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合肥市人民政府官网首页_朝夕网在线制作头像_优化关键词可以选择哪个工具_哈尔滨seo推广优化

时间:2025/7/15 23:53:08来源:https://blog.csdn.net/skywalk8163/article/details/144803235 浏览次数:0次
合肥市人民政府官网首页_朝夕网在线制作头像_优化关键词可以选择哪个工具_哈尔滨seo推广优化

JupyterLab notebook环境在Ubuntu24.04下的安装,并在Windows 10下通过vscode远程使用jupyter

安装jupyter Lab

首先,创建python环境(可选)

python -m venv py312

激活环境

source py312/bin/activate

安装jupyterlab

pip install jupyterlab

启动服务

jupyter-lab --ip 0.0.0.0

启动后,会给出带token的连接jupyternotebook的链接,直接输入浏览器即可。

如果浏览器和服务器是不同的主机,主机名没有解析的话,则可能需要使用ip地址来连接,比如服务器的ip地址是:172.25.183.186

那么连接则是:

http://172.25.183.186:8888/lab
带token的则是:
http://172.25.183.186:8888/lab?token=8508e5ec00939cdc9d710c5ff215463fd0d156810f701d97

jupyter lab设置

添加多个python内核

到新的python venv环境

比如python3.10环境下,想把当前这个python3.10内核注册到jupyter里面去,

那就在python3.10环境下执行

python -m ipykernel --version
python -m ipykernel install --user --name=py310

如果没有安装ipykernel,则pip安装:

pip install ipykernel

测试

在jupyter系统内核里选择py310,发现首先python解释器工作正常。

原来的python3.12的内核飞桨和paddlex无法正常使用,所以现在只要这两者能正常使用,就证明python3.10内核注册上了。

安装padlle

python -m pip install paddlepaddle==3.0.0b2 -i https://www.paddlepaddle.org.cn/packages/stable/cpu/

安装paddlex

pip install paddlex==3.0.0b2

快速验证

paddlex --pipeline OCR --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_ocr_002.png --device cpu

验证成功

paddlex --pipeline OCR --input https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_ocr_002.png --device cpuUsing official model (PP-OCRv4_mobile_det), the model files will be be automatically downloaded and saved in /home/skywalk/.paddlex/official_models.
/home/skywalk/py310/lib/python3.10/site-packages/paddle/utils/cpp_extension/extension_utils.py:686: UserWarning: No ccache found. Please be aware that recompiling all source files may be required. You can download and install ccache from: https://github.com/ccache/ccache/blob/master/doc/INSTALL.mdwarnings.warn(warning_message)
Using official model (PP-OCRv4_mobile_rec), the model files will be be automatically downloaded and saved in /home/skywalk/.paddlex/official_models.
Connecting to https://paddle-model-ecology.bj.bcebos.com/paddlex/imgs/demo_image/general_ocr_002.png ...
Downloading general_ocr_002.png ...
[==================================================] 100.00%
{'input_path': '/home/skywalk/.paddlex/predict_input/general_ocr_002.png', 'dt_polys': [array([[ 7, 14],[51, 14],[51, 29],[ 7, 29]], dtype=int16), array([[703,  14],[823,  14],[823,  59],[703,  59]], dtype=int16), array([[159,  26],[355,  24],[355,  70],[159,  72]], dtype=int16), array([[424,  25],[657,  20],[657,  57],[424,  61]], dtype=int16), array([[343, 107],[386, 107],[386, 127],[343, 127]], dtype=int16), array([[396, 105],[457, 103],[458, 125],[397, 127]], dtype=int16), array([[489, 103],[535, 103],[535, 126],[489, 126]], dtype=int16), array([[525, 104],[648, 101],[648, 122],[525, 125]], dtype=int16), array([[677,  98],[741,  95],[742, 120],[678, 124]], dtype=int16), array([[214, 109],[318, 107],[318, 129],[214, 131]], dtype=int16), array([[753, 100],[831,  97],[832, 115],[754, 119]], dtype=int16), array([[ 64, 113],[192, 109],[192, 130],[ 64, 133]], dtype=int16), array([[233, 137],[327, 135],[327, 160],[233, 162]], dtype=int16), array([[406, 135],[431, 135],[431, 159],[406, 159]], dtype=int16), array([[509, 129],[571, 129],[571, 159],[509, 159]], dtype=int16), array([[ 84, 141],[212, 139],[212, 161],[ 84, 163]], dtype=int16), array([[344, 177],[409, 174],[410, 196],[345, 198]], dtype=int16), array([[416, 176],[469, 176],[469, 194],[416, 194]], dtype=int16), array([[491, 176],[553, 176],[553, 195],[491, 195]], dtype=int16), array([[567, 175],[614, 175],[614, 194],[567, 194]], dtype=int16), array([[679, 170],[810, 167],[810, 189],[679, 192]], dtype=int16), array([[ 67, 182],[169, 178],[169, 200],[ 67, 203]], dtype=int16), array([[ 98, 209],[170, 206],[170, 228],[ 98, 230]], dtype=int16), array([[338, 219],[475, 214],[475, 236],[338, 240]], dtype=int16), array([[508, 216],[553, 216],[553, 235],[508, 235]], dtype=int16), array([[ 92, 229],[203, 229],[203, 251],[ 92, 251]], dtype=int16), array([[345, 240],[482, 238],[482, 259],[345, 261]], dtype=int16), array([[ 68, 251],[173, 251],[173, 272],[ 68, 272]], dtype=int16), array([[ 77, 278],[265, 273],[265, 298],[ 77, 302]], dtype=int16), array([[462, 298],[578, 295],[578, 316],[462, 320]], dtype=int16), array([[102, 314],[209, 310],[210, 336],[103, 340]], dtype=int16), array([[ 69, 345],[165, 342],[165, 365],[ 69, 367]], dtype=int16), array([[346, 349],[661, 346],[661, 368],[346, 370]], dtype=int16), array([[102, 459],[348, 455],[348, 475],[102, 480]], dtype=int16), array([[338, 455],[830, 444],[830, 463],[338, 473]], dtype=int16)], 'dt_scores': [0.8086473963830697, 0.7444834845268138, 0.7048532694664938, 0.8167863148375849, 0.8527043002268895, 0.80341476706128, 0.8344790145609061, 0.8201786745449452, 0.8037534924413309, 0.8418030630545272, 0.8281395105455075, 0.8436082237135579, 0.8980652274996248, 0.8509039952363526, 0.926031375976406, 0.917996154974153, 0.8356580269317107, 0.880335328903524, 0.786900038130219, 0.8448373590419963, 0.8538021008593104, 0.8094333203814897, 0.8155846152322913, 0.8009513868620355, 0.7908997998466479, 0.9064951564646333, 0.781499426792946, 0.8041485734460104, 0.8052928610838584, 0.7971443376064804, 0.8127219713134701, 0.8772702067806731, 0.8593806578727476, 0.8892553445879527, 0.7193662265720893], 'rec_text': ['88', 'PASS', '登机牌', 'BOARDING', '舱位', 'CLASS', '序号', 'SERIAL NO.', '座位号', '日期 DATE', 'SEAT NO', '航班 FLIGHT', '03DEC', 'W', '035', 'MU2379', '始发地', 'FROM', '登机口', 'GATE', '登机时间BDT', '目的地TO', '福州', 'TAIYUAN', 'G11', 'FUZHOU', '身份识别IDNO', '姓名NAME', 'ZHANGQIWEI', '票号TKTNO', '张祺伟', '票价FARE', 'ETKT7813699238489/1', '登机口于起飞前10分钟关闭', 'GATES CLOSE 1O MINUTESBEFOREDEPARTURE TIME'], 'rec_score': [0.2818991243839264, 0.9737589359283447, 0.9956169724464417, 0.9914350509643555, 0.999286413192749, 0.9870386123657227, 0.9988601803779602, 0.9191064834594727, 0.9967336654663086, 0.9261701703071594, 0.9249376654624939, 0.9562639594078064, 0.9878450632095337, 0.9664050936698914, 0.9987359046936035, 0.9978847503662109, 0.9977880120277405, 0.9939311742782593, 0.9992539882659912, 0.9932109713554382, 0.9979119896888733, 0.9743624925613403, 0.9977253675460815, 0.9913478493690491, 0.9793536067008972, 0.9940326809883118, 0.9943745732307434, 0.9927486777305603, 0.9915329217910767, 0.9926781058311462, 0.9977713227272034, 0.9842863082885742, 0.9945623278617859, 0.9975420236587524, 0.9551531672477722]}

下面就可以开始我们的AI之旅啦!

paddlex例子:时序预测

参考:时序预测产线 - PaddleX 文档

下载文件

!wget https://paddle-model-ecology.bj.bcebos.com/paddlex/ts/demo_ts/ts_fc.csv

开始预测:

from paddlex import create_pipelinepipeline = create_pipeline(pipeline="ts_fc")output = pipeline.predict("ts_fc.csv")
for res in output:res.print() ## 打印预测的结构化输出res.save_to_csv("./output/") ## 保存csv格式结果

预测成功:

{'input_path': 'ts_fc.csv', 'forecast':                            OT
date                         
2018-06-26 20:00:00  9.586130
2018-06-26 21:00:00  9.379762
2018-06-26 22:00:00  9.252276
2018-06-26 23:00:00  9.249993
2018-06-27 00:00:00  9.164998
...                       ...
2018-06-30 15:00:00  8.830339
2018-06-30 16:00:00  9.291553
2018-06-30 17:00:00  9.097667
2018-06-30 18:00:00  8.905429
2018-06-30 19:00:00  8.993793[96 rows x 1 columns]}
The result has been saved in output/ts_fc.csv.

Windows10下的vscode使用远程Jupyter 

vscode里面使用本地jupyter很简单,安装一个jupyter插件即可。

使用远程jupyter,则需要

首先进入viscode,安装官方jupyter插件

开始配置

安装好后,按Ctrl+Shift+P,或者按F1 

然后键入:

Jupyter: Specify Jupyter Server for Connections

在出现的notebook右上角,点击kernel,选择远程kernel,

然后输入rul地址+token:

http://http://172.25.183.186/:8889/lab?token=8654db547811f9ac9240c96496e5a14195ba689ad799ef52

不过我目前还没有调通,每次输入地址都会变掉:

http://172.25.183.186:8889
变成
http://172.25.183.186/:8889

然后报错:啥啥forbidden

后来试出来了,需要输入rul地址,比如:

http://172.25.183.186:8889

然后要求输入密码的时候,输入token,然后就可以了。

但是第二次的时候,再输入token,验证就没通过。于是采用给jupyter设置密码的方法。

设置登录密码

给jupyter设置密码:

jupyter-server password
Enter password:
Verify password:
[JupyterPasswordApp] Wrote hashed password to /home/xxxx/.jupyter/jupyter_server_config.json

vscode设置

在vscode里按Ctrl+Shift+P,或者按F1 

然后键入:

Jupyter: Specify Jupyter Server for Connections

在出现的notebook右上角,点击kernel,选择远程kernel,

然后输入rul地址,比如:

http://172.25.183.186:8889

输入密码,输入刚才使用jupyter-server password 设置的密码,通过后,就可以使用远程的jupyter啦!

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