import pytest import torch from itertools import product from torch import nn import bitsandbytes as bnb class MockArgs(object): def __init__(self, initial_data): for key in initial_data: setattr(self, key, initial_data[key]) class MLP8bit(torch.nn.Module): def __init__(self, dim1, dim2, has_fp16_weights=True, threshold=0.0): super(MLP8bit, self).__init__() self.fc1 = bnb.nn.Linear8bitLt(dim1, dim2, has_fp16_weights=has_fp16_weights, threshold=threshold) self.fc2 = bnb.nn.Linear8bitLt(dim2, dim1, has_fp16_weights=has_fp16_weights, threshold=threshold) def forward(self, x): x = self.fc1(x) x = self.fc2(x) return x def get_args(): args = MockArgs([]) args.quant_type = 'vector' args.use_8bit_training = 'full' args.clip_freq = 9999 return args def assert_all_approx_close(a, b, atol=1e-8, rtol=1e-5, count=10): idx = torch.isclose(a, b, rtol, atol) sumval = (idx==0).sum().item() if sumval > count: print(f'Too many values not close: assert {sumval} < {count}') torch.testing.assert_allclose(a, b, rtol, atol) class LinearFunction(torch.autograd.Function): @staticmethod def get_8bit_linear_trimmed(x, stochastic=False, trim_value=3.0): round_func = LinearFunction.round_stoachastic if stochastic else torch.round norm = math.sqrt(math.pi)/math.sqrt(2.0) #std = torch.abs(x).mean()*norm std = torch.std(x) max1 = std*trim_value x = x/max1*127 x = round_func(x) x[x > 127] = 127 x[x < -127] = -127 x = x/127*max1 return x def quant(x, quant_type, dim=1): if quant_type == 'linear': max1 = torch.abs(x).max().float() xq = torch.round(x/max1*127).to(torch.int8) return xq, max1 elif quant_type == 'vector': max1 = torch.amax(torch.abs(x), dim=dim, keepdim=True) xq = torch.round(x/max1*127).to(torch.int8) return xq, max1 elif quant_type == 'min-max': maxA = torch.amax(x, dim=dim, keepdim=True).float() minA = torch.amin(x, dim=dim, keepdim=True).float() scale = (maxA-minA)/2.0 xq = torch.round(127*(x-minA-scale)/scale).to(torch.int8) return xq, (minA.float(), scale.float()) else: return None def dequant(xq, S1, S2, dtype, quant_type): if quant_type == 'linear': norm = S1*S2/(127*127) # double cast needed to prevent overflows return (xq.float()*norm).to(dtype) elif quant_type == 'vector': x = xq.float() if len(xq.shape) == 2 and len(S1.shape) == 3: S1 = S1.squeeze(0) if len(xq.shape) == 2 and len(S2.shape) == 3: S2 = S2.squeeze(0) #print(x.shape, S1.shape, S2.shape) if len(S1.shape) == 2: x *= S1.t()/127 else: x *= S1/127 x *= S2/127 return x.to(dtype) else: return None def dequant_min_max(xq, A, B, SA, SB, dtype): offset = B.float().t().sum(0)*(SA[0]+SA[1]) x = xq.float() if len(xq.shape) == 2 and len(SB.shape) == 3: SB = SB.squeeze(0) if len(xq.shape) == 2 and len(SA.shape) == 3: SA = SA.squeeze(0) if len(SB.shape) == 2: x *= SB.t()/127 else: x *= SB/127 x *= SA[1]/127 x +=offset return x.to(dtype) def get_8bit_linear(x, stochastic=False): round_func = LinearFunction.round_stoachastic if stochastic else torch.round max1 = torch.abs(x).max() x = x/max1*127 x = round_func(x)/127*max1 #x = torch.round(x)/128*max1 return x @staticmethod def get_8bit_vector_wise(x, dim, stochastic=False): round_func = LinearFunction.round_stoachastic if stochastic else torch.round max1 = torch.amax(torch.abs(x), dim=dim, keepdim=True) max1[max1==0] = 1.0 x = (x*127)/max1 x = round_func(x)/127*max1 return x @staticmethod def round_stoachastic(x): sign = torch.sign(x) absx = torch.abs(x) decimal = absx-torch.floor(absx) rdm = torch.rand_like(decimal) return sign*(torch.floor(absx)+(rdm < decimal).to(x.dtype)) @staticmethod def fake_8bit_storage(w, exponent_bits): code = bnb.functional.create_dynamic_map(n=exponent_bits).to(w.device) absmax, C = bnb.functional.quantize_blockwise(w.data, code=code) out = bnb.functional.dequantize_blockwise(absmax, C, code) out = out.half() w.copy_(out) return out @staticmethod def fake_8bit_storage_quantile(w, args): code = bnb.functional.estimate_quantiles(w.data, offset=args.offset) #C = bnb.functional.quantize_no_absmax(code, w) #out = bnb.functional.dequantize_no_absmax(code, C, out=w.data) #print(out) #out = out.half() code /= torch.max(torch.abs(code)) absmax, C = bnb.functional.quantize_blockwise(w.data, code=code) out = bnb.functional.dequantize_blockwise(absmax, C, code) out = out.half() w.copy_(out) return out @staticmethod def fake_8bit_storage_stoachstic(w): rand = torch.rand(1024, device=w.device) absmax, C = bnb.functional.quantize_blockwise(w.data, rand=rand) out = bnb.functional.dequantize_blockwise(absmax, C) out = out.half() w.copy_(out) return out @staticmethod def fake_8bit_storage_with_max(w, topk=8): blocked_w = einops.rearrange(w.flatten(), '(h b) -> h b', b=256) max_val, idx = torch.sort(torch.abs(blocked_w), dim=1, descending=True) idx = idx[:, :topk] max_val = max_val[:, :topk] mask = torch.zeros_like(blocked_w) mask.scatter_(dim=1, index=idx, src=torch.ones_like(max_val)) mask = mask.bool() # 1. zero out max values # 2. quantize + dequantize # 3. write back max values # 4. copy matrix back to weight values = blocked_w[mask] blocked_w[mask] = 0 code = bnb.functional.create_dynamic_map() code = code.to(w.device) absmax, C = bnb.functional.quantize_blockwise(blocked_w.data) bnb.functional.dequantize_blockwise(absmax, C, out=blocked_w) blocked_w[mask] = values unblocked_w = blocked_w.flatten().view(w.shape) w.copy_(unblocked_w) return unblocked_w @staticmethod def forward(ctx, x, weight, bias=None, args=None): if args.use_8bit_training != 'off': weight8, S1 = LinearFunction.quant(weight, args.quant_type, dim=1) x8, S2 = LinearFunction.quant(x, args.quant_type, dim=2) outputq = bnb.functional.igemm(x8, weight8.t()) output = LinearFunction.dequant(outputq, S1, S2, x.dtype, args.quant_type) #if torch.rand(1) < 0.01: #output32 = torch.matmul(x, weight.t()) #err = torch.abs(output-output32).float() #relerr = err/(torch.abs(output32).float()+1e-8) #print(f'{err.mean().item():.4f}, {relerr.mean().item():.4f}', args.quant_type, 'forward', proxy) else: #output = torch.matmul(x, weight.t()) output = torch.einsum('bsi,oi->bso', x, weight) ctx.save_for_backward(x, weight, bias) ctx.args = args if bias is not None: output += bias.unsqueeze(0).expand_as(output) return output @staticmethod def backward(ctx, grad_output): x, weight, bias = ctx.saved_tensors args = ctx.args stochastic = False grad_input = grad_weight = grad_bias = None if bias is not None and ctx.needs_input_grad[2]: grad_bias = grad_output.sum(0) # weight and x are already 8bit # -> transform grad_output to 8-bit if args.use_8bit_training == 'forward+wgrad': grad_output8, S1 = LinearFunction.quant(grad_output, args.quant_type, dim=[0, 1]) x8, S2 = LinearFunction.quant(x, args.quant_type, dim=[0, 1]) grad_weight8 = bnb.functional.igemm(grad_output8, x8) grad_weight = LinearFunction.dequant(grad_weight8, S1, S2, grad_output.dtype, args.quant_type) #grad_weight32 = torch.einsum('bso,bsi->oi', grad_output, x) grad_input = grad_output.matmul(weight) elif args.use_8bit_training == 'full': grad_output8, S1 = LinearFunction.quant(grad_output, args.quant_type, dim=[0, 1]) x8, S2 = LinearFunction.quant(x, args.quant_type, dim=[0, 1]) grad_weight8 = torch.zeros_like(weight, dtype=torch.int32) bnb.functional.igemm(grad_output8, x8, out=grad_weight8) grad_weight = LinearFunction.dequant(grad_weight8, S1, S2, grad_output.dtype, args.quant_type) grad_output8, S1 = LinearFunction.quant(grad_output, args.quant_type, dim=2) weight8, S3 = LinearFunction.quant(weight, args.quant_type, dim=0) grad_input8 = bnb.functional.igemm(grad_output8, weight8) grad_input = LinearFunction.dequant(grad_input8, S1, S3, grad_output.dtype, args.quant_type) else: grad_input = grad_output.matmul(weight) grad_weight = torch.einsum('bsi,bso->oi', x, grad_output) return grad_input, grad_weight, grad_bias, None class Linear8bit(nn.Module): def __init__(self, input_features, output_features, bias=True, args=None): super(Linear8bit, self).__init__() self.input_features = input_features self.output_features = output_features self.args = args self.weight = nn.Parameter(torch.empty(output_features, input_features)) if bias: self.bias = nn.Parameter(torch.empty(output_features)) else: self.register_parameter('bias', None) torch.nn.init.xavier_uniform_(self.weight) if self.bias is not None: torch.nn.init.zeros_(self.bias) def forward(self, x): self.args.training = self.training return LinearFunction.apply(x, self.weight, self.bias, self.args) def test_linear8bit(): l0 = torch.nn.Linear(32, 64).cuda().half() l1 = bnb.nn.Linear8bit(32,64, args=get_args()).cuda().half() l2 = Linear8bit(32, 64, args=get_args()).cuda().half() l3 = bnb.nn.Linear8bitLt(32,64).cuda().half() l0.weight.data = l2.weight.data.clone() l0.bias.data = l2.bias.data.clone() l1.weight.data = l2.weight.data.clone() l1.bias.data = l2.bias.data.clone() l3.weight.data = l2.weight.data.clone() l3.bias.data = l2.bias.data.clone() for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() t = torch.randn(16, 8, 64, device='cuda').half() b2 = b1.clone() b3 = b1.clone() b0 = b1.clone() o0 = l0(b0) o1 = l1(b1) o2 = l2(b2) o3 = l3(b3) assert_all_approx_close(o1, o2, atol=0.013, rtol=0.05, count=1) assert_all_approx_close(o3, o2, atol=0.013, rtol=0.05, count=1) loss0 = torch.nn.functional.mse_loss(o0, t) loss1 = torch.nn.functional.mse_loss(o1, t) loss2 = torch.nn.functional.mse_loss(o2, t) loss3 = torch.nn.functional.mse_loss(o3, t) loss0.backward() loss1.backward() loss2.backward() loss3.backward() assert_all_approx_close(l1.bias.grad, l2.bias.grad, atol=0.01, rtol=0, count=2) assert_all_approx_close(l3.bias.grad, l2.bias.grad, atol=0.01, rtol=0, count=2) assert_all_approx_close(l1.weight.grad, l2.weight.grad, atol=0.013, rtol=0.05, count=2) assert_all_approx_close(l3.weight.grad, l2.weight.grad, atol=0.013, rtol=0.05, count=2) err1 = torch.abs(l0.weight.grad-l1.weight.grad).mean().item() err2 = torch.abs(l0.weight.grad-l2.weight.grad).mean().item() err3 = torch.abs(l0.weight.grad-l3.weight.grad).mean().item() assert err1*0.8 < err2 assert err2*0.8 < err3 assert err3*0.8 < err1 l0.weight.grad = None l1.weight.grad = None l2.weight.grad = None l3.weight.grad = None l0.bias.grad = None l1.bias.grad = None l2.bias.grad = None l3.bias.grad = None threshold = [0.0, 3.0] values = threshold names = ['threshold_{0}'.format(vals) for vals in values] @pytest.mark.parametrize("threshold", values, ids=names) def test_linear8bitlt_inference(threshold): l1 = bnb.nn.Linear8bitLt(32,64, threshold=threshold).cuda().half() assert l1.weight.device.type == 'cuda' assert l1.weight.dtype == torch.float16 l1.eval() for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = l1(b1) if i == 1: assert l1.state.CxB is not None def test_linear8bitlt_accumulated_gradient(): l1 = torch.nn.Sequential(*[bnb.nn.Linear8bitLt(32,32).cuda().half() for i in range(2)]) l2 = torch.nn.Sequential(*[torch.nn.Linear(32,32).cuda().half() for i in range(2)]) l2[0].weight = torch.nn.Parameter(l1[0].weight.clone()) l2[0].bias = torch.nn.Parameter(l1[0].bias.clone()) l2[1].weight = torch.nn.Parameter(l1[1].weight.clone()) l2[1].bias = torch.nn.Parameter(l1[1].bias.clone()) opt1 = bnb.optim.Adam8bit(l1.parameters(), lr=0.001) opt2 = bnb.optim.Adam8bit(l2.parameters(), lr=0.001) acc_steps = 10 for i in range(10): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = l1(b1) o2 = l2(b1) loss1 = o1.mean() loss2 = o2.mean() loss1.backward() loss2.backward() if i == 2: assert l1[0].state.CxB is not None assert l1[1].state.CxB is not None if i > 0 and i % acc_steps == 0: opt1.step() opt1.zero_grad(True) opt2.step() opt2.zero_grad(True) assert_all_approx_close(l1[0].weight, l2[0].weight, rtol=1.05, atol=0.01, count=2) assert_all_approx_close(l1[1].weight, l2[1].weight, rtol=1.05, atol=0.01, count=2) # we do this copy because otherwise we have small divergences over time that add up l1[0].weight.data.copy_(l2[0].weight.data) l1[1].weight.data.copy_(l2[1].weight.data) else: torch.testing.assert_allclose(l1[0].weight.grad, l2[0].weight.grad) torch.testing.assert_allclose(l1[1].weight.grad, l2[1].weight.grad) threshold = [0.0, 2.0] values = threshold names = ['threshold_{0}'.format(vals) for vals in values] @pytest.mark.parametrize("threshold", values, ids=names) def test_linear8bitlt_no_fp16_weights(threshold): l1 = bnb.nn.Linear8bitLt(32,64, threshold=threshold, has_fp16_weights=False).cuda().half() assert l1.weight.dtype == torch.int8 l1.eval() for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = l1(b1) assert o1.dtype == torch.float16 mlp = MLP8bit(32, 64, threshold=threshold, has_fp16_weights=False).cuda() assert mlp.fc1.weight.dtype == torch.int8 assert mlp.fc2.weight.dtype == torch.int8 for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = mlp(b1) assert o1.dtype == torch.float16 if threshold > 0: assert mlp.fc1.state.idx is not None if threshold > 0: assert mlp.fc2.state.idx is not None mlp = MLP8bit(32, 64, threshold=threshold, has_fp16_weights=False).cuda().half() assert mlp.fc1.weight.dtype == torch.int8 assert mlp.fc2.weight.dtype == torch.int8 for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = mlp(b1) assert o1.dtype == torch.float16 if threshold > 0: assert mlp.fc1.state.idx is not None if threshold > 0: assert mlp.fc2.state.idx is not None mlp = MLP8bit(32, 64, threshold=threshold, has_fp16_weights=False).half().cuda() for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = mlp(b1) assert o1.dtype == torch.float16 if threshold > 0: assert mlp.fc1.state.idx is not None if threshold > 0: assert mlp.fc2.state.idx is not None assert mlp.fc1.weight.dtype == torch.int8 assert mlp.fc2.weight.dtype == torch.int8 mlp = MLP8bit(32, 64, threshold=threshold, has_fp16_weights=False).half().to('cuda') for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = mlp(b1) assert o1.dtype == torch.float16 if threshold > 0: assert mlp.fc1.state.idx is not None if threshold > 0: assert mlp.fc2.state.idx is not None assert mlp.fc1.weight.dtype == torch.int8 assert mlp.fc2.weight.dtype == torch.int8 assert mlp.fc1.weight.device.type == 'cuda' assert mlp.fc2.weight.device.type == 'cuda' mlp = MLP8bit(32, 64, threshold=threshold, has_fp16_weights=False).to(torch.float16).to('cuda') for i in range(100): b1 = torch.randn(16, 8, 32, device='cuda').half() o1 = mlp(b1) assert o1.dtype == torch.float16 if threshold > 0: assert mlp.fc1.state.idx is not None if threshold > 0: assert mlp.fc2.state.idx is not None assert mlp.fc1.weight.dtype == torch.int8 assert mlp.fc2.weight.dtype == torch.int8 assert mlp.fc1.weight.device.type == 'cuda' assert mlp.fc2.weight.device.type == 'cuda'