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Structured Data

What is Structured Data? #

Structured Data is data that is organized in a fixed format, usually in rows and columns, making it easy to store, search, and analyze.

Importance of Structured Data #

  • Easy to store and manage
  • Fast query and retrieval
  • Suitable for analysis and reporting
  • Used in most business applications

Examples of Structured Data #

  • Excel spreadsheets
  • SQL databases (tables)
  • CSV files

Example:

NameAgeCountry
Alex25USA
John30UK

Characteristics of Structured Data #

  • Organized in rows and columns
  • Fixed schema (predefined structure)
  • Easily searchable using queries (SQL)
  • Stored in relational databases

Common Tools #

  • SQL (MySQL, PostgreSQL)
  • Excel / Google Sheets
  • Python (Pandas)

Basic Python Example #

Step 1: Create Structured Data #

import pandas as pd

data = {
    "Name": ["Alex", "John", "Sara"],
    "Age": [25, 30, 28],
    "Country": ["USA", "UK", "Canada"]
}

df = pd.DataFrame(data)
print(df)

Step 2: Access Data

# Select a column
print(df["Name"])

# Filter data
print(df[df["Age"] > 26])

Step 3: Save Data

df.to_csv("data.csv", index=False)
Structured Data
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