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* Tested on linux without Docker. * Couldn't get nix build to work, so I just updated the URL and hash. * Did not test macos build. The mnist change was necessary because the argmax output type is now polmorphic.
147 lines
5.6 KiB
Haskell
147 lines
5.6 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 OverloadedLists #-}
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{-# LANGUAGE TypeApplications #-}
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import Control.Monad (forM_, when)
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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 qualified Data.Text.IO as T
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import qualified Data.Vector as V
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import qualified TensorFlow.Core as TF
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import qualified TensorFlow.Ops as TF hiding (initializedVariable, zeroInitializedVariable)
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import qualified TensorFlow.Variable as TF
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import qualified TensorFlow.Minimize as TF
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import TensorFlow.Examples.MNIST.InputData
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import TensorFlow.Examples.MNIST.Parse
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numPixels, numLabels :: Int64
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numPixels = 28*28 :: Int64
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numLabels = 10 :: Int64
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-- | Create tensor with random values where the stddev depends on the width.
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randomParam :: Int64 -> TF.Shape -> TF.Build (TF.Tensor TF.Build Float)
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randomParam width (TF.Shape shape) =
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(`TF.mul` stddev) <$> TF.truncatedNormal (TF.vector shape)
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where
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stddev = TF.scalar (1 / sqrt (fromIntegral width))
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-- Types must match due to model structure.
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type LabelType = Int32
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data Model = Model {
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train :: TF.TensorData Float -- ^ images
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-> TF.TensorData LabelType
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-> TF.Session ()
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, infer :: TF.TensorData Float -- ^ images
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-> TF.Session (V.Vector LabelType) -- ^ predictions
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, errorRate :: TF.TensorData Float -- ^ images
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-> TF.TensorData LabelType
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-> TF.Session Float
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}
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createModel :: TF.Build Model
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createModel = do
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-- Use -1 batch size to support variable sized batches.
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let batchSize = -1
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-- Inputs.
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images <- TF.placeholder [batchSize, numPixels]
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-- Hidden layer.
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let numUnits = 500
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hiddenWeights <-
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TF.initializedVariable =<< randomParam numPixels [numPixels, numUnits]
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hiddenBiases <- TF.zeroInitializedVariable [numUnits]
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let hiddenZ = (images `TF.matMul` TF.readValue hiddenWeights)
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`TF.add` TF.readValue hiddenBiases
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let hidden = TF.relu hiddenZ
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-- Logits.
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logitWeights <-
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TF.initializedVariable =<< randomParam numUnits [numUnits, numLabels]
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logitBiases <- TF.zeroInitializedVariable [numLabels]
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let logits = (hidden `TF.matMul` TF.readValue logitWeights)
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`TF.add` TF.readValue logitBiases
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predict <- TF.render @TF.Build @LabelType $
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TF.argMax (TF.softmax logits) (TF.scalar (1 :: LabelType))
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-- Create training action.
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labels <- TF.placeholder [batchSize]
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let labelVecs = TF.oneHot labels (fromIntegral numLabels) 1 0
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loss =
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TF.reduceMean $ fst $ TF.softmaxCrossEntropyWithLogits logits labelVecs
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params = [hiddenWeights, hiddenBiases, logitWeights, logitBiases]
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trainStep <- TF.minimizeWith TF.adam loss params
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let correctPredictions = TF.equal predict labels
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errorRateTensor <- TF.render $ 1 - TF.reduceMean (TF.cast correctPredictions)
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return Model {
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train = \imFeed lFeed -> TF.runWithFeeds_ [
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TF.feed images imFeed
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, TF.feed labels lFeed
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] trainStep
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, infer = \imFeed -> TF.runWithFeeds [TF.feed images imFeed] predict
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, errorRate = \imFeed lFeed -> TF.unScalar <$> TF.runWithFeeds [
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TF.feed images imFeed
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, TF.feed labels lFeed
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] errorRateTensor
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}
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main :: IO ()
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main = TF.runSession $ do
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-- Read training and test data.
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trainingImages <- liftIO (readMNISTSamples =<< trainingImageData)
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trainingLabels <- liftIO (readMNISTLabels =<< trainingLabelData)
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testImages <- liftIO (readMNISTSamples =<< testImageData)
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testLabels <- liftIO (readMNISTLabels =<< testLabelData)
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-- Create the model.
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model <- TF.build createModel
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-- Functions for generating batches.
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let encodeImageBatch xs =
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TF.encodeTensorData [genericLength xs, numPixels]
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(fromIntegral <$> mconcat xs)
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let encodeLabelBatch xs =
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TF.encodeTensorData [genericLength xs]
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(fromIntegral <$> V.fromList xs)
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let batchSize = 100
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let selectBatch i xs = take batchSize $ drop (i * batchSize) (cycle xs)
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-- Train.
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forM_ ([0..1000] :: [Int]) $ \i -> do
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let images = encodeImageBatch (selectBatch i trainingImages)
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labels = encodeLabelBatch (selectBatch i trainingLabels)
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train model images labels
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when (i `mod` 100 == 0) $ do
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err <- errorRate model images labels
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liftIO $ putStrLn $ "training error " ++ show (err * 100)
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liftIO $ putStrLn ""
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-- Test.
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testErr <- errorRate model (encodeImageBatch testImages)
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(encodeLabelBatch testLabels)
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liftIO $ putStrLn $ "test error " ++ show (testErr * 100)
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-- Show some predictions.
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testPreds <- infer model (encodeImageBatch testImages)
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liftIO $ forM_ ([0..3] :: [Int]) $ \i -> do
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putStrLn ""
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T.putStrLn $ drawMNIST $ testImages !! i
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putStrLn $ "expected " ++ show (testLabels !! i)
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putStrLn $ " got " ++ show (testPreds V.! i)
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