Laptop Data Quality

Laptop Data Quality

We talk about Laptop Data Quality when an organization’s responsibility - the quality of its data - is informally delegated to some people that, according to their specific needs and context, autonomously, and relying on their individual judgment develop a version of quality data.

When I say informally, I also mean unconsciously – Laptop Data Quality comes up when a data user feels in some way responsible for the quality of the data they need – Meaning that a considerable percentage of their working time is diverted from the tasks they are hired to do and should be focusing on.

Laptop Data Quality is usually executed by ad-hoc processes or in excel files, where data is corrected, according to specific needs, specific criteria, a specific context, and the data user discretion – and rarely any of these are common between two different users.

As an example, it’s common the hear that 80% of a data scientist time is spent on cleansing and classifying data, even being accepted as part of the job, and this simply means that they are using their specific and valuable skills and creating value from them just 20% of the time.

Something that is also common is that some critical reports within organizations are built on “excel chains”, where different people give their inputs to assure the quality of the results, again, a considerable percentage of, sometimes highly skilled resources, is being diverted in to reviewing and fixing data.

Although the awareness of the strategic importance of data exists, with a special focus on its quality, most organizations are still struggling to enable their data capabilities, risking poor strategic decision making and misallocation of critical resources.

This brings up that the lack of a structured approach to data quality is eating away on every organization’s financial performance, impairing the decision processes, preventing additional gains in markets that are increasingly competitive and complex.

Not mentioning the direct impacts of poor data quality in the business processes, that I’ve already highlighted in previous occasions, this suggests that every organization has valuable resources redirecting their time and skills to get data into minimal quality levels for their specific needs, often unaligned with the global business and data strategy.

Although some of the impacts are easier to quantify than others, there’s one at least that can be directly imputed to this approach:

  • How many hours are being spent across the organization in ad-hoc tasks related with data quality, and what is the cost of those hours?
  • What is the effective cost, or value not being generated, due to the hours that are diverted to these tasks?

Answering these questions will allow to understand what percentage of this value would be needed to setup a structured approach for this situation.

要查看或添加评论,请登录

Jose Almeida的更多文章

  • The MDM illusion: Why master data projects keep stalling

    The MDM illusion: Why master data projects keep stalling

    Master Data Management promises a single source of truth - a centralized, accurate, and consistent view of critical…

  • Why Data Governance Fails - And How to Fix It

    Why Data Governance Fails - And How to Fix It

    Data governance is supposed to bring order to the chaos. It’s meant to ensure data is accurate, secure, and aligned…

    7 条评论
  • CDOs Are Set Up to Fail - Unless They Fix This First

    CDOs Are Set Up to Fail - Unless They Fix This First

    The Chief Data Officer (CDO) role is broken. Too many CDOs start with big visions, only to find themselves buried in…

    3 条评论
  • Why Most Data Governance Programs Fail Before They Even Start

    Why Most Data Governance Programs Fail Before They Even Start

    Most data governance programs are doomed from day one. Not because data isn’t important.

    2 条评论
  • The Biggest Data Challenges SMEs Face Today (And How to Overcome Them)

    The Biggest Data Challenges SMEs Face Today (And How to Overcome Them)

    Data is a competitive advantage. Large enterprises have the resources to invest in sophisticated data strategies, but…

  • DW is not dead

    DW is not dead

    Discussions around modern data architectures often bring up a recurring question: Is the data warehouse dead? With the…

    1 条评论
  • Data Is Not a Business Requirement

    Data Is Not a Business Requirement

    For years, organizations have treated data as just another box to check - a business requirement that needs to be…

    3 条评论
  • AI’s Dirty Secret: It’s Only as Good as the Data Behind It

    AI’s Dirty Secret: It’s Only as Good as the Data Behind It

    Artificial Intelligence (AI) is often painted as the ultimate game-changer - capable of automating processes, driving…

    6 条评论
  • 5 Use Cases for Master Data Management (MDM)

    5 Use Cases for Master Data Management (MDM)

    Mastering data is no longer optional - it’s essential for business success. As organizations generate and rely on vast…

  • The AI Paradox

    The AI Paradox

    The explosion of AI tools in the last year has been nothing short of remarkable. Organizations across industries have…

    10 条评论

社区洞察

其他会员也浏览了