Data Science & Machine Learning
Join this channel to learn data science, artificial intelligence and machine learning with funny quizzes, interesting projects and amazing resources for free For collaborations: @love_data
Show more📈 Analytical overview of Telegram channel Data Science & Machine Learning
Channel Data Science & Machine Learning (@datasciencefun) in the English language segment is an active participant. Currently, the community unites 75 660 subscribers, ranking 2 114 in the Education category and 4 359 in the India region.
📊 Audience metrics and dynamics
Since its creation on невідомо, the project has demonstrated rapid growth, gathering an audience of 75 660 subscribers.
According to the latest data from 11 June, 2026, the channel demonstrates stable activity. Although there has been a change in the number of participants by 911 over the last 30 days and by 29 over the last 24 hours, overall reach remains high.
- Verification status: Not verified
- Engagement rate (ER): The average audience engagement rate is 3.63%. Within the first 24 hours after publication, content typically collects 1.36% reactions from the total number of subscribers.
- Post reach: On average, each post receives 2 747 views. Within the first day, a publication typically gains 1 032 views.
- Reactions and interaction: The audience actively supports content: the average number of reactions per post is 5.
- Thematic interests: Content is focused on key topics such as learning, accuracy, distribution, panda, dataset.
📝 Description and content policy
The author describes the resource as a platform for expressing subjective opinions:
“Join this channel to learn data science, artificial intelligence and machine learning with funny quizzes, interesting projects and amazing resources for free
For collaborations: @love_data”
Thanks to the high frequency of updates (latest data received on 12 June, 2026), the channel maintains relevance and a high level of publication reach. Analytics show that the audience actively interacts with content, making it an important point of influence in the Education category.
from sklearn.linear_model import LogisticRegression
model = LogisticRegression(penalty='l2', C=0.1)
model.fit(X_train, y_train)
Summary:
⦁ Overfitting = Memorizing training data
⦁ Regularization = Force model to stay general
⦁ Goal = Balance bias and variance
💬 Tap ❤️ for moreweight = 0
lr = 0.01 # learning rate
for i in range(100):
pred = weight * 2 # input x = 2
loss = (pred - 4) ** 2
grad = 2 * 2 * (pred - 4)
weight -= lr * grad
print("Final weight:", weight) # Should converge near 2
✅ Summary:
⦁ Powers loss minimization in ML models
⦁ Essential for Linear Regression, Neural Networks, and deep learning
⦁ Variants like Adam optimize it further for modern AI
💬 Tap ❤️ for morefrom sklearn.neural_network import MLPClassifier
X = [[0,0], [0,1], [1,0], [1,1]]
y = [0, 1, 1, 0] # XOR pattern
model = MLPClassifier(hidden_layer_sizes=(4,), max_iter=1000)
model.fit(X, y)
print(model.predict([[1, 1]])) # Output:
6️⃣ Popular Libraries
⦁ TensorFlow
⦁ PyTorch
⦁ Keras
🧠 Summary
⦁ Learns complex patterns
⦁ Needs more data and compute
⦁ Powers deep learning like CNNs, RNNs, Transformers
💬 Tap ❤️ for more| Age | Spending Score | | --- | -------------- | | 22 | 90 | | 45 | 20 | | 25 | 85 | | 48 | 25 |The model may group rows 1 & 3 as one cluster (young, high spenders) and rows 2 & 4 as another. Python Code (K-Means):
from sklearn.cluster import KMeans
X = [[22, 90], [45, 20], [25, 85], [48, 25]]
model = KMeans(n_clusters=2)
model.fit(X)
print(model.labels_) # Output: [0 1 0 1] → Two clusters
Summary:
⦁ No labels, only input features
⦁ Model discovers structure or patterns
⦁ Great for grouping, compression, and insights
Double Tap ♥️ For More| Hours Studied | Passed Exam | | ------------- | ----------- | | 1 | No | | 2 | No | | 3 | Yes | | 4 | Yes |The model tries to learn the relation between “Hours Studied” and “Passed Exam.” How It Works (Step-by-Step): 1. You collect labeled data (input features + correct output) 2. Split the data into training (80%) and testing (20%) 3. Choose a model (e.g., Linear Regression, Decision Tree, SVM) 4. Train the model to learn patterns 5. Evaluate performance using metrics like accuracy or MSE Real-World Examples: ⦁ Spam Detection Input: Email content Output: Spam or Not Spam ⦁ House Price Prediction Input: Size, location, rooms Output: Price ⦁ Loan Approval Input: Salary, credit score, job type Output: Approve / Reject ⦁ Image Classification (e.g., identifying cats in photos) Input: Pixel data Output: Object category ⦁ Fraud Detection Input: Transaction details Output: Fraudulent or Legitimate Python Code (Simple Classification):
from sklearn.tree import DecisionTreeClassifier
X = [,,,]
y = ['No', 'No', 'Yes', 'Yes']
model = DecisionTreeClassifier()
model.fit(X, y)
print(model.predict([[2.5]])) # Output: 'Yes'
Summary:
⦁ Input + Output = Supervised
⦁ Goal: Learn mapping from X → Y
⦁ Used in most real-world ML systems
Double Tap ♥️ For More
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