// _ _ // __ _____ __ ___ ___ __ _| |_ ___ // \ \ /\ / / _ \/ _` \ \ / / |/ _` | __/ _ \ // \ V V / __/ (_| |\ V /| | (_| | || __/ // \_/\_/ \___|\__,_| \_/ |_|\__,_|\__\___| // // Copyright © 2016 - 2025 Weaviate B.V. All rights reserved. // // CONTACT: hello@weaviate.io // package modjinaai import ( "context" "os" "time" "github.com/pkg/errors" "github.com/sirupsen/logrus" "github.com/weaviate/weaviate/entities/models" "github.com/weaviate/weaviate/entities/modulecapabilities" "github.com/weaviate/weaviate/entities/moduletools" "github.com/weaviate/weaviate/modules/text2multivec-jinaai/clients" "github.com/weaviate/weaviate/modules/text2multivec-jinaai/ent" "github.com/weaviate/weaviate/usecases/modulecomponents/additional" "github.com/weaviate/weaviate/usecases/modulecomponents/batch" "github.com/weaviate/weaviate/usecases/modulecomponents/text2vecbase" ) const ( Name = "text2multivec-jinaai" LegacyName = "text2colbert-jinaai" ) var batchSettings = batch.Settings{ // the encoding is different than OpenAI, but the code is not available in Go and too complicated to port. // using 30% more than the OpenAI model is a rough estimate but seems to work TokenMultiplier: 1.3, MaxTimePerBatch: float64(10), MaxObjectsPerBatch: 512, // Info from jina // real limit is 8192, but the vectorization times go up by A LOT if the batches are larger MaxTokensPerBatch: func(cfg moduletools.ClassConfig) int { return 2500 }, HasTokenLimit: true, ReturnsRateLimit: false, } func New() *JinaAIModule { return &JinaAIModule{} } type JinaAIModule struct { // This needs to be changed to [][]float32 but it can't be done right now bc this interface type change // is not possible now with the current implementation. Will change that later in next PR's vectorizer text2vecbase.TextVectorizerBatch[[][]float32] metaProvider text2vecbase.MetaProvider graphqlProvider modulecapabilities.GraphQLArguments searcher modulecapabilities.Searcher[[][]float32] nearTextTransformer modulecapabilities.TextTransform logger logrus.FieldLogger additionalPropertiesProvider modulecapabilities.AdditionalProperties } func (m *JinaAIModule) Name() string { return Name } func (m *JinaAIModule) AltNames() []string { return []string{LegacyName} } func (m *JinaAIModule) Type() modulecapabilities.ModuleType { return modulecapabilities.Text2Multivec } func (m *JinaAIModule) Init(ctx context.Context, params moduletools.ModuleInitParams, ) error { m.logger = params.GetLogger() if err := m.initVectorizer(ctx, params.GetConfig().ModuleHttpClientTimeout, m.logger); err != nil { return errors.Wrap(err, "init vectorizer") } if err := m.initAdditionalPropertiesProvider(); err != nil { return errors.Wrap(err, "init additional properties provider") } return nil } func (m *JinaAIModule) InitExtension(modules []modulecapabilities.Module) error { for _, module := range modules { if module.Name() == m.Name() { continue } if arg, ok := module.(modulecapabilities.TextTransformers); ok { if arg != nil && arg.TextTransformers() != nil { m.nearTextTransformer = arg.TextTransformers()["nearText"] } } } if err := m.initNearText(); err != nil { return errors.Wrap(err, "init graphql provider") } return nil } func (m *JinaAIModule) initVectorizer(ctx context.Context, timeout time.Duration, logger logrus.FieldLogger, ) error { jinaAIApiKey := os.Getenv("JINAAI_APIKEY") client := clients.New(jinaAIApiKey, timeout, logger) m.vectorizer = text2vecbase.New(client, batch.NewBatchVectorizer(client, 50*time.Second, batchSettings, logger, m.Name()), batch.ReturnBatchTokenizer(batchSettings.TokenMultiplier, m.Name(), ent.LowerCaseInput), ) m.metaProvider = client return nil } func (m *JinaAIModule) initAdditionalPropertiesProvider() error { m.additionalPropertiesProvider = additional.NewText2VecProvider() return nil } func (m *JinaAIModule) VectorizeObject(ctx context.Context, obj *models.Object, cfg moduletools.ClassConfig, ) ([][]float32, models.AdditionalProperties, error) { return m.vectorizer.Object(ctx, obj, cfg, ent.NewClassSettings(cfg)) } func (m *JinaAIModule) VectorizableProperties(cfg moduletools.ClassConfig) (bool, []string, error) { return true, nil, nil } func (m *JinaAIModule) VectorizeBatch(ctx context.Context, objs []*models.Object, skipObject []bool, cfg moduletools.ClassConfig) ([][][]float32, []models.AdditionalProperties, map[int]error) { vecs, errs := m.vectorizer.ObjectBatch(ctx, objs, skipObject, cfg) return vecs, nil, errs } func (m *JinaAIModule) MetaInfo() (map[string]interface{}, error) { return m.metaProvider.MetaInfo() } func (m *JinaAIModule) AdditionalProperties() map[string]modulecapabilities.AdditionalProperty { return m.additionalPropertiesProvider.AdditionalProperties() } func (m *JinaAIModule) VectorizeInput(ctx context.Context, input string, cfg moduletools.ClassConfig, ) ([][]float32, error) { return m.vectorizer.Texts(ctx, []string{input}, cfg) } // verify we implement the modules.Module interface var ( _ = modulecapabilities.Module(New()) _ = modulecapabilities.Vectorizer[[][]float32](New()) _ = modulecapabilities.MetaProvider(New()) _ = modulecapabilities.Searcher[[][]float32](New()) _ = modulecapabilities.GraphQLArguments(New()) _ = modulecapabilities.ModuleHasAltNames(New()) )