--- layout: doc_page --- # groupBy Queries These types of queries take a groupBy query object and return an array of JSON objects where each object represents a grouping asked for by the query. Note: If you only want to do straight aggregates for some time range, we highly recommend using [TimeseriesQueries](../querying/timeseriesquery.html) instead. The performance will be substantially better. If you want to do an ordered groupBy over a single dimension, please look at [TopN](../querying/topnquery.html) queries. The performance for that use case is also substantially better. An example groupBy query object is shown below: ``` json { "queryType": "groupBy", "dataSource": "sample_datasource", "granularity": "day", "dimensions": ["country", "device"], "limitSpec": { "type": "default", "limit": 5000, "columns": ["country", "data_transfer"] }, "filter": { "type": "and", "fields": [ { "type": "selector", "dimension": "carrier", "value": "AT&T" }, { "type": "or", "fields": [ { "type": "selector", "dimension": "make", "value": "Apple" }, { "type": "selector", "dimension": "make", "value": "Samsung" } ] } ] }, "aggregations": [ { "type": "longSum", "name": "total_usage", "fieldName": "user_count" }, { "type": "doubleSum", "name": "data_transfer", "fieldName": "data_transfer" } ], "postAggregations": [ { "type": "arithmetic", "name": "avg_usage", "fn": "/", "fields": [ { "type": "fieldAccess", "fieldName": "data_transfer" }, { "type": "fieldAccess", "fieldName": "total_usage" } ] } ], "intervals": [ "2012-01-01T00:00:00.000/2012-01-03T00:00:00.000" ], "having": { "type": "greaterThan", "aggregation": "total_usage", "value": 100 } } ``` There are 11 main parts to a groupBy query: |property|description|required?| |--------|-----------|---------| |queryType|This String should always be "groupBy"; this is the first thing Druid looks at to figure out how to interpret the query|yes| |dataSource|A String or Object defining the data source to query, very similar to a table in a relational database. See [DataSource](../querying/datasource.html) for more information.|yes| |dimensions|A JSON list of dimensions to do the groupBy over; or see [DimensionSpec](../querying/dimensionspecs.html) for ways to extract dimensions. |yes| |limitSpec|See [LimitSpec](../querying/limitspec.html).|no| |having|See [Having](../querying/having.html).|no| |granularity|Defines the granularity of the query. See [Granularities](../querying/granularities.html)|yes| |filter|See [Filters](../querying/filters.html)|no| |aggregations|See [Aggregations](../querying/aggregations.html)|yes| |postAggregations|See [Post Aggregations](../querying/post-aggregations.html)|no| |intervals|A JSON Object representing ISO-8601 Intervals. This defines the time ranges to run the query over.|yes| |context|An additional JSON Object which can be used to specify certain flags.|no| To pull it all together, the above query would return *n\*m* data points, up to a maximum of 5000 points, where n is the cardinality of the `country` dimension, m is the cardinality of the `device` dimension, each day between 2012-01-01 and 2012-01-03, from the `sample_datasource` table. Each data point contains the (long) sum of `total_usage` if the value of the data point is greater than 100, the (double) sum of `data_transfer` and the (double) result of `total_usage` divided by `data_transfer` for the filter set for a particular grouping of `country` and `device`. The output looks like this: ```json [ { "version" : "v1", "timestamp" : "2012-01-01T00:00:00.000Z", "event" : { "country" : , "device" : , "total_usage" : , "data_transfer" :, "avg_usage" : } }, { "version" : "v1", "timestamp" : "2012-01-01T00:00:12.000Z", "event" : { "dim1" : , "dim2" : , "sample_name1" : , "sample_name2" :, "avg_usage" : } }, ... ] ```