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Undefined Behavior in 2017Exhaustive review of Undefined Behaviors in C and C++ in 2017 by Pascal Cuoq and John Regehr.
By bashyal at 2017-07-07 17:02 | Critiques | login or register to post comments | other blogs | 15116 reads
YOW! Lambda Jam 2017: John Hughes - Why Functional Programming MattersWhy FP still matters (video)...
The APL Idiom ListVia HN: The APL Idiom List – Alan Perlis, Spencer Rubager (1977) Co-hygiene and quantum gravityCo-hygiene and quantum gravity. Some light weekend reading by John Shutt. The post starts with a dazzling proposition:
I can't do it justice here, so if you're interested in John's fascinating take on the relationship between lambda calculus and quantum physics, hop on over! By Manuel J. Simoni at 2017-06-17 15:11 | Fun | History | Paradigms | Theory | login or register to post comments | other blogs | 16571 reads
Jean Sammet, Co-Designer of a Pioneering Computer Language, Dies at 89Obituary from NY Times.
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Imperative Functional Programs that Explain their Work
Imperative Functional Programs that Explain their Work
Program slicing provides explanations that illustrate how program outputs were produced from inputs. We build on an approach introduced in prior work by Perera et al., where dynamic slicing was defined for pure higher-order functional programs as a Galois connection between lattices of partial inputs and partial outputs. We extend this approach to imperative functional programs that combine higher-order programming with references and exceptions. We present proofs of correctness and optimality of our approach and a proof-of-concept implementation and experimental evaluation. Dynamic slicing answers the following question: if I only care about these specific part of the trace of my program execution, what are the only parts of the source program that I need to look at? For example, if the output of the program is a pair, can you show me that parts of the source that impacted the computation of the first component? If a part of the code is not involved in the trace, or not in the part of the trace that you care about, it is removed from the partial code returned by slicing. What I like about this work is that there is a very nice algebraic characterization of what slicing is (the Galois connection), that guides you in how you implement your slicing algorithm, and also serves as a specification to convince yourself that it is correct -- and "optimal", it actually removes all the program parts that are irrelevant. This characterization already existed in previous work (Functional Programs that Explain Their Work, Roly Perera, Umut Acar, James cheney, Paul Blain Levy, 2012), but it was done in a purely functional setting. It wasn't clear (to me) whether the nice formulation was restricted to this nice language, or whether the technique itself would scale to a less structured language. This paper extends it to effectful ML (mutable references and exceptions), and there it is much easier to see that it remains elegant and yet can scale to typical effectful programming languages. The key to the algebraic characterization is to recognize two order structures, one on source program fragment, and the other on traces. Program fragments are programs with hole, and a fragment is smaller than another if it has more holes. You can think of the hole as "I don't know -- or I don't care -- what the program does in this part", so the order is "being more or less defined". Traces are also partial traces with holes, where the holes means "I don't know -- or I don't care -- what happens in this part of the trace". The double "don't know" and "don't care" nature of the ordering is essential: the Galois connection specifies a slicer (that goes from the part of a trace you care about to the parts of a program you should care about) by relating it to an evaluator (that goes from the part of the program you know about to the parts of the trace you can know about). This specification is simple because we are all familiar with what evaluators are. Databases from finite categoriesSpivak and Kent (2011). Ologs: A categorical framework for knowledge representation:
Ologs are essentially RDFs extended to encompass commuting diagrams, so a visual little language. The paper talks about how database schema can automatically be extracted from ologs. By Charles Stewart at 2017-05-24 06:43 | Category Theory | login or register to post comments | other blogs | 25817 reads
Type Systems as MacrosType Systems as Macros, by Stephen Chang, Alex Knauth, Ben Greenman:
This looks pretty awesome considering it's not limited to simple typed languages, but extends all the way to System F and F-omega! Even better, they can reuse previous type systems to define new ones, thereby reducing the effort to implement more expressive type systems. All code and further details available here, and here's a blog post where Ben Greenman further discusses the related "type tailoring", and of course, these are both directly related to Active Libraries. Taken to its extreme, why not have an assembler with a powerful macro system of this sort as your host language, and every high-level language would be built on this. I'm not sure if this approach would extend that far, but it's an interesting idea. You'd need a cpp-like highly portable macro tool, and porting to a new platform consists of writing architecture-specific macros for some core language, like System F. This work may also conceptually dovetail with another thread discussing fexprs and compilation. By naasking at 2017-04-19 23:38 | DSL | Functional | Lambda Calculus | Meta-Programming | Type Theory | 15 comments | other blogs | 56889 reads
Idris 1.0 ReleasedIdris version 1.0 corresponds to the language as described in Type-Driven Development with Idris, published last week by Manning. kdb+ 3.5 released last monthkdb+ is a real-time time series database, known in the financial services universe as the fastest tick database on the market. It was first conceived by Arthur Whitney at Morgan Stanley as a prototype, and over the last 35+ years has grown to add many features. The database makes such aggressive usage of mmap() POSIX function for mapping file chunks into main memory, to the point where it has exposed issues with the implementation of mmap itself. Recently, the company now behind kdb+ has also built Kx for DAAS (Data-as-a-Service), which is basically a cloud-based, massively clustered version of kdb+ that deals with the curious oddity that kdb+ is effectively entirely singly threaded. For those interested in reading more about kdb+'s unique cloud architecture (as compared to "big data" solutions like Hadoop), you can read the following whitepapers as suggestive guidelines for how the q community thinks about truly "big data" several orders of magnitude faster and larger than most Hadoop data sets:
While I don't suggest these papers are the blueprint for copying/mimicking the DAAS product, it does help the LtU reader imagine a "different world" of data processing than the often cited Map/Reduce paper and other more mainstream approaches. What is particularly striking is how tiny q.exe (the program that runs kdb+ and provides a CLI for q scripting) is. Language researchers are looking at provably correct C compilers, and it is not a huge leap to think about the world soon seeing provably correct real-time time series databases using kdb+ as an inspiration. Another curiosity, relevant to us here at LtU, is that kdb+ has its own programming language, q. q is a variant of APL with a special library for statistics. Most "big data" solutions don't have native implementations for weighted average, which is a fairly important and frequently used function in quantitative finance, useful for computing volume weighted average price (VWAP) as well as tilt and weighted spread. q is itself implemented in another language, k. The whole language of each is just a couple lines of (terse) code. By Z-Bo at 2017-03-25 15:45 | DSL | Parallel/Distributed | Scientific Programming | 2 comments | other blogs | 30484 reads
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