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1 [[!tag whitepapers]]
2
3 **Revision History**
4
5 * v0.00 05may2021 first created
6 * v0.01 06may2021 initial first draft
7
8 **Table of Contents**
9
10 [[!toc]]
11
12 # Why in the 2020s would you invent a new Vector ISA
13
14 *The short answer: you don't. Extend existing technology: on the shoulders of giants*
15
16 Inventing a new Scalar ISA from scratch is over a decade-long task
17 including simulators and compilers: OpenRISC 1200 took 12 years to
18 mature. A Vector or Packed SIMD ISA to reach stable *general-purpose*
19 auto-vectorisation compiler support has never been achieved in the
20 history of computing, not with the combined resources of ARM, Intel,
21 AMD, MIPS, Sun Microsystems, SGI, Cray, and many more. (*Hand-crafted
22 assembler and direct use of intrinsics is the Industry-standard norm
23 to achieve high-performance optimisation where it matters*).
24 GPUs full this void both in hardware and software terms by having
25 ultra-specialist compilers (CUDA) that are designed from the ground up
26 to support Vector/SIMD parallelism, and associated standards
27 (SPIR-V, Vulkan, OpenCL) managed by
28 the Khronos Group, with multi-man-century development committment from
29 multiple billion-dollar-revenue companies, to sustain them.
30
31 Therefore it begs the question, why on earth would anyone consider
32 this task, and what, in Computer Science, actually needs solving?
33
34 First hints are that whilst memory bitcells have not increased in speed
35 since the 90s (around 150 mhz), increasing the bank width, striping, and
36 datapath widths and speeds to the same has allowed
37 significant apparent speed increases: 3200 mhz DDR4 and even faster DDR5,
38 and other advanced Memory interfaces such as HBM, Gen-Z, and OpenCAPI,
39 all make an effort (all simply increasing the parallel deployment of
40 the underlying 150 mhz bitcells), but these efforts are dwarfed by the
41 two nearly three orders of magnitude increase in CPU horsepower
42 over the same timeframe. Seymour
43 Cray, from his amazing in-depth knowledge, predicted that the mismatch
44 would become a serious limitation, over two decades ago. Some systems
45 at the time of writing are now approaching a *Gigabyte* of L4 Cache,
46 by way of compensation, and as we know from experience even that will
47 be considered inadequate in future.
48
49 Efforts to solve this problem by moving the processing closer to or
50 directly integrated into the memory have traditionally not gone well:
51 Aspex Microelectronics, Elixent, these are parallel processing companies
52 that very few have heard of, because their software stack was so
53 specialist that it required heavy investment by customers to utilise.
54 D-Matrix, a Systolic Array Processor, is a modern incarnation of the exact same
55 "specialist parallel processing" mistake, betting heavily on AI with
56 Matrix and Convolution Engines that can do no other task. Aspex only
57 survived by being bought by Ericsson, where its specialised suitability
58 for massive wide Baseband FFTs saved it from going under.
59 The huge risk is that any "better
60 AI mousetrap" created by an innovative competitor
61 that comes along quickly renders the non-generalised approach obsolete.
62
63 NVIDIA and other GPUs have taken a different approach again: massive
64 parallelism with more Turing-complete ISAs in each, and dedicated
65 slower parallel memory paths (GDDR5) suited to the specific tasks of
66 3D, Parallel Compute and AI. The complexity of this approach is only dwarfed
67 by the amount of money poured into the software ecosystem in order
68 to make it accessible, and even then, GPU Programmers are a specialist
69 and rare (expensive) breed.
70
71 Second hints as to the answer emerge from an article
72 "[SIMD considered harmful](https://www.sigarch.org/simd-instructions-considered-harmful/)"
73 which illustrates a catastrophic rabbit-hole taken by Industry Giants
74 ARM, Intel, AMD, since the 90s (over 3 decades) whereby SIMD, an
75 Order(N^6) opcode proliferation nightmare, with its mantra "make it
76 easy for hardware engineers, let software sort out the mess" literally
77 overwhelming programmers. Specialists charging
78 clients for assembly-code Optimisation Services are finding that AVX-512,
79 to take an
80 example, is anything but optimal: overall performance of AVX-512 actually
81 *decreases* even as power consumption goes up.
82
83 Cray-style Vectors solved, over thirty years ago, the opcode proliferation
84 nightmare. Only the NEC SX Aurora however truly kept the Cray Vector
85 flame alive, until RISC-V RVV and now SVP64 and recently MRISC32 joined
86 it. ARM's SVE/SVE2 is critically flawed (lacking the Cray `setvl`
87 instruction that makes a truly ubiquitous Vector ISA) in ways that
88 will become apparent over time as adoption increases. In the meantime
89 programmers are, in direct violation of ARM's advice on how to use SVE2,
90 trying desperately to use it as if it was Packed SIMD NEON. The advice
91 not to create SVE2 assembler that is hardcoded to fixed widths is being
92 disregarded, in favour of writing *multiple identical implementations*
93 of a function, each with a different hardware width, and compelling
94 software to choose one at runtime after probing the hardware.
95
96 Even RISC-V, for all that we can be grateful to the RISC-V Founders
97 for reviving Cray Vectors, has severe performance and implementation
98 limitations that are only really apparent to exceptionally experienced
99 assembly-level developers with a wide, diverse depth in multiple ISAs:
100 one of the best and clearest is a
101 [ycombinator post](https://news.ycombinator.com/item?id=24459041)
102 by adrian_b.
103
104 Adrian logically and concisely points out that the fundamental design
105 assumptions and simplifications that went into the RISC-V ISA have an
106 irrevocably damaging effect on its viability for high performance use.
107 That is not to say that its use in low-performance embedded scenarios is
108 not ideal: in private custom secretive commercial usage it is perfect.
109 Trinamic, an early adopter, created their TMC2660 Stepper IC replacing
110 ARM with RISC-V and saving themselves USD 1 in licensing royalties
111 per product are a classic case study. Ubiquitous and common everyday
112 usage in scenarios currently occupied by ARM, Intel, AMD and IBM? not
113 so much. Even though RISC-V has Cray-style Vectors, the whole ISA is,
114 unfortunately, fundamentally flawed as far as power efficient high
115 performance is concerned.
116
117 Slowly, at this point, a realisation should be sinking in that, actually,
118 there aren't as many really truly viable Vector ISAs out there, as the
119 ones that are evolving in the general direction of Vectorisation are,
120 in various completely different ways, flawed.
121
122 **Successfully identifying a limitation marks the beginning of an
123 opportunity**
124
125 We are nowhere near done, however, because a Vector ISA is a superset of a
126 Scalar ISA, and even a Scalar ISA takes over a decade to develop compiler
127 support, and even longer to get the software ecosystem up and running.
128
129 Which ISAs, therefore, have or have had, at one point in time, a decent
130 Software Ecosystem? Debian supports most of these including s390:
131
132 * SPARC, created by Sun Microsystems and all but abandoned by Oracle.
133 Gaisler Research maintains the LEON Open Source Cores but with Oracle's
134 reputation nobody wants to go near SPARC.
135 * MIPS, created by SGI and only really commonly used in Network switches.
136 Exceptions: Ingenic with embedded CPUs,
137 and China ICT with the Loongson supercomputers.
138 * x86, the most well-known ISA and also one of the most heavily
139 litigously-protected.
140 * ARM, well known in embedded and smartphone scenarios, very slowly
141 making its way into data centres.
142 * OpenRISC, an entirely Open ISA suitable for embedded systems.
143 * s390, a Mainframe ISA very similar to Power.
144 * Power ISA, a Supercomputing-class ISA, as demonstrated by
145 two out of three of the top500.org supercomputers using
146 around 2 million IBM POWER9 Cores each.
147 * ARC, a competitor at the time to ARM, best known for use in
148 Broadcom VideoCore IV.
149 * RISC-V, with a software ecosystem heavily in development
150 and with rapid expansion
151 in an uncontrolled fashion, is set on an unstoppable
152 and inevitable trainwreck path to replicate the
153 opcode conflict nightmare that plagued the Power ISA,
154 two decades ago.
155 * Tensilica, Andes STAR and Western Digital for successful
156 commercial proprietary ISAs: Tensilica in Baseband Modems,
157 Andes in Audio DSPs, WD in HDDs and SSDs. These are all
158 astoundingly commercially successful
159 multi-billion-unit mass volume markets that almost nobody
160 knows anything about. Included for completeness.
161
162 In order of least controlled to most controlled, the viable
163 candidates for further advancement are:
164
165 * OpenRISC 1200, not controlled or restricted by anyone. no patent
166 protection.
167 * RISC-V, touted as "Open" but actually strictly controlled under
168 Trademark License: too new to have adequate patent pool protection,
169 as evidenced by multiple adopters having been hit by patent lawsuits.
170 * MIPS, SPARC, ARC, and others, simply have no viable ecosystem.
171 * Power ISA: protected by IBM's extensive patent portfolio for Members
172 of the OpenPOWER Foundation, covered by Trademarks, permitting
173 and encouraging contributions, and having software support for over
174 20 years.
175 * ARM, not permitting Open Licensing, they survived in the early 90s
176 only by doing a deal with Samsung for an in-perpetuity
177 Royalty-free License, in exchange
178 for GBP 3 million and legal protection through Samsung Research.
179 Several large Corporations (Apple most notably) have licensed the ISA
180 but not ARM designs: the barrier to entry is high and the ISA itself
181 protected from interference as a result.
182 * x86, famous for an unprecedented
183 Court Ruling in 2004 where a Judge "banged heads
184 together" and ordered AMD and Intel to stop wasting his time,
185 make peace, and cross-license each other's patents, anyone wishing
186 to use the x86 ISA need only look at Transmeta, SiS, the Vortex x86,
187 and VIA EDEN processors, and see how they fared.
188 * s390, IBM's mainframe ISA. Nowhere near as well-known as x86 lawsuits,
189 but the 800lb Gorilla Syndrome seems not to have deterred one
190 particularly disingenuous group from performing illegal
191 Reverse-Engineering.
192
193 By asking the question, "which ISA would be the best and most stable to
194 base a Vector Supercomputing-class Extension on?" where patent protection,
195 software ecosystem, open-ness and pedigree all combine to reduce risk
196 and increase the chances of success, there is really only one candidate.
197
198 **Of all of these, the only one with the most going for it is the Power ISA.**
199
200 The summary of advantages, then, of the Power ISA is that:
201
202 * It has a 25-year software ecosystem, with RHEL, Fedora, Debian
203 and more.
204 * Amongst many other features
205 it has Condition Registers which can be used by Branches, greatly
206 reducing pressure on the main register files.
207 * IBM's extensive 20+ years of patents is available, royalty-free,
208 to protect implementors as long as they are also members of the
209 OpenPOWER Foundation
210 * IBM designed and maintained the Power ISA as a Supercomputing
211 class ISA from its inception over 25 years ago.
212 * Coherent distributed memory access is possible through OpenCAPI
213 * Extensions to the Power ISA may be submitted through an External
214 RFC Process that does not require membership of OPF.
215
216 From this strong base, the next step is: how to leverage this
217 foundation to take a leap forward in performance and performance/watt,
218 *without* losing all the advantages of an ubiquitous software ecosystem,
219 the lack of which has historically plagued other systems and relegated
220 them to a risky niche market?
221
222 # How do you turn a Scalar ISA into a Vector one?
223
224 The most obvious question before that is: why on earth would you want to?
225 As explained in the "SIMD Considered Harmful" article, Cray-style
226 Vector ISAs break the link between data element batches and the
227 underlying architectural back-end parallel processing capability.
228 Packed SIMD explicitly smashes that width right in the face of the
229 programmer and expects them to like it. As the article immediately
230 demonstrates, an arbitrary-sized data set has to contend with
231 an insane power-of-two Packed SIMD cascade at both setup and teardown
232 that routinely adds literally an order
233 of magnitude increase in the number of hand-written lines of assembler
234 compared to a well-designed Cray-style Vector ISA with a `setvl`
235 instruction.
236
237 Assuming then that variable-length Vectors are obviously desirable,
238 it becomes a matter of how, not if. Both Cray and NEC SX Aurora
239 went the way of adding explicit Vector opcodes, a style which RVV
240 copied and modernised. In the case of RVV this introduced 192 new
241 instructions on top of an existing 95+ for base RV64GC. Adding
242 200% more instructions than the base ISA seems unwise: at least,
243 it feels like there should be a better way, particularly on
244 close inspection of RVV as an example, the basic arithmetic
245 operations are massively duplicated: scalar-scalar from the base
246 is joined by both scalar-vector and vector-vector *and* predicate
247 mask management, and transfer instructions between all the same,
248 which goes a long way towards explaining why there are twice as many
249 Vector instructions in RISC-V as there are in the RV64GC Scalar base.
250
251 The question then becomes: with all the duplication of arithmetic
252 operations just to make the registers scalar or vector, why not
253 leverage the *existing* Scalar ISA with some sort of "context"
254 or prefix that augments its behaviour? Then, the Instruction Decode
255 phase is greatly simplified, reducing design complexity and leaving
256 plenty of headroom for further expansion.
257
258 Remarkably this is not a new idea. Intel's x86 `REP` instruction
259 gives the base concept, but in 1994 it was Peter Hsu, the designer
260 of the MIPS R8000, who first came up with the idea of Vector-augmented
261 prefixing of an existing Scalar ISA. Relying on a multi-issue Out-of-Order Execution Engine,
262 the prefix would mark which of the registers were to be treated as
263 Scalar and which as Vector, then, treating the Scalar "suffix" instruction
264 as a guide and making "scalar instruction" synonymous with "Vector element",
265 perform a `REP`-like loop that
266 jammed multiple scalar operations into the Multi-Issue Execution
267 Engine. The only reason that the team did not take this forward
268 into a commercial product
269 was because they could not work out how to cleanly do OoO
270 multi-issue at the time.
271
272 In its simplest form, then, this "prefixing" idea is a matter
273 of:
274
275 * Defining the format of the prefix
276 * Adding a `setvl` instruction
277 * Adding Vector-context SPRs and working out how to do
278 context-switches with them
279 * Writing an awful lot of Specification Documentation
280 (4 years and counting)
281
282 Once the basics of this concept have sunk in, early
283 advancements quickly follow naturally from analysis
284 of the problem-space:
285
286 * Expanding the size of GPR, FPR and CR register files to
287 provide 128 entries in each. This is a bare minimum for GPUs
288 in order to keep processing workloads as close to a LOAD-COMPUTE-STORE
289 batching as possible.
290 * Predication (an absolutely critical component for a Vector ISA),
291 then the next logical advancement is to allow separate predication masks
292 to be applied to *both* the source *and* the destination, independently.
293 * Element-width overrides: most Scalar ISAs today are 64-bit only,
294 with primarily Load and Store being able to handle 8/16/32/64
295 and sometimes 128-bit (quad-word), where Vector ISAs need to
296 go as low as 8-bit arithmetic, even 8-bit Floating-Point for
297 high-performance AI. Rather than waste opcode space adding all
298 such operations at different bitwidths, let the prefix
299 *redefine* (override) the element width, without actually altering
300 the Scalar ISA at all.
301 * "Reordering" of the assumption of linear sequential element
302 access, for Matrices, rotations, transposition, Convolutions,
303 DCT, FFT, Parallel Prefix-Sum and other common transformations
304 that require significant programming effort in other ISAs.
305
306 All of these things come entirely from "Augmentation" of the Scalar operation
307 being prefixed: at no time is the Scalar operation significantly
308 altered.
309 From there, several more "Modes" can be added, including saturation,
310 which is needed for Audio and Video applications, "Reverse Gear"
311 which runs the Element Loop in reverse order (needed for Prefix
312 Sum), and more.
313
314 **What is missing from Power Scalar ISA that a Vector ISA needs?**
315
316 Remarkably, very little: the devil is in the details though.
317
318 * The traditional `iota` instruction may be
319 synthesised with an overlapping add, that stacks up incrementally
320 and sequentially. Although it requires two instructions (one to
321 start the sum-chain) the technique has the advantage of allowing
322 increments by arbitrary amounts, and is not limited to addition,
323 either.
324 * Big-integer addition (arbitrary-precision arithmetic) is an
325 emergent characteristic from the carry-in, carry-out capability of
326 Power ISA `adde` instruction. `sv.adde` as a BigNum add
327 naturally emerges from the
328 sequential chaining of these scalar instructions.
329 * The Condition Register Fields of the Power ISA make a great candidate
330 for use as Predicate Masks, particularly when combined with
331 Vectorised `cmp` and Vectorised `crand`, `crxor` etc.
332
333 It is only when looking slightly deeper into the Power ISA that
334 certain things turn out to be missing, and this is down in part to IBM's
335 primary focus on the 750 Packed SIMD opcodes at the expense of the 250 or
336 so Scalar ones. Examples include that transfer operations between the
337 Integer and Floating-point Scalar register files were dropped approximately
338 a decade ago after the Packed SIMD variants were considered to be
339 duplicates. With it being completely inappropriate to attempt to Vectorise
340 a Packed SIMD ISA designed 20 years ago with no Predication of any kind,
341 the Scalar ISA, a much better all-round candidate for Vectorisation is
342 left anaemic.
343
344 A particular key instruction that is missing is `MV.X` which is
345 illustrated as `GPR(dest) = GPR(GPR(src))`. This horrendously
346 expensive instruction causing a huge swathe of Register Hazards
347 in one single hit is almost never added to a Scalar ISA but
348 is almost always added to a Vector one. When `MV.X` is
349 Vectorised it allows for arbitrary
350 remapping of elements within a Vector to positions specified
351 by another Vector. A typical Scalar ISA will use Memory to
352 achieve this task, but with Vector ISAs the Vector Register Files are
353 usually so enormous, and so far away from Memory, that it is easier and
354 more efficient, architecturally, to provide these Indexing instructions.
355
356 Fortunately, with the ISA Working Group being willing
357 to consider RFCs (Requests For Change) these omissions have the potential
358 to be corrected.
359
360 One deliberate decision in SVP64 involves Predication. Typical Vector
361 ISAs have quite comprehensive arithmetic and logical operations on
362 Predicate Masks, and if CR Fields were the only predicates in SVP64
363 it would put pressure on to start adding the exact same arithmetic and logical
364 operations that already exist in the Integer opcodes.
365 Instead of taking that route the decision was made to allow *both*
366 Integer *and* CR Fields to be Predicate Masks, and to create Draft
367 instructions that provide better transfer capability between CR Fields
368 and Integer Register files.
369
370 Beyond that, further extensions to the Power ISA become much more
371 domain-specific, such as adding bitmanipulation for Audio, Video
372 and Cryptographic use-cases, or adding Transcendentals (`LOG1P`,
373 `ATAN2` etc) for 3D and other GPU workloads. The huge advantage here
374 of the SVP64 "Prefix" approach is that anything added to the Scalar ISA
375 *automatically* is inherently added to the Vector one as well, and
376 because these GPU and Video opcodes have been added to the CPU ISA,
377 Software Driver development and debugging is dramatically simplified.
378
379 Which brings us to the next important question: how is any of these
380 CPU-centric Vector-centric improvements relevant to power efficiency
381 and making more effective use of resources?
382
383 # Simpler more compact programs saves power
384
385 The first and most obvious saving is that, just as with any Vector
386 ISA, the amount of data processing requested
387 and controlled by each instruction is enormous, and leaves the
388 Decode and Issue Engines idle, as well as the L1 I-Cache. With
389 programs being smaller, chances are higher that they fit into
390 L1 Cache, or that the L1 Cache may be made smaller.
391
392 Even a Packed SIMD ISA could take limited advantage of a higher
393 bang-per-buck for limited specific workloads, as long as the
394 stripmining setup and teardown is not required. However a
395 2-wide Packed SIMD instruction is nowhere near as high a bang-per-buck
396 ratio as a 64-wide Vector Length.
397
398 Realistically, for general use cases however it is extremely common
399 to have the Packed SIMD setup and teardown. `strncpy` for VSX is an
400 astounding 240 hand-coded assembler instructions where it is around
401 12 to 14 for both RVV and SVP64. Worst case (full algorithm unrolling
402 for Massive FFTs) the L1 I-Cache becomes completely ineffective, and in
403 the case of the IBM POWER9 with a little-known design flaw not
404 normally otherwise encountered this results in
405 contention between the L1 D and I Caches at the L2 Bus, slowing down
406 execution even further. Power ISA 3.1 MMA (Matrix-Multiply-Assist)
407 requires loop-unrolling to contend with non-power-of-two Matrix
408 sizes: SVP64 does not, as hinted at below.
409
410 Additional savings come in the form of `SVREMAP`. This is a hardware
411 index transformation system where the normally sequentially-linear
412 element access may be "Re-Mapped" to limited but algorithmic-tailored
413 commonly-used deterministic schedules, for example Matrix Multiply,
414 DCT, or FFT. A full in-register-file 5x7 Matrix Multiply or a 3x4 or
415 2x6 may be performed in as little as 4 instructions, one of which
416 is to zero-initialise the accumulator Vector used to store the result.
417 If addition to another Matrix is also required then it is only three
418 instructions. Not only that, but because the "Schedule" is an abstract
419 concept separated from the mathematical operation, there is no reason
420 why Matrix Multiplication Schedules may not be applied to Integer
421 Mul-and-Accumulate, Galois Field Mul-and-Accumulate, Logical
422 AND-and-OR, or any other future instruction such as Complex-Number
423 Multiply-and-Accumulate that a future version of the Power ISA might
424 support. The flexibility is not only enormous, but the compactness
425 unprecedented. RADIX2 in-place DCT Triple-loop Schedules may be created in
426 around 11 instructions. The only other processors well-known to have
427 this type of compact capability are both VLIW DSPs: TI's TMS320 Series
428 and Qualcom's Hexagon, and both are targetted at FFTs only.
429
430 There is no reason at all why future algorithmic schedules should not
431 be proposed as extensions to SVP64 (sorting algorithms,
432 compression algorithms, Sparse Data Sets, Graph Node walking
433 for example). Bear in mind that
434 the submission process will be
435 entirely at the discretion of the OpenPOWER Foundation ISA WG,
436 something that is both encouraged and welcomed by the OPF.
437
438 One of SVP64's current limitations is that it was initially designed
439 for 3D and Video workloads as a hybrid GPU-VPU-CPU. This resulted in
440 a heavy focus on adding hardware-for-loops onto the *Registers*.
441 After more than three years of development the realisation hit that
442 the SVP64 concept could be expanded to Coherent Distributed Memory,
443 This astoundingly powerful concept is explored in the next section.
444
445 # Coherent Deterministic Hybrid Distributed Memory-Processing
446
447 It is not often that a heading in an article can legitimately
448 contain quite so many comically-chained buzzwords, but in this section
449 they are justified. As hinted at in the first section, the last time
450 that memory was the same speed as processors was the Pentium III
451 and Motorola 88100 era: 133 and 166 mhz SDRAM was available, and
452 CPUs were about the same rate. DRAM bitcells *simply cannot exceed
453 these rates*, yet the pressure from Software Engineers is to
454 make *sequential* algorithm processing faster and faster because
455 parallelising of algorithms is simply too difficult to master, and always
456 has been. Thus whilst DRAM has to go parallel (like RAID Striping) to
457 keep up, CPUs are now at 8-way Multi-Issue 5 ghz clock rates and
458 are at an astonishing four levels of cache (L1 to L4).
459
460 It should therefore come as no surprise that attempts are being made
461 to move (distribute) processing closer to the DRAM Memory, firmly
462 on the *opposite* side of the main CPU's L1/2/3/4 Caches. However
463 the alarm bells ring here at the keyword "distributed", because by
464 moving the processing down next to the Memory, even onto
465 the same die as the DRAM, the speed of any
466 of the parallel Processing Elements (PEs) would likely drop
467 by almost two orders of magnitude (5 ghz down to 150 mhz),
468 the simplicity of each PE has, for pure pragmatic reasons,
469 to drop by several
470 orders of magnitude as well.
471 Things that the average "sequential algorithm"
472 programmer
473 takes for granted such as SMP, Cache Coherency, Virtual Memory,
474 spinlocks (atomic locking, mutexes), all of these are either outright gone
475 or expected that the programmer shall explicitly contend with
476 (even if that programmer is the Compiler Developer). There's definitely
477 not going to be a standard OS: the PEs will be too basic, too
478 resource-constrained, and definitely too busy.
479
480 To give an extreme example: Aspex's Array-String Processor, which
481 was 4096 2-bit SIMD PEs each with 256 bytes of Content Addressable
482 Memory, was capable of literally a hundred-fold improvement in
483 performance over Scalar CPUs such as the Pentium III of its era,
484 all on a 3 watt budget at only 250 mhz in 130 nm. Yet to take
485 proper advantage of its capability required an astounding 5-10
486 *days* per line of assembly code because multiple versions of
487 an algorithm had to be hand-crafted then compared, and only
488 the best one selected: all others discarded. 20 lines of optimised
489 Assembler taking three to six months to write can in no way be termed
490 "productive", yet this extreme level of unproductivity is an inherent
491 side-effect of going down the parallel-processing rabbithole.
492
493 **In short, we are in "Programmer's nightmare" territory**
494
495 Having dug a proverbial hole that rivals the Grand Canyon, and
496 jumped in it feet-first, the next
497 task is to piece together a strategy to climb back out and show
498 how falling back in can be avoided. This takes some explaining,
499 and first requires some background on various research efforts and
500 commercial designs. Once the context is clear, their synthesis
501 can be proposed. These are:
502
503 * [ZOLC: Zero-Overhead Loop Control](https://ieeexplore.ieee.org/abstract/document/1692906/)
504 * [OpenCAPI and Extra-V](https://dl.acm.org/doi/abs/10.14778/3137765.3137776)
505 * [Snitch](https://arxiv.org/abs/2002.10143)
506
507 **ZOLC: Zero-Overhead Loop Control**
508
509 The simplest longest commercially successful deployment of Zero-overhead looping
510 has been in Texas Instruments TMS320 DSPs. Up to fourteen sub-instructions
511 within the VLIW word may be repeatedly deployed on successive clock
512 cycles until a countdown reaches zero. This extraordinarily simple
513 concept needs no branches, and has no complex Register Hazard
514 Management in the hardware
515 because it is down to the programmer (or, the compiler),
516 to ensure data overlaps do not occur. Careful crafting of those
517 14 instructions can keep the ALUs 100% occupied for sustained periods,
518 and the iconic example for which the TI DSPs are renowned
519 is that an entire inner loop for large FFTs
520 can be done with that one VLIW word: no stalls, no stopping, no fuss.
521
522 The key aspect of these
523 very simplistic countdown loops as far as we are concerned:
524 is: *they are deterministic*.
525
526 Zero-Overhead Loop Control takes this basic "single loop" concept
527 way further: both nested loops and conditional exit are included,
528 but also arbitrary control-jumping from the current inner loop
529 out to an entirely different loop, all based on conditions determined
530 dynamically at runtime.
531
532 Even when deployed on as basic a CPU as a single-issue in-order RISC
533 core, the performance and power-savings were astonishing: between 20
534 and **80%** reduction in algorithm completion times were achieved compared
535 to a more traditional branch-speculative in-order RISC CPU. MPEG
536 Decode, the target algorithm specifically picked by the researcher
537 due to its high complexity with 6-deep nested loops and conditional
538 execution that frequently jumped in and out of at least 2 loops,
539 came out with an astonishing 43% improvement in completion time. 43%
540 less instructions executed is an almost unheard-of level of optimisation:
541 most ISA designers are elated if they can achieve 5 to 10%. The reduction
542 was so compelling that ST Microelectronics put it into commercial
543 production in one of their embedded CPUs.
544
545 The kicker: when implementing SVP64's Matrix REMAP Schedule, the VLSI
546 design of its triple-nested for-loop system
547 turned out to be remarkably similar to the
548 core nested for-loop engine of ZOLC. In hindsight this should not
549 have come as a surprise, because both are basically nested for-loops
550 that do not need branches to issue instructions.
551
552 The important insight is, however, that if ZOLC can be general-purpose
553 and apply deterministic nested looped instruction
554 schedules to more than just registers
555 (unlike SVP64 in its current incarnation) then so can SVP64.
556
557 **OpenCAPI and Extra-V**
558
559 OpenCAPI is a deterministic high-performance, high-bandwidth, low-latency
560 cache-coherent Memory-access Protocol that is integrated into IBM's Supercomputing-class POWER9 and POWER10 processors. POWER10 *only*
561 has OpenCAPI Memory interfaces, and requires an OpenCAPI-to-DDR4/5 Bridge PHY
562 to connect to standard DIMMs.
563
564 Extra-V appears to be a remarkable research project that, by leveraging
565 OpenCAPI, assuming that the map of edges in any given arbitrary data graph
566 could be kept by the main CPU in-memory, could distribute and delegate
567 a limited-capability deterministic but most importantly *data-dependent*
568 node-walking schedule actually right down into the memory itself (on the other side of that L1-4 cache barrier). A miniature processor
569 (non-Turing-complete) analysed
570 the data it had read (at the Memory), and determined if it should
571 notify the main processor that this "Node" is worth investigating,
572 or if the Graph node-walk should split in a different direction.
573 Thanks to the OpenCAPI Standard, which takes care of Virtual Memory
574 abstraction, locking, and cache-coherency, many of the nightmare problems
575 of other more explicit parallel processing paradigms disappear.
576
577 The similarity to ZOLC should not have gone unnoticed: where ZOLC
578 has nested conditional for-loops Extra-V appears to have just the
579 one conditional for-loop, but the key strategically-crucial
580 part of this multi-faceted puzzle is that due to the deterministic and
581 coherent nature of Extra-V, the processing of the loops, which
582 requires a tiny non-Turing-Complete processor, is not
583 done close to or by the main CPU at all: it is
584 *embedded right next to the memory*.
585
586 The similarity to the D-Matrix Systolic Array Processing, Aspex Microelectronics
587 Array-String Processing, and Elixent 2D Array Processing, should
588 also not have gone unnoticed. All of these solutions utilised
589 or utilise
590 a more comprehensive Turing-complete von-Neumann "Management Core"
591 to coordinate data passed in and out of PEs: none of them have or
592 had something
593 as powerful as OpenCAPI as part of that picture.
594
595 The fact that Neural Networks may be expressed as arbitrary Graphs,
596 and comprise Sparse Matrices, should also have been noted by the reader
597 interested in AI.
598
599 **Snitch**
600
601 Snitch is an elegant Memory-Coherent Barrel-Processor where registers
602 become "tagged" with a Memory-access Mode that went out of fashion
603 over forty years ago: Load-then-Auto-Increment. Expressed in c as
604 `src = *x++`, and requiring special Address Registers (PDP-11, 68000),
605 thanks to the RISC paradigm having gone too far,
606 the efficiency and effectiveness
607 of these Load-Store-with-Increment instructions has been
608 forgotten until Snitch.
609
610 What the designers did however was not to add new Load-Store
611 or Arithmetic instructions to RISC-V, but instead to "mark"
612 registers with a tag. These tags tell the CPU: when you are asked to
613 carry out
614 an add instruction on r6 and r7, do not take r6 or r7 from the register
615 file, instead please perform a Cache-coherent Load-with-Increment
616 on each, using special Address Registers for each. Each new use
617 of r6 therefore brings in an entirely new value *directly from
618 memory*. Likewise on the second operand, r7, and likewise on
619 the destination result which can be an automatic Coherent
620 Store-and-increment
621 directly into Memory. In essence:
622
623 *The act of "reading" or "writing" a register has been decoupled
624 and intercepted, then connected transparently to a completely
625 separate Coherent Memory Subsystem*
626
627 On top of a barrel-architecture the slowness of Memory access
628 was not a problem because the Deterministic nature of classic
629 Load-Store-Increment can be compensated for by having 8 Memory
630 accesses scheduled underway and interleaved in a time-sliced
631 fashion with an FPU that is correspondingly 8 times faster than
632 the Coherent Memory accesses.
633
634 This design is reminiscent of the early Vector Processors
635 of the late 1950s and early 1960s, which also critically relied
636 on implicit auto-increment addressing.
637 The [CDC STAR-100](https://en.m.wikipedia.org/wiki/CDC_STAR-100)
638 for example was specifically designed as a Memory-to-Memory Vector
639 Processor. The barrel-architecture of Snitch neatly
640 solves one of the inherent problems of those early designs (a mismatch
641 with memory
642 speed) and the presence of a full register file (non-tagged,
643 normal, standard scalar registers) caters for a
644 second limitation of pure Memory-based Vector Processors: temporary
645 variables needed in the computation of intermediate results, which
646 also had to go through memory, put
647 an awfully high artificial load on Memory bandwidth.
648
649 The similarity to SVP64 should be clear: SVP64 Prefixing and the
650 associated REMAP system is just another form of register "tagging"
651 that augments what was formerly designated by its original authors
652 as "just a Scalar ISA", tagging allows for dramatic implicit alteration
653 with advanced behaviour not previously envisaged.
654
655 What Snitch brings to the table therefore is a further illustration of
656 the concept introduced by Extra-V: where Extra-V brought information
657 about Sparse-Distributed Data to the attention of the main CPU in
658 a coherent fashion *without the CPU having to ask for it*, Snitch
659 demonstrates a classic LOAD-COMPUTE-STORE cycle in the same
660 distributed coherent manner, and does so with dramatically-reduced
661 power consumption.
662
663 **Bringing it all together**
664
665 At this point we are well into a future revision of SVP64, one that
666 clearly has some startlingly powerful potential: Supercomputing-class
667 Multi-Issue Vector Engines kept 100% occupied in a 100% long-term
668 sustained fashion with reduced complexity, reduced power consumption
669 and reduced completion time, thanks to Deterministic Coherent Scheduling
670 of the data fed in and out, or even moved down next to Memory.
671
672 This last part is where it normally gets hair-raising, but as ZOLC shows
673 there is no reason at all why even complex algorithms such as MPEG cannot
674 be run in a partially-deterministic manner, and anything that is
675 deterministic can be Scheduled, coherently. Combine that with OpenCAPI
676 which solves the many issues associated with SMP Virtual Memory and so on
677 yet still allows Cache-Coherent Distributed Memory Access, and what was
678 previously an intractable Computer Science problem for decades begins to
679 look like there is a potential solution.
680
681 The Deterministic Schedules created by ZOLC should even be possible to identify their
682 suitability for full off-CPU distributed processing, as long as OpenCAPI
683 is integrated into the mix. What a compiler - or even the hardware -
684 will be looking out for is a Basic Block of instructions that:
685
686 * begins with a LOAD (to be handled by OpenCAPI)
687 * contains some instructions that a given PE is capable of executing
688 * ends with a STORE (again: OpenCAPI)
689
690 For best results that would be wrapped with a Zero-Overhead Loop
691 (which is offloaded - in full - down to the PE), where
692 the Compiler (or hardware at runtime) could easily identify, in advance,
693 the full range of Memory Addresses that the Loop is to encounter. Copies
694 of loop-invariant data would need to be passed down to the remote PE:
695 again, for simple-enough Basic Blocks, with assistance from the Compiler,
696 loop-invariant inputs are easily identified. Parallel Processing
697 opportunities should also be easy enough to create, simply by farming out
698 different parts of a given Deterministic Zero-Overhead Loop to
699 different PEs based on their proximity, bandwidth or ease of access to
700 given Memory.
701
702 The importance of OpenCAPI in this mix cannot be underestimated, because
703 it will be the means by which the main CPU coordinates its activities
704 with the remote PEs, ensuring that LOAD/STORE Memory Hazards are not
705 violated. It should also be straightforward to ensure that the offloading
706 is entirely transparent to the developer, in fact this is a hard requirement
707 because at any given moment there is the possibility that the PEs may be
708 busy and it is the main CPU that has to complete the Processing Task itself.
709
710 It is also important to note that we are not necessarily talking about
711 the Remote PEs executing the Power ISA, but if they do so it becomes
712 much easier for the main CPU to take over in the event that PEs are
713 currently occupied. Plus, the twin lessons that inventing ISAs, even
714 a small one, is hard (mostly in compiler writing) and how complex
715 GPU Task Scheduling is, are being heard loud and clear.
716 Put another way:
717
718 * if the PEs run a foriegn ISA, then the Basic Blocks embedded inside
719 the ZOLC Loops must be in that ISA **OR**
720 * In order that the main CPU can execute the same sequence if necessary,
721 the CPU must support dual ISAs: Power and PE **OR**
722 * There must be a JIT binary-translator which either turns PE code
723 into Power ISA code or vice-versa **OR**
724 * The compiler dual-compiles the original source code, and embeds
725 both a Power binary and a PE binary into the ZOLC Basic Block **OR**
726 * All binaries are stored in an Intermediate Representation
727 (LLVM-IR, SPIR-V) and JIT-compiled on-demand.
728
729 All of these would work, but it is simpler and a lot less work
730 just to have the PEs
731 execute the exact same ISA (or a subset of it). If however the
732 concept of Hybrid PE-Memory Processing were to become a JEDEC Standard,
733 which would increase adoption and reduce cost, a bit more thought
734 is required here because ARM or Intel or MIPS might not necessarily
735 be happy that a Processing Element has to execute Power ISA binaries.
736 At least the Power ISA is much richer, more powerful, still RISC,
737 and is an Open Standard, as discussed in a earlier sections.
738
739 # Transparently-Distributed Vector Processing
740
741 It is very strange to the author to be describing what amounts to a
742 "Holy Grail" solution to a decades-long intractable problem that
743 mitigates the anticipated end of Moore's Law: how to make it easy for
744 well-defined workloads, expressed as a perfecly normal
745 sequential program, compiled to a standard well-known ISA, to have
746 the potential of being offloaded transparently to Parallel Compute Engines,
747 all without the Software Developer being excessively burdened with
748 a Parallel-Processing Paradigm that is alien to both their experience
749 and training, as well as common knowledge.
750
751 Will it be that easy? ZOLC is, honestly, in its current incarnation,
752 not that straightforward: programs
753 have to be "massaged" by tools that insert intrinsics into the
754 source code, in order to identify the Basic Blocks that the Zero-Overhead
755 Loops can run. Can this be merged into standard gcc and llvm
756 compilers? As intrinsics: of course. Can it become part of auto-vectorisation? Probably,
757 if an infinite supply of money and engineering time is thrown at it.
758 Is a half-way-house solution of compiler intrinsics good enough?
759 Intel, ARM, MIPS, Power ISA and RISC-V have all already said "yes" on that,
760 for several decades, and advanced programmers are comfortable with the
761 practice.
762
763 **Roadmap summary of Advanced SVP64**
764
765 The future direction for SVP64, then, is:
766
767 * To overcome its current limitation of REMAP Schedules being
768 restricted to Register Files, leveraging the Snitch-style
769 register interception "tagging" technique.
770 * To adopt ZOLC and merge REMAP Schedules into ZOLC
771 * To bring OpenCAPI Memory Access into ZOLC as a first-level
772 concept that mirrors Snitch's Coherent Memory interception
773 * To add the Graph-Node Walking Capability of Extra-V
774 to ZOLC / SVREMAP
775 * To make it possible, in a combination of hardware and software,
776 to easily identify ZOLC / SVREMAP Blocks
777 that may be transparently pushed down closer to Memory, for
778 localised distributed parallel execution, by OpenCAPI-aware PEs,
779 exploiting both the Deterministic nature of ZOLC / SVREMAP
780 combined with the Cache-Coherent nature of OpenCAPI,
781 to the maximum extent possible.
782 * To make the exploitation of this powerful solution as simple
783 and straightforward as possible for Software Engineers to use,
784 in standard common-usage compilers, gcc and llvm.
785 * To propose extensions to Public Standards that allow all of
786 the above to become part of everyday ubiquitous mass-volume
787 computing.
788
789 Even the first of these - merging Snitch-style register tagging
790 into SVP64 - would
791 expand SVP64's capability for Matrices, currently limited to
792 around 5x7 to 6x6 Matrices and constrained by the size of
793 the register files (128 64-bit entries), to arbitrary (massive) sizes.
794
795 Bottom line is that there is a clear roadmap towards solving a long
796 standing problem facing Computer Science and doing so in a way that
797 reduces power consumption reduces algorithm completion time and reduces
798 the need for complex hardware microarchitectures in favour of much
799 smaller distributed coherent Processing Elements.