/install oo-google-bigquery
Google BigQuery
Operate Google BigQuery through your OOMOL-connected account. This skill calls the google_bigquery connector with the oo CLI; OOMOL injects credentials server-side, so you never handle raw tokens.
Category: Data & Analytics, Developer Tools. Exposes 32 action(s).
Running an action
Assume the user has already installed the oo CLI, signed in, and connected Google BigQuery. Do not run oo auth login or open the connection URL proactively — just run the action. Fall back to First-time setup only when a command actually fails with an auth or connection error.
1. Inspect the contract to get the authoritative input/output schema before building a payload:
oo connector schema "google_bigquery" --action "\x3Caction_name>"
2. Run the action with a JSON payload that matches the input schema:
oo connector run "google_bigquery" --action "\x3Caction_name>" --data '\x3Cjson>' --json
--datatakes a JSON object string or@path/to/file.json; omit it to send{}.- The response is
{ "data": ..., "meta": { "executionId": "..." } }; the execution id lives undermeta.executionId.
Each action below links to a reference file with its purpose and exact commands. Read the linked file, then fetch the live schema with oo connector schema before constructing --data.
Available actions
cancel_job— Cancel a BigQuery job.create_dataset— Create a BigQuery dataset.create_routine— Create a BigQuery routine such as a user-defined function or stored procedure.create_table— Create a BigQuery table.delete_dataset— Delete a BigQuery dataset, optionally deleting contained tables when explicitly requested.delete_model— Delete a BigQuery ML model from a dataset.delete_routine— Delete a BigQuery routine from a dataset.delete_table— Delete a BigQuery table from a dataset.get_dataset— Retrieve BigQuery dataset metadata.get_job— Retrieve BigQuery job metadata.get_model— Retrieve BigQuery ML model metadata.get_query_results— Poll a BigQuery query job and return a page of results.get_routine— Retrieve BigQuery routine metadata.get_table— Retrieve BigQuery table metadata, including schema when available.insert_all— Insert a small batch of rows into a BigQuery table.list_datasets— List BigQuery datasets in a Google Cloud project.list_jobs— List BigQuery jobs in a Google Cloud project.list_models— List BigQuery ML models in a dataset.list_projects— List Google Cloud projects accessible to BigQuery.list_routines— List BigQuery routines in a dataset.list_table_data— List rows from a BigQuery table.list_tables— List BigQuery tables in a dataset.patch_dataset— Patch BigQuery dataset metadata.patch_model— Patch BigQuery ML model metadata such as friendly name, description, or labels.patch_table— Patch BigQuery table metadata.query— Run a BigQuery SQL query and return the first page of results.start_extract_job_to_gcs— Start an asynchronous BigQuery extract job to Cloud Storage objects.start_load_job_from_gcs— Start an asynchronous BigQuery load job from Cloud Storage objects.start_query_job— Start an asynchronous BigQuery query job.update_dataset— Replace BigQuery dataset metadata with the supplied dataset resource fields.update_routine— Replace BigQuery routine metadata and definition fields.update_table— Replace BigQuery table metadata with the supplied table resource fields.
Safety
- Read actions (get / list / search) are safe to run directly.
- Create, update, send, or post actions change Google BigQuery state — confirm the exact payload and effect with the user before running.
- Delete or remove actions are destructive — always confirm the target and get explicit approval first.
First-time setup
These are one-time steps — do not repeat them on every call. Run a step only when a command fails for the matching reason.
-
oo: command not found— install the oo CLI (other platforms: \x3Chttps://cli.oomol.com/install-guide.md>):curl -fsSL https://cli.oomol.com/install.sh | bash # macOS / Linuxirm https://cli.oomol.com/install.ps1 | iex # Windows PowerShell -
Not signed in / authentication error — sign in to your OOMOL account once:
oo auth login -
scope_missing/credential_expired/app_not_ready/app_not_found— Google BigQuery is not connected, or the connection expired or lacks a scope. Connect once (auth type: OAuth2) at:https://console.oomol.com/app-connections?provider=google_bigquery -
HTTP 402 /
OOMOL_INSUFFICIENT_CREDIT— billing stop. Recharge athttps://console.oomol.com/billing/token-rechargebefore retrying.
Resources
- Google BigQuery homepage: https://cloud.google.com/bigquery
- 确保已安装 OpenClaw(本地或 Docker 部署)
- 在对话框中输入安装命令:
/install oo-google-bigquery - 安装完成后,直接呼叫该 Skill 的名称或使用
/oo-google-bigquery触发 - 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
Google BigQuery 是什么?
Google BigQuery (cloud.google.com). Use this skill for ANY Google BigQuery request — reading, creating, updating, and deleting data. Whenever a task involves... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 28 次。
如何安装 Google BigQuery?
在 OpenClaw 或 Claude Code 对话框中运行命令「/install oo-google-bigquery」即可一键安装,无需额外配置。
Google BigQuery 是免费的吗?
是的,Google BigQuery 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。
Google BigQuery 支持哪些平台?
Google BigQuery 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。
谁开发了 Google BigQuery?
由 OOMOL(@oomol)开发并维护,当前版本 v1.0.0。