This commit is contained in:
Grail Finder
2026-03-05 14:38:26 +03:00
parent 7c56e27dbe
commit 4bd6883966

View File

@@ -174,134 +174,115 @@ func NewONNXEmbedder(modelPath, tokenizerPath string, dims int, logger *slog.Log
func (e *ONNXEmbedder) Embed(text string) ([]float32, error) {
// 1. Tokenize
encoding, err := e.tokenizer.Encode(text, true) // true = add special tokens
encoding, err := e.tokenizer.EncodeSingle(text)
if err != nil {
return nil, fmt.Errorf("tokenization failed: %w", err)
}
// Convert []int32 to []int64 for ONNX
inputIDs := make([]int64, len(encoding.GetIDs()))
for i, id := range encoding.GetIDs() {
// 2. Convert to int64 and create attention mask
ids := encoding.Ids
inputIDs := make([]int64, len(ids))
attentionMask := make([]int64, len(ids))
for i, id := range ids {
inputIDs[i] = int64(id)
attentionMask[i] = 1
}
attentionMask := make([]int64, len(encoding.GetAttentionMask()))
for i, m := range encoding.GetAttentionMask() {
attentionMask[i] = int64(m)
}
// 2. Create input tensors (shape: [1, seq_len])
// 3. Create input tensors (shape: [1, seq_len])
seqLen := int64(len(inputIDs))
inputIDsTensor, err := onnxruntime_go.NewTensor(onnxruntime_go.NewShape(1, seqLen), inputIDs)
inputIDsTensor, err := onnxruntime_go.NewTensor[int64](
onnxruntime_go.NewShape(1, seqLen),
inputIDs,
)
if err != nil {
return nil, fmt.Errorf("failed to create input_ids tensor: %w", err)
}
defer inputIDsTensor.Destroy()
maskTensor, err := onnxruntime_go.NewTensor(onnxruntime_go.NewShape(1, seqLen), attentionMask)
maskTensor, err := onnxruntime_go.NewTensor[int64](
onnxruntime_go.NewShape(1, seqLen),
attentionMask,
)
if err != nil {
return nil, fmt.Errorf("failed to create attention_mask tensor: %w", err)
}
defer maskTensor.Destroy()
// 3. Create output tensor (shape: [1, dims])
outputTensor, err := onnxruntime_go.NewEmptyTensor[float32](onnxruntime_go.NewShape(1, int64(e.dims)))
// 4. Create output tensor
outputTensor, err := onnxruntime_go.NewEmptyTensor[float32](
onnxruntime_go.NewShape(1, int64(e.dims)),
)
if err != nil {
return nil, fmt.Errorf("failed to create output tensor: %w", err)
}
defer outputTensor.Destroy()
// 4. Run inference
// 5. Run inference
err = e.session.Run(
map[string]*onnxruntime_go.Tensor{
"input_ids": inputIDsTensor,
"attention_mask": maskTensor,
},
[]onnxruntime_go.Value{inputIDsTensor, maskTensor},
[]string{"sentence_embedding"},
[]*onnxruntime_go.Tensor{outputTensor},
[]onnxruntime_go.Value{outputTensor},
)
if err != nil {
return nil, fmt.Errorf("inference failed: %w", err)
}
// 5. Extract data
// 6. Copy output data
outputData := outputTensor.GetData()
// outputTensor is owned by us, but GetData returns a slice that remains valid until Destroy.
// We need to copy if we want to keep it after Destroy (we defer Destroy, so copy now).
embedding := make([]float32, len(outputData))
copy(embedding, outputData)
return embedding, nil
}
// EmbedSlice (batch) to be implemented properly
func (e *ONNXEmbedder) EmbedSlice(texts []string) ([][]float32, error) {
if len(texts) == 0 {
return nil, nil
}
// 1. Tokenize all texts and find max length for padding
encodings := make([]*tokenizer.Encoding, len(texts))
maxLen := 0
for i, txt := range texts {
enc, err := e.tokenizer.Encode(txt, true)
enc, err := e.tokenizer.EncodeSingle(txt)
if err != nil {
return nil, fmt.Errorf("tokenization failed at index %d: %w", i, err)
return nil, err
}
encodings[i] = enc
if l := len(enc.GetIDs()); l > maxLen {
if l := len(enc.Ids); l > maxLen {
maxLen = l
}
}
// 2. Build padded input_ids and attention_mask (shape: [batch, maxLen])
batchSize := len(texts)
inputIDs := make([]int64, batchSize*maxLen)
attentionMask := make([]int64, batchSize*maxLen)
for i, enc := range encodings {
ids := enc.GetIDs()
mask := enc.GetAttentionMask()
ids := enc.Ids
offset := i * maxLen
// copy actual tokens
for j := 0; j < len(ids); j++ {
inputIDs[offset+j] = int64(ids[j])
attentionMask[offset+j] = int64(mask[j])
for j, id := range ids {
inputIDs[offset+j] = int64(id)
attentionMask[offset+j] = 1
}
// remaining positions (padding) are already zero-initialized
// Remaining positions are already zero (padding)
}
// 3. Create tensors
inputIDsTensor, err := onnxruntime_go.NewTensor(
// Create tensors with shape [batchSize, maxLen]
inputTensor, _ := onnxruntime_go.NewTensor[int64](
onnxruntime_go.NewShape(int64(batchSize), int64(maxLen)),
inputIDs,
)
if err != nil {
return nil, err
}
defer inputIDsTensor.Destroy()
maskTensor, err := onnxruntime_go.NewTensor(
defer inputTensor.Destroy()
maskTensor, _ := onnxruntime_go.NewTensor[int64](
onnxruntime_go.NewShape(int64(batchSize), int64(maxLen)),
attentionMask,
)
if err != nil {
return nil, err
}
defer maskTensor.Destroy()
outputTensor, err := onnxruntime_go.NewEmptyTensor[float32](
outputTensor, _ := onnxruntime_go.NewEmptyTensor[float32](
onnxruntime_go.NewShape(int64(batchSize), int64(e.dims)),
)
if err != nil {
return nil, err
}
defer outputTensor.Destroy()
// 4. Run
err = e.session.Run(
map[string]*onnxruntime_go.Tensor{
"input_ids": inputIDsTensor,
"attention_mask": maskTensor,
},
err := e.session.Run(
[]onnxruntime_go.Value{inputTensor, maskTensor},
[]string{"sentence_embedding"},
[]*onnxruntime_go.Tensor{outputTensor},
[]onnxruntime_go.Value{outputTensor},
)
if err != nil {
return nil, err
}
// 5. Extract batch results
outputData := outputTensor.GetData()
// Extract embeddings per batch item
data := outputTensor.GetData()
embeddings := make([][]float32, batchSize)
for i := 0; i < batchSize; i++ {
start := i * e.dims
emb := make([]float32, e.dims)
copy(emb, outputData[start:start+e.dims])
copy(emb, data[start:start+e.dims])
embeddings[i] = emb
}
return embeddings, nil