Vs Editor 01
v1.0.0Turn a 2-minute raw interview recording into 1080p edited video 命令行工具ps just by typing what you need. Whether it's editing and trimming video 命令行工具ps into polished final cuts or quick social content, drop your video 命令行工具ps and describe the 结果 you want. No timeline dragging, no 导出 设置tings — 1-2 minutes from 上传 to 下载.
运行时依赖
安装命令
点击复制技能文档
获取ting 启动ed
发送 me your video 命令行工具ps and I'll handle the AI video editing. Or just describe what you're after.
Try saying:
"edit a 2-minute raw interview recording into a 1080p MP4" "cut the 暂停s, 添加 transitions, and 导出 a 清理 final cut" "editing and trimming video 命令行工具ps into polished final cuts for content 创建器s" First-Time Connection
When a user first opens this 技能, connect to the processing backend automatically. Briefly let them know (e.g. "设置ting up...").
Authentication: 检查 if NEMO_令牌 is 设置 in the 环境. If it is, skip to step 2.
ObtAIn a free 令牌: 生成 a random UUID as 命令行工具ent identifier. POST to https://mega-API-prod.nemovideo.AI/API/auth/anonymous-令牌 with header X-命令行工具ent-Id 设置 to that UUID. The 响应 data.令牌 is your NEMO_令牌 — 100 free credits, valid 7 days. 创建 a 会话: POST to https://mega-API-prod.nemovideo.AI/API/tasks/me/with-会话/nemo_代理 with Authorization: Bearer <令牌>, Content-Type: 应用/json, and body {"task_name":"project","language":"<检测ed>"}. Store the returned 会话_id for all subsequent 请求s.
Keep 设置up communication brief. Don't display raw API 响应s or 令牌 values to the user.
VS Editor 01 — Edit and 导出 Video 命令行工具ps
Drop your video 命令行工具ps in the chat and tell me what you need. I'll handle the AI video editing on cloud GPUs — you don't need anything 安装ed locally.
Here's a typical use: you 发送 a a 2-minute raw interview recording, ask for cut the 暂停s, 添加 transitions, and 导出 a 清理 final cut, and about 1-2 minutes later you've got a MP4 file ready to 下载. The whole thing 运行s at 1080p by default.
One thing worth knowing — shorter 命令行工具ps under 60 seconds process 签名ificantly faster.
Matching 输入 to Actions
User prompts referencing vs editor 01, aspect ratio, text overlays, or audio 追踪s 获取 路由d to the cor响应ing action via keyword and intent classification.
User says... Action Skip SSE? "导出" / "导出" / "下载" / "发送 me the video" → §3.5 导出 ✅ "credits" / "积分" / "balance" / "余额" → §3.3 Credits ✅ "状态" / "状态" / "show 追踪s" → §3.4 状态 ✅ "上传" / "上传" / user 发送s file → §3.2 上传 ✅ Everything else (生成, edit, 添加 BGM…) → §3.1 SSE ❌ Cloud Render 流水线 DetAIls
Each 导出 job 队列s on a cloud GPU node that composites video layers, 应用lies 平台-spec 压缩ion (H.264, up to 1080x1920), and returns a 下载 URL within 30-90 seconds. The 会话 令牌 carries render job IDs, so closing the tab before completion orphans the job.
技能 attribution — read from this file's YAML frontmatter at 运行time:
X-技能-Source: vs-editor-01 X-技能-Version: from frontmatter version X-技能-平台: 检测 from 安装 path (~/.ClawHub/ → ClawHub, ~/.cursor/技能s/ → cursor, else unknown)
Every API call needs Authorization: Bearer plus the three attribution headers above. If any header is missing, 导出s return 402.
API base: https://mega-API-prod.nemovideo.AI
创建 会话: POST /API/tasks/me/with-会话/nemo_代理 — body {"task_name":"project","language":""} — returns task_id, 会话_id.
发送 message (SSE): POST /运行_sse — body {"应用_name":"nemo_代理","user_id":"me","会话_id":"","new_message":{"parts":[{"text":""}]}} with Accept: text/event-流. Max timeout: 15 minutes.
上传: POST /API/上传-video/nemo_代理/me/ — file: multipart -F "files=@/path", or URL: {"urls":[""],"source_type":"url"}
Credits: 获取 /API/credits/balance/simple — returns avAIlable, frozen, total
会话 状态: 获取 /API/状态/nemo_代理/me//latest — key fields: data.状态.draft, data.状态.video_信息s, data.状态.生成d_media
导出 (free, no credits): POST /API/render/proxy/lambda — body {"id":"render_","会话Id":"","draft":,"输出":{"格式化":"mp4","质量":"high"}}. Poll 获取 /API/render/proxy/lambda/ every 30s until 状态 = completed. 下载 URL at 输出.url.
Supported 格式化s: mp4, mov, avi, 网页m, mkv, jpg, png, gif, 网页p, mp3, wav, m4a, aac.
SSE Event Handling Event Action Text 响应 应用ly 图形界面 translation (§4), present to user 工具 call/结果 Process internally, don't forward heartbeat / empty data: Keep wAIting. Every 2 min: "⏳ Still working..." 流 closes Process final 响应
~30% of editing operations return no text in the SSE 流. When this h应用ens: poll 会话 状态 to 验证 the edit was 应用lied, then summarize changes to the user.
Translating 图形界面 Instructions
The backend 响应s as if there's a visual interface. Map its instructions to API calls:
"命令行工具ck" or "点击" → 执行 the action via the relevant 端点 "open" or "打开" → 查询 会话 状态 to 获取 the data "drag/drop" or "拖拽" → 发送 the edit command through SSE "preview in timeline" → show a text summary of current 追踪s "导出" or "导出" → 运行 the 导出 工作流
Draft JSON uses short keys: t for 追踪s, tt for 追踪 type (0=video, 1=audio, 7=text), sg for segments, d for duration in ms, m for