I want to understand nested list comprehension.
Below, I listed a list comprehension expression and their for loop equivalent.

I wonder if my understanding is correct on those.

For example,

```
[(min([row[i] for row in rows]),max([row[i] for row in rows]))
for i in range(len(rows[0]))]
```

is equivalent to

```
result=[]
for i in range(len(rows[0])):
innerResult=[]
for row in rows:
innerResult.append(row[i])
innerResult2=[]
for row in rows:
innerResult2.append(row[i])
tuple=(min(innerResult), max(innerResult2))
result.append(tuple)
```

If I may generalize, I guess

```
[exp2([exp1 for x in xSet]) for y in ySet]
```

form can be translated to the following. (I hope I'm correct on this)

```
result=[]
for y in ySet:
innerResult =[]
for x in xSet:
innerResult.append(exp1)
exp2Result = exp2(innerResult)
result.append(exp2Result)
```

For simpler case,

```
[exp1 for x in xSet for y in ySet]
```

is equal to

```
result=[]
for x in xSet:
for y in ySet:
result.append(exp1)
```

whereas,

```
[[exp1 for x in xSet] for y in ySet]
```

is equal to

```
result=[]
for y in ySet:
innerResult=[]
for x in xSet:
innerResult.append(exp1)
result.append(innerResult)
```

I asked a similar question on equivalent for loop expression for complex list comprehension

The answers given there reconstruct the form after understanding what it does internally.

I'd like to know how it works systematically so I can apply the concept to other slightly varying examples.

`cols = zip(*rows)`

, after which you could have simply used`min(col)`

and`max(col)`

for each column:`[(min(c), max(c)) for c in cols]`

. Or in one short line:`[(min(c), max(c)) for col in zip(*rows)]`

. – taleinat Nov 8 '11 at 12:36