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https://github.com/infiniflow/ragflow.git
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Ported retrieval node, added Keenable web search tool - [x] New Feature (non-breaking change which adds functionality)
262 lines
8.2 KiB
Go
262 lines
8.2 KiB
Go
//
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// Copyright 2026 The InfiniFlow Authors. All Rights Reserved.
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//
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// Licensed under the Apache License, Version 2.0 (the "License");
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// you may not use this file except in compliance with the License.
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// You may obtain a copy of the License at
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//
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// http://www.apache.org/licenses/LICENSE-2.0
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//
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// Unless required by applicable law or agreed to in writing, software
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// distributed under the License is distributed on an "AS IS" BASIS,
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// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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// See the License for the specific language governing permissions and
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// limitations under the License.
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//
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// retrieval_nlp.go — NLPRetrievalAdapter wiring.
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//
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// The agent tool layer (tool/retrieval_service.go) declares a
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// minimal RetrievalService interface. Until this file landed, the
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// only registered implementation was the stub that returns
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// ErrRetrievalServiceMissing. NLPRetrievalAdapter bridges the
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// agent-side interface to the production nlp.RetrievalService —
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// the same service that powers chat / dataset search / chunk
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// retrieval across the rest of the codebase.
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//
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// Wiring is one line at boot:
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//
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// tool.SetRetrievalService(tool.NewNLPRetrievalAdapter(
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// nlp.NewRetrievalService(docEngine, documentDAO),
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// ))
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//
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// Translation rules:
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//
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// tool.RetrievalRequest.Query → nlp.RetrievalRequest.Question
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// tool.RetrievalRequest.DatasetIDs → nlp.RetrievalRequest.KbIDs
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// tool.RetrievalRequest.TopN → nlp.RetrievalRequest.PageSize
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// (Page=1, Top=TopN*4 so rerank
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// has headroom)
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// tool.RetrievalRequest.UseKG → ErrGraphRAGNotSupported (out of
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// scope per plan + §9 Q3)
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//
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// Chunk shape translation: nlp's Chunks are []map[string]any with
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// keys chunk_id, doc_id, docnm_kwd, content_with_weight,
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// content_ltks, similarity, term_similarity, vector_similarity. The
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// tool side wants a flat RetrievalChunk{ID, Content, DocumentID,
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// Score}. We pick the most user-facing fields:
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// - ID ← chunk_id
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// - Content ← content_with_weight (fallback to content_ltks)
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// - DocumentID ← doc_id
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// - Score ← similarity (fallback to avg of term+vector)
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//
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// Defensive defaults: missing or wrong-typed chunk fields become
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// empty strings / 0.0 rather than panicking — a single malformed
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// chunk from the doc engine shouldn't take down the whole
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// retrieval call.
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package tool
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import (
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"context"
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"ragflow/internal/dao"
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"ragflow/internal/engine"
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"ragflow/internal/entity"
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"ragflow/internal/service/nlp"
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)
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// NLPRetrievalAdapter wraps *nlp.RetrievalService behind the
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// agent-tool RetrievalService interface. The adapter is safe to
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// share across goroutines — the wrapped service is stateless
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// beyond its docEngine + documentDAO handles, both of which the
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// nlp package treats as concurrent-safe.
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type NLPRetrievalAdapter struct {
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svc *nlp.RetrievalService
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kbDAO knowledgebaseLookup
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}
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type knowledgebaseLookup interface {
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GetByIDs(ids []string) ([]*entity.Knowledgebase, error)
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}
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// NewNLPRetrievalAdapter wraps an already-constructed
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// *nlp.RetrievalService.
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func NewNLPRetrievalAdapter(svc *nlp.RetrievalService) *NLPRetrievalAdapter {
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return &NLPRetrievalAdapter{
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svc: svc,
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kbDAO: dao.NewKnowledgebaseDAO(),
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}
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}
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// NewNLPRetrievalAdapterFromDeps is the convenience constructor
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// for the common boot path:
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//
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// tool.SetRetrievalService(tool.NewNLPRetrievalAdapterFromDeps(docEngine, docDAO))
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//
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// matches chat_session.go's newChatSessionServiceWithRetrieval
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// call site.
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func NewNLPRetrievalAdapterFromDeps(docEngine engine.DocEngine, documentDAO *dao.DocumentDAO) *NLPRetrievalAdapter {
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return &NLPRetrievalAdapter{
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svc: nlp.NewRetrievalService(docEngine, documentDAO),
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kbDAO: dao.NewKnowledgebaseDAO(),
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}
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}
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// Search implements RetrievalService. The translation rules live
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// at the top of this file.
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func (a *NLPRetrievalAdapter) Search(ctx context.Context, req RetrievalRequest) ([]RetrievalChunk, error) {
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if a == nil || a.svc == nil {
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return nil, ErrRetrievalServiceMissing
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}
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if req.UseKG {
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// Plan + §9 Q3: GraphRAG is out of scope for the
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// Go Canvas. The tool layer also returns the error; we
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// surface it here so any future direct caller of the
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// adapter (bypassing the tool envelope) sees the same
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// contract.
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return nil, ErrGraphRAGNotSupported
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}
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if req.Query == "" {
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return nil, nil
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}
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topN := req.TopN
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if topN <= 0 {
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topN = 8
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}
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// nlp.Retrieval applies its own defaults for SimilarityThreshold
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// (0.2), VectorSimilarityWeight (0.3), RankFeature, etc. We
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// surface only the fields the agent tool actually controls:
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// Page=1, PageSize=TopN, KbIDs=DatasetIDs, Top=TopN*4 (rerank
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// headroom — matches the chat_session.go call pattern).
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nlpReq := &nlp.RetrievalRequest{
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Question: req.Query,
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TenantIDs: a.resolveTenantIDs(req),
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KbIDs: append([]string(nil), req.DatasetIDs...),
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Page: 1,
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PageSize: topN,
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Aggs: boolPtr(false),
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Highlight: boolPtr(false),
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}
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if topN > 0 {
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rerankBudget := topN * 4
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nlpReq.Top = &rerankBudget
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}
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if req.SimilarityThreshold > 0 {
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nlpReq.SimilarityThreshold = &req.SimilarityThreshold
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}
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res, err := a.svc.Retrieval(ctx, nlpReq)
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if err != nil {
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return nil, err
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}
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if res == nil || len(res.Chunks) == 0 {
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return []RetrievalChunk{}, nil
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}
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out := make([]RetrievalChunk, 0, len(res.Chunks))
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for _, raw := range res.Chunks {
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out = append(out, translateChunk(raw))
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}
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return out, nil
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}
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func (a *NLPRetrievalAdapter) resolveTenantIDs(req RetrievalRequest) []string {
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seen := map[string]struct{}{}
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tenantIDs := make([]string, 0, 1)
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appendTenantID := func(tenantID string) {
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if tenantID == "" {
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return
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}
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if _, ok := seen[tenantID]; ok {
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return
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}
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seen[tenantID] = struct{}{}
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tenantIDs = append(tenantIDs, tenantID)
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}
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appendTenantID(req.TenantID)
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return tenantIDs
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}
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// translateChunk converts one nlp chunk map into a RetrievalChunk.
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// Tolerates missing fields (returns zero values) and wrong types
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// (returns zero values) so a single bad chunk from the doc engine
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// can't break the whole result list.
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func translateChunk(raw map[string]any) RetrievalChunk {
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return RetrievalChunk{
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ID: stringFromMap(raw, "chunk_id"),
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Content: contentFromMap(raw),
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DocumentID: stringFromMap(raw, "doc_id"),
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Score: scoreFromMap(raw),
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}
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}
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// stringFromMap returns raw[key].(string) or "" if missing / wrong
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// type. Keeps the translator compact.
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func stringFromMap(raw map[string]any, key string) string {
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if v, ok := raw[key]; ok {
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if s, ok := v.(string); ok {
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return s
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}
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}
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return ""
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}
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// contentFromMap picks the most user-facing content field. nlp
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// chunks carry content_with_weight (the highlightable string) and
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// content_ltks (the tokenised form). content_with_weight is what
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// the model sees in Python; we use it here too. Empty / missing →
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// fall back to content_ltks; both empty → empty string.
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func contentFromMap(raw map[string]any) string {
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if v := stringFromMap(raw, "content_with_weight"); v != "" {
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return v
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}
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return stringFromMap(raw, "content_ltks")
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}
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// scoreFromMap returns the chunk's similarity score. nlp populates
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// three fields — similarity (combined), term_similarity (BM25),
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// vector_similarity (cosine). We prefer similarity; if absent or
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// zero, average the two sub-scores. Wrong-type values → fall through
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// to sub-scores; missing sub-scores → 0.
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func scoreFromMap(raw map[string]any) float64 {
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if f, ok := numberFromMap(raw, "similarity"); ok {
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return f
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}
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term, termOK := numberFromMap(raw, "term_similarity")
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vec, vecOK := numberFromMap(raw, "vector_similarity")
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if termOK && vecOK {
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return (term + vec) / 2
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}
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if termOK {
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return term
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}
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if vecOK {
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return vec
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}
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return 0
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}
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// numberFromMap returns raw[key].(float64) with a tolerant path
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// for ints. JSON unmarshaling can produce either.
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func numberFromMap(raw map[string]any, key string) (float64, bool) {
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v, ok := raw[key]
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if !ok {
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return 0, false
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}
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switch x := v.(type) {
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case float64:
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return x, true
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case float32:
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return float64(x), true
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case int:
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return float64(x), true
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case int64:
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return float64(x), true
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}
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return 0, false
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}
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func boolPtr(b bool) *bool { return &b }
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