: A Conceptual Data Model represents high-level business concepts and their relationships without delving into technical details. It focuses on the overall understanding of data elements, entities, and their associations across an organization. This model serves as a communication tool between stakeholders, bridging the gap between business requirements and technical implementation.
Logical Data Model: The Logical Data Model takes a step closer to technical implementation by defining data structures in a database-agnostic manner. It specifies entities, attributes, relationships, and constraints, forming the basis for database design. This model is independent of any particular database management system (DBMS) and aims to ensure data consistency, accuracy, and integrity.
Physical Data Model: The Physical Data Model translates the logical design into a specific DBMS schema. It includes details like data types, indexes, partitions, and storage mechanisms. This model addresses the technical aspects of data storage, retrieval, and performance optimization. It's closely tied to the chosen DBMS and focuses on efficient data storage, access paths, and system performance.

UI Modelling:

UI modeling, short for User Interface modeling, is the process of designing and representing the visual elements and interactive components of a software application or system's user interface. It encompasses the creation of graphical representations that illustrate how users will interact with the software, including layouts, controls, navigation, and overall user experience. UI modeling plays a pivotal role in translating functional requirements into a tangible and user-friendly interface design.

At its core, UI modeling involves conceptualizing and structuring the visual appearance of screens, dialogs, and other interface elements. Designers use various techniques such as wireframes, mockups, and prototypes to outline the arrangement of buttons, text fields, images, and other UI elements. These models provide a clear blueprint for developers to implement the interface with accuracy and consistency. UI modeling fosters effective communication among project stakeholders, including designers, developers, and clients, by offering a visual representation of the intended user experience. It aids in refining design concepts, validating user workflows, and making informed design decisions. Furthermore, UI modeling contributes to enhanced usability, as designers can identify potential issues and optimize the user journey before actual development begins.

In summary, UI modeling is an integral aspect of software design that focuses on crafting a user-friendly and visually engaging interface. By transforming abstract concepts into concrete visual representations, UI modeling ensures that software applications deliver intuitive interactions, streamline user tasks, and ultimately provide a satisfying user experience.

Process Modelling:

Process modeling refers to the systematic representation and documentation of business processes, workflows and activities involved in managing and governing master data. It encompasses the visual depiction of how data is created, modified, reviewed, approved and distributed across an organization, ensuring data consistency, accuracy and adherence to established standards.

Process modeling involves mapping out the end-to-end lifecycle of master data including data creation, data change requests, data validation, approvals and data distribution. By providing a graphical representation process modeling enhances transparency allowing stakeholders to grasp the flow of data and the interactions between various actors involved in the data management process.

Process modeling also facilitates collaboration among cross-functional teams, as it provides a shared understanding of how data is managed and validated across different departments and functions. Furthermore, process modeling supports continuous process optimization by allowing organizations to iteratively refine and enhance their master data governance practices based on insights gained from the modeled processes.

Approaches to Process Modeling

Top-down modeling: When modeling a process from the top down, you normally begin with the overall process model and work your way down to the individual pieces, which you develop with the GP design time tools. This indicates that you create the majority, if not all, of the components in accordance with the requirements of the specific business case. When you detect a requirement to add another step to the process template, you can extend it, and you can define items that are run when certain circumstances are met.

Bottom-up modeling: Bottom-up modeling is used when you have already specified some functions and need to merge them into a single process. When adopting bottom-up modeling, the main focus should be on the design of the process phases themselves, rather than on fine-grained components such as callable objects and actions.

Workflow Modelling: Workflow modeling is the systematic representation and visualization of business processes, tasks, activities and interactions within an organization. It involves creating structured diagrams or flowcharts that depict the sequence of steps, decision points and participants involved in completing a specific task or achieving a particular outcome. Workflow modeling aims to provide a clear and detailed overview of how work is accomplished highlighting the roles, responsibilities and dependencies among individuals and systems.

In modern business environments, workflow modeling often intersects with technology, as organizations use workflow management systems and software to streamline and monitor processes. These systems enable the automation of tasks, assignment of work to appropriate personnel, tracking of progress and enforcement of business rules. By formalizing and digitizing workflows, organizations can achieve higher operational efficiency, reduced errors and improved compliance with established procedures.

Workflow modeling has several key benefits:

It enhances transparency by offering a shared understanding of how work is conducted, thereby facilitating communication and collaboration among team members. It assists in process analysis and improvement by enabling organizations to identify inefficiencies, redundancies and areas for automation. Workflow models serve as a foundation for designing and implementing process automation solutions ensuring that tasks are executed consistently and according to predefined rules.

Start on a journey of mastering data management with our SAP MDG courses. Enroll in our SAP MDG certification training for an extensive learning experience. To gain a deeper grasp of the SAP MDG module, explore our tutorials. Our SAP MDG online training guarantees flexible learning, providing you with the abilities needed for mastering SAP MDG. Take advantage of our specialized SAP MDG training to stay ahead in the field of data management. Utilize our expert-led certification programs to further your career goals and realize the full potential of the SAP MDG module. Best Online Career is your partner in SAP online training, and we're here to support you on your journey to becoming an SAP MDG consultant. This is where your success journey starts.

Enquiry Form


Ask Our Experts | Quick Help
+91 9922848898
Why Choose Us..?
01

Salary Fact

The average salary for SAP MDG consultants range between $144,816 - $185,500.

02

Job Opportunity

SAP MDG Generates upto 84,000 - 95,000 jobs every year. (Source : indeed.com)

03

Growth

SAP MDG has a market share of about 20.71% and thus a great growth potential in future.

Learn Any Time Any Where..!

Grab it Now

Types Of Training
Corporates

Online Corporate Training Course

  • Curriculum aligned with latest industry trends
  • Experienced and certified trainers
  • Real-life scenarios
  • Lifetime access to course material (pdfs, ppts and videos)

Recorded Video Online Training

  • Updated course content
  • Lifetime access to course content (videos and materials)
  • Flexibility to learn anytime, anywhere

Instructor-Led Online Training

  • Candidate pre-evaluation
  • Certified and experienced trainers
  • Email support and online query resolution
  • 24/7 access to SAP Sandbox
Frequently Asked Questions

Master data refers to the core and essential business information that remains relatively stable over time, such as customer, product, vendor, and employee data. SAP Master Data Governance (MDG) is a comprehensive solution that facilitates the creation, management, distribution, and quality control of master data across an organization's systems and processes, ensuring data consistency and accuracy.

SAP MDG (Master Data Governance) is a specific software solution provided by SAP for managing master data, while MDM (Master Data Management) is a broader concept encompassing various strategies, processes, and technologies for ensuring the quality, consistency, and governance of master data throughout an organization.

Yes, we can extend the access upto the 15 Days

Yes indeed. We value experiential and hands-on learning above just academic instruction. You can work on actual SAP displays with hands-on SAP with Best Online Career, and you'll also receive guided tutorials and explanations with our study material. We grant complete access to all of our students to SAP Sandbox for a real SAP experience. We give 24*7 server access

Enquiry Form


Ask Our Experts | Quick Help
+91 9922848898