@JerryCoffin At least you are talking about MS DOS, an semi-ancient app that I have initially written 7 years ago still gets a few downloads a week.
I rely on Apple & Google on backward compatibility. They hate developers like us. But they still allow us to be mostly on their platform, even if we do naughty things occasionally.
Where hash is a member variable. If I see repeated mov instructions to the address of hash, is it a failure of the optimizer or is the language twisting its arm somehow?
I can remove the extra mov instructions by putting a variable of the same type as hash on the stack and doing all the intermediate hashing steps on those and only storing it to the member on last assignment
buuuuuuuuuuuuuuut I was wondering if it was a failure of the optimizer or not
I'm assuming it is because why would you write out to to memory if you know you're going to overwrite it right after
I've been arguing with this with my colleagues and my argument was "the compiler won't assume your code has data races so it should avoid the extra writes" but... I'm not 100% sure myself.
I'd search SO but honestly I'm not sure what I should search for.
The new bus stops where I live have those kind of benches with an extra armrest in the middle, and are designed so that they seldom (or not at all) protect from wind and rain in a city where you've got wind most of the year and rain more often than in the rest of the country
The glasses don't touch: there are openings between glasses that are up to 10cm wide + 20cm openings between the glasses and the floor, and the same kind of opening between the glass and the roof
The roof itself is higher than it used to and the bus stops are not as deep as they used to
They're clearly design not to protect from the elements
@Mgetz So in Chicago, there's a lot of homeless in the streets. All over the place. They all disappear in the winter, but then they come back in the summer. Been wondering where they go.
There are some that'll have big coats for the start of the winter. But during like January and February where it stays below freezing for weeks at a time, nobody hangs around.
Chciago has a bunch of homeless shelters and so does nyc. This is in contrast to the West coast. The differences in the homeless treatment between coasts is much debated in acamedic circles. See the Wikipedia article...
yeah - I just ignored them until it came to bite me in the ass :) thanks so much though, I know this is probably a very dumb question from your point of view
_epi(8,16,32,64) - integer types _si(128,256,512) - usually refers to the entire vector as an integer _p(s,d) - packed, s = single precision, d = double precision _s(s,d) - scalar, s = single precision, d = double precision
There's some weird-ass half-precision stuff in there which nobody cares about.
mask = blend masking maskz = zero masking Both are AVX512 only.
@Mysticial Out of date (e.g., doesn't include AVX512 at all) but covers most of the basics he's asking about (data types, suffixes, etc.) well enough to make the naming patterns clear.
They killed the good Xeon Phi line (Knights Landing) because it wasn't competing well with Skylake X/Server. They specialized the other Xeon Phi (Knights Mill) for deep learning - which I believe is still getting crushed by GPUs. Now they add AI instructions to the CPUs.
Admittedly, I don't know enough about the AI stuff to properly judge this whole AI push.
Most of the AI instructions seem pretty useless for anything else.
@Mysticial I'm not sure about "all in". I think for now they're kind of playing wait and see. If it keeps going well for nVidia, I wouldn't be terribly surprised to see them push a lot harder/farther in that direction--but for now, I wouldn't say they're doing a lot more than dipping a foot in the water.
@JerryCoffin the irony is that if they took the tech behind AVX512 and extended it to AVX 1024 with a very limited instruction set they'd have a graphics card
Intel first did away with double-precision to get everyone to use single-precision. Now they're doing away with single-precision to get everyone to use 16-bit integer -> 32-bit widening multiply.
@Mgetz I don't see any real irony there. Most of the push toward wider vectors goes back to the Larrabee project, which built some graphics cards along the way toward the Xeon Phi stuff.
OTOH. If Intel jumped from AVX512 -> AVX2048, then half-cycled the AVX2048 silicon. That might actually work from a power standpoint. Net result is 2x the performance (if utilized).
@Mysticial IIRC, you don't normally run AVX 512 at 4 GHz either. The obvious next step would be to let you run the AVX 512 at its speed without slowing down the rest of the CPU to match.
@Mysticial That was pretty much what I used to do--fly in Friday night, stay 'til Sunday afternoon (a week+ later). Plenty of time for Napa valley, family, redwoods, and whatever else...
@Mysticial @JerryCoffin my bad, was pulled into lunch
I read both your responses during though. Thanks so much!
also, intel is focusing a large portion of their workforce into deep learning actually - check out Nervana
It's a deep learning library built on top of their specialized instructions
intel is trying to do the most money-making move - and that is to make deep learning architectures runnable on cpu
so they're doing a ton of neural network compression, quantization, power consumption decrease, etc to make the neural nets runnable with reasonable time and efficiency on cpu chips
currently gpus are dominating the DL market because of the sheer amount of float point computations and intel can't keep up
@OneRaynyDay I know all too much about Nervana--being based (partly) here in San Diego, there was quite a stir locally when Intel bought them. One of my former coworkers was pretty pissed when it happened--was convinced Nervana was a lot better at presentations than actual computing (and I've since heard bits from a couple Intel people more or less admitting the same).
@JerryCoffin Ah, I didn't know Nervana is based in SD :) That is good to know. I was interested in perhaps interviewing there and seeing what kind of stuff they had
@OneRaynyDay Yeah--I don't think I know any of Nervana's people myself, but a number of my former coworkers know some of them personally. Almost everybody in high-tech in San Diego has worked for Qualcomm some time or other (or knows a lot of people who did) so almost everybody knows everybody else to at least some degree.
@OneRaynyDay Probably not. But that does remind me: I got to go on a tour of Space-X Saturday. Was pretty awesome. Unfortunately, not allowed to take any pictures. In fact, had to sign a non-disclosure so comprehensive, I'm not sure I'm allowed to remember what I saw... :-)
@Mysticial in nvidia, they have custom hardware support for fp16, called "tensor cores" which are essentially store 2 fp16 in a single 32 bit word and doing concurrent multiplication on them
so yes, companies are on the move to lower their precision
@Mysticial Mostly working with things they're lucky to measure to 1% precision, so if they have two or three digits left at the end, they're pretty happy...
I think currently, intel and nvidia are pulling on the legs of these big DL frameworks like MXNet, tensorflow, pytorch, etc to make them use intel specific/cuda specific kernels
@Mysticial for perspective, there's a convolutional neural net called VGG19, where the weights themselves serialized to disk is about ~2GB's.
The intermediate representations of the input through the neural net is an order of magnitude larger
traditional OS X has to compress the pages in order to run a batch inference of 64 samples at a time through the neural net
I meant that if I was trying to say a matrix multiply with 16-bit accumulation precision with saturation, the matrix doesn't need to be very big for the majority of the elements to saturate at some point during the computation.
And once an integer saturates, it can go the other direction. At least with floats, you end up with infinity or NaNs to tell you that something overflowed.
@Mysticial The affine transformations through the neural net usually keeps the intermediate representation's expected value towards 0
and the magnitude is often regularized(kept small)
but yes, it does overflow, which is why they use higher precision accumulation
in nvidia's specific int8 quantization paper, they do some probability tricks with KL divergence to find the optimal int8 matrix and fp64 scaling factor. The intermediate values are very close to 0
@OneRaynyDay I thought about it.If I was still single, I probably would. I considered it enough to know that the schools in that part of LA are pretty poor though (e.g., Hawthorne High School is rated 3 out of 10), so there's no way my wife would consider it.
@OneRaynyDay I assume they normalize the matrices after each operation? Since these are all integers, the determinants is going to be bigger than 1. So after a few ops, things would get pretty big pretty quickly.
@OneRaynyDay If anything, the amazing thing is that I still have kids in school. Some of the people I went to grade school/high school with have grandchildren in school. But I was over 40 before I got married...
@OneRaynyDay My oldest is in high school, but my youngest is just starting first grade this coming year. My second oldest is probably the most like me so far. Oldest is definitely toward the jock end of the scale. The younger two are too young to really be sure yet. They mostly want to be like their big brothers right now.
By the way, is it necessary for one to perform _mm256_load_{}( ptr ); before performing any _mm256 operations, or can I just straight up use the pointers?
I would assume you need to load because the ptr's not in the XMM/YMM registers, but i just want to double check
/usr/local/Cellar/gcc/8.2.0/lib/gcc/8/gcc/x86_64-apple-darwin17.7.0/8.2.0/include/avx512vpopcntdqvlintrin.h: In function 'void sum(int8_t*, int&)':
/usr/local/Cellar/gcc/8.2.0/lib/gcc/8/gcc/x86_64-apple-darwin17.7.0/8.2.0/include/avx512vpopcntdqvlintrin.h:117:1: error: inlining failed in call to always_inline '__m256i _mm256_popcnt_epi64(__m256i)': target specific option mismatch
_mm256_popcnt_epi64 (__m256i __A)
^~~~~~~~~~~~~~~~~~~
I guess it doesn't exist, and this is its way of trying to tell me
For POPCNT, you can just split the vectors in half and use shuffles to count bits in the 4-bit halves, then sum them together. But since you're doing 64-bit width, it might be faster to pull out the values and use the scalar POPCNT instruction, than summing vectors many times.
Basically abuse the shuffle instruction for performing lookups. It's best if you only need relatively short widths, e.g. github.com/animetosho/ParPar/blob/…