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I'm building a web app with django. I use postgresql for the db. The app code is getting really messy(my begginer skills being a big factor) and slow, even when I run the app locally.

This is an excerpt of my models.py file:

    (NEVER, 'Never'),
    (DAILY, 'Daily'),
    (WEEKLY, 'Weekly'),
    (MONTHLY, 'Monthly'),
    ...some more...

class Transaction(models.Model):
    name = models.CharField(max_length=30)
    type = models.IntegerField(max_length=1, choices=TYPE_CHOICES) # 0 = 'Income' , 1 = 'Expense'
    amount = models.DecimalField(max_digits=12, decimal_places=2)
    date = models.DateField(default=date.today)
    frequency = models.IntegerField(max_length=2, choices=REPEATS_CHOICES)
    ends = models.DateField(blank=True, null=True)
    active = models.BooleanField(default=True)
    category = models.ForeignKey(Category, related_name='transactions', blank=True, null=True)
    account = models.ForeignKey(Account, related_name='transactions')

The problem is with date, frequency and ends. With this info I can know all the dates in which transactions occurs and use it to fill a cashflow table. Doing things this way involves creating a lot of structures(dictionaries, lists and tuples) and iterating them a lot. Maybe there is a very simple way of solving this with the actual schema, but I couldn't realize how.

I think that the app would be easier to code if, at the creation of a transaction, I could save all the dates in the db. I don't know if it's possible or if it's a good idea.

I'm reading a book about google app engine and the datastore's multivalued properties. What do you think about this for solving my problem?.

Edit: I didn't know about the PickleField. I'm now reading about it, maybe I could use it to store all the transaction's datetime objects.

Edit2: This is an excerpt of my cashflow2 view(sorry for the horrible code):

def cashflow2(request, account_name="Initial"):

if account_name == "Initial":
    uri = "/cashflow/new_account"
    return HttpResponseRedirect(uri)     
month_info = {}
cat_info = {}
m_y_list = [] # [(month,year),]
trans = []
min, max = [] , []

account = Account.objects.get(name=account_name, user=request.user)
categories = account.categories.all() 
for year in range(2006,2017):
    for month in range(1,13):
        month_info[(month, year)] = [0, 0, 0]
        for cat in categories:
            cat_info[(cat, month, year)] = 0

previous_months = 1 # previous months from actual
next_months = 5
dates_list = month_year_list(previous_month, next_months) # Returns [(month,year)] from the requested range
m_y_list = [(date.month, date.year) for date in month_year_list(1,5)]
min, max = dates_list[0], dates_list[-1]
transacs_in_dates = []
txs = account.transactions.order_by('date')

for tx in txs:
    monthyear = ()
    monthyear = (tx.date.month, tx.date.year)
    if tx.frequency == 0:
        if tx.type == 0:
            month_info[monthyear][INCOME] += tx.amount
            if tx.category:
                cat_info[(tx.category, monthyear[0], monthyear[1])] += tx.amount
            month_info[monthyear][EXPENSE] += tx.amount
            if tx.category:
                cat_info[(tx.category, monthyear[0], monthyear[1])] += tx.amount
        if monthyear in lista_m_a:
            if tx not in transacs_in_dates:
    elif tx.frequency == 4: # frequency = 'Monthly'
        months_dif = relativedelta.relativedelta(tx.ends, tx.date).months
        if tx.ends.day < tx.date.day:
            months_dif += 1
        years_dif = relativedelta.relativedelta(tx.ends, tx.date).years
        dif = months_dif + (years_dif*12)
        dates_range = dif + 1
        for i in range(dates_range):
            dt = tx.date+relativedelta.relativedelta(months=+i)
            if (dt.month, dt.year) in m_y_list:
                if tx not in transacs_in_dates:
            if tx.type == 0:
                month_info[(fch.month,fch.year)][INCOME] += tx.amount
                if tx.category:
                    cat_info[(tx.category, fch.month, fch.year)] += tx.amount
                month_info[(fch.month,fch.year)][EXPENSE] += tx.amount
                if tx.category:
                    cat_info[(tx.category, fch.month, fch.year)] += tx.amount

import operator
thelist = []
thelist = sorted((my + tuple(v) for my, v in month_info.iteritems()),
             key = operator.itemgetter(1, 0))
thelistlist = []
for atuple in thelist:
for i in range(len(thelistlist)):
    if i != 0:
        thelistlist[i][4] = thelistlist[i-1][2] - thelistlist[i-1][3] + thelistlist[i-1][4]
list = []
for el in thelistlist:
    if (el[0],el[1]) in lista_m_a:

transactions = account.transactions.all()

cats_in_dates_income = []
cats_in_dates_expense = []
for t in transacs_in_dates:
    if t.category and t.type == 0:
        if t.category not in cats_in_dates_income:
    elif t.category and t.type == 1:
        if t.category not in cats_in_dates_expense:

cat_infos = []
for k, v in cat_info.items():
    cat_infos.append((k[0], k[1], k[2], v))
share|improve this question
Define "slow". And are you sure that the slowness comes from creating data structures?? What's the rough number of rows you're working with? –  AndiDog Jan 16 '11 at 20:22
@AndiDog. I have an account of 7 transactions and the cashflow view loads in 5 seconds. Performance isn't the most important issue, it's the messy code. –  mfalcon Jan 16 '11 at 21:02
Seriously 5 seconds? Then it's a case for classic print profiling. Just insert some print <number>, time.time() statements and you'll see the bottleneck. Use the development server to see the console output. –  AndiDog Jan 16 '11 at 21:24
It would be helpful to post some of the code you would consider as "ciritical, eg. your views / queries... –  Bernhard Vallant Jan 16 '11 at 22:34
You don't state in your question what sort of queries you're executing. Without that, it's impossible to say what the problem is, or if you could implement it efficiently on App Engine. –  Nick Johnson Jan 17 '11 at 0:50

1 Answer 1

up vote 1 down vote accepted

Depends on how relevant App Engine is here. P.S. If you'd like to store pickled objects as well as JSON objects in the Google Datastore, check out these two code snippets:

http://kovshenin.com/archives/app-engine-json-objects-google-datastore/ http://kovshenin.com/archives/app-engine-python-objects-in-the-google-datastore/

Also note that the Google Datastore is a non-relational database, so you might have other trouble refactoring your code to switch to that.

Cheers and good luck!

share|improve this answer

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