The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Get RePA_Sales_S Supporting
Before $144
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Price: $75.00
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Price: $69.00
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Every candidates, whether he is professional or fresh entrants, intends to move forward in his career and become Supporting RePA_Sales_S Routing & Switching Network Devices certified professional. But the professional knowledge is not enough to pass, you need to have a strong grip on recommended RePA_Sales_S ) starts the input string and designates "AS".
The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
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NEW QUESTION: 1
You have a Microsoft SQL Server database. The database contains a table that is defined by the following Transact-SQL statement:
Employee names must always start with a capital letter.
You need to define a constraint to enforce the employee name requirement.
Which Transact-SQL statement should you use?
A. Option C
B. Option A
C. Option D
D. Option B
Answer: D
NEW QUESTION: 2
Refer to the exhibit.
Which AS paths are matched by this access list?
A. the origin AS 64496 and any ASs after AS 64496
B. the directly attached AS 64496 and any ASs directly attached to AS 64496
C. the origin AS 64496 only
D. the directly attached AS 64496 and any longer AS paths
Answer: B
Explanation:
If you want AS 1 to get networks originated from AS 4 and all directly attached ASs of AS 4, apply the following inbound filter on Router 1.
ip as-path access-list 1 permit
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
We offer RePA_Sales_S ) starts the input string and designates "AS".
The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
To secure your investment we offer 100% money back guarantee. If you are not satisfied with our products you can claim for refund. For further detail you may contact us our customer service staff any time. See our policy…
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
To make your learning smooth and hassle free of Supporting
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Three Month free update RePA_Sales_S Certified Technician Routing & Switching certification exam preparation material comes with every deal. You can avail free products update facility for one year from the date of purchase of RePA_Sales_S ) starts the input string and designates "AS".
The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
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specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
-exam-questions.html">A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
Few weeks ago I got 90% marks in RePA_Sales_S ) starts the input string and designates "AS".
The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
Exam. I just visited Utazzkalandmackoval and bought their perfect and updated exam dumps for my RePA_Sales_S ) starts the input string and designates "AS".A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/
The underscore (_) means there is a a null string in the string that follows "AS 4". The [0-9]*
specifies that any connected AS with a valid AS number can pass the filter. The advantage of
using the [0-9]* syntax is that it gives you the flexibility to add any number of ASs without
modifying this command string.
Reference: http://www.cisco.com/c/en/us/support/docs/ip/border-gateway-protocol-bgp/13754-
26.html
NEW QUESTION: 3
exam preparation.A new algorithm has been written in Python to identify SPAM e-mails. The algorithm analyzes the free text contained within a sample set of 1 million e-mails stored on Amazon S3. The algorithm must be scaled across a production dataset of 5 PB, which also resides in Amazon S3 storage.
Which AWS service strategy is best for this use case?
A. Use Amazon Elasticsearch Service to store the text and then use the Python Elasticsearch Client to run analysis against the text index.
B. Initiate a Python job from AWS Data Pipeline to run directly against the Amazon S3 text files.
C. Use Amazon EMR to parallelize the text analysis tasks across the cluster using a streaming program step.
D. Copy the data into Amazon ElastiCache to perform text analysis on the in-memory data and export the results of the model into Amazon Machine Learning.
Answer: A
Explanation:
https://aws.amazon.com/blogs/database/indexing-metadata-in-amazon-elasticsearch-service- using-aws-lambda-and-python/