Install
openclaw skills install google-web-searchEnables grounded question answering by automatically executing the Google Search tool within Gemini models. Use when the required information is recent (post knowledge cutoff) or requires verifiable citation.
openclaw skills install google-web-searchThis skill provides the capability to perform real-time web searches via the Gemini API's google_search grounding tool. It is designed to fetch the most current information available on the web to provide grounded, citable answers to user queries.
Key Features:
This skill exposes the Gemini API's google_search tool. It should be used when the user asks for real-time information, recent events, or requests verifiable citations.
The core logic is in scripts/example.py. This script requires the following environment variables:
gemini-2.5-flash-lite)Supported Models:
gemini-2.5-flash-lite (default) - Fast and cost-effectivegemini-3-flash-preview - Latest flash modelgemini-3-pro-preview - More capable, slowergemini-2.5-flash-lite-preview-09-2025 - Specific versionWhen integrating this skill into a larger workflow, the helper script should be executed in an environment where the google-genai library is available and the GEMINI_API_KEY is exposed.
Example Python invocation structure:
from skills.google-web-search.scripts.example import get_grounded_response
# Basic usage (uses default model):
prompt = "What is the latest market trend?"
response_text = get_grounded_response(prompt)
print(response_text)
# Using a specific model:
response_text = get_grounded_response(prompt, model="gemini-3-pro-preview")
print(response_text)
# Or set via environment variable:
import os
os.environ["GEMINI_MODEL"] = "gemini-3-flash-preview"
response_text = get_grounded_response(prompt)
print(response_text)
If the script fails:
GEMINI_API_KEY is set in the execution environment.google-genai library is installed (pip install google-generativeai).GEMINI_MODEL, ensure it's a valid Gemini model name.google_search tool. Use flash or pro variants.