hive-mind-advanced
Queen-led multi-agent orchestration for Claude Code, featuring Byzantine consensus, persistent collective memory, and adaptive task distribution for complex software projects.
Introduction
The Hive Mind Advanced skill is a sophisticated orchestration layer for Claude Code, designed to manage high-complexity software engineering workflows through a hierarchical, queen-led agent structure. By delegating tasks to specialized agents—including researchers, coders, architects, and testers—the system ensures high-quality execution and strategic alignment. It is ideal for software teams and developers managing large-scale, multi-stage projects that require automated coordination, fault-tolerant decision-making, and long-term knowledge retention. The architecture leverages persistent SQLite-backed collective memory to maintain context across sessions, enabling agents to learn from historical patterns and association data.
-
Advanced Queen-Led Coordination: Hierarchical management using strategic, tactical, and adaptive queen agents to direct worker agents.
-
Robust Consensus Mechanisms: Implements Majority, Weighted, and Byzantine Fault Tolerance (BFT) algorithms to validate decisions and minimize agent errors.
-
Persistent Collective Memory: Includes an LRU-cached, SQLite-persisted knowledge base for task-specific data, errors, metrics, and long-term insights.
-
Intelligent Auto-Scaling: Dynamically adjusts worker counts based on pending tasks and system load, ensuring optimal resource allocation.
-
Specialization Framework: Integrates with 74+ specialized agent roles ranging from documenters and reviewers to security auditors and test engineers.
-
Session Lifecycle Management: Full support for pausing, resuming, and checkpointing complex workflows with export/import capabilities.
-
Utilize the hive-mind spawn command to initiate swarms for specific objectives, such as building microservices or optimizing legacy codebases.
-
Configure memory types (knowledge, task, consensus, system) to ensure relevant data persistence and retrieval using search, getRelated, and associate methods.
-
Monitor operational performance via the metrics and status commands, providing real-time visibility into swarm health and consensus confidence scores.
-
Input requirements include high-level project objectives, while outputs consist of structured execution plans, code artifacts, test reports, and optimized architectural decisions.
-
Note that this skill requires the Claude Flow or Ruflo environment to manage the underlying plugin hooks and WASM-powered policy engines effectively.
Repository Stats
- Stars
- 33,899
- Forks
- 3,840
- Open Issues
- 477
- Language
- TypeScript
- Default Branch
- main
- Sync Status
- Idle
- Last Synced
- Apr 29, 2026, 06:30 AM