mirror of
https://github.com/ggerganov/whisper.cpp.git
synced 2024-12-18 20:27:53 +00:00
226 lines
6.7 KiB
Python
226 lines
6.7 KiB
Python
import os
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import subprocess
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import re
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import csv
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import wave
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import contextlib
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import argparse
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# Custom action to handle comma-separated list
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class ListAction(argparse.Action):
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def __call__(self, parser, namespace, values, option_string=None):
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setattr(namespace, self.dest, [int(val) for val in values.split(",")])
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parser = argparse.ArgumentParser(description="Benchmark the speech recognition model")
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# Define the argument to accept a list
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parser.add_argument(
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"-t",
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"--threads",
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dest="threads",
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action=ListAction,
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default=[4],
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help="List of thread counts to benchmark (comma-separated, default: 4)",
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)
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parser.add_argument(
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"-p",
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"--processors",
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dest="processors",
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action=ListAction,
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default=[1],
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help="List of processor counts to benchmark (comma-separated, default: 1)",
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)
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parser.add_argument(
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"-f",
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"--filename",
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type=str,
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default="./samples/jfk.wav",
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help="Relative path of the file to transcribe (default: ./samples/jfk.wav)",
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)
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# Parse the command line arguments
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args = parser.parse_args()
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sample_file = args.filename
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threads = args.threads
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processors = args.processors
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# Define the models, threads, and processor counts to benchmark
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models = [
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"ggml-tiny.en.bin",
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"ggml-tiny.bin",
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"ggml-base.en.bin",
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"ggml-base.bin",
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"ggml-small.en.bin",
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"ggml-small.bin",
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"ggml-medium.en.bin",
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"ggml-medium.bin",
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"ggml-large-v1.bin",
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"ggml-large-v2.bin",
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"ggml-large-v3.bin",
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"ggml-large-v3-turbo.bin",
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]
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metal_device = ""
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# Initialize a dictionary to hold the results
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results = {}
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gitHashHeader = "Commit"
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modelHeader = "Model"
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hardwareHeader = "Hardware"
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recordingLengthHeader = "Recording Length (seconds)"
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threadHeader = "Thread"
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processorCountHeader = "Processor Count"
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loadTimeHeader = "Load Time (ms)"
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sampleTimeHeader = "Sample Time (ms)"
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encodeTimeHeader = "Encode Time (ms)"
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decodeTimeHeader = "Decode Time (ms)"
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sampleTimePerRunHeader = "Sample Time per Run (ms)"
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encodeTimePerRunHeader = "Encode Time per Run (ms)"
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decodeTimePerRunHeader = "Decode Time per Run (ms)"
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totalTimeHeader = "Total Time (ms)"
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def check_file_exists(file: str) -> bool:
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return os.path.isfile(file)
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def get_git_short_hash() -> str:
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try:
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return (
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subprocess.check_output(["git", "rev-parse", "--short", "HEAD"])
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.decode()
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.strip()
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)
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except subprocess.CalledProcessError as e:
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return ""
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def wav_file_length(file: str = sample_file) -> float:
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with contextlib.closing(wave.open(file, "r")) as f:
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frames = f.getnframes()
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rate = f.getframerate()
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duration = frames / float(rate)
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return duration
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def extract_metrics(output: str, label: str) -> tuple[float, float]:
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match = re.search(rf"{label} \s*=\s*(\d+\.\d+)\s*ms\s*/\s*(\d+)\s*runs", output)
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time = float(match.group(1)) if match else None
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runs = float(match.group(2)) if match else None
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return time, runs
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def extract_device(output: str) -> str:
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match = re.search(r"picking default device: (.*)", output)
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device = match.group(1) if match else "Not found"
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return device
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# Check if the sample file exists
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if not check_file_exists(sample_file):
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raise FileNotFoundError(f"Sample file {sample_file} not found")
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recording_length = wav_file_length()
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# Check that all models exist
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# Filter out models from list that are not downloaded
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filtered_models = []
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for model in models:
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if check_file_exists(f"models/{model}"):
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filtered_models.append(model)
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else:
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print(f"Model {model} not found, removing from list")
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models = filtered_models
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# Loop over each combination of parameters
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for model in filtered_models:
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for thread in threads:
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for processor_count in processors:
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# Construct the command to run
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cmd = f"./main -m models/{model} -t {thread} -p {processor_count} -f {sample_file}"
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# Run the command and get the output
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process = subprocess.Popen(
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cmd, shell=True, stdout=subprocess.PIPE, stderr=subprocess.STDOUT
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)
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output = ""
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while process.poll() is None:
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output += process.stdout.read().decode()
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# Parse the output
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load_time_match = re.search(r"load time\s*=\s*(\d+\.\d+)\s*ms", output)
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load_time = float(load_time_match.group(1)) if load_time_match else None
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metal_device = extract_device(output)
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sample_time, sample_runs = extract_metrics(output, "sample time")
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encode_time, encode_runs = extract_metrics(output, "encode time")
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decode_time, decode_runs = extract_metrics(output, "decode time")
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total_time_match = re.search(r"total time\s*=\s*(\d+\.\d+)\s*ms", output)
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total_time = float(total_time_match.group(1)) if total_time_match else None
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model_name = model.replace("ggml-", "").replace(".bin", "")
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print(
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f"Ran model={model_name} threads={thread} processor_count={processor_count}, took {total_time}ms"
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)
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# Store the times in the results dictionary
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results[(model_name, thread, processor_count)] = {
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loadTimeHeader: load_time,
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sampleTimeHeader: sample_time,
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encodeTimeHeader: encode_time,
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decodeTimeHeader: decode_time,
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sampleTimePerRunHeader: round(sample_time / sample_runs, 2),
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encodeTimePerRunHeader: round(encode_time / encode_runs, 2),
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decodeTimePerRunHeader: round(decode_time / decode_runs, 2),
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totalTimeHeader: total_time,
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}
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# Write the results to a CSV file
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with open("benchmark_results.csv", "w", newline="") as csvfile:
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fieldnames = [
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gitHashHeader,
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modelHeader,
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hardwareHeader,
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recordingLengthHeader,
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threadHeader,
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processorCountHeader,
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loadTimeHeader,
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sampleTimeHeader,
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encodeTimeHeader,
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decodeTimeHeader,
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sampleTimePerRunHeader,
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encodeTimePerRunHeader,
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decodeTimePerRunHeader,
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totalTimeHeader,
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]
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writer = csv.DictWriter(csvfile, fieldnames=fieldnames)
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writer.writeheader()
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shortHash = get_git_short_hash()
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# Sort the results by total time in ascending order
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sorted_results = sorted(results.items(), key=lambda x: x[1].get(totalTimeHeader, 0))
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for params, times in sorted_results:
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row = {
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gitHashHeader: shortHash,
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modelHeader: params[0],
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hardwareHeader: metal_device,
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recordingLengthHeader: recording_length,
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threadHeader: params[1],
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processorCountHeader: params[2],
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}
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row.update(times)
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writer.writerow(row)
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