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⚙️AlgorithmIntermediate

State Space Reduction

State space reduction shrinks the number of dynamic programming or search states by keeping only the information that truly affects future decisions.

#state space reduction#dynamic programming#equivalence relation+12
⚙️AlgorithmIntermediate

LIS Variants

LIS variants extend the classic longest increasing subsequence to handle non-decreasing sequences, counting how many LIS exist, and maximizing the sum of a subsequence.

#lis
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+12
⚙️AlgorithmIntermediate

Longest Increasing Subsequence

The Longest Increasing Subsequence (LIS) is the longest sequence you can extract from an array while keeping the original order and making each next element strictly larger.

#longest increasing subsequence#lis#dynamic programming+12