MCPcopy Index your code
hub / github.com/chaimleib/intervaltree

github.com/chaimleib/intervaltree @3.2.1

Chat with this repo
repository ↗ · DeepWiki ↗ · release 3.2.1 ↗ · + Follow
292 symbols 1,539 edges 43 files 139 documented · 48% 4 cross-repo links
What it actually does AI analysis from the code graph — generated when you open this
loading…
README

Build status badge

intervaltree

A mutable, self-balancing interval tree for Python 2 and 3. Queries may be by point, by range overlap, or by range envelopment.

This library was designed to allow tagging text and time intervals, where the intervals include the lower bound but not the upper bound.

Version 3 changes!

  • The search(begin, end, strict) method no longer exists. Instead, use one of these:
    • at(point)
    • overlap(begin, end)
    • envelop(begin, end)
  • The extend(items) method no longer exists. Instead, use update(items).
  • Methods like merge_overlaps() which took a strict argument consistently default to strict=True. Before, some methods defaulted to True and others to False.

Installing

pip install intervaltree

Features

  • Supports Python 2.7 and Python 3.5+ (Tested under 2.7, and 3.5 thru 3.14)
  • Initializing

    • blank tree = IntervalTree()
    • from an iterable of Interval objects (tree = IntervalTree(intervals))
    • from an iterable of tuples (tree = IntervalTree.from_tuples(interval_tuples))
  • Insertions

    • tree[begin:end] = data
    • tree.add(interval)
    • tree.addi(begin, end, data)
  • Deletions

    • tree.remove(interval) (raises ValueError if not present)
    • tree.discard(interval) (quiet if not present)
    • tree.removei(begin, end, data) (short for tree.remove(Interval(begin, end, data)))
    • tree.discardi(begin, end, data) (short for tree.discard(Interval(begin, end, data)))
    • tree.remove_overlap(point)
    • tree.remove_overlap(begin, end) (removes all overlapping the range)
    • tree.remove_envelop(begin, end) (removes all enveloped in the range)
  • Point queries

    • tree[point]
    • tree.at(point) (same as previous)
  • Overlap queries

    • tree[begin:end]
    • tree.overlap(begin, end) (same as previous)
  • Envelop queries

    • tree.envelop(begin, end)
  • Membership queries

    • interval_obj in tree (this is fastest, O(1))
    • tree.containsi(begin, end, data)
    • tree.overlaps(point)
    • tree.overlaps(begin, end)
  • Iterable

    • for interval_obj in tree:
    • tree.items()
  • Sizing

    • len(tree)
    • tree.is_empty()
    • not tree
    • tree.begin() (the begin coordinate of the leftmost interval)
    • tree.end() (the end coordinate of the rightmost interval)
  • Set-like operations

    • union

      • result_tree = tree.union(iterable)
      • result_tree = tree1 | tree2
      • tree.update(iterable)
      • tree |= other_tree
    • difference

      • result_tree = tree.difference(iterable)
      • result_tree = tree1 - tree2
      • tree.difference_update(iterable)
      • tree -= other_tree
    • intersection

      • result_tree = tree.intersection(iterable)
      • result_tree = tree1 & tree2
      • tree.intersection_update(iterable)
      • tree &= other_tree
    • symmetric difference

      • result_tree = tree.symmetric_difference(iterable)
      • result_tree = tree1 ^ tree2
      • tree.symmetric_difference_update(iterable)
      • tree ^= other_tree
    • comparison

      • tree1.issubset(tree2) or tree1 <= tree2
      • tree1 <= tree2
      • tree1.issuperset(tree2) or tree1 > tree2
      • tree1 >= tree2
      • tree1 == tree2
  • Restructuring

    • chop(begin, end) (slice intervals and remove everything between begin and end, optionally modifying the data fields of the chopped-up intervals)
    • slice(point) (slice intervals at point)
    • split_overlaps() (slice at all interval boundaries, optionally modifying the data field)
    • merge_overlaps() (joins overlapping intervals into a single interval, optionally merging the data fields)
    • merge_equals() (joins intervals with matching ranges into a single interval, optionally merging the data fields)
    • merge_neighbors() (joins adjacent intervals into a single interval if the distance between their range terminals is less than or equal to a given distance. Optionally merges overlapping intervals. Can also merge the data fields.)
  • Copying and typecasting

    • IntervalTree(tree) (Interval objects are same as those in tree)
    • tree.copy() (Interval objects are shallow copies of those in tree)
    • set(tree) (can later be fed into IntervalTree())
    • list(tree) (ditto)
  • Pickle-friendly

  • Automatic AVL balancing

Examples

  • Getting started

    ``` python

    from intervaltree import Interval, IntervalTree t = IntervalTree() t IntervalTree()

    ```

  • Adding intervals - any object works!

    ``` python

    t[1:2] = "1-2" t[4:7] = (4, 7) t[5:9] = {5: 9}

    ```

  • Query by point

    The result of a query is a set object, so if ordering is important, you must sort it first.

    ``` python

    sorted(t[6]) [Interval(4, 7, (4, 7)), Interval(5, 9, {5: 9})] sorted(t[6])[0] Interval(4, 7, (4, 7))

    ```

  • Query by range

    Note that ranges are inclusive of the lower limit, but non-inclusive of the upper limit. So:

    ``` python

    sorted(t[2:4]) []

    ```

    Since our search was over 2 ≤ x < 4, neither Interval(1, 2) nor Interval(4, 7) was included. The first interval, 1 ≤ x < 2 does not include x = 2. The second interval, 4 ≤ x < 7, does include x = 4, but our search interval excludes it. So, there were no overlapping intervals. However:

    ``` python

    sorted(t[1:5]) [Interval(1, 2, '1-2'), Interval(4, 7, (4, 7))]

    ```

    To only return intervals that are completely enveloped by the search range:

    ``` python

    sorted(t.envelop(1, 5)) [Interval(1, 2, '1-2')]

    ```

  • Accessing an Interval object

    ``` python

    iv = Interval(4, 7, (4, 7)) iv.begin 4 iv.end 7 iv.data (4, 7)

    begin, end, data = iv begin 4 end 7 data (4, 7)

    ```

  • Constructing from lists of intervals

    We could have made a similar tree this way:

    ``` python

    ivs = [(1, 2), (4, 7), (5, 9)] t = IntervalTree( ... Interval(begin, end, "%d-%d" % (begin, end)) for begin, end in ivs ... )

    ```

    Or, if we don't need the data fields:

    ``` python

    t2 = IntervalTree(Interval(*iv) for iv in ivs)

    ```

    Or even:

    ``` python

    t2 = IntervalTree.from_tuples(ivs)

    ```

  • Removing intervals

    ``` python

    t.remove(Interval(1, 2, "1-2")) sorted(t) [Interval(4, 7, '4-7'), Interval(5, 9, '5-9')]

    t.remove(Interval(500, 1000, "Doesn't exist")) # raises ValueError Traceback (most recent call last): ValueError

    t.discard(Interval(500, 1000, "Doesn't exist")) # quietly does nothing

    del t[5] # same as t.remove_overlap(5) t IntervalTree()

    ```

    We could also empty a tree entirely:

    ``` python

    t2.clear() t2 IntervalTree()

    ```

    Or remove intervals that overlap a range:

    ``` python

    t = IntervalTree([ ... Interval(0, 10), ... Interval(10, 20), ... Interval(20, 30), ... Interval(30, 40)]) t.remove_overlap(25, 35) sorted(t) [Interval(0, 10), Interval(10, 20)]

    ```

    We can also remove only those intervals completely enveloped in a range:

    ``` python

    t.remove_envelop(5, 20) sorted(t) [Interval(0, 10)]

    ```

  • Chopping

    We could also chop out parts of the tree:

    ``` python

    t = IntervalTree([Interval(0, 10)]) t.chop(3, 7) sorted(t) [Interval(0, 3), Interval(7, 10)]

    ```

    To modify the new intervals' data fields based on which side of the interval is being chopped:

    ``` python

    def datafunc(iv, islower): ... oldlimit = iv[islower] ... return "oldlimit: {0}, islower: {1}".format(oldlimit, islower) t = IntervalTree([Interval(0, 10)]) t.chop(3, 7, datafunc) sorted(t)[0] Interval(0, 3, 'oldlimit: 10, islower: True') sorted(t)[1] Interval(7, 10, 'oldlimit: 0, islower: False')

    ```

  • Slicing

    You can also slice intervals in the tree without removing them:

    ``` python

    t = IntervalTree([Interval(0, 10), Interval(5, 15)]) t.slice(3) sorted(t) [Interval(0, 3), Interval(3, 10), Interval(5, 15)]

    ```

    You can also set the data fields, for example, re-using datafunc() from above:

    ``` python

    t = IntervalTree([Interval(5, 15)]) t.slice(10, datafunc) sorted(t)[0] Interval(5, 10, 'oldlimit: 15, islower: True') sorted(t)[1] Interval(10, 15, 'oldlimit: 5, islower: False')

    ```

Future improvements

See the issue tracker on GitHub.

Based on

Copyright

Licensed under the Apache License, version 2.0.

The source code for this project is at https://github.com/chaimleib/intervaltree

Core symbols most depended-on inside this repo

verify
called by 102
intervaltree/node.py
verify
called by 76
intervaltree/intervaltree.py
from_tuples
called by 73
intervaltree/intervaltree.py
addi
called by 61
intervaltree/intervaltree.py
overlaps
called by 56
intervaltree/interval.py
containsi
called by 51
intervaltree/intervaltree.py
removei
called by 32
intervaltree/intervaltree.py
write
called by 29
test/progress_bar.py

Shape

Method 150
Function 135
Class 7

Languages

Python100%

Modules by API surface

intervaltree/intervaltree.py58 symbols
intervaltree/node.py34 symbols
test/intervaltree_methods/restructure_test.py28 symbols
test/progress_bar.py27 symbols
intervaltree/interval.py24 symbols
test/pprint.py19 symbols
test/intervaltree_methods/query_test.py11 symbols
test/optimality/optimality_test_matrix.py10 symbols
test/intervaltree_methods/setlike_test.py9 symbols
test/interval_methods/sorting_test.py9 symbols
test/issues/issue4.py7 symbols
test/intervals.py6 symbols

For agents

$ claude mcp add intervaltree \
  -- python -m otcore.mcp_server <graph>

⬇ download graph artifact