1. Horizon 2020
European Union Funding
for Research & Innovation
The COALA Cognitive Advisor
Dr. Evangelos Niforatos
Assistant Professor | AI-Powered Human Augmentation
Faculty of Industrial Design Engineering
Delft University of Technology
Delft, the Netherlands
ForeSee Cluster: Standardization Workshop
20.07.2022 1
2. Digital Intelligent Assistants
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… support or take over time-consuming,
stressful, and other unwanted activities.
… interact via natural language. … “know” and do things that
humans associate with intelligence.
… are amorphous compound technology.
Basic structure of a conversational agent The amorphous “backend”
20.07.2022 e.niforatos@tudelft.nl
3. The Factory of Today
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Source: FRATELLI PIACENZA S.P.A. Source: FRATELLI PIACENZA S.P.A.
Source: Whirlpool Corporation Source: MiR / Whirlpool Corporation
• Long distances
• Narrow space
• Noisy
• Manual labor
• Declining workforce
• Automated tasks
• “Smart” machines
• Sensors, IoT & APIs
Source: Diversey Netherlands Production Bv
20.07.2022 e.niforatos@tudelft.nl
4. The COALA Cognitive Advisor (CA)
• (1) Augmented Analytics
• The Cognitive Advisor (CA) collects and analyzes data
from the shop floor
• The users monitor analytics through dialectic interactions
• The CA explains recommendations to improve
trustworthiness and achieve transparency
• Context-aware features streamline interactions
• (2) On-the-job training
• The operators share knowledge through dialectic
interactions with the the CA
• The operators receive advice based on their expertise
• The CA advising behavior adapts to learning progress
• Ultimately, the CA identifies and instills best practices
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Assistant Benefits
Central access
Customizable
Delegatory
Eyes-free
Instructive & Collaborative
Hands-free
Ubiquitous
Multimodal (text & speech)
Always on
Responsive
Context-aware
Intuitive (no learning curve)
Visit this link to find the related article:
https://ai4manufacturing.com/anatomy-of-a-digital-assistant/
20.07.2022 e.niforatos@tudelft.nl
5. Use Case #1: Augmented Analytics
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Predictions for a machine’s fluid consumption
Dialog
management
GraphQL
Prediction
module
Intent & Entity
extraction
Intent: “forecast”
Entity values: “hydraulic fluid”, “next 15 days”
GraphQL query with entities + context as
parameters
API call
Context
“machine_id = AF34689543KL”
Result
Shop floor data
• Machine vision
• Machine APIs
• Historical data
• …
20.07.2022 e.niforatos@tudelft.nl
6. Use Case #2: On-the-job Training
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Novice asking for instructions
Breakdown of task into small steps
Sharing knowledge with the assistant Provide learning content (“nuggets”)
20.07.2022 e.niforatos@tudelft.nl
7. Designing the COALA Cognitive Advisor
Design Aspects
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Settings Ethics Privacy
Usability is a key concern too but not focused here
20.07.2022 e.niforatos@tudelft.nl
8. Design Aspect 1: Manufacturing Settings
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COALA prototype testing in BIBA’s
lab shop floor
N
I N
I
Noise management
Voice integration and mobility
20.07.2022 e.niforatos@tudelft.nl
9. Design Aspect 2: Applied AI Ethics
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• What if the operators uncritically follow the recommendations of the CA?
• What if the CA suggests a task that could harm the user?
• What if the CA recommends a procedure that could damage the equipment?
• Who owns the knowledge generated/discovered with the Cognitive Advisor?
• …
Practice “Ethics-by-Design”
o … but delegation trades autonomy for free time
o … but the workforce in factories contains bias (e.g., males > females)
Bias in training data
Balance of power (Employer <> Employee)
Loss of autonomy
Influencing factors
20.07.2022 e.niforatos@tudelft.nl
10. Design Aspect 3: Operator’s Privacy
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• What if users name co-workers in a conversation with the assistant?
• What if employer(s) use the CA to track operators on the shop floor?
…
Practice Privacy-by-Design (preferably no personal data)
o … but personalized functions requires knowing personal data
o … but customized assistance requires knowing user pseudonyms
o … but restricting access to an assistant likely requires operators
to register with a system (receive a pseudonym)
Worker council and worker union
General Data Protection Regulation (GDPR)
Labor laws
Influencing factors
20.07.2022 e.niforatos@tudelft.nl
11. Testing the Cognitive Advisor
• Test areas
• User interface and real-world interactions
• Layer one CAI and skills
• Layer two CAI (if any)
• Custom modules (e.g., product quality prediction)
• Test focus
• System usability (e.g., Voice Usability Scale)
• Cognitive workload (e.g., NASA Task Load Index)
• AI trustworthiness (e.g., Assessment List for Trustworthy AI)
• Test users
• Access to testers requires workers’ council permission
• No bias intended but often inherent in workforce
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Android App
Mycroft
Rasa
Custom module
Layer one
Layer two
20.07.2022 e.niforatos@tudelft.nl
12. Outlook
• Testing in the lab is necessary before
deploying the Cognitive Advisor in factory
settings
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• Lab testing involves:
• Real tasks
• Simulated machine
interfaces
• Simulated machine APIs
• Simulated floor plans
• Maintenance Experts,
Technicians and Lab
Assistants as operators
20.07.2022 e.niforatos@tudelft.nl
13. Contact
Website: www.coala-h2020.eu
LinkedIn: www.linkedin.com/in/coala-your-factory-assistant
Twitter: twitter.com/coala4factory
Contact: info@coala-h2020.eu
Many more videos about the COALA assistant
www.coala-h2020.eu/index.php/videos
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e.niforatos@tudelft.nl
20.07.2022
Dr. Evangelos Niforatos
Assistant Professor
AI-Powered Human Augmentation
Faculty of Industrial Design Engineering
Delft University of Technology
Delft, the Netherlands
14. q Objective: Artificial intelligence for manufacturing
q Topic: ICT-38-2020
q Call: H2020-ICT-2018-20
q Lead: BIBA – Bremer Institut für Produktion und Logistik GmbH
q Duration: 36 Months
q Start: 2020/10
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Copyright 2020 – 2023 by the COALA Consortium
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e.niforatos@tudelft.nl
20.07.2022