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Data Analysis

What is Data Analysis? #

Data Analysis is the process of examining, transforming, and interpreting data to discover useful patterns, trends, and insights.

Importance of Data Analysis #

  • Helps in understanding data
  • Supports better decision-making
  • Identifies patterns and trends
  • Converts raw data into meaningful insights

Types of Data Analysis #

Descriptive Analysis: What happened? (summary, averages)
Diagnostic Analysis: Why did it happen? (finding causes)
Predictive Analysis: What will happen? (forecasting)
Prescriptive Analysis: What should be done? (recommendations)

Steps in Data Analysis #

  • Collect data
  • Clean data
  • Explore data (EDA)
  • Analyze patterns
  • Visualize results

Basic Python Example #

Step 1: Load Data #

import pandas as pd

data = pd.read_csv("data.csv")
print(data.head())

Step 2: Basic Analysis

# Summary statistics
print(data.describe())

# Average value
print("Average Sales:", data["sales"].mean())

Step 3: Group Analysis

# Group by category
grouped = data.groupby("product")["sales"].sum()
print(grouped)

Step 4: Simple Visualization

import matplotlib.pyplot as plt

data["sales"].plot()
plt.show()
Data Analysis
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