robotframework / RIDE

Test data editor for Robot Framework
Apache License 2.0
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ide will crash when data is too big #1964

Closed Tangle39 closed 4 years ago

Tangle39 commented 5 years ago

to send a post request to do interface test: {"request": {"c": "", "m": "", "p": {"session": "eyJmcm9tIjoiQiIsInNyY19pZCI6MSwibWFuYWdlcl9pZCI6ODAsImNvbXBhbnlfaWQiOjgwLCJ1c2VyX2lkIjo3NCwiZXhwaXJlIjoxNTYyNTY1NTc4LCJzaWduYXR1cmUiOiI5ZWQ2OWFiYzI3NmJkNWE5NzUwZTAyMjU1NDg1OWY3OGMyMzQ5NzBiIiwidXNlcl90eXBlIjoxfQ==", "data": ""}}}

Tangle39 commented 5 years ago

data is base64 encoded of an excel file, and it is maybe too big? (very long)

HelioGuilherme66 commented 5 years ago

@entangle1993 You need to show a screenshot of the cell in editor, or describe your steps before the crash.

Tangle39 commented 5 years ago

@HelioGuilherme66 image and data is as writte in the picture

HelioGuilherme66 commented 5 years ago

I could not reproduce with this configuration: Linux Fedora Core 30 64bit with Gnome Python 3.7.3 wxPython 4.0.6 RIDE 1.7.4a1 (installed with python3 -m pip install --user -U --pre robotframework-ride==1.7.4a1 ) @entangle1993 Please post here Operating System, Python, wxPython and RIDE versions.

Tangle39 commented 5 years ago

windows 10 (10.0.17134.590) python 3.7.3 wxpyhon 4.0.6 RIDE 1.7.3.1(pip install robotframework、pip install robotframework-ride)😄

Nyral commented 5 years ago

Can you share the entire test file? Also, when exactly does the crash occur? Is it when you start the test or when you edit the cell or ... ?

Tangle39 commented 4 years ago

Can you share the entire test file? Also, when exactly does the crash occur? Is it when you start the test or when you edit the cell or ... ?

i send the email. The crash occur when i edit the cell

Tangle39 commented 4 years ago

Can you share the entire test file? Also, when exactly does the crash occur? Is it when you start the test or when you edit the cell or ... ?

批量导入 create session api https://bot.testing2.ifchange.com/api ${req_url} Set Variable /dhr_manager/staffs/import ${data} Set Variable {"request": {"c": "", "m": "", "p": {"session": "${session}", "data": "${data}"}}} #data为excel转码的字符串,数据过大,输入会闪退,采用了变量的形式 ${response} Post Request api ${req_url} data=${data} Should Be Equal As Strings ${response.status_code} 200 ${result} Set Variable ${response.text} ${result_json} To json ${response.text} pretty_print=True Should Contain ${result} "err_no":0

and now i use scalar, avoiding the crash . ${data} value: 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Tangle39 commented 4 years ago

批量导入 create session api https://bot.testing2.ifchange.com/api ${req_url} Set Variable /dhr_manager/staffs/import ${data} Set Variable {"request": {"c": "", "m": "", "p": {"session": "${session}", "data": "${data}"}}} #data为excel转码的字符串,数据过大,输入会闪退,采用了变量的形式 ${response} Post Request api ${req_url} data=${data} Should Be Equal As Strings ${response.status_code} 200 ${result} Set Variable ${response.text} ${result_json} To json ${response.text} pretty_print=True Should Contain ${result} "err_no":0

and now i use scalar, avoiding the crash . ${data} value: 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------------------ 原始邮件 ------------------ 发件人: "Nyral"notifications@github.com; 发送时间: 2019年7月8日(星期一) 凌晨4:08 收件人: "robotframework/RIDE"RIDE@noreply.github.com; 抄送: "楽園"137413469@qq.com; "Mention"mention@noreply.github.com; 主题: Re: [robotframework/RIDE] ide will crash when data is too big (#1964)

Can you share the entire test file?

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Nyral commented 4 years ago

Any app will crash if you enter too much text in a single field. Using variables to store large text is the correct approach.