--- pretty_name: Google Community Mobility Reports — global daily license: cc-by-4.0 size_categories: - 10M ## Coverage - **Time:** 2020-02-15 → 2022-10-15 - **Cadence:** `daily` (observed median spacing: 1 days) - **Geography levels:** `national`, `subnational-state`, `subnational-county`, `subnational-city` — 5306 unique location IDs - **Countries:** multiple - **Pathogens:** — - **Surveillance category:** `mobility` - **Rows:** 11,728,497 ## Columns | Column | Unit | value_type | Aggregation | Description | |--------|------|------------|-------------|-------------| | `retail_and_recreation` | percent change vs. baseline | `index` | `mean` | Daily % change in visits + length of stay at retail / recreation places (restaurants, cafes, shopping centers, theme parks, museums, libraries, cinemas) compared to the baseline (median value for the 5-week period Jan 3 – Feb 6, 2020). | | `grocery_and_pharmacy` | percent change vs. baseline | `index` | `mean` | Daily % change in visits to grocery markets, food warehouses, farmers' markets, specialty food shops, drug stores, pharmacies. | | `parks` | percent change vs. baseline | `index` | `mean` | Daily % change in visits to local parks, national parks, public beaches, marinas, dog parks, plazas, public gardens. | | `transit_stations` | percent change vs. baseline | `index` | `mean` | Daily % change in visits to public transport hubs (subway, bus, train stations). | | `workplaces` | percent change vs. baseline | `index` | `mean` | Daily % change in visits to places of work. | | `residential` | percent change vs. baseline | `index` | `mean` | Daily % change in time spent in places of residence. (Note: this is length-of-stay, not visit count — different metric than the other five.) | ### Additional data columns - **`location_name`** — Most-specific populated source field — county name for county rows, metro name for metro rows, ISO sub-region name for state rows, country name for national rows. `location_id` is canonical. ## Interpretation caveats Things that may differ from how other sources define a similar measure. If you're combining this dataset with another, read these first. - **`residential`** — Residential is reported as % change in *length of stay*, not visit count. The other five categories are visit-based. Don't sum or compare directly across these two flavours. - **`parks`** — Parks shows extreme seasonal cyclicity (winter vs. summer is a 200%+ swing in many countries) that reflects normal seasonality, not pandemic-period behaviour change. Detrend before any pandemic analysis. - **`workplaces`** — Holidays / weekends are baked into the baseline since the baseline is a median across weekdays + weekends. Day-of-week cycles in the output are real but reflect *deviation* from the comparable weekday's baseline. ## Access - **Availability:** `inactive` - **Access type:** `csv` - **License:** cc-by-4.0 - **Tier:** 2 --- *Schema version `0.1` · Last ingested 2026-04-26T12:14:44Z · `source_id: global-mobility` · Manifest section §15.7*