Files
breakpilot-lehrer/edu-search-service/internal/search/search.go
Benjamin Boenisch 414e0f5ec0
All checks were successful
CI / go-lint (push) Has been skipped
CI / python-lint (push) Has been skipped
CI / nodejs-lint (push) Has been skipped
CI / test-go-school (push) Successful in 28s
CI / test-go-edu-search (push) Successful in 27s
CI / test-python-klausur (push) Successful in 1m45s
CI / test-python-agent-core (push) Successful in 16s
CI / test-nodejs-website (push) Successful in 21s
feat: edu-search-service migriert, voice-service/geo-service entfernt
- edu-search-service von breakpilot-pwa nach breakpilot-lehrer kopiert (ohne vendor)
- opensearch + edu-search-service in docker-compose.yml hinzugefuegt
- voice-service aus docker-compose.yml entfernt (jetzt in breakpilot-core)
- geo-service aus docker-compose.yml entfernt (nicht mehr benoetigt)
- CI/CD: edu-search-service zu Gitea Actions und Woodpecker hinzugefuegt
  (Go lint, test mit go mod download, build, SBOM)

Co-Authored-By: Claude Opus 4.6 <noreply@anthropic.com>
2026-02-15 18:36:38 +01:00

593 lines
16 KiB
Go

package search
import (
"context"
"encoding/json"
"fmt"
"strings"
"github.com/opensearch-project/opensearch-go/v2"
"github.com/opensearch-project/opensearch-go/v2/opensearchapi"
)
// SearchRequest represents an API search request
type SearchRequest struct {
Query string `json:"q"`
Mode string `json:"mode"` // keyword, semantic, hybrid
Limit int `json:"limit"`
Offset int `json:"offset"`
Filters SearchFilters `json:"filters"`
Rerank bool `json:"rerank"`
Include SearchInclude `json:"include"`
}
// SearchFilters for narrowing results
type SearchFilters struct {
Language []string `json:"language"`
CountryHint []string `json:"country_hint"`
SourceCategory []string `json:"source_category"`
DocType []string `json:"doc_type"`
SchoolLevel []string `json:"school_level"`
Subjects []string `json:"subjects"`
State []string `json:"state"`
MinTrustScore float64 `json:"min_trust_score"`
DateFrom string `json:"date_from"`
}
// SearchInclude specifies what to include in response
type SearchInclude struct {
Snippets bool `json:"snippets"`
Highlights bool `json:"highlights"`
ContentText bool `json:"content_text"`
}
// SearchResult represents a single search result
type SearchResult struct {
DocID string `json:"doc_id"`
Title string `json:"title"`
URL string `json:"url"`
Domain string `json:"domain"`
Language string `json:"language"`
DocType string `json:"doc_type"`
SchoolLevel string `json:"school_level"`
Subjects []string `json:"subjects"`
Scores Scores `json:"scores"`
Snippet string `json:"snippet,omitempty"`
Highlights []string `json:"highlights,omitempty"`
}
// Scores contains all scoring components
type Scores struct {
BM25 float64 `json:"bm25"`
Semantic float64 `json:"semantic"`
Rerank float64 `json:"rerank"`
Trust float64 `json:"trust"`
Quality float64 `json:"quality"`
Final float64 `json:"final"`
}
// SearchResponse is the API response
type SearchResponse struct {
QueryID string `json:"query_id"`
Results []SearchResult `json:"results"`
Pagination Pagination `json:"pagination"`
}
// Pagination info
type Pagination struct {
Limit int `json:"limit"`
Offset int `json:"offset"`
TotalEstimate int `json:"total_estimate"`
}
// EmbeddingProvider interface for generating embeddings
type EmbeddingProvider interface {
Embed(ctx context.Context, text string) ([]float32, error)
IsEnabled() bool
Dimension() int
}
// Service handles search operations
type Service struct {
client *opensearch.Client
indexName string
embeddingProvider EmbeddingProvider
semanticEnabled bool
}
// NewService creates a new search service
func NewService(url, username, password, indexName string) (*Service, error) {
cfg := opensearch.Config{
Addresses: []string{url},
Username: username,
Password: password,
}
client, err := opensearch.NewClient(cfg)
if err != nil {
return nil, err
}
return &Service{
client: client,
indexName: indexName,
semanticEnabled: false,
}, nil
}
// SetEmbeddingProvider configures the embedding provider for semantic search
func (s *Service) SetEmbeddingProvider(provider EmbeddingProvider) {
if provider != nil && provider.IsEnabled() {
s.embeddingProvider = provider
s.semanticEnabled = true
}
}
// IsSemanticEnabled returns true if semantic search is available
func (s *Service) IsSemanticEnabled() bool {
return s.semanticEnabled && s.embeddingProvider != nil
}
// Search performs a search query
func (s *Service) Search(ctx context.Context, req *SearchRequest) (*SearchResponse, error) {
// Determine search mode
mode := req.Mode
if mode == "" {
mode = "keyword" // Default to keyword search
}
// For semantic/hybrid modes, generate query embedding
var queryEmbedding []float32
var embErr error
if (mode == "semantic" || mode == "hybrid") && s.IsSemanticEnabled() {
queryEmbedding, embErr = s.embeddingProvider.Embed(ctx, req.Query)
if embErr != nil {
// Fall back to keyword search if embedding fails
mode = "keyword"
}
} else if mode == "semantic" || mode == "hybrid" {
// Semantic requested but not enabled, fall back
mode = "keyword"
}
// Build OpenSearch query based on mode
var query map[string]interface{}
switch mode {
case "semantic":
query = s.buildSemanticQuery(req, queryEmbedding)
case "hybrid":
query = s.buildHybridQuery(req, queryEmbedding)
default:
query = s.buildQuery(req)
}
queryJSON, err := json.Marshal(query)
if err != nil {
return nil, err
}
searchReq := opensearchapi.SearchRequest{
Index: []string{s.indexName},
Body: strings.NewReader(string(queryJSON)),
}
res, err := searchReq.Do(ctx, s.client)
if err != nil {
return nil, err
}
defer res.Body.Close()
// Parse response
var osResponse struct {
Hits struct {
Total struct {
Value int `json:"value"`
} `json:"total"`
Hits []struct {
ID string `json:"_id"`
Score float64 `json:"_score"`
Source map[string]interface{} `json:"_source"`
Highlight map[string][]string `json:"highlight,omitempty"`
} `json:"hits"`
} `json:"hits"`
}
if err := json.NewDecoder(res.Body).Decode(&osResponse); err != nil {
return nil, err
}
// Convert to SearchResults
results := make([]SearchResult, 0, len(osResponse.Hits.Hits))
for _, hit := range osResponse.Hits.Hits {
result := s.hitToResult(hit.Source, hit.Score, hit.Highlight, req.Include)
results = append(results, result)
}
return &SearchResponse{
QueryID: fmt.Sprintf("q-%d", ctx.Value("request_id")),
Results: results,
Pagination: Pagination{
Limit: req.Limit,
Offset: req.Offset,
TotalEstimate: osResponse.Hits.Total.Value,
},
}, nil
}
// buildQuery constructs the OpenSearch query
func (s *Service) buildQuery(req *SearchRequest) map[string]interface{} {
// Main query
must := []map[string]interface{}{}
filter := []map[string]interface{}{}
// Text search
if req.Query != "" {
must = append(must, map[string]interface{}{
"multi_match": map[string]interface{}{
"query": req.Query,
"fields": []string{"title^3", "content_text"},
"type": "best_fields",
},
})
}
// Filters
if len(req.Filters.Language) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"language": req.Filters.Language},
})
}
if len(req.Filters.CountryHint) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"country_hint": req.Filters.CountryHint},
})
}
if len(req.Filters.SourceCategory) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"source_category": req.Filters.SourceCategory},
})
}
if len(req.Filters.DocType) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"doc_type": req.Filters.DocType},
})
}
if len(req.Filters.SchoolLevel) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"school_level": req.Filters.SchoolLevel},
})
}
if len(req.Filters.Subjects) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"subjects": req.Filters.Subjects},
})
}
if len(req.Filters.State) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"state": req.Filters.State},
})
}
if req.Filters.MinTrustScore > 0 {
filter = append(filter, map[string]interface{}{
"range": map[string]interface{}{
"trust_score": map[string]interface{}{"gte": req.Filters.MinTrustScore},
},
})
}
if req.Filters.DateFrom != "" {
filter = append(filter, map[string]interface{}{
"range": map[string]interface{}{
"fetch_time": map[string]interface{}{"gte": req.Filters.DateFrom},
},
})
}
// Build bool query
boolQuery := map[string]interface{}{}
if len(must) > 0 {
boolQuery["must"] = must
}
if len(filter) > 0 {
boolQuery["filter"] = filter
}
// Construct full query
query := map[string]interface{}{
"query": map[string]interface{}{
"bool": boolQuery,
},
"from": req.Offset,
"size": req.Limit,
"_source": []string{
"doc_id", "title", "url", "domain", "language",
"doc_type", "school_level", "subjects",
"trust_score", "quality_score", "snippet_text",
},
}
// Add highlighting if requested
if req.Include.Highlights {
query["highlight"] = map[string]interface{}{
"fields": map[string]interface{}{
"title": map[string]interface{}{},
"content_text": map[string]interface{}{"fragment_size": 150, "number_of_fragments": 3},
},
}
}
// Add function score for trust/quality boosting
query["query"] = map[string]interface{}{
"function_score": map[string]interface{}{
"query": query["query"],
"functions": []map[string]interface{}{
{
"field_value_factor": map[string]interface{}{
"field": "trust_score",
"factor": 1.5,
"modifier": "sqrt",
"missing": 0.5,
},
},
{
"field_value_factor": map[string]interface{}{
"field": "quality_score",
"factor": 1.0,
"modifier": "sqrt",
"missing": 0.5,
},
},
},
"score_mode": "multiply",
"boost_mode": "multiply",
},
}
return query
}
// buildSemanticQuery constructs a pure vector search query using k-NN
func (s *Service) buildSemanticQuery(req *SearchRequest, embedding []float32) map[string]interface{} {
filter := s.buildFilters(req)
// k-NN query for semantic search
knnQuery := map[string]interface{}{
"content_embedding": map[string]interface{}{
"vector": embedding,
"k": req.Limit + req.Offset, // Get enough results for pagination
},
}
// Add filter if present
if len(filter) > 0 {
knnQuery["content_embedding"].(map[string]interface{})["filter"] = map[string]interface{}{
"bool": map[string]interface{}{
"filter": filter,
},
}
}
query := map[string]interface{}{
"knn": knnQuery,
"from": req.Offset,
"size": req.Limit,
"_source": []string{
"doc_id", "title", "url", "domain", "language",
"doc_type", "school_level", "subjects",
"trust_score", "quality_score", "snippet_text",
},
}
// Add highlighting if requested
if req.Include.Highlights {
query["highlight"] = map[string]interface{}{
"fields": map[string]interface{}{
"title": map[string]interface{}{},
"content_text": map[string]interface{}{"fragment_size": 150, "number_of_fragments": 3},
},
}
}
return query
}
// buildHybridQuery constructs a combined BM25 + vector search query
func (s *Service) buildHybridQuery(req *SearchRequest, embedding []float32) map[string]interface{} {
filter := s.buildFilters(req)
// Build the bool query for BM25
must := []map[string]interface{}{}
if req.Query != "" {
must = append(must, map[string]interface{}{
"multi_match": map[string]interface{}{
"query": req.Query,
"fields": []string{"title^3", "content_text"},
"type": "best_fields",
},
})
}
boolQuery := map[string]interface{}{}
if len(must) > 0 {
boolQuery["must"] = must
}
if len(filter) > 0 {
boolQuery["filter"] = filter
}
// Convert embedding to []interface{} for JSON
embeddingInterface := make([]interface{}, len(embedding))
for i, v := range embedding {
embeddingInterface[i] = v
}
// Hybrid query using script_score to combine BM25 and cosine similarity
// This is a simpler approach than OpenSearch's neural search plugin
query := map[string]interface{}{
"query": map[string]interface{}{
"script_score": map[string]interface{}{
"query": map[string]interface{}{
"bool": boolQuery,
},
"script": map[string]interface{}{
"source": "cosineSimilarity(params.query_vector, 'content_embedding') + 1.0 + _score * 0.5",
"params": map[string]interface{}{
"query_vector": embeddingInterface,
},
},
},
},
"from": req.Offset,
"size": req.Limit,
"_source": []string{
"doc_id", "title", "url", "domain", "language",
"doc_type", "school_level", "subjects",
"trust_score", "quality_score", "snippet_text",
},
}
// Add highlighting if requested
if req.Include.Highlights {
query["highlight"] = map[string]interface{}{
"fields": map[string]interface{}{
"title": map[string]interface{}{},
"content_text": map[string]interface{}{"fragment_size": 150, "number_of_fragments": 3},
},
}
}
return query
}
// buildFilters constructs the filter array for queries
func (s *Service) buildFilters(req *SearchRequest) []map[string]interface{} {
filter := []map[string]interface{}{}
if len(req.Filters.Language) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"language": req.Filters.Language},
})
}
if len(req.Filters.CountryHint) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"country_hint": req.Filters.CountryHint},
})
}
if len(req.Filters.SourceCategory) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"source_category": req.Filters.SourceCategory},
})
}
if len(req.Filters.DocType) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"doc_type": req.Filters.DocType},
})
}
if len(req.Filters.SchoolLevel) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"school_level": req.Filters.SchoolLevel},
})
}
if len(req.Filters.Subjects) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"subjects": req.Filters.Subjects},
})
}
if len(req.Filters.State) > 0 {
filter = append(filter, map[string]interface{}{
"terms": map[string]interface{}{"state": req.Filters.State},
})
}
if req.Filters.MinTrustScore > 0 {
filter = append(filter, map[string]interface{}{
"range": map[string]interface{}{
"trust_score": map[string]interface{}{"gte": req.Filters.MinTrustScore},
},
})
}
if req.Filters.DateFrom != "" {
filter = append(filter, map[string]interface{}{
"range": map[string]interface{}{
"fetch_time": map[string]interface{}{"gte": req.Filters.DateFrom},
},
})
}
return filter
}
// hitToResult converts an OpenSearch hit to SearchResult
func (s *Service) hitToResult(source map[string]interface{}, score float64, highlight map[string][]string, include SearchInclude) SearchResult {
result := SearchResult{
DocID: getString(source, "doc_id"),
Title: getString(source, "title"),
URL: getString(source, "url"),
Domain: getString(source, "domain"),
Language: getString(source, "language"),
DocType: getString(source, "doc_type"),
SchoolLevel: getString(source, "school_level"),
Subjects: getStringArray(source, "subjects"),
Scores: Scores{
BM25: score,
Trust: getFloat(source, "trust_score"),
Quality: getFloat(source, "quality_score"),
Final: score, // MVP: final = BM25 * trust * quality (via function_score)
},
}
if include.Snippets {
result.Snippet = getString(source, "snippet_text")
}
if include.Highlights && highlight != nil {
if h, ok := highlight["content_text"]; ok {
result.Highlights = h
}
}
return result
}
// Helper functions
func getString(m map[string]interface{}, key string) string {
if v, ok := m[key].(string); ok {
return v
}
return ""
}
func getFloat(m map[string]interface{}, key string) float64 {
if v, ok := m[key].(float64); ok {
return v
}
return 0.0
}
func getStringArray(m map[string]interface{}, key string) []string {
if v, ok := m[key].([]interface{}); ok {
result := make([]string, 0, len(v))
for _, item := range v {
if s, ok := item.(string); ok {
result = append(result, s)
}
}
return result
}
return nil
}