From klingai-pack
Optimizes Kling AI video generation for speed, quality, and cost using model/mode matrices, Python benchmarking script, and requests connection pooling.
How this skill is triggered — by the user, by Claude, or both
Slash command
/klingai-pack:klingai-performance-tuningThis skill is limited to the following tools:
The summary Claude sees in its skill listing — used to decide when to auto-load this skill
Optimize video generation for your use case by choosing the right model, mode, and parameters. Covers benchmarking, speed vs. quality trade-offs, connection pooling, and caching strategies.
Optimize video generation for your use case by choosing the right model, mode, and parameters. Covers benchmarking, speed vs. quality trade-offs, connection pooling, and caching strategies.
| Config | ~Gen Time | Quality | Credits (5s) | Best For |
|---|---|---|---|---|
| v2.5-turbo + standard | 30-60s | Good | 10 | Drafts, iteration |
| v2-master + standard | 60-90s | High | 10 | Production previews |
| v2.6 + standard | 60-120s | Highest | 10 | Quality-sensitive |
| v2.6 + professional | 120-300s | Highest+ | 35 | Final output |
| v2.6 + prof + audio | 180-400s | Highest+ | 200 | Full production |
import time, requests, json
def benchmark_model(prompt: str, model: str, mode: str = "standard",
runs: int = 3) -> dict:
"""Benchmark generation time for a model/mode combination."""
times = []
for i in range(runs):
start = time.monotonic()
# Submit
r = requests.post(f"{BASE}/videos/text2video", headers=get_headers(), json={
"model_name": model, "prompt": prompt, "duration": "5", "mode": mode,
}).json()
task_id = r["data"]["task_id"]
# Poll
while True:
time.sleep(10)
result = requests.get(
f"{BASE}/videos/text2video/{task_id}", headers=get_headers()
).json()
if result["data"]["task_status"] in ("succeed", "failed"):
break
elapsed = time.monotonic() - start
times.append(elapsed)
print(f" Run {i+1}/{runs}: {elapsed:.1f}s ({result['data']['task_status']})")
return {
"model": model,
"mode": mode,
"avg_sec": round(sum(times) / len(times), 1),
"min_sec": round(min(times), 1),
"max_sec": round(max(times), 1),
"runs": runs,
}
# Compare models
prompt = "A waterfall in a tropical forest, cinematic"
for model in ["kling-v2-5-turbo", "kling-v2-master", "kling-v2-6"]:
result = benchmark_model(prompt, model, runs=2)
print(f"{model}: avg={result['avg_sec']}s, min={result['min_sec']}s")
import requests
# Without pooling: new TCP connection per request (slow)
# With pooling: reuse connections (fast)
session = requests.Session()
adapter = requests.adapters.HTTPAdapter(
pool_connections=5, # number of connection pools
pool_maxsize=10, # max connections per pool
max_retries=3, # auto-retry on connection errors
)
session.mount("https://", adapter)
# Use session instead of requests directly
response = session.post(f"{BASE}/videos/text2video", headers=get_headers(), json=body)
Prompts that generate faster:
| Technique | Why It Helps |
|---|---|
| Clear single subject | Less complexity to resolve |
| Specify camera angle | Reduces ambiguity |
| Avoid conflicting styles | "realistic anime" confuses the model |
| Keep under 200 words | Shorter prompts process faster |
| Use negative prompts | Removes processing of unwanted elements |
# Slow prompt (vague, conflicting)
slow = "A scene with many things happening, realistic but also artistic"
# Fast prompt (specific, clear)
fast = "A single red fox walking through snow, side view, natural lighting, 4K"
import hashlib
class PromptCache:
"""Cache results to avoid regenerating identical videos."""
def __init__(self):
self._cache = {}
def _key(self, prompt: str, model: str, duration: int, mode: str) -> str:
raw = f"{prompt}|{model}|{duration}|{mode}"
return hashlib.sha256(raw.encode()).hexdigest()[:16]
def get(self, prompt, model, duration, mode):
key = self._key(prompt, model, duration, mode)
return self._cache.get(key)
def set(self, prompt, model, duration, mode, video_url):
key = self._key(prompt, model, duration, mode)
self._cache[key] = {
"url": video_url,
"cached_at": time.time(),
}
cache = PromptCache()
def generate_with_cache(prompt, model="kling-v2-master", duration=5, mode="standard"):
cached = cache.get(prompt, model, duration, mode)
if cached:
print(f"Cache hit: {cached['url']}")
return cached["url"]
# Generate
result = client.text_to_video(prompt, model=model, duration=duration, mode=mode)
url = result["videos"][0]["url"]
cache.set(prompt, model, duration, mode, url)
return url
kling-v2-5-turbo for iteration, v2-6 for finalstandard mode until final renderrequests.Session()callback_url instead of pollingnpx claudepluginhub jeremylongshore/claude-code-plugins-plus-skills --plugin klingai-packProvides production reference architecture for scalable Kling AI video generation platforms, including API gateway, job queues, workers, storage, and monitoring.
Generates videos from text prompts or images, animates still images, and creates talking avatars from photos with audio using Kling AI models (VIDEO 3.0, Avatar 2.0, etc.). Handles multi-shot storyboards, character consistency, and prompt engineering.
Generates videos from text prompts via fal.ai models like Kling 2.6 Pro, Sora 2, LTX-2 Pro, Runway Gen-3 Turbo, Luma Dream Machine; supplies endpoints, durations, aspect ratios, prompt structures, TypeScript/Python code.