Agency / execution layer

Polygonface Agency

Polygonface builds websites, operator tooling, and agentic systems for teams that need real delivery.

Polygonface is the execution layer behind the publication.

We design and ship websites, internal tools, agentic systems, and integration rails for teams that need the work to become real.

The agency is embedded into the larger publication ecosystem, but it is not the primary identity of the front page.

Agentic systemsOn-prem LLMConsultation + educationWeb development
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What Polygonface actually does

Clear work, not AI theatre.

Systems

Agentic systems

Reviewable multi-agent workflows, browser automation, observability, escalation paths, and boring fallbacks that keep the system legible under stress.

Private stack

On-prem LLM

Local or private-model deployments, retrieval and policy boundaries, internal tooling surfaces, and constrained operator paths for sensitive environments.

Advisory

Consultation + education

AI operating models for public and private-sector teams, workshops, executive framing, internal playbooks, and training that lowers confusion instead of raising theatre.

Surfaces

Web development

Astro and SvelteKit frontends, editorial sites, control rooms, partner portals, and service surfaces where humans and agents can actually work.

Selected systems

Proof of shape, not moodboard screenshots.

Delivery model

Short cycles, visible decisions, train-the-team handoff.

Engagements typically begin with diagnosis and scoping, move into surface design and build, and end with training or governance material so the organization can actually run the thing.

Step 01

System diagnosis

Map the real queues, handoffs, ownership, and breakpoints before touching the frontend.

Step 02

Surface design

Decide what belongs on the public site, what belongs in the operator layer, and what should never be user-facing.

Step 03

Build + integrate

Ship the frontend, auth boundaries, storage, tracking, delivery pipeline, and content model as one coherent system.

Step 04

Train + operationalize

Hand over playbooks, internal education, monitoring, and enough structure that the thing survives contact with real staff.

Where this lands

Public and private-sector teams that need AI to become legible, ownable work.

  • Public-sector teams who need AI guidance without procurement theatre.
  • Private-sector operators replacing fragmented no-code stacks with something they can actually own.
  • Leadership teams that need executive framing, staff education, and a sane path to implementation.
  • Organizations with sensitive data, private infrastructure, or a need for on-prem model deployments.