10 Repos
Techniques for refining agent performance through role definition and strategic workflow configuration.
Distinguishing note: Focuses on performance tuning of agent teams.
Explore 10 awesome GitHub repositories matching artificial intelligence & ml · Agent Optimization. Refine with filters or upvote what's useful.
ECC ist ein LLM-Agenten-Orchestrierungs-Framework und eine plattformübergreifende KI-Tool-Suite, die darauf ausgelegt ist, Multi-Modell-Workflows zu koordinieren. Es bietet ein System zur Verwaltung spezialisierter Agentenrollen, wiederverwendbarer Fähigkeiten und strukturierter Planung, um komplexe Softwareentwicklungsaufgaben über verschiedene KI-gestützte Code-Editoren hinweg auszuführen. Das Projekt zeichnet sich als Model Context Protocol Manager aus und bietet eine Konfigurationsschicht zur Integration externer Server und zur Prüfung der Tool-Ausführung. Es implementiert zudem eine agentische Sicherheits-Sandbox, die den Zugriff auf sensible Dateien einschränkt und auf Geheimnislecks scannt, um autonome Workflows zu sichern. Das Framework deckt breite Fähigkeitsbereiche ab, einschließlich der Automatisierung von KI-Coding-Workflows mit Leitplanken für testgetriebene Entwicklung, Modellkostenoptimierung durch intelligentes Routing und zustandsisoliertes Speichermanagement. Es enthält zudem Tools zur Durchsetzung sprachspezifischer Codierungsstandards und zur Verwaltung von Agentenverhalten über verschiedene integrierte Entwicklungsumgebungen hinweg. Das System wird über eine Befehlszeilenschnittstelle verwaltet, die die Tool-Installation, Konfigurationsreparatur und die Bereitstellung von Tool-Presets handhabt.
Improves coding agent output through pre-configured skills and memory settings.
CrewAI is a multi-agent orchestration framework designed for building autonomous systems that execute complex, multi-step workflows. It provides a development platform where specialized agents are defined with specific roles, goals, and tool sets to perform tasks collaboratively. By leveraging a declarative workflow engine, the system manages task dependencies, state transitions, and execution logic, allowing for the creation of structured, stateful sequences of operations. The framework distinguishes itself through its hierarchical management capabilities, which utilize manager agents to coo
Improves agent performance by defining clear roles and enabling strategic delegation.
Agentscope is a comprehensive toolkit for developing and orchestrating autonomous multi-agent systems. It provides a unified framework for building agents that can reason, execute tools, and manage memory, enabling the creation of complex, collaborative workflows where multiple specialized agents interact to solve multi-step objectives. The platform distinguishes itself through a robust orchestration engine that supports both sequential and concurrent agent pipelines. It utilizes a centralized event bus for real-time telemetry, allowing developers to track agent reasoning, tool usage, and sys
Provides techniques for refining agent performance through strategic workflow configuration and optimization.
This project provides a framework for managing multi-agent systems, designed to automate complex software development, infrastructure, and business workflows. It functions as a multi-agent workflow orchestrator that routes tasks to domain-specific workers while maintaining state persistence and infrastructure automation. By leveraging large language models, the system decomposes high-level objectives into actionable plans, ensuring that complex operations are executed with consistency and reliability. The framework distinguishes itself through its hierarchical agent registry and policy-driven
Refines agent performance through strategic workflow configuration and real-time resource management.
Comet LLM is an observability platform and evaluation framework designed for large language model applications and agentic workflows. It functions as a system for tracing, monitoring, and debugging execution flows while providing tools for prompt optimization and the enforcement of AI safety guardrails. The platform distinguishes itself through a combination of model-based scoring and heuristic metrics to quantify output quality and detect hallucinations. It includes a dedicated prompt and agent optimizer with an interactive playground for refining templates and tool configurations. For retri
Refines agent performance and workflow configuration using experimentation tools and playgrounds.
Opik is an observability and evaluation platform designed for generative AI applications and agentic workflows. It provides a centralized environment for tracing execution flows, managing prompt templates, and monitoring production performance, allowing teams to gain visibility into complex model interactions and tool usage without requiring manual application code changes. The platform distinguishes itself through its integrated approach to the AI development lifecycle, combining distributed trace instrumentation with automated evaluation frameworks. It supports model-as-a-judge scoring, syn
Analyzes trace data and test outcomes to suggest code improvements, automate prompt engineering, and manage regression testing.
Agent Lightning is an optimization framework designed to refine the performance of individual AI agents within complex multi-agent systems. It provides a platform for improving decision-making and task execution by applying reinforcement learning, supervised fine-tuning, and automated prompt optimization. The framework distinguishes itself through its ability to isolate specific agents for targeted tuning, allowing developers to enhance individual behaviors while maintaining the stability of the broader system architecture. By utilizing a modular interface, it integrates with diverse agent fr
Refines specific agents within a multi-agent system while keeping other components unchanged to ensure overall stability.
GraphCast is a machine learning model that uses graph neural networks to produce global weather forecasts up to ten days ahead at high spatial resolution. The system represents the Earth's surface as an icosahedral mesh, enabling message passing between mesh nodes to capture atmospheric dynamics, and combines this with a learned multiscale processor that operates across coarse-to-fine mesh resolutions. The model is trained on historical ERA5 reanalysis data through a supervised learning objective, and its autoregressive rollout loop feeds predictions back as input to generate multi-step forec
Maintains end-to-end differentiability through the autoregressive rollout for gradient-based training.
Backpropagates gradients across the entire communication pipeline for neural network integration.
Optimizes end-to-end latency in Asia by pairing MiniMax with Tencent RTC edge transport.