Long Horizon Agents
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红杉对话 LangChain 创始人:2026 年 AI 告别对话框,步入 Long-Horizon Agents 元年
3 6 Ke· 2026-01-28 01:01
Group 1 - The core assertion of the article is that AGI (Artificial General Intelligence) represents the ability to "figure things out," marking a shift from the era of "Talkers" to "Doers" by 2026, driven by Long Horizon Agents [1][2] - Long Horizon Agents are characterized by their ability to autonomously plan, operate over extended periods, and exhibit expert-level features, expanding their capabilities from specific verticals to complex tasks across various domains [1][2] - The article highlights that the value of Long Horizon Agents lies in their ability to produce high-quality drafts for complex tasks, with a focus on the need for opinionated software harnesses and file system permissions as standard features for all agents [1][2][3] Group 2 - Harrison Chase emphasizes that the recent advancements in models and the understanding of effective harnessing have led to the successful implementation of Long Horizon Agents, particularly in the coding domain, which is rapidly expanding to other fields [2][4] - The article discusses the importance of Scaffolding and Harness in the development of agents, where Scaffolding refers to auxiliary code structures that guide model outputs, while Harness encompasses the software environment that manages context and tool interactions [3][8] - The emergence of AI Site Reliability Engineers (AI SREs) is noted as a significant application of Long Horizon Agents, capable of handling long-duration tasks and generating comprehensive reports for human review [5][6] Group 3 - The article outlines the evolution of agent frameworks, transitioning from general frameworks to more opinionated harness architectures, with a focus on the integration of planning tools and file system interactions [8][10] - The concept of Deep Agents is introduced, which represents the next generation of autonomous agent architecture built on LangGraph, emphasizing the need for effective context management and compression techniques [9][12] - The discussion includes the challenges of context management in Long Horizon Agents, particularly the need for efficient compression strategies as task cycles extend [11][18] Group 4 - The article identifies the critical role of Memory in Long Horizon Agents, allowing them to self-improve and adapt over time, which is essential for maintaining performance in long-duration tasks [36][37] - The future interaction models for Long Horizon Agents are anticipated to combine asynchronous and synchronous modes, allowing for effective management and collaboration between agents and users [38][39] - The necessity for agents to have access to file systems is emphasized, as it enhances context management and operational capabilities, particularly in coding tasks [41][42]
红杉对话 LangChain 创始人:2026 年 AI 告别对话框,步入 Long-Horizon Agents 元年
海外独角兽· 2026-01-27 12:33
Core Insights - The article asserts that AGI represents the ability to "figure things out," marking a shift from the era of "Talkers" to "Doers" in AI by 2026, driven by Long Horizon Agents [2] - Long Horizon Agents are characterized by their ability to autonomously plan, operate over extended periods, and exhibit expert-level features across complex tasks, expanding from coding to various domains [3][4] - The emergence of these agents is seen as a significant turning point, with the potential to revolutionize how complex tasks are approached and executed [3][21] Long Horizon Agents' Explosion - Long Horizon Agents are finally beginning to work effectively, with the core idea being to allow LLMs to operate in a loop and make autonomous decisions [4] - The ideal interaction with agents combines asynchronous management and synchronous collaboration, enhancing their utility in various applications [3][4] - The coding domain has seen the most rapid adoption of these agents, with examples like AutoGPT demonstrating their capabilities in executing complex multi-step tasks [4][5] Transition from General Framework to Harness Architecture - The distinction between models, frameworks, and harnesses is crucial, with harnesses being more opinionated and designed for specific tasks, while frameworks are more abstract [8][9] - The evolution of harness engineering is particularly advanced in coding companies, which have successfully integrated these concepts into their products [12][14] - The integration of file system permissions into agents is essential for effective context management and task execution [24] Future Interactions and Production Forms - Memory is identified as a critical component for self-improvement in agents, allowing them to retain and utilize past interactions to enhance performance [35] - The future of agent interaction is expected to blend asynchronous and synchronous modes, facilitating better user engagement and task management [36] - The necessity for agents to access file systems is emphasized, as it significantly enhances their operational capabilities [39]