use of edu.iu.dsc.tws.tsched.spi.taskschedule.TaskInstanceMapCalculation in project twister2 by DSC-SPIDAL.
the class RoundRobinBatchTaskScheduler method schedule.
/**
* This is the base method which receives the dataflow taskgraph and the worker plan to allocate
* the task instances to the appropriate workers with their required ram, disk, and cpu values.
*/
@Override
public TaskSchedulePlan schedule(ComputeGraph computeGraph, WorkerPlan workerPlan) {
Map<Integer, List<TaskInstanceId>> containerInstanceMap;
Map<Integer, WorkerSchedulePlan> containerPlans = new LinkedHashMap<>();
for (int i = 0; i < workerPlan.getNumberOfWorkers(); i++) {
roundRobinAllocation.put(i, new ArrayList<>());
}
// To retrieve the batch task instances(it may be single task vertex or a batch of task vertices)
Set<Vertex> taskVertexSet = new LinkedHashSet<>(computeGraph.getTaskVertexSet());
TaskVertexParser taskGraphParser = new TaskVertexParser();
List<Set<Vertex>> taskVertexList = taskGraphParser.parseVertexSet(computeGraph);
for (Set<Vertex> vertexSet : taskVertexList) {
if (vertexSet.size() > 1) {
containerInstanceMap = roundRobinBatchSchedulingAlgorithm(computeGraph, vertexSet);
} else {
Vertex vertex = vertexSet.iterator().next();
containerInstanceMap = roundRobinBatchSchedulingAlgorithm(computeGraph, vertex);
}
TaskInstanceMapCalculation instanceMapCalculation = new TaskInstanceMapCalculation(this.instanceRAM, this.instanceCPU, this.instanceDisk);
Map<Integer, Map<TaskInstanceId, Double>> instancesRamMap = instanceMapCalculation.getInstancesRamMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesDiskMap = instanceMapCalculation.getInstancesDiskMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesCPUMap = instanceMapCalculation.getInstancesCPUMapInContainer(containerInstanceMap, taskVertexSet);
for (int containerId : containerInstanceMap.keySet()) {
double containerRAMValue = TaskSchedulerContext.containerRamPadding(config);
double containerDiskValue = TaskSchedulerContext.containerDiskPadding(config);
double containerCpuValue = TaskSchedulerContext.containerCpuPadding(config);
List<TaskInstanceId> taskTaskInstanceIds = containerInstanceMap.get(containerId);
Map<TaskInstanceId, TaskInstancePlan> taskInstancePlanMap = new HashMap<>();
for (TaskInstanceId id : taskTaskInstanceIds) {
double instanceRAMValue = instancesRamMap.get(containerId).get(id);
double instanceDiskValue = instancesDiskMap.get(containerId).get(id);
double instanceCPUValue = instancesCPUMap.get(containerId).get(id);
Resource instanceResource = new Resource(instanceRAMValue, instanceDiskValue, instanceCPUValue);
taskInstancePlanMap.put(id, new TaskInstancePlan(id.getTaskName(), id.getTaskId(), id.getTaskIndex(), instanceResource));
containerRAMValue += instanceRAMValue;
containerDiskValue += instanceDiskValue;
containerCpuValue += instanceDiskValue;
}
Worker worker = workerPlan.getWorker(containerId);
Resource containerResource;
if (worker != null && worker.getCpu() > 0 && worker.getDisk() > 0 && worker.getRam() > 0) {
containerResource = new Resource((double) worker.getRam(), (double) worker.getDisk(), (double) worker.getCpu());
} else {
containerResource = new Resource(containerRAMValue, containerDiskValue, containerCpuValue);
}
WorkerSchedulePlan taskWorkerSchedulePlan;
if (containerPlans.containsKey(containerId)) {
taskWorkerSchedulePlan = containerPlans.get(containerId);
taskWorkerSchedulePlan.getTaskInstances().addAll(taskInstancePlanMap.values());
} else {
taskWorkerSchedulePlan = new WorkerSchedulePlan(containerId, new HashSet<>(taskInstancePlanMap.values()), containerResource);
containerPlans.put(containerId, taskWorkerSchedulePlan);
}
}
}
return new TaskSchedulePlan(0, new HashSet<>(containerPlans.values()));
}
use of edu.iu.dsc.tws.tsched.spi.taskschedule.TaskInstanceMapCalculation in project twister2 by DSC-SPIDAL.
the class DataLocalityStreamingTaskScheduler method schedule.
/**
* This is the base method for the data locality aware task scheduling for scheduling the
* streaming task instances. It retrieves the task vertex set of the task graph and send the set
* to the data locality aware scheduling algorithm to schedule the streaming task instances
* which are closer to the data nodes.
*/
@Override
public TaskSchedulePlan schedule(ComputeGraph graph, WorkerPlan workerPlan) {
// Represents task schedule plan Id
int taskSchedulePlanId = 0;
Set<WorkerSchedulePlan> workerSchedulePlans = new HashSet<>();
Set<Vertex> taskVertexSet = graph.getTaskVertexSet();
Map<Integer, List<TaskInstanceId>> containerInstanceMap = dataLocalityStreamingSchedulingAlgorithm(graph, workerPlan.getNumberOfWorkers(), workerPlan);
TaskInstanceMapCalculation instanceMapCalculation = new TaskInstanceMapCalculation(this.instanceRAM, this.instanceCPU, this.instanceDisk);
Map<Integer, Map<TaskInstanceId, Double>> instancesRamMap = instanceMapCalculation.getInstancesRamMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesDiskMap = instanceMapCalculation.getInstancesDiskMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesCPUMap = instanceMapCalculation.getInstancesCPUMapInContainer(containerInstanceMap, taskVertexSet);
for (int containerId : containerInstanceMap.keySet()) {
double containerRAMValue = TaskSchedulerContext.containerRamPadding(config);
double containerDiskValue = TaskSchedulerContext.containerDiskPadding(config);
double containerCpuValue = TaskSchedulerContext.containerCpuPadding(config);
List<TaskInstanceId> taskTaskInstanceIds = containerInstanceMap.get(containerId);
Map<TaskInstanceId, TaskInstancePlan> taskInstancePlanMap = new HashMap<>();
for (TaskInstanceId id : taskTaskInstanceIds) {
double instanceRAMValue = instancesRamMap.get(containerId).get(id);
double instanceDiskValue = instancesDiskMap.get(containerId).get(id);
double instanceCPUValue = instancesCPUMap.get(containerId).get(id);
Resource instanceResource = new Resource(instanceRAMValue, instanceDiskValue, instanceCPUValue);
taskInstancePlanMap.put(id, new TaskInstancePlan(id.getTaskName(), id.getTaskId(), id.getTaskIndex(), instanceResource));
containerRAMValue += instanceRAMValue;
containerDiskValue += instanceDiskValue;
containerCpuValue += instanceDiskValue;
}
Worker worker = workerPlan.getWorker(containerId);
Resource containerResource;
if (worker != null && worker.getCpu() > 0 && worker.getDisk() > 0 && worker.getRam() > 0) {
containerResource = new Resource((double) worker.getRam(), (double) worker.getDisk(), (double) worker.getCpu());
} else {
containerResource = new Resource(containerRAMValue, containerDiskValue, containerCpuValue);
}
WorkerSchedulePlan taskWorkerSchedulePlan = new WorkerSchedulePlan(containerId, new HashSet<>(taskInstancePlanMap.values()), containerResource);
workerSchedulePlans.add(taskWorkerSchedulePlan);
}
return new TaskSchedulePlan(taskSchedulePlanId, workerSchedulePlans);
}
use of edu.iu.dsc.tws.tsched.spi.taskschedule.TaskInstanceMapCalculation in project twister2 by DSC-SPIDAL.
the class UserDefinedTaskScheduler method schedule.
/**
* This is the base method which receives the dataflow taskgraph and the worker plan to allocate
* the task instances to the appropriate workers with their required ram, disk, and cpu values.
*
* @return TaskSchedulePlan
*/
@Override
public TaskSchedulePlan schedule(ComputeGraph graph, WorkerPlan workerPlan) {
int taskSchedulePlanId = 0;
// Allocate the task instances into the containers/workers
Set<WorkerSchedulePlan> workerSchedulePlans = new LinkedHashSet<>();
// To get the vertex set from the taskgraph
Set<Vertex> taskVertexSet = graph.getTaskVertexSet();
// Allocate the task instances into the logical containers.
Map<Integer, List<TaskInstanceId>> userDefinedContainerInstanceMap = userDefinedSchedulingAlgorithm(graph, workerPlan.getNumberOfWorkers());
TaskInstanceMapCalculation instanceMapCalculation = new TaskInstanceMapCalculation(this.instanceRAM, this.instanceCPU, this.instanceDisk);
Map<Integer, Map<TaskInstanceId, Double>> instancesRamMap = instanceMapCalculation.getInstancesRamMapInContainer(userDefinedContainerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesDiskMap = instanceMapCalculation.getInstancesDiskMapInContainer(userDefinedContainerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesCPUMap = instanceMapCalculation.getInstancesCPUMapInContainer(userDefinedContainerInstanceMap, taskVertexSet);
for (int containerId : userDefinedContainerInstanceMap.keySet()) {
double containerRAMValue = TaskSchedulerContext.containerRamPadding(config);
double containerDiskValue = TaskSchedulerContext.containerDiskPadding(config);
double containerCpuValue = TaskSchedulerContext.containerCpuPadding(config);
List<TaskInstanceId> taskTaskInstanceIds = userDefinedContainerInstanceMap.get(containerId);
Map<TaskInstanceId, TaskInstancePlan> taskInstancePlanMap = new HashMap<>();
for (TaskInstanceId id : taskTaskInstanceIds) {
double instanceRAMValue = instancesRamMap.get(containerId).get(id);
double instanceDiskValue = instancesDiskMap.get(containerId).get(id);
double instanceCPUValue = instancesCPUMap.get(containerId).get(id);
Resource instanceResource = new Resource(instanceRAMValue, instanceDiskValue, instanceCPUValue);
taskInstancePlanMap.put(id, new TaskInstancePlan(id.getTaskName(), id.getTaskId(), id.getTaskIndex(), instanceResource));
containerRAMValue += instanceRAMValue;
containerDiskValue += instanceDiskValue;
containerCpuValue += instanceDiskValue;
}
Worker worker = workerPlan.getWorker(containerId);
Resource containerResource;
// Create the container resource value based on the worker plan
if (worker != null && worker.getCpu() > 0 && worker.getDisk() > 0 && worker.getRam() > 0) {
containerResource = new Resource((double) worker.getRam(), (double) worker.getDisk(), (double) worker.getCpu());
LOG.fine("Worker (if loop):" + containerId + "\tRam:" + worker.getRam() + "\tDisk:" + worker.getDisk() + "\tCpu:" + worker.getCpu());
} else {
containerResource = new Resource(containerRAMValue, containerDiskValue, containerCpuValue);
LOG.fine("Worker (else loop):" + containerId + "\tRam:" + containerRAMValue + "\tDisk:" + containerDiskValue + "\tCpu:" + containerCpuValue);
}
// Schedule the task instance plan into the task container plan.
WorkerSchedulePlan taskWorkerSchedulePlan = new WorkerSchedulePlan(containerId, new HashSet<>(taskInstancePlanMap.values()), containerResource);
workerSchedulePlans.add(taskWorkerSchedulePlan);
}
return new TaskSchedulePlan(taskSchedulePlanId, workerSchedulePlans);
}
use of edu.iu.dsc.tws.tsched.spi.taskschedule.TaskInstanceMapCalculation in project twister2 by DSC-SPIDAL.
the class BatchTaskScheduler method schedule.
/**
* This is the base method which receives the dataflow taskgraph and the worker plan to allocate
* the task instances to the appropriate workers with their required ram, disk, and cpu values.
*
* @param computeGraph
* @param workerPlan worker plan
* @return
*/
@Override
public TaskSchedulePlan schedule(ComputeGraph computeGraph, WorkerPlan workerPlan) {
// Allocate the task instances into the containers/workers
Set<WorkerSchedulePlan> workerSchedulePlans = new LinkedHashSet<>();
// To get the vertex set from the Collectible Name Settaskgraph
Set<Vertex> taskVertexSet = new LinkedHashSet<>(computeGraph.getTaskVertexSet());
// Allocate the task instances into the logical containers.
Map<Integer, List<TaskInstanceId>> batchContainerInstanceMap = batchSchedulingAlgorithm(computeGraph, workerPlan.getNumberOfWorkers());
TaskInstanceMapCalculation instanceMapCalculation = new TaskInstanceMapCalculation(this.instanceRAM, this.instanceCPU, this.instanceDisk);
Map<Integer, Map<TaskInstanceId, Double>> instancesRamMap = instanceMapCalculation.getInstancesRamMapInContainer(batchContainerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesDiskMap = instanceMapCalculation.getInstancesDiskMapInContainer(batchContainerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesCPUMap = instanceMapCalculation.getInstancesCPUMapInContainer(batchContainerInstanceMap, taskVertexSet);
for (int containerId : batchContainerInstanceMap.keySet()) {
double containerRAMValue = TaskSchedulerContext.containerRamPadding(config);
double containerDiskValue = TaskSchedulerContext.containerDiskPadding(config);
double containerCpuValue = TaskSchedulerContext.containerCpuPadding(config);
List<TaskInstanceId> taskTaskInstanceIds = batchContainerInstanceMap.get(containerId);
Map<TaskInstanceId, TaskInstancePlan> taskInstancePlanMap = new HashMap<>();
for (TaskInstanceId id : taskTaskInstanceIds) {
double instanceRAMValue = instancesRamMap.get(containerId).get(id);
double instanceDiskValue = instancesDiskMap.get(containerId).get(id);
double instanceCPUValue = instancesCPUMap.get(containerId).get(id);
Resource instanceResource = new Resource(instanceRAMValue, instanceDiskValue, instanceCPUValue);
taskInstancePlanMap.put(id, new TaskInstancePlan(id.getTaskName(), id.getTaskId(), id.getTaskIndex(), instanceResource));
containerRAMValue += instanceRAMValue;
containerDiskValue += instanceDiskValue;
containerCpuValue += instanceDiskValue;
}
Worker worker = workerPlan.getWorker(containerId);
Resource containerResource;
// Create the container resource value based on the worker plan
if (worker != null && worker.getCpu() > 0 && worker.getDisk() > 0 && worker.getRam() > 0) {
containerResource = new Resource((double) worker.getRam(), (double) worker.getDisk(), (double) worker.getCpu());
} else {
containerResource = new Resource(containerRAMValue, containerDiskValue, containerCpuValue);
}
// Schedule the task instance plan into the task container plan.
WorkerSchedulePlan taskWorkerSchedulePlan = new WorkerSchedulePlan(containerId, new LinkedHashSet<>(taskInstancePlanMap.values()), containerResource);
workerSchedulePlans.add(taskWorkerSchedulePlan);
if (dependentGraphs && index == 0) {
workerIdList.add(containerId);
}
}
index++;
TaskSchedulePlan taskSchedulePlan = new TaskSchedulePlan(0, workerSchedulePlans);
if (workerId == 0) {
Map<Integer, WorkerSchedulePlan> containersMap = taskSchedulePlan.getContainersMap();
for (Map.Entry<Integer, WorkerSchedulePlan> entry : containersMap.entrySet()) {
Integer integer = entry.getKey();
WorkerSchedulePlan workerSchedulePlan = entry.getValue();
Set<TaskInstancePlan> containerPlanTaskInstances = workerSchedulePlan.getTaskInstances();
LOG.fine("Graph Name:" + computeGraph.getGraphName() + "\tcontainer id:" + integer);
for (TaskInstancePlan ip : containerPlanTaskInstances) {
LOG.fine("Task Id:" + ip.getTaskId() + "\tIndex" + ip.getTaskIndex() + "\tName:" + ip.getTaskName());
}
}
}
return taskSchedulePlan;
}
use of edu.iu.dsc.tws.tsched.spi.taskschedule.TaskInstanceMapCalculation in project twister2 by DSC-SPIDAL.
the class DataLocalityBatchTaskScheduler method schedule.
/**
* This is the base method for the data locality aware task scheduling for scheduling the batch
* task instances. It retrieves the task vertex set of the task graph and send the set to the
* data locality aware scheduling algorithm to allocate the batch task instances which are closer
* to the data nodes.
*/
@Override
public TaskSchedulePlan schedule(ComputeGraph graph, WorkerPlan workerPlan) {
LinkedHashMap<Integer, WorkerSchedulePlan> containerPlans = new LinkedHashMap<>();
for (int i = 0; i < workerPlan.getNumberOfWorkers(); i++) {
dataLocalityAwareAllocation.put(i, new ArrayList<>());
}
LinkedHashSet<Vertex> taskVertexSet = new LinkedHashSet<>(graph.getTaskVertexSet());
TaskVertexParser taskVertexParser = new TaskVertexParser();
List<Set<Vertex>> taskVertexList = taskVertexParser.parseVertexSet(graph);
for (Set<Vertex> vertexSet : taskVertexList) {
Map<Integer, List<TaskInstanceId>> containerInstanceMap;
if (vertexSet.size() > 1) {
containerInstanceMap = dataLocalityBatchSchedulingAlgorithm(graph, vertexSet, workerPlan);
} else {
Vertex vertex = vertexSet.iterator().next();
containerInstanceMap = dataLocalityBatchSchedulingAlgorithm(graph, vertex, workerPlan);
}
TaskInstanceMapCalculation instanceMapCalculation = new TaskInstanceMapCalculation(this.instanceRAM, this.instanceCPU, this.instanceDisk);
Map<Integer, Map<TaskInstanceId, Double>> instancesRamMap = instanceMapCalculation.getInstancesRamMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesDiskMap = instanceMapCalculation.getInstancesDiskMapInContainer(containerInstanceMap, taskVertexSet);
Map<Integer, Map<TaskInstanceId, Double>> instancesCPUMap = instanceMapCalculation.getInstancesCPUMapInContainer(containerInstanceMap, taskVertexSet);
for (int containerId : containerInstanceMap.keySet()) {
double containerRAMValue = TaskSchedulerContext.containerRamPadding(config);
double containerDiskValue = TaskSchedulerContext.containerDiskPadding(config);
double containerCpuValue = TaskSchedulerContext.containerCpuPadding(config);
List<TaskInstanceId> taskTaskInstanceIds = containerInstanceMap.get(containerId);
Map<TaskInstanceId, TaskInstancePlan> taskInstancePlanMap = new HashMap<>();
for (TaskInstanceId id : taskTaskInstanceIds) {
double instanceRAMValue = instancesRamMap.get(containerId).get(id);
double instanceDiskValue = instancesDiskMap.get(containerId).get(id);
double instanceCPUValue = instancesCPUMap.get(containerId).get(id);
Resource instanceResource = new Resource(instanceRAMValue, instanceDiskValue, instanceCPUValue);
taskInstancePlanMap.put(id, new TaskInstancePlan(id.getTaskName(), id.getTaskId(), id.getTaskIndex(), instanceResource));
containerRAMValue += instanceRAMValue;
containerDiskValue += instanceDiskValue;
containerCpuValue += instanceDiskValue;
}
Worker worker = workerPlan.getWorker(containerId);
Resource containerResource;
if (worker != null && worker.getCpu() > 0 && worker.getDisk() > 0 && worker.getRam() > 0) {
containerResource = new Resource((double) worker.getRam(), (double) worker.getDisk(), (double) worker.getCpu());
} else {
containerResource = new Resource(containerRAMValue, containerDiskValue, containerCpuValue);
}
WorkerSchedulePlan taskWorkerSchedulePlan;
if (containerPlans.containsKey(containerId)) {
taskWorkerSchedulePlan = containerPlans.get(containerId);
taskWorkerSchedulePlan.getTaskInstances().addAll(taskInstancePlanMap.values());
} else {
taskWorkerSchedulePlan = new WorkerSchedulePlan(containerId, new HashSet<>(taskInstancePlanMap.values()), containerResource);
containerPlans.put(containerId, taskWorkerSchedulePlan);
}
}
}
TaskSchedulePlan taskSchedulePlan = new TaskSchedulePlan(0, new HashSet<>(containerPlans.values()));
Map<Integer, WorkerSchedulePlan> containersMap = taskSchedulePlan.getContainersMap();
for (Map.Entry<Integer, WorkerSchedulePlan> entry : containersMap.entrySet()) {
Integer integer = entry.getKey();
WorkerSchedulePlan workerSchedulePlan = entry.getValue();
Set<TaskInstancePlan> containerPlanTaskInstances = workerSchedulePlan.getTaskInstances();
LOG.fine("Task Details for Container Id:" + integer + "\tsize:" + containerPlanTaskInstances.size());
for (TaskInstancePlan ip : containerPlanTaskInstances) {
LOG.fine("TaskId:" + ip.getTaskId() + "\tTask Index" + ip.getTaskIndex() + "\tTask Name:" + ip.getTaskName());
}
}
return taskSchedulePlan;
}
Aggregations