Newer
Older
from __future__ import division
import numpy as np
import loopy as lp
import pyopencl as cl
from pyopencl.tools import pytest_generate_tests_for_pyopencl \
as pytest_generate_tests
__all__ = ["pytest_generate_tests",
"cl" # 'cl.create_some_context'
]
def test_owed_barriers(ctx_factory):
ctx = ctx_factory()
knl = lp.make_kernel(ctx.devices[0],
"{[i]: 0<=i<100}",
[
"[i:l.0] <float32> z[i] = a[i]"
],
[lp.GlobalArg("a", np.float32, shape=(100,))]
kernel_gen = lp.generate_loop_schedules(knl)
kernel_gen = lp.check_kernels(kernel_gen)
for gen_knl in kernel_gen:
compiled = lp.CompiledKernel(ctx, gen_knl)
print compiled.code
Andreas Klöckner
committed
def test_wg_too_small(ctx_factory):
ctx = ctx_factory()
knl = lp.make_kernel(ctx.devices[0],
"{[i]: 0<=i<100}",
[
"[i:l.0] <float32> z[i] = a[i]"
],
[lp.GlobalArg("a", np.float32, shape=(100,))],
Andreas Klöckner
committed
local_sizes={0: 16})
kernel_gen = lp.generate_loop_schedules(knl)
kernel_gen = lp.check_kernels(kernel_gen)
for gen_knl in kernel_gen:
try:
lp.CompiledKernel(ctx, gen_knl)
Andreas Klöckner
committed
except RuntimeError, e:
assert "implemented and desired" in str(e)
pass # expected!
else:
assert False # expecting an error
def test_multi_cse(ctx_factory):
ctx = ctx_factory()
knl = lp.make_kernel(ctx.devices[0],
"{[i]: 0<=i<100}",
[
"[i] <float32> z[i] = a[i] + a[i]**2"
[lp.GlobalArg("a", np.float32, shape=(100,))],
local_sizes={0: 16})
knl = lp.split_dimension(knl, "i", 16, inner_tag="l.0")
knl = lp.add_prefetch(knl, "a", [])
kernel_gen = lp.generate_loop_schedules(knl)
kernel_gen = lp.check_kernels(kernel_gen)
for gen_knl in kernel_gen:
compiled = lp.CompiledKernel(ctx, gen_knl)
print compiled.code
def test_stencil(ctx_factory):
ctx = ctx_factory()
knl = lp.make_kernel(ctx.devices[0],
"{[i,j]: 0<= i,j < 32}",
[
"[i] <float32> z[i,j] = -2*a[i,j]"
" + a[i,j-1]"
" + a[i,j+1]"
" + a[i-1,j]"
" + a[i+1,j]"
lp.GlobalArg("a", np.float32, shape=(32,32,))
def variant_1(knl):
knl = lp.add_prefetch(knl, "a", [0, 1])
return knl
def variant_2(knl):
knl = lp.split_dimension(knl, "i", 16, outer_tag="g.1", inner_tag="l.1")
knl = lp.split_dimension(knl, "j", 16, outer_tag="g.0", inner_tag="l.0")
knl = lp.add_prefetch(knl, "a", ["i_inner", "j_inner"])
#for variant in [variant_1, variant_2]:
for variant in [variant_2]:
kernel_gen = lp.generate_loop_schedules(variant(knl),
loop_priority=["i_outer", "i_inner_0", "j_0"])
kernel_gen = lp.check_kernels(kernel_gen)
for knl in kernel_gen:
print lp.generate_code(knl)
def test_eq_constraint(ctx_factory):
ctx = ctx_factory()
knl = lp.make_kernel(ctx.devices[0],
"{[i,j]: 0<= i,j < 32}",
[
"a[i] = b[i]"
],
[
lp.GlobalArg("a", np.float32, shape=(1000,)),
lp.GlobalArg("b", np.float32, shape=(1000,))
])
knl = lp.split_dimension(knl, "i", 16, outer_tag="g.0")
knl = lp.split_dimension(knl, "i_inner", 16, outer_tag=None, inner_tag="l.0")
kernel_gen = lp.generate_loop_schedules(knl)
kernel_gen = lp.check_kernels(kernel_gen)
for knl in kernel_gen:
print lp.generate_code(knl)
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
def test_argmax(ctx_factory):
dtype = np.dtype(np.float32)
ctx = ctx_factory()
order = "C"
n = 10000
knl = lp.make_kernel(ctx.devices[0],
"{[i]: 0<=i<%d}" % n,
[
"<> result = argmax_float32(i, fabs(a[i]))",
"max_idx = result.index",
"max_val = result.value",
],
[
lp.GlobalArg("a", dtype, shape=(n,), order=order),
lp.GlobalArg("max_idx", np.int32, shape=(), order=order),
lp.GlobalArg("max_val", dtype, shape=(), order=order),
])
seq_knl = knl
kernel_gen = lp.generate_loop_schedules(knl)
kernel_gen = lp.check_kernels(kernel_gen, {})
lp.auto_test_vs_ref(seq_knl, ctx, kernel_gen,
codegen_kwargs=dict(allow_complex=True))
if __name__ == "__main__":
import sys
if len(sys.argv) > 1:
exec(sys.argv[1])
else:
from py.test.cmdline import main
main([__file__])