

Palmakers provides a cohesive system that seamlessly integrates human and AI-driven actions, updating operations, transactions, edge devices, and custom applications in real-time. Our solution ensures efficient collaboration between human expertise and advanced AI technologies, driving optimal outcomes for your organization.
Leveraging ICT for business with diverse data from ERP, CRM, logistics, and autonomous systems requires an alternative architecture for optimal analysis, AI, and feedback.
Leveraging Information and Communication Technology (ICT) for business encounters growing complexities with diverse data streams from ERP, CRM, logistics, and autonomous systems, often in various formats and environments. Traditional databases fall short in optimizing operational analysis, AI integration, and post-decision feedback. To unlock the full potential of data, an alternative architecture is essential. Palmakers offers innovative solutions tailored to maximize data utilization and drive business success in today's dynamic landscape.
The digital twin
The digital twin
To grasp the value of this new architecture, we begin with three essential decision-making elements:
- Data (information for decisions)
- Logic (decision evaluation process)
- Action (decision implementation).
To grasp the value of this new architecture, we begin with three essential decision-making elements:
- Data (information for decisions)
- Logic (decision evaluation process)
- Action (decision implementation).
To grasp the value of this new architecture, we begin with three essential decision-making elements:
- Data (information for decisions)
- Logic (decision evaluation process)
- Action (decision implementation).
- Data (information for decisions)
- Logic (decision evaluation process)
- Action (decision implementation).
Data
- decisions made,
- options evaluated,
- implications for data changes, and the subsequent updates to source systems.
Logic
Logic
Data is crucial, but decision-making requires a balance with logic and AI. Despite AI-driven decisions, employees shape workflows, utilizing AI's learning and reasoning to automate tasks, enhance efficiency, and analyze data for informed decisions. Ontology connects human and machine logic, akin to business logic in customer service interactions. The next step involves developing the model for executing the decision (the action).
Action
Data
Organizational data is rapidly expanding in volume, variety, and velocity, taking diverse forms such as (un)structured, streaming, edge data, and decision-generated data from employees. This "decision data" includes details about:
- decisions made,
- options evaluated,
- implications for data changes, and the subsequent updates to source systems.

Logic
Data is crucial, but decision-making requires a balance with logic and AI. Despite AI-driven decisions, employees shape workflows, utilizing AI's learning and reasoning to automate tasks, enhance efficiency, and analyze data for informed decisions. Ontology connects human and machine logic, akin to business logic in customer service interactions. The next step involves developing the model for executing the decision (the action).

Action







Ontology
Ontology
Linked Objects

Human and (Gen) AI - driven workflows


News
News



