This is the repository for MassiveJS 2.0. If you're looking for < 2, you can find it here
Massive's goal is to help you get data from your database. This is not an ORM, it's a bit more than a query tool - our goal is to do just enough, then get out of your way. I'm a huge fan of Postgres and the inspired, creative way you can use it's modern SQL functionality to work with your data.
ORMs abstract this away, and it's silly. Postgres is an amazing database with a rich ability to act as a document storage engine (using jsonb
) as well as a cracking relational engine.
Massive embraces SQL completely, and helps you out when you don't feel like writing another mundane select * from
statement.
Full documentation is available here.
npm install massive --save
Once Massive is installed, you can use it by calling connect
and passing in a callback which will give you your database instance:
var massive = require("massive");
//you can use db for 'database name' running on localhost
//or send in everything using 'connectionString'
massive.connect({db : "myDb"}, function(err,db){
db.myTable.find();
});
One of the key features of Massive is that it loads all of your tables, Postgres functions, and local query files up as functions (this is really cool, you want this. See below for more info). Massive is fast, and does this quickly. However, there is a one-time execution penalty at intialization while all this happens. In most situations it makes sense to do this once, at application load. From there, maintain a reference to the Massive instance (Massive was conceived with this usage in mind). For example, if you are using Express as your application framework, you might do something like this:
####Express Example
var express = require("express");
var app = express();
var http = require('http');
var massive = require("massive");
var connectionString = "postgres://massive:password@localhost/chinook";
// connect to Massive and get the db instance. You can safely use the
// convenience sync method here because its on app load
// you can also use loadSync - it's an alias
var massiveInstance = massive.connectSync({connectionString : connectionString})
// Set a reference to the massive instance on Express' app:
app.set('db', massiveInstance);
http.createServer(app).listen(8080);
From there, accessing the db is just:
var db = app.get('db');
Massive supports SQL files as root-level functions. By default, if you have a db
directory in your project (you can override this by passing in a scripts
setting), Massive will read each SQL file therein and create a query function with the same name. If you use subdirectories, Massive will namespace your queries in the exact same way:
var massive = require("massive");
massive.connect({
connectionString: "postgres://localhost/massive"}, function(err, db){
//call the productsInStock.sql file in the db/queries directory
db.productsInStock(function(err,products){
//products is a results array
});
});
You can use arguments right in your SQL file as well. Just format your parameters in SQL
using $1
, $2
, etc:
var massive = require("massive");
massive.connect({db : "myDb"}, function(err, db){
//just pass in the sku as an argument
//your SQL would be 'select * from products where sku=$1'
db.productsBySku("XXXYYY", function(err,products){
//products is a results array
});
});
The SQL above is, of course, rather simplistic but hopefully you get the idea: use SQL to its fullest, we'll execute it safely for you.
When Massive starts up it scans your tables as well and drops a queryable function on the root namespace. This means you can query your tables as if they were objects right on your db instance:
db.users.find(1, function(err,res){
//user with ID 1
});
The goal with this API is expressiveness and terseness - allowing you to think as little as possible about accessing your data.
If you need to query a table or a document store using Postgres' built-in Full Text Indexing, you certainly can. Just use search
or searchDoc
and we'll build the index on the fly:
db.users.search({columns :["email"], term: "rob"}, function(err,users){
//all users with the word 'rob' in their email
});
This works the same for documents as well (more on documents in next section):
//full text search...
db.my_documents.searchDoc({
keys : ["title", "description"],
term : "Kauai"
}, function(err,docs){
//docs returned with an on-the-fly Full Text Search for 'Kauai'
});
Another thing that is great about Postgres is the jsonb
functionality. The queries are simple enough to write - but if you just want to encapsulate it all - we've got your back!
//connect massive as above
var newDoc = {
title : "Chicken Ate Nine",
description: "A book about chickens of Kauai",
price : 99.00,
tags : [
{name : "Simplicity", slug : "simple"},
{name : "Fun for All", slug : "fun-for-all"}
]
};
db.saveDoc("my_documents", newDoc, function(err,res){
//the table my_documents was created on the fly
//res is the new document with an ID created for you
});
//you can now access the document right on the root
db.my_documents.findDoc(1, function(err,doc){
//you now have access to the doc
});
//run a 'contains' query which flexes the index we created for you
db.my_documents.findDoc({price : 99.00}, function(err,docs){
//1 or more documents returned
});
//run a deep match passing an array of objects
//again flexing the index we created for you
db.my_documents.findDoc({tags: [{slug : "simple"}]}, function(err,docs){
//1 or more documents returned
});
//comparative queries - these don't use indexing
db.my_documents.findDoc({"price >": 50.00}, function(err,docs){
//1 or more documents returned with a price > 50
});
//IN queries by passing arrays
db.my_documents.findDoc({id : [1,3,9]}, function(err,docs){
//documents with ID 1, 3, and 9
});
//NOT IN
db.my_documents.findDoc({"id <>": [3,5]}, function(err,docs){
//documents without ID 3 and 5
});
// Create an empty schema
db.createSchema('my_schema', function(err, res) {
// empty array
});
// Drop schema
db.dropSchema('my_schema', {cascade: true|false}, function(err, res) {
// empty array
});
// Create a new table
db.createDocumentTable('my_table', function(err, res) {
// empty array
});
// Create a new table on explicit schema
db.createDocumentTable('my_schema.my_table', function(err, res) {
// empty array
});
// Drop table
db.dropTable('my_table', {cascade: true|false}, function(err, res) {
// empty array
});
// Drop table on explicit schema
db.dropTable('my_schema.my_table', {cascade: true|false}, function(err, res) {
// empty array
});
We store IDs in their own column and treat them as a normal Primary Key. These values are not duplicated in the database - instead they are pulled off during writes and readded during reads.
The entire API above works the same with relational tables, just remove "Doc" from the function name (find
, search
, save
);
When you run connect
massive executes a quick INFORMATION_SCHEMA
query and attaches each table to the main namespace (called db
in these examples). You can use this to query your tables with a bit less noise.
The API is as close to Massive 1.0 as we could make it - but there's no need for execute
- just run the query directly:
//connect massive, get db instance
//straight up SQL
db.run("select * from products where id=$1", [1], function(err,product){
//product 1
});
//simplified SQL with a where
db.products.where("id=$1 OR id=$2", [10,21], function(err,products){
//products 10 and 21
});
//an IN query
db.products.find({id : [10,21]}, function(err,products){
//products 10 and 21
});
//a NOT IN query
db.products.find({"id <>": [10,21]}, function(err,products){
//products other than 10 and 21
});
//match a JSON field
db.products.find({"specs->>weight": 30}, function(err, products) {
//products where the 'specs' field is a JSON document containing {weight: 30}
//note that the corresponding SQL query would be phrased specs->>'weight'; Massive adds the quotes for you
})
//match a JSON field with an IN list (note NOT IN is not supported for JSON fields at this time)
db.products.find({"specs->>weight": [30, 35]}, function(err, products) {
//products where the 'specs' field is a JSON document containing {weight: 30}
//note that the corresponding SQL query would be phrased specs->>'weight'; Massive adds the quotes for you
})
//drill down a JSON path
db.products.find({"specs#>>{dimensions,length}": 15}, function(err, products) {
//products where the 'specs' field is a JSON document having a nested 'dimensions' object containing {length: 15}
//note that the corresponding SQL query would be phrased specs->>'{dimensions,length}'; Massive adds the quotes for you
})
//Send in an ORDER clause by passing in a second argument
db.products.find({},{order: "price desc"}, function(err,products){
//products ordered in descending fashion
});
//Send in an ORDER clause and a LIMIT with OFFSET
var options = {
limit : 10,
order : "id",
offset: 20
}
db.products.find({}, options, function(err,products){
//products ordered in descending fashion
});
//You only want the sku and name back
var options = {
limit : 10,
columns : ["sku", "name"]
}
db.products.find({}, options, function(err,products){
// an array of sku and name
});
//find a single user by id
db.users.findOne(1, function(err,user){
//returns user with id (or whatever your PK is) of 1
});
//another way to do the above
db.users.find(1, function(err,user){
//returns user with id (or whatever your PK is) of 1
});
//find first match
db.users.findOne({email : "test@test.com"}, function(err,user){
//returns the first match
});
//simple query
db.users.find({active: true}, function(err,users){
//all users who are active
});
//include the PK in the criteria for an update
db.users.save({id : 1, email : "test@example.com"}, function(err,updated){
//the updated record for the new user
});
//no PK does an INSERT
db.users.save({email : "new@example.com"}, function(err,inserted){
//the new record with the ID
});
To improve performance over large result sets, you might want to consider using a stream. This has the upside of returning reads right away, but the downside of leaving a connection open until you close it. To use a stream, just send in {stream: true}
in the options:
db.users.find({company_id : 12}, {stream:true}, function(err,stream){
stream.on('readable', function(){
var user = stream.read();
//do your thing
});
stream.on('end', function(){
//deal with results here
});
});
Massive understands the notion of database schemas and treats any Postgres schema other than public
as a namespace. Objects bound to the public
schema (the default in Postgres) are attached directly to the root db namespace. Schemas other than public
will be represented by binding a namespace object to the root reflecting the name of the schema. To steal a previous example, let's say the users
table was located in a back-end schema named membership
. Massive will load up the database objects bound to the membership schema, and you can access them from code like so:
db.membership.users.save({email : "new@example.com"}, function(err,inserted){
//the new record with the ID
});
db.membership.users.find({active: true}, function(err,users){
//all users who are active
});
Just about every method in Massive has a synchronous counterpart using the deasync library. These methods are here for convenience when you're not worried about I/O and just want to move some data around without a callback mess.
var myUser = db.users.findOneSync({id : 1});
Got a tightly-wound super-concientous DBA who micro-manages carefully limits developer access to the back end store? Feel bold, adventurous, and unconstrained by popular dogma about database functions/stored procedures? Unafraid to be called names by your less-enlightened friends?
Massive treats Postgres functions ("sprocs") as first-class citizens.
Say your database schema introduces a complex piece of logic in a Postgres function:
create or replace function all_products()
returns setof products
as
$$
select * from products;
$$
language sql;
Massive will load up and attach the all_products
function, and any other Postgres function as JS functions on the root massive namespace (or on an appropriate schema-based namespace, as we just saw), which you can then access directly as functions:
db.all_products(function(err,res) {
// returns the result of the function (all the product records, in this case...)
});
Obviously, this was a trivial example, but you get the idea. You can perform complex logic deep in your database, and massive will make it accessible directly. For a deeper dive on this, see pg-auth, which basically rolls common membership up into a box and tucks the auth pain away behind a pleasing facade of Postgres functions. Guaranteed to stir up spirited discussions with your friends and neighbors.
If you're using a function that takes multiple parameters, you'll need to wrap your arguments in an array:
db.myFunction(['thing1', 'thing2'], function(err,res){
//result is always an array
})
Massive has a REPL (Read Evaluate Print Loop - aka "console") and you can fire it up to play with your DB in the console. The easiest way to access the REPL is to install Massive globally:
npm install --global massive
You can then connect to your database using the massive
command:
# connect to local server, database my_database
massive -d my_database
db >
From here you can see your tables if you like:
db > db.tables
[ { name: 'docs',
pk: 'id',
db: { connectionString: 'postgres://localhost/massive' } },
{ name: 'products',
pk: 'id',
db: { connectionString: 'postgres://localhost/massive' } },
{ name: 'users',
pk: 'id',
db: { connectionString: 'postgres://localhost/massive' } } ]
db >
Or just list out your queries to be sure they're being loaded:
db > db.queries
[ { [Function]
sql: 'select * from users where email=$1;',
db: { connectionString: 'postgres://localhost/massive' } } ]
db >
Execute your query to make sure it returns what you expect:
db > db.queries.productById(1);
[ {sku : 'x', name : "Product 1", id : '1'}]
By default, Massive provides a callback for you if you don't pass one in. This automatic callback outputs the results using console.log
so you can play with things easily.
There's more to do with the massive REPL - such as generating query files for you (if you're not accomplished at SQL just yet) as well as a better way to play with the results.
The tests are run against a local massive
database.
First create the database:
createdb massive
You can then run the tests:
npm test
To check your code for linting errors, run:
npm run lint
To generate a test coverage report, run:
npm run coverage
This project is just getting off the ground and could use some help with DRYing things up and refactoring.
If you want to contribute - I'd love it! Just open an issue to work against so you get full credit for your fork. You can open the issue first so we can discuss and you can work your fork as we go along.
The code is rather hideous - I wrote it in a fit of inspiration and if you see things that could be done better, yay!
If you see a bug, please be so kind as to show how it's failing, and I'll do my best to get it fixed quickly.