Goka is a compact yet powerful distributed stream processing library for Apache Kafka written in Go. Goka aims to reduce the complexity of building highly scalable and highly available microservices.
Goka extends the concept of Kafka consumer groups by binding a state table to them and persisting them in Kafka. Goka provides sane defaults and a pluggable architecture.
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Message Input and Output
Goka handles all the message input and output for you. You only have to provide one or more callback functions that handle messages from any of the Kafka topics you are interested in. You only ever have to deal with deserialized messages.
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Scaling
Goka automatically distributes the processing and state across multiple instances of a service. This enables effortless scaling when the load increases.
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Fault Tolerance
In case of a failure, Goka will redistribute the failed instance's workload and state across the remaining healthy instances. All state is safely stored in Kafka and messages delivered with at-least-once semantics.
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Built-in Monitoring and Introspection
Goka provides a web interface for monitoring performance and querying values in the state.
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Modularity
Goka fosters a pluggable architecture which enables you to replace for example the storage layer or the Kafka communication layer.
This README provides a brief, high level overview of the ideas behind Goka. A more detailed introduction of the project can be found in this blog post.
Package API documentation is available at GoDoc and the Wiki provides several tips for configuring, extending, and deploying Goka applications.
You can install Goka by running the following command:
$ go get -u github.com/lovoo/goka
Goka relies on Kafka for message passing, fault-tolerant state storage and workload partitioning.
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Emitters deliver key-value messages into Kafka. As an example, an emitter could be a database handler emitting the state changes into Kafka for other interested applications to consume.
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Processor is a set of callback functions that consume and perform state transformations upon delivery of these emitted messages. Processor groups are formed of one or more instances of a processor. Goka distributes the partitions of the input topics across all processor instances in a processor group. This enables effortless scaling and fault-tolerance. If a processor instance fails, its partitions and state are reassigned to the remaining healthy members of the processor group. Processors can also emit further messages into Kafka.
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Group table is the state of a processor group. It is a partitioned key-value table stored in Kafka that belongs to a single processor group. If a processor instance fails, the remaining instances will take over the group table partitions of the failed instance recovering them from Kafka.
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Views are local caches of a complete group table. Views provide read-only access to the group tables and can be used to provide external services for example through a gRPC interface.
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Local storage keeps a local copy of the group table partitions to speedup recovery and reduce memory utilization. By default, the local storage uses LevelDB, but in-memory map and Redis-based storage are also available.
An example Goka application could look like the following.
An emitter emits a single message with key "some-key" and value "some-value" into the "example-stream" topic.
A processor processes the "example-stream" topic counting the number of messages delivered for "some-key".
The counter is persisted in the "example-group-table" topic.
To locally start a dockerized Zookeeper and Kafka instances, execute make start
with the Makefile
in the examples folder.
package main
import (
"context"
"fmt"
"log"
"os"
"os/signal"
"syscall"
"github.com/lovoo/goka"
"github.com/lovoo/goka/codec"
)
var (
brokers = []string{"localhost:9092"}
topic goka.Stream = "example-stream"
group goka.Group = "example-group"
)
// emits a single message and leave
func runEmitter() {
emitter, err := goka.NewEmitter(brokers, topic, new(codec.String))
if err != nil {
log.Fatalf("error creating emitter: %v", err)
}
defer emitter.Finish()
err = emitter.EmitSync("some-key", "some-value")
if err != nil {
log.Fatalf("error emitting message: %v", err)
}
fmt.Println("message emitted")
}
// process messages until ctrl-c is pressed
func runProcessor() {
// process callback is invoked for each message delivered from
// "example-stream" topic.
cb := func(ctx goka.Context, msg interface{}) {
var counter int64
// ctx.Value() gets from the group table the value that is stored for
// the message's key.
if val := ctx.Value(); val != nil {
counter = val.(int64)
}
counter++
// SetValue stores the incremented counter in the group table for in
// the message's key.
ctx.SetValue(counter)
log.Printf("key = %s, counter = %v, msg = %v", ctx.Key(), counter, msg)
}
// Define a new processor group. The group defines all inputs, outputs, and
// serialization formats. The group-table topic is "example-group-table".
g := goka.DefineGroup(group,
goka.Input(topic, new(codec.String), cb),
goka.Persist(new(codec.Int64)),
)
p, err := goka.NewProcessor(brokers, g)
if err != nil {
log.Fatalf("error creating processor: %v", err)
}
ctx, cancel := context.WithCancel(context.Background())
done := make(chan bool)
go func() {
defer close(done)
if err = p.Run(ctx); err != nil {
log.Fatalf("error running processor: %v", err)
}
}()
wait := make(chan os.Signal, 1)
signal.Notify(wait, syscall.SIGINT, syscall.SIGTERM)
<-wait // wait for SIGINT/SIGTERM
cancel() // gracefully stop processor
<-done
}
func main() {
runEmitter() // emits one message and stops
runProcessor() // press ctrl-c to stop
}
Note that tables have to be configured in Kafka with log compaction. For details check the Wiki.
Contributions are always welcome. Please fork the repo, create a pull request against master, and be sure tests pass. See the GitHub Flow for details.