mirror of
https://gitlab.com/scemama/QCaml.git
synced 2024-11-14 10:03:39 +01:00
166 lines
3.8 KiB
OCaml
166 lines
3.8 KiB
OCaml
open Lacaml.D
|
|
|
|
type t
|
|
|
|
let make
|
|
?guess
|
|
?(n_states=1)
|
|
?(n_iter=8)
|
|
?(threshold=1.e-7)
|
|
diagonal
|
|
matrix_prod
|
|
=
|
|
|
|
(* Size of the matrix to diagonalize *)
|
|
let n = Vec.dim diagonal in
|
|
|
|
let m = n_states in
|
|
|
|
(* Create guess vectors u, with unknown vectors initialized to unity. *)
|
|
let init_vectors m =
|
|
let init_vector k =
|
|
Vector.sparse_of_assoc_list n [ (k,1.0) ]
|
|
in
|
|
Array.init m (fun i -> init_vector (i+1))
|
|
|> Matrix.sparse_of_vector_array
|
|
|> Matrix.to_mat
|
|
in
|
|
|
|
let guess =
|
|
match guess with
|
|
| Some vectors -> vectors
|
|
| None -> init_vectors m
|
|
in
|
|
|
|
let guess =
|
|
if Mat.dim2 guess = n_states then guess
|
|
else
|
|
(Mat.to_col_vecs_list guess) @
|
|
(Mat.to_col_vecs_list (init_vectors (m-(Mat.dim2 guess))) )
|
|
|> Mat.of_col_vecs_list
|
|
in
|
|
|
|
let pick_new u =
|
|
Mat.to_col_vecs_list u
|
|
|> Util.list_pack m
|
|
|> List.rev
|
|
|> List.hd
|
|
in
|
|
|
|
let u_new = Mat.to_col_vecs_list guess in
|
|
|
|
let rec iteration u u_new w iter macro =
|
|
(* u is a list of orthonormal vectors, on which the operator has
|
|
been applied : w = op.u
|
|
u_new is a list of vectors which will increase the size of the
|
|
space.
|
|
*)
|
|
(* Orthonormalize input vectors u_new *)
|
|
let u_new_ortho =
|
|
List.concat [u ; u_new]
|
|
|> Mat.of_col_vecs_list
|
|
|> Util.qr_ortho
|
|
|> pick_new
|
|
in
|
|
|
|
(* Apply the operator to the m last vectors *)
|
|
let w_new =
|
|
matrix_prod (
|
|
u_new_ortho
|
|
|> Mat.of_col_vecs_list
|
|
|> Matrix.dense_of_mat )
|
|
|> Matrix.to_mat
|
|
|> Mat.to_col_vecs_list
|
|
in
|
|
|
|
(* Data for the next iteration *)
|
|
let u_next =
|
|
List.concat [ u ; u_new_ortho ]
|
|
and w_next =
|
|
List.concat [ w ; w_new ]
|
|
in
|
|
|
|
(* Build the small matrix h = <U_k | W_l> *)
|
|
let m_U =
|
|
Mat.of_col_vecs_list u_next
|
|
and m_W =
|
|
Mat.of_col_vecs_list w_next
|
|
in
|
|
let m_h =
|
|
gemm ~transa:`T m_U m_W
|
|
in
|
|
|
|
(* Diagonalize h *)
|
|
let y, lambda =
|
|
Util.diagonalize_symm m_h
|
|
in
|
|
|
|
(* Express m lowest eigenvectors of h in the large basis *)
|
|
let m_new_U =
|
|
gemm ~n:m m_U y
|
|
and m_new_W =
|
|
gemm ~n:m m_W y
|
|
in
|
|
|
|
(* Compute the residual as proposed new vectors *)
|
|
let u_proposed =
|
|
Mat.init_cols n m (fun i k ->
|
|
let delta = lambda.{k} -. diagonal.{i} in
|
|
let delta =
|
|
if abs_float delta > 1.e-2 then delta
|
|
else if delta > 0. then 1.e-2
|
|
else (-1.e-2)
|
|
in
|
|
(lambda.{k} *. m_new_U.{i,k} -. m_new_W.{i,k}) /. delta
|
|
)
|
|
|> Mat.to_col_vecs_list
|
|
in
|
|
|
|
|
|
let residual_norms = List.map nrm2 u_proposed in
|
|
let residual_norm =
|
|
List.fold_left (fun accu i -> accu +. i *. i) 0. residual_norms
|
|
|> sqrt
|
|
in
|
|
|
|
if Parallel.master then
|
|
begin
|
|
Printf.printf "%3d " iter;
|
|
Vec.iteri (fun i x -> if (i<=m) then Printf.printf "%16.10f " x) lambda;
|
|
Printf.printf "%16.8e%!\n" residual_norm
|
|
end;
|
|
|
|
(* Make new vectors sparse *)
|
|
|
|
let u_proposed =
|
|
Mat.of_col_vecs_list u_proposed
|
|
in
|
|
let maxu = lange u_proposed ~norm:`M in
|
|
let thr = maxu *. 0.00001 in
|
|
let u_proposed =
|
|
Mat.map (fun x -> if abs_float x < thr then 0. else x) u_proposed
|
|
|> Mat.to_col_vecs_list
|
|
in
|
|
(*
|
|
Format.printf "%a@." Matrix.pp_matrix @@ Matrix.dense_of_mat m_new_U;
|
|
*)
|
|
|
|
|
|
if residual_norm > threshold && macro > 0 then
|
|
let u_next, w_next, iter, macro =
|
|
if iter = n_iter then
|
|
m_new_U |> pick_new,
|
|
m_new_W |> pick_new,
|
|
0, (macro-1)
|
|
else
|
|
u_next, w_next, (iter+1), macro
|
|
in
|
|
(iteration [@tailcall]) u_next u_proposed w_next iter macro
|
|
else
|
|
(m_new_U |> pick_new |> Mat.of_col_vecs_list), lambda
|
|
|
|
in
|
|
iteration [] u_new [] 1 30
|
|
|
|
|