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| title | aliases | tags | sr-due | sr-interval | sr-ease | ||
|---|---|---|---|---|---|---|---|
| 17-ML-in-IA-1 |
|
2022-09-25 | 3 | 250 |
traditional approaches
- hand crafted and curated
- based on intuition not evidence (e.g., password criteria example)
- static and difficult to scale and adapt
Everything we do generates data. This can be used to learn what works and what doesn't
We use the data to evolve from observations to models
data doesn't lie. humans do (sometimes using data)
ai uses machine learning, data science applies machine learning. statistical learning is machine learning
ML
using mathematics and algorithms to build models from data for prediction and insight
key concepts
- getting dta
- feature enginering
- model testing/validation
- knowledge extraction
supervised vs unsupervised learning — often feed into each other
feature engineering
converting domain variables into actionable features
e.g.,
- edges from images
- word frequencies in documents
- converting TCP stream into counts of particular packet types
insights
modelling uncovers relatonships within inderlying process represented by the data
e.g., detecting a password attack
benefits
- provide insight
- automattion
- adapt to changes
- scale larger and more complex problems
threats
need to secure all of them - smartly

