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Article Check - How Non-Quality Data Can Cost Money
High Definition Update: Paul Wheeler Interview ches 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.High Definition Update - Paul Wheeler InterviewIn July 2005, I wrote an E-Zine with the headline “High Definition – When?” At the time we saw little demand for HDCAM equipment aside from some clients in the U.S. Seven months later, the situation has changed dramatically. We added two Sony HDW-F900 HDCAM camcorders (Sony’s top of the line HDCAM camera for television and/or cinema) to our stock in January 2006 because of growing demand and see this as the beginning of a trend. And we have just taken a booking for a multi-camera shoot in March with six HDW-F900s.Interview With Paul Wheeler – Soon Available on DVDWith this increase in demand, we recently hired Paul Wheeler BSC, a highly experienced film and digital cinematographer who wrote the book, “High Definition & 24P Cinematography”, to run some workshops for us. While he was here, I interviewed him. We are going to make available DVDs with an edit of the interview. If you’d like one, contact me at cal@procamtv.com.BBC – Drama and High DefinitionOne of my first questions to Paul was about the apparently sudden leap in demand for HDCAM. Paul’s response: “Five years ago the BBC was saying within two years everything they record will be on high definition. Three months ago they said everything we record in two years time will be on high definition so trying to predict what happens is very difficult. The BBC who wanted to move in that direction haven’t moved as fast as they wanted to. - 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 New Vending Machines IntroductionNew vending machines come with the latest features and functions. They are, as a rule, more efficient and cost-effective than older machines.New vending machines of different varieties of are offered for sale. Machines dispensing snacks, drinks, food, combo, and hot drinks are a few to name. A variety of new coin operated vending machines are also available in the market. There are also a lot of new dollar changing machines that accept new and old design dollar bills. Coffee vending machines and cigarette vendors are the most popular among new vending machines. Many new vending machines come in a variety of curious and eye-catching shapes such as rockets and puppets.If you wish to get noticed for your machines, it is a good idea to invest in giant new vending machines. Giant vending machines of above six and a half feet are available these days. They can hold up to 20,000 one-inch gumballs. Always remember to keep your new vending machine in high traffic areas.It is easy to start a new vending machine business. You can lease a new soda vending machine for as low as $33.45 per month. No business experience is required to set up and run a vending machine business. You have to choose the type of your new vending machines to go with the locations that you want to install them.Most new vending machines mount easily to a wall, another vending machine, or counter top. Many new vending machines come with dual locking system, sold out light and cha 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 Banking - Inventory Collateral upply a comprehensive list of potential data quality costs.This segment will explain the essentials of how a bank evaluates the inventory that is offered as collateral for a business loan or an operating line of credit. As explained in the segment on equity, this is not supposed to be a text book course, but explains briefly what you will encounter in the real world of business finance.These comments are not for the retail business; they apply to wholesalers, importers and manufacturers.The amount of money the financial institution will be prepared to lend you will depend a great deal on the amount and ease of realization of the inventory collateral you can offer to cover the loan, in case there is a default in repayment.It is not just the amount of the collateral, but the quality of the collateral, and whether it would realize enough to repay the loan if there was a liquidation of the business.A typical example might be that your main collateral for a $1 million loan application is your inventory of widgets. The widgets will cost you $1,250,000 and you expect to sell them for a total of $2,000,000 which would gain you a $750,000 profit. You would think your bank would be pleased to approve the loan.These are some evaluation techniques related to the inventory that the bank will utilize before the credit approval decision can be made:**Quality of the widgets: What percentage, if any, are damaged and non-saleable? Are they a seasonal item and, if so, are they carrie 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 Single Digit Interest Rates for Bankrupts and Bad Credit Loans /em>. 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.Approach any person in the street and ask them to describe home loans for people in a bad credit or bankruptcy situation. I can say with almost full certainty that the majority of these people you speak to will say that a bad credit mortgage will incur huge interest rates that will render them impossible to pay off. That’s because this has been the main message churned out by the media, and the big players in the world of mortgages – the major lenders and the majority of mortgage brokers. As you probably already guessed by visiting this website, it is possible for people with bad credit – even bankruptcy – to secure a home loan. The question is, just how good can the interest rates be?How Low can you go? Watch any television ads or read the marketing propaganda from the big players and you’ll probably think low interest rates are a winner all the way. Sure, in some cases they may well be, however the interest rate alone won’t determine if a home loan is right for a certain person. Factors such as the duration of the mortgage and the specific financial situation of the client also come into play. For the purposes of this article however, we are focusing on bad credit mortgages and the interest rates you can expect.The fact is with bad credit, you won’t be able to take advantage of the lowest interest rates on the mortgage market. The reality is that with bad credit, you are perceived by lenders to be somewhat of a risk. This said though, there 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 Employees' Poor Writing Skills Can Lead to Lost Profit 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.Employees' writing skills - or the lack of them - substantially affect the bottom line in ways you may never have considered. Here are just a few.* Badly written instructions can lead to incorrect procedures, lost time, damaged equipment, lost customers - and lost profit.* Ineffective letters, which often took too long to write in the first place, can create a poor company image, wasted time, bad customer or supplier relations, lost customers - and lost profit.* Interdepartmental miscommunication - often through incomprehensible e-mail exchanges - can lead to fragmentation of the workforce, loss of corporate loyalty, missed collaboration and innovation opportunities, possibly lost employees resulting in more recruitment and training costs - and lost profit.* Cold, impersonal "boilerplate" letters in response to customers' problems or complaints can lead to loss of those customers, bad news spread to their friends and colleagues, loss of present and future income - and lost profit.Mangled syntax can cause expensive confusion, inconvenience or even danger. Here are just a few examples.A consultant's proposal on a new benefits package for his corporate client read, "By paying a 5% premium on wages, all employees will be enrolled in the company insurance program." Who was supposed to pay the 5%? According to this sentence, the employees would pay - but in fact the company was to pay. It should have read, "By paying a premium of 5 - 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 Commercial Zoning Has You Confused? Read on... ches 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.Zoning is very much a part of everyday life and business when you are new or experienced real estate investors, which includes brokers, agents, and any other professionals in the building industry who would be interested in educating themselves on zoning. When you look into Zoning, you need to be very conscious about where you are looking to develop an area for either commercial, homes, and agricultural needs. You need to be aware of the different types of Real-estate Zonings, such as Spot Zoning, Contract Zoning, Down Zoning, Esthetic Zoning, Subdivisions, and buffer Zoning.Spot Zoning is when you have a small area of property or land that is zoned different than the other properties around it. Next is contract Zoning in which a person or business signs a contract to allow that person to rezone an area. Down Zoning is the rezoning of a piece of land that is less Dense, such as, instead of a high-rise, you are allowed only one or two story buildings. You also cannot take an industrial zone and turn it into a residential area.Then we have Esthetic Zoning in which there are certain rules applied to the zoned area such as what is not permissible. Many landowners and realtors will find that they cannot make drastic changes to the landscaping, the color schemes, mailboxes fences, solar panels, decks, satellite, certain materials, the shape and design of the roof, and many more. With this type of zoning, it is a very good idea to look into what can and - 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
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