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ignore #1

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BioTurboNick and others added 30 commits June 14, 2021 19:52
This allows scripts loading this file to know the list of tests.
* Fix a type-instability in sparse `findmin`/`findmax`

The helper function `_findr` would usually return a `Vector` as first
argument, but would use a `SparseMatrixCSC` in the empty case. Fix by
always using `Vector`.

* Make sparse `hvcat` inferable

This also requires making sparse `vcat` and `hcat` inferable in the
vararg case which in turn requires a different way to determine the
resulting index type, now implemented similar to `promote_eltype`.
use `textwidth` in Printf for `%s` and `%c` widths
)

This adds a proof-of-concept demonstration of two new buildkite plugins:

* `cryptic` adds secrets management to privileged pipelines.  These
pipelines cannot be freely modified; their integrity is verified against
a signature maintained by committers with a secret key.  This allows
certain portions of the CI configuration (which are privileged and can
decrypt encrypted files/environment variables) to remain public, but
read-only to the general populace.

*  `sandbox` adds a generic sandboxing mechanism that allows CI steps to
be run within user-provided rootfs images.  We're using these here to
provide compiler toolchains for the `llvm-passes` CI steps, and the plan
is to eventually provide _all_ compiler toolchains through such rootfs
images.
I want to use this in Cthulhu, which uses `IRCode` for optimized code
instead of `CodeInfo`.
…g#41248)

Co-authored-by: Daniel Karrasch <daniel.karrasch@posteo.de>
This was not an external method table, it is just a normal variable
binding. This was causing the precompile files to be corrupted, since we
use normal variables that look like this one at
https://github.com/JuliaLang/julia/blob/dc2befcffc7412768097c2a2a6819724a4745aeb/base/compiler/utilities.jl#L139-L140

Fixes JuliaLang#41156
Co-authored-by: Dilum Aluthge <dilum@aluthge.com>
)

* Transition the `coverage-linux64` pipeline to Buildkite

* Simplify, run inside of a sandbox

* Upload coverage reports to Codecov and Coveralls

* Add `COVERALLS_TOKEN`

Co-authored-by: Elliot Saba <staticfloat@gmail.com>
vchuravy and others added 14 commits July 27, 2021 00:27
[ARM/AArch64] Use CreateFence instead of inline assembly
* Move sanitizer compiler definitions to platform.h.

* Define ASAN defaults in the loader executable.

* Default to no RTLD_DEEPBIND for LBT when using ASAN.

* Simplify contrib/asan/

Co-authored-by: Takafumi Arakaki <aka.tkf@gmail.com>
…Range{<:Rational})` (JuliaLang#41479)

* Fix length(::AbstractUnitRange), faster length(::AbstractUnitRange{<:Rational})
…ted_ts" (JuliaLang#41722)

Also reverts "fixup to pull request JuliaLang#38405 (JuliaLang#41641)"

Seems to be causing hanging in CI testing.

This reverts commit 5af1cf0 and this
reverts commit 5a16805, reversing
changes made to 02807b2.
(this PR is the final output of my demo at [our workshop](https://github.com/aviatesk/juliacon2021-workshop-pkgdev))

This PR eliminated much of runtime dispatches within our type inference
routine, that are reported by the following JET analysis:
```julia
using JETTest

const CC = Core.Compiler

function function_filter(@nospecialize(ft))
    ft === typeof(CC.isprimitivetype) && return false
    ft === typeof(CC.ismutabletype) && return false
    ft === typeof(CC.isbitstype) && return false
    ft === typeof(CC.widenconst) && return false
    ft === typeof(CC.widenconditional) && return false
    ft === typeof(CC.widenwrappedconditional) && return false
    ft === typeof(CC.maybe_extract_const_bool) && return false
    ft === typeof(CC.ignorelimited) && return false
    return true
end

function frame_filter((; linfo) = sv)
    meth = linfo.def
    isa(meth, Method) || return true
    return occursin("compiler/", string(meth.file))
end

report_dispatch(CC.typeinf, (CC.NativeInterpreter, CC.InferenceState); function_filter, frame_filter)
```

> on master
```
═════ 137 possible errors found ═════
...
```
> on this PR
```
═════ 51 possible errors found ═════
...
```

And it seems like this PR makes JIT slightly faster:
> on master
```julia
~/julia/julia master
❯ ./usr/bin/julia -e '@time using Plots; @time plot(rand(10,3));'
  3.659865 seconds (7.19 M allocations: 497.982 MiB, 3.94% gc time, 0.39% compilation time)
  2.696410 seconds (3.62 M allocations: 202.905 MiB, 7.49% gc time, 56.39% compilation time)
```
> on this PR
```julia
~/julia/julia avi/jetdemo* 7s
❯ ./usr/bin/julia -e '@time using Plots; @time plot(rand(10,3));'
  3.396974 seconds (7.16 M allocations: 491.442 MiB, 4.80% gc time, 0.28% compilation time)
  2.591130 seconds (3.48 M allocations: 196.026 MiB, 7.29% gc time, 56.72% compilation time)
```
@IanButterworth IanButterworth changed the title WIP: Add thread and task info to profile backtraces ignore Jul 29, 2021
IanButterworth pushed a commit that referenced this pull request Jul 11, 2022
…Lang#45790)

Currently the `@nospecialize`-d `push!(::Vector{Any}, ...)` can only
take a single item and we will end up with runtime dispatch when we try
to call it with multiple items:
```julia
julia> code_typed(push!, (Vector{Any}, Any))
1-element Vector{Any}:
 CodeInfo(
1 ─      $(Expr(:foreigncall, :(:jl_array_grow_end), Nothing, svec(Any, UInt64), 0, :(:ccall), Core.Argument(2), 0x0000000000000001, 0x0000000000000001))::Nothing
│   %2 = Base.arraylen(a)::Int64
│        Base.arrayset(true, a, item, %2)::Vector{Any}
└──      return a
) => Vector{Any}

julia> code_typed(push!, (Vector{Any}, Any, Any))
1-element Vector{Any}:
 CodeInfo(
1 ─ %1 = Base.append!(a, iter)::Vector{Any}
└──      return %1
) => Vector{Any}
```

This commit adds a new specialization that it can take arbitrary-length
items. Our compiler should still be able to optimize the single-input 
case as before via the dispatch mechanism.
```julia
julia> code_typed(push!, (Vector{Any}, Any))
1-element Vector{Any}:
 CodeInfo(
1 ─      $(Expr(:foreigncall, :(:jl_array_grow_end), Nothing, svec(Any, UInt64), 0, :(:ccall), Core.Argument(2), 0x0000000000000001, 0x0000000000000001))::Nothing
│   %2 = Base.arraylen(a)::Int64
│        Base.arrayset(true, a, item, %2)::Vector{Any}
└──      return a
) => Vector{Any}

julia> code_typed(push!, (Vector{Any}, Any, Any))
1-element Vector{Any}:
 CodeInfo(
1 ─ %1  = Base.arraylen(a)::Int64
│         $(Expr(:foreigncall, :(:jl_array_grow_end), Nothing, svec(Any, UInt64), 0, :(:ccall), Core.Argument(2), 0x0000000000000002, 0x0000000000000002))::Nothing
└──       goto JuliaLang#7 if not true
2 ┄ %4  = φ (#1 => 1, JuliaLang#6 => %14)::Int64
│   %5  = φ (#1 => 1, JuliaLang#6 => %15)::Int64
│   %6  = Base.getfield(x, %4, true)::Any
│   %7  = Base.add_int(%1, %4)::Int64
│         Base.arrayset(true, a, %6, %7)::Vector{Any}
│   %9  = (%5 === 2)::Bool
└──       goto #4 if not %9
3 ─       goto JuliaLang#5
4 ─ %12 = Base.add_int(%5, 1)::Int64
└──       goto JuliaLang#5
5 ┄ %14 = φ (#4 => %12)::Int64
│   %15 = φ (#4 => %12)::Int64
│   %16 = φ (#3 => true, #4 => false)::Bool
│   %17 = Base.not_int(%16)::Bool
└──       goto JuliaLang#7 if not %17
6 ─       goto #2
7 ┄       return a
) => Vector{Any}
```

This commit also adds the equivalent implementations for `pushfirst!`.
IanButterworth pushed a commit that referenced this pull request Jul 11, 2022
When calling `jl_error()` or `jl_errorf()`, we must check to see if we
are so early in the bringup process that it is dangerous to attempt to
construct a backtrace because the data structures used to provide line
information are not properly setup.

This can be easily triggered by running:

```
julia -C invalid
```

On an `i686-linux-gnu` build, this will hit the "Invalid CPU Name"
branch in `jitlayers.cpp`, which calls `jl_errorf()`.  This in turn
calls `jl_throw()`, which will eventually call `jl_DI_for_fptr` as part
of the backtrace printing process, which fails as the object maps are
not fully initialized.  See the below `gdb` stacktrace for details:

```
$ gdb -batch -ex 'r' -ex 'bt' --args ./julia -C invalid
...
fatal: error thrown and no exception handler available.
ErrorException("Invalid CPU name "invalid".")

Thread 1 "julia" received signal SIGSEGV, Segmentation fault.
0xf75bd665 in std::_Rb_tree<unsigned int, std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo>, std::_Select1st<std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo> >, std::greater<unsigned int>, std::allocator<std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo> > >::lower_bound (__k=<optimized out>, this=0x248) at /usr/local/i686-linux-gnu/include/c++/9.1.0/bits/stl_tree.h:1277
1277    /usr/local/i686-linux-gnu/include/c++/9.1.0/bits/stl_tree.h: No such file or directory.
 #0  0xf75bd665 in std::_Rb_tree<unsigned int, std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo>, std::_Select1st<std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo> >, std::greater<unsigned int>, std::allocator<std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo> > >::lower_bound (__k=<optimized out>, this=0x248) at /usr/local/i686-linux-gnu/include/c++/9.1.0/bits/stl_tree.h:1277
 #1  std::map<unsigned int, JITDebugInfoRegistry::ObjectInfo, std::greater<unsigned int>, std::allocator<std::pair<unsigned int const, JITDebugInfoRegistry::ObjectInfo> > >::lower_bound (__x=<optimized out>, this=0x248) at /usr/local/i686-linux-gnu/include/c++/9.1.0/bits/stl_map.h:1258
 #2  jl_DI_for_fptr (fptr=4155049385, symsize=symsize@entry=0xffffcfa8, slide=slide@entry=0xffffcfa0, Section=Section@entry=0xffffcfb8, context=context@entry=0xffffcf94) at /cache/build/default-amdci5-4/julialang/julia-master/src/debuginfo.cpp:1181
 #3  0xf75c056a in jl_getFunctionInfo_impl (frames_out=0xffffd03c, pointer=4155049385, skipC=0, noInline=0) at /cache/build/default-amdci5-4/julialang/julia-master/src/debuginfo.cpp:1210
 #4  0xf7a6ca98 in jl_print_native_codeloc (ip=4155049385) at /cache/build/default-amdci5-4/julialang/julia-master/src/stackwalk.c:636
 JuliaLang#5  0xf7a6cd54 in jl_print_bt_entry_codeloc (bt_entry=0xf0798018) at /cache/build/default-amdci5-4/julialang/julia-master/src/stackwalk.c:657
 JuliaLang#6  jlbacktrace () at /cache/build/default-amdci5-4/julialang/julia-master/src/stackwalk.c:1090
 JuliaLang#7  0xf7a3cd2b in ijl_no_exc_handler (e=0xf0794010) at /cache/build/default-amdci5-4/julialang/julia-master/src/task.c:605
 JuliaLang#8  0xf7a3d10a in throw_internal (ct=ct@entry=0xf070c010, exception=<optimized out>, exception@entry=0xf0794010) at /cache/build/default-amdci5-4/julialang/julia-master/src/task.c:638
 JuliaLang#9  0xf7a3d330 in ijl_throw (e=0xf0794010) at /cache/build/default-amdci5-4/julialang/julia-master/src/task.c:654
 JuliaLang#10 0xf7a905aa in ijl_errorf (fmt=fmt@entry=0xf7647cd4 "Invalid CPU name \"%s\".") at /cache/build/default-amdci5-4/julialang/julia-master/src/rtutils.c:77
 JuliaLang#11 0xf75a4b22 in (anonymous namespace)::createTargetMachine () at /cache/build/default-amdci5-4/julialang/julia-master/src/jitlayers.cpp:823
 JuliaLang#12 JuliaOJIT::JuliaOJIT (this=<optimized out>) at /cache/build/default-amdci5-4/julialang/julia-master/src/jitlayers.cpp:1044
 JuliaLang#13 0xf7531793 in jl_init_llvm () at /cache/build/default-amdci5-4/julialang/julia-master/src/codegen.cpp:8585
 JuliaLang#14 0xf75318a8 in jl_init_codegen_impl () at /cache/build/default-amdci5-4/julialang/julia-master/src/codegen.cpp:8648
 JuliaLang#15 0xf7a51a52 in jl_restore_system_image_from_stream (f=<optimized out>) at /cache/build/default-amdci5-4/julialang/julia-master/src/staticdata.c:2131
 JuliaLang#16 0xf7a55c03 in ijl_restore_system_image_data (buf=0xe859c1c0 <jl_system_image_data> "8'\031\003", len=125161105) at /cache/build/default-amdci5-4/julialang/julia-master/src/staticdata.c:2184
 JuliaLang#17 0xf7a55cf9 in jl_load_sysimg_so () at /cache/build/default-amdci5-4/julialang/julia-master/src/staticdata.c:424
 JuliaLang#18 ijl_restore_system_image (fname=0x80a0900 "/build/bk_download/julia-d78fdad601/lib/julia/sys.so") at /cache/build/default-amdci5-4/julialang/julia-master/src/staticdata.c:2157
 JuliaLang#19 0xf7a3bdfc in _finish_julia_init (rel=rel@entry=JL_IMAGE_JULIA_HOME, ct=<optimized out>, ptls=<optimized out>) at /cache/build/default-amdci5-4/julialang/julia-master/src/init.c:741
 JuliaLang#20 0xf7a3c8ac in julia_init (rel=<optimized out>) at /cache/build/default-amdci5-4/julialang/julia-master/src/init.c:728
 JuliaLang#21 0xf7a7f61d in jl_repl_entrypoint (argc=<optimized out>, argv=0xffffddf4) at /cache/build/default-amdci5-4/julialang/julia-master/src/jlapi.c:705
 JuliaLang#22 0x080490a7 in main (argc=3, argv=0xffffddf4) at /cache/build/default-amdci5-4/julialang/julia-master/cli/loader_exe.c:59
```

To prevent this, we simply avoid calling `jl_errorf` this early in the
process, punting the problem to a later PR that can update guard
conditions within `jl_error*`.
IanButterworth pushed a commit that referenced this pull request Jul 22, 2023
This makes it easier to correlate LLVM IR with the originating source
code by including both argument name and argument type in the LLVM
argument variable.

<details>
<summary>Example 1</summary>

```julia
julia> function f(a, b, c, d, g...)
           e = a + b + c + d
           f = does_not_exist(e) + e
           f
       end
f (generic function with 1 method)

julia> @code_llvm f(0,0,0,0,0)
```
```llvm
;  @ REPL[1]:1 within `f`
define nonnull {}* @julia_f_141(i64 signext %"a::Int64", i64 signext %"b::Int64", i64 signext %"c::Int64", i64 signext %"d::Int64", i64 signext %"g[0]::Int64") #0 {
top:
  %0 = alloca [2 x {}*], align 8
  %gcframe3 = alloca [4 x {}*], align 16
  %gcframe3.sub = getelementptr inbounds [4 x {}*], [4 x {}*]* %gcframe3, i64 0, i64 0
  %1 = bitcast [4 x {}*]* %gcframe3 to i8*
  call void @llvm.memset.p0i8.i64(i8* align 16 %1, i8 0, i64 32, i1 true)
  %thread_ptr = call i8* asm "movq %fs:0, $0", "=r"() JuliaLang#7
  %tls_ppgcstack = getelementptr i8, i8* %thread_ptr, i64 -8
  %2 = bitcast i8* %tls_ppgcstack to {}****
  %tls_pgcstack = load {}***, {}**** %2, align 8
;  @ REPL[1]:3 within `f`
  %3 = bitcast [4 x {}*]* %gcframe3 to i64*
  store i64 8, i64* %3, align 16
  %4 = getelementptr inbounds [4 x {}*], [4 x {}*]* %gcframe3, i64 0, i64 1
  %5 = bitcast {}** %4 to {}***
  %6 = load {}**, {}*** %tls_pgcstack, align 8
  store {}** %6, {}*** %5, align 8
  %7 = bitcast {}*** %tls_pgcstack to {}***
  store {}** %gcframe3.sub, {}*** %7, align 8
  %Main.does_not_exist.cached = load atomic {}*, {}** @0 unordered, align 8
  %iscached.not = icmp eq {}* %Main.does_not_exist.cached, null
  br i1 %iscached.not, label %notfound, label %found

notfound:                                         ; preds = %top
  %Main.does_not_exist.found = call {}* @ijl_get_binding_or_error({}* nonnull inttoptr (i64 139831437630272 to {}*), {}* nonnull inttoptr (i64 139831600565400 to {}*))
  store atomic {}* %Main.does_not_exist.found, {}** @0 release, align 8
  br label %found

found:                                            ; preds = %notfound, %top
  %Main.does_not_exist = phi {}* [ %Main.does_not_exist.cached, %top ], [ %Main.does_not_exist.found, %notfound ]
  %8 = bitcast {}* %Main.does_not_exist to {}**
  %does_not_exist.checked = load atomic {}*, {}** %8 unordered, align 8
  %.not = icmp eq {}* %does_not_exist.checked, null
  br i1 %.not, label %err, label %ok

err:                                              ; preds = %found
  call void @ijl_undefined_var_error({}* inttoptr (i64 139831600565400 to {}*))
  unreachable

ok:                                               ; preds = %found
  %.sub = getelementptr inbounds [2 x {}*], [2 x {}*]* %0, i64 0, i64 0
;  @ REPL[1]:2 within `f`
; ┌ @ operators.jl:587 within `+` @ int.jl:87
   %9 = add i64 %"b::Int64", %"a::Int64"
   %10 = add i64 %9, %"c::Int64"
; │ @ operators.jl:587 within `+`
; │┌ @ operators.jl:544 within `afoldl`
; ││┌ @ int.jl:87 within `+`
     %11 = add i64 %10, %"d::Int64"
     %12 = getelementptr inbounds [4 x {}*], [4 x {}*]* %gcframe3, i64 0, i64 3
     store {}* %does_not_exist.checked, {}** %12, align 8
; └└└
;  @ REPL[1]:3 within `f`
  %13 = call nonnull {}* @ijl_box_int64(i64 signext %11)
  %14 = getelementptr inbounds [4 x {}*], [4 x {}*]* %gcframe3, i64 0, i64 2
  store {}* %13, {}** %14, align 16
  store {}* %13, {}** %.sub, align 8
  %15 = call nonnull {}* @ijl_apply_generic({}* nonnull %does_not_exist.checked, {}** nonnull %.sub, i32 1)
  store {}* %15, {}** %12, align 8
  %16 = call nonnull {}* @ijl_box_int64(i64 signext %11)
  store {}* %16, {}** %14, align 16
  store {}* %15, {}** %.sub, align 8
  %17 = getelementptr inbounds [2 x {}*], [2 x {}*]* %0, i64 0, i64 1
  store {}* %16, {}** %17, align 8
  %18 = call nonnull {}* @ijl_apply_generic({}* inttoptr (i64 139831370516384 to {}*), {}** nonnull %.sub, i32 2)
  %19 = load {}*, {}** %4, align 8
  %20 = bitcast {}*** %tls_pgcstack to {}**
  store {}* %19, {}** %20, align 8
;  @ REPL[1]:4 within `f`
  ret {}* %18
}
```
</details>

<details>
<summary>Example 2</summary>

```julia
julia> function g(a, b, c, d; kwarg=0)
           a + b + c + d + kwarg
       end
g (generic function with 1 method)

julia> @code_llvm g(0,0,0,0,kwarg=0)
```
```llvm
;  @ REPL[3]:1 within `g`
define i64 @julia_g_160([1 x i64]* nocapture noundef nonnull readonly align 8 dereferenceable(8) %"#1::NamedTuple", i64 signext %"a::Int64", i64 signext %"b::Int64", i64 signext %"c::Int64", i64 signext %"d::Int64") #0 {
top:
  %0 = getelementptr inbounds [1 x i64], [1 x i64]* %"#1::NamedTuple", i64 0, i64 0
; ┌ @ REPL[3]:2 within `#g#1`
; │┌ @ operators.jl:587 within `+` @ int.jl:87
    %1 = add i64 %"b::Int64", %"a::Int64"
    %2 = add i64 %1, %"c::Int64"
; ││ @ operators.jl:587 within `+`
; ││┌ @ operators.jl:544 within `afoldl`
; │││┌ @ int.jl:87 within `+`
      %3 = add i64 %2, %"d::Int64"
; │││└
; │││ @ operators.jl:545 within `afoldl`
; │││┌ @ int.jl:87 within `+`
      %unbox = load i64, i64* %0, align 8
      %4 = add i64 %3, %unbox
; └└└└
  ret i64 %4
}
```
</details>
IanButterworth pushed a commit that referenced this pull request Oct 6, 2023
…#51489)

This exposes the GC "stop the world" API to the user, for causing a
thread to quickly stop executing Julia code. This adds two APIs (that
will need to be exported and documented later):
```
julia> @CCall jl_safepoint_suspend_thread(#=tid=#1::Cint, #=magicnumber=#2::Cint)::Cint # roughly tkill(1, SIGSTOP)

julia> @CCall jl_safepoint_resume_thread(#=tid=#1::Cint)::Cint # roughly tkill(1, SIGCONT)
```

You can even suspend yourself, if there is another task to resume you 10
seconds later:
```
julia> ccall(:jl_enter_threaded_region, Cvoid, ())

julia> t = @task let; Libc.systemsleep(10); print("\nhello from $(Threads.threadid())\n"); @CCall jl_safepoint_resume_thread(0::Cint)::Cint; end; ccall(:jl_set_task_tid, Cint, (Any, Cint), t, 1); schedule(t);

julia> @time @CCall jl_safepoint_suspend_thread(0::Cint, 2::Cint)::Cint

hello from 2
  10 seconds (6 allocations: 264 bytes)
1
```

The meaning of the magic number is actually the kind of stop that you
want:
```
// n.b. suspended threads may still run in the GC or GC safe regions
// but shouldn't be observable, depending on which enum the user picks (only 1 and 2 are typically recommended here)
// waitstate = 0 : do not wait for suspend to finish
// waitstate = 1 : wait for gc_state != 0 (JL_GC_STATE_WAITING or JL_GC_STATE_SAFE)
// waitstate = 2 : wait for gc_state != 0 (JL_GC_STATE_WAITING or JL_GC_STATE_SAFE) and that GC is not running on that thread
// waitstate = 3 : wait for full suspend (gc_state == JL_GC_STATE_WAITING) -- this may never happen if thread is sleeping currently
// if another thread comes along and calls jl_safepoint_resume, we also return early
// return new suspend count on success, 0 on failure
```
Only magic number 2 is currently meaningful to the user though. The
difference between waitstate 1 and 2 is only relevant in C code which is
calling this from JL_GC_STATE_SAFE, since otherwise it is a priori known
that GC isn't running, else we too would be running the GC. But the
distinction of those states might be useful if we have a concurrent
collector.

Very important warning: if the stopped thread is holding any locks
(e.g. for codegen or types) that you then attempt to acquire, your
thread will deadlock. This is very likely, unless you are very careful.
A future update to this API may try to change the waitstate to give the
option to wait for the thread to release internal or known locks.
IanButterworth pushed a commit that referenced this pull request Mar 12, 2024
…ang#53631)

This PR validates the input parameters to the Julia LAPACK wrappers, so
that the error messages are more informative.
On nightly
```julia
julia> using LinearAlgebra

julia> LAPACK.geev!('X', 'X', rand(2,2))
 ** On entry to DGEEV  parameter number  1 had an illegal value
ERROR: ArgumentError: invalid argument #1 to LAPACK call
```
This PR
```julia
julia> using LinearAlgebra

julia> LAPACK.geev!('X', 'X', rand(2,2))
ERROR: ArgumentError: argument #1: jobvl must be one of ('N', 'V'), but 'X' was passed
```

Secondly, moved certain allocations (e.g. in `geevx`) below the
validation checks, so that these only happen for valid parameter values.

Thirdly, added `require_one_based_indexing` checks to functions where
these were missing.
IanButterworth pushed a commit that referenced this pull request Mar 21, 2024
This is an alternative to JuliaLang#53642

The `dom_edges()` for an exit block in the CFG are empty when computing
the PostDomTree so the loop below this may not actually run. In that
case, the right semidominator is the ancestor from the DFSTree, which is
the "virtual" -1 block.

This resolves half of the issue in
JuliaLang#53613:
```julia
julia> let code = Any[
               # block 1
               GotoIfNot(Argument(2), 3),
               # block 2
               ReturnNode(Argument(3)),
               # block 3 (we should visit this block)
               Expr(:call, throw, "potential throw"),
               ReturnNode(), # unreachable
           ]
           ir = make_ircode(code; slottypes=Any[Any,Bool,Bool])
           visited = BitSet()
           @test !Core.Compiler.visit_conditional_successors(CC.LazyPostDomtree(ir), ir, #=bb=#1) do succ::Int
               push!(visited, succ)
               return false
           end
           @test 2 ∈ visited
           @test 3 ∈ visited
       end
Test Passed
```

This needs some tests (esp. since I don't think we have any DomTree
tests at all right now), but otherwise should be good to go.
IanButterworth pushed a commit that referenced this pull request Mar 21, 2024
…iaLang#53642)

This commit fixes the first problem that was found while digging into
JuliaLang#53613. It turns out that the post-domtree constructed
from regular `IRCode` doesn't work for visiting conditional successors
for post-opt analysis in cases like:
```julia
julia> let code = Any[
               # block 1
               GotoIfNot(Argument(2), 3),
               # block 2
               ReturnNode(Argument(3)),
               # block 3 (we should visit this block)
               Expr(:call, throw, "potential throw"),
               ReturnNode(), # unreachable
           ]
           ir = make_ircode(code; slottypes=Any[Any,Bool,Bool])
           visited = BitSet()
           @test !Core.Compiler.visit_conditional_successors(CC.LazyPostDomtree(ir), ir, #=bb=#1) do succ::Int
               push!(visited, succ)
               return false
           end
           @test 2 ∉ visited
           @test 3 ∈ visited
       end
Test Failed at REPL[14]:16
  Expression: 2 ∉ visited
   Evaluated: 2 ∉ BitSet([2])
```

This might mean that we need to fix on the `postdominates` end, but for
now, this commit tries to get around it by using the augmented post
domtree in `visit_conditional_successors`. Since the augmented post
domtree is enforced to have a single return, we can keep using the
current `postdominates` to fix the issue.

However, this commit isn't enough to fix the NeuralNetworkReachability
segfault as reported in JuliaLang#53613, and we need to tackle the second issue
reported there too
(JuliaLang#53613 (comment)).
IanButterworth pushed a commit that referenced this pull request Aug 30, 2024
…aLang#55600)

As an application of JuliaLang#55545, this commit avoids the
insertion of `:throw_undef_if_not` nodes when the defined-ness of a slot
is guaranteed by abstract interpretation.

```julia
julia> function isdefined_nothrow(c, x)
           local val
           if c
               val = x
           end
           if @isdefined val
               return val
           end
           return zero(Int)
       end;

julia> @code_typed isdefined_nothrow(true, 42)
```
```diff
diff --git a/old b/new
index c4980a5c9c..3d1d6d30f0 100644
--- a/old
+++ b/new
@@ -4,7 +4,6 @@ CodeInfo(
 3 ┄ %3 = φ (#2 => x, #1 => #undef)::Int64
 │   %4 = φ (#2 => true, #1 => false)::Bool
 └──      goto JuliaLang#5 if not %4
-4 ─      $(Expr(:throw_undef_if_not, :val, :(%4)))::Any
-└──      return %3
+4 ─      return %3
 5 ─      return 0
 ) => Int64
```
IanButterworth pushed a commit that referenced this pull request Oct 1, 2024
…ang#53631)

This PR validates the input parameters to the Julia LAPACK wrappers, so
that the error messages are more informative.
On nightly
```julia
julia> using LinearAlgebra

julia> LAPACK.geev!('X', 'X', rand(2,2))
 ** On entry to DGEEV  parameter number  1 had an illegal value
ERROR: ArgumentError: invalid argument #1 to LAPACK call
```
This PR
```julia
julia> using LinearAlgebra

julia> LAPACK.geev!('X', 'X', rand(2,2))
ERROR: ArgumentError: argument #1: jobvl must be one of ('N', 'V'), but 'X' was passed
```

Secondly, moved certain allocations (e.g. in `geevx`) below the
validation checks, so that these only happen for valid parameter values.

Thirdly, added `require_one_based_indexing` checks to functions where
these were missing.

(cherry picked from commit dcd1fb2)
IanButterworth pushed a commit that referenced this pull request Oct 1, 2024
This is an alternative to JuliaLang#53642

The `dom_edges()` for an exit block in the CFG are empty when computing
the PostDomTree so the loop below this may not actually run. In that
case, the right semidominator is the ancestor from the DFSTree, which is
the "virtual" -1 block.

This resolves half of the issue in
JuliaLang#53613:
```julia
julia> let code = Any[
               # block 1
               GotoIfNot(Argument(2), 3),
               # block 2
               ReturnNode(Argument(3)),
               # block 3 (we should visit this block)
               Expr(:call, throw, "potential throw"),
               ReturnNode(), # unreachable
           ]
           ir = make_ircode(code; slottypes=Any[Any,Bool,Bool])
           visited = BitSet()
           @test !Core.Compiler.visit_conditional_successors(CC.LazyPostDomtree(ir), ir, #=bb=#1) do succ::Int
               push!(visited, succ)
               return false
           end
           @test 2 ∈ visited
           @test 3 ∈ visited
       end
Test Passed
```

This needs some tests (esp. since I don't think we have any DomTree
tests at all right now), but otherwise should be good to go.
IanButterworth pushed a commit that referenced this pull request Oct 1, 2024
…iaLang#53642)

This commit fixes the first problem that was found while digging into
JuliaLang#53613. It turns out that the post-domtree constructed
from regular `IRCode` doesn't work for visiting conditional successors
for post-opt analysis in cases like:
```julia
julia> let code = Any[
               # block 1
               GotoIfNot(Argument(2), 3),
               # block 2
               ReturnNode(Argument(3)),
               # block 3 (we should visit this block)
               Expr(:call, throw, "potential throw"),
               ReturnNode(), # unreachable
           ]
           ir = make_ircode(code; slottypes=Any[Any,Bool,Bool])
           visited = BitSet()
           @test !Core.Compiler.visit_conditional_successors(CC.LazyPostDomtree(ir), ir, #=bb=#1) do succ::Int
               push!(visited, succ)
               return false
           end
           @test 2 ∉ visited
           @test 3 ∈ visited
       end
Test Failed at REPL[14]:16
  Expression: 2 ∉ visited
   Evaluated: 2 ∉ BitSet([2])
```

This might mean that we need to fix on the `postdominates` end, but for
now, this commit tries to get around it by using the augmented post
domtree in `visit_conditional_successors`. Since the augmented post
domtree is enforced to have a single return, we can keep using the
current `postdominates` to fix the issue.

However, this commit isn't enough to fix the NeuralNetworkReachability
segfault as reported in JuliaLang#53613, and we need to tackle the second issue
reported there too
(JuliaLang#53613 (comment)).
IanButterworth pushed a commit that referenced this pull request Oct 12, 2024
Prior to this, especially on macOS, the gc-safepoint here would cause
the process to segfault as we had already freed the current_task state.
Rearrange this code so that the GC interactions (except for the atomic
store to current_task) are all handled before entering GC safe, and then
signaling the thread is deleted (via setting current_task = NULL,
published by jl_unlock_profile_wr to other threads) is last.

```
ERROR: Exception handler triggered on unmanaged thread.
Process 53827 stopped
* thread JuliaLang#5, stop reason = EXC_BAD_ACCESS (code=2, address=0x100018008)
    frame #0: 0x0000000100b74344 libjulia-internal.1.12.0.dylib`jl_delete_thread [inlined] jl_gc_state_set(ptls=0x000000011f8b3200, state='\x02', old_state=<unavailable>) at julia_threads.h:272:9 [opt]
   269 	    assert(old_state != JL_GC_CONCURRENT_COLLECTOR_THREAD);
   270 	    jl_atomic_store_release(&ptls->gc_state, state);
   271 	    if (state == JL_GC_STATE_UNSAFE || old_state == JL_GC_STATE_UNSAFE)
-> 272 	        jl_gc_safepoint_(ptls);
   273 	    return old_state;
   274 	}
   275 	STATIC_INLINE int8_t jl_gc_state_save_and_set(jl_ptls_t ptls,
Target 0: (julia) stopped.
(lldb) up
frame #1: 0x0000000100b74320 libjulia-internal.1.12.0.dylib`jl_delete_thread [inlined] jl_gc_state_save_and_set(ptls=0x000000011f8b3200, state='\x02') at julia_threads.h:278:12 [opt]
   275 	STATIC_INLINE int8_t jl_gc_state_save_and_set(jl_ptls_t ptls,
   276 	                                              int8_t state)
   277 	{
-> 278 	    return jl_gc_state_set(ptls, state, jl_atomic_load_relaxed(&ptls->gc_state));
   279 	}
   280 	#ifdef __clang_gcanalyzer__
   281 	// these might not be a safepoint (if they are no-op safe=>safe transitions), but we have to assume it could be (statically)
(lldb)
frame #2: 0x0000000100b7431c libjulia-internal.1.12.0.dylib`jl_delete_thread(value=0x000000011f8b3200) at threading.c:537:11 [opt]
   534 	    ptls->root_task = NULL;
   535 	    jl_free_thread_gc_state(ptls);
   536 	    // then park in safe-region
-> 537 	    (void)jl_gc_safe_enter(ptls);
   538 	}
```

(test incorporated into JuliaLang#55793)
IanButterworth pushed a commit that referenced this pull request Oct 16, 2024
Rebase and extension of @alexfanqi's initial work on porting Julia to
RISC-V. Requires LLVM 19.

Tested on a VisionFive2, built with:

```make
MARCH := rv64gc_zba_zbb
MCPU := sifive-u74

USE_BINARYBUILDER:=0

DEPS_GIT = llvm
override LLVM_VER=19.1.1
override LLVM_BRANCH=julia-release/19.x
override LLVM_SHA1=julia-release/19.x
```

```julia-repl
❯ ./julia
               _
   _       _ _(_)_     |  Documentation: https://docs.julialang.org
  (_)     | (_) (_)    |
   _ _   _| |_  __ _   |  Type "?" for help, "]?" for Pkg help.
  | | | | | | |/ _` |  |
  | | |_| | | | (_| |  |  Version 1.12.0-DEV.1374 (2024-10-14)
 _/ |\__'_|_|_|\__'_|  |  riscv/25092a3982* (fork: 1 commits, 0 days)
|__/                   |

julia> versioninfo(; verbose=true)
Julia Version 1.12.0-DEV.1374
Commit 25092a3* (2024-10-14 09:57 UTC)
Platform Info:
  OS: Linux (riscv64-unknown-linux-gnu)
  uname: Linux 6.11.3-1-riscv64 #1 SMP Debian 6.11.3-1 (2024-10-10) riscv64 unknown
  CPU: unknown:
              speed         user         nice          sys         idle          irq
       #1  1500 MHz        922 s          0 s        265 s     160953 s          0 s
       #2  1500 MHz        457 s          0 s        280 s     161521 s          0 s
       #3  1500 MHz        452 s          0 s        270 s     160911 s          0 s
       #4  1500 MHz        638 s         15 s        301 s     161340 s          0 s
  Memory: 7.760246276855469 GB (7474.08203125 MB free)
  Uptime: 16260.13 sec
  Load Avg:  0.25  0.23  0.1
  WORD_SIZE: 64
  LLVM: libLLVM-19.1.1 (ORCJIT, sifive-u74)
Threads: 1 default, 0 interactive, 1 GC (on 4 virtual cores)
Environment:
  HOME = /home/tim
  PATH = /home/tim/.local/bin:/usr/local/bin:/usr/bin:/bin:/usr/games
  TERM = xterm-256color


julia> ccall(:jl_dump_host_cpu, Nothing, ())
CPU: sifive-u74
Features: +zbb,+d,+i,+f,+c,+a,+zba,+m,-zvbc,-zksed,-zvfhmin,-zbkc,-zkne,-zksh,-zfh,-zfhmin,-zknh,-v,-zihintpause,-zicboz,-zbs,-zvknha,-zvksed,-zfa,-ztso,-zbc,-zvknhb,-zihintntl,-zknd,-zvbb,-zbkx,-zkt,-zvkt,-zicond,-zvksh,-zvfh,-zvkg,-zvkb,-zbkb,-zvkned


julia> @code_native debuginfo=:none 1+2.
	.text
	.attribute	4, 16
	.attribute	5, "rv64i2p1_m2p0_a2p1_f2p2_d2p2_c2p0_zicsr2p0_zifencei2p0_zmmul1p0_zba1p0_zbb1p0"
	.file	"+"
	.globl	"julia_+_3003"
	.p2align	1
	.type	"julia_+_3003",@function
"julia_+_3003":
	addi	sp, sp, -16
	sd	ra, 8(sp)
	sd	s0, 0(sp)
	addi	s0, sp, 16
	fcvt.d.l	fa5, a0
	ld	ra, 8(sp)
	ld	s0, 0(sp)
	fadd.d	fa0, fa5, fa0
	addi	sp, sp, 16
	ret
.Lfunc_end0:
	.size	"julia_+_3003", .Lfunc_end0-"julia_+_3003"

	.type	".L+Core.Float64#3005",@object
	.section	.data.rel.ro,"aw",@progbits
	.p2align	3, 0x0
".L+Core.Float64#3005":
	.quad	".L+Core.Float64#3005.jit"
	.size	".L+Core.Float64#3005", 8

.set ".L+Core.Float64#3005.jit", 272467692544
	.size	".L+Core.Float64#3005.jit", 8
	.section	".note.GNU-stack","",@progbits
```

Lots of bugs guaranteed, but with this we at least have a functional
build and REPL for further development by whoever is interested.

Also requires Linux 6.4+, since the fallback processor detection
used here relies on LLVM's `sys::getHostCPUFeatures`, which for
RISC-V is implemented using hwprobe introduced in 6.4. We could
probably add a fallback that parses `/proc/cpuinfo`, either by building
a CPU database much like how we've done for AArch64, or by parsing the
actual ISA string contained there. That would probably also be a good
place to add support for profiles, which are supposedly the way forward
to package RISC-V binaries. That can happen in follow-up PRs though.
For now, on older kernels, use the `-C` arg to Julia to specify an ISA.

Co-authored-by: Alex Fan <alex.fan.q@gmail.com>
IanButterworth pushed a commit that referenced this pull request Oct 24, 2024
…uliaLang#56300)

The pipeline-prints test currently fails when running on an
aarch64-macos device:

```
/Users/tim/Julia/src/julia/test/llvmpasses/pipeline-prints.ll:309:23: error: AFTERVECTORIZATION: expected string not found in input
; AFTERVECTORIZATION: vector.body
                      ^
<stdin>:2:40: note: scanning from here
; *** IR Dump Before AfterVectorizationMarkerPass on julia_f_199 ***
                                       ^
<stdin>:47:27: note: possible intended match here
; *** IR Dump Before AfterVectorizationMarkerPass on jfptr_f_200 ***
                          ^

Input file: <stdin>
Check file: /Users/tim/Julia/src/julia/test/llvmpasses/pipeline-prints.ll

-dump-input=help explains the following input dump.

Input was:
<<<<<<
             1: opt: WARNING: failed to create target machine for 'x86_64-unknown-linux-gnu': unable to get target for 'x86_64-unknown-linux-gnu', see --version and --triple.
             2: ; *** IR Dump Before AfterVectorizationMarkerPass on julia_f_199 ***
check:309'0                                            X~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ error: no match found
             3: define i64 @julia_f_199(ptr addrspace(10) noundef nonnull align 16 dereferenceable(40) %0) #0 !dbg !4 {
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
             4: top:
check:309'0     ~~~~~
             5:  %1 = call ptr @julia.get_pgcstack()
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
             6:  %ptls_field = getelementptr inbounds ptr, ptr %1, i64 2
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
             7:  %ptls_load45 = load ptr, ptr %ptls_field, align 8, !tbaa !8
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
             .
             .
             .
            42:
check:309'0     ~
            43: L41: ; preds = %L41.loopexit, %L17, %top
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            44:  %value_phi10 = phi i64 [ 0, %top ], [ %7, %L17 ], [ %.lcssa, %L41.loopexit ]
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            45:  ret i64 %value_phi10, !dbg !52
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            46: }
check:309'0     ~~
            47: ; *** IR Dump Before AfterVectorizationMarkerPass on jfptr_f_200 ***
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
check:309'1                               ?                                           possible intended match
            48: ; Function Attrs: noinline optnone
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            49: define nonnull ptr addrspace(10) @jfptr_f_200(ptr addrspace(10) %0, ptr noalias nocapture noundef readonly %1, i32 %2) #1 {
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            50: top:
check:309'0     ~~~~~
            51:  %3 = call ptr @julia.get_pgcstack()
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
            52:  %4 = getelementptr inbounds ptr addrspace(10), ptr %1, i32 0
check:309'0     ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~
             .
             .
             .
>>>>>>

--

********************
Failed Tests (1):
  Julia :: pipeline-prints.ll
```

The problem is that these tests assume x86_64, which fails because the
target isn't available, so it presumably uses the native target which
has different vectorization characteristics:

```
❯ ./usr/tools/opt --load-pass-plugin=libjulia-codegen.dylib -passes='julia' --print-before=AfterVectorization -o /dev/null ../../test/llvmpasses/pipeline-prints.ll
./usr/tools/opt: WARNING: failed to create target machine for 'x86_64-unknown-linux-gnu': unable to get target for 'x86_64-unknown-linux-gnu', see --version and --triple.
```

There's other tests that assume this (e.g. the `fma` cpufeatures one),
but they don't fail, so I've left them as is.
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