Data Science Basic

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About Course

Python or R Programming – Data manipulation, scripting, visualization.

Statistics & Probability – Descriptive stats, hypothesis testing, distributions.

Data Wrangling & Cleaning – Handling missing values, outliers, and transformations.

Exploratory Data Analysis (EDA) – Visualizations using tools like Matplotlib, Seaborn.

Machine Learning – Supervised and unsupervised learning with Scikit-learn or TensorFlow.

SQL & Databases – Querying and managing data.

Big Data Technologies – Introduction to tools like Hadoop, Spark.

Data Visualization – Tools like Power BI, Tableau, Plotly.

Model Evaluation & Deployment – Cross-validation, overfitting, APIs, cloud deployment.

Capstone Projects – Real-world problems using datasets from Kaggle or other sources.

What Will You Learn?

  • Clean and analyze datasets using Python
  • Create dashboards using Power BI
  • Apply supervised machine learning techniques
  • Work on a real-world data science project
  • Interpret and present insights effectively

Course Content

Complete Data Science Workflow
This curriculum covers the end-to-end journey of a data scientist—from understanding data science fundamentals and Python programming, to visualizing data, applying machine learning models, and completing real-world projects. It provides a practical, hands-on approach to mastering data-driven decision-making skills.

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  • Data Science Quiz

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