use of org.apache.hadoop.hive.metastore.utils.MetaStoreUtils.ColStatsObjWithSourceInfo in project hive by apache.
the class LongColumnStatsAggregator method aggregate.
@Override
public ColumnStatisticsObj aggregate(List<ColStatsObjWithSourceInfo> colStatsWithSourceInfo, List<String> partNames, boolean areAllPartsFound) throws MetaException {
ColumnStatisticsObj statsObj = null;
String colType = null;
String colName = null;
// check if all the ColumnStatisticsObjs contain stats and all the ndv are
// bitvectors
boolean doAllPartitionContainStats = partNames.size() == colStatsWithSourceInfo.size();
NumDistinctValueEstimator ndvEstimator = null;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
if (statsObj == null) {
colName = cso.getColName();
colType = cso.getColType();
statsObj = ColumnStatsAggregatorFactory.newColumnStaticsObj(colName, colType, cso.getStatsData().getSetField());
LOG.trace("doAllPartitionContainStats for column: {} is: {}", colName, doAllPartitionContainStats);
}
LongColumnStatsDataInspector longColumnStatsData = (LongColumnStatsDataInspector) cso.getStatsData().getLongStats();
if (longColumnStatsData.getNdvEstimator() == null) {
ndvEstimator = null;
break;
} else {
// check if all of the bit vectors can merge
NumDistinctValueEstimator estimator = longColumnStatsData.getNdvEstimator();
if (ndvEstimator == null) {
ndvEstimator = estimator;
} else {
if (ndvEstimator.canMerge(estimator)) {
continue;
} else {
ndvEstimator = null;
break;
}
}
}
}
if (ndvEstimator != null) {
ndvEstimator = NumDistinctValueEstimatorFactory.getEmptyNumDistinctValueEstimator(ndvEstimator);
}
LOG.debug("all of the bit vectors can merge for " + colName + " is " + (ndvEstimator != null));
ColumnStatisticsData columnStatisticsData = new ColumnStatisticsData();
if (doAllPartitionContainStats || colStatsWithSourceInfo.size() < 2) {
LongColumnStatsDataInspector aggregateData = null;
long lowerBound = 0;
long higherBound = 0;
double densityAvgSum = 0.0;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
LongColumnStatsDataInspector newData = (LongColumnStatsDataInspector) cso.getStatsData().getLongStats();
lowerBound = Math.max(lowerBound, newData.getNumDVs());
higherBound += newData.getNumDVs();
densityAvgSum += (newData.getHighValue() - newData.getLowValue()) / newData.getNumDVs();
if (ndvEstimator != null) {
ndvEstimator.mergeEstimators(newData.getNdvEstimator());
}
if (aggregateData == null) {
aggregateData = newData.deepCopy();
} else {
aggregateData.setLowValue(Math.min(aggregateData.getLowValue(), newData.getLowValue()));
aggregateData.setHighValue(Math.max(aggregateData.getHighValue(), newData.getHighValue()));
aggregateData.setNumNulls(aggregateData.getNumNulls() + newData.getNumNulls());
aggregateData.setNumDVs(Math.max(aggregateData.getNumDVs(), newData.getNumDVs()));
}
}
if (ndvEstimator != null) {
// if all the ColumnStatisticsObjs contain bitvectors, we do not need to
// use uniform distribution assumption because we can merge bitvectors
// to get a good estimation.
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
} else {
long estimation;
if (useDensityFunctionForNDVEstimation) {
// We have estimation, lowerbound and higherbound. We use estimation
// if it is between lowerbound and higherbound.
double densityAvg = densityAvgSum / partNames.size();
estimation = (long) ((aggregateData.getHighValue() - aggregateData.getLowValue()) / densityAvg);
if (estimation < lowerBound) {
estimation = lowerBound;
} else if (estimation > higherBound) {
estimation = higherBound;
}
} else {
estimation = (long) (lowerBound + (higherBound - lowerBound) * ndvTuner);
}
aggregateData.setNumDVs(estimation);
}
columnStatisticsData.setLongStats(aggregateData);
} else {
// we need extrapolation
LOG.debug("start extrapolation for " + colName);
Map<String, Integer> indexMap = new HashMap<>();
for (int index = 0; index < partNames.size(); index++) {
indexMap.put(partNames.get(index), index);
}
Map<String, Double> adjustedIndexMap = new HashMap<>();
Map<String, ColumnStatisticsData> adjustedStatsMap = new HashMap<>();
// while we scan the css, we also get the densityAvg, lowerbound and
// higerbound when useDensityFunctionForNDVEstimation is true.
double densityAvgSum = 0.0;
if (ndvEstimator == null) {
// the traditional extrapolation methods.
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
String partName = csp.getPartName();
LongColumnStatsData newData = cso.getStatsData().getLongStats();
if (useDensityFunctionForNDVEstimation) {
densityAvgSum += (newData.getHighValue() - newData.getLowValue()) / newData.getNumDVs();
}
adjustedIndexMap.put(partName, (double) indexMap.get(partName));
adjustedStatsMap.put(partName, cso.getStatsData());
}
} else {
// we first merge all the adjacent bitvectors that we could merge and
// derive new partition names and index.
StringBuilder pseudoPartName = new StringBuilder();
double pseudoIndexSum = 0;
int length = 0;
int curIndex = -1;
LongColumnStatsDataInspector aggregateData = null;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
String partName = csp.getPartName();
LongColumnStatsDataInspector newData = (LongColumnStatsDataInspector) cso.getStatsData().getLongStats();
// already checked it before.
if (indexMap.get(partName) != curIndex) {
// There is bitvector, but it is not adjacent to the previous ones.
if (length > 0) {
// we have to set ndv
adjustedIndexMap.put(pseudoPartName.toString(), pseudoIndexSum / length);
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
ColumnStatisticsData csd = new ColumnStatisticsData();
csd.setLongStats(aggregateData);
adjustedStatsMap.put(pseudoPartName.toString(), csd);
if (useDensityFunctionForNDVEstimation) {
densityAvgSum += (aggregateData.getHighValue() - aggregateData.getLowValue()) / aggregateData.getNumDVs();
}
// reset everything
pseudoPartName = new StringBuilder();
pseudoIndexSum = 0;
length = 0;
ndvEstimator = NumDistinctValueEstimatorFactory.getEmptyNumDistinctValueEstimator(ndvEstimator);
}
aggregateData = null;
}
curIndex = indexMap.get(partName);
pseudoPartName.append(partName);
pseudoIndexSum += curIndex;
length++;
curIndex++;
if (aggregateData == null) {
aggregateData = newData.deepCopy();
} else {
aggregateData.setLowValue(Math.min(aggregateData.getLowValue(), newData.getLowValue()));
aggregateData.setHighValue(Math.max(aggregateData.getHighValue(), newData.getHighValue()));
aggregateData.setNumNulls(aggregateData.getNumNulls() + newData.getNumNulls());
}
ndvEstimator.mergeEstimators(newData.getNdvEstimator());
}
if (length > 0) {
// we have to set ndv
adjustedIndexMap.put(pseudoPartName.toString(), pseudoIndexSum / length);
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
ColumnStatisticsData csd = new ColumnStatisticsData();
csd.setLongStats(aggregateData);
adjustedStatsMap.put(pseudoPartName.toString(), csd);
if (useDensityFunctionForNDVEstimation) {
densityAvgSum += (aggregateData.getHighValue() - aggregateData.getLowValue()) / aggregateData.getNumDVs();
}
}
}
extrapolate(columnStatisticsData, partNames.size(), colStatsWithSourceInfo.size(), adjustedIndexMap, adjustedStatsMap, densityAvgSum / adjustedStatsMap.size());
}
LOG.debug("Ndv estimatation for {} is {} # of partitions requested: {} # of partitions found: {}", colName, columnStatisticsData.getLongStats().getNumDVs(), partNames.size(), colStatsWithSourceInfo.size());
statsObj.setStatsData(columnStatisticsData);
return statsObj;
}
use of org.apache.hadoop.hive.metastore.utils.MetaStoreUtils.ColStatsObjWithSourceInfo in project hive by apache.
the class StringColumnStatsAggregator method aggregate.
@Override
public ColumnStatisticsObj aggregate(List<ColStatsObjWithSourceInfo> colStatsWithSourceInfo, List<String> partNames, boolean areAllPartsFound) throws MetaException {
ColumnStatisticsObj statsObj = null;
String colType = null;
String colName = null;
// check if all the ColumnStatisticsObjs contain stats and all the ndv are
// bitvectors
boolean doAllPartitionContainStats = partNames.size() == colStatsWithSourceInfo.size();
NumDistinctValueEstimator ndvEstimator = null;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
if (statsObj == null) {
colName = cso.getColName();
colType = cso.getColType();
statsObj = ColumnStatsAggregatorFactory.newColumnStaticsObj(colName, colType, cso.getStatsData().getSetField());
LOG.trace("doAllPartitionContainStats for column: {} is: {}", colName, doAllPartitionContainStats);
}
StringColumnStatsDataInspector stringColumnStatsData = (StringColumnStatsDataInspector) cso.getStatsData().getStringStats();
if (stringColumnStatsData.getNdvEstimator() == null) {
ndvEstimator = null;
break;
} else {
// check if all of the bit vectors can merge
NumDistinctValueEstimator estimator = stringColumnStatsData.getNdvEstimator();
if (ndvEstimator == null) {
ndvEstimator = estimator;
} else {
if (ndvEstimator.canMerge(estimator)) {
continue;
} else {
ndvEstimator = null;
break;
}
}
}
}
if (ndvEstimator != null) {
ndvEstimator = NumDistinctValueEstimatorFactory.getEmptyNumDistinctValueEstimator(ndvEstimator);
}
LOG.debug("all of the bit vectors can merge for " + colName + " is " + (ndvEstimator != null));
ColumnStatisticsData columnStatisticsData = new ColumnStatisticsData();
if (doAllPartitionContainStats || colStatsWithSourceInfo.size() < 2) {
StringColumnStatsDataInspector aggregateData = null;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
StringColumnStatsDataInspector newData = (StringColumnStatsDataInspector) cso.getStatsData().getStringStats();
if (ndvEstimator != null) {
ndvEstimator.mergeEstimators(newData.getNdvEstimator());
}
if (aggregateData == null) {
aggregateData = newData.deepCopy();
} else {
aggregateData.setMaxColLen(Math.max(aggregateData.getMaxColLen(), newData.getMaxColLen()));
aggregateData.setAvgColLen(Math.max(aggregateData.getAvgColLen(), newData.getAvgColLen()));
aggregateData.setNumNulls(aggregateData.getNumNulls() + newData.getNumNulls());
aggregateData.setNumDVs(Math.max(aggregateData.getNumDVs(), newData.getNumDVs()));
}
}
if (ndvEstimator != null) {
// if all the ColumnStatisticsObjs contain bitvectors, we do not need to
// use uniform distribution assumption because we can merge bitvectors
// to get a good estimation.
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
} else {
// aggregateData already has the ndv of the max of all
}
columnStatisticsData.setStringStats(aggregateData);
} else {
// we need extrapolation
LOG.debug("start extrapolation for " + colName);
Map<String, Integer> indexMap = new HashMap<>();
for (int index = 0; index < partNames.size(); index++) {
indexMap.put(partNames.get(index), index);
}
Map<String, Double> adjustedIndexMap = new HashMap<>();
Map<String, ColumnStatisticsData> adjustedStatsMap = new HashMap<>();
if (ndvEstimator == null) {
// the traditional extrapolation methods.
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
String partName = csp.getPartName();
adjustedIndexMap.put(partName, (double) indexMap.get(partName));
adjustedStatsMap.put(partName, cso.getStatsData());
}
} else {
// we first merge all the adjacent bitvectors that we could merge and
// derive new partition names and index.
StringBuilder pseudoPartName = new StringBuilder();
double pseudoIndexSum = 0;
int length = 0;
int curIndex = -1;
StringColumnStatsDataInspector aggregateData = null;
for (ColStatsObjWithSourceInfo csp : colStatsWithSourceInfo) {
ColumnStatisticsObj cso = csp.getColStatsObj();
String partName = csp.getPartName();
StringColumnStatsDataInspector newData = (StringColumnStatsDataInspector) cso.getStatsData().getStringStats();
// already checked it before.
if (indexMap.get(partName) != curIndex) {
// There is bitvector, but it is not adjacent to the previous ones.
if (length > 0) {
// we have to set ndv
adjustedIndexMap.put(pseudoPartName.toString(), pseudoIndexSum / length);
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
ColumnStatisticsData csd = new ColumnStatisticsData();
csd.setStringStats(aggregateData);
adjustedStatsMap.put(pseudoPartName.toString(), csd);
// reset everything
pseudoPartName = new StringBuilder();
pseudoIndexSum = 0;
length = 0;
ndvEstimator = NumDistinctValueEstimatorFactory.getEmptyNumDistinctValueEstimator(ndvEstimator);
}
aggregateData = null;
}
curIndex = indexMap.get(partName);
pseudoPartName.append(partName);
pseudoIndexSum += curIndex;
length++;
curIndex++;
if (aggregateData == null) {
aggregateData = newData.deepCopy();
} else {
aggregateData.setAvgColLen(Math.max(aggregateData.getAvgColLen(), newData.getAvgColLen()));
aggregateData.setMaxColLen(Math.max(aggregateData.getMaxColLen(), newData.getMaxColLen()));
aggregateData.setNumNulls(aggregateData.getNumNulls() + newData.getNumNulls());
}
ndvEstimator.mergeEstimators(newData.getNdvEstimator());
}
if (length > 0) {
// we have to set ndv
adjustedIndexMap.put(pseudoPartName.toString(), pseudoIndexSum / length);
aggregateData.setNumDVs(ndvEstimator.estimateNumDistinctValues());
ColumnStatisticsData csd = new ColumnStatisticsData();
csd.setStringStats(aggregateData);
adjustedStatsMap.put(pseudoPartName.toString(), csd);
}
}
extrapolate(columnStatisticsData, partNames.size(), colStatsWithSourceInfo.size(), adjustedIndexMap, adjustedStatsMap, -1);
}
LOG.debug("Ndv estimatation for {} is {} # of partitions requested: {} # of partitions found: {}", colName, columnStatisticsData.getStringStats().getNumDVs(), partNames.size(), colStatsWithSourceInfo.size());
statsObj.setStatsData(columnStatisticsData);
return statsObj;
}
use of org.apache.hadoop.hive.metastore.utils.MetaStoreUtils.ColStatsObjWithSourceInfo in project hive by apache.
the class MetaStoreDirectSql method getColStatsForAllTablePartitions.
public List<ColStatsObjWithSourceInfo> getColStatsForAllTablePartitions(String dbName, boolean enableBitVector) throws MetaException {
String queryText = "select \"TABLE_NAME\", \"PARTITION_NAME\", " + getStatsList(enableBitVector) + " from " + " " + PART_COL_STATS + " where \"DB_NAME\" = ?";
long start = 0;
long end = 0;
Query query = null;
boolean doTrace = LOG.isDebugEnabled();
Object qResult = null;
start = doTrace ? System.nanoTime() : 0;
List<ColStatsObjWithSourceInfo> colStatsForDB = new ArrayList<ColStatsObjWithSourceInfo>();
try {
query = pm.newQuery("javax.jdo.query.SQL", queryText);
qResult = executeWithArray(query, new Object[] { dbName }, queryText);
if (qResult == null) {
query.closeAll();
return colStatsForDB;
}
end = doTrace ? System.nanoTime() : 0;
timingTrace(doTrace, queryText, start, end);
List<Object[]> list = ensureList(qResult);
for (Object[] row : list) {
String tblName = (String) row[0];
String partName = (String) row[1];
ColumnStatisticsObj colStatObj = prepareCSObj(row, 2);
colStatsForDB.add(new ColStatsObjWithSourceInfo(colStatObj, dbName, tblName, partName));
Deadline.checkTimeout();
}
} finally {
query.closeAll();
}
return colStatsForDB;
}
use of org.apache.hadoop.hive.metastore.utils.MetaStoreUtils.ColStatsObjWithSourceInfo in project hive by apache.
the class CachedStore method mergeColStatsForPartitions.
private MergedColumnStatsForPartitions mergeColStatsForPartitions(String dbName, String tblName, List<String> partNames, List<String> colNames, SharedCache sharedCache) throws MetaException {
final boolean useDensityFunctionForNDVEstimation = MetastoreConf.getBoolVar(getConf(), ConfVars.STATS_NDV_DENSITY_FUNCTION);
final double ndvTuner = MetastoreConf.getDoubleVar(getConf(), ConfVars.STATS_NDV_TUNER);
Map<ColumnStatsAggregator, List<ColStatsObjWithSourceInfo>> colStatsMap = new HashMap<ColumnStatsAggregator, List<ColStatsObjWithSourceInfo>>();
boolean areAllPartsFound = true;
long partsFound = 0;
for (String colName : colNames) {
long partsFoundForColumn = 0;
ColumnStatsAggregator colStatsAggregator = null;
List<ColStatsObjWithSourceInfo> colStatsWithPartInfoList = new ArrayList<ColStatsObjWithSourceInfo>();
for (String partName : partNames) {
ColumnStatisticsObj colStatsForPart = sharedCache.getPartitionColStatsFromCache(dbName, tblName, partNameToVals(partName), colName);
if (colStatsForPart != null) {
ColStatsObjWithSourceInfo colStatsWithPartInfo = new ColStatsObjWithSourceInfo(colStatsForPart, dbName, tblName, partName);
colStatsWithPartInfoList.add(colStatsWithPartInfo);
if (colStatsAggregator == null) {
colStatsAggregator = ColumnStatsAggregatorFactory.getColumnStatsAggregator(colStatsForPart.getStatsData().getSetField(), useDensityFunctionForNDVEstimation, ndvTuner);
}
partsFoundForColumn++;
} else {
LOG.debug("Stats not found in CachedStore for: dbName={} tblName={} partName={} colName={}", dbName, tblName, partName, colName);
}
}
if (colStatsWithPartInfoList.size() > 0) {
colStatsMap.put(colStatsAggregator, colStatsWithPartInfoList);
}
if (partsFoundForColumn == partNames.size()) {
partsFound++;
}
if (colStatsMap.size() < 1) {
LOG.debug("No stats data found for: dbName={} tblName= {} partNames= {} colNames= ", dbName, tblName, partNames, colNames);
return new MergedColumnStatsForPartitions(new ArrayList<ColumnStatisticsObj>(), 0);
}
}
// itself will tell whether bitvector is null or not and aggr logic can automatically apply.
return new MergedColumnStatsForPartitions(MetaStoreUtils.aggrPartitionStats(colStatsMap, partNames, areAllPartsFound, useDensityFunctionForNDVEstimation, ndvTuner), partsFound);
}
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