summaryrefslogtreecommitdiff
path: root/CHANGELOG.md
blob: beaa2561df83c486e6e3df00592e5efbc90ca21a (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
### 0.0.21
- Ampere, RTX 30 series GPUs now compatible with the library.

### 0.0.22:

- Fixed an error where a `reset_parameters()` call on the `StableEmbedding` would lead to an error in older PyTorch versions (from 1.7.0).

### 0.0.23:

Bugs:
 - Unified quantization API: each quantization function now returns `Q, S` where `Q` is the quantized tensor and `S` the quantization state which may hold absolute max values, a quantization map or more. For dequantization all functions now accept the inputs `Q, S` so that `Q` is dequantized with the quantization state `S`.
 - Fixed an issue where the CUDA 11.1 binary was not compiled with the right headers

API changes:
 - Block-wise quantization for optimizers now enabled by default

Features:
 - Block-wise quantization routines now support CPU Tensors.


### 0.0.24:

- Fixed a bug where a float/half conversion led to a compilation error for CUDA 11.1 on Turning GPUs.
- removed Apex dependency for bnb LAMB

### 0.0.25:

Features:
 - Added `skip_zeros` for block-wise and 32-bit optimizers. This ensures correct updates for sparse gradients and sparse models.
 - Added support for Kepler GPUs. (#4)
 - Added Analysis Adam to track 8-bit vs 32-bit quantization errors over time.
 - Make compilation more user friendly.

Bug fixes:
 - fixed "undefined symbol: \_\_fatbinwrap_38" error for P100 GPUs on CUDA 10.1 (#5)

Docs:
 - Added docs with instructions to compile from source.


### 0.26.0:

Features:
 - Added Adagrad (without grad clipping) as 32-bit and 8-bit block-wise optimizer