forked from kscience/kmath
Merge remote-tracking branch 'space/dev' into dev
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/*
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* Copyright 2018-2023 KMath contributors.
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* Use of this source code is governed by the Apache 2.0 license that can be found in the license/LICENSE.txt file.
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*/
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package space.kscience.kmath.expressions
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import space.kscience.kmath.UnstableKMathAPI
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// Only kmath-core is needed.
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// Let's declare some variables
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val x by symbol
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val y by symbol
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val z by symbol
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@OptIn(UnstableKMathAPI::class)
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fun main() {
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// Let's define some random expression.
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val someExpression = Double.autodiff.differentiate {
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// We bind variables `x` and `y` to the builder scope,
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val x = bindSymbol(x)
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val y = bindSymbol(y)
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// Then we use the bindings to define expression `xy + x + y - 1`
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x * y + x + y - 1
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}
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// Then we can evaluate it at any point ((-1, -1) in the case):
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println(someExpression(mapOf(x to -1.0, y to -1.0)))
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// >>> -2.0
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// We can also construct its partial derivatives:
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val dxExpression = someExpression.derivative(x) // ∂/∂x. Must be `y+1`
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val dyExpression = someExpression.derivative(y) // ∂/∂y. Must be `x+1`
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val dxdxExpression = someExpression.derivative(x, x) // ∂^2/∂x^2. Must be `0`
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// We can evaluate them as well
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println(dxExpression(mapOf(x to 57.0, y to 6.0)))
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// >>> 7.0
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println(dyExpression(mapOf(x to -1.0, y to 179.0)))
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// >>> 0.0
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println(dxdxExpression(mapOf(x to 239.0, y to 30.0)))
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// >>> 0.0
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// You can also provide extra arguments that obviously won't affect the result:
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println(dxExpression(mapOf(x to 57.0, y to 6.0, z to 42.0)))
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// >>> 7.0
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println(dyExpression(mapOf(x to -1.0, y to 179.0, z to 0.0)))
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// >>> 0.0
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println(dxdxExpression(mapOf(x to 239.0, y to 30.0, z to 100_000.0)))
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// >>> 0.0
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// But in case you forgot to specify bound symbol's value, exception is thrown:
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println( runCatching { someExpression(mapOf(z to 4.0)) } )
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// >>> Failure(java.lang.IllegalStateException: Symbol 'x' is not supported in ...)
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// The reason is that the expression is evaluated lazily,
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// and each `bindSymbol` operation actually substitutes the provided symbol with the corresponding value.
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// For example, let there be an expression
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val simpleExpression = Double.autodiff.differentiate {
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val x = bindSymbol(x)
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x pow 2
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}
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// When you evaluate it via
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simpleExpression(mapOf(x to 1.0, y to 57.0, z to 179.0))
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// lambda above has the context of map `{x: 1.0, y: 57.0, z: 179.0}`.
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// When x is bound, you can think of it as substitution `x -> 1.0`.
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// Other values are unused which does not make any problem to us.
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// But in the case the corresponding value is not provided,
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// we cannot bind the variable. Thus, exception is thrown.
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// There is also a function `bindSymbolOrNull` that fixes the problem:
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val fixedExpression = Double.autodiff.differentiate {
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val x = bindSymbolOrNull(x) ?: const(8.0)
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x pow -2
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}
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println(fixedExpression())
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// >>> 0.015625
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// It works!
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// The expression provides a bunch of operations:
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// 1. Constant bindings (via `const` and `number`).
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// 2. Variable bindings (via `bindVariable`, `bindVariableOrNull`).
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// 3. Arithmetic operations (via `+`, `-`, `*`, and `-`).
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// 4. Exponentiation (via `pow` or `power`).
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// 5. `exp` and `ln`.
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// 6. Trigonometrical functions (`sin`, `cos`, `tan`, `cot`).
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// 7. Inverse trigonometrical functions (`asin`, `acos`, `atan`, `acot`).
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// 8. Hyperbolic functions and inverse hyperbolic functions.
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}
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