Usually the case when one wants to change a field type to another, for instance the original collection may have "numerical" or "date" fields saved as strings:
{
"name": "Alice",
"salary": "57871",
"dob": "1986-08-21"
},
{
"name": "Bob",
"salary": "48974",
"dob": "1990-11-04"
}
The objective would be to update a humongous collection like the above to
{
"name": "Alice",
"salary": 57871,
"dob": ISODate("1986-08-21T00:00:00.000Z")
},
{
"name": "Bob",
"salary": 48974,
"dob": ISODate("1990-11-04T00:00:00.000Z")
}
For relatively small data, one can achieve the above by iterating the collection using a snapshot
with the cursor's forEach()
method and updating each document as follows:
db.test.find({
"salary": { "$exists": true, "$type": 2 },
"dob": { "$exists": true, "$type": 2 }
}).snapshot().forEach(function(doc){
var newSalary = parseInt(doc.salary),
newDob = new ISODate(doc.dob);
db.test.updateOne(
{ "_id": doc._id },
{ "$set": { "salary": newSalary, "dob": newDob } }
);
});
Whilst this is optimal for small collections, performance with large collections is greatly reduced since looping through a large dataset and sending each update operation per request to the server incurs a computational penalty.
The Bulk()
API comes to the rescue and greatly improves performance since write operations are sent to the server only once in bulk. Efficiency is achieved since the method does not send every write request to the server (as with the current update statement within the forEach()
loop) but just once in every 1000 requests, thus making updates more efficient and quicker than currently is.
Using the same concept above with the forEach()
loop to create the batches, we can update the collection in bulk as follows. In this demonstration the Bulk()
API available in MongoDB versions >= 2.6
and < 3.2
uses the initializeUnorderedBulkOp()
method to execute in parallel, as well as in a nondeterministic order, the write operations in the batches.
It updates all the documents in the clients collection by changing the salary
and dob
fields to numerical
and datetime
values respectively:
var bulk = db.test.initializeUnorderedBulkOp(),
counter = 0; // counter to keep track of the batch update size
db.test.find({
"salary": { "$exists": true, "$type": 2 },
"dob": { "$exists": true, "$type": 2 }
}).snapshot().forEach(function(doc){
var newSalary = parseInt(doc.salary),
newDob = new ISODate(doc.dob);
bulk.find({ "_id": doc._id }).updateOne({
"$set": { "salary": newSalary, "dob": newDob }
});
counter++; // increment counter
if (counter % 1000 == 0) {
bulk.execute(); // Execute per 1000 operations and re-initialize every 1000 update statements
bulk = db.test.initializeUnorderedBulkOp();
}
});
The next example applies to the new MongoDB version 3.2
which has since deprecated the Bulk()
API and provided a newer set of apis using bulkWrite()
.
It uses the same cursors as above but creates the arrays with the bulk operations using the same forEach()
cursor method to push each bulk write document to the array. Because write commands can accept no more than 1000 operations, there's need to group operations to have at most 1000 operations and re-intialise the array when the loop hits the 1000 iteration:
var cursor = db.test.find({
"salary": { "$exists": true, "$type": 2 },
"dob": { "$exists": true, "$type": 2 }
}),
bulkUpdateOps = [];
cursor.snapshot().forEach(function(doc){
var newSalary = parseInt(doc.salary),
newDob = new ISODate(doc.dob);
bulkUpdateOps.push({
"updateOne": {
"filter": { "_id": doc._id },
"update": { "$set": { "salary": newSalary, "dob": newDob } }
}
});
if (bulkUpdateOps.length === 1000) {
db.test.bulkWrite(bulkUpdateOps);
bulkUpdateOps = [];
}
});
if (bulkUpdateOps.length > 0) { db.test.bulkWrite(bulkUpdateOps); }