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Machine Learning Notes.pdf
226.8 KB
A Stanford CS' Lecture note diving into supervised/unsupervised algorithms, neural networks, SVMs with math proofs and Python pseudocode.
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Kafka 101
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📚 Data Science Riddle

Two team members run the same notebook but get different results. What's the culprit?
Anonymous Quiz
6%
Loss Curves
12%
Batch shapes
59%
Random seeds
23%
Metric choice
The Simplest Machine Learning Cheatsheet
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📚 Data Science Riddle

A query runs slowly due to large table scans. What's the most targeted fix?
Anonymous Quiz
54%
Add indexes
17%
Use aliases
16%
Add DISTINCT
13%
Increase RAM
Everything You need To Know About Databricks
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📚 Data Science Riddle

You want to detect extreme values visually in one plot. Which one is best?
Anonymous Quiz
53%
Box plot
30%
Heatmap
9%
Line chart
8%
Area plot
Mining of Massive Datasets (Leskovec, Stanford).pdf
2.9 MB
The Big Data bible from Stanford: MapReduce, Spark, recommendation systems, PageRank, locality-sensitive hashing, Large scale machine learning and mining social networks/streams all explained clearly with real algorithms you can code today. 500 pages of pure gold.
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If you want to become a Data Scientist, this is the path to follow.
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📚 Data Science Riddle

You want to prevent inconsistent data across environments. What helps most?
Anonymous Quiz
32%
Checkpoints
20%
Contracts
39%
Indexes
10%
Sharding
🛠️ Running Code in Jupyter Notebooks

Jupyter Notebooks let you write & run code interactively.
Here’s a quick guide to make your workflow smoother:

▶️ Kernel & Code Cells
- Each notebook is tied to a single kernel (e.g. IPython).
- Code cells are where you write and execute code.

⌨️ Useful Shortcuts
- Shift + Enter → run current cell, move to next
- Alt + Enter → run current cell, insert new one below
- Ctrl + Enter → run current cell, stay in place

🔄 Kernel Management
- Interrupt the kernel if code hangs.
- Restart kernel to reset memory & variables.

🖥️ Output Handling
- Results & errors appear directly under the cell.
- Long-running code outputs appear as they’re generated.
- Large outputs can be scrolled or collapsed for clarity.

💡 Pro Tip:
Always “Restart & Run All” before sharing or saving a notebook.
This ensures reproducibility and clean results.

👉   Explore
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📚 Data Science Riddle

You need fast reads of small files. What storage options fits best?
Anonymous Quiz
23%
Distributed FS
9%
Cold storage
20%
Object Storage
49%
Local SSD
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6 Must-Know Data Engineering Tools For Beginners
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📚 Data Science Riddle

A feature has low importance but domain experts insist it matters. What do you do?
Anonymous Quiz
26%
Encode it differently
22%
Scale it
13%
Drop the feature
40%
Check interaction effects
Advanced Data Science on Spark.pdf
1.8 MB
Covers Spark for ML, graph processing (GraphFrames), and integration with Hadoop from Stanford University.
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📚 Data Science Riddle

Your estimate has high variance. Best fix?
Anonymous Quiz
57%
Increase sample size
27%
Change confidence level
8%
Reduce bin count
7%
Switch to bootstrap
The Difference Between Model Accuracy and Business Accuracy

A model can be 95% accurate…
yet deliver 0% business value.

Why
Because data science metrics ≠ business metrics.

📌 Examples:
- A fraud model catches tiny fraud but misses large ones
- A churn model predicts already obvious churners
- A recommendation model boosts clicks but reduces revenue

Always align ML metrics with business KPIs.
Otherwise, your “great model” is just a great illusion.
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📚 Data Science Riddle

Your model's loss fluctuates but doesn't decrease overall. What's the most likely issue?
Anonymous Quiz
25%
Gradient exploding
40%
Weak regularization
22%
Small batch size
13%
Slow optimizer
Complete AI (Artificial Intelligence) Roadmap 🤖🚀 

1️⃣ Basics of AI 
🔹 What is AI? 
🔹 Types: Narrow AI vs General AI 
🔹 AI vs ML vs DL 
🔹 Real-world applications 

2️⃣ Python for AI
🔹 Python syntax & libraries 
🔹 NumPy, Pandas for data handling 
🔹 Matplotlib, Seaborn for visualization 

3️⃣ Math Foundation
🔹 Linear Algebra: Vectors, Matrices 
🔹 Probability & Statistics 
🔹 Calculus basics 
🔹 Optimization techniques 

4️⃣ Machine Learning (ML)
🔹 Supervised vs Unsupervised 
🔹 Regression, Classification, Clustering 
🔹 Scikit-learn for ML 
🔹 Model evaluation metrics 

5️⃣ Deep Learning (DL)
🔹 Neural Networks basics 
🔹 Activation functions, backpropagation 
🔹 TensorFlow / PyTorch 
🔹 CNNs, RNNs, LSTMs 

6️⃣ NLP (Natural Language Processing)
🔹 Text cleaning & tokenization 
🔹 Word embeddings (Word2Vec, GloVe) 
🔹 Transformers & BERT 
🔹 Chatbots & summarization 

7️⃣ Computer Vision
🔹 Image processing basics 
🔹 OpenCV for CV tasks 
🔹 Object detection, image classification 
🔹 CNN architectures (ResNet, YOLO) 

8️⃣ Model Deployment
🔹 Streamlit / Flask APIs 
🔹 Docker for containerization 
🔹 Deploy on cloud: Render, Hugging Face, AWS 

9️⃣ Tools & Ecosystem
🔹 Git & GitHub 
🔹 Jupyter Notebooks
🔹 DVC, MLflow (for tracking models) 

🔟 Build AI Projects
🔹 Chatbot, Face recognition 
🔹 Spam classifier, Stock prediction 
🔹 Language translator, Object detector 
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📚 Data Science Riddle - CNN Kernels

Which convolution increases channel depth but not spatial size?
Anonymous Quiz
0%
1x1 convolution
38%
3x3 convolution
54%
Depthwise convolution
8%
Transposed convolution
2025/12/11 09:47:40
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