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# Number Representations And Computer Arithmetic (fixed and floating point) Computer Science Engineering (CSE) Notes | EduRev

## Computer Science Engineering (CSE) : Number Representations And Computer Arithmetic (fixed and floating point) Computer Science Engineering (CSE) Notes | EduRev

The document Number Representations And Computer Arithmetic (fixed and floating point) Computer Science Engineering (CSE) Notes | EduRev is a part of the Computer Science Engineering (CSE) Course GATE Computer Science Engineering(CSE) 2022 Mock Test Series.
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## Floating Point Representation

1. To convert the floating point into decimal, we have 3 elements in a 32-bit floating point representation:
i) Sign
ii) Exponent
iii) Mantissa

• Sign bit is the first bit of the binary representation. '1' implies negative number and '0' implies positive number.
Example: 11000001110100000000000000000000 This is negative number.
• Exponent is decided by the next 8 bits of binary representation. 127 is the unique number for 32 bit floating point representation. It is known as bias. It is determined by 2k-1 -1 where 'k' is the number of bits in exponent field.

There are 2 exponent bits in 8-bit representation and 8 exponent bits in 32-bit representation.
Thus
bias = 3 for 8 bit conversion (22-1 -1 = 4-1 = 3)
bias = 127 for 32 bit conversion. (28-1 -1 = 128-1 = 127)

Example: 01000001110100000000000000000000
10000011 = (131)2
131-127 = 4

Hence the exponent of 2 will be 4 i.e. 24 = 16.

• Mantissa is calculated from the remaining 24 bits of the binary representation. It consists of '1' and a fractional part which is determined by:

Example:

01000001110100000000000000000000

The fractional part of mantissa is given by:

1*(1/2) + 0*(1/4) + 1*(1/8) + 0*(1/16) +……… = 0.625

Thus the mantissa will be 1 + 0.625 = 1.625

The decimal number hence given as: Sign*Exponent*Mantissa = (-1)*(16)*(1.625) = -26

2. To convert the decimal into floating point, we have 3 elements in a 32-bit floating point representation:
i) Sign (MSB)
ii) Exponent (8 bits after MSB)
iii) Mantissa (Remaining 23 bits)

Thus the floating point representation of -17 is 1 10000011 0001000000000000000000

• Sign bit is the first bit of the binary representation. '1' implies negative number and '0' implies positive number.
Example: To convert -17 into 32-bit floating point representation Sign bit = 1
• Exponent is decided by the nearest smaller or equal to 2n number. For 17, 16 is the nearest 2n. Hence the exponent of 2 will be 4 since 24 = 16. 127 is the unique number for 32 bit floating point representation. It is known as bias. It is determined by 2k-1 -1 where 'k' is the number of bits in exponent field.

Thus bias = 127 for 32 bit. (28-1 -1 = 128-1 = 127)

Now, 127 + 4 = 131 i.e. 10000011 in binary representation.

• Mantissa: 17 in binary = 10001.

Move the binary point so that there is only one bit from the left. Adjust the exponent of 2 so that the value does not change. This is normalizing the number. 1.0001 x 24. Now, consider the fractional part and represented as 23 bits by adding zeros.

00010000000000000000000

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