videodb
Video and audio perception, indexing, and editing. Ingest files/URLs/live streams, build visual/spoken indexes, search with timestamps, edit timelines, add overlays/subtitles, generate media, and create real-time alerts.
Best use case
videodb is best used when you need a repeatable AI agent workflow instead of a one-off prompt.
Video and audio perception, indexing, and editing. Ingest files/URLs/live streams, build visual/spoken indexes, search with timestamps, edit timelines, add overlays/subtitles, generate media, and create real-time alerts.
Teams using videodb should expect a more consistent output, faster repeated execution, less prompt rewriting.
When to use this skill
- You want a reusable workflow that can be run more than once with consistent structure.
When not to use this skill
- You only need a quick one-off answer and do not need a reusable workflow.
- You cannot install or maintain the underlying files, dependencies, or repository context.
Installation
Claude Code / Cursor / Codex
Manual Installation
- Download SKILL.md from GitHub
- Place it in
.claude/skills/videodb/SKILL.mdinside your project - Restart your AI agent — it will auto-discover the skill
How videodb Compares
| Feature / Agent | videodb | Standard Approach |
|---|---|---|
| Platform Support | Not specified | Limited / Varies |
| Context Awareness | High | Baseline |
| Installation Complexity | Unknown | N/A |
Frequently Asked Questions
What does this skill do?
Video and audio perception, indexing, and editing. Ingest files/URLs/live streams, build visual/spoken indexes, search with timestamps, edit timelines, add overlays/subtitles, generate media, and create real-time alerts.
Where can I find the source code?
You can find the source code on GitHub using the link provided at the top of the page.
SKILL.md Source
# VideoDB Skill
**Perception + memory + actions for video, live streams, and desktop sessions.**
Use this skill when you need to:
## When to Use
- You need video or audio perception, indexing, search, or timeline editing from files, URLs, desktop sessions, or live streams.
- The task involves timestamps, searchable evidence, subtitles, clips, overlays, or real-time monitoring alerts.
- You want one workflow that combines ingestion, understanding, retrieval, and media actions.
## 1) Desktop Perception
- Start/stop a **desktop session** capturing **screen, mic, and system audio**
- Stream **live context** and store **episodic session memory**
- Run **real-time alerts/triggers** on what's spoken and what's happening on screen
- Produce **session summaries**, a searchable timeline, and **playable evidence links**
## 2) Video ingest + stream
- Ingest a **file or URL** and return a **playable web stream link**
- Transcode/normalize: **codec, bitrate, fps, resolution, aspect ratio**
## 3) Index + search (timestamps + evidence)
- Build **visual**, **spoken**, and **keyword** indexes
- Search and return exact moments with **timestamps** and **playable evidence**
- Auto-create **clips** from search results
## 4) Timeline editing + generation
- Subtitles: **generate**, **translate**, **burn-in**
- Overlays: **text/image/branding**, motion captions
- Audio: **background music**, **voiceover**, **dubbing**
- Programmatic composition and exports via **timeline operations**
## 5) Live streams (RTSP) + monitoring
- Connect **RTSP/live feeds**
- Run **real-time visual and spoken understanding** and emit **events/alerts** for monitoring workflows
---
## Common inputs
- Local **file path**, public **URL**, or **RTSP URL**
- Desktop capture request: **start / stop / summarize session**
- Desired operations: get context for understanding, transcode spec, index spec, search query, clip ranges, timeline edits, alert rules
## Common outputs
- **Stream URL**
- Search results with **timestamps** and **evidence links**
- Generated assets: subtitles, audio, images, clips
- **Event/alert payloads** for live streams
- Desktop **session summaries** and memory entries
---
## Canonical prompts (examples)
- "Start desktop capture and alert when a password field appears."
- "Record my session and produce an actionable summary when it ends."
- "Ingest this file and return a playable stream link."
- "Index this folder and find every scene with people, return timestamps."
- "Generate subtitles, burn them in, and add light background music."
- "Connect this RTSP URL and alert when a person enters the zone."
## Running Python code
Before running any VideoDB code, change to the project directory and load environment variables:
```python
from dotenv import load_dotenv
load_dotenv(".env")
import videodb
conn = videodb.connect()
```
This reads `VIDEO_DB_API_KEY` from:
1. Environment (if already exported)
2. Project's `.env` file in current directory
If the key is missing, `videodb.connect()` raises `AuthenticationError` automatically.
Do NOT write a script file when a short inline command works.
When writing inline Python (`python -c "..."`), always use properly formatted code — use semicolons to separate statements and keep it readable. For anything longer than ~3 statements, use a heredoc instead:
```bash
python << 'EOF'
from dotenv import load_dotenv
load_dotenv(".env")
import videodb
conn = videodb.connect()
coll = conn.get_collection()
print(f"Videos: {len(coll.get_videos())}")
EOF
```
## Setup
When the user asks to "setup videodb" or similar:
### 1. Install SDK
```bash
pip install "videodb[capture]" python-dotenv
```
If `videodb[capture]` fails on Linux, install without the capture extra:
```bash
pip install videodb python-dotenv
```
### 2. Configure API key
The user must set `VIDEO_DB_API_KEY` using **either** method:
- **Export in terminal** (before starting Claude): `export VIDEO_DB_API_KEY=your-key`
- **Project `.env` file**: Save `VIDEO_DB_API_KEY=your-key` in the project's `.env` file
Get a free API key at https://console.videodb.io (50 free uploads, no credit card).
**Do NOT** read, write, or handle the API key yourself. Always let the user set it.
## Quick Reference
### Upload media
```python
# URL
video = coll.upload(url="https://example.com/video.mp4")
# YouTube
video = coll.upload(url="https://www.youtube.com/watch?v=VIDEO_ID")
# Local file
video = coll.upload(file_path="/path/to/video.mp4")
```
### Transcript + subtitle
```python
# force=True skips the error if the video is already indexed
video.index_spoken_words(force=True)
text = video.get_transcript_text()
stream_url = video.add_subtitle()
```
### Search inside videos
```python
from videodb.exceptions import InvalidRequestError
video.index_spoken_words(force=True)
# search() raises InvalidRequestError when no results are found.
# Always wrap in try/except and treat "No results found" as empty.
try:
results = video.search("product demo")
shots = results.get_shots()
stream_url = results.compile()
except InvalidRequestError as e:
if "No results found" in str(e):
shots = []
else:
raise
```
### Scene search
```python
import re
from videodb import SearchType, IndexType, SceneExtractionType
from videodb.exceptions import InvalidRequestError
# index_scenes() has no force parameter — it raises an error if a scene
# index already exists. Extract the existing index ID from the error.
try:
scene_index_id = video.index_scenes(
extraction_type=SceneExtractionType.shot_based,
prompt="Describe the visual content in this scene.",
)
except Exception as e:
match = re.search(r"id\s+([a-f0-9]+)", str(e))
if match:
scene_index_id = match.group(1)
else:
raise
# Use score_threshold to filter low-relevance noise (recommended: 0.3+)
try:
results = video.search(
query="person writing on a whiteboard",
search_type=SearchType.semantic,
index_type=IndexType.scene,
scene_index_id=scene_index_id,
score_threshold=0.3,
)
shots = results.get_shots()
stream_url = results.compile()
except InvalidRequestError as e:
if "No results found" in str(e):
shots = []
else:
raise
```
### Timeline editing
**Important:** Always validate timestamps before building a timeline:
- `start` must be >= 0 (negative values are silently accepted but produce broken output)
- `start` must be < `end`
- `end` must be <= `video.length`
```python
from videodb.timeline import Timeline
from videodb.asset import VideoAsset, TextAsset, TextStyle
timeline = Timeline(conn)
timeline.add_inline(VideoAsset(asset_id=video.id, start=10, end=30))
timeline.add_overlay(0, TextAsset(text="The End", duration=3, style=TextStyle(fontsize=36)))
stream_url = timeline.generate_stream()
```
### Transcode video (resolution / quality change)
```python
from videodb import TranscodeMode, VideoConfig, AudioConfig
# Change resolution, quality, or aspect ratio server-side
job_id = conn.transcode(
source="https://example.com/video.mp4",
callback_url="https://example.com/webhook",
mode=TranscodeMode.economy,
video_config=VideoConfig(resolution=720, quality=23, aspect_ratio="16:9"),
audio_config=AudioConfig(mute=False),
)
```
### Reframe aspect ratio (for social platforms)
**Warning:** `reframe()` is a slow server-side operation. For long videos it can take
several minutes and may time out. Best practices:
- Always limit to a short segment using `start`/`end` when possible
- For full-length videos, use `callback_url` for async processing
- Trim the video on a `Timeline` first, then reframe the shorter result
```python
from videodb import ReframeMode
# Always prefer reframing a short segment:
reframed = video.reframe(start=0, end=60, target="vertical", mode=ReframeMode.smart)
# Async reframe for full-length videos (returns None, result via webhook):
video.reframe(target="vertical", callback_url="https://example.com/webhook")
# Presets: "vertical" (9:16), "square" (1:1), "landscape" (16:9)
reframed = video.reframe(start=0, end=60, target="square")
# Custom dimensions
reframed = video.reframe(start=0, end=60, target={"width": 1280, "height": 720})
```
### Generative media
```python
image = coll.generate_image(
prompt="a sunset over mountains",
aspect_ratio="16:9",
)
```
## Error handling
```python
from videodb.exceptions import AuthenticationError, InvalidRequestError
try:
conn = videodb.connect()
except AuthenticationError:
print("Check your VIDEO_DB_API_KEY")
try:
video = coll.upload(url="https://example.com/video.mp4")
except InvalidRequestError as e:
print(f"Upload failed: {e}")
```
### Common pitfalls
| Scenario | Error message | Solution |
|----------|--------------|----------|
| Indexing an already-indexed video | `Spoken word index for video already exists` | Use `video.index_spoken_words(force=True)` to skip if already indexed |
| Scene index already exists | `Scene index with id XXXX already exists` | Extract the existing `scene_index_id` from the error with `re.search(r"id\s+([a-f0-9]+)", str(e))` |
| Search finds no matches | `InvalidRequestError: No results found` | Catch the exception and treat as empty results (`shots = []`) |
| Reframe times out | Blocks indefinitely on long videos | Use `start`/`end` to limit segment, or pass `callback_url` for async |
| Negative timestamps on Timeline | Silently produces broken stream | Always validate `start >= 0` before creating `VideoAsset` |
| `generate_video()` / `create_collection()` fails | `Operation not allowed` or `maximum limit` | Plan-gated features — inform the user about plan limits |
## Additional docs
Reference documentation is in the `reference/` directory adjacent to this SKILL.md file. Use the Glob tool to locate it if needed.
- [reference/api-reference.md](reference/api-reference.md) - Complete VideoDB Python SDK API reference
- [reference/search.md](reference/search.md) - In-depth guide to video search (spoken word and scene-based)
- [reference/editor.md](reference/editor.md) - Timeline editing, assets, and composition
- [reference/streaming.md](reference/streaming.md) - HLS streaming and instant playback
- [reference/generative.md](reference/generative.md) - AI-powered media generation (images, video, audio)
- [reference/rtstream.md](reference/rtstream.md) - Live stream ingestion workflow (RTSP/RTMP)
- [reference/rtstream-reference.md](reference/rtstream-reference.md) - RTStream SDK methods and AI pipelines
- [reference/capture.md](reference/capture.md) - Desktop capture workflow
- [reference/capture-reference.md](reference/capture-reference.md) - Capture SDK and WebSocket events
- [reference/use-cases.md](reference/use-cases.md) - Common video processing patterns and examples
## Screen Recording (Desktop Capture)
Use `ws_listener.py` to capture WebSocket events during recording sessions. Desktop capture supports **macOS** only.
### Quick Start
1. **Start listener**: `python scripts/ws_listener.py &`
2. **Get WebSocket ID**: `cat /tmp/videodb_ws_id`
3. **Run capture code** (see reference/capture.md for full workflow)
4. **Events written to**: `/tmp/videodb_events.jsonl`
### Query Events
```python
import json
events = [json.loads(l) for l in open("/tmp/videodb_events.jsonl")]
# Get all transcripts
transcripts = [e["data"]["text"] for e in events if e.get("channel") == "transcript"]
# Get visual descriptions from last 5 minutes
import time
cutoff = time.time() - 300
recent_visual = [e for e in events
if e.get("channel") == "visual_index" and e["unix_ts"] > cutoff]
```
### Utility Scripts
- [scripts/ws_listener.py](scripts/ws_listener.py) - WebSocket event listener (dumps to JSONL)
For complete capture workflow, see [reference/capture.md](reference/capture.md).
**Do not use ffmpeg, moviepy, or local encoding tools** when VideoDB supports the operation. The following are all handled server-side by VideoDB — trimming, combining clips, overlaying audio or music, adding subtitles, text/image overlays, transcoding, resolution changes, aspect-ratio conversion, resizing for platform requirements, transcription, and media generation. Only fall back to local tools for operations listed under Limitations in reference/editor.md (transitions, speed changes, crop/zoom, colour grading, volume mixing).
### When to use what
| Problem | VideoDB solution |
|---------|-----------------|
| Platform rejects video aspect ratio or resolution | `video.reframe()` or `conn.transcode()` with `VideoConfig` |
| Need to resize video for Twitter/Instagram/TikTok | `video.reframe(target="vertical")` or `target="square"` |
| Need to change resolution (e.g. 1080p → 720p) | `conn.transcode()` with `VideoConfig(resolution=720)` |
| Need to overlay audio/music on video | `AudioAsset` on a `Timeline` |
| Need to add subtitles | `video.add_subtitle()` or `CaptionAsset` |
| Need to combine/trim clips | `VideoAsset` on a `Timeline` |
| Need to generate voiceover, music, or SFX | `coll.generate_voice()`, `generate_music()`, `generate_sound_effect()` |
## Repository
https://github.com/video-db/skills
**Maintained By:** [VideoDB](https://github.com/video-db)
## Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
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