TY - GEN
T1 - Understanding quantum algorithms via query complexity
AU - Ambainis, Andris
N1 - Publisher Copyright:
© ICM 2018.All rights reserved.
PY - 2018
Y1 - 2018
N2 - Query complexity is a model of computation in which we have to compute a function f (x1;:::; xN ) of variables xi which can be accessed via queries. The complexity of an algorithm is measured by the number of queries that it makes. Query complexity is widely used for studying quantum algorithms, for two reasons. First, it includes many of the known quantum algorithms (including Grover’s quantum search and a key subroutine of Shor’s factoring algorithm). Second, one can prove lower bounds on the query complexity, bounding the possible quantum advantage. In the last few years, there have been major advances on several longstanding problems in the query complexity. In this talk, we survey these results and related work, including: • the biggest quantum-vs-classical gap for partial functions (a problem solvable with 1 query quantumly but requiring Ω(pN) queries classically); • the biggest quantum-vs-determistic and quantum-vs-probabilistic gaps for total functions (for example, a problem solvable with M queries quantumly but requiring Ω(- M 2:5) queries probabilistically); • the biggest probabilistic-vs-deterministic gap for total functions (a problem solvable with M queries probabilistically but requiring Ω(- M 2) queries deterministically); • the bounds on the gap that can be achieved for subclasses of functions (for example, symmetric functions); • the connections between query algorithms and approximations by low-degree polynomials.
AB - Query complexity is a model of computation in which we have to compute a function f (x1;:::; xN ) of variables xi which can be accessed via queries. The complexity of an algorithm is measured by the number of queries that it makes. Query complexity is widely used for studying quantum algorithms, for two reasons. First, it includes many of the known quantum algorithms (including Grover’s quantum search and a key subroutine of Shor’s factoring algorithm). Second, one can prove lower bounds on the query complexity, bounding the possible quantum advantage. In the last few years, there have been major advances on several longstanding problems in the query complexity. In this talk, we survey these results and related work, including: • the biggest quantum-vs-classical gap for partial functions (a problem solvable with 1 query quantumly but requiring Ω(pN) queries classically); • the biggest quantum-vs-determistic and quantum-vs-probabilistic gaps for total functions (for example, a problem solvable with M queries quantumly but requiring Ω(- M 2:5) queries probabilistically); • the biggest probabilistic-vs-deterministic gap for total functions (a problem solvable with M queries probabilistically but requiring Ω(- M 2) queries deterministically); • the bounds on the gap that can be achieved for subclasses of functions (for example, symmetric functions); • the connections between query algorithms and approximations by low-degree polynomials.
UR - https://www.scopus.com/pages/publications/85086379297
M3 - Conference paper
AN - SCOPUS:85086379297
T3 - Proceedings of the International Congress of Mathematicians, ICM 2018
SP - 3283
EP - 3304
BT - Invited Lectures
A2 - Sirakov, Boyan
A2 - de Souza, Paulo Ney
A2 - Viana, Marcelo
PB - World Scientific Publishing Co. Pte Ltd
T2 - 2018 International Congress of Mathematicians, ICM 2018
Y2 - 1 August 2018 through 9 August 2018
ER -