You can use look for a function using `getAnywhere`

```
getAnywhere("predict.glmnet")
## A single object matching ‘predict.glmnet’ was found
## It was found in the following places
## registered S3 method for predict from namespace glmnet
## namespace:glmnet
## with value
##
## function (object, newx, s = NULL, type = c("link", "response",
## "coefficients", "nonzero", "class"), exact = FALSE, offset,
## ...)
## {
## type = match.arg(type)
## if (missing(newx)) {
## if (!match(type, c("coefficients", "nonzero"), FALSE))
## stop("You need to supply a value for 'newx'")
## }
## if (exact && (!is.null(s))) {
## lambda = object$lambda
## which = match(s, lambda, FALSE)
## if (!all(which > 0)) {
## lambda = unique(rev(sort(c(s, lambda))))
## object = update(object, lambda = lambda)
## }
## }
## a0 = t(as.matrix(object$a0))
## rownames(a0) = "(Intercept)"
## nbeta = rbind2(a0, object$beta)
## if (!is.null(s)) {
## vnames = dimnames(nbeta)[[1]]
## dimnames(nbeta) = list(NULL, NULL)
## lambda = object$lambda
## lamlist = lambda.interp(lambda, s)
## nbeta = nbeta[, lamlist$left, drop = FALSE] * lamlist$frac +
## nbeta[, lamlist$right, drop = FALSE] * (1 - lamlist$frac)
## dimnames(nbeta) = list(vnames, paste(seq(along = s)))
## }
## if (type == "coefficients")
## return(nbeta)
## if (type == "nonzero")
## return(nonzeroCoef(nbeta[-1, , drop = FALSE], bystep = TRUE))
## if (inherits(newx, "sparseMatrix"))
## newx = as(newx, "dgCMatrix")
## nfit = as.matrix(cbind2(1, newx) %*% nbeta)
## if (object$offset) {
## if (missing(offset))
## stop("No offset provided for prediction, yet used in fit of glmnet",
## call. = FALSE)
## if (is.matrix(offset) && dim(offset)[[2]] == 2)
## offset = offset[, 2]
## nfit = nfit + array(offset, dim = dim(nfit))
## }
## nfit
## }
## <environment: namespace:glmnet>
```