| #!/usr/bin/env node |
|
|
| |
| |
| |
| |
| |
| |
| |
| |
| |
| |
|
|
| |
| process.env.MCP_SERVER = '1'; |
|
|
| const { Server } = require('@modelcontextprotocol/sdk/server/index.js'); |
| const { StdioServerTransport } = require('@modelcontextprotocol/sdk/server/stdio.js'); |
| const { |
| CallToolRequestSchema, |
| ListToolsRequestSchema, |
| ListResourcesRequestSchema, |
| ReadResourceRequestSchema, |
| } = require('@modelcontextprotocol/sdk/types.js'); |
| const path = require('path'); |
| const fs = require('fs'); |
| const { execSync, execFileSync } = require('child_process'); |
|
|
| |
|
|
| |
| |
| |
| |
| function validateRvfPath(filePath) { |
| if (typeof filePath !== 'string' || filePath.length === 0) { |
| throw new Error('Path must be a non-empty string'); |
| } |
| |
| if (filePath.includes('\0')) { |
| throw new Error('Path contains null bytes'); |
| } |
| |
| let resolved = path.resolve(filePath); |
| try { |
| |
| resolved = fs.realpathSync(resolved); |
| } catch { |
| |
| const parentDir = path.dirname(resolved); |
| try { |
| const realParent = fs.realpathSync(parentDir); |
| resolved = path.join(realParent, path.basename(resolved)); |
| } catch { |
| |
| } |
| } |
| |
| const cwd = process.cwd(); |
| if (!resolved.startsWith(cwd + path.sep) && resolved !== cwd) { |
| |
| const blocked = ['/etc', '/proc', '/sys', '/dev', '/boot', '/root', '/var/run', '/var/log', '/tmp']; |
| for (const prefix of blocked) { |
| if (resolved.startsWith(prefix)) { |
| throw new Error(`Access denied: path resolves to '${resolved}' which is outside the working directory and in restricted area '${prefix}'`); |
| } |
| } |
| |
| |
| } |
| return resolved; |
| } |
|
|
| |
| |
| |
| |
| function sanitizeShellArg(arg) { |
| if (typeof arg !== 'string') return ''; |
| |
| return arg |
| .replace(/\0/g, '') |
| .replace(/[\r\n]/g, '') |
| .replace(/[`$(){}|;&<>!'"\\]/g, '') |
| .replace(/\.\./g, '') |
| .slice(0, 4096); |
| } |
|
|
| |
| |
| |
| |
| function sanitizeNumericArg(arg, defaultVal) { |
| const n = parseInt(arg, 10); |
| return Number.isFinite(n) && n > 0 ? n : (defaultVal || 0); |
| } |
|
|
| |
| let IntelligenceEngine = null; |
| let engineAvailable = false; |
|
|
| try { |
| const core = require('../dist/core/intelligence-engine.js'); |
| IntelligenceEngine = core.IntelligenceEngine || core.default; |
| engineAvailable = true; |
| } catch (e) { |
| |
| } |
|
|
| |
| class Intelligence { |
| constructor() { |
| this.intelPath = this.getIntelPath(); |
| this.data = this.load(); |
| this.engine = null; |
|
|
| |
| if (engineAvailable && IntelligenceEngine) { |
| try { |
| this.engine = new IntelligenceEngine({ |
| embeddingDim: 256, |
| maxMemories: 100000, |
| enableSona: true, |
| enableAttention: true, |
| }); |
| |
| if (this.data) { |
| this.engine.import(this.convertLegacyData(this.data), true); |
| } |
| } catch (e) { |
| this.engine = null; |
| } |
| } |
| } |
|
|
| convertLegacyData(data) { |
| const converted = { memories: [], routingPatterns: {}, errorPatterns: {}, coEditPatterns: {} }; |
| if (data.memories) { |
| converted.memories = data.memories.map(m => ({ |
| id: m.id || `mem-${Date.now()}`, |
| content: m.content, |
| type: m.type || 'general', |
| embedding: m.embedding || [], |
| created: m.created || new Date().toISOString(), |
| accessed: 0, |
| })); |
| } |
| if (data.patterns) { |
| for (const [key, value] of Object.entries(data.patterns)) { |
| const [state, action] = key.split('|'); |
| if (state && action) { |
| if (!converted.routingPatterns[state]) converted.routingPatterns[state] = {}; |
| converted.routingPatterns[state][action] = value.q_value || value || 0.5; |
| } |
| } |
| } |
| return converted; |
| } |
|
|
| getIntelPath() { |
| const projectPath = path.join(process.cwd(), '.ruvector', 'intelligence.json'); |
| const homePath = path.join(require('os').homedir(), '.ruvector', 'intelligence.json'); |
| if (fs.existsSync(path.dirname(projectPath))) return projectPath; |
| if (fs.existsSync(path.join(process.cwd(), '.claude'))) return projectPath; |
| if (fs.existsSync(homePath)) return homePath; |
| return projectPath; |
| } |
|
|
| load() { |
| try { |
| if (fs.existsSync(this.intelPath)) { |
| return JSON.parse(fs.readFileSync(this.intelPath, 'utf-8')); |
| } |
| } catch {} |
| return { patterns: {}, memories: [], trajectories: [], errors: {}, agents: {}, edges: [] }; |
| } |
|
|
| save() { |
| const dir = path.dirname(this.intelPath); |
| if (!fs.existsSync(dir)) fs.mkdirSync(dir, { recursive: true }); |
|
|
| |
| if (this.engine) { |
| try { |
| const engineData = this.engine.export(); |
| this.data.engineStats = engineData.stats; |
| } catch {} |
| } |
|
|
| fs.writeFileSync(this.intelPath, JSON.stringify(this.data, null, 2)); |
| } |
|
|
| stats() { |
| const baseStats = { |
| total_patterns: Object.keys(this.data.patterns || {}).length, |
| total_memories: (this.data.memories || []).length, |
| total_trajectories: (this.data.trajectories || []).length, |
| total_errors: Object.keys(this.data.errors || {}).length |
| }; |
|
|
| if (this.engine) { |
| try { |
| const engineStats = this.engine.getStats(); |
| return { |
| ...baseStats, |
| engineEnabled: true, |
| sonaEnabled: engineStats.sonaEnabled, |
| attentionEnabled: engineStats.attentionEnabled, |
| embeddingDim: engineStats.memoryDimensions, |
| totalMemories: engineStats.totalMemories, |
| totalEpisodes: engineStats.totalEpisodes, |
| trajectoriesRecorded: engineStats.trajectoriesRecorded, |
| patternsLearned: engineStats.patternsLearned, |
| microLoraUpdates: engineStats.microLoraUpdates, |
| ewcConsolidations: engineStats.ewcConsolidations, |
| }; |
| } catch {} |
| } |
|
|
| return { ...baseStats, engineEnabled: false }; |
| } |
|
|
| embed(text) { |
| if (this.engine) { |
| try { |
| return this.engine.embed(text); |
| } catch {} |
| } |
| |
| const embedding = new Array(64).fill(0); |
| for (let i = 0; i < text.length; i++) { |
| const idx = (text.charCodeAt(i) + i * 7) % 64; |
| embedding[idx] += 1.0; |
| } |
| const norm = Math.sqrt(embedding.reduce((a, b) => a + b * b, 0)); |
| if (norm > 0) for (let i = 0; i < embedding.length; i++) embedding[i] /= norm; |
| return embedding; |
| } |
|
|
| similarity(a, b) { |
| if (!a || !b || a.length !== b.length) return 0; |
| const dot = a.reduce((sum, v, i) => sum + v * b[i], 0); |
| const normA = Math.sqrt(a.reduce((sum, v) => sum + v * v, 0)); |
| const normB = Math.sqrt(b.reduce((sum, v) => sum + v * v, 0)); |
| return normA > 0 && normB > 0 ? dot / (normA * normB) : 0; |
| } |
|
|
| async remember(content, type = 'general') { |
| |
| if (this.engine) { |
| try { |
| const entry = await this.engine.remember(content, type); |
| |
| this.data.memories = this.data.memories || []; |
| this.data.memories.push({ content, type, created: new Date().toISOString(), embedding: entry.embedding }); |
| this.save(); |
| return { stored: true, total: this.data.memories.length, engineStored: true }; |
| } catch {} |
| } |
|
|
| |
| this.data.memories = this.data.memories || []; |
| this.data.memories.push({ content, type, created: new Date().toISOString(), embedding: this.embed(content) }); |
| this.save(); |
| return { stored: true, total: this.data.memories.length }; |
| } |
|
|
| async recall(query, topK = 5) { |
| |
| if (this.engine) { |
| try { |
| const results = await this.engine.recall(query, topK); |
| return results.map(r => ({ |
| content: r.content, |
| type: r.type, |
| score: r.score || 0, |
| created: r.created, |
| engineResult: true |
| })); |
| } catch {} |
| } |
|
|
| |
| const queryEmbed = this.embed(query); |
| const scored = (this.data.memories || []).map((m, i) => ({ |
| ...m, |
| index: i, |
| score: this.similarity(queryEmbed, m.embedding) |
| })); |
| return scored.sort((a, b) => b.score - a.score).slice(0, topK); |
| } |
|
|
| async route(task, file = null) { |
| |
| if (this.engine) { |
| try { |
| const result = await this.engine.route(task, file); |
| return { |
| agent: result.agent, |
| confidence: result.confidence, |
| reason: result.reason, |
| alternates: result.alternates, |
| sonaPatterns: result.patterns?.length || 0, |
| engineRouted: true |
| }; |
| } catch {} |
| } |
|
|
| |
| const ext = file ? path.extname(file) : ''; |
| const state = `edit:${ext || 'unknown'}`; |
| const actions = this.data.patterns[state] || {}; |
|
|
| const defaults = { |
| '.rs': 'rust-developer', |
| '.ts': 'typescript-developer', |
| '.tsx': 'react-developer', |
| '.js': 'javascript-developer', |
| '.jsx': 'react-developer', |
| '.py': 'python-developer', |
| '.go': 'go-developer', |
| '.sql': 'database-specialist', |
| '.md': 'documentation-specialist' |
| }; |
|
|
| let bestAgent = defaults[ext] || 'coder'; |
| let bestScore = 0.5; |
|
|
| for (const [agent, score] of Object.entries(actions)) { |
| if (score > bestScore) { |
| bestAgent = agent; |
| bestScore = score; |
| } |
| } |
|
|
| return { |
| agent: bestAgent, |
| confidence: Math.min(bestScore, 1.0), |
| reason: Object.keys(actions).length > 0 ? 'learned from patterns' : 'default mapping' |
| }; |
| } |
|
|
| getCapabilities() { |
| if (!this.engine) { |
| return { engine: false, vectorDb: false, sona: false, attention: false, embeddingDim: 64 }; |
| } |
| try { |
| const stats = this.engine.getStats(); |
| return { |
| engine: true, |
| vectorDb: true, |
| sona: stats.sonaEnabled, |
| attention: stats.attentionEnabled, |
| embeddingDim: stats.memoryDimensions, |
| }; |
| } catch { |
| return { engine: true, vectorDb: false, sona: false, attention: false, embeddingDim: 256 }; |
| } |
| } |
| } |
|
|
| |
| const server = new Server( |
| { |
| name: 'ruvector', |
| version: '0.1.58', |
| }, |
| { |
| capabilities: { |
| tools: {}, |
| resources: {}, |
| }, |
| } |
| ); |
|
|
| const intel = new Intelligence(); |
|
|
| |
| const TOOLS = [ |
| { |
| name: 'hooks_stats', |
| description: 'Get RuVector intelligence statistics including learned patterns, memories, and trajectories', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_route', |
| description: 'Route a task to the best agent based on learned patterns', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| task: { type: 'string', description: 'Task description' }, |
| file: { type: 'string', description: 'File path (optional)' } |
| }, |
| required: ['task'] |
| } |
| }, |
| { |
| name: 'hooks_remember', |
| description: 'Store context in vector memory for later recall', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| content: { type: 'string', description: 'Content to remember' }, |
| type: { type: 'string', description: 'Memory type (project, code, decision, context)', default: 'general' } |
| }, |
| required: ['content'] |
| } |
| }, |
| { |
| name: 'hooks_recall', |
| description: 'Search vector memory for relevant context', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'Search query' }, |
| top_k: { type: 'number', description: 'Number of results', default: 5 } |
| }, |
| required: ['query'] |
| } |
| }, |
| { |
| name: 'hooks_init', |
| description: 'Initialize RuVector hooks in the current project', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| pretrain: { type: 'boolean', description: 'Run pretrain after init', default: false }, |
| build_agents: { type: 'string', description: 'Focus for agent generation (quality, speed, security, testing, fullstack)' }, |
| force: { type: 'boolean', description: 'Force overwrite existing settings', default: false } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_pretrain', |
| description: 'Pretrain intelligence by analyzing the repository structure and git history', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| depth: { type: 'number', description: 'Git history depth to analyze', default: 100 }, |
| skip_git: { type: 'boolean', description: 'Skip git history analysis', default: false }, |
| verbose: { type: 'boolean', description: 'Show detailed progress', default: false } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_build_agents', |
| description: 'Generate optimized agent configurations based on repository analysis', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| focus: { |
| type: 'string', |
| description: 'Focus type for agent generation', |
| enum: ['quality', 'speed', 'security', 'testing', 'fullstack'], |
| default: 'quality' |
| }, |
| include_prompts: { type: 'boolean', description: 'Include system prompts in agent configs', default: true } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_verify', |
| description: 'Verify that hooks are configured correctly', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_doctor', |
| description: 'Diagnose and optionally fix setup issues', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| fix: { type: 'boolean', description: 'Automatically fix issues', default: false } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_export', |
| description: 'Export intelligence data for backup', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| include_all: { type: 'boolean', description: 'Include all data (patterns, memories, trajectories)', default: false } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_capabilities', |
| description: 'Get RuVector engine capabilities (VectorDB, SONA, Attention)', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_import', |
| description: 'Import intelligence data from backup file', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| data: { type: 'object', description: 'Exported data object to import' }, |
| merge: { type: 'boolean', description: 'Merge with existing data', default: true } |
| }, |
| required: ['data'] |
| } |
| }, |
| { |
| name: 'hooks_swarm_recommend', |
| description: 'Get agent recommendation for a task type using learned patterns', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| task_type: { type: 'string', description: 'Type of task (research, code, test, review, debug, etc.)' }, |
| file: { type: 'string', description: 'Optional file path for context' } |
| }, |
| required: ['task_type'] |
| } |
| }, |
| { |
| name: 'hooks_suggest_context', |
| description: 'Get relevant context suggestions for the current task', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'Current task or query' }, |
| top_k: { type: 'number', description: 'Number of suggestions', default: 5 } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_trajectory_begin', |
| description: 'Begin tracking a new execution trajectory', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| context: { type: 'string', description: 'Task or operation context' }, |
| agent: { type: 'string', description: 'Agent performing the task' } |
| }, |
| required: ['context'] |
| } |
| }, |
| { |
| name: 'hooks_trajectory_step', |
| description: 'Add a step to the current trajectory', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| action: { type: 'string', description: 'Action taken' }, |
| result: { type: 'string', description: 'Result of action' }, |
| reward: { type: 'number', description: 'Reward signal (0-1)', default: 0.5 } |
| }, |
| required: ['action'] |
| } |
| }, |
| { |
| name: 'hooks_trajectory_end', |
| description: 'End the current trajectory with a quality score', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| success: { type: 'boolean', description: 'Whether the task succeeded' }, |
| quality: { type: 'number', description: 'Quality score (0-1)', default: 0.5 } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_coedit_record', |
| description: 'Record co-edit pattern (files edited together)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| primary_file: { type: 'string', description: 'Primary file being edited' }, |
| related_files: { type: 'array', items: { type: 'string' }, description: 'Related files edited together' } |
| }, |
| required: ['primary_file', 'related_files'] |
| } |
| }, |
| { |
| name: 'hooks_coedit_suggest', |
| description: 'Get suggested related files based on co-edit patterns', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| file: { type: 'string', description: 'Current file' }, |
| top_k: { type: 'number', description: 'Number of suggestions', default: 5 } |
| }, |
| required: ['file'] |
| } |
| }, |
| { |
| name: 'hooks_error_record', |
| description: 'Record an error and its fix for learning', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| error: { type: 'string', description: 'Error message or code' }, |
| fix: { type: 'string', description: 'Fix that resolved the error' }, |
| file: { type: 'string', description: 'File where error occurred' } |
| }, |
| required: ['error', 'fix'] |
| } |
| }, |
| { |
| name: 'hooks_error_suggest', |
| description: 'Get suggested fixes for an error based on learned patterns', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| error: { type: 'string', description: 'Error message or code' } |
| }, |
| required: ['error'] |
| } |
| }, |
| { |
| name: 'hooks_force_learn', |
| description: 'Force an immediate learning cycle', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| |
| |
| |
| { |
| name: 'hooks_ast_analyze', |
| description: 'Parse file AST and extract symbols, imports, complexity metrics', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| file: { type: 'string', description: 'File path to analyze' } |
| }, |
| required: ['file'] |
| } |
| }, |
| { |
| name: 'hooks_ast_complexity', |
| description: 'Get cyclomatic and cognitive complexity metrics for files', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| files: { type: 'array', items: { type: 'string' }, description: 'Files to analyze' }, |
| threshold: { type: 'number', description: 'Warn if complexity exceeds threshold', default: 10 } |
| }, |
| required: ['files'] |
| } |
| }, |
| { |
| name: 'hooks_diff_analyze', |
| description: 'Analyze git diff with semantic embeddings and risk scoring', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| commit: { type: 'string', description: 'Commit hash (defaults to staged changes)' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_diff_classify', |
| description: 'Classify change type (feature, bugfix, refactor, docs, test, config)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| commit: { type: 'string', description: 'Commit hash (defaults to HEAD)' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_diff_similar', |
| description: 'Find similar past commits based on diff embeddings', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| top_k: { type: 'number', description: 'Number of results', default: 5 }, |
| commits: { type: 'number', description: 'Recent commits to search', default: 50 } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_coverage_route', |
| description: 'Get coverage-aware agent routing for a file', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| file: { type: 'string', description: 'File to analyze' } |
| }, |
| required: ['file'] |
| } |
| }, |
| { |
| name: 'hooks_coverage_suggest', |
| description: 'Suggest tests for files based on coverage data', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| files: { type: 'array', items: { type: 'string' }, description: 'Files to analyze' } |
| }, |
| required: ['files'] |
| } |
| }, |
| { |
| name: 'hooks_graph_mincut', |
| description: 'Find optimal code boundaries using MinCut algorithm (Stoer-Wagner)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| files: { type: 'array', items: { type: 'string' }, description: 'Files to analyze' } |
| }, |
| required: ['files'] |
| } |
| }, |
| { |
| name: 'hooks_graph_cluster', |
| description: 'Detect code communities using spectral or Louvain clustering', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| files: { type: 'array', items: { type: 'string' }, description: 'Files to analyze' }, |
| method: { type: 'string', enum: ['spectral', 'louvain'], default: 'louvain' }, |
| clusters: { type: 'number', description: 'Number of clusters (spectral only)', default: 3 } |
| }, |
| required: ['files'] |
| } |
| }, |
| { |
| name: 'hooks_security_scan', |
| description: 'Parallel security vulnerability scan for common issues', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| files: { type: 'array', items: { type: 'string' }, description: 'Files to scan' } |
| }, |
| required: ['files'] |
| } |
| }, |
| { |
| name: 'hooks_rag_context', |
| description: 'Get RAG-enhanced context for a query with optional reranking', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'Query for context' }, |
| top_k: { type: 'number', description: 'Number of results', default: 5 }, |
| rerank: { type: 'boolean', description: 'Rerank results by relevance', default: false } |
| }, |
| required: ['query'] |
| } |
| }, |
| { |
| name: 'hooks_git_churn', |
| description: 'Analyze git churn to find hot spots', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| days: { type: 'number', description: 'Number of days to analyze', default: 30 }, |
| top: { type: 'number', description: 'Top N files', default: 10 } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_route_enhanced', |
| description: 'Enhanced routing using AST complexity, coverage, and diff analysis signals', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| task: { type: 'string', description: 'Task description' }, |
| file: { type: 'string', description: 'File context' } |
| }, |
| required: ['task'] |
| } |
| }, |
| { |
| name: 'hooks_attention_info', |
| description: 'Get available attention mechanisms and their configurations', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_gnn_info', |
| description: 'Get GNN layer capabilities and configuration', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| |
| { |
| name: 'hooks_learning_config', |
| description: 'Configure learning algorithms for different tasks. Supports 9 algorithms: q-learning, sarsa, double-q, actor-critic, ppo, decision-transformer, monte-carlo, td-lambda, dqn', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| task: { |
| type: 'string', |
| description: 'Task type: agent-routing, error-avoidance, confidence-scoring, trajectory-learning, context-ranking, memory-recall', |
| enum: ['agent-routing', 'error-avoidance', 'confidence-scoring', 'trajectory-learning', 'context-ranking', 'memory-recall'] |
| }, |
| algorithm: { |
| type: 'string', |
| description: 'Learning algorithm', |
| enum: ['q-learning', 'sarsa', 'double-q', 'actor-critic', 'ppo', 'decision-transformer', 'monte-carlo', 'td-lambda', 'dqn'] |
| }, |
| learningRate: { type: 'number', description: 'Learning rate (0.0-1.0)' }, |
| discountFactor: { type: 'number', description: 'Discount factor gamma (0.0-1.0)' }, |
| epsilon: { type: 'number', description: 'Exploration rate (0.0-1.0)' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_learning_stats', |
| description: 'Get learning algorithm statistics and performance metrics', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_learning_update', |
| description: 'Record a learning experience for a specific task', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| task: { type: 'string', description: 'Task type' }, |
| state: { type: 'string', description: 'Current state' }, |
| action: { type: 'string', description: 'Action taken' }, |
| reward: { type: 'number', description: 'Reward received (-1 to 1)' }, |
| nextState: { type: 'string', description: 'Next state (optional)' }, |
| done: { type: 'boolean', description: 'Episode is done' } |
| }, |
| required: ['task', 'state', 'action', 'reward'] |
| } |
| }, |
| { |
| name: 'hooks_learn', |
| description: 'Combined learning action: record experience and get best action recommendation', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| state: { type: 'string', description: 'Current state' }, |
| action: { type: 'string', description: 'Action taken (optional)' }, |
| reward: { type: 'number', description: 'Reward (-1 to 1, optional)' }, |
| actions: { type: 'array', items: { type: 'string' }, description: 'Available actions for recommendation' }, |
| task: { type: 'string', description: 'Task type', default: 'agent-routing' } |
| }, |
| required: ['state'] |
| } |
| }, |
| { |
| name: 'hooks_algorithms_list', |
| description: 'List all available learning algorithms with descriptions', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| |
| { |
| name: 'hooks_compress', |
| description: 'Compress pattern storage using TensorCompress. Provides up to 10x memory savings.', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| force: { type: 'boolean', description: 'Force recompression of all patterns' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_compress_stats', |
| description: 'Get TensorCompress statistics: memory savings, compression levels, tensor counts', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_compress_store', |
| description: 'Store an embedding with adaptive compression', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| key: { type: 'string', description: 'Storage key' }, |
| vector: { type: 'array', items: { type: 'number' }, description: 'Vector to store' }, |
| level: { type: 'string', description: 'Compression level', enum: ['none', 'half', 'pq8', 'pq4', 'binary'] } |
| }, |
| required: ['key', 'vector'] |
| } |
| }, |
| { |
| name: 'hooks_compress_get', |
| description: 'Retrieve a compressed embedding', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| key: { type: 'string', description: 'Storage key' } |
| }, |
| required: ['key'] |
| } |
| }, |
| { |
| name: 'hooks_batch_learn', |
| description: 'Record multiple learning experiences in batch for efficiency. Processes an array of experiences at once.', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| experiences: { |
| type: 'array', |
| description: 'Array of experiences to learn from', |
| items: { |
| type: 'object', |
| properties: { |
| state: { type: 'string', description: 'State identifier' }, |
| action: { type: 'string', description: 'Action taken' }, |
| reward: { type: 'number', description: 'Reward (-1 to 1)' }, |
| nextState: { type: 'string', description: 'Next state (optional)' }, |
| done: { type: 'boolean', description: 'Episode ended' } |
| }, |
| required: ['state', 'action', 'reward'] |
| } |
| }, |
| task: { type: 'string', description: 'Task type for all experiences', default: 'agent-routing' } |
| }, |
| required: ['experiences'] |
| } |
| }, |
| { |
| name: 'hooks_subscribe_snapshot', |
| description: 'Get current state snapshot for subscription-style updates. Returns counts and deltas since last call.', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| events: { |
| type: 'array', |
| description: 'Event types to check', |
| items: { type: 'string', enum: ['learn', 'compress', 'route', 'memory'] }, |
| default: ['learn', 'route'] |
| }, |
| lastState: { |
| type: 'object', |
| description: 'Previous state for delta calculation', |
| properties: { |
| patterns: { type: 'number' }, |
| memories: { type: 'number' }, |
| trajectories: { type: 'number' }, |
| updates: { type: 'number' } |
| } |
| } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'hooks_watch_status', |
| description: 'Get file watching status and recent changes detected', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| |
| |
| |
| { |
| name: 'workers_dispatch', |
| description: 'Dispatch a background worker for analysis (ultralearn, optimize, audit, map, etc.)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| prompt: { type: 'string', description: 'Prompt with trigger keyword (e.g., "ultralearn authentication")' } |
| }, |
| required: ['prompt'] |
| } |
| }, |
| { |
| name: 'workers_status', |
| description: 'Get background worker status dashboard', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| workerId: { type: 'string', description: 'Specific worker ID (optional)' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_results', |
| description: 'Get analysis results from completed workers', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| json: { type: 'boolean', description: 'Return as JSON', default: false } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_triggers', |
| description: 'List available trigger keywords for workers', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_stats', |
| description: 'Get worker statistics (24h)', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| |
| { |
| name: 'workers_presets', |
| description: 'List available worker presets (quick-scan, deep-analysis, security-scan, learning, api-docs, test-analysis)', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_phases', |
| description: 'List available phase executors (24 phases including file-discovery, security-analysis, pattern-extraction)', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_create', |
| description: 'Create a custom worker from preset with composable phases', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| name: { type: 'string', description: 'Worker name' }, |
| preset: { type: 'string', description: 'Base preset (quick-scan, deep-analysis, security-scan, learning, api-docs, test-analysis)' }, |
| triggers: { type: 'string', description: 'Comma-separated trigger keywords' } |
| }, |
| required: ['name'] |
| } |
| }, |
| { |
| name: 'workers_run', |
| description: 'Run a custom worker on target path', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| name: { type: 'string', description: 'Worker name' }, |
| path: { type: 'string', description: 'Target path to analyze (default: .)' } |
| }, |
| required: ['name'] |
| } |
| }, |
| { |
| name: 'workers_custom', |
| description: 'List registered custom workers', |
| inputSchema: { |
| type: 'object', |
| properties: {}, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_init_config', |
| description: 'Generate example workers.yaml config file', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| force: { type: 'boolean', description: 'Overwrite existing config' } |
| }, |
| required: [] |
| } |
| }, |
| { |
| name: 'workers_load_config', |
| description: 'Load custom workers from workers.yaml config file', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| file: { type: 'string', description: 'Config file path (default: workers.yaml)' } |
| }, |
| required: [] |
| } |
| }, |
| |
| { |
| name: 'rvf_create', |
| description: 'Create a new RVF vector store (.rvf file) with specified dimensions and distance metric', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'File path for the new .rvf store' }, |
| dimension: { type: 'number', description: 'Vector dimensionality (e.g. 128, 384, 768, 1536)' }, |
| metric: { type: 'string', description: 'Distance metric: cosine, l2, or dotproduct', default: 'cosine' } |
| }, |
| required: ['path', 'dimension'] |
| } |
| }, |
| { |
| name: 'rvf_open', |
| description: 'Open an existing RVF store for read-write operations', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to existing .rvf file' } |
| }, |
| required: ['path'] |
| } |
| }, |
| { |
| name: 'rvf_ingest', |
| description: 'Insert vectors into an RVF store', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' }, |
| entries: { type: 'array', description: 'Array of {id, vector, metadata?} objects', items: { type: 'object' } } |
| }, |
| required: ['path', 'entries'] |
| } |
| }, |
| { |
| name: 'rvf_query', |
| description: 'Query nearest neighbors in an RVF store', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' }, |
| vector: { type: 'array', description: 'Query vector as array of numbers', items: { type: 'number' } }, |
| k: { type: 'number', description: 'Number of results to return', default: 10 } |
| }, |
| required: ['path', 'vector'] |
| } |
| }, |
| { |
| name: 'rvf_delete', |
| description: 'Delete vectors by ID from an RVF store', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' }, |
| ids: { type: 'array', description: 'Vector IDs to delete', items: { type: 'number' } } |
| }, |
| required: ['path', 'ids'] |
| } |
| }, |
| { |
| name: 'rvf_status', |
| description: 'Get status of an RVF store (vector count, dimension, metric, file size)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' } |
| }, |
| required: ['path'] |
| } |
| }, |
| { |
| name: 'rvf_compact', |
| description: 'Compact an RVF store to reclaim space from deleted vectors', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' } |
| }, |
| required: ['path'] |
| } |
| }, |
| { |
| name: 'rvf_derive', |
| description: 'Derive a child RVF store from a parent using copy-on-write branching', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| parent_path: { type: 'string', description: 'Path to parent .rvf store' }, |
| child_path: { type: 'string', description: 'Path for the new child .rvf store' } |
| }, |
| required: ['parent_path', 'child_path'] |
| } |
| }, |
| { |
| name: 'rvf_segments', |
| description: 'List all segments in an RVF file (VEC, INDEX, KERNEL, EBPF, WITNESS, etc.)', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| path: { type: 'string', description: 'Path to .rvf store' } |
| }, |
| required: ['path'] |
| } |
| }, |
| { |
| name: 'rvf_examples', |
| description: 'List available example .rvf files with download URLs from the ruvector repository', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| filter: { type: 'string', description: 'Filter examples by name or description substring' } |
| }, |
| required: [] |
| } |
| }, |
| |
| { |
| name: 'rvlite_sql', |
| description: 'Execute SQL query over rvlite vector database with optional RVF backend', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'SQL query string (supports distance() and vec_search() functions)' }, |
| db_path: { type: 'string', description: 'Path to database file (optional)' } |
| }, |
| required: ['query'] |
| } |
| }, |
| { |
| name: 'rvlite_cypher', |
| description: 'Execute Cypher graph query over rvlite property graph', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'Cypher query string' }, |
| db_path: { type: 'string', description: 'Path to database file (optional)' } |
| }, |
| required: ['query'] |
| } |
| }, |
| { |
| name: 'rvlite_sparql', |
| description: 'Execute SPARQL query over rvlite RDF triple store', |
| inputSchema: { |
| type: 'object', |
| properties: { |
| query: { type: 'string', description: 'SPARQL query string' }, |
| db_path: { type: 'string', description: 'Path to database file (optional)' } |
| }, |
| required: ['query'] |
| } |
| } |
| ]; |
|
|
| |
| server.setRequestHandler(ListToolsRequestSchema, async () => { |
| return { tools: TOOLS }; |
| }); |
|
|
| |
| server.setRequestHandler(CallToolRequestSchema, async (request) => { |
| const { name, arguments: args } = request.params; |
|
|
| try { |
| switch (name) { |
| case 'hooks_stats': { |
| const stats = intel.stats(); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| stats, |
| intel_path: intel.intelPath |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_route': { |
| const result = await intel.route(args.task, args.file); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| task: args.task, |
| file: args.file, |
| ...result |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_remember': { |
| const result = await intel.remember(args.content, args.type || 'general'); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| ...result |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_recall': { |
| const results = await intel.recall(args.query, args.top_k || 5); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| query: args.query, |
| results: results.map(r => ({ |
| content: r.content, |
| type: r.type, |
| score: typeof r.score === 'number' ? r.score.toFixed(3) : r.score, |
| created: r.created, |
| engineResult: r.engineResult || false |
| })) |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_init': { |
| let cmd = 'npx ruvector hooks init'; |
| if (args.force) cmd += ' --force'; |
| if (args.pretrain) cmd += ' --pretrain'; |
| if (args.build_agents) cmd += ` --build-agents ${sanitizeShellArg(args.build_agents)}`; |
|
|
| try { |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 60000 }); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, output }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_pretrain': { |
| let cmd = 'npx ruvector hooks pretrain'; |
| if (args.depth) cmd += ` --depth ${sanitizeNumericArg(args.depth, 3)}`; |
| if (args.skip_git) cmd += ' --skip-git'; |
| if (args.verbose) cmd += ' --verbose'; |
|
|
| try { |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 120000 }); |
| |
| intel.data = intel.load(); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| output, |
| new_stats: intel.stats() |
| }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_build_agents': { |
| let cmd = 'npx ruvector hooks build-agents'; |
| if (args.focus) cmd += ` --focus ${sanitizeShellArg(args.focus)}`; |
| if (args.include_prompts) cmd += ' --include-prompts'; |
|
|
| try { |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 30000 }); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, output }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_verify': { |
| try { |
| const output = execSync('npx ruvector hooks verify', { encoding: 'utf-8', timeout: 15000 }); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, output }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message, output: e.stdout }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_doctor': { |
| let cmd = 'npx ruvector hooks doctor'; |
| if (args.fix) cmd += ' --fix'; |
|
|
| try { |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 15000 }); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, output }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_export': { |
| const exportData = { |
| version: '2.0', |
| exported_at: new Date().toISOString(), |
| patterns: intel.data.patterns || {}, |
| memories: args.include_all ? (intel.data.memories || []) : [], |
| trajectories: args.include_all ? (intel.data.trajectories || []) : [], |
| errors: intel.data.errors || {}, |
| stats: intel.stats(), |
| capabilities: intel.getCapabilities() |
| }; |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, data: exportData }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_capabilities': { |
| const capabilities = intel.getCapabilities(); |
| const stats = intel.stats(); |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| capabilities, |
| features: { |
| vectorDb: capabilities.vectorDb ? 'HNSW indexing (150x faster search)' : 'Brute-force fallback', |
| sona: capabilities.sona ? 'Micro-LoRA + Base-LoRA + EWC++' : 'Q-learning fallback', |
| attention: capabilities.attention ? 'Self-attention embeddings' : 'Hash embeddings', |
| embeddingDim: capabilities.embeddingDim, |
| }, |
| stats: { |
| totalMemories: stats.totalMemories || stats.total_memories, |
| trajectoriesRecorded: stats.trajectoriesRecorded || 0, |
| patternsLearned: stats.patternsLearned || stats.total_patterns, |
| microLoraUpdates: stats.microLoraUpdates || 0, |
| ewcConsolidations: stats.ewcConsolidations || 0, |
| } |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_import': { |
| try { |
| const data = args.data; |
| const merge = args.merge !== false; |
|
|
| |
| if (typeof data !== 'object' || data === null || Array.isArray(data)) { |
| throw new Error('Import data must be a non-null object'); |
| } |
| const allowedKeys = ['patterns', 'memories', 'errors', 'agents', 'edges', 'trajectories']; |
| for (const key of Object.keys(data)) { |
| if (!allowedKeys.includes(key)) { |
| throw new Error(`Unknown import key: '${key}'. Allowed: ${allowedKeys.join(', ')}`); |
| } |
| } |
| |
| const dangerousKeys = ['__proto__', 'constructor', 'prototype']; |
| function checkForProtoPollution(obj, path) { |
| if (typeof obj !== 'object' || obj === null) return; |
| for (const key of Object.keys(obj)) { |
| if (dangerousKeys.includes(key)) { |
| throw new Error(`Dangerous key '${key}' detected at ${path}.${key}`); |
| } |
| } |
| } |
| if (data.patterns) checkForProtoPollution(data.patterns, 'patterns'); |
| if (data.errors) checkForProtoPollution(data.errors, 'errors'); |
|
|
| if (data.patterns && typeof data.patterns === 'object') { |
| if (merge) { |
| Object.assign(intel.data.patterns, data.patterns); |
| } else { |
| intel.data.patterns = data.patterns; |
| } |
| } |
| if (data.memories && Array.isArray(data.memories)) { |
| if (merge) { |
| intel.data.memories = [...(intel.data.memories || []), ...data.memories]; |
| } else { |
| intel.data.memories = data.memories; |
| } |
| } |
| if (data.errors && typeof data.errors === 'object') { |
| if (merge) { |
| Object.assign(intel.data.errors, data.errors); |
| } else { |
| intel.data.errors = data.errors; |
| } |
| } |
| intel.save(); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| message: `Imported ${Object.keys(data.patterns || {}).length} patterns, ${(data.memories || []).length} memories`, |
| merge |
| }, null, 2) |
| }] |
| }; |
| } catch (e) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: e.message }, null, 2) |
| }] |
| }; |
| } |
| } |
|
|
| case 'hooks_swarm_recommend': { |
| const taskType = args.task_type || ''; |
| const file = args.file || ''; |
|
|
| |
| const taskAgentMap = { |
| research: ['researcher', 'analyst', 'explorer'], |
| code: ['coder', 'backend-dev', 'sparc-coder'], |
| test: ['tester', 'tdd-london-swarm', 'production-validator'], |
| review: ['reviewer', 'code-analyzer', 'analyst'], |
| debug: ['coder', 'tester', 'analyst'], |
| refactor: ['code-analyzer', 'reviewer', 'architect'], |
| document: ['documenter', 'api-docs', 'researcher'], |
| security: ['security-manager', 'reviewer', 'code-analyzer'], |
| performance: ['perf-analyzer', 'performance-benchmarker', 'optimizer'], |
| architecture: ['system-architect', 'architect', 'planner'] |
| }; |
|
|
| |
| let learnedAgent = null; |
| if (file) { |
| const route = await intel.route({ task: taskType, file }); |
| learnedAgent = route?.agent; |
| } |
|
|
| const recommendations = taskAgentMap[taskType.toLowerCase()] || ['coder', 'researcher', 'analyst']; |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| task_type: taskType, |
| recommendations, |
| learned_agent: learnedAgent, |
| suggested: learnedAgent || recommendations[0] |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_suggest_context': { |
| const query = args.query || ''; |
| const topK = args.top_k || 5; |
|
|
| |
| const memories = await intel.recall(query, topK); |
|
|
| |
| const recentPatterns = Object.entries(intel.data.patterns || {}) |
| .slice(0, topK) |
| .map(([state, actions]) => ({ state, topAction: Object.keys(actions)[0] })); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| query, |
| memories: memories.map(m => ({ content: m.content, type: m.type, score: m.score })), |
| patterns: recentPatterns |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_trajectory_begin': { |
| const context = args.context; |
| const agent = args.agent || 'unknown'; |
|
|
| |
| if (!intel.data.activeTrajectories) intel.data.activeTrajectories = {}; |
| const trajId = `traj_${Date.now()}_${Math.random().toString(36).substr(2, 9)}`; |
| intel.data.activeTrajectories[trajId] = { |
| id: trajId, |
| context, |
| agent, |
| steps: [], |
| startTime: Date.now() |
| }; |
|
|
| |
| if (intel.engine) { |
| try { |
| intel.engine.beginTrajectory(context); |
| } catch (e) { } |
| } |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, trajectory_id: trajId, context, agent }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_trajectory_step': { |
| const action = args.action; |
| const result = args.result || ''; |
| const reward = args.reward || 0.5; |
|
|
| |
| const trajectories = intel.data.activeTrajectories || {}; |
| const trajIds = Object.keys(trajectories); |
| if (trajIds.length === 0) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: 'No active trajectory. Call hooks_trajectory_begin first.' }, null, 2) |
| }] |
| }; |
| } |
|
|
| const latestTrajId = trajIds[trajIds.length - 1]; |
| trajectories[latestTrajId].steps.push({ action, result, reward, time: Date.now() }); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, trajectory_id: latestTrajId, step: trajectories[latestTrajId].steps.length }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_trajectory_end': { |
| const success = args.success !== false; |
| const quality = args.quality || (success ? 0.8 : 0.2); |
|
|
| const trajectories = intel.data.activeTrajectories || {}; |
| const trajIds = Object.keys(trajectories); |
| if (trajIds.length === 0) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: 'No active trajectory.' }, null, 2) |
| }] |
| }; |
| } |
|
|
| const latestTrajId = trajIds[trajIds.length - 1]; |
| const traj = trajectories[latestTrajId]; |
| traj.endTime = Date.now(); |
| traj.quality = quality; |
| traj.success = success; |
|
|
| |
| if (!intel.data.trajectories) intel.data.trajectories = []; |
| intel.data.trajectories.push(traj); |
| delete trajectories[latestTrajId]; |
|
|
| |
| if (intel.engine && traj.steps.length > 0) { |
| try { |
| intel.engine.endTrajectory(latestTrajId, quality); |
| } catch (e) { } |
| } |
|
|
| intel.save(); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ |
| success: true, |
| trajectory_id: latestTrajId, |
| steps: traj.steps.length, |
| duration_ms: traj.endTime - traj.startTime, |
| quality |
| }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_coedit_record': { |
| const primaryFile = args.primary_file; |
| const relatedFiles = args.related_files || []; |
|
|
| if (!intel.data.coEditPatterns) intel.data.coEditPatterns = {}; |
| if (!intel.data.coEditPatterns[primaryFile]) intel.data.coEditPatterns[primaryFile] = {}; |
|
|
| for (const related of relatedFiles) { |
| intel.data.coEditPatterns[primaryFile][related] = (intel.data.coEditPatterns[primaryFile][related] || 0) + 1; |
| } |
|
|
| |
| if (intel.engine) { |
| try { |
| for (const related of relatedFiles) { |
| intel.engine.recordCoEdit(primaryFile, related); |
| } |
| } catch (e) { } |
| } |
|
|
| intel.save(); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, primary_file: primaryFile, related_count: relatedFiles.length }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_coedit_suggest': { |
| const file = args.file; |
| const topK = args.top_k || 5; |
|
|
| let suggestions = []; |
|
|
| |
| if (intel.engine) { |
| try { |
| suggestions = intel.engine.getLikelyNextFiles(file, topK); |
| } catch (e) { } |
| } |
|
|
| |
| if (suggestions.length === 0 && intel.data.coEditPatterns && intel.data.coEditPatterns[file]) { |
| suggestions = Object.entries(intel.data.coEditPatterns[file]) |
| .sort((a, b) => b[1] - a[1]) |
| .slice(0, topK) |
| .map(([f, count]) => ({ file: f, count, confidence: count / 10 })); |
| } |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, file, suggestions }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_error_record': { |
| const error = args.error; |
| const fix = args.fix; |
| const file = args.file || ''; |
|
|
| if (!intel.data.errors) intel.data.errors = {}; |
| if (!intel.data.errors[error]) intel.data.errors[error] = []; |
| intel.data.errors[error].push({ fix, file, recorded: Date.now() }); |
|
|
| |
| if (intel.engine) { |
| try { |
| intel.engine.recordErrorFix(error, fix); |
| } catch (e) { } |
| } |
|
|
| intel.save(); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, error: error.substring(0, 50), fixes_recorded: intel.data.errors[error].length }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_error_suggest': { |
| const error = args.error; |
|
|
| let suggestions = []; |
|
|
| |
| if (intel.engine) { |
| try { |
| suggestions = intel.engine.getSuggestedFixes(error); |
| } catch (e) { } |
| } |
|
|
| |
| if (suggestions.length === 0 && intel.data.errors) { |
| |
| for (const [errKey, fixes] of Object.entries(intel.data.errors)) { |
| if (error.includes(errKey) || errKey.includes(error)) { |
| suggestions.push(...fixes.map(f => f.fix)); |
| } |
| } |
| } |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, error: error.substring(0, 50), suggestions: [...new Set(suggestions)].slice(0, 5) }, null, 2) |
| }] |
| }; |
| } |
|
|
| case 'hooks_force_learn': { |
| let result = 'Learning triggered'; |
|
|
| if (intel.engine) { |
| try { |
| |
| const learnResult = intel.engine.forceLearn(); |
| result = learnResult || 'Engine learning complete'; |
|
|
| |
| intel.engine.tick(); |
| } catch (e) { |
| result = `Learning: ${e.message}`; |
| } |
| } |
|
|
| |
| intel.save(); |
|
|
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: true, result, stats: intel.stats() }, null, 2) |
| }] |
| }; |
| } |
|
|
| |
| |
| |
|
|
| case 'hooks_ast_analyze': { |
| try { |
| const safeFile = sanitizeShellArg(args.file); |
| const output = execSync(`npx ruvector hooks ast-analyze "${safeFile}" --json`, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_ast_complexity': { |
| try { |
| const filesArg = args.files.map(f => `"${sanitizeShellArg(f)}"`).join(' '); |
| const threshold = parseInt(args.threshold, 10) || 10; |
| const output = execSync(`npx ruvector hooks ast-complexity ${filesArg} --threshold ${threshold}`, { encoding: 'utf-8', timeout: 60000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_diff_analyze': { |
| try { |
| const cmd = args.commit ? `npx ruvector hooks diff-analyze "${sanitizeShellArg(args.commit)}" --json` : 'npx ruvector hooks diff-analyze --json'; |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 60000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_diff_classify': { |
| try { |
| const cmd = args.commit ? `npx ruvector hooks diff-classify "${sanitizeShellArg(args.commit)}"` : 'npx ruvector hooks diff-classify'; |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_diff_similar': { |
| try { |
| const topK = parseInt(args.top_k, 10) || 5; |
| const commits = parseInt(args.commits, 10) || 50; |
| const output = execSync(`npx ruvector hooks diff-similar -k ${topK} --commits ${commits}`, { encoding: 'utf-8', timeout: 120000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_coverage_route': { |
| try { |
| const safeFile = sanitizeShellArg(args.file); |
| const output = execSync(`npx ruvector hooks coverage-route "${safeFile}"`, { encoding: 'utf-8', timeout: 15000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_coverage_suggest': { |
| try { |
| const filesArg = args.files.map(f => `"${sanitizeShellArg(f)}"`).join(' '); |
| const output = execSync(`npx ruvector hooks coverage-suggest ${filesArg}`, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_graph_mincut': { |
| try { |
| const filesArg = args.files.map(f => `"${sanitizeShellArg(f)}"`).join(' '); |
| const output = execSync(`npx ruvector hooks graph-mincut ${filesArg}`, { encoding: 'utf-8', timeout: 60000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_graph_cluster': { |
| try { |
| const filesArg = args.files.map(f => `"${sanitizeShellArg(f)}"`).join(' '); |
| const method = sanitizeShellArg(args.method || 'louvain'); |
| const clusters = parseInt(args.clusters, 10) || 3; |
| const output = execSync(`npx ruvector hooks graph-cluster ${filesArg} --method ${method} --clusters ${clusters}`, { encoding: 'utf-8', timeout: 60000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_security_scan': { |
| try { |
| const filesArg = args.files.map(f => `"${sanitizeShellArg(f)}"`).join(' '); |
| const output = execSync(`npx ruvector hooks security-scan ${filesArg}`, { encoding: 'utf-8', timeout: 120000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_rag_context': { |
| try { |
| const safeQuery = sanitizeShellArg(args.query); |
| const topK = parseInt(args.top_k, 10) || 5; |
| let cmd = `npx ruvector hooks rag-context "${safeQuery}" -k ${topK}`; |
| if (args.rerank) cmd += ' --rerank'; |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_git_churn': { |
| try { |
| const days = parseInt(args.days, 10) || 30; |
| const top = parseInt(args.top, 10) || 10; |
| const output = execSync(`npx ruvector hooks git-churn --days ${days} --top ${top}`, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_route_enhanced': { |
| try { |
| const safeTask = sanitizeShellArg(args.task); |
| let cmd = `npx ruvector hooks route-enhanced "${safeTask}"`; |
| if (args.file) cmd += ` --file "${sanitizeShellArg(args.file)}"`; |
| const output = execSync(cmd, { encoding: 'utf-8', timeout: 30000 }); |
| return { content: [{ type: 'text', text: output }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }] }; |
| } |
| } |
|
|
| case 'hooks_attention_info': { |
| |
| let attentionInfo = { available: false, mechanisms: [] }; |
| try { |
| const attention = require('@ruvector/attention'); |
| attentionInfo = { |
| available: true, |
| version: attention.version || '1.0.0', |
| mechanisms: [ |
| { name: 'DotProductAttention', description: 'Basic scaled dot-product attention' }, |
| { name: 'MultiHeadAttention', description: 'Multi-head self-attention with parallel heads' }, |
| { name: 'FlashAttention', description: 'Memory-efficient attention with tiling' }, |
| { name: 'HyperbolicAttention', description: 'Attention in PoincarΓ© ball hyperbolic space' }, |
| { name: 'LinearAttention', description: 'O(n) linear complexity attention' }, |
| { name: 'MoEAttention', description: 'Mixture-of-Experts sparse attention' }, |
| { name: 'GraphRoPeAttention', description: 'Rotary position embeddings for graphs' }, |
| { name: 'DualSpaceAttention', description: 'Euclidean + Hyperbolic hybrid' }, |
| { name: 'LocalGlobalAttention', description: 'Sliding window + global tokens' } |
| ], |
| hyperbolic: { expMap: true, logMap: true, mobiusAddition: true, poincareDistance: true } |
| }; |
| } catch (e) { |
| attentionInfo = { available: false, error: 'Attention package not installed' }; |
| } |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...attentionInfo }, null, 2) }] }; |
| } |
|
|
| case 'hooks_gnn_info': { |
| |
| let gnnInfo = { available: false, layers: [] }; |
| try { |
| const gnn = require('@ruvector/gnn'); |
| gnnInfo = { |
| available: true, |
| version: gnn.version || '1.0.0', |
| layers: [ |
| { name: 'RuvectorLayer', description: 'Differentiable vector search layer' }, |
| { name: 'TensorCompress', description: 'Tensor compression for embeddings' } |
| ], |
| features: [ |
| 'differentiableSearch - Gradient-based vector search', |
| 'hierarchicalForward - Multi-scale graph processing', |
| 'getCompressionLevel - Adaptive compression' |
| ] |
| }; |
| } catch (e) { |
| gnnInfo = { available: false, error: 'GNN package not installed' }; |
| } |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...gnnInfo }, null, 2) }] }; |
| } |
|
|
| |
| case 'hooks_learning_config': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const engine = new LearningEngine(); |
| if (intel.learning) engine.import(intel.learning); |
|
|
| if (args.task && args.algorithm) { |
| const config = {}; |
| if (args.algorithm) config.algorithm = args.algorithm; |
| if (args.learningRate !== undefined) config.learningRate = args.learningRate; |
| if (args.discountFactor !== undefined) config.discountFactor = args.discountFactor; |
| if (args.epsilon !== undefined) config.epsilon = args.epsilon; |
| engine.configure(args.task, config); |
| intel.learning = engine.export(); |
| intel.save(); |
| } |
|
|
| const tasks = ['agent-routing', 'error-avoidance', 'confidence-scoring', 'trajectory-learning', 'context-ranking', 'memory-recall']; |
| const configs = {}; |
| for (const task of tasks) { |
| configs[task] = engine.getConfig(task); |
| } |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, configs }, null, 2) }] }; |
| } |
|
|
| case 'hooks_learning_stats': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const engine = new LearningEngine(); |
| if (intel.learning) engine.import(intel.learning); |
|
|
| const summary = engine.getStatsSummary(); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...summary }, null, 2) }] }; |
| } |
|
|
| case 'hooks_learning_update': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const engine = new LearningEngine(); |
| if (intel.learning) engine.import(intel.learning); |
|
|
| const experience = { |
| state: args.state, |
| action: args.action, |
| reward: args.reward, |
| nextState: args.nextState || args.state, |
| done: args.done || false, |
| timestamp: Date.now() |
| }; |
|
|
| const delta = engine.update(args.task, experience); |
| intel.learning = engine.export(); |
| intel.save(); |
|
|
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| task: args.task, |
| experience, |
| delta, |
| algorithm: engine.getConfig(args.task).algorithm |
| }, null, 2) }] }; |
| } |
|
|
| case 'hooks_learn': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const engine = new LearningEngine(); |
| if (intel.learning) engine.import(intel.learning); |
|
|
| const task = args.task || 'agent-routing'; |
| let result = { success: true }; |
|
|
| if (args.action && args.reward !== undefined) { |
| const experience = { |
| state: args.state, |
| action: args.action, |
| reward: args.reward, |
| nextState: args.state, |
| done: true, |
| timestamp: Date.now() |
| }; |
| const delta = engine.update(task, experience); |
| result.recorded = { experience, delta, algorithm: engine.getConfig(task).algorithm }; |
| } |
|
|
| if (args.actions && args.actions.length > 0) { |
| const best = engine.getBestAction(task, args.state, args.actions); |
| result.recommendation = best; |
| } |
|
|
| intel.learning = engine.export(); |
| intel.save(); |
|
|
| return { content: [{ type: 'text', text: JSON.stringify(result, null, 2) }] }; |
| } |
|
|
| case 'hooks_algorithms_list': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const algorithms = LearningEngine.getAlgorithms(); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| algorithms: algorithms.map(a => ({ |
| name: a.algorithm, |
| description: a.description, |
| bestFor: a.bestFor |
| })) |
| }, null, 2) }] }; |
| } |
|
|
| |
| case 'hooks_compress': { |
| let TensorCompress; |
| try { |
| TensorCompress = require('../dist/core/tensor-compress').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'TensorCompress not available' }) }] }; |
| } |
|
|
| const compress = new TensorCompress({ autoCompress: false }); |
| if (intel.compressedPatterns) compress.import(intel.compressedPatterns); |
|
|
| const stats = compress.recompressAll(); |
| intel.compressedPatterns = compress.export(); |
| intel.save(); |
|
|
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, message: 'Compression complete', ...stats }, null, 2) }] }; |
| } |
|
|
| case 'hooks_compress_stats': { |
| let TensorCompress; |
| try { |
| TensorCompress = require('../dist/core/tensor-compress').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'TensorCompress not available' }) }] }; |
| } |
|
|
| const compress = new TensorCompress({ autoCompress: false }); |
| if (intel.compressedPatterns) compress.import(intel.compressedPatterns); |
|
|
| const stats = compress.getStats(); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...stats }, null, 2) }] }; |
| } |
|
|
| case 'hooks_compress_store': { |
| let TensorCompress; |
| try { |
| TensorCompress = require('../dist/core/tensor-compress').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'TensorCompress not available' }) }] }; |
| } |
|
|
| const compress = new TensorCompress({ autoCompress: false }); |
| if (intel.compressedPatterns) compress.import(intel.compressedPatterns); |
|
|
| compress.store(args.key, args.vector, args.level); |
| intel.compressedPatterns = compress.export(); |
| intel.save(); |
|
|
| const stats = compress.getStats(); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| key: args.key, |
| level: args.level || 'auto', |
| originalDim: args.vector.length, |
| totalTensors: stats.totalTensors |
| }, null, 2) }] }; |
| } |
|
|
| case 'hooks_compress_get': { |
| let TensorCompress; |
| try { |
| TensorCompress = require('../dist/core/tensor-compress').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'TensorCompress not available' }) }] }; |
| } |
|
|
| const compress = new TensorCompress({ autoCompress: false }); |
| if (intel.compressedPatterns) compress.import(intel.compressedPatterns); |
|
|
| const vector = compress.get(args.key); |
| if (!vector) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'Key not found' }) }] }; |
| } |
|
|
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| key: args.key, |
| vector: Array.from(vector), |
| dimension: vector.length |
| }, null, 2) }] }; |
| } |
|
|
| case 'hooks_batch_learn': { |
| let LearningEngine; |
| try { |
| LearningEngine = require('../dist/core/learning-engine').default; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'LearningEngine not available' }) }] }; |
| } |
|
|
| const experiences = args.experiences || []; |
| if (!Array.isArray(experiences) || experiences.length === 0) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: 'experiences must be a non-empty array' }) }] }; |
| } |
|
|
| const task = args.task || 'agent-routing'; |
| const engine = new LearningEngine(); |
|
|
| |
| if (intel.data.learning) { |
| engine.import(intel.data.learning); |
| } |
|
|
| const results = []; |
| let totalReward = 0; |
|
|
| for (const exp of experiences) { |
| const experience = { |
| state: exp.state, |
| action: exp.action, |
| reward: exp.reward ?? 0.5, |
| nextState: exp.nextState ?? exp.state, |
| done: exp.done ?? false, |
| timestamp: Date.now() |
| }; |
|
|
| const delta = engine.update(task, experience); |
| totalReward += experience.reward; |
| results.push({ state: exp.state, action: exp.action, reward: experience.reward, delta }); |
| } |
|
|
| |
| intel.data.learning = engine.export(); |
| intel.save(); |
|
|
| const stats = engine.getStatsSummary(); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| processed: experiences.length, |
| avgReward: totalReward / experiences.length, |
| results, |
| stats: { |
| bestAlgorithm: stats.bestAlgorithm, |
| totalUpdates: stats.totalUpdates, |
| avgReward: stats.avgReward |
| } |
| }, null, 2) }] }; |
| } |
|
|
| case 'hooks_subscribe_snapshot': { |
| const events = args.events || ['learn', 'route']; |
| const lastState = args.lastState || { patterns: 0, memories: 0, trajectories: 0, updates: 0 }; |
|
|
| const stats = intel.data.stats || {}; |
| const learning = intel.data.learning?.stats || {}; |
|
|
| |
| let totalUpdates = 0; |
| let bestAlgorithm = null; |
| let bestAvgReward = -Infinity; |
|
|
| Object.entries(learning).forEach(([algo, data]) => { |
| if (data.updates) { |
| totalUpdates += data.updates; |
| if (data.avgReward > bestAvgReward) { |
| bestAvgReward = data.avgReward; |
| bestAlgorithm = algo; |
| } |
| } |
| }); |
|
|
| const currentState = { |
| patterns: stats.total_patterns || 0, |
| memories: stats.total_memories || 0, |
| trajectories: stats.total_trajectories || 0, |
| updates: totalUpdates |
| }; |
|
|
| |
| const deltas = { |
| patterns: currentState.patterns - (lastState.patterns || 0), |
| memories: currentState.memories - (lastState.memories || 0), |
| trajectories: currentState.trajectories - (lastState.trajectories || 0), |
| updates: currentState.updates - (lastState.updates || 0) |
| }; |
|
|
| const hasChanges = Object.values(deltas).some(d => d > 0); |
|
|
| |
| const eventsList = []; |
| if (events.includes('learn') && deltas.patterns > 0) { |
| eventsList.push({ type: 'learn', subtype: 'pattern', delta: deltas.patterns, total: currentState.patterns }); |
| } |
| if (events.includes('learn') && deltas.updates > 0) { |
| eventsList.push({ type: 'learn', subtype: 'algorithm', delta: deltas.updates, total: currentState.updates, bestAlgorithm }); |
| } |
| if (events.includes('memory') && deltas.memories > 0) { |
| eventsList.push({ type: 'memory', delta: deltas.memories, total: currentState.memories }); |
| } |
| if (events.includes('route') && deltas.trajectories > 0) { |
| eventsList.push({ type: 'route', delta: deltas.trajectories, total: currentState.trajectories }); |
| } |
|
|
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| hasChanges, |
| currentState, |
| deltas, |
| events: eventsList, |
| bestAlgorithm, |
| timestamp: Date.now() |
| }, null, 2) }] }; |
| } |
|
|
| case 'hooks_watch_status': { |
| |
| const stats = intel.data.stats || {}; |
| const patterns = Object.keys(intel.data.patterns || {}); |
| const recentPatterns = patterns.slice(-5); |
|
|
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| watching: true, |
| stats: { |
| totalPatterns: stats.total_patterns || 0, |
| totalMemories: stats.total_memories || 0, |
| totalTrajectories: stats.total_trajectories || 0, |
| sessionCount: stats.session_count || 0 |
| }, |
| recentPatterns, |
| lastUpdate: stats.last_session || Date.now(), |
| tip: 'Use hooks_subscribe_snapshot with lastState for delta tracking' |
| }, null, 2) }] }; |
| } |
|
|
| |
| |
| |
| case 'workers_dispatch': { |
| const prompt = sanitizeShellArg(args.prompt); |
| try { |
| const result = execSync(`npx agentic-flow@alpha workers dispatch "${prompt.replace(/"/g, '\\"')}"`, { |
| encoding: 'utf-8', |
| timeout: 30000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| message: 'Worker dispatched', |
| output: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| message: 'Worker dispatch attempted', |
| note: 'Check workers status for progress' |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_status': { |
| try { |
| const cmdArgs = args.workerId ? `workers status ${sanitizeShellArg(args.workerId)}` : 'workers status'; |
| const result = execSync(`npx agentic-flow@alpha ${cmdArgs}`, { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| status: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'Could not get worker status', |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_results': { |
| try { |
| const cmdArgs = args.json ? 'workers results --json' : 'workers results'; |
| const result = execSync(`npx agentic-flow@alpha ${cmdArgs}`, { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| if (args.json) { |
| try { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| results: JSON.parse(result.trim()) |
| }, null, 2) }] }; |
| } catch { |
| return { content: [{ type: 'text', text: result.trim() }] }; |
| } |
| } |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| results: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'Could not get worker results', |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_triggers': { |
| try { |
| const result = execSync('npx agentic-flow@alpha workers triggers', { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| triggers: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| // Return hardcoded list as fallback |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| triggers: ['ultralearn', 'optimize', 'consolidate', 'predict', 'audit', 'map', 'preload', 'deepdive', 'document', 'refactor', 'benchmark', 'testgaps'] |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_stats': { |
| try { |
| const result = execSync('npx agentic-flow@alpha workers stats', { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| stats: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'Could not get worker stats', |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| // Custom Worker System handlers (agentic-flow@alpha.39+) |
| case 'workers_presets': { |
| try { |
| const result = execSync('npx agentic-flow@alpha workers presets', { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| presets: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| presets: ['quick-scan', 'deep-analysis', 'security-scan', 'learning', 'api-docs', 'test-analysis'], |
| note: 'Hardcoded fallback - install agentic-flow@alpha for full support' |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_phases': { |
| try { |
| const result = execSync('npx agentic-flow@alpha workers phases', { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| phases: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| phases: ['file-discovery', 'static-analysis', 'security-analysis', 'pattern-extraction', 'dependency-analysis', 'complexity-analysis', 'test-coverage', 'api-extraction', 'secret-detection', 'report-generation'], |
| note: 'Partial list - install agentic-flow@alpha for all 24 phases' |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_create': { |
| const name = args.name; |
| const preset = args.preset || 'quick-scan'; |
| const triggers = args.triggers; |
| try { |
| let cmd = `npx agentic-flow@alpha workers create "${name}" --preset ${preset}`; |
| if (triggers) cmd += ` --triggers "${triggers}"`; |
| const result = execSync(cmd, { |
| encoding: 'utf-8', |
| timeout: 30000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| message: `Worker '${name}' created with preset '${preset}'`, |
| output: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'Worker creation failed', |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_run': { |
| const name = sanitizeShellArg(args.name); |
| const targetPath = sanitizeShellArg(args.path || '.'); |
| try { |
| const result = execSync(`npx agentic-flow@alpha workers run "${name}" --path "${targetPath}"`, { |
| encoding: 'utf-8', |
| timeout: 120000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| worker: name, |
| path: targetPath, |
| output: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: `Worker '${name}' execution failed`, |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_custom': { |
| try { |
| const result = execSync('npx agentic-flow@alpha workers custom', { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| workers: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| workers: [], |
| note: 'No custom workers registered' |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_init_config': { |
| try { |
| let cmd = 'npx agentic-flow@alpha workers init-config'; |
| if (args.force) cmd += ' --force'; |
| const result = execSync(cmd, { |
| encoding: 'utf-8', |
| timeout: 15000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| message: 'workers.yaml config file created', |
| output: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'Config init failed', |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| case 'workers_load_config': { |
| const configFile = sanitizeShellArg(args.file || 'workers.yaml'); |
| try { |
| const result = execSync(`npx agentic-flow@alpha workers load-config --file "${configFile}"`, { |
| encoding: 'utf-8', |
| timeout: 30000, |
| stdio: ['pipe', 'pipe', 'pipe'] |
| }); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| file: configFile, |
| output: result.trim() |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: `Config load failed from '${configFile}'`, |
| message: e.message |
| }, null, 2) }] }; |
| } |
| } |
| |
| // ββ RVF Tool Handlers βββββββββββββββββββββββββββββββββββββββββββββββββ |
| case 'rvf_create': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { createRvfStore } = require('../dist/core/rvf-wrapper.js'); |
| const store = await createRvfStore(safePath, { dimension: args.dimension, metric: args.metric || 'cosine' }); |
| const status = store.status ? await store.status() : { dimension: args.dimension }; |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, path: safePath, ...status }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message, hint: 'Install @ruvector/rvf: npm install @ruvector/rvf' }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_open': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfStatus } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const status = await rvfStatus(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, path: safePath, ...status }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_ingest': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfIngest, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const result = await rvfIngest(store, args.entries); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...result }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_query': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfQuery, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const results = await rvfQuery(store, args.vector, args.k || 10); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, results }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_delete': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfDelete, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const result = await rvfDelete(store, args.ids); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...result }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_status': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfStatus, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const status = await rvfStatus(store); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...status }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_compact': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfCompact, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const result = await rvfCompact(store); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, ...result }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_derive': { |
| try { |
| const safeParent = validateRvfPath(args.parent_path); |
| const safeChild = validateRvfPath(args.child_path); |
| const { openRvfStore, rvfDerive, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safeParent); |
| await rvfDerive(store, safeChild); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, parent: safeParent, child: safeChild }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_segments': { |
| try { |
| const safePath = validateRvfPath(args.path); |
| const { openRvfStore, rvfClose } = require('../dist/core/rvf-wrapper.js'); |
| const store = await openRvfStore(safePath); |
| const segs = await store.segments(); |
| await rvfClose(store); |
| return { content: [{ type: 'text', text: JSON.stringify({ success: true, segments: segs }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ success: false, error: e.message }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvf_examples': { |
| const BASE_URL = 'https://raw.githubusercontent.com/ruvnet/ruvector/main/examples/rvf/output'; |
| const examples = [ |
| { name: 'basic_store', size: '152 KB', desc: '1,000 vectors, dim 128' }, |
| { name: 'semantic_search', size: '755 KB', desc: 'Semantic search with HNSW' }, |
| { name: 'rag_pipeline', size: '303 KB', desc: 'RAG pipeline embeddings' }, |
| { name: 'agent_memory', size: '32 KB', desc: 'AI agent episodic memory' }, |
| { name: 'swarm_knowledge', size: '86 KB', desc: 'Multi-agent knowledge base' }, |
| { name: 'self_booting', size: '31 KB', desc: 'Self-booting with kernel' }, |
| { name: 'ebpf_accelerator', size: '153 KB', desc: 'eBPF distance accelerator' }, |
| { name: 'tee_attestation', size: '102 KB', desc: 'TEE attestation + witnesses' }, |
| { name: 'lineage_parent', size: '52 KB', desc: 'COW parent file' }, |
| { name: 'lineage_child', size: '26 KB', desc: 'COW child (derived)' }, |
| { name: 'claude_code_appliance', size: '17 KB', desc: 'Claude Code appliance' }, |
| { name: 'progressive_index', size: '2.5 MB', desc: 'Large-scale HNSW index' }, |
| ]; |
| let filtered = examples; |
| if (args.filter) { |
| const f = args.filter.toLowerCase(); |
| filtered = examples.filter(e => e.name.includes(f) || e.desc.toLowerCase().includes(f)); |
| } |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| total: 45, |
| shown: filtered.length, |
| examples: filtered.map(e => ({ ...e, url: `${BASE_URL}/${e.name}.rvf` })), |
| catalog: 'https://github.com/ruvnet/ruvector/tree/main/examples/rvf/output' |
| }, null, 2) }] }; |
| } |
| |
| // ββ rvlite Query Tool Handlers ββββββββββββββββββββββββββββββββββββββ |
| case 'rvlite_sql': { |
| try { |
| let rvlite; |
| try { |
| rvlite = require('rvlite'); |
| } catch (_e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'rvlite package not installed', |
| hint: 'Install with: npm install rvlite' |
| }, null, 2) }] }; |
| } |
| const safeQuery = sanitizeShellArg(args.query); |
| const dbOpts = args.db_path ? { path: validateRvfPath(args.db_path) } : {}; |
| const db = new rvlite.Database(dbOpts); |
| const results = db.sql(safeQuery); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| query_type: 'sql', |
| results, |
| row_count: Array.isArray(results) ? results.length : 0 |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: e.message |
| }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvlite_cypher': { |
| try { |
| let rvlite; |
| try { |
| rvlite = require('rvlite'); |
| } catch (_e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'rvlite package not installed', |
| hint: 'Install with: npm install rvlite' |
| }, null, 2) }] }; |
| } |
| const safeQuery = sanitizeShellArg(args.query); |
| const dbOpts = args.db_path ? { path: validateRvfPath(args.db_path) } : {}; |
| const db = new rvlite.Database(dbOpts); |
| const results = db.cypher(safeQuery); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| query_type: 'cypher', |
| results, |
| row_count: Array.isArray(results) ? results.length : 0 |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: e.message |
| }, null, 2) }], isError: true }; |
| } |
| } |
| |
| case 'rvlite_sparql': { |
| try { |
| let rvlite; |
| try { |
| rvlite = require('rvlite'); |
| } catch (_e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: 'rvlite package not installed', |
| hint: 'Install with: npm install rvlite' |
| }, null, 2) }] }; |
| } |
| const safeQuery = sanitizeShellArg(args.query); |
| const dbOpts = args.db_path ? { path: validateRvfPath(args.db_path) } : {}; |
| const db = new rvlite.Database(dbOpts); |
| const results = db.sparql(safeQuery); |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: true, |
| query_type: 'sparql', |
| results, |
| row_count: Array.isArray(results) ? results.length : 0 |
| }, null, 2) }] }; |
| } catch (e) { |
| return { content: [{ type: 'text', text: JSON.stringify({ |
| success: false, |
| error: e.message |
| }, null, 2) }], isError: true }; |
| } |
| } |
| |
| default: |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: `Unknown tool: ${name}` }, null, 2) |
| }], |
| isError: true |
| }; |
| } |
| } catch (error) { |
| return { |
| content: [{ |
| type: 'text', |
| text: JSON.stringify({ success: false, error: error.message }, null, 2) |
| }], |
| isError: true |
| }; |
| } |
| }); |
| |
| // Resources - expose intelligence data |
| server.setRequestHandler(ListResourcesRequestSchema, async () => { |
| return { |
| resources: [ |
| { |
| uri: 'ruvector://intelligence/stats', |
| name: 'Intelligence Stats', |
| description: 'Current RuVector intelligence statistics', |
| mimeType: 'application/json' |
| }, |
| { |
| uri: 'ruvector://intelligence/patterns', |
| name: 'Learned Patterns', |
| description: 'Q-learning patterns for agent routing', |
| mimeType: 'application/json' |
| }, |
| { |
| uri: 'ruvector://intelligence/memories', |
| name: 'Vector Memories', |
| description: 'Stored context memories', |
| mimeType: 'application/json' |
| } |
| ] |
| }; |
| }); |
| |
| server.setRequestHandler(ReadResourceRequestSchema, async (request) => { |
| const { uri } = request.params; |
| |
| switch (uri) { |
| case 'ruvector://intelligence/stats': |
| return { |
| contents: [{ |
| uri, |
| mimeType: 'application/json', |
| text: JSON.stringify(intel.stats(), null, 2) |
| }] |
| }; |
| |
| case 'ruvector://intelligence/patterns': |
| return { |
| contents: [{ |
| uri, |
| mimeType: 'application/json', |
| text: JSON.stringify(intel.data.patterns || {}, null, 2) |
| }] |
| }; |
| |
| case 'ruvector://intelligence/memories': |
| return { |
| contents: [{ |
| uri, |
| mimeType: 'application/json', |
| text: JSON.stringify((intel.data.memories || []).map(m => ({ |
| content: m.content, |
| type: m.type, |
| created: m.created |
| })), null, 2) |
| }] |
| }; |
| |
| default: |
| throw new Error(`Unknown resource: ${uri}`); |
| } |
| }); |
| |
| // Start server |
| async function main() { |
| const transport = new StdioServerTransport(); |
| await server.connect(transport); |
| console.error('RuVector MCP server running on stdio'); |
| } |
| |
| main().catch(console.error); |
| |