DiManEx accelerates additive suitability reviews by turning drawings into structured insights with Werk24

“With Werk24, processing thousands of technical drawings can now be done in just a few hours.”
— Henk Jonker, Co-Founder, DiManExThe challenge
DiManEx helps enterprises keep machines running by producing spare parts on demand. To decide what can be additively manufactured — and at what risk — engineers first need to read every drawing: dimensions, GD&T, tolerances, surface finishes, materials, and notes.
- Volume & Variability: Thousands of PDFs and scans, each with different conventions
- Manual Bottleneck: Triage by hand slowed down AM feasibility reviews
- Hidden Risk: Missed tolerance or finish details could derail downstream AM planning
The team needed a reliable way to transform drawings into structured, machine-readable data — fast, and at scale.
Why now
- AM programs Scaling: More parts to screen, more stakeholders to inform
- Service Levels: Customers expect rapid, data-backed suitability decisions
- No Templates to Maintain: Solution must work on mixed-quality scans, not just perfect PDFs
The Werk24 solution
Purpose-built extraction for mechanical drawings
Werk24 reads 2D component & assembly drawings — including acceptable scans and clean hand-drawn engineering documents — and returns structured JSON with field-level confidence scores. It extracts title-block metadata and feature data (dimensions, upper/lower tolerances, GD&T, threads, surface roughness) and normalizes units/symbols.
- Deterministic output or a custom format matching DiManEx’s pipeline fields
- Insights for AM: external dims, volume estimate, primary/secondary processes (DIN 8580), feasibility flags
- No training data required to get started; optional custom quality gate if you want 99% on specific features
Integration that fits the stack
DiManEx consumes Werk24 via HTTPS (webhooks) and Python. Confidence thresholds automatically accept routine fields and route edge cases for review. For faster rollout, Werk24 delivered a custom schema mapping so payloads fill the existing AM analysis models without middleware.
- REST API + webhooks for lights-out processing
- Python SDK for pipelines and batch runs
- Data residency: EU or US; higher tiers offer a zero-retention option
Implementation in Days, not Months
- Day 1–2: trial key, sample drawings, output schema agreed
- Week 1: first workflow live (AM triage), confidence thresholds tuned
- Week 2+: expansion to volume estimates & process hinting, optional quality gate for critical features
No labeled training data required — unless you request a custom quality gate.
Results
AM triage at scale
Thousands of drawings are processed in just hours.
Typical per-page latency
Parallel jobs available on provisioned & enterprise tiers.
fewer late surprises
Feasibility flags highlight risky tolerances/finishes early.
data residency
Zero-retention option on higher tiers; encrypted in transit & at rest.
From developer: inside for developers: inside
Clean APIs, predictable JSON, confidences and webhooks. From PDF to production in hours instead of weeks.
pip install werk24 # Install Werk24
werk24 init # Obtain a trial license
werk24 health-check # Verify connection
Ready to see it on your drawings?
Try the online demo or request a trial API key (100 drawings).
