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author | Davies Liu <davies.liu@gmail.com> | 2014-09-02 15:47:47 -0700 |
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committer | Josh Rosen <joshrosen@apache.org> | 2014-09-02 15:47:47 -0700 |
commit | e2c901b4c72b247bb422dd5acf057bc583e639ab (patch) | |
tree | 2cfa9e1f36518fdde97856d670e5c29e74e356df /python | |
parent | 81b9d5b628229ed69aa9dae45ec4c94068dcd71e (diff) | |
download | spark-e2c901b4c72b247bb422dd5acf057bc583e639ab.tar.gz spark-e2c901b4c72b247bb422dd5acf057bc583e639ab.tar.bz2 spark-e2c901b4c72b247bb422dd5acf057bc583e639ab.zip |
[SPARK-2871] [PySpark] add countApproxDistinct() API
RDD.countApproxDistinct(relativeSD=0.05):
:: Experimental ::
Return approximate number of distinct elements in the RDD.
The algorithm used is based on streamlib's implementation of
"HyperLogLog in Practice: Algorithmic Engineering of a State
of The Art Cardinality Estimation Algorithm", available
<a href="http://dx.doi.org/10.1145/2452376.2452456">here</a>.
This support all the types of objects, which is supported by
Pyrolite, nearly all builtin types.
param relativeSD Relative accuracy. Smaller values create
counters that require more space.
It must be greater than 0.000017.
>>> n = sc.parallelize(range(1000)).map(str).countApproxDistinct()
>>> 950 < n < 1050
True
>>> n = sc.parallelize([i % 20 for i in range(1000)]).countApproxDistinct()
>>> 18 < n < 22
True
Author: Davies Liu <davies.liu@gmail.com>
Closes #2142 from davies/countApproxDistinct and squashes the following commits:
e20da47 [Davies Liu] remove the correction in Python
c38c4e4 [Davies Liu] fix doc tests
2ab157c [Davies Liu] fix doc tests
9d2565f [Davies Liu] add commments and link for hash collision correction
d306492 [Davies Liu] change range of hash of tuple to [0, maxint]
ded624f [Davies Liu] calculate hash in Python
4cba98f [Davies Liu] add more tests
a85a8c6 [Davies Liu] Merge branch 'master' into countApproxDistinct
e97e342 [Davies Liu] add countApproxDistinct()
Diffstat (limited to 'python')
-rw-r--r-- | python/pyspark/rdd.py | 39 | ||||
-rw-r--r-- | python/pyspark/tests.py | 16 |
2 files changed, 50 insertions, 5 deletions
diff --git a/python/pyspark/rdd.py b/python/pyspark/rdd.py index 2d80fad796..6fc9f66bc5 100644 --- a/python/pyspark/rdd.py +++ b/python/pyspark/rdd.py @@ -62,7 +62,7 @@ def portable_hash(x): >>> portable_hash(None) 0 - >>> portable_hash((None, 1)) + >>> portable_hash((None, 1)) & 0xffffffff 219750521 """ if x is None: @@ -72,7 +72,7 @@ def portable_hash(x): for i in x: h ^= portable_hash(i) h *= 1000003 - h &= 0xffffffff + h &= sys.maxint h ^= len(x) if h == -1: h = -2 @@ -1942,7 +1942,7 @@ class RDD(object): return True return False - def _to_jrdd(self): + def _to_java_object_rdd(self): """ Return an JavaRDD of Object by unpickling It will convert each Python object into Java object by Pyrolite, whenever the @@ -1977,7 +1977,7 @@ class RDD(object): >>> (rdd.sumApprox(1000) - r) / r < 0.05 True """ - jrdd = self.mapPartitions(lambda it: [float(sum(it))])._to_jrdd() + jrdd = self.mapPartitions(lambda it: [float(sum(it))])._to_java_object_rdd() jdrdd = self.ctx._jvm.JavaDoubleRDD.fromRDD(jrdd.rdd()) r = jdrdd.sumApprox(timeout, confidence).getFinalValue() return BoundedFloat(r.mean(), r.confidence(), r.low(), r.high()) @@ -1993,11 +1993,40 @@ class RDD(object): >>> (rdd.meanApprox(1000) - r) / r < 0.05 True """ - jrdd = self.map(float)._to_jrdd() + jrdd = self.map(float)._to_java_object_rdd() jdrdd = self.ctx._jvm.JavaDoubleRDD.fromRDD(jrdd.rdd()) r = jdrdd.meanApprox(timeout, confidence).getFinalValue() return BoundedFloat(r.mean(), r.confidence(), r.low(), r.high()) + def countApproxDistinct(self, relativeSD=0.05): + """ + :: Experimental :: + Return approximate number of distinct elements in the RDD. + + The algorithm used is based on streamlib's implementation of + "HyperLogLog in Practice: Algorithmic Engineering of a State + of The Art Cardinality Estimation Algorithm", available + <a href="http://dx.doi.org/10.1145/2452376.2452456">here</a>. + + @param relativeSD Relative accuracy. Smaller values create + counters that require more space. + It must be greater than 0.000017. + + >>> n = sc.parallelize(range(1000)).map(str).countApproxDistinct() + >>> 950 < n < 1050 + True + >>> n = sc.parallelize([i % 20 for i in range(1000)]).countApproxDistinct() + >>> 18 < n < 22 + True + """ + if relativeSD < 0.000017: + raise ValueError("relativeSD should be greater than 0.000017") + if relativeSD > 0.37: + raise ValueError("relativeSD should be smaller than 0.37") + # the hash space in Java is 2^32 + hashRDD = self.map(lambda x: portable_hash(x) & 0xFFFFFFFF) + return hashRDD._to_java_object_rdd().countApproxDistinct(relativeSD) + class PipelinedRDD(RDD): diff --git a/python/pyspark/tests.py b/python/pyspark/tests.py index 3e7040eade..f1a75cbff5 100644 --- a/python/pyspark/tests.py +++ b/python/pyspark/tests.py @@ -404,6 +404,22 @@ class TestRDDFunctions(PySparkTestCase): self.assertEquals(a.count(), b.count()) self.assertRaises(Exception, lambda: a.zip(b).count()) + def test_count_approx_distinct(self): + rdd = self.sc.parallelize(range(1000)) + self.assertTrue(950 < rdd.countApproxDistinct(0.04) < 1050) + self.assertTrue(950 < rdd.map(float).countApproxDistinct(0.04) < 1050) + self.assertTrue(950 < rdd.map(str).countApproxDistinct(0.04) < 1050) + self.assertTrue(950 < rdd.map(lambda x: (x, -x)).countApproxDistinct(0.04) < 1050) + + rdd = self.sc.parallelize([i % 20 for i in range(1000)], 7) + self.assertTrue(18 < rdd.countApproxDistinct() < 22) + self.assertTrue(18 < rdd.map(float).countApproxDistinct() < 22) + self.assertTrue(18 < rdd.map(str).countApproxDistinct() < 22) + self.assertTrue(18 < rdd.map(lambda x: (x, -x)).countApproxDistinct() < 22) + + self.assertRaises(ValueError, lambda: rdd.countApproxDistinct(0.00000001)) + self.assertRaises(ValueError, lambda: rdd.countApproxDistinct(0.5)) + def test_histogram(self): # empty rdd = self.sc.parallelize([]) |