Document Intelligence

Docula

Docula is the perception layer — an owned multimodal model that turns any vendor document into a schema-validated record with per-field confidence and audit-ready provenance.

6 lettersDocument IntelligenceOwned model · GPU-accelerated

Part of the Closora close

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Overview

What Docula does

Docula is the perception layer — an owned multimodal model that turns any vendor document into a schema-validated record with per-field confidence and audit-ready provenance.

Every product in the suite shares memory, audit trail, and the verifier — composing one autonomous close function from owned models.

At a glance

  • Invoice + PO + remittance capture
  • Bulk AP backlog ingestion
  • Multilingual document extraction
Key features

Why teams deploy Docula

How it works

Inside the workflow

Ingest

Docula receives its inputs from your ERP, banks, or document stores in real time.

Reason

Owned, fine-tuned models make a structured, tool-callable decision with rationale.

Verify

An independent verifier gates the action against policy before anything is written.

Record

The outcome and its provenance land in the immutable audit timeline.

Specifications

Built on the NVIDIA stack

Docula specifications
ModelFine-tuned vision-language
ServingTensorRT + Triton
ThroughputSub-second per page
DeployVPC / air-gapped via NIM
Inside the product

A look at the surface

Live view
Exception detail
Audit trail
Use cases

Where it earns its keep

Growth
$2k–$10k /mo

Docula included with the Growth platform.

  • Unlimited agents
  • Shared audit trail
  • SSO + audit log
  • Shadow onboarding
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Related products

Pairs well with

FAQ

Docula questions

Yes — packaged as a NIM microservice for VPC or air-gapped deployment.

Yes — each product is self-contained and can start on a single workflow without the rest of the suite.

Against a labeled benchmark with verifier catch-rate reported transparently.
Ready when you are

See Docula on your data.

We'll run it in shadow mode against a recent period so you can compare.