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Big O notation does not give you the number of operations. It just tells you how fast it will grow with growing input. And this is what you observe. When you increased input c times, the total number of operations grows c^2. If you calculated (nearly) exact number of operations precisely you would get (n^2)/4. Of course you can calculate it with sums, but ...

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I assume that you know how to write a function print_val of type Db.Value.t -> unit The following code, to be placed before your matching on a Set instruction, will catch an access to an array at index e match i with (* Access to an array *) | Set ((_, Index (e, _)), _, _) -> let v = !Db.Value.access_expr (Kstmt s) e in print_val v (* End special ...

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This looks like a normal binary search algorithm to me, which is known to have O(log n) complexity (except it returns whether value was found, not its position). You basically "visits" at most log n of entries of array: first you visit and check point in the middle, and check if its the one you sought, if not, you limits your searching to "lower" or ...

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Big-O notation doesn't care about constants because big-O notation only describes the long-term growth rate of functions, rather than their absolute magnitudes. Multiplying a function by a constant only influences its growth rate by a constant amount, so linear functions still grow linearly, logarithmic functions still grow logarithmically, exponential ...

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IMHO, 1- Keeping all the recent advancements into consideration it's kinda difficult to decide on whether to use HBase or Cassandra based on just your read/write needs. You can tune these tools to fit into your read/write requirements. There are few more things which you should consider while making any decision. 2- You don't seem to have any need for a DB ...

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If your NumPy version is new enough (1.8 or better), use numpy.fft.rfftfreq. Otherwise, here is the definition: def rfftfreq(n, d=1.0): """ Return the Discrete Fourier Transform sample frequencies (for usage with rfft, irfft). The returned float array `f` contains the frequency bin centers in cycles per unit of the sample spacing (with zero at the ...

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To answer your 'b' question. Assume you have this file (called '/tmp/lines.txt'): line 1 2013:10:15 line 3 line 4 2010:8:15 line 6 You can use the linecache module: >>> import linecache >>> linecache.getline('/tmp/lines.txt', 2) '2013:10:15\n' So you can parse this time directly: >>> import datetime as dt ...

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"See virtually no traces of SADT anymore" :Keyword is "virtually". Our "modern" concepts like "cohesion" and "coupling" mostly come from SADT [Edward Yourdon-Larry L.Contantine] .There is even interesting references from modern software literature to old SADT literature. For example, Kent Beck, in his Implementation Patters book's Bibliography section says: ...

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Not only currentTimeMillis does not have enough resolution but also writing microbenchmarks by hand is tricky and error-prone due to the JIT's optimizations. You should consider using a microbenchmark framework such as Caliper instead.

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Assuming you are talking about shadowing with names, the Java Language specification says this Some declarations may be shadowed in part of their scope by another declaration of the same name, in which case a simple name cannot be used to refer to the declared entity. and gives this example class Test { static int x = 1; public static ...

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Asymptotically, n! >> aⁿ >> nᵃ >> nlogn >> n >> logn >> a (constant). So, if f=1.5ⁿ=aⁿ and g=n²=nᵃ, you can see that f >> g for sufficiently large value of n. So, g=O(f) and f=Ω(g), asymptotically. Similarly, f=log₂n >> g=log₄n, so f=Ω(g). And 4ⁿ >> 2ⁿ. So if f=4ⁿ and g=2ⁿ, f=Ω(g).

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If you try to write it down for several recursion cycles, you get this : 2*n^(1/2) [2*n^(1/4) (2*n^(1/8) . T(n^(1/16) + c log n) + c log n] + c log n If you try to count it, it would be (assymptoticaly) : 2^log n * n^(1/2 + 1/4 + 1/8 + ... + 1/log n) + 2^(log n) * n(1/2 + 1/4 + 1/8 + ... + 1/log n) * c * log n By sumation of series and thanks to that ...

2

Yes, it is O(n^3). However: for(int pass = 1; pass <= n; pass++) // Evaluates n times { //^^i should be pass for(int index = 0; index < n; index++) //Evaluates n times for(int count = 1; count < n; count++) // Evaluates n-1 times { //O(1) things here. } } } Since you have three layer of ...

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Your algorithm is O(nlogn), or Theta(nlogn) to be exact, assuming insert is Theta(logn). The i step cost c1 + c2*log(i) (c1 the constant of pop(), c2 is the constant guaranteed for AVL insertion), so you get: c1 + c2*log(1) + c1 + c2*log(2) + .... + c1 + c2*log(n) = = c1*n + c2*log(1*2*...*n) = c1*n + c2*log(n!) <= (for large enough n) (c2+1)*log(n!) ...

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You can use the W3C validator for checking HTML, and you can use JSLint or JSHint for Javascript. Also, we have a code review site here on Stack Exchange.

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Robustness Diagram here is the link: http://publib.boulder.ibm.com/infocenter/rsysarch/v11/index.jsp?topic=%2Fcom.ibm.sa.oomethod.doc%2Ftopics%2Fc_Ideal_Object_Diagram.html another link is here: http://www.agilemodeling.com/artifacts/robustnessDiagram.htm

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For PHPMD (just as for PHP CodeSniffer, for example) you will have to specify a separate exclude pattern. You can use PHPMD's --excludeparameter for that. Took me a while to figure it out, but you can set PHPMD's command line parameters with the following setting in your sonar-project.properties file: sonar.phpPmd.argumentLine=--exclude libraries/externals ...

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You can try pandas which provides a use function read_csv to load the data more easily. Example data: a b c d e f g h i j k l m n o p a b c d e f g h i j k l m n o p a b c d e f g h i j k l m n o p a b c d e f g h i j k l m n o p a b c d e f g h i j k l m n o p a b c d e f g h i j For your Q1, you can load the data by: In [27]: import pandas as pd In ...

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In short In an priory analysis, we obtain a function which bounds the algorithm computing time. In a posteriori analysis, we collect actual statistics about the algorithms consumption of time and space, while it is executing. Here is the book. Somewhat longer: Wikipedia definition Ans another article citation By far the most important ...

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If you'd be running HBase on the same cluster as Hadoop, you'd really cut down the memory available for MapReduce jobs. You don't really need random read/update capability of HBase for an OLAP system. You can load your data into Hadoop cluster using Flume or manually. The equipment monitoring data lends itself to partitioning by time, for example by calendar ...

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Question 1 IIS log mystery. what you see as one page access is actually several accesses try and use Fiddler it will show you the connection steps. EX: I want page A -> no you need to authenticate -> no sessionID how can I authenticate -> you need to do this -> no sessionID here is my authentication -> here is page A. -> ...

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If you have several requests to the same page at the same time, and browsers are the same, it will look like you have duplicated rows (it's just more than 1 user hitting the page at once). If the IPs are the same, it's most likely a handshake, as Pedro.The.Kid pointed out, or you may have some very strangely behaving code. See ASP.NET_SessionId is missing ...

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Since you want the big picture, let me try to give you the same. Asymptotic analysis is used to study how the running time grows as size of input increases.This growth is studied in terms of the input size.Input size, which is usually denoted as N or M, it could mean anything from number of numbers(as in sorting), number of nodes(as in graphs) or even number ...

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This is a lightly camouflaged Longest increasing (decreasing) subsequence problem. The algorithm to solving your problem is as follows: Find the longest increasing (decreasing) subsequence in the array Remove all elements that do not belong to the longest increasing subsequence. Since the increasing/decreasing subsequence is longest, the amount of ...

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I think you want factor... test\$choice <- as.integer( as.factor( test\$itemcode ) ) This will turn each unique itemcodeinto a integer coded variable. The as.integer will show you what the underlying values are. If you want them ordered as they appear in the data.frame you need to specify the levels of your factor variable and you can do this using ...

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Recursion can increase space complexity, but never decreases. Consider for example insert into binary search tree. Nonrecursive implementation (using while cycle) uses O(1) memory. Recursive implementation uses O(h) memory (where h is the depth of the tree). In more formal way: If there is a recursive algorithm with space complexity O(X), then there always ...

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The two most important tips for this analysis are: Remember that only the most dominant summand matters and that constant factors can be ignored. Analyze the loops from the inside out. So the steps are: The first 4 lines are all in O(n). The inside of the while loop is in O(1+k) = O(k): in tags is in O(t) with t being the number of known tags. As that ...

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This is a tricky question. I would assume that there are some hints in the chapter that are supposed to guide you towards the solution. The problem you are describing is an instance of the minimax path problem, or widest path problem. http://en.wikipedia.org/wiki/Widest_path_problem According to wikipedia, there is a linear time algorithm, but it is ...

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The default color palette used by TraMineR can get a maximum of 12 different colors, which is clearly insufficient in your case. Hence, you have to specify the color palette using the cpal argument in seqdef. The colorspace package provides functions to get more than 12 colors. To choose your 60 colors using a graphical interface: library(colorspace) pal ...

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With a bit of "observing" with IDA and Udis86 and also a bit of Python hacking, I was able to determine the checksum scheme used with the .bin and .bsc files. Here's a little Python code (from within 'ipython') that shows how to generate the required checksum: In [1]: f=open('NLEN2.bin','r') In [2]: s=f.read() In [3]: from arraymodule import * In [4]: ...

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