Adobe Expands AI Agent Ecosystem, Partners with OpenAI, AWS, and Payment Giants

Gate News message, April 20 — Adobe announced the expansion of its Agentic (AI agent) ecosystem on April 20, introducing the CX Enterprise Coworker and confirming deep partnerships with AWS, Anthropic, Google Cloud, IBM, Microsoft, NVIDIA, and OpenAI to extend AI agent workflows across enterprise operations.

To enable end-to-end workflows from discovery to purchase, Adobe deepened integrations with payment providers Adyen, PayPal, and Stripe, embedding payment functionality directly into AI-driven interactions.

The expansion aims to streamline enterprise processes by enabling AI agents to handle complex workflows across multiple business functions and customer touchpoints.

Disclaimer: The information on this page may come from third parties and does not represent the views or opinions of Gate. The content displayed on this page is for reference only and does not constitute any financial, investment, or legal advice. Gate does not guarantee the accuracy or completeness of the information and shall not be liable for any losses arising from the use of this information. Virtual asset investments carry high risks and are subject to significant price volatility. You may lose all of your invested principal. Please fully understand the relevant risks and make prudent decisions based on your own financial situation and risk tolerance. For details, please refer to Disclaimer.

Related Articles

Nexchain Smart Actions Brings AI to Autonomous Web3

Nexchain introduced Smart Actions, a suite of intelligent modules designed to transform blockchain networks from manual, reactive systems into autonomous and self-optimizing environments, according to an announcement on April 18, 2026. The product reflects the company's commitment to building

CryptoFrontier1h ago

Morgan Stanley Projects Agentic AI Could Add $32.5B-$60B to CPU Market by 2030

Morgan Stanley predicts a 2030 surge in CPU demand from autonomous AI systems, potentially adding up to $60 billion to the CPU market. This shift will impact data center investments and memory requirements, benefiting major chipmakers.

GateNews5h ago

AI Agents Will Reshape Trading Model, Onchain OS Builds Infrastructure Foundation

At the 2026 Hong Kong Web3 Carnival, Lennix discussed the impact of AI Agents on trading and the need for a comprehensive onchain operating system. He emphasized the importance of integrating security and efficiency to facilitate autonomous decision-making and promote collaborative market interactions.

GateNews6h ago

Cobo Launches AI-Powered Agentic Wallet for Secure Autonomous On-Chain Transactions

Cobo has launched the Cobo Agentic Wallet, enabling AI agents to conduct on-chain transactions under user-defined controls. Utilizing Multi-Party Computation for security and incorporating Pact and Recipes protocols, it supports various operational modes for diverse risk levels.

GateNews7h ago

Top AI Models Lag on Routine Enterprise Tasks, Databricks Says Smaller Specialized Models Outperform

David Meyer of Databricks highlights the limitations of top AI models in routine enterprise tasks, contrasting their success in complex problems. Fundamental differences in data types impact performance, leading to a shift towards smaller, efficient models tailored for specific workflows to improve reliability and cost-effectiveness in AI applications.

GateNews13h ago

Silicon Valley AI Agent Reality: Massive Token Wastage, System Integration “Extremely Chaotic,” Huang Jen-hsun’s “Next ChatGPT” Prediction Still to Be Verified

At a recent Silicon Valley conference, several AI startup CEOs shared their views on the current issues with using AI agents, saying they face two major challenges: token waste and system confusion. Experts noted that companies need to judge more carefully when to use large language models, to avoid unnecessary waste of resources. In addition, the collaboration of multiple AI agents often leads to message-passing and state-consistency problems, indicating that standardization still needs improvement. Although Huang Renxun mentioned token compensation metrics, feedback shows that this does not equal productivity; the real value lies in effective task design.

ChainNewsAbmedia04-19 14:15
Comment
0/400
No comments