A significant question in applying the KPM is how to categorize purchased products and services within the matrix. Organizations vary in how they measure supply risk and profit impact. Furthermore, some organizations may choose to measure their purchases against different dimensions; however, the fundamental purpose of the matrix remains. For our purpose, we assume that the organization has developed a means to condense their measurement of each dimension to a single value. For example, many organizations use an index (i.e. IBISWorld Buyer Power Score) to measure one of the dimensions. Or some organizations develop an indexed value function that generates a single value score for many attributes (i.e. profit impact can be a function of volume purchased, expected growth in demand, percent of total purchase cost, impact on product quality and business growth, etc.). However, once you have a single value that represents each dimension, subjectivity still largely drives how they are positioned in the KPM. The kraljicMatrix
package was designed to assist with this concern and the examples that follow walk you through how to implement kraljicMatrix
functions.
Implementation of kraljicMatrix
The x and y attributes are simply evaluation measures. They enable each product and service to obtain a score for each dimension being measured. For example, the x attribute score (1-5 in .01 increments) could be the IBISWorld Buyer Power Score measuring supply market complexity. However, to plot these attributes on the KPM matrix we need to normalize the value scores such that the values are between 0-1. To do this we can use an exponential single attribute value function (SAVF). For example, let \(v_x(x_i)\) represent the normalized value of the x attribute such that \(x^0\) and \(x^*\) are the lowest and highest preferred value of attribute x respectively. Thus, \(v_x(x^0)=0\) and \(v_x(x^*)=1\). Consequently, let \(v_x(x_i)\) be the SAVF of exponential form whereby each \(x_i\) is an input and \(\rho_x\) is the exponential constant for \(v_x(x_i)\):
\[v_x(x_i)=\frac{1-e^{[-(x_i-x^0)/\rho_x]}}{1-e^{[-(x^*-x^0)/\rho_x]}} \forall i \in PSC\]
However, prior to applying the SAVF to our x and y attributes we must first identify the appropriate \(\rho\) value. The benefit of applying an exponential SAVF is that it can take on many forms of increasing rates, along with aligning to a linear value function. Consequently, if certain x attribute values are valued more than other values an exponential SAVF will capture this utility curve. To identify the appropriate exponential rate, subject matter expert (SME) inputs are typically evaluated and an exponential rate that most closely matches the preffered values provided by the SMEs is chosen. Thus, let’s assume for our given x attribute the SME inputs suggest that x attribute values of 3, 4, & 5 provide a utility score of .75, .90 & 1.0 respectively (this represents a decreasing rate of return utility curve). Knowing that our x attribute is bounded between 1 and 5 we can search for a rho value between 0-1 that provides the best fit utility function using the SAVF_preferred_rho
function.
SAVF_preferred_rho(desired_x = c(3, 4, 5),
desired_v = c(.8, .9, 1),
x_low = 1,
x_high = 5,
rho_low = 0,
rho_high = 1)
## [1] 0.6531
Thus, we can see that \(\rho = 0.6531\) provides the best fit exponential SAVF. We can illustrate this two ways. First, we can use SAVF_plot
to plot the single attribute utility curve compared to the subject matter desired values.
SAVF_plot(desired_x = c(3, 4, 5),
desired_v = c(.8, .9, 1),
x_low = 1,
x_high = 5,
rho = 0.6531)
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)
We can also visualize the errors of the \(\rho\) search space with SAVF_plot_rho_error
, which plots the squared error terms for all \(\rho\) values within the \(\rho\) search space to illustrate the preferred rho that minimizes the squared error between subject matter desired values and exponentially fitted scores.
SAVF_plot_rho_error(desired_x = c(3, 4, 5),
desired_v = c(.75, .9, 1),
x_low = 1,
x_high = 5,
rho_low = 0,
rho_high = 1)
![](data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAkAAAAEgCAYAAABchszxAAAEGWlDQ1BrQ0dDb2xvclNwYWNlR2VuZXJpY1JHQgAAOI2NVV1oHFUUPrtzZyMkzlNsNIV0qD8NJQ2TVjShtLp/3d02bpZJNtoi6GT27s6Yyc44M7v9oU9FUHwx6psUxL+3gCAo9Q/bPrQvlQol2tQgKD60+INQ6Ium65k7M5lpurHeZe58853vnnvuuWfvBei5qliWkRQBFpquLRcy4nOHj4g9K5CEh6AXBqFXUR0rXalMAjZPC3e1W99Dwntf2dXd/p+tt0YdFSBxH2Kz5qgLiI8B8KdVy3YBevqRHz/qWh72Yui3MUDEL3q44WPXw3M+fo1pZuQs4tOIBVVTaoiXEI/MxfhGDPsxsNZfoE1q66ro5aJim3XdoLFw72H+n23BaIXzbcOnz5mfPoTvYVz7KzUl5+FRxEuqkp9G/Ajia219thzg25abkRE/BpDc3pqvphHvRFys2weqvp+krbWKIX7nhDbzLOItiM8358pTwdirqpPFnMF2xLc1WvLyOwTAibpbmvHHcvttU57y5+XqNZrLe3lE/Pq8eUj2fXKfOe3pfOjzhJYtB/yll5SDFcSDiH+hRkH25+L+sdxKEAMZahrlSX8ukqMOWy/jXW2m6M9LDBc31B9LFuv6gVKg/0Szi3KAr1kGq1GMjU/aLbnq6/lRxc4XfJ98hTargX++DbMJBSiYMIe9Ck1YAxFkKEAG3xbYaKmDDgYyFK0UGYpfoWYXG+fAPPI6tJnNwb7ClP7IyF+D+bjOtCpkhz6CFrIa/I6sFtNl8auFXGMTP34sNwI/JhkgEtmDz14ySfaRcTIBInmKPE32kxyyE2Tv+thKbEVePDfW/byMM1Kmm0XdObS7oGD/MypMXFPXrCwOtoYjyyn7BV29/MZfsVzpLDdRtuIZnbpXzvlf+ev8MvYr/Gqk4H/kV/G3csdazLuyTMPsbFhzd1UabQbjFvDRmcWJxR3zcfHkVw9GfpbJmeev9F08WW8uDkaslwX6avlWGU6NRKz0g/SHtCy9J30o/ca9zX3Kfc19zn3BXQKRO8ud477hLnAfc1/G9mrzGlrfexZ5GLdn6ZZrrEohI2wVHhZywjbhUWEy8icMCGNCUdiBlq3r+xafL549HQ5jH+an+1y+LlYBifuxAvRN/lVVVOlwlCkdVm9NOL5BE4wkQ2SMlDZU97hX86EilU/lUmkQUztTE6mx1EEPh7OmdqBtAvv8HdWpbrJS6tJj3n0CWdM6busNzRV3S9KTYhqvNiqWmuroiKgYhshMjmhTh9ptWhsF7970j/SbMrsPE1suR5z7DMC+P/Hs+y7ijrQAlhyAgccjbhjPygfeBTjzhNqy28EdkUh8C+DU9+z2v/oyeH791OncxHOs5y2AtTc7nb/f73TWPkD/qwBnjX8BoJ98VQNcC+8AAEAASURBVHgB7Z0HmBTF1obPEhdYchYQuQRBFAkCek2ACZSo4hV+AclIUDKCV5AMoqIgmStJMBAUEJAkKiIgKIgEEUGSknNa4v771bXnzi47PbMz0zPd1V89T+/2dFdX13mrw+mqU+fEJCQmYSIBEiABEiABEiABFxFI4yJZKSoJkAAJkAAJkAAJKAJUgHghkAAJkAAJkAAJuI4AFSDXNTkFJgESIAESIAESoALEa4AESIAESIAESMB1BKgAua7JKTAJkAAJkAAJkAAVIF4DJEACJEACJEACriOQTmeJT548aYl46dOnl5iYGLly5Yol5dup0AwZMrhCzowZM8r169fl2rVrdsJvSV1w/V69etWSsu1UaGxsrJIT7apzSpMmjXoe6S4nnrm4Ty9fviy6e29JmzatkvHGjRs6X7oCOfE8io+Pt0ROvL/i4uJ8lq21AoQbxYqUOXNm9cA5d+6cFcXbqkzI6gY5s2XLph6sFy5csBX/cFcGL0soBufPnw930bYrL1euXHL69GnVrrarXBgrhIc8XiJWPe/CWNWQioKMeB5dvHhRewUeckKh1f0jO1OmTKpNz5w5E9K1EezBHAILlhyPIwESIAESIAEScCwBKkCObTpWnARIgARIgARIIFgCVICCJcfjSIAESIAESIAEHEuACpBjm44VJwESIAESIAESCJYAFaBgyfE4EiABEiABEiABxxKgAuTYpmPFSYAESIAESIAEgiVABShYcjyOBEiABEiABEjAsQSoADm26VhxEiABEiABEiCBYAlQAQqSnO4eOoPEwsNIgARIgARIwBEEqAAF0UzLli2TsmXLSrS8VwZRZR5CAiRAAiRAAiTgRYAKkBeMQFfLlCkjBw8elIkTJwZ6CPORAAmQAAmQAAnYiAAVoCAao0iRItK8eXOZPHmyijUURBE8hARIgARIgARIIIoEqAAFCb9nz54q+OCECROCLIGHkQAJkAAJkAAJRIsAFaAgyRcuXFgaN26seoFOnToVZCk8jARIgARIgARIIBoEqACFQP3ll1+Wa9euyfjx40MohYeSAAmQAAmQAAlEmgAVoBCIFyhQQJo0aSL/+c9/5MSJEyGUxENJgARIgARIgAQiSYAKUIi0O3bsKAkJCTJmzJgQS+LhJEACJEACJEACkSJABShE0vny5ZNmzZrJ1KlT5ejRoyGWxsNJgARIgARIgAQiQSCiCtDOnTsFTgSPHz9uKpuvfHA8uHLlSr/HmxZuwc4OHTpIlSpVZNy4cRaUziJJgARIgARIgATCTSBiCtDIkSNlxIgRsmnTJmnZsqXs378/RVl85VuzZo20a9dO9uzZI927d5d58+aleHw0NubOnVvKly8vU6ZMkb/++isaVeA5SYAESIAESIAEUkEgIgrQ3r17ZfXq1cpzcq9evaRRo0Yyc+bMm6pplm/OnDlKAWrdurW89tpr8sknn9x0fDQ3QDnLmDGjvPvuu9GsBs9NAiRAAiRAAiQQAIF0AeQJOQt6bcqVKydp0vxX36pYsaIsWrTopnLN8t1yyy3yww8/SOXKlWX9+vUC25vkqXPnznLp0iW1+c477xQoS1ak9OnTq2Jz5szpKR7rXbp0kSFDhkifPn2kWLFinn1OXoGs3nI6WRazuuPahAKru6wxMTGSLl067eU02jpLliwSGxtr/NTyP65dtGuGDBm0lM8QCjIiZc2aVU08Mbbr+D9t2rRKRt2DbkNOJKueu3BTY5YiogAdOnRIsmfP7qlHtmzZUpw2bpavVatWaujsyy+/VDc7wlAkT1evXhUsSNevX1f5kucJ12/cjMYNaZTZqVMnNRts0KBB8sEHHxibHf8/uZyOFygFAQwZjf8pZNFqk1vkRKO5QVbIqLuchnzGf61uSB/CuEXWaMkZEQUIWh4UEiNBK8uUKZPx0/PfLB+mm8Pzcv369WXt2rXSvn17mTt3bpJykk9Fh0JlRYK2igY7efLkTcXDIHrgwIHSpk0bKVWq1E37nbYBsrrB03XevHlVaJOzZ886rYlSVV/0FuALGhMKdE8FCxaUCxcueHqFdZUXPT/oqYWsOifImCdPHsE9anzo6ipv5syZlZPdK1eu6Cqikgt6QI4cOVJ8l4ZDcPTqm6WI2ADh5eKtLGAdD6fkyVc+zBrD0qBBA9V9/+CDD6ohsB07diQvIuq/MSUew3PDhw+Pel1YARIgARIgARIggZQJREQBgt3O1q1b5cCBA0qrXbhwoZo2jirBZmffvn2qdr7yQetH7C1Mj0c6fPiw6pUoW7as+m2nP9BoYQu0ZMkS2bJli52qxrqQAAmQAAmQAAn8TSAiQ2Cw+cGQEOx4cuXKJUWLFlXDWajDtm3bZMCAAbJgwQIxywf7GtjVnD9/XhmHweDZX/dWtFoZs9zGjh0rw4YNk1mzZkWrGjwvCZAACZAACZCADwIxiWEcEnzsC/tmjNtevnxZ4uLiTMs2y4dxbszsCCRFwwbIqBcUOjhG7Nu3r9x3333GZsf9pw2Q45rMtMJuswE6ffo0bYBMrwjn7DRsgGAOQRsg57SbWU0NGyCr3tXoJEGni68UkSEw4+S4gP0pP8hrli9Q5cc4Z7T+165dW+Lj49W0+GjVgeclARIgARIgARJImUBEFaCUq6DnVnxpw+njjz/+qMJ/6CklpSIBEiABEiABZxKgAmRhu9WsWVPg9HHo0KGiu0MrCzGyaBIgARIgARIIOwEqQGFHmrRAhO3A7DU7xS5LWkP+IgESIAESIAH3EaACZHGbwwC6WrVq8uabb4ruTq0sRsniSYAESIAESCBsBKgAhQ2l74IQG+zgwYMyffp035m4hwRIgARIgARIIGIEqABFADUCs8KLNSLFw48REwmQAAmQAAmQQHQJUAGKEP+ePXuqGDaTJk2K0Bl5GhIgARIgARIgAV8EqAD5IhPm7fB+De/VEydOlGPHjoW5dBZHAiRAAiRAAiSQGgJUgFJDK8S8CJR67do1efvtt0MsiYeTAAmQAAmQAAmEQoAKUCj0Unls7ty5pX379jJz5kzZs2dPKo9mdhIgARIgARIggXARoAIULpIBltO2bVsVm2TIkCEBHsFsJEACJEACJEAC4SZABSjcRP2UlzlzZunevbssXrxYhcnwk527SYAESIAESIAELCBABcgCqP6KbNSokZQoUUIGDBjgLyv3kwAJkAAJkAAJWECACpAFUP0VmS5dOoFzxA0bNsiSJUv8Zed+EiABEiABEiCBMBOgAhRmoIEWh0CpVatWlcGDB6uZYYEex3wkQAIkQAIkQAKhE6ACFDrDoEvo27evxMTEyOzZs4MugweSAAmQAAmQAAmkngAVoNQzC9sRFSpUEITJQC/QuXPnwlYuCyIBEiABEiABEjAnQAXInI/le3v37q3ig40ePdryc/EEJEACJEACJEAC/yUQk5CYdIVx8eJFS0TLkCGDGrq6fPlyWMqHQfT48ePl559/liJFioSlzHAVkjFjRgmXnOGqkxXlxMbGyvXr1+Xq1atWFG+rMnH9XrlyxVZ1sqIycDmBaxftqnNKkyaNYIGXeZ0TZMR9Gh8fLzdu3NBZVMFEGciou5xp06YVvGOselfj3s+aNavPa0VrBejIkSM+BQ9lR/bs2ZUCdPr06VCK8Rx75swZuffee6VatWoybtw4z3Y7rOTIkUPCJacd5PFVB3jpxsvy/PnzvrJosR0vkbi4OBWYVwuBTITInz+/4N7CC1PnBIUWL0yrXiJ2YQcZcZ+eOHFCe2UPyjsUWt0/VKDQ4n1q1bs6ffr0yvGwr2s4na8dOmy3WnsOV/nQULt27Sqvv/66tGrVSmAbZJeEDsJwyWkXmczq4QZZ3dSmbpAV16wb5ISMSG6QFW1qLGbPK6fvM9o0Ws9d2gDZ5ApCoNTixYvLG2+8YZMasRokQAIkQAIkoC8BKkA2aVt076IHCM4RFy5caJNasRokQAIkQAIkoCcBKkA2atfHH39cHnjgARk1apQrDI9thJ5VIQESIAEScBkBKkA2a3DEBzt48KBMnDjRZjVjdUiABEiABEhAHwJUgGzWlqVLl5Y6deqoXqBjx47ZrHasDgmQAAmQAAnoQYAKkA3bsWfPnmqa/dChQ21YO1aJBEiABEiABJxPgAqQDdswT5480qVLF/nkk09ky5YtNqwhq0QCJEACJEACziZABcim7deyZUspWrSo9OvXz6Y1ZLVIgARIgARIwLkEqADZtO3g3RXKz/r162X+/Pk2rSWrRQIkQAIkQALOJEAFyMbt9sQTT8jDDz8sgwYNkkuXLtm4pqwaCZAACZAACTiLABUgm7dX//795fDhwzJhwgSb15TVIwESIAESIAHnEKACZPO2KlWqlHTr1k1Fi4d/ICYSIAESIAESIIHQCVABCp2h5SU0b95cRXtmnDDLUfMEJEACJEACLiFABcgBDZ09e3bp3bu3LF68WFavXu2AGrOKJEACJEACJGBvAlSA7N0+nto1atRIypUrJ//+97/l2rVrnu1cIQESIAESIAESSD0BKkCpZxaVI9KkSSODBw+WXbt2yQcffBCVOvCkJEACJEACJKALASpADmrJSpUqyXPPPSdvvfWWHD161EE1Z1VJgARIgARIwF4EqADZqz381gZDYDExMTJw4EC/eZmBBEiABEiABEggZQJUgFLmYtutiBOGYKnz5s2TjRs32raerBgJkAAJkAAJ2JlARBWgnTt3yrJly+T48eOmTHzlO3LkiCxdulTZwZgWoPnOF198UR599FHp1auXXL9+XXNpKR4JkAAJkAAJhJ9AxBSgkSNHyogRI2TTpk2CQJ/79+9PURpf+XBcp06d1HHI884776R4vBs2pk2bVjp06CA7duygQbQbGpwykgAJkAAJhJ1ARBSgvXv3Kv81EydOVL0WmNI9c+bMm4Qxyzd+/Hjp2rWrtG7dWqAAnT59Wq5cuXJTGW7ZUKVKFWnYsKFSKmkQ7ZZWp5wkQAIkQALhIpAuXAWZlbNnzx7lwwZTuZEqVqwoixYtuukQX/kuXLggv//+u9x+++1qCK1kyZIyYMCAm47funWrZ0goa9aski1btpvyhGMDjJCxpE+fPhzFBV0G4oRhSBAsrIoVZgc5gwaUigMhJ67PaLdpKqocVFa3yGnAQW+p7m2aLl06cYucaFfIq3tCeyIlJCRoLaohp1X3KJ53ZikiV9KhQ4cE3oyNBMXkxIkTxk/Pf1/50MORKVMm1XtUpkwZmTFjhlKiunTp4jkWK02bNhUoS0gPPfSQTJo0Sa1b9QcGydFMOP+wYcOkffv2akisRo0allQnY8aMlpRrt0JxjWFxQ4qNjXWDmIIPISxuSFmyZHGDmJIjRw5XyOkmIa16l168eNEUY0QUIGh53sa68GSc0ovGV74bN27ImTNn1NTvChUqCIR65plnpFWrVkkebh9++KHnPFCy/Blbm5Ix2YkHKjTLs2fPmuSKzC5wQO9P27Zt5ZtvvpEMGTKE9cSQ9dy5c2Et046F5cyZUw2pGgq0HesYjjrhusWL8vz58+EoztZl4KGKa/fy5cu2rmeolUOPCJb4+PhQi7L18ZARyg/MH3T3ho8PFMiou5z4uMY7xqp3NXSKzJkz+7yuI6IA5c2bV7Zs2eKpxMmTJ6VgwYKe38aKr3z58uVTWe644w71HwIh7+7du6V8+fLG4WLsNzagR8mKZHRLXr161YriU13m8OHDpVatWjJq1Ch55ZVXUn282QGQ1S5ymtUz1H2QE4q27rJimM8NchrXAz68dG9TY1hTdzmNNoVSoLusGBJyw7VrDGda1Z6G2Y1x7ST/HxEj6MqVKwvscw4cOKA02oULFwqMeJEuXbok+/btU+u+8kFDhKKzfPlyle+PP/6Qv/76S0qVKqV+u/0PYoS9mDg1ftWqVR6WbmdC+UmABEiABEjAjEBEFCAMR7Vp00YNWTVp0kR1Szdu3FjVa9u2bWp6O36Y5evRo4fMmTNHlQHbn379+pl2bZkJreO+V199VTCLDlHjmUiABEiABEiABMwJxCR2/UfMzBzdXBiPj4uLM62VWb5Tp06pcWB/1t04gVVDYLAXwfkxlGenNH/+fHnppZcELgPq1q0blqpBVjDXPWFIFdemHey6rGSNLmH0qMKmTveEYXbYi6CXWecEuz8MmehuvwYZYdcFexGrhkzscp3AzANDfbq7eoEtMOy6rHpXw8YoV65cPps1Ij1AxtlxAftTfpDXLJ+hfBhl8v//CNSrV0+qVasmffv21f5F/j+puUYCJEACJEACqScQUQUo9dXjEaklMHToUKX8DBkyJLWHMj8JkAAJkAAJuIYAFSDNmrpo0aLKY/b06dMZLFWztqU4JEACJEAC4SNABSh8LG1TUrt27QQOI2E4rvtYuW2gsyIkQAIkQAKOIkAFyFHNFVhl4VsBgWd/++03Qfw1JhIgARIgARIggaQEqAAl5aHNL8Rb69atm4wdO1YQY42JBEiABEiABEjgfwSoAP2PhXZr8L2EaYYYCougtwPtOFIgEiABEiAB/QhQAdKvTT0SweUAZoWtXbtWZs6c6dnOFRIgARIgARJwOwEqQJpfAY899phyijhw4EA5cuSI5tJSPBIgARIgARIIjAAVoMA4OTrXoEGDVLRohslwdDOy8iRAAiRAAmEkQAUojDDtWhTcx/fv31++/PJLQSBaJhIgARIgARJwOwEqQC65Ap599lmpXr269OnTx3YxzFzSBBSTBEiABEjARgSoANmoMayuyptvvqkcJDJMhtWkWT4JkAAJkIDdCVABsnsLhbF+hQoVktq1a8usWbNk+fLlYSyZRZEACZAACZCAswhQAXJWe4Vc2yZNmsg///lP6dmzp5w5cybk8lgACZAACZAACTiRABUgJ7ZaCHWOiYmRt99+W0WM79evXwgl8VASIAESIAEScC4BKkDObbuga46I8TCG/vTTT+Wrr74KuhweSAIkQAIkQAJOJUAFyKktF2K9W7RoIffee690796dQ2EhsuThJEACJEACziNABch5bRaWGmMobOTIkUr56du3b1jKZCEkQAIkQAIk4BQC6ZxS0WDqmSaNtfqd1eUHI3NqjilWrJi88cYbMm/ePDUr7IknnrjpcChKTpfzJqFMNuguK+RzU5u6QVa3tCnaEsktbYp21f15ZLRptOSMSYwSnmDyPnD0rgsXLlhS/4wZM6qbMD4+3pLyI1komr9OnTqyfft22bBhg+TOnTvJ6SHr5cuXk2zT8UemTJnk+vXrcuXKFR3FSyJThgwZXCFnlixZ1LV77dq1JPLr9sN4UbpBTtynly5dkhs3bujWjEnkSZcuneDZjGeSzgly4h1j1bsa10nWrFl9ItRaATp06JBPwUPZkTNnTqUAnTx5MpRibHPswYMHpUaNGspT9IQJE5LUC7KeOnUqyTYdf+TNm1e9LM+ePaujeB6Z8LLEA8ENLhAKFiwop0+fVi9MDwANV6DQpk+f3rKXiF2QQUaE9Tl+/LhcvXrVLtWypB6ZM2cWKLS6f5BBoc2RI4dY9a6GcpUrVy6fbWTtGJHP03KHnQgULlxYBgwYoOKEff7553aqGutCAiRAAiRAApYQoAJkCVbnFfr888/LY489pqbHHz582HkCsMYkQAIkQAIkkAoCqVKAMPaK4ZK9e/eqZffu3fLTTz/JsmXLUnFKZrUrgbfeeksZ3XXt2tWuVWS9SIAESIAESCAsBAJWgD788EOBnUSRIkUEs4ewlChRQipVqiRz5swJS2VYSHQJoH0RMPXrr7+WadOmRbcyPDsJkAAJkAAJWEggYAWoR48e8uyzz8qKFSuUEeW6detk1KhRAkPDoUOHWlhFFh1JAk8++aS89NJL8v7778vvv/8eyVPzXCRAAiRAAiQQMQIBKUCYMQK7kEGDBskjjzyieoJgud2pUyfBcMmQIUMiVmGeyHoCXbp0UbPcOnbsqP1sC+tp8gwkQAIkQAJ2JBCQAoQpeZiCGBsbq2QoXbq0rFmzRq1XrVpV1q9fb0fZWKcgCcTFxcno0aPll19+kcGDBwdZCg8jARIgARIgAfsSCEgBgvJz9913C6KHnzt3TsqXLy+zZ89WvQOLFy9W9kD2FZE1C4YAFFv08MEmiApuMAR5DAmQAAmQgJ0JBBwKY+zYscpjcLVq1aR169bK+Bk9BfBUuWDBAjvLyLoFSaBbt26qpw9DYStXrpRs2bIFWRIPIwESIAESIAF7EQioBwhVrly5suzfv19q1aolt912m2zatEnGjBkjmAoPw1km/Qig52/q1KkCj9evvvqqfgJSIhIgARIgAdcSCFgBgpM8uOVGrw/SrbfeKq1atZJVq1ZJ48aNXQtQd8Hh6gDG70uXLmVPn+6NTflIgARIwEUETIfAYPuxfPlyheO7776TYcOGeQyhsRHDXwidULJkSRchc5+ojRo1ko0bNwqGxO666y7afLnvEqDEJEACJKAdAVMFCF//mOaOaOAIPrdo0SJJmzatBwKGSDAc1qdPH882ruhJoG/fvvLtt99K+/btVU8Q2p6JBEiABEiABJxKwFQByp07t2e6e926dWXWrFmeITCnCsx6B0cge/bsyjniM888oxxfQiFiIgESIAESIAGnEgjYBggzvQz7H6cKy3qHRgBT4zEMNn78eGX7FVppPJoESIAESIAEokfAtAdo8+bNcvHiRb+1y5Mnj5QqVcpvPmZwPoFXXnlFYA/28ssvq7Ao+fPnd75QlIAESIAESMB1BEwVoBdeeEG2bdvmF0rDhg3l008/9ZuPGZxPIE2aNMr9waOPPqocJX788ccqgrzzJaMEJEACJEACbiJgqgCtXbtWbty44ZcHDWL9ItIqQ4ECBVSoDATBHTlypBoW00pACkMCJEACJKA9AVMboKxZswqMX40lQ4YMsmTJEnnvvffkwoULsmvXLhUZHrHCmNxFoHr16vLQQw/JO++84zGUdxcBSksCJEACJOBkAqY9QN6C7dixQ3mBRlR49ArVqVNHXn/9dUGk+Hnz5gl6BZjcRQDeoTds2KCmxq9YsULy5s3rLgCUlgRIgARIwLEETHuAvKVq2bKl3HfffXL06FEpUqSI2oUwCbAJ+eijj7yz+lzfuXOnLFu2TI4fP+4zD3b4ywfv0wjKyhRdAunSpZNx48Yph5jwDxTIcGl0a8yzkwAJkAAJkMB/CQSkAGEm2A8//CADBgxIEhATM4AwKwgR4f0l2IqMGDFCxRCDMoW4Yiklf/ngjA8+aBCfiin6BG655RZlD7RmzRrVvtGvEWtAAiRAAiRAAv4JBKQA4UsfPT2w+0meMEsM+8zS3r17ZfXq1TJx4kTp1auXILTCzJkzbzrEXz70HH3wwQeSI0eOm47lhugRgD0QpsXDNuyrr76KXkV4ZhIgARIgARIIkEBANkAwfn788celS5cu8uabb6qi0SsEz9AYAvEXKXzPnj1Srlw5j6JUsWJFFVYjeR3N8iUkJKhYZB07dpThw4cnP1T9xjCM4bfo7rvvVrYpKWYMcSMUwpiYGMmVK1eIJdn/cMgaiJyIE3fw4EEZNWqUVK5cWYoWLWp/4bxqiBAvGTNmDEhWr8McuRpomzpSuGSVzpIli2TKlCnZVr1+4lmEj1BcvzonyImULVs2wftA54TnEUwKdJfT6DwJ5B0TTHsjhJdZCkgBQgHovWnQoIFUqVJFvfzx1Y/Cn3/+efX1b3aSQ4cOqZlkRh5cwCdOnDB+ev6b5ZszZ46yPbrnnns8+ZOvxMbGejbhYWDlxYOyrSzfI4gNVgKREw8nDF/CTgw9fOgJctID2ZDR+G8D7JZVATK6QU4DoO6y4t5zU5u6QVbjmjX+G9eyrv+tktNfuQErQLD1WLdunRrK+vXXXwW9QuXLl1eLv0aBNovI8Ua6du1ail9lvvL98ccfavo9epvMEqZkeycoVFaknDlzKiXw1KlTVhRvqzIha6Bywh8U2gjxwtBTZ/QW2kogH5XBDDYE/T179qyPHHpsxhcX3Ftg9qbuqWDBgmrY/tKlS1qLimcx7r2UTBR0Ehwy4qMKE2D8fdk7XW64lsF78sqVK04XxbT+6J2FSUug7xjTwlLY6e8j3FQBgs0NGsE7IeSFd9gLTItHz4uZXQ5eLlu2bPEUAwNmPJySJ1/5Vq5cKfv27VNT73EMHmitWrWSwYMHqx6p5OXwd/QIYPirX79+ykVChQoVVG9Q9GrDM5MACZAACZBAygRMrZerVaumFBUoK2ZLmzZtUi797614KW7dulUOHDigFKqFCxd6FBcoM1BukHzlg7IDJQhT6LHA59DkyZM9Zfx9Gv6zCQHM8nv66aelT58+SRRfm1SP1SABEiABEiABMVWA5s6dKwiIiqV3796q5+ezzz4TGCt///336ksfQ2OYCm+WYPMDJQmKTJMmTVQXZuPGjdUhmEXWqVMntW6Wz6x87rMfAQx/FS9eXKAMpWTvZb8as0YkQAIkQAJuIhCTaCTk15weWfLlyyczZsyQmjVrJuEDb9DwEg0jZX8J47aws4iLizPNGmg+00ISd1ptA+QGX0SpsQFK3h7o2evZs6eyT4DTTMw+smuiDZBdWyb4eqHX+vTp02rIPPhS7H+km2yA8uTJoxzp0gbI/tdlIDU0bICselfDBshshplpD5AhAIapYDRZsmRJY5PnP5whBqoIwIjNn/KDggPN56kEV2xJAFPh27VrJ/DcPXDgQFvWkZUiARIgARJwJ4GAFCBYpGN6c48ePTyzR6AUITAq/L889dRT7qRHqf0SgLsEDJ9OmjRJZs+e7Tc/M5AACZAACZBAJAgEpAChIvDAjOjvGAr7xz/+obqVnnzyScECL8BMJOCLAKbE161bVw2HwZ6MiQRIgARIgASiTSBgowwYtCIeGBZMaYfBMmZt3XHHHdGWged3AAE4SaxXr540b95cvvzyS8HQKRMJkAAJkAAJRItAwAoQKgiDpYcfflgt0aowz+tMArh20ItYq1Ytadu2rXz88cfKf5QzpWGtSYAESIAEnE4g4CEwpwvK+kefQOHChZUSBE+u3bt3j36FWAMSIAESIAHXEqAC5Nqmj47gGDZt3bq1zJs3TwVOjU4teFYSIAESIAG3E0jVEJjbYVH+8BBAAN2dO3eqGYQlSpRQhvThKZmlkAAJkAAJkEBgBKgABcaJucJMAA40d+/erbyAY2isXLlyYT4DiyMBEiABEiAB3wQ4BOabDfdYSABRyRE5vlixYtKsWTP566+/LDwbiyYBEiABEiCBpASoACXlwV8RJJAlSxaZNm2axMTEyKBBg+TChQsRPDtPRQIkQAIk4GYCVIDc3Po2kL1QoUJKCVq6dKmaHn/9+nUb1IpVIAESIAES0J0AFSDdW9gB8t11110yZswYFTPstddec0CNWUUSIAESIAGnE6AC5PQW1KT+NWvWlP79+8v06dNl7NixmkhFMUiABEiABOxKgLPA7NoyLqxXq1at5MCBA8oe6JZbbpH69eu7kAJFJgESIAESiAQBKkCRoMxzBEygX79+akZY586dpWDBglK1atWAj2VGEiABEiABEgiUAIfAAiXFfBEhgOnxo0ePVr0/TZs2lR07dkTkvDwJCZAACZCAuwhQAXJXeztC2tjYWHnjjTekQIEC0rhxYzl48KAj6s1KkgAJkAAJOIcAFSDntJWrapojRw6ZNWuWoEcIStDJkyddJT+FJQESIAESsJZATEJisvYU0Sv94sWLlpw8Q4YMynnf5cuXLSnfToVmzJhRoiknhsAeffRRKV68uCxZskTgPNGKhF4n+CC6evWqFcXbqkxcv1euXLFVnayoTObMmdW1q7tvKXwkYLl27ZoVGG1TJmTEfRofHy83btywTb2sqEi6dOmUjLrLmTZtWsE7xqp3Ne79rFmz+mwirY2gz54961PwUHagdwLei60qP5S6hfvYnDlzRlVOOEqcMWOGPPfcc4IgqlOmTBG8wMOdDKXg3Llz4S7aVuXhJRIXFxfVNo0UEChAeFleunQpUqeMynlw7eKFadVLJCpCpXBSyAgFCB7jdf9QwbULhVb3D5VMmTIpBciqd6m/d4XWCpDVnVtWl5/CMyDimyBjtOWsVKmSTJ48WUaMGCEdOnSQ8ePHqy9eK2BEW1YrZPIu05DP+O+9T8d1yKm7rIZ8xn8d29FbJre0qVvkRNtG69qlDZD3ncV12xKoXr26tG7dWhYtWiQ9e/a0bT1ZMRIgARIgAWcQ0LoHyBlNwFoGSqBBgwaCIapXX31VDeNgphgTCZAACZAACQRDgApQMNR4TNQIwDcQxouHDBmilKDu3btHrS48MQmQAAmQgHMJUAFybtu5tuYdO3aU8+fPyzvvvCMw0m7ZsqVrWVBwEiABEiCB4AhQAQqOG4+KMgEMg2FWyFtvvaVm5LVo0SLKNeLpSYAESIAEnESACpCTWot1TUIAw1/Hjh2Tf//732pq/AsvvJBkP3+QAAmQAAmQgC8CVIB8keF2RxAYNmyY8gmCmWHoEYKvICYSIAESIAES8EeACpA/QtxvawJwSIlhMDgN69atm/IPBKeJTCRAAiRAAiRgRoAKkBkd7nMEAXg3fvfdd5Xr+B49eijPovXq1XNE3VlJEiABEiCB6BCgAhQd7jxrmAlACRo1apTkzZtX2rdvr8IfcDgszJBZHAmQAAloRIAKkEaN6XZRoAS9/vrrcvz4cenatasaFqNhtNuvCspPAiRAAikToAKUMhdudSgBKEHvvfeeMoiGYTSCJjZv3tyh0rDaJEACJEACVhGgAmQVWZYbNQJQguAkMX369PLaa6/J5cuXpV27dlGrD09MAiRAAiRgPwJUgOzXJqxRGAhgdtibb74pmTJlkmXLlsnFixfVsFgYimYRJEACJEACGhBgNHgNGpEi+CbQv39/qVKlipoqj3UmEiABEiABEgAB9gDxOtCeAMJmZMmSRYYOHaqiyaNnCMNkTCRAAiRAAu4lQAXIvW3vKsk7deok2bJlkz59+siZM2dkzJgxKnyGqyBQWBIgARIgAQ8BfgZ7UHBFdwLNmjVTis/SpUtV/LALFy7oLjLlIwESIAES8EGACpAPMNysJ4H69evLzJkzZd68efLMM8/IiRMn9BSUUpEACZCAjQnAX9u4cePkjz/+iFotI6oA7dy5U83IgeBmyVe+U6dOyYoVK+TQoUNmh3MfCZgSePDBB+XTTz+VAwcOSJ06dWTfvn2m+bmTBEiABEggdAKXLl2Szz//XOCgtkKFCqonfvXq1aEXHGQJEVOARo4cKSNGjJBNmzZJy5YtZf/+/SlW2Ve++fPny8svv6y0RczmQewnJhIIlkDFihUF1xSCqNauXVs2btwYbFE8jgRIgARIwAeBGzduyJo1a6RLly7KKS1CFR09elR57d++fbs0bdrUx5HWb46IEfTevXsFWt6cOXPU7JuPP/5YDUP07t07iYS+8sGj74wZM5QCVaxYMfm///s/QcRv2HTkzJkzSRn8QQKBEihRooQsXLhQmjRpIo8++qi6JjFlnokESIAESCA0Art27VI97TA3wKhNwYIFBfEZ0YFx++23q8Lhpy2aKSIK0J49e6RcuXKeqcf4+l60aNFNcvvKlzZtWpk2bZqayoyD4uPj5fz583L9+vUkZfz444+ebTly5JDcuXMn2R+uH5hCDUd7GTJkCFeRti1HdzmLFCmilCBMkX/66adl2LBh0qJFC9u2R6gVQ3vi+nXDtQtW6dKl015WyIhnpO5tChmR4OEd17HOyZDVaTIeOXJE2VfCxOC3334TvIdr1KghDRs2lAceeMCjAxhy4dpFsura9efuJCIKELS/7NmzGzKr6cgpGZ+a5YMfFyR0pyHWU82aNSVPnjyeMrHSunVrMWb2PPTQQzJp0qQk+8P9wyoFK9z1DLW8jBkzhlqErY9HO2JaPK4t9DYePnxY9Tb6u3lsLZSfysXGxvrJocfuuLg4weKGZDwjdZfV+12iu6xOkA9e9j/77DNlUoDeHiinjz/+uHI5gkkngTxrrHqXom5mKSIKELRZ794a2F2k1PXlLx9iOg0YMEASEhJUjKfkgs2ePdtzHjwMjh07ljxLWH7DnwwaGf5kdE+Q9ezZs7qLKbly5VKKdf78+WXw4MGCsWnMUNDtpYLrFjKhB1X3lDdvXuX4Ej3GOif0iOBLGgamOifICJMHTIbBO0TnBKUB70wEc7Zjwsfit99+q8xaMJqDjgfMqsXwVoMGDQT3HtK5c+fU4ksGfFzjHWPVuxrXTObMmX2dPjKeoAFjy5YtnkqcPHlSjQd6Nvy9YpYPmlyvXr2kUKFC0qNHD9Xlm/z44sWLJ9lk1WwxKGBIut+EkBGyukVOyNqhQwcpWrSoMrhv3LixjBo1Sl1zYKFDQq+WW9oU7YWXiO7XL9oUi+5yGsNebmhTKBh2lBMfhrDl3b17tyxfvlw9GzGpCcpPyZIlPY/IQK9FKO9Igeb3nCDAFX9DiRGZBVa5cmXZunWrmnYMQWF4ahib4qvFmIZslq9fv37KcAphDfwJFSAbZiOBFAlgVhi6dKEoPPnkkwLbMiYSIAEScCMBmASMHTtWHnnkEc9kkVtvvVXmzp0rP/zwg+Cd7K38OIlRRIbA0MXVpk0badWqlRpqwBc2vq6Rtm3bpoa1FixYoLrCUsq3Y8cOWbdunVpgXGWk999/XxlXG7/5nwTCReDuu+9WdkHNmzdXXzeIH4aZh0wkQAIkoDsBDJEvXrxY9fZg9AYdF/fff7907txZHnvssYDsepzAKCbxK/e/4zkRqC3GM2HH488oMdB8/qps1RAYxqHRHYuhPN2TMeauu5wYfsW1mdzeCT2U3bp1U867oMD37dtX2Vs4lQeGSrJmzeoK+zVMuz19+rT2tjGYQYOhBGMCiFOvTX/1hoyY+AJHuna1jfEnQ6D7YbcCpePKlSuBHhJyPpzvm2++kS+++ELQIYFnH2ZsY3irXr16qvMi5JMkKwC2wJgpZtW7GjZGsO/0lSLSA2ScHBewMeZnbEvpf6D5UjqW20ggnARwg6L7t2zZsiqaPF4yCKhq1ayFcNadZZEACZCAPwKbN29Ww1nw0IzZ2Zhh/dJLLynFB373dE4RVYB0BknZ9CYA42j4smrXrp36Spo8ebKUL19eb6EpHQmQgJYEYHeLKeswQcFQF3r669atq5See+65R0uZUxIqIkbQKZ2Y20jAaQQQQ2zJkiXqYQH/FvBOzkQCJEACTiAAk42pU6cqRee+++5TM1yh+EyZMkXQCwRnsG5SftBm7AFywpXLOtqGAGY/YHwcMx/glgGzIIYPH27qa8I2lWdFSIAEXEUAdjyYro4ZW1ByYBOH2dZvv/22ioEIe0A3JypAbm59yh4UAdgFwRs5XDnAWSKMBPG7VKlSQZXHg0iABEggXATgQ+i7775Txsxw5wG7xTJlykjbtm2Vk0JMDmD6LwEqQLwSSCBIAgjKi+nycN1Qq1YtGTJkiPzrX/8KsjQeRgIkQALBE8B0ddj1wJgZ0dYxXf3FF19UH2ilS5cOvmCNj6QCpHHjUjTrCdx5552ybNky6d69u3Tp0kVWr16tAqr6c/Vgfc14BhIgAd0J7N27VzlthYdmhKRAnDQ4ckWvdNWqVbUPGhtq+1IBCpUgj3c9ASg748ePFxhJw0/QwYMHBZ7LK1So4Ho2BEACJBBeAujdgR0ihrc2bdok8HUDJ63/+c9/lLdmqyKrh1cKe5RGBcge7cBaaEAAQ2KwCxo4cKCaaYFeoU6dOqk4TRqIRxFIgASiRABBRTEDFUoPIiMgICxmco0cOVKF63G7MXOwzUIFKFhyPI4EUiCAmDiTJk1S9kCYHbZq1So13RSzx5hIgARIIFAC8EwPpQd+ejC8hd/wPQafZHDDYURcD7Q85ruZAP0A3cyEW0ggJALoku7fv7989NFHsn//ftUtjQjKTCRAAiRgRgAR4L/++mtp3769wHAZ4Xfi4+Pl5Zdflu+//14pQ61bt6byYwYxFfvYA5QKWMxKAqkh8PDDD8tXX32l7IEGDx6sZme89dZbUqBAgdQUw7wkQAIaE0A4zg0bNqjnAz6Y8MwoXLiwmsFVp04dwUQLJmsIUAGyhitLJQFFAIH+4CNo4cKF0rt3b6lWrZoMGDCAkeV5fZCAywls3bpVTVvHs+HPP/9U8QUbNWqk7AbxnEBvUCSDobqxOagAubHVKXPECeBLDkaL8CDduXNn9bU3YsQIKVSoUMTrwhOSAAlEh8DOnTvVvY9ZXDBkjomJkccff1xFW8cs0rRp06qKYTuT9QSoAFnPmGcgAUUgT548giCqX3zxhUycOFHZBvXo0UOaN2/OmWK8RkhAUwK7d+9W09ZXrlwpP/30k8CT/BNPPKGUnurVqwunrUev4akARY89z+xSAnBUdv/998sbb7whr7/+uuoGR2/QHXfc4VIiFJsE9CKAaOvo5cGCiOuYGAE3GQhH8cgjjzB2oE2amwqQTRqC1XAXAURhhm0QPLZiWAxfhC+99JK88sorkiVLFnfBoLQkoAEBGDBD4UEPb+bMmVVvD2x5cF9jmIve4e3XyFSA7NcmrJGLCDz00ENq1seoUaPUTBD8Rs8QbIaYSIAE7E0APT2YtfXJJ58IYnGlT59ecA8//fTTMnXqVMmWLZu9BXB57agAufwCoPjRJxAbGys9e/YU2Aq89tprqpt8+vTpMmjQILn99tujX0HWgARIwENgz549yjEhenp++eUXgRdmTHBo0aKF6slFPC4mZxDQWgEyLOrD3RSw0MdiVfnhrm8o5blFTjCKtqylSpWS2bNnqy50xBJ79NFHpVu3btKyZUvBdPpwJDddu+CVJk0a7e9TyBjtazcc16a/MiAnUjTa9LffflP3JaasnzlzRo4dOybw89WmTRtLlB5DRt3fMUabWiUn7guzFJPohCnBLIOT9124cMGS6sOgDWDhoVP3BFnhgl33hJkZdvK7cenSJRVCA2E1wB8+hOABFl3soSbMOnGDfxHYUoHdtWvXQkVm6+PxEsHiBjlxn+LeuHHjhuVt8vPPP6vhrQ8//FAwfR09tfgo+de//qUMma0c3kqXLp3g1Yxnks4JcuIdY9W7GvzM2klrBejQoUOWXDswYIUCdPLkSUvKt1OhkBX+KnRPiKuDl+XZs2dtJSocpA0dOlTNFCtWrJgaInvyySeDriNelOiyx1es7qlgwYJy+vRp9cLUWVYotFCMrXqJ2IUdZIQriePHj8vVq1fDXi0oVRs3blThJhCD68CBA2poC88G3HNQfmDcHImE80Ch1f1DBQotereteldDucqVK5fPJtN6CMyn1NxBAg4hAEeJ77//vur9QXwxzBKbNm2adOnSRe69916HSMFqkoA9CUDBWLNmjQo6+uuvvyoFCC/kxx57THlsxzAXen6Y9CRABUjPdqVUmhG4++67VS/QN998o2KLYZZJtcQptphCX65cOc2kpTgkYB2Bc+fOqaGt5cuXy7Jly+T8+fMqPl/NmjXVZAR8WGBohkl/Amxl/duYEmpEwAiwOnfuXEFgVTy0n3vuOTVzrEyZMhpJSlFIIHwEMJQMhWfp0qWqxwfDS/DNAy/suIfKly+vzBrCd0aW5AQCVICc0EqsIwl4EYAdT8OGDaV+/fry0UcfqQc7vMvCTgFDY2XLlvXKzVUScB8BGBBjijp6eLDACeH69evlnnvuUb2mUHr+8Y9/uA8MJU5CgApQEhz8QQLOIQCj0KZNm6pZKTNnzlS2QrBdwAJFCF+1TCTgFgIXL16U7777TtnxwJ3EkSNHVNwtDBU/9dRTghmVuXPndgsOyhkAASpAAUBiFhKwMwHMdIATthdeeEF5pIXRdNeuXdXshw4dOggCLjKRgI4EMFNrxYoVavn+++/VTE707KCHBx8CiLmH+4OJBFIiQAUoJSrcRgIOJIDp0E2aNJFGjRrJ/PnzVY8QAjCWLl1a2rVrp4bMOKPFgQ3LKnsIYNbWt99+q4a1EF39999/l5IlSwq8L3fu3FkpPQwq7MHFFT8E6AfID6CUdtMPUEpUnL3Nrn6AQqWKOEXjxo1T9hCY3gsnbu3bt3fFVzH9AIV69djjeAQZXbVqlXz99dfK/w+uaTyDMbRVo0YNteC3Tol+gMLTmv78AFEBCoIzFaAgoNn8EF0VIAP79u3bZcKECapnCAaiCLaKGTCVKlUysmj3nwqQM5sUDh3hmweemD///HP5448/1Awt2LQ1btxY7rzzTrnrrruU92tnSui/1lSA/DMKJAcVoEAopTIPFaBUAnNAdt0VIKMJTpw4IZ9++qlMnjxZbrnlFuUlGcNm8CsED9E6JSpAzmhNhCvYvHmzrF69WuDn6scff1RekGHLg1lb6OlBhPX8+fNb6gnaTrSoAIWnNagAhYdjklKoACXBocUPtyhARigMhHGBDcWUKVPUSwcu6WvXrq0MqStXrqxFm1IBsm8zIrgobHkwawvGy3BGCNudfPnyqSCj8HcF2zXvZHUoDO9zRXudClB4WsCfAkQj6PBwZikk4CgCiL4MR3BYYGMxa9YsFYl+69atgunE8DP0zDPPSNGiRR0lFytrTwK7d+9Wig6GtqDwFC9eXDZs2KBcNWAGI3p40NsDQ34mEogUAdoABUGaPUBBQLP5IW7rAUopGCqCQWIIAkNk8JgbHx+vbISgDNWqVUvAyEmJPUDRaS3YmO3atUvWrVsna9eulWPHjimlB7VBLw+mpqOHBz2NqRl2ZQ9QdNrTyrMyGKqVdFk2CZBAwAQwPAafQVgQL2nRokVKIerdu7dgue+++5TxNJQhDFUwkQAIIDI7eg5/+OEHtcAD88GDB5XhMsKzPPjgg8pPFa4ffDwykYBdCLAHKIiWYA9QENBsfgh7gHw30NGjR+WLL76QhQsXqhdchQoV1AwcOJt74okn1HCG76Ojt4c9QNawhyH9Tz/9pIyVDx06pK4L9BYigCgC8yIsC2ZqValSRfnnCVct2AMULpL2KSfaPUBUgIK4FqgABQHN5odQAQqsgaAMwR/LZ5995gkqidk6GCbDNGVE0obhoR0SFaDQWwGOB+FCYdOmTbJv3z4Vdw7T0pHgfLBevXoCzlB20P54oVmVqABZRTZ65UZbAaIRdPTanmcmAccRwNAXos9jwTAZHNQhyvaSJUtk+PDh6gUIJQg2Hhj6wEyemJgYx8npxgojQjpsd+B/Z8uWLbJt2zY1PR1DXBgehZLzz3/+Uzp27KgMlkuUKMG2deOFopHM7AEKojHZAxQENJsfwh6g0BoIBtR4aUIhgiE1XqSnT59WNh+w/cACxQgKEV6mkUjsAfJNGTP9fv31V6XkwH4HyiyU2MuXL6uDChcuLNUS/e/cdtttgiFPDG1lyZLFd4ER2MMeoAhAjvAp2AMUYeA8HQmQQPgJQKnBEAgWRKKHX5f169crPy+YCYSXK/bB/wu8TxvL3XffrYK2hr9GLBEE4GRw7969snPnTqXw7NixQyk58AGF2VpIUHIQOBQBdOFhGcpOrly51D7+IQGdCXAITOfWpWwkECUCcXFxyhgWBrFIUIjg7Rc+YDZu3KjCciDkAXoXjh8/rl66ePnCeLZs2bLK62+Uqn7TaeExO0+ePKqef/3110377bABLNGTA59OUHLQA4cF/ncQAPfs2bOqBwc9cGA+ePBgNSUd09LRVkwk4EYCEVWA8BUCQ7qKFSuqB4ov4L7y4UEJN+n4Yrn99tt9Hc7tJEACNiOAl+wDDzygFlQNQ2boDcJLGwoRpk6jVwJ2KNgHA1vc41igEN16660CY+tChQpF1O4Eyg+GvNu0aSNjxoxR4UOipQRh9hUUHCx4jkKpBDv08Bw+fFi1eNWqVdWwFuxzoFDCmSWmoiNieqTZ2ewSZHVI4CYCEVOARo4cqW5M3Ih4kIwePVo91JLXyFc+zELo27ev8lw7duxYefHFF6VBgwbJD+dvEiABBxDAkBl6I7A8++yzqsYYrsEMIyhFsE/BAnsi9GjAxwwSZphBGYJNEWxCihQpIrBXgaICmx/YcoXLxshQfhCQE56Kc+TIoXpOsD2cShAUPig3R44cEcyyw9Ry9OhAQcR54FPnzz//VHJhOxJsJ+A5GXWCkoPnKjjAwzJiZjGRAAn4JxARBQhfKAh0N2fOHHUTf/zxxzJz5kzlXM27imb53n33XRk0aJDAZgAzUFq1aiVPPfUUXad7A+Q6CTiYAMJzoOcCi3eCYS4Uoz179qgFzwkY8cLGCAoCFCckzDbDAiUIs9XgaRj50JuEXhwsuXPnVsoDPBCjVwqGvVAmsEC5gi8bpOTKD7b16NFD2c0MGTIkSU8QZkmhjvCFg/NhgaKCHhpsR881hqBgFI4F6/CODKUH+6C4YHjQO2EWHXp1UA8YjyMPwpKgFwcKoLcjSoSPgDJoKEfe5XCdBEjAN4GIKEB4cMGwzvgywxAYvMwmT77yoVscX0EoAwlfOAgWh6+iYsWKeYpBTJlLly6p34YxpmdnGFeMhyQepronyOoGOfHyha0EXiS6J8jqtDaFIoAQCskTek+gBOFZgGcE1qE4YMG1i14UQ9mAYoIhIihO3gltDiUGCc8olFmgQAFZvHixspfxztuzZ0+lfLzyyitKOfHeh+caHAR6J0wbh90T6gIFDMbFUGbwv1SpUqos/MY+nBMLlBw83wJNhuKH61fnZLhTgEJrGHDrKi+uQ8joBjnRhlY9j+DHyixFRAFCly4uWiNly5ZNff0Yv43/vvKhWxhfasYNgPwoDxGtvRUgKEb4CkPCA8X4MlQbwvgHLxAkq8oPY1VDLgqyukFOvKDwsNFdVtxDeLjqJCeGvrBgSMg7oVcHD0BDVqwbPTDohUEPDXpNsODDCQt6bHr16qWeI+PGjZOJEyd6FymnTp2S9957T5U5dOhQpdig5wjKB55RWDd6ltDLhGcdltQoNDihUeckJ/fxA+2pW5umJCquXSirYKO7YgD5ISOUcTek1FzvqeHh7zqJiAKU/CWKHh08nJInX/mSb8dxKCP5Fw8eSN4JCpUVCcoVbkY8THVPkNUNctIPkH5XMp4x6PUxeoUhIYaLMKMLi6/UpEkT1bsze/ZslcVQgqD81KhRwzPDytfxybdD8fL3JZr8mNT8dssQGJQfPPOhuBo9dqnh5KS8UJjxjrPyurEDD9yjuH6tesfgg8QsRcQjGV4u6K0xEtbxxZY8+cqH7jF8peHrzEgoA93iTCRAAiQQbgIYSsND+dNPP5W2bduqnp9glJ9w14vlkQAJhI9ARBQgGCNiZseBAweUVouginCrjoSvM0zpRPKVD8MTGLtfsGCByvftt9+qIS70TjCRAAmQgBUEoASdOXNGPvroI2Wzg9AQ8K3DRAIkoAeBiAyBYQwcfjQwcwvGf5jN0LhxY0UQD5UBAwYo5cYsX/v27QUGiAjCiPFuTIlnIgESIAErCUAJYiIBEtCTQERjgRnTRf15HjXLh25p+L4IJFltA+Q9rBdIfZyYB71ssH3QPdEGSL8WxjA7nhfeNkD6SflfuybYx+g+DR4yGh65aQOkx5UMGyC8z616V8MGyCysS0R6gIymwgWMxV8yyxeo8uPvHNxPAiRAAiRAAiTgXgIRsQFyL15KTgIkQAIkQAIkYEcCVIDs2CqsEwmQAAmQAAmQgKUEqABZipeFkwAJkAAJkAAJ2JFARI2gIw0AsXasSHsTYxHBQyeiU+ueYETm7X9JV3kReBOzEN3gWwqOx3R3sIb7c8uWLSpulpkRpA7Xs+EJGo7zdE4wZt+5c6fcfvvtKTrS1Ul2uH7BNay7J2hMJNq/f3+SUFnhbEc86+CR3VfSWgHyJXSo2zt06KBmXEydOjXUoni8TQg89thjUq1aNXnttddsUiNWIxQCUNoROxABlBs2bBjTbDP3AAAK1klEQVRKUTzWJgR++eUXefbZZ5VzSgTFZnI+gblz50qfPn1UMOCUokNYLSGHwKwmzPJJgARIgARIgARsR4AKkO2ahBUiARIgARIgARKwmkDaNxKT1SfRrXzYFJQvX155tNZNNrfKkz9/fqlUqZLgP5PzCSBYcaFChVSEePoOc357QgLYc8DuEsNf0Rgu0YOivaTIkiWLlClTRsqWLasiPES6drQBijRxno8ESIAESIAESCDqBDgEFvUmYAVIgARIgARIgAQiTSCioTAiLVww5zt+/Lj8+OOPctttt6nplr7K8JUPs082btwo6IJHdPtAQn/4Oge3h4eAr7ZKXvrvv/8uBw4ckHvvvTdJF/umTZuSuAIoVaqUaXyZ5OXyd/gJYDr0vn37pGLFiio+VEpnwPRa72CmuXPnlpIlS6qsgV4TKZXLbdYQ8NemW7dulXPnziU5OWKDoU3Pnz8v2O+dcB8zRZ/A8uXLpXr16oKp/Skls3emv2sipfJSs402QF608KLr3LmzCs42YcIEiY2NVeOTXlnUqq988FPRvHlzNUV+zZo1smrVKnniiSeUMpS8DP6ODAFfbZX87F27dpWffvpJ+d149913lX0XbEjgW6VZs2Zy5swZga8gLMWKFaOtUHKAEfw9cuRI+fzzz5UvozFjxsj9998v2bNnv6kGb7/9tnz33XcCv11oN7QlpsYHek3cVCA3WEYgkDadPXu2rF+/3nMf4vf169flvvvuEzxvcd8ePXrUsx+uLZiiSwDT3IcPHy5NmjRJUQEye2cGck2ELF0Ck4dA06ZNEzZv3qx+Hz58OKF27doJidqpZ7+x4ivflClTEhIbzciW0KZNm4S1a9d6fnMl8gR8tZV3TRL9iyS88MILnk1fffVVQpcuXdTvXbt2JSQqQJ59XIkugT/++COhQYMGCYkvPlWRjz76KGHIkCEpVur5559PSOwlumlfINfETQdxg2UEUtOmRiUSe3sSnn766YTEDxO1KfGDNSHRL5uxm/+jTODq1asJvXv3Vu/ABx54ICE+Pj7FGvl6ZwZzTaR4Aj8baQP0twqJr8ODBw+qL0RswmygzJkzy59//plEyTTLhyEUdMkbCevbt283fvJ/hAmYtZV3Ve644w6ZOHGiZxN6exJvWPU7UQGSwoULy5dffinz58+XixcvevJxJfIE9uzZk8RrrK97DO0EL7PHjh2TDz/8UN3bqG2g10TkJXPvGQNtU4MQhkwSlV7p1auX8t6O7bhP4+LiZNasWbJhwwZJfO8Z2fk/CgTQM4chSPTQmiVf78zUXhNm5zDbRwXobzroOsWUPNjuGAnd6niIeiezfIm9Rp4bEscgtIJV4Ti868T1lAmYtZX3EQglYEyrxTEzZsyQxF4CleW3335T7vdhe4Dx6Oeee05gP8IUHQKHDh1KMtzl6x7bvXu3stvCyxAPYwxtL1q0SA2RBHKfR0c6d5410DY16KxYsUJdA1WqVDE2KQVo3bp1gtA906dPlx49enj2cSXyBNAOdevWTXHYy7s2vt6Zqb0mvMtMzXrKVkmpKUGTvGnTplUPSm9x8LUIOyDvZJYv+T4cb7xYvcvgemQIJG8PnDWlNjVqk9jtqr4qYcdlGFC2bt1asKA3EAlfn+gNShwyMw7j/wgSSN6mvu4x+Bb57LPPJGfOnKp2JUqUkA8++ED5BYJC5J3MrgnvfFy3hkCgbWqcfcGCBSokhvEb/9G28PeEj5k6depIvXr1VK8fem+Z7EvAV9v72h5uSdgD9DdRzBC5cOFCktk+6P1JHhzTLB9mJHj3GKV0fLgbkOX5JmDWVsmP2rFjhyTa/QjivCXafnl2YwgUSo+Rbr31VsHXCVN0COTNm/eme6xgwYI3Veb06dNy6tQpz3a025EjR5RCFMh97jmQK5YTCLRNURHM7MM9ibh9RkJgX8wIhPKDBIeJMGFA7wKTvQn4emem5poIRUIqQH/TwxS9qlWrCr4ukL799lv1sDS+IDGTBHYhZvkefPBBWbJkicqHYZLvv/9eKlSo8PcZ+C/SBMzaCrMP8NBEQlv17NlT+vXrJw8//HCSauI6GD9+vNoGu5JEA2k1pTNJJv6IGAG4lsB0Z7grQM/NwoULxRgK8W5T2HFBocU22IN88cUXqm3xcjS7zyMmCE/kIWDWprg3vYecMZuvdOnSSdyLwNXIO++8IxgCQ8LHDEwP4K2fyX4EvNvU1zvT7JoIp0T0BO1FEy9EvAjR/Yavib59+wp8viDVqlVLhg0bptyw+8qHB3L//v3VAxrHJ85CYSRqL77RWPXVVvDVNGDAAKXwjh07VhJnEyWx/0K4E0y1Pnv2rJrGCX8yMKjF1NpOnTp5vjajIZPbzwllZvTo0coXU9GiRVXEdyi73m0KRtOmTRPYi+C+hK3QwIEDJV++fErx9XWfu51ttOT31aYjRoxQyg5suJAwWQHt2b59+yRVhe827EucfaTu01dffVW5R0iSiT+iQgBKDu5D2AUhebep2TvT1zURTiGoAKVAE93ngcQP8pUPBrOw/cFDmckeBHy1VaC1Q+8PFGPjJg70OOazhgBedBiaxMwfs3Tjxg3lJA8KUPIU6jWRvDz+Do1AoG1qdhb0/KGtvSezmOXnPnsQ8PXODMc1YSYhFSAzOtxHAiRAAiRAAiSgJQHaAGnZrBSKBEiABEiABEjAjAAVIDM63EcCJEACJEACJKAlASpAWjYrhSIBEiABEiABEjAjQAXIjA73kQAJkAAJkAAJaEmACpCWzUqhSIAESIAESIAEzAhQATKjw30kQAKOILBlyxblX8QRlWUlSYAEbEGACpAtmoGVIAESCIXAzz//rBxWhlIGjyUBEnAXASpA7mpvSksCJEACJEACJJBIgAoQLwMSIAFHEYAH6NatW8uGDRvkmWeeUeFr4PEZCSERmjVrpiKCv/vuuyoOmCEcosAjrluDBg2kbt26Kn4UPM0ykQAJuJMAFSB3tjulJgHHEoDSMnnyZGncuLEKTYKQFoi9hzAIjRo1krvuukvKlCkjffr0STIs1qJFC0GMqJIlS8o999yjYvshxh+CpTKRAAm4jwCDVbmvzSkxCWhB4Nlnn5WhQ4cqWWbMmKGCZH788cdSsWJFtQ2BcL/++mul9KC3aPr06TJ//nzV+4MMUH4QSR7b6tevr47hHxIgAfcQYA+Qe9qakpKAVgSqVq2aRJ7Y2FgpX768ZxsUoT///FP93rRpk+oteuSRRzz70QtUoEABNZTm2cgVEiAB1xCgAuSapqagJKAXgdy5cycRKEuWLGoozNiIYTEjGZHfkcdIiBieL18+gW0QEwmQgPsI/O8J4T7ZKTEJkIBLCJQoUUKOHDkimzdv9kh86NAhgf+gChUqeLZxhQRIwD0EqAC5p60pKQm4lgDsfYoWLSp9+/aVXbt2ycGDB6VXr16qB+ihhx5yLRcKTgJuJkAFyM2tT9lJwCUEMmXKJAsXLlQ2QaVLlxb0CG3fvl1WrlwpBQsWdAkFikkCJOBNICZxCijngHoT4ToJkIDWBE6ePCmw/8mZM6fWclI4EiABcwJUgMz5cC8JkAAJkAAJkICGBDgEpmGjUiQSIAESIAESIAFzAlSAzPlwLwmQAAmQAAmQgIYEqABp2KgUiQRIgARIgARIwJwAFSBzPtxLAiRAAiRAAiSgIQEqQBo2KkUiARIgARIgARIwJ/D/VMp4ZbnqVR8AAAAASUVORK5CYII=)
Once we’ve identified the preferred \(\rho\) value, we can now apply the exponential SAVF with SAVF_score
to normalize our attributes based on our utility curve.
# using dplyr to add a new variable while preserving existing data
library(dplyr)
# here we are assuming we found the appropriate rho value for the y attribute using
# the same process as mentioned above
psc <- psc %>%
mutate(x_SAVF_score = SAVF_score(x_attribute, 1, 5, .653),
y_SAVF_score = SAVF_score(y_attribute, 1, 10, .70))
psc
## # A tibble: 200 x 5
## PSC x_attribute y_attribute x_SAVF_score y_SAVF_score
## <chr> <dbl> <dbl> <dbl> <dbl>
## 1 D233 3.01 4.84 0.789 0.934
## 2 F352 4.34 5.64 0.957 0.963
## 3 T713 3.37 4.30 0.850 0.902
## 4 K833 2.67 5.53 0.717 0.960
## 5 Q121 3.48 4.33 0.866 0.904
## 6 C791 3.32 7.32 0.842 0.990
## 7 Y207 3.48 5.42 0.866 0.956
## 8 W439 2.47 3.35 0.666 0.808
## 9 N290 1.66 4.02 0.378 0.881
## 10 C251 1.00 7.47 0 0.991
## # ... with 190 more rows
Now that we have the normalized x and y attribute utility scores we can proceed with plotting each PSC within the Kraljic matrix with kraljic_matrix
.
kraljic_matrix(psc, x_SAVF_score, y_SAVF_score)
![](data:image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAqAAAAHgCAYAAAB6jN80AAAEGWlDQ1BrQ0dDb2xvclNwYWNlR2VuZXJpY1JHQgAAOI2NVV1oHFUUPrtzZyMkzlNsNIV0qD8NJQ2TVjShtLp/3d02bpZJNtoi6GT27s6Yyc44M7v9oU9FUHwx6psUxL+3gCAo9Q/bPrQvlQol2tQgKD60+INQ6Ium65k7M5lpurHeZe58853vnnvuuWfvBei5qliWkRQBFpquLRcy4nOHj4g9K5CEh6AXBqFXUR0rXalMAjZPC3e1W99Dwntf2dXd/p+tt0YdFSBxH2Kz5qgLiI8B8KdVy3YBevqRHz/qWh72Yui3MUDEL3q44WPXw3M+fo1pZuQs4tOIBVVTaoiXEI/MxfhGDPsxsNZfoE1q66ro5aJim3XdoLFw72H+n23BaIXzbcOnz5mfPoTvYVz7KzUl5+FRxEuqkp9G/Ajia219thzg25abkRE/BpDc3pqvphHvRFys2weqvp+krbWKIX7nhDbzLOItiM8358pTwdirqpPFnMF2xLc1WvLyOwTAibpbmvHHcvttU57y5+XqNZrLe3lE/Pq8eUj2fXKfOe3pfOjzhJYtB/yll5SDFcSDiH+hRkH25+L+sdxKEAMZahrlSX8ukqMOWy/jXW2m6M9LDBc31B9LFuv6gVKg/0Szi3KAr1kGq1GMjU/aLbnq6/lRxc4XfJ98hTargX++DbMJBSiYMIe9Ck1YAxFkKEAG3xbYaKmDDgYyFK0UGYpfoWYXG+fAPPI6tJnNwb7ClP7IyF+D+bjOtCpkhz6CFrIa/I6sFtNl8auFXGMTP34sNwI/JhkgEtmDz14ySfaRcTIBInmKPE32kxyyE2Tv+thKbEVePDfW/byMM1Kmm0XdObS7oGD/MypMXFPXrCwOtoYjyyn7BV29/MZfsVzpLDdRtuIZnbpXzvlf+ev8MvYr/Gqk4H/kV/G3csdazLuyTMPsbFhzd1UabQbjFvDRmcWJxR3zcfHkVw9GfpbJmeev9F08WW8uDkaslwX6avlWGU6NRKz0g/SHtCy9J30o/ca9zX3Kfc19zn3BXQKRO8ud477hLnAfc1/G9mrzGlrfexZ5GLdn6ZZrrEohI2wVHhZywjbhUWEy8icMCGNCUdiBlq3r+xafL549HQ5jH+an+1y+LlYBifuxAvRN/lVVVOlwlCkdVm9NOL5BE4wkQ2SMlDZU97hX86EilU/lUmkQUztTE6mx1EEPh7OmdqBtAvv8HdWpbrJS6tJj3n0CWdM6busNzRV3S9KTYhqvNiqWmuroiKgYhshMjmhTh9ptWhsF7970j/SbMrsPE1suR5z7DMC+P/Hs+y7ijrQAlhyAgccjbhjPygfeBTjzhNqy28EdkUh8C+DU9+z2v/oyeH791OncxHOs5y2AtTc7nb/f73TWPkD/qwBnjX8BoJ98VQNcC+8AAEAASURBVHgB7J0HuBRF1oYPIK6gomJABRRUMGcM6KJgwIA5oasoZoxrBHVXxbSmVTAnVMw5KyqsYM4oChgIiqKYEBVBERB+3vKve2v69syduZNnvvM8907H6uq3u6tOnTp1qtH8BWISERABERABERABERABESgQgcYFuo4uIwIiIAIiIAIiIAIiIAKOgBRQvQgiIAIiIAIiIAIiIAIFJSAFtKC4dTEREAEREAEREAEREAEpoHoHREAEREAEREAEREAECkpACmhBcetiIiACIiACIiACIiACUkD1DoiACIiACIiACIiACBSUwEIFvVoRLzZt2rSCXL1x48a28MIL2x9//GGKcFWLHCazZ8+u3VDlS/49mTVrVpWTSLz9pk2b2pw5cxI3VvHa6NGjbcSIEXbiiSdWMYW6t673JJHJQgstZE2aNHH1TuKe6l1r1KiRYzJ37tzqhRC5c74b6h70k0II9f5iiy2W9FJVo4AWCjgPeMkll7SZM2eaXvza96558+b266+/1m6o8qVFFlnEPJN58+ZVOY3a24fJjBkzajdU+dI777xj5513nh199NFVTqL29qlA+X70ntQyod6ByfTp02s3VvkSSjl/har7ywE37wjvSqm8J+qCL4e3RnkUAREQAREQAREQgQoiIAW0gh6mbkUEREAEREAEREAEyoGAFNByeErKowiIgAiIgAiIgAhUEAEpoBX0MHUrIiACIiACIiACIlAOBKSAlsNTUh5FQAREQAREQAREoIIISAGtoIepWxEBERABERABERCBciAgBbQcnpLyKAIiIAIiIAIiIAIVREAKaAU9TN2KCIiACIiACIiACJQDASmg5fCUlEcREAEREAEREAERqCACUkAr6GHqVkRABERABERABESgHAhIAS2Hp6Q8ioAIiIAIiIAIiEAFEZACWkEPU7ciAiIgAiIgAiIgAuVAQApoOTwl5VEEREAEREAEREAEKoiAFNAKepi6FREQAREQAREQAREoBwJFVUBnzJhhr732WkpOn376qQ0dOtSmTp2acNwff/zhzn399ddtzpw5Cfu0IgIiIAIiIAIiIAIi8BeB+fPn2xtvvGEjRoyw33//vSSwLFSsXMyaNcv69+9vjRs3ti233DI2GwMGDLCxY8dahw4d7LrrrrNrrrnGVlppJQfvsMMOs7XXXtumTJliDz30kF155ZXWqFGj2HS0sTwJvPPOO/btt9/aKqus4p51qrv43//+Zxy/9NJL2+GHH25NmjRJdbj2lTmBP//8084880x74oknjMboLrvs4soHlQFl/mCVfREQgZwToIzce++97fPPPzcU0Z9//tnVl61bt875tTJJsCgK6GeffWZnnXWWLbHEEu4vLsOTJk2yV155xR5++GGnpN5///12zz33uErngQcesM0228xOOukkd+rRRx9tb731lm2++eZxSWlbGRI48cQT7bnnnnPPfvr06e5Z9+3bN/ZOTj/9dNcImT17ti288MKuYTNhwgRr3rx57PGZbPzuu+9cPjgHJQcFtxAyb948p1ihUC2yyCJZXZLCB0Xtt99+s6222sop9FklWAIn77777vb++++7wpTsPPPMM9aiRQv7z3/+UwK5UxZEQAREoHQIbL311vb1118bDXcve+21l7388sv2t7/9zW8q+G9RFFAqwn/961/2448/2pAhQ2JvGiV1vfXWcwoIB2y00UaukmEZ5aJ79+4sOmHfRx99lKCAnnDCCfbhhx+6/csuu6yhtBZSWrZsmdXlUHxgs9BCC9mee+5piy22WFbpxZ3866+/2g8//GDwWXzxxWsOuemmm+yGG25w6zQU9ttvv5p9fmH06NH22GOPuZeXBsCSSy7pd8X+YulebrnlYvdFN955552u4RFux/q9ww472Pbbbx9uthdffNE1TPxGr4T+97//tWuvvdZvbtAv79SGG27oFFlajVjcUHrWXXfdBqUXd9IyyyxTZ/OXX35pu+22m3vP6Smg4dWzZ886x6Wzga6Wzp07uxbv3LlzXcPv6aefth133DGd0wt+TDrvyffff5+gfJJJlGy+cd6TZs2aFTzf+bqgrxzS/XbylY9SS5eGmWdTannLJj+UX7zLNKQzuT948Kf3JJE+THJhiEhMtfzWosond0Ddj57RqVOnvN0Q9VcqKYoCus4667g8oTwkk2+++SbBOop1A4UVoVuWdS8sf/XVV37V/W6xxRauu54V9hfK54EKlBeeQgQrVkMExQcLr1c6Dz30UPv444+tTZs2RgH1wQcfuMIJBT0UlMY77rjDKa2XXXaZwSCZYF3s06ePsyBNmzbNKTkoPf369bPrr7++5jRcHbBG8yHfeuuthhKz3Xbb2aBBg1w3N13dNCZQ9tu3b19zXnQBK159L6M/B5eKqNByQ8F49NFH7aeffrIuXboYeeO6KBzh84XRm2++adwXaXHdbbbZxlZbbbVosknXScPzpcHkZdddd7VRo0ZlVDn4c8NfuJFv8oZy64VGAS4HofD8F110Udt2223DzWktY/Gk8OG5efnHP/7hul9WXHFFv6lkftN5T2DEt8FvKPiCz5w5023ifRk3bpxrwK6++urhYWW17C0W4ftdVjeQh8xSFqGgUcZWkrz33nt24IEHGj0+/GGAoJxLR+CBsULvSS0t6mLKWY0RsQTLpydE3YMCms93pj4dqCgKqAeQ6pcXxxe+HEcF6i0bqfb5NA844AC/6H5RaAshTZs2dQooFWFY6XNtFCesi1ScWKDiChdeCpRPhEFaXjCX33vvvbbHHnu4wgmliMoaixy/dFnjruCF7mL8YvH7iAoV87777puwmYIPBS9UPjmA/Pz73/9OUKZRPhGej39G+++/v+GHmUwoHKMKQ7JjaTBEnzHnDx48uOYU7vXSSy+18847r46/J+e2atXKKZA8B/J46qmn2oMPPmh///vfa9JItcCgN6zC0TxTMaCQZ6u88cx4n3nG4Ud63333ufcnVHpRhrHobrrppqmyHLuPnoToe0jBjMsKDYlCCI3DY445xll0uTYW2GSNlXTeE55Lx44djQrbK++chxUelpMnT7Z99tnH+OYpXLEk+e+kEPeby2v4Zxd9D3N5jXJLi3co7tsst/sI88tYBrpJQ6Gs51vxBptwX3SZBhnlnt6TWjKUCZSzYT1au7e6lmi0+bLS3znb0ilv/fEN+a3Pil/UUfCpbohuYSxYXlheYYUV3CrdltF92SoE/jr5+sXpFwXixhtvtNtvv911qTKwKipU1qF11++fOHGi6w7+4osvnCJL65/C5qijjnKVbah8cg6tPrrP4wRFlpcvKlgLw654vz9UkPy26C/5y5Xg00kl4/PIsq+Iw2vQFYs1fNVVV63ZzAdFQYybBvth5JW5I488sk40hZoTIwtYsb1yHe5CAY17PuEx2SzHXZP0UCQbInGuILyLhfJlpfDnvUdZ/OWXX9y727VrV+ffzfNpqPAOU6BS8aJ44obz9ttvu21rrbWWc8mhwUcDinfg2GOPTXopmKOskr9Uwv6w3El1bCXvGz9+vGu8MDgU6zIDGyTZEcDNhnIrFBqed999d7hJyyLQIAJR5ZNE2IbBrJhScgoo1iUqjU022cTGjBnjrBkoH0899VSNBQjL4bPPPuuOw1JFKCZ89UpZsDhijaFQ8TJw4ECjMA8F5SY8xu9jW1Q5RDHE6khohTjheiiql19+uR1xxBF2xRVXOAsRBZ1X7sLzcIloaGsxl90cyy+/vPP3xcpF1AMqOpTQqPBe4JrAu9C/f3/r1q2bU8bfffdd1+0cVZx5r4iqkI6ggF5wwQV1DsW1wbtG8E5iDa4vlJhPhPzQwPCuJH57+IuPq1eYw+3461x99dXhprSWyW9U+FYK9b1g8aeQCwtA3hUs7htssIGdccYZ0eyltc63gNWIZ88ApMcff9xZO1CGoj5fcOfdjvuucE9AIcb6tOaaa9rFF19c5/ooqCiwlEkouvgA8y5Vo6CAwwo3IXoXUO757vBbljScAGVZ+I34lDIpVylXsP7HNdZ9evqtTgIYZqJCPZbJ+xU9PxfrdWv1XKSaRRp01RH7E0UM6x6KU69evVxBh+8aQtchPnF0szMAhu62ZF16WWQl41MplPG7ZHQ/yhO+ml4ouKMKEX47KNyh4EQOA+9uwD6OS2bNZH9cweXPgwvd6vgTXXXVVU6ho1s+TgFFmU+WFuklE17uJ598MtnujLajaOHriMsB7wHWM3wgo9YBEuUe/HPnXcGKgNsBFvI4/zC2YcFMV3i/uC/eNxRDrG4HHXSQOx2f0lNOOcUuuugi586QbIS+vxaVA4OoOA8FhlBRcYLrAL62UaGgYFAVjYiNN97YKW9Y0+uT2267zb0/4XFY0VEcCiE0aOIqRL+NAWfksaGC9du/A6TBtxLXWEFhjL7bKPoolVjvfcOLQUy4QYRC45Hvh2NQYvmWDznkkPCQmmUaI4SPo5cj+r3XHFTGCzSCot8iCno672IZ33bes85A07j3hfeM75VBiCj6lDPR95jMnX/++dauXTtXvtBop3EmEQFPgMZ+VCjPMhkXET0/F+t11eJcpJpmGlge+AsFi4YX/BiptFEcvNWJfSg8WKeoRFHU4rR7n0ahflGcoj51O+20k7OqPP/880a8ragfKl2Eca4DdEGjwN58882uQj3++OOdUkYA2WTWzrj7JE4qvm9eGaPSxyemoSOqUfqp4PlFISa0D9am4447zuj2zFao3Ndff/2EZHAtWHnllY2uZBymQ0HRQFmPE+4z6lzNe0LjIBNhhCBKUii4TnzyySfhJjfYiedNJREVlMfoyHkiCOC/ykCwqHC/NMCiyjIFBgqoF6ybKFEowskEhShq+aOiw0ocl9dk6aS7nXvFqol1mPft4IMPjq0ww/Tgy4CyXAgD9egheeGFF2rum3eBRlfUH4kQJHG+hCjE3oec+yG+bOgagQLA4Dcq+fD7pTFyyy23uGNR0hic58OBcSwNKhqYfJflKijyIQvug/Xot1au91esfK+xxhquAU3PwFJLLeW+Hb5vlEnKVhrbvHcYLPimX3rppZp6D994yqTwGVCv4vYS1pvFujddt/gEqCO8Ac/nhjI32qvq9xXqt3GhLtTQ69B9l+wjAl4pKJ/cG4NE4iwvdBHTasWygnjrAcdiTfOVEYUH1lxaJFh0uG+6FlFU/OjnuJavSzTmH4oiCoC3NPlDqECwxkUrEb8/1S9dbgxIovDDQR4rDwVfJson90nDIZovrktFH+dfSQxYCl1GpaNEwAZOKGNxzEmLrtKocE2687MVFJeooOSh1MUJjYC4+6J7Ok5ofER9NOPec54lVtGw4ommF/ftcF5UGfPnwRl2jMRHEcb6konQA8BgNpRlrkNUBqIrpJI4a3yq4+vbR8MNKzHvCdzx/cUNJSp8T/57DPdF300U2KjQqAu/R54x3wLvAd8Wv1yfRgbWUxQCGpJY0vnOCyEovSj3fD+p3pFM8sJ3Hydxgx3jjtO25ARoEOKSxftCWUisW2Jde+WTM3nv8J3mG/NCj0n0+VJevPrqq/4Q/VY5Ad9zF2KgbIgaxcL9hVgueQW0EBBycQ2Us7guFNLGGoRlhi56LCtYdukWZ0Q2LRP8znDmp+DBokUhg2WPEZChRAsZ9sUpYFSqVIBUCnGVZ5hmJssUalghQ/eATM7HTw8LJ/6HtOxpzYfCvcQpWigEWFrhARvuD8sShTMWgzjxo/m5f58mjQA/kC3unHS34aPq0/TnoGxElUa/jwokejz7sK7FCcfCCkGBwmpLQyVOmYRNsveO8wmrFSqbsENxigvRhf8k3c0M7EJ5JH+4DEQtz6Q7fPhwl8ewACM2LMeG+eF5obDjWhAnNJROO+20uF0N3sY9PvLII055xlJN/NY4wVIafQa8L+GAJZ4r32soPE/ex3AWEXyLo76npM2940aEQk6PB0LDMt+DS7B+Yb2np+jss892A/XinmN4X+ksM9mH942mVwIjAOVXutEl0rlGNR9D75LvAYEDPWthQ4dtlO0MJPQSft9+G99gXN3g9+u3ugiEZbK/c+qOTHpU/Xm5/JUCmiOaqSwAVOYIo3XpVsFCg7JJsHysEyhLvAyhVZLKiy69UAgIH7UWxb1YVApUvPhO0uXnCyIqSAq4aBpcw2+jUkmlYMYpUmEeky1TIVKxUxH7QTZYg/A79YLVCmXL54XtKAS+e/bcc891yqfnyX5GPg8bNozFBCGKAr59dAcTgmno0KGxIan8SaSJBRMlqj6hQud5ea4oKVQK8I4TFG6UU388x3COv6+4c8g/Cjr+iLghoHxHlWfSo3LimSYTFMpLLrnEXY/nuvPOO7uGUNzxWPGjwjtJ+CovvG/EQuVZotjxzJixDIFhXJcODSc/sYFPh1/eJVj26NEj3FywZRR6byXi2+BdI5wZzELBesp9otjCmkE4WKhC4XmFz5d9rPMu86xDgWE0akW4P9tllG+vNNMw5g9J9b5lck38l/meBy/o+n1xweCuZP6wNLwpF+FZ7Iouk/srpWPp/aKRFgp1A77LXngevLuh4L5DDGCJCKQiEHXzSnVsPvYV1Qc0HzdUrDTpPqFiptANhdYpViQqLy8UxuGgnVDx9MfwGx0ogoKDkkS3PH5CnEdhFLWMogigmFD5EZAdJQbrFt2qFEpYMVCgQuF4lDm67bDwMVobay3pe+GcaOXs99X3e+GFF9Y5hIoYa5CvwCho8QHGH4plKnB8JFHUESzIUVYofsnCwKBwMTipPuGe6VqkooY5SjuRFaIFv0+HQU7eAsuoUyxN+PuFirM/ll8ULRTIMCA6x9IYoYJu27ZteHjNMtcPR6ujCLKOks77RGOBhkx9gs9vOn6/oWLv04Q3VkwvWOZR0uHuhedH1z3xClHkvKWP/ShfuBTwzvHe0yVNA4RBF3QxRitOn2b0lwYVkydwPIMSUynd0XNTrWOZ5RnilkLe46zMPD++axpP8IjzI8ZXne/Lz77G8+EZ43fF4L/wOyI/cS4ZqfKZ7j56BVBA44SoIrkSygj+EO6N8iP8XnANCadFpdzq379/zbeeq3xUejo8T8LjUR5Tl1Bm0kgKYwJTTjMwDoMFZR4uXAzITPfbqnSGur+/6qBonQ+XYk9f3mhBwVE7DUsFP6mwqzAft8mIdwahRAXrDr5+oXWE0dTnnHNOjSUweg7rFDZUanGjS/ETosJEASGgfZzi4Ac/xKWNkoUFa+TIkU45oiuSwis6nSaWRZQLKmUqXQZnRAfTxKUft613797OChnuo4BkMBNdlFGhi4kKDaXAC5X5iwssLlEhFBKWvYYI7KIzD/GsULQZzZwroZKmay0qXJvBZVErWfQ4v44ySGVOHlF80zkP5RDrMc8di0qoGPh0+WXgDspdVMgflk0qt64LfBnpFgyFdwMrKwolFSWVI+8MiiZKGF3VKMq8r/UJDatQgeV4zuUdQRFEsYMBFsiwC7y+dAu1Hz9QOGIR5Rvnm6KQ555QHrykm38UCQYl0kiqT7zfYKrj0kkn1fnhPp4vDUQs4DwTlrlnvt04v3C+ZRT08JsO00t3mXef97G+uK3pplcOx/ENoGRS/kYHapJ/vjfeL74/3rmwvsnH/TEOwE9IwiDUYisycfdIeUEdQ8Ox2sWXoSEHogc1JLRfmEZ9y+gxqcp9WUDrI5jm/mTxDKn0o4UBikjUWkbFinWFwoNfZkOKdlviF8goWwRLFB893S8oht4KygdHqzlVIU/hfdddd9V7Z3SR042NtQvlI7Rw1Hty5AAskXSDh4Ly57sKw+0sR5VhlO445ROrYkOVT65DhYgCFVZmFORYLHOpgKK0YbXz3aFcG8EvD+UEq2s6wge95ZZbpnOoOwalBAuJb/1iDaeSio7s52CUUyy5NEYoNGibskxjhTiP5D2uix1FxG/H1xnrcehjioWRdWZfirMeproZGlq+gcI9+PvgfcJ6XmpCZcxfKPCgIco7gPWcQj8fyjPuBHz/cQ1SGiq+7Ajzls0yfsk0rLxiTZc8DQh6E7DwxnXvUU6lKpuyyU8ln5tOGYcSmqqyzxUfemKoY7zQ4MIP2Pdk+e36LR0CfKeUAfwiKOfUJcUWKaA5egIomnESKjZ+PwoEyiMfLoKCioJHBcI0mRQk0bhd+ImG3dh0w9D1jMKA8sJoYyofKmumxcyVkC/+kgnKKQMweJnjrB7+PCpg/P0YwIASwvEoQb4bj+NgCC+sR9GPw8/eFDXYR6ev89dL9xdmceI/1Lh9DdmGguaVp/B8lLpsKmSUG9w5UG5xVYgq7lQK4XWxVKEIopiGfmQ+TyhPWH9R/FCWotYWnhGNJ/8caDihbOBm4iUazJ1jeU8YeBNVzvw5yX5pAPEukO9Q0p1QIDynGMv4euLagssBz4eCPx+CBZqelignrsX3hvLJQCGs2TR4sJ4zELChQsONcssrn6SD4kseaBzwvkcVUBoqmTZAGpo/nZcfAjzDUPn0V6FcJ3azb4j67fotDQLRcIXUCRi0fOSdYuUyP6Vhse6miNelayRuukQGL0QFpYPRsb4ipxDHIoIiGWcJ4/hQ+SQ9CnuCrqNgEGaGv0ILSgrdrlRoWDawkI4aNSqp7xEfAb6IKJkci3KBXyeKKwo0hRgVNBUXyjkz03iJWozZHrfNH5/uL6Gd8F1EIfN+jSg8KPa5FApmBkPxzEILFV3jNDgaIgxm69+/vzsVRRCLOd3t+IB58YqiX+eXY+MaRv4Y/x7SIEJhiB7ruZM21vroKPa4xhgKvbfS++uk88t5cUqVf1bppFGsYxg0yHtF/rE+MJgJS36u/Ff9fdEzENeVxnPmO8Nlg2vS5eb9QPnGeF/4fhsiPHcab9FnyjrfDw1GGoc0rlBU+cOlJ18KeEPuodzP4V2iUU85TKgzH50gn/eFAkp5Fe3W9uW2FNB80m942qH106fin5lfL8avRsHniHoyK1ac9ZB4gCidoXLAlID4acQJCmhcpcVLFVfZx6WR621UQF7pRgFFqaJQ4t5SCV1E3CtB+1FI+aUSZEQ1hZu3mtAdTDggLyiu3G8o8MtFtw/d0ii7VNZYECnUfbdveL1sl2FDpY/1CRcLYvlFW6bpXoNudK98cg7PA4laGBl0hiISCj56UQt7uN8vo2hGz2Vf9N1lFhYaE14YWOWVVL+N/HXv3t2vpv3LM4+zUkct5GknWKADmXwCBd4rzyjSvF9R63AusoNVM05wh/DKJ76Z+HzzfflvjF4UfMUbInS/R63tPBP8yRHi7WKlpuHMH5b6ZIPtGnL9aj8HX14GvmLIgDPvVVyPRq450SDFzSIqvFPJwtBFj9V64QnENQwwLIQDYwufqwW9v8W4aCVeM6occY9U3rT8o4Ly4BUGvw+TeKhw+e38orSFXdV+HwpfnMXU78/nLxVX1HKHYsLc9KkEtwEsQ7z8KK4IVqKooLhTiXvhQyFkFUKXL930dG+G1j5/bKa/tAQZfT9pQdgjLLK5ClcTlw8GltFlzvXg0FDBJzPO3yu0wjPzDv54vGsocRRCvKdwo3u9PqFCi1P+ouehWHnLGvtQQPE7RaiseF64kGBtzlQYpBWnbEbfvUzTzffxBPCPlglYbXm/ci0oglFGlD24+nhlgbitXhn21+e5ESWjIcK5PpIHz4IGMg2McFpVro07EO953LvakOvqnL8I0PCmvA2FRmBcSLrwmGyXeaf9+AHKBm9godxPp6zI9vo6v2EEMGJFhXIZY1AxRV3wOaJPgYAlLfQdpOKPs9BRsePrGR6LBTGZDyUKEl1aWM0o7FFq6erCwhKt5HJ0O/Umw3WjVi5Oqq9rFGsNlVd9x5FWVHnHbxYFy1uEGdRBoYuSEpcX0qhUwboVvj/+Pv37QIgnRqn6dQaU8cdgIBozKPM0AHARCUO6+HT45TlRsfBeUrlgcabQio6CpzFBgyAUYoriC0ijilmrwikrw+PqW0ZRJoxR7wVRFPgO/J/3n67v/GLt5/nAL3xGKIXMXZ9rwVqPOwblDQ1ZvgWWce/wEud7ybHZKPJYvBhgxjeIIiILp6ed/99kPV90x+dbCKtGg5NBgJQJNDziDCS5zgdRAOidovFNY5ael7gemlxftxLSo/yONkApI4pdbyoMUw7fLgYChL5Y+BFGu0S5HMojFREVFJUAlSpTZUX9PKNZQ/HyLdyuXbvW6QKLHp/vdeKSolB6ZZKXHOsh03VGBWsICs/AgQNd/Mvo/rh1Crk4ywkfDsoNCjhWALhgWYp2CcalWSrbYAWT6MxBmeSPgSVeyfDWdrrkYEF0hFAoaAjpg18eXXd04fHc+KMrNlkUB9KgkqHwJ89YiVFkvfDuEpv0iSee8Juy+vXvSTQRrLm4qJAHrGoclw+BB1xRrBiA5S25DbkWfnl0gSO+0RVnGU2VdrphmHBf4XukdwV/cnyNUYK9MGiIkdTeasZzQ8hPsSshn8d0f2mYYs2P+iane34lHMcMesR7DRs43BeWbuIoV5pgoMHQwHtLnUl5Rz1Aj1rU+u/vnWMpL6L+qn5/Nf32XzBWgHEWXgn133y+LaA8m7g63LOXAupJZPmLfxWB6KNCN3Jc7EwqgsGDBzulDJ9AP5qbF4QC1luuoumV0joFABU0XehYQPBn9EHjySeKC/PFo6S2a9fO+Xn6wUbR+8CVgDmOscigXDBiOtm87YwoZu5tr/iSFoUuynm5tIhzoYBy31Q4jz76qKuQaeygdPAc4hRCGjl0lfLe+YKINCgkCK2CWwC/NJDouseK6QsqjvOCBZSRsCgARDdoqB+rTy/8TaaAhsfka5lvEn48Gz9QDCUULg0V3mP8H7EAwyxTi2O6Cmg6+WPQCj0y3BsNWB+4PJ1zS+kYKaC1Rgy+Xb5RymLCxjESvRIFYw5d/yifXqhzGNhJmLg4kQJaS4W6GKOEn8xjo402cgpp3NiS2rOyX6pPAVUXfPaMXQpxcztTMDBrUZwCSiEa9TWkAGG+clq1dJl5xS5HWXTJ4PNFYGuUB17CW2+9NVZpw0UAx3acy/HpIwh8VFD2UFiSCUHysVyhKFIYcC1mwqESjrZKUTapqFF+6OZNpYAzDWC05U9XL3kOR84ny1clbSf8URgCiXvDEuwtBP5e4Y/VyAcN99v55T3lnYCfF5RaCo+4oPV0t6MYVZowSh1uXvnk/lDasDTxDTREUPr5KwXx31gp5EV5yI4AyhfWKwYyUkYzaLNz586uEZ9dyqV5NhPJhMonuaSuwGghqZ8ADRT+/GAk6lqMEPlWQOvLWd0RMvWdof2xBOhii5Nk26PH0jWN8knlx4uCgkil57vMosc3ZB1lkBiP+GwxB/uLC8K3MHtT9BoMMGJ0OtZbpk8kzE6/fv0yuiQtrXDKRt9tQgxKFEwUIi8oQFdccYUL2YJfWSrlk3MofKMCtzDN6P5qWqdLPbQEwxf+J598sjH1JI2fUNgXKp/so3CickvmaxaeXynLuC7w7YVC13ayqV7D47RcHAI0arH6Yd0phP9jce4y/qp817ij4I4Ujdcbf0b5bmVAXVz5nsx/vXzvND85R5dg9irKc1+m891Elfr8XD15qok1UfLjtKceAnHxPjF7072ejhCeJ7S8UBHin0VXcyj4O9KljSWL9DMRYoWGFSyWSRy6w9HmpEcXd/TFxJKbSfBvLJJ0ZYbCtfFRI+9YhbHU4ddD2pkExcbXLUwbhYr1ZF32YR6qYXmFFVZwo5vbLXB7wLUBywjWdCzPWDRpcHgllAYSzyGuJczzir4HlcyPwVLRBiOcMnk3K5lPqd0b7j/0qNCrQ4OXMiXakKIBgT8v5aakfAl0XeAyEi2L+DYbElmjfCk0POdMFR66rJES1uPo99LwKzTsTCmgDeNW5ywGxESFFiqDQrygfDH1JCGF+KN7z0tc6w5FIVQYKUgZCU88SZQwBhtEu7J9enG/WD6jwkftW0R+X9QiynaskgyYSVdQBr2S48+hcqfAwILJCEosTnDLtBWLNdaHMKKbmFGYdMvnQ2Dz1FNPuZAzmbDOR14ySZNRqXSzMDEAYZf81I+MVP7kk0+chZtYoPhvwg7XBd5XLyzzHuRrsI+/Tin94k/m3UXIF40alE8GWTGIJ1qAl1Leqy0vTLiARccrJb4xjpXfCz08lC2EPqM8ija0/XH6LX0C9A5GhfrloYceim7WegyBOP2C+ixue8zpedtU2w+at0tUR8IEoqfS9gUhd003qLfUochEFS26uRlEwoh4usYZfRueTze8DxiOdRTlMxQ+wD59+rgBO+H2uGUGUkTzx3FYCMJ5u9mGkoiVMlREGcFO+I10hS4TRgH72J0onfif5CoQNxEHCMPBPdXXZZ9unqPH4XcEG5RcngvPEBeCcg83gwsEA5FCwYeZgVw8IwolFC8U12oSvmEaeYwg96FesK4x0IpvDV87eiRwY5AUlwCN4bhZunwsZdyIon7rNNqxlMpqVtxn15Cr+4ZGeC71U3QsQLjfL2PoYYpYGpC8E4TzqzbBXzYqMPU+odF9hVqXBTRHpOnejrYmeMDMtYqgXEYVJfYT4xBhphI/kwUKAkop1ivfJYj/ZjSWHx8gimI6gvIUN1sTPpdhuBbSuvbaa53y6a/NtnYLunMztYZRkTMKHisboZmozEPfRNLNRshflGk26YXnYnnGrQJfSBQP+CH4XMUVhuG5xVimgMmmm5F3jtBMzA+M4knIo7hu+WLcG9ck/iuVCFEU4grTXOWL95MBWVhcsCDTQMRSwDuAEOkidJXJ1XWVjjnfdKJoMDjz6aefTomE2LRR5YPyl3IKISYzjdOo4NcsKT8C0cYEd0D9x/SyqYQGI4Ye3gfKNfweialdbYIRJSrU59GYztFj8r0uBTRHhFEYsTJSCFJx08VOF5CfnoxKM6q4YFXzSgMWFip/LGx0+eLnGc5yRJrR88k6hTB/9XUPYn0NQ+/420bR8lZXBlsQKoYubkLwhGliGUJB9oqYP7++X7q/CB5M3DpvDa7vnFLYT9zLOIWdD7bURl7i18nUiHSj48eIVbuhQhrR7viGppWr8+hq/fvf/26XXnqps3rzrRXiGdC4i34zfK80DCW5JYB7ENEciL6AlZKBNTRgkwnW+rPOOsvtpszlWyXeoI/OgPIZVUBZz2UDOFnetD33BOiJok5CeM4oTyiVjCFIJYQ3pH70dRzH9u/fv+iKV6o852NfHCd6Nb1rVj6umU6aUkDToZTmMbTK6bbFYkLlFXZZE5Io/Ah8ktHwLnTv4q8UtaaiWBAAPFTisP6h4KIwtFvQ8n/77bd9snV+2e+V4XAnrUgUZyqArl27Op8arF+MfA8FRRXLTzjVXri/0pap0GATFZ5tKVkGL7jgAjfjEc+GBgoKE638uLxH7yXX60wcgI8zriJYsnKRB0Y2+2Dw3CMNORQJehzyLXHPmTzEWRPynZdKT5/3Jqoo3Hjjjc7ynezesZQyHahvNGOx9uVjz54965ShlL90w0vKkwBWUMYNYKChN83Hzk51N3HfMD1nxbb8pcpzPvbRA4ugM2DsQpg9LU4ncDsL9E8KaIFA051LnEGEFhwjkrE0MjtJunLdddc5v0paf4x0psCmgvYWL0avp3LKjiq1XBclgVHodFNEK4Bovnx3dHR7Ja5TcMVZbdkWdYUo5v0TnBmlyAsNBazV4dzsfl8+f/G9w9rNgCauTxcq71S2SigNo6jrB4oEIb7yLSjRobJJwc39MChJklsCcY1zFAUa9KmEKCN8kzRIwh4LGvG+LMTPjdi1dMG2b98+VXLaV+IEiNjBM0zXdzHOwkfvVrX5ccMM5Z0Z7/r27WtDhw51xoJiP24NQirgEzjwwAPdNIgMcGCUMlbJTATLD/FCEeJm4j8adstTiP/zn/90I+fxVYwKyi4WzPAcLHrM9x3taoyeyzrpR4Oexx1XKduINrDyyis7f0C67rC4MFislCTOBxYlNFvFL9N7ZDBcqETwPhEomxmZaBg1VGihh64gPh0aS/kW5lincceAN5QhpjClESjJPQF6i5hNLnyHUBSyURhxGcJ3GKs5gyC9dTT3uVeKpUrgzjvvdIOOML54dzN8yb3l7+OPP3Z+5ZQxzBJWyfFUUd5RQKkziANeCiIFNIdPAf9IKisUTFrgTB8W9TliSj7+Qpm0YH5tRnRT4DLiNp3uRSpgPqg4wedy9913rxOwnYFAWKbwn8NaQH5RautTPrH4obTS1cXo9moSBp3ETbFaKgzoaqSrMhQGzISzb6FE4XiPpRQ3i3XWWSc8PCfLP//8c510eD/94J06O9PcgL8nXfCDBg2qOYPKxFu3ajbmaYGg/vxJ8kvg+uuvd1FCUPR9Tww+v9GyMtNcoHRK8cyUWuUcj1scIdTogua9YophHwWB8RaE8/ONWSK28B5yjKQwBDQXfI448xJjLaN1wTKKJxUwA3vCbrzo5ei6pKWOxcq3/rEyxk3tGZ5Ly43p1+IE5fLdd991Acbj9jPACcsnCnKqlhDKNINbCHmCIsDAqoYK3ag4PUv+IkClCBPYZmOt5FwUNHyO6ZbCh5jpUXHzQHjOOPBjBaKVz7vJpAc0UHIpzCuOT5EvzH3aL7zwgvNR9uv1/SZ7T6gcGHTAu80odaaRrQZhUA33S4SCShfeVRQF3lXcOeIm94ABrhC864Spk/xFAJcuvo1cD86jTuJ5wLzcFHkaquSZ9yoqGF3irOu8V0zaQVSQShSMSYW0gKL7+Loojqd8QOOoNGAbrXVeeF8Bo3zS7RO1TkWTplueY73yyX4GE8UFtg/PZeARFX6cYPGiQEomdCVi1UsWz5KBUTh6H3zwwa4SoOs+G+UzWT7ysZ2ZHVCw6XqrBqFiILQMI7OHDRvmfHvCD57WPIo/o7f9u4kPEJMi5FLo2iFqAw2v0Oqfq5AnuJTQnY8SWi3KZy6fTzmkRZlFIHlGtydTPsvhPioljzSOGTyLFZFR1PUZRcrpvqlz4+pIlDN6IiWFISAFNEecGXgR+laSLC3H+lqkcWGNUCrSGaXHyFEqZYSWHgNn+KiYvx1luD7x/qR0wyMoDgSPJwZiOVYAhOmACb6bhO0ZMGBAfQgqZj/KH8HjeXdCYRAHhW0oPGdC3DCCPlezw5AmlgMaUqFFl0qrmp5DyFnL5UeAd/eyyy6zLl262E477eSig5TfXWSfY+ouBtsx2M/7YOPCxQx2lSDUj3GDSVE+l1lmmUq4xbK4h8TaqiyyXJqZZHaFuK72+qw17A8tRtwdfnO0OtMRuu8pJPAhZV5klE9cAdIR/FQ5FysZVlFG6ddnsU0n3WIcQ+xAlCq6W3xXP/cTToVajHzl+5pUFFjM8XOKE+9sH+7DX5PIB3TFE5aGUcS5kLFjx7qGUGjNp6sr9N/MxXWUhgjkiwDT+jIRB9EXmD+7a9euLuRPvq5XquniOhO1EKKIxk2JWar3kCpf+Brfeuut7hDqX2+EYaKL6H2nSkf7siMgBTQ7fjVn00UYHcxDK4sujFSCkoSFCgsmx/MxMPqW4OKMuCYwc32CksEfrVPms2au73SF8xjZi69Z3Mh50kHJIc36QqKke02su/ggtlsQBYAwGcmUREJMMY1aOgNZiAcYJ8Q4rVShGx1LDUokll8mG/Dd7P6er776ar9Y8xsdeAa7+lw+ak5OsUAPQFwjLAwTleJ07RKBohIgjiihasKeLMpmfHCrTVA2vVIW3nu0fAn3ldsyg5GIvEC4tWOPPdZFgyHWtqRwBOrvpy1cXsr6SsxxjgIZFl6sY1FEKUwmOD0zap6WF4oWXalnnnlmTTqvvfaaMQ0n25IJ4ZjwQfVCjC+mwMSRP1vh2gxyQQnF6R9lhwEnDRWUEUJdULh5S1mvXr2cH2M4Ry9dt1h1aanSLUK8y2SDrsgLTuMo72F3M/wrtTULRxTOUBiogi8mIbq8bLDBBm5AGtt5vzgm6v9JtyOKPm4L2QgD1qKDiFBI0wkYnc11da4I5IIAPSd0y0YHN/kelVxco1zSoEeMMj8UxjT07t073FT2y8TTxideUhwCsoDmiDu+nqHySbIoCcl8OVGqGKmO8omidPjhh9c44EfTIXYno+njhOuGyqc/hpBJUYus35fuL3mkIGKkvi+UUWyzcUbHostoTa98khda1T5IP+vMckGhQHc6eUBQUlNZdgmVE7oyoODCkbiolSgMOor6MKFIxlmCCWVDPDymeo1z+eA9JS5ttsJ7zOA1BH9k/hjApi74bMnq/EIQwOcxWvYyKCVdd6hC5LFQ16AhSTc8QuOeHjriIFMOS0QgVwSkgOaIJF2hWOuiEhc3k+5OjifwLVY/4nZ6ocCLClakZIos/nwEmI0KymdcF0r0uFTrcX5AHI+1tqGSrAvHz+aULH2US6/cxF0bJYsuNPxfmfWE6SDxjcyXBRT/MCyGRAfAEom7QCElrqub64eKfVx+sF5jJfbKOu8sXVEMuMiFUHFhYcUK/+KLLzr3jujAqFxcR2mIQK4JUIbgF43QeKJ3ioF9fn75XF+v1NNjjACGD8pdylbC9klEIJcE1AWfI5qEU8I6iA+RFxzYo0HM+aAJfhsKztB0S++zzz62xhpr2Pvvv5+gSGAFJA5nnFBoemUi3I8PT7jdDzxBAcQq1aZNm/Dw2GXOj1Me4hTt2ARiNhLjNOpOQOsafl7ilCuU6Tjl3J/DLywYhJVvoRs7VNiw1NLQwHIb1xjIR36w1mCZwYrulXq4nXPOOSkvh8/vhAkTnHsDlu2tttrKWTZSnpThTt6ZuBh7GSajw0Wg4ASYPha3J/5QQim/sexXq1CmoIhKRCAfBGQBzRFV4k6GyifJogxF41EyWjtOwSK+IUIgZqxYKGVe4UKxRXGIEyx8dNEjKIacR8HJtb0CSjw3LK1Yvwguj8UO62B9wojQqLLJemixrS+N6H5ijz7yyCNuM9YyuuNRPg866KCaQ3FH8PfuN9I1VirdP0QbCIXnhcKfq5iXYdqplon/STxY3idY9u/f38VuTXUO+2DOezB48OCcK5/1XVv7RaDUCdB4ojxiCtlqVj5L/Tkpf+VPoHqbdjl+diiOUUFpYsrAfv361exCgfOKYc3GBQsojghO0Vio6PbBN49R9PW1QAnFxLRiQ4YMcQUmYZVChdXPhOMu8P//8OdBSaWbKZmg3A4fPtzFBMUCSd6ZxhHXARQu4m2mGmCVLN3OnTs7ZZ37JJ9RaxnTSKJc7bXXXi6YP/6JKNnhPSVLuxDb42K3YoWMOu3nOy9UjjRoJCIgAiIgAiJQbgSkgOboiUWd10kWy1g4KpttdLMTMB2FLvTXY8S3FyxU6cwH74/nF8vi0UcfHW6qWY7mgR0oS1988UW984ITlHfSpElO4WRUPZZTH2ic8E0oQQ0Z6ENXdadOnWryGF3AYou7At25sColSwQzRb24wL8xFBgrhEdIRMsiIAIiIAIikJyAuuCTs8loD6GKooKi1rNnz4TNjFxm3m5GFmJRJOwS81wn8/FMOLmBK3EDcVBAcSp/+OGHLRwAFHcJFEAGlhCqxyufHIeFlqDN+RK6lumKLyXlk3tFAfXuAHR98yxvuukmN5gnGQsGLWHF9TNXJTtO20VABERABESgGgg0WmCFm18NN5qrIOqpWBECp0+fPjVdxShnpRADkTnC6TaPE2K7oYwyjSJB4ZPJxx9/7LrEfTgmfxwWymhcSb8v/EVRK4V4eg8++KCLKYryz9RyDOZpqKCQ41+72mqrpQxjxHtAbE5cL3BdYK72MWPGuNH6nB8q9Q3NS6WcVyrvSanwxBWHQOgMfKtmwcWFcHMjRoywVq1auVBwcQMkq5URRgZ6zuqb+rma+GC4wLWNQaKSvwhgAMOoM3Xq1IIgwYhEfZdM1AWfjEwDtjOPOgN3sBgicYONGpBs1qfQNUwBFfcher/Fgw8+2FBUkxXq+KHyIoUKKB84I8/LRZj73IdZIc/4yqIY4hbREIFJff657733npvVKkwfRZxBQGHA+HB/JsvEkcUdgHcNn9no4K1M0tKxIlCqBIgSMnPmTBfxgXjAhEeiJynqP16q+Ve+REAE6hJQF3xdJlltYVBPuwVTTDISvZTEzz6ULE+M1qdLPZmgbBLIHKHLmZYUQc1feumlZKeU1HYsjaHySeawquCGkOq+s70JwiT5AWY+La6Lsp+tUAEzwAzFmvsgBirhtiQiUEkEKHdoPPPdIHTa8RcN51ZJ96x7EYFqICAFtBqe8oJ7RPmi0E5mlSVwfWj9pHuZOemJWcqIdIQA75MWDEgiZBRd2VQMydJzJ5TQPxSz6MxBZC/b2aLqu0WsxlEfVizk+P5mIwS+x7+Y7nssQ/jx8vxwAZGIQCUR4F2PWvYpy5JNzlFJ9657EYFKJiAFtJKfbnBvjGbHyonVAKsZPpBeWB4wYECNpW7ixIlu3nXCOjFr08knn2xnnXWWO5xj8ZskVFK2wvzuxLGkO43YpPm0RBIlILxnn3dGr8dt9/uz/aVbHDcFr6ijfFJ5xoXtyuRaxJzFXzIUlFEsrhIRqCQCRMuI+knTq8AkChIREIHyJVA1g5DyqdyEjx8FA2UDyxqKRraCjx9+moySj1rSskkbCyaDY1C+iOUZzuxDV27Umd3HBG2o4okFw3ehkW9G/mOt8xZI7g1lNAygn839xZ3LSHTCO+EegbWQPKGwEXs1n8J7AGPcFbjW1Vdf7QYuwb6h7+Xo0aNdIyEak5RBZcycVa4SfU/K9T5yle+bb77ZhTnzvtq5Srfc0iF0HRNg8H7zjrRb4OZE7GPJXwQoPxnk6MtTcTE3FgMmcSESq5UP7wl1H4NhCyGwj4vC469dNQpoIUbBA5XCEWsj3UPZvPgoLcTXfPbZZ90Lg6Lx4YcfurT9w8vX79prr11nxDrWNhTWbt26Neiy0dHNzD8eHYlHbFBcBfIZOYBrPv/8866wRumO65Zv0A1meBIWHJhkMwr+pJNOcmGdfKVD4cLEB5tttlmGuSmdw6PvSenkrDg50Sj4Wu6jRo2ykSNHuigjDJqcPn167c4qX9Io+LovAOWhRsEnctEo+EQeWktCAOXz6aefTrCQ9ejRw1nRooNakiTR4M1YOel6D7u9GLld34jvTC7oIwWE56B0Z6O0h2klW6ZxEM47n+y4ctg+cOBAW3311d3Uplh1GYiEK4NEBCqRwAYbbGD8YcGJKz8q8Z51TyJQyQTkA1qiT3fo0KEJyifZZCQoVoB8C5ZOlE9cCfy0oZdffrm1adMmZ5fed999XUUSJkiIJ7rIJekTOOaYY+x///ufs4RK+Uyfm44UAREQAREoLgHFAS0u/6RXx9cp2sWE3wbdCtkKo0pff/115wtJl3rUmuAHLA0ePNiNrt52222NME65FAY1Ma0nPph0vXO/jz76aMmFr8rlPSstERABERABERCBvwhkr82IZF4IMK/7ZZddVmMFpduJcDsbb7xxVtdjBp7dd9/dDT7CdxCllpBLKICh0M2fz5A+3A8zR40bN84puXQlR/MQ5kfLIiACIiACIiAClUNAXfAl+ixR/ojDiTBamtBJKGtRa2Um2ScWJjM1MaKW7m5GYJMeg1nyLVwPt4IXF8zaE0YH6Nixo/PrkvKZ7yeg9EVABERABESgdAjIAlo6z6JOTuimJnwP4uNI1jkogw2Moqe7O5wthziYzK+cT/n8889t5513dsouFleCpqNMpwrPkM/8KG0REAEREAEREIHiEpAFtLj86706imculE8uhMIXjmz3F4/b5vdl+4uyueWWWzqLK4qvn7Hn2GOPzTZpnS8CIiACIiACIlCmBKSA5vDBEby9V69ebpag3r171/hv5vASWSXF3O2bbLJJgkJL3NIbb7wxq3RTncyMPdFYmyi8zGMuEQEREAEREAERqE4CUkBz9Nyx7BGjDj9HBvoMGzbMrUdnqsnR5RqczJ133mm77babm4u8ffv2NmjQIDejzsUXX2wEh2c2ogsvvLDB6UdPXHzxxY1u/qj44OnR7VoXAREQAREQARGofALyAc3RM77oootciCQfSJ1pJxnpzcw+ffv2zdFVsk+GQUdXXXVVQkJYa1Gcvdx2221uoBBT32UrjG7fZpttXPp+2klcClB4JSIgAiIgAiIgAtVJQBbQHD13pnj0yqdPEitfqc/LTb5D5ZO8oyjefvvt9vXXX7vpQPfYYw/r379/rP+ov9dUvyjh+++/v5tCj3nmmdeZdYkIiIAIiIAIiEB1EpAFNEfPHSvfc889Z1g+Q9lqq63C1ZJbRklmcBKzLIWCMo2/KIHvWWYOZrrrGdGO32gmgtUVJfQ///lPJqfpWBEQAREQAREQgQolIAtojh5sz549beutt3ap4ffI3NwHH3ywCz+Uo0vkJZkVV1zR2rVrl5A2rgMonV75ZCd+nASnxzIqEQEREAEREAEREIFsCMgCmg29yLkM8GF6ScINLb300lnPWhRJPi+rWCfvv/9+W2eddaxFixZO6Vx++eWtVatWdeKDMtCKkf4NESytWIcztZ425Fq5PGfKlCn2zDPPOJ9YZpCCi0QEREAEREAERCA7AlJAs+NX52xiXjKX+g8//FDHJ7TOwSWyoWXLljZ58mQbPXq0CxaPMnrLLbe4+eKjo9UJ5ZSpXH755XbzzTe7GZhQ4F577TVnTc00nUIfTwip7bbbzoWtYvYm/GBxsyBagEQEREAEREAERKDhBNQF33B2FXVmkyZNXNio9ddf31hmLvrWrVu7kfxYLZkqEwsgMxplIoR0uv7669089sT/RDHHXaHUBcUb5RNhmRmckEMPPbTk4ru6jOmfCIiACIiACJQRAVlAy+hhFTKrdM2/+uqr9vjjj9t3331nHTp0cOGUMs3Drbfe6hQ4fx6+pePHjzesi2uttZbfXHK/06dPN3x5o3FcZ86caT/99JOtsMIKLs+4JeBywRSnzZs3L7n7UIZEQAREQAREoBQJSAEtxadSQnkiBFM2QszPaDc+llAU0VIWBpHR7R4VFFN8ZZGXXnrJjj/+eHcvv/zyi91zzz3WrVu36ClaFwEREAEREAERiBBQF3wEiFZzS4Bue6ypoaDElbL1k7xizYwLlj9w4EAX4WDixIl2wAEH2I8//ujmueecAw880MaOHcuiRAREQAREQAREIAUBKaAp4GhX9gSI/bnuuuu6hJgTvmPHjm6wEyGeSl323ntve/bZZ61Hjx7u76GHHrL99tvPZfvuu++uo1ijaD/88MOlflvKnwiIgAiIgAgUnUDpawFFR6QMZEOAAU2MHMfqSQgn5p9nW1QY5MPI+2+//dY6derkBjxFjynGOoOyyFe6Etdtn+65Ok4EREAEREAEqoWAFNBqedJFvk+m4PS+k9Gs4BPabkEwfEba//7778bApSeffNL9Ro8tlXWmEr3pppsSsoPy2bt374Rtlbby1ltvOd9XrNmHHXZY2cV1rbTnofsRAREQgXIloC74cn1yFZTv8847z1lFUT69MMBn2LBhfrXkfldffXV75JFHXL5QrJdbbjl78MEHnSJdcpnNUYYIp7XPPvvYNddcY5dcconRqGDwlUQEREAEREAEMiUgC2imxHR8zgmMGTPGTfUZJkyXPPPOl7J07tzZGIxEKCYGLWHBrVT59NNPjZiuXpiaFVeKU0891QYNGuQ361cEREAEREAE0iIgC2hamHRQLgnceOONtvXWW9u2225rb7zxhrMaRgcloeAwJWipC0on064WSvm86667XIB8guTjW1soQQGNulDwjEaNGlWoLOg6IiACIiACFURACmgFPcxyuJU+ffrY+eef74LRf/zxxy6UEQN9iAvqlVBihzJafrfddiuHWypYHs8991zr16+fC+JPIP9jjjmmYH6yyy67rOGrGxWC9UtEQAREQAREIFOAFfwEAABAAElEQVQCUkAzJabjG0yALnUGF4VCVzvxNtl3yCGHuKk+zz77bBs+fHh4WNUvT506tc5ofAL8E+YKF4B8C+4GXbp0qbkMIadoMNx///0127QgAiIgAiIgAukSkA9ouqR0XNYECMXElJVMXRnKjBkzDKvnBRdcEG7WckDAz8DEbyhYJekKL4QQneCOO+6wp556ylq2bGn/+te/rFWrVoW4tK4hAiIgAiJQYQSkgFbYAy3l22E++aZNmyZksXHjxnV8CxMO0Ioj0KZNG8cpqoBiBWXa0EIJVmr+JCIgAiIgAiKQDQF1wWdDT+dmRICR4g888IA7B99BBrUw0IiBSJLUBBZeeGEX5omjYEccTvwyR48ebSjxEhEQAREQAREoJwKygJbT06qAvK6xxhpG2KURI0Y4a2j37t1tkUUWqYA7y/8tEKyf0eiww/+SSAKFtH7m/w51BREQAREQgWohIAW0Wp50Cd0n/oPMsy7JnADWT0UHyJybzhABERABESgtAuq7K+Lz+O6771w4onAGoCJmR5cWAREQAREQAREQgYIQkAJaEMx1L3L55Zfblltu6axZq666qovtWPcobREBERABERABERCByiMgBbQIz5QwNjfccIOL3+jn0mZmm++//74IudElRUAEREAEREAERKCwBKSAFpa3u9rNN99ss2bNSrgyg0mGDRuWsE0rIiACIiACIiACIlCJBKSAFuGpElInTpo0aRK3WdtEQAREQAREQAREoKIISAEtwuM8/vjjLaqEzpw503bdddci5EaXFAEREAEREAEREIHCEpACWlje7mrdunWzK664wi0zBeWaa65pb7/9tmI6FuFZ6JKZE6CxdP3119ull15qb775ZuYJ6AwREAEREIGqJ6A4oHl6BaZOnWpffvmlrbDCCm7GmuhliIPZo0cPYy5vArFrNpsoIa2XIoHffvvNNttsMyN0GNOAXnXVVda/f3876qijSjG7ypMIiIAIiECJEpAFNA8P5t5777UtttjCDjzwQFt//fVt8ODBsVdB8WR6SimfsXi0sQQJHHTQQcZ89CigNJ6Qyy67zMaNG1eCuVWWREAEREAESpWAFNAcP5mRI0c6xfPnn3+2H3/80aV+1lln2euvv57jKyk5ESg8Aaz6c+fOTbhw06ZNpYAmENGKCIiACIhAfQTUBV8foQz3P/zww9aoUSObP39+wplsxyoqSU3g888/t8cff9xZhffZZx9r3bp16hMKuHfatGl2++23u/itO+ywg2266aYFvHppXGrFFVe0KVOmJGSGWLbLLbdcwrZCr/z555/u2Xz77bfOp1pTvRb6Ceh6IiACIpAZgaIpoPhIYi1s166drb766nVy/c0339ikSZMStqPYbb755m7b+++/73zQ/AEdO3Y05hgvtjC6nXBKoZWILvZmzZoVO2slff0xY8bY0UcfbSigCMwY5PLMM8/YhhtuWPS8877y7qHozJ49200kwECyAw44oOh5K2QGBgwYYF26dKlpZC200EK29dZbF1UZp7HHQD5cAvBRRe666y7XkCkkG11LBERABEQgfQJFUUBRHs855xzr3r27G03bu3dv23PPPRNyPWHCBHv66adrtmF1wdLy5JNPOuXu9NNPt4033rhmP75ppaCAHnHEEXbrrbcmKKBUjCeeeGJNXrWQSIAZoHgXQvH+hYcffri98cYbRrSAYgoDxvB7DC3bDL75+9//bm3bti1m1gp6baaNHTt2rOFWgkWY0GF8e8WUgQMHOsXTvzPkZfTo0U4B3WOPPYqZNV1bBERABEQgCYGiKKBUGBdeeKEboLPffvsZShsVfBgbEysLfwijbVFE+vXr59axjLZp08ZZyNyGEvqHMvLBBx845ZgKkVHwhKxp1apVCeWytLJy6qmnJs0QFq0ZM2YUXQElD6HySYbxffziiy+qSgHlvpdaailnAWa5FOTDDz+sGRDl80NjYfz48X5VvyIgAiJQ1QSGDx9u//3vf90sjHvttZcRj7zYUnAFlK7pr776ytZbbz137yhmjAT/+uuvrX379rE8sCiuu+66tuWWW7r9VCwooM8995xTTrfffnuXRngySiADgRBGm3fo0CHcnbdluiRxKeB+6K6V/EWALvVkVkxGVScT9i255JJJz012Xq634/v4008/JSSLBXCllVZqUN54TxAaXVHFNuEiVbaS6j1JhmKVVVZxHHGN8IIbDI3BZO+cP67Uf+GBlPt95JIzrlgNeU9ymYdSS4vyBC56T2qfDGUAf2Ji9tRTT7lQeb6MvPLKK50vv49HXkstt0u+/EqWasEVULpbmfecj8XLEkss4brz4hRQut0fffRRu+eee/zhbsTtp59+6iyo+AzecsstLtTRMsssU3MM/oP4mCIouS+//HLNvkIscE+SRALJXCTwo8QtI/Sb5UwsjI888ohrbCSmVPi1++67zzWa+KB8V+9JJ53kYmJmkxusiZJEAsnek8SjatcIA3XDDTe492XOnDmuwdmiRQs7+eSTaw8q0yVfeWbKpExvN6NsY1iQJBLQe5LIgzUMXNUuuDmGMmvWLGNgNK5U+TTOeZ/88NrhcsEVUFokUcsgikeywgQrJ6ONwy7sI4880vjzLxZd9BwX+qIxWMJr+1wTxbcQgtKEUkEIpuh9FuL6pXoNFHIaE3FCvNTHHnvMXnnlFVtsscWcr2WnTp2sf//+ttFGGxXs2cXlzW/j/WOg1AUXXODiYDLKGv/Hhr5XKBYw+eGHH2QB9ZAX/KZ6T4LD6izS44BbDy4RvDPHHntsg59NncSLuIGKAmnoe1bErOft0jQCMWL8+uuvebtGuSUMDwa6MlhS8hcBb/2sTwmqBl7oJTTOQ8FqPnHiRFfmhttzucx1vZ4Wl27BFdCll17amMoPpdG37unKpIszToYMGWLHHXdcwi4qG6yd/sboBmXUfCihwsr26P7w2Fwue5MzVjIpoLVk6WZOxeOBBx6wt956yxWga621Vo07RqpzalMvzBLWBRo2XrLJm7ei8uuXfbrV/Fvfe5KMDT0qZ599dsLubJ5PQkJFXPHuGZVwL7nCCJOGvie5ykOppUMZIiaJT4UyQUz+YsKAbab7DusaXBRXW221lPVyItHM17yrWbIzCx6IngwxlR+j2RG6xrEY+q5IBhj5Vj9KKuvrrLNOQv4558Ybb3TbaN3gXMv86pLyJsB7wWC0OFeM8r4z5V4EREAEREAEikOAcTQon/Qw0suEHvb888+7noTi5OivqxbcAspl6R7r27ev63bFYkhIJi/HHHOMXXLJJc6/k1lXll122RpLpz9m3333dSPgDz30UNeFySAkut0kIiACIiACIiACIiACtQQw8OGeNGLECKeIYhFFtyq2FEUBXXnllY0uV0zAjHAO5dlnn61ZxTkWR9moMMDgoosucrH/vJ9H9Biti4AIiIAIVDYBRvfi/08Fe8YZZzgLT2Xfse5OBBpGAH9MjHf8loqvcFEUUI8vqnz67en+eh/QdI/XcSIgAiIgApVBgPjBDz74oPNho0vxtttus3fffTfpeILKuGvdhQhUDoGC+4BWDjrdiQiIgAiIQDEIELaN0Gh+cBaRVBh0Qmg0iQiIQHkQkAJaHs9JuRQBERABEfh/AowPYDBFKIx4xs9NIgIiUB4EpICWx3NSLkVABERABP6fQLt27Wqsnx4KA1qj4ff8Pv2KgAiUHgEpoKX3TKoyR8R2JRC95u+uysevmxaBjAisv/76Fs7uwpS2TGZy9913Z5SODhYBESgegaIOQirebevKpUSA6Tb/9a9/uXl7mW+diuU///lPKWVReREBESgxAkwjyCx5xDNkQCvh/YiQIhEBESgPAlJAy+M5VWwuGUxwwgknJNzfHXfc4SqWPfbYI2G7VkRABEQgJLDddtsZfxIREIHyI6Au+PJ7ZhWV46FDh5qfvtTfGIMJsIpKREAEREAEREAEKpOAFNDKfK5lc1fEciUwbiiEU2HKMIkIiIAIiIAIiEBlEpACWpnPtWzuqlevXsYAApROL1hAzz33XL+qXxEQAREQAREQgQojIAW0wh5oud0Ogwdef/11a9u2rRtI0LFjRzeoYPnlly+3W8lbfmfMmGH//ve/7dBDD7Vrrrkmb9dRwiIgAiIgAiJQKAIahFQo0rpOUgJLL720vfnmm0n3V/OOOXPmGEo5VuLZs2cbPrODBw92Uw6GVuNqZqR7FwEREAERKD8CsoCW3zNTjquIwDnnnGPMc43yieCeMH36dLv33nuriIJuVQREQAREoNIISAGttCeq+6koApMnTzbmuQ5l5syZ9sMPP4SbtCwCIiACIiACZUVACmhZPS5lttoIMOML3e9RWW211aKbtC4CIiACIiACZUNACmjZPKr0M4qF7IILLrA+ffrYbbfdlv6JOrLkCJx00kkuTird8AjTDXbp0sV22WWXkstrfRmaNGmS9e3b10088NJLL9V3uPaLgAiIgAhUMAENQqqwh8uglQ4dOtQMWnnyySfd/MjDhw+vsDutjtshRurEiRPt9ttvt++++87WWmst23333cvu5sePH+9mrPnzzz9t3rx5bqKBCy+80A477LCyuxdluDwI/PLLLy6c2yeffGKrrrqqXXnllfa3v/2tPDKvXIpAFRCQAlphD7l///4Jg1a4PfwIH330Udtrr70q7G6r43YY7V7uitpOO+1kNI5CueSSS2yHHXaw1q1bh5vrLP/xxx9u8BXW33IXFHA48EylDOXvaTJob80113RlIT7UH330kQ0bNszeeecdW2KJJfJ3YaUsAiKQNgF1waeNqjwO/Oyzz+oMWvn999/tm2++KY8bUC4rkkBcyCh8W7/99tuU93vVVVc5qy9W/TXWWMN+++23lMeX8s4vvvjCtt12W3c/7du3dyG1Sjm/5Zy3AQMGuBnW/AA+flFKr7766nK+LeVdBCqKgBTQinqc5iq36KAVujzbtWtXYXeq2yknAihcUZk2bZq1adMmurlm/YYbbjAUUBpQWA7xbd5tt93ccs1BZbJAd3Dnzp1t3LhxNmvWLJfrI488UvFv8/T8cFeJWtxRQNkuEQERKA0CUkBL4znkLBenn366a+mHg1Y233xz69GjR86uoYREIFMCKJNIkyZNak697LLLrFWrVjXr0YVrr722RlljH0oolvx33303emjJrz/++ONuAFmYURSk6667Ltyk5RwRYKBetCFO0ltttVWOrqBkREAEsiUgH9BsCZbY+fjJffXVV0aFP2XKFNtwww1tn332KbFcKjvVRoBBIPjh8V5i0cSS2alTp5QYQmXVH4g1H0W03CRqjfP5T7bd79dvwwjsueeexgDM559/3po1a+YiSWyxxRa23377NSxBnSUCIpBzAlJAc460+Ak2btzYjjvuuOJnRDkQgYDAkksuaWeeeWawJfViz54961gI6creeOONU59YgnsZbMWsVlE54ogjopu0niMCRI54+eWXDd9bXD26deuWo5SVjAiIQC4ISAHNBUWlIQIikHMCZ511lo0ZM8aIGdqiRQtbZpllXPimchw93rZtW3vqqads1113NRRx/BFPPvlkF5oq5+CUYA0BdbnXoNCCCJQcASmgJfdIlCEREAEIMHL+vvvucy4ldNszkMn7NpcjISy3EyZMsK+//topocsuu2w53obyLAIiIAI5ISAFNCcYlYgIiEC+CKQaKZ+va+Yr3ebNm7uJIvKVvtIVAREQgXIhoFHw5fKklE8REAEREAEREAERqBACUkAr5EHqNkRABERABERABESgXAhIAS2XJ6V8ioAIiIAIiIAIiECFEJACWiEPUrchAiIgAiIgAiIgAuVCQApouTwp5VMEREAEREAEREAEKoSAFNAKeZC6DRHIhACzZX344Yc2Y8aMTE7TsSIgAiIgAiKQEwJSQHOCUYmIQPkQOP/8861r1662//77W8eOHW3kyJHlk3nlVAREQAREoCIISAGtiMeomxCB9Ag89NBDNnjwYPvtt9/s559/dicxOw8WUYkIFJLARx99ZG+++ab9+uuvOb3sH3/8Ye+9956NHj06p+kqMREQgdwSUCD63PJUaiJQ0gTuuOMOmzVrVkIeF110UXvhhRfskEMOSdiuFRHIF4Gjjz7aRowY4Wa2oiE0fPhwW2ONNbK+3I8//uimO/3ll1+M2bMaN27sFNFmzZplnbYSEAERyC0BWUBzy1OpiUANgVGjRtlrr71WUn6WcfOoz58/v6ynuKwBroWyIHDGGWfY0KFD3XfhrfC77LKL/fTTT1nl/88//7R1113XJk2a5NKiocXfcccdl1W6OlkERCA/BKSA5oerUq1iAvPmzbNevXo5H8sjjzzS+VlOnDixJIiccsop1rRp04S80B2/5557JmzTigjki8Dzzz9vdJOHwjtJYy0bGTdunC2++OIJSfAtYl2ViIAIlB4BKaCl90yUozIngNL5yiuv2PTp0xP8LFkvtmy55ZY2aNAgl42FF17YNtxwQ3v//feNOcolIlAIAlElkWvOmTPHFllkkawuj3Ufa35UZs+eHd2kdREQgRIgIAW0BB6CslBZBN544w2Lq/TeeeedkrjR7bff3qZMmeK6Kp955hlr1apVSeRLmagOAnTB0/jxgp8mVvhtt93Wb2rQ7yqrrGJdunRJSBul9oQTTmhQejpJBEQgvwSkgOaXr1KvQgKLLbZYnbtmQES2Fp46iWqDCJQhgZ133tmuueYaa9KkifsmtttuOxs/frw1atQo67u55ZZbbIsttjAGHbVs2dJwOTnzzDOzTlcJiIAI5J6ARsHnnqlSrHICVHgnn3xyjRWUihYrD93fEhEQAXMj1Qn/lWvhO7v33ntznazSEwERyAMBWUDzAFVJVjcBBvQMHDjQdQXiW8kI3zFjxlQ3lJi7J2TO559/XicsVMyh2iQCIiACIlBhBKrGAooVqhDir0NL3C8X4rqlfg2616qJx9577238JRPeD4TfXHQ9JrtOqW4fMGCAXXXVVW5EPoOzXn75ZVt99dUdi2p6T+p7Pv7dEJNaUv6bERMxqSVQd4n3Q/VwIhfKk0LWxb78SsxF7VrVKKAE2y6EeMUCH6S4EZmFyEMpXoPCoFDPoBTvP5onX3lW4+hzBj6hfOIXyx+y1VZbOWsofnt6T2rfFv+eiEktEyq1hRZaSO9JLRLXkIOL3pNaKF75FJNaJnw3cCkUE2LzppKMFFAqiyeeeMKIt3bEEUe4kbQbbbSRu6FUFymFfYUKgUM8O5TPmTNn2ty5c0vh1ksiD0sttZQLS1QSmSmBTDAgib8ZM2YYsQqrSa644ooaxdPfNwXiI4884oKGF+pb9dcu5V9fhohJ7VOiAiWUk5jUMmHgI40VMallgrLly9jardW9tMQSSzgAhXpP4iY+CZ9A2groxx9/bDvttJN9++23rsLEgfzss882pjx79NFHbfnllw/T1bIIiIAIxBKgYoiTZNvjjtU2ERABERCB8iaQ9iCkww8/3Dp37mzff/+9tW3b1t314MGDnfXzvvvuK28Kyr0IiEDBCDAPeBgHkgvTY0ADVyICIiACIlAdBNJSQAkS/Pbbb9v5559vLVq0qCFDAOt//vOfNmTIkJptWhABERCBVAQIhH/RRRe5Q3BX6dixo7311lt1plFMlYb2iYAIiIAIlDeB+L6wyD15x1WsFFEZO3ZsWfiARvOtdREQgeIROPDAA22vvfZysVK9/1rxcqMri4AIiIAIFJpAWhZQusu6d+/ugmv76QSxihLw94YbbrAdd9yx0PnW9URABMqcANZPnOL9SO8yvx1lXwREQAREIAMCaVlASe/mm282AmxvuummLo5Ut27dbM6cObb//vvbiSeemMEldagIiIAIiIAIiIAIiEA1E0hbAWWU+5tvvmmvvPKKffLJJ24QwQYbbGD8SURABERABERABERABEQgXQJpK6DrrLOOXXLJJbbbbru5oNHpXkDHiYAIiIAIiIAIiIAIiEBIIC0fUALQT5w4seoCZoegtCwCIiACIiACIiACIpAbAmlZQBksgPWzb9++9vXXX1uHDh3cbD8+C8sss4ytueaaflW/IiACIiACIiACIiACIpCUQFoKKGefd955btaj448/vk5i++67rz344IN1tmuDCIiACIiACIiACIiACEQJpK2AYvmcP39+9Hy3rin0YrFoowiIgAiIgAiIgAiIQAyBtBXQRRdd1H7++WcX+3PcuHFu7vcNN9zQCMcUnVYv5jraJAIiIAIiIAIiIAIiIAKOQNoK6IcffuiC0X/33Xe23nrr2Q8//GDffPONC0L/2GOP2SKLLCKkIiACIiACIiACIiACIlAvgbRGwZPKUUcdZZ07d7bJkyfbBx984AYjvffeey4m6FVXXVXvhXSACIiACIiACIiACIiACEAgLQWUaTffffddu+iii6xNmzaOXKNGjYwu+FNOOcWGDx8umiIgAiIgAiIgAiIgAiKQFoG0FNDGjRu7AUgoolGZOXOmzZ07N7pZ6yIgAiIgAiIgAiIgAiIQSyAtBRT/zq5du1q/fv3snXfeccrorFmz7Nlnn7Wrr77att9++9jEtVEEREAEREAEREAEREAEogTSUkA56cYbbzQGIG266abWqlUra9mype28887WqVMnO/XUU6Ppal0EREAEREAEREAEREAEYgmkPQqe2Y9Gjhxpw4YNs08//dSNel9jjTVs2223jU1YG0VABERABERABERABEQgjkDaFlBCLvXp08emTp3qLJ69e/e2f/zjHzZgwAD5gMaR1TYREAEREAEREAEREIFYAmkroCeffLJNmjTJtthiC5cQ88MPHDjQ+YA++eSTsYlrowiIgAiIgAiIgAiIgAhECaTVBT979mx7/vnnbezYsbbiiiu6NBgZf8ABB9ivv/7qZkfaa6+9omlrXQREQAREQAREQAREQATqEEjLAkrMzzlz5rjg89EUpk+fbtOmTYtu1roIiIAIiIAIiIAIiIAIxBJISwFt2rSpbbPNNnbGGWe4mZB8SgSnxwd0xx139Jv0KwIiIAIiIAIiIAIiIAIpCaSlgJLC4MGDjdifK620ki2xxBKGD+gmm2zi4oMyG5JEBERABERABERABERABNIhkJYPKAkR9/OVV15xIZhGjRpl+ICuu+66ttZaa6VzHR0jAiIgAiIgAiIgAiIgAo5A2hbQefPm2dChQ23VVVd1g48mT55sZ555pt1+++1CKQIiIAIiIAIiIAIiIAJpE0hbAf3Xv/5lu+yyixEP9N5773X+oFzlxBNPtAceeCDtC+pAERABERABERABERCB6iaQtgJ6ww032JAhQ2zllVe2u+66y3r06GFPPPGEnX/++Xb//fdXN0XdvQiIgAiIgAiIgAiIQNoE0lJACbNEvM+uXbva77//bi+++KLtueee7iJ0yTM7kkQEREAEREAEREAEREAE0iGQ1iCkpZZaypo3b+4GIdEFT2B6Qi/NnTvXdb9369YtnWvpGBEQAREQAREQAREQARGwtBRQAtHjA7rDDjsYg5FOOOEEW3755W2PPfawt956y/r16yeUMQSwFs+fP98p7zG7tUkEREAEREAEREAEqpJAWgooZAhCv9NOO7lYoJtuuqmD9c9//tNYXnTRRasSXrKbRuk8++yz7c4773QzSLVo0cLeeecdFzs12TnaLgIiIAIiIAIiIALVQiAtH1APY/3117fNNtvMsIgidL2HyudXX31lH3zwgT+8an+PPvpou+OOO5y/LG4Kv/zyi/Xs2bNqeejGRUAEREAEREAERCAkkJECGp4Yt0yg+ltuuSVuV1VtI0oAs0Z5+fPPP23ixIk2fvx4v0m/IiACIiACIiACIlC1BHKqgFYtxciNL7LIIpEt5gZsoYhKREAEREAEREAERKDaCUgBzcMb8I9//KPGTYHkcVkgjNXqq6+eh6spSREQAREQAREQAREoLwJSQPPwvK6++mrr1KmTS3nxxRe39dZbzz7++OMEpTQPl1WSIiACIiACIiACIlAWBNIeBV8Wd1MimWzSpIk988wz9vXXX7tR8K1bt5byWSLPRtkQAREQAREQAREoPgEpoHl8Bq1atcpj6kpaBERABERABERABMqTgLrgy/O5KdciIAIiIAIiIAIiULYEpICW7aNTxkVABERABERABESgPAmk7IJ/9dVXbeWVV7a2bdumdXfdu3e3zp07p3Xs1KlTbeTIkdauXbuko8O//PJLmzJlSk16Sy+9tHXo0MGt//HHH/buu+8638pNNtnEmjZtWnOcFkRABERABERABERABEqXQEoLaJ8+fdxgGp/90aNH26WXXupX6/yiIKJQ1ifvv/++HXrooTZu3Djr27evPfbYY7GnDBo0yG6//Xa3n2PefvttdxxzrPfu3dtGjBhhd999t0uD6S8lIiACIiACIiACIiACpU8gpQU0mv2PPvrICDHUr1+/6K6M1gcOHGgXXnihMbXnfvvtZ0cccYT16NHDFl544YR0mDkIhXellVZK2P7AAw+4KUFPOukkt52pL9966y3bfPPNE47TigiIgAiIgAiIgAiIQOkRyEgBzUX2mRudOeOJjYkwUrx58+YuZFH79u1rLvHbb7/ZtGnT7IcffrCXX37Zunbtam3atHH7J0yYYHT3e9loo40M5ThUQK+44go3/SXHLLnkkob1tlBCGCbNepRIu3HjxjZv3rzEjVW8xuQEMNF7kvgS6D1J5DFp0iS34aijjkrcUeVrfD/q9ap9CeDBn8rYWiYs6T2py6OQ7wkGxl69eiVmIlgruAL6/fff26KLLpoQF3OJJZZwymaogDJ3On6e77zzjjVr1sywdtJtj6X022+/tRYtWtTcBssotaFwLkoswtSYfjk8Jl/LqkTrklVBUJeJ3pO6TPSeJDKZPXu221DI8isxB6W5pvek7nMRk7pMtCWRAO8IUqjGGwbHVFJwBTTOOkgmo/Onr7nmms73c6mllnL5X2211ey2225zCmg0Dc5HSQ3lrLPOClftm2++SVjP1wqDoZZZZhlnua0Pfr7yUIrp8hx/+umnUsxaUfLE+w6T7777TlaL4AnoPQlgLFi855577PTTT3e+7ol7qneNhhszzP3yyy/VCyFy54sttpjrScTAI/mLwEILLeT0ihkzZgjJ/xPA2IeOwiDwQsjf/va3lJepVwG999577YMPPnCJ0PX9888/2zHHHJOQKF3gRx55ZMK2ZCsMVJo5c6azbvrM0dW+4oorJpzCdaZPn+4qaXbgB+oraxQ8zvHCcroj9f05+hUBERABERABERABESgOgZSj4Ndee21jxDnhjvhDKVxrrbVq1v32zz77LO3c0yrZbLPN7Mknn3Tn4N+J1YM/BJ+nWbNmudbtySef7K6Pufjpp5+2rbfe2vnNdenSxZ599ll3HJr866+/bhtuuKE7X/9EQAREQAREQAREQARKm0BKC+hWW21lF1xwgXXs2DGnd3HsscfWhF+iO+Wcc86pSR/r6iWXXOJGyO+1116G8z1d2fh5khdku+22s9dee80OOOAAp5Duv//+FvqP1iSmBREQAREQAREQAREQgZIjkFIBffjhh+344483FFFCJe2zzz51fC0bckcEtyeUEhZVRqiHgmXTyyGHHOJGUOHDEQ46woqKMvrrr7+6/LAuEQEREAEREAEREAERKA8CKbvghw8fbi+99JIxAOi4445zfpoopKNGjcrJ3UWVz7hEsZCGymd4DI7oUj5DIloWAREQAREQAREQgdInkFIBZcg+1s9bb73VhT665ppr7NNPP7WNN97YOnXqZDfddJMbKFT6t6kcioAIiIAIiIAIiIAIlAqBlApomEmCxR900EE2bNgwN1Bo7733tuuvv95WWGEFu/zyy8NDtSwCIiACIiACIiACIiACSQmkrYCGKRDyaKeddrJddtnFBZX3YZrCY7QsAiIgAiIgAiIgAiIgAnEEMlJAv/jiC7v44ouN8Ex0weMLSjf87bffHpe2tomACIiACIiACIiACIhAHQL1Dh9n9poHH3zQzcjx6quvunBHhx12mPXu3dtat25dJ0FtEAEREAEREAEREAEREIFUBFIqoH369HHWTUaiE5PzhRdesK5duybM454qce0TAREQAREQAREQAREQgSiBlAoo8TevvPJKO/DAA+vE64wmpHUREAEREAEREAEREAERSIdASgX07rvvTpkGMxQ98cQThm/oKaeckvJY7RQBERABERABERABERABCGQ0CMkj++qrr9z0mSuttJKbHemTTz7xu/QrAiIgAiIgAiIgAiIgAikJpLSAhmfOnz/fhg4dajfccIM9/fTTbgrMnj17GgOStthii/BQLYuACIiACIiACIiACIhAUgL1KqBTp0612267zYVb+vzzz61Lly621lpr2X777Wf//ve/kyasHSIgAiIgAiIgAiIgAiIQRyBlF/xJJ51kbdq0sUGDBrlZkCZMmODmhl9vvfXi0tI2ERABERABERABERABEaiXQEoL6P/+9z9bddVV7bTTTrMePXrYcsstV2+COkAEREAEREAEREAEREAEUhFIaQF95plnbN9997XzzjvPBZ3fdddd7eGHH7Y//vgjVZraJwIiIAIiIAIiIAIiIAJJCaRUQFdeeWXr37+/4fv57LPP2mKLLWa9evVySijW0VdeecUYnCQRAREQAREQAREQAREQgXQJpFRAfSKNGjWy7bbbzu677z6bMmWKXXvttTZ9+nTbaqutbJVVVnGDlPyx+hUBERABERABERABERCBVATSUkDDBJZaaik77rjj7L333rP333/f6JZ/++23w0O0LAIiIAIiIAIiIAIiIAJJCaQchJT0rP/fscEGG9jVV19d32HaLwIiIAIiIAIiIAIiIAI1BOq1gH766ad27rnnuq53zvrtt99cSKaWLVu6APTPPfdcTWJaEAEREAEREAEREAEREIH6CKRUQMePH2+bb765XXPNNfb777+7tPr06WNDhgxxU3Guv/76birODz74oL7raL8IiIAIiIAIiIAIiIAIOAIpu+D79etnG264oT3xxBO2+OKL2+TJk+3uu+9203EeffTRLoFJkya5QUhXXXWVkIqACIiACIiACIiACIhAvQRSWkAZZMR87yifCKGXGBHPNJxeGAk/cuRIv6pfERABERABERABERABEUhJIKUCyjzwK664Yk0CL7zwgrOIMhLeC13ziyyyiF/VrwiIgAiIgAiIgAiIgAikJJBSAV1nnXXs5ZdfdgnMmjXLnn/+edtxxx0TEhwxYoStu+66Cdu0IgIiIAIiIAIiIAIiIALJCKT0AT3qqKNczM/Zs2fb2LFjjd/DDz/cpfX999/b5Zdfbm+99ZZdeumlydLXdhEQAREQAREQAREQARFIIJBSAT300EPtp59+sjvuuMP5gT7++OPWvn17l8Duu+/ulNIbb7zRhWNKSFUrJUmAQWRENGAWqz333NN22GGHksynMiUCIiACIiACIlDZBFIqoNz6Kaec4v6iGAYNGmQdOnSwhRdeuGbXV199ZT/++KMRnklSWgS+/PJLN3Xq3Llzbd68efbkk0/aGWecYSeeeGJpZVS5EQEREAEREAERqHgCKX1AU9392muvnaB8cuwrr7xit9xyS6rTtK9IBHbbbTfnQoHy6eXaa6+1zz77zK/qVwREQAREQAREQAQKQqDBCmhBcqeL5IwAls+oYL2eMmVKdLPWRUAEREAEREAERCCvBKSA5hVv6SS+yiqr1MnMtGnTbKWVVqqzXRtEQAREQAREQAREIJ8EpIDmk24JpX3ddde53Cy0UK3b79lnny0FtISekbIiAiIgAiIgAtVCoFYbqZY7rtL7bNu2rX3yySeG3+fMmTOtR48eil5Qpe+CblsEREAEREAEik1ACmixn0ABr9+iRQs766yzCnhFXUoEREAEREAEREAE6hJQF3xdJtoiAiIgAiIgAiIgAiKQRwJpK6AEL5eIgAiIgAiIgAiIgAiIQLYE0lZAO3bsaPvtt58NGTLE/vzzz9jrdu/e3U477bTYfdooAiIgAiIgAiIgAiIgAhBIWwF96KGHDB/CAw44wNq0aWOnn366m4ozxLj00ktbu3btwk1aFgEREAEREAEREAEREIEEAmkroF26dDGm3/z2229twIAB9vHHH9vGG29sm2yyiRHi55dffklIWCsiIAIiIAIiIAIiIAIiEEcgbQXUn9ysWTPbf//97ZxzzrEjjjjCRo0aZX379rXWrVu77vc5c+b4Q/UrAiIgAiIgAiIgAiIgAnUIZKSATpgwwfr3728dOnRwMSQnTZpk999/v/3000/20ksv2eOPP+7217mKNoiACIiACIiACIiACIjA/xNIOw7oNttsYyNGjLA111zTjjzySOvVq5etsMIKNSDpjt9zzz1tzJgxNdu0IAIiIAIiIAIiIAIiIAJRAmkroBtttJFdfPHFttlmm0XTqFk/8cQTrXnz5jXrpbSw+OKLFyQ7jRv/ZVRedNFFbd68eQW5ZjlchClAC/UMyoFHkyZNXDYXW2wxmz9/fjlkuSB51HuSiNlPnatvp5ZLo0aNrGnTpipPapHYwgsvbHDRe1ILhbqY7wcukr8I8N3ApVDvSX06UNoK6H//+996nyHTPZaq/P777wXJGg8YJXzWrFlJw1UVJCMldhG4FOoZlNitx2aHCgN/aphIAa1FpPeklgVLPuSdvp1aLlSg/IlJLROULJQtMallAg/KVjGpZYLho5BlrG9A1+YgcSltBTTxtPJbmzt3bkEy7VtbVByFumZBbizLi1AQiEctRP9h8p7U10qsPavyl/SeJD5j3zjRt1PLBeVT70ktD5YoQ8QkkQlrlLP6dmq58I4U8j3xPX21OUhcymgQUuKpWhMBERABERABERABERCBzAlIAc2cmc4QAREQAREQAREQARHIgoAU0Czg6VQREAEREAEREAEREIHMCUgBzZyZzhABERABERABERABEciCgBTQLODpVBEQAREQAREQAREQgcwJSAHNnJnOEAEREAEREAEREAERyIKAFNAs4OlUERABERABERABERCBzAlIAc2cmc4QAREQAREQAREQARHIgoAU0Czg6VQREAEREAEREAEREIHMCUgBzZyZzhABERABERABERABEciCgBTQLODpVBEQAREQAREQAREQgcwJSAHNnJnOEAEREAEREAEREAERyIKAFNAs4OlUERABERABERABERCBzAlIAc2cmc4QAREQAREQAREQARHIgoAU0Czg6VQREAEREAEREAEREIHMCUgBzZyZzhABERABERABERABEciCgBTQLODpVBEQAREQAREQAREQgcwJSAHNnJnOEAEREAEREAEREAERyIKAFNAs4FXTqV999ZV1797d2rdvbyuuuKK9+eab1XT7ulcREAEREAEREIEcEpACmkOYJDVz5kz7+uuv7ffff89xysVLbsaMGbbpppvamDFj7I8//nAZ6dmzp40aNap4mdKVRUAEREAEREAEypaAFNAcPrqhQ4faBhtsYOutt56tvPLK9vrrr+cw9eIldd9999kiiyySkIE5c+bYVVddlbBNKyIgAiIgAiIgAiKQDgEpoOlQSuOYcePGWe/eve3nn3+2adOmuTP22WcfGz9+fBpnl/Yhs2fPtj///LNOJivJylvn5rRBBERABERABEQgbwSkgOYI7W233VYnpcaNG9sjjzxSZ3u5bdhhhx0Mi2dUDj744OgmrYuACIiACIiACIhAvQSkgNaLKL0DGjVqlN6BZXjUaqutZvfcc4/L+VJLLWXNmze30047zXbeeecyvBtlWQREQAREQAREoNgEFip2Birl+gcccIDdcccdCbczb948O/DAAxO2letKt27dbOzYsTZ58mRbeumlrXXr1uV6K8q3CIiACIiACIhAkQnIApqjB8DAo7vvvtultuSSS9ryyy9vjz/+uLVt29ZQRIcMGWL333+/ffHFFzm6YuGTwfrJfUr5LDx7XVEEREAEREAEKomALKA5fJrbbLONffnll9asWTMXhmmhhRZyyifxM4mjOX/+fPv111+dpXT77bfP4ZWVlAiIgAiIgAiIgAiUDwFZQHP8rFA+l1lmmZqwRYcffrhNmDDBpk+f7pRPLtenTx+nkOb40kpOBERABERABERABMqCgBTQPD+m9957zwhjFMrCCy9s7777brhJyyIgAiIgAiIgAiJQNQSkgOb5Ubds2bLOFZhZaIkllqizXRtEQAREQAREQAREoBoISAHN81O+9NJLjXigXvALZS51RpVLREAEREAEREAERKAaCdRqRtV49wW4Z+ZQHzFihHXs2NFWWmklwyf0tddeK8CVdQkREAEREAEREAERKE0CGgVfgOfSoUMHe/HFFwtwJV1CBERABERABERABEqfgCygpf+MlEMREAEREAEREAERqCgCUkAr6nHqZkRABERABERABESg9AlIAS39Z6QcioAIiIAIiIAIiEBFEZACWlGPUzcjAiIgAiIgAiIgAqVPQApo6T8j5VAEREAEREAEREAEKoqAFNCKepy6GREQAREQAREQAREofQJSQEv/GSmHIiACIiACIiACIlBRBKSAVtTj1M2IgAiIgAiIgAiIQOkTkAJa+s9IORQBERABERABERCBiiJQtJmQpk6daiNHjrR27drZ6quvnhTqhAkTbPLkybb55ptbs2bNao57//337Y8//qhZZ6rLli1b1qxrQQREQAREQAREQAREoDQJFMUCivJ46KGH2rhx46xv37722GOPxdI55ZRT7KabbrJPP/3UevfubW+//bY7bu7c/2vvTqCkKM4Ajn+wu7DA7nLLIXIpgkhAMVzhETABNOFQgxAExYAIAeSBLwIaDWpQQ8KLQJ4aBAUUMBwRhBWJhABBTsUgyBMQIsh9n8t9dPor0rM9ewwDOzs73fOv95bt6bPqV0XvN9XV3ZdkyJAhZjvdVn/27NmT4z6YiQACCCCAAAIIIBBbAgXSAzpmzBh55ZVXpEGDBtKlSxfp3bu3tGvXTooUKRLQ2bhxoxw6dEimTJli5mkv6fTp06Vx48ayY8cOqVKlivzxj38MrM8EAggggAACCCCAgDcEoh6Aau/l7t27pX79+kaoQoUKUrx4cdODWaNGjYBa3bp1Zfz48YHPJ06ckHPnzpnPW7duNQHoP/7xD3MZvk2bNmYfgZXtCV3/4sWLZlbhwoVFf6KRnONE85jRKFckjuHYRGJf+bWPgwcPyuLFiyUpKUk6dOgQ9KUokscsVKiQ2Z0XTCJZ7nD2hUl2JUwyTRwL53fmkvid0vOJ/mCS2QYwybTIOhUr7STqAaj+gS9RooT5z+KglCxZUo4ePSruAFSBnDGfuo32hOpld0166V4vy2sP6vbt22XChAkyefJkKVeunLNL6devnxljqjM0yF22bFlgWTQmypYtG43DeOoYycnJMZ3ftWvXmrHG2j6vXLkiAwYMEB2rnJ91Wb58+Zg2KYjMxXo7iaaJcw7UcxgpWEA7LkjBArSTYA/9lJKSkn1mnM+JVjs5c+ZMSOmoB6AJCQly+fLloExpr2huf3Q0wBw2bJgZM6o3Iml68sknzY9zAtKbkbQ39NFHHw3sd9CgQXLs2DHzWU/iznRghXyaSExMlNTUVDl58mS2cubTIT2xWw3qTp8+HbN51fpq1KiRyZ9Oa9IvQQ8++KDMmzfPfI7kP9rDqifG48ePi2VZkdy1p/cV6+0k2rgXLlwwh4zW+Sva5buR42nPlp7Tr/XH7Ub27dVt9O9n0aJFzZU/r5Yh0vnW87cO63OunEZ6/17cn8ZMGqM4f+Pyuwz6f9WJ03I6VtQDUO1N0kBEg0b9D6NJez8rV66cLX+bNm2S5557Tp5++mlp2bJlYLnecKS9nU7BqlatKvv27Qss14kmTZoEfc66PGhhBD9oYKEBqJZPA2vSVQH9gxHLJ4INGzZI6dKlg76oaC+o3viWn/nWdqLHIXmjnUS7npwv6/nZBqNdprwej8Aiu6AGFQRbwS5qom2F/zuZLhpzRdPEifEycxA8FZ2Bka5jaqPQ4NDpVdJL4/qHX3807bBvMNIGo5c+9Q75F198MSj41HV0m3Hjxumk+RasY/buvfde85l/ELgRAW1/Tm+Te/uc5rmXM40AAggggAAC1y8Q9QBUs9i/f3/5+9//Lt26dTM3Gmkvp5N07KaO75w5c6a5PKmX0n/84x+bH70cqqlz586SkZFhLsvrXfQNGzY0P84++I3A9Qrceuut5nK7eyiI9mZPmjTpenfF+ggggAACCCBwDYGoX4LX/FSrVk1mzJhhAsxSpUoFZXHBggXms95gpIFqTiktLU1effVV0/upY0qv1c2b0z6Yh0BWgVGjRpm2qV+OdHiH9sC3atUq62p8RgABBBBAAIE8ChRIAOrkOWvw6cwP97czBjTc9VkPgWsJPPXUU6I/JAQQQAABBBDIP4ECuQSff8VhzwgggAACCCCAAAKxLkAAGus1RP4Q8JDA2bNnpVevXlK9enXzZIuRI0d6KPdkFQEEEEAgWgIFegk+WoXkOAggEB0BfcOZBqHOo6X0bWb6WDJ9qD8JAQQQQAABR4AeUEeC3wggkCeBjRs3mpcvOMGn7kwfqfbWW2/lab9sjAACCCDgPwECUP/VKSVCoEAE9MULzqsj3RngQdBuDaYRQAABBFSAAJR24HmBCRMmSMeOHeXxxx+XgwcPer48Xi1A3bp1RR+R5k76dpbGjRu7ZzGNAAIIIICAMAaURuBpga5du8qKFSvMpV997+xdd90lixYtEg2GSNEV0GAzPT1ddByojvvU1Lx5c9EvCCQEEEAAAQTcAgSgbg2mPSWwevVq81pWJ9OWZZnJwYMHy8KFC53Z/I6iQLly5WTnzp2ydetW825qfcMUCQEEEEAAgawCBKBZRfjsGYHDhw9LyZIl5cSJE0F55jJ8EEfUPyQmJsodd9wR9eNyQAQQQAAB7wgwBtQ7dUVOswjoZfaLFy8GzdXgp2bNmkHz+IAAAggggAACsSVAABpb9UFurkNAA82XX37ZbJGUlCQlSpSQMmXKyLRp065jL6yKAAIIIIAAAtEW4BJ8tMU5XkQFunfvLvXq1ZOlS5dKSkqKdOvWLcdHAUX0oOwMAQQQQAABBPIkQACaJz42jgWBBg0aiP6QEEAAAQQQQMAbAlyC90Y9kUsEEEAAAQQQQMA3AgSgvqlKCoIAAggggAACCHhDgADUG/VELhFAAAEEEEAAAd8IEID6piopCAIIIIAAAggg4A0BAlBv1BO5RAABBBBAAAEEfCNAAOqbqqQgCCCAAAIIIICANwQIQL1RT+QSAQQQQAABBBDwjQABqG+qkoIggAACCCCAAALeECAA9UY9kUsEEEAAAQQQQMA3AgSgvqlKCoIAAggggAACCHhDgADUG/VELhFAAAEEEEAAAd8IEID6piopCAIIIIAAAggg4A0BAlBv1BO5RAABBBBAAAEEfCNAAOqbqqQgCCCAAAIIIICANwQIQL1RT+QSAQQQQAABBBDwjQABqG+qkoIggAACCCCAAALeECAA9UY9kUsEEEAAAQQQQMA3AgSgvqlKCoIAAggggAACCHhDgADUG/VELhFAAAEEEEAAAd8IEID6piopCAIIIIAAAggg4A0BAlBv1BO5RAABBBBAAAEEfCNAAOqbqqQgCCCAAAIIIICANwQIQL1RT+QSAQQQQAABBBDwjQABqG+qkoIggAACCCCAAALeECAA9UY9RSWXp06dkm7dukm1atWkcuXKMmvWrKgcl4MggAACCCCAQHwJJMZXcSltbgJXrlyR2rVrS+HChUWnNQ0ZMkSKFi0qHTt2zG0z5iOAAAIIIIAAAtctQA/odZP5c4MlS5ZI8eLFA8GnlvLChQsyatQofxaYUiGAAAIIIIBAgQkQgBYYfWwdWIPNpKSkbJnKyMjINo8ZCCCAAAIIIIBAXgQIQPOi56NtmzZtKhcvXgwqUXJysrRv3z5oHh9iR+DYsWOyefNmOXLkSOxkipwggAACCCAQhkDcjAEtXbp0GBx5X6VQoUJmJ2lpaWJZVt53GKU9qM/q1aulfv36otOXLl2Sdu3ayRtvvBGRHGjvarTqICIZzued6FhbTSVLlryhI6Wnp0vfvn0lISFBDh8+LGPHjpU+ffrc0L5iaSPaSXBtFClSxMzg/06wS2JiIucTF4l66DmFdpKJon+L9fyY05W9zLXiayra7UTjiFApbgJQ7S2KRtLGrjfunDx50gRx0ThmpI5Rrlw52bZtm2zatEk0gK5Vq5ZEyk1PjJHaV6TKW5D70d5lDS5OnDgRNO42nDxp/XTp0iVo1UGDBpknFzRv3jxovtc+0E6Ca0yHxmji/06miwZaqamp5v9O5tz4nkpJSTFj+Gknme1Agy09zzKMLNNEOzw0RolWO9FYKFTiEnwonThcpjci3XPPPSb4jMPie6LIs2fPFqen3Z3hGTNmuD8yjQACCCCAQMwKEIDGbNWQMQRyFtBv9nppyZ00IHUu17rnM40AAggggEAsChCAxmKtkCcEQgh07949WwCq440HDx4cYisWIYAAAgggEDsCBKCxUxfkBIGwBKpUqSILFy40Nx3okAl9a9XcuXNF55MQQAABBBDwgkDc3ITkhcogjwiEK6A3iO3evTvc1VkPAQQQQACBmBKgBzSmqoPMIIAAAggggAAC/hcgAPV/HVNCBBBAAAEEEEAgpgQIQGOqOsgMAggggAACCCDgfwECUP/XMSVEAAEEEEAAAQRiSoAANKaqg8wggAACCCCAAAL+FyAA9X8dU0IEEEAAAQQQQCCmBAhAY6o6yAwCCCCAAAIIIOB/AQJQ/9cxJUQAAQQQQAABBGJKgAA0pqqDzCCAAAIIIIAAAv4XIAD1fx1TQgQQQAABBBBAIKYECEBjqjrIDAIIIIAAAggg4H8BAlD/1zElRAABBBBAAAEEYkogMaZyQ2biSmD9+vWyf/9+qVmzptSqVSuuyk5hEUAAAQQQiGcBAtB4rv0CLPuQIUNk7ty5kpiYKMePH5fnnntOBg4cWIA54tAIIIAAAgggEC0BLsFHS5rjBARmzZol06ZNk4yMDBN86oKRI0fKypUrA+swgQACCCCAAAL+FSAA9W/dxmzJPv744xzztnjx4hznMxMBBBBAAAEE/CVAAOqv+vREadLS0qRw4eCml5SUJKmpqZ7IP5lEAAEEEEAAgbwJBEcBedsXWyMQlsDQoUMlISEhsK4GoxcuXJC+ffsG5jGBAAIIIIAAAv4VIAD1b93GbMluueUWWbVqlbn7vWLFitKqVSvZsGGDJCcnx2yeyRgCCCCAAAIIRE6Au+AjZ8merkOgcuXKsnz58uvYglURQAABBBBAwC8C9ID6pSYpBwIIIIAAAggg4BEBAlCPVBTZRAABBBBAAAEE/CJAAOqXmqQcCCCAAAIIIICARwQIQD1SUWQTAQQQQAABBBDwiwABqF9qknIggAACCCCAAAIeESAA9UhFkU0EEEAAAQQQQMAvAgSgfqlJyoEAAggggAACCHhEgADUIxVFNhFAAAEEEEAAAb8IEID6pSYpBwIIIIAAAggg4BEBAlCPVBTZRAABBBBAAAEE/CJAAOqXmqQcCCCAAAIIIICARwQIQD1SUWQTAQQQQAABBBDwiwABqF9qknIggAACCCCAAAIeESAA9UhFkU0EEEAAAQQQQMAvAgSgfqlJyoEAAggggAACCHhEgADUIxVFNhFAAAEEEEAAAb8IEID6pSYpBwIIIIAAAggg4BEBAlCPVBTZRAABBBBAAAEE/CJQYAHo4cOH5dNPP5UtW7aEtNTlCxcuFF3fnc6fPy8rVqyQlStXysWLF92LmEYAIWuF9QAAFwNJREFUAQQQQAABBBCIYYECCUDXrVsnPXv2lG+//VaGDh0qc+bMyZFo9OjRMmrUKNH1n3jiCdm5c6dZ7+zZs/KrX/1KlixZIlOnTjX7sCwrx30wE4FICMyaNUuaNm0q9erVk2eeeUZob5FQzb6Py5cvy0svvSQNGjQwP5988kn2lZiDAAIIIOB5gQIJQMeMGSOvvPKKDBw4UMaPHy8TJ06UCxcuBGHu2LFDPvvsM7N82LBh8sgjj8i0adPMOjNmzJAmTZrICy+8IG+99ZacOXNG1qxZE7Q9HxCIlMCUKVPMlxz9AnT06FH58MMPZcCAAZHaPftxCTRr1kzeeecdOXTokPlR55kzZ7rWYBIBBBBAwA8CidEuxKVLl2T37t1Sv359c+gKFSpI8eLFZc+ePVKjRo1Adr777juzTuHCV2Pkhg0byvz5883ybdu2Sdu2bQPr6rJvvvnG9FA5M2fPni179+41H1NSUqRTp07Oonz9nZCQYPavZbpy5Uq+HstLO1cXrQcvJv0C5E46/GPRokWmHdepU8e9KOzpxMSr//VKlChBb+r/1davXy9ff/11kKFajxgxQnr16hU0P14+OO3Eq/938qOeChUqJOqCSaZukSJFRF0wyTTR2IF2kumhU+qhLtFqJ9e6Uhj1APTgwYOif3T1P4uTSpYsaXqW3AHovn37ROc7KS0tTY4cOWI+7t+/X/Szk3Rag1p3WrBggegfNE0a5Pbo0cO9ON+nixUrlu/H8NIBtL613r2YihYtKhoIuZP+R9bLxXktk35RIV0VUM8yZcqYc4Hb5NSpU3l2du/PS9POF9q8tjMvlTmcvDpBaDjrxsM6zt9T2klwbatLUlJS8Mw4/hTtdqLDJUOlqAegekLVPzTupL2iycnJ7lmSdT1dxwnqQi1zdjJhwgRn0vzWgDYaSRt7uXLlTLCseSZdFShdurQcO3bMkxzNmzeXpUuXBvVoHz9+XG666SY5cODADZVJ27ua6KVmesqvEt58883Z/lhooF+9evUbdr6hyomhjZwvPjfazmKoKBHLivbgpKamyokTJyK2T6/vSHu09MusdvCQrgrouUPPsxkZGZD8X0A79TRGyXpTd34BaedNqC9FUR8DWrZsWTl9+nRQj5KOq6tcuXKQQfny5YN6QnSdSpUqmXU0wNPPTsppe2cZvxHIq8C4ceNMkKj/kUqVKmV65letWhX4QpTX/bP9VQH1/ec//2k+6IlSf3SIgz4Fg4QAAggg4C+BqPeA6rcSvYFo3rx50rlzZ1m2bJnpCdLeIE1681HFihWlUaNGMnbsWNm1a5cJPNPT06Vx48ZmnRYtWoheYtff+u1GH8U0cuRIs4x/EIi0gPYu6Bhlbavaq63tN1pjaCJdlljfX61atWTz5s3y+eefm2/q+n/cGQce63knfwgggAAC4QtEPQDVrPXv3z/w+CX94zJ8+PBAjvv162eCSX0MS58+faR3795mXFi1atWkW7duZr3WrVubZ4DqnfG6fdeuXYNuYArsjAkEIiSgY2datmwZob2xm1ACOqZb/4+TEEAAAQT8K1AgAagGk/ooJR1Hp5c03Ul7Np3Uvn17ue+++8zlenePk/ai6p2xenOCjgvVzyQEEEAAAQQQQAABbwgUaOSWNfjMiUwHzOZ2F5sORCchgAACCCCAAAIIeEsg6jcheYuH3CKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpAABaEgeFiKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpAABaEgeFiKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpAABaEgeFiKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpAABaEgeFiKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpAABaEgeFiKAAAIIIIAAAghEWoAANNKi7A8BBBBAAAEEEEAgpEBiyKU+WlikSJGolOb06dOydOlSue2226RYsWJROaYXDnLp0iWJVh14wePYsWOyfv16qVOnDi6uCqOduDDsyapVq8pjjz1GG3GxFCpUSC5fvoyJy2TXrl1y9OhRueOOO1xz43tS24llWbQTVzP473//Kxqj1KpVyzU3/yaTkpJC7jxuAtCyZcuGhIjUwu3bt0vfvn1l7ty5UqVKlUjt1hf7SUlJ8UU5IlGIL774QgYNGiQrVqyQaLXNSOQ7GvugnWQqX7hwQdasWUMbySRhKgeBqVOnyvTp02XVqlU5LGUWAlcFxowZI1999ZWkp6fHBAmX4GOiGsgEAggggAACCCAQPwIEoPFT15QUAQQQQAABBBCICYGEl+wUEznxSSZ0nGPNmjXlrrvukuTkZJ+UimJEWkDbxu233y7169eXxMS4GQkTaUbf769EiRJmXN+dd97p+7JSwBsXSE1NlXr16knt2rVvfCds6XuBkiVLmr85t956a0yUtZA9SNeKiZyQCQQQQAABBBBAAIG4EOASfFxUM4VEAAEEEEAAAQRiR4BrfzdQF5s3bzaX16tXr57j1ufPn5e1a9eKPgaiUaNG4n4UweHDh+XLL78U3ZbLJTnyeX5mqPp3Crdx40Y5deqU89H8LleunHk8xs6dO2Xv3r2BZXqXfLQemxE4KBP5LhBOO8nIyBBtK+7UtGnTwMctW7bI999/Lw0bNhRtPyT/CYTTTrTU+mg3/duiwzUqVaoUgOB8EqDw9US47SRUDBLt8wljQK+zSepjlgYPHmzGeeYUFJw9e1Z69uxpnrWlj9hZsmSJ3HfffSYYXbdundm2VKlS8vbbb5sglue2XWcFxPjqoerfnfVZs2aZx+volxn90c/6bMNmzZrJn//8Z1m+fLns2LHDLNNnY+pYUZJ/BMJtJ3oO0UenHDx40LQFbStt2rQxEKNHj5aPPvpI9FFNb775pjRv3lx0jBfJPwLhthN97J+eN7T+//a3v8m2bdvE+aLC+cQ/7SG3koTbTkLFIAVyPtExoKTwBOyTvfXAAw9YjzzyiPXJJ5/kuNGkSZMsuyIDy/r06WPZz2Yzn3v06GHZz+Ay0/v377fat29v2d9aAusy4X2BUPWfW+nsHi7rF7/4hXXixAmzSteuXS27Vyu31ZnvA4Fw24n9RdWaPHlythLbX4Sthx56yLK/tJhldtBhvfbaa9nWY4a3BcJpJ/YXVKtTp07Wd999ZwprP2jcateunWU/mN585nzi7TYQTu7DaSe6n9xikII6nzAGNLevFDnM1zcbvfvuu+ZyqF5ezynpN0+9HOYknf7mm29Ee7F2794d6MmqUKGCFC9eXPbs2eOsym8fCORW/7kVTS+b2IGDDBs2TNLS0uTMmTPmjSaHDh0Sfbi0thmS/wTCbSdbt24VfTD/Bx98IPryAvtviMGwgw1zLilc+Oop3DnP+E8qvksUTjtJSEiQ9957T2rUqGGwzp07Jzp0Q6+ocD6Jj/YTTjsJFYMU1PmEAPQ62mfbtm0DbyRx/hBk3dzu2TSBhDNfg4ojR46YS2j6SBV34KqXS/T1aST/CORW/7mVcNGiReayWePGjc0q+qo0DUo12NA/IDrcY/78+bltznyPCoTbTjQAXb16tRQtWlTef/99GTJkiCnxvn37gi63O+cZj3KQ7VwEwm0n+rdF05UrV2Ts2LFy//33mzHBnE9ygfXZ7HDaiQ7jyS0GKajzCTchRbgh6rdRDRycpN86tOc063xdrst4Vqgj5Y/fWevZqf/cSjdv3jx5+OGHA4t1TPCcOXOkdOnSZt5tt90mEydOFPuSWmAdJrwvEG470brXMePa09mhQwexhwCZXvFwt/e+VHyX4HrqWb+4/v73vze95M8//7yB43wSH+0nnHaSdR2VcWKQrMuu9XcrUqr0gEZK8v/70TtR3b2aOl25cmXTc2qPzTG9W84hnWXOZ357XyC3+s+pZHp3qg7BaNWqVWDx8ePHzd2szoyqVavKgQMHTM+GM4/f3hcIp53ozUV6h7tzmV1fcqFDd7S3o3z58tnOM+47n70vRAlUIJx2ouvppfZnnnlG9IH0I0aMEG0rmjifGAbf/xNOO9GnqeQWgxTU+YQANAJNUx9roD+aWrRoIQsWLBAdh6PzVq5cKXfffbd5202TJk1Ee7w0LVu2zPRyOT1dZib/eF4gt/rXgrnbiX7WO5rr1KkT9Jgu+0Ykefrpp0XvatRhHh9//LG0bNkyEITodiTvC4TTTvTxba+//rq5BK8l3rRpkxnOo29Z08e76eOZdu3aZXox0tPTxRnG4X0dSuAIhGon+pQM/Tuj6cUXXzSP9Xv22WfN1TZne84njoS/f4fTTvSNe7nFIAV1PuESfATapX0HmgkidLxe69atRR+dYt8pb4IG+w7EwODw/v37y9ChQ80lVu3VGD58eASOzi5iSSBU/bvbieZZ/4Doa1vdSV+RZt8RL/bTE0xgoWP7tEeD5C+BcNuJnlPGjx9vfvTGNA0w9A+JtgttI71795YyZcpItWrVpFu3bv5CojQh/57069dPRo4caXo7dZyw/sycOTOg9sYbb5gb1TifBEh8OxHqfOK0kwYNGkhuMUhBnU94FWc+NUl9yLiO/czpPd96WUTHdZH8KxCq/sMptd5MoHey6omB5F+BcNuJ9mRpW3DfxKgqFy9eNMN69E55kn8Fwm0nuQlwPslNxl/zw20nucUg0T6fEID6q/1RGgQQQAABBBBAIOYFGAMa81VEBhFAAAEEEEAAAX8JEID6qz4pDQIIIIAAAgggEPMCBKAxX0VkEAEEEEAAAQQQ8JcAAai/6pPSIIAAAggggAACMS9AABrzVUQGEUAAAQQQQAABfwnwHFB/1SelQQCBfBD497//LYsXLzbPbr399tvlJz/5iTRr1izHI02ePNm8vWrYsGFBy5cuXSrLly+X3/72tzm+WGDJkiXyn//8R37zm9/IhAkTZO/evUHbOx+6d+8u+opWEgIIIOBlAR7D5OXaI+8IIJDvAi+99JK8+uqrom8gql+/vqxZs8a8lei1116TrEHmsWPHzKt39d3K8+fPN2+xcjKo2zVt2lT+9a9/mQDWme/81reU/OAHP5B33nnHvOlo37595u02znLn9x/+8AfeeuRg8BsBBDwrQADq2aoj4wggkN8CR48elZtuuknefvtteeKJJwKH04BUX3+o72XX9zA7Sd8+M3HiRKlXr57ou9ynT5/uLDK/NcDUV2a+++67QfP1NZt169Y1b7PRQFRfjffDH/5Q/vrXvwatxwcEEEDALwKMAfVLTVIOBBDIJnDw4EHzysqFCxcGln322WfSt29f0WXXSnv27JHLly9n64kcOHCg6f3UN4q4kwafP//5z0VfwTt79mxzKd69XIPYDz/8MPAOb2fZe++9Z4JWDT4jlTRvzz//vLRt21Z++ctfmp5Vy7ICuz98+LB5lWOHDh3MKz6//PLLwDIt87hx4+Shhx6Sjh07mnfS61tSNJ0/f16efPJJ+eKLL6RTp07m9cL6ph1N77//vnTp0sVsM3r0aPM6WbOAfxBAAIEsAgSgWUD4iAAC/hHQ3svk5GTp0aOHaG/mkSNHTHCYmppqejavVVLtybz77rtNUPXyyy+bHspLly6Z12JqL6h7LOa6detEf3SMpgZ9+o72rD2djz76qJw9e1bS09MDh9bgberUqea97oGZ9oQGi7rM/eMOIN3r5jStx9JxpfqOeO1RHTJkiAk4dd3Tp0/Lz372M5kyZYrcf//9Jqhs3ry5bN++3eyqV69eJiitVauW6YnVd47r+np8DUR1mIDut2jRoqKBbuHChWXQoEFm/Kpu86Mf/Uj+9Kc/ycMPP5xT1piHAAIImJOcfU4hIYAAAv4UsAM+y768bT3++OOW3WNn2cGYZV8eD7uw9nvYLbvHzypVqpR2H1p28GrZvXzWjh07gvbx1FNPWfbl9cA8+2Yiq1q1apbdmxiYpxOdO3e2HnjggcC8Tz/91LIDOcsOjgPz7Mvv5lh6PPeP3aMZWOdaE6VLl7bsXszAanbQa3300Ufm89ixY61bbrnFsnszA8v79+9vjR8/3vr888/NMefOnRtY5sybM2eOZb9v2ix/9tlnA8u3bNli2UGo9cEHHwTmbd261axn33wVmMcEAggg4AhwFzzfQhBAwNcC2gM6bdo00cvbOq29lElJSWGXOS0tTezAzIzH1MvOehOR3qV+zz33yLJly8zYTb0srcdo37692IGb2beODf3+++9lwYIF0q5du8Dx9DK8XtbWHlntJdXL73qpW6fd6cEHHzS9lu55VapUcX8MOW0H3GIHlaaXU4cF2EGv3HnnnWYbNWjRooUUKVIksI8333zTTGtZtWfzpz/9aWCZjketWLGiuezeunVrM989XGDt2rWmd1R91q9fH9guJSVFdFnLli0D85hAAAEEVIBL8LQDBBDwvYAGQhp06thG/Qk36eOXZs2aZVbXO9v1LnYdV7lx40bRy/h66VyT3TMods+gfPXVV/K73/3O/Ni9gWL3mma7kahNmzYmmNP9njx50myrYyqzJg349FK2+6dq1apZV8v1s47B1GC4du3a8pe//MWMMbV7Lc36Bw4ckBIlSuS4rV5S13y7lxcqVMgMWXDblS1bNrC9bpOYmGgCV70c7/zoWFkn6A2szAQCCCBgC9ADSjNAAAFfC+iYTR2Xqb2AOp7yscceM8/j1IDpWknvTtegTbd1B2Qa0GqAqPvW5Nx85PR+OvvVG3kGDBhgekLty/FmtgZnPXv2NHfIa49spUqV5N5773U2icjvM2fOyIwZM0yPrPbKarlHjBhhHielj5WqWbOmfP3110HHev3110W307vxNUDVYFofPaVJHwm1YcMG8wzToI3+/0HHwurYUL2hSQNmTRqsau+uPjeVhAACCGQTcK7F8xsBBBDwo8Dw4cOt8uXLW/Zd75b92CTL7rmzdF44yQ68LDtAtOzHJ5nxk/ZNOpZ9t7hl33Bj2cGjZV9etuzL7Gb8o92jmW2Xds+gVaxYMct++HzQMh0/avfIWnaPqmXfzBS0TD/oGNBf//rX2eaHO8MOOM0+7JuJLPvZpFZGRoZlB8JW9erVzS7sB96bPNtBp1lmX5I3Y1zt4QKWHYSasat2MGl9++231q5duyw7aLfsG7os++H4gTGg9vCDQHZ0TK3d02rZl+0tu3fY0nG3L7zwgmUPQ7AOHToUWI8JBBBAwBHQcTskBBBAwJcCq1atsuxL59bMmTMD5bPHapp5K1euDMwLNbF7927Lvqvd3Hxkf4M3gZsGpCtWrDCb2T2KJng7d+5cjrux70a3KlSokO3GJ/tSvMmH/ainbNvlNQDVHa5evdqyx15axYsXt+yxniZA1ODZSfbwAcsed2pugNIbktxBud3baTVs2NCUVW+Qsse7WnaPqdnUuQnJHYDqgs2bN1v226Es+3K9ZfcWm2kNaEkIIIBATgI8iD5bnzAzEEAAgewC9glU7N5Ac7OQXoL3SrJ7P82jn+xe4GxZ1jLps05vvvlm0XGeWZPeKKXz7Tvqsy7K9bP91AAzNME9RjTXlVmAAAJxK0AAGrdVT8ERiG8B5/maoRTCGScaavv8WuaMPc1t/3rDVE4BZW7rMx8BBBCItgABaLTFOR4CCMSEgH3J2bztJ7fMaBCnN9/EWtI3FulD4UOlSZMmBT36KdS6LEMAAQQKQoAAtCDUOSYCCCCAAAIIIBDHAjwHNI4rn6IjgAACCCCAAAIFIUAAWhDqHBMBBBBAAAEEEIhjAQLQOK58io4AAggggAACCBSEAAFoQahzTAQQQAABBBBAII4FCEDjuPIpOgIIIIAAAgggUBACBKAFoc4xEUAAAQQQQACBOBb4H2HXqDE9mC0wAAAAAElFTkSuQmCC)
This illustrates that most of our PSCs fall in the “Leverage” (upper left) quadrant while a few fall in the “Strategic” (upper right) and “Non-critical” (lower left) quadrants and no PSCs fall in the “Bottleneck” quadrant. Keep in mind that each category benefits from a different strategic sourcing approach. So decision-makers benefit from understanding specifically which products and services align to each so that they can coordinate the appropriate sourcing strategy for that particular product or service. We can easily do this with the kraljic_quadrant
function.
psc %>%
mutate(quadrant = kraljic_quadrant(x_SAVF_score, y_SAVF_score))
## # A tibble: 200 x 6
## PSC x_attribute y_attribute x_SAVF_score y_SAVF_score quadrant
## <chr> <dbl> <dbl> <dbl> <dbl> <chr>
## 1 D233 3.01 4.84 0.789 0.934 Leverage
## 2 F352 4.34 5.64 0.957 0.963 Leverage
## 3 T713 3.37 4.30 0.850 0.902 Leverage
## 4 K833 2.67 5.53 0.717 0.960 Leverage
## 5 Q121 3.48 4.33 0.866 0.904 Leverage
## 6 C791 3.32 7.32 0.842 0.990 Leverage
## 7 Y207 3.48 5.42 0.866 0.956 Leverage
## 8 W439 2.47 3.35 0.666 0.808 Leverage
## 9 N290 1.66 4.02 0.378 0.881 Strategic
## 10 C251 1.00 7.47 0 0.991 Strategic
## # ... with 190 more rows
Lastly, it is important to keep in mind that decision-makers may weight the importance of each attribute differently. Consequently, due to certain market environments, decision-makers may weight the x attribute (i.e. supply risk) of greater importance than the y attribute (i.e. profit impact). Thus, we can prioritize PSCs based on this preference by applying a multi-attribute value function (MAVF) with swing weights. Swing weight values for x and y attributes (\(w_x\) and \(w_y\) respectively) are typically elicited from SMEs. This allows for calculation of the interaction swing weight \(w_{xy} = 1 - w_x - w_y\). Thus, we can calculate the MAVF as outlined by Keeney and Raiffa (1993):
\[V(x,y) = w_x v_x (x) + w_y v_y (y) + w_{xy} v_x (x) v_y (y)\]
Thus, we can apply the MAVF_score
function to compute the multi-attribute value score based on x
and y
attribute utility scores and their respective swing weights. So if through discussions with decision-makers we identify swing weight values of 0.65 and 0.35 for the x and y attributes respectively, we can obtain the computed MAVF score for each PSC:
psc %>%
mutate(MAVF = MAVF_score(x_SAVF_score, y_SAVF_score, 0.65, 0.35))
## # A tibble: 200 x 6
## PSC x_attribute y_attribute x_SAVF_score y_SAVF_score MAVF
## <chr> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 D233 3.01 4.84 0.789 0.934 0.839
## 2 F352 4.34 5.64 0.957 0.963 0.959
## 3 T713 3.37 4.30 0.850 0.902 0.868
## 4 K833 2.67 5.53 0.717 0.960 0.802
## 5 Q121 3.48 4.33 0.866 0.904 0.879
## 6 C791 3.32 7.32 0.842 0.990 0.894
## 7 Y207 3.48 5.42 0.866 0.956 0.897
## 8 W439 2.47 3.35 0.666 0.808 0.716
## 9 N290 1.66 4.02 0.378 0.881 0.554
## 10 C251 1.00 7.47 0 0.991 0.347
## # ... with 190 more rows
This allows us to quickly dissect our PSCs. For example, if decision-makers are most concerned with the “Leverage” quadrant but want to assess the top 10 PSCs based on the decision-makers preferences of the attributes we can efficiently make this assessment. This identifies the top 10 PSCs that are most likely to benefit from a strategic sourcing approach specifically designed for “Leverage” PSCs.
psc %>%
mutate(MAVF = MAVF_score(x_SAVF_score, y_SAVF_score, 0.65, 0.35),
quadrant = kraljic_quadrant(x_SAVF_score, y_SAVF_score)) %>%
filter(quadrant == "Leverage") %>%
top_n(10, wt = MAVF)
## # A tibble: 10 x 7
## PSC x_attribute y_attribute x_SAVF_score y_SAVF_score MAVF quadrant
## <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <chr>
## 1 Y357 5.00 6.55 1.00 0.981 0.993 Leverage
## 2 E103 4.46 7.71 0.967 0.993 0.976 Leverage
## 3 C432 4.65 6.05 0.980 0.973 0.977 Leverage
## 4 P402 5.00 5.82 1.00 0.968 0.989 Leverage
## 5 Q255 4.95 6.41 0.997 0.979 0.991 Leverage
## 6 H426 5.00 5.58 1.00 0.961 0.986 Leverage
## 7 E908 4.75 7.11 0.986 0.988 0.987 Leverage
## 8 X634 5.00 5.19 1.00 0.949 0.982 Leverage
## 9 O288 5.00 5.00 1.00 0.941 0.979 Leverage
## 10 V870 5.00 5.88 1.00 0.969 0.989 Leverage
And finally, since our swing weight inputs are subjective in nature we may wish to perform a senstivity analysis on these swing weights to see their impact on MAVF scores. The MAVF_sensitivity
function executes a sensitivity analysis by performing a Monte Carlo simulation with 1000 trials for each product or service (row). Each trial randomly selects a weight from a uniform distribution between lower and upper bound swing weight parameters and calculates the mult-attribute utility score. From these trials, summary statistics for each product or service (row) are calculated and reported for the final output.
MAVF_sensitivity(psc,
x = x_SAVF_score,
y = y_SAVF_score,
x_wt_min = .55,
x_wt_max = .75,
y_wt_min = .25,
y_wt_max = .45) %>%
select(PSC, starts_with("MAVF"))
## # A tibble: 200 x 8
## PSC MAVF_Min MAVF_1st_Q MAVF_Median MAVF_Mean MAVF_3rd_Q MAVF_Max
## <chr> <dbl> <dbl> <dbl> <dbl> <dbl> <dbl>
## 1 D233 0.815 0.830 0.839 0.839 0.850 0.864
## 2 F352 0.952 0.957 0.959 0.959 0.961 0.967
## 3 T713 0.847 0.861 0.868 0.868 0.875 0.889
## 4 K833 0.772 0.788 0.801 0.802 0.816 0.831
## 5 Q121 0.860 0.873 0.879 0.879 0.885 0.899
## 6 C791 0.878 0.886 0.893 0.894 0.902 0.910
## 7 Y207 0.881 0.891 0.897 0.897 0.904 0.913
## 8 W439 0.678 0.702 0.716 0.716 0.729 0.754
## 9 N290 0.496 0.525 0.552 0.554 0.582 0.612
## 10 C251 0.248 0.296 0.344 0.347 0.399 0.446
## # ... with 190 more rows, and 1 more variable: MAVF_Range <dbl>