| as_director | Create a custom director |
| as_measure | Create a custom metric |
| as_partitioner | Create a partitioner |
| as_partition_step | Create a partition object from a data frame |
| as_reducer | Create a custom reducer |
| baxter_clinical | Microbiome data |
| baxter_data | Microbiome data |
| baxter_data_dictionary | Microbiome data |
| baxter_family | Microbiome data |
| baxter_genus | Microbiome data |
| baxter_otu | Microbiome data |
| corr | Efficiently fit correlation coefficient for matrix or two vectors |
| direct_distance | Target based on minimum distance matrix |
| direct_distance_pearson | Target based on minimum distance matrix |
| direct_distance_spearman | Target based on minimum distance matrix |
| direct_k_cluster | Target based on K-means clustering |
| filter_reduced | Filter the reduced mappings |
| fitted.partition | Return the reduced data from a partition |
| icc | Calculate the intraclass correlation coefficient |
| is_partition | Is this object a partition? |
| is_partitioner | Is this object a partitioner? |
| is_partition_step | Is this object a 'partition_step'? |
| mapping_groups | Return partition mapping key |
| mapping_key | Return partition mapping key |
| map_cluster | Reduce a target |
| map_partition | Map a partition across a range of minimum information |
| measure_icc | Measure the information loss of reduction using intraclass correlation coefficient |
| measure_min_icc | Measure the information loss of reduction using the minimum intraclass correlation coefficient |
| measure_min_r2 | Measure the information loss of reduction using minimum R-squared |
| measure_std_mutualinfo | Measure the information loss of reduction using standardized mutual information |
| measure_variance_explained | Measure the information loss of reduction using the variance explained. |
| mutual_information | Calculate the standardized mutual information of a data set |
| partition | Agglomerative partitioning |
| partition_scores | Return the reduced data from a partition |
| part_icc | Partitioner: distance, ICC, scaled means |
| part_kmeans | Partitioner: K-means, ICC, scaled means |
| part_minr2 | Partitioner: distance, minimum R-squared, scaled means |
| part_pc1 | Partitioner: distance, first principal component, scaled means |
| part_stdmi | Partitioner: distance, mutual information, scaled means |
| permute_df | Permute a data set |
| plot_area_clusters | Plot partitions |
| plot_information | Plot partitions |
| plot_ncluster | Plot partitions |
| plot_permutation | Plot permutation tests |
| plot_stacked_area_clusters | Plot partitions |
| reduce_cluster | Reduce a target |
| reduce_first_component | Reduce selected variables to first principal component |
| reduce_kmeans | Reduce selected variables to scaled means |
| reduce_scaled_mean | Reduce selected variables to scaled means |
| replace_partitioner | Replace the director, metric, or reducer for a partitioner |
| scaled_mean | Average and scale rows in a 'data.frame' |
| simulate_block_data | Simulate correlated blocks of variables |
| super_partition | super_partition |
| test_permutation | Permute partitions |
| unnest_mappings | Return partition mapping key |
| unnest_reduced | Filter the reduced mappings |