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) tt=word_tokenize(i) 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.