Bilibili Up To Kb
/install bilibili-up-to-kb
Bilibili UP to KB
Convert B站 videos (single or entire channels) into cleaned, structured text knowledge bases.
Design Principle
Agent orchestrates, scripts execute. The agent's job is to decide WHAT to do and kick off the right script. All mechanical, repetitive work (downloading, transcribing, cleaning) is handled by shell scripts with built-in parallelism. The agent NEVER loops through videos one by one — it runs ONE command and the script handles concurrency internally.
Output Structure
kb/UP主名_UID/
├── BV号_视频标题.txt # Cleaned transcript (user-facing)
├── BV号_视频标题.meta.json # Video metadata
├── index.md # Summary index
└── .raw/ # Hidden: whisper transcripts (if any)
└── BV号_视频标题.txt
Key decisions:
- File names include title for readability (
BV1xxx_标题.txt) - Folder includes UP主 name (
UP主名_UID/) - Raw transcripts hidden in
.raw/ - No
_cleansuffix — clean files are the main files - Per-video
.meta.jsonwith title, uploader, duration, etc.
Full Pipeline
Step 1: Download AI subtitles (fast, high concurrency OK)
# 30-50 concurrent is fine — B站 CDN handles it
scripts/batch_channel.sh "https://space.bilibili.com/UID/" ./kb/output zh 0 30
Step 2: For videos without AI subtitles, run whisper (LOW concurrency!)
# Metal GPU can only handle 1-4 parallel whisper instances
# More = slower total (GPU saturation)
scripts/batch_channel.sh "https://space.bilibili.com/UID/" ./kb/output zh 0 2 --whisper-only
Step 3: Clean + Index
# Clean whisper transcripts (AI subtitles skip automatically)
scripts/batch_clean.sh ./kb/UP主名_UID/
scripts/generate_index.sh ./kb/UP主名_UID/
Concurrency Guide
Critical: Different stages need different concurrency!
| Stage | Bottleneck | Recommended | Why |
|---|---|---|---|
| AI subtitle download | Network | 30-50 | B站 CDN handles high parallel |
| Whisper transcribe | Metal GPU | 1-4 | GPU饱和,多了反而慢 |
| Transcript cleaning | API rate limit | ALL (0) | Network I/O only |
Quick Start — Single Video
scripts/transcribe.sh "https://www.bilibili.com/video/BV..." ./output zh
Transcript Cleaning
AI subtitles are clean enough — skipped by default.
| Source | Cleaning needed? |
|---|---|
| B站 AI subtitles | No — directly usable |
| whisper fallback | Yes — goes through cleaning |
Cleaning uses opencode/minimax-m2.5-free:
- Fix homophones and garbled words
- Add punctuation
- Output MUST be Simplified Chinese
- Keep uncertain proper nouns unchanged
- Never substitute one real term for another
Chunk size: 80 lines. Retry: 3 attempts with 3s delay.
⚠️ Long-running tasks
Use nohup to avoid session compaction killing processes:
nohup bash scripts/batch_clean.sh ./kb/UP主名_UID/ 0 80 > /tmp/clean.log 2>&1 &
batch_clean.sh is resumable — safe to re-run after interruption.
⚠️ Large Channel Handling (1000+ videos)
Script auto-detects large channels (>800 videos) and fetches in chunks to avoid timeout.
# Auto-chunked, just re-run to resume
nohup bash scripts/batch_channel.sh "https://space.bilibili.com/UID/" ./kb/output > /tmp/batch.log 2>&1 &
If still fails, manually fetch URL list:
for i in $(seq 1 500 2000); do
yt-dlp --flat-playlist --playlist-start $i --playlist-end $((i+499)) \
--print url "https://space.bilibili.com/UID/" >> /tmp/urls.txt
done
cat /tmp/urls.txt | xargs -P 20 -I {} bash scripts/transcribe.sh {} ./kb/OUTPUT zh
⚠️ Thermal & Fan Warning
Keep system cool — avoid fan spin!
| Stage | Risk | Mitigation |
|---|---|---|
| Whisper (GPU) | HIGH | Keep concurrency ≤2, monitor temps |
| AI subtitle download | Low | Can run 30-50 concurrent |
| Cleaning (API) | None | Pure network I/O, no local load |
If fans start spinning:
- Stop whisper processes immediately
- Wait for cooldown
- Resume with lower concurrency (1-2)
# Check GPU temp (if using CUDA)
nvidia-smi
# Check Mac CPU/GPU temp
sudo powermetrics --sample-rate 1000 -i 1 -n 1 | grep -E "CPU|GPU"
Dependencies
Required: yt-dlp, ffmpeg, whisper.cpp (+ model), opencode CLI
Optional: Browser cookies for member-only content (--cookies-from-browser chrome)
Environment Variables
| Variable | Default | Description |
|---|---|---|
WHISPER_CLI |
whisper-cli |
Path to whisper.cpp |
WHISPER_MODEL |
~/.whisper-cpp/ggml-small.bin |
Whisper model |
OPENCODE_BIN |
~/.opencode/bin/opencode |
opencode CLI |
CLEAN_MODEL |
opencode/minimax-m2.5-free |
Cleaning model |
Tips
- China users: Use
hf-mirror.comfor whisper model - Long videos (1h+): Auto-segmented into 10-min chunks
- Resumable: All batch scripts skip already-processed files
- Make sure OpenClaw is installed (local or Docker)
- Run the install command in chat:
/install bilibili-up-to-kb - After installation, invoke the skill by name or use
/bilibili-up-to-kb - Provide required inputs per the skill's parameter spec and get structured output
What is Bilibili Up To Kb?
Convert Bilibili (B站) videos into a searchable text knowledge base. Supports single videos and batch processing of entire UP主 channels. Uses local whisper.cp... It is an AI Agent Skill for Claude Code / OpenClaw, with 440 downloads so far.
How do I install Bilibili Up To Kb?
Run "/install bilibili-up-to-kb" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.
Is Bilibili Up To Kb free?
Yes, Bilibili Up To Kb is completely free (open-source). You can download, install and use it at no cost.
Which platforms does Bilibili Up To Kb support?
Bilibili Up To Kb is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).
Who created Bilibili Up To Kb?
It is built and maintained by shanjiaming (@shanjiaming); the current version is v0.1.0.