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    Data Science, AI, Machine Learning with Python

    Posted By: lucky_aut
    Data Science, AI, Machine Learning with Python

    Data Science, AI, Machine Learning with Python
    Published 6/2024
    Duration: 49h55m | .MP4 1280x720, 30 fps(r) | AAC, 44100 Hz, 2ch | 37.4 GB
    Genre: eLearning | Language: English

    Complete Python Course: Data Science, Artificial Intelligence, and Machine Learning from basics to advanced


    What you'll learn
    Learn the basics of Data Science, Artificial Intelligence, and Machine Learning
    Understand and implement the Python Environment Setup
    Get introduced to Python Programming for AI, DS and ML
    Learn Data Importing
    Understand Exploratory Data Analysis & Descriptive Statistics
    Master Probability Theory & Inferential Statistics
    Learn how to do Data Visualization using Python
    Take a deep-dive into implementation of Data Cleaning, Data Manipulation & Pre-processing using Python programming
    Understand Predictive Modeling & Machine Learning

    Requirements
    Enthusiasm and determination to make your mark on the world!

    Description
    A warm welcome to the Data Science, Artificial Intelligence, and Machine Learning with Python course by
    Uplatz
    .
    Data Science
    Data Science is an interdisciplinary field focused on extracting knowledge and insights from structured and unstructured data. It involves various techniques from statistics, computer science, and information theory to analyze and interpret complex data.
    Key Components:
    Data Collection:
    Gathering data from various sources.
    Data Cleaning:
    Preparing data for analysis by handling missing values, outliers, etc.
    Data Exploration:
    Analyzing data to understand its structure and characteristics.
    Data Analysis:

    Applying statistical and machine learning techniques to extract insights.
    Data Visualization:
    Presenting data in a visual context to make the analysis results understandable.
    Python in Data Science
    Python is widely used in Data Science because of its simplicity and the availability of powerful libraries:
    Pandas:
    For data manipulation and analysis.
    NumPy:
    For numerical computations.
    Matplotlib and Seaborn:
    For data visualization.
    SciPy:
    For advanced statistical operations.
    Jupyter Notebooks:
    For interactive data analysis and sharing code and results.
    Artificial Intelligence (AI)
    Artificial Intelligence is the broader concept of machines being able to carry out tasks in a way that we would consider “smart.” It includes anything from a computer program playing a game of chess to voice recognition systems like Siri and Alexa.
    Key Components:
    Expert Systems:
    Computer programs that emulate the decision-making ability of a human expert.
    Natural Language Processing (NLP):
    Understanding and generating human language.
    Robotics:
    Designing and programming robots to perform tasks.
    Computer Vision:
    Interpreting and understanding visual information from the world.
    Python in AI
    Python is preferred in AI for its ease of use and the extensive support it provides through various libraries:
    TensorFlow and PyTorch:
    For deep learning and neural networks.
    OpenCV:
    For computer vision tasks.
    NLTK and spaCy:
    For natural language processing.
    Scikit-learn:
    For general machine learning tasks.
    Keras:
    For simplifying the creation of neural networks.
    Machine Learning (ML)
    Machine Learning is a subset of AI that involves the development of algorithms that allow computers to learn from and make predictions or decisions based on data. It can be divided into supervised learning, unsupervised learning, and reinforcement learning.
    Key Components:
    Supervised Learning:
    Algorithms are trained on labeled data.
    Unsupervised Learning:
    Algorithms find patterns in unlabeled data.
    Reinforcement Learning:
    Algorithms learn by interacting with an environment to maximize some notion of cumulative reward.
    Python in Machine Learning
    Python is highly utilized in ML due to its powerful libraries and community support:
    Scikit-learn:
    For implementing basic machine learning algorithms.
    TensorFlow and PyTorch:
    For building and training complex neural networks.
    Keras:
    For simplifying neural network creation.
    XGBoost:
    For gradient boosting framework.
    LightGBM:
    For gradient boosting framework optimized for speed and performance.
    Python serves as a unifying language across these domains due to:
    Ease of Learning and Use:
    Python's syntax is clear and readable, making it accessible for beginners and efficient for experienced developers.
    Extensive Libraries and Frameworks:
    Python has a rich ecosystem of libraries that simplify various tasks in data science, AI, and ML.
    Community and Support:
    A large and active community contributes to a wealth of resources, tutorials, and forums for problem-solving.
    Integration Capabilities:
    Python can easily integrate with other languages and technologies, making it versatile for various applications.
    Artificial Intelligence, Data Science, and Machine Learning with Python - Course Curriculum
    1. Overview of Artificial Intelligence, and Python Environment Setup
    Essential concepts of Artificial Intelligence, data science, Python with Anaconda environment setup
    2. Introduction to Python Programming for AI, DS and ML
    Basic concepts of python programming
    3. Data Importing
    Effective ways of handling various file types and importing techniques
    4. Exploratory Data Analysis & Descriptive Statistics
    Understanding patterns, summarizing data
    5. Probability Theory & Inferential Statistics
    Core concepts of mastering statistical thinking and probability theory
    6. Data Visualization
    Presentation of data using charts, graphs, and interactive visualizations
    7. Data Cleaning, Data Manipulation & Pre-processing
    Garbage in - Garbage out (Wrangling/Munging): Making the data ready to use in statistical models
    8. Predictive Modeling & Machine Learning
    Set of algorithms that use data to learn, generalize, and predict
    1. Overview of Data Science and Python Environment Setup
    Overview of Data Science
    Introduction to Data Science
    Components of Data Science
    Verticals influenced by Data Science
    Data Science Use cases and Business Applications
    Lifecycle of Data Science Project
    Python Environment Setup
    Introduction to Anaconda Distribution
    Installation of Anaconda for Python
    Anaconda Navigator and Jupyter Notebook
    Markdown Introduction and Scripting
    Spyder IDE Introduction and Features
    2. Introduction to Python Programming
    Variables, Identifiers, and Operators
    Variable Types
    Statements, Assignments, and Expressions
    Arithmetic Operators and Precedence
    Relational Operators
    Logical Operators
    Membership Operators
    Iterables / Containers
    Strings
    Lists
    Tuples
    Sets
    Dictionaries
    Conditionals and Loops
    if else
    While Loop
    For Loop
    Continue, Break and Pass
    Nested Loops
    List comprehensions
    Functions
    Built-in Functions
    User-defined function
    Namespaces and Scope
    Recursive Functions
    Nested function
    Default and flexible arguments
    Lambda function
    Anonymous function
    3. Data Importing
    Flat-files data
    Excel data
    Databases (MySQL, SQLite…etc)
    Statistical software data (SAS, SPSS, Stata…etc)
    web-based data (HTML, XML, JSON…etc)
    Cloud hosted data (Google Sheets)
    social media networks (Facebook Twitter Google sheets APIs)
    4. Data Cleaning, Data Manipulation & Pre-processing
    Handling errors, missing values, and outliers
    Irrelevant and inconsistent data
    Reshape data (adding, filtering, and merging)
    Rename columns and data type conversion
    Feature selection and feature scaling
    useful Python packages
    Numpy
    Pandas
    Scipy
    5. Exploratory Data Analysis & Descriptive Statistics
    Types of Variables & Scales of Measurement
    Qualitative/Categorical
    Nominal
    Ordinal
    Quantitative/Numerical
    Discrete
    Continuous
    Interval
    Ratio
    Measures of Central Tendency
    Mean, median, mode,
    Measures of Variability & Shape
    Standard deviation, variance, and Range, IQR
    Skewness & Kurtosis
    Univariate data analysis
    Bivariate data analysis
    Multivariate Data analysis
    6. Probability Theory & Inferential Statistics
    Probability & Probability Distributions
    Introduction to probability
    Relative Frequency and Cumulative Frequency
    Frequencies of cross-tabulation or Contingency Tables
    Probabilities of 2 or more Events
    Conditional Probability
    Independent and Dependent Events
    Mutually Exclusive Events
    Bayes’ Theorem
    binomial distribution
    uniform distribution
    chi-squared distribution
    F distribution
    Poisson distribution
    Student's t distribution
    normal distribution
    Sampling, Parameter Estimation & Statistical Tests
    Sampling Distribution
    Central Limit Theorem
    Confidence Interval
    Hypothesis Testing
    z-test, t-test, chi-squared test, ANOVA
    Z scores & P-Values
    Correlation & Covariance
    7. Data Visualization
    Plotting Charts and Graphics
    Scatterplots
    Bar Plots / Stacked bar chart
    Pie Charts
    Box Plots
    Histograms
    Line Graphs
    ggplot2, lattice packages
    Matplotlib & Seaborn packages
    Interactive Data Visualization
    Plot ly
    8. Statistical Modeling & Machine Learning
    Regression
    Simple Linear Regression
    Multiple Linear Regression
    Polynomial regression
    Classification
    Logistic Regression
    K-Nearest Neighbors (KNN)
    Support Vector Machines
    Decision Trees, Random Forest
    Naive Bayes Classifier
    Clustering
    K-Means Clustering
    Hierarchical clustering
    DBSCAN clustering
    Association Rule Mining
    Apriori
    Market Basket Analysis
    Dimensionality Reduction
    Principal Component Analysis (PCA)
    Linear Discriminant Analysis (LDA)
    Ensemble Methods
    Bagging
    Boosting
    9. End to End Capstone Project
    Who this course is for:
    Data Scientists and Machine Learning Engineers
    Beginners & newbies aspiring for a career in Data Science and Machine Learning
    Anyone Interested in Data Science and AI
    Software Developers and Engineers
    Data Analysts and Business Analysts
    Researchers and Academics
    IT and Data Professionals
    Managers and Executives
    Entrepreneurs and Startups

    More Info