New Delhi: As businesses accelerate the use of AI agents, the challenge has shifted from deployment to managing their performance and reliability at scale. Salesforce’s newly released Agentforce 3 focuses on enterprise-grade observability, security, and interoperability, in response to real-world limitations seen in earlier rollouts.
Salesforce’s Agentforce 3 introduces a Command Center designed to provide full visibility into AI agent performance. The dashboard offers real-time tracking of metrics such as latency, error rates, and escalation frequency. It allows users to monitor agent activity and receive alerts, aiming to prevent operational disruptions.
The Command Center is integrated into Agentforce Studio, enabling organisations to analyse conversation patterns and make data-backed improvements. It also supports performance dashboards, letting teams assess agent adoption, feedback, and cost efficiency.
These tools are expected to reduce blind spots in AI deployments. Notably, the platform is compatible with existing enterprise monitoring systems like Datadog and Splunk through OpenTelemetry, allowing organisations to integrate agent data into their existing IT observability stack.
Agentforce 3 includes native support for Model Context Protocol (MCP), a growing industry standard for plug-and-play AI agent interoperability. The update enables AI agents to access enterprise tools securely, without custom code.
Salesforce is also using MuleSoft connectors to transform APIs into MCP-compliant services, supporting multi-agent workflows with built-in governance and tracing. Additionally, Heroku Managed Inference enables companies to host and manage custom MCP servers using pre-configured DevOps and security settings.