国产av日韩一区二区三区精品,成人性爱视频在线观看,国产,欧美,日韩,一区,www.成色av久久成人,2222eeee成人天堂

Home Backend Development Python Tutorial Python Baidu Translation API implements Danish translation

Python Baidu Translation API implements Danish translation

Aug 06, 2023 pm 01:25 PM
python Baidu translation api danish

Python Baidu Translation API implements Danish translation

Overview:
With the development of globalization, communication between languages ??has become more and more important. In order to meet the translation needs between different languages, many Internet companies provide a series of translation interfaces. Baidu Translation API is one of them, which provides a simple and easy-to-use interface that can easily realize translation interaction in multiple languages. This article will introduce how to use Python Baidu Translation API to implement Danish translation, and attach corresponding code examples.

Environment configuration:
Before using Baidu Translation API, we need to perform some necessary environment configuration. First, we need to register and create an application on Baidu Developer Platform to obtain an API key. Secondly, we need to install the Python module requests through which we can send HTTP requests and receive responses. You can install the requests module through the following command:

pip install requests

Code example:
The following is a code example that uses the Python Baidu Translation API to implement Danish translation:

import requests
import hashlib
import random
import json

def translate(text, from_lang, to_lang):
    appid = 'your_appid'  # 替換為自己的appid
    secret_key = 'your_secret_key'  # 替換為自己的secret_key

    api_url = 'http://api.fanyi.baidu.com/api/trans/vip/translate'

    # 生成隨機(jī)的salt值
    salt = random.randint(32768, 65536)

    # 計算簽名
    sign_str = appid + text + str(salt) + secret_key
    sign = hashlib.md5(sign_str.encode()).hexdigest()

    # 發(fā)送HTTP請求
    params = {
        'q': text,
        'from': from_lang,
        'to': to_lang,
        'appid': appid,
        'salt': salt,
        'sign': sign
    }
    response = requests.get(api_url, params=params)
    result = json.loads(response.text)

    # 解析翻譯結(jié)果
    translated_text = result['trans_result'][0]['dst']

    return translated_text

# 調(diào)用翻譯函數(shù)
text = 'Hello, world!'
translated_text = translate(text, 'auto', 'da')
print('翻譯前:', text)
print('翻譯后:', translated_text)

Explanation:
Next, let us give some explanations to the above code.

Lines 9 and 10 need to replace your_appid and your_secret_key respectively with the appid and secret_key you obtained when registering the application on Baidu Developer Platform.

Line 14 generates a random salt value by calling the random.randint() method, with the value range being [32768, 65536).

Line 17 calculates the signature. The signature algorithm requires appid text salt secret_key to be spliced ??into a string in order, and then MD5 calculation is performed on the string to obtain the signature .

Line 20 sends an HTTP request through the requests.get() method and parses the returned response into JSON format.

Line 23 extracts the translated text from the translation results.

Finally, call the translate() function on line 27, and pass in the text to be translated, the source language and the target language as parameters for translation. Then output the original text and translation on lines 29 and 30.

Summary:
This article introduces how to use Python Baidu Translation API to implement Danish translation. By using Baidu Translation API, we can easily implement translation functions between multiple languages ??and facilitate language communication. Everyone can make corresponding adjustments and expansions according to their own needs to achieve more interesting functions.

The above is the detailed content of Python Baidu Translation API implements Danish translation. For more information, please follow other related articles on the PHP Chinese website!

Statement of this Website
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn

Hot AI Tools

Undress AI Tool

Undress AI Tool

Undress images for free

Undresser.AI Undress

Undresser.AI Undress

AI-powered app for creating realistic nude photos

AI Clothes Remover

AI Clothes Remover

Online AI tool for removing clothes from photos.

Clothoff.io

Clothoff.io

AI clothes remover

Video Face Swap

Video Face Swap

Swap faces in any video effortlessly with our completely free AI face swap tool!

Hot Tools

Notepad++7.3.1

Notepad++7.3.1

Easy-to-use and free code editor

SublimeText3 Chinese version

SublimeText3 Chinese version

Chinese version, very easy to use

Zend Studio 13.0.1

Zend Studio 13.0.1

Powerful PHP integrated development environment

Dreamweaver CS6

Dreamweaver CS6

Visual web development tools

SublimeText3 Mac version

SublimeText3 Mac version

God-level code editing software (SublimeText3)

Hot Topics

PHP Tutorial
1502
276
PHP calls AI intelligent voice assistant PHP voice interaction system construction PHP calls AI intelligent voice assistant PHP voice interaction system construction Jul 25, 2025 pm 08:45 PM

User voice input is captured and sent to the PHP backend through the MediaRecorder API of the front-end JavaScript; 2. PHP saves the audio as a temporary file and calls STTAPI (such as Google or Baidu voice recognition) to convert it into text; 3. PHP sends the text to an AI service (such as OpenAIGPT) to obtain intelligent reply; 4. PHP then calls TTSAPI (such as Baidu or Google voice synthesis) to convert the reply to a voice file; 5. PHP streams the voice file back to the front-end to play, completing interaction. The entire process is dominated by PHP to ensure seamless connection between all links.

How to use PHP combined with AI to achieve text error correction PHP syntax detection and optimization How to use PHP combined with AI to achieve text error correction PHP syntax detection and optimization Jul 25, 2025 pm 08:57 PM

To realize text error correction and syntax optimization with AI, you need to follow the following steps: 1. Select a suitable AI model or API, such as Baidu, Tencent API or open source NLP library; 2. Call the API through PHP's curl or Guzzle and process the return results; 3. Display error correction information in the application and allow users to choose whether to adopt it; 4. Use php-l and PHP_CodeSniffer for syntax detection and code optimization; 5. Continuously collect feedback and update the model or rules to improve the effect. When choosing AIAPI, focus on evaluating accuracy, response speed, price and support for PHP. Code optimization should follow PSR specifications, use cache reasonably, avoid circular queries, review code regularly, and use X

python seaborn jointplot example python seaborn jointplot example Jul 26, 2025 am 08:11 AM

Use Seaborn's jointplot to quickly visualize the relationship and distribution between two variables; 2. The basic scatter plot is implemented by sns.jointplot(data=tips,x="total_bill",y="tip",kind="scatter"), the center is a scatter plot, and the histogram is displayed on the upper and lower and right sides; 3. Add regression lines and density information to a kind="reg", and combine marginal_kws to set the edge plot style; 4. When the data volume is large, it is recommended to use "hex"

PHP integrated AI emotional computing technology PHP user feedback intelligent analysis PHP integrated AI emotional computing technology PHP user feedback intelligent analysis Jul 25, 2025 pm 06:54 PM

To integrate AI sentiment computing technology into PHP applications, the core is to use cloud services AIAPI (such as Google, AWS, and Azure) for sentiment analysis, send text through HTTP requests and parse returned JSON results, and store emotional data into the database, thereby realizing automated processing and data insights of user feedback. The specific steps include: 1. Select a suitable AI sentiment analysis API, considering accuracy, cost, language support and integration complexity; 2. Use Guzzle or curl to send requests, store sentiment scores, labels, and intensity information; 3. Build a visual dashboard to support priority sorting, trend analysis, product iteration direction and user segmentation; 4. Respond to technical challenges, such as API call restrictions and numbers

python list to string conversion example python list to string conversion example Jul 26, 2025 am 08:00 AM

String lists can be merged with join() method, such as ''.join(words) to get "HelloworldfromPython"; 2. Number lists must be converted to strings with map(str, numbers) or [str(x)forxinnumbers] before joining; 3. Any type list can be directly converted to strings with brackets and quotes, suitable for debugging; 4. Custom formats can be implemented by generator expressions combined with join(), such as '|'.join(f"[{item}]"foriteminitems) output"[a]|[

Optimizing Python for Memory-Bound Operations Optimizing Python for Memory-Bound Operations Jul 28, 2025 am 03:22 AM

Pythoncanbeoptimizedformemory-boundoperationsbyreducingoverheadthroughgenerators,efficientdatastructures,andmanagingobjectlifetimes.First,usegeneratorsinsteadofliststoprocesslargedatasetsoneitematatime,avoidingloadingeverythingintomemory.Second,choos

python connect to sql server pyodbc example python connect to sql server pyodbc example Jul 30, 2025 am 02:53 AM

Install pyodbc: Use the pipinstallpyodbc command to install the library; 2. Connect SQLServer: Use the connection string containing DRIVER, SERVER, DATABASE, UID/PWD or Trusted_Connection through the pyodbc.connect() method, and support SQL authentication or Windows authentication respectively; 3. Check the installed driver: Run pyodbc.drivers() and filter the driver name containing 'SQLServer' to ensure that the correct driver name is used such as 'ODBCDriver17 for SQLServer'; 4. Key parameters of the connection string

python pandas melt example python pandas melt example Jul 27, 2025 am 02:48 AM

pandas.melt() is used to convert wide format data into long format. The answer is to define new column names by specifying id_vars retain the identification column, value_vars select the column to be melted, var_name and value_name, 1.id_vars='Name' means that the Name column remains unchanged, 2.value_vars=['Math','English','Science'] specifies the column to be melted, 3.var_name='Subject' sets the new column name of the original column name, 4.value_name='Score' sets the new column name of the original value, and finally generates three columns including Name, Subject and Score.

See all articles