Difference between revisions of "161-A5.1"

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(Created page with "In this module, you have learned that it is possible to synthesize extremal channels from multiple copies of a given binary-input channel. In particular, the binary erasure ch...")
 
 
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== Task Description ==
 
== Task Description ==
Your task in Module 5 is simple, given the erasure probability <math>p</math> of a BEC, you are to count the number of synthetic channels with erasure probability that is better (lower) than the original BEC.
+
Your task in Module 5 is simple: given the erasure probability <math>p</math> of a BEC, you are to count the number of synthetic channels with erasure probability that is better (lower) than the original BEC.
  
 
You need to write a function <code>count_bad_channels</code> which will take two arguments:
 
You need to write a function <code>count_bad_channels</code> which will take two arguments:
 
* <code>blocklength</code> - an <code>int</code> that is a power of two, denoting the blocklength or, equivalently, the number of synthetic channels produced via the polar transform.
 
* <code>blocklength</code> - an <code>int</code> that is a power of two, denoting the blocklength or, equivalently, the number of synthetic channels produced via the polar transform.
 
* <code>erasure_prob</code> - a <code>float</code>, a positive real number between 0 and 1, indicating the erasure probability of the original BEC.
 
* <code>erasure_prob</code> - a <code>float</code>, a positive real number between 0 and 1, indicating the erasure probability of the original BEC.
The function must return an <code>int</code> corresponding to the number of synthetic BECs with erasure probabilities strictly less than <code>erasure_prob</code>.
+
The function must return an <code>int</code> corresponding to the number of synthetic BECs with erasure probabilities strictly greater than <code>erasure_prob</code>.
 +
 
 +
{| class="wikitable"
 +
|+ Python test script for execution
 +
|-
 +
| Header
 +
|
 +
<syntaxhighlight lang="python3">
 +
import math
 +
</syntaxhighlight>
 +
|-
 +
| Student submission (function only)
 +
|
 +
<syntaxhighlight lang="python3">
 +
def count_bad_channels(blocklength, erasure_prob):
 +
    # your code..
 +
    # more code..
 +
 
 +
    return ans
 +
}
 +
</syntaxhighlight>
 +
|-
 +
| Main test script
 +
|
 +
<syntaxhighlight lang="python3">
 +
# Main test script goes here, and will not be visible to students.
 +
# The script will test if the submitted code does the prescribed functionality.
 +
# For successfully validated scripts, test results will be sent via email.
 +
</syntaxhighlight>
 +
|}
  
 
== Expected Output ==
 
== Expected Output ==
 +
 +
{| class="wikitable"
 +
|-
 +
|
 +
| <math>n = 2</math>
 +
| <math>n = 4</math>
 +
| <math>n = 16</math>
 +
| <math>n = 256</math>
 +
| <math>n = 65536</math>
 +
|-
 +
| <math>\epsilon = 0.1</math>
 +
| 1
 +
| 1
 +
| 4
 +
| 39
 +
| 7291
 +
|-
 +
| <math>\epsilon = 0.3</math>
 +
| 1
 +
| 1
 +
| 6
 +
| 86
 +
| 20158
 +
|-
 +
| <math>\epsilon = 0.8</math>
 +
| 1
 +
| 3
 +
| 11
 +
| 193
 +
| 51758
 +
|-
 +
|}

Latest revision as of 21:38, 15 May 2021

In this module, you have learned that it is possible to synthesize extremal channels from multiple copies of a given binary-input channel. In particular, the binary erasure channel (BEC) has the property that all synthesized channels are equivalent to BECs.

Task Description

Your task in Module 5 is simple: given the erasure probability of a BEC, you are to count the number of synthetic channels with erasure probability that is better (lower) than the original BEC.

You need to write a function count_bad_channels which will take two arguments:

  • blocklength - an int that is a power of two, denoting the blocklength or, equivalently, the number of synthetic channels produced via the polar transform.
  • erasure_prob - a float, a positive real number between 0 and 1, indicating the erasure probability of the original BEC.

The function must return an int corresponding to the number of synthetic BECs with erasure probabilities strictly greater than erasure_prob.

Python test script for execution
Header
import math
Student submission (function only)
def count_bad_channels(blocklength, erasure_prob):
    # your code..
    # more code..

    return ans
}
Main test script
# Main test script goes here, and will not be visible to students.
# The script will test if the submitted code does the prescribed functionality.
# For successfully validated scripts, test results will be sent via email.

Expected Output

1 1 4 39 7291
1 1 6 86 20158
1 3 11 193 51758