华为Could API人工智能系列——文本合成MP3音频_api-huacloud.net-程序员宅基地

技术标签: 华为Could API人工智能系列  音视频  华为  华为云  人工智能  

华为Could API人工智能系列——文本合成MP3音频


前言

云原生时代,开发者们的编程方式、编程习惯都发生了天翻地覆的变化,大家逐渐地习惯在云端构建自己的应用。作为新一代的开发者们,如何更快速了解云,学习云,使用云,更便捷、更智能的开发代码,从而提升我们的开发效率,是当前最热门的话题之一,而Huawei Cloud Toolkit,作为连接华为云的百宝箱,是集成在各大IDE平台上的插件集合,会在方方面面提升着开发者的效率。

华为云API开发套件助力开发者快速集成华为云,可做到便捷连接200+的华为云服务,引用7000+的华为云API服务,在IDE中集成华为云的功能,让开发者与云端华为云建立连接。

智能编码方面集成了华为云自主研发的代码大模型和软件分析技术,全场景函数级、行级代码生成,同规模算力一次通过业界第一,这会帮助开发者更为高效的使用自动语义生成,达到快速开发的目的,使整个过程更智能。

环境准备

开发语言:Python

开发工具:PyCharm Community Edition 2023.1.4

PyCharm插件:

1、Chinese (Simplified) Language Pack /中文语言包

2、Huawei Cloud API:华为云API插件提供华为云服务全量API检索、调试、SDK代码自动补全、集成华为云CLI、示例代码等功能

3、Huawei Cloud CodeArts Check:华为云代码检查插件提供业界规范(含华为云)检查,支持一键格式化和代码自动修复,当前支持Java、C++、C,这个使您使用的环境操作即可,我这里用的python没有提示。

4、Huawei Cloud CodeArts Snap:华为云 CodeArt Snap 智能编程助手致力于打造现代化开发新范式,通过将自然语言转化为规范可阅读、无开源漏洞的编程语言,提升开发者编码效率,助力企业快速响应市场不确定性;

5、Huawei Cloud Toolkit Platform:华为云底座插件为华为云各类云服务插件提供公共能力,比如单点登录、UI集成、API访问等功能;

PyCharm环境的搭建:https://laoshifu.blog.csdn.net/article/details/135279145

API接口开通地址:https://console.huaweicloud.com/nlp/#/nlp/overview 


文本合成MP3音频

语音合成,是一种将文本转换成逼真语音的服务。用户通过实时访问和调用API获取语音合成结果,将用户输入的文字合成为音频。通过音色选择、自定义音量、语速,为企业和个人提供个性化的发音服务。

请求参数

名称 类型 IN 必选 描述
X-Auth-Token string header true

用户Token。

通过调用IAM服务获取用户Token接口获取(响应消息头中X-Subject-Token的值)。

project_id string path true

来自公有云的Project ID,用于资源隔离。

Body 参数

名称 类型 必选 描述
text string true

待合成的文本,文本长度限制小于500字符。

config TtsConfig object false

语音合成配置信息。

参数: config

名称 类型 必选 描述
audio_format string false

语音格式头:wav、mp3、pcm。 默认:wav

sample_rate string false

采样率:16000、8000 默认:8000

property string false

语音合成特征字符串,组成形式为{language}{speaker}{domain},即“语种_人员标识_领域”。发音人分为普通发音人和精品发音人。

普通发音人每100字计一次调用,取值范围如下:

chinese_xiaoqi_common 小琪,标准女声发音人。

chinese_xiaoyu_common 小宇,标准男声发音人。

chinese_xiaoyan_common 小燕,温柔女声发音人。

chinese_xiaowang_common 小王,童声发音人。

chinese_xiaowen_common 小雯,柔美女声发音人。

chinese_xiaojing_common 小婧,俏皮女声发音人。

chinese_xiaosong_common 小宋,激昂男声发音人。

chinese_xiaoxia_common 小夏,热情女声发音人。

chinese_xiaodai_common 小呆,呆萌童声发音人。

chinese_xiaoqian_common 小倩,成熟女声发音人。

english_cameal_common cameal,柔美女声英文发音人。

精品发音人每50字计一次调用,区域仅支持cn-north-4,cn-east-3,暂时不支持音高调节,取值范围如下:

chinese_huaxiaoxia_common 华小夏,热情女声发音人。

chinese_huaxiaogang_common 华晓刚,利落男声发音人。

chinese_huaxiaolu_common 华小璐,知性女声发音人。

chinese_huaxiaoshu_common 华小舒,舒缓女声发音人。

chinese_huaxiaowei_common 华小唯,嗲柔女声发音人。

chinese_huaxiaoliang_common 华小靓,嘹亮女声发音人。

chinese_huaxiaodong_common 华晓东,成熟男声发音人。

chinese_huaxiaoyan_common 华小颜,严厉女声发音人。

chinese_huaxiaoxuan_common 华小萱,台湾女声发音人。

chinese_huaxiaowen_common 华小雯,柔美女声发音人。

chinese_huaxiaoyang_common 华晓阳,朝气男声发音人。

chinese_huaxiaomin_common 华小闽,闽南女声发音人。

chinese_huanvxia_literature 华女侠,武侠女生发音人,只支持16k的采样率。

chinese_huaxiaoxuan_literature 华晓悬,悬疑男声发音人,只支持16k的采样率。

chinese_huaxiaomei_common 华小美,温柔女声发音人。

chinese_huaxiaofei_common 华小飞,朝气男声发音人。

chinese_huaxiaolong_common 华小龙,朝气男声发音人。

chinese_huaxiaorui_common 华小蕊,知性女声发音人。

chinese_huaxiaoru_common 华小汝,柔美女声发音人(中英混)。

chinese_huaxiaohan_common 华小涵,知性女声发音人(中英混)。

chinese_huaxiaoning_common 华小宁,沉稳男声发言人(中英混)。

chinese_huaxiaozhen_common 华小珍,温柔女声发音人(中英混)。

chinese_huaxiaoman_common 华小曼,温柔女声发音人(中英混)。

chinese_huaxiaofang_common 华小芳,朝气女声发音人(中英混)。

chinese_huaxiaojun_common 华小筠,成熟女声发音人(中英混)。

english_alvin_common alvin,成熟男声纯英文发音人。

english_amy_common amy amy,成熟女声纯英文发音人。

默认:chinese_xiaoyan_common

speed integer false

语速。 取值范围:[-500,500]

默认值:0

pitch integer false

音高。 取值范围: [-500,500]

默认值:0

volume integer false

音量。 取值范围:[0, 100]

默认值:50

支持语言列表

这里支持的语言是超级多的,有足足7种之多,常用的都在。

API调试

"我是数学家", "我是人间老大身,", "朝朝不拜谒朱门。", "如今有愧宣尼富,", "只诵心经亦自言。"

返回结果是音频的base64。

{
 "result": {
  "data": "//NIxAAWeL2UC0lIABVn/5ro5wFaPfa6NtQLituuuRtqAmG26xdG2oFxW3ULXboVoxxwmIw+r1HChyUgh+D7w/h8ufl3g+/LvkIYlAwJDkQDQQwwJDlTgQ///zhR0o4EMEBIGJRwIAiSWB/wW3J3woAf6Vhbw1NdNDM/8GAwKGAYRGdzPAxUChXyAAdICgoY//NIxCkm+xZsK5uoACEH+AoCA6MQeG3gaMBQZfAwgHAGiP9Kb4fYLnB3kkJQ/T+eNicKpsd/ttx5SOkIkdKv//6jM8xFzzDnnv/1GhcQZDqQPFwMBiYSHjyomy6bEDIv//03N0GNP+MwSYtAhIMAfZFy4Uzcn4e///xVVE5GsE8qpi///98joVHZdTZf27TA//NIxBAgmtKsFdmIAAcF5UBrs852pBoJHYcLlLp6smxuBkEFcZG7rKBAQDWFvZJtQYvlAqOl6BgyT+m7fTTf/f9Tfrt+m+uaKMDxfpGJmomyLmRaNjFBToMneyaaC01IGijBjhOHCq5stFM0Lp9mVopIn7VIGhoLLN/5fSoIOSCAAT7VGcf/++EWKQPQ//NIxBAfAfLS/nlThIG/+F2EaQpYT01swxhp7fr/IqE8ot/XwwIssOv/xdAXgTax//ITwVDHj4hk/EzQtUQfYBwdkfkF2M/QOOZegCDmv+hAABC+6sjBMiFIaVRSro2oiKNflw8tYIhVhQiKjyP6CDBAIAENeD7OFhRAMAAHGQBR6aCy4HADTJ9tMjQLwbjp//NIxBchYyLCXpPFiBC5OmU4ASBjpozIXMUTd+oixm/ykQY2NfKIfqC2kTM3ZZDRZIYGD+jba/guB1F5HG+eVtVuYWdgVjzT6FDs8Vjx43Ls52pk1hujnSoml5WCnVDAj0p5n/TRUZNDFdt6OJkfVv///b3sXTZeCcE+igRAJugAArf/EikfG4HTfkoAfDqO//NIxBQf/BbONliffg7rbCZ0lHpi6qDZdzWsfFmp37+d3LP/+6t9IUpUmZTqpZDnQd+7EBGfOzIiT/0//a7+dtTntJ/InyEkoRTvnOhO7/+3+RpzvnS+umhM01Wd6biNhcE4yx2eKStHwOwKxGCTlJg/5EWh66LgyRJGpG5oBBU5xCIooCITDY1D2OdDhozs//NIxBcg9BbWVjjT0oaaUzjbr5yGHVMPVW3qqvb/0+tKVTu6aWZHzfysr3M/8jRn9WAK3LFNNCKA0yqJfZ5gkN3FtuUIjHCKoeUZK+atTnZ3ey1mfiErVHXKdDNqZLY5kV1kJHVSc6s4rlpiqgxZ6NmTgoYDbIfRKIVrqoqaqZ9RJBcnxBFFGiKwKjKTQSlM//NIxBYc8nbbHkBFcckjNSIgPzTRRjtqcmX5qHdxe45ReClfC3OMUlRnQYiGYDMZoYjF+bUjTfyaMxCMrssmFXuL3NnQ7lUFYZqEtyt8svq2vS29L/4g3+SV9IOksc++/79vdqbuqfhXJpWXb5yVxglb/+t3TspFoSxgAQJDbPDgLjM5zXmgMNWU3V5u/nQJ//NIxCUb2iLeXNLK5gjNKfX3xwoAAJCex9t8gffXqsrf0QOMv+RvXzgisb5BAQUvWXZv6tr+zEF0VmI+WfWJfUZdNhcwNFg7+oGsNLnVULOxx7dIrOqDqgUllZHdaikn/5DIroEQ2LuxsqsOCatlJeoZ8D9GA/9QjIhEqvl4MmFAFtvesuClTb/I8PTIg/9R//NIxDgc+zLq/g7iRpDyl/RJkd57/NyLnv9Skf9I4X2/ukTCf3dJFzqalfT7/VtS65xM6QSi1JrJM7t6EzWdUIjLph///rAWLxwJwJ5b4BgLj2daKi+FtxcRFUlv6Y6x2L9OYEwLMCzo8vUkimpAxFBGv/uLkgAha/4QXFzgCssf+iC4e1zwiGDRGAFOW/Sp//NIxEccwtbOfoIFVXJEI5d+XqWJN/7fiSjr/9KcwPqj0IoPOMon66X/5tXQtjCQza5OiCcrfgPqICC0AG/RTYkgOJt5yGpN+pzmsdx8kOzjn1f+p/+f/YVl5yzo8NFBTOWqBDIb5Kfkp+QhGyssiEXqoQQRnqRrkGp//99Pq/9X1f1f/clqWqk8+QCY//NIxFcaxBbNhjiZtldWXAoXvF0toJMEhCL651OCZsd3Eswckegglb/5PsaCo9NE/hvSv0K0399G//io/3fdDv3f8YnfUX/r+X9kNRr4f8/5GFwIgVP9/H4v6L/v/Zfn0fOo/lrv08zn4nGxSoctRzyOgjaLT62V6oIamUNQo91WhCwhzOvqiGSHiKd4QiE3//NIxG8ZXBbmVkBffiTWs2apX9obUsAmyPcVez7iRI7Kr3zg/sr3jPqJrBCAlkkPHMwbXISZoQYvN89ThcLspA8lbBDtTjPGVbV/9E5Wp3LSyV5tUK3OEIkytYMrnT1cY0FlPaKzpmW/UgIq/E3IjmqNb1D1LCKaAxXVDnQJc7zCYOMTdABEEZtNfxYFV4x0//NIxIwc4mrXHnjFFCWo/1//zmF+PdS67l+vldsQgUWBydLs3r9XXIm/7W3tnsf//otYQPRrtUzPxziRKXWCzgkDR6S/1FzSHQwJ2ahUaxLWARs9U7i8dbVq7vV///g0HbuHahYka6BcJSmlv1bKBSpX5IOANMfcXed9vZjpBbKKN/8yMBuDpEKUW//qGn0K//NIxJsbkSa+5i8MXBQi5GVN9fEB5FsCsaH/LgMBQoCYEDwNCJhMMoKfUQJhNQoRAjHP+8FUWy5o9ckU5tw4YQtR4ofUCrFIFYTPmf//nSG4clCpBLn+/jTYQATABvHTS/zaAfqZJ8hU9f/S7VBi4/zekR+ywYuv/96fRrW+d4iD/KVm377gKxvptvBGAXPm//NIxK8buNrOPgZeCiqyAhsaBxMyNcltYIDBEHTYp/yu0ItBZoMBMy70WkHlkGNsUoNrHOO/+TY+Bx3QTSqQR5gArXcSOrFe8aQqRxNcBjgSyQzlZq4/3i1q6x/jOv7b+sb1XHz//qsMuRVXPL1/zuXIuySqSCxCyOqzO+f5mWixowwoiMeaAHll//8L7L2c//NIxMMcGdrFlnhHhptuiwku6PRad7vlz6fW4VPqTS82sP3i4MhvVbUyMku3/xfFIUzYyazutqayDbIerAkBloGMS89BcAYgQSMP4BwQ8QhOncdDkS8YhODeCMXdGnVyNuNuOIkAKxuVNIxeNJ4uPGystYgTiDLnNrh2xrH26LYxuZKMYl7CaIqlaz7u9d/e//NIxNUo3Ba5bnjfXvd519vsRoJis27T6ehDA1alQgcroUrr//b9nRXIdnV5EILKplZl//66IZeSFnJEbsr3FUO2yBNefvt3fa1em5d33mTyvJkLLwIieohRbyBEnHrD5MUWcepIP4TIcisbU8H6uTbNpLnA9tbjkaID844wxASEQAjtjgsFdItJ/KcdBhr8//NIxLQmPBbKXlifXnIDgLIQf14ljEILvhB9UUORyS8dWz0V7UalUq6HIrKjLGDmMNEzB0XZBM/996sZHFhgiwTU1pW//95imNFsuVSiLg0TqfR6Ms4lAwMrVHf4CUBlGrFPcIpKV06Ipodv2AC8P3//2SJ+AoBLxDwqgbQoIAcAGWQxvgGYOBFxY4lQx1pb//NIxJ4c8prFumGKtkOW463KIcdiTS41WEAAABbbmWhOzTZkLi3KMMQPnbgyLf67kVz2WyK6CAYIoRhas6SI1pEIjKzMjJ///qebAN+v///26+pzNOiwZzYGy1UaJpeySIApwf/9wp0nEeYAw7+LdgDCW9hFr9W2BkRDKYddiQtjTZYjFed5AHbZvDAQrt4p//NIxK0eCyLTHtmFDGq14dlN8WMChzM1yfIMZ/P9TsZ+5UfnNM+dH9Gf//+OxWOYpFKjHdUs1f10+m2xj0VSRKo7OCSzWLoFSCQ7VV0IBco+iRIBjjvJk3PqMwCQAyCqb1F0QiC4pBEi6VSiK1LBOIazUul9N8xKpu3AIcRX8KIeInrK/63/ZlN4kDOgd6+y//NIxLcbayLiXsoFD5oUCkaU8pLlQqmRV2Yn3//3TKhjTepXZUqXOgzrYpWz131Ka/8UP2rqlUBamtiKaT33/fZfSDNzCoa+Uvocqz/SbkW//2hQxyMdFQhQE2/yXFTX+wMBKXKTa/tQEv/jH61VUvNWDCj7xlLzqqrft8bwoCoCAjQtI5b//LA0elTp7/2f//NIxMwcUq7THojFUf/DJUGzAFFAcA4DELhgOKoC9aWytJHtaFZTKsV1UMjGqcME7LAxe9/NCtuvzHk1eH97pAeTZ/gQ6UO6hzEcO9CFY4hNiEnI0hEQikK/tI6nfI1uRpxDIzUZSNJ0YiuRsjf/Qn5zqd/ptSRlcAEUIdG6fXrv/tj68W2Xfek+emYg0Q0d//NIxN0aYfraXnpGsqIIIYZh5O7KCJQPJk1kIlMgAFE6BAAQVQABa9/9rdIR//77ljm4OA90u814DXDZCfmUaC5c4mNuMBXthwJ9bVjxV1fxVJBRZ5zrygWGCG9PN5LMrlBW8TMFwgs8k3h1bXUOZykeRnr9tb52+Mcmtt8RYQ+ATAuCTNsORmiOKHxrTGnR//NIxPYirBaNuniNXP3pB1O8l7ah8k5ynUGoaiElGYA4CFn+O4FYljoMtXw9OcONW+faemaafyxLTbxHvjOLtsaG4M6JNXJgkmPYiWQnisJehzRI9bsv5NfdLfOsevu+KyqcpdyM0YaJlUYgkrKTMEbD6Rwte1zKmstzMJYk8tcnYQI3FkRlPNVJOKVyJyPo//NIxO45lA6mXnvTXX/x/ePwxNiMFGMSOYuBRh0DP27N3u68VBA2NkSg7UZiYOtygB+cZukaWDBEYoCAcaoXCKCV3M6i2zNTWd9bG///8w/Gv///dS6wBoFbfPzoJbDqgaX7nV6SrPS2ZbEkybvZF1BzTbleXSqfWCBiI2sHqITn7tbsa3yaUEjdNrH8t/hE//NIxIoy6wrCXOZTHuAZ61v+6k77MmLAIlW3WWWuWfyqQSweWZZ5/dMXU6ndw+EZOQIJfbWJFjiFUTC+oYbByFGrLfVVOfgm/L/X//K/Sh2UlZtXZgABf//Duvg21BQGBYdw7q/r6WVAwqISkywBjUof+KVKWVGCGBwH8ZZCmnVxiIunEpeu4uaSjTcTGUMF//NIxEEs6rK+ft5bSCE6nNc+9bUXNGU7SU4cIfuc/4+FwTNRBAsIs5c7dziDWgwRX3e8/XLqq5mmgjKLfTMxLwkJK/TURRblD8dgmBqYpfQLhoURLh5fWYlMo/ZTOkl88fQSUZF47ZA6fnUEy8BxZAUc+ciLmgae0X7/93i6anUSBtVV1IgFS/QqHginCJzX//NIxBAhSh7WXlamtpy/wUqwleFNjl/0woICBrhCQNoEN09bGXiAMcAm+ctw/LeEZdk3y08YpluTSX3yqJUG84IjG7t6xO4B7VJdFbnCcG0a/rL5Fk2/lg2/nCGGLfqQNf+dfxYYyqJw7lkIxKMAvFH9SKyx48AqUO7vYo91gHSRDCoSORQcrKS7vsfIQUqG//NIxA0ftBLSVoSFcooAARUyRUn4dVklLUvQE9Eg4OBYxmB0C1iAgAOEEFxzb+OsBiK2tuUAbsJdaPymCUhppWR+5kJMf/yIf6x1lX+oWgdqv5wv/8sP/hS/44yJ23IWf1MRP51ab/sz2kCnUpfQ4Qokn1s/6ov+5jL50oGElg6CyxAA3fUsUIJ+FPLgLCef//NIxBEgVAq6RpTLHzRDKYckfZTJI1GIEbHakRUyRWXCBh+gRoHTJ/qDXiaI/xaAtPSmz+ZhZYTqX8hhW/zIq/5TQ/0BcbP+sUwvf5ma/5QZvaUxQGGPo7HIH7oPecQBA8Qj5XK+zbyWdH9VuzejLL/L/cz3/ea/WUWMJllqAZkMNVind/+0dw1BUFa511bX//NIxBId60LGTltK9miHnXayfTFqEvIZKObkoOcFgAPQVolbv6YgIbpun+ZDiJdm+iViVEog3uZG6H8pU/qVP+Zn+WAoxvxEVd/0DzUZZg8LLRSUMrzFKUnl/+jp+5SzH8qipnS0SmtdsSg0Se9C2ZGVVQALWgWBCA7x+tjYV4BMJO9tFtbME9g1QhSGwo0j//NIxB0baf6adoPKeDfMAnSfRiblhUgvi6wDmcmLX/2AYeURX2EhYBgMIv3FQFBTCIp9WQ1vVjGM7fR/7GdZWfUokKgqEqxL8RR4Ou6BEVzVR7EYaWdsBZ+o6e0/ckaCjX3MxNqlF2ATi9etfxKHd81KiyiQCWlDUZ8OQFRFGHTXspItff7eUAsI1XMXA9VQ//NIxDIWwWZkFgvQKFn+e6tWFnngEPGVqD0NMcWLHnTriwdTxE9zlSXKjUdDx2j3HWf8q7ZoIaRI5zVAwVOc0jlbL5RKjtbSImTQuRFQzBJcyseEw81RIkS2e9VXltlmvDiS5xyRKucSoeeOlnkAkHfGAXDpYGt6gZkhEHdZ1eo98ip9Z2JZV3DX4Kp8FZ7r//NIxFoZET4kAjJM5Bh6VAIKoKy2JYlqTEFNRTMuMTAwqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHgAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqr/f+aMKFAxUU/+HGnmqS+coLP/JH4Nxro+5LuOMsEQA3DEKAy/hdAzdFI8rppogaXhdAY5QGgZMBuAZVBGfIeRMujnk+BhNBiBhABwBg8AMBIAYBQBPyyT8n0i4A0CQMTjgDfAyGJz/lcmCcNi4aKEyFmhfcLexjCDjn/9//NIxHwAAANIAUAAAJNZmbmZfdMQmEoCiDJCCAe4O8uB7v/6d7UOyYgMAoAQBoGAXvBsYCxwZdAcoOqAcAsEQM///QN1IOqpk0FpsFyQMB4AQbHxZwggBIBgncZQrEAQJcmDxb///03W7G6jQ3QNHQbTZblAlklFUrIJlcsGhoXjhsiVyXNC/RMcIBCHF/39//NIxP89rBX0AZywAAllAHOb+l/TQzjtywHKExVRkVYFFzQm8iqflAjaniPgKeaNGNF5cShS8UGhc2foYguZEefpcqGVIfiUgWCQWFRpWYbC/a9Ke2nSFSIkopE/ZhSKwdG9NW38v7hTfVkXzEtp1z2K8Ln/wv/+F/7n/rmpuLZV63/2x+fM86f8+fdy1Sxb//NIxIs1Uwqlt5rQAvn6s/Uq3KeH33o69Fn3PUYmvqyL9//PwpLMMSnC5Lea/Xd1sJY0+/nvXKTD7HPw3Dcs7Zv8w7/f//Vll1dx6XdHgCYJhZ/lVRDEaQW3tI5v//8/J/h1HVG/zQ7AWosyEX38wDhZmX1l8bA5xdRa4rggiDzGyhdAdYZfFvfplgcw//NIxDgqjBbmX8+QAtUvWm7UqJfUakXPJai4YFw6a8zIuT5gtFamIAgtJem6aDJJqLh0nyySZOE8uYEwRQrFQrF01RWm6aDordaaZnUpBAuLTLqRksyOIXdH3U2jrUybrQQprTU7Kb+n9bVq9TW///+rqUicQRLxxA8QYkUEDioA+jAgCSABf/yVGOFcIi+o//NIxBAgcuLKXopFiMgIsiYyAbcTptMQkBGxsu9QvRbCp9AVsMsfRrx0kQt1koADQtAGwm9RZHAHJhqsXG+HiIiT0QMT/YyoZfTKMdRi9smQIGMnsWhW3OfqZKnu9HX//o71M50MgpUOytan/9PQw5Fi44NrwRIggM///+s6VshmaBERCMBP/HlqULtUjX1///NIxBEfya7Ofg4SMHG6rardJgVGav/iIDS68JfSrDQlZltWhQkMP/7jca/8lULP3/140CStz6IVBomBUgUgopJtGwbnb0RzCUiZd5WrjSobBVQ+//49pSKKSkIP+T8kIy7iTFgqXBBgx5c+TqcfwxiCsH3sDByGMQOOVRQ7JdvEAA1f+lRAdB8OO4iyg+B0//NIxBQhDA7SXkBNHLNvvWmS+lzCWxInOYZ+yvyPy8vE6gmkMDlOXOUyRlNZAYC2CiN/H+AuQzTr54sECKDEwJI0kZqBkJl7GW5URjrbnp3b+9Znt2yH0Ii9uS2cgg2t9QYn0Mp/h8Tfu3TxqwyWdI11A4D0LKItlrBEzdWqvf1+vsQAACieag9jo5MxIiwB//NIxBIhhA7KXhjNHVOFmCprUMrdynO0uS84ppz/Mv9MvKlHbv17CEPoqGWp9jHEU0wfpm1NKoehVyXyEnlqZgvW0ah35dkD1AjoDvptmH7Tl4k7S09n3PkM2TlNlf/uZD0/U+ZH17Zm7Zefc+/Kv1eMiUVdzrUeqowqrHOLQlEKZ0M4VYd9kQD+vaAkdBOo//NIxA8dCX7PHDMGSMOCyBNHyu6/uDcIjxTgkE5gHFN+kRiwBymzE6igiZDz4Qzg5F8mZa5m+eYl8xxR8RRYcSO1GSTHkAMWJiLkmJUoDgYShkGiZ1hYO+p5ItniRWdNEgaS4ShpBG9AK1eoKBMNCqbVVQY2hvttayS3vxGQ2G2YapGaTJz8QCnpxZTGb1LK//NIxB0cqlry/g7UWpuKIRjhcha7uGWPP/U+pQ3OTUuPf0PCoDwmt/QFglY5/uEgRP+pAMSZnf6Bfo/+Rl/+p//n/+Y36E7oxxUKNmCB/Jz/lTSa/rpWofV/iUjip0NEpbDSFJj7klgAJMHzGkx0nwGpAsIiJs2LiD4QN6QC4hXRUf3lMUmFwREnt+kpzkAM//NIxC0csiLaXpvLKpm//+FYN8cRoxP/j6hs5fDifb/IUSN9BABAFAIOl8gcDgMCmf0OcxU/PIcpS8hCFHiuoAHBoRGMNio0Zw340Qnp9Bx3GjoRBoBx8gLHRWo6OQusBBBbDlSZb6RYC1Dy/bHA4BSJS+L9zi+SzIESa7Ozu4uJCzl/hKLLFRWvji0Zab3Q//NIxD0cQbLKVGsQ62jxwtYw7Fy2BoD4SBYOTaRELY0pys7W2Sf/270Fq0st5fKmUcl4sKc1+9SwGseLL/pb/9c8gLeAAK3OQOwIUYROxK21f+A1iSALE+//jQ3BcJYuPTMYv5B0EcPz/xEGnJd9PJgNaFevEECEpT//d7D5jRkEFJogI/BgAACIWYeu72z0//NIxE8cQb7JlhPMPswvouLqAYeFGVGR4PjjTP3UPyESyAsAnBomeCwXh/nP/+gYutbTWIlJ0fSgLABRa92yXwlS4Mty/C60QxjjLvQ3ksu3q7K2twVZ3j+WL7qdMpp5be4DgBQORCX1lxcoa3W4uMWP9ElpuVpJPMOBoCAmDIhSBw4BVidHIDh6AwOaq1vp//NIxGEcAWr2Xj5QlvYpEyt4slZiinw65rV17BjYspZqwUnP1UMR+ANB9l5FWCcGSJaBaVr79qFufat/8kpCPIHbLr/IwYtKf+QSYV0Y6rY/jNS7Oecf/JdSasPxIXBB/xIWT6B539SB6vqzt9Q6cnmOzv6On///Np5WcBgqExc8D5OLneKraIpkKdv//4qU//NIxHQdUq7mXovKunNqkBYn+REqO+khmc6H6hUmS0mNpSHOEdCyEX1oyZAx/7IRSfQMQ/sUik6UJCR1ETQiHALICRikSJ6yuqQgi/oY1+UtSlRZrfob/T7lClZk7//p6//ZHoZ0WolXFQ0FRCCp078eGqlq//9TMJCwigJAkRSKUm6aczMwFwoGNxASKkHd//NIxIEbgrLSPopE8pTGRSE2hYEZi67oosUSCfWovGZBFvRWamR8onG60YUSxfqXVYv/OrD7sx0lOKvVIgjmq2qyo9LOsyx1XrNlNys/nn9kT1//X2KVnQ1SOVWvr//ff+rU+/rJ/OvUX75oPaqasGcbbjaMe3ZzrG9iUAwVOyeizAYBhJuVLuapvr9pRI5u//NIxJYdI9qc9qDFc76zzLo5vaIx+hGY0u8Yum0jVO8qqrDznZUajk/Q//T/yEW37dCq5DqgoHzu6UVzqf6OpgEAgcaguIAIKKd870Y78ThcYfRnD8MohMGN/KGQObJ2QJEIJEBkBFqEkFV0H0hy2YBCXrfiTS6HGxtDTQAQEFE+5gvYrkAhQBg0IGWgnNzD//NIxKQvJBa5vjFxljCNAmQoLtwkqVDaLDvMCFG4RdQDEeyUtXpDIpIGk9v/6YgQX5+GQFrAM1VM/fx8vMUgaf71829NZvuPv0eruqtDO5o86PNt/v5jdjHIcceMt1EUPyq3iv+BDD8gdZRJ8VRQgiPcDWHWyZEvMSxYcB2ODsFQIBCCYSiM8u3PaPXE8X7K//NIxGo0pBas/nofPOlOl1cX0xtkKMjU9tfQtGP1Y+Yqwd+fVv/nOsYs+bu5sTg1G6Wwzo6FkpLoXwt5PihS57A41A5JRPlxHYYsWh/G6exzKWY9iFHGmR4n2P0V4cYLYQkvZODiF8fxySENgjCDFSqCK1Royo7JpJHG+QwsNQGDGJu0BeqhluFqzTfPoOGr//NIxBohyqqw+B6mUvYSDRqpK7ZuMwA4gesbJdTZGixlMeDY4TxkTJqalIsDsd/6zMca39bsQ8ZcTmttT3LowggmFNDnIov7GwuyJGP+mOWkp9tR1ELn2NHWl6kSkyvprmBpU+6zEyLiJXOGpkiwFifHpQmoccLkMXXVFK6bfSAAJn///urrHHJEEaBuba53//NIxBUhSyLBvtSFOt6F8r6EB9WYyF1ODLv/jvfJ4wCYzymJu/l+suIkaATocAI2L6jNjhwsi6CRi6R/1DGByhEmb7IgVcGyhP3+YEyILEkj/mZk/+mXW/1EAHNb/mCy/1SZH9TqYMAqAjaSA6MyF62JevopByw5+u//QsqqAAU4IXAAABtjf9iAzo17H+/2//NIxBIgguqmXgZiPJp2NJUpOHGM39juet4/nSCFgvVOU2/5iiXAG6TpQTQe9SAYTHC3+Q8TmNFVL1LRCyo3Z/0BdCdjdv6ykTy/8zPfqybGWLpx/5gWSr/WkupH0FoKMjYyNntMzhcIAUzVlL03nUFB6lwNBkMnbGEf/BogsAoFABnUmUC+T6i+BAgBpkIL//NIxBMfOu6llqCNyg0roOi+4xgFAQty/5DBAQWSYIG3x8DkBpxUKyPsdGXGTFkt+dIGM2O1aP1zpXHNPt9NMnC2yX6EOVv0nElb5CBwQCAt0CABhhRn7pkaXO+rlKXngZ0uo5OXjLMAZMos45qqOQ//y3+sN9MIAGORGYmOH/9SpQ67nKBFBPpUUOz3Pwzq//NIxBkcusK++sMFDS+0Fk6bnzEpsz8OMjU3cYm5tfYhLQND0oiS9WyglnQAgBCSFKwrpqvnCiW3j3K7RTsRjkMb5GcpjJvRnr/6fJZ2M7upJ0VDUPQimVKPb7fP0atLw6AzNt0rLhQCRwBntRl4OQEmI6l8niNw7FmAtN5qVNYSEVrLWFr0SEwonK0jAUAh//NIxCklGq6+GG4QuRBnAUtWBr0GqDsvWHUsZG+yjqqiqi00c27GMJVIDiiSoyvB2GmLUfpiD1vtAMGWAph4SPMeT356sUgRCJIUui8Xm3utKRKTfLyz3LdBDBvIN2s9EfpkbWY/ufTSJfpKiMUXQfuy4yiS8u8ktQglVfE7HLHNx7lxQC+QOzITV9uVXPGt//NIxBcbIdsO/hPEnj19Zpe8CCki3HUlE4citBXAJokQNosSMEnJsfSFJFAnAgEgeJ9niqn7C12hwNxbWxFPcpXT6XSiOu9bdtNluY6KKALzS7v/FazpWdxjw6plDv/3cd7lHuvsRJUqc2//zhdosEE5ZruAOQIKAwn1P8k/JEoo2aN4AFhJGWYEEujlOecW//NIxC0bYe8CXnmE8ka2CBZyVU5OkWJVZ875+YdGQzuytWrsaqkWtEv//6qzBXEodIu/TSfDKg6Dg8+MdKigwwXw3OoOG4m7ccirU/61FdfhleCnB//qPuktRPPvYiwtlZnDJgP44DDpghkX/5J+L5a//BZKhDqPt4P1tZcf5L8nmbPronMFl09QCA28YFb8//NIxEIcunbWNsPUmijITW48OfyRPv//+hL3UoVHprap9PzN505+5QudSIMaD5MdtNoKWt0IfOy7iLQLiVoIIwQcpKf/KQUAmSu5A6HkbR9Hgnj6iO0m/w8DoOjnooPRx6R4bP5pFuo6Nn7mjw2bQbDY45BqYeNWqxyHebO6HHfN+p3qw2JG8eB8X+b9Dv/+//NIxFIdS7q+F0s4A750445tTTTTTTjppv//O/nHOaa3ROtPKZUuPieNjHE+VQTQI1AGRaehkPB6AgK/m7zMiGuewCgF2AY30cJyGqI8WyYNBxkTMwDkI5QWgFR0FBlsahVEFAMc4ElIaBhwrWsGgFchouMnxmSSBvOSR9SB5AzNyLjNm5PlAnBCMgxX//NIxF81E8auX4+gABN4ODEisvuboWNDEZMtk2VzofoAoBHOLAuBzjoFxFNlpzImzcihBDAihoXByE1EYRFFIiJd090J9snSJjJmROGyZcLyzQ0IGO4vJm6ll+pn//+mm5fSWvp1IzFJAsG6FVv///rQWm7skktSTKpuXC/DqfljxtUPKFFuOUd/1jMhkEAZ//NIxA0gSq7eN9CIAgRRrSdesfRr93IcGXxcJdbQYjQTIrzvmiJqKHFMNXop0xlAA4RPWzIlkZ0PEg/z402/kWFtf6Q/DpV9SY5ZOP6kCyQBH88af1rS/rOI+kggZIIG6lKexdRZ6LOZF42FXLBUIHcr97lB0VZuJP/+wWjwBAwMqho74EVSic36aCaBmB8A//NIxA4dO2LmVmvE9lA1dF2H8DYKgEzIz/TIQXq/+M0Vg31iuv/LHOwI6cOv/h4f5bs2/+X5yI0nTln5w8V6jVEb/5vimS+Q7kM/k2/kOVuQhRRW+i/zopW3OEq051RdO7/Q37N/f/6eTORF3jUf/+xkWEkUuvcCnB/6XgeQRwDRfVtBtljALzW3//lyIadC//NIxBwcUyLSJnoFL7ouNX5PEW5V/8gVBUHsX+5Q21/yCUpv8sQjxaV5LOEUWX6BBjfRnK3U6FQxSzoMOAs0yEOR/2eW9GcqGKxY5Fmbltv++RvaShFI7S3J5Bf93oVifgUVDGr6clhJbcv//z4aDGMg5/aLCEIFqD5NWGpPRdhIXCk+vqUlIH0/niiv95Fe//NIxC0eUiraXnsLRh/P4c1tkvgFEVin7+2W22+/9w6Qf1Dor+cC/xb+Is3rAEVv5xG685DfqKuzFwnPwsGEsCL1SL2OM7BOJ4tDLVh0ceexv/ziqw/eH1vVOmv/kCi5+iKMLFgxPyqGFUz44kM9j9BgLdzrMX/vOXPrZ0vWtXsjKxzdmRPZ+1jOqkI841Xa//NIxDYlRBbFlhlTOlU5QdKEZXq5Jzvko3xNtNucEcII1mDxEFxs0eBA60hONQhFSC8qUh/cdh/7n/3x2rhRGjelHSdhU3HwXXTabiK9p1Xr8lUJwMaoStzE6ZEYLiQv0yKDHbJEBQIyRpUgFv+/2+iABD3/LTxEJdX7c0O332t/5e2LvMp8vw5XtrtTsqr+//NIxCQbjA7SXhiNeeqrole95OQ272epu9Zk+//tyM86GClDlKQrHhg7IrnudE5qed+jdmRi9SbDC19ne2xqd4718+5u35Jq6o8k04ZjudjKwwuDjBk1qnlDhzSYjdko3/ZIXL2jps4GACk5AQQf4yB6cdiGIzTg6SMnlIc5B08uRBe7sU7OyoxTTTKlut0I//NIxDgcWnrTHEmElHH7TPK9b7uQ9iGcKnnRqoXq9prJVW//lpeCJPFDrRou4jgqAmYBTtKgIkkFVPFtSdrNym2KY6FgVZUFRZVaiVzYBCo8zsDDSwLRAAESMQ2prPMtzCT5pin1AHJMphNal5jD4oAiC0p85b9Wl59RwIOtf3nINFgMVH+IDh5fxABAQWL0//NIxEkb6grTHhZKXEGiYBiSs/oIDjt/kRW/ZUVvJEBwFZh//r03hr096k3BVCRcrQ6jYg1U33YUBY/ULOKpHgKtB9v9hXobFDWkz1//pRMz4cYek9lHn9WI3CACONF39Zb1mqgIIpWz12//WCThvD2Nu+TxKyV/mYJ+NBHLresY4XY2JI2/OIot/X/rM1oo//NIxFwcEqrJvI4atv6CP/r396krenWxspTChkRe7vIaahEGRB3Gmkk9/9XptYUKlHA/bq/P/4rqyhD+mcf+CcOhLI1/LGzGMwpxav9ZwDQAyjdbP1IiYv+iYiSj2R6KE6G2JIPdD6iQBJR4t/l1v8yNv6A+mn+mXkv+3/r9DGUxl5IoGJKHXseW9xLRd//8//NIxG4cosrGXntFOiKzKMH6LCIdkqSTQvqWOgXMJvFcB0lB2oJMsngtKOt9RKhZeKgRImTJa2WoJhR0jtSXvWTAKGieW6L6hnBAUoIH+s5CSLSs/NYDYIIXqfkAUxz/oQt/m/6CAGzr+rG/1Izf9zf5pfdAbStVxhRhAx3///b7UdK4agRLAAW//75fnQSA//NIxH4csuaxvqKFjhYkYfQDOoYOiNNVu2cvRlHjMfSWrysFpN2WropAZIOoODrVUJMBQixtHjwlf48D4h+7AJDCv9AXA6Nf84kv9B52/QFwvIfqOkU/mkf///6mxFFpUBlQKRERv9FSujfFLGoeMKExVbBgpcVqRklN/jTV4MLAxrh9IZbMHy6xFtFAYvad//NIxI4dUrp4btNO0Hes3e0QNCAwKG5jo7qUFwiiSn0KgChL9UHwBQDWnP8eb+cUJfc1RwAYNfqgjCU/9zf+n+pgjM/9Tfm1NQl//0XR6aObjV2k6vf7P+mjzqKsCn1fBy2mJrBYKVYRU0sGHggA8dLmROkz524EfoKnF4LzZWm6QSFzISa+BQqAgm6kJERi//NIxJsZss5QFMbOTAKihqkFhGAhZFAr//gIJmWoCosajBcz//wELmWmgqS0BQ1/6QkKmQkSHIBkRmaRY0FDVUxBTUUzLjEwMFVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxLcZmIX8ADYSFFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVXwcIAEfksBeeHUBp/gKQP5X/xC4fGLGRD/0XC58QXGT//IIXGLAzCP/+FkAWEBjAG2YjYOUAOv//8McCxQMYDrImIIE6T4ZHDVZJhcALYRcDgA2wdgx4N1wwWBsH4XUGoX0HMFwAFWLmFKBlgWaHrmA+xcYav///NIxHwAAANIAUAAAP/FLqHPK6AzBcNBZY55Pk6QdRgISCPAubIkRBUhqyXPV7PWeVrNVKstquP8Y94tMdUqDOzLDLg07m/V8xO4Hpjb2NMnFGhyw5axilJULb0Lyr1Ay7bN43aHk51WXMK9aPBSK1Xt7tYZLtadFuYyfapT5wnH7GzoeunTmH0KeEBc//NIxP8mlBYsAY2QABDQ0xHxLBH0McNPIkeJ3NXv9OEBHucaQ7MuKhVKpULWIWq2A/aenpApEzHxmDKzseNZo4zVbDfPEwzGbIRvI2UTtHLziiHkk3pqJmPWHPNfT/VXGPubWcs8zPC9oHzv1/16d5fGL03f++/f+lPffeUibvvN4mfumvulHmWBwqrHmkio//NIxOc5RBbOX495AouHiFsQA8a7Kh7ZBJ8lducZnZYU7CoDhI8xFpWqRnQthbzTH+X9C3ySTjhIh6FLKrpJAeXhx7x9w4dp8OLbAb9yU1jcuJZcQLZozvHrtb7jGn9oF3dYOs4j7i0zLNr+9q0t9b9a5+oVs63uu8W/fXxf/G811/7Z/z7f2va277q+mhYG//NIxIUpwpbDG894AUI+WE2C9FWY5klRVoUQV5KbLwp+MoU2/+Yi5peuO/yf8fpqZyYoAv/WtrKdbA4Z2xZjctVrE880z9z18sQNnNOxOz6ShOMiQPZVHMTAwM6OhxWqGOZcmEoIFBBgldghA0cRCYLBKStKFlaccbMJRpHIKTWixrWzq7R8q/GvelM8kTtx//NIxGEkdAqyLGGFcC2yMvdY2NrCNgYJ3CgSgmAkUY172lTsnVXJ7extpUMrd7q9N9P/+Sl9XbzVdVYigZENOoJv/5bLqK3EEBBzOpOG3ol7szVLRugyyiwoaSnrRFn5ctt7VemoKWkTsLWMQjdhuz/36zDy7gCAly2Lk3BUAvgu9l6nKwvnBOMi5CXye4vo//NIxFIsjAKl5MMFcdiC9XziuWe21aX+ctavM4x01ma+7qPtq0ZKmVYSAYKTVr0XHbDk2rn+1V+05ta7vCBJBYg5HmBAYQOxQEHI63NpVmR6ddES6/6czm096IivT9W+qLrdzIY5iHdEQcBDSSoIwmjAD0As///43GVlnD36FtbGPOY3y+iqggcHkKHX/u5O//NIxCIkwvK+1stLZINVHh3Ow7huX0wogBiWgSHfLlTiqYJIU4hvLme8nwUtRijRcP6lhygMUWpR+TxmLl/kuxf1Hu/0Ov8UDVJ8Bwgh39jqv5Xf3Ogid3WUxc7t8TPuyq+SQtBQPqDiFgzUy9SRURHFODRcURi6KqZIRK2oFjSxCvUpB9aRFBEwbWCyguv1//NIxBIhQnLiNpvQ7hsOUAJsDqMUfrYkJDAu0Mi7+LNxblWoM7x9QU6W0FgDPFrpDdwiVC3GMAULgoAUDxjGsVahc9FVRUY8J8qsOj1LzUXTv///93drEULuaHppTuksndz//H+8qtSMkTjRUGA4je3kgoMnzpJ6PuUPmBO4ey2xqlUIDSU79YYf9fOjn7xU//NIxBAg03LeV1hQAit+mHP1N87QTSVAc9Luu7MBZThiCyCkboZnEIjCsLR/0cVREjUifzWQqIoSR8SeshMH5w8MbNZFQwzRDrIPG/Y9D+axEeYzzTTTW//7dVuqKpp1DjlNp/6/RfUjP912WeYhrs8+6scrGsk4iAoCaHf/7muqQBum4G/9/n5Gv283o+5///NIxA8gvBbWX4goAMOQeDoVWw2tW9hIGXpcPBgnm+g0AVjSt2PpoAoq+MyuhKMoqyFb/cQDiCA4PiymQbZFV4zsQUFBg47sQTY+iGNVLMzGZCORXPFCKi0fKtlRJWVWT3cjWZleyhwYBFF7oBGHov///z//b55M5z7znCApD4fPEdtstltlrtjajaLSbc3y//NIxA8givL6X4JAAsoI4dj4JjMMFBS8WDgKzj2YbugwwX1nxikVa0nk2fWkCjQelxMq8DKNQ8goyb0N7q4Ohxd8aVBwoPu+2iWQfUzf/3Ok9ff8f/9O9Dofv+GQ+dnSOESvmKqv/+MbROL2SB8uxhQAExI0UOMZZDriS5a1tcwqgFJANRTQZAgIOACBBXtj//NIxA8hMpata8ZIAB8M3SzPh8MCFnVXTLAOMUiKIRKRiATBgCAfbmqUbYFCEfx51tGghENsdBI6jQwF4G1yWEFcYJkVeVLxZRPTTSY2HyfV9bCEL/nW7v245bMLymvmwjX2d1PySXjkzETNyq4NXGLIbSdtovURq4hveKJPM///TlJVZVmgJB6Tb//ePNSp//NIxA0fQerG9svKfP4lKA97FcfjbUZ4b4pxNbf/wF2LhLb/UM/DlCCCZ0rWkNqPBjDrZN/WbJwnZ9zdtSAcDAql1GoIB2jq1Lt6HOhW6kS7fU5g62QXFw+449F7aBizPbKGAjb1WClsvuS/GVjZBymHGH6vQd2JYWPB1pYAAZLBABIBIP6g3AcGjRox+A1i//NIxBMe8ma+9o4KuFnLKXD/2m4Cgqbutj+8MwtI1FRqdbf/ysAJF4VLoV//ujMDJtys+f/9ciNY2ef/3AFEg6Xyg5TG89/qhf5EVDcIB0JGQzrCAIR/kt+Ju+qoQUFB5VIB4weymLCewYG4cPID7/TpWlgJIhWIoCAPBLm6GLUAMB99zNwQIxDrSUFaHz/9//NIxBocyf7WVlZKlupIoeLt2//vHiWs0KGMe/+DImnsHpualQBRMzeY7k9ACBhYUOehkDxin6lQi+UrN//mMqoOEw+ceoowEWb9gfmwoJAkqv00HSRcDPCg9uxCt1ksXqT//3vHVRAWHLGVLuvpjsGIUq1NSJAAlRWNm6zUJKCpLy+7CegXIvH+5dKxLRkj//NIxCkcKlrN/mrFStX8mrwQQIRAxcW1Gh6I533aKhOJQ/T/uVCiU6OUoUT+hn+lShhyqxnKUEO3T/8rcoUBI1fla1PaAnwaPSX5VZ1gTLHiP//tSiDQCctqkknpYOzh8xBYDsWvMnWtPLr0vT62qHIoPq+1FgeDYqxaDxVmDkwRjWWPFnppSdySH4rjuYir//NIxDsc4lqVn0xAAp0GX1dfSrD/HQxuK3dJSx1y8yO6aa//4umc1iR6MeQr00vf37WSYthlTUU4fQIpqlRMXXkeigUmFC4HA45XLLZbBIG//RWrivwLAwgSn2RkzjJQuP+IcsK0G+tRa61okZIFSO8cE3Z83zag42JCCgKQxo6LuppIn+9GUfQhgxy///NIxEovqyK2X494AoatlVNcRXur71/xQCOISQeEqEhhiV21y9hau4P7av8pXKRun0JaaOTM5ZisuLUtel9vKUvrGdOE+W4+WFWM6nYKqfKne1eQYs0sHMf///yRLzxHNjsz27Pb4l1rM9dz+mbvZDv/QhA61JV5QXc8jWRtTSRQAZdY0kL6nUTYa8A0//NIxA4ciqq5v9JoAsolVG5qNcR0AegbEUH7pg3iRNG1rYZwng4DQeal1EUJISQ0IPesHoS8eZUaOqoYwgon5J26h9TWnbl11frSUr9X+pa1r9I1TTTUnomSH///+uytqkUjcGwuBg2GHf9qwjSqERYBL2+zjm/05THyGEBxvoVOLODjh4+kkQIZtDpU//NIxB4cfA7WXpBFp0hg6hDQFTNkDCeIwQmGSEaF99jheIMIOEaJvZTmbjuIh86Yols08zCFr8zb//9knoYwYCDAYRu769qHNtMis6WL/rbXrREUE4sNGyBEJ2tuW//MOPdhVLwuU81/aC1KUL0mr6/rizAMPDrdxIWMAwt9Sh1jepSh1jdS//NIxC8cUqqpf08oArFKxjnKUrFAUc6lZDGdSqu5nlP//zGZHo9WiIqjr5n//KUpjPqyG/cRGA0InnTpU7/es6DERBRe0l3t0yGKKIljRFUAKBoih0BuYDMYDoVgT//W6+NyEN4qcL1v6jfT6GLcUAOaI/KAIdAZt+USDDIEAHCLnC4MZP5iT5E3j7CxgERC//NIxEAso+amX5iQAVA1T+QAnGHGUiCChgsMFgGYFoFg/uWSfIukaE4TRBSaIgT4rcLh/+0zTZAuHi0T6i6OeVygRozYtn/6ROIIpm5fcvpIImRfFkHjAmCcm6ZPlr//p/222HQeMy+63QKhcYzVV//57L5OE4dSYEfDcLUIXP1oolYYQJcJkSyXqRD+//NIxBAfyhrEq82IACEC9DmNkkWWWCKhZeAjBb0QYuotdApibxNyKLN1IF8iRdLpdRRZFRmTYoYdYuUc0umruXDEi41CAoo61FxaRFC26klXMC4XC8XW9NRfNyYMzVGqyy+5MGZrroMpBjY7HAgZCTwoQYD0YYA6lN9dFqoAYpRQF8I3uP1HFIAAA2JUVDMZ//NIxBMcqs7i9lPE6IFcL0Wf/YCCFWS1U4//yp0sZL17uv4cMDN9CAwYCFL84Q4CAl4QABgQUSXUDAzFM/kZUKhlac6M5VKUursxpWIRlZyo+7s/Mqr/1+hYlQ7hxxCC4QG7DgSIlCYAc9+vRQGIijHYgCip/FqIeK4JLdq2lgIU42l1B0Q7hxLIAXzQwNlD//NIxCMcQq7SXoHFilRJRlSofbuQ0CsHvEyYIJo6w1cMsRKp9ZwRwcns/nARKhYHX4hB4XX8KDc5/x8Wmm/qBGf9AP+hBs1tk/POxUImsGceDXR3L1Bsczf/6RGEUNGjWAEp31qOiWJDJjEdnrRiggHQXKNl2elZtD6EyW5o81/I1gmwIoSJdwI+bQVwSEsM//NIxDUb2qbSfovK8k3//lqUKhm///Y4hy/QaHg8j/yt+gkHhZ/QeUrf/9GQz/Aczlbux3/6fRkIMD4tQWCLuzrcV3+79T0qDNLl+rAJMH7EQSwPooVqWpaQ+AkgvOi96nQ8n83+M2jqQ0CaCrmxWM+VAwy5kui+mqN7mnGRX6/1uBEvRKv53nNsv/Y5zhwM//NIxEgb2yLVvmvE8lsqEUDAxYCb/TknORRbXkIc4cAP/S9uRL2P0q7PwgwceD/2fTUQht236QglQfWcBwBFZbX0ZDRY8sL+wn/pF5orlqxZqOUa/nYAWEaY/kix5PP5LYHSoTmYC6v3o+5bly574Ff6NbsOmWVsoECBB0VyQ0eswYQWE7vtNqRONmij//NIxFsc0Z7qXi4MmgtHZSEpNPwuBw000hNn6flXZy7/5RAzYhUNYOWaSIFJwfHcpGIKCWqf/0k+ZZBfGQLo1jUqEMZpuAZqd/n/HwEk5MesS76kh8C0Vr/GBVtfyAoHxzfjA8DZK/6C6qsxZAHwzX8GWqrXZBMHM18jgqdlyWJwoe2dncVAyBMGr1rFZBlp//NIxGocqbbqXg5QPqEErA58+UQginEQJq4ElPfhhEJZDCihZ8t7Is+/hLi+oGK2Z5a8tlWeO6XiKyHAUAW8wiHW9HK3VhIPGfqgeDwt9DG8yAMBnRWDw0BgCH1RylQWlhKWfAoBtCoK8FXazuV6od86JZENCFR4iEgVLZ4Gh///WnuS5D4ABIEEd1nTQoFd//NIxHob8ZbKN1goAgn2t3sFDFusysinJtCkoSY79Y1TdyIOdWf63nd9OLOl2D+n9okTWAFwuo+zfDr/+c7ORwc0Ib2l4FW5NJSJL/6pjxl9Vq+kWouwpKKD0fioV8X+2Yl8Z3p5isX2ZI6jRkyvYVeo0BTE2c2zam9Zb37OyP4yc1H1HyYimL8ELK49D7FI//NIxI01tBZ9lY94ADGH2vEv///9tPP6RKZviJe+VWTtTx1QcQ/EoWFyNNDXq1D//x//f/X+//T/9jUay5PH24KoOSZUTvBS2fSdFzQu/PKERgB42EgfRq0MPRv//X/8ykolI58ugoHCQouIwficFhYqJQ6FbEQpRhgjKbaTFDWie7l9//NIxDkiK0a0AcdAAXsmXph48dnjxjEkTLCordJckCCQxYqd2SJjjYNEcSGvLDyLZVuO+6v7maRSpVxypzEtMQnMeyrHNXN0OxKLMCRHtcLb9X4xps/Th0NzMqmVV5m1320jJMXeHeW6Vk69h0DmAQoZ6SZ0MtnaMg0Ir6U4d7kxhAKaUTKLF/X7x+UIT2Dt//NIxDMdGQbK9uaUdLznK+uTQHwPiSAQLejAtj0xP1IAsFDx0YDT/5GV5UuccdHlQ8EL0Q1UeaZDkSiolNf9SnrQS5G///6wWXDqx52DSggaR4UjALc///meM5aZ8W/OqMMUZWhD+t6/6zciRU2vf/eqscibTihiRH7OVWN9/gn6S01d//0VyRJ0Qo56Wzqz//NIxEEgEta2PtPLLtUq4IUrhzPf/84swqVOpbX/ysQaDt6sJB3/Vtf/Uj/0v/2nvlMiMxzF/lZXKpSlW4oeB1wNC6xnR5dy///6xeoQBwYZdK3N+pZxaE6BKzQMpsyqtQxAmpY/3CsAEwDyNv1pkmHKNfTUOAcgT8K4YK3MzQ4F0FiMC2ZhM3yuAGBQBz3b//NIxEMhFALOPmsFh+cdMBgdnvzN7MLFkK0vnOch0M/Ic/KX9TkFL93Z/oQ9AogpU/P/3RWpRq0tb876IypVAJySJZUvVLYUIOVBahEFFC1/8d/6KlyCplABsMTTq/JVrI3lvWa/+GSIhQXT3H3nUM32KeDvX+bHIh6h3X/QQAgqVvxNDG/UeKlLfiAK//NIxEEcAs7OVoPKtgbR/Qv/Z/8KEURDPqcrIb//vVb9J0h4pKocYIh8eG3XmAF0ulke8DSXf/0k1KIvoKRKo1aZgLUHzgY6QBmi6jdDQWuwYaIk18V3GZIQmpk0//pRsVquv/mRk0uCEF6jf/L9Xq9eg6+9Xve5Ffqc8hAJ9TnnBGN+plLfa5HKrnISchwE//NIxFQcksakNqPEur//7eroyqUSufcjhWsxChykWDLSNT//OtoJwKAA6iooCBB///6yYwXoOcZXLvY1pmmZQmA8CXrhQC5TTTBJMs824QOwbcpYMTphaAsl5zhHxmELxTR/mmaa2n0kmVlUxLMCsbmg50MYi2GgoJTQRJL0MUhODocFOjD/aXjyJW9/fL19//NIxGQjSn6sRsvHEAkJzWc04mR8P37mjuBi809wMDYkJ3p6IT/oUIrE00ougea///jkjCYIVQMbgCKMP//8EwUr+LP7thcDyfTW8MlYDuIAEiH8fzmYYhYDmKQXJDmbv2NuYZrevpM9Wtd+scS57KQJEJDWGR0kKh4B8e0AnFIkGEKN2s5+Rlbcrn8Ky7vm//NIxFkcUgrNlHsHSNxSBBITgGJAIOpjQwWYSHo/925qnrvRetURQ0wNTJY/wwwf8J4jseAFoBdBlRf+iwF4xzpjxu2GIqt6tWAN88WFl7gABRXqLlL0Zyt4cFlmwmHn9mfyMb1dv3L6M/kOQ0pVOiP0/+51M406nTKxjK7+/97WdCRFjdIR//NIxGoaLAbeTgvKP8OVUkIIRT//+rskSdJDUNO2aQ60WTEC08rP/1ASEXkzWlLpSsCsI5J5Gzi8DMFVDqBLFtMPGVE1M+iL4rP8jUX8oEKn6i39A9/Kf6P+X9/qJFr5nf5f///9Gas5SCgahTaspu///X/9eimBPJMjjUU3ZNR8TCrutRZIwKgdhQGb//NIxIQc7ArSXsQE9jdAgYOAF2ZJ+s5dgdT+FGrBTAR53r/DMOYub+/9m1QuETVDgCHg4L5hEivoNArk5jCzertOcyh0Y5CTRJX//N6mMCh9xASGioiUUBQzUSPf/kiRUNHQKRUsS/tsO+///q9YaQEIANGwwCrA///VVnxjXAQ8DSZiwCJ12kLzGROLcpOr//NIxJMcsf7JtovKsh4diUldhncX1+8Iai8YQzWcFEPf/ajVx9mQY9oz1SVZevJubrYxJJ4fP5ypXFu6LO0PRnb0ZHZ7FIUxRYwkrJX//ZEj237fsz66nWlDhqIIWsAQ8G+f2rcbiKrDh0xY8PApbvTwoeGfRJvrgVub6z1hUAZHl54xVMt/+pLIk99aQgiG//NIxKMcKs6m9tGFFUijvuOUBlPZoxkZVVCkymwYCAjEzBgLQCHU12Uv51WOx12aM60EKFNGuf///60qq+f69XZmqNghNni1GdxRMmwoFxAG1NBJMbK6bMwlc0tnDpvA2NPQx5hIBi073HW6B/hQW+JCzp6OHTMbsAw//X+Ur/lL/EQ79Udf6/1K2qKx//NIxLUb6tqETNJG0IaK9FarbalEXJOjEVP5ZapYfU9H/qr//9RMQU1FMy4xMDCqqqqqqiku6mk8SE0FrJorCIjFsR0SgCIycpoFMXFPIk9kQl1CxXmfcLGgqS4oBRUyM/GEgqLIHpaEgKRCTPIgJoFJfpFktNM+WFjR6Ku8YgUAuPJD4CF7mgUkaZ/4UNCq//NIxMgXej5cLk6KNHwEEzISQFZMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxN8YsGIYNn4eCKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqpMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxHwAAANIAAAAAKqqqqqqqqomTJp6YCAAIJk71iBAghvj+7J3Hc8HAYDC03smTJk09i7vxBCI2CAAABBDLIEAAEEIc9NCM93eseTJk78ECADCyesYQIEE98Rnu0Ij2TJkyZCHPJk07uPd60RHiDCBAghkECBAghD3ER3u732eTJ3rQTJk078RCd7///4i//NIxHwAAANIAAAAADvZ6cAgXB8H3cvEAIAg8QAgGPxOD74Ph+oN2m6XqZ3O47rYjoZgD/twT8Mvw0A16UbYkI0SByOHAc2MObLrGBNxT8D5UCMXBVEsaJtJl/88xUEmSpFmNAkUAnjhrA/zmsG1Z2YeAzVkJc9G15z68+fhrdsyEGkcHTMsDBHAwsEF337b//NIxP8lEx3cAUYwAIN+PQPYp5/G3PmKQoHCQwQCCYdoJDDAQJhszm/TRG/TPDy3b/P/786hIMQglX7sGEQG1d3AUC7+UzP/jb/f///6a9AYlDYYD11mCQeRANMAWA6PCljYLf438fo95Y58//kFPDdunVxLJY49unjdvPOrn+WOWpBT0rek//NIxO06+xLGX5rgAyUYATN/5ZfVay10EGDYpmbP1vuODkNJMHOIpju1v7vO6BHAF3UaOtA1mQSwUQialrOsWAMoIEhoooC0iAAaEVkkUS6iTQpILRi8lqcyJoR0IcbP6JdOP9aJdNn+iXSYK36JgONN/Wik31omr/ol0wQ0F0CsRYtFBJrIspTU9aKJhe9p//NIxIQrDBak99qQAnicLzmyq62TU/9Bb+gr21f//WzWRdTqmKZsgqYF8yK5YLh8h5XTL5uqYABlqADN/6w7Uu2iEEZqGZkC917v/HmJSQwyUFG3X1v/7Ek5k1385n89/FEzTMTRiDHDgUIgWRXKRW5WJiMKdh+Jujp4lPVpfKL2GGt46q1NizkmVjFOh3aZ//NIxFoqZBapltCZmlnI+5SmVH6Gf53jBg4cEIU6lZCKjXd397NStzVkIux7tuzsceDQyoXO6ln2R/5yJZrkoiKz7V3//J3JnJvsrI4HPXn5yWoCoUgkDkonhZNqEAIYAHf/69fLiia6R0SaTwBnDuyKxHZNFm5NuhaPT4Rn//+URXKxVY7j0e93I2jyj6FB//NIxDMpQuqZ7tJNbCTIUK4vjnhhS0sAoal6gMXfBxLF9YsuTgEMhsYAwx7tz0EEDF3UtydQhnv/c2oI5//JRRuXaQKCoPhQFyEVnAwoGHFoK2N1o9Zs1Dnub1EsP+MVeInW3tttymbMfaZI/L5b2rD3SHq8Dl3///+8qXedFZUK1eDkTbu0Dc1NjhFjEoiU//NIxBEhAe7WPoMFa4c0JhZP020iAlX+tRiUDb6mNjht/orLqPpybwptAsA5t28ttRH5gPxjTPpz6xOkedymvsMrj06Yf87oBOXndApAZbF1lgk3/I7Nr35oKKm/ZJ7vglbYLaf1h2v/ELjUyTyL///f//9gZbjuBgMYRLhxA2cUC6ebbNEAv9HEUUOnAEgO//NIxBAepBa+XihfXBgsylYRYxSyEzKxqcpVFlb5MxjVQAQgpTbKsvx+MbfqMbIC///+PjZf/rMfJf//98Upn+jxnj3xqG/vfWFZEzfeHke/w8eaRCoJWoicKgfA9BCENAvgIEFwjWdEHTbAONcLBK2nGIm6ERmkrksS0vqZlLdRRDL4G1SgKGy2LIGU//NIxBgh1A7eXKFTfyAmiSlIkPFxn0EjMyotmBBzd6SnqaaLT2f2VlVS1s/lNRURjdv2OKBwOO8vqgfP/zCg4xhocBXDoq48RCB0UptP///te3zVKuZFQ4dIYzqMMrOjlmoYy5kYPZQoWbchGh6DZKyKmln0RNoWQWpsmORzS1IC+qqkJXlVMVQydrOR//NIxBMggqrCXB8mSo7ATq5VpcXaNIIcgVQXTVVtSzgTIBskS1FE6bGqRSLYD2ANsLa/6jILKxt639R0Uskl7JKSNiGv/qGeC58WDUr1jqFFDp3/1HzT/qHKPJf5ugo/+q5ipreiiYHDMEH//0oB0Ri+wSC/2kyxL1gJrBAC4ou7UAAp6aB56zAIdgVAUVGa//NIxBQcwzK6XptFchTZ0XGNBwWrUky0FmBfBt1Lcji4TZeJIVEAkQFtEEf+swAAkDXrR+YCCpf1GJOKi3/UmBggy1f6QwTf9Eu/+cHF/w5CkDKn1og7P6o7Eav//9/+EMhQOIyML/M/fwCPMAipUrABz0DM0NE1keBgeIFgpIn2dmdZwxHGLCqmpLUszD2x//NIxCQcKqapvKCNjEsbN6dM4KyIAkRV+smx9FZL/u/+c4Q3/IHARP6nOAAIlvI0Ohjf0YxRKXZThw5JFE7ZjN7uBZP75MWTs9BJ7nqqf/WfLhUUNlyYhoDtGALKAl7ABzplczLqbmQfgBthwlM0dlIsmUC6GIy0e+pEvkXMH/6Nn9w8Co+2ZzrudAtWu020//NIxDYcara2XKMHKGYRZSL4RPE+EeV4X5/nCroTtblURAgADDGsSu7wjOFXd3N5SzenvM1371z5Xem77v4N2zq0uKVnwy/wKhSCrGm7WVg/rSLQOwiNb9xhpunTiabhxNtndD7JkDnFzCPliQm3z4b9/t4/1AjxP6PIcJklOhQKxODEJ+X4rCXkoaNEoDUH//NIxEccCYbqXEZeogjjLoiUqnIURQIxdsyoZHaVx659MVtBkngho9vcNj2PCa7Ef/5P//2VVRSgpG3bGE5R2kliOEU16OxAsPPtDbqwSCRmlYsYbADtLmWM+0OP5RS+WU05XjeUMSWJUsyxBgkJAKRCQBFMJFbSIKX6j6zF6s3aYxZaMhZSuVprObla1tpI//NIxFkbqR72XgIwDhQUSWSr//0L/+Tg65oTN2f8c8y850IRIAvCkN/9WZAxxFEfDcYEMn4omW28wC+DtRkdW0vANBLq2LbcRTr6hexaNhODTMncJXE3QJbOzjJhMzOs+VVHO7Vrx6l5di2NcyPlZv//a6lIYVM76//5lR3Y4kooCYLAk02T6GUqLD57//NIxG0cinLN9nmFSuuRLCYJ1RDRe2Wxtj//B+BABFVnppLnYe5ME2ZB1V5nDqZs/4wJaWJayoYJLxdCQmhsuiw5wW0uHzVRRKRInnqOkrbmKLJay6at1oot0l0e6LJdaLeYmqKnROG49nDQ86d/+sFZEFSoK50GRbEj7hX7ZIsDS1IUUBuxiwjAldKB//NIxH0cqd7OH09oArpHPbJuy9cqdBb4zRFOhoLigAIyUQmEOHNGNFbiag4yDYcEQccQrwN7CkxXROwARQZkIFYGBUAbGiBvj4cSMFRehjMji2aOCgMLKwFHYthuk9dy06FcMAipHicWT9f9BrRwk8T5FSgU0f6t+9CdSU6zjJqov7fW6l1rr1Kn0SKHUkFG//NIxI0xo/ZkC5qgAZqrXUkiz3X1KnkETUi6ZOKdNCkdTJIgIYnDCYd4doWsFEwJ+tv66bP11/9ltS+cZSanZSkXK4+GJXoAYJu/zF+7kOgk+ML82IISoy0nEnWUjqf3B0298zPn8HbwkJdHyvVzGp30KAwMBfHUDW4aPTcCEn2iEoID1TJxQMijldvoMjWh//NIxEktw96hf8l4Ae+XDLHfsZfFy2Pnjy6jYzTzO8jpyC/rIrMwme7dF2n3zXHzDanGHatnm89v+X8fFnkO+7udPvWvT//f//+Pr79L/51j/H3/r29tbr/f/frn7/vb5/pX//dfWlcQNUvXECbUe/KkF7PpS8gwUEa2/v6vW20UHVMa+J5ukQzL//NIxBUfIgqyFssQnCrrFjIgEkA5KRe5e0BIHRZTdmG9YDCntNxVryon/b61rVCLq8wHyKB+kJUEgwFE4WnHgoDzqOeS70v/iZ//lkd//exdyjKuYJDxDCFrIgQBj4Pn1h8WGg+D4P3U/zYP+Tcwo56P5DkqApAICoP3E2haCBAInIxbTMB1gYOAejlpbZxj//NIxBsg0y617pvFbKKOFppV/KY5Sf6y+VDb9MvHKoWXX/y/TCTOlx/xljUYwDLcbfEqfLeS80J/8Ss7ZFUcX/5swMjWrr71nDArEMVqi+SyNIFVtNGY3wTTIpnqHQHVCE47Mn1dEXvMyv3JO9SGscOGOuF6agEJQDPBKS4/xZgc42ZJaiyJAIBguZgf+sX4//NIxBodmyLKVpPFpeE8/oEHFwk6z+PwgqMy30Dpqj+mij9booot5gUXG0GLjLAPgnJKjKZt6y8Uiyro1t/0YHrFuurfDAAgQUBLyKZSl5zkcpW6pUux8zJ1dCN9q/oza9GW+YIc8B6/tTHjHNs0CUp9dAawacutS0DMCuFpRrpIqWQUTsv1uNQRqa+6Vuqw//NIxCYdcrbRvoPVKjKsRtX+Ii7AclVnHzuqsBGjWe2p94sm/OiSJp3Q5huCCRPdEMEOLP9P8wv+ePCd/1O+/9c5O1a0XMoaUcTIMXrAU0t6G3//lLqz6YgFgBhhiAYUrtkQJT712uAotn6lHt1vK2j0N5HYjP2exe/u3/6VVv+38xf//++zO9G/+rsR//NIxDMdXBbqXiiffkhKppX089GaxxDODFMwQIjKa60OOqEhznZ8gghIy/gEBwyk/J2SIPBADxAcD5KclgkA6A5Mga5NT8PnaOAnAvSboeoSSSW20RIgrcwkIaxCWZo3NGwUQYzvGGPP1ARMzL/8l5mx//1vX//ySXqjLdOf/1oRHb///3OVHTBlHESl//NIxEAavBbuXgif7loUjrqtzd1clDuEiick1GWqBPkPN0qjhIMEnPI6V0MKCpCI2eZwjtXSIVtpZGdv67QjN/XMZ41zpAI4cIEM+9KR7r78OE818Wi6mvGYK3zrOe8URyrynojz6rZE+2zLJLWwqzU772OyGgqox/fp1SY4lA4AOBFOCDsjt//8tHkdUKjG//NIxFgcuz7K+HjFMHUhjFtlKX//t9UcrLDKal2Vu8rkQq4jEWp4KnG6W7XIiAc/8srvK8DQSnMCRxzD5pwSppfjz+8zS0McyGmk3h3fOWJdDJqzqatalj0Mf4ScKRaqW7qEcKB9/qUVBIDd/6AsFj/1MFoFfb0Ihp/48/1Yu3/X/o3/VGt/qn+//1d2+keD//NIxGgbiyrOXNNVKgOREpDGdtUwoOp+AATPc1c2RKIakDj4lIipkj6xLANX7AtJGSQc1nD5MDLAY5OSaDJp9AzAIsFRNl9T4d48l/i8DxJf8aTf6ghUaX/HUSP/LBdV/nBZpr/qKv+UpjX8ykWlW6zqYe/LKBpTyoGDYUrGCVgW2///+94UDQuOaFEtz9Nz//NIxHwcevq1tqSFOgWnjkBwQ1x8Fl2VxuAF4iaCbNqJUSmDfhhNW2osiFwQoT6kyXLwz4WmA2PkQf84mAwN/1K36BwJgv+QwUT/3/6ggJ/6oK/3pM/odlKXsdDQrBnrVjgg4D88pkWY3otgwFDXk/+r/SROh2oQBR91ySWOb9k8wRJgEoFid09capdOC+Qp//NIxI0c0y7OXolFag2+YH98HvMhsC+cZ3ATiJZYv/zirGuiUoc5f6nDhQwr9CHEt9TCBwEhllOcWEOAkosjHYUolXIQjOZS/1SqdltMT///Mjc6UHKUoVQbx7vqd6P/y9ZfMQi8XkY/Pu8KeMNTIDB2RJ5ibcpfYt1JYtMwAQmAIbT3//akNz0gh619CRMD//NIxJwcssrKXpPEfoCBrIpyCAcEQ8Ih1iXO5Hb///Uvul1udCLJ2KUtHJi0dto9UyeQyFZPaq98EnTmRojInMPEddNoUQQQYldIEDCPyY2txfU5J6x0e42KiAfCwtr+3RL18KAQTt///M5Qm+IaC1qrbW5h6QSKBl1ePzq1yvTxuYtFK05hDlMayM5UZqEO//NIxKwfmsacBNFTFI/zpX3f63oXx5ZYsHBSlLnuYtdb6cc90jDDRpx5AkfDTn3QoQYOVTBDPtSiiEcOBgmInmvfLJ/rOaSpxB5gHkWI/+wWSAzhJSMitdBACk+sjAvSKVGGM6RJh1gG4NyBbyC1s5IE8/YOHRnPZMYkaR7RF7Mm6TWjU5jRs9ruprz///NIxLAd4pa0PsiQ+P/6rdLrYjHRSu7mmZK86v6WulCnVL1Z7rpZwZqujf//bW1rf//+Zc63O3NtVEUw3FUxNxSSIAhS///nNtGTOt52e5pLp1KAvxT26jllBXNyxxxHaMp+4W0F487UQkweTBKpMcIO4eS+RBtR6h2EP1iTv8Qb4v+T6kMWiiQRKUuU//NIxLsa1ArNnoGE8zxOpxzvKhxzNNYzFqzld/IsvK6qUqP///q1ZSSXR/Mdk9btzK1vaizFURDpnDUQQp266RpOXf/0JSJ/1lm1RSZ/qyEldlYqtJ099SH3GCMN+bCB3n2ROgcRk5gCyZT1kG4zmj3Mu8+ddv+qyc/t3HF4H+Ffv///8Z/UnNc/81NIxNIf9AbFvsNK88iv+QX5A7fxvgV2jbrlu4vcyp2K7n5GoGPEKik4/9gDfqvSeWElo6alpKy1YfZR74QRkLEaYtl7YklZkHJtTF1J9HLEpE4jEc3LhrIzNn6xhRHIp+pOfXLIqS0ZrvAS0bLJZSS/7dVOlagjLfHTPNz+k5/6JGP/5FSU6Vpqe56/n2nN//NIxNUbDAbeXkhHtxlm/tGKlzzKXJGVG/B5B3NlTHB7gqGV0oV2XDuBzwxk2f9aWXkRlUN7cDyNlq1pg/lXks6pZWRRX3mSrGgkzBaTkAZEv9Zo75DPCQNSKRclGjbNl1YmQW+wkHSc8wiGUBtq9LjoxqxyyWspvAqdqygiVzOfmUM223ymupHc6Wx/rmWh//NIxOshfAaiLDGGvTQ3RtyJUf/Jv+Jen2fzOcNvhwzjEuZo3eZCsdrqFIhxVMArNXr87MqxZuYCCRiADGSGoc+nBswNHOW8EBfSY2RCCZ54YW0Z8onD3MayNhhAJIUoB0UFTDAVh2Lpyw0VVSOeNauqT/9VW15XUVpel+Glddv//Y5awaAoa9mSjyYNElgr//NIxOggW/qaAEmGvdi41UwEM6o4qWB3ryWd2f8qdfWoGmqHB2s6eguwIADUIJv/8P1mm8YaBGCmRlqUf41kw7LqtJJYKZIY0hGkHZp5sLEVntBBbpGCh5jZSZSCGQC6EOq8xSs4nHAcUAYRvmSxceYHzfcJRZQ02EjhFZV5l30ep4RKdlWln6///T1TfQiM//NIxOkgMaKi9OZQcHSxP+/+ujPMqXgwIQhM0LNNUkP3eupb9f/7EvKIcAREpyWNzf9Yb5h8QZwprIe3I6zowGDkSAJqdUDW95PozhurCp3Klu1qRVdlzXYZf2rcJ4qLuHhOhgpEpk1hWk80vMyMpIcIem+5L2ZF+vuroQ5HyEGOsRBIQ8ya/6c4vs9xc0km//NIxOshQpaWPtoFMFyQbCwOkFtFV/6bpM5kP/rpFHICyzACnGSreigsfEOBMSnL/KcUCGsOHZeGPAI5caVJBUCitD9JFt0CxEJ6YgCBIpNtTtIaE/Mapm3i1dVeOupY6tVabXYylQ1IMwqk1CoRibGclLhZw9vvelXKUqQQyUKSq3rP//+eZEubOIXhxf27//NIxOkeworKPsjFMrdG/Ug2wO/2sk4ZOB08LkTB7/c5TXNCKQmYUlAAow1YpL0aKoWGIq/3WZDGBQFAqwdXnG6kIOQEk2ttUMUoMWaimtDrcnGYwZ8BwoBwTDX+elL1kgMDS5cKG6nZTDtmtnwxgYC1qCnQxilQCMaqGZ/mMVkRRKaO5VKVv//lYzqFEgQq//NIxPEiAtapXj6GPmoY5f/v0cKUJPWAvdnQ7LHf/LTrYisDX10ZHRZaqkYpBmqDz5vUg4wQhmGIZpDXxwKaZKBYguDORPAywcUJTN0QU2GFFS+MkzmajdV+qZPvCJuK9dl8G2hmxuzMxoClQ0IiNJJT7DpH4dEWGmklPzpG08ykFRCOH+2Vg0es/yrqj2DW//NIxOwgalp0Ht5EsMqBr5KDXErpUNSx0sDQd5XllTfQ0ZMPAp8d8K/BHDLU2KDmIRLCs+bu6Dhuw/4DQ3KlnZrypOLMWSBRR5loLUicacWUeYeWUWUDCOj2K1lR7LLLLZZUftlhl+rLLLKoYKGCggYQODlljo98jWXL//jLLLLJZZZZLLLL//2VWVgoIGEB//NIxO0e0LowCs6wZIMEFBAwQMIDBggYISA4LivxYWNqTEFNRTMuMTAwVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxPQhQykQAMGGtFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVXwxuCAp4GkEAaAR4C5UAJn+AH8G6hO/4IiC3iUCl/5ARH4W9jmGf/4hhEhHggwZc///hmxJA1WINEnDVApD//8aIpcCwyIDNh4BviCBBP///yiRMQ8eBcZBRmg9QPMIDAKEAOh+HRifwtPE2ClA2wX4nMLeyIEHQMS//NIxHwAAANIAUAAAHzn//mJExmy8Tg4KBaPmhsak+Zm6jIqG6oLJJSpNoRiIJAAZaodMw4p4BIlS5Mx/voBPYLtBzP/+rFKW+sCaal42W1vcjujvI0FnrLu2tMDAw67zMF8yeSyoq6VSGE9JyUCNbEWq2YnEFWu7Xf6hPnbOwN0RVjkHGwLphVaPII4//NIxP8lzBX8AZSYAJ4q3aPR0RDDgZXxtI8/zbcSVoUeBrFzbFMsR38B+rXafUM08ZWVq3q9D2bDsyFAnmNTlxIOpkuNxZUE7yNEvF28hV3Pm93cSNq0Kl4zfD0/3APg4CEdWIY8ZFIrEIQZoOCP//z/T//X1//9f2+/9//GXHfpfdY9GOPdXx3l1hCa//NIxOo6BA50/494AWqgCr+u8LMQ86c68J05zPbeetN5zO2dhzPmZn6NsvXQll3KRwvtn67ZTrU5CLC10tKT8dCdEns4WA4RExfdIwYOpGEJE5q99ewhORm5oYFg+upDgxTHZ1FApXl1CWQEU/zpraJMXUiyBQZiQ4cKbHh2+J4G1yGeql48DqcoOqHGkNCW//NIxIU1LBallcNgAKsIEMnLRIOx5FxwTx0GTwnlwbIYHSUlCIim4+JjE0TIkJ9QwtVnn6+cJV1zyfEhnHqulu+1YuZoSd05PnLIHr03Ehel1q7kDq+JDLUUK+71e+vZmpl5AAAXO3rrBkWQcDjDwDDjUZcBpuCgGzBKZVBIEEACCKObEACDQQQDWK1NHlkS//NIxDMpcerLHuCNSBsixGpZJ30fUs4WgZjFpNPWohjQsTVscyfqdz1Db/v27a4AIDm8gQIAKpOp3S9XHAFA54wjvLAYWcZi8/iHvtUspUZL5+semSBJwgOJ6owoQgsCoKgGw6e4wUWNDAHnvKgENETpYq47/7xE8OA0oGnxKAmy13PSyABFQfrPndTa+DCI//NIxBAgeureXuKFTpTFwdS8X9jrdh9jLzcMv342ONkQ16//6hsEBtKGm3h39sDUFdWzrv/hSoaLqkS9B4A4IY5+ggAVAuiyxy6E7fiuOCsTHPyAmFUlm+RoZ/VjKX5FEgRlLQWQV+dDlbeylIZ6o+Wbf+jaL0YhXCjQfGeIEhS2CW7QrSd9TzMNTEASXqWg//NIxBEgVAbWVoCRU7MAvUCrf5iI+PfWOSNItdcoDHCbRwJ/DBSfggoRX+g5Plcr/DAJH9SuZfqZyp0MUBBwO2rmlQ6r+V4tbhttr9a/hovtmWotb14OvmWWWYp/1XWuJ/j497/9/69///iv7S0qJeQ7D8ze6FxgebyLnojqM4LTnNIFX7x0WhYXLpQbETuz//NIxBIeTBbNtjlffhzmt6Ejh1tyBKppvS9mn/WZqJ1FTPsu7W9P5P90/We9kov3/v/z//f/bjkWzOhw+5XMWo8UFEY6FOBGeUymwpzqWg/xfEFPJWngchBQU5YgBIGeI4aRQnOeAX57BHIoLM108HRVm1ststZTRAqe61AZAGaqbuxikEK7mSsFqOXU//NIxBsg3Ba+XhiftKzqD0TtsKi3UJcp1hyyJYQIWHOHUvM+1tJO2iNVSNp9Hsfr25OqVX6/vJv1tsS3V6pXbrozqtynoeo6O6ySEQaZnZjJPQzGW2R8f6KM9In4iEerENiJAWE6FTM3JIwx1KkdpyFhUCiT6nnKyf43UpKgy5T2KWFxxczHTEiQwYnNdcz5//NIxBojig7C/NvG8PVORPTDwuDF0RWntUziAUVMbD1rrvkT295d4glvJe4PM5+cQ3zmfiEXvnOLYb2Ydh0TXvbF8ZpdkCE2TUS2xFNVlbjAv/Y2qvaV//KiF/79YIIxe+IAzy7fLic9Hwn2RE82bQYeJXTvxEeoxFPEqwVfIpnVVRBerS6nWklh9amcXg4w//NIxA4ggoLGXqYLDBF4Dtlg7RAUWrRE3iMgSfgcFYMNNvMC7DyBjBrOGH4R9x0GB4B2kNjbXXf3hyUPpLVBoGpqbv95/bliXHsk5zh8wqIl6EIRGN6v//6l9VkGiIDAYyIhGRnYz+/Gih1ZVc4wVCwMjD23zQcFJps69jaB6k4SNFOQXfWccvqHLAFmHSlx//NIxA8Z4Ya5TpvQzjZTZ0OLANIB+Y5t//DeT4JCS1xt8f0oIYDeEOaI3/IDgJzihb/vIlVr+SDC6Zv93PMO/8sXFxg12TZygD1gBTXyzv1gEOoU9bv1RZ4TctXd9Q/Q3//sFTCVEgKpxam3f//mRMhwhGBFxGp9b/pWowxQoaaP8mB1Dmnj7ao/jwBHfkDg//NIxCoczBbKNntKyrGN+NEg835hUv9RUxvyAOONbxMxW+ggUz/cOBYwWMb9f+n9G22aRjpsRiERFZWKV1RWNlKZ9/uZNJuTvy0tdCUD7HZBUOuqjQTMScjTYc1NVDKw/haSEyTV0I9TXQ3rJxt+t0TVvW5gfUl+oYV/qX/Q3+pu9u3+bfPQoI0/bzNIxDkbLBbeXmiZfv///7Jb9m/7f5GWnOIJ5znIp3RleQk71M3hLP/0ln52TyWWCWW0i0Sz4Gg6NUWFQECZ2sWA+gL0OmmqJICwnFibacb5/uifR/1//X73pKiWQO5b1P/kel1YIhBYhgQyIQnr6f/63tohzqxaEOdJzn/tSr2XuRfnQmbh4ogQ2obu//NIxE8dBBa45FCZXG65WN84OTo4V9NEKuauurSOiRTSYtGsnpsiPFyDDFdknmxzdhgbf223XMk/895AMpd3OWG7c45rSNadZSPOJ9dPT3SImZ19a7pVnkt/o7Zu62nt/1oug0qnHpFx5ddf//r9UqQUOoqwI4YYx37X//j/37QxWFbUsZQZyROreb+XVRS3//NIxF4bdAbGWhlNecZE5rLNWVWhKHd3YNpWwsW23a2x1snvc5qQfRJzwMygwGBQAUDTzOOlLowQJTDoLViAQEcl08WJEoAYfExYxSNmClDgmGZnmd7jAIBBc8Olch0I3/1+VNGb/QiIyGLVqnOdv9vUvkIKDBUJuid//rwWHrbDv//R/1HSstWMPckqQDpq//NIxHMbyhLWWuMKrmpowACp+8f/VBvTKTAAFNingDkwymQiYN48ycWVXGvMIDgzjzXNd/HWo0lzGtY//5TEpfUZFTc1NGnWr1bWNK18QAYE7SSf9AkEkv6mLS639RMKy6j/kU4bf6kUf9BAPgUv84fBal/lp+pkjRXqpVFBhwGjkfLB0juaBXPoIlvMkfI8//NIxIYicsK6XuNLbhAWDy4QyCQAVYABm///8252LVxEM56HLAawyN6/UxKY85JfZPim37UaziQAwkVB/U5iNYFQeD/y6ASQGAXG/UXhtf/Mh9JQ0b6jg8hwGTfrNAnw5lt+pzV2/QaHgGFm/UOmDo79Slv9DIJCwim75hIPDTJrapSlv+3UVZpnESF02rmQ//NIxH8i7AaV3ttK/KUv9f/Np5hrMHjB5FUgan7GU05P/6mFeguWZSl+aGciNKe45ZxM2gE8MvWv//6F8BGRbmFl3/h4+Z0SCKJKsRNwKMagbEYAkCiUOsemv/AXlV//83zaRPSzfozCi/3Ygpv9EL/Vihit6vIwpf//31rtqRlARMYUDDRqvp01brNu0/rS//NIxHYfIsqpntPEvggsLOfAQWVChABO3Wko3IqXhqgYIgdFiSEkhbqSLxtb6kkjZf60S6lb6KzI8hCozKqv/r/6f6k55///856i0VydTvyE60Iev29dXlOgAIY6Cwgj/q+rsavV8f4Pw6DQMuM8mgKxOGgylwSIt6DOQ5CCC2F4keTM6IPBPtyglUZuIAb4//NIxHwlzBagPpifXOMScsaTAgHKIeijwbGEW9FELOsV8k6+LerqtSqaTvsOlwuhiLwGAXB4ICe/Aft25QxO7uCdBBcMgcKZH0/3saTVvfv/ue+6A3FKHeZ8elL3tI1ud4p+JlJqBlf0aXB9DdVjwM4xbcCPea9J21yVrVgd9i7ElCkHjFjJxKUTzbe25odP//NIxGc1RBaQAGDe2JhRs+eJDjsDjPSNLDvpPq5Io4ghsthJyDoUVijJQpkOVqpd0Z4T+S/gUj1l7jq2IG7KdONjSr1bOpHU5omS9NQ10+johxG+hUN+4rbKoEfuI7Kd2ZJ9uJNmcv46S7i5JVQscBmaT8TpArJw82xrV56pelZ/8lYOX9nb8EWWGl5TDUfT//NIxBUiCq7HHOqNOFMBE61Mo3wbQwME0DBwstNBFqLVrtxmI4AgXBFRyJ75v//814J5xS3e5quVCYAQBoJVb8oNHo/6j+a2pptUV/+RAUBy/NZ0IADALHb+VBvL807WKwFQqYisdq8Wx9//++QFhd7GeZRuMtZCJbfyvrdVBPjqbrrQALvyMokCJjSD//NIxA8ge2q+Xg9mTmbgIMcxD2Vgo69m/yWZdrKcFRN1/CIgLgMVMkowRcyGVAypAZsJx/zYCAApgaf/QP/9ZFyaf/QJgQ8bL/5kOsaL/5gO0rN/yLP/rRal+p3pGzO3UoxUXjIx/+v+i+pKtVkkFm5eUir0U5s8r2jQy91fqzQALAgFQkALfEFNut7gjoyO//NIxBAgiz6Nvj8kKAAElGJs0pnUiZOEYDJLu5j6ATAKq3t1A0ULNlVL+sGsTb/ieg+7+vkaG+jjf/H0DdYnCqlS9kxSIr40TZHS6AfsJ6JJF/5DS6r/1JfuXj5qo2Ot1G0mifHkqziX1f/SSt+snXSUmYkZYRBYOO56V43yVFWAgBUgAC9IMVJu5RqYUp24//NIxBAgYq6AflckMFrsRmXWe38srJ8MmBHye5jqW4QsA3JzrRUixPhCoYWX/mgTYUY//oB+AoJfu7Il8P2Dpn/1DkC5W/zAggsX1LSNiACkBPr/1TND+pjMn29esxPmBcOIPWaGabk+XBnky2aqULfY/DAKg+aZkEf/t5Mc9YAtmDPplIZhM0ANDIGUUmAE//NIxBEe0yKcVKpFxVkoG6FkE1GIs8UETy/00iZEpGr/nRzCKkWLbfWmZk06X9Bn/92Sf63OGpeSS/9W2o+PuoFxWKycQDSMUw3wzz2E2Y5VoECBgusVbQQqEixBVNO5EABZQh0MCc5GyL///wAdAQ1oAqfmIgbVEAa6V1ozZzQ2NUS4iQ0BNQwEIXKh9nZM//NIxBgcsz7GPJiRM8iIDnjEX+smxZ5NG36ECANPVyOMZy+c5wj/+v+RUb9Tr/6Ij2QWbG+7jyFaVq9ObR9yDN0BwcL5AhitO96KxKRd72j1E/Uzwkxz///HX9fTcLUELCXFVsOe62kRAXqnYgBH/8u+grtdhh3xqMpvd+H6ObL6AKAJGXpG/984ICmJP+55//NIxCgbOl7KPMGG0jWEBwUi3aCBYcaSSzPwgh0abu8R8jM3c0t2y88yhFIlL3pu9ppoZSZF///nnnJagk0McKgK4kJA+FgZPtNEUUf/9HJX2JEC5I3JCAFLJiixjTXFNZ3v/pTsxVTjLA4SDz/XYUQAIDIBQMmZdNG9hmvH1BeSzUlnriAPgq0uKrMGCbjJ//NIxD4ZqM7aXg5SMrIPFj36ni5QmEyyGt/sIrAw1xkkRIEFEGV9b+S/+jOFZwKqR//3pKC1MylksrIAUv///r7rJm1l2P/UQbNgm/ZWlY2m6BCYqVxbn5fqAG9Va+QfAGD4WOnyBc1V+CBzM3wHZVzXG7fDv//oxvRhbIYrFkde53/IqPUpTmVkfy/fZKqe//NIxFob5AbZvsIFD9t0LrXt10///9ap+v0pMZha7yUI4CXba0BJ3f//DAlFoKGJqo/hsFNKXSsOp/AlDCm372YIAsZWz0p4cMmp+vfUgJF38SUEs5f8IE3/l8Dt/g0LBTJD9hpVP5W/DG/VvqYf6ALflf//NL6Gen6obZjN0dn+82v//q/8gRlY//NIxG0cvAbiXnrFL6qqWLUPHkIA5f8kZXH/vHgBVBGlOr2x9KuATRFi4qx47e6BgK/qGAnU+KFEwcu0CZS9mFMxfVJkPka/LM60MYUDEm8rGX0t9kduoU5UUq+//77H+jSS9blZHLtKXX3///0p000uiLsmdCtNu1EspVR7MCOOGjWPzhbdbtv/bdrJ+RGS//NIxH0cc/KpvnjE1R3YUuehwjRM0iJERPrv4IRWM0DgY4AjIEEAz3cDEDJYDDu5XQnd9Ep/9X6ProU6/+QhJJHNTUIMk51Ie6wQjc7MRTvJZk0bsvuQjVRrXI1T+n/b+/7E9VdP3eFomRh2fU6PQ4sGxGptt1266ySRhX/4XLJFDIB0THc073NRVGggUUzk//NIxI4cVA7qXhiHt/jLaE+gPTI/c4Seu8wY0oXNaRjcrqmdbrE9Th000pSULo57ueIzZ9o9YDbhxI1NE2JGRzAZQAJKWpjM6/etc4eZ92+csv///73se0julDqJWaGVTlwmeZgSCD8tU2eF1yyzwFQhWhMXKCYyQdYLvLGUuOYMJLzKUnTlGxXUdUFz//NIxJ8cW/7eXkhFslk6o9cWhSt4hbFP61r/lX23//vEwk4uiHRq+tZaL4sDPXX//wrJkeurjQ3+fH9atlRuY5vmD4A4bN/Pjdfp///+r7ZjMo5niAX1A1gq7DoKgCgRAAX///1JWWqrPuBpoXzv/K6y2iI07wnmfVxwFgkgOJerqD8RAmfnnj5Ij9T3//NIxLAfus6uXNvO2NhsxW/M77Ck2BESj63TAOBZF4/LaMdeAQD01XPMObeA8g3mqbeaW796lGFljBOmTmiSji9exV6rlgqfAdwu6dYyw4J1KJ3A+0496f+alRCIjr5UFT9nRlwSQKsfpbE0FOCLCZH7KyCACo5r/5NDoWuuXcswWHrXwxJsrX9WqrTf//NIxLQgghquLsnY0MWqrTfTSSKm1COg8k01XUcYUUZlOV2Q3SR2M6lKi1Tbpp+mvvSs68tzI8zzfpb//X5F+yf//2/9CJIQ8QQOBDs49QgoPdPfQADP60EwyQD3Drj41ulw7y4g2ywqJ7vTUhrjBpv+WR9Gxv/DbJGe3r+Kq/9DCowFDRQQEBHflLq+7f/z//NIxLUc3BbONmoE3s/h7LGZmN3Jm/T//v+pKthsakQhWdjPPelSyLIvymfVswRjBt+/qVXd///MrWLlwAkQUO/66VIpS///jl9ZPNbKA5/f/SYgMVH3LLwObRvCscuW9me9e+7jo7jHnAIB4LvQwRBq3MHyYx85zeysduoc5Tf/k0yMdwgVp5GObp//oQ53//NIxMQcgr6uXovGXCHaHFgChooWUitEKotUZrFncmQ7clDP//2bu2zXlf/f//+2rVOTWgQQDNStuulRALv//63t8UkhQVrsq3QNhNMErwvShGZWBp4AaPLJJi1h2GGjgUNOqetyumctsSPio6fjJ+2Qia7S6QGhMAeLVs0hMzNVb9ukMDAru/BESwbnw+ve//NIxNUevAbOXsHFC5zNibzajZ5RYojfKhoSwoKZGLMOGBgYKzx7Pve+W3QiuzKc5zDClSxLl+ZbbqRdM/eZdFv9qf//7f7/0vVKsriR2loaVlIdm20STo9getLaFzcgw+ulW4s7+FNHwuBTnYuNBD8ICJgcForJZGIiwLKlSUWpbQRHwIhYmbeIIr4E//NIxN0n5A7KXssFNzMxCXuKp8g6FML22lOStBoTCn6fLeLmdi1XDBFSZ5Ia45VjgkC8JViQ5gguyCJNUKE3Q4wL4NMQwjxJSEkqbIKrcGbMGG8BYkD4fNEYWFw0skP2f7WXVJWvb2+WaKHIf7n1CUVcaZh9UAHMPWZDSDK1SOmfpQg4VgKn/CCxYUUzYrFk//NIxMAnmbbufg8eOjxVoXQTiUYrBJd/KwiAggwilvu8mQBwJIt/jgPADBd/lA4Pf5WOCdf5WfO3+mXnW/j2Q5NO17wzMCdNekO42PfuLXfyfOB2JwSfCz9vdrGFB5UwLj2XANosBCsvLfFcIstYETfwrAEk99QvwvLLDQTsHaJkSB+sa4LT5oCYiwmvWBhA//NIxKQgucrXHm7WeMpx+IEGX4dhW3w0Ep863ytP4zp/EFEttXAAAs3hGJPwjGvoIV+KQnbqIxNuojGP48Z0e16oWRzphYaB6SLg2CzgQBI4EGPEB16y2NZDK+W/RUW11Qo1So1r8AFLh/70Y1yJTWIHyUIFgHij3nymR0RPjLIElJY4f+DoTU6LZ80B0nv///NIxKQdCobONpNPEoAVH83X8qIt/5SSzRlbilj/+WG7312PSp99ySh+We/21S8rO3UjkbhjoTKZfl///1++y6CwYjIeFeSiCzs0tlzKaQjCyKoFlT/WgGci3hyYj5GXQ6oHxwcwn9FEUqRNI+XTSJFC/2BpBTkMajYRTz6aicer+ZysfJ75uf/Xy28y6thK//NIxLIcQuLW/nrFMP0upqmav2fR1lYszlVDIgsBREc8plan0dPR6CpEDA0FDwi/xZdt3/uX/biqCEA4lBRl3lVoFZx6ucI8aoCqLnXRYaGFWLoT1/OtejVOtqBLH8CwsCMJDko4edcDQ5FRIYnbCwsJSjK21q0r+d41+WV0a+DigXbCTPfCplxUJGv///NIxMQb6rLKNpmK+v/FRM8GB5ARQMTv+z//ws8y2+Ld9UMAo/86enzuRBkAgHnULj0lT01GIxSvAYUwDnydcqo735YAx0IkTUkwUEQmdD/9YVI4b/cAsbMt/1YCAiU9SlZ+pSlRdwoCAkHI7GdjO37/zO26GAjiTKicv/0uxn1v/pqyGlZTGlASOGQMeIhJ//NIxNcaGW6mLgaQGv+azem0t7rR49QYtFgmsXFb1UKTRYgYCBAEEMPFDHSYFHZEqG1zgRAGVihg48ZGAKlZSywwMEJBEDCz/SLZjRc0WgLAas0ZGSNbB359c85LJytxp61jp86MvlgwomKl9K6qR/mFNmq6ggKARgqAhKJeG3DyssOUFVndbzqFCYc1s6VM//NIxPEf0taMZtJE0LdUtshzRae2IBp/+o97pnyNsKogCVRTSytacHkDlBZAyxYwYofxCx4kuOUvxMTPOhLMsKHq0G9cbrjdcf4zrF4rdJPFENFCaI0I0//MmioRDTCQ0ImhdhNCMDQjNcyYT0X/OIJomEmhZMIjQi/4SYSaETX/sJNQkNCkGk1/1ufw1DQC//NIxPQg6XZUCtsG0OukJAUKGgqAm1/hKkxBTUUzLjEwMKqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqq//NIxPMe42YMFHhHXKqqqqqqqqpMQYIbvc0c9ggYXFBJk5IBQSJggKMXRzqFhELiACUAAEru77v6IhOAJufE+IVcDdAMDOInuhZ6AAigAAVOIlRP0RKACCp+WiF/+if/8Qtw4Gcdz/c4Hc/7x34XX3OJu7wOLfRETRNz0T//nohe/7n+7vAMW/ERHAABI4fg//NIxHwAAANIAAAAAB7Tp839D2oQP+7bEF1wKr9+2cNUWQGOcd1K5e1eqsaVyolZygO8fRwM6sV7PtjLiWJSnIlS6IQcjP2NXxxOi+EpYqqE0SVItXKBk0hisiJ870ml1atKlqRZQraPOtXx3C91YpC6MA72w/2dDoijZRIVeo3ms3+qa0pjwP88k+m1tXuK//NIxP0gM7W0rUkYAa29WK9QQm9rND/X9KUo8ibjaVr5vrAb6KhS0w3rhtTTerosN5Dc4ET/s+6R/8Uvtiq37nw5PMViqbqxq04NlrRKQ9xaRZ37j9xKa+KP38d481HvuPvzadTRc5fsbXGgMbhp/CfQKTs81Y0NmhK9rixob+PB1CrPcypdHQhwZjLKhO7T//NIxP88vBYkA5h4Aoq2myzYktBvIQlx2dBcLU3h7tL9xBw2XxadO1Cpueh2IzGI6AEY7t5mvO28uW3MjxGTvDLlzunnl74xQnv3oplMStv/clMfxl1V/vv9rZhLMbQqxSkE3PD0NabPkbkXaWM3Kj8TZBGiJ5IDTRinS0l1ThbIGlPsM+fNcZNbNqgNsvhd//NIxI8Xin5MDcYYAF4uNuYPKYkaqtRwTu1FUinvGYlYkuX3w7BZiKGKBVpFz7hIaEohMtBgAmQooyzczYmBKlLIE0i2xJRu1K3CjCYqlDym+/M1Ab5iFkVyAeLIplQyYEFUYh0ahZ/XNb0YXDBChYYF11E0qyjWHmUWOocKaayuYo0IukCLp37BjCkD9d98//NIxLMdmj5AAkmG3GRNGGHIxve/WXHi43K15TL1/Jcf7Xim8E63H3Ns32WoQAaeEzGufnxOhaGkwcoYa9LO+JKCYkQFVDgbRjHoOPjTHGATjhNCzSJJ3WZNOOJJSuDHInyB1KQF0XTQOZN3gyft6tnVN4Yn9uGpFfk6/CTGxh666t6RST3vuDiSWhR4wEgV//NIxL8euoJIFDDM9HAtDBY+kVC55LTZBhQWGIOqOrAQAaret3mlrN2C1T+pyjp6LXaDdrmi5atMQU1FMy4xMDCqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqqBpSRh0FToanVHgZBUFVA0CsiWBmeET5LWdkv/Iyx7wVyWVdwVdr/63FuVcWf4ldiI98TA1yz//NIxMcbwY5EAgmMAP89gq7KhqoAga7LGVgoIGCDoR//krLLKjmssssYKGBggaPJZZUdJZZY5E1lllCgwkUBiBYgDEihIoDECwQWBiiyi2uLdnZ2f/9nZ2dnZnZ2dnZnZ2f/zNSzs7OWcacWUeYeWcacWUeYeW0nFlFxe5///VGnFlFmHlHG//NIxLkPEAZMFgBGAJxZRZh5RRZRZUQtTEFNRTMuMTAwVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxP8hvAUgFADM3VVVVVVVVVVMQU1FMy4xMDBVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV//NIxHwAAANIAAAAAFVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVVV"
 },
 "trace_id": "a365fd51-b0c4-4fed-b9c7-20d1be4c1af7"
}

我们需要将data转为mp3文件。

本地测试

将base64转成文件。

# coding: utf-8

from huaweicloudsdkcore.auth.credentials import BasicCredentials
from huaweicloudsdksis.v1.region.sis_region import SisRegion
from huaweicloudsdkcore.exceptions import exceptions
from huaweicloudsdksis.v1 import *
import base64


def base64_to_file(base64_string, file_path):
    # 将base64字符串解码为字节流
    decoded_bytes = base64.b64decode(base64_string)

    # 将字节流写入文件
    with open(file_path, 'wb') as file:
        file.write(decoded_bytes)


if __name__ == "__main__":
    # The AK and SK used for authentication are hard-coded or stored in plaintext, which has great security risks. It is recommended that the AK and SK be stored in ciphertext in configuration files or environment variables and decrypted during use to ensure security.
    # In this example, AK and SK are stored in environment variables for authentication. Before running this example, set environment variables CLOUD_SDK_AK and CLOUD_SDK_SK in the local environment
    ak = "" # 这里输入AK
    sk = "" # 这里输入SK
    projectId = "e10b8f0d1e59477cb65ab1c6ad1d6eac"

    credentials = BasicCredentials(ak, sk, projectId)
    client = SisClient.new_builder() \
        .with_credentials(credentials) \
        .with_region(SisRegion.value_of("cn-east-3")) \
        .build()

    try:
        request = RunTtsRequest()
        configbody = TtsConfig(
            audio_format="mp3",
            sample_rate="16000",
            _property="chinese_xiaoqi_common",
            volume=100
        )
        request.body = PostCustomTTSReq(
            text="我是数学家, 我是人间老大身, 朝朝不拜谒朱门, 如今有愧宣尼富, 只诵心经亦自言。",
            config=configbody
        )
        response = client.run_tts(request)
        print(response.result.data)
        base64_to_file(response.result.data, "temp.mp3")
    except exceptions.ClientRequestException as e:
        print(e.status_code)
        print(e.request_id)
        print(e.error_code)
        print(e.error_msg)

生成完毕。

版权声明:本文为博主原创文章,遵循 CC 4.0 BY-SA 版权协议,转载请附上原文出处链接和本声明。
本文链接:https://blog.csdn.net/feng8403000/article/details/135445182

智能推荐

一个ngrok如何穿透多个端口?_ngrok多个端口-程序员宅基地

文章浏览阅读2.7k次,点赞2次,收藏4次。如何不充钱就可以穿透多个端口?./ngrok authtoken 授权码之前这个操作的生成的yml文件中修改 端口可添加多个addr:port端口可随意配置_ngrok多个端口

C语言 char转uint8_t-程序员宅基地

文章浏览阅读5.9k次。char转uint8_t:static int char2uint(char *input, uint8_t *output){ for(int i = 0; i < 24; i++) { output[i] &= 0x00; for (int j = 1; j >= 0; j--) { char hb = input[i*2 + 1 - j]; if (hb >= '0' &..._char转uint8_t

android 陀螺仪简单使用,判读手机是否静止状态_安卓陀螺仪多少才算静止-程序员宅基地

文章浏览阅读6.5k次,点赞5次,收藏13次。陀螺仪允许您在任何给定时刻确定Android设备的角速度。简单来说,它告诉您设备绕X,Y和Z轴旋转的速度有多快。最近,即使是预算手机正在制造,陀螺仪内置,增强现实和虚拟现实应用程序变得如此受欢迎。通过使用陀螺仪,您可以开发可以响应设备方向的微小更改的应用程序。创建陀螺仪对象和管理器manager// Register it, specifying the polling interv..._安卓陀螺仪多少才算静止

lib静态库逆向分析_libtersafe-程序员宅基地

文章浏览阅读4.7k次,点赞3次,收藏16次。当我们要分析一个lib库里的代码时,首先需要判断这是一个静态库还是一个导入库。库类型判断lib文件其实是一个压缩文件。我们可以直接使用7z打开lib文件,以查看里面的内容。如果里面的内容是obj文件,表明是静态库。如果里面的内容是dll文件,表明是导入库。导入库里面是不包含代码的,代码包含在对应的dll文件中。从lib中提取obj静态库是一个或者多个obj文件的打包,这里有两个方法从中提取obj:Microsoft 库管理器 7z解压Microsoft 库管理器(li_libtersafe

Linux的网络适配器_linux 查询网络适配器-程序员宅基地

文章浏览阅读5.3k次,点赞3次,收藏3次。了解一下,省的脑壳痛 桥接模式对应的虚拟网络名称“VMnet0” 桥接模式下,虚拟机通过主机的网卡进行通信,若物理主机有多块网卡(有线的和无线网卡),应选择桥结哪块物理网卡桥接模式下,虚拟机和物理主机同等地位,可以通过物理主机的网卡访问外网(局域网),一个局域网的其他计算机可以访问虚拟机。为虚拟机设置一个与物理网卡在同个网段的IP,则虚拟机就可以与物理主机以及局域..._linux 查询网络适配器

【1+X Web前端等级考证 】 | Web前端开发中级理论 (附答案)_1+xweb前端开发中级-程序员宅基地

文章浏览阅读3.4w次,点赞77次,收藏438次。# 前言2020 12月 1+X Web 前端开发中级 模拟题大致就更这么多,我的重心不在这里,就不花太多时间在这里面了。但是,说说1+X Web前端开发等级考证这个证书,总有人跑到网上问:这个证书有没有用? 这个证书含金量高不高?# 关于考不考因为这个是工信部从2019年才开始实施试点的,目前还在各大院校试点中,就目前情况来看,知名度并不是很高,有没有用现在无法一锤定音,看它以后办的怎么样把,软考以前也是慢慢地才知名起来。能考就考吧,据所知,大部分学校报考,基本不用交什么报考费(小部分学校,个别除._1+xweb前端开发中级

随便推点

项目组织战略管理及组织结构_项目组织的具体形态的是战略管理层-程序员宅基地

文章浏览阅读1.7k次。组织战略是组织实施各级项目管理,包括项目组合管理、项目集管理和项目管理的基础。只有从组织战略的高度来思考,思考各个层次项目管理在组织中的位置,才能够理解各级项目管理在组织战略实施中的作用。同时战略管理也为项目管理提供了具体的目标和依据,各级项目管理都需要与组织的战略保持一致。..._项目组织的具体形态的是战略管理层

图像质量评价及色彩处理_图像颜色质量评价-程序员宅基地

文章浏览阅读1k次。目录基本统计量色彩空间变换亮度变换函数白平衡图像过曝的评价指标多视影像因曝光条件不一而导致色彩差异,人眼可以快速区分影像质量,如何利用图像信息辅助算法判断影像优劣。基本统计量灰度均值方差梯度均值方差梯度幅值直方图图像熵p·log(p)色彩空间变换RGB转单通道灰度图像 mean = 225.7 stddev = 47.5mean = 158.5 stddev = 33.2转灰度梯度域gradMean = -0.0008297 / -0.000157461gr_图像颜色质量评价

MATLAB运用规则,利用辛普森规则进行数值积分-程序员宅基地

文章浏览阅读1.4k次。Simpson's rule for numerical integrationZ = SIMPS(Y) computes an approximation of the integral of Y via the Simpson's method (with unit spacing). To compute the integral for spacing different from one..._matlab利用幸普生计算积分

【AI之路】使用huggingface_hub优雅解决huggingface大模型下载问题-程序员宅基地

文章浏览阅读1.2w次,点赞28次,收藏61次。Hugging face 资源很不错,可是国内下载速度很慢,动则GB的大模型,下载很容易超时,经常下载不成功。很是影响玩AI的信心。经过多次测试,终于搞定了下载,即使超时也可以继续下载。真正实现下载无忧!究竟如何实现?且看本文分解。_huggingface_hub

mysql数据库查看编码,mysql数据库修改编码_查看数据库编码-程序员宅基地

文章浏览阅读3.5k次,点赞2次,收藏7次。其中 `DEFAULT CHARSET` 和 `COLLATE` 分别指定了表的默认编码和排序规则。其中 `DEFAULT CHARACTER SET` 指定了数据库的默认编码。其中 `Collation` 列指定了字段的排序规则,这也是字段的默认编码。此命令将更改表的默认编码和排序规则。此命令将更改字段的编码和排序规则。此命令将更改数据库的默认编码。_查看数据库编码

机器学习(十八):Bagging和随机森林_bagging数据集-程序员宅基地

文章浏览阅读1.3k次,点赞7次,收藏24次。本文深入探讨了集成学习及其在随机森林中的应用。对集成学习的基本概念、优势以及为何它有效做了阐述。随机森林,作为一个集成学习方法,与Bagging有紧密联系,其核心思想和实现过程均在文中进行了说明。还详细展示了如何在Sklearn中利用随机森林进行建模,并对其关键参数进行了解读,希望能帮助大家更有效地运用随机森林进行数据建模。_bagging数据集