Dataflow-Based Optimization for QIR Programs
Offered By: ACM SIGPLAN via YouTube
Course Description
Overview
Explore a 17-minute video presentation from the WQS 2024 workshop that introduces QDFO, a novel dataflow-based optimization approach for Microsoft QIR (Quantum Intermediate Representation) programs. Discover how QDFO preprocesses QIR code to enhance LLVM optimizer capabilities and optimizes QIR code to eliminate redundant qubit operations. Learn about the preliminary implementation of QDFO and its effectiveness in optimizing real-world QIR code, as demonstrated through a case study. Gain insights into how this approach not only reduces redundant operations but also significantly improves QIR code readability, facilitating further research and development in quantum computing.
Syllabus
[WQS24] Dataflow-Based Optimization for QIR Programs
Taught by
ACM SIGPLAN
Related Courses
RISC-V Toolchain and Compiler Optimization TechniquesLinux Foundation via edX The State of Julia in 2021 - JuliaCon Keynote
The Julia Programming Language via YouTube Get Started Using WebAssembly (wasm)
egghead.io DataFusion and Apache Arrow: Supercharging Data Analytics with a Rust-Based Query Engine
Databricks via YouTube Compilers - Jared Shumway
White Hat Cal Poly via YouTube