Data Stewardship. The concept of Master Data Management (MDM) & how to implement it. Presented by: Ben Fisher, BOC

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Transcription:

Data Stewardship The concept of Master Data Management (MDM) & how to implement it Presented by: Ben Fisher, BOC

Playing or Performing?

Status Quo Many organisations are still playing when it comes to MDM While the concept of MDM is not new, the practicalities in implementing it are, making it a new concept to organisations Toolset supporting such, is only just reaching maturity It has been difficult to prove the financial benefits of MDM The cost of status-quo Return Mail

Benefits of MDM The benefits of MDM are far reaching, though those that are of most value change depending on each organisation An improved customer experience resulting in lower churn A reduction in rework & waste improving dso & margin Compliance with legislation preventing fines & lowering insurances True Customer Insights increasing marketing effectiveness & sales Simplifying Migration reduced costs associated with upgrades/acquisitions Improved Stock Modelling reduced inventory Data Lifecycle Management infrastructure remains effective for longer Capability to change quickly speed to market

Agenda The Concepts & Framework of MDM Implementing MDM within an Organisation

Key Concepts of MDM Master Data Management The management of Master Data within, and across, systems in organisations Governance Model An element of MDM, it is the model used within an organisation to achieve the goals of MDM Master Data Slowly changing data, which is normally used by more than one process and of importance to more than one department (e.g. customer master data) Transactional Data A time dependent piece of data generated using multiple pieces of Master Data & a business process (e.g. a sales order)

The MDM Framework Principles Serve as a reference point to guide decisions in all aspects of MDM People Roles & responsibilities with clear objectives & accountability Executive level Business & IT commitment Process Standards & procedural guidelines for how the Governance Model operates Technology Toolset & infrastructure Governance Model Defines how People, Process & Technology will integrate Master Data Management Governance Model People Processes Technology Principles

Principles Serve as a reference point to guide decisions in all aspects of MDM, for example: Master Data will be managed as a valued strategic asset, not an afterthought Clear ownership & accountability for master data will be defined Personnel with responsibility for MDM functions will be given measurable objectives aligned to the organisations goals for delivering MDM Standards for all master data objects will be established & documented Data Standards should be common across business units and comply with industry standards whenever appropriate Agreed methods for changing standards or processes shall be used Data Quality will be measured & reported regularly against the agreed standards Master Data Management Governance Model People Processes Technology Principles

People Roles & responsibilities with clear objectives & accountability, for example: Data Executive (s) Executive level, sponsorship and commitment to MDM Data Stewards Department Head, responsible for ensuring their department delivers on MDM Data Owners Department Head minus 1, accountability for MDM objectives MDM Function Owns & operates the technology toolset enabling MDM Full-time Measures & reports data quality against agreed standards Establishes & Chairs regular MDM working teams Establishes Data Standards in conjunction with Data Stewards/Owners Establishes & documents processes Involvement at all levels Business ownership Part-time MDM Master Data Management Governance Model People Processes Technology Principles

Processes Standards & procedural guidelines for how the Governance Model operates, for example: Processes for interaction between MDM Function and Data Stewards/Owners Processes for interaction between MDM Function and IS/IT Processes for defining & changing Data Standards Lifecycle management of data Processes for measuring & publishing results Processes for integrating new data systems (acquisitions/mergers) Processes for standardising data across systems Processes for ensuring Data Standards are understood within business units Processes for escalating unresolved issues Processes for claiming financial benefits Master Data Management Governance Model People Processes Technology Principles

Technology Toolset & infrastructure, for example: Tools for extracting data from multiple databases/sources Tools for manipulating & transforming extracted data Tools for analysing data quality Tools for reporting data quality results Tools for cleansing data to agreed business rules Tools for uploading cleansed data back into source systems Master Data Management Governance Model The increasing maturity & integration of this toolset in recent years has resulted in MDM moving from concept. to reality People Processes Technology Principles

Governance Model Defines how People, Process & Technology will integrate, for example: Regional Boundary or Global Data Split by Business Function (e.g. Order to Cash) or Subject Area (e.g. Customer Data) MDM located within Business or Finance or IT Size of MDM Organisation Mix of Part-time & Full-time etc Master Data Management Governance Model People Processes Technology Principles

Agenda The Concepts & Framework of MDM Implementing MDM within an Organisation

Implementing MDM 1.Executive Sponsorship 2.Preliminary Investigation 3.Building the Business Case 4.Executive Team Sponsorship 5.MDM Development Stage 6.MDM Implementation

Executive Sponsorship Executive Sponsorship MDM crosses all boundaries of an organisation In the first instance, as a minimum, a director is required Build support for MDM by linking it to the key strategic intents of your business: Margin growth Customer retention Process excellence & Lean Six Sigma Upcoming IT System migration Managing Director / CEO Sponsorship Build support & endorsement with your MD/CEO with the aid of your Executive Sponsor Gain endorsement to conduct a preliminary investigation

Preliminary Investigation Preliminary Investigation Gather knowledge on the systems used within your organisation Identify some key sets of Master Data to analyse Identify Business Rules on the priority fields within these master data sets Commence discussions with Vendors that supply relevant toolsets Trial a Preliminary Data Quality Assessment (PDQA) Ideally with two different likely vendors On your own real data, which gives real insights (data extraction, data quality, performance) 10 to 20 days each Work in partnership at this stage (insight as to the complexity, skill level req d) Identify what various tools do Determine the technology toolset you require (now, & in future) Information gathered in this step will be applied in the Business Case

Building the Business Case (1 of 3) Barriers to Overcome Many organisations have learned to put-up with poor quality data Many organisations don t treat their data like a strategic asset In many cases, it can be difficult to quantify the cost to the organisation of poor quality data The cost of the tools is high (>$300k) The MDM Team, even in the early stages, must have at least 3 fulltime people (although the end-state full-time team is not much larger than this) The business will take a few iterations to learn how to define Data Quality Rules For success, a committed Executive Team is required The Aims of the Business Case Justify the costs Build commitment from the Executive Team toward MDM Create a vision for what MDM within your organisation will look like

Building the Business Case (2 of 3) A financial business case is required Ideally, taking the position that treating your data as a strategic asset, should be enough In reality, you will also need to build a story for the costs of inaccurate data Using real data from your PDQA Using Lean Six Sigma techniques to identify cause & effect You need to justify the cost Toolset, head count and extra responsibilities for business personnel Examples of the costs of inaccurate data Return Mail (postage, DSO, Write-off) Distribution Charges (incorrect delivery charges,) Pricing Combinations (missing combinations) Hazardous Goods (incorrect labelling)

Building the Business Case (3 of 3) The Contents The Burning Platform The Cost/Benefit The MDM Framework Recommended Toolset Likely Governance Models (operational models) Level of Commitment Required Project Time-Line (to reach a sustainable model) MDM Development Stage Final Model Recommendation Implementation

Executive Team Sponsorship MDM crosses all boundaries Requires full sponsorship of the Executive Team Clearly articulate what their commitment means Hours per month for Data Executives, Data Stewards, Data Owners Incorporation of analysis/reports into normal departmental communication Requirement to incorporate MDM KPI s within Performance Contracts Prioritise attendance at MDM Working Teams If commitment is not forthcoming.stop

MDM Development Stage (~12 months) Select Toolset & Vendors Set-up Infrastructure Build MDM Team Build Competence on Toolset DQ Scorecards DQ Benefits Identify Data Execs, Stewards, Owners Prioritise Master Data Develop & Document Standards Build Business Rule Repository Document/Articulate the Principles Develop & Document Processes Quarterly Sessions w/ Executive Team Develop Likely Governance Models Master Data Management Governance Model People Processes Technology Principles

MDM Implementation (~6 months) The pieces are already in place Executive Endorsement of the recommended MDM Framework The Principles Recommended Governance Model Organisational reporting lines Size & Mix of MDM Team Data Executive(s), Data Stewards, Data Owners Time commitment of business Data Responsibility High Level Processes Implementation Timeline Master Data Management Governance Model People Processes Technology Principles

Questions

Thank you! Presented by: Contact details: Ben Fisher ben.fisher@boc.com Australia