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πŸ€–πŸ§  AI Projects : A Comprehensive Showcase of Machine Learning, Deep Learning and Generative AI

πŸ—“οΈ 27 Oct 2025
πŸ“š AI News & Trends

Artificial Intelligence (AI) is transforming industries across the globe, driving innovation through automation, data-driven insights and intelligent decision-making. Whether it’s predicting house prices, detecting diseases or building conversational chatbots, AI is at the core of modern digital solutions. The AI Project Gallery by Hema Kalyan Murapaka is an exceptional GitHub repository that curates a wide ...

#AI #MachineLearning #DeepLearning #GenerativeAI #ArtificialIntelligence #GitHub
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In Python, image processing unlocks powerful capabilities for computer vision, data augmentation, and automationβ€”master these techniques to excel in ML engineering interviews and real-world applications! πŸ–Ό 

# PIL/Pillow Basics - The essential image library
from PIL import Image

# Open and display image
img = Image.open("input.jpg")
img.show()

# Convert formats
img.save("output.png")
img.convert("L").save("grayscale.jpg")  # RGB to grayscale

# Basic transformations
img.rotate(90).save("rotated.jpg")
img.resize((300, 300)).save("resized.jpg")
img.transpose(Image.FLIP_LEFT_RIGHT).save("mirrored.jpg")


more explain: https://hackmd.io/@husseinsheikho/imageprocessing

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πŸ€–πŸ§  Free for 1 Year: ChatGPT Go’s Big Move in India

πŸ—“οΈ 28 Oct 2025
πŸ“š AI News & Trends

On 28 October 2025, OpenAI announced that its mid-tier subscription plan, ChatGPT Go, will be available free for one full year in India starting from 4 November. (www.ndtv.com) What is ChatGPT Go? What’s the deal? Why this matters ? Things to check / caveats What should users do? Broader implications This move by OpenAI indicates ...

#ChatGPTGo #OpenAI #India #FreeAccess #ArtificialIntelligence #TechNews
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Gemini will be with you here on our channel and will post useful things for you πŸ˜‰

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πŸ’‘ Building a Simple Convolutional Neural Network (CNN)

Constructing a basic Convolutional Neural Network (CNN) is a fundamental step in deep learning for image processing. Using TensorFlow's Keras API, we can define a network with convolutional, pooling, and dense layers to classify images. This example sets up a simple CNN to recognize handwritten digits from the MNIST dataset.

import tensorflow as tf
from tensorflow.keras import layers, models
from tensorflow.keras.datasets import mnist
import numpy as np

# 1. Load and preprocess the MNIST dataset
(train_images, train_labels), (test_images, test_labels) = mnist.load_data()

# Reshape images for CNN: (batch_size, height, width, channels)
# MNIST images are 28x28 grayscale, so channels = 1
train_images = train_images.reshape((60000, 28, 28, 1)).astype('float32') / 255
test_images = test_images.reshape((10000, 28, 28, 1)).astype('float32') / 255

# 2. Define the CNN architecture
model = models.Sequential()

# First Convolutional Block
model.add(layers.Conv2D(32, (3, 3), activation='relu', input_shape=(28, 28, 1)))
model.add(layers.MaxPooling2D((2, 2)))

# Second Convolutional Block
model.add(layers.Conv2D(64, (3, 3), activation='relu'))
model.add(layers.MaxPooling2D((2, 2)))

# Flatten the 3D output to 1D for the Dense layers
model.add(layers.Flatten())

# Dense (fully connected) layers
model.add(layers.Dense(64, activation='relu'))
model.add(layers.Dense(10, activation='softmax')) # Output layer for 10 classes (digits 0-9)

# 3. Compile the model
model.compile(optimizer='adam',
loss='sparse_categorical_crossentropy',
metrics=['accuracy'])

# Print a summary of the model layers
model.summary()

# 4. Train the model (uncomment to run training)
# print("\nTraining the model...")
# model.fit(train_images, train_labels, epochs=5, batch_size=64, validation_split=0.1)

# 5. Evaluate the model (uncomment to run evaluation)
# print("\nEvaluating the model...")
# test_loss, test_acc = model.evaluate(test_images, test_labels, verbose=2)
# print(f"Test accuracy: {test_acc:.4f}")


Code explanation: This script defines a simple CNN using Keras. It loads and normalizes MNIST images. The Sequential model adds Conv2D layers for feature extraction, MaxPooling2D for downsampling, a Flatten layer to transition to 1D, and Dense layers for classification. The model is then compiled with an optimizer, loss function, and metrics, and a summary of its architecture is printed. Training and evaluation steps are included as commented-out examples.

#Python #DeepLearning #CNN #Keras #TensorFlow

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By: @CodeProgrammer ✨
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Matplotlib_cheatsheet.pdf
3.1 MB
πŸ”₯ Huge cheat sheet for plotting in Matplotlib with code examples

πŸ“Š Matplotlib is a powerful plotting library in Python used for creating static, animated, and interactive visualizations.

Main features of Matplotlib:
πŸ’¬ Versatility: can generate a wide range of plots including line plots, scatter plots, bar charts, histograms, and pie charts.

πŸ’¬ Customization: offers extensive options to control every aspect of the plot such as line styles, colors, markers, labels, and annotations.

πŸ’¬ Integration with NumPy: easily integrates with NumPy, simplifying plotting of data arrays directly.

πŸ’¬ Publication quality: creates high-quality plots suitable for publication, with precise control over aesthetics.

πŸ’¬ Extensibility: easily extended with a large ecosystem of additional toolkits and extensions, such as Seaborn and Pandas plotting functions.

πŸ’¬ Cross-platform: platform-independent and can run on various operating systems including Windows, macOS, and Linux.

πŸ’¬ Interactive plots: supports interactive plotting with widgets and event handling, allowing users to dynamically explore data.

#doc #cheatsheet #PythonTips

Matplotlib Cheatsheet (⭐️⭐️⭐️⭐️⭐️)

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πŸ”₯ A huge collection of the 17 best GitHub repositories for learning Python.

Perfect for those who want to level up from print('Hello') to advanced projects.


😰 Let's go:
1. 30-Days-Of-Python β€” a 30-day Python challenge covering the basics of the language.

2. Python Basics β€” simple and clear Python basics for beginners.

3. Learn Python β€” a topic-based guide with examples and code.

4. Python Guide β€” best practices, tools, and advanced topics.

5. Learn Python 3 β€” an easy-to-understand guide to Python 3 with practice.

6. Python Programming Exercises β€” 100+ Python exercises.

7. Coding Problems β€” algorithmic problems, perfect for interview prep.

8. Project-Based-Learning β€” learn Python through real projects.

9. Projects β€” ideas for practical projects and skill improvement.

10. 100-Days-Of-ML-Code β€” a step-by-step guide to Machine Learning in Python.

11. TheAlgorithms/Python β€” a huge collection of algorithms in Python.

12. Amazing-Python-Scripts β€” useful scripts from automation to advanced utilities.

13. Geekcomputers/Python β€” a collection of practical scripts: networking, files, automation.

14. Materials β€” code, exercises, and projects from Real Python.

15. Awesome Python β€” a top list of the best frameworks and libraries.

16. 30-Seconds-of-Python β€” short snippets for quick solutions.

17. Python Reference β€” life hacks, tutorials, and useful scripts.

πŸ‘ Save this so you don't have to search again.

#python #doc #github #soft
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This channels is for Programmers, Coders, Software Engineers.

0️⃣ Python
1️⃣ Data Science
2️⃣ Machine Learning
3️⃣ Data Visualization
4️⃣ Artificial Intelligence
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8️⃣ programming Languages

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πŸ€–πŸ§  Reflex: Build Full-Stack Web Apps in Pure Python β€” Fast, Flexible and Powerful

πŸ—“οΈ 29 Oct 2025
πŸ“š AI News & Trends

Building modern web applications has traditionally required mastering multiple languages and frameworks from JavaScript for the frontend to Python, Java or Node.js for the backend. For many developers, switching between different technologies can slow down productivity and increase complexity. Reflex eliminates that problem. It is an innovative open-source full-stack web framework that allows developers to ...

#Reflex #FullStack #WebDevelopment #Python #OpenSource #WebApps
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πŸ€–πŸ§  MLOps Basics: A Complete Guide to Building, Deploying and Monitoring Machine Learning Models

πŸ—“οΈ 30 Oct 2025
πŸ“š AI News & Trends

Machine Learning models are powerful but building them is only half the story. The true challenge lies in deploying, scaling and maintaining these models in production environments – a process that requires collaboration between data scientists, developers and operations teams. This is where MLOps (Machine Learning Operations) comes in. MLOps combines the principles of DevOps ...

#MLOps #MachineLearning #DevOps #ModelDeployment #DataScience #ProductionAI
πŸ€–πŸ§  MiniMax-M2: The Open-Source Revolution Powering Coding and Agentic Intelligence

πŸ—“οΈ 30 Oct 2025
πŸ“š AI News & Trends

Artificial intelligence is evolving faster than ever, but not every innovation needs to be enormous to make an impact. MiniMax-M2, the latest release from MiniMax-AI, demonstrates that efficiency and power can coexist within a streamlined framework. MiniMax-M2 is an open-source Mixture of Experts (MoE) model designed for coding tasks, multi-agent collaboration and automation workflows. With ...

#MiniMaxM2 #OpenSource #MachineLearning #CodingAI #AgenticIntelligence #MixtureOfExperts
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πŸ’‘ NumPy Tip: Efficient Filtering with Boolean Masks

Avoid slow Python loops for filtering data. Instead, create a "mask" array of True/False values based on a condition. Applying this mask to your original array instantly selects only the elements where the mask is True, which is significantly faster.

import numpy as np

# Create an array of data
data = np.array([10, 55, 8, 92, 43, 77, 15])

# Create a boolean mask for values greater than 50
high_values_mask = data > 50

# Use the mask to select elements
filtered_data = data[high_values_mask]

print(filtered_data)
# Output: [55 92 77]


Code explanation: A NumPy array data is created. Then, a boolean array high_values_mask is generated, which is True for every element in data greater than 50. This mask is used as an index to efficiently extract and print only those matching elements from the original array.

#Python #NumPy #DataScience #CodingTips #Programming

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By: @CodeProgrammer ✨
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πŸ’‘ Python F-Strings Cheatsheet

F-strings (formatted string literals) provide a concise and powerful way to embed expressions inside string literals for formatting. Just prefix the string with an f or F.

1. Basic Variable and Expression Embedding
name = "Alice"
quantity = 5
print(f"Hello, {name}. You have {quantity * 2} items in your cart.")
# Output: Hello, Alice. You have 10 items in your cart.

β€’ Place variables or expressions directly inside curly braces {}. Python evaluates the expression and inserts the result into the string.

2. Number Formatting
Control the appearance of numbers, such as padding with zeros or setting decimal precision.
pi_value = 3.14159
order_id = 42
print(f"Pi: {pi_value:.2f}")
print(f"Order ID: {order_id:04d}")
# Output:
# Pi: 3.14
# Order ID: 0042

β€’ :.2f formats the float to have exactly two decimal places.
β€’ :04d formats the integer to be at least 4 digits long, padding with leading zeros if necessary.

3. Alignment and Padding
Align text within a specified width, which is useful for creating tables or neatly formatted output.
item = "Docs"
print(f"|{item:<10}|") # Left-aligned
print(f"|{item:^10}|") # Center-aligned
print(f"|{item:>10}|") # Right-aligned
# Output:
# |Docs |
# | Docs |
# | Docs|

β€’ Use < for left, ^ for center, and > for right alignment, followed by the total width.

4. Date and Time Formatting
Directly format datetime objects within an f-string.
from datetime import datetime
now = datetime.now()
print(f"Current time: {now:%Y-%m-%d %H:%M}")
# Output: Current time: 2023-10-27 14:30

β€’ Use a colon : followed by standard strftime formatting codes to display dates and times as you wish.

#Python #Programming #CodingTips #FStrings #PythonTips

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By: @CodeProgrammer ✨
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