/home/dat/pino/lib/python3.8/site-packages/jax/lib/xla_bridge.py:382: UserWarning: jax.host_count has been renamed to jax.process_count. This alias will eventually be removed; please update your code. warnings.warn( /home/dat/pino/lib/python3.8/site-packages/jax/lib/xla_bridge.py:369: UserWarning: jax.host_id has been renamed to jax.process_index. This alias will eventually be removed; please update your code. warnings.warn( Epoch ... (1/5): 0%| | 0/5 [00:00 state, train_metric, dropout_rngs = p_train_step(state, model_inputs, dropout_rngs) File "/home/dat/pino/lib/python3.8/site-packages/jax/_src/traceback_util.py", line 183, in reraise_with_filtered_traceback return fun(*args, **kwargs) File "/home/dat/pino/lib/python3.8/site-packages/jax/_src/api.py", line 1647, in f_pmapped out = pxla.xla_pmap( File "/home/dat/pino/lib/python3.8/site-packages/jax/core.py", line 1620, in bind return call_bind(self, fun, *args, **params) File "/home/dat/pino/lib/python3.8/site-packages/jax/core.py", line 1551, in call_bind outs = primitive.process(top_trace, fun, tracers, params) File "/home/dat/pino/lib/python3.8/site-packages/jax/core.py", line 1623, in process return trace.process_map(self, fun, tracers, params) File "/home/dat/pino/lib/python3.8/site-packages/jax/core.py", line 606, in process_call return primitive.impl(f, *tracers, **params) File "/home/dat/pino/lib/python3.8/site-packages/jax/interpreters/pxla.py", line 624, in xla_pmap_impl compiled_fun, fingerprint = parallel_callable(fun, backend, axis_name, axis_size, File "/home/dat/pino/lib/python3.8/site-packages/jax/linear_util.py", line 262, in memoized_fun ans = call(fun, *args) File "/home/dat/pino/lib/python3.8/site-packages/jax/interpreters/pxla.py", line 899, in parallel_callable compiled = xla.backend_compile(backend, built, compile_options) File "/home/dat/pino/lib/python3.8/site-packages/jax/interpreters/xla.py", line 360, in backend_compile return backend.compile(built_c, compile_options=options) jax._src.traceback_util.UnfilteredStackTrace: RuntimeError: Resource exhausted: Ran out of memory in memory space hbm. Used 35.77G of 15.48G hbm. Exceeded hbm capacity by 20.29G. Total hbm usage >= 36.29G: reserved 530.00M program 35.77G arguments 0B Output size 0B; shares 0B with arguments. Program hbm requirement 35.77G: global 692.0K scoped 253.0K HLO temp 35.77G (97.6% utilization: Unpadded (34.82G) Padded (35.67G), 0.3% fragmentation (105.77M)) Largest program allocations in hbm: 1. Size: 6.15G Operator: op_type="dot_general" op_name="pmap(train_step)/dot_general[ dimension_numbers=(((2,), (0,)), ((), ()))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/pino/lib/python3.8/site-packages/flax/linen/linear.py" source_line=175 Shape: f32[8,4096,50358]{1,2,0:T(8,128)} Unpadded size: 6.15G Extra memory due to padding: 256.0K (1.0x expansion) XLA label: %fusion.1737.remat4 = f32[8,4096,50358]{1,2,0:T(8,128)} fusion(f32[50358]{0:T(1024)} %get-tuple-element.23321, f32[768,50358,1]{0,1,2:T(8,128)} %bitcast.5512, f32[768]{0:T(1024)} %get-tuple-element.23322, f32[768]{0:T(1024)} %get-tuple-element.23323, f32[8... Allocation type: HLO temp ========================== 2. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1805.remat6 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2407, f32[8,12,28,128]{3,2,1,0:T(8,1... Allocation type: HLO temp ========================== 3. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13201 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2412, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9402, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 4. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1805.remat6 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2407, f32[8,12,28,128]{3,2,1,0:T(8,1... Allocation type: HLO temp ========================== 5. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13202 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2411, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9401, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 6. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1814 = bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2416, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9406, f32[8,12,28,128,128]{3,4,2,1,0:T(8,128)} %get-tuple-element.20627, f32[8,12,28,128,384]{... Allocation type: HLO temp ========================== 7. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13199 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2414, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9404, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 8. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13200 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2413, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9403, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 9. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1816.remat = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2418, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9408, f32[8,12,28,128,128]{3,4,2,1,0:... Allocation type: HLO temp ========================== 10. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1815.remat = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2417, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9407, f32[8,12,28,128,128]{3,4,2,1,0:... Allocation type: HLO temp ========================== 11. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13203 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2410, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9400, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 12. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13204 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2409, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9399, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 13. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13205 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2408, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9398, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 14. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11557 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25239, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28505.remat_uncompressed, f32[8,12... Allocation type: HLO temp ========================== 15. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11549 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25240, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28470.remat_uncompressed.remat, f3... Allocation type: HLO temp ========================== 16. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11469 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.20990, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28115, f32[8,12,32,128,64]{3,2,4,1... Allocation type: HLO temp ========================== 17. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11477 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.20989, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28151, f32[8,12,32,128,64]{3,2,4,1... Allocation type: HLO temp ========================== 18. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11541 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25236, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28435.remat_uncompressed, f32[8,12... Allocation type: HLO temp ========================== 19. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=584 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.2085.remat5.1.remat = f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} fusion(f32[8,28,128,384]{2,3,1,0:T(8,128)} %get-tuple-element.20992, bf16[8,12,28,384,64]{3,2,4,1,0:T(8,128)(2,1)} %fusion.2473.remat_uncompressed, f32[8,12,32,128,64]{3,2,4,1,0:T(8,128... Allocation type: HLO temp ========================== 20. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11533 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25238, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28400.remat_uncompressed, f32[8,12... Allocation type: HLO temp ========================== The stack trace below excludes JAX-internal frames. The preceding is the original exception that occurred, unmodified. -------------------- The above exception was the direct cause of the following exception: Traceback (most recent call last): File "./run_mlm_flax.py", line 725, in state, train_metric, dropout_rngs = p_train_step(state, model_inputs, dropout_rngs) File "/home/dat/pino/lib/python3.8/site-packages/jax/interpreters/xla.py", line 360, in backend_compile return backend.compile(built_c, compile_options=options) RuntimeError: Resource exhausted: Ran out of memory in memory space hbm. Used 35.77G of 15.48G hbm. Exceeded hbm capacity by 20.29G. Total hbm usage >= 36.29G: reserved 530.00M program 35.77G arguments 0B Output size 0B; shares 0B with arguments. Program hbm requirement 35.77G: global 692.0K scoped 253.0K HLO temp 35.77G (97.6% utilization: Unpadded (34.82G) Padded (35.67G), 0.3% fragmentation (105.77M)) Largest program allocations in hbm: 1. Size: 6.15G Operator: op_type="dot_general" op_name="pmap(train_step)/dot_general[ dimension_numbers=(((2,), (0,)), ((), ()))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/pino/lib/python3.8/site-packages/flax/linen/linear.py" source_line=175 Shape: f32[8,4096,50358]{1,2,0:T(8,128)} Unpadded size: 6.15G Extra memory due to padding: 256.0K (1.0x expansion) XLA label: %fusion.1737.remat4 = f32[8,4096,50358]{1,2,0:T(8,128)} fusion(f32[50358]{0:T(1024)} %get-tuple-element.23321, f32[768,50358,1]{0,1,2:T(8,128)} %bitcast.5512, f32[768]{0:T(1024)} %get-tuple-element.23322, f32[768]{0:T(1024)} %get-tuple-element.23323, f32[8... Allocation type: HLO temp ========================== 2. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1805.remat6 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2407, f32[8,12,28,128]{3,2,1,0:T(8,1... Allocation type: HLO temp ========================== 3. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13201 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2412, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9402, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 4. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1805.remat6 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2407, f32[8,12,28,128]{3,2,1,0:T(8,1... Allocation type: HLO temp ========================== 5. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13202 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2411, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9401, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 6. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1814 = bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2416, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9406, f32[8,12,28,128,128]{3,4,2,1,0:T(8,128)} %get-tuple-element.20627, f32[8,12,28,128,384]{... Allocation type: HLO temp ========================== 7. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13199 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2414, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9404, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 8. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13200 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2413, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9403, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 9. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1816.remat = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2418, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9408, f32[8,12,28,128,128]{3,4,2,1,0:... Allocation type: HLO temp ========================== 10. Size: 672.00M Operator: op_type="div" op_name="pmap(train_step)/div" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=619 Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.1815.remat = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2417, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9407, f32[8,12,28,128,128]{3,4,2,1,0:... Allocation type: HLO temp ========================== 11. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13203 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2410, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9400, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 12. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13204 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2409, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9399, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 13. Size: 672.00M Shape: bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)} Unpadded size: 672.00M XLA label: %fusion.13205 = (bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}, bf16[8,12,28,128,1024]{3,4,2,1,0:T(8,128)(2,1)}) fusion(f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.2408, f32[8,12,28,128]{3,2,1,0:T(8,128)} %fusion.9398, f32[8,12,28,128,128]{3,4,2,1,0:T(8,1... Allocation type: HLO temp ========================== 14. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11557 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25239, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28505.remat_uncompressed, f32[8,12... Allocation type: HLO temp ========================== 15. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11549 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25240, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28470.remat_uncompressed.remat, f3... Allocation type: HLO temp ========================== 16. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11469 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.20990, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28115, f32[8,12,32,128,64]{3,2,4,1... Allocation type: HLO temp ========================== 17. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11477 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.20989, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28151, f32[8,12,32,128,64]{3,2,4,1... Allocation type: HLO temp ========================== 18. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11541 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25236, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28435.remat_uncompressed, f32[8,12... Allocation type: HLO temp ========================== 19. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=584 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.2085.remat5.1.remat = f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} fusion(f32[8,28,128,384]{2,3,1,0:T(8,128)} %get-tuple-element.20992, bf16[8,12,28,384,64]{3,2,4,1,0:T(8,128)(2,1)} %fusion.2473.remat_uncompressed, f32[8,12,32,128,64]{3,2,4,1,0:T(8,128... Allocation type: HLO temp ========================== 20. Size: 504.00M Operator: op_type="dot_general" op_name="pmap(train_step)/jit(jvp(_einsum))/dot_general[ dimension_numbers=(((4,), (4,)), ((0, 1, 2), (0, 1, 2)))\n precision=None\n preferred_element_type=None ]" source_file="/home/dat/transformers/src/transformers/models/big_bird/modeling_flax_big_bird.py" source_line=591 Shape: f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)} Unpadded size: 504.00M XLA label: %fusion.11533 = (f32[8,12,28,128]{3,2,1,0:T(8,128)}, f32[8,12,28,128,384]{3,4,2,1,0:T(8,128)}) fusion(s32[8,12,30,128,384]{3,4,2,1,0:T(8,128)} %get-tuple-element.25238, bf16[8,12,28,384,64]{3,2,1,0,4:T(8,128)(2,1)} %slice.28400.remat_uncompressed, f32[8,12... Allocation type: HLO temp ==========================