AGILLM-M2 / 5ap1.py
OpenTransformer's picture
Upload 11 files
e6ad93f verified
#!/usr/bin/env python3
# 5L.py β€” joint AR+NAT+SAT trainer/decoder (Qwen3 tokenizer)
# Robust fresh-start, ignores *.pt.tmp, AMP dtype auto, OOM backoff, progressive block growth.
# Added: repetition/presence/frequency penalties, top-k/top-p/min-p, greedy, no-repeat-ngrams.
# Fixes: SAT multinomial shape; checkpoint loads on CPU; cfg fallback if ckpt missing cfg.
# UPDATE: time-based checkpointing only (monotonic), no step-based saving. Resume respects interval.
from __future__ import annotations
import argparse, json, math, pathlib, random, time, os
from contextlib import nullcontext
from typing import Dict, Any, List, Optional, Tuple
import torch
import torch.nn as nn
import torch.nn.functional as F
from datasets import load_dataset
from transformers import AutoTokenizer, logging as hf_log
from tqdm.auto import tqdm
# ───────────────────────── Globals ─────────────────────────
hf_log.set_verbosity_error()
DEV = torch.device("cuda" if torch.cuda.is_available() else "cpu")
torch.backends.cuda.matmul.allow_tf32 = True
try:
torch.set_float32_matmul_precision("high")
except Exception:
pass
# Use the Qwen3 tokenizer (can override with env TOKENIZER_ID if needed)
TOKENIZER_ID = os.environ.get(
"TOKENIZER_ID",
"Qwen/Qwen3-235B-A22B-Thinking-2507"
)
# Some Qwen tokenizers require trust_remote_code
tok = AutoTokenizer.from_pretrained(TOKENIZER_ID, use_fast=True, trust_remote_code=True)
if tok.pad_token is None:
tok.add_special_tokens({"pad_token": "[PAD]"})
VOCAB, BLANK, EOS = (
max(tok.get_vocab().values()) + 1, # allow new [PAD] if appended
tok.pad_token_id,
tok.eos_token_id if tok.eos_token_id is not None else tok.sep_token_id
)
PRESETS: Dict[str, Dict[str, int]] = {
"small": dict(d=512, layers=8, heads=16, rank=64),
"smallx2": dict(d=512, layers=16, heads=16, rank=64),
"base": dict(d=768, layers=12, heads=24, rank=96),
}
# Safe default for 1Γ— Tesla P40; override with --block
DEFAULT_BLOCK = 576
SAT_BLOCK = 2
LR_CORE, LR_HEAD = 5e-5, 2e-4
EMIT_LAMBDA = 0.1
# Default interval: 24 hours. Override with --save_every_sec (e.g., 86400).
DEFAULT_SAVE_SEC = 24 * 3600
CKDIR = pathlib.Path("ckpts_joint")
# ───────────────────────── Utilities ─────────────────────────
def rng_state():
if DEV.type == "cuda":
try:
return torch.cuda.get_rng_state(DEV)
except TypeError:
return torch.cuda.get_rng_state()
return torch.get_rng_state()
def _is_probably_ckpt(path: pathlib.Path) -> bool:
try:
return path.is_file() and path.suffix == ".pt" and not path.name.endswith(".pt.tmp") and path.stat().st_size > (1<<20)
except Exception:
return False
def _resolve_ckpt(path: pathlib.Path) -> pathlib.Path | None:
"""
Return a solid .pt (never .tmp). If 'path' is dir, pick newest *.pt.
If not usable, return None.
"""
try:
if path.is_dir():
cands = sorted([p for p in path.glob("*.pt") if _is_probably_ckpt(p)],
key=lambda p: p.stat().st_mtime, reverse=True)
return cands[0] if cands else None
if path.suffix == ".tmp":
solid = path.with_suffix("")
return solid if _is_probably_ckpt(solid) else _resolve_ckpt(path.parent)
return path if _is_probably_ckpt(path) else _resolve_ckpt(path.parent)
except Exception:
return None
def _try_load(path: pathlib.Path, map_location="cpu"):
"""
Always load on CPU to avoid CUDA fragmentation/OOM during torch.load.
"""
try:
return torch.load(path, map_location="cpu")
except Exception as e:
print(f"[ckpt-skip] {path} not usable: {e}")
return None
# ───────────────────────── AMP helper ─────────────────────────
try:
from torch.amp import autocast as _ac, GradScaler
except ImportError:
from torch.cuda.amp import autocast as _ac, GradScaler
def _auto_amp_dtype():
if DEV.type == "cuda":
try:
if torch.cuda.is_bf16_supported():
return torch.bfloat16
return torch.float16
except Exception:
return torch.float16
return torch.float32
def amp(enabled: bool):
# Only enable if explicitly requested AND CUDA is available
return nullcontext() if not (enabled and DEV.type == "cuda") else _ac(device_type="cuda", dtype=_auto_amp_dtype())
# ───────────────────────── Data stream ─────────────────────────
def token_stream(ds_name: str, target: int, seed: int = 42):
ds = load_dataset(ds_name, split="train", streaming=True)
ds = ds.shuffle(buffer_size=10_000, seed=seed)
emitted = 0
for ex in ds:
# ensure EOS between docs
enc = tok.encode(ex["text"])
if EOS is not None and (len(enc) == 0 or enc[-1] != EOS):
enc = enc + [EOS]
for t in enc:
yield t
emitted += 1
if emitted >= target:
return
# ───────────────────────── Relative positional bias (ALiBi) ─────────────────────────
def _alibi_slopes(n_heads: int):
import math
def pow2slopes(n):
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():
vals = pow2slopes(n_heads)
else:
closest = 2 ** math.floor(math.log2(n_heads))
vals = pow2slopes(closest)
extra = pow2slopes(2 * closest)
vals += extra[0::2][: n_heads - closest]
return torch.tensor(vals, device=DEV).view(1, n_heads, 1, 1)
def alibi_bias(n_heads: int, n_tokens: int):
i = torch.arange(n_tokens, device=DEV).view(1, 1, n_tokens, 1)
j = torch.arange(n_tokens, device=DEV).view(1, 1, 1, n_tokens)
dist = (j - i).clamp_min(0) # only penalize future
slopes = _alibi_slopes(n_heads)
return -slopes * dist
# ───────────────────────── Model components ─────────────────────────
class LowRankMHA(nn.Module):
"""
Cache-aware MHA with low-rank projections; supports kv caching for decode.
"""
def __init__(self, d: int, h: int, r: int, use_relpos: bool = True):
super().__init__()
assert d % h == 0, "d must be divisible by number of heads"
self.h, self.dk = h, d // h
self.use_relpos = use_relpos
self.q = nn.Linear(d, d, bias=False)
self.k = nn.Linear(d, d, bias=False)
self.v = nn.Linear(d, d, bias=False)
self.U = nn.Parameter(torch.randn(self.dk, r))
nn.init.orthogonal_(self.U)
self.proj = nn.Linear(h * r, d, bias=False)
self.drop = nn.Dropout(0.1)
def _proj(self, x):
B, N, _ = x.shape
return (x.view(B, N, self.h, self.dk).transpose(1, 2) @ self.U)
def forward(
self,
x: torch.Tensor,
mask: Optional[torch.Tensor] = None,
rel_bias_tokens: Optional[int] = None,
kv_cache: Optional[Tuple[torch.Tensor, torch.Tensor]] = None,
use_cache: bool = False,
):
q = self._proj(self.q(x))
k_new = self._proj(self.k(x))
v_new = self._proj(self.v(x))
if kv_cache is None:
k, v = k_new, v_new
else:
k, v = kv_cache
if use_cache:
k = torch.cat([k, k_new], dim=2)
v = torch.cat([v, v_new], dim=2)
att = (q @ k.transpose(-1, -2)) / math.sqrt(self.dk)
if q.size(2) == k.size(2):
if self.use_relpos and rel_bias_tokens is not None:
att = att + alibi_bias(self.h, rel_bias_tokens)
if mask is not None:
att = att + mask
z = (att.softmax(-1) @ v).transpose(1, 2) # (B,Nq,h,r)
z = z.reshape(x.size(0), x.size(1), -1)
out = self.drop(self.proj(z))
return (out, (k, v)) if use_cache else out
class Block(nn.Module):
def __init__(self, d: int, h: int, r: int):
super().__init__()
self.ln1, self.ln2 = nn.LayerNorm(d), nn.LayerNorm(d)
self.mha = LowRankMHA(d, h, r, use_relpos=True)
self.ff = nn.Sequential(nn.Linear(d, 4 * d), nn.ReLU(), nn.Linear(4 * d, d))
def forward(
self,
x: torch.Tensor,
mask: Optional[torch.Tensor],
kv: Optional[Tuple[torch.Tensor, torch.Tensor]] = None,
use_cache: bool = False
):
n = x.size(1)
if use_cache:
y, new_kv = self.mha(self.ln1(x), mask, rel_bias_tokens=n if mask is not None else None, kv_cache=kv, use_cache=True)
x = x + y
x = x + self.ff(self.ln2(x))
return x, new_kv
else:
x = x + self.mha(self.ln1(x), mask, rel_bias_tokens=n)
return x + self.ff(self.ln2(x))
class Encoder(nn.Module):
"""
Transformer encoder with optional kv caching (for AR/SAT decode).
"""
def __init__(self, cfg: Dict[str, int]):
super().__init__()
d, l, h, r = cfg["d"], cfg["layers"], cfg["heads"], cfg["rank"]
self.emb = nn.Embedding(VOCAB, d)
self.blocks = nn.ModuleList([Block(d, h, r) for _ in range(l)])
self.ln = nn.LayerNorm(d)
def forward(
self,
ids: torch.Tensor,
mask: Optional[torch.Tensor],
kv_caches: Optional[List[Optional[Tuple[torch.Tensor, torch.Tensor]]]] = None,
use_cache: bool = False
):
x = self.emb(ids)
if not use_cache:
for blk in self.blocks:
x = blk(x, mask)
return self.ln(x)
new_kvs: List[Tuple[torch.Tensor, torch.Tensor]] = []
for i, blk in enumerate(self.blocks):
kv = kv_caches[i] if (kv_caches is not None) else None
x, kv_out = blk(x, mask, kv, use_cache=True)
new_kvs.append(kv_out)
return self.ln(x), new_kvs
class ARHead(nn.Module):
def __init__(self, d):
super().__init__()
self.proj = nn.Linear(d, VOCAB)
def forward(self, h): return self.proj(h)
class NATHead(nn.Module):
def __init__(self, d):
super().__init__()
self.proj = nn.Linear(d, VOCAB)
def forward(self, h): return self.proj(h)
class SATHead(nn.Module):
def __init__(self, d, mode="var"):
super().__init__()
self.proj = nn.Linear(d, VOCAB)
self.mode = mode
self.gate = nn.Linear(d, 2) if mode == "var" else None
def forward(self, h_last):
logits = self.proj(h_last)
gate = self.gate(h_last[:, 0]) if self.gate is not None else None
return logits, gate
# ───────────────────────── Masks ─────────────────────────
def causal_mask(n):
m = torch.full((1, 1, n, n), float("-inf"), device=DEV)
return torch.triu(m, 1)
def sat_mask(n, block=SAT_BLOCK):
idx = torch.arange(n, device=DEV)
grp = idx.unsqueeze(0) // block
allow = (grp.T == grp) | (grp.T > grp)
return torch.where(allow, 0.0, float("-inf")).unsqueeze(0).unsqueeze(0)
# ───────────────────────── Checkpoint helpers ─────────────────────────
def save_ckpt(
path: pathlib.Path,
core: nn.Module,
ar_h: nn.Module,
nat_h: nn.Module,
sat_h: nn.Module,
opt: torch.optim.Optimizer,
scaler: GradScaler,
meta: Dict[str, Any],
):
path.parent.mkdir(exist_ok=True, parents=True)
tmp = path.with_suffix(path.suffix + ".tmp")
state = {
"core": core.state_dict(),
"ar": ar_h.state_dict(),
"nat": nat_h.state_dict(),
"sat": sat_h.state_dict(),
"opt": opt.state_dict(),
"scaler": scaler.state_dict(),
"cfg": meta.get("cfg"),
"tokenizer_id": TOKENIZER_ID,
**{k: v for k, v in meta.items() if k not in {"cfg"}},
}
torch.save(state, tmp, _use_new_zipfile_serialization=False)
tmp.replace(path)
(path.parent / "latest.json").write_text(json.dumps({"path": str(path), "step": meta["step"]}))
print(f"\nβœ“ saved checkpoint {path.name}")
def load_ckpt(
path: pathlib.Path,
core: nn.Module,
ar_h: nn.Module,
nat_h: nn.Module,
sat_h: nn.Module,
opt: torch.optim.Optimizer,
scaler: GradScaler,
):
p = _resolve_ckpt(path) or path
ck = _try_load(p, map_location="cpu")
if ck is None:
raise FileNotFoundError(f"No valid checkpoint at {p}")
core.load_state_dict(ck["core"])
ar_h.load_state_dict(ck["ar"])
nat_h.load_state_dict(ck["nat"])
sat_h.load_state_dict(ck["sat"])
opt.load_state_dict(ck["opt"])
scaler.load_state_dict(ck["scaler"])
return ck.get("step", 0), ck.get("seen_tok", 0), ck.get("wall_time", time.time())
def _safe_load_any(path: pathlib.Path, tgt: nn.Module, key: str | None = None, rename: str | None = None):
p = _resolve_ckpt(path) or path
if not p.exists(): return 0
ck = _try_load(p, map_location="cpu")
if ck is None: return 0
sd = ck.get(key, ck) if key else ck
if isinstance(sd, dict) and "state_dict" in sd:
sd = sd["state_dict"]
if rename:
sd = {k.replace(rename, "proj."): v for k, v in sd.items() if rename in k}
tgt_sd = tgt.state_dict()
filt = {k: v for k, v in sd.items() if k in tgt_sd and v.shape == tgt_sd[k].shape}
if filt:
tgt.load_state_dict(filt, strict=False)
return len(filt)
def infer_cfg_from_ckpt(path: pathlib.Path):
p = _resolve_ckpt(path) or path
if not p.exists(): return None
sd = _try_load(p, map_location="cpu")
if sd is None: return None
if isinstance(sd, dict) and "cfg" in sd and isinstance(sd["cfg"], dict):
return dict(sd["cfg"])
core = sd.get("core")
if core is None: return None
emb_w = core.get("emb.weight")
if emb_w is None: return None
d = emb_w.shape[1]
layer_ids = []
for k in core.keys():
if k.startswith("blocks."):
parts = k.split(".")
if len(parts) > 2 and parts[1].isdigit():
layer_ids.append(int(parts[1]))
layers = (max(layer_ids) + 1) if layer_ids else None
U = core.get("blocks.0.mha.U")
heads = rank = None
if U is not None:
dk, r = U.shape
rank = r
heads = d // dk if dk > 0 else None
out = {"d": d}
if layers is not None: out["layers"] = layers
if heads is not None: out["heads"] = heads
if rank is not None: out["rank"] = rank
return out
# ───────────────────────── Train loop ─────────────────────────
def _parse_grow_plan(s: str) -> List[int]:
steps = []
for part in s.split(","):
part = part.strip()
if part:
v = int(part)
if v >= 128:
steps.append(v)
return sorted(set(steps))
def _init_save_timers(resume_wall_time: float | None, interval_sec: int) -> Tuple[float, float]:
"""
Returns (last_save_wall, last_save_mono).
We use wall time for metadata, monotonic for interval checks.
If resuming and the last save was long ago, schedule next save accordingly.
"""
now_wall = time.time()
now_mono = time.monotonic()
if resume_wall_time is None:
return now_wall, now_mono
# How long since the previous save in wall-clock?
elapsed_wall = max(0.0, now_wall - resume_wall_time)
# Clamp to interval so we don't try to "catch up" multiple times
elapsed_clamped = min(float(interval_sec), elapsed_wall)
# Pretend we last saved 'elapsed_clamped' ago on the monotonic clock
return now_wall, now_mono - elapsed_clamped
def train(args):
cfg = PRESETS[args.preset].copy()
# Previous topology probe (unless --fresh)
if not args.fresh:
src_probe = pathlib.Path(args.warmstart_from) if args.warmstart_from else pathlib.Path(args.save_dir) / "final.pt"
prev_cfg = infer_cfg_from_ckpt(src_probe)
else:
prev_cfg = None
if prev_cfg:
cfg["d"] = prev_cfg.get("d", cfg["d"])
if prev_cfg.get("heads"):
cfg["heads"] = prev_cfg["heads"]
if args.rank is None and prev_cfg.get("rank"):
cfg["rank"] = prev_cfg["rank"]
if prev_cfg.get("layers"):
cfg["layers"] = prev_cfg["layers"]
if args.x2 and prev_cfg.get("layers"):
cfg["layers"] = max(cfg["layers"], prev_cfg["layers"] * 2)
if args.rank:
cfg["rank"] = args.rank
if args.x2 and not prev_cfg:
cfg["layers"] *= 2
BLOCK = args.block or DEFAULT_BLOCK
core = Encoder(cfg).to(DEV)
ar_h, nat_h = ARHead(cfg["d"]).to(DEV), NATHead(cfg["d"]).to(DEV)
sat_h = SATHead(cfg["d"], mode="var").to(DEV)
# Warm start unless --fresh
loaded = 0
if not args.fresh:
src = pathlib.Path(args.warmstart_from) if args.warmstart_from else pathlib.Path(args.save_dir) / "final.pt"
src = _resolve_ckpt(src)
if src:
loaded += _safe_load_any(src, core, key="core")
loaded += _safe_load_any(src, ar_h, key="ar")
loaded += _safe_load_any(src, nat_h, key="nat")
loaded += _safe_load_any(src, sat_h, key="sat")
if loaded:
print(f"Warm-start: loaded {loaded} matching tensors from {src}")
opt = torch.optim.AdamW(
[
{"params": core.parameters(), "lr": LR_CORE},
{"params": ar_h.parameters(), "lr": LR_HEAD},
{"params": nat_h.parameters(), "lr": LR_HEAD},
{"params": sat_h.parameters(), "lr": LR_HEAD},
]
)
scaler = GradScaler(enabled=(args.amp and DEV.type == "cuda"))
ce_tok = nn.CrossEntropyLoss(label_smoothing=0.1)
ctc = nn.CTCLoss(blank=BLANK, zero_infinity=True)
ce_gate = nn.CrossEntropyLoss()
# ---------- resume bookkeeping ----------
start_step, seen_tok = 0, 0
last_save_wall = None
if args.resume and not args.fresh:
start_step, seen_tok, last_save_wall = load_ckpt(
pathlib.Path(args.resume), core, ar_h, nat_h, sat_h, opt, scaler
)
print(f"βœ“ resumed from step {start_step:,}, seen_tokens={seen_tok:,}")
# Initialize save timers
last_save_wall, last_save_mono = _init_save_timers(last_save_wall, args.save_every_sec)
# Target tokens
if args.target_tokens:
target_tokens = args.target_tokens
else:
param_count = sum(p.numel() for p in core.parameters())
target_tokens = int(25 * param_count)
new_tokens_needed = target_tokens - seen_tok
if new_tokens_needed <= 0:
print("Target already reached – nothing to train.")
return
new_steps = new_tokens_needed // BLOCK
if args.steps:
new_steps = min(new_steps, args.steps)
new_tokens_needed = new_steps * BLOCK
total_tokens_needed = seen_tok + new_tokens_needed
print(f"[auto-steps] {new_steps:,} training steps (@ {BLOCK} tokens/step)")
# Progressive growth plan
grow_plan = _parse_grow_plan(args.grow_plan) if args.auto_grow else []
if args.auto_grow:
if BLOCK not in grow_plan:
grow_plan = sorted(set(grow_plan + [BLOCK]))
print(f"[auto-grow] plan: {grow_plan} every {args.grow_every_steps} steps")
stream = token_stream(args.source, target_tokens, seed=42)
buf: list[int] = []
pbar = tqdm(total=total_tokens_needed, initial=seen_tok, unit="tok")
step = start_step
steps_since_last_grow = 0
while seen_tok < total_tokens_needed:
# ------- assemble one batch -------
try:
while len(buf) < BLOCK:
buf.append(next(stream))
except StopIteration:
break
ids = torch.tensor(buf[:BLOCK], device=DEV).unsqueeze(0) # (B=1, N)
buf = buf[BLOCK:]
tgt_ar = ids.clone() # (1, N)
ids_nat = torch.repeat_interleave(ids, 2, 1) # (1, 2N) for NAT only
try:
with amp(args.amp):
# AR path
h_ar = core(ids, causal_mask(ids.size(1)))
logits_ar = ar_h(h_ar)[:, :-1]
loss_ar = ce_tok(logits_ar.reshape(-1, VOCAB), tgt_ar[:, 1:].reshape(-1))
# NAT path (uses doubled sequence)
h_nat = core(ids_nat, None)
log_nat = nat_h(h_nat).log_softmax(-1).transpose(0, 1) # (T,B,V)
ilen = tlen = torch.tensor([ids_nat.size(1) // 2], device=DEV)
loss_nat = ctc(log_nat, tgt_ar, ilen, tlen)
# SAT path
h_sat = core(ids, sat_mask(ids.size(1)))
logits_sat, gate = sat_h(h_sat[:, -SAT_BLOCK:])
tgt_sat = ids[:, 1:SAT_BLOCK+1]
loss_sat = ce_tok(logits_sat.reshape(-1, VOCAB), tgt_sat.reshape(-1))
if gate is not None:
loss_sat += EMIT_LAMBDA * ce_gate(gate, torch.ones(ids.size(0), device=DEV, dtype=torch.long))
loss = loss_ar + loss_nat + loss_sat
# optimisation
scaler.scale(loss).backward()
scaler.unscale_(opt)
nn.utils.clip_grad_norm_(core.parameters(), 1.0)
scaler.step(opt)
scaler.update()
opt.zero_grad(set_to_none=True)
except RuntimeError as e:
msg = str(e).lower()
if "out of memory" in msg or "cuda error" in msg:
new_block = max(128, BLOCK // 2)
if new_block < BLOCK:
print(f"\n[OOM] reducing block from {BLOCK} -> {new_block}")
BLOCK = new_block
if DEV.type == "cuda":
torch.cuda.empty_cache()
buf = ids[0].tolist() + buf
steps_since_last_grow = 0
continue
raise
# progress
step += 1
seen_tok += BLOCK
pbar.update(BLOCK)
pbar.set_postfix(loss=f"{loss.item():.3f}", block=BLOCK)
# time-based checkpoint cadence only (monotonic)
if args.save_every_sec > 0:
now_mono = time.monotonic()
if now_mono - last_save_mono >= args.save_every_sec:
ck_name = f"step{step:08d}.pt"
save_ckpt(
pathlib.Path(args.save_dir) / ck_name,
core, ar_h, nat_h, sat_h, opt, scaler,
meta={
"cfg": cfg,
"step": step,
"seen_tok": seen_tok,
"wall_time": time.time(),
"py_state": random.getstate(),
"torch_state": rng_state(),
},
)
last_save_mono = now_mono
last_save_wall = time.time()
# progressive growth
if args.auto_grow:
steps_since_last_grow += 1
if steps_since_last_grow >= args.grow_every_steps:
steps_since_last_grow = 0
try:
idx = grow_plan.index(BLOCK)
if idx + 1 < len(grow_plan):
candidate = grow_plan[idx + 1]
print(f"[auto-grow] attempting BLOCK {BLOCK} -> {candidate}")
BLOCK = candidate
if DEV.type == "cuda":
torch.cuda.empty_cache()
else:
print("[auto-grow] at max planned block; no further growth.")
except ValueError:
grow_plan = sorted(set(grow_plan + [BLOCK]))
idx = grow_plan.index(BLOCK)
if idx + 1 < len(grow_plan):
candidate = grow_plan[idx + 1]
print(f"[auto-grow] moving to planned BLOCK {candidate}")
BLOCK = candidate
if DEV.type == "cuda":
torch.cuda.empty_cache()
pbar.close()
# final save
save_ckpt(
pathlib.Path(args.save_dir) / "final.pt",
core, ar_h, nat_h, sat_h, opt, scaler,
meta={
"cfg": cfg,
"step": step,
"seen_tok": seen_tok,
"wall_time": time.time(),
"py_state": random.getstate(),
"torch_state": rng_state(),
},
)
print("πŸŽ‰ training complete")
# ───────────────────────── Sampling utils ─────────────────────────
def _apply_no_repeat_ngram(logits: torch.Tensor, ids: torch.Tensor, n: int):
"""
Block tokens that would complete any previously seen n-gram.
ids: (1, t)
logits: (..., V) where ... may be (1,) or (stride,)
"""
if n <= 0 or ids.size(1) < n - 1:
return logits
prefix = ids[0, - (n - 1):].tolist()
# Build set of next tokens forbidden after this prefix.
banned = []
tokens = ids[0].tolist()
for i in range(len(tokens) - n + 1):
if tokens[i:i + n - 1] == prefix:
banned.append(tokens[i + n - 1])
if banned:
banned_idx = torch.tensor(banned, device=logits.device, dtype=torch.long)
logits[..., banned_idx] = float("-inf")
return logits
def _apply_rep_presence_frequency(
logits: torch.Tensor, ids: torch.Tensor, last_n: int,
repetition_penalty: float, presence_penalty: float, frequency_penalty: float
):
"""
logits: (..., V) where ... may be (1,) or (stride,)
ids: (1, t) history
"""
if ids.numel() == 0:
return logits
if last_n > 0:
hist = ids[0, -last_n:].to(torch.long)
else:
hist = ids[0].to(torch.long)
if hist.numel() == 0:
return logits
uniq, counts = torch.unique(hist, return_counts=True)
# presence/frequency penalties (OpenAI-like)
if presence_penalty != 0.0 or frequency_penalty != 0.0:
# subtract presence for seen tokens; subtract frequency * count
adjust = presence_penalty + frequency_penalty * counts.to(logits.dtype)
logits[..., uniq] = logits[..., uniq] - adjust
# repetition penalty (CTRL/GPT-NeoX style)
if repetition_penalty and abs(repetition_penalty - 1.0) > 1e-6:
sel = logits[..., uniq]
# if logit > 0: divide by penalty; else multiply by penalty
sel = torch.where(sel > 0, sel / repetition_penalty, sel * repetition_penalty)
logits[..., uniq] = sel
return logits
def _filter_top_k_top_p_min_p(
logits: torch.Tensor, top_k: int, top_p: float, min_p: float, temperature: float
) -> torch.Tensor:
"""
Works on 1D or 2D logits (..., V). Applies temperature, then filtering.
Returns normalized probabilities ready for sampling.
"""
logits = logits / max(temperature, 1e-8)
# shape handling
if logits.dim() == 1:
logits = logits.unsqueeze(0)
B, V = logits.size(0), logits.size(-1)
# Convert to probabilities for p-based filtering
probs = logits.softmax(-1)
# Top-k
if top_k and top_k < V:
vals, idx = torch.topk(probs, top_k, dim=-1)
mask = torch.full_like(probs, 0.0)
mask.scatter_(1, idx, 1.0)
probs = probs * mask
# Top-p (nucleus)
if top_p < 1.0:
sorted_probs, sorted_idx = torch.sort(probs, descending=True, dim=-1)
cumsum = torch.cumsum(sorted_probs, dim=-1)
keep = cumsum <= top_p
# Always keep at least one
keep[..., 0] = True
# Build mask
mask = torch.zeros_like(probs)
mask.scatter_(1, sorted_idx, keep.to(mask.dtype))
probs = probs * mask
# Min-p
if min_p > 0.0:
probs = torch.where(probs >= min_p, probs, torch.zeros_like(probs))
# If everything zeroed (can happen at extreme settings), fall back to the argmax token
sums = probs.sum(-1, keepdim=True)
empty = (sums == 0)
if empty.any():
fallback_idx = logits.argmax(-1, keepdim=True)
probs = torch.where(empty, torch.zeros_like(probs), probs)
probs.scatter_(-1, fallback_idx, torch.where(empty, torch.ones_like(sums), torch.zeros_like(sums)))
# Renormalize
probs = probs / probs.sum(-1, keepdim=True)
return probs
# ───────────────────────── Inference helpers ─────────────────────────
def load_joint(ckpt: str, preset: str):
path = _resolve_ckpt(pathlib.Path(ckpt)) or pathlib.Path(ckpt)
sd = _try_load(path, map_location="cpu")
if sd is None:
raise FileNotFoundError(f"No valid checkpoint at {path}")
cfg = sd["cfg"] if "cfg" in sd and isinstance(sd["cfg"], dict) else (infer_cfg_from_ckpt(path) or PRESETS[preset])
core = Encoder(cfg).to(DEV)
ar_h, nat_h = ARHead(cfg["d"]).to(DEV), NATHead(cfg["d"]).to(DEV)
sat_h = SATHead(cfg["d"]).to(DEV)
core.load_state_dict(sd["core"])
ar_h.load_state_dict(sd["ar"])
nat_h.load_state_dict(sd["nat"])
sat_h.load_state_dict(sd["sat"])
return core, ar_h, nat_h, sat_h
@torch.no_grad()
def ar_decode(core, ar_h, prompt: str, max_new: int, T: float,
greedy: bool, top_k: int, top_p: float, min_p: float,
repetition_penalty: float, presence_penalty: float,
frequency_penalty: float, penalty_last_n: int,
no_repeat_ngram_size: int):
ids = torch.tensor([tok.encode(prompt)], device=DEV)
if ids.size(1) == 0:
ids = torch.tensor([[EOS] if EOS is not None else [0]], device=DEV)
h_full, kvs = core(ids, causal_mask(ids.size(1)), use_cache=True)
start = time.time()
for _ in range(max_new):
logits = ar_h(h_full)[:, -1] # (1, V)
# penalties
logits = _apply_no_repeat_ngram(logits, ids, no_repeat_ngram_size)
logits = _apply_rep_presence_frequency(
logits, ids, penalty_last_n, repetition_penalty, presence_penalty, frequency_penalty
)
if greedy:
nxt = logits.argmax(-1, keepdim=True)
else:
probs = _filter_top_k_top_p_min_p(logits.squeeze(0), top_k, top_p, min_p, T)
nxt = probs.multinomial(1)
ids = torch.cat([ids, nxt.unsqueeze(0) if nxt.dim()==1 else nxt], 1)
# step with kv cache
x = ids[:, -1:]
h_full, kvs = core(x, None, kv_caches=kvs, use_cache=True)
print(tok.decode(ids[0].tolist(), skip_special_tokens=True))
print(f"[{max_new} tok in {time.time() - start:.2f}s]")
@torch.no_grad()
def sat_decode(core, sat_h, prompt, max_new, T, var,
greedy: bool, top_k: int, top_p: float, min_p: float,
repetition_penalty: float, presence_penalty: float,
frequency_penalty: float, penalty_last_n: int,
no_repeat_ngram_size: int):
ids = torch.tensor([tok.encode(prompt)], device=DEV)
added, t0 = 0, time.time()
while added < max_new:
h = core(ids, sat_mask(ids.size(1)))
logits_all, gate = sat_h(h[:, -SAT_BLOCK:]) # (1, SAT_BLOCK, V)
stride = 2 if (not var or gate is None) else (gate.softmax(-1).multinomial(1) + 1).item()
stride = int(stride)
# Sequentially sample within the stride so penalties apply cumulatively
for pos in range(stride):
row_logits = logits_all[:, pos, :] # (1, V)
# penalties
row_logits = _apply_no_repeat_ngram(row_logits, ids, no_repeat_ngram_size)
row_logits = _apply_rep_presence_frequency(
row_logits, ids, penalty_last_n, repetition_penalty, presence_penalty, frequency_penalty
)
if greedy:
nxt = row_logits.argmax(-1, keepdim=True) # (1,1)
else:
probs = _filter_top_k_top_p_min_p(row_logits.squeeze(0), top_k, top_p, min_p, T)
nxt = probs.multinomial(1) # (1,1)
ids = torch.cat([ids, nxt], 1)
added += 1
if added >= max_new:
break
print(tok.decode(ids[0].tolist(), skip_special_tokens=True))
print(f"[{added} tok in {time.time() - t0:.2f}s]")
@torch.no_grad()
def nat_decode(core, nat_h, prompt, max_new, passes, streams):
ids = torch.tensor([tok.encode(prompt) + [BLANK] * (max_new * 2)], device=DEV)
t0 = time.time()
for _ in range(passes):
h = core(ids, None)
logits = nat_h(h)
logits[..., BLANK] = -1e9
cand = logits.topk(streams, -1).indices.permute(2, 0, 1)
best = (cand != BLANK).float().mean(-1).argmax(0)
ids = cand[best, torch.arange(ids.size(0), device=DEV)][:, ::2]
out = [t for t in ids[0].tolist() if t != BLANK]
print(tok.decode(out, skip_special_tokens=True))
print(f"[{len(out)} output tokens in {time.time() - t0:.2f}s]")
# ───────────────────────── CLI ─────────────────────────
def main():
ap = argparse.ArgumentParser()
sub = ap.add_subparsers(dest="cmd", required=True)
tr = sub.add_parser("train")
tr.add_argument("--preset", choices=PRESETS, default="small")
tr.add_argument("--rank", type=int)
tr.add_argument("--block", type=int, default=DEFAULT_BLOCK)
tr.add_argument("--source", default="cerebras/SlimPajama-627B")
tr.add_argument("--target_tokens", type=int)
tr.add_argument("--steps", type=int)
tr.add_argument("--amp", action="store_true")
tr.add_argument("--save_every_sec", type=int, default=DEFAULT_SAVE_SEC)
tr.add_argument("--save_dir", default=str(CKDIR))
tr.add_argument("--resume", type=str)
tr.add_argument("--x2", action="store_true", help="~2x params by doubling layers")
tr.add_argument("--warmstart_from", type=str, default=None, help="Path to previous final.pt for shape-safe warm start")
tr.add_argument("--fresh", action="store_true", help="Start from scratch: do not probe or load any checkpoints")
# Progressive block growth
tr.add_argument("--auto_grow", action="store_true", help="Automatically grow block size over time")
tr.add_argument("--grow_plan", type=str, default="576,640,768,896,1024", help="Comma list of block sizes to try in order")
tr.add_argument("--grow_every_steps", type=int, default=50000, help="Steps between growth attempts")
inf = sub.add_parser("infer")
inf.add_argument("--mode", choices=["ar", "nat", "sat"], required=True)
inf.add_argument("--ckpt", required=True)
inf.add_argument("--preset", default="small")
inf.add_argument("--prompt", required=True)
inf.add_argument("--max_new", type=int, default=120)
inf.add_argument("--temperature", type=float, default=1.0)
# New decode controls
inf.add_argument("--greedy", action="store_true", help="Greedy decode (overrides sampling)")
inf.add_argument("--top_k", type=int, default=0)
inf.add_argument("--top_p", type=float, default=1.0)
inf.add_argument("--min_p", type=float, default=0.0)
inf.add_argument("--repetition_penalty", type=float, default=1.0)
inf.add_argument("--presence_penalty", type=float, default=0.0)
inf.add_argument("--frequency_penalty", type=float, default=0.0)
inf.add_argument("--penalty_last_n", type=int, default=64)
inf.add_argument("--no_repeat_ngram_size", type=int, default=0)
inf.add_argument("--var", action="store_true")
inf.add_argument("--passes", type=int, default=1)
inf.add_argument("--streams", type=int, default=5)
args = ap.parse_args()
if args.cmd == "train":
train(args)
else:
core, ar_h, nat_h, sat_h = load_joint(args.ckpt, args.preset)
if args.mode == "ar":
ar_decode(core, ar_h, args.prompt, args.max_new, args.temperature,
args.greedy, args.top_k, args.top_p, args.min_p,
args.repetition_penalty, args.presence_penalty,
args.frequency_penalty, args.penalty_last_n,
args.no_repeat_ngram_size)
elif args.mode == "sat":
sat_decode(core, sat_h, args.prompt, args.max_new, args.temperature, args.var,
args.greedy, args.top_k, args.top_p, args.min_p,
args.repetition_penalty, args.presence_penalty,
args.frequency_penalty, args.penalty_last_n,
args.no_repeat_ngram_size)
else:
nat_decode(core, nat_h, args.prompt, args.max_new, args.passes, args.streams)
if __name__ == "__main__":
main()