Handle Kling AI rate limits with proper backoff strategies. Use when experiencing 429 errors or building high-throughput systems. Trigger with phrases like 'klingai rate limit', 'kling ai 429', 'klingai throttle', 'klingai backoff'.
View on GitHubjeremylongshore/claude-code-plugins-plus-skills
klingai-pack
plugins/saas-packs/klingai-pack/skills/klingai-rate-limits/SKILL.md
February 1, 2026
Select agents to install to:
npx add-skill https://github.com/jeremylongshore/claude-code-plugins-plus-skills/blob/main/plugins/saas-packs/klingai-pack/skills/klingai-rate-limits/SKILL.md -a claude-code --skill klingai-rate-limitsInstallation paths:
.claude/skills/klingai-rate-limits/# Klingai Rate Limits
## Overview
This skill teaches rate limit handling patterns including exponential backoff, token bucket algorithms, request queuing, and concurrent job management for reliable Kling AI integrations.
## Prerequisites
- Kling AI integration
- Understanding of HTTP status codes
- Python 3.8+ or Node.js 18+
## Instructions
Follow these steps to handle rate limits:
1. **Understand Limits**: Know the rate limit structure
2. **Implement Detection**: Detect rate limit responses
3. **Add Backoff**: Implement exponential backoff
4. **Queue Requests**: Add request queuing
5. **Monitor Usage**: Track rate limit consumption
## Output
Successful execution produces:
- Rate limit handling without errors
- Smooth request throughput
- Proper backoff behavior
- Concurrent job management
## Error Handling
See `{baseDir}/references/errors.md` for comprehensive error handling.
## Examples
See `{baseDir}/references/examples.md` for detailed examples.
## Resources
- [Kling AI Rate Limits](https://docs.klingai.com/rate-limits)
- [Exponential Backoff](https://cloud.google.com/iot/docs/how-tos/exponential-backoff)
- [Token Bucket Algorithm](https://en.wikipedia.org/wiki/Token_bucket)