Paso 4: Exploración del código de búsqueda de .NET
En las lecciones anteriores, agregó la búsqueda a una aplicación web estática. En esta lección se resaltan los pasos esenciales que establecen la integración. Si busca una hoja de referencia rápida sobre cómo integrar la funcionalidad de búsqueda en su aplicación web, en este artículo se explica lo que debe saber.
Azure SDK Azure.Search.Documents
La aplicación de funciones usa el SDK de Azure AI Search:
- NuGet: Azure.Search.Documents
- Documentación de referencia: Biblioteca cliente
La aplicación de funciones se autentica a través del SDK en la API de Azure AI Search basada en la nube mediante el nombre del recurso, la clave de recurso y el nombre del índice. Los secretos se almacenan en la configuración estática de la aplicación web y se extraen a la función como variables de entorno.
Configuración de secretos en un archivo local.settings.jsen
{
"IsEncrypted": false,
"Values": {
"AzureWebJobsStorage": "",
"FUNCTIONS_WORKER_RUNTIME": "dotnet-isolated",
"SearchApiKey": "",
"SearchServiceName": "",
"SearchIndexName": "good-books"
},
"Host": {
"CORS": "*"
}
}
Azure Function: búsqueda en el catálogo
La API de búsqueda toma un término de búsqueda y busca en los documentos del índice de búsqueda, y devuelve una lista de coincidencias.
La función de Azure extrae la información de configuración de búsqueda y cumple la consulta.
using Azure;
using Azure.Core.Serialization;
using Azure.Search.Documents;
using Azure.Search.Documents.Models;
using Microsoft.Azure.Functions.Worker;
using Microsoft.Azure.Functions.Worker.Http;
using Microsoft.Extensions.Logging;
using System.Net;
using System.Text.Json;
using System.Text.Json.Serialization;
using WebSearch.Models;
using SearchFilter = WebSearch.Models.SearchFilter;
namespace WebSearch.Function
{
public class Search
{
private static string searchApiKey = Environment.GetEnvironmentVariable("SearchApiKey", EnvironmentVariableTarget.Process);
private static string searchServiceName = Environment.GetEnvironmentVariable("SearchServiceName", EnvironmentVariableTarget.Process);
private static string searchIndexName = Environment.GetEnvironmentVariable("SearchIndexName", EnvironmentVariableTarget.Process) ?? "good-books";
private readonly ILogger<Lookup> _logger;
public Search(ILogger<Lookup> logger)
{
_logger = logger;
}
[Function("search")]
public async Task<HttpResponseData> RunAsync(
[HttpTrigger(AuthorizationLevel.Anonymous, "post")] HttpRequestData req,
FunctionContext executionContext)
{
string requestBody = await new StreamReader(req.Body).ReadToEndAsync();
var data = JsonSerializer.Deserialize<RequestBodySearch>(requestBody);
// Azure AI Search
Uri serviceEndpoint = new($"https://{searchServiceName}.search.windows.net/");
SearchClient searchClient = new(
serviceEndpoint,
searchIndexName,
new AzureKeyCredential(searchApiKey)
);
SearchOptions options = new()
{
Size = data.Size,
Skip = data.Skip,
IncludeTotalCount = true,
Filter = CreateFilterExpression(data.Filters)
};
options.Facets.Add("authors");
options.Facets.Add("language_code");
SearchResults<SearchDocument> searchResults = searchClient.Search<SearchDocument>(data.SearchText, options);
var facetOutput = new Dictionary<string, IList<FacetValue>>();
foreach (var facetResult in searchResults.Facets)
{
facetOutput[facetResult.Key] = facetResult.Value
.Select(x => new FacetValue { value = x.Value.ToString(), count = x.Count })
.ToList();
}
// Data to return
var output = new SearchOutput
{
Count = searchResults.TotalCount,
Results = searchResults.GetResults().ToList(),
Facets = facetOutput
};
var response = req.CreateResponse(HttpStatusCode.Found);
// Serialize data
var serializer = new JsonObjectSerializer(
new JsonSerializerOptions(JsonSerializerDefaults.Web));
await response.WriteAsJsonAsync(output, serializer);
return response;
}
public static string CreateFilterExpression(List<SearchFilter> filters)
{
if (filters is null or { Count: <= 0 })
{
return null;
}
List<string> filterExpressions = new();
List<SearchFilter> authorFilters = filters.Where(f => f.field == "authors").ToList();
List<SearchFilter> languageFilters = filters.Where(f => f.field == "language_code").ToList();
List<string> authorFilterValues = authorFilters.Select(f => f.value).ToList();
if (authorFilterValues.Count > 0)
{
string filterStr = string.Join(",", authorFilterValues);
filterExpressions.Add($"{"authors"}/any(t: search.in(t, '{filterStr}', ','))");
}
List<string> languageFilterValues = languageFilters.Select(f => f.value).ToList();
foreach (var value in languageFilterValues)
{
filterExpressions.Add($"language_code eq '{value}'");
}
return string.Join(" and ", filterExpressions);
}
}
}
Cliente: búsqueda en el catálogo
Llame a la función de Azure en el cliente de React con el código siguiente.
import React, { useEffect, useState } from 'react';
import axios from 'axios';
import CircularProgress from '@mui/material/CircularProgress';
import { useLocation, useNavigate } from "react-router-dom";
import Results from '../../components/Results/Results';
import Pager from '../../components/Pager/Pager';
import Facets from '../../components/Facets/Facets';
import SearchBar from '../../components/SearchBar/SearchBar';
import "./Search.css";
export default function Search() {
let location = useLocation();
const navigate = useNavigate();
const [ results, setResults ] = useState([]);
const [ resultCount, setResultCount ] = useState(0);
const [ currentPage, setCurrentPage ] = useState(1);
const [ q, setQ ] = useState(new URLSearchParams(location.search).get('q') ?? "*");
const [ top ] = useState(new URLSearchParams(location.search).get('top') ?? 8);
const [ skip, setSkip ] = useState(new URLSearchParams(location.search).get('skip') ?? 0);
const [ filters, setFilters ] = useState([]);
const [ facets, setFacets ] = useState({});
const [ isLoading, setIsLoading ] = useState(true);
let resultsPerPage = top;
useEffect(() => {
setIsLoading(true);
setSkip((currentPage-1) * top);
const body = {
q: q,
top: top,
skip: skip,
filters: filters
};
axios.post( '/api/search', body)
.then(response => {
console.log(JSON.stringify(response.data))
setResults(response.data.results);
setFacets(response.data.facets);
setResultCount(response.data.count);
setIsLoading(false);
} )
.catch(error => {
console.log(error);
setIsLoading(false);
});
}, [q, top, skip, filters, currentPage]);
// pushing the new search term to history when q is updated
// allows the back button to work as expected when coming back from the details page
useEffect(() => {
navigate('/search?q=' + q);
setCurrentPage(1);
setFilters([]);
// eslint-disable-next-line react-hooks/exhaustive-deps
}, [q]);
let postSearchHandler = (searchTerm) => {
//console.log(searchTerm);
setQ(searchTerm);
}
var body;
if (isLoading) {
body = (
<div className="col-md-9">
<CircularProgress />
</div>);
} else {
body = (
<div className="col-md-9">
<Results documents={results} top={top} skip={skip} count={resultCount}></Results>
<Pager className="pager-style" currentPage={currentPage} resultCount={resultCount} resultsPerPage={resultsPerPage} setCurrentPage={setCurrentPage}></Pager>
</div>
)
}
return (
<main className="main main--search container-fluid">
<div className="row">
<div className="col-md-3">
<div className="search-bar">
<SearchBar postSearchHandler={postSearchHandler} q={q}></SearchBar>
</div>
<Facets facets={facets} filters={filters} setFilters={setFilters}></Facets>
</div>
{body}
</div>
</main>
);
}
Azure Function: sugerencias del catálogo
La API de sugerencias toma un término de búsqueda mientras un usuario está escribiendo y sugiere términos de búsqueda como títulos de libros y autores en los documentos en el índice de búsqueda, y devuelve una pequeña lista de coincidencias.
El proveedor de sugerencias de búsqueda, sg
, se define en el archivo de esquema usado durante la carga masiva.
using Azure;
using Azure.Core.Serialization;
using Azure.Search.Documents;
using Azure.Search.Documents.Models;
using Microsoft.Azure.Functions.Worker;
using Microsoft.Azure.Functions.Worker.Http;
using Microsoft.Extensions.Logging;
using System.Net;
using System.Text.Json;
using WebSearch.Models;
namespace WebSearch.Function
{
public class Suggest
{
private static string searchApiKey = Environment.GetEnvironmentVariable("SearchApiKey", EnvironmentVariableTarget.Process);
private static string searchServiceName = Environment.GetEnvironmentVariable("SearchServiceName", EnvironmentVariableTarget.Process);
private static string searchIndexName = Environment.GetEnvironmentVariable("SearchIndexName", EnvironmentVariableTarget.Process) ?? "good-books";
private readonly ILogger<Lookup> _logger;
public Suggest(ILogger<Lookup> logger)
{
_logger = logger;
}
[Function("suggest")]
public async Task<HttpResponseData> RunAsync(
[HttpTrigger(AuthorizationLevel.Anonymous, "post")] HttpRequestData req,
FunctionContext executionContext)
{
// Get Document Id
string requestBody = await new StreamReader(req.Body).ReadToEndAsync();
var data = JsonSerializer.Deserialize<RequestBodySuggest>(requestBody);
// Azure AI Search
Uri serviceEndpoint = new($"https://{searchServiceName}.search.windows.net/");
SearchClient searchClient = new(
serviceEndpoint,
searchIndexName,
new AzureKeyCredential(searchApiKey)
);
SuggestOptions options = new()
{
Size = data.Size
};
var suggesterResponse = await searchClient.SuggestAsync<BookModel>(data.SearchText, data.SuggesterName, options);
// Data to return
var searchSuggestions = new Dictionary<string, List<SearchSuggestion<BookModel>>>
{
["suggestions"] = suggesterResponse.Value.Results.ToList()
};
var response = req.CreateResponse(HttpStatusCode.Found);
// Serialize data
var serializer = new JsonObjectSerializer(
new JsonSerializerOptions(JsonSerializerDefaults.Web));
await response.WriteAsJsonAsync(searchSuggestions, serializer);
return response;
}
}
}
Cliente: sugerencias del catálogo
Se llama a la función de Suggest API en la aplicación React en \client\src\components\SearchBar\SearchBar.js
como parte de la inicialización de componentes:
import React, {useState, useEffect} from 'react';
import axios from 'axios';
import Suggestions from './Suggestions/Suggestions';
import "./SearchBar.css";
export default function SearchBar(props) {
let [q, setQ] = useState("");
let [suggestions, setSuggestions] = useState([]);
let [showSuggestions, setShowSuggestions] = useState(false);
const onSearchHandler = () => {
props.postSearchHandler(q);
setShowSuggestions(false);
}
const suggestionClickHandler = (s) => {
document.getElementById("search-box").value = s;
setShowSuggestions(false);
props.postSearchHandler(s);
}
const onEnterButton = (event) => {
if (event.keyCode === 13) {
onSearchHandler();
}
}
const onChangeHandler = () => {
var searchTerm = document.getElementById("search-box").value;
setShowSuggestions(true);
setQ(searchTerm);
// use this prop if you want to make the search more reactive
if (props.searchChangeHandler) {
props.searchChangeHandler(searchTerm);
}
}
useEffect(_ =>{
const timer = setTimeout(() => {
const body = {
q: q,
top: 5,
suggester: 'sg'
};
if (q === '') {
setSuggestions([]);
} else {
axios.post( '/api/suggest', body)
.then(response => {
console.log(JSON.stringify(response.data))
setSuggestions(response.data.suggestions);
} )
.catch(error => {
console.log(error);
setSuggestions([]);
});
}
}, 300);
return () => clearTimeout(timer);
}, [q, props]);
var suggestionDiv;
if (showSuggestions) {
suggestionDiv = (<Suggestions suggestions={suggestions} suggestionClickHandler={(s) => suggestionClickHandler(s)}></Suggestions>);
} else {
suggestionDiv = (<div></div>);
}
return (
<div >
<div className="input-group" onKeyDown={e => onEnterButton(e)}>
<div className="suggestions" >
<input
autoComplete="off" // setting for browsers; not the app
type="text"
id="search-box"
className="form-control rounded-0"
placeholder="What are you looking for?"
onChange={onChangeHandler}
defaultValue={props.q}
onBlur={() => setShowSuggestions(false)}
onClick={() => setShowSuggestions(true)}>
</input>
{suggestionDiv}
</div>
<div className="input-group-btn">
<button className="btn btn-primary rounded-0" type="submit" onClick={onSearchHandler}>
Search
</button>
</div>
</div>
</div>
);
};
Función de Azure: obtención de un documento específico
LaAPI de búsqueda de documentos toma un identificador y devuelve el objeto de documento del índice de búsqueda.
using Azure;
using Azure.Core.Serialization;
using Azure.Search.Documents;
using Azure.Search.Documents.Models;
using Microsoft.Azure.Functions.Worker;
using Microsoft.Azure.Functions.Worker.Http;
using Microsoft.Extensions.Logging;
using System.Net;
using System.Text.Json;
using WebSearch.Models;
namespace WebSearch.Function
{
public class Lookup
{
private static string searchApiKey = Environment.GetEnvironmentVariable("SearchApiKey", EnvironmentVariableTarget.Process);
private static string searchServiceName = Environment.GetEnvironmentVariable("SearchServiceName", EnvironmentVariableTarget.Process);
private static string searchIndexName = Environment.GetEnvironmentVariable("SearchIndexName", EnvironmentVariableTarget.Process) ?? "good-books";
private readonly ILogger<Lookup> _logger;
public Lookup(ILogger<Lookup> logger)
{
_logger = logger;
}
[Function("lookup")]
public async Task<HttpResponseData> RunAsync(
[HttpTrigger(AuthorizationLevel.Anonymous, "get", "post")] HttpRequestData req,
FunctionContext executionContext)
{
// Get Document Id
var query = System.Web.HttpUtility.ParseQueryString(req.Url.Query);
string documentId = query["id"].ToString();
// Azure AI Search
Uri serviceEndpoint = new($"https://{searchServiceName}.search.windows.net/");
SearchClient searchClient = new(
serviceEndpoint,
searchIndexName,
new AzureKeyCredential(searchApiKey)
);
var getDocumentResponse = await searchClient.GetDocumentAsync<SearchDocument>(documentId);
// Data to return
var output = new LookupOutput
{
Document = getDocumentResponse.Value
};
var response = req.CreateResponse(HttpStatusCode.Found);
response.Headers.Add("Content-Type", "application/json; charset=utf-8");
// Serialize data
var serializer = new JsonObjectSerializer(
new JsonSerializerOptions(JsonSerializerDefaults.Web));
await response.WriteAsJsonAsync(output, serializer);
return response;
}
}
}
Cliente: obtención de un documento específico
Se llama a esta API de función en la aplicación React en \client\src\pages\Details\Detail.js
como parte de la inicialización de componentes:
import React, { useState, useEffect } from "react";
import { useParams } from 'react-router-dom';
import Rating from '@mui/material/Rating';
import CircularProgress from '@mui/material/CircularProgress';
import axios from 'axios';
import "./Details.css";
export default function Details() {
let { id } = useParams();
const [document, setDocument] = useState({});
const [selectedTab, setTab] = useState(0);
const [isLoading, setIsLoading] = useState(true);
useEffect(() => {
setIsLoading(true);
// console.log(id);
axios.get('/api/lookup?id=' + id)
.then(response => {
console.log(JSON.stringify(response.data))
const doc = response.data.document;
setDocument(doc);
setIsLoading(false);
})
.catch(error => {
console.log(error);
setIsLoading(false);
});
}, [id]);
// View default is loading with no active tab
let detailsBody = (<CircularProgress />),
resultStyle = "nav-link",
rawStyle = "nav-link";
if (!isLoading && document) {
// View result
if (selectedTab === 0) {
resultStyle += " active";
detailsBody = (
<div className="card-body">
<h5 className="card-title">{document.original_title}</h5>
<img className="image" src={document.image_url} alt="Book cover"></img>
<p className="card-text">{document.authors?.join('; ')} - {document.original_publication_year}</p>
<p className="card-text">ISBN {document.isbn}</p>
<Rating name="half-rating-read" value={parseInt(document.average_rating)} precision={0.1} readOnly></Rating>
<p className="card-text">{document.ratings_count} Ratings</p>
</div>
);
}
// View raw data
else {
rawStyle += " active";
detailsBody = (
<div className="card-body text-left">
<pre><code>
{JSON.stringify(document, null, 2)}
</code></pre>
</div>
);
}
}
return (
<main className="main main--details container fluid">
<div className="card text-center result-container">
<div className="card-header">
<ul className="nav nav-tabs card-header-tabs">
<li className="nav-item"><button className={resultStyle} onClick={() => setTab(0)}>Result</button></li>
<li className="nav-item"><button className={rawStyle} onClick={() => setTab(1)}>Raw Data</button></li>
</ul>
</div>
{detailsBody}
</div>
</main>
);
}
Modelos de C# para admitir la aplicación de funciones
Los modelos siguientes se usan para dar cabida a las funciones de esta aplicación.
using Azure.Search.Documents.Models;
using System.Text.Json.Serialization;
namespace WebSearch.Models
{
public class RequestBodyLookUp
{
[JsonPropertyName("id")]
public string Id { get; set; }
}
public class RequestBodySuggest
{
[JsonPropertyName("q")]
public string SearchText { get; set; }
[JsonPropertyName("top")]
public int Size { get; set; }
[JsonPropertyName("suggester")]
public string SuggesterName { get; set; }
}
public class RequestBodySearch
{
[JsonPropertyName("q")]
public string SearchText { get; set; }
[JsonPropertyName("skip")]
public int Skip { get; set; }
[JsonPropertyName("top")]
public int Size { get; set; }
[JsonPropertyName("filters")]
public List<SearchFilter> Filters { get; set; }
}
public class SearchFilter
{
public string field { get; set; }
public string value { get; set; }
}
public class FacetValue
{
public string value { get; set; }
public long? count { get; set; }
}
class SearchOutput
{
[JsonPropertyName("count")]
public long? Count { get; set; }
[JsonPropertyName("results")]
public List<SearchResult<SearchDocument>> Results { get; set; }
[JsonPropertyName("facets")]
public Dictionary<String, IList<FacetValue>> Facets { get; set; }
}
class LookupOutput
{
[JsonPropertyName("document")]
public SearchDocument Document { get; set; }
}
public class BookModel
{
public string id { get; set; }
public decimal? goodreads_book_id { get; set; }
public decimal? best_book_id { get; set; }
public decimal? work_id { get; set; }
public decimal? books_count { get; set; }
public string isbn { get; set; }
public string isbn13 { get; set; }
public string[] authors { get; set; }
public decimal? original_publication_year { get; set; }
public string original_title { get; set; }
public string title { get; set; }
public string language_code { get; set; }
public double? average_rating { get; set; }
public decimal? ratings_count { get; set; }
public decimal? work_ratings_count { get; set; }
public decimal? work_text_reviews_count { get; set; }
public decimal? ratings_1 { get; set; }
public decimal? ratings_2 { get; set; }
public decimal? ratings_3 { get; set; }
public decimal? ratings_4 { get; set; }
public decimal? ratings_5 { get; set; }
public string image_url { get; set; }
public string small_image_url { get; set; }
}
}
Pasos siguientes
Para seguir aprendiendo más sobre el desarrollo de Azure AI Search, pruebe este siguiente tutorial sobre la indexación: