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Added for You - How Non-Quality Data Can Cost Money
Balancing the Personal and Professional You ell to people in the social network of displeased customers.Keeping your personal and professional lives balanced can be tricky when you are in sales or running your own business. While every person has a different definition of what living a balanced life means, every definition includes some variation of having enough time for family, community, and, of course, work.It has been said many times that if your life is in balance, your checkbook will not be. The people who feel this way are often the ones who sit at their desk at the end of the day looking at their unfinished work. Instead of closing the laptop and heading home, they pick up the phone to call their spouse, letting them know they will not be home for dinner again this evening. While this extra work has merit, their personal life is obviously out of balance.On the other side of the coin, there are those who try to balance their lives by leaving unfinished work on their desk, closing their laptop and heading home for the day. They shirk their work responsibilities to make sure they are going home to spend quality time with the family. While this attitude also has merit, the lost work leaves their professional life out of balance.Both of these attitudes are damaging to other important aspects of your life, and neither one needs to happen. The truth is that you have much more time during the day than you realize. The reason why your life feels unbalanced is because you aren’t spending your time wisely.The secret to balancing your l - 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 accountabi Your Picture of Success IntroductionI'm sure you've heard that the best way to achieve something is to have a clear understanding of your goal. The more detailed your picture or statement, the more likely you are to reach your desired milestone.Most people want to succeed in a career that is more fulfilling and meaningful than what they have now. In addition they want to be happy and live a good life. Of course each person has their own take on how they envision this goal.What is it that you want in your life? How do you picture your success? Can you describe your personal definition of success?As you think about your vision of success do you find any worries and concerns bubbling to the surface? It’s possible you have conflicting definitions of success simultaneously running around in your mind. Your internal conflict creates confusion and turmoil as you try to make progress toward a goal that's at cross purposes with itself.As a way to explore what’s happening within you, ask yourself the following four questions. As you answer the following questions, I encourage you to write down your answers so you can refer back to what you've written.Four Questions about Success1) From your perspective, what is society's picture of success?2) What was your parent's definition of success for themselves? (You may have a different answer for your mother and father so write down both.)3) What was your parent's definition of success for you? (Again, the messages 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 accountabil Business Cards again and correct it before sending out a product.Business cards help businesspeople present a good company image by highlighting the services provided by a particular company. They can also help to enhance the personal image of a businessperson. Production and printing costs of business cards are low, but benefits are high, as they make a statement in the business world. As a result, the market value of business cards is high.Business card specialists may be employed to design a card that aptly suits the brand image and personality of the user. A custom-made corporate card serves as a great advertising gimmick. The use of business cards is a self-effacing and high-performance way of marketing. One or two color business cards can be printed overnight, but multi-color customized cards take a bit longer and cost more. Costs involved in printing corporate cards can be justified by the marketing benefits they create.There are two basic varieties of business cards: plastic cards and paper postcards. Plastic corporate postcards can be transparent, opaque, or solid. Transparent plastic business postcards are made from lightweight plastic that can be clear or tinted. A choice of shades may be available in clear plastic cards. As they are transparent, they can only be printed on one side. They have square corners, like paper cards, and normally use one-color printing with minimal artwork.Solid plastic business cards have rounded corners. They can be printed on both sides in multicolor, photographic, high 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 accountabi Condo Conversions up 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.The Truth About Condominium ConversionsAs home prices climb in major metropolitan areas, many real estate developers are converting apartment buildings into condominiums. These developers usually renovate kitchens, baths and flooring, replace light fixtures, add a coat of paint and voila! the transformation from apartment to converted condo is complete.Affordable HousingIn California, these condo conversions create affordable housing for home buyers in many areas where new single-family homes or condominiums have a median price that outpaces average income. Home buyers benefit from the developers’ savings: it costs less to convert apartments to condos than it does to build a project from raw land, particularly in areas where land is at a premium.Condo conversions generally sell at a discount compared to new condominiums. For buyers, the downside is that they are buying a refurbished older unit as opposed to a brand new one. The obvious upside is that with discounted pricing comes greater accessibility to a broader demographic of potential home buyers. In San Diego, California, for example, a flood of condo conversions over the past few years has created a large inventory of condominiums for sale, resulting in some price decreases in the marketplace. Buyers are offered incentives ranging from cash to cars as developers try to sell their units to recoup the conversion costs. However, each local real estate market is different, so be sure - 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 accountabi How Can I Make Money With Surveys On The Web nto 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.Do Online Surveys Really Pay?Anyone and everyone seem to be making a "paid surveys" website now-a-days. Not that it is difficult to make one, it is just a matter of some basic skills and a few hours of time, and they are raring to go. Most of these websites have single most intent – to make you pay to be a member, so that they would render you the service of pointing you to other URL's, where you can find and fill out surveys that pay. If you fall for them, you will find that they lead you to URL's of companies that have long ceased to exist or to websites that would ask you to pay again to join their websites.These websites charge anywhere between $30-$100 in fee for accessing their database or list of "highly paid" survey sources. But these websites offer you nothing else other than a waste of time and money ... As per the our research conducted in July 2006, which reviewed hundred's of work from home scams and paid survey websites, by interviewing their clients, workers and owners, we concluded that .... we could certify only 5 websites out of so many hundreds ! We being the industry watchdogs for the work at home websites, our standards are very stringent. However, these 5 companies that we can safely recommend charge a one time fee anywhere between $30 to $60, since they are dedicated to the business and have representatives to find work for you day after day. Our No. 1 choices, Paid Surveys Online and Surveyscout, provides you with 5 minute s - 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 accountabi Laser Cutting Jobs ell to people in the social network of displeased customers.Ever since its invention, the importance of lasers has been growing by leaps and bounds. Not only can lasers cut with ease, they can do so with precision and speed effectiveness, all for a minimal cost. Laser cutters have replaced various other kinds of cutters that were available prior to their invention, and their demand has been growing over the years with the growth in the number of laser cutting jobs.Laser cutting jobs are versatile and virtually anything can be cut with a laser, from delicate material such as fabric, plastic, and paper, to other tougher materials like wood, metal, and stainless steel. And best of all, most of the laser cutting jobs on precision high quality laser cutting systems take no time at all and require minimal human intervention.The various advantages offered by lasers have led to their usage in different laser cutting jobs. A few examples of such advantages are a reduction in total work time, precision quality work, clean and silent work, as well as other benefits. Since lasers use a non-contact way of cutting things, there is no mechanical pressure on the piece being cut, thereby reducing the chances of wear and tear on the instrument. The laser instrument is not affected by the hardness of the material being cut. The cutting has high degrees of automation and flexibility and offers an ease of integration with other automated systems. As lasers have a high trimming capability, they can produce products that do not requir - 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 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"
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