Bring enterprise logs.
Start with operational exports from systems such as Jira, ServiceNow, Salesforce, Pega, Dynamics, Zendesk, Odoo, or similar event-heavy platforms.
THE BASICS // PROCESS MINING // DECISION TRUTH
Observatory turns enterprise event logs into decision-grade process truth on your own infrastructure.
Most dashboards describe activity after it happened. Observatory reconstructs flow from operational data so teams can see where work waits, where effort leaks, where quality breaks, and where process claims no longer match reality.
Start with operational exports from systems such as Jira, ServiceNow, Salesforce, Pega, Dynamics, Zendesk, Odoo, or similar event-heavy platforms.
Observatory maps cases, activities, timestamps, handoffs, waits, rework signals, throughput, quality loss, and flow behavior into auditable analytical outputs.
Export clean tables for Power BI, Parquet, CSV, notebooks, internal reporting, or downstream automation without forcing the data into a closed SaaS workflow.
How the library is structured, why import and export stay open, what the calculation core does, and how the engine stays auditable.
How Observatory moves beyond ticket counts and converts event logs into flow, waste, quality, capacity, and economic decision signals.
How intelligence stays optional and provider-neutral: bring your own model, your own jurisdiction, your own contracts, or no AI at all.
Which enterprise systems can feed Observatory, which output formats it produces, and how it fits into existing analytics stacks.
Installation, quickstart, API reference, deployment notes, metric definitions, and the practical path from export file to working analysis.
Free use, production use, support, partnership work, warranty position, and how the commercial relationship changes by tier.
The deeper Observatory pages do the detailed work. This page only explains the product idea, the input-analyze-output loop, and where to go next.
# Mental model enterprise exports -> Observatory -> process truth -> decisions, dashboards, audits # Ownership model your infrastructure your outputs your adoption path
Start with architecture if you need to understand the engine, deployment model, open edges, closed core, and auditability.
Start with business value if you need to understand the diagnostic layer, economic signals, and management use cases.