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- from inference.mlx.sharded_inference_engine import MLXDynamicShardInferenceEngine
- from inference.inference_engine import InferenceEngine
- from inference.shard import Shard
- from inference.tinygrad.inference import TinygradDynamicShardInferenceEngine
- import numpy as np
- # An inference engine should work the same for any number of Shards, as long as the Shards are continuous.
- async def test_inference_engine(inference_engine: InferenceEngine, model_id: str, input_data: np.array):
- # inference_engine.reset_shard(Shard("", 0,0,0))
- resp_full, _ = await inference_engine.infer_prompt(shard=Shard(model_id=model_id, start_layer=0, end_layer=1, n_layers=2), prompt="In one word, what is the capital of USA? ")
- print("resp_full", resp_full)
- print("decoded", inference_engine.tokenizer.decode(resp_full))
- # inference_engine.reset_shard(Shard("", 0,0,0))
- # resp1, _ = await inference_engine.infer_tensor(shard=Shard(model_id=model_id, start_layer=0, end_layer=0, n_layers=2), input_data=input_data)
- # resp2, _ = await inference_engine.infer_tensor(shard=Shard(model_id=model_id, start_layer=1, end_layer=1, n_layers=2), input_data=resp1)
- # assert np.array_equal(resp_full, resp2)
- import asyncio
- # asyncio.run(test_inference_engine(
- # MLXDynamicShardInferenceEngine(),
- # "mlx-community/Meta-Llama-3-8B-Instruct-4bit",
- # [1234]
- # ))
- asyncio.run(test_inference_engine(
- TinygradDynamicShardInferenceEngine(),
- "/Users/alex/Library/Caches/tinygrad/downloads/llama3-8b-sfr",
- [1234]
- ))
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