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4arXiv cs.AI (Artificial Intelligence)·16d ago

AgentMob: Training-free LLM agent framework for evidence-grounded mobility prediction

AgentMob is a training-free LLM-driven agent framework that formulates next-location prediction as adaptive evidence-controlled decision making, using a fast path for routine cases and iterative tool use for ambiguous ones. Evaluated on three mobility datasets, it achieves the strongest overall performance among training-free LLM-based methods, with GPT-5.4 reaching 71.42% Acc@1 on the BW dataset. The framework demonstrates that LLM controllers add most value in resolving ambiguous predictions through adaptive evidence gathering rather than routine cases.

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5arXiv · cs.AI·18d ago·source ↗

LLM Agent Framework for Last-Mile Time Series Forecasting Revision

This paper introduces a 'last-mile forecasting' framework where an LLM agent sits atop a statistical forecasting backbone to incorporate weakly structured business context—holidays, campaigns, expert feedback, external events—into decision-ready forecasts. The system uses tool-invocation for contextual retrieval, converts reasoning into explicit revision actions under safety constraints, and supports long-horizon forecasting via map-reduce decomposition with a memory bank for post-hoc reflection. The authors validate the approach through real-world case studies, positioning it as a bridge between statistical prediction and operationally usable forecasts.

6arXiv · cs.CL·12d ago·source ↗

Agentopia: Long-term multi-agent life simulation framework for training LLMs on social behavior

Researchers introduce Agentopia, a framework for simulating 10 years of social life across 100 LLM-powered agents, enabling study of emergent social behaviors and long-term personal growth dynamics. The system defines a 'life reward' metric mirroring human well-being and uses it to train LLMs via rejection sampling. Training on simulated social experience yields a +15.6% improvement on downstream role-playing benchmarks, suggesting that synthetic social simulation can generalize to real capability gains.

5arXiv · cs.AI·11d ago·source ↗

Role-Agent: Bootstrapping LLM Agents via Dual-Role Evolution

Role-Agent is a new framework that uses a single LLM simultaneously as both agent and environment, enabling self-bootstrapped co-evolution without external environment feedback. The system has two components: World-In-Agent (WIA), which uses predicted vs. actual state alignment as a process reward, and Agent-In-World (AIW), which reshapes training data by retrieving tasks with similar failure patterns. Experiments across multiple benchmarks show an average performance gain of over 4% over strong baselines. The approach addresses key limitations in LLM agent training: inefficient feedback and static environments.

6arXiv · cs.CL·29d ago·source ↗

Agentic CLEAR: Automating Multi-Level Evaluation of LLM Agents

Agentic CLEAR is an automatic evaluation framework for LLM-based agentic systems that analyzes behavior at three granularity levels: system, trace, and node. Unlike existing tools that rely on static error taxonomies or focus only on observability, it dynamically generates textual insights and integrates above the observability layer with an accessible UI. Experiments across four benchmarks and seven agentic settings demonstrate strong alignment with human-annotated errors and predictive accuracy for task success rates.

6arXiv · cs.CL·5d ago·source ↗

AgentSpec: A modular framework for controlled composition and analysis of embodied LLM agent scaffolds

AgentSpec is a new modular specification framework that represents embodied LLM agents as typed compositions of reusable policy components with standardized interfaces across perception, memory, reasoning, reflection, action, and learning modules. The framework enables controlled swapping and recombination of components, instantiated across four benchmarks (DeliveryBench, ALFRED, MiniGrid, RoboTHOR). Key findings include that agent performance is governed by scaffold compatibility and interaction effects rather than isolated module strength, and that RL-trained policies compose best when optimized with deployment-time scaffold structure. Code, baselines, and an interactive playground are publicly released.

4Github Trending·19d ago·source ↗

TradingAgents: Multi-Agent LLM Financial Trading Framework

TradingAgents is an open-source Python framework by TauricResearch that applies multi-agent LLM architectures to financial trading tasks. The repository has accumulated 81,650 GitHub stars with 284 added today, indicating strong community traction. It represents a concrete deployment pattern for agentic AI systems in quantitative finance.

6arXiv · cs.CL·15d ago·source ↗

MLEvolve: Self-evolving multi-agent framework for automated ML algorithm discovery

MLEvolve is a new LLM-based multi-agent framework for end-to-end machine learning algorithm discovery, addressing limitations of existing MLE agents including information isolation and memoryless search. The system introduces Progressive MCGS (a graph-extended tree search), Retrospective Memory for experience accumulation, and decoupled strategic planning from code generation. Evaluated on MLE-Bench, it achieves state-of-the-art medal and valid submission rates within a 12-hour budget, and also outperforms AlphaEvolve on mathematical algorithm optimization tasks.

4arXiv · cs.CL·11d ago·source ↗

Multi-agent LLM framework for Chinese civil court simulation with five-stage trial procedure

Researchers present a multi-agent LLM framework for simulating Chinese civil court proceedings, organized around a five-stage civil trial procedure with memory modules and statute retrieval. The system targets civil litigation specifically, which is more common and harder to simulate than criminal cases due to flexible claims and remedies. Experiments show reliable judgment outputs with particular strengths in liability allocation, and find that memory quality substantially affects downstream simulation quality. Code and dataset are publicly released.