From cornmill.online

Evolution solved intelligence
over billions of years.
We're applying its blueprints to AI.

Cornmill Agentics builds autonomous AI agents modelled on biological cognitive systems. Our agents don't just respond — they learn, remember, sleep, and evolve.

Design Philosophy

Nature as the ultimate engineer

3.8 billion years of evolution have produced the most sophisticated information processing systems known to exist. Every biological organism is a solution — refined across countless generations — to the problems of perception, memory, decision-making, and adaptation.

Modern AI largely ignores this inheritance. Most systems are stateless — brilliant in the moment, amnesiac by design. They never sleep, never consolidate, never develop the institutional memory that makes biological intelligence so powerful.

We take a different approach. Rather than engineering from first principles alone, we study the patterns that evolution has already validated and translate them into agent architectures. Sleep cycles that consolidate memory. Specialisation that mirrors ecological niches. Trust hierarchies borrowed from social species. Delegation patterns found in colony organisms.

The result: AI agents that don't just process — they grow.

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Evolutionary Shortcut

Why solve from scratch what nature perfected over eons? We extract proven cognitive patterns from biology and implement them in silicon — accelerating development by leveraging billions of years of R&D.

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Consolidation Over Accumulation

Biological brains don't just store — they prune, merge, and synthesise during sleep. Our agents do the same, transforming raw interactions into distilled knowledge through dream cycles.

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Emergent Specialisation

In nature, species find niches. In our system, agents develop distinct expertise and personalities, delegating to specialists just as organisms in an ecosystem share the cognitive load.

Bio-Mimetic Design

Biological blueprints, digital implementation

Biology

Sleep & Memory Consolidation

During sleep, the brain cycles through light, deep, and REM stages — pruning weak connections, strengthening important ones, and discovering cross-domain patterns.

Our System

Dream Engine

Agents accumulate "melatonin" through activity. When thresholds are reached, they enter dream cycles — light sleep prunes redundancy, deep sleep consolidates, REM discovers cross-user insights.

Biology

Circadian Rhythms

Organisms regulate activity cycles through chemical signals — melatonin rises with sustained wakefulness, triggering the need for rest and consolidation.

Our System

Melatonin Tracker

Digital melatonin accumulates with each message, tool use, and memory operation. The system self-regulates — high engagement naturally triggers consolidation periods.

Biology

Colony Intelligence

Ant colonies, bee hives, and neural networks achieve complex behaviour through specialised agents communicating via simple protocols — no central controller required.

Our System

Multi-Agent Delegation

Specialised agents delegate tasks to each other, preserving context. Like neurons in a brain, each handles its domain while the collective achieves far more than any individual.

Biology

Social Trust Hierarchies

Social species develop trust through repeated interaction — from stranger to ally. Access to shared resources scales with established trust.

Our System

Trust-Aware Permissions

Every communication channel carries trust tiers. New contacts start restricted; verified senders gain tool access. The agent's capabilities scale with the relationship.

The System

A cognitive agent platform

cornOS is our core platform — a cognitive agent orchestration system that deploys AI assistants capable of genuine learning and autonomous operation. Explore the full platform →

01

Perceive

Agents monitor multiple channels — email, messenger, webhooks, scheduled triggers — ingesting messages with full context and sender trust verification.

02

Remember

Every interaction is informed by persistent memory — per-user preferences, global knowledge, and document intelligence via RAG. No conversation starts from zero.

03

Act

Agents plan and execute multi-step operations using 26+ tools — sending emails, searching documents, delegating to specialists, managing calendars, and more.

04

Consolidate

After sustained activity, agents enter bio-mimetic dream cycles. They prune, merge, and synthesise — waking up sharper, with distilled knowledge and cross-domain insights.

Capabilities

What our agents can do

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Persistent Memory

Per-user and global memory that persists across conversations. Agents remember preferences, context, and learned patterns — building genuine relationships over time.

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Dream Cycles

Bio-mimetic sleep stages — light, deep, REM, and lucid — that consolidate experience into knowledge. Agents don't just store data; they learn from it.

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Agent Delegation

Specialised agents hand off tasks to each other with full context preservation. Local and remote delegation via the Model Context Protocol.

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Omnichannel Presence

Unified agent identity across email, messenger, WhatsApp, SMS, Telegram, and webhooks — with trust-aware permissions per channel.

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Document Intelligence

Per-agent RAG system with semantic chunking and embedding search. Agents can ingest PDFs, manuals, and policies, then reference them contextually.

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26+ Built-in Tools

From email and calendar to file management, web search, OCR, AppleScript automation, and financial operations — plus unlimited extensibility via MCP.

Scheduled Autonomy

Cron-based task scheduling lets agents operate independently — running daily summaries, periodic maintenance, and custom automated workflows.

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Governance & Approvals

Built-in approval gates for sensitive operations. Trust policies ensure agents act within defined boundaries while maintaining autonomous capability.

Research Applications

A laboratory for complex systems

Run concurrent agent populations with controlled differences to model outcomes — turning theory into observable, repeatable experiment.

Because our agents develop genuine behavioural characteristics — memory, personality, trust dynamics, learning rates — they become something unprecedented: controllable proxies for studying complex adaptive systems.

Deploy two identical agent populations, vary a single parameter — management style, information flow, incentive structure — and observe how outcomes diverge over time. The bio-mimetic architecture means these aren't abstract simulations; the agents learn, adapt, and exhibit emergent behaviours just as biological systems do.

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Management & Organisational Research

Model the effects of flat vs hierarchical structures, different delegation strategies, or varying autonomy levels. Observe how information flows, decisions propagate, and institutional knowledge develops under each configuration.

Example: Run parallel agent teams — one with centralised decision-making, one with distributed authority — performing identical tasks. Measure speed, accuracy, and knowledge retention over hundreds of cycles.
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Economic & Market Modelling

Simulate market participants with persistent memory and learning capability. Study how trust dynamics, information asymmetry, and incentive design affect emergent market behaviour — with agents that genuinely adapt rather than follow scripted rules.

Example: Deploy trading agents with different risk tolerances and memory consolidation rates. Observe how market stability varies when participants learn and remember at different speeds.
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Evolutionary & Behavioural Studies

Test hypotheses about cooperation, specialisation, and adaptation. Because the agents' cognitive architecture mirrors biological systems, observed dynamics map meaningfully to evolutionary theory — at a pace biology can't match.

Example: Vary the dream consolidation parameters across populations to study how different "sleep strategies" affect long-term knowledge quality and group performance.
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Communication & Network Effects

Study how information spreads, distorts, and consolidates across agent networks. Model the effects of different communication topologies, trust thresholds, and channel configurations on collective intelligence.

Example: Create isolated agent clusters with different inter-group communication rules. Measure how quickly accurate information propagates versus how misinformation decays under each configuration.

The method: controlled concurrency

1

Configure

Define your agent populations with identical base parameters. Identify the variable you want to study.

2

Vary

Introduce a single controlled difference — a management structure, a memory parameter, a trust threshold, an incentive rule.

3

Observe

Run both populations concurrently through identical scenarios. The system logs every decision, memory operation, and interaction.

4

Analyse

Compare outcomes across populations. Because agents are bio-mimetic, divergences in behaviour map to meaningful real-world hypotheses.

Case Study

The Cornmill Intelligencer

Proof that autonomous agents can run real-world products — not just answer questions.

Est. 2026

The Cornmill Intelligencer

"News, Freshly Ground Daily"

Every morning, with no human intervention, our agent system researches, writes, edits, and publishes a complete daily newspaper — now on its 41st edition and counting.

The Cornmill Intelligencer is a fully autonomous publication covering Scottish and UK news, science, community affairs, wildlife, audio technology, and more. It features a front page, dedicated sections, a "Good News Index" tracking positive stories, and even a playful Page 3 featuring bird photography.

This isn't a demo or a proof of concept. It's a live product, updated daily, read by real people. It demonstrates what becomes possible when AI agents have persistent memory, scheduled autonomy, and the ability to coordinate complex multi-step workflows without human oversight.

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Interested in bio-mimetic AI?

Whether you're exploring autonomous agent systems for your organisation or interested in the research behind our approach, we'd love to hear from you.