High-performance PyTorch plugin for tracking and analyzing intermediate neural network activations
Project description
ActivationScope
Jan Miksa @ IDEAS Research Institute
High-performance PyTorch activation tracker with online reduction functionality for efficient model analysis.
Built on Python + C++ with native libtorch hooks and TorchScript (torch.jit.script) reductions compiled to .pt files.
Key Benefits
- Zero‑copy read‑back: activation tensors are shared between C++ and Python without extra copies.
- Native C++ hooks: no Python compute overhead per forward pass.
- Flexible policy knobs (
StoragePolicy,ReductionPolicy,CapturePolicy,CaptureMode) let you balance memory, compute, and I/O. - Direct-to-disk streaming (
StoragePolicy.DISK) — activations are written directly from C++ to disk. Ideal for long-running training loops with very large models. Activations are read back on demand from.datfiles. - Works with large models (e.g., diffusion) and supports streaming statistics for online use cases.
Quick Start
Every tracked layer stores full activations by default — no registration needed:
import activationscope
with activationscope.ActivationScope().track(model) as tracker:
for x, y in dataloader:
out = model(x)
loss.backward()
acts = tracker.activations # {layer_name: [Tensor, ...]} across all batches
Performance
Toy model — 48 × Linear(256,256), batch=32, 200 forwards, CPU
| Approach | ms/forward | Overhead vs baseline | Data captured |
|---|---|---|---|
| No tracking | 2.05 | — | — |
| Naive Python hooks | 3.13 | +52.7% | 594 MiB |
| ActivationScope | 2.65 | +29.2% | 594 MiB |
- Peak VMS identical — Scope 402,506 vs Naive 402,630 MiB (~0.03% diff, within ASLR noise)
- 1.18× faster than naive Python hooks (3.13 → 2.65 ms/fwd)
- 95 layers tracked (inputs + outputs across 48 linear layers)
- Zero-copy readback: 594 MiB in 2.4 ms
Run it yourself:
# Toy model (fast, GPU or CPU)
PYTHONPATH=. python -m benchmark.runner
# Pretrained ResNet-18 (requires torchvision)
PYTHONPATH=. python -m benchmark.runner --model resnet18
Usage Guide
For detailed usage instructions, see the Usage Documentation.
Development Guide
Documentation and developer setup information is available in Development Documentation.
Design Documentation
The design document outlining the architecture and implementation details can be found in Design Documentation.
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