A12: McDefect Solutions: Difference between revisions

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• '''Reference, URL''': https://github.com/tezansahu/McDefect
• '''Reference, URL''': https://github.com/tezansahu/McDefect


• '''Relevant Domain/Industry''': Manufacturing
• '''Applicable Business Category''': Manufacturing


• '''Application in relevant Projects/Initiatives''': N.A.
• '''Application in relevant Projects/Initiatives''': N.A.


• '''Type''': Deep Neural Models
• '''Asset Type''': Deep Neural Models


• '''AI Breadth''': Transfer Learning
• '''AI Breadth''': Deep Learning


• '''Learning Ability''':  
• '''Learning Ability''': Transfer learning


• '''Related technologies''': keras, opencv, sklearn, numpy, matplotlib, FastAPI, HTML/CSS/JavaScript
• '''Related technologies''': keras, opencv, sklearn, numpy, matplotlib, FastAPI, HTML/CSS/JavaScript


• '''Applicable Research Area''':
• '''Applicable Research Area''': Integrative AI


• '''Applicable Technical Category''':
• '''Applicable Technical Category''': Computer vision
 
• '''Applicable Business Category''':
 
• '''Asset Type''':


• '''License Information''': Apache License
• '''License Information''': Apache License


• '''Related to circularity and sustainability''': No
• '''Related to circularity and sustainability''': Not directly


• '''Audience''': Manufacturing industry
• '''Audience''': Manufacturing industry

Latest revision as of 09:20, 27 December 2024

Short Description:  AI-powered defect detection & classification solutions for industries that cater to the initial stages of manufacturing, using transfer learning by training it for different processes (like casting, rolling, etc.), gaining knowledge from one, and applying it to other processes.

Reference, URL: https://github.com/tezansahu/McDefect

Applicable Business Category: Manufacturing

Application in relevant Projects/Initiatives: N.A.

Asset Type: Deep Neural Models

AI Breadth: Deep Learning

Learning Ability: Transfer learning

Related technologies: keras, opencv, sklearn, numpy, matplotlib, FastAPI, HTML/CSS/JavaScript

Applicable Research Area: Integrative AI

Applicable Technical Category: Computer vision

License Information: Apache License

Related to circularity and sustainability: Not directly

Audience: Manufacturing industry



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