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kernel_reverse.py
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import jax
import jax.numpy as np
import jax.scipy as sp
import numpy as onp
import ntk_utils
import neural_tangents as nt
from jax import pmap, vmap, jit, grad, value_and_grad
from ntk_utils import keval, kgrad_td_rows, keval_fmap, kgrad_td_rows_fmap2
from jax_utils import (
predict,
predict2,
bit_slice,
cpu,
gpu_kind,
key,
sp_minimize,
vsplit,
hsplit,
device_put,
platform_desc,
platform_lookup,
enable_x64,
disable_x64,
)
from util import str_slice
from neural_tangents import stax
import models
import datasets
from pathlib import Path
from functools import partial
from shapecheck import check_shapes
enable_x64()
# codes
# d: clean train data
# p: poisoned train data
# t: clean test data
# a: poisoned (attack) test data
K_BATCH_SIZE, KG_BATCH_SIZE = platform_lookup(
{
("cpu", 32): (20, 20),
("cpu", 64): (20, 20),
("2080ti", 32): (10, 10),
("2080ti", 64): (5, 1),
("rtx6k", 32): (40, 20),
("rtx6k", 64): (20, 10),
("a40", 32): (80, 80),
("a40", 64): (40, 40),
("a100", 32): (160, 160),
("a100", 64): (80, 80),
}
)
# K_BATCH_SIZE, KG_BATCH_SIZE = platform_lookup(
# {
# ("cpu", 32): (20, 20),
# ("cpu", 64): (20, 20),
# ("2080ti", 32): (10, 10),
# ("2080ti", 64): (5, 1),
# ("rtx6k", 32): (40, 20),
# ("rtx6k", 64): (20, 10),
# ("a40", 32): (80, 80),
# ("a40", 64): (30, 40),
# ("a100", 32): (160, 160),
# ("a100", 64): (60, 60),
# }
# )
@check_shapes("D,D", "P,D", "P,P")
def bd_build_kdd(Kdd, Kpd, Kpp):
return np.block([[Kdd, Kpd.T], [Kpd, Kpp]])
@check_shapes("D,T", "P,T")
def bd_build_kdt(Kdt, Kpt):
return np.vstack([Kdt, Kpt])
def bd_build_y(Yd, Yp):
return np.hstack([Yd, Yp])
@check_shapes("D,D", "P,D", "P,P", "D,T", "P,T", "D", "P")
def bd_predict(Kdd, Kpd, Kpp, Kdt, Kpt, Yd, Yp):
return predict2(
bd_build_kdd(Kdd, Kpd, Kpp), bd_build_kdt(Kdt, Kpt), bd_build_y(Yd, Yp)
)
# @jit
@check_shapes("D,D", "D,T", "D", "P,D", "P,T", "P", "P")
def predict_add_ps(Kdd, Kdt, Yd, Kpd, Kpt, Kpp_diag, Yp):
eps = np.sqrt(np.finfo(Kdd.dtype).eps)
F = sp.linalg.cho_factor(Kdd)
beta = sp.linalg.cho_solve(F, Yd)
es = sp.linalg.cho_solve(F, Kpd.T)
y_pred = Kdt.T @ beta
Ss = 1 / (Kpp_diag - (Kpd * es.T).sum(1) + eps)
beta_ps = np.vstack(
[
beta[:, None] + Ss * (Yd.T @ es) * es - es * Ss * Yp,
-(es * Yd[:, None]).sum(0) * Ss + Yp * Ss,
]
)
y_pred_ps = Kdt.T @ beta_ps[:-1] + beta_ps[-1] * Kpt.T
return y_pred, y_pred_ps.T
# @jit
@check_shapes("D,D", "D,T", "D", "P,D", "P,T", "P", "P")
def predict_add_ps2(Kdd, Kdt, Yd, Kpd, Kpt, Kpp_diag, Yp):
eps = np.sqrt(np.finfo(Kdd.dtype).eps)
F = sp.linalg.cho_factor(Kdd)
beta = sp.linalg.cho_solve(F, Yd)
es = sp.linalg.cho_solve(F, Kpd.T)
y_pred = beta @ Kdt
Ss = 1 / (Kpp_diag - (Kpd * es.T).sum(1) + eps)
beta_ps = np.vstack(
[
beta[:, None] + Ss * (Yd.T @ es) * es - es * Ss * Yp,
-(es * Yd[:, None]).sum(0) * Ss + Yp * Ss,
]
)
# print(beta_ps[:-1].shape, Kdt.shape, beta_ps[-1].shape, Kpt.shape)
y_pred_ps = beta_ps[:-1].T @ Kdt + beta_ps[-1, None].T * Kpt
return y_pred, y_pred_ps
@check_shapes("D,D", "D,T", "D", "P,D", "P,T", "P,P", "P")
def bd_greedy(Kdd, Kdt, Yd, Kpd, Kpt, Kpp, Yp, eps=10, verbose=True):
S, Sc = np.arange(len(Yp)), np.empty(0, dtype=int)
for round in range(eps):
y_pred, y_pred_ps = predict_add_ps2(
np.block([[Kdd, Kpd[Sc].T], [Kpd[Sc], Kpp[Sc][:, Sc]]]),
np.vstack([Kdt, Kpt[Sc]]),
np.hstack([Yd, Yp[Sc]]),
np.hstack([Kpd[S], Kpp[S][:, Sc]]),
Kpt[S],
np.diag(Kpp)[S],
Yp[S],
)
loss = ((y_pred - 1).clip(None, 0) ** 2).sum()
losses = ((y_pred_ps - 1).clip(None, 0) ** 2).sum(1)
best_j = losses.argmin()
best_loss = losses[best_j]
if verbose:
print(f"selected {S[best_j]}: {loss:.2f} (diff {loss - best_loss:.2f})")
Sc = np.append(Sc, S[best_j])
S = np.delete(S, best_j)
return Sc
@check_shapes("D,D", "D,T", "D", "P,D", "P,T", "P,P", "P")
def bd_greedy2(Kdd, Kdt, Yd, Kpd, Kpt, Kpp, Yp, eps=10, verbose=True):
S, Sc = np.arange(len(Yp)), np.empty(0, dtype=int)
for round in range(eps):
y_pred, y_pred_ps = predict_add_ps2(
np.block([[Kdd, Kpd[Sc].T], [Kpd[Sc], Kpp[Sc][:, Sc]]]),
np.vstack([Kdt, Kpt[Sc]]),
np.hstack([Yd, Yp[Sc]]),
np.hstack([Kpd[S], Kpp[S][:, Sc]]),
Kpt[S],
np.diag(Kpp)[S],
Yp[S],
)
loss = ((y_pred - 1).clip(None, 0) ** 2).sum()
losses = ((y_pred_ps - 1).clip(None, 0) ** 2).sum(1)
best_j = losses.argmin()
best_loss = losses[best_j]
if verbose:
asr = np.mean(y_pred_ps[best_j] > 0)
print(
f"{round} selected {S[best_j]}: {loss:.2f} → {best_loss:.2f} (diff {loss - best_loss:.2f}) {asr*100:.2f}% ASR"
)
Sc = np.append(Sc, S[best_j])
S = np.delete(S, best_j)
round_loss = best_loss
while True:
print("=" * 50)
for round in range(eps):
S = np.append(S, Sc[round])
Sc = np.delete(Sc, round)
y_pred, y_pred_ps = predict_add_ps2(
np.block([[Kdd, Kpd[Sc].T], [Kpd[Sc], Kpp[Sc][:, Sc]]]),
np.vstack([Kdt, Kpt[Sc]]),
np.hstack([Yd, Yp[Sc]]),
np.hstack([Kpd[S], Kpp[S][:, Sc]]),
Kpt[S],
np.diag(Kpp)[S],
Yp[S],
)
losses = np.nan_to_num(
((y_pred_ps - 1).clip(None, 0) ** 2).sum(1), nan=float("inf")
)
loss = losses[-1]
best_j = losses.argmin()
best_loss = losses[best_j]
if verbose:
asr = np.mean(y_pred_ps[best_j] > 0)
print(
f"{round} selected {S[best_j]}: {loss:.2f} → {best_loss:.2f} (diff {loss - best_loss:.2f}) {asr*100:.2f}% ASR"
)
Sc = np.insert(Sc, round, S[best_j])
S = np.delete(S, best_j)
if best_loss < round_loss:
round_loss = best_loss
else:
break
return Sc
def bd_split_G(G, num_train=5000, num_test=1000):
k, n, m = len(G), num_train, num_test
d = np.full(k, False).at[:n].set(True).at[2 * n : 3 * n].set(True)
p = np.full(k, False).at[n : 2 * n].set(True)
t = (
np.full(k, False)
.at[3 * n : 3 * n + m]
.set(True)
.at[3 * n + 2 * m : 3 * n + 3 * m]
.set(True)
)
a = np.full(k, False).at[3 * n + m : 3 * n + 2 * m].set(True)
Kdd = G[d][:, d]
Kpd = G[p][:, d]
Kpp = G[p][:, p]
Kdt = G[d][:, t]
Kpt = G[p][:, t]
Kda = G[d][:, a]
Kpa = G[p][:, a]
return Kdd, Kpd, Kpp, Kdt, Kpt, Kda, Kpa
def bd_make_Y(num_train=5000, num_test=1000):
Yd = np.hstack([np.full(num_train, 1), np.full(num_train, -1)])
Yp = np.full(num_train, 1)
Yt = np.hstack([np.full(num_test, 1), np.full(num_test, -1)])
Ya = np.full(num_test, 1)
return Yd, Yp, Yt, Ya
@check_shapes("D,D", "P,D", "P,P", "D,T", "D,A", "P,T", "P,A", "D", "P", "T")
def bd_loss(Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt):
# print(Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt)
yt_pred, ya_pred = vsplit(
bd_predict(Kdd, Kpd, Kpp, np.hstack([Kdt, Kda]), np.hstack([Kpt, Kpa]), Yd, Yp),
Kpt.T,
Kpa.T,
)
# return yt_pred, ya_pred
# return Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt
return np.sum((yt_pred - Yt) ** 2) + np.sum((ya_pred - 1).clip(None, 0) ** 2), (
yt_pred,
ya_pred,
)
bd_loss_grad = jit(
value_and_grad(bd_loss, argnums=(1, 2, 5, 6), has_aux=True), backend="cpu"
)
@check_shapes("D,D", "D")
def predict_k_fold(Kdd, Yd, k=5):
assert len(Kdd) % 2 == 0
n = len(Kdd) // 2
assert n % k == 0
m = n // k
S = jax.lax.dynamic_slice
def bd_loss_per_fold(fold):
D = (
((np.arange(k) != fold).nonzero(size=k - 1)[0] * m)[np.newaxis].T
+ np.array([0, n])
).T.ravel()
T = fold * m + np.array([0, n])
return predict2(
Kdd=np.block([[S(Kdd, (R, C), (m, m)) for C in D] for R in D]),
Kdt=np.block([[S(Kdd, (R, C), (m, m)) for C in T] for R in D]),
Y=np.hstack([S(Yd, (C,), (m,)) for C in D]),
)
result = jax.lax.map(bd_loss_per_fold, np.arange(k))
return result
@check_shapes("D,D", "D", "P,D", "P,P", "P")
def bd_greedy_k_fold(Kdd, Yd, Kpd, Kpp, Yp, k=10, eps=10):
Sp, Sc = np.arange(len(Yp)), np.empty(0, dtype=int)
S = jax.lax.dynamic_slice
n, p = len(Kdd) // 2, len(Kpp)
assert n % k == 0
m = n // k
def predict_add_ps_per_fold(fold, Sp, Sc):
D = (
((np.arange(k) != fold).nonzero(size=k - 1)[0] * m)[np.newaxis].T
+ np.array([0, n])
).T.ravel()
# T = fold * m + np.array([0, n])
Kdd2 = np.block([[S(Kdd, (R, C), (m, m)) for C in D] for R in D])
# Kdt2 = np.block([[S(Kdd, (R, C), (m, m)) for C in T] for R in D])
Kpd2 = np.block([[S(Kpd, (0, C), (p, m)) for C in D]])
# Kpt2 = np.block([[S(Kpd, (0, C), (p, m)) for C in T]])
Yd2 = np.hstack([S(Yd, (C,), (m,)) for C in D])
y_pred, y_pred_ps = predict_add_ps(
np.block([[Kdd2, Kpd2[Sc].T], [Kpd2[Sc], Kpp[Sc][:, Sc]]]),
np.vstack([Kpd2.T, Kpp[Sc]]),
np.hstack([Yd2, Yp[Sc]]),
np.hstack([Kpd2[Sp], Kpp[Sp][:, Sc]]),
Kpp[Sp],
np.diag(Kpp)[Sp],
Yp[Sp],
)
loss = ((y_pred - 1).clip(None, 0) ** 2).sum()
losses = ((y_pred_ps - 1).clip(None, 0) ** 2).sum(1)
return loss, losses
# result = jax.lax.map(lambda fold: predict_add_ps_per_fold(fold, Sp, Sc), np.arange(k))
result = predict_add_ps_per_fold(0, Sp, Sc)
return result
# for round in range(eps):
# for fold in range(k):
@check_shapes("D,D", "P,D", "P,P", "D,A", "P,A", "D", "P")
def bd_loss_k_fold(Kdd, Kpd, Kpp, Kda, Kpa, Yd, Yp, k=10):
assert len(Kdd) % 2 == 0
n, eps = len(Kdd) // 2, len(Kpd)
assert Kda.shape == (2 * n, n)
assert Kpa.shape == (eps, n)
# assert np.allclose(Yd, np.hstack([np.full(n, 1), np.full(n, -1)]))
assert n % k == 0
m = n // k
S = jax.lax.dynamic_slice
# ypred_no_poison = predict_k_fold(Kdd, Yd, k=10)
def bd_loss_per_fold(fold):
D = (
((np.arange(k) != fold).nonzero(size=k - 1)[0] * m)[np.newaxis].T
+ np.array([0, n])
).T.ravel()
T = fold * m + np.array([0, n])
P = fold * m
return bd_loss(
Kdd=np.block([[S(Kdd, (R, C), (m, m)) for C in D] for R in D]),
Kpd=np.block([[S(Kpd, (0, C), (eps, m)) for C in D]]),
Kpp=Kpp,
Kdt=np.block([[S(Kdd, (R, C), (m, m)) for C in T] for R in D]),
Kda=np.block([[S(Kda, (R, P), (m, m))] for R in D]),
Kpt=np.block([[S(Kpd, (0, C), (eps, m)) for C in T]]),
Kpa=S(Kpa, (0, P), (eps, m)),
Yd=np.hstack([S(Yd, (C,), (m,)) for C in D]),
Yp=Yp,
Yt=np.hstack([S(Yd, (C,), (m,)) for C in T]),
# Yt=ypred_no_poison[fold],
)
result = jax.lax.map(bd_loss_per_fold, np.arange(k))
return result[0].sum()
bd_loss_k_fold_grad = jit(
value_and_grad(bd_loss_k_fold, argnums=(1, 2, 4)), backend="cpu"
)
@check_shapes(
None, "D,D", "D,T", "D,A", "D,H,W,C", "T,H,W,C", "P,H,W,C", "A,H,W,C", "D", "P", "T"
)
def bd_find(kf, Kdd, Kdt, Kda, Xd, Xt, Xp, Xa, Yd, Yp, Yt, kfg=None):
X = (Xd, Xp, Xt, Xa)
Kpd, Kpp, Kpt, Kpa = device_put(
hsplit(keval(kf, Xp, np.vstack(X), batch_size=K_BATCH_SIZE).T, *X), cpu
)
(loss, (yt_pred, ya_pred)), (gKpd, gKpp, gKpt, gKpa) = bd_loss_grad(
Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt
)
return (
loss,
kgrad_td_rows(
kfg or kf,
Xp,
np.vstack(X),
np.hstack((gKpd, gKpp + gKpp.T, gKpt, gKpa)),
wrap=not kfg,
batch_size=KG_BATCH_SIZE,
),
yt_pred,
ya_pred,
)
@check_shapes(None, "D,D", "D,A", "D,H,W,C", "P,H,W,C", "A,H,W,C", "D", "P")
def bd_find_k_fold(kf, Kdd, Kda, Xd, Xp, Xa, Yd, Yp, kfg=None):
X = (Xd, Xp, Xa)
Kpd, Kpp, Kpa = device_put(
hsplit(keval(kf, Xp, np.vstack(X), batch_size=K_BATCH_SIZE).T, *X), cpu
)
loss, (gKpd, gKpp, gKpa) = bd_loss_k_fold_grad(Kdd, Kpd, Kpp, Kda, Kpa, Yd, Yp)
return loss, kgrad_td_rows(
kfg or kf,
Xp,
np.vstack(X),
np.hstack((gKpd, gKpp + gKpp.T, gKpa)),
wrap=not kfg,
batch_size=KG_BATCH_SIZE,
)
@check_shapes(
None, "D,D", "D,T", "D,A", "D,H,W,C", "T,H,W,C", "P,H,W,C", "A,H,W,C", "D", "P", "T"
)
def bd_eval(kf, Kdd, Kdt, Kda, Xd, Xt, Xp, Xa, Yd, Yp, Yt):
X = (Xd, Xp, Xt, Xa)
Kpd, Kpp, Kpt, Kpa = hsplit(keval(kf, Xp, np.vstack(X)).T, *X)
yt_pred, ya_pred = vsplit(
bd_predict(Kdd, Kpd, Kpp, np.hstack([Kdt, Kda]), np.hstack([Kpt, Kpa]), Yd, Yp),
Kpt.T,
Kpa.T,
)
return yt_pred, ya_pred
# @partial(value_and_grad, argnums=6)
def bd_find_test(kf, Kdd, Kdt, Kda, Xd, Xt, Xp, Xa, Yd, Yp, Yt):
X = [Xd, Xp, Xt, Xa]
Kpd, Kpp, Kpt, Kpa = hsplit(keval(kf, Xp, np.vstack(X)).T, *X)
loss, _, _ = bd_loss(Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt)
return loss
@partial(value_and_grad, argnums=4)
def bd_find_k_fold_test(kf, Kdd, Kda, Xd, Xp, Xa, Yd, Yp):
X = (Xd, Xp, Xa)
Kpd, Kpp, Kpa = device_put(hsplit(keval(kf, Xp, np.vstack(X)).T, *X), cpu)
print(Kpd, Kpp, Kpa)
loss = bd_loss_k_fold(Kdd, Kpd, Kpp, Kda, Kpa, Yd, Yp)
return loss
@check_shapes(
None, None, "D,D", "D,T", "D,A", "D,H,W,C", "T,H,W,C", "P,H,W,C", "A,H,W,C", "D", "P", "T"
)
def bd_find_fmap(apply_fn, params, Kdd, Kdt, Kda, Xd, Xt, Xp, Xa, Yd, Yp, Yt):
X = (Xd, Xp, Xt, Xa)
Kpd, Kpp, Kpt, Kpa = device_put(
hsplit(keval_fmap(apply_fn, params, Xp, np.vstack(X), batch_size=K_BATCH_SIZE).T, *X), cpu
)
(loss, (yt_pred, ya_pred)), (gKpd, gKpp, gKpt, gKpa) = bd_loss_grad(
Kdd, Kpd, Kpp, Kdt, Kda, Kpt, Kpa, Yd, Yp, Yt
)
return (
loss,
kgrad_td_rows_fmap2(
apply_fn,
params,
Xp,
np.vstack(X),
np.hstack((gKpd, gKpp + gKpp.T, gKpt, gKpa)),
batch_size=KG_BATCH_SIZE,
),
yt_pred,
ya_pred,
)
if __name__ == "__main__":
print("#" * 80)
print(f"running on {platform_desc()}")
model = "convnext2"
mode = "use-train2"
eps = 30
poisoner = "1xs"
version = "v3"
version_map = {
("wrn34g", "v9.5"): 50,
("wrn34g", "v9.3"): 0,
("wrn34g", "v9.2"): 100,
("wrn34g", "v9"): 500,
("wrn34", "v9"): 1500,
("wrn34", "v9.2"): 250,
("wrn34r", "v9.5"): 50,
("wrn34r", "v9.3"): 0,
("wrn34r", "v9.2"): 100,
("wrn34r", "v9"): 300,
("convnext", "v1"): 2000,
("convnext", "v1.1"): 500,
("convnext", "v1.2"): 0,
("convnext", "v1.2"): 0,
("convnext", "v3.1"): 1000,
("convnext2", "v1"): 50,
("convnext2", "v1.0"): 2000,
("convnext2", "v1.1"): 0,
("convnext2", "v2"): 1500,
("convnext2", "v4"): 1000,
("convnext2", "v4.1"): 200,
("convnext2", "v3"): 3000,
}
if model == "convnext2":
data_file = Path(f"output/X-n04243546-n02096294-{poisoner}-perm.npy")
n, m = 1300, 50
s = 2600 if mode == "use-test" else 2200
t = 100 if mode == "use-test" else 0
lb = np.tile(datasets.IMAGENET_LOWER_BOUND, (eps, 1, 1, 1))
ub = np.tile(datasets.IMAGENET_UPPER_BOUND, (eps, 1, 1, 1))
else:
data_file = Path(f"output/X-94-{poisoner}-perm.npy")
n, m = 5000, 1000
s = 10000 if mode == "use-test" else 8000
t = 2000 if mode == "use-test" else 0
lb = np.tile(datasets.CIFAR_LOWER_BOUND, (eps, 1, 1, 1))
ub = np.tile(datasets.CIFAR_UPPER_BOUND, (eps, 1, 1, 1))
checkpoint_file = Path(f"output/{model}-{poisoner}/ebd-{version}-{eps}-tr2-init.npy")
# checkpoint_file = Path(f"output/{model}-{poisoner}/bd-{eps}-tr.npy")
param_file = Path(
f"output/checkpoints/{model}-{version.split('.')[0]}/params_{version_map[model, version]:06d}.pkl"
)
# param_file = Path(
# f"output/checkpoints/0.pkl"
# )
kernel_file = Path(f"output/{model}-{poisoner}/gdd-trained-{version}-perm.npy")
# kernel_file = Path(f"output/{model}-{poisoner}/gdd-perm.npy")
# kernel_file = Path(f"output/{model}-{poisoner}/gdd-0-perm.npy")
print(f" model : {model}")
print(f" mode : {mode}")
print(f" data : {str(data_file)} ({s}, {t})")
print(f"checkpoint : {str(checkpoint_file)} ({checkpoint_file.exists()})")
print(f" kernel : {str(kernel_file)}")
print(f" params : {str(param_file)}")
if model == "wrn34g":
ntk = models.WideResnet(block_size=4, k=5, num_classes=1)
elif model == "wrn34":
ntk = models.WideResnet(
block_size=4, k=1, num_classes=1, activation_fn=stax.Relu()
)
elif model == "wrn34r":
ntk = models.WideResnet(
block_size=4, k=5, num_classes=1, activation_fn=stax.Relu()
)
elif model in {"convnext", "convnext2"}:
ntk = models.ConvNeXt()
kernel_fn, apply_fn, params = ntk_utils.load_empirical_kernel(
ntk, param_file, implementation=3
)
ekg = ntk_utils.make_empirical_kernel_grad(apply_fn, params)
kf = kernel_fn
# kf = partial(ntk[2], get="ntk")
X = device_put(np.load(data_file), cpu)
x_train_c, x_train_p, x_train_pp, x_test_c, x_test_p, x_test_pp = vsplit(
X, n, n, n, m, m, m
)
Xd = np.vstack([x_train_c, x_train_pp])
Yd = np.hstack([np.full(len(x_train_c), 1), np.full(len(x_train_pp), -1)])
Xp = x_train_p
Yp = np.full(len(x_train_p), 1)
Xt = np.vstack([x_test_c, x_test_pp])
Yt = np.hstack([np.full(len(x_test_c), 1), np.full(len(x_test_pp), -1)])
Xa = x_test_p
Ya = np.full(len(x_test_p), 1)
Yd, Yp, Yt, Ya = device_put((Yd, Yp, Yt, Ya), cpu)
# Xd, Yd, Xp, Yp, Xt, Yt, Xa, Ya = device_put((Xd, Yd, Xp, Yp, Xt, Yt, Xa, Ya), cpu)
# G = keval(kf, X, X, batch_size=1000)
G = np.asarray(np.load(kernel_file))
G = device_put(G, cpu)
Gdd, Gpd, Gpp, Gdt, Gpt, Gda, Gpa = bd_split_G(G, n, m)
delta_bound = np.broadcast_to(8 / 256 / datasets.sigma, (1, 32, 32, 3))
def kfg(x, y):
return ekg(x, y)[1]
# Yt2 = predict2(Gdd, Gdt, Yd)
# def f(Xp):
# return bd_find(kf, Gdd, Gdt, Gda, Xd, Xt, Xp, Xa, Yd, np.ones(len(Xp)), Yt, kfg)
D = np.s_[(2 * n - s) // 2 : -(2 * n - s) // 2 or None]
P = np.s_[: -(2 * n - s) // 2 or None]
T = np.s_[(2 * m - t) // 2 : -(2 * m - t) // 2 or None]
A = np.s_[(2 * m - t) // 2 :]
if mode == "use-test":
def f(xp):
l, g, yt_pred, ya_pred = bd_find_fmap(
# kf,
apply_fn,
params,
Gdd[D, D],
Gdt[D, T],
Gda[D, A],
Xd[D],
Xt[T],
xp,
Xa[A],
Yd[D],
np.ones(len(xp)),
Yt[T],
# kfg,
)
return l, g
elif mode == "use-train":
assert s < len(Gdd)
T = (np.s_[: (2 * n - s) // 2], np.s_[-(2 * n - s) // 2 :])
P = np.s_[: -(2 * n - s) // 2] # unused
A = T[0]
def f(xp):
l, g, yt_pred, ya_pred = bd_find_fmap(
# kf,
apply_fn,
params,
Gdd[D, D],
np.hstack([Gdd[D, C] for C in T]),
Gpd.T[D, A],
Xd[D],
np.vstack([Xd[R] for R in T]),
xp,
Xp[A],
Yd[D],
np.ones(len(xp)),
np.hstack([Yd[R] for R in T]),
# kfg,
)
return l, g
elif mode == "use-train2":
assert s < len(Gdd)
T = (np.s_[: (2 * n - s) // 2], np.s_[-(2 * n - s) // 2 :])
P = np.s_[: -(2 * n - s) // 2]
A = T[1]
def f(xp, ret_pred=False):
l, g, yt_pred, ya_pred = bd_find_fmap(
# kf,
apply_fn,
params,
Gdd[D, D],
np.hstack([Gdd[D, C] for C in T]),
Gpd.T[D, A],
Xd[D],
np.vstack([Xd[R] for R in T]),
xp,
Xp[A],
Yd[D],
np.ones(len(xp)),
np.hstack([Yd[R] for R in T]),
# kfg,
)
if ret_pred:
return l,g,yt_pred,ya_pred
return l, g
elif mode == "cross-validation":
def f(xp):
return bd_find_k_fold(
kf,
Gdd[D, D],
Gpd[D, D].T,
Xd[D],
xp,
Xp[D],
Yd[D],
np.ones(len(xp)),
kfg,
)
else:
raise NotImplementedError
print(*jax.tree_util.tree_map(str_slice, (D, P, T, A)))
def bd_callback(xk, _=None):
if not np.any(np.isnan(xk)):
np.save(checkpoint_file, xk)
pass
def main2():
if checkpoint_file.exists():
print("Loading initialization from checkpoint")
x0 = np.load(checkpoint_file).astype(np.float64)
# x0 += jax.random.normal(key, x0.shape) * 1e-6
else:
print("Computing initialization using greedy algorithm")
if mode == "use-test":
x0 = Xp[bd_greedy(Gdd, Gda, Yd, Gpd, Gpa, Gpp, Yp, eps)]
if mode in ("use-train", "use-train2"):
# x0 = Xp[
# bd_greedy(
# Gdd[D, D],
# Gpd.T[D, A],
# Yd[D],
# Gpd[P, D],
# Gpp[P, A],
# Gpp[P, P],
# Yp[P],
# eps,
# )
# ]
trigger = np.tile(np.array([[[1, 1, 1], [-1, -1, -1]],[[-1, -1, -1], [1, 1, 1]]]), (224//2, 224//2, 1))[None]
x0 = Xd[len(Xd) // 2 :][P][
bd_greedy(
Gdd[D, D],
Gpd.T[D, A],
Yd[D],
Gpd[P, D],
Gpp[P, A],
Gpp[P, P],
Yp[P],
eps,
)
] + ((-1) ** np.arange(10))[:, None, None, None] * trigger/16
else:
raise NotImplementedError
x0 = Xp[bd_greedy(Gdd, Gpd.T, Yd, Gpd, Gpp, Gpp, Yp, eps)]
# x0 = Xp[:eps]
# x0 = jax.random.normal(key, x0.shape)
print("Starting sp_minimize")
opt_min = sp_minimize(
f,
x0,
bounds=(lb, ub),
callback=bd_callback,
method="L-BFGS-B",
options={
"iprint": 1,
"maxcor": 100,
},
)
# import optax
# from jax_utils import optax_minimize
# print("Starting optax_minimize")
# opt_min = optax_minimize(
# f,
# x0,
# optax.sgd(1e-5, momentum=0.90),
# bounds=(lb, ub),
# callback=bd_callback,
# )
return opt_min
# main2()