William Stallings Computer Organization and Architecture 8th Edition

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Presentation transcript:

William Stallings Computer Organization and Architecture 8th Edition Chapter 9 Computer Arithmetic

Arithmetic & Logic Unit Does the calculations Everything else in the computer is there to service this unit Handles integers May handle floating point (real) numbers May be separate FPU (maths co-processor) May be on chip separate FPU (486DX +)

ALU Inputs and Outputs

Integer Representation Only have 0 & 1 to represent everything Positive numbers stored in binary e.g. 41=001010012 No minus sign No period Sign-Magnitude Two’s compliment

Left most bit is sign bit 0 means positive 1 means negative Sign-Magnitude Left most bit is sign bit 0 means positive 1 means negative +18 = 000100102 -18 = 100100102 Problems Need to consider both sign and magnitude in arithmetic Two representations of zero (+0 and -0)

Two’s Compliment +3 = 000000112 +2 = 000000102 +1 = 000000012 +0 = 000000002 -1 = 111111112 -2 = 111111102 -3 = 111111012

One representation of zero Arithmetic works easily (see later) Benefits One representation of zero Arithmetic works easily (see later) Negating is fairly easy 3 = 000000112 Boolean complement gives 111111002 Add 1 to LSB 111111012

Geometric Depiction of Twos Complement Integers

Negation Special Case 1 0 = 000000002 Bitwise not 111111112 Add 1 to LSB +12 Result 1 000000002 Overflow is ignored, so: - 0 = 0 

Negation Special Case 2 -128 = 100000002 bitwise not 011111112 Add 1 to LSB +12 Result 100000002 So: -(-128) = -128 X Monitor MSB (sign bit) It should change during negation

Range of Numbers 8 bit 2s compliment 16 bit 2s compliment +127 = 011111112 = 27 -1 -128 = 100000002 = -27 16 bit 2s compliment +32767 = 011111111 111111112 = 215 - 1 -32768 = 100000000 000000002 = -215

Conversion Between Lengths Positive number pack with leading zeros +18 = 000100102 +18 = 00000000 000100102 Negative numbers pack with leading ones -18 = 100100102 -18 = 11111111 100100102 i.e. pack with MSB (sign bit)

Addition and Subtraction Normal binary addition Monitor sign bit for overflow Take twos compliment of substahend and add to minuend i.e. a - b = a + (-b) So we only need addition and complement circuits

Overflow rule If two numbers are added, and they are both positive or both negative, then overflow occurs if and only if the result has the opposite sign.

Subtraction and overflow

Hardware for Addition and Subtraction

Multiplication Complex Work out partial product for each digit Take care with place value (column) Add partial products

Multiplication Example 1011 Multiplicand (11 dec) x 1101 Multiplier (13 dec) 1011 Partial products 0000 Note: if multiplier bit is 1 copy 1011 multiplicand (place value) 1011 otherwise zero 10001111 Product (143 dec) Note: need double length result

Unsigned Binary Multiplication

Execution of Example M – multiplicand Q – multiplier

Multiplying negative numbers

Flowchart for Unsigned Binary Multiplication

Multiplying Negative Numbers This does not work! Solution 1 Convert to positive if required Multiply as above If signs were different, negate answer Solution 2 Booth’s algorithm

Booth’s Algorithm

Example of Booth’s Algorithm

Why does Booth’s Algorithm work? M X (000111102) = M X (24+23+22+21) = M X (16+8+4+2) = M X (30) = M X (25 - 21 ) M X (011110102) = M X (26+25+24+23+21) = M X (27 - 23 +22 - 21 )

Division More complex than multiplication Negative numbers are really bad! Based on long division

Division of Unsigned Binary Integers Quotient 00001101 Divisor 1011 10010011 Dividend 1011 001110 Partial Remainders 1011 001111 1011 Remainder 100

Flowchart for Unsigned Binary Division

Twos complement division Load the divisor into the M register and the dividend into the A,Q registers. Shift A,Q left one position. If M and A have the same signs, perform A-M else perform A+M The preceding operation is successful if the sign of A is the same as before, after the operation, * if the operation is successful or A = 0, then set Q0 = 1 * if the operation is unsuccessful and A is = not 0 then set Q0 = 0 and restore the previous value of A. Repeat steps 2 through 4 as many times as there are bit positions in Q. The remainder is in A. If the signs of the divisor and dividend is the same, then the quotient is Q, else it is the twos complement of Q.

Twos Complement Division

Twos complement division Load the divisor into the M register and the dividend into the A,Q registers. Shift A,Q left one position. If M and A have the same signs, Perform A-M else perform A+M The preceding operation is successful if the sign of A is the same as before, after the operation, * if the operation is successful or A = 0, then set Q0 = 1 * if the operation is unsuccessful and A is = not 0 then set Q0 = 0 and restore the previous value of A. Repeat steps 2 through 4 as many times as there are bit positions in Q. The remainder is in A. If the signs of the divisor and dividend is the same, then the quotient is Q, else it is the twos complement of Q.

Twos Complement Division

Is this correct? D = Q X V + R where D =7 V=3  Q= 2 R = 1 D =7 V= -3  Q= -2 R = 1 D =-7 V=3  Q= -2 R = -1 D =-7 V=-3  Q= 2 R = -1 Preferred way to do two’s complement is to convert operand into unsigned values and at the end to account for the signs.

Numbers with fractions Could be done in pure binary Real Numbers Numbers with fractions Could be done in pure binary 1001.1010 = 24 + 20 +2-1 + 2-3 =9.625 Where is the binary point? Fixed? Very limited Moving? How do you show where it is?

Floating Point +/- .significand x 2exponent Misnomer Point is actually fixed between sign bit and body of mantissa Exponent indicates place value (point position)

Floating Point Examples

Signs for Floating Point Mantissa (or significand) is stored in 2s compliment Exponent is in excess or biased notation e.g. Excess (bias) 127 means For the 8 bit exponent field the value range 0-255 Add 127 to the true exponent to get value to be stored Thus a range of -127 to +128 can be stored

Normalization FP numbers are usually normalized i.e. exponent is adjusted so that leading bit (MSB) of mantissa is 1 Since it is always 1 there is no need to store it (c.f. Scientific notation where numbers are normalized to give a single digit before the decimal point e.g. 3.123 x 103)

Integer Ranges For a 32 bit number using the twos complement integer representation, all the integers from - 231 to +(231 – 1) can be represented.

FP Ranges For a 32 bit number 8 bit exponent and 24 bit significand The 8 bit exponent is in biased representation thus 127 is added to move the range from (-127 to +128) to (0 to +255)

Expressible Numbers

Let us assume we have a 3 bit significand Why the 2 - 2-23 Let us assume we have a 3 bit significand The biggest number we can then represent is 1.1112 thus 10.0002 – 0.0012 = 210 – 2-310

Density of Floating Point Numbers

Let us again assume we want to write numbers between 0 and 2 Why? Let us again assume we want to write numbers between 0 and 2 0 2-2 2-1 20 21 0__¼_½__1__________2

IEEE 754 Standard for floating point storage 32 and 64 bit standards 8 and 11 bit exponent respectively Extended formats (both mantissa and exponent) for intermediate results

IEEE 754 Formats

FP Arithmetic +/- Check for zeros Align significands (adjusting exponents) Add or subtract significands Normalize result

FP Addition & Subtraction Flowchart

FP Arithmetic x/ Check for zero Add/subtract exponents Multiply/divide significands (watch sign) Normalize Round All intermediate results should be in double length storage

Floating Point Multiplication

Floating Point Division

Required Reading Stallings Chapter 9 IEEE 754 on IEEE Web site