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|
package rag
import (
"errors"
"fmt"
"gf-lt/config"
"gf-lt/models"
"gf-lt/storage"
"log/slog"
"path"
"regexp"
"sort"
"strings"
"sync"
"github.com/neurosnap/sentences/english"
)
var (
// Status messages for TUI integration
LongJobStatusCh = make(chan string, 10) // Increased buffer size to prevent blocking
FinishedRAGStatus = "finished loading RAG file; press Enter"
LoadedFileRAGStatus = "loaded file"
ErrRAGStatus = "some error occurred; failed to transfer data to vector db"
)
type RAG struct {
logger *slog.Logger
store storage.FullRepo
cfg *config.Config
embedder Embedder
storage *VectorStorage
mu sync.Mutex
}
func New(l *slog.Logger, s storage.FullRepo, cfg *config.Config) *RAG {
// Initialize with API embedder by default, could be configurable later
embedder := NewAPIEmbedder(l, cfg)
rag := &RAG{
logger: l,
store: s,
cfg: cfg,
embedder: embedder,
storage: NewVectorStorage(l, s),
}
// Note: Vector tables are created via database migrations, not at runtime
return rag
}
func wordCounter(sentence string) int {
return len(strings.Split(strings.TrimSpace(sentence), " "))
}
func (r *RAG) LoadRAG(fpath string) error {
r.mu.Lock()
defer r.mu.Unlock()
fileText, err := ExtractText(fpath)
if err != nil {
return err
}
r.logger.Debug("rag: loaded file", "fp", fpath)
select {
case LongJobStatusCh <- LoadedFileRAGStatus:
default:
r.logger.Warn("LongJobStatusCh channel is full or closed, dropping status message", "message", LoadedFileRAGStatus)
}
tokenizer, err := english.NewSentenceTokenizer(nil)
if err != nil {
return err
}
sentences := tokenizer.Tokenize(fileText)
sents := make([]string, len(sentences))
for i, s := range sentences {
sents[i] = s.Text
}
// Group sentences into paragraphs based on word limit
paragraphs := []string{}
par := strings.Builder{}
for i := 0; i < len(sents); i++ {
if strings.TrimSpace(sents[i]) != "" {
if par.Len() > 0 {
par.WriteString(" ")
}
par.WriteString(sents[i])
}
if wordCounter(par.String()) > int(r.cfg.RAGWordLimit) {
paragraph := strings.TrimSpace(par.String())
if paragraph != "" {
paragraphs = append(paragraphs, paragraph)
}
par.Reset()
}
}
// Handle any remaining content in the paragraph buffer
if par.Len() > 0 {
paragraph := strings.TrimSpace(par.String())
if paragraph != "" {
paragraphs = append(paragraphs, paragraph)
}
}
// Adjust batch size if needed
if len(paragraphs) < r.cfg.RAGBatchSize && len(paragraphs) > 0 {
r.cfg.RAGBatchSize = len(paragraphs)
}
if len(paragraphs) == 0 {
return errors.New("no valid paragraphs found in file")
}
// Process paragraphs in batches synchronously
batchCount := 0
for i := 0; i < len(paragraphs); i += r.cfg.RAGBatchSize {
end := i + r.cfg.RAGBatchSize
if end > len(paragraphs) {
end = len(paragraphs)
}
batch := paragraphs[i:end]
batchCount++
// Filter empty paragraphs
nonEmptyBatch := make([]string, 0, len(batch))
for _, p := range batch {
if strings.TrimSpace(p) != "" {
nonEmptyBatch = append(nonEmptyBatch, strings.TrimSpace(p))
}
}
if len(nonEmptyBatch) == 0 {
continue
}
// Embed the batch
embeddings, err := r.embedder.EmbedSlice(nonEmptyBatch)
if err != nil {
r.logger.Error("failed to embed batch", "error", err, "batch", batchCount)
select {
case LongJobStatusCh <- ErrRAGStatus:
default:
r.logger.Warn("LongJobStatusCh channel full, dropping message")
}
return fmt.Errorf("failed to embed batch %d: %w", batchCount, err)
}
if len(embeddings) != len(nonEmptyBatch) {
err := errors.New("embedding count mismatch")
r.logger.Error("embedding mismatch", "expected", len(nonEmptyBatch), "got", len(embeddings))
return err
}
// Write vectors to storage
filename := path.Base(fpath)
for j, text := range nonEmptyBatch {
vector := models.VectorRow{
Embeddings: embeddings[j],
RawText: text,
Slug: fmt.Sprintf("%s_%d_%d", filename, batchCount, j),
FileName: filename,
}
if err := r.storage.WriteVector(&vector); err != nil {
r.logger.Error("failed to write vector to DB", "error", err, "slug", vector.Slug)
select {
case LongJobStatusCh <- ErrRAGStatus:
default:
r.logger.Warn("LongJobStatusCh channel full, dropping message")
}
return fmt.Errorf("failed to write vector: %w", err)
}
}
r.logger.Debug("wrote batch to db", "batch", batchCount, "size", len(nonEmptyBatch))
// Send progress status
statusMsg := fmt.Sprintf("processed batch %d/%d", batchCount, (len(paragraphs)+r.cfg.RAGBatchSize-1)/r.cfg.RAGBatchSize)
select {
case LongJobStatusCh <- statusMsg:
default:
r.logger.Warn("LongJobStatusCh channel full, dropping message")
}
}
r.logger.Debug("finished writing vectors", "batches", batchCount)
select {
case LongJobStatusCh <- FinishedRAGStatus:
default:
r.logger.Warn("LongJobStatusCh channel is full or closed, dropping status message", "message", FinishedRAGStatus)
}
return nil
}
func (r *RAG) LineToVector(line string) ([]float32, error) {
return r.embedder.Embed(line)
}
func (r *RAG) SearchEmb(emb *models.EmbeddingResp) ([]models.VectorRow, error) {
return r.storage.SearchClosest(emb.Embedding)
}
func (r *RAG) ListLoaded() ([]string, error) {
return r.storage.ListFiles()
}
func (r *RAG) RemoveFile(filename string) error {
return r.storage.RemoveEmbByFileName(filename)
}
var (
queryRefinementPattern = regexp.MustCompile(`(?i)(based on my (vector db|vector db|vector database|rags?|past (conversations?|chat|messages?))|from my (files?|documents?|data|information|memory)|search (in|my) (vector db|database|rags?)|rag search for)`)
importantKeywords = []string{"project", "architecture", "code", "file", "chat", "conversation", "topic", "summary", "details", "history", "previous", "my", "user", "me"}
stopWords = []string{"the", "a", "an", "and", "or", "but", "in", "on", "at", "to", "for", "of", "with", "by", "from", "up", "down", "left", "right"}
)
func (r *RAG) RefineQuery(query string) string {
original := query
query = strings.TrimSpace(query)
if len(query) == 0 {
return original
}
if len(query) <= 3 {
return original
}
query = strings.ToLower(query)
for _, stopWord := range stopWords {
wordPattern := `\b` + stopWord + `\b`
re := regexp.MustCompile(wordPattern)
query = re.ReplaceAllString(query, "")
}
query = strings.TrimSpace(query)
if len(query) < 5 {
return original
}
if queryRefinementPattern.MatchString(original) {
cleaned := queryRefinementPattern.ReplaceAllString(original, "")
cleaned = strings.TrimSpace(cleaned)
if len(cleaned) >= 5 {
return cleaned
}
}
query = r.extractImportantPhrases(query)
if len(query) < 5 {
return original
}
return query
}
func (r *RAG) extractImportantPhrases(query string) string {
words := strings.Fields(query)
var important []string
for _, word := range words {
word = strings.Trim(word, ".,!?;:'\"()[]{}")
isImportant := false
for _, kw := range importantKeywords {
if strings.Contains(strings.ToLower(word), kw) {
isImportant = true
break
}
}
if isImportant || len(word) > 3 {
important = append(important, word)
}
}
if len(important) == 0 {
return query
}
return strings.Join(important, " ")
}
func (r *RAG) GenerateQueryVariations(query string) []string {
variations := []string{query}
if len(query) < 5 {
return variations
}
parts := strings.Fields(query)
if len(parts) == 0 {
return variations
}
if len(parts) >= 2 {
trimmed := strings.Join(parts[:len(parts)-1], " ")
if len(trimmed) >= 5 {
variations = append(variations, trimmed)
}
}
if len(parts) >= 2 {
trimmed := strings.Join(parts[1:], " ")
if len(trimmed) >= 5 {
variations = append(variations, trimmed)
}
}
if !strings.HasSuffix(query, " explanation") {
variations = append(variations, query+" explanation")
}
if !strings.HasPrefix(query, "what is ") {
variations = append(variations, "what is "+query)
}
if !strings.HasSuffix(query, " details") {
variations = append(variations, query+" details")
}
if !strings.HasSuffix(query, " summary") {
variations = append(variations, query+" summary")
}
return variations
}
func (r *RAG) RerankResults(results []models.VectorRow, query string) []models.VectorRow {
type scoredResult struct {
row models.VectorRow
distance float32
}
scored := make([]scoredResult, 0, len(results))
for i := range results {
row := results[i]
score := float32(0)
rawTextLower := strings.ToLower(row.RawText)
queryLower := strings.ToLower(query)
if strings.Contains(rawTextLower, queryLower) {
score += 10
}
queryWords := strings.Fields(queryLower)
matchCount := 0
for _, word := range queryWords {
if len(word) > 2 && strings.Contains(rawTextLower, word) {
matchCount++
}
}
if len(queryWords) > 0 {
score += float32(matchCount) / float32(len(queryWords)) * 5
}
if row.FileName == "chat" || strings.Contains(strings.ToLower(row.FileName), "conversation") {
score += 3
}
distance := row.Distance - score/100
scored = append(scored, scoredResult{row: row, distance: distance})
}
sort.Slice(scored, func(i, j int) bool {
return scored[i].distance < scored[j].distance
})
unique := make([]models.VectorRow, 0)
seen := make(map[string]bool)
for i := range scored {
if !seen[scored[i].row.Slug] {
seen[scored[i].row.Slug] = true
unique = append(unique, scored[i].row)
}
}
if len(unique) > 10 {
unique = unique[:10]
}
return unique
}
func (r *RAG) SynthesizeAnswer(results []models.VectorRow, query string) (string, error) {
if len(results) == 0 {
return "No relevant information found in the vector database.", nil
}
var contextBuilder strings.Builder
contextBuilder.WriteString("User Query: ")
contextBuilder.WriteString(query)
contextBuilder.WriteString("\n\nRetrieved Context:\n")
for i, row := range results {
contextBuilder.WriteString(fmt.Sprintf("[Source %d: %s]\n", i+1, row.FileName))
contextBuilder.WriteString(row.RawText)
contextBuilder.WriteString("\n\n")
}
contextBuilder.WriteString("Instructions: ")
contextBuilder.WriteString("Based on the retrieved context above, provide a concise, coherent answer to the user's query. ")
contextBuilder.WriteString("Extract only the most relevant information. ")
contextBuilder.WriteString("If no relevant information is found, state that clearly. ")
contextBuilder.WriteString("Cite sources by filename when relevant. ")
contextBuilder.WriteString("Do not include unnecessary preamble or explanations.")
synthesisPrompt := contextBuilder.String()
emb, err := r.LineToVector(synthesisPrompt)
if err != nil {
r.logger.Error("failed to embed synthesis prompt", "error", err)
return "", err
}
embResp := &models.EmbeddingResp{
Embedding: emb,
Index: 0,
}
topResults, err := r.SearchEmb(embResp)
if err != nil {
r.logger.Error("failed to search for synthesis context", "error", err)
return "", err
}
if len(topResults) > 0 && topResults[0].RawText != synthesisPrompt {
return topResults[0].RawText, nil
}
var finalAnswer strings.Builder
finalAnswer.WriteString("Based on the retrieved context:\n\n")
for i, row := range results {
if i >= 5 {
break
}
finalAnswer.WriteString(fmt.Sprintf("- From %s: %s\n", row.FileName, truncateString(row.RawText, 200)))
}
return finalAnswer.String(), nil
}
func truncateString(s string, maxLen int) string {
if len(s) <= maxLen {
return s
}
return s[:maxLen] + "..."
}
func (r *RAG) Search(query string, limit int) ([]models.VectorRow, error) {
refined := r.RefineQuery(query)
variations := r.GenerateQueryVariations(refined)
allResults := make([]models.VectorRow, 0)
seen := make(map[string]bool)
for _, q := range variations {
emb, err := r.LineToVector(q)
if err != nil {
r.logger.Error("failed to embed query variation", "error", err, "query", q)
continue
}
embResp := &models.EmbeddingResp{
Embedding: emb,
Index: 0,
}
results, err := r.SearchEmb(embResp)
if err != nil {
r.logger.Error("failed to search embeddings", "error", err, "query", q)
continue
}
for _, row := range results {
if !seen[row.Slug] {
seen[row.Slug] = true
allResults = append(allResults, row)
}
}
}
reranked := r.RerankResults(allResults, query)
if len(reranked) > limit {
reranked = reranked[:limit]
}
return reranked, nil
}
var (
ragInstance *RAG
ragOnce sync.Once
)
func Init(c *config.Config, l *slog.Logger, s storage.FullRepo) error {
ragOnce.Do(func() {
if c == nil || l == nil || s == nil {
return
}
ragInstance = New(l, s, c)
})
return nil
}
func GetInstance() *RAG {
return ragInstance
}
|