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179 lines
5.9 KiB
Go
179 lines
5.9 KiB
Go
// Licensed to the LF AI & Data foundation under one
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// or more contributor license agreements. See the NOTICE file
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// distributed with this work for additional information
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// regarding copyright ownership. The ASF licenses this file
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// to you under the Apache License, Version 2.0 (the
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// "License"); you may not use this file except in compliance
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// with the License. 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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package expr
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import (
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"github.com/apache/arrow/go/v17/arrow"
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"github.com/milvus-io/milvus-proto/go-api/v3/schemapb"
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"github.com/milvus-io/milvus/internal/util/function/chain/types"
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"github.com/milvus-io/milvus/pkg/v3/util/merr"
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)
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const (
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XGBoostFuncName = "xgboost"
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xgboostParamModelResource = "model_resource"
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xgboostParamOutput = "output"
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xgboostParamFeatureNames = "feature_names"
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xgboostParamObjective = "objective"
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xgboostOutputDefault = "default"
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xgboostOutputRaw = "raw"
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)
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type XGBoostExpr struct {
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BaseExpr
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modelResource string
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output string
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cache *xgboostModelCache
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}
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func NewXGBoostExpr(modelResource string, output string, cache *xgboostModelCache) (*XGBoostExpr, error) {
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if modelResource == "" {
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return nil, merr.WrapErrParameterInvalidMsg("xgboost: model_resource is required")
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}
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if output == "" {
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output = xgboostOutputDefault
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}
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if output != xgboostOutputDefault && output != xgboostOutputRaw {
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return nil, merr.WrapErrParameterInvalidMsg("xgboost: output must be one of [%s, %s], got %q", xgboostOutputDefault, xgboostOutputRaw, output)
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}
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if cache == nil {
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cache = globalXGBoostModelCache
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}
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return &XGBoostExpr{
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BaseExpr: *NewBaseExpr(XGBoostFuncName, []string{types.StageL0Rerank}),
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modelResource: modelResource,
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output: output,
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cache: cache,
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}, nil
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}
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func NewXGBoostExprFromParams(_ types.FunctionBuildContext, cfg types.FunctionConfig) (types.FunctionExpr, error) {
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reader := types.NewParamReader(XGBoostFuncName, cfg.Params)
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if err := validateXGBoostParams(cfg.Params); err != nil {
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return nil, err
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}
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modelResource, err := reader.String(xgboostParamModelResource, true)
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if err != nil {
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return nil, err
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}
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output, err := reader.String(xgboostParamOutput, false)
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if err != nil {
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return nil, err
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}
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return NewXGBoostExpr(modelResource, output, nil)
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}
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func validateXGBoostParams(params map[string]*schemapb.FunctionParamValue) error {
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allowed := map[string]struct{}{
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xgboostParamModelResource: {},
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xgboostParamOutput: {},
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}
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for key := range params {
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if key == xgboostParamFeatureNames || key == xgboostParamObjective {
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return merr.WrapErrParameterInvalidMsg("xgboost: parameter %q is not supported", key)
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}
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if _, ok := allowed[key]; !ok {
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return merr.WrapErrParameterInvalidMsg("xgboost: unknown parameter %q", key)
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}
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}
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return nil
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}
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func (e *XGBoostExpr) ValidateArgs(args []*schemapb.FunctionChainExprArg) error {
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if len(args) == 0 {
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return merr.WrapErrParameterInvalidMsg("xgboost: expected at least one feature column")
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}
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return e.BaseExpr.ValidateArgs(args)
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}
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func (e *XGBoostExpr) OutputDataTypes() []arrow.DataType {
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return []arrow.DataType{arrow.PrimitiveTypes.Float32}
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}
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func (e *XGBoostExpr) Execute(ctx *types.FuncContext, inputs []*arrow.Chunked) ([]*arrow.Chunked, error) {
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if e.cache == nil {
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return nil, merr.WrapErrServiceInternalMsg("xgboost: model cache is nil")
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}
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if len(inputs) == 0 {
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return nil, merr.WrapErrParameterInvalidMsg("xgboost: expected at least one input column")
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}
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lease, err := e.cache.acquireByResourceName(e.modelResource)
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if err != nil {
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return nil, err
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}
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defer lease.Release()
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model := lease.Model()
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if model == nil {
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return nil, merr.WrapErrServiceInternalMsg("xgboost: model handle is nil")
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}
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if model.numFeatures > 0 && len(inputs) != model.numFeatures {
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return nil, merr.WrapErrParameterInvalidMsg("xgboost: expected %d feature columns, got %d", model.numFeatures, len(inputs))
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}
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if err := validateXGBoostInputChunks(inputs); err != nil {
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return nil, err
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}
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output, err := predictXGBoostArrowChunks(model, inputs, e.output == xgboostOutputDefault, ctx.Pool())
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if err != nil {
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return nil, err
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}
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return []*arrow.Chunked{output}, nil
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}
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func validateXGBoostInputChunks(inputs []*arrow.Chunked) error {
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if len(inputs) == 0 {
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return merr.WrapErrParameterInvalidMsg("xgboost: expected at least one input column")
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}
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if inputs[0] == nil {
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return merr.WrapErrServiceInternalMsg("xgboost: input column 0 is nil")
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}
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numChunks := len(inputs[0].Chunks())
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for colIdx, input := range inputs {
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if input == nil {
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return merr.WrapErrServiceInternalMsg("xgboost: input column %d is nil", colIdx)
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}
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if len(input.Chunks()) != numChunks {
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return merr.WrapErrServiceInternalMsg("xgboost: input column 0 has %d chunks but column %d has %d chunks", numChunks, colIdx, len(input.Chunks()))
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}
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}
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for chunkIdx := 0; chunkIdx < numChunks; chunkIdx++ {
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baseChunk := inputs[0].Chunk(chunkIdx)
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if baseChunk == nil {
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return merr.WrapErrServiceInternalMsg("xgboost: input column 0 chunk %d is nil", chunkIdx)
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}
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chunkLen := baseChunk.Len()
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for colIdx := 1; colIdx < len(inputs); colIdx++ {
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chunk := inputs[colIdx].Chunk(chunkIdx)
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if chunk == nil {
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return merr.WrapErrServiceInternalMsg("xgboost: input column %d chunk %d is nil", colIdx, chunkIdx)
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}
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if chunk.Len() != chunkLen {
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return merr.WrapErrServiceInternalMsg("xgboost: input column 0 chunk %d has %d rows but column %d chunk %d has %d rows", chunkIdx, chunkLen, colIdx, chunkIdx, chunk.Len())
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}
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}
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}
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return nil
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}
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func init() {
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types.MustRegisterFunction(XGBoostFuncName, NewXGBoostExprFromParams)
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}
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