forward_batched(ids[B*S], batch)/loss_batched: run B equal-length sequences as ONE forward over flattened [B*S] ids, so every linear is one big [B*S,dim] GEMM. Attention reshapes to [B*nh,S,hd], runs the fused batched causal SDPA (per-seq mask + RoPE period=S, no cross-sequence attention), writes back [B*S,dim]. The old per-(batch,head) loop + host-round-tripping split/merge_heads + the additive causal_mask leaf are gone. forward(ids[seq]) is now forward_batched(ids,1), so the sampler / inference path (batch=1) is unchanged. +batched_ids_tensor helper. New batched.rs test: batched forward == looped single-sequence (logits identical 0.0, grads 6.4e-4, loss identical). PyTorch parity now exercises B>1 (B=2,S=4): loss 5e-8, logits 6.9e-6, all 25 param grads within rtol — verifying per-seq RoPE position + per-seq causal masking. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
189 lines
5.6 KiB
Python
189 lines
5.6 KiB
Python
#!/usr/bin/env python3
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"""PyTorch parity check for the xtrain tiny transformer (Phase T5).
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Loads the weights/ids dumped by tests/parity_dump.rs, rebuilds the IDENTICAL
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model in PyTorch (same x@W convention, same RoPE rotate_half + position=row,
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same RMSNorm, SwiGLU, causal mask, per-head SDPA), runs forward + one backward,
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and compares the forward logits and every parameter's gradient against the Rust
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values within a relative tolerance.
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Usage: python3 parity.py /tmp/xtrain_parity
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"""
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import sys
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import os
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import math
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import torch
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DIR = sys.argv[1] if len(sys.argv) > 1 else "/tmp/xtrain_parity"
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def read_vec(name):
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path = os.path.join(DIR, name)
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shape = None
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vals = []
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with open(path) as f:
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for line in f:
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line = line.strip()
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if line.startswith("# shape"):
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shape = [int(x) for x in line.split()[2].split(",") if x]
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elif line:
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vals.append(float(line))
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t = torch.tensor(vals, dtype=torch.float64)
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if shape:
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t = t.reshape(shape)
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return t
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def read_cfg():
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cfg = {}
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with open(os.path.join(DIR, "config.txt")) as f:
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for line in f:
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k, v = line.split()
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cfg[k] = v
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return cfg
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def read_ids(name):
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with open(os.path.join(DIR, name)) as f:
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return [int(x) for x in f.read().split()]
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cfg = read_cfg()
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DIM = int(cfg["dim"])
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NL = int(cfg["n_layers"])
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NH = int(cfg["n_heads"])
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HD = int(cfg["head_dim"])
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EPS = float(cfg["eps"])
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THETA = float(cfg["rope_theta"])
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# Batched: B sequences of length SEQ, flattened sequence-major to [B*SEQ] ids.
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B = int(cfg.get("batch", "1"))
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SEQ = int(cfg["seq"])
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ids = read_ids("ids.txt")
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targets = read_ids("targets.txt")
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assert len(ids) == B * SEQ, f"ids {len(ids)} != B*SEQ {B*SEQ}"
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# Load params as leaf tensors requiring grad (float64 for a clean reference).
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P = {}
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def load(name):
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t = read_vec(f"w_{name}.txt").clone().requires_grad_(True)
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P[name] = t
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return t
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def rms_norm(x, gamma):
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# y = x / sqrt(mean(x^2)+eps) * gamma (no mean subtraction)
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ms = x.pow(2).mean(dim=-1, keepdim=True)
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return x * torch.rsqrt(ms + EPS) * gamma
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def rope(x): # x: [B*SEQ, nh, hd], position = (row % SEQ) — resets per sequence
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half = HD // 2
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out = torch.empty_like(x)
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i = torch.arange(half, dtype=torch.float64)
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freq = THETA ** (-(2.0 * i) / HD) # [half]
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# Position within each sequence: rows 0..SEQ for seq 0, 0..SEQ for seq 1, ...
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pos = (torch.arange(B * SEQ, dtype=torch.float64) % SEQ).reshape(B * SEQ, 1)
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ang = pos * freq # [B*SEQ, half]
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c = torch.cos(ang).reshape(B * SEQ, 1, half)
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s = torch.sin(ang).reshape(B * SEQ, 1, half)
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x0 = x[..., :half]
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x1 = x[..., half:]
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out[..., :half] = x0 * c - x1 * s
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out[..., half:] = x1 * c + x0 * s
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return out
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emb = load("embed")
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final_norm = load("final_norm")
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lm_head = load("lm_head")
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layers = []
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for l in range(NL):
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layers.append({p: load(f"l{l}_{p}") for p in
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["attn_norm", "wq", "wk", "wv", "q_norm", "k_norm", "wo",
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"ffn_norm", "w_gate", "w_up", "w_down"]})
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idx = torch.tensor(ids, dtype=torch.long)
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# Per-sequence causal mask (broadcast over the batch); NO cross-sequence attention.
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mask = torch.triu(torch.full((SEQ, SEQ), -1.0e9, dtype=torch.float64), diagonal=1)
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h = emb[idx] # [B*SEQ, dim] (everything stays flattened, matching the Rust path)
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for L in layers:
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# Attention
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x = rms_norm(h, L["attn_norm"])
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q = (x @ L["wq"]).reshape(B * SEQ, NH, HD)
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k = (x @ L["wk"]).reshape(B * SEQ, NH, HD)
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v = (x @ L["wv"]).reshape(B * SEQ, NH, HD)
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# Per-head QK-norm (Qwen3-style), before RoPE.
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q = rms_norm(q, L["q_norm"])
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k = rms_norm(k, L["k_norm"])
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q = rope(q) # [B*SEQ, nh, hd]
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k = rope(k)
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# Reshape to [B, NH, SEQ, HD] so attention runs within each sequence.
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q = q.reshape(B, SEQ, NH, HD).transpose(1, 2) # [B, nh, seq, hd]
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k = k.reshape(B, SEQ, NH, HD).transpose(1, 2)
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v = v.reshape(B, SEQ, NH, HD).transpose(1, 2)
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scale = 1.0 / math.sqrt(HD)
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scores = (q @ k.transpose(-1, -2)) * scale + mask # [B, nh, seq, seq]
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probs = torch.softmax(scores, dim=-1)
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out = probs @ v # [B, nh, seq, hd]
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out = out.transpose(1, 2).reshape(B * SEQ, DIM) # [B*SEQ, dim]
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attn = out @ L["wo"]
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h = h + attn
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# MLP
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x = rms_norm(h, L["ffn_norm"])
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gate = x @ L["w_gate"]
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up = x @ L["w_up"]
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act = torch.nn.functional.silu(gate) * up
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mlp = act @ L["w_down"]
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h = h + mlp
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h = rms_norm(h, final_norm)
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logits = h @ lm_head # [B*SEQ, vocab]
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loss = torch.nn.functional.cross_entropy(
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logits, torch.tensor(targets, dtype=torch.long), reduction="mean")
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loss_val = loss.item()
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loss.backward()
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# ---- Compare ----
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def relerr(a, b):
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a = a.double()
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b = b.double()
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denom = b.abs().clamp(min=1e-6)
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return ((a - b).abs() / denom).max().item()
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ref_logits = read_vec("logits.txt")
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ref_loss = read_vec("loss.txt").item()
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print(f"loss: rust={ref_loss:.6e} torch={loss_val:.6e} "
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f"relerr={abs(loss_val-ref_loss)/max(abs(ref_loss),1e-6):.2e}")
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le = relerr(logits.detach(), ref_logits)
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print(f"logits: max relerr = {le:.2e}")
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RTOL = 2e-2
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worst = le
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worst_name = "logits"
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fails = []
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if le > RTOL:
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fails.append(("logits", le))
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for name, t in P.items():
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ref_g = read_vec(f"g_{name}.txt")
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ge = relerr(t.grad, ref_g)
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if ge > worst:
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worst, worst_name = ge, f"grad[{name}]"
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if ge > RTOL:
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fails.append((f"grad[{name}]", ge))
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print(f"params checked: {len(P)} worst = {worst_name} @ {worst:.2e} (rtol={RTOL})")
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if fails:
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print("FAIL:")
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for n, e in fails:
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print(f" {n}: relerr={e:.3e}")
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sys.exit(1)
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print("PARITY OK: forward logits + all param grads within rtol")
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