gtm (go tail mongo) is a utility written in Go which tails the MongoDB oplog and sends create, update, delete events to your code. It can be used to send emails to new users, index documents, write time series data, or something else.
- Go
- globalsign/mgo, a mongodb driver for Go
- mongodb
go get github.com/rwynn/gtm
gtm uses the MongoDB oplog as an event source. You will need to ensure that MongoDB is configured to produce an oplog by deploying a replica set.
If you haven't already done so, follow the 5 step procedure to initiate and validate your replica set. For local testing your replica set may contain a single member.
package main
import "github.com/globalsign/mgo"
import "github.com/globalsign/mgo/bson"
import "github.com/rwynn/gtm"
import "fmt"
func main() {
// get a mgo session
session, err := mgo.Dial("localhost")
if err != nil {
panic(err)
}
defer session.Close()
session.SetMode(mgo.Monotonic, true)
// nil options get initialized to gtm.DefaultOptions()
ctx := gtm.Start(session, nil)
// ctx.OpC is a channel to read ops from
// ctx.ErrC is a channel to read errors from
// ctx.Stop() stops all go routines started by gtm.Start
for {
// loop forever receiving events
select {
case err := <-ctx.ErrC:
// handle errors
fmt.Println(err)
case op := <-ctx.OpC:
// op will be an insert, delete, update, or drop to mongo
// you can check which by calling
// op.IsInsert(), op.IsDelete(), op.IsUpdate(), or op.IsDrop()
// op.Data will get you the full document for inserts and updates
// op.UpdateDescription will get you a map describing the set of changes
// as shown in https://docs.mongodb.com/manual/reference/change-events/#update-event
// op.UpdateDescription will only be available when you update docs via $set, $push, $unset, etc.
// if you replace the entire document using an update command, then you will NOT get
// information in op.UpdateDescription. e.g. db.update(doc, {total: "replace"});
msg := fmt.Sprintf(`Got op <%v> for object <%v>
in database <%v>
and collection <%v>
and data <%v>
and change <%v>
and timestamp <%v>`,
op.Operation, op.Id, op.GetDatabase(),
op.GetCollection(), op.Data, op.UpdateDescription, op.Timestamp)
fmt.Println(msg) // or do something more interesting
}
}
}
func PipeBuilder(namespace string, changeStream bool) ([]interface{}, error) {
// to build your pipelines for change events you will want to reference
// the MongoDB reference for change events at
// https://docs.mongodb.com/manual/reference/change-events/
// you will only receive changeStream == true when you configure gtm with
// ChangeStreamNS (requies MongoDB 3.6+). You cannot build pipelines for
// changes using legacy direct oplog tailing
if namespace == "users.users" {
// given a set of docs like {username: "joe", email: "[email protected]", amount: 1}
if changeStream {
return []interface{}{
bson.M{"$match": bson.M{"fullDocument.username": "joe"}},
}, nil
} else {
return []interface{}{
bson.M{"$match": bson.M{"username": "joe"}},
}, nil
}
} else if namespace == "users.status" && changeStream {
// return a pipeline that only receives events when a document is
// inserted, deleted, or a specific field is changed. In this case
// only a change to field1 is processed. Changes to other fields
// do not match the pipeline query and thus you won't receive the event.
return []interface{}{
bson.M{"$match": bson.M{"$or": []interface{} {
bson.M{"updateDescription": bson.M{"$exists": false}},
bson.M{"updateDescription.updatedFields.field1": bson.M{"$exists": true}},
}}},
}, nil
}
return nil, nil
}
func NewUsers(op *gtm.Op) bool {
return op.Namespace == "users.users" && op.IsInsert()
}
// if you want to listen only for certain events on certain collections
// pass a filter function in options
ctx := gtm.Start(session, >m.Options{
NamespaceFilter: NewUsers, // only receive inserts in the user collection
})
// more options are available for tuning
ctx := gtm.Start(session, >m.Options{
NamespaceFilter nil, // op filter function that has access to type/ns ONLY
Filter nil, // op filter function that has access to type/ns/data
After: nil, // if nil defaults to LastOpTimestamp
OpLogDisabled: false, // true to disable tailing the MongoDB oplog
OpLogDatabaseName: nil, // defaults to "local"
OpLogCollectionName: nil, // defaults to a collection prefixed "oplog."
ChannelSize: 0, // defaults to 20
BufferSize: 25, // defaults to 50. used to batch fetch documents on bursts of activity
BufferDuration: 0, // defaults to 750 ms. after this timeout the batch is force fetched
WorkerCount: 8, // defaults to 1. number of go routines batch fetching concurrently
Ordering: gtm.Document, // defaults to gtm.Oplog. ordering guarantee of events on the output channel as compared to the oplog
UpdateDataAsDelta: false, // set to true to only receive delta information in the Data field on updates (info straight from oplog)
DirectReadNs: []string{"db.users"}, // set to a slice of namespaces to read data directly from bypassing the oplog
DirectReadSplitMax: 9, // the max number of times to split a collection for concurrent reads (impacts memory consumption)
Pipe: PipeBuilder, // an optional function to build aggregation pipelines
PipeAllowDisk: false, // true to allow MongoDB to use disk for aggregation pipeline options with large result sets
SplitVector: false, // whether or not to use internal MongoDB command split vector to split collections
Log: myLogger, // pass your own logger
ChangeStreamNs []string{"db.col1", "db.col2"}, // set to a slice to namespaces to read via MongoDB change streams
})
If, in addition to tailing the oplog, you would like to also read entire collections you can set the DirectReadNs field to a slice of MongoDB namespaces. Documents from these collections will be read directly and output on the ctx.OpC channel.
You can wait till all the collections have been fully read by using the DirectReadWg wait group on the ctx.
go func() {
ctx.DirectReadWg.Wait()
fmt.Println("direct reads are done")
}()
If you use ChangeStreamNs
on MongoDB 3.6+ you can ignore this section. Native change streams in MongoDB are shard aware. You should connect to the
mongos
routing server and change streams will work across shards. This section is for those pre-3.6 that would like to read changes across all shards.
gtm has support for sharded MongoDB clusters. You will want to start with a connection to the MongoDB config server to get the list of available shards.
// assuming the CONFIG server for a sharded cluster is running locally on port 27018
configSession, err = mgo.Dial("127.0.0.1:27018")
if err != nil {
panic(err)
}
// get the list of shard servers
shardInfos := gtm.GetShards(configSession)
for each shard you will create a session and append it to a slice of sessions
var shardSessions []*mgo.Session
// add each shard server to the sync list
for _, shardInfo := range shardInfos {
log.Printf("Adding shard found at %s\n", shardInfo.GetURL())
shardURL := shardInfo.GetURL()
shard, err := mgo.Dial(shardURL)
if err != nil {
panic(err)
}
shardSessions = append(shardSessions, shard)
}
finally you will want to start a multi context. The multi context behaves just like a single context except that it tails multiple shard servers and coalesces the events to a single output channel
multiCtx := gtm.StartMulti(shardSessions, nil)
after you have created the multi context for all the shards you can handle new shards being added to the cluster at some later time by adding a listener. You will want to add this listener before you enter a loop to read events from the multi context.
insertHandler := func(shardInfo *gtm.ShardInfo) (*mgo.Session, error) {
log.Printf("Adding shard found at %s\n", shardInfo.GetURL())
shardURL := shardInfo.GetURL()
return mgo.Dial(shardURL)
}
multiCtx.AddShardListener(configSession, nil, insertHandler)
If you'd like to unmarshall MongoDB documents into your own struct instead of the document getting unmarshalled to a generic map[string]interface{} you can use a custom unmarshal function:
type MyDoc struct {
Id interface{} "_id"
Foo string "foo"
}
func custom(namespace string, raw *bson.Raw) (interface{}, error) {
// use namespace, e.g. db.col, to map to a custom struct
if namespace == "test.test" {
var doc MyDoc
if err := raw.Unmarshal(&doc); err == nil {
return doc, nil
} else {
return nil, err
}
}
return nil, errors.New("unsupported namespace")
}
ctx := gtm.Start(session, >m.Options{
Unmarshal: custom,
}
for {
select {
case op:= <-ctx.OpC:
if op.Namespace == "test.test" {
doc := op.Doc.(MyDoc)
fmt.Println(doc.Foo)
}
}
}
You may want to distribute event handling between a set of worker processes on different machines. To do this you can leverage the github.com/rwynn/gtm/consistent package.
Create a TOML document containing a list of all the event handlers.
Workers = [ "Tom", "Dick", "Harry" ]
Create a consistent filter to distribute the work between Tom, Dick, and Harry. A consistent filter needs to acces the Data attribute of each op so it needs to be set as a Filter as opposed to a NamespaceFilter.
name := flag.String("name", "", "the name of this worker")
flag.Parse()
filter, filterErr := consistent.ConsistentHashFilterFromFile(*name, "/path/to/toml")
if filterErr != nil {
panic(filterErr)
}
// there is also a method **consistent.ConsistentHashFilterFromDocument** which allows
// you to pass a Mongo document representing the config if you would like to avoid
// copying the same config file to multiple servers
Pass the filter into the options when calling gtm.Tail
ctx := gtm.Start(session, >m.Options{Filter: filter})
If you have your multiple filters you can use the gtm utility method ChainOpFilters
func ChainOpFilters(filters ...OpFilter) OpFilter
If you enable SplitVector, to get the best througput possible on direct reads you will want to consider the indexes on your collections. In the best
case scenario, for very large collections, you will have an index on a field with a moderately low cardinality.
For example, if you have 10 million documents in your collection and have a field named category
that will have a
value between 1 and 20, and you have an index of this field, then gtm will be able to perform an internal
MongoDB admin
command named splitVector
on this key. The results of the split vector command will return a sorted list of category split points.
Once gtm has the split points it is able to start splits+1 go routines with range queries to consume the entire collection concurrently.
You will notice a line in the log like this is this is working.
INFO 2018/04/24 18:23:23 Found 16 splits (17 segments) for namespace test.test using index on category
When this is working you will notice the connection count increase substancially in mongostat
. On the other hand, if you
do not have an index which yields a high number splits, gtm will force a split and it will only be able to start 2 go
routines to read your collection concurrently.
The user that gtm connects with will need to have admin access to perform the splitVector
command. If the user does not have
this access then gtm will use paginating range read of each collection.
Gtm previously supported the parallelCollectionScan
command to get multiple read cursors on a collection.
However, this command only worked on the mmapv1 storage engine and will be removed
completely once the mmapv1 engine is retired.
It looks like splitVector
or something like it will be promoted in new versions on MongoDB.