惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

G
Google Developers Blog
Google DeepMind News
Google DeepMind News
Hugging Face - Blog
Hugging Face - Blog
D
Docker
F
Fortinet All Blogs
博客园 - 三生石上(FineUI控件)
Project Zero
Project Zero
Engineering at Meta
Engineering at Meta
J
Java Code Geeks
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Simon Willison's Weblog
Simon Willison's Weblog
S
Security Affairs
NISL@THU
NISL@THU
T
Tor Project blog
A
About on SuperTechFans
宝玉的分享
宝玉的分享
腾讯CDC
S
Schneier on Security
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
P
Privacy & Cybersecurity Law Blog
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
Stack Overflow Blog
Stack Overflow Blog
P
Privacy International News Feed
雷峰网
雷峰网
C
Cyber Attacks, Cyber Crime and Cyber Security
Vercel News
Vercel News
Cisco Talos Blog
Cisco Talos Blog
D
DataBreaches.Net
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
Google Online Security Blog
Google Online Security Blog
Recorded Future
Recorded Future
L
LINUX DO - 热门话题
Microsoft Security Blog
Microsoft Security Blog
Latest news
Latest news
C
Check Point Blog
有赞技术团队
有赞技术团队
T
The Exploit Database - CXSecurity.com
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
云风的 BLOG
云风的 BLOG
SecWiki News
SecWiki News
Application and Cybersecurity Blog
Application and Cybersecurity Blog
爱范儿
爱范儿
月光博客
月光博客
V
Vulnerabilities – Threatpost
T
Threat Research - Cisco Blogs
P
Palo Alto Networks Blog
T
The Blog of Author Tim Ferriss
C
Cisco Blogs
Webroot Blog
Webroot Blog
S
Security @ Cisco Blogs

NVIDIA Blog

GeForce NOW Turns Up the Heat With New GeForce RTX 5080-Powered Toronto Server NVIDIA Nemotron Achieves Benchmark-Leading Performance With LangChain Deep Agents Harness AI Innovators Adopt NVIDIA Vera — Why Max Single-Threaded CPU at Scale Matters NVIDIA and Hugging Face Bring New Models and Frameworks to LeRobot for the Open Robotics Community How Open Models Are Driving AI Research How Nations Are Deploying AI for Strategic Priorities Joyride Through July With 12 Games Coming to GeForce NOW NVIDIA Unlocks AI Compute at Scale, Inviting Partners to Power the AI Infrastructure Buildout NVIDIA and Partners Build in America, for America NVIDIA BioNeMo Agent Toolkit Brings Accelerated AI to Life Sciences Researchers in Claude Science How NVIDIA’s Inference Software Stack Powers the Lowest Token Cost How Jaiveer Singh Is Helping Robots — and Developers — Move Faster Into the Omniverse: Three Workflows for Improving Vision AI Agent Accuracy With Synthetic Data and Fine-Tuning Claude Meets Blackwell Ultra: Anthropic’s Models Now Run on NVIDIA GB300 in Azure Firefly Aerospace Operates NVIDIA Jetson in Lunar Orbit for the First Time Open Models, Closed Environments: Palantir Brings Secure AI to US Agencies With NVIDIA Nemotron The Ultimate Summer Sale Pairing: Steam Sale Meets GeForce NOW Discounts NVIDIA and AWS Collaborate to Bring AI to Production at Scale How Businesses Are Building Specialized AI They Can Trust NVIDIA Powers Over 400 of the World’s 500 Fastest Supercomputers NVIDIA Brings Trusted, 24/7 AI Agents to Telecom Operations At ISC, JUPITER Shows What Exascale Science Looks Like NAIRR Science Program Reshapes Scientific Research, Powered by NVIDIA AI Infrastructure From Materials Simulation to Experimental Astronomy, New NVIDIA AI Software Unlocks Scientific Discoveries NVIDIA Vera CPU Opens the Way for Agentic Scientific AI at Los Alamos National Laboratory Eco Wave Power Turns Waves Into Watts With NVIDIA AI Infrastructure and Digital Twins Hotter Than a Hot Tub: The 45°C Breakthrough to Cool AI’s Biggest Machines How FERC’s Large-Load Interconnection Actions Help Address Grid Stress, Improve Affordability At Cannes Lions, NVIDIA Partners Reshape Advertising and Marketing With AI Sync and Stream: GeForce NOW Connects to Members’ Game Libraries Across Devices France Advances Europe’s AI Future With NVIDIA Technologies Hands Free, AIs Forward: NVIDIA XR AI Brings Agents to AR Glasses Coherent Breaks Ground on Expanded Texas Facility, Scaling AI’s Optical Backbone HPE AI Factory With NVIDIA Expands for the Era of Agents Fastest, Largest, Strongest: NVIDIA Blackwell Sweeps MLPerf Training 6.0 NVIDIA Blackwell Leads on First Agentic AI Infrastructure Benchmark Save Big and Play Bigger: GeForce NOW Summer Sale Brings Major Membership Savings For Robotaxis, Safety Must Be Built In, Not Bolted On NVIDIA Accelerates Google DeepMind’s DiffusionGemma for Local AI NVIDIA Confidential Computing to Help Expand Apple’s Private Cloud Compute How the UK Is Turning Sovereign AI Ambition Into Action With NVIDIA Technologies NVIDIA and LG Group Build an AI Factory to Advance Physical AI, Mobility and AI Infrastructure NVIDIA and Doosan Group Collaborate to Advance Physical AI and AI Factory Infrastructure NVIDIA, KRAFTON, NC and Reigning ‘League of Legends’ Champions T1 Celebrate RTX Spark at Korea’s PC Bangs Seoul Purpose: How NVIDIA and South Korea Are Building the Future of AI Forecast: Fun Ahead — 18 Games Join in June to Stream on GeForce NOW NVIDIA Research Unlocks Advanced Grasping, Smarter Autonomous Driving and Agent Training at Scale NVIDIA Enables the Next Era Of Physical AI Research With Agent Skills For Autonomous Vehicles, Robotics And Vision AI Industrial Software Leaders Build Secure, Autonomous AI Engineers With NVIDIA NemoClaw NVIDIA Partners With Microsoft on Unified Stack for Agentic AI Deployment, From Windows Devices to Cloud to Local NVIDIA Jetson Brings Agentic AI to the Physical World NVIDIA AI Cloud Ecosystem Expands Worldwide to Meet Global AI Compute Demand NVIDIA Factory Operations Blueprint Gives Factories a New AI Brain Taiwan’s Industry Titans Turbocharge World’s AI Infrastructure Buildout With NVIDIA How Cosmos 3 Helps Physical AI Think Before It Acts NVIDIA Levels Up Local AI Agents Across RTX PCs and DGX Spark NVIDIA Research Advances Robotics From Simulation to the Real World The Name’s Gaming … Cloud Gaming: ‘007 First Light’ Launches on GeForce NOW AI Factories: The New Infrastructure of Intelligence NVIDIA Vera CPU Is ‘Packing a Heavy-Hitting Punch’ Against Competition NVIDIA GTC Taipei at COMPUTEX: Live Updates on What’s Next in AI License to Stream: ‘007 First Light’ Coming to GeForce NOW With an Ultimate Bundle NVIDIA and Google Cloud Empower the Next Wave of AI Builders NVIDIA CEO Jensen Huang at Dell Technologies World: ‘Demand Is Going Parabolic, Utterly Parabolic’ Vera Arrives: NVIDIA’s First CPU Built for Agents Lands at Top AI Labs Sea You in the Cloud: ‘Subnautica 2’ Early Access Dives Onto GeForce NOW NVIDIA, Ineffable Intelligence Team Up to Build the Future of Reinforcement Learning Infrastructure Hermes Unlocks Self-Improving AI Agents, Powered by NVIDIA RTX PCs and DGX Spark NVIDIA and SAP Bring Trust to Specialized Agents Linked and Loaded: Gaijin Single Sign-On Now Available on GeForce NOW NVIDIA and ServiceNow Partner on New Autonomous AI Agents for Enterprises It’s Gonna Be May: 16 Games Hit the Cloud This Month, With More NVIDIA GeForce RTX 5080 Power NVIDIA Launches Nemotron 3 Nano Omni Model, Unifying Vision, Audio and Language for up to 9x More Efficient AI Agents Into the Omniverse: Manufacturing’s Simulation-First Era Has Arrived Tag, You’re It: GeForce NOW Levels Up Game Discovery With Xbox Game Pass and Ubisoft+ Labels Making Sense of the Early Universe From Rainforests to Recycling Plants: 5 Ways NVIDIA AI Is Protecting the Planet NVIDIA and Google Cloud Collaborate to Advance Agentic and Physical AI Autonomous AI at Scale: Adobe Agents Unlock Breakthrough Creative Intelligence With NVIDIA and WPP No Need for Space Gear — Capcom’s ‘PRAGMATA’ Joins GeForce NOW on Launch Day Rethinking AI TCO: Why Cost per Token Is the Only Metric That Matters New Adobe Premiere Color Grading Mode Accelerated on NVIDIA GPUs Strength and Destiny Collide: ‘Samson: A Tyndalston Story’ Arrives in the Cloud National Robotics Week — Latest Physical AI Research, Breakthroughs and Resources From RTX to Spark: NVIDIA Accelerates Gemma 4 for Local Agentic AI Press Start on April: GeForce NOW Brings 10 Games to the Cloud Efficiency at Scale: NVIDIA, Energy Leaders Accelerating Power‑Flexible AI Factories to Fortify the Grid Into the Omniverse: NVIDIA GTC Showcases Virtual Worlds Powering the Physical AI Era Game On: Five New Titles Now Streaming on GeForce NOW The Future of AI Is Open and Proprietary Blowing Off Steam: How Power-Flexible AI Factories Can Stabilize the Global Energy Grid Advancing Open Source AI, NVIDIA Donates Dynamic Resource Allocation Driver for GPUs to Kubernetes Community How Autonomous AI Agents Become Secure by Design With NVIDIA OpenShell NVIDIA GTC 2026: Live Updates on What’s Next in AI Smooth Moves: 90 Frames-Per-Second Virtual Reality Arrives on GeForce NOW From Simulation to Production: How to Build Robots With AI More Than Meets the Eye: NVIDIA RTX-Accelerated Computers Now Connect Directly to Apple Vision Pro NVIDIA, Telecom Leaders Build AI Grids to Optimize Inference on Distributed Networks GTC Spotlights NVIDIA RTX PCs and DGX Sparks Running Latest Open Models and AI Agents Locally Snap Decisions: How Open Libraries for Accelerated Data Processing Boost A/B Testing for Snapchat
Why Financial Institutions Are Converging on Transaction Foundation Models to Build Their Own Intelligence
Pahal Patangia · 2026-06-02 · via NVIDIA Blog

Financial institutions have spent years building AI: fraud models, credit models, recommendation engines and risk systems. While this sprawl of task-specific models has been effective, it’s also constrained by siloed systems. 

Siloed systems prevent institutions from developing a unified understanding of consumers’ financial behavior. As enterprise datasets keep growing, so does the gap between what institutions know and what their AI can reason over — creating a major opportunity for the industry to build intelligence using proprietary data.

NVIDIA’s 2026 State of AI in Financial Services report shows 65% of institutions now use AI, with nearly 90% deploying or assessing it and almost all maintaining or increasing spend. But as AI scales, so does complexity, and fragmented model architectures become the limiting factor.

Leading firms are tackling this challenge by rethinking the architecture itself. Where the industry once relied on statistical and machine learning algorithms purpose-built for each line of business, transformer-based transaction foundation models now make it possible to learn a single, unified representation of consumer behavior trained entirely on proprietary data.

Transaction foundation models are large-scale AI systems trained on billions of financial events — such as payments, transfers, product interactions and behavioral signals — that transform raw data into intelligence, helping firms better serve their customers.

The shift is structural. A traditional fraud model evaluates isolated signals. A foundation model interprets behavior in context where timing, device, location and prior activity shape meaning. More importantly, it brings the power of transformer architectures to tabular data, extracting signals previously invisible to traditional algorithms.

A payment at midnight means something different when it’s the fourth in 10 minutes, on an unfamiliar device, in a city the customer’s never transacted from before. That contextual depth improves performance across tasks, not just within them.

In collaboration with NVIDIA, Revolut built PRAGMA — a family of transformer-based foundation models trained on 24 billion events across 26 million user records spanning over 100 countries. Powered by NVIDIA’s full AI stack — including NVIDIA Hopper GPUs, the NVIDIA cuDF library and NVIDIA Nemotron open models — running on Nebius cloud, a single foundation model outperforms strong task-specific models across domains like credit scoring, fraud detection and product recommendations while reducing reliance on handcrafted features. 

“We move from weeks, or even in some cases months, in feature engineering to no time required for it at all,” said Tadas Kriščiūnas, head of group credit data science at Revolut.

Any institution can now adopt this approach using NVIDIA’s new Build Your Own Transaction Foundation Model developer example, which enables teams to start building transformer embeddings on tabular transaction data — integrating into existing pipelines without rebuilding from scratch.

The Cost of Fragmentation

The problem isn’t today’s models, it’s the trajectory. Every new use case adds another model. Every new market needs retraining. Models that can’t share context leave value on the table.

Mastercard is developing a proprietary large tabular foundation model for payments, trained on billions of anonymized transactions today and designed to scale to hundreds of billions across additional datasets including fraud, authorization, chargeback, merchant location and loyalty data.

Built with capabilities from NVIDIA, AWS and Databricks — including the NVIDIA NeMo AutoModel open library, part of NVIDIA NeMo framework, and accelerated computing — the model is intended to reduce reliance on a multitude of AI models across markets, customers and use cases. Early testing shows it outperforming standard machine learning techniques, with promising applications in cybersecurity, fraud detection, loyalty, personalization, portfolio optimization and analytics. 

Adyen has also deployed transaction foundation models at scale, processing $1 trillion in payments. Using reinforcement learning, Adyen maximizes conversion and minimizes risk for merchants. 

“Even fractional improvements like a 0.1% uplift in authorization can translate to massive incremental gross merchandise value and substantial cost reductions,” said Dhruv Ghulati, principal AI product manager at Adyen.

Semantic Layer for Agentic Commerce 

Forty-two percent of financial firms are already using or assessing agentic AI. As these systems begin to execute transactions — like managing subscriptions, routing payments and making purchases — the nature of financial behavior is changing.

Stripe is using the NVIDIA and AWS platform to build foundation models that understand the full context of transactional behavior rather than reacting to individual signals — blocking close to $112 billion in fraud last year and delivering an average 38% reduction in fraud rates. 

Transaction data is the proprietary history that competitors can’t replicate. The data already exists. The architecture is proven. The infrastructure is ready.

Scaling Through Ecosystem Partners

The Build Your Own Transaction Foundation Model developer example is available for customers to run on Amazon Web Services (AWS), deployed with Amazon SageMaker HyperPod, as well as Nebius AI Cloud — powered by NVIDIA accelerated computing. 

Nebius AI Cloud supports the full transaction foundation model lifecycle — from deployment of the developer example through multi-node training to managed inference on Token Factory — powered by NVIDIA accelerated computing.

Financial services firms can also work with services partners EXL, GFT IT Consulting and Thoughtworks to apply the developer example to their specific use cases.

EXL is integrating transaction foundation models into its EXLerate.ai platform to unify siloed financial data into a scalable, enterprise intelligence layer powered by proprietary transaction data. In collaboration with NVIDIA, EXL is using this architecture to help financial institutions accelerate model development, enhance contextual decisioning and operationalize agentic AI at scale.

Thoughtworks is helping financial institutions operationalize transaction foundation models within complex banking environments, integrating them into payment, servicing and risk while establishing the necessary governance and AI operating models. The company will be showcasing a demo and presentation on transaction foundation models at the upcoming AWS Summit in New York City on Wednesday, June 17.

GFT IT Consulting is integrating transaction foundation models into its flagship solutions: Wynxx, an agentic AI platform used by over 100 financial institutions for secure AI adoption in areas like credit risk, and Smaragd, a compliance engine that reduces false positives by up to 75% for major banks.

Join NVIDIA at Money20/20 Europe from June 2-4 to learn how transaction foundation models are powering the next generation of AI in financial services.

Explore the Build Your Own Transaction Foundation Model developer example on build.nvidia.com.