Modern Fine-Grained Complexity
Nick Fischer
MPI-INF - D1
06 May 2026, 12:15 pm - 1:15 pm
Saarbrücken building E1 5, room 002
Joint Lecture Series
Put yourself in the shoes of an algorithm designer working on some
computational problem. You have found an algorithm running in time O(n^2), say,
but after months of effort no faster algorithm is in sight. Perhaps your
algorithm is already optimal – but how could you show this? This is the central
challenge of fine-grained complexity theory. In the spirit of classical
NP-hardness, this theory starts from the assumption that certain canonical
problems are hard, and then uses so-called fine-grained reductions to show that
many other problems are conditionally hard as well. ...
Put yourself in the shoes of an algorithm designer working on some
computational problem. You have found an algorithm running in time O(n^2), say,
but after months of effort no faster algorithm is in sight. Perhaps your
algorithm is already optimal – but how could you show this? This is the central
challenge of fine-grained complexity theory. In the spirit of classical
NP-hardness, this theory starts from the assumption that certain canonical
problems are hard, and then uses so-called fine-grained reductions to show that
many other problems are conditionally hard as well.
In this talk, I will first describe the basic concepts of fine-grained complexity along with some illustrative examples, before turning to more recent developments, including some of my own work. I will discuss some questions that resisted the basic theory for a long time, and how progress on them has required a more sophisticated method – the celebrated structure-versus-randomness paradigm.
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In this talk, I will first describe the basic concepts of fine-grained complexity along with some illustrative examples, before turning to more recent developments, including some of my own work. I will discuss some questions that resisted the basic theory for a long time, and how progress on them has required a more sophisticated method – the celebrated structure-versus-randomness paradigm.