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"""
v13: ALIGNED PHASE — phase along signal axes, not independent
v10: sin(ω·g + π·tanh(Wφ·x)) ← additive but independent → chaotic
v12: sin(ω · g·(1+0.2·φ)) ← frequency modulation → drift
v13: sin(ω·g + 0.1·g·tanh(Wφ·x)) ← additive phase, aligned to g → stable
The key: φ ∝ g. Phase only shifts where signal exists.
No frequency drift (ω stays fixed). No independent noise.
"""
import torch, torch.nn as nn, torch.nn.functional as F
import numpy as np, math, json
SEEDS = [0, 1, 2]
def set_seed(s): torch.manual_seed(s); np.random.seed(s)
class VanillaMLP(nn.Module):
def __init__(self,di,do,h,n):
super().__init__(); L=[]; p=di
for _ in range(n): L+=[nn.Linear(p,h),nn.ReLU()]; p=h
L.append(nn.Linear(p,do)); self.net=nn.Sequential(*L)
def forward(self,x): return self.net(x)
class SinGLULayer(nn.Module):
def __init__(self,di,do,mid,w0=30.):
super().__init__()
self.Wg=nn.Linear(di,mid,bias=False); self.Wv=nn.Linear(di,mid,bias=False)
self.Wo=nn.Linear(mid,do,bias=True); self.w0=w0; self.ln=nn.LayerNorm(do)
with torch.no_grad():
self.Wg.weight.uniform_(-math.sqrt(6/di)/w0,math.sqrt(6/di)/w0)
nn.init.xavier_uniform_(self.Wv.weight); nn.init.xavier_uniform_(self.Wo.weight)
def forward(self,x): return self.ln(self.Wo(torch.sin(self.w0*self.Wg(x))*self.Wv(x)))
class SinGLUNet(nn.Module):
def __init__(self,di,do,h,n,w0=30.):
super().__init__(); mid=max(2,int(h*2/3)); L=[]; p=di
for _ in range(n): L.append(SinGLULayer(p,h,mid,w0)); p=h
L.append(nn.Linear(p,do)); self.layers=nn.ModuleList(L)
def forward(self,x):
for l in self.layers: x=l(x)
return x
# v10 (free phase) for comparison
class v10Layer(nn.Module):
def __init__(self,di,do,mid,w0=30.):
super().__init__()
self.Wg=nn.Linear(di,mid,bias=False); self.Wv=nn.Linear(di,mid,bias=False)
self.Wo=nn.Linear(mid,do,bias=True); self.Wphi=nn.Linear(di,mid,bias=True)
self.w0=w0; self.ln=nn.LayerNorm(do)
with torch.no_grad():
self.Wg.weight.uniform_(-math.sqrt(6/di)/w0,math.sqrt(6/di)/w0)
nn.init.xavier_uniform_(self.Wv.weight); nn.init.xavier_uniform_(self.Wo.weight)
nn.init.zeros_(self.Wphi.weight); nn.init.zeros_(self.Wphi.bias)
def forward(self,x):
phi=math.pi*torch.tanh(self.Wphi(x))
return self.ln(self.Wo(torch.sin(self.w0*self.Wg(x)+phi)*self.Wv(x)))
class v10Net(nn.Module):
def __init__(self,di,do,h,n,w0=30.):
super().__init__(); mid=max(2,int(h*2/3)); L=[]; p=di
for _ in range(n): L.append(v10Layer(p,h,mid,w0)); p=h
L.append(nn.Linear(p,do)); self.layers=nn.ModuleList(L)
def forward(self,x):
for l in self.layers: x=l(x)
return x
# v12 (FM) for comparison
class v12Layer(nn.Module):
def __init__(self,di,do,mid,w0=30.):
super().__init__()
self.Wg=nn.Linear(di,mid,bias=False); self.Wv=nn.Linear(di,mid,bias=False)
self.Wo=nn.Linear(mid,do,bias=True); self.Wphi=nn.Linear(di,mid,bias=True)
self.w0=w0; self.ln=nn.LayerNorm(do)
with torch.no_grad():
self.Wg.weight.uniform_(-math.sqrt(6/di)/w0,math.sqrt(6/di)/w0)
nn.init.xavier_uniform_(self.Wv.weight); nn.init.xavier_uniform_(self.Wo.weight)
nn.init.zeros_(self.Wphi.weight); nn.init.zeros_(self.Wphi.bias)
def forward(self,x):
g=self.Wg(x); phi=torch.tanh(self.Wphi(x))
return self.ln(self.Wo(torch.sin(self.w0*g*(1.+0.2*phi))*self.Wv(x)))
class v12Net(nn.Module):
def __init__(self,di,do,h,n,w0=30.):
super().__init__(); mid=max(2,int(h*2/3)); L=[]; p=di
for _ in range(n): L.append(v12Layer(p,h,mid,w0)); p=h
L.append(nn.Linear(p,do)); self.layers=nn.ModuleList(L)
def forward(self,x):
for l in self.layers: x=l(x)
return x
# v13: ALIGNED PHASE
class v13Layer(nn.Module):
"""
g = Wg·x
φ = 0.1 · g · tanh(Wφ·x) ← phase ALIGNED to signal
core = sin(ω·g + φ) ← additive, no freq drift
y = LN(Wo(core ⊙ Wv·x))
"""
def __init__(self,di,do,mid,w0=30.,alpha=0.1):
super().__init__()
self.Wg=nn.Linear(di,mid,bias=False); self.Wv=nn.Linear(di,mid,bias=False)
self.Wo=nn.Linear(mid,do,bias=True); self.Wphi=nn.Linear(di,mid,bias=True)
self.w0=w0; self.a=alpha; self.ln=nn.LayerNorm(do)
with torch.no_grad():
self.Wg.weight.uniform_(-math.sqrt(6/di)/w0,math.sqrt(6/di)/w0)
nn.init.xavier_uniform_(self.Wv.weight); nn.init.xavier_uniform_(self.Wo.weight)
nn.init.zeros_(self.Wphi.weight); nn.init.zeros_(self.Wphi.bias)
def forward(self,x):
g = self.Wg(x)
phi = self.a * g * torch.tanh(self.Wphi(x)) # aligned to signal
core = torch.sin(self.w0 * g + phi) # additive phase, no freq drift
return self.ln(self.Wo(core * self.Wv(x)))
def get_corr(self,x):
"""Measure correlation between g and phi"""
with torch.no_grad():
g=self.Wg(x); phi=self.a*g*torch.tanh(self.Wphi(x))
# pearson correlation per neuron, averaged
gf=g.flatten(); pf=phi.flatten()
if gf.std()==0 or pf.std()==0: return 0.
return ((gf-gf.mean())*(pf-pf.mean())).mean()/(gf.std()*pf.std()+1e-8)
class v13Net(nn.Module):
def __init__(self,di,do,h,n,w0=30.):
super().__init__(); mid=max(2,int(h*2/3)); L=[]; p=di
for _ in range(n): L.append(v13Layer(p,h,mid,w0)); p=h
L.append(nn.Linear(p,do)); self.layers=nn.ModuleList(L)
def forward(self,x):
for l in self.layers: x=l(x)
return x
def get_corrs(self,x):
cs=[]; h=x
for l in self.layers:
if isinstance(l,v13Layer): cs.append(l.get_corr(h).item()); h=l(h)
else: h=l(h)
return cs
# Utils
def np_(m): return sum(p.numel() for p in m.parameters() if p.requires_grad)
def fh(di,do,n,t,cls,**kw):
lo,hi,b=2,512,2
while lo<=hi:
mid=(lo+hi)//2; p=np_(cls(di,do,mid,n,**kw))
if abs(p-t)<abs(np_(cls(di,do,b,n,**kw))-t): b=mid
if p<t: lo=mid+1
else: hi=mid-1
return b
def tr_r(m,xt,yt,xe,ye,ep,lr,bs=256):
o=torch.optim.Adam(m.parameters(),lr=lr); s=torch.optim.lr_scheduler.CosineAnnealingLR(o,T_max=ep)
best=float('inf'); n=len(xt)
for e in range(ep):
m.train(); p=torch.randperm(n)
for i in range(0,n,bs):
idx=p[i:i+bs]; loss=F.mse_loss(m(xt[idx]),yt[idx])
o.zero_grad(); loss.backward(); torch.nn.utils.clip_grad_norm_(m.parameters(),1.); o.step()
s.step()
if(e+1)%max(1,ep//10)==0:
m.eval()
with torch.no_grad(): best=min(best,F.mse_loss(m(xe),ye).item())
m.eval()
with torch.no_grad(): best=min(best,F.mse_loss(m(xe),ye).item())
return best
def tr_c(m,xt,yt,xe,ye,ep,lr,bs=256):
o=torch.optim.Adam(m.parameters(),lr=lr); s=torch.optim.lr_scheduler.CosineAnnealingLR(o,T_max=ep)
best=0; n=len(xt)
for e in range(ep):
m.train(); p=torch.randperm(n)
for i in range(0,n,bs):
idx=p[i:i+bs]; loss=F.cross_entropy(m(xt[idx]),yt[idx])
o.zero_grad(); loss.backward(); torch.nn.utils.clip_grad_norm_(m.parameters(),1.); o.step()
s.step()
if(e+1)%max(1,ep//10)==0:
m.eval()
with torch.no_grad(): best=max(best,(m(xe).argmax(1)==ye).float().mean().item())
m.eval()
with torch.no_grad(): best=max(best,(m(xe).argmax(1)==ye).float().mean().item())
return best
# Data
def d_cx(n=1000): x=torch.rand(n,4)*2-1; return x,torch.exp(torch.sin(x[:,0]**2+x[:,1]**2)+torch.sin(x[:,2]**2+x[:,3]**2)).unsqueeze(1)
def d_ne(n=1000): x=torch.rand(n,2)*2-1; return x,(torch.sin(math.pi*(x[:,0]**2+x[:,1]**2))*torch.cos(3*math.pi*x[:,0]*x[:,1])).unsqueeze(1)
def d_sp(n=1000):
t=torch.linspace(0,4*np.pi,n//2); r=torch.linspace(.3,2,n//2)
x=torch.cat([torch.stack([r*torch.cos(t),r*torch.sin(t)],1),torch.stack([r*torch.cos(t+np.pi),r*torch.sin(t+np.pi)],1)])+torch.randn(n,2)*.05
y=torch.cat([torch.zeros(n//2),torch.ones(n//2)]).long(); p=torch.randperm(n); return x[p],y[p]
def d_ch(n=1000): x=torch.rand(n,2)*2-1; return x,((torch.sin(3*math.pi*x[:,0])*torch.sin(3*math.pi*x[:,1]))>0).long()
def d_hf(n=1000): x=torch.linspace(-1,1,n).unsqueeze(1); return x,torch.sin(20*x)+torch.sin(50*x)+.5*torch.sin(100*x)
def d_mm(n=200): return torch.randn(n,8),torch.randn(n,4)
def d_ot(n=800): x=torch.rand(n,2)*2-1; return x,(torch.sin(3*math.pi*x[:,0])*torch.cos(3*math.pi*x[:,1])+x[:,0]*x[:,1]).unsqueeze(1)
def d_oe(n=300): x=torch.rand(n,2)+1; return x,(torch.sin(3*math.pi*x[:,0])*torch.cos(3*math.pi*x[:,1])+x[:,0]*x[:,1]).unsqueeze(1)
def main():
print("="*80)
print(" v13: ALIGNED PHASE | sin(ω·g + 0.1·g·tanh(Wφ·x))")
print(" + corr(g,φ) analysis | vs SinGLU, v10(free), v12(FM)")
print("="*80)
N=3
Ms={'Vanilla':(VanillaMLP,{}),'SinGLU':(SinGLUNet,{'w0':None}),
'v10:free':(v10Net,{'w0':None}),'v12:FM':(v12Net,{'w0':None}),'v13':(v13Net,{'w0':None})}
tasks=[
("Complex","r",d_cx,4,1,5000,300,1e-3,30.,750),
("Nested","r",d_ne,2,1,3000,300,1e-3,20.,750),
("Spiral","c",d_sp,2,2,3000,250,1e-3,15.,700),
("Checker","c",d_ch,2,2,3000,250,1e-3,20.,700),
("HiFreq","r",d_hf,1,1,8000,300,1e-3,60.,700),
("Memorize","r",d_mm,8,4,5000,400,1e-3,10.,200),
]
R={}; CORR={}
for tn,tt,df,di,do,bud,ep,lr,w0,sp in tasks:
print(f"\n{'━'*80}\n {tn}\n{'━'*80}")
hs={mn:fh(di,do,N,bud,mc,**{k:(w0 if v is None else v) for k,v in mk.items()}) for mn,(mc,mk) in Ms.items()}
tr={}
for mn,(mc,mk) in Ms.items():
kw={k:(w0 if v is None else v) for k,v in mk.items()}; h=hs[mn]; sc=[]
for seed in SEEDS:
set_seed(seed); x,y=df()
if sp>=len(x): xt,yt,xe,ye=x,y,x,y
else: xt,yt,xe,ye=x[:sp],y[:sp],x[sp:],y[sp:]
set_seed(seed+100); mdl=mc(di,do,h,N,**kw)
s=tr_r(mdl,xt,yt,xe,ye,ep,lr) if tt=='r' else tr_c(mdl,xt,yt,xe,ye,ep,lr)
sc.append(s)
if mn=='v13' and seed==SEEDS[-1]:
mdl.eval(); CORR[tn]=mdl.get_corrs(xe[:100])
p=np_(mc(di,do,h,N,**kw))
tr[mn]={'mean':np.mean(sc),'std':np.std(sc),'scores':sc,'params':p,'hidden':h}
ir=tt=='r'
best=min(tr,key=lambda k:tr[k]['mean']) if ir else max(tr,key=lambda k:tr[k]['mean'])
met="MSE ↓" if ir else "Acc ↑"
print(f"\n {'M':<10} {'H':>3} {'P':>6} {met:>24}")
print(f" {'─'*46}")
for mn,r in tr.items():
m=r['mean']; s=r['std']
ms=f"{m:.2e}±{s:.1e}" if(ir and m<.001) else(f"{m:.4f}±{s:.4f}" if ir else f"{m:.1%}±{s:.3f}")
print(f" {mn:<10} {r['hidden']:>3} {r['params']:>6,} {ms:>24}{' ★' if mn==best else ''}")
print(f" → {best}")
if tn in CORR: print(f" v13 corr(g,φ) per layer: {['%.3f'%c for c in CORR[tn]]}")
R[tn]=tr
# OOD
print(f"\n{'━'*80}\n OOD\n{'━'*80}")
OD={}
for mn,(mc,mk) in Ms.items():
kw={k:(20. if v is None else v) for k,v in mk.items()}; h=fh(2,1,N,5000,mc,**kw); ids,ods=[],[]
for seed in SEEDS:
set_seed(seed); xtr,ytr=d_ot()
set_seed(seed+50); xi=torch.rand(200,2)*2-1; yi=(torch.sin(3*math.pi*xi[:,0])*torch.cos(3*math.pi*xi[:,1])+xi[:,0]*xi[:,1]).unsqueeze(1)
set_seed(seed+50); xo,yo=d_oe()
set_seed(seed+100); mdl=mc(2,1,h,N,**kw)
si=tr_r(mdl,xtr,ytr,xi,yi,300,1e-3); mdl.eval()
with torch.no_grad(): so=F.mse_loss(mdl(xo),yo).item()
ids.append(si); ods.append(so)
OD[mn]={'id':np.mean(ids),'ood':np.mean(ods),'deg':np.mean(ods)/max(np.mean(ids),1e-10),'is':np.std(ids),'os':np.std(ods)}
bo=min(OD,key=lambda k:OD[k]['ood'])
print(f"\n {'M':<10} {'ID':>12} {'OOD':>12} {'Deg':>7}")
print(f" {'─'*44}")
for mn,r in OD.items(): print(f" {mn:<10} {r['id']:>8.4f}±{r['is']:.3f} {r['ood']:>8.4f}±{r['os']:.3f} {r['deg']:>6.1f}x{' ★' if mn==bo else ''}")
R['OOD']={mn:{'mean':r['ood'],'std':r['os']} for mn,r in OD.items()}
# Summary
print(f"\n{'='*80}\n SUMMARY\n{'='*80}")
wc={k:0 for k in Ms}
print(f"\n {'Task':<10}",end="")
for mn in Ms: print(f" {mn:>10}",end="")
print(f" {'W':>8}")
print(f" {'─'*68}")
for tn,t in R.items():
sc={k:v['mean'] for k,v in t.items()}; mx=max(sc.values())
ic=mx>.5 and mx<=1 and min(sc.values())>=0
if min(sc.values())<.001: ic=False
w=min(sc,key=sc.get) if(tn=='OOD' or not ic) else max(sc,key=sc.get)
wc[w]+=1
row=f" {tn:<10}"
for mn in Ms:
s=sc[mn]
if ic: row+=f" {s:>9.1%}"
elif s<.001: row+=f" {s:>9.2e}"
else: row+=f" {s:>9.4f}"
row+=f" ->{w}"; print(row)
print(f"\n {'─'*68}")
for mn,c in sorted(wc.items(),key=lambda x:-x[1]):
print(f" {mn:<10} {c} {'█'*c*3}")
print(f"\n corr(g,φ) — does v13 phase align with signal?")
for tn,cs in CORR.items():
print(f" {tn:<10} layers: {['%.3f'%c for c in cs]} avg={np.mean(cs):.3f}")
sv={'tasks':{},'ood':{},'corr':CORR}
for tn,t in R.items():
sv['tasks'][tn]={mn:{'mean':float(r['mean']),'std':float(r.get('std',0)),
'scores':[float(s) for s in r.get('scores',[r['mean']])],
'params':r.get('params',0),'hidden':r.get('hidden',0)} for mn,r in t.items()}
sv['ood']={mn:{k:float(v) if isinstance(v,(float,np.floating)) else v for k,v in r.items()} for mn,r in OD.items()}
with open('/app/results_v13.json','w') as f: json.dump(sv,f,indent=2,default=str)
print(f"\n Saved.")
if __name__=="__main__": main()
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