focal (3) mongoc_aggregate.3.gz

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NAME

       mongoc_aggregate - Aggregation Framework Examples

       This  document  provides  a number of practical examples that display the capabilities of the aggregation
       framework.

       The Aggregations using the Zip Codes Data Set examples uses a publicly available data set of all zipcodes
       and populations in the United States. These data are available at: zips.json.

REQUIREMENTS

       Let's check if everything is installed.

       Use the following command to load zips.json data set into mongod instance:

          $ mongoimport --drop -d test -c zipcodes zips.json

       Let's use the MongoDB shell to verify that everything was imported successfully.

          $ mongo test
          connecting to: test
          > db.zipcodes.count()
          29467
          > db.zipcodes.findOne()
          {
                "_id" : "35004",
                "city" : "ACMAR",
                "loc" : [
                        -86.51557,
                        33.584132
                ],
                "pop" : 6055,
                "state" : "AL"
          }

AGGREGATIONS USING THE ZIP CODES DATA SET

       Each document in this collection has the following form:

          {
            "_id" : "35004",
            "city" : "Acmar",
            "state" : "AL",
            "pop" : 6055,
            "loc" : [-86.51557, 33.584132]
          }

       In these documents:

       • The _id field holds the zipcode as a string.

       • The city field holds the city name.

       • The state field holds the two letter state abbreviation.

       • The pop field holds the population.

       • The loc field holds the location as a [latitude, longitude] array.

STATES WITH POPULATIONS OVER 10 MILLION

       To get all states with a population greater than 10 million, use the following aggregation pipeline:

       aggregation1.c

          #include <mongoc/mongoc.h>
          #include <stdio.h>

          static void
          print_pipeline (mongoc_collection_t *collection)
          {
             mongoc_cursor_t *cursor;
             bson_error_t error;
             const bson_t *doc;
             bson_t *pipeline;
             char *str;

             pipeline = BCON_NEW ("pipeline",
                                  "[",
                                  "{",
                                  "$group",
                                  "{",
                                  "_id",
                                  "$state",
                                  "total_pop",
                                  "{",
                                  "$sum",
                                  "$pop",
                                  "}",
                                  "}",
                                  "}",
                                  "{",
                                  "$match",
                                  "{",
                                  "total_pop",
                                  "{",
                                  "$gte",
                                  BCON_INT32 (10000000),
                                  "}",
                                  "}",
                                  "}",
                                  "]");

             cursor = mongoc_collection_aggregate (
                collection, MONGOC_QUERY_NONE, pipeline, NULL, NULL);

             while (mongoc_cursor_next (cursor, &doc)) {
                str = bson_as_canonical_extended_json (doc, NULL);
                printf ("%s\n", str);
                bson_free (str);
             }

             if (mongoc_cursor_error (cursor, &error)) {
                fprintf (stderr, "Cursor Failure: %s\n", error.message);
             }

             mongoc_cursor_destroy (cursor);
             bson_destroy (pipeline);
          }

          int
          main (int argc, char *argv[])
          {
             mongoc_client_t *client;
             mongoc_collection_t *collection;
             const char *uri_string =
                "mongodb://localhost:27017/?appname=aggregation-example";
             mongoc_uri_t *uri;
             bson_error_t error;

             mongoc_init ();

             uri = mongoc_uri_new_with_error (uri_string, &error);
             if (!uri) {
                fprintf (stderr,
                         "failed to parse URI: %s\n"
                         "error message:       %s\n",
                         uri_string,
                         error.message);
                return EXIT_FAILURE;
             }

             client = mongoc_client_new_from_uri (uri);
             if (!client) {
                return EXIT_FAILURE;
             }

             mongoc_client_set_error_api (client, 2);
             collection = mongoc_client_get_collection (client, "test", "zipcodes");

             print_pipeline (collection);

             mongoc_uri_destroy (uri);
             mongoc_collection_destroy (collection);
             mongoc_client_destroy (client);

             mongoc_cleanup ();

             return EXIT_SUCCESS;
          }

       You should see a result like the following:

          { "_id" : "PA", "total_pop" : 11881643 }
          { "_id" : "OH", "total_pop" : 10847115 }
          { "_id" : "NY", "total_pop" : 17990455 }
          { "_id" : "FL", "total_pop" : 12937284 }
          { "_id" : "TX", "total_pop" : 16986510 }
          { "_id" : "IL", "total_pop" : 11430472 }
          { "_id" : "CA", "total_pop" : 29760021 }

       The above aggregation pipeline is build from two pipeline operators: $group and $match.

       The  $group  pipeline operator requires _id field where we specify grouping; remaining fields specify how
       to generate composite value and must use one of  the  group  aggregation  functions:  $addToSet,  $first,
       $last,  $max,  $min,  $avg,  $push,  $sum.  The  $match  pipeline operator syntax is the same as the read
       operation query syntax.

       The $group process reads all documents and for each state it creates a separate document, for example:

          { "_id" : "WA", "total_pop" : 4866692 }

       The total_pop field uses the $sum aggregation function to sum the values of all pop fields in the  source
       documents.

       Documents  created by $group are piped to the $match pipeline operator. It returns the documents with the
       value of total_pop field greater than or equal to 10 million.

AVERAGE CITY POPULATION BY STATE

       To get the first three  states  with  the  greatest  average  population  per  city,  use  the  following
       aggregation:

          pipeline = BCON_NEW ("pipeline", "[",
             "{", "$group", "{", "_id", "{", "state", "$state", "city", "$city", "}", "pop", "{", "$sum", "$pop", "}", "}", "}",
             "{", "$group", "{", "_id", "$_id.state", "avg_city_pop", "{", "$avg", "$pop", "}", "}", "}",
             "{", "$sort", "{", "avg_city_pop", BCON_INT32 (-1), "}", "}",
             "{", "$limit", BCON_INT32 (3) "}",
          "]");

       This aggregate pipeline produces:

          { "_id" : "DC", "avg_city_pop" : 303450.0 }
          { "_id" : "FL", "avg_city_pop" : 27942.29805615551 }
          { "_id" : "CA", "avg_city_pop" : 27735.341099720412 }

       The above aggregation pipeline is build from three pipeline operators: $group, $sort and $limit.

       The first $group operator creates the following documents:

          { "_id" : { "state" : "WY", "city" : "Smoot" }, "pop" : 414 }

       Note, that the $group operator can't use nested documents except the _id field.

       The second $group uses these documents to create the following documents:

          { "_id" : "FL", "avg_city_pop" : 27942.29805615551 }

       These  documents  are  sorted by the avg_city_pop field in descending order. Finally, the $limit pipeline
       operator returns the first 3 documents from the sorted set.

AUTHOR

       MongoDB, Inc

       2017-present, MongoDB, Inc