From 2f8083bd8b084290f888fe59b329d98ebd6dd468 Mon Sep 17 00:00:00 2001 From: Tim Dettmers Date: Sun, 28 Nov 2021 21:18:11 -0800 Subject: Added AdamW. #10 #13 --- tests/test_optim.py | 10 +++++++--- 1 file changed, 7 insertions(+), 3 deletions(-) (limited to 'tests') diff --git a/tests/test_optim.py b/tests/test_optim.py index ff0734b..d306511 100644 --- a/tests/test_optim.py +++ b/tests/test_optim.py @@ -34,6 +34,7 @@ str2optimizers['lamb_apex'] = (None, lambda pxx: apex.optimizers.FusedLAMB(pxx, str2optimizers['lars_apex'] = (None, lambda pxx: apex.parallel.LARC.LARC(apex.optimizers.FusedSGD(pxx, 0.01, 0.9)), bnb.optim.Adam) str2optimizers['adam'] = (torch.optim.Adam, bnb.optim.Adam) +str2optimizers['adamw'] = (torch.optim.AdamW, bnb.optim.AdamW) str2optimizers['fused_adam'] = (apex.optimizers.FusedAdam, bnb.optim.Adam) str2optimizers['momentum'] = (lambda pxx: torch.optim.SGD(pxx, 0.01, 0.9), lambda pxx: bnb.optim.SGD(pxx, 0.01, 0.9, block_wise=False)) str2optimizers['lars'] = (lambda pxx: bnb.optim.PytorchLARS(pxx, 0.01, 0.9), lambda pxx: bnb.optim.LARS(pxx, 0.01, 0.9)) @@ -47,12 +48,14 @@ str2optimizers['lamb8bit'] = (lambda pxx: apex.optimizers.FusedLAMB(pxx, weight_ str2optimizers['lars8bit'] = (lambda pxx: bnb.optim.PytorchLARS(pxx, 0.01, 0.9), lambda pxx: bnb.optim.LARS8bit(pxx, 0.01, 0.9)) str2optimizers['adam8bit_blockwise'] = (torch.optim.Adam, lambda pxx: bnb.optim.Adam8bit(pxx, block_wise=True)) +str2optimizers['adamw8bit_blockwise'] = (torch.optim.Adam, lambda pxx: bnb.optim.AdamW8bit(pxx, block_wise=True)) str2optimizers['momentum8bit_blockwise'] = (lambda pxx: torch.optim.SGD(pxx, 0.01, 0.9), lambda pxx: bnb.optim.SGD8bit(pxx, 0.01, 0.9, block_wise=True)) str2optimizers['rmsprop8bit_blockwise'] = (lambda pxx: torch.optim.RMSprop(pxx, 0.01, 0.9), lambda pxx: bnb.optim.RMSprop8bit(pxx, 0.01, 0.9, block_wise=True)) str2optimizers['adagrad8bit_blockwise'] = (lambda pxx: torch.optim.Adagrad(pxx, 0.01), lambda pxx: bnb.optim.Adagrad8bit(pxx, 0.01, block_wise=True)) str2statenames = {} str2statenames['adam'] = [('exp_avg', 'state1'), ('exp_avg_sq', 'state2')] +str2statenames['adamw'] = [('exp_avg', 'state1'), ('exp_avg_sq', 'state2')] str2statenames['momentum'] = [('momentum_buffer', 'state1')] str2statenames['lars'] = [('momentum_buffer', 'state1')] str2statenames['lamb'] = [('exp_avg', 'state1'), ('exp_avg_sq', 'state2')] @@ -61,6 +64,7 @@ str2statenames['adagrad'] = [('sum', 'state1')] str2statenames['adam8bit'] = [('exp_avg', 'state1', 'qmap1', 'max1'), ('exp_avg_sq', 'state2', 'qmap2', 'max2')] str2statenames['lamb8bit'] = [('exp_avg', 'state1', 'qmap1', 'max1'), ('exp_avg_sq', 'state2', 'qmap2', 'max2')] str2statenames['adam8bit_blockwise'] = [('exp_avg', 'state1', 'qmap1', 'absmax1'), ('exp_avg_sq', 'state2', 'qmap2', 'absmax2')] +str2statenames['adamw8bit_blockwise'] = [('exp_avg', 'state1', 'qmap1', 'absmax1'), ('exp_avg_sq', 'state2', 'qmap2', 'absmax2')] str2statenames['momentum8bit'] = [('momentum_buffer', 'state1', 'qmap1', 'max1')] str2statenames['momentum8bit_blockwise'] = [('momentum_buffer', 'state1', 'qmap1', 'absmax1')] str2statenames['lars8bit'] = [('momentum_buffer', 'state1', 'qmap1', 'max1')] @@ -71,7 +75,7 @@ str2statenames['adagrad8bit_blockwise'] = [('sum', 'state1', 'qmap1', 'absmax1') dim1 = [1024] dim2 = [32, 1024, 4097, 1] gtype = [torch.float32, torch.float16] -optimizer_names = ['adam', 'momentum', 'rmsprop', 'lars', 'lamb', 'adagrad'] +optimizer_names = ['adam', 'adamw', 'momentum', 'rmsprop', 'lars', 'lamb', 'adagrad'] values = list(product(dim1,dim2, gtype, optimizer_names)) names = ['dim1_{0}_dim2_{1}_gtype_{2}_optim_{3}'.format(*vals) for vals in values] @pytest.mark.parametrize("dim1, dim2, gtype, optim_name", values, ids=names) @@ -86,7 +90,7 @@ def test_optimizer32bit(dim1, dim2, gtype, optim_name): bnb_optimizer = str2optimizers[optim_name][1]([p2]) if gtype == torch.float32: - atol, rtol = 1e-6, 1e-5 + atol, rtol = 2e-6, 1e-5 else: atol, rtol = 1e-4, 1e-3 @@ -201,7 +205,7 @@ def test_global_config(dim1, dim2, gtype): dim1 = [1024] dim2 = [32, 1024, 4097] gtype = [torch.float32, torch.float16] -optimizer_names = ['adam8bit', 'momentum8bit', 'rmsprop8bit', 'adam8bit_blockwise', 'lamb8bit', 'lars8bit', 'momentum8bit_blockwise', 'rmsprop8bit_blockwise', 'adagrad8bit_blockwise'] +optimizer_names = ['adam8bit', 'momentum8bit', 'rmsprop8bit', 'adam8bit_blockwise', 'adamw8bit_blockwise', 'lamb8bit', 'lars8bit', 'momentum8bit_blockwise', 'rmsprop8bit_blockwise', 'adagrad8bit_blockwise'] values = list(product(dim1,dim2, gtype, optimizer_names)) names = ['dim1_{0}_dim2_{1}_gtype_{2}_optim_{3}'.format(*vals) for vals in values] @pytest.mark.parametrize("dim1, dim2, gtype, optim_name", values, ids=names) -- cgit v1.2.3