Agent skill

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.

Stars 9
Forks 0

Install this agent skill to your Project

npx add-skill https://github.com/delorenj/skills/tree/main/context-optimizer

Metadata

Additional technical details for this skill

clawdbot
{
    "emoji": "\ud83e\udde0",
    "install": [
        {
            "id": "npm",
            "kind": "npm",
            "label": "Install Context Pruner dependencies",
            "command": "cd ~/.clawdbot/skills/context-pruner && npm install"
        }
    ],
    "requires": {
        "npm": [
            "tiktoken",
            "@xenova/transformers"
        ],
        "bins": []
    }
}

SKILL.md

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:

javascript
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):

javascript
// 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

javascript
{
  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:

javascript
// 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:

yaml
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.

Expand your agent's capabilities with these related and highly-rated skills.

delorenj/skills

openclaw-upgrade

Upgrade OpenClaw installations to the latest version. Handles global npm installs, local development setups, release channels (stable/beta/dev), configuration preservation, and platform-specific requirements. Use when updating OpenClaw, switching release channels, or troubleshooting update issues.

9 0
Explore
delorenj/skills

vercel-composition-patterns

React composition patterns that scale. Use when refactoring components with boolean prop proliferation, building flexible component libraries, or designing reusable APIs. Triggers on tasks involving compound components, render props, context providers, or component architecture. Includes React 19 API changes.

9 0
Explore
delorenj/skills

security-monitor

Real-time security monitoring for Clawdbot. Detects intrusions, unusual API calls, credential usage patterns, and alerts on breaches.

9 0
Explore
delorenj/skills

event-driven-architecture

Kafka, RabbitMQ, SQS/SNS, event sourcing, CQRS, saga patterns, dead letter queues, and idempotency. Use when designing asynchronous systems, implementing message-driven workflows, or building event streaming pipelines.

9 0
Explore
delorenj/skills

shadcn-ui

Expert guidance for integrating and building applications with shadcn/ui components, including component discovery, installation, customization, and best practices.

9 0
Explore
delorenj/skills

just-fucking-cancel

Find and cancel unwanted subscriptions by analyzing bank transactions. Detects recurring charges, calculates annual waste, and helps you cancel with direct URLs and browser automation. Use when: 'cancel subscriptions', 'audit subscriptions', 'find recurring charges', 'what am I paying for', 'save money', 'subscription cleanup', 'stop wasting money'. Supports CSV import (Apple Card, Chase, Amex, Citi, Bank of America, Capital One, Mint, Copilot) OR Plaid API for automatic transaction pull. Outputs interactive HTML audit with one-click cancel workflow. Pairs with Plaid integration for real-time transaction access without CSV exports.

9 0
Explore

Didn't find tool you were looking for?

Be as detailed as possible for better results