klingai-async-workflows
Build asynchronous video generation workflows with Kling AI. Use when integrating video generation into larger systems or pipelines. Trigger with phrases like 'klingai async', 'kling ai workflow', 'klingai pipeline', 'async video generation'.
Install
mkdir -p .claude/skills/klingai-async-workflows && curl -L -o skill.zip "https://mcp.directory/api/skills/download/4732" && unzip -o skill.zip -d .claude/skills/klingai-async-workflows && rm skill.zipInstalls to .claude/skills/klingai-async-workflows
About this skill
Kling AI Async Workflows
Overview
Kling AI video generation is inherently async: you submit a task, then poll or receive a callback when done. This skill covers production patterns for integrating this into larger systems using queues, state machines, and event-driven architectures.
Core Pattern: Submit + Callback
import jwt, time, os, requests
BASE = "https://api.klingai.com/v1"
def get_headers():
ak, sk = os.environ["KLING_ACCESS_KEY"], os.environ["KLING_SECRET_KEY"]
token = jwt.encode(
{"iss": ak, "exp": int(time.time()) + 1800, "nbf": int(time.time()) - 5},
sk, algorithm="HS256", headers={"alg": "HS256", "typ": "JWT"}
)
return {"Authorization": f"Bearer {token}", "Content-Type": "application/json"}
def submit_async(prompt, callback_url=None, **kwargs):
"""Submit task and return immediately."""
body = {
"model_name": kwargs.get("model", "kling-v2-master"),
"prompt": prompt,
"duration": str(kwargs.get("duration", 5)),
"mode": kwargs.get("mode", "standard"),
}
if callback_url:
body["callback_url"] = callback_url
r = requests.post(f"{BASE}/videos/text2video", headers=get_headers(), json=body)
return r.json()["data"]["task_id"]
Redis Queue Workflow
import redis
import json
r = redis.Redis()
# Producer: enqueue video generation requests
def enqueue_video_job(prompt, metadata=None):
job = {
"id": f"job_{int(time.time() * 1000)}",
"prompt": prompt,
"metadata": metadata or {},
"status": "queued",
"created_at": time.time(),
}
r.lpush("kling:jobs:pending", json.dumps(job))
return job["id"]
# Worker: process jobs from queue
def process_jobs(max_concurrent=3):
active_tasks = {}
while True:
# Submit new jobs if under concurrency limit
while len(active_tasks) < max_concurrent:
raw = r.rpop("kling:jobs:pending")
if not raw:
break
job = json.loads(raw)
task_id = submit_async(job["prompt"])
active_tasks[task_id] = job
r.hset("kling:jobs:active", task_id, json.dumps(job))
# Check active tasks
completed = []
for task_id, job in active_tasks.items():
result = requests.get(
f"{BASE}/videos/text2video/{task_id}", headers=get_headers()
).json()
status = result["data"]["task_status"]
if status == "succeed":
job["status"] = "completed"
job["video_url"] = result["data"]["task_result"]["videos"][0]["url"]
r.lpush("kling:jobs:completed", json.dumps(job))
completed.append(task_id)
elif status == "failed":
job["status"] = "failed"
job["error"] = result["data"].get("task_status_msg")
r.lpush("kling:jobs:failed", json.dumps(job))
completed.append(task_id)
for tid in completed:
active_tasks.pop(tid)
r.hdel("kling:jobs:active", tid)
time.sleep(10)
State Machine Pattern
from enum import Enum
from dataclasses import dataclass, field
from typing import Optional
class JobState(Enum):
QUEUED = "queued"
SUBMITTING = "submitting"
PROCESSING = "processing"
DOWNLOADING = "downloading"
COMPLETED = "completed"
FAILED = "failed"
RETRYING = "retrying"
@dataclass
class VideoJob:
prompt: str
state: JobState = JobState.QUEUED
task_id: Optional[str] = None
video_url: Optional[str] = None
error: Optional[str] = None
attempts: int = 0
max_attempts: int = 3
def can_retry(self) -> bool:
return self.state == JobState.FAILED and self.attempts < self.max_attempts
def transition(self, new_state: JobState):
valid = {
JobState.QUEUED: {JobState.SUBMITTING},
JobState.SUBMITTING: {JobState.PROCESSING, JobState.FAILED},
JobState.PROCESSING: {JobState.DOWNLOADING, JobState.FAILED},
JobState.DOWNLOADING: {JobState.COMPLETED, JobState.FAILED},
JobState.FAILED: {JobState.RETRYING},
JobState.RETRYING: {JobState.SUBMITTING},
}
if new_state not in valid.get(self.state, set()):
raise ValueError(f"Invalid transition: {self.state} -> {new_state}")
self.state = new_state
Multi-Step Pipeline
async def video_pipeline(prompt, steps=None):
"""Chain: generate -> extend -> download -> upload."""
steps = steps or ["generate", "extend", "download"]
# Step 1: Generate
task_id = submit_async(prompt, duration=5)
result = poll_task("/videos/text2video", task_id) # from job-monitoring skill
video_url = result["videos"][0]["url"]
# Step 2: Extend (optional)
if "extend" in steps:
ext_r = requests.post(f"{BASE}/videos/video-extend", headers=get_headers(), json={
"task_id": task_id,
"prompt": f"Continue: {prompt}",
"duration": "5",
}).json()
ext_result = poll_task("/videos/video-extend", ext_r["data"]["task_id"])
video_url = ext_result["videos"][0]["url"]
# Step 3: Download
if "download" in steps:
video_data = requests.get(video_url).content
filepath = f"output/{task_id}.mp4"
with open(filepath, "wb") as f:
f.write(video_data)
return filepath
return video_url
Event-Driven with Webhook
# Use callback_url to avoid polling entirely
task_id = submit_async(
"Sunset over ocean with sailboats",
callback_url="https://your-app.com/webhooks/kling"
)
# Your webhook handler triggers next pipeline step
# See klingai-webhook-config skill for receiver implementation
Resources
More by jeremylongshore
View all skills by jeremylongshore →You might also like
flutter-development
aj-geddes
Build beautiful cross-platform mobile apps with Flutter and Dart. Covers widgets, state management with Provider/BLoC, navigation, API integration, and material design.
drawio-diagrams-enhanced
jgtolentino
Create professional draw.io (diagrams.net) diagrams in XML format (.drawio files) with integrated PMP/PMBOK methodologies, extensive visual asset libraries, and industry-standard professional templates. Use this skill when users ask to create flowcharts, swimlane diagrams, cross-functional flowcharts, org charts, network diagrams, UML diagrams, BPMN, project management diagrams (WBS, Gantt, PERT, RACI), risk matrices, stakeholder maps, or any other visual diagram in draw.io format. This skill includes access to custom shape libraries for icons, clipart, and professional symbols.
ui-ux-pro-max
nextlevelbuilder
"UI/UX design intelligence. 50 styles, 21 palettes, 50 font pairings, 20 charts, 8 stacks (React, Next.js, Vue, Svelte, SwiftUI, React Native, Flutter, Tailwind). Actions: plan, build, create, design, implement, review, fix, improve, optimize, enhance, refactor, check UI/UX code. Projects: website, landing page, dashboard, admin panel, e-commerce, SaaS, portfolio, blog, mobile app, .html, .tsx, .vue, .svelte. Elements: button, modal, navbar, sidebar, card, table, form, chart. Styles: glassmorphism, claymorphism, minimalism, brutalism, neumorphism, bento grid, dark mode, responsive, skeuomorphism, flat design. Topics: color palette, accessibility, animation, layout, typography, font pairing, spacing, hover, shadow, gradient."
godot
bfollington
This skill should be used when working on Godot Engine projects. It provides specialized knowledge of Godot's file formats (.gd, .tscn, .tres), architecture patterns (component-based, signal-driven, resource-based), common pitfalls, validation tools, code templates, and CLI workflows. The `godot` command is available for running the game, validating scripts, importing resources, and exporting builds. Use this skill for tasks involving Godot game development, debugging scene/resource files, implementing game systems, or creating new Godot components.
nano-banana-pro
garg-aayush
Generate and edit images using Google's Nano Banana Pro (Gemini 3 Pro Image) API. Use when the user asks to generate, create, edit, modify, change, alter, or update images. Also use when user references an existing image file and asks to modify it in any way (e.g., "modify this image", "change the background", "replace X with Y"). Supports both text-to-image generation and image-to-image editing with configurable resolution (1K default, 2K, or 4K for high resolution). DO NOT read the image file first - use this skill directly with the --input-image parameter.
fastapi-templates
wshobson
Create production-ready FastAPI projects with async patterns, dependency injection, and comprehensive error handling. Use when building new FastAPI applications or setting up backend API projects.
Related MCP Servers
Browse all serversRaindrop: AI DevOps to convert Claude Code into an infrastructure-as-code full-stack deployment platform, automating app
Automate Excel file tasks without Microsoft Excel using openpyxl and xlsxwriter for formatting, formulas, charts, and ad
Unlock browser automation studio with Browserbase MCP Server. Enhance Selenium software testing and AI-driven workflows
Boost your productivity by managing Azure DevOps projects, pipelines, and repos in VS Code. Streamline dev workflows wit
Empower your Unity projects with Unity-MCP: AI-driven control, seamless integration, and advanced workflows within the U
Boost AI coding agents with Ref Tools—efficient documentation access for faster, smarter code generation than GitHub Cop
Stay ahead of the MCP ecosystem
Get weekly updates on new skills and servers.