I've got a project currently using CMake, which I would like to switch over to Bazel. The primary dependency is LLVM, which I use to generate LLVM IR. Looking around, there doesn't seem to be a whole lot of guidance on this as only TensorFlow seems to use LLVM from Bazel (and auto-generates its config as far as I can tell). There was also a thread on bazel-discuss I found which discussed a similar issue, though my attempts to replicate it have failed.
Currently, my best run has got to be this (
def _impl(ctx): # Download LLVM master ctx.download_and_extract(url = "https://github.com/llvm-mirror/llvm/archive/master.zip") # Run `cmake llvm-master` to generate configuration. ctx.execute(["cmake", "llvm-master"]) # The bazel-discuss thread says to delete llvm-master, but I've # found that only generated files are pulled out of master, so all # the non-generated ones get dropped if I delete this. # ctx.execute(["rm", "-r", "llvm-master"]) # Generate a BUILD file for the LLVM dependency. ctx.file('BUILD', """ # Build a library with all the LLVM code in it. cc_library( name = "lib", srcs = glob(["**/*.cpp"]), hdrs = glob(["**/*.h"]), # Include the x86 target and all include files. # Add those under llvm-master/... as well because only built files # seem to appear under include/... copts = [ "-Ilib/Target/X86", "-Iinclude", "-Illvm-master/lib/Target/X86", "-Illvm-master/include", ], # Include here as well, not sure whether this or copts is # actually doing the work. includes = [ "include", "llvm-master/include", ], visibility = ["//visibility:public"], # Currently picking up some gtest targets, I have that dependency # already, so just link it here until I filter those out. deps = [ "@gtest//:gtest_main", ], ) """) # Generate an empty workspace file ctx.file('WORKSPACE', '') get_llvm = repository_rule(implementation = _impl)
And then my
WORKSPACE file looks like the following:
load(":fetcher.bzl", "get_llvm") git_repository( name = "gflags", commit = "46f73f88b18aee341538c0dfc22b1710a6abedef", # 2.2.1 remote = "https://github.com/gflags/gflags.git", ) new_http_archive( name = "gtest", url = "https://github.com/google/googletest/archive/release-1.8.0.zip", sha256 = "f3ed3b58511efd272eb074a3a6d6fb79d7c2e6a0e374323d1e6bcbcc1ef141bf", build_file = "gtest.BUILD", strip_prefix = "googletest-release-1.8.0", ) get_llvm(name = "llvm")
I would then run this with
bazel build @llvm//:lib --verbose_failures.
I would consistently get errors from missing header files. Eventually I found that running
cmake llvm-master generated many header files into the current directory, but seemed to leave the non-generated ones in
llvm-master/. I added the same include directories under
llvm-master/ and that seems to catch a lot of the files. However, currently it seems that
tblgen is not running and I am still missing critical headers required for the compilation. My current error is:
In file included from external/llvm/llvm-master/include/llvm/CodeGen/MachineOperand.h:18:0, from external/llvm/llvm-master/include/llvm/CodeGen/MachineInstr.h:24, from external/llvm/llvm-master/include/llvm/CodeGen/MachineBasicBlock.h:22, from external/llvm/llvm-master/include/llvm/CodeGen/GlobalISel/MachineIRBuilder.h:20, from external/llvm/llvm-master/include/llvm/CodeGen/GlobalISel/ConstantFoldingMIRBuilder.h:13, from external/llvm/llvm-master/unittests/CodeGen/GlobalISel/PatternMatchTest.cpp:10: external/llvm/llvm-master/include/llvm/IR/Intrinsics.h:42:38: fatal error: llvm/IR/IntrinsicEnums.inc: No such file or directory
Attempting to find this file in particular, I don't see any
IntrinsicEnums.dt. I do see a lot of
Instrinsics*.td, so maybe one of them generates this particular file?
It seems like
tblgen is supposed to convert the
*.td files to
*.cpp files (please correct me if I am misunderstanding). However, this doesn't seem to be running. I saw that in Tensorflow's project, they have a
gentbl() BUILD macro, though it is not practical for me to copy it as it has way too many dependencies on the rest of Tensorflow's build infrastructure.
Is there any way to do this without something as big and complex as Tensorflow's system?