A family of highly efficient, lightweight yet powerful optimizers.
Project description
Advanced Optimizers
This repo introduces a new family of highly efficient, lightweight yet powerful optimizers, born from extensive research into recent academic literature and validated through practical training runs across diverse models.
Install
pip install adv_optm
Theory (Inspired by SMMF)
Based primarily on:
SMMF: Square-Matricized Momentum Factorization for Memory-Efficient Optimization
The core innovation:
- Uses fast, non-negative matrix factorization (NNMF - rank 1), but reconstructs the full state before each update to preserve momentum accuracy, then re-factors afterward (factor → reconstruct → update → factor cycle).
- For the signed first moment, we split into sign + absolute value:
- Sign is stored as 1-bit state via bitwise ops (SMMF originally used 8-bit with 7 bits wasted).
- Absolute value goes through the factor/reconstruct cycle using two factored vectors + the signed state.
- Final storage: four factored vectors + one 1-bit sign.
- Updates behave like full-state Adam but with drastically reduced memory.
✅ TL;DR: Lightweight, strong, memory-efficient optimizer.
Memory Cost
- Adopt_Factored for full SDXL finetune: 328 MB (4 small vectors + 1-bit state)
- Adopt_Factored with AdEMAMix for full SDXL finetune: 625 MB (6 small vectors + two 1-bit states)
SDXL is 6.5GB model.
⏱️ Speed (my tests in SDXL - BS 4)
- Adopt_Factored: ~10s/it
- Adopt_Factored with AdEMAMix: ~12s/it
- Adafactor: ~8.5s/it
→ Overhead from compression/reconstruction cycles. → It's faster than MLorc (~12s/it), which uses RSVD compression, and should be the fastest momentum compression (AFAIK).
📈 Performance
- Better than Adafactor, and CAME factorzation methods
- Comparable or identical to Adam (see SMMF paper results)
Available Optimizers (all support Factored toggle)
Set Factored=False to disable factorization and run as a full uncompressed optimizer (like vanilla Adam).
- Adam
- Prodigy
- Adopt
Bonus Features (Built-in)
-
Fused Backward Pass
-
Stochastic Rounding (SR): Improves quality and convergence for BF16 training.
-
AdEMAMix
→ This adds a second, slow-moving EMA, which is combined with the primary momentum to stabilize updates, especially during long runs of full finetuning. → A higher value of beta3 (e.g., 0.9999) gives the EMA a longer memory, making it more stable but slower to adapt. A lower value (e.g., 0.999) is often better for shorter training runs (2k-4k steps). → Whenfactoredis true, it compresses the new momentum in the same way as the first moment (1-bit state + 2 vectors). However, this introduces noticeable overhead as we are compressing/reconstructing a third state each step.⚠️ Note: AdEMAMix updates are more aggressive than normal Adam/Adopt, so use a x2-x5 smaller LR than usual (or use Prodigy).
-
atan2smoothing & scaling
→ Robustepsreplacement (no tuning!) + built-in gradient clipping
→ Ideal for ADOPT (which normally needs higherepsand clipping), souse_atan2is all-in-one for it. -
OrthoGrad
→ Removes gradient component parallel to weights → prevents "naïve loss minimization" (NLM) → reduces natural overfitting
→ Perfect for fine-tuning the direction of existing features (e.g., full finetune or training a trained LoRA) without weight decay erasing prior knowledge.⚠️ Note: OrthoGrad introduces ~33% time overhead, so take this into account.
-
Grams: Gradient Descent with Adaptive Momentum Scaling
→ Eliminates the need for 1-bit momentum sign storage by using the sign of gradients for the first moment.⚠️ Not recommended for small batch sizes: gradients are too noisy, which can destabilize momentum (tested for Prodigy and it made the optimizer slower to find the LR or converge in BS 4).
Other Notes
-
Adopt skips the first step (only initializes the states) and has built-in clipping (sticking to the original optimizer), but we skip both of these when you enable
use_atan2; as the optimizer becomes scale-invariant and the values of the states won't cause any issues or instability. -
When
use_atan2is True,epswill be ignored and you should also disable any gradient clipping.
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