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dataloader.cpp
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dataloader.cpp
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#include <gtest/gtest.h>
#include <torch/torch.h>
#include <test/cpp/api/support.h>
#include <c10/util/ArrayRef.h>
#include <c10/util/irange.h>
#include <c10/util/tempfile.h>
#include <algorithm>
#include <chrono>
#include <future>
#include <iostream>
#include <iterator>
#include <limits>
#include <mutex>
#include <numeric>
#include <stdexcept>
#include <string>
#include <thread>
#include <unordered_set>
#include <vector>
using namespace torch::data; // NOLINT
const std::chrono::milliseconds kMillisecond(1);
struct DummyDataset : datasets::Dataset<DummyDataset, int> {
explicit DummyDataset(size_t size = 100) : size_(size) {}
int get(size_t index) override {
// NOLINTNEXTLINE(cppcoreguidelines-narrowing-conversions,bugprone-narrowing-conversions)
return 1 + index;
}
torch::optional<size_t> size() const override {
return size_;
}
size_t size_;
};
TEST(DataTest, DatasetCallsGetCorrectly) {
DummyDataset d;
std::vector<int> batch = d.get_batch({0, 1, 2, 3, 4});
std::vector<int> expected = {1, 2, 3, 4, 5};
ASSERT_EQ(batch, expected);
}
TEST(DataTest, TransformCallsGetApplyCorrectly) {
struct T : transforms::Transform<int, std::string> {
std::string apply(int input) override {
return std::to_string(input);
}
};
auto d = DummyDataset{}.map(T{});
std::vector<std::string> batch = d.get_batch({0, 1, 2, 3, 4});
std::vector<std::string> expected = {"1", "2", "3", "4", "5"};
ASSERT_EQ(batch, expected);
}
// dummy chunk data reader with 3 chunks and 35 examples in total. Each chunk
// contains 10, 5, 20 examples respectively.
struct DummyChunkDataReader : public datasets::ChunkDataReader<int> {
public:
using BatchType = datasets::ChunkDataReader<int>::ChunkType;
using DataType = datasets::ChunkDataReader<int>::ExampleType;
/// Read an entire chunk.
BatchType read_chunk(size_t chunk_index) override {
BatchType batch_data;
int start_index = chunk_index == 0
? 0
// NOLINTNEXTLINE(bugprone-fold-init-type)
: std::accumulate(chunk_sizes, chunk_sizes + chunk_index, 0);
batch_data.resize(chunk_sizes[chunk_index]);
std::iota(batch_data.begin(), batch_data.end(), start_index);
return batch_data;
}
size_t chunk_count() override {
return chunk_count_;
};
void reset() override{};
const static size_t chunk_count_ = 3;
// NOLINTNEXTLINE(modernize-avoid-c-arrays,cppcoreguidelines-avoid-magic-numbers,cppcoreguidelines-avoid-c-arrays)
size_t chunk_sizes[chunk_count_] = {10, 5, 20};
};
TEST(DataTest, ChunkDataSetWithInvalidInitParameter) {
DummyChunkDataReader data_reader;
samplers::SequentialSampler sampler(0);
auto initialization_function = [&](size_t preloader_count,
size_t batch_size,
size_t cache_size,
size_t cross_chunk_shuffle_count = 1) {
datasets::SharedBatchDataset<datasets::ChunkDataset<
DummyChunkDataReader,
samplers::SequentialSampler,
samplers::SequentialSampler>>
dataset = datasets::make_shared_dataset<datasets::ChunkDataset<
DummyChunkDataReader,
samplers::SequentialSampler,
samplers::SequentialSampler>>(
data_reader,
sampler,
sampler,
datasets::ChunkDatasetOptions(
preloader_count,
batch_size,
cache_size,
cross_chunk_shuffle_count));
};
ASSERT_THROWS_WITH(
initialization_function(0, 1, 1),
"Preloader count is 0. At least one preloader needs to be specified.");
ASSERT_THROWS_WITH(
initialization_function(1, 0, 1),
"Batch size is 0. A positive batch size needs to be specified.");
ASSERT_THROWS_WITH(
initialization_function(1, 1, 0),
"Cache size is 0. A positive cache size needs to be specified.");
ASSERT_THROWS_WITH(
initialization_function(1, 10, 5),
"Cache size is less than batch size. Cache needs to be large enough to "
"hold at least one batch.");
ASSERT_THROWS_WITH(
initialization_function(1, 10, 20, 0),
"cross_chunk_shuffle_count needs to be greater than 0.");
}
struct InfiniteStreamDataset
: datasets::StreamDataset<InfiniteStreamDataset, std::vector<int>> {
std::vector<int> get_batch(size_t batch_size) override {
std::vector<int> batch(batch_size);
for (auto& i : batch) {
i = counter++;
}
return batch;
}
torch::optional<size_t> size() const override {
return torch::nullopt;
}
size_t counter = 0;
};
TEST(DataTest, InfiniteStreamDataset) {
const size_t kBatchSize = 13;
auto dataset = InfiniteStreamDataset().map(
transforms::Lambda<int>([](int x) { return x + 1; }));
auto data_loader = torch::data::make_data_loader(
std::move(dataset),
samplers::StreamSampler(/*epoch_size=*/39),
kBatchSize);
size_t batch_index = 0;
for (auto& batch : *data_loader) {
ASSERT_LT(batch_index, 3);
ASSERT_EQ(batch.size(), kBatchSize);
for (const auto j : c10::irange(kBatchSize)) {
ASSERT_EQ(batch.at(j), 1 + (batch_index * kBatchSize) + j);
}
batch_index += 1;
}
ASSERT_EQ(batch_index, 3);
}
TEST(DataTest, NoSequencerIsIdentity) {
using namespace torch::data::detail::sequencers; // NOLINT
NoSequencer<int> no_sequencer;
const auto value = no_sequencer.next([] { return 5; }).value();
ASSERT_EQ(value, 5);
}
TEST(DataTest, OrderedSequencerIsSetUpWell) {
using namespace torch::data::detail::sequencers; // NOLINT
struct S {
size_t sequence_number;
};
const size_t kMaxJobs = 5;
OrderedSequencer<S> sequencer(kMaxJobs);
ASSERT_EQ(sequencer.next_sequence_number_, 0);
ASSERT_EQ(sequencer.buffer_.size(), kMaxJobs);
}
TEST(DataTest, OrderedSequencerReOrdersValues) {
using namespace torch::data::detail::sequencers; // NOLINT
struct S {
size_t sequence_number;
};
const size_t kMaxJobs = 5;
OrderedSequencer<S> sequencer(kMaxJobs);
std::vector<size_t> v = {0, 2, 4, 3, 1};
size_t index = 0;
auto getter = [&v, &index]() { return S{v.at(index++)}; };
// Let's say the sequence number matches for the batch one, then it should
// return immediately.
const auto batch = sequencer.next(getter);
ASSERT_EQ(batch.value().sequence_number, 0);
ASSERT_EQ(index, 1);
// Now it should call the getter until it gets the next value.
ASSERT_EQ(1, sequencer.next(getter).value().sequence_number);
ASSERT_EQ(index, 5);
// The next three should come in order.
for (size_t i = 2; i <= 4; ++i) {
// New value doesn't matter. In fact, it shouldn't be accessed.
ASSERT_EQ(i, sequencer.next(getter).value().sequence_number);
// The index doesn't change.
ASSERT_EQ(index, 5);
}
}
TEST(DataTest, BatchLambdaAppliesFunctionToBatch) {
using InputBatch = std::vector<int>;
using OutputBatch = std::string;
DummyDataset d;
auto e = d.map(transforms::BatchLambda<InputBatch, OutputBatch>(
[](std::vector<int> input) {
return std::to_string(std::accumulate(input.begin(), input.end(), 0));
}));
ASSERT_EQ(e.get_batch({1, 2, 3, 4, 5}), std::string("20"));
}
TEST(DataTest, LambdaAppliesFunctionToExample) {
auto d = DummyDataset().map(transforms::Lambda<int, std::string>(
static_cast<std::string (*)(int)>(std::to_string)));
std::vector<std::string> expected = {"1", "2", "3", "4", "5"};
ASSERT_EQ(d.get_batch({0, 1, 2, 3, 4}), expected);
}
TEST(DataTest, CollateReducesBatch) {
auto d =
DummyDataset().map(transforms::Collate<int>([](std::vector<int> input) {
return std::accumulate(input.begin(), input.end(), 0);
}));
ASSERT_EQ(d.get_batch({1, 2, 3, 4, 5}), 20);
}
TEST(DataTest, CollationReducesBatch) {
struct Summer : transforms::Collation<int> {
int apply_batch(std::vector<int> input) override {
return std::accumulate(input.begin(), input.end(), 0);
}
};
auto d = DummyDataset().map(Summer{});
ASSERT_EQ(d.get_batch({1, 2, 3, 4, 5}), 20);
}
TEST(DataTest, SequentialSamplerReturnsIndicesInOrder) {
samplers::SequentialSampler sampler(10);
ASSERT_EQ(sampler.next(3).value(), std::vector<size_t>({0, 1, 2}));
ASSERT_EQ(sampler.next(5).value(), std::vector<size_t>({3, 4, 5, 6, 7}));
ASSERT_EQ(sampler.next(2).value(), std::vector<size_t>({8, 9}));
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, SequentialSamplerReturnsLessValuesForLastBatch) {
samplers::SequentialSampler sampler(5);
ASSERT_EQ(sampler.next(3).value(), std::vector<size_t>({0, 1, 2}));
ASSERT_EQ(sampler.next(100).value(), std::vector<size_t>({3, 4}));
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, SequentialSamplerResetsWell) {
samplers::SequentialSampler sampler(5);
ASSERT_EQ(sampler.next(5).value(), std::vector<size_t>({0, 1, 2, 3, 4}));
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset();
ASSERT_EQ(sampler.next(5).value(), std::vector<size_t>({0, 1, 2, 3, 4}));
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, SequentialSamplerResetsWithNewSizeWell) {
samplers::SequentialSampler sampler(5);
ASSERT_EQ(sampler.next(5).value(), std::vector<size_t>({0, 1, 2, 3, 4}));
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(7);
ASSERT_EQ(
sampler.next(7).value(), std::vector<size_t>({0, 1, 2, 3, 4, 5, 6}));
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(3);
ASSERT_EQ(sampler.next(3).value(), std::vector<size_t>({0, 1, 2}));
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, CanSaveAndLoadSequentialSampler) {
{
samplers::SequentialSampler a(10);
ASSERT_EQ(a.index(), 0);
std::stringstream stream;
torch::save(a, stream);
samplers::SequentialSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.index(), 0);
}
{
samplers::SequentialSampler a(10);
a.next(3);
a.next(4);
ASSERT_EQ(a.index(), 7);
std::stringstream stream;
torch::save(a, stream);
samplers::SequentialSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.index(), 7);
}
}
TEST(DataTest, RandomSamplerReturnsIndicesInCorrectRange) {
samplers::RandomSampler sampler(10);
std::vector<size_t> indices = sampler.next(3).value();
for (auto i : indices) {
ASSERT_GE(i, 0);
ASSERT_LT(i, 10);
}
indices = sampler.next(5).value();
for (auto i : indices) {
ASSERT_GE(i, 0);
ASSERT_LT(i, 10);
}
indices = sampler.next(2).value();
for (auto i : indices) {
ASSERT_GE(i, 0);
ASSERT_LT(i, 10);
}
ASSERT_FALSE(sampler.next(10).has_value());
}
TEST(DataTest, RandomSamplerReturnsLessValuesForLastBatch) {
samplers::RandomSampler sampler(5);
ASSERT_EQ(sampler.next(3).value().size(), 3);
ASSERT_EQ(sampler.next(100).value().size(), 2);
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, RandomSamplerResetsWell) {
samplers::RandomSampler sampler(5);
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset();
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, RandomSamplerResetsWithNewSizeWell) {
samplers::RandomSampler sampler(5);
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(7);
ASSERT_EQ(sampler.next(7).value().size(), 7);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(3);
ASSERT_EQ(sampler.next(3).value().size(), 3);
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, SavingAndLoadingRandomSamplerYieldsSameSequence) {
{
samplers::RandomSampler a(10);
std::stringstream stream;
torch::save(a, stream);
samplers::RandomSampler b(10);
torch::load(b, stream);
ASSERT_EQ(a.next(10).value(), b.next(10).value());
}
{
samplers::RandomSampler a(10);
a.next(3);
ASSERT_EQ(a.index(), 3);
std::stringstream stream;
torch::save(a, stream);
samplers::RandomSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.index(), 3);
auto b_sequence = b.next(10).value();
ASSERT_EQ(b_sequence.size(), 7);
ASSERT_EQ(a.next(10).value(), b_sequence);
}
}
TEST(DataTest, StreamSamplerReturnsTheBatchSizeAndThenRemainder) {
samplers::StreamSampler sampler(/*epoch_size=*/100);
ASSERT_EQ(sampler.next(10).value(), 10);
ASSERT_EQ(sampler.next(2).value(), 2);
ASSERT_EQ(sampler.next(85).value(), 85);
ASSERT_EQ(sampler.next(123).value(), 3);
ASSERT_FALSE(sampler.next(1).has_value());
}
TEST(DataTest, StreamSamplerResetsWell) {
samplers::StreamSampler sampler(/*epoch_size=*/5);
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset();
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, StreamSamplerResetsWithNewSizeWell) {
samplers::StreamSampler sampler(/*epoch_size=*/5);
ASSERT_EQ(sampler.next(5).value().size(), 5);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(7);
ASSERT_EQ(sampler.next(7).value().size(), 7);
ASSERT_FALSE(sampler.next(2).has_value());
sampler.reset(3);
ASSERT_EQ(sampler.next(3).value().size(), 3);
ASSERT_FALSE(sampler.next(2).has_value());
}
TEST(DataTest, TensorDatasetConstructsFromSingleTensor) {
datasets::TensorDataset dataset(torch::eye(5));
ASSERT_TRUE(
torch::tensor({0, 0, 1, 0, 0}, torch::kFloat32).allclose(dataset.get(2)));
}
TEST(DataTest, TensorDatasetConstructsFromInitializerListOfTensors) {
std::vector<torch::Tensor> vector = torch::eye(5).chunk(5);
datasets::TensorDataset dataset(vector);
ASSERT_TRUE(
torch::tensor({0, 0, 1, 0, 0}, torch::kFloat32).allclose(dataset.get(2)));
}
TEST(DataTest, StackTransformWorksForExample) {
struct D : public datasets::Dataset<D> {
Example<> get(size_t index) override {
return {tensor[index], 1 + tensor[index]};
}
torch::optional<size_t> size() const override {
return tensor.size(0);
}
torch::Tensor tensor{torch::eye(4)};
};
auto d = D().map(transforms::Stack<Example<>>());
Example<> batch = d.get_batch({0, 1});
ASSERT_TRUE(batch.data.allclose(torch::eye(4).slice(/*dim=*/0, 0, 2)));
ASSERT_TRUE(batch.target.allclose(1 + torch::eye(4).slice(/*dim=*/0, 0, 2)));
Example<> second = d.get_batch({2, 3});
ASSERT_TRUE(second.data.allclose(torch::eye(4).slice(/*dim=*/0, 2, 4)));
ASSERT_TRUE(second.target.allclose(1 + torch::eye(4).slice(/*dim=*/0, 2, 4)));
}
TEST(DataTest, StackTransformWorksForTensorExample) {
auto d = datasets::TensorDataset(torch::eye(4))
.map(transforms::Stack<TensorExample>());
TensorExample batch = d.get_batch({0, 1});
ASSERT_TRUE(batch.data.allclose(torch::eye(4).slice(/*dim=*/0, 0, 2)));
TensorExample second = d.get_batch({2, 3});
ASSERT_TRUE(second.data.allclose(torch::eye(4).slice(/*dim=*/0, 2, 4)));
}
// Template classes cannot be nested in functions.
template <typename Target>
struct T : transforms::TensorTransform<Target> {
torch::Tensor operator()(torch::Tensor input) override {
return input * 2;
}
};
struct TensorStringDataset
: datasets::
Dataset<TensorStringDataset, Example<torch::Tensor, std::string>> {
Example<torch::Tensor, std::string> get(size_t index) override {
return {torch::tensor(static_cast<double>(index)), std::to_string(index)};
}
torch::optional<size_t> size() const override {
return 100;
}
};
TEST(DataTest, TensorTransformWorksForAnyTargetType) {
auto d = TensorStringDataset().map(T<std::string>{});
std::vector<Example<torch::Tensor, std::string>> batch = d.get_batch({1, 2});
ASSERT_EQ(batch.size(), 2);
ASSERT_TRUE(batch[0].data.allclose(torch::tensor(2.0)));
ASSERT_EQ(batch[0].target, "1");
ASSERT_TRUE(batch[1].data.allclose(torch::tensor(4.0)));
ASSERT_EQ(batch[1].target, "2");
}
TEST(DataTest, TensorLambdaWorksforAnyTargetType) {
auto d = TensorStringDataset().map(transforms::TensorLambda<std::string>(
[](torch::Tensor input) { return input * 2; }));
std::vector<Example<torch::Tensor, std::string>> batch = d.get_batch({1, 2});
ASSERT_EQ(batch.size(), 2);
ASSERT_TRUE(batch[0].data.allclose(torch::tensor(2.0)));
ASSERT_EQ(batch[0].target, "1");
ASSERT_TRUE(batch[1].data.allclose(torch::tensor(4.0)));
ASSERT_EQ(batch[1].target, "2");
}
struct DummyTensorDataset
: datasets::Dataset<DummyTensorDataset, Example<torch::Tensor, int>> {
Example<torch::Tensor, int> get(size_t index) override {
const auto channels = static_cast<int64_t>(index);
torch::Tensor tensor =
(channels > 0) ? torch::ones({channels, 4, 4}) : torch::ones({4, 4});
return {tensor, static_cast<int>(channels)};
}
torch::optional<size_t> size() const override {
return 100;
}
};
TEST(DataTest, NormalizeTransform) {
auto dataset = DummyTensorDataset().map(transforms::Normalize<int>(0.5, 0.1));
// Works for zero (one implicit) channels
std::vector<Example<torch::Tensor, int>> output = dataset.get_batch(0);
ASSERT_EQ(output.size(), 1);
// (1 - 0.5) / 0.1 = 5
ASSERT_TRUE(output[0].data.allclose(torch::ones({4, 4}) * 5))
<< output[0].data;
// Works for one explicit channel
output = dataset.get_batch(1);
ASSERT_EQ(output.size(), 1);
ASSERT_EQ(output[0].data.size(0), 1);
ASSERT_TRUE(output[0].data.allclose(torch::ones({1, 4, 4}) * 5))
<< output[0].data;
// Works for two channels with different moments
dataset = DummyTensorDataset().map(
transforms::Normalize<int>({0.5, 1.5}, {0.1, 0.2}));
output = dataset.get_batch(2);
ASSERT_EQ(output.size(), 1);
ASSERT_EQ(output[0].data.size(0), 2);
ASSERT_TRUE(output[0]
.data.slice(/*dim=*/0, /*start=*/0, /*end=*/1)
.allclose(torch::ones({1, 4, 4}) * 5))
<< output[0].data;
ASSERT_TRUE(output[0]
.data.slice(/*dim=*/0, /*start=*/1)
.allclose(torch::ones({1, 4, 4}) * -2.5))
<< output[0].data;
// Works for three channels with one moment value
dataset = DummyTensorDataset().map(transforms::Normalize<int>(1.5, 0.2));
output = dataset.get_batch(3);
ASSERT_EQ(output.size(), 1);
ASSERT_EQ(output[0].data.size(0), 3);
ASSERT_TRUE(output[0].data.allclose(torch::ones({3, 4, 4}) * -2.5))
<< output[0].data;
// Works for three channels with different moments
dataset = DummyTensorDataset().map(
transforms::Normalize<int>({0.5, 1.5, -1.5}, {0.1, 0.2, 0.2}));
output = dataset.get_batch(3);
ASSERT_EQ(output.size(), 1);
ASSERT_EQ(output[0].data.size(0), 3);
ASSERT_TRUE(output[0]
.data.slice(/*dim=*/0, /*start=*/0, /*end=*/1)
.allclose(torch::ones({1, 4, 4}) * 5))
<< output[0].data;
ASSERT_TRUE(output[0]
.data.slice(/*dim=*/0, /*start=*/1, /*end=*/2)
.allclose(torch::ones({1, 4, 4}) * -2.5))
<< output[0].data;
ASSERT_TRUE(output[0]
.data.slice(/*dim=*/0, /*start=*/2)
.allclose(torch::ones({1, 4, 4}) * 12.5))
<< output[0].data;
}
struct UnCopyableDataset : public datasets::Dataset<UnCopyableDataset> {
UnCopyableDataset() = default;
UnCopyableDataset(const UnCopyableDataset&) = delete;
UnCopyableDataset& operator=(const UnCopyableDataset&) = delete;
UnCopyableDataset(UnCopyableDataset&&) = default;
UnCopyableDataset& operator=(UnCopyableDataset&&) = default;
// NOLINTNEXTLINE(modernize-use-override)
~UnCopyableDataset() = default;
Example<> get(size_t index) override {
return {
torch::tensor({static_cast<int64_t>(index)}),
torch::tensor({static_cast<int64_t>(index)})};
}
torch::optional<size_t> size() const override {
return 100;
}
};
TEST(DataTest, MapDoesNotCopy) {
auto dataset = UnCopyableDataset()
.map(transforms::TensorLambda<>(
[](torch::Tensor tensor) { return tensor + 1; }))
.map(transforms::TensorLambda<>(
[](torch::Tensor tensor) { return tensor + 2; }))
.map(transforms::TensorLambda<>(
[](torch::Tensor tensor) { return tensor + 3; }));
auto data = dataset.get_batch(1).at(0).data;
ASSERT_EQ(data.numel(), 1);
ASSERT_EQ(data[0].item<float>(), 7);
}
TEST(DataTest, QueuePushAndPopFromSameThread) {
torch::data::detail::Queue<int> queue;
queue.push(1);
queue.push(2);
ASSERT_EQ(queue.pop(), 1);
ASSERT_EQ(queue.pop(), 2);
}
TEST(DataTest, QueuePopWithTimeoutThrowsUponTimeout) {
torch::data::detail::Queue<int> queue;
ASSERT_THROWS_WITH(
queue.pop(10 * kMillisecond),
"Timeout in DataLoader queue while waiting for next batch "
"(timeout was 10 ms)");
}
TEST(DataTest, QueuePushAndPopFromDifferentThreads) {
using torch::data::detail::Queue;
// First test: push batch and the pop in thread.
{
Queue<int> queue;
queue.push(1);
auto future =
std::async(std::launch::async, [&queue] { return queue.pop(); });
ASSERT_EQ(future.get(), 1);
}
// Second test: attempt to pop batch (and block), then push.
{
Queue<int> queue;
std::thread thread([&queue] {
std::this_thread::sleep_for(20 * kMillisecond);
queue.push(123);
});
ASSERT_EQ(queue.pop(), 123);
thread.join();
}
}
TEST(DataTest, QueueClearEmptiesTheQueue) {
torch::data::detail::Queue<int> queue;
queue.push(1);
queue.push(2);
queue.push(3);
ASSERT_EQ(queue.clear(), 3);
ASSERT_THROWS_WITH(queue.pop(1 * kMillisecond), "Timeout");
}
TEST(DataTest, DataShuttleCanPushAndPopJob) {
torch::data::detail::DataShuttle<int, int> shuttle;
shuttle.push_job(1);
shuttle.push_job(2);
ASSERT_EQ(shuttle.pop_job(), 1);
ASSERT_EQ(shuttle.pop_job(), 2);
}
TEST(DataTest, DataShuttleCanPushAndPopResult) {
torch::data::detail::DataShuttle<int, int> shuttle;
// pop_result() will only attempt to pop if there was a push_job() batch.
shuttle.push_job(1);
shuttle.push_job(2);
shuttle.pop_job();
shuttle.push_result(1);
ASSERT_EQ(shuttle.pop_result().value(), 1);
shuttle.pop_job();
shuttle.push_result(2);
ASSERT_EQ(shuttle.pop_result().value(), 2);
}
TEST(DataTest, DataShuttlePopResultReturnsNulloptWhenNoJobsInFlight) {
torch::data::detail::DataShuttle<int, int> shuttle;
ASSERT_FALSE(shuttle.pop_result().has_value());
shuttle.push_job(1);
shuttle.pop_job();
shuttle.push_result(1);
ASSERT_EQ(shuttle.pop_result().value(), 1);
ASSERT_FALSE(shuttle.pop_result().has_value());
ASSERT_FALSE(shuttle.pop_result().has_value());
}
TEST(DataTest, DataShuttleDrainMeansPopResultReturnsNullopt) {
torch::data::detail::DataShuttle<int, int> shuttle;
shuttle.push_job(1);
shuttle.push_result(1);
shuttle.drain();
ASSERT_FALSE(shuttle.pop_result().has_value());
}
TEST(DataTest, DataShuttlePopResultTimesOut) {
torch::data::detail::DataShuttle<int, int> shuttle;
shuttle.push_job(1);
ASSERT_THROWS_WITH(shuttle.pop_result(10 * kMillisecond), "Timeout");
}
struct UncopyableDataset : datasets::Dataset<UncopyableDataset, int> {
UncopyableDataset(const std::string& /* unused */) {}
UncopyableDataset(UncopyableDataset&&) = default;
UncopyableDataset& operator=(UncopyableDataset&&) = default;
UncopyableDataset(const UncopyableDataset&) = delete;
UncopyableDataset& operator=(const UncopyableDataset&) = delete;
int get(size_t index) override {
// NOLINTNEXTLINE(cppcoreguidelines-narrowing-conversions,bugprone-narrowing-conversions)
return 1 + index;
}
torch::optional<size_t> size() const override {
return 100;
}
};
TEST(DataTest, SharedBatchDatasetReallyIsShared) {
// This test will only compile if we really are not making any copies.
// There is otherwise no logic to test and because it is not deterministic
// how many and when worker threads access the shareddataset, we don't have
// any additional assertions here.
auto shared_dataset =
torch::data::datasets::make_shared_dataset<UncopyableDataset>(
"uncopyable");
auto data_loader = torch::data::make_data_loader(
shared_dataset, torch::data::DataLoaderOptions().workers(3));
for (auto batch : *data_loader) {
/* exhaust */
}
}
TEST(DataTest, SharedBatchDatasetDoesNotIncurCopyWhenPassedDatasetObject) {
// This will not compile if a copy is made.
auto shared_dataset =
torch::data::datasets::make_shared_dataset<UncopyableDataset>(
UncopyableDataset("uncopyable"));
ASSERT_EQ(shared_dataset.size().value(), 100);
}
struct TestIndex : public torch::data::samplers::CustomBatchRequest {
explicit TestIndex(size_t offset, std::vector<size_t> index)
: offset(offset), index(std::move(index)) {}
size_t size() const override {
return index.size();
}
size_t offset;
std::vector<size_t> index;
};
struct TestIndexDataset
: datasets::BatchDataset<TestIndexDataset, std::vector<int>, TestIndex> {
explicit TestIndexDataset(size_t size) : data(size) {
std::iota(data.begin(), data.end(), size_t(0));
}
std::vector<int> get_batch(TestIndex index) override {
std::vector<int> batch;
for (auto i : index.index) {
batch.push_back(index.offset + data.at(i));
}
return batch;
}
torch::optional<size_t> size() const override {
return data.size();
}
std::vector<int> data;
};
struct TestIndexSampler : public samplers::Sampler<TestIndex> {
explicit TestIndexSampler(size_t size) : size_(size) {}
void reset(torch::optional<size_t> new_size = torch::nullopt) override {}
torch::optional<TestIndex> next(size_t batch_size) override {
if (index_ >= size_) {
return torch::nullopt;
}
std::vector<size_t> indices(batch_size);
std::iota(indices.begin(), indices.end(), size_t(0));
index_ += batch_size;
return TestIndex(batch_size, std::move(indices));
}
void save(torch::serialize::OutputArchive& archive) const override {}
void load(torch::serialize::InputArchive& archive) override {}
size_t index_ = 0;
size_t size_;
};
TEST(DataTest, CanUseCustomTypeAsIndexType) {
const int kBatchSize = 10;
auto data_loader = torch::data::make_data_loader(
TestIndexDataset(23), TestIndexSampler(23), kBatchSize);
for (auto batch : *data_loader) {
for (const auto j : c10::irange(kBatchSize)) {
ASSERT_EQ(batch.at(j), 10 + j);
}
}
}
TEST(DataTest, DistributedRandomSamplerSingleReplicaProduceCorrectSamples) {
size_t sample_count = 10;
samplers::DistributedRandomSampler drs(sample_count);
std::vector<size_t> res;
torch::optional<std::vector<size_t>> idx;
while ((idx = drs.next(3)).has_value()) {
res.insert(std::end(res), std::begin(*idx), std::end(*idx));
}
ASSERT_EQ(res.size(), sample_count);
std::sort(res.begin(), res.end());
for (const auto i : c10::irange(res.size())) {
ASSERT_EQ(res[i], i);
}
}
TEST(DataTest, DistributedRandomSamplerMultiReplicaProduceCorrectSamples) {
size_t sample_count = 10;
size_t num_replicas = 3;
auto test_function = [&](bool allow_duplicates,
size_t local_sample_count,
std::vector<size_t>& output,
size_t batch_size) {
std::vector<std::unique_ptr<samplers::DistributedRandomSampler>> samplers;
for (const auto i : c10::irange(num_replicas)) {
samplers.emplace_back(
torch::make_unique<samplers::DistributedRandomSampler>(
sample_count, num_replicas, i, allow_duplicates));
}
std::vector<size_t> res;
for (const auto i : c10::irange(num_replicas)) {
(*samplers[i]).reset();
torch::optional<std::vector<size_t>> idx;
while ((idx = (*samplers[i]).next(batch_size)).has_value()) {
res.insert(std::end(res), std::begin(*idx), std::end(*idx));
}
ASSERT_EQ(res.size(), local_sample_count * (i + 1));
}
std::sort(res.begin(), res.end());
ASSERT_EQ(res, output);
};
for (size_t batch_size = 1; batch_size <= 3; ++batch_size) {
size_t local_sample_count =
static_cast<size_t>(std::ceil(sample_count * 1.0 / num_replicas));
std::vector<size_t> output1{0, 0, 1, 1, 2, 3, 4, 5, 6, 7, 8, 9};
test_function(true, local_sample_count, output1, batch_size);
local_sample_count =
static_cast<size_t>(std::floor(sample_count * 1.0 / num_replicas));
std::vector<size_t> output2{0, 1, 2, 3, 4, 5, 6, 7, 8};
test_function(false, local_sample_count, output2, batch_size);
}
}
TEST(DataTest, CanSaveAndLoadDistributedRandomSampler) {
{
samplers::DistributedRandomSampler a(10);
ASSERT_EQ(a.index(), 0);
std::stringstream stream;
torch::save(a, stream);
samplers::DistributedRandomSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.index(), 0);
}
{
samplers::DistributedRandomSampler a(10);
a.next(3);
a.next(4);
ASSERT_EQ(a.index(), 7);
std::stringstream stream;
torch::save(a, stream);
samplers::DistributedRandomSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.index(), 7);
}
{
samplers::DistributedRandomSampler a(10);
a.set_epoch(3);
std::stringstream stream;
torch::save(a, stream);
samplers::DistributedRandomSampler b(10);
torch::load(b, stream);
ASSERT_EQ(b.epoch(), 3);
}
}
TEST(DataTest, DistributedSequentialSamplerSingleReplicaProduceCorrectSamples) {
size_t sample_count = 10;
size_t batch_size = 3;
samplers::DistributedSequentialSampler dss(sample_count);
std::vector<size_t> res;
torch::optional<std::vector<size_t>> idx;
while ((idx = dss.next(batch_size)).has_value()) {
res.insert(std::end(res), std::begin(*idx), std::end(*idx));
}
ASSERT_EQ(res.size(), sample_count);
std::sort(res.begin(), res.end());
for (const auto i : c10::irange(res.size())) {
ASSERT_EQ(res[i], i);
}
}
TEST(DataTest, DistributedSequentialSamplerMultiReplicaProduceCorrectSamples) {
size_t sample_count = 10;
size_t num_replicas = 3;
auto test_function = [&](bool allow_duplicates,
size_t local_sample_count,
std::vector<size_t>& output,
size_t batch_size) {
std::vector<std::unique_ptr<samplers::DistributedSequentialSampler>>
samplers;
for (const auto i : c10::irange(num_replicas)) {
samplers.emplace_back(
torch::make_unique<samplers::DistributedSequentialSampler>(
sample_count, num_replicas, i, allow_duplicates));
}
std::vector<size_t> res;
for (const auto i : c10::irange(num_replicas)) {
(*samplers[i]).reset();
torch::optional<std::vector<size_t>> idx;
while ((idx = (*samplers[i]).next(batch_size)).has_value()) {
res.insert(std::end(res), std::begin(*idx), std::end(*idx));
}
ASSERT_EQ(res.size(), local_sample_count * (i + 1));
}
std::sort(res.begin(), res.end());
ASSERT_EQ(res, output);
};
for (size_t batch_size = 1; batch_size <= 3; ++batch_size) {
size_t local_sample_count =
static_cast<size_t>(std::ceil(sample_count * 1.0 / num_replicas));
std::vector<size_t> output1{0, 0, 1, 1, 2, 3, 4, 5, 6, 7, 8, 9};
test_function(true, local_sample_count, output1, batch_size);
local_sample_count =
static_cast<size_t>(std::floor(sample_count * 1.0 / num_replicas));
std::vector<size_t> output2{0, 1, 2, 3, 4, 5, 6, 7, 8};
test_function(false, local_sample_count, output2, batch_size);
}