EDIT: I am working on an performance sensitive case, which need to calculate sum or max of data with user defined checkpoints. Please refer to the demo code:

```
from itertools import izip
timestamp=[1,2,3,4,...]#len(timestamp)=N
checkpoints=[1,3,5,7,..]#user defined
data=([1,1,1,1,...],
[2,2,2,2,...],
...)#len(data)=M,len(data[any])=N
processtype=('sum','max','min','snapshot',...)#len(processtype)=M
def processdata(timestamp, checkpoints, data, processtype):
checkiter=iter(checkpoints)
checher=checkiter.next()
tmp=[0 if t=='sum' else None for t in processtype]
for x, d in izip(timestamp,izip(*data)):
tmp =[tmp[i]+d[i] if t=='sum' else
d[i] if (t=='snapshot'
or (tmp[i] is None)
or (t=='max' and tmp[i]<d[i])
or (t=='min' and tmp[i]>d[i])) else
tmp[i] for (i,t) in enumerate(processtype)]
if x>checher:
yield (checher,tmp)
checher=checkiter.next()
tmp=[0 if t=='sum' else None for t in processtype]
```

Original demo for benchmark:

```
def speratedsum(iter, condition):
tmp=0
for x in iter:
if condition(x):
yield tmp
tmp=0
else:
tmp+=x
```

EDIT: thank to @M4rtini and @Chronial I ran banchmark on the following testing code:

```
from timeit import timeit
it=xrange(100001)
condition=lambda x: x % 100 == 0
def speratedsum(it, condition):
tmp=0
for x in it:
if condition(x):
yield tmp+x
tmp=0
else:
tmp+=x
def test1():
return list(speratedsum(it,condition))
def red_func2(acc, x):
if condition(x):
acc[0].append(acc[1]+x)
return (acc[0], 0)
else:
return (acc[0], acc[1] + x)
def test2():
return reduce(red_func2, it,([], 0))[0]
def red_func3(l, x):
if condition(x):
l[-1] += x
l.append(0)
else:
l[-1] += x
return l
def test3():
return reduce(red_func3, it, [0])[:-1]
import itertools
def test4():
groups = itertools.groupby(it, lambda x: (x-1) / 100)
return map(lambda g: sum(g[1]), groups)
import numpy as np
import numba
@numba.jit(numba.int_[:](numba.int_[:],numba.int_[:]),
locals=dict(si=numba.int_,length=numba.int_))
def jitfun(arr,con):
length=arr.shape[0]
out=np.zeros(con.shape[0],int)
si=0
for i in range(length):
out[si]+=arr[i]
if(arr[i]>=con[si]):
si+=1
return out
conditionlist=[x for x in it if condition(x)]
a=np.array(it, int)
c=np.array(conditionlist,int)
def test5():
return list(jitfun(a,c))
test5() #warm up for JIT
time1=timeit(test1,number=100)
time2=timeit(test2,number=100)
time3=timeit(test3,number=100)
time4=timeit(test4,number=100)
time5=timeit(test5,number=100)
print "test1:",test1()==test1(),time1/time1
print "test2:",test1()==test2(),time1/time2
print "test3:",test1()==test3(),time1/time3
print "test4:",test1()==test4(),time1/time4
print "test5:",test1()==test5(),time1/time5
```

output:

```
test1: True 1.0
test2: True 0.369117307201
test3: True 0.496470798051
test4: True 0.833137283359
test5: True 34.1052257366
```

Do you have any suggestion on where I should seek? Thanks!

EDIT: I managed to use the numba solution with callback to replace yield and it is the least effort solution that really works here. So accepted @M4rtini's answer. However be careful with the numba's limitations. With my 2 days try, numba can enhance numpy array index iterations performance but nothing more.