Return-Path: X-Original-To: apmail-hadoop-common-user-archive@www.apache.org Delivered-To: apmail-hadoop-common-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 8FE311875D for ; Tue, 6 Oct 2015 16:06:30 +0000 (UTC) Received: (qmail 29416 invoked by uid 500); 6 Oct 2015 16:06:25 -0000 Delivered-To: apmail-hadoop-common-user-archive@hadoop.apache.org Received: (qmail 29301 invoked by uid 500); 6 Oct 2015 16:06:24 -0000 Mailing-List: contact user-help@hadoop.apache.org; run by ezmlm Precedence: bulk List-Help: List-Unsubscribe: List-Post: List-Id: Reply-To: user@hadoop.apache.org Delivered-To: mailing list user@hadoop.apache.org Received: (qmail 29291 invoked by uid 99); 6 Oct 2015 16:06:24 -0000 Received: from Unknown (HELO spamd4-us-west.apache.org) (209.188.14.142) by apache.org (qpsmtpd/0.29) with ESMTP; Tue, 06 Oct 2015 16:06:24 +0000 Received: from localhost (localhost [127.0.0.1]) by spamd4-us-west.apache.org (ASF Mail Server at spamd4-us-west.apache.org) with ESMTP id 19003C028F for ; Tue, 6 Oct 2015 16:06:24 +0000 (UTC) X-Virus-Scanned: Debian amavisd-new at spamd4-us-west.apache.org X-Spam-Flag: NO X-Spam-Score: 3.899 X-Spam-Level: *** X-Spam-Status: No, score=3.899 tagged_above=-999 required=6.31 tests=[DKIM_SIGNED=0.1, DKIM_VALID=-0.1, DKIM_VALID_AU=-0.1, FREEMAIL_REPLY=1, HTML_MESSAGE=3, RCVD_IN_MSPIKE_H2=-0.001, SPF_PASS=-0.001, URIBL_BLOCKED=0.001] autolearn=disabled Authentication-Results: spamd4-us-west.apache.org (amavisd-new); dkim=pass (2048-bit key) header.d=gmail.com Received: from mx1-eu-west.apache.org ([10.40.0.8]) by localhost (spamd4-us-west.apache.org [10.40.0.11]) (amavisd-new, port 10024) with ESMTP id UtbWVjxcbWkb for ; Tue, 6 Oct 2015 16:06:16 +0000 (UTC) Received: from mail-io0-f171.google.com (mail-io0-f171.google.com [209.85.223.171]) by mx1-eu-west.apache.org (ASF Mail Server at mx1-eu-west.apache.org) with ESMTPS id 2615C25426 for ; Tue, 6 Oct 2015 16:06:15 +0000 (UTC) Received: by ioiz6 with SMTP id z6so226697148ioi.2 for ; Tue, 06 Oct 2015 09:06:14 -0700 (PDT) DKIM-Signature: v=1; a=rsa-sha256; c=relaxed/relaxed; d=gmail.com; s=20120113; h=mime-version:in-reply-to:references:date:message-id:subject:from:to :content-type; bh=OAkV5tLvVvOUJwfXpNJDbksaQctdDhBeRm2vBQUKCH4=; b=tSkqRH9Yc6aLX7wxL+fnwbROnDllyad27v84flVWi97hNJ5G71ewR841BaJYVu0Wce uRkXV2wU+HP7ORcbDD6t+UMTadpgvHWJuR1MxKWDfMJC9yAKn9TK30hOVrdFOmDxFllb 0uQCfdBCWt68Of/92BERDWAmjYf4E56wydhnba0Colv2XYxn0dAHkDYjPV8nvd13ysIr BWUHFW/J12Uv2BIu0Rim2wRmd2Tsxkrcci+55FHbWskjMOVvGsDl/EqrZoRSslsvrx4D yQMdvnHUEYs1DQR8vrouWJqPbAZP4mPkGv9MCpQxv68Gb+jdFsO99C0phZ4CHuEprPo+ uwlw== MIME-Version: 1.0 X-Received: by 10.107.136.203 with SMTP id s72mr34426303ioi.197.1444147573911; Tue, 06 Oct 2015 09:06:13 -0700 (PDT) Received: by 10.64.72.226 with HTTP; Tue, 6 Oct 2015 09:06:13 -0700 (PDT) In-Reply-To: References: Date: Tue, 6 Oct 2015 21:36:13 +0530 Message-ID: Subject: Re: Passing Args to Mappers and Reducers From: Varun Saxena To: user@hadoop.apache.org Content-Type: multipart/related; boundary=001a113ec186264f08052171cf7a --001a113ec186264f08052171cf7a Content-Type: multipart/alternative; boundary=001a113ec186264f04052171cf79 --001a113ec186264f04052171cf79 Content-Type: text/plain; charset=UTF-8 Hi Istabrak, Sorry had misunderstood your query a little. The code written is a little bit wrong. You are not really using the Tool class. You can change the code as under : public static void main(String[] argv) throws Exception { int ret = ToolRunner.run(null, new AvgSix(), argv)); System.exit(ret); } You can then put your main code in a method named run (which overrides Tool#run) yarn jar will forward whatever you pass from command line to Tool#run(String[] args), in your case AvgSix#run You can either choose to pass all the parameters from the command line and parse them in run method yourself or you can choose to pass it with -D option. When you use -D option the property mapping will be available in conf object. As you can see you are extending Configured class as well. So if you run a command like yarn jar /opt/yarn/my_examples/AvgSix.jar *-Dista=667788* /user/yarn/input/samplePMfile.v31.csv output Please note all the -D params should be before other arguments. You can then get the value of property named ista in AvgSix#run as under : Configuration conf = getConf(); String propertyVal = conf.get("ista"); This is the basic idea. You can change the code as per your requirement. Regards, Varun. On Tue, Oct 6, 2015 at 8:49 PM, Istabrak Abdul-Fatah wrote: > Hi Naga, > Thx for the follow up. > Still not working. > Here are the invocation errors and the source code. > > [image: Inline image 1] > > > public class AvgSix extends Configured implements Tool{ > > public static void main(String[] args) throws Exception { > Configuration conf = new Configuration(); > conf.set("test", System.getProperty("ista")); // <=== This is the line > where it is failing > int res = ToolRunner.run(conf, new AvgSix(), args); > System.exit(res); > } > > [yarn@caotclc04881 ~]$ yarn jar /opt/yarn/my_examples/AvgSix.jar > -Dista="667788" /user/yarn/input/samplePMfile.v31.csv output Exception in > thread "main" java.lang.IllegalArgumentException: The value of property > test must not be null at > com.google.common.base.Preconditions.checkArgument(Preconditions.java:88) > at org.apache.hadoop.conf.Configuration.set(Configuration.java:1134) at > org.apache.hadoop.conf.Configuration.set(Configuration.java:1115) at > AvgSix.main(AvgSix.java:32) at > sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) at > sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62) > at > sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43) > at java.lang.reflect.Method.invoke(Method.java:497) at > org.apache.hadoop.util.RunJar.run(RunJar.java:221) at > org.apache.hadoop.util.RunJar.main(RunJar.java:136) [yarn@caotclc04881 > ~]$ yarn jar /opt/yarn/my_examples/AvgSix.jar AvgSix -Dista="667788" > /user/yarn/input/samplePMfile.v31.csv output Exception in thread "main" > java.lang.IllegalArgumentException: The value of property test must not be > null at > com.google.common.base.Preconditions.checkArgument(Preconditions.java:88) > at org.apache.hadoop.conf.Configuration.set(Configuration.java:1134) at > org.apache.hadoop.conf.Configuration.set(Configuration.java:1115) at > AvgSix.main(AvgSix.java:32) at > sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) at > sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.java:62) > at > sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccessorImpl.java:43) > at java.lang.reflect.Method.invoke(Method.java:497) at > org.apache.hadoop.util.RunJar.run(RunJar.java:221) at > org.apache.hadoop.util.RunJar.main(RunJar.java:136) > > > On Tue, Oct 6, 2015 at 10:49 AM, Naganarasimha G R (Naga) < > garlanaganarasimha@huawei.com> wrote: > >> Hi Ista, >> >> In general we need to give after specifying the class name like >> *./yarn jar >> ../share/hadoop/mapreduce/hadoop-mapreduce-client-jobclient-3.0.0-SNAPSHOT.jar >> sleep -Dmapreduce.job.queuename=default -m 10 -r 1 -mt 5000* >> >> I think in your case it should be "*yarn jar >> /opt/yarn/my_examples/AvgSix.jar -Dista="666666" >> /user/yarn/input/samplefile.csv output*" >> >> + Naga >> ------------------------------ >> *From:* Naganarasimha G R (Naga) >> *Sent:* Tuesday, October 06, 2015 20:16 >> *To:* user@hadoop.apache.org >> *Subject:* RE: Passing Args to Mappers and Reducers >> >> Hi Ista, >> >> In general we need to give after specifying the class name like >> *./yarn jar >> ../share/hadoop/mapreduce/hadoop-mapreduce-client-jobclient-3.0.0-SNAPSHOT.jar >> sleep -Dmapreduce.job.queuename=default -m 10 -r 1 -mt 5000* >> >> i think in your case it should be >> ------------------------------ >> *From:* Istabrak Abdul-Fatah [ifatah@gmail.com] >> *Sent:* Tuesday, October 06, 2015 19:46 >> *To:* user@hadoop.apache.org >> *Subject:* Re: Passing Args to Mappers and Reducers >> >> Hi Shahab, >> Thx for the quick reply. >> Yes, I am using the tool interface and can run the job successfully. >> I need to pass some extra args dynamically as part of the invocation. >> >> I have tried adding a space after the -D option and it did not work >> either (see below). >> >> ~]$ yarn -D ista="666666" jar /opt/yarn/my_examples/AvgSix.jar >> /user/yarn/input/sample.csv output >> Error: Could not find or load main class ista=666666 >> >> It does not see to recognize the -D option. >> >> BR >> >> Ista >> >> On Tue, Oct 6, 2015 at 9:26 AM, Shahab Yunus >> wrote: >> >>> Are you properly implementing the Tool interface? >>> >>> https://hadoopi.wordpress.com/2013/06/05/hadoop-implementing-the-tool-interface-for-mapreduce-driver/ >>> >>> Also, there needs to be space between -D and the param name. >>> >>> Regards, >>> Shahab >>> >>> On Tue, Oct 6, 2015 at 9:22 AM, Istabrak Abdul-Fatah >>> wrote: >>> >>>> Greetings to all, >>>> Is it possible to pass args to Mapper and Reducers via the command line >>>> args. >>>> I need to pass some args upon the MapRed job invocation so that I can >>>> pass these args via the Context object to the Mapper and Reducer code. >>>> I am currently running Hadoop2.7 and tried to pass some args using the >>>> -D VM args but it did not succeed. >>>> Here are some failed code snippets: >>>> >>>> ~]$ yarn -Dista="666666" jar /opt/yarn/my_examples/AvgSix.jar >>>> /user/yarn/input/samplefile.csv output >>>> >>>> ~]$ yarn jar -Dista="666666" /opt/yarn/my_examples/AvgSix.jar >>>> /user/yarn/input/samplefile.csv output >>>> >>>> ~]$ yarn jar /opt/yarn/my_examples/AvgSix.jar >>>> /user/yarn/input/samplefile.csv output -Dista="666666" >>>> >>>> Please advise. >>>> >>>> >>>> Thx and BR >>>> >>>> Ista >>>> >>> >>> >> > --001a113ec186264f04052171cf79 Content-Type: text/html; charset=UTF-8 Content-Transfer-Encoding: quoted-printable
Hi Istabrak,

Sorry had misunderstood yo= ur query a little.
The code written is a little bit wrong. You ar= e not really using the Tool class.
You can change the code as und= er :

=C2=A0 public static void main(String[] = argv) throws Exception {
=C2=A0 =C2=A0 int ret =3D ToolRunner.run= (null, new AvgSix(), argv));
=C2=A0 =C2=A0 System.exit(ret);
=C2=A0 }

You can then put your main co= de in a method named run (which overrides Tool#run)
yarn jar will= forward whatever you pass from command line to Tool#run(String[] args), in= your case AvgSix#run

You can either choose to= pass all the parameters from the command line and parse them in run method= yourself or you can choose to pass it with -D option.
When you u= se -D option the property mapping will be available in conf object. As you = can see you are extending Configured class as well.
So if you run= a command like=C2=A0

yarn jar /opt/yarn/my_examples/AvgSix.jar -Dista=3D667788 /user/yarn/input/samplePMfile.v31.csv output

Please note all the -D params should be b= efore other arguments.

You can then get the= value of property named ista in AvgSix#run as under :
Configurat= ion conf =C2=A0=3D=C2=A0getConf();
String propertyVal =3D conf.ge= t("ista");

This is the basic idea. You c= an change the code as per your requirement.

Regard= s,
Varun.

On Tue, Oct 6, 2015 at 8:49 PM, Istabrak Abdul= -Fatah <ifatah@gmail.com> wrote:
Hi Naga,
Thx for the follow up.
Still no= t working.
Here are the invocation errors and the source code.

3D"Inline


public class AvgSix extends Configured implements Tool{

public stati= c void main(String[] args) throws Exception {
= Configuration conf =3D new Configuration();
conf.set("test", System.getPro= perty("ista")); =C2=A0// <=3D=3D=3D This is the line where it = is failing
int res = =3D ToolRunner.run(conf, new AvgSix(), args);
= System.exit(res);
= }

[yarn@caotclc04881 ~]$ yarn jar /o= pt/yarn/my_examples/AvgSix.jar -Dista=3D"667788" /user/yarn/input= /samplePMfile.v31.csv output Exception in thread "main" java.lang.IllegalArgumentException: Th= e value of property test must not be null at com.google.common.base.Preconditions.checkArgument(Preconditions.java:8= 8) at org.apache.hadoop.conf.Configuration.set(Configuration.java:1134) at org.apache.hadoop.conf.Configuration.set(Configuration.java:1115) at AvgSix.main(AvgSix.java:32) at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.ja= va:62) at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccesso= rImpl.java:43) at java.lang.reflect.Method.invoke(Method.java:497) at org.apache.hadoop.util.RunJar.run(RunJar.java:221) at org.apache.hadoop.util.RunJar.main(RunJar.java:136) [yarn@caotclc04881 ~]$ yarn jar /opt/yarn/my_examples/AvgSix.jar AvgSix -Di= sta=3D"667788" /user/yarn/input/samplePMfile.v31.csv output Exception in thread "main" java.lang.IllegalArgumentException: Th= e value of property test must not be null at com.google.common.base.Preconditions.checkArgument(Preconditions.java:8= 8) at org.apache.hadoop.conf.Configuration.set(Configuration.java:1134) at org.apache.hadoop.conf.Configuration.set(Configuration.java:1115) at AvgSix.main(AvgSix.java:32) at sun.reflect.NativeMethodAccessorImpl.invoke0(Native Method) at sun.reflect.NativeMethodAccessorImpl.invoke(NativeMethodAccessorImpl.ja= va:62) at sun.reflect.DelegatingMethodAccessorImpl.invoke(DelegatingMethodAccesso= rImpl.java:43) at java.lang.reflect.Method.invoke(Method.java:497) at org.apache.hadoop.util.RunJar.run(RunJar.java:221) at org.apache.hadoop.util.RunJar.main(RunJar.java:136)


On Tue, Oct = 6, 2015 at 10:49 AM, Naganarasimha G R (Naga) <garlanaganarasi= mha@huawei.com> wrote:
Hi=C2=A0Ista,

In general we need to give after specifying the class= name like=C2=A0
./yarn jar ../share/hadoop/mapreduce/hadoop-mapred= uce-client-jobclient-3.0.0-SNAPSHOT.jar sleep=C2=A0-Dmapreduce.job.queue= name=3Ddefault=C2=A0-m 10 -r 1 -mt 5000

I think in your case it should be "= ;yarn =C2=A0jar /opt/yarn/my_examples/AvgSix.j= ar <classname if req>=C2=A0-Dista=3D"666666" /user/yarn/input/samplefile.csv output"

+ Naga

From: Naganarasimha G R (Naga)
Sent: Tuesday, October 06, 2015 20:16
To: user= @hadoop.apache.org
Subject: RE: Passing Args to Mappers and Reducers

Hi=C2=A0Ista,

In gener= al we need to give after specifying the class name like=C2=A0=
./yar= n jar ../share/hadoop/mapreduce/hadoop-mapreduce-client-jobclient-3.0.0-SNA= PSHOT.jar sleep -Dmapreduce.job.queuename=3Ddefault -m 10 -r 1 -mt 5000

i think = in your case it should be=C2=A0

From: Istabrak Abdul-Fatah [ifatah@gmail.com]
Sent: Tuesday, October 06, 2015 19:46
To: user= @hadoop.apache.org
Subject: Re: Passing Args to Mappers and Reducers

Hi Shahab,
Thx for the quick reply.
Yes, I am using the tool interface and can run the job successfully.
I need to pass some extra args dynamically as part of the invocation.<= /div>

I have tried adding a space after the -D option and it did not work ei= ther (see below).

~]$ yarn -D ista=3D"666666" jar /opt/yarn/my_examples/AvgSix= .jar /user/yarn/input/sample.csv output
Error: Could not find or load main class ista=3D666666

It does not see to recognize the -D option.

BR

Ista


--001a113ec186264f04052171cf79-- --001a113ec186264f08052171cf7a Content-Type: image/png; name="image.png" Content-Disposition: inline; filename="image.png" Content-Transfer-Encoding: base64 Content-ID: X-Attachment-Id: ii_1503db583e182624 iVBORw0KGgoAAAANSUhEUgAAAs4AAADnCAYAAAAO0ND7AAAgAElEQVR4AeydB1gVR9fH/4CiSBMR UBR771FjN/beY8TuGzWa+tnfqDF5Y4yxRxONJibWqLGXxF5jb7E37F2jKApWRPB+z39wl3vhNpoC nnke2N0pZ2Z/W+7ZM2dmHAwGgwGvKDx79gwZMmR4RbVJNUJACAgBISAEhIAQEAJCIOkIOCadqNQr 6em9R3h6/3HqPQFpuRAQAimWgLxfUuylkYYJASEgBOJNINUqzk/uPsRQh0D80XSU2ZPePW6lSmce /t09fcNsPkZOLtYXP5fsbzE9ORLi077kqD81yWzZsiV++OGH1NTkJG9r8Ilr6j7+64Nfklx2cgtc unQpsmXLhsyZM2PcuHFxqkst17datWqYO3dunPbbikiO94u8P2xRT1x6VFQU8uTJg+zZs6t715q0 DRs2oECBAsidOzfOnj1rLaukCQEhkAYImCjOK1aswKhRozBkyBCMHz8ex44dM3uKDx8+xDfffIOZ M2eaTU8JkQUalUHLmZ8goHKhlNCcOG1I6e3TGnz+/Hk4ODigTZs2WlSSbY8ePYoaNWogY8aMSqmq W7cubt26FUd+z549UatWrTjxKSFizWfTlUJ7fe+5lNCceLfht99+Q+HCheHs7KwUhYULF8Zbhq0C n3/+OaZOnYrQ0FAMGDAgTvaUfH3jNDaFRKSW90dyPR8NGzZU7yW+m2L/7dy5M9FXycnJCZcvX8by 5cttyvrxxx/x/vvv48qVKyhUKGX+3tg8CckgBISA3QTSGefky6JLly7w9PTEiRMnsGDBAvj6+sb5 4l61ahV8fHyMi6a4fd/iAeDfxU3HcW2PdSvAgFu/vfL2x6d9r7xxRhXyY6ps2bJYt24dktJHPTIy Eo0bN0aPHj2wcuVKvHjxAqtXrwbjYwfmk5D0BPjhO3jwYCxZsgRVqlTB6dOnce3atSSviDKLFy9u UW5av77J8X5JLe8Pixc9kQl8Z9AqzFC6dGn07dtXKa88ftXjaB48eICcOXMm8oykuBAQAqmFgInF uVmzZvD394erqysqVqwINzc33Lhh6uJw5swZ9cJi11RiguZqMbPG15jT4DsMz9gR3H8cHKbEvoiM Upa8GdW+UsenV/yjjneOWmFSbeSz51jQaqwqP7v2N3h854FJurWDJe1+UDLpyjE+50dxshpeGLDt 26UYH/AxhqVvj8nF+ylFPE5GCxGJLb99+FL8kPdTDEvXDqMyv4/FgRMQHhrji31152lMLTsQ3zq3 xwj3Lphe5UuQhxZspWv5rG3//PNPfPTRR/D29saWLVv0rPv27VNxz5/H1Dd58mQTyzB7LMqUKQN3 d3e89957qFChgt7VffXqVdy8eRO9e/eGh4eHsjh37NjR5AdoxowZygqaKVOmOK4aYWFhyJcvH9g+ Bv6IUvkbM2aM3kZbO3eCbmB2nWEY7tIRY7J2x9peM3V+dO35LlMn/JjvM0RFROLo79vUvbKs0yQl 9tSSvep4/+T16nha5SHqeMOAOXq11uQz0wi3zphUuDcWvjtOv/8jHoXr5Q/P/Btj/XpgrO8HCFq+ X4/XdhJ7fUeMGIEvvvgCNWvWVBbnUqVKoUmTJpp48BrVq1dPXT++F2K7WfDa9uvXT11zpvOj23is MRVidnfzHmEd3P/pp590+dauLzNZu3+Yzvr5YacFWiGN5TO+fPny6p6oXbs28ubNi1y5ciE8PJrx 3bt30a5dO3h5eSFr1qzqI8K4/YcPH1ZKGe/fVq1aqQ9HrS57ttbeL1uHLsbEAv+HKSX6qy0ts3wH bvhv9P1j6/1oT/3W7j9b9VO+tfJMt3b/2vN8JOb+TZ8+veqpYm8VLc7p0qUzOWb7bN2/ttLtYcw8 /OhnGyQIASHwZhAwUZyNT5mKyZMnTxAQEKBH8wdwzZo1aNq0qR6X2J0r24OQq1oRlP+4Pri/+Yv5 8RJ5afMJpMvojHx1S+LS3yexefAfdpdnnXTnyODhYrbM7nF/4e//LYSLlyve+fJd5Hg7P24fv2o2 r7nIxJanpbxws/JoOftTFG9bBScX78GuMX/pVa3oOgUPb95Di5mfoOkvPZA5ry8MUS/sTtczWti5 c+cOdu/erZQnulFoSiqz88OKPqubNm3SS7Obv0OHDvoxlZLmzZuD91Lbtm3xzz//6Gm00OTIkQOf ffaZqoPW7NihW7duqru0fv36sZNUr8gff/yhlHoq4MOGDVMK+H//+984ec1FPH/yDHPqD8fNAxdQ 8+s2KPpuBeybtBZbvlygsmctkgN1R3fE/UvB2DN+FbZ8tRAeOb3R+KduKt3/7fzq3slXp6Q6fufL 1uq4RLsq6tiWfJUJQMjZf5GjQgEUblFe3f/H/4juZg67FoKVPX9F5NMIlOlaC4embdaK6Ftb11/P aGaHSiPdcKpXr24mNTqKijA/Tu7du6c+mkaOHIn166M/FLRC586dw+bNm5W1mmlbt27VktS7gt3d 7MliPPd5vbVg7foyj7X7R5Nhz3b69OmYNm0aLl26hO3btysli+V4Tzo6OirjAK3t7EmbNWuWEkkF munvvvsuaFEMDAzEgQMH7KlOz2Pr/XLvwm2U6vwOuL119Ary1SuFQ7+ZXueEvh/tuf+s1W9PeZ6o pfvX1vPBsom5f3XIVnZs3b+20q2I1pOCg4PVvc8PMglCQAi8GQTMKs78gl60aJGy4NFVQwsbN24E rVJUmJIqsMuxxletUX9cZ7hkccOFDUfjJdorny/em98bgUv7I4O7S7zK56lRDGXer4n0Ls5m6zw0 fQucnNOhy6avlHLVctanqNirkdm85iITW/69BX3QaGJXFH23ImoPb6equHnwol4VLdrPn0bgacgj 5Hi7AFrP64X0mWKm+7OVrguysMPuUFrpaCmk4vzXX3+ZWBSp2PA+YaDyun//frRu3Vods2eCf/Rv pXJCH2nK0gJ9anfs2AEXFxellGTJkkUpwZo1UMtnbVupUiX06dNHuXxQOfr999/ttvycX38UD66H oFyPuij/UT3UG9MJmXP74NjcHXqVFT5riPz1S6uPuQfXQtBixsfImNlVpTMv752sRfzVcaEmZdWx f/n86tge+czoGeCNaoNaovxH0R8HoVfuqPKXtpwAe114v9Ub3RF1R8Z8kKgMABJzfelvrOr39NTE mWyZvm3bNgwcOBC07hUpUkRd29g+n7wHeH3Za8B3Q1INjrJ1/5g01sZB165d1QcAs/FepnWSSjR7 UGhFZ48GLc4ffvih7tNKRZofFv3791f3VPv27dXgLxtVmSTber/w3VJtYAv1/slbqzjy1y+F8LAn qodDE5TQ96M995+1+u0pzzZaun9tPR8sm5j7V+NjaWvr/rWVbkmucTw/AvnxX6dOHZOeNuM8si8E hEDaIxBHcaalhcoQuycbNYpREjloKygoSA3mSkoM7v5eSpyjkyPc/DzBqZviE7zyZ1PZ02VID4+c WeJd3lpdD2/eh3t2L7j6xigXbKe9ITHlo55Hgd3+o7y6KpcBdtcz0BKkhSaTu8PVxwNre89UXf50 FzDmZytdk2Npy25wdtUz8MeB94Cx1ZjKBPNERERg8eLFKi8VYAZaq+nyQ3cfLfj5+Wm7aktFmpbA 69evK2seB/VwcGp8Qvfu3ZWCzq504488WzJ4bRh2f79SMSZnKq2PboWqH3Smsfu17Ae11ccCP9Dy 1i5hS6yebo98Zs7gkUmVcUrvpLZaj4F2Hb0LRyvmtIDHDom5vhzHwMDeAHOBFmkGzoahBV4/LV6L 4zXWAi3Lxq47WnxCtvbcP/bK5WwHsQM/9Kjw04WDHwX844Borf0hISHq3jW+fznDQlIGrXvfwdEB Do6O+kcfn30tJPT9aM/9Z61+e8qzjZbuX6391raJuX+tyWWadp9aun9tpduSz3S6BV24cEGN/zh4 8KA9RSSPEBACaYCAyeBAKs2cOoo/HvQ31V6sPE/6OvNl89VX0T7H2rl/++23ceK0NHu2Ief+Vdki w5+D3dO0OjPwh4ThRWS068GzB0/Ucex/oZeCVRT9UPmy18pr+ZwyRJ9ixOMYhVNLs7Wl0kxlin7T VFAZaCXhD509wZ7yltoXtGwfDv66SbmH1BwaCAcnR8xt+B1gtF5NgYZl0Ov8JIRevoP9P61TSiB9 cSv1ifZTtZVu7RzopkM3DA7WM549he4a9FVmKFGihPJJ5nRM/Nj69NNPdZEcPPr48WM8evRIV55v 376tp8feKVq0qLJoWprJJXZ+7ZiKM91DOMCNXeucMsyewI80hnI966Jk+6qmRV5eXlr/NvT/Xd1T 7NbeNeZPVB/cKlbe6MzGvrHMYI98U0GmR9p9/OjfaAWfLjmxQ2KuL68P3TB27dqFt99+O7Zo5b/O SH4sMR8Drx8ts68i2HP/0HKsKbpsk6WPAOP3mNZ2KsG0pPN+Y+9H7MDz5DPAj0It/f796GsRO2+S Hxs945bej1qdlt4fibr/DIZE379a+/DS9zf288H0xNy/unwLOxyTwWDp/rWVronlx6A2CFGLM97S RaNYsWLKqFSuXDnjJNkXAkIgjRLQzad8sS1btkxNGUV/PrprUGniloEvBfo4an+cHoxT78RWpOPL KezKXSxp/yMWth4HDoyinx8DlVP6lNKnmN3n2iCs2PLvXbiFP7v9jKUdflTdnFp5LZ9P0ejRzvRV 5mCry1tPqiTWdWTWVvVHdwdacvXjl1bdMl1rqm5T+sLuGLEcf/WYin0T12iibW7tKW+pfdqPvWdu H2R7Kw+um5kZhAPV6H9768hlfVCbY7poyyUbZyvd2gnQX5U/GvTvpPsE/ziYzNjPmeVpdf7+++/B qeVatGihi+QUZ/xjGu8tWqbp46oFKiSDBg1SXftUfqjA0GrNAV/2hokTJ6pZIH7++Wc13RkVaPrj 2hP4o03lgoOYLm4+oe6zoGX7cWT2Nv2Dce3/zVAfc3QFylOzODig6vaxKybiNQWFHy68f+gzzWCP fBNBsQ7Ydc9r+c+UDcq3nYNUY4fEXF/KIn9eU/r98hqcOnVK+SUzjQPm6P/MwZZMo+sCP6qNr3Hs 9iTlsa37h3Xx/UPFn4FuFfGx+vFjgK4+dEXhBx7vUc4kRBYMrJ8DoPlBxsCeFrqP2Bvseb/YI8vS +1Era+n9kdj7L7HltfZZej6Yntj7V6vD3NbW/WsrXZPJ+4QfZCdPRv9uaPHGW37AmZsNyDiP7AsB IZB2COgWZ1pXtMEvQ4cO1c+wQYMGakS8HpHEO3nrlEBkeISarYI+gXVGxPhy1h3VAWs+m4ENA35H wcZlcWP/+Ti1c3DW0/uPcH7tEeSuXhR1vmtvkodd7Rc2HsPFjcdwbs1hFGtdUSlBHLXOwSnGQTvm QEP6Clcb2BJRzyJx8LdNapAgB9+xvL3BnvKW2lekVQW81bWWUpomFeqNEm2jB50Z181BjVwIgTOR OLtlRMkO1dRAMi2PrXQtn7ktFWTOisBR61qgnzKnL6OSos2qQsWZ837T2mvcbc8ynM6wc+fOmDBh Angf0VKtfRBQKec0ZZzHmQNsaOGjfCoyWqAllF32TKdCw0VQ2KYpU6aAMx7wPuXgRVoEOQhx7dq1 4IAz45kWNFmxt+TVZdP/sL7/79g7YZX6QMqcx1cNUmXeU0v34eic7aDvMv2cXf0yY2rZz7Gs80/o +c9I5fvOfBy4d37dEQQt3QcO7KvSvxno52xLfuz2xD72zJUV7MrmYNnVH09T/tOx7//EXF/Wx6kA +YNPqz0/auivOXr0aL0p9BlnGpUMum7RX93YfUvPmMAda9eXIq3dP0z/8ssv1WwXHHjI3g8qwvEJ /FDjrC4cAM2Pg/z584M9aAy8T1k/z5/z9NINyNqUerHrtfV+iZ3f0rG19yPLWHp/JPb+S2x57Xws PR9MT+z9q9VhaWvr/rWVTrm0TNN9jDP20PLMeyL24Hi6/JizqFtql8QLASGQugk4GF7hE288DzB/ WMb4dFeKSYdVg1I3RWm9XQSo3NCCmdbn7bULhmSKN4E36f6R92O8b4/XVoADZPnRyd41CUJACKR9 ArqrRto/VTnDV02As2xoC2qwS537tNxIEAL2EJD7xx5Kkud1E2BPDN9vsuT2674SUr8QeDUEdFeN V1Od1PImEaBLB31i6SfP2TY4z3NSTmX4JrF8E89V7p838aqnvnPmyqp79+5NfQ2XFgsBIZAgAq/N VSNBrZVCQkAICAEhIASEgBAQAkLgNREQV43XBF6qFQJCQAgIASEgBISAEEhdBERxTl3XS1orBISA EBACQkAICAEh8JoImPg4cxovztf68OFDNQ0Pl1nmMrpa4CpvXClJC/RXNZ4+TIuXrRAQAkJACAgB ISAEhIAQSGsETBRnzq3bpUsXcDleLgbAOSs5f6nxsqUtW7ZUi6GkNRByPkJACAgBISAEhIAQEAJC wBoBE1eNZs2awd/fXy1kUbFiRbVUMpfaNg6c7J0rJWl/xmmyLwSEgBAQAkJACAgBISAE0ioBE4uz 8UlymVGuJshVtYzD5s2bsXHjRt2Vg6ttSRACQkAICAEhIASEgBAQAmmdgNnp6Djv7vTp09VqSMar vJ09e1a5cdCl49ChQ2oZZC5Z6+PjYxcn45UD7SogmYSAEBACQkAICAEhIASEQAohYOKqwTZxBe5F ixbB3d0djRo1MmlmoUKF4Ofnh6xZs6J+/frK//nkyZMmeeRACAgBISAEhIAQEAJCQAikRQImijOV 5qVLl+L58+cIDAyEg4OD1XOmnzPLSBACQkAICAEhIASEgBAQAmmdgK44UwFetmwZQkNDldJMd43I yEi1XDIh0N/52LFjePToEcLDw7Fv3z5w4GCRIkXSOiM5PyEgBISAEBACQkAICAEhAN3H+fHjxxg+ fHgcJA0aNEDNmjXB9BkzZuDOnTuIiopSbhr16tVDsWLF4pSxFCE+zpbISLwQEAJCQAgIASEgBIRA SiegK86voqGiOL8KylKHEBACQkAICAEhIASEQHIQ0F01kkO4yBQCQkAICAEhIASEgBAQAmmFgCjO aeVKynkIASEgBISAEBACQkAIJCsBUZyTFa8IFwJCQAgIASEgBISAEEgrBERxTgFX8um9R3h6/3EK aEnyNCGln19Kb1/yXBWRKgSEgBAQAkJACMSXgCjO8SX2Mv+Tuw8x1CEQfzQdZVbC7nErVTrz8O/u 6Rtm8zFycrG++Llkf4vpqT0hpZ+fPe0LPnFNXce/PvjllV+Oli1b4ocffkhwvZxWskSJEggKCkqw jMQUTGz7rdV94sQJODo6Ik+ePJg3b16crJUrV4a3tzeaNm0aJy01RHTt2hWzZs1KlqaOcOuMKSXS 7nsnWaAlg9DkfD7sae6GDRtQoEAB5M6dG1wdWIIQEALWCZgozitWrMCoUaMwZMgQjB8/Xs3bbFyc cz3zIRsxYgS+/PJLTJw4Uc31rOV5GmnAtVt38M+R49j493Zs27UXV2/eRqSW4Q3aFmhUBi1nfoKA yoVS9Fmv+Wy6Ugiv7z2XoHYmtnyCKn3DCvXs2RO1atVK8FlzGklOG1m0aFETGUePHkWNGjWQMWNG ZM6cGXXr1sWtW7dM8lBp43SUiQmJbb+tujNlyoTLly+jY8eOcbLu2bMH33zzTZz41BLxxRdf4Kuv vlKLUiWkzWn5+SxfvrxapIsLdWl/H3zwQUIwJVsZe56f5H4+bJ3cjz/+iPfffx9XrlwBVweWIASE gHUC6YyTnZyc0KVLF3h6eoKWnAULFqj5mrNly6aybdmyBVxim3loxeGPrLa6YPDDCNy9e1fN8ezq 6Y1CRUoifXrg4MFjiDSkQ3Zfb5ho6cYVp8F93+IB4N/FTcdxbY/1r/gBt35LgwRiTimln19Kb1/j xo1jYCZgb/Lkyepj17gordCU26NHD6xcuVItdLR69WqTD2Hj/InZT2z7E1N3ai9bsGBBBAQE4M8/ /8R7772X2k8nyds/duxYfPbZZ7pcrmab2sLrfj4ePHiAnDlzpjZs0l4h8NoImOiyzZo1g7+/P1xd XVGxYkW4ubmp1QHZOlqbab1htxIfMhcXF+TNmxdUthkiXgDPol4ge0AAcuf1x6Onz/A4/AVKlimF G7du43bIw9d2kuYq1lwtZtb4GnMafIfhGTuC+4+Dw1T2F5FRyhI7o9pX6vj0in/U8c5RK0zERT57 jgWtxqrys2t/g8d3HpikWztY0u4HJZOuHONzfhQnq+GFAdu+XYrxAR9jWPr2mFy8n1LE42S0EHF1 52lMLTsQ3zq3xwj3Lphe5UuwvQynluxVde+fvF4dT6s8RB1vGDBHl7Z9+FL8kPdTDEvXDqMyv4/F gRMQHhrti21P+eQ8v2Nzd6j27pu4VrWX9+dYvx6qvdoJ0D2G14TXdlz2nool82nBVvsOz/xbyRzr +wGClu/Xitm1XbJkiXKPYPcnLWO0Krm7u4NKrBbofpE/f371vPGZGjNmjJaktrQU0wWBFlVzrhpl ypRBv379lDWazy0/aI3Pj0JoReLHbmyr8dWrV3Hz5k307t0bHh4eyuJMi632A3r8+HFV94ABA7B3 7161z7bw49k48NzY7tq1a6v3Qa5cudTKosyT2PZzpVKeI7lRaaxQoQLmzp1rXH2y7v+9eDG+bt8e fRs0wJDWrbFx/vw49Y3u2VPF/9inD/7Xti2+bNMGzyMiVL4bFy5gRPfu6NewIX773/8w5sMPsX/D Bl3Gvdu3MbFvX/Rv1AifN2uGnwcP1tOMd8j2r7/+Mo6yuW/P80khvF+WdZqE4S7R77+IR+G6bPZC 8d20uO0E9RzxPTLGpzuiIqL7EK09X3wW1/WdrcviDmVT3p4Jq1W8tfeTSUErB1SU2WOi/WmKc1hY GPLly6c+OFici3ZVqVIlzjM2c+ZMZWXlbx3dFdijqgUagtq1awcvLy9kzZoVgwcPNnm+uGouLbX8 reQHDp9F7fmz5/mx9XzwGeUiY7z/+XyPGzdOa5ra2vP8mxSwcMBVgjUDmIUsEi0EhIARARPF2Sge fPFwmW1aOxi043///RffffedWmWQFio+dAwnTgYhQ0YXBN+5j2eRQPoMGfDCwQEGByCLjw/Onr+g 8qW0f1e2ByFXtSIo/3F9cH/zF3F/HK21+dLmE0iX0Rn56pbEpb9PYvPgP6xlN0ljnXTnyODhYhKv Hewe9xf+/t9CuHi54p0v30WOt/Pj9vGrWrLN7YquU/Dw5j20mPkJmv7SA5nz+sIQFX29/N/Or+rO V6ekkvPOl63VcYl2VXS5tJQXblYeLWd/iuJtq+Dk4j3YNSb6B9ye8sl5fgWblIVjOidc3HRMtff2 savqo6dIi7fVMT8Q+EHEH//K/ZrCp2gOxfKflx8KzGStfWHXQrCy56+IfBqBMl1r4dC0zToXe3f4 I3ru3DnQosMfVj4v06ZN04tnyZIFq1atUqtybtq0CSNHjsTff/+tp3fr1k25INSvX1+Pi71D+Zs3 b8bp06exfv16bN261STLoUOH1DPMj2HjQAU5R44cylq3e/ducHEi41CyZElVN3+sK1WqpPbpDkEl LnaYPn26Oq9Lly5h+/bt0JSXxLafSkvz5s3Vu6dt27b4559/YledrMeZPDzw8ahRmLB+PXpNmID1 c+fi7OHDcercvXo1On7+OYYtXIi+kybpxoQZ33yDUlWr4vs1a1Cudm1cOX3apCzleWbNirGrVmHU ihWo27atSbp2QP90Xsf4BHueT8qj8uvg6AD/cvnU++/4HzvjVHNy0R5kKZgdTaf2RNF3Kyrl0Nbz 5VcyF0LO3lSyQs7+CxoquGXwK5VLba29n1SGRPxjr+kff/yBjz76SH0gDhs2TH0g/ve//9Wl0orP 499//x2PHj0Cn0Hj54T3HP3nb9y4oZ4vPqux/c3Z60qDEhXljRs36n729jw/tp4PfghT+b937576 YOX7gc+4cbD1/BvnNbcfHByszo0fvBKEgBCwj4BZxZnK8KJFi9QXuq+vr5IUHh5tieCPI182n3zy iXpZ7N8fbYm7e/8eDI5OWLHyL8yasxC/TZ+B6TNm4ddpv+OFwQH3w6ItufY169XlojtFja9ao/64 znDJ4oYLG47Gq3KvfL54b35vBC7tjwzuLvEqn6dGMZR5vybSuzibrfPQ9C1wck6HLpu+Qs2v26Dl rE9RsVcjs3nNRdJi/fxpBJ6GPEKOtwug9bxeSJ8pg8qaObePqjtrEX91XKhJWXXsXz6/Luq9BX3Q aGJX9WNZe3g7FX/z4EW7yyfn+fFjInf1Iri89RTYO6Ap0IVfKs78oAm7ehflPqyHOiPao+2yAYol rchasNa+S1tOKLnkXW90R9Qd2UErZveWP3rOzs5q0A19B2ldNvYh5g+j5ndM61W1atVAv+P4BCqX /HGn1bhUqVJxBvfcv39fuV7Flsl27dixQ/UcBQYGgko8lQztOY+d39oxB7DxXBloldYUZ2tltDRL 7T9z5gz49/nnn6vza9OmjbJoa+VexbZigwbIlju3qsovVy7kL1UKN86fj1N15UaNkNU/+jnyzpYN jk5OuH31Km5fu4Z67dvDwdERZWvWhHf27CZl0zs748G9ewi5dUuVKVimjEm6dkAlkMpTfII9zzfl ufp4qA/jGl+3UeJDr9yJU03Bxm+h2dSeeKtrLbVNlyE9bD1fvlScz9zEo1uhmFS4NzZ+Phd3z0Qr 0n6loplaez/FaYSFCI61oTVY++NHnBb4wdenTx/lksR4KsjGllXGffzxx+rDkGV471atWlUV5+8c e1f44cgeH8r/8MMPsXz5ck282nbq1Endn7R4t27dWrdwm2RKwEFoaCi2bduGgQMHIn369OD7gfJj 12/p+bGnSrq48OO5Tp06iRpDYU9dkkcIpCUCcRzCaCWj0szuoUaNYpQ0PrxM4487f3T5Q8uv6gsX LqgXD7/UM2TIgIYNG6qtl4cnHj58qF4q/EEWukwAACAASURBVJpnV1hKDO7+XqpZjk6OcPPzVMpW fNrplT/a/5s/Jh45s8S7vLW6Ht68D/fsXnD19dSzsZ32hiaTu4ODg9b2nqmK5KxUEB1XD1YfCLZk RD2PAt02aG3S3DNY5vkTU8ukLTnW0hN7fkVaVlBWflqV6UvODx8q0wy0tDN4F4y+PhkzuyqOrNOe wCnqVPnC0QpR1iI57ClmkkdzY+JW+6NvsRZo8eJg3GvXrill886dO+r50tLt2RpbyFjH8+fRrjha WSrUfP7MBbpaaRZwzrhB5ZTtGTp0qLnsFuPojpLQYKn9ZME04/eGn59fQqtJULljO3diw7x5uB8c rBTbR2FhyF8yuofGWGCWl2NAjOOYN0PGjMjgEtOb5OEV/a7R8jX6z3+wcto0TOrXDxHPnqF68+Zo 0q2blqxv+R6l8pwcIVNWD6VMah/vWo+UcV1ZXr7jjONsPV+0OO+ftBZXdgSp5+7G/vPwzJUVbtky K2WdshLzftLaQiNO9+7dtUPlVqEfACqN9zMHDWpGIC2dvactWrTQDk22dGPiB6lxD0tERAQKFy5s ko+/g1qgSwfv26QIdBNh0MYXcZ/3f+yZcSw9P/a04aefflIfpuzROHjwIMqVK2dPMckjBN54AiZa GBXjpUuXqh9fWqGMv8456p6WJOM45ucfQ5GChfAoLBQerm5wcU6PyIjnMLyIhJODI6jrFY81oj+l kA85F919GBn+HOyep/LFQCsRw4vIaNeGZw+eqOPY/0IvBaso+v1RKdPKa/mcMkR/m0Q8jr/CSaX5 4b/3TfymaaWxNxRoWAa9zk9Cn0uTUaV/M+W2cPT3babFHRzUsXYdtcSgZftw8NdNSvGkst1p3ZDo JCMfYRVhobwmx9o2sedXuEV5Jf7s6kO4uiMItJrTfYPB3T/6B+3e+ehZIsLDnihXDtZpT9Cu46N/ oxVtTVGwp6y1PBpn/sDyGfv2229x/fp15QrBGS60dGsy4pPGj1v6SsZ2xYgtg5ZvWrToV2wc+Lzb apPxO8G4bGL2fXx8lAuLsdJ/+/btxIiMV9lHoaGYPnQomn7wAb5buhTfLlqEgqVL0yk4jpzoJ8g0 2s3TE8/Cw/Hs6VM94cF90482Vw8PtOvXT7l4fDp2LDYvWoSrZ87o+bUduuFQuUlQSMTzqdVHV47Y wdbzRYvzi6gXOD5vJ8p2r60MCuytokKtBbveT1pmC1t+UNDtSPszViRZhEp1hw4dwDEHO3eauqFk z55dPXfmRDONxiI+D+TPv4sXL2Lt2ugxFVoZKthaYG8SLdPGwZ7nxzi/ts/B9wzGPVS8/2PL1/In dEsXDc64E1shT6g8KScE3gQCuuLMH8dly5aBXUT8Qae7Bq1jmg8zrVl8wHbt2qXi6bfJmTc4oIIh e7bMuHzpIp5HhEO9Z19EwhAZibD7Ibh66RLcXTOlSJ5hV+5iSfsfsbD1ODV4JV+9Uqqd/LHwyOmt fIo5EE0bRBf7JO5duIU/u/2MpR1+BJUzrbyWz6do9Ghl+irTTeDy1pMqiQNljszaqv7oTkFLrn78 0qpbpmtNNRBnTv3h2DFiOf7qMRX7Jq7RRNvcctDPnvGrcOvIZX1QoKZYaoVpZWfY/9M6Vf/NA9G+ 6Joy5JnbB9neyoPrFmYGsVT+VZwfu6OzlcmDf6asBz9MirSM9m/m+eStXQKeAd44MHUTNg+Zj0Wt v1csyZTBVvvy1iqulPB/pmxQvt0cpJmUgeMH+GxxgA8D50+lf3BSB1rIOE6BfpjGgdazQYMGqXpp paaCsHjxYr09Wl5a6dirxPa+ysB28+/7779XijunyqSP9asKtADz+uR8+X4LvnYN5+LhRkPXDr+A AGxeuFC1/+iOHbgXa6q/k/v2IfSlZZFuG3wHcxs7sMs+oTMvWHo+Y9cR32Nbz5dv8ZzKd/rcmkPI XaMYspfNiwvrj0Bz02B99ryfbLWLv1F0L9L+jHtcOF0qe3N+/vlnTJ06VSnQxi4v9DFm2r59+1Q1 /MDk7xsDXY/o6kFXicePH6trw9+72M/oL7/8on4zab2eP39+HAt2Qp8fWq+rV6+uBjPynKi406hl yUJui5O1dBrEjHvCrOWVNCEgBADdVYM/jAcOHFBMjLtqGzRooI/I50AdPrzDhw9XXc9ly5ZVI91Z KLMTUKNqFeWLd+TAP8iS2Ut1EZcuXRpvFY4eYBhr/FGK4J+3TglEhkeorn76vNYZEePLWndUB6z5 bAY2DPgdBRuXBbsbYwcOrnt6/xHOrz2C3NWLos537U2ylP2gNi5sPIaLG4/h3JrDKNa6IvLULK4G y3BwjHHQjjnQkL7I1Qa2RNSzSBz8bZMa2MbBfSxvb+CgQy7EwplCnN0yomSHamqgm3F5Dnw7v+4I gpbuAwcG0TJNP+cirSoon0YOCJxUqDdKtI0ZNGhPeQ4G0s5Hy68dJ9X5US4HA279ZjHSZUyP/A1i fER5TCv56k+mYc/3q5AxcyblJ17hs4aqObbax25ldiVzsOjqj6cp/29z1187t/hu6d7A+YX540w/ Q1q4uG8c3n77bdX1ywE8/MHmzBpUoKZMMb1vjMuY26fv8pw5c/TnmHn4IUylglZuyqcli64aVBSM A/0fOXMGlW/OpDN79mzlE2mcx9J+YtvP6TA7d+6MCRMmgO8hzqqhfdBZqjOp4rP4+aFpt24Y+9FH yOzjA09vb+QtXjxe4rt9/TVmf/cdtixahKIVKiB30aIm7b929iz+GDMG4U+eIGOmTKq+7HnzmtTB gWn8qOFAtYQES893QmQZl7H1fPH95ZXPD/cv3gZdxAKqFsblbaf0gYGUZc/7ybhOc/t01eCfFnif rFu3DocPH1YuRxz4StdC/nbRWkxlmR9hDJwhii4R9FOm4ktXCONnix+SnHWG9z6VV45RYA+RcaBP NH/jaHCidZuyjIO158fW80GfbMqkEk3XSfr7G7tPGteTmH26pNjqVUqMfCkrBNIaAQfDK3xi2F1M P+iUEKg4cWoldu93WDUoJTRJ2iAEkoUAP4rpskHLpTbdXLJUlMxC6a7Aqe+Mra+0xNEyx65tfojE VjA5DR8t1VRwzK0smMxNNhE//P330eqjj1A81geSSaZYB3379lWKG6c6k5CyCHDAHj9mOa4nNQcO MOTHO3t3JAgBIWCbgG5xtp1VcggBIZAaCXBWAM5+w5H/qSmwzbTE0+LHLnRayDkXr3Gg8mJtQFbs 6fmMyyb3/uWgIGWp9vL1xcXjx9Ugw3zx9FXmPNqvelBkcnMR+SmLAC3ZnCWLvWCcUk9WD0xZ10da k/IIiOKc8q6JtEgIJDkBbbBRkgtORoHnz59XPp30NebsBQsXLlQLtSRjlUkq+s6NG5j6xReqGzyT uzu6Dx0Kl3jOLkRLoAQhkJwE6HLJRY4kCAEhYB+BN9ZVwz48kksICAEhIASEgBAQAkJACEQT0GfV ECBCQAgIASEgBISAEBACQkAIWCYgirNlNpIiBISAEBACQkAICAEhIAR0AiY+zpymh6PUuVIVfSLr 1q2rlvFlbg7AGT9+vF5Q2+F0Vql9VLF2LrIVAkJACAgBISAEhIAQEAKWCJgozpzbtUuXLmp5V072 znlUOYE7l/3kPK/Gc1hyXktODcVpriQIASEgBISAEBACQkAICIG0TsDEVaNZs2bw9/cHly2tWLEi 3NzcwAn4GbjwAFcY0v64RCeX4ZZR32n9FpHzEwJCQAgIASEgBISAECABE8XZGElYWJhaZpdzqJoL nGOVK4pJEAJCQAgIASEgBISAEBACbwIBs4oz501dtGiRWmyArhqxw+3bt3H9+nW89dZbsZPkWAgI ASEgBISAEBACQkAIpEkCcRRnrsBNpdnd3R2NGjUye9K0NhctWhRckUyCEBACQkAICAEhIASEgBB4 EwiYKM5UmpcuXQoO/AsMDFR+zbEhMO3QoUPiphEbjBwLASEgBISAEBACQkAIpGkCuuJMpXnZsmUI DQ1VSjPdNSIjI8GtcTh+/DicnZ1lPXtjKLIvBISAEBACQkAICAEhkOYJ6NPRPXnyBAcOHFAnPHTo UP3EGzRogJo1a+rHdNMoV66cWWu0nkl2hIAQEAJCQAgIASEgBIRAGiPgYKCp+RWFZ8+eIUOGDK+o NqlGCAgBISAEhIAQEAJCQAgkHQHdVSPpRIokISAEhIAQEAJCQAgIASGQ9giI4pz2rqmckRAQAkJA CAgBISAEhEAyEBDFORmgikghIASEgBAQAkJACAiBtEdAFOe0d03ljISAEBACQkAICAEhIASSgYAo zskAVUQKASEgBISAEBACQkAIpD0C+nR0PLUVK1bg9OnTePjwIby9vVG3bl2UKlVKP+vg4GAsX74c N27cULNjVKxYEXXq1JGp6XRCsiMEhIAQEAJCQAgIASGQVgmYKM5OTk7o0qULPD09ceLECSxYsAC+ vr7Ili2bOv+FCxciZ86c6NGjB0JCQjBlyhT4+fmhZMmSaZWPnJcQEAJCQAgIASEgBISAEFAETFw1 mjVrBn9/f7i6uoLWZDc3N2Vd1ljdvXsXJUqUgKOjI3x8fJA9e3YwToIQEAJCQAgIASEgBISAEEjr BEwUZ+OTDQsLA1cTDAgI0KOLFy8OLrn9/Plz3Lp1C3TdKFKkiJ4uO0JACAgBISAEhIAQEAJCIK0S MLty4IsXLzB9+nTkyJEDjRs31s+dvs8zZsxQSrODgwMaNWqE6tWr6+m2dmTlQFuEJF0ICAEhIASE gBAQAkIgpRIw8XFmI7kC96JFi+Du7q4UY63hUVFR+O2331CmTBl8+umnoEV61qxZcHFxQfny5bVs shUCQkAICAEhIASEgBAQAmmSgImrBpXmpUuXKleMwMBAk9kyOBjwzp07qFSpEtKlS6dm3ShcuLCa hSNNkpGTEgJCQAgIASEgBISAEBACRgR0xZlK87JlyxAaGgoqzXTXiIyMVFvm9/DwQPr06XHgwAEV 9+DBA5w7d04p0EbyZFcICAEhIASEgBAQAkJACKRJArqP8+PHjzF8+PA4J9mgQQPUrFlTxZ85cwbr 169Xlmcq0cWKFUPz5s3h7Owcp5y5CPFxNkdF4oSAEBACQkAICAEhIARSAwFdcX4VjRXF+VVQljqE gBAQAkJACAgBISAEkoOA7qqRHMJFphAQAkJACAgBISAEhIAQSCsERHFOK1dSzkMICAEhIASEgBAQ AkIgWQmI4pyseEW4EBACQkAICAEhIASEQFohIIpzWrmSch5CQAgIASEgBISAEBACyUpAFOdkxSvC hUDKJxD1IgrvTxmCK3duJqixQxZMxJK9GxJUNrkLjVoxDeuO7EzuakS+EBACQkAIvCEETFYOXLFi hVrQhEtre3t7o27duihVqpSO4urVq/jzzz8RHBysVhbkVHWlS5fW02UncQR6TP0a7ao0Qp2SlcwK ip1+4dY1TFw7F6duXIBzuvQo7J8XX777IbK4eZotn5BIKh1rj+zEj+8PSkjx117GWvt7/joUZ29e Vm3MlCEjSuYqhN6NO8Pfy+e1t9veBlg7P3tlrDm8A3l8/JHbxz9OkSajPsb0j77FHztXI1vmrOhQ rUmcPM3K1YSPu1eceHsiEtt+W+3rVL0Z+s4ejbolKyOdk5M9TZI8QkAICAEhIAQsEjBRnJ2cnNCl Sxd4enrixIkTWLBgAXx9fZEtWzZwye25c+eiWrVqqF69Oi5duoSZM2ciR44cyJo1q8UKJME+Aocu nsKDp49Qs/jbZgvETqeVcOC879G0XE2M6NBHLZW+5+xRMF6C/QQ+adAOrSvWQ3DYPYxc8RtGrfgN E7t+Yb+ANJBzxf7N6FHnvQSfSaWCMR/XCRaSTAVzevvB1zMLdp05hBrFzD9byVS1iBUCQkAICIE0 SMBEcW7WrJl+ihUrVsTmzZtx48YNpThzuW1aoqtUqaKW4s6XLx9y5cqlFGxtgRS9sOzEm8D83WvR plIDODmat4rFTr8ddg93H4Yqpc81g4uqr16pynq9F29fxyfThmHFfycho3MGFb/15D+Y/vdSzPls lDq+HRaC0Sum4fTNS0jn6ITiAQUxskMflcbyg+dPwNOIZ3gaEY62P/RX8QNbfICyeYuq/bAnD/Hj mrnYf/44HB0d0bRsDaWAOTg4YNupfzBz6wo8fRYOT1d3FMqeG5uP70PPum3QqkIdVd7Wvwu3r2HE 8l9x894dvF2gBILDQtT51itVxWb99rSfQhwdHBXz7F4+aPzWO8qCb9wuWqVrFa+gzvHf+3fwwvAC c/9vtLLwk9+YP2fg1PULoMU6sHIDtK3SSC/e+adBKJ6zgHKBePD0MaoULoNP6rfTl7K3xk8TYqn+ 6yG3rV4fe64/67gdGoJLd26gTJ4iWpV2b2mpnr1tBUIfP1TX/b1K9U3KJvb+ovvHsn0bce9RGNxc XNW1b1+1sUkd9hzwft115rAozvbAkjxCQAgIASFglYCJ4mycMywsDE+ePEFAQIBxtL4EtxZ59+5d bVe2CSRABfHMjYsYFvipWQnm0n08vJDVwws/rpmDlhXqonD2PEifLuZy5vPLiZze2bDj9CFoCvWm 43tQv1RVvY55O1bB290LKwcOUHHHr57T01h+YZ/vlX+oJVeNbxZPgZebJ5b0/wHPnj9Dn1mjEeCd DY3eqh4tx2DA3F6j0XXKEOTMkg2jOvbFpLXz7Fachy35GTWKlcf7NVth+6kDGLp4st4+7lir3572 GwsLfx6B7UEHEOCd3Tha7a85tB2jO/VXLhy3Qu/CyTF6aMCI5b8hl3c2jO7YDzfvB+Oz6cORzzcn 3i5QUpcR8igMkz/4CpFRkfjw12/Aa6Ap/tbarwsAYK5+W+dnz/VnHWf/vQxfjyz6x5Vxvdzv3agz PDO5oX6pKnDJkNEkufFb1cE/+jibC4m9v9xdXDGyQ1/lQnL17r/4ZNq3KOKfF2+9/HCz1T6tTXl9 c6rnQDs23rKHps6w7uj8TjN0r93aOEn2hYAQEAJCQAjEIWB2cOCLFy+waNEiZV2mqwaDj4+P8mve vXu3Up4vXryIa9eu4fnz53GESkT8CCzcvRbNy9eGi7OpYqJJMZee3ikdJnX9AhnSOyuFstnoTzB+ 1WxERMZcjwalq2Lz8T1KzKPwJ8pqSgVIC/SLvv84DNHKoFO8rI60vh66FISP67dDxvTO8Mzkjubl a2LH6YOaeGT38gXb6eeZFQHefsjh5aush3oGKzvX7t7Ctbv/ghZGRwcH5cJCq7AW7Klfy2ttO+Pv ZWg1rheajfpEuWt83rxbnOz8END8nunny14B8jx6+TTaV2uifGdzZc2Od4qVj6Og1S9VWbWfrPkR sPP0YSU/Pu03V3+cRpqJsHX9WeRh+BO4ZozusTAjAvVLV1H3ZYlcBZHfz/Qj2lx+47jE3F+Uw/Zr ftfkSx90fkQaB3vaxx6Zh08fGxfT9x3ggICs2dT9q0fKjhAQAkJACAgBCwRiTJQvMxgMBqU0u7u7 o1GjmG5n+j936tRJDQ7csmULcubMqQYOMl5CwgnceXAPO4IOYV6v0WaFWEunIvnfl4oeZ0T4evFk NYjr/Zotlay6pSpj2paloEsAFbaiOfPDL7O3Xk+Xd5qr9P6/j8Wz5xFoXr4WutZqpadb2wl5GKoU wr6zo90+mDcyKkpZnLVydN9g4Fb7i3rxQku2ug198kBZQY0/JrxcPfQy9tSvZ7ay065KY3BwW0Zn Z4sfLn6eMcw0UWTKYDwQ08vVE1fums5M4e7iphWBW8ZMCH1ZLj7tN1e/LtTKjq3rz6KuGTIqdxwr YhKclJj7i5XuOn0I83auRvCDe8rKH/b4IUrmKhjv9jyJCIfmzhS7MO9LzXUpdpocCwEhIASEgBCI TcBEcabSvHTpUmVF7tixo+6LqRWiT/P//d//aYeYOnUqypQpox/LTvwJ0I+zdomKJgqYsRRb6Vpe WuZqFC1vYpGjoslu7b9P7sf2oIOqu13Lz61HJjf0a/ofFXXu3yvoNXMkqhZ+C4X88xhnAwwG02Mq jO6ZwY+mGR8PV1blOBksRBgQV5a5rJkzeSD8pX+1pjzff/xAzxqv+s20XxNE32QvtxiFXIs33tJn O3bweKkQ0/9Ws0bTep85k7tJ1pCH9/Vj5qXbA0N82m+ufl0odyycn63rz6L5fAOU7/jzyEgTVx8T +Qk8SMz9Rb/poYunKPeecvmKqxYMnDc+QS2hmwfdNSQIASEgBISAEEgsAd1Vg0rzsmXLEBoaisDA QOWOERkZaeLTfOvWLTVAkL7Pf//9NzhgUKajS/gleBz+FKsObUPbKg3NCrGW/jwqEr9uWoxrIbeU pZdd2FtP/YMC2XKZyGJ39/L9m9UAttgzduw7dwx3H0QrduxWNxheqEFvxgKofN24Hwz6ABsHKovF chbA1I2LlILL++dS8HUcvXLGOJvNfboFdZj4ORbvWW+Sl93nAVmzY+HudWrGkJ2nDymXEi2TvfVb ar8mJ6FbdxdXlMpdCAt2rVH8qZzRD5sfHsbhzwN/K7cOWpg3n9iLaoXLqmR7228sy9y+rfOzdv0p j5zp43zy+nlz4hMVl5j7iz0gLwwG/X7mfR7fe0trPF1qrM38MXn9fGw8tlvLLlshIASEgBAQAhYJ 6BZnKsMHDhxQGYcOHaoX4FzN2qwZly9fxsaNGxEREaFcNbp3746MGc375eoCZMcigb8O/o0yuYuA /pvmgrV0JwdHZSnsPXMkQh8/UD6aVIw7VDWdZ5eK3PcrZ6FywdJxuqvP/nsFY1fOxJNnT5Epgwu6 1noXeXxzmDSlbL5ian7owPF94ZzeGV+07AHGMXzT5lNMWjcPbSb0U8qjfxYfdK8VvwFWtEDfvBes puIzqRjA/977GCOW/YrFe9ejQv6SKJIjH4AY66899Vtrf+z64nv8RaueGPPndDQd/QkyOWdEu6qN UTHW1GwlAwqi+89fKeW5cdl39IGaScXP1vlZu/7a+dK/fsPRXfHycWdZDnakSw2tw8eunFHXqVLB 0ujbpIsSnZj7iy5FXWu1xMfTvlVzRHu7Z0axnPm1Jtu95YfhhdvXMaJERYtlVh3choZlquqDNi1m lAQhIASEgBB44wk4GGgqfEXh2bNnyJAhemq0V1Rliq2GFuP2PwzA120+UYOeYjfUVnrs/NaOO08a hI/qt41jDbVWJiWmcXW7j+q1tWo9TEnt5nR0/9ewIyoYzbLxOtpn6/qzN6HblCH4setg+HhkeR1N TLY6f1r3h5rHObCy+V4dDkLtMnkwpn04DPmzxW/wY7I1WgQLASEgBIRAiiWgu2qk2Bam0YbREhZY paFZpZmnbCvdXiycv/bRsyeoWCDlLlJh6VyCblxUM10w/cTVc7gTdg8lAgpYyi7xZgjYc/05K8ov Pb6Ge0ZXMxLMRG2ZDgRtj064fRGYMwB4Ehp9vG02sHVW9D7jmMY8DCyzdDgQFRn9x/2EymEb7Ahc iZML3FgKBy+dVLOdiNJsiZDECwEhIASEgDEBsTgb00hj+91+/lJN/8aZN2L73qaGU910fC+mrJ+v fJzpU/xZww6v3XobH26v2+KcbNefCvG8QUCxGsDR9UDpBsCp7UCe0sD9f6MRZc4GXDkGFHsnGfJs AzqOAjJljs/lkLxCQAgIASEgBBJNQBTnRCMUAUJACAgBISAEhIAQEAJvAgFx1XgTrrKcoxAQAkJA CAgBISAEhECiCYjinGiEKV8A5+bOli0bMmfOjHHjxsVpcMuWLfHDDz/EiU8tEam9/bY4H9m2DYNa tsSAxo2xacECW9klPZ4E5PmIJ7BY2TltaYkSJRAUFBQrBejatStmzXrp8x4nVSKEgBAQAqmPgImr BpfZvnDhAh49egQPDw9UqlQJNWrU0M8qPDwcS5YswdmzZ+Hq6gpOVRefBVBkVg0dpb7z22+/KWX2 0qVL8Pf3x+jRo9G2bVs9PSl28ufPj/Hjx6NFixZmxa1ZswY5cuRIkXNy80eXf1u3bjXbdkam5PZb bHQ8Er5u3x6tP/0UpapVi0eptJFVng/r1zElPB+//vorNm3apFacjd3ac+fOoXbt2rh48SLSp08f O1mOhYAQEAKpjoA+jzNbXr58edSvX1/NzXz9+nXMnj1bKVQFCkTPZLBy5Uo1h/OQIUNw7do1pdBQ 4fLx8Ul1J54SGjxz5kwMHjxYfYxUqVIFp0+fVlyTum28VsWLR6++Zk5248aNzUWnmrjU3n5boO8H ByN73ry2sqW5dHk+kuaSJvfzMXnyZIwYMcJsYwsWLIiAgAD8+eefeO+998zmkUghIASEQGoiYOKq kS9fPtWdz0VN2K3PJZU1KwFXeDt+/LiyQHMuZirTuXPnxrFjx1LT+aaotvLH5osvvlALzDg7O6NU qVJo0iRmAZOrV6+iXr16cHd3V9bo2G4WtPb369cPtWrVUuldunRRM1BoJ8kfzDx58qgl1LmIDfd/ +uknLRkzZsxQcZkyZTLrqsFryzpYP3/0KlSogLlz5+rlmbZixQr9uGHDhibymcCPsTFjxiirU968 ecFl29lzwUD3EFrD2XuRM2dOlU8TxnuN7R0wYAD27t2r9nm8ZcsWLYvN9ieWn16RlZ09a9fim44d 0bdBA9AyHPTPP3rue7dvY1K/fujXsCG+ePfdOG4WI7p3x9LJk/FD794qffZ335lcvymff46vAgMR FRmJH3r1Uvvbli3T5Sf3zgi3zphUuDcWvjsOwzN2xMwaXyPiUfS1Y913gm5gdp1hGO7SEWOydsfa XjMR+ey5atZYvx5Y13e2SRNZdqhDIPZMWG0Sb+lAno+U/3xcuXIFJ0+e1BfJMnctaXH+66+/zCVJ nBAQAkIg9RHgAijGYc2aNYZhw4YZvvzyS8OBAwf0pJCQEMOgQYMMDx48MGzYsMFw9epVw4oVKwx/ /PGHnsfWTnh4uK0sb0z6nTt3uPCMsyorFAAAIABJREFUYf/+/RbPuUaNGoaePXsaIiIiDEFBQYYs WbIY1q1bp+cvXbq0oWnTpoaoqChDWFiYwdfX17BlyxY9XdtxcnIynDt3TjuMs23RooVhwoQJceKL Fi1q+Oqrr5T8RYsWqfbOmTNHz8f6ly9frh83aNDAMGnSJP2YO+XKlTMUKlTIcOHCBRV/6dIlw/Pn z9X+7NmzDadOnVL7PL/MmTPHaf/MmTMN5GAtWGp/UvGzVPfRHTsM/23a1HDx5EmV5e6//xouHDum Z5/Qq5fhj7FjDZHPnxtuXbmi8p7at09P/65bN8OUQYMML6KiDE8fPTIMbNHCcObQIT1d2/msZk1D 8PXr2uEr237n2snwNdoYdoxcblgUOF7tH5i6UdUf8Tjc8H3OjwwjPLqo9L96/KLS1w/4XaXPrjPM MLfxCLV/98xNw+M7Dww3D15UeS5simFk6WTk+TAYUsPzsWzZMkOePHksXUYVP3/+fEPx4sXN5uG7 gO/BIUOGmE2XSCEgBIRASiNgYnGm2k/rQK9evUBr5bp16xAaGr2wAZfZZqAF+uDBg6ArB62k9FuW EH8CGldPT0+zhZm+bds2DBw4UDEvUqQIWrdujeXLl5vkb9euHRwdHZVPOi3W9D9PinDmzBnw7/PP P1fy27RpA1qMExI4QIi9GQy0GqdLF+0hRAt50aJFVTzPr1q1ajh69GhCqohT5lXw2716Naq3bIm8 xaKXIPfOlg35SpZUbXn66BHOHTmCeh06wCldOvjlyoUy77yDIzt2mLS1fO3acHB0REZXV+TIlw/B 166ZpCf0YOLEiciaNWucPw4SjU/wDPBGtUEtUf6j+qpY6JU7ant+/VE8uB6Ccj3qovxH9VBvTCdk zu2DY3Ojz8+3ZC6EnLmJR7dCldV64+dzcffMTVXWr1Rum02Q5wNIDc/H/fv3Yekdpl1kpt+7d087 NNk6ODigcOHC4u5nQkUOhIAQSMkETHyc2VC6YfCvcuXKyuf20KFDSpmmkszAEdSDBg1S++x+kyW0 FYp4/9N+bMLCwsyWvXv3roo3VnT8/PzijFynm4MW6Frz/Hl0V7kWl9DtnTt3lAuFm5ubLoL1JyTQ pcdcoN/jqFGjlF83lWnWSeU5KcKr4BcWEmJxwN6jl9fVI0vMEtbuWbLg1pUrJqfnnDGjfuzg5KTc MvSIROzwY+Xdd9+NI4GKSnxCBo9MKrtTeie1NUS9UNuHN++r7e7vV4J/xsHwwgC/krmwf9JaXNkR BFdfT9zYfx6eubLCLVtmuPp4GGc3uy/PB5RfcEp/PjiInIPJrYWHDx9aVK75zuLYDglCQAgIgdRC II7ibNxw/shqFmX6PNPaHBwcDE2Zun37tm5JNC4n+7YJcEAlrbC7du3C22+/HaeAt7e3irt165bO mLxpRXwVge17/Pix+lE0vt7GdVPZNVbULX0EmFPWqCQHBgZi9erVqFu3rhLLXg6DgT23MYFlY8fF pFreexX8PL29EXLrltlGuHpEK4cP7t1DVn9/lefhvXtws9DDYFZIIiKnT5+OoUOHxpHAa6Z9VMRJ jEeEm190T0m5nnVRsn1V05IOAC3OL6Je4Pi8nSjbvTb2/7QONw9eVAq1aWbzR/J8pI7no2TJkuBY AmszJlEx5nR1EoSAEBACaYGA7qrx4MED7NmzR7lm8CXILvPz58+jUKFC6jzpDsCXJN0HqCxxeiEO DKF7gISEEaDlngOgtm/frpieOnVKTa1GaV5eXqhevboaMEfe/PHhfLOWppRLWAssl2L3Kf++//57 pbhyEODly5dNCvDeoOLPwHuFLjz2hidPnoADTrXpDOliQg6xg6+vr5oikfnjE14Fv8qNG2MHuZw6 pZrGwYAXjx9X+5nc3VGgVClsnD9fWZFvX72KI9u3W7RQx+fc7MnbvXt3nDhxIs5fUrnCFGhYBlSe Ty3Zi4ubT+D28asIWrYfR2ZvAz92fIvnhIOjA86tOYTcNYohe9m8uLD+COxx09DOT56PlP988B3B WTP422Ep8DfD2sweHOBsPOjYkhyJFwJCQAikBAK6xZmKMUdHb9iwQU05R8WDShpnPdBC06ZN1dRp 3377LTgTA2dakKnoNDrx3/bo0UO5vlDJoVLKqf04j7MWfv/9dzCN14IzW9DfuFGjRlpyore0dNPy y14EKq2c5YI/cFOmTFGyFyxYgM6dO2PChAlqzm7OqmFsPf7yyy/RqlUrNccyLUqc99veQPeNb775 RpXheWfPnt1s+Tp16qiZOfjj7OLioqZIZByDrfYnN7/S1avjcVgYZg0fDrpt0C2jXd++OoIuQ4Zg 3ujRGNCkCTJmyoS67dujeMWKenpy7vB+4V9yBWe3jOiy6X9Y3/937J2wClERkcicxxflP472hU6f KQO88vnh/sXbyFmpIAKqFsblbafgVyqX3U2S5yN1PB8fffQR5syZY3ZmjRs3bqiZl6zNTc+5uv/z n/+gU6dOdt8bklEICAEh8LoImCyAktyNsNadl9x1i/zEE6ByzKnlrFmPEl+LSBACqZPAm/p8sDdI 643ktJLGoW/fvsoiTauyucAByBwgfPjw4RS5AJO5NkucEBACbzYB3eL8ZmOQszdHYP/+/coSTGsv XTK4kAoXapEgBIQAIM9H9F3A3key4Pz/sQPnYbc2qHjz5s2q57J06dKxi8qxEBACQiBFEhDFOUVe lpTRKPot012HvshZsmTBwoUL1cI4KaN10goh8HoJyPMRw18bjBsTE71HNyxr4ZNPPgH/JAgBISAE UgsBcdVILVdK2ikEhIAQEAJCQAgIASHwWgnos2q81lZI5UJACAgBISAEhIAQEAJCIIUTEMU5hV+g lNC87acOoNW4Xmgy6mMs3L02JTTJpA1RL6Lw/pQhuHInemU6k0Q5SNUERq2YhnVHdqbqc5DGCwEh IASEQNoh4DTUaJWERYsWgasBcqntAwcOICoqSi2RrJ1uUFCQmkuYK75xXmFzC3doec1tKU9bbtlc +pse12Pq13DN4IJ8fqYj0zUuttK1fEm9HfzHBPRp3BmDWvZAiYCCSS3eqjwqTZPW/YFGZSyvKLj6 0HY8jQhHy7ejp6kzFkhlv06JSvh102JcCr6Bkrmi5yXX8tgjX8ubkK0t+bbal5A6jctYk7/7zBGM /ms6flg9B7vPHkXTsjWMi2L8qtkYv+p3TN24CJuO74GXqwfy+sb4rI5Y/it+XDMHv2xahDWHt+N5 ZGQcvhR471EY2ozvh8OXT6N+KdPBpdbax7J5fHJg5IppeLdCXbX0u0kD5UAICAEhIASEwCsmYDI4 sHz58qhfv74aHX39+nU1Zy4HdxQoUEA1i6OmuSQy5+a8cOHCK25q2q7u0MVTePD0EWoWj7uKIM/c Vnpy0gl+cA95jBSm5KwrIbJX7N+MHnXeS0jRN7qMa4aMaFOpPs7+ewWHLgXFYZHOyQkj2veGr2cW bDt1AN8u+Rm5s/rrH3aNylRH91qt4ZrRBWduXsLgP35AYf88KJevuImsSWvnISBrdpM4ew9yevup +nedOYQaxcw/G/bKknxCQAgIASEgBBJLwERx5hLQWuAS205OTmqZbS0ub968atfS0spaPtnGn8D8 3WvRplIDODk6mS1sKX3t4R2Yt3MV7j4MRRY3T/Rt0gVv549e3vZ2WAjG/DkDp65fQKYMGRFYuQHa VolZQKX7L1+hbN5iOPfvFVwLuYVy+YphcMse+iInA+eNx+U7NxAZFYXes0bBydER7ao0QqsK0Utk m22oUSTrH71iGk7fvIR0jk4oHlAQIzv00XOEPXmIH9fMxf7zx5U1kRZPKsBcZOXi7esYPH8CnkY8 U9bktj/0V+UGtvgAZfMW1WXcDg3BpTs3UCZPET3Onh175FtrH+uwdn72yLenncmZp/RLZnce3Ddb Ta9GMQtSNC9fC7O3/Ymz/17WFee3jK6Dn2dWpHdKhwzpM5jI2nfuGOhKUz5fMZy+abrypElGKwe8 3rvOHBbF2QojSRICQkAICIFXQ8BEcWaVa9euVW4aERERaNmyJbjCm4TkJXDh9jWcuXERwwI/NVuR pfRdpw/h540LMapDXxTLmR+3Qu/irpESNGL5b8jlnQ2jO/bDzfvB+Gz6cOTzzYm3C5TU67kechvj /zNQKaedJg7EkcunoSlELMdQe1g3/Pj+IOTI4qeXs2dn3o5V8Hb3wsqBA1T241fPmRT7ZvEUeLl5 Ykn/H/Ds+TP0mTUaAd7Z0Oit6ko5W9jne+XfuvbITlW/SeGXB1TkfD2yIKOzqcKm5e3dqDM8M7kp FwGXDDHzzNIdxpZ8a+2jfGvnZ498yrDUPq39id0mlfzgsHvgh0SRHDEf12wb3ThWH96O8Ihn6qOt REB07xTTwp9HYMqGBRjTsT9WHdpq9lTsaV9e35zYcfqQ2fJUyusM647O7zRD99qtzeaRSCEgBISA EBACSUUgzuDA2rVro1evXmp1OPo6h4aGJlVdIscCAQ64a16+NlycYxQ746yW0qmwtChfWynNzJ8t c1aUyBXtg/wo/AmOXj6N9tWagF3uubJmxzvFysdRQGqXqAhHB4eXvtUByvJsXHdi9p3Tpcf9x2FK oacl3dgq/O/9O8o94OP67ZAxvTM8M7mjefma2HH6YLyqfBj+RLkKWCpUv3QVxZVc8vsFWMoWJ96e 9lk7vzgCLUQktH0WxMWJTgr5VE5HrvgNrSvWQx4ff5M6Or3TDNM+HAZex183L1ZWeC3DzL+Xg/eX X2ZvLSrO1p720e//4dPHccoywgEOCMiaTd0/ZjNIpBAQAkJACAiBJCQQx+KcIUMG8K9y5cpqAOCh Q4dAZVpC8hC48+AedgQdwrxeo81WYC095GEYqhbOarYcrYMMdN/QgperJ67cNZ15wsXIUuvo6Ki6 1bX8id12eac5pm1Ziv6/j8Wz5xFgd3/XWq2U2JCHoUph7zt7lF4NXUJocY5PoJ8u3TmSOtjTPmvn l9TteV3yXhgMYM8FBwZ+WK9tnGZQqeVfqwp1sPvsEWw4ugud32muXG3olzzj4+FxysQ34klEuKrD XDnes3M+i7mHzOWROCEgBISAEBACSUUgjuJsLJi+ps+eJb1SYlzHm76/ZO8GZZUzVnCNmVhL93b3 VNZc4/zavoeLm9rljAb+Xj5qn9bfzJnctSzJvvXI5IZ+Tf+j6qEfda+ZI1G18Fso5J8HWdyjfeip WNE31mowGCwm5/MNQHBYiJrRIX06G3IsSTEj3572WTs/k6rMyDdJT6EHVJrH/DlduVzQjYg9E9aC k4MDnjwLV1noQkM3oPrDe5gUaT7mM/z1+U8mcbYOrt79F3TXkCAEhIAQEAJC4HUT0F01Hjx4gD17 9ijXDCrLR48eBZeULVQoZvoug8GAyMhItQQzG859TjEnIWEEHoc/xapD29C2SkOzAmylN37rHfx5 YAuCrkfPcMLBaide+hG7u7iiVO5CWLBrjRrcR+WD8zFTcU3KwOW4O0z8HIv3rI8jlgPDNJ9rujUY DC/ALQOV+WI5CygfWfrH8t66FHwdR6+cMZFDS+eN+8FKeTNJeHnAbnr6OJ+8ft5css04S/LtaZ+1 89MqtiRfS7dnO3n9fGw8ttuerPHKQ8U4IvJ5dC/Dy31a/Rl4Pb5fOROcUeWLVj0Q9eKFysvrzcDr unz/ZuWa8fjZU2w+vhcHLp7U/ecblqmGrUNn6X/0QaZvfXyVZtZFl6NKBUupes39Sy4+5uqSOCEg BISAEHizCegmOnZ5njx5Ehs2bAAHBnp5eaFFixbInz+/TujIkSPgXM9a+Oqrr1CiRAl07NhRi5Jt PAj8dfBvlMldRPkfmytmK71akbJqwNbwZb8i5FEosrh6qAFamqwvWvVUFsOmoz9BJueMaFe1MSpa UUC0cvHZGmDAzXvBaiq92OU4zdnYlTPx5NlTZMrggq613jWZ1u6bNp9i0rp5aDOhn1Lu/bP4qOnN jOWUzVcMhf3zInB8Xzind8YXLXuAccaB/uF0ETD2oTZOt7ZvTb6t9tk6P9ZrTb61dhmnrTq4DQ3L VEW9WHMgG+dJyP7m43vw3bJf9aK0DtMPfljgZ+p6cn5shiYjP9bz9KzbBh2qNVEz7uwIOoDpW5aC rhTZM/uoe894xhO9UCJ2qKBfuH0dI0pUtCglufhYrFAShIAQEAJC4I0l4GCgaekVBVqy6T8tAXge FYn2PwzA120+MbtohK10YRhDgLM3dJsyBD92HQwfjywxCWlg79rdW+gyebAagJc/m/2DG9PAqatT +GndH2oe58DK5ntl3nQ+aeU6y3kIASEgBFILAd3inFoanFbaSUtaYJWGZpVmnqOt9LTCISnOg7Ny /NLja90NJClkphQZBy+dRI1i5fEmKs28Bpw33MvNw+LleNP5WAQjCUJACAgBIZAsBMTinCxYRagQ EAJCQAgIASEgBIRAWiPw2izOtx++Mg+RtHbN5HyEQKoncPfqqVR/Din5BLLmMh0HkJLbmhLbVjpH 9AquR2/I4PeUeH2kTULgdRLQZ9V4nY2QuoWAEBACQkAICAEhIASEQEonIIpzSr9CSdC+oF3b8H2n VhgT2AS7ly1IAolJK4LTGtaoWBLnzgQlrWCRJgSEgJo2NDHP11ftHbBkSsoE2fvjblg4b5bFxtlK t1hQEoSAEBACFgiYKM6cam7kyJEYMmQIRo8ejW3btpkUW7FiBUaNGqXSx48fj2PHjpmky0HKJLBp 5lQ0/aw/Pl+0GlXebfdKG8kftVaNa1mtc/6cGShUpBgKFi4aJ1/znA64dRWY0McB88fHScb6eUDf xtYX5ohbyv4YW/Jttc/+muLmPHn8KFo2qolcPi4olNMLbZrXQ/DtW3EzJiLGnuuTCPGvpOiECRMw bNiwOHVxWs0yZcqoKTM5bWbVqlUxduxYNUd1nMwpOMLS+dnb5MQ8X6yjaVcD3qpub22m+Ww9P6a5 4x7Zer56DxiMUcP/h+fPn8ctDMBWutlCEikEhIAQsELAxMe5fPnyqF+/PjJmzIjr169j9uzZyJEj BwoUKKBEODk5oUuXLvD09MSJEyewYMEC+Pr6Ilu2+C2TbKU9kpQMBB7cDYZP7rzJIDlpRM78bQq+ +Pq7pBGWRqTQCt/xvSbo9H4PzFn0l1p0aNP61YiKjEwjZ5h0p3H69GnUqVMnjsBz586puH379sHZ 2Vkt6tStWzfUqFEDFSpUiJM/pUZYOj9725vY56tifXtrevX58uUviBw5ArB+9Z9o2vK9OA2wlR6n gEQIASEgBGwQMLE458uXD5kzZ1aKM7dUlNOnj17pjXKaNWsGf39/uLq6omLFinBzc8ONGzdsVCHJ 1ggc2bQWk3t2wsjWDTHpgw64cPgfPXvYnduY+2V/jHqvESZ0aR3HzWJqrw+wYdoUzB7cR6Wv+H6E iTXtj68H4seubZWy9fug3mr/n1XLdPm2dm5cv4r3mtVFAX9PFMmdFZ0Dm5sUuRdyFx92bY/CAVlQ NI8Pvhv6hV5/0MnjKF88L4YO+S8O/rNX7fN457YtJjKuX7uCM0EnUaV6TZN4WwcXTwLtizvg5yEO OPVP9D6PDxt1koSFAN92dUDzAAe0zOOA34Y6wHjW8uDrQP9mDmjq74AWuR3wRWCM5doe+bbamJh0 sr/17030+LgX3N094OmZGa0DOyJ7juilp8k3r58bnjx5rFezcvliVC0XY7W3dv3suT7Wru+qFUuU e025YnlQ/523MaDXh8if3QMzf52st8fWDqeQnzJlCqpXr466devi119/Re3atU2KrVq1Ck2aNEG5 cuXQvXt33LlzR08fPHiw+tDftWsXfvnlF7Xfp08fPZ0LOnHlU76v+B4rW7asereFh0cvC86Mc+bM waeffqp62vh+o1V6y5aYe3TJkiVo1KiRqr9z5864efOmLp8rrdasWVP1wAUGBqJBgwY4fPiwns4d a+23Vb+t82OdGzdu1Ou7d++e+iA4fvy4HpfQ54sC1s6Jfq4a+Zl31Ujs80P3j46lHED5bYs4YMEP erPjtVOtRm2sX7PSYhlb6RYLSoIQEAJCwAwBE4sz09euXYsDBw6o1QNbtmyJ3LlzmykGhIWF4cmT JwgIePMWZTALJAGRZ/buxMbpP6P90FHIWbgYQoNv4eHdGMVgxfiRyJojAO2HjkborZuY8d/P4Jcn H/KXjbGWhdy8ji7fjUdE+FP81LMTrhw/gjylopfV7vDNaNWq4c1ro8uoH5Ele454tfLHcSORLZs/ Tl8NUeX279lpUr7n++3g4+OHI2ev4+mTJ3i3SW3kL1AQ7Tp1RdHiJXHg5CXlf7hg3mwsX/O3SVnt 4NiRQ/DPEYBMmVy1KJPtZ+MM8PQG6rUzIJNbTFK+4sD8kwblqrFungMmrIk7S8uw9x3g5QMsPmtA +BOgXxMHBBQAGnaKljNvnAOyZgPGXI0ue2JP/OQzt6X2xUhK2J6/f05k98+Bwf3/D117foLSZcrB 2WjxIPLNX7AQ1q5aoRRq1rJs8Xy0affy5ABYu372XB9r15f1UfHde+SsUqDz5S+AeUtW4cuBfdC1 56d2nfS0adOwdetWLFu2DA4ODmjTpg2KFo1R/JcvX64U4p9++gl58uTB8OHDMWbMGOVuwQroVhYc HIx69eqp91bsxZWCgoJQqlT0Ut204FMxZ28alXAtMA8VzU6dOoGK6uPHj6Ep1lR6Webnn39W78H+ /ftj4sSJyl2N5c+cOaPy0orNFVaZjy5sVMYZbLWfeazVb+v8ChcuDFqjef4MU6dOVR8hJUuWVMf8 l9Dni2UbdeafAfRxNhcS+/y4ewEjFxuQqzBw7SzwaR0HFClrQJl3Ymqz5/kqUrS4eg5iSpnuWUvn fZEzizP6/HcIBn31rWlBORICQkAImCFgYnFmOi0+vXr1QuPGjbFu3TqEhobGKfbixQu19HaVKlWU q0acDBJhF4HDG9agfJOWSmlmgcy+2RBQLPpHL/zxI6UEV3mvPZzSpYN3zlwoWuUdnI6lvJZ4pxYc HB2RIZOrUqpDblyzq257MmXIkBF3gm/j2tXLSJcunYlV+OqVS8p6/PV3Y+HikglZvLOiS7eeWLNy hT2i9Txhoffh4empH8feqd8OcHEFSlQC/r+984Crqnzj+A9wDxRBcSGKG/co98jcO/eoNM1dOctM S00ztdLMv01naeWq1NxpudMU9wYnigMRcOK6/8/vhXO493IXcEHG834+cMa7v+c95z7nOc/7vH7l zWOtH4dchNI+D/zEgMxZoYTvNn0M2LEmVgjIlBm4fQPKhtotA1ApAXacCW2f9ZZHx2TMlAmrNm5H lqxZ0b9XV5Qu4on3hg1ClJG2tHP31/Dbsl9UhoiIcGz9awM6GQnOtq6fvfodub6+Rf3AdhYu4gu/ EqXgW6y4wzbYFE7nzZuH8ePHI2/evPDy8kK5cuVAYZDhwYMHSkBmfMmSJZXGuHXr1qAW2ThQ8OSX MnOhmWmYdvXq1co0o1atWvj3339BYZ0aaC0w/5tvvgnGMzDO09NTvRTMnj1bCdMUitX4r10bly/H 3l8UnLt27aqEZualdpuCPEN82m+pflVIjGBtrX9lypRRgjPThoSEKEHdWOPO80l1f7HsxN4/zbpD Cc0sy6cUUL4WEHiMR7HBkfuLz4/w22Gxmcz2bMXzha14ydLw9PIyyyWHQkAICAHLBOJonPkDxD/+ kFCbERAQYPL5lFomTiLMmTOn+oRpuVg56wiBO2G3ULpmHYtJ70dGqPM5PGKXkM7ukQehly+apM+Y OYt+7OLqhmdPnWcDO2L0OEyd9CG6tG2KBw/uo1ffgXj3gwmqPpoRuLq6omPrWNvSx48eoUTJaMFH b5SdHZoh3Lt7106q+EffCgFcXYGRrWMF5SePAJ+SsWW9NtqA+ZNc8G5bFzx8ALTtC/T+IK7mOjZH 8u4V8S2GGf/7QVVKjyNvvt4Fs2dOw6gx49U5mm58+vE40KRiw9pVqFq9Bgr7xH4hsnX97PXEketL Uy4GN1c3ZdbFY2rwHAmHDh1SzxkKy1oIDQ1V5mA8/u+//3D37l1MmTJFi1ZlFy4cbaqinTxx4gQo QJoHtoM2zjTh4BwNmpWZC9ecPHju3Dll4mGePygoCNevX0fdunX1qNu3bysBXztBwfmVV17RDnHt 2jV9vocj7bdVv1aotf4xni8Z8+fPV0lp8sK2mH8BTKr7i5Um9v7ZtRb4ZYYLbl4BXN2A8FCgYvT7 i9Z9h7Z379xBTnfrL9+24jlmdx0Qbz4OgZZEQkAIKAJxBGdjLnwbj4qK0k9RaF65cqWawdyzZ0/1 eVWPlJ14E8iZxxPhN65bzJctZ/Qyw3dvh8Ejf0GV5t7tMGSz8QNhsaBEnPTI44lpM6P9UB09fBDt mzdAs5ZtULFyNXjnL4AMGTPinz2HldbRWjUcQxw31gJNBmiL+ygqysQUwVp68/MuLjQZMD8LeOYH 3DIC8/YYkCFT3Hiecc8DDJsZnfnsYWBYcxfUbgmUqhyb3lr5sSmSZ48eR1q364gTx2I92XjlzYe6 9Rth9W/LsHbN7yZmGmyVreuntdra9XH0+mrlaFtb11pLwy2FZM6j0AKPKSRqGmceV6pUSTd70NKZ b/lyT9tl80ChmW1hnPE8DeN0gYGBcHd314Vd4zjWr9lGa+dpVtKhQwd1SC8OFLqN+8B42kgzONJ+ W/VrdVrrH+P5wkANN19CtmzZgrVr12rZ9G1i7y+9IAs7ibl/KCRP7OWiTDWqxTjdeb+j6RwEC1Va PHX2zCmU8bf+OcpevMVC5aQQEAJCwAoB3VQjMjISnOxC0wwKy4cPHwYf7Pz8yMAfIdoiMp6TUmiu Qa0OtxISRqBykxbYv/YPXDkdvYoaJwNePhE9sSdLjpwoUq4idq/8VU3uuxV8CSd3b7eqoU5YC4Cn T5+iZqWS+G7OzDhFbN28HiFvz2WhAAAgAElEQVRXoyd/0jaU15qf/xn4mb7aCzUx6aP31QQ1jo9T J47h313bTcqhcHfxfJDSWJtExBzwMyltnPfvMzIwtpTQyrnceYGQ80DUA9MEBYoC/i8A33/kouyb KVyfPwEc2RWbbt9m4GbMXC92i0OZn5+Ng7XyjdPY2x8/ZiRWLF1sL5lJPLX3k8ePQVDgGfWiSoF5 9e/LUa5CJZN0Xbq/hnnfz8GBff+izSudTeJsXT8tobXr4+j11cqxtrU2vgoUKKDMHih80mzjk08+ UZ4vihQpooric4dmFHwOMfD5xPkX5s8bCo4cm+aBQnixYsWsCs1MT6HUkraacdTc3rlzRwml7AM1 17R/bteunaqKGmk+//7++2/1bKSrTs10gwkcab+t+lUlgBKMLfWP8dSic7L26NGj0bt3b3h4eGjZ 9G1i7y+9IAs7ibl/eL8angElok3QcTnQ9N60UJ3VU3t2bUfjpi0SHJ+Q+9NqZRIhBIRAmiegC878 7E6bwFmzZimfqJytzR8J2vcxcCIgJw3yB2PChAn48MMP1d/27aaCUpon5sQOlqlVD41798fvn3+i vGr8OGa4muSnVdF+5AcIuxqM6V1bK88ZtTt2Q4lqNbRop2wp8F44H4TbYXFtBDmxqGWjmsqrRpd2 TfHeuIkoXTb20/rcH5cpG+gqZYqoNEP6vYbIGBMTrXH1GryMSlWqg2mqlPHBjn+2aFH6tlffAVj+ a/wESy1z1QZAqSpAlzLRM/MD/tFigPE/GhB2IzqOnjOm9HPBvcjY+DOHgLcaRXvVeLedC94YZ0DR 2LlpKqGt8mNLsr23eOEPOPDfXtuJzGJd3dxwNfgyXmnREL55s4L86R3g7eGjTVI2a9kWN66FoHHz Vsr7hnGkvevHtLaujyPX17g+S/vWxhc1wW3btlUTArt3766EPgqbfA4x0O/yW2+9BdrscjIfJyrz +aPFa3XxGcUJe5yb8fnnn2un1bNM017rJ812KJhbS0M3nCNGjFAeN6hFpvtNThTUzD0oJPM8fdnT tR1dc3JyHl11MjjSflv1a0211j8tnu2nooMeP6yFhN5fAxu4KM81+7cCP06N3p81Itb0KTH3j7dP tFnUkEYuGNbCBQs/cYF/7Jxna12Jc54v9nypbNexa5w4nrAXzzQJuT8tViYnhYAQSBcEXAz8ZUum wAe89sNz/U6yVZtMvZNqEkqA9tMNa1TEH+v/0d2tJbSslJYv6Oxp1K3uj792BsTRFjurrXWqlsFH k6eDQnRqCaGXor+yaO2dNGkSsmbNilGjRmmnUvSW3j34LBs6dOhzbScnFtL3Pr8CGgevIv76YVq+ vz56fwQKFi6MgW+N0PtrvGMv3tr9WalQtP3+4StPjYuTfSEgBIQAbNo4Cx8hkBwE6JVjwz97kdnC J/fkqD8p66CGnQszmJtYOKvOjetWKy1/oybWP1U7qy5nlkMNLhdP4h81r/Tgs2TJEmdWkaRlmU8M TNLKrBROd3m0pe7YsaOVFNGn0/L9Neidkcibz9tq/+3FJ/X9abVhEiEEhECqJSAa51R76aTh6Z3A S7UqKfdv9LyRmrTNvG5fTBqt7Ia5oh/dv1FzyxX9Ukugt40ffvjBxO90crWdLvHo85r2zVxCXDOn M67fWONsfF72HSMgGmfHOEkqIZAeCTw3wTk9wpY+CwEhIASEgBAQAkJACKReAvrkwNTbhdTf8gdh d/HgduzSyam/R9IDISAEhIAQEAJCQAikPQIiOKeAazrHfzi+qTAyBbREmqARoAsyLvNMt2n58+fX Tss2CQjQrRu9UNDW+XmEQ9u24f327TGqZUv89euvz6MJabpOekT58ssvE9xHW+PjjTfewMKFCxNc dkrPmNb7l9L5S/uEgCUCJoIzVwT89NNPMXbsWEybNg3btm0zyWMv3iSxHCQLgXVvzcMEly4I/vds stSXUipp3ry5WoCHC3iY/+3cuTPRzeSKYhcuXFDLGFsqjHFavUxLn8EzZsywlFTO2SHA1e/8/f2f i70wm/b7t9+ix6hR+HzdOjTu1s1Oa1NXNH3xc5zSJtrZgT62aZdOP9NcCKZx48Zq9UTzevr374+X XopZ5cQ80oFjW+Pjgw8+UG5RuSBNWgxpvX9p8ZpJn9I+AROvGtWrV1eujfggDA4OxqJFi0B/plyy lsFefNrHlTQ9HHUtelnlpCk9bZa6Zs0atXgLe8cV5oYPH64WgeCx5vIwOXpOAZqeITZt2oROnTop v8CtWrVKjqrTTB1z5swxWVo7uTt2+8YNFChWLLmrTZb6uDALfWbTa4mxO9DEVk4tcMuWLdGvXz/w XuTCNFy5kOfNA9MlJtgaHyVLllSL1axatUrdf4mpJyXmTev9S4nMpU1CwB4BE42zn5+f0hxoGgRq 0oyXq7UXb68yiTclsKLbl0pbTI3xjMIDTSMBTMnxGmaXHoqlHT7H5Cw9saDBeDy6+1ClO7HiX5V3 35yN6nhurbHqeNOon+KUY+vEtP79sfmXXzBr2DB81LUrxnXuDK5ax3A3IgLzJ07EqFat8F6bNlj1 /fcmy2eHXb+Or4YPx8gWLVT8N2PG2KrKqXEclxyn/KNGLUOGDCbHrOzSpUto0qQJcubMqTwQGC+Q 4Ui8Iw3mPUL/w1yogqvQHThwQM9WuXJlUHDRArXk//vf/7RDMJ6LbFAbRw8Jr7/+uglfe/F0Rdat Wze1eIiXlxfGjBljkp8V8WWXPoe5QAi14lyZjyv1ORr4ib1NmzbK60XZsmWVBwwKKQzffPMNWrSI dYPHvlaoUEEvmktQFy5cWLWrRo0ayvRl1y6jpRsBXLx4US1W0rBhQz2f8c6e9esxsWdPDG/WDOO7 d8fJ//7Tozn+Zo8YgRHNm+ODDh3imFlM6dsXK+fMwZdDh6r4RZ98YsLn6/few4dduqiVOb985x21 v+233/TyE7tj6/5l2TdPXsGilz/G5Kw9Md2rL9a/swBPoqI1p59598OG4YtMmsB7n8+KPTPjLq1t ktDogNdq4MCB6rpt3bpVj9m7d686Z6yppYBqrBnm4i4cg7x/+FLIhV4WL45eqIj31tWrV9W44LLl 1Dj37NlTXW+tEmqKae6ULVu2OKYaERER4O+JNpZoGlW7dm01VrX83NobH0zDsb169WrjbE7Z/3v5 cjXmOPbGduyonpPmBdt6fl4JCgLHIMfnDx99hOkDBmDfpk16EY4+P5Oqf3pDZEcICIF4ETDRODMn l7XlCl2PHj1Sq3X5+vqaFGgv3iSxHNgkUH1QU5RoXhnrhy6wmu7WmRBUeeMluGZ0w/Fle3D0552o 1r8xCr5QHO0XDMaRxTtwbstR1B/XEXmKeyNfeR+rZVmL2L12LYZMnw6vggVx69o1UBhkmD9hAnJ6 eGDKypV4FBWFWUOHIp+PD2rFCEsbFy9GLi8vfPbnnyp90NHo5cKt1ZPc5ymIcmW1devWqRUvudIb BbtmzZqpptiLj0976ZeYy0dTuIhPOHv2LLZs2YK7d++C2iUKm8bCi634rl27wtvbG1euXFErezIf V9+jXaRxmDdvnrqvKahQQ86XDEfDwYMHsW/fPiUgcVVRLkPNVUQZGFelShW9KB5Tu6kFHnOpbHKm CRi/Cnz99ddqxT0tTUBAgNIYZs+eXTulb4/s3Infv/4ag6ZNQzF/fzU2I27e1ON/nDIF3j4+GDx9 OkKvXsUXQ4agkJ8fyhpdgxvBwRg6cyaiHjzAhJ49cfbQIZSKaTPzMbz90ksY9tVXyFuokF62s3as 3b+P70fhp6aTERV5Hw3Hd8btc9exd/Z6uGXOgKafvQbvCkVw60z0evAsI2ueHIi4FKqa5V0xelly e228efMmdu/ejZ9++gkUlCmkai86fJGhsPvXX3/p55YuXWqyAiFfyigwc6XYlStXmiyywhcifo3k 6o5DhgxRqzuaf+np06cP+EcbZ/PAFRZ//vlnvPLKK3jhhRfUqosUwN99912TpLbGh5aQ9vHGL6ja +cRus7m7Y9DUqcjv64vrly7hs0GD4FumjD5+tPKtPj8nTkSVhg3RqndvHNy+HfPGj9eyqK2jz09b /aOGn0oEmldOnjzZpHw5EAJCIGkImGicWQXfbt955x31GY6f98LDw01qthdvklgObBIo2sAflXs3 RMasmaymy+Xjibrvt0f1gU1VmvCL0YJDbt+8Kq9XmYLqfKlWVdVxwerRS6RbLdBCBAVhCs0Mnvnz g8s93woJwemAAHQYPBiZsmRBjly5ULdtWxw2WmI9Y6ZMiAwLUwIN85SsXNlC6ZZPcZlkaknN/5w1 EY/jljb6o0ePVj8s1AZzoYjff/9dNchevOVWxz1LQZF9qFWrFqhho1Y5PoHCCZeRptBQsWJFnDlz xiS7tfjz58+DGkRq0anRYxsGDBig98+4EArSFJoZqAGMr+D8/vvvK/tV5qf2kcI6AwVjaiS1cOjQ oTiCNFe2o6aagT6bzQXk27dv68tUa+VoWwok9dq3V0Izz3Fs+sVotB/cvauE4CY9esAtQwZ4FymC yvXr49COHVp2ta3eqBFcXF2RJXt2JVTfuHzZJD6pD6zdv4EbDyMy+Baq9WuM6gOboMn0V8F7mi/C DPkoOJ++irvXwtVXp83vLUbo6WhB2ruiqTLDWh9oQsGvDLzmtD+mVtZ4oViOLc5bYaD2mC9I2mIq XOCFf++9954an7SRZlla4LXcsWOH+trCVQvz5MmjNNvx+ZpRs2ZNtaQ6TTn4cvfjjz+qr0daHdza Gh9aOgrhYWFh2qHTtjWaNVNCMwvk+CpesSKuBAbGKd/S85OC9vXLl9Gke3c1/qo2bAjPAgVM8jr6 /LTVP35to3Igb968JmXLgRAQAklHII7qiVoD/lEQOHXqFPjGT2FZC/bitXSydQ6BzO7ZVEFuGaO1 wIanz5xTsFEpeSx4jYgIDVUP/FnDh+spnzx+rDR82okWvXphzdy56nM5NdL12rZFqz59tGibWwpz HTp0iJOGPwTOCDRjYDAWxCnwaZ4b7MU72oaNGzcqwY8aH87upxY4PsFYkKSm3/jTOcuxFk9BhwK3 8b3Jr0T8ETUP5l+NzOOtHdMmlryodTQP1HRRy26scabgTNMTLfD4k08+0Q7B47ZtTZcF5wsDte2W QsStW6hYt66lKGVGxAj3PHn0+Jx58uDaxYv6MXf40qcFFzc3ZZahHSfH1tr9e+fqbVX97i/WgH/G wfDMoDTO+2avx8UdJ5E9Xy5c2ReIXEW8kCN/bmTP626c3Oo+tbA0VWJ4+eWX1cS9//77T/8q0r17 d9SrV09pe5cvX67SUgBmoLaaYy9HjhzqmP+0FybtBAXpuXPnqkOOEwrXU6dOVRpqLY29bd++fVV6 vmBxroB5sDU+tLT8CkLh0tmBXzw2LVkC2sBTMUDTteJGpkhafZaen0zLlVAzZ82qJYO7h4e+zx1H n5+2+sdnBn+nJQgBIZB8BOIIzsZVU4jhj6e1YC/eWj4570QCMYKmsSYpvqVbElXdPT2VycYH8+cj Q8aMFovM7u6ObjGC0uWzZzHz7bdRoU4dFLEgvJkXQA0TPwGbB2pDNaHWPC4+x1yNjuHatWu6tvX6 9etKM8vz9uK1uvjDRPtLa4GaHn62/u6775RGjqZM2udw9sVYEKZdp7MC3eTxEy3tUKn9sxUS+jJC wdjDw0OZUpiXT20kBXdt4jA14FzRTtNAa0K3dsz81FCbX3OaztBe1tLEtVyenuprhnndPObYY+AX D+1ryZ2wMPVlxFL6lHYuh3e0oEezqwrd65g2zyVa4/zs6TMcXbITVfs2wr7/bcDVA+eUQG2a2PIR zWlohsEXnAULYk3BaK6hmRPRBIBjlxNbqXmmyYUWOK7v3bunXmo04Zn3j7XArwrUVnM8xidQcO7R owdWrFihXjq5IqNxsDU+tHQUHNkXZ4a74eGYN2GCMhMqU62aKpo28TAY4lRj6fnJL3RRDx8qEyFN eI68Hf2ypBXg6PMzKfqntUG2QkAIxJ+AbqpBW8Q9e/Yo0wz+iNHVEF0Z0WaSwV58/KtO3zk40efQ wn/U3+MHj0CbR/34vvWXFXNq2g8wf1iZ/+r+IPMkCTqmMFKsXDn88d13ePTwofrEe/X8eQQePqyX d3zvXoTHaHb52ZHCO7eOBP5gUjAz/+O4c0agwEdtGifGUXjljw/tNDmJj8FevNYGmjhQ4D1+/Lh2 yuKWmjHae06cOFGP572jTYbjvWQ8cVBPlMAdtoufummKQgGH7Mlyu5EpjSNF86WAwu/MmTPjJKeG mB5LLAU+Iyg4P3jwQL1YcGIiNZCa5o9t4b6PT7TNPe2w+TndvDxqyJmGzx7zUKtlS+z44w9cOHFC RXEy1bkYO/psOXOiRMWKasLW0ydPlA3qoe3brWqozcuOzzG16NqkuPjks5WWcxt473KS77ktx3D9 6CWc/G0fDi3apswV8pUrDBdXF5xdFwDfBv4oULUYgjYegqNmGvwSwpc+PrdpPsG/KVOm6JPxtLZR 6/zFF1+o5712bzCO14V/jOPYovaa9vFa4NcNmvDQtIj3FwVmaq2NX5S0tNa2NNfiyxYnmfLFkwK0 ucmFrfGhlUuTLFueOxJy/fgFjZ5CCsd4lKKJz9l4PJto2kH7+y1Llyp+h3fsQNi1a1qT1dbR52dS 9M+kIXIgBIRAvAjoGmf+CFI4oPaBD0UKFnyQFi8ebTNrLz5etUpi3A+9gz/e+NqEhHbs17gCMmbL bBJn7aDyGy8hcMMhnFy5V00crD2yDRJi52yp/DcnTsTyr77C2E6d1Cdur0KF0KZvXz3p5TNn8PP0 6Xh4/z6yZMuG1n36OOzWi7ay/EvKQJtJCugcy6yL9pqaNpj12otnGmqm+fmZM/4pZP76669o3bq1 xWZzbgAFDc4NoK3zuHHj1OQnTvijRoyCrjMDBZWhQ4cqwZPCC+/VSZMmxasKCkVBQUG4detWnHzm NszGCSgA026WmkYKS/zEb2y2YZ6XxxSCaI9tHuj1gRPYzD1rVKpXD/ciIrBw8mTQbINmGd2MTIde HzsWS6ZNU15fOP4ad++OcjVqmBef6OMffvgBvXr1wquvvprosrQCMuXIgtf/+ggbR/6If2f+iaeP niB30XzghGEG3v8eft5q0mDhmiXhU6c0Lmw7AUcnBlKzTGGSXme0QFMKvuDwJU77UkDBmWZGNDEy NgtiHo711157Tb1UcUItNdXa1wsK5RR66cf5xo0b6ksOy+eLnBY46Y8mH4znCx09tLBNnCCqfX3g 5EV+MaEJD7/WcDKh+UQ/a+OD9fCFjEK7LROphFy/PN7e6nn22cCByJ03L/j1g4qE+IQ+48eDnly2 LlumJqz6li2r82M5jjw/k6p/8emHpBUCQsCUgIuBv5zJFCx9jk2mqqUaISAEUigBmhXwkzw1azQd SEmBJil8OaCgZ64tT0ntTI628OWPX3BsaXeToh22xgc9tfCLhbFtvXEbUtL1m9y7N14ZOBDl4vEC nZr6Z8xd9oVAWiaga5zTcielb0JACKRcAtRC06ODsXY0pbSWrgI5OTI9Cs28JrSlp2BKkyNqmPnl JbmDrfExatSoOJMWjdv3PK/fhZMnlabaI18+ZWLESYZ+8bTFTsn9M+Ys+0IgPREQjXN6utrSVyEg BISAgwToZ3nkyJHK1pemOLSDj6+7RQerSpPJ/vvrL/w2Z46ycaZNfqe334a/kY/xNNlp6ZQQSAcE RHBOBxdZuigEhIAQEAJCQAgIASGQeAK6V43EFyUlCAEhIASEgBAQAkJACAiBtEtABOe0e22lZ0JA CAgBISAEhIAQEAJOJGAyOZBO8Omaiit50S8t3WfR3ZB54EpGM2bMQJEiRcAV4CQIASEgBISAEBAC QkAICIG0TsBEcK5evTqaNm2qZrcHBwdj0aJFKFSokO7zU4Px559/gitLSRACQkAICAEhIASEgBAQ AumFgImpBlcjy507txKcuaWTey7raxzoF1Nbbcz4vOwLASEgBISAEBACQkAICIG0TMBE48yOcvWm /fv3q9UD27dvD19fX73/XJ1s3bp1yjyDPj4lCAEhIASEgBAQAkJACAiB9EIgjuDcqFEj5eT+xIkT aulgLuNL7TPD5s2bUbFiRf04vUCSfgoBISAEhIAQEAJCQAgIARNTDeLInDkzcuXKhVq1aqFgwYII CAhQlK5du4aTJ09anCwoGIWAEBACQkAICAEhIASEQFonEEfjbNxhFxcXREVFqVNXrlxBaGgoPvzw Q+MkmDRpUpxzJgnkQAgIASEgBISAEBACQkAIpAECuuAcGRmJ48ePo2zZssiaNStOnTqFwMBA1KtX T3WzWrVq4J8WNm3aBArT4o5OIyJbISAEhIAQEAJCQAgIgbRMQBecXV1dleBMgfjRo0fw8PBAu3bt QBtnCUJACAgBISAEhIAQEAJCIL0TcDEYDIbkgkCzD9pQSxACQkAICAEhIASEgBAQAqmNQJzJgamt A9JeISAEhIAQEAJCQAgIASGQHAREcE4OylKHEBACQkAICAEhIASEQKonIIJzqr+E0gEhIASEgBAQ AkJACAiB5CAggnNyUJY6hIAQEAJCQAgIASEgBFI9ARGcU/0llA4IASEgBISAEBACQkAIJAcB3R0d K1u2bBmCgoJw9+5duLu7o2bNmiYrBc6dO1fFaw3jUtyjR4/WDmUrBISAEBACQkAICAEhIATSLAET wbl69epo2rQpsmTJguDgYCxatAiFChVCiRIldADt27c3WQhFj5AdISAEhIAQEAJCQAgIASGQhgmY CM5+fn56V6lNdnNzQ8aMGfVz3OFCKRkymGQziZcDISAEhIAQEAJCQAgIASGQFgnEkYDXr1+P/fv3 q9UDqV329fU16feWLVuwefNmeHp6onHjxrKyoAkdORACQkAICAEhIASEgBBIqwTirBzI1f0ePnyI EydOYOvWrRgyZAiofWY4c+YMcuXKpTTRAQEB2L59O4YOHYq8efM6xEdWDnQIkyQSAkJACAgBISAE hIAQSIEE4njV4JLYFI5r1aqFggULggKyFkqVKgVvb294eXkpW+h8+fLh+PHjWrRshYAQEAJCQAgI ASEgBIRAmiUQR3A27qmLiwuoJbYWaOtsMBisRct5ISAEhIAQEAJCQAgIASGQZgjognNkZCT27NmD 8PBwJSwfPnwYgYGBoJaZ4f79+zhy5IhyVUdTjr179+LKlSsoU6ZMmoEhHRECQkAICAEhIASEgBAQ AtYI6JMD6S2DZhebNm1SEwM9PDzQrl07ffIfNcvbtm3DihUr8PTpU9BMo2fPnihQoIC1suW8EBAC QkAICAEhIASEgBBIMwTiTA5Myp7J5MCkpCtlCwEhIASEgBAQAkJACCQlAd1UIykrkbKFgBAQAkJA CAgBISAEhEBqJyCCc2q/gtJ+ISAEhIAQEAJCQAgIgWQhIIJzsmCWSoSAEBACQkAICAEhIARSOwER nFP7FZT2CwEhIASEgBAQAkJACCQLARGckwVz0lYy9tevsOLfTUlbiZQeLwLPnj1D1y9HosPnQ/HK 5+/EK68kjh+Bp8+eovfXY3Hx5tX4ZUwjqbef2K/GWKupg7B09/o4vUrtz4ekbr+t8TP1j7nYcGhn HKZywnkEEnt90/P1k/HpvHEYn5J0d3TMtGzZMgQFBSlfze7u7qhZsyYaNGigl0eXdJs3b8b+/fuV X2e6pBs8eDC4EIqExBPo9914dKvdAi9XqGmxMGvxbao1RN6cHhbz2DvJH4X1h3ZiVu/37SVNU/Hv Lv4C/wUetdin2X0+QIUi0f7LLSZw4CTdOy4d9gVOBAdh7K+z4uS4Fh6Kbl+OUuddXVyQL5cnOtRo jC61msdJKydsE1h3cAeK5i0I37wFbSd8DrF/HtimhNmQ8JvwzJkbAxp3QaPyNZzakm83L8Wo1r1R p0xVi+Um5vlgsUAnnnTk+ZPU7bc1fl6t1wbDF01D4wq1kMHNzYk9TxlFXQm7jp5fjUYD/xcwscsQ pzYq6NplfLV+MU5cCUKmDBlRumAxjOswAHly5DKpJ7HXNz1fv7Q+Pk0GSgo6MJF4q1evrpbSzpIl C4KDg7Fo0SIUKlQIJUqUUE3eunWr8vX8+uuvw9PTE9euXQNXF5SQeAIB504g8sFdNCz3gsXCbMXX LFnRYh45aZ3Ap92H4ZnhmUrQ95sP0blWMzSvXFcdZ3QzuS2sF+KEGArXubPnxP6gY/ho2RwU8SyA mqUqOaHk9FPEH/u2oN/LnVJch9cf3IHvtyzHx13eQjmfErgUGoKbEWFOb+eNyDAUzVfIarmp/fmQ 1O23NX4Ke3ojX6482HU6QAmXViGn0oidpwJQqoAv9gUexeMnT5DRSUowaoFHL/kCras1xJQew9QK w3vOHAbPm4fEXt/0fP3S+vg0Hysp5dhEQvDz89PblTt3bri5uSFjxozqHLXNXFmQi54ULlxYnStW rJieXnYSR+CX3evRuWYzuLla1mpYiueb9qJtfyD83h0lOHSq2dSkEX2//RBVi/njbMhFXL51DdX8 /DGmfT/1snPuejDG/DITDx5F4cGjh8qsgJlHt3sTVYuVNSnH1kH/7yfgpXIvqgdvyO2bShhd/PY0 pWGIuH8Hs9YtVnHUwLau2kC1U3vZuh5xC9P+mItTV88jg6sbyvmUxKc9htmqzmlx0dqjGNYugJur q2qzcQVs3/RV85XWOFvmLOhSqxm61m6hJ7EXrye0sePq6oLMGTMpbWERrwI4HXJBF5x5/d5o+Arq xmgSqSWvXaoSXnmxsSrR1vVlAnvx9q4Py7B1fW10S4+ylT+x/WMl18Nv4fzNK6hcNO4Kponpf+cZ I/Bx17dQtlDsM5H1jfv1K1QvXg7tX3hZ76O1ncU7/sSr9VrrbSvu7QP+acHe+LHX/tFLZuDCzSt4 8vQphi6cqsYwv1hp41/GxqAAABwiSURBVMPe8yHo+mVM+f17XA27iRdKlMeNiFvoWKMJmlSsrZpo 7/owka3rS/Ox3/ZuRtjdCOTIml2V3b1OS1W2I88fe+1PLD82xNb4UQ0F1PNw1+mDThec7V1fW/en M8Yn+7fz1EG0rd4IP+1YjYDzJ1AjRglzMjgIHF+/jfpK17T/vm8Ltp34D1/GfJ20NX6uR4Qh9E64 uubZM2dVKJtUrKUhVVtb1/fewwd487uP8Faz7urZSNO3txdMUc9CbQyxkOd5/WyNb62jtu4PW/xU 3xz8feTvdVKMT60Pso1LwERwZvT69euVKcajR4/Qvn17+Pr6qlwRERHKPCMkJAQ///yzeoOsUqUK WrRoAQpFEhJOgDfQ6Svn8LGVT2XW4ltWqQf+0UbMWgi+dR0zeo1WwvGrX43GoQunUKVYWfh5F1am BI58KrVWtnZ+XcB2THt1JAp65AVNECiEMkxc/jU8cuTCipFfIupxFIYtnAYfz/xoUaWeil+y4094 5vTAmtHRJgtHL53VikwR2ym//4AinvkxrecIXL19A2/Nmwy/fIXxQokKqn324uPTifM3ghFy+0Yc Qc1eGdaur5bPVry966OVYe36avH2tonJb6v9rPdMyAXkc8+DLJkyW2yGrfy2+l/epwROXTkX53rw HF9m7AUKPfwMXrFIaatJHRk/ttrPccnQ6OM+ytSqUB5vk7rsPR8+XvENGvhXR++Gr4B20hOWzzHJ 7+iBteubM2t2fNpjuDKhobZ98NxJKFOwmMPPH3vtTyw/9s/e+GGaYvkKY8epAEdxxCudreublOOT jaTC5fjlsxjboT9OXglSwpcmOJctXBw5smTDgXPHdWH67+N70bRiHb1/tsZPXncPeLl7YNa6n9D+ xcYoXaBoHG22reubPUtWfNhxoHpRLV3ID2v2/41smbMqU0a9Ac/5+tka38ZttHZ/2OLH/I7+Ptoa n9Twv/xxX7xWvw36Nupo3CzZTwSBOBJvo0aN8M4776Bly5bYsGEDwsPDVfEPHz5U2/Pnz+Pdd99V ts1Hjx7Fvn37ElG9ZCUBTujhW3/WTFksArEXbzFTzEnaU9KGlm/9ft4+SvNsK31C4igIU2hmyJ/b S2nNqX0OOH8Sg5p2Q5aMmZArW060rd4QO04d0Kug3dvtexExwrabrpnTE9jYWbl3M9pOfyvOn7Mm 4t19eB+HL5xC97qtlMaF2uD6/tX1H1B78TaabhJFu3X2Y/DcyXivXV+8GCOUmySycWDv+lqLd+T6 aNVaur5anCPbxOS31n6t3jsP74M/staCtfz2+k/TipNXzqli3/z2I2w9thc3I8PUF5pi3tFf3KzV yfMcHwzW2ubo+LHWflt1OxJ3OfQaLoeGgNo7Ph9oIlYg5h52JL9xGmvXt1mlOrrdOe8fzhugEsAZ wVn87I0ftpXPzjsP7jmj2XHKsHZ9k3p8siG7zxxCfo+86pldza+cEpz5ZVkLjcrXxN/Ho3/fqT3m /cBnIIO98UNzt9lvfKC+pvGFrM20wZjx5yI8evJYK97u1r9wcfArKk0+1h7cjg9eif5aapzxeV4/ R8e3pfvDHj/20dHfR1vj0wUu8PHKr35/jbnJfuIIxNE4Z86cGfyrVasWTp06hYCAAFCYpskGb6q6 desiU6ZMyJMnDypUqKAmE3ISoYSEEeCP8Y6TAVjyzjSLBdiLt5jJ6GRWI00cvwxYsjEzSp6gXe9c nnHy3boTrn6Qhy+aqsfxkzI1zlp4vX5bzN26EiN//AxRjx+hbfWX8MZL9rV5zN+icj3UL1tNK0rf 8kHhjECNIYPxRBaP7LlwMTTac4O9eEfb8Nmro5A9SzbM3bIC1P7zhzQ+wd71tRbvyPXR2mHp+mpx jmwTk99a+7V6s2fOooRZ7dh8ay2/vf5XKFISq/f/DZoDULDce/aIMifijzmP7YXsmbOpJPzkbCk4 On6std9SmfE5F34/UmnpjV/WPbK7x6cIPa2167vrVACW7FwL2mDzK1TEvTsgV2cEZ/GzN37Y1vuP Hirh2RntNi/D2vVN6vHJduw8dQDV/cqpJtGkjyY1NJvTzJNerlADb8+fgsdPn+Cf4/tQ3a883LNm V+kdGT98EXu3bR+Vnh5vxi+fg593rkXvhu3VOUf+tapaHwv/+QOtqjaApfH5PK+fo+Pb0v3hCD9H fx9tjU/+5v/0VuxvsCPMJY19AnEEZ+MstEWNiopSp2jzTO8Zmn0qT1KQNn5DNc4r+44RoJ0UhSVj Ac04p71447QJ3jfSMiSkDOMxoeXPkzPaRn7+oMmwNtnOPVsOjGjdS2WhHfY7Cz5FndJVUKpgUa0Y q9t1B7djwT+/x4mnjfjq9/4X53x8T7hnzaGy8MdE06ZTO547W0513l68Vp+riyuePYvV4mjntS0n BuZ1z4ORbXqj+5ejlICmfS5lX/iyoYV7MVpM7TgxW0euj1a+peurxTmytZbfGf3zy+ejbHPjO7HJ Xv9L5C+Cm5G3lU0nPzVvPLRTeQco76Dgx+vKcXPs8lmUKRR3Loij48cRvglJkzubOx7GzG/QhOfb 9yJNinL0+li6vjQDmLD8a0ztORzUZjLQZtZiSMDzx1n8HBk/NDPh5/DkDEk9Ph8+foQD504oRcr6 Qzv0ru06dVAXnNlnPps4cZmCM+8DLTgyfrS03NLjTYOy1eP9xYFzTBpXqKnuw0blX4zj7eh5Xb/4 jG9L94cj/Bz9fXwe49P42qbHfd1UIzIyUk3+o2kGheXDhw8jMDAQpUpFu+XiREF/f3/s2rULT548 AdMfO3ZM97iRHuElts/URv0ZsA1da1t2QWYvPrH1Mz/f4q/cvgE+SJ0ZKDT4Fy6B7zYvUz/QfMGi He/hi6f1aqjFC428rY75WcpgeBZngp6e2GynZZX6WDj4kzh/8wdOMkuZsEPar1X0LYVfd61Twisf TrQDpWDPYC9eq5Uc7kXdx4UbV7RTFrf83MZJXQu3rdLjqZ2n4MVAe1naYzorOHJ9HKmLk3Z6fPUe lu/Z6EhykzTO6B8/Q9LG+XhwoEnZ9g7s9Z9CI1/glu3ZqMxniuf3wV9H9qCCj+Ma0x51W2PxjjVq zPMF6MLNq/j37BHVNEfHj71+JDSe3Hy8CmDp7g1K+UHvCpyfYBwSc334BemZwQC+gDBwcrLxva/V k9Dnj7P4OTJ+aLJly/PDnI2/YPOR3VqXnLJN6vFJV5x8qV835ltsHjdX/dEzzc7Tprbc1DpzjARe v4y6Mc8+dtDe+KGW+vu/lqvrzrFPE51/TvynjwdHINEcj18rhrfupRQLk1Z+i0gzk5nndf0cHd/W +mmPH/M5+vv4PMantX6ll/O6xpkq/ePHj2PTpk3gxEAPDw+0a9cOxYsX11m0bdsWK1euxOTJk5XH japVq+LFF1/U42UnfgRWH/gblX3LgPZ/loK9+AHfTwQ/+fDt98jF01j+70bULFkJw1u9bqk4i+eq +vkr/5pdZgxHpoyZ8EH7fuA5Z4SJnYdg9oYl6DxzhBI+C+bJi74vxU5QOBNyEZ+tWYD7UQ/UxI83 Xupg062WcZvo5YJ/SRk+eKU/pq+ah9bTBiNbpizoVqelPlGG9dqLZxpqDfo37owh8ybjqeEZxnca hFqlKltsNj0aLN2zQXkhoa3za/Xb4sNfv8LBCyfVpESaCTgz2Ls+jtRlgAFXw24oV4qOpDdO46z+ cX7ApsO74mUjz3bY6z+F5LsP78ErZ27UKFERf/y3FWULm3rZMO6P+X7rag2URo9aMwqlXu7Rfpy1 dI6MHy1tQrb2ng8fdRqEKb99r54bLxavgDLKg0isGUpiro93bk+88VJ7DJo7SfmYpw9rS+PX1vPH Xvudxc/W+OGLfdD1YEyxYUJFX93NK9fRvZEk5FpZypOU45NeGPgyQIWFFhr6v6CEXb6kaxNNXy5f E3O3rFRfRc0n4NoaP24urupL0NAFnyL8XqSysaUdfY86rbTqYOv68gskTTTm9B2nvlhSYUFBctqq efikm+mCUs/j+jk6vvXOWtixxY/JHfl9fJ7j00KX0s8pQzKGhw8fJmNtKbuqR08eGzp+PtRw5OJp iw21F28xk5wUAumQwINHUYbuX44y3Ii4lQ5777wu95rzgWHPmcPOKzCVlGRr/Mxev8SwdPd6qz25 dDPE0HBCb0NgyCWradJLxPMaP2nl+iWEn4zP53N36aYa6edVIWX0lG+KXWo3j2OzpbXOZvy9cODn 94HH9HRiANbOBA6sic4afg1YNBzgloHnGc90TL/kfeBi9OditeWxpXKic8t/IZDiCdBry7f9xiNn luiJSym+wSmkgfSScCNmQZZjl86qxVnohi+9BVvjh36x+SXIWjhw/rhy6UdTnvQWUsr4Sfbrt3Ue cHJ79OW+fg74aRRwP9r7GLYtAv5ZGB3Hc4xjGgbmWTkZePpE/UUufh8RB9apqMBD/2DYrcOo4BXt ncpuOWwDoNzzyfhUKJL1nwvl9eSqkbbT9NghwQkEKBAf3QJ4xjywb10G/KoBx7YCVVoAB9cD5RsB 5w7EP02Fl4FqbZzQSClCCAiBlErgr6P/4uuNvygbZ9oMv9W8R7zdIabUvkm7kp5Auh0/FIipcPJv ABzeCFRqBpzYDhStBNwOiQafO3+0gsq/vtU0F58Y8DjoAPZkcEejpxF4VrEJfK6fcaCcbUDPqUC2 3El/kaUGiwREcLaIRU4KASEgBISAEBACQkAICAFTAmKqYcpDjoSAEBACQkAICAEhIASEgEUCIjhb xCInUxqBnj17YsqUKQlqFt0nli9fHidPnkxQ/sRkeuONN7BwYYzNW2IKkrxCQAgIASEgBITAcydg YqqxbNkytRLg3bt34e7uDq4I2KBBA9XImzdvYsaMuA7sGd+8uWU/xOa9ExtnUyL0lc3lzffu3Yss WbKgevXqWLx4MfLnj11dzzRH/I8otPHvn3/+iX/mFJRj+fLlqFKlikW/4e+//75aGv7bb7+12OLv v/8ef/31Fzi+kzucPXtWrbx57tw5tfpmctcv9QkBISAEhIAQEALOI6D7cWaRFNyaNm2qhLjg4GAs WrQIhQoVUsKKl5cXJk2KXVzi8ePHmD59ulp223nNST8lUQvasmVL9OvXD2vWrAEXkli7dq1aXCb9 UHC8p507d7aa+NChQ2jf3voyrnPmzEmwttpqpQ5GlCxZEj4+Pli1ahU6derkYC5JJgSEgBAQAkJA CKREAiamGn5+fuDS2tR+csvVAjNmjHaQzmUjueS29sfP3kxDwVpC/AlcunQJV69exdChQ5V2nyxp jlC4cPTSrkePHkX27Nlx7949vXBqXcuUKaMfs4yXX35Z5ff09ESbNrGeMJi/aNGiGDVqFP7991+1 z+OtW7fq+UNDQ9GtWze12A1fjMaMGaMvob5ixQpl3uDr66teqPr374+cOXOCQmh8AjXoXH0ya9as qq0hITGzjrkAxcSJJgLvZ599hrJly+LWrVt6FTVq1ECBAgWQI0cO9XKhRwB4/fXXVb82btyoFuVh /zp2jF1ghWkvXryoFvZp2LChcVZ9f1r//tj8yy+YNWwYPuraFeM6d8bjR9GrKN6NiMD8iRMxqlUr vNemDVZ9/73OhwWEXb+Or4YPx8gWLVT8N2PG6OUa7zRq1AirV682PiX7QkAICAEhIASEQGokYO4+ et26dYaPP/7YMG7cOMP+/fvNo/Xjb775xrBz50792JEdWQAlllJUVJShUKFChh49ehh27dplsMSm cuXKhsWLF+uZ2rdvb5g8ebJ+PGDAAMOrr75qePz4sfr7+++/9ThtZ8GCBYYGDRpohybbRo0aGbp3 7264d++e4ebNm4by5csb5s+fr9IsX77c4O/vb2A7S5YsaZg+fbph27ZtBrbJ0cCyihYtajhy5Igq 58033zR069ZNz37nzh1D/vz5Vf8XLlxo8PHxMVy6FHchgSVLlhhq1qyp5zPeCQ4ONmTIkMHw4MED 49P6/m+//abaoJ8w25nar59hQs+ehptXrqiY0JAQw9MnT9T+rGHDDPMnTjREPXhguBMebpjcq5dh 97p1egk/f/65YeHkySo985w5eFCPM9755ZdfDOXKlTM+pe/z2tHJ9tixY/VzsiMEhIAQEAJCQAik TAImGmcK/tSO0e6WZgQbNmxQtqPmLwTXr18HTTlocyohYQQyZcqEHTt2KE1sly5dkCdPHgwcOBAP H3JRk+hAjerPP/+sDsLDw9X1ePXVV7Vo9WWA1+LChQvqS4A1raqewWjn/PnzSvv8+eefI1u2bKDG ecCAAfj999/1VPwCwXZS60ytMZdfv3YtZmEVPZXlHWrKR44cie+++06Z87AcatT379+vZ6AW+aOP PkKvXr0wevRo1T+aNZgHmmJUrmx5meqDBw8qLTy/klgKt2/fRq5cuSxF6edqtWgBr4IF1bFn/vxw dXPDrZAQnA4IQIfBg5EpSxbkyJULddu2xeHtMY7vAWTMlAmRYWG4de2aylPSShtZf1hYmF6f8Q6/ 5JQuXRp588Y4vjeOlH0hIASEgBAQAkIgRREwsXFmy7hACf9q1aqFU6dOISAgQAnTxq3et2+f+qRO gUtCwgkUK1YMc+fOVQXQ9IV2vFOnTsWECRPUOQqaY8eOBU0qaCNLswUKsVr48MMPMW7cODRp0gT3 799XgjfNHxwJNBNxdXU1ubaPHj1SQpyWn6Y6DNxqf7TNdiRwMmJkZKR6CdPS0y6efTYO5cqVQ2Bg IP73v//B39/fOErfp+BszT6Y49PWCxwnuXKyq62Qx8JkzIjQULi4umLW8OF61iePH8PbSLBv0asX 1sydi9kjRuBRVBTqtW2LVn366Om1nTt37lgV3smV95kEISAEhIAQEAJCIOUTiCM4GzeZ2jB6wjAO FH4orNA2VoLzCNC2l/a5R47ELIcNIF++fEqwpTeI3377Da+99ppJhbRr/uabb9Q5al7r16+Ptm3b olq1ano6XkNLi0PSbpj266yP2mBHg6WyLOWlZppeWXbu3GkpWp2jHTa17YMHD1aa6UGDBilh3jwD vY9MnjzZ/LQ6plBdt25di3E8WaFCBdAW3JZHFxcLud09PdXLwgfz5yNDjJ2/ebLs7u7oNmKEOn35 7FnMfPttVKhTB0VKlzZJSsGY7vAkCAEhIASEgBAQAqmbgG6qQe3gnj17lGkGhQwKK9QE8hO9caCw Q0HL/LxxGtm3T4DaXbpRO3PmDPgyQgGWk//MTRJorkFtLCf4mXuWWL9+Pa5cuaIqo6kCPXOYmyxQ +A4KClIaaeNW0QyDgi1NJGhWQYH42LFj2G5kimCc3tr+06dPldeVmTNnmiSpWLEiKMyz3Qw0mfj1 11/B9Ax0z9aiRQvMnj1b9Y+a159++knFGf+jZpyTBSkAWwrsPyceWgs0g6D5B8d2fAJNN4qVK4c/ vvsOjx4+VHyunj+PwMOH9WKO792L8NBQdUyzDTLk1jxs27ZNmT6Zn9eOR4wYodwQaseyFQJCQAgI ASEgBFImAV1w5mf748ePY9asWfj444+xefNmtGvXTtm1GjedZhrUaFKTKSHhBCgoXr58WfnJprBL cwval1OQNQ7UINMTRatWrZT3DOM4av5pvkFzBObndaPpg3Gg1w26GaTwSI8dW7Zs0aMpqNNGmnEs g/bTERERerwjOxQWKZgbe8JgvhdeeEF5zejQoYOyoabgS6Gc/aY2mm4PaYbClwGOpU8//RQ0PdFs vGmyQi8ZbDvroEaewj5NUowD7aNprkLvLvQgYinQdtySUG4prfG5NydOxJ2wMIzt1El5zlg4eTIe GHk5uXzmDD4bMEDF0VyjdZ8+KGBmikLBni9FXbt2NS7aZP+HH37QXzBMIuRACAgBISAEhIAQSFEE TBZASeqW2fpcntR1p+byqTWlqzYK0RLiT4DCNgV3an41d3/xLyVhOYYPH65eTKhVthROnz6tXgqo na9UqZKlJHJOCAgBISAEhIAQSCEEbNo4p5A2putm0P8vtcA0a5CQMAKcxMovJeZmLAkrLX65qAX3 9va2molfADjxUYRmq4gkQggIASEgBIRAiiEgGucUcyniNoR2wjRroOcN0TbH5SNnhIAQEAJCQAgI ASGQnAREcE5O2lKXEBACQkAICAEhIASEQKoloE8OTLU9kIYLASEgBISAEBACQkAICIFkIJCuBWeu kFiwYEHlS5iu3CQIASEgBISAEBACQkAICAFrBExMNbjQBl2LcaU1uiejn98GDRroeW/cuKGWZKaL La4uSFdodHfmqGu6lOhVg+7P6Mps48aNyvWZ3lnZEQJCQAgIASEgBISAEBACRgRMvGrQZy7969L7 QHBwMBYtWqSEyhIlSqgsS5cuVe68+vXrp/z2fv3118pjgLXFKYzqSbG77GvevHnj7b84xXZIGiYE hIAQEAJCQAgIASGQJARMTDW4wETu3LmV4MwtF6vgssxaCA0NVUsHc7EUCptctpnnUnugxlxMNVL7 VZT2CwEhIASEgBAQAkIgaQmYaJxZFZdx3r9/P7gkdPv27eHr66u3gKvSccltrujGleJoutGmTRs9 PrXucFGMHTt2qNX3UmsfpN1CQAgIASEgBISAEBACSUvAxMaZVdEOmXa/J06cwNatWzFkyBClhWbc nTt3MH/+fOVbmFpaLspRr149h1uYEm2c2fgDBw6o5a6pXd+9ezdKlSrlcJ8koRAQAkJACAgBISAE hED6IBBHcDbu9oIFC5TGuVGjRnj69ClmzZqFypUro379+someOHChWryIG2jHQkpVXDu2LGjWhZ5 5syZDk90dKS/kkYICAEhIASEgBAQAkIg7RAwsXE27xa1yhR2GWiacfPmTeVpI0OGDPD09ETp0qVx 6tQp82yp7ph9aN68uQjNqe7KSYOFgBAQAkJACAgBIZB8BHTBOTIyEnv27EF4eLgSlg8fPozAwEDd bIHu6WjKQPtnTqRj+rNnzyoBOvmamzQ1UZvOlwEJQkAICAEhIASEgBAQAkLAGgFdWqSnjOPHj2PT pk1qYqCHhwfatWuH4sWLq7x029azZ0/l73jz5s1KiPb391d+nK0VnlrOGwwG5UEktbRX2ikEhIAQ EAJCQAgIASGQ/ARs2jg7uzkp0caZ7vToJYQTBGl6IkEICAEhIASEgBAQAkJACFgioJtqWIpM6+e4 5PaLL76I/v37i9Cc1i+29E8ICAEhIASEgBAQAokkkO41zonkJ9mFgBAQAkJACAgBISAE0gmBdK1x TifXWLopBISAEBACQkAICAEh4AQCIjg7AaIUIQSEgBAQAkJACAgBIZD2CYjgnPavsfRQCAgBISAE hIAQEAJCwAkEdHd0LGvZsmUICgrC3bt3Qb/NNWvWVCsDavVcunQJq1atwo0bN5AzZ040a9YMlSpV 0qJlKwSEgBAQAkJACAgBISAE0iwBE8GZS2c3bdoU9NkcHByMRYsWoVChQihRooRacnvx4sWoW7cu 6tWrh/Pnz4NLcjPey8srzQKSjgkBISAEhIAQEAJCQAgIARIwMdXw8/ND7ty5leDMrZubm1rohAm5 3PadO3dQu3ZttTQ10xYpUgTHjh0TkkJACAgBISAEhIAQEAJCIM0T+D9dmzrWG8Le8QAAAABJRU5E rkJggg== --001a113ec186264f08052171cf7a--