Tags
Language
Tags
June 2025
Su Mo Tu We Th Fr Sa
1 2 3 4 5 6 7
8 9 10 11 12 13 14
15 16 17 18 19 20 21
22 23 24 25 26 27 28
29 30 1 2 3 4 5
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    Full Stack Python Development Building Realworld Application

    Posted By: ELK1nG
    Full Stack Python Development Building Realworld Application

    Full Stack Python Development Building Realworld Application
    Published 1/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 13.28 GB | Duration: 18h 15m

    Master Python for Full Stack Development. Build scalable web apps, APIs, and databases using Django, Flask, and React.

    What you'll learn

    Master Python Fundamentals: Gain a solid understanding of Python syntax, data structures, control flow, and functions.

    Build Dynamic User Interfaces: Learn HTML, CSS, and JavaScript to create interactive and visually appealing web pages.

    Develop Server-Side Logic: Utilize Python frameworks like Django or Flask to handle user requests, manage data, and power your web applications.

    Connect to Databases: Work with relational databases like PostgreSQL or MySQL to store and retrieve data for your applications.

    Deploy Applications: Learn how to deploy your web application to a live server, making it accessible to users worldwide.

    Requirements

    This course is designed for beginners and requires no prior programming experience.

    You'll be starting with the fundamentals and building your skills step-by-step.

    A basic understanding of computers and the internet will be helpful, but not mandatory.

    A computer with a reliable internet connection.

    Enthusiasm for learning and problem-solving!

    No prior programming experience is required! This course is designed for beginners with an interest in web development and a willingness to learn.

    amiliarity with using a computer and navigating operating systems.

    Ability to follow written instructions and troubleshoot basic computer issues.

    Description

    Are you ready to become a proficient full-stack developer using Python? This course is your ultimate guide to mastering full-stack development, focusing on building real-world, scalable applications. Whether you are a beginner or have prior programming experience, this course provides a hands-on approach to understanding and implementing Python in full-stack development.In this course, you will:Learn Python fundamentals for backend development.Master frontend frameworks like React and HTML/CSS.Build robust APIs using Flask and Django.Understand database integration with MySQL, PostgreSQL, and MongoDB.Deploy web applications on cloud platforms like AWS and Heroku.Collaborate on real-world projects, following Agile and Git-based workflows.By the end of the course, you will have built a fully functional, real-world application and gained the confidence to tackle modern web development challenges.This course is perfect for students, software professionals, and anyone passionate about creating impactful, scalable web solutions.Enroll now and begin your journey to becoming a Full Stack Python Developer!By the end of the course, you will have built a fully functional, real-world application and gained the confidence to tackle modern web development challenges.This course is perfect for students, software professionals, and anyone passionate about creating impactful, scalable web solutions.Enroll now and begin your journey to becoming a Full Stack Python Developer!

    Overview

    Section 1: Introduction to Python and Lists

    Lecture 1 Python Lists: Your Creative Toolkit

    Lecture 2 Mastering List Magic: Advanced Techniques

    Lecture 3 From Data to Art: Lists and Tuples in Action

    Lecture 4 Unleash Your Creativity with Sets

    Lecture 5 Organizing Your Art with Dictionaries

    Lecture 6 Text Alchemy: String Manipulation in Python

    Lecture 7 Time as Art: Working with Dates and Times in Python

    Lecture 8 Data-Driven Storytelling: Customer Churn Prediction

    Lecture 9 The Power of Lambda: Functional Programming for Artists

    Lecture 10 Map, Reduce, and Conquer: Functional Programming Essentials

    Lecture 11 Building Blocks of Creativity: Functions in Python

    Lecture 12 Function Mastery: Arguments, Scope, and Beyond

    Section 2: Recursion and Global Variables

    Lecture 13 Recursive Art: Unlocking Patterns with Python

    Lecture 14 Time as a Feature: Engineering with Datetime

    Lecture 15 Unveiling the Iris Dataset: A Machine Learning Prelude

    Lecture 16 Python's Math and Random Toolbox

    Lecture 17 Exploring Your Data: File Handling and EDA

    Lecture 18 Finding Patterns: Correlation and Visualization

    Lecture 19 Data Distributions: Telling Your Story

    Lecture 20 Spotting the Unusual: Outlier Detection Techniques

    Lecture 21 Mastering Outliers: Advanced Detection Strategies

    Lecture 22 Data Preparation: The Foundation for Artful Insights

    Section 3: Logistic Regression Fundamentals

    Lecture 23 Logistic Regression: From Zero to Hero

    Lecture 24 Demystifying Logistic Regression Math

    Lecture 25 Logistic Regression: Real-World Examples You Can't Ignore

    Lecture 26 Data Cleaning: The Unsung Hero of ML

    Lecture 27 Feature Engineering Magic: Transform Your Data

    Lecture 28 Know Your Model: Essential Evaluation Metrics

    Lecture 29 NLP for Beginners: Start with Logistic Regression

    Lecture 30 Supercharge Your NLP with Advanced Techniques

    Lecture 31 Transfer Learning: The NLP Shortcut You Need

    Lecture 32 Taming COVID-19 Data: A Data Scientist's Guide

    Lecture 33 Unmasking COVID-19 Trends: Data-Driven Insights

    Lecture 34 The Machine Learning Lifecycle: From Data to Deployment

    Lecture 35 Text Preprocessing: Clean Up Your Act

    Lecture 36 Advanced Text Preprocessing: Unlock Hidden Patterns

    Lecture 37 Telling Stories with Text Data: EDA Mastery

    Lecture 38 Feature Engineering: The Secret to NLP Success

    Lecture 39 Optimize Your Model: Hyperparameter Tuning Tips

    Lecture 40 Finding the Perfect Hyperparameters: A Practical Guide

    Lecture 41 Regularization: Prevent Overfitting Like a Pro

    Lecture 42 Which Model Wins? A Showdown

    Lecture 43 Linear Regression: The Building Block of ML

    Lecture 44 Linear Regression: Simple Models, Big Impact

    Lecture 45 Boost Your Linear Regression Game

    Lecture 46 Decision Trees: Easy to Understand, Powerful to Use

    Lecture 47 Decision Trees: The Building Blocks

    Lecture 48 Mastering Entropy and Information Gain

    Lecture 49 Avoid Overfitting: Deep Dive into Decision Trees

    Lecture 50 Handling Categorical Data: Decision Tree Style

    Lecture 51 Train and Conquer: Decision Tree Mastery

    Lecture 52 Data-Driven Insights: Univariate Analysis

    Lecture 53 Data Visualization: Tell Your Story Visually

    Lecture 54 Spotting Trends: Outliers and Correlations

    Lecture 55 Advanced Visualization: Uncover Hidden Insights

    Lecture 56 Bivariate Analysis: Uncover Relationships

    Lecture 57 Multivariate Analysis: Mastering Complexity

    Lecture 58 Time Series Analysis: Forecasting the Future

    Lecture 59 K-means Clustering: Find Your People

    Lecture 60 Mastering K-means: Tips and Tricks

    Lecture 61 K-means in Action: Real-World Examples

    Lecture 62 Beyond K-means: Advanced Clustering Techniques

    Lecture 63 Evaluating Your Clusters: Does It Make Sense?

    Section 4: Introduction to Deep Learning Concepts

    Lecture 64 The History of Deep Learning and Inspired by Neuroscience

    Lecture 65 Understanding Neural Networks: Weights, Multi-Neuron Networks

    Lecture 66 Dive Deep into Backpropagation

    Lecture 67 Introduction to RNNs: The Intuition Behind RNNs and Different Cells

    Lecture 68 Building RNNs with TensorFlow: Hands-on Multiple Neural Networks

    Lecture 69 Training RNNs in TensorFlow: Model Fit, Compile, and Execute

    Lecture 70 Optimizing Model Training: Model Training with Number of Epochs

    Lecture 71 Sequence-to-Sequence Models: Encoder and Decoder Models

    Lecture 72 LSTM Networks and Applications: Random Initialization and LSTM Intuition

    Lecture 73 Implementing LSTMs with TensorFlow: Custom Implementation

    Lecture 74 Introduction to Computer Vision: Pixel Idea and Conversion into Arrays

    Lecture 75 Basics of Convolutional Neural Networks: Padding and Kernel

    Lecture 76 Understanding Kernels in CNNs: Different Kernels

    Lecture 77 Padding, Strides, and Pooling in CNNs

    Lecture 78 Data Augmentation and Optimization in CNNs: Hands-on TensorFlow

    Lecture 79 Building and Training CNN Models

    Lecture 80 Implementing LSTMs with TensorFlow: Preprocessing of Data

    Lecture 81 New! Building Generative Models with LSTMs: Train Models with Hyperparameter Tun

    Lecture 82 Introduction to Computer Vision with Deep Learning: Preprocessing and Training w

    Lecture 83 Training Deep Learning Models for Image Data: 1500 Images on Training and Test D

    Lecture 84 Efficiently Handling Large Image Data: Training Samples

    Lecture 85 Advanced Image Processing Techniques: Cleaning and Preprocessing Data

    Lecture 86 Classification with Deep Learning: 10 Classification Tasks

    Lecture 87 Model Evaluation and Transfer Learning: Evaluating Models and Transformers

    Lecture 88 Interpreting Deep Learning Models: Geometric Intuition of VGG16 Models

    Lecture 89 Optimizing Deep Learning Models: Gradient Descent and Stochastic Gradient Descen

    Lecture 90 Advanced Optimization Techniques

    Lecture 91 Practical Deployment of Deep Learning Models: Mathematical Equations

    Lecture 92 Deploying Models with Flask: Understanding the Internals

    Lecture 93 Handling Requests with Keras and Flask: Keras Models and Get/Post Methods

    Lecture 94 Scaling Deep Learning Models: Image CNN Animal in Action

    Lecture 95 Ensuring Low Latency in Model Deployment: Getting Logs Flask Application

    Lecture 96 Flask Deployment Made Easy: Step-by-Step Guide for Real-World Applications

    Lecture 97 Practical Flask Deployment for Beginners: Go Live Today!

    Section 5: Introduction to Business Statistics

    Lecture 98 Introduction to Data Types and Business Statistics

    Lecture 99 Quantitative vs Qualitative Data: A Comparative Analysis

    Lecture 100 Measures of Central Tendency: Mean, Median, and Mode

    Lecture 101 Understanding Measures of Dispersion

    Lecture 102 Introduction to Distributions and the Central Limit Theorem

    Lecture 103 Sampling and Z-Scores

    Lecture 104 Hypothesis Testing and P-Value Interpretation

    Lecture 105 T-tests, Confidence Intervals, and ANOVA

    Lecture 106 Pearson Correlation Coefficient Explained

    Lecture 107 Advanced Hypothesis Testing and Correlation Analysis

    Lecture 108 Data Cleaning and Preprocessing Techniques

    Lecture 109 Visualising Data with Histograms and Box Plots

    Lecture 110 Summary Statistics and Variable Relationships

    Lecture 111 Correlation and Pair Plots

    Lecture 112 Handling High Correlation and Using Heat Maps

    Section 6: Foundations of Time Series Analysis

    Lecture 113 Introduction to Time Series Data

    Lecture 114 Understanding Time Series Components

    Lecture 115 Stationarity and Its Importance

    Lecture 116 ARIMA Model Fundamentals

    Lecture 117 Building and Evaluating ARIMA Models

    Lecture 118 Seasonal Time Series and Decomposition

    Lecture 119 Probability Distributions in Time Series

    Lecture 120 Descriptive Statistics and Exploratory Data Analysis

    Lecture 121 Hypothesis Testing and Confidence Intervals

    Lecture 122 Forecasting with ARIMA Models

    Lecture 123 Model Selection and Evaluation

    Lecture 124 Practical Forecasting and Model Improvement

    Lecture 125 Data Visualization for Time Series

    Lecture 126 Time Series in Python: Practical Implementation

    Lecture 127 Real-world Case Studies and Applications

    Absolute Beginners with No Coding Experience,Career Changers or Enthusiasts Looking to Enter Web Development,Individuals with Basic Computer Skills and a Curiosity for Coding,Absolute Beginners with No Programming Experience,Students with Basic Coding Knowledge,Career Changers or Enthusiasts