I have written a program in Python which spends a large amount of time looking up attributes of objects and values from dictionary keys. I would like to know if there's any way I can optimize these lookup times, potentially with a C extension, to reduce the time of execution, or if I need to simply re-implement the program in a compiled language.

The program implements some algorithms using a graph. It runs prohibitively slowly on our data sets, so I profiled the code with `cProfile`

using a reduced data set that could actually complete. The *vast* majority of the time is being burned in one function, and specifically in two statements, generator expressions, within the function:

The generator expression at line 202 is

```
neighbors_in_selected_nodes = (neighbor for neighbor in
node_neighbors if neighbor in selected_nodes)
```

and the generator expression at line 204 is

```
neighbor_z_scores = (interaction_graph.node[neighbor]['weight'] for
neighbor in neighbors_in_selected_nodes)
```

The source code for this function of context provided below.

`selected_nodes`

is a `set`

of nodes in the `interaction_graph`

, which is a NetworkX `Graph`

instance. `node_neighbors`

is an iterator from `Graph.neighbors_iter()`

.

`Graph`

itself uses dictionaries for storing nodes and edges. Its `Graph.node`

attribute is a dictionary which stores nodes and their attributes (e.g., `'weight'`

) in dictionaries belonging to each node.

Each of these lookups should be amortized constant time (i.e., O(1)), however, I am still paying a large penalty for the lookups. Is there some way which I can speed up these lookups (e.g., by writing parts of this as a C extension), or do I need to move the program to a compiled language?

Below is the full source code for the function that provides the context; the vast majority of execution time is spent within this function.

```
def calculate_node_z_prime(
node,
interaction_graph,
selected_nodes
):
"""Calculates a z'-score for a given node.
The z'-score is based on the z-scores (weights) of the neighbors of
the given node, and proportional to the z-score (weight) of the
given node. Specifically, we find the maximum z-score of all
neighbors of the given node that are also members of the given set
of selected nodes, multiply this z-score by the z-score of the given
node, and return this value as the z'-score for the given node.
If the given node has no neighbors in the interaction graph, the
z'-score is defined as zero.
Returns the z'-score as zero or a positive floating point value.
:Parameters:
- `node`: the node for which to compute the z-prime score
- `interaction_graph`: graph containing the gene-gene or gene
product-gene product interactions
- `selected_nodes`: a `set` of nodes fitting some criterion of
interest (e.g., annotated with a term of interest)
"""
node_neighbors = interaction_graph.neighbors_iter(node)
neighbors_in_selected_nodes = (neighbor for neighbor in
node_neighbors if neighbor in selected_nodes)
neighbor_z_scores = (interaction_graph.node[neighbor]['weight'] for
neighbor in neighbors_in_selected_nodes)
try:
max_z_score = max(neighbor_z_scores)
# max() throws a ValueError if its argument has no elements; in this
# case, we need to set the max_z_score to zero
except ValueError, e:
# Check to make certain max() raised this error
if 'max()' in e.args[0]:
max_z_score = 0
else:
raise e
z_prime = interaction_graph.node[node]['weight'] * max_z_score
return z_prime
```

Here are the top couple of calls according to cProfiler, sorted by time.

```
ncalls tottime percall cumtime percall filename:lineno(function)
156067701 352.313 0.000 642.072 0.000 bpln_contextual.py:204(<genexpr>)
156067701 289.759 0.000 289.759 0.000 bpln_contextual.py:202(<genexpr>)
13963893 174.047 0.000 816.119 0.000 {max}
13963885 69.804 0.000 936.754 0.000 bpln_contextual.py:171(calculate_node_z_prime)
7116883 61.982 0.000 61.982 0.000 {method 'update' of 'set' objects}
```

`neighbors_in_selected_nodes`

and`neighbor_z_scores`

? Why not one loop? The two step formulation doesn't seem to introduce anything new. Why do it? Can you update the question to explain why two comprehensions are used instead of one? – S.Lott Apr 5 '10 at 18:27`selected_nodes`

). I use two generator expressions to do this:`neighbors_in_selected_nodes`

filters for nodes which been selected; this is chained into`neighbor_z_scores`

to retrieve the weights. Chaining iterators should make them one loop, not two; the loop is evaluated within`max()`

. – gotgenes Apr 5 '10 at 19:14`if neighbor in selected_nodes:`

, and the second expression represents`neighbor_z_scores.append(interaction_graph.node[neighbor]['weight'])`

. By using generator expressions, I am avoiding the creation of a list and the append operations. From the fetching of the neighbors until evaluation of`max(neighbor_z_scores)`

, I deal entirely with an iterator chain. – gotgenes Apr 5 '10 at 19:22