cbor-x
The cbor-x package is an extremely fast CBOR NodeJS/JavaScript implementation. Currently, it is significantly faster than any other known implementations, faster than Avro (for JS), and generally faster than native V8 JSON.stringify/parse. It implements the CBOR format as specificed in RFC-8949, numerous registered IANA tag extensions (the x
in cbor-x), RFC-8746 and proposed optional record extension, for defining record structures that makes CBOR even faster and more compact, often over twice as fast as even native JSON functions, several times faster than other JS implementations, and 15-50% more compact. See the performance section for more details. Structured cloning (with support for cyclical references) is supported through these tag extensions.
Basic Usage
Install with:
npm i cbor-x
And import
or require
it for basic standard serialization/encoding (encode
) and deserialization/decoding (decode
) functions:
import { decode, encode } from 'cbor-x';
let serializedAsBuffer = encode(value);
let data = decode(serializedAsBuffer);
This encode
function will generate standard CBOR without any extensions that should be compatible with any standard CBOR parser/decoder. It will serialize JavaScript objects as CBOR map
s by default. The decode
function will deserialize CBOR map
s as an Object
with the properties from the map.
Node Usage
The cbor-x package runs on any modern JS platform, but is optimized for NodeJS usage (and will use a node addon for performance boost as an optional dependency).
Streams
We can use the including streaming functionality (which further improves performance). The EncoderStream
is a NodeJS transform stream that can be used to serialize objects to a binary stream (writing to network/socket, IPC, etc.), and the DecoderStream
can be used to deserialize objects from a binary sream (reading from network/socket, etc.):
import { EncoderStream } from 'cbor-x';
let stream = new EncoderStream();
stream.write(myData);
Or for a full example of sending and receiving data on a stream:
import { EncoderStream } from 'cbor-x';
let sendingStream = new EncoderStream();
let receivingStream = new DecoderStream();
// we are just piping to our own stream, but normally you would send and
// receive over some type of inter-process or network connection.
sendingStream.pipe(receivingStream);
sendingStream.write(myData);
receivingStream.on('data', (data) => {
// received data
});
The EncoderStream
and DecoderStream
instances will have also the record structure extension enabled by default (see below).
Deno Usage
CBOR modules are standard ESM modules and can be loaded directly from github (https://raw.githubusercontent.com/kriszyp/cbor-x/master/index.js) or downloaded and used directly in Deno. The standard encode and decode functionality is available on Deno, like other platforms.
Browser Usage
Cbor-x works as standalone JavaScript as well, and runs on modern browsers. It includes a bundled script, at dist/index.js
for ease of direct loading:
<script src="node_modules/cbor-x/dist/index.js"></script>
This is UMD based, and will register as a module if possible, or create a CBOR
global with all the exported functions.
For module-based development, it is recommended that you directly import the module of interest, to minimize dependencies that get pulled into your application:
import { decode } from 'cbor-x/decode' // if you only need to decode
Structured Cloning
You can also use cbor-x for structured cloning. By enabling the structuredClone
option, you can include references to other objects or cyclic references, and object identity will be preserved. Structured cloning also enables preserving certain typed objects like Error
, Set
, RegExp
and TypedArray instances, using registered CBOR tag extensions. For example:
let obj = {
set: new Set(['a', 'b']),
regular: /a\spattern/
};
obj.self = obj;
let encoder = new Encoder({ structuredClone: true });
let serialized = encoder.encode(obj);
let copy = encoder.decode(serialized);
copy.self === copy // true
copy.set.has('a') // true
This option is disabled by default because it uses extensions and reference checking degrades performance (by about 25-30%). (Note this implementation doesn't serialize every class/type specified in the HTML specification since not all of them make sense for storing across platforms.)
Record / Object Structures
There is a critical difference between maps (or dictionaries) that hold an arbitrary set of keys and values (JavaScript Map
is designed for these), and records or object structures that have a well-defined set of fields. Typical JS objects/records may have many instances re(use) the same structure. By using the record extension, this distinction is preserved in CBOR and the encoding can reuse structures and not only provides better type preservation, but yield much more compact encodings and increase decoding performance by 2-3x. cbor-x automatically generates record definitions that are reused and referenced by objects with the same structure. Records use CBOR's tags to align well CBOR's tag/extension mechanism. There are a number of ways to use this to our advantage. For large object structures with repeating nested objects with similar structures, simply serializing with the record extension can yield significant benefits. To use the record structures extension, we create a new Encoder
instance. By default a new Encoder
instance will have the record extension enabled:
import { Encoder } from 'cbor-x';
let encoder = new Encoder();
encoder.encode(myBigData);
Another way to further leverage the benefits of the cbor-x record structures is to use streams that naturally allow for data to reuse based on previous record structures. The stream classes have the record structure extension enabled by default and provide excellent out-of-the-box performance.
When creating a new Encoder
, EncoderStream
, or DecoderStream
instance, we can enable or disable the record structure extension with the objectsAsMaps
property. When this is true
, the record structure extension will be disabled, and all objects will revert to being serialized using MessageMap map
s, and all map
s will be deserialized to JS Object
s as properties (like the standalone encode
and decode
functions).
Shared Record Structures
Another useful way of using cbor-x, and the record extension, is for storing data in a databases, files, or other storage systems. If a number of objects with common data structures are being stored, a shared structure can be used to greatly improve data storage and deserialization efficiency. In the simplest form, provide a structures
array, which is updated if any new object structure is encountered:
import { Encoder } from 'cbor-x';
let encoder = new Encoder({
structures: [... structures that were last generated ...]
});
If you are working with persisted data, you will need to persist the structures
data when it is updated. Cbor-x provides an API for loading and saving the structures
on demand (which is robust and can be used in multiple-process situations where other processes may be updating this same structures
array), we just need to provide a way to store the generated shared structure so it is available to deserialize stored data in the future:
import { Encoder } from 'cbor-x';
let encoder = new Encoder({
getStructures() {
// storing our data in file (but we could also store in a db or key-value store)
return decode(readFileSync('my-shared-structures.cbor')) || [];
},
saveStructures(structures) {
writeFileSync('my-shared-structures.cbor', encode(structures))
},
structures: []
});
Cbor-x will automatically add and saves structures as it encounters any new object structures (up to a limit of 32). It will always add structures in incremental/compatible way: Any object encoded with an earlier structure can be decoded with a later version (as long as it is persisted).
Reading Multiple Values
If you have a buffer with multiple values sequentially encoded, you can choose to parse and read multiple values. This can be done using the unpackMultiple
function/method, which can return an array of all the values it can sequentially parse within the provided buffer. For example:
let data = new Uint8Array([1, 2, 3]) // encodings of values 1, 2, and 3
let values = unpackMultiple(data) // [1, 2, 3]
Alternately, you can provide a callback function that is called as the parsing occurs with each value, and can optionally terminate the parsing by returning false
:
let data = new Uint8Array([1, 2, 3]) // encodings of values 1, 2, and 3
unpackMultiple(data, (value) => {
// called for each value
// return false if you wish to end the parsing
})
Options
The following options properties can be provided to the Encoder or Decoder constructor:
useRecords
- Setting this tofalse
disables the record extension and stores JavaScript objects as CBOR maps, and decodes maps as JavaScriptObject
s, which ensures compatibilty with other decoders.structures
- Provides the array of structures that is to be used for record extension, if you want the structures saved and used again. This array will be modified in place with new record structures that are serialized (if less than 32 structures are in the array).structuredClone
- This enables the structured cloning extensions that will encode object/cyclic references and additional built-in types/classes.mapsAsObjects
- Iftrue
, this will decode CBOR maps and JSObject
s with the map entries decoded to object properties. Iffalse
, maps are decoded as JavaScriptMap
s. This is disabled by default ifuseRecords
is enabled (which allowsMap
s to be preserved), and is enabled by default ifuseRecords
is disabled.useFloat32
- This will enable cbor-x to encode non-integer numbers asfloat32
. See next section for possible values.variableMapSize
- This will use varying map size definition (fixmap, map16, map32) based on the number of keys when encoding objects, which yields slightly more compact encodings (for small objects), but is typically 5-10% slower during encoding. This is only relevant when record extension is disabled.copyBuffers
- When decoding a CBOR with binary data (Buffers are encoded as binary data), copy the buffer rather than providing a slice/view of the buffer. If you want your input data to be collected or modified while the decoded embedded buffer continues to live on, you can use this option (there is extra overhead to copying).useTimestamp32
- Encode JSDate
s in 32-bit format when possible by dropping the milliseconds. This is a more efficient encoding of dates. You can also cause dates to use 32-bit format by manually setting the milliseconds to zero (date.setMilliseconds(0)
).largeBigIntToFloat
- If a bigint needs to be encoded that is larger than will fit in 64-bit integers, it will be encoded as a float-64 (otherwise will throw a RangeError).
32-bit Float Options
By default all non-integer numbers are serialized as 64-bit float (double). This is fast, and ensures maximum precision. However, often real-world data doesn't not need 64-bits of precision, and using 32-bit encoding can be much more space efficient. There are several options that provide more efficient encodings. Using the decimal rounding options for encoding and decoding provides lossless storage of common decimal representations like 7.99, in more efficient 32-bit format (rather than 64-bit). The useFloat32
property has several possible options, available from the module as constants:
import { ALWAYS, DECIMAL_ROUND, DECIMAL_FIT } from 'cbor-x'
ALWAYS
(1) - Always will encode non-integers (absolute less than 2147483648) as 32-bit float.DECIMAL_ROUND
(3) - Always will encode non-integers as 32-bit float, and when decoding 32-bit float, round to the significant decimal digits (usually 7, but 6 or 8 digits for some ranges).DECIMAL_FIT
(4) - Only encode non-integers as 32-bit float if all significant digits (usually up to 7) can be unamiguously encoded as a 32-bit float, and decode with decimal rounding (same as above). This will ensure round-trip encoding/decoding without loss in precision and use 32-bit when possible.
Note, that the performance is decreased with decimal rounding by about 20-25%, although if only 5% of your values are floating point, that will only have about a 1% impact overall.
Performance
Cbor-x is fast. Really fast. Here is comparison with the next fastest JS projects using the benchmark tool from msgpack-lite
(and the sample data is from some clinical research data we use that has a good mix of different value types and structures). It also includes comparison to V8 native JSON functionality, and JavaScript Avro (avsc
, a very optimized Avro implementation):
operation | op | ms | op/s |
---|---|---|---|
buf = Buffer(JSON.stringify(obj)); | 78200 | 5004 | 15627 |
obj = JSON.parse(buf); | 89600 | 5003 | 17909 |
require("cbor-x").encode(obj); | 163100 | 5001 | 32613 |
require("cbor-x").decode(buf); | 100200 | 5004 | 20023 |
cbor-x w/ shared structures: packr.encode(obj); | 178300 | 5002 | 35645 |
cbor-x w/ shared structures: packr.decode(buf); | 414000 | 5000 | 82800 |
buf = require("cbor").encode(obj); | 7800 | 5016 | 1555 |
obj = require("cbor").decode(buf); | 3200 | 5087 | 629 |
buf = require("cbor-sync").encode(obj); | 18600 | 5012 | 3711 |
obj = require("cbor-sync").decode(buf); | 20000 | 5020 | 3984 |
buf = require("msgpack-lite").encode(obj); | 30900 | 5013 | 6163 |
obj = require("msgpack-lite").decode(buf); | 15800 | 5012 | 3152 |
buf = require("notepack").encode(obj); | 62600 | 5006 | 12504 |
obj = require("notepack").decode(buf); | 33700 | 5007 | 6730 |
require("avsc")...make schema/type...type.toBuffer(obj); | 86900 | 5002 | 17373 |
require("avsc")...make schema/type...type.fromBuffer(obj); | 106100 | 5000 | 21220 |
All benchmarks were performed on Node 14.8.0 (Windows i7-4770 3.4Ghz).
(avsc
is schema-based and more comparable in style to cbor-x with shared structures).
Here is a benchmark of streaming data (again borrowed from msgpack-lite
's benchmarking), where cbor-x is able to take advantage of the structured record extension and really demonstrate its performance capabilities:
operation (1000000 x 2) | op | ms | op/s |
---|---|---|---|
new EncoderStream().write(obj); | 1000000 | 372 | 2688172 |
new DecoderStream().write(buf); | 1000000 | 247 | 4048582 |
stream.write(msgpack.encode(obj)); | 1000000 | 2898 | 345065 |
stream.write(msgpack.decode(buf)); | 1000000 | 1969 | 507872 |
stream.write(notepack.encode(obj)); | 1000000 | 901 | 1109877 |
stream.write(notepack.decode(buf)); | 1000000 | 1012 | 988142 |
msgpack.Encoder().on("data",ondata).encode(obj); | 1000000 | 1763 | 567214 |
msgpack.createDecodeStream().write(buf); | 1000000 | 2222 | 450045 |
msgpack.createEncodeStream().write(obj); | 1000000 | 1577 | 634115 |
msgpack.Decoder().on("data",ondata).decode(buf); | 1000000 | 2246 | 445235 |
See the benchmark.md for more benchmarks and information about benchmarking.
Custom Extensions
You can add your own custom extensions, which can be used to encode specific types/classes in certain ways. This is done by using the addExtension
function, and specifying the class, extension type code (custom extensions should be a number greater than 40500, all others are reserved for CBOR or cbor-x), and your encode and decode functions (or just the one you need). You can use cbor-x encoding and decoding within your extensions:
import { addExtension, Encoder } from 'cbor-x';
class MyCustomClass {...}
let extEncoder = new Encoder();
addExtension({
Class: MyCustomClass,
tag: 43311, // register our own extension code (a tag code)
encode(instance, encode) {
// define how your custom class should be encoded
encode(instance.myData); // return a buffer
}
decode(data) {
// define how your custom class should be decoded
let instance = new MyCustomClass();
instance.myData = data
return instance; // decoded value from buffer
}
});
Unknown Tags
If no extension is registered for a tag, the decoder will return an instance of the Tag
class, where the value provided for the tag will be available in the value
property of the Tag
instance. The Tag
class is an export of the package and decode module.
CBOR Compliance
The cbor-x package is designed to encode and decode to the CBOR extended generic data model, implementing extensions to support the extended model, and will generally attempt to use preferred serializations where feasible. When duplicate keys are encountered in maps, previous entries will be lost, and the final entry is preserved.
Additional Performance Optimizations
Cbor-x is already fast, but here are some tips for making it faster.
useBuffer()
)
Arena Allocation (During the serialization process, data is written to buffers. Again, allocating new buffers is a relatively expensive process, and the useBuffer
method can help allow reuse of buffers that will further improve performance. With useBuffer
method, you can provide a buffer, serialize data into it, and when it is known that you are done using that buffer, you can call useBuffer
again to reuse it. The use of useBuffer
is never required, buffers will still be handled and cleaned up through GC if not used, it just provides a small performance boost.
Extensions
Cbor-x currently uses tag id 105 and 26880-27135 for its proposed extension for records.
Dates
cbor-x saves all JavaScript Date
s using the standard CBOR date extension (tag 1).
Structured Cloning
With structured cloning enabled, cbor-x will also use tags/extensions to store Set, Map, Error, RegExp, ArrayBufferView objects and preserve their types.
Alternate Encoding/Package
The high-performance serialization and deserialization algorithms in this package are also available in the msgpackr for the MessagePack format, with the same API and design. A quick summary of the pros and cons of using MessagePack vs CBOR are:
- MessagePack has wider adoption, and, at least with this implementation is slightly more efficient (by roughly 2-4%, but YMMV).
- CBOR has an official IETF standardization track, and the record extensions is conceptually/philosophically a better fit for CBOR tags.
License
MIT
Browser Consideration
CBOR can be a great choice for high-performance data delivery to browsers, as reasonable data size is possible without compression. And CBOR works very well in modern browsers. However, it is worth noting that if you want highly compact data, brotli or gzip are most effective in compressing, and CBOR's character frequency tends to defeat Huffman encoding used by these standard compression algorithms, resulting in less compact data than compressed JSON.
Credits
Various projects have been inspirations for this, and code has been borrowed from https://github.com/msgpack/msgpack-javascript and https://github.com/mtth/avsc.