ixxi-dante/nw2vec

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julia/scratchpad-deconv.ipynb

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{
 "cells": [
  {
   "cell_type": "markdown",
   "metadata": {},
   "source": [
    "Next steps:\n",
    "- profiling and optimization, parallelize\n",
    "- save history data and final model\n",
    "- resume next nw2vec changes + think interactions to explore them"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 1,
   "metadata": {},
   "outputs": [],
   "source": [
    "include(\"utils.jl\")\n",
    "using .Utils"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 2,
   "metadata": {},
   "outputs": [],
   "source": [
    "using Flux\n",
    "using LightGraphs\n",
    "using GraphPlot\n",
    "using Makie\n",
    "using Colors\n",
    "using ProgressMeter\n",
    "using Statistics\n",
    "using Distributions\n",
    "using Random"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 3,
   "metadata": {},
   "outputs": [
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      ]
     },
     "execution_count": 3,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "# Parameters\n",
    "l = 10\n",
    "k = 10\n",
    "p_in = 0.4\n",
    "p_out = 0.01\n",
    "g = LightGraphs.SimpleGraphs.stochastic_block_model(\n",
    "    p_in * (k - 1), p_out * k,\n",
    "    k .* ones(UInt, l), seed = 6\n",
    ")\n",
    "communities = [c for c in 1:l for i in 1:k]\n",
    "labels = Flux.onehotbatch(communities, 1:l)\n",
    "multin = DiscreteUniform(5, 19)\n",
    "ufeatures = similar(labels, Float64)\n",
    "for i in 1:size(ufeatures, 2)\n",
    "    probs = softmax(convert(Array{Float64}, labels[:, i]))\n",
    "    ufeatures[:, i] = rand(Multinomial(rand(multin), probs))\n",
    "end\n",
    "features = Utils.scale_center(ufeatures)\n",
    "\n",
    "palette = distinguishable_colors(l)\n",
    "colors = map(i -> getindex(palette, i), communities)\n",
    "gplot(g, nodefillc = colors)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 4,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/svg+xml": [
       "<?xml version=\"1.0\" encoding=\"UTF-8\"?>\n",
       "<!DOCTYPE svg PUBLIC \"-//W3C//DTD SVG 1.1//EN\"\n",
       " \"http://www.w3.org/Graphics/SVG/1.1/DTD/svg11.dtd\">\n",
       "<svg xmlns=\"http://www.w3.org/2000/svg\" version=\"1.1\"\n",
       "     width=\"180.0mm\" height=\"25.0mm\"\n",
       "     shape-rendering=\"crispEdges\">\n",
       "<rect x=\"0.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#000000\" stroke=\"none\" />\n",
       "<rect x=\"18.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#FFFF62\" stroke=\"none\" />\n",
       "<rect x=\"36.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#FF9FFF\" stroke=\"none\" />\n",
       "<rect x=\"54.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#00D6FF\" stroke=\"none\" />\n",
       "<rect x=\"72.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#D74400\" stroke=\"none\" />\n",
       "<rect x=\"90.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#008029\" stroke=\"none\" />\n",
       "<rect x=\"108.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#005FD5\" stroke=\"none\" />\n",
       "<rect x=\"126.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#930068\" stroke=\"none\" />\n",
       "<rect x=\"144.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#FFCBB5\" stroke=\"none\" />\n",
       "<rect x=\"162.0mm\" y=\"0.0mm\"\n",
       "      width=\"17.0mm\" height=\"24.0mm\"\n",
       "      fill=\"#A78600\" stroke=\"none\" />\n",
       "</svg>"
      ],
      "text/plain": [
       "10-element Array{RGB{N0f8},1} with eltype RGB{FixedPointNumbers.Normed{UInt8,8}}:\n",
       " RGB{N0f8}(0.0,0.0,0.0)    \n",
       " RGB{N0f8}(1.0,1.0,0.384)  \n",
       " RGB{N0f8}(1.0,0.624,1.0)  \n",
       " RGB{N0f8}(0.0,0.839,1.0)  \n",
       " RGB{N0f8}(0.843,0.267,0.0)\n",
       " RGB{N0f8}(0.0,0.502,0.161)\n",
       " RGB{N0f8}(0.0,0.373,0.835)\n",
       " RGB{N0f8}(0.576,0.0,0.408)\n",
       " RGB{N0f8}(1.0,0.796,0.71) \n",
       " RGB{N0f8}(0.655,0.525,0.0)"
      ]
     },
     "execution_count": 4,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "palette"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 5,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "Scene (960px, 540px):\n",
       "events:\n",
       "    window_area: GeometryTypes.HyperRectangle{2,Int64}([0, 0], [0, 0])\n",
       "    window_dpi: 100.0\n",
       "    window_open: false\n",
       "    mousebuttons: Set(AbstractPlotting.Mouse.Button[])\n",
       "    mouseposition: (0.0, 0.0)\n",
       "    mousedrag: notpressed\n",
       "    scroll: (0.0, 0.0)\n",
       "    keyboardbuttons: Set(AbstractPlotting.Keyboard.Button[])\n",
       "    unicode_input: Char[]\n",
       "    dropped_files: String[]\n",
       "    hasfocus: false\n",
       "    entered_window: false\n",
       "plots:\n",
       "subscenes:\n",
       "   *scene(320px, 540px)\n",
       "   *scene(320px, 540px)\n",
       "   *scene(320px, 540px)"
      ]
     },
     "execution_count": 5,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "vbox(\n",
    "    heatmap(1:l, 1:(l*k), labels),\n",
    "    heatmap(1:l, 1:(l*k), softmax(convert(Array{Float64}, labels)), colorrange = (0, 1)),\n",
    "    heatmap(1:l, 1:(l*k), features, colorrange = (0, 1))\n",
    ")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 6,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "plotstate (generic function with 1 method)"
      ]
     },
     "execution_count": 6,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "adims(a, dims) = [a[i, :] for i = dims]\n",
    "\n",
    "function plotstate(;enc, vae, x, refx, g, dims)\n",
    "    @assert length(dims) in [2, 3]\n",
    "    embμ, emblogσ = enc(g, x)\n",
    "    logitAÌ‚, unormFÌ‚ = vae(g, x)\n",
    "    hbox(\n",
    "        vbox(\n",
    "            Scene(),\n",
    "            heatmap(σ.(logitÂ).data, colorrange = (0, 1)),\n",
    "            heatmap(1:size(x, 1), 1:size(x, 2), softmax(unormFÌ‚).data, colorrange = (0, 1)),#, limits = FRect(1, 1, l * k, l * k)),\n",
    "            sizes = [.45, .45, .1]\n",
    "        ),\n",
    "        vbox(\n",
    "            scatter(adims(embμ, dims)..., color = colors, markersize = Utils.markersize(embμ)),\n",
    "            heatmap(Array(adjacency_matrix(g)), colorrange = (0, 1)),\n",
    "            heatmap(1:size(x, 1), 1:size(x, 2), refx, colorrange = (0, 1)),#, limits = FRect(1, 1, l * k, l * k)),\n",
    "            sizes = [.45, .45, .1]\n",
    "        ),\n",
    "    )\n",
    "end"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 7,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "Main.Layers"
      ]
     },
     "execution_count": 7,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "module Layers\n",
    "\n",
    "include(\"utils.jl\")\n",
    "using Flux, LightGraphs, LinearAlgebra, .Utils\n",
    "\n",
    "nobias(out::Integer) = fill(nothing, out)\n",
    "Flux.param(n::AbstractArray{Nothing}) = 0\n",
    "\n",
    "struct GC{T,U,F}\n",
    "    W::T\n",
    "    b::U\n",
    "    σ::F\n",
    "end\n",
    "\n",
    "GC(W, b) = GC(W, b, identity)\n",
    "\n",
    "function GC(in::Integer, out::Integer, σ = identity;\n",
    "            initW = Flux.glorot_uniform, initb = zeros)\n",
    "    return GC(param(initW(out, in)), param(initb(out)), σ)\n",
    "end\n",
    "\n",
    "Flux.@treelike GC\n",
    "\n",
    "function AÌ‚(Adiag::AbstractArray)\n",
    "    Adiag_sumin_inv_sqrt = 1 ./ sqrt.(dropdims(sum(Adiag, dims = 1), dims = 1))\n",
    "    Adiag_sumout_inv_sqrt = 1 ./ sqrt.(dropdims(sum(Adiag, dims = 2), dims = 2))\n",
    "    diagm(0 => Adiag_sumout_inv_sqrt) * Adiag * diagm(0 => Adiag_sumin_inv_sqrt)\n",
    "end\n",
    "AÌ‚(g::SimpleGraph) = AÌ‚(Utils.adjacency_matrix_diag(g))\n",
    "\n",
    "(a::GC)(g::SimpleGraph, x::AbstractArray) = a.σ.((a.W * x * Â(g)) .+ a.b)\n",
    "(a::GC)(Adiag::AbstractArray, x::AbstractArray) = a.σ.((a.W * x * Â(Adiag)) .+ a.b)\n",
    "\n",
    "function Base.show(io::IO, l::GC)\n",
    "    print(io, \"GC(g ~ ?, W ~ \", (size(l.W, 2), size(l.W, 1)), \", b ~ \")\n",
    "    isa(l.b, TrackedArray) ? print(io, size(l.b, 1)) : print(io, \"nothing\")\n",
    "    l.σ == identity || print(io, \", \", l.σ)\n",
    "    print(io, \")\")\n",
    "end\n",
    "\n",
    "\n",
    "struct Bilin{T,F}\n",
    "    W::T\n",
    "    σ::F\n",
    "end\n",
    "\n",
    "Bilin() = Bilin(identity)\n",
    "\n",
    "function Bilin(in::Integer = nothing, σ = identity; initW = Flux.glorot_uniform)\n",
    "    W = in == nothing ? 1 : param(initW(in, in))\n",
    "    return Bilin(W, σ)\n",
    "end\n",
    "\n",
    "Flux.@treelike Bilin\n",
    "\n",
    "(a::Bilin)(x::AbstractArray) = a.σ.(transpose(x) * a.W * x)\n",
    "\n",
    "\n",
    "end"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 8,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "vae (generic function with 1 method)"
      ]
     },
     "execution_count": 8,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "import Statistics.mean\n",
    "\n",
    "dimξadj = 2\n",
    "dimξfeat = 2\n",
    "diml1 = 10#Int64(round(sqrt(size(features, 1) * (dimξadj + dimξfeat))))\n",
    "overlap = 1\n",
    "\n",
    "# FIXME: unshare l1 once we do multitask\n",
    "l1 = Layers.GC(l, diml1, Flux.relu, initb = Layers.nobias)\n",
    "lμadj = Layers.GC(diml1, dimξadj, initb = Layers.nobias)\n",
    "llogσadj = Layers.GC(diml1, dimξadj, initb = Layers.nobias)\n",
    "lμfeat = Layers.GC(diml1, dimξfeat, initb = Layers.nobias)\n",
    "llogσfeat = Layers.GC(diml1, dimξfeat, initb = Layers.nobias)\n",
    "\n",
    "randn_like(target::A) where A<:AbstractArray{T} where T = randn(T, size(target))\n",
    "mean(a::AbstractArray...) = sum(a) / length(a)\n",
    "\n",
    "function voverlap(a, b, overlap)\n",
    "    vcat(\n",
    "        a[1:end-overlap, :],\n",
    "        mean(a[end-overlap+1:end, :], b[1:overlap, :]),\n",
    "        b[1+overlap:end, :]\n",
    "    )\n",
    "end\n",
    "\n",
    "function enc(g, x)\n",
    "    h = l1(g, x)\n",
    "    (voverlap(lμadj(g, h), lμfeat(g, h), overlap), voverlap(llogσadj(g, h), llogσfeat(g, h), overlap))\n",
    "end\n",
    "\n",
    "sampleξ(μ, logσ) = μ .+ exp.(logσ) .* randn_like(μ)\n",
    "\n",
    "decadj = Chain(\n",
    "    Dense(dimξadj, diml1, Flux.relu, initb = Layers.nobias),\n",
    "    Layers.Bilin(diml1)\n",
    ")\n",
    "decl1feat = Layers.GC(dimξfeat, diml1, Flux.relu, initb = Layers.nobias)\n",
    "decl2feat = Layers.GC(diml1, l, initb = Layers.nobias)\n",
    "\n",
    "function vae(g, x)\n",
    "    ξ = sampleξ(enc(g, x)...)\n",
    "    logitA = decadj(ξ[1:dimξadj, :])\n",
    "    A = σ.(logitA)\n",
    "    logitF = decl2feat(A, decl1feat(A, ξ[end-dimξfeat+1:end, :]))\n",
    "    (logitA, logitF)\n",
    "end"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 9,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "Scene (960px, 540px):\n",
       "events:\n",
       "    window_area: GeometryTypes.HyperRectangle{2,Int64}([0, 0], [0, 0])\n",
       "    window_dpi: 100.0\n",
       "    window_open: false\n",
       "    mousebuttons: Set(AbstractPlotting.Mouse.Button[])\n",
       "    mouseposition: (0.0, 0.0)\n",
       "    mousedrag: notpressed\n",
       "    scroll: (0.0, 0.0)\n",
       "    keyboardbuttons: Set(AbstractPlotting.Keyboard.Button[])\n",
       "    unicode_input: Char[]\n",
       "    dropped_files: String[]\n",
       "    hasfocus: false\n",
       "    entered_window: false\n",
       "plots:\n",
       "subscenes:\n",
       "   *scene(960px, 270px)\n",
       "   *scene(960px, 270px)"
      ]
     },
     "execution_count": 9,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "plotstate(enc = enc, vae = vae, x = features, refx = labels, g = g, dims = 1:3)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 10,
   "metadata": {},
   "outputs": [],
   "source": [
    "Adiag = Utils.adjacency_matrix_diag(g)\n",
    "densityA = mean(adjacency_matrix(g));"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 11,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "text/plain": [
       "loss (generic function with 2 methods)"
      ]
     },
     "execution_count": 11,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "# Decoder regularizer\n",
    "decregularizer(l = 0.01) = l * sum(x -> sum(x.^2), Flux.params(decadj, decl1feat, decl2feat))\n",
    "\n",
    "# Kullback-Leibler divergence\n",
    "Lkl(μ, logσ) = 0.5 * sum(exp.(2 .* logσ) + μ.^2 .- 1 .- 2 .* logσ)\n",
    "κkl = size(g, 1) * (dimξadj - overlap + dimξfeat)\n",
    "\n",
    "# Adjacency loss\n",
    "Ladj(logitAÌ‚) = (\n",
    "    0.5 * sum(Utils.logitbinarycrossentropy.(logitAÌ‚, Adiag, pos_weight = (1 / densityA) - 1))\n",
    "    / (1 - densityA)\n",
    ")\n",
    "κadj = size(g, 1)^2 * log(2)\n",
    "\n",
    "# Features loss\n",
    "Lfeat(unormFÌ‚) = - Utils.softmaxcategoricallogprob(unormFÌ‚, labels)\n",
    "κfeat = size(g, 1) * log(size(features, 1))\n",
    "\n",
    "# Total loss\n",
    "klscale = 1e-3\n",
    "regscale = 1e-3\n",
    "function loss(μ, logσ, logitÂ, unormF̂)\n",
    "    (klscale * Lkl(μ, logσ) / κkl\n",
    "        + Ladj(logitÂ) / κadj\n",
    "        + Lfeat(unormF̂) / κfeat\n",
    "        + regscale * decregularizer())\n",
    "end\n",
    "\n",
    "function loss(x)\n",
    "    μ, logσ = enc(g, x)\n",
    "    ξ = sampleξ(μ, logσ)\n",
    "    logit = decadj(ξ[1:dimξadj, :])\n",
    "    Adiag = σ.(logitÂ)\n",
    "    unormF̂ = decl2feat(Adiag, decl1feat(Adiag, ξ[end-dimξfeat+1:end, :]))\n",
    "    loss(μ, logσ, logitÂ, unormF̂)\n",
    "end"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 12,
   "metadata": {},
   "outputs": [
    {
     "name": "stderr",
     "output_type": "stream",
     "text": [
      "\u001b[32mProgress: 100%|█████████████████████████████████████████| Time: 0:09:42\u001b[39m0:31\u001b[39m\n"
     ]
    }
   ],
   "source": [
    "nepochs = 10000\n",
    "history_Lkl = zeros(nepochs)\n",
    "history_Ladj = zeros(nepochs)\n",
    "history_Lfeat = zeros(nepochs)\n",
    "history_loss = zeros(nepochs)\n",
    "\n",
    "opt = ADAM(0.01)\n",
    "@showprogress for i = 1:nepochs\n",
    "    Flux.train!(loss, Flux.params(l1, lμadj, llogσadj, lμfeat, llogσfeat, decadj, decl1feat, decl2feat), zip([features]), opt)\n",
    "    \n",
    "    μ, logσ = enc(g, features)\n",
    "    ξ = sampleξ(μ, logσ)\n",
    "    logit = decadj(ξ[1:dimξadj, :])\n",
    "    Adiag = σ.(logitÂ)\n",
    "    unormF̂ = decl2feat(Adiag, decl1feat(Adiag, ξ[end-dimξfeat+1:end, :]))\n",
    "    \n",
    "    history_Lkl[i] = Lkl(μ, logσ).data / κkl\n",
    "    history_Ladj[i] = Ladj(logitÂ).data / κadj\n",
    "    history_Lfeat[i] = Lfeat(unormF̂).data / κfeat\n",
    "    history_loss[i] = loss(μ, logσ, logitÂ, unormF̂).data\n",
    "end"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 13,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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cudPtdgOw2+3NvKFRr6sjKysrMFPHypUrA/l3z5491RqJ/Pz8iooKAElJST179lR/unPnTnWoYkpKSjNTcMiyvHXrVjWkjh07qjd0PB6Pep9dEIRA9gzg999/D9RVq3PqqV544YW1a9euWrUqLy/vr7/+Wr16tSzL6ujdQAfk//3f/61Zs2bNmjV5eXnr1q1bt26dz+dbt25dfn4+E2iD8vl8gR7l1NTUHj16xMXFPfTQQ4WFhV988YWiKG+88UZOTs5NN92kfgQXFhYG5orp169fXl6eWiakJh+KouTm5g4YMEDrZlF7t3jx4sWLFwNISUk555xzevfuHai4yM/Pr6mpCVTELVy48L333pNlWRCEyy67bMaMGenp6QsXLnzyySfVDTp37qze1PZ4PIEJHHNyctQOCKLIafD5HMgN/i0pKSk1NVXNIjZs2HDeeeepqUXA7Nmzr7zySgCBCtKePXuqRR3V1dWBaekyMjICyUZlZaW6QwDqwKr8/Hyr1criJWobqyRJgTd0WlpaM29oAIFbKnv37o2Li6uoqFi9evVDDz2kdmxkZGQE7pVs27ZNHVbYoUMHNRn1+Xzbt29Xk+AePXo085atq6sLZOS9evVSOwuzs7NjY2PdbreiKL///vs555zj8XjWrVv3yCOPqD3TI0eOnDx5ss/n++STT84+++zY2Njx48cfd9xxiqIsW7bszDPPrK6urq2tjYuLc7vdX3311ZlnnpmcnDxp0qTJkyfLsvzZZ59NmzbN7XbX1dXxwtS46s+Tn52drSYKHTp0mDlzZmFh4apVq1wu17333tu9e/dzzz1XFEV13hV1+5UrV/bt27f+3vr378/5QUlzeXl58+bNU/sU1Ck71Unr1Z/u3bu3rKxMTaDz8/MXLlyodt2dcMIJM2fOVPtETjzxxHfffVe9rdetWze1Kq+ioiLQ+9C7d2+uYE+R1ujnc6MOOeSQwYMHq7cHH3/88by8vHHjximKsnv37nXr1v35558XXHCBut5KoH76tddey83NTUlJqV8W0rlz50CykZiYqE4CBuC8884777zzDj300Kuvvvryyy/X+sSQIVnrz3fR/BsaQKBquaCgYPLkyX369NmyZUugfjo7O1u9M+h0OgMXhYGOjZqamsCHdWBijUaVlJQE7qr36tVLnRNjyJAhI0aMWLZsGYCXXnopLy+vU6dO69evV+uYc3Nzr7766mHDhlVUVFxzzTVTpkyZPn167969O3bsWFVVtWzZMnXI4JAhQ3r16lVWVjZjxoxzzz33wgsv7NmzZ3Z2dllZ2dKlS9Xvp+HDh3MpDeMqLi4OXOap6+aoj48++uhbb731mmuuKSsr8/l81157bVJS0imnnLJ582an09nU3lJSUjjQhLQly/Knn36qziwUFxd36623qlf4gwYNUjcoKSkpKChQr/02b94cmLTruOOOC9xRrD8wunv37uoneUFBgXq/RRTFPn36NFj+jSjsmvp8/rekpKRZs2YVFBSoY58++eQTdQCA2jEXGxs7ePBg9V09adKkjRs3qjdS7r//frWINKBr166BZKNfv37jx4//7LPPAj8tKiri0rPUZtaMjIwvv/xS/Ud2dnbzpQvHHnvsggUL1O6N9evXb9my5fjjjw98XgfW646Li1PH8KlPql3IJSUlX331lfpk80tzFxQU/Pnnn/hntLj6R9K1a9f//Oc/FRUVf/75pyRJ6t1MADabbdiwYVdfffV5550nCEJVVZXayf3WW2812O0RRxxx2223de3adcOGDT6fz+v1vvHGGw22OeaYY2655ZZAgSwZTmJi4ogRI44++mgAHTp0SElJCfzojDPOKCws3Lx5szrq9JdffhkwYIDL5bryyisb3BwMiI2NbWauGKIoWLNmzZw5c9TLPKfT+d5777333nv4Z5J+ABUVFYH5vHbv3q3epI6Pj69/O6WkpETtfhYEoV+/fuobXp2dBgdP1U8UOc18Pv/bUUcd9cYbbyxcuHDt2rXFxcWKoiQmJqalpfXq1WvYsGFHHHGEutnMmTOTk5NXrFhRWVnZqVOn0aNHX3LJJXfeead6ndm9e/fA5IxZWVnPP//8cccdl5eXpxbpiaLI+g1qM2t1dfV5552nzpLRsWPH5ucBnTZtWmVl5SeffFJdXZ2dnX3cccedcMIJaofx2WefnZmZqV78ORyOsWPHqgv+BQb8lZaWnnDCCYqi9OjR49BDD21mBGFJSck555wDIDU1NdDLAuDkk0/Oysr65JNPVq9eXVRUVFVV1aNHj+OPP37SpEkjRoxQdxgfH//CCy8sW7Zs27ZtxcXFW7dutdvt48aNGz169MSJE9WZ75KSkp599tkff/wxLy+vpKRk+/btcXFxEyZMGDNmzMSJEwPze5AR5ebmvvbaa43+yGaz3XDDDQ2evOeee7QOmahJDofj/fffD5S0AZg/f36DbZxOZ+CWXXV1tdqDYLVa689n//PPP6ulbsnJyYFCu8BuMzIyAsMKiSKnmc/nRg0ePHjw4MHNb9OxY8f77ruvwZNNHSU3N1ddSIUodEKgG4OIiHRl6dKl11xzjTrNUc+ePQVBqH+HOjCz/kUXXfTKK6/ExMS8+uqr1157rZpDz549+4YbbqipqVm2bNk111yjLhY7ePDgBQsW9O3b1+Vy3XTTTXPmzAEwZsyYefPmceQ0EVHrWbUOgIiIGvfuu++q2XPnzp3ffvvtXr16BVaAkiTpkUceURPo/Pz8ysrK7OzsAQMG5OTkqHPw33PPPStWrLDb7evXrw/MvNu1a9fAslaB6Ud79OjBUiUioqAwgSYi0ql3330XgCiKF1544YgRI2JjYwOTzXm93sDjoqKikpKS7Ozsww8/fOrUqc8995zL5aqpqVmwYIHNZjvvvPMCI1X69Omj9mEXFRUFlrXq06dPM8taERHRvzGBJiLSqQsuuABAWlralClTGkyvabPZLr300k2bNqmlHWqJs81mu/POOzt27Lh48eL8/Pzs7OzTTz/9iCOOUOdK6t+//6GHHqoOy969e3egW5or2BMRBYs10EREREREQRBD3wURERERUfvBBJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJkJ+fL0mS1lE0zuv17t69W+somlRRUbF//36to2hSQUFBVVWV1lE0Sc9vPCIiagYTaCIiIiKiIDCBJiIiIiIKAhNoIiIiIqIgMIEmIiIiapwkSfn5+Vod3eFw7N27V6ujl5WVFRUVaXV0bQex7N692+12N7OBURNovqG1OrrO39BEREREkWbUBJqIiIiISBNMoImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoImIiIiIgsAEmoiIiIgoCEygiYiISEsXXXTR6NGjA4vs1tXV/ec//zn11FO1jouoSVatAyAiInMqKiqyWCyZmZnRP3RNTU11dXVOTk70D+31egsKCrp16xb9QwPIz8/PycmxWjX4ct+3b19KSkpiYmIbfvftt99etmzZjBkzvvrqKwD/+c9/jj766F9//bX+Nh6PJ/qNAiBJktfr1eroXq9X26NLktRu2978BkygiYiISEsLFiy47rrrCgsL1X++//77s2fP/uSTT+pvE/hplEmSVFxcbLfbNTm60+msrKy0WCyaHL2iosLn88myrMnRi4uL4+PjHQ6HVkfv0qVLMxswgSYiIiLNPPDAA/v377/11lurq6tvuOGGN998MyEhYeXKlZWVlfU369q1qybhSZJksVi0OrrD4UhISGg+k4uchIQESZKys7M1ObrVak1ISEhJSdHk6C2Hp3UARERE1H7de++9gcdvvvkmgP379wOYMGGC1qERNYmDCImIiIiIgsAEmoiIiIgoCEygiYiIiIiCwASaiIiIiCgITKCJiIiIiILABJqIiIiIKAhMoKldKCoqOu20044//ngAX3311dlnnz1+/HitgyIiIiJD4jzQ1C5kZ2fPnTv3jDPOADBu3Ljx48efdtpp9TcoKirSZPHbFnm93tLS0piYGK0DaVxVVZXL5RJFnV6Kl5SU1NXVuVwurQNpXGlpqSZrTRMRUYj0mDEQRcK6dev69u0LYNeuXRdddNF9991X/6dWq1WfCbSiKBaLRZ+xAVBj02141n9oHUjjtFqel4iIQqTT7xWi8Prwww9nzZqlJtDXXnttamrq888/f8oppwQ2yMjI0Gea5fV6PR5PRkaG1oE0ThRFl8ul2/DcbreeV4Ktra3VOgQiImoLPWYMRGE3derUqVOnqo+///57rcMhIiIiA9Np5SIRERERkT4xgSYiIiIiCgITaKIgyLLWERAREZHWmEATBeGPP7SOgIiIiLTGBJooCG++iY4dtQ6CiIiINMVZOIha5Z57kJ6Od9/FiBFah0JERESaYgJN1Covv4yyMigKtmzBmjVMo4mIiNovlnAQtco330BRAGDvXowapXU0REREpB0m0EStctttBx4rCp57TuuAiIiISCNMoIla5bvvDjxWFNx1l9YBERERkUaYQBO1LC+v4QzQDgfsdq3DIiIiIi0wgSZq2XPPQRAAIDPT/0CWIUm47DKtIyMiIjKdjSUbB7498IvtX2gdSJOYQFMwNm7sOHCg7Qv9vqEjZN48/wjCI47wPwAgipg7V+vIiIiITEeAoHUILWACTcEQ9P6GjgSXCx6Pv+nffIOYGP/zMTFITNQ6OCIiIoo6JtBELbjqKjidUBQIAiQJLhcsFgBwOLSOjIiIiLTABJqoBfPnw2qFKOLuuzFtGgDMmQOLBYKAjRu1Do6IiIiijgk0BS9QBdw+9OwJjweJibjoIrzzDgBceil69QKAq67SOjgiIiLzUStGdZxuMIEmak5uLrZtA4AuXVBU5H9y/34cfzwU5UA9NBEREbUfTKApGO1vEOF11wGA3Y5rrsHo0f4nO3XCSScBwNKlWsdHREREUccEmqg5J5wARYHHgzlzDnr++OMRHw+nE7Nnax0iERGRGSk6ruFgAk3UnKFDERsLQfAXcgSIIpxO+Hx4/HGtQyQiIqLoYgJNwWtngwg9Hpx7LvbsaeRHggCrVev4iIgAAB/9/dHQ+UPzyvO0DoQoVFxIhcjYamogCMjKQkZGwx8tXAiLBd99p3WIREQA9H2/m8hkmEATNUeWMXIkevRo5EfjxuGoo1BcrHWIRET16L/rjsgEmEBTMNrfLBzLl0OSMHQodu5s+CO7Hb/9hqlTtQ6RiKge9kMTRQETaKLmdO2KxEQMHtxIJ/SgQXC7UVCA9eu1jpKISMXkmSgqmEATNefuu7FiReM97xMmICYGoohTT9U6SiKifwjt71YhmZWeb6cwgSZqTqdOiItDWlojP3rlFaxdi8MOwy+/aB0lEREANXvWb8pBZB5MoImak5uL66+H2MQfSlYWEhJw331aR0lE9A89d9oRmQYTaKLmFBcjO7vJn8bFYdMmvP46PB6tAyUiIqJoYQJN1CRZRkUF0tOb3CA2Fk4nFAX9+2sdKxERu5+JooUJNFGTvF7U1DS3VIrVipoa2Gz4/nutYyUi4uhBMgv9T2fOBJqoSS4XXC5cdllz21xyCSSpkVmiiYg0wU5ooihgAk3UpI0bUVYGt7u5bU4/HYKAE07QOlYiavf032lHZBpMoImalJiI1FQMGNDcNsuWQZbh82kdKxEREUULE2iiJlVVwW5HfHxz20yZAoAJNBERUTvCBJqoSU4nrFZYrc1tc/jhiI+HKHJBbyLSB5ZAE0UeE2iiJrlcsNlgsTS3jSiic2cAGDJE63CJqH0TFAEcREgUFUygiZpUWYmkpBZ6oAGMGwcAsqx1uETUznEMIVG0tJQaELVjbjfsdggtfSedcQaKiuD1IiZG64iJqN3jXBxEUdBcD7TFYhk5cuQTTzwReCY9Pf3oo4/+7LPPtA6btNNiOmkiTifi4lrebO1aOByoqwOA8nKtgyYiIjIFPV8NNtcD7fP5vvnmm2effXbmzJkAqqurr7vuuiFDhpx22mmBbWprazWJW5Ikh8Oh1dGdTmddXZ1WR6+rq5MkSZOjiw5HjKK4XC5Zo7Y7HI5oHq6srLl1vAOGDcP99+PmmzF3Li6+GJ9/rsm5ISICWANNFBVNJtCKosybN+/mm28uLi5Wn1m+fPk999wzfvz4rKysY445Rn2ysrJSk7h9Pl91dbVWR3e5XNXV1QkJCZocvaqqyufz2e326B/aWlOTpSgOp9Oh0Zmvrq6O5uGcTmRktLxZnz4YPx67duH667FihSYnhoiIiKKnyQT62WefXbRoUc+ePfPy8p566qnx48ffe++9mzZtAtCzZ8/AZl26dNEkbkmSNDy6w+GIjY3V6uhxcXGSJGVnZ2tw7Lo6WRTT09LiNWq7HN2Reg4HWtPQ7t1hseDHH/Hzz/jPfzQ5MURERBQ9TSbQN91000033aQ+fvnllwFMnToVwG233aZ1zETRoCh46SW88krLWy5ejCVLoCjo2BGPP6513ETUXlkECwCfzIWdiCKO09gRNU6WMWUKUlJa3vKCC6AoAFBTo3XQRNSe6XfAFZHZMIEmapyiQJLQmlLzRx/Fk08CQFqa1kETERFR5DGBJmqczwePB7GxLW957bWYMAEACgvx1ltax01E7ZU65xdn4SCKAibQRI2TJHi9rUqgAaSm4owz4HZj3z6t4yYiIjIHHV8MMoEmapzHA0lCfHyrNk5PxxdfQFHwzDN47jmtQyeidsnfA63oOOkgMgsm0ESN8/mgKLDZWrVxcjLUGfZKS3HXXfB4tI6eiNohDiIkihYm0ESNCyqBLihAYIrqU07BUUdpHT0RERFFDBNoosZ5PJDlVs3CAaBzZ8THQxQB4P334fVqHT0RtT8cREgmo+c3MxNoosa53RAExMS0dvuqKqSnA4CiMIEmIiIyMybQRI2TJACwWlu7vdWKrl0BQBCwZ09rp+8gIgoXPXfXEZlMq7MDonbG5YIotraEQ7VrFwAoCjwe+LiYLhERkUmxB5qocQ4HLJbgEui4OAgCAHg8GDJE6wYQERFRZDCBJmqc2w2rNYgSDgAPPYSOHf2PCwq0bgCZV11d3euvv/7YY48FnlEUpba29oknntixY8euXbvOPffcjz/+WOswiYhMiyUcRI3zeGC1+ifWaKWLL8bmzVCzmuJiJCWhpkbrZpAZffvttx6Pp7S0NPCMKIqKovTo0eO77757++2377777uXLl5911lnqTyW1oj/qfD6foiiaHF2SJJ/P194OLftkKNDq6D4WrlFYCfqe2JwJNFHjamoQGxtcDzSARx/1J9CKgqwsrdtAJjVx4sQHHnigT58+gWfuvvvuyy+/HIDdbn/ppZcWLlwYX28VzX0aLTFfWlpqsVjcbnf0D11XV1dbW6vJmnySJBUVFVkslugfuqysTFbk4uLifbIGr3hRUVG6OhURUTvABJrahd9++23ZsmW//vrrZ599dueddyYlJS1YsGDNmjXN/IrbDbs9uB5olSBA/dbeuRMvv4yrrtK68WQ6drv9scce+/DDDwGceuqpn3/++YMPPjh16tQ+ffpUVFR07tz5/vvv/+uvvwLbd+vWTZM4Y2NjLRZLZmZm9A9dU1NTXV2dk5MT/UN7vV6r1arJOe/g6iCKYqeOnbrlaHB0a7D9DURGxrc7tQujRo1av359jx49ACxduvS1116bN29e/Q12797doMeooCDR44nZvbss2GPZ7V29XsiyAGDv3or8/OpQIpckqbi4WJOOtNaoqqpyu90eva5dXlxcHBcXV1lZqXUgjdu3b1/bMjyr1Rp4S3z++efqAzWfVun2DUNEZA5MoKldkGV57dq148aNA5CXl9e1a9fExMT6G3Tu3LlB94kgiJ07Iycn6Pmchw3Db7/5K7c++ST1/vuTQonc6/UKgqBJR1prxMfHu1yuTp06aR1I4wRBSEhISElJ0TqQxmlVmkxERCFiAk3twsyZM20226+//jp16tTZs2ffeOONt99+e/0NrFZrgwTa50NMDKzWoGs43nkHgwZh4kQsWYKLLxZCvK2pKMq/Y9MP6z+0DsSo4WkdApmRrkdeEZkEP76pXXj66acDj2fMmDFjxowWf6WuDvVGYQWhTx98+ikSEvDtt9i6VeuWE1E7w/UIiaKACTRR42prkZvbxt+dPBk1NbBYoNHkB0RERBRBXEiFqHFuN2Ji2v7rdjtiYnD99Vo3g4iIiMKNCTQFo7ZWrK62ffml1nFEg8uFuLi2/7rViuOOg9OpdTOIiIgo3JhAU/DawQxZsgyns4010CpBgN0OLVaQICIioshiAk3BENrL6G5ZhtcLu73te1ATaJdL65YQERFRuDGBJmqEokCSQk2g4+JYwkFERGRCTKCJGiFJ8HhCKuEA4PGwB5qIoo3rUBJFARNookb4fJBl2Gwh7eSvv+B2Y+3ag55kSk1ERNQC3VeMtqcEeskSpKfjjz+0joMMwOeDzxdSCce0adi0Cd99h4kTD3r+00+RlqZ184jIjAT9Jx1EZtGeEmiiVvN6IcshzQN9442oq8N33+Hwww96/sUX0aEDAFRX4847tW4nERERBa/9JdAsDgtdOziHagIdSg/0EUf4p5FWZy7ZsAEAevfGzz9j0iRkZODCC/HKK1q3k4jMRAC4lDdRVHApbwpGaSlkWdyxQ+s4Is7jgaKE1ANdXo74eNTW4uefAeCuu7BvH3bsgKJg0SIIAr74AsnJWreTiIiIgtf+eqCJWsHr9U/k3Gbp6fB68fjj8PlQXo5vvsEff/j77rdvR0UFFAVVVUhNBQBJ0rrBRERE1GpMoIka4fEAgDW0OzTdu2PECAwciGeegdMJWT7wo8Dj6mq8/TaOPFLrBhMREVGrsYSDqBFeL0Qx1AT6zDORkoJ16/D77weeFISDasgVBZdcgqFDtW4wERkfZ+Egihr2QBM1wuMJQwJ9993YssXfmQ3AbocoIj294WaKgpUrAcDr1brZRGR8XEiFKAqYQFMwhPbSvaEm0BZLqPu59looin9XkoTrr4fdjkGDGp7IkSMBYNy4lic4qV8HQkRERJpgAk3BaDcJtCSFJ4FesgTJyfjrL/TsienTMXs27r4bf/2FyZMxfTpSUyEIEARs2ACrFT//7J8iWjVnDjIzG+7w11+1PjVERETtHhNookZ4vbBYIIb893H44aiqwsCBmDgRb7wBANdcAwA33og338SsWbDbIctQFPh8AOB0Yvdu/+8uWYKKCuTnH7TD997T+tQQERG1e0ygiRrh8cBqDUMCHTB16kH/PPZYALj99oYlGa++iq5d8eyzyMzE559DlrFhg7hhg386vfJyfPklzjpL67NDRBRWhxxyyOGHH/7bb78FnrHZbIcddtiXX36pdWhEjWtPs3C0m/IDCl1dHWJiwlDCEXDMMQf9MzDDdM+e2LIFdjs8HggCrrgCW7fikUf8PdMWC667Thw2LPn77/HEE+jTBxUVeOQRrc8OEVFY/f3332PHjs3JyVH/uWHDhqOPPrp3797jx48PbFNcXKxJbJIklZaWxqlLy0ad0+msqKiwh7IqQQjKy8t9Pp+gRfpUXlkuK3J1dbVWr3tpaWl2dnYzG7SnBFrFNJpaweOBzRbOHuimbNyI2lrExPjX/e7XD/ffD/wzI4fPB68Xy5fHLluGTz9FeTkAFBVpfXaISMeMuJT3999/7/V6u3TpEnhmyZIlEydOXLdu3ZH/zJMvRuETuTHiP9rn0RVF0eTogigAEARBw7Y3v0F7SqA5sw+1mppAR4Eo+hf0lmWIItas8T+vvlszM+F0CrW1AoBt2/w/euwxXHhhI+MLiaidM+480HfffffOnTsXLVr0zjvvXHrppTfddFNmZmbPnj2H1pskP1OjTz1Jktxut1ZHdzgcgiBodXRBECRJ0uToZUKZKIhJSUkanvnmN2hPCTSFSzu4FHG7ERMT7dsVNpt/0mhR9NdGl5Y23MZqRVkZcnPxwQc49VStTxMRUTj8/PPP6oMTTzwRwIYNG7SOiKgFTKCJGqEm0FEWWHIlMLKwwbKFACQJAHw+nHUWF14hIiLSBmfhIGqEx4Poj9nIyjrwODYWioJDD4Ug+DNoiwXx8f6fKgpsNrCPhoiISBNMoIkaoUkPdHExDj/c/1hd8XvaNCiKAEAUcd99uP76Axv364dBg7Q+TUSkK0YtgSYyHibQRI3weqM0iLCBr7/GkCHo2tVfnjF2LDIz8cADFT164I47cOWVOPts/5b1u6uJiGDM+TeIDIoJNFEjNCnhAJCcjHXr8H//B3Xiy1GjMGWKPH16zbZtsFrRowc6dYIoQhAwfbrW54iIiKi9YgJNwWgH82+oXC4NSjgCTjzxwONnn/XV/9HGjUhKQteu/hoPIqL6jDuTHZGxMIGmYKjzurWDxWjcbsTGah1EY9aswQMPYNAgbTrIicgA2ktHB5GWmEATNUKStKmBbtGxx+LKK2Gx+OezIyIiouhjAk3UkKJoNoiwRZ98AosFVivcbq1DISKdYf0GUdQwgSZqSFH0W8IBQBBgtXIVFSIiIs0wgaZgpKRAEHx9+mgdR2TJMjweXSfQgbW+iYiIKPqYQBM1JMuQJF2P0hNF+Hyh74aIiIjaggk0UUOyDJ8PVqvWcTRBECAI7IEmosZxORWiKGhnCXS7mcaYQqEm0DrvgWYCTUREpJV2lkATtYIkwefTciGVFgkCLwaJiIg0wwSaqCE1gdZzD7TFwhpoIiIizbSnBJpdduFi9pUIJQmKot8EmtPYERERaSuEBLqyEscfj1WrtG4CUZj5fFAU/Q4iBBAbC6dT6yCIiKgxH2/8OP3x9M1lm7UOhCIohARaFCEIXFCYzEetjrBYtI6jabGxXImQiIhIMyEk0BYLLBbMn691E4Jk9vIDCp1awqHnHmibjSUcRNQQl/ImipoQEuiqKnzzjfF6oFkJTS3x+fx1xrrFQYRkSgqUPs/3ufyLy7UOxNg4DzRRFISQQFdXY9gwvP221k2gqDP7RYh6VajnEg5OY0dEpHf8lDa1EBJoScLq1airw5IlWreCKJz0XwPNBJqIiEhDbU2gZ8/G5Mn+euJLLtG6FUThJEkQBF0n0FyJkMyJl4VhwdNIFHltTaAfeADDhiExEQAqKrRuRetw+CC1jppAizqeJN1qNd7oAyKidoVjOs2trTnCSy/hiy+wdSsAxMWhpkbrhhCFjc8HUdR1As1BhETUCCZsOsEXoh1oa45w7rkAYLNBEJCWhqQkrRtC0WP6Twb9l3CwB5qIGsHiDaJoCa2TTU2dc3K0bgVROEkSe6CJiIioSaFNdSuKuPhi9OqldSsousw+AQQTaCIyLs4DTRQFIecIL7+MO+7QuhVE4aQm0HoedNoOZ+HYvj38+1yxQutWERGRMYWcQN9/P268UetWtM6KFaiqwq5dWsdBesdBhB6P1i08mNOJadPCv9usLKSna902IiIyoJBzhLffxptvat0KihY998qGjyTBYtF1W222CA4irK3FkCGN/+ijjzRobFUVsrKQnx/+PbtckCT/ZEJEJsB504iiJuQE+oor/DNy6N++fVAU/PWX1nGQ3uk/gY5cCcc77+CWW7BtW+M//e9/Gz6zdatl/XrbN99EsLH79qGuDocdFv49u1yoqcEDD7S7ehidU8w+yoKITCDkBJprCrdDZn/FvV5YLLou4VAT6PC+DrW1+PVXLFqEV16BLOPnnxtukJraSGLdqZN8wQXpL70Uwcbu2wdRRF1d+Pe8dSuSkvDFFzj//AjGT8FiNyoR6V/IOYKBRjPpuUeR9ESSYA1tfppIE4Tw/NmtXn3g8XvvYcwYvP++/5+jRx+05aZN8Hrh8x2UQ1dVobZWsNuVjh1RWRmpxlqtsFgwa1ZE9myz4aqrENEedAoaP6rJFDgdirmFnEBzPi0yoEGDBmVkZDT1U68XVquuL7hEMTzdz088gWHD0L07APzvf/6k3GpFTEzDP+sJE+BwQJLwxhsHnkxJQVKSYrHAakVqaqQa63LBbofDEf49KwoEAZdcguefj1TwRNHEjI0oaprsZ9uyZcvNN98sSdKxxx57xx13AFiyZMns2bPtdvvnn39ebwdGWxLN7OUHkaWePT2nlq3wwAMP3HTTTe8H+loBAE6n0/pPt3NdnVUQBJfLq3WkAOD1el0ul9PprP+kJFm8XovT6QnlpZg0yf7TTxYAgoBNm1zdu9t37RIBSBISE5XPPvNMniwDePFF67Rpvv37Y9VjnXyy2+n0937ffLPt6KNlt1upq5PeeEOeNi0i19LFxZbMTFtVldfpDHr/LpfLYrHY7fZGf+rxWACbw+E+/XTl4BMcJS6XS4OjktkxjSaKgiYT6J49e3755ZdPPPFE5T+3Zt94440rr7zy448/rr9ZrdNpdTjqysqiHLckSRUVFYmJia3/lUS3OwZwulyOkKN1Op0VFRVxcXFRbrWqvLzc5/NZtSgysFZVpQAet7s66q+4qqKiIjs7O8SdFBYWiqLoO7iLtbS0NHBKKyoSJclWWlqhSRsbkCSpvLy8wZutri7e5YorKSkLpVB748bO6gNFwbhxNnXqOkFARoavulo8/3x7RoZcUSG4XMKsWTZ1s8REJT+/OifHJYpwOMS1azMXLUqUJGXuXNvHH8sTJxZF4gyUlSWIYnJpaW1padB10OXl5S6Xy9PEtHzV1fGynFZRUVlaqs3FUkWFLt5jREQUrCaTMFEUb7755vj4+Icfflh9Ji8vr2/fvhs2bKi/mawois8nRb0TWpIkX5DHlWVZ/X/o0Ur/iHKr29z2sFHPoaJo2PbQd/LZZ5899dRTCxcurP9kbm5uIIFOTER6OnJzg7g8ixyv12uxWHJzc+s/mZWF2Fjk5sYXF6Njx6D3mZeHPn38tcXqdURRkQVAbCwSEnDSSZa33gKAkhJLIPNURwv7fIIgZE2ciK1b0aMH8vP91diCgAULxAZBBqW8HP36oaTE/88PPsA55/gfx8cjIQFxcem5uY1M2izLOPRQrFvn/6fHg/rdzRaLJSEhISUl5d+/+NNPyMiAxYKsrI4hBB4S2SgDSKKLHahEpH9NJtBXXXXV2rVrMzIyVqxY8b///W/RokX9+/d/+umnx4wZU3+z5JQUxMbGhdwpGCw1fw2uMzIuDkBCYmJCyNE6HA6r1Rp6V2jbWK3WoNseLqmpAGJjY5M0arvb7Q59J/v27QNwbtPTLzZIwnRIrYGurcUZZ2DlyuB+t6AAzz+Pp55CcTGsVn/ds1qbk5yMjz7CiSf60+X6VyvqBqefjt9+Q17egSJs9f9xcejfvy0N+eknnHsu9u3DypUHKoO++Qb33ovnn/evFFhbi/j4JmugV63C7t3+x+npmDQJ8+djwwYMGtTIxl98gcMOQ6dOALBwIYYPD9twTCId4QUIUeQ1mUC/+uqrgcdHH300gPnz5zeynd0Or9c/GIfaCbPXkXu9sNm0DqJZFgs8Hhx99IEu29bLzYXFgrlzoSjwepGUhC5dsHkzYmJQXIzqarzwArKzccopDccRduiAnj2hdtw3eAsoSlummfN4MG0aEhKgKHjpJTidmDAB332Hhx5Cfr5/YJ+i4NFHYbWitraRPZSV4cgjkZSEgQOxcSMcDixZAgBnn43TT8e8efjtt4O2/+knHHkk0tPxxBP45BO8/LKuJyskIiLd4jzQRA3pfxo7AN9/j/x81LvObZUbb4Qsw+v156OiCLsdy5ejb1+cfTYEAYcdhosvRseOB/plY2P9D8aNgyw3vm6fIKC4OOgmdOuGggI89RS++QZLlqC2FuXlWLIEP/4Ijwfnn4/vvvN/ulitqK5uZA8vvQRFgdOJYcMAwOtFZSVmz4bXixdewP79+O672Prbf/wxOnWC14utW5GfD48HFovBRkGbngCB80ATkUrPBV1MoIka0n8PtMeDykq43TjppCB+68sv8c47Bz1jt6O0FFlZ2LwZRUXIzoZam3PSSejWDYIAUYTTiRdewE034f338dpr8PkQH++/4SQIWL68es+e/aecgpkzg4ikogKKgrg4KAocDrz4IkaMQGwsvv0Wd98NwF+g8s47sNmgKLDZUFXVyCfNsmUA0KkT3nsPkuRP+m++GXV1qKuDz4fPPz+QQP/xB3bsgCyjthY//AAAiYnIyGi8b5s0xJUI24zXHjrBF6I9CEcCDYPc0zdEkKQD+k+gn3sOghDc8MF+/TBlCtRZHwL1VvXz76+/9ndCAygowMqVqKryV3Fcey2eeQaAvxvY4YAs48gjER+PwYN9Fgu++AL5+a0KQ523LSsLixcDgNWKF1/EF1/AYoHNhl69sH69f0u3G++8A1lGeTkGDEB1Nbz/mirjyisRG+uvY9mzx/+koqDon+lAFi6MV8dBzp6Nm24C/ONg8fvvADB2LGw21NRo8AoSEZGhtaeVCIlaR/8JdHo6YmLQu3cQqxht3+5PXgUBxx4LACecgAULDtrm9NMPPO7YEUlJB/10xQp/ZcsxxwDAsmUH+m5ffx3jxrUcjNuNE09EeTl8Ppx8Mnbu9O9WLaGuqUFVFbzeA1fl6keLIOCii7BnT8My6/vvx6pVGDYMl14KAA891MgRFQUnn5wgy7jlFvz0U8OfVlXBbocmM0ATRY6e73oTmUY4ViKUZSN17hooVNKI/hPor7+GywWnE61ZiOPCCw9aMDQ+HsuWwWbDSy813HLChOb2c9ZZ6NQJ06Zh0SKgXm00gK5dUV7eclfum2/i+++RlQX884cYmM1jx44DmynKQTXoioIPPsDmzejT56C9PfAAnn4a69ahsBAVFZg8GTExDY+YkiJv3WpRJxv5959+TQ22bWvLQEyKHCZ/RGQIISfQCxfis8+MUUXIeUKodfSfQKemwm6H1dry3BeXXIJ58w4aEajObuHxoEeP4A563HH46y+89x7i4xv+KCcHHg/+vbrOiSfiqKP8jxcuxD33ADjollVgnukGDWnQme12o7YWNTW49FL//HTXX+//kcsFhwNDh2LXLvTrd+BX1ALuykqxslJokDqrnwTp6XA6MWYME2h9YfFoSHjyiKKlPdVAE7WO/hPooiL06gVRRHl5k9vIMrp2xXvvHfjr/OknfPwxLrmkjQedN++gXuf6MjORkIBrrsHZZx+UHy9ejJUr/eMFzz4bHToc9FuC4P9P9dlnSE8HcGASblFEx46w2fzpsseDefOwYwd8Prz88oGJqDdvxt69eP55bN2Kiy9GYiI6dcLddyMuruFVs91+YOc1NXC5EBvb+Pwe+nfnnXded911gX/OmTOnV69ed911F4CzzjrrrLPOuv3227WOkYjItEKerGv6dNTUQKNFrYnCTl1AROcJNICxY1FQgPz8Jlcwyc8/MK4OgCjiiCMiNT2fouC77+B2Q1EwbRo++AAAli71/3ToUH+pyd9/H/iV5GSccw5Gj8bcuVi+HADmzMG6dejdGy4XKivxww+45BLs348jj8Tkyf7RFupCOrfeCqsVkuSfBEgt/1CXU3n9dcydi8svxwMP4PHHG8YpCHA6MXgwEhIwYQLeegvx8SgrM+RE9g899NDll18e+Oe555575ZVXHnXUUU6n888//3zzzTfrrzrkak2tTwS4XC6LxdL6oyuKoiiK5JNCD9j1j+i32uv1ut1ubQ7t8SqK4vF4NDm6y+VqdNVPIlMK+etU/QZjD3S7YrhcI0j674EG8H//h8suO7AIXwOyjF69DvzzzDPx8ccRDCYx8cBsyoGBiT/+6H/w11/+B6IImw02Gzp1wtateO01TJ+Ol1/2/3ThQsTE4JtvACA1Faef7h/UqC61WP8zZvZsAIiNxZ134r77DvxILdsA/NNj1697Vt+zc+ZAELBhA667Dldcgf/9D2VlSE+Hz2eAmb8bePLJJ4cMGRL455YtWx566KHrrrtuyZIlCxYsuPnmm6dPnx74aYlGdSrl5eWiKLZ+WjpFUXw+n9vlDj3g2tra2tpauxZrinq93rKysjgt+pUqqyoVRamoqCiJ1eAVLy8v12qBXqLoC0cCTWQiigKfzwAJtCCgd29s29b4T3Ny/LmjIODbbzF+fMTjOeoof8Ysy0hMxBlnYMuWhtPEp6b609Z58/xBAsjLQ1wcZNk/BPDooxvff3Y2iosPqg859FBceileeOHAGi4N8jSr1T/z3aBB6NIFa9YgkFK+8ALuuw+CgLQ0uFzGWDqnvgcffHDXrl2pqakAzj777AULFlx22WXjx49fv369z+erq6tbs2bNM+rUgwCA3NxcTeK02+0WiyUzM7OV28uKbLVaExISQg+4pqamuro6R32TRZfX67VYLJqc8yx3liiK2dnZmhxd5MKe1J6EqQfaEA45BIIALT5PyUDUEg5DpFO5ufj7b8hyI+tRqzllnz6oqIhG9gxg+XL/uoZuN+rqsHAhHA4AsNn8WezIkVi40H/Fff75ADB5MgCUluLII5Gc3ML+t2xB//54+WWcdpr/mZUr0bkzioqQkOA/VoO7x5IEUUT//r6ff7YkJ+P44w/66fr1yMnBLbfg3nvhdDZZ3q1P96jjMQEACxYsALA+MIE2AOCCCy7QOkbSDGcyIdPQ86hiDiIkOogsG6MHGkDHjv71CP9N/YtcvTqqU0yMGIGMDP9jNaO96Sb/bCFPPonff0eXLo1fwN5004GC6aYkJ+O++zBwILp2RUICYmMPlDjX1SErS51z46BfOe44XHZZ3YcfOtTs/OuvD/rpJ5/g8suRmgqfr1WzAVLUMP8jIv0LOYH++mt8/XWTlZhERqOu32GIHujsbDidjUwi8cYbUBSIIhISohrPyy9j376Dqrp++w1dusDlwo03NveLU6a0av9XXonevZGfj6eegtN50OLhd9+NQw5puP2iRZgwwdWlS5MrPd17r3858UYvQogMR8/ddUQmw4olooOoPdCGSKAzMqAoB/Ux79uH7t1x5ZUQBHzwASyWqMYzYgSAA7NEd+mCX37B3XfDYmnhfAZbOXnllQ2fueEGHFzC4DdmTAupcUyMf2oOIvNgDz5R5IUpgebQATILA5VwdOiA7Gz8+eeBZw4/HLt3+2t/Tz1Vm6hqa9G7NxIS/CP2dF6LGxMDi8VfcEJERNRKYUp8WQNNZiHLhinhsFoxZox/WW8AycnYt8//t3jkkdBi/i6/9etRW4urrtL6BLVCbCzsdlRVhWFXPh/y87VujwmwBoGIjCDkBHrqVBxzDLKytG5IqzHXD0VurpyR4Rs2TOs4IsjngywbowcawLhx2LMHBQXAwVNK1tZqGZU6AW7nzlrG0Ep2OxISGo4+bINnn4XN5i9iIaJ2bm3h2kpX5aaSTVoHQhHEHmgKnqlfbnX1DUP0QAPo3h1eLy65BGeeeWA0ocWCP/7QOjKDFHZZrUhPD8NcJffcA0HAI49o3R5q38qd5VWeqs+2fqZ1IARwTKfZhZwmfPcdli/Htm0YNUrrthCFgc8HRYn28Ls2i4/HL78cuKLp2xc7dvg7pKmVMjJCTaBlGR07omNH1Ftam0gDnAFQJ9TUmS+HuYXcR3TiiTj6aHTrpnVDiMJDTaCN0gMNIDXV/0AQsGULxo0zUkWVHnTsiKKikPbgciElBYriXzKGSCtq3iZyfi2iyAv5z0wUoSjmvqdP7YrhEujycnTtCsA/mfE772gdkNHk5GD/fkhS2/fg9UIQ4PVyQZYwECAo/EJpK3+XJwsHiCIvHAk0AFkOdT9RI/CjJTRmP4E+HwDDlHCo8vOhKP6Bj9nZWkdjNJ06oaYGdXVt34M6cbgsBz2ftMejdePJZHjpQRQt7Wkpb0MESVozVg00hS4jA15vSBNxqOs+KkoQk598/z2mTcP338e39hfaDZaNkhmo72KTdze1d2FKoA3BQKGSdtS7KUyg24/sbFit2L+/7XuQZYgiLJYgEujTTsOSJXj//cRDDuFb7SCcuCAMeA2iD7waNDdOY0d0EJ8PgsAEuh2Ji0NiIgoL274HRfG/Z+qvaOjxNDm4etcu1NSgshK//BJ76qn88KRw4zUIUeS1px5oolZQa6ANMYcxhYXdjm7dsGNH2/egJtA220EJ9Fdfoby88bGJgdXX3W5h7Vp+hDbEfrs246kjipqQ04RVq/DTT1i1SuuGEIWHJLEHut3JyQlp8mz1rkVs7IG1bABcdBFqa/2TDG7bBgArVwLA//0fpk49sNnq1Vo3nsxEvRxjFk0UeSEn0EcdhTFjYOq1nakhU1fsMIFuhzp3xv79bZ9MSJYhCMjIOCgLHzAAAJxO/Pe/mDABd9+Nm25CTQ3++19I0oFbHB4Pe6ApbLh+h07wJWgPwjTbrakzKmpX1N5ElnC0Kx07oqICDgcSE4P+3bfewrhxUBRkZR20IMuGDQCgKPjvf6EoePhhiCLS0vxrxcfHIzkZNTVybCzfag0x+SAi/Wt/NdDM9alZau8ge6DbldxcfP99W6o4PB48+ijy8gAgO9s/ElGdEW/qVMTFISHhwEeOLPsnSQTg9WLjRlxxRfX+/SGs4GJGAgROxNFmnZI6pdnTju12rNaBEMApZcyOs3AQHUQt4WAPdLuycSNcLvTv3/KWH3/sf+Dx4K23MG0atmzB2WcDQEYGysoQE4M5czBmDDIzMWaMf2K7f/czWCxITcUNN1Rp3XTdUaBwJcI2Y8ZGFDUhl3AYrgeaqFleLywWJtDty2mnwWKBz4dPPsHGjbjxRiQmYv58TJvWcMsHH8To0Rg1Cm43nE7U1ABAZSUEAV26oKoKXi9uvx0Afv4Zxx3n/61+/bB580H74aLfFDmsgSGKgnCkCYLAHmgyDa8XosgEut15+mkAOPNM3H03kpPx3nu44AJs24bLL8fy5Qc2274dnTtjzx4UF/uzZ9X33yMpCZs2HfgsTEvDDz/giScgCPj6ayQnA4AgICUFgoCcHK0brFfsQyUiQ2hPS3nXD5ioCeyBbp+uvfbAY0XB+edDltGnD157DRMmICYGADIzUVvb5KfdL7/4a6Dj4gCgogKyjFtv9c/RUVWF007DoYeishLp6di4UesGk4nxW44o8tpTCYeBsnzSjs/HBLo9sliQloaKClitDVc/8fng88Fuh9fb8Lc6dUJmJjZsgKLgf/8DAEGAywVRhCwjPt6/WZcuAPDyy/5ZPkpL2z5lnrm5Jff2iu12i13rQAyO33VEkcdBhEQHUXugDXRhSOGyeDHuvhu33eb/Z4P3QIPs2WaDICA/H+vXQ5axdSvOPx+rViEpCUlJmDMHhx9+UI0HgI4dD0yTxyu0ZrCEl4j0L0w90EygySzUHmgm0O3Q4Yfj8MMBYOhQnHcekpJQU+Nf2j1AEDB8OCoqsH07hg6FzeZ/vk8fvPgiAEyejK+/xvHH47LLtG4PtVe8AtEev0HagfbUDcKcKFxMfb0kSZwEur2bOhWHHIKKCkgScnORkeFPrAUBMTFYvRqXXAIA69Y18rv334/MTH/NBhERmRV7oCkY7eAiRE2g20FDqTmB5Hj3bv+D2bPRuTOmTgWACy9s8hf798fWrVpHT0REERampbyJzMLrhdXKBJoauummA4+7ddM6GrPyd8iwR4aI9K79TWNH1CyPB3bOAUCkEc4DTUSGEHICvW0bfvqJ9yzJNCQJVt6YISKituI4zvYg5AQ6LQ1gDzSZBxNoIjIwgdmbbvB1MLWQE+gOHTB2LHr21LohrcAsn1qBCTSRVmyirUdaj5E5I7UOhCgMWI9kbmGqgSYyCybQRGRQzNiIoqY9zQOtYj80NYvzQBORsfFbTmuHdz48NSa1d0ZvrQOhCApHAi0IzErJNCTpwPJyRKQBfp8Qke61px7oQw9FaioOOUTrOIxNgcl78b1eJtBkHpIsTfloyqebP9U6kCBwDFyIeAKJooA10EQHYQ00mYlaFMuMqr3g60wULWHqgTZEl+S+faisxLffah0H6Rp7oMlkBAhc24+IKLzaUwkHUSv4fBxESCYiQBAMk0CzpzxUJr0lXFRbpHUIRA2FnEDv2YMff8QXX2jdEKLwYAkHmYkAwSpavbJX60CI2u6535/TOgSihsJUA22ISmhDBElaYw80mYkAQRREn+LTOhCKHvN15M9bP88luZySU+tAiA4IOYHu0QPjxmHiRK0b0goGuYlJ2mIPNJmKAFEQZUXWOo4gmC//oxDVemqX5y8/4/0ztA6E6ICQE2iLBaIIL+8PkhkoCnw+JtBkKoIgGCuB5nJ67c2OHTsefvjhY489NvDMo48+es899xxxxBHqP4/MPXLyvMlLty+949s7tA6WyC9MmQI7d8ks2ANNJiNCNMogQgqRv/PeaK92z549Bw4cuHXr1sAzCxcu/L//+7/PPvtM/edxPY/7cuuXAB79+dFcW+4RHY/IiM2IWng+n6+wsDCoXykpLpFluWB/QZIzKcSjO53Oqqoqn0+bKqzKykpJklwuV/QPXVBVIMtyaWlpfn6+Jm0vKCjIzs5uZoP2lCmwBppaovZAswaaTEOAIAiCsYoijBUthYXT6ezfvz+ARx999Pbbb9+3b1+XLl0SExPVn54/5PybltwEINGeeNHhF8VaY6MZmyRJAHJyclr/K+l16aIoZnfIzskK4rca5XA44uLigjp6GMXGxvp8vg4dOkT/0LWxtYIopKWladV2WW7hxh17oCl45n25FQWyzASaTOXtdW/PWz/vkmGXaB0IRZxBq19efvnlkpIS9bHH4wHw0ksv3X333bNmzVKfzIzL7JrcNSsha33x+mJXcc/UnlGO0GKxWIO5NWmxWNrwW42yWq1h2U+bjx74f/QPLUDQsO2WllKBcIRlrJ7dli4pqJ1jAk0m41N8kiy9uOrFa0deq3UsFA2G68K/6qqrAo/vvfdeAKeddtppp51Wf5v8/+Qvz1/+yE+PZMZlah1vaxnuhaCgtKeFVLp3R1oaxozROg7S2IIFC0466aTLL7/83z9iDzSZjyiIAG5ZeovWgRCFJNYaq0BhVko6EXIPtNr9bN57+mQ+c+bM6du3b0xMTP0ni4qKLBaLJMHhSK2udhYWurUO00+SpJKSErvdrnUgjauqqnK73YJeb0OVlJTU1dU5nTqdPrakpCQK5X0W0eKTfUaZCtqgRQgUBd/v/P6HnT/kleUd1vkwrWMhaleDCCks9JoqtV5BQcGTTz552WWX1X/SZrP9U2glxsRY7Xa9XBMKgmCz2XSbQNtsNlmW9Ryezs9epA8hK3Kv1F6bSjdp3VaiUKmTyej2cp3aGw4ipHbnqKOOevjhh8ePH1//yfT0dKvV6nbDakVamj09Xeso/+H1et1ud7p+AjqYIAgul0u34blcroSEhJSUFK0DaVxNTU2kDyEK4jtnvHPYq4f5ZGP0QBM15ZR+p3y789vc5FytAyECwpBAWyyw2eDWy/1uigZ9Xy/dddddffr0Oemkk7Kyshrd4NVXX23qd2WZNdBkNokxiTBUvx1nrQ6RWauE1fewWVtHjdLzyx3yIEJBgCDoPKM6ECr0nvxR6GbMmPHss89ecMEFS5YsCbb4VR1EyIVUyEz6pPexitZEe6LWgVA0mLiI/I+CP37M//G3vb9pHUgrmPZFoAPCNAsHs1LSjV69er311ltTp069/vrr1RmRWo890GRCateBjjtyqP145JFHVq9e3eISFY1jVkp6IgKYNWuWOgtj22+cMYEm3Zg5c+add965adOmmTNnBjsBuyxDUZhAk6mIEDsndc6Kzwp9V2QMOv5CrqysvPzyy5977rkdO3YE/ctMoElPRACPPfaY1+sVBOH555/fvXt30PswTmkdtQdPPPHE3LlzH3vssYsvvrhXr15B/a7PxxIOMidjFBYbIUYKxeOPP/78889v2bLlhhtueO+994L6XbU6xRj3UowQI4VIBPDjjz+OGDEiIyPjlVdeueWWICfbZ2Ex6U9WVpbFYrHb7Q3mqmuR2gPNBJpM5tqR1045ZIrWUVCU6DnFvPPOO6+99toNGzb07dv3q6++Cup3x3QdM6brmMEdBmvdCCJAnYXjm2++qa6u3r9//9q1a5ctWxb0PozVA81cP3TmPYcs4SBTEgTBGD3QAPSd/xmCnscRXnLJJeeee2737t09Hs/rr79umnZR+On+Y8AK4MEHH1T/cfjhhx9++OFtaqfuG0rUCj4fe6DJhN5d/+7+2v2PT3xc60CovevTp0/g8axZs7QOh6jt2tM0dkQt8fkAsAeadOSBBx5YsGBBVVVVKDvZW7233FnOnl0yAQO9jdllbm7h6GoTBLRtSpooY7k2tUTtgWYCTfpx7733Dh069PPPP7/00kuPOuqotq3+/fSkp3/Y9YPWTaGIM9Iwu7a2jkgnwjEPNHugySzUHmiWcJCuzJ07d9SoUddff/2jjz7atj0IMFINNFHj/J1gfCeTLoSjhEMU/XkHtRPm/fzy+SAI7IEmHXnkkUfuu+++/Pz8G264obS0tG07mbd+3sebPpZkSevWtAI7GakJAgR2QpN+hNzVZrgE2rzJH4VOkgDWQJOe3HnnnSUlJenp6T6f76233mrbTtR7+kw+2gtTf8uZtUCFDCcc96otFiMl0ERNYw806VBWVhYAi8Vy+eWXt20Plw2/LCM+QxTCUbNHumfWFFP4Z1V6Ij0I0ywcBhpESNQ0SfLfUyEiMhyzps5+QjtoIxlHODIFUTRSXYSBQqWoU2+lMIEmkxEEwUBph4FC1R1TdxOZe44RMpwwJdCSEcamUOjM3ovv80EUmUCT2QgQoDDzIFPgu5j0oblMYfjw4YcddtiqVavUf3q93g4dOhx77LGLFi06sJEgID4eDofWDaEoMm8vvloDzQSazMco2TNHOobOKK91sNgDTbrS3CDClStXTpo0qXPnzuo/16xZ07lz5w4dOowZMyawTWFhYYcPP5SzskrPPDOacUuSVFJSEhMT0/pfsZWVpSlKVUWFu7AwxKM7nc6KigqrRtMFl5eX+3w+TebCFEtK0mS5tra2MuRz2DbFxcXZ2dmR2z8TaDIlURD9HdCGyE6ZIFGjDPHupXajuRTw559/BpCTk6P+MzMzc82aNePHj9+4ceMRRxyhPhkTEyMIgiAIQeWyobNYLHa7PaiDWu12AbDZbAg5VJ/PFxMTE+UmB8TExEiSpMnRRbtdEASr1WrRru0R3b9awmH2QhVqd0RBVBSFXXdkaOyBJl1pLoGeNWvWvn37li5d+uqrr15//fW33HKLLMtHHXXU8OHDA9ukpaXhkkssGRlpaWnRjFuSJIfDEdxBk5IgiokJCQg51JiYGEVRotzkAFmWJUnS5ugej08UY2NjYzVqe01NTUT3L0msgSYTUhNoraMgCpnAGxSkF80l0IHq50mTJgFYvXp149utWIGSEtx2m9ZtIQoVE2gyJVEQZUU2StedUeLULbNeLG0t3fpT/k/f7vh2QNYArWMhCsssHMcdhwsu0LohFCWWsjLbxx9rHUWkeL2wWJhAk979+eefF1100VVXXRV45pVXXjn55JNnzZpVWVl59dVXn3jiiXPmzAn81D+NnTnTKjrA3ItdD+gwYGy3scd2P1brQCiKdPypFY5hcIJgjGkZWNlKLZEkWCx8p5DeCYJw2GGHlZWVBZ655557duzYMXbs2IyMjLi4uP/85z9Lly4N/NThcHi93qrqKptoi2acNTU1FovFZmvtQb2y1+fzeb3eqqqqEA9dW1tbU1MT+n7aQJIkrQ5dV1snK7LT6dTk6DU1NSkpKZE+Ci8ESSfCkUB/8AGqqnDffVq3pXUMkeuTRjiIkAyhX79+r7322ujRowPPDBgwoKSkJCMjY+fOnbNmzXrwwQeHDh0a+Knb5ZYkqa6uLsoJdF1dncViaf3YX6/sVRRF8kp1dXWhH9rhcIS+nzbwer1aHdrpciqK4nQ6NTm6I8IT2hqvc53phqm1px5oopawB5oM4ZJLLlm3bl1xcfG55557zDHHLF++3Ol03nHHHWefffa+ffvuv//+FStWPPDAA4HtMzIyYmNjO3XqZLfYoxmnxWKxWCyZmZmt3N7r81qt1rj4uMD0qW1WU1NTXV0d+n7awOv1AtDk0JneTItoSUtP0+ToZq29JmpUOBLouDgUF2vdEKIwYAJNhjB//vzA4+XLlwP47bffmtlegJGW8iZqCt/JpB/hGC21ezcqK9kJTSYgSdBoeRyiCFqwccHS7UsrXZVaB0JE1Cr6r9gJR7Lw3HP46isoijE67pjoU9PUBNoQb2Si1ps2eFphbWFyTLLWgbRA7VxkJUBIzPvx5c+o+O4gfQhHD7TFAp9P64YQhYFawkFkMgZawk3/3U76Z9YrkCp31Y/5P24o2aB1IERAeBLo+fPx2WdwubRuS+uwd5GaxhIOIjIwc2bOftWeagA7K3ZqHQgREJ4SjksvhSCg1TN9akZNnU16aU5hwQSaTMk/9IoffmRofAOTnoSphEOWmZiSCTCBJnPijTcyvl5pvcb3GD+hxwStAyECwpNAv/IKPv8cS5Zo3RaiUDGBJtIcu8pDZNYTKAgCABmy1oFQFOn44j8cCXRSEhQFWqx7RBrw+cQ9e7QOIlKYQJMpGWgQoZ6/L0lzgiCYdYgkNVDrqa32VH+57UutA2lSOBLoMWNgtaLVa01pjH971DQm0GRKXH6ineAcJkRRE44EWhQBJqZkBkygyZREQVQUhTm06Zl7Im0D3UjZWra10l35e8HvWgdCERSOBHr9ekgStm/Xui0UFTabkpWldRCRwgSaTEktHjVKXmWUOCnaBAgwRgmH/0rGCLm+bun/dko4Euibb8axx+KEE7RuC0WDr0MH74knah1FxFrn40IqZELLdi77bsd3Oyp2aB0IUdvpP6OisNPzRUg4Emhjza9slDj1zLznkD3QZGJ6/ioiaiUDvY2Z8ZtbOBLoHTuwYgUWLdK6LS3hGoTUEibQRGR0BkoxWy+/Kj+vPK/OW+f1ebWOhQgIz0qETEzJLFjCQaYk+O8Tah1H65gy/6MQdUvp1jGxY2psqk/2aR0LERCeHuisLAgCiou1bgtRqJhAkymd2u/Usd3G5iTnaB1IKzB5Do2JywYECAIELqTSXuj+jRy+aex8BrkoNG/9bvSY9xwygSZT+rPwz+X5y3/d+6vWgVCE6T7nCLV9xlpIxTiRUhuEI4HOycGECZg40TA5NFETmECTKRmoKEJgTWDIjJRiBsPfA60YoQfanK8AHSQcNdBOJ77/Hjk5OPZYrZtD1HaKAp+PgwjJhPy39ZmakpGJgmgRLV7ZOIMI+RdnauHogU5Px0kn4bTTtG5L65j00pzCggk0mZlRPvyMEidFmQCLYOEgwvZC95cfYaqBtlggSVq3pSWCwAlDqBmKwmnsyJwMtAayGi7RvwkQBMEgJRwUJnr+1ApHAg1AECDr/j2t9j2zB5qaoCiQZdZAE2lMz1+ZpC1REH2KAXqg+R4OFz3PKhOmeaCXLMH+/TjrLK2bQxFm6osQ1kCTWen5S4ioldRBhIYYIsm/uPYgHMlCRQXOOgsDB2rdltYxwt8eaYI90GRa6re5UT78jBInRZ0gCOzcbSf0fxESjhKOjAzExyM+Xuu2EIWECTSZVUFNgSRLK/eu1DoQigYTp5hG6YGm9qA91UCr+LdHTVAUKIp/XSAi0oqJ879I83famfX8Cfhi6xcvrnpR6ziCCJhMLEz1nh99hMxMXHed1s1pFqfgCAvznkb2QJO5GSIx1f99W/0zxAvdBgKE84ecPyBjgNaBUDSob2M9v5nD19vGnl0yOPZAk2kpABf5I+MTIcowyO1uMrsw9UBfcQVsNq3bQhQS9kCTWQ3vPNwqWruldNM6kFbRc58TaUsURM4D3U6UOkplRd5ZuVPrQJoUvhpoo/RAGyVOPTPpOWQPNJmVIisARMEgb25zfsBEj4mvQCyixS25tY6CCAhnCQeRwTGBJrMa0XnEMd2OGdV5lNaBtIqJ878oMe/5+3Lrl8/+9qzWUbQWC/rNLUzJwvz5eOUVrdtCFBJZhqKwhINMi4kpERmLnj+1wpRAG+ievoFCpehiDzSZlnE6wthpFwoFigAuNaI9vgTtQZgGESqKiWc3o3aCCTSR9vhNQk2o9lQX1hbWeevU6wStw6Go0PGVSJiShauvxjnnaN0WotaaNWvW5MmTGzzJEg4yq8Lawh/zf/xk0ydaB0LRYNbuz37P96vz1PVO6611IERA2HqgiYzjxRdfHDBgwHfffVf/yd27d1dX21yurKKiivx8j9YxHiBJUnFxsW5Xr62qqnK73R6Pjs5YfUVFRfHx8ZWVlVoH0rh9+/bl5ORE4UDVrmqv7P1l7y9at7hVdPtuJ21dM/IaWZFn/zpb60CIgLAl0O+8g3378OSTWjenFfjRHDqDn8Nly5YBEA+u1ejcuXNcnNVut3Ts2CEnR0cN9Hq9oihGJ81qg4SEBJfL1bFjR60DaZwoigkJCcnJyVoH0jifzxedA1lEi81iG95puNYtpmgwaw/0PWPv+WDDB5N7T1YUhasCmZ7+q3TaUw80/94IADB79uwvvviiqKio/pNWq1UUrQDsdotVT38WiqJYLBarrmKqx2KxMLxQwovOgRJjEiWf9P3O77VuMUWWmnOYuAv//Q3vL92x1C2542xxWsfSHOb37UGYvleSkuD1QpY5Aov0Lzc395prrvn387IMgG9hMqHc5NxYa2y3VK5E2A6YO3MTAEAR+A5pB3T/IocvWeBEHGRwTKDJrBxeh0tybSzZqHUgFA0mvgI5rPNhkiyt3b9W60CIwpVA2+2QZX8ComdM8alp6m1PJtBkPkn2pFhbbL/MfloHQhEmQIAgK7r/Lg6hgQBkWfYpURo/0EamvYSJnnZTA33ppejcmROAkaGxB5rMTDHMl7qJS3ijw8QJ9Oq9qyWfVOmqtAjMN0hjYUoWSkqw0SA3B/nRTE1Q54FmAk3mJJj5zn7YLdu5LO2xtN/2/aZ1IEEzdw/0npo9CpT9tfu1DoQoLAn0mDG4/XasXw+XS+vmUFSY9CJE7YFmmQ+ZT6w19vR+p5876FytA6HIMv0sHNcedq1VtHZN6ap1IC3gxWp7EI4SDpcLDz2EH39kCQcZGmugyaxkRf5y65dFdUXnHKL3JWMFCHpIPvyZqA4iaQMT90BbRAsAr+zVOhCKPN13ZoUjWfj9dxxyCGDajklqJ3w+CAITaDIhq2g9+5CzLxhygdaBGIf65W3A7zRzz0BcVFckydIve4yxpiaFQv+Xr+FIFkQRoghFYQJNhqa+f0397UPtlwDBxHf2w07/MwA0Q/+ZR5uNyhllFa05STpdmbUhA7+JqGVh6m0TBCbQ7YQiCIJJX2jOwkGkPUEXJbzLdi6rclftq96ndSBtoYcTGCEdEzselXvUoA6DtA6EIs5/Hajji5DwJdBGYd5PFgqRLEMQjPReJmo9ndQWG4vxzphi8hda9skr96xctnOZ1oFQxOn/LlCYEmiLxT8HGJFhsQeaTMxApbF6yP/U06WHSKg+QRQgmHmUJBlImJKFJUvwzTfYs0fr5lBUmPRKiT3QZG76v7OvQNFXt5PeT1gTUev+hW6zTkmdRIh7q/ZqHUjrmPZ1ICBsCbTaa2feP1pqDzgPNJmYvhLT5unmm8SgPdAGDbs1Eu2Jp/U/7dT+p2odCFG4lvJWkw4m0O2ESV9otQeaJRxkVkbJq3QUp3EuOurT0QkMNwHC4m2LS+pKzhpwltaxtCparUMwMt2/i8OULJxzDsaORVaW1s0hajuWcJCJfb3960d+ekTrKFpFD/mfoBj1g0CAoIPzFynqeyO/Ml/rQIjC1QOtzgMtG6Gu36S9p9EjCJAkrYOICPZAE2lOJ512iqDAgGm0ml/q4QokQnZW7Jw2aNqITiO0DqQl6l15874QUaCTj4JmtKcaaHYthoV5T6O6EqF520ftnVG+zvUTp34iCS5snX8Xh6B3em+baONS3u2BR/EAKKgt0DqQJnEhFQqeSV9olnCQiRXWFhbVFmkdRcsEgSsmhsqgeX8rfbTxo5dXv6x1FBRxdtEOoFNCJ60DaVKYSjg2bMBPP+GHH3DOOVq3iKiNWMJBJmagTjs9zPKr3j42Yipv+iuQ6UOnZyVwwFU7oPvOrDAlCzYbYNqOSWrIpC80SzjIxBLtiaIg6r9vUl1IT/M4NQ8glLANGnwrmf4KgVTZCdmiIHZN7qp1IE0K6zR2Pp/WzSFqO5ZwkIk9P/l5YyyALOhi+ir9D2BqnAIYs+O89WIsMW6fW+soWmDua5joSItLS49NPyrnKK0DaVKYeqBHjcLRR+Oww7RuTiuY+pMlSkx6DtUEmsiUPvz7w7fXvZ1Xmqd1IC1Qe6C1jsKoFCiCIOihBiZyREE0dwPJKFjvqYWaGnTqhIcf1joOOogsQxSZQ5M5qYPZE2MStQ6kZYr2FRz++ksj9kMLMHmFgyFKOIZlD0uNST2kwyFaB0IRFNZp7FjC0U7o/sOrbVjCQSa2vWy7AmV39W6tA2mBTmqgVeps0AbSHmqgLYLFpzDZMD/9X76GKYG2WiGK8BpmlLfGZBklJfj8c63jaBPzJpg+H3ugyZxu+foWtWxU1v9yV4LJS3ijQIbuX+WDORyOp5566qyzznriiSfUZwoKCk466aSpU6e+9dZbDTa2W+wen0frkInCuBIhwJUI2wuTnkOWcJBZvfXnW91Suu2q2pURn6F1LC0QIOgn/zNiV64RSzji4+NvvfXWurq63NzcmTNnAujYseOhhx7at2/fyZMnBzarq6sDIHklt8etPo4OSZIcDkdQR3S73AoUl9MVepwOhyPYo4eRw+GQJEmTozscDkVRPB6Phm1vfoMwJdBlZfjxR8yfj0MP1aSdraUu+KI5jwc+H/bs0ToOOog6jR2R+Xww5QNJlk5+7+Sf8n/ql9FP63Cao+Z/RsxcdUEB9DGRdlB+/vnnk08+edu2bV27+ucsW758+UMPPXTUUUf16tUrK8s/63NFRQUAl9PldDnVx9EhSVJVVVVQR6ytrVUUpbq6uiIm1DidTmdVVVV8fHzU2ltfZWWlz+ezqVMVR1eVo0qRFaczqq/1QQFUVTW/QXvqgdZPcqRGoodUvm2MG3mz2ANNZjWhx4Sl25fCEF2qAhRFURRF2wJI/ddfNhm5AWfhKCsrs9ls999//913333++edfdtllTz/99KpVq5KTk5OTkwObdenSBUCHgg4VZRXq4+iQJEkQhKCOmOHOEAWxQ4cOXXJCjdPhcMTFxUWzvfXFxcVJkpSdnR39Q4s1omgRU1JStGp7iwVvYUqgVYZIPUya/FHoWANNJuYfXmaED0BdZPlKvf8bjeES6FNPPfXUU09VH5911lkAxo0bB+C2227798acxq5d0cWnQRPCNIiwc2dMnIgTT9S6Oa2gh+8Po+doejiHEaD2QBOZUr+MfhbRMipnlNaBtEAnJRxFdUWKoqwpXKP1+QiaEWuggzLvr3nz/pqn+TuEKEz5gsUCmw0t1YuQn6E/3XRSRx4BnMaOTKyorsgjeW5ZeovWgbRM0U2vkxELOQQIkiJpHUUkGygIOnl7tByqAd8/1HrhmwfaajVG6mHS5C+qTHoO2QNNJma32BUYoEtVEATo576tPqIIJl4FghEmKwyBPys12ktD5hOmfEEQIIrGWEhFD8mf1QqLBd27ax1HGwl6OIcR4PPBYtE6CKLIGNRhkAChW0o3rQNpmR4qEAzdd6iXy4/ISI9L98pel+TSOhBq78LXAx0XB43m6mst9fa8Dj6ajc2855CDCMnEBAiCIOyo2KF1IK2ieQrYMbmjIAiDswdrfSaCJsB4s3AERRREzd8eLSqoKah0V36z4xutA6EICt8sHBYLJDPXXdEBJk2gZZk90GRaNtFms9gkWe+f0upS3lpHYeBZOPRyAiNmxqEzBEGwWsI6h1i4qXcwzP1CUPhKOCwWlnC0FyY9h2oPNJEhDBw4MDMzc+3ateo/r7jiimOPPfbII49UFEUQBEEQ7rnnnga/4vF5vD6v1oG3jtafMYZOgMzdAy1AgKL9O6RVDBEktVWT13BVVVU33HBDUVHRkiVL1Gfmzp27fPny4uLiRYsWNfILCxeirg6XXaZ1i1qin+RPP5EExdQlHOyBJkN45JFHLrnkku7du7/22msvvfSS+swnn3zyxx9/lJaWAujdu/fYsWMD26tPAlCglJSWRK3At6yszBLMH5XH55G8kgKltKw0xhITyqFra2trampiYtq4kz6JfVLtqdmW7MCpaz2v11teXp6QkBDayWuLqqoqn+xzOBxtCDt05eXlKSkpkT6KIUo4KGx0/FI3mUCnpKTccsstN9xwQ+CZefPm3X333a+99lr9zfbu3as+6Gyx+FavLvrnn5EmSVJhYWFQH822oqIsWa4qL68LOUin01lZWdnmXxeqqnIAj8dT3KZIKioqJEnyejXoSbKUlKRJksfhiNoL3cD+/fsjtyQSE2gyivfee2/p0qUPPfTQyJEj1WcURfnf//730UcfrV27tqSk5L///W9xcXFge3VaBhGirMiyLEctgVbXFGz9pBCyLKsrEcqyLAshdaPK/2hj5LICAerpasOhg2p1GCmKIkDwyT5Njh6dg6oLqRgih9ZDkPmV+cNfGT570uwLh16odSxtoYdz2JQmE2i327169eojjzwy8Ex5eXmnTp3+/vvv+pulp6erD3yXXIK4uMA/I02SJJfLFdThxJQUQRASEhJiQg7S4XDUb3vQLBYAVqu1zXuQJClqp7o+weu1iKLdZtPk6ADqIjlQldPYkVH85z//GT169IgRI84888zJkycvXrz4pptueuKJJ4YPH37jjTc+++yz5eXljz32WGD7Dh06ALCKVrfPnZqZGiOG1LnbeoqiWCyWzMzMVm7vltw2q82n+DKzMuOscaEcOi4uLiYmRm14G6RUpwiCkJaW1oY9eL1eSZLafOhQpNalWi1We6xdk6NHp1sn3hbv9Xm9stdusUe/jUHRw1wuek5Aja7JBPqZZ55Zv359bGwsgBkzZrzxxhtTpky57bbbrrjiivqbxcfH+x999hlqamz33x+duCVJiouLO3D01oiNRVmZ/b337FdfHXoALpcruKPXJwjo3Fk89ti27cHpdEqS1PajhyIuThJFi8USq8nRgbi4kL5Tm8cEmozi0ksvvfTSS9XHixcvBjBv3jz1n88991xTv5URn1FYWygo2n+pt0zrL33j1kCbfhYO/yhJ470yZDZNJtC333574PEbb7wB4I477mhuT+YtjQ2/PXuwbx82bNA6jrYy6QvNBJrMTZ1fWeeph3EzV50QBMErG2SoaJss2rbou53f7a3e2y+zn9axGMD2iu0VrorV+1cbtIRDz8I3EczVV2P7dq2b0yxRRHY2pkzROg6DU6+UFMV8EyazBprMrdZTKytynacuJi5KJRxtIUCRtc+eDZ3B62ElmsgRwzV7WBTo4UvSzO8FjYXvjSiKMMTyoab+ZKFQsAeazE3tmCyoLtA6kJbpJX/VRxRBMf080FMOmTK269jMhNYW1mtDD6kzRVj48oUPPsDbb+s9PdVVnYl+Imk/kTeLPdBkbskxyQBcPl2vgcwK11AJMMokFW1jFa0KFJ9shHUnyNTCl0DfcANOPNEAqZX+I9Q/k55D9kCTuQ3sMFDQxcQAzREgKIpi7mFwEeUfRGjOD2ngn3mgDVGmYuLLmOjQ+adV+PIFdSVC/b+n9RDhjh2QZRQVaR1Hm5iu9DmAPdBkbk9OfHJCzwm9UntpHUhzBEFQoH0CrfNv7uYj1/zsRZQoiFAgQ9dt1NH7RzeBmE/4Eug//8TPP8Pt1rpFFHl6uAiJAPZAk7kZYoILvfRAK+r/dH2umoxdUQwaeWtsLNn40+6flu9arnUgzTHx+Y8yPZ/J8OULEydiyBADpFZ6iFAPMdC/MIEmc1u5Z+UPu374q+gvrQNpjiAIADRPoBVB0X+5S5PB6zjnCJ0oiIDee6CpPQhfvrBiBb77Dps2ad0iiiwFpr0AYAJN5lbmKgOwv3a/1oE0Rx1EqHkC7WfAjzpBMHMJh6zIh3U+bEzXMSM6jdA6llYw4PuHWi98+cIpp+Doo9G1q9YtapauZuEwNDOeRibQZG7Th04f03XMqJxRWgfSLAHQQQ+0oZm4hEMURItgUet8tI6F2ruwzgMN4NlntW5R09S/N/7Vhci8FyFMoMnc9lXv+3n3z59s+kTrQJqjq0JtnYQRFNPPAygIAgSTLxZDhhC+fOHkk7FsGZ5+WusWtUQPf3VqDMadzkIP5zACmECTuW2v2O6VvUu2LdE6kBboYRChUcuf/5mFw8QZtEW0CBAkWdI6kObo5zpQDzGYVfjyhQ4dMHEizj5b6xYZgcETUKN+sbSECTSZ2+iuowUIFn1P1qhmHpon0MYlCIJP9pm4g7bMWfbT7p/e2/Ce1oE0Rz8XYPqJxHzCly+89x6WLUO/flq3qCXm/ViJHpOeQybQZG6dEjvZLLZJvSZpHUizBOjnBr3heu/UgM3dAy1ChEEusUz8KhDCmUDX1sLnQ0qK1i1qlq7qd/UTSVDUc2jQ4JvFBJrMzeF2eHyeB5c/qHUgzREgQNE+PVJTH0ExXu+dKIg+xWfila7909hp/Q5pDZ1cB8LIqbx+zuG/hS9fSExETAxWrcL//qd1o5qlnxdjxw6tI2grWdbRaQxrs5hAk4k9+vOjABxeh9aBNEdXJRxGTDvUGmgTT5OsJtA6f2nUt7ERL8Co9cKXL3TrhhNOwI8/4vHHtW5Us8yY+UWVccc+toQJNJnYzG9mvvbHa4Kg99FXagmHT9G4A9W4laOCoI+lHCOmU2KniT0nntTnJK0DaZkiMN8ws/DlC4KAv/9GaamuE2idlHDoIYb2HH8TmECTib229rWLh118WKfDkmOTtY6lObrqgTYoRZ0J2qREUbSIFo/Po3UgzdFP6uyQHIqirC5YrXUgJmQN255EEWlpuPRSXH651o1qlnk/VihEisIEmkyrYlYFgIzHMyqcFdWuan2m0YH78rrI/wS91wk0EbWgKGZOoC2CxS7aXZJL60AMwrBvBP3fBQprvrBnD958U+sWtcS8HyvRY/BBhA6HIzs7u0OHDg2el2UT16cQAcDFwy62WWwbSjdoHUhzBAial3AYlyAIMmQTn0BBECyiRe+VSCodfE9We6oB7K/Zr3UgJhS+HmgATieSkrRuUUuMnPlRWDidzqKiomHDhtV/0uFweDzxkiQ7HPr6XPZ6vU6n0+HQ6cAvp9Ppcrn0HJ4oijabTetAmgwvykf0+rxen7fGVaN105skCAKgfQ20yoj9uDqZxiSiDbSKVq/Pq3UgLQQJfYx09M8no/veXCMKXwK9eTMAnHmm1i1qlk5qoA3N+OfQ5/PdcsstJ5100BiUsrJyp9PicLjLyuq0DvAgkiRVVlbGx8drHUjjqqqq3G63bjPUiooKt9vt9er0u7aysjLKR/wq7ysAr6x9ZVJv/c4Grc4joXUUBmbuGmgBgkUwSA80hUwPFyFNCV8C3b8/MjLw+ON49FGtG9Us836sUCtdfPHFffv2raioqP9kly5d4uOtmZkJubnpWgd4EK/Xa7FYcnNztQ6kcYmJiS6Xq1OnTloH0jiLxZKQkJCi1/npZTnaaWKFq6JTYqcpA6dsKNowKHuQ1iegEQIECNDJNMZ6/vJuitvnFn1iUW1RVkKW1rFEhgDDlHCQqYW1Bvqcc2CxYM0arRvVLCbQYWHk07ho0aLZs2e/9NJLDZ6XZeh7kWOiUF0y7JLiuuJVBatmfDFD61iaIECAbubaM+DnXLw13ibaUmJ1etEYOrWEQy/vkCbo5w4A56KOnLAm0J9/DknCzJnw6HV+GeOXH+iCGc+honAaOzK/J457It4W/+XWL7eXb9c6lsaJEC2Cxe1zaxuGAEGAYMQeaLXaVSdF5BHy+ZbPZ/82W+sojEFdUqfUUap1ICYU1nyhb18A+PVXTJumdbuaZsbkL6q4lDeRYYmi6JAcW8u2XjPyGq1jaZw6x4L2k5QJgDFLOARBECB4ZZ3W/YenjRAM+MqQ2YQ1XxgwAAAmTsQPP2jdrqaZMfOLNibQRIZlF+1W0XrrUbfurtqtdSyN089yiUacu0AtItf5OiOhKKwtTIlNqXBVhL6ryNHPLBx6CMGswpovqAWkw4eje3et29UEnZRwqLMNd+umdRxtpYdzGIE2sQaa2oPpQ6dLsjT90+ldU7pqHUsjBAhWweqWNC7hUFMf/VSytp4gCCJEnVyBRELHxI6CoPfqGofHoSjKL3t+0ToQiqCwJtBnnQWrFbNnY+9erdvVtKgPezcbk5ZwqG1iDzSZ3pr9awD0SuuldSCNEwTBZrE5pWjPkN0wDAP2PQciFwVR8yuQiLrmsGumDJyidRTNEtT/GfVdpB96vlIK60IqXbvCakVtLT76SOt2NU0/mZ9+IgmKmkCb8TqECTSZ3jO/PlPmLMM/abQ+xVhi6jy6mI5dz1/eTUUsCIIoiCavgRYEnd8c6JHaQxCE3BSdTj9qJDp+ncOaL7jdcLkgSbj8cq3b1QSdlHAYnUl7oFkDTab38I8Px1piBUFYkb9C61iaZLPYNJ+Fw9BEQZR8pi3hAPD7vt+/3fGtni9vUmJTMuIyTupzUui7ClGCPQFAoj1R60BMKKz5QmwsBAGCgNtv17pdTTNj12lUsQeayLC+n/79Z9M+EyD4FN+Wsi1ah9O4WGusXnqgDdhTIECwiNrPAxhRsdbYgpoC/b86ek7xKXRhzReSk/0PbrlF63Y1QRDg08HsmLr/s28udkEQzJhAswea2oPB2YMFQRiUNUiAUOYoq3ZXax1RI2IsMQ6vQ9sYjFu9qq4zYuJZOACc0PuESb0nMT0lbYU1XxBFpKVBFPWbICoKKiu1DsL4TFrCwR5oag+OeO2I/Op8Bco5H51T6arUOpxGxFpjNU+g/bmZEbNoAVbRau4e6HhbfLW7en/Nfq0DaYH++8h1TYAgCLKi3966cOcLgwYhIUG/3ZMWC2JitA7inx5og/5pqSUcktkK7JhAUztRMrPk6wu+TopJKqgtyE3W4yCnWGtsnVfjEo5ab225s/zDvz/U+mQER4EiQIi1xjq9Gk9jElGbSjaJghhvi9c6kCYZ9w6G3uj5PkO48wWPBzU12LpV63Y1gYMIQ6dOYq3ba6S2YgJN7ceArAEWwSIr8t4aPU45mmBPqHZXa9t7l2BPyIjLOLHPiVqfjLaIscRoPg9gRDm8jm+2f7OzYqfWgRiBkVOeclf5R1v0O6tbuPOFE0+ExQKbTet2NUEQdNR1utOYf/wmHUTIBJrajyR7kk/xATjrg7MArCpYpXVEB4mzxjm9TknR8rPaKlgFQRAEQ/YjWkWriRdSAXB6/9OP7na0zieJ00kntJ57cJunnkCdnMZGhTtfyMqCJOGQQ7RuVxN0lUAbmukSaHAWDmpPfLIPwB+Ff1z+xeWnvX+a1uEcJCkmqc5bp4dhcEasYRUEITkmWZ/DQ8NFFEQFiv5fHeMmrzqi41MY7nwhPh7QcXYlivB6ta/iMGavxkHBa34Ow4090NSuXDvyWgCSLL3+x+tDs4dqHc5BNpdu9vg8y3ct1zII9XNOz9/eTYu3xetkHsAIKagp+H7n96+seUXrQIzDyEmHboU7X5g6Ve91xrpN7sNozx5kZmLu3AgeQs8vcVsbpCjGvrQhar07j74zzhYHQFGUD876QOtwDjImd8yP+T8W1RVpG4YAwZj5MxJsCZqPwoyo1LjUI7ocMbLLSK0DoXYt3Am0upZKSorW7WqCzpN7AzHddQh7oKldSY1NPSTrELXGd8I7E7QO5yAJtoSx3cZq2y/uk32ljtI3/3xT65PRFon2xBp3jdZRRFCPlB6J9sQO8R20DqRp7IsJFx2fyQjkC6KIigr9Jli6Dcwo1E5a05WSqxdWTKCp/fhoykcWwQJgzf41wn+FuX9G8p5VqylQarw1K3avmPfXPK1jMWoJR6I9sc5bp44TNaV9Nfu+2/Hd4m2LtQ6kSf53jiHfPtRaEcgX4uP1O0+wuhKhTjqhu3bVOoI2MfU0dizhoPajY2LHh8Y/ZLFY1MFY+2v3r9rX2uk4Dnv1sMgNPazz1gkQtJ2jWh37r+dFHJrxzY5vPt70sYkn4uiV1uuMAWd8t+M7rQMxAINeBBpCBBLoUaMAYPZsrZvWaHNFSJL5kr9oM+NkJizhoPYm1ho7a/SsdVetU/9513d3TZing1oOBf0y+k0fNt1m0XI6VJvFlp2YfdaAs7Q+HW0xY9iMQzseuqF4g9aBREqsNfabHd/o/fJGYPIaKp/s2129W+somhTufMHhwKZNALBypdZNa4wgQJa174FWA9ixQ+vT0SaCAEGAR/sZpsKLJRzUPhVWFwYeuzyuPVV7WvVrEf4QFSD8sf8PLc+LkWfh+GTzJ6sLVltFq9aBRIogCiJEE9eokCGE+w/skENQVQUAX36pddMao5ME2sgUQVBMmkCzB5raoVPmnxJ47PV5HZKjNb+1vmj9n0V/hj2YQMJ6VO5Ry3YuUxRFw6VMBAj6n2n4334v+n1z5WYAcdY4rWOJFBHi+UPO75fRT+tAKPJ0/CcY7nxh7Fi88goQQo3sBRdEcB0WtfaAJRyhUL/PfGa79FffFKyBpvZGFESbxSYK/u+CAS8MyH1G4wXe1Prj+RvmbyzbuHb/Wg0jMWIP9KCMQTaLTVbkZ399VutYImjhpoUvrXpJ6yiMIMJv4T3VezIfz9TJEOQoC3cC/dZbOOYYCAJsNtxxRxt3EqGL/vvvx6ZN8PnMl/xFm7oejbmwB5rap0ePe/TdM94NdPQqUPZW791atvXI149s8XcjlF8W1RVtK9/m8Xmu/+r64Z2Ga3hyjNgDHW+N/++x/1UUpVaq1TqWCKpwVeRX5WsdhQHoeSlso4tAvjBlCgC43brLsf76C243JEl3gRmK4HbDYjFlCQdYA03tz3Wjrpt6yNSrD7vaZrEF0uiRr47cXLq5md+SFEldDDwSshOyq9xVAoSVe1ee+eGZmp0aww4C653aW4Hy6+5ftQ4kgqyC1Sf7NpVu+mjjR1rH0iSDvn+CbWRk6Tj/j0C+sHUr+vQBgM8/17p1BysuhqLA5zNf8hdViiI4nXC0qlDSQNTaeCbQ1D49P/l5z90eu8Wu5tAOr6PFIWgR7dl668+3ALgk19bSrZqcEEERBAh6n+ehCUOyhwDIq8j7u/hvrWOJFLvV7pW9R75x5JVfXql1LLoWpR7oyKTRNtGWGZcZjfjbJAL5wjPP4PzzAWDnTjgc2Lcv6D1EuhBVJyUcOTlaRxC8detsGzZAUcx3EaL2QLMGmtqzt057Sy1akGSp1FHa78V+ADaVbIp+JJ+f97nae7fhGi3nYjNoAg11BKGCgR0Gah1IpHRL6QZg+pDp30//XutYGsHCifYgAgn0BRdg8GAAkCQ89RROOCHoPUS07MyMyV+02Wyoq9M6iDBjCQfRrG9nCRCyErPUf24r23b03KObmpdDgbK3am+EIhnbdeygDoMAnPjeiZqcCgWKKIiRK1OJNK/sVaDM/WNup6c6aR1LBMVaYrVd8p38InC9sL5wvUf2OCWn1m1rUmTyhWnT/F15DzyAmprgfve337B9ewQnyhAEfP11pHYeFAMOT1GJ69fj//5P6yjCjD3QRLtu2rX+6vVXj7haLeSQFXnF7hU7Kpqcsd5usUcoknJnedfkrgDyK7UcKGbQmYY/2vSReifhlq9vSbAlaB1ORJzU+yQA6QnpWgfSpHJn+ZzVc7SOgiIoMgm0xQKLBUBb1s0uLYXXG8GF7kQRw4ZFauftg2/0aFRUaB1FmLEGmgjAoA6DRnQcYREsgWeu+OIK9cG3O779bPNn6uM4a1xEZ2hWoJzS/xQBwsaSjX+XaFDI61N8oiAatIRjyoApagl7lbvqofEPaR1ORHRL6yYIwku/63Qmu3YxfDDC9H8OI5Mv/PQT3nkHABRFd1NerFyJm2/WOogIi3Tfts2Gc8/VupFhpt7zYAJNdFzP45JikmIsMeo/K12Vwn8F24O2aR9Pu+TzS9QnvT6voigeX7jL4RQoUAQIXp93VM4oi2hBvQw+mnyyTxRE2ZiLBpQ7y21Wm7oQjFknSz69/+kdEjpYREuZs0zrWCgiNd9uya0+qHRVat2+xkUmXxg+HKef7r8d3rYPoMilgMcfj4yMSO28laJTKBCxoyixsaiujkYTokiWBTCBJgLi7fH9Mvo16GBWhxX+54j/bCzZCKBbarf6096FXcfEjumx6WoFxW/7fov+SZAVWYAgw5AJdHpc+vE9j1dfnRV7Vhj0MqB5FlhK60ornZUZcVp/oTfmoR8f8sk+/feh6lmMNQZAubM8NTZV61gaF7F8QRSRmQkARUXB/aLbDUWJSH6m9oV//TV+1cfsmOrSHQakxMX5F2w3EQ4iJAp49dRX1SoOQRACfUsChLf+fGviOxMBHNrx0J5pPbeWhXmOuZ2VO7/Z8c2yncsAZCVkiaIIQFC0GZogCILhBhEGMrY5J885vP1C4V0AAEYLSURBVMvhAGIsMcNf1XIxmgip89Z1SuoUuSr8EH2/63sAenj/GDqJFwQh3havdRRNili+YLdj3jzY7QC07/GtLy0NxcVaBwHAwIMIBVnGvHkm64T2+SAIHERIBACDsgZ9cd4XZww4Y9boWTE2fy2HAmV7xfYRnUZsKdsiK/K2sm11nojMxqMICoAEW4Kau/fL6hf9M6BWkhh0ECGAzPjMRHsiAJfkMuJ6ii3KTcktqiuqcOl6NI6OktcIB6KjlkZRJDvc+vb1J9Dl5ViyROuW/qOkBNA6ec3KgsWC9PRIhVFejvJyfPtthMIX9u+HogQ9v4q+sQaaqL5x3cedP/j8y4Zf9v6Z79utB/r5ft7z8+ebPy9xlADIiA9z50j9r+G+z/edf9Z8QRCKaosuWHhB9M+AIBh1IRXVaf1OUx9sr9iudSwRISiCx+cJ5SLngoUXDHwpglNln9b/NA3Oy8HUq9DIzUutXu5Gjp5T80jmC926oaLCPx3H5Mn+zLVFkZ6kuUsXpKRg5crIHqU1jNgroCgAfEcdBVnG449rHU3YW8YEmuiAk/qc1Cut12n9T4u3HriLWu4sv/eHe3/a/ZPFYomzxu2p2hPGI24q3eT1ebeXbwew9IKlNe4ai2ApdZR+vUODuUcFGK+Eo76pA6f6pyOEfMRrR2gdTvj1yewT0algwkAHX/J20Q6gS3KXiB4lggvH6OAcNiXC+YLVij//9N8X79QJJ7ZiSny1J7CwMPzBqCnS/v2orMSKFZFteFAhGYggAFC8Xogidu3Cgw9qHVDYyDJLOIgOEmuNVR9cN+o6AGmxaWq+olYFeCTPjM9n5KbkAjj+nePDcsT6X8M90no8uPzBDokdAJTUlSzbsSyqjVcAI69ECGDx9sVq8UaXxC6/zPhF63DCLzs+GwpWF6xu+y6EyOZneu49pdBFvsNt0CA4nQDg82HxYixe3KrkuJU9gfv3IzMTr7wSRDxqVcns2diu9V2tyGXPEU4DY958Ex4PFAUvvxzRA0WTur47e6CJ/u3BcQ/+fe3fp/Y/NTMus/7zfxX9NfTloWd8cMaP+T+G83j/fDQ6JefCqQvVxz/s/iGaTVagCIKBa6ABzPx6JgBBEHZW7jTodCLNU1dbfHn1y22fTlGJyBJ69XavfQKthxjMKir5QlER4uL8j1evRmEh8vJa+JX8iK0+dcUVsNtRWIhJk6LR9kapqXPkZuGIdMe22lv75ZeRPUp0qW1iAk3UqIGZAw/NPnTpBUvjbfFqz7Qoij7Ft75o/WdbPmuQwdR6agOPd1fvvuPbO3KfyQ3M6tqMDcUbAJS5/DP77r9lf+ekzup8IA/9+NCDy6N6y0sUREmO2JJekaR25HdM7CgKoqIokiwd8n+HaB1U+F009CIAq/atCmUujgjWHgC6GL4p1Pt/BJQ5yspd5d/t+C5CkStQdHsNEJV8oWtX1NT4u0XvvRfHHIMpU8KTIgf17oyJAYDbboPXC0XB7t3IyopG88MSvE72DADwTpniz/579ozogaKJCTRR82484sZDOx0ab4v/v5P/LzU29cFxD6oVHYqiKFBOeu+kPs/3Gf3GaAD3/nBv4Le6Jnd9e93be6v3vrjqxRYPoX5T1p+3Ljc5Nz0uXT3KIyseiWZ7BUGIUAItyVK32d1u/jqyS3rNO2PepN7+fqL8ivzhc8w2mV3P1J4A9lSHswrfrCKdg0Zo/yLEARkDIhp5aOFFh9t9YDK76mqsX48ePZpbYyUmplW73b0b5eX4/fcgIrFYYLMBgNeLJ56IUvMbFbkeaPVaJWJptBIb6x8bethhETpE9HEaO6LWeGj8Q8Oyh1XMqrhzzJ3q+CTVkm1Ltpdvz6/Mz30m951178iynPxocqeXO3llb7w9HkCxo+X5Q0tqSwCkxaXVf7LUWao+cEmugpqC6CwLokARBdHri8hKuv5sI8LdaoOyBy06b1GCPQGA2+eeNnhaZI8XdUd2OdIiWGwWWyg7iWhmqYseaABAXllLt/11SPnXA52JVgIdH4+6ugPpiZo7ulx4+mlkZaG8/MCW6jazZkUqEkE4MH3E++9HqfmNUpQ2LtPYIrU3NRJ/ugMHekaN8lx8sT+B/vBDvP12RE9S1KgJNHugiZp35Ygrh3Ucpj7+5dIDQ9NkRVag7K/dX1BTYBEsV3x1hdPrVKCsLVrbKalTvC3e4XG0uPNDOx1qFa0zDp1R/0lROPBnefw7xz/z+zPRaamISCXQAPbX7F+8bXEUWvHC5BfUB4MyB0XhcNEUZ4+zWWwRmoycWimiNTDQdw13FPMFSYKi+BMvVWIiZs5EaSl27MAll2DECOCfYVzquMMWBZUjqhPklZfj6KP9z3wXgaqd1pPlCCbQioIvvsDs2WHec+CEv/46ABQU4JhjIneGoomzcBAFa3inhlUBsiLLilziLHl97etq/cOqwlV7Kvc4vI7WlEOsLlgtydK+mn31nzyux3FLL1iqfk3/XfL3Az88EJ3WiaLo9rVct902kiztrtod/v3+6ytxzf416oNzPj7njA/PiFBztJIUk+SW3JF7mUKk5+TPKNp9DbTK48HgwbBaDzwT6IIdNQpffol16/Dcc/76ilZmlkHVKqh77tABPXr4n5EkLVcDiVwJR3Y2BAGJiRGcZu6YY/wnv20J9KefQhRx552RCi94TKCJ2iDRnpiTnONfrOGfv5/6VRZ/lf61r3ofgPWF69/96101Oc59OveF31/49976ZPSxitYBmQdVPS65YIkMOfAd2j21+wPLHwDQIM8OMwVWweqSXJGbyS4ScxirCyjW7xN8ebV/rqQaT82SrbpZ0SxMcpNz7VZ7KCvFmH8QoWGpebOez2F071j/+qu/m7kBRUFpKXw+zJwJlwsAEhKAViyqEtQHUFwcLBakpCAt7cAvpqdrtiR1REs4AAwZEsEu9txc/znMz0dpKRwt35zVOZZwELXBw+Mf3vufvSmxKbnJuWJjXygLty5U51DzKt4LF1447OVhyf9LLnIUrSta91XeVw02/mrrVz7ZJ/ka9lXf9vVt6lwcADaXbn74p4djH4p9cPmDkauHVqDYLLZab23kJuJwelt3ozU03VO7Xz7icvVxjC3m132/RuGgUeOTfW7Jfeb7Z0bhWPtr9mc+kfnKmlZNm+uVvAAiVwLUerrtvm1t/EqoPdCfbv5UfEC8c1n4O+yimy/ExyMvz594qf+PjT0oCVZnFwawbh3Ky3HDDS3sUO3E/SX4KeJP+2eBTUnCzJna5NCRS6AByDI2bMCwYRHZufqSBSphBg7E3Llt2YOe+HwQRR3GRaRrNxx+A4CKWRUvnvxiYkyiIAiCIPRI7VG/e1WdTfn3fb8DKHWU1nhqvD7va2tfu+rLq275+pbez/UGsGL3gcWtZLHhB2NBbUHXlK7qY4/P45N9Htnz0d8fvbzmZQC/7f0tEk2zCBavz1vuLA99Vw2oncSR6Fr7d6rx7hnv3n303SNzRgKoddde8fkVV311VSROlyben/I+Qlir/Ld9v20r3xbcJNmt+45QF7jWT/Ja5aqK0J4j3UYZsm47oaPe4fbII8jNxaJFyMiAxQJFaTxnkST06+dfIaWsDLfddtBPly+3ZmXFrFkDtxtAqxYJVxRUVBxIWOun5h9/jCOPRGVltE8FWl2pEpQNG/xticRVgfo+Vl+y3/750iotxauvoqAgiP38/TcUBfsieQc2SJyFgygUp/Q5ZfrQ6Ttu2GETbTtu3JEak9rir+yt3vvMymd2VOxYuWflqfNPTX8s/efdPytQFvy1oMGWpTNLK1wVibZENS/3KT5FUcpd5TcsueHr7V/P+GzGyr0rT37v5MD2i/IWhdgcBYpFtHy347vnfnsu7OdKTfjEqNzwOrzL4V1Tul436jp1XZi/S/7+cMOHDsnw9wxVPVN72kSbT/ZVuyPeC9aGuVP0k0AbWMinUK3SicRrEfUE+rLL8MILmDwZY8eiuBhTp2L8+Ma3LC2FoiAxEX364JVX0LGjPyN86imUlgIQ3G4kJgJAWZk/k25GgyuYjAyMGuVPl8rKsHGjP/+LygRJ6N4dI0YgLQ3eCNzfGTsWxx0HAF26RLYV8fH+B4qCDRuwKPhvLD1dVsoye6CJQvLsCc92Se7ywokvAPDInlhrrE20CYKQHpfeVKWpOkJowtsTKt2Vla5Kr+IF8Ob6N/+95dRDpv7nyP806Ivyyb4T5p2wqWzT8e8cv2jbopync37Z88u3O7698qsrAVR7/EmVWobRTNY469uG8z698ccbv+z55cjcI8ucZeE9S/M3zD/+neOhQIzE968CAcK/z/bdy+5W57OTFblXeq94a3xbdq4/dos91hqrQLlhcUv3qxtTUFPglSNYZRGdKRdbEOEvNX9iGomjhClB+Lv0b0VR9lWFv8NOi5LPU04BgA8+QHo63n4b33zT3MZ1daioQFUVSkpw2mlITMQDD+DSS1FZmXHnndi2DQBEEe++i8xM7G56ULOiwGpFTIy/ynXIEOzceVDF67nnAsADURrf7Z9mTopAdd1rr+GSSwBg797w77x+D/SSJf5SdQA+H668Ej+2ejnf2loALS9IGUWSBFFkDTRRSKyi9fLhlwM4odcJzrucX5351fjc8Ruv2WgRLVnxWRbRIkD49+A5p+QMVDraLfYJPSb8e88vnvji9GHTj+56dINfVxRFUZRaT62iKIV1hZPenTTp3Un7a/anzU4b/eHoJduXbC7dvKNiR6mj9MbFN5Y6Sv+95+6zuze6FrQoir/v+33+hvmfbf0sjKfo2kXX9kzrqda6hP38N9XNlmxPvmToJRbRAmB1werrFl0HYPmu5WEPIPouHHIhgI/+/sjhjWy3+u6q3eXO8lX7VrVm4xhLDCIzTlSfSutKQ99JA/5BhCHPwhG5caLa5Qv1p+Po2ROpqfWa21hrZRk//oi6OlRXq13RYnk5UlIgCJBlvP46nE5s2IDnn0eHDigtxZn/GlXg8RzU41tcfNCBtmzBrl3+pVWiMCROzdTUEZPhdeaZuO022GzIyQn/zut3/4wcibFjYf9nJQVZDmJGDvWOgc5KONgDTRQuH579IYBBmYOem/BcdmK29x7vN9O/GZ07OjM+0yY2ufKFoiiJ9sQPpnzw7x9ZRWuiLfF/x/2vc2Lnpr4RZVmu9dTKiuyTfT7ZV+GqOP/j84e+PPTk904+eu7R765/d+j/Df2j8I9j3zwW/3RIy7IsiuLS7Uv/vTcBglty17hrpnw4pedzYVt19dJDL/1q2lcAPD5PRIb0NXZuNlyz4bnJzwX67z/a+NFjKx676NOLmtrHW+veCn9gkaHeIkiMSYy3Bd2t7pbcwdbXqsXNLW+mmxkksuIju+KyLMuKouytjkCHXUCIZ1H99Qh8ueujw23TJmzahIED8d//+tcgbDSXCdwNURQAYnU1HnvMn9KtXAmHA/Pno6gIFRUYOBA//eTfeNIkzJ3rr29tcD/FZkNKiv+xx4OePeF04phjcNVVWLPmwGbqIMW64GdrdzrRpQvuuqvh82rlt6Lgvfcicj7VcxK5P93AS/Pssw2rUFo574e6kHuLs6xEkSTBYmECTcbw9ddfH3/88aeccsqnn36qPjN9+vRjjz32oosuysvLGzdu3EUXXfTkk09qGKFa4CtC7BDfQX1maIehyy9efufRd3ZOajwDVp8sd5bvqWx8cebsxOzRuaOTYpKyErJa2atU7iz3+DzbyrdtLt3sltwFtQUnzDvhx/wff9/3+4zPZpQ6St/f+P7Oip2bSzcDKHH4h9Ooa74EOsW9Pu+uyl3qWm6hT8rxxMQnbBab3WIHEPZSiub76vpn9Vdfl+K64ju+u2Nfzb6v8r5qtEW903tnPpEZ3tgi5JHxj6gtmr9hfrC/qw4frHZFqn46uOGJxuSTfZHatfZXHy2whr6LMLDb0bEj5s+HIODee/H443jySSxciHHj/EUOTa2r98MPB/1z4UK4XJBllJRAENCvH0pLUVWFnTvxv/81Ut9888044QSMHXtQxvnjjxAEbNyIP//ExIk47zxMnw5Zxssv49hjMXs23nkHgFhZiS5d/JWzKkk6qFsd/ySajVZBrVqFxER89RVGjsTxx+PBB3HPPeE8pZIUwRKOgD59cN11OPJInHee/5lJkzBhAubPxx13YM6cFvZWGv6bPm3GBJoMZO7cuddcc80PP/xQ+s8fUX5+fnx8/MiRI99+++1p06YlJyevXr06sP3+/fs1ibOkpMRisXjrXWaf0+2cfaX74m3x7295f2vF1uO6Hpdfnb+tapsAoVdKr7zKvDhrXLw7vpmAnxj9xIjsEYfPP3xvzd7OiZ0LagtavMMbuBcMoKS2RIEy+o3Rkix9uunT20bdJggCFFz16VV7qvcoinLxIRe/vP7lc/qd8/ue3wukgsAuJr0zaVf1rr8v/Ds1NtUludYUrxndeXSjh/N6vcXFxXa7Hf/0cDfYwCN7Dss+rNxVbnfZw/vSlJeXe9yewsLCOHvcv3/67enf5rySI0BQb4srinLBxxck2hJP7336naMOTPJ1yNuHjO48utxRPu/3eeNzx7f+6MXFxSmBPqlo6ZneUxREWZHLHGW/7P3liC5HBFtc3sqLouAGESpARJNL3chKzAJQ6aoM+577ZfXrm9Y3IzYjxBIOtUBLVmSv7G3m9lcb6COBVg0Z4n9w220YPhxjxmDYMKxdi5gYxMaiogKieGDxEUFQAKFBPle/9EJRsGsXbDb4fMjL8ydHDbZ/6CH/gwY/UhR/D/SSJViyBACysuB247bb0LMnZNn61lvZDz6Iyy7D3r144w1Mm4Y77kBuLr77DmPGoGNH/PknRBF9+6K8HC++iOnT0b//QYfOzERhIVauxAkn+Bczv/pqZBrjiv8gzz2HiooD//T58PXX6NABViuef/5AgUcD6nWRHgZY1IvIamUCTcaQl5fXv3//hx9++LLLLlOfefPNN9evX//pp5/GxMTMmDHjqquumj59emD7uLi4Nh4pNLGxsRaLpcHR7xpzF4Ae6T2+2v7Vqye8OufPOSf2OjE3KXfBlgVXLr2y4NoW5vMZ030MgGcmPHPH8jvuOPIOi2C5eNHFIsSMuIxiR3GLIalfxmrO5JE9D670rzb1yrpXAAiC8PXur6HAYrEUOgpjrbEen0ddpXxX9S4oGPru0OLri9/9892P8z7eXrP9ymFXFjuKO8R32FCyYVCWf61sq9UaGxurtvp/v/7vjiPuaBCDXbbbrXYAok0M70tjs9vUE95oAg2gS3KXckd5nVQHQFbkSndllafqy51f3nf0fQBckstutfdL7/fVjq8UKNcvu/7Oo+68bMhlrTx6jHoDObpqPbWxlliH5Lh+8fUZcRn7bt0XIwYZRsR6Ot9e9/ajxz0a/XNSX/fU7nHWuOTY5AjtPyJjYf8hCELos2dsKt0EYF3huvBmz9BXAl2fOo/EqlUYOxbHHIO+fXHFFUhKQlmZmukqPXogPx++Zi/v6hc9q6tbq+MXGxg+HAsXon//5tYPD/SVlpTg77/t116r2Gz+/HvuXFgs2LcPf/2FykpcfDE+/RRz52LGDJx7rn+fRx2F8nJ/SHY76urQsycCHQ/qNHzHHINXXsHgwUiu90avrfXPNBKsuLgDs2SEXYM0My0Nd92Fhx8+8IzPB58PGRmw2XDKKXjrX+V0Pt1dl3u9De8fEOnWlClTrrnmmsmTJ3fu3Pnss89esGDBtddea7fbZ8yYUVVVdc011/Tv3/+Ueh93qfUHmUSR2+22WCyNHv3ikRdfPPJiADPHzlT7aLtldju136mtDPWs1LPOGnoWgCpX1fPy83Xeuu93fX9K31NuXHKjAkXt+VO7WpvZSf0S1QNFqwoEQfgu/ztFUUbnjv4x/0d1MUJ1Y6/svXDxhb8V/FZWV/ZH0R+zjp31Wf5n5x1y3o0f3LjmyjVf5H0xMGNg19SuecV5akNeXffqVYdf1SOtR/3jSrLkhttisTzzxzP/d9L/hfGEJyQkWK3W1JTUuJjGE+iPz/m4U2KnbrO7qY0SBEFRlPyq/Pt+ve+NP96wwDJ10NQROSNWFa7yyb4eaT0eXvnwrWNvbeXR69pQ6BiyRHui3WpXK9prPDWyLENEiaMk7LW/giIgyBFpp/Y7NfonpHERu0iIwjzQIa4G6vP5UK9AK4z0UQPdjDlz8OCDGD0aGzfC7cZzz8FiwSmnKHfd5e8wjIvz53NJSY30dwY+H9UHqxobP7t6Nbp2xSOP4MgjW46nqgpDhkBRBHXNF3W3Ph9++sk/+/LWrXC5cOaZqKrCq6/6f6uiAn37Ii0NL76I//0PX3xxIFTFfzMNmzdj6VIMG4affvLn0G+9hXnz/On1smX+7esPvNu7F598gvR0bNp0UJC//AKnE6Wl4Z/lo6m66nnzcNRRDZ9UZ1D56qsDBeXXXgtZ9t8Q0BmPR7DZ2ANNxjBr1qxly5Y98MAD6enpCxYsAPDVV1998sknp5xyygUXXLB48eJnn302KSlJ6zBbJVDhMLHXxE/O+STYX0+JTbl21LXTh02fd+a8q0Zede6gc4/IOSIrPivWGjs0ayiAeFu82vPU+ikR1Jk9BAjPnfBcp6ROonDQF+WXW78sqS1R7wiLD4iXfX5Z2pNpfxT+UemuvPDjC4e/Mvy4eceduejMfs/1k2XZITl6PtfziNePWFWw6vnfnw/sJEaM2VCy4cONH7a+paWO0g5PdHj2t2ebj1xoNscb2Xlkl+QugaRHvSpQoLy06iWX5KqT6t5a99ZLq19Sf/pH4R+T+0wG8Mf+PzaWbGzb6xsFlwy7JNYWC8Dj80z5aAqA19e+3vpfb20KKLZ2Y1mWnZITwPwN86M2FbRLcnV5usvdy+7+d/MQjrksmlK/PirsnJLT6/OGOMm3LMj45/onvHSfQA8YAAA9e6JHD1RU4Npr8fbb+PRTecCA3Vu24LTTUFuLSZPQqxcuvRTz5wP1+kdjYg5KqQUBzVSbjRiBFSvCMI3ZypVwufyrDNbPX7dtQ1UV7roLd96JmTPx/fcNf1GW8dBD2LULY8eipgbp6bjsMtx0Ez74APHxuPBCpKTgrLNw1VXW33+3bt6MTz/F+PH4/ntUVPiH7t1+O9auPai96mxxYXTLLY0/v3MnXn+9YWe5mm2XleHMM/0lxnPmoEcPvP8+9uzxb3DddZg5E7Nm4frrAUCStCqMVu8NEJERZSdkp8elixDfOeOdFTNWLL5g8SPHPPL/7d13XFNX+wDwJ5MwZcgSEFRwgqiIC7WOV624gBbrqBOx1dZVatE6i6tK6wBBBRQEoaJIEVFkuLevAoo4kBFmCDsDErLu749LU+okEsS+v+f76aefEJL7nHOIyXNPzn3OjB4zojyifh71c2+T3p79PPt27mvAMiBLuQEAWVCPApSunbqSN145JgGET5pP0eqiZU7LAIBBe/X7XzLPlilkDU0NBBAGvxrwmnj8Jv6N4hu14trculz6djo5eXav9N7L6pf5tfkAkMnJLKwrvFJ4hUahCZoESblJ5NG8znkV1Re9t6fvnwFtRZ6QsTTjlbMCJQWhAAKaJ92BSMtPC8sIm3Zy2rPqZwMODwCAjIoMoUTdnyxt4zfGL2FmAnmCdCH3gtlvZpGPI9UfhvhrfFqNvFT042j7ltfvFf883nCP4bOqf0zYkUHbqSYjk8q8z7mfnJfcxpEB+B+uwtHaxlIBAObMASoVnJ0BAP78E6hUSE6GvDz48Ufw8IB16+Crr4BCgdmzQaGAZctARwfodNDVfc+s56hRQKVCTg6MH99cA+TD8qm3zdGS08zkig5yAcPrLzjllDYA1NWBTAZiMaxYASIRcDggEEB8PCQldZoyRc/XFw4dgsJCSE8HALh5E8RiyM+Hzz6DixchLq75OCEhsGIFcLkAANu2gaFhc6ns1av/EXfdOgAADuc9e/H16/euVcu9e0NjIzDetMaIwwFtbVAoQC6HkhLYvBmyspp/FRUF+/aBvz9ERMCWLbBnT3OJ7tzc5p0OT50CPv8fRVHah1gMLFZ7B0EIfQxO5k7zHeZ723t/7fD1qqGrHn/zePNnm+O/infq4sSisc7NOmekadTXpK82Q3vRwEVFq4vMtMxezwCoFCq7ng0A3wz5RpupvWbomlZGJwiC3J6DIAipvHkZ4ZJzS5Jyk2h+tDHHx/jf8ieAkClkcoXcO8kbAPR+1QvPCPdN960V1ZI1QADgldJgY4+PfX9oIFqzxmCA2YBNoza9Lekhry8kb9eIarzPeZfxy3bd2vW48nFibqJziDO7ji1RNNdQqhBWnMg+kZKfUtnw/gXo7URHQ+cK+4qy8dwGLrueLZVLL7y8MPDIQPL+E9knZArZndI75I/KQQYArpArlr1aUvZ28W3l7YechwCQW5tLEESpoFRZtSPgXoCJv0nL4uLkcQhKcy5bK6otF5QDgFAizKrIKuG9ubwM+Rj4a2l+a85P3vAYClCA8nox7A/Oql8vIdI8ifvKq4Zo8f8PaPY7aTO0B5kOInfJ2XJ1y/jI8dwG7tua91YUgPbZzPxdCbSWllZKSsqQIUOam6tQuLm57d27NzExUe3tUAOy7PGuXbB/Pxw+DCEhsHgxTJkCdXVQUABubnD+/PsPYmkJqakgl4OtLRgbAwAwmaCt/eryWGUu3pazLoJQoe5Dy9yaIBj37kFaGshkzYs3Tp8GTU04cwaEQti4EaKjm5/i6wsHD8Lw4eDoCOHhUF8Pw4dDUhLcuAE0GigUEBYGNjZw4AAcPfr3funDh8OWLTB+fHOZ6ooKAABvb3j6tHmrlLe1+fRpWLbsDUuJpdK/K9aRvVAm4nw+yOVAECAUwo4dsHEjVFRA9+4wbBgsWABjx8J338HQoRATAwoFODgYL1784QP+TiJROy4aRwh9ZExq8wyIDlMHAOyN7Xsa9Uyblyb8Wehi7bJ66Oony54I1gsCXQMBoPzHcnsTe6cuTuS8rCZDk0alrR+5PntZNgA4GDsI1wsXDFgwzHKYloYWjUL7gPk2kUyUX5dPEAS/iZ/JzSTvVBAKrpBL30YXNAkIIGJzYnsE9OgW0C34QfC357+dGTcTAJ5UPZkSM2VW3KxqUXVVY9WPqT/KibdeQ0IQRJO8qTU59Oaxm/U19BlUBp1Kf0d3lJn0w7KHBEHM+GOGglD0P9KftY1luNuwTlxnsddiYcJC95Pu/rf9SwQl743bTkIzQqfYTelv2lyKQCQVMbczvz3/LbueTRDEVfbVzZc3+13z+0/kf3oH9Y7NiT1w/0A2N5t8cPij8NM5p0eHjz7y8MjzmuffXfjON8339LPT5D6CqXmpo46PSi9Jb5I1AcCNohtbr2012GNwt/RuFjdLopCMj/x7358JURMA4Pvz3ytH79B/D+nu0h0bMTYpN2nXzV0nHp+YdGLSDyk/OIc6A8Dwo8MnnZjkfc77m6Rv5sXPGxQyCADKBeV8CX/D5Q1l/DLHw45phWmb7mxSlgq5VXwL/qp+vTBh4Q+pP+TX5fvf9hdJRNWN1TeKmwv4usa4lvHLAKCyoVIil/DEPIdDDhwhZ9rJaWTFDIlCcrP4Zvyz+IlRExNzEw8/OBz83+DYJ7EAIFPI3GPdIzIjAODsy7PK/RSL+cVyhfxi3sXJ0ZPrxfXR2dHkgABAk7yJPOX448kfFcIK/9v+nfd0vlt2lzyxIRv/+53fDz84DABCibBOVGf6m6nNAZs6cV2tqBYAdt/aXSGsGBwyWKaQkechY46PoVAoRbwifhN/YtTEHdd33C65PSFqgs0Bm24HujkechRIBH7X/fgSvnuse/D95nVHjZLG5eeXf5/8PQAE3g98WfuysLaQbCFPzBNKhI2yxoMPDgIAR9i8JEG5R+nzmuc5VTkAcKmwVQV5KW8r9H3t2rVt27bt379/zpw5jx8/BoBLly799NNPFAolMDBw+F/LhYuK3v+VU3uQy+UVFRUWrd4rRC8igr9woWoxZDK9kBD+8uVUsVgnKkovJIQikXBjYkznzAGZTMZiMevri549M1m6VPPaNQBy9RmFAi1qepD3vHGEKRS5uXn1wYOmr2/40hZvrPf3yp1//UhoaVFaXjepfAyFIrOwoHE4gkWLNK9dk/TpUx0Q0MXFhVFWRjCZQgeH8l9/ZdnZva0J2nFxwGB0XrUKAAgqldKWUhvKptLpnKQkc1dXoFDkO3bQfX0//JhvUlRUFBBgZWZGXbtWvQdWA6lUyuFwunbt2tENebO6ujqxWGxubt7RDXmz8vJybW3tj19aq5WKioosLCzo/7uXr3K5XBqN1rkj6gsJBAI+n9/6z4hSfqmlnmXIw5ClTkvvld5z6uJEp/7j7yKRSwLuB9gZ2t0vu3/kwZF6cT2NSqNT6eQ2ijFfxMw5M6c1gcjr9gCALL72ym+pFCqVQpUpZOTDqBTqkkFLorOjp9lNO5lzknyMdJOUTqUH3AtIzU9NmpPU8ulnnp7xPuddvqacxXz/F2rT/pimq6HrbOG86dImY21jcrq9uZHvu/4SAAaZD8qsyGyZQnj189r/+X6dD7vwvW08TnnEecaZ/GZCUIjahtqWvWDQGGQjyTROuUZcn6VfJ6oDgJFdRwokgscVj/U09Ob1n3fwvwen9Zx2Ie+CQqEInxG+/tJ6jpAzwHiAFkvrdsnt5i0kCVAQChsDG3Ydu5t+t++HfO9o5jj9j+limfiu112fVJ9bJbcUhIJ8sEKhUP41CYKgUCkKhYJcQUSuu+hh2IPD58gIGfl9BY1K66zVuUZUI5VLyZyCClQNuoZcIdega5hom5TyS38c8aNUId19czeVQp3Zb2ZKXsqWMVtWX1ytydDk+nCdQp3K+GU2+jbXF17vuq9rJ81OlcJK8sVmpmM20GxgWmHassHLahprHnEf5VTl6DB0KBSKQCKw0bfZ6LLRK8kLAGbbzz774qxEIVnUb5GHg0dVY5V3oneTvMnexL6gvkAikwyzHHav9B6dRhdJRXQqvWunrhXCCnMdc46Qo8/S5wg5wyyGddHrEucZZ+xvrM/S19PQK6ovEsvEh6ceTitIi3wUyaAyrDpZFdYVnvzi5Lor68Kmhk2JmUKexDZKGykUiqOxY1Zl1tv+EXUz6FZYV6jP0hdJRboaukaaRi9rXybNSXKNdmXQGGNtxqbmp9qb2udwcwggKBTKXIe5V4uulvJK9Zh6/Uz6efTxYNKZK4es/O7Cd3fL7j6qeKTH1Jvea/reSXvdTrqdm31uzbk1ZwvP1vxU87ZX3VsT6IiIiEePHllbW1dWVtrZ2fXu3dvZ2ZlOp7u4uAQEBDg5OZEPk7XHZtStIJPJysrKrK2tOyS6fMcOMYejffAgAEBDAzUujhIbS7l+HVgshacn9ehR+fr1lIEDKVu2yA8epE+a1LwkWqH4O5elUGQZGdCzJzUlhfrFF0AQbc012w+VqpwwJigUoNGEsbGa0995cXFpKb1HDyAIxc6d1J9/BhbrXRVOVERoaFDUvYPj1avFYWFWEydS5s9v+8HUDBPotsAEumP9ixLolsQyMYv+5gSUrOt85umZzIrM7eO251TmHHpw6KDrwdic2Pl/zn/jluCk11NSBpVBrvRoDWXaDQCudq72JvbHMo910e1io29zdtZZje0aQAGJTEKn0mUKmfhnsQbj/aXcyvhlFnoWYpl46bmlS52WjgofRaFQZvSaYaFrEfwguLlctCobclEpVN4PvA5JoMk/WXVjtaGmoUesx7mX5xRv+TxtOZKvYNAYMrms9WseqFQqmRzTKDQF8XexCH2Wvqp1kVtzxtLaVlGoyvXQpjqm1Q3Vb/vK4o2ncG/8LZPGlClkry+zfsdgtjwOvLZ2XFdDV9AkaHkcAHK5CfHKc1UtwdHKkaRRaHJC/nr7aTQaubeimY5ZZUOldSfrglUFb431ts7zeLwtW7YYGRlt2rTJ19d3586de/fujYqKWr9+/ezZs1XqT3vo2AS6sbGxtrbW0tKy+Wc+H86ehRkzYONGCAgAOzu4fx8MDJqL0EVEQGUlVFdDbCw8eQImJs019ZSrGubPh7NnYfduWLUKpNLmHROjo2Hu3A9v4tu2nmk7KpX/8qVe93dubCuRwOjR8OWX8OOP4OYGCQmgqwtCoVpapRg2jHrnTluOcPz48cTERKFQmJLSvH9vly7y6mpaVhb07dsuY9YWmEC3BSbQHetfmkC3Xr24vpRXam9qf7f0rr2JveFuQzkh12PqadA0uI1cTZqmqZ4pu47d8nOazHEn201OK0iTK+Qfttvz3zOaQHzn/N3B+wfpNLpMLiOzh6afm5gMFa7hIc8KViavDJgcwK5n2+jbdN3X9fGyx4NDBxfVF5FlsFvZTntj++zl2ap25/Hjx+vXr7exsREIBJGRkQDwxx9/xMfHC4XC5GSVLyA7++KsR6wHg8YgF10g9MEWOi4Mdwt/22/ff/bwafq0EmhVTZwIO3Y0XwcJAGIxcLlgYgKamsDhQGYmHDkCZ8/CmDFw/TrQaDBhAty6BXx+88JlCqVxzhyt6GhgscDaGoqLQSqFsDBYsKA5Q2WxQCJpv21KJGPHMpVl9d6mvh7Ieq6Njc2Lix0doUsXuHgRKBTQ0ABNTeDxgE5XdUNvwsqKEhMDI0d+cPsnTJiwfv36Q4cOnT59mryHwSDi4qqGDPnkqlMDgEwm43K57Z0HfDAej9fU1GRiYtLRDXkzLperpaX1yRZ0Ky0tHThwICbQ7eHjJNCvEEqEWkytz6M+767VfUiPITUNNWtd1nrEetgZ2YVlhgnEAh2mjrGWcV5d3hyHOTHZMSw6SyqXtn4eujXoVHrj+kYGvU17RhTWFXYz6HbowSEgwKWryxenvpjrMPeXa7+8d8axb+e+6QvSzXVUO6POyclZunTprVu3yDldAJg8efIPP/wQGRkZFRWlfFhZyyqu79Q3su8oi1HnC1tx4VO7mWIz5XLpZbKeHfqXolAois1vTaX+Z9+4P2mpqf/4kcyDSebmYG4Orq4AAImJcOQIODrCuHHw+DH4+oKHB1RXC2xt5TSaFvm2EhQEXl6wcyf06QNUKnh6wtmz0NgIsbEwezbQaMBkNpfVU2Iy35qzvmOGmMUirylUGBvTX7x4fx+VuyEoL8179AgAgMOBTp3g3j0YOxYWL4b6etDTg3PnQCgEqRR0dKCh4R9XTL6uU6e2ZM8AUFVVZW5unpubq7zn4cNSc3MWnf4pluGQSqUaGhqsT7VEiFgsBoBPtnkaGhqf8uh1yM5tqP2QFyyen3W+vLxcOb8T91UcX8xn17P5Ev6fM/8MfxTuf9N/it2UtII0M22zqT2n3i65fYV9hUFjkIt0tehaDdJXdyQhp5Zb8422TCEr45fZGNq0pSPkzi9T7aZadbICgIxvMvhN/IjMiH2f7/M45bFowKKL+Rc5Ag4AGLAM6pvqyayaQqGc8zynavYMAH5+foGBgf7+/jt37iTvqaiosLKyevLkScuHtf5M+Pa82yNPjGTSmApCsXHExq03t77xYbpMXYFEAG/53r816xPeRpuhHeMe0yhtND+ozm/nPqxJWnQt5XVy/y40Kk1BKN74L+Lj+Gn4T+/4Lc5Af4i2zkC3TU1NjaKiwrhfv3/cy+fD4sWwahXs3w9nzgAAFBbCjRuQlwf5+fDf/8K2bUClApsN2dlw5QpIpVBZCRoa0NQE8Fd+TKOBTAYUCowb11xbmjRqFBw8CAMGAIVSc/w408VFt1s3FVr8phFsTqyzs8HBAQBg6VIYN655v5iTJ0GhgMGDQSCAZ89AXx+qqsDSEoyMiIwMCYejYWraluBeXl4cDsfFxWXDhg3kPZ/yN+m4hKMtcAlHx/r/NgNNkkqlLRPoN8qqyOrduXcpv9TW0LZUUOqd6O3Z13OOwxynEKcfXX5cnLDYWt+6qL6IQWM0X1hGoelp6BWvLtbfoy9XyJX3t0ReHkcQxJKBS0Knh4K6VTZUsuisJYlL5jjMcevtpr1Te57jvJc1L9n17GJeMQAMNx8ePi28h2kPVY+ckpKya9eunj17rlixYvv27bGxsT///PODBw8mTJiw9kOv7J4YNfHw1MPlgvIRliOe1jxdm7Y2NS/V1tA2rzZPT0OvXlyvy9S10bfJrsxm0pksGqtJ3iRTyAZ3GXyv9B4AUClU70HeRx4eMdI0qhHVrHRcGf48vFHSaKFnQXbW3sQ+pzKHRqXJFLI+xn2eVT0z1DS06mRVUF/Q2NQ4uMvgu0vuAkBYZtg3575h0pgtK+UpJ9qVWi6I16BrkItPWHSW8lkUCoUK1M5anZV13MjLEMlLFeGveinijWKrfVZVDVXw11kBBShJc5OmRE95fYiUzWjNumEtulY3w25Pq54qk0bls5QvvObDtjjNIzN+8rJLZQgalUZeyKksLfJqwyhU8mg2ejaGWob6mvpbxm5ZnLC4sL5QoVDQaXTli79ly994dkHeaahpqEHTUJbdIJ9o2cmSLCz4ttMSBp0h+FHwjmkOTKA/RIcn0DKZzLQ1SWRhIZCZLpmn1taCvj4oFBAeDtbWcO8eXL0KaWlgbg79+8Mff8CRI/DgAfzxBzQ0wMKF4OkJixfD+vWwfDmYmUGfPmBhUREUpGlu3l4ZSWYm9OkDt27B+PFQWAja2uDrC+HhAAChoWBrK966lZKaqvZ5u085j8EEui0wge5YmEC30vOq572Neyt/VCgUW65v6aLdZcfNHaVrSml+tLR5aevS1933vm+w20AoEUa6R4Y9DLtbdpcsVjDCcsTO8TvHHB+zYeSGHTd2SDZIPs6LSqaQkUu6+wT3uTz/chW3qqd5zw65iPB15GJu5Y8v617yxDxjTePE3MRHFY+eVz+/ufjmhZcXXO1cR4aPvLno5rCwYZNsJ/0y5pfBIYO5DVwHE4eQaSE3im9cyLtw9vnZ7NnZphamrtGulxdcnhA5gdvATfgqwfUP1+S5yUNDh2Z+k9n/cP/EWYkuXV1+vvzzznE7Qx+Gejt5k39KBShmx82mUWmXCi8RQPww7IewzLAX37/oEdijnF8+ree0lLyU/Z/vX5u+ViQRrR2+1lTPNKcqJzIzcmCXgffL7usz9a31rJ2snHoY9PB18f3q9FeX2Zeb5E2juo4qF5RXCCtWDl0ZmRVZI67hiXlNG5sC7weuSVmjy9T9dfyvfjf8+nXud8rz1PZr2xNeJPAkPA2qhg5Tp6C+YIDpgFuLb2nu1BxmMUyboc1isK4UXnGxdsmtzuUKuRQKxUDTgCPgfGb52SiLUc/4z1gMlv8Ef/dY9yvzrxjuMRRJRfs/37/h8gYtplZ/k/6dNTsnvEgQyUSdNDptHr35SMaRThqdsrnZ60eu33VrF3sVm9/Ez6nOeVr5dOvVrX5j/ahAXeuy1ifVJ+lFUkF9QddOXWc7zI58FOlk7pRekL51zNbDDw4X1Rf9Nvq38T3G97Nsni68xr5ma2g7JWaKZz/PFzUvRliOCMsMowDly75frnVZeyzj2MbLG4dYDEnOS5Yr5IO6DHIwdrhTdifCPYIr5GrSNH1SfXJrciVyCYvOqlpbdf7leblCviBhgYWuRY2oxkzHbN+kfbtv7bbUs3xe/TyvNm9S10nRX0a/K98g/p2kUimbze6o6A0NDSUlJR0Vvbq6uqKiQg0HksuJtLTm2zk5r/729Ok3xi4rK6uvr++AbsvlBEEUFRWJxWK1H5vNZkul0g7oVCtIJJKioqKObsVb1dbWlpeXd3Qr3qrDXq6t8ym/8NSioqKiqqqqQ0Lz+fzS0tIOCS2RSNr+8XS/9L7ytkgqKhe8+q9sx/UdyXnJqXmpJbwSgiBS81INfjVIyUuZGT2zo15UpaWlAoGgQ0K3xe6buwmCCH0Y2vLOG0U3yBsB9wJETSLyD3qVfZUgiGOZxy7mXSQIIi0/jSCI6obq94aQyqXPqp7dKr5F/tggaSBvxD+LJ2/Uimobmhrult4lCEJOyMn/CIKQy+VlNWU5+Tl5tXnkI8k5YIIgakQ16QXp5O316esJgrhedJ0giHJBOUfAIY9DEEREVgR5o7KhknxwJieTIAhBk4AgiEsFl/be2fuy5iVXyG2SN8kJedD9IIIggu8HEwRRzCsm843TOad9UnyU3VlxYcXKCytFUtHJJyeVjTmVc+pW8a258XPlhDyrIiu3OrdCUEEQxPfnv1c+UU7IM8ozCIKoavj7beFu6V25XE7ebpI3/XzpZ/L20sSlRSVFr7+BS+VScsR4Ih5BEMl5ycW8YuX9ckJ+6umpbde3XS+6LpfL457FKZ9YJiiLyY45knFkTcoa5Z3Rj6PJnj6qeEQQBK+JRxDE1qtbI7IiQq+HvjvfwBnoD/GvmYFuBx07pVdcXGxqaooz0J8OnIFui0/5hacWOAP90dwuvT3CcgQAXM2+OrLPyA55UZWVlXXq1OkTmYFWI8w3MN94o3/VVt4IIYQQeg2ZPQNAN722XaCCEGodTKARQgghhBBSASbQCCGEEEIIqQATaIQQQgghhFSACTRCCCGEEEIqwAQaIYQQQgghFWACjRBCCCGEkAowgUYIIYQQQkgFmEAjhBBCCCGkAkygEUIIIYQQUgEm0AghhBBCCKkAE2iEEEIIIYRUgAk0QgghhBBCKsAEGiGEEEIIIRVgAo0QQgghhJAKMIFGCCGEEEJIBZhAI4QQQgghpAJMoBFCCCGEEFIBJtAIIYQQQgipABNohBBCCCGEVIAJNEIIIYQQQirABBohhBBCCCEVYAKNEEIIIYSQCjCBRgghhBBCSAWYQCOEEEIIIaQCTKARQgghhBBSASbQCCGEEEIIqQATaIQQQgghhFSACTRCCCGEEEIqwAQaIYQQQgghFWACjRBCCCGEkAowgUYIIYQQQkgFFIIgOroNCCGEEEII/WvgDDRCCCGEEEIqwAQaIYQQQgghFdA7ugGtkpGRERwczOPx/vOf/9jb24eFhREEERERERYWlpqaam9vv2jRosDAwNLSUnd3d09PT7U3oKqqatGiRUlJSQkJCadOnTI2Nt62bVtwcHBGRsbYsWNHjBgRHBwskUjmzZs3btw49YZ+8uTJ0aNHi4qK4uPj39hfIyOjY8eOderUKSgoSO0dP3r0aGpqqp6e3m+//Xbo0KGMjIxx48YNHz5c2d/KysozZ87Y2tru2rVLjXEDAgKuXr3q6urq6en5etz58+dzuVxl3M2bN2dnZ8+YMWPhwoUfECsxMZE87OXLl9U+gKq6fv36jh07CIKYOXMmk8k8cOCAlZVVQkLCxo0bHz161KNHj6VLl/7yyy88Hm/69OnLly//yM2Ljo4+fvw4AKSmpu7cufPmzZudO3fetGnTzp07q6qqJk6caGtrGxgYyGAwEhMTP/7oeXp6VlZW6unpnTx50t3dnSAIBwcHV1fXvXv3isXi+fPnC4XC8+fPa2pqxsfHf8yGrVixorCwcP78+Y6Ojjt37qypqfn8889tbGyCgoKYTObZs2d3795948YNCwuLoKAgLy+v6urqcePG+fj4fPwxbIuGhobY2FgGgzFv3jw+n3/s2LEBAwZoamoOGjTo7t27TU1NCoVCS0tr5MiR7dqMtLQ0ExMTR0dHkUh07ty5ysrK77//XiAQREdH6+jofP311+oN19TUdPny5e7du/fq1UsoFEZHR7NYrAULFpAj4OjoqK2tPWDAgDt37kgkkgkTJqg3ukAgOH78eNeuXc3Nzfv375+enk6lUhkMhqmpqYODQ8sRaKfRPn/+fHV19YIFCxoaGs6cOdPY2Pjtt98KBIKIiAhLS8upU6eKxeITJ04MGzZs4MCB7dQG9crIyAgKCiLzjX79+oWFhQHA8ePHQ0NDlZ+/AQEBZWVl7u7uM2fOVHsDOByOt7d3UlLSn3/+GRsba2xsvH37djLfID8Hg4KCpFLpvHnzxo8fr97Q2dnZR48eZbPZCQkJISEhaWlpr/RXmW8EBwerveNkhqOrq7t379439reysjIuLs7W1nb37t1qjBsYGHjt2rUJEybMmjXr9bhkvqGMu2nTJjLfWLRoERD/Bmw2myCI4ODgdevWLVq06MyZM3PnziUIgsFgVFZWWlhYxMTEeHl5yWQyc3NztUd/9OjR5MmTBwwYQBDE4MGDr127NnbsWHLtuEQi0dPTW758eUhIyOLFi+Pi4tQefeXKlYmJiTdv3mzZ3xMnTnh7e0skEisrK3d398TExIkTJ7bHyE+dOrWxsREA3tZfOzu74uJiZ2dn9cbNy8vz9PRMTk5uGXfZsmWhoaHkC0AZ9/DhwxYWFnK5fP78+R8Wa+bMmcnJyQsXLmyPAVRVRUUFQRCLFy+OiIiYN2/e3Llz9+3bRxCEoaEhQRDOzs5+fn5bt269d+/esmXLPn7zduzYsXbtWn9/f4IgmExmTU2NiYlJfHz8rFmzCIKgUChffPFFfHz8nDlzOmT0+Hx+aGjod999l5eXN378+DVr1ly9etXLyyshIWH16tXBwcGdO3d+8eKF2l+u76VQKFxcXDIzMyMjI5csWUIQBJVK9fDwSEhI+OqrrwiCMDU1FYvFAwYM+O2330aPHq1QKDpqDNti69ataWlpQ4YMIQjCwMAgPz9/0qRJAQEB3t7ea9euDQ4OHj9+fEJCQnuMf2Vl5fLly/v160cQxPTp00+dOuXi4iKXy1ksFp/P79Onz+rVq4OCgkaPHq320I2NjRYWFuXl5QkJCT/99NP+/fvJDwgjI6O8vLyJEycGBgYuWrRo3bp1Bw8eVHt08s3ZxcXlyJEjM2bM2LNnz549e9zc3GJjY0eNGqVQKJhMJo/H69OnjxqDpqSkhIWF7dmzhyAIMzOzu3fv9uvX7/z58zNnzoyOjk5PT/f09IyLixs6dGhSUpKGhkZxcfE333yj9r63k6KiIoIgDh48uG7dugULFijf0BgMRlVVVZcuXaKiopYuXdrU1GRtba326FlZWZMmTXJ0dCQIwsnJ6fr168p8QyqV6urqkp+DXl5ep0+fVnt0Mt+4du0a2d/q6upX+uvm5nbu3Ln2yzeEQqEy33i9v7a2tiUlJWp/AyksLGyZbyjjhoWFkXmOMu6hQ4csLS2V+ca/YwmHtbX10aNHExMTf/nll5ycnIEDB5aVlQHA4MGDuVyuoaHhoUOHli5d6uvru3nzZrVHP3DgwMqVKykUCgDIZDJTU1Mej3f48OFNmzbl5OTY2dnduXNn6NChGRkZdnZ2ao+enZ3NYDDc3Nxa9vfIkSNLlixZu3btli1biouLe/XqxeFw2mPk5XL5uXPnunXrFhQUtHXr1idPnrzSXzMzM6IdrkPt0aNHQUEBOUWnjHv37t0hQ4ZkZGTY2toq4xYUFMTExFy6dMnIyOjDYhUUFPTu3bugoKA9BlBV2tras2fPdnBwWLBgwYEDB06cOHH69GkAGDlyZGlpaZcuXfLz8729vY8dO2Ztbf3xmzdkyBB3d/cTJ04AgKOjY1lZmampaUBAwOrVq0NDQxcvXpyXl9ezZ88nT550yOiVlJQEBwcvXLiwtrZ2//79TCbz5s2b+fn5AwcOzM7OtrOzs7KykkqlIpHoIzesoaFBU1PT3Nw8NDR06dKl/v7+q1evzs/Pt7W1ffr0KQD069ePy+UaGBiUl5cfPXo0KirKysqqQ8awLVatWpWRkeHs7AwAQ4cOpdPpVCr1zp07Pj4+5eXldDq9vr7ezs5OJpOpPXRISMiECRNqamoAoLS01N7eXiwWb9iwYf/+/WVlZVpaWjdu3Bg5cmR9fb3aQ585c4ZOp3/77belpaWXLl0aM2ZMbW0tAAwePJjJZJIj4OvrW1ZWRqer/ytfV1dXU1PTBQsW3LlzZ+fOnWw2m06nFxcXk9PPW7Zs2bt3b3l5uaamphqDTpw4MTY2dsaMGQDQvXt3XV1dKpX6+++/r1q16tixYyYmJiUlJQMHDhSJRA8ePNizZw+Hw6HRaGrvezvp2rVrSEhIcnKyn5/fs2fPBgwYoMw3KioqjIyMQkJCvLy8fHx8tmzZovboBw4cWLVqFZlvyOVyExMTHo938OBBPz+/7OzsXr16kZ+DDx8+7Nmzp9qjP378WENDg/waf/DgwRwOp3Pnzi37W1JS0rNnz3bKN6RSaUpKio2Nzdv6a25urlAoyMFRIxsbm4KCgm7dur0el8xzlHELCwtjYmLS09M7d+4M/5Y10LNnz7548aKRkdHLly/pdHp6enpJSQkAsFis33//fcWKFYMGDUpJScnMzOzfv7/aow8aNEgoFDY0NACAWCyOjo4eMmQIk8nkcDgbN2708/MzMzO7dOmStbW1et+kSFpaWtra2tXV1QCgqalJ9nfgwIGpqanZ2dl9+/aVyWTx8fHDhw9vj5GvqKggvxNnsVhlZWWbNm16pb/19fUHDhyYOnWqeuNOmzZNIpGEhoa2jGtqanrp0iUbG5uWcfX19WNjY6dOnfr5559/WCwTExM/Pz9zc/P2GEBVubm51dXVpaamstns+fPnz5w5c+jQoQBQXV3t5eX15ZdfWllZ+fj4kOtbPn7zfH19AwMD+/btCwASiWTz5s0+Pj5Tp04NDAw8c+bMokWLrK2tg4ODhw0b1iGjt337dl9fXycnp7CwMH9//2PHjjk7O5ubm2/dupVKpY4ZM0YkEm3bts3Ly+sjN8zExEQulwcGBk6ZMiUwMPDy5cvknzI4OJhczyAQCHx8fGbOnGllZbV27Vo/P79p06Z1yBi2xfDhw3v27Oni4gIARUVFoaGho0ePbmho6Nq1a3R0tIeHh6amZlFRkY2NjdpDp6Wlbdu2TS6XAwCNRquqqtLX16dQKBQKZcOGDdu2beNyuQKBoD1OS0Qi0ddff92rVy9tbe3a2trGxkZTU1MAYLPZ4eHhyhGIiory8PBQe/SampqHDx/m5OSIRKJu3boFBwd7eHhQqdTa2lodHR2FQkGj0TZu3Lht2zY1Br1y5UpmZiZ5nmBpaZmSkuLm5qatrd3U1CSTyRoaGthsdkFBweDBg+Vyuaur69ChQ9t73Y4azZo1i1y4mJubS6fTz58/X1VVBQAaGhr+/v4rV64cNGhQcnLy06dPe/furfboQ4YMkUgk5Em+WCw+fvz48OHDtbS0ioqKyHzD3Nw8NTWV/BxUe3QdHR0AqKysBAAWi/V6fxUKxenTp0eMGNEeI8/lcouKioyMjN7WXx6Pt2/fPrW/N06cOFEqlR4+fPiVuGQ2r6WlpYxrYGAQHR09Y8aMSZMmAZaxQwghpHZZWVlmZmZUKrWwsPDly5dz586lUCgxMTF0Or09lo22FBsbSxDErFmzeDxeVFRUjx49Jk+efOXKlZycHGdnZ/KMVI2ampqOHz9ubGzs7u5+48aNrKwsJyenESNGZGZmGhsbM5lMNpudm5tLjoDaO1tYWKitrV1fXy8UCnNzc2fNmgUAp06dUigUs2bN4vP5kZGR5Ai002iHh4fr6+u7u7uz2ezExMQ+ffpMmDAhPT29vLzc2dlZT0+Px+P17dtXJBK1R8KHUAfCBBohhBBCCCEV/DuWcCCEEEIIIfSJwAQaIYQQQgghFWACjRBCCCGEkAowgf7YGhsbP/vss+jo6OnTp2dmZnZ0cxD6cA0NDaNGjdq/f//cuXNfvHjR0c1BSD0SEhIoFMry5ctXrlzZ0W1B6MOJRCIy35gxY0ZWVlZHN+d/DV5E2AGioqLWrVsXFxfXTrXnEPpo9u/ff+LEiYCAgHYqbITQxycWi8mSEWw2u0MKriOkLpGRkevWrTtz5gzmG2qHM9Af2/3793///ffp06efPXu2o9uCUJs8f/58zZo1Dg4Of/75Z3vsjoFQh9i3b9/ChQu7d+9OFgBG6F/q3r17+/btc3NzS0hI6Oi2/A/CGWiEEEIIIYRUgDPQCCGEEEIIqQATaIQQQgghhFSACTRCCCGEEEIqwAQaIYQQQgghFfwfUjQ8rPRFKpYAAAAASUVORK5CYII=",
      "text/plain": [
       "Scene (960px, 540px):\n",
       "events:\n",
       "    window_area: GeometryTypes.HyperRectangle{2,Int64}([0, 0], [0, 0])\n",
       "    window_dpi: 100.0\n",
       "    window_open: false\n",
       "    mousebuttons: Set(AbstractPlotting.Mouse.Button[])\n",
       "    mouseposition: (0.0, 0.0)\n",
       "    mousedrag: notpressed\n",
       "    scroll: (0.0, 0.0)\n",
       "    keyboardbuttons: Set(AbstractPlotting.Keyboard.Button[])\n",
       "    unicode_input: Char[]\n",
       "    dropped_files: String[]\n",
       "    hasfocus: false\n",
       "    entered_window: false\n",
       "plots:\n",
       "subscenes:\n",
       "   *scene(240px, 540px)\n",
       "   *scene(240px, 540px)\n",
       "   *scene(240px, 540px)\n",
       "   *scene(240px, 540px)"
      ]
     },
     "execution_count": 13,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "theme = Theme(align = (:left, :bottom), raw = true, camera = campixel!)\n",
    "vbox(\n",
    "    hbox(lines(1:nepochs, history_loss, color = :red), text(theme, \"Full loss\")),\n",
    "    hbox(lines(1:nepochs, history_Lkl, color = :blue), text(theme, \"KL\")),\n",
    "    hbox(lines(1:nepochs, history_Ladj, color = :green), text(theme, \"Adj\")),\n",
    "    hbox(lines(1:nepochs, history_Lfeat, color = :green), text(theme, \"Feat\"))\n",
    ")"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": 14,
   "metadata": {},
   "outputs": [
    {
     "data": {
      "image/png": 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",
      "text/plain": [
       "Scene (960px, 540px):\n",
       "events:\n",
       "    window_area: GeometryTypes.HyperRectangle{2,Int64}([0, 0], [0, 0])\n",
       "    window_dpi: 100.0\n",
       "    window_open: false\n",
       "    mousebuttons: Set(AbstractPlotting.Mouse.Button[])\n",
       "    mouseposition: (0.0, 0.0)\n",
       "    mousedrag: notpressed\n",
       "    scroll: (0.0, 0.0)\n",
       "    keyboardbuttons: Set(AbstractPlotting.Keyboard.Button[])\n",
       "    unicode_input: Char[]\n",
       "    dropped_files: String[]\n",
       "    hasfocus: false\n",
       "    entered_window: false\n",
       "plots:\n",
       "subscenes:\n",
       "   *scene(960px, 270px)\n",
       "   *scene(960px, 270px)"
      ]
     },
     "execution_count": 14,
     "metadata": {},
     "output_type": "execute_result"
    }
   ],
   "source": [
    "plotstate(enc = enc, vae = vae, x = features, refx = labels, g = g, dims = 1:3)"
   ]
  },
  {
   "cell_type": "code",
   "execution_count": null,
   "metadata": {},
   "outputs": [],
   "source": []
  }
 ],
 "metadata": {
  "@webio": {
   "lastCommId": "1c9a67f38de341119e2a650b4ad41b46",
   "lastKernelId": "19914eb1-2188-45e0-a58e-27108145a278"
  },
  "kernelspec": {
   "display_name": "Julia 1.1.0",
   "language": "julia",
   "name": "julia-1.1"
  },
  "language_info": {
   "file_extension": ".jl",
   "mimetype": "application/julia",
   "name": "julia",
   "version": "1.1.0"
  }
 },
 "nbformat": 4,
 "nbformat_minor": 2
}