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https://github.com/nomic-ai/kompute.git
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105 lines
3.3 KiB
C++
Executable File
105 lines
3.3 KiB
C++
Executable File
#if defined(_WIN32)
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#pragma comment(linker, "/subsystem:console")
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#endif
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// clang-format: SPDLOG_ACTIVE_LEVEL must be defined before spdlog.h import
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#if DEBUG
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#define SPDLOG_ACTIVE_LEVEL SPDLOG_LEVEL_DEBUG
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#endif
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#include <vector>
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#include <spdlog/spdlog.h>
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// clang-format: ranges.h must come after spdlog.h
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#include <fmt/ranges.h>
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#include "catch2/catch.hpp"
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#include "kompute/Kompute.hpp"
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TEST_CASE("End to end OpMult Flow should execute correctly from manager") {
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spdlog::info("TEST CASE STARTING");
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spdlog::info("Creating manager");
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kp::Manager mgr;
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spdlog::info("Creating first tensor");
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std::shared_ptr<kp::Tensor> tensorLHS{ new kp::Tensor( { 0, 1, 2 }) };
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mgr.evalOp<kp::OpCreateTensor>({ tensorLHS });
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spdlog::info("Creating second tensor");
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std::shared_ptr<kp::Tensor> tensorRHS{ new kp::Tensor(
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{ 2, 4, 6 }) };
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mgr.evalOp<kp::OpCreateTensor>({ tensorRHS });
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// TODO: Add capabilities for just output tensor types
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spdlog::info("Creating output tensor");
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std::shared_ptr<kp::Tensor> tensorOutput{ new kp::Tensor(
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{ 0, 0, 0 }) };
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mgr.evalOp<kp::OpCreateTensor>({ tensorOutput });
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spdlog::info("OpCreateTensor success for tensors");
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spdlog::info("Tensor one: {}", tensorLHS->data());
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spdlog::info("Tensor two: {}", tensorRHS->data());
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spdlog::info("Tensor output: {}", tensorOutput->data());
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spdlog::info("Calling op mult");
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mgr.evalOp<kp::OpMult<>>({ tensorLHS, tensorRHS, tensorOutput });
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spdlog::info("OpMult call success");
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spdlog::info("Tensor output: {}", tensorOutput->data());
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REQUIRE(tensorOutput->data() == std::vector<uint32_t>{0, 4, 12});
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spdlog::info("Called manager eval success END PROGRAM");
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}
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TEST_CASE("End to end OpMult Flow should execute correctly from sequence") {
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spdlog::info("TEST CASE STARTING");
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spdlog::info("Creating manager");
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spdlog::info("Creating first tensor");
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std::shared_ptr<kp::Tensor> tensorLHS{ new kp::Tensor(
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{ 0, 1, 2 }) };
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spdlog::info("Creating second tensor");
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std::shared_ptr<kp::Tensor> tensorRHS{ new kp::Tensor(
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{ 2, 4, 6 }) };
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// TODO: Add capabilities for just output tensor types
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spdlog::info("Creating output tensor");
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std::shared_ptr<kp::Tensor> tensorOutput{ new kp::Tensor(
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{ 0, 0, 0 }) };
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kp::Manager mgr;
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std::weak_ptr<kp::Sequence> sq_ref = mgr.managedSequence();
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if (std::shared_ptr<kp::Sequence> sq = sq_ref.lock()) {
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sq->begin();
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sq->record<kp::OpCreateTensor>({ tensorLHS });
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sq->record<kp::OpCreateTensor>({ tensorRHS });
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sq->record<kp::OpCreateTensor>({ tensorOutput });
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spdlog::info("OpCreateTensor success for tensors");
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spdlog::info("Tensor one: {}", tensorLHS->data());
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spdlog::info("Tensor two: {}", tensorRHS->data());
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spdlog::info("Tensor output: {}", tensorOutput->data());
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spdlog::info("Calling op mult");
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sq->record<kp::OpMult<>>({ tensorLHS, tensorRHS, tensorOutput });
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sq->end();
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sq->eval();
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}
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sq_ref.reset();
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spdlog::info("OpMult call success");
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spdlog::info("Tensor output: {}", tensorOutput->data());
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REQUIRE(tensorOutput->data() == std::vector<uint32_t>{0, 4, 12});
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spdlog::info("Called manager eval success END PROGRAM");
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}
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