Return-Path: X-Original-To: apmail-cassandra-user-archive@www.apache.org Delivered-To: apmail-cassandra-user-archive@www.apache.org Received: from mail.apache.org (hermes.apache.org [140.211.11.3]) by minotaur.apache.org (Postfix) with SMTP id 5ABFC9ACA for ; Sat, 10 Dec 2011 04:14:23 +0000 (UTC) Received: (qmail 36206 invoked by uid 500); 10 Dec 2011 04:14:20 -0000 Delivered-To: apmail-cassandra-user-archive@cassandra.apache.org Received: (qmail 36133 invoked by uid 500); 10 Dec 2011 04:14:17 -0000 Mailing-List: contact user-help@cassandra.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: user@cassandra.apache.org Delivered-To: mailing list user@cassandra.apache.org Received: (qmail 36124 invoked by uid 99); 10 Dec 2011 04:14:15 -0000 Received: from nike.apache.org (HELO nike.apache.org) (192.87.106.230) by apache.org (qpsmtpd/0.29) with ESMTP; Sat, 10 Dec 2011 04:14:15 +0000 X-ASF-Spam-Status: No, hits=-0.6 required=5.0 tests=FREEMAIL_ENVFROM_END_DIGIT,RCVD_IN_DNSWL_LOW,SPF_PASS X-Spam-Check-By: apache.org Received-SPF: pass (nike.apache.org: domain of ramesh25@gmail.com designates 209.85.213.172 as permitted sender) Received: from [209.85.213.172] (HELO mail-yx0-f172.google.com) (209.85.213.172) by apache.org (qpsmtpd/0.29) with ESMTP; Sat, 10 Dec 2011 04:14:07 +0000 Received: by yenm7 with SMTP id m7so3354076yen.31 for ; Fri, 09 Dec 2011 20:13:46 -0800 (PST) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=gamma; h=mime-version:in-reply-to:references:date:message-id:subject:from:to :content-type; bh=oYcwm7PGkN0Zn/4PDbJmYU52+7UfOx2XN/t976dsjxA=; b=pkyfvL9l++DdAztdIeaDHVM5040CBONAsr71WBhOwFrkBm3LbyiMaIdEs1gTNaCSzH Jkt89EMFA+17IR/pssy5ITmw516rB8J3DdyYcJKTz4DpGM1r0KJIHoPII6g8VH0N8AQa xzUm4I6hjZ97u5JdO+GVi/WFLSLJYdi8DyImg= MIME-Version: 1.0 Received: by 10.236.114.132 with SMTP id c4mr15333951yhh.104.1323490426800; Fri, 09 Dec 2011 20:13:46 -0800 (PST) Received: by 10.100.6.20 with HTTP; Fri, 9 Dec 2011 20:13:46 -0800 (PST) In-Reply-To: References: Date: Fri, 9 Dec 2011 22:13:46 -0600 Message-ID: Subject: Re: IOException running cassandra 1.0.5 From: Ramesh Natarajan To: user@cassandra.apache.org Content-Type: multipart/mixed; boundary=20cf303ea7d0c0c91b04b3b520ed X-Virus-Checked: Checked by ClamAV on apache.org --20cf303ea7d0c0c91b04b3b520ed Content-Type: text/plain; charset=ISO-8859-1 Content-Transfer-Encoding: quoted-printable Do you have any pointers on how to resolve this? We can see no issues reported in the syslog or on the RAID or ESXi. We changed the filesystem from xfs to ext4, still we get the same error. I am attaching some more signatures here in case anyone has any comments.. ERROR [CompactionExecutor:207] 2011-12-10 03:23:09,354 PrecompactedRow.java (line 108) Skipping row DecoratedKey(-1, ) in /data/MSA/modseq-hb-177-Data.db org.apache.cassandra.db.ColumnSerializer$CorruptColumnException: invalid column name length 0 at org.apache.cassandra.db.ColumnSerializer.deserialize(ColumnSeria= lizer.java:98) at org.apache.cassandra.db.ColumnSerializer.deserialize(ColumnSeria= lizer.java:37) at org.apache.cassandra.db.ColumnFamilySerializer.deserializeColumn= s(ColumnFamilySerializer.java:147) at org.apache.cassandra.io.sstable.SSTableIdentityIterator.getColum= nFamilyWithColumns(SSTableIdentityIterator.java:232) at org.apache.cassandra.db.compaction.PrecompactedRow.merge(Precomp= actedRow.java:104) at org.apache.cassandra.db.compaction.PrecompactedRow.(Precom= pactedRow.java:92) at org.apache.cassandra.db.compaction.CompactionController.getCompa= ctedRow(CompactionController.java:137) at org.apache.cassandra.db.compaction.CompactionIterable$Reducer.ge= tReduced(CompactionIterable.java:102) at org.apache.cassandra.db.compaction.CompactionIterable$Reducer.ge= tReduced(CompactionIterable.java:87) at org.apache.cassandra.utils.MergeIterator$ManyToOne.consume(Merge= Iterator.java:116) at org.apache.cassandra.utils.MergeIterator$ManyToOne.computeNext(M= ergeIterator.java:99) at com.google.common.collect.AbstractIterator.tryToComputeNext(Abst= ractIterator.java:140) at com.google.common.collect.AbstractIterator.hasNext(AbstractItera= tor.java:135) at com.google.common.collect.Iterators$7.computeNext(Iterators.java= :614) at com.google.common.collect.AbstractIterator.tryToComputeNext(Abst= ractIterator.java:140) at com.google.common.collect.AbstractIterator.hasNext(AbstractItera= tor.java:135) at org.apache.cassandra.db.compaction.CompactionTask.execute(Compac= tionTask.java:172) at org.apache.cassandra.db.compaction.LeveledCompactionTask.execute= (LeveledCompactionTask.java:57) at org.apache.cassandra.db.compaction.CompactionManager$1.call(Comp= actionManager.java:134) at org.apache.cassandra.db.compaction.CompactionManager$1.call(Comp= actionManager.java:114) at java.util.concurrent.FutureTask$Sync.innerRun(Unknown Source) at java.util.concurrent.FutureTask.run(Unknown Source) at java.util.concurrent.ThreadPoolExecutor$Worker.runTask(Unknown Source) at java.util.concurrent.ThreadPoolExecutor$Worker.run(Unknown Sourc= e) at java.lang.Thread.run(Unknown Source) ERROR [CompactionExecutor:207] 2011-12-10 03:23:09,525 AbstractCassandraDaemon.java (line 133) Fatal exception in thread Thread[CompactionExecutor:207,1,main] java.lang.NullPointerException at org.apache.cassandra.db.compaction.PrecompactedRow.removeDeleted= AndOldShards(PrecompactedRow.java:65) at org.apache.cassandra.db.compaction.PrecompactedRow.(Precom= pactedRow.java:92) at org.apache.cassandra.db.compaction.CompactionController.getCompa= ctedRow(CompactionController.java:137) at org.apache.cassandra.db.compaction.CompactionIterable$Reducer.ge= tReduced(CompactionIterable.java:102) at org.apache.cassandra.db.compaction.CompactionIterable$Reducer.ge= tReduced(CompactionIterable.java:87) at org.apache.cassandra.utils.MergeIterator$ManyToOne.consume(Merge= Iterator.java:116) at org.apache.cassandra.utils.MergeIterator$ManyToOne.computeNext(M= ergeIterator.java:99) at com.google.common.collect.AbstractIterator.tryToComputeNext(Abst= ractIterator.java:140) at com.google.common.collect.AbstractIterator.hasNext(AbstractItera= tor.java:135) at com.google.common.collect.Iterators$7.computeNext(Iterators.java= :614) at com.google.common.collect.AbstractIterator.tryToComputeNext(Abst= ractIterator.java:140) at com.google.common.collect.AbstractIterator.hasNext(AbstractItera= tor.java:135) at org.apache.cassandra.db.compaction.CompactionTask.execute(Compac= tionTask.java:172) at org.apache.cassandra.db.compaction.LeveledCompactionTask.execute= (LeveledCompactionTask.java:57) at org.apache.cassandra.db.compaction.CompactionManager$1.call(Comp= actionManager.java:134) at org.apache.cassandra.db.compaction.CompactionManager$1.call(Comp= actionManager.java:114) at java.util.concurrent.FutureTask$Sync.innerRun(Unknown Source) at java.util.concurrent.FutureTask.run(Unknown Source) at java.util.concurrent.ThreadPoolExecutor$Worker.runTask(Unknown Source) at java.util.concurrent.ThreadPoolExecutor$Worker.run(Unknown Sourc= e) at java.lang.Thread.run(Unknown Source) ERROR [ReadStage:50] 2011-12-10 03:27:20,577 AbstractCassandraDaemon.java (line 133) Fatal exception in thread Thread[ReadStage:50,5,main] java.lang.AssertionError: DecoratedKey(-1, ) !=3D DecoratedKey(53731996390544741435985962281191741460, 37303730323632333931) in /data/MSA/modseq-hb-177-Data.db at org.apache.cassandra.db.columniterator.SSTableNamesIterator.(SSTableNamesIterator.java:70) at org.apache.cassandra.db.filter.NamesQueryFilter.getSSTableColumn= Iterator(NamesQueryFilter.java:60) at org.apache.cassandra.db.filter.QueryFilter.getSSTableColumnItera= tor(QueryFilter.java:78) at org.apache.cassandra.db.CollationController.collectTimeOrderedDa= ta(CollationController.java:114) at org.apache.cassandra.db.CollationController.getTopLevelColumns(C= ollationController.java:62) at org.apache.cassandra.db.ColumnFamilyStore.getTopLevelColumns(Col= umnFamilyStore.java:1275) at org.apache.cassandra.db.ColumnFamilyStore.getColumnFamily(Column= FamilyStore.java:1161) at org.apache.cassandra.db.ColumnFamilyStore.getColumnFamily(Column= FamilyStore.java:1128) at org.apache.cassandra.db.Table.getRow(Table.java:375) at org.apache.cassandra.db.SliceByNamesReadCommand.getRow(SliceByNa= mesReadCommand.java:58) at org.apache.cassandra.db.ReadVerbHandler.doVerb(ReadVerbHandler.j= ava:53) at org.apache.cassandra.net.MessageDeliveryTask.run(MessageDelivery= Task.java:59) at java.util.concurrent.ThreadPoolExecutor$Worker.runTask(Unknown Source) at java.util.concurrent.ThreadPoolExecutor$Worker.run(Unknown Sourc= e) at java.lang.Thread.run(Unknown Source) On Fri, Dec 9, 2011 at 6:52 AM, Sylvain Lebresne wro= te: > The sha1 don't match, which would indicate that the sstable > has been modified after being written. But Cassandra never > modify a sstable once it has been written, so this would > suggest an external modification, typically some bit rot. > > In that case you don't have much other choice than removing > the mentioned data file and run a repair. > > -- > Sylvain > > On Fri, Dec 9, 2011 at 1:37 PM, Ramesh Natarajan wro= te: >> Hi, >> >> =A0I have a 30 node cassandra cluster running on RHEL6 64 bit. RF=3D3, >> reads and =A0writes performed with QUORUM. After few hours of test run, >> I am seeing this error in the system.log file. >> >> [root@MSA-VM-18 cassandra]# cat >> /var/lib/cassandra/data/MSA/modseq-hb-419-Digest.sha1 >> 71e43a932a29553720149bb4f93727e4d269735d >> modseq-hb-419-Data.db[root@MSA-VM-18 cassandra]# >> [root@MSA-VM-18 cassandra]# sha1sum >> /var/lib/cassandra/data/MSA/modseq-hb-419-Data.db >> 033f5aea5590851377d3bb79df27f0e6eedb6b95 >> /var/lib/cassandra/data/MSA/modseq-hb-419-Data.db >> [root@MSA-VM-18 cassandra]# >> >> Any pointers to troubleshoot this issue? >> >> I am attaching the system.log file for your reference. >> >> thanks >> Ramesh >> >> >> =A0INFO [CompactionExecutor:296] 2011-12-09 04:36:40,430 >> CompactionTask.java (line 112) Compacting >> [SSTableReader(path=3D'/var/lib/cassandra/data/MSA/transactions-hb-55-Da= ta.db'), >> SSTableReader(path=3D'/var/lib/cassandra/data/MSA/transactions-hb-53-Dat= a.db')] >> =A0INFO [CompactionExecutor:296] 2011-12-09 04:36:40,501 >> CompactionTask.java (line 213) Compacted to >> [/var/lib/cassandra/data/MSA/transactions-hb-56-Data.db,]. =A0280,210 to >> 144,785 (~51% of original) bytes for 3 keys at 2.191710MB/s. =A0Time: >> 63ms. >> ERROR [CompactionExecutor:295] 2011-12-09 04:36:41,320 >> AbstractCassandraDaemon.java (line 133) Fatal exception in thread >> Thread[CompactionExecutor:295,1,main] >> java.io.IOError: java.io.IOException: dataSize of 14293651161088 >> starting at 5541742 would be larger than file >> /var/lib/cassandra/data/MSA/modseq-hb-419-Data.db length 10486511 >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableIdentityIterato= r.(SSTableIdentityIterator.java:154) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableIdentityIterato= r.(SSTableIdentityIterator.java:86) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableIdentityIterato= r.(SSTableIdentityIterator.java:70) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableScanner$KeyScan= ningIterator.next(SSTableScanner.java:177) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableScanner$KeyScan= ningIterator.next(SSTableScanner.java:142) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableScanner.next(SS= TableScanner.java:134) >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableScanner.next(SS= TableScanner.java:37) >> =A0 =A0 =A0 =A0at org.apache.cassandra.utils.MergeIterator$Candidate.adv= ance(MergeIterator.java:147) >> =A0 =A0 =A0 =A0at org.apache.cassandra.utils.MergeIterator$ManyToOne.adv= ance(MergeIterator.java:124) >> =A0 =A0 =A0 =A0at org.apache.cassandra.utils.MergeIterator$ManyToOne.com= puteNext(MergeIterator.java:98) >> =A0 =A0 =A0 =A0at com.google.common.collect.AbstractIterator.tryToComput= eNext(AbstractIterator.java:140) >> =A0 =A0 =A0 =A0at com.google.common.collect.AbstractIterator.hasNext(Abs= tractIterator.java:135) >> =A0 =A0 =A0 =A0at com.google.common.collect.Iterators$7.computeNext(Iter= ators.java:614) >> =A0 =A0 =A0 =A0at com.google.common.collect.AbstractIterator.tryToComput= eNext(AbstractIterator.java:140) >> =A0 =A0 =A0 =A0at com.google.common.collect.AbstractIterator.hasNext(Abs= tractIterator.java:135) >> =A0 =A0 =A0 =A0at org.apache.cassandra.db.compaction.CompactionTask.exec= ute(CompactionTask.java:172) >> =A0 =A0 =A0 =A0at org.apache.cassandra.db.compaction.LeveledCompactionTa= sk.execute(LeveledCompactionTask.java:57) >> =A0 =A0 =A0 =A0at org.apache.cassandra.db.compaction.CompactionManager$1= .call(CompactionManager.java:134) >> =A0 =A0 =A0 =A0at org.apache.cassandra.db.compaction.CompactionManager$1= .call(CompactionManager.java:114) >> =A0 =A0 =A0 =A0at java.util.concurrent.FutureTask$Sync.innerRun(Unknown = Source) >> =A0 =A0 =A0 =A0at java.util.concurrent.FutureTask.run(Unknown Source) >> =A0 =A0 =A0 =A0at java.util.concurrent.ThreadPoolExecutor$Worker.runTask= (Unknown >> Source) >> =A0 =A0 =A0 =A0at java.util.concurrent.ThreadPoolExecutor$Worker.run(Unk= nown Source) >> =A0 =A0 =A0 =A0at java.lang.Thread.run(Unknown Source) >> Caused by: java.io.IOException: dataSize of 14293651161088 starting at >> 5541742 would be larger than file >> /var/lib/cassandra/data/MSA/modseq-hb-419-Data.db length 10486511 >> =A0 =A0 =A0 =A0at org.apache.cassandra.io.sstable.SSTableIdentityIterato= r.(SSTableIdentityIterator.java:115) >> =A0 =A0 =A0 =A0... 23 more >> =A0INFO [COMMIT-LOG-WRITER] 2011-12-09 04:36:52,668 >> CommitLogSegment.java (line 60) Creating new commitlog segment >> /var/lib/cassandra/commitlog/CommitLog-1323405412668.log --20cf303ea7d0c0c91b04b3b520ed Content-Type: application/x-gzip; name="system.log.gz" Content-Disposition: attachment; filename="system.log.gz" Content-Transfer-Encoding: base64 X-Attachment-Id: f_gw040qog0 H4sICHXU4k4AA3N5c3RlbS5sb2cA7F1bc9w2ln7fX8F9mLJU1RfcL9rVVmwlzngmSlKRJ/uQSqUo Nlui3U32kGzbmqmZ374HbKovMtlNgKA2qbKvkhrE+QCcOw7A4M33r38IflmGSfprQBDGY0zGSAeE XnB2QeVIER68vC3KPIzKq7AownSWh1+H8TJLJ+/CD2FwtkjSOND6PPguu7tL0rsgSZMyCRfJP+LZ fwSn+9dd+scEnQd/+fk6+BCnsyyffojzIsnSi+Avps2fs/JmlZVnb6/PA8HGr5IyuIlzaBP8fD3F EzFBvxHdAQtF3bDg8+DPcbgKChjjRQCPMUmwJmi6+9IjNXIeXC2gwSos7y+CaZ5l5TR6fGB6m6TT yWQaZen8ouWz23WymE0j00dcTA2ibi3L+zyZl21tF8ntNEzLRT6mEwKI86MNV2F0H4+3n43xBE24 9VPRIonTcl0mC8cONkPq+PCHPIOWbILG8+RTXFi0L7J1HsVFt+eibAlrXpjBweO4c/NsFkfwwMm5 f3xgEaZ3YwL4Trdf5XEBD/xjPkYT1eWJNFrnOSwNsOz7eHYfFvfLcDVe5OsuAO/WwO7jHKlTDe+T u/txEYWLeAzfVpN1svN3YfS+yFKYrjweh8Vis0Jdn4JRrOLc5rnlEuaMnOaud0a6oame6JPz+y4N TzYxaItkuYK56cBE8LcWBQTq8VTj7I69qxYSn2y7/ARN40+hAXKS86vGBnOXhp06e7f81KldDmq2 jLs17QpwnHelXmbZ4uTkrBZhOc/y5al2BVi6RVyOw1UC0s3HBCEFJuokCxSLOUAxTxkL2bF5xQpg yLo9kobv44dwuaian268Wj2MjeWr1DM73f+hsJ2wuAyNJFfB1XfJbR7mDwcmFglwLr5/GSwXWfQ+ XCyCYh2B+i7m60WHXoUMvg7L8DYs4q/jIsqTVZnlB/1jYbyjcGa8oyIuS/i/COZ5tgzmySKuh9hs IivDvhv+xEznaUxK0lOYJDhUXyfF+5fVSK/BmAQvwnWZvQhmcRnnS2g0C8osuI2DJWjBEbh1s/jT XuukqD7oAEaxE2AI5efBt4vsNlwEy3gJTRdxAPopLu6zxcxQilPzs1kQlgERDF2/OkUWj2DWT5Bl ArzWq2y9mKUvymrYURmE6UNQwEIsQ/jJvPJlwXjC6ANgDsBXQCfhXTzpAuAUYzAN436drVOY6WrM M2huSFX/z5IcAGV5AooUYKZFMgOPdl0YLirvY2DlN2aBKpRx8AAuRw28CzZwPq/AL0hK8Npv4rsl 2O59ZAK44yqPQ8OqQRp/DKKqMYg/MHDVOph+CPON9d/K5rbRdNv3GFNCmWRKYaA5gc+6gOM7cAdM K0CQvs/2wBj5AVEyU/hfQfE+Wa0M4DwG5fnQhZAMbjbraeKFJIr3qVElYRIeBxdsQ45KLvt3rs6D t5UJDl7++Gavdz2BP6fih5P9M4R3OmdlOi9KkJ+8UkFlWMYdCDB8jIAEAjdlmFcssoZgaBNx3WVF kZzUCtA7l7DIi/UyfR0uk8WDoXRAQJgZ+ib9+zpeGwrzxbq4D7J5cF0riPF3II9GON+k8+wr6I4h jbHGZ/B3SqgygOowFNj0QxzcPpRxMQpYkK2K80eAr023/5snoPIucBtStSV6qLVAfZhHDbxnR0UI a0YluVFqxv8yC15NmwHYIK5Gy0yLB2CM5XQf9vgefOuxUV2T2W1wRrTeoDw/vaqEcUAFBEwmoIFr iFB7XLNtGdRNgywNVlleBhKhDiJA+FEO1cyIGFiP1NirjwkY9jQDDb82Zg1Mrom9V2DgonBdgD0r jaEx5ja5W+db4xfCisE3posOepVwfQQRFxRGH36oOn8fpxWcSnlNgr9Vel0Ai3CMkEAES4I4FhSM hKFEBWEaKVBKgm18h0eo1bp1gCaQV4GTHEsqiRZnnE6FaGNsYs3YAjuL22CYFBlS2MhO2GDBuwub OmYBlFHQ3xvOv755Of75Gp6eYmSMi4R/GdmYgeDderkyrJ5CqBGedC0N0aMcLoGHXj3K1vQnY4ij eHqdweRHj/P0nwDrY2UvNsY6nBVb0fq2Mh+gIe7itsWghASbZvGBNyWlrge8N07QuJUC+BisQOkY djauUwQLBcttRZQ2E2XAAW/SuHw5m5mkSTPtv/1oRcqrZdQca0EQ5WeUTxltkwlsKxMGpqOcOkFq Z0kKjso1xNVvIaw+mCfw30y8vRfOPYAXH852ieku4+Qt+siP7NOd7KundrYLs3AbYdCehIE7CIN2 EwbOvVotpjETnBLhWxo4d7ZaTpiOiAME/0c3FGCRXkE0v4kjqwikqN0vsANTNKl+X2gskM0EyEH9 UdZTTCS3EBPRQUyOzb84Ov8U3NKNt/f2dViUr/NwGc/e5mFaVK7vx6S8B69zGX4CNw8+qnaZDAiK GZdEoc3orSwmILKWV+Emr1J5lVeiiURCMt/iKt1jOhdIR7gFFvQYtwj8yC3FQxrd51marautOXCb VmDw9kUYwm8IoB4lOLgI9mX4bfXIWLbBwMdgEAyRy3cmh5BWq5blj3Q3W3LFZLJlSCPsYWTm65tP cQTBVn7B2oiyYNf6bVi8P0ybkvPtx0D0l5ubt2Y5foJhxPmZ2Q69fOHqab84HwUe+mOe+8Oe+6O7 /n61EA+G0JDKnPdT5gxhC2Uu/fg8DLU4Wsd0qHTSoQxRvz4PF+BgMOw7AjA4nX2eoTCRFj/MD+eK npwLMVNnzmXIE+e2ET3CuTvadpxLtN8cE+ECUaaJdy7R7jmmoTC1pZn9cK7qyblcW3Au9sS5Atlz Lv6ccxs8khY3iFVJ0uf0SLhniy889yc996caPJJOrID92kQsGGMKK99S3CN77YSpu7fNBD3C25WH X3+82fz4xZVTRr9OgkCACYFOOOXB2b8V/ZNZiyxP7pI0XJxvhlKFESx4Hz8UZmMfQhYktNLXr6YF dPA2WcYXgaTLXajbYf45aslKetoWQ/3UKEcWapR6UqMc26tR2qBGO5HyKqYEMUqUllydETQF186X mHLcsqFzWkzdMHU3QRyrQcUU4wM5VRDXQC9GXM/+LXU3OcWIE3ogp1xZyikdNKuO99LqkjnIKbVJ qzNPckod0urMTU6p17S65lIjzqhnY2pQOm8xDYOID1t10TPNzblNmpt3YNsGvcXbaT+v67wzxr6y b9R3h97zg9jNfebcYQeAu6kW7nUHgCCJlGBK+t6x4+5lXYNhEqglL+FJvfRMvIo2R7JRvRA/VlHg lmzvMdYlTqwrwCv0unlFEVeKc9+pIuHuvbph6m4FRJUBHNB7FYfeq668V0mN96pwxyhTcyp7RZmC DloPhmVPObXyXqknOXXxXqmbnFLmU0455lxirLVvMXV3XweDxFu2bDwxrj7CuA1KpBXlc+8LY99p U+w7r4t9J2J3a2XnSgqBOlWdHprjY8WmnYgeq/RuJkr7E6XWRPVRohYioI9FU/3tKEEHdlRraXpR VtlaUE9IHdhRhpYWhUlihLWy2FXyYqiOED22q+RiqMSIIK8191wL4Asi/G6aG5jOmxaDQSKD5gcJ 6eFhcTLCyiISYj7yg8eIHmNch/xgRcpvJKQQRwxR4rWOr8LpXoIyFCaChj0s0qdinPMRtimFZV1y hH2IHmNdh/xTRcrvwUKz14OAn7zmemqczkH8UJj0oLun5Fh6u8E3Em0oj+UYBikb9V03Snwnhonv XDhpKh3tvkaEiWH9V37gv+IR3uxjaqaMByu6erCEikMPVlp4sFyNsFVdVJeDBV2IutRFOdTzV6T8 1t1QiSUSVCCvmsvgdE+JDoZJDevDumcJ+QWiValMd9btX0ZdE22Rl2Osa11GvSGFvQZfjFLBJNhd f1xSw3QOvgaDRAfd5SbutagAT45o245QI+P2PwB8nOgxxrU+AFyT8lr/rxCjigvpsdRxC9ORcQeD RAdNbxPL9DZpQ/nclRJE+fYOfWejifbdIe/mv7atUZUAGc5/peiJ/0owN/3gEeLUwoMlWFF86MGK zh4sv8BkRIWNNu1/grwman+ailmfIK9JedWmBCkIvRll2KfuqnC2GN0u9ShDYWpLr3m6+8A9Cwvw TN7aYvuA9z9OVRO192C59XGqDSm/1dRYK6w0ltgvm2xwugZfg2EatkSDumdhAZ6qzol0Z93+BwFq ovZal1sfBKhJeS3RwJhCoKMZ8pis3+J0Zd3BMKlBz7BSyyzs58eJapTHMnxDeLHUdxaW+s7CUt8F xBR182Jb1oiTYasI6NMsLCVo48WaSxPBi5UdvVhwYg8r8qi28GIJG2FtsavF+5em1kTtq6q5dWlq TcrvrhbT4C0qwb2a3Qqn+8UqQ2EieNBdLdonD0uEXQDG+xfB1EQdXAHrIpialNcATDCEGRHaL5eI PvHXYJDAxA7JuH3ysBSNzC0R3Rm3fxFMTdQ+D8uti2BqUl4Zl0kqGcHcY6lUDdOZcQeD1CZLnhi3 d5lxjfK587DUd5aT+s7DUt+ZYtoxD9uyRqaYakgPlj3Nw5oLhCoPlogqD6u6ebCUMn5YC0tt8rBU VPczd9em/euyaqIO2tS6Lqsm5bWkUGjFNMbY695nBdN5V2swSMPePs36ZGGpHhFiw7j9S2Bqog6M a10CU5Pyex2bYhiiHIY8nk3f4nSuhR0KU5tv4ol1+2RhGUSGNrWw3EcJzDGix1jXoQSmIuU1awDO IkeS+rz6rIbpnDQYDJIe9CQ2610JW6GkCD+zB8t8p0yZ78JV5v2OV+dK2M0a0WHv82FPc7Cc1jlY KqocbMc7fcwLRpC7B8skKHub7VgfdVkVUYftWIe6LEOKe77cimqsJdNe949qnM6VBENhalPxnvRp nxwsRyNkU1LIfRTBVETtT8xzhyKYipTX7VjBhBTYr9GtUDofmB8K0bAFhaxPBpZDZGiTgRU+CmAq ovahl3AogKlI+T2GKDjVmmHite60wukeeg2GqS2R4Yl1PdTCViif+6oH5jsHy3ynTJnvpC7rUQsL a0QHzsHypzlYc3FK5cEyhcGD1aijByuxeJKD3b+V8jq527wrr03lyAuiIPAjwbblIS+CLL9crRYP hhOXj00CFUnE2S0aExJBbzjGYwS/xngmWTwjEYvncQAqsUIKkwSwrm9ejsxLSgPzlrQyvnu4uKne 3H1Tf/vPf42C2To3y/7bRyPkxUVQ5uvYdiR981ZbOsVXWCkBToRk4kxIxqaKQZRhrao+Z7At0u7q 0wuq55rCm+qNvObNhAQLzBg/I0rpKTW3mrUApbbT1/omNjdNv5vfJy8CFQqpJ4q+Ezqbu/afZb64 19zOBvKTuaIQSD2Zq24sZwZqqX9mkkSz0/onqhg5mFecfAHq9G6yeef4ZPd68c07RSdXr6/jMjSD +YrHt3o+i3+J5m9mlxg6Hr0vvg+X8aVRYtG8+nKZzYr47/Dd24dVfAnDS2dhPhuZFz6GgDLLLxuJ zW4nyzAv7sPF5KfYvAA5npkOzk41fmWm1bQ8HxXr282w9mj9d7peLP7HUDfvqb4c5dnHK9PZDXDO JZiJESji3Q84qn7Bj83rkX6KV2GSX92HaRRf4uqHq0UC5ir+Ia2Y6tLo4dFd9G0OmvwmhvmaFZdU wLTM4nm4XpQ/A4fOOo15OwwDyOWxZZLumeXH16VfstEy/NT0ASW7uQg/xD+COGWzN+njKPYmpuFT kEUY5OPzfwVb9jYz7S6J0b/KHETcfvpjnn0wLytvHktUfX9TCzMw88EzX1HEojAEX2AZ53fxzT1w UlEvCAQSBuPLRRIWu2U2y//bEvjVCOUl2M5oO/ZHg3q1AOqXkfm3me9hfndPTb4DblzEs6vP+mno +odVpSov/1kUlUL5zbyu7bcEEN2CuGzAmGgIGm2b/utXW53QNwzas5kEUSEkMS8wg3UjU21eIenL ktvdTOkFVccpJH0PAz9aJozA01DSVCkSzaYMY+nNMgm/10sfWvK9bV7JmbC35MLqHZfPMl/Kq+ez s+R7c0UZe3qBfDeWU+auRStLPkNEET2UJSe3kvK5YltTjptMeXGXzPpY8p156m+b8Rfb/PuyzYQq GmvBv9jmPSnv+yaFPSsoNMVISAxGUGo01ZK26kpr06x4SzHxKdPsDKrrBPatUXi0NEhTwsxR2DMq OJoyLlpdCGtLYy6aHswy77+sRPGn1qYTOpsEynPMl6Ze3yC6s8x7c0UVQg6WWY+QcbPsLDPBJCaD WWbCb6OZxlvLTBoss9m0SaJkFaZl8ccMtcFmfyO/mPLfhymnGrN5RMUXU76nFjyacqKQgPUi+EwR zqYY0fa4x9KWG6SOttwdVdcpFH6MuVaEMEIoP2NIoClHsvVFa5a2CUBqr+erD235fmEfxdb5coPO 5l7QvtPVdBLj81d7bIENu1XbMpOOu6At2Q8vvfV9T3uL/9fylvYWTsHSa7Zo52Pt8TAj+KmP1cQy n9c+1giHviOgYfPFcUkakj+9e+rLwg1u74lTVC0LQdSxQmH7LfwdsCfVp2zEIBYxm/dshIUwu/ft dwDwvd17TJQQ7GD3HiO+t31voamIPlZUYj/aQ2k9HDFFI06E6QW+opSZEbdX3OL9ETPJ9eHts1gL y4IFPYIoyDaYgXCFxUMFM4wiMpvzbSxDG2IZiCWSdJ79IcIY8ZiDPIhlviQlH2OVY9HMs0QyUmJN 8Vx9iWT2dELfSvW9mIEqqQUC9XymRBUzKI+RDG27I/lUJOOOqusU9t1zrV1zaAeOGsfojDHBp5wr X5UsesSI1yzboZ3bL6mXLpEMa3uHy7FIZtDp8vv2s50TtDdVTGDulJTkJiq1s+MSEzKYHZdSh4Lq 260hZw2GHHRaWmz02x80KfnFkJ9KST5TOtK8jEF+2VncVwh9c2n75lISIbA5J6sRqFWMKW3Vq9ZG 3CB1M+LOqLpOoa+9RcKlREgAUqYknQqk/Zklz2+TPbTieyeMNCZPa1I7oXPZWxx0voTXs4Q7M743 VxwR6mTGlbI9PzDTcTRc1Y+MidaC6K0Z5w1mfN2v5uf/c0uRf9lS/L1sKfKIYR1L9sWG72mDvudu 90+7MNCpHAmCzzTjGsylIh3PCz4X2lr9E0QExYa9zjiRbCq49lVaskHpdlrIff46wNLEq1U6tOJ7 hy01/8wydULncArHfRkbkvW6BRhFz7qr2Pf0Z8tegJfe+h4kbcnf2O0qauF1d3znXe3xMGfkaZWb xWaWFs+3q9j3KG6Dc9m7p74s3LB557CrSFFd7THEriI+PBJs9vRAvUIXprQQVYeC2y9mVHubbBRp oQ6vFlf6+K5ik6IygxV+t1CfFBQcDpjLkUTMdANfcUy67yoygiGWPtxVpPuvZV9l2WKMx+W98ZrH TZ4AN3cINadusblY4ur1zdlf68PMly8gjHgxOnAbLl/s1yq+OA+MnfjJjNVcAiEmiCEASaViREql grN366IcR9k6NVP3MWxocw6DicJFtF5sgqYyy94H1FxQtJkAgerwqLAaZltNdMdhQtj0+egoEUQp iSUzX+nG0T1p0zw6/jg4rhwGR0a45QIIL2uoJRaMaMkFBBASN47ySZvGUWJM62EyIpyGSVr2QIZd Qw5tOKYQT5tL6znljaMjqB6cufzUZXC65SonD2soJ9hcW84QoxQxSZtG+Vmb5jV8FEMBnrn9KGn1 QufnX0I2EUz9H3vX1iO3saP/ih9nAaWnSBbrMk8BgsXuAXIQ4JwA+7gYj8eOcZI4sJ3Nw2Lz25fU tNRqqUqqktTduSGAkYHU3awLi+RX5EdjY/DOczBg0msIoduglleNTsTYMrq2Ims8PrQHHxC9IUty QnJKASfvJIfnux1Ka9RPiRI3jW7rDnUHF1lCIpTYDmz0aUthY3eWyosrhskNZjDHS29Rib5ilGNU JkCJ2dKjg+PofFw3ODKbzOBL+f94fOEg0aOYbm8hWrEDmBjf5J20Jez2qHdr9qhrgk8D7FfQQBeM N44RZPuKi5g8YDojYV1cMTzfyNTdVgXVyUbUMYYAvLCIqJ58/TAV99nkz6xUQToEGwI6AAhM1vj0 IpLtThgr3tCa4cUMrHVxJfQHNB7ZguxltMG6tB3k3tm2UK2G4cGIM2NvZwjVvBuJVyMZH13aWesG GG21sybjE1Po0pn7V9NDwyz2QvzR6NhnNqrn3t/21Xoow9S29rdwuEnW0EeWjWwteRsz3hp3lh5D vcvdDg8zl9kX10N3CDI2kHDJUWDOuDLcxUvoccUANS17W9C7RQ1le0aj8byspEtrIWF3zARPK8bn ZQE37c+tasiHSLKHQBaQMZjMYQOmW8dgTTV4ER6Qb6aHsjudiWjF4/YSBKeH1x+m7LHaHgZtfiUK cys9tC6QxhNRGcggrYdtqv7LCAmq/bbwQLJRzSaHZosiEpBTv1RMIpt0VO+6DSqn7YoNaiXwdZvC +u2KqCeN6CKTi7nYAo3pMUSxKvXjFM8t1znu0orI4JDEGsboPRPZDHzR+22w4qSJD8Y0fCvX1Glr 0CiblZhRNmsmgApdbAEifPUaRjUaNzOKEl+wmHLZxex0LjK+KXXbVL6m2vuOD0gNXQ7SL9NGsQRI omVGBiPWP204ZEd0xw5p36PqkVpoGG4TKEpwKFZDQkX5N4h9TPtvJwcOxXyuGKAs5a1cVD44jnol I+YxiOHI4FG96dBvKh8imFfGyHmjzo3NtJS/gj5KXOTIexkFm5DxbyxCHw3HCrPRD9GKH46bTtXt CikhUgiOyZPjIP+l40XbHa7yUqgeKTxY015l3kIhTbQ2GEJQf9VlPIBA/Q0UA5ZD/KcB2saabQDj aoW0ByfGQ4YnR6pB5vSZE3p0iiyQrx0iPRjf0Db0bb1CwiEaMqDnqjg7zqdXkft7RIzyfv0QZZtS hsX/SgppJf5Xqi1L3lkWM5l2duTT3dEjq2nLMZzjUPkBsVEn4voaiQcXOCKj0wsbWdJM8Cir3AXH UVZzxQiViWSbAVmtkuIHQDSyqTGCQfmf3L13B3Qwh+ml1Fff/P3vf/v2i6+/+Y8v/usff/v23/8x GaV/sLGJvk1K+eH9568/vPvn8zvNmT5L2DQyWJmmNhPqx+dfXj21L3//4d2rTy9vp/K3+pfu++/+ QuQVoy9+m0QbcJBnpavR3sCI13eT0wPiQcMHteWkd38mvRqhN3IcXSz3r49DlGg+yIbbZAO2nx4y Cy4GUP9ToqD0bS9SsD1AGk2stecgnosSqN/CnuNBDJ3xJK/Ii4yZtUTg/i5GXna1tkCGyL4xmX5V Fz8+8GB1kYIMEwIhZtCn0N8aBh/ixGtZPD6ANDUhAl/1+HCGSH5zeHy8pNY/fq8JdZ8epqthH0Ci gZbn9/Pzx+c3bQbreeMhh/92Skf97v277774/PHx7dv3T+clMzXLdvf86fP7Hx51USi4iNHTuKq3 UPCwMaP+RaQvIcixa2wAe0eBnXhj8f4kWSYn2wNIkJZNZKeczDWp4jvLVzCr7ijh5bfD6Ewebgo5 a8WLMeN6umLxt22KoWBfKnDpnJws8U4vxsSxMvcn+XLlDRAUFP3tzv2LkRhOufdaq2T8qimPW+nf RR5lTLUtLAB3evkRA8tM92LlNrl4HXLMDid6yQLZFpHcFjSvd5m8xCFBTmnl7gkAGaBOE1p6YFl9 rLEJWjxpfOMziSu1pQYy/vuXc2jUhQXESTDBjbdMiWi5GtPkIXgZfUzkppPJiOsv1gg4M7mZopLU dKJpQsb/X7PSw8kerTciOPl5rFxvFbCqqGzPwyC1yqkjQYSM5mIMjLMTW7PWVlRnH1pCFUkmerzE IE5kDOMSuNQsYko+PvZCvdgsjkWeL61JKjSqweJ9qk3O1benNmzK3qdzdj+UuEh0RQ5UZfg7/XX3 qxiLfHmKMY3nU6s+OBDEYM/J/kLjEecLc9Jq8cLnuttcjZWgbMbGn6JVn7LnRU9awiFzLMeZFj6d /iqY7ej62cYDi8k349mGsECumFQfZTvkncgVB8pSNsnHl8vm9vjyaEqhkdOj0eNDp/T0V92U0kFz Q/h8SrlhiiV1VsfJZE0Bcdtw2DnQCOhAEn2BNVaWn7xL+Xrjd3KQc1+LZALbiau3jDZE7QFuga6L NpAiLVQBVqJe6Gy9KV+d66+U7M478c9DNBlsXJ5hf39suaI0rB8hxLbr7o3AcSPDgxg9EZOjXLZD OG04wmlC9ULMh6iDdG268U1RgsgONMOqLmTtxN8XJRDH1CED2zuUsERR1PtWPgSbjUo02cTlCRps RnLOOPsFsdNOUi7PsLjTrr0iuhGqqEnMbB1Ub42j4PugihKqeCemDO7IIseAMt29ZJnptoy+clOI 82JzAVYuKsh6SW4YDACz1lbm472sODW97HaerpS35XJyXozrYNbbzVILLC9LLSvBrCe8x5ct0esn twg3IZNHvrxjT/ETD7AoG51nHF8jpPaCzwkUrgPyVOyCxFDXLFki4lyIm1P60nKxz0Ekqegku238 Kc7IvhMK3okF74zoHzTHTysZfEsBQSjOgEQgQen0PefDFLANexyEKeJwipM4ivyM1ovORn6p/UfQ eINr5/a0vi4xG6en/jxc842h0FBsI2AQDQBsolP6D87Tf7TTEOIgAJaZs96PojULWMS1f5wB21Iq +EpyP2es5aeXxmE8IPczT0wUnh/JvH3bkvv96+hBPLz65qdPX0mo8/yxefXx+adXn45sZQ//fK8n Tkde9r+F9H/0+NrE5+ennv7PdfR/p9/pGoy9+WkTh++enT8p3fXTHOQYLCL2kxU3f3xqPwkmd6X2 ++rDj08/f/woC/T1+x//9fzmPx8/fTfqAAoRXjvzfEOOP90g375Xr72O5i/H6NeUUmk6thKdc0+l CSarSx8/fP/9zz99anfhb0Wn+A+mUphTqfC70iiCEN+ygT+jRnGQOOrZvO2tU1zSKI9/KdRfCjWr UDa+fjLB3LKz5e0Uyr/GZ//61LQhLCkU/aVPV/f5wP2uFAoxvH6DN22wdDOFQnp0z2xM7/NBVqGe /+d5Y2vmKmXqf//Vx8dfXrU/LsHih48Svv7J9Cxk9ez3FVsxvjbwBv6UnqD2i4hv0fd6hgt69t+f 3//wrNjLFoX7+sOP7+r17UXXut//tKRtfyxlyxq1LU7ilfXMeHh6evxT2jN+S8T45rHXM8rq2afn z3qRcAuL1v/0GkNW3Pzjt6ZafxQ7Jv6ijd48/hn1C5/fBCTq9cv4pQDM/RV//YW5z+qTe/vWPD29 efoD6dP/Na/e/Pyx7brzi+6nTw+vdEfV3sbRjs11IqK3xiHdgTgI8R5CsKG+OwznZF3btGaDXKXT uFvXH1kRIuPNXcAY7sGQz/aLsbUziJmszPl0jHSzBRykZTDYuX46WWlq1vM6E5RhOS6aoEHrjcHk BGvHfX+X8kv5QbwVn+lomMgv7c3iNK/yzU+TpGY0By2l8ppjSqw5ZYkK6vE76aTmjtWmnDK7H6Hm 4me6PV1rhNg9p+BzHJM9k+aUcHkxY1tGKVZSLN11M7Zl48hv1mRs84PFRtPvbrsaDmUVjq9liE27 tG2u5ZdA15X4bR5j73MmBoocjLMMDjAaSnITTF7aWbXcA0ITqbgmYv/FBD4EDlGcOKuE35ihOOtI 6hhqCaN0jJrPtcMY5xaTHBml2kUXSf2k9DF5/tLCITLhClnKVfZK+q18UzeqFw/szTThslDqrbwN WiIaUAIiFH25sz54scNaISpSgbEzFaJsRxWiQ9s/TXs8ylvD2bCjbEu73SsxuuNNxOjrS9ntQQtR gkXRZeOMSZOpIPu+poYCTWnRFxeAswRHy8nCx0K1QVY7UWAKOC4NSGRq2kmNXifN9hLXrIBr8nvH pXsbvmM5ObmiKnCQZLy8kwGaUN4G5lLnNoRDjJYYvDHe5WjUufc2JnR/pftI/Hia7bQ4m/F7nOlU EvXxUSp3+vgolTLd1VWPGuVxY9k34aVZHgV1BRvbdgh0Mw3zxJ9iMn2KMB+scu+FsxRh17gI5QWd MmPiiTp3w8gHzCGAC8quK4GBCXa+5ROYarpLHWSQ46X4PL+YFsjx76w1SvAlFosztJCx99NqaWix pYWu6Bx0sZGagwcmAoRA4hvHDAk2nFZ1ovJLPk9U+kvZV7eul+ToZdfGMeZQKP5WGOu8EpGUdNRE 4DsEDkEciXuVT1Pobc5B0r4B4j7VVCL2st+sEtGRElX6cZHq0OmZFoQcxa4porvl9PJO9ZIsbypp mb8jJyrrPd+38yeOaNZrtiaIvc569Mm5pSydZH295BDQQxE0cnS1a63yrCmY3Gm+Ui7LtGrvKOf2 gsnlkrD68siT37LisxvKMpfbTi8XrlV4yVHpsINP75UrsVr4g7GRDcRIGJzPEJtb33dwsRFoipEu KoVrMEPhXlMiOmiLDi6KI8sFrdHt9A7gKND2EtE5GWsKQiuUJVEeOF/+mRw/Q+PWl38OOM7MbI0i wFkEQtj4SI0CI1qkKN6x+I1KJX73K7uZCERCFTSDWk1Uzr04KlKkGOZrNZPHIGMLuexUBwtUUsBq S17ikpfceYBnm4imodDWgLbdPWwj+r9UCns+vfYAaAHO+6LHxpmizugvE0umvdoqb0u1GBGQmYQE 4A6KO4foJcTXfzkVEkxe2heHJ634bUx5f7GLjtQ4pmiZ5bB3GbRjBqReHipxw+Vk8ftH7eGglIVk g9cbFeQM43O3mmiqOf9lkKI44vv9FtbTROvE+48SyIaYHmvfKnZKb7R4cUmg3Sqwxe+vd3HpjfPy mxUXl4SKJ0Zz4Uu9ZXwhyIowBA3CUPYqZ/oV9LTxpppzirilXbTF3eAut/3wIMeI6qMxsrkos//i 6ts9am/3wN/wBtMdlHbbWXDW6v1Iej37fmIWzAolc9rxQD56XSWT9ZLfrGCPFzlZnLEWk70RuhJZ ToYYK28hO8G3Jrgd43CJtoMD6/iO9OoArb8/CZYLw7V7ST4JKeRFroYJdhKvYE7DsVnjTVFOZ1iU LlSywp3E3xPl9CCORzAhKrEuOUZ3f5IvC8PZMUBTIHu82tRPUgEwesMGJjzghVJvBQ/1ut0668S3 i3hHnh1FE+9PUmXmmV1UYLhKA0XemL6cqcEkTiHfqztoVXNCVFckyXoO9Z32ZSpizkobLwGdAKyB QWrQwtSyZZjOpkNvs0cMrkmtTQbvYYA1az8iN7nMKZIng31ns1l2Uq/Udok5GelyODMsJ0oULMGK zy4neRSAOys+m0rIKNPdNsHIxLn2B6WwXwrCGjxOgVeDx+ewlbb3JtklL3kJCA2BhEAYFBX0M7BV bJyHAWxF4vnGc6Jp24h/P4CtFhWKWxbJTdlJwzskiRGNgTh2XxLLxVOTehRnR5R6nDKyvPvGqSnF n6i5hxknuZT/iCnUhdTBBBp8mt2Q3xLqQkyh5ZOXoOQlLHnpvCWBs40EhUrmp2NhveuNjSXVM7+k ZzjQMw9BjMWZnoF8mXXz8Htyh4um0+w9TEniVBJ1756lTqruWeqY6p6lyBe7Z+fUi74lWmxYDlad 15fzi1umfD9DlN/Oqx3Ma/QkkdoIdg+2BnZvU45+A4k47hC0iXDw4l4YjJnkd+y7CcO0J9LSUIM2 anflxTOF9PPhYLUppHZBjiYQplHo0TtpGJD6/uyeo69tJUxR+fW3drba0i3ZstdsE0bZ3SZzMyxf 0KFjsh2wdhWt0c6sZPfLFF0Ld4YDg/UoFgGMo1wnr3hKHKtvQ2tbGJutvy4S6OU4sr4CCbRW/cTQ Xt7dDAlkDw4qQYhOcL8TEmjEOILSAivWhlr8eH+SLBMpyQveuCwQMXFEOplrwv+d5SuYVT5KeFMs 0HrjJV4dp3wUir9rhwiEEIi9zDyKAZD4NtyfxMtBLhwtV3XwVNFdK/pVFPFYOjKccjk3ZaC2svPC UW7a2keylehLYgyGvQt3mvAYJOS5P8mVQ7zJe5uHA5NaqBzia7GdQWw7QHX04kls2xwcmJWk5mrg Elsz5cBP8mc6YXesoEmBCFW4XkUUmUIkqj6VgmKWVldCpQh75asin2OIADyXr5qVp6ZAf1etTG2z Sb5aJ+Vc67qNKCJuSBvFDemquAUJrMBx8tDAis8uNbtMbjNue5qtPF51y4371ToTNBWoAFqb1CEe 5aEdYempiPOQVPIwBd+4UNsyMHUwpcCoQc+S+aRNPE/atKZxLjTakFfhWWqi9lcRmec7S6Bp01hO nSUgQvBuDBtZMAuwUWr15MvZ1XaynK5VCkTrH476ebpG9lvLZaKpq6e/FtohKhQ0QHnwEGUaeNxg A3AJPEsdimgbR7shmJhCvCYvlXR6wZJWL1gCmFIJYErn+9WT7FfZH7FdKdYyR9tEr71A/UyZo+5X HmbBai6lO08yBmo8DHuBLjnCbR4CX6liaVrWL8GghWhqI6aj1Hvc5QMYH7yEphKjepJVIHN/Eit7 2+j0ZifnvcOkD/BJ4sq+1NeRziuSF3Nd0ovvlQbVD8SBCW3BvZLLibNDF/Q8nl5+g7PiZqnCV59c ApR/pMJBmizQvOlPL0lsQsCNFyFJw949S10rdc9ShrB7NnO5gjOXKzhzuYLnF8DBNyAeRsC21bCc 1mo1tTO8nNg0e2IDcn9i+4MnM65b8BI2nDkYiyCtfyBNZLouSCuhVJTfrMiJFjmta/we1eXrs2fR OAk4jQfNiaZ0gnCfPRs0B7HyeiAqyZHfMRl/9X0WGgoWNf1bouyQSRSm01AnicILRpdBM2Uc3xR0 9xFkFuq8hU7wvUB3K8utiRyKaVsPAe9bwVCvbbKYNirqkLXIMzLXg+77yFcwqXQU8LaYu3hFkV2s 3xMq/lZiqPM8RwQ2JG6Uv1MuJktekc1OviyySfJf5dbgBmF7YigOE0Oj56iAeB6by4qC6ztE7zRj KR9mwoLTSbsjSJeayxp8Ftflk66q4MVUKtLy+oZsqVk9GEyDDac1ckBmDAanVpJycl0Sbt3ADoAb Ei9pC1S7IVmUtsCtG2BeKkQjk+oM0EBYD7KdVGM+WTQZKAwen8cKVuxKYG3y26KRrmF1gzWF5Vc3 A8NprBDCAN1BGxjGJeSR4zwMl1QWJRyNu5WQU0l1OJVUh1MJoEclgB6VAHpUAujZc0qyAE1UKgYf 2shPVtNzQ6TYcoDi1XQH15q1Ueoc+4rUOUYl8bWxuPBy7gq9mn1RghCDYquRvPNB3cVMZanvQgwf ZcTVKUhMemHLL0f79aJbCtrNvSK6ZdYqbFXyW+eFuYP16juBDCAyZbjTgE4V57Xcr+xkWZpgbwcS K+JpK6suT1JvB4nFHzXEaLQixUowjvH+JFUWhZVwfcaxnxq0o8C1GPHVhNNMn7WuYIerDZJPyIG1 esW57AFObtg6cfZnRq25756AheUfqXD8J9Bp+UfqUeWaNIMJ/lr+kVDo9U0Xvq05ITtX3lcERM+w kibv9LpnMyA1zYDUNANSJx2q7tkMSE3njicY04gJ0IR8HbN3TRQHWSy6otQz5EXiqyCe7sHDwUlI DnzmqwQ1yeXXitzSpwZ/HQ7KJFbo2cEKXOgo+FajccTivLhrSgdzPJo5+vuTYDkszrPxpuZo7mWu xgp3kq9gUunII3dTrBAjkNd2JtV74kX8HbHCIB6bdR5a4E3pFO9P0uVwL2SifMpoemNwg2E7rR2e 5Yw6ZjbjSSwTZTXF6D7zlTIxkyrLTtYdqSdTUEMVdrcq+7PGlUmtdTlTJLdlXcZt6gywnSnSg3M2 2miMJ3LpKzBG7Pt9GCUZmGOKTG/k0MTVVJETuOGMzzXoRc24xj61aScJjJ1cF+RLtRugSdoCTW6A U+2GrFnakPlKWyDRDdAzFdbeJ0895kYUbAc4dT65M+leDx6PkjtdI6FtS86qcGpsTJC/ggJwDued WsJBVmMAKzHxuHaV7QKcOlW0oDezlnaDU20JI6ctwVxtCeZqSzBXW4K52hLM1ZZgrjzCXGNjPbRd 2TSOsbLc0FZ43/0a5rNthkvOB7QU2YzzI9nEmnQbWW9yjTdXTrcRUya/OQQkFySFB/NSRwbxqpJG Y1l+s7h6s5WTu7rhmyWS/H97X9MkSW5kd9b+ipYZD0UzsAof7g6gTJJxRe6a1qRdrkhKe5Dp0Jyu HbbY0z3WPb1cXvjb5R6ZkRkRQCAARFTVjFlyOORMIyPTE+n48PfcnwcyQTchilfDj9KfJxusRR2c ZGogaMKHq2Wreuqa7zfrQYBbN7pd8P0gAyum1Z4tfN2GFXx9jM40JSNfzadDyze1kbZ8XotkFk9N COHhat9awEPBWNs69Y5tf62ubibwZ4PtmPGT1fuRfaTotY5SoSwdmDRwYHmxas3FEb1br6DOr0E+ eEIveD65HM1SdqLTbGwpEF81pb968yDPzFy2vF2z9lnKN1vSFnK316anutKDsskR27+vlxvzQfEp TuNTYSEhKdaoM6gFnTxwYebcbNXG5wyed+TXwI6AEHcE7bAn8N4RPMMOsAB3BPzQgM2txzn1SxWH HN8V0fBqStVNKVWO3z3f2rYRJA9r5hxPqbp2GrJlv0yYufpH2onbFlAooRPrH+lgYds181wlC5s5 l1E0YWLsbig5OePKuXdZ/nMynEMzJsNzHTSIShurMA7AgjMqaKM0ib4cwQawECZYEqH3fq7jaIwC Y8pgUubgwUcTFPrusqpk+6sBk7AGTMIaMAlrwCSsAZOwBkzCGjCJ5mBSDJKlpXhblKkLTmn+zT17 7t1fQ/1v7u69lh5Ts99chEBpoyw6u89aN3jdvgyGbDbj2BK3kMEAhQwGKGQwZHHKcayQwZBFJcex goYhzNeu0UHxBVDxrXD4Ib0yPg6EB/+Q5bxavmTOqqajp8UPqRXYBlSQf8QoqGB0L9szITrPYZau TlOUDGlJU9T6APm63iI8vOcQEZ2keumA1uZ163DscWwGGaCWBEX+lvbR0Pkm9VqIIjlvDTalm1wN t8cgikHqNDVHTncCfEMkab0ghkl75FW8jqjQot4k+9fV5mZA8SD7KibVnw18XTxx6JHpOnxCzN/b LWQhwQ8GAkcG4c4ajqCBBLUZ7VtDbXyw0IQniu183uqX0YNLW0PwRuMlP6l9xk9W78cTrRZ/lg3x znobnHfm4WrWavsTB3a9qWx+DUZFbr8anJt2rIyB2CmWmpZ1prRsB8/imrnLV1iz9khdpUy00QTy dWXptCQY5MKlpqe2VOSyXiHix5gvVmmHIWkKQyKgZldtdVMxiFZWzCoMedR6znlnXDPyGZtR0A48 EHckteAO/JN2YHq4A9PDHfgn7sEw9+C92LVW/dDOYhcOCZOTxEawEhVs45BBr5jjjlf/gXaEsAUS TmLo+kc6QMV2uK8Fzk9whPpHOgxrl1iCXHOk2huADYqD1v3QZRZlmQzngJbJcFbb7zo8V/eTdtgk anpDY2oHoi6ovBmqijdqOwCnMBYfYQsYK8j7bKBYuaMKjJLs64OQS6pBLqkGuaQa5JJqkEuqQS6p BrmkGuTS12gJ+nl6pMBigFb5U0vt6Pg3GVBugcXqHQPuI3gOzueYtqR0b7Qsz+7fIOKTpUtMDb6J BQwTCxgmFjDMLDw+jhUwzCwYPo4VMMws9D2O5fxmHIvzH3kAXCQLccA+Iyl0YcQ+N5JgZz9yELBu QVywt4CrLUPnnxeGysv6rh/PpXiF9yEiD0OMFgLk69HRTWBF3ViNzl8WJVzkP3tZmNebyJ/ZAvOi dCq2sbr/9Dqc0txrhu6lrwr/BC4Gi8brPMBrnfWX30KLqS1Ka/wVacjDddUF90XotrnbjLs3MZIO KI1ypId9/ktSgEsDFpm5ViA7Pjo3sFOvmRrryJhWCO1s+EEaa2ZQNJC+10PmqUEND1fLVpHiEAo9 jg2uG92eGnuQgRXTCmcLXxfKDgK4mSXmUmn+oSpr3rApRANciE4ylB9O5vFJsN5M1kgns8aZ5wt2 fC0kO2rei7xrzFC/Wn2AMLLlSwb7s4M7K8XBMeqHq1mryBd6KKTGZtcgKXNAaixMOk2Y6Pkn10vm pcYU2wQRPodn5m7ZKWhzNrYUf3UD2S0QRi5ibXqqSwKvBTHJBexr4FjWKeIgkH8MkO2nEngQQgBf 1FxcNajl0DpyOee8c9XIAzvDrkf57SCp3wNG7wCFaQewSzsAZd+wxtaRi45n98zzDuDed61zAKVt r6rqOXCnSf8XKyJMsQoEpxVzngEEbyFEEtSk/pF2ELwlUz2BSaofoXYOANvR+Rb2J4GK6h9pB/Sx Um4ze+EAvlpCN+A7OYbLSbvZ4uPJcA43mwzPoTME5TjIC3Zofey8cuBU1Ci4ebk3kAU/xc3RGxcX 5ePgN9Q4sycjBsU3wqNwc18DifsaSNzXQOK+BhL3NZC4r4HEQw0kHmr6kYeafuRh0VJJ0oKsV3AC 140GhYKXugFdr3cfvHeW3MJ9jPAuG/ID6cFgtfRG8WZv9jAVUPIsFTOOFVDyLPEyjhVQ8izNMo4V UPIsqXIey3Ip41iBPfB27gGWg1MHvGPokwegihxhW4wVYgQzD/AirhrmHuAVmdCSdsy/PmpFaF8S j5aUTc2f2YBHW5TDItBxbTF61VHxHpD41xPh2ghoN/u86wSz3f5VSNB3Z1/4V3HB8mc2CC+wnWiU aOe/IrpM6F1can5WGr63xP6iaxDBSt76oGvgOCyWPGS2jKPxsA7eRggFZCvdqc9G96DLBxlYMa32 bOHrosvROO2xEewczT8UXY4h2uDJomB4/N4oGB6b5xyuV7fzQmxLUbeD1K/kt75a32zrKVJskkK8 2A3H9M02WvMcg3T/4H+MhOQeroattugNMTS0qpka/VpQPtloerxbrDZHyFdrJD4kjeSwSgkGz/PV qlXojxyFxv2OAy1Du5F8nDbRjd7GCMWc9FVTVjIat5H8g3aBzI0+JvkyV2OfA8nvSvjGPky+K/29 pdg/F+WvIXxZp/DKYG+L5yRWnHY2B97LbUKa1xnU3tr8qI0z55/ZjUjMfEZxDL8DF/d7cOI9mPoO /iHswOPDjgR+v4O7CDuS8MMOHsDv4B/CZjJ8uij9o9Yc8nfz0WNz7ikbLT0okYoFK6uGtOrmHHTW 57aGRAZitPFIpeRk/iqOhaRbesMzlYnkmXPbj/ItuwHxbMrqZDiHx02Gywoak9zVARD3Snu+b+AA aQL/fNIq3osGht8oo5/gWXDv+NBZpJIGyUKewFnbDu6UhKy7GLfr/i+MG/ExqCs6isSE3ziZg7rU WKKPcfOVmrz59SXyFd1kwcXLs4zLOJjlW8bBMPMeZ5V1XoUTHGpR8WajyJqK1vWEUzVeCnypX3gP xA06JfurGdE36K7mGH+jAnSd5UXGsblIhR2KcpW44EmsePy3u7/yRW19foxT7LhTuslrlzSKhogb 85Ne3rwUkxvobpKXHKk1JFGoIYlCDUkUakiiWEMSxRqSKNaQRLGmUiXW0HKxhpaLiy4vIoEtFCKc OCkDIkatMIRWTgpI64DLYoAYmhgJZyR69Tq8LPbtjePPbMC+HchWGs3LYJ2rEiGRT802HOhsuD1I IsSTcyDdoAcJDoyRBgmOYMM6sgEcYlKhe7Vfs7lFZPRY+yomNZ4NfGXkO4q0ZYdPxKEJxaGSwwhS ABHhzhqSjnLwcLJPdN5WQS9pHd449UafG2i8EhprIn+/5hkfrN4r/X2SFOAdzFLQYQjRvDHh4WpW IUTD2LYGRZPugOY/18ykofkPYXRFOHbFFLLdzX+Ocs3clSkpEL5a+wx4bEsuWS7Ca3qqK4u7JQ8t F6KuIS1Zr+D4QffGf8k9aaKDakEaulJRGnvVoBXNkoJEyDHrOeedSd312Uhbaj+yE42NOVnQ7amT OtLezWaMpuIilndotmN5jqzW7DkQmEpMrM65bEGKk5Cz/hFfiTLkXMoaFbAbyEocqCZo41+t6lXz cncLile2kqUtAfb137YCbOLo2U0CbPIcYs/hK1LObuTjZU8L61SIB7RNyhaET4bLXZWoLEZBZTEK mqe9YRQoT2kzqE1Id8kAQzvPu7/6ctfzedYs3+WDWSS9WWVpY5rzK1oCX9vtpOdlkk0oHccKeYHZ 9NFxrJAvGWA5sZasQhy6WQGJ7qjicFYmthC7SxF6tBP0FSQvCBbpyNFDU+juOXpXMb6ohmkwGg1/ ZkPoDkaKGo153X5Bkc/zxqBhNPygfkF8z9CW78BODzXHHqJ9uFq2Ght7HQtpHMmGdjW6OXY/ysCK aaWzha+t70k+QGMO1Wj+of2CkA8z7Tg2GzQUXTQnDUWOgfwq68e2m7aiaDHdD6a/lrxnRHR+eSes tPqIdkEBADAgeL7qOxODsQ9Xq9bVACMVQvfsEuRbDeyviSaYhe4xOFimodWZ0sJCP4djZi8JCRs0 WvssoXtL5VjuWtb0VF/o3qUJ2lJombusrgWJOV8CzZeUoxKwjJ7VUltrdFkUdNWiljzBA3eBrFMn FWNnI8OBpaCFKKs9yWbyM/Q8vCOdKW4mAWZ/cVARdyYdXFnQocwXqKrnjtFJEsRoz/FZB6G9zrcl tSwJi+ofaa/ADe1wSKjM68mfIsDxVugusZvsreXuNdmiuMlwuRA2Wxo3GZ4XwkrUGZyyZkBOAEWy e4hDOfLckpCbFcJqsi7pfeNhQ0Eyv7FJ48x+6CTdTGpId7ak6lU1iQ5GLxoMiYw8/30K7/maHwIK diKTjMXwXjS/rpNsXEBvl5Ns9YYYY36DQVKuqBNThZsUajSzmRzjWKFGM5u3MY4VsJg4B6s88hFO Ck7SqBiHNjGimVXGVCQnyU0xFQ5TISSTDtq2gCrghCi09kUVAwPfLTR/ZkOFJtuJsBrm18rpnQuL 5uKNcO+DtV5LwSufqCZTlWnoPrA5BvhvBxCjz5dlWm9HOT1eD7ZdwBECf1NFAwTzgj+Ht44/swXj Co+ICvCFCsLyGJcnNqA1uD4ZTrsrws6Vj5HdQaNBEAgJwHnJ/xgtW28Rw/vleoCdMB6j0S1KXwcb WDGtdLbwlTEuXngIjT1sRvP3Ji3N5dW0DtGZE5Sgeb+TJAApJ5bGyqtQggdqnnmvJCXntTAucSfX mBE0Wr03I0iiW6ejMd5HobMtCTr7MFjFu7ovRLemhHFll2AYGNq9GJefVwvyZUoX01NWTWkp1H4O x8xd6ExChI3WHhgx5mKGJgSpq4SvRZQsF1E1PdWV1DKVesvjC6kvRZFnWU116sC4pikRwFcgkwiK VVnkWnIxD9wFsk6dbl9nIw/sPVwI+3pgqh1VhpPfsOfhHbWRkyC2yYNxCBh3IWRxVpaDQDEu7xBZ 10hqYEZ7DiyPTkLTalQpdmBX7bpusR2Hi+1oX+yA7iobRueOrSgpy1KevBtU8+VqOV+ulsvqpU2G y4idnxdjEHsmwHBPF1AtKA4HVDAiDuU3mgvPQLXIJ4aNS+iBZn0ZqndS4xQel8zFv2UNEGZqymt4 nVa9qqbAxph5Zg0ZxdudlMYMP4VXxnGIJ1r+f/W++FNIje208sp6o5c/RTQbpVf5nUuae5u9KUvZ KqFxrFCbFguQXSxAdtn0vfNYPmvvMjhP1gtBBelSFIfW214P2otEdrtY0FCYFCrx6ZtAzk6Z+erY QoJwSJzV4WVFuqxG5M9sAObETnHjfDRSCcwtAvq5bJq7d5bjJNByneQNK4PPhXvihQQQPIpAdMii c86DGWXTrJaZbWt2gTRUsYSX0eVZKcnSGgw1Yl6j4Xulec6QEmngH+SUNEXBonu42rUKKGGpIssm x+/V5GbE6xjztqdU6mvCj6Bns/YWTCPedTX/SCkyTQGcZNNZqXY0QA9X81ZhBZIChsaZt2z66+Fd SCKt1D7hYvUReJe1ksNB5tTh1Q7C+BerCh1eC13TswuQzyy7lmrSgndN6lxM9A5F2WwdEVg1Za3l RoU61jGOmb1FJQTmaO2z5HS1lGbkIoymp7ryrFokinIhUtNTW2hB3pe8smsqNe14l5lm1oDxGJNS zTqLVoDl9SquY3aBrFMn9VKjkc/YH2MSH3UAR2aHUtQkYux5eE8qmtmTimZsj/tb2dV3ppPNMxkj CuJaU/iW5reNBh2PljVl6iWRa/0j7alesb3ZQlPOYhrd1pvWATFW1vHlj0pnzu3W9mJs5WKzbBXV ZLhcbJatpZoMz0X4KSj2WCXVspLeYyRpRflBgL2UU7XA2Ow9OaHolhL8aDYxttzuLQUFxUXWiLHV CObwcq96VVX1pa1C9WwVqmcX+VhGOcN/n5omSB6A1so5XQH7TGrc+AeLnnSqT+M2RKLyuyIYpU2p aLoGicsnGF4GCzhdPp3wMlhA6owuQHUTaikzmEVuL4NzrC5GFbweJFH4qwetgGhA7u7+GsqycHxr msrCWbKIyzYH3oX6DsPoH62g6NXNbNebB3z/7vsE/5LmwtIGWbq9OhSBjFzXAM+XMw+WXwSGr4H5 nrbGxjMA5qz3sTk7DU89dax7WUxySC511ZikfdT61M4tf83paefgbbafgxbA1Njz/+YTB+evyecN nn8VgqYmw8MXBTqXmr5yc2tvUctvRXxuhfzXNBau7hdd63c1jxaUjj+CHxXvI4KVLDm+1YiwVx5v HlNB+U0av6qVdbaW4XPgVxVVZgie35H/N9dGOnlNvmv5+ZtapCZMnb+pk/t/tOFVZc4AJLG4AdCb Gn4Iph4iR+bAHjXIiFk+lAYZMUAXViEq8b9C71q7anOLYMyx9lVMKpwNfGVU3TkbzDJzqc58tze3 eK4lBRIG4Am8DBj0AF46J1IVBfCSf5zWmZdWUS+Tv/vl6x/ef/zXT0ulMx81H/TLwrRKy/dSGWeb fsnvTsB/0R3fO5wFDCJIPZq2qt2lQ6T1Xu75tUiKuotLJ+HnvI80GnDLCv86U7prpg9y0VxsZO2a tUdqeGdghBYcukUuPodJND3VlYXaUvaY86w1gDHnS46DZzwsn9RO8/IAQITKWr17sKglW/rwvSDr 2m7N1OdE2e0erNvuguj3ZJXaHd0cJjhUz8N78lltrn3ttr86FUIv8Xr23eHjJweDiFlIW9AFSF+O +C/WxEk92tQcCLx8fv3+yzdvP78TMz794csnsewc8r/hkP1xCRXctQT/HkIwxg3yS+XVBGumH1h4 kJvbKepdO5vxtWYTiWL0Zj6bdVZLR9FXspq0c/FUntjhA16F4mWhCKROfvEcCTAZXnbiVbzgLo14 r/+2ofuXsAAetF6kdzopH97AlLP3Jhf3qCZO7gVlGYBs6fVkuCwDkC3Avg5na7Anw3OU2GsVyCsT h3xnaVtGVmka6tupId85RN6GXJLR6beSbLNnvAho9EP76RlTJQ9gq+QBbBWvY6t4HVvF67gqXsct EnX5ZwU3JE3w5BAqiIFX2AD+b8g96jgB//ky6Y2Z/6ygEBs6CvAvikPLCveysoTWG38+F2sDZRpE 7sPLyNAliXPSD9ZZG5oS56ZW70+cMwEBIjq4c7ytovf4cLVq5TbPJ6ZA1auBfbrPng1uzed5KeOM VX4trbY6/8NM8j8cAfBGt8RPs9thWDPowEK6lE1sSJloz3+Y1axVP9NeZNWUK5RSvA3PdKSntCRB pdz0RuJI1mssKF+82lfx46bEj5sSP25K/Hg2PeIyWOLHs8kQ42A2B+IyWBCgWWY8iLx05F1Ku+Fe FEGEigcNgU323Oore+7vgWywtNRL1rPio40N3uhHjMrYV23y7jGKxlrTyTQafhADBJpPAB0ITzod FsxJp8PJLWedYTFuXcUgvX2ONncwQAfZtzWpZujQ+GNggPiUjLHxtnI1/0AGiDj0EPZN1Br4hu6k t/No3bpaQ4AGqdyT5Wa4xb5ah/eAzmnbugrPdu+ubRoaFUeIHjyZO6NlYzP64WrWmo+D1163rMHB Yoz7mZ84uYVJ33ENZpmFW2dKN/NzjGvmDn2n14x9lsKKlhL23A/QRKt0lUi01OXn8JCmz+qjwTbL MbIOyBc5s0LOtNNFbpqYjkjA15zmJSEWNZ2QB+4d2bWQ3fXYSluSotzNFO3ia/aIl7g9JRV2D9nj 9tRjuF3U2i6aqW/lBWVWsuka+oZfw2xpHO5AtvcKKMAl2MTJIltU3Ohtzt2y4yZdhhueaYACMhPY QiWdZgtcfFHU0Q2VlHGKOlYf3tL4tV9bYnKklQVRsuoTk+Eyd5HVoJgMl7mLOJcw9k5hsAo8ngsL aECXqY19gHueGOOTKDtsSnxk15jUkFB3e+Wr12ZLZi6j2YqZy2hW8eYyOtdJgUHMRIEeJlFavQSe RD10D3blSbRTCsdSQLMQ5eDX0BaTlj18reGf6LhyGlelA+2qiB5XRfS4KqLHVRE9rorogSqiBxZV HkZpcopjjEGRhfg3jey+UPHjG5xWecQAYbGCSKENDTgVSd4ZhpfJVM7RJ97rxm7MU6v30yf8Lo4c X+2EoTCBV+WAAHlj15U1hoSDQo5ywtiPBrc2tXwp4xy7llsxrpo+mSa1OUJr0dWUzzpaMQjcM9An HbRGS65Uils3fE4HrdGSu5bC5g229dAnHba1pNOlBELTVZOkoYuNLysR70SZNprNq2ZuTUhuQNhN DmUTKy6DJf4nm0ZxGSzxP9mkiXEwmytxGSzxP67QDXIS9OYGSwzZ5EYy0Eq8FyHPfYzDcW20V4B8 WYvDZW2jaYdxE14p8C3Z6WW+jYbNG6/Pe4NzB/YfTv2jegVSTrKh/ot45UJ3KtvlRys55+TGN7Sv lW5ToNhFhh9Ufk/ptOo27l/DlX1y/TL8BosABvjXbLl9BYkfBfB6RZYQJYe2SWnravhe4adR3CwQ GTRR6rDA8n8GNf+zYessnCe7fs3BdZvbxdeOsa9iUvFs4OuyhF6LttxSv73S/L05TTMqhndbMmR8 GMgYZ9BL58LRvvXOhYJOtLkG7wJrrtFAXk3kSQb2ircDKimFr9vSkmn1LFOW3cDjmrnPIoTfJPaS w7OanmqBOTPQWtNTXVRUi5BPDllcg9FzPmiN0niYnhjMekTGiE7XwOmQIq4ny4qNtPZSRG4PywN7 6BK3i+XZw2zBHooI9jBbbo/GmdvDL7naVL3srsdRgbQ42Q38G13WYZqIZK2Ml5mDvCDOdLzMHSyb 63lSzkTe8fXY542cMkZvK3wv4H+t+Yq0DIbAbzXXy+4JDlW0xxUfQBVyDVXINVQh11CFXEMVcg1V yDVWIddYJT2Fi0RMbZS1oAINKvDBC8xyVoEPGxSRiRPJcb6xWEgqGQJhSyWDFW5DAbxsJYPzziw4 xQ15FIsiOU4rl9AeeRSXV0cxAQPHv274X8zIo8B9dAHRULAUrdM+r7sEo+5NEMWwNoUU/rI2Kq1f tdOedItqjXzPhpu9wgznyNLqEIR8PiWgcpAJ+mGwjIIuJaB6KIS+CXg4Gt3SfehgA7enlQ/Uk4Wv nCELQAGXareV5u/FQ+aBHFqygeMyLwoUfL6ZoaMZQAC2bz0R0cQmeZqr7a9DARLfQLR0f3+VGReW jZxsdGjhzgFfKXn7fhisMqLHscayGW9L8FNuDTo+hror4Kc3skk3MtEepxCL6sxrtkTdjTEc5JrZ C16S1TWae2A5VfZ+2xJVN2nXZm/7bY91yZY3VX5lQ4K2xzaVVbKeiMoehzTgTFkFCTG0rw2xqLXS 8aBNJLsiEsp+NPJA/qdwqe+IrXEPJAB7BFlgDyQAe8AI2AXA7IF+YA9ihXtmG3Pc+/YCExnT3uz4 kdSDSYquAxHzTNKIsospQTvPBoUDMcWUhK5PZ2jJE0/57IZnOiqJW7Ln08yAhmd6Um46Unta0No0 66DhmdzJWH35AVJULBCqhRqzUtTT8bJifL5x4HR8A6rMFiZPx+eZFz4qo/mSrweokaziDxg0pO7+ 6kOTzonnlTiHkfj01HoLasydu4hD87yjoEasAhGxCkTEKhARq0BErAIRqQpEpCoQkaq6UlJVV0qa Z1uzY6uAnj1pEC6KfpBW8QNoHTZAazOVVkGU3mszT+LXgN7K4MkeOhgVh0t7E1+glCEFpQwpKGVI ZSHwy2AphywLeF8GS2k6WXj7MljKIcuC2ZfBefY1H7DSB0F5H04qVkbSqpVIjrA3FPrFGv69LE3g aUvaLYR2hq6ZW70sIJF+GL3hQPnPMTer/WZAHZcWqE0By3x3ktbS5HevBCz5M5b8GefnjoANoqh1 yg+zQVlCxTGd+Md66wzLZxN/o+tmETES+pl7oALXRl74R7DKTpUKX4C8AE2WP7OFvIgDRFMv2b+O Dc74inAPxFsc6WijFrHSDF1B95rD9RjRRCnYXtGttyGMDQmsxuCSPhEbgKOTBiZ8ZrxMb8wsY4HW ajKmESkdDXfHMBa8DWH0Wjt759BojrpEF3m0bAXocNJZuyAnkOSFjkZ3JOsdZWDFtPqzha/KWBgf pP1kY7beaP6x2Xq8i0e2BvDOSGcNjPbhat8aLKxdtE2Mhdgu1zd6pWap6KPhnb2RI7pafUCzVL7E RL5pBX9nwQXkjfFhMMtHWkUbHUWIhXbF2UXIIVi3rto0srvc+4SyMNZZKioYrNrS3S71KN/MXWow yUkZzT2whCkbJzfh86aPe2iRnMuCAW2PdaV8NhVpZRGJyb11465z+m0R8mx65V3ncsAvrjvakg9B umIBDRkzyXXH3vN9CPk2Y/mShnz1cfk+PRD0pVWP0d4s7zsb60369SiKK+utnZihaUtZ6y0fzMWG DqsWNbeUPWivzC781DnOVh6YD13AeToQe9rDzLREkwUQq+fhPRQH7aGyaE9GL+35zi2BeAHm63k4 ZrbF7eUZlAu9AmCXWHxyU7AetHGQ6PvnVmKiCjEa9AxNeFvIuhRQa3imA4lp2RxSPK/hmR66pYPa wg6KpoUDTvHFBtuy/RLqLohS+6gQS1pX1bROWb8lL786Gc8qsE7HN2ghu0EL2Q1ayM7R+mCUlc6+ eNJBB4XSfDhUdK6d0z4I0q5p2QTVkd+AZ7OHug0KfOk230b7UBVVQ1VUDVVRNb6KqvFVVI2vomp8 FVXjq3LtfRVN5qtoMj8vaDizPENO71DfjSpqo5we2KENnnHCDrn7aAJBnPMBqLzf4gMw4RlPDoeu JCy19xZJO26RYce1Zir5WN40c0e6c8r2r8PLxl1imrLU5ziYZTwvgyUuLstvXgZL3AWVuAsqcXFU 4uKye9BlMCwWSRABYBXwQppB8OcG8CUKlReWs1NWxLmoF3U/VqSvYGuRJBTqyRukBPtw0qz9bkMd Vyiqvj7kNggXFZjjEhF81SkSqk6RMGdcBz7NKBEFFT4tKiub27C/xnX9DDtIrk+aBiHxMUBLrbMQ TI/nANukd4upZA/Vy2BpN/A2N0WR8Ew5Ak8TBVldcV263jrlSU9OIEdgvZ1NUVAaYwvl6NyjcSqa l9VgBBcdf+ZMGGfT0vAIQQX/so3bwdvAn9nQo8ZFUZ6wL6VCni92CoEIWqnDs+G7ZcjPzFzQlq9X fIZKLRESntT2z5at1xLpUBBzSPIJRqNbmIKDDayYVjxb+MpCH7xVB9NKHZ7N30soz+mZGIxgrh4H 1QriRfZwtW9dtYJ0U52Z2E5s+ysVO/HOwfsH/7d9xk9WH9EuynltUaO/44u0jgT0cDVrzceN89E3 LsLAMdQB1U52QhxIP4CApkgcrNli+qudDvLN7OVk1dxn6QjQJBiYhYjaHutkHLsEXJrEA7PwVttj ffzmtqp5ziP4psfn0lFcXJjJsdgYfJLMUGdRS0HxkZtPdiUlKh2jlQfWDRYgpw6axe+h0/wuUmtP rRLtoZb8Hv6xpSd9AffreXgP/+j3UIje9WwYUhwde/vVX4LUaTFlJAOUlGnnViKlbMfZoGfQq+zA apqI1RQybPicjlKhFro5RSzrn2nZe1IgsuGZDi6uC0wLmWVSfeMC0TA6Qs0pK5I7Hd/g6rJSuZPx rFrudHyDq8tq5k7H5x2/A0fSkYY8IOHiPN9LDf9JaOPi7L0ImS8LZ0AFvYnd5Q51lD6P3T030kOl ioEKVQxUtol4+qoq9i/bUjx9VRVum20wnr6qiv2LVexfrGL/4rJQK0qmuuJ5HLm4MNQV2A0uTmpz 3NTh4pAfN+8w76S/9obDUUo6RcmUjkfmkRTcpoNP23EbC7k8n7ojHfSjjgpj9zq8HEQlAivL6F4G SwSWL1F8WbJjHMxyHJfBEqgfShRfKFF82T3oMpgKkpNBhWfC+rRepKZtQ1+NFwmHXpNF4h3AcpFE 6eyztUiSKuWTN/iiBl/nBS+0X4g67hzV14d0g+Dvbk61X0edSNl2Tumrqk6ROCdyx9o2TWcuzkWt EGV/jeva58LFTYgmc++9dEVbllQHu3WeZz2HbwK2GKRX7SPZQ/UyWNoNQsxNkXf2zMURG2gMbXJx YaL2b+6Dj3ZR/ieNsiy1kHEAj7JqT7PzYhQX7xIib95AcQENGVL0Mrj6CsVFFAIsW85UG34MxUXG IGAU/khUIN3D1a5V/gitDevYenIDHk1eie6LBNch5lVMaTzb97r0FgQgNr/dI8R8fyS9ZbV2Di1Y c2c5xvMa9YPYh8C/wjqFAKbUhDnnGbx5cVS1n3W5KpYMrAtoX9bRWrWlBSJ+linLHkOJKtFo7vNo zLVo4GSD8TaKoY8HaREEynpK22N91FCLOlIWllkDUbMOjENng2NYF/bnGeuieW1UoalJqcXZsiO7 /xQC8x6Yfg9B0NISvIBN9Dy8B6YPeyaspaF5wa96PnkPo9LSUb0AqG1FXLnNGi3HDN3Zj9MNZUP+ PttYajq+Aehm+4hOxrMdRKfjG4AuzBMJg1d841H6JG7jNf+bVxyJCDSwHrykxROWPIZU6Qi2iiey uxVGxfHEUeGx1TUwpc32VUhfVQNT2myPhfRVNRCxzfZbSF9VE9zzGVL1qhqI2GbF4dJXLcSUhujU KnRXwBZwWJoVgG2YdlPjSx4mDAHETcA2Pbj9o6jGFaW1dh6Pe04K26Llm3xwbcp4flqIf5nj1mFW 7i99VdXaMVkJJufhDFOhsyrasA1TmalTsVsaO4epeAp0rG/RB0Oyo48vE8zmGiSTjqI10BbDDlYH vTdxd8jZQUD0WhuQJsR8Zw1xQA2M5fCs0IRYOsGtha4upRMuFjdmFL2YdeyD3bHAiDTGSXc4R9IO 1NVo1vrsDzwsimfA2zuSI1ouvylZ0pC00JHs4XuSIzqSPVru8Cmb1GBbR0JFS/ZSyjptHDVZ73Sk dFEEowrTz1LNl8ESoRZLhFosUY5Z8uUyWCIZYolkiAXKcRLC5QYLlGP+lnsZnCdzcCwiRMtA2g7E YVBByoz00MkYi5c1OXvHc5XuAwh6Mec2SPG2unFZ8yl5NriKKaZzdG5kLU0WRxawlg/PfhGQ9r97 fT4fRVwGafaLnjsZRzhVZQbl5Pc8ZUuUijJVnPHAVpLq55V1nu/xWyWZPiXzTpOAx/+aLSmU4yPt m6vVtffr/Hf3G3n7dQ5Q2Ebysdw4OAnhJkWFcNLPtkEiLmXcwPWaIpHprmXt4R7kfjUnMp1EeE08 ZnxEp7R+2VI9dNHxZzbwmOgeOXyN/mWu+ys8pndR+o803fhHw/eqC56JQt5HrLR/M8IUgpTdyK2a L9jgC0whRQfrt+pVm1c6QZSIzIPsq5hUOhv42oV6EdEse+ZWmh8OLdQDYxxohDgUQ3k+bYZiqEi4 XsIhxVBtGp9iu2fbX6hB4Jdvk8jbOD7HDIeJzXMu2YJ67zoUi35pLJDneaV4x1ckjQTh4WrYmp/z ruepcR2K2sgBxXowqRjgVWmQipVFq7ZAf7HeQf6ZPfQTJYHR3APj8Cy230R2tnQ1yTIVbY/1NQtr 0UPL0i1tj/XJg0LuOrjpwLgnByNFRqeCeOC0oViSzl23qKkg/tDtJ7uWElZvtPMZy/Vsi5Ztgd/p eXgXxbuDE7ct3fwK/FjPwzvyAGxLp8TCoun55B209oQga9oyUFrS9J6/sliH/WpaKk/8F8ebNfBy wtmeLMIjUZmrkS0b/+WhlpPw8lBLrlA6hy0P5Wo0K28Q8GissvYIIchsX57p+EauQ7Y7z3R8I9ch 26NnMp5t0zMdn5PLIYp4nhCBQy6DVUFmSqOgW+v4RVp8Fp0lmKOV1im+823hW+m6AEn1d1SqBSr/ WBePyU71ZTQ70ZfR7DSPo3k1z8vofIr5wHUcg3s7IMIAkvU+NL7Zbow1K7dyIfINYam1GXATEE5v AfAoTZT66wHSHbkqSSI7qcmrspObvqoqQSUrm5q+qopkt1Uku61KULFVCSrZQtf0VQsZQRMVSWME hIvWpjNKYJntdJG5uCu5gHNm3wb25a38pJBwu6PDHdh7K8na2HGJ2pPRaG3tuZSdFqdVcIdVNdls 6XL6qqq14zLyeXI2jAqDhFoN3aL+Gtc7ukm6COrJLkbAoYtdKgzSXMB1C+pGlIImgpdt2YWeYzXA Fqg7ylnGu9CrZbag1J604txnq/eKj51yRywI8wV6yB1h1xvqYc5mreeOEKwXZbiEGLxa3JrZ8lLW eT7xV7pq1Ga22OsFfchs4QfdEjnN7jurBh2v6jrh5xuyOtozTpoSstN8hfrPaQmK0qSJhmc6Mk5a jq00l6Hhc9ozW2aYRvlUzHmnnIr9sv2X366QvJJPmbwMlvIDTCF5xWZjjstgiXXOXo7Hweyd+DJY Sl7J3oAvg8vkFVAuGEX2rECNcmdTaO128oqHa7aDv4/IB6aen/JD/fbW1TGh/EdveIbklRbA+vJM +/5mW7p0XeSGqtdPbsaAf8PYHUBfvKO0CrIRzGWwtAoW8YoL0rBVgRl8jj0QyCk0ZqMTLH/DSW67 u+cZWzYK5nsl2IZ7pXvUWjC5qF+2FJw03zh0fSk422n4vwohvGIKBWkPEmM2XC2vhsdjUiisjmR9 0E5SFPg65OFhMEwSukspCrReC+7cis3YQpcea1/FpNqzga+cQqED37I6fELM35tIv6xsNh6R7MBQ a+/g4WreOkMNZl2BN+8ZoHgd7Cf1cSIXKqQ+QCwp8K7b0qJY8Bwzlj2jcM3aAwGhLMbdxkR3sux9 xdktDbSy/EDTY9hX5t7SsStLQqwRdFn/9SrYlUS1dk7fTYU1wXGY75c4SNZXacWyIkq3lzO3e7jU FuWDAhLd8/COMjvbokBd+HV7zN6TJ9Ai011gQHo+eU9uxFQmvBxQ5DZrI91SumXopjtDLuyejm/Q q7hBr+IGvZrtSjUd36BXs72ppuNz7i9aUaPiYMwP9Coq9NKBRrfRq3ivLRjrlkJXDrZU5LK7mRUK 8jjuz1UxXlkNgPRVVYxXVg8gfVUV25jVBkhfVcWYQBXbCFVsI1SxjbCQLRQgxltF52IV4f4iKh23 +uwJ90c4cbgYAB0tq49C3BKfCyHvcFI+83zc357DoCUBNPng2vq97LQ4fe43csw6zGaWpK+qWjuQ ketz7FZjqTjHsipiBffn7MSpnLfGhplTobKhocqF540erVdE9mUhGhc8f2YLRBOGYmv7MnUNa1Uu ZIUkbQvHT4Y7PEitzwfNF66gaSgjARNOZSQnywr9ntCuR+KwZnRHmctRBlZMK2+gAwn4uiANElIs 5zdn5zeetSd3Ih00RzrQiqLtdlwWdd4mIWqfBUPojLP7MISW7gLZ227TY9SHj7S0Tche+ds+rQ+x wNyRXLE2xZMOlaNkS0zgAw/CHZ/jwH4uHa148fFOUwDU0OuGIq6p7a+TYkJGe4wJtFKznZyM7qtA esnJ9doe0xQuGGdI6ik5lnbO8jlDRvoerivD8re0VKgzy80s37Yd9ua5JzdBnMipWHROY4LvV1lE zaozB81X9jDJ/dKDlaW213tBPthT59FSy1UIX3ugtj3YZEvlWiHO73i4hQQooAI9Zu/B6VrYhALk sYa7Z5entEFeSZ2rTk5zE+VVBxC0oeU+kV2Jds2gA691aXJOQ/JGR3JaS0vGNMOnwbaOxKyWlopp glH9My1Kx2kKVMMzPUl9tY0oskGH1PvDEaVEtIGF0wYWThtYOG1g4bSBhdMGFp7tzD4dX2DhKOni vLJPWLgI6aAyfig1Wm9Rn5YaeRc8zjN9rFfWb0npZA99NHy9625Klh46VQgwViHAWaokfVUV+p6l TdJXVSGIWQolfVUV+p6lU9JXVaHvNK9XEMcJzisNZ9lU9pEodTAVsqnR0CS1zIMEGkuHc5t9rmLu sBWHowOTGRNIes+Fi2pJwsxXi5LFY4owf9taym6P6auWDIgIgyh/Ln4yiiMG3nKE/4iFtk1aaW8n jWU08QXELbMJXdiqtctcZ6JkugjltzMbM1u0cxksZfm6Uh60K+VBZ6m9y2ApAzRL5F0GS3nQWdpu HMyydZfB0gwtNLxFp89AVKDd4Chyylj231NZZrnBl3czFW9EH+eu4lDx3WzLVVJqll2Fz8h4oKjy RZyyp+Npx+3S1aYtZ7+9QPixW3D+8kuXPDpbvn0ZXCj/BcWbEP+NA+s1yGgpzT9+UduN9xs+a6Z1 u6Q1hSQzOW6VUUa/NkUHghQXB+moC2npIpFuGlsOkvv2cqQXv32dg5S2n2x9/TiIeukgwH9rEwcH Id4+wqCnVXYQUlK4dVXQjlFaKM0chE+MOdW+RYsaK4Ls4YUrIslbHaAlc93g0APopTTH8rRotMHS knSqM3y/6NiZddTe6MiBzNAnjHiDGDS1z5at9wmLupC6nmRujUa3YK8HG1gxrfZs4evSoiQpoqGp kdnV/L0EwUJejXeVGAlJyI2ANJAb5JzhW8U6uUExYOvUu8H2V2GObAhO6l6W2nWVVh9SnOwBrdbW 6zvrLTsA0cNglrdx3ccNh5GtixCUc73C9lNEZcGdO0/L7I4qW6BlQ3gW38we+UmS1Gju80j/tVyK s7BY22N9mQHUl4fQIsycdbA2Izsp/s70hRzFv+33Xnl/WKM5mioGovFBFJRaVyJb1HQ0H7lnZRdg XLPywAVYQB17WL490i0tWTcFULLn4T38YktqUgEJ7nl4D4PdkgdUgLl7ZnurM2V2eYJVPvZKjF4i xolmh40Y5MazTYvyAl8z6EDlzhQCbIjjO6i6Fl48hQobnunBJXoozg6atyXbPMU1G57poF+xGv3P XdQwKG27GzNM7yAbtKjfoEX9Bi3qN2hRv0GL+g1aNGzQomFBiwbpJDlQyjwlwSgdtDIn/YN6WlS6 SQKH54kCY9hkqdJDn6Tg0dgDqZwqyjDLNyevyrLO6auqKENfRdf6Kro267bpq6ro2qwLp6+qomuz 7py+al7wYZx0NXVDY4OBR6Oh5MM5XZblELc0BiduGTxHB7gUEfQYy25pdcKkndzS6WcsJJqs3fZr RlMXtPSTd10nKxNacvcKejS8lfjdajHZpIbLYImTyaYwXAZLLGM2YeEyWIL5s+kJ42A2K+EyWGIZ qcTD0kJtaegWZHnu/WmN8T9Gr0L0W62lorJhmqAQtYmalgkKm42ErU6q8M/eEJ5BGa6lkXX6KzUo j1XW5K18+zB0ct65FrKZW5fBkkdPcrbODBPxKR6dPjNMTqRccYuCdEN7pYk6Mzry85SpoFDbnj2Y vc/p7g5sydYVqg7qUHVQh6qD+tpI81TbGJU3Ig0/ZIwMCUNaoYeKNrizKQbn7ULxjF+jNxTP2F1X 5tg9Yyp6k0xj4W7Vcc7tyU+aqSSW13ZuVqXXtS2lFTd6btUlLVRd0kLVJS3EpecGjhysprPn8vwM Kvebnkt62nvOEywUeUGZMOSv/N1vf/ub3775P/L7/O6Ht98+PWKS+MUTC5JW59/87R++/PCZp+5X I3P867dP3336OPNbxzP89/wdPrx5+vdvngaq5837j29++ONn/og3vx/+b/ZxCtV3b99//L9/I+9y /+Htx2/v//bLl6fPw+/9+TP/2G9+/fTNp8/CKf33p7/c/cKoNz9/8x//8/xP0XnkVe4d8iYB7MHE q5X/ge/2vB/w9RYiaad4Ep3mvw3/5V10yH/pn4uBG5Hk3/wHnspPn7+9f8u+88en+wt5zmP3J6pM gKa37Jz3Z5//p7ffPX35h/EP/9N7fsF/ucuOyTd/9PrnxQ/51/cf+PX3w5P/8+vT57/8/ekPvn36 4fymJ75sfNe75JXDx1Ddx1R9QvLmPpTfnJ//8FZ+2F99+vjDZ/4XfvAb+b9vfhC//M3nd0JTypTf 5V46fIYx0P4h/BV+/+n7//H0b08fTt/hy/oHkN18/wUtmX/3DHf5aARYbH/36R+uvrUh82xvbTd+ 2ME75O1+++nPd7+/oKmPbuvr/u7D+2+e/utfBl+VXUESUHhwfKu14eHNccMoeeB/P33+w3/jP5Ff 990n+be75R+f3ssV3uvj0w/3//jE//bt06+fhHb5/JfhZPn89eNd7s9P7xhP7zhsa19/eP+BPf3j N18/f5aUndM++M+fPn0Yj7Sf/cunz39ia/g95T3u/tfHP3389OePb3736evnb55632r9bYaN9vRs 9oXpwZC7TaPn66t9loPBHXYwUOS9X7JavI9ExvOFO9igAzrQ/CfCcV8OBs3XMhj+NwpDdzsYbgfD 7WC4HQy3g6FwMKQpXP5RmAlDz3IwmMMOBo4PNIgys0QDNhpEIj4XvA4U+M+DdmZyMERHzg4xQ7gd DLeD4XYw3A6G28EweWF1JYMfEnxtfNFKBq9537axpZLhZKfbLVv+7vsvvwzEBwfEaO8MnzccjTxA cDHIGbmWU2vAFhTSkvKq0dyWDsUvaJqIgffkWv3m+y+/4h/76fODGDucsdMUaZE6WyqdVXngSUr9 4iVTgyDwXP36/Zdv3n5+J4Z8+sOXT2Lb2QXfsAs9Ll33rsUZvagNgnHijLVp8dZKAg7Hr69ZV4NR 7G/L578afkhdTUTPQTv7p1StWG+0f7gatlq1AqTNusMmlWijzR1qgwfZVzGp8WzgK4sNanZm29SA 7mp+OLSqJjgwmrSVBgdOR96lHq72rVYuAPrCXpa6hii7KooHFHuERbEHAixr1mps8bqlccmzTFmW oVs193mKPVrya7LJhm2P9RVEtKQfZTMS2x7rq0gJfTUivq/Yw+dSm7b9XrRmDiv2iFMNPCAbLCSX ipyLJ2myZ8uek9q3La5XSIjseXhPjn7ck//WUrZUSCjteXhPCUnLkijkiPY8vCf/g2Yqc2fAr36P j4rjiTf//PnpmzHTggPz2QrQfK7/7k/vv/9e/P/zpz/n8LoKhK0MW/xuPL4+/+xXnz5//vr9Gbn4 uxFlfOTP+Dd+xbvxQvTx7XdPbz48ffz2hz++0RXAyPUT7t89XU7Lu2RwiO7jNtLV+pbON8A32TfO gk+LTzFQ+pj3n+6/fDntwWcv+4d3HA+9/+EvF7BygRn9y/sf/jh+7tojwwdbt4GrfXNxyfult333 9Pnbp7ucDz4avQEHFt72jMlm3zfWW3tdS3PE8VeTN73Lvuj0DbZ++OxHDZPLk/2z3z69+/rN6QNP //juLn3VOFc9X6rnk0LpKwmC9eX+H+U3HV3kZ//49uNffv/pNx+fBNr68vW7p7vZ+AXi3PG2333/ 9Yenf3r69x9ybx3PaB2/7P7bT5++/TA8IeTGGZ++H8mPy3M/fOa3/tXkbZNXnBecbn7rP779UnpH h1vvOD7w5Wd+9s0vf36Gukcs/Sf1tZu8d7ivPQ1n3NPdr9Jr3KPx9YtigPif3q28e370BAb3LHF2 3rff8nln+LUfPtwlA+O01G+Aze89+kcWef77rz98/fwkX/Jnv/vLx2/u33/8+PT5tyXQef0dymD1 Tw8+77hmocXjGNb8ByuTcK3/9PXDh3/+9F4w2ctVqvc8/cy2/ptQIRKq/e3Hd7/58O53f3z7+d2X /BFL9ev5dnLfTu7byX07uW8n9+3k/pEQ31ZSZgfY8kWJbxfJNRHfZzsHUaY97IwcfF+//0L6l1Zb DEDe0p2JbJV1DxBNQB3WJaWsoKhNvMxg9EqbgywXcrCBddMa95JeZ6ud1r80xmkPHineQQAD9BA9 Ar/DmtHG8quaZ5XnZRdzf5nnhL6PgMa0cl6DRdT+O7/gjPk16rhtxtjixZShNZCwrZU7j/fm1RIe vLNW61nCw4/faq/Z8134qVnNWwyYzrm2r2a1dwbB/8SsDhqjo5+c1dJgw+JPzWpvyOuf2lxHDRhM /KlZLVVTrnMPca9mtTeRTfppWR20Rk1of2pWu8DX5J+c1d44rztP9Fez2mjkq/JPbDUG46L0Xf6p Wc03PjKdZyO8ltVWI8eqi9VYm7FkotL6ONmMWCXlEqukXGKV5lqs0lyLVXIesUrOI1bJecQavTuJ 8WpeVSOj43TaIgs0jfJCRkcVhNPBsKEvJPo0E/Ubfy9102YuMGScIgob6jcmC4OIwx2oQJVMfEvf xII3dTxs9iSqTVsdFtVvsrNqUaHv7p2SulLN0nO6Zuk5XbP0nJ5LY4FWmv3Xh1H9ho9vFSFU6DaF i+fiPQC5ADPPJYU0Vc3cAu7wEbzS+FoduCNpk+nAXWc17UVxB01ydOBciIB3zgOIfsLDYFaE9V4h SBRLZULpUXS2uAXCfVHr0EiHwZ2C0dfkyjd3jtB7viRV5BqbRH5jNOgZBKNbBMjT79Ug/9ch5Ewd AsstsuapomWDbR2f06IUn2pmNnxOh8g01kotZrxzEJo0sbv16mhDVg74MljS6syK/14GS2qmWanf y2BJ+zEr7HsZLKmZZmV8L4MlNdOsHvVlcC5GLQ3MXAh8BcSTJqn8o1FA0tMsYLlpKuHkXBVNHZyf q/xmUW/IUfMlZ81Vjtck5XinQ1+0Y3Fli1iqv/1JxnvvQsmKY14GSx4d5i1WRbaWw1lr6KxJ6jlm 8DTIDhYEy4FDDT9pscrHqzZ2GTJY3BIlNYm04zhFBwpDXzqFd+y+0yKu8o+d/Sa84or9jup+7NJW MhGbHNY8L3lRTaFTEMi/bLSKbz/lNslhiBqvGsRkjI96oSLpZhKz33/69OEX5henvMJfpDdSkg4X AfPUKL/7z2sqk798O1yQ5S73W1HjePP+yxsL9z5YPir4Igi8QZs3d//v65cffvHNp68fZQ7//PYL +949b/qAWnT0jXfkf85f5Ju3H775elL14Mn59Kc3jrfC704zwCFQdHS+wH/JCN8kWtvWSwdLvtM9 i/CNPk74hjdbclFLxSkYcBgDRrJ8WBieGqHF9UT4xg7CN6KIZm7CNzfhm5vwzU345iZ805P/F0Tu 2NCEJXiJ/D8+9Pgzp/l/W+f00NE+ANSe05e8pVQ54t33X5LDWt87PmU9nzMiPBMgc1jTfbADl0su OE2Osme1teeTGqQlyeo5TYnKPX9DtAp1eI5zmuyB5zQQ2sB/IQGg0WA0m+O1dUjoAoU4OafllJb/ vwnU3c7p2zl9O6dv53T2nN7gTZw+9Yh5GbYnL7RFFgzGRqGt0fC9+eVnISuPHPPZEI0IWUUTiR4G w2whJx74IMKC0FbSiW60eUXJpSS0dZB9FZMah0l9baEtFzG4Hp8Qzl8fKrTFtzLjTER/Z40F50hU o9i+yP9dV42y4H2ba1ij+JZzgNDWBQ+TmoOgjdVQKjpYtaWl6OBZpiyLMiY1CGdzydyEtm5CW5lV cLA+V3a5oDK2d+mmmSETzpxXDxrRvKvgzBMSf7Ss1MZ2Z/LRxNj2FKBJAldP5tIeualdHcPiHk2y uOs771DJmiTV9XzynlSvuMtJZgRUQTgiezRIR0rQN32umz7XTZ/rpvJxU/n4McldrL/jTeXjpvJx U/n4cepzrV2zXIjPq89lbvpct5P7dnL/GI6w28l9O7lvJ/eP8uRuRQjBSIr8YYV0pqq+01TVd5qa 2lpnamprnakq8DNVBX6mqsDP1NTWOlNTW+tMVW2tvc79qR7WKfJGaX1KhTZGQUBlg+RCR12sfvDm mtxO94gQl/WwpKzVW8ntObCcHQ7cgcntCdrodnRAcLuKad0ehNXZDPVQPatoVTwpqByyjG3V0rNV S89WLT07L8sArYwjFQOc62E9ezLi4LpQrIfFaR4/rwFHi7odfh/n6hP5nRV+UZj03QmCF2m4XJYg OR2195Yibx0ukybo7403YDTESMF5wHyaoBsT+i2Z9TRBSM8C/p6kAj5Lg3MIx6UJeulmHiTdE8Ea bSBazadA9D76GD3MGpx7aXwr7c2dvqUJ3tIEb2mCtzTBW5pgqcE5JA1N+WDgkzjYZ8kfB7odDLeD 4XYw3A6G28Hw4z4YMBcxgNRW62cpAD4uYhCdOwchaKBApIN2fD4gHwFeO450IxqaHAw4KKJLcfWt sOh2MNwOhtvBcDsYegqAHQx4ksYXLQAOmog/cygATmtjU3APRWmCDD1Lbaw57AizkTiY4aBGa8MH FAcungMcHcgA/43BIEyOMIlrRMMCxODbEXY7wm5H2O0Iux1hrbWxg+SkCfa1lFAR0RMti/eqrd5X BHnSGvUhBB+iu3PSaMVb/XA1a11rlA+q1dpHSHSkRovblVBfyjoc1DP2KaHGCystSqgkLbiSzkYZ stdmf2A2yDyDPlxLZV/6vRoEBHue6VAobSneTMUnG55pSBpIxTwbnulQkPUdCrLeTVMRkmt0Khfs 6FHLNfpZKAJ3HBJ0u0bfrtG3a/TtGn27Rj9zqmnm2kLsIypgSaahSgw2llSws+1YLoMlzeBs85XL YEkFO9tq5TJYkq7NNla5DBZUsPNtVC6DSxVsp7wPigBOeaAgbQeUR7+tgh0oTvJA+dqKFpZ5oM5t iRzbRJNOvMHynV8ff4m1HZck23GBsz2XZTO9WLXO2CBzslc5m+81JdcprIJ8+5PLIM2cDoyKqIf1 fs7fdKSAjLhcXHe5qDzQJH/TR+Tb18zjooJg6/uZOP/oQNkAr6pwhcHy5bgtkD8b7o9RuIqe+Dfi iHlQkHLo4eFq2LqCVIi4HiwXbG5WuDrIvopJlRT411e4Ao4uwMZ2nziZf6TCFcVowEMQtSZvDeiH q3mrak0OtG2deXqxmR+F06dTbrwJMYZlB+5Ku+PeZSgW/dLw4UxkvcY7o3k9WMSHq2Frbg5oQusy JD7gcb+a2PVaNKiJOc37eEFNbN2Wli3hOdwze8om/SlGaw8E125iYqXHWrSUXk2DrFdMrE+6bFOD LLvI4FTodZAG2fUSLRpk1oHzy75ddRatNBDL3wQO3SKzCz7pUTLaWSqd2quRZvbIX7X0bClUBPZ8 8g6NtEntZs/DO8TGJrWlPQ/vEJVzLZFnoai05+FcL83tBYoqdMsWDov1VLg4uSGQjRH43lFBbKV1 BmeLjjx7RyNbluD1oZZt//JQy6Z/mcOWMzed+JaHZghEQeYlezfiiJ6vFTc1vZua3k1N76bJc9Pk +TGJ09w0eW6aPDdNnh8lUdpxzXLxwFya/Aff1PRuJ/ft5P4RHGG3k/t2ct9O7h/lyd0GYAXJgsUi llxM0biiNLk0jOtoLg/jOppLR7qO5vKRrqO5hKTr6DUjSVI8yCjtRFMuyNdAUJa08hrLnbaN1cq6 MMnxQOtB0zyrCBT5LXW5DJjPPwAqT3ScDlqVPJ+tkudzVdKIrkoa0VXps7kqfTZXpc/mqqQRXZU0 oquSRnSLxu4W2XGsivGcxmaV88j/Shs5RZJURHBxOLh30mR13tydb8Me/JbDpXnvZ4eLzyhnCHta 1cAeSsJhhlWonhiDyuhS66G2lQhVqweqVg/YmWfJJkYcDvHGzUbYqKx3KgKI1qBb9yvH25+9uJW9 j1ET6UWuGk+ieNX/B3hFM0/jJwQA --20cf303ea7d0c0c91b04b3b520ed--