Vindonissa Document intelligence

Precision
document
understanding.

Agentic extraction trained on your process, running on controlled, Swiss‑hosted infrastructure. 99.9% accuracy on the workflows that matter.

Accuracy
99.9%
On workflows trained with your own examples.
Hosting
Swiss
Controlled, tenant‑isolated infrastructure.
Models
Routed
State‑of‑the‑art models, selected per task.
Training
~10 ex.
Lift production accuracy from a handful of samples.

— Approach

A small number of ideas, executed precisely.

01 / Evaluation

Models as a system

We continuously monitor and evaluate candidate models and flow configurations, then route every query to the combination that performs best on that sub‑task.

02 / Understanding

Document‑native reading

Resilience to source‑format change: the system contextualises ambiguous information and holds consistency when documents evolve over time.

2024 Q3  → layout v3
2025 Q1  → layout v4
2026 Q1  → layout v5  handled.
03 / Training

Routines, not prompts

Learn a client‑specific task from a handful of annotated examples. A Swiss‑electricity‑invoice routine rose from 98.0% to 99.9% with 10 examples.

Baseline 98.0%
+10 examples 99.9%

— How it works

From file to typed JSON, in six stages.

01

Secure ingest

Your file enters a private, Swiss‑hosted pipeline: hashed, tenant‑isolated, and cached.

— Ingest
02

Read the page

Several vision methods pull every line, table and layout cue into structured data.

— Read
03

Recognise

A classifier matches the document against your library, picking the right schema.

— Classify
04

Extract

A routine trained on your process reads for the fields you care about.

— Routine
05

Verify

Validation rules and field weights catch edge cases, only the failing stage re‑runs.

— Validate
06

Deliver

Typed JSON arrives at your endpoint via polling or webhooks.

— Return

Companion product · beyond extraction

Divico.

Controlled agentic execution, trained on your process.

When document understanding is step one of a longer workflow, Divico picks up where Vindonissa leaves off. Teach it a plan (in text, or by screencasting the task once) and it executes on demand on Swiss‑hosted infrastructure. Monitored, auditable, and pushed to 99% accuracy by the same routine training that powers Vindonissa.

Availability & docs — coming soon