In computing, especially digital signal processing, the multiply–accumulate operation is a common step that computes the product of two numbers and adds that product to an accumulator. The hardware unit that performs the operation is known as a multiplier–accumulator (MAC, or MAC unit); the operation itself is also often called a MAC or a MAC operation. The MAC operation modifies an accumulator a:
When done with floating point numbers, it might be performed with two roundings (typical in many DSPs), or with a single rounding. When performed with a single rounding, it is called a fused multiply–add (FMA) or fused multiply–accumulate (FMAC).
Modern computers may contain a dedicated MAC, consisting of a multiplier implemented in combinational logic followed by an adder and an accumulator register that stores the result. The output of the register is fed back to one input of the adder, so that on each clock cycle, the output of the multiplier is added to the register. Combinational multipliers require a large amount of logic, but can compute a product much more quickly than the method of shifting and adding typical of earlier computers. The first processors to be equipped with MAC units were digital signal processors, but the technique is now also common in general-purpose processors.
In floating-point arithmetic
When done with integers, the operation is typically exact (computed modulo some power of two). However, floating-point numbers have only a certain amount of mathematical precision. That is, digital floating-point arithmetic is generally not associative or distributive. (See Floating point#Accuracy problems.) Therefore, it makes a difference to the result whether the multiply–add is performed with two roundings, or in one operation with a single rounding (a fused multiply–add). IEEE 754-2008 specifies that it must be performed with one rounding, yielding a more accurate result.
A fused multiply–add is a floating-point multiply–add operation performed in one step, with a single rounding. That is, where an unfused multiply–add would compute the product b×c, round it to N significant bits, add the result to a, and round back to N significant bits, a fused multiply–add would compute the entire sum a+b×c to its full precision before rounding the final result down to N significant bits.
A fast FMA can speed up and improve the accuracy of many computations that involve the accumulation of products:
- Dot product
- Matrix multiplication
- Polynomial evaluation (e.g., with Horner's rule)
- Newton's method for evaluating functions.
Fused multiply–add can usually be relied on to give more accurate results. However, Kahan has pointed out that it can give problems if used unthinkingly. If x2 − y2 is evaluated as ((x×x) − y×y) using fused multiply–add, then the result may be negative even when x = y due to the first multiplication discarding low significance bits. This could then lead to an error if, for instance, the square root of the result is then evaluated.
When implemented inside a microprocessor, an FMA can actually be faster than a multiply operation followed by an add, even though standard industrial implementations based on the original IBM RS/6000 design require a 2N-bit adder to compute the sum properly.
A useful benefit of including this instruction is that it allows an efficient software implementation of division (see division algorithm) and square root (see methods of computing square roots) operations, thus eliminating the need for dedicated hardware for those operations.
The FMA operation is included in IEEE 754-2008.
The DEC VAX's POLY instruction is used for evaluating polynomials with Horner's rule using a succession of fused multiply–add steps. This instruction has been a part of the VAX instruction set since its original 11/780 implementation in 1977.
- HP PA-8000 (1996) and above
- Hitachi SuperH SH-4 (1998)
- SCE-Toshiba Emotion Engine (1999)
- Intel Itanium (2001)
- STI Cell (2006)
- Fujitsu SPARC64 VI (2007) and above
- (MIPS-compatible) Loongson-2F (2008).
- x86 processors with FMA3 and/or FMA4 instruction set
- ARM processors with VFPv4 and/or NEONv2:
- GPUs and GPGPU boards:
- Whitehead, Nathan; Fit-Florea, Alex (2011). "Precision & Performance: Floating Point and IEEE 754 Compliance for NVIDIA GPUs". nvidia. Retrieved 2013-08-31.
- W.Kahan (May 31, 1996). "IEEE Standard 754 for Binary Floating-Point Arithmetic".
- Eric Quinnell et al (undated, circa 2006). "Bridged Floating-Point Fused Multiply–Add Design". Check date values in:
- Eric Quinnell (May 2007). Floating-Point Fused Multiply–Add Architectures (PhD thesis). Retrieved 2011-03-28.
- Peter Markstein (Nov. 2004). "Software Division and Square Root Using Goldschmidt's Algorithms". CiteSeerX: 10.1.1.85.9648. Check date values in:
- "VAX instruction of the week: POLY".
- Montoye, R. K.; Hokenek, E.; Runyon, S. L. (January 1990). "Design of the IBM RISC System/6000 floating-point execution unit". IBM Journal of Research and Development 34 (1): 59–70. doi:10.1147/rd.341.0059. ISSN 0018-8646.
- "Godson-3 Emulates x86: New MIPS-Compatible Chinese Processor Has Extensions for x86 Translation".
- "Intel adds 22nm octo-core 'Haswell' to CPU design roadmap". The Register.