Instructions to use codelion/sprog-9m with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- MLX
How to use codelion/sprog-9m with MLX:
# Download the model from the Hub pip install huggingface_hub[hf_xet] huggingface-cli download --local-dir sprog-9m codelion/sprog-9m
- Notebooks
- Google Colab
- Kaggle
- Local Apps Settings
- LM Studio
File size: 13,750 Bytes
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A 9.37M-parameter from-scratch MLX seq2seq that solves grade-school math word
problems WITHOUT an LLM at inference. It abstracts the numbers in a question to
slots ([N0], [N1], ...) and predicts a postfix PROGRAM over those slots; the
program is executed symbolically. Self-consistency (96 temperature samples) plus
a free symbolic verifier (0 trainable params) select the final answer.
Usage:
pip install mlx numpy huggingface_hub
huggingface-cli download codelion/sprog-9m --local-dir ./sprog-9m
python sprog-9m/inference.py --question "A baker had 24 muffins, sold 3/4, then baked 10 more. How many now?"
Python:
from huggingface_hub import snapshot_download
from pathlib import Path
import sys
p = snapshot_download("codelion/sprog-9m"); sys.path.insert(0, p)
from inference import load_model, solve
model, stoi, cfg = load_model(Path(p))
print(solve(model, stoi, "If 3 pens cost $6, how much do 5 pens cost?"))
"""
from __future__ import annotations
import argparse
import json
import re
from collections import defaultdict
from pathlib import Path
import mlx.core as mx
import mlx.nn as nn
import numpy as np
from mlx.utils import tree_unflatten
# ---------------------------------------------------------------------------
# 1. number-slot tokenization (numbers -> [Ni]; spelled numbers -> digits)
# ---------------------------------------------------------------------------
_UNITS = {"zero": 0, "one": 1, "two": 2, "three": 3, "four": 4, "five": 5,
"six": 6, "seven": 7, "eight": 8, "nine": 9, "ten": 10, "eleven": 11,
"twelve": 12, "thirteen": 13, "fourteen": 14, "fifteen": 15,
"sixteen": 16, "seventeen": 17, "eighteen": 18, "nineteen": 19}
_TENS = {"twenty": 20, "thirty": 30, "forty": 40, "fifty": 50, "sixty": 60,
"seventy": 70, "eighty": 80, "ninety": 90}
_SCALES = {"hundred": 100, "thousand": 1000, "million": 1_000_000}
OPS = {"+", "-", "*", "/", "**"}
PAD, BOS, EOS, UNK = "<pad>", "<bos>", "<eos>", "<unk>"
SPECIAL = [PAD, BOS, EOS, UNK]
MAX_SLOTS = 20
SLOT_TOKENS = [f"[N{i}]" for i in range(MAX_SLOTS)]
CONST_VALUES = [0, 1, 2, 3, 4, 5, 6, 7, 8, 9, 10, 12, 14, 15, 16, 20, 24, 25,
30, 50, 52, 60, 100, 365, 1000,
0.01, 0.05, 0.1, 0.125, 0.15, 0.2, 0.25, 0.3, 0.35, 0.4, 0.45,
0.5, 0.55, 0.6, 0.65, 0.7, 0.75, 0.8, 0.85, 0.9, 0.95,
1.2, 1.25, 1.5, 2.5]
CONST_TOKENS = [f"[C{c}]" for c in CONST_VALUES]
TGT_VOCAB = SPECIAL + sorted(OPS) + SLOT_TOKENS + CONST_TOKENS
TGT_STOI = {t: i for i, t in enumerate(TGT_VOCAB)}
BOS_ID, EOS_ID = TGT_STOI[BOS], TGT_STOI[EOS]
_NUM = re.compile(r"\d[\d,]*(?:\.\d+)?")
_TOKEN = re.compile(r"\[N\d+\]|[a-z]+|\d+\.?\d*|[^\sa-z\d]")
_WORDTOK = re.compile(r"[A-Za-z]+|\d[\d,]*\.?\d*")
def to_digits(text: str) -> str:
s = text.replace("-", " ")
spans, run_start, total, current, have, last_end = [], None, 0, 0, False, 0
def flush(end):
nonlocal run_start, total, current, have
if have and run_start is not None:
spans.append((run_start, end, str(total + current)))
run_start, total, current, have = None, 0, 0, False
for m in _WORDTOK.finditer(s):
w = m.group().lower()
if w in _UNITS:
if not have:
run_start = m.start()
current += _UNITS[w]; have = True
elif w in _TENS:
if not have:
run_start = m.start()
current += _TENS[w]; have = True
elif w == "hundred" and have:
current = (current or 1) * 100
elif w in _SCALES and have:
total += (current or 1) * _SCALES[w]; current = 0
elif w == "and" and have:
pass
else:
flush(last_end)
last_end = m.end()
flush(last_end)
if not spans:
return text
out, prev = [], 0
for st, en, rep in spans:
out.append(s[prev:st]); out.append(rep); prev = en
out.append(s[prev:])
return "".join(out)
def slot_encode(text: str):
"""(token_list, slot_values) — numbers replaced by [Ni] in order of appearance."""
t = to_digits(text).lower()
values, pieces, prev = [], [], 0
for m in _NUM.finditer(t):
values.append(float(m.group().replace(",", "")))
if len(values) > MAX_SLOTS:
return None
pieces.append(t[prev:m.start()]); pieces.append(f" [N{len(values)-1}] ")
prev = m.end()
pieces.append(t[prev:])
return _TOKEN.findall("".join(pieces)), values
# ---------------------------------------------------------------------------
# 2. symbolic execution + verifier (0 trainable params)
# ---------------------------------------------------------------------------
def decode_postfix(seq, values):
stack = []
for t in seq:
if t in OPS:
if len(stack) < 2:
return None
b, a = stack.pop(), stack.pop()
if t == "/":
if b == 0:
return None
stack.append(a / b)
elif t == "**":
if abs(a) > 1e4 or abs(b) > 6 or (a < 0 and b != int(b)) or (a == 0 and b < 0):
return None
try:
r = a ** b
except (OverflowError, ValueError, ZeroDivisionError):
return None
if isinstance(r, complex):
return None
stack.append(r)
else:
stack.append({"+": a + b, "-": a - b, "*": a * b}[t])
elif t.startswith("[N"):
i = int(t[2:-1])
if i >= len(values):
return None
stack.append(values[i])
elif t.startswith("[C"):
stack.append(float(t[2:-1]))
else:
return None
return stack[0] if len(stack) == 1 else None
def _intermediates(prog, vals):
s, inter = [], []
for t in prog:
if t in OPS:
if len(s) < 2:
return None
b, a = s.pop(), s.pop()
try:
if t == "+": r = a + b
elif t == "-": r = a - b
elif t == "*": r = a * b
elif t == "/": r = a / b if b != 0 else None
elif t == "**": r = a ** b if not (a < 0 and b != int(b)) and not (a == 0 and b < 0) else None
else: r = None
except Exception:
return None
if r is None or isinstance(r, complex):
return None
s.append(r); inter.append(r)
elif t.startswith("[N"):
i = int(t[2:-1])
if i >= len(vals):
return None
s.append(vals[i])
elif t.startswith("[C"):
s.append(float(t[2:-1]))
else:
return None
return inter
def _plausible(a):
return a is not None and a > 0 and abs(a - round(a)) < 1e-6
def verify_select(question, candidates, mag_k=100.0):
"""Pick the answer whose best program maximizes the structural score
(coverage + magnitude-sanity + intermediate-sanity), tie-broken by votes."""
enc = slot_encode(question)
vals = enc[1] if enc else []
navail = max(len(vals), 1)
nums = [float(x) for x in re.findall(r"\d+\.?\d*", question)]
maxn = max(nums) if nums else 1.0
votes, V = defaultdict(float), defaultdict(lambda: -1e9)
for prog, a in candidates:
votes[a] += 1.0
cov = len({t for t in prog if t.startswith("[N")}) / navail
mag = 1.0 if a <= mag_k * maxn else 0.0
inter = _intermediates(prog, vals)
ip = 1.0 if (inter is not None and all(x >= 0 for x in inter)) else 0.0
ii = 1.0 if (inter is not None and all(abs(x - round(x)) < 1e-6 for x in inter)) else 0.0
V[a] = max(V[a], cov + mag + ip + ii)
if not votes:
return None
plau = [a for a in votes if _plausible(a)] or list(votes)
return max(plau, key=lambda a: (V[a], votes[a]))
# ---------------------------------------------------------------------------
# 3. the MLX seq2seq model
# ---------------------------------------------------------------------------
def _pad_mask(pad):
return mx.where(pad[:, None, None, :], -1e9, 0.0).astype(mx.float32)
def _causal_mask(L):
return mx.triu(mx.full((L, L), -1e9), k=1)[None, None]
class FFN(nn.Module):
def __init__(self, d, ff):
super().__init__(); self.l1 = nn.Linear(d, ff); self.l2 = nn.Linear(ff, d)
def __call__(self, x):
return self.l2(nn.gelu(self.l1(x)))
class EncLayer(nn.Module):
def __init__(self, d, h, ff):
super().__init__()
self.n1 = nn.LayerNorm(d); self.attn = nn.MultiHeadAttention(d, h)
self.n2 = nn.LayerNorm(d); self.ffn = FFN(d, ff)
def __call__(self, x, m):
h = self.n1(x); x = x + self.attn(h, h, h, m)
h = self.n2(x); return x + self.ffn(h)
class DecLayer(nn.Module):
def __init__(self, d, h, ff):
super().__init__()
self.n1 = nn.LayerNorm(d); self.sa = nn.MultiHeadAttention(d, h)
self.n2 = nn.LayerNorm(d); self.ca = nn.MultiHeadAttention(d, h)
self.n3 = nn.LayerNorm(d); self.ffn = FFN(d, ff)
def __call__(self, x, mem, tm, mm):
h = self.n1(x); x = x + self.sa(h, h, h, tm)
h = self.n2(x); x = x + self.ca(h, mem, mem, mm)
h = self.n3(x); return x + self.ffn(h)
class Seq2Seq(nn.Module):
def __init__(self, src_v, tgt_v, d=304, h=4, ne=4, nd=4, ff=608,
max_src=220, max_tgt=64):
super().__init__()
self.src_emb = nn.Embedding(src_v, d); self.tgt_emb = nn.Embedding(tgt_v, d)
self.src_pos = nn.Embedding(max_src, d); self.tgt_pos = nn.Embedding(max_tgt, d)
self.enc = [EncLayer(d, h, ff) for _ in range(ne)]
self.dec = [DecLayer(d, h, ff) for _ in range(nd)]
self.norm = nn.LayerNorm(d); self.out = nn.Linear(d, tgt_v)
def encode(self, src, src_pad):
L = src.shape[1]
x = self.src_emb(src) + self.src_pos(mx.arange(L))
m = _pad_mask(src_pad)
for layer in self.enc:
x = layer(x, m)
return x, m
def decode(self, tgt, mem, mm, tgt_pad):
L = tgt.shape[1]
x = self.tgt_emb(tgt) + self.tgt_pos(mx.arange(L))
tm = _causal_mask(L) + _pad_mask(tgt_pad)
for layer in self.dec:
x = layer(x, mem, tm, mm)
return self.out(self.norm(x))
def _sample_batch(model, mem, mm, S, T, maxlen=48):
memS = mx.broadcast_to(mem, (S, mem.shape[1], mem.shape[2]))
mmS = mx.broadcast_to(mm, (S, mm.shape[1], mm.shape[2], mm.shape[3]))
seqs = mx.full((S, 1), BOS_ID, dtype=mx.int32)
for _ in range(maxlen):
logits = model.decode(seqs, memS, mmS,
mx.zeros((S, seqs.shape[1]), dtype=mx.bool_))
nxt = mx.random.categorical(logits[:, -1, :] / T)[:, None]
seqs = mx.concatenate([seqs, nxt.astype(mx.int32)], axis=1)
seqs, out = np.array(seqs), []
for row in seqs:
toks = []
for t in row[1:]:
if t == EOS_ID:
break
toks.append(TGT_VOCAB[int(t)])
out.append(toks)
return out
# ---------------------------------------------------------------------------
# 4. load + solve
# ---------------------------------------------------------------------------
def load_model(model_dir: Path):
model_dir = Path(model_dir)
cfg = json.load(open(model_dir / "config.json"))
src_vocab = json.load(open(model_dir / "src_vocab.json"))
stoi = {t: i for i, t in enumerate(src_vocab)}
model = Seq2Seq(len(src_vocab), len(TGT_VOCAB), d=cfg["d"], h=cfg["n_heads"],
ne=cfg["n_layers"], nd=cfg["n_layers"], ff=cfg["ff"],
max_src=cfg["max_src"], max_tgt=cfg["max_tgt"])
w = np.load(model_dir / "model.npz")
model.update(tree_unflatten([(k, mx.array(w[k])) for k in w.files]))
model.eval()
return model, stoi, cfg
def solve(model, stoi, question, n_samples=96, temp=0.9, seed=0, return_details=False):
"""Solve one question. Returns the answer (float) or None."""
mx.random.seed(seed)
enc = slot_encode(question)
if enc is None:
return None
toks, vals = enc
S = mx.array([[stoi.get(t, stoi[UNK]) for t in toks]])
mem, mm = model.encode(S, S == 0)
cands = []
for prog in _sample_batch(model, mem, mm, n_samples, temp):
a = decode_postfix(prog, vals)
if a is None or isinstance(a, complex):
continue
cands.append((prog, round(float(a), 4)))
if not cands:
return None
answer = verify_select(question, cands)
if return_details:
votes = defaultdict(int)
for _, a in cands:
votes[a] += 1
return {"answer": answer, "n_candidates": len(cands),
"n_distinct": len(votes), "top_votes": sorted(votes.items(),
key=lambda x: -x[1])[:5]}
return answer
def main():
ap = argparse.ArgumentParser(description="SPROG-9M: LLM-free GSM8K solver")
ap.add_argument("--question", "-q", required=True)
ap.add_argument("--model-dir", default=str(Path(__file__).parent))
ap.add_argument("--samples", type=int, default=96)
ap.add_argument("--temp", type=float, default=0.9)
ap.add_argument("--details", action="store_true")
a = ap.parse_args()
model, stoi, cfg = load_model(Path(a.model_dir))
r = solve(model, stoi, a.question, a.samples, a.temp, return_details=a.details)
if a.details:
print(json.dumps(r, indent=2))
else:
print(f"Answer: {r}")
if __name__ == "__main__":
main()
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