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BNY Names New Head for Payments/Trade Client Platform Treasury Calls for Programmable Financial Enforcement Across Crypto DeepSeek Seeks $20 Billion Valuation as Tech Giants Weigh Investment Google Accelerates Agentic AI Shift With New Enterprise Platform OpenAI Begins Briefing Governments on Cybersecurity Capabilities DeFi Security Suffers New Blow With $3 Million Volo Exploit Uninvited Users Access Anthropic’s Mythos AI Model Block and Uber Expand Partnership Across Several Global Markets OpenAI Pledges $1.5 Billion to PE Enterprise AI Project Podcast: Inside the $9 Billion DeFi Hack That’s Shaking Crypto’s Foundations Synchrony CFO Flags Momentum in Spending and Credit Banks Risk Slowing the Emerging Middle Market Firms Driving Growth Paysafe Expands Digital Wallet Availability Across 18 European Markets Bad Data Can Break Good AI in Payments 50% More Digital Shopping Days Put Parents at the Center of Retail’s Shift 65% Call Insurance Essential. 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Apple Hardware Leader John Ternus to Succeed CEO Tim Cook The Web Is Gaslighting AI Agents and Nobody Can Tell OCC Enters the Interchange Fight and Raises the Stakes Amazon Dismisses New Evidence in California Antitrust Suit AI Finds Its Best Customer on Main Street Coinbase Opens Services Marketplace for Agentic Commerce Feds Start Processing $127 Billion in Tariff Refunds for Importers Payments Modernization Is Insurance’s Next Big Margin Engine How Visa Is Rewiring Bank Infrastructure for the AI Era Instant Payments Grow but the Real Barrier Is Human The Old-School Card Product Banks May Need Most 43% of SMBs Would Pay to Make Purchases in Installments The Real AI Edge in Payments Comes From Better Judgment Verizon’s Dan Schulman Tells CEOs to Be Open About AI Job Cuts Walmart Eyes Stores as Warehouse Space for Same-Day Delivery France’s CB Payments Network Aims to Take on Visa/Mastercard in EU QVC Was TikTok Shop Before TikTok Shop Loop Raises $95 Million to Bridge Supply Chain Data Gap Cursor Eyes $50 Billion Valuation as AI Coding Demand Surges Commercial Lending Rescues Regional Banks From Consumer Slowdown Anthropic and White House Aim to Make Peace in Friday Meeting Home Depot Buys SIMPL Automation to Support Same-Day Delivery The Riskiest Words in B2B: This Is How We’ve Always Done It France Urges Euro Stablecoins to Break Dollar Dependency Importers Prep for Monday Opening of Tariff Refund Portal Permitting Hurdles and Labor Shortages Threaten AI Data Center Timelines Token Freezes Force CFOs to Rethink Stablecoin Risk X Money Tests Whether Social Commerce Can Hold Consumer Deposits Anthropic Briefs EU Regulators on Mythos Cybersecurity Concerns Welcome to Vibe Ordering, ChatGPT Is Taking Your Order Now Nvidia Says AI Can Finally Make Quantum Computing Work QVC Files Chapter 11 to Slash Debt and Pursue Growth Uber Eats Lets Customers Return Their Retail Purchases Financial Officials Sound Alarm About Anthropic’s Banking Risk 71% of Billion-Dollar Firms Face Agent Identity Threats OpenAI Targets Pharma Giants With Purpose-Built AI Model California Claims Amazon Punishes Sellers for Lower Prices on Other Sites CFTC Chairman Says AI Helps Agency Run More Like a Business Global Finance Chiefs Call for Mythos Information Sharing Big Bank Earnings Show Digital Activity Drives Deposits OCC Clears JPMorgan Chase After Trade Surveillance Program Upgrade Accounts Receivable Gets an AI Upgrade BNY’s AI Strategy Signals a New Era of Platform Banking Bank of England Probes AI Threats to UK Financial Stability Rising AI Adoption Is Driving Up Enterprise Costs Google Faces EU Order to Share Search Data With Rivals Delivery Robots Lead Grab’s AI Expansion Circle Chief Says China Could Issue Stablecoin in 3 to 5 Years Amex Acquires Hyper to Boost AI and Expense Management Offerings Anthropic Ready to Offer Mythos to British Banks Issuers Face a New Reality as Credit Goes Real Time How Payments Gaps Are Limiting Deposit Growth at Community Banks AI May Run Payments but Humans Still Own the Risk 90% of Millennials Feel Pressure at the Grocery Store The New Checkout Is Where the Best Offer Wins Apple Pushes Siri Programmers to Adopt AI Coding Tools Amazon Sellers Protest Policy Changes With One-Day Ad Boycott FanDuel and DraftKings Fund $41 Million Lobbying Effort by Super PAC Live Nation Loses Antitrust Case Brought by 33 States Fed Beige Book Finds Tax Refund Relief Running Into Higher Gas Prices Anthropic’s New Design Tool Rivals Adobe and Figma Goldman Sachs Seeks SEC Approval for New Bitcoin ETF What AI-Driven Attack Chains Mean for CFOs and CISOs Healthcare’s AI Boom Moves From Bedside to Back Office Accel Prepares to Pour $5 Billion Into Global AI Breakouts Nearly 4 in 10 Financially Stressed Shoppers Choose Walmart Over Amazon Synchrony Bets on Teachers to Fix Financial Literacy Mastercard’s Mark Barnett Says the Real Currency for SMBs Is Payment Timing SoFi Uses Galileo to Power Real-Time FedNow Transfers Palo Alto Founder Eyes Liberty Bank for AI Banking Experiment Surcharge Surge Hits Consumers as Fee Fatigue Sets In Walmart CFO Says Marketplace Revenue Up 20% Over 2025
In the Age of Agentic AI, Data Control Is Power
PYMNTS · 2026-04-20 · via PYMNTS.com

By  |  April 20, 2026

 | 

data foundation

As companies rush to deploy agentic AI, a new consensus is taking shape around the data problem underneath the hype. More autonomous AI systems will raise the stakes for how data is created, governed, accessed and protected. Synthetic data needs clearer standards. Real-world data needs tighter minimization. And the systems tying it all together need a stronger foundation of trust, security and control.

Some of that data will be synthetic. Tech Policy Press argues that synthetic data is moving from a niche tool to a core input for AI systems, especially as developers run into limits on the supply of human-created data online. The article says this matters even more in the age of agentic AI, where autonomous systems can pull from many data sources, make decisions, use tools and create new outputs with little or no human review. In that setting, flawed synthetic data can do more than produce a bad answer. It can shape an agent’s reasoning, distort its actions and spread errors across connected systems.

According to the story, synthetic data can help protect privacy, fill gaps in scarce datasets and expand representation, but it also can hide bias, weaken traceability and make it hard to know whether an AI system is acting on sound information or on a manufactured version of reality.

Current legal and policy frameworks are not ready for that shift. The article points to limited guidance in places such as the EU AI Act, California’s new disclosure law for generative AI training data, U.K. statistical guidance and Singapore’s privacy work, but argues that these early steps do not fully address how synthetic data should be governed at scale. Its core recommendation is for clearer standards on how synthetic data is created, documented, tested and used. That includes disclosure of who generated it, what models and assumptions were used, where the limits or risks lie and how quality, fairness and privacy were assessed.

Tech Policy Press frames this as a trust issue. As agentic AI systems take on more consequential tasks, the article argues that organizations will need far better rules for judging whether the data feeding those systems reflects the real world closely enough to support reliable decisions.

Data Protection

All this data needs to be protected. The IAPP argues that data minimization needs to move to the center of agentic AI design because these systems pull information from many places, keep context over time and can act on that information without constant human review. That creates a higher risk that agents will collect or reuse more data than they actually need for a task.

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In an article released last week, the IAPP says companies should start with a narrow purpose, then decide which exact data fields an agent truly needs to complete that job. In practice, that means asking whether an agent needs full records or only a limited signal, score or summary. The article’s core point is that better agentic systems will depend on tighter limits around what data they can access, combine and retain.

The IAPP also focuses on the operational side of data control. It says organizations should set clear rules for what agents can see, which outside services they can call, when human oversight is required and how quickly data access should expire after a task is complete. The article also highlights cross-border data flows as a major data issue, since agentic systems often rely on outside cloud tools and third-party APIs that may move information across jurisdictions.

Its recommendation is to keep identifying data local when possible and share only the minimum needed externally, such as a token, a confirmation or an aggregate summary. Framed this way, the IAPP presents data minimization as both a privacy obligation and a practical design discipline for making agentic AI safer and easier to govern.

Building a Foundation

If the IAPP piece argued that agentic AI needs tighter limits on what data systems can access, SiliconANGLE’s Oracle story makes the next point in that chain: companies also need a data foundation they can trust. In the article, SiliconANGLE says Oracle is making the case that the database is becoming the control center for agentic AI because that is where trust, accuracy, security and reliability have to be enforced.

Oracle executive Juan Loaiza argues that fast AI-generated work is not enough on its own. The bigger issue is whether enterprises can trust what those systems produce and whether the data underneath them is sound enough to support real decisions.

SiliconANGLE says Oracle’s answer is to bring more data types and agent memory into one converged database engine rather than spread them across separate systems. The company argues that this setup can help agents work from a shared, current view of information instead of relying on disconnected stores that can drift out of date. The article also highlights security as a central part of Oracle’s pitch.

As AI agents move closer to the data itself, Oracle says controls can no longer depend mainly on the application layer. Instead, access rules need to be enforced at the data tier so an agent acting for a user can see only the data that user is allowed to access. Framed through a data lens, SiliconANGLE presents Oracle’s strategy as an effort to make agentic AI more dependable by tightening the link between trusted data, shared context and governed access.

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