Ejemplo n.º 1
0
for key in keys:
    record = query.select(key, 0, [1, 1, 1, 1, 1])[0]
    error = False
    for i, column in enumerate(record.columns):
        if column != records[key][i]:
            error = True
    if error:
        print('select error on', key, ':', record, ', correct:', records[key])
    # else:
    #     print('select on', key, ':', record)
print("Select finished")

for i in range(0, 100):
    r = sorted(sample(range(0, len(keys)), 2))
    column_sum = sum(map(lambda key: records[key][0], keys[r[0]:r[1] + 1]))
    result = query.sum(keys[r[0]], keys[r[1]], 0)
    if column_sum != result:
        print('sum error on [', keys[r[0]], ',', keys[r[1]], ']: ', result,
              ', correct: ', column_sum)
    # else:
    #     print('sum on [', keys[r[0]], ',', keys[r[1]], ']: ', column_sum)
print("Aggregate 1 finished")

deleted_keys = sample(keys, 100)
for key in deleted_keys:
    query.delete(key)
    records.pop(key, None)
print("delete finished")

failed_select_count = 0
for deleted_key in deleted_keys:
Ejemplo n.º 2
0
]


update_time_0 = process_time()
for i in range(0, 10000):
    query.update(choice(keys), *(choice(update_cols)))
update_time_1 = process_time()
print("Updating 10k records took:  \t\t\t", update_time_1 - update_time_0)

# Measuring Select Performance
select_time_0 = process_time()

for i in range(0, 10000):
    query.select(choice(keys), 0, [1, 1, 1, 1, 1])
select_time_1 = process_time()
print("Selecting 10k records took:  \t\t\t", select_time_1 - select_time_0)


# Measuring Aggregate Performance
agg_time_0 = process_time()
for i in range(0, 10000, 100):
    result = query.sum(i, 100, randrange(0, 5))
agg_time_1 = process_time()
print("Aggregate 10k of 100 record batch took:\t", agg_time_1 - agg_time_0)

# Measuring Delete Performance
delete_time_0 = process_time()
for i in range(0, 10000):
    query.delete(906659671 + i)
delete_time_1 = process_time()
print("Deleting 10k records took:  \t\t\t", delete_time_1 - delete_time_0)