NOW LET US – AI RAG SaaS Studio TP.HCM
NOW LET US
Digital Product Studio
Back to news
AGENTIC-SYSTEMS...1 min read

CogGuard: Cognitive and Operational Profiling for Proactive Warning in Edge Intelligent Services

Share
NOW LET US Article – CogGuard: Cognitive and Operational Profiling for Proactive Warning in Edge Intelligent Services

Researchers have proposed CogGuard, a novel proactive-warning framework for edge intelligent services that decouples offline LLM-based profiling from online SLM-based prediction, significantly reducing latency and training overhead.

Computer Science > Artificial Intelligence

Title:CogGuard: Cognitive and Operational Profiling for Proactive Warning in Edge Intelligent Services

View PDF HTML (experimental)Abstract:Proactive warning is an important capability for edge intelligent services, where the system predicts whether a subject will successfully complete an incoming task under strict latency and privacy constraints. Such prediction depends on both long-term static attributes and short-term dynamic states derived from historical interaction logs. Recent Large Language Models (LLMs) offer strong long-context reasoning for constructing structured profiles from these logs, but existing solutions face two challenges for edge deployment: (1) profiling methods are typically domain-specific and lack a reusable abstraction across service scenarios, and (2) fine-tuning alignment models on heterogeneous edge clusters incurs high synchronization overhead due to the variance in input sequence lengths. To address these challenges, we propose CogGuard, a proactive-warning framework for edge intelligent services. CogGuard decouples offline LLM-based profile construction from online Small Language Model (SLM)-based score prediction through a shared static-dynamic profile-to-score pipeline, and instantiates it in two representative scenarios: educational performance warning and operational task outcome warning. For efficient profile construction, we design scenario-specific profiling methods with prefix-aligned KV-cache reuse to reduce repeated encoding overhead. For edge-side model alignment, we propose a length-aware distributed fine-tuning strategy with contrastive regularization to mitigate workload imbalance on heterogeneous clusters. Experiments on education and operation datasets show that CogGuard reduces profile construction time by up to 48% and distributed fine-tuning time by 19%, while achieving MAEs of 13.4 and 5.9, respectively, on 100-point-scale warning tasks. In the largest educational setting, CogGuard reduces prediction error by 15.4% compared with the strongest baseline.

Bibliographic and Citation Tools

Code, Data and Media Associated with this Article

Demos

Recommenders and Search Tools

arXivLabs: experimental projects with community collaborators

arXivLabs is a framework that allows collaborators to develop and share new arXiv features directly on our website.

Both individuals and organizations that work with arXivLabs have embraced and accepted our values of openness, community, excellence, and user data privacy. arXiv is committed to these values and only works with partners that adhere to them.

Have an idea for a project that will add value for arXiv's community? Learn more about arXivLabs.

© 2026 Now Let Us. All rights reserved.

Source: arXiv cs.AI Recent

Advertisement
Ad slot ready: 5887729102

More in this category

NOW LET US Related – Metric Match: A Subset Selection Approach to Evaluating LLM Judge Reliability

agentic-systems

Metric Match: A Subset Selection Approach to Evaluating LLM Judge Reliability

Researchers have developed Metric Match, a novel method to estimate the reliability of LLM judges using limited human annotations. By selecting an optimal subset of samples, it reduces annotation needs by 32.5% and significantly cuts down evaluation costs.

NOW LET US Related – Semantics-Enhanced Retrieval-Augmented Time Series Forecasting

agentic-systems

Semantics-Enhanced Retrieval-Augmented Time Series Forecasting

Researchers have introduced SERAF, a novel multimodal time series forecasting framework that addresses the limitations of traditional methods under non-stationarity by leveraging dual retrieval over both numerical data and self-generated textual descriptions.

NOW LET US Related – AI Engram: In Search of Memory Traces in Artificial Intelligence

agentic-systems

AI Engram: In Search of Memory Traces in Artificial Intelligence

Researchers introduce 'AI Engram', a geometric framework to identify and isolate individual memory traces in deep neural networks. This biologically-inspired approach enables surgical manipulation of learned knowledge through simple linear arithmetic without iterative optimization.

NOW LET US Related – Risk-Aware LLM Agents for Geospatial Data Retrieval: Design and Preliminary Adversarial Evaluation

agentic-systems

Risk-Aware LLM Agents for Geospatial Data Retrieval: Design and Preliminary Adversarial Evaluation

Researchers have presented an LLM-driven framework that simplifies the retrieval of remote sensing data from cloud-based geospatial catalogs using natural language. The system integrates three specialized AI agents to optimize performance and mitigate adversarial API manipulation risks.

NOW LET US Related – Attribute Inference from Interactive Targeted Ads

agentic-systems

Attribute Inference from Interactive Targeted Ads

A new study models how interactive targeted advertising can act as a channel for attribute inference, allowing advertisers to deduce sensitive user data. The researchers propose defense mechanisms like aggregate reporting and randomized disclosure to mitigate these privacy risks.

NOW LET US Related – Fusion is not one-size-fits-all: Cross-Modal Representation Alignment for Time-to-Event Modeling

agentic-systems

Fusion is not one-size-fits-all: Cross-Modal Representation Alignment for Time-to-Event Modeling

Researchers introduce a foundation model-driven framework for cross-modal representation alignment between CT imaging and longitudinal EHR data to improve time-to-event prediction. The study demonstrates that task-aware multimodal alignment is essential for robust generalization and scalable clinical deployment.

EXPLORE TOPICS

Discover All Categories

Deep dive into the specific technology sectors that matter most to you.