High competition in every area of business forces companies to use all available and legally permitted methods that will help them break away from competitors. Among them, the most popular is data QA. This process gives the business a lot of perks that allow it to successfully compete with other companies and receive good financial benefits.
What data can be called qualitative?
Data QA for business is an important process. It provides access to verified and accurate information that can be used to achieve your goals. It should be remembered that not all selected data will be of high quality. To become such, they need to be checked for compliance with various parameters. Their set depends on the needs of the company and the characteristics of the tasks it solves.
The selection of high-quality information from the general array is a difficult task. Most often, it is carried out by business analysts with qualifications corresponding to the level of the firm. Also, artificial intelligence and auxiliary software are used to perform this work. In this case, the time spent is reduced as much as possible, which has a positive effect on the speed of decision-making. In most cases, companies combine manual and machine options, thereby increasing efficiency and increasing the quality of the data being prepared.
Using high quality information is the key to growing your business faster. With its help, it is possible to quickly respond to any changes and adapt the work of the company to the needs of the target audience. This approach increases popularity and gives a chance to create a reputation as an advanced, reliable, status company.
Quality assessment methods
In business, information is a valuable commodity that has a certain quality. To evaluate it, various methods are used, each of which is suitable for certain situations. At the same time, they provide for checking the data for compliance with key and auxiliary criteria. All of them reject a certain amount of information, leaving only the highest quality information.
Basic criteria:
- Completeness. Completeness is understood as the absence of information gaps in a particular data set. For business, it is a key criterion, as it helps customers of goods or services to select the appropriate option based on their needs and personal preferences. For example, data on any product will become incomplete if 1-2 or more items are missing (dimensions, weight, price, delivery speed, etc.). If there is not a single gap, then the information will become complete.
- Timeliness. This indicator shows the relevance of information in a certain period of time. Compliance with it makes the data useful for analytics and decision making on the current day, week, month. For example, a list of products or services will only be useful until the company updates the range. After that, you will need to re-collect information and check it according to this criterion.
- Uniqueness. It characterizes the presence in the data array of certain information that is not found anywhere else. This evaluation criterion is very important when working with clients. With it, you can quickly identify a person and speed up the order processing process. An example of unique information would be a bank account number. It never repeats, therefore, it allows the company to quickly find out all the information of interest about the client (age, delivery address, priority payment option, etc.).
- Reliability. It is called the provision of information in the appropriate format, which is used in the general array. A striking example of authenticity is when the customer specifies the time, date and other data in the format used by the seller or service provider when registering. Any inaccuracies will lead to a decrease in the quality of information and the need for its additional adjustment (increases the cost of time and money).
- Consistency. Information will be credible if it does not have contradictions in other sources. An example of this would be the customer’s residential address. In all sources, it must be identical. Any inconsistencies will lead to the need to double-check the information, which will negatively affect the processing speed of the abandoned application and the speed of delivery.
- Reliability. Data used in business must be reliable. This criterion helps to separate information obtained from trusted sources and use it for specific purposes. A good example of trustworthy data is information from a customer’s identity card. It will always be correct, accurate and up to date.
Potential business benefits
Business always wins when it uses quality data. This is due to the large number of possible benefits that can be obtained with the correct application of the available information. The only drawback would be the need to allocate additional funds for the assessment of data quality. However, with the right approach to business, the money spent will quickly pay off and will allow you to repeatedly increase business income.
Potential benefits:
- The correctness of the decisions made. Every day, business owners must make important decisions that affect the future operation and development of the company. If you take them after studying carefully selected information, then the likelihood of making mistakes will be minimal. In addition, this approach will eliminate the effect of spontaneity, which can negatively affect the future of the business.
- Simplify the definition of the target audience. Quality-assessed data will give business owners a lot of useful information about customers. On its basis, it will be possible to determine the preferences of certain categories of people, as well as highlight the characteristics of persons (age, gender, social status, etc.) who most often order goods or services of the company. All this will allow to adapt the work of the company to the needs of customers and constantly increase financial profit.
- Expansion of the client base. All companies compete for customer attention. To do this, they come up with interesting marketing moves, as well as offer the most popular products or services. They do all this by referring to qualitative data obtained from surveys of existing and potential customers. This approach gives a chance to build mutually beneficial relationships with customers and multiply their number in the shortest possible time.
- Reduced competition. In any industry, there are dozens or even hundreds of companies that compete with each other for leading positions in a locality, region, or world. To be successful in this endeavor, high quality data must be used. With their help, you can increase awareness of certain processes and accelerate adaptation to changing working conditions. If everything is done correctly, then you can break away from competitors and, at least for a while, forget about their existence.
- Raising the status. There is an opinion that only status companies can achieve good results. However, this is not the case, because even a small business can be successful. To do this, he will need qualitative data, on the basis of which a development strategy will be built. Their application will improve many aspects that will positively affect the popularity and trust of customers. All this will inevitably lead to a gradual increase in the status of the company and will allow it to take its rightful place among stronger competitors.
- Economic benefits. A business that is not afraid of additional costs to obtain high-quality data will very quickly feel the full benefits of using them. It consists in a quick return on investment, the maximum reduction of other costs (for example, payment for the services of specialists who will correct the consequences of wrong decisions of the company’s management) and an increase in financial profit.
The quality of data used in business significantly affects the work of the company. Verified and carefully analyzed information will help you make the right decision and get financial benefits from it. In addition, the use of quality-assessed data will reduce the likelihood of various unpleasant surprises and help the business adapt to rapidly changing conditions.