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https://github.com/mrankitgupta/statistics-for-data-science-using-python
Sharing the solved Exercises & Project of Statistics for Data Science using Python course on Coursera by Ankit Gupta
https://github.com/mrankitgupta/statistics-for-data-science-using-python
ankitgupta coursera coursera-data-science data-analysis data-science data-visualization matplotlib mrankitgupta numpy pandas python python-library python3 regression scikit-learn scipy seaborn sql statistics statsmodels
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Sharing the solved Exercises & Project of Statistics for Data Science using Python course on Coursera by Ankit Gupta
- Host: GitHub
- URL: https://github.com/mrankitgupta/statistics-for-data-science-using-python
- Owner: mrankitgupta
- License: mit
- Created: 2022-04-14T10:17:51.000Z (over 2 years ago)
- Default Branch: main
- Last Pushed: 2022-11-16T06:07:24.000Z (about 2 years ago)
- Last Synced: 2023-03-05T07:05:18.054Z (over 1 year ago)
- Topics: ankitgupta, coursera, coursera-data-science, data-analysis, data-science, data-visualization, matplotlib, mrankitgupta, numpy, pandas, python, python-library, python3, regression, scikit-learn, scipy, seaborn, sql, statistics, statsmodels
- Language: Jupyter Notebook
- Homepage:
- Size: 1.43 MB
- Stars: 5
- Watchers: 1
- Forks: 6
- Open Issues: 0
-
Metadata Files:
- Readme: README.md
- License: LICENSE
Awesome Lists containing this project
README
Statistics for Data Science using Python - by IBM
**I am sharing sharing the solved Exercises & Project of Statistics for Data Science using Python course by IBM on Coursera which I have solved into my journey of Data Science.**
**Prerequisite:**
[Data Analyst Roadmap](https://github.com/mrankitgupta/Data-Analyst-Roadmap)
:hourglass:,[Python Lessons](https://github.com/mrankitgupta/PythonLessons)
π &[Python Libraries for Data Science](https://github.com/mrankitgupta/PythonLibraries)
ποΈ### About this Course
This Statistics for Data Science course is designed to introduce you to the basic principles of statistical methods and procedures used for data analysis. After completing this course you will have practical knowledge of crucial topics in statistics including - data gathering, summarizing data using descriptive statistics, displaying and visualizing data, examining relationships between variables, probability distributions, expected values, hypothesis testing, introduction to ANOVA (analysis of variance), regression and correlation analysis. You will take a hands-on approach to statistical analysis using Python and Jupyter Notebooks β the tools of choice for Data Scientists and Data Analysts.
At the end of the course, you will complete a project to apply various concepts in the course to a Data Science problem involving a real-life inspired scenario and demonstrate an understanding of the foundational statistical thinking and reasoning. The focus is on developing a clear understanding of the different
approaches for different data types, developing an intuitive understanding, making appropriate assessments of the proposed methods, using Python to analyze our data, and interpreting the output accurately.This course is suitable for a variety of professionals and students intending to start their journey in data and statistics-driven roles such as Data Scientists, Data Analysts, Business Analysts, Statisticians, and Researchers. It does not require any computer science or statistics background. We strongly recommend taking the Python for Data Science course before starting this course to get familiar with the Python programming language, Jupyter notebooks, and libraries. An optional refresher on Python is also provided.
After completing this course, you will be able to:
β Calculate and apply measures of central tendency and measures of dispersion to grouped and ungrouped data.
β Summarize, present, and visualize data in a way that is clear, concise, and provides a practical insight for non-statisticians needing the results.
β Identify appropriate hypothesis tests to use for common data sets.
β Conduct hypothesis tests, correlation tests, and regression analysis.
β Demonstrate proficiency in statistical analysis using Python and Jupyter Notebooks.
## Technologies used βοΈ
* Python
##### Python Libraries : Pandas | NumPy | Matplotlib | Seaborn
Certifications π π βοΈ
- [Data Analysis with Python](https://github.com/mrankitgupta) - by IBM
- [Data Visualization with Python](https://github.com/mrankitgupta) - by IBM- [Pandas](https://www.kaggle.com/learn/certification/mrankitgupta/pandas) - by Kaggle
- [Numpy](https://olympus1.mygreatlearning.com/course_certificate/IQVNJSIN) & [Matplotlib](https://olympus1.mygreatlearning.com/course_certificate/RNVTUIMW) - by Great Learning
- [Databases and SQL for Data Science with Python](https://github.com/mrankitgupta) - by IBM- [Statistics for Data Science with Python](https://www.credly.com/badges/354576a0-b672-4245-8cad-82dc3f3df76f/public_url) - by IBM
## Exercises - [Statistics for Data Science using Python](https://www.credly.com/badges/354576a0-b672-4245-8cad-82dc3f3df76f/public_url) - by IBM
|**Sr.No. π’**|**Exercises π¨βπ»**| **Links :link:**|
|------|--------------------|---------------------|
|1| Introduction to probability distribution | [Exercise 1](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/1.%20Introduction_to_probability_distribution.ipynb) |
|2| Visualizing Data | [Exercise 2](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/2.%20Visualizing_Data.ipynb) |
|3| Descriptive Stats | [Exercise 3](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/3.%20Descriptive_Stats.ipynb) |
|4| Regression Analysis | [Exercise 4](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/4.%20Regression_Analysis.ipynb) |
|5| Hypothesis Testing | [Exercise 5](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/5.%20Hypothesis_Testing.ipynb) |
|6| Statistics for Data Science with Python | [Exercise 6](https://github.com/mrankitgupta/Statistics-for-Data-Science-using-Python/blob/main/Exercises%20-%20Week%201%20to%206%20of%20Statistics%20for%20Data%20Science%20with%20Python/6.%20Statistics%20for%20Data%20Science%20with%20Python.ipynb) |## Project - Boston Housing Data Analysis using Python π¨βπ»
**[My IBM Cloud Project Link](https://dataplatform.cloud.ibm.com/analytics/notebooks/v2/c1b5b665-7e89-41e6-9aae-d6f184d4245d/view?access_token=d106bb6c980e568aa5a41613f5601f81c9be999faa295fb2f2b61321e2ecbf46)** π
### About Project - Boston Housing Data Analysis using Python
Each record in the database describes a Boston suburb or town. The data was drawn from the Boston Standard Metropolitan Statistical Area (SMSA) in 1970. The attributes are deο¬ned as follows (taken from the UCI Machine Learning Repository1): CRIM: per capita crime rate by town
ZN: proportion of residential land zoned for lots over 25,000 sq.ft.
INDUS: proportion of non-retail business acres per town
CHAS: Charles River dummy variable (= 1 if tract bounds river; 0 otherwise)
NOX: nitric oxides concentration (parts per 10 million)
1https://archive.ics.uci.edu/ml/datasets/Housing
123
20.2. Load the Dataset 124
RM: average number of rooms per dwelling
AGE: proportion of owner-occupied units built prior to 1940
DIS: weighted distances to ο¬ve Boston employment centers
RAD: index of accessibility to radial highways
TAX: full-value property-tax rate per $10,000
PTRATIO: pupil-teacher ratio by town 12. B: 1000(Bkβ0.63)2 where Bk is the proportion of blacks by town 13. LSTAT: % lower status of the population
MEDV: Median value of owner-occupied homes in $1000s
We can see that the input attributes have a mixture of units.
## Related Projects:question: π¨βπ» π°οΈ
[Data Analyst Roadmap](https://github.com/mrankitgupta/Data-Analyst-Roadmap)
:hourglass:
[Spotify Data Analysis using Python](https://github.com/mrankitgupta/Spotify-Data-Analysis-using-Python)
π
[Sales Insights - Data Analysis using Tableau & SQL](https://github.com/mrankitgupta/Sales-Insights-Data-Analysis-using-Tableau-and-SQL)
π
[Kaggle - Pandas Solved Exercises](https://github.com/mrankitgupta/Kaggle-Pandas-Solved-Exercises)
π
[Python Lessons](https://github.com/mrankitgupta/PythonLessons)
π
[Python Libraries for Data Science](https://github.com/mrankitgupta/PythonLibraries)
ποΈ### Liked my Contributions:question:[Follow Me](https://github.com/mrankitgupta/):point_right: [Nominate Me for GitHub Stars](https://stars.github.com/nominate/) :star: :sparkles:
## For any queries/doubts π π
### [Ankit Gupta](https://ankitgupta.bio.link/)