TextClustering¶
Task that clusters a set of texts and generates summary labels for each cluster.
This is a GlobalTask
that inherits from TextClassification
, this means that all
the attributes from that class are available here. Also, in this case we deal
with all the inputs at once, instead of using batches. The input_batch_size
is
used here to send the examples to the LLM in batches (a subtle difference with the
more common Task
definitions).
The task looks in each cluster for a given number of representative examples (the number
is set by the samples_per_cluster
attribute), and sends them to the LLM to get a label/s
that represent the cluster. The labels are then assigned to each text in the cluster.
The clusters and projections used in the step, are assumed to be obtained from the UMAP
+ DBSCAN
steps, but could be generated for similar steps, as long as they represent the
same concepts.
This step runs a pipeline like the one in this repository:
https://github.com/huggingface/text-clustering
Attributes¶
- savefig: Whether to generate and save a figure with the clustering of the texts. - samples_per_cluster: The number of examples to use in the LLM as a sample of the cluster.
Input & Output Columns¶
graph TD
subgraph Dataset
subgraph Columns
ICOL0[text]
ICOL1[projection]
ICOL2[cluster_label]
end
subgraph New columns
OCOL0[summary_label]
OCOL1[model_name]
end
end
subgraph TextClustering
StepInput[Input Columns: text, projection, cluster_label]
StepOutput[Output Columns: summary_label, model_name]
end
ICOL0 --> StepInput
ICOL1 --> StepInput
ICOL2 --> StepInput
StepOutput --> OCOL0
StepOutput --> OCOL1
StepInput --> StepOutput
Inputs¶
-
text (
str
): The reference text we want to obtain labels for. -
projection (
List[float]
): Vector representation of the text to cluster, normally the output from theUMAP
step. -
cluster_label (
int
): Integer representing the label of a given cluster. -1 means it wasn't clustered.
Outputs¶
-
summary_label (
str
): The label or list of labels for the text. -
model_name (
str
): The name of the model used to generate the label/s.
Examples¶
Generate labels for a set of texts using clustering¶
from distilabel.llms import InferenceEndpointsLLM
from distilabel.steps import UMAP, DBSCAN, TextClustering
from distilabel.pipeline import Pipeline
ds_name = "argilla-warehouse/personahub-fineweb-edu-4-clustering-100k"
with Pipeline(name="Text clustering dataset") as pipeline:
batch_size = 500
ds = load_dataset(ds_name, split="train").select(range(10000))
loader = make_generator_step(ds, batch_size=batch_size, repo_id=ds_name)
umap = UMAP(n_components=2, metric="cosine")
dbscan = DBSCAN(eps=0.3, min_samples=30)
text_clustering = TextClustering(
llm=InferenceEndpointsLLM(
model_id="meta-llama/Meta-Llama-3.1-70B-Instruct",
tokenizer_id="meta-llama/Meta-Llama-3.1-70B-Instruct",
),
n=3, # 3 labels per example
query_title="Examples of Personas",
samples_per_cluster=10,
context=(
"Describe the main themes, topics, or categories that could describe the "
"following types of personas. All the examples of personas must share "
"the same set of labels."
),
default_label="None",
savefig=True,
input_batch_size=8,
input_mappings={"text": "persona"},
use_default_structured_output=True,
)
loader >> umap >> dbscan >> text_clustering