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SQL to Aggregation Mapping Chart

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The aggregation pipeline allows MongoDB to provide native aggregation capabilities that corresponds to many common data aggregation operations in SQL.

The following table provides an overview of common SQL aggregation terms, functions, and concepts and the corresponding MongoDB aggregation operators:

SQL Terms, Functions, and Concepts
MongoDB Aggregation Operators
WHERE
GROUP BY
HAVING
SELECT
ORDER BY
LIMIT
SUM()
COUNT()
join
SELECT INTO NEW_TABLE
MERGE INTO TABLE
UNION ALL

For a list of all aggregation pipeline and expression operators, see Aggregation Pipeline Quick Reference.

Tip

See also:

The following table presents a quick reference of SQL aggregation statements and the corresponding MongoDB statements. The examples in the table assume the following conditions:

  • The SQL examples assume two tables, orders and order_lineitem that join by the order_lineitem.order_id and the orders.id columns.

  • The MongoDB examples assume one collection orders that contain documents of the following prototype:

    {
    cust_id: "abc123",
    ord_date: ISODate("2012-11-02T17:04:11.102Z"),
    status: 'A',
    price: 50,
    items: [ { sku: "xxx", qty: 25, price: 1 },
    { sku: "yyy", qty: 25, price: 1 } ]
    }
SQL Example
MongoDB Example
Description
SELECT COUNT(*) AS count
FROM orders
db.orders.aggregate( [
{
$group: {
_id: null,
count: { $sum: 1 }
}
}
] )
Count all records from orders
SELECT SUM(price) AS total
FROM orders
db.orders.aggregate( [
{
$group: {
_id: null,
total: { $sum: "$price" }
}
}
] )
Sum the price field from orders
SELECT cust_id,
SUM(price) AS total
FROM orders
GROUP BY cust_id
db.orders.aggregate( [
{
$group: {
_id: "$cust_id",
total: { $sum: "$price" }
}
}
] )
For each unique cust_id, sum the price field.
SELECT cust_id,
SUM(price) AS total
FROM orders
GROUP BY cust_id
ORDER BY total
db.orders.aggregate( [
{
$group: {
_id: "$cust_id",
total: { $sum: "$price" }
}
},
{ $sort: { total: 1 } }
] )
For each unique cust_id, sum the price field, results sorted by sum.
SELECT cust_id,
ord_date,
SUM(price) AS total
FROM orders
GROUP BY cust_id,
ord_date
db.orders.aggregate( [
{
$group: {
_id: {
cust_id: "$cust_id",
ord_date: { $dateToString: {
format: "%Y-%m-%d",
date: "$ord_date"
}}
},
total: { $sum: "$price" }
}
}
] )
For each unique cust_id, ord_date grouping, sum the price field. Excludes the time portion of the date.
SELECT cust_id,
count(*)
FROM orders
GROUP BY cust_id
HAVING count(*) > 1
db.orders.aggregate( [
{
$group: {
_id: "$cust_id",
count: { $sum: 1 }
}
},
{ $match: { count: { $gt: 1 } } }
] )
For cust_id with multiple records, return the cust_id and the corresponding record count.
SELECT cust_id,
ord_date,
SUM(price) AS total
FROM orders
GROUP BY cust_id,
ord_date
HAVING total > 250
db.orders.aggregate( [
{
$group: {
_id: {
cust_id: "$cust_id",
ord_date: { $dateToString: {
format: "%Y-%m-%d",
date: "$ord_date"
}}
},
total: { $sum: "$price" }
}
},
{ $match: { total: { $gt: 250 } } }
] )
For each unique cust_id, ord_date grouping, sum the price field and return only where the sum is greater than 250. Excludes the time portion of the date.
SELECT cust_id,
SUM(price) as total
FROM orders
WHERE status = 'A'
GROUP BY cust_id
db.orders.aggregate( [
{ $match: { status: 'A' } },
{
$group: {
_id: "$cust_id",
total: { $sum: "$price" }
}
}
] )
For each unique cust_id with status A, sum the price field.
SELECT cust_id,
SUM(price) as total
FROM orders
WHERE status = 'A'
GROUP BY cust_id
HAVING total > 250
db.orders.aggregate( [
{ $match: { status: 'A' } },
{
$group: {
_id: "$cust_id",
total: { $sum: "$price" }
}
},
{ $match: { total: { $gt: 250 } } }
] )
For each unique cust_id with status A, sum the price field and return only where the sum is greater than 250.
SELECT cust_id,
SUM(li.qty) as qty
FROM orders o,
order_lineitem li
WHERE li.order_id = o.id
GROUP BY cust_id
db.orders.aggregate( [
{ $unwind: "$items" },
{
$group: {
_id: "$cust_id",
qty: { $sum: "$items.qty" }
}
}
] )
For each unique cust_id, sum the corresponding line item qty fields associated with the orders.
SELECT COUNT(*)
FROM (SELECT cust_id,
ord_date
FROM orders
GROUP BY cust_id,
ord_date)
as DerivedTable
db.orders.aggregate( [
{
$group: {
_id: {
cust_id: "$cust_id",
ord_date: { $dateToString: {
format: "%Y-%m-%d",
date: "$ord_date"
}}
}
}
},
{
$group: {
_id: null,
count: { $sum: 1 }
}
}
] )
Count the number of distinct cust_id, ord_date groupings. Excludes the time portion of the date.

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