# Quickstart ## How to use deglib Using deglib follows the following procedure: * Load your feature vector database : * The following example code generates a random dataset of 10,000 samples, each with 256 dimensions. * Building the graph * A query is submitted. Feature vectors similar to this query need to be found. * Using the graph to find similar feature vectors in the database The following code shows an example of how this can be implemented: ```python import numpy as np import deglib N_SAMPLES, DIMS = 10_000, 256 # generate dataset data = np.random.random((N_SAMPLES, DIMS)).astype(np.float32) # build index graph = deglib.builder.build_from_data(data) # generate query query = np.random.random(DIMS).astype(np.float32) # search query indices, distances = graph.search(query, eps=0.1, k=16) print(indices) # data[result_indices] will show the 16 closest datapoints to "query" print(distances) # numpy array with 16 distances to the results ``` The output is a NumPy array with shape (1, k) containing k indices from the dataset and a corresponding array with the distance to the query for each result. ## More Options There are far more options to build a graph and to search for results. Look at the documentation for building graphs and the search documentation.