Answer You
#1 in Business Subscribe Email Print

You are here: Home > Business > Business > How Non-Quality Data Can Cost Money

Tags

  • parts
  • erroneous
  • track
  • problematic customer
  • process needs
  • being spent

  • Links

  • Email Marketing - Lead Generation Through E-mails
  • Significance of Directory Submission in Link Building
  • Loyal Customers Will Persevere
  • Answer You - How Non-Quality Data Can Cost Money

    The Secret To Bringing More Cash Into Your Business
    Want more cash coming into your business? Well, read this article to find out how!Having a great product or service is only one of the critical success factors for your business. The key to increasing the amount of cash in your organization is having an effective sales operation.The first critical success factor in deploying a winning sales operation is hiring the right sales professionals for your organization. Many organizations look for a candidate who is an expert in the field expecting to make them a great sales professional. Sales, like any other profession requires specific skill sets. The skill set needed to be a successful sales professional is very different from the skills needed to be an industry expert. A person may know everything they need to know about the industry but when it comes to doing cold calls, listening for the needs of the customer or asking for the business, they may not have the skills to perform. My advice for an organization hiring a sales or business development professional is to hire a person with a solid sales track record in the industry. If this proves to be difficult, hire a sales professional with a winning sales track record in a related field. The temptation to hire an industry expert with no sales experience is a decision fraught with great risk. It takes less time to teach someone the product knowledge needed to sell the product or service than it takes to teach someone the appropriate interpersonal skills to b
    s; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monito

    Market Research: Qualitative, Quantitative and Everything In Between
    For people considering market research, a point that often trips them up is the difference between qualitative and quantitative market research. Unfortunately, there are such important distinctions between those two types of research methodologies that it’s difficult to consider the pros and cons of conducting market research until those differences are made clear. That’s the goal of this article.I know that it’s stating the obvious, but the terms really are made much easier by remembering their root words – quantitative market research measures the quantity of respondents who feel or act in a certain way. While qualitative market research is helpful in understanding the quality of a customers’ behavior or attitudes – why do they feel or act in a certain way.Qualitative = Quality (hows and whys or “directional”)Quantitative = Quantity (less depth, but includes solid numbers)Quantitative Market ResearchQuantitative research is a rigid research tool that typically asks every respondent an identical set of questions, generally allowing the respondent only to select from a group of pre-defined answers. In order to provide a set of answer-categories, the team writing the research survey must have a very good understanding of the respondent’s feelings and attitudes before conducting quantitative research. However, the benefit of quantitative market research is that it’s possible to compare the preferences or satisfaction lev
    Introduction

    When viewed from a high level, the cost of poor quality data can affect a company’s bottom-line in two ways. First, there’s the cost of scrap and rework, and second, missed opportunities.

    An example of scrap and rework costs might be when an agent errs in recording a customer’s address details, and consequently a marketing premium is sent to the wrong address. Later, the customer calls to complain.

    The complaint needs to be handled (extra call center time), the address details then need to be entered a second time (rework), and a second premium needs to be sent. The initial premium is scrapped.

    An example of missed opportunity costs might be a credit card that is not granted because the calculated credit score (erroneously) falls below the cutoff score, and the customer is rejected. The opportunity to make a sale is lost, when marketing costs were already incurred.

    In this whitepaper, I attempt to supply a comprehensive list of potential data quality costs.

    Cost Categories of Information Quality

    The costs of data quality can be broken down in 3 categories:

    1. Immediate costs of non-quality data. This happens when the primary process breaks down as a result of erroneous data. Or, information scrap and rework, when immediately apparent errors or omissions in the data need to be circumvented in support of the primary business process. For example, data entry of a non-valid ZIP code requires back-office staff to look this up again and correct it before sending out a product.

    2. Information quality assessment or inspection costs. These are costs/efforts expended for (re)assuring processes work properly. Every time a ‘suspect’ data source is handled, the time spent to seek reassurance of data quality is an irrecoverable expense.

    3. Information quality process improvement and defect prevention costs. Broken business processes need to be improved to eliminate unnecessary information costs. When a data capture or processing operation malfunctions, it requires fixing. This is the long-term investment needed to avoid further losses.

    1. Immediate costs of non-quality data

    Process failure

    For example, capturing erroneous customer data like address, contact information, account details.

    - Irrecoverable costs; e.g. premiums sent in vain to non-existing customer addresses.

    - Liability and exposure costs; for instance credit risk losses when data quality problems cause erroneously offering credit to a customer who is not considered creditworthy on the basis of self-supplied information.

    - Recovery costs of unhappy customers; time spent handling complaints. Information Scrap and Rework

    - Redundant data handling; because many processes are ‘known’ to rely on inaccurate data, it is customary for front-line and back-office staff to maintain little private “lists” of all sorts. These serve merely as a backup or improved version of what is available in the primary database. Apart from further problems like ‘maintenance’ and ‘recovery’ not being possible for these private lists, such activities are redundant, and non-value adding.

    - Costs of chasing missing information; a field that has not been filled out properly, or not at all, needs to be looked up later on in the process. Excess time and costs, inefficiency, and not in the least place an aggravation factor. Time spent looking up missing information is not being spent servicing the customer better.

    - Business rework costs; e.g. reissuing a credit card that was sent out with a misspelled customer name.

    - Workaround costs; when a primary key is missing or faulty, laborious fuzzy matches need to be performed to match records. This kind of work is challenging, and eats up precious time of the most highly skilled database workers.

    - Data verification costs; e.g. costs of reworking data entry. But also, analyses by knowledge workers must begin by checking the correctness of data available before beginning analysis.

    - Program rewrite costs; rewriting programs that fail to run because of invalid entries found in the data. E.g.: sometimes pre- or post-conversion scripts needed to be written to deal with the content of source systems prior to loading in a Data Warehouse environment.

    - Data cleansing and correction costs; when feeds are processed to load into the Data Warehouse, these data need to be transformed for reasons that stem from quality issues. Any data cleansing and scrubbing that needs to be performed in the ETL process is essentially redundant and unnecessary insofar this is caused by faulty initial data entry. For example, when a mailing is done on the basis of a problematic customer file, dedicated scripts need to be run to deal with the (known!) errors in the address fields. This process needs to be repeated for every mailing. Since such customer files are often shared across departments and systems,source changes need to be negotiated with all end users of these data.

    - Data cleansing software costs; data cleansing software (like Vality, Ascential, etc.) is usually very expensive. However, there’s a tradeoff between scarce labor doing this ‘by hand’, and the fact that ETL data quality software to help with such tasks typically has very high license costs. Purchase may sometimes prove remarkably economical when related to (often unseen) labor costs for manually improving data quality.

    Lost and missed opportunity costs

    - Lost opportunity costs; when e.g. misspelling customer name on the card causes the customer to not use their card (instead of calling up to complain about this) the business looses their future revenue.

    - Missed opportunity costs; when unhappy customers directly influence their social environment, they generate negative publicity. This will make it harder to sell to people in the social network of displeased customers.

    - Lost shareholder value; information quality puts a drain on precious resources (scarce database experts), preventing knowledge workers from performing value added work towards market share growth. Scarce human resources are often a bottleneck towards progress, like running one more marketing campaign, delivering insight in a product portfolio’s performance, etcetera.

    2. Information quality assessment or inspection costs

    - People spend time in assessment processes when they are aware of suspect data quality; in any database project, each and every file of questionable quality needs to be inspected for data quality problems first.

    This time is irreplaceable, forever lost and never recouped in any way. Merely assessing if data is of sufficient quality is specialist work. This requires access to scarce resources that are often a bottleneck towards progress.

    3. Information quality process improvement and defect prevention costs

    - Development costs to rework existing front-end applications; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monitor

    Holistic Recruiting – A New Age For HR Specialists & Executives
    Gone are the days of simply getting hired because you have the proper job qualifications and experience. The new HR specialist is looking at a holistic recruiting approach.In simple terms "Emphasizing the importance of the whole person, and the interdependence of its parts", as defined in the dictionary. Meaning simply, recruiters are looking at the complete you, and not just the standard qualifications and experience you bring to the table.Through holistic recruiting, the HR specialist now looks at the complete you. And it's your emotional intelligence that defines the best part of the holistic approach to hiring. Your core values as a person drive your EQ or emotional intelligence. As such, the better you score at the EQ level, the better equipped you are for fast track hiring and thus, promotion. If you already communicate well, and understand all that's involved in being an active listener, then your EQ is already on solid ground.Example: In the past, we've all seen employees promoted well beyond their capabilities. Yes, they were very good at their job, and as such worthy of being promoted to supervisor level. Their EQ, or emotional intelligence, was never a factor, and thus we have all kinds of great workers promoted into positions they are totally unable to manage. Having the skill to do a certain job does not equate to supervisor material, and there is plenty of proof of that fact. What we are only now learning is that holistic hiring, o
    rrecoverable expense.

    3. Information quality process improvement and defect prevention costs. Broken business processes need to be improved to eliminate unnecessary information costs. When a data capture or processing operation malfunctions, it requires fixing. This is the long-term investment needed to avoid further losses.

    1. Immediate costs of non-quality data

    Process failure

    For example, capturing erroneous customer data like address, contact information, account details.

    - Irrecoverable costs; e.g. premiums sent in vain to non-existing customer addresses.

    - Liability and exposure costs; for instance credit risk losses when data quality problems cause erroneously offering credit to a customer who is not considered creditworthy on the basis of self-supplied information.

    - Recovery costs of unhappy customers; time spent handling complaints. Information Scrap and Rework

    - Redundant data handling; because many processes are ‘known’ to rely on inaccurate data, it is customary for front-line and back-office staff to maintain little private “lists” of all sorts. These serve merely as a backup or improved version of what is available in the primary database. Apart from further problems like ‘maintenance’ and ‘recovery’ not being possible for these private lists, such activities are redundant, and non-value adding.

    - Costs of chasing missing information; a field that has not been filled out properly, or not at all, needs to be looked up later on in the process. Excess time and costs, inefficiency, and not in the least place an aggravation factor. Time spent looking up missing information is not being spent servicing the customer better.

    - Business rework costs; e.g. reissuing a credit card that was sent out with a misspelled customer name.

    - Workaround costs; when a primary key is missing or faulty, laborious fuzzy matches need to be performed to match records. This kind of work is challenging, and eats up precious time of the most highly skilled database workers.

    - Data verification costs; e.g. costs of reworking data entry. But also, analyses by knowledge workers must begin by checking the correctness of data available before beginning analysis.

    - Program rewrite costs; rewriting programs that fail to run because of invalid entries found in the data. E.g.: sometimes pre- or post-conversion scripts needed to be written to deal with the content of source systems prior to loading in a Data Warehouse environment.

    - Data cleansing and correction costs; when feeds are processed to load into the Data Warehouse, these data need to be transformed for reasons that stem from quality issues. Any data cleansing and scrubbing that needs to be performed in the ETL process is essentially redundant and unnecessary insofar this is caused by faulty initial data entry. For example, when a mailing is done on the basis of a problematic customer file, dedicated scripts need to be run to deal with the (known!) errors in the address fields. This process needs to be repeated for every mailing. Since such customer files are often shared across departments and systems,source changes need to be negotiated with all end users of these data.

    - Data cleansing software costs; data cleansing software (like Vality, Ascential, etc.) is usually very expensive. However, there’s a tradeoff between scarce labor doing this ‘by hand’, and the fact that ETL data quality software to help with such tasks typically has very high license costs. Purchase may sometimes prove remarkably economical when related to (often unseen) labor costs for manually improving data quality.

    Lost and missed opportunity costs

    - Lost opportunity costs; when e.g. misspelling customer name on the card causes the customer to not use their card (instead of calling up to complain about this) the business looses their future revenue.

    - Missed opportunity costs; when unhappy customers directly influence their social environment, they generate negative publicity. This will make it harder to sell to people in the social network of displeased customers.

    - Lost shareholder value; information quality puts a drain on precious resources (scarce database experts), preventing knowledge workers from performing value added work towards market share growth. Scarce human resources are often a bottleneck towards progress, like running one more marketing campaign, delivering insight in a product portfolio’s performance, etcetera.

    2. Information quality assessment or inspection costs

    - People spend time in assessment processes when they are aware of suspect data quality; in any database project, each and every file of questionable quality needs to be inspected for data quality problems first.

    This time is irreplaceable, forever lost and never recouped in any way. Merely assessing if data is of sufficient quality is specialist work. This requires access to scarce resources that are often a bottleneck towards progress.

    3. Information quality process improvement and defect prevention costs

    - Development costs to rework existing front-end applications; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monito

    Business Ethics 101
    Sometimes life provides us with character-defining opportunities that remain with us forever. If we're lucky, that is. These events, which occur in both our professional and our personal lives, are significant not for their particulars, but for what they say about who we are and who we are not. It is who we become as a result of these experiences-not the experiences themselves-that is most important. This is because these "choice points" articulate our values, clarify our character, and define our integrity.I had one such experience many years ago when I first relocated to Seattle. It's an experience that has stayed with me because it was so profound and because, to this day, I am still both humbled and humiliated by it. I had had business cards printed, and there was an error. I called the owner of the print shop and she agreed to reprint them right away. But I never returned to the printer. My finances were very tight and I'd decided it was "better" to distribute the "bad" ones rather than pay the several hundred dollars I owed her for the new version.My tainted integrity nagged at me for more than a year before I finally phoned the woman to apologize. I never got that far. Oh, she remembered me all right. So clearly, in fact, that during our brief conversation she recounted the entire ordeal and then concluded by telling me (with not a trace of anger, I might add): "Now I'm going to hang up because I'm not going to do business with you again." Click.
    Business rework costs; e.g. reissuing a credit card that was sent out with a misspelled customer name.

    - Workaround costs; when a primary key is missing or faulty, laborious fuzzy matches need to be performed to match records. This kind of work is challenging, and eats up precious time of the most highly skilled database workers.

    - Data verification costs; e.g. costs of reworking data entry. But also, analyses by knowledge workers must begin by checking the correctness of data available before beginning analysis.

    - Program rewrite costs; rewriting programs that fail to run because of invalid entries found in the data. E.g.: sometimes pre- or post-conversion scripts needed to be written to deal with the content of source systems prior to loading in a Data Warehouse environment.

    - Data cleansing and correction costs; when feeds are processed to load into the Data Warehouse, these data need to be transformed for reasons that stem from quality issues. Any data cleansing and scrubbing that needs to be performed in the ETL process is essentially redundant and unnecessary insofar this is caused by faulty initial data entry. For example, when a mailing is done on the basis of a problematic customer file, dedicated scripts need to be run to deal with the (known!) errors in the address fields. This process needs to be repeated for every mailing. Since such customer files are often shared across departments and systems,source changes need to be negotiated with all end users of these data.

    - Data cleansing software costs; data cleansing software (like Vality, Ascential, etc.) is usually very expensive. However, there’s a tradeoff between scarce labor doing this ‘by hand’, and the fact that ETL data quality software to help with such tasks typically has very high license costs. Purchase may sometimes prove remarkably economical when related to (often unseen) labor costs for manually improving data quality.

    Lost and missed opportunity costs

    - Lost opportunity costs; when e.g. misspelling customer name on the card causes the customer to not use their card (instead of calling up to complain about this) the business looses their future revenue.

    - Missed opportunity costs; when unhappy customers directly influence their social environment, they generate negative publicity. This will make it harder to sell to people in the social network of displeased customers.

    - Lost shareholder value; information quality puts a drain on precious resources (scarce database experts), preventing knowledge workers from performing value added work towards market share growth. Scarce human resources are often a bottleneck towards progress, like running one more marketing campaign, delivering insight in a product portfolio’s performance, etcetera.

    2. Information quality assessment or inspection costs

    - People spend time in assessment processes when they are aware of suspect data quality; in any database project, each and every file of questionable quality needs to be inspected for data quality problems first.

    This time is irreplaceable, forever lost and never recouped in any way. Merely assessing if data is of sufficient quality is specialist work. This requires access to scarce resources that are often a bottleneck towards progress.

    3. Information quality process improvement and defect prevention costs

    - Development costs to rework existing front-end applications; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monito

    Things To Consider While Incorporating In Hawaii
    Incorporating can be one of the best decisions as it offers many benefits that make it a very attractive option for those starting a new venture. Incorporation procedure complexities can daunt some people but are well worth the trouble. The Internet has made it possible for novices to understand all procedures connected with incorporation, and they can themselves incorporate or hire an attorney to help them incorporate.How to Incorporate In Hawaii: It is necessary to be clear about the legal structure that best suits your business such as a C, S, Closed, Professional, or Non-Profit corporation. Devising a name that is original and not a replicate of any other registered business name or reserved names is the next step for incorporating a business. The name has to comply with the state laws and has to end in the words or the abbreviation of the words “Incorporated,” “Corporation,” or “Limited.” There has to be a minimum of one or more incorporators, and they have to file the articles of incorporation with the Hawaii Department of Commerce, Business Registration Division. The fee charged is $50, and it will be processed within 25 business days. The article of incorporation has to include other documents such as those listing the mailing address of its principal executive office, street address of its registered office, name of its registered agent at its registered office, and a list of the shares it is authorized to i
    ftware to help with such tasks typically has very high license costs. Purchase may sometimes prove remarkably economical when related to (often unseen) labor costs for manually improving data quality.

    Lost and missed opportunity costs

    - Lost opportunity costs; when e.g. misspelling customer name on the card causes the customer to not use their card (instead of calling up to complain about this) the business looses their future revenue.

    - Missed opportunity costs; when unhappy customers directly influence their social environment, they generate negative publicity. This will make it harder to sell to people in the social network of displeased customers.

    - Lost shareholder value; information quality puts a drain on precious resources (scarce database experts), preventing knowledge workers from performing value added work towards market share growth. Scarce human resources are often a bottleneck towards progress, like running one more marketing campaign, delivering insight in a product portfolio’s performance, etcetera.

    2. Information quality assessment or inspection costs

    - People spend time in assessment processes when they are aware of suspect data quality; in any database project, each and every file of questionable quality needs to be inspected for data quality problems first.

    This time is irreplaceable, forever lost and never recouped in any way. Merely assessing if data is of sufficient quality is specialist work. This requires access to scarce resources that are often a bottleneck towards progress.

    3. Information quality process improvement and defect prevention costs

    - Development costs to rework existing front-end applications; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monito

    Biometric Time Clock Maintenance
    The biometric time clock helps to gain the objectives of security, convenience, and accuracy, which is of great importance in contemporary working environments. Biometric time clock maintenance requires professionalism, even though the maintenance cost is low. The parts of biometric clocks are easily available and can be replaced to give more perfection.The hand reader is the main part of the equipment; it is where the employee places the hand for the image to be scanned accordingly and checked with the data stored earlier. Sometimes, the hand reader might function erratically, allowing admission even to unauthorized personnel. Immediate maintenance of the equipment is needed to solve this problem, as it might compromise the security of the firm. Biometric time clock maintenance is more professionalized at present; the system is used in various locations by networking to the central computer where a virtually unlimited amount of data is stored. During the maintenance of the hand reader for a battery failure or an option to reset memory, the data stored acts as a secure back up. The hand reader offers full interface with all popular time and attendance timecard software. There is no need to change the existing software that has been loaded for working of the system in accordance with company requirements.Biometric time clocks come with attractive maintenance plans. Annual maintenance plans for software are offered by biometric time clock companies. Fr
    s; data entry applications need to enforce data quality by performing validity checks, and minimizing keystrokes and eye-hand movements. On the basis of usability findings, interface improvements invariably lead to both higher efficiency and better data quality.

    - Management attention to redefine accountabilities and monitor improved information quality; steering the organization towards higher data quality requires changing accountabilities and continuously monitoring improvement. This topic will need to stay high on management’s agenda to create lasting improvement.

    Conclusion

    Problems in data quality often go unnoticed. It can be both a source of process inefficiencies (timeliness), as well as operational costs (direct and indirect losses). In neither of these cases is it apparent that improvement is possible from enhancing data quality.

    One of the pernicious consequences of suboptimal data quality is that the cost of poor quality data is usually hidden. Lack of data quality is not obvious to those not deliberately looking for it. Quantifying costs isn’t always easy. What makes the indirect costs of poor data quality so pernicious is that the relation between data quality problems and its consequences is non-obvious, and often only occurs with a substantial time delay. Therefore, the connection between downstream consequences and poor quality data is often not made, and the problems are not attributed to their true cause.

    The cause of many downstream data quality costs can easily remain largely hidden (e.g. data quality), and therefore insufficiently subject to management attention and intervention. Also, progress after improvement efforts is gradual, relatively slow, in large part ‘cultural’, and therefore difficult to monitor and track.

    Another, and probably the most significant problem caused by poor-quality information, is that it frustrates the most valuable resource of the company: its employees. Non-quality information prevents knowledge workers from performing their job effectively. On top of that, it alienates customers because of wrong information about them, and to them. Customer data is the raw material that needs to be managed for what it is: a strategic resource.

    Data quality is far more than accurate data entry. It stems from monitoring downstream data usage, maintaining comprehensive and up-to-date meta data, and nurturing a corporate culture of naturally doing things right at the first attempt. Only then will knowledge workers learn to expect data quality, and enforce it because it’s the natural thing to do. Letting data quality slide will promote a culture of negligence, and disdain for the use of one’s most precious assets: customer information.

    The case for accurate source data is further underlined when one realizes that the source in and of itself does little more than support primary processes, which is fine. However, the greater value to the organization comes from enhancing these data, from deriving new information from source data.

    The investment in improving information quality is recouped several times in decreased costs, and improved value of information to accomplish strategic business goals.

    Rapid access to high quality data is the decisive factor in an organization’s ability to assess and adapt it’s business model to changing market conditions. As corporations become ever more ‘digitized’, those that get a grip on their data quality assurance processes can reap great rewards. In a highly turbulent market this may well be the critical factor in determining the survivors in a competitive business, and therefore prove to be ultimately priceless.

    Resources

    Larry P. English (1999) Improving Data Warehouse and Business Information Quality: Methods for Reducing Costs and Increasing Profits. Wiley, ISBN 0- 471-25383-9

    Jack E. Olson (2003) Data Quality: the Accuracy Dimension. Morgan Kaufman, ISBN 1-55860-891-5

    Sid Adelman, Larissa Moss & Majid Abai (2005) Data Strategy. Addison- Wesley, ISBN 0-321-24099-5

    Article download "How Non-Quality Data Can Cost Money"

    XLNT Consulting - Turning Data Into Dollars.

    HTTP = HTML link (for blogs, profiles,phorums):
    <a href="http://www.answeryou.net/article/2608/answeryou-How-NonQuality-Data-Can-Cost-Money.html">How Non-Quality Data Can Cost Money</a>

    BB link (for phorums):
    [url=http://www.answeryou.net/article/2608/answeryou-How-NonQuality-Data-Can-Cost-Money.html]How Non-Quality Data Can Cost Money[/url]

    Related Articles:

    Choosing Your E-Zine Topic - 3 Hints for Making Your Decision

    Twelve Key Questions You Need to Ask About Your Computer Security for Your Home or Business

    Record Management

    Bookmark it: del.icio.us digg.com reddit.com netvouz.com google.com yahoo.com technorati.com furl.net bloglines.com socialdust.com ma.gnolia.com newsvine.com slashdot.org simpy.com shadows.com blinklist.com

    sklep odżywki tomecanic Filmy 2010 panele ogrodzeniowe download disney classic music