12 KiB
Streaming & Playback
VideoDB generates streams on-demand, returning HLS-compatible URLs that play instantly in any standard video player. No render times or export waits - edits, searches, and compositions stream immediately.
Prerequisites
Videos must be uploaded to a collection before streams can be generated. For search-based streams, the video must also be indexed (spoken words and/or scenes). See search.md for indexing details.
Core Concepts
Stream Generation
Every video, search result, and timeline in VideoDB can produce a stream URL. This URL points to an HLS (HTTP Live Streaming) manifest that is compiled on demand.
# From a video
stream_url = video.generate_stream()
# From a timeline
stream_url = timeline.generate_stream()
# From search results
stream_url = results.compile()
Streaming a Single Video
Basic Playback
import videodb
conn = videodb.connect()
coll = conn.get_collection()
video = coll.get_video("your-video-id")
# Generate stream URL
stream_url = video.generate_stream()
print(f"Stream: {stream_url}")
# Open in default browser
video.play()
With Subtitles
# Index and add subtitles first
video.index_spoken_words(force=True)
stream_url = video.add_subtitle()
# Returned URL already includes subtitles
print(f"Subtitled stream: {stream_url}")
Specific Segments
Stream only a portion of a video by passing a timeline of timestamp ranges:
# Stream seconds 10-30 and 60-90
stream_url = video.generate_stream(timeline=[(10, 30), (60, 90)])
print(f"Segment stream: {stream_url}")
Streaming Timeline Compositions
Build a multi-asset composition and stream it in real time:
import videodb
from videodb.timeline import Timeline
from videodb.asset import VideoAsset, AudioAsset, ImageAsset, TextAsset, TextStyle
conn = videodb.connect()
coll = conn.get_collection()
video = coll.get_video(video_id)
music = coll.get_audio(music_id)
timeline = Timeline(conn)
# Main video content
timeline.add_inline(VideoAsset(asset_id=video.id))
# Background music overlay (starts at second 0)
timeline.add_overlay(0, AudioAsset(asset_id=music.id))
# Text overlay at the beginning
timeline.add_overlay(0, TextAsset(
text="Live Demo",
duration=3,
style=TextStyle(fontsize=48, fontcolor="white", boxcolor="#000000"),
))
# Generate the composed stream
stream_url = timeline.generate_stream()
print(f"Composed stream: {stream_url}")
Important: add_inline() only accepts VideoAsset. Use add_overlay() for AudioAsset, ImageAsset, and TextAsset.
For detailed timeline editing, see editor.md.
Streaming Search Results
Compile search results into a single stream of all matching segments:
from videodb import SearchType
from videodb.exceptions import InvalidRequestError
video.index_spoken_words(force=True)
try:
results = video.search("key announcement", search_type=SearchType.semantic)
# Compile all matching shots into one stream
stream_url = results.compile()
print(f"Search results stream: {stream_url}")
# Or play directly
results.play()
except InvalidRequestError as exc:
if "No results found" in str(exc):
print("No matching announcement segments were found.")
else:
raise
Stream Individual Search Hits
from videodb.exceptions import InvalidRequestError
try:
results = video.search("product demo", search_type=SearchType.semantic)
for i, shot in enumerate(results.get_shots()):
stream_url = shot.generate_stream()
print(f"Hit {i+1} [{shot.start:.1f}s-{shot.end:.1f}s]: {stream_url}")
except InvalidRequestError as exc:
if "No results found" in str(exc):
print("No product demo segments matched the query.")
else:
raise
Audio Playback
Get a signed playback URL for audio content:
audio = coll.get_audio(audio_id)
playback_url = audio.generate_url()
print(f"Audio URL: {playback_url}")
Complete Workflow Examples
Search-to-Stream Pipeline
Combine search, timeline composition, and streaming in one workflow:
import videodb
from videodb import SearchType
from videodb.exceptions import InvalidRequestError
from videodb.timeline import Timeline
from videodb.asset import VideoAsset, TextAsset, TextStyle
conn = videodb.connect()
coll = conn.get_collection()
video = coll.get_video("your-video-id")
video.index_spoken_words(force=True)
# Search for key moments
queries = ["introduction", "main demo", "Q&A"]
timeline = Timeline(conn)
timeline_offset = 0.0
for query in queries:
try:
results = video.search(query, search_type=SearchType.semantic)
shots = results.get_shots()
except InvalidRequestError as exc:
if "No results found" in str(exc):
shots = []
else:
raise
if not shots:
continue
# Add the section label where this batch starts in the compiled timeline
timeline.add_overlay(timeline_offset, TextAsset(
text=query.title(),
duration=2,
style=TextStyle(fontsize=36, fontcolor="white", boxcolor="#222222"),
))
for shot in shots:
timeline.add_inline(
VideoAsset(asset_id=shot.video_id, start=shot.start, end=shot.end)
)
timeline_offset += shot.end - shot.start
stream_url = timeline.generate_stream()
print(f"Dynamic compilation: {stream_url}")
Multi-Video Stream
Combine clips from different videos into a single stream:
import videodb
from videodb.timeline import Timeline
from videodb.asset import VideoAsset
conn = videodb.connect()
coll = conn.get_collection()
video_clips = [
{"id": "vid_001", "start": 0, "end": 15},
{"id": "vid_002", "start": 10, "end": 30},
{"id": "vid_003", "start": 5, "end": 25},
]
timeline = Timeline(conn)
for clip in video_clips:
timeline.add_inline(
VideoAsset(asset_id=clip["id"], start=clip["start"], end=clip["end"])
)
stream_url = timeline.generate_stream()
print(f"Multi-video stream: {stream_url}")
Conditional Stream Assembly
Build a stream dynamically based on search availability:
import videodb
from videodb import SearchType
from videodb.exceptions import InvalidRequestError
from videodb.timeline import Timeline
from videodb.asset import VideoAsset, TextAsset, TextStyle
conn = videodb.connect()
coll = conn.get_collection()
video = coll.get_video("your-video-id")
video.index_spoken_words(force=True)
timeline = Timeline(conn)
# Try to find specific content; fall back to full video
topics = ["opening remarks", "technical deep dive", "closing"]
found_any = False
timeline_offset = 0.0
for topic in topics:
try:
results = video.search(topic, search_type=SearchType.semantic)
shots = results.get_shots()
except InvalidRequestError as exc:
if "No results found" in str(exc):
shots = []
else:
raise
if shots:
found_any = True
timeline.add_overlay(timeline_offset, TextAsset(
text=topic.title(),
duration=2,
style=TextStyle(fontsize=32, fontcolor="white", boxcolor="#1a1a2e"),
))
for shot in shots:
timeline.add_inline(
VideoAsset(asset_id=shot.video_id, start=shot.start, end=shot.end)
)
timeline_offset += shot.end - shot.start
if found_any:
stream_url = timeline.generate_stream()
print(f"Curated stream: {stream_url}")
else:
# Fall back to full video stream
stream_url = video.generate_stream()
print(f"Full video stream: {stream_url}")
Live Event Recap
Process an event recording into a streamable recap with multiple sections:
import videodb
from videodb import SearchType
from videodb.exceptions import InvalidRequestError
from videodb.timeline import Timeline
from videodb.asset import VideoAsset, AudioAsset, ImageAsset, TextAsset, TextStyle
conn = videodb.connect()
coll = conn.get_collection()
# Upload event recording
event = coll.upload(url="https://example.com/event-recording.mp4")
event.index_spoken_words(force=True)
# Generate background music
music = coll.generate_music(
prompt="upbeat corporate background music",
duration=120,
)
# Generate title image
title_img = coll.generate_image(
prompt="modern event recap title card, dark background, professional",
aspect_ratio="16:9",
)
# Build the recap timeline
timeline = Timeline(conn)
timeline_offset = 0.0
# Main video segments from search
try:
keynote = event.search("keynote announcement", search_type=SearchType.semantic)
keynote_shots = keynote.get_shots()[:5]
except InvalidRequestError as exc:
if "No results found" in str(exc):
keynote_shots = []
else:
raise
if keynote_shots:
keynote_start = timeline_offset
for shot in keynote_shots:
timeline.add_inline(
VideoAsset(asset_id=shot.video_id, start=shot.start, end=shot.end)
)
timeline_offset += shot.end - shot.start
else:
keynote_start = None
try:
demo = event.search("product demo", search_type=SearchType.semantic)
demo_shots = demo.get_shots()[:5]
except InvalidRequestError as exc:
if "No results found" in str(exc):
demo_shots = []
else:
raise
if demo_shots:
demo_start = timeline_offset
for shot in demo_shots:
timeline.add_inline(
VideoAsset(asset_id=shot.video_id, start=shot.start, end=shot.end)
)
timeline_offset += shot.end - shot.start
else:
demo_start = None
# Overlay title card image
timeline.add_overlay(0, ImageAsset(
asset_id=title_img.id, width=100, height=100, x=80, y=20, duration=5
))
# Overlay section labels at the correct timeline offsets
if keynote_start is not None:
timeline.add_overlay(max(5, keynote_start), TextAsset(
text="Keynote Highlights",
duration=3,
style=TextStyle(fontsize=40, fontcolor="white", boxcolor="#0d1117"),
))
if demo_start is not None:
timeline.add_overlay(max(5, demo_start), TextAsset(
text="Demo Highlights",
duration=3,
style=TextStyle(fontsize=36, fontcolor="white", boxcolor="#0d1117"),
))
# Overlay background music
timeline.add_overlay(0, AudioAsset(
asset_id=music.id, fade_in_duration=3
))
# Stream the final recap
stream_url = timeline.generate_stream()
print(f"Event recap: {stream_url}")
Tips
- HLS compatibility: Stream URLs return HLS manifests (
.m3u8). They work in Safari natively, and in other browsers via hls.js or similar libraries. - On-demand compilation: Streams are compiled server-side when requested. The first play may have a brief compilation delay; subsequent plays of the same composition are cached.
- Caching: Calling
video.generate_stream()a second time without arguments returns the cached stream URL rather than recompiling. - Segment streams:
video.generate_stream(timeline=[(start, end)])is the fastest way to stream a specific clip without building a fullTimelineobject. - Inline vs overlay:
add_inline()only acceptsVideoAssetand places assets sequentially on the main track.add_overlay()acceptsAudioAsset,ImageAsset, andTextAssetand layers them on top at a given start time. - TextStyle defaults:
TextStyledefaults tofont='Sans',fontcolor='black'. Useboxcolor(notbgcolor) for background color on text. - Combine with generation: Use
coll.generate_music(prompt, duration)andcoll.generate_image(prompt, aspect_ratio)to create assets for timeline compositions. - Playback:
.play()opens the stream URL in the default system browser. For programmatic use, work with the URL string directly.