I'm looking to run a gradient descent optimization to minimize the cost of an instantiation of variables. My program is very computationally expensive, so I'm looking for a popular library with a fast implementation of GD. What is the recommended library/reference?

GSL is a great (and free) library that already implements common functions of mathematical and scientific interest. You can peruse through the entire reference manual online. Poking around, this starts to look interesting, but I think we'd need to know more about the problem. 


One of the best respected libraries for this kind of optimization work is the NAG libraries. These are used all over the world in universities and industry. They're available for C / FORTRAN. They're very nonfree, and contain a lot more than just minimisation functions  A lot of general numerical mathematics is covered. Anyway I suspect this library is overkill for what you need. But here are the parts pertaining to minimisation: Local Minimisation and Global Minimization. 


It sounds like you're fairly new to minimization methods. Whenever I need to learn a new set of numeric methods, I usually look in Numerical Recipes. It's a book that provides a nice overview of the most common methods in the field, their tradeoffs, and (importantly) where to look in the literature for more information. It's usually not where I stop, but it's often a helpful starting point. For example, if your function is costly, then your goal is to minimization the number of evaluations to need to converge. If you have analytical expressions for the gradient, then a gradientbased method will probably work to your advantage, assuming that the function and its gradient are wellbehaved (lack singularities) in the domain of interest. If you don't have analytical gradients, then you're almost always better off using an approach like downhill simplex that only evaluates the function (not its gradients). Numerical gradients are expensive. Also note that all of these approaches will converge to local minima, so they're fairly sensitive to the point at which you initially start the optimizer. Global optimization is a totally different beast. As a final thought, almost all of the code you can find for minimization will be reasonably efficient. The real cost of minimization is in the cost function. You should spend time profiling and optimizing your cost function, and select an algorithm that will minimize the number of times you need to call it (methods like downhill simplex, conjugate gradient, and BFGS all shine on different kinds of problems). In terms of actual code, you can find a lot of nice routines at NETLIB, in addition to the other libraries that have been mentioned. Most of the routines are in FORTRAN 77, but not all; to convert them to C, f2c is quite useful. 


Try CPLEX which is available for free for students. 

