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nnsight-remote-interpretability

Provides guidance for interpreting and manipulating neural network internals using nnsight with optional NDIF remote execution. Use when needing to run interpretability experiments on massive models (70B+) without local GPU resources, or when working with any PyTorch architecture.

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Metadata
name
nnsight-remote-interpretability
description
Provides guidance for interpreting and manipulating neural network internals using nnsight with optional NDIF remote execution. Use when needing to run interpretability experiments on massive models (70B+) without local GPU resources, or when working with any PyTorch architecture.
version
1.0.0
author
Orchestra Research
license
MIT
tags
[nnsight, NDIF, Remote Execution, Mechanistic Interpretability, Model Internals]
dependencies
[nnsight>=0.5.0, torch>=2.0.0]

nnsight: Transparent Access to Neural Network Internals

nnsight (/ɛn.saɪt/) enables researchers to interpret and manipulate the internals of any PyTorch model, with the unique capability of running the same code locally on small models or remotely on massive models (70B+) via NDIF.

GitHub: ndif-team/nnsight (730+ stars) Paper: NNsight and NDIF: Democratizing Access to Foundation Model Internals (ICLR 2025)

Key Value Proposition

Write once, run anywhere: The same interpretability code works on GPT-2 locally or Llama-3.1-405B remotely. Just toggle remote=True.

# Local execution (small model) with model.trace("Hello world"): hidden = model.transformer.h[5].output[0].save() # Remote execution (massive model) - same code! with model.trace("Hello world", remote=True): hidden = model.model.layers[40].output[0].save()

When to Use nnsight

Use nnsight when you need to:

  • Run interpretability experiments on models too large for local GPUs (70B, 405B)
  • Work with any PyTorch architecture (transformers, Mamba, custom models)
  • Perform multi-token generation interventions
  • Share activations between different prompts
  • Access full model internals without reimplementation

Consider alternatives when:

  • You want consistent API across models → Use TransformerLens
  • You need declarative, shareable interventions → Use pyvene
  • You're training SAEs → Use SAELens
  • You only work with small models locally → TransformerLens may be simpler

Installation

# Basic installation pip install nnsight # For vLLM support pip install "nnsight[vllm]"

For remote NDIF execution, sign up at login.ndif.us for an API key.

Core Concepts

LanguageModel Wrapper

from nnsight import LanguageModel # Load model (uses HuggingFace under the hood) model = LanguageModel("openai-community/gpt2", device_map="auto") # For larger models model = LanguageModel("meta-llama/Llama-3.1-8B", device_map="auto")

Tracing Context

The trace context manager enables deferred execution - operations are collected into a computation graph:

from nnsight import LanguageModel model = LanguageModel("gpt2", device_map="auto") with model.trace("The Eiffel Tower is in") as tracer: # Access any module's output hidden_states = model.transformer.h[5].output[0].save() # Access attention patterns attn = model.transformer.h[5].attn.attn_dropout.input[0][0].save() # Modify activations model.transformer.h[8].output[0][:] = 0 # Zero out layer 8 # Get final output logits = model.output.save() # After context exits, access saved values print(hidden_states.shape) # [batch, seq, hidden]

Proxy Objects

Inside trace, module accesses return Proxy objects that record operations:

with model.trace("Hello"): # These are all Proxy objects - operations are deferred h5_out = model.transformer.h[5].output[0] # Proxy h5_mean = h5_out.mean(dim=-1) # Proxy h5_saved = h5_mean.save() # Save for later access

Workflow 1: Activation Analysis

Step-by-Step

from nnsight import LanguageModel import torch model = LanguageModel("gpt2", device_map="auto") prompt = "The capital of France is" with model.trace(prompt) as tracer: # 1. Collect activations from multiple layers layer_outputs = [] for i in range(12): # GPT-2 has 12 layers layer_out = model.transformer.h[i].output[0].save() layer_outputs.append(layer_out) # 2. Get attention patterns attn_patterns = [] for i in range(12): # Access attention weights (after softmax) attn = model.transformer.h[i].attn.attn_dropout.input[0][0].save() attn_patterns.append(attn) # 3. Get final logits logits = model.output.save() # 4. Analyze outside context for i, layer_out in enumerate(layer_outputs): print(f"Layer {i} output shape: {layer_out.shape}") print(f"Layer {i} norm: {layer_out.norm().item():.3f}") # 5. Find top predictions probs = torch.softmax(logits[0, -1], dim=-1) top_tokens = probs.topk(5) for token, prob in zip(top_tokens.indices, top_tokens.values): print(f"{model.tokenizer.decode(token)}: {prob.item():.3f}")

Checklist

  • Load model with LanguageModel wrapper
  • Use trace context for operations
  • Call .save() on values you need after context
  • Access saved values outside context
  • Use .shape, .norm(), etc. for analysis

Workflow 2: Activation Patching

Step-by-Step

from nnsight import LanguageModel import torch model = LanguageModel("gpt2", device_map="auto") clean_prompt = "The Eiffel Tower is in" corrupted_prompt = "The Colosseum is in" # 1. Get clean activations with model.trace(clean_prompt) as tracer: clean_hidden = model.transformer.h[8].output[0].save() # 2. Patch clean into corrupted run with model.trace(corrupted_prompt) as tracer: # Replace layer 8 output with clean activations model.transformer.h[8].output[0][:] = clean_hidden patched_logits = model.output.save() # 3. Compare predictions paris_token = model.tokenizer.encode(" Paris")[0] rome_token = model.tokenizer.encode(" Rome")[0] patched_probs = torch.softmax(patched_logits[0, -1], dim=-1) print(f"Paris prob: {patched_probs[paris_token].item():.3f}") print(f"Rome prob: {patched_probs[rome_token].item():.3f}")

Systematic Patching Sweep

def patch_layer_position(layer, position, clean_cache, corrupted_prompt): """Patch single layer/position from clean to corrupted.""" with model.trace(corrupted_prompt) as tracer: # Get current activation current = model.transformer.h[layer].output[0] # Patch only specific position current[:, position, :] = clean_cache[layer][:, position, :] logits = model.output.save() return logits # Sweep over all layers and positions results = torch.zeros(12, seq_len) for layer in range(12): for pos in range(seq_len): logits = patch_layer_position(layer, pos, clean_hidden, corrupted) results[layer, pos] = compute_metric(logits)

Workflow 3: Remote Execution with NDIF

Run the same experiments on massive models without local GPUs.

Step-by-Step

from nnsight import LanguageModel # 1. Load large model (will run remotely) model = LanguageModel("meta-llama/Llama-3.1-70B") # 2. Same code, just add remote=True with model.trace("The meaning of life is", remote=True) as tracer: # Access internals of 70B model! layer_40_out = model.model.layers[40].output[0].save() logits = model.output.save() # 3. Results returned from NDIF print(f"Layer 40 shape: {layer_40_out.shape}") # 4. Generation with interventions with model.trace(remote=True) as tracer: with tracer.invoke("What is 2+2?"): # Intervene during generation model.model.layers[20].output[0][:, -1, :] *= 1.5 output = model.generate(max_new_tokens=50)

NDIF Setup

  1. Sign up at login.ndif.us
  2. Get API key
  3. Set environment variable or pass to nnsight:
import os os.environ["NDIF_API_KEY"] = "your_key" # Or configure directly from nnsight import CONFIG CONFIG.API_KEY = "your_key"

Available Models on NDIF

  • Llama-3.1-8B, 70B, 405B
  • DeepSeek-R1 models
  • Various open-weight models (check ndif.us for current list)

Workflow 4: Cross-Prompt Activation Sharing

Share activations between different inputs in a single trace.

from nnsight import LanguageModel model = LanguageModel("gpt2", device_map="auto") with model.trace() as tracer: # First prompt with tracer.invoke("The cat sat on the"): cat_hidden = model.transformer.h[6].output[0].save() # Second prompt - inject cat's activations with tracer.invoke("The dog ran through the"): # Replace with cat's activations at layer 6 model.transformer.h[6].output[0][:] = cat_hidden dog_with_cat = model.output.save() # The dog prompt now has cat's internal representations

Workflow 5: Gradient-Based Analysis

Access gradients during backward pass.

from nnsight import LanguageModel import torch model = LanguageModel("gpt2", device_map="auto") with model.trace("The quick brown fox") as tracer: # Save activations and enable gradient hidden = model.transformer.h[5].output[0].save() hidden.retain_grad() logits = model.output # Compute loss on specific token target_token = model.tokenizer.encode(" jumps")[0] loss = -logits[0, -1, target_token] # Backward pass loss.backward() # Access gradients grad = hidden.grad print(f"Gradient shape: {grad.shape}") print(f"Gradient norm: {grad.norm().item():.3f}")

Note: Gradient access not supported for vLLM or remote execution.

Common Issues & Solutions

Issue: Module path differs between models

# GPT-2 structure model.transformer.h[5].output[0] # LLaMA structure model.model.layers[5].output[0] # Solution: Check model structure print(model._model) # See actual module names

Issue: Forgetting to save

# WRONG: Value not accessible outside trace with model.trace("Hello"): hidden = model.transformer.h[5].output[0] # Not saved! print(hidden) # Error or wrong value # RIGHT: Call .save() with model.trace("Hello"): hidden = model.transformer.h[5].output[0].save() print(hidden) # Works!

Issue: Remote timeout

# For long operations, increase timeout with model.trace("prompt", remote=True, timeout=300) as tracer: # Long operation...

Issue: Memory with many saved activations

# Only save what you need with model.trace("prompt"): # Don't save everything for i in range(100): model.transformer.h[i].output[0].save() # Memory heavy! # Better: save specific layers key_layers = [0, 5, 11] for i in key_layers: model.transformer.h[i].output[0].save()

Issue: vLLM gradient limitation

# vLLM doesn't support gradients # Use standard execution for gradient analysis model = LanguageModel("gpt2", device_map="auto") # Not vLLM

Key API Reference

Method/PropertyPurpose
model.trace(prompt, remote=False)Start tracing context
proxy.save()Save value for access after trace
proxy[:]Slice/index proxy (assignment patches)
tracer.invoke(prompt)Add prompt within trace
model.generate(...)Generate with interventions
model.outputFinal model output logits
model._modelUnderlying HuggingFace model

Comparison with Other Tools

FeaturennsightTransformerLenspyvene
Any architectureYesTransformers onlyYes
Remote executionYes (NDIF)NoNo
Consistent APINoYesYes
Deferred executionYesNoNo
HuggingFace nativeYesReimplementedYes
Shareable configsNoNoYes

Reference Documentation

For detailed API documentation, tutorials, and advanced usage, see the references/ folder:

FileContents
references/README.mdOverview and quick start guide
references/api.mdComplete API reference for LanguageModel, tracing, proxy objects
references/tutorials.mdStep-by-step tutorials for local and remote interpretability

External Resources

Tutorials

Official Documentation

Papers

Architecture Support

nnsight works with any PyTorch model:

  • Transformers: GPT-2, LLaMA, Mistral, etc.
  • State Space Models: Mamba
  • Vision Models: ViT, CLIP
  • Custom architectures: Any nn.Module

The key is knowing the module structure to access the right components.