AI agents and agentic workflows are the current buzzwords among developers and technical decision makers. While they certainly deserve the community's and ecosystem's attention, there is less emphasis ...
The Model Context Protocol (MCP) is an open standard that enables developers to build secure, two-way connections between their data sources and AI-powered tools. The architecture is straightforward: ...
What if the next generation of AI systems could not only understand context but also act on it in real time? Imagine a world where large language models (LLMs) seamlessly interact with external tools, ...
As organizations push AI systems into production, IT teams are asking how to make models more dependable, secure and useful in real-world workflows. One approach gaining traction is the Model Context ...
LLMs and AI tools have transformed nearly every industry, including marketing. We’ve become accustomed to AI’s ability to: But as these models evolve, their capabilities are entering a new phase with ...
Making inherently probabilistic and isolated large language models (LLMs) work in a context-aware, deterministic way to take real-world decisions and actions has proven to be a hard problem. As we ...
Varonis Systems, Inc. has announced the launch of the Varonis Model Context Protocol (MCP) Server, which enables users to access and manage the Varonis Data Security Platform through AI clients like ...
NEW YORK, Dec. 9, 2025 /PRNewswire/ -- Daloopa, the trusted financial data layer for the agentic era, today announced a new Model Context Protocol (MCP) connector with OpenAI ChatGPT. The Daloopa ...
SAN FRANCISCO and AUSTIN, Texas, Oct. 21, 2025 /PRNewswire/ -- Today at Gong Celebrate, Gong, the leading revenue AI platform, announced new ways for its ecosystem of partners to leverage Gong, ...
New infrastructure makes it possible for healthcare organizations to integrate AI agents seamlessly into critical workflows like benefit verification and prior authorization. SAN FRANCISCO, Sept. 25, ...
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