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Squeeze events into timelines and other timeline manipulations

Project description

TimelineOMat

This project allows to streamline events in timelines. Streamlining is here to fill to adjust the event start and stop times so it fits into the gaps of the timeline and to emit an Exception if this is not possible. The timeline should be filled with the events with higher priority first and then descend in priority.

Installation

pip install timelineomat

Usage

There are 4 different functions which also exist as methods of the TimelineOMat class

  • streamline_event_times: checks how to short the given event to fit into the timelines. Without a timeline the result can be used for sorting (see section later)
  • streamline_event: uses streamline_event_times plus setters to update the event and returns event
  • transform_events_to_times: transforms timelines to TimeRangeTuple for e.g. databases
  • ordered_insert: insert an event in a timeline so it stays ordered. By default an offset is returned. It can be used in case of ascending inserts to improve the performance

ordered_insert also takes the parameters direction and offset (direction can be set on TimelineOMat). This allows performant inserts and collision checks.

When ordered_insert is called with offset 0 or unset it is safe to call even when the insertion order is chaotic

The timeline must be ordered anyway for ordered_insert

There is a new argument occlusions which must be of type list. It receives the occluded time ranges

from dataclasses import dataclass
from datetime import datetime as dt
from timelineomat import TimelineOMat, streamline_event_times, stream_line_event, TimeRangeTuple


@dataclass
class Event:
    start: dt
    stop: dt

timeline = [
    Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 2)),
    Event(start=dt(2024, 1, 2), stop=dt(2024, 1, 3))
]
new_event = Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 4))
# one time methods
# get intermediate result of new times
streamline_event_times(new_event, timeline) == TimeRangeTuple(start=dt(2024, 1, 3), stop=dt(2024, 1, 4))
# update the event
timeline.append(streamline_event(new_event, timeline))

tm = TimelineOMat()
# use method instead
tm.streamline_event_times(Event(start=dt(2024, 1, 1), stop=dt(2024, 1, )), timeline) == TimeRangeTuple(start=dt(2024, 1, 4), stop=dt(2024, 1, 5))

# now integrate in django or whatever
from django.db.models import Q

q = Q()
# this is not optimized
for timetuple in tm.transform_events_to_times(timeline):
    # timetuple is actually a 2 element tuple
    q |= Q(timepoint__range=timetuple)

Tricks to integrate in different datastructures

TimelineOMat supports out of the box all kind of dicts as well as objects. It determinates if an object is a dict and uses otherwise getattr and setattr. It even supports timelines with mixed types.

The easiest way to integrate Events in TimelineOMat with different names than start and stop is to provide the names for start_extractor and stop_extractor. When providing strings the string names are mirrored to the arguments: start_setter and stop_setter. No need to set them explicitly.

Data types of start, stop

the output format is always datetime but the input is flexible. Datetimes are nearly passed through (naive datetimes can get a timezone set, more info later)

Int as well as float are also supported. In this case datetime.fromtimestamp is used.

In case of strings fromisodatestring is used.

Optional fallback timezones

All of TimelineOMat, streamline_event_times and streamline_event support an argument: fallback_timezone

If set the timezone is used in case a naive datetime is encountered (in case of int, float, the timezone is always set).

Supported are the regular timezones of python (timezone.utc or ZoneInfo).

TimelineOMat one-time overwrites

Given the code

from dataclasses import dataclass
from datetime import datetime as dt
from timelineomat import TimelineOMat


@dataclass
class Event:
    start: dt
    stop: dt


timeline = [
    Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 2)),
    Event(start=dt(2024, 1, 2), stop=dt(2024, 1, 3))
]
new_event1 = Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 4))
new_event2 = dict(start=dt(2024, 1, 1), end=dt(2024, 1, 5))

tm = TimelineOMat()

it is possible to extract the data with

def one_time_overwrite_end(ev):
    if isinstance(ev, dict):
        return ev["end"]
    else:
        return ev.stop

timeline.append(tm.streamline_event(new_event1, timeline))
#

timeline.append(Event(**tm.streamline_event_times(new_event2, timeline, stop_extractor=one_time_overwrite_end)._asdict()))

Tricks to improve the performance:

Using TimelineOMat

In case of the one time methods the extractors and setters are generated all the time when using string extractors or setters -> bad performance

Building an TimelineOMat is more efficient or alternatively provide functions for extractors and setters

Only the last element (sorted timelines)

For handling unsorted timelines TimelineOMat iterates through all events all the time. In case of an ordered timeline the performance can be improved by using only the last element:

from dataclasses import dataclass
from datetime import datetime as dt
from timelineomat import TimelineOMat


@dataclass
class Event:
    start: dt
    stop: dt

ordered_timeline = [
    Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 2)),
    Event(start=dt(2024, 1, 2), stop=dt(2024, 1, 3))
]
new_event = Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 4))
# here we generate the setters and extractors only onetime
tm = TimelineOMat()
tm.streamline_event_times(new_event, ordered_timeline[-1:])

In case the inserts are not completely ordered there is a helper named ordered_insert. It returns and takes (optionally) an offset. As soon as a break in the monotonic ascending or descending is detected, the offset can be set to 0.

Note: position and offset are in ascending orders the same.

from dataclasses import dataclass
from datetime import datetime as dt
from timelineomat import TimelineOMat


@dataclass
class Event:
    start: dt
    stop: dt

ordered_timeline = [
    Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 2)),
    Event(start=dt(2024, 1, 2), stop=dt(2024, 1, 3))
]
new_event1 = Event(start=dt(2024, 1, 1), stop=dt(2024, 1, 4))
new_event2 = Event(start=dt(2023, 1, 1), stop=dt(2023, 1, 4))
new_event3 = Event(start=dt(2025, 1, 1), stop=dt(2025, 1, 4))
new_event4 = Event(start=dt(2025, 2, 1), stop=dt(2025, 2, 4))
# here we generate the setters and extractors only onetime
tm = TimelineOMat(direction="desc")
position, offset = tm.ordered_insert(
    tm.streamline_event(
        new_event1, ordered_timeline[:len(ordered_timeline)-1-offset]
    ),
    ordered_timeline
)
position, offset = tm.ordered_insert(tm.streamline_event(new_event2, ordered_timeline[-1:]), ordered_timeline, offset=offset)
# is stable
position = tm.ordered_insert(tm.streamline_event(new_event2, ordered_timeline[-1:]), ordered_timeline, offset=offset).position
# here is a break in the monotic order and we get ascending inserts
offset = 0
position, offset = tm.ordered_insert(tm.streamline_event(new_event3, ordered_timeline), ordered_timeline, offset=offset, direction="asc")
position, offset = tm.ordered_insert(tm.streamline_event(new_event4, ordered_timeline[-1:]), ordered_timeline, offset=offset, direction="asc")

How to integrate in db systems

DB Systems like django support range queries, which receives two element tuples. TimelineOMat can convert the timelines into such tuples (TimeRangeTuple doubles as tuple)

An example is in Usage

How to use for sorting

simple use the streamline_event_times(...) method of TimelineOMat without any timelines as key function. By using the TimelineOMat class parameters can be preinitialized

The resulting tuple can be sorted

tm = TimelineOMat()
timeline.sort(key=tm.streamline_event_times)

To compare only the start or stop timestamps

tm = TimelineOMat()
timeline.sort(key=tm.start_extractor)

Another usage of the key function would be together with heapq to implement some kind of merge sort

Changes

0.5.0 add occlusions argument 0.4.0 rename NoCallAllowed to NoCallAllowedError 0.3.0 rename NewTimesResult to TimeRangeTuple (the old name is still available)

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