Improving the speed and energy-efficiency of AI agents
A new system, known as Murakkab, optimizes the design and deployment of multistep workflows that power AI applications. "Murakkab" is a new automated system that streamlines the design of agentic workloads for AI applications and optimizes their deployment for customers, reducing computation and cost while boosting energy efficiency. Adam Zewe | MIT News Publication Date : June 25, 2026 Press Inquiries Press Contact : Abby Abazorius Email: abbya@mit.
Key Takeaways
- edu MIT News Office : "Agentic workflows are getting very complicated and quickly becoming the backbone of what cloud providers are doing," says Gohar Chaudhry.
Credits : Image: iStock Previous image Next image Agentic workflows are artificial intelligence-powered software systems that chain together multiple models and external tools to tackle complicated tasks, like analyzing a video and answering questions about it.
- The system automatically figures out the best models and tools to use, as well as the ideal hardware configuration and computational resource allocation when the workflow is executed by a cloud provider.
It adjusts those configurations on the fly based on each user's priorities, such as minimizing costs or maximizing speed.
- It is very easy to over-allocate resources, wasting energy and money.
Enabling a cloud provider to intelligently make these workflows more resource-optimal is a win for everyone involved," says Gohar Chaudhry, an electrical engineering and computer science (EECS) graduate student and lead author of a paper on this system .
- These workflows can serve as behind-the-scenes processes that power user-facing applications.
Typically, developers must hard-code all technical choices upfront.
- If a new AI model is released that would improve the application's accuracy or efficiency, the developer would need to start from scratch to implement it.
"Murakkab" is a new automated system that streamlines the design of agentic workloads for AI applications and optimizes their deployment for customers, reducing computation and cost while boosting energy efficiency. A new system, known as Murakkab, optimizes the design and deployment of multistep workflows that power AI applications. Adam Zewe | MIT News Publication Date : June 25, 2026 Press Inquiries Press Contact : Abby Abazorius Email: abbya@mit.
edu MIT News Office : "Agentic workflows are getting very complicated and quickly becoming the backbone of what cloud providers are doing," says Gohar Chaudhry. Credits : Image: iStock Previous image Next image Agentic workflows are artificial intelligence-powered software systems that chain together multiple models and external tools to tackle complicated tasks, like analyzing a video and answering questions about it. But the way these highly fragmented systems are designed and deployed often causes inefficiencies that can lead to wasted computation, energy, and cost.
To improve efficiency, researchers from MIT and Microsoft developed an intelligent system that streamlines the process of designing agentic workflows and automatically optimizes how those workflows are implemented. With this new method, a developer can describe what they want the agentic workflow to do in plain language, without needing to specify all the details of their application in advance. The system automatically figures out the best models and tools to use, as well as the ideal hardware configuration and computational resource allocation when the workflow is executed by a cloud provider.
For more details please read the original article at MIT News AI.
Continue Learning
Comments
Sign in to join the conversation