Does anyone know what will be a good library for computing linear algebra in Android (SVD, QR, LU, leastsquares, inverse, etc) ?
closed as offtopic by andrewsi, zero323, Pang, Alex, serenesat Dec 19 '15 at 6:36This question appears to be offtopic. The users who voted to close gave this specific reason:



The conventional Linear Algebra libraries are implemented in layers. Basic Linear Algebra Subprogram (BLAS) is in the bottom layer. Linear Algebra Package (LAPACK) is built on top of BLAS. The interfaces for these two layer libraries are standardized back in 1990s, and the hardware vendors will usually provide various customized implementations for their architectures. LAPACK provides the linear algebra library operations (SVD, QR, LU, leastsquares, inverse, etc) you mentioned. In the most recent years, some more userfriendly linear algebra libraries emerge (e.g. Armadillo, Eigen), which actually provide some wrappers for conventional BLAS and LAPACK library. JBLAS is just a java implementation of traditional BLAS. JAMA is also a LAPACKlike library implemented with Java. These two libraries are acutally not targetting at Android. But since Android programming usually involves Java, we can make them work on Android. However, we cannot expect the performance out of these implementations. My argument is that performance is a key factor, since you are invoking the libraries instead of writing it yourself, and high performance will usually boost low energy cost in mobile platforms with Android OS. While the above linear algebra libraries usually target at CPU (e.g. x86 architecture, OS: Linux/Windows/MacOS), experts are now making progress to also provide full stack supports on mobile platforms (e.g. ARM, OS: Android). I just notice that Qualcomm just released its own BLASlike library Snapdragon Math Library, which can run on Qualcomm customized ARM architecture. With the top level LAPACK linking to it, these linear algebra operations (SVD, QR, LU, leastsquares, inverse, etc) can be implemented on Android with high performance. 


Jama works fairly well. 


If you use C++ and NDK you can use Eigen . It can use SSE 2/3/4, ARM NEON, and AltiVec instruction sets. 

