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45 lines
894 B
Markdown
45 lines
894 B
Markdown
---
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title: "Z3 Constraint solving"
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date: 2021-06-18T00:53:20-04:00
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draft: false
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tags: []
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---
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I've been looking for an easy to use constraint solver for a while and recently I've landed on using the python bindings for the SMT solver Z3.
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To install:
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```bash
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pip install z3-solver
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```
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Let's say you want to find non-negative solutions for the following Diophantine equation:
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$$
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9x - 100y = 1
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$$
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To do that, we import Z3, declare our integer variables, and pass it into a solve function:
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```python
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from z3 import *
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x, y = Ints("x y")
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solve(9 * x - 100 * y == 1, x >= 0, y >= 0)
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```
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This will print out: `[y = 8, x = 89]`
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If you want to use these values for later computations, you'll have to setup a Z3 model:
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```python
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from z3 import *
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x, y = Ints("x y")
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s = Solver
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s.add(9 * x - 100 * y == 1)
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s.add(x >= 0)
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s.add(y >= 0)
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s.check()
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m = s.model()
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x_val = m.eval(x)
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y_val = m.eval(y)
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```
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