chess_EEE / model.py
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"""
Chess Transformer Model for the Chess Challenge.
This module provides a modular GPT-style transformer architecture
designed to fit within the 1M parameter constraint.
Key components:
- ChessConfig: Configuration class for model hyperparameters
- ChessForCausalLM: The main model class for next-move prediction
Modular options:
- Attention: MHA (standard), GQA (grouped query), MQA (multi-query)
- Position encoding: learned, rope (rotary), alibi
- FFN activation: gelu, swiglu
"""
from __future__ import annotations
import math
from dataclasses import dataclass
from typing import List, Optional, Tuple, Union, Literal
import torch
import torch.nn as nn
import torch.nn.functional as F
from transformers import PretrainedConfig, PreTrainedModel
try:
from transformers.generation.utils import GenerationMixin
except ImportError: # Fallback for older transformers
from transformers import GenerationMixin
from transformers.modeling_outputs import CausalLMOutputWithPast
# Type aliases for configuration options
AttentionType = Literal["mha", "gqa", "mqa"]
PositionEncoding = Literal["learned", "rope", "alibi"]
FFNType = Literal["gelu", "swiglu"]
class ChessConfig(PretrainedConfig):
"""
Configuration class for the Chess Transformer model.
This configuration is designed for a ~1M parameter model.
Students can adjust these values to explore different architectures.
Parameter budget breakdown (with default values):
- Embeddings (vocab): 1200 x 128 = 153,600
- Position Embeddings: 256 x 128 = 32,768 (0 with rope/alibi)
- Transformer Layers: 6 x ~120,000 = ~720,000
- LM Head (with weight tying): 0 (shared with embeddings)
- Total: ~906,000 parameters
Attributes:
vocab_size: Size of the vocabulary (number of unique moves).
n_embd: Embedding dimension (d_model).
n_layer: Number of transformer layers.
n_head: Number of attention heads.
n_kv_heads: Number of key-value heads (for GQA/MQA). None = same as n_head.
n_ctx: Maximum sequence length (context window).
n_inner: Feed-forward inner dimension (default: 3 * n_embd).
dropout: Dropout probability.
layer_norm_epsilon: Epsilon for layer normalization.
tie_weights: Whether to tie embedding and output weights.
attention_type: Type of attention mechanism ("mha", "gqa", "mqa").
pos_encoding: Type of position encoding ("learned", "rope", "alibi").
ffn_type: Type of FFN activation ("gelu", "swiglu").
rope_theta: Base frequency for RoPE (default 10000.0).
legal_loss_weight: Auxiliary legal-move loss weight (default 0.0).
"""
model_type = "chess_transformer"
def __init__(
self,
vocab_size: int = 1200,
n_embd: int = 128,
n_layer: int = 6,
n_head: int = 4,
n_kv_heads: Optional[int] = None,
n_ctx: int = 256,
n_inner: Optional[int] = None,
dropout: float = 0.1,
layer_norm_epsilon: float = 1e-5,
tie_weights: bool = True,
# New modular options
attention_type: AttentionType = "mha",
pos_encoding: PositionEncoding = "learned",
ffn_type: FFNType = "gelu",
rope_theta: float = 10000.0,
legal_loss_weight: float = 0.0,
# Token IDs
pad_token_id: int = 0,
bos_token_id: int = 1,
eos_token_id: int = 2,
**kwargs,
):
super().__init__(
pad_token_id=pad_token_id,
bos_token_id=bos_token_id,
eos_token_id=eos_token_id,
**kwargs,
)
self.vocab_size = vocab_size
self.n_embd = n_embd
self.n_layer = n_layer
self.n_head = n_head
self.n_ctx = n_ctx
self.n_inner = n_inner if n_inner is not None else 3 * n_embd
self.dropout = dropout
self.layer_norm_epsilon = layer_norm_epsilon
self.tie_weights = tie_weights
# Inform HF base class about tying behavior
self.tie_word_embeddings = bool(tie_weights)
# Modular architecture options
self.attention_type = attention_type
self.pos_encoding = pos_encoding
self.ffn_type = ffn_type
self.rope_theta = rope_theta
self.legal_loss_weight = legal_loss_weight
# Handle n_kv_heads based on attention type
if n_kv_heads is None:
if attention_type == "mqa":
self.n_kv_heads = 1
elif attention_type == "gqa":
# Default to n_head // 2 for GQA, but at least 1
self.n_kv_heads = max(1, n_head // 2)
else: # mha
self.n_kv_heads = n_head
else:
self.n_kv_heads = n_kv_heads
# Validation
assert n_embd % n_head == 0, f"n_embd ({n_embd}) must be divisible by n_head ({n_head})"
assert n_head % self.n_kv_heads == 0, f"n_head ({n_head}) must be divisible by n_kv_heads ({self.n_kv_heads})"
assert attention_type in ("mha", "gqa", "mqa"), f"Invalid attention_type: {attention_type}"
assert pos_encoding in ("learned", "rope", "alibi"), f"Invalid pos_encoding: {pos_encoding}"
assert ffn_type in ("gelu", "swiglu"), f"Invalid ffn_type: {ffn_type}"
# ==============================================================================
# Position Encoding Modules
# ==============================================================================
class RotaryEmbedding(nn.Module):
"""
Rotary Position Embedding (RoPE).
Applies rotary embeddings to queries and keys, encoding position
information through rotation in the complex plane. This allows
relative position information without explicit position embeddings.
Reference: https://arxiv.org/abs/2104.09864
"""
def __init__(self, dim: int, max_seq_len: int = 256, theta: float = 10000.0):
super().__init__()
self.dim = dim
self.max_seq_len = max_seq_len
self.theta = theta
# Precompute frequency bands
inv_freq = 1.0 / (theta ** (torch.arange(0, dim, 2).float() / dim))
self.register_buffer("inv_freq", inv_freq, persistent=False)
# Precompute sin/cos for all positions
self._build_cache(max_seq_len)
def _build_cache(self, seq_len: int):
"""Build sin/cos cache for given sequence length."""
positions = torch.arange(seq_len, dtype=torch.float32)
freqs = torch.outer(positions, self.inv_freq)
# Create [cos, sin] interleaved for rotation
emb = torch.cat([freqs, freqs], dim=-1)
self.register_buffer("cos_cached", emb.cos(), persistent=False)
self.register_buffer("sin_cached", emb.sin(), persistent=False)
def forward(self, x: torch.Tensor, seq_len: int) -> Tuple[torch.Tensor, torch.Tensor]:
"""Return cos and sin for the given sequence length."""
if seq_len > self.max_seq_len:
self._build_cache(seq_len)
self.max_seq_len = seq_len
return (
self.cos_cached[:seq_len].to(x.dtype),
self.sin_cached[:seq_len].to(x.dtype),
)
def rotate_half(x: torch.Tensor) -> torch.Tensor:
"""Rotate half the hidden dims of the input."""
x1 = x[..., : x.shape[-1] // 2]
x2 = x[..., x.shape[-1] // 2 :]
return torch.cat([-x2, x1], dim=-1)
def apply_rotary_pos_emb(
q: torch.Tensor,
k: torch.Tensor,
cos: torch.Tensor,
sin: torch.Tensor,
) -> Tuple[torch.Tensor, torch.Tensor]:
"""
Apply rotary position embedding to queries and keys.
Args:
q: Query tensor of shape (batch, n_heads, seq_len, head_dim)
k: Key tensor of shape (batch, n_kv_heads, seq_len, head_dim)
cos: Cosine of rotation angles
sin: Sine of rotation angles
Returns:
Rotated q and k tensors
"""
# cos/sin shape: (seq_len, head_dim) -> (1, 1, seq_len, head_dim)
cos = cos.unsqueeze(0).unsqueeze(0)
sin = sin.unsqueeze(0).unsqueeze(0)
q_embed = (q * cos) + (rotate_half(q) * sin)
k_embed = (k * cos) + (rotate_half(k) * sin)
return q_embed, k_embed
def build_alibi_slopes(n_heads: int) -> torch.Tensor:
"""
Build ALiBi slopes for attention bias.
ALiBi adds a linear bias to attention scores based on position distance.
The slope decreases geometrically for each head.
Reference: https://arxiv.org/abs/2108.12409
"""
def get_slopes_power_of_2(n: int) -> list:
start = 2 ** (-(2 ** -(math.log2(n) - 3)))
ratio = start
return [start * (ratio ** i) for i in range(n)]
if math.log2(n_heads).is_integer():
slopes = get_slopes_power_of_2(n_heads)
else:
# For non-power-of-2, use closest power of 2 and interpolate
closest_power_of_2 = 2 ** math.floor(math.log2(n_heads))
slopes = get_slopes_power_of_2(closest_power_of_2)
extra_slopes = get_slopes_power_of_2(2 * closest_power_of_2)
slopes = slopes + extra_slopes[0::2][: n_heads - closest_power_of_2]
return torch.tensor(slopes, dtype=torch.float32)
def build_alibi_bias(seq_len: int, slopes: torch.Tensor) -> torch.Tensor:
"""
Build the ALiBi attention bias matrix.
Args:
seq_len: Sequence length
slopes: ALiBi slopes tensor of shape (n_heads,)
Returns:
Bias tensor of shape (1, n_heads, seq_len, seq_len)
"""
# Create distance matrix: distance[i, j] = j - i (negative for causal)
positions = torch.arange(seq_len)
distance = positions.unsqueeze(0) - positions.unsqueeze(1) # (seq_len, seq_len)
# Apply slopes: (n_heads, 1, 1) * (seq_len, seq_len) -> (n_heads, seq_len, seq_len)
alibi = slopes.unsqueeze(1).unsqueeze(1) * distance.unsqueeze(0)
return alibi.unsqueeze(0) # (1, n_heads, seq_len, seq_len)
# ==============================================================================
# Attention Modules
# ==============================================================================
class Attention(nn.Module):
"""
Unified attention module supporting MHA, GQA, and MQA.
Supports multiple position encoding methods:
- learned: Standard learned position embeddings (handled externally)
- rope: Rotary Position Embeddings (applied to Q and K)
- alibi: Attention with Linear Biases (added to attention scores)
Architecture variants:
- MHA (Multi-Head Attention): n_kv_heads == n_head
- GQA (Grouped Query Attention): n_kv_heads < n_head, n_head % n_kv_heads == 0
- MQA (Multi-Query Attention): n_kv_heads == 1
"""
def __init__(self, config: ChessConfig):
super().__init__()
self.n_head = config.n_head
self.n_kv_heads = config.n_kv_heads
self.n_embd = config.n_embd
self.head_dim = config.n_embd // config.n_head
self.n_rep = config.n_head // config.n_kv_heads # Repetition factor for GQA/MQA
self.pos_encoding = config.pos_encoding
# Compute projection sizes
# Q: n_head * head_dim = n_embd
# K, V: n_kv_heads * head_dim (smaller for GQA/MQA)
self.q_proj = nn.Linear(config.n_embd, config.n_head * self.head_dim, bias=False)
self.k_proj = nn.Linear(config.n_embd, config.n_kv_heads * self.head_dim, bias=False)
self.v_proj = nn.Linear(config.n_embd, config.n_kv_heads * self.head_dim, bias=False)
self.c_proj = nn.Linear(config.n_embd, config.n_embd, bias=False)
self.dropout = nn.Dropout(config.dropout)
# Position encoding components
if config.pos_encoding == "rope":
self.rotary_emb = RotaryEmbedding(
dim=self.head_dim,
max_seq_len=config.n_ctx,
theta=config.rope_theta,
)
elif config.pos_encoding == "alibi":
# Precompute ALiBi slopes
slopes = build_alibi_slopes(config.n_head)
self.register_buffer("alibi_slopes", slopes, persistent=False)
# Causal mask
self.register_buffer(
"causal_mask",
torch.tril(torch.ones(config.n_ctx, config.n_ctx)).view(
1, 1, config.n_ctx, config.n_ctx
),
persistent=False,
)
def _repeat_kv(self, x: torch.Tensor) -> torch.Tensor:
"""
Repeat KV heads to match the number of query heads.
For GQA/MQA, we need to expand K and V to match Q's head count.
Input shape: (batch, n_kv_heads, seq_len, head_dim)
Output shape: (batch, n_head, seq_len, head_dim)
"""
if self.n_rep == 1:
return x
batch, n_kv_heads, seq_len, head_dim = x.shape
x = x.unsqueeze(2).expand(batch, n_kv_heads, self.n_rep, seq_len, head_dim)
return x.reshape(batch, n_kv_heads * self.n_rep, seq_len, head_dim)
def forward(
self,
x: torch.Tensor,
attention_mask: Optional[torch.Tensor] = None,
) -> torch.Tensor:
batch_size, seq_len, _ = x.size()
# Compute Q, K, V projections
q = self.q_proj(x)
k = self.k_proj(x)
v = self.v_proj(x)
# Reshape for multi-head attention
q = q.view(batch_size, seq_len, self.n_head, self.head_dim).transpose(1, 2)
k = k.view(batch_size, seq_len, self.n_kv_heads, self.head_dim).transpose(1, 2)
v = v.view(batch_size, seq_len, self.n_kv_heads, self.head_dim).transpose(1, 2)
# Apply rotary embeddings if using RoPE
if self.pos_encoding == "rope":
cos, sin = self.rotary_emb(q, seq_len)
q, k = apply_rotary_pos_emb(q, k, cos, sin)
# Repeat K and V for GQA/MQA
k = self._repeat_kv(k)
v = self._repeat_kv(v)
# Scaled dot-product attention
attn_weights = torch.matmul(q, k.transpose(-2, -1)) / math.sqrt(self.head_dim)
# Apply ALiBi bias if using ALiBi
if self.pos_encoding == "alibi":
alibi_bias = build_alibi_bias(seq_len, self.alibi_slopes.to(x.device))
attn_weights = attn_weights + alibi_bias.to(attn_weights.dtype)
# Apply causal mask
causal_mask = self.causal_mask[:, :, :seq_len, :seq_len]
attn_weights = attn_weights.masked_fill(causal_mask == 0, float("-inf"))
# Apply attention mask (for padding)
if attention_mask is not None:
attention_mask = attention_mask.unsqueeze(1).unsqueeze(2)
attn_weights = attn_weights.masked_fill(attention_mask == 0, float("-inf"))
attn_weights = F.softmax(attn_weights, dim=-1)
attn_weights = self.dropout(attn_weights)
# Apply attention to values
attn_output = torch.matmul(attn_weights, v)
# Reshape back
attn_output = attn_output.transpose(1, 2).contiguous().view(
batch_size, seq_len, self.n_embd
)
# Output projection
attn_output = self.c_proj(attn_output)
return attn_output
# Alias for backward compatibility
MultiHeadAttention = Attention
# ==============================================================================
# Feed-Forward Modules
# ==============================================================================
class FeedForward(nn.Module):
"""
Feed-forward network (MLP) module with configurable activation.
Supports:
- gelu: Standard GELU activation (2 weight matrices)
- swiglu: SwiGLU activation (3 weight matrices, better performance)
For SwiGLU, the hidden dimension is adjusted to keep parameter count similar:
- GELU: 2 * n_embd * n_inner parameters
- SwiGLU: 3 * n_embd * n_inner_swiglu parameters
To match, n_inner_swiglu = 2/3 * n_inner
"""
def __init__(self, config: ChessConfig):
super().__init__()
self.ffn_type = config.ffn_type
if config.ffn_type == "swiglu":
# SwiGLU uses 3 projections, so reduce hidden dim to compensate
# Adjust n_inner for SwiGLU to maintain similar parameter count
hidden_dim = int(2 * config.n_inner / 3)
# Round to nearest multiple of 8 for efficiency
hidden_dim = ((hidden_dim + 7) // 8) * 8
self.w1 = nn.Linear(config.n_embd, hidden_dim, bias=False) # Gate
self.w2 = nn.Linear(config.n_embd, hidden_dim, bias=False) # Up
self.w3 = nn.Linear(hidden_dim, config.n_embd, bias=False) # Down
else: # gelu
self.c_fc = nn.Linear(config.n_embd, config.n_inner)
self.c_proj = nn.Linear(config.n_inner, config.n_embd)
self.dropout = nn.Dropout(config.dropout)
def forward(self, x: torch.Tensor) -> torch.Tensor:
if self.ffn_type == "swiglu":
# SwiGLU: Swish(W1*x) * W2*x, then W3
gate = F.silu(self.w1(x)) # Swish activation
up = self.w2(x)
x = gate * up
x = self.w3(x)
x = self.dropout(x)
else: # gelu
x = self.c_fc(x)
x = F.gelu(x)
x = self.c_proj(x)
x = self.dropout(x)
return x
# ==============================================================================
# Transformer Block
# ==============================================================================
class TransformerBlock(nn.Module):
"""
A single transformer block with attention and feed-forward layers.
Uses pre-normalization (LayerNorm before attention/FFN) for better
training stability.
"""
def __init__(self, config: ChessConfig):
super().__init__()
self.ln_1 = nn.LayerNorm(config.n_embd, eps=config.layer_norm_epsilon)
self.attn = Attention(config)
self.ln_2 = nn.LayerNorm(config.n_embd, eps=config.layer_norm_epsilon)
self.mlp = FeedForward(config)
def forward(
self,
x: torch.Tensor,
attention_mask: Optional[torch.Tensor] = None,
) -> torch.Tensor:
# Pre-norm attention
x = x + self.attn(self.ln_1(x), attention_mask=attention_mask)
# Pre-norm FFN
x = x + self.mlp(self.ln_2(x))
return x
# ==============================================================================
# Main Model
# ==============================================================================
class ChessForCausalLM(PreTrainedModel, GenerationMixin):
"""
Chess Transformer for Causal Language Modeling (next-move prediction).
This model is designed to predict the next chess move given a sequence
of previous moves. It uses a modular GPT-style architecture with:
- Token embeddings for chess moves
- Configurable positional embeddings (learned/RoPE/ALiBi)
- Stacked transformer blocks with configurable attention (MHA/GQA/MQA)
- Configurable FFN activation (GELU/SwiGLU)
- Linear head for next-token prediction
The model supports weight tying between the embedding layer and the
output projection to save parameters.
Example:
>>> # Baseline configuration
>>> config = ChessConfig(vocab_size=1200, n_embd=128, n_layer=6)
>>> model = ChessForCausalLM(config)
>>> # GQA with RoPE (saves parameters, allows more layers)
>>> config = ChessConfig(
... vocab_size=1200, n_embd=128, n_layer=8,
... attention_type="gqa", n_kv_heads=2,
... pos_encoding="rope"
... )
>>> model = ChessForCausalLM(config)
"""
config_class = ChessConfig
base_model_prefix = "transformer"
supports_gradient_checkpointing = True
# Suppress missing-key warning for tied lm_head when loading
keys_to_ignore_on_load_missing = ["lm_head.weight"]
def __init__(self, config: ChessConfig):
super().__init__(config)
self.pos_encoding = config.pos_encoding
# Token embeddings (always needed)
self.wte = nn.Embedding(config.vocab_size, config.n_embd)
# Position embeddings (only for learned position encoding)
if config.pos_encoding == "learned":
self.wpe = nn.Embedding(config.n_ctx, config.n_embd)
else:
# RoPE and ALiBi don't need position embeddings
self.wpe = None
self.drop = nn.Dropout(config.dropout)
# Transformer blocks
self.h = nn.ModuleList([
TransformerBlock(config) for _ in range(config.n_layer)
])
# Final layer norm
self.ln_f = nn.LayerNorm(config.n_embd, eps=config.layer_norm_epsilon)
# Output head
self.lm_head = nn.Linear(config.n_embd, config.vocab_size, bias=False)
# Declare tied weights for proper serialization
if config.tie_weights:
self._tied_weights_keys = ["lm_head.weight"]
# Initialize weights
self.post_init()
# Tie weights if configured
if config.tie_weights:
self.tie_weights()
def get_input_embeddings(self) -> nn.Module:
return self.wte
def set_input_embeddings(self, new_embeddings: nn.Module):
self.wte = new_embeddings
if getattr(self.config, "tie_weights", False):
self.tie_weights()
def get_output_embeddings(self) -> nn.Module:
return self.lm_head
def set_output_embeddings(self, new_embeddings: nn.Module):
self.lm_head = new_embeddings
def tie_weights(self):
# Use HF helper to tie or clone depending on config
if getattr(self.config, "tie_weights", False) or getattr(self.config, "tie_word_embeddings", False):
self._tie_or_clone_weights(self.lm_head, self.wte)
def prepare_inputs_for_generation(
self,
input_ids: torch.LongTensor,
past_key_values: Optional[Tuple] = None,
attention_mask: Optional[torch.Tensor] = None,
**kwargs,
) -> dict:
# No KV-cache support; fall back to full forward each step.
if past_key_values is not None:
input_ids = input_ids[:, -1:]
return {
"input_ids": input_ids,
"attention_mask": attention_mask,
"past_key_values": past_key_values,
}
def _init_weights(self, module: nn.Module):
"""Initialize weights following GPT-2 style."""
if isinstance(module, nn.Linear):
torch.nn.init.normal_(module.weight, mean=0.0, std=0.02)
if module.bias is not None:
torch.nn.init.zeros_(module.bias)
elif isinstance(module, nn.Embedding):
torch.nn.init.normal_(module.weight, mean=0.0, std=0.02)
elif isinstance(module, nn.LayerNorm):
torch.nn.init.ones_(module.weight)
torch.nn.init.zeros_(module.bias)
def forward(
self,
input_ids: torch.LongTensor,
attention_mask: Optional[torch.Tensor] = None,
position_ids: Optional[torch.LongTensor] = None,
labels: Optional[torch.LongTensor] = None,
return_dict: Optional[bool] = None,
legal_token_ids: Optional[List[List[int]]] = None,
**kwargs,
) -> Union[Tuple, CausalLMOutputWithPast]:
"""
Forward pass of the model.
Args:
input_ids: Token IDs of shape (batch_size, seq_len).
attention_mask: Attention mask of shape (batch_size, seq_len).
position_ids: Position IDs of shape (batch_size, seq_len).
labels: Labels for language modeling loss.
return_dict: Whether to return a ModelOutput object.
Returns:
CausalLMOutputWithPast containing loss (if labels provided) and logits.
"""
return_dict = return_dict if return_dict is not None else self.config.use_return_dict
batch_size, seq_len = input_ids.size()
device = input_ids.device
# Get token embeddings
hidden_states = self.wte(input_ids)
# Add position embeddings only for learned encoding
if self.pos_encoding == "learned":
if position_ids is None:
position_ids = torch.arange(seq_len, device=device).unsqueeze(0).expand(batch_size, -1)
position_embeds = self.wpe(position_ids)
hidden_states = hidden_states + position_embeds
# Apply dropout
hidden_states = self.drop(hidden_states)
# Pass through transformer blocks
for block in self.h:
hidden_states = block(hidden_states, attention_mask=attention_mask)
# Final layer norm
hidden_states = self.ln_f(hidden_states)
# Get logits
logits = self.lm_head(hidden_states)
# Compute loss if labels are provided
loss = None
if labels is not None:
# Shift logits and labels for next-token prediction
shift_logits = logits[..., :-1, :].contiguous()
shift_labels = labels[..., 1:].contiguous()
# Flatten for cross-entropy
loss_fct = nn.CrossEntropyLoss(ignore_index=-100)
# loss_fct = nn.CrossEntropyLoss(ignore_index=self.config.pad_token_id)
loss = loss_fct(
shift_logits.view(-1, shift_logits.size(-1)),
shift_labels.view(-1),
)
if self.config.legal_loss_weight > 0 and legal_token_ids:
aux_loss = self._legal_move_loss(logits, labels, legal_token_ids)
if aux_loss is not None:
loss = loss + self.config.legal_loss_weight * aux_loss
if not return_dict:
output = (logits,)
return ((loss,) + output) if loss is not None else output
return CausalLMOutputWithPast(
loss=loss,
logits=logits,
past_key_values=None,
hidden_states=None,
attentions=None,
)
def _legal_move_loss(
self,
logits: torch.Tensor,
labels: torch.Tensor,
legal_token_ids: List[List[int]],
) -> Optional[torch.Tensor]:
batch_size = logits.size(0)
total_loss = logits.new_tensor(0.0)
count = 0
for batch_idx in range(batch_size):
if batch_idx >= len(legal_token_ids):
continue
legal_ids = legal_token_ids[batch_idx]
if not legal_ids:
continue
label_row = labels[batch_idx]
valid_mask = label_row != -100
for special_id in (
getattr(self.config, "pad_token_id", None),
getattr(self.config, "bos_token_id", None),
getattr(self.config, "eos_token_id", None),
):
if special_id is not None:
valid_mask = valid_mask & (label_row != int(special_id))
valid_positions = valid_mask.nonzero(as_tuple=False)
if valid_positions.numel() == 0:
continue
last_pos = int(valid_positions[-1].item())
pred_pos = last_pos - 1
if pred_pos < 0:
continue
logits_slice = logits[batch_idx, pred_pos]
legal_logits = logits_slice.index_select(
0,
torch.tensor(legal_ids, device=logits_slice.device, dtype=torch.long),
)
loss = torch.logsumexp(logits_slice, dim=-1) - torch.logsumexp(legal_logits, dim=-1)
total_loss = total_loss + loss
count += 1
if count == 0:
return None
return total_loss / count
@torch.no_grad()
def generate_move(
self,
input_ids: torch.LongTensor,
temperature: float = 1.0,
top_k: Optional[int] = None,
top_p: Optional[float] = None,
) -> int:
"""
Generate the next move given a sequence of moves.
Args:
input_ids: Token IDs of shape (1, seq_len).
temperature: Sampling temperature (1.0 = no change).
top_k: If set, only sample from top k tokens.
top_p: If set, use nucleus sampling with this threshold.
Returns:
The token ID of the predicted next move.
"""
self.eval()
# Get logits for the last position
outputs = self(input_ids)
logits = outputs.logits[:, -1, :] / temperature
# Apply top-k filtering
if top_k is not None:
indices_to_remove = logits < torch.topk(logits, top_k)[0][..., -1, None]
logits[indices_to_remove] = float("-inf")
# Apply top-p (nucleus) filtering
if top_p is not None:
sorted_logits, sorted_indices = torch.sort(logits, descending=True)
cumulative_probs = torch.cumsum(F.softmax(sorted_logits, dim=-1), dim=-1)
# Remove tokens with cumulative probability above the threshold
sorted_indices_to_remove = cumulative_probs > top_p
sorted_indices_to_remove[..., 1:] = sorted_indices_to_remove[..., :-1].clone()
sorted_indices_to_remove[..., 0] = 0
indices_to_remove = sorted_indices_to_remove.scatter(
dim=-1, index=sorted_indices, src=sorted_indices_to_remove
)
logits[indices_to_remove] = float("-inf")
# Sample from the distribution
probs = F.softmax(logits, dim=-1)
next_token = torch.multinomial(probs, num_samples=1)
return next_token.item()
# Register the model with Auto classes for easy loading
from transformers import AutoConfig, AutoModelForCausalLM
AutoConfig.register("chess_transformer", ChessConfig)
AutoModelForCausalLM.register(ChessConfig, ChessForCausalLM)