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Check out Projects in Exploratory Data Analysis with Python
Understanding the Life Cycle of Data Science
Data Science Steps
Asking: Start by posing a curious question about the world or a problem to solve.
Hunting (Data Collection): Gather clues and observations relevant to the question, such as noting down numbers and occurrences.
Cleaning: Organize and tidy up the collected data to ensure accuracy and clarity, removing errors and confusion.
Exploring: Analyze and visualize the clean data to look for patterns, trends, and interesting findings.
Modeling: Build a model to predict outcomes or explain the observations, using the patterns found in the data.
Testing: Check whether the model’s predictions hold true by observing real-world outcomes and comparing them to expectations.
Sharing: Communicate and present the findings, insights, and journey to others through accessible means like posters or explanations.
Understanding Data Science for Beginner Level
Understanding Data Science for Intermediate Level
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