2

I want to update large numbers (> 100,000) of documents most efficiently.

My first naive approach was doing it on the JS level, writing scripts that fetch _ids first, then loop through _ids and invoke updates by _id (full docs or $set patches).

I ran into memory issues, also sharding the data into chunks of max. 500 documents (with opening and closing the connection) doesn't seem to work well.

So how can i solve this on the MongoDB level?
Best practice?

I have 3 common use cases, typically maintenance work flows:

1. Change type of value of property, without changing the value.

// before
{
  timestamp : '1446987395'
}

// after
{
  timestamp : 1446987395
}

2. Add new property based on value of existing property.

// before
{
  firstname : 'John',
  lastname  : 'Doe'
}

// after
{
  firstname : 'John',
  lastname  : 'Doe',
  name      : 'John Doe'
}

3. Simply adding removing properties from documents.

// before
{
  street    : 'Whatever Ave',
  street_no : '1025'
}

// after
{
  street    : 'Whatever Ave',
  no        : '1025'
}

Thanks for helping out.

7

If your MongoDB server is 2.6 or newer, it would be better to take advantage of using a write commands Bulk API that allow for the execution of bulk update operations which are simply abstractions on top of the server to make it easy to build bulk operations. These bulk operations come mainly in two flavours:

  • Ordered bulk operations. These operations execute all the operation in order and error out on the first write error.
  • Unordered bulk operations. These operations execute all the operations in parallel and aggregates up all the errors. Unordered bulk operations do not guarantee order of execution.

Note, for older servers than 2.6 the API will downconvert the operations. However it's not possible to downconvert 100% so there might be some edge cases where it cannot correctly report the right numbers.

For your three common use cases, you could implement the Bulk API like this:

Case 1. Change type of value of property, without changing the value:

var MongoClient = require('mongodb').MongoClient;

MongoClient.connect("mongodb://localhost:27017/test", function(err, db) {
    // Handle error
    if(err) throw err;

    // Get the collection and bulk api artefacts
    var col = db.collection('users'),           
        bulk = col.initializeOrderedBulkOp(), // Initialize the Ordered Batch
        counter = 0;        

    // Case 1. Change type of value of property, without changing the value.        
    col.find({"timestamp": {"$exists": true, "$type": 2} }).each(function (err, doc) {

        var newTimestamp = parseInt(doc.timestamp);
        bulk.find({ "_id": doc._id }).updateOne({
            "$set": { "timestamp": newTimestamp }
        });

        counter++;

        if (counter % 1000 == 0 ) {
            bulk.execute(function(err, result) {  
                // re-initialise batch operation           
                bulk = col.initializeOrderedBulkOp();
            });
        }
    });

    if (counter % 1000 != 0 ){
        bulk.execute(function(err, result) {
            // do something with result
            db.close();
        }); 
    } 
});

Case 2. Add new property based on value of existing property:

MongoClient.connect("mongodb://localhost:27017/test", function(err, db) {
    // Handle error
    if(err) throw err;

    // Get the collection and bulk api artefacts
    var col = db.collection('users'),           
        bulk = col.initializeOrderedBulkOp(), // Initialize the Ordered Batch
        counter = 0;        

    // Case 2. Add new property based on value of existing property.        
    col.find({"name": {"$exists": false } }).each(function (err, doc) {

        var fullName = doc.firstname + " " doc.lastname;
        bulk.find({ "_id": doc._id }).updateOne({
            "$set": { "name": fullName }
        });

        counter++;

        if (counter % 1000 == 0 ) {
            bulk.execute(function(err, result) {  
                // re-initialise batch operation           
                bulk = col.initializeOrderedBulkOp();
            });
        }
    });

    if (counter % 1000 != 0 ){
        bulk.execute(function(err, result) {
            // do something with result
            db.close();
        }); 
    } 
});

Case 3. Simply adding removing properties from documents.

MongoClient.connect("mongodb://localhost:27017/test", function(err, db) {
    // Handle error
    if(err) throw err;

    // Get the collection and bulk api artefacts
    var col = db.collection('users'),           
        bulk = col.initializeOrderedBulkOp(), // Initialize the Ordered Batch
        counter = 0;        

    // Case 3. Simply adding removing properties from documents.    
    col.find({"street_no": {"$exists": true } }).each(function (err, doc) {

        bulk.find({ "_id": doc._id }).updateOne({
            "$set": { "no": doc.street_no },
            "$unset": { "street_no": "" }
        });

        counter++;

        if (counter % 1000 == 0 ) {
            bulk.execute(function(err, result) {  
                // re-initialise batch operation           
                bulk = col.initializeOrderedBulkOp();
            });
        }
    });

    if (counter % 1000 != 0 ){
        bulk.execute(function(err, result) {
            // do something with result
            db.close();
        }); 
    } 
});
  • 1
    perfect, thank you chridam, missed out on the bulk API – ezmilhouse Nov 8 '15 at 22:43
  • 1
    suggestions for speeding up the code: (1) use a limited projection on the find query, if you only need to touch one field, set the projection for that field only, this will speed up delivering docs on the wire. (2) As mentioned by @chridam using the UnorderedBulkOp updates in parallel, so it's much faster. – marmor Nov 9 '16 at 13:45

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