Data Exploration involves techniques and tools used to visualize data through advanced statistical methods.
Up to this point, you have covered problem scoping and data acquisition. You’ve established your goal for the AI project and identified methods for acquiring data. However, the main issue with the acquired data is its complexity due to numerical values. To effectively use these numbers, you need a specific pattern to interpret the data.
For instance, when choosing a book in a library, you might skim through the pages to review and select the one you prefer. Similarly, when working with or analyzing data, data visualization is essential.
There are numerous data visualization tools available, and their number is continually growing. In the next section on Data Exploration AI, we will discuss these tools.
Here is a list of 20 data visualization tools for your reference:
Do some research to learn how to visualize your data using these tools.
Now that you’re familiar with various chart types, the next step is to choose the most suitable chart for data visualization. The selection depends on the data and the objective you aim to achieve with your model.
Here are some basic chart purposes to help you choose an appropriate chart:
40 videos|35 docs|6 tests
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1. What is data exploration? |
2. Why is data exploration important in data analysis? |
3. What are some common techniques used in data exploration? |
4. How does data exploration help in decision-making? |
5. What are the benefits of conducting data exploration before data analysis? |
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Explore Courses for Class 10 exam
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