pytorch/test/cpp/rpc/test_wire_serialization.cpp
generatedunixname89002005287564 9482683065 Remove dead includes in caffe2/test
Reviewed By: ezyang

Differential Revision: D19273220

fbshipit-source-id: 3dfc3388914e60611c84472e3fc529f5b5e40534
2020-01-21 11:30:34 -08:00

51 lines
1.8 KiB
C++

#include <gtest/gtest.h>
#include <torch/torch.h>
#include <torch/csrc/distributed/rpc/utils.h>
#include <memory>
#include <string>
#include <vector>
TEST(WireSerialize, Base) {
auto run = [](const std::string& payload,
const std::vector<at::Tensor>& tensors) {
std::string serialized;
{
std::vector<char> mpayload(payload.begin(), payload.end());
std::vector<at::Tensor> mtensors = tensors;
serialized = torch::distributed::rpc::wireSerialize(
std::move(mpayload), std::move(mtensors));
}
auto deser = torch::distributed::rpc::wireDeserialize(
serialized.data(), serialized.size());
EXPECT_EQ(payload.size(), deser.first.size());
EXPECT_EQ(tensors.size(), deser.second.size());
if (payload.size() > 0) {
EXPECT_TRUE(
memcmp(deser.first.data(), payload.data(), payload.size()) == 0);
}
for (size_t i = 0; i < tensors.size(); ++i) {
EXPECT_TRUE(torch::equal(tensors[i], deser.second[i]));
}
};
run("", {});
run("hi", {});
run("", {torch::randn({5, 5})});
run("hi", {torch::randn({5, 5})});
run("more", {torch::randn({5, 5}), torch::rand({10, 10})});
}
TEST(WireSerialize, RecopySparseTensors) {
// Take a 1K row of a 1M tensors, and make sure we don't send across 1M rows.
constexpr size_t k1K = 1024;
at::Tensor main = torch::randn({k1K, k1K});
at::Tensor tiny = main.select(0, 2); // Select a row in the middle
EXPECT_EQ(tiny.numel(), k1K);
EXPECT_EQ(tiny.storage().numel(), k1K * k1K);
auto ser = torch::distributed::rpc::wireSerialize({}, {tiny});
auto deser = torch::distributed::rpc::wireDeserialize(ser.data(), ser.size());
EXPECT_TRUE(torch::equal(tiny, deser.second[0]));
EXPECT_LT(ser.size(), (tiny.element_size() * k1K) + k1K);
}