From fbe3c0aa47b35487d17d0920b2e7b2da60916e86 Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 07:27:18 +0200 Subject: [PATCH 1/7] Renaming xarray_profile so that it can be imported in notebook --- xarray-profile.py => xarray_profile.py | 0 1 file changed, 0 insertions(+), 0 deletions(-) rename xarray-profile.py => xarray_profile.py (100%) diff --git a/xarray-profile.py b/xarray_profile.py similarity index 100% rename from xarray-profile.py rename to xarray_profile.py From 0b48ab4adb7ad18c54946c0f94e423ce97898213 Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 07:27:47 +0200 Subject: [PATCH 2/7] add jupyter, tqdm, matplotlib to pixi --- pixi.lock | 13854 ++++++++++++++++++++++++++++++---------------------- pixi.toml | 3 + 2 files changed, 7933 insertions(+), 5924 deletions(-) diff --git a/pixi.lock b/pixi.lock index c1f0962..796cfc3 100644 --- a/pixi.lock +++ b/pixi.lock @@ -1,5933 +1,7939 @@ version: 7 platforms: - - name: linux-64 - - 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+++-- 1 file changed, 3 insertions(+), 2 deletions(-) diff --git a/xarray_profile.py b/xarray_profile.py index d1ffd94..9bbfe71 100644 --- a/xarray_profile.py +++ b/xarray_profile.py @@ -5,7 +5,7 @@ import zarr from zarr.abc.store import Store -from contextlib import contextmanager +from contextlib import contextmanager, nullcontext import math import cProfile import zarr.storage @@ -158,7 +158,8 @@ def setup(self): self.ds = self.get_ds() self.zarr_arr = self.get_zarr_array() self.positions = self.get_particle_positions() - with self._within_ctx: + ctx = self._within_ctx if self._within_ctx is not None else nullcontext() + with ctx: if self.use_zarr_array: yield self.zarr_arr, self.positions else: From e017186022c045cdb2fdaf716c59b44c0e28fa9e Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 07:39:08 +0200 Subject: [PATCH 4/7] Create explore_scaling.ipynb Notebook for exploring scaling of zarr indexing --- explore_scaling.ipynb | 159 ++++++++++++++++++++++++++++++++++++++++++ 1 file changed, 159 insertions(+) create mode 100644 explore_scaling.ipynb diff --git a/explore_scaling.ipynb b/explore_scaling.ipynb new file mode 100644 index 0000000..e4618cb --- /dev/null +++ b/explore_scaling.ipynb @@ -0,0 +1,159 @@ +{ + "cells": [ + { + "cell_type": "code", + "execution_count": 1, + "id": "e6fe2abe", + "metadata": {}, + "outputs": [], + "source": [ + "import cProfile\n", + "import pstats\n", + "\n", + "\n", + "import matplotlib.pyplot as plt\n", + "import numpy as np\n", + "import tqdm\n", + "from matplotlib.colors import LogNorm\n", + "\n", + "from xarray_profile import TripleInterpolation, Data\n" + ] + }, + { + "cell_type": "code", + "execution_count": 2, + "id": "c173c88a", + "metadata": {}, + "outputs": [ + { + "name": "stderr", + "output_type": "stream", + "text": [ + "Chunk Coverages: 100%|██████████| 10/10 [00:42<00:00, 4.22s/it]\n" + ] + } + ], + "source": [ + "\n", + "chunk_coverages = np.linspace(0.05, 0.95, 10)\n", + "n_particles = [10**k for k in range(0, 8)]\n", + "total_time = np.zeros((len(chunk_coverages), len(n_particles)))\n", + "\n", + "for i, c in enumerate(tqdm.tqdm(chunk_coverages, desc=\"Chunk Coverages\")):\n", + " for j, n in enumerate(n_particles):\n", + " data = Data( # ~1Gb uncompressed\n", + " {\"store\": \"datasets/ds_2d_left_agrid_small.zarr\", \"consolidated\": False},\n", + " n_particles=n,\n", + " chunk_coverage=c,\n", + " use_zarr_array=True,\n", + " )\n", + " data.within_ctx = None\n", + "\n", + " with data.setup() as (ds, positions):\n", + " prof = cProfile.Profile()\n", + " prof.enable()\n", + " TripleInterpolation().run(ds, positions)\n", + " prof.disable()\n", + " stats = pstats.Stats(prof)\n", + " total_time[i, j] = stats.total_tt" + ] + }, + { + "cell_type": "code", + "execution_count": 3, + "id": "b8a92960", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, ax = plt.subplots(1, 1, figsize=(6, 5))\n", + "\n", + "ax.pcolormesh(\n", + " range(len(n_particles)),\n", + " range(len(chunk_coverages)),\n", + " total_time,\n", + " shading=\"auto\",\n", + " cmap=\"viridis\",\n", + " norm=LogNorm(vmin=total_time.min(), vmax=total_time.max()),\n", + ")\n", + "\n", + "ax.set_xticks(range(len(n_particles)))\n", + "ax.set_xticklabels([f\"{n:_}\" for n in n_particles], rotation=45)\n", + "ax.set_yticks(range(len(chunk_coverages)))\n", + "ax.set_yticklabels([f\"{c:.2f}\" for c in chunk_coverages])\n", + "fig.colorbar(ax.collections[0], ax=ax, label='Total Execution Time (s)')\n", + "ax.set_xlabel('Number of Particles')\n", + "ax.set_ylabel('Chunk Coverage')\n", + "ax.set_title('Execution Time for Single Interpolation with Varying Particles and Chunk Coverage')\n", + "plt.show()" + ] + }, + { + "cell_type": "code", + "execution_count": 4, + "id": "240091ff", + "metadata": {}, + "outputs": [ + { + "data": { + "image/png": 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", + "text/plain": [ + "
" + ] + }, + "metadata": {}, + "output_type": "display_data" + } + ], + "source": [ + "fig, ax = plt.subplots(2, 1, figsize=(6, 4))\n", + "\n", + "i = 4\n", + "ax[0].plot(n_particles, total_time[i, :], marker='o', label=f\"Chunk Coverage={chunk_coverages[i]:.2f}\")\n", + "ax[0].set_xscale('log')\n", + "ax[0].set_yscale('log')\n", + "ax[0].set_xlabel('Number of Particles')\n", + "ax[0].set_ylabel('Total Execution Time (s)')\n", + "ax[0].legend()\n", + "\n", + "i = 5\n", + "ax[1].plot(chunk_coverages, total_time[:, i], marker='o', label=f\"Number of Particles={n_particles[i]:_}\")\n", + "ax[1].set_xlabel('Chunk Coverage')\n", + "ax[1].set_ylabel('Total Execution Time (s)')\n", + "ax[1].legend()\n", + "plt.show()" + ] + } + ], + "metadata": { + "kernelspec": { + "display_name": "xarray-interpolation:default (3.14.5)", + "language": "python", + "name": "python3" + }, + "language_info": { + "codemirror_mode": { + "name": "ipython", + "version": 3 + }, + "file_extension": ".py", + "mimetype": "text/x-python", + "name": "python", + "nbconvert_exporter": "python", + "pygments_lexer": "ipython3", + "version": "3.14.5" + } + }, + "nbformat": 4, + "nbformat_minor": 5 +} From dda9179c2b1c545e2debe06fe286ab7174a3e087 Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 07:53:17 +0200 Subject: [PATCH 5/7] Update notebook to use full (24GB) dataset --- explore_scaling.ipynb | 16 ++++++++-------- 1 file changed, 8 insertions(+), 8 deletions(-) diff --git a/explore_scaling.ipynb b/explore_scaling.ipynb index e4618cb..538c633 100644 --- a/explore_scaling.ipynb +++ b/explore_scaling.ipynb @@ -21,7 +21,7 @@ }, { "cell_type": "code", - "execution_count": 2, + "execution_count": null, "id": "c173c88a", "metadata": {}, "outputs": [ @@ -29,7 +29,7 @@ "name": "stderr", "output_type": "stream", "text": [ - "Chunk Coverages: 100%|██████████| 10/10 [00:42<00:00, 4.22s/it]\n" + "Chunk Coverages: 100%|██████████| 10/10 [07:08<00:00, 42.84s/it]\n" ] } ], @@ -41,8 +41,8 @@ "\n", "for i, c in enumerate(tqdm.tqdm(chunk_coverages, desc=\"Chunk Coverages\")):\n", " for j, n in enumerate(n_particles):\n", - " data = Data( # ~1Gb uncompressed\n", - " {\"store\": \"datasets/ds_2d_left_agrid_small.zarr\", \"consolidated\": False},\n", + " data = Data( # ~24Gb uncompressed\n", + " {\"store\": \"datasets/ds_2d_left_agrid.zarr\", \"consolidated\": False},\n", " n_particles=n,\n", " chunk_coverage=c,\n", " use_zarr_array=True,\n", @@ -66,7 +66,7 @@ "outputs": [ { "data": { - "image/png": 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", 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", "text/plain": [ "
" ] @@ -94,7 +94,7 @@ "fig.colorbar(ax.collections[0], ax=ax, label='Total Execution Time (s)')\n", "ax.set_xlabel('Number of Particles')\n", "ax.set_ylabel('Chunk Coverage')\n", - "ax.set_title('Execution Time for Single Interpolation with Varying Particles and Chunk Coverage')\n", + "ax.set_title('Execution time for TripleInterpolation as a function of Particles and Chunk-coverage')\n", "plt.show()" ] }, @@ -106,7 +106,7 @@ "outputs": [ { "data": { - "image/png": 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", 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", "text/plain": [ "
" ] @@ -127,7 +127,7 @@ "ax[0].legend()\n", "\n", "i = 5\n", - "ax[1].plot(chunk_coverages, total_time[:, i], marker='o', label=f\"Number of Particles={n_particles[i]:_}\")\n", + "ax[1].plot(chunk_coverages, total_time[:, i], marker='o', color='C01', label=f\"Number of Particles={n_particles[i]:_}\")\n", "ax[1].set_xlabel('Chunk Coverage')\n", "ax[1].set_ylabel('Total Execution Time (s)')\n", "ax[1].legend()\n", From 23a70fcaf66ece105b60cfe5855a1496e56e54f3 Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 17:28:21 +0200 Subject: [PATCH 6/7] Update notebook to also loop Interpolation function --- explore_scaling.ipynb | 58 +++++++++++++++++++++++++++---------------- 1 file changed, 37 insertions(+), 21 deletions(-) diff --git a/explore_scaling.ipynb b/explore_scaling.ipynb index 538c633..a3b7bce 100644 --- a/explore_scaling.ipynb +++ b/explore_scaling.ipynb @@ -16,12 +16,12 @@ "import tqdm\n", "from matplotlib.colors import LogNorm\n", "\n", - "from xarray_profile import TripleInterpolation, Data\n" + "from xarray_profile import SingleInterpolation, TripleInterpolation, Data\n" ] }, { "cell_type": "code", - "execution_count": null, + "execution_count": 2, "id": "c173c88a", "metadata": {}, "outputs": [ @@ -29,7 +29,7 @@ "name": "stderr", "output_type": "stream", "text": [ - "Chunk Coverages: 100%|██████████| 10/10 [07:08<00:00, 42.84s/it]\n" + "Chunk Coverages: 100%|██████████| 10/10 [01:04<00:00, 6.47s/it]\n" ] } ], @@ -37,25 +37,27 @@ "\n", "chunk_coverages = np.linspace(0.05, 0.95, 10)\n", "n_particles = [10**k for k in range(0, 8)]\n", - "total_time = np.zeros((len(chunk_coverages), len(n_particles)))\n", + "functions = [SingleInterpolation, TripleInterpolation]\n", + "total_time = np.zeros((len(chunk_coverages), len(n_particles), len(functions)))\n", "\n", "for i, c in enumerate(tqdm.tqdm(chunk_coverages, desc=\"Chunk Coverages\")):\n", " for j, n in enumerate(n_particles):\n", " data = Data( # ~24Gb uncompressed\n", - " {\"store\": \"datasets/ds_2d_left_agrid.zarr\", \"consolidated\": False},\n", + " {\"store\": \"datasets/ds_2d_left_agrid_small.zarr\", \"consolidated\": False},\n", " n_particles=n,\n", " chunk_coverage=c,\n", " use_zarr_array=True,\n", " )\n", " data.within_ctx = None\n", "\n", - " with data.setup() as (ds, positions):\n", - " prof = cProfile.Profile()\n", - " prof.enable()\n", - " TripleInterpolation().run(ds, positions)\n", - " prof.disable()\n", - " stats = pstats.Stats(prof)\n", - " total_time[i, j] = stats.total_tt" + " for k, func in enumerate(functions):\n", + " with data.setup() as (ds, positions):\n", + " prof = cProfile.Profile()\n", + " prof.enable()\n", + " func().run(ds, positions)\n", + " prof.disable()\n", + " stats = pstats.Stats(prof)\n", + " total_time[i, j, k] = stats.total_tt" ] }, { @@ -66,7 +68,7 @@ "outputs": [ { "data": { - "image/png": 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", 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7mmF9zeVfuHChy7JXqVJF/4tOujgHnjp1yut12bt3r+6frFmz6nGJz8f3FHmDyIlODDh/mOdpT+cwLMcff/whXbt2jTOPN9T2If4OcouRC+3+d/A9xfO+Wr9+ve4vTKgGgX3//PPPy2uvvabPX79+XV5++WV54IEH9NjBhOMI505Px76/50f8bmL/dOnSJV7vw/kE/aLQ2dv5fNKoUSOXyhiJdZyj86f7/sIx6byvcX5CFZty5cpFO58lFGyf/PnzOx5jW6PDrz+/9fH5zHfffVd/e7p166bb3/m7iGPZ/XcIcG7G7wH2Wfbs2f2Oe/Abg/3zzjvvOF6D+AK/Ec7HXaB+o7w5/5qfhXV09vTTT7s8xu8rzivo+4U+Vu6/6Xgev2fe8imYRnCGDojOU6VKlaK9DieN2rVr60IhCHHuDf3333/rf1988UXHCcic0KMWzp8/7+ilHowKG4CLAU+9uHFQmM87w8nBmZk0jw4kgYaSTc5SpkwZ63zsB+dtj5Oh+7ZHaS1zu8fHpUuX9Ascn20VV+94b+GLkCFDBq9fjy9/TPPcl9GX49X9eZz04uLPcYNl+/TTT6P9Xfy4OC+XN9s9pm1jbhfzvzHt56ioKD0WPMFzDRs2lFWrVslLL72kJ7KdO3c6Tli+fkewTFhG986rCK5wwo3rO2pu77j+PpYbJ+j77rtP3n//ff1BQUMCfjTM7xY89NBD2onJvGDFuQvBCRoTYoOLXZwvEZTMmDFDtm7dqp8/e/bsBDuH+HIs4nwMgTwnJ9Y+jO/5PD4efPBB3V+o/nDgwAEtXzdz5kzH+ReB3ZtvvqnBDwIOHPt4PYIaT8vt7/kR+wnr5XzR6w2cT1Aizv18gosXnOPN80liHefe7Gvz+HHnaZ67bNmy6W/IsWPH4nxtfJcrvuLzmR9++KGWwMTx5P69QUDpvv9Q6hHnZlywxPXd9fZ7gu8mGlZWr17tKNeI0n14Ly6+Avkb5e35F8uG5XKPg5wb0MzX4didNWtWtOVCMO1puQJezcNbCxYskM8++0yvKnESQesfam+aBzAMHTpUHnvsMY/vN8ut4WQTU4uhybwqu337tst8XwJD94MbrY7ucOXlvB5WYi7zRx995GgV9FfmzJn1pB2fbRWIyh2+fM7Zs2djnOfpZBbf4xVfcGdopUpIWDa01IwbN87j8+YJ0JvtFdO2MbeL+d+Y9jOOARwLMVVH+Omnn/Rki5Jhzq3+/sAy4a4Ifuid1w2t4DhZBuo7ihM49iUuOJ3/jvs5B1q1aqUTnsPFwoQJEzSYQnnHGjVqePx8BCZopcSPhvP30t9a0Tg3XrlyJdp8X8+NZotWXOfkUNyHCXk+z5gxY4xVrrD90To3cuRIGTJkiGM+jg/n+sWBPD9iP23btk0vYuMTUGMbIEhDScCYng+14xz7NbbzemzQMo5WWLTk45gO5EWic1ziXI3C37gEPvjgAy3/irvJX3zxhUvZWDRuuv8O4XcAgTTWN67vbny+J6jL/frrr2twjxgP5XJRdtj57lYgfqO8Pf9i2XHOwPfKOaB2PxbwO2XeOe/Tp4/H5YrPb3eCjYC4f/9+6devn16x4soTGxIb2my1QuBRpEgR/XF1b+U2J/M2Hm4F4DaOe5qAM3NwDlxRO8OO9efqEV8y3PIwDyLnVBdczQaq1FlCtmC7wxUjrtxwqzambR9fuEWLCyWcIJ3XASdyfAlwgvK15m2gtw1aRM2WZsAJBl9QlNKL6UQan+PVfX5MAXp8xXTcYvAABKpYfk/L5X6iig1alZzTUnB7EbVtzcEgsB3QMoBa7c6vw4/jxx9/rD+g+F54Yp4A3UsczZs3z+O6ervP8R3FLXT3AW3MATMCVb4Ry49WRucTOU7Qn3zySYzvwXrgx27SpEmO29uxfb75HhO2Merf+gPnRtw6d/7RQasM9qsv8D3GsYZgy9OFRCjvQ3wOWo1//PHHaH8H2x+3ohMCPhv70v3YR4MTzj/eis82xe8mWuziO0gUzif4bcB5y9P5xNNAWME+zrHffv31Vz0/O8N5yhtoJMEyPPfcc3Lnzp1oz6PkJFpW4yumuMSXz3KHQPHLL7/UTAGsv3NKAn6L3Pcbzl24SMJ+QrpEbAF9fOIe/P1q1appqge2N84JCLAD/Rvl7fnXLAuK33RnCPadYT2w3XCsIj71tFzx+e32qWUaG8XMwXGGDYWrYfywojkeUT0KyWMDIKcHudPYyOYJEz+i+MIjuEMuDn6kcTWB/Bec7LDDYcyYMXrViNtKr7zyipQpU0ZvKaDu48CBA3UAGaQs4Icet+GxbLjqwK0HXJm7w/sR9M2dO1ev4HDVHlMAiZYEM99nxIgRegDjihAt7hgVCa0RgYBlAtz2QqsdbjVgfZzzAgMFX3Bs02HDhsnRo0d1kAdsLwSYuPWIwBgDA8QXWiVQkxPbCvsB+x37H8cLgjRfW1pwXOEkgO2OLy7ypfDli0+Q6AxXyfXq1dOreqwrlhH50O5fNnfeHq8JBccI8hVxIsZtMBwbOEawLzdt2qS5zbiAxTz8iOK2HvI4MeCAt60taAlEDhl+VNCahuMfrSv4sQF8V3DcI20LJ8gePXroyRMtE/hOTpw4McbPxvcU+xItc/jhwncJ64Jl97Su3n4fcMGOW8R4HdYZ78X3HoPc4HYd6v0GAtYX5w2k9SC39+TJkzJ27FjdF4cPH3a8DucJtPzgBwnbHdsF64F1iK3+M747+M4gtw9pMNiHOEfFlDbjLbS84NhF/WnsVwTS2IfxSY1yh+3dokUL/VHF4CbI88Tte6Qv4HsaqvsQy4qAAHnh+N6gZRTncpwDUGc4oQa5wbbG7xe+Jzj/4ByMW/HI93QffCU28dmmOI4Q4KCPAhqicF5G4wbuAOA8+tRTT3n8G2hVxIUxlhfbC4EG3of9ixZQ1FxG8BRKxzmWGRd32K/IUcctfRyHOK97A40AWAZ8txET4FhACgKCaARb8+fP1xQWHPPxgWMX5zn0L8DxhkYsXNzg3BEI2O+Ig3C3FNsVjYdxXRCi7jlSkrAPcS5GOi5++/FenCfwmfGNe7p06aK/BQi+8TvkPohbIH6jvD3/Ip5BXjWO06tXr+r+REqIeWHufJcGxyu2BdKOsM/xvbx27ZreLcVvU7z6UASqmodzr+H27dtrj0/3EmvoZY7XoQyO6aefftLqEagEgKoBqCaB3qbo3e0MpZZQ1QPPm3Uv8T7n+smoF4hyXejdinJDqFZh9ux07s2LHpro/YoeregB7LwZPNUhROkZlJZDCRWUe0EVDffKEjH1pPdUwSEmQ4cO1fVCT+rY6ofGVE0jpmWIqT44yl6h/Ay2F3ruojcxtgvK1sQmpr/vXGcaPdRRNQMVPtzrv3pbr9wZKgmgmgb2vac6057EVmd6zpw52mMYn4fPRbk3b+pMe3u8xreah3tJI0+9vdFTHaW68N3Cc87HBN7fr18/rZ6D5UIPcJSrGzZsmKM2bGz7zbnOND4H3x8cEygDuHv37mivx7GDUlLo8Yztj3rqzrVrY1oHVORBD3uUXUK5NZR+Qo9xT987b78PZo1ilONEVRVUqsF+x/tjqlHszlOtXU9QagklpbBtUJ8c5zz3HvsoNYle7yjvhPMFjhVUenAuGxgTfFdwfsF2xftRCQKl0eKqSBDb9x9QOgrLi89FJQSUM4ytzrQ7T/sHFYqwnjgvmjXDUfIs1PchKgq0a9dOS67hu4KyjFhn92o88a3mEddrUeIVFQ5w3OP4R/lB1Jd3X+64zo/x2aao8IByfGZNfawzzlfONeE9bTecM1CKFNsG7zPLh2H/mpWQEuM4N+tMe3NuN88t+Eyc/1DlARWCvPnuOJ9j8dkoqYd1wrkNlSKwDZ2rX8S0vz3tA1TDQZUjfBbWFd+jBQsWeKzm4c1nejo+bt++rccW1h0xT1ywrXDuxfGA9cT6ouyce53puOIe05UrV/T3PrbqMf7+Rnl7/jVjPJRZRIyH30scFyjpjNc5V84x/yZiS7P+NX77sL9ee+01Iz7C8H/eh95E1obWceRHIYef/h9avNEKgdZ194oKREREVrZ06VK9o7p9+3ZtIQ+0BO2ASERERESUWJBWimoxSItCWgfyyZFihdSlhAikgcE0EREREdlC+vTptQ8U8ufRhw951ejnZNZ8TwhM8yAiIiIi8lGClcYjIiIiIrI7BtNERERERD5iME1ERERE5CN2QCTLwkACKBKPzgaBGpqciIgSH6r0YsAMDMYVn+HPvYVBQjyNbugLDDpjDhVOBAymybIQSOfLly/Yi0FERAGCke28HbE1PoF0oQLp5Ow574duj02uXLnk2LFjDKjJgcE0WZY5hO5DpftL8vAIsZIL5QIzDH0w3Gp8VayoZcH9YlXhYVFiRWE6OK41ZUz+r1jRM+mPiBVdux4lJSuf8Tg0ur/QIo1A+tieApIhvX+t3levRUmhSn/qZ7J1mkwMpsmyzNQOBNJWC6bDU1r3FmF4mttiRRHpUohVWTWYTmbhYDpV8rtiRf4Gi8GWkCl72DZW3z4UmhhMExERke1FGlESafj/GUTuGEwTERGR7UWJoZO/n0Hkjvc7iIiIiIh8xJZpIiIisr0o/Z//n0HkjsE0ERER2V6kYejk72cQuWOaBxERERGRj9gyTURERLbHDoiUUBhMExERUZIIpiNZzYMSANM8iIiIiIh8xJZpIiIisj2meVBCYTBNREREtsdqHpRQmOZBREREROQjBtPklTlz5kihQoUkVapUUqlSJdm6dWusr589e7aUKFFCUqdOLcWKFZMlS5a4PL948WIJCwuLNt26dYt7hIiIAi4qQBNUqVJFSpYsqb91REzzoDgtX75c+vfvrwF1rVq1ZN68edKkSRM5cOCA5M+fP9rr586dK0OHDpW3335bTzg7d+6U5557TjJnziwtWrRwvC5Dhgxy8OBBl/ciWCciIgq0yABU8zDfv2vXLv0NIwIG0xSnqVOnSteuXaVbt276ePr06bJx40YNmidMmBDt9e+995706NFD2rZtq48LFy4s33//vUyaNMklmEZLdK5cubgHiIiIyLKY5kGxunPnjuzZs0caNmzoMh+Pd+zY4fE9t2/fjtbCjHQPtFDfvXvXMe/69etSoEAByZs3rzRv3lz27t0b67Lgc69eveoyEREReSPSCMxE5I7BNMXq/PnzEhkZKTlz5nSZj8dnz571+J5GjRrJggULNAg3DEN2794tixYt0kAanwfFixfXvOm1a9fKsmXLNPhGCsnhw4djXBa0gmfMmNEx5cuXj3uPiIgSPWeayBmDafIKUjKcIUh2n2caPny45lRXr15dUqRIIa1atZLOnTvrc+Hh4fpfPNe+fXspV66c1K5dW1asWCFFixaVWbNmxbgMyMO+cuWKYzp58iT3HhEREQUVg2mKVbZs2TQAdm+FPnfuXLTWaueUDrRE37x5U44fPy4nTpyQggULSvr06fXzPB6IyZJpZ8XYWqYjIiK0w4fzRERE5I0oCZNIPyd8BpE7BtMUq5QpU2opvE2bNrnMx+OaNWvG+l60SiMfGsH4hx9+qHnRCJo9QUv3vn37JHfu3NwjREQUcFFGYCYid6zmQXEaOHCgdOjQQSpXriw1atSQ+fPna2tzz549HekXp06dctSSPnTokHY2rFatmly6dEmrgfzyyy/y7rvvOj5z9OjRmupRpEgR7Ug4c+ZMDaZZs5OIiIishME0xQkl7i5cuCBjxoyRM2fOSOnSpWX9+vVaiQMwD8G1CR0Wp0yZojWk0Tpdt25drfyBVA/T5cuXpXv37po+gs6EFSpUkC1btkjVqlW5R4iIKODMVA1/P4PIXZiB++tEFoQWbQTi9cq9LMnDI8RKzlfMJFZ1q/kVsaLHCv8kVhUeZs0aAsn8HCAjmDImvylW9GyGQ2JFV69FSb7ip7RzeaD7w5i/FTt+zS3p0vuX3Xr9WpTULHUmQZaTrIs500REREREPmKaBxEREdlelBGmk7+fQeSOwTQRERHZHnOmKaEwzYOIiIiIyEdsmSYiIiLbi5RkOvn3GUTRMZgmIiIi2zMCkDONzyByxzQPIiIiIiIfsWWaiIiIbI8dECmhMJgmIiIi24s0kunk32cEbHHIRpjmQURERETkI7ZMExERke1FSZhE+dmGGCVsmqboGEwTERGR7TFnmhIKg2miYLBwdaVkYdZsmUkTflus6nZUCrGi21HW/Ymx7Da3aCXkOxIV7EUg8pl1z3REREREidoB0ZqNCZSwGEwTERFREsmZ9u+2oL/vJ3tiNQ8iIiIiIh+xZZqIiIhsD5U8IlnNgxIAg2kiIiKyPeZMU0JhmgcRERERkY/YMk1ERERJIs2Dg7ZQQmAwTURERLYXaYTp5O9nELljmgcRERERkY/YMk1ERES2FxmAah6RwkFbKDq2TBMREZHtRRnJAjIFw7p166RYsWJSpEgRWbBgQVCWgWLGlmkiIiKiEHXv3j0ZOHCgbN68WTJkyCAVK1aUxx57TLJkyRLsRaP/Ycs0ERERJZk0D3+nxLZz504pVaqU3HfffZI+fXpp2rSpbNy4MdGXg2LGYJqIiIhsL8qpooevEz4jvrZs2SItWrSQPHnySFhYmKxZsybaa+bMmSOFChWSVKlSSaVKlWTr1q2O506fPq2BtClv3rxy6tQpn7cDBR6DaSIiIqIEcuPGDSlXrpy8+eabHp9fvny59O/fX4YNGyZ79+6V2rVrS5MmTeTEiRP6vGFE7/SIoJxCB4Np8kpsV82efPDBB3rySJMmjeTOnVueffZZuXDhguP5xYsX68nAfbp16xb3CBERJdigLf5OcPXqVZfp9u3bMf5dBMavvfaa5jl7MnXqVOnatat069ZNSpQoIdOnT5d8+fLJ3Llz9Xm0Sju3RP/111/6u0qhg8E0xSmuq2Z327Ztk44dO+rJ4ddff5WVK1fKrl279EThDB0pzpw54zIhWCciIgq0SCNZQCZAsJsxY0bHNGHCBJ+W6c6dO7Jnzx5p2LChy3w83rFjh/67atWq8ssvv2hAfe3aNVm/fr00atQoAFuEAoXVPChOzlfNgKtmdH7AVbOnE8j3338vBQsWlH79+uljtGj36NFDJk+e7PI6tETnypXL6z2AK3/nq3+0BhARESW2kydPaoOQKSIiwqfPOX/+vERGRkrOnDld5uPx2bNn9d/JkyeXKVOmSN26dSUqKkpeeuklyZo1q59rQIHElmny+6rZXc2aNfU2FK6ekev1999/y0cffSTNmjVzed3169elQIEC2pmiefPm2uodGwTuzi0BaBkgIiLyRpSEBWQCBNLOk6/BdEw50PjtdJ7XsmVLOXTokBw5ckS6d+/OHR5iGEyT31fNnoJp5Ey3bdtWUqZMqa3PmTJlklmzZjleU7x4cc2bXrt2rSxbtkzTO2rVqiWHDx+OcVmGDh0qV65ccUxoGSAiIkrsNI9AyZYtm4SHh0f7PT137ly0310KXQymKSBXzc4OHDigKR4jRozQVu0NGzbIsWPHpGfPno7XVK9eXdq3b6+dFJGDvWLFCilatKhLwO0OV/7urQFERERWhQYndOrftGmTy3w8RsMUWQNzpingV81Ix0Ar8+DBg/Vx2bJlJW3atBo0o0ezp17IyZIlkypVqsTaMk1EROSrQAy64sv7kdKI9AwTGpf27dunIxjmz59fRzfs0KGDVK5cWWrUqCHz58/XDv7ODVAU2tgyTQG/ar5586YGx84QkMdUL9Ocj5MLy/0QEVFCiMKgKwGYAI0/JUuWlNmzZ8f5d3fv3i0VKlTQCRA849+4ewtIiUTH/jFjxkj58uV1kBf0OUKfIrIGtkxTnOK6akYuM0r2LFmyRB9jpKfnnntOq32gfA9K3qG0Hsr7YAQoGD16tKZ6FClSRKtyzJw5U4Npb05MREREwYRyr96mGj788MMxNiSZevfurRNZE4NpihOumjHgCq6aERiXLl3a5aoZ85xrTnfu3FlrYWK0p0GDBmnnw3r16smkSZMcr7l8+bL2SEb6CCpz4CodV+MIuImIiAItKgBpHuagLUTOwoy4LpeIQhRatBGI1yv3siQP968sUWI7XymTWNWd5pfFito9sEus6nZUCrGiu1H/pXdZUcbk/4oVPZvpZ7Gia9ei5P7iZ7VSU6A7l5u/FeN31pVU6fxrQ7x1/Z68UnVzgiwnWRcvsYiIiIiIfMQ0DyIiIrK9SAnTyd/PIHLHlmkiIiKyvSgjWUCm+FbzIPtjyzQRERFRAlXzIPtjME1ERES2FxmANA18BpE7BtNERERke85pGv58BpE7HhVERERERD5iyzQRERHZXqSRTCd/P4PIHYNpIiIisj1DwiTKz5xpfAaRO15iERERERH5iME0ERERJZk0D38nYJ1pcsY0DyIiIrK9KCNMJ38/A1hnmpwxmCbrSxYmksxaN1mMcLGsyChr5gxeuptWrOp2FE/ViS0i2T2xoruGIVZk1eUmAp6hiYiIyPYiJZlO/n4GkTsG00RERGR7gUzzIHLGSywiIiIiIh+xZZqIiIhsL0qS6eTvZxC5YzBNREREthdphOnk72cQueMlFhERERGRjxhMExERUZLpgOjvBBy0hZwxzYOIiIhszzCSSdT/RjD05zOAg7aQM7ZMExERERH5iC3TREREZHuREqaTv59B5I7BNBEREdlelOH/oCv4DCJ3TPMgIiIiIvIRW6aJiIjI9qIC0AHR3/eTPTGYJiIiItuLkjCd/P0MIne8xCKvzJkzRwoVKiSpUqWSSpUqydatW2N8befOnSUsLCzaVKpUKcdrFi9e7PE1t27d4h4hIiIiy2AwTXFavny59O/fX4YNGyZ79+6V2rVrS5MmTeTEiRMeXz9jxgw5c+aMYzp58qRkyZJFnnjiCZfXZciQweV1mBCsExERJdRw4v5ORO4YTFOcpk6dKl27dpVu3bpJiRIlZPr06ZIvXz6ZO3eux9dnzJhRcuXK5Zh2794tly5dkmeffdbldWiJdn4dJiIiooTMmfZ3Ao6ASM6YM02xunPnjuzZs0eGDBniMr9hw4ayY8cOr7bewoULpX79+lKgQAGX+devX9d5kZGRUr58eRk7dqxUqFAhxs+5ffu2TqarV69y7xERUaLjCIjkjC3TFKvz589rsJszZ06X+Xh89uzZOLceUjc+//xzbdV2Vrx4cc2bXrt2rSxbtkzTO2rVqiWHDx+O8bMmTJigrd7mhNZxIiIirzsgGn5O7IBIHjCYJq8gJcOZYRjR5nmCgDlTpkzSunVrl/nVq1eX9u3bS7ly5TQHe8WKFVK0aFGZNWtWjJ81dOhQuXLlimNCLjYREZE3jP9V8/BnwmcQuWOaB8UqW7ZsEh4eHq0V+ty5c9Faq90h4F60aJF06NBBUqZMGetrkyVLpjlosbVMR0RE6EREREQUKtgyTbFCEIxSeJs2bXKZj8c1a9aM9b3ffvutHDlyRDsvxgWB9759+yR37tzcI0REFHB+p3j8byJyx5ZpitPAgQO1dbly5cpSo0YNmT9/vpbF69mzpyP94tSpU7JkyZJoHQ+rVasmpUuXjvaZo0eP1lSPIkWKaEfCmTNnajA9e/Zs7hEiIgo4joBICYXBNMWpbdu2cuHCBRkzZox2KERwvH79ekd1DsxzrzmNnOaPP/5Ya057cvnyZenevbumj6AzIap4bNmyRapWrco9QkRERJbBYJq80rt3b51i6mToDgHyzZs3Y/y8adOm6URERJQYApGmwTQP8oTBNBEREdmeWZHD388gcscOiEREREREPmLLNBEREdke0zwooTCYJiIiIttjME0JhWkeRERERPGAQcZKlizJcq6k2DJNREREthfIluldu3ZJhgwZArRkZHVsmSYiIiIi8hFbpomIiMj2mDNNCYXBNBEREdmeEYA60fgMIncMpomIiIiSmIMHD8qyZctk69atcvz4cR21OHv27FKhQgVp1KiRtGnTRiIiIoK9mJbAnGkiIiJKMmke/k5Wt3fvXmnQoIGUK1dOtmzZopVJ+vfvL2PHjpX27duLYRgybNgwyZMnj0yaNElu374d7EUOeWyZJiIiIttjzvR/WrduLYMHD5bly5dLlixZYtxe3333nUybNk2mTJkir7zySqLtJytiME3Wd88QMaLESsLuBXsJkp7Ld9OIVd01rHkTMcqiyw0Zkt8SK0oRZs2WU6sutxUdPnxYUqZMGefratSoodOdO3cSZbmsjME0ERER2R5bpv8TVyB9+fJlyZQpk+OxN4F3UmfdZgMiIiIiLzFnOjrkRCPdw/Tkk09K1qxZ5b777pOffvqJx5aXGEwTERERJUHz5s2TfPny6b83bdqk0+effy5NmjTRvGryDtM8iIiIyPYMI0wnfz/DTs6cOeMIptetW6ct0w0bNpSCBQtKtWrVgr14lsGWaSIiIrI9DNgSiMlOMmfOLCdPntR/b9iwQerXr6//Rnm8yMjIIC+ddbBlmoiIiCgJeuyxx6Rdu3ZSpEgRuXDhgqZ3wL59++SBBx4I9uJZBoNpIiIisj1W84gOdaSR0oHW6cmTJ0u6dOkc6R+9e/dO9H1kVQymiYiIyPYCmTONUQPDw8OlT58+OllVihQp5MUXX4w2HyMikvcYTBMRERHFw65duyRDhgyW3GYY2RCDsXjjxo0bcvz4cSlVqlSCL5eVsQMiERER2R7rTP+nY8eO0qBBA1mxYoVcv37d47Y6cOCADiGOvOkff/wxUfeTFbFlmoiIiGyPpfH+P1BGfekRI0bIM888I0WLFpU8efJIqlSp5NKlS/L7779rizQ6J6LudOnSpYO850Ifg2kiIiKiJAJ50n379tUJrc5bt27VVI5///1XypUrJwMGDJC6detKlixZgr2olsFgmoiIiJJEyzRSPfz9DDupWLGiTuQfBtNERERke4YGw/5/BpE7dkAkIiIiIvIRg2nyypw5c6RQoULaQaFSpUqaYxWb27dvy7Bhw6RAgQISEREh999/vyxatMjx/OLFiyUsLCzadOvWLe4RIiIKOA4nTgmFaR4Up+XLl2sBdwTUtWrV0l7AGHIUPYLz58/v8T1PPvmk/P3337Jw4UItrXPu3Dm5d++ey2tQo/PgwYMu8xCsExERBRqreVBCYTBNcZo6dap07dpVunXrpo+nT58uGzdulLlz58qECROivX7Dhg3y7bffytGjRx29gTFcqTu0ROfKlcvrPYDWbkymq1evcu8REREFAO4Ms0HLN0zzoFjduXNH9uzZIw0bNnSZj8c7duzw+J61a9dK5cqVZfLkyXLfffdpDUsMV4qyO85QLB5pIHnz5pXmzZvL3r17Y10WBO4ZM2Z0TPny5ePeIyIir3DQFg/bJCpKxo4dq7/V6dKl00YwGD58uN5ZJu8wmKZYnT9/XiIjIyVnzpwu8/H47NmzHt+DL+O2bdvkl19+kdWrV2tL9kcffSR9+vRxvKZ48eKaN43Ae9myZXo1jBSSw4cPx7gsQ4cOlStXrjimkydPcu8REZFXUMkjEJOdvPbaa/pbjMavlClTOuaXKVNGFixYENRlsxKmedjU5cuXNYD9448/ZPDgwZpugeLsCIJxBRpfSMlwZhhGtHnOV7p47oMPPtAWZDNV5PHHH5fZs2dL6tSppXr16jqZEEij1uWsWbNk5syZHj8XHRkxERERkf+WLFki8+fPl0ceeUR69uzpmF+2bFkdCZG8w2Dahn7++WepX7++BrIY1ei5557TYBqtxH/++ad+ebyVLVs2CQ8Pj9YKjQ6F7q3Vpty5c2vAbgbSUKJECQ3A//rrLylSpEi09yRLlkyqVKkSa8s0ERGRr9gBMbpTp05pkQBPjWJ3797lweYlpnnY0MCBA6Vz584amDp3JkAFji1btsTrs3DbB6XwNm3a5DIfj2vWrOnxPWhlPn36tOZEmw4dOqQBM/KjPUGgvW/fPg3EiYiIEiqY9neyk1KlSnksdbty5UqpUKFCUJbJitgybUO7du3S8nXu0FocU55zXMF5hw4dtFNhjRo19JbQiRMnHLeEkMuMq1uzxbtdu3baoeHZZ5+V0aNHa941Uk26dOmiKR6A+UjzQCs1qnIgtQPBNNJAiIiIKOGNHDlSf9/xG47W6FWrVmnJWvyer1u3jrvASwymbQit0Z7KxuELkj179nh/Xtu2beXChQsyZswYOXPmjJQuXVrWr1+vlTgA8xBcm9AjGC3Xzz//vAbgWbNm1brT6OjgnNPdvXt3De6RDoIrYLSaV61a1ef1JiIiiq2aR5ifLcv4DDtp0aKFjiUxfvx47es0YsQI7b/06aefSoMGDYK9eJYRZuD+OtkKgtR//vlHVqxYobnSyKFG3nPr1q3loYce0uoadoALBgTi9cq8LMnDrdUx8XzlTGJV/za7Ilb0YN5jYlV3DWtm5EVZdLkhf+qLYkX9su4UK7p2LUruL35WKzVhQK+E+K0o+sEQCU/j329F5M3bcuiZiQmynGRd1j3TUYzeeOMNDaZz5MihtZ3r1KmjHQzSp08v48aN45YjIiIiF+jnhAsP54m8wzQPG8LVMuo8f/3111oOD3lQuG2DCh9ERERJ0X91ov1L07Dbvfxjx45J37595ZtvvtEREN3L32KcCYobg2kbq1evnk5ERERJHUvjRffMM8/ofxctWqTlbmMaP4Jix2DahmIa9ARfEnRORMoHcqeRR01ERERJE/pU7dmzR4oVKxbsRbE0BtM2NG3aNM2ZvnnzpmTOnFlv16B6Rpo0abTSBgZcKVy4sGzevFny5csX7MUlIiJKcMjQ8DdLw2ZZHjpY2smTJxlM+4kdEG0IJW7M0QRR0u7ixYs6aEq1atVkxowZWsYuV65cMmDAgGAvKhERkeUGbcFvbMmSJS0/NsKCBQtk0qRJ8u6772oLNVqqnSfyDlumbejVV1+Vjz/+WO6//37HPKR2oMpHmzZt5OjRozJ58mT9NxEREcV/cDQ7lMbDXew//vhDB1lzTgllB8T4YTBtQxhE5d69e9HmY545AmKePHnk2rVrQVg6IiKiIGCeRzQYmRiDpi1btowdEP3AYNqG6tatKz169NDbN/iSwN69e6VXr16O6h779++XQoUKBXlJiYiIEolTmoY/n2Enf/75p6xdu1bvXpPvmDNtQwsXLtSRDytVqiQRERE6YVhvzMNzgI6IU6ZMCfaiEhERUZCgge2nn37i9vcTW6ZtCJ0LN23aJL///rt2PETuU/HixV1666L1moiIKGkN2uL/Z9hJixYttBgB7laXKVNGUqRI4fJ8y5Ytg7ZsVsJg2sYQQGMiIiJK6jhoS3Q9e/bU/44ZMybacxwB0XsMpm3qr7/+0jwolMG7c+eOy3NTp04VO4lKlVyikrteTYc8C6fdhSezZtPMP7fTiVWlCr8rVnQr0mLfSyfXU0aIFd2IihIrsupyW10Ut3tAMJi2oa+++kpvzaCD4cGDB6V06dJy/PhxTfeoWLFisBePiIgo8aHzIDsgUgJgMG1DQ4cOlUGDBultm/Tp02vN6Rw5csgzzzwjjRs3DvbiERERJTrmTP9n5syZ0r17d0mVKpX+Ozb9+vVLlH1jdQymbei3337TmpGQPHly+ffff7V6B4LrVq1aaYk8IiIiSnqmTZumjWsIpvHvmCBnmsG0dxhM21DatGnl9u3bjsFZMLpRqVKl9PH58+eDvHRERERBwEFb1LFjx2TLli1Ss2ZN/Tf5j8G0DVWvXl22b98uJUuWlGbNmmnKB8rerFq1Sp8jIiJKaljNQ1zK42K0ZKSAkv8YTNsQqnVcv35d/z1q1Cj99/Lly3WEo9hu6RAREZH9oSABBQ6DaZuJjIyUkydPStmyZfVxmjRpZM6cOcFeLCIiouBjDOmSE02BwWDaZsLDw6VRo0baCTFz5szBXhwiIqKQwDQPV8OHD9cGt9jYbVyKhMJg2oYwJOjRo0e1zjQRERGRO/SlSpkyZYwbhi3X3mMwbUPjxo2TF198UcaOHSuVKlXS6h7OMmTIELRlIyIiCgpW83CxevVqdkAMEAbTNmQOzIJREJ2vLNHhAI+RV01ERJS04PfQ3zxhe+QZs9U5sBhM29DmzZuDvQhEREQUoljNI7AYTNtQnTp1gr0IREREoYVpHg7vvPOOZMyYMZh7w1aSBXsBKGFs3bpV2rdvryMcnTp1Sue99957sm3bNm5yIiJKusG0v5MNdOrUSSIiIoK9GLbBYNqGPv74Yy2Plzp1avnxxx8dQ4tfu3ZNxo8f79NnolY1qoOkSpVKOzUiWI/JN998o/lY7tPvv//ueM3ixYs9vubWrVs+LR8RERFRMDCYtqHXXntN3nrrLXn77bclRYoUjvlopUZwHV8YPbF///4ybNgw2bt3r9SuXVuaNGkiJ06ciPV9Bw8e1OFKzalIkSLRqoo4P48JwToREVHAGWGBmYjcMGfahhDEPvTQQ9HmI3i9fPlyvD8PRdu7du0q3bp108fTp0+XjRs3yty5c2XChAkxvi9HjhySKVOmGJ9HS3SuXLnivTxERETxhRG0/R1Fm6Nwkydsmbah3Llzy5EjR6LNR7504cKF4/VZd+7ckT179kjDhg1d5uPxjh07Yn1vhQoVdFkeeeQRjxVGrl+/LgUKFJC8efNK8+bNtdU7NkhXuXr1qstERERE/sFv/V9//aV3nJ0n8g6DaRvq0aOHvPDCC/LDDz9o6+/p06flgw8+0IFcevfuHa/POn/+vNalzpkzp8t8PD579qzH9yCAnj9/vuZur1q1SooVK6YB9ZYtWxyvKV68uOZNr127VpYtW6bpHbVq1ZLDhw/HuCxoBUfvY3PKly9fvNaFiIiSMHZAjAa/uUjdRB8rNG6hbxSmggULchTleGCahw299NJLcuXKFalbt6526EPKB3rtIpju27dvQAq8mwPAeILgGZOpRo0acvLkSXnjjTcc6SfVq1fXyYRAumLFijJr1iyZOXOmx88dOnSoDBw40PEYLdMMqImIyCuByHm2Wc50586dJXny5LJu3TptCONgLr5hMG3jIcXRYfDAgQMSFRUlJUuWlHTp0sX7c7Jlyybh4eHRWqHPnTsXrbU6Ngic33///RifT5YsmVSpUiXWlmlcELCUDxERUWDs27dPUzlxt5h8xzQPG3r33Xflxo0bkiZNGqlcubJUrVrVp0AaUqZMqaXwNm3a5DIfj1EdxFvIh8ZVb0zQ0o0vdWyvISIi8lWYEZjJTtDQhnRO8g+DaRtCOgcqaTz11FN66+bevXt+fR5SKxYsWCCLFi2S3377TQYMGKAdE3r27OlIv+jYsaPj9aj2sWbNGm1l/vXXX/V55E87p5iMHj1aK4IcPXpUg2hUC8F/zc8kIiIKKOZMRzNp0iRNDcX4EBcuXGAnfx8xzcOGUK95w4YN2rEPATU6FjzxxBOOERHjq23btvolGzNmjH526dKlZf369dpZwfx7zr1+0SsYAT1GXsTfLlWqlHz22WfStGlTx2tQoq979+6aPoLOhKj8gQ6KaEUnIiKihFe/fn39L4oEeOoXhQIEFLcwA1uMbOvmzZuyevVqWbp0qXz55Zdahu6PP/4QO0AHRATiD1cZJsmTW2uwl4ul04pV3Wke/1rloeCBrNa9lZkq/K5Y0a3I/x80ymoKpr0gVvRCtm/Fiq5di5KyJc9p53mMiZAQvxX5po2VZKn9+62I+veWnBwwPEGWMxi+/Tb246VOnTqJtixWxpZpm0PeNIYWv3Tpkvz555+apkFERJRk0zz8/QwbYbAcGAymbd4ijfrSaJFGCbmnn35aVq5cGexFIyIiogB69NFHNe8Z6RofffRRvN6LtMuFCxdqYxtSO9ApsUuXLtqaT95hB0QbQtCMDojoKIji6/iCIbXjtddekxIlSgR78YiIiBKfjTsg9uvXT5YsWRLv9+3evVvuv/9+mTZtmly8eFEre0ydOlXn/fjjjwmyrHbElmkbwpXl8uXLNb0DxdiJiIiSPBuneWCQNjScxRca3Vq2bClvv/22I15ABbBu3bpJ//79XUYuppixZdqG0NmwWbNmDKSJiIiCDAFpixYtJE+ePNrYhdKx7ubMmaN3klOlSqVjO2zdujVRlg0t0y+//LJLvIB/o1weniPvMJi2KfTQxZf3gQcekCJFiuiVZ2J9OYmIiEJ2OHF/p/9VCHGebt++HeOfxSBq5cqVkzfffNPj87iTjFZgjFqMAc5q164tTZo0cSk5iwAbZWndp9OnT/u1SVCRxPnvmE6ePCnp06f367OTEuYA2BCG7X722Wflscce0zwqVD/csWOHdkxYvHixtGvXLtiLSERElKgCMYKh+X506nc2cuRIGTVqlMf3IDDGFBPkKGPgMqRWmAOfYVCzuXPnyoQJE3QehvxOCBhHAn/7jTfe0HEo0HK+bds2GTx4sPa/Iu8wmLahcePGyeTJkzUXyvTCCy/oF3bs2LEMpomIiPyAllvnOtMRERE+fQ4GOUOgPGTIEJf5DRs21EawhIYgGgE0RjE2R0tOkSKF9OrVSyZOnJjgf98uGEzbEIboRoqHO6R6vPLKK0FZJiIiIrt0QEQgHYhBW1A9A6MM5syZ02U+HmOEYG+h4ACqbyClBIOzoTRulSpV4nxfypQpZcaMGdoCjqpfuJON9FCMUUHeYzBtQ7j99NVXX+kXwhnmud+aIiIiouBC67Cn4by9hbQQfyB4LlOmjF+fkZQxmLahQYMGaa70vn37XHKgkC+NK1AiIiIKvmzZskl4eHi0Vuhz585Fa60OFPSnQjyAlnX8OzarVq1KkGWwGwbTNoRcp1y5csmUKVNkxYoVOg+DtaDHcKtWrYK9eERERIkO7bx+d0CUwEKaBSp1bNq0SUcxNOFxQv1eY2RDs9UbAXV8WsDJMwbTNoUvpfMX086S3Y2UZFH/dZywiv9VV7Kke5HWrKh56VZqsaoosWb+YnhYlFjVtYhUYkWpLBoY3U2M5XYqbefXZ4hoPjJalPv06aNTbK5fvy5HjhxxPD527JjeOc6SJYvkz59fBg4cKB06dJDKlStLjRo1ZP78+VqurmfPnpIQ3nnnHce/0UJN/rPmryJ5dOnSJZk1a5bWvHR35cqVGJ8jIiIi7+3atUsOHDgQZyANGPykQoUKOgGCZ/x7xIgRjvJ0KIc3ZswYKV++vA7ysn79eilQoECC75J69erJ5cuXo81HrIDnyDtsmbYRFIT/+eef5fnnn/d4WweDtuALgsLwRERESUqQhhN/+OGHtUNhbHr37q1TYsMQ5CjP5+7WrVsc6C0eGEzbyMcff6x50jHp0aOHvPjiiwymiYgo6QlSMB2K0PBmQgu7cwdIlOrbsGGD3HfffUFaOuthMG0jqBGJocNjgufwGiIiIkq6kE6CjoeYPKVzpE6dWlNDyTsMpm0EnSFOnz6tHRo8wXPJkjFNnoiIkp5ADidudegEidSTwoULy86dOyV79uwuFUZy5MihMQV5h8G0jaBDw5o1a6R69eoen8eISGYHCCIioiSFaR4OZufGqCjrVtwJJQymbaRv377y1FNP6VCiqDVtXlUi/2nOnDkybdo0Wbp0abAXk4iIyNLiUxovlC1ZsiTW5zt27Jhoy2JlDKZtpE2bNvLSSy/p6Ieo2IHbN8iHQp406lwOHjxYHn/88WAvJhERkaVbplEaDwOeWN0LL7zg8vju3bty8+ZNTfXAEOMMpr3DYNpmxo0bp6MmffDBB1okHjlRDz30kLRr106qVq0a7MUjIiIKCuZMex6fwt3hw4f17jYa4Mg7DKZtCEEzA2ciIiKKL1T+mjhxorRv315+//13bkAvMJgmIiIi+wvgcOJJpToYeYfBNBEREdkfq3lEs3btWtdNZBhy5swZHVG5Vq1aibdvLI7BNBEREVES1Lp1a5fHKFqAmtMYyCW2EZXJFYNpIiIisj12QIyOdaYDg8Ph2dD7778f43PsnUtEREmSEaDpf3WmS5YsKbNnzw72WlEIYDBt08Fb1q1bF23+gAEDYg20Y4NBXwoVKiSpUqWSSpUqydatW7163/bt2yV58uRSvnx5l/mLFy/W20nu061bt3xaPiIiosSCOtMHDhyw9IAtgLEnULnD3euvvy5PPPFEUJbJihhM29CHH36oJW22bNnimPf888/LihUrZPPmzfH+vOXLl0v//v11IJi9e/dK7dq1pUmTJnLixIlY33flyhUt+P7II494fB4F79HRwXlCsE5ERBRwxv+nevg6+T3oS4j59ttvpVmzZtHmN27c2CWGoNgxmLYhfAneeust7Viwe/du6d27t6xatUoD6eLFi8f786ZOnSpdu3aVbt26SYkSJWT69OmSL18+mTt3bqzv69Gjhw4WU6NGDY/PoyU6V65cLlNsbt++LVevXnWZiIiIEjvNwy4wOjJGO3SXIkUK/sbGA4Npm3rqqad0NMQHH3xQPv30U736LFq0aLw/586dO7Jnzx5p2LChy3w83rFjR4zve+edd3QY85EjR8b6JS5QoIDkzZtXmjdvrq3esZkwYYJkzJjRMSGgJyIiIt+ULl1a7z57usONnHDyDqt52MTAgQM9zs+RI4dUqFBBc56dW5q9df78eYmMjJScOXO6zMfjs2fPenwPhiIdMmSI5lUjX9oTtJAjb7pMmTJ69TtjxgytafnTTz/p6EueDB061GU98T4G1ERE5BXWmY5m+PDh0qZNG238Qjk8+Oqrr2TZsmWycuVKHlheYjBtEzG16t5///0adJrPI7XCF+7vQ2F3T5+FwBupHaNHj461Jbx69eo6mRBIV6xYUWbNmiUzZ870+J6IiAidiIiI4v07ZuY9+8Hf94eali1bypo1a2T8+PHy0UcfSerUqaVs2bLy5ZdfSp06dYK9eJbBYNomfOlY6I1s2bLpsKLurdDnzp2L1loN165d0zxtBO+oKmLWsUTwjVbqL774wnH16yxZsmRaagit2kRERJQ40AHRUydE8h5zpilW6JiAUnibNm1ymY/HNWvW9FihY//+/bJv3z7H1LNnTylWrJj+u1q1ah7/DoJtPJ87d27uESIiokRy+fJlWbBggbzyyity8eJFnffjjz/KqVOnuA+8xJZpG7px44bWjUTeE1qQ3Uc4Onr0aLw+D3nKHTp0kMqVK2tljvnz52tZPATJZi4zvnRLlizRFmZ0aHDP20bJO+f5SANBmgfyo5GGgtQOBNMsgE9ERKGeM407qbhrizrTVq41/fPPP0v9+vW1U//x48e1aleWLFlk9erV8ueff+rvOsWNwbQN4cuA6h0IgNHS62uetKlt27Zy4cIFGTNmjNaCRlC8fv16rcQBmBdXzWlPV8Ldu3fX9BF8idFJEjUtq1at6teyEhERJcagLbgTa3VoLOvcubNMnjxZ0qdP75iPsSTQ/4m8E2bg/jrZSqZMmeSzzz7TTn12hhZtBOL1yg+R5OHW6pj4T6WMYlX/NrZmfe+cGa6JVUWJfxfEwRIe5npXzEruz3BBrOi13F+IFV27FiVFS/ytg30FOkg1fyseGDJewv0cGCzy1i05MvGVBFnOYMB2QUoHihUgmEZFrcKFC2urNNIzOSqxd9gybUOZM2fW2zRERETkhM2HLpCC6WkAtIMHD0r27Nl56HiJHRBtaOzYsTJixAi5efNmsBeFiIiIQlSrVq00hfPu3bv6GGmhSNvEWBGoP03eYcu0DU2ZMkULsKN0XcGCBXVYUGe4pUNERJSkcNCWaN544w1p2rSpFgr4999/tbY0+jKh2ABGUSbvMJi2odatWwd7EYiIiEIKB22JDnnf27Ztk6+//lob2lD9CwOoocIHeY/BtA2NHDky2ItAREREIe7XX3+VUqVK6WBq7gOqbdiwQRo3bhy0ZbMS5kwTERFR0knz8HeyEYwfMWvWLJd5t2/f1hGMH3300aAtl9WwZdqGMHBKbLWlIyMjE3V5iIiIgo1pHtF98MEHOuYDxo545513NF/arC+9ffv2RN9HVsVg2oYwcpEz9NLdu3evvPvuuzryIBEREfnOLiMgPvbYYzoacadOnXRANoyg/Oyzz2ohg9SpUwd78SyDwbRNS924e/zxxzUvavny5dK1a9egLBcREZEdqnnYZQRE8271nTt39L+YcuXKJRER1hoILdiYM52EVKtWTb788stgLwYREVHiY850NB9++KGULVtWR0I8dOiQjp48f/58qV27thw9epRHqZcYTCcRqB+JTgZ58+YN9qIQERFRCMCd6vHjx8vatWt1xMMGDRrI/v375b777pPy5csHe/Esg2keNh1O3LkDomEYcu3aNUmTJo28//77QV02IiKiYGAHxOhQW7pYsWLRYogVK1bIe++9l2j7xuoYTNvQ9OnTo1X3wBUn0jzwJbGb8+UzSHjKVGIlye5Zt75SlBFzpZhQliLculVsLtxMG+xFSHIupUojVnTTsOa5JVGWmyMgRuMeSDvr0KFDwu4PG2EwbUPolUtERETkScmSJXXkwyxZsuhjlMfD8OFoeINz585JwYIF5ebNm9yAXmAwbVOXL1+WnTt36hcCw4M669ixY9CWi4iIKCjYMu3w+++/y71791w6Ig4ZMsQRTCM99NatW8HYS5bEYNqGPv30U3nmmWe0XmT69Old8qfxbwbTRESU1DBnOmYInqNtr1gGfyNXrOZhQ4MGDZIuXbpop0O0UF+6dMkxXbx4MdiLR0RERGQbbJm2oVOnTkm/fv20egcRERExzcO91dm95Zkt0b5jMG1DjRo1kt27d0vhwoWDvShEREQhgWkermkdjzzyiCRPntwxFkWLFi0kZcqU+tg5n5rixmDaJlBw3dSsWTMZPHiwHDhwQMqUKSMpUqRweW3Lli2DsIREREQUCkaOHOnyuFWrVtFe06ZNm0RcImtjMG0TrVu3jjZvzJgx0ebhNk5kpHXr7RIREQW7mkeVKlUkPDxc+vTpo5PVg2nyD4Npm3Avf0dEREQJE0zv2rVLMmTIwM1LitU8iIiIiIh8xGDaRr7++msd1ejq1avRnrty5YqUKlVKtmzZEpRlIyIiCqawAE1E7hhM28j06dPlueee83jrKWPGjNKjRw+ZNm1aUJaNiIgoJNI8/J2I3DCYtpGffvpJGjduHOPzDRs2lD179iTqMhERERHZGTsg2sjff/8drQyeM9ST/OeffxJ1mYiIiEIB60z/Z+bMmV5vMwwAR3FjMG0j9913n+zfv18eeOABj8///PPPkjt3bp8+e86cOfL666/LmTNnNPcaKSW1a9f2+Npt27bJyy+/LL///rvcvHlTChQooCkmAwYMcLxm8eLF8uyzz0Z7LwrHp0qVyqdlJCIiSoxqHlbmbbonSukymPYOg2kbadq0qYwYMUKaNGkSLSBFkIq6ks2bN4/35y5fvlz69++vAXWtWrVk3rx5+jcwKEz+/PmjvT5t2rTSt29fKVu2rP4bwTWCafy7e/fujtcht/vgwYMu72UgTURElHCOHTvGzRtgDKZt5NVXX5VVq1ZJ0aJFNZgtVqyYXln+9ttvMnv2bB2sZdiwYfH+3KlTp0rXrl2lW7du+hit0hs3bpS5c+fKhAkTor2+QoUKOpkKFiyoy7V161aXYBrLlitXLp/Xl4iIKKm1LFPoYTBtIzlz5pQdO3ZIr169ZOjQoWIYhiNobdSokbYs4zXxcefOHe20OGTIkGidGfG3vLF371597WuvveYy//r165oCgiC/fPnyMnbsWJcg3N3t27d1MnkqAUhEROQJc6Y9++uvv2Tt2rVy4sQJ/c13b0yjuDGYthkEp+vXr5dLly7JkSNHNKAuUqSIZM6c2afPO3/+vAa77kE4Hp89ezbW9+bNm1c7PN67d09GjRrlaNmG4sWLa950mTJlNCieMWOGppCgIgmW1xO0go8ePdqn9SAiIiJXX331lbRs2VIKFSqkaZelS5eW48ePa+xQsWJFbi4vsTSeTSF4rlKlilStWtXnQNoZWred4YvmPs8d0jp2794tb731lqaGLFu2zPFc9erVpX379lKuXDntyLhixQpNT5k1a1aMn4fWdgw+Y04nT570e72IiCiJYJ1pj7+rgwYNkl9++UX7LH388cf621qnTh154okngrGXLIkt0xSrbNmySXh4eLRW6HPnzsWZMoIrXUDrM8r2oXX66aef9vjaZMmSafB/+PDhGD8vIiJCJyIiovhimkd06FNlNnShfC6KFaRLl07GjBkjrVq10rRRihtbpilWKVOmlEqVKsmmTZtc5uNxzZo1vd56aMl2znf29Py+fft8Lt1HRERE8YMqW+Zvc548eeSPP/5wSfMk77BlmuI0cOBA6dChg1SuXFlq1Kgh8+fP144KPXv2dNwmOnXqlCxZskQfo3IISuYhLxpQGu+NN96Q559/3vGZyH1Gqgfyo5EzjSLyCKbxXiIiooBjnelo8Du8fft2KVmypDRr1kxTPjBeBSpw4TnyDoNpilPbtm3lwoULetsHg7aggwI6OaKzI2AegmtTVFSUBtioZYnbRvfff79MnDhRa02bLl++rGXykD6SMWNGreKxZcsWzfEmIiIK5TQPpCUiBbJPnz46WRWqdaCyFiAVE//G2BIY/M3bwV0Ix4VZP43IYtCijUC8bOfxEp7SWqMmJrtn3a/dtWb/nXitJn+WS2JVF26mDfYiJDmFMl0UK3o9/2qxomvXoqR8yXPauRwDeiXIb0UX/38rIu/ckp8XvZIgy0nWxZxpIiIisj9W84imcOHCeufZHe4e4znyDtM8iIiIyP6YMx0NakpjLAl36JSIvlDkHQbTREREREkIRjw0bdy4UdNgTAiuMZhLwYIFg7R01sNgmoiIiGyPdab/X+vWrf/bJmFh0qlTJ5ftlCJFCg2kp0yZksh7yLoYTBMREZH9Mc3DpeqWObjarl27dIA28h2DaSIiIqIkCCVsyX+s5kFERES2F2YYAZns5ttvv5UWLVpobWkMpNayZUvZunVrsBfLUhhMExERkf2xNF4077//vtSvX1/SpEkj/fr1k759+0rq1KnlkUcekaVLlwZjL1kS0zyIiIiIkqBx48bJ5MmTZcCAAY55L7zwgo6MOHbsWGnXrl1Ql88q2DJNRERESaaah7+TnRw9elRTPNwh1YP51N5jME1ERET2xzSPaPLly6c1pd1hHp4j7zDNg4iIiCgJ6dKli8yYMUMGDRqkudL79u2TmjVrat3pbdu2yeLFi/V58g6DabK8bD9dleThd8RKLpZJL1Z17264WNHRs9nFqpKF/1cTlhLP5dSpLLm5Cya35rnlanIMaX0uQf8GB235f++++65MnDhRevXqJbly5dIBWlasWKHPlShRQpYvXy6tWrVK0P1hJwymiYiIyP44aMv/bwqnEn+PPvqoTuQ75kwTERERJTFI6aDAYMs0ERER2R7TPFwVLVo0zoD64sWLCbpP7ILBNBEREdkf0zxcjB49WjJmzBisvWErDKaJiIiIkpinnnpKcuTIEezFsAUG00RERJQk2G3QFV8xXzqwGEwTERGR/aGChVMVC58/w2bVPMh/DKaJiIiIkpCoKNauDySWxiMiIqIkU83D3wmqVKkiJUuWlNmzZwd7tSgEsGWaiIiI7C+A1Tx27dolGTJkCMRSkQ2wZZqIiIiIyEdsmSYiIiLbC4v6b/L3M4jcMZgmIiIi++OgLZRAmOZBREREROQjtkwTERGR7TlX4/DnM4jcsWWavDJnzhwpVKiQpEqVSipVqiRbt26N8bWrVq2SBg0aSPbs2bW3c40aNWTjxo0ur1m8eLGOwOQ+3bp1i3uEiIgSbtAWfyciNwymKU7Lly+X/v37y7Bhw2Tv3r1Su3ZtadKkiZw4ccLj67ds2aLB9Pr162XPnj1St25dadGihb7XGQLtM2fOuEwI1omIiIisgmkeFKepU6dK165dpVu3bvp4+vTp2tI8d+5cmTBhQrTX43ln48ePl08++UQ+/fRTqVChgmM+WqJz5crl9R64ffu2TqarV69y7xERkVeY5kEJhS3TFKs7d+5o63LDhg1d5uPxjh07vB629Nq1a5IlSxaX+devX5cCBQpI3rx5pXnz5tFart0hcM+YMaNjypcvH/ceERHFr5qHvxORGwbTFKvz589LZGSk5MyZ02U+Hp89e9arrTdlyhS5ceOGPPnkk455xYsX17zptWvXyrJlyzS9o1atWnL48OEYP2fo0KFy5coVx3Ty5EnuPSIiIgoqpnmQV5CS4cwwjGjzPEGgPGrUKE3zyJEjh2N+9erVdTIhkK5YsaLMmjVLZs6c6fGzIiIidCIiIoovpnlQQmEwTbHKli2bhIeHR2uFPnfuXLTWak8dF5FrvXLlSqlfv36sr02WLJlUqVIl1pZpIiIinwWiGgereZAHTPOgWKVMmVJL4W3atMllPh7XrFkz1hbpzp07y9KlS6VZs2ZxbmW0dO/bt09y587NPUJERESWwZZpitPAgQOlQ4cOUrlyZa0ZPX/+fC2L17NnT0cu86lTp2TJkiWOQLpjx44yY8YMTeUwW7VTp06tHQdh9OjR+lyRIkW0KgdSOxBMz549m3uEiIgCjmkelFAYTFOc2rZtKxcuXJAxY8ZoLejSpUtrDWlU4gDMc645PW/ePLl375706dNHJ1OnTp200yFcvnxZunfvroE2AmyUzEN96qpVq3KPEBFR4AWiGgereZAHYQburxNZEFq0EYjXqzBEkodba7CXi2XSi1VdbPSvWJIRd4fZUJUsPCrYi5Dk5M92UaxoU4l1YkVXr0VK5qJHtVITBvRKiN+KGo3HSPIU/v1W3Lt7S77bMCJBlpOsiy3TREREZHtM86CEwmCaiIiI7C/K+G/y9zOI3LCaBxERERGRj9gyTURERPbHDoiUQBhMExERke2F/S9v2t/PIHLHNA8iIiIiIh+xZZqIiIjsj8OJUwJhyzQRERERkY/YMk1ERES2xzrTlFAYTBMREZH9sZoHJRCmeRARERER+Ygt00RERGR7YYahk7+fQeSOwTRZH4Z3DYsK9lIkGZGXI8SKwjPdFquKvGvNm4iZM98Qq6qQ5ZRY0R/3rosVXb+XCOdw/Al//wx/asgDa56hiYiIiIhCAFumiYiIyPaY5kEJhcE0ERER2R+reVACYZoHEREREZGPGEwTERFR0hlO3N8pxJw8eVIefvhhKVmypJQtW1ZWrlwZ7EVKcpjmQURERLZn1xEQkydPLtOnT5fy5cvLuXPnpGLFitK0aVNJmzZtsBctyWAwTURERGRRuXPn1gly5MghWbJkkYsXLzKYTkRM8yAiIiL7C1Kax5YtW6RFixaSJ08eCQsLkzVr1kR7zZw5c6RQoUKSKlUqqVSpkmzdutWnVdy9e7dERUVJvnz5fHo/+YYt00RERGR7GNvL3/G9zPdfvXrVZX5ERIROnty4cUPKlSsnzz77rLRp0yba88uXL5f+/ftrQF2rVi2ZN2+eNGnSRA4cOCD58+fX1yDAvn07+sBTX3zxhQbpcOHCBenYsaMsWLDAv5WkeGMwTURERBQP7i2/I0eOlFGjRnl8LQJjTDGZOnWqdO3aVbp166aPkf+8ceNGmTt3rkyYMEHn7dmzJ9blQaD96KOPytChQ6VmzZrcl4mMwTQRERHZXyCqcfzv/aigkSFDBsfsmFql43Lnzh0NlIcMGeIyv2HDhrJjxw4vF8mQzp07S7169aRDhw4+LQf5hznTRERElHQGbfF3EtFA2nnyNZg+f/68REZGSs6cOV3m4/HZs2e9+ozt27drqghysVHRA9P+/ft9Wh7yDVumiYiIiIIIHRPdW5vd58XkwQcf1E6HFDwMpomIiMj2whCg+pnm4e/73WXLlk3Cw8OjtUKjXrR7azWFLqZ5kFfiU7bnzJkz0q5dOylWrJgkS5ZMeym7W7x4sV51u0+3bt3iHiEioiQxAmLKlCn1N3XTpk0u8/GYHQmtg8E0xcks2zNs2DDZu3ev1K5dW3smnzhxIsZexdmzZ9fXoxxQTJBnhsDbeUKwTkREFMqqVKmiw3fPnj07ztdev35d9u3bpxMcO3ZM/23+hg4cOFDL2S1atEh+++03GTBggD7Xs2fPBF8PCgymeVCcvCnb46xgwYIyY8YM/TdODjFBS3SuXLm4B4iIKOGhUdnf1OL/NUzv2rXLpZpHXAOp1K1b1/EYwTN06tRJ79K2bdtWa0SPGTNGG5VKly4t69evlwIFCvi5sJRYGExTgpftie1qHScL9GRG7+OxY8dKhQoVYnw9Wrydi9a7F80nIiIKtZzphx9+WDsUxqZ37946kTUxzYMSvGyPJ8WLF9cr8rVr18qyZcs0vQMjPx0+fDjG96AVPGPGjI6Jw6USERFRsDGYpgQv2+NJ9erVpX379ppTjRzsFStWSNGiRWXWrFkxvgcjO125csUxoWg+ERGRV7ROtL8dELmtKTqmeVBIlO1B1Q906IitZRpF8X0tjE9ERElcAEdAJHLGlmkKibI9aOlG7+bcuXNzjxAREZFlsGWa4oSexx06dJDKlStLjRo1ZP78+S5le5B+cerUKVmyZInjPWYJIHQy/Oeff/QxAnOUEoLRo0drqkeRIkW0I+HMmTP1Nd6UGSIiIoo3VPIIC8Bn/K80Hu7a9unTRydK2hhMU5ziKtuDee41p52rcqAayNKlS/X1x48f13mXL1+W7t27a/oIOhPi9Vu2bJGqVatyjxARUUhX84hPaTyyPwbT5JXYyvagKoe7uMoATZs2TSciIiIiK2MwTURERPbHDoiUQBhMExERkf0xmKYEwmoeREREREQ+Yss0ERER2R9bpimBMJgmIiIi+wtgaTwiZ0zzICIiIooH1JnGuAkcG4GALdNERERke6wzTQmFwTQRERHZH3OmKYEwzYOIiIiIyEdsmSYiIiL7izKQ6+H/ZxC5YTBNRERE9sc0D0ogTPMgIiIiIvIRW6bJ+gJROzSRhVm4VmmGg+FiSUYasSrDos0e/6ZOLVa1rmKEWFGXLNvEiu4aiXESN/5rnfb3M4jcWPQUTURERORDmoe/E+tMkxu2TBMRERHFw65duyRDhgzcZqQYTBMREZH9aSUOVvOgwGMwTURERPZnRP03+fsZRG6YM01ERERE5CO2TBMREZH9sc40JRAG00RERGR/zJmmBMI0DyIiIiIiH7FlmoiIiOyPaR6UQBhMExERkf1pZTw/S+NxAETygGkeREREREQ+YjBNRERE9sfhxCmBMM2DiIiI7C8KA65EBeAzOJw4uWLLNBERERGRj9gyTURERPbHah6UQNgyTV6ZM2eOFCpUSFKlSiWVKlWSrVu3xvr6b7/9Vl+H1xcuXFjeeustl+cXL14sYWFh0aZbt25xjxARUUjnTBM5YzBNcVq+fLn0799fhg0bJnv37pXatWtLkyZN5MSJEx5ff+zYMWnatKm+Dq9/5ZVXpF+/fvLxxx+7vC5Dhgxy5swZlwnBNxEREZFVMM2D4jR16lTp2rWrdOvWTR9Pnz5dNm7cKHPnzpUJEyZEez1aofPnz6+vgxIlSsju3bvljTfekDZt2jheh5boXLlyeb0Hbt++rZPp6tWr3HtEROQdDidOCYQt0xSrO3fuyJ49e6Rhw4Yu8/F4x44dHt/z3XffRXt9o0aNNKC+e/euY97169elQIECkjdvXmnevLm2YscGgXvGjBkdU758+bj3iIjIK4YRFZCJyB2DaYrV+fPnJTIyUnLmzOkyH4/Pnj3r8T2Y7+n19+7d08+D4sWLa9702rVrZdmyZZreUatWLTl8+HCMyzJ06FC5cuWKYzp58iT3HhEREQUV0zzIK0jJcGYYRrR5cb3eeX716tV1MiGQrlixosyaNUtmzpzp8TMjIiJ0IiIiijf8Dmmqhx/YAZE8YDBNscqWLZuEh4dHa4U+d+5ctNZnE/KgPb0+efLkkjVrVo/vSZYsmVSpUiXWlmkiIiL/AmEG0xR4TPOgWKVMmVJL3G3atMllPh7XrFnT43tq1KgR7fVffPGFVK5cWVKkSOHxPWi53rdvn+TOnZt7hIiIiCyDLdMUp4EDB0qHDh00GEagPH/+fC2L17NnT0cu86lTp2TJkiX6GPPffPNNfd9zzz2nHRIXLlyoudGm0aNHa5pHkSJFtCoHUjsQTM+ePZt7hIiIAg9DgYf52YGQHRDJAwbTFKe2bdvKhQsXZMyYMVoLunTp0rJ+/XqtxAGY51xzGoO74PkBAwZocJwnTx4Nlp3L4l2+fFm6d++u6SCozFGhQgXZsmWLVK1alXuEiIhCOs0DaYlIgezTp49OlLSFGWbPMCKLQYs2AvF6ZV6W5OHW6ph4qVxGsapbWWLueBrSLHymMyyakBeZWiwrquI1saJVVeaJFV2/FiXVSp3VSk0Y0CshfiseSddOkoel9Ouz7hl35KvrSxNkOcm62DJNREREtmdERYnhZ5oH60yTJwymiYiIyP5YzYMSiEVvHhIRERERBR9bpomIiMj+MGBLGOtMU+AxmCYiIqIkkubhb2k8C/dkpgTDNA8iIiIiIh+xZZqIiIhsz4gyxPAzzYPVhMkTBtNERERkfzp6IUdApMBjmgcRERERkY/YMk1ERES2xzQPSigMpomIiMj+mOZBCYTBNFmW2RHkXuRtsZrIO7fEqiJvh4klWbiilWHRhLxIiy43RN205nf0+jU/c4KD5Pr1qATv4HdP7vp9HtDPIHITZrBrKlnUX3/9Jfny5Qv2YhARUYCcPHlS8ubNG9DteevWLSlUqJCcPXs2IJ+XK1cuOXbsmKRKlSogn0fWx2CaLCsqKkpOnz4t6dOnl7CwwLaWXr16VQN1nNgzZMggVmHV5bbyslt1ua287FZdbisve0IvN9r1rl27Jnny5JFkyQJ/SwMB9Z07dwLyWSlTpmQgTS6Y5kGWhRNuoFsw3OFHw0o/eFZfbisvu1WX28rLbtXltvKyJ+RyZ8yYURIKWpHZkkwJxcIZbUREREREwcVgmoiIiIjIRwymiTyIiIiQkSNH6n+txKrLbeVlt+pyW3nZrbrcVl52qy43UWJgB0QiIiIiIh+xZZqIiIiIyEcMpomIiIiIfMRgmoiIiIjIRwymiYiIiIh8xGCaiIiIiMhHDKaJiMjrIZ+JiMgVg2mi/4mMjLTltrB6ABQVFRXsRaD/CQsLs9V3wurfDU/suE5EoS55sBeAKBQcOnRIPv30U2nXrp3kzp1brOjgwYMyb948OX36tJQvX14aNmwoFStW1AAIP7BWCoRu3LghKVOmlHv37knq1KnF6vbu3StXr16V69evS7NmzcSKNm7cKNu3b9djqVy5cvL444+LVd28eVPSpk0rd+/e1eMMF2zJklmzbenMmTNy69YtyZgxo2TJkkW/51Zcnx9//FFOnToladKkkcKFC0uhQoV0vtXOXZQ0WevbRpQAjhw5IjVq1JDBgwfLrFmz5Pz585bbzgcOHJBq1arJ4cOHJUWKFDJjxgzp37+/TJ06VZ83A2or+OWXX6Rp06ZSq1YtKVWqlMyZM0f3kVW9/fbbuj5du3aVjh07SqVKleTzzz/XCwareOedd6RNmzayZ88e2bx5szz11FPSoUMHvQi1mg8//FCefvppqV69unTu3Fl27txpucDTeb/g2KpSpYo0b95cevToofOttj4LFy6UBg0ayPDhw+Wxxx7T/TNz5kzLnbsoCTOIkrDr168bXbp0MTp37my8+eabRlhYmDF48GDjn3/+Mazizp07RseOHY2uXbs65v35559Gz549jYoVKxqvvfaaY35UVJQRyo4ePWpkzpzZ6Nu3r7F48WJj6NChxn333We0a9fO2LJli2E1O3bsMLJmzWqsWrVK1+3EiRNG/fr1jeLFixtz5swxrl27ZoS648ePGw888IDxzjvv6OO7d+8a27ZtM7Jly2Y0btzY+PXXXw2rWLZsmZEqVSpjwoQJRv/+/Y1HH33USJEihTFv3jz9HlnJp59+aqRJk8ZYtGiR8dlnnxmTJ082ChYsaFStWtU4f/68viYyMtIIdT/++KN+R5YsWWLcuHHD2LVrl/HSSy8Z6dOnN0aMGGGZcxclbQymKUm7efOmMXv2bOPDDz/Ux8uXL7dkQN2gQQO9KHD+0Tl9+rQGDNWrVzfef/99wwqmTp1q1K5d22UeAtFatWoZjz32mPHDDz8YVrJixQqjdOnSxoULF1zmd+rUyShZsqSxdOnSkA8SEEwXKlTI+O677/TxvXv39L+HDh0ysmfPrvvFnBfKECy3aNHCePnllx3z/v33X2Ps2LFGeHi4XkxDqO8P08iRI42nnnrK8Rj7YO/evXq8Va5c2bEeob4+a9eu1WVGw4YJ595p06bphc+kSZOCunxE3rDWvSCiAEM+bqdOnaRt27b6+Mknn5Rly5bJG2+8IZMmTZILFy7ofOQgHjt2LCQ7TSLvM2/evHLp0iXNnTSXF7nfAwYMkMyZM8uKFSvECrDcly9flmvXrjk6Hj766KMydOhQ+fPPP+X999/XfFer3PbFumC/IA8U/v33X/3v4sWLpWjRojJmzBhd11CGtKG///5b02/MFAIcc0WKFJFNmzZpX4PZs2dLqEP+PY4h5BYDjqGIiAh59dVXZezYsfLCCy/o+lglreD48ePaT8IUHh6ufSVw/sIxh3QJCPV843Tp0snJkyfl119/dczLli2bnpexb5ACsmXLlqAuI1GcvAq5iZIAtOyYrTi4HWy2UJ86dcoYMGCAtsDhNmQocG8J/Oabb7R1bcaMGY555i3enTt36rqg1SrU4Q4BWqN2796tj2/fvu147t133zVSpkzpeC4UubcC4nY7Wm979erlmHfr1i1HugRSWMaNG2eEuiFDhhhFihQxvv76a8c8c98MHDhQ74zgLk+opRW474/nnnvOKFOmjHHu3Dl97Ly83bp1M8qVK2dcvHjRCEXmupjLvG7dOqNo0aLGypUro50bcIcNrb1IoQh1hw8f1tSUQYMGOfaL6ciRI7pPzLsGRKGKLdNETi07gBZRdLBCC8/06dOlXr162jERnWPMFsZgQqcvLBd68Zvq1KmjLeloiV6wYIFLJyS0/JQsWTIklj0uuEOAKiRojT537pxWWrh9+7Y+h857DzzwgHz11VcSqtB59eLFi3Lnzh19nDVrVpk4caKsXbtWRo8erfPQGopWUrR+onXafG0oVR759ttv5bPPPnPMQ5WbYsWKaQuu2UqIfQMZMmRwVF0JtY5v7q2yOK7wPZg8ebK23mJ5zZKYTZo00f2HqiuhyPwemHds8J0uUKCAvPfee1plxfk8hg6JuJMWinfTcN7Ccpl3/fCdxvH11ltvyZIlS/Rujun+++/Xu2779+8P4hITxY2l8Yg8/Pgi0EFgN3/+fNm3b5+WbSpTpkzIVB5BIIAfo4EDB+otUejVq5dWiOjevbveAkbggB9b/EAhvcC8vR2qpfzq168vlStXlmnTpumPK6otIKjLly+fvh4pLChnZq5vqHn33Xd12bGtEfi88sorWmEB64L0AqR2oDTe66+/rgEPjjU8TpUqlYRS5ZERI0bodsYxhuNnwoQJ0qhRI3nxxRf1wgDH3LBhw6Rly5Ya+OzYscOxj0K1lF/ZsmXliSee0IAZ1TvWrFmjFwNI7ciRI4e+HuXYcGFgpuKEEqRpffTRR3qhhuVE5SGk2WB/4PjCMYV0ocaNG+vr8V3HxU+oXUCj+giqdCCtAxeSuCDAxT/2A44lfGdwDkM1D6zflStX9DyHyj5EIS3YTeNEoQi3SpHagfSIn376yQjlyiPOt0ZxCxi94nPlymXkyZNHq0YglSDUbveiAkTGjBmN5s2bG+3bt9flffDBB43p06fr87/88ot2RMRrUPUCHSjRcSxLlix66zcUO1GlTp1a9wtuvyP1AZ320NHw4MGDmh6EzpWZMmXSzmFPPPGEdqosUaKEpnuEcuURpHeg2oWZMtS9e3c99lDho1ixYnob3qyEESqd3VDhIm3atEbTpk11OyMFCp31/vrrL31+2LBhmlqAaiTbt2/XSjH490MPPRRyqSoffPCBpj6hsgW+//Xq1TPSpUunqRyA6hfoZFylShWt6PP2228bDz/8sO6XUOoYGlP1kUqVKjlSayZOnKjHG5a9UaNGRrVq1TRdJVS+I0QxYTBN5AF+hBYsWBBSecaxVR5xzzU8duyY8e233xobNmxwBBBWKOVXvnx5/UEFBKCoRoILAgRtNWrUCLmLAjN4xLIjcHaG0n4I2J555hndH4DAGnm7eD0uDswgIRSCntgqj2D7m8EbKmAggEOpvI8//tix7KES8MRWyg8XBzjWzBx8BNsItJFHjUDavCgIlYAa2/qRRx7Ryh2mK1euGM8//7z2HzCr9Bw4cECDUwShCLYff/xxx7qEwrEVV/URfO9Nmzdv1ovSHj16aAlD87gKleOLyBMG00QxCJVWNmfO5aMAgTUC6hdffNFRyg8/OmbAYMVSfghA0RpnQgfQS5cuGZcvXzZCFS4MWrVqFe1H/7333tNgYcyYMTEGaKESJMyfP1/vYiCAMy/eTK1bt9bOblevXvX43lAJ2Lwp5deyZctod0lwwWnun1DZH4A65LiQmTt3brRzEr4ruBuCCxsT1sHs4Bpq64KLsgoVKkSbv3//fuP+++/XsoUxCaX1IPIktHqLEIWQUCwphVxWQKcpM6976dKlMmXKFO1Uhfzjl156STsiIvcw1Ep8eVPKD532li9f7ngP5mfKlCnkcr6doRMVOuZhOOTkyZM7Oou1b99ennnmGS21+M8//3h8L14fDO7HBkqpoTMkcqIBHQrN9Vi5cqUeT+iIG1vnXSuU8sPok+jAa0Le7n333aevw3EYrP3hCToPYxRQlIRELjfOSWaHSeRJIwccI52iXCRgHdDB1dy/wVwX8/gyO0wiZx3HEHK/nZUoUULGjx+vnRLRN8X5vaZQ2idEnjCYJrJp5REE3qFyQWAGAFhuBDuoIYsKF+jgiWU0A5n8+fNr1QvULkbHTwiVdYhpnWDIkCHaoQpDOyNwQ0BjBqJ9+vTRjmC7d++WUGKHyiOe5MmTR/r166cXlxj6HMcPjjkse7ly5eT555+X9evXa3BqBnqmUKtGAuhgiGMJ64NlxncIxx4CzFatWukFtKcKJMH+3vhSfQQdp0Nh2YniK/TOHETkFfzgmANMoIW6du3a2vqJ1h1UxwgVdivl9/HHH0vXrl3lkUce0dZBVIeAOXPmaMBWrVo1rUJgthCiGkH69Ol1CqXKIw0aNNDKMAiScVGDoAyBG9YNlUdQMcL5AijUKo/YsZQfyj7ie4Hpyy+/1HmomvLQQw/pRQ6qxaBqh3kxjdJxWI9Qq0CC6iMoZYkKPb1795bDhw9LoUKF9GINVXzwvdmwYYPj9aFafYTIax6TP4jIMkKx8ojzgAyowIFlGzp0qMsQ7ehgOHr0aH0O1RUwGAuexwAhhQsXNs6ePWuEGlRKQWUFdCBEBynkGNetW1c7q8L333+vnalQnWTKlCmah9ykSROtWBAqecV2qDxiwvbFtkbOLY4z5OSi0605kBEqdGDbo0IJtj8G0WnYsKF2gA01CxcuNNKnT6+VOLDM+F706dNHK11ggJy+fftqfwLsD3Q4RK401g8dFEOpf4ddqo8QxQeDaSKLC8XKI3Yr5YdgBVUuUPHBeTS2n3/+WdcRQZxZPg6dxhBsYx6CojZt2oREZQU7VR6xWyk/XHQWKFDAUZ0DnUDXrFmj5f1QmQMXAVhmVPMxS/2VKlVK/x1KFUjsVH2EKD4YTBPZQKgEBXYs5ee8PgjIEAQ4Q91rDEWNwObzzz93zEeLIi4ozH0TKq26dqg8YqdSfuaFC+4OmBfE5jGDCwYE1LggBXO/4C4OjrtQq0Bip+ojRPHBYJqIEoxdSvkhKEBpPrSi9evXTx8jEDCDBQwyg5QItOI6v8fTv4MNdbwzZ87suGhxDmZQ1zdDhgwhmWJj11J+ZjCdPHlybY02l88MLL/88kv9zuBix5NQaJF29thjj+mFpbk/nC9ezOeQSuQulL4jRPHFYJqIEhx+UM0fy2XLljlaqFFDGvne+JF1bsUNVbhNnSxZMkdrO5bXXGakqyA39MyZM0Yoct62GACnbNmyjlvrZkCN4BMpN8ilDnVokc6RI4fRq1cvxzxzPRC4IdAeN26cEeqc02+QurFnzx5HkGwG1LibgAsE5E6HWvDsvh5o/Uc+9KhRo6IF1BgoBy3wofodIfJVaHVlJiJbslopv5igZvSgQYO0UsHq1asdFVXMigSomRuqFQnMyi8wdepU3RdWqDziCZY9S5YsMmHCBC2jaOVSfubxg2ML9a5fffVV+emnn7TSiPm9wbGFdUFFklCrQOK+Hs2bN5eaNWvKunXrLFN9hMhfofmtJCLbsUopv7gg2OnVq5cOQoFgDqXX/vzzT5k9e7Zkzpw5pANRM+CpWrWqlvJDYFa8eHENrt9++20tY4bScbVq1ZJQZgaUCNxQyg+l/qxSyi8mDz74oK4LgmbsBxxX2F+oIf3zzz9roB3qcJGDgB8l8FA7GuX8sE6//fab1ll/7bXXdBCmggULBntRiQIqDM3Tgf1IIqKYYcAJBD5omcbALGXLlrXk5nrzzTd1ZEMEbTlz5tT62Nu2bdNADkFFqLYgOsMolLg4+O6773R5EeTgrgHWAfsplEY2jAnql3/44YdaUxotn6hnjJrZGJAGQagVRs/Dz7B5oYP6y0uWLNF1Kl26tLa0Yx327Nmj+8X5taHIPPYxaMvChQt1hNbvv/9eL9owkikG0rHSd4TIGwymiShRIUjDoCCVKlWyVIu0J0ePHtU0CbQmoiUOwYEZ/FgJgmq0KCJFBYGa1dYBo05iBD1c3OACAGkRaAXFOljlosA5SMaw2zt27NDBTnCnA4PQYB2CvV+8DeTNQNl8PS4EEEjjQseq3xGi2DCYJqJEF4qta7du3fI6LSCm5Q92axuWC4GlOdpfXMtkrofz+gR7Hdz5szyhGLTFdux72h8mq1wUxMUu60HkjME0ESV5H330kXb66tu3r6ZseMsMeswAIZgXCRjCedWqVdpCW7duXWnatKkOQ+1tQB1KwQ7SNLAM6FCIFk1vA1FMZouo+e9QGO4cec9IB2rWrJljvrfHSqhceG7cuFG2b9+uy1OuXDl5/PHHvXqf+/KHyvoQBVLwzzREREG0Zs0aefLJJ2XcuHGax33+/Hmv3uccFJw4cUL/G6wg4YMPPpBOnTpp5y5USMHFwbBhw2Ty5Mn6PIJKBNSxrQO2A/KPgx1IIwWofv362gmySJEiug4HDhyIVpHEEzN4xutCIZBGp05c1KATHirAILXp888/1zSO2NbFeb63x2NCeuedd6RNmzaaroGcZ1Tk6dChgxw6dCjW9zkfX8hfv3z5MgNpsiefi+oREVkc6lxjNECM+rdo0SJH/WtzQBlvajbPmjXLSJEihX5WsAaTadCggTFlyhSXESX79u1rVKxYMcZay87r8NZbbxmpUqUyNm/ebATTZ599ZqRJk0YHZPn66691gJn777/faNu2rbFly5YY3+e8LhgaHYPPhOpw58WLFzfmzJmjowXGtS5vv/228dRTT+lomsFy/PhxHfkTI0gCal9v27bNyJYtm9G4cWPj119/9eo7grrmhw4dSrTlJkpMDKaJKMnCQDEIJDGUufMIjbEF1M6j5+G9CJjMQVyCActTpkwZY/jw4S5BzOnTp3W0xpo1axofffRRrIE0Rj3EYBvBYi7PoEGDjMcff9zluU8++cR48MEHdWAfDKMd03sBw1inT5/e+PTTT41QHu68ZMmSxtKlS6MNUuT8eN68eXqBs3r1aiOYEExjoJXvvvvO5fhHYJw9e3bdL+Y8c/ndj6+MGTM6hncnsiMG00SUpJnDUZvMERox5Pn58+d13pUrV3TIcGdmEOoeqCYmjIaHoZmbN29udOzYUVsNzaHOzUCodu3a2roZWyAdzHVw9sILL2jrLZbR+aIFIzKWL19e9wnmm+vnKWgLlXWJa7hztFDjuArVCxwT7rjgbgFayc3lNEfO3Ldvn96VmTFjRsivB1FCYjBNRPS/wNR9yPOXXnpJb2M/8sgjRo8ePRzPI0jIlClT0AI39wuADRs26DDnb775pmOeGXAidSJlypSaauBs5syZQV2HmALQiIgIY//+/foYw2ebFi5cqOtx8ODBaO9DK26wLwrcW5lxIYaWW2+GO3dvXQ+liwIYMmSIUaRIEU29MZn7ZuDAgZpmhIsF56HOQ3E9iBIKg2kiov9xbtXFbenkyZNrQIBAwmyNQ3CKQDtYQcLKlSuNV1991Th79qzLfOQXI6BGQOps06ZNRoUKFVzSVnCBgJZRXDQEe3s7B8zQpEkTI3/+/Mbff/+tj83nEYhiPtIn3ANpBODBbv08d+6cpnS4XwAgaB41apRjHgJpHEt169Y1Ro4c6fIZ77//vqZ2BDMA/fHHH41vvvlG7waYfv75Z737gWU2U6JMWDfMd7Z27VojS5YseqwSJQUMpomInDi3EhYuXFjzdREAAYKgAwcOaAesYED+LAJ5TGgtdA6Qkf+NjpR4DrnHn3/+ufHbb78ZjRo1MurVq+eyXujQ5t5SndhwsYKOhVWrVtU7AAjgzFzcatWqGQULFtSOlCbkgBctWtRYv369Yx4C7meffTbogTQ6PZYrV06Xr0CBAhrgIz0CdxBGjBih64IUFTD3Q5UqVRwdJXEBh/SVSZMm6X4LFlyI5cqVSzt9IhjGRRjuegD2DzocVqpUSTtVYnnR+t6wYUNNMXKGizX3oJvIzlhnmojIzc2bN6VVq1Zaku3PP//UgT+CPQAIai/37t1by6vlzZtXy629+OKLOjR79uzZHa9bvny5DB8+XEdmzJo1q2TOnFm++eabkBrCGaX8unXrJj179tSBclauXCm5cuWSxx57TAYOHKjbvU+fPrJ7924ZNGiQjgK4adMmOXfunOzatculfB9Gb8Q6Bsunn34qbdu2lddff12HY//6669l9erVWuP7lVde0X01b948GTNmjDzwwAMehzs3S8gFc/9gSPkWLVpoOT+MTIrl6tKlix7/OM66d++u237BggX6Ggzdjv2A/Yf55vGF9WAdaUpqGEwTEbnBKIIIiB599FENEoIdSANqE7///vtSokQJDdQQND/99NMeA+qzZ89qTd9///1XB9gIlSGcETRiAJMnnnhCGjdurIEzHD9+XKZMmSLbtm3TdXrppZd08JhRo0ZpcAoFChSQd999V/cHnsM6BTNoMwPgXr166XZGfWwTlnPOnDlaJxvDmiPIRk3mUB7uHBc0CPi//fZbyZIli2N+586d5fvvv9fnUI8dI4X+8ssvOmXIkEEvOkNhqHOiYGIwTUQUi1AKEtyHPP/www+lXbt22no7ZMgQbYlGEI2Wz5IlSzpeFyot0oDgsUKFCtK6dWsN0MygFAPGTJw4UXbu3KkXCBgkBK5du6brjH2A14XS/gC0sGNgFQx647xsuPCZNGmSBqAYQMfT9g+ldUFr8+jRo+XIkSO6vXGBkDp1an0OF5W4W4A7BbhL4C5ULgiIgiU0zq5ERCEqVIIdMANpBMcIQjES3dKlS7VV1xwpEMM8z5o1y+V9oRJIY7lv376trcxIH0Awac7H6I1oqUbLM0ZwNKVLl07nmSMGhtL+AKRubNmyRU6dOqXLhvWD9u3byzPPPKOt0f/884/H9wZzXdxHX0SKzZ07dxx3CxBIm+uCVmvcGXE/rkwMpCmpC40zLBERec0MjhGEIqBGC/XUqVOlZs2aOrT5zJkzQ2prokXdXO40adJI3759teUWucTm0N9YFwTZaGFftWqVHDt2TN/jnMoRKrm4aIk1YXmLFi2qw4YjPSgiIsIRhCLvG+uLFt1Qg9Z05G0jgAbc1cCdgbVr12oLNWBdcMGDwBvraL6WiFwxmCYisiDnjl5IJcifP7+UKVNGW6fNPO9QgFbmcePGyd9//+2Y16hRIxk/frz069dP0wucLxBSpkwppUqV8phOEGwff/yxdvx85JFHtMMhUlIA+dEINKtVq6YdPxGEwoULF3Q9Qm1dkNPdoEEDqVGjhgbJ8+fP19QgpAxh/ZD/jTx8s9UZx9P169ddUoyI6P8xZ5qIyMJCsfKICXnESB+Al19+WXO7s2XLpo+RNoDW9JEjR2pqQf369bWjXv/+/bWF98svvwyZlmh47733tKIFOuShpXbdunUaiCKVAwHoDz/8oNVJ0PkTgSgCaHRiRQUSPBcqqRCBqD5CRK4YTBMRWVgoVh6xUyk/BM4ov4ftizsASN2A/fv3y/Tp02Xv3r0aRCPQRust1g/BM5YbweqyZcscFUiCGVDbrfoIUSgJ/hmXiIh8hkANQR6ESiANCMCaNGniKOWH3GGUvQPngBqtpHXq1AnJUn6AABSd8XBxgLsAJqTUoCUXecZLlizRNBuU+5s7d64G30hXwTqHSgUSs5UfF1/Y1mAuV6dOnTRARvURtMCj+oiZ/uEsFNaDKBQxZ5qIyCZCKdBJmzatBmkIpM2gGZVH0NqJyiPIJwYEdkghKF68uJbMMzsjhsq6oEUX+dAIlv/66y99bFZTwcAlSEtBh8NPPvnE8Z5MmTLp+odiBRK0Plux+ghRKGOaBxERJSjnkfHM2thonUawjU6ICPDQohvKMGpjx44d9YIAFwZmaTmsE1pzkdJy+PBhHckxFJlpHoCqL8hZR5UR3NlAQI1Ok6jpjRZpjHLYrFmzYC8ykWXwMpOIiBIUWpvNFl2U8sNjtIKio1uOHDnk888/D/k9gOX96aefNKBGCgdyqJ1TWpDOgrSOUGW2kuO/6Pj53HPPafWRzZs36/KHcvURolDHlmkiIkr01lGkSOTJk0eDuVCqQBIbDIU+YsQIefPNN2Xs2LFSq1YtrY2NzoewYcOGkKpAEhNc1Gzfvl0GDBig6R6hXH2EyAoYTBMRUaIJ5VJ+3kIwjdxiVO/ImTOnjtK4bdu2kKlA4i10lHz11Vflu+++C7nqI0RWwmCaiIgkqZfyi6+jR49qOT90TqxSpUpIVSCJr1CsPkJkJQymiYgoKEIlaMNw596O7uecquIsFFqksWy4WEFg7M1ymevivE6hsB5EVsNvDBERBUUoBNKehjuPjRl0mtU8kA7hPD9YVqxYoXW8a9euLUOGDNHyd2CWGvTEPZB2Xi8i8h6DaSIiSpIw3DkGvEEwjdEMz58/79X7nAPQEydOBD2YRtk+lBnMnTu31KtXTy8QMPAK6nnHFlA7rwe2xZkzZ5gnTeQDBtNERJTkYERDDKk9evRoWbhwoY7+h+AzroDaOQBFR8RixYrpZwUDlgV52xgOHBcE06ZNkwkTJsiXX34p5cuX16Hax48fr691T91wXg+UKESr9sGDB4OyHkRWF/x7bERERCE03PlLL70k2bJli/Ye5woXCEBHjRqlA7agxF8wIBhGJZGzZ886hghHkIyqHOZQ55999pkG/G3atIkxkMb6onX74YcfDsp6EFkdW6aJiCjJiW24c7RSm8Odo7b0r7/+qv92DqQRgOK/eF+wIHUDoxei1jXKDKJDpzkfKR8DBw7UZUbaR2yB9KJFi+Sxxx4L2noQWR1bpomIKEkyK3iYw51jdEbAcOdIizCHO3/ggQd0uHO8BgEoOvghAHVu7Q1G9REsI1rU+/btK02bNpWqVatKnz59dDmxTgiysawoQ3js2DEpVKiQI5CeNWuWDkATzPUgsgsG00RElKR5M9w5gtD169dLr169ZOXKlUELQNHKjGHNEUBjwBho1KiR5kYj8EdZPAwVbuZI43GpUqVchgjHgDlz5szRCwQG0kT+Y51pIiKiOIY7R/3mI0eOyMWLF3UY8WBAxQ0zHePll1+WQYMGOXK7b9y4IVOnTpWRI0dqekf9+vU1d7p///667OiUaK4bBmlBjjVaqonIfwymiYiIQny4c1QM6d27t1SqVEny5s0rXbt2lRdffFEGDx4s2bNnd7wOFTyGDx+uVT6yZs0qmTNnlm+++cZyQ50TWQnTPIiIiP4HQSfSJJBnHCqBdFzVR5wDanSIrFOnjrY8//vvv1KuXDlLD3VOZAVsmSYiIvIg1AJQ92HPP/zwQ+0siXQPdDRESzSCaLRilyxZ0vE6tkgTJazQOUsQERGFkFAKpONTfaRIkSLaudDE1A6ihMWWaSIiIgt2lsSEQHnFihVafQS1s1F9BHWxka5CRImDwTQREZHNqo+EWooKkZ2xWy8REZEFIZBG9ZEGDRpoPjUDaaLgYDBNRERk8eojx48fZ4s0UZAwzYOIiMgGmNpBFBwMpomIiIiIfMQ0DyIiIiIiHzGYJiIiIiLyEYNpIiIiIiIfMZgmIiIiIvIRg2kiIiIiIh8xmCYiIiIi8hGDaSIiNxgAA6PL7du3L2S2ze+//y7Vq1eXVKlSSfny5SUUYButWbPGq9eOGjUqZJabiCiQGEwTUcjp3LmzBmoTJ050mY/ADfOTopEjR0ratGnl4MGD8tVXX8W63TBhZLzChQvLiy++KDdu3PDrb8cUCJ85c0aaNGni12cTEVkdg2kiCklogZ00aZJcunRJ7OLOnTs+v/ePP/6QBx98UAoUKCBZs2aN8XWNGzfWIPfo0aPy2muvyZw5czSg9oVhGDqqXkxy5colERERPn02EZFdMJgmopBUv359DdYmTJgQrxbT6dOnS8GCBV1aa1u3bi3jx4+XnDlzSqZMmWT06NEaJA4ePFiyZMkiefPmlUWLFnlMrahZs6YG9qVKlZJvvvnG5fkDBw5I06ZNJV26dPrZHTp0kPPnzzuef/jhh6Vv374ycOBAyZYtmzRo0MDjekRFRcmYMWN0ORCcYp02bNjgeB4tzXv27NHX4N9Y75jg/dhu+fLlk3bt2skzzzzjSMV4//33pXLlypI+fXp9DZ4/d+6c471YP3z+xo0b9XX4rPfee0+3108//eRo9V68eLHHNI+//vpLnnrqKd2maEXHZ/zwww8xLus777wjJUqU0O1bvHhxDfydLzyw7XLnzq3PY5/GdiwQEQULg2kiCknh4eEaAM+aNUuDNH98/fXXcvr0admyZYtMnTpVg9HmzZtL5syZNdjr2bOnTidPnnR5H4LtQYMGyd69ezWobtmypVy4cEGfQ+tvnTp1NPDdvXu3Br9///23PPnkky6f8e6770ry5Mll+/btMm/ePI/LN2PGDJkyZYq88cYb8vPPP0ujRo30bx0+fNjxtxDMY1nw7/i0NKdOnVru3r3rCFDHjh2rgTGC4GPHjunFhruXXnpJA9fffvtNGjZsqH8Xfx9/G1Pbtm2jvef69eu6PbCd165dq38Dn4MLBU/efvttGTZsmIwbN07/Dvb18OHDdXvBzJkz9XNWrFihqS24EHC+SCIiChkGEVGI6dSpk9GqVSv9d/Xq1Y0uXbrov1evXm04n7ZGjhxplCtXzuW906ZNMwoUKODyWXgcGRnpmFesWDGjdu3ajsf37t0z0qZNayxbtkwfHzt2TP/OxIkTHa+5e/eukTdvXmPSpEn6ePjw4UbDhg1d/vbJkyf1fQcPHtTHderUMcqXLx/n+ubJk8cYN26cy7wqVaoYvXv3djzGemJ9vd1u8MMPPxhZs2Y1nnzySY+v37lzpy7vtWvX9PHmzZv18Zo1a1xe52k7A16LfQLz5s0z0qdPb1y4cMHj33L/jHz58hlLly51ec3YsWONGjVq6L+ff/55o169ekZUVFSs60xEFGxsmSaikIa8abRWIqXCV2hVTZbs/093SMkoU6aMSys48pCdUx6gRo0ajn+jdRlpC2hFBaRdbN68WVM8zAmpCmZ+swnvic3Vq1e1NbdWrVou8/HY/FvxsW7dOl0WpEZg+R966CFt3Qe0sLdq1UrzrpHqgTQUOHHihMtnxLXMnqDySYUKFTTFIy7//POP3gXo2rWry/ZDjre57dBijs8sVqyY9OvXT7744ot4LxMRUWJInih/hYjIRwgGkfbwyiuvREtJQID8XwPp/zNTGpyhsoUzs9qF+7yYUhLcXwd4bYsWLTTYd4c8XxNyh73hXqUE6+VL5ZK6devK3Llzdf3y5MnjWE9U9EDKBiakTGTPnl2DaGxb946R3i6zezqJt8ztjFSPatWquTyHCxuoWLGipqF8/vnn8uWXX2r6DPLoP/roo3gvGxFRQmIwTUQhDyXykJtctGhRl/kICM+ePesSeAayNvT333+vwTygwyJao9Epzgz2Pv74Y83jRau1rzJkyKBB77Zt2xx/C3bs2CFVq1aN9+chEH7ggQc8dqZE50hsS3ROBOR6eyNlypQSGRkZ62vKli0rCxYskIsXL8bZOo07A/fdd59WHEEHydi2DfKzMT3++ONaqcSbzyciSkxM8yCikIeUDARdZrqCCWkKSBmYPHmypgfMnj1bWzIDBZ+3evVqDUT79OmjZfq6dOmiz+ExArunn35adu7cqYEhUhHwfFyBpzt0dEQL9/Lly7Wz3ZAhQ/Si4IUXXgjYuuTPn1+DYmxDLCs696EzojdwwYBWYiwTAvLbt29Hew22AyqEoHIKOlvib+Bi47vvvvP4megEik6O6Hx56NAh2b9/v1b3QAdRmDZtmnz44Ye67fH8ypUr9fNRjYWIKJQwmCYiS0Dg557SgbJqKKeGoLdcuXIa1PpaU9kTtOIiyMVnb926VT755BMtcQdoTUbQiMAZqRKlS5fW4Ddjxowu+dneQE4wKmZgwoUDKoMg2C1SpEjA1gWt+Chph6C0ZMmSum6oHuKNNm3aaKswUkjwOcuWLYv2GgTquJjIkSOHlgvEeuBvmGkb7rp166Yt2VgmvBaVQPDvQoUK6fPIoca2R/52lSpVdFTK9evXx3vbEhEltDD0Qkzwv0JEREREZEO8xCciIiIi8hGDaSIiIiIiHzGYJiIiIiLyEYNpIiIiIiIfMZgmIiIiIvIRg2kiIiIiIh8xmCYiIiIi8hGDaSIiIiIiBtNERERERImLLdNERERERD5iME1EREREJL75P9Ov1gLd8jchAAAAAElFTkSuQmCC", "text/plain": [ "
" ] @@ -78,10 +80,12 @@ "source": [ "fig, ax = plt.subplots(1, 1, figsize=(6, 5))\n", "\n", + "function_names = [f.name for f in functions]\n", + "k = 1 # Index for TripleInterpolation\n", "ax.pcolormesh(\n", " range(len(n_particles)),\n", " range(len(chunk_coverages)),\n", - " total_time,\n", + " total_time[:, :, k],\n", " shading=\"auto\",\n", " cmap=\"viridis\",\n", " norm=LogNorm(vmin=total_time.min(), vmax=total_time.max()),\n", @@ -94,7 +98,7 @@ "fig.colorbar(ax.collections[0], ax=ax, label='Total Execution Time (s)')\n", "ax.set_xlabel('Number of Particles')\n", "ax.set_ylabel('Chunk Coverage')\n", - "ax.set_title('Execution time for TripleInterpolation as a function of Particles and Chunk-coverage')\n", + "ax.set_title(f'Execution time for {function_names[k]} as a function of Particles and Chunk-coverage')\n", "plt.show()" ] }, @@ -106,9 +110,9 @@ "outputs": [ { "data": { - "image/png": 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", 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", "text/plain": [ - "
" + "
" ] }, "metadata": {}, @@ -116,28 +120,40 @@ } ], "source": [ - "fig, ax = plt.subplots(2, 1, figsize=(6, 4))\n", + "fig, ax = plt.subplots(2, 1, figsize=(6, 5))\n", "\n", "i = 4\n", - "ax[0].plot(n_particles, total_time[i, :], marker='o', label=f\"Chunk Coverage={chunk_coverages[i]:.2f}\")\n", + "ax[0].plot(n_particles, total_time[i, :, :], marker='o', label=function_names)\n", "ax[0].set_xscale('log')\n", "ax[0].set_yscale('log')\n", "ax[0].set_xlabel('Number of Particles')\n", "ax[0].set_ylabel('Total Execution Time (s)')\n", + "ax[0].set_title(f\"Chunk Coverage={chunk_coverages[i]:.2f}\")\n", "ax[0].legend()\n", "\n", "i = 5\n", - "ax[1].plot(chunk_coverages, total_time[:, i], marker='o', color='C01', label=f\"Number of Particles={n_particles[i]:_}\")\n", + "ax[1].plot(chunk_coverages, total_time[:, i, :], marker='o', label=function_names)\n", "ax[1].set_xlabel('Chunk Coverage')\n", "ax[1].set_ylabel('Total Execution Time (s)')\n", + "ax[1].set_title(f\"Number of Particles={n_particles[i]:_}\")\n", "ax[1].legend()\n", + "\n", + "plt.tight_layout()\n", "plt.show()" ] + }, + { + "cell_type": "code", + "execution_count": null, + "id": "2387ee3e", + "metadata": {}, + "outputs": [], + "source": [] } ], "metadata": { "kernelspec": { - "display_name": "xarray-interpolation:default (3.14.5)", + "display_name": "Python 3", "language": "python", "name": "python3" }, From 7e824a90544a9ee84da1eb474ef581e3bef4daf6 Mon Sep 17 00:00:00 2001 From: Erik van Sebille Date: Fri, 12 Jun 2026 17:38:38 +0200 Subject: [PATCH 7/7] Add line for speedup --- explore_scaling.ipynb | 49 +++++++++++++++++++++++++++---------------- 1 file changed, 31 insertions(+), 18 deletions(-) diff --git a/explore_scaling.ipynb b/explore_scaling.ipynb index a3b7bce..054242e 100644 --- a/explore_scaling.ipynb +++ b/explore_scaling.ipynb @@ -29,7 +29,7 @@ "name": "stderr", "output_type": "stream", "text": [ - "Chunk Coverages: 100%|██████████| 10/10 [01:04<00:00, 6.47s/it]\n" + "Chunk Coverages: 100%|██████████| 10/10 [01:03<00:00, 6.38s/it]\n" ] } ], @@ -68,7 +68,7 @@ "outputs": [ { "data": { - "image/png": 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7mmF9zeVfuHChy7JXqVJF/4tOujgHnjp1yut12bt3r+6frFmz6nGJz8f3FHmDyIlODDh/mOdpT+cwLMcff/whXbt2jTOPN9T2If4OcouRC+3+d/A9xfO+Wr9+ve4vTKgGgX3//PPPy2uvvabPX79+XV5++WV54IEH9NjBhOMI505Px76/50f8bmL/dOnSJV7vw/kE/aLQ2dv5fNKoUSOXyhiJdZyj86f7/sIx6byvcX5CFZty5cpFO58lFGyf/PnzOx5jW6PDrz+/9fH5zHfffVd/e7p166bb3/m7iGPZ/XcIcG7G7wH2Wfbs2f2Oe/Abg/3zzjvvOF6D+AK/Ec7HXaB+o7w5/5qfhXV09vTTT7s8xu8rzivo+4U+Vu6/6Xgev2fe8imYRnCGDojOU6VKlaK9DieN2rVr60IhCHHuDf3333/rf1988UXHCcic0KMWzp8/7+ilHowKG4CLAU+9uHFQmM87w8nBmZk0jw4kgYaSTc5SpkwZ63zsB+dtj5Oh+7ZHaS1zu8fHpUuX9Ascn20VV+94b+GLkCFDBq9fjy9/TPPcl9GX49X9eZz04uLPcYNl+/TTT6P9Xfy4OC+XN9s9pm1jbhfzvzHt56ioKD0WPMFzDRs2lFWrVslLL72kJ7KdO3c6Tli+fkewTFhG986rCK5wwo3rO2pu77j+PpYbJ+j77rtP3n//ff1BQUMCfjTM7xY89NBD2onJvGDFuQvBCRoTYoOLXZwvEZTMmDFDtm7dqp8/e/bsBDuH+HIs4nwMgTwnJ9Y+jO/5PD4efPBB3V+o/nDgwAEtXzdz5kzH+ReB3ZtvvqnBDwIOHPt4PYIaT8vt7/kR+wnr5XzR6w2cT1Aizv18gosXnOPN80liHefe7Gvz+HHnaZ67bNmy6W/IsWPH4nxtfJcrvuLzmR9++KGWwMTx5P69QUDpvv9Q6hHnZlywxPXd9fZ7gu8mGlZWr17tKNeI0n14Ly6+Avkb5e35F8uG5XKPg5wb0MzX4didNWtWtOVCMO1puQJezcNbCxYskM8++0yvKnESQesfam+aBzAMHTpUHnvsMY/vN8ut4WQTU4uhybwqu337tst8XwJD94MbrY7ucOXlvB5WYi7zRx995GgV9FfmzJn1pB2fbRWIyh2+fM7Zs2djnOfpZBbf4xVfcGdopUpIWDa01IwbN87j8+YJ0JvtFdO2MbeL+d+Y9jOOARwLMVVH+Omnn/Rki5Jhzq3+/sAy4a4Ifuid1w2t4DhZBuo7ihM49iUuOJ3/jvs5B1q1aqUTnsPFwoQJEzSYQnnHGjVqePx8BCZopcSPhvP30t9a0Tg3XrlyJdp8X8+NZotWXOfkUNyHCXk+z5gxY4xVrrD90To3cuRIGTJkiGM+jg/n+sWBPD9iP23btk0vYuMTUGMbIEhDScCYng+14xz7NbbzemzQMo5WWLTk45gO5EWic1ziXI3C37gEPvjgAy3/irvJX3zxhUvZWDRuuv8O4XcAgTTWN67vbny+J6jL/frrr2twjxgP5XJRdtj57lYgfqO8Pf9i2XHOwPfKOaB2PxbwO2XeOe/Tp4/H5YrPb3eCjYC4f/9+6devn16x4soTGxIb2my1QuBRpEgR/XF1b+U2J/M2Hm4F4DaOe5qAM3NwDlxRO8OO9efqEV8y3PIwDyLnVBdczQaq1FlCtmC7wxUjrtxwqzambR9fuEWLCyWcIJ3XASdyfAlwgvK15m2gtw1aRM2WZsAJBl9QlNKL6UQan+PVfX5MAXp8xXTcYvAABKpYfk/L5X6iig1alZzTUnB7EbVtzcEgsB3QMoBa7c6vw4/jxx9/rD+g+F54Yp4A3UsczZs3z+O6ervP8R3FLXT3AW3MATMCVb4Ry49WRucTOU7Qn3zySYzvwXrgx27SpEmO29uxfb75HhO2Merf+gPnRtw6d/7RQasM9qsv8D3GsYZgy9OFRCjvQ3wOWo1//PHHaH8H2x+3ohMCPhv70v3YR4MTzj/eis82xe8mWuziO0gUzif4bcB5y9P5xNNAWME+zrHffv31Vz0/O8N5yhtoJMEyPPfcc3Lnzp1oz6PkJFpW4yumuMSXz3KHQPHLL7/UTAGsv3NKAn6L3Pcbzl24SMJ+QrpEbAF9fOIe/P1q1appqge2N84JCLAD/Rvl7fnXLAuK33RnCPadYT2w3XCsIj71tFzx+e32qWUaG8XMwXGGDYWrYfywojkeUT0KyWMDIKcHudPYyOYJEz+i+MIjuEMuDn6kcTWB/Bec7LDDYcyYMXrViNtKr7zyipQpU0ZvKaDu48CBA3UAGaQs4Icet+GxbLjqwK0HXJm7w/sR9M2dO1ev4HDVHlMAiZYEM99nxIgRegDjihAt7hgVCa0RgYBlAtz2QqsdbjVgfZzzAgMFX3Bs02HDhsnRo0d1kAdsLwSYuPWIwBgDA8QXWiVQkxPbCvsB+x37H8cLgjRfW1pwXOEkgO2OLy7ypfDli0+Q6AxXyfXq1dOreqwrlhH50O5fNnfeHq8JBccI8hVxIsZtMBwbOEawLzdt2qS5zbiAxTz8iOK2HvI4MeCAt60taAlEDhl+VNCahuMfrSv4sQF8V3DcI20LJ8gePXroyRMtE/hOTpw4McbPxvcU+xItc/jhwncJ64Jl97Su3n4fcMGOW8R4HdYZ78X3HoPc4HYd6v0GAtYX5w2k9SC39+TJkzJ27FjdF4cPH3a8DucJtPzgBwnbHdsF64F1iK3+M747+M4gtw9pMNiHOEfFlDbjLbS84NhF/WnsVwTS2IfxSY1yh+3dokUL/VHF4CbI88Tte6Qv4HsaqvsQy4qAAHnh+N6gZRTncpwDUGc4oQa5wbbG7xe+Jzj/4ByMW/HI93QffCU28dmmOI4Q4KCPAhqicF5G4wbuAOA8+tRTT3n8G2hVxIUxlhfbC4EG3of9ixZQ1FxG8BRKxzmWGRd32K/IUcctfRyHOK97A40AWAZ8txET4FhACgKCaARb8+fP1xQWHPPxgWMX5zn0L8DxhkYsXNzg3BEI2O+Ig3C3FNsVjYdxXRCi7jlSkrAPcS5GOi5++/FenCfwmfGNe7p06aK/BQi+8TvkPohbIH6jvD3/Ip5BXjWO06tXr+r+REqIeWHufJcGxyu2BdKOsM/xvbx27ZreLcVvU7z6UASqmodzr+H27dtrj0/3EmvoZY7XoQyO6aefftLqEagEgKoBqCaB3qbo3e0MpZZQ1QPPm3Uv8T7n+smoF4hyXejdinJDqFZh9ux07s2LHpro/YoeregB7LwZPNUhROkZlJZDCRWUe0EVDffKEjH1pPdUwSEmQ4cO1fVCT+rY6ofGVE0jpmWIqT44yl6h/Ay2F3ruojcxtgvK1sQmpr/vXGcaPdRRNQMVPtzrv3pbr9wZKgmgmgb2vac6057EVmd6zpw52mMYn4fPRbk3b+pMe3u8xreah3tJI0+9vdFTHaW68N3Cc87HBN7fr18/rZ6D5UIPcJSrGzZsmKM2bGz7zbnOND4H3x8cEygDuHv37mivx7GDUlLo8Yztj3rqzrVrY1oHVORBD3uUXUK5NZR+Qo9xT987b78PZo1ilONEVRVUqsF+x/tjqlHszlOtXU9QagklpbBtUJ8c5zz3HvsoNYle7yjvhPMFjhVUenAuGxgTfFdwfsF2xftRCQKl0eKqSBDb9x9QOgrLi89FJQSUM4ytzrQ7T/sHFYqwnjgvmjXDUfIs1PchKgq0a9dOS67hu4KyjFhn92o88a3mEddrUeIVFQ5w3OP4R/lB1Jd3X+64zo/x2aao8IByfGZNfawzzlfONeE9bTecM1CKFNsG7zPLh2H/mpWQEuM4N+tMe3NuN88t+Eyc/1DlARWCvPnuOJ9j8dkoqYd1wrkNlSKwDZ2rX8S0vz3tA1TDQZUjfBbWFd+jBQsWeKzm4c1nejo+bt++rccW1h0xT1ywrXDuxfGA9cT6ouyce53puOIe05UrV/T3PrbqMf7+Rnl7/jVjPJRZRIyH30scFyjpjNc5V84x/yZiS7P+NX77sL9ee+01Iz7C8H/eh95E1obWceRHIYef/h9avNEKgdZ194oKREREVrZ06VK9o7p9+3ZtIQ+0BO2ASERERESUWJBWimoxSItCWgfyyZFihdSlhAikgcE0EREREdlC+vTptQ8U8ufRhw951ejnZNZ8TwhM8yAiIiIi8lGClcYjIiIiIrI7BtNERERERD5iME1ERERE5CN2QCTLwkACKBKPzgaBGpqciIgSH6r0YsAMDMYVn+HPvYVBQjyNbugLDDpjDhVOBAymybIQSOfLly/Yi0FERAGCke28HbE1PoF0oQLp5Ow574duj02uXLnk2LFjDKjJgcE0WZY5hO5DpftL8vAIsZIL5QIzDH0w3Gp8VayoZcH9YlXhYVFiRWE6OK41ZUz+r1jRM+mPiBVdux4lJSuf8Tg0ur/QIo1A+tieApIhvX+t3levRUmhSn/qZ7J1mkwMpsmyzNQOBNJWC6bDU1r3FmF4mttiRRHpUohVWTWYTmbhYDpV8rtiRf4Gi8GWkCl72DZW3z4UmhhMExERke1FGlESafj/GUTuGEwTERGR7UWJoZO/n0Hkjvc7iIiIiIh8xJZpIiIisr0o/Z//n0HkjsE0ERER2V6kYejk72cQuWOaBxERERGRj9gyTURERLbHDoiUUBhMExERUZIIpiNZzYMSANM8iIiIiIh8xJZpIiIisj2meVBCYTBNREREtsdqHpRQmOZBREREROQjBtPklTlz5kihQoUkVapUUqlSJdm6dWusr589e7aUKFFCUqdOLcWKFZMlS5a4PL948WIJCwuLNt26dYt7hIiIAi4qQBNUqVJFSpYsqb91REzzoDgtX75c+vfvrwF1rVq1ZN68edKkSRM5cOCA5M+fP9rr586dK0OHDpW3335bTzg7d+6U5557TjJnziwtWrRwvC5Dhgxy8OBBl/ciWCciIgq0yABU8zDfv2vXLv0NIwIG0xSnqVOnSteuXaVbt276ePr06bJx40YNmidMmBDt9e+995706NFD2rZtq48LFy4s33//vUyaNMklmEZLdK5cubgHiIiIyLKY5kGxunPnjuzZs0caNmzoMh+Pd+zY4fE9t2/fjtbCjHQPtFDfvXvXMe/69etSoEAByZs3rzRv3lz27t0b67Lgc69eveoyEREReSPSCMxE5I7BNMXq/PnzEhkZKTlz5nSZj8dnz571+J5GjRrJggULNAg3DEN2794tixYt0kAanwfFixfXvOm1a9fKsmXLNPhGCsnhw4djXBa0gmfMmNEx5cuXj3uPiIgSPWeayBmDafIKUjKcIUh2n2caPny45lRXr15dUqRIIa1atZLOnTvrc+Hh4fpfPNe+fXspV66c1K5dW1asWCFFixaVWbNmxbgMyMO+cuWKYzp58iT3HhEREQUVg2mKVbZs2TQAdm+FPnfuXLTWaueUDrRE37x5U44fPy4nTpyQggULSvr06fXzPB6IyZJpZ8XYWqYjIiK0w4fzRERE5I0oCZNIPyd8BpE7BtMUq5QpU2opvE2bNrnMx+OaNWvG+l60SiMfGsH4hx9+qHnRCJo9QUv3vn37JHfu3NwjREQUcFFGYCYid6zmQXEaOHCgdOjQQSpXriw1atSQ+fPna2tzz549HekXp06dctSSPnTokHY2rFatmly6dEmrgfzyyy/y7rvvOj5z9OjRmupRpEgR7Ug4c+ZMDaZZs5OIiIishME0xQkl7i5cuCBjxoyRM2fOSOnSpWX9+vVaiQMwD8G1CR0Wp0yZojWk0Tpdt25drfyBVA/T5cuXpXv37po+gs6EFSpUkC1btkjVqlW5R4iIKODMVA1/P4PIXZiB++tEFoQWbQTi9cq9LMnDI8RKzlfMJFZ1q/kVsaLHCv8kVhUeZs0aAsn8HCAjmDImvylW9GyGQ2JFV69FSb7ip7RzeaD7w5i/FTt+zS3p0vuX3Xr9WpTULHUmQZaTrIs500REREREPmKaBxEREdlelBGmk7+fQeSOwTQRERHZHnOmKaEwzYOIiIiIyEdsmSYiIiLbi5RkOvn3GUTRMZgmIiIi2zMCkDONzyByxzQPIiIiIiIfsWWaiIiIbI8dECmhMJgmIiIi24s0kunk32cEbHHIRpjmQURERETkI7ZMExERke1FSZhE+dmGGCVsmqboGEwTERGR7TFnmhIKg2miYLBwdaVkYdZsmUkTflus6nZUCrGi21HW/Ymx7Da3aCXkOxIV7EUg8pl1z3REREREidoB0ZqNCZSwGEwTERFREsmZ9u+2oL/vJ3tiNQ8iIiIiIh+xZZqIiIhsD5U8IlnNgxIAg2kiIiKyPeZMU0JhmgcRERERkY/YMk1ERERJIs2Dg7ZQQmAwTURERLYXaYTp5O9nELljmgcRERERkY/YMk1ERES2FxmAah6RwkFbKDq2TBMREZHtRRnJAjIFw7p166RYsWJSpEgRWbBgQVCWgWLGlmkiIiKiEHXv3j0ZOHCgbN68WTJkyCAVK1aUxx57TLJkyRLsRaP/Ycs0ERERJZk0D3+nxLZz504pVaqU3HfffZI+fXpp2rSpbNy4MdGXg2LGYJqIiIhsL8qpooevEz4jvrZs2SItWrSQPHnySFhYmKxZsybaa+bMmSOFChWSVKlSSaVKlWTr1q2O506fPq2BtClv3rxy6tQpn7cDBR6DaSIiIqIEcuPGDSlXrpy8+eabHp9fvny59O/fX4YNGyZ79+6V2rVrS5MmTeTEiRP6vGFE7/SIoJxCB4Np8kpsV82efPDBB3rySJMmjeTOnVueffZZuXDhguP5xYsX68nAfbp16xb3CBERJdigLf5OcPXqVZfp9u3bMf5dBMavvfaa5jl7MnXqVOnatat069ZNSpQoIdOnT5d8+fLJ3Llz9Xm0Sju3RP/111/6u0qhg8E0xSmuq2Z327Ztk44dO+rJ4ddff5WVK1fKrl279EThDB0pzpw54zIhWCciIgq0SCNZQCZAsJsxY0bHNGHCBJ+W6c6dO7Jnzx5p2LChy3w83rFjh/67atWq8ssvv2hAfe3aNVm/fr00atQoAFuEAoXVPChOzlfNgKtmdH7AVbOnE8j3338vBQsWlH79+uljtGj36NFDJk+e7PI6tETnypXL6z2AK3/nq3+0BhARESW2kydPaoOQKSIiwqfPOX/+vERGRkrOnDld5uPx2bNn9d/JkyeXKVOmSN26dSUqKkpeeuklyZo1q59rQIHElmny+6rZXc2aNfU2FK6ekev1999/y0cffSTNmjVzed3169elQIEC2pmiefPm2uodGwTuzi0BaBkgIiLyRpSEBWQCBNLOk6/BdEw50PjtdJ7XsmVLOXTokBw5ckS6d+/OHR5iGEyT31fNnoJp5Ey3bdtWUqZMqa3PmTJlklmzZjleU7x4cc2bXrt2rSxbtkzTO2rVqiWHDx+OcVmGDh0qV65ccUxoGSAiIkrsNI9AyZYtm4SHh0f7PT137ly0310KXQymKSBXzc4OHDigKR4jRozQVu0NGzbIsWPHpGfPno7XVK9eXdq3b6+dFJGDvWLFCilatKhLwO0OV/7urQFERERWhQYndOrftGmTy3w8RsMUWQNzpingV81Ix0Ar8+DBg/Vx2bJlJW3atBo0o0ezp17IyZIlkypVqsTaMk1EROSrQAy64sv7kdKI9AwTGpf27dunIxjmz59fRzfs0KGDVK5cWWrUqCHz58/XDv7ODVAU2tgyTQG/ar5586YGx84QkMdUL9Ocj5MLy/0QEVFCiMKgKwGYAI0/JUuWlNmzZ8f5d3fv3i0VKlTQCRA849+4ewtIiUTH/jFjxkj58uV1kBf0OUKfIrIGtkxTnOK6akYuM0r2LFmyRB9jpKfnnntOq32gfA9K3qG0Hsr7YAQoGD16tKZ6FClSRKtyzJw5U4Npb05MREREwYRyr96mGj788MMxNiSZevfurRNZE4NpihOumjHgCq6aERiXLl3a5aoZ85xrTnfu3FlrYWK0p0GDBmnnw3r16smkSZMcr7l8+bL2SEb6CCpz4CodV+MIuImIiAItKgBpHuagLUTOwoy4LpeIQhRatBGI1yv3siQP968sUWI7XymTWNWd5pfFito9sEus6nZUCrGiu1H/pXdZUcbk/4oVPZvpZ7Gia9ei5P7iZ7VSU6A7l5u/FeN31pVU6fxrQ7x1/Z68UnVzgiwnWRcvsYiIiIiIfMQ0DyIiIrK9SAnTyd/PIHLHlmkiIiKyvSgjWUCm+FbzIPtjyzQRERFRAlXzIPtjME1ERES2FxmANA18BpE7BtNERERke85pGv58BpE7HhVERERERD5iyzQRERHZXqSRTCd/P4PIHYNpIiIisj1DwiTKz5xpfAaRO15iERERERH5iME0ERERJZk0D38nYJ1pcsY0DyIiIrK9KCNMJ38/A1hnmpwxmCbrSxYmksxaN1mMcLGsyChr5gxeuptWrOp2FE/ViS0i2T2xoruGIVZk1eUmAp6hiYiIyPYiJZlO/n4GkTsG00RERGR7gUzzIHLGSywiIiIiIh+xZZqIiIhsL0qS6eTvZxC5YzBNREREthdphOnk72cQueMlFhERERGRjxhMExERUZLpgOjvBBy0hZwxzYOIiIhszzCSSdT/RjD05zOAg7aQM7ZMExERERH5iC3TREREZHuREqaTv59B5I7BNBEREdlelOH/oCv4DCJ3TPMgIiIiIvIRW6aJiIjI9qIC0AHR3/eTPTGYJiIiItuLkjCd/P0MIne8xCKvzJkzRwoVKiSpUqWSSpUqydatW2N8befOnSUsLCzaVKpUKcdrFi9e7PE1t27d4h4hIiIiy2AwTXFavny59O/fX4YNGyZ79+6V2rVrS5MmTeTEiRMeXz9jxgw5c+aMYzp58qRkyZJFnnjiCZfXZciQweV1mBCsExERJdRw4v5ORO4YTFOcpk6dKl27dpVu3bpJiRIlZPr06ZIvXz6ZO3eux9dnzJhRcuXK5Zh2794tly5dkmeffdbldWiJdn4dJiIiooTMmfZ3Ao6ASM6YM02xunPnjuzZs0eGDBniMr9hw4ayY8cOr7bewoULpX79+lKgQAGX+devX9d5kZGRUr58eRk7dqxUqFAhxs+5ffu2TqarV69y7xERUaLjCIjkjC3TFKvz589rsJszZ06X+Xh89uzZOLceUjc+//xzbdV2Vrx4cc2bXrt2rSxbtkzTO2rVqiWHDx+O8bMmTJigrd7mhNZxIiIirzsgGn5O7IBIHjCYJq8gJcOZYRjR5nmCgDlTpkzSunVrl/nVq1eX9u3bS7ly5TQHe8WKFVK0aFGZNWtWjJ81dOhQuXLlimNCLjYREZE3jP9V8/BnwmcQuWOaB8UqW7ZsEh4eHq0V+ty5c9Faq90h4F60aJF06NBBUqZMGetrkyVLpjlosbVMR0RE6EREREQUKtgyTbFCEIxSeJs2bXKZj8c1a9aM9b3ffvutHDlyRDsvxgWB9759+yR37tzcI0REFHB+p3j8byJyx5ZpitPAgQO1dbly5cpSo0YNmT9/vpbF69mzpyP94tSpU7JkyZJoHQ+rVasmpUuXjvaZo0eP1lSPIkWKaEfCmTNnajA9e/Zs7hEiIgo4joBICYXBNMWpbdu2cuHCBRkzZox2KERwvH79ekd1DsxzrzmNnOaPP/5Ya057cvnyZenevbumj6AzIap4bNmyRapWrco9QkRERJbBYJq80rt3b51i6mToDgHyzZs3Y/y8adOm6URERJQYApGmwTQP8oTBNBEREdmeWZHD388gcscOiEREREREPmLLNBEREdke0zwooTCYJiIiIttjME0JhWkeRERERPGAQcZKlizJcq6k2DJNREREthfIluldu3ZJhgwZArRkZHVsmSYiIiIi8hFbpomIiMj2mDNNCYXBNBEREdmeEYA60fgMIncMpomIiIiSmIMHD8qyZctk69atcvz4cR21OHv27FKhQgVp1KiRtGnTRiIiIoK9mJbAnGkiIiJKMmke/k5Wt3fvXmnQoIGUK1dOtmzZopVJ+vfvL2PHjpX27duLYRgybNgwyZMnj0yaNElu374d7EUOeWyZJiIiIttjzvR/WrduLYMHD5bly5dLlixZYtxe3333nUybNk2mTJkir7zySqLtJytiME3Wd88QMaLESsLuBXsJkp7Ld9OIVd01rHkTMcqiyw0Zkt8SK0oRZs2WU6sutxUdPnxYUqZMGefratSoodOdO3cSZbmsjME0ERER2R5bpv8TVyB9+fJlyZQpk+OxN4F3UmfdZgMiIiIiLzFnOjrkRCPdw/Tkk09K1qxZ5b777pOffvqJx5aXGEwTERERJUHz5s2TfPny6b83bdqk0+effy5NmjTRvGryDtM8iIiIyPYMI0wnfz/DTs6cOeMIptetW6ct0w0bNpSCBQtKtWrVgr14lsGWaSIiIrI9DNgSiMlOMmfOLCdPntR/b9iwQerXr6//Rnm8yMjIIC+ddbBlmoiIiCgJeuyxx6Rdu3ZSpEgRuXDhgqZ3wL59++SBBx4I9uJZBoNpIiIisj1W84gOdaSR0oHW6cmTJ0u6dOkc6R+9e/dO9H1kVQymiYiIyPYCmTONUQPDw8OlT58+OllVihQp5MUXX4w2HyMikvcYTBMRERHFw65duyRDhgyW3GYY2RCDsXjjxo0bcvz4cSlVqlSCL5eVsQMiERER2R7rTP+nY8eO0qBBA1mxYoVcv37d47Y6cOCADiGOvOkff/wxUfeTFbFlmoiIiGyPpfH+P1BGfekRI0bIM888I0WLFpU8efJIqlSp5NKlS/L7779rizQ6J6LudOnSpYO850Ifg2kiIiKiJAJ50n379tUJrc5bt27VVI5///1XypUrJwMGDJC6detKlixZgr2olsFgmoiIiJJEyzRSPfz9DDupWLGiTuQfBtNERERke4YGw/5/BpE7dkAkIiIiIvIRg2nyypw5c6RQoULaQaFSpUqaYxWb27dvy7Bhw6RAgQISEREh999/vyxatMjx/OLFiyUsLCzadOvWLe4RIiIKOA4nTgmFaR4Up+XLl2sBdwTUtWrV0l7AGHIUPYLz58/v8T1PPvmk/P3337Jw4UItrXPu3Dm5d++ey2tQo/PgwYMu8xCsExERBRqreVBCYTBNcZo6dap07dpVunXrpo+nT58uGzdulLlz58qECROivX7Dhg3y7bffytGjRx29gTFcqTu0ROfKlcvrPYDWbkymq1evcu8REREFAO4Ms0HLN0zzoFjduXNH9uzZIw0bNnSZj8c7duzw+J61a9dK5cqVZfLkyXLfffdpDUsMV4qyO85QLB5pIHnz5pXmzZvL3r17Y10WBO4ZM2Z0TPny5ePeIyIir3DQFg/bJCpKxo4dq7/V6dKl00YwGD58uN5ZJu8wmKZYnT9/XiIjIyVnzpwu8/H47NmzHt+DL+O2bdvkl19+kdWrV2tL9kcffSR9+vRxvKZ48eKaN43Ae9myZXo1jBSSw4cPx7gsQ4cOlStXrjimkydPcu8REZFXUMkjEJOdvPbaa/pbjMavlClTOuaXKVNGFixYENRlsxKmedjU5cuXNYD9448/ZPDgwZpugeLsCIJxBRpfSMlwZhhGtHnOV7p47oMPPtAWZDNV5PHHH5fZs2dL6tSppXr16jqZEEij1uWsWbNk5syZHj8XHRkxERERkf+WLFki8+fPl0ceeUR69uzpmF+2bFkdCZG8w2Dahn7++WepX7++BrIY1ei5557TYBqtxH/++ad+ebyVLVs2CQ8Pj9YKjQ6F7q3Vpty5c2vAbgbSUKJECQ3A//rrLylSpEi09yRLlkyqVKkSa8s0ERGRr9gBMbpTp05pkQBPjWJ3797lweYlpnnY0MCBA6Vz584amDp3JkAFji1btsTrs3DbB6XwNm3a5DIfj2vWrOnxPWhlPn36tOZEmw4dOqQBM/KjPUGgvW/fPg3EiYiIEiqY9neyk1KlSnksdbty5UqpUKFCUJbJitgybUO7du3S8nXu0FocU55zXMF5hw4dtFNhjRo19JbQiRMnHLeEkMuMq1uzxbtdu3baoeHZZ5+V0aNHa941Uk26dOmiKR6A+UjzQCs1qnIgtQPBNNJAiIiIKOGNHDlSf9/xG47W6FWrVmnJWvyer1u3jrvASwymbQit0Z7KxuELkj179nh/Xtu2beXChQsyZswYOXPmjJQuXVrWr1+vlTgA8xBcm9AjGC3Xzz//vAbgWbNm1brT6OjgnNPdvXt3De6RDoIrYLSaV61a1ef1JiIiiq2aR5ifLcv4DDtp0aKFjiUxfvx47es0YsQI7b/06aefSoMGDYK9eJYRZuD+OtkKgtR//vlHVqxYobnSyKFG3nPr1q3loYce0uoadoALBgTi9cq8LMnDrdUx8XzlTGJV/za7Ilb0YN5jYlV3DWtm5EVZdLkhf+qLYkX9su4UK7p2LUruL35WKzVhQK+E+K0o+sEQCU/j329F5M3bcuiZiQmynGRd1j3TUYzeeOMNDaZz5MihtZ3r1KmjHQzSp08v48aN45YjIiIiF+jnhAsP54m8wzQPG8LVMuo8f/3111oOD3lQuG2DCh9ERERJ0X91ov1L07Dbvfxjx45J37595ZtvvtEREN3L32KcCYobg2kbq1evnk5ERERJHUvjRffMM8/ofxctWqTlbmMaP4Jix2DahmIa9ARfEnRORMoHcqeRR01ERERJE/pU7dmzR4oVKxbsRbE0BtM2NG3aNM2ZvnnzpmTOnFlv16B6Rpo0abTSBgZcKVy4sGzevFny5csX7MUlIiJKcMjQ8DdLw2ZZHjpY2smTJxlM+4kdEG0IJW7M0QRR0u7ixYs6aEq1atVkxowZWsYuV65cMmDAgGAvKhERkeUGbcFvbMmSJS0/NsKCBQtk0qRJ8u6772oLNVqqnSfyDlumbejVV1+Vjz/+WO6//37HPKR2oMpHmzZt5OjRozJ58mT9NxEREcV/cDQ7lMbDXew//vhDB1lzTgllB8T4YTBtQxhE5d69e9HmY545AmKePHnk2rVrQVg6IiKiIGCeRzQYmRiDpi1btowdEP3AYNqG6tatKz169NDbN/iSwN69e6VXr16O6h779++XQoUKBXlJiYiIEolTmoY/n2Enf/75p6xdu1bvXpPvmDNtQwsXLtSRDytVqiQRERE6YVhvzMNzgI6IU6ZMCfaiEhERUZCgge2nn37i9vcTW6ZtCJ0LN23aJL///rt2PETuU/HixV1666L1moiIKGkN2uL/Z9hJixYttBgB7laXKVNGUqRI4fJ8y5Ytg7ZsVsJg2sYQQGMiIiJK6jhoS3Q9e/bU/44ZMybacxwB0XsMpm3qr7/+0jwolMG7c+eOy3NTp04VO4lKlVyikrteTYc8C6fdhSezZtPMP7fTiVWlCr8rVnQr0mLfSyfXU0aIFd2IihIrsupyW10Ut3tAMJi2oa+++kpvzaCD4cGDB6V06dJy/PhxTfeoWLFisBePiIgo8aHzIDsgUgJgMG1DQ4cOlUGDBultm/Tp02vN6Rw5csgzzzwjjRs3DvbiERERJTrmTP9n5syZ0r17d0mVKpX+Ozb9+vVLlH1jdQymbei3337TmpGQPHly+ffff7V6B4LrVq1aaYk8IiIiSnqmTZumjWsIpvHvmCBnmsG0dxhM21DatGnl9u3bjsFZMLpRqVKl9PH58+eDvHRERERBwEFb1LFjx2TLli1Ss2ZN/Tf5j8G0DVWvXl22b98uJUuWlGbNmmnKB8rerFq1Sp8jIiJKaljNQ1zK42K0ZKSAkv8YTNsQqnVcv35d/z1q1Cj99/Lly3WEo9hu6RAREZH9oSABBQ6DaZuJjIyUkydPStmyZfVxmjRpZM6cOcFeLCIiouBjDOmSE02BwWDaZsLDw6VRo0baCTFz5szBXhwiIqKQwDQPV8OHD9cGt9jYbVyKhMJg2oYwJOjRo0e1zjQRERGRO/SlSpkyZYwbhi3X3mMwbUPjxo2TF198UcaOHSuVKlXS6h7OMmTIELRlIyIiCgpW83CxevVqdkAMEAbTNmQOzIJREJ2vLNHhAI+RV01ERJS04PfQ3zxhe+QZs9U5sBhM29DmzZuDvQhEREQUoljNI7AYTNtQnTp1gr0IREREoYVpHg7vvPOOZMyYMZh7w1aSBXsBKGFs3bpV2rdvryMcnTp1Sue99957sm3bNm5yIiJKusG0v5MNdOrUSSIiIoK9GLbBYNqGPv74Yy2Plzp1avnxxx8dQ4tfu3ZNxo8f79NnolY1qoOkSpVKOzUiWI/JN998o/lY7tPvv//ueM3ixYs9vubWrVs+LR8RERFRMDCYtqHXXntN3nrrLXn77bclRYoUjvlopUZwHV8YPbF///4ybNgw2bt3r9SuXVuaNGkiJ06ciPV9Bw8e1OFKzalIkSLRqoo4P48JwToREVHAGWGBmYjcMGfahhDEPvTQQ9HmI3i9fPlyvD8PRdu7du0q3bp108fTp0+XjRs3yty5c2XChAkxvi9HjhySKVOmGJ9HS3SuXLnivTxERETxhRG0/R1Fm6Nwkydsmbah3Llzy5EjR6LNR7504cKF4/VZd+7ckT179kjDhg1d5uPxjh07Yn1vhQoVdFkeeeQRjxVGrl+/LgUKFJC8efNK8+bNtdU7NkhXuXr1qstERERE/sFv/V9//aV3nJ0n8g6DaRvq0aOHvPDCC/LDDz9o6+/p06flgw8+0IFcevfuHa/POn/+vNalzpkzp8t8PD579qzH9yCAnj9/vuZur1q1SooVK6YB9ZYtWxyvKV68uOZNr127VpYtW6bpHbVq1ZLDhw/HuCxoBUfvY3PKly9fvNaFiIiSMHZAjAa/uUjdRB8rNG6hbxSmggULchTleGCahw299NJLcuXKFalbt6526EPKB3rtIpju27dvQAq8mwPAeILgGZOpRo0acvLkSXnjjTcc6SfVq1fXyYRAumLFijJr1iyZOXOmx88dOnSoDBw40PEYLdMMqImIyCuByHm2Wc50586dJXny5LJu3TptCONgLr5hMG3jIcXRYfDAgQMSFRUlJUuWlHTp0sX7c7Jlyybh4eHRWqHPnTsXrbU6Ngic33///RifT5YsmVSpUiXWlmlcELCUDxERUWDs27dPUzlxt5h8xzQPG3r33Xflxo0bkiZNGqlcubJUrVrVp0AaUqZMqaXwNm3a5DIfj1EdxFvIh8ZVb0zQ0o0vdWyvISIi8lWYEZjJTtDQhnRO8g+DaRtCOgcqaTz11FN66+bevXt+fR5SKxYsWCCLFi2S3377TQYMGKAdE3r27OlIv+jYsaPj9aj2sWbNGm1l/vXXX/V55E87p5iMHj1aK4IcPXpUg2hUC8F/zc8kIiIKKOZMRzNp0iRNDcX4EBcuXGAnfx8xzcOGUK95w4YN2rEPATU6FjzxxBOOERHjq23btvolGzNmjH526dKlZf369dpZwfx7zr1+0SsYAT1GXsTfLlWqlHz22WfStGlTx2tQoq979+6aPoLOhKj8gQ6KaEUnIiKihFe/fn39L4oEeOoXhQIEFLcwA1uMbOvmzZuyevVqWbp0qXz55Zdahu6PP/4QO0AHRATiD1cZJsmTW2uwl4ul04pV3Wke/1rloeCBrNa9lZkq/K5Y0a3I/x80ymoKpr0gVvRCtm/Fiq5di5KyJc9p53mMiZAQvxX5po2VZKn9+62I+veWnBwwPEGWMxi+/Tb246VOnTqJtixWxpZpm0PeNIYWv3Tpkvz555+apkFERJRk0zz8/QwbYbAcGAymbd4ijfrSaJFGCbmnn35aVq5cGexFIyIiogB69NFHNe8Z6RofffRRvN6LtMuFCxdqYxtSO9ApsUuXLtqaT95hB0QbQtCMDojoKIji6/iCIbXjtddekxIlSgR78YiIiBKfjTsg9uvXT5YsWRLv9+3evVvuv/9+mTZtmly8eFEre0ydOlXn/fjjjwmyrHbElmkbwpXl8uXLNb0DxdiJiIiSPBuneWCQNjScxRca3Vq2bClvv/22I15ABbBu3bpJ//79XUYuppixZdqG0NmwWbNmDKSJiIiCDAFpixYtJE+ePNrYhdKx7ubMmaN3klOlSqVjO2zdujVRlg0t0y+//LJLvIB/o1weniPvMJi2KfTQxZf3gQcekCJFiuiVZ2J9OYmIiEJ2OHF/p/9VCHGebt++HeOfxSBq5cqVkzfffNPj87iTjFZgjFqMAc5q164tTZo0cSk5iwAbZWndp9OnT/u1SVCRxPnvmE6ePCnp06f367OTEuYA2BCG7X722Wflscce0zwqVD/csWOHdkxYvHixtGvXLtiLSERElKgCMYKh+X506nc2cuRIGTVqlMf3IDDGFBPkKGPgMqRWmAOfYVCzuXPnyoQJE3QehvxOCBhHAn/7jTfe0HEo0HK+bds2GTx4sPa/Iu8wmLahcePGyeTJkzUXyvTCCy/oF3bs2LEMpomIiPyAllvnOtMRERE+fQ4GOUOgPGTIEJf5DRs21EawhIYgGgE0RjE2R0tOkSKF9OrVSyZOnJjgf98uGEzbEIboRoqHO6R6vPLKK0FZJiIiIrt0QEQgHYhBW1A9A6MM5syZ02U+HmOEYG+h4ACqbyClBIOzoTRulSpV4nxfypQpZcaMGdoCjqpfuJON9FCMUUHeYzBtQ7j99NVXX+kXwhnmud+aIiIiouBC67Cn4by9hbQQfyB4LlOmjF+fkZQxmLahQYMGaa70vn37XHKgkC+NK1AiIiIKvmzZskl4eHi0Vuhz585Fa60OFPSnQjyAlnX8OzarVq1KkGWwGwbTNoRcp1y5csmUKVNkxYoVOg+DtaDHcKtWrYK9eERERIkO7bx+d0CUwEKaBSp1bNq0SUcxNOFxQv1eY2RDs9UbAXV8WsDJMwbTNoUvpfMX086S3Y2UZFH/dZywiv9VV7Kke5HWrKh56VZqsaoosWb+YnhYlFjVtYhUYkWpLBoY3U2M5XYqbefXZ4hoPjJalPv06aNTbK5fvy5HjhxxPD527JjeOc6SJYvkz59fBg4cKB06dJDKlStLjRo1ZP78+VqurmfPnpIQ3nnnHce/0UJN/rPmryJ5dOnSJZk1a5bWvHR35cqVGJ8jIiIi7+3atUsOHDgQZyANGPykQoUKOgGCZ/x7xIgRjvJ0KIc3ZswYKV++vA7ysn79eilQoECC75J69erJ5cuXo81HrIDnyDtsmbYRFIT/+eef5fnnn/d4WweDtuALgsLwRERESUqQhhN/+OGHtUNhbHr37q1TYsMQ5CjP5+7WrVsc6C0eGEzbyMcff6x50jHp0aOHvPjiiwymiYgo6QlSMB2K0PBmQgu7cwdIlOrbsGGD3HfffUFaOuthMG0jqBGJocNjgufwGiIiIkq6kE6CjoeYPKVzpE6dWlNDyTsMpm0EnSFOnz6tHRo8wXPJkjFNnoiIkp5ADidudegEidSTwoULy86dOyV79uwuFUZy5MihMQV5h8G0jaBDw5o1a6R69eoen8eISGYHCCIioiSFaR4OZufGqCjrVtwJJQymbaRv377y1FNP6VCiqDVtXlUi/2nOnDkybdo0Wbp0abAXk4iIyNLiUxovlC1ZsiTW5zt27Jhoy2JlDKZtpE2bNvLSSy/p6Ieo2IHbN8iHQp406lwOHjxYHn/88WAvJhERkaVbplEaDwOeWN0LL7zg8vju3bty8+ZNTfXAEOMMpr3DYNpmxo0bp6MmffDBB1okHjlRDz30kLRr106qVq0a7MUjIiIKCuZMex6fwt3hw4f17jYa4Mg7DKZtCEEzA2ciIiKKL1T+mjhxorRv315+//13bkAvMJgmIiIi+wvgcOJJpToYeYfBNBEREdkfq3lEs3btWtdNZBhy5swZHVG5Vq1aibdvLI7BNBEREVES1Lp1a5fHKFqAmtMYyCW2EZXJFYNpIiIisj12QIyOdaYDg8Ph2dD7778f43PsnUtEREmSEaDpf3WmS5YsKbNnzw72WlEIYDBt08Fb1q1bF23+gAEDYg20Y4NBXwoVKiSpUqWSSpUqydatW7163/bt2yV58uRSvnx5l/mLFy/W20nu061bt3xaPiIiosSCOtMHDhyw9IAtgLEnULnD3euvvy5PPPFEUJbJihhM29CHH36oJW22bNnimPf888/LihUrZPPmzfH+vOXLl0v//v11IJi9e/dK7dq1pUmTJnLixIlY33flyhUt+P7II494fB4F79HRwXlCsE5ERBRwxv+nevg6+T3oS4j59ttvpVmzZtHmN27c2CWGoNgxmLYhfAneeust7Viwe/du6d27t6xatUoD6eLFi8f786ZOnSpdu3aVbt26SYkSJWT69OmSL18+mTt3bqzv69Gjhw4WU6NGDY/PoyU6V65cLlNsbt++LVevXnWZiIiIEjvNwy4wOjJGO3SXIkUK/sbGA4Npm3rqqad0NMQHH3xQPv30U736LFq0aLw/586dO7Jnzx5p2LChy3w83rFjR4zve+edd3QY85EjR8b6JS5QoIDkzZtXmjdvrq3esZkwYYJkzJjRMSGgJyIiIt+ULl1a7z57usONnHDyDqt52MTAgQM9zs+RI4dUqFBBc56dW5q9df78eYmMjJScOXO6zMfjs2fPenwPhiIdMmSI5lUjX9oTtJAjb7pMmTJ69TtjxgytafnTTz/p6EueDB061GU98T4G1ERE5BXWmY5m+PDh0qZNG238Qjk8+Oqrr2TZsmWycuVKHlheYjBtEzG16t5///0adJrPI7XCF+7vQ2F3T5+FwBupHaNHj461Jbx69eo6mRBIV6xYUWbNmiUzZ870+J6IiAidiIiI4v07ZuY9+8Hf94eali1bypo1a2T8+PHy0UcfSerUqaVs2bLy5ZdfSp06dYK9eJbBYNomfOlY6I1s2bLpsKLurdDnzp2L1loN165d0zxtBO+oKmLWsUTwjVbqL774wnH16yxZsmRaagit2kRERJQ40AHRUydE8h5zpilW6JiAUnibNm1ymY/HNWvW9FihY//+/bJv3z7H1LNnTylWrJj+u1q1ah7/DoJtPJ87d27uESIiokRy+fJlWbBggbzyyity8eJFnffjjz/KqVOnuA+8xJZpG7px44bWjUTeE1qQ3Uc4Onr0aLw+D3nKHTp0kMqVK2tljvnz52tZPATJZi4zvnRLlizRFmZ0aHDP20bJO+f5SANBmgfyo5GGgtQOBNMsgE9ERKGeM407qbhrizrTVq41/fPPP0v9+vW1U//x48e1aleWLFlk9erV8ueff+rvOsWNwbQN4cuA6h0IgNHS62uetKlt27Zy4cIFGTNmjNaCRlC8fv16rcQBmBdXzWlPV8Ldu3fX9BF8idFJEjUtq1at6teyEhERJcagLbgTa3VoLOvcubNMnjxZ0qdP75iPsSTQ/4m8E2bg/jrZSqZMmeSzzz7TTn12hhZtBOL1yg+R5OHW6pj4T6WMYlX/NrZmfe+cGa6JVUWJfxfEwRIe5npXzEruz3BBrOi13F+IFV27FiVFS/ytg30FOkg1fyseGDJewv0cGCzy1i05MvGVBFnOYMB2QUoHihUgmEZFrcKFC2urNNIzOSqxd9gybUOZM2fW2zRERETkhM2HLpCC6WkAtIMHD0r27Nl56HiJHRBtaOzYsTJixAi5efNmsBeFiIiIQlSrVq00hfPu3bv6GGmhSNvEWBGoP03eYcu0DU2ZMkULsKN0XcGCBXVYUGe4pUNERJSkcNCWaN544w1p2rSpFgr4999/tbY0+jKh2ABGUSbvMJi2odatWwd7EYiIiEIKB22JDnnf27Ztk6+//lob2lD9CwOoocIHeY/BtA2NHDky2ItAREREIe7XX3+VUqVK6WBq7gOqbdiwQRo3bhy0ZbMS5kwTERFR0knz8HeyEYwfMWvWLJd5t2/f1hGMH3300aAtl9WwZdqGMHBKbLWlIyMjE3V5iIiIgo1pHtF98MEHOuYDxo545513NF/arC+9ffv2RN9HVsVg2oYwcpEz9NLdu3evvPvuuzryIBEREfnOLiMgPvbYYzoacadOnXRANoyg/Oyzz2ohg9SpUwd78SyDwbRNS924e/zxxzUvavny5dK1a9egLBcREZEdqnnYZQRE8271nTt39L+YcuXKJRER1hoILdiYM52EVKtWTb788stgLwYREVHiY850NB9++KGULVtWR0I8dOiQjp48f/58qV27thw9epRHqZcYTCcRqB+JTgZ58+YN9qIQERFRCMCd6vHjx8vatWt1xMMGDRrI/v375b777pPy5csHe/Esg2keNh1O3LkDomEYcu3aNUmTJo28//77QV02IiKiYGAHxOhQW7pYsWLRYogVK1bIe++9l2j7xuoYTNvQ9OnTo1X3wBUn0jzwJbGb8+UzSHjKVGIlye5Zt75SlBFzpZhQliLculVsLtxMG+xFSHIupUojVnTTsOa5JVGWmyMgRuMeSDvr0KFDwu4PG2EwbUPolUtERETkScmSJXXkwyxZsuhjlMfD8OFoeINz585JwYIF5ebNm9yAXmAwbVOXL1+WnTt36hcCw4M669ixY9CWi4iIKCjYMu3w+++/y71791w6Ig4ZMsQRTCM99NatW8HYS5bEYNqGPv30U3nmmWe0XmT69Old8qfxbwbTRESU1DBnOmYInqNtr1gGfyNXrOZhQ4MGDZIuXbpop0O0UF+6dMkxXbx4MdiLR0RERGQbbJm2oVOnTkm/fv20egcRERExzcO91dm95Zkt0b5jMG1DjRo1kt27d0vhwoWDvShEREQhgWkermkdjzzyiCRPntwxFkWLFi0kZcqU+tg5n5rixmDaJlBw3dSsWTMZPHiwHDhwQMqUKSMpUqRweW3Lli2DsIREREQUCkaOHOnyuFWrVtFe06ZNm0RcImtjMG0TrVu3jjZvzJgx0ebhNk5kpHXr7RIREQW7mkeVKlUkPDxc+vTpo5PVg2nyD4Npm3Avf0dEREQJE0zv2rVLMmTIwM1LitU8iIiIiIh8xGDaRr7++msd1ejq1avRnrty5YqUKlVKtmzZEpRlIyIiCqawAE1E7hhM28j06dPlueee83jrKWPGjNKjRw+ZNm1aUJaNiIgoJNI8/J2I3DCYtpGffvpJGjduHOPzDRs2lD179iTqMhERERHZGTsg2sjff/8drQyeM9ST/OeffxJ1mYiIiEIB60z/Z+bMmV5vMwwAR3FjMG0j9913n+zfv18eeOABj8///PPPkjt3bp8+e86cOfL666/LmTNnNPcaKSW1a9f2+Npt27bJyy+/LL///rvcvHlTChQooCkmAwYMcLxm8eLF8uyzz0Z7LwrHp0qVyqdlJCIiSoxqHlbmbbonSukymPYOg2kbadq0qYwYMUKaNGkSLSBFkIq6ks2bN4/35y5fvlz69++vAXWtWrVk3rx5+jcwKEz+/PmjvT5t2rTSt29fKVu2rP4bwTWCafy7e/fujtcht/vgwYMu72UgTURElHCOHTvGzRtgDKZt5NVXX5VVq1ZJ0aJFNZgtVqyYXln+9ttvMnv2bB2sZdiwYfH+3KlTp0rXrl2lW7du+hit0hs3bpS5c+fKhAkTor2+QoUKOpkKFiyoy7V161aXYBrLlitXLp/Xl4iIKKm1LFPoYTBtIzlz5pQdO3ZIr169ZOjQoWIYhiNobdSokbYs4zXxcefOHe20OGTIkGidGfG3vLF371597WuvveYy//r165oCgiC/fPnyMnbsWJcg3N3t27d1MnkqAUhEROQJc6Y9++uvv2Tt2rVy4sQJ/c13b0yjuDGYthkEp+vXr5dLly7JkSNHNKAuUqSIZM6c2afPO3/+vAa77kE4Hp89ezbW9+bNm1c7PN67d09GjRrlaNmG4sWLa950mTJlNCieMWOGppCgIgmW1xO0go8ePdqn9SAiIiJXX331lbRs2VIKFSqkaZelS5eW48ePa+xQsWJFbi4vsTSeTSF4rlKlilStWtXnQNoZWred4YvmPs8d0jp2794tb731lqaGLFu2zPFc9erVpX379lKuXDntyLhixQpNT5k1a1aMn4fWdgw+Y04nT570e72IiCiJYJ1pj7+rgwYNkl9++UX7LH388cf621qnTh154okngrGXLIkt0xSrbNmySXh4eLRW6HPnzsWZMoIrXUDrM8r2oXX66aef9vjaZMmSafB/+PDhGD8vIiJCJyIiovhimkd06FNlNnShfC6KFaRLl07GjBkjrVq10rRRihtbpilWKVOmlEqVKsmmTZtc5uNxzZo1vd56aMl2znf29Py+fft8Lt1HRERE8YMqW+Zvc548eeSPP/5wSfMk77BlmuI0cOBA6dChg1SuXFlq1Kgh8+fP144KPXv2dNwmOnXqlCxZskQfo3IISuYhLxpQGu+NN96Q559/3vGZyH1Gqgfyo5EzjSLyCKbxXiIiooBjnelo8Du8fft2KVmypDRr1kxTPjBeBSpw4TnyDoNpilPbtm3lwoULetsHg7aggwI6OaKzI2AegmtTVFSUBtioZYnbRvfff79MnDhRa02bLl++rGXykD6SMWNGreKxZcsWzfEmIiIK5TQPpCUiBbJPnz46WRWqdaCyFiAVE//G2BIY/M3bwV0Ix4VZP43IYtCijUC8bOfxEp7SWqMmJrtn3a/dtWb/nXitJn+WS2JVF26mDfYiJDmFMl0UK3o9/2qxomvXoqR8yXPauRwDeiXIb0UX/38rIu/ckp8XvZIgy0nWxZxpIiIisj9W84imcOHCeufZHe4e4znyDtM8iIiIyP6YMx0NakpjLAl36JSIvlDkHQbTREREREkIRjw0bdy4UdNgTAiuMZhLwYIFg7R01sNgmoiIiGyPdab/X+vWrf/bJmFh0qlTJ5ftlCJFCg2kp0yZksh7yLoYTBMREZH9Mc3DpeqWObjarl27dIA28h2DaSIiIqIkCCVsyX+s5kFERES2F2YYAZns5ttvv5UWLVpobWkMpNayZUvZunVrsBfLUhhMExERkf2xNF4077//vtSvX1/SpEkj/fr1k759+0rq1KnlkUcekaVLlwZjL1kS0zyIiIiIkqBx48bJ5MmTZcCAAY55L7zwgo6MOHbsWGnXrl1Ql88q2DJNRERESaaah7+TnRw9elRTPNwh1YP51N5jME1ERET2xzSPaPLly6c1pd1hHp4j7zDNg4iIiCgJ6dKli8yYMUMGDRqkudL79u2TmjVrat3pbdu2yeLFi/V58g6DabK8bD9dleThd8RKLpZJL1Z17264WNHRs9nFqpKF/1cTlhLP5dSpLLm5Cya35rnlanIMaX0uQf8GB235f++++65MnDhRevXqJbly5dIBWlasWKHPlShRQpYvXy6tWrVK0P1hJwymiYiIyP44aMv/bwqnEn+PPvqoTuQ75kwTERERJTFI6aDAYMs0ERER2R7TPFwVLVo0zoD64sWLCbpP7ILBNBEREdkf0zxcjB49WjJmzBisvWErDKaJiIiIkpinnnpKcuTIEezFsAUG00RERJQk2G3QFV8xXzqwGEwTERGR/aGChVMVC58/w2bVPMh/DKaJiIiIkpCoKNauDySWxiMiIqIkU83D3wmqVKkiJUuWlNmzZwd7tSgEsGWaiIiI7C+A1Tx27dolGTJkCMRSkQ2wZZqIiIiIyEdsmSYiIiLbC4v6b/L3M4jcMZgmIiIi++OgLZRAmOZBREREROQjtkwTERGR7TlX4/DnM4jcsWWavDJnzhwpVKiQpEqVSipVqiRbt26N8bWrVq2SBg0aSPbs2bW3c40aNWTjxo0ur1m8eLGOwOQ+3bp1i3uEiIgSbtAWfyciNwymKU7Lly+X/v37y7Bhw2Tv3r1Su3ZtadKkiZw4ccLj67ds2aLB9Pr162XPnj1St25dadGihb7XGQLtM2fOuEwI1omIiIisgmkeFKepU6dK165dpVu3bvp4+vTp2tI8d+5cmTBhQrTX43ln48ePl08++UQ+/fRTqVChgmM+WqJz5crl9R64ffu2TqarV69y7xERkVeY5kEJhS3TFKs7d+5o63LDhg1d5uPxjh07vB629Nq1a5IlSxaX+devX5cCBQpI3rx5pXnz5tFart0hcM+YMaNjypcvH/ceERHFr5qHvxORGwbTFKvz589LZGSk5MyZ02U+Hp89e9arrTdlyhS5ceOGPPnkk455xYsX17zptWvXyrJlyzS9o1atWnL48OEYP2fo0KFy5coVx3Ty5EnuPSIiIgoqpnmQV5CS4cwwjGjzPEGgPGrUKE3zyJEjh2N+9erVdTIhkK5YsaLMmjVLZs6c6fGzIiIidCIiIoovpnlQQmEwTbHKli2bhIeHR2uFPnfuXLTWak8dF5FrvXLlSqlfv36sr02WLJlUqVIl1pZpIiIinwWiGgereZAHTPOgWKVMmVJL4W3atMllPh7XrFkz1hbpzp07y9KlS6VZs2ZxbmW0dO/bt09y587NPUJERESWwZZpitPAgQOlQ4cOUrlyZa0ZPX/+fC2L17NnT0cu86lTp2TJkiWOQLpjx44yY8YMTeUwW7VTp06tHQdh9OjR+lyRIkW0KgdSOxBMz549m3uEiIgCjmkelFAYTFOc2rZtKxcuXJAxY8ZoLejSpUtrDWlU4gDMc645PW/ePLl375706dNHJ1OnTp200yFcvnxZunfvroE2AmyUzEN96qpVq3KPEBFR4AWiGgereZAHYQburxNZEFq0EYjXqzBEkodba7CXi2XSi1VdbPSvWJIRd4fZUJUsPCrYi5Dk5M92UaxoU4l1YkVXr0VK5qJHtVITBvRKiN+KGo3HSPIU/v1W3Lt7S77bMCJBlpOsiy3TREREZHtM86CEwmCaiIiI7C/K+G/y9zOI3LCaBxERERGRj9gyTURERPbHDoiUQBhMExERke2F/S9v2t/PIHLHNA8iIiIiIh+xZZqIiIjsj8OJUwJhyzQRERERkY/YMk1ERES2xzrTlFAYTBMREZH9sZoHJRCmeRARERER+Ygt00RERGR7YYahk7+fQeSOwTRZH4Z3DYsK9lIkGZGXI8SKwjPdFquKvGvNm4iZM98Qq6qQ5ZRY0R/3rosVXb+XCOdw/Al//wx/asgDa56hiYiIiIhCAFumiYiIyPaY5kEJhcE0ERER2R+reVACYZoHEREREZGPGEwTERFR0hlO3N8pxJw8eVIefvhhKVmypJQtW1ZWrlwZ7EVKcpjmQURERLZn1xEQkydPLtOnT5fy5cvLuXPnpGLFitK0aVNJmzZtsBctyWAwTURERGRRuXPn1gly5MghWbJkkYsXLzKYTkRM8yAiIiL7C1Kax5YtW6RFixaSJ08eCQsLkzVr1kR7zZw5c6RQoUKSKlUqqVSpkmzdutWnVdy9e7dERUVJvnz5fHo/+YYt00RERGR7GNvL3/G9zPdfvXrVZX5ERIROnty4cUPKlSsnzz77rLRp0yba88uXL5f+/ftrQF2rVi2ZN2+eNGnSRA4cOCD58+fX1yDAvn07+sBTX3zxhQbpcOHCBenYsaMsWLDAv5WkeGMwTURERBQP7i2/I0eOlFGjRnl8LQJjTDGZOnWqdO3aVbp166aPkf+8ceNGmTt3rkyYMEHn7dmzJ9blQaD96KOPytChQ6VmzZrcl4mMwTQRERHZXyCqcfzv/aigkSFDBsfsmFql43Lnzh0NlIcMGeIyv2HDhrJjxw4vF8mQzp07S7169aRDhw4+LQf5hznTRERElHQGbfF3EtFA2nnyNZg+f/68REZGSs6cOV3m4/HZs2e9+ozt27drqghysVHRA9P+/ft9Wh7yDVumiYiIiIIIHRPdW5vd58XkwQcf1E6HFDwMpomIiMj2whCg+pnm4e/73WXLlk3Cw8OjtUKjXrR7azWFLqZ5kFfiU7bnzJkz0q5dOylWrJgkS5ZMeym7W7x4sV51u0+3bt3iHiEioiQxAmLKlCn1N3XTpk0u8/GYHQmtg8E0xcks2zNs2DDZu3ev1K5dW3smnzhxIsZexdmzZ9fXoxxQTJBnhsDbeUKwTkREFMqqVKmiw3fPnj07ztdev35d9u3bpxMcO3ZM/23+hg4cOFDL2S1atEh+++03GTBggD7Xs2fPBF8PCgymeVCcvCnb46xgwYIyY8YM/TdODjFBS3SuXLm4B4iIKOGhUdnf1OL/NUzv2rXLpZpHXAOp1K1b1/EYwTN06tRJ79K2bdtWa0SPGTNGG5VKly4t69evlwIFCvi5sJRYGExTgpftie1qHScL9GRG7+OxY8dKhQoVYnw9Wrydi9a7F80nIiIKtZzphx9+WDsUxqZ37946kTUxzYMSvGyPJ8WLF9cr8rVr18qyZcs0vQMjPx0+fDjG96AVPGPGjI6Jw6USERFRsDGYpgQv2+NJ9erVpX379ppTjRzsFStWSNGiRWXWrFkxvgcjO125csUxoWg+ERGRV7ROtL8dELmtKTqmeVBIlO1B1Q906IitZRpF8X0tjE9ERElcAEdAJHLGlmkKibI9aOlG7+bcuXNzjxAREZFlsGWa4oSexx06dJDKlStLjRo1ZP78+S5le5B+cerUKVmyZInjPWYJIHQy/Oeff/QxAnOUEoLRo0drqkeRIkW0I+HMmTP1Nd6UGSIiIoo3VPIIC8Bn/K80Hu7a9unTRydK2hhMU5ziKtuDee41p52rcqAayNKlS/X1x48f13mXL1+W7t27a/oIOhPi9Vu2bJGqVatyjxARUUhX84hPaTyyPwbT5JXYyvagKoe7uMoATZs2TSciIiIiK2MwTURERPbHDoiUQBhMExERkf0xmKYEwmoeREREREQ+Yss0ERER2R9bpimBMJgmIiIi+wtgaTwiZ0zzICIiIooH1JnGuAkcG4GALdNERERke6wzTQmFwTQRERHZH3OmKYEwzYOIiIiIyEdsmSYiIiL7izKQ6+H/ZxC5YTBNRERE9sc0D0ogTPMgIiIiIvIRW6bJ+gJROzSRhVm4VmmGg+FiSUYasSrDos0e/6ZOLVa1rmKEWFGXLNvEiu4aiXESN/5rnfb3M4jcWPQUTURERORDmoe/E+tMkxu2TBMRERHFw65duyRDhgzcZqQYTBMREZH9aSUOVvOgwGMwTURERPZnRP03+fsZRG6YM01ERERE5CO2TBMREZH9sc40JRAG00RERGR/zJmmBMI0DyIiIiIiH7FlmoiIiOyPaR6UQBhMExERkf1pZTw/S+NxAETygGkeREREREQ+YjBNRERE9sfhxCmBMM2DiIiI7C8KA65EBeAzOJw4uWLLNBERERGRj9gyTURERPbHah6UQNgyTV6ZM2eOFCpUSFKlSiWVKlWSrVu3xvr6b7/9Vl+H1xcuXFjeeustl+cXL14sYWFh0aZbt25xjxARUUjnTBM5YzBNcVq+fLn0799fhg0bJnv37pXatWtLkyZN5MSJEx5ff+zYMWnatKm+Dq9/5ZVXpF+/fvLxxx+7vC5Dhgxy5swZlwnBNxEREZFVMM2D4jR16lTp2rWrdOvWTR9Pnz5dNm7cKHPnzpUJEyZEez1aofPnz6+vgxIlSsju3bvljTfekDZt2jheh5boXLlyeb0Hbt++rZPp6tWr3HtEROQdDidOCYQt0xSrO3fuyJ49e6Rhw4Yu8/F4x44dHt/z3XffRXt9o0aNNKC+e/euY97169elQIECkjdvXmnevLm2YscGgXvGjBkdU758+bj3iIjIK4YRFZCJyB2DaYrV+fPnJTIyUnLmzOkyH4/Pnj3r8T2Y7+n19+7d08+D4sWLa9702rVrZdmyZZreUatWLTl8+HCMyzJ06FC5cuWKYzp58iT3HhEREQUV0zzIK0jJcGYYRrR5cb3eeX716tV1MiGQrlixosyaNUtmzpzp8TMjIiJ0IiIiijf8Dmmqhx/YAZE8YDBNscqWLZuEh4dHa4U+d+5ctNZnE/KgPb0+efLkkjVrVo/vSZYsmVSpUiXWlmkiIiL/AmEG0xR4TPOgWKVMmVJL3G3atMllPh7XrFnT43tq1KgR7fVffPGFVK5cWVKkSOHxPWi53rdvn+TOnZt7hIiIiCyDLdMUp4EDB0qHDh00GEagPH/+fC2L17NnT0cu86lTp2TJkiX6GPPffPNNfd9zzz2nHRIXLlyoudGm0aNHa5pHkSJFtCoHUjsQTM+ePZt7hIiIAg9DgYf52YGQHRDJAwbTFKe2bdvKhQsXZMyYMVoLunTp0rJ+/XqtxAGY51xzGoO74PkBAwZocJwnTx4Nlp3L4l2+fFm6d++u6SCozFGhQgXZsmWLVK1alXuEiIhCOs0DaYlIgezTp49OlLSFGWbPMCKLQYs2AvF6ZV6W5OHW6ph4qVxGsapbWWLueBrSLHymMyyakBeZWiwrquI1saJVVeaJFV2/FiXVSp3VSk0Y0CshfiseSddOkoel9Ouz7hl35KvrSxNkOcm62DJNREREtmdERYnhZ5oH60yTJwymiYiIyP5YzYMSiEVvHhIRERERBR9bpomIiMj+MGBLGOtMU+AxmCYiIqIkkubhb2k8C/dkpgTDNA8iIiIiIh+xZZqIiIhsz4gyxPAzzYPVhMkTBtNERERkfzp6IUdApMBjmgcRERERkY/YMk1ERES2xzQPSigMpomIiMj+mOZBCYTBNFmW2RHkXuRtsZrIO7fEqiJvh4klWbiilWHRhLxIiy43RN205nf0+jU/c4KD5Pr1qATv4HdP7vp9HtDPIHITZrBrKlnUX3/9Jfny5Qv2YhARUYCcPHlS8ubNG9DteevWLSlUqJCcPXs2IJ+XK1cuOXbsmKRKlSogn0fWx2CaLCsqKkpOnz4t6dOnl7CwwLaWXr16VQN1nNgzZMggVmHV5bbyslt1ua287FZdbisve0IvN9r1rl27Jnny5JFkyQJ/SwMB9Z07dwLyWSlTpmQgTS6Y5kGWhRNuoFsw3OFHw0o/eFZfbisvu1WX28rLbtXltvKyJ+RyZ8yYURIKWpHZkkwJxcIZbUREREREwcVgmoiIiIjIRwymiTyIiIiQkSNH6n+txKrLbeVlt+pyW3nZrbrcVl52qy43UWJgB0QiIiIiIh+xZZqIiIiIyEcMpomIiIiIfMRgmoiIiIjIRwymiYiIiIh8xGCaiIiIiMhHDKaJiMjrIZ+JiMgVg2mi/4mMjLTltrB6ABQVFRXsRaD/CQsLs9V3wurfDU/suE5EoS55sBeAKBQcOnRIPv30U2nXrp3kzp1brOjgwYMyb948OX36tJQvX14aNmwoFStW1AAIP7BWCoRu3LghKVOmlHv37knq1KnF6vbu3StXr16V69evS7NmzcSKNm7cKNu3b9djqVy5cvL444+LVd28eVPSpk0rd+/e1eMMF2zJklmzbenMmTNy69YtyZgxo2TJkkW/51Zcnx9//FFOnToladKkkcKFC0uhQoV0vtXOXZQ0WevbRpQAjhw5IjVq1JDBgwfLrFmz5Pz585bbzgcOHJBq1arJ4cOHJUWKFDJjxgzp37+/TJ06VZ83A2or+OWXX6Rp06ZSq1YtKVWqlMyZM0f3kVW9/fbbuj5du3aVjh07SqVKleTzzz/XCwareOedd6RNmzayZ88e2bx5szz11FPSoUMHvQi1mg8//FCefvppqV69unTu3Fl27txpucDTeb/g2KpSpYo0b95cevToofOttj4LFy6UBg0ayPDhw+Wxxx7T/TNz5kzLnbsoCTOIkrDr168bXbp0MTp37my8+eabRlhYmDF48GDjn3/+Mazizp07RseOHY2uXbs65v35559Gz549jYoVKxqvvfaaY35UVJQRyo4ePWpkzpzZ6Nu3r7F48WJj6NChxn333We0a9fO2LJli2E1O3bsMLJmzWqsWrVK1+3EiRNG/fr1jeLFixtz5swxrl27ZoS648ePGw888IDxzjvv6OO7d+8a27ZtM7Jly2Y0btzY+PXXXw2rWLZsmZEqVSpjwoQJRv/+/Y1HH33USJEihTFv3jz9HlnJp59+aqRJk8ZYtGiR8dlnnxmTJ082ChYsaFStWtU4f/68viYyMtIIdT/++KN+R5YsWWLcuHHD2LVrl/HSSy8Z6dOnN0aMGGGZcxclbQymKUm7efOmMXv2bOPDDz/Ux8uXL7dkQN2gQQO9KHD+0Tl9+rQGDNWrVzfef/99wwqmTp1q1K5d22UeAtFatWoZjz32mPHDDz8YVrJixQqjdOnSxoULF1zmd+rUyShZsqSxdOnSkA8SEEwXKlTI+O677/TxvXv39L+HDh0ysmfPrvvFnBfKECy3aNHCePnllx3z/v33X2Ps2LFGeHi4XkxDqO8P08iRI42nnnrK8Rj7YO/evXq8Va5c2bEeob4+a9eu1WVGw4YJ595p06bphc+kSZOCunxE3rDWvSCiAEM+bqdOnaRt27b6+Mknn5Rly5bJG2+8IZMmTZILFy7ofOQgHjt2LCQ7TSLvM2/evHLp0iXNnTSXF7nfAwYMkMyZM8uKFSvECrDcly9flmvXrjk6Hj766KMydOhQ+fPPP+X999/XfFer3PbFumC/IA8U/v33X/3v4sWLpWjRojJmzBhd11CGtKG///5b02/MFAIcc0WKFJFNmzZpX4PZs2dLqEP+PY4h5BYDjqGIiAh59dVXZezYsfLCCy/o+lglreD48ePaT8IUHh6ufSVw/sIxh3QJCPV843Tp0snJkyfl119/dczLli2bnpexb5ACsmXLlqAuI1GcvAq5iZIAtOyYrTi4HWy2UJ86dcoYMGCAtsDhNmQocG8J/Oabb7R1bcaMGY555i3enTt36rqg1SrU4Q4BWqN2796tj2/fvu147t133zVSpkzpeC4UubcC4nY7Wm979erlmHfr1i1HugRSWMaNG2eEuiFDhhhFihQxvv76a8c8c98MHDhQ74zgLk+opRW474/nnnvOKFOmjHHu3Dl97Ly83bp1M8qVK2dcvHjRCEXmupjLvG7dOqNo0aLGypUro50bcIcNrb1IoQh1hw8f1tSUQYMGOfaL6ciRI7pPzLsGRKGKLdNETi07gBZRdLBCC8/06dOlXr162jERnWPMFsZgQqcvLBd68Zvq1KmjLeloiV6wYIFLJyS0/JQsWTIklj0uuEOAKiRojT537pxWWrh9+7Y+h857DzzwgHz11VcSqtB59eLFi3Lnzh19nDVrVpk4caKsXbtWRo8erfPQGopWUrR+onXafG0oVR759ttv5bPPPnPMQ5WbYsWKaQuu2UqIfQMZMmRwVF0JtY5v7q2yOK7wPZg8ebK23mJ5zZKYTZo00f2HqiuhyPwemHds8J0uUKCAvPfee1plxfk8hg6JuJMWinfTcN7Ccpl3/fCdxvH11ltvyZIlS/Rujun+++/Xu2779+8P4hITxY2l8Yg8/Pgi0EFgN3/+fNm3b5+WbSpTpkzIVB5BIIAfo4EDB+otUejVq5dWiOjevbveAkbggB9b/EAhvcC8vR2qpfzq168vlStXlmnTpumPK6otIKjLly+fvh4pLChnZq5vqHn33Xd12bGtEfi88sorWmEB64L0AqR2oDTe66+/rgEPjjU8TpUqlYRS5ZERI0bodsYxhuNnwoQJ0qhRI3nxxRf1wgDH3LBhw6Rly5Ya+OzYscOxj0K1lF/ZsmXliSee0IAZ1TvWrFmjFwNI7ciRI4e+HuXYcGFgpuKEEqRpffTRR3qhhuVE5SGk2WB/4PjCMYV0ocaNG+vr8V3HxU+oXUCj+giqdCCtAxeSuCDAxT/2A44lfGdwDkM1D6zflStX9DyHyj5EIS3YTeNEoQi3SpHagfSIn376yQjlyiPOt0ZxCxi94nPlymXkyZNHq0YglSDUbveiAkTGjBmN5s2bG+3bt9flffDBB43p06fr87/88ot2RMRrUPUCHSjRcSxLlix66zcUO1GlTp1a9wtuvyP1AZ320NHw4MGDmh6EzpWZMmXSzmFPPPGEdqosUaKEpnuEcuURpHeg2oWZMtS9e3c99lDho1ixYnob3qyEESqd3VDhIm3atEbTpk11OyMFCp31/vrrL31+2LBhmlqAaiTbt2/XSjH490MPPRRyqSoffPCBpj6hsgW+//Xq1TPSpUunqRyA6hfoZFylShWt6PP2228bDz/8sO6XUOoYGlP1kUqVKjlSayZOnKjHG5a9UaNGRrVq1TRdJVS+I0QxYTBN5AF+hBYsWBBSecaxVR5xzzU8duyY8e233xobNmxwBBBWKOVXvnx5/UEFBKCoRoILAgRtNWrUCLmLAjN4xLIjcHaG0n4I2J555hndH4DAGnm7eD0uDswgIRSCntgqj2D7m8EbKmAggEOpvI8//tix7KES8MRWyg8XBzjWzBx8BNsItJFHjUDavCgIlYAa2/qRRx7Ryh2mK1euGM8//7z2HzCr9Bw4cECDUwShCLYff/xxx7qEwrEVV/URfO9Nmzdv1ovSHj16aAlD87gKleOLyBMG00QxCJVWNmfO5aMAgTUC6hdffNFRyg8/OmbAYMVSfghA0RpnQgfQS5cuGZcvXzZCFS4MWrVqFe1H/7333tNgYcyYMTEGaKESJMyfP1/vYiCAMy/eTK1bt9bOblevXvX43lAJ2Lwp5deyZctod0lwwWnun1DZH4A65LiQmTt3brRzEr4ruBuCCxsT1sHs4Bpq64KLsgoVKkSbv3//fuP+++/XsoUxCaX1IPIktHqLEIWQUCwphVxWQKcpM6976dKlMmXKFO1Uhfzjl156STsiIvcw1Ep8eVPKD532li9f7ngP5mfKlCnkcr6doRMVOuZhOOTkyZM7Oou1b99ennnmGS21+M8//3h8L14fDO7HBkqpoTMkcqIBHQrN9Vi5cqUeT+iIG1vnXSuU8sPok+jAa0Le7n333aevw3EYrP3hCToPYxRQlIRELjfOSWaHSeRJIwccI52iXCRgHdDB1dy/wVwX8/gyO0wiZx3HEHK/nZUoUULGjx+vnRLRN8X5vaZQ2idEnjCYJrJp5REE3qFyQWAGAFhuBDuoIYsKF+jgiWU0A5n8+fNr1QvULkbHTwiVdYhpnWDIkCHaoQpDOyNwQ0BjBqJ9+vTRjmC7d++WUGKHyiOe5MmTR/r166cXlxj6HMcPjjkse7ly5eT555+X9evXa3BqBnqmUKtGAuhgiGMJ64NlxncIxx4CzFatWukFtKcKJMH+3vhSfQQdp0Nh2YniK/TOHETkFfzgmANMoIW6du3a2vqJ1h1UxwgVdivl9/HHH0vXrl3lkUce0dZBVIeAOXPmaMBWrVo1rUJgthCiGkH69Ol1CqXKIw0aNNDKMAiScVGDoAyBG9YNlUdQMcL5AijUKo/YsZQfyj7ie4Hpyy+/1HmomvLQQw/pRQ6qxaBqh3kxjdJxWI9Qq0CC6iMoZYkKPb1795bDhw9LoUKF9GINVXzwvdmwYYPj9aFafYTIax6TP4jIMkKx8ojzgAyowIFlGzp0qMsQ7ehgOHr0aH0O1RUwGAuexwAhhQsXNs6ePWuEGlRKQWUFdCBEBynkGNetW1c7q8L333+vnalQnWTKlCmah9ykSROtWBAqecV2qDxiwvbFtkbOLY4z5OSi0605kBEqdGDbo0IJtj8G0WnYsKF2gA01CxcuNNKnT6+VOLDM+F706dNHK11ggJy+fftqfwLsD3Q4RK401g8dFEOpf4ddqo8QxQeDaSKLC8XKI3Yr5YdgBVUuUPHBeTS2n3/+WdcRQZxZPg6dxhBsYx6CojZt2oREZQU7VR6xWyk/XHQWKFDAUZ0DnUDXrFmj5f1QmQMXAVhmVPMxS/2VKlVK/x1KFUjsVH2EKD4YTBPZQKgEBXYs5ee8PgjIEAQ4Q91rDEWNwObzzz93zEeLIi4ozH0TKq26dqg8YqdSfuaFC+4OmBfE5jGDCwYE1LggBXO/4C4OjrtQq0Bip+ojRPHBYJqIEoxdSvkhKEBpPrSi9evXTx8jEDCDBQwyg5QItOI6v8fTv4MNdbwzZ87suGhxDmZQ1zdDhgwhmWJj11J+ZjCdPHlybY02l88MLL/88kv9zuBix5NQaJF29thjj+mFpbk/nC9ezOeQSuQulL4jRPHFYJqIEhx+UM0fy2XLljlaqFFDGvne+JF1bsUNVbhNnSxZMkdrO5bXXGakqyA39MyZM0Yoct62GACnbNmyjlvrZkCN4BMpN8ilDnVokc6RI4fRq1cvxzxzPRC4IdAeN26cEeqc02+QurFnzx5HkGwG1LibgAsE5E6HWvDsvh5o/Uc+9KhRo6IF1BgoBy3wofodIfJVaHVlJiJbslopv5igZvSgQYO0UsHq1asdFVXMigSomRuqFQnMyi8wdepU3RdWqDziCZY9S5YsMmHCBC2jaOVSfubxg2ML9a5fffVV+emnn7TSiPm9wbGFdUFFklCrQOK+Hs2bN5eaNWvKunXrLFN9hMhfofmtJCLbsUopv7gg2OnVq5cOQoFgDqXX/vzzT5k9e7Zkzpw5pANRM+CpWrWqlvJDYFa8eHENrt9++20tY4bScbVq1ZJQZgaUCNxQyg+l/qxSyi8mDz74oK4LgmbsBxxX2F+oIf3zzz9roB3qcJGDgB8l8FA7GuX8sE6//fab1ll/7bXXdBCmggULBntRiQIqDM3Tgf1IIqKYYcAJBD5omcbALGXLlrXk5nrzzTd1ZEMEbTlz5tT62Nu2bdNADkFFqLYgOsMolLg4+O6773R5EeTgrgHWAfsplEY2jAnql3/44YdaUxotn6hnjJrZGJAGQagVRs/Dz7B5oYP6y0uWLNF1Kl26tLa0Yx327Nmj+8X5taHIPPYxaMvChQt1hNbvv/9eL9owkikG0rHSd4TIGwymiShRIUjDoCCVKlWyVIu0J0ePHtU0CbQmoiUOwYEZ/FgJgmq0KCJFBYGa1dYBo05iBD1c3OACAGkRaAXFOljlosA5SMaw2zt27NDBTnCnA4PQYB2CvV+8DeTNQNl8PS4EEEjjQseq3xGi2DCYJqJEF4qta7du3fI6LSCm5Q92axuWC4GlOdpfXMtkrofz+gR7Hdz5szyhGLTFdux72h8mq1wUxMUu60HkjME0ESV5H330kXb66tu3r6ZseMsMeswAIZgXCRjCedWqVdpCW7duXWnatKkOQ+1tQB1KwQ7SNLAM6FCIFk1vA1FMZouo+e9QGO4cec9IB2rWrJljvrfHSqhceG7cuFG2b9+uy1OuXDl5/PHHvXqf+/KHyvoQBVLwzzREREG0Zs0aefLJJ2XcuHGax33+/Hmv3uccFJw4cUL/G6wg4YMPPpBOnTpp5y5USMHFwbBhw2Ty5Mn6PIJKBNSxrQO2A/KPgx1IIwWofv362gmySJEiug4HDhyIVpHEEzN4xutCIZBGp05c1KATHirAILXp888/1zSO2NbFeb63x2NCeuedd6RNmzaaroGcZ1Tk6dChgxw6dCjW9zkfX8hfv3z5MgNpsiefi+oREVkc6lxjNECM+rdo0SJH/WtzQBlvajbPmjXLSJEihX5WsAaTadCggTFlyhSXESX79u1rVKxYMcZay87r8NZbbxmpUqUyNm/ebATTZ599ZqRJk0YHZPn66691gJn777/faNu2rbFly5YY3+e8LhgaHYPPhOpw58WLFzfmzJmjowXGtS5vv/228dRTT+lomsFy/PhxHfkTI0gCal9v27bNyJYtm9G4cWPj119/9eo7grrmhw4dSrTlJkpMDKaJKMnCQDEIJDGUufMIjbEF1M6j5+G9CJjMQVyCActTpkwZY/jw4S5BzOnTp3W0xpo1axofffRRrIE0Rj3EYBvBYi7PoEGDjMcff9zluU8++cR48MEHdWAfDKMd03sBw1inT5/e+PTTT41QHu68ZMmSxtKlS6MNUuT8eN68eXqBs3r1aiOYEExjoJXvvvvO5fhHYJw9e3bdL+Y8c/ndj6+MGTM6hncnsiMG00SUpJnDUZvMERox5Pn58+d13pUrV3TIcGdmEOoeqCYmjIaHoZmbN29udOzYUVsNzaHOzUCodu3a2roZWyAdzHVw9sILL2jrLZbR+aIFIzKWL19e9wnmm+vnKWgLlXWJa7hztFDjuArVCxwT7rjgbgFayc3lNEfO3Ldvn96VmTFjRsivB1FCYjBNRPS/wNR9yPOXXnpJb2M/8sgjRo8ePRzPI0jIlClT0AI39wuADRs26DDnb775pmOeGXAidSJlypSaauBs5syZQV2HmALQiIgIY//+/foYw2ebFi5cqOtx8ODBaO9DK26wLwrcW5lxIYaWW2+GO3dvXQ+liwIYMmSIUaRIEU29MZn7ZuDAgZpmhIsF56HOQ3E9iBIKg2kiov9xbtXFbenkyZNrQIBAwmyNQ3CKQDtYQcLKlSuNV1991Th79qzLfOQXI6BGQOps06ZNRoUKFVzSVnCBgJZRXDQEe3s7B8zQpEkTI3/+/Mbff/+tj83nEYhiPtIn3ANpBODBbv08d+6cpnS4XwAgaB41apRjHgJpHEt169Y1Ro4c6fIZ77//vqZ2BDMA/fHHH41vvvlG7waYfv75Z737gWU2U6JMWDfMd7Z27VojS5YseqwSJQUMpomInDi3EhYuXFjzdREAAYKgAwcOaAesYED+LAJ5TGgtdA6Qkf+NjpR4DrnHn3/+ufHbb78ZjRo1MurVq+eyXujQ5t5SndhwsYKOhVWrVtU7AAjgzFzcatWqGQULFtSOlCbkgBctWtRYv369Yx4C7meffTbogTQ6PZYrV06Xr0CBAhrgIz0CdxBGjBih64IUFTD3Q5UqVRwdJXEBh/SVSZMm6X4LFlyI5cqVSzt9IhjGRRjuegD2DzocVqpUSTtVYnnR+t6wYUNNMXKGizX3oJvIzlhnmojIzc2bN6VVq1Zaku3PP//UgT+CPQAIai/37t1by6vlzZtXy629+OKLOjR79uzZHa9bvny5DB8+XEdmzJo1q2TOnFm++eabkBrCGaX8unXrJj179tSBclauXCm5cuWSxx57TAYOHKjbvU+fPrJ7924ZNGiQjgK4adMmOXfunOzatculfB9Gb8Q6Bsunn34qbdu2lddff12HY//6669l9erVWuP7lVde0X01b948GTNmjDzwwAMehzs3S8gFc/9gSPkWLVpoOT+MTIrl6tKlix7/OM66d++u237BggX6Ggzdjv2A/Yf55vGF9WAdaUpqGEwTEbnBKIIIiB599FENEoIdSANqE7///vtSokQJDdQQND/99NMeA+qzZ89qTd9///1XB9gIlSGcETRiAJMnnnhCGjdurIEzHD9+XKZMmSLbtm3TdXrppZd08JhRo0ZpcAoFChSQd999V/cHnsM6BTNoMwPgXr166XZGfWwTlnPOnDlaJxvDmiPIRk3mUB7uHBc0CPi//fZbyZIli2N+586d5fvvv9fnUI8dI4X+8ssvOmXIkEEvOkNhqHOiYGIwTUQUi1AKEtyHPP/www+lXbt22no7ZMgQbYlGEI2Wz5IlSzpeFyot0oDgsUKFCtK6dWsN0MygFAPGTJw4UXbu3KkXCBgkBK5du6brjH2A14XS/gC0sGNgFQx647xsuPCZNGmSBqAYQMfT9g+ldUFr8+jRo+XIkSO6vXGBkDp1an0OF5W4W4A7BbhL4C5ULgiIgiU0zq5ERCEqVIIdMANpBMcIQjES3dKlS7VV1xwpEMM8z5o1y+V9oRJIY7lv376trcxIH0Awac7H6I1oqUbLM0ZwNKVLl07nmSMGhtL+AKRubNmyRU6dOqXLhvWD9u3byzPPPKOt0f/884/H9wZzXdxHX0SKzZ07dxx3CxBIm+uCVmvcGXE/rkwMpCmpC40zLBERec0MjhGEIqBGC/XUqVOlZs2aOrT5zJkzQ2prokXdXO40adJI3759teUWucTm0N9YFwTZaGFftWqVHDt2TN/jnMoRKrm4aIk1YXmLFi2qw4YjPSgiIsIRhCLvG+uLFt1Qg9Z05G0jgAbc1cCdgbVr12oLNWBdcMGDwBvraL6WiFwxmCYisiDnjl5IJcifP7+UKVNGW6fNPO9QgFbmcePGyd9//+2Y16hRIxk/frz069dP0wucLxBSpkwppUqV8phOEGwff/yxdvx85JFHtMMhUlIA+dEINKtVq6YdPxGEwoULF3Q9Qm1dkNPdoEEDqVGjhgbJ8+fP19QgpAxh/ZD/jTx8s9UZx9P169ddUoyI6P8xZ5qIyMJCsfKICXnESB+Al19+WXO7s2XLpo+RNoDW9JEjR2pqQf369bWjXv/+/bWF98svvwyZlmh47733tKIFOuShpXbdunUaiCKVAwHoDz/8oNVJ0PkTgSgCaHRiRQUSPBcqqRCBqD5CRK4YTBMRWVgoVh6xUyk/BM4ov4ftizsASN2A/fv3y/Tp02Xv3r0aRCPQRust1g/BM5YbweqyZcscFUiCGVDbrfoIUSgJ/hmXiIh8hkANQR6ESiANCMCaNGniKOWH3GGUvQPngBqtpHXq1AnJUn6AABSd8XBxgLsAJqTUoCUXecZLlizRNBuU+5s7d64G30hXwTqHSgUSs5UfF1/Y1mAuV6dOnTRARvURtMCj+oiZ/uEsFNaDKBQxZ5qIyCZCKdBJmzatBmkIpM2gGZVH0NqJyiPIJwYEdkghKF68uJbMMzsjhsq6oEUX+dAIlv/66y99bFZTwcAlSEtBh8NPPvnE8Z5MmTLp+odiBRK0Plux+ghRKGOaBxERJSjnkfHM2thonUawjU6ICPDQohvKMGpjx44d9YIAFwZmaTmsE1pzkdJy+PBhHckxFJlpHoCqL8hZR5UR3NlAQI1Ok6jpjRZpjHLYrFmzYC8ykWXwMpOIiBIUWpvNFl2U8sNjtIKio1uOHDnk888/D/k9gOX96aefNKBGCgdyqJ1TWpDOgrSOUGW2kuO/6Pj53HPPafWRzZs36/KHcvURolDHlmkiIkr01lGkSOTJk0eDuVCqQBIbDIU+YsQIefPNN2Xs2LFSq1YtrY2NzoewYcOGkKpAEhNc1Gzfvl0GDBig6R6hXH2EyAoYTBMRUaIJ5VJ+3kIwjdxiVO/ImTOnjtK4bdu2kKlA4i10lHz11Vflu+++C7nqI0RWwmCaiIgkqZfyi6+jR49qOT90TqxSpUpIVSCJr1CsPkJkJQymiYgoKEIlaMNw596O7uecquIsFFqksWy4WEFg7M1ymevivE6hsB5EVsNvDBERBUUoBNKehjuPjRl0mtU8kA7hPD9YVqxYoXW8a9euLUOGDNHyd2CWGvTEPZB2Xi8i8h6DaSIiSpIw3DkGvEEwjdEMz58/79X7nAPQEydOBD2YRtk+lBnMnTu31KtXTy8QMPAK6nnHFlA7rwe2xZkzZ5gnTeQDBtNERJTkYERDDKk9evRoWbhwoY7+h+AzroDaOQBFR8RixYrpZwUDlgV52xgOHBcE06ZNkwkTJsiXX34p5cuX16Hax48fr691T91wXg+UKESr9sGDB4OyHkRWF/x7bERERCE03PlLL70k2bJli/Ye5woXCEBHjRqlA7agxF8wIBhGJZGzZ886hghHkIyqHOZQ55999pkG/G3atIkxkMb6onX74YcfDsp6EFkdW6aJiCjJiW24c7RSm8Odo7b0r7/+qv92DqQRgOK/eF+wIHUDoxei1jXKDKJDpzkfKR8DBw7UZUbaR2yB9KJFi+Sxxx4L2noQWR1bpomIKEkyK3iYw51jdEbAcOdIizCHO3/ggQd0uHO8BgEoOvghAHVu7Q1G9REsI1rU+/btK02bNpWqVatKnz59dDmxTgiysawoQ3js2DEpVKiQI5CeNWuWDkATzPUgsgsG00RElKR5M9w5gtD169dLr169ZOXKlUELQNHKjGHNEUBjwBho1KiR5kYj8EdZPAwVbuZI43GpUqVchgjHgDlz5szRCwQG0kT+Y51pIiKiOIY7R/3mI0eOyMWLF3UY8WBAxQ0zHePll1+WQYMGOXK7b9y4IVOnTpWRI0dqekf9+vU1d7p///667OiUaK4bBmlBjjVaqonIfwymiYiIQny4c1QM6d27t1SqVEny5s0rXbt2lRdffFEGDx4s2bNnd7wOFTyGDx+uVT6yZs0qmTNnlm+++cZyQ50TWQnTPIiIiP4HQSfSJJBnHCqBdFzVR5wDanSIrFOnjrY8//vvv1KuXDlLD3VOZAVsmSYiIvIg1AJQ92HPP/zwQ+0siXQPdDRESzSCaLRilyxZ0vE6tkgTJazQOUsQERGFkFAKpONTfaRIkSLaudDE1A6ihMWWaSIiIgt2lsSEQHnFihVafQS1s1F9BHWxka5CRImDwTQREZHNqo+EWooKkZ2xWy8REZEFIZBG9ZEGDRpoPjUDaaLgYDBNRERk8eojx48fZ4s0UZAwzYOIiMgGmNpBFBwMpomIiIiIfMQ0DyIiIiIiHzGYJiIiIiLyEYNpIiIiIiIfMZgmIiIiIvIRg2kiIiIiIh8xmCYiIiIi8hGDaSIiNxgAA6PL7du3L2S2ze+//y7Vq1eXVKlSSfny5SUUYButWbPGq9eOGjUqZJabiCiQGEwTUcjp3LmzBmoTJ050mY/ADfOTopEjR0ratGnl4MGD8tVXX8W63TBhZLzChQvLiy++KDdu3PDrb8cUCJ85c0aaNGni12cTEVkdg2kiCklogZ00aZJcunRJ7OLOnTs+v/ePP/6QBx98UAoUKCBZs2aN8XWNGzfWIPfo0aPy2muvyZw5czSg9oVhGDqqXkxy5colERERPn02EZFdMJgmopBUv359DdYmTJgQrxbT6dOnS8GCBV1aa1u3bi3jx4+XnDlzSqZMmWT06NEaJA4ePFiyZMkiefPmlUWLFnlMrahZs6YG9qVKlZJvvvnG5fkDBw5I06ZNJV26dPrZHTp0kPPnzzuef/jhh6Vv374ycOBAyZYtmzRo0MDjekRFRcmYMWN0ORCcYp02bNjgeB4tzXv27NHX4N9Y75jg/dhu+fLlk3bt2skzzzzjSMV4//33pXLlypI+fXp9DZ4/d+6c471YP3z+xo0b9XX4rPfee0+3108//eRo9V68eLHHNI+//vpLnnrqKd2maEXHZ/zwww8xLus777wjJUqU0O1bvHhxDfydLzyw7XLnzq3PY5/GdiwQEQULg2kiCknh4eEaAM+aNUuDNH98/fXXcvr0admyZYtMnTpVg9HmzZtL5syZNdjr2bOnTidPnnR5H4LtQYMGyd69ezWobtmypVy4cEGfQ+tvnTp1NPDdvXu3Br9///23PPnkky6f8e6770ry5Mll+/btMm/ePI/LN2PGDJkyZYq88cYb8vPPP0ujRo30bx0+fNjxtxDMY1nw7/i0NKdOnVru3r3rCFDHjh2rgTGC4GPHjunFhruXXnpJA9fffvtNGjZsqH8Xfx9/G1Pbtm2jvef69eu6PbCd165dq38Dn4MLBU/efvttGTZsmIwbN07/Dvb18OHDdXvBzJkz9XNWrFihqS24EHC+SCIiChkGEVGI6dSpk9GqVSv9d/Xq1Y0uXbrov1evXm04n7ZGjhxplCtXzuW906ZNMwoUKODyWXgcGRnpmFesWDGjdu3ajsf37t0z0qZNayxbtkwfHzt2TP/OxIkTHa+5e/eukTdvXmPSpEn6ePjw4UbDhg1d/vbJkyf1fQcPHtTHderUMcqXLx/n+ubJk8cYN26cy7wqVaoYvXv3djzGemJ9vd1u8MMPPxhZs2Y1nnzySY+v37lzpy7vtWvX9PHmzZv18Zo1a1xe52k7A16LfQLz5s0z0qdPb1y4cMHj33L/jHz58hlLly51ec3YsWONGjVq6L+ff/55o169ekZUVFSs60xEFGxsmSaikIa8abRWIqXCV2hVTZbs/093SMkoU6aMSys48pCdUx6gRo0ajn+jdRlpC2hFBaRdbN68WVM8zAmpCmZ+swnvic3Vq1e1NbdWrVou8/HY/FvxsW7dOl0WpEZg+R966CFt3Qe0sLdq1UrzrpHqgTQUOHHihMtnxLXMnqDySYUKFTTFIy7//POP3gXo2rWry/ZDjre57dBijs8sVqyY9OvXT7744ot4LxMRUWJInih/hYjIRwgGkfbwyiuvREtJQID8XwPp/zNTGpyhsoUzs9qF+7yYUhLcXwd4bYsWLTTYd4c8XxNyh73hXqUE6+VL5ZK6devK3Llzdf3y5MnjWE9U9EDKBiakTGTPnl2DaGxb946R3i6zezqJt8ztjFSPatWquTyHCxuoWLGipqF8/vnn8uWXX2r6DPLoP/roo3gvGxFRQmIwTUQhDyXykJtctGhRl/kICM+ePesSeAayNvT333+vwTygwyJao9Epzgz2Pv74Y83jRau1rzJkyKBB77Zt2xx/C3bs2CFVq1aN9+chEH7ggQc8dqZE50hsS3ROBOR6eyNlypQSGRkZ62vKli0rCxYskIsXL8bZOo07A/fdd59WHEEHydi2DfKzMT3++ONaqcSbzyciSkxM8yCikIeUDARdZrqCCWkKSBmYPHmypgfMnj1bWzIDBZ+3evVqDUT79OmjZfq6dOmiz+ExArunn35adu7cqYEhUhHwfFyBpzt0dEQL9/Lly7Wz3ZAhQ/Si4IUXXgjYuuTPn1+DYmxDLCs696EzojdwwYBWYiwTAvLbt29Hew22AyqEoHIKOlvib+Bi47vvvvP4megEik6O6Hx56NAh2b9/v1b3QAdRmDZtmnz44Ye67fH8ypUr9fNRjYWIKJQwmCYiS0Dg557SgbJqKKeGoLdcuXIa1PpaU9kTtOIiyMVnb926VT755BMtcQdoTUbQiMAZqRKlS5fW4Ddjxowu+dneQE4wKmZgwoUDKoMg2C1SpEjA1gWt+Chph6C0ZMmSum6oHuKNNm3aaKswUkjwOcuWLYv2GgTquJjIkSOHlgvEeuBvmGkb7rp166Yt2VgmvBaVQPDvQoUK6fPIoca2R/52lSpVdFTK9evXx3vbEhEltDD0Qkzwv0JEREREZEO8xCciIiIi8hGDaSIiIiIiHzGYJiIiIiLyEYNpIiIiIiIfMZgmIiIiIvIRg2kiIiIiIh8xmCYiIiIi8hGDaSIiIiIiBtNERERERImLLdNERERERD5iME1EREREJL75P9Ov1gLd8jchAAAAAElFTkSuQmCC", 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", 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" ] @@ -110,9 +110,9 @@ "outputs": [ { "data": { - "image/png": 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", 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", 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" ] }, "metadata": {}, @@ -122,33 +122,46 @@ "source": [ "fig, ax = plt.subplots(2, 1, figsize=(6, 5))\n", "\n", + "function_names = [f.__name__ for f in functions]\n", + "\n", "i = 4\n", - "ax[0].plot(n_particles, total_time[i, :, :], marker='o', label=function_names)\n", + "runtime_lines = ax[0].plot(n_particles, total_time[i, :, :], marker='o')\n", + "for line, name in zip(runtime_lines, function_names):\n", + " line.set_label(name)\n", + "\n", "ax[0].set_xscale('log')\n", "ax[0].set_yscale('log')\n", "ax[0].set_xlabel('Number of Particles')\n", "ax[0].set_ylabel('Total Execution Time (s)')\n", "ax[0].set_title(f\"Chunk Coverage={chunk_coverages[i]:.2f}\")\n", - "ax[0].legend()\n", "\n", - "i = 5\n", - "ax[1].plot(chunk_coverages, total_time[:, i, :], marker='o', label=function_names)\n", + "ax0_speedup = ax[0].twinx()\n", + "speedup = total_time[i, :, 1] / total_time[i, :, 0]\n", + "speedup_line = ax0_speedup.plot(\n", + " n_particles, speedup, marker='s', linestyle='--', color='black', label='Speedup (k=1 / k=0)'\n", + ")[0]\n", + "ax0_speedup.set_ylabel('Speedup (k=1 / k=0)')\n", + "\n", + "left_handles, left_labels = ax[0].get_legend_handles_labels()\n", + "right_handles, right_labels = ax0_speedup.get_legend_handles_labels()\n", + "ax[0].legend(left_handles + right_handles, left_labels + right_labels)\n", + "\n", + "j = 5\n", + "ax[1].plot(chunk_coverages, total_time[:, j, :], marker='o')\n", "ax[1].set_xlabel('Chunk Coverage')\n", "ax[1].set_ylabel('Total Execution Time (s)')\n", - "ax[1].set_title(f\"Number of Particles={n_particles[i]:_}\")\n", - "ax[1].legend()\n", + "ax[1].set_title(f\"Number of Particles={n_particles[j]:_}\")\n", + "\n", + "ax1_speedup = ax[1].twinx()\n", + "speedup = total_time[:, j, 1] / total_time[:, j, 0]\n", + "speedup_line = ax1_speedup.plot(\n", + " chunk_coverages, speedup, marker='s', linestyle='--', color='black', label='Speedup (k=1 / k=0)'\n", + ")[0]\n", + "ax1_speedup.set_ylabel('Speedup (k=1 / k=0)')\n", "\n", "plt.tight_layout()\n", "plt.show()" ] - }, - { - "cell_type": "code", - "execution_count": null, - "id": "2387ee3e", - "metadata": {}, - "outputs": [], - "source": [] } ], "metadata": {