Credit Optimizer For Manus Ai

Created By
rafsilva853 months ago
Save 30-75% on Manus AI credits with ZERO quality loss. Intelligent model routing (Standard vs Max), smart testing, section-by-section processing for long content, context hygiene, and 12 vulnerability patches. Audited across 22 real-world scenarios. Works as a Manus Skill that auto-analyzes every prompt before execution.
Overview

Credit Optimizer for Manus AI

Save 30-75% on Manus AI Credits — Zero Quality Loss

Credit Optimizer v5 is an intelligent Manus Skill that automatically analyzes every prompt before execution and applies the optimal cost-saving strategy.

Key Features

  • Intelligent Model Routing: Automatically routes tasks to Standard or Max mode based on complexity
  • Smart Testing: Tests with small samples before committing to large operations
  • Section-by-Section Processing: Breaks long content into optimized chunks
  • Context Hygiene: Prevents unnecessary context accumulation
  • 12 Vulnerability Patches: Audited across 22 real-world scenarios

How It Works

  1. Install as a Manus Skill
  2. Every prompt is automatically analyzed before execution
  3. The optimizer applies the best strategy for each task type
  4. You save credits while maintaining the same output quality

Pricing

  • Free: Basic optimization strategies (GitHub)
  • Pro ($29): Full v5 with all 12 patches, 22-scenario audit, priority updates

Server Config

{
  "mcpServers": {
    "credit-optimizer": {
      "command": "npx",
      "args": [
        "-y",
        "manus-credit-optimizer"
      ]
    }
  }
}
Project Info
Created At
3 months ago
Updated At
3 months ago
Author Name
rafsilva85
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