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# SPDX-FileCopyrightText: Copyright (c) <2026> NVIDIA CORPORATION & AFFILIATES. All rights reserved.
#
# SPDX-License-Identifier: Apache-2.0
import math
import struct
import pytest
import torch
from cuda.tile._bytecode import SimpleType
from cuda.tile._bytecode.float import float_from_bits, float_to_bits
def test_float64_from_bits():
for val in [0.0, -0.0, math.inf, -math.inf, 1.0, 1.5, -1.0]:
bits = struct.unpack("<Q", struct.pack("<d", val))[0]
assert val == float_from_bits(bits, SimpleType.F64)
assert math.isnan(float_from_bits(0xffffffffffffffff, SimpleType.F64))
def test_float16_from_bits():
for bits in range(1 << 16):
val = float_from_bits(bits, SimpleType.F16)
expected = struct.unpack("<e", struct.pack("<H", bits))[0]
if math.isnan(expected):
assert math.isnan(val)
else:
assert expected == val
assert float_to_bits(val, SimpleType.F16) == bits
def test_bfloat16_from_bits():
bf16_tensor = torch.zeros(1, dtype=torch.bfloat16)
u16_view = bf16_tensor.view(torch.uint16)
for bits in range(1 << 16):
val = float_from_bits(bits, SimpleType.BF16)
u16_view[0] = bits
expected = bf16_tensor[0]
if math.isnan(expected):
assert math.isnan(val)
else:
assert expected == val
assert float_to_bits(val, SimpleType.BF16) == bits
f4e2m1fn_values = [
0.0, 0.5, 1.0, 1.5, 2.0, 3.0, 4.0, 6.0,
-0.0, -0.5, -1.0, -1.5, -2.0, -3.0, -4.0, -6.0
]
f8e4m3fn_values = [
0.0, 0.001953125, 0.00390625, 0.005859375,
0.0078125, 0.009765625, 0.01171875, 0.013671875,
0.015625, 0.017578125, 0.01953125, 0.021484375,
0.0234375, 0.025390625, 0.02734375, 0.029296875,
0.03125, 0.03515625, 0.0390625, 0.04296875,
0.046875, 0.05078125, 0.0546875, 0.05859375,
0.0625, 0.0703125, 0.078125, 0.0859375,
0.09375, 0.1015625, 0.109375, 0.1171875,
0.125, 0.140625, 0.15625, 0.171875,
0.1875, 0.203125, 0.21875, 0.234375,
0.25, 0.28125, 0.3125, 0.34375,
0.375, 0.40625, 0.4375, 0.46875,
0.5, 0.5625, 0.625, 0.6875,
0.75, 0.8125, 0.875, 0.9375,
1.0, 1.125, 1.25, 1.375,
1.5, 1.625, 1.75, 1.875,
2.0, 2.25, 2.5, 2.75,
3.0, 3.25, 3.5, 3.75,
4.0, 4.5, 5.0, 5.5,
6.0, 6.5, 7.0, 7.5,
8.0, 9.0, 10.0, 11.0,
12.0, 13.0, 14.0, 15.0,
16.0, 18.0, 20.0, 22.0,
24.0, 26.0, 28.0, 30.0,
32.0, 36.0, 40.0, 44.0,
48.0, 52.0, 56.0, 60.0,
64.0, 72.0, 80.0, 88.0,
96.0, 104.0, 112.0, 120.0,
128.0, 144.0, 160.0, 176.0,
192.0, 208.0, 224.0, 240.0,
256.0, 288.0, 320.0, 352.0,
384.0, 416.0, 448.0, math.nan,
-0.0, -0.001953125, -0.00390625, -0.005859375,
-0.0078125, -0.009765625, -0.01171875, -0.013671875,
-0.015625, -0.017578125, -0.01953125, -0.021484375,
-0.0234375, -0.025390625, -0.02734375, -0.029296875,
-0.03125, -0.03515625, -0.0390625, -0.04296875,
-0.046875, -0.05078125, -0.0546875, -0.05859375,
-0.0625, -0.0703125, -0.078125, -0.0859375,
-0.09375, -0.1015625, -0.109375, -0.1171875,
-0.125, -0.140625, -0.15625, -0.171875,
-0.1875, -0.203125, -0.21875, -0.234375,
-0.25, -0.28125, -0.3125, -0.34375,
-0.375, -0.40625, -0.4375, -0.46875,
-0.5, -0.5625, -0.625, -0.6875,
-0.75, -0.8125, -0.875, -0.9375,
-1.0, -1.125, -1.25, -1.375,
-1.5, -1.625, -1.75, -1.875,
-2.0, -2.25, -2.5, -2.75,
-3.0, -3.25, -3.5, -3.75,
-4.0, -4.5, -5.0, -5.5,
-6.0, -6.5, -7.0, -7.5,
-8.0, -9.0, -10.0, -11.0,
-12.0, -13.0, -14.0, -15.0,
-16.0, -18.0, -20.0, -22.0,
-24.0, -26.0, -28.0, -30.0,
-32.0, -36.0, -40.0, -44.0,
-48.0, -52.0, -56.0, -60.0,
-64.0, -72.0, -80.0, -88.0,
-96.0, -104.0, -112.0, -120.0,
-128.0, -144.0, -160.0, -176.0,
-192.0, -208.0, -224.0, -240.0,
-256.0, -288.0, -320.0, -352.0,
-384.0, -416.0, -448.0, -math.nan,
]
f8e8m0fnu_values = [
5.877471754111438e-39, 1.1754943508222875e-38, 2.350988701644575e-38, 4.70197740328915e-38,
9.4039548065783e-38, 1.88079096131566e-37, 3.76158192263132e-37, 7.52316384526264e-37,
1.504632769052528e-36, 3.009265538105056e-36, 6.018531076210112e-36, 1.2037062152420224e-35,
2.407412430484045e-35, 4.81482486096809e-35, 9.62964972193618e-35, 1.925929944387236e-34,
3.851859888774472e-34, 7.703719777548943e-34, 1.5407439555097887e-33, 3.0814879110195774e-33,
6.162975822039155e-33, 1.232595164407831e-32, 2.465190328815662e-32, 4.930380657631324e-32,
9.860761315262648e-32, 1.9721522630525295e-31, 3.944304526105059e-31, 7.888609052210118e-31,
1.5777218104420236e-30, 3.1554436208840472e-30, 6.310887241768095e-30, 1.262177448353619e-29,
2.524354896707238e-29, 5.048709793414476e-29, 1.0097419586828951e-28, 2.0194839173657902e-28,
4.0389678347315804e-28, 8.077935669463161e-28, 1.6155871338926322e-27, 3.2311742677852644e-27,
6.462348535570529e-27, 1.2924697071141057e-26, 2.5849394142282115e-26, 5.169878828456423e-26,
1.0339757656912846e-25, 2.0679515313825692e-25, 4.1359030627651384e-25, 8.271806125530277e-25,
1.6543612251060553e-24, 3.308722450212111e-24, 6.617444900424222e-24, 1.3234889800848443e-23,
2.6469779601696886e-23, 5.293955920339377e-23, 1.0587911840678754e-22, 2.117582368135751e-22,
4.235164736271502e-22, 8.470329472543003e-22, 1.6940658945086007e-21, 3.3881317890172014e-21,
6.776263578034403e-21, 1.3552527156068805e-20, 2.710505431213761e-20, 5.421010862427522e-20,
1.0842021724855044e-19, 2.168404344971009e-19, 4.336808689942018e-19, 8.673617379884035e-19,
1.734723475976807e-18, 3.469446951953614e-18, 6.938893903907228e-18, 1.3877787807814457e-17,
2.7755575615628914e-17, 5.551115123125783e-17, 1.1102230246251565e-16, 2.220446049250313e-16,
4.440892098500626e-16, 8.881784197001252e-16, 1.7763568394002505e-15, 3.552713678800501e-15,
7.105427357601002e-15, 1.4210854715202004e-14, 2.842170943040401e-14, 5.684341886080802e-14,
1.1368683772161603e-13, 2.2737367544323206e-13, 4.547473508864641e-13, 9.094947017729282e-13,
1.8189894035458565e-12, 3.637978807091713e-12, 7.275957614183426e-12, 1.4551915228366852e-11,
2.9103830456733704e-11, 5.820766091346741e-11, 1.1641532182693481e-10, 2.3283064365386963e-10,
4.656612873077393e-10, 9.313225746154785e-10, 1.862645149230957e-09, 3.725290298461914e-09,
7.450580596923828e-09, 1.4901161193847656e-08, 2.9802322387695312e-08, 5.960464477539063e-08,
1.1920928955078125e-07, 2.384185791015625e-07, 4.76837158203125e-07, 9.5367431640625e-07,
1.9073486328125e-06, 3.814697265625e-06, 7.62939453125e-06, 1.52587890625e-05,
3.0517578125e-05, 6.103515625e-05, 0.0001220703125, 0.000244140625,
0.00048828125, 0.0009765625, 0.001953125, 0.00390625,
0.0078125, 0.015625, 0.03125, 0.0625,
0.125, 0.25, 0.5, 1.0,
2.0, 4.0, 8.0, 16.0,
32.0, 64.0, 128.0, 256.0,
512.0, 1024.0, 2048.0, 4096.0,
8192.0, 16384.0, 32768.0, 65536.0,
131072.0, 262144.0, 524288.0, 1048576.0,
2097152.0, 4194304.0, 8388608.0, 16777216.0,
33554432.0, 67108864.0, 134217728.0, 268435456.0,
536870912.0, 1073741824.0, 2147483648.0, 4294967296.0,
8589934592.0, 17179869184.0, 34359738368.0, 68719476736.0,
137438953472.0, 274877906944.0, 549755813888.0, 1099511627776.0,
2199023255552.0, 4398046511104.0, 8796093022208.0, 17592186044416.0,
35184372088832.0, 70368744177664.0, 140737488355328.0, 281474976710656.0,
562949953421312.0, 1125899906842624.0, 2251799813685248.0, 4503599627370496.0,
9007199254740992.0, 1.8014398509481984e+16, 3.602879701896397e+16, 7.205759403792794e+16,
1.4411518807585587e+17, 2.8823037615171174e+17, 5.764607523034235e+17, 1.152921504606847e+18,
2.305843009213694e+18, 4.611686018427388e+18, 9.223372036854776e+18, 1.8446744073709552e+19,
3.6893488147419103e+19, 7.378697629483821e+19, 1.4757395258967641e+20, 2.9514790517935283e+20,
5.902958103587057e+20, 1.1805916207174113e+21, 2.3611832414348226e+21, 4.722366482869645e+21,
9.44473296573929e+21, 1.888946593147858e+22, 3.777893186295716e+22, 7.555786372591432e+22,
1.5111572745182865e+23, 3.022314549036573e+23, 6.044629098073146e+23, 1.2089258196146292e+24,
2.4178516392292583e+24, 4.835703278458517e+24, 9.671406556917033e+24, 1.9342813113834067e+25,
3.8685626227668134e+25, 7.737125245533627e+25, 1.5474250491067253e+26, 3.094850098213451e+26,
6.189700196426902e+26, 1.2379400392853803e+27, 2.4758800785707605e+27, 4.951760157141521e+27,
9.903520314283042e+27, 1.9807040628566084e+28, 3.961408125713217e+28, 7.922816251426434e+28,
1.5845632502852868e+29, 3.1691265005705735e+29, 6.338253001141147e+29, 1.2676506002282294e+30,
2.535301200456459e+30, 5.070602400912918e+30, 1.0141204801825835e+31, 2.028240960365167e+31,
4.056481920730334e+31, 8.112963841460668e+31, 1.6225927682921336e+32, 3.2451855365842673e+32,
6.490371073168535e+32, 1.298074214633707e+33, 2.596148429267414e+33, 5.192296858534828e+33,
1.0384593717069655e+34, 2.076918743413931e+34, 4.153837486827862e+34, 8.307674973655724e+34,
1.661534994731145e+35, 3.32306998946229e+35, 6.64613997892458e+35, 1.329227995784916e+36,
2.658455991569832e+36, 5.316911983139664e+36, 1.0633823966279327e+37, 2.1267647932558654e+37,
4.253529586511731e+37, 8.507059173023462e+37, 1.7014118346046923e+38, math.nan,
]
@pytest.mark.parametrize("type, value_table", [
(SimpleType.F4E2M1FN, f4e2m1fn_values),
(SimpleType.F8E4M3FN, f8e4m3fn_values),
(SimpleType.F8E8M0FNU, f8e8m0fnu_values),
])
def test_low_precision_float_from_bits(type, value_table):
for bits, expected in enumerate(value_table):
val = float_from_bits(bits, type)
if math.isnan(expected):
assert math.isnan(val)
else:
assert val == expected
assert bits == float_to_bits(val, type)