| import itertools |
| import math |
|
|
| import torch |
| import torch.nn.functional as F |
|
|
| precision = { |
| torch.bfloat16: 1e-2, |
| torch.float16: 1e-3, |
| torch.float32: 1e-5, |
| } |
|
|
|
|
| BLOCK_N, BLOCK_K = 64, 128 |
| factor_for_scale = 1e-3 |
| fp8_max, fp8_min = 400, -400 |
|
|
|
|
| def parametrize(**params): |
| def decorator(func): |
| def wrapper(self): |
| for combo in itertools.product(*params.values()): |
| kwargs = dict(zip(params.keys(), combo)) |
| with self.subTest(**kwargs): |
| func(self, **kwargs) |
|
|
| return wrapper |
|
|
| return decorator |
|
|
|
|
| def SiluAndMul(x: torch.Tensor) -> torch.Tensor: |
| d = x.shape[-1] // 2 |
| return F.silu(x[..., :d]) * x[..., d:] |
|
|
|
|
| def GeluAndMul(x: torch.Tensor, approximate="tanh") -> torch.Tensor: |
| d = x.shape[-1] // 2 |
| return F.gelu(x[..., :d], approximate=approximate) * x[..., d:] |
|
|
|
|
| def per_token_quant_int8(x): |
| x = x.float() |
| absmax = x.abs().max(dim=-1).values |
| absmax = absmax.clamp_min(1e-10).unsqueeze(-1) |
| scale_x = absmax / 127 |
| x_q = x.mul(127 / absmax) |
| x_q = torch.round(x_q).to(torch.int8) |
|
|
| return x_q, scale_x |
|
|
|
|
| def convert_weight(weight, scale_block_size, A_dtype): |
| N, K = weight.size() |
| fp8_max = 448.0 |
| scale_block_size_N, scale_block_size_K = scale_block_size |
|
|
| pad_N = (scale_block_size_N - (N % scale_block_size_N)) % scale_block_size_N |
| pad_K = (scale_block_size_K - (K % scale_block_size_K)) % scale_block_size_K |
|
|
| if pad_N > 0 or pad_K > 0: |
| weight = torch.nn.functional.pad(weight, (0, pad_K, 0, pad_N)) |
|
|
| weight_blocks = weight.view( |
| math.ceil(N / scale_block_size_N), |
| scale_block_size_N, |
| math.ceil(K / scale_block_size_K), |
| scale_block_size_K, |
| ) |
| weight_blocks = weight_blocks.permute(0, 2, 1, 3).contiguous() |
|
|
| |
| abs_max = weight_blocks.abs().amax(dim=(-2, -1), keepdim=True) |
| scales = abs_max / fp8_max |
| scales = torch.where( |
| scales == 0, torch.ones_like(scales), scales |
| ) |
|
|
| q_fp8 = (weight_blocks / scales).to(torch.float8_e4m3fn) |
| q_fp8_reshape = q_fp8.permute(0, 2, 1, 3).contiguous() |
|
|
| if pad_N > 0 or pad_K > 0: |
| q_fp8_reshape = q_fp8_reshape.view(N + pad_N, K + pad_K) |
| q_fp8_reshape = q_fp8_reshape[:N, :K].contiguous() |
| else: |
| q_fp8_reshape = q_fp8_reshape.view(N, K) |
|
|
| dq_weight = q_fp8.float() * scales |
| dq_weight = dq_weight.permute(0, 2, 1, 3).contiguous() |
|
|
| if pad_N > 0 or pad_K > 0: |
| w_dq = dq_weight.view(N + pad_N, K + pad_K).to(A_dtype) |
| w_dq = w_dq[:N, :K].contiguous() |
| else: |
| w_dq = dq_weight.view(N, K).to(A_dtype) |
|
|
| scales = scales.view( |
| math.ceil(N / scale_block_size_N), math.ceil(K / scale_block_size_K) |
| ) |
|
|
| return q_fp8_reshape, scales, w_dq |
|
|
|
|
| def native_w8a8_per_token_matmul(A, B, As, Bs, bias, output_dtype=torch.bfloat16): |
| """Matrix multiplication function that supports per-token input quantization and per-column weight quantization""" |
| A = A.to(torch.float32) |
| B = B.to(torch.float32) |
|
|
| assert A.shape[-1] == B.shape[-1], "Dimension mismatch" |
| assert B.ndim == 2 and B.is_contiguous(), "B must be a 2D contiguous tensor" |
|
|
| |
| M = A.numel() // A.shape[-1] |
| B = B.t() |
| N, K = B.shape |
| origin_C_shape = A.shape[:-1] + (K,) |
| A = A.reshape(M, N) |
|
|
| |
| C = torch.matmul(A, B) |
| C = As * C * Bs.view(1, -1) |
|
|
| if bias is not None: |
| C.add_(bias.view(1, -1)) |
|
|
| return C.reshape(origin_C_shape).to(output_dtype) |
|
|
|
|
| def torch_naive_moe(a, w1, w2, b, routed_scaling_factor): |
|
|
| ic1 = torch.matmul(a, w1.transpose(0, 1)) |
| ic2 = SiluAndMul(ic1) |
| ic3 = torch.matmul(ic2, w2.transpose(0, 1)) |
|
|
| return ic3 + b * routed_scaling_factor |
|
|
|
|
| def torch_w8a8_per_column_moe(a, w1_q, w2_q, w1_s, w2_s, b, routed_scaling_factor): |
|
|
| |
| a_q, a_s = per_token_quant_int8(a) |
|
|
| ic1 = native_w8a8_per_token_matmul( |
| a_q, w1_q, a_s, w1_s, bias=None, output_dtype=torch.float32 |
| ) |
| ic2 = SiluAndMul(ic1) |
|
|
| a1_q, a1_s = per_token_quant_int8(ic2) |
| ic3 = native_w8a8_per_token_matmul( |
| a1_q, w2_q, a1_s, w2_s, bias=None, output_dtype=torch.float32 |
| ) |
|
|
| return ic3 + b * routed_scaling_factor |
|
|
|
|
| def scaled_weight(weight, scales): |
| E, N, K = weight.shape |
| pad_N = (BLOCK_N - (N % BLOCK_N)) % BLOCK_N |
| pad_K = (BLOCK_K - (K % BLOCK_K)) % BLOCK_K |
|
|
| if pad_N > 0 or pad_K > 0: |
| weight = torch.nn.functional.pad(weight, (0, pad_K, 0, pad_N)) |
|
|
| weight_block = ( |
| weight.view(E, math.ceil(N / BLOCK_N), BLOCK_N, math.ceil(K / BLOCK_K), BLOCK_K) |
| .permute(0, 1, 3, 2, 4) |
| .float() |
| .contiguous() |
| ) |
|
|
| weight_scaled = ( |
| ( |
| weight_block |
| * scales.view(E, math.ceil(N / BLOCK_N), math.ceil(K / BLOCK_K), 1, 1) |
| ) |
| .permute(0, 1, 3, 2, 4) |
| .contiguous() |
| ) |
| if pad_N > 0 or pad_K > 0: |
| weight_scaled = weight_scaled.view(E, N + pad_N, K + pad_K) |
| weight_scaled = weight_scaled[..., :N, :K].contiguous() |
| else: |
| weight_scaled = weight_scaled.view(E, N, K) |
| return weight_scaled |
|
|
|
|
| def torch_naive_fused_moe(a, w1, w2, score, topk, renormalize): |
| B, D = a.shape |
| a = a.view(B, -1, D).repeat(1, topk, 1).reshape(-1, D) |
| out = torch.zeros(B * topk, w2.shape[1], dtype=a.dtype, device=a.device) |
| score = torch.softmax(score, dim=-1, dtype=torch.float32) |
| topk_weight, topk_ids = torch.topk(score, topk) |
|
|
| if renormalize: |
| topk_weight = topk_weight / topk_weight.sum(dim=-1, keepdim=True) |
|
|
| topk_weight = topk_weight.view(-1) |
| topk_ids = topk_ids.view(-1) |
| for i in range(w1.shape[0]): |
| mask = topk_ids == i |
| if mask.sum(): |
| out[mask] = SiluAndMul(a[mask] @ w1[i].transpose(0, 1)) @ w2[i].transpose( |
| 0, 1 |
| ) |
| return ( |
| out.view(B, -1, w2.shape[1]) * topk_weight.view(B, -1, 1).to(out.dtype) |
| ).sum(dim=1) |
|
|
|
|
| def torch_w8a8_per_column_fused_moe(a, w1, w2, w1_s, w2_s, topk_weight, topk_ids, topk): |
| """This function performs fused moe with per-column int8 quantization using native torch.""" |
|
|
| B, D = a.shape |
| |
| a_q, a_s = per_token_quant_int8(a) |
| |
| a_q = a_q.view(B, -1, D).repeat(1, topk, 1).reshape(-1, D) |
| |
| a_s = a_s.view(B, -1, 1).repeat(1, topk, 1).reshape(-1, 1) |
|
|
| out = torch.zeros(B * topk, w2.shape[1], dtype=torch.float32, device=a.device) |
|
|
| |
| topk_weight = topk_weight.view(-1) |
| topk_ids = topk_ids.view(-1) |
| |
| for i in range(w1.shape[0]): |
| mask = topk_ids == i |
| if mask.sum(): |
| |
| inter_out = native_w8a8_per_token_matmul( |
| a_q[mask], |
| w1[i], |
| a_s[mask], |
| w1_s[i], |
| bias=None, |
| output_dtype=torch.float32, |
| ) |
| |
| act_out = SiluAndMul(inter_out) |
| |
| act_out_q, act_out_s = per_token_quant_int8(act_out) |
| |
| out[mask] = native_w8a8_per_token_matmul( |
| act_out_q, |
| w2[i], |
| act_out_s, |
| w2_s[i], |
| bias=None, |
| output_dtype=torch.float32, |
| ) |
| |
| return ( |
| (out.view(B, -1, w2.shape[1]) * topk_weight.view(B, -1, 1).to(out.dtype)) |
| .sum(dim=1) |
| .to(a.dtype) |
| ) |
|
|
|
|
| def native_fp8_fused_moe(a, w1, w2, topk_weight, topk_ids, topk): |
| B, D = a.shape |
| a = a.view(B, -1, D).repeat(1, topk, 1).reshape(-1, D).float() |
| out = torch.zeros(B * topk, w2.shape[1], dtype=torch.float32, device=a.device) |
|
|
| |
| topk_weight = topk_weight.view(-1) |
| topk_ids = topk_ids.view(-1) |
|
|
| for i in range(w1.shape[0]): |
| mask = topk_ids == i |
| if mask.sum(): |
| ic0 = torch.matmul(a[mask], w1[i].transpose(0, 1)) |
| ic1 = SiluAndMul(ic0) |
| out[mask] = torch.matmul(ic1, w2[i].transpose(0, 1)) |
|
|
| return ( |
| (out.view(B, -1, w2.shape[1]) * topk_weight.view(B, -1, 1).to(out.dtype)) |
| .sum(dim=1) |
| .to(a.dtype) |
| ) |
|
|
|
|
| def make_non_contiguous(x: torch.Tensor) -> torch.Tensor: |
| """ |
| Make a tensor non-contiguous by slicing it via last dimension. |
| """ |
| last_dim = x.shape[-1] |
| return x[..., : last_dim // 2] if x.is_contiguous() else x |
|
|
|
|
| def awq_reverse_reorder_int_tensor(int_tensor, bits: int): |
| assert bits == 4 |
|
|
| int_tensor = int_tensor.T.contiguous() |
| compress_ratio = 32 // bits |
| assert int_tensor.shape[-1] % compress_ratio == 0 |
|
|
| order_map = [0, 2, 4, 6, 1, 3, 5, 7] |
| order_tensor = torch.tensor( |
| order_map, dtype=torch.int32, device=int_tensor.device |
| ).reshape(1, -1) |
| order_tensor = order_tensor.repeat(int_tensor.shape[1] // compress_ratio, 1) |
| order_tensor = order_tensor + torch.arange( |
| 0, |
| int_tensor.shape[1], |
| compress_ratio, |
| dtype=torch.int32, |
| device=int_tensor.device, |
| ).reshape(-1, 1) |
| order_tensor = order_tensor.reshape(-1) |
|
|
| reverse_order_tensor = torch.arange(order_tensor.shape[0])[order_tensor] |
| reverse_order_tensor = reverse_order_tensor[order_tensor] |
| int_tensor = int_tensor[:, reverse_order_tensor] |
| return int_tensor |
|
|
|
|
| def unpack_and_dequant_awq( |
| awq_qweight: torch.Tensor, |
| awq_qzeros: torch.Tensor, |
| awq_scales: torch.Tensor, |
| bits: int, |
| group_size: int, |
| ): |
| """ |
| Args: |
| awq_qweight (`torch.LongTensor`): |
| Expected shape: (in_features, out_features // (32 // bits)) |
| awq_qzeros (`torch.LongTensor`): |
| Expected shape: (in_features // group_size, out_features // (32 // bits)) |
| awq_scales (`torch.LongTensor`): |
| Expected shape: (in_features // group_size, out_features) |
| |
| Returns: |
| fp16_weight (`torch.LongTensor`): |
| With shape (in_features, out_features). |
| zeros (`torch.LongTensor`): |
| With shape (in_features // group_size, out_features). |
| """ |
| assert bits == 4 |
|
|
| qzeros = awq_qzeros |
| qweight = awq_qweight |
| qweight = qweight.T.contiguous() |
|
|
| scales = awq_scales |
| scales = scales.reshape(-1, 1, scales.shape[-1]) |
|
|
| infeatures = awq_qweight.shape[0] |
|
|
| wf = torch.tensor( |
| list(range(0, 32, bits)), dtype=torch.int32, device=qzeros.device |
| ).unsqueeze(0) |
| zeros = torch.bitwise_right_shift(torch.unsqueeze(qzeros, 2), wf.unsqueeze(0)).to( |
| torch.int16 if bits == 8 else torch.int8 |
| ) |
|
|
| torch.bitwise_and(zeros, (2**bits) - 1, out=zeros) |
|
|
| zeros = zeros.reshape(-1, 1, zeros.shape[1] * zeros.shape[2]) |
|
|
| weight = torch.bitwise_right_shift( |
| torch.unsqueeze(qweight, 1), wf.unsqueeze(-1) |
| ).to(torch.int16 if bits == 8 else torch.int8) |
| torch.bitwise_and(weight, (2**bits) - 1, out=weight) |
| weight = weight.reshape(-1, group_size, weight.shape[2]) |
|
|
| weight = weight.view(-1, weight.shape[-1]) |
| zeros = zeros.view(-1, zeros.shape[-1]) |
|
|
| zeros = zeros.T.contiguous() |
| zeros = awq_reverse_reorder_int_tensor(zeros, bits) |
| weight = awq_reverse_reorder_int_tensor(weight, bits) |
|
|
| |
| scales = awq_scales |
| zeros = zeros.contiguous() |
| scale_zeros = zeros * scales |
|
|
| g_idx = torch.tensor( |
| [i // group_size for i in range(infeatures)], dtype=torch.int32 |
| ) |
| scale_mat = scales[g_idx] |
| scale_zeros_mat = scale_zeros[g_idx].to(torch.bfloat16) |
|
|
| qdq_weight_T = weight * scale_mat - scale_zeros_mat.to(torch.bfloat16) |
|
|
| fp16_weight = qdq_weight_T.T |
|
|
| return fp16_weight, zeros |
|
|