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An Artificial Neuron
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Data Structures in R
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The RAG Developer Stack 2025 - Build Intelligent Al That Thinks, Remembers & Acts
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πŸ“š Data Science Riddle

Which algorithm is most sensitive to feature scaling?
Anonymous Quiz
24%
Decision Tree
26%
Random Forest
35%
KNN
15%
Naive Bayes
Great Packages for R
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Big Data 5V
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πŸ“š Data Science Riddle

Why does bagging reduce variance?
Anonymous Quiz
14%
Uses deeper trees
51%
Averages multiple models
27%
Penalizes weights
8%
Learns Sequentially
πŸ“Š Infographic Elements That Every Data Person Should Master πŸš€

After years of working with data, I can tell you one thing:
πŸ‘‰ The chart ou choose is as important as the data itself.

Here’s your quick visual toolkit πŸ‘‡

πŸ”Ή Timelines

* Sequential ⏩ great for processes
* Scaled ⏳ best for real dates/events

πŸ”Ή Circular Charts

* Donut 🍩 & Pie πŸ₯§ for proportions
* Radial 🌌 for progress or cycles
* Venn 🎯 when you want to show overlaps

πŸ”Ή Creative Comparisons

* Bubble 🫧 & Area πŸ”΅ for impact by size
* Dot Matrix πŸ”΄ for colorful distributions
* Pictogram πŸ‘₯ when storytelling matters most

πŸ”Ή Classic Must-Haves

* Bar πŸ“Š & Histogram πŸ“ (clear, reliable)
* Line πŸ“ˆ for trends
* Area 🌊 & Stacked Area for the β€œbig picture”

πŸ”Ή Advanced Tricks

* Stacked Bar πŸ— when categories add up
* Span πŸ“ for ranges
* Arc 🌈 for relationships

πŸ’‘ Pro tip from experience:
If your audience doesn’t β€œget it” in 3 seconds, change the chart. The best visualizations speak louder than numbers
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Most Common Data Science Skills in Job Posting
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Machine Learning Cheatsheet
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πŸ“š Data Science Riddle

Which Metric is best for imbalanced classification?
Anonymous Quiz
20%
Accuracy
18%
Precision
19%
Recall
43%
F1-Score
SQL JOINS
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Introduction To Linear Regression
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πŸ“š Data Science Riddle

A dataset has 20% missing values in a critical column. What's the most practical choice?
Anonymous Quiz
5%
Drop all rows
49%
Fill with mean/median
41%
Use model-based imputation
5%
Ignore missing data
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ML models don’t all think alike πŸ€–

❇️ Naive Bayes = probability
❇️ KNN = proximity
❇️ Discriminant Analysis = decision boundaries

Different paths, same goal: accurate classification.

Which one do you reach for first?
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πŸ“š Data Science Riddle

In a medical diagnosis project, what's more important?
Anonymous Quiz
34%
High precision
14%
High recall
40%
High accuracy
13%
High F1-score
Important LLM Terms

πŸ”Ή Transformer Architecture
πŸ”Ή Attention Mechanism
πŸ”Ή Pre-training
πŸ”Ή Fine-tuning
πŸ”Ή Parameters
πŸ”Ή Self-Attention
πŸ”Ή Embeddings
πŸ”Ή Context Window
πŸ”Ή Masked Language Modeling (MLM)
πŸ”Ή Causal Language Modeling (CLM)
πŸ”Ή Multi-Head Attention
πŸ”Ή Tokenization
πŸ”Ή Zero-Shot Learning
πŸ”Ή Few-Shot Learning
πŸ”Ή Transfer Learning
πŸ”Ή Overfitting
πŸ”Ή Inference

πŸ”Ή Language Model Decoding
πŸ”Ή Hallucination
πŸ”Ή Latency
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Cheatsheet: Bayes Theroem And Classifier
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2025/10/26 02:37:25
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