# Make python code run faster [closed]

I have the following code:

``````for stepi in range(0, nsteps): #number of steps (each step contains a number of frames)
stepName = odb.steps.values()[stepi].name #step name
for framei in range(0, len(odb.steps[stepName].frames)): #loop over the frames of stepi
for v in odb.steps[stepName].frames[framei].fieldOutputs['UT'].values: #for each framei get the displacement (UT) results for each node
for line in nodes: #nodes is a list with data of nodes (nodeID, x coordinate, y coordinate and z coordinate)
nodeID, x, y, z = line
if int(nodeID)==int(v.nodeLabel): #if nodeID in nodes = nodeID in results
if float(x)==float(coordXF) and float(y)==float(coordYF): #if x=predifined value X and y=predifined value Y
#Criteria 1: Find maximum displacement for x=X and y=Y
if abs(v.data[0]) >uFmax: #maximum UX
uFmax=abs(v.data[0])
tuFmax='U1'
stepuFmax=stepi
nodeuFmax=v.nodeLabel
incuFmax=framei
if abs(v.data[1]) >uFmax: #maximum UY
uFmax=abs(v.data[1])
tuFmax='U2'
stepuFmax=stepi
nodeuFmax=v.nodeLabel
incuFmax=framei
if abs(v.data[2]) >uFmax: #maximum UZ
uFmax=abs(v.data[2])
tuFmax='U3'
stepuFmax=stepi
nodeuFmax=v.nodeLabel
incuFmax=framei
#Criteria 2: Find maximum  UX, UY, UZ displacement for x=X and y=Y
if abs(v.data[0]) >u1Fmax: #maximum UX
u1Fmax=abs(v.data[0])
stepu1Fmax=stepi
nodeu1Fmax=v.nodeLabel
incu1Fmax=framei
if abs(v.data[1]) >u2Fmax: #maximum UY
u2Fmax=abs(v.data[1])
stepu2Fmax=stepi
nodeu2Fmax=v.nodeLabel
incu2Fmax=framei
if abs(v.data[2]) >u3Fmax: #maximum UZ
u3Fmax=abs(v.data[2])
stepu3Fmax=stepi
nodeu3Fmax=v.nodeLabel
incu3Fmax=framei
#Criteria 3: Find maximum  U displacement
if abs(v.data[0]) >umax: #maximum UX
umax=abs(v.data[0])
tu='U1'
stepumax=stepi
nodeumax=v.nodeLabel
incumax=framei
if abs(v.data[1]) >umax: #maximum UY
umax=abs(v.data[1])
tu='U2'
stepumax=stepi
nodeumax=v.nodeLabel
incumax=framei
if abs(v.data[2]) >umax: #maximum UZ
umax=abs(v.data[2])
tu='U3'
stepumax=stepi
nodeumax=v.nodeLabel
incumax=framei
#Criteria 4: Find maximum  UX, UY, UZ displacement
if abs(v.data[0]) >u1max: #maximum UX
u1max=abs(v.data[0])
stepu1max=stepi
nodeu1max=v.nodeLabel
incu1max=framei
if abs(v.data[1]) >u2max: #maximum UY
u2max=abs(v.data[1])
stepu2max=stepi
nodeu2max=v.nodeLabel
incu2max=framei
if abs(v.data[2]) >u3max: #maximum UZ
u3max=abs(v.data[2])
stepu3max=stepi
nodeu3max=v.nodeLabel
incu3max=framei
``````

This code accesses a results database file created by a numerical analysis program and retrieves the maximum displacement of the deformed shape of a civil engineering structure, given certain different criteria. The problem is that this code takes about 10 min to run. The number os steps `nsteps` may be 1 to 4, the number of frames (`framei`) may be more than 2000 and the number of `nodes` may be more than 10000. Is there a way to make this code faster?

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## closed as off topic by Jon Clements♦, Wooble, Joris Timmermans, plaes, Andy HaydenMay 22 '13 at 21:01

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have you evaluated the complexity of your algorithm ? – njzk2 May 22 '13 at 14:20
It looks like for each iteration of `for v in odb...` you'll only actually do any processing under one iteration of `for line in nodes:`. Can you change your data structure up front so you don't need to do nearly so many iterations of `for line in nodes:` that are largely skipped? – robert May 22 '13 at 14:21
Try to compute the `abs(v.data[i])` outside of the most inner loop and to set up a temporary variable to not recompute it several time. – perror May 22 '13 at 14:21
put your code in a function and execute it. That alone will increase your performance greatly with almost no changes. – Serdalis May 22 '13 at 14:22
@Serdalis: Thanks, I'll do that! – jpcgandre May 22 '13 at 14:24

Your algorithm appears to be:

``````O(nsteps * frames_in_step * values_in_frame * nodes)
``````

That sums up to `O(n^4)` if you have no prior knowledge of the size of any element.

As robert pointed out, apparently, you only use one node at each iteration. You could use a `dict` of `nodeID: (x,y,z)`. That would allow a `O(1)` retrieval of the node. Typically a pretreatment would be:

``````nodes_dict = { nodeID:(x,y,z) for nodeID, x, y, z in nodes }
``````

Then in the loop, simply call:

``````x, y, z = nodes_dict.get(int(v.nodeLabel))
``````

That reduces your complexity to `O(n^3)`. I don't think the algorithm can be further simplified.

Then, you are accessing several times the same array items. This is quite slow, so you can cache them. `v.data[x]` is used 4 to 8 times in each iteration. You can use a temporary variable to reduce that to only 1.

## Edit

As noted in my comment, `umax = max(v.data)` for all indexes of data. Given `u1max = max(v.values[0]` for all values, `u2max = max(v.values[1]` and `u3max = max(v.values[2]`, it appears that `umax = max(u1max, u2max, u3max)`

Therefore, you can put the `umax` treatment after you process is complete outside of all the loops, and simply put this :

``````if abs(u1max) >umax: #maximum UX
umax=abs(u1max)
tu='U1'
stepumax=stepu1max
nodeumax=nodeu1max
incumax=incu1max
if abs(u2max) >umax: #maximum UY
umax=abs(u2max)
tu='U2'
stepumax=stepu2max
nodeumax=nodeu2max
incumax=incu2max
if abs(u3max) >umax: #maximum UZ
umax=abs(u3max)
tu='U3'
stepumax=stepu3max
nodeumax=nodeu3max
incumax=incu3max
``````

Same goes for `uFmax`.

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Also, I just noted : at the end of the process, umax = max(u1max, u2max, u3max). This part can therefore be entirely moved after the loop (same goes for uFmax) – njzk2 May 22 '13 at 15:07
Thanks! The runtime is now about 1 min! – jpcgandre May 22 '13 at 17:12

You say you have 4 steps, 2000 frames, and 10000 nodes. In light of those numbers, here are a few ideas:

Move calculations outside the node-loop. If a value does not vary by node, make calculations using the value before you enter the node-loop.

Think about a different data structure for nodes. For all 8000 step-frames, you iterate over the entire node list. But you only care about the nodes that satisfy the two conditional tests based on `nodeID`, `x`, and `y`. It might be faster if you could lookup up the needed nodes directly. For example:

``````nodesDict[(nodeID, x, y)] = List of nodes with same NodeID, x, and y.
``````

Pre-process the node data before the step-frame loops, making all needed conversions (e.g., conversions to integer).

Refactor for maintainability. You've got several chunks of code doing essentially the same thing, with slight variations. It's difficult to maintain code like this over the long term, because you've got to notice subtle differences in a mind-numbing sea of similar syntax. Think about a different data structure, or consider a way to use iteration to reduce the code duplication. Such changes won't necessarily make your code run faster (and might make it run slightly slower), but the tradeoff is usually worthwhile, because you'll be able to reason about your code more effectively -- and thus discover where the real performance bottlenecks are.

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+1 several generally good/useful ideas. – Schorsch May 22 '13 at 15:02

Well, you can at least save yourself some calculations by combining criteria 1 and 2, depending on your values of umax and u1max

``````if abs(v.data[0]) >uFmax:
calcs
elif abs(v.data[0] > u1Fmax:
calcs
``````

Are you using :memory: to hold the database?

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Thanks! I'll try that. And no i'm not using memory – jpcgandre May 22 '13 at 14:26
Won't your suggestion skip the `elif` if the `if` is `true`? – jpcgandre May 22 '13 at 14:43
Depends on the ordinality of your evaluations and you want them in descending order -- so if x > 50 then do this first thing, elif x > 5 do this second thing. if you can use the sqlite and set the connection to :memory: you will see a huge speed boost, even if the underlying drive is SSD. I'm running 200K complex lookups and calcs in an hour when using a file on SSD, but that same program takes 22 minutes when using :memory: – Todd Curry May 22 '13 at 14:51
I'm using abaqus (3ds.com/products/simulia/portfolio/abaqus) output database (*.odb). I'll study sqlite and memmory – jpcgandre May 22 '13 at 16:57

If you're using Python 2, try replacing `range` with `xrange`, as per http://wiki.python.org/moin/PythonSpeed/PerformanceTips#Use_xrange_instead_of_range

This doesn't apply to Python 3. And will only make a difference if looping over huge number of iterations.

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If you are pulling this data from a file, build a database or use redis to store a sorted set (key-tuple) of the data.

Then just use a query (or in redis, zrank) to retrieve the maximum -- what you appear to have here is a "find the maximum value in a column" function, whereas a database has all of that code pre-built and optimized for you to enjoy at maximum speed.

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