Sliding Window
A strategy for processing (stream) data by specific limited frames, usually time periods. A sliding window moves through the data stream in a fixed-size, overlapping manner. Each window collects and processes a fixed number of data items or a fixed duration of data, after which the window is moved forward by a fixed amount. Sliding windows differs from fixed windows by allowing data overlap. This means a single event can belong to multiple sliding windows.
What's the difference between a sliding window and a tumbling window?
The difference between a
and a sliding window is whether the intervals overlap. Tumbling windows are intervals that do not overlap. Sliding windows are intervals that do overlap.For realtime monitoring you would usually prefer a sliding window over tumbling ones as the latter cut the data in non-overlapping parts: a wrong cut could prevent it from detecting the pattern you are looking for.
How can I perform a sliding window in Python?
You can use Pathway to perform sliding window operations on your data:
>>> import pathway as pw
>>> t = pw.debug.table_from_markdown(
... '''
... | shard | t
... 1 | 0 | 12
... 2 | 0 | 13
... 3 | 0 | 14
... 4 | 0 | 15
... 5 | 0 | 16
... 6 | 0 | 17
... 7 | 1 | 10
... 8 | 1 | 11
... ''')
>>> result = t.windowby(
... t.t, window=pw.window.sliding(duration=10, hop=3), shard=t.shard
... ).reduce(
... pw.this.window,
... min_t=pw.reducers.min(pw.this.t),
... max_t=pw.reducers.max(pw.this.t),
... count=pw.reducers.count(pw.this.t),
... )
>>> pw.debug.compute_and_print(result, include_id=False)
window | min_t | max_t | count
(0, 3, 13) | 12 | 12 | 1
(0, 6, 16) | 12 | 15 | 4
(0, 9, 19) | 12 | 17 | 6
(0, 12, 22) | 12 | 17 | 6
(0, 15, 25) | 15 | 17 | 3
(1, 3, 13) | 10 | 11 | 2
(1, 6, 16) | 10 | 11 | 2
(1, 9, 19) | 10 | 11 | 2