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Submitted by admin on Sun, 11/13/2022 - 17:19
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Objectives:

  • Establish integration tools for data extraction, transformation and loading.
  • Develop AI data processing platforms.
  • Scalable for operations implementation.
  • Enable domain experts to perform data analytics independently.

Desired Outcomes:

  • Focus on predictive maintenance for automated material handling equipment.
  • To package prototypes into a suite of recommended platforms and tools. 
  • Develop AI algorithms related to the project scope. 
  • AI SMART Discovery: Demonstrate capability for prototype analytics for the layman.

Current Limitations:

  • Problem centric data analysis: Engineers must analyse a voluminous amount of data for actionable insights through various data sources (OEE, yield, product data & recipes, machine alarms, etc.).
  • High effort, time and subject matter knowledge are required for effective cause and effect analysis.
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AI SMART Discovery for Semiconductor to Identify Improvement Opportunities
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