Saturday, July 26, 2025
HomeArtificial IntelligenceIncrease AI Agent Efficiency with Parallel Execution

Increase AI Agent Efficiency with Parallel Execution

AI brokers are quickly changing into the driving power behind clever enterprise workflow automation—from processing buyer inquiries to orchestrating multi-step enterprise processes with multi-agent orchestration. However as these AI brokers tackle extra tasks, their efficiency turns into tightly coupled with how briskly they’ll retrieve and act on information throughout enterprise methods.

That’s why Parallel Execution is a game-changer. Launched within the Kore.ai Agent Platform’s Software Builder, this functionality permits AI brokers to carry out a number of duties concurrently with instruments, as a substitute of executing every step in sequence. The end result? Sooner, smarter, and extra environment friendly brokers that reply in actual time—and at enterprise scale.

The Drawback with Sequential Execution

Earlier than Parallel Execution, AI brokers have been restricted by a sequential job mannequin. Let’s say an agent must fetch details about a person—fundamental profile particulars from Salesforce, buy historical past out of your CRM, and assist tickets from a helpdesk system. Within the conventional workflow design, the agent could be pressured to attend for the primary fetch to finish earlier than beginning the second, and so forth.

Every step would possibly take 5 seconds, leading to a 15-second delay earlier than the agent can take the subsequent motion. This latency straight impacts person expertise and undermines the promise of real-time AI-driven help.

What Is Parallel Execution in AI Brokers?

Parallel Execution solves this bottleneck by enabling AI brokers to launch unbiased duties concurrently. As quickly because the required enter—like a person ID—is out there, the agent can leverage instruments to set off simultaneous information fetches from a number of methods with out ready for one to finish earlier than beginning the subsequent.

As a result of these methods (e.g., Salesforce, CRM, and helpdesk) function independently and haven’t any dependencies on one another, the agent can question them concurrently. As a substitute of 15 seconds of wait time, the agent receives all the mandatory information in simply 5–6 seconds on common—the time it takes for the longest of the parallel requests to resolve.

This basic shift in execution dramatically boosts the efficiency of AI brokers. They not solely retrieve info quicker but in addition act on it extra rapidly, resulting in smarter selections and extra fluid conversations or processes. It’s not simply quicker—it’s operational intelligence at scale.

Parallel Execution Instance: AI Agent in Buyer Service

Image a digital customer support agent designed to help customers with personalised assist. To be efficient, the agent should perceive the client’s present standing, latest purchases, and historic interactions—information that lives throughout a number of backend methods.

With Parallel Execution, the agent immediately dispatches three parallel information requests—one to Salesforce for contact data, one other to the CRM for transaction historical past, and a 3rd to the helpdesk database for assist logs. Inside 5 seconds, the agent receives and synthesizes a full buyer profile, permitting it to reply to the person rapidly and precisely.

In distinction, a conventional agent working with sequential execution would take 3 times longer to collect the identical info—delaying the response, degrading the person expertise, and doubtlessly inflicting drop-off or frustration.

Parallel Execution unlocks a brand new degree of responsiveness, empowering AI brokers to ship quick, personalised, and context-aware interactions—whether or not in customer support, gross sales, or inside operations. These customer support brokers can be utilized together with AI for Service, a enterprise answer to automate, personalize, and differentiate customer support interactions.

Key Advantages of Parallel Execution for AI Brokers

Parallel Execution does not simply make workflows quicker—it makes AI brokers smarter and extra scalable. When brokers can concurrently collect, course of, and act on information from a number of sources, the complete automation pipeline turns into extra environment friendly.

It additionally helps cut back backend load and useful resource consumption by eliminating pointless wait occasions. AI brokers that beforehand needed to “wait in line” to carry out duties can now function at their full potential, delivering real-time insights and actions throughout the enterprise.

How It Works in Kore.ai’s Software Builder

The Kore.ai Agent Platform now helps the creation of unbiased workflow branches inside its no-code Software Builder. Every department represents a job or motion that doesn’t depend on others. When Parallel Execution is enabled, AI brokers can provoke all these branches on the identical time.

As soon as all branches full, the platform intelligently converges the outcomes, enabling the agent to proceed with the subsequent steps—whether or not that’s presenting info to a person, making a call, or triggering one other system motion. This type of execution logic is crucial for constructing highly effective, context-aware brokers that scale with enterprise complexity.

Why Parallel Execution is Important for AI Workflow Automation

As enterprises scale their use of AI brokers throughout departments and workflows, velocity and effectivity are now not nice-to-haves—they’re mission-critical. Whether or not it’s lowering wait occasions in buyer assist, accelerating onboarding processes in HR, or enabling fast decision-making in operations, responsiveness is straight tied to enterprise outcomes.

Parallel Execution addresses one of many largest friction factors in AI workflow automation: latency from sequential processing. By eliminating the substitute delays between steps, Parallel Execution ensures that AI brokers can function with the velocity and intelligence required in right now’s always-on, multi-system enterprise environments.

Right here’s why it issues:

  • Actual-Time Responsiveness: In eventualities the place each second counts—like routing assist tickets, dealing with fraud alerts, or processing gross sales inquiries—Parallel Execution helps brokers reply nearly immediately.
  • Scalable Automation: As workflows develop extra advanced, with dozens of instruments and methods concerned, the power to run duties concurrently ensures efficiency doesn’t degrade with complexity.
  • Higher Person Expertise: Sooner brokers imply smoother, extra pure conversations and processes—resulting in greater satisfaction, engagement, and retention.
  • Elevated Throughput: When brokers full duties quicker, you’ll be able to deal with extra quantity with the identical infrastructure—lowering operational prices whereas growing capability.

In brief, Parallel Execution transforms AI brokers from job runners into clever orchestrators—able to navigating intricate enterprise ecosystems with velocity, context, and precision. It’s a foundational functionality for scaling AI-driven automation with out compromising efficiency or person expertise.

Wish to see Parallel Execution in motion? Request a demo or discover how the Kore.ai Agent Platform can remodel the way in which your AI brokers work.


RELATED ARTICLES

LEAVE A REPLY

Please enter your comment!
Please enter your name here

Most Popular

Recent Comments