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* feat(gateway): skill-aware slash commands, paginated /commands, Telegram 100-cap Map active skills to Telegram's slash command menu so users can discover and invoke skills directly. Three changes: 1. Telegram menu now includes active skill commands alongside built-in commands, capped at 100 entries (Telegram Bot API limit). Overflow commands remain callable but hidden from the picker. Logged at startup when cap is hit. 2. New /commands [page] gateway command for paginated browsing of all commands + skills. /help now shows first 10 skill commands and points to /commands for the full list. 3. When a user types a slash command that matches a disabled or uninstalled skill, they get actionable guidance: - Disabled: 'Enable it with: hermes skills config' - Optional (not installed): 'Install with: hermes skills install official/<path>' Built on ideas from PR #3921 by @kshitijk4poor. * chore: move 21 niche skills to optional-skills Move specialized/niche skills from built-in (skills/) to optional (optional-skills/) to reduce the default skill count. Users can install them with: hermes skills install official/<category>/<name> Moved skills (21): - mlops: accelerate, chroma, faiss, flash-attention, hermes-atropos-environments, huggingface-tokenizers, instructor, lambda-labs, llava, nemo-curator, pinecone, pytorch-lightning, qdrant, saelens, simpo, slime, tensorrt-llm, torchtitan - research: domain-intel, duckduckgo-search - devops: inference-sh cli Built-in skills: 96 → 75 Optional skills: 22 → 43 * fix: only include repo built-in skills in Telegram menu, not user-installed User-installed skills (from hub or manually added) stay accessible via /skills and by typing the command directly, but don't get registered in the Telegram slash command picker. Only skills whose SKILL.md is under the repo's skills/ directory are included in the menu. This keeps the Telegram menu focused on the curated built-in set while user-installed skills remain discoverable through /skills and /commands. |
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| api.md | ||
| README.md | ||
| tutorials.md | ||
SAELens Reference Documentation
This directory contains comprehensive reference materials for SAELens.
Contents
- api.md - Complete API reference for SAE, TrainingSAE, and configuration classes
- tutorials.md - Step-by-step tutorials for training and analyzing SAEs
- papers.md - Key research papers on sparse autoencoders
Quick Links
- GitHub Repository: https://github.com/jbloomAus/SAELens
- Neuronpedia: https://neuronpedia.org (browse pre-trained SAE features)
- HuggingFace SAEs: Search for tag
saelens
Installation
pip install sae-lens
Requirements: Python 3.10+, transformer-lens>=2.0.0
Basic Usage
from transformer_lens import HookedTransformer
from sae_lens import SAE
# Load model and SAE
model = HookedTransformer.from_pretrained("gpt2-small", device="cuda")
sae, cfg_dict, sparsity = SAE.from_pretrained(
release="gpt2-small-res-jb",
sae_id="blocks.8.hook_resid_pre",
device="cuda"
)
# Encode activations to sparse features
tokens = model.to_tokens("Hello world")
_, cache = model.run_with_cache(tokens)
activations = cache["resid_pre", 8]
features = sae.encode(activations) # Sparse feature activations
reconstructed = sae.decode(features) # Reconstructed activations
Key Concepts
Sparse Autoencoders
SAEs decompose dense neural activations into sparse, interpretable features:
- Encoder: Maps d_model → d_sae (typically 4-16x expansion)
- ReLU/TopK: Enforces sparsity
- Decoder: Reconstructs original activations
Training Loss
Loss = MSE(original, reconstructed) + L1_coefficient × L1(features)
Key Metrics
- L0: Average number of active features (target: 50-200)
- CE Loss Score: Cross-entropy recovered vs original model (target: 80-95%)
- Dead Features: Features that never activate (target: <5%)
Available Pre-trained SAEs
| Release | Model | Description |
|---|---|---|
gpt2-small-res-jb |
GPT-2 Small | Residual stream SAEs |
gemma-2b-res |
Gemma 2B | Residual stream SAEs |
| Various | Search HuggingFace | Community-trained SAEs |