Persistent World Models

Vision sees.
Intelligence remembers.

Mihawk turns the physical infrastructure you already have into a persistent world model — one that tracks who was where, when, across imperfect and changing environments. No new hardware. No data leaves the premises.

obs₁ obs₂ obs₃
W[t₀, t₁] = { Entities, Geometry, Relations, Time }
Perceive Remember Reason
t₀ t₁ t₂ now

Traditional

Stateless

Per-frame accuracy doesn't produce understanding. Each moment is treated as independent — no memory, no history, no context.

Mihawk

Persistent

A structured, time-indexed record of what actually happened — grounded in space and time, queryable, and constrained by recorded evidence.

Alerts need speed. Identity needs time. Real understanding needs both.

Perception, memory,
and reasoning — composed over time.

01

Perceive

Structure from imperfect observations

Observations from existing sensors are fused into a shared, persistent model of the environment. Positions, relationships, and events are grounded in space and time — so the system knows where things are, even across viewpoints, occlusions, and changing layouts.

Heterogeneous observation 3D scene structure Cross-view alignment
02

Remember

Memory over time

People and objects are tracked across views and over time into a searchable record of who was where, when. Entity continuity, trajectory history, event recall — all persistent and queryable.

Entity continuity Trajectory memory Event history
03

Reason

Inference under constraints

Reasoning agents build and test hypotheses over the model, ruling out what physical and spatial constraints make impossible. Hypothesis assembly, scenario replay, counterfactual check.

Hypothesis assembly Scenario replay Counterfactual check

One world model,
many physical problems.

Each deployment is a different query over the same underlying world model. Persistent situational understanding is the capability.

Education

Attendance

From a single existing classroom camera, Mihawk maintains a persistent record of who was present and when — despite occlusion, natural movement, and imperfect camera placement.

Security

Access control

Entry and exit decisions resolved with identity, policy, and event context on top of existing access infrastructure. Real-time authorization with full audit trail.

Traffic

Vehicle violations

Vehicle movement, violations, and evidence reconstructed from existing roadside cameras — the same world model applied to vehicles, pedestrians, and infrastructure.

A research-product company.

The principles behind the product are formalized and benchmarked in our research — not asserted.

Published

PHAST

Grey-Box Port-Hamiltonian State-Space Models with Recoverable Physical Structure

~10× smaller and ~10⁴× more accurate than Transformers across 13 SciML benchmarks.

Paper →

Preprint

C-PHAST

Compositional Port-Hamiltonian World Models for Structured Dynamics Transfer

~10× more stable under robot-embodiment swap. Robust under topology and sensing change.

Preprint →

Structure over precision.

"To reason about the physical world at scale, a system must not only capture structure — it must think with it."

Relational first

Mihawk understands a space through how things relate and persist — not through perfect measurement — so it holds up on real, imperfect deployments.

Built for change

Cameras move, sensors are added, layouts change. Mihawk folds new and imperfect signals into the same persistent world model without rebuilding from scratch.

Sufficient fidelity

Not a perfect simulator — just enough structure to constrain what's possible and compare candidate futures, degrading gracefully rather than collapsing.

Understanding real
environments over time.

If you operate in environments where context, accountability, and time matter — or if you are building in physical-world intelligence — we'd like to hear from you.