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    Data Analysis And Machine Learning: Python + Gpt 3.5 & Gpt 4

    Posted By: ELK1nG
    Data Analysis And Machine Learning: Python + Gpt 3.5 & Gpt 4

    Data Analysis And Machine Learning: Python + Gpt 3.5 & Gpt 4
    Published 3/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 3.24 GB | Duration: 8h 57m

    Hands-on Data Analysis and Machine Learning in Python + GPT 3.5. Apply GPT-4 to Analyze and Develop ML Models Smoothly.

    What you'll learn

    Learn to proficiently use Python for various machine learning tasks, including data cleaning, manipulation, preprocessing, and model development.

    Gain expertise in building and implementing supervised machine learning models: Regressions, Classifications, Random Forest, Decision Tree, SVM, and KNN, etc.

    Acquire skills in unsupervised machine learning techniques, including KMeans for effective cluster analysis and pattern recognition.

    Develop the ability to measure and evaluate the accuracy and performance of machine learning models, enabling decisions on model selection and optimization.

    Apply acquired knowledge to real-world scenarios, solving diverse machine learning challenges and developing solutions.

    Learn to efficiently prepare and clean datasets using GPT-4, including handling missing data, outliers, and data type conversions.

    Master the use of GPT-4 for advanced data manipulation tasks, such as merging datasets, creating pivot tables, and applying conditional logic.

    Develop skills to utilize GPT-4 for creating and interpreting a variety of data visualizations, such as histograms, scatter plots, and line graphs.

    Learn to apply GPT-4 for predictive analytics, including random forest regressor and other machine learning models.

    Acquire the ability to automate repetitive data analysis tasks using GPT-4, enhancing efficiency and productivity.

    Requirements

    No coding Experience is Needed.

    Laptop/Desktop and Internet

    Description

    Accelerate your journey to mastering data analysis and machine learning with our dynamic course: "Data Analysis and Machine Learning: Python + GPT 3.5 & GPT 4". Immerse yourself in a comprehensive curriculum that seamlessly integrates essential tools such as Pandas, Numpy, Seaborn, Scikit-learn, Python, and the innovative capabilities of ChatGPT.Embark on an immersive learning experience designed to guide you through every facet of the machine-learning process. From data cleaning and manipulation to preprocessing and model development, you'll traverse each stage with precision and confidence.Dive deep into hands-on tutorials where you'll gain proficiency in crafting supervised models, including but not limited to Linear Regression, Logistic Regression, Random Forests, Decision Trees, SVM, XGBoost, and KNN. Explore the realm of unsupervised models with techniques like KMeans and DBSCAN for cluster analysis.Our strategic course structure ensures swift comprehension of complex concepts, empowering you to navigate through machine learning tasks effortlessly. Engage in practical exercises that not only solidify theoretical foundations but also enhance your practical skills in model building.Measure the accuracy and performance of your models with precision, enabling you to make informed decisions and select the most suitable models for your specific use case. Beyond analysis, learn to create compelling data visualizations and automate repetitive tasks, significantly boosting your productivity.By the course's conclusion, you'll possess a robust foundation in leveraging GPT-4 for data analysis, equipped with practical skills ready to be applied in real-world scenarios. Whether you're a novice eager to explore machine learning or a seasoned professional seeking to expand your skill set, our course caters to all levels of expertise.Join us on this transformative learning journey, where efficiency meets excellence, and emerge with the confidence to tackle real-world data analysis and machine learning challenges head-on with python and GPT. Fast-track your path to becoming a proficient data analysis and machine learning practitioner with our dynamic and comprehensive course.

    Overview

    Section 1: Setting Up Your Analysis Environment

    Lecture 1 Install Python and Jupyter Notebook

    Lecture 2 Setting up ChatGPT and GPT 4

    Lecture 3 Download Practice datasets

    Section 2: Data Analysis and Its Workflow

    Lecture 4 Data Analysis and Its Characteristics

    Lecture 5 Complete data analysis workflow

    Section 3: Statistical Analysis and Its Workflow

    Lecture 6 Statistical Analysis and Its Characteristics

    Lecture 7 Confidence level, significance level and P-value

    Lecture 8 Complete hypothesis testing workflow

    Section 4: Machine Learning and Its Workflow

    Lecture 9 Machine Learning and Its Characteristics

    Lecture 10 Complete Machine Learning Work-flow

    Section 5: Python Programming Basics Level 1

    Lecture 11 Your First Python Code

    Lecture 12 Variables and naming conventions

    Lecture 13 Data types: integers, float, strings, boolean

    Lecture 14 Type conversion and casting

    Lecture 15 Arithmetic operators (+, -, *, /, %, **)

    Lecture 16 Comparison operators (>, =, <=, ==, !=)

    Lecture 17 Logical operators (and, or, not)

    Section 6: Python Programming Basics Level 2

    Lecture 18 Lists: creation, indexing, slicing, modifying

    Lecture 19 Sets: unique elements, operations

    Lecture 20 Dictionaries: key-value pairs, methods

    Lecture 21 Conditional statements (if, elif, else)

    Lecture 22 Logical expressions in conditions

    Lecture 23 Looping structures (for loops, while loops)

    Lecture 24 Defining, Creating and Calling functions

    Section 7: Python + GPT 3.5 - Learn Data Cleaning

    Lecture 25 Loading dataset

    Lecture 26 Handling missing values

    Lecture 27 Deal with inconsistent data

    Lecture 28 Dealing with miss-identified data types

    Lecture 29 Dealing with duplicated data

    Section 8: Python + GPT 3.5 - Learn Data Manipulation

    Lecture 30 Sorting and arranging dataset

    Lecture 31 Filter data based on conditions

    Lecture 32 Merging or adding variables

    Lecture 33 Concatenating extra data

    Section 9: Python + GPT 3.5 - Learn Data Preprocessing

    Lecture 34 Feature engineering

    Lecture 35 Extracting day, months, year

    Lecture 36 Feature encoding

    Lecture 37 Creating dummy variables

    Lecture 38 Data normalizing

    Lecture 39 Splitting data

    Section 10: Python + GPT 3.5 - Learn Regressor Machine Learning

    Lecture 40 Linear regression ML model

    Lecture 41 Decision Tree regression ML model

    Lecture 42 Random Forest regression ML model

    Lecture 43 Support Vector regression ML model

    Section 11: Python + GPT 3.5 - Learn Classification Machine Learning

    Lecture 44 Logistic Regression ML model

    Lecture 45 Decision Tree classification ML model

    Lecture 46 Random Forest classification ML model

    Lecture 47 K Nearest Neighbours classification ML model

    Section 12: Python + GPT 3.5 - Learn Clustering Machine Learning

    Lecture 48 KMeans Clustering ML model

    Section 13: Python + GPT 4 - Rapid Data Cleaning

    Lecture 49 Getting Started with GPT-4 Data Analyst

    Lecture 50 Identify missing values

    Lecture 51 Impute missing values

    Lecture 52 Exploring data types

    Lecture 53 Finding inconsistent values

    Lecture 54 Dropping inconsistent values

    Lecture 55 Dealing with duplicates

    Section 14: Python + GPT 4 - Instant Data Manipulation

    Lecture 56 Sorting dataset

    Lecture 57 Filtering datasets

    Lecture 58 Inner joining method

    Lecture 59 Other joining methods

    Lecture 60 Box-cox transformation

    Lecture 61 Feature binning

    Lecture 62 Feature encoding

    Lecture 63 Creating dummy variables

    Section 15: Python + GPT 4 - Fast-track Data Analysis

    Lecture 64 Nominal data analysis

    Lecture 65 Descriptive analysis

    Lecture 66 Group by data analysis

    Lecture 67 Crosstabulation analysis

    Lecture 68 Correlation analysis

    Section 16: Python + GPT 4 - Quick Hypothesis Testing

    Lecture 69 One-way ANOVA analysis

    Lecture 70 Pearson correlation analysis

    Lecture 71 Regression analysis

    Section 17: Python + GPT 4 - Build Machine Learning Models

    Lecture 72 Feature scaling and preprocessing

    Lecture 73 Splitting data into train and test sets

    Lecture 74 Build and evaluate ML models

    Python Enthusiasts enhance their programming with AI,Data Science aspirants looking for hands-on course,Complete Beginners wants to learn machine learning easiest way,Anyone wants to simplify and fasten data analysis workflow with ChatGPT