Python Programming Cheat Sheet: Essential Syntax and Libraries

Numbers and Math

  • Arithmetic: +, -, /, // (floor), % (remainder), ** (exponent).
  • Shorthand: a += 2 (also -=, *=, //=).
  • Functions: abs(-3.5), round(3.56, 1), max(3.56, 4.57).

Strings and Formatting

  • Quotes: 'spam eggs', "doesn't".
  • Newline: print('\n').
  • F-Strings: f'Price {cost:.2f}', f'{ratio:.2%}'.

Data Types

  • int (whole), float (decimal), str (text), bool (True/False).
  • Input: input() (returns string), int(input()) (converts to integer).

Decision Making

age = int(input('Enter your age: ')) if age >= 18: print(
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Computer Graphics Systems: Raster vs. Random Scan

Display Architectures in Computer Graphics

In computer graphics, architecture displays are fundamentally divided into two categories based on how the electron beam (or display processor) constructs and refreshes the image on the screen: Raster-Scan Systems and Random-Scan (Vector/Stroke/Calligraphic) Systems.

1. Raster-Scan System

A Raster-Scan System is the most common type of display graphics architecture, used in modern TVs, computer monitors, and smartphones.

How it Works

The electron beam sweeps

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Базовый шаблон интернет-магазина на Django

Магазин

Главная Каталог {% if user.is_authenticated %} Кабинет Выйти {% else %} Вход Регистрация {% endif %} Админ

{% block content %}{% endblock %}

© 2026 Магазин | shop@mail.com

{% if not user.is_authenticated %}

×

Вход

{% csrf_token %} Войти

Нет аккаунта? Зарегистрируйтесь

×

Регистрация

{% csrf_token %} Зарегистрироваться

{% endif %}

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Deep Learning Architectures: CNNs, RNNs, and GANs

1. Pooling Layers in CNNs

A pooling layer is a down-sampling layer in a Convolutional Neural Network (CNN) usually placed after a convolutional layer. It reduces the spatial dimensions (width × height) of the input feature maps while retaining the most critical structural information.

Types of Pooling Layers

  • Max Pooling: Extracts the maximum value from the region covered by the sliding filter. Purpose: Captures dominant features like sharp edges and bright pixels.
  • Average Pooling: Computes the average
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Fundamentals of AI: From Search to Expert Systems

UNIT I: Foundations of Artificial Intelligence

1. Introduction to Artificial Intelligence

Artificial Intelligence (AI) is a branch of computer science that focuses on creating machines capable of performing tasks that normally require human intelligence. These include learning, reasoning, problem-solving, decision-making, language understanding, and pattern recognition. AI simulates human thinking through algorithms and data processing, finding applications in robotics, virtual assistants, medical

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Supervised and Unsupervised Learning Model Reference

Supervised Classification

Logistic Regression (LR)

  • Type: Binary Classification
  • Scaling: Yes (StandardScaler)
  • Outliers: Not robust
  • Categorical Variables: No (encode first)
  • Core Idea: Sigmoid function maps output to 0–1 probability; threshold ≥ 0.5 predicts class 1.
  • Advantages: Fast, simple, interpretable, outputs probabilities.
  • Disadvantages: Binary only, requires linear boundary, fails on non-linear data.
  • Metrics: Accuracy, Precision, Recall, F1-Score, Confusion Matrix.

Decision Trees (DT)

  • Type: Classification
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