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ASF GitHub Bot logged work on HIVE-23880: ----------------------------------------- Author: ASF GitHub Bot Created on: 13/Aug/20 07:55 Start Date: 13/Aug/20 07:55 Worklog Time Spent: 10m Work Description: abstractdog commented on a change in pull request #1280: URL: https://github.com/apache/hive/pull/1280#discussion_r469765404 ########## File path: ql/src/java/org/apache/hadoop/hive/ql/exec/vector/expressions/aggregates/VectorUDAFBloomFilterMerge.java ########## @@ -77,6 +75,211 @@ public void reset() { // Do not change the initial bytes which contain NumHashFunctions/NumBits! Arrays.fill(bfBytes, BloomKFilter.START_OF_SERIALIZED_LONGS, bfBytes.length, (byte) 0); } + + public boolean mergeBloomFilterBytesFromInputColumn(BytesColumnVector inputColumn, + int batchSize, boolean selectedInUse, int[] selected, Configuration conf) { + // already set in previous iterations, no need to call initExecutor again + if (numThreads == 0) { + return false; + } + if (executor == null) { + initExecutor(conf, batchSize); + if (!isParallel) { + return false; + } + } + + // split every bloom filter (represented by a part of a byte[]) across workers + for (int j = 0; j < batchSize; j++) { + if (!selectedInUse && inputColumn.noNulls) { + splitVectorAcrossWorkers(workers, inputColumn.vector[j], inputColumn.start[j], + inputColumn.length[j]); + } else if (!selectedInUse) { + if (!inputColumn.isNull[j]) { + splitVectorAcrossWorkers(workers, inputColumn.vector[j], inputColumn.start[j], + inputColumn.length[j]); + } + } else if (inputColumn.noNulls) { + int i = selected[j]; + splitVectorAcrossWorkers(workers, inputColumn.vector[i], inputColumn.start[i], + inputColumn.length[i]); + } else { + int i = selected[j]; + if (!inputColumn.isNull[i]) { + splitVectorAcrossWorkers(workers, inputColumn.vector[i], inputColumn.start[i], + inputColumn.length[i]); + } + } + } + + return true; + } + + private void initExecutor(Configuration conf, int batchSize) { + numThreads = conf.getInt(HiveConf.ConfVars.TEZ_BLOOM_FILTER_MERGE_THREADS.varname, + HiveConf.ConfVars.TEZ_BLOOM_FILTER_MERGE_THREADS.defaultIntVal); + LOG.info("Number of threads used for bloom filter merge: {}", numThreads); + + if (numThreads < 0) { + throw new RuntimeException( + "invalid number of threads for bloom filter merge: " + numThreads); + } + if (numThreads == 0) { // disable parallel feature + return; // this will leave isParallel=false + } + isParallel = true; + executor = Executors.newFixedThreadPool(numThreads); + + workers = new BloomFilterMergeWorker[numThreads]; + for (int f = 0; f < numThreads; f++) { + workers[f] = new BloomFilterMergeWorker(bfBytes, 0, bfBytes.length); + } + + for (int f = 0; f < numThreads; f++) { + executor.submit(workers[f]); + } + } + + public int getNumberOfWaitingMergeTasks(){ + int size = 0; + for (BloomFilterMergeWorker w : workers){ + size += w.queue.size(); + } + return size; + } + + public int getNumberOfMergingWorkers() { + int working = 0; + for (BloomFilterMergeWorker w : workers) { + if (w.isMerging.get()) { + working += 1; + } + } + return working; + } + + private static void splitVectorAcrossWorkers(BloomFilterMergeWorker[] workers, byte[] bytes, + int start, int length) { + if (bytes == null || length == 0) { + return; + } + /* + * This will split a byte[] across workers as below: + * let's say there are 10 workers for 7813 bytes, in this case + * length: 7813, elementPerBatch: 781 + * bytes assigned to workers: inclusive lower bound, exclusive upper bound + * 1. worker: 5 -> 786 + * 2. worker: 786 -> 1567 + * 3. worker: 1567 -> 2348 + * 4. worker: 2348 -> 3129 + * 5. worker: 3129 -> 3910 + * 6. worker: 3910 -> 4691 + * 7. worker: 4691 -> 5472 + * 8. worker: 5472 -> 6253 + * 9. worker: 6253 -> 7034 + * 10. worker: 7034 -> 7813 (last element per batch is: 779) + * + * This way, a particular worker will be given with the same part + * of all bloom filters along with the shared base bloom filter, + * so the bitwise OR function will not be a subject of threading/sync issues. + */ + int elementPerBatch = + (int) Math.ceil((double) (length - START_OF_SERIALIZED_LONGS) / workers.length); + + for (int w = 0; w < workers.length; w++) { + int modifiedStart = START_OF_SERIALIZED_LONGS + w * elementPerBatch; + int modifiedLength = (w == workers.length - 1) + ? length - (START_OF_SERIALIZED_LONGS + w * elementPerBatch) : elementPerBatch; + + ElementWrapper wrapper = + new ElementWrapper(bytes, start, length, modifiedStart, modifiedLength); + workers[w].add(wrapper); + } + } + + public void shutdownAndWaitForMergeTasks() { + /** + * Executor.shutdownNow() is supposed to send Thread.interrupt to worker threads, and they are + * supposed to finish their work. + */ + executor.shutdownNow(); + try { + executor.awaitTermination(180, TimeUnit.SECONDS); + } catch (InterruptedException e) { + LOG.warn("Bloom filter merge is interrupted while waiting to finish, this is unexpected", + e); + } + } + } + + private static class BloomFilterMergeWorker implements Runnable { + private BlockingQueue<ElementWrapper> queue; + private byte[] bfAggregation; + private int bfAggregationStart; + private int bfAggregationLength; + AtomicBoolean isMerging = new AtomicBoolean(false); + + public BloomFilterMergeWorker(byte[] bfAggregation, int bfAggregationStart, + int bfAggregationLength) { + this.bfAggregation = bfAggregation; + this.bfAggregationStart = bfAggregationStart; + this.bfAggregationLength = bfAggregationLength; + this.queue = new ArrayBlockingQueue<>(VectorizedRowBatch.DEFAULT_SIZE * 2); Review comment: if there are 1000 upstream mapper tasks (creating bloom filters), there will be 1000 rowbatches (=1000 bloom filters), for example on TPCDS 30GB there were 1000<x<2000...anyway, you're absolutely right, I don't want to take care of correct bounds, which is unpredictable, I've just chosen a wrong implementation...I'm going to change this to LinkedBlockingDeque and letting this size confusion go ---------------------------------------------------------------- This is an automated message from the Apache Git Service. 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For queries about this service, please contact Infrastructure at: us...@infra.apache.org Issue Time Tracking ------------------- Worklog Id: (was: 470126) Time Spent: 7h 10m (was: 7h) > Bloom filters can be merged in a parallel way in VectorUDAFBloomFilterMerge > --------------------------------------------------------------------------- > > Key: HIVE-23880 > URL: https://issues.apache.org/jira/browse/HIVE-23880 > Project: Hive > Issue Type: Improvement > Reporter: László Bodor > Assignee: László Bodor > Priority: Major > Labels: pull-request-available > Attachments: lipwig-output3605036885489193068.svg > > Time Spent: 7h 10m > Remaining Estimate: 0h > > Merging bloom filters in semijoin reduction can become the main bottleneck in > case of large number of source mapper tasks (~1000, Map 1 in below example) > and a large amount of expected entries (50M) in bloom filters. > For example in TPCDS Q93: > {code} > select /*+ semi(store_returns, sr_item_sk, store_sales, 70000000)*/ > ss_customer_sk > ,sum(act_sales) sumsales > from (select ss_item_sk > ,ss_ticket_number > ,ss_customer_sk > ,case when sr_return_quantity is not null then > (ss_quantity-sr_return_quantity)*ss_sales_price > else > (ss_quantity*ss_sales_price) end act_sales > from store_sales left outer join store_returns on (sr_item_sk = > ss_item_sk > and > sr_ticket_number = ss_ticket_number) > ,reason > where sr_reason_sk = r_reason_sk > and r_reason_desc = 'reason 66') t > group by ss_customer_sk > order by sumsales, ss_customer_sk > limit 100; > {code} > On 10TB-30TB scale there is a chance that from 3-4 mins of query runtime 1-2 > mins are spent with merging bloom filters (Reducer 2), as in: > [^lipwig-output3605036885489193068.svg] > {code} > ---------------------------------------------------------------------------------------------- > VERTICES MODE STATUS TOTAL COMPLETED RUNNING PENDING > FAILED KILLED > ---------------------------------------------------------------------------------------------- > Map 3 .......... llap SUCCEEDED 1 1 0 0 > 0 0 > Map 1 .......... llap SUCCEEDED 1263 1263 0 0 > 0 0 > Reducer 2 llap RUNNING 1 0 1 0 > 0 0 > Map 4 llap RUNNING 6154 0 207 5947 > 0 0 > Reducer 5 llap INITED 43 0 0 43 > 0 0 > Reducer 6 llap INITED 1 0 0 1 > 0 0 > ---------------------------------------------------------------------------------------------- > VERTICES: 02/06 [====>>----------------------] 16% ELAPSED TIME: 149.98 s > ---------------------------------------------------------------------------------------------- > {code} > For example, 70M entries in bloom filter leads to a 436 465 696 bits, so > merging 1263 bloom filters means running ~ 1263 * 436 465 696 bitwise OR > operation, which is very hot codepath, but can be parallelized. -- This message was sent by Atlassian Jira (v8.3.4#803005)