Fly-Style commented on code in PR #18819: URL: https://github.com/apache/druid/pull/18819#discussion_r2622622565
########## indexing-service/src/main/java/org/apache/druid/indexing/seekablestream/supervisor/autoscaler/CostBasedAutoScaler.java: ########## @@ -0,0 +1,256 @@ +/* + * Licensed to the Apache Software Foundation (ASF) 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 org.apache.druid.indexing.seekablestream.supervisor.autoscaler; + +import org.apache.druid.indexing.overlord.supervisor.SupervisorSpec; +import org.apache.druid.indexing.overlord.supervisor.autoscaler.LagStats; +import org.apache.druid.indexing.overlord.supervisor.autoscaler.SupervisorTaskAutoScaler; +import org.apache.druid.indexing.seekablestream.supervisor.SeekableStreamSupervisor; +import org.apache.druid.java.util.common.StringUtils; +import org.apache.druid.java.util.common.concurrent.Execs; +import org.apache.druid.java.util.emitter.EmittingLogger; +import org.apache.druid.java.util.emitter.service.ServiceEmitter; +import org.apache.druid.java.util.emitter.service.ServiceMetricEvent; +import org.apache.druid.query.DruidMetrics; + +import java.util.ArrayList; +import java.util.List; +import java.util.concurrent.Callable; +import java.util.concurrent.ScheduledExecutorService; +import java.util.concurrent.TimeUnit; + +/** + * Cost-based auto-scaler for seekable stream supervisors. + * Uses a cost function combining lag and idle time metrics to determine optimal task counts. + * Task counts are selected from pre-calculated values (not arbitrary factors). + * Scale-up and scale-down are both performed proactively. + * Future versions may perform scale-down on task rollover only. + */ +public class CostBasedAutoScaler implements SupervisorTaskAutoScaler +{ + private static final EmittingLogger log = new EmittingLogger(CostBasedAutoScaler.class); + + private static final int MAX_INCREASE_IN_PARTITIONS_PER_TASK = 2; + private static final int MIN_INCREASE_IN_PARTITIONS_PER_TASK = MAX_INCREASE_IN_PARTITIONS_PER_TASK * 2; + public static final String OPTIMAL_TASK_COUNT_METRIC = "task/autoScaler/costBased/optimalTaskCount"; + + private final String supervisorId; + private final SeekableStreamSupervisor supervisor; + private final ServiceEmitter emitter; + private final SupervisorSpec spec; + private final CostBasedAutoScalerConfig config; + private final ServiceMetricEvent.Builder metricBuilder; + private final ScheduledExecutorService autoscalerExecutor; + private final WeightedCostFunction costFunction; + + public CostBasedAutoScaler( + SeekableStreamSupervisor supervisor, + CostBasedAutoScalerConfig config, + SupervisorSpec spec, + ServiceEmitter emitter + ) + { + this.config = config; + this.spec = spec; + this.supervisor = supervisor; + this.supervisorId = spec.getId(); + this.emitter = emitter; + + this.costFunction = new WeightedCostFunction(); + + this.autoscalerExecutor = Execs.scheduledSingleThreaded("CostBasedAutoScaler-" + StringUtils.encodeForFormat(spec.getId())); + this.metricBuilder = ServiceMetricEvent.builder() + .setDimension(DruidMetrics.SUPERVISOR_ID, supervisorId) + .setDimension( + DruidMetrics.STREAM, + this.supervisor.getIoConfig().getStream() + ); + } + + @Override + public void start() + { + Callable<Integer> scaleAction = () -> computeOptimalTaskCount(this.collectMetrics()); + Runnable onSuccessfulScale = () -> { + }; + + autoscalerExecutor.scheduleAtFixedRate( + supervisor.buildDynamicAllocationTask(scaleAction, onSuccessfulScale, emitter), + config.getScaleActionPeriodMillis(), + config.getScaleActionPeriodMillis(), + TimeUnit.MILLISECONDS + ); + + log.info( + "CostBasedAutoScaler started for supervisorId[%s]: evaluating scaling every [%d]ms", + supervisorId, + config.getScaleActionPeriodMillis() + ); + } + + @Override + public void stop() + { + autoscalerExecutor.shutdownNow(); + log.info("CostBasedAutoScaler stopped for supervisorId [%s]", supervisorId); + } + + @Override + public void reset() + { + // No-op. + } + + private CostMetrics collectMetrics() + { + if (spec.isSuspended()) { + log.debug("Supervisor [%s] is suspended, skipping a metrics collection", supervisorId); + return null; + } + + final LagStats lagStats = supervisor.computeLagStats(); + if (lagStats == null) { + log.debug("Lag stats unavailable for supervisorId [%s], skipping collection", supervisorId); + return null; + } + + final int currentTaskCount = supervisor.getIoConfig().getTaskCount(); + final int partitionCount = supervisor.getPartitionCount(); + final double pollIdleRatio = supervisor.getPollIdleRatioMetric(); + + return new CostMetrics(lagStats.getAvgLag(), currentTaskCount, partitionCount, pollIdleRatio); + } + + /** + * Computes the optimal task count based on current metrics. + * <p> + * Returns -1 (no scaling needed) in the following cases: + * <ul> + * <li>Metrics are not available</li> + * <li>The current idle ratio is in the ideal range [0.2, 0.6] - optimal utilization achieved</li> + * <li>Optimal task count equals current task count</li> + * </ul> + * + * @return optimal task count for scale-up, or -1 if no scaling action needed + */ + public int computeOptimalTaskCount(CostMetrics metrics) + { + if (metrics == null) { + log.debug("No metrics available yet for supervisorId [%s]", supervisorId); + return -1; + } + + final int partitionCount = metrics.getPartitionCount(); + final int currentTaskCount = metrics.getCurrentTaskCount(); + if (partitionCount <= 0 || currentTaskCount <= 0) { + return -1; + } + + final int[] validTaskCounts = CostBasedAutoScaler.computeValidTaskCounts(partitionCount, currentTaskCount); + + if (validTaskCounts.length == 0) { + log.warn("No valid task counts after applying constraints for supervisorId [%s]", supervisorId); + return -1; + } + + // If idle is already in the ideal range [0.2, 0.6], optimal utilization has been achieved. + // No scaling is needed - maintain stability by staying at current task count. + final double currentIdleRatio = metrics.getPollIdleRatio(); + if (currentIdleRatio >= 0 && WeightedCostFunction.isIdleInIdealRange(currentIdleRatio)) { + log.info( + "Idle ratio [%.3f] is in ideal range for supervisorId [%s], no scaling needed", + currentIdleRatio, + supervisorId + ); + return -1; + } + + int optimalTaskCount = -1; + double optimalCost = Double.POSITIVE_INFINITY; + + for (int taskCount : validTaskCounts) { + double cost = costFunction.computeCost(metrics, taskCount, config); + log.debug("Proposed task count: %d, Cost: %.4f", taskCount, cost); + if (cost < optimalCost) { + optimalTaskCount = taskCount; + optimalCost = cost; + } + } + + emitter.emit(metricBuilder.setMetric(OPTIMAL_TASK_COUNT_METRIC, (long) optimalTaskCount)); + + log.debug( + "Cost-based scaling evaluation for supervisorId [%s]: current=%d, optimal=%d, cost=%.4f, " + + "avgPartitionLag=%.2f, pollIdleRatio=%.3f", + supervisorId, + metrics.getCurrentTaskCount(), + optimalTaskCount, + optimalCost, + metrics.getAvgPartitionLag(), + metrics.getPollIdleRatio() + ); + + if (optimalTaskCount == currentTaskCount) { + return -1; + } + // Perform both scale-up and scale-down proactively + // Future versions may perform scale-down on task rollover only + return optimalTaskCount; + } + + /** + * Generates valid task counts based on partitions-per-task ratios. + * This enables gradual scaling and avoids large jumps. + * Limits the range of task counts considered to avoid excessive computation. + * + * @return sorted list of valid task counts within bounds + */ + static int[] computeValidTaskCounts(int partitionCount, int currentTaskCount) + { + if (partitionCount <= 0) { + return new int[]{}; + } + + List<Integer> result = new ArrayList<>(); + final int currentPartitionsPerTask = partitionCount / currentTaskCount; + // Minimum partitions per task corresponds to maximum number of tasks (scale up) and vice versa. + final int minPartitionsPerTask = Math.max(1, currentPartitionsPerTask - MAX_INCREASE_IN_PARTITIONS_PER_TASK); Review Comment: Nice catch! -- This is an automated message from the Apache Git Service. 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