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Python Bootcamp 2025 - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Python Bootcamp 2025 (/Thread-Python-Bootcamp-2025) |
Python Bootcamp 2025 - AD-TEAM - 11-11-2025 ![]() Python Bootcamp Published 9/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 3.63 GB | Duration: 9h 36m Master Python and unlock power of data with NumPy, Pandas, Matplotlib, Seaborn, Scikit-Learn, TensorFlow, and PyTorch What you'll learn Gain a thorough understanding of Python syntax, script writing, and core concepts such as variables, data types, and string operations Master the use of conditional statements and loops in Python to automate and optimize data processing tasks Learn to design reusable Python functions to perform repetitive tasks efficiently, including recursion and lambda functions Understand how to use NumPy arrays for complex mathematical computations and effectively handle large datasets with high performance Master the use of Pandas for data manipulation and analysis; learn how to explore, clean, and transform data into a suitable format Develop the ability to create insightful visual representations of data using Matplotlib and Seaborn libraries of Python Gain hands-on experience with Scikit-Learn, applying supervised and unsupervised learning algorithms to solve real-world machine learning problems Understand the fundamentals of Deep Learning and neural networks, forming the foundation to work with TensorFlow and PyTorch frameworks Build and evaluate deep learning models in PyTorch, including projects such as Fashion MNIST classification and cancer prediction Requirements No prior experience in Python or data analysis is required; just basic computer skills and access to a computer with an internet connection are necessary to start this course. Description Are you looking to build a career in data science or elevate your data analysis skills? Do you often wonder how professionals transform raw data into meaningful insights that drive decisions? If your goal is to confidently step into the world of Python programming, machine learning, and deep learning, then this course is your complete guide.Python Bootcamp is a comprehensive bootcamp designed to take you from the fundamentals of Python all the way to advanced data science applications. Whether you are a beginner or someone with prior programming experience, this course will equip you with the knowledge and practical skills required to thrive in the data-driven world.By enrolling in this course, you will:Build a strong foundation in Python programming - from basic syntax, data types, and loops to advanced functions and file handling.Master essential data science libraries including NumPy for numerical computing, Pandas for data manipulation, and Matplotlib and Seaborn for powerful data visualizations.Gain expertise in machine learning with Scikit-Learn, exploring supervised and unsupervised learning techniques, model selection, and evaluation.Dive into deep learning fundamentals, learning how neural networks work and how to implement them using TensorFlow and PyTorch.Work on real-world projects, including classification tasks with datasets like Fashion MNIST and Melanoma Cancer Prediction, applying everything you learn in practical scenarios.Develop end-to-end data analysis workflows - from data cleaning and transformation to visualization and predictive modeling.Why this course is essential for you:In today's data-driven landscape, the ability to analyze, visualize, and model data is one of the most in-demand skills across industries. Python stands out as the most popular and versatile language in data science, powering everything from academic research to business intelligence and AI innovation.This bootcamp doesn't just teach you concepts; it empowers you to apply them immediately. Through hands-on coding exercises, projects, and guided assignments, you will not only understand the "how" but also the "why" behind each step.What makes this course unique?A step-by-step journey from beginner-friendly Python programming to advanced machine learning and deep learning.A practical, project-driven approach - learn by doing, not just by theory.Coverage of the entire data science ecosystem - from NumPy, Pandas, and visualization tools to Scikit-Learn, TensorFlow, and PyTorch.Real-world datasets and case studies to prepare you for professional data challenges.Don't let data feel overwhelming anymore. Take charge and transform it into actionable insights.Enroll in Python Bootcamp today and begin your journey toward becoming a confident, skilled, and job-ready data professional. Overview Section 1: Introduction Lecture 1 Introduction Lecture 2 Course resources Section 2: Getting Started with Python Lecture 3 What is Python & Why Learn It? Lecture 4 This is a Milestone! Lecture 5 Understanding Variables in Python Lecture 6 Python Data Types Lecture 7 Working with Strings in Python Lecture 8 Useful String Methods Section 3: Data Structures in Python Lecture 9 Lists in Python Lecture 10 Understanding Tuples Lecture 11 Working with Dictionaries Lecture 12 Sets in Python Section 4: Conditional Statements in Python Lecture 13 Introduction to Conditional Statements Lecture 14 Operators and Advanced Conditions Section 5: Loops in Python Lecture 15 For Loops in Python Lecture 16 While Loops in Python Section 6: Functions in Python Lecture 17 Defining and Using Functions Lecture 18 Understanding Recursion Lecture 19 Lambda Functions in Python Section 7: File Handling in Python Lecture 20 Reading and Writing Files in Python Section 8: Machine Learning Basic Lecture 21 Introduction to Machine Learning Section 9: Numpy Library Lecture 22 Overview of NumPy and Its Core Concepts Lecture 23 Indexing and Selecting Data in NumPy Arrays Lecture 24 Understanding Array Data Types, Shapes, and Stacking Lecture 25 Techniques for Creating Arrays in NumPy Lecture 26 Performing Mathematical and Statistical Operations with Arrays Section 10: Pandas Library Lecture 27 Introduction to Pandas DataFrames Lecture 28 Working with Series and DataFrames Lecture 29 Core Methods for Data Analysis in Pandas Lecture 30 Handling Missing and Null Data Lecture 31 DataFrame Transformation and Manipulation Section 11: Matplotlib Library Lecture 32 Getting Started with Matplotlib Library Lecture 33 Plotting Fundamentals: Creating and Customizing Visuals Lecture 34 Subplots and Scatter Plots: Comparative and Relational Analysis Lecture 35 Bar Charts, Histograms, and Pie Charts: Distribution and Composition Insights Section 12: Seaborn Library Lecture 36 Introduction to the Seaborn Library Lecture 37 Visualizing Distributions: Univariate and Bivariate Analysis Lecture 38 Advanced Plots in Seaborn: Pairplots and Barplot Customization Lecture 39 Complex Visualizations: Countplots and Heatmaps Section 13: Scikit-Learn (sklearn) Library Lecture 40 Introduction to Scikit-Learn and Environment Setup Lecture 41 Data Loading Utilities in Scikit-Learn Lecture 42 Supervised Learning with Scikit-Learn Lecture 43 Unsupervised Learning with Scikit-Learn Lecture 44 Data Transformation Techniques in Scikit-Learn Lecture 45 Model Selection and Evaluation in Scikit-Learn Lecture 46 Visualization Tools in Scikit-Learn Lecture 47 Saving and Reusing Models in Scikit-Learn Section 14: Deep Learning Basic Lecture 48 Introduction to Deep Learning Section 15: Tensorflow Framework Lecture 49 Introduction to TensorFlow Lecture 50 Working with Tensors and TensorFlow Operations Lecture 51 Key Components of TensorFlow Lecture 52 Building Models with Keras in TensorFlow Lecture 53 Understanding the Variety of Layers in Neural Networks Lecture 54 Project - Fashion MNIST Classification with TensorFlow Section 16: PyTorch Framework Lecture 55 Introduction to PyTorch Lecture 56 Tensor Operations in PyTorch Lecture 57 Building Neural Networks with PyTorch Lecture 58 Project - Melanoma Cancer Prediction with PyTorch Lecture 59 Project Extension - Data Augmentation for Cancer Prediction Lecture 60 Project Extension - Defining a Custom Neural Network Lecture 61 Evaluating Models with Confusion Matrix in PyTorch Lecture 62 The final milestone! Section 17: Conclusion Lecture 63 About your certificate Lecture 64 Bonus Lecture Complete beginners who want to learn Python programming step by step, starting from the basics and moving towards advanced applications.,Aspiring data scientists and analysts who want a structured, hands-on pathway to mastering Python libraries like NumPy, Pandas, Matplotlib, Seaborn, and Scikit-Learn.,Software developers, engineers, and IT professionals looking to expand their skill set into data analysis, machine learning, and deep learning.,Students and academic researchers who want to apply Python programming to analyze datasets, visualize results, and gain actionable insights for projects and publications.,Professionals working with business data, marketing analytics, or finance who want to automate data processing and generate meaningful insights efficiently.,Enthusiasts interested in deep learning, and neural networks who want practical exposure to frameworks like TensorFlow and PyTorch through real-world projects. 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