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1fe8e9a | 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21 22 23 24 25 26 27 28 29 30 31 32 33 34 35 36 37 38 39 40 41 42 43 44 45 46 47 48 49 50 51 52 53 54 55 56 57 58 59 60 61 62 63 64 65 66 67 68 69 70 71 72 73 74 75 76 77 78 79 80 81 82 83 84 85 86 87 88 89 90 91 92 93 94 95 96 97 98 99 100 101 102 103 104 105 106 107 108 109 110 111 112 113 114 115 116 117 118 119 120 121 122 123 124 125 126 127 128 129 130 131 132 133 134 135 136 137 138 139 140 141 142 143 144 145 146 147 148 149 150 151 152 153 154 155 156 157 158 159 160 161 162 163 164 165 166 167 168 169 170 171 172 173 174 175 176 177 178 179 180 181 182 183 184 185 186 187 188 189 190 191 192 193 194 195 196 197 198 199 200 201 202 203 204 205 206 207 208 209 210 211 212 213 214 215 216 217 218 219 220 221 222 223 224 225 226 227 228 229 230 231 232 233 234 235 236 237 238 239 240 241 242 243 244 245 246 247 248 249 250 251 252 253 254 255 256 257 258 259 260 261 262 263 | """Cross-provider GPU allocation: the cheapest class that comfortably fits the run.
Given a base model (+ algorithm), compute the VRAM the FULL run needs — sized for the
heavier phase, GRPO, since the typical pipeline is SFT followed by GRPO — then rank
every provisionable candidate across ALL registered providers by live $/hr and pick the
cheapest:
runpod every Flash-provisionable class (live pricing, cached; static fallback)
vast live verified-datacenter offers (usable_offers' quality floors applied)
Allocation happens at SUBMIT time in the runner (offers are a volatile market);
the parse-time resolution in schema is a RunPod-static provisional for
validation/dry-run display. Offline (AUTOSLM_SKIP_NET) the allocator degrades to exactly
``cheapest_gpu``'s deterministic static-rate answer (RunPod only — Vast is offline-off).
Provider-agnostic by construction: it walks the registered providers and asks each for
its ``gpu_classes()`` + ``hourly_rate()``; the only provider-specific knowledge is that
Vast classes come from a live offer book (collected through the provider's
``usable_offers`` and carried opaquely on ``Candidate.offer``).
"""
from __future__ import annotations
from autoslm._logging import get_logger
from autoslm.providers import PROVIDER_NAMES, available_providers, get_provider
from autoslm.providers.base import (
Allocation,
Candidate,
UnsupportedGpuError,
canonical_gpu,
unvalidated_allowed,
)
logger = get_logger(__name__)
# "Comfortably" = the open-model VRAM estimate plus headroom, so a full SFT+GRPO run
# never lands in check_fit's "tight" band by construction. Curated catalog entries
# already carry measured minimums and are used as-is. The headroom (default 1.1 ==
# model_required_vram_gb's own default) is read at call time via vram_headroom() so allocate()
# and resolve_gpu_policy size identically and pick up a value exported after import.
def vram_headroom() -> float:
"""The sizing headroom multiplier, honored by both the submit-time allocator and the
parse-time resolve_gpu_policy so they never disagree (PR #176 review). A validated constant."""
return 1.1
def required_vram_gb(
model_id: str,
algorithm: str,
*,
train=None,
thinking: bool = False,
) -> int:
"""VRAM the full run needs, sized to the run's actual knobs (context length, LoRA
rank, batch / group size, thinking) via the shared ``model_required_vram_gb`` matrix.
Catalog GRPO floors stay hard floors (never under-provision a validated model); the
matrix sizes up from there for big contexts/groups and down to a cheaper card for
small runs. Unlisted open models size from HF metadata, falling back to the 24 GB tier
when unreadable (handled inside model_required_vram_gb)."""
from autoslm.engine.vram import model_required_vram_gb
return model_required_vram_gb(
model_id,
algorithm,
train=train,
thinking=thinking,
headroom=vram_headroom(),
)
def _runpod_candidates(need: int, pinned_gpu: str | None, allow_unval: bool) -> list[Candidate]:
"""RunPod's fitting classes priced live (static fallback)."""
provider = get_provider("runpod")
out: list[Candidate] = []
for g in provider.gpu_classes():
if g.vram_gb < need:
continue
if pinned_gpu and g.name != pinned_gpu:
continue
if "runpod" not in g.validated_on and not allow_unval:
continue
out.append(
Candidate(
"runpod",
g.name,
provider.hourly_rate(g.name),
g.vram_gb,
"runpod" in g.validated_on,
)
)
return out
def _vast_candidates(
need: int,
pinned_gpu: str | None,
allow_unval: bool,
disk_gb: int,
exclude_machine_ids,
*,
required: bool,
) -> tuple[list[Candidate], tuple]:
"""Vast's fitting classes from the live offer book (cheapest per class).
Returns (candidates, full_offer_book). ``required`` (a hard ``provider="vast"``
pin) re-raises a search failure; otherwise it degrades to RunPod-only.
"""
from autoslm.providers.base import GPU_INFO
from autoslm.providers.vast.jobs import MIN_DISK_GB, usable_offers
# When a larger class is pinned for a small model, search at the PINNED class's VRAM,
# not the (smaller) model requirement: the offer search returns the cheapest ``limit``
# offers from a VRAM floor, so a search at ``need`` can fill that window entirely with
# small cheap cards and never surface the pinned larger class. ``need`` is still the
# validity floor (allocate() rejects an undersized pin before we get here).
search_vram = max(need, GPU_INFO[pinned_gpu].vram_gb) if pinned_gpu else need
book: list = []
try:
# The offer search must use the SAME disk floor instances are actually
# provisioned with (``create_instance``/``_effective_disk_gb``); searching at a
# smaller requested ``disk_gb`` would surface offers that then fail to rent.
book = usable_offers(
search_vram, max(float(disk_gb), MIN_DISK_GB), exclude_machine_ids=exclude_machine_ids
)
except Exception as exc:
if required:
raise UnsupportedGpuError(f"vast offer search failed: {exc}") from exc
logger.warning("vast offer search failed (%s); allocating on runpod only", exc)
out: list[Candidate] = []
seen: set[str] = set()
for o in book:
if pinned_gpu and o.gpu != pinned_gpu:
continue
info = GPU_INFO[o.gpu]
if "vast" not in info.validated_on and not allow_unval:
continue
if o.gpu in seen: # offers are price-sorted; keep the cheapest per class
continue
seen.add(o.gpu)
out.append(
Candidate(
"vast", o.gpu, o.dph_total, info.vram_gb, "vast" in info.validated_on, offer=o
)
)
return out, tuple(book)
def allocate(
model_id: str,
algorithm: str,
*,
gpu: str | None = None,
provider: str = "auto",
disk_gb: int = 60,
allow_unvalidated: bool | None = None,
exclude_machine_ids: set[int] | frozenset[int] = frozenset(),
train=None,
thinking: bool = False,
) -> Allocation:
"""Pick the cheapest (provider, GPU class) able to run the job across providers.
``gpu`` pins the class (the allocator then only picks the provider); ``provider``
pins the substrate ("auto"/"runpod"/"vast"). Both default to fully automatic.
``train``/``thinking`` size the requirement to the run's actual knobs (context, group,
rank, batch) via the matrix — long context / large group route up, small runs down.
"""
if provider not in ("auto", *PROVIDER_NAMES):
raise UnsupportedGpuError(
f"unknown provider {provider!r} (auto, {', '.join(PROVIDER_NAMES)})"
)
pinned_gpu = canonical_gpu(gpu) if gpu else None
# The model's requirement is the floor regardless of a pin: an undersized concrete
# pin (e.g. Qwen3-8B on a 24 GB card) must drop out of the candidate filter and
# raise here, not provision a paid worker that OOMs. The pin only narrows WHICH
# fitting class is chosen, never lowers the VRAM bar.
need = required_vram_gb(model_id, algorithm, train=train, thinking=thinking)
allow_unval = unvalidated_allowed(allow_unvalidated)
live = available_providers()
if provider != "auto" and provider not in live:
raise UnsupportedGpuError(
f"provider {provider!r} requested but not available on this control plane "
f"(available: {', '.join(live) or '(none)'}; vast needs VAST_API_KEY)"
)
def _gather(pin: str | None) -> tuple[list[Candidate], tuple]:
cands: list[Candidate] = []
book: tuple = ()
if provider in ("auto", "runpod") and "runpod" in live:
cands += _runpod_candidates(need, pin, allow_unval)
if provider in ("auto", "vast") and "vast" in live:
vcands, book = _vast_candidates(
need, pin, allow_unval, disk_gb, exclude_machine_ids, required=(provider == "vast")
)
cands += vcands
return cands, book
candidates, offer_book = _gather(pinned_gpu)
# NEVER hard-fail on availability: a pin that no live provider can serve (the class isn't
# offered right now, or is below ``need`` so it's filtered out) escalates to the cheapest
# FITTING class across providers instead of raising -- "one spot larger, and so on". The
# ``need`` floor is still absolute (we never drop below it -> no OOM), and the pin is only a
# preference. We only raise when NOTHING >= need is available anywhere (truly unsatisfiable).
escalated_from = None
if not candidates and pinned_gpu is not None:
escalated_from = pinned_gpu
candidates, offer_book = _gather(None)
if not candidates:
raise UnsupportedGpuError(
f"no allocatable GPU (>= {need} GB VRAM for {model_id}, provider={provider}, "
f"validated_only={not allow_unval}); widen with gpu.allow_unvalidated = true, add a "
f"provider (VAST_API_KEY), or the run genuinely exceeds every available GPU class"
)
if escalated_from is not None:
order0 = {n: i for i, n in enumerate(PROVIDER_NAMES)}
_cheapest = sorted(candidates, key=lambda c: (c.hourly_usd, c.vram_gb, order0.get(c.provider, 99)))[0]
# WARNING level so it surfaces at default `slm train` verbosity (configure_logging is
# WARNING) — a silently-escalated pin changes cost/hardware and operators must see it;
# still routed through the logger (stderr), so machine-readable stdout stays clean.
logger.warning(
"pinned GPU %r unavailable or below need (%s GB) on provider=%s; "
"escalated to cheapest fitting class %s (%s GB, %s)",
escalated_from,
need,
provider,
_cheapest.gpu,
_cheapest.vram_gb,
_cheapest.provider,
)
# Cheapest first; equal rates prefer less VRAM (don't burn a big card on a small
# job), then registry order (runpod is the longest-validated substrate).
order = {n: i for i, n in enumerate(PROVIDER_NAMES)}
ranked = sorted(candidates, key=lambda c: (c.hourly_usd, c.vram_gb, order.get(c.provider, 99)))
best = ranked[0]
return Allocation(
provider=best.provider,
gpu=best.gpu,
hourly_usd=best.hourly_usd,
min_vram_gb=need,
candidates=tuple(ranked),
offer=best.offer,
provider_offers=offer_book,
)
def allocation_summary(a: Allocation) -> str:
head = (
f"allocated {a.gpu} on {a.provider} at ${a.hourly_usd:.2f}/hr "
f"(need >= {a.min_vram_gb} GB VRAM"
)
# ``a.offer`` is an OPAQUE per-provider provisioning hint, not necessarily a Vast
# offer — only format Vast specifics when the chosen provider is vast, so a future
# provider's hint never misformats or raises on a missing attribute.
if a.provider == "vast" and a.offer is not None:
head += f", vast offer {a.offer.offer_id} in {a.offer.geolocation}"
head += ")"
if len(a.candidates) > 1:
nxt = a.candidates[1]
head += f"; next-best: {nxt.gpu}@{nxt.provider} ${nxt.hourly_usd:.2f}/hr"
return head
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