# Getting Started # Installation PySR uses both Julia and Python, so you need to have both installed. Install Julia - see [downloads](https://julialang.org/downloads/), and then instructions for [mac](https://julialang.org/downloads/platform/#macos) and [linux](https://julialang.org/downloads/platform/#linux_and_freebsd). (Don't use the `conda-forge` version; it doesn't seem to work properly.) You can install PySR with: ```bash pip3 install pysr python3 -c 'import pysr; pysr.install()' ``` The second line will install and update the required Julia packages, including `PyCall.jl`. Most common issues at this stage are solved by [tweaking the Julia package server](https://github.com/MilesCranmer/PySR/issues/27). to use up-to-date packages. ## Quickstart Let's create a PySR example. First, let's import numpy to generate some test data: ```python import numpy as np X = 2 * np.random.randn(100, 5) y = 2.5382 * np.cos(X[:, 3]) + X[:, 0] ** 2 - 0.5 ``` We have created a dataset with 100 datapoints, with 5 features each. The relation we wish to model is $2.5382 \cos(x_3) + x_0^2 - 0.5$. Now, let's create a PySR model and train it. PySR's main interface is in the style of scikit-learn: ```python from pysr import PySRRegressor model = PySRRegressor( niterations=5, populations=8, binary_operators=["+", "*"], unary_operators=[ "cos", "exp", "sin", ], model_selection="best", ) ``` This will set up the model for 5 iterations of the search code, which contains hundreds of thousands of mutations and equation evaluations. Let's train this model on our dataset: ```python model.fit(X, y) ``` Internally, this launches a Julia process which will do a multithreaded search for equations to fit the dataset. Equations will be printed during training, and once you are satisfied, you may quit early by hitting 'q' and then \. After the model has been fit, you can run `model.predict(X)` to see the predictions on a given dataset. You may run: ```python print(model) ``` to print the learned equations: ```python PySRRegressor.equations = [ pick score Equation MSE Complexity 0 0.000000 3.5082064 2.710828e+01 1 1 0.964260 (x0 * x0) 3.940544e+00 3 2 0.030096 (-0.47978288 + (x0 * x0)) 3.710349e+00 5 3 0.840770 ((x0 * x0) + cos(x3)) 1.600564e+00 6 4 0.928380 ((x0 * x0) + (2.5313091 * cos(x3))) 2.499724e-01 8 5 >>>> 13.956461 ((-0.49999997 + (x0 * x0)) + (2.5382001 * cos(... 1.885665e-13 10 ] ``` This arrow in the `pick` column indicates which equation is currently selected by your `model_selection` strategy for prediction. (You may change `model_selection` after `.fit(X, y)` as well.) `model.equations` is a pandas DataFrame containing all equations, including callable format (`lambda_format`), SymPy format (`sympy_format`), and even JAX and PyTorch format (both of which are differentiable). There are several other useful features such as denoising (e.g., `denoising=True`), feature selection (e.g., `select_k_features=3`). For a summary of features and options, see [this docs page](https://pysr.readthedocs.io/en/latest/docs/options/). You can see the full API at [this page](https://pysr.readthedocs.io/en/latest/docs/api-documentation/). # Docker You can also test out PySR in Docker, without installing it locally, by running the following command in the root directory of this repo: ```bash docker build --pull --rm -f "Dockerfile" -t pysr "." ``` This builds an image called `pysr`. You can then run this with: ```bash docker run -it --rm -v "$PWD:/data" pysr ipython ``` which will link the current directory to the container's `/data` directory and then launch ipython.