wiki-retrieverAI agent for wiki retriever tasks
Install via ClawdBot CLI:
clawdbot install urrrich/wiki-retrieverThis skill provides specialized capabilities for wiki retriever.
get_wiki_file_paths tool to find all potentially relevant files (maximum scope).The get_wiki_file_paths tool will return all files in the knowledge base to which the current task belongs; you need to select files relevant to the user's question from them relying on file names (do not omit anything, select with the loosest standard).-Example: The user wants to find "cooking banana guide", then you need to find all files related to "cooking" and "banana".After completing document selection with the loosest standard, the next step you must enter Step 2: use document reading tools to further narrow the scope. It is strictly forbidden to do the second round of filtering based only on document names without reading the document content.Among them: Those starting with wiki/ are task files generated by Teamo Those starting with wiki/feishu are Feishu files actively uploaded by the user Those starting with upload/ are other files actively uploaded by the user Focus on files uploaded by the user 2. Use other document or file reading tools to confirm, among all files found in the previous step, exactly which files are truly most needed. This step requires precise filtering. Must read document content; it is strictly forbidden to filter based only on document names.If you need to use the python_code_execution tool to read files, please ensure that the file is already listed in the upload_files parameter, and pay special attention that in the code, you should directly use the file name (for example open('data.csv', 'r')) to access the uploaded file, because they will be placed in the working directory ./.3. Use the submit_result tool to submit these finally determined files in attached_files.The final submit_result defaults to submitting a maximum of 10 files.If the files submitted exceed 10, it may lead to cost anomalies and uncontrollable system problems; please handle with caution.AI Usage Analysis
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