To do it without any packages to install (long one-liner :-) ):

```
import itertools,statistics
a = dict(zip(sorted(set([i['index'] for i in lod])),[statistics.mean(int(item['value']) for item in group) for key, group in itertools.groupby(lod, key=lambda x: x['index'])]))
```

Now:

```
print(a)
```

Returns:

```
{1: 2.5, 2: 4}
```

If python 2:

```
import itertools
a = dict(zip(sorted(set([i['index'] for i in lod]),key=[i['index'] for i in lod].index),[sum(int(item['value']) for item in group)/len(int(item['value']) for item in group) for key, group in itertools.groupby(lod, key=lambda x: x['index'])]))
```

**Explanation:**

get the ordered list of unique elements using `set`

use `itertools.groupby`

for grouping then iterate by `key`

a `group`

, the get average using `statistics`

or `sum`

and `len`

the above two notes are all in a `zip`

(`dict(zip(...))`

)

Or to make the code little cleaner:

Python 3:

```
import itertools,statistics
unique_elements=sorted(set([i['index'] for i in lod]))
groups=statistics.mean(int(item['value']) for item in group) for key, group in itertools.groupby(lod, key=lambda x: x['index'])]
a = dict(zip(unique_elements,groups))
```

Python 2:

```
import itertools
unique=sorted(set([i['index'] for i in lod])
groups=[sum(int(item['value']) for item in group)/len(int(item['value']) for item in group) for key, group in itertools.groupby(lod, key=lambda x: x['index'])]
a = dict(unique,groups))
```