β οΈ OpenAI has deprecated all Engine-based APIs. See Deprecated Endpoints below for more info.
Java libraries for using OpenAI's GPT apis. Supports GPT-3, ChatGPT, and GPT-4.
Includes the following artifacts:
api
: request/response POJOs for the GPT APIs.client
: a basic retrofit client for the GPT endpoints, includes theapi
moduleservice
: A basic service class that creates and calls the client. This is the easiest way to get started.
as well as an example project using the service.
- Models
- Completions
- Chat Completions
- Edits
- Embeddings
- Audio
- Files
- Fine-tuning
- Images
- Moderations
- Assistants
implementation 'com.theokanning.openai-gpt3-java:<api|client|service>:<version>'
<dependency>
<groupId>com.theokanning.openai-gpt3-java</groupId>
<artifactId>{api|client|service}</artifactId>
<version>version</version>
</dependency>
If you want to make your own client, just import the POJOs from the api
module.
Your client will need to use snake case to work with the OpenAI API.
If you're using retrofit, you can import the client
module and use the OpenAiApi.
You'll have to add your auth token as a header (see AuthenticationInterceptor)
and set your converter factory to use snake case and only include non-null fields.
If you're looking for the fastest solution, import the service
module and use OpenAiService.
β οΈ The OpenAiService in the client module is deprecated, please switch to the new version in the service module.
OpenAiService service = new OpenAiService("your_token");
CompletionRequest completionRequest = CompletionRequest.builder()
.prompt("Somebody once told me the world is gonna roll me")
.model("babbage-002"")
.echo(true)
.build();
service.createCompletion(completionRequest).getChoices().forEach(System.out::println);
If you need to customize OpenAiService, create your own Retrofit client and pass it in to the constructor. For example, do the following to add request logging (after adding the logging gradle dependency):
ObjectMapper mapper = defaultObjectMapper();
OkHttpClient client = defaultClient(token, timeout)
.newBuilder()
.interceptor(HttpLoggingInterceptor())
.build();
Retrofit retrofit = defaultRetrofit(client, mapper);
OpenAiApi api = retrofit.create(OpenAiApi.class);
OpenAiService service = new OpenAiService(api);
To use a proxy, modify the OkHttp client as shown below:
ObjectMapper mapper = defaultObjectMapper();
Proxy proxy = new Proxy(Proxy.Type.HTTP, new InetSocketAddress(host, port));
OkHttpClient client = defaultClient(token, timeout)
.newBuilder()
.proxy(proxy)
.build();
Retrofit retrofit = defaultRetrofit(client, mapper);
OpenAiApi api = retrofit.create(OpenAiApi.class);
OpenAiService service = new OpenAiService(api);
You can create your functions and define their executors easily using the ChatFunction class, along with any of your custom classes that will serve to define their available parameters. You can also process the functions with ease, with the help of an executor called FunctionExecutor.
First we declare our function parameters:
public class Weather {
@JsonPropertyDescription("City and state, for example: LeΓ³n, Guanajuato")
public String location;
@JsonPropertyDescription("The temperature unit, can be 'celsius' or 'fahrenheit'")
@JsonProperty(required = true)
public WeatherUnit unit;
}
public enum WeatherUnit {
CELSIUS, FAHRENHEIT;
}
public static class WeatherResponse {
public String location;
public WeatherUnit unit;
public int temperature;
public String description;
// constructor
}
Next, we declare the function itself and associate it with an executor, in this example we will fake a response from some API:
ChatFunction.builder()
.name("get_weather")
.description("Get the current weather of a location")
.executor(Weather.class, w -> new WeatherResponse(w.location, w.unit, new Random().nextInt(50), "sunny"))
.build()
Then, we employ the FunctionExecutor object from the 'service' module to assist with execution and transformation into an object that is ready for the conversation:
List<ChatFunction> functionList = // list with functions
FunctionExecutor functionExecutor = new FunctionExecutor(functionList);
List<ChatMessage> messages = new ArrayList<>();
ChatMessage userMessage = new ChatMessage(ChatMessageRole.USER.value(), "Tell me the weather in Barcelona.");
messages.add(userMessage);
ChatCompletionRequest chatCompletionRequest = ChatCompletionRequest
.builder()
.model("gpt-3.5-turbo-0613")
.messages(messages)
.functions(functionExecutor.getFunctions())
.functionCall(new ChatCompletionRequestFunctionCall("auto"))
.maxTokens(256)
.build();
ChatMessage responseMessage = service.createChatCompletion(chatCompletionRequest).getChoices().get(0).getMessage();
ChatFunctionCall functionCall = responseMessage.getFunctionCall(); // might be null, but in this case it is certainly a call to our 'get_weather' function.
ChatMessage functionResponseMessage = functionExecutor.executeAndConvertToMessageHandlingExceptions(functionCall);
messages.add(response);
Note: The
FunctionExecutor
class is part of the 'service' module.
You can also create your own function executor. The return object of ChatFunctionCall.getArguments()
is a JsonNode for simplicity and should be able to help you with that.
For a more in-depth look, refer to a conversational example that employs functions in: OpenAiApiFunctionsExample.java. Or for an example using functions and stream: OpenAiApiFunctionsWithStreamExample.java
If you want to shut down your process immediately after streaming responses, call OpenAiService.shutdownExecutor()
.
This is not necessary for non-streaming calls.
All the example project requires is your OpenAI api token
export OPENAI_TOKEN="sk-XXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXXX"
You can try all the capabilities of this project using:
./gradlew runExampleOne
And you can also try the new capability of using functions:
./gradlew runExampleTwo
Or functions with 'stream' mode enabled:
./gradlew runExampleThree
Yes! GPT-4 uses the ChatCompletion Api, and you can see the latest model options here.
GPT-4 is currently in a limited beta (as of 4/1/23), so make sure you have access before trying to use it.
Absolutely! It is very easy to use your own functions without worrying about doing the dirty work. As mentioned above, you can refer to OpenAiApiFunctionsExample.java or OpenAiApiFunctionsWithStreamExample.java projects for an example.
Make sure that OpenAI is available in your country.
Many projects use OpenAiService, and in order to support them best I've kept it extremely simple.
You can create your own OpenAiApi instance to customize headers, timeouts, base urls etc.
If you want features like retry logic and async calls, you'll have to make an OpenAiApi
instance and call it directly instead of using OpenAiService
OpenAI has deprecated engine-based endpoints in favor of model-based endpoints.
For example, instead of using v1/engines/{engine_id}/completions
, switch to v1/completions
and specify the model in the CompletionRequest
.
The code includes upgrade instructions for all deprecated endpoints.
I won't remove the old endpoints from this library until OpenAI shuts them down.
Published under the MIT License