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4 Commits

Author SHA1 Message Date
k
8d8fb8c212 experimental "lin" blocks insted of attention sparely 2026-02-27 09:13:24 -05:00
k
89c9d01cb8 More training with less heads 2026-02-27 09:13:01 -05:00
k
dc231ae703 fixed bos token being prepended twice 2026-02-27 09:11:33 -05:00
k
a0cd98876c added gitignore 2026-01-13 21:11:32 -05:00
4 changed files with 29 additions and 21 deletions

2
.gitignore vendored Normal file
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@@ -0,0 +1,2 @@
*.safetensors
*.csv

17
data.py
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@@ -18,27 +18,26 @@ def dataWorker(q, dataset, encoding, batch_size, block_size,chat):
batch_x, batch_y = [], [] batch_x, batch_y = [], []
while True: while True:
for text in dataset: for text in dataset:
tokens = None tokens = []
if(chat): if(chat):
txt=""
for msg in text['messages']: for msg in text['messages']:
role = msg['role'] role = msg['role']
content = msg['content'] content = msg['content']
txt = txt + f"<|{role}|>{content}<|end|>" txt = f"<|{role}|>{content}<|end|> "
tokens = [encoding.bos_token_id]+encoding.encode(txt) tokens += encoding.encode(txt) + [encoding.eos_token_id]
else: else:
tokens = [encoding.bos_token_id]+encoding.encode(text["text"]) tokens = encoding.encode(text["text"])
for i in range(0, len(tokens)-block_size+1,block_size): for i in range(0, len(tokens)-block_size+1,block_size):
x = tokens[i:i+block_size] x = tokens[i:i+block_size]
y = tokens[i+1:i+block_size+1] y = tokens[i+1:i+block_size+1]
if len(x) < block_size: if len(x) < block_size:
pad = len(x)-(block_size-1) pad = len(x)-(block_size)
x = x + [encoding.eos_token_id] + [encoding.pad_token_id] * pad x = x + [encoding.eos_token_id] * pad
if len(y) < block_size: if len(y) < block_size:
pad = len(y)-(block_size-1) pad = len(y)-(block_size)
y = y + [encoding.eos_token_id] + [encoding.pad_token_id] * pad y = y + [encoding.eos_token_id] * pad
batch_x.append(x) batch_x.append(x)
batch_y.append(y) batch_y.append(y)

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@@ -1,12 +1,13 @@
from tinygrad import Tensor,nn,TinyJit from tinygrad import Tensor,nn,TinyJit
class MultiHeadAttention: class MultiHeadAttention:
def __init__(self,embed_size,n_heads): def __init__(self,embed_size,n_heads,lin):
assert embed_size % n_heads == 0 assert embed_size % n_heads == 0
self.head_size = embed_size//n_heads self.head_size = embed_size//n_heads
self.n_heads = n_heads self.n_heads = n_heads
self.qkv = nn.Linear(embed_size, embed_size*3,bias=False) self.qkv = nn.Linear(embed_size, embed_size*3,bias=False)
self.projection = nn.Linear(embed_size, embed_size,bias=False) self.projection = nn.Linear(embed_size, embed_size,bias=False)
self.lin = lin
def __call__(self,x): def __call__(self,x):
B,T,C=x.shape B,T,C=x.shape
@@ -15,10 +16,16 @@ class MultiHeadAttention:
k = k.view(B, T, self.n_heads, self.head_size).transpose(1, 2) k = k.view(B, T, self.n_heads, self.head_size).transpose(1, 2)
v = v.view(B, T, self.n_heads, self.head_size).transpose(1, 2) v = v.view(B, T, self.n_heads, self.head_size).transpose(1, 2)
#B H T S #B H T S
#TODO attention free transformer
out = q.scaled_dot_product_attention(k,v,is_causal=True,dropout_p=0.01) out = None
if self.lin:
q = q.sigmoid()
k = k.sigmoid()
out = ((q*k).exp()/(q*k)) * v
else:
out = q.scaled_dot_product_attention(k,v,is_causal=True)
out = out.transpose(1,2).view(B,T,C) out = out.transpose(1,2).view(B,T,C)
return self.projection(out) return self.projection(out)
def cast(self,dtype): def cast(self,dtype):
self.qkv.weight = self.qkv.weight.cast(dtype) self.qkv.weight = self.qkv.weight.cast(dtype)
@@ -43,8 +50,8 @@ class FeedForwardNetwork:
return self return self
class Block: class Block:
def __init__(self,embed_size,n_heads): def __init__(self,embed_size,n_heads,lin):
self.mha = MultiHeadAttention(embed_size,n_heads) self.mha = MultiHeadAttention(embed_size,n_heads,lin)
self.ffn = FeedForwardNetwork(embed_size) self.ffn = FeedForwardNetwork(embed_size)
self.mhaNorm = nn.RMSNorm(embed_size) self.mhaNorm = nn.RMSNorm(embed_size)
self.ffnNorm = nn.RMSNorm(embed_size) self.ffnNorm = nn.RMSNorm(embed_size)
@@ -61,9 +68,9 @@ class Transformer():
def __init__(self,vocab_size,embed_size,n_heads,n_blocks,block_size): def __init__(self,vocab_size,embed_size,n_heads,n_blocks,block_size):
self.tok_embed = nn.Embedding(vocab_size,embed_size) self.tok_embed = nn.Embedding(vocab_size,embed_size)
self.pos_embed = nn.Embedding(block_size,embed_size) self.pos_embed = nn.Embedding(block_size,embed_size)
self.pos_idx = Tensor.arange(block_size, requires_grad=False) self.pos_idx = Tensor.arange(block_size, requires_grad=False).sin()
self.blocks = [Block(embed_size,n_heads) for _ in range(n_blocks)] self.blocks = [Block(embed_size,n_heads,i%4==0) for i in range(n_blocks)]
self.norm = nn.RMSNorm(embed_size) self.norm = nn.RMSNorm(embed_size)
self.output = nn.Linear(embed_size,vocab_size,bias=False) self.output = nn.Linear(embed_size,vocab_size,bias=False)
def __call__(self,x): def __call__(self,x):

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@@ -12,20 +12,20 @@ import sys
hypr = { hypr = {
"embed_size": 768, "embed_size": 768,
"n_heads": 12, "n_heads": 8,
"n_blocks": 12, "n_blocks": 12,
"block_size": 512, "block_size": 512,
"batch_size": 8, "batch_size": 8,
"starting_lr": 6e-4, "starting_lr": 6e-4,
"minimum_lr": 6e-5, "minimum_lr": 6e-5,
"warmup": 1_000, "warmup": 5_000,
"steps": 20_000, "steps": 535_000,
"encoding": "gpt2", "encoding": "TinyLlama/TinyLlama_v1.1",
"dataset": "HuggingFaceTB/smollm-corpus", "dataset": "HuggingFaceTB/smollm-corpus",
"subset": "cosmopedia-v2", "subset": "cosmopedia-v2",
"chat_dataset": "HuggingFaceTB/smoltalk", "chat_dataset": "HuggingFaceTB/smoltalk",
"chat_subset": "all", "chat_subset": "all",
"half": False, "half": True,
} }
print(Device.DEFAULT) print(Device.DEFAULT)