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Due Date

 

Status

WIP

Stakeholdersmarie.goavec@syensqo.combrian.bian@syensqo.com
Outcome


Contributors


Responsible


This page aims to translate the functional requirements into architecture tangible elements creating a engineering value perspective on the initiative - to assess business capabilities relevance versus architecture complexity.


Architecture Requirements Assessment

Quality AttributeRequirement - Architecture ConcernsArchitectural ComplexityBusiness Criticality/RelevanceBusiness Requirement Item
InteroperabilityHow "AI system" gather info from public & internal sources for scientists real-time evaluation?

HIGH

Understanding Experimental Requirements and Information Collection
UsabilityHow "AI system" filter and ´displays´ complex data structure and diagrams?

HIGH

Molecular Modeling and Simulation
UsabilityHow "AI system" supports/makes proposals to scientists on molecular modeling and simulation?

HIGH

Molecular Modeling and Simulation
UsabilityHow "AI System" monitors digital reactor and formulation workstation processes to ensure accuracy/consistency of sample preparation?

HIGH

Molecular Modeling and Simulation
ConsistencyHow "AI System" ensures accuracy/consistency of sample preparation?

LOW

Execution of Experimental Plan
UsabilityHow "scientists" monitor progress of digital reactor and formulation process in real time?

LOW

Execution of Experimental Plan
PerformanceHow "Central Control System" capture instrument data and promote it to Data Analysis System?

HIGH

Sample Analysis and Data Processing
InteroperabilityHow "Central Control System" onboard/integrate new instruments? 

MEDIUM

Sample Analysis and Data Processing
ConsistencyHow can "AI System" make recommendations for the experimental scheme to the scientists based on historical data and current results?

HIGH

Experimental Optimization and Iteration
InteroperabilityWhat types of sensors "AI System" will connect and how it will monitor Environment and instrument parameters in real-time to schedule maintenance (to reduce downtime)?

LOW

Intelligent Management and Maintenance
SafetyHow "AI System" automatically checks existing group safety regulations/procedures and evaluates the safety of new instrument/processes/Management of Change to recommend additional safety monitoring parameters?

HIGH

Safety and Compliance
UsabilityHow "AI System" allows scientists to access experiments database for evaluation?

LOW

Knowledge Management and Collaborative Work
UsabilityHow "Virtual Assistant" provides suggestions on best practices to scientists?

HIGH

Safety and Compliance
Usability

How "AI System" enhances team collaboration, allows sharing data and offers personalized collaboration tips (recommendations)?


LOW

Knowledge Management and Collaborative Work
Usability

How "Reporting - Visualization System" keeps track on the regular work-flow to create analysis?


MEDIUM

Automatic Report Generation and Environmental Control
Usability

How "AI System" automatically adjusts parameters based on experimental needs for optimal conditions?


LOW

Intelligent Management and Maintenance
Usability

How "Reporting - Visualization System" allows multi-project management?


MEDIUM

Visualization System and Resource Scheduling
Interoperability

How "Voice User Interface (VUI)" allows personas in the lab to interact with Instruments and manage experiments?


LOW

Voice User Interface

Reference:

Architectural Concerns


  • Wet-Lab
    1. The "Big Data Hub" should be compliant with CyberSec OT/IT constraints.
    2. The solution must provide extensible and resilient interfaces mechanism for integrating with Syensqo LIMS, ELN and AI systems.
    3. Foundational or Pre-trained AI/LLM models consumed by Edge or Regular computing must be validated from the Syensqo AI standpoint and CyberSec constraints (+AI Risk).  
    4. Local network capacity must be adequately dimensioned to support the throughput of the number of sensors and their potentially complex and large data types capturing.
  • Dry-Lab
    1. TBD 
    2. TBD

→ It is also a concern to consider that eventually the solution used for Shanghai may not be generalizable or reusable in other regions, outside of China, due to aspects related to:

  1. Contract and legal for having the same vendors
  2. Interoperability with Syensqo Application Platform for experiments (LIMS, ELN)
  3. Data classification and data exchanges between regions

Utility Tree

WiP

Personas - Profiles

WiP

  • AI System
  • Scientists
  • Researchers
  • Lab Technicians
  • Virtual Assistant
  • Voice User Interface (VUI)

Environments

WiP

  • Wet Lab
  • Dry Lab
  • OnPrem
  • Cloud Infra

Components - Building Blocks

WiP           

  • AI System
  • Digital Reactor
  • Formulation Workstation
  • Analytical Instruments
  • Data Analysis System
  • Central Control System
  • Reporting - Visualization System
  • Voice User Interface (VUI)


Vendors Solution Evaluation

Capability/Quality AttributeMegaRoboPerkin Helmer









High Level Design Architecture

https://app.diagrams.net/#G1dTx8zvYAp3DQMwcDvoPP5pJCxzyF4qHl#%7B%22pageId%22%3A%22BRQUQCIWuX_Hu_CesEiZ%22%7D

[WiP]


References

Functional Requirements

Smart Solution



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