-
Late-January US snowstorm wasn't historically exceptional: NOAA
-
Punctuality at Germany's crisis-hit railway slumps
-
Gazans begin crossing to Egypt for treatment after partial Rafah reopening
-
Halt to MSF work will be 'catastrophic' for people of Gaza: MSF chief
-
Italian biathlete Passler suspended after pre-Olympics doping test
-
Europe observatory hails plan to abandon light-polluting Chile project
-
Iran president orders talks with US as Trump hopeful of deal
-
Uncertainty grows over when US budget showdown will end
-
Oil slides, gold loses lustre as Iran threat recedes
-
Russian captain found guilty in fatal North Sea crash
-
Disney earnings boosted by theme parks, as CEO handover nears
-
Sri Lanka drop Test captain De Silva from T20 World Cup squad
-
France demands 1.7 bn euros in payroll taxes from Uber: media report
-
EU will struggle to secure key raw materials supply, warns report
-
France poised to adopt 2026 budget after months of tense talks
-
Latest Epstein file dump rocks UK royals, politics
-
Arteta seeks Arsenal reinforcement for injured Merino
-
Russia uses sport to 'whitewash' its aggression, says Ukraine minister
-
Chile officially backs Bachelet candidacy for UN top job
-
European stocks rise as oil tumbles, while tech worries weigh on New York
-
England captain Itoje on bench for Six Nations opener against Wales
-
Rahm says golfers should be 'free' to play where they want after LIV defections
-
More baby milk recalls in France after new toxin rules
-
Rosenior will not rush Estevao return from Brazil
-
Mercedes ready to win F1 world title, says Russell
-
Germany hit by nationwide public transport strike
-
Barca coach Flick 'not happy' with Raphinha thigh strain
-
WHO chief says turmoil creates chance for reset
-
European stocks rise as gold, oil prices tumble
-
Rink issues resolved, NHL stars chase Olympic gold at Milan
-
S. Korea celebrates breakthrough K-pop Grammy win for 'Golden'
-
Rodri rages that officials 'don't want' Man City to win
-
Gaza's Rafah crossing makes limited reopening after two-year war
-
African players in Europe: Ouattara dents Villa title hopes
-
Liverpool beat Chelsea to Rennes defender Jacquet - reports
-
S. Korea celebrates breakthrough Grammy win for K-pop's 'Golden'
-
Trump says US talking deal with 'highest people' in Cuba
-
Trump threatens legal action against Grammy host over Epstein comment
-
Olympic Games in northern Italy have German twist
-
Bad Bunny: the Puerto Rican phenom on top of the music world
-
Snapchat blocks 415,000 underage accounts in Australia
-
At Grammys, 'ICE out' message loud and clear
-
Dalai Lama's 'gratitude' at first Grammy win
-
Bad Bunny makes Grammys history with Album of the Year win
-
Stocks, oil, precious metals plunge on volatile start to the week
-
Steven Spielberg earns coveted EGOT status with Grammy win
-
Knicks boost win streak to six by beating LeBron's Lakers
-
Kendrick Lamar, Bad Bunny, Lady Gaga triumph at Grammys
-
Japan says rare earth found in sediment retrieved on deep-sea mission
-
San Siro prepares for last dance with Winter Olympics' opening ceremony
Axonis Emerges From Stealth With Federated AI Architecture That Brings AI to the Data, Names Todd Barr as CEO
Incubated for DoD & Intelligence use cases, startup announces commercial availability of enterprise AI platform, delivering the fastest path to secure production AI
ARLINGTON, MA / ACCESS Newswire / December 10, 2025 / Axonis, the federated AI infrastructure platform that enables enterprises to run AI directly on distributed, sensitive, and real-time production data, today emerged from stealth with a production-ready architecture that brings AI to any data, wherever it lives. The company also announced the appointment of Todd Barr as Chief Executive Officer. Barr, formerly of Red Hat, Chainlink, and GitLab, will lead Axonis as it commercializes its DoD-hardened architecture for the enterprise market. Barr joins technical founders David Bauer, PhD, and Chris Yonclas, distributed systems and AI/ML experts for the US Army, DARPA, and multiple US government cloud, intelligence, and digital transformation initiatives.

Axonis leadership: Todd Barr, CEO; Aimee D'Onofrio, COO; Chris Yonclas, Co-founder & CPO; David Bauer, PhD, Co-founder & CTO
The Axonis platform introduces a new architectural model that brings AI to the data, eliminating the need for data migration or duplication and delivering secure, immediate, and scalable AI for training, fine-tuning, and deploying models across cloud, on-prem, and edge environments. Axonis complements and protects existing cloud and data lake investments by providing a parallel path that enables organizations to act on raw, real-time data immediately, without slowing down or rethinking their centralization strategy.
As Barr leads Axonis into its commercialization phase following two years of incubation within a US government military contractor (T2S Solutions, part of the Madison Dearborn portfolio), the company is now fully independent and positioned to address one of the biggest barriers in AI adoption: operationalizing AI on data that is too fragmented, regulated, or mission-critical to move.
"Enterprises are quickly realizing that the real barrier to AI isn't modeling; it's getting AI models into production," said Matt Norton, Partner and Head of Technology & Government at Madison Dearborn. "Axonis solves this problem at the architectural level, and Todd has the go-to-market experience to bring that solution to market at scale."
Data Centralization: Where AI Works in Theory, Not Practice
Enterprises continue to struggle with taking models from proof of concept to production because some of their most valuable data-transactions, customer data, logs, sensor streams, images, and other real-time signals-cannot be moved to a centralized environment. Regulatory constraints, cost, latency, and operational risk make traditional data centralization strategies slow, expensive, and often impossible to fully achieve. As a result, AI adoption stalls at the exact moment organizations attempt to deploy models into mission-critical workflows.
Axonis Architecture: Bring AI to the Data
Axonis solves this production bottleneck with a federated AI architecture that executes models directly where data is generated and governed. Instead of moving terabytes of sensitive data, Axonis moves lightweight models, enabling:
Training, fine-tuning, and inference on live production data
Streamlined ELT at runtime for both training and inference
Real-time intelligence across distributed, centralized, and edge environments
Secure execution without creating new data copies
Model collaboration across organizations without sharing raw or sensitive data

This model-to-data approach dramatically reduces data movement, improves model freshness, and unlocks up to 12x faster time-to-AI value.
"After the ChatGPT-style quick wins, enterprises are realizing that they have an architecture problem standing in the way of true business transformation with AI," said Barr. "Axonis delivers a secure, AI-ready architecture for data and AI compute that will underpin and unlock the business transformation possible by GenAI and agents, without having to run a big IT data centralization project to get there."
Engineered for Defense, Built for Enterprise Scale
Axonis' architecture originated inside T2S Solutions to support the U.S. Department of Defense and Intelligence Community, where systems must operate under extreme constraints:
Intelligence must be close to the data
Data security is survival
Connectivity is limited or intermittent
Data is chaotic and everywhere
Every action must be governed and auditable
These requirements shaped Axonis into a high-assurance platform that meets and exceeds the security, sovereignty, and operational demands of industries such as healthcare, financial services, insurance, manufacturing, critical infrastructure, and the public sector.
"We've spent the better part of six years engineering the AI architecture in Axonis that will support environments where failure isn't an option," said David Bauer, Chief Technology Officer and technical co-founder of Axonis. "Those same capabilities-distributed execution, zero-trust security, and model-to-data design-are exactly what enterprises now need to safely and reliably run AI in production."
Built to Integrate, Designed to Collaborate
Axonis is a cloud-native enterprise solution that fits seamlessly into existing enterprise data and AI ecosystems, including Snowflake, Databricks, MinIO, Iceberg, Jupyter, and leading AI frameworks. The platform also unlocks a new model of cross-organization collaboration: teams can share intelligence without sharing or pooling data, allowing each party to benefit from federated learning while keeping sensitive information fully protected. Because Axonis applies security at the data level, even agentic AI systems and chatbots cannot access or act on information they are not authorized to see, bringing a new level of control and data protection to enterprise AI deployments.
About Axonis
Axonis brings AI to the data, wherever that data lives. Originally developed inside a US government solutions provider to the U.S. Department of Defense and Intelligence Community, Axonis enables secure, real-time AI on production, operational, sovereign, and edge data without moving the data. Axonis accelerates time-to-AI value while providing zero-trust, data-level security, and enabling cross-organization AI collaboration without sharing data.
For more information, visit axonis.ai.
Press Contact
Kristin Canders
207-974-7744
[email protected]
###
SOURCE: Axonis
View the original press release on ACCESS Newswire
W.Morales--AT