• Naresh Jain
    Naresh Jain
    Dhaval Dalal
    Dhaval Dalal
    schedule 1 year ago
    Sold Out!
    90 mins
    Event
    Beginner

    In Indian classical music, we have Jugalbandi, where two lead musicians or vocalist engage in a playful competition. There is jugalbandi between Flutist and a Percussionist (say using Tabla as the instrument). Compositions rendered by flutist will be heard by the percussionist and will replay the same notes, but now on Tabla and vice-versa is also possible.

    In a similar way, we will perform Code Jugalbandi to see how the solution looks using different programming languages and paradigms.

    During the session, conference attendees will take turns at coding the same problem using different languages and paradigms. There would be multiple such attempts by different participants during the Jugalbandi.

  • Liked Shashi Gowda
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    Julia - A Lisp for Fast Number Crunching

    Shashi Gowda
    Shashi Gowda
    Viral B. Shah
    Viral B. Shah
    schedule 1 year ago
    Sold Out!
    240 mins
    Workshop
    Beginner

    Julia is a programming language for data science and numerical computing. Julia is a high-level, high-performance dynamic language, it uses just-in-time compilation to provide fast machine code - dynamic code runs at about half the speed of C, and orders of magnitude faster than traditional numerical computing tools.

    Julia borrows two main ideas from Lisp lore:

    1. Multiple-dispatch: a method is identified by a name and the types of all of its arguments (traditional OOP only uses the type of a single argument) multiple-dispatch allows for a natural programming model suitable for mathematics and general purpose programming. Interestingly, the same feature is responsible for Julia's ability to generate really fast machine code.
    2. Macros: Julia has syntax that is familiar to users of other technical computing environments, however, Julia expressions are homoiconic -- Julia code can be represented as Julia data structures, and transformed from one form to another via hygienic macros. There are some very interesting uses of macros to create domain-specific languages for effective programming. 

    (I will be presenting this workshop along with Viral B Shah - co-creator of Julia)

  • Viral B. Shah
    Viral B. Shah
    schedule 1 year ago
    Sold Out!
    60 mins
    Keynote
    Beginner

    In this talk, I will talk about our motivation for creating Julia. Julia is a high-level, high-performance dynamic programming language. It provides a sophisticated compiler, distributed parallel execution, numerical accuracy, and an extensive mathematical function library. Julia’s Base library, largely written in Julia itself, also integrates mature, best-of-breed open source C and Fortran libraries for linear algebra, random number generation, signal processing, and string processing. In addition, the Julia developer community is contributing a number of external packages through Julia’s built-in package manager at a rapid pace. This is why Julia is seeing rapid adoption in universities for teaching and research, as well as in businesses.

    I will discuss what makes Julia fast. Julia's ability to combine these levels of performance and productivity in a single language stems from the choice of a number of features that work well with each other:

    1. An expressive parametric type system, allowing optional type annotations;
    2. Multiple dispatch using those types to select implementations;
    3. A dynamic dataflow type inference algorithm allowing types of most expressions to be inferred;
    4. Aggressive code specialization against run-time types;
    5. Metaprogramming;
    6. Just-In-Time compilation using the LLVM compiler framework; and
    7. Careful design of the language and standard library to be amenable to type analysis;

    I will also touch upon how the language design has made it possible to explore many parallel programming models in Julia, completely within the language.

    See: http://www.julialang.org/

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