context-optimizer

Advanced context management with auto-compaction and dynamic context optimization for DeepSeek's 64k context window. Features intelligent compaction (merging, summarizing, extracting), query-aware relevance scoring, and hierarchical memory system with context archive. Logs optimization events to chat.

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Install skill "context-optimizer" with this command: npx skills add ad2546/context-optimizer

Context Pruner

Advanced context management optimized for DeepSeek's 64k context window. Provides intelligent pruning, compression, and token optimization to prevent context overflow while preserving important information.

Key Features

  • DeepSeek-optimized: Specifically tuned for 64k context window
  • Adaptive pruning: Multiple strategies based on context usage
  • Semantic deduplication: Removes redundant information
  • Priority-aware: Preserves high-value messages
  • Token-efficient: Minimizes token overhead
  • Real-time monitoring: Continuous context health tracking

Quick Start

Auto-compaction with dynamic context:

import { createContextPruner } from './lib/index.js';

const pruner = createContextPruner({
  contextLimit: 64000, // DeepSeek's limit
  autoCompact: true,    // Enable automatic compaction
  dynamicContext: true, // Enable dynamic relevance-based context
  strategies: ['semantic', 'temporal', 'extractive', 'adaptive'],
  queryAwareCompaction: true, // Compact based on current query relevance
});

await pruner.initialize();

// Process messages with auto-compaction and dynamic context
const processed = await pruner.processMessages(messages, currentQuery);

// Get context health status
const status = pruner.getStatus();
console.log(`Context health: ${status.health}, Relevance scores: ${status.relevanceScores}`);

// Manual compaction when needed
const compacted = await pruner.autoCompact(messages, currentQuery);

Archive Retrieval (Hierarchical Memory):

// When something isn't in current context, search archive
const archiveResult = await pruner.retrieveFromArchive('query about previous conversation', {
  maxContextTokens: 1000,
  minRelevance: 0.4,
});

if (archiveResult.found) {
  // Add relevant snippets to current context
  const archiveContext = archiveResult.snippets.join('\n\n');
  // Use archiveContext in your prompt
  console.log(`Found ${archiveResult.sources.length} relevant sources`);
  console.log(`Retrieved ${archiveResult.totalTokens} tokens from archive`);
}

Auto-Compaction Strategies

  1. Semantic Compaction: Merges similar messages instead of removing them
  2. Temporal Compaction: Summarizes older conversations by time windows
  3. Extractive Compaction: Extracts key information from verbose messages
  4. Adaptive Compaction: Chooses best strategy based on message characteristics
  5. Dynamic Context: Filters messages based on relevance to current query

Dynamic Context Management

  • Query-aware Relevance: Scores messages based on similarity to current query
  • Relevance Decay: Relevance scores decay over time for older conversations
  • Adaptive Filtering: Automatically filters low-relevance messages
  • Priority Integration: Combines message priority with semantic relevance

Hierarchical Memory System

The context archive provides a RAM vs Storage approach:

  • Current Context (RAM): Limited (64k tokens), fast access, auto-compacted
  • Archive (Storage): Larger (100MB), slower but searchable
  • Smart Retrieval: When information isn't in current context, efficiently search archive
  • Selective Loading: Extract only relevant snippets, not entire documents
  • Automatic Storage: Compacted content automatically stored in archive

Configuration

{
  contextLimit: 64000, // DeepSeek's context window
  autoCompact: true, // Enable automatic compaction
  compactThreshold: 0.75, // Start compacting at 75% usage
  aggressiveCompactThreshold: 0.9, // Aggressive compaction at 90%
  
  dynamicContext: true, // Enable dynamic context management
  relevanceDecay: 0.95, // Relevance decays 5% per time step
  minRelevanceScore: 0.3, // Minimum relevance to keep
  queryAwareCompaction: true, // Compact based on current query relevance
  
  strategies: ['semantic', 'temporal', 'extractive', 'adaptive'],
  preserveRecent: 10, // Always keep last N messages
  preserveSystem: true, // Always keep system messages
  minSimilarity: 0.85, // Semantic similarity threshold
  
  // Archive settings
  enableArchive: true, // Enable hierarchical memory system
  archivePath: './context-archive',
  archiveSearchLimit: 10,
  archiveMaxSize: 100 * 1024 * 1024, // 100MB
  archiveIndexing: true,
  
  // Chat logging
  logToChat: true, // Log optimization events to chat
  chatLogLevel: 'brief', // 'brief', 'detailed', or 'none'
  chatLogFormat: '📊 {action}: {details}', // Format for chat messages
  
  // Performance
  batchSize: 5, // Messages to process in batch
  maxCompactionRatio: 0.5, // Maximum 50% compaction in one pass
}

Chat Logging

The context optimizer can log events directly to chat:

// Example chat log messages:
// 📊 Context optimized: Compacted 15 messages → 8 (47% reduction)
// 📊 Archive search: Found 3 relevant snippets (42% similarity)
// 📊 Dynamic context: Filtered 12 low-relevance messages

// Configure logging:
const pruner = createContextPruner({
  logToChat: true,
  chatLogLevel: 'brief', // Options: 'brief', 'detailed', 'none'
  chatLogFormat: '📊 {action}: {details}',
  
  // Custom log handler (optional)
  onLog: (level, message, data) => {
    if (level === 'info' && data.action === 'compaction') {
      // Send to chat
      console.log(`🧠 Context optimized: ${message}`);
    }
  }
});

Integration with Clawdbot

Add to your Clawdbot config:

skills:
  context-pruner:
    enabled: true
    config:
      contextLimit: 64000
      autoPrune: true

The pruner will automatically monitor context usage and apply appropriate pruning strategies to stay within DeepSeek's 64k limit.

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