This commit is contained in:
552068321@qq.com 2022-11-08 10:54:43 +08:00
parent dcc9e75ef1
commit 84d8e916a6

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@ -242,7 +242,7 @@ from app import file_tool
# 启动训练
#@start_train_algorithm()
@start_train_algorithm()
def train_R0DY(params_str, id):
from app.yolov5.train_server import train_start
params = TrainParams()
@ -261,60 +261,60 @@ def train_R0DY(params_str, id):
# 启动验证程序
# @start_test_algorithm()
# def validate_RODY(params_str, id):
# from app.yolov5.validate_server import validate_start
# params = TrainParams()
# params.read_from_str(params_str)
# weights = params.get('modPath').value # 验证模型绝对路径
# (filename, extension) = os.path.splitext(weights) # 文件名与后缀名分开
# img_size = int(filename.split('ROD')[1].split('_')[2]) # 获取图像参数
# # v_num = int(filename.split('ROD')[1].split('_')[1]) #获取版本号
# output = params.get('outputPath').value
# batch_size = params.get('batch_size').default
# device = params.get('device').value
#
# validate_start(weights, img_size, batch_size, device, output, id)
#
#
# @start_detect_algorithm()
# def detect_RODY(params_str, id):
# from app.yolov5.detect_server import detect_start
# params = TrainParams()
# params.read_from_str(params_str)
# weights = params.get('modPath').value # 检测模型绝对路径
# input = params.get('inputPath').value
# outpath = params.get('outputPath').value
# # (filename, extension) = os.path.splitext(weights) # 文件名与后缀名分开
# # img_size = int(filename.split('ROD')[1].split('_')[2]) #获取图像参数
# # v_num = int(filename.split('ROD')[1].split('_')[1]) #获取版本号
# # batch_size = params.get('batch_size').default
# device = params.get('device').value
#
# detect_start(input, weights, outpath, device, id)
#
#
# @start_download_pt()
# def Export_model_RODY(params_str):
# from app.yolov5.export import Start_Model_Export
# import zipfile
# params = TrainParams()
# params.read_from_str(params_str)
# exp_inputPath = params.get('exp_inputPath').value # 模型路径
# exp_device = params.get('device').value
# modellist = Start_Model_Export(exp_inputPath, exp_device)
# exp_outputPath = exp_inputPath.replace('pt', 'zip') # 压缩文件
# zipf = zipfile.ZipFile(exp_outputPath, 'w')
# for file in modellist:
# zipf.write(file, arcname=Path(file).name) # 将torchscript和onnx模型压缩
#
# return exp_outputPath
# zipf.write(modellist[1], arcname=modellist[1])
# zip_inputpath = os.path.join(exp_outputPath, "inference_model")
# zip_outputPath = os.path.join(exp_outputPath, "inference_model.zip")
@start_test_algorithm()
def validate_RODY(params_str, id):
from app.yolov5.validate_server import validate_start
params = TrainParams()
params.read_from_str(params_str)
weights = params.get('modPath').value # 验证模型绝对路径
(filename, extension) = os.path.splitext(weights) # 文件名与后缀名分开
img_size = int(filename.split('ROD')[1].split('_')[2]) # 获取图像参数
# v_num = int(filename.split('ROD')[1].split('_')[1]) #获取版本号
output = params.get('outputPath').value
batch_size = params.get('batch_size').default
device = params.get('device').value
validate_start(weights, img_size, batch_size, device, output, id)
#@obtain_train_param()
@start_detect_algorithm()
def detect_RODY(params_str, id):
from app.yolov5.detect_server import detect_start
params = TrainParams()
params.read_from_str(params_str)
weights = params.get('modPath').value # 检测模型绝对路径
input = params.get('inputPath').value
outpath = params.get('outputPath').value
# (filename, extension) = os.path.splitext(weights) # 文件名与后缀名分开
# img_size = int(filename.split('ROD')[1].split('_')[2]) #获取图像参数
# v_num = int(filename.split('ROD')[1].split('_')[1]) #获取版本号
# batch_size = params.get('batch_size').default
device = params.get('device').value
detect_start(input, weights, outpath, device, id)
@start_download_pt()
def Export_model_RODY(params_str):
from app.yolov5.export import Start_Model_Export
import zipfile
params = TrainParams()
params.read_from_str(params_str)
exp_inputPath = params.get('exp_inputPath').value # 模型路径
exp_device = params.get('device').value
modellist = Start_Model_Export(exp_inputPath, exp_device)
exp_outputPath = exp_inputPath.replace('pt', 'zip') # 压缩文件
zipf = zipfile.ZipFile(exp_outputPath, 'w')
for file in modellist:
zipf.write(file, arcname=Path(file).name) # 将torchscript和onnx模型压缩
return exp_outputPath
zipf.write(modellist[1], arcname=modellist[1])
zip_inputpath = os.path.join(exp_outputPath, "inference_model")
zip_outputPath = os.path.join(exp_outputPath, "inference_model.zip")
@obtain_train_param()
def returnTrainParams():
# nvmlInit()
# gpuDeviceCount = nvmlDeviceGetCount() # 获取Nvidia GPU块数
@ -347,63 +347,63 @@ def returnTrainParams():
return params_str
# @obtain_test_param()
# def returnValidateParams():
# # nvmlInit()
# # gpuDeviceCount = nvmlDeviceGetCount() # 获取Nvidia GPU块数
# # _kernel = [f"cuda:{a}" for a in range(gpuDeviceCount)]
# params_list = [
# {"index": 0, "name": "modPath", "value": "E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt",
# "description": '验证模型路径', "default": "./app/maskrcnn/saved_model/test.pt", "type": "S", 'show': False},
# {"index": 1, "name": "batch_size", "value": 1, "description": '批次图像数量', "default": 1, "type": "I",
# 'show': False},
# {"index": 2, "name": "img_size", "value": 640, "description": '训练图像大小', "default": 640, "type": "I",
# 'show': False},
# {"index": 3, "name": "outputPath", "value": 'E:/aicheck/data_set/11442136178662604800/val_results/',
# "description": '输出结果路径',
# "default": './app/maskrcnn/datasets/M006B_waibi/res', "type": "S", 'show': False},
# {"index": 4, "name": "device", "value": "0", "description": '训练核心', "default": "cuda", "type": "S",
# "items": '', 'show': False} # _kernel
# ]
# # {"index": 9, "name": "saveEpoch", "value": 2, "description": '保存模型轮次', "default": 2, "type": "I", 'show': True}]
# params_str = json.dumps(params_list)
# return params_str
#
#
# @obtain_detect_param()
# def returnDetectParams():
# # nvmlInit()
# # gpuDeviceCount = nvmlDeviceGetCount() # 获取Nvidia GPU块数
# # _kernel = [f"cuda:{a}" for a in range(gpuDeviceCount)]
# params_list = [
# {"index": 0, "name": "inputPath", "value": 'E:/aicheck/data_set/11442136178662604800/input/',
# "description": '输入图像路径', "default": './app/maskrcnn/datasets/M006B_waibi/JPEGImages', "type": "S",
# 'show': False},
# {"index": 1, "name": "outputPath", "value": 'E:/aicheck/data_set/11442136178662604800/val_results/',
# "description": '输出结果路径',
# "default": './app/maskrcnn/datasets/M006B_waibi/res', "type": "S", 'show': False},
# {"index": 0, "name": "modPath", "value": "E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt",
# "description": '模型路径', "default": "./app/maskrcnn/saved_model/test.pt", "type": "S", 'show': False},
# {"index": 3, "name": "device", "value": "0", "description": '推理核', "default": "cpu", "type": "S",
# 'show': False},
# ]
# # {"index": 9, "name": "saveEpoch", "value": 2, "description": '保存模型轮次', "default": 2, "type": "I", 'show': True}]
# params_str = json.dumps(params_list)
# return params_str
#
#
# @obtain_download_pt_param()
# def returnDownloadParams():
# params_list = [
# {"index": 0, "name": "exp_inputPath", "value": 'E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt',
# "description": '转化模型输入路径',
# "default": '/mnt/sdc/IntelligentizeAI/IntelligentizeAI/data_set/weights/new磁环检测test_183504733393264640_R-DDM_11.pt/',
# "type": "S", 'show': False},
# {"index": 1, "name": "device", "value": 'gpu', "description": 'CPU或GPU', "default": 'gpu', "type": "S",
# 'show': False}
# ]
# params_str = json.dumps(params_list)
# return params_str
@obtain_test_param()
def returnValidateParams():
# nvmlInit()
# gpuDeviceCount = nvmlDeviceGetCount() # 获取Nvidia GPU块数
# _kernel = [f"cuda:{a}" for a in range(gpuDeviceCount)]
params_list = [
{"index": 0, "name": "modPath", "value": "E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt",
"description": '验证模型路径', "default": "./app/maskrcnn/saved_model/test.pt", "type": "S", 'show': False},
{"index": 1, "name": "batch_size", "value": 1, "description": '批次图像数量', "default": 1, "type": "I",
'show': False},
{"index": 2, "name": "img_size", "value": 640, "description": '训练图像大小', "default": 640, "type": "I",
'show': False},
{"index": 3, "name": "outputPath", "value": 'E:/aicheck/data_set/11442136178662604800/val_results/',
"description": '输出结果路径',
"default": './app/maskrcnn/datasets/M006B_waibi/res', "type": "S", 'show': False},
{"index": 4, "name": "device", "value": "0", "description": '训练核心', "default": "cuda", "type": "S",
"items": '', 'show': False} # _kernel
]
# {"index": 9, "name": "saveEpoch", "value": 2, "description": '保存模型轮次', "default": 2, "type": "I", 'show': True}]
params_str = json.dumps(params_list)
return params_str
@obtain_detect_param()
def returnDetectParams():
# nvmlInit()
# gpuDeviceCount = nvmlDeviceGetCount() # 获取Nvidia GPU块数
# _kernel = [f"cuda:{a}" for a in range(gpuDeviceCount)]
params_list = [
{"index": 0, "name": "inputPath", "value": 'E:/aicheck/data_set/11442136178662604800/input/',
"description": '输入图像路径', "default": './app/maskrcnn/datasets/M006B_waibi/JPEGImages', "type": "S",
'show': False},
{"index": 1, "name": "outputPath", "value": 'E:/aicheck/data_set/11442136178662604800/val_results/',
"description": '输出结果路径',
"default": './app/maskrcnn/datasets/M006B_waibi/res', "type": "S", 'show': False},
{"index": 0, "name": "modPath", "value": "E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt",
"description": '模型路径', "default": "./app/maskrcnn/saved_model/test.pt", "type": "S", 'show': False},
{"index": 3, "name": "device", "value": "0", "description": '推理核', "default": "cpu", "type": "S",
'show': False},
]
# {"index": 9, "name": "saveEpoch", "value": 2, "description": '保存模型轮次', "default": 2, "type": "I", 'show': True}]
params_str = json.dumps(params_list)
return params_str
@obtain_download_pt_param()
def returnDownloadParams():
params_list = [
{"index": 0, "name": "exp_inputPath", "value": 'E:/alg_demo-master/alg_demo/app/yolov5/圆孔_123_RODY_1_640.pt',
"description": '转化模型输入路径',
"default": '/mnt/sdc/IntelligentizeAI/IntelligentizeAI/data_set/weights/new磁环检测test_183504733393264640_R-DDM_11.pt/',
"type": "S", 'show': False},
{"index": 1, "name": "device", "value": 'gpu', "description": 'CPU或GPU', "default": 'gpu', "type": "S",
'show': False}
]
params_str = json.dumps(params_list)
return params_str
if __name__ == '__main__':