Data handling refers to a process that involves recording, presenting, and gathering information in a specific way that helps analyze and make choices and predictions. It ensures the integrity of the research data because it addresses concerns associated with security, confidentiality, and the retention or preservation of research data.
This procedure involves using two kinds of data — quantitative and qualitative. It can help present the bulk data in a definite and precise form, which is extremely useful when the given data is complex and large. There are different types of data handling. Some are pictographs, line graphs, histograms, bar graphs, and frequency distribution.
Data handling refers to a process utilized to record, organize, accumulate, and analyze data. It aims to accumulate empirical evidence to determine whether the research findings disapprove or support the existing theories and whether they accept or reject the alternative or null hypothesis.
Simply put, this process involves accumulating a data set and presenting the same in a different format, for example, a chart or graph. This helps people easily understand the information. This procedure requires a set of skills, which include —
Some of the aspects that individuals must consider when carrying out this process are the type of data, ethical duties, data collection, and how they will conduct data analysis and data handling. As noted above, the data used in the process are quantitative and qualitative data. The former provides numerical information. On the other hand, the latter gives descriptive information. Note that quantitative data could be either continuous or discreet data.
The steps involved in the data handling process are as follows:
The different data handling techniques are as follows:
Let us look at a few examples to understand the concept better.
Suppose Company ABC’s sales surged at an increasing rate for three consecutive financial years. The FY21, FY22, and FY23 sales were $326,000, $419,000, and $723,000, respectively. The companies. The data was communicated along with other vital financial data, including profits, in the form of bar charts to the top-level management. The data handling process helped the managers to understand and analyze the data easily. As a result, the managers were able to make decisions faster.
In September 2023, ABB Robotics introduced a software platform that improves data visualization, analysis, and collection within automated production facilities. The organization claims that its OptiFact platform is going to cut data handling and boost production uptime by a maximum of 20%. The platform will allow users to accumulate, analyze, and manage data from various factory devices, including the ABB robots, for determining key performance indicators (KIPs), including overall equipment efficiency (OEE) and cycle times.
Let us look at some benefits and limitations of this process.
The concepts of data management and handling can often lead to confusion among individuals who are unfamiliar with such topics. To develop a comprehensive understanding of how they work and avoid confusion, one must learn about the key differences. So, let us find out how data management and handling differ.
Data Handling | Data Management |
---|---|
This is a process of organizing, analyzing, and accumulating data to pull out meaningful insights. | It is a process that involves safeguarding, maintaining, and storing data for future use. |
This process ensures the integrity of the research data. | This process aims to assist organizations and individuals in optimizing the utilization of data within the set boundaries concerning regulation and policy. |
Its different types are bar graphs, dot plots, pictographs, etc. | Some types of data management are data catalogs, architecture, modeling, and security. |
One can compute the range by computing the difference between the highest and lowest observations. The result obtained is the observation’s range. It represents the observation’s spread.
2. How to find a mode of data handling?Computing mode is an easy procedure; one needs to follow these steps:
- Place every number of a specific set in order, for example, highest to lowest or lowest to highest.
- Count the total number of times every number appears in that particular set.
The number appearing the most number of times in the given set is the mode.
Tally mark graphs or charts refer to a graphical representation of data in statistics. It helps in scanning the data and finding the frequency for a certain data set. The first four tallies are vertically marked, while the fifth tally is marked diagonally across the vertically marked tallies.
4. How to find the average in data handling?One can find the mean or average of a particular data set by computing the sum of every number within the data set and then dividing the result by the total number of values within that set.
This article has been a guide to what is Data Handling. Here, we explain its types, examples, advantages, disadvantages, and differences with data management. You may also find some useful articles here -
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