// File generated from our OpenAPI spec by Stainless. See CONTRIBUTING.md for details. package openai import ( "context" "net/http" "github.com/openai/openai-go/internal/apijson" "github.com/openai/openai-go/internal/param" "github.com/openai/openai-go/internal/requestconfig" "github.com/openai/openai-go/option" ) // EmbeddingService contains methods and other services that help with interacting // with the openai API. // // Note, unlike clients, this service does not read variables from the environment // automatically. You should not instantiate this service directly, and instead use // the [NewEmbeddingService] method instead. type EmbeddingService struct { Options []option.RequestOption } // NewEmbeddingService generates a new service that applies the given options to // each request. These options are applied after the parent client's options (if // there is one), and before any request-specific options. func NewEmbeddingService(opts ...option.RequestOption) (r *EmbeddingService) { r = &EmbeddingService{} r.Options = opts return } // Creates an embedding vector representing the input text. func (r *EmbeddingService) New(ctx context.Context, body EmbeddingNewParams, opts ...option.RequestOption) (res *CreateEmbeddingResponse, err error) { opts = append(r.Options[:], opts...) path := "embeddings" err = requestconfig.ExecuteNewRequest(ctx, http.MethodPost, path, body, &res, opts...) return } type CreateEmbeddingResponse struct { // The list of embeddings generated by the model. Data []Embedding `json:"data,required"` // The name of the model used to generate the embedding. Model string `json:"model,required"` // The object type, which is always "list". Object CreateEmbeddingResponseObject `json:"object,required"` // The usage information for the request. Usage CreateEmbeddingResponseUsage `json:"usage,required"` JSON createEmbeddingResponseJSON `json:"-"` } // createEmbeddingResponseJSON contains the JSON metadata for the struct // [CreateEmbeddingResponse] type createEmbeddingResponseJSON struct { Data apijson.Field Model apijson.Field Object apijson.Field Usage apijson.Field raw string ExtraFields map[string]apijson.Field } func (r *CreateEmbeddingResponse) UnmarshalJSON(data []byte) (err error) { return apijson.UnmarshalRoot(data, r) } func (r createEmbeddingResponseJSON) RawJSON() string { return r.raw } // The object type, which is always "list". type CreateEmbeddingResponseObject string const ( CreateEmbeddingResponseObjectList CreateEmbeddingResponseObject = "list" ) func (r CreateEmbeddingResponseObject) IsKnown() bool { switch r { case CreateEmbeddingResponseObjectList: return true } return false } // The usage information for the request. type CreateEmbeddingResponseUsage struct { // The number of tokens used by the prompt. PromptTokens int64 `json:"prompt_tokens,required"` // The total number of tokens used by the request. TotalTokens int64 `json:"total_tokens,required"` JSON createEmbeddingResponseUsageJSON `json:"-"` } // createEmbeddingResponseUsageJSON contains the JSON metadata for the struct // [CreateEmbeddingResponseUsage] type createEmbeddingResponseUsageJSON struct { PromptTokens apijson.Field TotalTokens apijson.Field raw string ExtraFields map[string]apijson.Field } func (r *CreateEmbeddingResponseUsage) UnmarshalJSON(data []byte) (err error) { return apijson.UnmarshalRoot(data, r) } func (r createEmbeddingResponseUsageJSON) RawJSON() string { return r.raw } // Represents an embedding vector returned by embedding endpoint. type Embedding struct { // The embedding vector, which is a list of floats. The length of vector depends on // the model as listed in the // [embedding guide](https://platform.openai.com/docs/guides/embeddings). Embedding []float64 `json:"embedding,required"` // The index of the embedding in the list of embeddings. Index int64 `json:"index,required"` // The object type, which is always "embedding". Object EmbeddingObject `json:"object,required"` JSON embeddingJSON `json:"-"` } // embeddingJSON contains the JSON metadata for the struct [Embedding] type embeddingJSON struct { Embedding apijson.Field Index apijson.Field Object apijson.Field raw string ExtraFields map[string]apijson.Field } func (r *Embedding) UnmarshalJSON(data []byte) (err error) { return apijson.UnmarshalRoot(data, r) } func (r embeddingJSON) RawJSON() string { return r.raw } // The object type, which is always "embedding". type EmbeddingObject string const ( EmbeddingObjectEmbedding EmbeddingObject = "embedding" ) func (r EmbeddingObject) IsKnown() bool { switch r { case EmbeddingObjectEmbedding: return true } return false } type EmbeddingModel = string const ( EmbeddingModelTextEmbeddingAda002 EmbeddingModel = "text-embedding-ada-002" EmbeddingModelTextEmbedding3Small EmbeddingModel = "text-embedding-3-small" EmbeddingModelTextEmbedding3Large EmbeddingModel = "text-embedding-3-large" ) type EmbeddingNewParams struct { // Input text to embed, encoded as a string or array of tokens. To embed multiple // inputs in a single request, pass an array of strings or array of token arrays. // The input must not exceed the max input tokens for the model (8192 tokens for // `text-embedding-ada-002`), cannot be an empty string, and any array must be 2048 // dimensions or less. // [Example Python code](https://cookbook.openai.com/examples/how_to_count_tokens_with_tiktoken) // for counting tokens. Some models may also impose a limit on total number of // tokens summed across inputs. Input param.Field[EmbeddingNewParamsInputUnion] `json:"input,required"` // ID of the model to use. You can use the // [List models](https://platform.openai.com/docs/api-reference/models/list) API to // see all of your available models, or see our // [Model overview](https://platform.openai.com/docs/models) for descriptions of // them. Model param.Field[EmbeddingModel] `json:"model,required"` // The number of dimensions the resulting output embeddings should have. Only // supported in `text-embedding-3` and later models. Dimensions param.Field[int64] `json:"dimensions"` // The format to return the embeddings in. Can be either `float` or // [`base64`](https://pypi.org/project/pybase64/). EncodingFormat param.Field[EmbeddingNewParamsEncodingFormat] `json:"encoding_format"` // A unique identifier representing your end-user, which can help OpenAI to monitor // and detect abuse. // [Learn more](https://platform.openai.com/docs/guides/safety-best-practices#end-user-ids). User param.Field[string] `json:"user"` } func (r EmbeddingNewParams) MarshalJSON() (data []byte, err error) { return apijson.MarshalRoot(r) } // Input text to embed, encoded as a string or array of tokens. To embed multiple // inputs in a single request, pass an array of strings or array of token arrays. // The input must not exceed the max input tokens for the model (8192 tokens for // `text-embedding-ada-002`), cannot be an empty string, and any array must be 2048 // dimensions or less. // [Example Python code](https://cookbook.openai.com/examples/how_to_count_tokens_with_tiktoken) // for counting tokens. Some models may also impose a limit on total number of // tokens summed across inputs. // // Satisfied by [shared.UnionString], [EmbeddingNewParamsInputArrayOfStrings], // [EmbeddingNewParamsInputArrayOfTokens], // [EmbeddingNewParamsInputArrayOfTokenArrays]. type EmbeddingNewParamsInputUnion interface { ImplementsEmbeddingNewParamsInputUnion() } type EmbeddingNewParamsInputArrayOfStrings []string func (r EmbeddingNewParamsInputArrayOfStrings) ImplementsEmbeddingNewParamsInputUnion() {} type EmbeddingNewParamsInputArrayOfTokens []int64 func (r EmbeddingNewParamsInputArrayOfTokens) ImplementsEmbeddingNewParamsInputUnion() {} type EmbeddingNewParamsInputArrayOfTokenArrays [][]int64 func (r EmbeddingNewParamsInputArrayOfTokenArrays) ImplementsEmbeddingNewParamsInputUnion() {} // The format to return the embeddings in. Can be either `float` or // [`base64`](https://pypi.org/project/pybase64/). type EmbeddingNewParamsEncodingFormat string const ( EmbeddingNewParamsEncodingFormatFloat EmbeddingNewParamsEncodingFormat = "float" EmbeddingNewParamsEncodingFormatBase64 EmbeddingNewParamsEncodingFormat = "base64" ) func (r EmbeddingNewParamsEncodingFormat) IsKnown() bool { switch r { case EmbeddingNewParamsEncodingFormatFloat, EmbeddingNewParamsEncodingFormatBase64: return true } return false }