Technology Finance Intelligence Models.
The operational context layer behind faster, more consistent, more defensible technology finance decisions. TFIM is the framework Yarken is building so its AI systems can reason using your organization's structures, rules, taxonomies, and operational workflows. Not generic assumptions.
Every organization operates differently.
Different financial structures, allocation methodologies, governance frameworks, terminology, operating models, and delivery processes. Without this context, AI systems generate inconsistent and low-trust outputs. TFIM is being built to operationalize this knowledge into reusable intelligence.
Financial & cost models
Cost pools, tower structures, allocation methodologies, chargeback logic, product attribution, and financial hierarchies.
Vendor & contract models
Vendors, contracts, services, commercial obligations, and procurement structures — mapped and traversable.
Cloud & technology models
Cloud platforms, applications, infrastructure services, resource ownership, and technology domains.
Governance models
Approval structures, policy controls, operational standards, and exception handling processes.
Operational expertise should become a reusable strategic asset.
TFIM is being built so organisations can convert consultant expertise, operational playbooks, mapping methodologies, governance logic, delivery standards, and analytical decisions into reusable operational intelligence.
Over time, the platform is intended to become faster to deploy, more accurate, more explainable, and more aligned to operational reality.
"Generic AI produces generic outputs. Yarken grounds operational reasoning using your organization's operating model, not generic assumptions."
More to explore
AI Models
Specialist agents coordinating enterprise financial operations.
Yarken's AI Engine breaks complex TBM and FinOps workflows into focused specialist agents: cloud, vendor, allocation, governance, reporting. An orchestration layer runs them consistently, with human approval at every consequential step.
AI Platform
A connected operational graph agents can traverse in real time.
Every connector, API, and capability registered as a semantic tool. Agents discover and select tools mid-workflow, traversing relationships across vendors, contracts, cost centres, and cloud resources without manual wiring.
AI Labs
Researching the operational layer that comes after the copilot.
AI Labs explores agentic workflows, knowledge-grounded intelligence, workflow formalization, and trust frameworks, studying how analyst expertise and governance decisions become structured, reusable operational intelligence at enterprise scale.