diff --git a/README.md b/README.md index c59948363fc..7796337016b 100644 --- a/README.md +++ b/README.md @@ -252,7 +252,7 @@ following environment variables must be set when running locally: export KUBECONFIG=/path/to/kubeconfig ``` -Ensure when testing RHODS operator in dev mode, no ODH CSV exists +Ensure when testing RHOAI operator in dev mode, no ODH CSV exists Once the above variables are set, run the following: ```shell diff --git a/bundle/manifests/rhods-operator.clusterserviceversion.yaml b/bundle/manifests/rhods-operator.clusterserviceversion.yaml index 2d324e16fc9..2c29703e035 100644 --- a/bundle/manifests/rhods-operator.clusterserviceversion.yaml +++ b/bundle/manifests/rhods-operator.clusterserviceversion.yaml @@ -209,28 +209,30 @@ spec: name: featuretrackers.features.opendatahub.io version: v1 description: |- - Red Hat OpenShift Data Science (RHODS) is a complete platform for the entire lifecycle of your AI/ML projects. It is the flagship product of OpenShift AI. + Red Hat OpenShift AI is a complete platform for the entire lifecycle of your AI/ML projects. - When using RHODS, your users will find all the tools they would expect from a modern AI/ML platform in an interface that is intuitive, requires no local install, and is backed by the power of your OpenShift cluster. + When using Red Hat OpenShift AI, your users will find all the tools they would expect from a modern AI/ML platform in an interface that is intuitive, requires no local install, and is backed by the power of your OpenShift cluster. Your Data Scientists will feel right at home with quick and simple access to the Notebook interface they are used to. They can leverage the default Notebook Images (Including PyTorch, tensorflow, and CUDA), or add custom ones. Your MLOps engineers will be able to leverage Data Science Pipelines to easily parallelize and/or schedule the required workloads. They can then quickly serve, monitor, and update the created AI/ML models. They can do that by either using the provided out-of-the-box OpenVino Server Model Runtime or by adding their own custom serving runtime instead. These activities are tied together with the concept of Data Science Projects, simplifying both organization and collaboration. - But beyond the individual features, one of the key aspects of this platform is its flexibility. Not only can you augment it with your own Customer Workbench Image and Custom Model Serving Runtime Images, but you will also have a consistent experience across any infrastructure footprint. Be it in the public cloud, private cloud, on-premises, and even in disconnected clusters. RHODS can be installed on any supported OpenShift. It can scale out or in depending on the size of your team and its computing requirements. + But beyond the individual features, one of the key aspects of this platform is its flexibility. Not only can you augment it with your own Customer Workbench Image and Custom Model Serving Runtime Images, but you will also have a consistent experience across any infrastructure footprint. Be it in the public cloud, private cloud, on-premises, and even in disconnected clusters. Red Hat OpenShift AI can be installed on any supported OpenShift. It can scale out or in depending on the size of your team and its computing requirements. Finally, thanks to the operator-driven deployment and updates, the administrative load of the platform is very light, leaving everyone more time to focus on the work that makes a difference. ### Components - * RHODS dashboard - * Curated Notebook Images (incl CUDA, PyTorch, Tensorflow) + * Dashboard + * Curated Workbench Images (incl CUDA, PyTorch, Tensorflow, VScode) * Ability to add Custom Images * Ability to leverage accelerators (such as NVIDIA GPU) * Data Science Pipelines. (including Elyra notebook interface, and based on standard OpenShift Pipelines) - * Model Serving using ModelMesh (and Kserve) with a provided OpenVino Model Serving Runtime + * Model Serving using ModelMesh and Kserve. * Ability to use other runtimes for serving * Model Monitoring - displayName: Red Hat OpenShift Data Science + * Distributed workloads (KubeRay, CodeFlare) + * XAI explanations of predictive models (TrustyAI) + displayName: Red Hat OpenShift AI icon: - - base64data: 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 + - base64data: <?xml version="1.0" encoding="utf-8"?>
<!-- Generator: Adobe Illustrator 27.4.1, SVG Export Plug-In . SVG Version: 6.00 Build 0)  -->
<svg version="1.1" id="Logos" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" x="0px" y="0px"
	 viewBox="0 0 835.9 244" style="enable-background:new 0 0 835.9 244;" xml:space="preserve">
<style type="text/css">
	.st0{fill:#FFFFFF;}
	.st1{fill:#EE0000;}
</style>
<g>
	<g>
		<path d="M301.3,183.1c0,5.2-1,10.1-3,14.7c-2,4.6-4.7,8.6-8.1,12c-3.4,3.4-7.4,6-12.1,8c-4.6,1.9-9.6,2.9-14.9,2.9
			c-5.3,0-10.2-1-14.9-2.9c-4.6-1.9-8.7-4.6-12-8c-3.4-3.4-6-7.3-8-12c-2-4.6-3-9.5-3-14.7c0-5.2,1-10.1,3-14.7c2-4.6,4.6-8.6,8-12
			c3.4-3.4,7.4-6,12-8c4.6-1.9,9.6-2.9,14.9-2.9c5.3,0,10.2,1,14.9,2.9c4.6,1.9,8.7,4.6,12.1,8c3.4,3.4,6.1,7.4,8.1,12
			C300.4,173,301.3,177.9,301.3,183.1z M290.2,183.1c0-3.9-0.7-7.5-2.1-10.9c-1.4-3.4-3.3-6.3-5.7-8.7c-2.4-2.5-5.2-4.4-8.5-5.8
			c-3.3-1.4-6.8-2.1-10.6-2.1s-7.2,0.7-10.5,2.1c-3.3,1.4-6.1,3.3-8.5,5.8c-2.4,2.5-4.3,5.4-5.7,8.7c-1.4,3.4-2.1,7-2.1,10.9
			c0,3.9,0.7,7.5,2.1,10.9c1.4,3.4,3.3,6.3,5.7,8.7c2.4,2.4,5.2,4.4,8.5,5.8c3.3,1.4,6.8,2.1,10.5,2.1s7.3-0.7,10.6-2.1
			c3.3-1.4,6.1-3.3,8.5-5.8c2.4-2.4,4.3-5.3,5.7-8.7C289.5,190.6,290.2,187,290.2,183.1z"/>
		<path d="M311.6,241.1v-74.5h10.3v5c2.2-1.9,4.7-3.3,7.5-4.3c2.8-1,5.7-1.5,8.7-1.5c3.7,0,7.2,0.7,10.5,2.1
			c3.3,1.4,6.1,3.4,8.5,5.8c2.4,2.5,4.3,5.4,5.7,8.7c1.4,3.3,2.1,6.9,2.1,10.6c0,3.8-0.7,7.4-2.1,10.7c-1.4,3.3-3.3,6.2-5.7,8.7
			c-2.4,2.5-5.3,4.4-8.6,5.8c-3.3,1.4-6.9,2.1-10.7,2.1c-3,0-5.8-0.5-8.5-1.4c-2.7-0.9-5.1-2.2-7.3-3.8v25.9H311.6z M336.7,174.8
			c-3.1,0-5.8,0.6-8.3,1.7c-2.5,1.1-4.6,2.6-6.3,4.6v24.1c1.7,1.9,3.8,3.4,6.3,4.5c2.6,1.1,5.3,1.7,8.3,1.7c5.1,0,9.4-1.8,12.8-5.3
			c3.4-3.5,5.1-7.8,5.1-12.9c0-5.2-1.8-9.6-5.3-13.1C345.9,176.6,341.7,174.8,336.7,174.8z"/>
		<path d="M372.4,193c0-3.7,0.7-7.3,2-10.6c1.4-3.3,3.2-6.2,5.6-8.7c2.4-2.5,5.2-4.4,8.4-5.8c3.2-1.4,6.7-2.1,10.5-2.1
			c3.6,0,7,0.7,10.1,2.1c3.2,1.4,5.9,3.4,8.1,5.8c2.3,2.5,4,5.4,5.4,8.8c1.3,3.4,2,7,2,10.9v3h-41.8c0.7,4.4,2.7,8,6,10.9
			c3.3,2.9,7.3,4.3,11.9,4.3c2.6,0,5-0.4,7.4-1.2c2.4-0.8,4.4-2,6-3.4l6.7,6.6c-3.1,2.4-6.3,4.2-9.6,5.3c-3.3,1.1-6.9,1.7-10.9,1.7
			c-3.9,0-7.5-0.7-10.9-2.1c-3.4-1.4-6.3-3.3-8.8-5.8c-2.5-2.4-4.5-5.3-5.9-8.7C373.1,200.5,372.4,196.9,372.4,193z M398.7,174.5
			c-4,0-7.5,1.3-10.4,4c-2.9,2.6-4.8,6-5.5,10.2h31.4c-0.7-4-2.5-7.4-5.4-10.1C405.9,175.9,402.5,174.5,398.7,174.5z"/>
		<path d="M434.3,219.5v-52.9h10.4v5.3c2.1-2.1,4.5-3.7,7.1-4.7c2.7-1.1,5.6-1.6,8.8-1.6c6,0,11,1.9,14.8,5.8
			c3.8,3.9,5.8,8.8,5.8,14.9v33.3h-10.3V188c0-4.1-1.2-7.3-3.5-9.8c-2.4-2.4-5.6-3.6-9.7-3.6c-2.8,0-5.3,0.6-7.5,1.8
			c-2.2,1.2-4.1,2.9-5.5,5.1v38.1H434.3z"/>
		<path d="M488,207.5l6.7-7.7c3.9,3.8,7.9,6.7,12,8.6c4.1,1.9,8.5,2.9,13.1,2.9c5.3,0,9.5-1.1,12.8-3.4c3.3-2.3,4.9-5.2,4.9-8.7
			c0-3.2-1.1-5.7-3.3-7.4c-2.2-1.8-6-3.1-11.4-4l-12.2-2c-6.7-1.1-11.7-3.3-15-6.4c-3.3-3.2-4.9-7.3-4.9-12.5
			c0-6.2,2.4-11.3,7.3-15.1c4.9-3.8,11.4-5.8,19.5-5.8c5.1,0,10.3,0.8,15.4,2.5c5.1,1.7,9.8,4.1,13.9,7.3l-6,8.3
			c-4-3-7.9-5.2-11.9-6.7c-4-1.5-8-2.2-11.9-2.2c-4.7,0-8.5,1-11.4,3c-2.9,2-4.4,4.6-4.4,7.8c0,2.9,1,5.2,3,6.8
			c2,1.6,5.3,2.8,10,3.5l11.8,1.9c7.7,1.2,13.3,3.5,17,6.8c3.6,3.3,5.4,7.7,5.4,13.4c0,3.3-0.7,6.4-2.1,9.1
			c-1.4,2.7-3.3,5.1-5.9,7.1c-2.5,2-5.6,3.5-9.2,4.6c-3.6,1.1-7.6,1.6-11.9,1.6c-5.8,0-11.4-1.1-16.8-3.4
			C497,214.9,492.2,211.6,488,207.5z"/>
		<path d="M567.4,144.5v75.1H557v-72.8L567.4,144.5z M557,219.5v-52.9h10.4v5.3c2.1-2.1,4.5-3.7,7.1-4.7c2.7-1.1,5.6-1.6,8.8-1.6
			c6,0,11,1.9,14.8,5.8c3.8,3.9,5.8,8.8,5.8,14.9v33.3h-10.3V188c0-4.1-1.2-7.3-3.5-9.8c-2.4-2.4-5.6-3.6-9.7-3.6
			c-2.8,0-5.3,0.6-7.5,1.8c-2.2,1.2-4.1,2.9-5.5,5.1v38.1H557z"/>
		<path d="M621.1,158.1c-1.7,0-3.2-0.6-4.5-1.9c-1.3-1.3-1.9-2.8-1.9-4.5c0-1.7,0.6-3.2,1.9-4.5c1.3-1.3,2.8-1.9,4.5-1.9
			c1.7,0,3.2,0.6,4.5,1.9c1.2,1.3,1.9,2.8,1.9,4.5c0,1.7-0.6,3.2-1.9,4.5C624.4,157.4,622.9,158.1,621.1,158.1z M626.3,166.6v52.9
			h-10.4v-52.9H626.3z"/>
		<path d="M634.1,166.6h12.3v-8c0-5.3,1.5-9.5,4.6-12.5c3-3,7.5-4.5,13.4-4.5c1.3,0,2.6,0.1,3.9,0.3c1.3,0.2,2.5,0.4,3.6,0.7v9
			c-1.2-0.3-2.3-0.6-3.2-0.7c-1-0.1-2.1-0.2-3.3-0.2c-2.9,0-5.1,0.7-6.5,2c-1.4,1.3-2.1,3.4-2.1,6.2v7.8h15.2v8.7h-15.2v44.2h-10.3
			v-44.2h-12.3V166.6z"/>
		<path d="M687.7,206.4v-31.1h-11.2v-8.7h11.2v-13.5l10.3-2.5v16h15.6v8.7H698V204c0,2.7,0.6,4.6,1.8,5.7c1.2,1.1,3.2,1.7,6,1.7
			c1.5,0,2.8-0.1,4-0.3c1.1-0.2,2.3-0.5,3.6-1v8.7c-1.5,0.5-3.1,0.9-4.9,1.1c-1.8,0.3-3.5,0.4-5,0.4c-5.1,0-9-1.2-11.8-3.6
			S687.7,211,687.7,206.4z"/>
		<path d="M737,219.5l30.2-72.8h12.8l29.7,72.8h-11.9l-8.4-21.3h-32.6l-8.5,21.3H737z M760.5,189.2h25.4l-12.7-31.9L760.5,189.2z"/>
		<path d="M817.2,219.5v-72.8h10.9v72.8H817.2z"/>
	</g>
	<g>
		<g>
			<path class="st1" d="M129,85c12.5,0,30.6-2.6,30.6-17.5c0-1.2,0-2.3-0.3-3.4l-7.4-32.4c-1.7-7.1-3.2-10.3-15.7-16.6
				C126.4,10.2,105.3,2,99,2c-5.8,0-7.5,7.5-14.4,7.5c-6.7,0-11.6-5.6-17.9-5.6c-6,0-9.9,4.1-12.9,12.5c0,0-8.4,23.7-9.5,27.2
				C44,44.3,44,45,44,45.5C44,54.8,80.3,85,129,85 M161.5,73.6c1.7,8.2,1.7,9.1,1.7,10.1c0,14-15.7,21.8-36.4,21.8
				C80,105.5,39.1,78.1,39.1,60c0-2.8,0.6-5.4,1.5-7.3C23.8,53.5,2,56.5,2,75.7C2,107.2,76.6,146,135.7,146
				c45.3,0,56.7-20.5,56.7-36.6C192.3,96.6,181.4,82.2,161.5,73.6"/>
			<path d="M161.5,73.6c1.7,8.2,1.7,9.1,1.7,10.1c0,14-15.7,21.8-36.4,21.8C80,105.5,39.1,78.1,39.1,60c0-2.8,0.6-5.4,1.5-7.3
				l3.7-9.1C44,44.3,44,45,44,45.5C44,54.8,80.3,85,129,85c12.5,0,30.6-2.6,30.6-17.5c0-1.2,0-2.3-0.3-3.4L161.5,73.6z"/>
		</g>
		<path d="M581.2,94.3c0,11.9,7.2,17.7,20.2,17.7c3.2,0,8.6-0.7,11.9-1.7V96.5c-2.8,0.8-4.9,1.2-7.7,1.2c-5.4,0-7.4-1.7-7.4-6.7
			V69.8h15.6V55.6h-15.6v-18l-17,3.7v14.3H570v14.2h11.3V94.3z M528.3,94.6c0-3.7,3.7-5.5,9.3-5.5c3.7,0,7,0.5,10.1,1.3v7.2
			c-3.2,1.8-6.8,2.6-10.6,2.6C531.6,100.2,528.3,98.1,528.3,94.6 M533.5,112.2c6,0,10.8-1.3,15.4-4.3v3.4h16.8V75.6
			c0-13.6-9.1-21-24.4-21c-8.5,0-16.9,2-26,6.1l6.1,12.5c6.5-2.7,12-4.4,16.8-4.4c7,0,10.6,2.7,10.6,8.3v2.7
			c-4-1.1-8.2-1.6-12.6-1.6c-14.3,0-22.9,6-22.9,16.7C513.3,104.7,521.1,112.2,533.5,112.2 M441.1,111.2h18.1V82.4h30.3v28.8h18.1
			V37.6h-18.1v28.3h-30.3V37.6h-18.1V111.2z M372.1,83.4c0-8,6.3-14.1,14.6-14.1c4.6,0,8.8,1.6,11.8,4.3V93c-3,2.9-7,4.4-11.8,4.4
			C378.5,97.5,372.1,91.4,372.1,83.4 M398.7,111.2h16.8V33.9l-17,3.7v20.9c-4.2-2.4-9-3.7-14.2-3.7c-16.2,0-28.9,12.5-28.9,28.5
			c0,16,12.5,28.6,28.4,28.6c5.5,0,10.6-1.7,14.9-4.8V111.2z M321.5,68.5c5.4,0,9.9,3.5,11.7,8.8H310
			C311.7,71.8,315.9,68.5,321.5,68.5 M292.8,83.5c0,16.2,13.3,28.8,30.3,28.8c9.4,0,16.2-2.5,23.2-8.4l-11.3-10
			c-2.6,2.7-6.5,4.2-11.1,4.2c-6.3,0-11.5-3.5-13.7-8.8h39.6V85c0-17.7-11.9-30.4-28.1-30.4C305.6,54.7,292.8,67.3,292.8,83.5
			 M263.5,53.1c6,0,9.4,3.8,9.4,8.3s-3.4,8.3-9.4,8.3h-17.9V53.1H263.5z M227.5,111.2h18.1V84.4h13.8l13.9,26.8h20.2l-16.2-29.4
			c8.7-3.8,13.9-11.7,13.9-20.7c0-13.3-10.4-23.5-26-23.5h-37.7V111.2z"/>
	</g>
</g>
</svg>
 mediatype: image/png install: spec: @@ -1850,20 +1852,19 @@ spec: - supported: true type: AllNamespaces keywords: - - odh + - OpenShift + - Open Data Hub + - opendatahub + - Red Hat OpenShift AI - notebooks - serving - training - - pipelines - - modelmesh - - workbenches - - dashboard - kserve - distributed-workloads + - trustyai links: - - name: Red Hat OpenShift Data Science - url: https://www.redhat.com/en/technologies/cloud-computing/openshift/openshift-data-science - maturity: alpha + - name: Red Hat OpenShift AI + url: https://www.redhat.com/en/technologies/cloud-computing/openshift/openshift-ai minKubeVersion: 1.22.0 provider: name: Red Hat diff --git a/components/dashboard/dashboard.go b/components/dashboard/dashboard.go index 527fbf90b85..3cd43128ac9 100644 --- a/components/dashboard/dashboard.go +++ b/components/dashboard/dashboard.go @@ -129,7 +129,7 @@ func (d *Dashboard) ReconcileComponent(ctx context.Context, if err := d.deployCRDsForPlatform(cli, owner, dscispec.ApplicationsNamespace, platform); err != nil { return fmt.Errorf("failed to deploy %s crds %s: %v", ComponentNameSupported, PathCRDs, err) } - // Apply RHODS specific configs + // Apply RHOAI specific configs if err := d.applyRhodsSpecificConfigs(cli, owner, dscispec.ApplicationsNamespace, platform); err != nil { return err } diff --git a/config/manifests/bases/rhods-operator.clusterserviceversion.yaml b/config/manifests/bases/rhods-operator.clusterserviceversion.yaml index 8d4b1e980cd..ba3f0770676 100644 --- a/config/manifests/bases/rhods-operator.clusterserviceversion.yaml +++ b/config/manifests/bases/rhods-operator.clusterserviceversion.yaml @@ -108,14 +108,14 @@ spec: path: conditions version: v1 description: This will be replaced by Kustomize - displayName: Red Hat OpenShift Data Science + displayName: Red Hat OpenShift AI icon: - - base64data: iVBORw0KGgoAAAANSUhEUgAAAzYAAAFeCAYAAABXd4pfAAAABHNCSVQICAgIfAhkiAAAIABJREFUeJzs3XecXFX9//HXndk2m0563WUh9F4DgSR0AZGiCIoINlRE8Gv76g+7iAioCIoCYvSLoKCiAooiHSIthEivYTcJIY307Gybub8/PruyJFvunTl37pT38/G4D0hy55zP7E65n3vO+RwQERERERERERERERGReHlxB1DJVqempYaR+IQPZwE7AZ3AYqAF+I+P/2AG/j003bIp1kBFRERERIqcEptuq1PTUmPSi9OF6q891TjbhxuByYOc2gU8Cdydxf9rykvO91oX+dFHKCIiIiJSOio2sWlPNc7y4X3AkUADUA+0AW96MB+4M+lxW1Vr81sR9H2+Dz8EqnJ4+DLgduCvtV7iHq91UYfb6ERERERESk/FJTZtqcbdfPwrPLwjgpwO3JKAq2rSzfPz7duvb/La/ex3gQvzbavbWg/+BNxU4yUe8FoXZR21KyIiIiJSUioqsWlPNZ7kww3A0Bwe/k8PLq5NNz+YS99+fVN1m5+51sM7O5fHB7DMg5s9+G1NunlBRH2IiIiIiBSlikls2lONp/jwByCRZ1PzgEtqvcTfg46QtKcaG3z4P2BWnn0H9bQHv0p63FjV2ry6QH2KiIiIiMSmIhKb1lTDAQm8+4GUw2ZfB67L4N86JN3yUl8ndNU3ju7y+TjwFWCkw76D6vDgdh/m1nqJf3itizIxxCAiIiIiErmyT2y6Syov9GGHCLtp8eCJLP4yD28FMBzYBStM4DKZykcLcG0n/vXD0i0r4g5GRERERMSlsk9s2lKN38dGTMR0ALd68IvadPMDcQcjIiIiIuJCWSc26VTDVA/vFaA27liK1Ese/Hwj2WsLuYePiIiIiIhrZZ3YtKUarwY+HXccxc7HX+nhzc3iX1Wfbnkj7nhERERERMIq28Rmc6phUhJvERqtCaMN+HUCLq1JN78edzAiIiIiIkHlW/q4aFXhfRQlNWHVAZ/KwqvtqcZbWlMNO8cdkIiIiIhIEGU5YuPXNyXa/exrQGPcsZS4LPD7JHyzOt38atzBiIiIiIj0pyxHbNr8zBEoqXEhAXwwA8+3pRp/vjnVMCnugERERERE+lKWiQ1wRtwBlJlq4FNJvFfbUo0XrUs11McdkIiIiIhIb2U3FW15alrdSBLLgRFxx1LG3vDxP5dKt/wx7kBERERERKAMR2xG4L0HJTVRm+zh/SGdavhTV33j6LiDEREREREpu8TGw/tg3DFUCg/vlC6fp9pSjTPjjkVEREREKltZTUXrSDWOysJyoCbuWCpMlwfn1Kab58YdiIiIiIhUprIascngvw8lNXGo8uH6tlTjeXEHIiIiIiKVqawSG01Di5UHXNmeajwp7kBEREREpPKUzVS0zamGSUm8xUAy7lgq3FoP9q5NN7fEHYiIiIiIVI6yGbFJ4p2BkppiMMqHS+MOQkREREQqS9kkNoCmoRWPU9tSjXvEHYSIiIiIVI6ySGzSqYZdgL3ijkP+ywPOjTsIEREREakcZZHYAB+IOwDZynv9+qbquIMQERERkcpQ8omNX9/keXhKbIrPmLSfmR13ECIiIiJSGUo+sUn7mQOA7eKOQ7aWwDsi7hhEREREpDKUfGKTxDst7hikbx4osRERERGRgijpfWz8+qZEu59dDEyOOxbpUyaDP2pIumVj3IGIiIiISHkr6RGbDj87CyU1xSxZjXdA3EGISFEq6e8fEREpPiX9xeKrGlrR82Fm3DGISOySwK7Ah4GfAPOBH8UakYiIlJ2quAPIlV/fVN3uZ98bdxwyMCU2IhVpArA/sG/3MRMYtcU5/y50UCIiUt5KNrFp97NHAaPjjkMGNcOvb0p6rYsycQciIpGoBvYADuHtRGZnSnwNp4iIlJ6STWzQNLRSMbzDz+4G/CfuQErAnsCBcQfRh1agHVgPvAW8DqyJNSKJ2x7AJ4AZ2Ou2mDfjPQuoddDOLcA6B+2EdRCwu4N2nuw+JDp1wD7AYmBpzLGIVKSSTGyWp6bVAe+JOw4Jpns6mhKbwb0LuCTuIAJaDzwFPAo8BNwLtMUakRTSbOC8uIMI6MdsPQ0uFw8ST2LzPuDzDtr5FkpsXJuO3YzqOfbCkvwTUGIjEouSTGxG4L0bGB53HBLYTODquIMQp0YAc7qPrwAbgTuBXwJ3A35cgYmIRGAk70xiDkTT4UWKTkkmNgm803XVVFJUQKD8DQPe3328hI083QBobZWIlJoqbLrlDOAALInZEa0bEyl6JVfueXOqYZgPx8Udh4TSkE41TIk7CCmYHYG5wELgsJhjEdHFqITxY2yq7ZPAz7A1Wjuh15FISSi5xKYK72QgFXccEtrBcQcgBbcbcA9wFVAfcywiIkFsjz6vREpWySU2bfinxh2D5ETT0QZXjncEPWyR+SNAQ8yxiIiISBkrtcRm4mK/y0XZSykwD0+JTWXbA0tudos7EBERESlPpZbYnDPBS46JOwjJyZ4bUg1D4g5CYjURm5q2S9yBSEUpx5FQERHpQyklNkng44uzXaviDkRyUlWHV4ybT0phjcPKQo+NOxAREREpL6WU2BwPTLmqa0NL3IFIbnwVEBAzDfgddrNCJGraHUBEpEKUUmLzSYCbM5t220B2U9zBSHi+CggMppKmzBxB6excL6Wtkt5XIiIVrVQSmwbgXQBpGP35jjXzY45HcnOQX99UKq+5OFTaneWLgKlxByEiIiLloVQuMj9Br1h/m9k044ls+8sxxiO5GdHuZ3eNO4giVml3locCF8YdhIiIiJSHUkhsqoCPbPF3de9pfzPRSrY1joAkL5qO1r9KG7EBe29PizsIERERKX1Fl9hsSjUMbUs1TmtPNe7Znmqcc3iy7jxg0pbnrYXtj0wvXxBDiJIfJTb9q7QRG4Aa4KNxByFlrRLfVyIiFamqkJ11phq38WFbHxqy+A1Ao4fXADT4+JM8vFFANbx963pRpqvf9TQL6Djk/R0r77+lZtycyIMXV5TYRO93wGcctFMFjAbGY7+344jm9/dh4NtU5oiVRE+vKxGRChFZYpOpbxzX5XOwDzOAPYE9Mr1GXrwtbqJt+WeAlX5mTTNdew3Uz22Z1jnnd771wJXVo2e7iVwitu3mVMOkIemWZXEHUsbagbWO2loFvAg8AFwMHAT8BNjfUfsA22KfEQsdtjmQIcB22J46Nd1/7gQ2AeuApcDyAsUSlyFAffd/12PPu1wTAI3YFF4V9v4ai23MOwx7vdX2Omc9sBlY1n2U+3tORArAWWLj1zfVtvmZOR7eCcCRnT475tvmHzObX8IupAZ0bdfGWeNIPvy16pGH5NunRC9h+9n8Me44JCePAIcC1wFnOmz3cKJJbDwsCZuNxb0fdqE1mA3AS8A84F4ssdsQQXxRGwPMwkbadgamA430/dm/CUvqnsJ+F08CD2OJskh/GrD32P7Ya2wH7GZFTch21gHPYa+7nvfcOkcxfpzgU+8bHPR3DH1MoQ9oPXCzgxhEKlJeiY1f35To9LNzsvDRdj97ooc31FVgAHdkWzsCnupd1LVu5goyD1ylkZtSMBMlNqWsHVsXMxlLSFyYCfzIUVtgF1hnAaeT24XKcN6+WPsc9pxvB34N/APIOIkyGpOx5/0BYB+Cj1gMBXbqPj7Q/Xfrsef9R+x5K8mRbbF9qI4ADsOmqrowEvscmAmcj42i3gXcCPwJCHo90JefU9ip9/ns0fUKSmxEcpbTG31dqqE+hXdOu589H/uQi8SiTFeYRMm7rmvj7EV+57w7asYf7OFp+kGRSuBpnU3p6wI+hd1hrXbQXt4jvN0OAb4MvBu3U5Bqgfd1H69ie/DciP0cisUM7LmfiLvCMCOAD3Ufy4HLgWsctS2lY0/gZOAUYPcC9VkNHN99LAV+CFxNfgmOiJS5UF9+fn1TbVuq8Uu18LoPPybCpAZgPV0jwj7mnkzbzEPTb87rxO+MIibJnw97rUs11Mcdh+TtFeAvjtranvwSkabuWB4CTsizrcFsj43cPIfdsY7b7sDd2DTBk4mu2uUELLF5HXh/RH1I8ZiEJcrPYVMTv0nhkpotTcGuOZ4BjowpBhEpAYG/ANtSjYe0+9kFwKUe3rgIY/qvDltsGNp8Og6Znl76wpt+10rXMYkT1Sm8A+IOQpz4m6N2asnt/Z4AvopdfJ3oKJagdgDuAa7HpnEV2lCskMMCbFpQoYzBRsak/HjA0dj0w8XAD4BdYo3onXbApqd9nwJXdRWR0jBoYuPXNyXbUo2XAQ9S4A+4BGRzfexyMnvs1rY0e282/bzLmMQNX2Wfy8XLDtsaFvL8ScC/sGptdQ7jCMPD1hs9hl10FcpewHxsLYIu8MSFU4DngX9iUzmT8YbTLw/4CrbupnaQc0WkwgyY2LSnGke2+9k7gC8SQ8nMWpKb8nn8ZphwXPuK7b7Tue4hVzGJM0pstlaK68JcVS0Kq+fC3lXxgnztAjwOzClAXx8GHsXduqRyV4rvqzh4WOGIUvEe4M8osReRXvpNbDanGob5Nm/7XQWM5x0mkXzLQTO1F3etO3RGetm8dWRLsVxruTrIr2+Kai2AFM5Yh22tCXjeYcD9BCvbXEgjsKl5R0XYx1ew9T26Uy2u/Rmb0llKjsVtNUURKXF9Xlj69U01Sbw/AvsWOJ53mFVV56yk6kI6Zk5PL954R6b1P67alLyMbPezxTR3W3Iz4Aa6IWwgWLWjQ7DkIXRhkQKpB24jmhHJ72BrCzQCIVHIYtM6S81nsdEbEZG+E5sOP/t9bAFhrM6tGrYdDnfD3giT39excvcTO1Y80I6v/RhittrPzIg7BsnbyY7aeTPAOXtgi5pTjvqMSh1wK7YRpisXAF932J5IX27G7bq5QvkZ8RTwEJEis9Xc1NZUw4G+fYnGrsmrnjye5DMryLgsMZn4ZyY9e9v00pd/Xzu2a1aiTqMGMWnxu1zd7Zd4zMHdmpLHB/n3bbCkZqSj/qI2Dis/fSD5b2p5AlbqVuI1HBgVQ7+FLIyRwUYF5xawTxemAJ/BqriJSAV7R2Lj1zd57X72WoqoGsoXqkds+nJn0Kn3wa0hs8PR7cv9/ah5/C9143cc4yWLdWpL2Vrod0S6D5JEagzwS4ftPTLAv3nYhdY0h/0Vwp7At7F1MblqwNbUaPpZ/B6LO4ACuRH4BhHvUxeBzwNXkP+NBBEpYe+YitbmZ47GpnsUjXOrhu0/Apojat6bT8cB09uWdPywa/08H9/ZtDcZ3BvZzDDsTpuUlgbgH8B2Dtt8eIB/+ySlO4f+i9ioTS4S2EXmNu7CERlUJ6U58jEOOD7uIEQkXu9IbDy88+IKpD9VeFXfrN4myPz7nKVh7IWda2dOTy9d+FS2/bUo+5K3rSSTRRv9lZKh2IX6AtwWFnmm++jLWKJZ0LwU+CPwU+wi7ipsXwzXnzVJbBpZLiMuH0Nl0V3QaFd4v8beI/nIAiuxvXGexNbuvJFnm4M5PeL2RaTI/XcqWqa+cWynz3FxBtOfT1cNm/HjzvVPLiETaZW2pWT2Pqj9zezu1Mz/Xd3YKdt71ROi7K/SLfMzYBduv485lHLTCJzqqK2h2EaYBwGziWaB7vUD/Nv3cbeuYSM2fe4a4KUBztsLOBc4EzfrGw7CNj/8U4jHbIM996gswzZifBVL5lZiJaS36T52B46g+EpqS2G0A5cCVwY8fz02Ve/R7v8uAFbQd/Gf4djMkHcDH8DtFNPDsUR2y34XEHyK/XQsxny8iv1McrEkz75FKtp/72S1pxpP8q2OfVF6ye9cvGfbG2OwcqqFkD4mmXr8V9Vj9hjtJeNYMFr29kq/8ciLdKaAveOOpUhcCFwUdxAFlgamAn3tWdWE3eV1sebvDuDThLsLvQNwHTDLQf/PYhdzQae7fgf3VdDasedzPfCfgLHsCpyBJXqu1yFeBZzvuM2+bEQVswC+ha35CioFLAL6u8G3BCuQ8WfgQazwQFjVWLGib+Puu3038tuP51/AkXnGcAL2mSMiBdZ7KlpRTwna0aue9tWqEU8WsMvUPzPp2U1tSxKf6Fh9fyvZ1gL2XfZ8fL+FzunYxZ4KN1SuH9F3UgM27c1FUvNDbI1O2Kk1L2N3gH/hIIbdsI1FgxgOuJ4W/BvsTvRngYUET7CeA/4ftq7qQmCT47ikeKWx905va7GE9EDsNXE+cB+5JTVg63kuB44DNufYxpZ2ddSOiJSg/yY2PuwTZyBBfLN61KG7UzOvkH22w4gbMpvmTE4vTp/dser+t/zM2kL2X64ez3a8krbKWgng4LjjkVi8CVzSz7+NAj7ioI+rsQQp18IgGWyk52oHsQRNVs7C3fS7NmytztnkN8VlPbbWaV9sWo9Uhp8Dq7ARmTOxaannY+XZXRbbeQD4gqO2XBY1EZES03vEZkxsUYTwQGrC3mNJPl/oftMw+veZzXOa2pbUHNex/IFFfueyQsdQTr7YvmZFz/83UnXs5lTDsDjjkVh8mf5HAE4l//Ut84H/ybONHhdgF1/5OJ5g+/B8OM9+erRi62R+5ag9sFGsgwm3XkhK12ZspG828FssUY7KdbjZHFTrwkQqWO/EZnRsUYRQT6L+0bqJo4fY4teCa4ch92baZu/S9sbYGell857Mtr8aRxylbInfteIJ2vfv+XMWDkzitbSlGi/K1DeOizM2KZjrsQul/pyRZ/s+lox05NlOjy7gE+S3R0YNtmB6ILsA++XRR48sdof93w7a2lI78EQE7UZFVdHyk+si+LCyuFnnOyTPx+v1IlLCeic2JbNAfrJXNf7xuskdQ/IvR5mP6oV0zJzZ/ub2DeklL32nc92jm8mmY4ynZBzXtmIRve7Gr6BrW+xO9oWdPs3pVMMVmfrGsbEFKFGbz8DTskaR/5q/O3F/Uf8K8LM82zhxkH8/Ns/2e1wC3OqoLZFCcbEJaqEKDIlIEeqd2JTURfl2XnXjw7WTuobA8rhjWUFmx4u71s2YlF7ccXTH8gcfy7a7GE4vS1/rXPvQK3Qe1Pvv2mHs637n4u4/pjy8Czp9XkunGr6lKWpl5wXs4n6gKS2HssUeWzlwOf2qt59id5ZzNViFtaAFBgaynGhLRYtEZcXgpwwq388OESlhVb3+fw0ltsP1zomaxgdrJzUf0r5sRRrGxx1PO4x4MNM2a3bmTcaRfO6sqqFrPlc1fDeVizZXd2145PKu9X0WCrg327b0Y8nqhl5/NczD+2YVfKo91fjlGi9xg9e6yOViVSm8p4BjsMXIAznUQV9nAqc5aKcvm8h9n4tx2OLmvjYC9nDz3L+NqpdJadoYdwAiUtp6Jzarge3jCiRXu1py8/qc9mXLNlvFlqKwksyul3Wt57Ku9V1TSS44vWro5nOrhu080asqiSINrn2tc+1Dl3etn0E/5XvvzqTTH0tuPTjjW8L6m3Y/+4m2VONn6tLNT0ccqkTjb8CHgHUBzt3dQX+DTfmK0wz6Tmymkv/GgO3ATXm2IRLUWKy88nRgCvb6Hdb935G8vV4ljRUiWNl9vIFN7XwBu6kqIuJE78TmaewLt+TsnqjZ9tm6KSsPbHvzuZVkiq2GfdUSMvt0JzmZSSQXnlI1ZMP5VcN3mOZV9bfxWdlYR3bDu9PLn55Px4B3ohdmOgZb8HkIMD+dari4zkt+z2td1OkuyqJRjotWW7EyrtcQvDxsyd1gCWmHkH8fxn3ABgftiPRlBDbqejwwEzellVdi5aMfZfDRXBGRAfXax8Z/PM5A8jXRqxr3SmrKdrtRE0UVIFeSy8js9dOuDbN2aFs6bmp6yQsnd6x44MbMpvkbybranKwoZPGzP+haN2/b9OK2+XQMuhB8OV0Ng50DVHt432z3s4+2pRp3cxCmRCcL3AzshW1wGTSpSWIb/5Wzbfv5+yYHbf/TQRsiW5oB3ICt37oZK0nuar+YcVi1wIuwGyAiIjn774iNh+eiGkmsavHqnkhNPOisjtX335LZPJvivgOeWEVm5zsz6Z3vzKQBusaTfObAZO1bpyeHjDguWb9THV4q7iDDasdvu6xz/fyfdq2bvM7u6AWShklr/czKUV4ySLnnfYAn0qmGz6bSLb/MPVqJyN+xPWqey+GxQ3jnSHI56i+xGeGg7cWDn1Jxivl7oNjtDlyGjdKIiBS9/15A1KWbn21LNb5KiU8D8fC8/6sZO2dmV+2jX+5cs1N7sA3xikHVCjK735Zp5bZMK0D7OJLPbkfV2oOq6vzDk3XbHJio3XYYiXxr9DvXgd9xe6b12Ss6Nmx+mvY92nMs1dvid60JmNgA1Hl416VTDTM34587Jr24pKr6lbm3yC2pgfz3oCgF/RVpGeqg7TcdtCF9+wqwNoZ+z2DwanquJYGvARcC1QXuO25KhEVK2JZ3Rm/GPshK3ierhs84Jpladnjb8uZlZPaKO54c1K4ks9tKMjzS1c6PutYDZEdA80Sql++TrG07OFmb2turGb1TonrikAImPEv8rhUPZNsW359p2/xIpq3+Nbp2xUZR8rLUz2wK+4vy8M4eirfH5lTDCUPSLbFs2ipbOQP4MVYFLaxK2IOiv/dqXT9/H0ahNlOsRDcBS2Lod28Km9gMx64F3lXAPkVEnHhHYuPj/87DK4vEBqDRq570amrKhE92vHX/DZlNMyn9O0+J9dC4ns7GFzOd3JR5u6JrClYPI7liJIlNY0m0T05WZRu9quRkL1k9xkvWjPeSqdEkUiO9xNBavCqAoV6ivgavBmyRf9b3s5vw29rwO1f6mU2v+Z2bmrNdba/5XZllma7EEjJDVtI1rbu0tvPy2vWel+sUpH2SeI+0pRqPr0s3P+s0qNL0IHBjDo87HniPg/4T2PSVI3N47ED725SL/hIbF899PPC8g3akMg3FKhjmu0GuiEgs3nEhmUq3PNeeavyXD0fFFZBrCbzEdTVj5nwoO/SF97cvr1vf//z2kpaGMWkyY1aS4WWATHvYJvItM5u3yV5VPqNO04CH21KN765LNz/sKqYS9TxwbQ6P+ztwNG5GDo4AjgXuDPm4StjHoqafv3eR2Ex00IZUrrkoqRGRErbVDr0Z/EvjCCRqsxN1O7+emjb+Pcn6+4GOuOORrXRN9pL5jgKNAO5sTzUWej56uViKVTBz5VL62bdoAJuAcizlHYSL/Tx2cdCGVKaPA++LOwgRkXxsldjUp1vu9uCJOIKJWj2J+ltqxs15snbS0qkk58cdj7xtNMmXhpJwMWo01Ie/t6caZztoqxJ9H3e71u8GnB3yMVn63ryyEixy0IaLqYRSeUYA34s7CBGRfG2V2HT7IsH3nSg5uyZqml5JTd3ve9Wj5qVsczCJ2c5UrXDY3BAf/tqWanSxg32lWQlc5bC97xC+IMBLDvsvJa86aGN33O0vUi5U5WpwH8P2kxERKWl9LtauTTc/2JZq/D3wgQLHU1BfqBox82NVwzZ8sGPlA/dm2mYAtXHHVKm+UjvSxR4evY0A7kynGg5KpVviqGSUi2K5ALsM+DRuSqVPAj6Pbb4X1NPAiXn2+xvgt3m2EZWufv6+BSsnPCrP9r8EfCrPNqSyfNJROwuAe4FnsZHXNLAO+zz2gLFYAjUZ21piJ2xkN/Y1niJSHvqtQuXjf9nDOwE3eysUrZEkhv+9ZsLsRX7nGx9uW/X6fDpmUP4bBBaVkfDykYlU3uWi+zDZw/vz8tS0QyakF1dCtS1X1gI/wkZbXPgycB0QdFTuPuDrefZ5FJacldL+RlngYeCEPNv5GHAlqo4mwUwHdsizjb9jW0UszOGxCWBn4LO4S7DyUSw3mEQkB/1NRSOVblkKfKGAscSqyaue/HBq0iFP1E5ashc187CLDCmAC6u3eZPovkz2HUXC5dSqSnEFsNpRW8OAb4Y4/99Aa559TgK+mmcbcXjQQRtVwM/pv/qaSG+H5vn4S4B3k1tSA/Zd+xzltbZXsz9EYtJvYgNQl26+FritQLEUhd0TNds+mpo08/7aCS83UfUEZbzWqBiMJ7nwvKph+X6xDsiHj7elGs+Iso8ytBG7YHHlE9i0kyDagbsc9Pn/KL3Stbfi5jNnFm4r3En5yqeS3uPY+0zfk+/kemq1iAQ0YGIDUO3xcWB5AWIpKjMSdTs9n5qy/xO1k145mNq7Ka0pLaVi019rx9V7eIO+Dh24cnOqQXt8hHM1sMxRW1VYxbWgfu2gzyTwJ2BXB231JYoNfxcBjzlq6yPA5YQvuT2Y3bFpflIeJufx2F+jpKYvu8UdgEilGvSCMtnavAp4PxW698vuiZod7k1NPLKlburGk5P199e62WtCwP9h9TYL9krU5ju3O6htkng/L1Bf5SKN2xKwJxF82svfcVOxcBxwN7Cvg7Z6JIGfdLeb70L/vvzGYVtfwH6Wox205WFrIB4BGhy0VyhaMzGwfNbRlkphljBcTEM/ngDXVyLiXqA3Xl26+SHg/IhjKWrjveS439WMm7Mi1ZD6YtWIh0ZW7l4bLvifrhp2z2eqhhd6I80T06mGYwrcZ6n7JdDssL3LCHah2Ymt83FhAjAPOI/8LzYagH9hn4ezgIeAqXm2uaXfAKsctnc0VqXqfKAuxzZmYT/DXwBDHMUlpW9C3AFEwMXsjB2wDU9FpMACf8nXpZuvwRakVrQ6vNRF1aMOXZ5q3O62mvHPzKD2oVrYEHdcJSR7XtXwe35cPfrIODr38C7z65tcT80pZx24q44GcCBwasBzfwq85ajfWmx/nieBYwmf4EzBkrIXgMN6/f2u2AjGHg5i7JHG7V5CYBegPwFewUpvH8zgU9SasGToCeAB4CDHMUlx2JjHY8txQ9h8fh69XQX8D8GnrNYBR5B/hTqRihaqrHGtlzi/3c9Opjw/zEI7Opna/ehUig789DVdG+f9rHNDVTNd+6Jy0X2qhbU/rxnzwgeTQ2NJarrt3u5nP0Dx7nFSjG4A/hfY0VF7FwN/YfDprRuxdTmXO+oXYC9salYL8DusvPJ83llxLxqsAAAgAElEQVSKegg2ha0BOABLhA6l/0RgMlbN7BRsDw8XfoztRTPJUXs9pmBleS/Eynq/jE35WwlksEpqU7CETWvSKkNLHo99N1ae/PY8Y6jF7c2BfLiaXleDlc3/KnAnVvntLexGaBW2d88EbMR3T2ztWi1wGva+FJEchLoA91oXdS1PTTttJIk7gTnRhFR6avBSn60aPvOzVcNZ4ne9+Z3OdS/9I5Mev4rMTmh+NwATSC74V92EkdO96oPjjgX4kl/fdKPXuqjYFr0W62ulC/gWlgi4sB1wLsGmmv0E+BCWkLjUAHxli79bj12MpHJobwR28fIR4Kb8QgNgE7b/T5QJ+ChsBE0q23N5PNYDbgEuwKathl2fMhH4cPfjiyWRdj3NfCz2HEWkAELPN5+QXtzm45+ITemQLUz1qiZeVzNmzpLU1J1frpuy4vNVIx5spGo+VsK24tTC2i9Vjbj39dSUvaZ71U1xx9NtjzY/c3TcQZSYW4CnHbb3NWBkgPO6gHO6/xu1EeSW1PSowRKRL7kJh5twU/ZaZCD35/n4OuAa4BksGd+d/vdQGgcciY0AzwOWYmXliyWpgfLaT0ek4uS0kDaVbtmQhKN9/PmuAyon07yqCRdXj5r1YmrKfitT0zp/VL3NI3tQM68SKqvVwrpTk0PuWZyaxnerRx1eoJLOgXl4Z8cdQ4nJAt9w2N5ogm+g+QRbj64UKw+4FBtpyvc17wNn4aY6nEh/lgJPOWhnF+AH2A2QTdgUt+e6jxZsRHQFVnzjEmydV1F9L3R7BpumKSIlKOcPlep08xoP70hsl3AZxHASQ8+tGn7Q46lJM9emGkY+VDvxlfOrhj+4C9X/Tr1zfn9JGwmvfrpq2L0tqWn+DTVjjxhBIopyuC68Z3OqYVjcQZSY27AN+Vw5n+Blg38E/MFh31E7HxvlyrUKWY/lwJkUZsSqXBXrFM9iMtdxe9XANCzZ2aX7/4c77iMqXdgaQBEpQXndLalLN6/vwj+G/IeyK0oCL7F/onb6pdXbzFqQmnzw2lTj+IV1k1q+XjXy4f2oeXikbdKXiTvOoFKw7NBk3X231oxbsDzVuN2Pq0cfPrJ4E5oe9QlQ6edwfODrDturwyp0Be37LKw6V6l4LzaVbJs827kLKyRQbGvCpHz8Co0M9nZ93AGISG7yrt41NN2yaXlq2rGjSNzgw/tcBFWJdvJqGi6srmm4sNqWHbTjtz2ZbX/lwWzb6kez7V0vZjqHrKJr8mb3VZJysamBqhcOTdZtPLNq6NhZidpdPbxiiCsUD+9w4I9xx1Fi7sKSi9mO2vsgVgFsQYBz01gFpn9ROoveD8X2ujkSeDOPdq7H1idc7CIokS1sBr6JtnToMQ973wbdUFhEioSTssQT0ovb/Pqm0zr87KW+7XQtearFqzs4UbfTwYl3zmRZ62fWPZHtWPyc37HxNb+rc5Hf6b2ZyVSvITt0E5nRm60CS38LN8PaNAreHEXVmunJ6tZZibqqOYm6sXsmararwtvfUR9xcnVxXmm+hn3pu5DA1qQELQG+ETgKm+b1LkcxRMnHqqW52HDz+9jahSsozrUJUtquAd7PO/dpqmQXYFNvtX2DSAlx9ob1WhdlgS+2pRqbsS9ebYIYgVFecuTRydTIo/sv3uSv8DMrl/hd69b62bY1ZDtW+ZnOlX6m0wevE79zjZ/97+9mmJfoqserqcHzJyaS1RNJ1k32kkMmeVUjxnnJ8cD0gjyxeOzg1zfVeK2LBttPRd7pYeAfuEssjgCOw/aXCWIjNnJzJfBpRzFEYQPwUeBPDtu8CpsydD22346IKz5wOlasY1rMsRSDp4BvA9+NOxARCc75nYi6dPNP06mGVzy8m8h/brmE5433kuPGe8lxcQdSAqra/Mz2wPNxB1KCvo6tUXK1MPsHwD8JvrasC9sL537gF9ieLMXkX8AnyG/zw/7cjFWeugXYLYL2pXKtxN7X91Ac057j9j1gJ+CMuAMRkWAimc6QSrf8E9gb7XUjRS6JV0z7J5RS9ab5uK0ctBtwdg6PuwXbtfuvDmPJx2rg49jFYRRJTY8XgAOwhLDQI46rsNEyKU8vArPIb+POXBVb0ZyeoiXXxh2IiAQT2TztunTz4g782djdRZGi5JdOCdJi9A3C7zQ+kO+Q2/SqJcBJ2Dqd/ziMJ4zNWIW37bBpYoWoYJbG9vfZE/hbAfrMANcBu1Ja5XBL6YZBsXgNmAH8ksJV47sNOL5AfYWRAT6JTStdF3MsIjKISBegDk+3bK5LN58OfAZoi7IvkVz4+e8zUsmeBX7vsL1JwOfzePw92Ejx8cC9TiIa3BvYtLym7v9uKFC/vb0IvBvYFxvBcr3nTSfwWyyBOgc3hRCk+G3CplMeBjwSYT8PAnOAE4l2lDNfc4EdgZ9hNxVEpAgVpLJOXbr5ah9/X2xHX5Gi4UFr3DGUuG/h9kL6S8D4PB7vY0UIjsA2Bvw2duHv0mrgN9goUSM2UlMMe4A8BZyGJYifxUrW5vO7+Q82IrQttkloHFOTJH4PAAdj76mbcXOTcjlwNXYjYjalsz/VSuA8rLjC57CEz8X0ubXYqOvX0KbnInkp6BD9hlTDkFq8K30b0hWJXQKOrEk33xN3HN2auo98LcX9xfxADsDtlL7ngWUO2wO7OD+0+9gT2J5gBQfWYXeRn8aqRT2OrS8qtrUA/RkKHILt+7MjVuVwfPffj8CexyZgBTal71lsbeR9DPw7GAbskGdsK7v7jNrhuLmJ9zDxzDzYCZjioJ1F3Ue+hmBJzmxgf2BnYMwA568HXgdewt4/87D3Ul/TWIcAB+UZ3woKexN1BPYe2wP7WUwERnb//Qhs+4V2rJrjW9h+Vot5+/32fPefRcSBWOYet6caTwSu8fO7MyuStwTsV5NuVpGLyjQa+wyqxy5EwBbib8ammizGLvpFZGD1wAQsMfGwZGYDNhIhIlIwsS2qbE81jvStss6ZccUgkoBtatLN+vIVERERKXGxV4tJpxpOA6708LTvihTamrp08+i4gxARERGR/BWkeMBAUumWm6vwdvbx51K4spIiAC/HHYCIiIiIuBF7YgNQnW5ek0q3fBRbjKhd4KUgPFvEKiIiIiJloCgSmx516eaHar3EPh58E5Xhleg9GHcAIiIiIuJG7Gts+tOWapwGXAa8P+5YpCxlEjBWhQNEREREykNRjdj0VpduXlyXbj7Ns+lp/4k7Hik7dyupERERESkfRZvY9KhNNz9Y6yX29fE/hm08KJI3D26KOwYRERERcadop6L1ZXVqWmooiQuAr2A7+orkYnMX/oSh6RZtvigiIiJSJop+xKa3MenF6bp08yVVHtt58GOgLe6YpPT4+L9UUiMiIiJSXkpqxGZLmfrGcZ0+nwfOB1JxxyMloS2Lv319uuWNuAMREREREXdKOrHp0SvBuQCoizseKWpX1aWbz487CBERERFxqywSmx7pVMNU4Ase3seBIXHHI0VndbXHLsnW5lVxByIiIiIibpVVYtOjq75xTKfvn+fhnQeMjjseKRpn1KWbVQ1NREREpAyVZWLTY1OqYWgSzvHwzgca4o5HYvW3unTzu+MOQkRERESiUdaJTQ+/vqmqzc+c5OF9DpgZdzxScIs78Q8Ylm5ZEXcgIiIiIhKNikhseutINe6XtSID7wdq4o5HIrfJg0Nr080L4w5ERERERKJTcYlNj+5Kah8BzgGa4o5HIpH14H216eY/xx2IiIiIiESrYhObHn59UyLtZw5P4p3jw0lAddwxiRMZH/+cVLrlV3EHIiIiIiLRq/jEprfNqYaJSbwPAWcDu8QcjuSuw4MP1Kabb407EBEREREpDCU2/WhNNRyQwDsL+AAwKu54JLCNPv6pqXTLP+MOREREREQKR4nNIPz6ptoOP3usD6cDJwD1ccck/VqYwT9tSLrl5bgDEREREZHCUmITwurUtNRQEkcCpwLvRUlOMbmhDf9TI9MtrXEHIiIiIiKFp8QmR22pxhHAcVjBgWOBYfFGVLGaPbigNt18W9yBiIiIiEh8lNg44Nc31bb72SOwJOcEYELMIVWCVg8u2Uj28jHpxem4gxERERGReCmxccyvb/I6/ezeWRvFORaYASRjDqucdAE3+/hfTaVblsQdjIiIiIgUByU2EetINY7K4B/l4R0JHAZsH3dMJWqTj399Au+K2nRzc9zBiIiIiEhxUWJTYOlUw9QE3mFZ/MM8vMOAhrhjKnLNwC88uKY23bwu7mBEREREpDgpsYlZ96ag+wEzgUOAfYG6eKOK3Rs+/p88vD/Ueol5XusiP+6AREREZEBTgcnY3n89hw9s7D7WAS8Cy+MKUMqfEpsi49c31bb5mX08vH082NuHvYHdgJq4Y4tQFnjWx78vgXdrjZd42GtdlI07KBEREenXOOB92Hrig4FtAj5uGbAAuAx4MJrQpFIpsSkBfn1TTaef3c2HPXzYGdil+2gEErEGl5sMsNCzD7QHEvBQdbp5TdxBiYiIyKB2Ab4BnAJU59HO54CfOIlIpFtV3AHI4LzWRR3Y3Y0Fvf9+dWpaahiJnbL40z28RmBbYFsPtvVt7U5toWPdQgZ4HXgWeAF4LgEvbCD7gko0i4hIBIYBBwBTgN/EHEu5SQEXARegaq9SpJTYlLDu5OCp7mMrG1MN46vxxvn4kxJ4432Y6MF4YAQwHBiZxR+ZwBvu21S3Eb0ePhIb0csAG7r/bh02X3Yz0AG0A6uB5T7+cg9vlQfLfFiRhJVVXmKx17qoPYKnLu6NAZqw18UIYAi21msT0Nr939XAa9hcaREpDwlsSlE99t7vmQWwDvuM39T9/8WqibfXp84E9sIuuhdQPonNSOBs4Ahsn7x1wPPY81vQ/8OcmgTchv2cRUREisY04EzgOuBR4C0sYQ16LAPux6YQnAyMLmj0IpKLBLAncC7wc2wq8BtAJ4O/5zcDzwF/A34GfAzYg3huju4NfAv4B7C2j1h7jidjiC0KJ2A3lfp7ntdiSWmUxmGzLsJ8TwQ5Log4bhERKVP7AVcAi3D/5ZQF/gN8E+3TJFJM6oCTgJuAVbh/728GHgC+iiU6hfDzgLGVQ2JzPLYp9WDP9TaiW29bDTwWIAYlNiIiEqlR2AXHi0TzpdTf8QhwDvGv8RKpVNOwilMDjWhEcSzGRnL3ivC5VUpiMwxYQfCf/bkRxfHtEDEosREREefGY1M1Cn1Rs+WxojuOUVE+WRH5r7HYVLEO4n3v+9jaj89i6/ZcqpTE5pOE+3m/hPtKt9OwNZZKbEREpODqsYo1bcR/UdP7eAv4NKqiIxKlj/B2gZdiOtYC38UKlLhQKYnN7wn/s57qOIbLc4jBx4pOPA7cgq3l/DXwZ+A+rABNoRIbD9gV2CfifkRExLGTgWbiv4gZ6FiAbeImIu4MBf5A/O/vwY5N2PS43tU3c1Epic19hP8Zz3TYfzXhC8ssBD6Are0ayHjsO+sAh/GC3TzbFZsKfQuwsjuuyxz3IyIiERkK3ED8Fy1Bjyw2Bz+fTd1ExEzCLuDjfl+HOVYAnyD3xe6Vktj8lfA/2+kO+z8iZN+/pPDrKquw8tMXYIlMf4mYEhsRkRKwK7b5adwXKrkcj2H7T4hIbsZS+MIgLo8nya3IQKUkNhcS7ue5Grc3jL4bou+7iGeq8b8CxqfEpoJEVR5QRKJ1MjAfS25K0QHYHOyD4g5EpATVAX8Hdow7kDzsg93g+F+0/q4vN2BrVYK6HtuTyJX9Ap7nA1/CNvMuNL1uZCtxbK4lIvn5FPBT3H+ot2MLO9dhlXA2YBWNhmObcDY67nM0cDdwOnC7w3ZFyt3lBL/w7MtqYB62JmIhsARY3310YXf+h2IVDZuA7YCdsRsRLqc71QCXAMcCR3b3LWYxVlXy+wHOfRH4nuP+twt43gJsHzMREZHQ/h/upoI8B1wJnAJsy+AjuDXYxc1ZWJWbJY7i6AQ+nNuPQ6TiHI6tVQv7PmvH3rfvIr+bmuOB07A1DZtyiKOv46IQ/VfKVDSwql7fZ+DnuZBopvUGLfN8RQR9B3XvAHFpKpqISJE7l/wvIJYDlwK7OYjHA2Zhi0bzvcDpBE50EJNIOUtiF7Jh3ltZLAmJ4uK3HquC9XDImHofjxAu0aqkxKbHwcCfsBG1niR1IbZofrAKZLmoIvjv73MR9B+UEhsRkRJ1GjaHOdeLh8XYZnmpiOIbg9117fnizeVIA7Mjik+kHLyXcO+pzcD7ChTb3ti6kDCfU+sJn3BVYmLT29AC9RH0d3h2AeLpjxIbEZESdAB2hy6XZKEdm3tdX6BYx2MXN7lMlfGxzfxULU2kb/cQ7r20fwwx7oqNLgT5DDgjh/YrPbEphOEEf53l8jt0RYmNiEiJGQW8Tm5JwjPEVzXtKODNADH2dcyn8PshiBS7SYS7YVCokZr+zASepv/4/i/HdpXYRE+JjYiIOOcBfya35OA3FG6Upj8TgfvJLf6fFT5ckaL2UYK/f34bU4xbqsZKAW/mnfG9CgzLsU0lNtFTYiMiIs6dRW5JwSVxBNuPGuD35PY8jo0hXpFi9SuCv3fimII2kB2xkVgf6MCm1+ZKiU30lNiIiIhTI7EKZmGTgS/HEewgktjmcWGfy0toSppIj0cJ9r55Nq4AB1ED/ID8P6OU2ERPiY2UrMH2rRCReHwPW4gfxuVYKedikwE+Adwa8nE7YNNYRAS2D3jeC5FGkbsO4H8pzs8oESkT+WzSJSLR2AH4ZMjH3IpdNBSrLHAm0ADsG+JxXwWuBVZGEVQePGwN0cRef9eGrSV4E6tGV44mYKVgR3T/OY3tYfQmthdRuRkDTMc2sB2KjTpksd/1aqAZWy/SWoBYRgx+CgAtkUZRvpqw3/M0bG1QCnt9p4EVwGvY7zsTU3wiEoASG5Hi87/Y9K2glmAjItlownGmFduPZwE21SGIeuB/sAQnrInACQHP/SUD//zGAO8GDgUOxC52a/o5N4NdXL4IzAPuA54AugLGUiwmAodhO93via2T6G/BdyewCKvEdz9wNzaVsFAagaMDnnsDdrHalyrgSGy/mFnYTYbBdGHVvx7Ayhw/gvv3Yh3Bv681EyOYkcDJ2MbABwNjAzxmE/AY8C/gD9hrPkpzCPYaXAH8dYB/3xarVBlUmE0/DwOGhDi/t3+z9dTJjxP8NTwp4Hl7AucEDaoPN2N7LomISEhTCbdnTQa72C4lZxNurc16rOx1WLND9NHXRWMVcApwF3bxGnaNUO9jJXAl4Uar4jAU+Ah2kZ7rXkQ9xzPYruSjCxD3ySHiGtfH48cA3yC3dW1bHq8B55P7xV5fwuwEf4PDfotRvmtsdgPmYqNu+f6u78VueHhun+J/zQ0Yx7xB2gm7sWuhjgv6iLWzCOLa8pg+yM9XRET6cTnhPnB/FU+YefGABwn3PHMZsZkdov3eiU0Sq0j3esgYgx73AUfk8HyiNAwbKXwL9893E/ATwq8ZCyPXxKYGe94b8nh+/R1vYNMvXV30pgP2+6Kj/opVronNRGzvnHwT9r6Oh4nmpsXcgP0rsYn2UGIjIpKDKsJtarmeaC8Wo7Q34UZBcrlYmx2i/Z7EZm9sqlwhviz/QfAF4VHxgA8Dq4j++a7DpoNEcXc7l8RmD+C5Ajzv27ARoXy9EqLPHR30V6xySWzOwD4vo/w9dwJfI9w04sHMDdi3EptoDyU2IiI5OJZwH7bfjydMZ24h3PMNu/fF7BBtVwMXUvgv1TRW+S2qqSwDmUb4kTMXx10EW88QRtjE5myCj4C4OF4n/2Tj7yH6+0OefRWzMIlNNXBdwPNdHX/BCg+4MDdgn0psoj2U2IiI5OBGgn/QthF84WSx2p9wXy5XhWx/Toi2/xoyFtfH7cA2IZ9fPt6FVfWK6/m2APs4fD5hEpsfEc10pMGOVcCueTzHb4Xs78N59FXMgiY2LxAuGXR5PICb5GZuwP6U2ER7KLEREQkpAawh+AftjfGE6dy/Cf6cXw/Z9pwQbRfD8QJWPCJqZ1IcFw+bcbfW6KQieD5BjiXAlByf4yEh++oifNn4UhA0sYn7+Av5V6ibG7AvJTbRHkpsSojKQooUh70IV/nrpqgCKbAwz6MRK1tarnbCFiFHue7mc8BvKI5S//XY+pPDHLQVx1S+XEwBfkdu6zD+jRUkCCoJ/AJby1XOa26K1YkU995iImWpGL7cRCTcxd0abB+FcvAH4AqCX+gdDlwfXTiBtWJTi9LYDaJ6rOpSvguHpwH/xPbVWJFnW1v6MDYNK9ckYBVWWGFl9+Fh61UmY9MKh+bQZj3wZ+AgbMQqV34ej+3LW9j+Gq9hIx8JrADAGCxJyGeN0CHYuqpLQj4uC1wNfC/k447BfrZ3YYnOXRRmQ9FS8TpWnGQp9jqqxX7P44DdCbeny5a+jU2H+0+eMYpIQEpsRIpDmL1o7gc6Ioqj0FZgF8v7Bzx/FoVPbHzsbvndwEPA81j1ui3VYJvpzcQuJo/DLpLCagLuwJ5rfxtJhnU4tglp2KRmJTb15w7s99TfxpO12NS/U7EEqjpEHyOwkZsDgLUh43NpBbbQ/M/AU/SfLCWwEdZ3AedhCW1YF2Klh5eFfNzPsQ1rw1ZZ87DX5DHY+rz7sdfzk9jvdUPI9krdU8C12Ot66QDnpbD34clYwYmw7+dqrNT5nNARuvUY8P4Q56ewkd0grsA+H3OxsI+/+wDBP6e+g410D+Z28tvfqa/PexERGcDL5DcvuZSF2bvn8RDtzgnRbl/HGuyLszHH5zUKm4qS66aPP8ux3y2NI1wZcR8bnfkcNqISVhN2ERF2gX4+68byWWOzDntP5XJnPoUlGpty6DdsMYweH8uhr4GOLFZK+q/AD7ANWg8ERuYYX9TyWWPzHHB0jv1OxfYNy6XfXPucG7D9wdbYhDU8YL8+cLrjvsN4aIC4eh+XxRWgiEglqsZGYIJ+kYQte1zswlS0Wh+i3Tkh2u19dAAXY1/uLgzFkrdcFsWe6KD/20P2+SA2vSxfJxN+75D35thXronNPcCEHPvsbU/Cb+i6idwr4f0xZF+5HmuwdV/XYEn6CVjiGuf63FwSmyw2hS/MSGJ/PoqNeoXp/64c+5obsH0lNgMfSmxERApoR8J9SY6IJ8zI7Ey45x/0QvSwkO36wEvYNKMozMIWf4eJZzEwJI8+TwnZ309xO0V5B2BRiP4Xk1uZ3FwSm2tw+1wnYFXPwsTwqRz7qif4RV0Ux3os4fkJNvUwnzLWYYVNbDqwKZIuHQ9kQsSQJbeKh3MDtq/EZuBDiY2ISAEdTfAvEdcLyotBLbZAO+jPYEbAdsMmNncTrjJdLqZiC7nDxHVRjn2lCJdU5LIGJ4jp2Os2aBxfyaGPsInN9UTzXGcA7SHiuCePvkZh+6WEed5RHkuxn+t7yS8ZH0yYxKYL90lNj2+EiMPHpnaGNTdg20psBj6U2IiIFFCYPQaeiCnGqPVUJApyBJ2vHiaxuQ93u4UPZgLhEo7NhF8sDvCZEH3cQf4V3QayL1YIIUgsawh/YRwmsXkEN1OS+nNJiFjayO91V0tx7uuyEVtn5aKU95bCPN9vRtB/jwTwTIhY7sihj7kB21ZiM/ChxKaCaB8bkfgNC3HupsiiiFeY55VLWeHBnIe7CmSDWY5VTAv6nOuBz4bsI4ktag9iHbaRYyZkH2E8iZW+DWIUtoloVM7B1jtF5UcEL6dcC+yXR1/twKextS+v59GOa0OBDwH3YhXITqPwew0tIvfRziB61u0EdTCls9+SSMlSYiMSvzAX6uWa2GwMcW6YRDCoKC/q+/Ii4ZKVz2DlpIN6N7BdwHMvINzGj7m6HCstHMR5Idv2Q5y7JmTbYa0EfhvifBfrU+4AdgG+QPgS0lHbC/g9NtocdBqpC+uI/n39BwYuF93bKNwU5ZC3hXnfS4VQYiMSvzBTgPrbR6TUhbkACbrgu9jvjv4a208kiNHYvilBfSjgeS8R7iI8H10EXz+zK+Eu+Ivtd/3PEOcGTUAH04aNFjVhe4H8BRvRKRb7YgUHLqV89tDLYGvzgmqKKhARMUpsROIXZhQml31FSkGYUaugozulcDfvSyHO/WDA84ZhVZuC+BGFTZbvxtYlBPG+KAOJ2L0ET9bHO+67HRshObm77bOx8tBBRxailMRe83eRe6nrYhOmAITr37WIbEGJjUj84l5fUgzCTC8LmtgU2138vswn+B3fown2mT2LYAvS15Lfbty58LGdyoMIM0JVbNYRfEpYlBXE1mM7yJ+KVeSbghUruRQbVVocYd8DOQx73ZdDchM0UYdof9cighIbkWIQJrFxsZlgsUkA40KcH2Y9Tim4PuB5o4A9Apw3K2B7d1O4ggm9/ZVgo0T7EnyEshhH51YFPK9Q1fjA1lLdim22+S6gAauAdSC28eRlwN94e7PRKO2NTZeLskJdIawOcW4hf9ciFalc5rmKlLI3Q5w7DaukVExz5/M1FagLcX6xLY7O1+1YghHkoucQYOEg5xwcsN97A57n2ltYEYHBqoFVA/tg6zJKUZgL3jhtBB7vPnqrxzbP3aX72ANLNl1OpzoUuJhwUzKLzSosCQwyQlwKo8giJU2JjUj8Xib4F2MCW2z8fKQRFdb0EOe2Ay1RBRKTzcBjwJwA5+4Y4JydAvY7jOg2LxxM0NGMnSndxGZz3AHkqRUr0/3kFn8/GUtKjwKOJf8F8f8D/I7gFfOKTQe2nkrXU4VXjCO1EjO9EUXitwkbhQhaCnR/yiuxCVMC9jUKX5q5EB4hWGKzwyD/Porgm3leGvC8OKmKVPF5o/v4a/efdwI+AnwMq94XVhLbD+ZYJ9GJSEXTGhuR4vBSiHODrqEoFWGeT5ifUyl5OeB5U/P891LTGHcAMqgXsTU7U4DzsYIFYR1DsPVjIiIDUmIjUhweCXHunKiCiEE9wdeEAPw7qkBitiTgeYNVj8p+osYAACAASURBVIti89I4jYg7AAmsDbgKW48TZh8fsGm4ZziPSEQqjhIbkeJwX4hzmxh84XWpOIFwJVDDLHgvpYW6QSvjDVbuu9zKyZZrefNytgx4D1Z9LYyTIohFRCqMEhuR4vBvwlU6+0BUgRTY6SHOXcvgFcFKVdB1Q6WUrLlQrhvSlrsO7DMqzFrA6YQr+y4ishUlNiLFIU246k9nUvp7IkwDjg9x/t0E2/+kFAWdQjbYHj5h9kQqBZWWyJWTDuDcEOd72N42IkGpKppsRYmNSPG4KcS5Y4GzI4qjUL5AuM35fhtVIEUg6N4ggyUu5bZ5qZS2B7DiAkE1RhSHiFQIlXsWKR5/BH5K8JGYL2K71ndEFlF0JmLlYYN6C/hHRLEUg+0Dnrc0z3/v7X+wvUqKWalscin9u53geytNiDIQESl/SmxEiscGbG+IoOtOmrCL0x9EFlF0fkC4he6/J3wCV0rTmIIWgxisLPRabPPLsQHaeoxw1fhEchFmxEZrqkQkL5qKJlJcfhLy/Aux/SNKySHAh0Kcn8HKyIZVKvOvk9jPJIgg+/i8ELCtctoPqVR+15VoRYhzdU0iInnRh4hIcXmUcKWfh2FrT5LRhOPcCOD/CDea8gdy25izVEZs5hB8x/YgBSbmBWzrPQHPk+JTBdTGHURAnSHO3RBZFCJSEZTYiBSf74U8fza283ex84BrgW1DPMYHLo4mnKJxZsDz1gP/CXDeAwHbOxg4IOC5Ulx+jq05K4UNTMOsm1kXWRQiUhGU2IgUn3u6jzC+C5wSQSwufQt4f8jH3AQ84z6UojGF4HsS/Ytg+908RPCyz58LeJ4Uj/8HfBwb6buf4l9wv0+IcwdbQybSm6agylaU2IgUp/MIt1g+gU1JOzSacPL2SeAbIR+zHqv8Vs6+A9QEPDdoOfBW4M8Bzz0V2xhRSsMHgYt6/XkvbOrhrvGEMyiPcFMen4sqEBGpDEpsRIrTi8APQz4mhU1PeZf7cPLyWeDqHB53IbDccSzF5CDgrIDnrgXuDNH2DQHPqwJ+Tems0apkhwK/Yuu1Y03AExTnvlbvIfjU0xbClSsXEdmKEhuR4nURwStc9ajHSkYHvWCOUhWWnF1J+M+ah4BfOI+oeIwEbiT4z+UXQFuI9u8m+BS+g4Evh2hbCm8n4C/0XzAgBczFqioWS1GBFOFK0d8RVSBS8YrlPSEFoMRGpHi1YlOFwm6iWIPdhf8/4tsXYhw2evT5HB67Clt3EmQ9iSufLmBfNcCfCH4nu43wZcB94JIQ538LOD5kH1IY44G/A9sEOPd8YAE2Ghi3nwE7hjj/D1EFImUr6BqbUiiyIY4osREpbs9hU7lycSZWResYd+EMygM+jMV9RA6Pz2Jxv+EyqADOx0aWop6SlcIu4A4P8ZirCLcXSI+bCT5q05NsHZtDPxKdeuA2wlUS3AUrC34FMDyKoAZRhVVt+0iIxzxN8Gp+Ij2C3vzaIdIoREQktJ9gd6dyPW4Gdos4xmOw3ezziTOXEZ7+HJlD//8iuipTU4B/h4xnGbZXUa4OwZLFoP2lCbd5ai4+BdxFfs9rS+8h+HOc7LDfgdwaMJ6/D9DGRwK20d+xGivAkXL6zPo3EhupDRtn0JLnYElTkDafzPvZBNcZMKZzQ7Y7N2C7QfeuCmp4wH594HTHfYdx8wBxbfm5FkeSLyIi/UhgVbHyucjJYBdbx+BuZGIIdiH8eJ6x+YSbOhXEUTnGsQar4lblKA4Pu3BblUMsYctj9+XaHPr9HXaR6tJ22EV874sxVxcbJxD8uZVSYgNW3jlMctrX8Qa2jmq8qye3hWqskmMur/FHCbeZrhKbrY9KTWx+NkBcWx5fiClGERHpRw1WGSufC5yeYxk2xekkYFTIOKZixQluBDY6iuc6wl3cBJFrYtNzvAqcQ+4X3x62buWRHPu/Psd+t1SPTUkL2/9S4AIsec3HNOy11tZHH4/iZv57OSc2YK/DroDtDXR0YFMhTwKG5v8UmQZ8BXglx3jaCbfPDSix6euo1MTm6wPEteXRCsyIJ0wREelPLcGH34MeGeA1LGm6Ettb5cvYlKH/Bb4HXAPciyVELvv2gctxn9RA/olN7y/Em7FNEacz8NrEFLZ+5vvA63n0+TT5JxS97Yzt6p5LLKuwDWBnEHykbzRwBnA7g1+QP0745HpL5Z7YgCUj6wO2GeToAO7DLg5PwRb6Vw/Qv4eNup2Kvb4fIv+RpAsCPvfelNhsfVRqYnP4AHH1dbRj1UanDtKuh1Ui/BTwxygCl+i4mmohIoXRjn2RLMbd5pUJbC+MJgq7B46P3e29tIB95iKFTQnrmRbWjo3mrAI2YT+/odjd62nkX5RlKXAcsDnPdnp7ATgRW/9QF/KxY4CvdR/rgAexHeKXYyN2dLc5AWgA9sYukoP+HPbHylMfhU0DlL79BdgXS7LDjnL0pRqY03306AQ2YAlUTxI1Eks8R+C24NBc7EaKSK7mYTeeglb/rMH2R7sQu/H0PPYZvh67kTQUu/ExnbdHkjc4jFdERAZwLrYo0tUd3EIeq7G77FFyNWJTyONNot1F/gT6nhJWDMdTWBKV6/MK2k+pjtj0qMM2vI3795XPcQu5r/PTiM3WR6WO2IAl/FG+VtcX7qmICyr3LFK6rsbu4D4bdyAhPYbdpb894n6imN4WpWZgFlYqOyq3Y8Uj1kXYR672orw3ZXWlDbtAPpzwG/gWg18CH6Sw+1RJ+boi7gCkuCixESltz2Ob8V1F8V8obAa+ipUgfr0A/fkF6MOV+7Df4ysF6OsBYCb22ikmc4Gz4w6ihNyHTfv7OjZyW+zSWOW0T2DrrkRcuB/4c9xBSPFQYiNS+jZhG0zui23MV4zuwKZYXULhLmrCjNhcgs3VLrQubDHrUdialUJ5Hhs1+2UB++zPYuBk4KPYa1mC61kMvQv2u+yIN5x+PYatC/pZ3IFIWfok9jkiosRGpIz8B5vKdCqwIOZYevwDOBRbA9EScywDuRqbCnVnAft8BNgPu+Mex2hbK3b3/DDimc64GbgYuyj/Swz9l5Nm7Hc5DfgB8STpfVmKXXQeDLwYcyxSvlYBR2NVO0VEpEwdg1WbylDYhcHtwO+xaTJxOprgMfcu/3kUVso2qp/PQiz5LKYbS1XAx4CXiP71sRZLaHItFNCXSioeEMRobNrXowFjcH08he11VRvBc1PxgK2PSi4e0NskbGqay9eyigeIiBSZydh+EQ8T3YVMprv9C4CxhXlag8o1selxEPArrNxnvj+fVuB3WDntYi5qkMCmhf3/9u47bq6qzuP450kDQnoiKEjvSDGiNKWKIAjWFRSsWFhkVRALimURRcWluKIsurt2AQugIiBIDUgVkCahhkAIAZIQSChpz/7xfWbz5Mkz55w7c8vceb7v1+u+KDPPPefeOXPn/u4553fOJ9/saUvROkjvR+mz8+bAprnNgRPQcLA8Fvlsts0ETgF2LPh4HNisujmwWaEHeB9wC/m06znlVt/a1ck/sGaWvw1ZsXbF7sBGLe5nGcrIdBWajH41Gg7QSfYF/pL43vWBR5u8tgY6X/uhRSq3J74WzIto6M01aJL3FdRvPYQJwP6saCubk97LtATN47kFuKxvK3KNmi1JTzxwEuV8Fu8nLXX3dHQDW4Zx6LPcixXrDa3Twn6WoPZ9B7qpvpLyhpq9A9gp4X2zUFKVMpxE2nfjAtSLlurdaO5kzCMo4MvLaigYTnE2GgbdiXZECwXvjIYaj0r4m6fRUO6b0XX7OjQKwWrCgY3Z0DYGLUa2GVqgcwJamGxNdPO+CE3oXoSeXD2MbsQepHMnKjfkFdgMNAI99V8P9U6NRNfShX3bI+jp9fIsla2B1VjRTiahRfHG9r32DArmZqN5FQ/1/bd1vrEowNkABT5j0XVhHOrhea7vn3PQZzsbfb5LqqisWYtWQw9AXoYWnJ2ArtuN37hH0bV7blUVNDMzC9mP9OEGgw1FMzMzsxrppMmrZmZmZmZmLXFgY2ZmZmZmtefAxszMzMzMas+BjZmZmZmZ1Z4DGzMzMzMzqz0HNmbWrZzO3szMbAhxYGNmZmZmZrXnwMbMzMzMzGrPgY2ZmZmZmdWeAxszMzMzM6s9BzZmZmZmZlZ7DmzMzMzMzKz2HNiYWbdyumczM7MhxIGNmZmZmZnVngMbMzMzMzOrPQc2ZmZmZmZWew5szMzMzMys9hzYmJmZmZlZ7TmwMTMzMzOz2nM6VDPrViOBMYnvXQAsL7AuZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZmZta5eqqugJmZma1kDWBtYBgwEVgKPAcsAl4EFlRXNTOzzuXAxqzzTAUmF7j/XuAZdIP0AjAX3yiZVWEUsHPfth2wDbAeMCnyd88DM4CH+/55O3AzcDcKgszMzMw6wkUo+Chzmw/8HfgtcCLwFuI3V2aW3RjgMOCPwELy/R4vAq4GjkOBkrWnB3gvcAXwBDALOA/YrcpKmZmZ1UkVgc1g23LgHuB76Id8WJEHbdblNkTfpeco7zv8CHAasG3xh9d1hgPn0Pza+PnqqmZmZlYfnRLYDNweB/4T2Kq4QzfrOpPQ92YJ1X5/bwaOBEYXe7hd4wTiD372q6x2ZmZmNdGpgU3/H/RLgP3xPD2zkLcDT1H9d7b/9iRwPDChwOOuu9GkDRO8uqoKmpmZ1UWnBzb9t5vweHOzgUYA36f672doWwB8DffgDGYP0s7hUvRZm5mZWRN1Cmx6UQ/Ob4D1izgZtpLxwFvR0KadK66LDW40cCGtf5+WAXOA6cCNwGXAX4Fb0Jy3BW3se7DtEeDgQs5EfR1A+vlzYGhmZhZQt8CmsS0APl7A+RjKRgA7AF9AN7gvseJ8H1hhvWxwI8n+/X0ROB84FvUUjE0o52UosD0S+AXwYMYyB9uuQAkODDYm7ZzNrKqCZmZmdRG7Mdo/hzLWQJOaNwbeAHwY+CZwKe1nbToX9SxYe3ZH65U0O88ObDrPj0n/ntwOfIL80qpvigLgG1EvaqsPJz6YU33q7mri5+ubldXOzMysJsoIbEJGADsB30HDVFq5QboLP/1t14GEz7EDm87yHtK+G08DR1Bs+vQtUGrpZxLrNHD7bIF1q4utCQ/7u4u03jUzM7MhrerApr8eYE/gD2jsf5aboyeAHUusa7dxYFMfE1HAEvtO/AmYXGK91gSORt/F1O/tTLw4b8N2wG2seo4uAKZUWC8zM7Pa6KTApr+tUJKALMHNQmDXKirbBRzY1McpxL8LP6a6RW5HA58D5kbquBRnORyoB/VgHwF8CPWGmZmZWaJODWwa9gLuJD24mQ9MraSm9ebAph4mEF/z5I9UF9T0NwX4b5r3vn61uqqZmZlZN+r0wAZgNeA00icpPwlsVklN68uBTT18ivDnNAcNVesku7Dqw4mrgOEV1snMzMy6UB0Cm4YDSJ+gfAde8yELBzb1cBXhz+lfK6tZ2OrAqejhxFPAutVWx8zMzLpRnQIbgFehCccpwc2vKqpjHTmw6XxjgcU0/4zmogCik+0DvLnqSpiZ5aETxvyaWb3dDbweeDjhvYcCHyi2Omal2Q4tytnMn9ECnJ3sr8AlVVfCzCwPDmzMLA+PAm8CZie891S0crpZ3W0def2GUmphZmaAAxszy8+DaM7N85H3TUaLf5rV3csjrz9USi3MzAxwYGNm+bodOCrhfR/Ci3da/Y2LvB4L8s3MLEcjqq6AmXWdn6K1bkJzaXqALwNvLaNCfcajxfU2BdYG1kIrs6/W9/oitB7Jk2ho3T2oF2p5iXWsu2HABug8rwusg85xI93xcmBB3zYLmIHSDs8vu6I5iaVHnlBKLbrPeqgNNdrPOLR46HOorTwC3E99201eJqM0+mNZ0dYWovN0P0o13g3WQUlqNkVtY3XULhaj452FrtW3AU9UVMd2Na6dmwOvQMc3Bh3jIuBpdL28H32+nW4SOpaBbXMhOobCPicHNmZWhGNQ9rbQXJoDgR2AvxdUhw37yti1b9ughX0sAq4DLgd+g35Y2rE/sEfiezeJvH4UcFAbdTmS9oO2kcCewN7oHL+W1lJ6PwRcgTICXgS81Ga9yvJC5PW1SqlF/W2DhrHuhRKRjE38u9nANOAalADhwZzrdSbNR7bcBXw/5/JiXo3mMu6NvmtTIu+fB9wCXIa+V/cUWruVvQ19ps18HQUkg+lB7eBQ4I3oBjnVA8CFwLl0/hy316LfhL2AnYE1Ev9uJmrz1wAXA48VUrtstgP2ZUXbjM2jnY9++y9Fx3BXobUzs0rVLd1zMx8mnv757JzL3Ao4Hl0wU9JPZ9mWozVLDkA/vK34dgH1anVr9cHW6qin7aconXHe9ZoH/Ad6StvpPk34WH5UXdU63hjgk+T7Xb0BfSbjc6rjkkBZF+VURsxE4Fh049fu+bkR+BjlpCA/MVKXbQf5mxFomPL0yN+mbrcA76b163URJgHHoSAzj2NcBlwJfJTy14kbDxyN1qjL47M6gvTgzsxqpFsCmx5WXd184PYi7a/KPhat/n53pKw8t2vRE6qs6hzYTEXBzHMl1e8F4N/p7HVgYmsNzaKzbqo6wRjgK2hoTVFt51kUHLe76GiVgc1E4Bto2Gbe52cm8HHiQynbkTWw2Z38ApqB2zTUK1ilRtKcZymu3T+FrpmTCz6WCX3lzC/gGB5Dowk8osysi3RLYAMaShC7kH2sxX1vhAKFeQllFLEtAb6Qsc51C2yGoeFul1VYz9uJD8urytrE639YZbXrPAeh+TFltZ1F6Ds3psX6VhXYvBvNjynjuzW1oGNIDWxGAKegnocij/V51CNQth403/TJjPVtZ5uPfptGFXA8B6E5qEUfwz/QUHUz6wLdFNgMR+PeQ8dzTcZ9jgR+hyYTl/VDEdpOJ/2pfJ0Cm32If3ZlbU9T3A1Yu+4lXPdZOInAWDTstKr28zDqEciq7MBmPHB+oMwitpeATxRwLCmBzTg0N6rM4z2Z8npRX0b5x9d/uxPYPqdjGYvmmZZZ/8VoNIaZ1Vw3BTYAXyN8PMvI3nX++8g+U7cl6Eleu/s5KbHedQpsNiV8Y5dlew7NUWpnH3NRBqhO83Xidb+F9odc1tVWFDfEKMu2FA3tyjLEpczAZhuULaqq83MW+Q7/iQU2O6GHWlUc63dzPM5mdkbDqqpu9y+iZD7tBHNbAv+s8Bj+Fz3QTOKxv2ad5yLCwcsBKItIXWyCfrBD15u3A3/IsM9XA7dG9tmwGA25uKlvuwvdJM9nRdrM1dDT0nVQRpedgDcDr0ysTy/wL8B5kfd9m+zD14oyEt3shfwceH/i/mYDN7PiPM9E53g+ukEEPaGdgG52d0SZ1PYh/Ybqrr6/i2UjK9P6KBNT7If3VuCDDK3sP69D16pWxvw/iSZYP4Xa0Cj0HX0lutFKzZw20MXAIaSlzF1C87Z5MeGsX1m8Dj3Zn5Thb+YB16Nz9Aj6TgxDw+42Rz2cryVbsPJbNHw4dl1IcSJK6d/MdJTSO+RulDXrH6hndBF6EDWlb1sL2AVl49owY/0+gbLeFWE/9PBtzRb+dhY61rnAM2iO4XiU5npLWk8Q8EuUYCBrxsmpwF+IZznr7xngb6htzkDBVQ86H422+Tqytc3zgfeg33Mzq5lu67EBPbEOHdPpLezzgsD+nkc/0u+i9SwrI4B3onTPKU+VZpPvkKPYxPR35FhWM1sSHvJ3H7qBeVUbZbwS9Xo8Eyin//aNNsoqylmk1X0x6t0bCmmgdybbROll6Cb2I6SlZt8C3ZxeRPZhqbeSdl0oo8dmR9ITBLyE2tobSFtgfQK6mY0lcem/nUM+D71jPTaha/cZ6NqTxdboQUxqW3iB1hLAxByIPqfU412Mfsveh9avCRmGhvAdgzJ0Zu0Fv5y0dtMwlfQEAYuB/0ZDPlPKGA8cjoLW1Pr/PmP9zaxDdGNgczLhY7qlhX3uwKoX9pvRD0SrT3MHMwz4HGk/Vt/KsdxOCGxg1bkRi4AfkP/Ezg1R9qLYOX6R9rNd5W0y2SZ7vwj8DK1fkTzEoka2QD0tKeeicbO+URvlrQucQPpN2DcT91t0YLMRWqgw5abx57SeRGMYSkiQOmfu6y2W018rgc25xG/uY7ZAN/Ap5V1PviOXdkbXx5SyF6GkCS9vo7xN+vaRWmaW+SrrkpYkYBmae7Npi8fQg9rmA4nH8O0WyzGzCnVjYLM/4WNaSGs/MBf2/f1f0MJgRdoH3WCEjuMZNNwqD2+JlFVWYLMN+vGai254sgxJyGo4aZOnTy6wDq16I63NSVqAnkQehW6Myl6LIm/jSb+BnoaGJeZlAmoboc/h16Rfa4oMbNYkLUX9w+T3EGEN4BcJZS5Hw4PbkSWwWYiG8uZlGEr3nVL2oTmVuS7pmc8uRENY87I2WjMr1INzWob9rUHa2jQz0bDtPKwO/CShzF4UCJlZjXRjYDOJ+MUqdT5Lf1tTbraslEVHP5BTWZ0S2IBWEW81ZW5Wo1HPW+jYZ1PsGhyt+hDtp61dim54z0GJNw5GQ2ZWK+8w2nIOaTfOJ1DcsJJXM/iClleT7TwWGdikDF/8M9nm3aQ6hngQPof2hkymBjZPAK9po5yQ2EiBXjQUqt1em+FokcxYWYvRorRF2Q3NaRlY7nlk+659f5B9DNwuRfOc8vZJ4m3zadrv2TOzEnVjYAPxBfn2rKxm2cTWdLkgp3I6KbAp21Ti48ffUFntwg4hn0x7A7elKAnHn9AN2+Goh2d8OYeV5DDSbu7eU0JdxqChTY1y7yV7kFBUYHNAYL+N7Y8Uu0jhYcS/Y+e0sf+UwGYBxT6YGoZ682P12KPNcj6XUMZC1OtftCms/Bt1A9nmme5DvF1cTLFDaA8h/oAolqjHzDpItwY2sUn4H6yuapnsQvg45pHPk+jYzU83BzYQT+n9peqqFjWVwXsMitiWowxTv0JP4nejvN61/sYBj0fquox8hxzF9KD5YHOAjVv4+yICm1HE01/fQGsZtbL6UqQevcDrW9x3LLBZTn5Z5ULWQ3PaQnX5YRv7Xxdl2Avt/wXaD56yGInmvTxItl63EcQTTdxEOdeXlGCx6OHnZpaTbg1sYot7/Vt1VcssNv641YmU/Q31wGY/wsd/fnVVS7IacDzpGa/y3JYC16KbgzzaYoqUNZqOKaku/fWQlmVtMEUENscE9tmL0v0WMfysmdicm2kt7jcW2JzVVq2zOTNSl0fb2PfPI/teTjk9lAMNJ/vw7qMIH8scip1jOdD/RupzY4l1MbM2dGtgE7tIfbG6qmV2OuFj2TeHMmIJF7o9sBlN+EnrHdVVLZMp6CYvNUtYEdudaE5Lqzf4MROJp3bOa4hmmfIObEYSzzRVZo8WKIiKTXrfpYX9xgKbIlItN7Mh8XkbrWTl2yhhv2e0V/XSjGDw+Tn9t8NKrtNE4tkm9xj4R84HbWZliS2IV8XwmVZdFXl9vTIq0eWeB/4eeL2VZBNVeBr4CmoT70QL5S0ouQ7bAF9FQ1N+jybX5+lIwinW5wMfy7nMOjqUcLv9M/C7kurSMA84LvKeowsot7eAfTYzAw3vC3ltC/s9lvA8qBnA51vYbxUOJvzg469ouGuZ5gOfjbxnlbbpwMbMyhJbzbrIibJ5eyzyehnj44eC0BCROgXCoN6n84H3o3Hvb0E9f9ehMfhlGI6Cq1vR+kR5ZBbqQYtAhpyAeqyGulhw94VSarGqn6A5Yc28nXwXH67ClZHXs64RtDpaMy3k8+gBTR3E2mZVAdovgdsCrx/IgOxsDmzMrCyxRTMXllKLfDwdeT2PtUjKfKLZqeYGXhtJfRe3XIyGMh2DsruNQwkHjkATmS9HE/GL0oPG/d9D++t47Ep4GM/jaI5Dt8maInh9dK6auQql+a5CL/BfgddHoZTvdRYLbLL2sh9EOCPhXZTf+9aqdVDSkWb+Rji4KFKsbY5gwLBsBzZmVpZYYBMbqtZJ5kde97U1H/Mir+e5aniVlgK3o0X2jkIpV9dFN047ofVxvo16fKajcf15mICGl5xG6202tljeD1EgN9S9i3B7Dd28leEXhB8u1T2weSDyeuz3aaBYuz+V+jyceifhdcGqfjDxa8LDd1dqm3Ua+mFm9RbLplKnHptlVVdgiBjq5/lZlF71pgH/fySwOerleU3fNhX1/LTiaDRR9yNkP+d7BV7rRUNJLLxO1yKqz/L3LErw0Gx41W4oMKvLzfpAefay9xBO3/w88NsM+6vanoHXXqT6nqeFaN2aDzd5/Q3owcxy8FNFMyvPZpHXZ5dSi/qo6w2EFW8JGrb0S+Az6MZkEpoAfRwr1ozK4oPANzP+zSSUmKCZG4BHMu6zG/UQXg/mBjqjVyuU2nkKsEVZFSnACyiAbCbL/fBWhNeHuZj6PKjrITwM7SYU3FQt1DbH0+865MDGzMqwBvEsVveXURF0IZ+IFux7BdmHIFiaNdD53Rid71HVVqfrLUNZ5L6DnmBuBXyfbBnYPo+SGqSaSvg+4ooM++pmGwCTA69fV1ZFImL12L6UWhQnr+HOO0Rej83n6STrEA7Satc2PRTNzMqwPeEboKXAwzmXuQWwO3qKvRW6uZhA8+E689E47DvRpOrb0KTJqp5W1aHHZjRa42I39MRsSzTkcAKDBzKLUc/cPWhy7d3oHJcV1A4l04FPodXlj0NBSyzZQg+aE7M14afbDbFe2FiK3aEitkjqaOJzNsowDH1Hmz2EKGux104Xa/fXl1KLfMQ+09XpjLbZg36LV2/y+v9ntXNgY2ZlCI3DBwU1eUyI3hw4HF2IN874txOB1/VtDYtQ/v6LgD8CT+RQx7obidK/Hgrsh3pmUo1CAeYGrLzQ7P3Aheg8X4nn1uRpIfBllN75F6iXqBbnpQAAEUxJREFUJWR94OMooUBM7KZoesI+hoJYKuHYWh2dopVFLLtRqN33Uq92H2ubx/Rtne7/f+89FM3MyhALbNp9srsd8Cfgn2gtiKxBTTNroowrZwEz0c1hKGVrNxuJMnY9BPwGBTdZgpqQzdCP52Wo1+xzaP6G5edu9D1M+a4dTdr9QWh4VS9aoNDC56lOJlZdgQ4R+jyfIq23s1N0Xdt0YGNmRZuIhoSFXNXivtcAvoeGjR1Isde0kWjtj+soZ9xxJw1F2xG4AziD+Fypdm0InIwW5zys4LKGmgWol+2eyPtia640hBZJXUR+aanrrlsW7K3borhFCZ2HZ0qrRT66rm06sDGzoh0MrBZ5z1Ut7HcjlLHlU5R/Lduu5PKq9CkUyG1Zcrmj8Zj+IjyL0jrHAucDEvbVbLw7KAuVSV49m1XrlpvgdnVTu++6tuk5NmZWtGbrIjQ8gIY3ZbElCobWzvA3C9EiiDPRU7VGhpwJKDPaOJTFa1s6I4NXJ/TYnAR8MePfzEC9O3PReW5MRh7Xt01Cc6GyrvRt+bkBuBwtBNpMKD1xQyixRuxhxlDSCamc89AtC+K2q5vafde1TQc2ZlaknVDq2ZBfZdznWsClpAU196MJ0+cB95I2KX0k8Co0yXp34CC6ZxxyFp8kLahZAlyCzvOVxBfCa5iCzvEOqHdgV8KrX1u+zicc2GydsI/QWh1r0m/RvCEullnxYTrjQUbM41VXoEOE2n3dlg/olrY5q+oKmFlzF6ELSbNt/+Z/2nEuJHwsvWRf9O3ihH0+AryTfJ4wjkAT5S9NKLexfSmHcveJlPGOHMpoZgfgpUj5vcA55DfnZh3gK+gHKvU8d0LPWl1tSPz8xm7STon8fd175ZbQ/NguzrCfTwX200vx89aqcCLhY962gjrNDtTnvAz7OTuwn6XU67p0JF3WNj3HxsyKsivxcfo3ki015ruAN0fecw5at+Y88nnStBS4ANgXrdlyTQ77TFHVU7IelCQg9OO8CHgrSqbwWE7lPo5uhjYFPoPWFbLiPILadkgsC9YDkddj630MFbGhtmXPX7P2hNr9cOIplDtJ17VNBzZmVoQRwA+I95icknG/J0RePwtl0no+435T3QDsCXysoP13gv2BnQOvP4eCvD8VVP4LaA2VrfDK9UXqRalpQ0ZHXo8trLpTenW62oOR10PfN+s8sXa/Yym1yEfXtU0HNmZWhKOBV0fe80/g9xn2uTua+9LMbWheSNFj+htDsLrVkZHXPwv8rYR6zEFzdqw4obkCEO/RuY1wz2IszftQcR9Ktd3M3mVVxHJxa+T1OrX7h4B5gddr1zYd2JhZ3l4HfCPhfd8iWxDytsjrR9Bd62ZUMRRtNOEJ5X8DflxSXax4EyKvh27GQZnv7g68vjdeaBWUtCS0MOruZMvwaNW6G3gy8PpbURKaOlhO+EFV7dqmAxszy9NEtCp9LOXlLcCvM+57z8Br/wBuzrg/W9XOhNdo+B/qkSGnbGuSPQlG1SaizHTNLCZtnlOoV20Umhdn8NfAa8PRfDWrh15gWuD1KWi4bl10Vdt0YGNmeVkD+APKthSyHPg30lIvNwwjPInx/Az7qosqAojQUD/ozvPcrtVRcolp1Gvh1p0Iz4GbTnwoGsDvIq9/JlJOXWU9pnMJf6c/jdOd10ms3R9dSi3y8RvCv8dHU6PlYRzYmFkeRgK/BXZLeO+ZKBtaFhMJT2TOusCnDW7dwGvzcaaygUaim4J9gJehRS9jc8s6xTsjr/8jcT/T0KK3zWyJ0qUPdY8C1wVe3wj4QEl1sfb9kRWLPA9mH+oz8X424WyfG1KjtunAxszaNQb11Lwl4b3Tyb6SfaOMkDkt7NNWtWbgNZ/jlQ0Hfo4WcG2YgoKb2KK0VZsMHBp5zyWJ++pFQxRDvkv9VmQvwg8ir59I/RZ4HKqeJz6c+nTq01uZ0jbHlVGRdjmwMbN2vBI9sU1ZNPQ59OQ29JSrmVhSgNBcgbqqYihaaOhRN57jVvWg1OKDjT2fhIKbw0utUTZfIRzELibbApRnEM6wtgm6MRrqfks4ve66wKkl1cXadzLhIVw7oSGGdXA+ylTazDrUpG06sDGzVr0NuJ20oTe9wEeAe1ss6xnCN/obtbjfOiviCXgo7edk4j1nQ8VpqD03Mwr1YpxK541N3x3NcQv5HeG2MNA8FOiFHEt8cd1utww4KfKej6K1uKzzPYSGooZ8G3htCXVp13KUqTTkI8D7SqiLmXWZi9BNfLMtpXekSJOBH6ELYaie/bdP5lDuzMD+b8lh/1mMCdSlF/hSDmXsESnjiBzKGOg9kTLL/lH7cqQ+o0quDyhZwLRIvfpvNwNbV1DPwWwMPEG8zq0sMDg+Yd8LgO3bOoLsDgd+RmsPcpfQ/FhSh+oNNAzNMQydpxeo11oogzmR8DFuW0GdZgfqc16L+1wP9VaGjnU28aQ6efsi2RfA7kHzwGJtc4/8qmlmQ0GnBjYjgaPQ2hWpN3W96OY0D7+LlFPmas87R+qSR2CzQ6SM/8ihjIE2jpQ5jfLGjPcAZ0fqU0VgAwpsr4nUbeDNwLFUm/VqC8IPBxpb7Al0yIcS9v8k8Jo2ykg1jJVvrr/fwj6KCGxAa32F9t2LhuzW+QZyqAQ2oOt9rN0/jIZkFm0U8F/9ys36WzQVDUWNtc0986mumQ0FnRbYjAWOIe2mqP+2HDg+x3p8NFLeHZQzQXk/dGEvOrDZIFLG9TmUMZjpkXKL6CkaaBTwy0g9qgxsQMHN1U3q1Wy7i5WTDZTlrSijXax+z6F2147fJ5TzTF+divJytDbHwHK/lnE/RQU2kHYz/CLw4TbLSTEZuJD4EMUshlJgMwK4NrDvxjabYnviNkE9xAN/hz+ecT+fI34sL1HOPMIi2qaZlawTApvhKLPTWWj4SJabt8YPct7DlsYT7/L/OcXNaRgO/DuaYB87/jwCmzUTyikitfAXI2UW/SR5M1b9cW62VRnYgD6jWE/iYNs1wJsovvdrPeBXGeqVx3d2IjAjoazlKGtUnvO2hgFHEg7ijsqwvyIDm2HApYH9999+jW7winAo8HhfOcuA9+e036EU2ACsT9pohiUowM7zIdxI4DhgUZMylwL/kmF/w4A/N9nXwO1s6tc2zaxkZQc2w9H43zehHpZLgGcjdQhtjwGvz7mODacmlH8BCoLytAtwU0LZjS2PwAb0hD9Uzt/Rwqh5msyKZA3NtueBd+dc7uooqIr1hvXfqg5sQMHJ8eiHN+t35T40RC3vjHM7o4cSL2SoSyzdaxavQgkFUsqdiSYlj2yjvOHAIcDdCeUtA96buN8iAxvQder2hDr3ovP5GcLZ7FINB96F5iYOLGcJ+aw7NNQCG9A6bqnfuXtRm20nidco9N15KKG8F9HaOqnGot+XbmybZlayWGBzK3BZm9v1aAG+h1CXctYbsmbbOSjdbVEmA08l1GM2evrc7pyG3VGglCVRQi/5BTanJZR1C9lWvN+EeLf+ZxPK7UXnpt1x42PRytYzEsvsv3VCYNPwFtKGew22LQX+htIw70j2p7ljUFv9Emk39wO3s8k/S+ruNH+CPNg2E90Mvypx/8PRufoWepiS5Xh/lFhG0YENwCuABzLUfS6aX5c109YI9JmczIqn4M22F4E3tnFMMDQDG9DCt7H5U/23+9ADndTr6AgUQJ1O2m9h/+2EjMeyNvGhyQPb5iloDlkWubbNuiwcZDaUXET1mc+ymoOe2MQWLMvD29GPUMr16zHgp2gB0X8QXw9nHLpZ2gc9Ndq0xToeTzyta4rdCK8I3d/1aHL/PajH7Tl08zcZrTe0FepJ2wxlr3pFYF/DgStIGw++HM1n+BmaczIr4W82A3ZF8032B0Yn/M1gVkMTXTvFusAPaX/+yDL00OEudMP/bL9tLBruNQF9ttugz7bVIP4naN5U7LvRitcDf0L1zeJxFOjdh46/0ZanoOF126AEBK0MgTkRDQXqTXjvEpoPbf0L+aWvfjm67k/N+HdzUBaru9D6OPNRj8EI1D5egRKCbN+37yzD/hai6+CNGevUcCLhxDHbAXe2uO9WzUbnejDno6AkDwcB55K9N/1hNDJgOrqOPoce3kxGSxpsjQLarAtlLkMPj87I+HcAa6FhaVkD6TnoO3wnndc2zaxksR6bTtqeR3n6y16ROJYGeLDtBXQhvADdzJ2Bhuv8Et3EP0j6cKLBusn7b3n12IB62PL+3GYnlPsy4P4W9j0LBTrnAmeiIU4/QjcON5OeVW8pcFvkPZ3UY9PfIeiHvervZ+z8Hk/xDzi3JVuPRFHbM8DBGeteRo9Nwzg0Sbrq89TYHkBDGls1VHtsGt4QKa+s7Qk0zLwdY9HvZtXHklfbNLOS1SGweRb4T/T0tCpfHaReZWxnEp/Yn2dgM5VscyVStpTABvT5tjK0qd3tCWBv4AuR93VqYAMakvkd4gkvqtgeQPPGyjIe3ThWdbzX0toivmUGNqAg81ji6XaL3JahdMFj2zyWoR7YgHqHrgiUWfR2ERpOloce4NPkO3S9lbZ5Jl4o2qx2OjmweQD98OY9Ob9VhxCf6J7XNoMVQ09GRN6bZ2ADmqjfyuT0ZltqYAMaNpCSwjev7ResmExf58CmYQrq1cwy36SobRHK7Jd3wolUB5E9bXw729PoZqzV+UNlBzYN2wBXBsouarsWrZ+VBwc20gN8gOzzYdrZHu0rswhbA5eXeCxFtE0zK1mnBTYPAd9DXeudOC9vfbSoYFHHPw8FKv0zvpQd2ICSIbSTra7/liWwaXgv+sEs6jxPY9U5Pd0Q2DSshdaHuIfyv8Pz0CT7ZvMLyjQe3fQW+UDiCTQhu90hslUFNqBr7cFobmDR7eNKYN+c6+/AZmVroQn/RT7gmAF8knIeXLyL+FDhvNpmu0PpzKxiVQY2C9Dkxe+h3pAqh5plNRWt2ZHXsK170YTLwXqnqghsQJMtLyF7lraBWyuBDSgl8xHE01CnbotRULpnk/K6KbDpbxc03KfI3oulaH7Wh+jMoRvjUaCX11DHZegm6HDyu7GrMrBp6EEZ9/5AvsOA5qCsi0UFGA5sBrcWSl7xYKAuWbYlaHL/e2kvZXorelDylwtQtrKOaJud+PTVbKj7MLBFwWU8iy5EC9GT0xmoZ+bpgsstwwSUlWpflJVpw8S/W4RSaV+OMjk1nkYNZhjhrGd/QTdZRdkK+Ff0JGsL0obaLATuAK5CN2XT2qzDa9DQojeSLavNDJTB7aK+bV7gvXsQzhDYWD+mzrZAn+M+KEPQBrT227wUBePXozZ8BRr+UgevAQ4E9kKTgldP/LvZqD1fhdrSYznX6ySaf7fuB/4n5/JiJqFr216od3PDDH87F13TpqHr083oAUlR9kXz5Jo5HfWslem7NO/Fux3N3yhLD8oMuT/6PHckfXHpR1AGyiuAi4Eni6hgRhNZuW1mmdM2F/32Xot+m26hjbbpwMbMut0ElLZ5HfS0bDi6cXoB9RjMQk/OH6CeN8nj0Y3hWujHpdHD9BIKGh5HP4QPUtyNzDD0Q/bKvm1N9NS88RRvPrrpvA/9iFlzo4EtUcCzHprEPRYFjuNYMYTrafRk81H0+d6NPvO6G4Fu2LdA6bPHo2N/CfUoP4uCivsIB8VDQePatnHfv49GKdCXolTBC9D37hHyD/osX6PQ57glK67lY9ADt2fR977R7hdUVMcsmrXNJax4oDoLPehKWSLAzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzMzLrd/wEiF4TGho1ZoQAAAABJRU5ErkJggg== + - base64data: <?xml version="1.0" encoding="utf-8"?>
<!-- Generator: Adobe Illustrator 27.4.1, SVG Export Plug-In . SVG Version: 6.00 Build 0)  -->
<svg version="1.1" id="Logos" xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" x="0px" y="0px"
	 viewBox="0 0 835.9 244" style="enable-background:new 0 0 835.9 244;" xml:space="preserve">
<style type="text/css">
	.st0{fill:#FFFFFF;}
	.st1{fill:#EE0000;}
</style>
<g>
	<g>
		<path d="M301.3,183.1c0,5.2-1,10.1-3,14.7c-2,4.6-4.7,8.6-8.1,12c-3.4,3.4-7.4,6-12.1,8c-4.6,1.9-9.6,2.9-14.9,2.9
			c-5.3,0-10.2-1-14.9-2.9c-4.6-1.9-8.7-4.6-12-8c-3.4-3.4-6-7.3-8-12c-2-4.6-3-9.5-3-14.7c0-5.2,1-10.1,3-14.7c2-4.6,4.6-8.6,8-12
			c3.4-3.4,7.4-6,12-8c4.6-1.9,9.6-2.9,14.9-2.9c5.3,0,10.2,1,14.9,2.9c4.6,1.9,8.7,4.6,12.1,8c3.4,3.4,6.1,7.4,8.1,12
			C300.4,173,301.3,177.9,301.3,183.1z M290.2,183.1c0-3.9-0.7-7.5-2.1-10.9c-1.4-3.4-3.3-6.3-5.7-8.7c-2.4-2.5-5.2-4.4-8.5-5.8
			c-3.3-1.4-6.8-2.1-10.6-2.1s-7.2,0.7-10.5,2.1c-3.3,1.4-6.1,3.3-8.5,5.8c-2.4,2.5-4.3,5.4-5.7,8.7c-1.4,3.4-2.1,7-2.1,10.9
			c0,3.9,0.7,7.5,2.1,10.9c1.4,3.4,3.3,6.3,5.7,8.7c2.4,2.4,5.2,4.4,8.5,5.8c3.3,1.4,6.8,2.1,10.5,2.1s7.3-0.7,10.6-2.1
			c3.3-1.4,6.1-3.3,8.5-5.8c2.4-2.4,4.3-5.3,5.7-8.7C289.5,190.6,290.2,187,290.2,183.1z"/>
		<path d="M311.6,241.1v-74.5h10.3v5c2.2-1.9,4.7-3.3,7.5-4.3c2.8-1,5.7-1.5,8.7-1.5c3.7,0,7.2,0.7,10.5,2.1
			c3.3,1.4,6.1,3.4,8.5,5.8c2.4,2.5,4.3,5.4,5.7,8.7c1.4,3.3,2.1,6.9,2.1,10.6c0,3.8-0.7,7.4-2.1,10.7c-1.4,3.3-3.3,6.2-5.7,8.7
			c-2.4,2.5-5.3,4.4-8.6,5.8c-3.3,1.4-6.9,2.1-10.7,2.1c-3,0-5.8-0.5-8.5-1.4c-2.7-0.9-5.1-2.2-7.3-3.8v25.9H311.6z M336.7,174.8
			c-3.1,0-5.8,0.6-8.3,1.7c-2.5,1.1-4.6,2.6-6.3,4.6v24.1c1.7,1.9,3.8,3.4,6.3,4.5c2.6,1.1,5.3,1.7,8.3,1.7c5.1,0,9.4-1.8,12.8-5.3
			c3.4-3.5,5.1-7.8,5.1-12.9c0-5.2-1.8-9.6-5.3-13.1C345.9,176.6,341.7,174.8,336.7,174.8z"/>
		<path d="M372.4,193c0-3.7,0.7-7.3,2-10.6c1.4-3.3,3.2-6.2,5.6-8.7c2.4-2.5,5.2-4.4,8.4-5.8c3.2-1.4,6.7-2.1,10.5-2.1
			c3.6,0,7,0.7,10.1,2.1c3.2,1.4,5.9,3.4,8.1,5.8c2.3,2.5,4,5.4,5.4,8.8c1.3,3.4,2,7,2,10.9v3h-41.8c0.7,4.4,2.7,8,6,10.9
			c3.3,2.9,7.3,4.3,11.9,4.3c2.6,0,5-0.4,7.4-1.2c2.4-0.8,4.4-2,6-3.4l6.7,6.6c-3.1,2.4-6.3,4.2-9.6,5.3c-3.3,1.1-6.9,1.7-10.9,1.7
			c-3.9,0-7.5-0.7-10.9-2.1c-3.4-1.4-6.3-3.3-8.8-5.8c-2.5-2.4-4.5-5.3-5.9-8.7C373.1,200.5,372.4,196.9,372.4,193z M398.7,174.5
			c-4,0-7.5,1.3-10.4,4c-2.9,2.6-4.8,6-5.5,10.2h31.4c-0.7-4-2.5-7.4-5.4-10.1C405.9,175.9,402.5,174.5,398.7,174.5z"/>
		<path d="M434.3,219.5v-52.9h10.4v5.3c2.1-2.1,4.5-3.7,7.1-4.7c2.7-1.1,5.6-1.6,8.8-1.6c6,0,11,1.9,14.8,5.8
			c3.8,3.9,5.8,8.8,5.8,14.9v33.3h-10.3V188c0-4.1-1.2-7.3-3.5-9.8c-2.4-2.4-5.6-3.6-9.7-3.6c-2.8,0-5.3,0.6-7.5,1.8
			c-2.2,1.2-4.1,2.9-5.5,5.1v38.1H434.3z"/>
		<path d="M488,207.5l6.7-7.7c3.9,3.8,7.9,6.7,12,8.6c4.1,1.9,8.5,2.9,13.1,2.9c5.3,0,9.5-1.1,12.8-3.4c3.3-2.3,4.9-5.2,4.9-8.7
			c0-3.2-1.1-5.7-3.3-7.4c-2.2-1.8-6-3.1-11.4-4l-12.2-2c-6.7-1.1-11.7-3.3-15-6.4c-3.3-3.2-4.9-7.3-4.9-12.5
			c0-6.2,2.4-11.3,7.3-15.1c4.9-3.8,11.4-5.8,19.5-5.8c5.1,0,10.3,0.8,15.4,2.5c5.1,1.7,9.8,4.1,13.9,7.3l-6,8.3
			c-4-3-7.9-5.2-11.9-6.7c-4-1.5-8-2.2-11.9-2.2c-4.7,0-8.5,1-11.4,3c-2.9,2-4.4,4.6-4.4,7.8c0,2.9,1,5.2,3,6.8
			c2,1.6,5.3,2.8,10,3.5l11.8,1.9c7.7,1.2,13.3,3.5,17,6.8c3.6,3.3,5.4,7.7,5.4,13.4c0,3.3-0.7,6.4-2.1,9.1
			c-1.4,2.7-3.3,5.1-5.9,7.1c-2.5,2-5.6,3.5-9.2,4.6c-3.6,1.1-7.6,1.6-11.9,1.6c-5.8,0-11.4-1.1-16.8-3.4
			C497,214.9,492.2,211.6,488,207.5z"/>
		<path d="M567.4,144.5v75.1H557v-72.8L567.4,144.5z M557,219.5v-52.9h10.4v5.3c2.1-2.1,4.5-3.7,7.1-4.7c2.7-1.1,5.6-1.6,8.8-1.6
			c6,0,11,1.9,14.8,5.8c3.8,3.9,5.8,8.8,5.8,14.9v33.3h-10.3V188c0-4.1-1.2-7.3-3.5-9.8c-2.4-2.4-5.6-3.6-9.7-3.6
			c-2.8,0-5.3,0.6-7.5,1.8c-2.2,1.2-4.1,2.9-5.5,5.1v38.1H557z"/>
		<path d="M621.1,158.1c-1.7,0-3.2-0.6-4.5-1.9c-1.3-1.3-1.9-2.8-1.9-4.5c0-1.7,0.6-3.2,1.9-4.5c1.3-1.3,2.8-1.9,4.5-1.9
			c1.7,0,3.2,0.6,4.5,1.9c1.2,1.3,1.9,2.8,1.9,4.5c0,1.7-0.6,3.2-1.9,4.5C624.4,157.4,622.9,158.1,621.1,158.1z M626.3,166.6v52.9
			h-10.4v-52.9H626.3z"/>
		<path d="M634.1,166.6h12.3v-8c0-5.3,1.5-9.5,4.6-12.5c3-3,7.5-4.5,13.4-4.5c1.3,0,2.6,0.1,3.9,0.3c1.3,0.2,2.5,0.4,3.6,0.7v9
			c-1.2-0.3-2.3-0.6-3.2-0.7c-1-0.1-2.1-0.2-3.3-0.2c-2.9,0-5.1,0.7-6.5,2c-1.4,1.3-2.1,3.4-2.1,6.2v7.8h15.2v8.7h-15.2v44.2h-10.3
			v-44.2h-12.3V166.6z"/>
		<path d="M687.7,206.4v-31.1h-11.2v-8.7h11.2v-13.5l10.3-2.5v16h15.6v8.7H698V204c0,2.7,0.6,4.6,1.8,5.7c1.2,1.1,3.2,1.7,6,1.7
			c1.5,0,2.8-0.1,4-0.3c1.1-0.2,2.3-0.5,3.6-1v8.7c-1.5,0.5-3.1,0.9-4.9,1.1c-1.8,0.3-3.5,0.4-5,0.4c-5.1,0-9-1.2-11.8-3.6
			S687.7,211,687.7,206.4z"/>
		<path d="M737,219.5l30.2-72.8h12.8l29.7,72.8h-11.9l-8.4-21.3h-32.6l-8.5,21.3H737z M760.5,189.2h25.4l-12.7-31.9L760.5,189.2z"/>
		<path d="M817.2,219.5v-72.8h10.9v72.8H817.2z"/>
	</g>
	<g>
		<g>
			<path class="st1" d="M129,85c12.5,0,30.6-2.6,30.6-17.5c0-1.2,0-2.3-0.3-3.4l-7.4-32.4c-1.7-7.1-3.2-10.3-15.7-16.6
				C126.4,10.2,105.3,2,99,2c-5.8,0-7.5,7.5-14.4,7.5c-6.7,0-11.6-5.6-17.9-5.6c-6,0-9.9,4.1-12.9,12.5c0,0-8.4,23.7-9.5,27.2
				C44,44.3,44,45,44,45.5C44,54.8,80.3,85,129,85 M161.5,73.6c1.7,8.2,1.7,9.1,1.7,10.1c0,14-15.7,21.8-36.4,21.8
				C80,105.5,39.1,78.1,39.1,60c0-2.8,0.6-5.4,1.5-7.3C23.8,53.5,2,56.5,2,75.7C2,107.2,76.6,146,135.7,146
				c45.3,0,56.7-20.5,56.7-36.6C192.3,96.6,181.4,82.2,161.5,73.6"/>
			<path d="M161.5,73.6c1.7,8.2,1.7,9.1,1.7,10.1c0,14-15.7,21.8-36.4,21.8C80,105.5,39.1,78.1,39.1,60c0-2.8,0.6-5.4,1.5-7.3
				l3.7-9.1C44,44.3,44,45,44,45.5C44,54.8,80.3,85,129,85c12.5,0,30.6-2.6,30.6-17.5c0-1.2,0-2.3-0.3-3.4L161.5,73.6z"/>
		</g>
		<path d="M581.2,94.3c0,11.9,7.2,17.7,20.2,17.7c3.2,0,8.6-0.7,11.9-1.7V96.5c-2.8,0.8-4.9,1.2-7.7,1.2c-5.4,0-7.4-1.7-7.4-6.7
			V69.8h15.6V55.6h-15.6v-18l-17,3.7v14.3H570v14.2h11.3V94.3z M528.3,94.6c0-3.7,3.7-5.5,9.3-5.5c3.7,0,7,0.5,10.1,1.3v7.2
			c-3.2,1.8-6.8,2.6-10.6,2.6C531.6,100.2,528.3,98.1,528.3,94.6 M533.5,112.2c6,0,10.8-1.3,15.4-4.3v3.4h16.8V75.6
			c0-13.6-9.1-21-24.4-21c-8.5,0-16.9,2-26,6.1l6.1,12.5c6.5-2.7,12-4.4,16.8-4.4c7,0,10.6,2.7,10.6,8.3v2.7
			c-4-1.1-8.2-1.6-12.6-1.6c-14.3,0-22.9,6-22.9,16.7C513.3,104.7,521.1,112.2,533.5,112.2 M441.1,111.2h18.1V82.4h30.3v28.8h18.1
			V37.6h-18.1v28.3h-30.3V37.6h-18.1V111.2z M372.1,83.4c0-8,6.3-14.1,14.6-14.1c4.6,0,8.8,1.6,11.8,4.3V93c-3,2.9-7,4.4-11.8,4.4
			C378.5,97.5,372.1,91.4,372.1,83.4 M398.7,111.2h16.8V33.9l-17,3.7v20.9c-4.2-2.4-9-3.7-14.2-3.7c-16.2,0-28.9,12.5-28.9,28.5
			c0,16,12.5,28.6,28.4,28.6c5.5,0,10.6-1.7,14.9-4.8V111.2z M321.5,68.5c5.4,0,9.9,3.5,11.7,8.8H310
			C311.7,71.8,315.9,68.5,321.5,68.5 M292.8,83.5c0,16.2,13.3,28.8,30.3,28.8c9.4,0,16.2-2.5,23.2-8.4l-11.3-10
			c-2.6,2.7-6.5,4.2-11.1,4.2c-6.3,0-11.5-3.5-13.7-8.8h39.6V85c0-17.7-11.9-30.4-28.1-30.4C305.6,54.7,292.8,67.3,292.8,83.5
			 M263.5,53.1c6,0,9.4,3.8,9.4,8.3s-3.4,8.3-9.4,8.3h-17.9V53.1H263.5z M227.5,111.2h18.1V84.4h13.8l13.9,26.8h20.2l-16.2-29.4
			c8.7-3.8,13.9-11.7,13.9-20.7c0-13.3-10.4-23.5-26-23.5h-37.7V111.2z"/>
	</g>
</g>
</svg>
 mediatype: image/png install: spec: deployments: null - strategy: "" + strategy: deployment installModes: - supported: false type: OwnNamespace @@ -126,20 +126,19 @@ spec: - supported: true type: AllNamespaces keywords: - - odh + - OpenShift + - Open Data Hub + - opendatahub + - Red Hat OpenShift AI - notebooks - serving - training - - pipelines - - modelmesh - - workbenches - - dashboard - kserve - distributed-workloads + - trustyai links: - - name: Red Hat OpenShift Data Science - url: https://www.redhat.com/en/technologies/cloud-computing/openshift/openshift-data-science - maturity: alpha + - name: Red Hat OpenShift AI + url: https://www.redhat.com/en/technologies/cloud-computing/openshift/openshift-ai minKubeVersion: 1.22.0 provider: name: Red Hat diff --git a/config/manifests/description-patch.yml b/config/manifests/description-patch.yml index 382b1505f04..6246bdc2a19 100644 --- a/config/manifests/description-patch.yml +++ b/config/manifests/description-patch.yml @@ -4,22 +4,24 @@ metadata: name: replace-description-patch spec: description: |- - Red Hat OpenShift Data Science (RHODS) is a complete platform for the entire lifecycle of your AI/ML projects. It is the flagship product of OpenShift AI. - - When using RHODS, your users will find all the tools they would expect from a modern AI/ML platform in an interface that is intuitive, requires no local install, and is backed by the power of your OpenShift cluster. - + Red Hat OpenShift AI is a complete platform for the entire lifecycle of your AI/ML projects. + + When using Red Hat OpenShift AI, your users will find all the tools they would expect from a modern AI/ML platform in an interface that is intuitive, requires no local install, and is backed by the power of your OpenShift cluster. + Your Data Scientists will feel right at home with quick and simple access to the Notebook interface they are used to. They can leverage the default Notebook Images (Including PyTorch, tensorflow, and CUDA), or add custom ones. Your MLOps engineers will be able to leverage Data Science Pipelines to easily parallelize and/or schedule the required workloads. They can then quickly serve, monitor, and update the created AI/ML models. They can do that by either using the provided out-of-the-box OpenVino Server Model Runtime or by adding their own custom serving runtime instead. These activities are tied together with the concept of Data Science Projects, simplifying both organization and collaboration. - - But beyond the individual features, one of the key aspects of this platform is its flexibility. Not only can you augment it with your own Customer Workbench Image and Custom Model Serving Runtime Images, but you will also have a consistent experience across any infrastructure footprint. Be it in the public cloud, private cloud, on-premises, and even in disconnected clusters. RHODS can be installed on any supported OpenShift. It can scale out or in depending on the size of your team and its computing requirements. - + + But beyond the individual features, one of the key aspects of this platform is its flexibility. Not only can you augment it with your own Customer Workbench Image and Custom Model Serving Runtime Images, but you will also have a consistent experience across any infrastructure footprint. Be it in the public cloud, private cloud, on-premises, and even in disconnected clusters. Red Hat OpenShift AI can be installed on any supported OpenShift. It can scale out or in depending on the size of your team and its computing requirements. + Finally, thanks to the operator-driven deployment and updates, the administrative load of the platform is very light, leaving everyone more time to focus on the work that makes a difference. ### Components - * RHODS dashboard - * Curated Notebook Images (incl CUDA, PyTorch, Tensorflow) + * Dashboard + * Curated Workbench Images (incl CUDA, PyTorch, Tensorflow, VScode) * Ability to add Custom Images * Ability to leverage accelerators (such as NVIDIA GPU) * Data Science Pipelines. (including Elyra notebook interface, and based on standard OpenShift Pipelines) - * Model Serving using ModelMesh (and Kserve) with a provided OpenVino Model Serving Runtime + * Model Serving using ModelMesh and Kserve. * Ability to use other runtimes for serving * Model Monitoring + * Distributed workloads (KubeRay, CodeFlare) + * XAI explanations of predictive models (TrustyAI) diff --git a/config/monitoring/alertmanager/alertmanager-configs.yaml b/config/monitoring/alertmanager/alertmanager-configs.yaml index 545f2d51555..bf676e99316 100644 --- a/config/monitoring/alertmanager/alertmanager-configs.yaml +++ b/config/monitoring/alertmanager/alertmanager-configs.yaml @@ -7,7 +7,7 @@ data: default.tmpl: | {{ define "email.rhods.subject" }} {{ if gt (len .Alerts.Firing) 1 }} - Red Hat OpenShift Data Science Notifications + Red Hat OpenShift AI Notifications {{ else }} {{ (index .Alerts.Firing 0).Annotations.summary }} {{ end }} @@ -550,7 +550,7 @@ data: - + diff --git a/controllers/datasciencecluster/kubebuilder_rbac.go b/controllers/datasciencecluster/kubebuilder_rbac.go index 6dbfaba89fe..61b8779dbdc 100644 --- a/controllers/datasciencecluster/kubebuilder_rbac.go +++ b/controllers/datasciencecluster/kubebuilder_rbac.go @@ -252,6 +252,6 @@ package datasciencecluster // +kubebuilder:rbac:groups="maistra.io",resources=servicemeshmembers,verbs=create;get;list;patch;update;use;watch // +kubebuilder:rbac:groups="maistra.io",resources=servicemeshmembers/finalizers,verbs=create;get;list;patch;update;use;watch -/* Only for RHODS */ +/* Only for RHOAI */ // +kubebuilder:rbac:groups="user.openshift.io",resources=groups,verbs=get;create;list;watch;patch;delete // +kubebuilder:rbac:groups="console.openshift.io",resources=consolelinks,verbs=create;get;patch;delete diff --git a/controllers/dscinitialization/dscinitialization_controller.go b/controllers/dscinitialization/dscinitialization_controller.go index 7000fe2656a..c67e74a1bf8 100644 --- a/controllers/dscinitialization/dscinitialization_controller.go +++ b/controllers/dscinitialization/dscinitialization_controller.go @@ -215,7 +215,7 @@ func (r *DSCInitializationReconciler) Reconcile(ctx context.Context, req ctrl.Re return reconcile.Result{}, err } if instance.Spec.Monitoring.ManagementState == operatorv1.Managed { - r.Log.Info("Monitoring enabled, won't apply changes", "cluster", "Self-Managed RHODS Mode") + r.Log.Info("Monitoring enabled, won't apply changes", "cluster", "Self-Managed RHOAI Mode") err = r.configureCommonMonitoring(instance) if err != nil { return reconcile.Result{}, err diff --git a/pkg/deploy/setup.go b/pkg/deploy/setup.go index 109f428e267..6662d033b9d 100644 --- a/pkg/deploy/setup.go +++ b/pkg/deploy/setup.go @@ -13,8 +13,8 @@ import ( const ( // ManagedRhods defines expected addon catalogsource. ManagedRhods Platform = "addon-managed-odh-catalog" - // SelfManagedRhods defines display name in csv. - SelfManagedRhods Platform = "Red Hat OpenShift Data Science" + // SelfManagedRhods defines display name in csv + SelfManagedRhods Platform = "Red Hat OpenShift AI" // OpenDataHub defines display name in csv. OpenDataHub Platform = "Open Data Hub Operator" // Unknown indicates that operator is not deployed using OLM