Key Takeaways:
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- Multiagent AI systems, where multiple AI agents collaborate autonomously, are emerging as the next stage of artificial intelligence, with applications in customer service, marketing, supply chain, finance, and more.
- Accenture predicts that over 30% of its clients will adopt multiagent systems within 18-24 months, up from the current 10-15%.
- Salesforce and Google are developing the A2A (Agent-to-Agent) protocol to enable seamless interaction between AI agents, focusing on authentication, identification, and message passing.
- Companies like BMW, Unilever, and ESPN are already adopting multiagent systems, while startups like Keyway are using them to optimize real estate pricing and amenities.
- To prepare, businesses should start by deploying stand-alone AI agents, building data pipelines, governance models, and workflows to support real-time collaboration between humans and AI systems.
What Happened?
AI-powered multiagent systems are gaining traction as companies explore how to orchestrate multiple AI agents to perform complex, collaborative tasks. These systems go beyond individual AI tools, enabling agents to dynamically reason, negotiate, and collaborate without requiring human-defined workflows or manual coordination.
Accenture, for example, has developed a 15-agent system for marketing that can plan campaigns, conduct research, and address questions autonomously. The company expects to double its multiagent systems to over 100 by the end of 2025, with clients like BMW, Unilever, and ESPN adopting the technology.
Salesforce and Google are also advancing multiagent capabilities through the A2A protocol, which allows agents to interact seamlessly within and across ecosystems. Startups like Keyway are leveraging multiagent platforms to optimize real estate pricing and amenities, offering a glimpse into the practical applications of this technology.
Why It Matters?
Multiagent systems represent a significant leap in AI capabilities, enabling businesses to tackle complex, interconnected tasks more efficiently. By allowing AI agents to collaborate autonomously, companies can unlock faster insights, better decision-making, and improved outcomes across various domains.
For example, in asset management, multiagents can analyze unstructured market data, generate investment narratives, and align findings across portfolios. In customer service, they can streamline workflows by coordinating responses and resolving issues in real time.
However, adopting multiagent systems requires significant preparation, including building data pipelines, governance models, and workflows that support real-time collaboration between humans and AI. Companies that start preparing now will be better positioned to leverage this transformative technology as it becomes more widely available.
What’s Next?
As multiagent systems become more accessible, companies should begin by deploying stand-alone AI agents and building the infrastructure needed for agent-to-agent collaboration. This includes:
- Developing robust data pipelines and governance frameworks.
- Evolving workflows to accommodate real-time collaboration between humans and AI.
- Experimenting with multiagent prototypes in areas like marketing, supply chain, and customer service.
With companies like Salesforce, Google, and Accenture leading the charge, multiagent systems are poised to become a key driver of innovation across industries. Businesses that embrace this technology early will gain a competitive edge in the rapidly evolving AI landscape.