Graph
The following covers available graph configuration options.
graph
graph:
backend: graph network backend (string), defaults to "networkx"
batchsize: batch query size, used to query embeddings index (int)
defaults to 256
limit: maximum number of results to return per embeddings query (int)
defaults to 15
minscore: minimum score required to consider embeddings query matches (float)
defaults to 0.1
approximate: when true, queries only run for nodes without edges (boolean)
defaults to true
topics: see below
Enables graph storage. When set, a graph network is built using the embeddings index. Graph nodes are synced with each embeddings index operation (index/upsert/delete). Graph edges are created using the embeddings index upon completion of each index/upsert/delete embeddings index call.
Add custom graph storage engines via setting the graph.backend
parameter to the fully resolvable class string.
Defaults are tuned so that in most cases these values don’t need to be changed.
topics
topics:
algorithm: community detection algorithm (string), options are
louvain (default), greedy, lpa
level: controls number of topics (string), options are best (default) or first
resolution: controls number of topics (int), larger values create more
topics (int), defaults to 100
labels: scoring index method used to build topic labels (string)
options are bm25 (default), tfidf, sif
terms: number of frequent terms to use for topic labels (int), defaults to 4
stopwords: optional list of stop words to exclude from topic labels
categories: optional list of categories used to group topics, allows
granular topics with broad categories grouping topics
Enables topic modeling. Defaults are tuned so that in most cases these values don’t need to be changed (except for categories). These parameters are available for advanced use cases where one wants full control over the community detection process.