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Anthropic raises $2.5B in debt to finance growth investments – SiliconANGLE

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Anthropic raises .5B in debt to finance growth investments – SiliconANGLE

Large language model developer Anthropic PBC has secured $2.5 billion in debt financing, CNBC reported today.

The loan is structured as a revolving credit facility. Standard debt financing deals require the borrower to pay back the funds in a fixed number of installments. A revolving credit facility, in contrast, has no such requirement. Additionally, the borrower can draw down funds again after repaying the loan.

Anthropic’s revolving credit facility will run for five years. It’s underwritten by Morgan Stanley, Barclay, Citibank, Goldman Sachs, JPMorgan, Royal Bank of Canada and Mitsubishi UFJ Financial Group. Several of those banks also backed a $4 billion revolving credit facility that OpenAI, Anthropic’s top rival, raised last year.

“This revolving credit facility provides Anthropic significant flexibility to support our continued exponential growth,” said Anthropic Chief Financial Officer Krishna Rao. 

The company previously raised $8 billion from Amazon.com Inc. in the form of convertible notes. A convertible note is a type of loan that can be turned into shares. Amazon turned a sizable portion of Anthropic investment into shares during the first quarter, which was reportedly one of the reasons its earnings per share surpassed analyst expectations.

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In conjunction with the announcement of its revolving credit facility, Anthropic disclosed today that its annualized revenue topped $2 billion in the first quarter. That represents a year-over-year increase of more than 100%. In the same time frame, the number of customers that pay at least $100,000 for Anthropic’s AI models jumped eightfold.

The company regularly launches new products to maintain its sales growth.

Earlier this month, Anthropic updated the application programming interface that customers use to integrate its LLMs into their software. The company added a tool that allows its LLMs to search the web if the information requested by a user isn’t readily available. Pricing starts at $10 per 1,000 searches.

A few weeks earlier, Anthropic debuted a new Max plan for its Claude chatbot. It’s available in two editions priced at $100 and $200 per month, respectively. They offer usage caps up to 20 times higher than the most affordable paid Claude tier.

Anthropic’s largest competitors are experiencing rapid sales growth as well.

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In March, Bloomberg reported that OpenAI expects to triple its revenue to $12.7 billion by the end of 2025. More recently, a source told Reuters that Cohere Inc. has doubled its annualized recurring revenue since the start of the year. The company reportedly makes most of its revenue from providing highly regulated organizations with customized AI models that they can run on their own infrastructure. 

Image: Anthropic

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Finance

Edge AI Emerges as Critical Infrastructure for Real-Time Finance | PYMNTS.com

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Edge AI Emerges as Critical Infrastructure for Real-Time Finance | PYMNTS.com

The financial sector’s honeymoon phase with centralized, cloud-based artificial intelligence (AI) is meeting a hard reality: The speed of a fiber-optic cable isn’t always fast enough.

For payments, fraud detection and identity verification, the milliseconds lost in “round-tripping” data to a distant server represent more than just lag — they are a structural vulnerability. As the industry matures, the competitive frontier is shifting toward edge AI, moving the point of decision-making from the data center to the literal edge of the network — the ATM, the point-of-sale (POS) terminal, and the branch server.

From Batch Processing to Instant Inference

At the heart of this shift is inference, the moment a trained model applies its logic to a live transaction. While the cloud remains the ideal laboratory for training massive models, it is an increasingly inefficient theater for execution.

Financial workflows are rarely “batch” problems; they are “now” problems. Authorizing a high-value payment or flagging a suspicious login happens in a heartbeat. By moving inference into local gateways and on-premise infrastructure, institutions are effectively eliminating the “cloud tax” — the combined burden of latency, bandwidth costs and egress fees. This local execution isn’t just a technical preference; it’s a cost-control strategy. As transaction volumes surge, edge deployments offer a more predictable total cost of ownership (TCO) compared to the variable, often skyrocketing costs of cloud-only scaling.

Coverage from PYMNTS highlights how financial firms are transitioning from cloud-centric large models toward task-specific systems optimized for real-time operations and cost control.

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From Cloud-Centric AI to Decision-Making at the Edge

The first wave of enterprise AI adoption leaned heavily on cloud infrastructure. Large models and centralized data lakes proved effective for analytics, forecasting and customer insights. But financial workflows are not batch problems. Authorizing a payment, flagging fraud or approving a cash withdrawal happens in milliseconds. Routing every decision process through a centralized cloud introduces latency, cost and operational risk.

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Edge AI moves inference into branch servers, payment gateways and local infrastructure, enabling systems to decide without every query circling back to a central cloud. That local execution is especially critical in finance, where latency, privacy and compliance are business requirements.

Real-time processing at the edge trims costly round trips and avoids the cloud bandwidth and egress fees that accumulate at scale. CIO highlights that as inference volumes grow, edge deployments often deliver lower and more predictable total cost of ownership than cloud-only approaches.

Banks and payments providers are identifying specific edge use cases where local intelligence unlocks business value. Fraud detection systems at ATMs can use facial analytics and transaction context to assess threats in real time without routing sensitive video data, keeping customer information on-premise and reducing exposure.

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Edge AI also supports smart branch automation, real-time risk scoring and adaptive security controls that respond instantly to contextual signals, functions that centralized cloud inference cannot economically replicate at transaction scale.

Edge AI delivers clear operational and governance advantages by reducing bandwidth use, cloud dependency and attack surface. Keeping decision logic local also simplifies compliance by limiting unnecessary data movement, a priority for regulated financial institutions.

Edge AI Stack Is Coalescing Across the Tech Industry

The broader tech ecosystem reinforces this trend. As reported by Reuters, chipmakers such as Arm are expanding edge-optimized AI licensing programs to accelerate on-device inference development, reflecting growing conviction that distributed AI will capture a larger share of enterprise compute workloads. Nvidia is advancing that shift through platforms such as EGX, Jetson and IGX, which bring accelerated computing and real-time inference into enterprise, industrial and infrastructure environments where latency and reliability matter.

Intel is taking a similar approach by integrating AI accelerators such as its Gaudi 3 chips into hybrid architectures and partnering with providers including IBM to push scalable, secure inference closer to users. IBM, in turn, is embedding AI across hybrid cloud and edge deployments through its watsonx platform and enterprise services, with an emphasis on governance, integration and control.

In financial services, these converging moves make edge AI more than a deployment option. It is increasingly the infrastructure layer for enterprise AI, enabling institutions to embed intelligence directly into transaction flows while maintaining discipline over cost, risk and operational continuity.

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Finance

Spanberger taps Del. Sickles to be Secretary of Finance

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Spanberger taps Del. Sickles to be Secretary of Finance

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by Brandon Jarvis

Gov.-elect Abigail Spanberger has tapped Del. Mark Sickles, D-Fairfax, to serve as her Secretary of Finance.

Sickles has been in the House of Delegates for 22 years and is the second-highest-ranking Democrat on the House Appropriations Committee.

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“As the Vice Chair of the House Appropriations Committee, Delegate Sickles has years of experience working with both Democrats and Republicans to pass commonsense budgets that have offered tax relief for families and helped Virginia’s economy grow,” Spanberger said in a statement Tuesday.

Sickles has been a House budget negotiator since 2018.

Del. Mark Sickles.

“We need to make sure every tax dollar is employed to its greatest effect for hard-working Virginians to keep tuition low, to build more affordable housing, to ensure teachers are properly rewarded for their work, and to make quality healthcare available and affordable for everyone,” Sickles said in a statement. “The Finance Secretariat must be a team player in helping Virginia’s government to perform to its greatest potential.”

Sickles is the third member of the House that Spanberger has selected to serve in her administration. Del. Candi Mundon King, D-Prince William, was tapped to serve as the Secretary of the Commonwealth, and Del. David Bulova, D-Fairfax, was named Secretary of Historic and Natural Resources.


This work is licensed under CC BY-NC-ND 4.0

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Bank of Korea needs to remain wary of financial stability risks, board member says

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Bank of Korea needs to remain wary of financial stability risks, board member says

SEOUL, Dec 23 (Reuters) – South Korea’s central bank needs to remain wary of financial stability risks, such as heightened volatility in the won currency and upward pressure on house prices, a board member said on Tuesday.

“Volatility is increasing in financial and foreign exchange markets with sharp fluctuations in stock prices and comparative weakness in the won,” said Chang Yong-sung, a member of the Bank of Korea’s seven-seat monetary policy board.

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The won hit on Tuesday its weakest level since early April at 1,483.5 per dollar. It has fallen more than 8% in the second half of 2025.

Chang also warned of high credit risks for some vulnerable sectors and continuously rising house prices in his comments released with the central bank’s semiannual financial stability report.

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In the report, the BOK said it would monitor risk factors within the financial system and proactively seek market stabilising measures if needed, though it noted most indicators of foreign exchange conditions remained stable.

Monetary policy would continue to be coordinated with macroprudential policies, it added.

The BOK held rates steady for the fourth straight monetary policy meeting last month and signalled it could be nearing the end of the current rate cut cycle, as currency weakness reduced scope for further easing.
Following the November meeting, it has rolled out various currency stabilisation measures.

The BOK’s next monetary policy meeting is in January.

Reporting by Jihoon Lee; Editing by Jamie Freed

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