CHANGELOG.md 16.7 KB
Newer Older
1
2
3
4
5
6
# Changelog
All notable changes to this project will be documented in this file.

The format is based on [Keep a Changelog](https://keepachangelog.com/en/1.0.0/),
and this project adheres to [Semantic Versioning](https://semver.org/spec/v2.0.0.html).

7
8
9
10
## [0.4.3] - TBD

### Added
- Sharded Grad Scaler works with cpu offload in mixed and full precision. [#831]
11
12
- API for specifying SSD offload for params with FSDP. You can use a OffloadConfig to specify the type of offload
  and the file path for storing params on SSD. Note: This is an experimental feature. [#855]
13
14

### Changed
15
- MEVO: fixed eval and checkpointing code paths [#851]
16
17
18
19
20
- Cleanup: Moving forward we would be testing all of our code with Python 3.9.7, CUDA 11.2 and the following three versions of PyTorch [#847]:
  - the most recent stable version
  - the most recent LTS version
  - a recent nightly build

21
## [0.4.2] - 2021-11-08
22
### Fixed
23
- FSDP: Fixed an pre-backward hook bug for certain type of models and FSDP config. [#833]
tmarkstrum's avatar
tmarkstrum committed
24
25

### Added
26
27
28
29
- FSDP: Add support for SSD offload for eval workloads. This is a new experimental feature and should be
        used with caution.
- LayerwiseMemoryTracker[feature][experimental]: This is a new experimental tool to help track, visualize and suggest fix for memory issues occurring during the forward/backward pass of your models. [#808]
- FSDP: limited support of shared weights between FSDP wrappers. This allows large parameter
30
31
          and gradient memory to be sharded despite being needed from different layers due to
          weight sharing. [#836]
32
- OffloadModel: Fix node names to enable correct sharding in auto_shard.py [#830]
33
- OSS: Relaxed speed and memory constraints on OSS golden data due to regression when we bumped up the
34
35
36
       PyTorch version to 1.9. [#828] [#825]
- Chore: Update PyTorch version that we run benchmarks with. [#823]
- Chore: Update PyTorch version that we run test with. [#809]
37
- OffloadModel: Extend auto_shard.py to allow dealing with conditionals automatically when tracing with
38
                torch.fx. This will work for most cases except when the conditional is part of the root instance. [#817]
Min Xu's avatar
Min Xu committed
39
- [MEVO]: a custom layer to help big vocab trainings. Experimental. Docs is still TBD. [#840]
40
- SlowMoDistributedDataParallel[feature][experimental] - This is a distributed training wrapper which should be useful on clusters with slow network interconnects (eg Ethernet). This improves on performance as compared to Distributed Data Parallel in such clusters. [#378]
tmarkstrum's avatar
tmarkstrum committed
41
42
43

## [0.4.1] - 2021-09-17
### Fixed
anj-s's avatar
anj-s committed
44
45
46
47
48
- FSDP: We don't attach post backward hooks for params that don't require grad. However in the hook
        triggered after the post backward hook, we assert on the POST_BACKWARD state which can only
        be set in the post backward hook. Modified the assert to account for the fact that the root
        FSDP module can have child modules with params that require grad and it can contain params
        that don't require grad and hence can fail the previous assert. [#761]
49
50
- FSDP: Fixed a bug when multiple backward pass is called within an iteration, parameters' sharding
        state might be incorrect. [#775]
51
52
- activation checkpoint: Ensure outputs of checkpointed modules only require grad if either
                         the input requires grad or if the parameters require grad. [#787]
Min Xu's avatar
Min Xu committed
53

54
55
56
57
- OSS: fix the broadcast_fp16 option, broken after a refactor, this flag was doing nothing (bugfix).[#795]
- OSS: update default device when refreshing the params, meaning that moving the model to GPU after
       the OSS wrap will not trigger warnings and slow the jobs (ease of use). [#786]

Min Xu's avatar
Min Xu committed
58
### Added
anj-s's avatar
anj-s committed
59
- FSDP: Added support for returning the original names of parameters when `named_parameters` is called on
60
        the module. To retrieve the orginal names of the parameters along with the params, you need to
anj-s's avatar
anj-s committed
61
62
63
        call `named_parameters` under the `summon_full_params` context when using flattened params or original
        params. If you are using original params (i.e flatten_params=False), calling `named_parameters` outside
        of the `summon_full_params` context will still return the original param names along with the local shards. [#755]
64
65
66
67
68
69
70
71
- FSDP: Ensure gradient reduction accumulates into the unsharded gradient tensor
        within a backwards pass. This matters when an FSDP module is called
        multiple times within a forward pass, and reduction is not deferred
        using activation checkpoint forward counters, bucketing or some other
        mechanism. [#784]
- activation checkpoint: Added a context manager to disable checkpoint in case the same wrapped module
                         needs to be checkpointed and not checkpointed in different parts of
                         the module forward pass. [#772]
tmarkstrum's avatar
tmarkstrum committed
72
73
74
- FSDP: Added a toggle with an environment variable ENABLE_NCCL_BASE_COLLECTIVES=[0,1] to allow users
        enable/disable using new nccl base collecectives. By default, using new nccl base collectives
        is enabled. [#801]
Min Xu's avatar
Min Xu committed
75
76
77

## [0.4.0] - 2021-07-31
### Fixed
78
79
80
81
82
83
84
- FSDP: fixed final backward callback in certain activation checkpointed cases. Before this fix,
        if a model is activation checkpointed in a certain way, the final backward
        callback can fire incorrectly. That's due to autograd and reentrant backward
        graphs. With this fix, the final callback is always registered on the outer
        most root FSDP instance (i.e. the outer most backward graph), which result
        in reliably firing. This makes FSDP much more robust with respect to different
        models and activation checkpoints. [#753]
Min Xu's avatar
Min Xu committed
85
86

### Added
87
88
89
90
- FSDP: support gradient accumulation without the `no_sync` context. This is useful
        in training with smaller number of GPU with same overall batch size as large
        number of GPUs. Compared with the `no_sync` context, this mode consumes less
        GPU memory but uses more networking bandwidth. [#752]
Min Xu's avatar
Min Xu committed
91

Min Xu's avatar
Min Xu committed
92

Min Xu's avatar
Min Xu committed
93
94
95
96
97
## [0.3.9] - 2021-07-26
### Fixed
- FSDP: fixed metadata saving and shard consolidation for MoE cases. When a model has
        shared parameters or mixture of expert layers, the handling of state dict
        metadata was broken. This release fixes that. [#746]
98
- OSS: fixed the buckets which would stay in fp16 if `broadcast fp16` was required [#751]
anj-s's avatar
anj-s committed
99
100

### Added
Min Xu's avatar
Min Xu committed
101
102
- FSDP: better performance; use `_allgather_base` and `_reduce_scatter_base` when they are
        available from pytorch nightly version (will be in 1.10 releases) [#729]
103
- FSDP: prepared FSDP internals for supporting multiple groups of flatten parameters (to support more general optimization) [#746]
anj-s's avatar
anj-s committed
104
105
106
107
108
109
110
111
112
113

## [0.3.8] - 2021-07-12
### Fixed
- checkpointing: Use dummy tensor to ensure backward pass is called. [#701]
- checkpointing: Ensure internal fwd counter is not incremented in eval mode. [#709]
- checkpointing: Use non-blocking CPU transfer to improve perf. [#719]
- FSDP: Fixed bug where buffers returned in `state_dict()` could still be half precision when `mixed_precision` is set to `True`. [#705]
- FSDP: Ensure requires_grad of FlatParameter is consistent with requires_grad of the original parameters. [#721]
- doc: Thoroughly improved the doc for FSDP. [#711]
- cleanup: Remove examples/ doc from the repo. [#712]
114
- cleanup: Future proof storage size test. [#735]
anj-s's avatar
anj-s committed
115
116
- cleanup: Migrate away from legacy torchtext iterators. [#713]
- chore: Updated torch 1.9 to release version. [#717]
Min Xu's avatar
Min Xu committed
117
118

### Added
119
- FSDP: supporting multiple flatten parameter groups [#708] [#711]
anj-s's avatar
anj-s committed
120
- chore: Add the latest numpy version to requirements-test.txt to prevent mypy errors on certain PR commits [#732]
Min Xu's avatar
Min Xu committed
121
122
123
124
125
126
127

## [0.3.7] - 2021-05-17
### Fixed
- setup.py: hide CUDA extensions behind `BUILD_CUDA_EXTENSIONS` envvar [#634]
- checkpointing: rename and move the `checkpoint_activations` wrapper [#654]
- FSDP: fix `local_state_dict` potentially called child class's `state_dict` [#574]
- FSDP: fix extra process groups being created by default. Old behavior can cause excessive GPU memory usage [#678] [#681]
128
129
130
- FSDP: fix forward pass not overlapping compute and allgather [#671]
- FSDP: improved frozen weight support [#657]
- FSDP: workaround AMP autocast cache issue with `clear_autocast_cache` flag [#650]
Min Xu's avatar
Min Xu committed
131
- FSDP: Rename API arg `cpu_offload` to `move_params_to_cpu` to better reflect functionality. We will deprecate `cpu_offload` in an upcoming release [#676]
132
133
- MoE: several fixes [#666] [#667] [#668]
- SDP: re-expose the module property [#647]
Min Xu's avatar
Min Xu committed
134
- wrap: support wrapping based on `wrapper_config` [#685]
135

136
### Added
137
138
- FSDP: added `force_input_to_fp32` flag for SyncBatchNorm [#659]
- FSDP: better memory usage for reduce bucket [#633]
139
140
- FSDP: added `local_metadata_dict` to save sharding relating information [#683]
- FSDP: added `consolidate_shard_weights` to reconstruct the consolidated (non-sharded) model weights from saved sharded weights and metadata on the disk [#683]
Min Xu's avatar
Min Xu committed
141
- Experimental SyncBatchNorm [#662] [#680]
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
142

Min Xu's avatar
Min Xu committed
143
144
## [0.3.6] - 2021-04-26
### Added
145
- FSDP: Consolidate cpu\_adam optimizer state dict ([#607](https://github.com/facebookresearch/fairscale/pull/607))
Min Xu's avatar
Min Xu committed
146
147
148
149
150
151
152
153
154

### Fixed
- FSDP: handle model with multiple forward pass and checkpoint ([#621](https://github.com/facebookresearch/fairscale/pull/621))
- FSDP & SDP: check before calling `_specify_ddp_gpu_num` ([#626](https://github.com/facebookresearch/fairscale/pull/626))
- FSDP: relax checking root condition ([#620](https://github.com/facebookresearch/fairscale/pull/620))
- SDP: removing an assert which does not seem always accurate ([#625](https://github.com/facebookresearch/fairscale/pull/625))
- FSDP: changing FSDP init to by pass pg validation ([#619](https://github.com/facebookresearch/fairscale/pull/619))
- OSS: to 100% coverage ([#618](https://github.com/facebookresearch/fairscale/pull/618))

Min Xu's avatar
Min Xu committed
155
156
157
158
159
160
161
162
163
164
## [0.3.5] - 2021-04-19
### Added
- [offload] Add API, tutorial and smaller doc string changes. ([#576](https://github.com/facebookresearch/fairscale/pull/576))

### Fixed
- FSDP: fixing training with freezing weights ([#614](https://github.com/facebookresearch/fairscale/pull/614))
- SDP: privatizing all the things ([#611](https://github.com/facebookresearch/fairscale/pull/611))
- FSDP: Make `_get_default_cuda_device` more robust to modules without params ([#606](https://github.com/facebookresearch/fairscale/pull/606))
- OffloadModel: Add prev codepath of using OffloadModel without activation checkpointing ([#608](https://github.com/facebookresearch/fairscale/pull/608))

Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
165
## [0.3.4] - 2021-04-13
Min Xu's avatar
Min Xu committed
166
### Added
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
167
168
- FSDP: Add no broadcast optim state option ([#560](https://github.com/facebookresearch/fairscale/pull/560))

Min Xu's avatar
Min Xu committed
169
### Fixed
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
170
171
172
173
174
- ShardedDDP: Properly handle .eval() mode ([#587](https://github.com/facebookresearch/fairscale/pull/587))
- ShardedDDP: Handle model being moved back to CPU prior to state consolidation ([#573](https://github.com/facebookresearch/fairscale/pull/573))
- FSDP: much faster state consolidation ([#595](https://github.com/facebookresearch/fairscale/pull/595))
- FSDP: Add gradient pre-dedivide to prevent overflow with large world sizes ([#565](https://github.com/facebookresearch/fairscale/pull/565))
- Offload: (experimental) Fix activation offloading to CPU ([#588]((https://github.com/facebookresearch/fairscale/pull/588) )
Min Xu's avatar
Min Xu committed
175

Min Xu's avatar
Min Xu committed
176
177
## [0.3.3] - 2021-04-1
### Added
178
- FSDP: changed `auto_wrap_bn` utility function so that single FSDP group is optional ([#556](https://github.com/facebookresearch/fairscale/pull/556))
Min Xu's avatar
Min Xu committed
179
180
181
182
183
184
185
186
- FSDP: optimizer state load/save ([#537](https://github.com/facebookresearch/fairscale/pull/537))
- FSDP: fix weight init when using apply() ([#543](https://github.com/facebookresearch/fairscale/pull/543))
- Multiprocess Pipe: retired old implementation
- Experimental: xpipe

### Fixed
- ShardedDDP deferred init ([#558](https://github.com/facebookresearch/fairscale/pull/558))

Min Xu's avatar
Min Xu committed
187
## [0.3.2] - 2021-03-18
Min Xu's avatar
Min Xu committed
188
### Added
189
- Experimental: Add spectrain support ([#372](https://github.com/facebookresearch/fairscale/issues/372))
Min Xu's avatar
Min Xu committed
190
- FSDP: enabled pytorch SyncBN (no asserting) ([#527](https://github.com/facebookresearch/fairscale/issues/527))
191
- FSDP: added `auto_wrap_bn` utility function ([#531](https://github.com/facebookresearch/fairscale/pull/531))
Min Xu's avatar
Min Xu committed
192
193

### Fixed
194
- OSS: fix a compatibily problem with lightning wrt optimizer state dict ([#510](https://github.com/facebookresearch/fairscale/issues/510))
195
- FSDP: fixed a bug when part of autograd graph is traversed multiple times in mixed precision mode ([#513](https://github.com/facebookresearch/fairscale/pull/513))
Min Xu's avatar
Min Xu committed
196
197
198
199

## [0.3.1] - 2021-03-09
### Added
- FSDP docs ([#455](https://github.com/facebookresearch/fairscale/issues/455))
200
- `enable_wrap` and `auto_wrap` APIs ([#446](https://github.com/facebookresearch/fairscale/issues/446))
Min Xu's avatar
Min Xu committed
201
202
- Added experimental.nn.OffloadModel API for training large models on a single GPU.([#432](https://github.com/facebookresearch/fairscale/issues/432))

203
### Fixed
Min Xu's avatar
Min Xu committed
204
205
206
207
- OSS: fix a broken state dict when using non contiguous param groups
- Several SDP fixes around performance and corner cases
- Many FSDP fixes
- AdaScale & SDP/FSDP test added but not officially supported
208

Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
209
## [0.3.0] - 2021-02-22
Min Xu's avatar
Min Xu committed
210
211
### Added
- FullyShardedDataParallel (FSDP) ([#413](https://github.com/facebookresearch/fairscale/issues/413))
212
- ShardedDDP fp16 grad reduction option ([#402](https://github.com/facebookresearch/fairscale/issues/402))
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
213
- Expose experimental algorithms within the pip package ([#410](https://github.com/facebookresearch/fairscale/pull/410))
Min Xu's avatar
Min Xu committed
214

215
### Fixed
Min Xu's avatar
Min Xu committed
216
- Catch corner case when the model is too small with respect to the world size, and shards are empty ([#406](https://github.com/facebookresearch/fairscale/pull/406))
217
- Memory leak in `checkpoint_wrapper` ([#412](https://github.com/facebookresearch/fairscale/pull/412))
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
218
219

## [0.1.7] - 2021-02-19
220
221
### Fixed
- ShardedDDP and OSS handle model trainability changes during training ([#369](https://github.com/facebookresearch/fairscale/issues/369))
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
222
223
224
- ShardedDDP state dict load/save bug ([#386](https://github.com/facebookresearch/fairscale/issues/386))
- ShardedDDP handle train/eval modes ([#393](https://github.com/facebookresearch/fairscale/issues/393))
- AdaScale handling custom scaling factors ([#401](https://github.com/facebookresearch/fairscale/issues/401))
225
226

### Added
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
227
- ShardedDDP manual reduce option for checkpointing ([#389](https://github.com/facebookresearch/fairscale/issues/389))
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
228

Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
229
230
231
232
233
234
235
236
237
238
## [0.1.6] - 2021-02-10
### Added
- Checkpointing model wrapper (#376)
- Faster OSS, flatbuffers (#371)
- Small speedup in OSS clipgradnorm (#363)

### Fixed
- Bug in ShardedDDP with 0.1.5 depending the init (KeyError / OSS)
- Much refactoring in Pipe (#357, #358, #360, #362, #370, #373)
- Better pip integration / resident pytorch (#375)
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
239
240

## [0.1.5] - 2021-02-03
241
### Added
242
243
244
- Pytorch compatibility for OSS checkpoints (#310)
- Elastic checkpoints for OSS, world size can vary in between save and loads (#310)
- Tensor views for OSS bucketing, reduced CPU use (#300)
245
- Bucket calls in ShardedDDP, for faster inter node communications (#327)
Benjamin Lefaudeux's avatar
Benjamin Lefaudeux committed
246
247
248
249
250
251
252
- FlattenParamWrapper, which flattens module parameters into a single tensor seamlessly (#317)
- AMPnet experimental support (#304)

### Fixed
- ShardedDDP properly handles device changes via `.to()` (#353)
- Add a new interface for AdaScale, AdaScaleWrapper, which makes it compatible with OSS (#347)

253

254
255
256
257
258
## [0.1.4] - 2021-01-07
### Fixed
- Missing cu files in the pip package


259
260
261
## [0.1.3] - 2021-01-04
### Fixed
- Release numbering within python and from pypi
262

263
## [0.1.2] - 2021-01-04
264
### Added
265
266
- AdaScale:
  . Added gradient accumulation feature (#202)
267
268
269
  . Added support of `torch.lr_scheduler` (#229)
  . Added support for `add_param_groups` (#266)
  . Added support for `scale != world_size` (#266)
270
271

### Fixed
Min Xu's avatar
Min Xu committed
272
273
- AdaScale: smoothing factor value fixed when using gradient accumulation (#235)
- Pipe: documentation on balancing functions (#243)
274
275
276
- ShardedDDP: handle typical NLP models
- ShardedDDP: better partitioning when finetuning

277

278
279
280
281
## [0.1.1] - 2020-12-01
### Fixed
- make sure pip package includes header files (#221)

msbaines's avatar
msbaines committed
282
283
284
285
286
287
## [0.1.0] - 2020-12-01
### Added
- ShardedDataParallel with autoreduce (#157)
- cpu support for Pipe (#188)
- ShardedOptim: Distributed Grad Scaler (for torch AMP)  (#182)
- OSS-aware clip grads, bridge sharded states (#167)
288
- oss: add `rank_local_state_dict` staticmethod (#174)
msbaines's avatar
msbaines committed
289
290
291
292
293
294
- support for PyTorch 1.7.0 (#171)
- Add implementation of AdaScale (#139)

### Fixed
- pip package install (#196, #200)

msbaines's avatar
msbaines committed
295
296
297
298
299
300
301
302
## [0.0.3] - 2020-10-14
### Added
- multi-process pipe

### Fixed
- multiple OSS fixes
- MegaTron+OSS DDP fix

msbaines's avatar
msbaines committed
303
304
## [0.0.2] - 2020-08-28
### Added
305
- add ddp that works with oss with `reduce()` not `all_reduce()` (#19)
msbaines's avatar
msbaines committed
306
307
308
309
310
311
312
313
314
- support for PyTorch v1.6
- add mixed precision Adam (#40)
- Adam optimizer state scaling (#44)

### Fixed
- properly restore a sharded optim state (#39)
- OSS restore state to proper device (#46)
- optim/oss: support optimizers with additional step kwargs (#53)
- optim/oss: fix state cast (#56)
315
- fix eval for `oss_ddp` (#55)
msbaines's avatar
msbaines committed
316
317
318
- optim/oss: work correctly with LRScheduler (#58)

## [0.0.1] - 2020-07-31
319
- Initial release.