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"Now witness the power of this FULLY ARMED AND OPERATIONAL DATASTAR!"
npm install datastar --save
This module is open source! That means we want your contributions!
const Datastar = require('datastar');
const datastar = new Datastar({
config: {
credentials: {
username: 'cassandra',
password: 'cassandra'
},
keyspace: 'a_fancy_keyspace',
contactPoints: ['127.0.0.1', 'host2', 'host3']
}
}).connect();
const cql = datastar.schema.cql;
const Artist = datastar.define('artist', {
schema: datastar.schema.object({
artist_id: cql.uuid(),
name: cql.text(),
create_date: cql.timestamp({ default: 'create' }),
update_date: cql.timestamp({ default: 'update' }),
members: cql.set(cql.text()),
related_artists: cql.set(cql.uuid()).allow(null),
traits: cql.set(cql.text()),
metadata: cql.map(cql.text(), cql.text()).allow(null)
}).partitionKey('artist_id'),
with: {
compaction: {
class: 'LeveledCompactionStrategy'
}
}
});
Artist.create({
artistId: '12345678-1234-1234-1234-123456789012',
}, function (err, res) {
if (err) /* handle me */ return;
/* The create statement(s) have executed. */
});
All constructor options are passed directly to Priam so any options Priam supports, Datastar supports.
const Datastar = require('datastar');
const datastar = new Datastar({
config: {
credentials: {
// who am I connecting as
username: 'cassandra',
// what's my password
password: 'cassandra'
},
// what keyspace am I using
keyspace: 'a_fancy_keyspace',
// what cluster hosts do I know about
contactPoints: ['127.0.0.1', 'host2', 'host3']
}
});
Given a set of cassandra information, connect to the cassandra constructor. This must be called before you do any model creation, finding, schema defintion, etc.
let datastar = new Datastar(...);
// I setup the connection, but I'm not connected yet, let's connect!
datastar = datastar.connect();
Define is the primary way to create Models
while using Datastar. See the following long example for an explanation of all options to define. Define your schemas in snake case, but use camel case everywhere else!
//
// main definition function, pass a name of the model (table), and it's corresponding schema
//
const Album = datastar.define('album', {
//
// ensure that the table exists. This executes an implicit CREATE IF NOT EXISTS
// statement. You can listen for completio using the `ensure-tables:finished`
// event
ensureTables: true,
//
// the actual schema definition
//
schema: datastar.schema.object({
album_id: cql.uuid(),
artist_id: cql.uuid(),
name: cql.text(),
track_list: cql.list(cql.text()),
song_list: cql.list(cql.uuid()),
release_date: cql.timestamp(),
create_date: cql.timestamp(),
producer: cql.text()
}).partitionKey('artist_id')
.clusteringKey('album_id'),
//
// Support `with` extensions onto the table statement when calling .ensureTables
//
with: {
//
// key value of how you want to alter the table
//
compaction: {
class: 'LeveledCompactionStrategy'
},
gcGraceSeconds: 9860,
//
// How we want to order our rows on disk for clustering keys
//
orderBy: {
key: 'album_id',
order: 'desc'
}
}
});
Since Cassandra is a distributed database, we need a way to specify what our
consistency threshold is for both reading and writing from the database. We can
set consistency
, readConsistency
and writeConsistency
when we define our
model. consistency
is used if you want to set both to be the same threshold
otherwise you can go more granular with readConsistency
and
writeConsistency
. Consistency is defined using a camelCase
string that
corresponds with a consistency that cassandra allows.
const Album = datastar.define('album', {
schema: albumSchema,
readConsistency: 'localQuorum',
writeConsitency: 'one'
});
We also support setting consistency on an operation basis as well if you want to override the default set on the model for specific cases.
Album.create({
entity: {
albumId: uuid.v4(),
name: 'nevermind'
},
consistency: 'localOne'
}, function (err) {
if (err) /* handle me */ return;
/* create is completed */
});
We also support setting an optional expiration period called TTL
(Time To Live) for data expiration and removal. You can set up the TTL
option either when creating the data entry or updating it, e.g. { ttl: 3 }
means the expiration time for the data is 3 seconds. Once when you update the data entry, it will reset its TTL
.
Album.create({
entity: {
albumId: uuid.v4(),
name: 'nevermind'
},
ttl: 3
}, function (err) {
if (err) /* handle me */ return;
/* create is completed */
});
OR
Album.update({
entity: {
albumId: uuid.v4(),
name: 'whatever'
},
ttl: 5
}, function (err) {
if (err) /* handle me */ return;
/* update is completed */
});
Note: The
ttl
option must be set on everyupdate
call. It is not maintained from the initial entity creation. If you don't set it in anupdate
call, the entity will not have a TTL set.
Schemas are validated on .define. As you call each function on a Model
,
such as create
or find
, the calls to the functions are validated against the
schema. See here for detailed information of supported CQL data types.
Validation is performed using joi.
Notes on null
:
.allow(null)
function of joi
on any property you want to allow
to be null when creating your schemaThe following table show how certain data types are validated:
CQL Data Type | Validation Type |
---|---|
ascii | cql.ascii() |
bigint | cql.bigint() |
blob | cql.blob() |
boolean | cql.boolean() |
counter | cql.counter() |
decimal | cql.decimal() |
double | cql.double() |
float | cql.float() |
inet | cql.inet() |
text | cql.text() |
timestamp | cql.timestamp() |
timeuuid | cql.timeuuid() |
uuid | cql.uuid() |
int | cql.int() |
varchar | cql.varchar() |
varint | cql.varint() |
map | cql.map(cql.text(), cql.text()) , |
set | cql.set(cql.text()) |
This functionality that we built into datastar
exists in order to optimize queries for other unique keys on your main table. By default Cassandra has the ability to do this for you by building an index for that key. The only problem is that the current backend storage of Cassandra can make these very slow and under performant. If this is a high traffic query pattern, this could lead you to having issues with your database. We work around this limitation by simply creating more tables and doing an extra write to the database. Since Cassandra is optimized for handling a heavy write workload, this becomes trivial. We take care of the complexity of keeping these tables in sync for you. Lets look at an example by modifying our Artist
model.
const Artist = datastar.define('artist', {
schema: datastar.schema.object({
artist_id: cql.uuid(),
name: cql.text(),
create_date: cql.timestamp({ default: 'create' }),
update_date: cql.timestamp({ default: 'update' }),
members: cql.set(cql.text()),
related_artists: cql.set(cql.uuid()).allow(null),
traits: cql.set(cql.text()),
metadata: cql.map(cql.text(), cql.text()).allow(null)
}).partitionKey('artist_id')
.lookupKeys('name'),
with: {
compaction: {
class: 'LeveledCompactionStrategy'
}
}
});
In our example above we added name
as a lookupKey
to our Artist
model. This means a few things:
name
when we create an Artist
.name
as with any lookupKey
MUST be uniquename
when removing an Artist
as it is now the
primary key of a different table.Artist
, a fully formed previous
value must be given or
else an implicit find
operation will happen in order to properly assess if
a lookupKey
has changed.Keeping these restrictions in mind, we can now have fast lookups by name
without having to worry about too much.
Artist.findOne({
name: 'kurt cobain'
}, function (err, artist) {
if (err) /* handle me */ return;
console.log('Fetched artist by name!');
});
Once you have created a Model
using datastar.define
you can start creating records against the Cassandra database you have configured in your options or passed to datastar.connect
:
const cql = datastar.schema.cql;
const Beverage = datastar.define('beverage', {
schema: datastar.schema.object({
'beverage_id': cql.uuid({ default: 'v4' }),
'name': cql.text(),
'type': cql.text().allow(null),
'sugar': cql.int(),
'notes': cql.text(),
'otherIngredients': cql.map(cql.text(), cql.text()),
'tags': cql.set(cql.text()),
'siblings': cql.set(cql.uuid())
}).partitionKey('beverage_id'),
});
Beverage.create({
name: 'brawndo',
sugar: 1000000,
notes: "It's got what plants crave"
}, function (err) {
if (err) /* handle me */ return;
/* create is completed */
});
The create
method (like all CRUD methods) will accept four different arguments for convenience:
// Create a single model with properties
Model.create(properties);
Model.create({ entity: properties });
Model.create({ entities: properties });
// Create a two models: one with properties
// and the second with properties2
Model.create({ entities: [properties, properties2] })
Updating records in the database is something that is fairly common. We expose a
simple method to do this where you just provide a partial object representing
your Beverage
and it will figure out how to update all the fields! Lets see what it
looks like.
//
// For the simple case update some basic field
//
Beverage.update({
name: 'brawndo',
sugar: 900000000,
notes: "It's got what plants crave, now with more sugar!",
//
// This value will get merged in with whatever keys currently exist for this
// `map`
//
otherIngredients: {
energy: '9001'
},
//
// This replaces the set that currently exists in the database with these
// values
//
tags: ['healthy', 'energy', 'gives you wings']
}, function (err) {
if (err) /* handle me */ return;
/* update is completed */
});
It even supports higher level functions on set
and list
types. Lets look at what
set
looks like. (list
covered father down)
Beverage.update({
name: 'brawndo',
//
// The keys of this object are the `actions` that can be made on the set in
// cassandra. This allows us to understand which CQL to be sent when updating.
//
tags: {
add: ['amazing', 'invincible'],
remove: ['gives you wings']
}
}, function (err) {
if (err) /* handle me */ return;
/* update success */
});
If we decide to create a model that needs to use Lookup Tables
, we require a
previous
value to be passed in as well as the entity
being updated
. If no
previous
value is passed in, we will implicitly run a find
on the primary
table to get the latest record before executing the update. This previous
value is required because we have to detect whether a primaryKey
of a lookup
table has changed.
IMPORTANT:
If you have a case where you are modifying the
primaryKey
of a lookup table and you are PASSING IN the previous value into theupdate
function, thatprevious
value MUST be a fully formed object of the previous record, otherwise you are guaranteed to have the changed lookup table go out of sync. Passing in your own previous value is done at your own risk if you do not understand this warning or the implications, please post an issue.
const Person = datastar.define('person', {
ensureTables: true,
schema: datastar.schema.object({
person_id: datastar.schema.cql.uuid({ default: 'v4' }),
// We are assuming names are unique
name: datastar.schema.cql.text(),
characteristics: datastar.schema.cql.list(datastar.schema.cql.text()),
attributes: datastar.schema.cql.map(
datastar.schema.cql.text(),
datastar.schema.cql.text()
)
}).rename('id', 'person_id')
//
// Create lookup table so I can look up by `name` as well since it is unique
//
.lookupKeys('name')
});
//
// person Object
//
const person = {
name: 'Fred Flinstone',
attributes: {
height: '6 foot 1 inch'
}
};
//
// So we start but creating a person
//
Person.create(person, function (err) {
if (err) /* handle me */ return;
/* person created */
});
//
// Now if I later want to update this same and change the name... I need to pass
// in that FULL person object that was used previously. I will warn again that
// DATA WILL BE LOST if `previous` is an incomplete piece of data. This means that the `person_by_name`
// lookup table that gets generated under the covers will have incomplete data.
//
Person.update({
previous: person,
entity: {
name: 'Barney Rubble',
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed */
});
//
// If I want to update the primary key of the entity I would need to do something as follows
// (this also shows changing the lookup table primary key at the same time)
//
Person.remove(previous, function(err) {
if (err) /* handle me */ return;
previous.name = 'Barney Rubble';
previous.personId = '12345678-1234-1234-1234-123456789012'
Person.create(previous, function (err) {
if (err) /* handle me */ return;
/* successful create */
});
});
//
// If I ommit previous altogether, I just need to ensure I pass in the proper
// primary key for the `person` table and a find operation will be done in order to
// fetch the previous entity. This is the simplest method but costs an implicit
// find operation before the update is completed.
//
Person.update({
id: person.id,
name: 'Barney Rubble',
attributes: {
hair: 'blonde'
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed */
});
//
// Just like `set` types, we can do higher level operations with `list` types.
// Lets start by updateing a list
//
Person.update({
id: person.id,
characteristics:['fast', 'hard working']
}, function (err) {
if (err) /* handle me */ return;
/* update completed */
});
//
// We can place items on the front of the list using `prepend`
//
Person.update({
id: person.id,
characteristics: {
prepend: ['lazy']
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed, characteristics = ['lazy', 'fast', 'hard working'] */
});
//
// We can also add them to the end of the list as well with `append`
//
Person.update({
id: person.id,
characteristics: {
append: ['helpful']
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed, characteristics = ['lazy', 'fast', 'hard working', 'helpful'] */
});
//
// We also have a standard `remove` operation that can be done
//
Person.update({
id: person.id,
characteristics: {
remove: ['fast']
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed, characteristics = ['lazy', 'hard working', 'helpful'] */
});
//
// The last function we support on `list` is the `index` operation. It replaces
// the item in the `list` at the given index with the value associated.
//
Person.update({
id: person.id,
characteristics: {
//
// Replaces the item at index 1.
//
index: { '1': 'disabled' }
}
}, function (err) {
if (err) /* handle me */ return;
/* update completed, characteristics = ['lazy', 'disabled', 'helpful'] */
});
Querying Cassandra can be the source of much pain, which is why datastar
will only allow queries on models based on primary keys. Any post-query filtering is the responsibility of the consumer.
There are four variants to find
:
Model.find(options, callback)
Model.findOne(options || key, callback)
<-- Also has an alias Model.get
Model.findFirst(options, callback)
Model.count(options, callback)
The latter three (findOne/get
, findFirst
, and count
) are all facades to find
and simply do not need the type
parameter in the example below.
Another note here is that type
is implied to be all
if none is given.
Album.find({
type: 'all',
conditions: {
artistId: '00000000-0000-0000-0000-000000000001'
}
}, function (err, result) {
if (err) /* handle me */ return;
/* `result` will be an array of instances of `Album` */
});
In the latter three facades, you can also pass in conditions
as the options
object!
Album.findOne({
artistId: '00000000-0000-0000-0000-000000000001',
albumId: '00000000-0000-0000-0000-000000000005'
}, function (err, result) {
if (err) /* handle me */ return;
/* `result` will be an instance of `Album` */
});
You only need to pass a separate conditions object when you want to add
additional parameters to the query like LIMIT
. Limit allows us to limit how
many records we are retrieving for any range query
Album.findAll({
conditions: {
artistId: '00000000-0000-0000-0000-000000000001'
},
limit: 1
}, function (err, results) {
if (err) /* handle me */ return;
/* results.length === 1 */
});
We can also just pass in a single key in order to fetch our record. NOTE This only works if your schema only has a single partition/primary key and assumes you are passing in that key. This will not work for lookup tables.
Artist.get('00000000-0000-0000-0000-000000000001', function(err, result) {
if (err) /* handle me */ return;
/* `result` will be an instance of `Artist` */
});
While also providing a standard callback API, the find function supports first
class streams! This is very convenient when doing a findAll
and processing
those records as they come instead of waiting to buffer them all into memory.
For example, if we were doing this inside a request handler:
const { Transform } = require('stream');
//
// Fetch sodas handler
//
function handler(req, res) {
Album.findAll({
artistId: '00000000-0000-0000-0000-000000000001'
})
.on('error', function (err) {
// Handle me for when something bad happens
res.writeHead(500);
res.end(JSON.stringify({ error: err.message }));
})
.pipe(new Transform({
writableObjectMode: true,
readableObjectMode: true,
transform(bev, enc, callback) {
//
// Massage the beverage object in some way before returning it to the user
//
callback(null, massageBeverage(bev));
}
}))
.pipe(res);
}
The async iterable API, like the stream API, provides another convenient way to process records as they come in. If you do not need the full feature set of node streams, this is a more efficient technique.
To access the async iterable API, set the iterable
option to true
in your call to .find()
or .findAll()
. Alternately, call the .iterate()
method of your model, which is equivalent to .findAll({ ..., iterable: true })
.
async function getAllArtistTracks(artistId) {
let allTracks = [];
for await (const album of Album.iterate({ conditions: { artistId } })) {
allTracks = allTracks.concat(album.trackList);
}
return new Set(allTracks);
}
If you would like to remove a record or a set of records from the database, you
just need to pass in the right set of conditions
.
Model.remove(options, callback);
One thing to note here is that when deleting a single record, you can pass in the fully formed object and we will handle stripping the unsafe parameters that you cannot query upon based on your defined schema.
Album.remove({
artistId: '00000000-0000-0000-0000-000000000001',
albumId: '00000000-0000-0000-0000-000000000005'
// any other properties.
}, function (err) {
if (err) /* handle me */ return;
console.log('Successfully removed beverage');
});
This also works on a range of values, given a schema with artistId
as the
partition key and albumId
as the clustering key, like our album
model at the top of
this readme...
//
// This will delete ALL elements for a given `artistId`
//
Album.remove({
artistId: '00000000-0000-0000-0000-000000000001'
}, function (err) {
if (err) /* handle me */ return;
console.log('Successfully removed all albums');
});
When you remove an entity that has an associated lookup table, you need to pass in both the partition keys of the main table AND the lookup table.
//
// Going back to our `person` model..
//
Person.remove({
personId: '12345678-1234-1234-1234-123456789012',
name: 'steve belaruse'
}, function(err) {
if (err) /* handle me */ return;
console.log('Successfully removed artist');
});
This is necessary because a lookupKey
defines the partition key of a different
table that is created for lookups.
Arguably one of the most powerful features hidden in datastar
are the model hooks or life-cycle events
that allow you to hook into and modify the execution of a given statement. First let's define the operations and the hooks that they have associated.
Operation | Life-cycle event / model hook |
---|---|
create, update, remove, ensure-tables | build, execute |
find | all, count, one, first |
datastar
utilizes a module called Understudy
under the hood.
This provides a way to add extensibility to any operation you perform on a
specific model
. Lets take a look at what this could look like.
Before build is before we create the statement(s)
that we then collect to
execute and insert into Cassandra. This allows us to modify any of the
entities before CQL is generated for them.
Beverage.before('create:build', function (options, callback) {
//
// We create our own option that gets passed in by the beverage option that
// multiplies all number values by the given multiple. Might not be
// practically useful but serves the point of how we can manipulate objects
// conditionally in our application by leveraging `datastar`'s machinery.'
//
if (options.multiply) {
//
// Here we can modify the entities that were passed in. If a single entity
// was passed in, this will still be an array, just of length 1
//
options.entities = options.entities.map(function (ent) {
return Object.keys(ent).reduce(function (acc, key) {
acc[key] = typeof ent[key] === 'number'
? ent[key] * options.multiply
: ent[key];
return acc;
}, {})
});
}
//
// We even have a callback interface here in case we have to make an
// asynchronous call to another service or database.
//
callback();
});
Before execute is right before we actually send the statements to cassandra.
This is where we have a chance to modify the statements or
StatementCollection
with any other statements we may have or even to just
the consistency
we are asking of cassandra if there is only a narrow case
where you require a consistency of one
. (You could also just pass
option.consistency into the function call as well)
Beverage.before('create:execute', function (options, callback) {
if (options.commitFast) {
options.statements.consistency('one');
//
// Execute all statements in parallel with a limit of 7
//
options.statements.strategy = 7;
}
callback();
});
An after
hook for execute
might look like this if we wanted to
insert the same data into a separate keyspace using a different Priam
instance. Which would be a separate connection to cassandra. This call is
ensured to be executed before the Beverage.create(opts, callback)
function
calls its callback.
NOTE: This assumes the same columns exist in this other keyspace
const otherDataCenterConnection = new Priam(connectOpts);
Beverage.after('create:execute', function (options, callback) {
//
// Reuse the statement collection from the create operation to execute the
// same set of statements on another connection
//
options.statements.connection = otherDataCenterConnection;
options.statements.execute(callback);
});
The last types of hook we have is for the specific find
operations
including. find:all
, find:one
, find:count
, find:first
. These specifc
are the same as the above :build
hooks in when they execute but have
different and more useful semantics for after
hooks for modifying data
fetched. This makes use of Understudy's
.waterfall
function. An important caveat is that find
hooks are not executed when you
use the streaming option. If you want to convert all records from your queries, see Record Transformation for a technique that works for all types of queries.
This after hooks on find:one
allow us to mutate the result returned from any
findOne
query taken on beverage. This could allow us to call an external
service to fetch extra properties or anything else you can think of. The main
goal is to provide the extensibility to do what you want without datastar
getting in your way.
Beverage.after('find:one', function (result, callback) {
//
// Populate associated sibling models on every `findOne` or `get` query
//
async.map(result.siblings,
function (id, next) {
Beverage.get(id, next);
}, function (err, siblingModels) {
if (err) { return callback(err); }
result.siblings = siblingModels;
callback()
});
});
We can even add another after hook after this one which will get executed in series and be able to modify any new attributes!
Beverage.after('find:one', function (result, callback) {
//
// Now that siblings are populated, modify their siblings if they arent
// properly associated with their sibling
//
async.each(result.siblings, function (bev, next) {
if (bev.siblings.indexOf(result.beverageId) !== -1) {
return next();
}
//
// TODO: Have instance functions for this type of thing
//
const update = bev.toJSON();
//
// Do the more efficient update to cassandra on the `set` type.
//
update.siblings = {
add: [result.beverageId]
};
bev.siblings.push(result.beverageId);
Beverage.update(update, function (err) {
if (err) { return next(err); }
next(null, bev);
});
}, function (err, res) {
if (err) { return callback(err); }
result.siblings = res;
callback();
});
});
Assign a transform
method to your model to synchronously modify all records coming back from a query; this technique works for the callback, streaming, or async iterable methods of querying:
Beverage.transform = before => ({
...before,
isDiet: before.sugar <= 0
})
Each Model
is capable of creating the Cassandra tables associated with its schema
.
To ensure that a table is created you can pass the ensureTables
option:
const Spice = datastar.define('spice', {
ensureTables: true,
schema: /* a valid schema */
})
Or call Model.ensureTables
whenever is appropriate for your application:
Spice.ensureTables(function (err) {
if (err) /* handle me */ return;
console.log('Spice tables created successfully.');
});
You can also specify an with.orderBy
option to enable CLUSTER ORDER BY
on a
partition key. This is useful if you want your Spice
table to store the newest
items on disk first, making it faster to reading in that order.
//
// WITH CLUSTER ORDER BY (created_at, DESC)
//
Spice.ensureTables({
with: {
orderBy: { key: 'createdAt', order: 'DESC' }
}
}, function (err) {
if (err) /* handle me */ return;
console.log('Spice tables created ordered descending');
})
// // We can also pass an option to enable setting other properties of a table as well! //
Spice.ensureTables({
with: {
compaction: {
class: 'LeveledCompactionStrategy',
enabled: true,
sstableSizeInMb: 160,
tombstoneCompactionInterval '86400'
},
gcGraceSeconds: 86400
}
}, function (err) {
if (err) /* handle me */ return;
console.log('Successfully created and altered the table');
});
In datastar
, each model also has the ability to drop tables. This assumes the
user used to establish the connection has these permissions. Lets see what this
looks like with our spice
model.
Spice.dropTables(function (err) {
if (err) /* handle me */ return;
console.log('Spice tables dropped!');
});
Its as simple as that. We will drop the spice table and any associated Lookup
Tables if they were configured. With .dropTables
and .ensureTables
it's
super easy to use datastar
as a building block for managing all of your Cassandra
tables without executing any manual CQL
.
Currently this happens within the model.js
code and how it interacts with the
statement-builder
and appends statements to the StatementCollection
.
Currently the best place to learn about this is read through the
create/update/remove
pathway and follow how a statement is created and then
executed. In the future we will have comprehensive documentation on this.
We make a few assumptions which have manifested as conventions in this library.
We do not store null
values in cassandra itself for an update
or create
operation on a model. We store a null
representation for the given
cassandra type. This also means that when we fetch the data back from
cassandra, we return the data back to you with the proper null
s you would
expect. It just may be unintuitive if you look at the cassandra tables
directly and do not see null
values.
This prevents tombstones from being created which has been crucial for our production uses of cassandrai at GoDaddy. This is something that could be configurable in the future.
Fields that are defined as either partitionKey()
or clusteringKey()
will not
be converted to/from null
. In addition, to exclude a field from this null
handling, define the field with meta({ nullConversion: false })
.
Casing, as mentioned briefly in the warning at the top of the readme, we assume
camelCase
as the casing convention when interacting with datastar and the
models created with it. The schema is the only place where the keys used MUST
be written as snake_case
.
In Datastar we currently have experimental async/await support. The way to
enable Async/Await is to explicitly wrap your models with the AwaitWrap
class.
This will expose all the expected methods for your model via a thenable
that
can be await
ed. Example shown below.
const Datastar = require('datastar');
const { AwaitWrap } = require('datastar');
const config = require('./config.json');
const datastar = new Datastar(config);
const cql = datastar.schema.cql;
// Wrap the model to expose async/await functions via `thenables`
const Model = new AwaitWrap(datastar.define('model', {
schema: datastar.schema.object({
name: cql.text()
}).partitionKey('name')
}));
async function main()
// Ensure the table exists
await Model.ensure()
// Create the model
await Model.create({ name: 'hello' });
// find models
const models = await Model.findAll({ name: 'hello' })
// if you need a stream you can still do that as well
const stream = Model.findAllStream({ name: 'hello' });
}
main();
Until we finalize integrating async/await support into datastar as a first class citizen, this is what we have available to start converting your callback code to use async/await.
Tests are written with mocha
and code coverage is provided with istanbul
. They can be run with:
# Run all tests with "pretest"
npm test
# Just run tests
npm run coverage
4.0.3
Fixes:
FAQs
Now witness the power of this FULLY ARMED AND OPERATIONAL DATASTAR!
The npm package datastar receives a total of 3 weekly downloads. As such, datastar popularity was classified as not popular.
We found that datastar demonstrated a not healthy version release cadence and project activity because the last version was released a year ago. It has 5 open source maintainers collaborating on the project.
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