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Python for Data Science - NumPy, Pandas & Scikit-Learn

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  • 22,635 Students
  • Updated 10/2023
4.3
(45 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
1 Hour(s) 33 Minute(s)
Language
English
Taught by
Paweł Krakowiak
Rating
4.3
(45 Ratings)
1 views

Course Overview

Python for Data Science - NumPy, Pandas & Scikit-Learn

Master Python for Data Science - Unlock the Key Tools for Efficient Data Analysis and Modeling!

This course is a comprehensive guide to Python's most powerful data science libraries, designed to provide you with the skills necessary to tackle complex data analysis projects.

This course is tailored for beginners who want to delve into the world of data science, as well as experienced programmers who wish to diversify their skill set. You will learn to manipulate, analyze, and visualize data using Python, a leading programming language for data science.

The course begins with an exploration of NumPy, the fundamental package for numerical computing in Python. You'll gain a strong understanding of arrays and array-oriented computing which is crucial for performance-intensive data analysis.

The focus then shifts to Pandas, a library designed for data manipulation and analysis. You'll learn to work with Series and DataFrames, handle missing data, and perform operations like merge, concatenate, and group by.

The final section of the course is dedicated to Scikit-Learn, a library providing efficient tools for machine learning and statistical modeling. Here you'll delve into data preprocessing, model selection, and evaluation, as well as a broad range of algorithms for classification, regression, clustering, and dimensionality reduction.

By the end of this course, you will have a firm grasp of how to use Python's primary data science libraries to conduct sophisticated data analysis, equipping you with the knowledge to undertake your own data-driven projects.


Python for Data Science: Empowering Insight Through Code

Python is the go-to language for data science, offering powerful libraries like NumPy for numerical computing, Pandas for data manipulation, and Scikit-learn for machine learning. Together, these tools enable efficient data analysis, transformation, and model building—making Python an essential skill for turning raw data into actionable insights.


Some topics you will find in the NumPy exercises:

  • working with numpy arrays

  • generating numpy arrays

  • generating numpy arrays with random values

  • iterating through arrays

  • dealing with missing values

  • working with matrices

  • reading/writing files

  • joining arrays

  • reshaping arrays

  • computing basic array statistics

  • sorting arrays

  • filtering arrays

  • image as an array

  • linear algebra

  • matrix multiplication

  • determinant of the matrix

  • eigenvalues and eignevectors

  • inverse matrix

  • shuffling arrays

  • working with polynomials

  • working with dates

  • working with strings in array

  • solving systems of equations


Some topics you will find in the Pandas exercises:

  • working with Series

  • working with DatetimeIndex

  • working with DataFrames

  • reading/writing files

  • working with different data types in DataFrames

  • working with indexes

  • working with missing values

  • filtering data

  • sorting data

  • grouping data

  • mapping columns

  • computing correlation

  • concatenating DataFrames

  • calculating cumulative statistics

  • working with duplicate values

  • preparing data to machine learning models

  • dummy encoding

  • working with csv and json filles

  • merging DataFrames

  • pivot tables


Topics you will find in the Scikit-Learn exercises:

  • preparing data to machine learning models

  • working with missing values, SimpleImputer class

  • classification, regression, clustering

  • discretization

  • feature extraction

  • PolynomialFeatures class

  • LabelEncoder class

  • OneHotEncoder class

  • StandardScaler class

  • dummy encoding

  • splitting data into train and test set

  • LogisticRegression class

  • confusion matrix

  • classification report

  • LinearRegression class

  • MAE - Mean Absolute Error

  • MSE - Mean Squared Error

  • sigmoid() function

  • entorpy

  • accuracy score

  • DecisionTreeClassifier class

  • GridSearchCV class

  • RandomForestClassifier class

  • CountVectorizer class

  • TfidfVectorizer class

  • KMeans class

  • AgglomerativeClustering class

  • HierarchicalClustering class

  • DBSCAN class

  • dimensionality reduction, PCA analysis

  • Association Rules

  • LocalOutlierFactor class

  • IsolationForest class

  • KNeighborsClassifier class

  • MultinomialNB class

  • GradientBoostingRegressor class

Course Content

  • 10 section(s)
  • 344 lecture(s)
  • Section 1 Tips
  • Section 2 Starter
  • Section 3 ----- NUMPY -----
  • Section 4 Exercises 1-10
  • Section 5 Exercises 11-20
  • Section 6 Exercises 21-30
  • Section 7 Exercises 31-40
  • Section 8 Exercises 41-50
  • Section 9 Exercises 51-60
  • Section 10 Exercises 61-70

What You’ll Learn

  • solve over 330 exercises in NumPy, Pandas and Scikit-Learn
  • deal with real programming problems in data science
  • work with documentation and Stack Overflow
  • guaranteed instructor support


Reviews

  • P
    Pravin Bhawar
    3.5

    yea it was good experience.

  • P
    Paweł Pojawa Centralny Ośrodek Informatyki, NIP PL7252036863
    4.0

    Dzięki dużej liczbie ćwiczeń kurs pozwolił mi oswoić się z pracą w numpy, pandas i modelami scikit-learn.

  • I
    Ivailo Petrov
    5.0

    Very practical! There is no load_boston() anymore ... Thanks

  • E
    Edgar Orlando Alarcón
    3.5

    Los videos al menos con traducción. cada sección debería tener su videos generales.

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