As is known in the art, network coding (NC) is a technique whereby coded packets are generated as linear combinations of source (or “original”) data packets, multiplying them by coefficients chosen from a finite field. NC enables recombination of data within a computer network and thus breaks with the end-to-end view on data flows in store-and-forward networks.
The ability to compute in the network provides enhanced performance and enables disruptive and flexible designs of future computer networks. This flexibility makes NC suitable in less structured, highly dynamic, and highly heterogeneous settings, and therefore a good fit, for example, for Internet of Things and 5G. NC techniques have shown significant gains (e.g. in terms of improved performance and/or energy efficiency) in a multitude of applications ranging from wireless networks and multimedia transmission, to distributed storage and peer-to-peer (P2P) networks.
Random Linear Network Coding (RLNC) offers a distributed approach to implementing NC by randomly mixing data packets. Among other benefits, RLNC provides allows for distributed functional repair within storage systems. However, RLNC can add computational complexity to sources, receivers, and intermediate nodes, which can potentially decrease the operation time of battery-driven devices or become a bottleneck in highly loaded servers, routers, and switches. One known approach to decrease this complexity is to divide the data over which coding is performed in so-called “generations.” This approach effectively controls the complexity, but adds additional communication overhead in two ways. First, overhead due to the reception of linearly dependent combinations, which is particularly relevant if the underlying finite field is small. Second, it is necessary to distribute the coding coefficient vector, which describes how coding was performed, along with the coded packet. Overhead from the coding vector (sometimes referred to as “signaling overhead”) can be addressed by distributing seed values for a pseudo random function, but this results in the loss of ability to recode, which is a significant benefit of NC.
As is also known in the art, the choice of NC parameters, such as field size, generation size, and sparsity, can have an impact on signaling overhead, overhead due to linear dependency, and processing requirements. An existing technique to achieve a low overhead and high processing speeds while maintaining simple recoding as in RLNC is Fulcrum network codes, which are described in U.S. patent application Ser. No. 14/242,086, filed on Apr. 1, 2014, and herein incorporated by reference in its entirety. As is known, Fulcrum network codes allow decoding (and recoding) in either 2 or a higher field extension field
2
Described herein are concepts, techniques, and structures for network coding using finite fields of different sizes wherein each field (except for a base field) is an extension of a previously defined field. For example, an example code design sues a series of composite fields constructed from 2 to obtain
2
and from it construct
etc. As a consequence, field operations performed in a given field are valid operations in all its extension fields. Composite extension fields can be applied to existing random linear network codes (RLNC) systems as well as systems that utilize Fulcrum network codes. A new code design based on the use of composite extension fields is also described herein.
The new code design, referred to herein as “Telescopic codes,” decreases the total communication overhead while retaining the possibility to recode. A Telescopic code can leverage multiple composite extension fields in a single generation of packets to achieve a better tradeoff between two sources of overhead: linear dependency and representation of the coding vectors. Using Telescopic codes, most computations are performed over small and fast field (with only a relatively small number of operations performed over larger fields), thereby reducing the complexity of encoding, recoding, and decoding operations and leading to higher throughput.
The concepts, structures, and techniques sought to be protected herein may be more fully understood from the following detailed description of the drawings, in which:
The drawings are not necessarily to scale, or inclusive of all elements of a system, emphasis instead generally being placed upon illustrating the concepts, structures, and techniques sought to be protected herein.
Before describing exemplary embodiments of the systems and methods used to teach the concepts, structures, and techniques sought to be protected herein, some introductory terminology used in conjunction with the exemplary embodiments are explained.
A “network” is made up of a plurality of processing sites generally referred to as “stations” or “nodes” connected by one or more physical and/or logical connections. When the connections enable transmission of a signal between the nodes, the connections are generally referred to as links. Links are sometimes unidirectional (i.e. transmission of a signal in one direction between the nodes) and sometimes are bidirectional (i.e. transmission of signals in both direction between the nodes).
Each node typically performs a switching function and one or more additional functions. The nodes may be coupled together in a variety of different network structures typically referred to as network topologies. For example, network nodes may be coupled in a so-called mesh topologies, ring (or circular) topologies, star topologies and tree topologies. Other topologies are also known.
The transmission of a signal from a first or source node to a second or receiver node may involve the transmission of the signal through one or more intermediate links and nodes coupled between the source node and the receiver node. Such a succession of links and nodes between a source node and a receiver node is referred to as a path.
As used herein, the term “wireline link” is used to describe a link between two nodes of a network that comprises any type of physical or hardwired connection. The term “wireless link” is used to describe a link that comprises any type of wireless connection (e.g., radio frequency (RF), cellular, wifi, point-to-point, mesh, and/or optical connection).
The terms “source” and “source node” are used herein to refer to a node in a network that transmits (or sends) packets (referred to as “source packets”) to one or more other nodes via one or more links in the network. The term “intermediate node” is used herein to refer to a node in the network that both receives packets from one or more other nodes via one or more links in the network and sends packets to one or more additional nodes via one or more links in the network. The terms “sink, “sink node,” “receiver,” and “receiver node” are used herein to refer to a node in a network that receives packets through a link in the network. It should be understood that the framework described herein does not impose any limitations on the operation of particular nodes and, therefore, any node may function as a source, an intermediate node, and/or a receiver (notwithstanding any physical limitations of the network).
The terms “packet” and “symbol” are used herein to refer to any unit of data residing on a node or transmitted through a network. It should be understood that the concepts, structures, and techniques described herein are not limited to any particular packet/symbol sizes, data dimensions, or data formats. In some embodiments, a packet described herein comprises a User Datagram Protocol (UDP) packet and/or an Internet Protocol (IP) packet.
The term “encoded packet” refers to a linear combination source packets according to a coding vector. In some embodiments, encoded packets and a coding vector (i.e., the coding vector that describes the linear combination coding process) are stored and/or transmitted together. In addition to be being a linear combination of multiple source packets, an encoded packet could also correspond to combination of a single source packet or even to none of the original packets (the zero symbol).
The term “field size” refers to the number of elements (or “order”) of a given finite field (or “Galois field”).
The term “recode” is used herein to refer to a process whereby a plurality of encoded data packets are combined to generate new coded packets. The term “re-encode” herein refers to a process whereby one or more data packets are decoded to recover the original information, and then the original information is encoded to generate new coded packets. Thus, re-encoding involves decoding whereas recoding does not.
Referring now to
It should be understood that the network shown in
In operation, the sources 102 send data packets along paths to the receivers 106, by way of intermediate nodes 104. The sources may encode data packets using a code vector having elements in multiple fields with different sizes, wherein each field is an extension of a previously defined field. For example, the sources may code data packets using field sizes 2,
2
etc. As another example, the multiple fields may include 2,
2
etc. Such fields are referred to herein as “composite extension fields” and are described herein below.
The intermediate nodes 104 can recode using a given one of the field sizes (e.g., the lowest field size, such as 2, or the highest field size, such as
or can recode using multiple field sizes. The field sizes and recode strategy may be selected based upon the capabilities of the source, the capabilities of the intermediate nodes, the capabilities of the receivers, and/or based upon desired network flow characteristics. In the exemplary network 100, a first intermediate node 104a recodes in 2
2. A receiver 106 receives and accumulates network-coded/recoded packets, and, by way of a multiple-field-size Gaussian elimination process, can retrieve the source data packets.
Composite extension fields are chosen to allow compatibility between the operations performed in different fields, so that different nodes as well as different parts of the encoding/decoding process can be performed in the various finite fields. To generate composite extension fields, polynomial arithmetic may be employed, using as a base field the previous extension field generated. In particular, each element in a composite field can be expressed as:
fj(x)=Σi=0najixi (2)
where ai is an element in the base field, and n is the degree of the polynomial. For two elements of the composite field f1(x) and f2(x), the addition operation can be expressed as:
f1(x)+f2(x)=Σi=0n(a1i+a2i)xi (2)
where a1i+a2i uses the addition operation of the base field.
For multiplication of f1(x)·f2(x), two steps can be used. First, a product of polynomials and then a long division using a primitive polynomial m(x) to obtain the remainder. Operations between the aji coefficients follow the rules of the base finite field. The primitive polynomial may also be obtained using the rules and elements of the base field.
In particular embodiments, nodes of the network 100 utilize a series of composite fields constructed as powers of two starting with the base field 2 to obtain
2,
2
etc. This choice or composite fields may provide several advantages. For example, there already exist efficient implementations for these specific field sizes. Moreover, it will be appreciated that such fields fit data types in a typical computer system. Additionally, these field sizes provide high granularity for choosing different levels of computational complexity in the network. It should be appreciated that other configurations are possible so long as the starting point is a finite field, e.g., 2
In addition to the particular series of composite extension fields described above, it may be convenient to select the degree n=1 for each new composite field created. This results in very simple addition and product operations. For addition,
f1(x)+f2(x)=(a10+a20)+(a11+a21)x (3)
which means that the addition is a bitwise XOR of the different symbols. For the product operation,
where m(x) is a degree two (2) polynomial. This facilitates finding m(x). A valid m(x) first needs to comply with m(x)=x2+m1x+m0≠(x+b1)(x+b2) for all values of b1, b2≠0 in the base field to be irreducible. Using this search procedure, it can be shown that irreducible polynomials of this form are common for the various fields (i.e., there are a sufficient number of such polynomials for many applications). For example, for 2
there are one hundred and twenty (120) irreducible polynomials once an
polynomial is selected.
After determining that m(x) is irreducible, a determination may be made as to whether it is primitive. Several approaches can be used. One standard method consists of computing the long division of xk−1 modulo m(x) for increasing integer k from k=1. Consider q as the field size of the base field. If the first value of k for which m(x) divides xk−1 (i.e., the remainder of the long division is zero) is given by k=qn−1=q2−1, then m(x) is also primitive. The number of primitive polynomials is also sufficiently large for many applications. For example, for 2
there are sixty-tour (62) primitive polynomials.
TABLE 1 shows one example of polynomials that may be used for the series of composite fields 2,
2
2
2
By design, multiplying an element of an extension field, f1(x)=a10+a11x, by another element that could be represented in the base field, i.e., f2(x)=a20+a21x since a21=0, results in
f1(x)f2(x)=a10·a20+a11·a20x (5)
without needing to use the irreducible polynomial. This makes the product operation in the base field (and with elements from it) fully compatible with the product operation in the extension field.
For example, consider the four bits 1001. These bits can be interpreted as a single element (9) in
or two concatenated elements (2 and 1) in 2
2.
To improve performance (e.g., processing speed), a lookup table for addition and/or multiplication between various field elements can be constructed. For example, Table 2 illustrates product operations between two elements for fields 2,
2
It is noted that for larger fields, e.g., 2
It is appreciated herein that composite extension fields provides opportunities to improve the design of NC systems. The use of composite extension fields can lead to, for example, a potential reduction in the signaling and/or allowing a reduction in the overall computational complexity at various nodes of the network 100. Moreover, it is appreciated that composite extension fields can be applied to existing code designs as well as used as the basis for new code designs.
In one example, composite extension fields can be applied to existing Random Linear Network Coding (RLNC) systems that use a single field size in all coding operations, both at end devices (e.g., receivers 106) and at intermediate nodes 104. Using a single field size can create a heavy computational burden on intermediate nodes 104, which may need to process multiple flows. Composite extension fields can be applied to RLNC systems to allow intermediate nodes 104 to choose what field to recode with according to their current work load without requiring an end-to-end change in parameters (i.e., without require coordination between sources 102, intermediate nodes 104, or receivers 106). This can result in higher flexibility while maintaining the per packet overhead.
As another example, composite extension fields can be applied to systems that use Fulcrum network codes, which permit a fluid allocation of complexity in the network, maintaining the performance of high fields and a low per packet overhead for signaling. Composite extension fields can allow for the inner code in Fulcrum to be designed with a higher field from 2k, but allowing intermediate nodes to operate as low in field as
2 and maintain compatibility with the high field of the outer code.
A new application of composite extension fields are so-called “Telescopic codes,” which are specifically designed to use multiple composite extension fields in the same generation of data packets. Telescopic codes can reduce the per packet overhead by using a large number of linear coefficients in small field sizes, and maintain a low overhead from linearly dependent combinations, by leveraging enough coefficients in fields of larger size.
Consider coding over g packets each of size B bits. In traditional RLNC, the data in each packet is represented by a Finite Field (FF) of size q. A coded packet, , is generated at the source by combining all g packets in the block as defined by a coding vector {right arrow over (v)} which comprises g coding coefficients in the FF,
=M·
, where M represents the original g packets in matrix form.
In contrast, for a Telescopic code, the coding vectors {tilde over (v)} includes elements in multiple fields with different sizes. Let be defined as the list of field size of length g, |
|=g, corresponding to the elements in the coding vector
. Without loss of generality, an ordering can be imposed on the list of field sizes, for example
i≦
i+1, ∀iε[1, g]. The size of the coding vector can be computed as
||=Σi=1|q|┌ log2(ηi)┐[bits] (6)
A receiver that has collected any g linearly independent coded (or uncoded) packets can invert the performed coding operations and thus recreate the original data, M={circumflex over (X)}·{circumflex over (V)}−1, where {circumflex over (X)} is the collected coded packets and {circumflex over (V)} is the corresponding collected coding vectors. It will be appreciated that, without using network coding (or, more generally, an erasure correcting code), the receiver would instead have to collect all original packets.
Referring now to
The illustrative system 200 includes a source node 202, an intermediate network node 204, and a receiver (or “sink”) node 206, which may correspond to a source 102, intermediate node 104, and receiver 106 in
The source 202 comprises a sender 208 and a multiple-field-size encoder 210. The sender 208 generates or otherwise provides source (or “original”) data packets to the encoder 210. As in traditional RLNC, the multiple-field-size encoder 210 generates coded packets by multiplying source with a coding vector. Thus, a coded packet is calculated as the sum of the products for each packet multiplied with the corresponding element in the coding vector. However, in contrast to traditional RLNC, the coding vector includes elements chosen from multiple fields (i.e., composite extension finite fields). In some embodiments, the size of a resulting coded packet is identical to that of one of the original data packet. An illustrative coding technique that may be used within a source node 202 is described next.
The encoding process for Telescopic codes is similar to encoding in RLNC. In particular, a coded packet may be generated by multiplying the original data M with a coding vector
. Thus, a coded packet is calculated as the sum of the products for each packet multiplied with the corresponding element in the coding vector
Where i is a random element drawn from the field
i. The size of the resulting coded packet is identical to that of one of the original packet.
A source node 206 may include a multiple-field-size decoder 214 and a receiver 216. The decoder 214 receives coded packets transmitted from the source 202 via the network 204 and uses a Gaussian elimination technique to recover the source data packets. Given the underlying code structure, the decode 214 may start by identifying pivot elements from coefficients of the smaller field (e.g., 2). Using those pivot elements, the decoder 214 can start eliminating its contribution from the other linear combinations using only smaller-field operations. After all possible pivot elements in the smaller field have been identified and its contribution eliminated from the remaining coded packets, the decoder 214 can start identifying pivots in the second smallest field (e.g.,
2
Decoding can be performed efficiently in the same way as traditional RLNC using Gaussian elimination, with the following steps.
1) Forward substitute: each previously received symbol, , into the received symbol
,
=
+
·
r s.t.
r=0, where r is the pivot element identified for the previously received symbol; hence it,
r≡1.
2) Identify pivot: for the resulting symbol, p=min(
≠0) and normalize wrt
p,
=
·
p−1.
3) Backward substitute: the partially decoded symbol into previously received symbols ,
=
+
·
p s.t.
p=0.
From Equation (3), the addition of two coding vectors (and coded packets) is valid, and since i≡0, ∀iε[1, p) and
p≦
j, ∀jε[p, g] all multiplication performed during decoding is also valid.
q (e.g.,
2 and
2
Given the underlying structure, the decoder 214 may begin by identifying pivot elements from coefficients of the smaller field (leftmost in the coding matrix 300), 2 in this example. Using those pivot elements, the decoder 214 can eliminate its contribution from the other linear combinations using only
2 operations. After all possible pivot elements in
2 have been identified and that field's contribution eliminated from the remaining coded packets, the decoder 214 can identify pivots in the second smallest field, namely,
2
2
Referring again to , having r elements, where r is the rank of the decoder and wi is a random element drawn from the field
i.
In various embodiments, an intermediate node 204 includes implementations of multiple different recoding techniques. For example, the illustrative node 204 in
The multiple-field-size recoder 212a may be configured to partially decode all incoming packets, thus keeping PT in reduced echelon form. This approach requires additional computational work if the intermediate node 204 does not decode (i.e., if it only recodes), but ensures that the recoded coding vector is indistinguishable from the original coding vector. Since {tilde over (v)}i≦i, ∀iε[1, r] and {tilde over (v)}i, ∀iε[r+1, g] is given by Equation (9) where
i≦
i, ∀iε[1, r], jε[r+1, g] hence
i≦
i, ∀iε[r+1, g] by Equations (4) and (5).
The low-field recoder 212b may be configured to perform recoding using a local coding vector with elements in the smallest field, 2 in this example. As with the multiple-field-size recoder 212a, the resulting recoded vector {tilde over (v)} here will be also be indistinguishable from the original coding vector. Although recoding in the smallest field may be reduce the processing required at the intermediate node 204, it is appreciated that the probability of linear dependency at the receiver 206 may be impacted negatively due to the use of a small field.
The high-field recoder 212c may be configured to perform recoding over one of the extension fields with size qx then the elements in {tilde over (v)} will have size max(i, qx), ∀iε[1, g]. It is appreciated that this approach can reduce the probability of linear dependency at the receiver 206 but also increases the overhead from the coding vector to |{tilde over (v)}|=Σi=1g ┌ log2(max(
i, qx))┐ [bits].
The specific recoding strategy used may be based upon various criteria, including but not limited to: (1) requirements for maintaining code structure; (2) processing capability of an intermediate node 204; and (3) desired/expected probability that packets received at a receiver node 206 are linearly independent of each other. Using the low-field recoder 212b, code structure is maintained, whereas code structure is generally not maintained with either the multiple-field-size recoder 212a or the high-field recoder 212c (although it may be maintained in the multiple-field-size recorder 212a under special circumstances). The low-field recoder 212b requires the lowest computational effort and the high-field recoder 212c requires the highest computational effort. On the other hand, the low-field recoder 212a generally provides the lowest probability of linear independence and the high-field recoder 212c provides the highest probability.
Processing may be implemented in hardware, software, or a combination of the two. In various embodiments, processing is provided by computer programs executing on programmable computers/machines that each includes a processor, a storage medium or other article of manufacture that is readable by the processor (including volatile and non-volatile memory and/or storage elements), at least one input device, and one or more output devices. Program code may be applied to data entered using an input device to perform processing and to generate output information.
The system can perform processing, at least in part, via a computer program product, (e.g., in a machine-readable storage device), for execution by, or to control the operation of, data processing apparatus (e.g., a programmable processor, a computer, or multiple computers). Each such program may be implemented in a high level procedural or object-oriented programming language to communicate with a computer system. However, the programs may be implemented in assembly or machine language. The language may be a compiled or an interpreted language and it may be deployed in any form, including as a stand-alone program or as a module, component, subroutine, or other unit suitable for use in a computing environment. A computer program may be deployed to be executed on one computer or on multiple computers at one site or distributed across multiple sites and interconnected by a communication network. A computer program may be stored on a storage medium or device (e.g., CD-ROM, hard disk, or magnetic diskette) that is readable by a general or special purpose programmable computer for configuring and operating the computer when the storage medium or device is read by the computer. Processing may also be implemented as a machine-readable storage medium, configured with a computer program, where upon execution, instructions in the computer program cause the computer to operate.
Processing may be performed by one or more programmable processors executing one or more computer programs to perform the functions of the system. All or part of the system may be implemented as special purpose logic circuitry (e.g., an FPGA (field programmable gate array) and/or an ASIC (application-specific integrated circuit)).
All references cited herein are hereby incorporated herein by reference in their entirety.
Having described certain embodiments, which serve to illustrate various concepts, structures, and techniques sought to be protected herein, it will be apparent to those of ordinary skill in the art that other embodiments incorporating these concepts, structures, and techniques may be used. Elements of different embodiments described hereinabove may be combined to form other embodiments not specifically set forth above and, further, elements described in the context of a single embodiment may be provided separately or in any suitable sub-combination. Accordingly, it is submitted that scope of protection sought herein should not be limited to the described embodiments but rather should be limited only by the spirit and scope of the following claims.
This application claims the benefit under 35 U.S.C. §119(e) of U.S. Provisional Application No. 62/170,349 filed Jun. 3, 2015, which application is incorporated herein by reference in its entirety.
Number | Name | Date | Kind |
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8792539 | Larsson | Jul 2014 | B2 |
9647800 | Lucani | May 2017 | B2 |
20090310608 | Chen | Dec 2009 | A1 |
20100061295 | Preteseille | Mar 2010 | A1 |
20100265865 | Vijayan | Oct 2010 | A9 |
20120063533 | Fonseka | Mar 2012 | A1 |
20140233673 | Smith | Aug 2014 | A1 |
20140281837 | Frigo | Sep 2014 | A1 |
20140379858 | Mahdaviani | Dec 2014 | A1 |
20150095739 | Zhovnirnovsky | Apr 2015 | A1 |
20150207881 | Tulino | Jul 2015 | A1 |
20160112069 | Lablans | Apr 2016 | A1 |
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