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Last updated on June 18th, 2025

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Data Handling

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Data handling involves organizing and presenting data to make it easier for people to understand and interpret. It can be expressed visually in the form of a chart or graph. It has numerous applications in our daily life and can be used in schools to collect and preserve the data of each student. In this topic, we’ll learn more about data handling.

Data Handling for Singaporean Students
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What is data handling?

Data handling is a widely used process of collecting, securing, and preserving the researched data. This data is a set of numbers and is generally depicted visually using graphs.

 

This visual representation of data helps students understand large information in simple terms. It enables to organize, analyze, and present information in a clear way, so people can easily understand and make decisions based on it. 

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What are the best practices for data handling?

The process of data handling can be broken down into different steps. Let’s learn the steps that help us handle data effectively.

 


Data Collection


Data collection is the process of gathering information from different sources to analyze and use for decision-making. Since the collected data is unrefined, this process includes verifying that the information collected from different sources is correct. These sources might be large databases, internet platforms or surveys conducted by hand.

 


Data Preprocessing


Preprocessing data before use is essential, and it depends on how the obtained data will be used. This stage can be useful for data visualization and is mainly utilized for training a machine-learning model. In this step, we ensure that the data collected is structured, refined, and ready to apply. It includes the following steps:

 

  • Data filtering
  • Standardization and scaling
  • Data conversion into a suitable format
  • Managing disorganized data

 

Data Analysis


The most important step of data management is data analysis, which changes the complex data into simple insightful data. Depending on the particular use situation, this step changes. In general, it's the process of analyzing the data using a variety of tools to get the desired outcomes.

 


Data Presentation 


In the data presentation step, the collected data is converted into a well-structured and organized format. This provides a clear picture, as data is frequently sorted or occasionally combined into visualization techniques and saved in databases or spreadsheets. To ensure the data is ready for presentation, we use various analytical tools to maintain consistency and avoid redundancy.

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What are the steps for data handling?

We now understand data handling is a process involving several steps. Let’s now take a look at each of these steps:
 

Steps Features
Purpose of data handling The purpose is identified and clearly stated.
Data Collection Gathers unfiltered information pertinent to the goal.
Data Presentation The collected data is frequently sorted in an understandable and consistent manner, which can be presented in a simple table or tally form.
Graphical Representation The data can be visually represented in the form of graphs, which helps in the easy interpretation of trends.
Data Analysis Examining the information to extract only the relevant data that helps in decision-making.
Inference Based on the data analysis of the collected data, conclusions can be drawn easily depending on the purpose.
 

 

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What are the graphical representations for data handling

Data handling can be visually represented in the form of graphs. The graphical representation of data enables students to easily interpret the objective of the presented data. The list of a few common graphical representations of data handling is given below:

 


Bar Graphs


Bar graphs present the collected data in rectangular bars that are either vertical or horizontal. In bar graphs, the height of each bar is equal to the values they indicate. We often use bar graphs to compare data. For a better understanding, look at the pictograph given below:
 

Pictographs 


Pictographs are also known as picture graphs where the data is expressed in the form of images, symbols, or icons. It is one of the most commonly used graphical representations in statistics and data processing. A pictograph enables students to understand the data in simple visual form. For a better understanding, look at the pictograph given below:
 

Line Graphs


Line graphs are formed by connecting the data points using a straight line. These are commonly used in displaying the change of a specific quantity over time. They can be used to represent the change of trends with time. Look at the sample image of a line graph below:

 

Pie Charts


Pie charts display data in a circular division of sections. They are often used to display a company’s profit and loss or to track marketing and sales. Look at an example below indicating the preferences of 360 individuals about fruits:
 

Scatter Plot


Scatter plots represent data points on a two-dimensional coordinate system. The values of two variables are represented by each point on the plot, enabling us to see any trends, patterns, or connections between them. We usually plot one variable on the horizontal axis (X-axis) and the other on the vertical axis.
 

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Real-Life Applications of Data Handling

Data handling is an important concept not only in education, but it is also widely used in various real-life situations. Let’s take a glance at how it applies in different fields:

 

 

  • Data handling is used in schools to secure information about each student, track their performance, and analyze their needs.

     
  • The government makes use of the relevant information about the people of a state to ensure their needs are met. It can also help in implementing policies for the public’s interest.

     
  • Companies and businesses use data handling to analyze customer behavior and trends, which helps them improve their marketing strategy.

     
  • Data handling is applied in weather forecasting to verify whether predictions are accurate and relevant.

     
  • Hospitals use data handling to manage patient information, which helps in tracking their health conditions and providing better treatment.
     
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Common Mistakes and How to Avoid Them in Data Handling

Data handling involves several steps that should be carried out carefully. However, students often make mistakes that lead to incorrect data handling. Let’s look at a few common errors and how to avoid them:
 

Mistake 1

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Inaccurate Data Collection

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The collection of inaccurate data leads to irrelevant data representation, which in turn results in wrong conclusions.

Always make sure that you use data from reliable sources and double-check before you proceed to the next step of data management.
 

Mistake 2

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Relying Only on Data Analysis
 

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Many of us might think that data analysis is the most important step, neglecting the other steps in the process.

Keep in mind that data analysis is significant in the process, but it doesn’t mean that the other steps should be neglected. For example, the cleaning of data must be done before the analysis to ensure accuracy.
 

Mistake 3

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Improper Data Cleaning
 

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Sometimes, we may not perform the step of data cleaning properly, which can retain errors including irrelevant information.


Always ensure that you check and remove mistakes, fix missing values, and get rid of irrelevant data to keep the information accurate and useful.
 

Mistake 4

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Not Securing Privacy

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We usually don’t realize the importance of securing the privacy of sensitive data, which leads to breaking of data protection laws.

Data handling involves securing the privacy of the collected data. Ensure that digital data is secured using encryption.
 

Mistake 5

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Underestimating Data Visualization

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We may fail to notice the errors in the data visualization, assuming it is of the least importance. For example, overcrowding plots or complex formats.

Ensure that data visualization is presented in simple and understandable ways, such as by using bar graphs, line graphs, and pie charts.
 

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FAQs on the Data Handling

1.What do you mean by data handling?

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2.What are the different steps involved in data handling?

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3.How do we apply data handling in decision-making?

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4.Can we use data handling in real-life situations?

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5.Can we improve our data handling skills?

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Jaipreet Kour Wazir

About the Author

Jaipreet Kour Wazir is a data wizard with over 5 years of expertise in simplifying complex data concepts. From crunching numbers to crafting insightful visualizations, she turns raw data into compelling stories. Her journey from analytics to education ref

Max, the Girl Character from BrightChamps

Fun Fact

: She compares datasets to puzzle games—the more you play with them, the clearer the picture becomes!

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