Basic Operations
Here we discuss some of the most basic operations needed for expression manipulation in SymPy. Some more advanced operations will be discussed later in the advanced expression manipulation section.
We access SymPy from Julia by loading either the SymPy or SymPyPythonCall packages. Once loaded, commands like the following one should run without complaint.
julia> @syms x, y, z(x, y, z)
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    >>> from sympy import *
    >>> x, y, z = symbols("x y z")Substitution
One of the most common things you might want to do with a mathematical expression is substitution.  Substitution replaces all instances of something in an expression with something else.  It is done using the subs method. For example
We can call subs using the Julian notation of subs(expr, ...) rather than the object methoc syntax more common in Python, expr.subs(...). Further, we can use "pairs" notation when calling subs in this manner.
julia> expr = cos(x) + 1cos(x) + 1julia> subs(expr, x=>y)cos(y) + 1
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    >>> expr = cos(x) + 1
    >>> expr.subs(x, y)
    cos(y) + 1Substitution is usually done for one of two reasons:
- Evaluating an expression at a point. For example, if our expression is cos(x) + 1and we want to evaluate it at the pointx = 0, so that we getcos(0) + 1, which is 2.
We can also use the object-method syntax.
julia> expr.subs(x,0)2
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   >>> expr.subs(x, 0)
   2- Replacing a subexpression with another subexpression.  There are two reasons we might want to do this.  The first is if we are trying to build an expression that has some symmetry, such as x^{x^{x^x}}. To build this, we might start withx**y, and replaceywithx**y. We would then getx**(x**y). If we replacedyin this new expression withx**x, we would getx**(x**(x**x)), the desired expression.
julia> expr = x^yy xjulia> expr = subs(expr, y => x^y)⎛ y⎞ ⎝x ⎠ xjulia> subs(expr, y => x^x)⎛ ⎛ x⎞⎞ ⎜ ⎝x ⎠⎟ ⎝x ⎠ x
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   >>> expr = x**y
   >>> expr
   x**y
   >>> expr = expr.subs(y, x**y)
   >>> expr
   x**(x**y)
   >>> expr = expr.subs(y, x**x)
   >>> expr
   x**(x**(x**x))The second is if we want to perform a very controlled simplification, or    perhaps a simplification that SymPy is otherwise unable to do.  For    example, say we have \sin(2x) + \cos(2x), and we want to replace    \sin(2x) with 2\sin(x)\cos(x).  As we will learn later, the function    expand_trig does this.  However, this function will also expand    \cos(2x), which we may not want.  While there are ways to perform such    precise simplification, and we will learn some of them in the    advanced expression manipulation section, an    easy way is to just replace \sin(2x) with 2\sin(x)\cos(x).
As expand_trig is not exposed, it is called as a function from the sympy module, using the dot notation to access underlying values in the module.
julia> expr = sin(2x) + cos(2x)sin(2⋅x) + cos(2⋅x)julia> sympy.expand_trig(expr)2 2⋅sin(x)⋅cos(x) + 2⋅cos (x) - 1julia> subs(expr, sin(2x) => 2*sin(x)* cos(x))2⋅sin(x)⋅cos(x) + cos(2⋅x)
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   >>> expr = sin(2*x) + cos(2*x)
   >>> expand_trig(expr)
   2*sin(x)*cos(x) + 2*cos(x)**2 - 1
   >>> expr.subs(sin(2*x), 2*sin(x)*cos(x))
   2*sin(x)*cos(x) + cos(2*x)There are two important things to note about subs.  First, it returns a new expression.  SymPy objects are immutable.  That means that subs does not modify it in-place.  For example
julia> expr = cos(x)cos(x)julia> subs(expr, x=>0)1julia> exprcos(x)julia> xx
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   >>> expr = cos(x)
   >>> expr.subs(x, 0)
   1
   >>> expr
   cos(x)
   >>> x
   xSymPy expressions are immutable. No function will change them in-place.
As with Pytbon, SymPy expressions are immutable.  No function will change them in-place.
Here, we see that performing expr.subs(x, 0) leaves expr unchanged. In fact, since SymPy expressions are immutable, no function will change them in-place.  All functions will return new expressions.
To perform multiple substitutions at once, pass a list of (old, new) pairs to subs.
julia> expr = x^3 + 4x*y - z3 x + 4⋅x⋅y - zjulia> subs(expr, x=>2, y=>4, z=>0)40
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    >>> expr = x**3 + 4*x*y - z
    >>> expr.subs([(x, 2), (y, 4), (z, 0)])
    40It is often useful to combine this with a list comprehension to do a large set of similar replacements all at once.  For example, say we had x^4 - 4x^3 + 4x^2 - 2x + 3 and we wanted to replace all instances of x that have an even power with y, to get y^4 - 4x^3 + 4y^2 - 2x + 3.
We use pairs notation, though tuples could also be used
julia> expr = x^4 - 4x^3 + 4x^2 - 2x + 34 3 2 x - 4⋅x + 4⋅x - 2⋅x + 3julia> replacements = [x^i => y^i for i in 0:4 if iseven(i)]3-element Vector{Pair{SymPyCore.Sym{PythonCall.Py}, SymPyCore.Sym{PythonCall.Py}}}: 1 => 1 x^2 => y^2 x^4 => y^4julia> subs(expr, replacements...)3 4 2 - 4⋅x - 2⋅x + y + 4⋅y + 3
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    >>> expr = x**4 - 4*x**3 + 4*x**2 - 2*x + 3
    >>> replacements = [(x**i, y**i) for i in range(5) if i % 2 == 0]
    >>> expr.subs(replacements)
    -4*x**3 - 2*x + y**4 + 4*y**2 + 3Converting Strings to SymPy Expressions
The sympify function (that's sympify, not to be confused with simplify) can be used to convert strings into SymPy expressions.
For example
We can't use 3x (literal multiplication) as it isn't parsed correctly. We do not need to use a rational (e.g. 1//2), as that is parsed as desired.
julia> str_expr = "x^3 + 3*x - 1/2""x^3 + 3*x - 1/2"julia> expr = sympify(str_expr)3 1 x + 3⋅x - ─ 2julia> subs(expr, x=>2)27/2
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    >>> str_expr = "x**2 + 3*x - 1/2"
    >>> expr = sympify(str_expr)
    >>> expr
    x**2 + 3*x - 1/2
    >>> expr.subs(x, 2)
    19/2sympify uses eval.  Don't use it on unsanitized input.
evalf
To evaluate a numerical expression into a floating point number, use evalf.
We need to wrap 8 in Sym otherwise, sqrt will dispatch to the base function in Julia. Also, we could use N(expr) to get a Julia value, as evalf returns a symbolic value.
julia> expr = sqrt(Sym(8))2⋅√2julia> expr.evalf()2.82842712474619
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    >>> expr = sqrt(8)
    >>> expr.evalf()
    2.82842712474619SymPy can evaluate floating point expressions to arbitrary precision.  By default, 15 digits of precision are used, but you can pass any number as the argument to evalf.  Let's compute the first 100 digits of \pi.
We use PI of Sym(pi) to express the symbolic value of $\pi$.
julia> PI.evalf(100)3.1415926535897932384626433832795028841971693993751058209749445923078164062862 08998628034825342117068
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    >>> pi.evalf(100)
    3.141592653589793238462643383279502884197169399375105820974944592307816406286208998628034825342117068To numerically evaluate an expression with a Symbol at a point, we might use subs followed by evalf, but it is more efficient and numerically stable to pass the substitution to evalf using the subs flag, which takes a dictionary of Symbol: point pairs.
A Julia Dict can be used when the underlying sympy method expects a Python dict.
julia> expr = cos(2x)cos(2⋅x)julia> expr.evalf(subs=Dict(x=>2.4))0.0874989834394464
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    >>> expr = cos(2*x)
    >>> expr.evalf(subs={x: 2.4})
    0.0874989834394464Sometimes there are roundoff errors smaller than the desired precision that remain after an expression is evaluated. Such numbers can be removed at the user's discretion by setting the chop flag to True.
We don't use the reserved name one, as it is a base function name in Julia
julia> o = cos(Sym(1))^2 + sin(Sym(1))^22 2 cos (1) + sin (1)julia> (o-1).evalf()-0.e-124julia> (o - 1).evalf(chop=true)ERROR: Python: TypeError: must be real number, not BooleanTrue Python stacktrace: [1] evalf @ sympy.core.evalf c:\julia\PKG\v1.10\environments\v1.10\.CondaPkg\env\Lib\site-packages\sympy\core\evalf.py:1527 [2] evalf_add @ sympy.core.evalf c:\julia\PKG\v1.10\environments\v1.10\.CondaPkg\env\Lib\site-packages\sympy\core\evalf.py:600 [3] evalf @ sympy.core.evalf c:\julia\PKG\v1.10\environments\v1.10\.CondaPkg\env\Lib\site-packages\sympy\core\evalf.py:1482 [4] evalf @ sympy.core.evalf c:\julia\PKG\v1.10\environments\v1.10\.CondaPkg\env\Lib\site-packages\sympy\core\evalf.py:1647
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    >>> one = cos(1)**2 + sin(1)**2
    >>> (one - 1).evalf()
    -0.e-124
    >>> (one - 1).evalf(chop=True)
    0lambdify
subs and evalf are good if you want to do simple evaluation, but if you intend to evaluate an expression at many points, there are more efficient ways.  For example, if you wanted to evaluate an expression at a thousand points, using SymPy would be far slower than it needs to be, especially if you only care about machine precision.  Instead, you should use libraries like NumPy and SciPy.
The easiest way to convert a SymPy expression to an expression that can be numerically evaluated is to use the lambdify function.  lambdify acts like a lambda function, except it converts the SymPy names to the names of the given numerical library, usually NumPy.  For example
The lambdify function does not use sympy's lambdify and has room for improvement, as compared to that in the Symbolics suite.
julia> a = 0:90:9julia> expr = sin(x)sin(x)julia> fn = lambdify(expr)#150 (generic function with 1 method)julia> fn.(a)10-element Vector{Float64}: 0.0 0.8414709848078965 0.9092974268256817 0.1411200080598672 -0.7568024953079282 -0.9589242746631385 -0.27941549819892586 0.6569865987187891 0.9893582466233818 0.4121184852417566
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    >>> import numpy # doctest:+SKIP
    >>> a = numpy.arange(10) # doctest:+SKIP
    >>> expr = sin(x)
    >>> f = lambdify(x, expr, "numpy") # doctest:+SKIP
    >>> f(a) # doctest:+SKIP
    [ 0.          0.84147098  0.90929743  0.14112001 -0.7568025  -0.95892427
     -0.2794155   0.6569866   0.98935825  0.41211849]lambdify uses eval.  Don't use it on unsanitized input.
You can use other libraries than NumPy. For example, to use the standard library math module, use "math".
The library option is not available though some function equivalences may be needed
julia> fn(0.1)0.09983341664682815
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    >>> f = lambdify(x, expr, "math")
    >>> f(0.1)
    0.0998334166468To use lambdify with numerical libraries that it does not know about, pass a dictionary of sympy_name:numerical_function pairs.  For example
While passing in a map of function values is supported, creating an arbitrary function is not. In Symbolics one can @register a function, this could be added.
julia> nothing
Expand for Python example
    >>> def mysin(x):
    ...     """
    ...     My sine. Note that this is only accurate for small x.
    ...     """
    ...     return x
    >>> f = lambdify(x, expr, {"sin":mysin})
    >>> f(0.1)
    0.1Write an advanced numerics section