Murakkab: Resource-Efficient Agentic Workflow Orchestration in Cloud Platforms
August 22, 2025 Β· Declared Dead Β· π arXiv.org
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Authors
Gohar Irfan Chaudhry, Esha Choukse, Haoran Qiu, ΓΓ±igo Goiri, Rodrigo Fonseca, Adam Belay, Ricardo Bianchini
arXiv ID
2508.18298
Category
cs.MA: Multiagent Systems
Cross-listed
cs.AI,
cs.SE
Citations
3
Venue
arXiv.org
Last Checked
3 months ago
Abstract
Agentic workflows commonly coordinate multiple models and tools with complex control logic. They are quickly becoming the dominant paradigm for AI applications. However, serving them remains inefficient with today's frameworks. The key problem is that they expose workflows as opaque sequences of model and tool calls that tightly couple agent logic with model and hardware choices. Often, these workflow components are fragmented across different entities, preventing systems from reasoning about trade-offs across accuracy, latency, energy, and cost. This leads to resource waste and degraded service-level objectives (SLOs). We present Murakkab, a resource-efficient serving system for agentic workflows. Murakkab introduces a declarative abstraction that decouples workflow specification from execution configuration. A profile-guided optimizer and adaptive runtime jointly manage the full stack: orchestrating workflow components, mapping them to models and hardware, and dynamically reconfiguring execution to satisfy user-defined SLOs. By exposing the internal structure of agentic workflows, Murakkab enables cross-layer optimization that existing frameworks and cloud schedulers cannot achieve. Our evaluation on diverse workflows shows that Murakkab reduces GPU usage by up to 2.8$\times$, energy consumption by 3.7$\times$, and cost by 4.3$\times$ while maintaining SLOs.
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