Agents Have Entered the Harness-Driven Era

marsbitPublicado a 2026-04-15Actualizado a 2026-04-15

Resumen

The article discusses the significance of the leaked Claude Code from Anthropic, highlighting its revelation of advanced Agent engineering practices centered on "Harness" design. Rather than relying solely on model capabilities, modern AI systems now depend on a structured engineering framework—the Harness—to maximize performance. This framework includes six core components: multi-layered System Prompts, Tool Schema, Tool Call Loop (with Plan and Execute modes), Context Manager, Sub-Agent coordination, and Verification Hooks. The Harness enables tighter integration between training and inference, supports long-chain tool execution, and improves reliability through objective verification. It also drives six key training directions: behavior alignment via System Prompt, end-to-end tool-use training, integrated plan-execute training, memory compression, sub-agent orchestration, and multi-objective reinforcement learning. The shift to Harness-driven development reduces the emphasis on pure prompt engineering, favoring instead multidisciplinary talent with skills in AI, backend engineering, and infrastructure. The market is evolving toward more secure, private, and vertically integrated Agent deployments, with "model shell" companies needing either strong infrastructure or deep domain expertise to compete. Claude Code’s leak underscores that future AI advancements will be shaped by engineering architecture as much as by algorithmic innovation.

By | XiaGuang AI Lab

Recently, a hot topic in the AI tech community is that Anthropic accidentally exposed the complete source code of its AI programming tool Claude Code, with over 512,000 lines of code. Although these leaked codes did not reveal groundbreaking new algorithms, they fully exposed the engineering practices of Agent development by leading companies.

On April 10, Zhu Zheqing, founder of Pokee.ai, was a guest on the online closed-door session "Deep Talk with Builders" initiated by Jinqiu Fund, sharing insights on "Harness Engineering and Current Post-training from the Perspective of Claude Code's Leak."

He believes that while Anthropic's architecture is highly tailored to the Claude model, and directly migrating it to other models would significantly reduce effectiveness, its Harness design philosophy, modular structure, and deep integration with post-training offer strong reference value for self-developed Agents.

Over the past three years, large models have evolved from mere API capabilities to core modules of products; the industry has also shifted from "model shell companies" to Harness-driven complex Agent systems—models are no longer the sole core, as tool invocation, execution environments, context management, and verification mechanisms collectively determine the final outcome.

What is Harness? It literally means harness, reins. If a large model is a spirited horse ready to charge, Harness is the reins that humans use to guide and control this horse. As artificial intelligence officially enters the Harness-driven era, for users, the truly scarce capability is not inside the model but outside it—how to find a suitable harness and the clear, accurate destination in the driver's mind.

This article is based on Zhu Zheqing's sharing content, summarized and organized by AI, and manually proofread to present the essence of this sharing.

Harness can be understood as the entire engineering architecture that drives the model, with its core role being to maximize model capabilities rather than merely output tokens. Claude Code's Harness is clearly decomposed into six core components:

1. Multi-level System Prompt

Modern System Prompts are far more than "You are a helpful assistant"; they are ultra-large-scale, layered, cacheable complex instruction sets:

  • Fixed cache part: Includes Agent identity, CoT instructions, tool definitions, tone specifications, and security policies, which can be as large as hundreds of thousands of tokens. Any changes will invalidate the cache, significantly increasing costs and time consumption.

  • Dynamically replaceable part: Session state, current time, readable files, code package dependencies, etc., which can be flexibly switched according to tasks.

  • Engineering practice: Fine-tune Prompts for different users through A/B testing to precisely optimize task completion rates and reduce error rates.

In comparison, Claude Code's architecture is more concise, with lower model attention burden and fewer hallucinations; while OpenAI's related architecture is more complex, requiring reading large amounts of files, which can easily trigger memory hallucinations.

2. Tool Schema

Tool definitions directly determine invocation accuracy, with core design points:

  • Built-in core tools: Basic tools such as file read/write/edit, Bash, Web batch processing, etc., are adapted during the model training phase, so no additional tool descriptions are needed during inference.

  • Permissions and security: In enterprise scenarios, third-party tools without permission verification are rejected to avoid malicious operations.

  • Parallel tool invocation: Can improve execution speed, but post-training is extremely difficult—parallel invocations have no sequential dependencies, making it easy for timing misalignments during training, and Reward signals are hard to align.

3. Tool Call Loop

This is the core part of Harness and the key to integrating training and inference:

  • Plan Mode: For long-chain tasks, first understand the task, organize the file system, clarify available tools, generate an execution plan, and then proceed to execution; avoid blind trial and error (e.g., repeatedly calling unavailable search engines) and reduce invalid token consumption.

  • Execute Mode: Execute tools according to the plan in a Sandbox to obtain closed-loop outcomes.

  • Core value: Eliminate intermediate errors in long-chain execution, reduce retry costs, but also make training planning capabilities more difficult—Reward signals for planning quality are easily interfered with by noise in the execution phase.

4. Context Manager

Addresses the efficient utilization of million-token-level contexts:

  • Uses pointer-indexed Memory: Does not store complete content directly, only records file pointers and topic labels.

  • Automatically merges, deduplicates, and associates files in the background.

  • Current status: Still in the heuristic stage, unable to perfectly solve multi-file cross-chain reasoning problems (e.g., associated files being omitted), with no end-to-end optimal solution yet.

5. Sub Agent

Mainstream multi-agent collaboration lacks theoretical guarantees: no shared goals, no general training algorithms, only "each trained, randomly coordinated."

Whereas the Master-Sub Agent architecture is essentially hierarchical reinforcement learning:

  • The master Agent defines sub-tasks (Options) for sub-agents, with the sub-task termination state as the starting point for the master Agent's next step.

  • Shares KV Cache and input context; after sub-agent execution, only the result is appended, without additional token consumption, making costs much lower than serial execution.

  • Typical implementation: ByteDance's ContextFormer and other works are highly consistent with this approach.

6. Verification Hooks

Solves the problem of models "self-beautifying and falsely reporting completion":

  • Strong models have self-preference, with self-evaluation accuracy much higher than mutual evaluation, making them prone to actively "lying" rather than simply hallucinating.

  • Engineering solution: Introduce a background classifier that only looks at tool execution results and ignores model-generated text, performing objective verification free from generation bias.

  • Role: Achieves lightweight, elegant execution result verification without fully verifiable Rewards.

Traditional RL (reinforcement learning) training environments are severely disconnected from inference environments, while Harness achieves integration of training and production environments: tool invocation sequences = trajectory steps, test runs and classification gates = Reward signals, user tasks = complete episodes.

Around these six components, Post-training forms six core directions:

1. System Prompt-driven behavior alignment

System Prompts clarify task objectives, Token budgets, and available tool strategies, thereby significantly constraining the model's behavior space, allowing reinforcement learning to only learn the best execution mode within limited boundaries. We can design scoring systems based on the rules in System Prompts, enabling the model to undergo approximate end-to-end training under cleaner, less branched trajectories, stably outputting expected behaviors.

2. End-to-end training for long-chain tool invocation

Abandon traditional "single-step snapshot training" in favor of complete trajectory training:

  • Record execution results at each step to obtain process Rewards and final task Rewards.

  • Focus on long-chain stability, ensuring overall accuracy across hundreds of tool invocation steps, not just single-step correctness.

3. Integrated Plan-Execute training

Harness eliminates noise between planning and execution:

  • Pre-lock tool chains in planning without additional manual intervention layers.

  • Execution results are objectively verified by classification gates, making Reward signals for planning clearer.

  • Achieves trainable planning capabilities, avoiding the crude mode of "only executing, not planning."

4. Specialized Memory Compression training

Treat context compression as an independent task: upstream models output compressed memories, downstream task execution effects serve as verification standards; the goal is to retain core information without affecting downstream task success rates.

5. Sub-Agent collaborative orchestration training

For ultra-long outputs (code/document scenarios with millions of tokens):

  • The master Agent does not directly generate content but orchestrates sub-agents, assigning tasks and Prompts.

  • Sub-agents execute in parallel and merge results, with the master Agent performing verification.

  • Relies on Harness for underlying process control to avoid read/write conflicts and execution failures.

6. Multi-objective joint reinforcement learning

Modern RL pipelines are significantly extended, requiring simultaneous optimization of six modules:

  • Tool invocation without hallucinations, accurate classification verification, effective context compression, multi-agent without hindrance, reasonable planning, and credible verification.

  • The industry has moved from algorithm convergence to a百花齐放 (hundred flowers blooming) state, with each环节 requiring专属 training algorithms, making multi-objective fusion a core challenge.

First, the transformation in talent demand. Prompt Engineering is no longer an independent core; doing Harness well can complete 70% of the work. Therefore,复合型人才 (versatile talents) with both AI understanding, backend engineering, and infrastructure capabilities will be more sought after, while pure Prompt engineers will see significantly reduced competitiveness.

Second, the restructuring of the market landscape. Squeezed by model manufacturers and vertical field enterprises, intermediate "model shell companies" are left with only two viable paths: either possess top-tier model and infrastructure capabilities, or have unique data/experience barriers in vertical fields (e.g., high-frequency trading, industry-specific knowledge).

Third, true Agent implementation is moving towards privatization, high security, and end-to-end integration. For enterprises,优先复用成熟Harness设计 (prioritizing reuse of mature Harness designs), combined with vertical scenario customization, focusing on security and私有化落地 (privatized implementation), is the way to achieve true large-scale commercial use of Agents.

The core value of the Claude Code leak is not the code itself but revealing that Agents have entered the Harness-driven era. Model capabilities are just the foundation; engineering architecture, execution environment, multi-agent collaboration, and verification mechanisms are the keys to determining the upper limit.

Preguntas relacionadas

QWhat is the core concept of 'Harness' in the context of AI agents, as discussed in the article?

AHarness refers to the entire engineering architecture designed to maximize model capabilities, not just output tokens. It acts as a control system (like reins on a horse) to guide and manage AI models, involving components like system prompts, tool schemas, tool call loops, context managers, sub-agents, and verification hooks.

QHow does the Claude Code Harness approach system prompts differently, according to the article?

AClaude Code uses a multi-tiered system prompt design: a fixed cached part (with agent identity, commands, tool definitions, tone, security policies), a dynamically replaceable part (session state, current time, readable files), and engineering practices like A/B testing to optimize task completion and reduce error rates.

QWhat are the key components of the Tool Call Loop in the Harness architecture?

AThe Tool Call Loop includes Plan Mode (for understanding tasks, organizing file systems, and generating execution plans) and Execute Mode (for executing tools in a sandbox). It aims to eliminate intermediate errors in long-chain tasks and reduce retry costs, though it makes training planning abilities more challenging.

QHow does the Harness architecture integrate with Post-training, as highlighted in the article?

AHarness enables training-production environment integration, where tool call sequences equal trajectory steps, test runs and classification gates provide reward signals, and user tasks form complete episodes. Post-training focuses on six areas: system prompt-driven alignment, end-to-end long-chain tool calls, plan-execute integration, memory compression, sub-agent coordination, and multi-objective reinforcement learning.

QWhat impact does the Harness-driven era have on the AI talent market and industry structure?

AIt shifts demand towards复合型人才 (compound talents) with AI understanding, backend engineering, and infrastructure skills, reducing the competitiveness of pure prompt engineers. The market structure pressures intermediate 'model shell companies' to either excel in model and infrastructure capabilities or possess unique vertical data/experience barriers, emphasizing privatization, security, and end-to-end integration for true Agent adoption.

Lecturas Relacionadas

Zoomex Mercado de Predicciones Lanza Oficialmente: Participa en Eventos Globales de Tendencia con Criptomonedas

**Introducción:** Diseñado para la nueva generación de traders, Zoomex conecta los mercados de criptomonedas, las tendencias deportivas y los eventos globales a través de una experiencia más simple, fluida y transparente. Zoomex ha lanzado oficialmente su **Mercado de Predicciones Zoomex**. Esta importante actualización permite a los usuarios participar de manera sencilla e intuitiva en predicciones sobre mercados cripto, eventos deportivos, temas de tendencia y acontecimientos mundiales, utilizando criptomonedas. El mercado de predicciones transforma el análisis complejo en preguntas y opciones claras sobre resultados de eventos. Los usuarios pueden expresar su opinión y participar en la previsión de tendencias detrás de grandes eventos globales, como el próximo Mundial de fútbol. Fernando, Director de Marketing de Zoomex, destacó el compromiso de la plataforma con una experiencia comercial más accesible e intuitiva para todos, no solo para profesionales. El Mercado de Predicciones extiende esta visión, permitiendo a los usuarios participar basándose en su propio juicio. Tras el lanzamiento, Zoomex ampliará la gama de temas de predicción e introducirá campañas y mecanismos de recompensa. Los usuarios podrán desbloquear más oportunidades participando en predicciones y actividades comunitarias. Zoomex, fundada en 2021, es una plataforma global de comercio de criptomonedas con más de 3 millones de usuarios. Opera con licencias regulatorias en varias jurisdicciones y es socia oficial del Haas F1 Team, además de tener una asociación con el guardameta Emiliano Martínez.

TheNewsCryptoHace 1 hora(s)

Zoomex Mercado de Predicciones Lanza Oficialmente: Participa en Eventos Globales de Tendencia con Criptomonedas

TheNewsCryptoHace 1 hora(s)

El Senado da un paso hacia la Ley CLARITY: El objetivo de firma en agosto sigue vivo, por ahora

Tras superar obstáculos clave en el Senado, la Ley CLARITY avanza hacia un período decisivo para determinar si será promulgada este año. Sus partidarios reconocen que el camino es estrecho, tanto en lo procedimental como en lo político, y que se necesita reconciliar versiones distintas del proyecto de ley. El principal desafío es conseguir 60 votos en el Senado para evitar un filibusterismo, lo que requiere apoyo bipartidista. Algunos demócratas clave han condicionado su respaldo a la inclusión de salvaguardas éticas para funcionarios que traten con criptomonedas, un punto que la arquitecta del proyecto, la senadora Gillibrand, considera "innegociable". Otros legisladores buscan garantías sobre las capacidades de aplicación de la ley en el ámbito de las finanzas descentralizadas (DeFi), lo que genera preocupación en la industria sobre posibles debilitamientos de protecciones legales para desarrolladores de software. Aunque algunos observadores ven el receso de agosto como una fecha límite efectiva, otros, como el exasesor parlamentario Adam Minehardt, son más optimistas. Creen que la voluntad política y el capital invertido en el proyecto hacen improbable su abandono, aunque advierten que un retraso hasta el próximo año podría alterar el entorno político, especialmente tras las elecciones de medio término. El objetivo declarado de la Casa Blanca sigue siendo que la Cámara de Representantes apruebe la ley a principios de julio.

bitcoinistHace 1 hora(s)

El Senado da un paso hacia la Ley CLARITY: El objetivo de firma en agosto sigue vivo, por ahora

bitcoinistHace 1 hora(s)

Las criptomonedas apuntan al mercado de pensiones estadounidense de 49 billones de dólares

La industria de las criptomonedas está apuntando al mercado de planes de jubilación de EE. UU., valorado en 49,1 billones de dólares, a través de las Cuentas de Jubilación Individual Autodirigidas (SDIRA). Estas cuentas permiten a los inversores diversificar en activos alternativos como bienes raíces, metales preciosos y, ahora, criptomonedas. Adam Bergman, fundador de IRA Financial, critica a las grandes instituciones financieras por limitar las opciones de inversión tradicionales y destaca cómo los ricos han utilizado activos alternativos para crear riqueza. Recientemente, su empresa lanzó una plataforma que permite negociar casi 100 criptomonedas, acciones y otros activos en una sola cuenta con una tarifa plana anual. El panorama regulatorio está cambiando. Una orden ejecutiva firmada por el presidente Trump busca democratizar el acceso a activos alternativos, incluidos los digitales, en los planes 401(k). Esto coincide con la creciente aceptación de las criptomonedas por parte de las generaciones más jóvenes. Sin embargo, las SDIRA conllevan riesgos significativos. Los organismos reguladores advierten sobre la falta de supervisión en las inversiones, y los incidentes de seguridad, como el hackeo de 2022 a IRA Financial que resultó en el robo de 36 millones de dólares en criptomonedas, subrayan los peligros de la custodia centralizada. Además, el manejo incorrecto de las claves privadas puede descalificar toda la cuenta, generando consecuencias fiscales severas. En conclusión, aunque las criptomonedas ofrecen una nueva vía para la diversificación de los ahorros para la jubilación, los inversores deben equilibrar cuidadosamente el potencial de mayores rendimientos con los riesgos inherentes y buscar asesoramiento profesional especializado.

marsbitHace 2 hora(s)

Las criptomonedas apuntan al mercado de pensiones estadounidense de 49 billones de dólares

marsbitHace 2 hora(s)

Debate en Reddit sobre criptomonedas: Acciones tecnológicas galopan durante 8 meses, ¿la comunidad cripto empieza a "resignarse"?

Un hilo de Reddit en r/CryptoMarkets sobre el estancamiento del mercado de criptomonedas comparado con el auge de las acciones tecnológicas ha generado un intenso debate. El autor pregunta si se producirá una rotación de capitales o si la gente ha perdido interés en las cripto. La discusión refleja la tensión actual en la comunidad. Por un lado, los creyentes en los ciclos apuntan a la historia de Bitcoin y predicen un repunte, con usuarios recordando los patrones alcistas cada cuatro años. Por otro, los escépticos argumentan que las narrativas de Bitcoin cambian constantemente y cuestionan su utilidad real más allá de la especulación. Un punto clave de consenso es que la cripto ha perdido protagonismo frente a la revolución de la IA, que está generando un impacto tangible. Muchos usuarios señalan la falta de casos de uso sólidos y masivos para las criptomonedas, con la excepción parcial de las stablecoins y algunos usos en DeFi (aunque con problemas de seguridad). Se destaca una paradoja fundamental: una moneda necesita estabilidad para ser útil, pero la lógica de inversión en Bitcoin se basa en su volatilidad. Los datos fríos respaldan el pesimismo: los ETF de Bitcoin registraron importantes salidas netas en mayo, indicando una desaceleración institucional, y el índice de miedo y codicia cayó a niveles de "miedo". La pregunta central sobre cuándo podría llegar la próxima rotación no tiene una respuesta clara. Los análisis sugieren que mientras los tipos de interés se mantengan altos, el dinero tendrá menos incentivos para fluir hacia activos de alto riesgo como las criptomonedas. La ansiedad subyacente, como resume un usuario, es el "coste de oportunidad": el miedo a perder otras oportunidades de ganancias mientras se espera un posible repunte del mercado cripto.

marsbitHace 2 hora(s)

Debate en Reddit sobre criptomonedas: Acciones tecnológicas galopan durante 8 meses, ¿la comunidad cripto empieza a "resignarse"?

marsbitHace 2 hora(s)

Trading

Spot
Futuros

Artículos destacados

Cómo comprar ERA

¡Bienvenido a HTX.com! Hemos hecho que comprar Caldera (ERA) sea simple y conveniente. Sigue nuestra guía paso a paso para iniciar tu viaje de criptos.Paso 1: crea tu cuenta HTXUtiliza tu correo electrónico o número de teléfono para registrarte y obtener una cuenta gratuita en HTX. Experimenta un proceso de registro sin complicaciones y desbloquea todas las funciones.Obtener mi cuentaPaso 2: ve a Comprar cripto y elige tu método de pagoTarjeta de crédito/débito: usa tu Visa o Mastercard para comprar Caldera (ERA) al instante.Saldo: utiliza fondos del saldo de tu cuenta HTX para tradear sin problemas.Terceros: hemos agregado métodos de pago populares como Google Pay y Apple Pay para mejorar la comodidad.P2P: tradear directamente con otros usuarios en HTX.Over-the-Counter (OTC): ofrecemos servicios personalizados y tipos de cambio competitivos para los traders.Paso 3: guarda tu Caldera (ERA)Después de comprar tu Caldera (ERA), guárdalo en tu cuenta HTX. Alternativamente, puedes enviarlo a otro lugar mediante transferencia blockchain o utilizarlo para tradear otras criptomonedas.Paso 4: tradear Caldera (ERA)Tradear fácilmente con Caldera (ERA) en HTX's mercado spot. Simplemente accede a tu cuenta, selecciona tu par de trading, ejecuta tus trades y monitorea en tiempo real. Ofrecemos una experiencia fácil de usar tanto para principiantes como para traders experimentados.

570 Vistas totalesPublicado en 2025.07.17Actualizado en 2026.06.02

Cómo comprar ERA

Discusiones

Bienvenido a la comunidad de HTX. Aquí puedes mantenerte informado sobre los últimos desarrollos de la plataforma y acceder a análisis profesionales del mercado. A continuación se presentan las opiniones de los usuarios sobre el precio de ERA (ERA).

活动图片