WeSearch

Evaluating Temporal Semantic Caching and Workflow Optimization in Agentic Plan-Execute Pipelines

·3 min read · 0 reactions · 0 comments · 14 views
#artificial intelligence#workflow optimization#caching
Evaluating Temporal Semantic Caching and Workflow Optimization in Agentic Plan-Execute Pipelines
⚡ TL;DR · AI summary

The article discusses advancements in optimizing industrial asset operations through improved caching and workflow techniques. It highlights the limitations of existing caching methods in handling latency-sensitive queries. The proposed solutions demonstrate significant speed improvements and reduced latency in agentic plan-execute pipelines.

Key facts
Original article
arXiv cs.AI
Read full at arXiv cs.AI →
Opening excerpt (first ~120 words) tap to expand

Computer Science > Artificial Intelligence arXiv:2605.20630 (cs) [Submitted on 20 May 2026] Title:Evaluating Temporal Semantic Caching and Workflow Optimization in Agentic Plan-Execute Pipelines Authors:Alimurtaza Mustafa Merchant, Krish Veera, Sajal Kumar Goyla, Shambhawi Bhure, Dhaval Patel, Kaoutar El Maghraoui View a PDF of the paper titled Evaluating Temporal Semantic Caching and Workflow Optimization in Agentic Plan-Execute Pipelines, by Alimurtaza Mustafa Merchant and 5 other authors View PDF HTML (experimental) Abstract:Industrial asset operations workflows are latency-sensitive because a single user query may require coordination over sensor data, work orders, failure modes, forecasting tools, and domain-specific agents.

Excerpt limited to ~120 words for fair-use compliance. The full article is at arXiv cs.AI.

Anonymous · no account needed
Share 𝕏 Facebook Reddit LinkedIn Threads WhatsApp Bluesky Mastodon Email

Discussion

0 comments

More from arXiv cs.AI