fotor-skills
by @fotor-everimaging
Fotor AI image generator and AI video generator for photo editing, background remover, background replacement, product photos, ad creatives, social media gra...
clawhub install fotor-skillsπ About This Skill
name: fotor-skills description: Fotor AI image generator and AI video generator for photo editing, background remover, background replacement, product photos, ad creatives, social media graphics, poster and banner design, image upscaling, photo restoration, portrait enhancement, text-to-video, and image-to-video. Built for e-commerce, marketing, branding, and content creation. version: 1.0.20 metadata: author: fotor-ai openclaw: requires: env: - FOTOR_OPENAPI_KEY bins: - uv primaryEnv: FOTOR_OPENAPI_KEY homepage: https://github.com/fotor-ai/fotor-skills
fotor-skills
Fotor OpenAPI skill for AI image generation, AI photo editing, AI video generation, product photos, ad creatives, social media graphics, background removal, photo restoration, and image upscaling.
This skill should match user requests expressed in outcome language first, not SDK language. Keep technical details behind the scenes unless they are needed to unblock execution.
When This Skill Matches
Use this skill when the user asks for outcomes such as:
Search Intent Coverage
Common search phrases this skill should be able to match include:
For API key application and product details, see https://developers.fotor.com/fotor-skills/.
Use uv as the bootstrap layer. Prefer a skill-local Python 3.12 environment and run bundled scripts from that local environment instead of the system Python.
Runtime Setup
Keep setup lightweight and local to the skill directory.
Install uv first if it is missing:
# macOS / Linux
curl -LsSf https://astral.sh/uv/install.sh | shWindows (PowerShell)
powershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
Typical first-run setup:
uv python install 3.12
uv venv --python 3.12 .venv
./.venv/bin/python scripts/ensure_sdk.py
Setup rules:
1. Prefer a local Python 3.12 environment in the skill directory.
2. Use uv to prepare Python 3.12 and create .venv when the local environment is missing.
3. Run bundled scripts from the local skill environment, not the system Python.
4. Ensure FOTOR_OPENAPI_KEY is set. If the user asks where to get a key, wants the official fotor-skills homepage during setup, or needs a key + homepage walkthrough, read references/get_api_key.md first.
Current default interpreter paths:
./.venv/bin/python.venv\\Scripts\\python.exeInteraction Rules
uv before installing dependencies or executing the task. Avoid installing into the system Python unless the user explicitly asks.references/credits-and-recharge.md and follow its recharge guidance flow.references/credits-and-recharge.md to explain the failure and provide recharge guidance.Scripts
scripts/ensure_sdk.py
Cross-platform (Windows / macOS / Linux) script to install or upgrade fotor-sdk to the latest PyPI release with uv pip install --python . Run before every task.
--upgrade β same behavior, kept as an explicit aliasscripts/run_task.py
Execute one or more Fotor tasks from JSON. Handles client init, polling, and progress.
Single task:
echo '{"task_type":"text2image","params":{"prompt":"A cat","model_id":"seedream-4-5-251128"}}' \
| ./.venv/bin/python scripts/run_task.py
Batch (array):
echo '[
{"task_type":"text2image","params":{"prompt":"A cat","model_id":"seedream-4-5-251128"},"tag":"cat"},
{"task_type":"text2video","params":{"prompt":"Sunset","model_id":"kling-v3","duration":5},"tag":"sunset"}
]' | ./.venv/bin/python scripts/run_task.py --concurrency 5
Options: --input FILE, --concurrency N (default 5), --poll-interval S (default 2.0), --timeout S (default 1200).
Output: JSON with task_id, status, success, result_url, error, elapsed_seconds, creditsIncrement, tag.
Automatic fallback:
task_type + model_id matches a built-in fallback mapping, run_task.py automatically retries once with the fallback model.code=510 / No enough credits), run_task.py returns the failure immediately and does not retry on a fallback model.fallback_used, original_model_id, and fallback_model_id.scripts/upload_image.py
Upload a local image file through Fotor's signed upload flow and return a reusable image URL.
./.venv/bin/python scripts/upload_image.py ./input.jpg --task-type image2image
The script:
/v1/upload/sign with the mapped upload type and suffixfile_url and upload_urlUse file_url as the image_url, start_image_url, end_image_url, or an item inside image_urls for image-based tasks.
Supported task-to-upload mapping:
image2image -> img2imgimage_upscale -> img_upscalebackground_remove -> bg_removesingle_image2video -> img2videostart_end_frame2video -> img2videomultiple_image2video -> img2videoscripts/check_skill_update.py
Check whether the installed skill has a newer version available for the current install source.
./.venv/bin/python scripts/check_skill_update.py --mark-notified --check-interval-hours 24
For development/testing when install-source metadata is unavailable:
./.venv/bin/python scripts/check_skill_update.py --install-source skills-github --slug fotor-skills --current-version 1.0.0 --github-source fotor-ai/fotor-skills --mark-notified --check-interval-hours 24
The script:
clawhub or skills-githubclawhub, reads installed _meta.json and fetches the latest version via clawhub inspect --json skills-github, reads local SKILL.md frontmatter top-level version field, falls back to legacy metadata.version, finds the GitHub source, and fetches the remote SKILL.md version plus CHANGELOG.md highlights when availableinstall_source, current_version, latest_version, update_available, and should_notify--mark-notified is used--check-interval-hours (default 24)changelog_preview so the reminder can mention the main highlights without dumping the full changelog--install-source, --slug, --current-version, and --github-sourceReference Files
Only read the reference files that match the current need. Do not load all of them by default.
Task Execution References
Read these when choosing a model, validating parameters, or mapping an ambiguous user request to a recommended workflow:
references/image_models.md -- image model IDs, T2I/I2I capabilities, per-model parameter constraints (resolution, ratios, input limits, max refs)references/video_models.md -- video model IDs, T2V/I2V/SE/MI capabilities, per-model parameter constraints (duration, resolution, ratios, input limits, audio)references/parameter_reference.md -- full function signatures and parameter tables for all 8 task typesreferences/image_scenarios.md -- scenario-to-model mapping for image generation (T2I, I2I, utilities); read when user intent is ambiguousreferences/video_scenarios.md -- scenario-to-model mapping for video generation (T2V, I2V, SE, MI); read when user intent is ambiguousOperational References
Read these only when the user asks about installation, upgrade, workspace layout, API key acquisition, or the official fotor-skills homepage. Do not read them for normal image/video task execution.
references/credits-and-recharge.md -- credit lookup, payment links, recharge guidance, and insufficient-credit handlingreferences/get_api_key.md -- guide for giving the official fotor-skills homepage, sending users to the API-key dashboard entry, and configuring FOTOR_OPENAPI_KEYreferences/install-or-upgrade.md -- how to install or upgrade fotor-skills for both ClawHub and npx skills, and how to phrase a concise non-pushy upgrade reminderWorkflow
1. If uv is missing, install it first using the platform-appropriate installer shown in Setup.
2. If Python 3.12 is not already available to uv, run uv python install 3.12.
3. If .venv is missing, create it with uv venv --python 3.12 .venv.
4. Run ./.venv/bin/python scripts/ensure_sdk.py before every task to install or upgrade the latest fotor-sdk with uv.
5. After .venv is ready and ensure_sdk.py completes, silently run ./.venv/bin/python scripts/check_skill_update.py --mark-notified --check-interval-hours 24. Do not inspect the state file manually. Only if it reports should_notify: true, read references/install-or-upgrade.md and send one short non-blocking update reminder. If the check fails or times out, ignore it and continue without mentioning the failure.
6. If the user asks how to get an API key or wants the official fotor-skills homepage during setup, read references/get_api_key.md and include both links before expanding into lower-level setup details.
7. Verify FOTOR_OPENAPI_KEY is set.
8. If the user asks about account credits, recharge, buying credits, or payment links, read references/credits-and-recharge.md, then use the appropriate balance or payment-links flow from that reference.
9. For image-based tasks that start from a local file, first run ./.venv/bin/python scripts/upload_image.py and keep the returned file_url.
10. Read the appropriate model reference to choose model_id. Each model's per-model spec section lists supported resolutions, aspect ratios, duration, input constraints, and max reference images.
11. If user intent is ambiguous (no specific model requested), consult the scenario files (image_scenarios.md / video_scenarios.md) for recommended model + params.
12. Validate parameters against the chosen model's spec before calling -- check resolution, aspect ratio, duration, and multi-image limits.
13. Quick path -- pipe JSON into ./.venv/bin/python scripts/run_task.py (works for both single and batch).
14. Custom path -- write inline Python using the SDK directly (see examples below), still preferring the local .venv interpreter.
15. Check result_url in output. Chain image_upscale if higher resolution needed.
If the user asks to check account credits or remaining credits, read references/credits-and-recharge.md and use the SDK client flow described there instead of run_task.py.
Built-in automatic fallback mappings are defined in references/fallback_models.json.
run_task.py reads that file directly. Keep exact fallback pairs there instead of duplicating them in SKILL.md or scenario references.
Available Task Types
| task_type | Function | Required Params |
|-----------|----------|-----------------|
| text2image | text2image() | prompt, model_id |
| image2image | image2image() | prompt, model_id, image_urls |
| image_upscale | image_upscale() | image_url |
| background_remove | background_remove() | image_url |
| text2video | text2video() | prompt, model_id |
| single_image2video | single_image2video() | prompt, model_id, image_url |
| start_end_frame2video | start_end_frame2video() | prompt, model_id, start_image_url, end_image_url |
| multiple_image2video | multiple_image2video() | prompt, model_id, image_urls (β₯2) |
For full parameter details (defaults, on_poll, **extra), read references/parameter_reference.md.
Credits and Recharge
For any balance lookup, recharge guidance, or insufficient-credit case, read references/credits-and-recharge.md.
Keep SKILL.md focused on routing:
code=510 or No enough credits.Inline Python Examples
When scripts/run_task.py is insufficient (custom logic, chaining, progress callbacks):
Client Init
import os
from fotor_sdk import FotorClient
client = FotorClient(api_key=os.environ["FOTOR_OPENAPI_KEY"])
Single Task
from fotor_sdk import text2image
result = await text2image(client, prompt="A diamond kitten", model_id="seedream-4-5-251128")
print(result.result_url)
Batch with TaskRunner
from fotor_sdk import TaskRunner, TaskSpec
runner = TaskRunner(client, max_concurrent=5)
specs = [
TaskSpec("text2image", {"prompt": "A cat", "model_id": "seedream-4-5-251128"}, tag="cat"),
TaskSpec("text2video", {"prompt": "Sunset", "model_id": "kling-v3", "duration": 5}, tag="sunset"),
]
results = await runner.run(specs)
Video with Audio
from fotor_sdk import text2video
result = await text2video(client, prompt="Jazz band", model_id="kling-v3",
audio_enable=True, audio_prompt="Smooth jazz")
TaskResult
result.success # bool: True when COMPLETED with result_url
result.result_url # str | None
result.status # TaskStatus: COMPLETED / FAILED / TIMEOUT / IN_PROGRESS / CANCELLED
result.error # str | None (e.g. "NSFW_CONTENT")
result.elapsed_seconds # float
result.creditsIncrement # int | float: credits consumed by this task
result.metadata # dict (includes "tag" from TaskRunner)
Error Handling
FotorAPIError (has .code attribute).result.success per item; runner never raises on individual failures.error="NSFW_CONTENT" in TaskResult.result.error, exception text, or a combined fallback error contains code=510 or No enough credits, treat it as a recharge case. Tell the user credits are insufficient, then fetch and present payment links.For troubleshooting, enable SDK debug logging: logging.getLogger("fotor_sdk").setLevel(logging.DEBUG).