Bloomberg Professional Terminals - api

does anyone have a way to measure a Bloomberg Terminals general usage or excel API data usage.
This is the most informed way I have seen so far, anyone agree, disagree or have a better way.
https://www.howtogeek.com/howto/43713/how-to-monitor-the-bandwidth-consumption-of-individual-applications/
Thanks

Agree if you're just trying to assess your own server bandwidth usage.
If you're referring to actual data consumption, it depends a little on what platform you're doing it on. You can't infer cost utilization from bandwidth usage, because some fields/data is significantly more expensive, so you may have a person using relatively less data, but incurring notably larger costs due to the entitlements they have requested or are using.
For the enterprise license, you can get a monthly usage summary in arrears for the utilization so it's pretty easy to track.
For B-Pipe you can run BPUR or DFRP on the terminal to run the usage stats, but you need to be permissioned.
On a straight terminal as you mentioned, this data is tracked by Bloomberg to ensure compliance with TOS so you can talk to your rep about getting some usage utilization. The limits team at Bloomberg though sees it binary, so you're either over or you're not.

Related

What is the expected performance gap switching from SQL to TSDB for handling time series?

We are in the case of using a SQL database for a single node storage of roughly 1 hour of high frequency metrics (several k inserts a second). We quickly ran into I/O issues which proper buffering would not simply handle, and we are willing to put time into solving the performance issue.
I suggested to switch to a specialised database for handling time series, but my colleague stayed pretty skeptical. His argument is that the gain "out of the box" is not guaranteed as he knows SQL well and already spent time optimizing the storage, and we in comparison do not have any kind of TSDB experience to properly optimize it.
My intuition is that using a TSDB would be much more efficient even with an out of box configuration but I don't have any data to measure this, and internet benchs such as InfluxDB's are nowhere near trustable. We should run our own, except we can't affoard to loose time in a dead end or a mediocre improvement.
What would be, in my use case but very roughly, the performance gap between relational storage and TSDB, when it comes to single node throughput ?
This question may be bordering on a software recommendation. I just want to point one important thing out: You have an existing code base so switching to another data store is expensive in terms of development costs and time. If you have someone experienced with the current technology, you are probably better off with a good-faith effort to make that technology work.
Whether you switch or not depends on the actual requirements of your application. For instance, if you don't need the data immediately, perhaps writing batches to a file is the most efficient mechanism.
Your infrastructure has ample opportunity for in-place growth -- more memory, more processors, solid-state disk (for example). These might meet your performance needs with a minimal amount of effort.
If you cannot make the solution work (and 10k inserts per second should be quite feasible), then there are numerous solutions. Some NOSQL databases relax some of the strict ACID requirements of traditional RDBMSs, providing faster throughout.

stress testing web applications on less capable hardware

My organization is having an interesting internal debate right now that raises a question that I would like to open to the community at large.
The issue at hand is our environment in which we do stress-testing, capacity-testing, performance-regression-testing, and the like.
On one side of the debate are some software engineers who would like this environment to mirror the production environment as much as possible, in the interest of making the results as meaningful as possible. While we currently do have an environment for such testing, it is far less capable than the production system, and these software engineers feel that they are reaching the limits of what they can learn from it.
On the other side of the debate are some network engineers who both administer the environments and control the purse-strings. While they concede that capacity-testing would be better in an environment that is a better replica of the production environment, they argue that – for the purposes of stress testing – a more modest environment would have the effect of magnifying performance bottlenecks, making them easier to discover and fix.
This finally brings us to the part that piqued my interest: one software engineer suggests that while a more modest stress environment will increase the likelihood that you will encounter some bottleneck, it does not necessarily follow that it would help you find the next bottleneck you may encounter in production. The scaling effect, he argues, may not be linear.
Is there merit to that point of view? If yes, then why? What are the sources of that nonlinearity?
There are a lot of moving parts involved here: a cluster of java application servers, a cluster of database servers, lots of dynamic content being generated for each HTTP hit.
Edit: I appreciate everybody's thoughts so far, but I was really hoping that someone would do more than re-affirm one side or the other and actually tackle the question of "why". If there is such nonlinearity, what gives rise to it? Better yet it would be great if the reasons were expressed in terms of the CPU, memory, bandwidth, latency, interactions between subsystems, what have you... TerryE, you have come the closest. You should re-post your comment as an answer for the bounty if no one else steps up
Your software developer is right and I will take the point even further.
When you test an application components, like a web service, to see its behaviour under load, it is understandable to use a less capable environment. You can find the bottlenecks about memory, io etc. And most probably will find bugs and oversights like out of memory errors and log files getting huge.
But when your application components are running as intended and you need to test the whole shebang, you need to test the real environment.
When you run stress tests on an environment, you measure that environment's behaviour under load and its bottlenecks. While this tests may provide valuable information, this information will not be about your production system. The bottlenecks you find might not be relevant to your real system and you may spend precious development time to fix the bugs that do not exist. To know about bottlenecks you really might face with, you should run your stress tests on your real production system (preferably before the grand opening).
The assumption of the network engineers is that modest system is basically a scale model of the production system. They are also assuming that the various characteristics of the production environment which would be affecting the software performance are mirrored in the more modest system just at lower levels however in the same ratios. For instance, the CPU is not as fast, there is not quite as much memory, the storage is a bit slower, etc. and all of these differences are in similar ratios such that if everything were magically multiplied by some factor, say 1.77, the resulting changed modest system would be exactly like the production system.
However that the modest system is an exact scale model in all particulars of the production system is difficult for me to believe.
Here is a specific example. Lets say that measurements on the production system indicates that CPU utilization, the percentage of time the CPU is not idle, is too high. So you put the software on the modest system and do measurements and discover that on the modest system, the CPU utilization is lower. An investigation reveals that the modest system has slower storage so the CPU is spending more time idle waiting on data transfer from storage to complete because the application is I/O bound on the modest system where as on the production system it is not. This difference is due to the modest machine not being an exact scale model of the production machine because the CPU ratio is different than the I/O transfer ratio.
Another example would be having more memory allowing fewer page faults in the production environment. When the software is loaded onto the more modest machine, there are more page faults due to having less physical memory. With the various applications paging in and out, they begin to affect each other as pages of other applications are swapped out and then swapped back in again. On the product machine with larger memory, this cascading page fault behavior is not seen because there is sufficient memory to hold more applications simultaneously.
The point that I am really trying to make here is that a computer with all its various parts and applications is a complex, dynamic system. The idea that one computing environment is just a scale model of another is too simplistic of an assumption. Using a modest system can certainly provide valuable data. However once the gross adjustments have been made to the software and you are beginning to get into more subtle detailed adjustments, the differences in the environment can have a large impact on the results of the testing.
Some citations.
Computer systems are dynamical systems by Tod Mytkowicz, Amer Diwan, and Elizabeth Bradley.
Bayesian fault detection and diagnosis in dynamic systems by Uri Lerner, Ronald Parr, Daphne Koller, and Gautam Biswas.
I have encountered the similar situation in my production environment. We use modest system just for initial and basic level testing and findings. It is true that you can never find real bottlenecks and other performance issues on your testing environment. So to find real performance related issues and to find bottlenecks you must do it on production environment, there's no other way.
We have hosted over 2.5Million websites, although it might not be case with yours but let me tell you this, that in our case, we have faced horrible situations of linear bottlenecks. Meaning, we first faced memory issues when our traffic was getting increased. We resolved that by adding more memory. Until then we didn't even notice that having only 256 threads of httpd was our next bottleneck because limited memory was hiding it, once we resolved memory issue it quickly came down to the problem that why our webservers were slow again after just few weeks? We found out that 256 httpd threads are just not enough to serve that much traffic. We not only increased threads but also installed HA parallel load balancers in front of our WebServers to mitigate the issue.
Fortunately it solved our slow page loading problems. But after few months as traffic continuously grew we got into next bottleneck of storage system. You know what this time disk I/Os was the issue. To make the story short, we put parallel NFS based physical storage systems. Each NFS machine now serve files by having over 2000 threads running.
I forgot to mentioned that Database was also a big culprit of slowness that we resolved that issue by installing Master-Slaves model in cluster. We had to do a lot of performance tweaks in our application code as well and we had to physically distribute our application into different modules over different servers.
I'm just mentioning all this to prove a point that it's very likely that all performance related issues almost come in a linear way, at least that's what we have faced in our WebBased model. Even you have tested a lot on your modest systems you still have chances hidden bottlenecks which you can't find on testing environments.
What I have learned in my last 6 years experience that try to DISTRIBUTE your model AS MUCH AS POSSIBLE if you think you might going to have a lot of traffic or hits/sec. Centralized model can hold your traffic for some time by doing much tweaks but in the end your system gets busted.
I'm not saying you will face some bottlenecks or issues in your situation but I just wanted to warn you that these cases happen sometimes, just so you better aware.
**Sorry for my English.
good question. learning and optimization is best on modest hardware. but testing is safer on mirror (or at least something from same epoch)
it seams like you try to predict the first bottleneck that will appears and when it will happen. i'm not sure if that's the correct objective and the correct way. i assume we don't speak about a typical CRUD where client says 'it should work as fast as every other web application'. if you want to do tests correctly then, before you start your tests, you should know the expected load. expected number of users, expected number of events, response time etc. it's a part of your product specification. if you don't have the numbers, that means your analysts didn't do their job.
if you have the numbers then you don't need exact tests result. you just need to know the order of magnitude. you should also check how your software/hardware scale. how many instances do you need to handle x users/requests/whatever and how many to handle y
We load test systems for our customers every day -- and we see a wide range of problems. Certain classes of problems can be found on down-sized systems. Other cannot. Some can ONLY be found in production...because no matter how closely you mirror the two systems, they can never be identical. You can get REALLY close, if you work hard enough.
So, simple fact of testing: the closer your system is to the production system, the more accurate your tests will be.
IMO, this is one of the best reasons for moving to the cloud: you can spin up a system that is very close to your production system (about as identical as you could ever get) and run your load tests on that.
It is probably worth mentioning that we've occasionally seen customers waste a lot of hours chasing problems in their test environments that never would have occurred in production. The more different the environments are, the more likely this is to happen :(
I think you have partially answered your own question - you already have a production level environment and are already finding it is not at the same level / not as capable as the production environment. The bottom line is that with all the money in the world you will never be able to replicate the exact functioning of the production website - timings of events, volumes, cpu utilisation, memory utilisation, db IO, when it's all working in anger the behaviour can be non-deterministic to a certain extend. My point is you can never make it exactly the same. And on the other side of the coin a production environment by it's nature is going to be an expensive environment with a lot of kit in order to make it perform and handle your production volume of data / transactions. This is a big expense / overhead to the business, and in these times of frugality should we not be looking to avoid additional cost to the business.
Maybe a different tactic should be taken - learn the performance profile of your production software - how it scales with volume, does running times increase linearly, exponentially or logarithmically? Can you model this? Firstly you can verify that the test environment is behaving in a similar way - this is key to having a valid test. Then the other important part is taking relative tests rather than absolutes - you aren't going to get absolute running times that are the same as production, but run your performance tests before deploying the code changes to give you your baseline, then deploy your code changes and re-run the performance tests - this will give you the relative changes in production (e.g. will the performance degrade with this code release), based on your models of performance you will be able to verify that the software is scaling in the same way with extra volume.
So my viewpoint is that there is a great deal you can learn about your software and hardware performance in the lower environment, and doing this on a smaller / less capable infrastructure saves your company money, and if used right can give you most of your answers to performance testing that you are looking for.

Profiling a VxWorks system

We've got a fairly large application running on VxWorks 5.5.1 that's been developed and modified for around 10 years now. We have some simple home-grown tools to show that we are not using too much memory or too much processor, but we don't have a good feel for how much headroom we actually have. It's starting to make it difficult to do estimates for future enhancements.
Does anybody have any suggestions on how to profile such a system? We've never had much luck getting the Wind River tools to work.
For bonus points: the other complication is that our system has very different behaviors at different times; during start-up it does a lot of stuff, then it sits relatively idle except for brief bursts of activity. If there is a profiler with some programmatic way to have to record state information, I think that'd be very useful too.
FWIW, this is compiled with GCC and written entirely in C.
I've done a lot of performance tuning of various kinds of software, including embedded applications. I won't discuss memory profiling - I think that is a different issue.
I can only guess where the "well-known" idea originated that to find performance problems you need to measure performance of various parts. That is a top-down approach, similar to the way governments try to control budget waste, by subdividing. IMHO, it doesn't work very well.
Measurement is OK for seeing if what you did made a difference, but it is poor at telling you what to fix.
What is good at telling you what to fix is a bottom-up approach, in which you examine a representative sample of microscopic units of what is being spent, and finding out the full explanation of why each one is being spent. This works for a simple statistical reason. If there is a reason why some percent (for example 40%) of samples can be saved, on average 40% of samples will show it, and it doesn't require a huge number of samples. It does require that you examine each sample carefully, and not just sort of aggregate them into bigger bunches.
As a historical example, this is what Harry Truman did at the outbreak of the U.S. involvement in WW II. There was terrific waste in the defense industry. He just got in his car, drove out to the factories, and interviewed the people standing around. Then he went back to the U.S. Senate, explained what the problems were exactly, and got them fixed.
Maybe this is more of an answer than you wanted. Specifically, this is the method I use, and this is a blow-by-blow example of it.
ADDED: I guess the idea of finding-by-measuring is simply natural. Around '82 I was working on an embedded system, and I needed to do some performance tuning. The hardware engineer offered to put a timer on the board that I could read (providing from his plenty). IOW he assumed that finding performance problems required timing. I thanked him and declined, because by that time I knew and trusted the random-halt technique (done with an in-circuit-emulator).
If you have the Auxiliary Clock available, you could use the SPY utility (configurable via the config.h file) which does give you a very rough approximation of which tasks are using the CPU.
The nice thing about it is that it does not require being attached to the Tornado environment and you can use it from the Kernel shell.
Otherwise, btpierre's suggestion of using taskHookAdd has been used successfully in the past.
I've worked on systems that have had luck using locally-built monitoring utilities based on taskSwitchHookAdd and related functions (delete hook, etc).
"Simply" use this to track the number of ticks a given task runs. I realize that this is fairly gross scale information for profiling, but it can be useful depending on your needs.
To see how much cpu% each task is using, calculate the percentage of ticks assigned to each task.
To see how much headroom you have, add a lowest priority "idle" task that just does "while(1){}", and see how much cpu% it is assigned to it. Roughly speaking, that's your headroom.

TPC or other DB benchmarks for SSD drives

I have been interested in SSD drives for quite sometime. I do a lot of work with databases, and I've been quite interested to find benchmarks such as TPC-H performed with and without SSD drives.
On the outside it sounds like there would be one, but unfortunately I have not been able to find one. The closest I've found to an answer was the first comment in this blog post.
http://dcsblog.burtongroup.com/data_center_strategies/2008/11/intels-enterprise-ssd-performance.html
The fellow who wrote it seemed to be a pretty big naysayer when it came to SSD technology in the enterprise, due to a claim of lack of performance with mixed read/write workloads.
There have been other benchmarks such as
this
and
this
that show absolutely ridiculous numbers. While I don't doubt them, I am curious if what said commenter in the first link said was in fact true.
Anyways, if anybody can find benchmarks done with DBs on SSDs that would be excellent.
I've been testing and using them for a while and whilst I have my own opinions (which are very positive) I think that Anandtech.com's testing document is far better than anything I could have written, see what you think;
http://www.anandtech.com/show/2739
Regards,
Phil.
The issue with SSD is that they make real sense only when the schema is normalized to 3NF or 5NF, thus removing "all" redundant data. Moving a "denormalized for speed" mess to SSD will not be fruitful, the mass of redundant data will make SSD too cost prohibitive.
Doing that for some existing application means redefining the existing table (references) to views, encapsulating the normalized tables behind the curtain. There is a time penalty on the engine's cpu to synthesize rows. The more denormalized the original schema, the greater the benefit to refactor and move to SSD. Even on SSD, these denormalized schemas will run slower, likely, due to the mass of data which must be retrieved and written.
Putting logs on SSD is not indicated; this is a sequential write-mostly (write-only under normal circumstances) operation, physics of SSD (flash type; a company named Texas Memory Systems has been building RAM based sub-systems for a long time) makes this non-indicated. Conventional rust drives, duly buffered, will do fine.
Note the anandtech articles; the Intel drive was the only one which worked right. That will likely change by the end of 2009, but as of now only the Intel drives qualify for serious use.
I've been running a fairly large SQL2008 database on SSDs for 9 months now. (600GB, over 1 billion rows, 500 transactions per second). I would say that most SSD drives that I tested are too slow for this kind of use. But if you go with the upper end Intels, and carefully pick your RAID configuration, the results will be awesome. We're talking 20,000+ random read/writes per second. In my experience, you get the best results if you stick with RAID1.
I can't wait for Intel to ship the 320GB SSDs! They are expected to hit the market in September 2009...
The formal TPC benchmarks will probably take a while to appear using SSD because there are two parts to the TPC benchmark - the speed (transactions per unit time) and the cost per (transaction per unit time). With the high speed of SSD, you have to scale the size of the DB even larger, thus using more SSD, and thus costing more. So, even though you might get superb speed, the cost is still prohibitive for a fully-scaled (auditable, publishable) TPC benchmark. This will remain true for a while yet, as in a few years, while SSD is more expensive than the corresponding quantity of spinning disk.
Commenting on:
"...quite interested to find benchmarks such as TPC-H performed with and without SSD drives."
(FYI and full disclosure, I am pseudonymously "J Scouter", the "pretty big naysayer when it came to SSD technology in the enterprise" referred to and linked above.)
So....here's the first clue to emerge.
Dell and Fusion-IO have published the first EVER audited benchmark using a Flash-memory device for storage.
The benchmark is the TPC-H, which is a "decision support" benchmark. This is important because TPC-H entails an almost exclusively "read-only" workload pattern -- perfect context for SSD as it completely avoids the write performance problem.
In the scenarios painted for us by the Flash SSD hypesters, this application represents a soft-pitch, a gentle lob right over the plate and an easy "home run" for a Flash-SSD database application.
The results? The very first audited benchmark for a flash SSD based database application, and a READ ONLY one at that resulted in (drum roll here)....a fifth place finish among comparable (100GB) systems tested.
This Flash SSD system produced about 30% as many Queries-per-hour as a disk-based system result published by Sun...in 2007.
Surely though it will be in price/performance that this Flash-based system will win, right?
At $1.46 per Query-per-hour, the Dell/Fusion-IO system finishes in third place. More than twice the cost-per-query-per-hour of the best cost/performance disk-based system.
And again, remember this is for TPC-H, a virtually "read-only" application.
This is pretty much exactly in line with what the MS Cambridge Research team discovered over a year ago -- that there are no enterprise workloads where Flash makes ROI sense from economic or energy standpoints
Can't wait to see TPC-C, TPC-E, or SPC-1, but according the the research paper that was linked above, SSDs will need to become orders-of-magnitude cheaper for them to ever make sense in enterprise apps.

Commercial uses for grid computing?

I keep hearing from associates about grid computing which, from what I can gather, is highly distributed stuff along the lines of SETI#Home.
Is anyone working on these sort of systems for business use? My interest is in figuring out if there's a commercial reason for starting software development in this field.
Rendering Farms such as Pixar
Model Evaluation e.g. weather, financials, military
Architectural Engineering e.g. earthquakes.
To list a few.
Grid computing is really only needed if you have a lot of WORK that needs to be done, like folding proteins, otherwise a simple server farm will likely be plenty.
Obviously Google are major users of Grid Computing; all their search service relies on it, and many others.
Engines such as BigTable are based on using lots of nodes for storage and computation. These are commercially very useful because they're a good alternative to a small number of big servers, providing better redundancy and cost effective scaling.
The downside is that the software is fiendishly difficult to write, but Google seem to manage that one ok :)
So anything which requires big storage and/or lots of computation.
I used to work for these guys. Grid computing is used all over. Anyone who makes computer chips uses them to test designs before getting physical silicon cut. Financial websites use grids to calculate if you qualify for that loan. These days they are starting to replace big iron in a lot of places, as they tend to be cheaper to maintain over the long term.