HOME > Development > Data Science with Python and Machine Learning For Beginners

Data Science with Python and Machine Learning For Beginners

  • Development
  • Nov 28, 2024
SynopsisData Science with Python and Machine Learning For Beginners,...
Data Science with Python and Machine Learning For Beginners  No.1

Data Science with Python and Machine Learning For Beginners, available at $54.99, has an average rating of 4.5, with 122 lectures, based on 2 reviews, and has 9 subscribers.

You will learn about Understand the fundamental concepts of data science. Recognize the applications and industry impact of data science. Gain proficiency in Python and R programming languages for data analysis. Utilize essential data science libraries such as Pandas, NumPy, Matplotlib, and Seaborn. Install Python and set up a development environment on Windows and macOS. Understand the concept of virtual environments and create/manage them. Familiarize with Jupyter Notebook and use it for interactive data analysis. Explore and manipulate data using Pandas DataFrames. Create and manipulate Pandas Series for efficient data handling. Load datasets into Pandas and perform initial data inspection and cleaning. Transform and analyze data using Pandas methods. Visualize data using Matplotlib and Seaborn for insights and reporting. Define machine learning and its application in data science. Understand supervised, unsupervised, and reinforcement learning techniques. Preprocess data for machine learning models, including handling missing values and encoding categorical variables. Build, train, and evaluate machine learning models using scikit-learn. Measure model performance using metrics like accuracy, confusion matrix, and classification report. Deploy a machine learning model for real-time predictions and understand model interpretability techniques. This course is ideal for individuals who are Aspiring Data Scientists or Students and Graduates or Professionals Transitioning Careers or Data Analysts and Engineers or Entrepreneurs and Business Owners or Anyone Curious About Data Science It is particularly useful for Aspiring Data Scientists or Students and Graduates or Professionals Transitioning Careers or Data Analysts and Engineers or Entrepreneurs and Business Owners or Anyone Curious About Data Science.

Enroll now: Data Science with Python and Machine Learning For Beginners

Summary

Title: Data Science with Python and Machine Learning For Beginners

Price: $54.99

Average Rating: 4.5

Number of Lectures: 122

Number of Published Lectures: 122

Number of Curriculum Items: 122

Number of Published Curriculum Objects: 122

Original Price: $49.99

Quality Status: approved

Status: Live

What You Will Learn

  • Understand the fundamental concepts of data science.
  • Recognize the applications and industry impact of data science.
  • Gain proficiency in Python and R programming languages for data analysis.
  • Utilize essential data science libraries such as Pandas, NumPy, Matplotlib, and Seaborn.
  • Install Python and set up a development environment on Windows and macOS.
  • Understand the concept of virtual environments and create/manage them.
  • Familiarize with Jupyter Notebook and use it for interactive data analysis.
  • Explore and manipulate data using Pandas DataFrames.
  • Create and manipulate Pandas Series for efficient data handling.
  • Load datasets into Pandas and perform initial data inspection and cleaning.
  • Transform and analyze data using Pandas methods.
  • Visualize data using Matplotlib and Seaborn for insights and reporting.
  • Define machine learning and its application in data science.
  • Understand supervised, unsupervised, and reinforcement learning techniques.
  • Preprocess data for machine learning models, including handling missing values and encoding categorical variables.
  • Build, train, and evaluate machine learning models using scikit-learn.
  • Measure model performance using metrics like accuracy, confusion matrix, and classification report.
  • Deploy a machine learning model for real-time predictions and understand model interpretability techniques.
  • Who Should Attend

  • Aspiring Data Scientists
  • Students and Graduates
  • Professionals Transitioning Careers
  • Data Analysts and Engineers
  • Entrepreneurs and Business Owners
  • Anyone Curious About Data Science
  • Target Audiences

  • Aspiring Data Scientists
  • Students and Graduates
  • Professionals Transitioning Careers
  • Data Analysts and Engineers
  • Entrepreneurs and Business Owners
  • Anyone Curious About Data Science
  • In today’s data-driven world, the ability to harness and interpret data is not just a valuable skill but a crucial advantage. Whether you’re an aspiring data scientist, a seasoned professional looking to expand your skill set, or an entrepreneur aiming to leverage data for strategic decisions, our comprehensive course on data science offers a transformative learning experience.

    Course Overview

    Our course begins with a foundational exploration of data science, introducing you to its principles and importance in various industries. You’ll delve into the distinctions between data science, data engineering, and data analysis, gaining a clear understanding of their respective roles and applications. Through real-world case studies and examples, you’ll discover how data science drives innovation and impacts decision-making processes across different sectors.

    Essential Tools and Technologies

    To equip you with the tools needed for effective data analysis, the course covers essential programming languages such as Python . Whether you’re manipulating data with Pandas, performing numerical operations with NumPy, or creating insightful visualizations with Matplotlib and Seaborn, you’ll develop a versatile skill set that forms the backbone of data science projects.

    Practical Skills Development

    A significant focus of the course is hands-on learning.   You’ll gain practical experience in gathering, cleaning, and analyzing data from diverse sources. Through interactive exercises and projects, you’ll hone your ability to transform raw data into actionable insights that drive business decisions.

    Environment Setup and Best Practices

    Navigating the data science environment can be daunting, especially for beginners. That’s why we guide you through the setup of Python and Jupyter Notebook on both Windows and macOS, ensuring you’re equipped with the right tools from the start. You’ll learn to create and manage virtual environments, enhancing your ability to work efficiently and maintain project dependencies.

    Data Manipulation and Visualization Mastery

    Central to effective data science is the ability to manipulate and visualize data effectively. Our course provides in-depth training in Pandas, where you’ll learn to handle complex datasets, perform data transformations, and conduct exploratory data analysis. Through immersive visualization exercises, you’ll discover how to communicate insights visually, making complex data accessible and actionable.

    Machine Learning Fundamentals

    Understanding machine learning is essential for any aspiring data scientist. You’ll explore supervised, unsupervised, and reinforcement learning techniques, applying them to real-world datasets. From preprocessing data to training and evaluating machine learning models, you’ll develop the skills needed to predict outcomes and optimize performance in various scenarios.

    Real-world Applications and Projects

    Throughout the course, you’ll apply your newfound knowledge to practical projects that simulate real-world challenges. Whether it’s predicting house prices using regression models or building a web app for interactive data analysis, these projects provide a platform to showcase your skills and build a professional portfolio.

    Career Readiness and Support

    Beyond technical skills, we prepare you for success in the competitive field of data science. You’ll learn to interpret model performance metrics like accuracy and precision, communicate findings effectively through tools like the confusion matrix and classification reports, and understand the ethical implications of data-driven decisions.

    Who Should Enroll?

    This course is designed for anyone eager to embark on a journey into data science or enhance their existing skills:

  • Aspiring Data Scientists: Individuals looking to break into the field and build a strong foundation in data analysis and machine learning.

  • Professionals Seeking Career Advancement: Data analysts, engineers, and professionals from diverse industries seeking to expand their skill set and transition into data-driven roles.

  • Entrepreneurs and Business Owners: Leaders interested in leveraging data science to drive strategic decisions and gain a competitive edge in their industry.

  • Curious Learners: Enthusiasts with a passion for data-driven insights and a desire to understand the transformative potential of data science in today’s world.

  • Conclusion

    By the end of this course, you’ll have gained the confidence and skills needed to tackle complex data challenges with proficiency and precision. Whether you’re looking to pivot your career, enhance your business acumen, or simply satisfy your curiosity about data science, our comprehensive curriculum and hands-on approach will empower you to unlock the power of data and chart your path to success.

    Enroll today and embark on your journey to mastering data science—one insightful discovery at a time.

    Course Curriculum

    Chapter 1: Introduction to Data Science

    Lecture 1: Introduction

    Lecture 2: What is Data Science?

    Lecture 3: Importance of Data Science in Today’s World

    Lecture 4: Overview of Python for Data Science

    Lecture 5: Basics of statistics for data analysis.

    Lecture 6: Ethical Considerations in Data Science

    Lecture 7: Introduction to Python Programming

    Chapter 2: Environment Setup

    Lecture 1: Python Installation on Windows

    Lecture 2: What are virtual environments

    Lecture 3: Creating and activating a virtual environment on Windows

    Lecture 4: Python Installation on macOS

    Lecture 5: Creating and activating a virtual environment on macOS

    Lecture 6: What is Jupyter Notebook

    Lecture 7: Installing Pandas and Jupyter Notebook in the Virtual Environment

    Lecture 8: Starting Jupyter Notebook

    Lecture 9: Exploring Jupyter Notebook Server Dashboard Interface

    Lecture 10: Creating a new Notebook

    Lecture 11: Exploring Jupyter Notebook Source and Folder Files

    Lecture 12: Exploring the Notebook Interface

    Chapter 3: Data Manipulation and visualization with Python and pandas

    Lecture 1: Overview of Pandas

    Lecture 2: Pandas Data Structures

    Lecture 3: Creating a Pandas Series from a List

    Lecture 4: Creating a Pandas Series from a List with Custom Index

    Lecture 5: Creating a pandas series from a Python Dictionary

    Lecture 6: Accessing Data in a Series using the index by label

    Lecture 7: Accessing Data in a Series By position

    Lecture 8: Slicing a Series by Label

    Lecture 9: Creating a DataFrame from a dictionary of lists

    Lecture 10: Creating a DataFrame From a list of dictionaries

    Lecture 11: Accessing data in a DataFrame

    Lecture 12: Download Dataset

    Lecture 13: Loading Dataset into a DataFrame

    Lecture 14: Inspecting the data

    Lecture 15: Data Cleaning

    Lecture 16: Data transformation and analysis

    Lecture 17: Visualizing data

    Chapter 4: Introduction to Machine Learning :Build and Train a Machine Learning Model

    Lecture 1: What is Machine Learning?

    Lecture 2: Installing and importing libraries

    Lecture 3: Data Preprocessing

    Lecture 4: What is a Dataset

    Lecture 5: Downloading dataset

    Lecture 6: Exploring the Dataset

    Lecture 7: Handle missing values and drop unnecessary columns.

    Lecture 8: Encode categorical variables.

    Lecture 9: What is Feature Engineering

    Lecture 10: Create new features.

    Lecture 11: Dropping unnecessary columns

    Lecture 12: Visualize survival rate by gender

    Lecture 13: Visualize survival rate by class

    Lecture 14: Visualize numerical features

    Lecture 15: Visualize the distribution of Age

    Lecture 16: Visualize number of passengers in each passenger class

    Lecture 17: Visualize number of passengers that survived

    Lecture 18: Visualize the correlation matrix of numerical variables

    Lecture 19: Visualize the distribution of Fare.

    Lecture 20: Data Preparation and Training Model

    Lecture 21: What is a Model

    Lecture 22: Define features and target variable.

    Lecture 23: Split data into training and testing sets.

    Lecture 24: Standardize features.

    Lecture 25: What is a logistic regression model.

    Lecture 26: Train logistic regression model.

    Lecture 27: Making Predictions

    Lecture 28: What is accuracy in machine learning

    Lecture 29: What is confusion matrix.

    Lecture 30: What is is classification report.

    Lecture 31: What is a Heatmap

    Lecture 32: Evaluate the model using accuracy, confusion matrix, and classification report.

    Lecture 33: Visualize the confusion matrix.

    Lecture 34: Saving the Model

    Lecture 35: Loading the model

    Lecture 36: Improving Understanding of the models prediction

    Lecture 37: Building a decision tree

    Lecture 38: Building a random forest

    Chapter 5: Predicting real house prices using machine learning

    Lecture 1: Importing Libraries and modules

    Lecture 2: Loading dataset and creating a dataframe

    Lecture 3: Checking for missing values

    Lecture 4: Dropping column and splitting data

    Lecture 5: Standardize the features for housing dataframe

    Lecture 6: Initialize and train the regression model

    Lecture 7: Make predictions on the test set.

    Lecture 8: Evaluating the model for the housing dataset.

    Lecture 9: Predicting a small sample of data

    Lecture 10: Creating scatter plot

    Lecture 11: Creating a bar plot

    Lecture 12: Saving the housing model

    Lecture 13: Loading the housing model

    Chapter 6: Build a Web App House Price Prediction Tool

    Lecture 1: What is Flask

    Lecture 2: Installing Flask

    Lecture 3: Installing Visual Studio Code

    Lecture 4: Creating a minimal flask app

    Lecture 5: How to run a flask app

    Lecture 6: Http and Http Methods

    Lecture 7: Loading the saved model and scaler into Python file

    Instructors

  • Data Science with Python and Machine Learning For Beginners  No.2
    Tech Academy
    Real Skills For The Real World
  • Rating Distribution

  • 1 stars: 0 votes
  • 2 stars: 0 votes
  • 3 stars: 0 votes
  • 4 stars: 1 votes
  • 5 stars: 1 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!