1. 17 May, 2019 2 commits
  2. 16 May, 2019 9 commits
  3. 15 May, 2019 2 commits
    • [Datatypes] Custom datatypes (#2900) · 7d845f0d
      * Register and use custom datatypes in TVM
      
      This patch adds the ability to register and use a custom datatype from Python,
      using the `register_datatype` call. The datatype can then be passed as the
      `dtype` parameter using the syntax `dtype="custom[<type_name>]bitsxlanes"`.
      
      * Removes extra file
      
      * Register custom datatypes with TVM; specify Cast and Add lowering
      
      This commit adds functionality for registering custom datatypes with TVM, and
      furthermore adding custom lowering functions to lower those custom datatypes.
      This commit only adds lowering for the Cast and Add ops; more ops will be added
      soon.
      
      Check out some custom datatype samples in my repository of samples:
      https://github.com/gussmith23/tvm-custom-datatype-samples
      
      * Register and lower casts from Python
      
      * Formatting
      
      * Fix include; was including too much
      
      * Add comment
      
      * Add DatatypeRegistered
      
      * Add storage size field to custom datatypes
      
      This field indicates the bitwidth of the opaque block of data into which
      instances of the datatype will be stored, when TVM compiles. For example, if I
      create a datatype with a storage size of 16, then
      - Constants of that datatype will be created as unsigned 16-bit ints
      - Calls to external functions taking that datatype will pass the data as
        unsigned 16-bit ints
      - External functions returning that datatype will be assumed to return unsigned
        16-bit ints.
      
      * Change how lowering funcs (Cast and other ops) are named in registry
      
      tvm.datatypes.lower.<target>.cast.<dst-type>.<src-type>
      becomes
      tvm.datatypes.lower.<target>.Cast.<dst-type>.<src-type>
      
      And fixes some sloppy code around how the other ops were being formatted.
      
      * Update Python register_datatype to accept storage size
      
      * Oops, left out one cast->Cast change
      
      * Look up storage size when parsing `custom[typename]`
      
      When we encounter this type string in Python, it will be parsed into a Halide
      type object in C++. Some of my original code supported this parsing, but we now
      have to attach the storage type to the type (by setting the bits field).
      
      * Change how external calls for casting/other ops are done
      
      Firstly, we now use the storage size of the custom type when determining
      input/output types; e.g. a cast to a custom type with storage size 16 is seen as
      a call to an external function returning an opaque uint of size 16.
      
      Secondly, write a macro to handle the other ops. Originally I thought I could
      handle these at runtime, with a single `_register_op` global. I transitioned
      instead to using individual `_register_Add` etc. calls generated with a macro,
      but I don't remember why.
      
      * When encountering a custom type immediate, generate UIntImm
      
      * Translate custom types to LLVM type
      
      * Generate correct return type in Casts
      
      Originally I was assuming that the result type from casts was always a custom
      datatype, and so I was making the Call return a UInt type.
      
      * Use TVM-idiomatic recursion style in DatatypesLowerer
      
      This was actually a bug, I'm pretty sure; we wouldn't have recursed deep on any
      complex programs. As a result of making this change, I also uncovered another
      potential bug, where the datatypes lowering pass would attempt to lower a Load
      of a custom type. By commenting out the `Mutate_` for Load, I was able to stop
      the error from cropping up, but frankly, I'm not satisfied with the solution;
      how is it that we are able to run codegen when Loads of custom datatypes are
      present in the IR? I have not written any code, to my knowledge, that will
      support this. Perhaps Load does not care about the underlying datatype?
      
      * Use CHECK
      
      * Add comment about which Mutate_s are needed
      
      * Add comments
      
      * Add GetCustomDatatypeRegistered as an extern C function
      
      * Formatting, comments, casting
      
      * Change how datatype string is formatted
      
      * Use bits() instead of GetStorageSize
      
      Use bits() instead of GetStorageSize
      
      * Change comment
      
      * Add datatype.py
      
      * Change registered function name (datatypes->datatype)
      
      * Remove GetStorageSize
      
      * Format custom datatypes like any other datatype
      
      Specifically, we now print the bits and lanes after the `custom[...]` string.
      
      * Correctly implement datatype lowering in Python
      
      * Remove unneeded include
      
      * Make function naming consistent
      
      * Use CHECK instead of internal_assert
      
      * Rename macro
      
      * Formatting
      
      * Rename functions
      
      * Implement Cast lowering
      
      `_datatype_register_op` is now able to lower both binary ops and Casts.
      
      * Formatting
      
      * Formatting
      
      * Clang format, google style
      
      * Fix std::string/extern "C" warnings
      
      * Formatting
      
      * Formatting
      
      * Lower Allocates and Loads during datatype lowering
      
      This should ensure that there are no custom datatypes remaining once datatype
      lowering is done. This will allow us to remove the code in the LLVM codegen
      which deals with custom datatypes.
      
      * Revert additions to codegen_llvm.cc which are now unneeded
      
      * Pass cpplint on lower_datatypes.cc
      
      * Add clarifying comment
      
      * Remove datatype lowering registration funcs from C++
      
      * Add CHECKs
      
      * Remove TODO
      
      * Remove all references to storage size
      
      * Move and rename function
      
      * Rename function
      
      * Remove done TODOs and other handled comments
      
      * Remove irrelevant Load code and comments
      
      * Comment out the IR node types I'm not sure about yet
      
      * Add bfloat16 datatype unittest
      
      * Fix MakeConstScalar
      
      MakeConstScalar for a custom datatype will now call out to a function which can
      be registered on a per-datatype basis. The function will take a double and
      return the equivalent value in the custom datatype format.
      
      Note that these code paths are not actually used or tested at the moment. I have
      not yet written an example which uses const scalars of a custom datatype.
      
      * Formatting
      
      * Change pass name
      
      * Allow users to register whatever lowering function they want
      
      Tianqi pointed out that users should be able to register whatever lowering
      function they want, and should not be constrained to registering lowering
      functions which just call out to external libraries.
      
      I still provide a function for making lowering functions which call out to
      external libraries, for convenience.
      
      * Add clarifying comment
      
      * Remove unneeded comment
      
      * Remove unneeded function
      
      * Rename file
      
      * Undo unnecessary change
      
      * Undo unnecessary change
      
      * Make naming consistent
      
      Rename "datatypes" to "custom datatypes" in most contexts.
      
      * Revert an artifact of old code
      
      * Fix build warnings, add TODO
      
      * Lint
      
      * Remove unnecessary use of extern C by separating decl and impl
      
      * Error checking
      
      * Remove TODO
      
      * Missed a name change
      
      * Lint
      
      * Python lint
      
      * Correctly format datatype
      
      * Move bfloat16 to 3rdparty
      
      * "custom_datatypes" --> "datatype" in most places
      
      I left the pass as "LowerCustomDatatypes" to indicate that we're not lowering
      anything other than custom datatypes. Otherwise, everything else has been
      changed.
      
      * Upgrade datatype unittest
      
      I used a float calculator to generate some real testcases for the unittest.
      
      * Separate public includes and private implementation
      
      Specifically, create cleaner decoupling between datatypes stuff in packed_func
      and the datatype registry implementation.
      
      * Formatting
      
      * Limit custom datatype codes to >128
      
      * Add TODOs
      
      * Fix comment
      
      * Formatting
      
      * Clean up datatype unittest
      
      * Remove un-exported functions in public headers; UIntImm->FloatImm
      
      More places where I accidentally was using implementation-only functions in
      public headers.
      
      Additionally, store custom datatype immediates as FloatImms. A later change will
      add new lowering logic to lower these FloatImms to UIntImms.
      
      Plus formatting change.
      
      * Lint
      
      * Use FloatImm (not UIntImm) to hold immediates of custom datatypes
      
      This change switches from using UIntImm to FloatImm for storing immediates of
      custom datatypes. The value of the number is stored in a double, which should be
      enough precision for now, for most custom types we will explore in the immediate
      future.
      
      In line with this change, we change the datatype lowering so that FloatImms are
      lowered to UInts of the appropriate size. Originally, this was going to be done
      by allowing the user to register a double->uint_<storage size>_t conversion
      which would be called at compile time to convert the value from the FloatImm to
      a UInt and store it in a UIntImm. After discussions with Tianqi, we decided to
      take the simpler route, and lower FloatImms just as we lower all other ops: by
      replacing them with Call nodes. In this case, presumably the user will Call out
      to a conversion function in their datatype library.
      
      The justification for this decision is due to the functionality added in #1486.
      This pull request adds the ability to load LLVM bytecode in at compile time.
      This applies in our case as follows:
       1. The user writes their custom datatype programs and registers their lowering
          functions in the same way we've been doing it so far. All operations over
          custom datatypes are lowered to Calls to the datatype library.
       2. The user compiles their datatype library to LLVM bytecode.
       3. At TVM compile time, the user loads the LLVM bytecode. Depending on how the
          datatype library is written, Clang should be able to perform constant
          folding over the custom datatype immediates, even if their conversions are
          done with calls to the library.
      
      Additionally adds test to test the FloatImm codepath.
      
      * Re-add a change I removed accidentally during rebase
      
      * Cleanup
      
      * Remove unnecessary TVM_DLLs
      
      * Add custom datatype utilities source file to Go runtime pack
      
      * Revert "Remove unnecessary TVM_DLLs"
      
      This reverts commit 4b742b99557fd3bf0ce6617f033c8b444b74eda4.
      
      * Mark bfloat code as TVM_DLL
      
      * Moves custom datatype runtime utilities to c_runtime_api.cc
      
      * Revert "Add custom datatype utilities source file to Go runtime pack"
      
      This reverts commit aecbcde0b2cc09a2693955b77037fe20f93b5bfd.
      
      * Move datatype parsing to its own function
      
      * Change comments
      
      * Remove unneeded function
      
      * Formatting
      
      * Formatting
      
      * Documentation
      
      * Add kCustomBegin, use it for checking for custom types
      
      * Documentation
      
      * Formatting
      
      * Move static definition to implementation
      
      * Remove comment
      
      * Decide toBeLowered before lowering arguments of Expr
      
      In the past, e.g. when lowering custom datatypes for an Add, we would lower a
      and b first, and then decide whether the resulting new Add needed to be lowered
      based on the (new) types of a and b. Now, instead, we need to check the types of
      a and b first (to see if they're custom types), and then lower them (so they'll
      become non-custom types), and then lower the new Add.
      
      * Revert "Move datatype parsing to its own function"
      
      This reverts commit d554a5881afcf69af1c070d882a7651022703a09.
      
      This broke parsing. Will figure this out later. There isn't a really clean way
      to separate this out given how the rest of the function is written.
      
      * Replace comment
      
      * Documentation
      
      * Remove comment and TVM_DLL
      
      * Better error messages
      
      * Remove artifact of rebase
      
      * Separate datatypes parsing to its own function
      
      * Add \returns
      
      * Comment changes; add TODO
      
      * Refactor tests
      Gus Smith committed
  4. 14 May, 2019 2 commits
  5. 13 May, 2019 4 commits
  6. 11 May, 2019 4 commits
  7. 10 May, 2019 3 commits
  8. 09 May, 2019 5 commits
    • add more syncs (#3151) · 9089e196
      Leyuan Wang committed
    • [Relay][Runtime] Implementation of Relay VM (#2889) · 4332b0aa
      * Implement the virtual machine
      
      Co-Authored-By: wweic <ipondering.weic@gmail.com>
      
      * Fix rebase build issues
      
      * Reorganize vm.py and fix allocator bug
      
      * Remove compiler
      
      * Remove tests
      
      * Remove backend/vm/vm.cc too
      
      * Fix docs
      
      * Fix doc
      
      * Fix doc
      
      * Add vm docs
      
      * Remove change to dead_code.cc
      
      * Remove Relay logging
      
      * Remove reduce
      
      * Update include/tvm/runtime/vm.h
      
      Co-Authored-By: jroesch <roeschinc@gmail.com>
      
      * Reformat
      
      * Update include/tvm/runtime/vm.h
      
      Co-Authored-By: jroesch <roeschinc@gmail.com>
      
      * Address feedback
      
      * Update include/tvm/runtime/vm.h
      
      Co-Authored-By: jroesch <roeschinc@gmail.com>
      
      * Apply suggestions from code review
      
      Co-Authored-By: jroesch <roeschinc@gmail.com>
      
      * Fix a couple outstanding comments
      
      * Last couple comments
      
      * Update include/tvm/runtime/vm.h
      
      Co-Authored-By: jroesch <roeschinc@gmail.com>
      
      * Address code review feedback
      
      * Fix final comment
      
      * Address comments
      
      * Error reporting and example
      
      * add Const
      
      * Explicitly delete copy assignment operator
      
      * Fix rebase
      
      * Pass 3rd arg to fusion
      Jared Roesch committed
    • [Relay][Op] Adaptive pooling (#3085) · 147ea3b0
      * Add topi adaptive_pool
      
      * Use adaptive_pool to compute global_pool
      
      * Add relay adaptive pool2d
      
      * Fix lint
      
      * Fix typo
      
      * Minor change
      
      * Change support level to 10
      
      * Add contrib
      
      * Remove global pool schedule
      
      * Add contrib module
      
      * Fix lint
      
      * Update doc
      
      * Update doc
      Yao Wang committed
  9. 08 May, 2019 7 commits
  10. 05 May, 2019 2 commits