by davila7
从多个全球来源获取人口、经济和健康数据需要复杂的 API。此技能提供完整指南,教您如何使用 Data Commons Python 客户端通过统一的知识图谱查询人口统计、失业率、GDP 数据和其他公共数据集。
1. 打开 Claude 聊天界面
2. 点击下方 "📋 复制" 按钮
3. 粘贴到 Claude 聊天框中并发送
4. 输入 "使用 datacommons-client 技能" 开始使用
=== datacommons-client 技能 === 作者: davila7 描述: 从多个全球来源获取人口、经济和健康数据需要复杂的 API。此技能提供完整指南,教您如何使用 Data Commons Python 客户端通过统一的知识图谱查询人口统计、失业率、GDP 数据和其他公共数据集。 使用方法: 1. 调用技能: "使用 datacommons-client 技能" 2. 提供相关信息: 根据技能要求提供必要参数 3. 查看结果: 技能会返回处理结果 示例: "使用 datacommons-client 技能,帮我分析一下这段代码"
这种方法适用于所有 Claude 用户,不需要安装额外工具。
data
safe
Provides comprehensive access to the Data Commons Python API v2 for querying statistical observations, exploring the knowledge graph, and resolving entity identifiers. Data Commons aggregates data from census bureaus, health organizations, environmental agencies, and other authoritative sources into a unified knowledge graph.
Install the Data Commons Python client with Pandas support:
uv pip install "datacommons-client[Pandas]"
For basic usage without Pandas:
uv pip install datacommons-client
The Data Commons API consists of three main endpoints, each detailed in dedicated reference files:
Query time-series statistical data for entities. See references/observation.md for comprehensive documentation.
Primary use cases:
Common patterns:
from datacommons_client import DataCommonsClient
client = DataCommonsClient()
# Get latest population data
response = client.observation.fetch(
variable_dcids=["Count_Person"],
entity_dcids=["geoId/06"], # California
date="latest"
)
# Get time series
response = client.observation.fetch(
variable_dcids=["UnemploymentRate_Person"],
entity_dcids=["country/USA"],
date="all"
)
# Query by hierarchy
response = client.observation.fetch(
variable_dcids=["MedianIncome_Household"],
entity_expression="geoId/06<-containedInPlace+{typeOf:County}",
date="2020"
)
Explore entity relationships and properties within the knowledge graph. See references/node.md for comprehensive documentation.
Primary use cases:
Common patterns:
# Discover properties
labels = client.node.fetch_property_labels(
node_dcids=["geoId/06"],
out=True
)
# Navigate hierarchy
children = client.node.fetch_place_children(
node_dcids=["country/USA"]
)
# Get entity names
names = client.node.fetch_entity_names(
node_dcids=["geoId/06", "geoId/48"]
)
Translate entity names, coordinates, or external IDs into Data Commons IDs (DCIDs). See references/resolve.md for comprehensive documentation.
Primary use cases:
Common patterns:
# Resolve by name
response = client.resolve.fetch_dcids_by_name(
names=["California", "Texas"],
entity_type="State"
)
# Resolve by coordinates
dcid = client.resolve.fetch_dcid_by_coordinates(
latitude=37.7749,
longitude=-122.4194
)
# Resolve Wikidata IDs
response = client.resolve.fetch_dcids_by_wikidata_id(
wikidata_ids=["Q30", "Q99"]
)
Most Data Commons queries follow this pattern:
Resolve entities (if starting with names):
resolve_response = client.resolve.fetch_dcids_by_name(
names=["California", "Texas"]
)
dcids = [r["candidates"][0]["dcid"]
for r in resolve_response.to_dict().values()
if r["candidates"]]
Discover available variables (optional):
variables = client.observation.fetch_available_statistical_variables(
entity_dcids=dcids
)
Query statistical data:
response = client.observation.fetch(
variable_dcids=["Count_Person", "UnemploymentRate_Person"],
entity_dcids=dcids,
date="latest"
)
Process results:
# As dictionary
data = response.to_dict()
# As Pandas DataFrame
df = response.to_observations_as_records()
Statistical variables use specific naming patterns in Data Commons:
Common variable patterns:
Count_Person - Total populationCount_Person_Female - Female populationUnemploymentRate_Person - Unemployment rateMedian_Income_Household - Median household incomeCount_Death - Death countMedian_Age_Person - Median ageDiscovery methods:
# Check what variables are available for an entity
available = client.observation.fetch_available_statistical_variables(
entity_dcids=["geoId/06"]
)
# Or explore via the web interface
# https://datacommons.org/tools/statvar
All observation responses integrate with Pandas:
response = client.observation.fetch(
variable_dcids=["Count_Person"],
entity_dcids=["geoId/06", "geoId/48"],
date="all"
)
# Convert to DataFrame
df = response.to_observations_as_records()
# Columns: date, entity, variable, value
# Reshape for analysis
pivot = df.pivot_table(
values='value',
index='date',
columns='entity'
)
For datacommons.org (default):
export DC_API_KEY="your_key"client = DataCommonsClient(api_key="your_key")For custom Data Commons instances:
client = DataCommonsClient(url="https://custom.datacommons.org")Comprehensive documentation for each endpoint is available in the references/ directory:
references/observation.md: Complete Observation API documentation with all methods, parameters, response formats, and common use casesreferences/node.md: Complete Node API documentation for graph exploration, property queries, and hierarchy navigationreferences/resolve.md: Complete Resolve API documentation for entity identification and DCID resolutionreferences/getting_started.md: Quickstart guide with end-to-end examples and common patternsfetch_available_statistical_variables() to see what's queryablefilter_facet_domains to ensure data from the same sourcereferences/ directoryView Count
0
Download Count
0
Favorite Count
0
Quality Score
71