datacommons-client

Work with Data Commons, a platform providing programmatic access to public statistical data from global sources. Use this skill when working with demographic data, economic indicators, health statistics, environmental data, or any public datasets available through Data Commons. Applicable for querying population statistics, GDP figures, unemployment rates, disease prevalence, geographic entity resolution, and exploring relationships between statistical entities.

7 stars

Best use case

datacommons-client is best used when you need a repeatable AI agent workflow instead of a one-off prompt.

Work with Data Commons, a platform providing programmatic access to public statistical data from global sources. Use this skill when working with demographic data, economic indicators, health statistics, environmental data, or any public datasets available through Data Commons. Applicable for querying population statistics, GDP figures, unemployment rates, disease prevalence, geographic entity resolution, and exploring relationships between statistical entities.

Teams using datacommons-client should expect a more consistent output, faster repeated execution, less prompt rewriting.

When to use this skill

  • You want a reusable workflow that can be run more than once with consistent structure.

When not to use this skill

  • You only need a quick one-off answer and do not need a reusable workflow.
  • You cannot install or maintain the underlying files, dependencies, or repository context.

Installation

Claude Code / Cursor / Codex

$curl -o ~/.claude/skills/datacommons-client/SKILL.md --create-dirs "https://raw.githubusercontent.com/sanand0/scientific-research/main/.claude/skills/datacommons-client/SKILL.md"

Manual Installation

  1. Download SKILL.md from GitHub
  2. Place it in .claude/skills/datacommons-client/SKILL.md inside your project
  3. Restart your AI agent — it will auto-discover the skill

How datacommons-client Compares

Feature / Agentdatacommons-clientStandard Approach
Platform SupportNot specifiedLimited / Varies
Context Awareness High Baseline
Installation ComplexityUnknownN/A

Frequently Asked Questions

What does this skill do?

Work with Data Commons, a platform providing programmatic access to public statistical data from global sources. Use this skill when working with demographic data, economic indicators, health statistics, environmental data, or any public datasets available through Data Commons. Applicable for querying population statistics, GDP figures, unemployment rates, disease prevalence, geographic entity resolution, and exploring relationships between statistical entities.

Where can I find the source code?

You can find the source code on GitHub using the link provided at the top of the page.

SKILL.md Source

# Data Commons Client

## Overview

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.

## Installation

Install the Data Commons Python client with Pandas support:

```bash
uv pip install "datacommons-client[Pandas]"
```

For basic usage without Pandas:
```bash
uv pip install datacommons-client
```

## Core Capabilities

The Data Commons API consists of three main endpoints, each detailed in dedicated reference files:

### 1. Observation Endpoint - Statistical Data Queries

Query time-series statistical data for entities. See `references/observation.md` for comprehensive documentation.

**Primary use cases:**
- Retrieve population, economic, health, or environmental statistics
- Access historical time-series data for trend analysis
- Query data for hierarchies (all counties in a state, all countries in a region)
- Compare statistics across multiple entities
- Filter by data source for consistency

**Common patterns:**
```python
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"
)
```

### 2. Node Endpoint - Knowledge Graph Exploration

Explore entity relationships and properties within the knowledge graph. See `references/node.md` for comprehensive documentation.

**Primary use cases:**
- Discover available properties for entities
- Navigate geographic hierarchies (parent/child relationships)
- Retrieve entity names and metadata
- Explore connections between entities
- List all entity types in the graph

**Common patterns:**
```python
# 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"]
)
```

### 3. Resolve Endpoint - Entity Identification

Translate entity names, coordinates, or external IDs into Data Commons IDs (DCIDs). See `references/resolve.md` for comprehensive documentation.

**Primary use cases:**
- Convert place names to DCIDs for queries
- Resolve coordinates to places
- Map Wikidata IDs to Data Commons entities
- Handle ambiguous entity names

**Common patterns:**
```python
# 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"]
)
```

## Typical Workflow

Most Data Commons queries follow this pattern:

1. **Resolve entities** (if starting with names):
   ```python
   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"]]
   ```

2. **Discover available variables** (optional):
   ```python
   variables = client.observation.fetch_available_statistical_variables(
       entity_dcids=dcids
   )
   ```

3. **Query statistical data**:
   ```python
   response = client.observation.fetch(
       variable_dcids=["Count_Person", "UnemploymentRate_Person"],
       entity_dcids=dcids,
       date="latest"
   )
   ```

4. **Process results**:
   ```python
   # As dictionary
   data = response.to_dict()

   # As Pandas DataFrame
   df = response.to_observations_as_records()
   ```

## Finding Statistical Variables

Statistical variables use specific naming patterns in Data Commons:

**Common variable patterns:**
- `Count_Person` - Total population
- `Count_Person_Female` - Female population
- `UnemploymentRate_Person` - Unemployment rate
- `Median_Income_Household` - Median household income
- `Count_Death` - Death count
- `Median_Age_Person` - Median age

**Discovery methods:**
```python
# 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
```

## Working with Pandas

All observation responses integrate with Pandas:

```python
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'
)
```

## API Authentication

**For datacommons.org (default):**
- An API key is required
- Set via environment variable: `export DC_API_KEY="your_key"`
- Or pass when initializing: `client = DataCommonsClient(api_key="your_key")`
- Request keys at: https://apikeys.datacommons.org/

**For custom Data Commons instances:**
- No API key required
- Specify custom endpoint: `client = DataCommonsClient(url="https://custom.datacommons.org")`

## Reference Documentation

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 cases
- **`references/node.md`**: Complete Node API documentation for graph exploration, property queries, and hierarchy navigation
- **`references/resolve.md`**: Complete Resolve API documentation for entity identification and DCID resolution
- **`references/getting_started.md`**: Quickstart guide with end-to-end examples and common patterns

## Additional Resources

- **Official Documentation**: https://docs.datacommons.org/api/python/v2/
- **Statistical Variable Explorer**: https://datacommons.org/tools/statvar
- **Data Commons Browser**: https://datacommons.org/browser/
- **GitHub Repository**: https://github.com/datacommonsorg/api-python

## Tips for Effective Use

1. **Always start with resolution**: Convert names to DCIDs before querying data
2. **Use relation expressions for hierarchies**: Query all children at once instead of individual queries
3. **Check data availability first**: Use `fetch_available_statistical_variables()` to see what's queryable
4. **Leverage Pandas integration**: Convert responses to DataFrames for analysis
5. **Cache resolutions**: If querying the same entities repeatedly, store name→DCID mappings
6. **Filter by facet for consistency**: Use `filter_facet_domains` to ensure data from the same source
7. **Read reference docs**: Each endpoint has extensive documentation in the `references/` directory

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