Jax spatial AI agent suite

Meet Jax Apex 1.0

The AI engine that translates natural language into mathematically optimal spatial solutions — across defense, infrastructure, logistics, and beyond.

01
The problem

Mathematical programming is fundamental across domains, yet remains a skill-intensive bottleneck

Mathematical optimization plays a critical role across many business sectors, from supply-chain management to energy systems to logistics planning, where effective decision-making relies on solving highly complex optimization problems.

While practitioners can usually describe these problems in natural language, translating them into precise mathematical formulations that optimization solvers can process remains a skill-intensive bottleneck. Crafting a correct formulation requires precise definition of decision variables, objectives, and constraints — a skill that typically takes years of specialized training in operations research to develop.

Our approach

Jax Apex 1.0 automates this task — translating natural language into executable optimization models, dispatching to the right solver, and self-correcting against domain constraints. No operations research expertise required.

02
Jax Apex 1.0

General-purpose AI is good at many things. Jax Apex 1.0 is purpose-built for physical world intelligence.

From defense operations to autonomous engineering, from global threat intelligence to logistics optimization — Jax Apex 1.0 is the flagship engine of a platform that spans nine specialized domains.

Grounded in operations research and spatial intelligence, Jax Apex 1.0 harnesses mathematical programming — producing constraint-verified solutions, following engineering standards reliably, and knowing when to escalate to a human.

In deployment, Jax Apex 1.0 is designed to outperform manual engineering with faster design cycles, lower CapEx, and designed to reduce field rework.

03
Performance

Up to 40% lower infrastructure CapEx*

Designed to reduce capital expenditure through mathematically optimal equipment placement and cable routing

Minutes not weeks

Network designs that take human engineers days to weeks, produced in minutes with full constraint verification

9 domains one platform

Defense, infrastructure, cyber, investigation, simulation, detection, remote sensing, agent systems, and spatial apps

*Target metrics based on architectural design goals. Actual results may vary by deployment.

Fig 1.A — Jax Apex 1.0

0%

[FIG 4.A.1] Formalize design intent

Natural language design requirements — coverage targets, equipment constraints, budget limits — are parsed into a formal optimization specification: decision variables, constraints, and objective functions that mathematical solvers can process.

[FIG 4.A.2] Encode spatial context

The physical environment — street geometry, building footprints, existing infrastructure, terrain — is structured into a machine-readable spatial representation that the AI reads and reasons over through deterministic queries.

[FIG 4.A.3] Classify problem structure

The formalized specification is mapped to canonical optimization classes — facility location, network flow, vehicle routing, scheduling — ensuring the right solver family handles each subproblem.

[FIG 4.A.4] Generate optimal design

The selected solver produces a mathematically optimal solution — equipment placement, cable routing, resource allocation — as structured, auditable operations on the spatial representation.

[FIG 4.A.5] Verify against constraints

Every generated design element is validated against engineering standards: capacity thresholds, maximum distances, physical laws, regulatory limits, and budget constraints. Violations are detected and repaired automatically.

[FIG 4.A.6] Converge on minimum cost

A mixed-integer programming solver evaluates the design against alternative configurations, converging on the solution that minimizes total deployment cost while satisfying every validated constraint.

04
Agent suite

Introducing the
Jax agent suite

[1]

Jax Apex 1.0

[NEW]

The orchestration engine that produces verified spatial solutions. It takes natural language problem descriptions, autonomously formulates precise mathematical programs — defining decision variables, objectives, and constraints — then dispatches to the optimal solver and self-corrects against domain constraints.

Specification

1.1Formalize operational intent into executable optimization models
1.2Grounded in mathematical programming, not heuristics
1.3Escalates honestly when a problem exceeds autonomous capability
1.4Follows engineering constraints every time
1.5Validated against solver-verified ground truth
1.6Compounds in accuracy as the suite improves
[2]

Jax Domain Classifier

Analyzes problem descriptions and maps them to canonical optimization classes — facility location, vehicle routing, network flow, scheduling, or resource allocation. This ensures each subproblem is routed to the engine best equipped to handle it.

Specification

2.1Classify problem structure from natural language
2.2Map to canonical optimization classes
2.3Match on mathematical structure, not keywords
2.4Route to optimal solver engine
[3]

Jax Constraint Engine

Translates domain-specific rules into mathematical constraints and validates every generated solution against engineering standards, physical laws, and capacity limits. Detects and repairs constraint violations before any output.

Specification

3.1Translate domain rules to mathematical constraints
3.2Validate against engineering standards and physical laws
3.3Detect and self-correct constraint violations
3.4Output: verified, deployable spatial solutions
[4]

Jax Solver Dispatch

Routes formulated problems to the optimal solver: Mixed Integer Programming, Vehicle Routing, Constraint Programming, Graph Algorithms, Simulation, or Heuristics. Automatic selection based on problem structure, with browser-side execution for sub-second heuristics and server-side engines for complex optimization.

Specification

4.1MIP, VRP, CP, Graph, Simulation, Heuristic engines
4.2Automatic engine selection based on problem structure
4.3Sub-second browser-side heuristics
4.4Server-side for complex optimization problems
05
Leadership

Built under the leadership
of a world-class spatial AI expert

Building technology of this caliber requires deep expertise in operations research, mathematical optimization, and spatial intelligence — combined with the ability to architect an entire AI agent platform from the ground up.

AI leadership

Ari Aviv

Founder & CEO

06
Security

Engineering-first approach
to data privacy and security

We have invested heavily in data privacy and security. All infrastructure designs are generated within your project environment.

  • Geospatial data is encrypted in transit and at rest
  • No customer data is used for model training
  • SOC 2 compliance roadmap in progress
  • Project-level isolation — your data is never shared across workspaces

Learn more

Get purpose-built AI
for industry-leading
physical world intelligence