summaryrefslogtreecommitdiffstats
path: root/eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp
diff options
context:
space:
mode:
Diffstat (limited to 'eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp')
-rw-r--r--eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp155
1 files changed, 155 insertions, 0 deletions
diff --git a/eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp b/eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp
new file mode 100644
index 00000000000..c0823248538
--- /dev/null
+++ b/eval/src/tests/tensor/dense_multi_matmul_function/dense_multi_matmul_function_test.cpp
@@ -0,0 +1,155 @@
+// Copyright Verizon Media. Licensed under the terms of the Apache 2.0 license. See LICENSE in the project root.
+
+#include <vespa/vespalib/testkit/test_kit.h>
+#include <vespa/eval/eval/tensor_function.h>
+#include <vespa/eval/eval/operation.h>
+#include <vespa/eval/eval/simple_tensor.h>
+#include <vespa/eval/eval/simple_tensor_engine.h>
+#include <vespa/eval/tensor/default_tensor_engine.h>
+#include <vespa/eval/tensor/dense/dense_multi_matmul_function.h>
+#include <vespa/eval/tensor/dense/dense_tensor.h>
+#include <vespa/eval/tensor/dense/dense_tensor_view.h>
+#include <vespa/eval/eval/test/tensor_model.hpp>
+#include <vespa/eval/eval/test/eval_fixture.h>
+
+#include <vespa/vespalib/util/stringfmt.h>
+#include <vespa/vespalib/util/stash.h>
+
+using namespace vespalib;
+using namespace vespalib::eval;
+using namespace vespalib::eval::test;
+using namespace vespalib::tensor;
+using namespace vespalib::eval::tensor_function;
+
+const TensorEngine &prod_engine = DefaultTensorEngine::ref();
+
+EvalFixture::ParamRepo make_params() {
+ return EvalFixture::ParamRepo()
+ .add_dense({{"A", 2}, {"B", 1}, {"C", 3}, {"a", 2}, {"d", 3}}) // inner/inner
+ .add_dense({{"B", 1}, {"C", 3}, {"a", 2}, {"d", 3}}) // inner/inner, missing A
+ .add_dense({{"A", 1}, {"a", 2}, {"d", 3}}) // inner/inner, single mat
+ .add_dense({{"A", 2}, {"D", 3}, {"a", 2}, {"b", 1}, {"c", 3}}) // inner/inner, inverted
+ .add_dense({{"A", 2}, {"B", 1}, {"C", 3}, {"a", 2}, {"b", 5}}) // inner/outer
+ .add_dense({{"A", 2}, {"B", 1}, {"C", 3}, {"b", 5}, {"c", 2}}) // outer/outer
+ .add_dense({{"A", 2}, {"B", 1}, {"C", 3}, {"a", 2}, {"c", 3}}) // not matching
+ //----------------------------------------------------------------------------------------
+ .add_dense({{"A", 2}, {"B", 1}, {"C", 3}, {"b", 5}, {"d", 3}}) // fixed param
+ .add_dense({{"B", 1}, {"C", 3}, {"b", 5}, {"d", 3}}) // fixed param, missing A
+ .add_dense({{"A", 1}, {"b", 5}, {"d", 3}}) // fixed param, single mat
+ .add_dense({{"B", 5}, {"D", 3}, {"a", 2}, {"b", 1}, {"c", 3}}); // fixed param, inverted
+}
+EvalFixture::ParamRepo param_repo = make_params();
+
+void verify_optimized(const vespalib::string &expr,
+ size_t lhs_size, size_t common_size, size_t rhs_size, size_t matmul_cnt,
+ bool lhs_inner, bool rhs_inner)
+{
+ EvalFixture slow_fixture(prod_engine, expr, param_repo, false);
+ EvalFixture fixture(prod_engine, expr, param_repo, true);
+ EXPECT_EQUAL(fixture.result(), EvalFixture::ref(expr, param_repo));
+ EXPECT_EQUAL(fixture.result(), slow_fixture.result());
+ auto info = fixture.find_all<DenseMultiMatMulFunction>();
+ ASSERT_EQUAL(info.size(), 1u);
+ EXPECT_TRUE(info[0]->result_is_mutable());
+ EXPECT_EQUAL(info[0]->lhs_size(), lhs_size);
+ EXPECT_EQUAL(info[0]->common_size(), common_size);
+ EXPECT_EQUAL(info[0]->rhs_size(), rhs_size);
+ EXPECT_EQUAL(info[0]->matmul_cnt(), matmul_cnt);
+ EXPECT_EQUAL(info[0]->lhs_common_inner(), lhs_inner);
+ EXPECT_EQUAL(info[0]->rhs_common_inner(), rhs_inner);
+}
+
+void verify_not_optimized(const vespalib::string &expr) {
+ EvalFixture slow_fixture(prod_engine, expr, param_repo, false);
+ EvalFixture fixture(prod_engine, expr, param_repo, true);
+ EXPECT_EQUAL(fixture.result(), EvalFixture::ref(expr, param_repo));
+ EXPECT_EQUAL(fixture.result(), slow_fixture.result());
+ auto info = fixture.find_all<DenseMultiMatMulFunction>();
+ EXPECT_TRUE(info.empty());
+}
+
+TEST("require that multi matmul can be optimized") {
+ TEST_DO(verify_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3,sum,d)", 2, 3, 5, 6, true, true));
+}
+
+TEST("require that single multi matmul can be optimized") {
+ TEST_DO(verify_optimized("reduce(A1a2d3*A1b5d3,sum,d)", 2, 3, 5, 1, true, true));
+}
+
+TEST("require that multi matmul with lambda can be optimized") {
+ TEST_DO(verify_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(x*y)),sum,d)", 2, 3, 5, 6, true, true));
+ TEST_DO(verify_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(y*x)),sum,d)", 2, 3, 5, 6, true, true));
+}
+
+TEST("require that expressions similar to multi matmul are not optimized") {
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3,sum,a)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3,sum,b)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3,prod,d)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3,sum)"));
+ TEST_DO(verify_not_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(x+y)),sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(x*x)),sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(y*y)),sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(join(A2B1C3a2d3,A2B1C3b5d3,f(x,y)(x*y*1)),sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2c3*A2B1C3b5d3,sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2c3*A2B1C3b5d3,sum,c)"));
+}
+
+TEST("require that multi matmul must have matching cell type") {
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3f*A2B1C3b5d3,sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*A2B1C3b5d3f,sum,d)"));
+}
+
+TEST("require that multi matmul must have matching dimension prefix") {
+ TEST_DO(verify_not_optimized("reduce(B1C3a2d3*A2B1C3b5d3,sum,d)"));
+ TEST_DO(verify_not_optimized("reduce(A2B1C3a2d3*B1C3b5d3,sum,d)"));
+}
+
+TEST("require that multi matmul must have inner nesting of matmul dimensions") {
+ TEST_DO(verify_not_optimized("reduce(A2D3a2b1c3*B5D3a2b1c3,sum,D)"));
+ TEST_DO(verify_not_optimized("reduce(B5D3a2b1c3*A2D3a2b1c3,sum,D)"));
+}
+
+TEST("require that multi matmul function can be debug dumped") {
+ EvalFixture fixture(prod_engine, "reduce(A2B1C3a2d3*A2B1C3b5d3,sum,d)", param_repo, true);
+ auto info = fixture.find_all<DenseMultiMatMulFunction>();
+ ASSERT_EQUAL(info.size(), 1u);
+ fprintf(stderr, "%s\n", info[0]->as_string().c_str());
+}
+
+vespalib::string make_expr(const vespalib::string &a, const vespalib::string &b, const vespalib::string &common,
+ bool float_cells)
+{
+ return make_string("reduce(%s%s*%s%s,sum,%s)", a.c_str(), float_cells ? "f" : "", b.c_str(), float_cells ? "f" : "", common.c_str());
+}
+
+void verify_optimized_multi(const vespalib::string &a, const vespalib::string &b, const vespalib::string &common,
+ size_t lhs_size, size_t common_size, size_t rhs_size, size_t matmul_cnt,
+ bool lhs_inner, bool rhs_inner)
+{
+ for (bool float_cells: {false, true}) {
+ {
+ auto expr = make_expr(a, b, common, float_cells);
+ TEST_STATE(expr.c_str());
+ TEST_DO(verify_optimized(expr, lhs_size, common_size, rhs_size, matmul_cnt, lhs_inner, rhs_inner));
+ }
+ {
+ auto expr = make_expr(b, a, common, float_cells);
+ TEST_STATE(expr.c_str());
+ TEST_DO(verify_optimized(expr, lhs_size, common_size, rhs_size, matmul_cnt, lhs_inner, rhs_inner));
+ }
+ }
+}
+
+TEST("require that multi matmul inner/inner works correctly") {
+ TEST_DO(verify_optimized_multi("A2B1C3a2d3", "A2B1C3b5d3", "d", 2, 3, 5, 6, true, true));
+}
+
+TEST("require that multi matmul inner/outer works correctly") {
+ TEST_DO(verify_optimized_multi("A2B1C3a2b5", "A2B1C3b5d3", "b", 2, 5, 3, 6, true, false));
+}
+
+TEST("require that multi matmul outer/outer works correctly") {
+ TEST_DO(verify_optimized_multi("A2B1C3b5c2", "A2B1C3b5d3", "b", 2, 5, 3, 6, false, false));
+}
+
+TEST_MAIN() { TEST_RUN_ALL(); }