@zakhenry/ts-proto
v1.110.2
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> `ts-proto` transforms your `.proto` files into strongly-typed, idiomatic TypeScript files!
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ts-proto
ts-proto
transforms your.proto
files into strongly-typed, idiomatic TypeScript files!
(Note, if you're a new user of ts-proto and using a modern TS setup with esModuleInterop
, or want to use ts-proto in ESM / snowpack / vite, you need to also pass that as a ts_proto_opt
.)
Table of contents
- ts-proto
- Overview
- QuickStart
- Goals
- Example Types
- Highlights
- Auto-Batching / N+1 Prevention
- Usage
- Sponsors
- Development
- Assumptions
- Todo
- OneOf Handling
- Default values and unset fields
- Well-Known Types
- Number Types
- Current Status of Optional Values
Overview
ts-proto generates TypeScript types from protobuf schemas.
I.e. given a person.proto
schema like:
message Person {
string name = 1;
}
ts-proto will generate a person.ts
file like:
interface Person {
name: string
}
const Person = {
encode(person): Writer { ... }
decode(reader): Person { ... }
toJSON(person): unknown { ... }
fromJSON(data): Person { ... }
}
It also knows about services and will generate types for them as well, i.e.:
export interface PingService {
ping(request: PingRequest): Promise<PingResponse>;
}
It will also generate client implementations of PingService
; currently Twirp, grpc-web, grpc-js and nestjs are supported.
QuickStart
npm install ts-proto
protoc --plugin=./node_modules/.bin/protoc-gen-ts_proto --ts_proto_out=. ./simple.proto
- (Note that the output parameter name,
ts_proto_out
, is named based on the suffix of the plugin's name, i.e. "ts_proto" suffix in the--plugin=./node_modules/.bin/protoc-gen-ts_proto
parameter becomes the_out
prefix, perprotoc
's CLI conventions.) - On Windows, use
protoc --plugin=protoc-gen-ts_proto=.\node_modules\.bin\protoc-gen-ts_proto.cmd --ts_proto_out=. ./simple.proto
(see #93) - Ensure you're using a modern
protoc
, i.e. the originalprotoc
3.0.0
doesn't support the_opt
flag
- (Note that the output parameter name,
This will generate *.ts
source files for the given *.proto
types.
If you want to package these source files into an npm package to distribute to clients, just run tsc
on them as usual to generate the .js
/.d.ts
files, and deploy the output as a regular npm package.
Buf
If you're using Buf, pass strategy: all
in your buf.gen.yaml
file (docs).
version: v1
plugins:
- name: ts
out: ../gen/ts
strategy: all
path: ../node_modules/ts-proto/protoc-gen-ts_proto
Goals
- Idiomatic TypeScript/ES6 types
ts-proto
is a clean break from either the built-in Google/Java-esque JS code ofprotoc
or the "make.d.ts
files the*.js
comments" approach ofprotobufjs
- (Techically the
protobufjs/minimal
package is used for actually reading/writing bytes.)
- TypeScript-first output
- Interfaces over classes
- As much as possible, types are just interfaces, so you can work with messages just like regular hashes/data structures.
- Only supports codegen
*.proto
-to-*.ts
workflow, currently no runtime reflection/loading of dynamic.proto
files
Example Types
The generated types are "just data", i.e.:
export interface Simple {
name: string;
age: number;
createdAt: Date | undefined;
child: Child | undefined;
state: StateEnum;
grandChildren: Child[];
coins: number[];
}
Along with encode
/decode
factory methods:
export const Simple = {
encode(message: Simple, writer: Writer = Writer.create()): Writer {
...
},
decode(reader: Reader, length?: number): Simple {
...
},
fromJSON(object: any): Simple {
...
},
fromPartial(object: DeepPartial<Simple>): Simple {
...
},
toJSON(message: Simple): unknown {
...
},
};
This allows idiomatic TS/JS usage like:
const bytes = Simple.encode({ name: ..., age: ..., ... }).finish();
const simple = Simple.decode(Reader.create(bytes));
const { name, age } = simple;
Which can dramatically ease integration when converting to/from other layers without creating a class and calling the right getters/setters.
Highlights
A poor man's attempt at "please give us back optional types"
The canonical protobuf wrapper types, i.e.
google.protobuf.StringValue
, are mapped as optional values, i.e.string | undefined
, which means for primitives we can kind of pretend the protobuf type system has optional types.(Update: ts-proto now also supports the proto3
optional
keyword.)Timestamps are mapped as
Date
(Configurable with the
useDate
parameter.)fromJSON
/toJSON
use the proto3 canonical JSON encoding format (e.g. timestamps are ISO strings), unlikeprotobufjs
.ObjectIds can be mapped as
mongodb.ObjectId
(Configurable with the
useObjectId
parameter.)
Auto-Batching / N+1 Prevention
(Note: this is currently only supported by the Twirp clients.)
If you're using ts-proto's clients to call backend micro-services, similar to the N+1 problem in SQL applications, it is easy for micro-service clients to (when serving an individual request) inadvertantly trigger multiple separate RPC calls for "get book 1", "get book 2", "get book 3", that should really be batched into a single "get books [1, 2, 3]" (assuming the backend supports a batch-oriented RPC method).
ts-proto can help with this, and essentially auto-batch your individual "get book" calls into batched "get books" calls.
For ts-proto to do this, you need to implement your service's RPC methods with the batching convention of:
- A method name of
Batch<OperationName>
- The
Batch<OperationName>
input type has a single repeated field (i.e.repeated string ids = 1
) - The
Batch<OperationName>
output type has either a:- A single repeated field (i.e.
repeated Foo foos = 1
) where the output order is the same as the inputids
order, or - A map of the input to an output (i.e.
map<string, Entity> entities = 1;
)
- A single repeated field (i.e.
When ts-proto recognizes methods of this pattern, it will automatically create a "non-batch" version of <OperationName>
for the client, i.e. client.Get<OperationName>
, that takes a single id and returns a single result.
This provides the client code with the illusion that it can make individual Get<OperationName>
calls (which is generally preferrable/easier when implementing the client's business logic), but the actual implementation that ts-proto provides will end up making Batch<OperationName>
calls to the backend service.
You also need to enable the useContext=true
build-time parameter, which gives all client methods a Go-style ctx
parameter, with a getDataLoaders
method that lets ts-proto cache/resolve request-scoped DataLoaders, which provide the fundamental auto-batch detection/flushing behavior.
See the batching.proto
file and related tests for examples/more details.
But the net effect is that ts-proto can provide SQL-/ORM-style N+1 prevention for clients calls, which can be critical especially in high-volume / highly-parallel implementations like GraphQL front-end gateways calling backend micro-services.
Usage
ts-proto
is a protoc
plugin, so you run it by (either directly in your project, or more likely in your mono-repo schema pipeline, i.e. like Ibotta or Namely):
- Add
ts-proto
to yourpackage.json
- Run
npm install
to download it - Invoke
protoc
with aplugin
parameter like:
protoc --plugin=node_modules/ts-proto/protoc-gen-ts_proto ./batching.proto -I.
ts-proto
can also be invoked with Gradle using the protobuf-gradle-plugin:
protobuf {
plugins {
// `ts` can be replaced by any unused plugin name, e.g. `tsproto`
ts {
path = 'path/to/plugin'
}
}
// This section only needed if you provide plugin options
generateProtoTasks {
all().each { task ->
task.plugins {
// Must match plugin ID declared above
ts {
option 'foo=bar'
}
}
}
}
}
Generated code will be placed in the Gradle build directory.
Supported options
With
--ts_proto_opt=context=true
, the services will have a Go-stylectx
parameter, which is useful for tracing/logging/etc. if you're not using node'sasync_hooks
api due to performance reasons.With
--ts_proto_opt=forceLong=long
, all 64-bit numbers will be parsed as instances ofLong
(using the long library).Alternatively, if you pass
--ts_proto_opt=forceLong=string
, all 64-bit numbers will be outputted as strings.The default behavior is
forceLong=number
, which will internally still use thelong
library to encode/decode values on the wire (so you will still see autil.Long = Long
line in your output), but will convert thelong
values tonumber
automatically for you. Note that a runtime error is thrown if, while doing this conversion, a 64-bit value is larger than can be correctly stored as anumber
.With
--ts_proto_opt=esModuleInterop=true
changes output to beesModuleInterop
compliant.Specifically the
Long
imports will be generated asimport Long from 'long'
instead ofimport * as Long from 'long'
.With
--ts_proto_opt=env=node
orbrowser
orboth
, ts-proto will make environment-specific assumptions in your output. This defaults toboth
, which makes no environment-specific assumptions.Using
node
changes the types ofbytes
fromUint8Array
toBuffer
for easier integration with the node ecosystem which generally usesBuffer
.Currently
browser
doesn't have any specific behavior other than being "notnode
". It probably will soon/at some point.With
--ts_proto_opt=useOptionals=true
, non-scalar fields are declared as optional TypeScript properties, e.g.field?: Message
instead of the defaultfield: Message | undefined
.ts-proto defaults to
useOptionals=false
, e.g.field: Message | undefined
, because it is the most safe for use cases like:interface SomeMessage { firstName: string | undefined; lastName: string | undefined; } const data = { firstName: 'a', lastTypo: 'b' }; // This would compile if `lastName` was `lastName?`, even though the // `lastTypo` key above means that `lastName` is not assigned. const message: SomeMessage = { ...data, };
However, the type-safety of
useOptionals=false
is admittedly tedious if you have many inherently-unused fields, so you can useuseOptionals=true
if that trade-off makes sense for your project.You can also use the generated
SomeMessage.fromPartial
methods to opt into the optionality on a per-call-site basis. ThefromPartial
allows the creator/writer to have default values applied (i.e.undefined
-->0
), and the return value will still be the non-optional type that provides a consistent view (i.e. always0
) to clients.Eventually if TypeScript supports Exact Types, that should allow ts-proto to switch to
useOptionals=true
as the default/only behavior, have the generatedMessage.encode
/Message.toPartial
/etc. methods acceptExact<T>
versions of the message types, and the result would be both safe + succinct.Also see the comment in this issue which explains the nuance behind making all fields optional (currently
useOptionals
only makes message fields optional), specifically that a message created withconst message: Message = { ...key not set... }
(sokey
isundefined
) vs.const message = Message.decode(...key not set...)
(sokey
is the default value) would look different to clients.Note that RPC methods, like
service.ping({ key: ... })
, acceptDeepPartial
versions of the request messages, because of the same rationale that it makes it easy for the writer call-site to get default values for free, and because the "reader" is the internal ts-proto serialization code, it can apply the defaults as necessary.With
--ts_proto_opt=exportCommonSymbols=false
, utility types likeDeepPartial
won't beexport
d.This should make it possible to use create barrel imports of the generated output, i.e.
import * from ./foo
andimport * from ./bar
.Note that if you have the same message name used in multiple
*.proto
files, you will still get import conflicts.With
--ts_proto_opt=oneof=unions
,oneof
fields will be generated as ADTs.See the "OneOf Handling" section.
With
--ts_proto_opt=unrecognizedEnum=false
enums will not contain anUNRECOGNIZED
key with value of -1.With
--ts_proto_opt=lowerCaseServiceMethods=true
, the method names of service methods will be lowered/camel-case, i.e.service.findFoo
instead ofservice.FindFoo
.With
--ts_proto_opt=snakeToCamel=false
, fields will be kept snake case.snakeToCamel
can also be set as string with--ts_proto_opt=snakeToCamel=keys,json
.keys
will keep field names as camelCase andjson
will keep json field names as camelCase. Empty string will keep field names as snake_case.With
--ts_proto_opt=outputEncodeMethods=false
, theMessage.encode
andMessage.decode
methods for working with protobuf-encoded/binary data will not be output.This is useful if you want "only types".
With
--ts_proto_opt=outputJsonMethods=false
, theMessage.fromJSON
andMessage.toJSON
methods for working with JSON-coded data will not be output.This is also useful if you want "only types".
With
--ts_proto_opt=outputPartialMethods=false
, theMessage.fromPartial
methods for accepting partially-formed objects/object literals will not be output.With
--ts_proto_opt=stringEnums=true
, the generated enum types will be string-based instead of int-based.This is useful if you want "only types" and are using a gRPC REST Gateway configured to serialize enums as strings.
(Requires
outputEncodeMethods=false
.)With
--ts_proto_opt=outputClientImpl=false
, the client implementations, i.e.FooServiceClientImpl
, that implement the client-side (in Twirp, see next option forgrpc-web
) RPC interfaces will not be output.With
--ts_proto_opt=outputClientImpl=grpc-web
, the client implementations, i.e.FooServiceClientImpl
, will use the @improbable-eng/grpc-web library at runtime to send grpc messages to a grpc-web backend.(Note that this only uses the grpc-web runtime, you don't need to use any of their generated code, i.e. the ts-proto output replaces their
ts-protoc-gen
output.)You'll need to add the
@improbable-eng/grpc-web
and a transport to your project'spackage.json
; see theintegration/grpc-web
directory for a working example. Also see #504 for integrating with grpc-web-devtools.With
--ts_proto_opt=returnObservable=true
, the return type of service methods will beObservable<T>
instead ofPromise<T>
.With
--ts_proto_opt=addGrpcMetadata=true
, the last argument of service methods will accept the grpcMetadata
type, which contains additional information with the call (i.e. access tokens/etc.).(Requires
nestJs=true
.)With
--ts_proto_opt=addNestjsRestParameter=true
, the last argument of service methods will be an rest parameter with type any. This way you can use custom decorators you could normally use in nestjs.(Requires
nestJs=true
.)With
--ts_proto_opt=nestJs=true
, the defaults will change to generate NestJS protobuf friendly types & service interfaces that can be used in both the client-side and server-side of NestJS protobuf implementations. See the nestjs readme for more information and implementation examples.Specifically
outputEncodeMethods
,outputJsonMethods
, andoutputClientImpl
will all be false, andlowerCaseServiceMethods
will be true.Note that
addGrpcMetadata
,addNestjsRestParameter
andreturnObservable
will still be false.With
--ts_proto_opt=useDate=false
, fields of typegoogle.protobuf.Timestamp
will not be mapped to typeDate
in the generated types. See Timestamp for more details.With
--ts_proto_opt=useObjectId=true
, fields of a type called ObjectId where the message is constructed to have on field called value that is a string will be mapped to typemongodb.ObjectId
in the generated types. This will require your project to install the mongodb npm package. See ObjectId for more details.With
--ts_proto_opt=outputSchema=true
, meta typings will be generated that can later be used in other code generators.With
--ts_proto_opt=outputTypeRegistry=true
, the type registry will be generated that can be used to resolve message types by fully-qualified name. Also, each message will get extra$type
field containing fully-qualified name.With
--ts_proto_opt=outputServices=grpc-js
, ts-proto will output service definitions and server / client stubs in grpc-js format.With
--ts_proto_opt=outputServices=generic-definitions
, ts-proto will output generic (framework-agnostic) service definitions. These definitions contain descriptors for each method with links to request and response types, which allows to generate server and client stubs at runtime, and also generate strong types for them at compile time. An example of a library that uses this approach is nice-grpc.With
--ts_proto_opt=metadataType=Foo@./some-file
, ts-proto add a generic (framework-agnostic) metadata field to the generic service definition.With
--ts_proto_opt=outputServices=generic-definitions,outputServices=default
, ts-proto will output both generic definitions and interfaces. This is useful if you want to rely on the interfaces, but also have some reflection capabilities at runtime.With
--ts_proto_opt=outputServices=false
, or=none
, ts-proto will output NO service definitions.With
--ts_proto_opt=emitImportedFiles=false
, ts-proto will not emitgoogle/protobuf/*
files unless you explicit add files toprotoc
like thisprotoc --plugin=./node_modules/.bin/protoc-gen-ts_proto my_message.proto google/protobuf/duration.proto
With
--ts_proto_opt=fileSuffix=<SUFFIX>
, ts-proto will emit generated files using the specified suffix. Ahelloworld.proto
file withfileSuffix=.pb
would be generated ashelloworld.pb.ts
. This is common behavior in other protoc plugins and provides a way to quickly glob all the generated files.With
--ts_proto_opt=enumsAsLiterals=true
, the generated enum types will be enum-ish object withas const
.With
--ts_proto_opt=useExactTypes=false
, the generatedfromPartial
method will not use Exact types.The default behavior is
useExactTypes=true
, which makesfromPartial
use Exact type for its argument to make TypeScript reject any unknown properties.With
--ts_proto_opt=unknownFields=true
, all unknown fields will be parsed and output as arrays of buffers.With
--ts_proto_opt=onlyTypes=true
, only types will be emitted, and imports forlong
andprotobufjs/minimal
will be excluded.Note: This is a combination of
outputJsonMethods=false,outputEncodeMethods=false,outputClientImpl=false,nestJs=false
With
--ts_proto_opt=usePrototypeForDefaults=true
, the generated code will wrap new objects withObject.create
.This allows code to do hazzer checks to detect when default values have been applied, which due to proto3's behavior of not putting default values on the wire, is typically only useful for interacting with proto2 messages.
When enabled, default values are inherited from a prototype, and so code can use Object.keys().includes("someField") to detect if someField was actually decoded or not.
Note that, as indicated, this means Object.keys will not include set-by-default fields, so if you have code that iterates over messages keys in a generic fashion, it will have to also iterate over keys inherited from the prototype.
Only Types
If you're looking for ts-proto
to generate only types for your Protobuf types then passing all three of outputEncodeMethods
, outputJsonMethods
, and outputClientImpl
as false
is probably what you want, i.e.:
--ts_proto_opt=onlyTypes=true
.
NestJS Support
We have a great way of working together with nestjs. ts-proto
generates interfaces
and decorators
for you controller, client. For more information see the nestjs readme.
Watch Mode
If you want to run ts-proto
on every change of a proto file, you'll need to use a tool like chokidar-cli and use it as a script in package.json
:
"proto:generate": "protoc --ts_proto_out=. ./<proto_path>/<proto_name>.proto --ts_proto_opt=esModuleInterop=true",
"proto:watch": "chokidar \"**/*.proto\" -c \"npm run proto:generate\""
Basic gRPC implementation
ts-proto
is RPC framework agnostic - how you transmit your data to and from
your data source is up to you. The generated client implementations all expect
a rpc
parameter, which type is defined like this:
interface Rpc {
request(service: string, method: string, data: Uint8Array): Promise<Uint8Array>;
}
If you're working with gRPC, a simple implementation could look like this:
type RpcImpl = (service: string, method: string, data: Uint8Array) => Promise<Uint8Array>;
const sendRequest: RpcImpl = (service, method, data) => {
// Conventionally in gRPC, the request path looks like
// "package.names.ServiceName/MethodName",
// we therefore construct such a string
const path = `${service}/${method}`;
return new Promise((resolve, reject) => {
// makeUnaryRequest transmits the result (and error) with a callback
// transform this into a promise!
const resultCallback: UnaryCallback<any> = (err, res) => {
if (err) {
return reject(err);
}
resolve(res);
};
function passThrough(argument: any) {
return argument;
}
// Using passThrough as the serialize and deserialize functions
conn.makeUnaryRequest(path, passThrough, passThrough, data, resultCallback);
});
};
const rpc: Rpc = { request: sendRequest }
Sponsors
Kudos to our sponsors:
- ngrok funded ts-proto's initial grpc-web support.
If you need ts-proto customizations or priority support for your company, you can ping me at via email.
Development
Requirements
Setup
The commands below assume you have Docker installed. To use a local copy of protoc
without docker, use commands suffixed with :local
- Check out the repository for the latest code.
- Run
yarn install
to install the dependencies. - Run
yarn build:test
oryarn build:test:local
to generate the test files.This runs the following commands:
proto2bin
— Converts integration test.proto
files to.bin
.bin2ts
— Runsts-proto
on the.bin
files to generate.ts
files.proto2pbjs
— Generates a reference implementation usingpbjs
for testing compatibility.
- Run
yarn test
Workflow
- Modifying the plugin implementation:
- The most important logic is found in src/main.ts.
- Run
yarn bin2ts
oryarn bin2ts:local
.
Since the proto files were not changed, you only need to regenerate the typescript files. - Run
yarn test
to verify the typescript files are compatible with the reference implementation, and pass other tests.
- Updating or adding
.proto
files in the integration directory:- Run
yarn watch
to automatically regenerate test files when proto files change.- Or run
yarn build:test
to regenerate all integration test files.
- Or run
- Run
yarn test
to retest.
- Run
Contributing
- Run
yarn build:test
andyarn test
to make sure everything works. - Run
yarn prettier
to format the typescript files. - Commit the changes:
- Also include the generated
.bin
files for the tests where you added or modified.proto
files.These are checked into git so that the test suite can run without having to invoke the
protoc
build chain. - Also include the generated
.ts
files.
- Also include the generated
- Create a pull request
Dockerized Protoc
The repository includes a dockerized version of protoc
, which is configured in docker-compose.yml.
It can be useful in case you want to manually invoke the plugin with a known version of protoc
.
Usage:
# Include the protoc alias in your shell.
. aliases.sh
# Run protoc as usual. The ts-proto directory is available in /ts-proto.
protoc --plugin=/ts-proto/protoc-gen-ts_proto --ts_proto_out=./output -I=./protos ./protoc/*.proto
# Or use the ts-protoc alias which specifies the plugin path for you.
ts-protoc --ts_proto_out=./output -I=./protos ./protoc/*.proto
- All paths must be relative paths within the current working directory of the host.
../
is not allowed - Within the docker container, the absolute path to the project root is
/ts-proto
- The container mounts the current working directory in
/host
, and sets it as its working directory. - Once
aliases.sh
is sourced, you can use theprotoc
command in any folder.
Assumptions
- TS/ES6 module name is the proto package
Todo
- Support the string-based encoding of duration in
fromJSON
/toJSON
- Make
oneof=unions
the default behavior in 2.0 - Probably change
forceLong
default in 2.0, should default toforceLong=long
- Make
esModuleInterop=true
the default in 2.0
OneOf Handling
By default, oneof
fields are modeled "flatly" in the message, i.e. oneof either_field { string field_a; string field_b }
means that the message will have field_a: string | undefined; field_b: string | undefined
.
With this output, you'll have to check both if object.field_a
and if object.field_b
, and if you set one, you'll have to remember to unset the other.
We recommend using the oneof=unions
option, which will change the output to be an Abstract Data Type/ADT like:
interface YourMessage {
eitherField: { $case: 'field_a'; field_a: string } | { $case: 'field_b'; field_b: string };
}
As this will automatically enforce only one of field_a
or field_b
"being set" at a time, because the values are stored in the eitherField
field that can only have a single value at a time.
In ts-proto's currently-unscheduled 2.x release, oneof=unions
will become the default behavior.
Default values and unset fields
In core Protobuf, values that are unset or equal to the default value are not sent over the wire.
The default value of a message is undefined
. Primitive types take their natural default value, i.e. string
is ''
, number
is 0
, etc.
This behavior enables forward compatibility, as primitive fields will always have a value, even when omitted by outdated agents, but it also means default and unset values cannot be distinguished.
If you need primitive fields where you can detect set/unset, see Wrapper Types.
Encode / Decode
ts-proto
follows the Protobuf rules, and always returns default values for unsets fields when decoding, while omitting them from the output when serialized in binary format.
syntax = "proto3";
message Foo {
string bar = 1;
}
protobufBytes; // assume this is an empty Foo object, in protobuf binary format
Foo.decode(protobufBytes); // => { bar: '' }
Foo.encode({ bar: '' }); // => { }, writes an empty Foo object, in protobuf binary format
fromJSON / toJSON
Reading JSON will also initialize the default values. Since senders may either omit unset fields, or set them to the default value, use fromJSON
to normalize the input.
Foo.fromJSON({ }); // => { bar: '' }
Foo.fromJSON({ bar: '' }); // => { bar: '' }
Foo.fromJSON({ bar: 'baz' }); // => { bar: 'baz' }
When writing JSON, ts-proto
currently does not normalize message when converting to JSON, other than omitting unset fields, but it may do so in the future.
// Current ts-proto behavior
Foo.toJSON({ }); // => { }
Foo.toJSON({ bar: undefined }); // => { }
Foo.toJSON({ bar: '' }); // => { bar: '' } - note: this is the default value, but it's not omitted
Foo.toJSON({ bar: 'baz' }); // => { bar: 'baz' }
// Possible future behavior, where ts-proto would normalize message
Foo.toJSON({ }); // => { }
Foo.toJSON({ bar: undefined }); // => { }
Foo.toJSON({ bar: '' }); // => { } - note: omitting the default value, as expected
Foo.toJSON({ bar: 'baz' }); // => { bar: 'baz' }
- Please open an issue if you need this behavior.
Well-Known Types
Protobuf comes with several predefined message definitions, called "Well-Known Types". Their interpretation is defined by the Protobuf specification, and libraries are expected to convert these messages to corresponding native types in the target language.
ts-proto
currently automatically converts these messages to their corresponding native types.
- google.protobuf.BoolValue ⇆
boolean
- google.protobuf.BytesValue ⇆
Uint8Array
- google.protobuf.DoubleValue ⇆
number
- google.protobuf.FieldMask ⇆
string[]
- google.protobuf.FloatValue ⇆
number
- google.protobuf.Int32Value ⇆
number
- google.protobuf.Int64Value ⇆
number
- google.protobuf.ListValue ⇆
any[]
- google.protobuf.UInt32Value ⇆
number
- google.protobuf.UInt64Value ⇆
number
- google.protobuf.StringValue ⇆
string
- google.protobuf.Value ⇆
any
(i.e.number | string | boolean | null | array | object
) - google.protobuf.Struct ⇆
{ [key: string]: any }
Wrapper Types
Wrapper Types are messages containing a single primitive field, and can be imported in .proto
files with import "google/protobuf/wrappers.proto"
.
Since these are messages, their default value is undefined
, allowing you to distinguish unset primitives from their default values, when using Wrapper Types.
ts-proto
generates these fields as <primitive> | undefined
.
For example:
// Protobuf
syntax = "proto3";
import "google/protobuf/wrappers.proto";
message ExampleMessage {
google.protobuf.StringValue name = 1;
}
// TypeScript
interface ExampleMessage {
name: string | undefined;
}
When encoding a message the primitive value is converted back to its corresponding wrapper type:
ExampleMessage.encode({ name: 'foo' }) // => { name: { value: 'foo' } }, in binary
When calling toJSON, the value is not converted, because wrapper types are idiomatic in JSON.
ExampleMessage.toJSON({ name: 'foo' }) // => { name: 'foo' }
JSON Types (Struct Types)
Protobuf's language and types are not sufficient to represent all possible JSON values, since JSON may contain values whose type is unknown in advance. For this reason, Protobuf offers several additional types to represent arbitrary JSON values.
These are called Struct Types, and can be imported in .proto
files with import "google/protobuf/struct.proto"
.
- google.protobuf.Value ⇆
any
- This is the most general type, and can represent any JSON value (i.e.
number | string | boolean | null | array | object
).
- This is the most general type, and can represent any JSON value (i.e.
- google.protobuf.ListValue ⇆
any[]
- To represent a JSON array
- google.protobuf.Struct ⇆
{ [key: string]: any }
- To represent a JSON object
ts-proto
automatically converts back and forth between these Struct Types and their corresponding JSON types.
Example:
// Protobuf
syntax = "proto3";
import "google/protobuf/struct.proto";
message ExampleMessage {
google.protobuf.Value anything = 1;
}
// TypeScript
interface ExampleMessage {
anything: any | undefined;
}
Encoding a JSON value embedded in a message, converts it to a Struct Type:
ExampleMessage.encode({ anything: { "name": "hello" } })
/* Outputs the following structure, encoded in protobuf binary format:
{
anything: Value {
structValue = Struct {
fields = [
MapEntry {
key = "name",
value = Value {
stringValue = "hello"
}
]
}
}
}
}*/
ExampleMessage.encode({ anything: true })
/* Outputs the following structure encoded in protobuf binary format:
{
anything: Value {
boolValue = true
}
}*/
Timestamp
The representation of google.protobuf.Timestamp
is configurable by the useDate
flag.
| Protobuf well-known type | Default/useDate=true
| useDate=false
| useDate=string
|
| --------------------------- | ---------------------- | ------------------------------------ | ---------------- |
| google.protobuf.Timestamp
| Date
| { seconds: number, nanos: number }
| string
|
Number Types
Numbers are by default assumed to be plain JavaScript number
s.
This is fine for Protobuf types like int32
and float
, but 64-bit types like int64
can't be 100% represented by JavaScript's number
type, because int64
can have larger/smaller values than number
.
ts-proto's default configuration (which is forceLong=number
) is to still use number
for 64-bit fields, and then throw an error if a value (at runtime) is larger than Number.MAX_SAFE_INTEGER
.
If you expect to use 64-bit / higher-than-MAX_SAFE_INTEGER
values, then you can use the ts-proto forceLong
option, which uses the long npm package to support the entire range of 64-bit values.
The protobuf number types map to JavaScript types based on the forceLong
config option:
| Protobuf number types | Default/forceLong=number
| forceLong=long
| forceLong=string
|
| --------------------- | -------------------------- | ---------------- | ------------------ |
| double | number | number | number |
| float | number | number | number |
| int32 | number | number | number |
| int64 | number* | Long | string |
| uint32 | number | number | number |
| uint64 | number* | Unsigned Long | string |
| sint32 | number | number | number |
| sint64 | number* | Long | string |
| fixed32 | number | number | number |
| fixed64 | number* | Unsigned Long | string |
| sfixed32 | number | number | number |
| sfixed64 | number* | Long | string |
Where (*) indicates they might throw an error at runtime.
Current Status of Optional Values
- Required primitives: use as-is, i.e.
string name = 1
. - Optional primitives: use wrapper types, i.e.
StringValue name = 1
. - Required messages: not available
- Optional primitives: use as-is, i.e.
SubMessage message = 1
.