Software
that improves
Software.

We don't ask you to trust claims. We show our work.

  1. 01Import a repository.
  2. 02Prodia understands it.
  3. 03Finds opportunities.
  4. 04Validates changes.
  5. 05Improves it safely.
Evidence first·No credit card·No sales call
evolution-engine.sh live
Active Lineage
16 Nodes
Accepted
12
repo · topology
operating
Analysinglib/auth/session.tsok
RefactoringuseAuth · O(n) → O(1)88%
Validatingsnapshot integrityok
How it works

Six steps. One continuous loop.

Tap any step to see what's happening underneath.

Why this is different

Not a tool. A new category.

Three ways software gets better. Only one of them runs while you sleep.

Traditional Development

Manual improvement

Humans read, decide, refactor, hope. Improvement is a meeting.

AI Coding Tools

Session-based assistance

Helps in the moment. Forgets when the tab closes. No memory of what worked.

cursor
session ends
Prodia

Continuous governed adaptation

Always learning. Always validating. Always reversible. Never asleep.

lineage live
Onboarding

Connect Your Repository

Pick a source — public or private. Prodia clones, indexes, perceives, hypothesises, validates, and seals its first decision in under thirty seconds.

  1. Step 01● done
    Source
    GitHub · GitHub
  2. 02
    Step 02○ idle
    Authorize
    OAuth handshake pending
  3. Step 03◌ locked
    Connect
    Authorize the source to enable connection
prodia connect·select source·public + private
authorize·GitHub·least-privilege scopesencrypted at rest · AES-256
Browser-based OAuth 2.0 · PKCE
Redirect to GitHub as Prodia for GitHub. Tokens are exchanged server-side and stored in the Prodia secret vault — never seen by the browser.
callback · auth.prodia.dev/callback/github
requested scopesread-only · 3
  • repo:read
    Clone + index private repositories
  • metadata:read
    Resolve org / branch / commit refs
  • checks:read
    Correlate CI runs with hypotheses
storage policy
  • · envelope-encrypted (KMS)
  • · per-tenant key isolation
  • · rotated every 90 days
  • · revoke any time
  • · never logged or echoed
  • · SOC 2 + ISO 27001
credentials vault·2 connected·1 expiringrotate · revoke · audit
  • GitHubactive
    OAUTH · you@prodia.dev · scopes 3
    active
  • GitLab
    not connected
    idle
  • Bitbucket
    not connected
    idle
  • Ansible Automation Platform
    not connected
    idle
  • Azure DevOps
    TOKEN · svc-prodia-indexer · scopes 2
    expiring
  • Harness
    not connected
    idle
  • Octopus Deploy
    not connected
    idle
  • AWS CloudFormation
    not connected
    idle
  • Bitrise
    not connected
    idle
$prodia connect--sourcegithub--authoauth
try
batch·0 targets · 0 providers
add repositories or groups above — across as many providers as you need.
idle
pipelineawaiting input
Clone & index
Perceive
Hypothesize
Validate
Seal
thought-stream · liveidle
waiting for repo · paste a URL above and press connect
onboarding · dossier
awaiting input
Run the simulator to populate hotspots, candidate mutations, and the first sealed decision.

Built for the Future of Software Development

Enterprise SaaSFintechHealthcareSecurityDevOps

Autonomous improvement requires governance, traceability, and trust. Prodia was designed from day one for all three.

The Problem

Software Stops Improving
The Moment Engineers Stop Working

Traditional Development

  • Improvements happen manually
  • Technical debt accumulates
  • Engineering capacity is limited

AI Coding Tools

  • Generate code on demand
  • No continuous operation
  • No long-term learning

Prodia

  • Continuous improvement
  • Long-horizon operation
  • Learns from outcomes
  • Safely evolves software over time
Operating Principle

Governed Adaptation, Continuously Validated

Prodia evaluates the codebase, identifies candidate improvements, validates them against baseline, and promotes only what survives measurement.

Not asserted.
Not assumed.
Evidenced.
01

Measured software evolution

Adaptation is observed, measured, and recorded — not asserted.

02

Continuous validation

Every candidate change is tested against baseline before persistence.

03

Controlled adaptation

Changes operate within policy boundaries set by your organisation.

04

Rollback guarantees

Every change can be traced, validated, and reverted instantly.

05

Evidence-driven improvement

Outcomes inform the next decision — and the limits of the next claim.

06

Human-governed workflows

Authority, approval scope, and oversight remain with your team.

Category Creation

Beyond AI Coding

The next generation of software development is not better code generation. It is software that continuously improves itself.

AI Coding Tools
Prodia
Write code
Improves software
Require prompts
Continuous execution
Session based
Long-horizon operation
Human initiated
Autonomous improvement
Limited memory
Adaptive memory
How it works

The continuous improvement loop.

Eight stages, one signed cycle. Every revolution emits evidence, retires falsified work, and compounds the next decision. Click any stage to inspect what it consumes and what it emits.

livecycle #1284stage 01 Observeauto-advancing
Continuous cycle
Observe
emitted 37 artifacts
Cycles completed
0
this session
Stages explored
1/8
click to inspect
Evidence emitted
95
signed artifacts
Value compounded
$184.2k
ARR equivalent
commitment tiercurious

Generate your first evidence bundle in 2 minutes.

Connect a public repo or pick a sample. We'll run a single shadow cycle and surface the highest-lift hypothesis.

Run free demoWatch a recorded run insteadLow commitment · no signup · sample repo allowed
Evidence · Lab

Every claim should be measurable.

What follows is not a product tour. It is the experimental record of the system describing itself — methods, results, freshness, and a pointer into the decision ledger for each measurement.

measured·governed·reproducible·falsifiable
Evidence timeline · longitudinal recordscroll →
live instrument · E-007
12-week window
interventions / accepted mutation · 12 weeks−68% · trailing
1.00 · baseline0.32 · current
wk 0wk 12 · now
E-007 · operations
ongoing

Operator effort declines as adaptation matures

−68% interventions / mutation
Claim

Measured founder/operator interventions per accepted mutation decline as lineages stabilise. Not zero — measurably lower.

Method

Interventions logged per mutation (manual review, manual override, manual rollback). Reported as a ratio against accepted mutations over a 12-week trailing window.

Supporting metrics
baseline (wk 0)
1.00
current (wk 12)
0.32
trailing slope
−0.06 / wk
What is not yet proven

Open: this is a measured trend, not a guarantee. Some lineages still require operator review at every promotion.

$ ledger://ops/intervention-ratio
Eight experiments · 4 proven · 4 ongoing · 0 open
Open the decision ledger
Compounding

The Lineage Map

Every accepted mutation chains to its parent across epochs, and ports across repos through transfer hops. Compounding is not a metaphor — it is a graph you can trace.

epoch explorer
E212 E2176 epochs
17 mutations4 hops
E212E213E214E215E216E217d1d1d1d2d2d2d3d3d2d4d3d5d5d3d6d6d4
lineage · graph
compounding
coreedgeledgerlineagetransfer
lineage · dossier
ledger://E217.B05
epoch E217 · core
Compounded refund net
depth
fi averted
11.4h
Δ reliability
+3.6%
lineage path
01AuthAdapter collapseE212
02Session lineage unifyE213
03BillingEngine refund pathE214
04Refund rollback rehearsalE215
05Billing chain extend d5E216
06Compounded refund netE217
transfers in range · E212–E217
4 hops
corpus · E212–E217
mutations
17
max depth
transfer hops
4
fi averted
82.7h
Why Enterprises Care

Potential business value, framed as evidence — not promises.

Prodia is designed to help organisations explore measurable improvements in maintenance, velocity, consistency, and governance — each supported by ongoing evidence generation.

01

Lower maintenance overhead

Explore reductions in repetitive engineering work through governed automation.

02

Faster improvement cycles

Shorten the path from opportunity to validated change inside policy boundaries.

03

Operational consistency

Apply the same validation and rollback discipline to every change, everywhere.

04

Governance visibility

Surface what changed, why, under whose authority, and how it can be reverted.

05

Safer experimentation

Run controlled adaptation behind baseline protection and change isolation.

06

Compounding evidence

Build a measurable record of outcomes that informs the next decision.

We avoid guarantees. Every claim above is framed as a hypothesis tested against measured outcomes in your environment.

For technical evaluators — the architecture beneath
Visible Intelligence Layer

Five Agents. One Governed Pipeline.

Every Prodia decision moves through a transparent orchestration of specialised agents — observe the system thinking, in real time.

orchestrator · live
cycle 01041
PlanSpecBlueprintMutationEvidenceDecision01PlannerIntent → Strategy02DesignerStrategy → Blueprint03EngineerBlueprint → Mutation04ReviewerMutation → Evidence05GovernorEvidence → Action◂ governed feedback · every change reversible ▸
agent · 03active

Engineer

Blueprint → Mutation

Responsibilities
  • Generate code mutations under blueprint constraints
  • Apply diffs in isolated sandboxes
  • Attach lineage & provenance metadata
Decisions
  • Diff strategy
  • Sandbox topology
  • Lineage anchor
Outputs
  • Signed diff bundle
  • Lineage node
  • Telemetry hooks
Live example
MUT-9421 · O(n) → O(1) session lookup · 14 files

hover a node · click to lock the dossier

Phase 04 · Agent Orchestration

A swarm, not a script.
Twelve specialists, one cohesion.

The pipeline you saw earlier runs once per cycle. Underneath, a constellation of role-specific agents works the codebase in parallel — leasing regions, exchanging signed evidence, and escalating to a human the instant policy demands it.

Agents online
12
active charters
Tasks in flight
12
parallel work units
Handoffs / min
18
inter-agent signals
Escalations
0
awaiting human co-sign
Cohesion
0.83
swarm alignment index
Live swarm · 12 specialists
tick · 1000
Task bus · signedtail -f
  • HANDOFFScout-01Refactor-02 · tangled call-graph in /billing/engine (depth 4)
  • EVIDENCEAccessor-12Refactor-02 · focus ring restored across 7 components
  • HANDOFFScribe-08Linguist-11 · 4 strings desynced from runtime intent
  • LEASEMigrator-10DepCurator-06 · reserving db/migrations · TTL 12m · reversible
  • ESCALATIONAuditor-05Human (sec) · scope drift in auth/session.ts — hold for co-sign
swarm cohesion · 82.5%sealed cycles this session · 17human co-signs pending · 0
Evolution Engine

Intelligence you can watch accrue.

Hypotheses are discovered from production telemetry, validated in shadow, proven in canary, and graduated to policy — or falsified and retired. Every promotion is signed, every retirement is recorded. Nothing is silent.

01
Discovery
2

Hypothesis mined from telemetry

02
Shadow
2

Runs offline against production traffic

03
Canary
1

Live on ≤5% of scope, probes watching

04
Adopted
1

Promoted into policy, falsifiable forever

05
Retired
1

Falsified or no lift, removed cleanly

Hypothesis
H-2041
Replace N+1 in invoice loader with batch query
Domain
billing
Lane
Canary
progress 42%
Signal
+1.8%conf 91%
Cumulative lift
+3.2% SCBI

Adopted hypotheses, compounding.

Adopted1
In flight5
Retired1
Falsification rate
50%of completed trials

High falsification is a feature. It means the bar is honest.

Adoption velocity · 24h

Every promotion signed · every retirement recorded · nothing silent

Phase 09 · Adaptive Memory

Memory That Compounds

Every sealed epoch leaves Prodia smarter than the last. Scrub the timeline to watch heuristics crystallise, cross-domain transfers fire, and the failure index decay as memory compounds.

Bus idle · seed memory horizon
E180E217E217
Heuristics
13
Transfers
9
FI
71.1
FI ↓
28.2%
Heuristics ledger
Durable rules sealed into platform memory
13
FI decay curve
Failure index vs E180 baseline
28.2% ↓
FI
71.1
ΔE
-0.74
Epoch
E217
Cross-domain transfers
Knowledge crossing domain boundaries
9
  • T-30analyticsinfraProbe-budget calibrationE215
  • T-27platformpaymentsQuorum-gated rolloutE211
  • T-24searchfrontendGraph-aware ranking signalE208
  • T-21paymentsbillingIdempotency re-promotionE205
  • T-18analyticsauthAnomaly-score gatingE201
  • T-15frontendinfraIdle-budget schedulingE198
Memory horizon · 38 sealed epochsPosition · E217 (38/38)Heuristics retained · 13/13
Long-Horizon Autonomy

Built For Long-Horizon Autonomy

Most AI systems fail when complexity accumulates. Prodia was designed to sustain intelligent behavior across extended execution windows while preserving goals, governance, and operational safety.

Cycles Executed
1,482,309
live
Mutations Attempted
28,491,204
live
Improvements Accepted
9,104,882
live
Rollbacks Triggered
184,201
live
Human Interventions
482
live
Governance Architecture

One system. Five guarantees.

Governance is not a feature list. It is a single mesh — a policy kernel and five interlocked guarantees, each enforced on every change, every agent, every artifact.

Risk Tiersscore 0 – 1
T1 · Trivial0.00 – 0.25
T2 · Low0.25 – 0.50
T3 · Elevated0.50 – 0.80
T4 · Critical0.80 – 1.00
POLICYKERNELRollbackIntegritySignatureProtectionValidationGatesRiskClassificationAuditability
Guarantee · 03
enforced

Validation Gates

No change reaches main without clearing the gate stack: type · contract · perf budget · semantic equivalence · isolated execution.

ENFORCES5-stage gate · isolated cluster · n=14
SAMPLE LOGcluster-01 · 14/14 pass · perf Δ +1.8%
live · last 24h
5
gates per change
live example streams · governed event ledger
streaming · frame 01/24
t0
t23
speed
Governance Mesh

Governance is a wired system, not a checklist.

Eight subsystems exchange signed signals continuously: policy verdicts, risk scores, lineage graphs, approval tokens, rollback proofs, rationales, ledger entries, and compliance attestations. Hover to trace any subsystem's dependencies; click to lock its dossier.

01Policy02Approval03Audit04Lineage05Risk06Rollback07Explainability08ComplianceGOVERNANCE MESH8 subsystems · 14 channelsALL SIGNALS SIGNED
Subsystem 03

Audit Ledger

Hash-chained record

Emits
  • Signed entries
  • Replay bundles
Consumes
  • Every other subsystem
SLO owned
append < 80ms · 0 gaps
Live example
LEDGER#0x8af1 · 412k entries · chain intact
Governance Systems

Six wired systems. One governed surface.

Rollback Integrity, Transfer Learning, Core Safety, Signature Protection, Risk Classification, and Validation Gates run as one live mesh. Trace any system to its peers, then take the controls for yourself in a free guided demo.

LockedQ5 · Risk Classification
R1RollbackT2TransferS3SafetyK4SignatureQ5RiskV6GatesGOVERNED CORE6 systems · 12 channelsALL SIGNED · ALL REVERSIBLE
System Q5

Risk Classification

Continuous tiered scoring across every in-flight action. Tier crossings raise approver count; trip lines halt execution and arm rollback.

Emits
  • Risk scores
  • Trip signals
  • Tier deltas
Consumes
  • Lineage scope
  • Probe telemetry
  • Historical falsifications
SLO owned
score refresh < 2s · calibration drift < 3%
Live example
RISK-5102 · tier=low · trip=false
Field proof
97.4% calibration accuracy (90-day window)
Take the controls

Walk the six systems in a free guided demo — no install, no card.

Step through Rollback, Transfer, Safety, Signature, Risk, and Gates on your own scenario. Prefer to read first? Open the trust dossier or book a 20-minute pilot briefing instead.

Trust Architecture

Five boundaries between intent and effect.

Every action travels a signed path: Human → Policies → Governance Layer → Agent Swarm → Actions. Each boundary is explainable, blockable, and auditable. Hover to inspect; click to lock a stage.

BOUNDARY 01BOUNDARY 02BOUNDARY 03BOUNDARY 04Human01Intent & AuthorityPolicies02Declarative GuardrailsGovernance03Decision CourtAgent04Constrained ExecutionActions05Reversible Effects
Stage 03 · 3 of 5

Governance Layer

Decision Court

Live example
GOV-3318 · verdict=admit · 4 checks · ledger#0x8af1
Validates
  • Plan validity & rollback proof
  • Falsification tests passed
  • Lineage & provenance complete
Blocks
  • Plans without rollback
  • Unfalsifiable claims
  • Stale lineage
Evidence emitted
  • Signed verdict
  • Hash-chained ledger entry
  • Replay bundle

No stage can be skipped · every boundary is hash-chained to the next

ROI · Engineering Capacity

Reclaim engineer-quarters, not headcount.

Every assumption is exposed. Tune toil share, automation lift, and debt yield to your own telemetry — the model recalculates in real time.

Inputs · adjustable
Repo profile
48
$165
13w
Assumptions · exposed
38%
52%
0.31
Reclaimed capacity
4,685 hrs

360 hrs / week sustained over 13w horizon

$773K
loaded cost recaptured
Release-velocity uplift
1.26×

Projected lift in shipped increments / cadence, vs. unaided baseline.

+26%
vs. baseline
Debt burn-down
14.9 KLoC retired
of 142 KLoC
10.5%
week 0week 13
model.note — defaults calibrated against DORA, Stripe Developer Coefficient, and McKinsey DVI baselines. No hidden multipliers. Export the full assumption sheet during pilot scoping.
What We Believe

Autonomous software engineering is a testable hypothesis.

We believe software can become more adaptive, more maintainable, and more resilient through governed, evidence-based automation.

We do not claim that autonomous software engineering is solved.

Our focus is generating evidence, measuring outcomes, and continuously improving safety, reliability, and effectiveness.

Principle

Claims require evidence

Every capability statement is bounded by what we have actually demonstrated.

Principle

Outcomes are published

We publish outcomes, limitations, and lessons learned as part of responsible development.

Principle

Status is honest

Demonstrated, validating, researching, future — each label means something specific.

Founding Partner Program

Join The Founding Partner Program

Early Access

Limited

Be among the first teams to connect a repository and experience continuous autonomous improvement.

Request Access

Design Partners

By invitation

Shape the platform alongside our research team. Deep collaboration on capabilities and roadmap.

Request Access

Enterprise Pilots

Approval required

Production-scale evaluation with full governance, audit, and compliance support.

Request Access
Get Involved

What If Your Software
Improved While You Slept?

Join the organisations exploring autonomous software evolution.