Catalog
concept#Data#Governance#Quality

Data Stewardship

Data Stewardship refers to the responsibility for managing and maintaining data within an organization.

Data Stewardship includes principles and practices that ensure effective data management.
Established
Medium

Classification

  • Medium
  • Technical
  • Design
  • Intermediate

Technical context

Database Management SystemsCRM SystemsData Visualization Tools

Principles & goals

Data should be available at all times.Quality takes precedence over quantity.Data must be secure and protected.
Build
Enterprise

Use cases & scenarios

Compromises

  • Lack of qualified personnel.
  • Technological obsolescence of tools.
  • Data misuse could cause legal issues.
  • Conduct regular data reviews.
  • Provide training on data processing.
  • Maintain documentation of all processes.

I/O & resources

  • Data Input Procedures
  • Permission for Data Use
  • Data Catalog
  • Report on Data Quality Metrics
  • API for Data Provisioning
  • Documentation on Data Privacy Policies

Description

Data Stewardship includes principles and practices that ensure effective data management. It promotes data-driven decision making and supports maintaining data quality.

  • Enhanced data quality leads to better decisions.
  • Improved data availability for employees.
  • Increased compliance with legislative requirements.

  • High costs for data management tools.
  • Need for regular training.
  • Dependency on external service providers.

  • Data Quality Index

    Measures the quality of existing data.

  • Compliance Rate

    Measures compliance with regulations.

  • User Satisfaction Index

    Evaluates user satisfaction with the data resources.

Example of a Successful Data Management Project

A company significantly improved its data quality through targeted data management.

Implementation of a New Data Storage

A company implemented a new cluster for storing large amounts of data.

Training on Data Processing

Employees were trained in a continuing education course to enhance data processing standards.

1

Assessment of the current data situation.

2

Development of strategies for improvement.

3

Implementation of data protection systems.

⚠️ Technical debt & bottlenecks

  • Outdated technology is being used.
  • Lack of automated data checking processes.
  • Insufficient resources for data management.
ProcessesTechnologyTraining
  • Unauthorized data usage.
  • Neglect of data privacy policies.
  • Insufficient data checks.
  • Ignoring data quality standards.
  • Lack of communication between departments.
  • Unrealistic expectations regarding data availability.
Data AnalyticsDatabase ManagementProject Management
Data AvailabilitySecurityData Integration
  • Technological infrastructure must be available.
  • Compliance with legal requirements.
  • Availability of specialized personnel.