[LANG] Add fp16 to fp8 conversion (#444)
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@@ -414,13 +414,13 @@ void generator::visit_fcmp_inst(ir::fcmp_inst* x) {
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std::tuple<Value*, Value*, Value*, Value*> generator::fp32x4_to_fp8x4(Value *in0, Value *in1, Value *in2, Value *in3){
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auto cvt = [this](Value *v){
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if(ConstantFP* ci = dyn_cast<ConstantFP>(v))
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if(ci->getValue().convertToFloat() == 0)
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return builder_->getInt8(0);
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throw std::runtime_error("unsupported cast");
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};
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return std::make_tuple(cvt(in0), cvt(in1), cvt(in2), cvt(in3));
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in0 = cast(llvm::Instruction::FPTrunc, in0, f16_ty);
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in1 = cast(llvm::Instruction::FPTrunc, in1, f16_ty);
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in2 = cast(llvm::Instruction::FPTrunc, in2, f16_ty);
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in3 = cast(llvm::Instruction::FPTrunc, in3, f16_ty);
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Value *ret0, *ret1, *ret2, *ret3;
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std::tie(ret0, ret1, ret2, ret3) = fp16x4_to_fp8x4(in0, in1, in2, in3);
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return std::make_tuple(ret0, ret1, ret2, ret3);
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}
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std::tuple<Value*, Value*, Value*, Value*> generator::fp8x4_to_fp32x4(Value *in0, Value *in1, Value *in2, Value *in3){
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@@ -439,14 +439,14 @@ std::tuple<Value*, Value*, Value*, Value*> generator::fp8x4_to_fp16x4(Value *in0
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InlineAsm *ptx = InlineAsm::get(FunctionType::get(ret_ty, {i32_ty}, false),
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"{"
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".reg .b32 a<2>, b<2>; \n\t"
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"prmt.b32 a0, 0, $2, 0x5140; \n\t"
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"prmt.b32 a1, 0, $2, 0x7362; \n\t"
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"lop3.b32 b0, a0, 0x7fff7fff, 0, 0xc0; \n\t" // strip sign
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"lop3.b32 b1, a1, 0x7fff7fff, 0, 0xc0; \n\t"
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"shr.b32 b0, b0, 1; \n\t" // shift into fp16 poistion
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"shr.b32 b1, b1, 1; \n\t"
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"lop3.b32 $0, b0, 0x80008000, a0, 0xf8; \n\t" // restore sign
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"lop3.b32 $1, b1, 0x80008000, a1, 0xf8; \n\t"
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"prmt.b32 a0, 0, $2, 0x5040; \n\t" // If input is 0xdcba set a0 to 0xb0a0
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"prmt.b32 a1, 0, $2, 0x7060; \n\t" // If input is 0xdcba set a1 to 0xd0c0
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"lop3.b32 b0, a0, 0x7fff7fff, 0, 0xc0; \n\t" // b0 = a0 & 0x7fff7fff (strip sign)
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"lop3.b32 b1, a1, 0x7fff7fff, 0, 0xc0; \n\t" // b1 = a1 & 0x7fff7fff (strip sign)
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"shr.b32 b0, b0, 1; \n\t" // b0 <<= 1 (shift into fp16 poistion)
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"shr.b32 b1, b1, 1; \n\t" // b1 <<= 1 (shift into fp16 position)
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"lop3.b32 $0, b0, 0x80008000, a0, 0xf8; \n\t" // out0 = b0 | (0x80008000 | a0) (restore sign)
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"lop3.b32 $1, b1, 0x80008000, a1, 0xf8; \n\t" // out1 = b1 | (0x80008000 | a1) (restore sign)
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"}", "=r,=r,r", false);
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Value *packed_in = UndefValue::get(vec_ty(i8_ty, 4));
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packed_in = insert_elt(packed_in, in0, (uint64_t)0);
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@@ -464,6 +464,51 @@ std::tuple<Value*, Value*, Value*, Value*> generator::fp8x4_to_fp16x4(Value *in0
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return std::make_tuple(ret0, ret1, ret2, ret3);
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}
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std::tuple<Value*, Value*, Value*, Value*> generator::fp16x4_to_fp8x4(Value *in0, Value *in1, Value *in2, Value *in3) {
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/* fp16 bit representation is seeeeemmmmmmmmmm (s=sign, e=exponent, m=mantissa)
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* fp8 bit representation is seeeemmm
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* The 4 fp8 exponent bits are the low order 4 exponent bits in fp16.
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* The 3 fp8 mantissa bits are the high order 3 mantissa bits in fp16.
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* Note that the low order exponent bits and high order mantissa bits in fp16 are contiguous.
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* We want to round to nearest fp8 value. To do that add 1 to 4th mantissa bit in fp16 (that's
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* one more than the number of mantissa bits in fp8).
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* fp8 = (fp16 & 0x8000) | (((f16 << 1) + 0x0080) & 0x7fff)
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*
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* We compute two fp16s in one uint32. The addition could cause bit flips from one fp16 to the
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* other. To avoid this we zero out the most significant exponent bit. If that bit is set then
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* the value isn't representable in float8 anyway so we assume it's never set (and give garbage
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* output if it is). If we were willing to assume the most significant exponent was never set
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* we could save the first two lop3.b32 instructions below.
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*/
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InlineAsm *ptx = InlineAsm::get(FunctionType::get({vec_ty(i8_ty, 4)}, {i32_ty, i32_ty}, false),
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"{"
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".reg .b32 a<2>, b<2>; \n\t"
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"shl.b32 a0, $1, 1; \n\t" // a0 = input0 << 1
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"shl.b32 a1, $2, 1; \n\t" // a1 = input1 << 1
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"lop3.b32 a0, a0, 0x7fff7fff, 0, 0xc0; \n\t" // a0 = (a0 & 0x7fff7fff)
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"lop3.b32 a1, a1, 0x7fff7fff, 0, 0xc0; \n\t" // a1 = (a1 & 0x7fff7fff)
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"add.u32 a0, a0, 0x00800080; \n\t" // a0 += 0x00800080
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"add.u32 a1, a1, 0x00800080; \n\t" // a1 += 0x00800080
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"lop3.b32 b0, $1, 0x80008000, a0, 0xea; \n\t" // b0 = (input0 & 0x80008000) | a0
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"lop3.b32 b1, $2, 0x80008000, a1, 0xea; \n\t" // b1 = (input1 & 0x80008000) | a1
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"prmt.b32 $0, b0, b1, 0x7531; \n\t" // If b0 = 0xabcd and b1=0x0123 sets output to 0xac02
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"}", "=r,r,r", false);
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Value *packed_in0 = UndefValue::get(vec_ty(f16_ty, 2));
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Value *packed_in1 = UndefValue::get(vec_ty(f16_ty, 2));
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packed_in0 = insert_elt(packed_in0, in0, (int)0);
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packed_in0 = insert_elt(packed_in0, in1, (int)1);
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packed_in1 = insert_elt(packed_in1, in2, (int)0);
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packed_in1 = insert_elt(packed_in1, in3, (int)1);
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Value *in_arg0 = bit_cast(packed_in0, i32_ty);
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Value *in_arg1 = bit_cast(packed_in1, i32_ty);
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Value *ret = call(ptx, {in_arg0, in_arg1});
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Value *ret0 = extract_elt(ret, (int)0);
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Value *ret1 = extract_elt(ret, (int)1);
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Value *ret2 = extract_elt(ret, (int)2);
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Value *ret3 = extract_elt(ret, (int)3);
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return std::make_tuple(ret0, ret1, ret2, ret3);
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}
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Value* generator::bf16_to_fp32(Value *in0){
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if (tgt_->as_nvidia()->sm() >= 80) {
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InlineAsm *ptx = InlineAsm::get(FunctionType::get(f32_ty, {bf16_ty}, false),
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@@ -508,8 +553,12 @@ void generator::visit_cast_inst(ir::cast_inst* x) {
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auto cvt = [&](Value* a, Value* b, Value* c, Value* d){
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if(op_sca_ty->is_fp32_ty() && ret_sca_ty->is_fp8_ty())
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return fp32x4_to_fp8x4(a, b, c, d);
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if(op_sca_ty->is_fp16_ty() && ret_sca_ty->is_fp8_ty())
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return fp16x4_to_fp8x4(a, b, c, d);
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if(op_sca_ty->is_fp8_ty() && ret_sca_ty->is_fp16_ty())
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return fp8x4_to_fp16x4(a, b, c, d);
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if(op_sca_ty->is_fp8_ty() && ret_sca_ty->is_fp32_ty())
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return fp8x4_to_fp32x4(a, b, c, d);
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throw std::runtime_error("unsupported conversion");
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};
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for(size_t i = 0; i < x_idxs.size(); i+=4){
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@@ -565,6 +565,90 @@ def test_cast(dtype_x, dtype_z, bitcast, device='cuda'):
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z_ref = x.astype(getattr(np, dtype_z))
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assert to_numpy(z_tri) == z_ref
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def test_f8_f16_roundtrip():
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"""Tests that converting an f8 to f16 and back to f8 doesn't change its value"""
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@triton.jit
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def copy_kernel(input_ptr, output_ptr, n_elements, BLOCK_SIZE: tl.constexpr):
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offsets = tl.program_id(axis=0) * BLOCK_SIZE + tl.arange(0, BLOCK_SIZE)
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mask = offsets < n_elements
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input = tl.load(input_ptr + offsets, mask=mask)
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output = input
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tl.store(output_ptr + offsets, output, mask=mask)
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f8_tensor = torch.tensor(range(-128, 128), dtype=torch.int8, device='cuda')
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f8 = triton.reinterpret(f8_tensor, tl.float8)
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n_elements = f8_tensor.numel()
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f16 = torch.empty_like(f8_tensor, dtype=torch.float16)
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grid = lambda meta: (triton.cdiv(n_elements, meta['BLOCK_SIZE']),)
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copy_kernel[grid](f8, f16, n_elements, BLOCK_SIZE=1024)
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f8_output_tensor = torch.empty_like(f16, dtype=torch.int8)
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f8_output = triton.reinterpret(f8_output_tensor, tl.float8)
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print(f16.dtype, f8_output.dtype)
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copy_kernel[grid](f16, f8_output, n_elements, BLOCK_SIZE=1024)
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assert torch.all(f8_tensor == f8_output_tensor)
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def test_f16_to_f8_rounding():
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"""Takes all float16s, converts them to float8 and back to float16. Checks that the absolute
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error is the minimum over all float8.
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Or the same explanation a bit mathier:
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for all f16 |f16 - fromf8(tof8(f16))| == min over all f8 |f16 - fromf8(f8)|"""
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@triton.jit
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def copy_kernel(input_ptr, output_ptr, n_elements, BLOCK_SIZE: tl.constexpr):
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offsets = tl.program_id(axis=0) * BLOCK_SIZE + tl.arange(0, BLOCK_SIZE)
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mask = offsets < n_elements
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input = tl.load(input_ptr + offsets, mask=mask)
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output = input
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tl.store(output_ptr + offsets, output, mask=mask)
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# torch.view with a dtype isn't supported in triton's torch yet so use numpy's view
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f16_input_np = (
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np.array(
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range(-int(2 ** (16 - 1)), int(2 ** (16 - 1))), dtype=np.int16,
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)
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.view(np.float16)
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)
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f16_input = torch.tensor(f16_input_np, dtype=torch.float16, device='cuda')
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n_elements = f16_input.numel()
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f8_output_tensor = torch.empty_like(f16_input, dtype=torch.int8)
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f8_output = triton.reinterpret(f8_output_tensor, tl.float8)
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grid = lambda meta: (triton.cdiv(n_elements, meta['BLOCK_SIZE']),)
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copy_kernel[grid](f16_input, f8_output, n_elements, BLOCK_SIZE=1024)
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f16_output = torch.empty_like(f16_input, dtype=torch.float16)
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copy_kernel[grid](f8_output, f16_output, n_elements, BLOCK_SIZE=1024)
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abs_error = torch.abs(f16_input - f16_output)
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all_f8_vals_tensor = torch.tensor(range(2 ** 8), dtype=torch.uint8, device='cuda')
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all_f8_vals = triton.reinterpret(all_f8_vals_tensor, tl.float8)
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all_f8_vals_in_f16 = torch.empty_like(all_f8_vals_tensor, dtype=torch.float16)
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copy_kernel[grid](all_f8_vals, all_f8_vals_in_f16, n_elements=256, BLOCK_SIZE=1024)
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all_finite_f8_vals_in_f16 = all_f8_vals_in_f16[
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torch.isfinite(all_f8_vals_in_f16)
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]
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min_error = torch.min(
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torch.abs(
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f16_input.reshape((-1, 1))
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- all_finite_f8_vals_in_f16.reshape((1, -1))
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),
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dim=1,
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)[0]
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# 1.9375 is float8 max
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mismatch = torch.logical_and(
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abs_error != min_error, torch.logical_and(torch.isfinite(f16_input), torch.abs(f16_input) < 1.9375)
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)
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assert torch.all(
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torch.logical_not(mismatch)
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), f"{f16_input[mismatch]=} {f16_output[mismatch]=} {abs_error[mismatch]=} {min_error[mismatch]=}"
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# ---------------
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# test reduce
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# ---------------
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