Browse Source

added z3 intro do README

sp 2 weeks ago
parent
commit
463324e4fd
  1. 251
      README.md

251
README.md

@ -2,3 +2,254 @@ Student 1: Name Surname Matriculation Number
Student 2: Name Surname Matriculation Number Student 2: Name Surname Matriculation Number
## Basics of z3
The exercises you will solve in the practicals are only going to cover a small subset of the possibilities of solving problems with z3. If you are interested in more background or need to look into some details we suggest you to take a look [here](https://theory.stanford.edu/~nikolaj/programmingz3.html).
A very small example program could like like this:
``` python
# coding: utf-8
import os, sys
from z3 import *
# v-- internal z3 representation
x = Bool('x')
#^-- python variable
# v-- internal z3 representation
gamma = Bool('g') # possible, but not advisable
#^-- python variable
# Declare a solver with which we can do some work
solver = Solver()
p = Bool('p')
qu = Bool('q')
r = Bool('r')
# p -> q, r = ~q, ~p or r
# Add constraints
solver.add(Implies(p,qu))
solver.add(r == Not(qu))
solver.add(Or(Not(p), r))
# solver.add(r == q)
res = solver.check()
if res != sat:
print("unsat")
sys.exit(1)
m = solver.model()
for d in m.decls():
print("%s -> %s" % (d, m[d]))
```
#### A Simple Example
In a python program we usually follow this workflow:
- import `z3`,
- declare needed variables of specific `Sort` (this is the word we use for types in z3),
- declare a solver: `solver = Solver()` and
- add constraints for the declared variables to the solver.
- After adding all the constraints we tell the solver to try to `check()` for satisfiability and if the solver tells us that the model is satisfiable we may
- print the model.
We can now dissect the example program from above and take a look at which steps we have taken:
At first we import z3 `from z3 import *`.
We then need to declare variables:
``` python
# v-- internal z3 representation
x = Bool('x')
#^-- python variable
# v-- internal z3 representation
gamma = Bool('g') # possible, but not advisable
#^-- python variable
```
Lets have a closer look: In z3 we declare variable of some kind of `Sort` just like you would declare variable of some type in other language. z3 has a `BoolSort`, `IntSort`, `RealSort` and some more. Our example from above only covers propositional logic so far so we have declared our variables of type `Bool`.
We have to distinct between z3 variables and python variables. The code block above gives you the answer to this distinction and as the second examples tells you, you may give these two different names, but this is not advisable since it will probably only confuse you and others which need to read your code.
In order to check for satisfiability we are going to need a solver: `solver = Solver()`.
In the next step we will add some constraints to the solver:
``` python
p = Bool('p')
qu = Bool('qu')
r = Bool('r')
# p -> q, r = ~q, ~p or r
# Add constraints
solver.add(Implies(p,qu))
solver.add(r == Not(qu))
solver.add(Or(Not(p), r))
```
Adding constraints is done with the solvers `add()` method. Remember that the constraints have to be expressed in prefix notation.
At the very end we have to tell the solver to check whether our constraints are satisfiable, is they are not we simply exit the program:
``` python
res = solver.check()
if res != sat:
print("unsat")
sys.exit(1)
```
Our example is satisfiable so in the end we print the model by asking the solver for the created model and print all of the variables which have an associated value in the created model:
``` python
m = solver.model()
for d in m.decls():
print("%s -> %s" % (d, m[d]))
> q -> True
> p -> False
> r -> False
```
This can be done with `solver.model().decls()` which lists the assignments as a dictionary. You can also evaluate individual variables in your model:
``` python
m = solver.model()
print("qu: " + str(m.eval(qu)))
print("p: " + str(m.eval(p)))
print("r: " + str(m.eval(r)))
> qu: True
> p: False
> r: False
```
### First Order Logic Types and Constraints
So far we have only touched propositional logic, but z3 is an SMT-solver so lets expand our knowledge to use these funtionalities.
``` python
from z3 import Solver, Int
from z3 import sat as SAT
x, y = Int('x'), Int("%s" % "y") # create integer variables
solver = Solver() # create a solver
solver.add(x < 6 * y) # assert x < 6y
solver.add(x % 2 == 1) # assert x == 1 mod 2
solver.add(sum([x,y]) == 42) # assert x + y = 42
if solver.check() == SAT: # check if satisfiable
m = solver.model() # retrieve the solution
print(m[x] + m[y]) # print symbolic sum
print(m.eval(x) + m.eval(y)) # use eval to print
# hint: use m[x].as_long() to get python integers
for d in m.decls():
print("%s -> %d" % (d, m[d].as_long()))
> 35 + 7
> 35 + 7
> x -> 35
> y -> 7
```
From the example above, you can see that creating z3 integer variables follows the same principle as for booleans.
Python expressions are valid in constraints too, for example using a built-in function: `solver.add(sum([x,y]) == 42)`.
### Custom Datatypes and Sorts
So far we have used z3's capabilities by using boolean or integer valued variables. This already gives us quite a powerful tool, but we want to extend this to be able to use our own custom structures and datatypes. A first approach is to use the `DataType` functionality.
``` python
Colour = DataType("Colour")
```
This will create a placeholder that contains constructors and accessors for our custom `Colour` variables.
``` python
Colour.declare("green")
Colour.declare("yellow")
ColourSort = Colour.create()
```
We have now defined two constructors for possible values of our `Colour` variable type and finalized the definition of `Colour`. `.create()` returns a sort that we can now work with. z3 will now internally work with these possible values for `Colour`. You may think of `Colour` in the same way as of the `IntSort` mentioned above. Let's consider this once more. We have used `Int(...)` to tell z3 that we want it to create an internal representation of an integer variable. This could be refactored as such:
``` python
x, y = Const('x', IntSort()), Const("%s" % "y", IntSort()) # create integer variables
```
This means that `Int("x")` is only syntactic sugar to make our code more legible. But this also tells us how to use our `Colour` datatype:
``` python
x = Const("cell", ColourSort)
```
We have used the `DataType` functionality solely to model an enum-type variable. A constructor for such a datatype but might also have some accessor associated with it, allowing us to create algebraic structures like lists or trees.
Another type of a custom structures are uninterpreted sorts. These can be created using `DeclareSort(...)`:
```python
A = DeclareSort('A')
x, y = Consts('x y', A)
```
As you can see we may use them in a similar way to the above discussed `DataType`s. z3 will see `x` and `y` as of type `A`. Since these sorts are uninterpreted the do not come with any kind of semantics, i.e. we have no means to compare `x` and `y`. This will be useful for our next topic: Uninterpreted functions.
Note that you do not have to actually `create()` your custom sort, it will be handled like a set of its declared variables.
### Uninterpreted Functions
Uninterpreted functions give us a way to let z3 model relationships, equalities, etc. between certain variables. A function maps from a set of sorts to a sort.
Consider this example (taken from [here](https://ece.uwaterloo.ca/~agurfink/ece653w17/z3py-advanced)):
```python
from z3 import *
A = DeclareSort('A')
x, y = Consts('x y', A)
f = Function('f', A, A)
s = Solver()
s.add(f(x) == y, f(f(x)) == x, x != y)
s.check()
m = s.model()
print(m)
print("interpretation assigned to A:")
print("f(x) = " + m.evaluate(f(x)).decl().name())
print("f(y) = " + m.evaluate(f(y)).decl().name())
```
We use an uninterpreted sort `A` with values `x` and `y`. `f` is declared as a `Function(...)` mapping `A` to `A`. We are then telling the solver that `f` used on `x` will map to `y`, `f` used twice on `x` will give `x` again and that those two values are different. Checking for satisfiability will now check if such a function can exist. If it can the model produced by z3 will contain the look-up table for `f` that we have expected.
```python
[x = A!val!0,
y = A!val!1,
f = [A!val!1 -> A!val!0, else -> A!val!1]]
interpretation assigned to A:
f(x) = A!val!1
f(y) = A!val!0
```
This function does not need to be fully defined, as z3 will only check if it can exist with respect to our expressed constraints. In order to get an assignment for all possible values in our sort, we can evaluate the model using the `model_completion=True` flag. This is taked from the `seating-arrangement` example:
```python
arrangement = ["" for guest in range(len(guests))]
for guest in guests:
arrangement[m.evaluate(position(guest),model_completion=True).as_long()] = guest.decl().name()
```
Loading…
Cancel
Save