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VIDEO
Using Normalization to Reconcile Financial Data
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Covers:
application
of
Tabular Data Preprocessing
Estimated time needed to finish:
4 minutes
Questions this item addresses:
What's a real-life example of using feature scaling?
How to use this item?
Watch the whole video.
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https://www.youtube.com/watch?v=BIRyiS-xzMc&ab_channel=David
Author(s) / creator(s) / reference(s)
Dave Bergstrom
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Tabular Data Preprocessing for Continuous Data
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Total time needed:
~25 minutes
Objectives
You will learn two methods to preprocess continuous tabular data.
Potential Use Cases
Time-series forecasting, anomaly detection, power generation
Who is This For ?
BEGINNER
Data Scientists new to Tabular Data/Time-Series Preprocessing.
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VIDEO
1. Introduction to Feature Normalization on Continuous Tabular Data
Why use normalization or standardization?
When do we perform feature normalization? When don't we?
8 minutes
ARTICLE
2. Understanding the Difference Between Normalization & Standardization
What is Normalization?
What is Standardization?
Normalize or Standardize?
How do we implement feature scaling in Python?
5 minutes
VIDEO
3. Using Normalization to Reconcile Financial Data
What's a real-life example of using feature scaling?
4 minutes
LIBRARY
4. Preprocessing Data for Tabular Built-In Algorithms
How to preprocess tabular data?
6 minutes
LIVE_SESSION
5. AISC Tabular Data Preprocessing Presentation
Can you summarize this recipe?
2 minutes
Concepts Covered
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