klingai-pricing-basics
Understand Kling AI pricing, credits, and cost optimization strategies. Use when budgeting or estimating costs. Trigger with phrases like 'kling ai pricing', 'klingai credits', 'kling ai cost', 'klingai budget'.
What this skill does
# Kling AI Pricing Basics
## Overview
Kling AI uses a credit-based pricing system. Credits are consumed per video/image generation based on duration, mode, and model. API pricing uses resource packs billed separately from subscription plans.
## Subscription Plans (Web UI)
| Plan | Monthly | Credits/Month | Key Features |
|------|---------|---------------|-------------|
| Free | $0 | 66/day (no rollover) | Basic access, watermarked |
| Standard | $6.99 | 660 | No watermark, standard models |
| Pro | $25.99 | 3,000 | Priority queue, all models |
| Premier | $64.99 | 8,000 | Professional mode, priority |
| Ultra | $180 | 26,000 | Max priority, all features |
**Warning:** Paid credits expire at end of billing period. Unused credits do not roll over.
## Video Generation Costs
| Duration | Standard Mode | Professional Mode |
|----------|--------------|-------------------|
| 5 seconds | 10 credits | 35 credits |
| 10 seconds | 20 credits | 70 credits |
### With Native Audio (v2.6)
| Duration | Standard + Audio | Professional + Audio |
|----------|-----------------|---------------------|
| 5 seconds | 50 credits | 100 credits |
| 10 seconds | 100 credits | 200 credits |
## Image Generation Costs (Kolors)
| Feature | Credits |
|---------|---------|
| Text-to-image | 1 credit/image |
| Image restyle | 2 credits/image |
| Virtual try-on | 5 credits/image |
## API Resource Packs
API access is billed separately from subscriptions via prepaid packs:
| Pack | Units | Price | Validity |
|------|-------|-------|----------|
| Starter | 1,000 | ~$140 | 90 days |
| Growth | 10,000 | ~$1,400 | 90 days |
| Enterprise | 30,000 | ~$4,200 | 90 days |
**1 unit = 1 credit equivalent.** API pricing works out to ~$0.07-0.14 per second of generated video.
## Cost Estimation
```python
def estimate_cost(videos: int, duration: int = 5, mode: str = "standard",
audio: bool = False) -> dict:
"""Estimate credits needed for a batch of videos."""
base_credits = {
(5, "standard"): 10,
(5, "professional"): 35,
(10, "standard"): 20,
(10, "professional"): 70,
}
per_video = base_credits.get((duration, mode), 10)
if audio:
per_video *= 5 # audio multiplier
total = videos * per_video
return {
"videos": videos,
"credits_per_video": per_video,
"total_credits": total,
"estimated_cost_usd": total * 0.14, # high estimate
}
# Example: 100 five-second standard videos
print(estimate_cost(100, duration=5, mode="standard"))
# → {'videos': 100, 'credits_per_video': 10, 'total_credits': 1000, 'estimated_cost_usd': 140.0}
```
## Cost Optimization Strategies
| Strategy | Savings | Trade-off |
|----------|---------|-----------|
| Use `standard` mode for drafts | 3.5x cheaper | Slightly lower quality |
| Use 5s duration, extend if needed | 2x cheaper per clip | Requires extension step |
| Use `kling-v2-5-turbo` | 40% faster (less queue time) | Marginally lower quality than v2.6 |
| Batch during off-peak hours | Faster processing | Schedule dependency |
| Skip audio, add in post | 5x cheaper | Extra post-production step |
| Use callbacks instead of polling | No cost savings, but fewer API calls | Requires webhook endpoint |
## Budget Guard
```python
class BudgetGuard:
"""Prevent overspending by tracking credit usage."""
def __init__(self, daily_limit: int = 500):
self.daily_limit = daily_limit
self._used_today = 0
def check(self, credits_needed: int) -> bool:
if self._used_today + credits_needed > self.daily_limit:
raise RuntimeError(
f"Budget exceeded: {self._used_today + credits_needed} > {self.daily_limit}"
)
return True
def record(self, credits_used: int):
self._used_today += credits_used
```
## Resources
- [Pricing Page](https://app.klingai.com/global/dev/document-api/productBilling/prePaidResourcePackage)
- [API Resource Packs](https://app.klingai.com/global/dev)
Related in Image & Video
watch
IncludedWatch a video (URL or local path). Downloads with yt-dlp, extracts auto-scaled frames with ffmpeg, pulls the transcript from captions (or Whisper API fallback), and hands the result to Claude so it can answer questions about what's in the video.
physical-ai-defect-image-generation
IncludedUse when the user wants to orchestrate defect image generation, run associated setup, or handle outputs on OSMO. The Day 0 path handles cold-start with USD-to-ROI, image-edit augmentation, and AnomalyGen to create initial PCBA datasets. The Day 1 path performs inference and labeling on real images. This skill helps with first-time asset setup, creation of finetuning checkpoints, and configuring deployment. Trigger keywords: defect image generation, dig workflow, dig pipeline, defect image detection workflow, aoi pipeline, aoi anomalygen, usd2roi anomalygen, day 0 pcba, day 1 pcba, day 1 real-photo alignment, day 1 manual roi, metal surface anomaly, glass defect, anomalygen finetune, setup_pcb, setup_metal, setup_glass, setup_pretrained, dig setup, dig datasets, dig pretrained checkpoint, dig image-edit endpoint.
accelint-react-best-practices
IncludedReact performance optimization and best practices. ALWAYS use this skill when working with any React code - writing components, hooks, JSX; refactoring; optimizing re-renders, memoization, state management; reviewing for performance; fixing hydration mismatches; debugging infinite re-renders, stale closures, input focus loss, animations restarting; preventing remounting; implementing transitions, lazy initialization, effect dependencies. Even simple React tasks benefit from these patterns. Covers React 19+ (useEffectEvent, Activity, ref props). Triggers - useEffect, useState, useMemo, useCallback, memo, inline components, nested components, components inside components, re-render, performance, hydration, SSR, Next.js, useDeferredValue, combined hooks.
elevenlabs-agents
IncludedBuild conversational AI voice agents with ElevenLabs Platform using React, JavaScript, React Native, or Swift SDKs. Configure agents, tools (client/server/MCP), RAG knowledge bases, multi-voice, and Scribe real-time STT. Use when: building voice chat interfaces, implementing AI phone agents with Twilio, configuring agent workflows or tools, adding RAG knowledge bases, testing with CLI "agents as code", or troubleshooting deprecated @11labs packages, Android audio cutoff, CSP violations, dynamic variables, or WebRTC config. Keywords: ElevenLabs Agents, ElevenLabs voice agents, AI voice agents, conversational AI, @elevenlabs/react, @elevenlabs/client, @elevenlabs/react-native, @elevenlabs/elevenlabs-js, @elevenlabs/agents-cli, elevenlabs SDK, voice AI, TTS, text-to-speech, ASR, speech recognition, turn-taking model, WebRTC voice, WebSocket voice, ElevenLabs conversation, agent system prompt, agent tools, agent knowledge base, RAG voice agents, multi-voice agents, pronunciation dictionary, voice speed control, elevenlabs scribe, @11labs deprecated, Android audio cutoff, CSP violation elevenlabs, dynamic variables elevenlabs, case-sensitive tool names, webhook authentication
humanizer
IncludedHumanize AI-generated text by detecting and removing patterns typical of LLM output. Rewrites text to sound natural, specific, and human. Uses 28 pattern detectors, 560+ AI vocabulary terms across 3 tiers, and statistical analysis (burstiness, type-token ratio, readability) for comprehensive detection. Use when asked to humanize text, de-AI writing, make content sound more natural/human, review writing for AI patterns, score text for AI detection, or improve AI-generated drafts. Covers content, language, style, communication, and filler categories.
generating-mermaid-diagrams
IncludedSalesforce architecture diagrams using Mermaid with ASCII fallback. Use this skill when generating text-based diagrams for Salesforce architecture, OAuth flows, ERDs, integration sequences, or Agentforce structure. TRIGGER when: user says "diagram", "visualize", "ERD", or asks for sequence diagrams, flowcharts, class diagrams, or architecture visualizations in Mermaid. DO NOT TRIGGER when: user wants PNG/SVG image output (use generating-visual-diagrams), or asks about non-Salesforce systems.