--- name: ai-agent-papers-guide description: "Curated 2024-2026 AI agent research papers collection" metadata: openclaw: emoji: "📑" category: "domains" subcategory: "ai-ml" keywords: ["AI agents", "agent papers", "2024 research", "LLM agents", "agent frameworks", "survey"] source: "https://github.com/VoltAgent/awesome-ai-agent-papers" --- # AI Agent Papers Guide (2024-2026) ## Overview A focused collection of AI agent research papers from 2024-2026, tracking the latest developments in LLM-based agent systems. Unlike broader collections, this focuses on recent breakthroughs — new architectures, benchmarks, multi-agent coordination, and real-world applications. Updated frequently as the field evolves rapidly. ## Paper Categories ``` Recent AI Agent Research ├── Agent Architectures │ ├── Planning (o1-style reasoning, search-augmented) │ ├── Memory (long-term, episodic, working) │ └── Tool use (function calling, code execution) ├── Multi-Agent Systems │ ├── Collaboration (task decomposition, debate) │ ├── Competition (red team, adversarial) │ └── Emergence (self-organization, culture) ├── Evaluation │ ├── Benchmarks (SWE-bench, WebArena, GAIA) │ ├── Safety (jailbreak, misuse, alignment) │ └── Reliability (error recovery, hallucination) ├── Applications │ ├── Software engineering (coding agents) │ ├── Scientific research (lab automation) │ ├── Web automation (browsing, form-filling) │ └── Enterprise (workflow, data analysis) └── Infrastructure ├── Frameworks (LangGraph, CrewAI, AutoGen) ├── Protocols (MCP, A2A, tool standards) └── Deployment (scaling, monitoring, cost) ``` ## Highlighted Papers (2024-2025) | Paper | Venue | Key Contribution | |-------|-------|-----------------| | SWE-agent | ICLR 2025 | Agent interface design for SE | | OpenHands | 2024 | Open platform for coding agents | | AgentBench | ICLR 2024 | Multi-environment agent benchmark | | GAIA | ICLR 2024 | General AI assistant benchmark | | Voyager | NeurIPS 2024 | Lifelong learning in Minecraft | | OS-Copilot | 2024 | Self-improving computer agent | | AutoGen | 2024 | Multi-agent conversation framework | | Agent-FLAN | ACL 2024 | Agent fine-tuning methodology | ## Tracking New Papers ```python import arxiv from datetime import datetime, timedelta def find_recent_agent_papers(days=14): """Find cutting-edge agent papers.""" queries = [ "ti:agent AND (ti:LLM OR ti:language model)", "abs:autonomous agent AND abs:tool use AND abs:2024", "ti:multi-agent AND abs:large language", "abs:coding agent OR abs:software agent", ] seen = set() papers = [] for q in queries: search = arxiv.Search( query=q, max_results=15, sort_by=arxiv.SortCriterion.SubmittedDate, ) for r in search.results(): if r.entry_id not in seen: seen.add(r.entry_id) papers.append({ "title": r.title, "date": r.published.strftime("%Y-%m-%d"), "url": r.entry_id, }) papers.sort(key=lambda x: x["date"], reverse=True) for p in papers[:20]: print(f"[{p['date']}] {p['title']}") print(f" {p['url']}") find_recent_agent_papers() ``` ## Framework Comparison ```python frameworks = { "LangGraph": { "paradigm": "Graph-based workflows", "persistence": "Built-in checkpointing", "multi_agent": "Yes", "language": "Python/JS", }, "CrewAI": { "paradigm": "Role-based agents", "persistence": "Memory module", "multi_agent": "Yes (crew)", "language": "Python", }, "AutoGen": { "paradigm": "Conversational agents", "persistence": "Chat history", "multi_agent": "Yes (group chat)", "language": "Python/.NET", }, "OpenHands": { "paradigm": "Computer use agent", "persistence": "Workspace state", "multi_agent": "No", "language": "Python", }, } for name, info in frameworks.items(): print(f"\n{name}:") for k, v in info.items(): print(f" {k}: {v}") ``` ## Use Cases 1. **Literature tracking**: Stay current on agent research 2. **Framework selection**: Compare agent development tools 3. **Research planning**: Identify open problems and trends 4. **Course material**: Teach cutting-edge agent systems 5. **Benchmark tracking**: Compare agent capabilities ## References - [awesome-ai-agent-papers](https://github.com/VoltAgent/awesome-ai-agent-papers) - [VoltAgent Framework](https://github.com/VoltAgent/voltagent)