← 返回
数据分析 Key 中文

powerdrill-data-analysis

This skill should be used when the user wants to analyze, explore, visualize, or query data using Powerdrill. Covers listing, creating, and deleting datasets; uploading local files as data sources; creating analysis sessions; running natural-language data analysis queries; and retrieving charts, tables, and insights. Triggers on requests like "analyze my data", "query my dataset", "upload this file for analysis", "list my datasets", "create a dataset", "visualize sales trends", "continue my prev
当用户希望使用 Powerdrill 进行数据分析、探索、可视化或查询时应使用此技能。功能包括列出、创建和删除数据集,上传本地文件,创建分析会话,执行自然语言分析查询,以及获取图表和洞察。触发请求示例:分析数据、查询数据集、上传文件分析、列出数据集、创建数据集、可视化销售趋势、继续之前的分析、删除数据集,或任何提及 Powerdrill 的数据探索任务。
javainthinking
数据分析 clawhub v1.0.0 1 版本 99828.3 Key: 需要
★ 0
Stars
📥 1,744
下载
💾 60
安装
1
版本
#latest

概述

Powerdrill Data Analysis Skill

Analyze data using the Powerdrill API via the Python client at scripts/powerdrill_client.py. All operations use the Powerdrill REST API v2 (https://ai.data.cloud/api).

Prerequisites & Setup

Before using any Powerdrill functions, the user must have:

  1. A Powerdrill Teamspace - Created by following: https://www.youtube.com/watch?v=I-0yGD9HeDw
  2. API Credentials - Obtained by following: https://www.youtube.com/watch?v=qs-GsUgjb1g

Set these environment variables before running any script:

export POWERDRILL_USER_ID="your_user_id"
export POWERDRILL_PROJECT_API_KEY="your_project_api_key"

The only Python dependency is requests. Install with: pip install requests

If a call fails with an authentication error, verify the two environment variables are set and the API key is valid.

How to Use

Import the client module and call functions directly. All functions read credentials from the environment automatically.

import sys
sys.path.insert(0, "/absolute/path/to/scripts")  # adjust to actual location
from powerdrill_client import *

Or run via CLI:

python scripts/powerdrill_client.py <command> [args]

Available Functions

Datasets

list_datasets(page_number=1, page_size=10, search=None) -> dict

List datasets in the user's account. Typically the first step in any workflow.

result = list_datasets(search="sales")
for ds in result["data"]["records"]:
    print(ds["id"], ds["name"])

create_dataset(name, description="") -> dict

Create a new empty dataset. Returns {"data": {"id": "dset-..."}}.

ds = create_dataset("Q4 Sales Data", "Quarterly sales analysis")
dataset_id = ds["data"]["id"]

get_dataset_overview(dataset_id) -> dict

Get dataset summary, exploration questions, and keywords. Use after data sources are synced.

overview = get_dataset_overview(dataset_id)
print(overview["data"]["summary"])
for q in overview["data"]["exploration_questions"]:
    print(f"  - {q}")

get_dataset_status(dataset_id) -> dict

Check how many data sources are synced/syncing/invalid.

status = get_dataset_status(dataset_id)
# status["data"] = {"synched_count": 3, "synching_count": 0, "invalid_count": 0}

delete_dataset(dataset_id) -> dict

Permanently delete a dataset and all its data sources. Irreversible - always confirm with the user first.

Data Sources

list_data_sources(dataset_id, page_number=1, page_size=10, status=None) -> dict

List files within a dataset. Filter by status: synched, synching, invalid.

sources = list_data_sources(dataset_id, status="synched")

create_data_source(dataset_id, name, *, url=None, file_object_key=None) -> dict

Create a data source from a public URL or an uploaded file key. Provide exactly one of url or file_object_key.

# From public URL
ds = create_data_source(dataset_id, "report.pdf", url="https://example.com/report.pdf")

# From uploaded file (see upload_local_file)
ds = create_data_source(dataset_id, "data.csv", file_object_key=key)

upload_local_file(file_path) -> str

Upload a local file via multipart upload. Returns file_object_key for use with create_data_source().

Supported formats: .csv, .tsv, .md, .mdx, .json, .txt, .pdf, .pptx, .docx, .xls, .xlsx

upload_and_create_data_source(dataset_id, file_path) -> dict

Convenience function: uploads a local file then creates the data source in one call.

result = upload_and_create_data_source(dataset_id, "/path/to/sales.csv")
datasource_id = result["data"]["id"]

wait_for_dataset_sync(dataset_id, max_attempts=30, delay_seconds=3.0) -> dict

Poll until all data sources in the dataset are synced. Raises RuntimeError on timeout or if invalid sources are detected.

upload_and_create_data_source(dataset_id, "data.csv")
wait_for_dataset_sync(dataset_id)  # blocks until synced

Sessions

create_session(name, output_language="AUTO", job_mode="AUTO", max_contextual_job_history=10) -> dict

Create an analysis session. Required before running jobs.

session = create_session("Sales Analysis Session")
session_id = session["data"]["id"]

list_sessions(page_number=1, page_size=10, search=None) -> dict

List existing sessions. Use to find a previous session for resumption.

delete_session(session_id) -> dict

Delete a session. Use during cleanup after analysis is complete.

Jobs (Data Analysis)

create_job(session_id, question, dataset_id=None, datasource_ids=None, stream=False, output_language="AUTO", job_mode="AUTO") -> dict

Run a natural-language analysis query. This is the core analysis function.

Non-streaming (default): returns full response with all blocks.

result = create_job(session_id, "What are the top 5 products by revenue?", dataset_id=dataset_id)
for block in result["data"]["blocks"]:
    if block["type"] == "MESSAGE":
        print(block["content"])
    elif block["type"] == "TABLE":
        print(f"Table: {block['content']['url']}")
    elif block["type"] == "IMAGE":
        print(f"Chart: {block['content']['url']}")

Streaming: returns parsed result with accumulated text and separate blocks.

result = create_job(session_id, "Summarize trends", dataset_id=dataset_id, stream=True)
print(result["text"])        # accumulated MESSAGE text
for b in result["blocks"]:   # TABLE, IMAGE, etc.
    print(b["type"], b["content"])

Response block types:

  • MESSAGE - Analytical text
  • CODE - Code snippets (Markdown)
  • TABLE - {name, url, expires_at} - download before expiration
  • IMAGE - {name, url, expires_at} - download before expiration
  • SOURCES - Citation references
  • QUESTIONS - Suggested follow-up questions
  • CHART_INFO - Chart configuration and data

Cleanup

cleanup(session_id=None, dataset_id=None) -> None

Delete session and/or dataset after analysis. Always call this when done.

cleanup(session_id=session_id, dataset_id=dataset_id)

cleanup_session(session_id) -> None / cleanup_dataset(dataset_id) -> None

Delete individual resources. Errors are logged but not raised.

Recommended Workflows

Full analysis workflow (upload, analyze, cleanup)

from powerdrill_client import *

# 1. Create dataset and upload data
ds = create_dataset("My Analysis")
dataset_id = ds["data"]["id"]

upload_and_create_data_source(dataset_id, "/path/to/data.csv")
wait_for_dataset_sync(dataset_id)

# 2. Create session and run analysis
session = create_session("Analysis Session")
session_id = session["data"]["id"]

result = create_job(session_id, "What are the key trends?", dataset_id=dataset_id)
for block in result["data"]["blocks"]:
    if block["type"] == "MESSAGE":
        print(block["content"])

# 3. Ask follow-up questions (same session for context)
result = create_job(session_id, "Break this down by region", dataset_id=dataset_id)

# 4. Cleanup when done
cleanup(session_id=session_id, dataset_id=dataset_id)

Analyze existing dataset

from powerdrill_client import *

# 1. Find the dataset
datasets = list_datasets(search="sales")
dataset_id = datasets["data"]["records"][0]["id"]

# 2. Explore it
overview = get_dataset_overview(dataset_id)
print(overview["data"]["summary"])

# 3. Create session and analyze
session = create_session("Quick Analysis")
session_id = session["data"]["id"]

result = create_job(session_id, overview["data"]["exploration_questions"][0], dataset_id=dataset_id)

# 4. Cleanup session when done (keep dataset)
cleanup_session(session_id)

CLI usage

# List datasets
python scripts/powerdrill_client.py list-datasets --search "sales"

# Create dataset + upload file
python scripts/powerdrill_client.py create-dataset "Test Data"
python scripts/powerdrill_client.py upload-file dset-xxx /path/to/file.csv
python scripts/powerdrill_client.py wait-sync dset-xxx

# Create session and run a job
python scripts/powerdrill_client.py create-session "My Session"
python scripts/powerdrill_client.py create-job SESSION_ID "Summarize the data" --dataset-id dset-xxx

# Cleanup
python scripts/powerdrill_client.py cleanup --session-id SESSION_ID --dataset-id dset-xxx

Error Handling

  • Authentication errors: Verify POWERDRILL_USER_ID and POWERDRILL_PROJECT_API_KEY. Direct the user to the setup videos above.
  • Dataset not found: Re-run list_datasets() to verify the ID. The dataset may have been deleted.
  • Job execution failure: Ensure the dataset has at least one synced data source (wait_for_dataset_sync()). Retry with a rephrased question.
  • Upload timeout: wait_for_dataset_sync() polls up to 30 attempts (90s). Use get_dataset_status() to check manually.
  • Invalid data sources: Check file format is supported. Re-upload with correct file type.
  • Rate limiting: Wait before retrying. Space out rapid sequential API calls.

Important Notes

  • Always create a session before running analysis jobs
  • Always call cleanup() to delete sessions and datasets after analysis is complete
  • Sessions maintain conversational context - reuse the same session for related follow-up questions
  • TABLE and IMAGE URLs in job responses expire - download or present results promptly
  • Call wait_for_dataset_sync() after uploading files, before running analysis
  • Dataset and session names are limited to 128 characters
  • Supported file formats: .csv, .tsv, .md, .mdx, .json, .txt, .pdf, .pptx, .docx, .xls, .xlsx

版本历史

共 1 个版本

  • v1.0.0 当前
    2026-03-28 22:13 安全 安全

安全检测

腾讯云安全 (Keen)

安全,无风险
查看报告

腾讯云安全 (Sanbu)

安全,无风险
查看报告

🔗 相关推荐

data-analysis

A股量化 AkShare

mbpz
A股量化数据分析工具,基于AkShare库获取A股行情、财务数据、板块信息等。用于回答关于A股股票查询、行情数据、财务分析、选股等问题。
★ 162 📥 59,674
content-creation

Slides/PPT generation and voice narration

javainthinking
基于2slides API的AI演示文稿生成,支持从文本、参考图片或文档摘要创建幻灯片。适用于“创建演示文稿”“制作幻灯片”等请求,提供主题选择、多语言及同步/异步生成模式。
★ 0 📥 2,287
data-analysis

Data Analysis

ivangdavila
{"answer":"数据分析与可视化。查询数据库、生成报告、自动化电子表格,将原始数据转化为清晰可行的见解。适用于:(1) 您……"}
★ 198 📥 64,859