Dataify Google Ai Mode
/install dataify-google-ai-mode
Dataify Google AI Mode
Use this skill to turn a user's Google AI Mode request into a Dataify Scraper API form submission.
Required Pre-Call Confirmation
Before every real API call, follow this confirmation flow. These rules override any older workflow order in this skill.
- Parse the user's request into the API body fields and fixed
enginevalue. - Apply defaults only when the parameter description explicitly states a default. Do not use example YAML values, sample prompts, placeholder values, or examples such as
pizza,us,en, dates, airport codes, or tokens as defaults. - If a required parameter has no documented default and cannot be inferred from the user request, ask for that parameter before building the table.
- Show a Markdown table before calling the API. Do not include
Authorization. Include the complete body field list from this skill's reference document, includingengine, even when a field is currently blank. - The table must have exactly these columns:
参数名,当前值,默认值,说明. - After the table, ask the user whether they want to modify any parameter. Do not call the API until the user explicitly confirms.
- If the user changes a parameter, regenerate the table and ask for confirmation again.
- If the token is missing, stop and tell the user to sign in at Dataify Dashboard to obtain
DATAIFY_API_TOKEN.
Use the bundled preview helper whenever possible to generate the confirmation table from this skill's reference document:
python3 scripts/preview_params.py --params-json '{"q":"USER_QUERY"}'
Pass every parsed current value to preview_params.py using --params-json or matching --field value arguments. The helper reads defaults and descriptions from references/*api.md; if the helper cannot parse a default, leave the default blank rather than inventing one.
9. After confirmation and token handling, call the bundled Python script with python3 and return the API response body directly without summarizing, extracting, cleaning, translating, or reshaping it.
Workflow
- Parse the user's request into Google AI Mode fields. Use
qas the query and setenginetogoogle_ai_mode. - If the token is missing, stop and tell the user to sign in at Dataify Dashboard to obtain
DATAIFY_API_TOKEN. - Build request parameters with only the fields the user requested plus required defaults. Use
json: "1"unless the user asks for another output format. - Run the bundled Python script with
python3. Run it from this skill directory, or use the absolute path toscripts/google_ai_mode.py.
python3 scripts/google_ai_mode.py --q "pizza" --json 1
If the user provided a token in the conversation instead of an environment variable, pass it with --token and avoid echoing it back in the final answer:
python3 scripts/google_ai_mode.py --token "USER_TOKEN" --q "pizza" --gl us --hl en
For many fields, you may pass one JSON object with shell-appropriate quoting. The script will still submit form data to the API:
python3 scripts/google_ai_mode.py --params-json '{"q":"pizza","json":"1","gl":"us","hl":"en"}'
- Return the script output directly to the user. Do not summarize, extract, clean, translate, or reshape the API response.
Field Mapping
Use references/google_ai_mode_api.md when you need the exact field list or examples.
Core rules:
- Always submit the API request as form data with
Content-Type: application/x-www-form-urlencoded. - Always force
enginetogoogle_ai_mode. - Keep request values as strings unless the script accepts and normalizes a boolean.
- Omit optional fields that the user did not request.
- Ask a follow-up only when the required query
qcannot be inferred. - If both
locationanduuleare present, prefer the explicituuleand omitlocation. - Normalize token values in the script. A token without
Beareris accepted and prefixed automatically.
Common mappings:
- "JSON" ->
json: "1" - "JSON+HTML" ->
json: "2" - "HTML" ->
json: "3" - "Light JSON" ->
json: "4" - search origin location ->
location - Google encoded location ->
uule - bypass cache / no cache ->
no_cache: "true" - use cache ->
no_cache: "false" - country or region for Google behavior ->
gl - interface/search language ->
hl
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install dataify-google-ai-mode - After installation, invoke the skill by name or use
/dataify-google-ai-mode - Provide required inputs per the skill's parameter spec and get structured output
What is Dataify Google Ai Mode?
When users search for information using Google AI Model, this skill is employed. It is an AI Agent Skill for Claude Code / OpenClaw, with 41 downloads so far.
How do I install Dataify Google Ai Mode?
Run "/install dataify-google-ai-mode" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Dataify Google Ai Mode free?
Yes, Dataify Google Ai Mode is completely free, licensed under MIT-0. You can download, install and use it at no cost.
Which platforms does Dataify Google Ai Mode support?
Dataify Google Ai Mode is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Dataify Google Ai Mode?
It is built and maintained by dataify-server (@dataify-server); the current version is v1.0.0.