Vectorization of BB reductions

This adds a simple reduction vectorization capability to the
non-loop vectorizer.  Simple meaning it lacks any of the fancy
ways to generate the reduction epilogue but only supports
those we can handle via a direct internal function reducing
a vector to a scalar.  One of the main reasons is to avoid
massive refactoring at this point but also that more complex
epilogue operations are hardly profitable.

Mixed sign reductions are for now fend off and I'm not finally
settled with whether we want an explicit SLP node for the
reduction epilogue operation.  Handling mixed signs could be
done by multiplying with a { 1, -1, .. } vector.  Fend off
are also reductions with non-internal operands (constants
or register parameters for example).

Costing is done by accounting the original scalar participating
stmts for the scalar cost and log2 permutes and operations for
the vectorized epilogue.

--

SPEC CPU 2017 FP with rate workload measurements show (picked
fastest runs of three) regressions for 507.cactuBSSN_r (1.5%),
508.namd_r (2.5%), 511.povray_r (2.5%), 526.blender_r (0.5) and
527.cam4_r (2.5%) and improvements for 510.parest_r (5%) and
538.imagick_r (1.5%).  This is with -Ofast -march=znver2 on a Zen2.

Statistics on CPU 2017 shows that the overwhelming number of seeds
we find are reductions of two lanes (well - that's basically every
associative operation).  That means we put a quite high pressure
on the SLP discovery process this way.

In total we find 583218 seeds we put to SLP discovery out of which
66205 pass that and only 6185 of those make it through
code generation checks. 796 of those are discarded because the reduction
is part of a larger SLP instance.  4195 of the remaining
are deemed not profitable to vectorize and 1194 are finally
vectorized.  That's a poor 0.2% rate.

Of the 583218 seeds 486826 (83%) have two lanes, 60912 have three (10%),
28181 four (5%), 4808 five, 909 six and there are instances up to 120
lanes.

There's a set of 54086 candidate seeds we reject because
they contain a constant or invariant (not implemented yet) but still
have two or more lanes that could be put to SLP discovery.

2021-06-16  Richard Biener   <rguenther@suse.de>

	PR tree-optimization/54400
	* tree-vectorizer.h (enum slp_instance_kind): Add
	slp_inst_kind_bb_reduc.
	(reduction_fn_for_scalar_code): Declare.
	* tree-vect-data-refs.c (vect_slp_analyze_instance_dependence):
	Check SLP_INSTANCE_KIND instead of looking at the
	representative.
	(vect_slp_analyze_instance_alignment): Likewise.
	* tree-vect-loop.c (reduction_fn_for_scalar_code): Export.
	* tree-vect-slp.c (vect_slp_linearize_chain): Split out
	chain linearization from vect_build_slp_tree_2 and generalize
	for the use of BB reduction vectorization.
	(vect_build_slp_tree_2): Adjust accordingly.
	(vect_optimize_slp): Elide permutes at the root of BB reduction
	instances.
	(vectorizable_bb_reduc_epilogue): New function.
	(vect_slp_prune_covered_roots): Likewise.
	(vect_slp_analyze_operations): Use them.
	(vect_slp_check_for_constructors): Recognize associatable
	chains for BB reduction vectorization.
	(vectorize_slp_instance_root_stmt): Generate code for the
	BB reduction epilogue.

	* gcc.dg/vect/bb-slp-pr54400.c: New testcase.
5 files changed