The invention relates generally to computer instructions, and more specifically to using an inclusive “OR” bit matrix compare instruction in the comparison of multiple corresponding subfields of data items.
Most general purpose computer systems are built around a general-purpose processor, which is typically an integrated circuit operable to perform a wide variety of operations useful for executing a wide variety of software. The processor is able to perform a fixed set of instructions, which collectively are known as the instruction set for the processor. A typical instruction set includes a variety of types of instructions, including arithmetic, logic, and data movement instructions.
Arithmetic instructions include common math functions such as add and multiply. Logic instructions include logical operators such as AND, NOT, and invert, and are used to perform logical operations on data. Data movement instructions include instructions such as load, store, and move, which are used to handle data within the processor.
Data movement instructions can be used to load data into registers from memory, to move data from registers back to memory, and to perform other data management functions. Data loaded into the processor from memory is stored in registers, which are small pieces of memory typically capable of holding only a single word of data. Arithmetic and logical instructions operate on the data stored in the registers, such as adding the data in one register to the data in another register, and storing the result in one of the two registers or in a third register.
Oftentimes comparison of data will require comparison of multiple subfields of data. This typically entails execution of numerous instructions per field.
In an example embodiment of the invention, subfields of a bit string are compared to a reference bit string by loading a bit matrix with one or more subfields of a first bit string to be searched, and loading a second bit string with a reference bit string. A bit matrix compare operation is executed on the reference pattern bit string and one or more subfields of the first bit string stored in the bit matrix to form a bit matrix compare result indicating whether the reference bit pattern matches one or more of the subfields.
In the following detailed description of example embodiments of the invention, reference is made to specific example embodiments of the invention by way of drawings and illustrations. These examples are described in sufficient detail to enable those skilled in the art to practice the invention, and serve to illustrate how the invention may be applied to various purposes or embodiments. Other embodiments of the invention exist and are within the scope of the invention, and logical, mechanical, electrical, and other changes may be made without departing from the subject or scope of the present invention. Features or limitations of various embodiments of the invention described herein, however essential to the example embodiments in which they are incorporated, do not limit other embodiments of the invention or the invention as a whole, and any reference to the invention, its elements, operation, and application do not limit the invention as a whole but serve only to define these example embodiments. The following detailed description does not, therefore, limit the scope of the invention, which is defined only by the appended claims.
Sophisticated computer systems often use more than one processor to perform a variety of tasks in parallel, use vector processors operable to perform a specified function on multiple data elements at the same time, or use a combination of these methods. Vector processors and parallel processing are commonly found in scientific computing applications, where complex operations on large sets of data benefit from the ability to perform more than one operation on one piece of data at the same time. Vector operations specifically can perform a single function on large sets of data with a single instruction rather than using a separate instruction for each data word or pair of words, making coding and execution more straightforward.
Similarly, address decoding and fetching each data word or pair of data words is typically less efficient than operating on an entire data set with a vector operation, giving vector processing a significant performance advantage when performing an operation on a large set of data.
The actual operations or instructions are performed in various functional units within the processor. A floating point add function, for example, is typically built in to the processor hardware of a floating point arithmetic logic unit, or floating point ALU functional unit of the processor. Similarly, vector operations are typically embodied in a vector unit hardware element in the processor which includes the ability to execute instructions on a group of data elements or pairs of elements. The vector unit typically also works with a vector address decoder and other support circuitry so that the data elements can be efficiently loaded into vector registers in the proper sequence and the results can be returned to the correct location in memory.
Operations that are not available in the hardware instruction set of a processor can be performed by using a combination of the instructions that are available to achieve the same result, typically with some cost in performance. For example, multiplying two numbers together is typically supported in hardware, and is relatively fast. If a multiply instruction were not a part of a processor's instruction set, available instructions such as shift and add can be used as a part of the software program executing on the processor to compute a multiplication, but will typically be significantly slower than performing the same function in hardware.
Some embodiments of the invention described herein therefore make use of a bit matrix compare operation. The bit matrix compare operation is a hardware instruction that uses the inclusive-OR function as the addition operation of a bit matrix multiplication, which can be used as an operation in a sequence of operations to compare each element of a matrix or array with the other elements of the matrix or array.
In one more detailed example shown in
The equations used to compare the rows of matrix A to the columns of matrix B are also shown in
Because the result of the inclusive-OR bit matrix compare function indicates only whether any of the bits are the same, one of the bit strings is inverted to provide a result indicating whether any of the bits of the original bit strings are not the same. Inverting the bits comprises changing ones to zeros and zeros to ones, and is sometimes also called a one's complement. The AND function used to compare bits yields a true result, indicating that the inverted bit and the non-inverted bit match only if one but not the other of the original bits is a one. But, to ensure that the zero bit of a first matrix and the one bit of a second matrix are evaluated as not matching using the bit matrix compare function, the first matrix should be the matrix that is inverted. Because one values will be distributed in both the first and second matrices, but the result is sensitive to which string is inverted, the bit matrix compare function is repeated after inverting both strings in a further embodiment to ensure that the strings being evaluated are exact matches.
This bit matrix compare process is therefore then repeated, inverting the other of matrix A and matrix B before the bit matrix compare operation is performed, again checking whether any of the elements of string A and corresponding elements of a specific column of matrix B are both one. When both operations have concluded with a result of zero, it can be concluded that the bit string in matrix A and the column being evaluated in matrix B are the same.
This compare operation can be extended to operate on multiple vectors, as shown in
In some further embodiments, arrays or matrix arrays of a given capacity are used to store data sets of a smaller capacity.
At block 404, one of a first data element (e.g., S1) and a second data element (e.g., S2) is inverted, and a bit matrix compare operation is performed on the data elements as shown at 406. In some embodiments, the data elements may be the natural word size of the hardware, for example, 64 bits. The result is a bit pattern in which a bit is set in the result as described above with respect to
At block 408, the results determined at block 406 may be displayed to a user, or used in further operations.
The above may be expressed as an equation:
R=BMC(S1.xor.S2)
where one or more arbitrary patterns of bits, P are loaded in a bit matrix and where S1 and S2 are two data words that can be compared to determine if there are differing bits at any of the locations specified by the bits in a pattern P, and where BMC is the inclusive OR bit matrix multiply operation and one bit string is inverted before the bit matrix compare operation is performed. If P0 is loaded into the first word of the bit matrix, then the leftmost bit of R will be 1 if any of the corresponding bits is different, and 0 if all the corresponding bits are the same.
In some embodiments, up to 64 independent patterns can tested with a single operation using a 64-bit matrix, with one pattern in each entry of the bit matrix, and the results in the corresponding 64 bits of R.
The number of subfields of the data words that differ can be computed as:
D=popcnt(R)
where each subfield corresponds to a pattern in the bit matrix used to compute R and where popcnt (i.e., population count) is a function or operation that counts the number of bits in its argument that are set to 1.
The bit matrix compare function as applied here is understood to include performing the bit matrix compare function after inverting the bits of one of the matrices being compared, and repeating the process after inverting the other of the matrices being compared to confirm that the bit strings are identical.
where bmm(i) is the ith element of the bit matrix and where shiftr is the arithmetic shift right operation. Thus in the example loop above, the first entry is the hexadecimal value “c000000000000000”, and each successive entry is shifted two bits to the right, reflecting the number of bits used for each symbol in the nucleic acid sequence. The final 32 entries are set to 0.
The matrix is therefore filled with sequentially shifted copies of the nucleic acid sequence that can be evaluated against one or more reference sequences, such as a bit string or elements of another matrix to find matches. At block 504, a bit matrix compare operation is performed using the one or more reference sequence patterns and the nucleic acid sequences loaded into the matrix at 502. In some embodiments, the comparison is an inclusive OR bit matrix multiply operation (BMC) that is repeated twice, and alternating bit strings are inverted before the bit matrix compare functions are performed. The result of the bit matrix compare functions is a bit pattern in which a bit is set in the result R as described above with respect to
At block 506, the results determined at block 504 may be displayed to a user, or used in further operations. For example, a popcnt function or operation may be used to determine the number of corresponding locations where the nucleic acids differ. Multiple sequences can be compared to provide fast gap-free comparisons of genomic sequences.
At block 602, the one or more patterns defining subfield locations are loaded into the bit matrix. In some embodiments, a bit matrix is loaded with 8 patterns, one pattern corresponding to each of the 8 8-bit fields used to hold character data. An example loop to provide such an initialization is:
where bmm(i) is the ith element of the bit matrix and where shiftr is the arithmetic shift right operation. Thus in the example loop above, the first entry is the hexadecimal value “ff000000000000000”, and each successive entry is shifted eight bits to the right, so that each entry reflects a new ASCII character. The final 56 entries are set to 0.
At block 604, a bit matrix compare operation is performed using the bit matrix loaded with data at 604, compared with another matrix, or bit string. In some embodiments, the comparison is an inclusive OR bit matrix compare operation (BMC), and one of the bit strings is inverted. The result is a bit pattern in which a bit is set in the result R as described above with respect to
The above may be represented in equation form as:
R=BMC(S1.xor.S2)
At block 606, the results determined at block 604 may be displayed to a user, or used in further operations. For example, a popcnt function or operation may be used to determine the number of corresponding locations in S1 and S2 where the characters differ. The value 8-popcnt(R) is the number of matching characters. The value leadz(R), where leadz returns the number of leading zeros of its argument, is the location of the first non-matching character. These and other operations and functions may be used to implement various string comparison routines.
In some embodiments using ASCII characters, the string comparison detailed above can be made case insensitive simply by replacing the pattern “ff00000000000000” with “5f00000000000000” such that the bit that differentiates case in the ASCII character set is ignored.
The bit matrix compare functions described herein can be implemented into the hardware functional units of a processor, such as by use of hardware logic gate networks or microcode designed to implement logic such as the equations shown in
The vector and scalar bit matrix compare instructions implemented in hardware in processors therefore enable users of such processors to perform these functions significantly faster than was previously possible in software, including to identify repeated values in an array or matrix such as in a vector index array. When evaluating index values for a loop, such as in the example above, the bit matrix compare function compares each element against the other elements of the index array, indicating which elements are the same as which other elements in the index vector.
Although specific embodiments have been illustrated and described herein, it will be appreciated by those of ordinary skill in the art that any arrangement that achieve the same purpose, structure, or function may be substituted for the specific embodiments shown. This application is intended to cover any adaptations or variations of the example embodiments of the invention described herein.
This application is a continuation of U.S. application Ser. No. 12/814,101, filed Jun. 11, 2010, which claims the benefit of U.S. Provisional Application Ser. No. 61/186,810, filed Jun. 12, 2009, each of which is incorporated herein by reference and made a part hereof in its entirety.
The U.S. Government has a paid-up license in this invention and the right in limited circumstances to require the patent owner to license others on reasonable terms as provided for by the terms of Contract No. MDA904-02-3-0052, awarded by the Maryland Procurement Office.
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Parent | 12814101 | Jun 2010 | US |
Child | 14337750 | US |