-
-
Notifications
You must be signed in to change notification settings - Fork 0
/
embeddings.go
143 lines (127 loc) · 5.11 KB
/
embeddings.go
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
package openai
import (
"context"
"net/http"
)
// EmbeddingModel enumerates the models which can be used
// to generate Embedding vectors.
type EmbeddingModel int
// String implements the fmt.Stringer interface.
func (e EmbeddingModel) String() string {
return enumToString[e]
}
// MarshalText implements the encoding.TextMarshaler interface.
func (e EmbeddingModel) MarshalText() ([]byte, error) {
return []byte(e.String()), nil
}
// UnmarshalText implements the encoding.TextUnmarshaler interface.
// On unrecognized value, it sets |e| to Unknown.
func (e *EmbeddingModel) UnmarshalText(b []byte) error {
if val, ok := stringToEnum[(string(b))]; ok {
*e = val
return nil
}
*e = Unknown
return nil
}
const (
Unknown EmbeddingModel = iota
AdaSimilarity
BabbageSimilarity
CurieSimilarity
DavinciSimilarity
AdaSearchDocument
AdaSearchQuery
BabbageSearchDocument
BabbageSearchQuery
CurieSearchDocument
CurieSearchQuery
DavinciSearchDocument
DavinciSearchQuery
AdaCodeSearchCode
AdaCodeSearchText
BabbageCodeSearchCode
BabbageCodeSearchText
AdaEmbeddingV2
)
var enumToString = map[EmbeddingModel]string{
AdaSimilarity: "text-similarity-ada-001",
BabbageSimilarity: "text-similarity-babbage-001",
CurieSimilarity: "text-similarity-curie-001",
DavinciSimilarity: "text-similarity-davinci-001",
AdaSearchDocument: "text-search-ada-doc-001",
AdaSearchQuery: "text-search-ada-query-001",
BabbageSearchDocument: "text-search-babbage-doc-001",
BabbageSearchQuery: "text-search-babbage-query-001",
CurieSearchDocument: "text-search-curie-doc-001",
CurieSearchQuery: "text-search-curie-query-001",
DavinciSearchDocument: "text-search-davinci-doc-001",
DavinciSearchQuery: "text-search-davinci-query-001",
AdaCodeSearchCode: "code-search-ada-code-001",
AdaCodeSearchText: "code-search-ada-text-001",
BabbageCodeSearchCode: "code-search-babbage-code-001",
BabbageCodeSearchText: "code-search-babbage-text-001",
AdaEmbeddingV2: "text-embedding-ada-002",
}
var stringToEnum = map[string]EmbeddingModel{
"text-similarity-ada-001": AdaSimilarity,
"text-similarity-babbage-001": BabbageSimilarity,
"text-similarity-curie-001": CurieSimilarity,
"text-similarity-davinci-001": DavinciSimilarity,
"text-search-ada-doc-001": AdaSearchDocument,
"text-search-ada-query-001": AdaSearchQuery,
"text-search-babbage-doc-001": BabbageSearchDocument,
"text-search-babbage-query-001": BabbageSearchQuery,
"text-search-curie-doc-001": CurieSearchDocument,
"text-search-curie-query-001": CurieSearchQuery,
"text-search-davinci-doc-001": DavinciSearchDocument,
"text-search-davinci-query-001": DavinciSearchQuery,
"code-search-ada-code-001": AdaCodeSearchCode,
"code-search-ada-text-001": AdaCodeSearchText,
"code-search-babbage-code-001": BabbageCodeSearchCode,
"code-search-babbage-text-001": BabbageCodeSearchText,
"text-embedding-ada-002": AdaEmbeddingV2,
}
// Embedding is a special format of data representation that can be easily utilized by machine
// learning models and algorithms. The embedding is an information dense representation of the
// semantic meaning of a piece of text. Each embedding is a vector of floating point numbers,
// such that the distance between two embeddings in the vector space is correlated with semantic similarity
// between two inputs in the original format. For example, if two texts are similar,
// then their vector representations should also be similar.
type Embedding struct {
Object string `json:"object"`
Embedding []float32 `json:"embedding"`
Index int `json:"index"`
}
// EmbeddingResponse is the response from a Create embeddings request.
type EmbeddingResponse struct {
Object string `json:"object"`
Data []Embedding `json:"data"`
Model EmbeddingModel `json:"model"`
Usage Usage `json:"usage"`
}
// EmbeddingRequest is the input to a Create embeddings request.
type EmbeddingRequest struct {
// Input is a slice of strings for which you want to generate an Embedding vector.
// Each input must not exceed 2048 tokens in length.
// OpenAPI suggests replacing newlines (\n) in your input with a single space, as they
// have observed inferior results when newlines are present.
// E.g.
// "The food was delicious and the waiter..."
Input []string `json:"input"`
// ID of the model to use. You can use the List models API to see all of your available models,
// or see our Model overview for descriptions of them.
Model EmbeddingModel `json:"model"`
// A unique identifier representing your end-user, which will help OpenAI to monitor and detect abuse.
User string `json:"user"`
}
// CreateEmbeddings returns an EmbeddingResponse which will contain an Embedding for every item in |request.Input|.
// https://beta.openai.com/docs/api-reference/embeddings/create
func (c *Client) CreateEmbeddings(ctx context.Context, request EmbeddingRequest) (resp EmbeddingResponse, err error) {
req, err := c.newRequest(ctx, http.MethodPost, c.fullURL("/embeddings", request.Model.String()), withBody(request))
if err != nil {
return
}
err = c.sendRequest(req, &resp)
return
}