org.apache.flink.api.common.functions.AggregateFunction Java Examples
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org.apache.flink.api.common.functions.AggregateFunction.
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Example #1
Source File: JobMaster.java From flink with Apache License 2.0 | 6 votes |
@Override public CompletableFuture<Object> updateGlobalAggregate(String aggregateName, Object aggregand, byte[] serializedAggregateFunction) { AggregateFunction aggregateFunction = null; try { aggregateFunction = InstantiationUtil.deserializeObject(serializedAggregateFunction, userCodeLoader); } catch (Exception e) { log.error("Error while attempting to deserialize user AggregateFunction."); return FutureUtils.completedExceptionally(e); } Object accumulator = accumulators.get(aggregateName); if(null == accumulator) { accumulator = aggregateFunction.createAccumulator(); } accumulator = aggregateFunction.add(aggregand, accumulator); accumulators.put(aggregateName, accumulator); return CompletableFuture.completedFuture(aggregateFunction.getResult(accumulator)); }
Example #2
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, WindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, resultType); }
Example #3
Source File: WindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, WindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, resultType); }
Example #4
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessWindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessWindowFunctionReturnType(windowFunction, aggResultType, null); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #5
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the aggregation function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, R> function, TypeInformation<ACC> accumulatorType, TypeInformation<R> resultType) { checkNotNull(function, "function"); checkNotNull(accumulatorType, "accumulatorType"); checkNotNull(resultType, "resultType"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } return aggregate(function, new PassThroughAllWindowFunction<W, R>(), accumulatorType, resultType); }
Example #6
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the fold function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate(AggregateFunction<T, ACC, R> function) { checkNotNull(function, "function"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( function, input.getType(), null, false); TypeInformation<R> resultType = TypeExtractor.getAggregateFunctionReturnType( function, input.getType(), null, false); return aggregate(function, accumulatorType, resultType); }
Example #7
Source File: JobMaster.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
@Override public CompletableFuture<Object> updateGlobalAggregate(String aggregateName, Object aggregand, byte[] serializedAggregateFunction) { AggregateFunction aggregateFunction = null; try { aggregateFunction = InstantiationUtil.deserializeObject(serializedAggregateFunction, userCodeLoader); } catch (Exception e) { log.error("Error while attempting to deserialize user AggregateFunction."); return FutureUtils.completedExceptionally(e); } Object accumulator = accumulators.get(aggregateName); if(null == accumulator) { accumulator = aggregateFunction.createAccumulator(); } accumulator = aggregateFunction.add(aggregand, accumulator); accumulators.put(aggregateName, accumulator); return CompletableFuture.completedFuture(aggregateFunction.getResult(accumulator)); }
Example #8
Source File: AllWindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the fold function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate(AggregateFunction<T, ACC, R> function) { checkNotNull(function, "function"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( function, input.getType(), null, false); TypeInformation<R> resultType = TypeExtractor.getAggregateFunctionReturnType( function, input.getType(), null, false); return aggregate(function, accumulatorType, resultType); }
Example #9
Source File: WindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessWindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessWindowFunctionReturnType(windowFunction, aggResultType, null); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #10
Source File: AllWindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the aggregation function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, R> function, TypeInformation<ACC> accumulatorType, TypeInformation<R> resultType) { checkNotNull(function, "function"); checkNotNull(accumulatorType, "accumulatorType"); checkNotNull(resultType, "resultType"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } return aggregate(function, new PassThroughAllWindowFunction<W, R>(), accumulatorType, resultType); }
Example #11
Source File: AllWindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, AllWindowFunction<V, R, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getAllWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, resultType); }
Example #12
Source File: AllWindowedStream.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The process window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessAllWindowFunction<V, R, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessAllWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #13
Source File: TypeExtractor.java From flink with Apache License 2.0 | 6 votes |
@PublicEvolving public static <IN, ACC> TypeInformation<ACC> getAggregateFunctionAccumulatorType( AggregateFunction<IN, ACC, ?> function, TypeInformation<IN> inType, String functionName, boolean allowMissing) { return getUnaryOperatorReturnType( function, AggregateFunction.class, 0, 1, NO_INDEX, inType, functionName, allowMissing); }
Example #14
Source File: TypeExtractor.java From flink with Apache License 2.0 | 6 votes |
@PublicEvolving public static <IN, OUT> TypeInformation<OUT> getAggregateFunctionReturnType( AggregateFunction<IN, ?, OUT> function, TypeInformation<IN> inType, String functionName, boolean allowMissing) { return getUnaryOperatorReturnType( function, AggregateFunction.class, 0, 2, NO_INDEX, inType, functionName, allowMissing); }
Example #15
Source File: StreamingRuntimeContextTest.java From flink with Apache License 2.0 | 6 votes |
@Test public void testAggregatingStateInstantiation() throws Exception { final ExecutionConfig config = new ExecutionConfig(); config.registerKryoType(Path.class); final AtomicReference<Object> descriptorCapture = new AtomicReference<>(); StreamingRuntimeContext context = createRuntimeContext(descriptorCapture, config); @SuppressWarnings("unchecked") AggregateFunction<String, TaskInfo, String> aggregate = (AggregateFunction<String, TaskInfo, String>) mock(AggregateFunction.class); AggregatingStateDescriptor<String, TaskInfo, String> descr = new AggregatingStateDescriptor<>("name", aggregate, TaskInfo.class); context.getAggregatingState(descr); AggregatingStateDescriptor<?, ?, ?> descrIntercepted = (AggregatingStateDescriptor<?, ?, ?>) descriptorCapture.get(); TypeSerializer<?> serializer = descrIntercepted.getSerializer(); // check that the Path class is really registered, i.e., the execution config was applied assertTrue(serializer instanceof KryoSerializer); assertTrue(((KryoSerializer<?>) serializer).getKryo().getRegistration(Path.class).getId() > 0); }
Example #16
Source File: TypeExtractor.java From Flink-CEPplus with Apache License 2.0 | 6 votes |
@PublicEvolving public static <IN, ACC> TypeInformation<ACC> getAggregateFunctionAccumulatorType( AggregateFunction<IN, ACC, ?> function, TypeInformation<IN> inType, String functionName, boolean allowMissing) { return getUnaryOperatorReturnType( function, AggregateFunction.class, 0, 1, NO_INDEX, inType, functionName, allowMissing); }
Example #17
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given aggregation function to each window. The aggregation function is called for * each element, aggregating values incrementally and keeping the state to one accumulator * per key and window. * * @param function The aggregation function. * @return The data stream that is the result of applying the fold function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate(AggregateFunction<T, ACC, R> function) { checkNotNull(function, "function"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( function, input.getType(), null, false); TypeInformation<R> resultType = TypeExtractor.getAggregateFunctionReturnType( function, input.getType(), null, false); return aggregate(function, accumulatorType, resultType); }
Example #18
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given aggregation function to each window. The aggregation function is called for * each element, aggregating values incrementally and keeping the state to one accumulator * per key and window. * * @param function The aggregation function. * @return The data stream that is the result of applying the aggregation function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, R> function, TypeInformation<ACC> accumulatorType, TypeInformation<R> resultType) { checkNotNull(function, "function"); checkNotNull(accumulatorType, "accumulatorType"); checkNotNull(resultType, "resultType"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } return aggregate(function, new PassThroughWindowFunction<K, W, R>(), accumulatorType, resultType); }
Example #19
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, WindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, resultType); }
Example #20
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessWindowFunction<V, R, K, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessWindowFunctionReturnType(windowFunction, aggResultType, null); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #21
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the fold function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate(AggregateFunction<T, ACC, R> function) { checkNotNull(function, "function"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( function, input.getType(), null, false); TypeInformation<R> resultType = TypeExtractor.getAggregateFunctionReturnType( function, input.getType(), null, false); return aggregate(function, accumulatorType, resultType); }
Example #22
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given {@code AggregateFunction} to each window. The AggregateFunction * aggregates all elements of a window into a single result element. The stream of these * result elements (one per window) is interpreted as a regular non-windowed stream. * * @param function The aggregation function. * @return The data stream that is the result of applying the aggregation function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, R> function, TypeInformation<ACC> accumulatorType, TypeInformation<R> resultType) { checkNotNull(function, "function"); checkNotNull(accumulatorType, "accumulatorType"); checkNotNull(resultType, "resultType"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } return aggregate(function, new PassThroughAllWindowFunction<W, R>(), accumulatorType, resultType); }
Example #23
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, AllWindowFunction<V, R, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getAllWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, resultType); }
Example #24
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The process window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessAllWindowFunction<V, R, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessAllWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #25
Source File: AllWindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given window function to each window. The window function is called for each * evaluation of the window for each key individually. The output of the window function is * interpreted as a regular non-windowed stream. * * <p>Arriving data is incrementally aggregated using the given aggregate function. This means * that the window function typically has only a single value to process when called. * * @param aggFunction The aggregate function that is used for incremental aggregation. * @param windowFunction The process window function. * * @return The data stream that is the result of applying the window function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <V> The type of AggregateFunction's result, and the WindowFunction's input * @param <R> The type of the elements in the resulting stream, equal to the * WindowFunction's result type */ @PublicEvolving public <ACC, V, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, V> aggFunction, ProcessAllWindowFunction<V, R, W> windowFunction) { checkNotNull(aggFunction, "aggFunction"); checkNotNull(windowFunction, "windowFunction"); TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( aggFunction, input.getType(), null, false); TypeInformation<V> aggResultType = TypeExtractor.getAggregateFunctionReturnType( aggFunction, input.getType(), null, false); TypeInformation<R> resultType = getProcessAllWindowFunctionReturnType(windowFunction, aggResultType); return aggregate(aggFunction, windowFunction, accumulatorType, aggResultType, resultType); }
Example #26
Source File: TypeExtractor.java From flink with Apache License 2.0 | 6 votes |
@PublicEvolving public static <IN, ACC> TypeInformation<ACC> getAggregateFunctionAccumulatorType( AggregateFunction<IN, ACC, ?> function, TypeInformation<IN> inType, String functionName, boolean allowMissing) { return getUnaryOperatorReturnType( function, AggregateFunction.class, 0, 1, NO_INDEX, inType, functionName, allowMissing); }
Example #27
Source File: TypeExtractor.java From flink with Apache License 2.0 | 6 votes |
@PublicEvolving public static <IN, OUT> TypeInformation<OUT> getAggregateFunctionReturnType( AggregateFunction<IN, ?, OUT> function, TypeInformation<IN> inType, String functionName, boolean allowMissing) { return getUnaryOperatorReturnType( function, AggregateFunction.class, 0, 2, NO_INDEX, inType, functionName, allowMissing); }
Example #28
Source File: JobMaster.java From flink with Apache License 2.0 | 6 votes |
@Override public CompletableFuture<Object> updateGlobalAggregate(String aggregateName, Object aggregand, byte[] serializedAggregateFunction) { AggregateFunction aggregateFunction = null; try { aggregateFunction = InstantiationUtil.deserializeObject(serializedAggregateFunction, userCodeLoader); } catch (Exception e) { log.error("Error while attempting to deserialize user AggregateFunction."); return FutureUtils.completedExceptionally(e); } Object accumulator = accumulators.get(aggregateName); if (null == accumulator) { accumulator = aggregateFunction.createAccumulator(); } accumulator = aggregateFunction.add(aggregand, accumulator); accumulators.put(aggregateName, accumulator); return CompletableFuture.completedFuture(aggregateFunction.getResult(accumulator)); }
Example #29
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given aggregation function to each window. The aggregation function is called for * each element, aggregating values incrementally and keeping the state to one accumulator * per key and window. * * @param function The aggregation function. * @return The data stream that is the result of applying the fold function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate(AggregateFunction<T, ACC, R> function) { checkNotNull(function, "function"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } TypeInformation<ACC> accumulatorType = TypeExtractor.getAggregateFunctionAccumulatorType( function, input.getType(), null, false); TypeInformation<R> resultType = TypeExtractor.getAggregateFunctionReturnType( function, input.getType(), null, false); return aggregate(function, accumulatorType, resultType); }
Example #30
Source File: WindowedStream.java From flink with Apache License 2.0 | 6 votes |
/** * Applies the given aggregation function to each window. The aggregation function is called for * each element, aggregating values incrementally and keeping the state to one accumulator * per key and window. * * @param function The aggregation function. * @return The data stream that is the result of applying the aggregation function to the window. * * @param <ACC> The type of the AggregateFunction's accumulator * @param <R> The type of the elements in the resulting stream, equal to the * AggregateFunction's result type */ @PublicEvolving public <ACC, R> SingleOutputStreamOperator<R> aggregate( AggregateFunction<T, ACC, R> function, TypeInformation<ACC> accumulatorType, TypeInformation<R> resultType) { checkNotNull(function, "function"); checkNotNull(accumulatorType, "accumulatorType"); checkNotNull(resultType, "resultType"); if (function instanceof RichFunction) { throw new UnsupportedOperationException("This aggregation function cannot be a RichFunction."); } return aggregate(function, new PassThroughWindowFunction<K, W, R>(), accumulatorType, resultType); }