示例#1
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    def uniformRDD(sc, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d. samples from the
        uniform distribution U(0.0, 1.0).

        To transform the distribution in the generated RDD from U(0.0, 1.0)
        to U(a, b), use
        C{RandomRDDs.uniformRDD(sc, n, p, seed)\
          .map(lambda v: a + (b - a) * v)}

        >>> x = RandomRDDs.uniformRDD(sc, 100).collect()
        >>> len(x)
        100
        >>> max(x) <= 1.0 and min(x) >= 0.0
        True
        >>> RandomRDDs.uniformRDD(sc, 100, 4).getNumPartitions()
        4
        >>> parts = RandomRDDs.uniformRDD(sc, 100, seed=4).getNumPartitions()
        >>> parts == sc.defaultParallelism
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().uniformRDD(sc._jsc, size,
                                                   numPartitions, seed)
        uniform = RDD(jrdd, sc, NoOpSerializer())
        return uniform.map(lambda bytes: _deserialize_double(bytearray(bytes)))
示例#2
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    def poissonRDD(sc, mean, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d. samples from the Poisson
        distribution with the input mean.

        >>> mean = 100.0
        >>> x = RandomRDDs.poissonRDD(sc, mean, 1000, seed=1L)
        >>> stats = x.stats()
        >>> stats.count()
        1000L
        >>> abs(stats.mean() - mean) < 0.5
        True
        >>> from math import sqrt
        >>> abs(stats.stdev() - sqrt(mean)) < 0.5
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().poissonRDD(sc._jsc, mean, size, numPartitions, seed)
        poisson = RDD(jrdd, sc, NoOpSerializer())
        return poisson.map(lambda bytes: _deserialize_double(bytearray(bytes)))
示例#3
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    def poissonRDD(sc, mean, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d samples from the Poisson
        distribution with the input mean.

        >>> mean = 100.0
        >>> x = RandomRDDGenerators.poissonRDD(sc, mean, 1000, seed=1L)
        >>> stats = x.stats()
        >>> stats.count()
        1000L
        >>> abs(stats.mean() - mean) < 0.5
        True
        >>> from math import sqrt
        >>> abs(stats.stdev() - sqrt(mean)) < 0.5
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().poissonRDD(sc._jsc, mean, size, numPartitions, seed)
        poisson = RDD(jrdd, sc, NoOpSerializer())
        return poisson.map(lambda bytes: _deserialize_double(bytearray(bytes)))
示例#4
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文件: tree.py 项目: chewy6i/spark
 def predict(self, x):
     """
     Predict the label of one or more examples.
     :param x:  Data point (feature vector),
                or an RDD of data points (feature vectors).
     """
     pythonAPI = self._sc._jvm.PythonMLLibAPI()
     if isinstance(x, RDD):
         # Bulk prediction
         if x.count() == 0:
             return self._sc.parallelize([])
         dataBytes = _get_unmangled_double_vector_rdd(x, cache=False)
         jSerializedPreds = \
             pythonAPI.predictDecisionTreeModel(self._java_model,
                                                dataBytes._jrdd)
         serializedPreds = RDD(jSerializedPreds, self._sc, NoOpSerializer())
         return serializedPreds.map(lambda bytes: _deserialize_double(bytearray(bytes)))
     else:
         # Assume x is a single data point.
         x_ = _serialize_double_vector(x)
         return pythonAPI.predictDecisionTreeModel(self._java_model, x_)
示例#5
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文件: tree.py 项目: vardhan0707/spark
 def predict(self, x):
     """
     Predict the label of one or more examples.
     :param x:  Data point (feature vector),
                or an RDD of data points (feature vectors).
     """
     pythonAPI = self._sc._jvm.PythonMLLibAPI()
     if isinstance(x, RDD):
         # Bulk prediction
         if x.count() == 0:
             return self._sc.parallelize([])
         dataBytes = _get_unmangled_double_vector_rdd(x, cache=False)
         jSerializedPreds = \
             pythonAPI.predictDecisionTreeModel(self._java_model,
                                                dataBytes._jrdd)
         serializedPreds = RDD(jSerializedPreds, self._sc, NoOpSerializer())
         return serializedPreds.map(lambda bytes: _deserialize_double(bytearray(bytes)))
     else:
         # Assume x is a single data point.
         x_ = _serialize_double_vector(x)
         return pythonAPI.predictDecisionTreeModel(self._java_model, x_)
示例#6
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    def normalRDD(sc, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d samples from the standard normal
        distribution.

        To transform the distribution in the generated RDD from standard normal
        to some other normal N(mean, sigma), use
        C{RandomRDDGenerators.normal(sc, n, p, seed)\
          .map(lambda v: mean + sigma * v)}

        >>> x = RandomRDDGenerators.normalRDD(sc, 1000, seed=1L)
        >>> stats = x.stats()
        >>> stats.count()
        1000L
        >>> abs(stats.mean() - 0.0) < 0.1
        True
        >>> abs(stats.stdev() - 1.0) < 0.1
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().normalRDD(sc._jsc, size, numPartitions, seed)
        normal = RDD(jrdd, sc, NoOpSerializer())
        return normal.map(lambda bytes: _deserialize_double(bytearray(bytes)))
示例#7
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    def normalRDD(sc, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d. samples from the standard normal
        distribution.

        To transform the distribution in the generated RDD from standard normal
        to some other normal N(mean, sigma^2), use
        C{RandomRDDs.normal(sc, n, p, seed)\
          .map(lambda v: mean + sigma * v)}

        >>> x = RandomRDDs.normalRDD(sc, 1000, seed=1L)
        >>> stats = x.stats()
        >>> stats.count()
        1000L
        >>> abs(stats.mean() - 0.0) < 0.1
        True
        >>> abs(stats.stdev() - 1.0) < 0.1
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().normalRDD(sc._jsc, size, numPartitions, seed)
        normal = RDD(jrdd, sc, NoOpSerializer())
        return normal.map(lambda bytes: _deserialize_double(bytearray(bytes)))
示例#8
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    def uniformRDD(sc, size, numPartitions=None, seed=None):
        """
        Generates an RDD comprised of i.i.d. samples from the
        uniform distribution on [0.0, 1.0].

        To transform the distribution in the generated RDD from U[0.0, 1.0]
        to U[a, b], use
        C{RandomRDDGenerators.uniformRDD(sc, n, p, seed)\
          .map(lambda v: a + (b - a) * v)}

        >>> x = RandomRDDGenerators.uniformRDD(sc, 100).collect()
        >>> len(x)
        100
        >>> max(x) <= 1.0 and min(x) >= 0.0
        True
        >>> RandomRDDGenerators.uniformRDD(sc, 100, 4).getNumPartitions()
        4
        >>> parts = RandomRDDGenerators.uniformRDD(sc, 100, seed=4).getNumPartitions()
        >>> parts == sc.defaultParallelism
        True
        """
        jrdd = sc._jvm.PythonMLLibAPI().uniformRDD(sc._jsc, size, numPartitions, seed)
        uniform = RDD(jrdd, sc, NoOpSerializer())
        return uniform.map(lambda bytes: _deserialize_double(bytearray(bytes)))