Running MongoDB Queries Concurrently With Go
This is a guest post by William Kennedy, managing partner at Ardan Studios in Miami, FL, a mobile and web app development company. Bill is also the author of the blog GoingGo.Net and the organizer for the Go-Miami and Miami MongoDB meetups
This is a guest post by William Kennedy, managing partner at Ardan Studios in Miami, FL, a mobile and web app development company. Bill is also the author of the blog GoingGo.Net and the organizer for the Go-Miami and Miami MongoDB meetups in Miami. Bill looked for a new language in 2013 that would allow him to develop back end systems in Linux and found Go. He has never looked back.
If you are attending GopherCon 2014 or plan to watch the videos once they are released, this article will prepare you for the talk by Gustavo Niemeyer and Steve Francia. It provides a beginners view for using the Go mgo driver against a MongoDB database.
Introduction
MongoDB supports many different programming languages thanks to a great set of drivers. One such driver is the MongoDB Go driver which is called mgo. This driver was developed by Gustavo Niemeyer from Canonical with some assistance from MongoDB Inc. Both Gustavo and Steve Francia, the head of the drivers team, will be talking at GopherCon 2014 in April about “Painless Data Storage With MongoDB and Go”. The talk describes the mgo driver and how MongoDB and Go work well together for building highly scalable and concurrent software.
MongoDB and Go let you build scalable software on many different operating systems and architectures, without the need to install frameworks or runtime environments. Go programs are native binaries and the Go tooling is constantly improving to create binaries that run as fast as equivalent C programs. That wouldn’t mean anything if writing code in Go was complicated and as tedious as writing programs in C. This is where Go really shines because once you get up to speed, writing programs in Go is fast and fun.
In this post I am going to show you how to write a Go program using the mgo driver to connect and run queries concurrently against a MongoDB database. I will break down the sample code and explain a few things that can be a bit confusing to those new to using MongoDB and Go together.
Sample Program
The sample program connects to a public MongoDB database I have hosted with MongoLab. If you have Go and Bazaar installed on your machine, you can run the program against my database. The program is very simple - it launches ten goroutines that individually query all the records from the buoy_stations collection inside the goinggo database. The records are unmarshaled into native Go types and each goroutine logs the number of documents returned:
Now that you have seen the entire program, we can break it down. Let’s start with the type structures that are defined in the beginning:
The structures represent the data that we are going to retrieve and unmarshal from our query. BuoyStation represents the main document and BuoyCondition and BuoyLocation are embedded documents. The mgo driver makes it easy to use native types that represent the documents stored in our collections by using tags. With the tags, we can control how the mgo driver unmarshals the returned documents into our native Go structures.
Now let’s look at how we connect to a MongoDB database using mgo:
We start with creating a mgo.DialInfo object. Connecting to a replica set can be accomplished by providing multiple addresses in the Addrs field or with a single address. If we are using a single host address to connect to a replica set, the mgo driver will learn about any remaining hosts from the replica set member we connect to. In our case we are connecting to a single host.
After providing the host, we specify the database, username and password we need for authentication. One thing to note is that the database we authenticate against may not necessarily be the database our application needs to access. Some applications authenticate against the admin database and then use other databases depending on their configuration. The mgo driver supports these types of configurations very well.
Next we use the mgo.DialWithInfo method to create a mgo.Session object. Each session specifies a Strong or Monotonic mode, and other settings such as write concern and read preference. The mgo.Session object maintains a pool of connections to MongoDB. We can create multiple sessions with different modes and settings to support different aspects of our applications.
The next line of code sets the mode for the session. There are three modes that can be set, Strong, Monotonic and Eventual. Each mode sets a specific consistency for how reads and writes are performed. For more information on the differences between each mode, check out the documentation for the mgo driver.
We are using Monotonic mode which provides reads that may not entirely be up to date, but the reads will always see the history of changes moving forward. In this mode reads occur against secondary members of our replica sets until a write happens. Once a write happens, the primary member is used. The benefit is some distribution of the reading load can take place against the secondaries when possible.
With the session set and ready to go, next we execute multiple queries concurrently:
This code is classic Go concurrency in action. First we create a sync.WaitGroup object so we can keep track of all the goroutines we are going to launch as they complete their work. Then we immediately set the count of the sync.WaitGroup object to ten and use a for loop to launch ten goroutines using the RunQuery function. The keyword go is used to launch a function or method to run concurrently. The final line of code calls the Wait method on the sync.WaitGroup object which locks the main goroutine until everything is done processing.
To learn more about Go concurrency and better understand how this particular piece of code works, check out these posts on concurrency and channels.
Now let’s look at the RunQuery function and see how to properly use the mgo.Session object to acquire a connection and execute a query:
The very first thing we do inside of the RunQuery function is to defer the execution of the Done method on the sync.WaitGroup object. The defer keyword will postpone the execution of the Done method, to take place once the RunQuery function returns. This will guarantee that the sync.WaitGroup objects count will decrement even if an unhandled exception occurs.
Next we make a copy of the session we created in the main goroutine. Each goroutine needs to create a copy of the session so they each obtain their own socket without serializing their calls with the other goroutines. Again, we use the defer keyword to postpone and guarantee the execution of the Close method on the session once the RunQuery function returns. Closing the session returns the socket back to the main pool, so this is very important.
To execute a query we need a mgo.Collection object. We can get a mgo.Collection object through the mgo.Session object by specifying the name of the database and then the collection. Using the mgo.Collection object, we can perform a Find and retrieve all the documents from the collection. The All function will unmarshal the response into our slice of BuoyStation objects. A slice is a dynamic array in Go. Be aware that the All method will load all the data in memory at once. For large collections it is better to use the Iter method instead. Finally, we just log the number of BuoyStation objects that are returned.
Conclusion
The example shows how to use Go concurrency to launch multiple goroutines that can execute queries against a MongoDB database independently. Once a session is established, the mgo driver exposes all of the MongoDB functionality and handles the unmarshaling of BSON documents into Go native types.
MongoDB can handle a large number of concurrent requests when you architect your MongoDB databases and collections with concurrency in mind. Go and the mgo driver are perfectly aligned to push MongoDB to its limits and build software that can take advantage of all the computing power that is available.
The mgo driver provides a safe way to leverage Go’s concurrency support and you have the flexibility to execute queries concurrently and in parallel. It is best to take the time to learn a bit about MongoDB replica sets and load balancer configuration. Then make sure the load balancer is behaving as expected under the different types of load your application can produce.
Now is a great time to see what MongoDB and Go can do for your software applications, web services and service platforms. Both technologies are being battle tested everyday by all types of companies, solving all types of business and computing problems.
原文地址:Running MongoDB Queries Concurrently With Go, 感谢原作者分享。

Alat AI Hot

Undresser.AI Undress
Apl berkuasa AI untuk mencipta foto bogel yang realistik

AI Clothes Remover
Alat AI dalam talian untuk mengeluarkan pakaian daripada foto.

Undress AI Tool
Gambar buka pakaian secara percuma

Clothoff.io
Penyingkiran pakaian AI

AI Hentai Generator
Menjana ai hentai secara percuma.

Artikel Panas

Alat panas

Notepad++7.3.1
Editor kod yang mudah digunakan dan percuma

SublimeText3 versi Cina
Versi Cina, sangat mudah digunakan

Hantar Studio 13.0.1
Persekitaran pembangunan bersepadu PHP yang berkuasa

Dreamweaver CS6
Alat pembangunan web visual

SublimeText3 versi Mac
Perisian penyuntingan kod peringkat Tuhan (SublimeText3)

Topik panas



Penyelesaian untuk menyelesaikan isu tamat tempoh Navicat termasuk: memperbaharui lesen dan menyahpasang semula kemas kini automatik, hubungi Navicat Premium Essentials;

Untuk pembangun bahagian hadapan, kesukaran mempelajari Node.js bergantung pada asas JavaScript mereka, pengalaman pengaturcaraan sisi pelayan, kebiasaan baris arahan dan gaya pembelajaran. Keluk pembelajaran termasuk modul peringkat permulaan dan peringkat lanjutan yang memfokuskan pada konsep asas, seni bina bahagian pelayan, penyepaduan pangkalan data dan pengaturcaraan tak segerak. Secara keseluruhan, mempelajari Node.js tidak sukar untuk pembangun yang mempunyai asas yang kukuh dalam JavaScript dan bersedia untuk melaburkan masa dan usaha, tetapi bagi mereka yang kurang pengalaman yang berkaitan, mungkin terdapat cabaran tertentu untuk diatasi.

Untuk menyambung ke MongoDB menggunakan Navicat, anda perlu: Pasang Navicat Buat sambungan MongoDB: a Masukkan nama sambungan, alamat hos dan port b Masukkan maklumat pengesahan (jika perlu) Tambah sijil SSL (jika perlu) Sahkan sambungan Simpan sambungan

Untuk aplikasi Node.js, memilih pangkalan data bergantung pada keperluan aplikasi. Pangkalan data NoSQL MongoDB menyediakan fleksibiliti, Redis menyediakan konkurensi tinggi, Cassandra mengendalikan data siri masa, dan Elasticsearch dikhususkan untuk mencari. Pangkalan data SQL MySQL mempunyai prestasi cemerlang, PostgreSQL kaya dengan ciri, SQLite ringan, dan Pangkalan Data Oracle adalah komprehensif. Apabila memilih, pertimbangkan jenis data, pertanyaan, prestasi, transaksi, ketersediaan, pelesenan dan kos.

.NET 4.0 digunakan untuk mencipta pelbagai aplikasi dan ia menyediakan pemaju aplikasi dengan ciri yang kaya termasuk: pengaturcaraan berorientasikan objek, fleksibiliti, seni bina berkuasa, penyepaduan pengkomputeran awan, pengoptimuman prestasi, perpustakaan yang luas, keselamatan, Kebolehskalaan, akses data dan mudah alih sokongan pembangunan.

Langkah-langkah untuk menyambung ke pangkalan data dalam Node.js: Pasang pakej MySQL, MongoDB atau PostgreSQL. Buat objek sambungan pangkalan data. Buka sambungan pangkalan data dan kendalikan ralat sambungan.

Menyambung ke pangkalan data dalam Node.js memerlukan memilih sistem pangkalan data (hubungan atau bukan hubungan) dan kemudian mewujudkan sambungan menggunakan modul khusus untuk jenis itu. Modul biasa termasuk mysql (MySQL), pg (PostgreSQL), mongodb (MongoDB), dan redis (Redis). Selepas sambungan diwujudkan, anda boleh menggunakan pernyataan pertanyaan untuk mendapatkan semula data dan mengemas kini pernyataan untuk mengubah suai data. Akhir sekali, sambungan mesti ditutup apabila semua operasi selesai untuk melepaskan sumber. Tingkatkan prestasi dan keselamatan dengan mengikuti amalan terbaik ini, seperti menggunakan pengumpulan sambungan, pertanyaan berparameter dan mengendalikan ralat dengan anggun.

Dalam seni bina tanpa pelayan, fungsi Java boleh disepadukan dengan pangkalan data untuk mengakses dan memanipulasi data dalam pangkalan data. Langkah utama termasuk: mencipta fungsi Java, mengkonfigurasi pembolehubah persekitaran, menggunakan fungsi dan menguji fungsi. Dengan mengikuti langkah ini, pembangun boleh membina aplikasi kompleks yang mengakses data yang disimpan dalam pangkalan data dengan lancar.
