AIBullisharXiv – CS AI · Jun 257/10
🧠Skill-MAS introduces a novel framework that enhances multi-agent AI systems by evolving meta-skills through a closed optimization loop, achieving significant performance gains while maintaining cost efficiency across diverse LLMs and tasks.
AIBullisharXiv – CS AI · Jun 237/10
🧠FairTutor addresses educational inequity in AI-powered tutoring by introducing an equity-aware routing framework that maintains 97.1% of premium pedagogical quality while reducing costs by 71.6%. The framework uses multi-agent orchestration with selective escalation to premium models, introducing metrics to measure AI Education Advantage Gap between premium and budget-constrained services.
AIBullisharXiv – CS AI · Jun 87/10
🧠Researchers present Queen-Bee, a governed multi-agent architecture that enables enterprises to safely orchestrate large language models with private tools and Model Context Protocol interfaces while enforcing policy controls and operational boundaries. The system achieves 96.4% task success rate with zero governance failures, suggesting enterprise AI deployments require architectural isolation and audit mechanisms alongside raw capability.
AIBullisharXiv – CS AI · May 77/10
🧠Researchers introduced Uno-Orchestra, a new orchestration framework for multi-agent LLM systems that dynamically decides when to decompose tasks and which model-primitive pairs to use, achieving 77% accuracy across 13 benchmarks while reducing computational costs by an order of magnitude compared to existing approaches.
AIBullisharXiv – CS AI · May 17/10
🧠Researchers introduce Eywa, a heterogeneous agentic framework that enables large language models to coordinate and reason across specialized scientific foundation models beyond natural language. The system improves performance on domain-specific tasks by allowing language models to guide inference over non-linguistic data modalities in physical, life, and social sciences.
AIBullisharXiv – CS AI · Apr 207/10
🧠Researchers propose a cost-aware model orchestration method that improves how Large Language Models select and coordinate multiple AI tools for complex tasks. By incorporating quantitative performance metrics alongside qualitative descriptions, the approach achieves up to 11.92% accuracy gains, 54% energy efficiency improvements, and reduces model selection latency from 4.51 seconds to 7.2 milliseconds.
AIBullisharXiv – CS AI · Apr 107/10
🧠Qualixar OS introduces a new application-layer operating system designed to orchestrate heterogeneous multi-agent AI systems across 10 LLM providers and 8+ frameworks. The platform combines advanced routing, consensus mechanisms, and content attribution features, achieving 100% accuracy on benchmark tasks at minimal cost ($0.000039 per task).
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AIBullisharXiv – CS AI · Mar 46/102
🧠Researchers have developed OrchMAS, a new multi-agent AI framework that uses specialized expert agents and dynamic orchestration to improve reasoning in scientific domains. The system addresses limitations of existing multi-agent frameworks by enabling flexible role allocation, prompt refinement, and heterogeneous model integration for complex scientific tasks.
AINeutralarXiv – CS AI · Jun 256/10
🧠Researchers introduce ASAP, an agent-system co-design that leverages LLMs to coordinate multiple hyperparameter optimization tools while reducing wall-clock execution time through architectural innovations like KV-cache reuse and speculation parallelism. The approach addresses fundamental limitations in current LLM-based HPO methods by treating the language model as an orchestrator rather than a replacement tool, demonstrating consistent performance improvements across diverse ML tasks.
AIBullisharXiv – CS AI · Jun 236/10
🧠Researchers propose an AI-native architecture for 6G radio access networks (RANs) that combines Open RAN's control framework with Large Language Models to optimize energy consumption across distributed AI and communication workloads. The approach uses semantic intent abstraction and LLM-driven coordination to enable adaptive multi-objective optimization, addressing a critical challenge in sustainable next-generation network infrastructure.
AINeutralarXiv – CS AI · Jun 236/10
🧠Researchers introduce INFORM, an interpretability framework for analyzing multi-expert LLM orchestration systems, revealing that frequently routed experts often serve as structural hubs with minimal functional impact while sparsely selected experts can be critically important. The study challenges conventional assumptions about expert importance in collaborative AI systems and provides tools for understanding opaque decision-making in complex model architectures.
AIBullisharXiv – CS AI · Jun 116/10
🧠INFRAMIND is a new framework that optimizes multi-agent LLM orchestration by making real-time infrastructure state (queue depths, cache pressure, latencies) central to routing and scheduling decisions. Using reinforcement learning, the system dynamically adjusts model selection and pipeline topology based on GPU cluster load, achieving up to 7.6% accuracy gains and 7x latency reduction while maintaining 99.9% SLO compliance under high load.
AINeutralarXiv – CS AI · Jun 26/10
🧠Researchers propose a Mean-Field Entropy Dynamics framework to analyze failure modes in Large Language Model multi-agent systems, identifying a "Reasoning Trap" where sophisticated reasoning models paradoxically perform poorly as orchestrators due to context limitations. The study introduces Inverse Workflow Generation for benchmarking and provides physically interpretable parameters for predicting system stability.
AINeutralarXiv – CS AI · May 296/10
🧠Researchers propose HetMedAgent, a multi-agent AI framework that combines generalist large language models with domain-specific medical specialist models rather than replacing one with the other. Experiments demonstrate that this heterogeneous collaboration significantly outperforms either model type alone, suggesting the future of medical AI depends on orchestrated synergy between generalist reasoning and specialist precision.
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AIBullisharXiv – CS AI · May 276/10
🧠Researchers present two autonomous AI agent frameworks—DeepTS/DeepCollector for time-series dataset curation and DeepScribe for converting physics lectures into structured reports—demonstrating how agentic AI can overcome current LLM limitations in scientific workflows through hybrid local-remote architectures and advanced systems engineering techniques.
AINeutralarXiv – CS AI · May 46/10
🧠A research position paper argues that agentic AI systems should incorporate Bayesian decision theory at their orchestration layer to improve decision-making under uncertainty. Rather than making LLMs themselves Bayesian, the framework proposes applying Bayesian principles to the control systems that coordinate multiple LLMs and tools, enabling better belief maintenance and resource allocation.
AIBullisharXiv – CS AI · Mar 176/10
🧠Researchers introduce DOVA (Deep Orchestrated Versatile Agent), a multi-agent AI platform that improves research automation through deliberation-first orchestration and hybrid collaborative reasoning. The system reduces inference costs by 40-60% on simple tasks while maintaining deep reasoning capabilities for complex research requiring multi-source synthesis.