Remarque
L’accès à cette page nécessite une autorisation. Vous pouvez essayer de vous connecter ou de modifier des répertoires.
L’accès à cette page nécessite une autorisation. Vous pouvez essayer de modifier des répertoires.
Dans les leçons précédentes, vous avez ajouté la recherche à une application web statique. Cette leçon met en évidence les étapes essentielles qui établissent l’intégration. Si vous recherchez un aide-mémoire sur l’intégration de la recherche dans votre application web, cet article explique ce que vous devez savoir.
Azure.Search.Documents du SDK Azure
L’application de fonction utilise le Kit de développement logiciel (SDK) Azure pour la Recherche Azure AI :
- NuGet : Azure.Search.Documents
- Documentation de référence : Bibliothèque de client
L’application de fonction s’authentifie via le Kit de développement logiciel (SDK) dans l’API Recherche Azure AI basée sur le cloud à l’aide du nom de votre ressource, de la clé de la ressource et du nom de l’index. Les secrets sont stockés dans les paramètres de l’application web statique et extraits dans la fonction en tant que variables d’environnement.
Configurer des secrets dans un fichier local.settings.json
{
"IsEncrypted": false,
"Values": {
"AzureWebJobsStorage": "",
"FUNCTIONS_WORKER_RUNTIME": "dotnet-isolated",
"SearchApiKey": "",
"SearchServiceName": "",
"SearchIndexName": "good-books"
},
"Host": {
"CORS": "*"
}
}
Azure Function : Rechercher dans le catalogue
L’API Recherche cognitive prend un terme de recherche et effectue la recherche parmi les documents de l’index de recherche, en retournant une liste de correspondances. Par le biais de l’API Suggest, les chaînes partielles sont envoyées au moteur de recherche en tant que types d’utilisateurs, en suggérant des termes de recherche tels que des titres de livre et des auteurs dans les documents de l’index de recherche, et en retournant une petite liste de correspondances.
Azure Functions extrait les informations de configuration de la recherche et exécute la requête.
Le générateur de suggestions de recherche, sg, est défini dans le fichier de schéma utilisé lors du chargement en bloc.
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);
}
}
}
Client : recherche dans le catalogue
Appelez la fonction Azure dans le client React à l’aide \client\src\pages\Search\Search.jsx du code suivant pour rechercher des livres.
import React, { useEffect, useState, Suspense } from 'react';
import fetchInstance from '../../url-fetch';
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;
// Handle page changes in a controlled manner
function handlePageChange(newPage) {
setCurrentPage(newPage);
}
// Calculate skip value and fetch results when relevant parameters change
useEffect(() => {
// Calculate skip based on current page
const calculatedSkip = (currentPage - 1) * top;
// Only update if skip has actually changed
if (calculatedSkip !== skip) {
setSkip(calculatedSkip);
return; // Skip the fetch since skip will change and trigger another useEffect
}
// Proceed with fetch
setIsLoading(true);
const body = {
q: q,
top: top,
skip: skip,
filters: filters
};
fetchInstance('/api/search', { body, method: 'POST' })
.then(response => {
setResults(response.results);
setFacets(response.facets);
setResultCount(response.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) => {
setQ(searchTerm);
}
// filters should be applied across entire result set,
// not just within the current page
const updateFilterHandler = (newFilters) => {
// Reset paging
setSkip(0);
setCurrentPage(1);
// Set filters
setFilters(newFilters);
};
return (
<main className="main main--search container-fluid">
<div className="row">
<div className="search-bar-column col-md-3">
<div className="search-bar-column-container">
<SearchBar postSearchHandler={postSearchHandler} query={q} width={false}></SearchBar>
</div>
<Facets facets={facets} filters={filters} setFilters={updateFilterHandler}></Facets>
</div>
<div className="search-bar-results">
{isLoading ? (
<div className="col-md-9">
<CircularProgress />
</div>
) : (
<div className="search-results-container">
<Results documents={results} top={top} skip={skip} count={resultCount} query={q}></Results>
<Pager className="pager-style" currentPage={currentPage} resultCount={resultCount} resultsPerPage={resultsPerPage} onPageChange={handlePageChange}></Pager>
</div>
)}
</div>
</div>
</main>
);
}
Client : suggestions à partir du catalogue
L’API de fonction Suggest est appelée dans l’application React à \client\src\components\SearchBar\SearchBar.jsx dans le cadre du composant d’autocomplétion de l’interface utilisateur matérielle. Ce composant utilise le texte d’entrée pour rechercher des auteurs et des livres qui correspondent au texte d’entrée, puis affiche ces correspondances possibles aux éléments sélectionnables dans la liste déroulante.
import React, { useState, useEffect } from 'react';
import { TextField, Autocomplete, Button, Box } from '@mui/material';
import fetchInstance from '../../url-fetch';
import './SearchBar.css';
export default function SearchBar({ postSearchHandler, query, width }) {
const [q, setQ] = useState(() => query || '');
const [suggestions, setSuggestions] = useState([]);
const search = (value) => {
postSearchHandler(value);
};
useEffect(() => {
if (q) {
const body = { q, top: 5, suggester: 'sg' };
fetchInstance('/api/suggest', { body, method: 'POST' })
.then(response => {
setSuggestions(response.suggestions.map(s => s.text));
})
.catch(error => {
console.log(error);
setSuggestions([]);
});
}
}, [q]);
const onInputChangeHandler = (event, value) => {
setQ(value);
};
const onChangeHandler = (event, value) => {
setQ(value);
search(value);
};
const onEnterButton = (event) => {
// if enter key is pressed
if (event.key === 'Enter') {
search(q);
}
};
return (
<div
className={width ? "search-bar search-bar-wide" : "search-bar search-bar-narrow"}
>
<Box className="search-bar-box">
<Autocomplete
className="autocomplete"
freeSolo
value={q}
options={suggestions}
onInputChange={onInputChangeHandler}
onChange={onChangeHandler}
disableClearable
renderInput={(params) => (
<TextField
{...params}
id="search-box"
className="form-control rounded-0"
placeholder="What are you looking for?"
onBlur={() => setSuggestions([])}
onClick={() => setSuggestions([])}
/>
)}
/>
<div className="search-button" >
<Button variant="contained" color="primary" onClick={() => {
search(q)
}
}>
Search
</Button>
</div>
</Box>
</div>
);
}
Azure Function : accéder à un document spécifique
L'API de recherche de document prend un ID et retourne l'objet de document depuis l'index de recherche.
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);
// Serialize data
var serializer = new JsonObjectSerializer(
new JsonSerializerOptions(JsonSerializerDefaults.Web));
await response.WriteAsJsonAsync(output, serializer);
return response;
}
}
}
Client : accéder à un document spécifique
Cette API de fonction est appelée dans l’application React à l’emplacement \client\src\pages\Details\Details.jsx dans le cadre de l’initialisation du composant :
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 Tabs from '@mui/material/Tabs';
import Tab from '@mui/material/Tab';
import Box from '@mui/material/Box';
import fetchInstance from '../../url-fetch';
import "./Details.css";
function CustomTabPanel(props) {
const { children, value, index, ...other } = props;
return (
<div
className="tab-panel"
role="tabpanel"
hidden={value !== index}
id={`simple-tabpanel-${index}`}
aria-labelledby={`simple-tab-${index}`}
{...other}
// Ensure it takes full width
>
{value === index && <Box className="tab-panel-value">{children}</Box>}
</div>
);
}
export default function BasicTabs() {
const { id } = useParams();
const [document, setDocument] = useState({});
const [value, setValue] = React.useState(0);
const [isLoading, setIsLoading] = useState(true);
useEffect(() => {
setIsLoading(true);
fetchInstance('/api/lookup', { query: { id } })
.then(response => {
console.log(JSON.stringify(response))
const doc = response.document;
setDocument(doc);
setIsLoading(false);
})
.catch(error => {
console.log(error);
setIsLoading(false);
});
}, [id]);
const handleChange = (event, newValue) => {
setValue(newValue);
};
if (isLoading || !id || Object.keys(document).length === 0) {
return (
<div className="loading-container">
<CircularProgress />
<p>Loading...</p>
</div>
);
}
return (
<Box className="details-box-parent">
<Box className="details-tab-box-header">
<Tabs value={value} onChange={handleChange} aria-label="book-details-tabs">
<Tab label="Result" />
<Tab label="Raw Data" />
</Tabs>
</Box>
<CustomTabPanel value={value} index={0} className="tab-panel box-content">
<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>
</CustomTabPanel>
<CustomTabPanel value={value} index={1} className="tab-panel">
<div className="card-body text-left card-text details-custom-tab-panel-json-div" >
<pre><code>
{JSON.stringify(document, null, 2)}
</code></pre>
</div>
</CustomTabPanel>
</Box>
);
}
Modèles C# pour soutenir l'application fonctionnelle
Les modèles suivants sont utilisés pour prendre en charge les fonctions dans cette application.
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; }
}
}
Étapes suivantes
Pour continuer à en savoir plus sur le développement Recherche Azure AI, essayez ce tutoriel suivant sur l’indexation :