voidly
Network Intelligence

About Voidly

Network intelligence built on trust. Censorship measurement, predictive risk, and encrypted communications for the open internet.

What Voidly Is

Voidly is an infrastructure company building five products on a network intelligence layer:

  • Atlas— Predictive network-risk intelligence across 127 countries. Live data, open API, risk forecasting, platform and ISP scoring.
  • Relay— E2E encrypted transport for agents and clients. Forward secrecy, post-quantum key exchange, private coordination.
  • Network— Global measurement infrastructure. 37+ probe nodes, VPN reachability, network telemetry.
  • Apps— First-party clients (VPN, Veil, Mail, Extension) built on the stack.

Every product feeds data back into the infrastructure. The more people use Voidly, the better the data gets.

Who Voidly Is For

  • Developers — building circumvention tools, connectivity-aware apps, or AI agents that need encrypted communication
  • Researchers — studying internet freedom trends with citable, ML-classified incidents
  • Journalists — verifying censorship claims with evidence chains and confidence scores
  • Users in censored regions — who need reliable VPN, encrypted messaging, and accurate data about what is blocked

How We Know the Need

Iran — recurring total shutdowns

During the 2022 Mahsa Amini protests and subsequent unrest, Iran imposed multiple nationwide internet shutdowns. Our incident database documents hundreds of Iran-related censorship events, including WhatsApp, Instagram, and Signal blocking.

Myanmar — persistent platform blocking

Since the 2021 military coup, Myanmar has maintained blocks on Facebook, Twitter, and Wikipedia. Researchers tracking the situation need verified, timestamped evidence — not anecdotal reports.

Russia — expanding censorship infrastructure

Russia's TSPU (technical means of countering threats) has expanded from blocking individual domains to throttling entire protocols. Our network detects VPN blocking, protocol throttling, and DNS poisoning patterns that evolve weekly.

What's missing today

When journalists cover a breaking shutdown, they cite OONI raw measurements or anecdotal user reports. There's no single source providing classified, citable incidents with evidence chains and confidence scores — that's the gap Voidly fills.

How We Engage Users

Probe contributor feedback loop

Community probe operators report blocking patterns from their networks. A leaderboard and trust scoring system incentivizes sustained contribution. Contributors in high-censorship countries provide ground-truth signals that validate our ML classifier.

Researcher & journalist integration

Citable incident IDs (e.g. IR-2026-0142) were designed after feedback from researchers who needed stable references for academic citation. MCP server integration lets journalists query censorship data directly from their AI tools.

Open data as a feedback channel

All incident data is CC BY 4.0. When external researchers find discrepancies, they can file corrections through our API or GitHub. This creates a self-correcting loop independent of our team.

What's next

Structured user interviews with journalists and human rights defenders in target regions. Advisory relationships with civil society organizations. These are planned deliverables for the next funding cycle.

Why This Exists

Existing measurement projects are essential but leave a gap:

  • OONI generates raw probe measurements — doesn't classify incidents
  • CensoredPlanet runs remote DNS/HTTP tests — no real-time alerting
  • IODA tracks network outages — not targeted domain/platform blocking

Voidly bridges this gap: we correlate data from all three (plus our own 37-node Voidly Network) into verified, ML-classified incidents with human-readable IDs (like IR-2026-0142), evidence chains, and confidence scores.

What We Provide

  • 37 globally distributed probe nodes generating proprietary measurement data
  • 317 verified censorship incidents with evidence chains
  • ML classifier (99.8% F1, internal validation) trained on 37K labeled samples
  • Shutdown forecast model (74.6% AUC, internal validation) — 7-day risk predictions across 127+ countries
  • Multi-source correlation: Voidly Network + OONI + CensoredPlanet + IODA
  • Real-time VPN accessibility testing across major providers
  • 10-year historical archive (1.6M records, 127+ countries)

Research & Open Data

Live Stats

Data as of March 2026

31.6M
Live Samples
99.8%
Classifier F1 (internal eval)
37
Global Nodes
127
Countries

Technical

AI Models
  • • Censorship classifier: 99.8% F1 (GradientBoosting, internal eval)
  • • Shutdown forecast: 74.6% AUC (XGBoost, internal eval)
  • • <50ms inference time
  • • Privacy-preserving: trained on aggregate data only
Infrastructure
  • 37 nodes, 6 continents
  • 99.8% uptime (self-healing)
  • • WireGuard + Stealth mode
  • • Zero manual intervention

Apps & Clients

Tools are free. Your anonymous usage data contributes to censorship measurement.

Transparency & Verification

Published Tools
Published tools (MCP server, agent SDK, probe app) are free to use. Censorship data is CC BY 4.0.
github.com/voidly-ai →
Blockchain Experiments
Privacy verification experiments on Base L2. Contracts are live; full proof pipelines are under development.
View contracts →
Warrant Canary
0 warrants received. Updated monthly.
Verify status →

Operator & Capacity

Dillon Parkes

Founder & Lead Engineer

Built Voidly from the ground up — infrastructure, ML pipeline, Voidly Network, and data ingestion. Also serves as CEO of Nexcom Media Group and as a board director of the Warriors Fund. Elected public official as Director of Montgomery County MUD No. 238 in Texas.

LinkedIn ↗
OperatorAi Analytics LLC (Texas)
What funding enables
1. Expanded Voidly Network (37 → 80+ nodes in underserved regions)

Expanded measurement coverage in underserved regions (Sub-Saharan Africa, Central Asia, SE Asia). Beneficiaries: researchers and civil society. Metric: coverage in 126 countries, ≤5min detection latency.

2. Faster incident classification pipeline

Sub-30-minute verified incident reports with evidence chains. Beneficiaries: journalists covering breaking censorship events. Metric: median detection-to-published < 30 minutes.

3. Community probe program expansion

Desktop probe app + leaderboard + measurement contribution. Beneficiaries: activists and researchers contributing local measurements. Target metric: 500+ contributors across 50+ countries within 12 months of launch.

Explore the data. Verify the methodology.

All censorship data is open. All tools are free.