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Kohya-ss-sd-scripts/library/adan_fused.py

219 lines
7.9 KiB
Python

import math
import torch
from library.adafactor_fused import copy_stochastic_
from library.adafactor_fused import copy_kahan_
# Pack floating point tensors into uint16. Their float32 bytes are interpreted as uint32
# bytes (not cast to uint32). Since positive floats are in sequential order when interpreted
# as uint32s, the groups of positive and negative floats appear as small ranges in uint32
# format. The three clumps (negative floats, zeros, postive floats) then have their min/max
# positions noted, and stretched to cover a uint16 range.
def pack_tensor(state, key, support_neg):
k = state[f'{key}']
k_uint32_f = torch.abs(k).view(torch.uint32).to(torch.float32)
min_val, max_val = torch.aminmax(k_uint32_f[k_uint32_f != 0.0])
# No support_neg (i.e. input floats are only zero or positive). Outputs values in these uint16 ranges:
# 0 <-- 0.0s
# 1..65535 <-- positive floats
# support_neg (i.e. input floats can be zero or +/-). Outputs values in these uint16 ranges:
# 0 <-- 0.0s
# 1..32767 <-- positive floats
# 32768 <-- -0.0 ? Not used.
# 32769..65535 <-- negative floats
range = 32768 if support_neg else 65536
k_int32_scale = (k_uint32_f - min_val) * (range - 2) / (max_val - min_val) + 1 # Scale into [1..range]
packed = torch.where(k > 0, k_int32_scale, 0) # Positive floats and zero
if support_neg:
packed = torch.where(k < 0, k_int32_scale + 32768, packed) # Negative floats
del k_int32_scale
k_uint16_scale = packed.to(torch.uint16)
state[f'{key}'] = k_uint16_scale
state[f'{key}_min'] = min_val
state[f'{key}_max'] = max_val
pass
# Recover adan state tensors packed wtih pack_tensor()
def unpack_tensor(state, key, support_neg):
# uint16 format = packed floats
if state[f'{key}'].dtype == torch.uint16:
packed = state[f'{key}'].to('cuda').to(dtype=torch.float32)
min_val = state[f'{key}_min']
max_val = state[f'{key}_max']
range = 32768.0 if support_neg else 65536.0
if support_neg:
pack_merge_signs = torch.where(packed >= 32768, packed - 32768, packed)
else:
pack_merge_signs = packed
upck = (pack_merge_signs - 1) / (range - 2) * (max_val - min_val) + min_val
upck = torch.where(pack_merge_signs == 0, 0, upck) # 0's are special cased
upck = upck.to(torch.uint32)
upck_final_but_no_negs = upck.view(torch.float32)
if support_neg:
upck_final = torch.where(packed >= 32768, -upck_final_but_no_negs, upck_final_but_no_negs)
else:
upck_final = upck_final_but_no_negs
return upck_final
# bf16 / f32
return state[f'{key}'].to('cuda').to(dtype=torch.float32)
@torch.no_grad()
def adan_offload_step_param(self, p, group):
if p.grad is None:
return
grad = p.grad
if grad.dtype in {torch.float16, torch.bfloat16}:
grad = grad.float()
if grad.is_sparse:
raise RuntimeError("This Adan implementation does not support sparse gradients.")
state = self.state[p]
grad_shape = grad.shape
p_data_fp32 = p
if p.dtype in {torch.float16, torch.bfloat16}:
p_data_fp32 = p_data_fp32.float()
# Tensors with few elements may be more sensitive to quantization
# errors, so keep them in float32
#global tot_4096, tot_all
high_quality = torch.numel(p) <= 2000000
# State Initialization
if len(state) == 0:
state["step"] = 0
state['exp_avg'] = torch.zeros_like(p, dtype=torch.float32 if high_quality else torch.bfloat16)
state['exp_avg_sq'] = torch.zeros_like(p, dtype=torch.float32 if high_quality else torch.bfloat16)
state['exp_avg_diff'] = torch.zeros_like(p, dtype=torch.float32 if high_quality else torch.bfloat16)
state['neg_grad_or_diff'] = torch.zeros_like(p, dtype=torch.float32 if high_quality else torch.bfloat16)
else:
pass
state["step"] += 1
#beta1, beta2, beta3 = group['betas'] # Don't have custom class, so beta3 not available
beta1, beta2, beta3 = (0.98, 0.92, 0.99) # Hard coded betas for now
eps = group['eps'] # 1e-8
weight_decay = group.get('weight_decay', 0.0) # Not currently implemented
# Bias correction terms
bias_correction1 = 1.0 - math.pow(beta1, state['step'])
bias_correction2 = 1.0 - math.pow(beta2, state['step'])
bias_correction3 = 1.0 - math.pow(beta3, state['step'])
bias_correction3_sqrt = math.sqrt(bias_correction3)
eps_p2: float = math.pow(eps, 2)
# Recover the exp avg states from however they're stored
state['exp_avg'] = unpack_tensor(state, 'exp_avg', True)
state['exp_avg_sq'] = unpack_tensor(state, 'exp_avg_sq', False)
state['exp_avg_diff'] = unpack_tensor(state, 'exp_avg_diff', True)
state['neg_grad_or_diff'] = unpack_tensor(state, 'neg_grad_or_diff', True)
exp_avg = state['exp_avg']
exp_avg_sq = state['exp_avg_sq']
exp_avg_diff = state['exp_avg_diff']
neg_grad_or_diff = state['neg_grad_or_diff']
# for memory saving, we use `neg_grad_or_diff`
# to get some temp variable in a inplace way
neg_grad_or_diff.add_(grad)
exp_avg .mul_(beta1).add_(grad, alpha= 1 - beta1) # m_t
exp_avg_diff.mul_(beta2).add_(neg_grad_or_diff, alpha= 1 - beta2) # diff_t
neg_grad_or_diff.mul_(beta2).add_(grad)
exp_avg_sq .mul_(beta3).addcmul_(neg_grad_or_diff, neg_grad_or_diff, value= 1 - beta3) # n_t
lr: float = group['lr']
denom = (exp_avg_sq.sqrt() / bias_correction3_sqrt).add_(eps)
step_size = lr / bias_correction1
step_size_diff = lr * beta2 / bias_correction2
# todo: weight decay not supported
update = (exp_avg * step_size ) / denom
update += (exp_avg_diff * step_size_diff) / denom
neg_grad_or_diff.zero_().add_(grad, alpha=-1.0)
# Just build momentum for first few steps
if state['step'] <= 3:
update.mul_(0.0)
# Move the optimizer state tensors to main memory
if not high_quality:
# float32 to uint16 compression, hopefully provides more precision
pack_tensor(state, 'exp_avg', True)
pack_tensor(state, 'exp_avg_sq', False) # Only positive floats
pack_tensor(state, 'exp_avg_diff', True)
state[f'exp_avg'] = state[f'exp_avg'] .to('cpu')
state[f'exp_avg_sq'] = state[f'exp_avg_sq'] .to('cpu')
state[f'exp_avg_diff'] = state[f'exp_avg_diff'].to('cpu')
# Neg_grad is always a bfloat16 (stored in a float32) already apparently! So
# can be stored as a bfloat16 exactly.
state[f'neg_grad_or_diff'] = state[f'neg_grad_or_diff'].to(torch.bfloat16).to('cpu')
# Add on gradient update, but not if using kahan summation as the bottom
# bits must be restored first. (This update occurs in copy_kahan_() instead)
if not self.optimizer.use_kahan_summation:
p_data_fp32.add_(-update)
if p.dtype == torch.bfloat16:
if self.optimizer.use_kahan_summation:
copy_kahan_(p, p_data_fp32, state, update)
else:
copy_stochastic_(p, p_data_fp32)
elif p.dtype == torch.float16:
p.copy_(p_data_fp32)
@torch.no_grad()
def adan_offload_step(self, closure=None):
"""
Performs a single optimization step
Arguments:
closure (callable, optional): A closure that reevaluates the model
and returns the loss.
"""
loss = None
if closure is not None:
loss = closure()
for group in self.param_groups:
for p in group["params"]:
adan_offload_step_param(self, p, group)
return loss
def patch_adan_offload_fused(optimizer, use_nesterov):
optimizer.use_nesterov = use_nesterov
optimizer.step_param = adan_offload_step_param.__get__(optimizer)
optimizer.step = adan_offload_step.__get__(optimizer)