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64971c876a
- Merge tensorflow-nn and tensorflow-queue into tensorflow-ops. They don't add extra dependencies and each contain a single module, so I don't think it's worth separating them at the package level. - Remove google-shim in favor of direct use of test-framework.
177 lines
7.2 KiB
Haskell
177 lines
7.2 KiB
Haskell
-- Copyright 2016 TensorFlow authors.
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--
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-- Licensed under the Apache License, Version 2.0 (the "License");
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-- you may not use this file except in compliance with the License.
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-- You may obtain a copy of the License at
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--
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-- http://www.apache.org/licenses/LICENSE-2.0
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--
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-- Unless required by applicable law or agreed to in writing, software
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-- distributed under the License is distributed on an "AS IS" BASIS,
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-- WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
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-- See the License for the specific language governing permissions and
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-- limitations under the License.
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{-# LANGUAGE FlexibleContexts #-}
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{-# LANGUAGE RankNTypes #-}
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{-# LANGUAGE ScopedTypeVariables #-}
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-- | Tests for EmbeddingOps.
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module Main where
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import Control.Monad.IO.Class (liftIO)
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import Data.Int (Int32, Int64)
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import Data.List (genericLength)
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import TensorFlow.EmbeddingOps (embeddingLookup)
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import Test.Framework (defaultMain, Test)
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import Test.Framework.Providers.QuickCheck2 (testProperty)
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import Test.HUnit ((@=?))
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import Test.Framework.Providers.HUnit (testCase)
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import Test.QuickCheck (Arbitrary(..), Property, choose, vectorOf)
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import Test.QuickCheck.Monadic (monadicIO, run)
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import TensorFlow.Test (assertAllClose)
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import qualified Data.Vector as V
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import qualified TensorFlow.GenOps.Core as CoreOps
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import qualified TensorFlow.Ops as TF
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import qualified TensorFlow.Session as TF
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import qualified TensorFlow.Tensor as TF
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import qualified TensorFlow.Types as TF
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import qualified TensorFlow.Gradient as TF
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import qualified TensorFlow.Build as TF
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-- | Tries to perform a simple embedding lookup, with two partitions.
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testEmbeddingLookupHasRightShapeWithPartition :: Test
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testEmbeddingLookupHasRightShapeWithPartition =
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testCase "testEmbeddingLookupHasRightShapeWithPartition" $ do
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let embShape = TF.Shape [1, 3] -- Consider a 3-dim embedding of two items.
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let embedding1 = [1, 1, 1 :: Int32]
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let embedding2 = [0, 0, 0 :: Int32]
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let idValues = [0, 1 :: Int32]
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(values, shape) <- TF.runSession $ do
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embedding <- mapM TF.render [ TF.constant embShape embedding1
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, TF.constant embShape embedding2
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]
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let ids = TF.constant (TF.Shape [1, 2]) idValues
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vs <- embeddingLookup embedding ids
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TF.run (vs, TF.shape vs)
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-- This is the shape that is returned in the equiv. Python.
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shape @=? V.fromList [1, 2, 3]
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-- "[0, 1]" should pull out the resulting vector.
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values @=? V.fromList [1, 1, 1, 0, 0, 0]
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-- | Tries to perform a simple embedding lookup, with only a single partition.
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testEmbeddingLookupHasRightShape :: Test
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testEmbeddingLookupHasRightShape =
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testCase "testEmbeddingLookupHasRightShape" $ do
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-- Consider a 3-dim embedding of two items
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let embShape = TF.Shape [2, 3]
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let embeddingInit = [ 1, 1, 1
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, 0, 0, 0 :: Int32
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]
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let idValues = [0, 1 :: Int32]
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(values, shape) <- TF.runSession $ do
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embedding <- TF.render $ TF.constant embShape embeddingInit
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let ids = TF.constant (TF.Shape [1, 2]) idValues
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vs <- embeddingLookup [embedding] ids
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TF.run (vs, TF.shape vs)
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-- This is the shape that is returned in the equiv. Python.
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shape @=? V.fromList [1, 2, 3]
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-- "[0, 1]" should pull out the resulting vector.
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values @=? V.fromList [1, 1, 1, 0, 0, 0]
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-- | Check that we can calculate gradients w.r.t embeddings.
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testEmbeddingLookupGradients :: Test
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testEmbeddingLookupGradients = testCase "testEmbeddingLookupGradients" $ do
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-- Agrees with "embedding", so gradient should be zero.
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let xVals = V.fromList ([20, 20 :: Float])
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let shape = TF.Shape [2]
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gs <- TF.runSession $ do
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let embShape = TF.Shape [2, 1]
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let embeddingInit = [1, 20 ::Float]
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let idValues = [1, 1 :: Int32]
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let ids = TF.constant (TF.Shape [1, 2]) idValues
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x <- TF.placeholder (TF.Shape [2])
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embedding <- TF.initializedVariable
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(TF.constant embShape embeddingInit)
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op <- embeddingLookup [embedding] ids
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let twoNorm = CoreOps.square $ TF.abs (op `TF.sub` x)
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loss = TF.mean twoNorm (TF.scalar (0 :: Int32))
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grad <- fmap head (TF.gradients loss [embedding])
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TF.runWithFeeds
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[TF.feed x $ TF.encodeTensorData shape xVals]
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grad
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-- Gradients should be zero (or close)
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assertAllClose gs (V.fromList ([0, 0 :: Float]))
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-- Verifies that direct gather is the same as dynamic split into
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-- partitions, followed by embedding lookup.
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testEmbeddingLookupUndoesSplit ::
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forall a. (TF.TensorDataType V.Vector a, Show a, Eq a)
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=> LookupExample a -> Property
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testEmbeddingLookupUndoesSplit
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(LookupExample numParts
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shape@(TF.Shape (firstDim : restDims))
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values
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indices) = monadicIO $ run $ TF.runSession $ do
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let shapedValues = TF.constant shape values
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indicesVector <- TF.render $ TF.vector indices
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let directs = CoreOps.gather shapedValues indicesVector
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let cyclicCounter :: TF.Tensor TF.Build Int32 =
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TF.vector [0..fromIntegral firstDim-1]
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`CoreOps.mod` fromIntegral numParts
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modShardedValues :: [TF.Tensor TF.Value a] <-
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mapM TF.render $ CoreOps.dynamicPartition numParts shapedValues cyclicCounter
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embeddings <- embeddingLookup modShardedValues indicesVector
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(shapeOut, got, want :: V.Vector a) <-
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TF.run (TF.cast (TF.shape embeddings), embeddings, directs)
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-- Checks the explicitly documented invariant of embeddingLookup.
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liftIO $ shapeOut @=? V.fromList (genericLength indices : restDims)
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liftIO $ got @=? want
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testEmbeddingLookupUndoesSplit _ = error "Bug in Arbitrary (LookupExample)"
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-- | Consistent set of parameters for EmbeddingLookupUndoesSplit.
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data LookupExample a = LookupExample
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Int64 -- ^ number of ways to split.
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TF.Shape -- ^ shape of the generated tensor
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[a] -- ^ data for the tensor
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[Int32] -- ^ indices to split the tensor by
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deriving Show
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instance Arbitrary a => Arbitrary (LookupExample a) where
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arbitrary = do
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rank <- choose (1, 4)
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-- Takes rank-th root of 100 to cap the tensor size.
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let maxDim = fromIntegral (ceiling doubleMaxDim :: Int64)
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doubleMaxDim :: Double
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doubleMaxDim = 100 ** (1 / fromIntegral rank)
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shape@(firstDim : _) <- vectorOf rank (choose (1, maxDim))
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values <- vectorOf (fromIntegral $ product shape) arbitrary
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numParts <- choose (2, 15)
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indSize <- choose (0, fromIntegral $ firstDim - 1)
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indices <- vectorOf indSize (choose (0, fromIntegral firstDim - 1))
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return $ LookupExample numParts (TF.Shape shape) values indices
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main :: IO ()
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main = defaultMain
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[ testProperty "EmbeddingLookupUndoesSplit"
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(testEmbeddingLookupUndoesSplit :: LookupExample Double -> Property)
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, testEmbeddingLookupHasRightShape
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, testEmbeddingLookupHasRightShapeWithPartition
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, testEmbeddingLookupGradients
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]
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