def adjust_learning_rate(init_lr, optimizer, epoch):
    lr = init_lr * (0.1 ** (epoch//100))
    toprint = True
    for param_group in optimizer.param_groups:
        if param_group["lr"]!=lr:
            param_group["lr"] = lr
            if toprint:
                logging.info("Switching to learning rate %f" % lr)
                toprint = False
Exemplo n.º 2
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def do_something():
    request.params = get_request_args()
    url = str(request.url)
    # get ip
    ip = request.headers.get('X-Real-IP')
    if ip is None or ip == '':
        ip = "127.0.0.1"
    logging.info('ip: %2s request url is: [%s], input is: [%s]', ip, url,
                 request.params)
    api_version, real_path = parse_path(request.path, web['url_pre'],
                                        web['api_version'])
    request.api_version = api_version
    validate_json(real_path)
Exemplo n.º 3
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def response_handler(response):
    # 关闭session
    try:
        g.session.close()
    except:
        pass
    response.headers['Access-Control-Allow-Origin'] = '*'
    response.headers[
        'Access-Control-Allow-Headers'] = 'x-requested-with,content-type,authorization,Captcha-ETag'
    response.headers[
        'Access-Control-Expose-Headers'] = 'authorization, Captcha-ETag'
    if not (response.headers['Content-Type'] == "image/png"):
        logging.info("response is [{}]".format(response.data))
    return response
Exemplo n.º 4
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def send_sms_dy(phone_number, template_param):
    req = top.api.AlibabaAliqinFcSmsNumSendRequest()
    req.set_app_info(
        top.appinfo(R_SMS['ACCESS_KEY_ID'], R_SMS['ACCESS_KEY_SECRET']))
    req.extend = uuid.uuid1()
    req.sms_type = "normal"
    req.sms_free_sign_name = R_SMS['sign_name']
    req.sms_param = template_param
    req.rec_num = phone_number
    req.sms_template_code = R_SMS['template_code']
    try:
        resp = req.getResponse()
        print resp
        logging.info('fun_out: [sms_response: %2s]', resp)
        if resp['alibaba_aliqin_fc_sms_num_send_response']['result'][
                'err_code'] == "0":
            return True
    except Exception, e:
        logging.info('fun_out: [sms_response: %2s]', e)
Exemplo n.º 5
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def sendmail(toaddrs, subject=email["subject"], msg=None):
    """
    :param toaddrs: 收件人地址可多个["",""]
    :param subject: 邮件主题
    :param msg: 邮件内容
    :return:
    """
    mail_msg = MIMEMultipart()
    if not isinstance(subject, unicode):
        subject = unicode(subject, 'utf-8')
    mail_msg['Subject'] = subject
    mail_msg['From'] = email["from_email"]
    mail_msg['To'] = ','.join(toaddrs)
    mail_msg.attach(MIMEText(msg, 'html', 'utf-8'))
    try:
        s = smtplib.SMTP_SSL()
        s.connect(email["smtp_addr"])
        s.login(email["from_email"], email["from_email_pwd"])
        s.sendmail(email["from_email"], toaddrs, mail_msg.as_string())
        s.quit()
        logging.info("email send sucess. %s", ','.join(toaddrs))
    except IOError:
        logging.error("Error unable to send email. %s", traceback.format_exc())
Exemplo n.º 6
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def send_sms_al(phone, param_string):

    url = 'https://sms.aliyuncs.com/'
    ts = datetime.utcnow().strftime('%Y-%m-%dT%H:%M:%SZ')
    once = str(uuid.uuid4())
    data = {
        'Action': 'SingleSendSms',
        'SignName': sign_name,
        'TemplateCode': template_code,
        'RecNum': phone,
        'ParamString': param_string,
        'Format': 'JSON',
        'Version': '2016-09-27',
        'AccessKeyId': access_key_id,
        'SignatureMethod': 'HMAC-SHA1',
        'Timestamp': ts,
        'SignatureVersion': '1.0',
        'SignatureNonce': once,
    }

    def __percent_encode(s):
        import urllib
        s = str(s)
        s = urllib.quote(s.decode('utf8').encode('utf8'), '')
        s = s.replace('+', '%20')
        s = s.replace('*', '%2A')
        s = s.replace('%7E', '~')
        return s

    def __gen_signature(data, req_method, secret):
        import hashlib
        import hmac
        import base64

        sorted_data = sorted(data, key=lambda v: v[0])
        vals = []
        for k, v in sorted_data:
            vals.append(__percent_encode(k) + '=' + __percent_encode(v))

        params = '&'.join(vals)
        string_to_sign = req_method + '&%2F&' + __percent_encode(params)
        key = secret + '&'
        signature = base64.encodestring(
            hmac.new(key, string_to_sign, hashlib.sha1).digest()).strip()
        return signature

    try:
        headers = {
            'Content-Type': 'application/x-www-form-urlencoded',
        }

        signature = __gen_signature(data.items(), 'POST', access_key_secret)
        data['Signature'] = signature

        r = requests.post(url, data=data, headers=headers)
        resp = r.json()
        logging.info('fun_out: [sms_response: %2s]', json.dumps(resp))
        print resp
        if resp.get('Model'):
            return True
    except Exception, e:
        logging.error('sms_err: [sms_err: %2s]', e)
    def fit(self, trainloader, validloader, lr=0.001, batch_size=128, num_epochs=10, corrupt=0.3,
        loss_type="mse"):
        """
        data_x: FloatTensor
        valid_x: FloatTensor
        """
        use_cuda = torch.cuda.is_available()
        if use_cuda:
            self.cuda()
        logging.info("=====Denoising Autoencoding layer=======")
        # optimizer = optim.Adam(filter(lambda p: p.requires_grad, self.parameters()), lr=lr)
        optimizer = optim.SGD(filter(lambda p: p.requires_grad, self.parameters()), lr=lr, momentum=0.9)
        if loss_type=="mse":
            criterion = MSELoss()
        elif loss_type=="cross-entropy":
            criterion = BCELoss()

        # validate
        total_loss = 0.0
        total_num = 0
        for batch_idx, (inputs, _) in enumerate(validloader):
            # inputs = inputs.view(inputs.size(0), -1).float()
            # if use_cuda:
            #     inputs = inputs.cuda()
            inputs = Variable(inputs)
            hidden = self.encode(inputs)
            if loss_type=="cross-entropy":
                outputs = self.decode(hidden, binary=True)
            else:
                outputs = self.decode(hidden)

            valid_recon_loss = criterion(outputs, inputs)
            total_loss += valid_recon_loss.data * len(inputs)
            total_num += inputs.size()[0]

        valid_loss = total_loss / total_num
        logging.info("#Epoch 0: Valid Reconstruct Loss: %.4f" % (valid_loss))

        self.train()
        for epoch in range(num_epochs):
            # train 1 epoch
            train_loss = 0.0
            adjust_learning_rate(lr, optimizer, epoch)
            for batch_idx, (inputs, _) in enumerate(trainloader):
                # inputs = inputs.view(inputs.size(0), -1).float()
                inputs_corr = masking_noise(inputs, corrupt)
                # if use_cuda:
                #     inputs = inputs.cuda()
                #     inputs_corr = inputs_corr.cuda()
                optimizer.zero_grad()
                inputs = Variable(inputs)
                inputs_corr = Variable(inputs_corr)

                hidden = self.encode(inputs_corr)
                if loss_type=="cross-entropy":
                    outputs = self.decode(hidden, binary=True)
                else:
                    outputs = self.decode(hidden)
                recon_loss = criterion(outputs, inputs)
                train_loss += recon_loss.data*len(inputs)
                recon_loss.backward()
                optimizer.step()

            # validate
            valid_loss = 0.0
            for batch_idx, (inputs, _) in enumerate(validloader):
                # inputs = inputs.view(inputs.size(0), -1).float()
                # if use_cuda:
                #     inputs = inputs.cuda()
                inputs = Variable(inputs)
                hidden = self.encode(inputs, train=False)
                if loss_type=="cross-entropy":
                    outputs = self.decode(hidden, binary=True)
                else:
                    outputs = self.decode(hidden)

                valid_recon_loss = criterion(outputs, inputs)
                valid_loss += valid_recon_loss.data * len(inputs)

            logging.info("#Epoch %3d: Reconstruct Loss: %.4f, Valid Reconstruct Loss: %.4f" % (
                epoch+1, train_loss / len(trainloader.dataset), valid_loss / len(validloader.dataset)))