test_chained_calls.py 3.0 KB

12345678910111213141516171819202122232425262728293031323334353637383940414243444546474849505152535455565758596061626364656667686970717273747576777879
  1. ######
  2. # Warning:torch this test is a work in progress. It will be modified soon.
  3. # - if you want more stable tests, see test_block_exact_match
  4. # - if you want to figure out chained inference, ask yozh
  5. import hivemind
  6. import pytest
  7. import torch
  8. from test_utils import *
  9. import src
  10. from src.bloom.from_pretrained import load_pretrained_block
  11. from src.client.remote_sequential import RemoteSequential
  12. from src.dht_utils import get_remote_sequence
  13. @pytest.mark.forked
  14. def test_forward_backward_exact_match(atol_forward=1e-4, atol_backward=1e-4, seq_length=1):
  15. dht = hivemind.DHT(initial_peers=INITIAL_PEERS, client_mode=True, start=True)
  16. config = src.DistributedBloomConfig.from_pretrained(MODEL_NAME)
  17. remote_blocks = get_remote_sequence(dht, 3, 6, config)
  18. assert isinstance(remote_blocks, RemoteSequential)
  19. ref_blocks = [
  20. load_pretrained_block(MODEL_NAME, 3, torch_dtype=torch.float32),
  21. load_pretrained_block(MODEL_NAME, 4, torch_dtype=torch.float32),
  22. load_pretrained_block(MODEL_NAME, 5, torch_dtype=torch.float32),
  23. ]
  24. inputs = torch.randn(1, seq_length, config.hidden_size, requires_grad=True)
  25. outputs_rpc = remote_blocks.forward(inputs)
  26. outputs_rpc.sum().backward()
  27. grads_rpc = inputs.grad
  28. inputs.grad = None
  29. hidden_states = inputs
  30. for ref_block in ref_blocks:
  31. hidden_states = ref_block.forward(hidden_states)[0]
  32. outputs_ref = hidden_states
  33. outputs_ref.sum().backward()
  34. grads_ref = inputs.grad
  35. assert torch.allclose(outputs_ref, outputs_rpc, rtol=0, atol=atol_forward)
  36. assert torch.allclose(grads_ref, grads_rpc, rtol=0, atol=atol_backward)
  37. @pytest.mark.forked
  38. def test_chained_inference_exact_match(atol_inference=1e-4):
  39. dht = hivemind.DHT(initial_peers=INITIAL_PEERS, client_mode=True, start=True)
  40. config = src.DistributedBloomConfig.from_pretrained(MODEL_NAME)
  41. remote_blocks = get_remote_sequence(dht, 3, 5, config)
  42. assert isinstance(remote_blocks, RemoteSequential)
  43. inputs = torch.randn(1, 8, config.hidden_size)
  44. outputs_inference = []
  45. with remote_blocks.inference_session(max_length=inputs.shape[1]) as sess:
  46. for i in range(inputs.shape[1]):
  47. outputs_inference.append(sess.step(inputs[:, i : i + 1, :]))
  48. outputs_inference = torch.cat(outputs_inference, dim=1)
  49. ref_blocks = [
  50. load_pretrained_block(MODEL_NAME, 3, torch_dtype=torch.float32),
  51. load_pretrained_block(MODEL_NAME, 4, torch_dtype=torch.float32),
  52. ]
  53. outputs_ref = []
  54. caches = [None, None]
  55. for i in range(inputs.shape[1]):
  56. new_caches = []
  57. hidden_states = inputs[:, i : i + 1, :]
  58. for ref_block, cache in zip(ref_blocks, caches):
  59. with torch.no_grad():
  60. hidden_states, new_cache = ref_block.forward(hidden_states, use_cache=True, layer_past=cache)
  61. new_caches.append(new_cache)
  62. outputs_ref.append(hidden_states)
  63. caches = new_caches
  64. outputs_ref = torch.cat(outputs_ref, dim=1)
  65. assert torch.allclose(outputs_ref, outputs_inference, rtol=0, atol=atol_inference)