| name | noir-optimize-acir |
| description | Workflow for measuring and optimizing the ACIR circuit size of a constrained Noir program. Use when asked to optimize a Noir program's gate count or circuit size. |
ACIR Optimization Loop
This workflow targets ACIR circuit size for constrained Noir programs. It does not apply to unconstrained (Brillig) functions — Brillig runs on a conventional VM where standard profiling and algorithmic improvements apply instead, and bb gates won't reflect Brillig performance.
Measuring Circuit Size
Binary projects
Compile the program and measure gate count with:
nargo compile && bb gates -b ./target/<package>.json
Library projects
Libraries cannot be compiled with nargo compile. Instead, mark the functions you want to measure with #[export] and use nargo export:
nargo export && bb gates -b ./export/<function_name>.json
Artifacts are written to the export/ directory and named after the exported function (not the package).
If bb is not available, ask the user for their backend's equivalent command. Other backends should have a similar CLI interface.
The output contains two fields:
circuit_size: the actual gate count after backend compilation. This determines proving time, which is generally the bottleneck.
acir_opcodes: number of ACIR operations. This affects execution time (witness generation). A change can reduce opcodes without affecting circuit size or vice versa — both matter, but prioritize circuit_size when they conflict.
Always record a baseline of both metrics before making changes.
Optimization Loop
- Baseline: compile and record
circuit_size.
- Apply one change at a time.
- Recompile and measure: compare
circuit_size to the baseline.
- Revert if worse: if
circuit_size increased or stayed the same, undo the change. Not every "optimization" helps — the compiler may already handle it, or the overhead of the new approach may outweigh the savings.
- Repeat from step 2 with the next candidate change.
What to Try
Candidate optimizations roughly ordered by impact:
- Hint and verify: replace expensive in-circuit computation with an unconstrained hint and constrained verification. This is the highest-impact optimization for most programs.
- Reduce what you hint: if you're hinting intermediate values (selectors, masks, indices), see if you can hint only the final result and verify it directly.
- Hoist assertions out of branches: replace
if c { assert_eq(x, a) } else { assert_eq(x, b) } with assert_eq(x, if c { a } else { b }).
- Simplify comparisons: inequality checks (
<, <=) cost more than equality (==). But don't introduce extra state to avoid them — measure first.
What Not to Try
- Don't hint division or modular arithmetic: the compiler already injects unconstrained helpers for these.
- Don't hand-roll conditional selects:
if/else expressions compile to the same circuit as c * (a - b) + b.
- Don't replace
<= with flag tracking without measuring: adding mutable state across loop iterations can produce more gates than a simple comparison.