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I have a case where I need to write a very large 2D array to a file(pkl,npy,npz... ). My logic is to get the array part by part and save it to the file sequentially. Also, I want to read the same array, from this file, sequentially. Since the array is too big I cannot do any of this in one go. So my question is, how can I achieve this? Is there and inbuilt or external package that can help me do this? The environment I'm using is python. This is the part of the code that causes Memory Error.

def generate_arrays():
    model=loadGloveModel('glove.6B.100d.txt')
    clf=pickle.load(open('cluster.pkl','rb'))
    tags=pickle.load(open('tags.pkl','rb'))
    cursor=db.cursor()
    sql="SELECT * FROM tag_data"
    try:
        cursor.execute(sql)
        db.commit()
    except Exception as e:
        print "Error",e
        db.rollback()
    ingre=[]
    keyw=[]
    for i in cursor.fetchall():
        tag=np.zeros(len(tags))
        ing=np.zeros(len(set(clf.labels_)))
        ii=word_tokenize(i[1])
        tt=word_tokenize(i[2])
        for j in ii:
            try:
                vec=model[j]
            except:
                continue
            pos=clf.predict([vec])
            ing[pos] +=1
        for j in tt:
            if j in tags:
                tag[tags.index(j)] +=1
        ingre.append(ing)
        keyw.append(tag)
    return [ingre,keyw]

arr = generate_arrays()
pickle.dump(arr,open('input.pkl','wb')) 

I think the problem is due to the low RAM of the machine. Can open a file stream and write arrays as batches. Similarly can i read arrays as batches of n rows. Any help would be appreciated.

  • We need a bigger chunk of code, including the definition of your function generate_arrays()... – Arthur Spoon Nov 29 '17 at 9:15
  • I have added the generate_arrays function – Hari Krishnan Nov 29 '17 at 9:22
  • 1
    Possible duplicate of Python 3 - Can pickle handle byte objects larger than 4GB? – Arthur Spoon Nov 29 '17 at 9:24
  • @ArthurSpoon Not duplicate. I had already checked that question. I get an memory error on the line where we dump the array. Besides my problem branches from having a low RAM. – Hari Krishnan Nov 29 '17 at 9:33
  • 3
    Provide a minimal example, all the DB stuff seems highly unnecessary. Perhaps instead of pickling you could use hdf5 (h5py.org) to store the 2D array. – Ignacio Vergara Kausel Nov 29 '17 at 9:34
3

The best way to achieve is to use generator. Instead of returning the entire array at the end of generate_array(), you will use the yield operator (see Generator). Basically, it will "return" what you yield everytime you call the generator, because it keeps its state in memory.

# size is homw many lines you want to take from cursor.fetchall() every pass
def generate_arrays(size):
    ... # unchanged
    ingre=[]
    keyw=[]
    for i in cursor.fetchall():
        tag=np.zeros(len(tags))
        ing=np.zeros(len(set(clf.labels_)))
        ii=word_tokenize(i[1])
        tt=word_tokenize(i[2])
        for j in ii:
            try:
                vec=model[j]
            except:
                continue
            pos=clf.predict([vec])
            ing[pos] +=1
        for j in tt:
            if j in tags:
                tag[tags.index(j)] +=1
        ingre.append(ing)
        keyw.append(tag)
        if i == 0:
            continue # The next condition will be true but you want the first one
        if i % size == 0: # yield every size loop
            yield ingre, keyw
            # if you don't clean ingre and keyw, you will resend it the next time + the new data and you want to send just the new data
            ingre = keyw = []
     # EDIT: I forgot to yield the rest if the total is not a multiple of size
     yield ingre, keyw

gen = generate_arrays(32) # will take 32 line of cursor.fetchall() then write
for arr in gen:
    pickle.dump(arr,open('input.pkl','a')) # 'a' option to append to a file

EDIT

As asked in comments, here a possible read function:

# n as described in comments, size equivalent of previous code
def load_gen(file_path, n):
    with open(file_path) as f:
        arr = []
        i = 0
        while line:
            line = f.readline()
            arr.append(line)
            if i == 0:
                continue
            if i % n == 0:
                yield arr
                arr = []
            i = i + 1
        yield arr

ADDITIONAL NOTE: BE CAREFUL

I made a mistake when reseting arrays. It should not be

ingre = keyw = []

but

ingre = []
keyw = []

because it appears keyw.append(X) appends X to ingre too.

  • This is what i've been looking for!!. Can you please tell me how to load n arrays from input.pkl, since i can't load it in one go – Hari Krishnan Nov 29 '17 at 10:11
  • @HariKrishnan edit with what you asked. You will use that function exactly like the previous one. Hope it suits your need ! :) – AlEmerich Nov 29 '17 at 10:25

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