Loading...
No results found.

Google Cloud Skills Boost

Apply your skills in Google Cloud console

Computer Vision Fundamentals with Google Cloud

Get access to 700+ labs and courses

Identifying Damaged Car Parts with Vertex AI for AutoML Vision Users

Lab 1 hour 30 minutes universal_currency_alt 5 Credits show_chart Advanced
info This lab may incorporate AI tools to support your learning.
Get access to 700+ labs and courses

Overview

Vertex AI brings together the Google Cloud services for building machine learning (ML) models under one/unified user interface (UI) and Application Programming Interface (API). In Vertex AI, you can now easily train and compare models using AutoML or custom code training and all your models are stored in one central model repository. These models can now be deployed to the same endpoints on Vertex AI.

AutoML Vision helps anyone with limited ML expertise train high quality image classification models. In this hands-on lab, you learn how to produce a custom ML model that automatically recognizes damaged car parts.

Once you’ve produced your ML model, it’ll be immediately available for use. You can use the UI or the REST API to start generating predictions directly from the Google Cloud Console.

Lab objectives

In this lab, you learn how to perform the following tasks:

  • Upload a labeled dataset to Cloud Storage using a CSV file and connect it to Vertex AI as a Managed Dataset.
  • Inspect uploaded images to ensure there are no errors in your dataset.
  • Review your trained model and evaluate its accuracy.

Task 0. Setup and requirements

Before you click the Start Lab button

Read these instructions. Labs are timed and you cannot pause them. The timer, which starts when you click Start Lab, shows how long Google Cloud resources will be made available to you.

This hands-on lab lets you do the lab activities yourself in a real cloud environment, not in a simulation or demo environment. It does so by giving you new, temporary credentials that you use to sign in and access Google Cloud for the duration of the lab.

What you need

To complete this lab, you need:

  • Access to a standard internet browser (Chrome browser recommended).
  • Time to complete the lab.
Note: If you have a personal Google Cloud account or project, do not use it for this lab. Note: If you are using a Pixelbook, open an Incognito window to run this lab.

Log in to Google Cloud Console

  1. Using the browser tab or window you are using for this lab session, copy the Username from the Connection Details panel and click the Open Google Console button.
Note: If you are asked to choose an account, click Use another account.
  1. Paste in the Username, and then the Password as prompted.
  2. Click Next.
  3. Accept the terms and conditions.

Since this is a temporary account, which will last only as long as this lab:

  • Do not add recovery options
  • Do not sign up for free trials
  1. Once the console opens, view the list of services by clicking the Navigation menu () at the top-left.

Activate Cloud Shell

Cloud Shell is a virtual machine that contains development tools. It offers a persistent 5-GB home directory and runs on Google Cloud. Cloud Shell provides command-line access to your Google Cloud resources. gcloud is the command-line tool for Google Cloud. It comes pre-installed on Cloud Shell and supports tab completion.

  1. Click the Activate Cloud Shell button () at the top right of the console.

  2. Click Continue.
    It takes a few moments to provision and connect to the environment. When you are connected, you are also authenticated, and the project is set to your PROJECT_ID.

Sample commands

  • List the active account name:
gcloud auth list

(Output)

Credentialed accounts: - <myaccount>@<mydomain>.com (active)

(Example output)

Credentialed accounts: - google1623327_student@qwiklabs.net
  • List the project ID:
gcloud config list project

(Output)

[core] project = <project_ID>

(Example output)

[core] project = qwiklabs-gcp-44776a13dea667a6 Note: Full documentation of gcloud is available in the gcloud CLI overview guide.

Task 1. Upload training images to Cloud Storage

In this task, you upload the training images you want to use to Cloud Storage. This makes it easier to import the data into Vertex AI later.

To train a model to classify images of damaged car parts, you need to provide the machine with labeled training data. The model use the data to develop an understanding of each image and differentiate between car parts and those with damages on them.

For the purposes of this lab, you won’t need to label images because a labeled dataset (i.e. image plus label) in a CSV file has been provided. The next section outlines the steps to use the CSV file.

In this example, your model learn to classify five different damaged car parts: bumper, engine compartment, hood, lateral, and windshield.

Create a Cloud Storage bucket

  1. To start, use Cloud Shell window and execute the following commands to set some environment variables:
export PROJECT_ID=$DEVSHELL_PROJECT_ID export BUCKET=$PROJECT_ID
  1. Next, to create a Cloud Storage bucket, execute the following command: gsutil mb -p $PROJECT_ID \ -c standard \ -l {{{project_0.default_region | REGION}}} \ gs://${BUCKET}

Upload car images to your Storage Bucket

The training images are publicly available in a Cloud Storage bucket. Again, copy and paste the script template below into Cloud Shell to copy the images into your own bucket.

  1. To copy images into your Cloud Storage bucket, execute the following command:
gsutil -m cp -r gs://car_damage_lab_images/* gs://${BUCKET}
  1. In the navigation pane, click Cloud Storage > Buckets.

  2. Click the Refresh button at the top of the Cloud Storage browser.

  3. Click on your bucket name. You should see five folders of photos for each of the five different damaged car parts to be classified:

  1. Optionally, you can click one of the folders and check out the images inside.

Great! Your car images are now organized ready to for training.

Click Check my progress to verify the objective. Upload car images to your Storage Bucket

Task 2. Create a dataset

In this task, you create a new dataset and connect your dataset to your training images to allow Vertex AI to access them.

Normally, you would create a CSV file where each row contains a URL to a training image and the associated label for that image. In this case, the CSV file has been created for you; you just need to update it with your bucket name and upload the CSV file to your Cloud Storage bucket.

Update the CSV file

Copy and paste the script templates below into Cloud Shell and press enter to update, and upload the CSV file.

  1. In Cloud Shell, to create a copy of the file, execute the following command:
gsutil cp gs://car_damage_lab_metadata/data.csv .
  1. To update the CSV with the path to your storage, execute the following command:
sed -i -e "s/car_damage_lab_images/${BUCKET}/g" ./data.csv
  1. Verify your bucket name was inserted into the CSV properly:
cat ./data.csv
  1. To upload the CSV file to your Cloud Storage bucket, execute the following command:
gsutil cp ./data.csv gs://${BUCKET}
  1. Once the command completes, click the Refresh button at the top of the Cloud Storage browser and open your bucket.

  2. Confirm that the data.csv file is listed in your bucket.

Create a managed dataset

  1. In the Google Cloud Console, on the Navigation menu (≡) click Vertex AI > Dashboard.

  2. Click Enable all recommended API.

  3. From the Vertex AI navigation menu on the left, click Datasets.

  4. At the top of the console, click + Create.

  5. For Dataset name, type damaged_car_parts.

  6. Select Image classification (Single label). (Note: in your own projects, you may want to check the "Multi-label Classification" box if you're doing multi-class classification).

  1. Select region as

  2. Leave all other settings as default. Then click Create.

Connect your dataset to your training images

In this section, you choose the location of your training images that you uploaded in the previous step.

  1. In the Select an import method section, click Select import files from Cloud Storage.

  2. In the Select import files from Cloud Storage section, click Browse.

  3. Follow the prompts to navigate to your storage bucket and click your data.csv file. Click Select.

  4. Once you've properly selected your file, a green checkbox appears to the left of the file path. Click Continue to proceed.

Note

It can take around 9 to 12 minutes for your images to import and be aligned with their categories. You need to wait for this step to complete before checking your progress.

  1. Once the import has completed, prepare for the next section by clicking the Browse tab. (Hint: You may need to refresh the page to confirm.)

Click Check my progress to verify the objective. Create a dataset

Task 3. Inspect images

In this task, you examine the images to ensure there are no errors in your dataset.

Check image labels

  1. If your browser page has refreshed, click Datasets , select your dataset name, and then click Browse.

  2. Under Filter labels, click any one of the labels to view the specific training images. (Example: engine_compartment.)

Note

If you were building a production model, you'd want at least 100 images per label to ensure high accuracy. This is just a demo so only 20 images of each type were used so the model could train quickly.

  1. If an image is labeled incorrectly, you can click on it to select the correct label or delete the image from your training set:

  1. Next, click on the Analyze tab to view the number of images per label. The Label Stats window appears on the right side of your browser.

Note: If you need help labeling your dataset, Vertex AI Data Labeling lets you work with human labelers to generate highly accurate labels.

Task 4. Train your model

You're ready to start training your model! Vertex AI handles this for you automatically, without requiring you to write any of the model code.

  1. From the right-hand side, click Train New Model.

  2. From the Training method window, leave the default configurations and select AutoML as the training method. Click Continue.

  3. From the Model details window, enter a name for your model, use: damaged_car_parts_model. Click Continue.

  4. From the Explainability (optional) window, click Continue.

  5. From the Compute and pricing window, set your budget to 8 maximum node hours.

  6. Click Start Training.

Note: Model training can take longer than the allotted time to complete the lab. The model does not need to finish training to continue to the next section.

Click Check my progress to verify the objective. Train your model

Task 5. Request a prediction from a hosted model

For the purposes of this lab, a model trained on the exact same dataset is hosted in a different project so that you can request predictions from it while your local model finishes training, as it is likely that the local model training will exceed the limit of this lab.

A proxy to the pre-trained model is set up for you so you don't need to run through any extra steps to get it working within your lab environment.

To request predictions from the model, you will send predictions to an endpoint inside of your project that will forward the request to the hosted model and return back the output. Sending a prediction to the AutoML Proxy is very similar to the way that you would interact with your model you just created, so you can use this as practice.

Get the name of AutoML proxy endpoint

  1. In the Google Cloud Console, on the Navigation menu (≡) click Cloud Run.

  2. Click automl-proxy.

  1. Copy the URL to the endpoint. It should look something like: https://automl-proxy-xfpm6c62ta-uc.a.run.app.

You will use this endpoint for the prediction request in the next section.

Create a prediction request

  1. Open a new Cloud Shell window.

  2. On the Cloud Shell toolbar, click Open Editor.

  3. Click File > New File.

  4. Copy the following content into the new file you just created:

{ "instances": [{ "content": "/9j/4AAQSkZJRgABAQAAAQABAAD/4gIoSUNDX1BST0ZJTEUAAQEAAAIYAAAAAAQwAABtbnRyUkdCIFhZWiAAAAAAAAAAAAAAAABhY3NwAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAQAA9tYAAQAAAADTLQAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAlkZXNjAAAA8AAAAHRyWFlaAAABZAAAABRnWFlaAAABeAAAABRiWFlaAAABjAAAABRyVFJDAAABoAAAAChnVFJDAAABoAAAAChiVFJDAAABoAAAACh3dHB0AAAByAAAABRjcHJ0AAAB3AAAADxtbHVjAAAAAAAAAAEAAAAMZW5VUwAAAFgAAAAcAHMAUgBHAEIAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAAFhZWiAAAAAAAABvogAAOPUAAAOQWFlaIAAAAAAAAGKZAAC3hQAAGNpYWVogAAAAAAAAJKAAAA+EAAC2z3BhcmEAAAAAAAQAAAACZmYAAPKnAAANWQAAE9AAAApbAAAAAAAAAABYWVogAAAAAAAA9tYAAQAAAADTLW1sdWMAAAAAAAAAAQAAAAxlblVTAAAAIAAAABwARwBvAG8AZwBsAGUAIABJAG4AYwAuACAAMgAwADEANv/bAEMABgQFBgUEBgYFBgcHBggKEAoKCQkKFA4PDBAXFBgYFxQWFhodJR8aGyMcFhYgLCAjJicpKikZHy0wLSgwJSgpKP/bAEMBBwcHCggKEwoKEygaFhooKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKCgoKP/AABEIAlgDIAMBIgACEQEDEQH/xAAcAAACAwEBAQEAAAAAAAAAAAACAwABBAUGBwj/xABGEAABAwMDAgQEBAQEBQMEAAcBAAIRAwQhEjFBBVETImFxBjKBkRRCobEHI8HRFTNS4UNicvDxNFOSJCVEghY1VGNzdbL/xAAZAQEBAQEBAQAAAAAAAAAAAAABAAIDBAX/xAAsEQEBAQEAAgICAQQABgMBAAAAARECEiEDMUFREwQiYXEUMpGhscFCgfHh/9oADAMBAAIRAxEAPwD5L0uyq16rSMNacleztqVWoxjGy8gQVosOnMfljBTpei9J0jpV11F/gdLti6ImocD6ld/G9M7jk2vTqTCDckk8Nb/VaHVqTPK3QwDEAZXuqXwX02xoit8QdTBIEmlRMD2lJqdZ6JYk0ugdGo1aoGK9wZH1RfH63Wb3jxdPVUM0betVG5IYY+8JtAXWqWU6bDO9QgQmdZ+IOo3VRzK91St2A5ZSgD2wuK67aSSHVajuTEArPpS2vT0LWrUJe++t2xl3hsLoT2ULKo+bi8uX+rGNZ9ivJs6tWpNimxjCdySThIqdTrvy6qGx/pACty+jte4rWvRtMvpXVQjl9zA/QLnXFx0+3/8AT9Gtq0c1Lh0yvH1L6f8AMrkjsXJJ6jbNH+Yz903u0ZXtxcF3mpWvQbcR+clxH6rp9P6lY2zS28urIOPymlQ29sL5qOrW9MamnUDy0KHrrNmU6r/YYWZL+i+iH4ktaR//AJjdVADgUrUDE7TCI/F9qBin1Gr6Oe1sr5v/AIq93y2tT3JhT8dcuHltgB3JTPj6Gx9Gd8bn/g9NPp4lef6JR+N+pukUre2pj3JK+fi4vXflpt7blWx96f8Aisb7BM+K1bHt6nxb1qo7y17djfSnJ/dZn9f61WI19QeAf9LAB+y8oG3bt7kx2ATRavcB/wDU1iecwtfw2/geUeib1C+c+XdQuWnuHwP2WatWrOeS+8uCRmTWP91yBYg5c+qTzLk0WFIgQHl3fUSFr+Gjzje6ox0eJWLz3e8n+qhfbAeZ9P7rEzp9L/TPbdOZY0hMUxJ9Fr+G/tfySH+NaDd9NEy4tf8AWz6BAy0YD8o+y0U6DJw0e8K/i/yP5IJlzQGzp9gU5l1S7P8Ao0qU6IJEBdGjb0qLBWuJDBsOXFanxfsX5Iy06zHDFOqY3IaVqt9VU6aYLWned0bH1bp+lg8OiNmjH3XY6bY1KtanRosL6jjpAG5PZYskbm0uytTLWsBLjifVfSvhb4SFNrLnqTZdgton93f2W/4V+F6fS2Nr3Ya+73A3FP29fVephceu/wAR0kxTQGiAIA4ChyCJhWqMDK5lTZa3JmOVRBdk4b27ogOTlXCkrhKrkaNgT9inFZLt0DMR/wAyZ9iroExnHo5RwbOdH2IQWhJaY2/5dkwu8xBc9o7mIWr9oTIicaeSCV5zr3VjUe61tHRHle9px7I+tdWJcbSzw7Z7wcAeiV061pW/h1qzZc75WHJJ7lUgtM6T0xlEMrXQ8xy1h/crq1KzqktafKs9SoXHOT3UpkgzsFr7RraLgZmU9jT9EDHnlaKTgTlSWxkkLQ1oaMKNjhWudutIooohIpGZUUUkUUUUkUVSrUkUUUUkUJgEqKESCFJTXSrQBujnCMEHZSQ7LI3N0HcZytROFlY0/iR/p3WufyK1OALSDsRC4doDb9RcwDyukFd1cvqNItrMqNxnJVyqfbUwy4fHIlbQZCwsaS9rmnMZK10QQ2CZV1FBqKKLJRRRRSRC9wY0ucYA3JS7iuygzU854HJXMca19VgYYOOAmc77TRWu3VTpoy1vfkqUrYMZrrHS0ZMoalSh09mn560YC5lzcVbh2qq7HAGwXXnnfpjructlz1GAWWogcuO59lzi4klzjJO5KGeIUJXXnmc/TjerUdkY3XLuGltSCcTsukHA4WW5ognUPqkSkDQ5oEoXtNPMx2CTq01CGn2Vudqd53ZWL6bg2VhwJPKVUhx2kJbXFtUgGR3Vmocws2GdGtB0EaohKZVAJa/JOxQeKYxurbLvM4CPTdZnqtW6ldrmjB+qQ1zw6CZTZJMEkNPJQkCcGYVQ10mkUnPc4A8ITVe8CHbILc6nhrvlPK6X4AiXs2GfdWSlldWeG6ZB9VVs6XFznw6Yg7QuszpYrUZbDXETKXedMbaW4eSXO5hM5hZqmp7g17wwcHcFWxwtntfRdqIzKzVqZ8Jj2l+eI2Q0WVahgYPdZ8Vr1/Teo1K7BqAcOSOF1mkESNivM9IpVrWtTe4DQ/BPC9ONlmzGoiiiiyUUUUUkK4nWb3Hh0zjkjkrV1a8FvS0NPnd+gXmqhL5JWuZotx8nsOj2tCmK3VHjQMii0x9yiv8A4vFIfhrEso0W4JZgALyvxB1KoahbWqa5+VjD+681VrGNVV2lo2aFXb9sXry+vp6m/wDiGnUdNFhuKnD6hOkH0C4l3fVasuua+hhGzTAXGqXdV3lojQ3kn+gWV1LWdVUvef8AmK1z8VrNsjoVep29P/Kl7uIz+qzu6lc1MU6OnsXFKY0A4aAOya05H7LtPgn5F+WEufe1R5qoYDw0IPwj6g/mV6jjsYMBdCm0OBk6ewPdSOOTwuk+PmM/yViZYUhEgu9ytNOypNj+WCnAGO6NpE7Z7Lc4jN+SqpUGAYaB6QmaADjZG2dgEbQf90yM3q1TWhGGj2R6THvsrAA4+qcGqa0/RNY0THPPZWyBxk8o4wM7KWoI4EQjaYO3sVQajYBOf0SRgHumQPy/KgadLpIkdk0uLuMdlYFsG0Jwcdoj1S2NCc1sSoI1p3TmNyDyqpg8LZTpto0xWrbflbySi+vtrB0mspUvFrDA2HJKBoqXlbW/DRsOAFbKb7qprqbcAbALvdG6VXv7unbWdIvqO+gA7k9lw67t9O3HH7V0fp9a7r07a2pl9V5gAc+p7L678L/D9v0WiHVHNqXjx5qh2A7N7BM6D0Oj0Hp7xQDX3Tmy+oRue3suYLu58fXUdqdOCvP11vqO309frb/qH3Vgg7EFcbp98+rIrvYw8HSF0qIMeJVcIExAjCxhaFIVNcCAQcFSR3QlqKKKSnbLFdk4g/YLYZ9VivxMA598rXP2Ku2gjzET/wA2CuP1/qgon8Lbz4j8GMgBN6jeDp1k5+NZ2EZlcTplE3VbxHjzO8zi78oWsGtvTLFjRrdLm7kndxXSrESHQNfB7BWC2mzyiGDAHcpUkyXbndVqU2SU9jSlMiZmE8OgKRtMyU9pDVnb6fVOa0pRviQnUnEiTskU6Wp2eFqa0AQsdGLUUVFwAWSHxWeJpnzI0uGPzGfsUWoDBKkJRQEESFFJWkK1FFJCYUVRlUXAEA7nZSEopIVBwPKkVWkujiEDWvA8pynRL/oikBO4yVUJDWg7oS0/iGHiJKZUAdCORCtKAgoKzA+mQRtsowR9UYHlgo+iTbAaE/bCyUmnxC3UW9oRteBcaC4ucBsm/YaFFFEFEm4rtotzl3ASr26FBsNzUOw7epWO1oPuKhq1SdO+eVqc/mi38Cp0al3U11DDP+9lLu7ZbtNG2HmG7uyC+vQQaNudLRguH7Bc3AXXnnfdcu+8+guBcdRMuOST3VE90aArs46hKpQqKKtA1TGUi5xTdpOVoMLNeCGSHQf3RVHM5k7pdQmVKjnyTwlB8u2kLONbhjROXHPdKrOLAdJBnhNqQWCBCzuaPmOYWZ7PXqAbU0th43TmuLqe8RskuAcQQmUqjZgj3AVYOaaysXNLI3VACk7IVBwYZH2QGuC8YlYstdZZDHVi94jAC6VCvVFHSH+XYrjOqS/0Tqd15NEwO6LFuvRWFw/QWNqaiNiulZuNU6a5835SdoXmemVqdCuHPktO/Zevsa9KtApwQOUy+kp9vQaHNqBjJGDgArjhtJlchohgMyF1OttJotLRMHJWO1osrUCNQDowi2tR2emxUoAh7Xs4HYrcuB0ak+3utOohp3E4K76xTEUUXOuqzLmsbVlTTHzRz6ILTVvKFIw54LuzclA24rVv8mjpb/qfj9Fdra0aI8jfN3OStSk49704mm6q+oXP3PZef6g4UmGN17G8exlu81HBrYOSvDX/AIlcSMtcYBTKLNfl6vWFMkzqecklY3OfWOqNRH6KOZs55mUbXDAGAOy9HHEjhevWQJa4RqBEq8j+pWplUwACHN5DhKp9AO81LHJZyPZdo5k6sDG6sR2yNkAG42Mom7xC2yaBMThG0kEcxyhpNLnBvPqneH4ZmR7KxI09hvujaBON0AA/smMx7chUQmgAdvVNa3nhCyT6yjbP9wtAbQXeVs7o2tAwRkKUTodqAkbEIgJeTtJmFUibCKe26sNAPdEG5Eo05q25n9UYGFQEfRMaBOVKoAP90bW7K2AD+ybjeAJ4VAlMbDnhaGiTLjKW1q6FrRayn49x8n5Ry4qtxSJTpspUvFrfL+VvJKlGm+5qaqmw2HACjGvu62p4hvA4AXouh9HuOo3bLazplxkSTIDR3cuHfeu/HC+h9IrdRuqdta09Tjknho7n0X2P4d6HbdEs/CoDVVdmpVIy8/29Ffw90W36LZCjRGqoc1KhGXn+3ousvN135eo7SYxdXq+HZuAJBf5ZHC84xtJhggv7EFeruGMqUnNqxoIyvJVnUmVCBrDQcGNwrnFXV6datqu1nNNufr2XYDS4ecQ0bN4+qxdJuqFSg2kwaHN4dz6rpLNJGkt4pgdgFQLYP+XPsU8zGIQup6vzvHsYQS21NPzOYPaUxrwTEg+ytrYHzE+6gbmdR9lBcDss94adOmalQ6WtyTstKwdZs6l7aeHSqaHTMHZ3oUz7TyVVz+sdTdM+C3Yei7tC1FOl4bPldlx2MJ3w7Yus6VUVqempqid5C03TQ2lWc0aTq0n2Wt9jHNqu1PDW/KMAJb3EYTG743ChaXZ3UAM7lM8zhI2HCpgHykT6rRRsnvyPK3uU6QU6hnG66Vqx5bL8IbW0FLLoLu62DZZtWLAA2UUSqpMxwslbqoDtO6U9r9ZLTv6qjHZE9sw5azAjS8OBIMI6rgHQ4YPKKl8pROaHbhF+yCmBBgyCqgg4M9woKZa6WnHZWafm1NMFSHmBCgJO6poJaQ77qg1wO+OyENU5ocPMJVzG6EuGkxmFINNpbImRwlGk9jpYZb2RNqnWBGCnEkJ9wAaCSZ7JR1ioAdoyUb6sHACDUagI2KZKLU8QxDfN6o2PdyENMhog7qjWH+mB3TglaAQVfKRSeCcHCaSZEcrNmNSsnUZa0OYdLp3CVaNmp4ziexJ5KfeUX13MaDDQfMfRA6X3VOlS8tOnk+6Z9JuWW9um21Od3nYJl1Xbb0i930HcrgsFS+uSXGZOTwArnnfatxos6T7usX1HeXcn+iO/uwR4NvhgwSOfRVeXIp0xQt8NGHELmknhdued91y679ekLiNlRceUR2VGF1caoOBQiZzlWCEOrKkIqKKgVJJWe8DCzz78LRhY79pLQ4fVBjm1HQ0pDXDbko6gMzKRgOOrHYoxW+zzMaQfdAWgDO/ZU12e6OqQWgxB7rONS7C/DDhIwQgADSRO25RkhrQZhIruEgt5RPauRVR5DpBxwpSczXqdkdx3UaGPLWOdDuSuvaWtq+2c3V51qyCMBY15B2jKU5pbqhuDyjrnwqugbDnlHIc2NgVityVVF1VpEeZq7VCqbam2qKga8flHKx0G0qdNri7fcLNcPZ4p80tOxC52/p0x6hvVqNxQc15DXRjkFYX3xNMNpjQ5vI5Xn6bS6ph0ZwVte40yDOogYKfwI9L0CuPHJrkl52nhelBBEhea6A6jeMDardNZuQ4YlehqvbRoue75WiSsNxh6zei0tjBio7AC8xZXRZeNeTuclI6v1A3l4X7N2A9FmpP8wK6Tn08/yd7cj6JQdqYD3RVHinTc95hrRJKydJeallTJ7JfVbylTAouGpzuOFyrvz9OJfV63U64AllFpwO6bToUqboP5RMJtw5lvS1ARPHquXQpVLi4NQuIB4XLd9u1np+Ry6MK2GDJyFQIO8qgQHTwvpx4Kc0TkYjYp1OoAQCfN3WZpnPCIAF0DC1gro1qDKtMOaR4kZAWMS12Pm2R0qxBAPGxXQdbNuqfi0sVRuNpVLn2L7+nPbJ9SmjMTMKiCHeZsEIo7HHJWt0CEbJjAAdvcIA2RKYwc7wmCw1g7fdMaMgFU2dIATabCd1GI0cJzW8lRzQyIyjYOUacQthE1pBHY7Iox6I2t7hKkUA2I57pjGqmtHKaxsYBmValhv0HojY3OdkTW5z9St9jasqfzKx00m7+voEW4sSytWlhrVsUW7A/mPYInF95WGNLBgDgBMqOdeVAGjTSbhoGwC9L8K/D9XqVcNZTeaAzUeP2lcOu9duOD/hH4bq9SrB/hxa08ucXASewX1Wz6fbWVsWWrPAokAuDZye87q+m2NCztmU7amGUGsAIkmfdbabTUcHukMHytP7rh11rv9eoloxzWyXP0nYOMkLiddr16lwG29U0wzHOSurf3NSnFG1ZruHCQDgNHcpVW3ptsnVbsNa9rZcRgSsRPNC66hMOqyO52Q/irsnzAlo4IkLo0aRdbtrmm8U3ZB9FLmmD/AJTyWxvH7hNa5s/JLL6k8aa9Itj81MwfsurYXj2iGVRcUxwcPaP6rhG31EkkT3H9lTQ+k8bgd2oxXL9PY06wrAGk6CNwUbXO2e2PULk2DzWpiHzXbtONQ9Ctrb4NOmtSc1wweQpltBlRLZWpvy133wmISKQoopFgODu4KCpSDg8H5Xb+h7p6ik4bqJZULT9FbKL6jg1oweV1n0GPdLhPomNaGiGiAtaMZbeyZTy7zOWmIwESiyQgFEAoopIqcAVah2UiywHZW1sNg7hQ43KJuyUprYKJVmVaEiiiikiiiikkAqoHZWopK0iZhWoopM1VkOlSlJMcLQWg7hQADZa8hhNUAMHeVNLSDPaVdaSBGUl7jEDJKefoX7MoNwE+M+yVQaQPMnLN+zAvJa0kCTGB6pFFjbai51R2TLnO9VpXF6pcmq/wqZ8gOSOSqTVbjNc133lfy/LsB2CZUqttaPhUz5yMnshbptaJqO+d2wWBzX1Zc50E5hd+eXLroxzvXfcqEmN1n/DmMuIVCh2qFdcjjdatSE7rObd4yKhwgDa5Plft3UGs+iE42Czzct3hyWbmq3DqX1VibIQzO3G6zU71hMOBb7p7atJ3yuElWLVz2S6rSGu/NPCY5zW/MQOysgRvvsgxwa4LXGRB7LLUaQ3X+VbuoUyx5nbusGouaWDIUOvtTKokNATS4HylZDNN0gZ4VmoSSTsjqaeesMrOMQDgJBaSyTJHEcKPdtpMJ9OsBSIMk/oj6a3yrOAYEtkjYplJztYglh9EwM1NDmlJA/mwSs+WmzGjT4ZD6h1epV+O01AQ3HbhJuHEQ0OlhQh+hoDRJ7rNbjpGtTLACICxOnUdOWqmPc4TAA7J9q1j3kbdwucmN7rpdFtTWlz2EtAxhbrmzaLcuI0uJkA7rd8PXlJrG0QQHDBBxKX8U1mNDY8p7hal9KRv+HbV9KmKmoOa4bchZfizqJptFvSdv80fsh6FeC26TUqvqBwAwJyCvKXty64rve8zqJVxNus/J348oHAk5TWGDuszMgEmfVaaM4BE9l1rx8+3rfh67IttDtmqdRqipceI6NLRusfTqT6NsXOETt3We+rH5GmSd14+rtyPo/HxZPYDcG8r6R8g2XZtKGloXP6XbBuYyV3KFMBYro/EAdq2EKwc55VBo32KJpJP9F9WPnjac+iIfoqxp9SiaJyFqQWmAf8AYWyyrGjVDifLyFkZ9vVOY0zgj2Uo617btrN8ajuRJjlc6IK7Fgwtota4+wKz9Qtwx2umBpcchZlz0bPyxNAPMJtMCELW7YkJoxHC0ytpLcBPa4wM4CUBJkpzAMAZKdJ9FhcRjHdb6dEATv7rNbOJIacj9V0KYGBsi1pBbNduN0upavbJB1NW2mI4TS2RuiU45AEJrB2W19sKnyjzBVZWT7i4FJojlxOzRyStazl0fS7E3dUlx0UKfmqP4A7D1Wy4qNuqzadszRQbhoG59SruqzRTbZ2mKDD5iN6h5JXQ6B02vf3lK3tmF1Rx42A3JK49979OvHOtnw70Kt1K8bQoNho8znHgcr670fptCxtadK3aW02thxduT3lK6B0mj020p0qM6xPiPOC8rttaAMbLz9dPR9ei209UcMGw7+6K4rMtqL6tZ2ljRJKavNfEV1Qua34F9bwwIJdwT2WPsHdQq/jnW9bplam92oBzQYJHr7Lo3Fu65DKNT/IEGp/z+nssXw/0htg11V5Dqz8AjYN4W3qNyKVIsb85x7KtLmdcvwGihb4aMEjC5DKr43JPdXdCXnOVdNh0B3PC1IsaLRtSq18GSNgY/Za20G1NJqDQ041DafVMoWb22rbkPyPMQBJhMNOo8eMXhrKgmIgE+yhSGUXUarmzBbkf3C6dJzbpgDzFVuxHKQaWuk17XatO45AQtJo1PJBMSCjFrSKVbS5rhM7FLFvXpuDtRdB2C22tYV6WoCHDBHYpyvKjA03FzQSC09iiUUWSiiiikiiiikiiiikiiiikiiiikotBUAgK1nuqugaeTypA/FtDy2DAMLTTeKjZbsuUx4fXAePLuSeyN18G1SKQAZstWT8DXUUWCjeA6nPOAjtb5lcubs4cIyrWxRVqxKknsgrUUUUkUVT6K5UlOnhCXEQSMcoiVY2Ui3aHDJ+yFrGNy0ElHoAJMQUQEDeUpTQdzhEos91cNoUy477AdyhEdSufCZ4bD53foFy6LQJe/DWqiXVqhc4ySZJWW/useGz5Qu3PP4c+ui7m4Na5BPygwAn8SFy2u84PqujGpozC75jz7tGds7IWtAyFYHHChGMbqKKYVCYyqc2TMwpLKEt5R8IM6vRQwt9Jjt2hZ32LHGQS0+i2wojVjk3FrXFM6amtrcgFMsbwPaGPIDm4MreQIIA3Xn7uiKd4ASWtJmQtT2zZjp9TIfbmAPdcOnAP7ldGvYV/DLqdbW2NiuJVc+k4g7jcKk1Xq/Z9WCSUsNBaYMpH4khpDm/VXSugPLsCs+NXnKsxOkjOwTWkMZpMfVLZXo6i2rgHkJTqzQ8gyW8E4VZTz1JWlrhTadRxwq1AkOgykvq06hA1AeqKlcUnVNEhoAiSseNb85+WnS2owu2I3SaLgJBGoI69xSNDyw07Y2KzUqwpDUHCSiz01LIdqLnQB9FqtqZ8YaQc5WKlcU9Ul4BndbqN9Q16fFDSOVm61LHpejU6Lqw8Zv19VyviS5Na7NOlljTAKV03qlGhcOD6ocDgHhD1N9J9XXSezUfNgrONSwiq8UmNY15M7jiVnnU6EupWFR51Rq5IRQODjuuvH08vy33hzCWy39FusCHV2A991zmTqkrdaNLqjQN5wjv6Z+Pb09Vd1mMoiMNAyuNbk3FYv4nCd1FpZbhky4hH0qjopjGV4p6j6trrWlMNaF06DdsZWOg3YbLo0mwFmi/T8KgbdyjDYPf0VQOAE1oGn15X1nzwgfQImA+0bK9I0kkx6KwOBsmUU1gwDH0WmiGH5wfSO6zsaW5ggRhPpkc/cJ0uzZ1AWNHbhaKjQ5hxMhcy1NQeZrS5nJGwXQc/S2SY9Fzs9tfhzNJDi2OUynp5/RC52p5M4Kg4MrbODMAxwn0XadkgOlx59Ebck9+yS1036qoJEe2F06RBI/dcemfMOV1qDpghVUbdMQUwA77hKY4OHmweE1rocGjJOAOSVk06lTdUe1tMS92AE+7qtt6ZtLcy45q1BuT2CuvUFhS0CDcvHmP+gdkixtn16jWU2lz3GAP7rHXX4jXM0y0pCQIyeBlfZvgvof8AhvTWvqU/CuamXE5McD0XP+D/AIRoWZpXt3T13DQHM1zDHd47r2jPHDgHeGW8kSCvP11+I7yYYxoaIGyp72sEkxCXd3NO3plz3AHgLlVb9ngms9sMG3BeVmTVrV1O9dRs3OpNJqOw309VwOjdMde3fj3Xmp03aiN9RTumVKvVPxNvceQnzUzyM7L0lpbstbdlGkIa0ff1VfShlV/hsJ+y83fXMOc9+SdguzfVRpOdl5m7Bq1IbvKJGoS1xq1BxK10qfiVWsBgE7obei8PawNknAC79vQbZWp10jUcTJEAlNqMtqNM0C17NJ2MEwfVKp2zatqWl7wWkwNWFq/EUvC1Plg5DgQQjpvpPZ5C0tP6o1a5gozTD6hILjpA5CEeG1hAqedh2PIWyuKIoubEPBOkAyVmoWor1BVrMc2OI3TOheWqxaQ8uGxGVuSqFNtNsMH3TVm1IooopIooopIooopIooopIoopPqpIoqLgEPiZgNJKkNc++JD87cLbqf8A6PuUq4pPrNjDY5TE5dzLbcvb8vMLn0PGuHhtNsA8rruoupnRUEtdj0WilSYxsMEDkrUoZxZM0BhMtG/qU6hbU6Dg5oynEACTskueXH9lDW8GQosFOuWh5e6A1FTuPE+Wpg+iPE62qJQ1lvz57wibr2kH1WSNRQKKSQFFFFIqq1ziNOwTGiAArUJUgVXBjSSYA3K4V1WNxVx8owAndSufEeabD5RuRyskik3W7fgLrzMYtDcPFCkWj5iMrjVX6nGVpva2ppky4nK5xcvRzHn76PDmyI3XRDtNOXFcdrvMPddcNDmAHZNZl0bHh4kK5M+iEQ0ADZXKGhFUQhEBX5pxspLEqBQSrQgBsE+qFwJJnZMKhiFIrR6lYeq0NdEv3c3IXQe1xA0mENVpcwt3nBVqxg6bcGralsS4YXCvgRcvDsZW+g42fUSwghjjsldbohtYPa0gHMp/Ln+Mct7QcgoaZY0+cSmtbJMcLNVGl2OeU6zDwyk6CBOVL1lINDYIPCQx5aP1BTK9YVKIDvnGxR9NzCqFvSJ/muLWHkIH2zNRFOpqEp9tOgzmUu7tyyo1zAWh3HqracZ/w/n0l2AV13dFZ+B/EMeTHBXMrUajCHOO69VYFjOjvc94c3TgLN6a55m48wy1DnbEtG5C1f4fScA5p33HKZYuBcZwHHC21NAiN52XHvuu/PMYB01hcG6iJ5C32/w6bhn8utDgYIKYBoh28Fes6HRbdUy+NOoDI7rnx8mtdcSPnt3aP6feut6pBcOQmsGAur8cW/4fqQqSDIyQuRauNSnIyQvRLry/Nxl9NDRmF2+k0Y87tgJXIptiJ3K7rHChYR+YjC4/L1+I6/0/x+9pNSsbm6MbNMBduyZDQFwul0iHFx5Mr0du0QF569f5b7dsmVtas1s0gZWkLEHT8K0xpABWgNYWSCdY3EYj3SBMz2TWjyTmTuvrV4cNpsY5pPPAVAEHaAgbMjBAPKeykXKtQ/Fc5gacgbImglox9VA1rTkiVZqtGAJPY7K1Nlo5zRp1EN5EwFLquKjtLdgsjnvd8xgDYKmyYhUn5WntdAxuj1bA4SmYxzurkyJGeydRoP0TWER/VJBmOPVMkA+qtDQ0jjJWhjyIzBWVpkAJjHQ7TPsnS6IrvDQQ6Su3Zt/w62F3c5uqg/ksPA/1ELF0W1ptt39SvhFtSMMaf+K/gD0UFar1G5dcVzvgAbAdgs9dZ6ak/B1EOr1C58veTk9yvqnwH8OsoUm3lwJrGNIiY7Lynwh0c3l21+gmk0jjcr7PZWjbai1rRmBjt6Lz9dY78zGilOkTk87rN1G+bbN0s81U7Dsm3FTwacNBLjgQCcrCzpz6pL6sDVkh2SuefmlzGNfd1zUuHnw25dH7JF/ruKktAZTbhrBsAtPV6ptqrbaiwuYBLiBElLsWur3FNuiQSJE8creh1uhWItqHiv8A8yoP/iOAttaqG+Vp23V3NYUgGg+Y7DsFyK90GhzQJcefVY+/bQryoIOd9lkoUS52lrZcdk+3t31jqgmNwurZMYG/5TmOG5cP2UXPdZ12VKLWVGtecuPLV0rx9Slaywan4BMx9VT6VKtcglztbOOFpcGuIDgCRkArKpbXa6QLmkkgSIRGlTIgsEdoTIUUGdtsxtTVHsnafUhU94aJOyzPv6LW6iTHsszqbjWdde2sCFa5/wDitCNnA+oWqncU6gEHJ2BWmTlFFFJFFFFJFFFFJFFFFJFICiikiikqg4HYqS0NQlrCRwESXcO00nH6KTnuque7zGR2V+ITjhJ/7KkkmG/dbjNLv7l9Ol5TBKx21xWqkjVnv2W6tb+KyDwslyRbtaynAncpRlWoXANBkDc91KLiMfZIol9RuoiG7A91qFMFgcDpPdBwwXFcRAIW2zrVnvAePL3SbevTosiq2Xd91rtaza7C9uCMR2CKRPuabaugnPKeuU7w61yHN8oG8LQK5q1wxmGt3KMTaohYdQk7Hb2RISLndUuvDb4VM+d257Baby4bb0S4/McAeq4Mmo8veZJySVvmb7Z6uBaQ2XO+UblcXqHUHvrHwzDW4Cb1e+BJo0jDRuVymN8Q6eSu0c7THXZOXZ9UIuGO9Chq2bx8pB9Fiq0KrMkFdJXK866VOo0PBJBC6tC4p1ANLvovHl7m4kgomXVSmcEhWjxx7UkxhQAY7heWt+tVWHz+YLpWvWaFQw92j3Qo7SucLNSuGVcscHDvKc2czlRHKiqR3VFwaMlSF+yhMDKEGdlTsbmAhCc4NEuMBUCIkIKzQaZnZCwHQNLt9lKOX12mAWVRu0pVUG7s2PwdIyF1eo0jUtHt0yYn6rj9FqhwqUH+sBP3Gepl1ybmWOlojuUh5JbJyV0+rWvhN1N2O65QzDTsn8M9TKhdhp2nBUrUwW6gcqNjWWn6JdVr25PyqqldPpjqbrcte3IGI7pD2vcxxdMtOEzpjWGm6HQT+63tpiraVIPmG8rNrpzHKqNdUpQ7jYrT0lpq0jQcecZQDWKLm6ZA3Q2gfb31JwHlOYXKV1sxqqWopPLPzDhZH1CytJJgcLRe3PiXzjsFjqgueSPlXOx03Y6lCu2rSIJxyF0+mdQq2lPTbueHTgbj7Lz1Bp+WIB5Xf6VaupVaZLdQOVxzxb+2L4mbXqhte5IcT+i5dk4Bpa0aV634mtfG6eXDBbleOsZ1lp7Lv8d8o4/NPXp1+ntFSs3VtK6d44Go1jNguRTd4OWmSuj02i+s41KmB69ln5J+T8F9e3T6fTgDC7Nsw4EQuYx4YIpiT34RGrVIy8j0C4+Nr0bI7ratNuC8CPVE67pbNeCeAF50xu7J9UhtWoXkNpDSOThX8YtfkhtZm2lPNZvhw0Z3ysYac8gblTV9CF9J46eK5nYBNbUPJMH7LM1pAk/RNZJHZIPbnJ2RAjVvKGmQI1Ax2RyO3sEahahsrac/0Si6SANuyYzDp39E/Yw1uPdMFQAbTKQCScblMDSPmETyojBzKNhkpQIkBG1w/wBlDDwR3XW6FYC/u/5jtFtTGqq/aB2HqVxcyAV7zpXRXVfh5raNQNqVAXOBwD9VvmbNV9TXC6t1A9SvaVC3b4dnR8tNgwANpK6lmG+LSt6bNTnEAce65XS7QitUZUIa5roIK7fTK1G2uqz6zwKmnTTPAHJlefrdduMx9p+C6NhQt6X4S5pucG6SyP6r1kgbmPdfnKjdOpVS6hdEScljoldS06x1SneW7a11VdSJkl1SRC5Xna35PveFF8np9eq/jXtF091ENwQZEptv1zqAJJq1C3hHgvJ9EvenW1y4urAhx3LTEo7Cxt7QE0ASTiSZK8jadWuHafGualInc5IW/wDGVt2dQLm9ySFjfw00X1WqKz5EvnvhHYWjagFS5qhsfl5WI3dUyTcAk8kBKfdXA+R2qOQAlSvVM0lrfBe1rO2DKaTjBBK8JcdZvKLiC0wNzpwkU/ie6DXCQIyQW5Vg19DkRJIHqo0tcZET+q8I34squpNwHTjICfT+IjP8ymwHuFYte1kE7iVZMLyA6sKjS6nRJHcEJtLqLXDzNqGdwMlWF6K8MUHEDK5VxSe2221NP5hkIQ+i9oNQXDWnlxCsmyHl8WpHbELneZuunPVkxynVSwatJc0HK7Vi/wAQUXtaTHYJYfYNGgvI9DC12xosaPCruazeIELprFdJRZhe286TVE/VU6/tmu0uqgH6oDUoswvrY7VmIzdUAJNVke6kcos4vbYmBVar/F0P/db91I9UTCSby3H/ABWpL7q3ef8A1ACk0PqxsEs15xCSKtvOLlp7KaqB/wDyAn0DfEBGlwwUYbS3Do+qzF1CP/UNUa+iNrlmUFqDqbT8/wBJReI04BBWLTR5uWfomMfSYZFemlF1XMe7ILfZRlNr3aWkjCqo+3GXXFMRuli/tqbpbVB4mCkLDm/JJRGyp1NDqgxOe6yvvLWdRqATzBRnqtuxoaa7IG2CpOm6jSqUvCAAaNgMQsD7Oo0EAkgbLP8A4zatdP4gAj/lKYeuWkSbgQRiGlWVauhaPdVHjAimDM910ZoUASIbIggLljr1lsbgn0DEq56909nFR59AArLVsPAALzSEEnAKfb0X0qJNRwa05cfRcV/xJTJIoWwB4LjJWap1OrXM3NTy9hsnKtevtbmncavCMhuJ4QXd7Rth53S7ho3XkR1x1swstobKwm4r3FQ1qr4nJJTONF6egr3JuKpfUMDgcALl9R6jpBp0T6ErnXF+SNNMwOSsrSXHuSuk5cr0PL3QMuK206YoU8/O7daOn2gpjXUy87DshvR55H1W2WQuIBPdJfUMEyjeZ4Waq6AtRmqJa7DmApFS3pOE5Z6pgkBKqElaxjbGWpYudmm8OH6rNUoVqe7SI5W8Og7wjbXeDjI7FV5U7c6nUuKUOpuePZdC26/c0CBWGto4K6dpQpXFMPe0MfxCX1Do7K1P+V/mfoud6947TnYfbfEVpVjxAWO/RdNlalc0wWPBB7FeG6h0urbtDmMe4jcjIXPpXVe2cNDntI4yEs3mx9QaNLYCCoeH5BXjLD4rr0obcND29+V2KfWrS/cwNfofyCjGXcIAYYEiENu4BuAd8oqbmOaNDw4AcJDKhpVywiWnIKG42VI0GdoXlKhNt1PV+XUvVEa2niV5fr9s6m5tQbTBKeftnr6dq/pMubUACZEjC8hcUvCruacZwvY9CrCvYtEyWiCuD8Q2pbdlzRg5TL7xmzy51xqjYfHKoVMERPBQVQ9jocY7IQ45kQulmuUrVbOLDtgrr2tVrHQ/ZwhcSzcHAt54Wqm803icwvN8kyvV8eWNNR+ms5v5Ui7qPYadQEFoKO4ggP77+ixPa59JzXfKMhYn7daeXtrVy5uJQOcW1NMJFm9rY7jBC2hgdU1gY7rPV9tczY7vSLXxaHmAceDyut0oVGPcyo2Wt2K5VnceA1jqYzyF6KzqCrTD4g8rh01PSdRpirZ1G+hXibW2NOq9wEmdl7PqF0yjScDlxEALi21DUC5wiTMLfx7B1NmE2tqC7U4aj2XSptAgduAo0NaIiAio6nPIA1HiF0s37E9fR7IAQucPp+izX1wLNp8Uw7hq4VW+r3lTQwljDwEeK12q9+ym7RT/AJj+wQsp3NyZqu0MP5W7oOnWjaDAYl53JWu5rtoUi9x9lm1qPyFkDKtgBOTBULi7LpcTuowdsxuva8xoxjeNo2TGk7c90sGDEQmMx7cFKwxruETonB+yAE7cfqoTnCFYYCI2n0RhxBABgpdMSDJghNp03QXhupo3KQvUdUn7oy4uOfsk6zn9CmNzkR6qGGNGd8prIBk57hKLyDxHoicS0NO85gKawZd5iV6DpHWbxtLwKNUhjRELzYIJyPorY4gy0lvqDCZbPoWSu9cNrm4NWmS5zsmeUQNzU/4D57tIK4jKrx+d/tKc26rt+Wq8D3XOzWpcdWn49Gq17adVj+JYY+6dd3FWq/VVbUkYnSf7Lls6hdtEC4qeglPb1a+AH/1NSR3Mo8afKNVCsA7D3tJ33C6dK7ewD+dUDeMlchnWr8f/AJB25A/sm0+tX0ZrCOPKD/RXhVOpr11HrT/Aaw21sdIw+XA++6g61Vbs4D01n+68zS63fGJewgb+Qf2Tm9aupz4RH/8AjH9ln+Onyj0rOvVYw/P/AFlPpfEFwB/mkf8A7ryzOtXESads71NMJ1PrTi3U6hak9vDH7K/jq8o9KOu1zIdUeR/1AptXqjDSaWAlw3JIJXlh1oGJtLafRkJg6s072lH6SE+FXlHoXdS1mXNPYbJ9LqwaAND574K82OrUebOn9CQjb1Oh/wD0o/8AmUeFXlHraXXdMatbj3gLRT+ICD874/6QvHDqVsdrd4//AHKNt/bH/h1QP+pH8dPnHsm/EDSINV5HYtlOHXqThBef/ivGMvrTnxh9QUwXtmTh9YH1hH8a83sB1a2qvLn1DJ3GmJWun1m2pt0h0D1BXiBeWhGKlWf+kIhdW3Nep/8AFXgvJ7dvWrQOnxGA7iWlaR1i0reWrXpAf9BJXgxcWp//ACD/APFMbXt5AFz92lPgvJ7U3lg3zMuGFw2BBEqDqlEiA+mB9V49ta3I/wDVM/8AiUYqUOLpn2KPE+T1v46hGKtP6kohe0o/zaf3K8m19KcXVMpmtkf+opK8Rr1LLuiRmrT+hKjrqkT5atOPcrzA0bivS+6Maf8A3qZ+qvFa9NTr0onxaZd2nCsXTBP8yln/AJl5oAcVKZ9ioGmMOZ91eJ16YXTRuaJ9dSv8U2cmlA28y8yWE7R91PDd2Ri16J1/TZOoUzPYylO6oyYDQQvPPY8flKrTVH5TC14wbXo/8Qpub8jBPJKqlXYX5fTLe0rzpL45VDUOCjxh8q9Q+rRc2NVOf+pZK7Wv/wAt1IRyXLhyiAn/AMq8YfKukbN7jJrUf/krNoQNJr0o/wCpc4ROf3Ru8Fok5lOBsFrTGXXNL/5JVQW1P/jB57NCVRZTrSKVMuPfhSpaubOpob9QoULrhoaRTB9ys5rPLsnCU94a4tGfZL8ztmn6rpIzWsVg0yRJ4nZVUun1ME47DZIbRe85GfRb7Xp7nEF3lH6pxm0qg1z3QGknhduwtBS8z8u/ZDSosoRoHueU8El4IMt5WsZ1rJMQMLJcUYEzJ5T9QGScKagRwha5VWm5m4gLKWh5XUuwarw1v1KzvtdLC4kMAytC+2FzSyS7ZZKhk9gn13gugGQkOM4XSRx6oNyrGMD7qaVssLY1Hh2guaOE30J7dXpNQU7fS5onu4LZRJqElogKqTdTNL2gDsntaGiBgLydc+9eyd+sBUaxrPM0QsVx0qzu2S+kM8jBXQeA4Q4YVwAABsrFryN98JCS60qEdg7IXnr7ot/Zkl1IuaPzMyvqIhU5oIyJ9E+VHp8lodXvbF8MqPEbhy9D0z4wpEtbet83+oL03UOiWV4CKtBhPJGCvF9U+FqQqubaVS1w2a/b7rWyi8vYW3Xra6qMbbuDmncp3Vrf8RbPaORIXyy66d1PpbtZZUa0ZD2TC29N+L722IZcHxGbGd0fn0ss+3svhm48K4fRcY7BdrqdqK9IumCBheS6f1Lp17Wa+nXFG4mSDgEr2NC5bWp6CQZESCq3WeZjwt80NrAnjcLO8Goew4Xe63Yhoe9rRqBmVwNZiXCQN1uX059zKqhLSWn6Le2H0wRuN0ujorMwAHRCO5pPtNJOzly+Wa6fC0Pa6paF3ZZ6Z8RunlDSru8B7Qd90mi/SZndcsd9W23NKuWzvldKiS1sHY8rBXkPY8GQU+g6o+oGEGCs9e2p6dag6XN0t1Dsu0y6NOiGtbDiudTFKzttW7z9VdC+DRrfEdiiQ62Npvqu1EF7z+i32/TbmsBDNI7lZLDr9rQc5z6R9IymV/jMBum1tHudwTgLX0HYodCAzVqEnsNkd3UsumBjn1GsI35leTuOt9Xvhp1Cg08N3WelZPqP13VR9QnlxR7J/Waw6tfl9FpFLae6Za2jKAEDzd1op02UmDSIHoq1SUWobqgpsLnGAF52+uql5VLabXvbwAu+60/FQ1xOjkd10bTp1Ok0BlMNCzrpzZH42a4gEAAztPCYwHJ/QJYRtGYXueQ8AHIHt7qGRuqYcTsUJGUg0ExPKkHndLEBNpjcnso0cjY4PKNrn6TpcQ08SlETtk8opJhvA7IZ+0G+/wBSmAiYH3QYG0ogCRIGEk3GnfKa7wTRBD3+LO2IhZ2Scko2zt+iCMEbqgTGJhVtiITAMZ+iQOkwvMAwd0TWhAHZxhODWATqk9ihKnH6SjY0nbYIabgDBH1T6tvVZb07h1Mso1CQ13fur6QRIx2TNZODiOAktPIKIOSmuQGCBvxKgfjbGxSdcCIzyVbHT791BoY7y7pmobhZw4HGJRB3bZSaWPM4xCMP/RZdZmAUTXE/2Umtr2mJMeqLX6rGHI9ZiD9EstjHnujbU47rGxxA/dFq2gq1Y2B+c7lMY7IE5WEPR+IVLG8VSMAyr8QzusIf2RB5UW9tRH4pCxtcSMbFWHHIUG5tY7IhVPdYg4jBRGp9lYm9tY91fjH/AGWEVPurDlSDW9tZx5RisZ3ysDamIRh/qnxTcKx7mUwVnf6isVOppOcohUkynxWtorvx5j9Cm/iXgSHn2lc/WDz7Kw5WRnXRbd1T/wAR8+6YL2qPzmOy5oeUYf3yrxh8nSF7U5eUxt5V/wBS5YemNeDuVeEXk6P42qNyCiF688ArnBw5KY2C2VeEXlW4Xbv9IUF0f9AWIHmdkQcFeEXnW9t48fK0AeihunuyQCsesxAwE2kPEcGhXhB51soA1STsB2C10qDDkgn3Q0WhjQ0cJrXBGRrT6bWs+UAJzXFZQ8TumB6cWtLXY7oS4zIwUrxFYqeuysR2t0QRKF1YU2nyk+iRVqkNmYWd12WZ39E4zuNjKwY11R58x2C51zdPqkiYb2SK1Z1UyceiUDJjJW5y5Xu/gRPfdQZTqVu+psIHcrZb0GUz/MaSR9Qq2CS0i2tH13AkaW9yu1Ray3YGMEJVOozZpHsjBBIcQuXXt25kh1OoJzjsCjcXlwh2EoEYxlEHiYBWca08nHdWfTdJJJGDBRNcQIOfVGHTgFYKVqJ5VwS6Z9ws2HTeCV5vqzXm516THBXo5SqlFj/nEo+m5WewaKtmPHaCB3C5vU/hfpnUQ5wpBjz+angruii0UiwYbCG3otoAtkknus6Y+Z9T+CLqgXOsX+I0ZjY/dcin1HqvRKmmt4jWg5bU2+i+wU6rvFfqbDBskX1pbdQoubWtw9u2QEa3m+nh+n/GVtetFG88hODJ4910anShcUHVenVBWYRMCJC4/W/gm0LKla3e+2IO0SPsvP2w670J/i2bzXojJNM6hHstS/py65mvXdGokXnh1wabhg6sLtfEVs6laU34c0bEZXnuj/Hljejwes0Ayqca4jPqu6Lxl1ZVqVJ/iUIljgZWOrd104nM/trgAncbFC0R/VACWhzTuCjpgvIZHmOymZ9mF5qOaym2SCttW+pWFIY11zgDsqpUTQZIw6MlcvqDxWrsGkaxv6rGeTrPUei6dWfVoa62S7MFS5pCpUBGB6IbXy0GDsMhbaTBIKWZQUbdgbMALRTosJERjgIHsc520DutNBzKTYcZPohoLHAOLQMhaazDUpNaMTus5fTaS4Dfuh/EOccZj7I0tTyGtDQZjdMtaRrPjgbrEwue6OStzazbenBcG9ys046jdFFuN1Rujs0LzlfrTGEik01D6ZSm9ZuXHFuQPYrLpPj6flsAA4yVBvJMeicKNZrY0H7KFrxgsI+i+g8UpYGyZpwTzwoxhnzCI5VgmMAqF9BaM43TNOiJ37KhjzHdEZcZMk91LVsGC44HBRYIkY9UIaQM7cBWAMKUW3HKY10blBHYyjbHIk8KWrGco2OIzx6oZ/3hQxsNuylo9UZGe0otRPv2SxtvgowYiNlLTBgyrbBzx2QtEmDsmfKfZCXyOy7fULu7uOm2ra4Hg0hDWBoAI7lcSOZxuFNbnAAuJHAKsO+jQ4l5dAE8DZXifVLkhsxhQHO/1SNOJxMyra6UkTKMGCVLTg7sia87bpYcFYMZUjg7CtpJMYHqlBwnG6vVnulWmyZRTz+qUHZRBygaHHlGHeuAktPJRSN1WI7VlWHJYJMIgMSpG6+36JlKoGnOSkEAZP6KwRwEyCtGs7yjFaN1mDSRqgog09pWpyNafGJ2V6ykhp3hEGmZWpyx5HNcd0bXSPZKa07pjARlPivI0EI2u+wSgCZMIgD91eIvRweUQd9EkSjB9Mp8WfI4O4RA7CUsTuUQOVeK8j2wB3JRxiQkCSmyIVh01sRJKsEpU5wjadgrBpoI+qNrsb4SeUbCcdgrEeHAJrYHqUhsHY5VgkFS04nO30WywBL52Cy29F1V3ZvddSk0MbDeFm+jzDttsq2nMoQVYPZYbM1IgUkk8ItX3SjHOESSs1S8iQz7rLdVyX6QcBIknP3WpGOumh9Z7t3ISSRJSWkk+i129Euhztlpj7DTY55gZW+2tww6nZPCJrQ0AAQmA9lm1qc4a08Ip7/ZKDlYdystaNzGvyd+4Ql1SkPL52+qKY9kWoRnZQ0VG4bUEbOG4TRGqScrnOYTXDqTT6k7LoMaTBIz3VZFD2lEHIAx3ZMbTd2XP037WiY4bDhTQQJIWerd0aBh+CUbG5K1ajqiMd0xpBWS1vKVcnQZI4T9VVxinSn3K5ddyfbpz8dv0bJHCGQ52+EFSlf6TppME8yuXWfXoP01CWvOwXLzl+nafHZ7rqVHDWG/lG6j/Fc2KXkGwJXJqXFy3Oog+yUbmu/PivR5mcV0ru0BYDUeXk4IOxC8P1u1PSuoa7dxax3mAB29F6Jz6pILqhMLkfE1B1Wi2oHEx3W/j7zrGfk43kNXpHSOvdLNxc27BcNEOew6XH1leXd0HqPTneL0O+1sz/JqGCR2B2W7pdy6k80yTpdgiVvcI7xwFvuZXP4r5c+3CodaDnm36tQqWl1MSRAK9V0ltB1LUx2tx3K5d1Sp3FIMrsZUaeHiY9itXR7N9qNVAxR/0POfoVz6+nTmN3U3eDRL4wvN1KwrXDHUzscr11ZjatIh4lvIK8/bWQqXtZ1NoDW9tlcemu7rsUakMbPZa6FdrRk5XJp1QPKTDhghNpl7nQ1hKqxHW/EsjJJUFYn5Qs1O1qviRpWmnbMYf5tSP0Cy1JaIGT5zPoFppMJEu8jVgveqWHTrd1SpUYGt3JMr5v8AEnx9c3TnU7A+FS21clWNY+q3V9QoNLKdWmx/Ac4ArHQtfxtXVcXGpu4Y0wCvgta/r13aqlV7nE5LiSvR/CfxDcWF3TY+q91u8gFrjIB4IRebinefT7nRo0qLQ2nTAHsntcZ2H2XPs7sVrdj43GVqp1gSsNba/NbCz39E0UxU2bJPdaddGqRqYwHumeCyPKcei9seRmFFrQRpGd8BLdb0nTNMSVsLY5mOClFs+hSGYWNJ7gIj2RnpbAZafuFpoghy0nICTLjns6Yxxy0R3lPZ0WiRJP2WxpnCax3Cob3v4Yf8Dof6sqj0OlktK6jZ5GETZHzD2TtY1xXdEHGfRJPRy1xBacL0tOCRGVcODnEb9k6nln9NIEHACV+Dpj/jMB7FelrXYpA+PRLRsCRgrz/UrylWJFOmxo7jdXO1m3GY0WsMawfUJrWsj5hPJWInjZGCd5wt+I8mvwmH84hW2hTn5sLM1wB7hMdVEeUQVeK8mgUKfBP6InWrCJkn7LIHECZRtqkcp8T5NAtgDgPRfhff6pdOuZiZHqntrx80qxattmTkH6IhZPHKY1zo1N27p9KuH4dg90eK1j/CPAhX+FJjI+66QcD7d0LqLXfLgpxbWAWrpiR6ZTBZ1PQprqL2nCge5hT4jQfgqgjyyqdQewwQAVoFwS3H3TrKhWvK4pW7NdR23/lXjJ9jyt+mKnQfUIAMk4gBd61+FbupT8Wu5lClEk1DB+y71na2PQGtfXcLi9IktEQw+i5PWut1Ll5L3TGzBsAsbbf7Z6a9c/ah0fptv/6m91kbim3H3TmjoNIfJWqEd8LzL70OfNQ5/RZ6lyCZL5WrzjO69h+N6G2Q20J9yr/xPo42sfrK8Qbo/lwgNw8/m+iC92zqHSCc20LVTuuhPHmplhXzwVjPzFEK7p+b6K04+itHQqg8r4PqnMs+jVPlrMHuV85ZdPHKfTvDyrb+1kfRR0npzvlrM+6L/AbV3yvB9ivAMvAcaiPqntu6wzTrPHpKtv7GT9Pbn4do8EoHfDreHkLyDOrXlM/57x9StNP4ivmxFc/VO9D+39PQVOg6ASasepCQelsH/wCQxcw/EV44Q+pqad0l/VKlQZgHuFqW/lm47A6aAcV2Hsmf4c/ipTK4Yvn7ko2X5Bk5Hun7Zdf/AA+oMamE+6sdNrcEfdc5vUoGQfeVB1L/AE6591F0x06v2CNthXA+ULlDqdQH5zPumDq9YbPKtqdD8DVkJtK2DHfzATHZc/8Axe4j5ghHWK3MFHtenoKbmgBoEJwHbZecHV6sbMlabfrFbeGkLONSu3B7IoM4XLHWan/tsVHrVUyNDAUF1QDyFcEg4grjnq9U4gNQ/wCJ13fmj2UpGyta1dRIzKV4NU4DVkdfVnEgVCPdLZc1HOJLzPotSs3l0RTqMyWpzbs08O2XJ8aqSfOYSa7nATMq3Wby9A2/pxmB9UQ6hSH+y8r4pnfKIVCeU4Nr1rb6k7DXLaypQ0BzqoE8LxlCtpeJ2W1rg5ZsalemNzZt3qylu6nZMkiXLztQsYJIxykurUC0gDKJyb3j0x69as2pkpZ+I2TFOiPQleSc/PpwrDwZzCf44z/JXpqvxNWaYbSYPVIHX7uqY1Bg9Fw8PZHI5V0gGuBnKLxzFOuq7L+t3bBp8SZ5K59a8q1n6nuM8lZqzgXbpDnHk4ROY1eq6dlfVaLzDyD3C2f41dMPlrFcBjtJkH3TnuDvMDkrn1xN+nXnuyeq9Fb/ABFcsEPdrB7om9QF3WDqj9DhtK8wXFuPsibWI5XO/HPw6T5b+XvKF9SezRVLHceb+6ebOhVGqk7Q/twV4ahckYJMHhdbpnUn2zw1x10nbzwuHXxZ9PRz8mutcWz6PzDHB4WC9peLa1GbyML0FKoK9uWjzscJHcLk1WgOI7LlLZXWyWPnwJpXWl27XZXcLgWgjMjCxfENuaV3rAw7K7XQbAXVFtSqdNFuSTyvX8nUvM6eP4+bz3eTOmWLH/z7ry0Wic8rD1W/F1X0W40Um4EcqviDq4rP/B2eKLcEjlcpkNZC4zm33XfrqSeMdqz6iHMNJ5DngYk7q+k1BS8U1GkanHHK8d1a6/D1A6m+HjcBdzoPVRf0NFRw8doz/wAw7rpZjlr0grUAcU5KMXJA8rQOy57XZTmO7rFLS6vVdu6F5X4n6kywLqtzXOflZOSVt+Iuu0uk2T6hLDVA8re5Xxnq/Va/U7x1a4dJJwOAnHTm3n26HVurVuoVS57iGDZoOFzi6SY4SA7y5VTgmU/TNtp7DOe/K2WroIIMEGVz6Zhard2RnCWX6A+Ar5tforBVbrIjPK9dbutnOE0+V8x/h1cFnTdJPODwveWd0GvDnRAXm69OnL8pW93XonDiW9jsuna9VGqKktPfhcqrRNGrDhjtIKXJky3HC+l9vJr1TLwPIIcHApoeCZJ3XkqbnNy1xC10r6szd0jgFHj+lr1bGgZ+5R6hMTnsvPUOpgfOCJ5C3Ur5j8h4Lh3RlGunUcGwQUipfCmMnPoubeXxy1uSeVznVScbk8pkWu6erHjM+qtnVzIkGeMrzslxM7eiHU4HIPuteEG17Kj1Zjt3Z9VtoXzH1PM4AxuNl4RlV45wtFK6ex25B7ovK8nt+otFW0cJGnvuvE1QG1HAHY4IXQZ1F5oObqiR9CuWSC4yfcrfEsZ6/wALLpjMhQOwqMD5XSexwoB9StemfoxpHKsO1bbJeQrB+4WgZqO04TAZSRJP12RlxbjZSOBGJOU3WIgFY9Xqm034wpN1CuWscwjCJtUcGFkc7IP6Ig4O2+yDreys5pwZC0suR+f9FyQSPT0TqdQzDiAO6qZXVbWY7GpJuHajDSCPRc81S15AII7rrdV69f8AVaduy9q03soM0Uwym2nA9YCver7jJRaXuDR9l6Gz6kbK28G0aGOcIc8bn6rgUnBre07lMqViGlrcN5KbJftnyz6arzqBzpMnklcivc7kndIrVolYn1s5+irc+lPftqfVMSUp1UrN4h5KrxJWK3h4q59EYfxPussjuq1LGtRtDxtKIPCxB3qia71ygtofsmMqd1zw7PqmtqGJTqb21AmNqkHBysAqRhMa/wD8qlWOi2u78wkIvEadsHssDaiMO5CdGN7XDui1kc54WJryBCY2oVrR4tQqnafdMbUEbrI10mEQP6J1eLUKhTKVYNdJ2WA1CFYqE84VrOOg6rqcXDZMY71WBtQwe3KexwIlFpxr1HOfdU145WcOP+pVqxlUqrWH5Wu3qGB2XLa9am1yGAN3VVI6TXbz9EWoHPK5bbh4OThONV3GxQW7VjdXIhYvFduVZrEN7FSatQIjVCGk4yTPKztqamyd1VJxzBUnRpVodDhIKRdvLTB2VUaukyclLvazSJ3JVBfZQfhMa8rGHGJ4Rtfwujk2B5laaVzpWK2DalUBxwtv4RsS1xRaZLfoFW5Lz/RKLj3TDYu3DkJtarRuDCtgvNBqznhWXjjCDwaxMxIHZR9OqMBhVsZymNqw4ZwlV6jhUhpwqFGsfyELQ+3LWsc8Z5VbDJay0XuNbJK1VXADJ33VaWAyBBKTXMrFu1qTIjqkH0CbSqTusTHHVAyicY2weyrNM6dIQ9sSlPaWOSKVYDyh0+q06g8Q5crLK6yyra4R6rbZvGpoO05XMJLTvjhabd/mGYhZ6mxrnrK950qqGU2sJjsp1GmGVtQOHZWXpobWtWPYZIEH0XRdFWgWVYD25BPIXhvqvfzfTzPWbZlemzVjSc+ywdV6tptW2dn5WgQSOVPiO/Yx/hUnSRglefpyHFz/AJiu/POz249dZT6LQ0ScuO5SrysKVNxHAUe/HouP1asXN0gwFuTWHJu7hz6riczyUXTLp9tdsqsMaTKQWy70TBSAcNJkd1u/TH5fRenXwumA0/MSJhB1bqosqBJw/gFeTodWb0uk1zakOGx5BXn/AIg6/Vv6r3Tl2y4115jL8R9VqdQuTqdLWlcQHMDKjgTMnzFMpsjfdMIhtKHEgg+6sjEBC3LtP6oVaGnGcFOouiMJGQPVOojYd04K+jfCnUH2VlThocHbhe06R1B99cNaG6WDJXlvh6yD+igloLgJBXsfhGwBpa3SCTgrh3Y6cTJr8z+IScrQ2qPALCBO4PKxay7jhW1xaAYIB7r6Nnp4taQ7EKatifoEsPBA9f0Rkah7KiNLpDQCrbI2wUAlsTglMAJyN+y0F6z3+iMO5SDk+ybTI3fgKRjJOQEWeR9FZMs0jbghMtmlrDJl6mSIE4x3Uc6T6JlUA5Ag8pHPvymUHUiTjjsreCx0bqqGgHU4/RSo8OfI+idVW0g/VGDHoUsEq5KQZkwnAACHCCkNciBkxyrUJhAfOyF7iXkyhe4IScyMykU1rvsmuaGNBBMnhLDmeGQT5lNUgZmNgrUaHECJ9kylUDN2gnus4JO2ZRkQRwpZrUKxJJj2CZQHiVA12BufZYwYn14TmOLWkN3PKS6t8+0Fu1tNv84QCQsVOJHICANaxsvy47KUXnUAOTlE+lXSp0ZbqeYMYCz3dQNp6Wu9SVdzW0Uw0Yc5cm7qF7iAZAVqpdapqO+EnXyhOcThL1ZxtsqqGlxmRgohkeqUHZRBy51uLJgqTlUYKGRss1owFWHFLDo9lJjZBODvuiDjOUgHKMOj17FWhoa4bzlGHwVmDuO6Y0gg9/VRaW1O+6YHnhYw5GHkK1NrXd0wPM+iyB4KMOynU1sqkItZPKyhx4RNeE6GkPjB+6IObwkMdOCiOE6sPa4/RMbULfVZNRwiDjOUpuFbtuoHnCyBxxlHrIMzlQsaQ9PY8ad8rE0zuUQfpMTITqxsLj3Tm19LchYmPB5yiDiOdlJsNxIwMhAaxd/VI8Qzlu+8IgW4O3urRY2B404UpOgEzKy6j7oadSAUJs8YgHP1SalaQlteHiDgpVZxafRMZpwqIm1CsmoFEx3mhaZx0rR/89pK7DHjZecpVQx4J4O66VO5DgIdKzTy6oqDui1AiCueytIhNbUwsNWtbSAj1BZA/wBcdkQeoNQdCp4D2lpzKQHSEQOcKTn3LCx8Tss73HYrqXLRUYT+YbLlvwYdumCwouI2MFLkiXSicOQlucDgjK1Kxgg/lpg8rRRrnYnCxFp45RNBxjKrIebY6jHse2CYPCISwg7juueHERI9itNGvpGl2Wlc7zY6eUr0PReom3rAOd/LO63fEHWGCkGWz5JG/IXly/SNQy3hShTN0/zYYNyuHfxzfJ6Pj7smMlNj7m4NV5JE4T6zC0REdloOijUDBhvC0Vmtqsjnus7+mscOvUhhBXHu3aiYn6rq3zCHFu5XPdTOoGJjMLSxgLDGAiYwGmXE+eYAC31Wiq0ECOMLNWP4Og59QQ3j1KL1hnLz3W6b21Gl7wQeOy5JlzsfRa7ys6vUc9+5P6LM0HWsNUJAn15RxAwjDROrhESAAIwjUQ/GFdFuZUeZJkIqO87eiUdpBC2WlEVCyO4Sbdut8DM7BdXp9Ei5psggg5B4Sy+l9GDafS6VMHzEAQvofQ7YULOm0jMSvAfCts64uqYIlrYJX06mBTpie2F5r9u3P0/FsEFG6q8U/D1eQGYK0GmO2El1PO2y+nK8JQOJPKcXxET6qi0QYaJVaZGMBKNbUmNQ9k5jw3blZRMidgnahGlox3QhDDjJ9kcEs8ozyEsSSO6Yx5AglOg+jTIbnY8I3N0iM+4SRW0QNyd0ZOqC2RG6kICAYdKUZkY3wmPJDRJlIc+MbpgpuwMhDziIQB4ULh+XdagpzTxCMkx+yztd9kwOP0UKcHEDbCskR2KW0kqnSQpVZcPf0UY4jM7pUmVbST7JZrS0ggDlUD2SQcowT2kqTRTyCTgItUndJDiAjZJ4KSbJBlPpjTkbhJpsJMu+yY5waEbpxppVBUqNZVIawmC7sFpZbh9eobZs06YyZkR3XOZlvotNNxZScWmCcIpBc1CXOdOBgLm1XZnZablxDGt77rBXcDhMACYyeVTQSQB8xwELiCYUBIM9lUw57H0yW1Gljh3EKpHdA6q6p8zifU5VAys1o2VThyPqh1BE3PKylA/ZTUOUMwVUz7owj1I9SROEYKDpwIj1V6p90oFEHDlCw7UPpyrDkoFECAknNcU1r1lDhui1GVKtbXJrH/dY2P5OyYHqDdRcC1xMCFQfJnjhZQ4EbpgkCeEr6atQU1d1nD+QiDpyrVWgOEbqw4QkaiMcd1QduOyZRWjVmOFYcs8mFYdla1NIfGE1tY91ja7kqw6ThWpvFUHlWXAkErD4h2PCNtbCk3F5a3U3ZU2u04cIWYVQRuhcQdlMthEiWmeyW+o4iHDIWdrnNEtO6J9UuZBGUjB6jCIO29Vna4R69lbXCN8plFmNQdPKttUg4OVnDkTg4DV+XullvpXjhvkBbKV40+i4zHgHuFoo1GUageBrby0osGu22sHRBlOD/XdMsb7ol0xrKtE29X/UDiU666VUY3xbV4r0TtG65b+3Xx/TO2oidWDW6icLIXlrtLgWuHBQVqktA7rU9sX0eKprPy6ArubPWzVTfLxwVgc8tMBNp3BEdxwt3lidMznOY4teIKuA4ArpAUrkfzG+buEh9pofAPss416rKweaJ909jQBMIalB7TJafdEx3Cza1It1MHPKDSWnITg79Fmuq4a2B8x2Rqs1VWo57vDpZjddNlRlG2Yxphx3lc3p1wKAqawHSJMrHbXRuLtwOBOFy7mu/Hp1Op6jR1NmR2WWzv7moG0y0AzE8wuqwteAw5PIQ/hWB0tbpK57np1zS3UhVqQdxuhf04OOPqulZUwXGclbvCaAseTUjzg6aGOAGxXYZY2lW3/DXVOnUY7YOE5QX1NzqZNL5uEtjaz7cPa6SIkHuufVdZHneu/AeoPrdGqeYCTQqGf/AIu/uvCXNtWtazqdxTfTqsJa5rxBBX2alVq0ntqNOpnM7hV1rpNj1+2fTuW+FdBs06wGR6HuFTv8U3jXxZgJETuo5hgkbgYXS6p0y46Zcvt7lkPbsRs4cELmvcWmBsum65WYRqJBBH2TKYwgdE45TqfAKRYfQblev+DbA3/UQHS4NGSV5O3ZLoX1r+GHTT+GqXDm/MYCz16ike4+HOm0rNpc1uXcruuY522yVb0xTAHpK0NcZ3+i4Or8fOpDflCaY52K06SOUJkDK+jrxMxpiNvolPZiVsgqaQfm5WtTG5g0gtzjKCSJ7LcaIjCA0QR+6mayNdyjBIKY62IGMjuhNBwGEo2mWPEP3HKaDoMzj9Fm8KoOExrHznbkqS3uLiSEvSTvstDaY7fQo2sxkJlTLokwrLYGy1hoj+qzVxHP0TKyASfbsiJAiCgaRxkotRB2WwY0nEYVlxAyhDiG8GVW/MlCWHjYDfEqAnYY4V06TifRaGURzkq1YUAeEynTdvynsawbD2ViZgI0+KBrQExsASEskAwdleoDY47KlWGzA7JRcXPk7DYIX1SB5Sl6id0wVrDoaITazj4TGCASsodqqNA2wE6rmrPDQkM9dx1k8DCw1Hanp9VxIJnlYy478KkSyQTKouk+iqcRwoJiRlOFYdjCLVhBsoM/1QTA7CIOSieyIHss2GU4OIaYAMhK990YIDfNyluwVjCIR/uVZkOhLmIRB5GyDgwe+UQd6JQKIOH1QYaDMIgTCUDB3RBxiChYZq4V6v8AdLnlQE8pRwcjDkkEogUo4OM4TRVOnSThZgSi1KTQ1yYHAcrKHesog4Dn6KTRrlWHfRI1I2vEgkT3Vopwd5lZclOcCZAhU1xndMB2rPsia7kGCFn1Cc59VQdvG6dTSTie6ges2oxumNEsLp2SjhUI/ujbVHssocMg/RBrIP8AdLP06TXkwJTrphZRBIiVy2VIODlNfcuqCHOJjaVIerCtrlmDirFQjKWW1rpG+y0UKxDYOWrnsfPutNI62kdkprFNr/Mw6TyEmq54hrsQlguY5PZVbUGl4xtPKoKW1/C6PT+q3Vm8GlUfp5aTg/Rc2rRLPMMt4KV4h1b5TkrPuPa0utWd+Ws6hRDHf62rPf0aTKoNtV10jkFeVD5910bCqQ0iZAWfDPcPnvqu0bUaQ4uGdkipRLctMpFd1Tw2vk6VdtcZAJn3WoxYJlZ1N0laRcF7myk3VLAdwUugDrBT6ojtMcHNEwQkXFqHealg9lbCB7ow/Tklca6yuXXeaQOvBXP01Kjy84aNlqvnG6udAMAblDVaGANb8rRujW+ZhLZcHegWOydpvc4C6AYBRe4blZPA0sNQE6pwsV0n06VGo/8AGS0z3HC7rHB50j5gMheasHlsvduF2OjONaq5x5OFx6jrzXatWAGeVprNJaQ2NUK2UmtZqJghZnipUfInT3XDq47cwdG3YKR8R4DjuEVOlRpsLHO+oCYy2JAJKYaNItmdtwSuXk6YWyjRqUiwO+pCXcN/DupvEFoMYWulSpO+U/Yoq9rqpbyOAseXv23jzfxL0lnVrBwA03DJNN3PsvkNemadV7XDS5pIIO/ZferiNLGuaWuEZ4Xzj+I3SRRumXtFv8urh0DAcu/x9OfXOx4aCXd09gz+6BmcpzQuzjW2xpl9RjRuSAF+g/g+xFn0i3bEENBPuvjPwRYfjes2zIloOo+y++0milQa0CDEBc+61y0UHanuPGwUr12UmlxMQkl4pU/3XGvbk1qmkHy8rGNvzeTjZACA7IMdkxwg5QFonBXteOxTiePoqJAH6qFvbjZC5xaJIkcrSwRcIyQFGuDvlIPcSk0qfi+arnsOAEzQz/SFAcyB3VSOyDw25iR7Kix42dPeQmCnSIA2PdVgpJLwPM2fUKB49ko+ZwiEAJLTneUyTsdioEVqh2bj1WUknc7rRWZHsUhzVvlmoJBkKw7JJ3QAkYP2Vjf+q1qGHGPZMDgkg8K50tKg3U3y0QmCfryuex5a7dbKdSWzzysWNQ6QETCJEmB3SQ7uE+rTDKTXzvsFENUhroGfUJZcfZURieCgmTG61GdWSFASZKkEfMIQkmTCZWWi1JNYT9VquDpY4xkrJZGamey13LWfhXO8SHz8kbj3Vb7M+nKrOGn15WecI67tkucYWgqY3+yI4YCPulucTB44TDmnnhTX4Mps8RuoRq7JbgWu0njdACdP9FbZP9lCC2RBwj1QyTgIQSsk0u5OVZyEsORtPJWbGoGVckjCjxyqjmVimCafRXIAHdC0gq5wgwwOVgwlAn6IpCK1DAVepLBRAq0G6pHsqlAHEKapjMBSOGWyVYnvISy6NjICsGeU6MNDkQcf7JQIRucSlDDuFerO6TqB9lervkKDQ13ByjOFl1RMYTA6VIyd1CcIQfsFRdM8DhWgWrCgeYIB34QlxiNwhJnK1qM1KBwByfdKlQujbZIpmrsrD5SS6Sq1JZaNaJrpPqswci1JWNTXQYT6NQtdIOeVgD+yax8EKEddjg8dillpa6Qs9OpgEHdamODh+ytX2bSrkeV23Kla3D266W/IWd4LSTwrt7kswcD1TGaXBaYOCF0OnuwVZYys3Ig9wroUTS2MhO6z4utZ1wWaHQfQq6lqzVrp4PZc14IOppgp1O4qxDisZ79Na1VazjT0AZClu6OcrF+MbSqgu82crv8A4Old2nj2ThrAlzAm3PsSbchDH4ylXVcxpByUh9Q0pa/DhwVz69YknOSs36anPs6i4OuYHK13DQynHZcmhVFOs13Yrf4xrF5x9Fzx0W6BbCRuoYNAN5O0pdySKYZOd4RR4dGk5+5OAs2NqFvVb5NJn07L0XQaPh08jK4B6uaN3qawO04gr0NjfUqti+4c3Q8bjhc+/p05+3Qu7ptNukmByuZV6yymC1vmheevr99eo4z5ZwsZeXGB9l5uptemenqbbrep+mp8voV1aT6dem5zHSCNuy8XbW1d7g4MIb3OAvS9Ob+Hp+Y5O659ZG+a6lnSFBhc8+qx1+rkVyyk+GjBXP6t1J+g06R33K4lJzg6TKued903rHube7bdU20zh4OD3XM+J6H47pVzbeH5w3UPcLJ0yqXuEYIXe1/iaTnEDxGCD6hU/tuida+FFpa4tO4KbQBLwFs+Ibf8P1e4Zp0gvJA9JQdOomrVa0bk4Xq304dTK+o/wp6aQKl28YPlC+lOcBk8BcH4VtB0/pFCnph2kE+629QuvDZpG65X3WuS+oXZcdLTnZZBj3KQxxJ1OMkrTQpmq4AJw2vz0+DmZSnEJOogKi4/Zel5Tc7fYpVQnSVNeJAyEJhzU6MNY4aAPRWHDOcpLHeUHf3RAnv9FpUwunZUSUOoTumAtAkmVDNCSELiDiJ4RPLHfKI9BsgeAW4GQkYoNjLTHoiY5zfmB0zvxKXqz2TKNY0y5p8zHYcEoVQAjGVmMbJr3aHaWmRx7JLnEmUz0zfYXtAzPsh9kTmk5JwlQJ3Wt0GziQo0gkh2BwUA2AHKhxzJUcHUbEEZB2KOi/QZnKSCT8xkDYJ1Buog8ptDWx4fkbqySfYcIGnTgAYRSsUqO8HZDn3VkzxhADnkBalGCJMZMqTHsqLS0+/JVagIn2SmqyPnMbIrs4hKs3fzCpdO8+mfdX5H4Yq5yBGQlOyAmVhL87KUqfiODdYYDy7YLerCZiOyOcIXgNJbMkHcbK8FuBDuSkJCLIahkco9QIGMISAwCq1FWYOBieDuqLeSrCqUYMoCMqDCzYdPHmEJbxByo12MInAOHqsWNADvuja0uMDPol5CIOIyDB5hZag3HEER6oQeFUzlUY4QZ7MDsfui1dkkORauUYTpQ4hAD2UM44UsMnnZGHZSJ+qMOUsPDlJj1Sg7CKf1SMMDlCQglUHeuVaDJKsPiPVLJUBylNDH4P6otX2WfUEzU3hQw5jHPHlEoXAtMFC1xblpieyhMmZn3Uqjt0BcrLkskk7pgXq5CmrE/dARBVOgAHutxkzWYyiDsJTXSicSIlSw0PJxCIO/3WcOz2TGOGrO3KWWyi7gnHda2OLSIMyuYXgHG3Ce2sJBJhKrqMeH4KCpTLTqGW9llZU2IWmnWDsO2V9DdMoXRY4NOQujTeCJBwuVVpSdTEFvcPpHORyCnN+mb6ducpVesGDeFVCqHiQl3VE1Wy3fsifaY3OL3+i39O6jXsaofQcfVp2K5jmuZ82Dwjpu8uo7DZauWMS3Xb611oXekuosY7nTuVzW1hU2/VcurVNSoTOyZRqw/IXKz9O21vqOGIXW6QwaCX7zIXCLwTPK7di4ttiYwBkrFa1Vw/xOqADYDIWfq10TctbTyGiMLPRuWfiqr3HPCCyIur/S7DXmJQ39LsKZvLgt1BruSVurOq0Gut9WOY5W+6+H6VowVKNV5qbx3UtrENcX1jqd2Xn+XufTv8fO+2G0satc6j5WckrsWljRox5dbu5TA0xAxHCMOLRA35K8t6temcmvdoZGFzrzqIYNDCJTntFQaXuMJTrG35yiY1+HPFwHmTytNKH7DJQ1LFmTSMRwEqm51GoCcLpLrnZXfsaQotk/MRhdPpjnay7g4IXIs7kPbLjnsupQuGiGgQSudajwH8QKAZ1wkCJaCnfAnTfxnVqJLfIw6j2W/wCP6PjVres2JDYI5hek/h7082tgbh481Tb2Xfm/2ufyT29pqFNgAw1owuNd1vEr77Fbr2oW0tI+YrDaWrq9TUQQ0IiPtaBqERgd10pbRGhg8xwfdWwtpt0MHuQub1jqdDpFAuqOD65B0s5UpH5xc70wEGsdkw7++yXB4Xpx54rUPWULiJ3+iY84Ej6pZaeM9lYi2uIdE7qeIWk8+it9M7gZGcocHP3TuA1tbkjCvxNRlIMRsqa4bAq2rI0l0CQhDzMykyTznhWHEbZTL6GHufLYI+yVqKoGTlWQZWtZEHS2YkyjYMSUrPsr1EbJA3gEEn6BZeSYymPcSM+VIyTjPdbkBocB7q9JO6FmDLgnNzuPor6H2pjATABhOpt0meeytgxEIkWlJKuTGUMzwoSOUaR50zEhATjuiD4aRGEDi2MCFSpCcRwqJKEnGVZcStwNFm7+Ye8IbiDWQ2biKh9lHums6U/kUmsJdKU6YT6rYSSMHlMBcn3RtiEPElWBwNytAR2AIx3RMA54QicCZhMpiZ/ZVAT2/VQgY5CKRufoqIAKjqo7ISi+ioHPqjDomNLpjKIOKFtV9MODY826oHAH3CxY1KJ45Qh3dHB05SzIPqsYYkyEZYQBPOyVKsOIyDBCG0cYVh0EFCTJk5lCSASgw4OVgoWgtaHcHZQElZVizjZRrsqT90BUjg7ZHIj1SGn/AMog4pX5MLj9FY39FTXDTBGRsVU/ZQMBU5Sy5EClDBCjSUE91YGJlIMDiiDphKlQOUjTO5+iF+BMyVQdOJwqd+ihYonHqh/XuFDCGI2K1KMbum0BXquyBpEwTCTduArFo+UYWfURkSChLiTlOowHsYTA4Aevos4d6omuIGEsnh3dG10iCdlnDvsra4grTNa6daDEyPVaqdQHYrnOMZ4KKnULcjblLNdqhW3a79VdWkHjUzdYKdQOErXQrQYOQpalCu6k/O3K6tGs2oAWH3XOq0g8am7pVu91Kp+6vtn6dS7pioyeQufcOIZpbstFWuS3y/VIeCWbKW5WIfPKsO8yhBDvRXB1zws1pppHafqu7Xu2N6a1lP53CCuA39eUyi10ycrFmt83Pa6jYpnSM8pvQ3f/AHGmXbSrqNil7rT0WyNSs15+UHKx1cjcm17K4e14AbmAsz3MpjzHJ2SnXNOmNOrIWOpVfXqDSPQd14LL1de/nOZjbUrU2iSYPCx1r3fRsu70r4R6n1INf4Hh0z+epjHoF6ux+AramB+KuS5w3FMABU4Xm+XfinOcQHCeROUupXecGQF9ir/BfRBTmtSe71JyvPdQ/h7ZPBf0a/fTf/7NbzMPsdwrxO68DbV6jXhpyDytlakXskD3RdQ6Xc9Ju/w93TLHccgjuCtNEBzY2RUyWTyypBXetWgODjklcKpS0V8bHIXYs3aQHHP7IvuKfbN8QWJvOoWVNo3OfZe2sKLaNBlJg8rAFzrSjTe9td/zAYldihlm8A7la5+mertKNE160n5RutDnCm0Mpj0Qvqfkprl9dvn2Fo7wBruHAgchp7rWKTS/iHr1HolsYIqXT8NYOPUr5x1C/rXtd1evUL3P/QdgsPVGdRfcGtdg1Hl0kpHjy9jXy3POFrDb+I8wCSfVVq0+6pxjKoEDfMr0a8iySgccyFZcCMH6IHHaFfYGKh2OQOVTGguON9oQcfum24HiBrjAdge61Ii3UDmP1S3NLeFoqB9N5a7ccIS4EbfRGHWaFZaQcJ5YxyB1MxIPlGyEWCR/VENvVWWlRpLduVYdQuOnP3V5Iwd9kHvurE7HZUuC8yqcC12cwo2ADwSiE7HLVGtBO8HgFdee5XO8VQBmBytTGgATvCXSplrpdsNk3UB6qtEmDDRBnb90LnAEd0GokdlAQMoOrJk425VPEczhQntshMk+6UgJOOeyjhpOfshBIPqCm3Nbxnh2mIAGEotWIJ0jf1S5zjYqHASD7d2msAiB01nEgO9Cs9J0VW++U5zj4rv1Squo7UZiOwSSBPr2WgAEevCB7edgqUWMzgA7P2UBEqPkvwhzK6M32PE9x2Wik0mm5wGBys0FbaF3os3W4ZkmdSgzxkymGi8Ui/8AKlB0mImE191Vfbtokjw2nGP6qWkzGxVwDvsqjHorBhpAyCpQBjTA37qg4g52RvaBBB3SiYOUGU0HEyo6dxghA0+n90fC52Ohc/8AlRW4EZVAxlZrUqyUJyo45UznH2WaUY6DBOEwOmUkgbomdistGCSrc3y6gUMmVRcVahAwrlASCVNWI5ndWqmgp1Hwy13iOg8LJPZWHTuoU10Fx07Kg7CDUR/RWHcpBhPb7KB30QSpInJTBhk/qpOEskCSFfCUYHADKLVhIlWCeVIwn+yEmD6KSP8AZUcq0VbnyI2T69q2lQbULwS7aDKxOmFfjAUtGnzHmUjEaQXROEQJDvRJBRB3/haR4M+yoOQNPdQmDP6plZsaGOBwVYIDs7LOw/7prXBwg78FLJzKkGRsttOpqEhc4GGlpGe6bQfDo4W3N2Lap+Up1SnqMgwsVN0gELS15e0xgBZvpqe1k6d90bXBzdoWI1g50StFJ20Lnf23kJqyHKskplw3P7qU2+WStM2LyGHMLRaVtAIc2fVIwaZ7rRYUTVrNb90GR06FF1emHaYaeE8F1u3RTwD2WyoBbW3DYC9B8G/B9z1iq286iDQsG+YA4NT/AGXm+S76eniZ7cv4d+Hb3rtf+Qwil+aq7Yey+o9D+F+m9GY06BcXXL35grQ7qNpZeHY9OpsaxvlJZhbhJbOy5Wu3+zi8kdm9hshLg0eqWMpVV+YCymfqVb+XpJyVyA4tPlOfRbbmzr3dcBrgxg3K7XSui29Ih75e4ZJco2vN9Y6eer9LfRuKcV2DVSeRkFfO6dJ1J7muEPaYI9V9ovXCpcFwENGAB2Xzb4ushbdWNVghlYasd+Vmxqe5jzt00amuPsttifLpOyz1mgtHaVqtKeluoLOejqdZvnWtACmfMYhaOjdTvqlFjHmVlu+nVr69p+QikNzwvVdM6Yy3ptJEuW59Yz19tlu4CgDEVDuT3WepairJeNRPouiy3B3ReGW4ASHBqdEpVAQ5olc65+GLatLXUJnaf6L14pv16j8vZMDQYEexRh1+S6twadRjCx5Dmgkgbe6ayo12WuDvRc+o4uABJMdykw5uWmCty2M2SuuSDxHsoGh2A6Pdcxt5UZ841t5WildUqpgO0O5lbnbN5a3NLRBQZjy7jlCHviA4EKCsPzCPZbnWud5sb/GpXNFrK3krtEB42eOxWR7C0wQVQcx+xzzKPUQM+YDYFb8pWbMAjAICtxY8SGlp+4UacZOOAFKoW4yl6QZ7JziD8s6TwUsx2QiyM+yotMotMQo2DvhWHS8jKIQcHfhEWj1CBwIM7hFh0TXObgGQmte12D9is5dmRspInGFS4LJWkuAkx9EJcO09kDXkCDt35VkktwZHC1OtYsEXY4lDPI37oYMSVJ/2WgJxMgnJQyeFQ2ypvjdKxYChPCmwlUQUpbAXVABunGS8rPBnHCcwmRiQlHNJ2RkTxKukwE5MJr2/Ujss2rPTBWZq4hL0w7KfVkGDulPOe66SsWLe0b/ZVpcGgxAOQo8+UHvwhDi4wTIC3BRagNvqpOB/2FAZHqpgbTCmUBMKwJInEqgcQidHZRAWkYQkR/RMOYQuH0QYUmN+SZyhcAMcqNmICzY1Bbyh0gHKdScWiA0OlC4SZP1XOtSlxKtr9OIBHZG9wLQA2CN/VLIyhoLjJJiFUxlWqIKzSKVU8IROVC7CK0uVcmUKgmUIWqVAZQlQb5TIqZKsO+/ZLkK5yoGajgHCmpBJ3Vg+bOyRgpUmMyqOVRB+qULUpqhDnhCSQUo0uPdWHT/VJkomuAOdlAc8FC4Src5pdgGOysZGPlHfdSJIKsH7cowAd0LmQmVlYJ34VzwlF0BWCSlGkDj9FbCZSg4pjXf+VuM09jgcHfhMaCAAUhomE5rsZTHOxvtnF8N5XQq/y6BjdYemFuoknzdit9yQW6e6x1fbfMkcljvNOxXRoZDTwVgrMLX+hW2xB05WrGL9m3eC0QjpMLxDBJQ3Muewcyu5YUGspgnBKOri+OWuRSpyHNdg9iuz0Wy1PD4k8BNNhSqVNexXvfgHodKpWFxWHkZs3uVx679O849tHwt8HC5qt6h1cfyWQ6nSdsfUhdbr/XCXmysvIxuDpwur8S9Tp2HTn1HuDGAaWj14XgbIOrVTVJlzjJK89u16uZ4zXX6cwtuWEmSTJK9Z43kAXmOnt/nt7rvhvdZqaNZdsVIHKUHBuAqpVQ+tonzbwhN1nT1OnhdSo4ULYx8x/ZJs6YDR23JSb64D3EA4GAtfhRlMOkTleW+NKAqWLKoyabtx2XTv7mHaGHPJC53UGmr0q4YTPlmVlrm5Xh6xOgYWuzbIACzVG+QArpdMZrLQBysl6fp1sRQaXQcbLa2jGwPspbtIY0DEDIWtkDIwUsktaNuUwEbHJ2KZpnMSqLfMpAMzpdgcFVok53TtMbn2lV4ZnfB4Un440kfNsgcwxIXVubMsk5cOCFgqUzmDjsrUxPYdggNPvhatBmMyo+lOEpma59P/AC3GORwttpUNUHU0Ajf1SxSGwCdRbpPyyDunTgy2DPKku1Naz5nGEyGkSJ9imWjAaznHamwu+vCdsYxmddOpvLXsMDmJCtl3Tds7PZG4EkngpbqVOoPOwFandZ8WhtUHlCXAnfdZTbhpPhue30BkKg2uNnhwHcQt+Y8GwOZzPqqc5sYWXxqjR56ZIHIymMu6UwRB9RCfKM3k5roxuERAd/3lC2tTeI7IxByDha1WFOYRslxErU6I9UDqZP1QCZ7oHufT8zPM3kJj2lqDIE8KwmU67KgjZ3ZXEHH1WV9HV5qeD2VUrhzXaag2TKLGsnMyoDnG3KFrg7IVE8rcrFmDj1lQYKEO5BVykLB/8JtMgHeEkOyiBghNqb6T2wTsVHVBMjBWQOg+gVayRujFpx0EkvJHY9ykEgyrc4lukIXNc3JEBdIzQkwQEfh6XZcO4SyfoFU/7LQs0yQXb4Rx2SmkiDH0TQdzyeEsiY0F4DjDSclMuxSa8NpHWAMnZK0kbqiRuNuVCh3Vx91fzGYgcKbbIahT25/oqdvMwjegOThFaWx3aQmCN0knPqmB2IWLDELtMgcoJkZRuAO2Ch08rFageVRBKIjshO+6Gg7FURyrPKon1RTKpFMKNI91WPuslMq1BtlCoCUO/qhBxhSSlDlWChlQlSMRGoYjCUJhXPdOpeYVYyqBCnKgoSi1ACTupyp+qViAjurDiBhVAVAqiMDpOVRIPCDKIHukUL2ycboPRO33QkCUysgmDnBTHPBAgRCGO4VADhbgp7HRnhaKYBiOFkBA3Wi3eMha1nGplTS4RgzhdHxvEYHdt1yhk+q2WzpEbxws2AdyCQCtXT2y2d+yRUYajRA+y6PTqJDPMI9FW+lmtttaAkVHbjYFdOmJgcJFKPDGVpohcrddOZjZZUTVrtY3ckBfW+g2bLCwY2PMRJXhvg/p3jXArOHlbkL6BqOmOAvP3dd+I+Z/xr6s5ltb2jHQHu1EDsFm+DLw3XSqbifO3ylcb+L7zU6+xhOGUwj/AIcuP4eq0bAqk9Nd33H0npUuqajwu0DyuT0tumnPddEOWKYlxWFJjnuMACSVzvg65f1K+urkD+UHaGnuFzfi66qOszaWx/nVvKCOF6j4S6Y3ovRaLH/MGyfU8qkN/Tu3VYW9AMb87lw7u5LKZ5cdk26rF7i9xxwsdAvr1JHyzsr7TLRtq1w+WsJJR9RtK1rZVRXYW6mGF6jp1EtGt+GtyVyPiy58SxrOJhoEBNmHn3XzGo2S0Lu9Bp/zWYXH06qo7L0nRWBsE8bLnjVr0NPEJgGUmm4E/wBU8EHI+y0ya2EZDXDI/ulAEpgZ2O6khYNI/OP1RaA4SMjhW0EGN05rQRIweyE/GNpf1aFtDiKnmghxzC203W12NVNzGu5H9wuUxtMOOsw6JAiQrF4+i1zWEPkREQAtJvrUHMJx9krwC4EjdZbfqVVgirDm/qttG6pVoLDBPCLEQWFuAiGBlOeQTMR6hBAj9lJUgjtCZTOmzqP5e7SPYJTiRvCZcfy6FGnzGo+5SCZ/RScQh/ZWc7qC5Q6o9Qoc5VFKQuH+yo6HYIB90LhKU5vZSM8Fmry+U+hQmlUb8lU+kpZcRgFD+IcMbp2jIe2pcM+ZocByCnMruLSTTfpG5WVt2NiEYuGHcx+ifKi8ynm4pOxqjtKhcHZBxykHwqm4BKE0WbtJb3grU7F5aAAfRLqMa4eb7hWxlMMH82oH9iAR7yluc9mBD/VqdgwLQ6k7JlqaKgdgHKUazThwI9CEtxDfMMt4jhM6WNYcBGEUznYLHTuBs7bgrRAIEHC6SsWGNdn0KMxKU3fCZ6halZsOaJBP2S+8/oiBMRyludBwI4ITKBtMOBGyJ9Zz5D3S1C6IBA0hJq/NOy1AaACO6DLVbCSICOMZ+q1KzimuJxlEJBypjPBCoR/skGDZU0Aq2jlEdOrGB3VoqicR2Q5Vk9tlCrEEfpyEJiSR9kfEcqpgEOCKS+Rq2PKJryCQ35Sed1TnEgA7DYIOUVuGwqdj+ykkiSICYyk6rPhMLgBJgT9SsWGEjdU4ZKLTBUWWvosIXIyIQyDuikOf91c5VFTIyFmnRHZCSpPJKjYJyYlCVsrEfVSOyuPSFFcBXG6jcZUJ+ilU9lPX7qxBKpyQrlQBWJ3U9VJOfRXJHsqJUGEqiMJYMbInQVQCggV9lFI/2WgMGRjhWc7pY3iUwDCoKoiPqgcM4RkSYRmmQ2YWtxkkSPZOpydggdIABH1UZI2K3Ga1txnnlbLH/OglYqLpGkrXaHTUBTWXfpta0YC0sJxCz0iC0LTRA1Li6xsoDAGy6FnSNWqxgySYWGl5T6Lp9KrCjd03nYGVjr6akfTOhWos7FjYhxGV0g7hYrSuKtux7TghN1rzX7eiPnfx18Ps6j1Orc1a4phrBErB8BWfgU6rQZGqJ4K6nxw55vwwO8rgAAOV0vhyxFrasbphxyVrfS6nt6G2bpYAq6jeMs7Zz3mDwOSUyg0nYSeAmW/Qjd3TbnqAllMyynxPcrMLB8OdJfdXA6jftLQM02H916O6rF08NGwTapAGloho2C8j8W9Wq29NttZNL7qsdLQMkHulffuttvenqHU6lrQ8zKQ8xGRPZeksOnEEYgclI+Bvh3/CemNddea6q+eoT33XW6jdspNNKjvyVbgvsm8rNY3wqZ8o3PdeP+LrgC0awHLjsu3UqF05yV4z4mreJeaAZDRlFrfDl2jdVX3Xq+n0zTogxkrzvTaJc9uJXrqTAKbRwFmLpbWg7+U9wnMJGztQ9cIQ0cFGAQlkbbgtMOaR2PC0se07FIDTyppHImVJrBPumNJOxWOnqaPIZHYpwrFvzNI9VF+M3MBGNykvpkCY25XWbRpXDA+3cC08chJqW5+UTIHKr6UcvQSIOEIY9rtTDpI2IW99OOMyhNLY5Uiqd1VYAKnmH6rVRqsrCRIPKzvpA+6dau8J2GSD3RqG4E1A0ckBHevm4Ldw0ABSh57tpI2JcR9Eio7VUc48nC0LE1HjCsHCqMAjKqFIQgqpVKCYUNXHZCRI9VcwpjkwnES5iS5kYWoxPfsgc0EKTLpABJOeAluBC0uYISntxhJZy44zlG2s4bOKj29kDmnhQONct3Mgo6d3DgRuFkc3CFjXTAwrE6pumVv8yA48xCpzAaZAaC08gZC5RBBM59kVKvUpuBpuLT2Uvtr8Dhpx6qNfUomN2jcI6PVgPLdW9OoO7fKVpY60uGxTrFgOdLxytTqweIadRr2y3fsmtJiCsTqZpvljhAKcyrweOV156lc7y1hx53QvJJQhwKgPK6xyq5I5lTOk4BPdUBlEYLYGFpLpgg5CMz2wlMJ1R+qaNu6WVcq4iFHbxyrBj5vskWGAhoKrvhUYIVfKcz6JCwMqOA4VgiIUMc/RSQjA/dUQBuocn0UcYb+xQSjPaFBESeNkZdqicRhAWmfRBiySTnbhdDo9TRdBxdpbBDgTAcOy58HCYxxADe2VjqbGpfy09VdRdcONBuhp3AMiVhIMd05+DjPqllpCzGt0DgEEJh3yhIzhRCfXlVGEX0VcrNiApuj0/dDphBUP2TC4uAHCGYV8qxJlXwFAAoVYkHKog/RXH0U4QlDCnCsBXykBCsyFCqJndaVQkqZUweFM9lCrnkqjjZSUR0wSTngJgoRGe6bMhKamtEHKbQOmIIdyNkx7i6SUEnsihSpLxyqaE17cY5S9JBW4zTrcgO9FupGCFz6Zhy6FE6oWmK71q7+U31C2UgJBWC1H8oN+y3UIxK4115vpsDgBPAXLodcaOqGg8w2YB9V0zRfWpOYzdwgFedvfhe/pNqXFPQ8MOoiYMei59OvL7R8L3hqWYaTJau62oZXz7+Ht2a1lTc4nWBpIO8r3THLhY6c157qXTzddf8epljGiAdpXaoNgABVVANclbumUBXuWMOASg37dvodl5PFePZdCuA0LpUqVOhQDGRgLOLb8Q8ySG8kKTy3VrqtqFvY0n1bh+Ghuw9SVr+GfhVtjW/xHq7xWvTkTtTHYL0tG2t7JpNJgBO53JXPvrou5+iiZf9QwWUsDkrh1apJ3Ur1pJAKRMlCSo8MpuedgJXgryr4129xyS5ev63W8Hp9SDkiAvG0Wl1RVan07nRaUvDowNwu/jjCw9JoaKIcdyuiG8wiQWrYAfQqFp1bqwASiiRB+4SFskDeUckqMaI9UbQFJTCQU0uwgjOMI9JhSfjK2qijApNlx+Z2YC6NveteIraA8nEGVxXucQc47DCDxH7Y94yml6XTSdzpJ54SqlCD3b3XHt7p9LyuMt7Fb6F4HCGuk8goxI5hYTIxwggg/0Wp1RroBEFA8AM/SVLA22G1X9mwPdZMzlaoDbInlzoWU/ZSpjWksLpy3goOFASGnid1RP0SyhnupP6KpzndVJTSYhIUnCjnAjaDyoBM5Qkn6K3FDCko5CF22ESE+ikUWhC4cJp2zuluCaiiBGUDyJxIhMdt6pRGJUQHKB8hMgyqqDEkYUAVS2Rok9ye6priMjdQ5GFGtMp1H29y51bwznEyt0DYjfcLlWbf/ALiWnkLuGmCPNjsi+qmdrjT7lnY8LXRex7fT0SX0yN8gcpDmmm/U3A5HC68fJ+2OudboAdPCYBM9u6zUqwc0ScrU1wcBP6L0SyuFmKdpkaRx+qIbwP8Awq0+aEwAjPKWaWZnaVYJJyjOWyMHlC2e3uVqJcYgKiTgE87pjSNUOPupUDWuIaZaDg91MhPygDnfuqPpsoxwGfurIE+6TFOkRCGDGd0ecDcdlcBoiPMeFlYAg7KCdznungFxEtiMFU9sAxiUWtSFNcJicKwQXZ2VVtbtPliNsRKtjeFmlZgnGyWcHunBp3Qlp3R6aLIQkcI/lCGeeyEEtKsgRuZ5RFuUJCiWd1GgSNRgTkq4VRI9lmpb2gE6TI4KoDH7K9KhP/YQdQDfKvEKgZON1ZB5CEgQzlT02Kr0+yVqalc+qrIVcpAgRKhP0QgE7ZV7JCFWq3Ks75SqqfooBO2VYBOAmMbBCgtjYzCPjsrj1UicKSBFvn7ochE3KkvSCEp0zPK0QQAlvaVuVmgb+q6Ftlo7rAwZW+0dGOy2w7lr8gW2iDrELFZw5oAXUba3H4c16VGpUY3ctBMe649XHTma7nTKLWUDUfg+qydRuXXLXU6WKbdyOUh11Vr06VtSy90AwvS2XQX0qLBXYQ0+YkjdcOut9O/POM3wVbG2ti4jTqcSF7W0JfUa3uuQxjKZDaYhowF1+kDVXaey51qNl9aGk6Rzusr6FV7G+C4sfOCMLsXZFQDmE/p1rrrAx5RmSqezXT6BYj8MDWfUNQbnUV3DFNkDACy2UAOI24WfqN6yi0y7ZFMDfXQE5wuBdXRc4huyz3t+azyNUN4ErMHEqxNAdO+6IOJ2SmNndNwxhcdmqTz/AMT3ALmUgdvMVzem0jUqtEblB1Gt+IvHu4Jgey7PQaAjWRtssVu+nZotDWNbEABPAwltic4RyFpgQEogIKoIlITSjid0LR2RhSQNRsxg7KhKKO6k/FT6MfLkd0vSRuN1sfRNEyw629u3ulloqDH1C1iZHHPcoRMh2fcJumHf0QkduEI6jfOZ5anmA2WxlQVG6mOkchctxEEHf0Wnp7fMSBIMYSXTumkW1KBgDUVhkwtt/UIqFg2DQD6LEflQFlxiFRyqBH2VqSTyFEIIg5gqiYHcqAicRwhJP1Vg990JSUJU5UA7oSoCPI5VExsqJ55Un/dS0LigMo94QkHlOkpzZQkdk3TCHTODtwqAmJPohLTzK0hgn1TG0Z4VamRlIuGyc2jJ2yttKgYiIWmnbwJIRpefE0erUC7DXENP7L0r6QBMjEfquN161NOkyswRpMyu7YVBeWVKruXNz78o6M+iaQZhpEk7pdzbxLqYln6haHtNOpOzhsiouOozyqMuLUoljtbN+ydQrYxxuCurXsfGbro4fyOD7Lk1KJFQkAtc3BB/ZdeO8YvOt1OuAHaWgkwM7j2RsqFxzv6LDTc0mAYI4TqbjqgL089SuPXONjgCwRhVMNkDHrsoxriyRk7Kwwl4aTC6Oe+yyZORHZWW+XAknlG5oDs8IyALcOkaikVn0kN+uVc7AiTwrEacnlRomfTZSG5rmkaTBiSraAJ3nuha4meybzO+Fi1qRZJjdCT3yr1YJ/RDg7mMLDSqtQ1DmBGMKmtCoNAVtdMwMDlVUQ7x90O3qFRJBQhxn+iDFvEmNlUAbhEJ54UkFRVAVFspgAONgrgBZ0kFvoq087J4bOVRaZ9FaiNPdQt7BM0kHKEggoOALQo7bfZEQYQFSCcKgCQVZ22VTGxSlSe/0VEcqc+hUjBCQJriCYMKpKo+igBO26UIOKsNLirYw8pzRiI+iNCmNEbIw0Kx2V8xsgqGyuDJKmmFYyFoKgzj6q24KuO6gEbqAwJVPbKY3b32VluFqVlnY3MLVbYck6funUB5hK2xXf6S01arGNHmcYC+4fC1kyy6YxlSmCXNyeV80/h30k3d6K7x5Ke3uvrrYa0NGwXl+a/h6PijlXfwt024u/xVuz8PcTksGD7hems6dvSs2UuoM8RjOWjKyU/dbqYD6el3K4a7vPde6faXV613TKbqTY8wzBPeE3pdm63Ba4ST3XatbMtLnO+UZlNp021Hl5IDQkfbDVouY3UMjkJ1nWqEhrTDeStNzp8M8NAx6pFhRLttkfRZfiH4xsujW/gseKlxtobvPqvmPVvie/v6rnGoWNJwBwF9P6x8GdM6s81K1M0653q0jBPuvMXn8LLsS6w6jTe3gVWwfuEyz8n/AE8z0DrTLXqNJt88uFU6QXZAPEr6PToiq0Oo7/6T/QrxVL+GHUx1KnWvrikKVNwIFOSTmd19Jt7IUaTWk4AiSq4y5jaZa6HCCsXXq4t7JwB8zsBejrGiGRUh0fdeA+Jrtte8LKRljcBZv03zHNtmGrWA7leysKPhUGt5AXB6Ba66ms/K3Yr0pJAhu4RBbq4P9kQPBS6TnlxDwD2ITx6pAgUbY5QKwFIwRKLMJUxlG10qRoKucoQRCIR3Un49eD8w2HI2WarSBl7PK/twVGV3U9sjkHZPLmVT5AQ4iY7LreM9s+X7YiQ5uir5HcHukOaQ4tj6nsum5rNB1tl0YO+VlrSWhpEALDTKWgRz6rX05p1t9wEg0iTDZMroWFI0nDUO5RpLu36qzyO8JBPCZVMuJ7nZJMqgXIVElUJAwpJKakmFCcKuVWfdQXKk5UAH9lB9lJCq9EUKYKkGD2UhEFJUgQVenhX6qQTgKQNJ7omsz2Ca2kSVop0fRKIZRJzC1U6ELVStzI7HdbWW+AI90amOjb5lam24jaRytTaIEJhYAN47qTlX9q2tbPYRuFw/hy4NtcVbKrjzEtnvyF6qqBPeV5Tr9o+jWbd0JDmkEx+ib7UuV3LwAt1DPqsOvSZ5V2d2Lq0bUGT8rh2KXVbny59fRZVbrS5l0gp3UqLK9M1G+WsBM/6vQrk2z206hdAcPVbKlwCySY7BRc1zZzs4KMeR/VSq4ai7adwhBggjdb56xjrnW+2ugBpBiVqa0OyIM8rjAct35HZaresWGOOV6uO3DrhteO6ug2lqb40lhOQ0wUILnMEhMbTJAAE8ldvw4/RdQDXDduBzHqjazyxGSmspw4nnlXVEjS3ykLN/TUILRTdpiZ3TAJGOVLcmlULntD3EQCeCjJJfA3WK1ABoAzzshc2InbsmPaWjUMkKi4PAAGdoQmZ5JGBAUDiAQMTynmnHljPIQ6c7bILK9pB3+qmQAd1sFIPnUYCsUREdlHcYwCd+FZbHeFs8Eg+hVPZHCDKyQBmUQnkphEcIARkHPMIpTbKoPPIVwOMIYPuskRI3KAidhlWSI2goS4cHKkE491RE77KwQd1HEQlFlsoYR5hVBSAkDsqwU0U3O4lG2jCtTO1knO3dOa0BNDAgxMK1YkTjsoBGeyox9VYJjGytSw4k4RiUrmdijE7qqMHcKyBvt6IWnPdMAGUio0CIV6T/AGVgcq9xhTNWzfKYQCMbJYbCcEwEvblabGg64rU6dMS4kABKc2T6L3X8Neim6vfxVVvkZtjlbtyazOdr6P8ACPTG9N6VSZEPc0En1XdG6W0BrQBsOEQcBheHq7dezmZDmlO/EBjcZPZZHkhRoO8LLTSbqq4aS6G9lptHDJMk8Dhcx7iHBPo1iGkN53K1BTeo1g3zOfgDbsuf0/4mtrW40VhLDzyFpq2puretpPma0ke6+M9RNyzqFYVS9lVriCO2U5rWetfomy6pZXbA6jXYZ4la33bWDymV+dukdYvbau0ZqNO4GCve9P69VLBLi3HyvWbGde8ubovO659SoXHdcSn1xj8VDC1MumVGl7HAgcqwg6xdi3tXOnzHAC8QJrXE7uJXQ65em4rloMsGFPh+38W6DnCQFit/Uek6Zai3tWt05IyVr0K2OLRAzCueSIWmFaTgjEcqyScn7qOeGjO3KYGBwBGykFoCMZVBmfVQYJAUhhqsBUHQFbXSPZSG3siIQNnhMBUn4wkYJ3THNLGhzHGfTCW5ppu0vEH1R6y5oGwiF6NczqFYVAG1BpfwZwhqsLaml2Pfb6JTmEs1DBG6K3qkQysC9mYzse4ReZfa3FteKTpA+q00ahc2o876d0ipRIAc3zNO2OEyjItakjcgBcrMbl1mcZJ/dLKY8fSEBg4QQFqoojjCGD91JJwqAn090URtsqz2SEjturzCmZRQpBgqZ7Iw08fVWGGVRF6cKw3utFOidQJEwtFO3LnTESrVjGylKfStyYELo0bKeMLo29iIBj3Vqxy6FoTwttOyIyRBXYo27GAREoy0AHZGlz6dqWgEhNDQ3EJznACBss9R8ymDAudnsEio8b/ZVVd/4SXP+yktzpHrwsV3FRkHOIIWucHvGyyOHiOIkNCFjzpY/ptwX05NB2CPRb21mVKWqm7U13/eV0a9GiWFhbqkZnK49Szfbv1WxkH8hT9oTZDiRn2RClVqGHnSG+YhLpuq6wKlCo0u2IGFrLdDTI8xGZQWN7SZhEA4NEhPo0g9y0eGHBzDsNkwVgBc10j6+yNpE+m0Jj2acIWBofL8t57rfPWM9TWi0q+GSDkHELp0RrGMRuuWGBrhmWEyD6LoWLzrIPynuvXxdjzdQ+pDW437JYEjVwMIq7xPEDZKFaQW6QOYKazFyC6UWoMzMzulg8bDuh04/orCcytuDkHGUBcZxwhc2ABH1RMYR/RGLUDyc8qQJ/srDIBcdzwhBg5H0RItGQQAY3VippgxJVOfMA7BWC0kE7hWHTHVtbYLRHdJLinwIUgbDKyYxPcQkl8nIW6pSnss76O+FlqE6gRJU/6TlQsHdKdg7SrFphwfNuhLRxuhdXAwWk+6rxQTIEeisItJj+qhAGEQqF3srwdx9VHANbq+iY1gGSjY1objCLSCM7rOoOrGNkJdndW4EJbnZ9FIc4zugDd4OFC7sFYcQFFII9VUeiNjQ4DEFWWgKFLLSMSpTBkqz33UAMzK1ANrcpjJS2pjANlA4ARJQjBRh2ELnAZTBasSmME+yW0pgkLUjNarO1fdXVOjTy5xAX3P4Y6ezpnTKVJrYdGfdfPv4e9Mpip+NuiA0bTEL2PUPirp9nLGVPEeNgzK5fL1b6dfj5/L0+srsfCwoXdxU1AP0YJ4lfOqPWq99ag026HVTpY0br6r8GdK/wAM6TTa/NVw1OJ3JK4WO1rqu6daF2o0WSuV1+vZdOtoDB4h2A3XXvrltrQdUf7D3Xkruib+satXbjsESaWKhcMumaw3nYprq7LdzRUbLTuENnTYysW/lByub1CuKt68N+UGAnA9LZNZpe6mZY4YXkPjz4aNzRd1CyZNdg/mNAy5vf6Lt9JuTSOhxlh/RdvBGDIKLTHzr4F6AK1Tx7hmpg2BC9f1D4epPBdQbpMbLp2tJlvLaTQ1pOwXTABZPCvsY+dXHTTScQ5sFZq1Q2dB7WnzOwF7vqdGm6k5zoECZXznqdTxblwb8oMBHXqNSb7ZKbXVakDJJXsulWzKFuxoEO5K43RLOXeI4YGy9A0RssxW6eTxz3VgkSRkdkuUQPfZaBjQHA8HkI6fkAgY7JWrOE1r/wDwpGa2kbZ7ICIMg4KNoa7b6hUKRBOfZSUWmN4KjSRuodbXbamqQHYyD2UhtdhHIS2MLTPfdMhSfkzqNgADifVcZ1I0XEO2GxXuqraT2RBJ7rj33TtTCR8pXTnvfti844VGIOo57K3NbBwgLTSq6HbgwEbhjsOVsCp1XMAg47cppeDQaBuSSSszmkNk/ONuyEPLWBoz3nlHd2HmZTHs1AkcLO8Q6NinU21X03PY0lrcmNggd5snC540UQoCdkYAIwUQazQZJD/TaFIvSdlYYR7d0xokp7KROIQmTQTndNZSJWsURuDgbhOZSGE6mRtErRStlqpUx/Ra6bG6gAhM9K1kjC3UrQDJCNha3srdWAOD9lFpp02MEmFbntAwsTrg/wC6U6sTmVJudXAODlAapcQTieFz/F57qm1STj6pwa6GoNBnIPKzPIBMGUl1YnCTUqR/dGLRPP78pRJ5yOyrUTjshOJMqUMa6QZIjlU5zXQCQB2CzOGp25j0VGBsrFpjy0uIBlL0lvnaDA5Vaw0h2mRyClPrOeNIw3smRaJ1UklZ3Ak9xyn+G8twMqHQylDx5vRSKoFrXS7A3UrVhBDOeUlxJ4wEECZUhF2xkmFRfiZV/liYHZAKZqfLhvJOyZA3dKc2vNJ3zNOF1G25ZVDYIXP6RT8K4aKXmLiASeSutfXBNxDDlu5Xq+P1z7ef5MtIfbltUtcdsoNA+yt1QnJPmKFzi0ySndZwEgHA9Co0GSY9lQlx23TGDIjhbgFp/wB5TGtBaICZTpS0mJndOFKBI4VoxlLCBsqFKdwtmkEZ2TPCDaZc7I4TA55pAbom0WmDHKdTY0ulwW+nRZpBjCcZ3WJtGRDW5Kb+EcBLhAWzxG0j5YDhtKw3Ne4rVC2fK3bTysd3HTmWiZaB5gugIh0kPzJ0jlZw17XN1OzuU9929rXgPOk4A4XCzq/TtMVW6QGNLhBA3XMuLAtmDAXTpXz2sh/mnBUq3NJ5JIO0LM8oc5eeqUC3cexSSyF2LpoL4blJfQ4/MtysudJCovICe6kchKdTPCfS1GPJPZND+JWcgjHKrUnFrY0h2+FT2ncZCzh59kxtUoxSoPKf7ojueZ3Co1JEOEodQlGHTACcKye42VNI7qOjbnurFqpCoESh0kK2iFrGbRtAJRiWoAUe+d0jRajxzwra0n2V4MJlNMjNpjGAQmho3OyZaUXVXBjRLicAd19Hsv4T9V6nY0q1vc29PWAS2oDITepzFJtfL3XtzpNKnWqNpT8oMBbuj0atxXZTYx9WoTADQSSV9Z6X/A6sKgd1DqLA3kUm5+6+l/C/wN0b4daDa0A+sN6j8lefruO85v04H8PfhKrQo0bvqVPS8NBbTPC+kABoAH0Sq9anb0i+o4NaEuwr/iqRrD5XGGj0XG3XSTIdWpMrUnU3iWuEELx/WBVtHfhmCJ5HIXr7isKVMuO/C8lc3Iurh7wZDTCoXP0m3talV/5Wklec6dcsvQazDqDnHbK73xDW8PpVyRvoIH2Xzj4AvzTvK9lVOC7UwH9QtSC+o+h0Aupa1yGhrvoufSbhOGFmxR0vFggrpUauqjPC8+Kqur1IWdpUe84AwPVUP2y/FnUxTp/h6bvO7eOAvJ21M1agaMklLubl95dOqPySV2ek2hYPEcPMdli3a3fUx07aiKNFrB9U8f8AZQNkDKMElaYSUxpMeyDjZUcZCkc104TmMJ+XIWRj4K2UKwA3wdwpLb5XZwUzV9QkvqB7pJnshDoKUfr7fZTfOxSgZVme6gaHH/ZEDJ7JbHRumSCEF+cC4ewSnvLsRLe5TnNDsSgLRMTAQnC61atFMVaQh0mfZcqjBjVsvWXNv41B7YMEFeUrMdTcQcaTAC689emKJ+kmOEh9EOEH6EJhJwSMKBpcR2Oy0kt2voNPhOPqCcfUJDmVy4kkBvIIwtgaeTKcBIzlHqj2wU6NV2Rox9ETraqfM2mc9l0KbZOkQBuZ4WjU6k7T9jwVXk64oo1QZ0EFW11dhgtP2XbFTVkgEcpmtjmCRtujxWuH+IcM5EbyEQvH6ZG3quyHUJy0Hg4RXRs7hzSLemxoaGwwQD6lGU65Lb54zAPsnU+oQMt8yOraUDlrJHusrrOl/wD3B6AqyryaT1IAZGVQ6jTJmDjdKp2FIt8znifWUdTpLCRoqkBWYtEb6mdpAOyhvqR/NEJFTprwNArSOMfslu6Y8f8AECsWtQu6Z/OoLmlxUWBtjVnFQdkw2NVuk62EdoVitazXZEB4Q+MwtP8AMCyuta+ogBgVfg68x5CrBsahWaPzslUXtOS/CzOtK04YBG+U5rK7qPhEAN3AKsOja4PdDSXE7ABRzQCAQ8OPdUy2rMM6gCtFdjajaek6XAQSdvorKtZ3NDfyavWVTagpkHQPtMLSKbBBfVwPSFb22m7nF8cTCsq1mq3T3GODxsEk03P/AH+i1GrbCNFEOPrkq2uuKh002aW9sAJ8RrEKBdmD+yBzNPYD7rpixrPP82ppHpkrXT6A54aXayDkl2AtTnaL3jz5LP8Aqd6o7ejUuKgYxr3EmIaF3atp0yzxXcx7xuGmSo3rVGiwttLfQNgTuV0nMn2xerW20sWWNIg6DckYZy31K5tRnhPLqpEk5hI/FVKtVz5Oo7nsmNpBx1PcXHstb+GcgGNNSsdI8s4Kf4Djk5RMLW5aIVG4IfpaMHcpjOAbRLSC5aQ1ow1sHclL8UOIzhPY4RPHZa1HMA0AAZRkEMgRqUY4EQMJrWgRAlCSnSGAR7JddwPlAgDZOLodvACyXNRrZ55C1LjNiBo3KlW7IGhn3WF1w5+2BsqpkuPuq9/pc8GhznOlxlbbeGtwJKy02y4NBknK3NplrRj3XC3XaEV2gEudP0WMknByujXBMNiQsr2jUDG261GeiA0kjsN1IaX5wjqHM9+FneDJWs0CuG6HzE8hLbUOvU7ICshwGZMeqW4EZHKvFeQoZULi3HdJewj1HoiaRJ4KMPDCOQjMWsj6eElzCF0SG1AS3feEgtBMA5TFWODKJPfS9IKSWkGCPqn7CuFYHKrlE2fr6Kxav9lG7qwO26uB7KxagCIb+vZVCINzP3ViQNkowMhCPsiCcQ2tEBOpRMEbpbN534W/ptq66umUmDzOMK+oHuf4YdB/xDqTbisyaNMyJ5K/RnTWNpUWsaIaBAXzv4FtKXTLCnQIDXEAk7SV9AtarGtDi4AcleX5Otrv8fGOkst9eUrOnqqnPA5K5/UOu0aDS2j539+AvD/EHXW0WOr3VXzHDQSucjtmfbV8UdarXFSlRpnzVXhrWjYCV7zp7G2nTqLTs1gn3hfK/gsO671sXThNGhsTtK+iX93+Rp8owmxndrL1/qIp29Z5MNa0leS+Erw3fTX13GddRxB+qD45vzR6RWaD5nDSs3wY00vh+gDjVJVitN+MK+npNTMSYXyjp10KXxJQdSPmDoML6B/EirVp9B/kNLnF4EDsvnnwt0qu68/E3DSGtMjVutT6HX0+2WdQVbdj+4Ti5croNUus9J3aV0CVmmVH1AxpcTAG68v1W/N3W0NPkBx6lauvXxA8Gmc8lcayour1hAyMLn1fw6SZNdLpVqatUS2GjJK9M1oaABgdlmsaAoUQ2M8lagBwqRm1RxsqDu+yKD9CgLc4Wga0g4VkJbd/6pgJUgwUTZjO6LUOVWDspCEogShEjZEHTupCBI3RAnhBJVtOVDRF5YRIwU9hwlgghG2OCovgD7ZrCNWO5CXoa07z6jhaKzapaQ8HSO2ySNAAj5vTJQUBAkEEnYH0Xlut0PDuSYw4br1b6hGkeHqnAB3K5/ULfRpr1qXiBhksIxPErXP2z1+3jh5X+YGFopPEfLA9crY+hbXNQu1GlJkzkAqndMeGl1KvSewchwB+y9HjXLzjNqkidlYIPKU+jUD9IMjuq8Ko3BmDyjwqncrZTeKc4BPMqqlcvdnbgLGGwfPMcxuiota5/neWs4O5V407K2UWl/zCGTkrV4VKCQ8tjgrLUfSADaDaj45J47whuKhc0tpSWxJJwZ7LU5F6GXADP3CoOafzbrG4VWtHmwTPshdrMc9keNWtrnMA8rs9ks1ANslZQX8/dW57z8rf0V41acahJiYTBVOnc4WMNqkYaSiay4cIFMn1VeavKNIrmYBJKF1d2og/ZKp0bhoJFN+eVQtbo6iKRBd+yZxR5z9ip1PMASY5jdPNRwbiQIhBRsb3UHMpkOGxT29Hv6plzY9eEzijzjOKpKgrOGJA7re34frx56gaU6n8PN/4tyBG5V/FR/JHKNzG59EDbk6jmBwF3P8ABbBhHiV3vPMBNFr0qlnw3uI2JKZ8Q/k/TztSs7VGTIwr013+VlN2fReg/GWdLNG0ZI75SqnWXiBTpU2RtAWv4pBfkrnW/Sb2sP8AKflbafw7XiatVlMHfURhLqdWu3CPEIB4GFjqV6r5Lnkk7yU+Eg8q7FDp1haCa14NWxgSUb73pdH/AC6dSq7u4gD7LzjtRySSOSg0kgu4V4w67tf4gLGkW9GlTHcCSuRfdYubkwaj9MZystRvkL4ws8wY5QdN1F7i4hPpifTukMccN4K1UWw09+ELTmMEjK0tcBssrdXh/wDPyrovnLt+ysTcwB7TJhqWQG42wk+KS7S3dMcwuaAeeVqSs2owEmQVqZtJSKQawjU6O5T3uEQz6FNyCexOqim2Sip3ZLIA22WcsLsu+itrSCc4WL3+mpGltUvqAuO/CRdVWlwaCS7kdlQcWkxvwjFGHlziNRGFhskNEiREprGAYaM90YaMF3CsOALdLcpGDt6Lmvmcndb4OrzGZWemXkTpj2QVKrxgmY2lGa1Lgq3mJAMEbJHndMjCmsuOd04GRkey6TmsXuEObBEjCB4ETiU5zSTkZSXMMydlqcMXohwJn9kp7SPZa4IyRhA4Tx9E+I8owx5ojCJzY3C1imwnP2QvpgGVYZWZjC4+Ux2QPZpcSd1r0EfKgqtLz5hnZZw6Ck0uaQRIjBSKtKI3+q32Nanb1CKzNbDuNiPZdCla2nUGaKFUNqnZr8E+xWLcak15twaB6qgB9U27t321w+lVEOaYISsrf2FgIgEIMEfsiJBUlwJVtaTsoDlEHFuQihA3Yc9kYB5CEuJM8pjCU7hEwSQvafw+s21Oph7hluwXjmNgk7AL6B/C8a69V5EgYCx8nXo8c77fTaZ0gRhN8d8QXmO0rPqgbLF1S8faUC6nRqVah+VrBJJXlemeh9Y6tQ6dbOq13gHYDkleEf0/qXxR1Cm4ktoE4AyGhbaHwv1j4ivhX6kTbUAZDDwPZfU/hzolDplsyjREwMuO6YLb+Gj4e6bQ6D0ZtKkIdpAJ5JSa9YuklP6jcBz9DT5W4XHvrgUreo9xgNaSUX3TJjx/xlUq9QvWWVs0uI+Yjhek6XRNtYUKH+loBXlPhK9u7vqN9Xe0Otqj/KXDIMxgr2dDLvZP4H3Sur9Ofe2kUhLm5AOxXljRNJxa5uhzcEFfW+i2bX22p4kFc74l+GaV1RNa38tduw/1ehQft47oBIFQLT1S9bbUSAfMdgsdu49PbVFYaXgxBXIvK7rmq4uPmOwR1ca5n7Jq6q9QmfNOfVeh6PZ+GwPeIdwsPR7E1Hh1QYG/qvSNaAIAwFie/s9X8JlG0dkLRlGFpkUjkISBurhUJCkkcomu9MK1U5hSFqEShJEyMKaQo4R7KQ2uP0RjBSA7aE6SVJfOFbYQgwjwQoD04UBIVK2n0Tqx8Ncxzg4ueSwbDYFLApsO2p3ELUWU2yHHUe7jAWfSx7yKYLj/AMu0rJUQ8uBLWCNjwEFzRqvAJJeDvOBCup4zYFQ+UbBU5wqNaHOMk5JOAPQKLk3XS6VYl1OWP5A2XIuen16HOoL1wq02wwCXbdlnrkVG6XNhvZa57vLHXErx7tdM5Bn0RCu7R5gADv3XduOml+af2K5N1Y1KZ8zYPdd+fnrlfihLa1M4cGQmltsYAaFndRaRkR3SzR3gx2C6T5Z+mf4nQpWtFzomDxBTD04aZpukndckNeDhxlMZXr0tnbLXnzWfC/trqWNcOnSS302hOtbeo2RVZDTsSNllpdTqxpeYPBWy26q5zXMLdZ7Bbl5wePUCWAvhtMHiYT6NlUfl3kas/wDizKbocyEyn12hPno6x7kLU8Wc6rW23oUo1EuI4GUYAcfKyG+qS3r/AE2NJsZ9RUITmdf6YHea1fA41pl5Z8Ohsti90NBcScDkr1vRPhIVvDNeatRzpdQp4FNsbud69guJZ/FvR6EOZ0tj3AyC+oZBXRqfxHmmWUAy3ZERTEH7rHfVvqOnHxyfZvU7cULyozwWUtJ0tpM4HqVxrttUOg+WdgNlHfFFs8uecuJkuOSfqslfrdtU+YgDha5rHXFU8ua7S4nUguXPqNMYjEBC7qdo4gl220oKl/bPMioAt+mM6JIOnS4H3S305OMp/wCMoEf5rPqi/FWRgOeJ5KLikrD+GLsBQWQ3cZXR/F2nFQAD1Qm+tBtUZ7LLU5rBUtRp8uCNliqMLDDxldZ19af6x6JNW6st3OBJCDlcxzd9JwUtzDntytdS4s9WD9FmNxRMmZHCPTXv9EVGlwgHbYJIpQC7d0xC0OuqXaUBuKcYaSSjY1JVBoB2zwntBMY+iSKx3DPomNrPIxhGxZWpoIE91KdIN1OJ8s5Kzy45cTCtrjtOFTqfgeP7a2PosBc0y/gFKdXqPMDCUId7+ia1iL1VJFsE7/qtdMccJIboExKbS1uORAWK22MpgmSYaBlCDTJICJ1MOt8kykaS0Q0bbLDSnuDazAdyVie+tXvC1hJAOOwR1AH3I1zIWum8U2y0aQd/VbZtGyQNEy4ZJ9UynAjkrKypNQ+q6Framo6eO6ZzaLTaQJYQ3fsmMtXPMvwOy6FrahggDPddW16ZUrNDmths7ld+fjk+3Lvvfp58WLT+VH+CMYB9165nRDj+YJG4haqPSgyNTpHaF0yRz214V1mY2z3hCbHsCfRfR6VjQka2NPoRBWgdNsjH8kA+izbFJfy+WOsHjdh+yU60gbL7C2xtSzQaTHN9QsN18O2VcEsbocdo2WfOflqc18mNr5sBA+gQdo/VfRLz4UrMGqgGVAONiuHc9KqUSRVpFn/UE7KsryXhkEpVRp7L0VSwEmFlfYd1WHXCcwFpx5uEnSW+YYIXarWccLHcWpbT1TPELFjcuMtat+Jb/wDUGXtEB43+qxOYQYO3C0kaZgSgYC8Ec8BZzDukgFQDdG0ljwRgjgomgPJkgHeEWktX+qkRPZWB2UhNTWZISgSVt6bRNWsBGBui30pNrbWsgzpL6zhDiML2P8JRIqhcbqdOeiuaOG4XR/hJXDbt9M78heby16PHI+w2Fj+JLgTBAkDutdK1DMEbLX0sgXFMjYiCtNxT01nD1WZWmelTzsm3dcWtvpHzuRFzaFMvfiFw7q4NeqXnbgJtUC95OTuVyOtM/E25oaoa7BjsuoxpqvDGCSU676W5rQ478rK15/p9tStaTaVFoa1uwC69o2XNA5KQaGh20Qul0ekH3IJ2GU6nrbBwo2zWngLB1rqVK0oPfUcBAwFm6r1WlY0S5zsxgckr511jqda/rufUcdA2bwi+m+ef2X1i+dfXTqxw3YD0SbG1NxVbj6pVtTdVqDGDwvT2NqKFIYzyVz+2urh1tTFKkGARHKcJ4VmAAVbSIW3NAY3TGgEShBH1UEcKQ90D1ZJhQt1AQpI1wjKuBulaSN8JgBDf6qS5lU4GVcTlC4FSUN54TWOKU1MapGIgUEogRyoGagrlCrBUXxB9NtIgVCCeeUX4psQ1oaBgEYKzvJcDiSNgggMjUJJUjKxMZP0S6DwanmyBmIUAJOTujZRlwjJ/ohB1Elzg0A8AcIBqc7IB9F0GUiSO54A2WqnasAlw3xHKkwUKD3u2x3Wg0GA/zGjT2OZV3t0LVxp6CHN3Az7LmXFatXODoB7IIOoWVrUcfDpaXH/Rhcep0wGdDvuutTo6MlxM7kmURbMkAwmbBZHnq/T6rR5RJ4hYXUKjTDm5H0XrC3kYjeUqq0Oflu/dbnTN5eUfRMZwgaDTdqZg916OpQoE+ZsHuFnqdPacsMj1C1O8HjXnbp762Xu+iykH2H2Xo63T5Ehgkdlgr9PqNMlpH0K35xz8bHLnScFXrIG0ytLrct3CWWkSCMcpl04VJ9lashCcBOpRJiJlCXO2kxwijEn6ISPpCtV9ICYyUWo/VL9f0TQeOFJByo3MmSPRWNsIYVtKiSraATlW5wgYg+iXqOYwFewYI+U+ZvCW9wB7jaVJJGMeqp7ZaATPKkOAc90bQBGoAtPCFoAAEzhUXZxypCLQXHSIHATWUsTsqofMM/RbXMeWgtiOQoECiN0QZB3RBzxhwjuoNU9/VMVQiQFAII4RO82wiFA0Dn3WozTGNyAnhpkenKBjZyPNG6MZOfspk2i0ueexOAtQbsI25S6DgKpZGeCtRaPYLNah4ZFuNs8LI50OAOy1zLABsgdRDYeRJ2CpDawGk0vl3zu/RIfq+UZ4WxxPjNkQBKGhSD6u2XFb5n4c7TOm2bqz2tAkr3Fn0ajbW4rXbtDYkDv6Jvw50mnY2Rv70aWgS1p3juuV1jqrr6qTJaxp8rBtC9HM/Ec7+67nTrm3u7k02UQGNbgncrrtcGuLQIjaF4vo114HUKTj8rjpPtsvaFudX0T1MUGHog44z7pbXAiOQpEIFO1AqNLmDyGfQrNVrClTLzwuXW6nWaCWjynYrU51mvSUq7XGJ0u5BWltTC8d/ij3iHNBcMyN1sodZYPnD2kblV+OqfJHq2uVvYyq3TUYHg7yJXIteo06sFjw8HjYrpU6oeJB+i4dcY6zrWG56HZViXCnoceW4XMuPhZjgfCqwezl6Q7IXOI9YWN6jWSvnV90mtbue0wdP6rh3lsHNJDdLhwve/ETmB0s+Y7j1Xk7uoCxwxng9115trF5x4y4aWPKWwN1Akx3hdK/YC6d5xC5b2lriP3Wupolw66Yx1EVKbg4jDhz6FY5OyOJ25QRC5Zjpo2uIG0g8FVHbZW2A2OVEKLZM/svSdDt/DbrcMkLhWVE1aoAHuvYWjA0NbtDVw+XrJjt8XO3Wp9HxumERMghcP4Iuj074jayodLS7SvT9NIfbvZ2JleT+ILV9nftu6IiDJhefm+3os2P0h0eqKjKTgcghdq5IDy52AMlfOf4e9fpdQsKFQvEgBrx2K9P1vqYqvNOi7y8kLbBXUr41nljT5GrDqJSdXKR1GyuupdNurSxqGjcVaZY17XmmWgkB0OgwYnMYRf2Z79O70Lq3RbS6qtvuqWNK4pkNcypXaCwxs7ODnY7L1XUKDXs1CIIkFfJK/wt0To3wff0utdRFt1N1J9ZlOjWaS3llOnSLf5g8oBlpLs57L6B1nqXSv4XXVvSD6F3VvTa2YmRbMfoDy0zOhjzVA7aYGwXk5/qO+bny8yerfvcz9+o9d/puepvxdb7k+s/6e69L1bqnTqPUzYvvbZl2HBppOqAODnCWtInBPAOSrPVqfTaLhE1jgDkH1Xyq36cyr8NV3s1Mru13DKDyKlE02ToZUG7y5jZLi6Q5wyNMLp9Ae/8JXtX1X1HWlTw2F5JcKZaHMDjyQDE84V8f9Veupz1Mtmz3vr19+p79w/J/Tc8y9c3cuX1n/t2eoX1W7ql9Z5zsOyz0CanliSTAjcpZ/mRPHCyfErha9KYyp4obcFzqgp4Pg02l9QT6w1vB866fL8k+Pm936jlxzfk7nE+69D0etYOufw7Ly2fdyQKTagJkbgZyRyBkLvGo1jHOqENY1pc5ziAGgCSSeB6r5z1H4fZafBtre3NSoX0SyvcUmhopBlQgEU2gDQWamlpBkEGSZXSurW/+JvhTp1Ok+nVubatUpXdO6cWtqVGNLWl4DSHZLXkRGVz5+fubz1z/dmyS/f4/Oe5+W+vg4snXPXrcts+v/L1Np1bp17WZRtOoW1atUBdTYx4JqACSWjnGccZWxpIXzv4tsekWthb21HqD7i5pOdTqU3XLXva0U3F1QgCWObDYI0xMQV9A6eXv6faOql5qOoMLjU+YnSCS717+q38Xy99ddcdzLJL6uz3v+J+mfl+Lnnnn5OLsu/cz6z/AH+2psKVHso031Kz6dOkwanPqODWtHckmAra2F5n426FfddfY0rarRbaUtZqNqH5XktDagbpIcWt8SAcatJXXu3nm3mbXLjmddSW5HdsupWF/UdTsry3uKgbqLKbwXae8bx6rS+oyjSfUqPZTpU2lz3vIDWACSSeAvmfx106n06+sW9Hq3VW+p0DVaHva59Jwc1tJ7DAIe95LSPlcJxhdb49p3HV/ia16NbQy1Y5kOdlup7naqmnZ2im10NM+Z0ry3+pvE6nc/ulk9X1bfr9f+Hp/wCFnV5vN9WW+59Sfb2Nhf2fUWPdYXdG5DIL/DcCWg/KSN88HYrS1pOBmeF84+KemO+HurWfVel3FSKdN1Sbg+I9nhxqaSI1U3sc4FpBhwkRMLtfGtv1PrBoW3R3sHT30KrrltWroZMsNPWB53CA/DYk7mFvj57fLm8/3c56n+fr9Md/BzPHqdf2383/AB9/t6ehc21yHG1ura4AMONGs2oGnsdJMJVe/sqFQ0rm/saFQbsq3VOm4ciQXArxX8L2s/EX9SlRo0TVsbGo4UqYptkiqTAHuuz1X4I6R1Lqlz1C4detuLktdUFN1OCWtDRAdTcdmjlPxfN383xT5OOfd/G/+8v/AIXy/Dz8Xy34++vU/Ob/ANtjs0r+wq1Qyj1GwqvcYayndU3uJ7AB0lbG918u6B0m0qfGtOl05gqWdnd+MyrV8N1QeDhxDmMGHVCGgHhjjOwX1Jo7bJ+D5evllvUzLn3v1/8AU/0z8/xc/FZObuzfrP8A3RDO2EQ3VhpjCsNzld3BAYKMIIyjHZSfEBTc14bvzhFVow/z5ngLf4Yc9zdgOVbKAMkiSNiUJzjROABHYLVa2z9JcecLe2mxrdTyAOSVnr3rWjRQbqPc7JSO8K2YScEblYbi4dc+WkS1vflE9xq7tnuVNAYwxtGSgsD2Bp0iXHudyra0RJz6JukT6eqF5Ew3PYpAA0AH+iFxER3VucM743KWDqnJgbAd0JHkNHyzjMpJcXHbCJ+tzu/JTfCinqOOwUWYNGuQJIUeBADRnf2TNBnJwr3nkpRApgwdlZBMtIkBObMepwAh0wD/ANygANrQcw+LTZMYMLn1ul2zx5QWn0K3vc4kCMcoRt5ck7p0Y4dbopz4TwTyHYWGt0u4YY0ah/y5Xq/DHJg7+qW5siW4PKZ3YPGPG1KNWnIcwj6JJaeQvbPZAGoap35SXWdvWk1KQHsIWp8g8HjC2DKtpIGd+y9Wek2k5pkF22SkO6BSyW1SGjuJytTuM+NjgNqkU3MHKBrZOV063RrlsljQ9vBBysNW1r0j56b2kb4WpZRhD2jgoIIORgpha4CNlWyQBp7ojkbKtIJ9VC08HHZJ+zmup+GdTTr4KU5rSyYOoGfSEJL2tzujpulonfsoJTcNXIW+lWAaBOVg2PvsrDoG2e6k6JeDPZQO0gEFYWVT8spoce+6sTRq4VtHmCVq7LTQLWsdqEvOxWoK1suXhhDWsHBICuk0aws4cCRH1TmHMnHZLOH+CdYcxb2jDZyVmY8QI+yeHlxgfdX2jNQb7IrhwcA0bNHCWxj3EjadvdE22q+ad3AyVqcs651R81YBkBeu+B+jsuKrry+IZb0s+bElefsLWkbmKx911/iLqTXVhZ2VQMs6bA0BuJxmV0kz0P8AbqfFXXGXbxa2rpt6eAe5Xmw7O6Xb0HXD/I9k+phdOh0Kq/e6otxPzLfN8WOvbPQqaXtJ+WQcL6BRuWVbenUY7U0gQfVeUp/D+03dL6FdW3oM6YwRV8Qu/IDj3T11KuZY7UhUXwPRcqp1ehSdpqHSVot+oWdZmkVRrJ+gV9TVloOrVCLQwckwuVa1Jpmk8aiflPZdi5s3XFMtY9h5BB5WW0sa1GrrezU0CTC3x1zeXPvmypb9Nc9suMTsmM6TqrCnriRMro069OAJj0K0W8Pr6uwgBN7rE4jiV+l3FqdbMhvLStvTOqltUU7g6SdnH9iu61s4OZXM6v0gXFN1W3GmqMkDlY8pfVby8/Tt0nio2fuEu7rMoUS9xwF5bp/W32tM0q0l7RAJ5HYrmdT60+qHy4hu8Ll18ft256mD61fCpUcdgV5a/uNROccJd9fFxMH2XLq1XPO+eFuScxjq21dZ2qcrM95dEmYVlxBgqnATKL1q8VaRBKVzsmvdDYGyVIyudrciH0VDJxupqWzplua9cDgZWLcbk9t3TaJp09ZEOOxXfttb2hxOe6zPpBtMNG4WqxcNPtheTu+VevieMbenVfDuyw7PH6pvULQV9TKjfKdisNbUx7ajN2mQu3Qcy+tQ9p9xy0rlfV1uZXmOmi/+HeoGvY+ek7/MpOOHBfROlfEVl1CmPOaVXmnUwQVwTbDQA/zRiVmNpSDjDSCDlanYvL3rK1I/8Rn3Wm567ZdE6ZVuqn85zS0CmxwBcXODRkmPzSfReBFItDdJfB9VdS0FxSqUazQ+jUaWua7IcCMgq662ejzJL7+m/wCIeq9G61Rq9ZZUq9P6qyiWE1arYoupl+ltRuQYLjMHIPdecs7p9l0F1IkGzsq9CsWMBPgU6hDnt3k6S4kTmHCRha/8DosIfVunucwAMq1aFKpVaBt/Mc0uJHBJlarSjaUbJ1pbUtduZ8Q1POapdhznk/MTyT+y+ffg6+W2/JJNmXPz/wDj3/z8/HJPjtuWWb+P/wBYqd/RtugXDazmMrU6b7V1JzgX+JlrQB/zS0j0I9Vq6DD39Sqsdqa+4FM4wHU2NY4AznPP0WVvQ6QDW07u5Y1oDWEBhq0m8tZVLS8D6yAvUdH6Yyjb0m0aLKVvTGmnTbsBun4vh+S98995/bM9f/Xv/sx8vzcTjrnj/wCV3/8An/cHTKllU6t/h7rhn48NL/A0uBgAOJmNOzmmJmCs/wDEC0fUsrR1OAHeNZnVgA1qZDSTP+prRzOpd+3sbBnU/wDEW2lNvUC0t8fMkFoaRvGzWjbYLbf2Nr1OyrWl7RZWt6rdL2O+4IPBG4IyDkL0/L8X8vxdfHfy8/xfLPi+Tn5J+HlOt39rf/AVKjQuKQqXtOhbU2F4JDg5hcCAeNDp7cpfSeu0uh9HtK11b1ns6nVuL/XTjRRZraMmfN5P5mN2yQMLePgbpxqONevdVqTgGVAfDa+q3HlfUa0PcDGZOV2uq9GtOpdObaVGuo06cOom2d4TqBAhpYRtAxG0Yhcp8fy9dX5Lk6kyfn/N/wCv1/h0vyfFzzPjm2bt/H49f9Hj/jHovTjaNqWl4X/jrltKpQ8Vrm1WvJJcyBILI1iTENcDwvW/C/Ua/Vfh/pl9deavdUG1Kjh+Z2xd9Yn6rhU/gnpzKk1q1Z9J2KzKdOlR8Ycte6m0O0nkTlevohgY1rGhjWANaGgANAEAAfRa+D4rz313eZzuep+/2Pn+XnrjniW9Zvu+vX6Z+m9VsepeM7p9yK4ouDahDXANPG4E+4kLD8U9fZ0a2aykxlfqNZpdRovJDGtHzVKjvy02znknA9N/T+m2XThUbYW1O3FQhzwwmHEbbkrP1TolLqVdlZ9arTc2noPh6SCJJEgg9yt/L/NPjv8AHnl+P05/H/F/JP5N8f8Au8f8GWDOoXn+OdXvKVWm94rUjWc0VLuoJDazmz5KbZ/ls+sbLd1+9Z0346tq92C238OjWFTAApy+m95M7Nc9s+hXUd8I21RrmuurgtcC0+WnkRn8q6HVug2fU7K2oVhVY61aG29em6KlHyhuDyCAJBkHkLycf0/yX4vDrmSyyz3u2Xffqf6err+o+OfL5c9Wyyz6zJ/j3fp5r+JF7bVG0rJtUPrGhVDxSioafiFtNkgHJLiYG+CvY17VlKjU1NAqsolhI7hsH9lxejfB/Tum3tK6Lqtw+idVFjm06dOk/wD9wMY1oL+zjJHC9I9ge1zXfK4Fp9ogr1fD8XU66+Tr76z/AKR5/m+Tm88/HxdnO+/9vAfwr+a5/wD9d0//AP5qr1PxR1Gr0volavat1XlQi3txnFV5hrifTLv/ANVXQPh616F4n4SpWf4lOlRmoQYZTBDAIA/1GTymdd6LQ60LZtxWuKJty9zDRcBl7dJJERIGx3GVj4fi+T4f6fwn/NN/0183y8fL/Ued/wCW44P8OLBlHplW+adTbiKNB5YWk0acjVt+Z5e/GDghevEpdva0rS2o29u0U6NCmKdNowAAAB+yaJ5Xf4finxcTifhx+b5L8vd7v5NYTxujOclLZ3TAAV0c0iBlWByFfCoOAwpPltGi2m2au7t/RZru+oU3BlI6zsQ1Yqrri6/zKkT+UYH3U8FlKnuJUtSrVZVcdbnyNgOEltNwMg77JoaXDUBgc7ZU1AQJzyFDVwARBmOUqs4Egbgbq3uMwBpB3PolOIjGfVS0LiNJ7EJLgNxtwmmXEE4HCmgveGxJ47IpKxpHLp+iEDS2IzvKMtNJ+ckcKtRc8FwURamU6cFsv3JSK1V1R3bG3oicDqLokoW6nOJ2HJUtRsjcSFUjIOJ5QunVDZ91Huk+g3UtUSZwPRLc52qDsmQT5uOUVWBtukFaf9R3VyB8mI2lW1k7GXKwCSA0emcqOAkxJ+Y8Kg0AzGP2TnUtLJeM8IAwaCSd+EAuCSTvwELW+YTutLKILQCQOwQOYWEyM8BUOEwXPgbd01zWyGaxBOCUBaRTnk4A9EDKRcRO3ZQG5oa8BrpbzGyIsaZEAhEG4I7KAQ3CUyV7Og8EOpMJOBhZq3RrR8QwsMbtK6T8ERkqyM53TtGRwKnQWF5FKrHuFkqdEuaclpDgvVAQ48Sg0zI9Uzqjxjxtbp9yz5qR9xlZXUntEFpaZ7QveeGCED6NN2C0H6LX8g8Xhjtn5ghOV7OrZWzzBpMyeBCyv6LaukQWztBTPkg8a8oQMEbplN3C7tXoLMmnVO2AQs56DWH+W4GVrzlGVz2vgrUwh7Y2THdHvGCdGqN8pX4a5Z81J49gtTqMnBpGeE1rhgn6rO19VhDXNMHfCax4Bzt6rUrNjax5Alb7GmarvKCQVyhVYI5Wml1F9FrfBEO7rrPH8sdS/h7zpXRKTmCveVWU2b75XP67fWxqOt+ls1AjSXRme4Xn2dVvKtEse4lhP2TrSQNTT5nYWfe6vUmE9OtXh73VHEmTCG/tS1xeO0rtWts7TIGefdHe2pBEtxHK6aw8wxrhBEg88IajqrCYqGR6rqXTGA6B5XTgLBegNaGjLjupraG36hXpxpqER3Wqr1q4Jlx1FYhRLaWtw9llc7JhZ9Ha03N9Vru85V2F0+nWbNSAcSdlhy7YJrKTzgNJT5ZBltdav1i5puDaVd4jctKKl8QdQp7XLz7rBSsazxOmB6pwsHCC7dZ85G8ro2/Xr2q/SXB61f8A8QXdvpzE9lzLe1a14cH6HBaxY03EOcS5H8+L+K11rb4yumRqGpo7ro0vjsgQ6hledbY02yIA7KnW7IkNBWf+In6M+GmdQ60LutUqNYWa8wFybi6e+QJhbHsaz5RlIcwEE7Kv9R/hfwMLaT3nYlSpRe0AuEDglbre4NtVkt1N2goOpXQrhoYIHIWL81rU+KOfVt6gg6dxM+iz5GO24XRt7p9EBj/MwGQeQuqyjb3NEVGtZq5A7rP81n2f4pXlnTuggnIXqTYUHGH04HcLPd9NoUWh7J0cgrX88o/iscBjZgE54XqOl2Pg2japHmdkFYLbpjXu1sdqjzBvJHovQ9LcLi0NIGS3zN9e4XH5e9np0+PjL7Z6zogkSDyhovNN8gw0rRUozLTxt/ZZnMmGjBXLXb846AJcyeOyBjq9pXFW2dEjI4cOxCu3gM0uMJ7SA6NzCtWN1Hq9vUH85ppu55Cf+LtTkV2QuQ+2YRkeqX+FZMmYRkO12XdRtaY+fV6BZKvWZkUKeO5XKNNjSchMogOdpYJTkg2tVI17uoPEeS3kLq0nCnFOmNTjgAIOmWb63la0juV6Sw6bToZAl/JKM1XrCOndOJIqXHzbhvZd6k0BsDbslsYQjEt9FqTGN0zSGiAMIg4NEb9is9WsNJ0uGoJdJxquhxgpLfTqjIlMkLH4LoDmme4RUnGYcSCNgpNQpyM5VBhGyjKhxOU9mlwwcqBTXHlMGBgfRCWkHbCoGD6cKRgM7b8hG0Qe6BhBHuiEDE/VSWRmOVAcqg4h+Y0HY+qaNLxjdSBgHHKFE9vHZUI7p1KPeUBn3THAcfZVplVEUxx9k5jhsUktKg3wgtIdKhwUmTG6NpnfdSfHWMIcTuBygqtzqOAOE5ryZI+Y8pb3AiCZ5IUiS59SB8rAq8NweABLv0VlxJBIgcdlZqE+b7KBel5JJMd1bWgDuUW7STKtrQIicqRRZEz9FQncAydj6LVVYA2dWRwlhp04+VRI0jXDoLvdA9suj9FpZQ8RxbTcNfblXVsn0wNbw0xMcowaxnDTG2yzvAECSZ39FsdRJdAIj1V06BD/ADRpGSUlj0TkYb3RFrdMNH1TajfMQBLZwQh0FoHcyhE6CDB22EKCmd9yN5TtGBmCqIIEHGPupBc3S3SAY3x3SxOmYIATnatLZBkoGseTA54SYCCT5j9ELokDYJzmCmDrMu4WaT823cqAtQg6TB7lWWEtDi/UDujo0DUaXkagNgOSrd80aYCkU5muBOOAmU2lok/dE1ri4uIiNgrLhpwc7KRZaRJVRzwo5xgTyiZ8sdlIDWmZGCrDTJRPMugeiqMxypBBIJH3KHG/ZG1pz67qAb4+ikDEShAJcD6YTXNEGMgISMDtGVIBAkoY8/tsnEYHdQs54MYUi6bZfBGOU2AAQPoUTWwSPsj0hpz91AlrTqwcbqBo0kEZmUbQQ707o2085BzuEogUQ8GQDBQVLGjUaZZnkhbW08RtOFGNAlo3jdOjI4lfpQ+Zjvok/gXsaA5mrO7V6CnSOZ+yvSACBuMhandjN5lecHi06mgsIYdjHK7NuxlG3a+q7S52wG6doFdpBzGQqNuxwh7ct2K6T5cYvxOh06sx1Nzi75dwVmv+oh4qQJA27hIp09DTB33Cn4UEE6eJgrV+aD+OuLcvfVra2zvhbKbWObNSiS4x91tbRZEBsSrawQZ5WOvl36M+NmfS8WGtYAwZA9Ul3TaIqHlpXQI0jA3wVA0TH3WPOt+EYm2dJuQ0SnCk2NhhaGsGrJgIXgAw36o8rT4wst0iOEBbPrCeGmN5U0zhu6tJD6Qdkjzd02gXsAJPlRMbJg4d2W2hR8VzaTR5ic+yLTCtWs+UZMI6tMMpkn7LXWpstqmljZYMFD4Yqw4/LwEaXOFIRqIyUqpTAaeV130gNh7rO+iBOJTocU2xcZjy/wBEurQDRge67RomJhZK1InfZWhxqlP0+qK2qVLd+ph5yDsQug6hvHKptsYUpcaqFxTuMtMO5a5PNM1KTmPbIPPZc0W8Olu47LVb3D2GKmR35WLG5SqNLTckaizTkELdRcKFTxaRBY4yY/KfUICwVDrY4eo5VUop0iYlwMEcEIrTqaWXDPFo5j5gOCsde2Lna2bjgf0UtppVPEt3aSRlhXRpNFaC5pY459JWfr6NY6VI1GTU8h2lIgUnEl+rsupeU3mo1gZJOCdkH+Eh0F/7q2LGCldB5cCYAWSvdPqv0UQYHK7rOmUdURIK6Nl0ugwyxg9SmC9PNWfS7m5eNQLR3K9Z0jo1KlHiZB3PZdKhagZAldGhSjYJxjQW9q2i7SyNI2IWzSRCum3KeACO60CmxyqeAQcJkZVloPuouTVZB9imUYBz9CtVxRDthBWXSWbqOttKoQByOQqe8apiCs7HiMJzHanQVKNVMg57plIhrjwsZB4Kum97HQ8Y7o1Y6LXAn3ROp6hj9Eqk5paCE7nCQVpI4TB5sHCIOg+ZGWjBbkKRLm+Xu1VSBa4ZwmHHp6Kw0EYUdW+Cl6TONk4bQfoqxyoADVcfdMLQ1qWTjG6Qoj/woW4V7lVypatrYVkdlXI7qwYQXxdznOExDB9EVMgjSRk8pbmuIAP2VU2GcGTyOFI4w4SQSRsELKcg7mAoBkgbcp9JlRw0t+XmP7qBVKk+pAaPqdlpo2rtR8Q7ZkFGHsoS0DU4bngKMqh4gmJz6KKg2hTOp0vPKqs+lcNIpRTbykuqEOcxuZO6s+E0Cfm5hSPoOo27JYIcPzclBcua4aneaO5SGEbtBwZygq1NQOrDvRSKeORjVsOUqKoOifm7JpiQQfoqzBjc8qRWktGcwdlZaM5kgJmiQC7JKjNLGHHoFJn0+aSE3wp83PCMMAJmVNIiST6AKRTGl04k5VglmTEcqnuc0CBAIzHZIqefAkN5lSBUq+I4wMA4VFhdDQcco2UwRsSJjstIY1jXOG/qpBptOh2kw0eVC23JMprA55DWtxvCJ7HwNTgxhO6kzlo0uAPoSkuaAO37rS5wazSI0jlC5hjIypMxBgTxsrIAjuYTi0jG/p3VaZcOygBoHiSf0UaRqyi0uFTA8oOSmGj+ZuCpEgHgfRXnSTGUym3drhk8pvhg4iG91JkOW+UQZV+CYBdhaQ0NLmgSe6LcCRMKLL4fygDPdMDJGy0ATOI9FYIa0x9SpMxaNfuFCwuM8dlq8JppgDJHKttMluTgKDLogyNkTnHfuExzS4QMcKw2WjGyYgOnGPVVpAfMbpsDRjcYKgadIkKRboDwBxlLqNcHaiMLSWbHYjCY0a2w8YHKgyBmlwIHKNw07hOeWsZDPM4IBLh6qJdOnqfJOOU1zWuO8cIyNTYGO6FrDupFOocg/RU6iCDx2C1QBA57KFurHKg55aGDueVTGhzsiCP1WipQIMkSqNMgQB7FSK2wfuo1ue87KzTJK00qJMY+vZSZgwiTsjZSJMxutYoF0g7rVSohlPzZPEpLnfhyMnjK1dNYA99aSIGkKVAXVNI27rXSttUNY6BEz3PKyYzeC+u8udhk49VsFABoA42Ww0GhzGbNAkgKyzkbSpOe9gIj7lZ3sjEbrqvogEmPKefVYLqmQCRuEwVmfSGnOyy1KOqQAt9N2tsFMdRBZjcbKTlNtgaedwdlbKMrpeED5XYkZIVsoBpjcDlQc42smYQOtQRsuyaInCY23/8ACi4NO0c09vVN8FwHBHZdo2/EKG1CKpXGbQDohmfRbGCrp0jHquhRtYzEAIm0cmEYdZWNqu3dJG5WijReTJWmnRDYzIK2U2NIgKyLWelbntK3W9GI8uyOlTjY+61MogZD4SF0mARha6cTyltaB+bKayZkOUTGwMoyAdjuhyRwFATspLkwoCqc49kIJnKkdpMTys1duTjC0NdiJSaji4HlSZmN80BaBTIbJGO6luNbgCNsArTXhrIGIQdZZxP0TaJ1YWdrnF2mFqotUmymwBvYprW59kljvKtFNwgJC2tBBB39UDiWfKY9DsrqTOpuUAfJAITg+hNc1+Dhw4Kmkt9VAWOkR7q9D2iWnUOxQU1ZzhFAI/ZAHBxgjS7sVckEYkJSF+kaTkIWgSTsO6OZ3EqaSAYHlO4QkjeEKJkAxwo5pG2yUHMYVtk77qAYxwpqOyg+MGm7VAwD90bKTmTOARuVFEKI0idIwFoo1XMGM9hsFFFrFQ1GvedRwDurZTIaIMcqKLJQ04J14J2UFAR3HcqKJqIqQwO78ALM0SZd9FFECi06WzM4+ytjXESNgoomKCeIAM8RCBuZcQIGB2UUQRapB/7wlEEyfoAoopAqkucMTHZUaRMOgwcwoohDpsDGmck7She4hvf27KKJCHW46h5TsCic3yQ7JGw4UUTUjWaRJE4wrawvGAcYlRRBWKRf5QJI2RhmlpESVFFCI1hBzsh0Fzoj6KKKUE2mAZ9NlTZJ2gDZRRRVpg57ImNyQeyiiYhGGtd3SNZMgdlFEAyjJmN02NxEEqKJVAdQJB5RsAwO6iiksU5JxgpjGAFRRTMUWhrpO/dLfUaTAwooo0IYDgAzuj0xgDdRRSpjGz7conNAAxvwoohEPohzg87jsmaTGON1FEhbWua0zlp2CFtOTjnZRRRo6dAgaiJE5C10aTXEgDbdRRRhzWCMtykXIDm6Rv6KKKiDbUXOdp/LyVufTNA03MiDgj0UUQ1Gn5qRcG+aNlUSxoA3UUUqFzSAWn3Cx1z5YAnuoomM1i0w6RgdlpY7ykBRRIFTomZ3KfTokDPPCiiqIdRaGPkgHEEHZW2n2UURDRhk8KCiTMZUUVTIPTDS3nsibRjMZUUQTfBERz3RBugCRhRRQjVScx8ad+QtAkcKKIjVOpQcwmBwB2hRRIFIiRkIZIUUUha53CAlRRSHqxCEt1HG5UUUmqlS8Nsztv7pFRxec7KKKS2NHG6eBuoopIx0+hTWO4CiiUMPKt0GDyoooCa780ZCMVAQe6iikslrx5gPdQNLflMjsVFFUiEEzsUWQc/ooohAIBJn6FV5mnO3CiiktjhJkY9FbmgiQookP//Z" }], "parameters": { "confidenceThreshold": 0.5, "maxPredictions": 5 } }
  1. Save the file and name it payload.json.

For reference, the content you supplied is a Base64 string from the following image.

  1. Next, set the following environment variables. Copy in your AutoML Proxy URL you retrieved in earlier.
AUTOML_PROXY=<automl-proxy url> INPUT_DATA_FILE=payload.json
  1. Perform a API request to the AutoML Proxy endpoint to request the prediction from the hosted model:
curl -X POST -H "Content-Type: application/json" $AUTOML_PROXY/v1 -d "@${INPUT_DATA_FILE}"

If you ran a successful prediction, your output should resemble the following:

{"predictions":[{"confidences":[0.951557755],"displayNames":["bumper"],"ids":["1960986684719890432"]}],"deployedModelId":"4271461936421404672","model":"projects/1030115194620/locations/us-central1/models/2143634257791156224","modelDisplayName":"damaged_car_parts_vertex","modelVersionId":"1"}

For this model, the prediction results are pretty self-explanatory. The displayNames field should correctly predict a bumper with a high confidence threshold. Now, you can change the Base64 encoded image value in the JSON file you created.

Click Check my progress to verify the objective. Create the prediction request

  1. Right-click on each image below, then select Save image As….

  2. Follow the prompts to save each image with a unique name. (Hint: Assign a simple name like 'Image1' and 'Image2' to assist with uploading).

  1. Open the Base64 Image Encoder follow the instructions to upload and encode an image to a Base64 string.

  2. Replace the Base64 encoded string value in the content field in your JSON payload file, and run the prediction again. Repeat for the other image(s).

How did your model do? Did it predict all three images correctly? You should see the the following outputs, respectively:

{"predictions":[{"ids":["5419751198540431360"],"confidences":[0.985487759],"displayNames":["engine_compartment"]}],"deployedModelId":"4271461936421404672","model":"projects/1030115194620/locations/us-central1/models/2143634257791156224","modelDisplayName":"damaged_car_parts_vertex","modelVersionId":"1"} {"predictions":[{"displayNames":["hood"],"ids":["3113908189326737408"],"confidences":[0.962432086]}],"deployedModelId":"4271461936421404672","model":"projects/1030115194620/locations/us-central1/models/2143634257791156224","modelDisplayName":"damaged_car_parts_vertex","modelVersionId":"1"}

Congratulations!

In this lab, you learned how to train your own custom machine learning model and generate predictions on it through the web UI. You uploaded training images to Cloud Storage and used a CSV file for Vertex AI to find these images. You inspected the labeled images for any discrepancies before finally evaluating a trained model. Now you've got what it takes to train a model on your own image dataset.

End your lab

When you have completed your lab, click End Lab. Qwiklabs removes the resources you’ve used and cleans the account for you.

You will be given an opportunity to rate the lab experience. Select the applicable number of stars, type a comment, and then click Submit.

The number of stars indicates the following:

  • 1 star = Very dissatisfied
  • 2 stars = Dissatisfied
  • 3 stars = Neutral
  • 4 stars = Satisfied
  • 5 stars = Very satisfied

You can close the dialog box if you don't want to provide feedback.

For feedback, suggestions, or corrections, please use the Support tab.

Copyright 2022 Google LLC All rights reserved. Google and the Google logo are trademarks of Google LLC. All other company and product names may be trademarks of the respective companies with which they are associated.

Previous Next

Before you begin

  1. Labs create a Google Cloud project and resources for a fixed time
  2. Labs have a time limit and no pause feature. If you end the lab, you'll have to restart from the beginning.
  3. On the top left of your screen, click Start lab to begin

This content is not currently available

We will notify you via email when it becomes available

Great!

We will contact you via email if it becomes available

One lab at a time

Confirm to end all existing labs and start this one

Use private browsing to run the lab

Use an Incognito or private browser window to run this lab. This prevents any conflicts between your personal account and the Student account, which may cause extra charges incurred to your personal account.
Preview