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🤖🧠 The Ultimate #1 Collection of AI Books In Awesome-AI-Books Repository

🗓️ 22 Oct 2025
📚 AI News & Trends

Artificial Intelligence (AI) has emerged as one of the most transformative technologies of the 21st century. From powering self-driving cars to enabling advanced conversational AI like ChatGPT, AI is redefining how humans interact with machines. However, mastering AI requires a strong foundation in theory, mathematics, programming and hands-on experimentation. For enthusiasts, students and professionals seeking ...

#ArtificialIntelligence #AIBooks #MachineLearning #DeepLearning #AIResources #TechBooks
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🤖🧠 LandingAI ADE Python SDK: Streamlining AI-Powered Document Understanding

🗓️ 22 Oct 2025
📚 AI News & Trends

In the age of AI automation, extracting structured data from documents has become a key part of many business workflows. From invoices and contracts to identity documents and research papers, organizations are relying on AI models to interpret and process information accurately. LandingAI’s ADE Python SDK – an official API client for the LandingAI ADE ...

#AIPowered #DocumentUnderstanding #LandingAI #ADEPythonSDK #AIAutomation #DataExtraction
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🐍 PyTorch for Beginners: All the Basics on Tensors in One Place

A collection of basic techniques for working with tensors in PyTorch — for those who are starting to get acquainted with the framework and want to quickly master its fundamentals.

What's inside:
▶️ What tensors are and why they are needed

▶️ Tensor initialization: zeros, ones, random, similar size

▶️ Type conversion and switching between NumPy and PyTorch

▶️ Arithmetic, logical operations, tensor comparison

▶️ Matrix multiplication and batch computations

▶️ Broadcasting, view(), reshape(), changing dimensions

▶️ Indexing and slicing: how to access parts of a tensor

▶️ Notebook with code examples
A good starting material to understand the mechanics of tensors before moving on to models and training.

GitHub link

tags: #useful

@codeprogrammer
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🤖🧠 Master Machine Learning: Explore the Ultimate “Machine-Learning-Tutorials” Repository

🗓️ 23 Oct 2025
📚 AI News & Trends

In today’s data-driven world, Machine Learning (ML) has become the cornerstone of modern technology from intelligent chatbots to predictive analytics and recommendation systems. However, mastering ML isn’t just about coding, it requires a structured understanding of algorithms, statistics, optimization techniques and real-world problem-solving. That’s where Ujjwal Karn’s Machine-Learning-Tutorials GitHub repository stands out. This open-source, topic-wise ...

#MachineLearning #MLTutorials #ArtificialIntelligence #DataScience #OpenSource #AIEducation
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Topic: Flask Tutorials

📖 Explore Flask, a popular Python web framework, through these tutorials. Learn key aspects of Flask development. With this knowledge, you'll be able to create robust and scalable web applications using Flask.

🏷️ #26_resources
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🤖🧠 LangChain: The Ultimate Framework for Building Reliable AI Agents and LLM Applications

🗓️ 24 Oct 2025
📚 AI News & Trends

As artificial intelligence continues to transform industries, developers are racing to build smarter, more adaptive applications powered by Large Language Models (LLMs). Yet, one major challenge remains how to make these models interact intelligently with real-world data and external systems in a scalable, reliable way. Enter LangChain, an open-source framework designed to make LLM-powered application ...

#LangChain #AI #LLM #ArtificialIntelligence #OpenSource #AIAgents
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In Python, you can unpack sequences using *, to work with a variable number of elements. The * can be placed anywhere and it will collect all the extra elements into a separate variable.

a, b, c = 10, 2, 3      # Standard unpacking

a, *b = 10, 2, 3        # b = [2, 3]

a, *b, c = 10, 2, 3, 4  # b = [2, 3]

*a, b, c = 10, 2, 3, 4  # a = [10, 2]


👉  @DataScience4
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🔥 Trending Repository: awesome-system-design-resources

📝 Description: Learn System Design concepts and prepare for interviews using free resources.

🔗 Repository URL: https://github.com/ashishps1/awesome-system-design-resources

🌐 Website: https://blog.algomaster.io

📖 Readme: https://github.com/ashishps1/awesome-system-design-resources#readme

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💻 Programming Languages: Java - Python

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#computer_science #distributed_systems #awesome #backend #scalability #interview #interview_questions #system_design #hld #high_level_design


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🔥 Trending Repository: best-of-ml-python

📝 Description: 🏆 A ranked list of awesome machine learning Python libraries. Updated weekly.

🔗 Repository URL: https://github.com/lukasmasuch/best-of-ml-python

🌐 Website: https://ml-python.best-of.org

📖 Readme: https://github.com/lukasmasuch/best-of-ml-python#readme

📊 Statistics:
🌟 Stars: 22.3K stars
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💻 Programming Languages: Not available

🏷️ Related Topics:
#python #nlp #data_science #machine_learning #deep_learning #tensorflow #scikit_learn #keras #ml #data_visualization #pytorch #transformer #data_analysis #gpt #automl #jax #data_visualizations #gpt_3 #chatgpt


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In Python, enhanced for loops with enumerate() provide both the index and value of items in an iterable, making it ideal for tasks needing positional awareness without manual counters. This is more Pythonic and efficient than using range(len()) for list traversals.

fruits = ['apple', 'banana', 'cherry']
for index, fruit in enumerate(fruits):
print(f"{index}: {fruit}")

# Output:
# 0: apple
# 1: banana
# 2: cherry

# With start offset:
for index, fruit in enumerate(fruits, start=1):
print(f"{index}: {fruit}")
# 1: apple
# 2: banana
# 3: cherry


#python #forloops #enumerate #bestpractices

✉️ @DataScience4
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In Python, lists are versatile mutable sequences with built-in methods for adding, removing, searching, sorting, and more—covering all common scenarios like dynamic data manipulation, queues, or stacks. Below is a complete breakdown of all list methods, each with syntax, an example, and output, plus key built-in functions for comprehensive use.

📚 Adding Elements
append(x): Adds a single element to the end.

  lst = [1, 2]
lst.append(3)
print(lst) # Output: [1, 2, 3]


extend(iterable): Adds all elements from an iterable to the end.

  lst = [1, 2]
lst.extend([3, 4])
print(lst) # Output: [1, 2, 3, 4]


insert(i, x): Inserts x at index i (shifts elements right).

  lst = [1, 3]
lst.insert(1, 2)
print(lst) # Output: [1, 2, 3]


📚 Removing Elements
remove(x): Removes the first occurrence of x (raises ValueError if not found).

  lst = [1, 2, 2]
lst.remove(2)
print(lst) # Output: [1, 2]


pop(i=-1): Removes and returns the element at index i (default: last).

  lst = [1, 2, 3]
item = lst.pop(1)
print(item, lst) # Output: 2 [1, 3]


clear(): Removes all elements.

  lst = [1, 2, 3]
lst.clear()
print(lst) # Output: []


📚 Searching and Counting
count(x): Returns the number of occurrences of x.

  lst = [1, 2, 2, 3]
print(lst.count(2)) # Output: 2


index(x[, start[, end]]): Returns the lowest index of x in the slice (raises ValueError if not found).

  lst = [1, 2, 3, 2]
print(lst.index(2)) # Output: 1


📚 Ordering and Copying
sort(key=None, reverse=False): Sorts the list in place (ascending by default; stable sort).

  lst = [3, 1, 2]
lst.sort()
print(lst) # Output: [1, 2, 3]


reverse(): Reverses the elements in place.

  lst = [1, 2, 3]
lst.reverse()
print(lst) # Output: [3, 2, 1]


copy(): Returns a shallow copy of the list.

  lst = [1, 2]
new_lst = lst.copy()
print(new_lst) # Output: [1, 2]


📚 Built-in Functions for Lists (Common Cases)
len(lst): Returns the number of elements.

  lst = [1, 2, 3]
print(len(lst)) # Output: 3


min(lst): Returns the smallest element (raises ValueError if empty).

  lst = [3, 1, 2]
print(min(lst)) # Output: 1


max(lst): Returns the largest element.

  lst = [3, 1, 2]
print(max(lst)) # Output: 3


sum(lst[, start=0]): Sums the elements (start adds an offset).

  lst = [1, 2, 3]
print(sum(lst)) # Output: 6


sorted(lst, key=None, reverse=False): Returns a new sorted list (non-destructive).

  lst = [3, 1, 2]
print(sorted(lst)) # Output: [1, 2, 3]


These cover all standard operations (O(1) for append/pop from end, O(n) for most others). Use slicing lst[start:end:step] for advanced extraction, like lst[1:3] outputs ``.

#python #lists #datastructures #methods #examples #programming

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In Python, handling CSV files is straightforward using the built-in csv module for reading and writing tabular data, or pandas for advanced analysis—essential for data processing tasks like importing/exporting datasets in interviews.

# Reading CSV with csv module (basic)
import csv
with open('data.csv', 'r') as file:
reader = csv.reader(file)
data = list(reader) # data = [['Name', 'Age'], ['Alice', '30'], ['Bob', '25']]

# Writing CSV with csv module
import csv
with open('output.csv', 'w', newline='') as file:
writer = csv.writer(file)
writer.writerow(['Name', 'Age']) # Header
writer.writerows([['Alice', 30], ['Bob', 25]]) # Data rows

# Advanced: Reading with pandas (handles headers, missing values)
import pandas as pd
df = pd.read_csv('data.csv') # df = DataFrame with columns 'Name', 'Age'
print(df.head()) # Output: First 5 rows preview

# Writing with pandas
df.to_csv('output.csv', index=False) # Saves without row indices


#python #csv #pandas #datahandling #fileio #interviewtips

👉 @DataScience4
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🖥 Microsoft has introduced a new lecture series on Python and artificial intelligence.

The course gathers up-to-date information on #Python programming and creating advanced AI assistants based on it.

Content: The course includes 9 lectures, supplemented with video materials, detailed presentations, and code examples. Learning to develop AI agents is accessible even for coding beginners.
Topics: The lectures cover topics such as #RAG (Retrieval-Augmented Generation), embeddings, #agents, and the #MCP protocol.

The perfect weekend plan is to dive deep into #AI!

https://github.com/orgs/azure-ai-foundry/discussions/166

https://t.me/CodeProgrammer
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The Python + Generative AI series by Azure AI Foundry has ended, but all materials are open

Now you can calmly rewatch the recordings, download the slides, and try the code from each session — from LLM and RAG to AI agents and MCP.

All resources are here: aka.ms/pythonai/resources

👉  @codeprogrammer
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In Python, loops are essential for repeating code efficiently: for loops iterate over known sequences (like lists or ranges) when you know the number of iterations, while loops run based on a condition until it's false (ideal for unknown iteration counts or sentinel values), and nested loops handle multi-dimensional data by embedding one inside another—use break/continue for control, and comprehensions for concise alternatives in interviews.

# For loop: Use for fixed iterations over iterables (e.g., processing lists)
fruits = ["apple", "banana", "cherry"]
for fruit in fruits: # Iterates each element
print(fruit) # Output: apple \n banana \n cherry

for i in range(3): # Numeric sequence (start=0, stop=3)
print(i) # Output: 0 \n 1 \n 2

# While loop: Use when iterations depend on a dynamic condition (e.g., user input, convergence)
count = 0
while count < 3: # Runs as long as condition is True
print(count)
count += 1 # Increment to avoid infinite loop! Output: 0 \n 1 \n 2

# Nested loops: Use for 2D data (e.g., matrices, grids); outer for rows, inner for columns
matrix = [[1, 2], [3, 4]]
for row in matrix: # Outer: each sublist
for num in row: # Inner: elements in row
print(num) # Output: 1 \n 2 \n 3 \n 4

# Control statements: break (exit loop), continue (skip iteration)
for i in range(5):
if i == 2:
continue # Skip 2
if i == 4:
break # Exit at 4
print(i) # Output: 0 \n 1 \n 3

# List comprehension: Concise for loop alternative (use for simple transformations/filtering)
squares = [x**2 for x in range(5) if x % 2 == 0] # Even squares
print(squares) # Output: [0, 4, 16]


#python #loops #forloop #whileloop #nestedloops #comprehensions #interviewtips #controlflow

https://t.me/CodeProgrammer
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In Python, the re module handles regular expressions (regex) for pattern matching in strings—vital for text processing like validating emails, extracting data from logs, or cleaning user input in interviews; it's compiled for efficiency but can be complex, so start simple and test with tools like regex101.com.

import re

# Basic search: Find if pattern exists (returns Match object or None)
txt = "The rain in Spain"
match = re.search(r"Spain", txt) # r"" for raw string (avoids escaping issues)
if match:
print(match.group()) # Output: Spain (full match)
print(match.start(), match.end()) # Output: 12 17 (positions)

# findall: Extract all matches as list (non-overlapping)
txt = "The rain in Spain stays mainly in the plain"
emails = re.findall(r"\w+@\w+\.com", "Contact: user1@example.com or user2@test.com")
print(emails) # Output: ['user1@example.com', 'user2@test.com']

# split: Divide string at matches (like str.split but with patterns)
words = re.split(r"\s+", "Hello world\twith spaces") # \s+ matches whitespace
print(words) # Output: ['Hello', 'world', 'with', 'spaces']

# sub: Replace matches (count limits replacements; use \1 for groups)
cleaned = re.sub(r"\d+", "***", "Phone: 123-456-7890 or 098-765-4321", count=1)
print(cleaned) # Output: Phone: *** or 098-765-4321 (first number replaced)

# Metacharacters basics:. (any char except \n), ^ (start), $ (end), * (0+), + (1+),? (0-1)
match = re.search(r"^The.*Spain$", txt) # ^ start, $ end,. any, * 0+ of previous
print(match.group() if match else "No match") # Output: The rain in Spain

# Character classes: \d (digit), \w (word char), [a-z] (range), [^0-9] (not digit)
nums = re.findall(r"\d+", "abc123def456") # \d+ one or more digits
print(nums) # Output: ['123', '456']

words_only = re.findall(r"\w+", "Hello123! World?") # \w+ word chars (alphanum + _)
print(words_only) # Output: ['Hello123', 'World']

# Groups: () capture parts; use for extraction or alternation
date = re.search(r"(\d{4})-(\d{2})-(\d{2})", "Event on 2023-10-27")
if date:
print(date.groups()) # Output: ('2023', '10', '27') (tuples of captures)
print(date.group(1)) # Output: 2023 (first group)

# Alternation: | for OR (e.g., cat|dog)
animals = re.findall(r"cat|dog", "I have a cat and a dog")
print(animals) # Output: ['cat', 'dog']

# Flags: re.IGNORECASE (case-insensitive), re.MULTILINE (^/$ per line)
text = "Spain\nin\nSpain"
matches = re.findall(r"^Spain", text, re.MULTILINE) # ^ matches start of each line
print(matches) # Output: ['Spain', 'Spain']

# Advanced: Greedy vs non-greedy (*? or +?) to match minimal
html = "<div><p>Text</p></div>"
content = re.search(r"<div>.*?</div>", html) #.*? non-greedy (stops at first </div>)
print(content.group()) # Output: <div><p>Text</p></div>

# Edge cases: Empty string, no match
print(re.search(r"a", "")) # Output: None
print(re.findall(r"\d", "no numbers")) # Output: []

# Compile for reuse (faster for multiple uses)
pattern = re.compile(r"\w+@\w+\.com")
email = pattern.search("email@example.com")
print(email.group() if email else "No email") # Output: email@example.com


Regex tips: Escape special chars with \ (e.g., . for literal dot); use raw strings (r""); test incrementally to avoid frustration—common pitfalls include forgetting anchors (^/$) or overusing.*. For performance, compile patterns; in interviews, explain your pattern step-by-step for clarity. #python #regex #re_module #patterns #textprocessing #interviews #stringmatching

😱 https://t.me/CodeProgrammer
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In Python, NumPy is the cornerstone of scientific computing, offering high-performance multidimensional arrays and tools for working with them—critical for data science interviews and real-world applications! 📊

import numpy as np

# Array Creation - The foundation of NumPy
arr = np.array([1, 2, 3])
zeros = np.zeros((2, 3)) # 2x3 matrix of zeros
ones = np.ones((2, 2), dtype=int) # Integer matrix
arange = np.arange(0, 10, 2) # [0 2 4 6 8]
linspace = np.linspace(0, 1, 5) # [0. 0.25 0.5 0.75 1. ]
print(linspace)


# Array Attributes - Master your data's structure
matrix = np.array([[1, 2, 3], [4, 5, 6]])
print(matrix.shape) # Output: (2, 3)
print(matrix.ndim) # Output: 2
print(matrix.dtype) # Output: int64
print(matrix.size) # Output: 6


# Indexing & Slicing - Precision data access
data = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
print(data[1, 2]) # Output: 6 (row 1, col 2)
print(data[0:2, 1:3]) # Output: [[2 3], [5 6]]
print(data[:, -1]) # Output: [3 6 9] (last column)


# Reshaping Arrays - Transform dimensions effortlessly
flat = np.arange(6)
reshaped = flat.reshape(2, 3)
raveled = reshaped.ravel()
print(reshaped)
# Output: [[0 1 2], [3 4 5]]
print(raveled) # Output: [0 1 2 3 4 5]


# Stacking Arrays - Combine datasets vertically/horizontally
a = np.array([1, 2, 3])
b = np.array([4, 5, 6])
print(np.vstack((a, b))) # Vertical stack
# Output: [[1 2 3], [4 5 6]]
print(np.hstack((a, b))) # Horizontal stack
# Output: [1 2 3 4 5 6]


# Mathematical Operations - Vectorized calculations
x = np.array([1, 2, 3])
y = np.array([4, 5, 6])
print(x + y) # Output: [5 7 9]
print(x * 2) # Output: [2 4 6]
print(np.dot(x, y)) # Output: 32 (1*4 + 2*5 + 3*6)


# Broadcasting Magic - Operate on mismatched shapes
matrix = np.array([[1, 2, 3], [4, 5, 6]])
scalar = 10
print(matrix + scalar)
# Output: [[11 12 13], [14 15 16]]


# Aggregation Functions - Statistical power in one line
values = np.array([1, 5, 3, 9, 7])
print(np.sum(values)) # Output: 25
print(np.mean(values)) # Output: 5.0
print(np.max(values)) # Output: 9
print(np.std(values)) # Output: 2.8284271247461903


# Boolean Masking - Filter data like a pro
temperatures = np.array([18, 25, 12, 30, 22])
hot_days = temperatures > 24
print(temperatures[hot_days]) # Output: [25 30]


# Random Number Generation - Simulate real-world data
print(np.random.rand(2, 2)) # Uniform distribution
print(np.random.randn(3)) # Normal distribution
print(np.random.randint(0, 10, (2, 3))) # Random integers


# Linear Algebra Essentials - Solve equations like a physicist
A = np.array([[3, 1], [1, 2]])
b = np.array([9, 8])
x = np.linalg.solve(A, b)
print(x) # Output: [2. 3.] (Solution to 3x+y=9 and x+2y=8)

# Matrix inverse and determinant
print(np.linalg.inv(A)) # Output: [[ 0.4 -0.2], [-0.2 0.6]]
print(np.linalg.det(A)) # Output: 5.0


# File Operations - Save/load your computational work
data = np.array([[1, 2], [3, 4]])
np.save('array.npy', data)
loaded = np.load('array.npy')
print(np.array_equal(data, loaded)) # Output: True


# Interview Power Move: Vectorization vs Loops
# 10x faster than native Python loops!
def square_sum(n):
arr = np.arange(n)
return np.sum(arr ** 2)

print(square_sum(5)) # Output: 30 (0²+1²+2²+3²+4²)


# Pro Tip: Memory-efficient data processing
# Process 1GB array without loading entire dataset
large_array = np.memmap('large_data.bin', dtype='float32', mode='r', shape=(1000000, 100))
print(large_array[0:5, 0:3]) # Process small slice


By: @DataScienceQ 🚀

#Python #NumPy #DataScience #CodingInterview #MachineLearning #ScientificComputing #DataAnalysis #Programming #TechJobs #DeveloperTips
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🧭 Finally, with this roadmap, I understood where to start learning data science!

👨🏻‍💻 This map is designed like a metro map that starts from basic concepts and goes through machine learning, big data, and data visualization.

✏️ In this roadmap, it shows step by step where to start, what to learn, and how to become a professional data scientist.

1⃣ Fundamentals: First of all, you need to strengthen your foundation; that means math, probability, distributions, and linear algebra. These are the backbone of any data analysis.

2⃣ Programming and Statistics: Learn to work with tools like Python, R, and Excel, and enter the world of statistics: analysis of variance (ANOVA), confidence intervals, and regression are the main basics.

3⃣ Machine Learning: Move on to classification, clustering, prediction, and learn how to train and test machine learning models.

5⃣ Big Data and NLP: If you deal with large datasets, work with tools like Hadoop and Hive. In natural language processing, learn techniques like sentiment analysis, tagging, and text analysis.

5⃣ Visualization and Data Engineering: Learn how to turn data into understandable and engaging stories using tools like Tableau, D3.js, and ggplot2. Also, get familiar with concepts like pipelines, cleaning, and data preparation.

6⃣ Optional Paths: Depending on your career path, some parts may not be necessary. For example, if you want to specialize in machine learning, you don’t need to go very deep into big data or text mining.

📹 Recommended YouTube Channels:

🎞 Channel Krish Naik

🎞 Channel Ken Jee

🎞 Channel StatQuest

🎞 Channel codebasics

🎞 Channel Emma Ding

🔻 Certificates and Learning Resources:

📄 SQL Fundamentals

📄 IBM Data Science Professional

📄 Khan Academy

🏐 Start with simpler topics, keep going consistently, and most importantly, build real projects while learning. Because this way of learning helps increase your confidence, and high confidence turns into real job opportunities.

https://t.me/CodeProgrammer
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🐍 10 Free Courses to Learn Python

👩🏻‍💻 These top-notch resources can take your #Python skills several levels higher. The best part is that they are all completely free!


1⃣ Comprehensive Python Course for Beginners

📃A complete video course that teaches Python from basic to advanced with clear and organized explanations.


2⃣ Intensive Python Training

📃A 4-hour intensive course, fast, focused, and to the point.


3⃣ Comprehensive Python Course

📃Training with lots of real examples and exercises.


4⃣ Introduction to Python

📃Learn the fundamentals with a focus on logic, clean coding, and solving real problems.


5⃣ Automate Daily Tasks with Python

📃Learn how to automate your daily project tasks with Python.


6⃣ Learn Python with Interactive Practice

📃Interactive lessons with real data and practical exercises.


7⃣ Scientific Computing with Python

📃Project-based, for those who want to work with data and scientific analysis.


8⃣ Step-by-Step Python Training

📃Step-by-step and short training for beginners with interactive exercises.


9⃣ Google's Python Class

📃A course by Google engineers with real exercises and professional tips.


1⃣ Introduction to Programming with Python

📃University-level content for conceptual learning and problem-solving with exercises and projects.

🌐 #DataScience #DataScience

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