Files
wehub-resource-sync 498b235461
Build and test / Build and test AMD64 Ubuntu 22.04 (push) Failing after 0s
Publish Builder / amazonlinux2023 (push) Failing after 1s
Build and test / UT for Go (push) Has been skipped
Publish KRTE Images / KRTE (push) Failing after 1s
Build and test / Integration Test (push) Has been skipped
Build and test / Upload Code Coverage (push) Has been skipped
Publish Builder / rockylinux9 (push) Failing after 1s
Publish Builder / ubuntu22.04 (push) Failing after 0s
Publish Builder / ubuntu24.04 (push) Failing after 0s
Publish Gpu Builder / publish-gpu-builder (push) Failing after 1s
Publish Test Images / PyTest (push) Failing after 0s
Build and test / UT for Cpp (push) Has been cancelled
chore: import upstream snapshot with attribution
2026-07-13 12:31:17 +08:00

214 lines
5.7 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.
*/
package chain
import "github.com/milvus-io/milvus/pkg/v3/util/merr"
// ColumnSet is a small set helper for column names.
type ColumnSet map[string]struct{}
// NewColumnSet creates a ColumnSet from column names.
func NewColumnSet(cols ...string) ColumnSet {
set := make(ColumnSet, len(cols))
for _, col := range cols {
set.Add(col)
}
return set
}
// Add adds a column name to the set.
func (s ColumnSet) Add(col string) {
if col == "" {
return
}
s[col] = struct{}{}
}
// Remove removes a column name from the set.
func (s ColumnSet) Remove(col string) {
delete(s, col)
}
// Contains reports whether the set contains a column name.
func (s ColumnSet) Contains(col string) bool {
_, ok := s[col]
return ok
}
// Clone returns a copy of the set.
func (s ColumnSet) Clone() ColumnSet {
clone := make(ColumnSet, len(s))
for col := range s {
clone[col] = struct{}{}
}
return clone
}
// RemoveSystemColumns removes function-chain system columns from the set.
func (s ColumnSet) RemoveSystemColumns() {
for col := range s {
if IsFunctionChainSystemName(col) {
delete(s, col)
}
}
}
// DownstreamSpec describes non-system columns consumed after FuncChain execution.
// It is the liveness root for optimization, not the final API response projection.
type DownstreamSpec struct {
RequiredColumns []string
}
// SystemColumnPolicy controls how pruning treats function-chain system columns.
type SystemColumnPolicy struct {
KeepAllSystemColumns bool
}
func normalizeSystemColumnPolicy(policy SystemColumnPolicy) SystemColumnPolicy {
// The current conservative default is to retain all existing system columns.
if !policy.KeepAllSystemColumns {
policy.KeepAllSystemColumns = true
}
return policy
}
// ExecuteOptions controls optional FuncChain execution optimizations.
type ExecuteOptions struct {
EnableColumnPruning bool
EnableParallel bool // reserved for future schedule support
Downstream DownstreamSpec
SystemColumnPolicy SystemColumnPolicy
}
// LivenessInfo contains non-system column liveness for each operator.
type LivenessInfo struct {
LiveBefore []ColumnSet
LiveAfter []ColumnSet
}
// OptimizationPlan is non-executable metadata used by FuncChain.ExecuteWithOptions.
type OptimizationPlan struct {
Liveness *LivenessInfo
PruneBefore []ColumnSet
PruneAfter []ColumnSet
SystemColumnPolicy SystemColumnPolicy
}
type functionChainPlanner struct {
operators []Operator
opts ExecuteOptions
}
func (fc *FuncChain) buildOptimizationPlan(opts ExecuteOptions) (*OptimizationPlan, error) {
planner := functionChainPlanner{
operators: fc.operators,
opts: opts,
}
return planner.Plan()
}
func (p functionChainPlanner) Plan() (*OptimizationPlan, error) {
if !p.opts.EnableColumnPruning && !p.opts.EnableParallel {
return nil, nil
}
if p.opts.EnableParallel {
return nil, merr.WrapErrServiceInternal("function chain parallel execution is not implemented")
}
if err := p.validateOperatorMetadata(); err != nil {
return nil, err
}
liveness := p.analyzeLiveness()
return &OptimizationPlan{
Liveness: liveness,
PruneBefore: liveness.LiveBefore,
PruneAfter: liveness.LiveAfter,
SystemColumnPolicy: normalizeSystemColumnPolicy(p.opts.SystemColumnPolicy),
}, nil
}
func (p functionChainPlanner) validateOperatorMetadata() error {
for i, op := range p.operators {
if op == nil {
return merr.WrapErrServiceInternalMsg("operator[%d] is nil", i)
}
for _, input := range op.Inputs() {
if input == "" {
return merr.WrapErrServiceInternalMsg("operator[%d] %s has empty input column", i, op.Name())
}
}
seenOutputs := make(map[string]struct{}, len(op.Outputs()))
for _, output := range op.Outputs() {
if output == "" {
return merr.WrapErrServiceInternalMsg("operator[%d] %s has empty output column", i, op.Name())
}
if _, ok := seenOutputs[output]; ok {
return merr.WrapErrServiceInternalMsg("operator[%d] %s has duplicate output column %q", i, op.Name(), output)
}
seenOutputs[output] = struct{}{}
}
}
for _, col := range p.opts.Downstream.RequiredColumns {
if col == "" {
return merr.WrapErrServiceInternal("downstream required column is empty")
}
}
return nil
}
func (p functionChainPlanner) analyzeLiveness() *LivenessInfo {
n := len(p.operators)
liveBefore := make([]ColumnSet, n)
liveAfter := make([]ColumnSet, n)
live := NewColumnSet(p.opts.Downstream.RequiredColumns...)
live.RemoveSystemColumns()
for i := n - 1; i >= 0; i-- {
op := p.operators[i]
liveAfter[i] = live.Clone()
next := live.Clone()
for _, output := range op.Outputs() {
if IsFunctionChainSystemName(output) {
continue
}
next.Remove(output)
}
for _, input := range op.Inputs() {
if IsFunctionChainSystemName(input) {
continue
}
next.Add(input)
}
liveBefore[i] = next.Clone()
live = next
}
return &LivenessInfo{
LiveBefore: liveBefore,
LiveAfter: liveAfter,
}
}