{"id":21671,"date":"2023-07-28T15:13:40","date_gmt":"2023-07-28T15:13:40","guid":{"rendered":"http:\/\/www.deportesparalimpicos.com\/?p=21671"},"modified":"2023-11-05T06:48:01","modified_gmt":"2023-11-05T06:48:01","slug":"symbolic-ai-a-transparent-artificial-intelligence","status":"publish","type":"post","link":"http:\/\/www.deportesparalimpicos.com\/?p=21671","title":{"rendered":"Symbolic AI, a transparent artificial intelligence"},"content":{"rendered":"<p><h1>Symbolic AI and Expert Systems: Unveiling the Foundation of Early Artificial Intelligence by Samyuktha jadagi<\/h1>\n<\/p>\n<p><img class='wp-post-image' style='margin-left:auto;margin-right:auto' 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\" width=\"303px\" alt=\"what is symbolic ai\" \/><\/p>\n<p><p>In the 1950s, there was great optimism that high-speed, high-quality translation of arbitrary texts could be realized in the near term. Interestingly, nearly half of those surveyed believed the risk was \u201csubstantial\u201d that intelligent machines would eventually take control over human affairs. This is the 9th installment in a series on the stupidity of artificial intelligence.<\/p>\n<\/p>\n<ul>\n<li>It\u2019s the means of resolving the tension between the connectionist and symbolic approaches that have widely prevented them from working together in modern organizations\u2019 IT systems.<\/li>\n<li>OOP languages allow you to define classes, specify their properties, and organize them in hierarchies.<\/li>\n<li>Its history was also influenced by Carl Hewitt&#8217;s PLANNER, an assertional database with pattern-directed invocation of methods.<\/li>\n<li>These are just a few examples, and the potential applications of neuro-symbolic AI are constantly expanding as the field of AI continues to evolve.<\/li>\n<\/ul>\n<p><p>Literature references within this text are limited to general overview articles, but a supplementary online document referenced at the end contains references to concrete examples from the recent literature. Examples for historic overview works that provide a perspective on the field, including cognitive science aspects, prior to the recent acceleration in activity, are Refs [1,3]. Building a symbolic AI system requires a human expert to manually encode the knowledge and rules into the system, which can be time-consuming and costly.<\/p>\n<\/p>\n<p><p>\u00abNeuro-symbolic modeling is one of the most exciting areas in AI right now,\u00bb said Brenden Lake, assistant professor of psychology and data science at New York University. His team has been exploring different ways to bridge the gap between the two AI approaches. This approach was experimentally verified for a few-shot image classification task involving a dataset of 100 classes of images with just five training examples per class.<\/p>\n<\/p>\n<p><h2>What is Symbolic AI<\/h2>\n<\/p>\n<p><p>They might have studied logic problems\/puzzles, but their memory of how those problems work might be very dim. Most of my students have not learned anything about computer programming, so they don\u2019t come to me with an understanding of how instructions are written in a program. The topic of neuro-symbolic AI has garnered much interest over the last several years, including at Bosch where researchers across the globe are focusing on these methods. At the Bosch Research and Technology Center in Pittsburgh, Pennsylvania, we first began exploring and contributing to this topic in 2017.<\/p>\n<\/p>\n<ul>\n<li>Finally, we can define our world by its domain, composed of the individual symbols and relations we want to model.<\/li>\n<li>These early concepts laid the foundation for logical reasoning and problem-solving, and while they faced limitations, they provided valuable insights that contributed to the evolution of modern AI technologies.<\/li>\n<li>For a long time, a dominant approach to AI was based on symbolic representations and treating \u201cintelligence\u201d or intelligent behavior primarily as symbol manipulation.<\/li>\n<li>At face value, symbolic representations provide no value, especially to a computer system.<\/li>\n<li>Very tight coupling can be achieved for example by means of Markov logics.<\/li>\n<\/ul>\n<p><p>We use symbols to standardize or, better yet, formalize an abstract form. At face value, symbolic representations provide no value, especially to a computer system. However, we understand these symbols and hold this information in our minds.<\/p>\n<\/p>\n<p><h2>Mimicking the brain: Deep learning meets vector-symbolic AI<\/h2>\n<\/p>\n<p><p>OOP languages allow you to define classes, specify their properties, and organize them in hierarchies. You can create instances of these classes (called objects) and manipulate their properties. Class instances can also perform actions, also known as functions, methods, or procedures. Each method executes a series of rule-based instructions that might read and change the properties of the current and other objects. Similar to the problems in handling dynamic domains, common-sense reasoning is also difficult to capture in formal reasoning. Examples of common-sense reasoning <a href=\"https:\/\/www.metadialog.com\/blog\/symbolic-ai\/\">include implicit reasoning<\/a> about how people think or general knowledge of day-to-day events, objects, and living creatures.<\/p>\n<\/p>\n<div style='border: black dashed 1px;padding: 10px'>\n<h3>What&#8217;s New in Artificial Intelligence From the 2023 Gartner Hype &#8230; &#8211; Gartner<\/h3>\n<p>What&#8217;s New in Artificial Intelligence From the 2023 Gartner Hype &#8230;.<\/p>\n<p>Posted: Thu, 17 Aug 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMiamh0dHBzOi8vd3d3LmdhcnRuZXIuY29tL2VuL2FydGljbGVzL3doYXQtcy1uZXctaW4tYXJ0aWZpY2lhbC1pbnRlbGxpZ2VuY2UtZnJvbS10aGUtMjAyMy1nYXJ0bmVyLWh5cGUtY3ljbGXSAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>This isn\u2019t always possible, and even when it is, the result might be too verbose to be practical. As many people have said, things that are easy for humans are hard for computers \u2014 like recognizing an oddly shaped chair as a chair, or distinguishing a large upholstered chair from a small couch. Things we do almost without thinking are very hard to encode into rules a computer can follow. The difficulty lies in the shallow math\/science background of many communications students.<\/p>\n<\/p>\n<p><h2>Most Common Kubernetes Traps, Identified by DevOps<\/h2>\n<\/p>\n<p><p>Prolog is a form of logic programming, which was invented by Robert Kowalski. Its history was also influenced by Carl Hewitt&#8217;s PLANNER, an assertional database with pattern-directed invocation of methods. For more detail see the section on the origins of Prolog in the PLANNER article. Rish sees current limitations surrounding ANNs as a \u2018to-do\u2019 list rather than a hard ceiling.<\/p>\n<\/p>\n<div style='border: grey dashed 1px;padding: 12px'>\n<h3>SRI International spins out Synfini, an AI-powered drug discovery &#8230; &#8211; SiliconANGLE News<\/h3>\n<p>SRI International spins out Synfini, an AI-powered drug discovery &#8230;.<\/p>\n<p>Posted: Tue, 26 Sep 2023 07:00:00 GMT [<a href='https:\/\/news.google.com\/rss\/articles\/CBMicGh0dHBzOi8vc2lsaWNvbmFuZ2xlLmNvbS8yMDIzLzA5LzI2L3NyaS1pbnRlcm5hdGlvbmFsLXNwaW5zLXN5bmZpbmktYWktcG93ZXJlZC1kcnVnLWRpc2NvdmVyeS1wbGF0Zm9ybS1wcm92aWRlci_SAQA?oc=5' rel=\"nofollow\">source<\/a>]<\/p>\n<\/div>\n<p><p>To bridge the learning of two modules, we use a neuro-symbolic reasoning module that executes these programs on the latent scene representation. Analog to the human concept learning, given the parsed program, the perception module learns visual concepts based on the language description of the object being referred to. Meanwhile, the learned visual concepts facilitate learning new words and parsing new sentences. We use curriculum learning to guide searching over the large compositional space of images and language. Extensive experiments demonstrate the accuracy and efficiency of our model on learning visual concepts, word representations, and semantic parsing of sentences.<\/p>\n<\/p>\n<p><h2>LLMs can\u2019t self-correct in reasoning tasks, DeepMind study finds<\/h2>\n<\/p>\n<p><p>Popular AI models like machine and deep learning often result in a \u201cblack box\u201d situation from their algorithms\u2019 use of inference rather than actual knowledge to identify patterns and leverage information. Marco Varone, Founder &amp; CTO, Expert.ai, shares how a hybrid approach using symbolic AI can help. The two biggest flaws of deep learning are its lack of model interpretability (i.e. why did my  model make that prediction?) and the amount of data that deep neural networks require in order to learn.<\/p>\n<\/p>\n<p><img class='aligncenter' style='margin-left:auto;margin-right:auto' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/feed_images\/future-of-customer-support-top-5-trends-img-3.webp\" width=\"301px\" alt=\"what is symbolic ai\" \/><\/p>\n<p><p>It learns to understand the world by forming internal symbolic representations of its \u201cworld\u201d.Symbols play  a vital role in the human thought and reasoning process. We learn both objects and abstract concepts, then create rules for dealing with these concepts. These rules can be formalized in a way that captures everyday knowledge.Symbolic AI mimics this mechanism and attempts to explicitly represent human knowledge through human-readable symbols and rules that enable the manipulation of those symbols. Symbolic AI entails embedding human knowledge and behavior rules into computer programs. Unlike other branches of AI, such as machine learning and neural networks, which rely on statistical patterns and data-driven algorithms, symbolic AI emphasizes the use of explicit knowledge and explicit reasoning. It involves the creation and manipulation of symbols to represent various aspects of the world and the use of logical rules to derive conclusions from these symbols.<\/p>\n<\/p>\n<p><p>One such project is the&nbsp;Neuro-Symbolic Concept Learner (NSCL), a hybrid AI system developed by the MIT-IBM Watson AI Lab. NSCL uses both rule-based programs and neural networks to solve visual question-answering problems. As opposed to pure neural network\u2013based models, the hybrid AI can learn new tasks with less data and is explainable. And unlike symbolic-only models, NSCL doesn\u2019t struggle to analyze the content of images.<\/p>\n<\/p>\n<p><p>In this blog, we will delve into the depths of ChatGPT&#8217;s training data, exploring its sources and the massive scale on which it was collected. Symbolic AI provides numerous benefits, including a highly transparent, traceable, and interpretable reasoning process. So, maybe we are not in a position yet to completely disregard Symbolic AI.<\/p>\n<\/p>\n<p><p>The pioneers of artificial intelligence were mostly mathematicians by training. It is even hard to define exactly what we mean by \u201cthinking.\u201d One might try to narrow it down to logical reasoning, as in mathematical proofs. It stems from attempts to write software operations that mimic the human brain. Not copy the way the brain works \u2014 we still don\u2019t know enough about how the brain works to do that. Mimic is the word usually used because a subsymbolic AI system is going to take in data and form connections on its own, and that\u2019s what our brains do as we live and grow and have experiences. The requirements of symbolic AI are that someone \u2014 or several someones \u2014 needs to be able to specify all the rules necessary to solve the problem.<\/p>\n<\/p>\n<p><a href=\"https:\/\/www.metadialog.com\/\"><\/p>\n<figure><img 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' alt='https:\/\/www.metadialog.com\/' class='aligncenter' style='margin-left:auto;margin-right:auto' width='407px' \/><\/figure>\n<p><\/a><\/p>\n<p><p>SymbolicAI uses the capabilities of these LLMs to develop software applications and bridge the gap between classic and data-dependent programming. These LLMs are shown <a href=\"https:\/\/www.metadialog.com\/blog\/symbolic-ai\/\">to be the<\/a> primary component for various multi-modal operations. By adopting a divide-and-conquer approach for dividing a large and complex problem into smaller pieces, the framework uses LLMs to find solutions to the subproblems and then recombine them to solve the actual complex problem. This is why many forward-leaning companies are scaling back on single-model AI deployments in favor of a hybrid approach, particularly for the most complex problem that AI tries to address \u2013 natural language understanding (NLU).<\/p>\n<\/p>\n<p><img class='aligncenter' style='margin-left:auto;margin-right:auto' src=\"https:\/\/www.metadialog.com\/wp-content\/uploads\/2022\/06\/power-of-chatbots-2.webp\" width=\"305px\" alt=\"what is symbolic ai\" \/><\/p>\n<p><p>Previously, Luca held the roles of EVP, strategy and business development and CMO at expert.ai and served as CEO and co-founder of semantic advertising spinoff ADmantX. During his career, he held senior marketing and business development positions at Soldo, SiteSmith, Hewlett-Packard, and Think3. Luca received an MBA from Santa Clara University and a degree in engineering from the Polytechnic University of Milan, Italy. Meanwhile, the more you look into your own mind, the more you discover.<\/p>\n<\/p>\n<p><p>\u00abNeuro-symbolic [AI] models will allow us to build AI systems that capture compositionality, causality, and complex correlations,\u00bb Lake said. These are just a few examples, and the potential applications of neuro-symbolic AI are constantly expanding as the field of AI continues to evolve. As a consequence, the Botmaster\u2019s job is completely different when using Symbolic AI technology than with Machine Learning-based technology as he focuses on writing new content for the knowledge base rather than utterances of existing content. He also has full transparency on how to fine-tune the engine when it doesn\u2019t work properly as he\u2019s been able to understand why a specific decision has been made and has the tools to fix it.<\/p>\n<\/p>\n<p><p>Symbolic AI algorithms are used in a variety of AI applications, including knowledge representation, planning, and natural language processing. During the first AI summer, many people thought that machine intelligence could be achieved in just a few years. By the mid-1960s neither useful natural language translation systems nor autonomous tanks had been created, and a dramatic backlash set in. These are just a couple of examples that illustrate that today\u2019s systems don\u2019t truly understand what they\u2019re looking at. And what\u2019s more, artificial neural networks rely on enormous amounts of data in order to train them, which is a huge problem in the industry right now.<\/p>\n<\/p>\n<p><img class='aligncenter' style='margin-left:auto;margin-right:auto' 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XdL+++jE7nKjw47EKM9HjdizLLnOpx1xKnirkAUk8qeUk2fJ+MTXVi1Zdm1uwvFrBbtJ8ex685hj95DzlwnyLjGRJejRH0OJQwGm18iVrbc53QRsAK6Xc0E0gftGOWCRg0F63Ylapdjs8Z1bi24sGSwGH2Nio86VtJSg8\/Mdh371h7pwrcPt7mY\/PvGmdvnP4xCjW23KkPvuARYyuaOy8lThElDauqA8FhJ6jagOfXeOfOI+scnS6XYbLHTM1JtuN2N9cV7eVaVJZE9KvsmwlsmTFUCPFKXx4h5VVceHPioynVzNrKMsueOWy1Z3bblc8Yx+LZZypzUeJKWzzP3EqMVbnK04pxkJStsqbHXvO55ugGjtyujV6nYJBenx8mGZNSVLc7Ru89mhvwpJ5twShpsFI8Q8g3SSK+WLcO+i2E5zJ1IxTAIFtyCUqQ4qSy47yNrfIL62mSstNKcKQVqQhJVt4xNAUXNOIm+YLpVrFq+7Zm7nb8Nvr1px+IT2SX+xTGjOFxwAnk8OXI5ld4QjYd1ahzvi31pwbGF2RrIcOv2cRM+t2LXMWzB7wtuHHlQ3ngG4ZkB2Y5zsqKFsrKVoIO253rrCzaYYtb8Blac3eIi+2i5Gcq5NXFpDiZxmPuPSO1QAEkLW8vptt1qjN8HPDc1jbmJt6aNJtrlyYuxSLnN7bwphpTTKw\/23agNtrUlCQrlSCQAKA0JqzxraxaRXW+2i7WDHpbEHT63XiNdHbXKghrIZLUp9EeRGceK2mnWoUgJbKgtDiAgqJWBVij8Tuts7ULWODHYs7eP6bIvIho9p1xcbfVFtjclrtboJAjJWXXU8zPIFlCem3MCN33Phj0KvWPXHFbzp9FuFsu8G322azKlSHlPR4LjjkRJcU4V7trdcIUFcx5juTUu8M2iL2U3rNF4WfZbI0yU3VxNzmJal+ER\/B3itkO9luprxN+XcADbYgGgOVcE4\/NRb5o1lWY3yVgyblFVjVus14ftky0Wtu73QgvQpLUp8rWIrR7dTyHEoW0dxt3ncWg3FPfdZ850+tDMO0N2jKtM3srnqYQsutXVme3EeabXzlPYhZdABSVHZJ5vNWyoPDTobbcgtOUQdPobFysaICYLqZD\/ACoMKO5GiLU3z8ji2mHXG0rWlSglW2\/QbeGTwn6AS7zCyBWABq4W5+TJivRrnNY7JciUZTwCW3kp5FPqU4Ubcu5PSgNf61cXbelnErg+kCZuO+w9xVCZyJMp3a4pcuTrseCYqe0G4Q60FPboVs26g+Lvudl8Oep2Q6tYDPyjJY8FiXGya+2ZCYbakNliFcX4zRIUpR5ihpJUd9idyAB0rK5FoXpPljmRvZDhkWa7lz1vkXhxbroXJcglJiK5krBbLZQkp5CnqNzvud7Bh+EYtgNqdseIWhu2wXpsq4uMtrWoKkyXlPPubqJO6nFqUR3DfpsOlAZym9KUBRNefIbqJ81Lv6m7V7FUXXnyG6ifNO7+pu1evNQCnSsbkWS47iNpfv8AlV9t9ntsVPM9LnSUMMtj\/WWsgCtfN8S2lctAcs7+R3RtXvHoWMXJxhwelD3YBtQ+MKIPmq8Kc6jtBN+BDaW89\/ENmuYab6JZlqFgkSBKvOM2p27tMTmluMuNMbOPgpQpKiexS5y7K99t39x5auXHfqVMyDI7Di9gx1Rt9wya4W516M84l\/HbdbJq48olLw3U5OhLbKh4pQQAASFV0ZetbMAyOzz7Bd8My2bbrnGdhy2F2R1KXmXEFC0HqDsUkj6a11arHwuWMtqtWhuQRy1izuFIKbZJJTZXVFTkXq53KKlEr9\/1PjVrslfsPyZXWQ5o1xc+NHWbHOFuLqteFYq1mOUXWFbrA3ecZnWC2tdpEEt5S\/C5PNJb7NLiUPtrQhS1J232IORvHHfkdy1Sw\/TvDWMfjRNQrLid1tV5uMR92Jbk3BySZYlLbcAKyGmWGG\/E3ed8ZWwIq74VaOGfTyfabniej+YRZFhW85bC8xOlJiKdZDKy2l55aU7tDk7ugJ223O\/zhY7ws2+xXLGomhuRItl2ixoUpj2OlKCmY8l2UwlJLu7ZbffdcQpBSUlXQjYbNkr9h+TGshzRu26ZRd1ax2DB7XMZTATYbhebw32YU4dno7MRO\/egKUuUrcd\/YkemuWsy4x9aMJiazjJrfjljv+F2+bc8cx64Y9OSt+GzPbYamCZ2\/YzmVtupUoNBtSFqCdtga3HadQcAtOod81JRYc7fuV7tVusym3rSpTceNDXJcQEdebdS5bqlFRO5Ce7brTvalwoFzJHVaFZGtWWsOxbtzwJau1ZceD7jaAXfsKVupS4pLXIFKAJ3NNkxHYfkxrIc0a6uXGZxDt4vjzkKwWpT96zN\/Hod9awO8vIu0Ju2Kll+LaS8mWSl1KmVKC1JPItQ6JO26sU1X1t1A1ku2C49Iw63WbT5mxIydVytkoTLs\/OipkOmKgPJ8DShJ2SHQ6SvdJPimo1JvehersG1W7UHTHMLmzZJBl2\/khyoy4zpbLZUlbDqFblClJ7+4msVPgcM9zyayZlO0WyV29Y8zEYgzDbpXPyRdjG7bZ3aQWikFCngspI3BB602Sv2H5MayHNGr3P1Qe\/WrGdHrxkEnC4svKBIuWXRnStlxFsF5RbWTBQp7cu7KdeIPP4kV07DoRsm88T2oEDQ3iE1Kj26xG6aVZXeLJZG1R3Sw9HitxlNqkJDnMtZL6+YpUgHYbAeeLfYeFu12O7Y3C0OyJFtvlpTYp7CrbKWHYKXnngyCp0lADsh5e6SDzL336DbzO4jwrPy8lnPaLZgtzMEPt3xKm7gW5we5e1K2+35OZXIjdQAV076bJiOw\/JjWQ5o82ba+cQtl1LzKBik\/A7xieF4TNyq8\/8AQspMi1yDCW5AhOPiXyOuuuIU6pIbTysp8xWk1gcY4lOJjJ9M9N75ElYhDv8AqNl0WxsLu+D3W3xYkddpkTVqS07LC5KStpCUvtrDZHNsCR0tJxThZOSXjLf1msxF0yASU3RwIuAbliQwph3na7fszu0oo970G222w28icA4SxjLOHK0TzJyzRpzVyYiueySwzIbZcZQpClSCpIDTziOUEJIUdwabJiOw\/JjWQ5o\/WRcZmTWbhaxXiBVicMzpOXxcdvlvhocmodbRc3IctUHlUlTilhlamSd+qkghXnzWifEhqBqLk+k8O9JxlcDUjEr7lT6Lcw8FwDGlRER4naLcPMttEhaHiUDd1B5QgDY5teTaGLxewYSjSTII9hxadDuVnt8ayOMMw5MR0Ox3EJbUOqHAFbHcE94NeTG7noFiOTpzHG9JspgXdty4utvN22QUtKnuNuzORsuFtAdcZbWQlIHMCQAVK3bJX7D8mNZDmjor6aVq73QeLfarmH4mX\/bT3RGFt9ZNgzFlPnPtekubfQ2lR\/kFRstfsPyY1kOaNo1q3JcVuumdzl6jaZW56RDkOGTkmLxk7ono6lcuG3\/m5o3KilOyX9ilQ5ylxPtsXEFpHfryxjrWWext1lnaNCvUGTanpJ9DKZbbZdPxI3NbFrGUXF2krFk09x4LDfrTlFkg5FYZzcy3XJhEmK+2fFcbWNwfi6HuPUHoa9\/xVq7HmU6Y6qP4Ww0prGs48JvFoQhoBqFdkHnmxwR0AfSoykp29+iWd+oA2hUEk+enT4v5KU\/8tAK1xqXGuGQ55p1h0SSluGm5yMluzZ\/z8W3tANIHyTZMBz\/5VbHrWbD7tz4lJrCty1j2ERij0Bdwnvc\/+y2ooDZtRSpoCDUVJqKAUpSgJpUUoCaVFTQCopSgHSlTUUBPnqKmo+SgJpTz0oCKmlKAouvPTQ3UT5p3f1N2s1nmaWjTzELlmN87VUW3NBQaZTzOyHVKCGmG0\/unHHFIbSPOpYFYTXnyG6ifNO7+pu1TOI16bOv2nGLMPFMR68ybxPR5nmocVYbQfiEh+O58raa1oUtfVjT5uxWctCLkUaJY7xlV5az7VFbVxyHdTsKHzdpCsKFJA7CIkgDm2HjvqHaOEq6pRytps3dSle+o0YUIKFNWSPjTk5u8hWt9ZdTL9gqsWxzDbNBuOS5pdjabYLi+tmGwUsrecdeUgFZCUNnZKRuSR1FbIqsag6bYjqdaY9ny6A88iFKROhyI0p2LJiSUAhLrLzSkuNrAUobpI6Ejz1aqpuDUN5EbJ5lcw\/UPMZupr2mOYWezxp0LFIV9lPW5911syXpUhlSEFaUko2ZSobjfdRHXbetTY5xg5Jl2PalXLFcBi3m4Ys62\/YYMGQt5ybbXJj0bwl5CApYKOwW6pCElRQU7e+Braa+HHTU3S2XtleTR59qgN2xqSxk1wbcejIdcdSh9SXt3\/HdcP2Tm99t3dK+bvDFox4LCiwMXetXgFpRZGXrVcJEF4xUONOo53GVpWtYcYbVzqJVuD16nfllDEu1muPru4cDVOnxRq+4cWOVxcdwvIWGcHdtN7dlNXTJfCbh7DRnmnkIbilYY7SK+tKlK\/wAISlKSnbdRrMyuJPOLplL+nOHYpY3clmZrd8ZtjtwlOtw24tviNSHZD\/IFLUshwJCEbdTvvsDvbZPCloxKtEawv2m9qgMuPOSGPbDP5Lgp50OumWO22klawCoucxOwHcAKyl64d9Kr6xLRKs02O\/Lvr2SeGQrnJiymLg62G3HWnmlpW3zISElKSEkeaqqni+Mlw\/ngNKnyMlkWV5dZIeE29y3WwX7I7vFt05tpbj0ZhIYdkSlNqIQpWzbDgQVAdSkkHurX2V67Z9aNbpulUSw49bI7kEmwPXt2Uy5fpZiqcAiuJb7BQQ7yNrbKwvYlQ9FbJi6bwrfe8TmwLlJRbcRt0qDEgvLXIU4t1LSEPLecUVlSG23EDfcntldenXyTtE8Auefsak3KHcpV2iyUTmGn7rKXCalIa7FD6YinCwl1LZ2Cwjcd\/f1racKsl7rtmvK2ZVOK3mh5nGhlcfGrTqANPY7eOSMit+PTkvKdRLZcTBdk3dYSdhtGLZbG\/vi07vsAN\/zP40MknwJtwxDG7M7GOeHFbbJkIlvokQjBVKbl9nGQt1RWACAhJ8VYO3fW+Tobpku2RbM9jvawod5m39thyQ4pJmS0vofWoFXjJUmU8OQ+KOboBsNsNN4ZNG5UFNujWGZbGmbjHurBtd2lQ3I8liGmG0ppbTiVNhLCEo2SQPP3nesHRxfCa6+RdSpcjVzPFlqHlOMxb9geB4645a8M9umRtXC7OBKWe2eb8FjKbQT2p8GeJKwAg7JUObcVsHDtfZOZHUCZBsjLULFbDar3bu0UrtH0zLaZnI6O4cp2T4vx16rpwraH3W22q0OYxKjRrRBctjaYd2lx1SIbjpdcjyFNuBUhtThUspcKt1KUfOayr+gOmjuWTcxZhXSHOuUREGYxDvEqPDkMIjGMhC4zbgZUEtEpTuk7d42PWrQp4pNOUk\/6fdzt49xDdPgihac6\/al6tXqz2zCsSxtpmHYLFfcmeuM59spNxbLgZiJQhW5Q2hSuZfQkhPTqa6DrWA4cNJ251iuUG13O3v49Bh2yMuBepcXtosVQVHakdk4nt0oV1HacxrZ+49I6fHXRQjUimqru+u4pNxb90UoCD56VsUPJdbRar7b37Te7bGnwpSC29GktJdacSe8KSoEEV9dMsxummGU27Ab9dpE\/EMgfEOxSZr5cftE3l8SCpxQKnGHQlXZKcUVIc+x7qSttKPtVQ1fTcU6Y5LPsxCbpa7e7dLasjfkmxR28dX0OtIP0Vw4\/CQxVFprNbmbUKjpyVtxunX2NJYwD232+X4LKwu4w8mS96I8V0KmI\/wDmQzKa+Rw1sbvqr36JG1D0xuMHb\/B8msLzW3+pIjkf8F15tGb9JynSHCMmmFRk3XHbdMeKu\/tHIzalb\/STXhT65cqb\/L\/LTrUbH0UBO1a7xpj9njO5h7zjuOsA+gJeuav\/AMlbE61RMaH7MWcL\/wDhdjH8hmf20Be6bU3pQA1FSaigFKUoBSlKAnaopSgFKUoBSlKAU76VNAKUp8dAKip7qUBRNefIbqJ81Lv6m7VP1qAVqdhCSPe2S\/L+kPWwf0jVw158huonzUu\/qbtVDWfyn4V94L\/6xaq7vZv4un4mNf7tmIrBX\/PMJxS5W+z5PllptU26lQgsTZaGVySFJSeQKI5vGcbT0860jvIrO1qvVzQw6q5JabyvLXLVDi2qdZLhFbgpeXMiSnYzjiUOKUAyr\/BUjm5VHZR22IBr21VzjG9NXZ8qKTeZZVav6Woiz5q9QLEmPa5XgUx1U1ASzI51I7JR39\/zIWnl790keavQNT9OlTI1vTm9lVJly1QWGkzWypx9IbJbAB6kB5r\/AO4j98N9XWThpvmOeEP2jUppuXHyeTlFmdcs63URH5CpYdbebVJKHUluc4kFAZIKUqPMdxXpkcNsx2\/tZExqC5FmHJXsgkSo1vLMpSXUxQ5GQ6h4BLa\/BQFpWlaFBfvAUpUMVPEW+HPrvLWhzNixtVtNJk23W2LnthdlXdlMiAyme2VyW1c3KpA38YHkXtt38itt+U7S3qpps7ZZORM5zZHbXDjMTZExuahTTTD5IZcUoHYJWUq2Pcdj6K1TjHCdHxpFmt7Oevu2uC5bZk+ObcgOTJsBCkxnEOFZLKNinnbAVzcnRSeZW+V004ZbVplYMsx21ZM67FyiyRLRymIEJiLajutuvJHOd+1dfceKdxspRG5HcjPENq8V1u6\/sNQ4Mu8HWjSS5SY8OBqRjzz8uP4VHbTcG+Z1nZw86Rv1GzTp3HeG1HzGvpb9YNLbq5bGbbn1kkrvKlJt6WpiFGUQUA9nsfG2LjfUdPHT6a1jN4T4kvIbZkYzqUl62WS12RMcxCY7yIkWWwXFtdqEqWfC+dBI3aU30JClCpxDhmyHFJ2DTf1y40v2lxXbaEG0SEiXDcXHUUHeaeVf+Dkbnnb8fo2OUCoU8Txiurd\/iTanwZuTGMwxTNITtxxHIrfeIrDxYcehSEvIS4ADykpJG+ykn4wQe41mK19o3pVK0ntFztL2UuXVibN8JixW46o8S3NciUhmOypxzs0kpKiAoJ5lHlSgdK2DXRTcnFOaszN2TyFc4apcNWSZjcs1axM41ZI+bz4PhlxUwsyW4bTClvgJb5FFbktDCjs4NwFKJJGx6PpUVaUaytMmMnB3RyDJ4a9dblkWSZVPnY+mferWWllF0cCHpCodvbKDtGCwkPQ3VBSnFpCXPFaSpSlVtDFNONRE6+TtWMpx+xMRLpa40XkYuSJLsB1ptxKghS4iXFBXMnqh1obE8yV7CsJqnqJxC2vUu+xtPcIvkvHINhkW+Es2tt2M\/eTFXKbkAkh5SBypYG32EuKKSoK2FY2DnGtErJ8PhMyM8FgMm5NT58ywKQ7O5HoZjKeSm07soUl2QnkUiOPEWe3PKFK4EqNOWWlk\/W\/8m3vSXApFu4TdfU4rMxBnKsds0W4Oxn5LqJLshSnorUstuBLTTABU89GXzKK3AWAVrcSEt1ZMr4e9Y8hn5LMZgYu1Hv062XWQw\/PRIfkSWZLTjyA+5BPKxyIWkMvJfSFEcuyd01jsSyji7yHEZoyuRlNjvFuhYsth+FYIw8PVLlOCcoodjL5VtMONh1AA7NbHNsEqIO4tLL7qOrU7McWy+RfrtaofK5bLnItoiQ0ICygMjeKyXHiBzqW2480oeMOy3CKrSpUZpRSkr8\/n\/JMpSWeRX8D0Wzmx6xnO5sSx2y18yXlKhz1rkPNG1RoggKaSy212LbzK3kq6dQnlQjmVW\/aUr6NOlGkmo8Xc55Sct4rGZQ0mRjV2YWN0uwX0EfEW1CsnXhv\/APkK4\/cj38w1eW4hbzcmk6y9pXhri+pXj9uUfpjN1i9AWwxonhEUdBHscRgfIhsJ\/wCVZLSLyTYV83bb6s3Xj0QHLpNjCf3sBI\/kJr84Pul5psPQaip6UAqi415Xs4+9tk\/rdXqqLjXlezj722X+t0BevlqfoqKUANRUnvqOtAKU2pQCpqKUA3pU9afJQEUpU0ANRSpoCKUpQE0pSgG9KUoCi68+Q3UT5p3f1N2qfrR5T8K+8F\/9YtVXDXnyG6i\/NS7+pu1UNaPKfhX3gv8A6xa67vZv4un4mNf7tmHpSle7PkCvNcLnbbTH8LutwjQmOdLfayHUto5lHZKd1EDckgAecmvTWs9e9KrnqxjFvtlim26DdLZcBOhTZiHF+COdk412qEpPKtQDqvEcStC0lSSBuFClSUoxbirsmKTeZeDlOMBcxtWR2sLt3WYkzG943Xb7IN\/E69Ou1ehF6s7s2RbG7tDXMioC346X0FxpJG4Kk77pGxB3Nc6XvhbzPJIGU4jccutMaw5bfzdbhKYYWuY7H7Rx4MdktPZJ3dLROxI2R8leRXCLl11u1wveQ59Cfl3a1O26TyRlFCXVWyFF8IHvVL51RHA40pRQW3unKpPMeZ1q\/CHr13GmjDmdIMZNjclpL8bILa62tDbiVoltqSpK1lCFAg9QpYKQfOQQOtZKudcg4acoyvI28qnXqx2Z9MOxRzb7I28xB5oN4enOcyP84FIcABIGzm6tgK6KranOcr6asUkktzFKUrUqK0td+Jm0WONmt5uWLy27Lgd1RbLpLDxK+UuobU8hHJyrSntAeVKyvYHpvsDumqMdD9LFX+Zky8RYXcLjMTcJalSHlNvyAQQ4por7MkEA+97wD5hWVVVHbVuxaLiviNbXLi\/sloumQWadhM8zcctXsnMYYmNOuNjwJmV44A8Vs9uGg51BcSR5wTlE8TcT2\/2jTQ4e+u+XqDHmR2G5njEPGUEnlW2lfZoEUlxZSOQOJPKrY1f4mkWnMHGrtiEbF2EWe+stsXGL2rihIbQwhhCVKKubYNNNoGxHRIr4WnRXTCxPQ5NrxVpmRAWw5GfVIeW62plb62yFqWVdDKkdN+odUk7pO1YqGJv8St13epe9PkVl7X5yFpRF1Wn4NLbiSpxjFpuUHURWUqWlUmQ4lH2JpKm1Aq5VAbpJ2BJTh7txT2+Ab2YmA3eaxjjsdu5zmnUqhRm5Hjx5CnkBW7Co+zxcSCEBSQrv3GybppVp9esTZwW54xGfscd0vMwypYDaypSipKgoKBJWvfY9QpQPQkV8Lxo5plfrfPtVzw+E5EuS4y5LSCtoFUdoMs8vIQUcrQCAE7eLuDuCamUMR+WS3evlzsQnDijX9\/4nBYDe3XsHMmJZ3rMymTGuiHkyfZNxKYqkcjZJTyq5lFPN3bJCt6XPitxqz5q1p\/OxW6m8PXOz21tDJCkOeHR0OqdSVBJ5WS60hYIB5nmug5+mwLxo3plfrfPtVzxCG5EuQgpktNqW0FiH\/wCi7cihydnsOXl222r6t6S6cNoaR7UYK1MPMSG3HQpx1K2UR0NntFEq6JhxdxvsrsUFQJG9HDEcJLq\/d4Ep0+R49I9U4mrFhl3hmzv2eTBlmHLtspweFxHQhK+zkN7BTLoCwCgjvG4KkkKNrv3+Qrj9yPfzDWNwvT\/DdO4Ei2YXYI9rjS3zJfQ0VKLjnKE7kqJJ2SlKQN9gEgDYDaslfv8AIVx+5Hv5hraKkoWnvKO18jcWkPkmwr5u231ZuvJol5Kca+4\/6Sq9ekPknwr5u231ZuvLon5Kcb+4\/wCkqvzs+2Xem49Jp3VPWgIqi415Xs4+9tl\/rdXoVRca8rucfe2y\/wBboC9UpSgBqKk99RQClKUAqailAKUpQCppUUBNRU1FAKUpQE0pSgFKVFAUbXnyG6ifNO7+pu1T9aPKfhX3gv8A6xa6uGvPkN1E+al39Tdqoa0eU\/CvvBf\/AFi1V3ezfxdPxMa\/3bMGqRHSpSFPthSBzKBWN0j0n0CpDzKl9mHUFf70KG\/m830j+WuZ9U+FDItQ9SctzOPfrREjZLBk21sFG0hlDtmMJLilpa51hLpJLHaBtSSF9FoAOVxjRTVWwanWfVB5rFHpHhFx9k4CbtJShhqRDtcVCmXfBSXVBNuWspUhsbuJSFHYqr2OuqaTThlf05nzNCNt50CJkQtqdEpkoQdlKCxsD6Ca\/fatlQSHE8xTzAb9SPT8lcxW\/hgzCLw83DSJUTFGrpJvFuuK5DchBYmoYksOuB0i3p2JSyoDtW5BJV46lDpWOtXCpqtbZtplqynHnINvxt3DnbUiTKaU9aXI8nmSJiUboX4Q8zvysgER0LBR\/iqrr6uX+P13E6Ee0dVCZDPJtLZPaDdH2QeMPSPTX77djsjIDyOyA5ivmHKB6d+6uWLFws57br7jdznx8MfjWOzTrSyy2pptUPtZDrja0lNuCXVpS4CpbSYqlK333682XxrhkyG2aNZLp3dGLCk3w2os2i2XF1i3sORGo6XHu1VFVut5xkurSY6kKJCVBYKiZjXqv8nVvD5EOEeZ0cZUYJ5jIaA69ecbdBuf9nWoM+ClRSZjAIG5BcG+22\/\/AArmWXwoX6622bHv\/tfnCRjVvhtQYkg2+M3d0LbTLkICYq0ISuPEgtj7EpKg2tJaSlZB8d44P7vd8fufaW3Am8hn4JGxwTI0BMZCbih5fO8OSPshBYKGuZKASE7dmlOyah163CHr\/A0I9o6oTJjLTzpkNqSADuFjbYnYf7d6\/SHG3CpLbiVFB5VAEHlPoPorlq+cJmZ3uVb5kHILVYIsaz2y2S7PDe5oswxJsiWhSyzFYQnlccaWkoZTuS6kpAPMdl6IaRXnS\/Ic1myWLPHtmRXAz4rUZ7wmUXFPPuOrekGOytQJdTytrLpR4wDhSQBeFWpKSUoWXMSjFK6ZmMk14wLFchvWN3RVx7bHY8eXdHmopW1EZeUgJcWd9+QBxKlLA5QkK67pIGHhcU2j06VEgt3mY3IuLtqagtOw1oXLFxdU3FW0D75B5edR\/coKVHbcVmco0KwbMcvk5rkKrpLnSLTKs6GlTD2EdiQz2LxaRt4pUjoRuU7kq5eYk18ZnD1pdcL5BySZZFuXO2eA+AyS540YRFMlsI2GwB8HbCunUcwG25qr2m7ta36Bau2Zi7JxRaY5JDdkWBu+XGQme1bmoUW3qdkSH3EvrSltKSR0REkKVuQUpb3IG6d8vH1+03mY7ccpiT5b1utbdrdfcTFUDy3ANmNsk7Hc9qjmB2KTuD3Vg7Rwraa2KA\/FtFwyWJKclMy49xYuim5cNTXhIQGVpACU8syUkgg7peUCTsNvurhj07HhMaHOyCHbZcW3RH7axcdoriYPZ+DKUlSSStPYo3UVbnrv31Edqtna\/Vif8fAzg1tw72uZHmCot5RYsaDqn7iuAtLEoNOracMdR\/xoStpY3HxEbhQJ\/V61uwOwZaMQucqY28h+NEkTRGUYUSTIbW4wy893IWtCCr0DmRzEc6d\/MrQfDlY5lOI+yWQewmVodbegG5LUxCS64txwRUHcM8y3FK8+3QDYACvK1w64Gb1Dvt1nX+7vxltPSG59xU4zcJDSVoZkSWwAl1xtCyhJIA5Uo3B5U7We0ZWt1f8Agj3CY\/EZpu7ZmsgmOXW3W99Dz7TsyAtsrYahrmF7k6rCCwhSk7gKPQbbmrzi+QoyiztXhuz3S2JdJ2j3OKY74HmJQT0BB\/t2O4rWtp4VNJbU1KYMa7TmpgcbeTMuC3CphUJyElnm6K5ER3VISd+YeLuo8orY2H4s1h1kbsjN7vN2S2tSvCrtNVKkK37gVnboBsAP+ZJNqWuv\/kt8iJaH5TN14L9\/kK5fcj38w1768F\/\/AMhXH7ke\/mGtnuKrebi0i8k2FfN22+rN15dEvJTjX3GP5yq9WkPkmwr5u231ZuvLol5Kcb+4\/wCkqvzg+4Xep2+IVFR9NAT5utUbGvK7nH3tsv8AW6vPxVRcZP7L2b\/e2y\/1ugL3SoBoDQA1FSetRQCnSlKAVNRSgJqKE7DcnYeeuJOJH9Vd0F0TnzcVwOK\/qPksQhtxFtkpZtjLm\/jJXM2VzKSPM2hY38UqSd9gO26V\/HuT+rcawqlc8PRjDWo+\/Rt2VKcXt\/4wpI\/3a2voz+rUYNf7u1Z9b9MpOKx3SlIvFolKnsNqJ6l1goS4hAHXdBcV\/q+egP6XVFY3G8lsGY2GDlGK3mHdrRc2EyIc2I6HWX2lDopKh0IrJUBP00+SopQE0pSgG1KUoCi68+Q3UT5qXf1N2qhrP5T8K+8F\/wDWLXVu158huonzTu\/qbtaw4o8pXh+VYneIsLw2aqxXuLAic3L4RKdl2ltpBP7lPMoFSv3KQpXmru9mK+LprvMq6vTaRisnzrF8Qcixr3cimZO5vBIUdlciVI5duYtsthS1BO43UByp3G5FVmHqhktz5lxdKrxCa6dmq6T4jJcB84S046pPyKAPxVrHEsPu+WXS8Xq+5HcUxzLegyZUN9UaVeJDKuzdcU62Q5GYadQ400w0pIAQVqKufpgNcrJi2luHRskt8G8zH5N2h24iVlFzISl9zlK+stG5HfsVpHpIr9C1WhTdWSyXfb9GUp4CKV6jzN7+3fMz3YPbx8t6P\/Jint3zT7SLb+O1fm9ciZXl1mx+XfrfFskqUqzRoEhuQjJbwsSzKcgI5G20SiVra8LWpaUqV0XG2O7h5fPccvTZ5Vyg3zDbhbJlrxJ\/I1RZGTXVLjziEzS2jZUxK2wpMVtfLyLUkOFKuUp3rB4ijGWi16v\/AF7mabFROxPbtmn2k238dq\/N6j275r9pNt\/HavzeuWsKK8vm42lVjfgxLxfp9md7bIbymRyxWVvKc7Iy+ZhR7NSOzc3IIC9ylQFY\/K8ssWNZHl9nj41OuS8XW3ITBi5dc3H5MAutsOPB1MotpcQ68jmZWELSN+ivfCzq0lDTay8Xyv2eQ2Kida+3fNPtItv47V+b09u+afaTbfx2r83rkO5ZAi2qzG1S7Ww1e8StwuJitZVd5TMhtHZIe2ebl7IUHXCns1hK07J6LCtx9r5fG7HeM+x9GPv3C44d7HsRmG8nurQnvyBC36maVoG8tQA5CPFTuvvFQ61JZuPq+\/8A8e5jYqPI629u2afaRbfx2r83p7d80+0m2\/jtX5vXG1t1NxK6zosn2vT7fYpWTrs7cmTld1MlUQtwlx3hGEkOHtRMJ50pUEfYwpPj7jpRWk9ohMuLxnJMoss3l+wyEX2XLQhXmJYkuOMrHxKQehOxB6jahq8Rd01e3e\/1SJWBov8Asuvt3zT7Sbb+O1fm9T7d81+0i2\/jtX5vVewjIbne4M2JforTF4s01duuCWQQytxKUrQ62CSQhxpxpwJJJTzlJJKSTT9f5+d2+0Y+vCZGSx0uXVSbm7j9vRMlpjiJIUjZtba07F8MAkjbr1IHWuidKjCnrbN\/UnYaPebR9u+afaTbfx2r83p7d81+0m2\/jtX5vXLqL7xMezOVG6i\/sKbgWwMMwYHaNNhSIPsg5F3jFp11HNN7MF9RKk7dkoAE\/bMr\/rjGh3J7EJ2eSbfGFoXb\/CbKG59wHJN8JaUpMRYYUpSY3jqY5QezCuQLUocmtoWb0Jf1f9vVcyNio8mdOe3fNftItv47V+b1Ht3zT7Sbb+O1fm9cz5DfuI3w2YqI3lEXafcvYNqJbWXUSHxNbEdmaotqDcXwckhwFAPjnnJCQbPp\/I12ueod3sObyrnFx2VDvjlvnsRG2lRybiGoqCpSCC6hpDi0EghTbjZIUQatGVGU9BQkNio8mby9u+afaRbfx2r83qDnWYo6rwSKoehu8gn\/AHmk1yo6vigtzGGOwrtl04vPzX76uRFj7x203OOwyC2mNu4nwYuudkChSgVrC\/FCa8r994k\/ACpybmLcheXutSQ3bXfsNpCZXZFHLb19CUs9UdsD4m60cx2zdeisnTl0kyNio8mdVs6yxoLrwzTCshxuKylS\/ZF9tqXDIHeSuK44ppIG5KnUISADuauFymw7li8u4W+WzKiyYDjrL7KwttxCmyUqSodCCOoIqufFVKnOHTORIl2xKkYzf1KiXCCgEtwpjwKWpTQ32bStxSUOISNipaXOhDhX1YjCaEXKBhXwOrWnTZ2BpF5JsK+btt9Wbry6J+SnGuv\/AGP+kqvTpD5J8K+btt9Wbry6JeSnGvuP+kqvyo6y8fJTcemlNz6aAd1UbGvK9m\/3tsv9bq9VRcaP7L2cfe2y\/wBboC9U60qKAGmxqe+o26UBFTtTalARU02pt56A0Txq6S6s62cP99wLRrNVY7fpZS4tIX2QucdIVzwi8CCyHDy7qHQ8vIrxFqr+Alr0U1avWpatHLXp7e5GaNyjDcsqIivCGnAQCVjuQgbglxRCAnxieXrX+nHY1iY+I4tEyaZmkTHbazf7hGahS7miMhMp+O2SUNLdA5lJSSSATsKA\/hNkP6lfxm45jUvJX9PbfNTBjqkuwoF4jyJZSkbqShtKvsiwAfFQSSeiQSQDyU424y4pp1CkLQSlSVDYpI7wR5jX+pm8Xe14\/aZl+vc9iDb7dHclSpL7gQ2yyhJUtalHoAACSfir\/M3rnllgzzWnPc3xWH4LZr\/ktyudvZKQkojvSXHGxyjoPFUOnm7qA\/o3+osa63aTJy7h4vU9+RDjRfbJY0OK5kxgHEtSm079yVKdZWEjpv2h71Hf+qnXav4y\/qLOCX26a\/5VqEzGULNYMact8h89AZMp9otNj0nkYdUfRyjfvFf2a2oBQDzbU2NPloBTY0pQDam1TUUBRdefIbqJ807v6m7WnOK6yC76t6QSnFr5LSxkU0pB6KPZw2huPPsXd\/lArcevPkN1F+ad39TdrXPEYkHUTBD+9s1+I\/8AvWyvp+xlfH0vEmKu0aU0eUpzT23vKJK3ZE51R9KlS3lE\/wApNWm5Wm13mKYN4tsWdGKgosyWUuoJHceVQI3FVXRrf9bm1\/xkv1p2rrX6fQSdGKfJfQ6VuNJo1x0LL8m1NWPd61LfKo6bS2C2tp6Qh4JHdzJMBajt+5DR84rJTtUtLpdwnXLI8PcZFtjW3t7pcYUUoTHuL3YR\/shcKghfOsq3ACUpXzbbgH2OcOmly7vKvnsXKRLmTbpPdUmWsAu3BgMyenoKRukdyVFRHeaza9JcNdD4ciSFCSiztuAvkgptj3axR9C\/ffvh0NckaeLaalo9LL19CMzBydYtJ7TZrNmHZJEG\/XiXAhTGIaFhctntWVOFSe4L8HUhK9\/GCkDcA9Pzjmq+k+V5S9jdstu92ui4rckO25Ke3DkEzWVOK\/dpDSSOu+yht6DWWumiuA3nHGMVuFufct0eRcZTbQkKSUuTe37YgjqOslwp296eUjuFfmy6I6f2DIbblNut8lFytK1rjOqkqO3NCZhkKHcodjHb237jzEe+O9tHFaS+G2V\/LP8AgZlaY110VmX+RZ\/Y8i5XVuL2wctyAqWhyauEjmP7sJdQdwd9kkH0158c100Ty59m+wLErw66MduXnbayX1tIiGYgrWlSv80xuElXMlSUghJ2rNe5v0rNxi3VdplLlwZMWXHdVKVzNOR35D6NviK5b247iCkfuRX1d4eNMDhVmwOHapVut9iJMR23S1xZJKmVMOFx1opU4XGlqQsq3KgfSARmoY2+ej10xme3GspxDNcjdtsXCJCZEKPEvgmyocbkAkIIYdSQsr51JZUAeXcBvY7eLvfetYe04lZLHdpd5tkZTL8yFDgOJCzyBmN2nYpSnzbdsv5enorM7V3UoyjH39\/ViUVXFxy5hmSR3GbEXt8ZhtD\/AIJH8lWnaqtjP7csx2\/9qh+qN1aqml8Pzf1ZKKjqNnQwKJZJq4rLrV1vsK0Orde7NLKH1lJd32\/c7b7Hb5a1jfeJW52lGcLi4tElqxu6MWe2NCS4k3B911tCVFfIUhAStS1cvMQE\/HW58ls+L3y1Lh5harXPtoWla2rkw26wFA+KSlwFO+56H46w0LH9JbVeGblbrJiMS6uqUGZDEaM3IWpoFCuVQAUSgApO3vdiOlc1eFeUvcmkul9bMh3NMTuL2WuXPVj+EtzoLFgXfGXHpLjBKU2tubylZb7JSgt1LSm0KLidwsp5dzX7j8Wl4uUW5rtmnqEzIK5sdMSXNLSxKji1hTLh5CEkO3FxBI3A7EEb83TcRtekK7Ul827D1W1bxbSvsopYU8pvsikHblKi2SjbvKTy93SvY5aNOjcpTD1sxwz+VcuUhTLHbcquzKnVjbm2PYs7qPf2aP3o2w1OLd\/8y8kRZ8zUEPirZuMi0LasUWHBuEl9Lj0t54uBpNwENCUNNNLUXNzzL5uVLZ5Qo+NuOgtjVRLGkdzkW5hTOIS30ylT7egpjLWJLiypTzQ7+0UvclaepVud96t9deGjVjfWTUt271JRFVTVi0rvumGWWlpakOybLMQ0tB2UhzsVFCgfMQoAg+kVbOtY\/IEpXYbkhXcqG8D8nIa3nnFoNXVjprSLyT4V83bb6s3Xl0SH7FON\/cf9JVerSHf9abCvm7bfVm682iY\/Ypxv7j\/pKr8ZOUu1PGqetNj6aAj46ouNddXs4+9tl\/rdXreqLjXlezj722T+t0Betx8dO+lOtAP5aUpvQCm9KdfjoB3+apqN6UBPdTpv0qN603xi6rztEuGTUHUi184uNutKmIC0HYtSpK0x2XP\/ACLeSv8A8tAfzg\/VTOOuXm9+ufDNpXc1NY1Z5Hg+T3BlWxucttXjREn\/ANS0sbK\/fuJP7lIKuDtH9Is6101CtGmWnVoVPvN3eDaNwQ1HbHv33lAHkaQPGUrbuHQEkA05a1uLU44oqUokqUTuSfSa\/t9+pNcOVh0x0BiawzorT+U6iIMoyVNDniW5KylmOhR67K5e1VttuVIB35AaA6G4VeGrD+FjSSBprjChLllXhl4uamwly4TVAc7h27kjYJQnryoSASTuTuKopQE0qOu9N6AUpv6KUAqailAUXXnyG6ifNO7+pu1q7iZuDUTU\/TWK4sJVNtmQstg\/ulBVvWR\/Ign6K2jrz5DdRPmnd\/U3a0txi2OXMzDT3LbdFlS5WGQL5fPBo4KlvsBy3R5KQkdVqEeQ8tKR1UpCQOpru9mVFRxlOb3JovTi5SSRrXRrf9bm1\/xkv1p2s5m2RKxDDb7laYglGzW2TcAwXOQOlppS+Tm2PLvy7b7HbfuqvaISo87S+yzYb7bzEgyXWnW1bpWhUl0pUCO8EEHevPlWr2m0CVlGKZAJU1GP20Sb60LU7IjNsOo3DTiuUoUpaDuEdeYEjr1Ffp8KkYYeLckrpWfyN1uNe2DiskZbdfYHHsLiia8q2RWXJ1zUxGTKkRpb0ltxYaUUhlUF5ncJPO4NtkjrU2Lisl5LesesdtwFLLuUIheAOybls12j0NyQ4haktE+IoMpBAPOlxSgByFJs10zPQWSPYnI8WgIcvFlcuz0G44+AtyFDU64kPNrb7wUyFtoV1OzikjvNfq2alaJ3qRbZNsxl2TczOCWY7eLvKmw3WGW09upAa52ktsymkh3oAh4JB2JFcSlWuk66357vLy651z5mIxHiAy7I7zh9pl4NbIvtrTcJBcYuMmR4OxFlNR1EhMX3ylOKI5ilACU7rBVsMtk2vDuNQcyv8qzWpqz4tKNpZXIuym5Uq4HsEoSprsSltlS5CR2nOSEjm5SFDb4e3Th0uEBvIhjtkkoxG1ysjjOewSFuW2O3IUHnGRybtL7VpSiE7KJAV6DX4k6mcO10yNN8Nltt1vhni3JnN2EPyvCmJKWm0BzkK9w7ylvr5uZPdvVlVmoW1yvzy5W5c8\/1Jv3lZZ4vUTbrFhW7DGZLEvHmr2labg4FpUqBJlLb37AtkIVGLat3Avx+ZKCEqAuV610k22+w7fFxuI\/DTCsky4uruRQ+kXOWqM0mM0GyHihaSV7qR0IA3JrFQ9ROHKVa5d5fw2FAjKTdJryp2MeDqfVBCxLUAtsFa0mS8jzkqceT1JUDm35WgGFZZbsRRiOPW282luNNtrUaxNIMUTZIjJcYUhGyCp0pCykgjmBPSopzraN3Wi+\/L5fv1cZ8zanWp61UsD1QwzUqOJWIXJcxswmJ5KmVt7NOuvtJ35gNlc8Z4Ed45R6RVsr6sJxqRUoO6ZbeVbGf245j91Q\/VG6tVajvuquLaYZvdE5Ut9lm\/wB4iwGZCEpLbLgt4c3cJIISeTlBAPjKHm615HuKfCWcYayxWNZOqI4zCdKERGlOoVL8IEdspDnvluRi16Od1sE7EkcscVRp3jKVmm\/rci6RsPUjGZeaYHfcQguRW3b1CcgFyUkqbbQ6ORa+UA8xSkqKR3FQG5A61pO28NWoVnudufteb2mOw0wxBnOCKpUh+NGXK7McxHvpCZXM\/wC9+yhTgKublq4u8SeOJuF4tUTE77Mm2a8xrC7HYfgF1yY+4W20BCpIUhJUFeM4EJIB2JrLXDXvBrdb8LujouCmM4fbZhkMDeLzrba55AKhyJS6800ojm2UsebcjGrsmIlrJyzXe1xt9ciMnmalx3hSzqx4lEtzuQYrOuDKXYq486I\/Kh9i7bWYC3QpRCy6EMApSRygKWgbA71mneFy6qnzoj17stzsziZchtc+M\/4dLekWtNvVHlOtuJKo\/KntN0KSvmCANuTc3y5694tbrFZb8m1XJ5q9IlvoQXYsfwaPGeQy6884+820hAccaSPHJJcSAD128N94kcTx5N0lXHHb8mBBTPMadyxgxcFQpKI0pLJLwKeR1wDd0NpISogkDesNnwEFZvdZ731y9CLRPJp7oplGNXnC73k9+t1zkY3BvUWQptohSjMkMushKikFfZpaUCteylE7nqTW5q0+1xL4xMxmTlNqxPIbgxDjMy5DTBhlSWnZcmKFJWZAbcSHYq\/GbWoFK0KSSCSJu\/E9p\/YrrcccucW4t321NTHptpSY65TKI9uE5ailLpBSUEtpUCQXEkb7eNXTSr4XDw92WTtvvysvoSmkbf61g86uLVowjIbq+oJbhWqXIUT3AIZUo\/8ACtXL4tdN3Ijk+2269TojcqBEVJSiOxHSuXHU+grefebbbCeRTaudSfsviDc1ddUY\/tssJ0zhIL0rLmHY76EOAKZtiU7zXyR3JDRKAe7tHWk\/uqvUxlF0ZzhK9l\/XqWitN2idh6Q+SbCvm7bfVm68uifkpxr7j\/pKr06Q+SbCvm7bfVm68uifTSnG\/uP+kqvyQ5C79an6Kip2oD8mqNjXlezj722X+t1eaouNeV7OPvbZf63QF7qKmooBU0puaAU7qb0+WgA+SlKb0AqranaZYNrFg9z051Jsabvjl3DQmwzIdYDgbdQ6j7I0pK07LbSeih3bHoSKtNcD\/qwWuOX6Y6I2DA8OuMi2uZ9PfjXGZHWUOeAsNpU4wFAgjtFONhXpSlST0UaAyTHCF+pPyr6nF4rWn715U4GU29vUWUqSXN9uUNidzc2\/TbbeuycGwjF9NsQtOB4VbPY6xWOKiFb4vbOO9iyn3qedxSlq29KiTX+Xbu6iv7nfqTeuWZ6xcOcy1Z1cXblOwm7qs0ae8tS3n4ZZbdaDqlElSkFa0b\/vUo36gkgdsUpSgH0U7qb076AUPfTalAKU2ptQFF158huonzTu\/qbtYTUbY6t4cD9reQetWms1rz5DdRPmnd\/U3awuo3lcw75t5B61aa6MJ99HxOrBfiIeJzNprpfmdm09hZFpvJj3SJMkTXpGO3KSpoNr8Me5lQ5GyuzBA\/xC09nvtyqaG+9O1O0vtl8vj181C021NYk3G3P25KbbaWrmlhlxKUL2XATIUAQkEIcUUb7q5Ao710noJ5KbP\/GzfXHqu7l0tbTZdduUVCBueZTyQOh5T139PT5a9TSxlWNFU2045ZPM+1LAUqsVLczhOZprpPc5vstdsY1ieuiYggIljAr0yWovYvsllLTFvSwE8kl4dG991bgishj+I6aYe7Gew7HtXrGqI\/JcbELT+9pSGpBZU+xyqtxHZrXHbX0HMlW\/KpIO1dv+yEDk7Tw6Pyfvu1Tt73n79\/3vjfJ17qNz4LqGXGpsdaXyUtKS4khwjckJ69e493orVY6ad1CF\/B3\/APop9mQ7RxFj+G6QY0zPYtun+pyU3SzyLJN5tO76DJjvPLdWVlMAFS93FAKP7kAeasfjWmuj2KONO2nEtXgpqVa5n2TBL8rmegb9ms\/4B3rJ3c\/fEDuru8SopZRIElotuEJQsLHKok7AA9x3PSviq72lC+zXdIaVlKl8pfSDyp35jtv3DlVufiPopt01b3IZbsn\/ALD7Mh2jiO7YTpDfbSmy3bBdUZUZtF6Q2HdPL4stqujvayHE80A7LSo\/Y1Dqn469+T2XTTLMsjZpdcP1X9k4jttdaWzgWQISPAnH3GkkeA9UlUhZWk9DyoPQpBrs1i7WqUCY1ziPbEA8jyVdT3dx8+x\/kr9C521QPLcIx2a8IOzyejX7\/v8Ae\/H3VP2hU7EOHB8Ml+bgPsyHaONNN7XprpW\/OkYphuqqFXGHAhyA\/gOQOJKYjakNqA8CASohZ5tuhPXYEne8frn2f7UNSP8A+Osg\/Mq6TTcraptLqbhGKFpK0qDydikEDcHfqNyB8pr6sSYsnn8GkNO9kstr7NYVyrHek7dxHorWn7Vr0o6EFFLwf+wXsyHaOIpUrTnN8svy8w02zq7Nwp8eRFZdwC\/rDa1QktKK20xOhKVK2Cx5woDuNfqZhmhNwtwtE3SDUV+GGUx+wXg2UFPIlt9tPTwb3yUyn+VXekr5gQUpI3dqRqDcdK7PqtntqRBXJtc6zbCcFFgJcRFaWV8qknohxR33GxAJ6dKqOpvFhfsQyqSjGYuP3vGYtyjtOTGO0fUYCrQ\/MekJW24Ur7JTPOdgd20LSBzEKHNL2rNX04Qb\/wCr4t95jLBUofFL08f2NfTcP0YuCZyJWnur6kXGWie8hON5ghIlJUFh5tKWQGnOYAlSOUnzk1kLpaNGbzCt1uuekOevx7PBFutyFaeZGPBGApCh2RETdC+Zps9onZfi++r1W7jF1CdkZcbkjGGzbLbaWrLAj2xx+TKuc+NblNkttzFSXW0uzl7ttxeqEDZ7nBScxpnxaZxqBrFimIJtFmRj97t0Lw7\/AKPfbfi3BcCU9JZL63uVK234imgwWSsgOHmHZneF7YbyUIZ5fD3+PMqsLRbS0nn3FHlYJodMtptEjTTVtcQuvOpb9rGYDkDwIeaQex3Qy4CedpOzaum6TsNvc\/jWi0m43O6SNK9SnHrulaZKVYRlBaHO6h1wtteDcjJW402pZbSkrKd1b7nf7XvjE1htsnM4SLXijPsRe2oVskSbepoJjLvMy37qS9PaRJPLE5i72kdCVkpI6g1ks14xM4xgZuWFYouRjVklOW6EYLrrk6UxbmJnhy1Il\/Y4bvarS2lKXAezP2fc7VH2vb\/jh\/6\/yRs1DfpPyPBGtukMO3zbVG0u1HREuDKI77IwTJuUtIkuyUoSPBfESHn3VAJ2ACuUeKAB+71E0xyByY9O0k1KnOznpUh8DCcga7RyTDEN4+MwgDmjpCPMBtuNldayOK8Vmql7y\/EMaubeHW1FxRdvZJcyJ4Gt5yHPcjJbCHp4VEUsNjdPLKWlRBKeXu\/GN8XWfzYODzL5MwppN2yF6y38w4wfU07vD7FmIhq4LL6CJZ3lsl9IPZ87Te6+S32zJq2hG3\/X+e8lYWj2n5eH7i58Pyc+grt1o0OnWuHe3UvTJFyvK7RFKCXivtI8R8vrJMh7dlbaErLh5lDoRvXFNKrfp9jd7uMy4LvGRXG3rbn3RxvswUIbVyMMNbkMMJ67NpJ3JKlKWslR0hhnFvqLkkvDHZ0XD4wvUSz+FWbsZCblPXOjOurmwt3iExmFIAWFJWSG3t1oITvdNANeco1uxLJDldmt1tnWrHrZJksxG3EgPzIzzpUCtR+xraDDqB3pS7soqI6c1TG7S8+PJWWXXE68PTw9OXub3zOotIfJNhXzdtvqzdeXRLyVY31\/7H\/SVXq0h8k+FfN22+rN15dE\/JTjX3H\/AElV5U82XcVO1RTceigIqjY15Xs4+9tl\/rdXqqLjXlezj722X+t0BeqUqKAmnWlKAU+k0pQCndSgoB1Fc0cfPCW5xaaON45YZkaFluPS\/ZKxPyVFLLiynldjuKAJSlxO3XbopCCem9dL0oD\/ADyRv1PDjPk35OOjQO\/tyC6Gi+44wmKk77cxkdp2XL8YUa\/s1wQ8LUfhM0Tj4FKuDVxyC5y13W\/S2SSyuWtKUcjXMAezQhCEjcDchSthzbDoGncaAdaUpQDrSgpQDrSlKAf7afRSn0UBRdefIbqJ807v6m7WE1GG2rmHfNzIPWrTWb158huoh\/7p3f1N2sJqN5XMO+bd\/wDWrTXRhPvo+J1YL8RDxKToJ5KbP\/GzfXHq5lu3AtqPNtF1s68ysdxgXB7wtEGWpXIytV7E51pBcYdR2a2m0dFtLAdW7ulSTXTOgnkps38bN9cerYPmr7mqjUgtLkej1MasI6XI5hyDhiz28InWWDMxq32WTHdlshDrhdYmqxj2ETHCG2EN9gno72iQg7eKGk1gsZ4PtScNftTVgynFERcYvr1\/tgVBLRfedkRCsFqO22zEIixnGCppCgoPukpBcJHXdOtNRC9ydmpt3OdY\/DxnF64dbPoTlFytdudstxti27naLi+XVxo8xD6nUFTKCy+Ak8gHMAoJJVVY0u4PchxvPrHk+pLeI5ZGj4\/Ls1x7VltYWqRMuj7xS09EWpSHEXBCFJS80OiwoOJ2FXHPOJPJMbxnOrnj+KWq4XDEcuTjwjvTikmH4Mw+5LU2kF10pDyh2bSSohO432IqpZJxZ6kYs3kmQP4fil0x6yHHHY7ltmy1SZjF3fbDKkJcaT1SyVqIIBKuQbbE7ZS1Kab4GEtQmm+H6f0YG\/cDOURMbwmHpnfMaxi62CzxEXdyKwthq5XSEtTkR5XZoBWguPyC4pQ5zujv803HgXyFqPdLLjt1xuKy5a5sGJfHEui6Px3bCLYzbHyG9vBG3AHxstXVCAGwoc1dA6D6uua0YtdMr9i2oUWPe5cCB2a1K7eGjkUw+rcApUttxKinzb7VsmrxoUpK6NI4ajNKSWRx1Y+CPL8av2L3W1ZTZTHxO4TbgiIGgxFunazoMhpp6MywllhCURVdGk7B5tp7YkrTW3eG\/RK96LqzBie1YY9vv10FwhR7eEvPoUrnLpfldgy49upQ5A52i0DcFxe423R8VKvGjCDujSGHhTlpRKXiaUrzzPUrSFJMyBuCN\/8AsTVXIMtAABpAA9CRVPxH9vuefdkD1Jqrme+tI7jSG7z+p8+wZ5ucMI5vTyjepDLSeoaSDvv0Hn9P+2uVLlxr3O0ZdkuI3PCIkJ20DIRb33pK+ynmJdI9tgkFKSUh2Q66hY2JSWgRuFCpb41prrHs2zitscsseywZMx1MtfaNXKTDuCxEAI2O0u3+C+krdSNt+lZbRTva5jtNK9rnVKmGVDZTKCD37pB8+9DHZJ3LKCeXk35R3ej5K5yxXiV1DuNh1ivWQ4TaIv610G5LYEd2QUTpcNtxS086k8vIVN7eKSQFDfvqvYzxs3O7zMWx264jboF7uV+kWe9NF98C2tdpGZjPKQtCVJLjs1g8ijtyJcPNvsBOvgTtNPizq8sslQWWUFQO4JSN96gR46eUJYbHISpOyR4pPeRXLFv4s9TLtleDWKPppborGWXOfbZBeeecdiqt64kecrZtJHKmU\/JbSpWwKWEqO3PsNo6Caz3bVhWUwMls1us13x24hlVviyHH1oiuc3YOrcKA2sLCFFK2lLSQP3JGxmNaEnZEwrwm7LribX7FoEKDSQUjlSdh0HorwZAhCbBc+VAT\/gTw6D\/3ZrI1j8h\/yBc+n\/Y3v5hrR7jV7i3aQ+SbCun+jtt9Wbry6JddKca+4\/6Sq9WkPknwr5u231ZuvLol5Ksb6\/8AY\/6Sq8qeLLuanrUVPWgPzVGxryvZx97bL\/W6vVUXGvK9nH3tsv8AW6AvVRSn00BO1KU6+egFKfLTagG1KUFAKUptQClKUA7qbUpQDalKUApSooCaU+mlAUXXnyG6ifNS7+pu1hNRvK5h3zcyD1q01m9efIbqJ807v6m7WE1GP7LmHfNzIPWrTXRhPvo+J1YL8RDxKRoJ5KbOf\/ezfXHq2DWudD1SUaP21cNtDkhJuBaQtWyVL8Lf2BPmG9aDueofEWnFrNJtU7Upy4u2iebkF4Y0Ft5QGoxiwAgxABbitUneQCpPigGQBsT93WKEVdHpNaqcI3XA7Cp1NccOZ3xnqyS\/RXrVc2bdBcvt3t7rFkQtMluHLjdnbOrRJ7Rlt8MOA7uiSdiS1uM5Z864kpWQWF66MZbFdvXsXcoVrRjjRgJhypL7k9mfILBVHeixlMoQkuNqUtpHRwrWKhV0+DIWJT4M6LuGnmA3WVJm3TBsfmSJuxkuyLYw4t8jbbnUpJKtth3+gVkF47YHCouWK3qK1MKUTFQeYsndknp1KD1T+9821crxNX+IS7YpifgFmzVu8XLEhap5k4c8x2WU9tDJddDkdIbZ7Jcn7LsI\/irG\/MkCrbdJ\/ELY5+Re1+75FfXW8zft1pYuNripjrtwx1yS0srbjt\/YlXBaGi6VbbtpRzA83MVWL3IKtB7os6Eh26Bbm1t2+DHjIcWXVpZbSgKWdgVHYdT0HX4q+9cYSdSeLxm3wJ+JW3KrzDZktuSfZnGkRJslSLU87PjdmGEBCEyEtiO5ygLdV2fO4nav1H1j4rm4ku63LC8yZt6rHbI8RaMZS68bix7HLnO9ghovAuh24p8ZsN7Mt9n4xNRtEeTI2qPJ+R2bSuY+IjU3iBiO2W\/6D49kMuzS8VusuZFOPOCUiWXorUVQbfZ50PILq3OxUAVtod8UlI29uiGacR111iuVg1Ns9zRiY9s8m3TnbWI7am27u0xBYcV2aSFpYQ84g77OtPJV4xQVVbXLS0bMvr46ehZ\/obcxH9vuefdkD1JqrnVNxD9vuefdkD1Jqtc8TuRa5WGVjqtHE3XsBCuMm6rhW9MtLakOwksqW2Y7yneVLshfYNltx1KF8i+ZIFWctCLk+syXPVwcn1mbkcxTFnpLUx7GrUuQw4p5p1UNsrQtTgdUpKttwS4Askd6gFd\/WvwnDsRSh9CcVtATJdQ+8BBa2ccS4pxK1eL4ygtalgnqFKJ7ya5XXqtxZT7hOdtmEZLHROySPcbHGlWRtDTtmbVOS7DcXyExi6liEeZ\/ldSqQojxAKnGdReKy43aM2xbsqenO43Cl+A3PGkRbeXl2SQ66pyQWUFEgXARG+xDvQLcBQAOZOeujfc\/Iz2iHZfkdTt4fiTL9xlNYtaEPXdC27g4mC0FTEK35kvHl3cB3O4VvvvX5h4VhtvjGHb8Ss0aOpAbLTMBpCCkL5wkpCdtgvxtvT1765X\/AFxeK1Ddpl4Za8vyOF7J8ik3\/HWbbLlD2M3fbeT2DQZZblHmbc5U85SpAU4nbe6YleOI6+DRJm5v3ZhU2yTpubuPRG4G8hp6EG0u80N0IWpK5HKwnsCsBRC08m9SqsXwJjWi90X5dczeknDMPnLirm4pZpCoT7kmMp2A0ssPLXzrcRunxVKWAoqHUnqetemz47j+PIfax+x2+2Ikul99MOKhkOuHvWoIA5lH0nrXI6884sZOKJXY4+bTbsXbMi4tyrDGt7jFxU1OVcosRxcNTaoiS3DCH1IdTusDtVcx5fdE1E4iJkfLGZ13y63XBnH7TKtL\/tNlKjF1cG3LllLKLcs9qXlzE7ds4ttRUPBlBuo18d9mQsRDfos67+OsdkX7X7n9xvfzDWkdJLrrHkeoliuWU3DNrbj0nDGbpItd1gww2m5l9bCmXXkQ2l8xbSl7s\/sawVAlCRu2N3ZF\/kC5\/cb38w1rGWmrm0Z6cbpFu0h8k+FfN22+rN15dE\/JTjf3H\/SVXq0hP7E+FfN22+rN15dE\/JTjW3\/sf9JVeXPGl3qenx1FTuPTQH5qi415Xs4+9tl\/rdXqqNjXlezj722T+t0BeamoqfooBQfFSnfQD5aUp9NAKU+mlAKfHSlAPNTupSgFKUoBvSnnp8VAKVFT0oBSlRQFG158huonzTu\/qbtYTUbyuYd83Mg9atNZvXnyG6ifNO7+pu1hNRvK5h3zcyD1m010YT76PidWC\/EQ8SkaCeSmz\/xs31x6tg1r7QTyU2f+Nm+uPVsGvQQ+FHqKfwLwHmpWmeJnUPU3BLDZEaT41dLvdpM5cuYmFb0ygi3RWlOvIPMQlKnFBpobHn2WooBUkCtfxZPEnNsORXJnVzIAuFnVvsNuCsTgpU9ann4jbkrlLG5ARKdWVbco7Dr0CqrKqovRsykqyjJxs2dT1FciXDVPiatlwyRVoFwvsq35y3bYFoXaG20ybS29KC\/HEZHZ9qhplIdLqxu4FeKOh+8XOOJaXj6cxTkN9bLumdyyRFncxiOkpvDaQ2xHP2HtAslQd7LfclO23LuKrr1yZXaY8mdaUNchZdq\/xOR5GVoxuDMNwbcubDNuVjKyxZ2mJsdqBJQ8Unwrwplxxak7q\/dFAQG1b7x0AzHP85w643rUnHpViuyL7Pipt0hkIVGZbcCUoSoAB1APMEujcLGytzvVo1VKWikWhXjOWikzZlKUrU2KbiP7fc8+7IHqTVXKqZiH7fc8+7IHqTVXOqx3FYbvP6k\/TUVphnXq9Pazu6fjF7aLE3kHtU8KFxUbkZ\/sV7I9t4L2fKI3Zgo5u05uYb7bVWrxxQZX7TcTveMYRbpt0yXMrxi6ojsmQtEduDImt9uewaccJUmEFEcmyec7nYb1TWwRR14Lj10zoym9cpZTxuuW245pZbFicB+Xjd\/j2uGp+RJWiVGLslh99SI7LjoLb0RwcqEL3SttXnO2Mf49LtGkuQJuliYUly3t3CIF3AuNOj2uquz7XaJRtztqVHb\/ANZDvONikpqrxFNcSjxVJcTsClcsyuNaTbLreLbctP0J9jIMy5MqROIEpli2NyyEko8Upcc5HDsQhC219ebat36RZ5cc\/wAalT72zaWbpbbi\/bJzVrdkux0Ot8pASuQyytW6FoO4SUkEFKiDV41Yzdky8K0KjtFl4rHZCf8Aq\/c\/uN7+YayG1Y\/Idva\/c\/uN7+Yau9xq9xbtIfJNhXzdtvqzdeXRPyU439x\/0lV6tIfJNhXT\/R22+rN15NEvJTjX3H\/SVXlTxReKdKip\/koCKo2NeV7OPvbZf63V63+OqJjR\/Zfzgf8AwyyH1ygL1SpqKAnalNztTuoBQ0p9NAB8VKClARU+elN6AVFTSgFKUoB8lKUoBvSlKAeelKUBRdefIbqJ807v6m7WE1G8reHdP9G8g9atNZvXnyG6ifNO7+pu1hNRvK5h3zcyD1q010YT76PidWC\/EQ8SkaCeSmzfxs31x6tg1r7QTyU2f+Nm+uPV7dZbbmd602vNhwBoG9XdDdvadMnwcRmnnEtvv9oCCC2ypxY5fGJSAOtffi7QT7j08Hamn3F0pXJ2J6W8SCb9arRlzb6rS4qxxZk9nICpDMa0zJnOpSOftFqmRlRdyOvMVdptyjf45VoJq5ExcW3FIV4lPyJWVNxUt5c\/GVbZMmeDZ7ktwukutR4qOUsgqI5\/eKPNtTWytfRM9dK19FnW9TXH1x0b4kZ12yhi1zrna50zNY92tl+Vc21x24LbzywCyJBUtvxmipktoBSkp8bfp9cf0j4j27HJi5HHnyL\/AHDEFQLTc2spW2zj0\/sZYdQttK\/synVutcrwSsp8Unl7JO7Wyv8ACxr5X+BnXdPkrjm96Na\/XCBDbxuwXyysPzruu2Qnc2cW5jpdZtqYr774dUqQlL8ea92SS4OV\/kIAUQPllGiPEdfpOUwLOmTBeuGeP3aHcZ12Koi7UVXAtNlLEtL3IO2ijkCWynYbBfLUa6XZZDrz7DOy6VXtOoF3tWn+NWu\/mcq5w7RDjzTOkIkSVPoZSlZddR4riyoHdY6KO589WKt07q50p3VymYh1z3PPu2B6k1Vy+PaqbiH7fc8+7YHqTVZbOM0x\/TvFbhmeVSXY9qtiEuSHGmFvLAUsIHKhAKlEqUBsAT1qE7K77ykWlFt9\/wBTG3bSfBbzntq1Pk2dTGUWdpyOxcYkhyO46yvbmZeDagH2\/FSQlwKA26bda+72l2mckvmRp1jDvhUjwt\/ntEdXav8AjfZVbo8Zfjr8Y9fGV6TVVPEtpCzbpV0uN8nW1uEsIktzrVKjvMgwnZoUppbYWE+DsOq3223Ty++IFZDHdd9N8nltW6BcLhHnuInOKhT7XJiSWPBEMLfDrTyErbIRKYWAoDmS4kp3FUvTb4FVKk3lYtntRxTnjujGLTzwwRHV4E1uzusrPIdvF8YlXTznfvr4JwLB0MCKjC7ElhPc0LcyED7D2Hdy7f4n7H\/4PF7ulUSfxPaSwbXDvCJ17nRZ0W0zWlW+wzZRDVyKkwSpLTSikuqQUJB2PMUp7yAfrdeJjR+yPIj3PIJjK+2ktSf+ipShBTHfSw87KKWyI7SXVpQXHOVO+\/Xodp06fNDWUuaL4MRxTtEve1e09olLiUr8Ca3CXEJQ4AeXuUhCEq9KUpB6AV97Jj9hxiALVjdjgWmElRWmNBjIYaCj3kIQANz5zWvGeJrReQi7Kj5d2psbVzcnoREeUtr2PkNR5KOUJ3Kw6+ylKACpfaJKAoGvjcOKPRm2T02+Rfp6iu3NXRL7NolOR1MORFzEfZUtlHOY7TroRvzcraunSmnTXFE6yms7o2x9FeDIv2v3P7je\/mGvhi+VWTMbc7d8elmVDblyYQf7NSUOOMOqacKCR46QtCgFDcHY7EivtkQ\/6v3P7je\/mGrXurove6ui3aQ+SfCun+jtt9Wbry6JH9inGvuP+kqvVpF5J8K+btt9WbryaI9dKMZPphA\/7xryx4svFTuf\/wDCoqetAR8dUDGnB+vXnTHnFlsDn0Fc8f0av1aysrqovEnl0RY2RPwywyGv9Yszbmhf8gdb\/wDqFAbOpSooCaVFTtQClKUAoPipSgHSlOtKAdKdKfTSgFKUoB9FKU3oBSlKAUp8tPpoCi68+Q3UT5p3f1N2sJqN5XMO+bmQetWms1rz5DdRPmnd\/U3awuo3lcw75t5B61aa6MJ99HxOrBfiIeJSdBPJTZ+n+dneuPVsCubc4Vktq4Ks3ZxZ64sX23Qb7GjKtylplIktTpDZ7Mt+PzBSTty9a0HnF51QTg10Xi14z1eCDO8Zbs0q8yb026qMYT3smkvJ\/wCkDDDwR1G+x35O4V9p1tWkrcD0Lr6qKVuB\/Q41J61wxHvFxVxIYU1LvN09qhxfHFRQ5dMmTHXM8JfDvYhH+OWVBsK8O708vP3mrrwhYhrS7eE6gZbdbnDsDgv0SRFuOQTpz91kG6KEZ5UOQOyhBlppaElokrStJPQ9JjX0nZImGI0paKR1jSuG8m1NyCbwkZvh8C+ZV7f7VkUl50Fi5tSW4RypITyyW0BRb8FcSNmllQaJAGw6YTUTLNYJWKYND0dt+UXNvCYUvNL0ux3G4Fh91qekMx3XbotEqQ2plqYCz46iVp5UKSE1DxKW5cLlXi0tyvlfrwO\/6Vwdab1q3cNel5VDcyqBil5zu4MNXVy7XFTa4fsK27Ht67cr\/B2mnHXOZD\/vg4lSfFIG9CxS+cS8PS6TZMmuebSZLGjt3u9quIXKD7r0l6EpptxW\/MZbLgloTv44aKNu81G0pcCHi0vy8z+l1PNXA9+u\/EJbNYrm7Dm5TKxG76hYnbFtpXIJgdm1AeU4316RnULmIe28XnQ3v3mrboNlmcI15hWfN7Vlc3L7nPyFvJHJlwujcW1xG3XVQOyi8vgKoq2kspbcSebncV3k1KxCbtYtHFJy0bcbep0ziH7fc8+7IHqTVevUzT2yaq4LdtPsidkNW28tJafXH5O0AStKxt2iVIPVA3CkkEbgivHhhS7nGoDqCCG7pCjq+JabdGWR\/I6n+WrnWySas+83SUotPv8AqaSmcLmlUhaUXq63B0tYk7i62g7GiNmEVL5ZHZMNNobdaS6ttC0JSlKVbbGvuxw6YvCyG25A5qTlK8jD8yRKnPyYapF2RIaitOtPJLHL2fYwo7Y7JKCEpPXck1TdaOGzU3UrNsrzS15VYWDeLBLxGBEkJdT2dqfgOAlbiUnZfhy0uFISRyIHjb+LXxu\/D5rVlWokfPLnfcVsr9whMwbi5CcVMftzLLMpnsobj8YK5XRIS4opLCkrCuriTtWDVn8BzNWdlDj0y7Yrw+aYYljK7GzltzmxTNsgZkzJ7CnGGrPIQ\/BhIUlCU9m2pBBBBcUFr3UTsR58h4atJsputwXIye6suXZ6c3e4ca4MhNyiy5aZDsJ9JQVBrtRsOQoWAtSefxq0xd+BvULIMXhWf2fxDG3Iq4zZjWqMXobgi2iXDTLU2+yQp+Q5Jb7Xxd0ttJ5XFLSlVbIuPCxNmyL1OtTlnx6Xd7ni01E22neZFRb1srl8j62SVOLU2VJUsHnUEqWAd6hJtW0CEm1Z0+uvqexfB3oe9kislaut4alS3lrmNxrmhlM1Tl2TcgFlCQrcSGUIBSpKuRpKdyUgj2Yvwn6L4xl1ry23XGdIvECKq2QXJMtl5XgCI70YwxujdTSW3QO\/mBaRuffc2u7dwcahxbFEtft4tjc2BLhzYtyJcddbkxp17lMvqTyIC1BdziKKfFCi06Og5d\/dplwmZ3pxmWB3mNe7FIZxh65ouNxfcXIlzIb8+dJbaDTjJShzaWkl5txpQUXAe1TygQo5r3CFHNPVnRunuD2bTTBrDp\/jpfVbMegM26Kp9SVOqbbSEgrKQAVHbckAbkmsjkX7X7n9xvfzDXvrH5D\/AJAuf3G9\/MNdVrKyO2yUbIt2kPknwr5u231ZuvDoSsOaPYi8OodtbLg+RQ3\/AOdfbTKY1btF8TuEhYQ1FxeA8tR7glMRBJ\/kFePh5bea0G06ElBQ8rFrWtxJ7wpUZtRH8pryx4s2D9FT09FRT+WgFa5yZ232PXDCbvLdDJv9pu+OtH\/10oGPMZR9DUWaofIfTWxqoms1gud3w9N6xy1tz8gxSaxkNnYUoJU8\/HJ52EKPRKnmFPx+Y9AHzvQF7pWNxrIrRl2PW3KLBMRKtt1itzIryT0W2tIUk\/Edj1HeD0rJUAp9NKUApSlAKU+mnWgFPopSgFKfTQfFQCn0U6UoBSlKAfLSoqaAU+mlKAouvPkN1E+ad39TdrCakHl1bwwk++x6\/oHy+EWs\/wDI1m9efIbqJ807v6m7VZ1sckWrOtM78llSor9yn2GS4B0ZEmIp5tSvQC5DbR\/4nEjz1vhXatG\/M6cG9GvBvmVCZj2bYLf7hfdPoMS+Wi+S\/DLjY5UwxnY8hQ2dkQ3SFI8fZJUwsISV8yw4kqUFZMZzlQHj6N5dv5+WXaCP9s0VcaV6LRtuZ6rRtuZT\/bzk\/wADeYfhVn\/Pqe3jJ\/gbzD8Ks\/59Vwql6sau4XorjcbLc8lyItrk3GNbA80yXOzdeUQlSwO5A2JUfMBUP3VdsiXuq7eXyPp7eMn+BvMPwqz\/AJ9T285P8DeYfhVn\/PqrFz4m9LbXHz2S5LuMhOnU6JbLsmNDLqnZUlSUtMx0g7vKK1BGw7lbjzV9LpxIafQ5uN2y0QsiyObk9pYv0aNYrS5Ncj214pDct8I\/xbZKth3kkK2B2NV049oprI9r6Fj9vOT\/AAN5h+FWf8+p7eMn+BvMPwqz\/n1YCNxGaay5MWIzKnF6ZlszC20GP19kYyHVu7jfo3syvZfnO3TrVZb40dDHLfEuLl2uLCJ+ISc3iIdh8q37cwXO0Sgc3V4Bh1XZ95SgnzGo1kV+b6B1YLfP6GxfbzlHn0bzD8Ks\/wCfV4rjlWqVySiHiuly7a+6sJXNyK5xUsR0HvWG4jjy3lDvDe7YV3c6e+sZj\/ELh2U6jStM7DYcomToBYTMnN2smBFL0VMlsOPc2yd21J83edqzTusGHMwM\/uC3JnY6aqcTfPsHVJbhNzFdkN\/H+wuo9HXcVOkn+YnSi1lIyuC4cxhNjNtM924zpUh2dcrg8kJcmzHTu46oDokHoEoHRCEoSOiRVhrTszin05tWlitYL9acptNiMlqPHbm2lTcqX2jYcDjLW5K2+z5llQPRLaz5q9OWcTmmeGZcvEbym9kR2LZJl3SNblv2+G1cHVNRFvPI35ErWkgKI2HnNSqkEsmFVpxWTNtU2rUVj4pdJMiuL1otdxnLmxsmnYm+wqIUqbnRY777hIJ\/xRRGe5VjoopI7wdsWvjK0Qaa7R+6XJpSsKbz1ppcIhb1rWCfE67F0BJJb332BPUA7NbDmTrqfaRvCpFa4j68YhcNRXdNbJZ8lu8yE+3EuNxt9odettukLa7VLMiSPFQvkKSQNwnmSFFJIrYxqykpbi8ZKW5gVNRSrEjb01jModSzjN3eUdgiBIUfkDaqydUvWqbOg6R5g5aWi7cnrNKiwGgerst5stMNj41OrQkfGarJ2TZWb0Ytsy9+m+xnCQywJXg8q4YZCs0NXpmTIzcWOkfGXnmx9NbetVtiWa2RLRAbDcWCw3GZR+9bQkJSP5AK1ZeLWxfMtwXR5mM3Kt+IMRMjvayscrfgwLdtZKe\/mXJQX0nuAgnf3wrbteWPGCnX00pufioCKUpQGp2X\/wBZHLXok0qTgGVzy\/FkHYNWG6vueOwvYeLGkuL50LJ2Q8txJIDrYTtjpXmulrtt7tsqz3m3x50CayuPJiyWkuNPNKBCkLSrcKSQSCD0NayagZ9o2ks2GDPzfCG9y3AS8F3qzt7gBthTigJsdI3IQpQfSBskvbpQkDa9PlquYdqJhWfIme1LIY0563OdhPieM1Kgu7b9nIjuBLrC9v3LiUn4qsdAOtPpp56fRQDzU60p8lAKUpQDup9NKfRQClKfRQClKdKAUoPipQD6KdaClAUXXnyG6ifNO7+pu1ldRMJi6hYdPxWTNfgrkht6LMYP2WHKacS6w+jzFSHUIWAeh5djuCaxWvPkN1E+ad39Tdq8juonbMJ2zRonFsylPXBeEZxGZs+ZwG+aVB5iGpjaVcvhcNStu2jrI3BHjI35FhKhtVsq25lgeHag2xFpzPHod1jtOh9jtk7OR3U+9dacTstpweZaCFDzGqDd+HdmQ4FYxrBqNjTSRsGYt0Yno+XmuLElf+9X1qXtJJWqLPuPt0fayUbVVn3GRrXWuOj0DW3GrVil2moYt8S9xLnNaWz2glx2uYOMe+HLzpWRzddvQasJ4c81HvOKjU0D0G3Y4f8Aja6e50zj+FVqb+LMb\/RdXl7QoyVmn18zWXtTDzWjKLt8v3OeLbwLotqxa2dWL0LM\/fbXfprjaC3c5MiHGfHP4SF7JWuU\/wCEFXJ0KdgNzzDJaf8AClqHpHJtE\/TjWOIzKiWxWOzjdrGZiJFqbmvSIYQA+gofYRIca5tyhSdjyDYCt6+5zzj+FVqb+Lcb\/RdPc6Zx\/Cq1N\/FuN\/ous1i8Ms1F9fMxWNwkc1F9fM0Xa+CfG7Xm8TUZm42sZI1n1yy9+6JtW0l+HKbfSm3lfab8qFPJVzdx5PejfpUrl+p7RrxgMLELjqG0ZlqwdnFLfcUWshUeSiU+6qUE9r1StmQ6wpvfqlavG6jbqH3OecfwqtTfxbjf6Lp7nTOP4VWpv4sxv9F1G1YV\/lfXzIeMwb\/I+vmabw3hbu+Ga+zdZ4uQYrMbuAiIcTLxxa7lHbZgIiKRHliQA2lfJzEFtXQkfHWQuugGoEq+arM2\/UWysYvqozK8Kgu2JxyZEfdtTcFC0yBICSlJaQ4U9nueqdxvuNqe5zzjb\/8AVVqZ+Lcb\/RdPc55x\/Cq1N\/FmN\/ourbZh0rWfPrMusfhUrKL336zOdrVwQynsQxTAMlzm1wLDjUubNcYxGzLtDk556CmIh11Zfd3cCS\/zq28cO7bJ2O\/lh8CUtLthvt51HjXTIMVg4zDtciRa1qjLFpefO0lgvbPIdadQnbcKQtoLSrrtXSfudM4\/hVam\/izG\/wBF09znnHn4qtTfxZjf6Lqu1Ybsvr5lNswfZfXzNFW\/gy9jc8seeRM97J+BfL\/drjHRb9m7gicuaqKhX2TxVxvZCQAvrzBahsnptXsh4CDf8I9rStSERrnGwux4pAubdrPNHXCTKakOlJd8ZEhiY60W9xyg78xIG3S3uc84\/hVam\/i3G\/0XT3OecfwqtTfxbjf6LptWGf5X18ydtwjVtF9fM0vdOE+6uanR8psufRYmNnLY2bSba9a1OTEXJtLSXksSUvJCWXgw3zJW2vbxuU9enRnWq37nPOPPxVam\/izG\/wBF09znnH8KrU38W43+i60jj6EL2T6+ZpD2lh6d9GLz65lkp56rfuc84\/hVam\/izG\/0XX6HDnlY3VM4otT3Gx1VtFx9rp8qLYCKt9pUuT9P3L\/a1Hk\/T9zPvvsRmVyJLyGmmgVLWtQSlIHeST0ArVF3zNjL7nZsjhWyTdcXt9wQ7j0JlXI7mN8b3VGRG36eBsKSXlyFAIKm0LB7NpRX7PYDTPIy3Z8Ftt51ru8OStC596vTr2PQ5LX7qWtIEJS0L\/zbDDrwVtulI8YbiwbTMY\/dHsxyq6jIMtmNGO5cVMBlmHGJB8EhM7q8HjggEjmUtZALi1kJ25cRjnVjoQVkceK9pOtHQpqyZ99NMIl4faZcy\/zm7jk1\/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