import fire from dataclasses import dataclass from kmeans_clustering import kmeans_job, kmeans_clustering_result, kmeans_grid_sweep from lsi_base import lsi_mixin, lsi_result_mixin, lsi_grid_sweep from grid_sweep import grid_sweep @dataclass class kmeans_clustering_result_lsi(kmeans_clustering_result, lsi_result_mixin): pass class kmeans_lsi_job(kmeans_job, lsi_mixin): def __init__(self, infile, outpath, name, lsi_dims, *args, **kwargs): super().__init__(infile, outpath, name, *args, **kwargs) super().set_lsi_dims(lsi_dims) def get_info(self): result = super().get_info() self.result = kmeans_clustering_result_lsi(**result.__dict__, lsi_dimensions=self.lsi_dims) return self.result class _kmeans_lsi_grid_sweep(grid_sweep): def __init__(self, inpath, outpath, lsi_dim, *args, **kwargs): print(args) print(kwargs) self.lsi_dim = lsi_dim self.jobtype = kmeans_lsi_job super().__init__(self.jobtype, inpath, outpath, self.namer, self.lsi_dim, *args, **kwargs) def namer(self, *args, **kwargs): s = kmeans_grid_sweep.namer(self, *args[1:], **kwargs) s += f"_lsi-{self.lsi_dim}" return s class kmeans_lsi_grid_sweep(lsi_grid_sweep): def __init__(self, inpath, lsi_dims, outpath, n_clusters, n_inits, max_iters ): super().__init__(kmeans_lsi_job, _kmeans_lsi_grid_sweep, inpath, lsi_dims, outpath, n_clusters, n_inits, max_iters) def run_kmeans_lsi_grid_sweep(savefile, inpath, outpath, n_clusters=[500], n_inits=[1], max_iters=[3000], lsi_dimensions="all"): """Run kmeans clustering once or more with different parameters. Usage: kmeans_clustering_lsi.py --savefile=SAVEFILE --inpath=INPATH --outpath=OUTPATH d--lsi_dimensions=<"all"|csv number of LSI dimensions to use> --n_clusters= --n_inits= --max_iters= Keword arguments: savefile: path to save the metadata and diagnostics inpath: path to folder containing feather files with LSI similarity labeled matrices of subreddit similarities. outpath: path to output fit kmeans clusterings. lsi_dimensions: either "all" or one or more available lsi similarity dimensions at INPATH. n_clusters: one or more numbers of kmeans clusters to select. n_inits: one or more numbers of different initializations to use for each clustering. max_iters: one or more numbers of different maximum interations. """ obj = kmeans_lsi_grid_sweep(inpath, lsi_dimensions, outpath, list(map(int,n_clusters)), list(map(int,n_inits)), list(map(int,max_iters)) ) obj.run(1) obj.save(savefile) if __name__ == "__main__": fire.Fire(run_kmeans_lsi_grid_sweep)