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chore: import upstream snapshot with attribution
2026-07-13 12:31:17 +08:00

175 lines
5.3 KiB
Go

// Licensed to the LF AI & Data foundation under one
// or more contributor license agreements. See the NOTICE file
// distributed with this work for additional information
// regarding copyright ownership. The ASF licenses this file
// to you under the Apache License, Version 2.0 (the
// "License"); you may not use this file except in compliance
// with the License. You may obtain a copy of the License at
//
// http://www.apache.org/licenses/LICENSE-2.0
//
// Unless required by applicable law or agreed to in writing, software
// distributed under the License is distributed on an "AS IS" BASIS,
// WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
// See the License for the specific language governing permissions and
// limitations under the License.
//go:build cgo
package expr
/*
#cgo pkg-config: milvus_core
#include <stdlib.h>
#include "common/arrow_c_data_c.h"
#include "rescores/xgboost_model_c.h"
*/
import "C"
import (
"runtime"
"unsafe"
"github.com/apache/arrow/go/v17/arrow"
"github.com/apache/arrow/go/v17/arrow/array"
"github.com/apache/arrow/go/v17/arrow/cdata"
"github.com/apache/arrow/go/v17/arrow/memory"
"github.com/milvus-io/milvus/internal/util/fileresource"
"github.com/milvus-io/milvus/pkg/v3/util/merr"
)
func loadXGBoostModel(resource *fileresource.ResolvedFileResource) (*modelHandle, error) {
if resource == nil {
return nil, merr.WrapErrParameterInvalidMsg("xgboost: file resource is nil")
}
if resource.LocalPath == "" {
return nil, merr.WrapErrServiceInternalMsg("xgboost: local path is empty for resource %q", resource.Name)
}
path := C.CString(resource.LocalPath)
defer C.free(unsafe.Pointer(path))
result := C.LoadXGBoostUBJModel(path)
if err := consumeXGBoostCStatus(&result.status); err != nil {
if result.model != nil {
status := C.DeleteXGBoostModel(result.model)
_ = consumeXGBoostCStatus(&status)
}
return nil, err
}
if result.model == nil {
return nil, merr.WrapErrServiceInternalMsg("xgboost: loader returned nil model for resource %q", resource.Name)
}
return &modelHandle{
h: unsafe.Pointer(result.model),
numFeatures: int(result.num_features),
}, nil
}
func predictXGBoostArrowChunks(model *modelHandle, inputs []*arrow.Chunked, outputDefault bool, allocator memory.Allocator) (*arrow.Chunked, error) {
if model == nil || model.h == nil {
return nil, merr.WrapErrServiceInternalMsg("xgboost: model handle is nil")
}
if allocator == nil {
allocator = memory.DefaultAllocator
}
if len(inputs) == 0 {
return nil, merr.WrapErrParameterInvalidMsg("xgboost: expected at least one input column")
}
chunks := make([]arrow.Array, len(inputs[0].Chunks()))
for chunkIdx := range chunks {
chunk, err := predictXGBoostArrowChunk(model, inputs, chunkIdx, outputDefault, allocator)
if err != nil {
for i := 0; i < chunkIdx; i++ {
chunks[i].Release()
}
return nil, err
}
chunks[chunkIdx] = chunk
}
result := arrow.NewChunked(arrow.PrimitiveTypes.Float32, chunks)
for _, chunk := range chunks {
chunk.Release()
}
return result, nil
}
func predictXGBoostArrowChunk(model *modelHandle, inputs []*arrow.Chunked, chunkIdx int, outputDefault bool, allocator memory.Allocator) (arrow.Array, error) {
rows := inputs[0].Chunk(chunkIdx).Len()
featureArrays := make([]C.struct_ArrowArray, len(inputs))
featureSchemas := make([]C.struct_ArrowSchema, len(inputs))
defer func() {
for idx := range featureArrays {
C.MilvusGoArrowArrayRelease(&featureArrays[idx])
C.MilvusGoArrowSchemaRelease(&featureSchemas[idx])
}
}()
for colIdx, input := range inputs {
chunk := input.Chunk(chunkIdx)
if _, ok := newNumericReader(chunk); !ok {
return nil, merr.WrapErrParameterInvalidMsg("xgboost: column %d: unsupported input column type %T, expected numeric type", colIdx, chunk)
}
cdata.ExportArrowArray(
chunk,
(*cdata.CArrowArray)(unsafe.Pointer(&featureArrays[colIdx])),
(*cdata.CArrowSchema)(unsafe.Pointer(&featureSchemas[colIdx])),
)
}
output := make([]float32, rows)
var outputPtr *C.float
var outputPin runtime.Pinner
if len(output) > 0 {
outputPin.Pin(&output[0])
defer outputPin.Unpin()
outputPtr = (*C.float)(unsafe.Pointer(&output[0]))
}
var featureArrayPtr *C.struct_ArrowArray
var featureSchemaPtr *C.struct_ArrowSchema
if len(featureArrays) > 0 {
featureArrayPtr = &featureArrays[0]
featureSchemaPtr = &featureSchemas[0]
}
status := C.PredictXGBoost(C.CXGBoostPredictRequest{
model: C.CXGBoostModel(model.h),
feature_arrays: featureArrayPtr,
feature_schemas: featureSchemaPtr,
num_features: C.int32_t(len(inputs)),
output_default: C.bool(outputDefault),
output: outputPtr,
})
if err := consumeXGBoostCStatus(&status); err != nil {
return nil, err
}
builder := array.NewFloat32Builder(allocator)
defer builder.Release()
builder.AppendValues(output, nil)
return builder.NewArray(), nil
}
func closeXGBoostModel(model *modelHandle) error {
if model == nil || model.h == nil {
return nil
}
status := C.DeleteXGBoostModel(C.CXGBoostModel(model.h))
model.h = nil
return consumeXGBoostCStatus(&status)
}
func consumeXGBoostCStatus(status *C.CStatus) error {
if status.error_code == 0 {
return nil
}
errorCode := int32(status.error_code)
errorMsg := C.GoString(status.error_msg)
C.free(unsafe.Pointer(status.error_msg))
return merr.SegcoreError(errorCode, errorMsg)
}