limbo018/DREAMPlace
Deep learning toolkit-enabled VLSI placement
This tool helps chip designers automatically arrange millions of circuit components (like logic gates and memory blocks) onto a silicon chip. You provide a netlist describing the circuit's connections and a technology library, and it efficiently generates a physical layout plan showing where each component should be placed. Integrated circuit physical design engineers who need to optimize chip area, performance, and power will use this.
956 stars.
Use this if you need to rapidly and accurately place components for large-scale integrated circuit designs, especially when aiming for significant speed improvements using GPU acceleration.
Not ideal if you are working with very small-scale designs where manual placement or less performant tools suffice, or if you lack access to GPU hardware.
Stars
956
Forks
257
Language
C++
License
BSD-3-Clause
Category
Last pushed
Feb 19, 2026
Commits (30d)
0
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