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import math
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from typing import Union
from tinygrad import Tensor, nn, dtypes
from tinygrad.helpers import prod, argfix
# rejection sampling truncated randn
def rand_truncn(*shape, dtype=None, truncstds=2, **kwargs) -> Tensor:
CNT=8
x = Tensor.randn(*(*shape, CNT), dtype=dtype, **kwargs)
ctr = Tensor.arange(CNT).reshape((1,) * len(x.shape[:-1]) + (CNT,)).expand(x.shape)
take = (x.abs() <= truncstds).where(ctr, CNT).min(axis=-1, keepdim=True) # set to 0 if no good samples
return (ctr == take).where(x, 0).sum(axis=-1)
# https://github.com/keras-team/keras/blob/v2.15.0/keras/initializers/initializers.py#L1026-L1065
def he_normal(*shape, a: float = 0.00, **kwargs) -> Tensor:
std = math.sqrt(2.0 / (1 + a ** 2)) / math.sqrt(prod(argfix(*shape)[1:])) / 0.87962566103423978
return std * rand_truncn(*shape, **kwargs)
class Conv2dHeNormal(nn.Conv2d):
def __init__(self, in_channels, out_channels, kernel_size, stride=1, padding=0, dilation=1, groups=1, bias=True):
super().__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias)
self.in_channels, self.out_channels = in_channels, out_channels # for testing
self.weight = he_normal(out_channels, in_channels//groups, *self.kernel_size, a=0.0, dtype=dtypes.float32)
if bias: self.bias = self.bias.cast(dtypes.float32)
def __call__(self, x: Tensor):
return x.conv2d(self.weight.cast(dtypes.default_float), self.bias.cast(dtypes.default_float) if self.bias is not None else None,
padding=self.padding, stride=self.stride, dilation=self.dilation, groups=self.groups)
class Linear(nn.Linear):
def __init__(self, in_features, out_features, bias=True):
super().__init__(in_features, out_features, bias=bias)
self.weight = Tensor.normal((out_features, in_features), mean=0.0, std=0.01, dtype=dtypes.float32)
if bias: self.bias = Tensor.zeros(out_features, dtype=dtypes.float32)
def __call__(self, x:Tensor):
return x.linear(self.weight.cast(dtypes.default_float).transpose(), self.bias.cast(dtypes.default_float) if self.bias is not None else None)
class LinearBert(nn.Linear):
def __init__(self, in_features, out_features, bias=True, std=0.02):
self.weight = std * rand_truncn(out_features, in_features, dtype=dtypes.float32)
self.bias = Tensor.zeros(out_features, dtype=dtypes.float32) if bias else None
def __call__(self, x:Tensor):
return x.cast(dtypes.default_float).linear(self.weight.cast(dtypes.default_float).transpose(), self.bias.cast(dtypes.default_float) if self.bias is not None else None)
class EmbeddingBert(nn.Embedding):
def __init__(self, vocab_size:int, embed_size:int, std=0.02):
self.vocab_sz, self.embed_sz = vocab_size, embed_size
self.weight = std * rand_truncn(vocab_size, embed_size, dtype=dtypes.float32)
def __call__(self, idx:Tensor) -> Tensor:
if idx.numel() == 0: return Tensor.empty(idx.shape+(self.embed_sz,), dtype=self.weight.dtype, device=self.weight.device)
arange_shp, weight_shp, big_shp = (1, 1, self.vocab_sz, 1), (1, 1, self.vocab_sz, self.embed_sz), idx.shape+(self.vocab_sz, self.embed_sz,)
if not hasattr(self, 'arange'): self.arange = Tensor.arange(self.vocab_sz, requires_grad=False, device=self.weight.device).reshape(arange_shp)
arange, idx, vals = self.arange.expand(big_shp), idx.reshape(idx.shape+(1, 1,)).expand(big_shp), self.weight.cast(dtypes.default_float).reshape(weight_shp).expand(big_shp)
# TODO: contiguous() here because the embedding dropout creates different asts on each device, and search becomes very slow.
# Should fix with fixing random ast on multi device, and fuse arange to make embedding fast.
return (arange == idx).mul(vals).sum(2, dtype=vals.dtype).contiguous()
class LayerNormBert:
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def __init__(self, normalized_shape:Union[int, tuple[int, ...]], eps:float=1e-12, elementwise_affine:bool=True):
self.normalized_shape = (normalized_shape,) if isinstance(normalized_shape, int) else tuple(normalized_shape)
self.axis, self.eps, self.elementwise_affine = tuple(-1-i for i in range(len(self.normalized_shape))), eps, elementwise_affine
self.weight, self.bias = (Tensor.ones(*self.normalized_shape, dtype=dtypes.float32), Tensor.zeros(*self.normalized_shape, dtype=dtypes.float32)) if elementwise_affine else (None, None)
def __call__(self, x:Tensor):
assert self.normalized_shape == x.shape[-len(self.normalized_shape):], f"last dimensions of {x.shape} must match {self.normalized_shape}"
xn = x.cast(dtypes.float32).layernorm(eps=self.eps, axis=self.axis).cast(x.dtype)
if not self.elementwise_affine: return xn
return (xn * self.weight.cast(dtypes.default_float) + self.bias.cast(dtypes.default_float))
class FrozenBatchNorm2dRetinaNet(nn.BatchNorm2d):
def __init__(self, sz:int, eps=1e-5, affine=True, track_running_stats=True, momentum=0.1):
self.eps, self.track_running_stats, self.momentum = eps, track_running_stats, momentum
self.weight = Tensor.ones(sz, dtype=dtypes.float32, requires_grad=False) if affine else None
self.bias = Tensor.zeros(sz, dtype=dtypes.float32, requires_grad=False) if affine else None
if track_running_stats: self.running_mean, self.running_var = Tensor.zeros(sz, dtype=dtypes.float32, requires_grad=False), Tensor.ones(sz, dtype=dtypes.float32, requires_grad=False)
self.num_batches_tracked = Tensor.zeros(1, dtype=dtypes.long, requires_grad=False)
def __call__(self, x:Tensor) -> Tensor:
batch_mean, batch_var = super().calc_stats(x.cast(dtypes.float32))
if self.track_running_stats and Tensor.training:
self.running_mean.assign((1-self.momentum) * self.running_mean + self.momentum * batch_mean.detach().cast(self.running_mean.dtype))
self.running_var.assign((1-self.momentum) * self.running_var + self.momentum * x.numel()/(x.numel()-x.shape[1]) * batch_var.detach().cast(self.running_var.dtype))
self.num_batches_tracked += 1
return x.cast(dtypes.float32).batchnorm(self.weight, self.bias, batch_mean, batch_var.add(self.eps).rsqrt()).cast(x.dtype)
class Conv2dNormalRetinaNet(nn.Conv2d):
def __init__(self, in_channels:int, out_channels:int, kernel_size:int|tuple[int, ...],
stride:int=1, padding:int|tuple[int, ...]|str=0, dilation:int=1, groups:int=1,
bias:bool=True, prior_prob:float|None=None):
super().__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias)
self.weight = Tensor.normal(*self.weight.shape, std=0.01, dtype=dtypes.float32)
if bias:
if prior_prob:
prior_prob = Tensor(prior_prob, device=self.bias.device, dtype=dtypes.float32).expand(*self.bias.shape)
self.bias = -(((1 - prior_prob) / prior_prob).log())
else: self.bias = Tensor.zeros_like(self.bias, dtype=dtypes.float32)
def __call__(self, x:Tensor) -> Tensor:
return x.conv2d(self.weight.cast(dtypes.default_float), self.bias.cast(dtypes.default_float) if self.bias is not None else None,
groups=self.groups, stride=self.stride, padding=self.padding)
class Conv2dKaimingUniformRetinaNet(nn.Conv2d):
def __init__(self, in_channels:int, out_channels:int, kernel_size:int|tuple[int, ...],
stride:int=1, padding:int|tuple[int, ...]|str=0, dilation:int=1, groups:int=1,
bias:bool=True):
super().__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias)
self.weight = Tensor.kaiming_uniform(*self.weight.shape, a=1, dtype=dtypes.float32)
if bias: self.bias = Tensor.zeros_like(self.bias, dtype=dtypes.float32)
def __call__(self, x:Tensor) -> Tensor:
return x.conv2d(self.weight.cast(dtypes.default_float), self.bias.cast(dtypes.default_float) if self.bias is not None else None,
groups=self.groups, stride=self.stride, padding=self.padding)
class Conv2dRetinaNet(nn.Conv2d):
def __init__(self, in_channels:int, out_channels:int, kernel_size:int|tuple[int, ...],
stride:int=1, padding:int|tuple[int, ...]|str=0, dilation:int=1, groups:int=1,
bias:bool=True):
super().__init__(in_channels, out_channels, kernel_size, stride=stride, padding=padding, dilation=dilation, groups=groups, bias=bias)
scale = 1 / math.sqrt(in_channels * prod(self.kernel_size))
self.weight = Tensor.uniform(out_channels, in_channels//groups, *self.kernel_size, low=-scale, high=scale, dtype=dtypes.float32)
self.bias: Tensor|None = Tensor.uniform(out_channels, low=-scale, high=scale, dtype=dtypes.float32) if bias else None
def __call__(self, x:Tensor) -> Tensor:
return x.conv2d(self.weight.cast(dtypes.default_float), self.bias.cast(dtypes.default_float) if self.bias is not None else None,
groups=self.groups, stride=self.stride, dilation=self.dilation, padding=self.padding)