【git】WARNING: connection is not using a post-quantum key exchange algorithm.

【git】WARNING: connection is not using a post-quantum key exchange algorithm.

问题:

推送代码提示下面信息:

16:22:54.422: [C:\git\yang-teambition] git -c credential.helper= -c core.quotepath=false -c log.showSignature=false push --progress --porcelain origin refs/heads/dev_tianzhi:dev_tianzhi ** WARNING: connection is not using a post-quantum key exchange algorithm. ** This session may be vulnerable to "store now, decrypt later" attacks. ** The server may need to be upgraded. See https://openssh.com/pq.html Enumerating objects: 59, done. Counting objects: 1% (1/59) Counting objects: 3% (2/59) Counting objects: 5% (3/59) Counting objects: 6% (4/59) Counting objects: 8% (5/59) Counting objects: 10% (6/59) Counting objects: 11% (7/59) Counting objects: 13% (8/59) Counting objects: 15% (9/59) Counting objects: 16% (10/59) Counting objects: 18% (11/59) Counting objects: 20% (12/59) Counting objects: 22% (13/59) Counting objects: 23% (14/59) Counting objects: 25% (15/59) Counting objects: 27% (16/59) Counting objects: 28% (17/59) Counting objects: 30% (18/59) Counting objects: 32% (19/59) Counting objects: 33% (20/59) Counting objects: 35% (21/59) Counting objects: 37% (22/59) Counting objects: 38% (23/59) Counting objects: 40% (24/59) Counting objects: 42% (25/59) Counting objects: 44% (26/59) Counting objects: 45% (27/59) Counting objects: 47% (28/59) Counting objects: 49% (29/59) Counting objects: 50% (30/59) Counting objects: 52% (31/59) Counting objects: 54% (32/59) Counting objects: 55% (33/59) Counting objects: 57% (34/59) Counting objects: 59% (35/59) Counting objects: 61% (36/59) Counting objects: 62% (37/59) Counting objects: 64% (38/59) Counting objects: 66% (39/59) Counting objects: 67% (40/59) Counting objects: 69% (41/59) Counting objects: 71% (42/59) Counting objects: 72% (43/59) Counting objects: 74% (44/59) Counting objects: 76% (45/59) Counting objects: 77% (46/59) Counting objects: 79% (47/59) Counting objects: 81% (48/59) Counting objects: 83% (49/59) Counting objects: 84% (50/59) Counting objects: 86% (51/59) Counting objects: 88% (52/59) Counting objects: 89% (53/59) Counting objects: 91% (54/59) Counting objects: 93% (55/59) Counting objects: 94% (56/59) Counting objects: 96% (57/59) Counting objects: 98% (58/59) Counting objects: 100% (59/59) Counting objects: 100% (59/59), done. Delta compression using up to 20 threads Compressing objects: 3% (1/27) Compressing objects: 7% (2/27) Compressing objects: 11% (3/27) Compressing objects: 14% (4/27) Compressing objects: 18% (5/27) Compressing objects: 22% (6/27) Compressing objects: 25% (7/27) Compressing objects: 29% (8/27) Compressing objects: 33% (9/27) Compressing objects: 37% (10/27) Compressing objects: 40% (11/27) Compressing objects: 44% (12/27) Compressing objects: 48% (13/27) Compressing objects: 51% (14/27) Compressing objects: 55% (15/27) Compressing objects: 59% (16/27) Compressing objects: 62% (17/27) Compressing objects: 66% (18/27) Compressing objects: 70% (19/27) Compressing objects: 74% (20/27) Compressing objects: 77% (21/27) Compressing objects: 81% (22/27) Compressing objects: 85% (23/27) Compressing objects: 88% (24/27) Compressing objects: 92% (25/27) Compressing objects: 96% (26/27) Compressing objects: 100% (27/27) Compressing objects: 100% (27/27), done. Writing objects: 2% (1/37) Writing objects: 5% (2/37) Writing objects: 8% (3/37) Writing objects: 10% (4/37) Writing objects: 13% (5/37) Writing objects: 16% (6/37) Writing objects: 18% (7/37) Writing objects: 21% (8/37) Writing objects: 24% (9/37) Writing objects: 27% (10/37) Writing objects: 29% (11/37) Writing objects: 32% (12/37) Writing objects: 35% (13/37) Writing objects: 37% (14/37) Writing objects: 40% (15/37) Writing objects: 43% (16/37) Writing objects: 45% (17/37) Writing objects: 51% (19/37) Writing objects: 54% (20/37) Writing objects: 56% (21/37) Writing objects: 59% (22/37) Writing objects: 62% (23/37) Writing objects: 64% (24/37) Writing objects: 67% (25/37) Writing objects: 70% (26/37) Writing objects: 72% (27/37) Writing objects: 75% (28/37) Writing objects: 78% (29/37) Writing objects: 81% (30/37) Writing objects: 83% (31/37) Writing objects: 86% (32/37) Writing objects: 89% (33/37) Writing objects: 91% (34/37) Writing objects: 94% (35/37) Writing objects: 97% (36/37) Writing objects: 100% (37/37) Writing objects: 100% (37/37), 3.62 KiB | 463.00 KiB/s, done. Total 37 (delta 18), reused 0 (delta 0), pack-reused 0 (from 0) Read from remote host gitlab.xxx.com: Connection reset by peer client_loop: send disconnect: Connection reset by peer send-pack: unexpected disconnect while reading sideband packet fatal: the remote end hung up unexpectedly 

这是 Git 在推送代码到远程仓库时,连接被远端强制断开Connection reset by peer)导致的失败。常见原因和解决方式如下:


✅ 可能原因与对应处理

原因说明解决方式
1. 大文件或提交过多你这次推送了 37 个对象,虽然不算特别大,但如果包含大文件(如 PDF、图片、jar 包),容易触发 GitLab 的限制。检查是否有大文件被提交:
`git rev-list --objects --all
grep -E '.(pdf|jar|zip|png|jpg)'<br>如有,用 git filter-repoBFG` 清理历史。
2. 网络不稳定 / VPN 中断你公司 GitLab 地址是 gitlab.hezhihulian.com,可能是内网或 VPN 环境,连接中断。重试几次:
git push origin dev_tianzhi
或换网络 / 换 SSH 端口。
3. GitLab 服务器限制服务端配置了超时或最大包大小限制(如 Nginx、GitLab 本身的 git timeout)。联系运维确认 GitLab 日志 /var/log/gitlab/gitlab-workhorse/current 是否报错。
4. SSH 密钥或权限问题虽然报错不是权限拒绝,但某些 GitLab 版本在权限异常时会直接断连。确认你有 dev_tianzhi 分支的推送权限,且 SSH key 已正确配置。

你可以立即尝试的排查/修复步骤

检查是否有大文件

git ls-tree -r -l dev_tianzhi | sort -k4 -n | tail -10

使用 HTTPS 推送测试(排除 SSH 问题):

git remote set-url origin https://gitlab.yang.com/xxx/xxx.git git push origin dev_tianzhi

减小包大小(分批推送): 如果你本地有多个提交,可以尝试分批次推送:

git rebase -i HEAD~10 # 把多个提交合并成1~2个 git push origin dev_tianzhi

重试推送(最简单):

git push origin dev_tianzhi



Read more

Fast-GitHub:国内开发者必备的GitHub下载加速终极方案

还在为GitHub龟速下载而烦恼吗?每次面对几十KB/s的下载进度条,你是否也曾感到绝望?Fast-GitHub正是为国内开发者量身打造的智能加速神器,通过轻量级浏览器插件彻底解决GitHub访问难题。 【免费下载链接】Fast-GitHub国内Github下载很慢,用上了这个插件后,下载速度嗖嗖嗖的~! 项目地址: https://gitcode.com/gh_mirrors/fa/Fast-GitHub 🎯 真实用户故事:从卡顿到流畅的转变 想象一下这样的场景:项目deadline迫在眉睫,团队急需从GitHub拉取关键依赖包,但git clone命令却像被施了定身咒般一动不动。或者当你终于找到一个心仪的开源项目,下载速度却慢如蜗牛——这些痛点正是Fast-GitHub要彻底解决的。 小明的开发日常:作为一名前端开发者,小明每天都需要从GitHub下载各种npm包和项目模板。在安装Fast-GitHub之前,他经常需要等待数小时才能完成一个中等大小项目的下载。而现在,同样的项目只需要几分钟就能搞定。 🔧 技术原理解密:智能路由如何实现加速 Fast-GitHub

By Ne0inhk

Chaterm — 开源SRE副驾驶,让你与服务器直接对话!

Chaterm 是一款开源AI智能终端和SSH客户端。Chaterm旨在解决大规模云环境下服务器批量化操作、故障排查复杂和安全管控困难等痛点。它将 AI Agent能力嵌入终端,通过打造“对话式终端管理工具”,帮助服务端开发者、DEVOPS工程师、云计算从业人士实现云资源的智能化和规模化管理。 图说:Chaterm的核心能力包括:命令语法高亮,关键词高亮,智能命令补全,零信任安全连接,Agent智能智能代理,移动端语音输入控制,MCP功能,Agent Skills等 AI 智能助手:让运维更简单:Chaterm不仅提供 AI 对话和终端命令执行功能,更具备基于 Agent 的 AI 自动化能力,可以通过自然语言设定目标,由 AI 自动规划,并一步一步执行,最终达成需要完成的任务。 1. 智能命令生成:说出你的需求,AI 自动生成对应的 Shell 命令 2. 上下文理解:AI

By Ne0inhk
【已开源】【嵌入式 Linux 音视频+ AI 实战项目】瑞芯微 Rockchip 系列 RK3588-基于深度学习的人脸门禁+ IPC 智能安防监控系统

【已开源】【嵌入式 Linux 音视频+ AI 实战项目】瑞芯微 Rockchip 系列 RK3588-基于深度学习的人脸门禁+ IPC 智能安防监控系统

前言 本文主要介绍我最近开发的一个个人实战项目,“基于深度学习的人脸门禁+ IPC 智能安防监控系统”,全程满帧流畅运行。这个项目我目前全网搜了一圈,还没发现有相关类型的开源项目。这个项目只要稍微改进下,就可以变成市面上目前流行的三款产品,人脸识别门禁系统、IPC 安防和 NVR。在最下面会有视频演示。 本项目适用于瑞芯微 Rockchip 系列的板端,开源链接在文章最下面。 功能 人脸门禁系统 * 人靠近自动亮屏,人走自动息屏 * 支持人脸识别 * 支持录入人脸,并进行人脸配对(极速配对 < 0.2S) IPC 智能安防监控系统 * 支持通过 onvif 实时查看摄像头画面 * 支持实时目标检测(支持高达80种物体检测) * 支持录像 * 支持检测到人时自动录像 * 支持检测到人时自动报警 用到的硬件 * 野火鲁班猫4 RK3588S2 * IMX415 800W 4k 摄像头 * RTL8822CE Wifi+BT

By Ne0inhk
1.5k stars!阿里开源 PageAgent:让 AI 直接“住进“你的网页,用自然语言操控一切!

1.5k stars!阿里开源 PageAgent:让 AI 直接“住进“你的网页,用自然语言操控一切!

阿里开源 PageAgent:让 AI 直接"住进"你的网页,用自然语言操控一切 不需要浏览器插件,不需要 Python,不需要截图——一行 JS,让你的网页秒变 AI 智能体。 一、先说痛点:Web 自动化为什么这么难? 如果你用过 Selenium、Playwright,或者最近流行的 browser-use,你一定遇到过这些头疼的问题: * 环境太重:得装 Python、headless 浏览器、各种依赖,部署复杂,维护成本高; * 依赖截图 + OCR:很多方案靠多模态模型"看图操作",慢、贵、还不准; * 权限门槛高:要控制浏览器,往往需要特殊权限甚至操作系统级别的访问; * 对现有产品改造成本大:

By Ne0inhk