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Identify Problems in Manufacturing with AI
Technology Category
- Analytics & Modeling - Machine Learning
Applicable Functions
- Discrete Manufacturing
Use Cases
- Predictive Maintenance
Services
- Software Design & Engineering Services
The Challenge
Outliers have often been seen as the low-hanging fruit for various manufacturing issues, whether it's root cause, machine issue, or raw material.
The Solution
With the power of AI and machine learning, the company applies these various algorithms to automatically detect these different outliers across the whole manufacturing production line.
Intraratio chose Isolation Forest because of its ease of use. It can be used in different programming languages and takes categorical data and numerical data without many transformations involved
Operational Impact
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