Protocol Buffers - Google's data interchange format (grpc依赖)
https://developers.google.com/protocol-buffers/
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444 lines
16 KiB
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<!--- |
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This document contains embedded graphviz diagrams inside ```dot blocks. |
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To convert it to rendered form using render.py: |
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$ ./render.py wrapping-upb.in.md |
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You can also live-preview this document with all diagrams using Markdown Preview Enhanced |
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in Visual Studio Code: |
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https://marketplace.visualstudio.com/items?itemName=shd101wyy.markdown-preview-enhanced |
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---> |
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# Building a protobuf library on upb |
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This is a guide for creating a new protobuf implementation based on upb. It |
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starts from the beginning and walks you through the process, highlighting |
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some important design choices you will need to make. |
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## Overview |
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A protobuf implementation consists of two main pieces: |
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1. a code generator, run at compile time, to turn `.proto` files into source |
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files in your language (we will call this "zlang", assuming an extension of ".z"). |
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2. a runtime component, which implements the wire format and provides the data |
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structures for representing protobuf data and metadata. |
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<br/> |
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```dot {align="center"} |
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digraph { |
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rankdir=LR; |
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newrank=true; |
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node [style="rounded,filled" shape=box] |
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"foo.proto" -> protoc; |
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"foo.proto" [shape=folder]; |
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protoc [fillcolor=lightgrey]; |
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protoc -> "protoc-gen-zlang"; |
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"protoc-gen-zlang" -> "foo.z"; |
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"protoc-gen-zlang" [fillcolor=palegreen3]; |
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"foo.z" [shape=folder]; |
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labelloc="b"; |
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label="Compile Time"; |
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} |
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``` |
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<br/> |
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```dot {align="center"} |
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digraph { |
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newrank=true; |
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node [style="rounded,filled" shape=box fillcolor=lightgrey] |
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"foo.z" -> "zlang/upb glue (FFI)"; |
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"zlang/upb glue (FFI)" -> "upb (C)"; |
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"zlang/upb glue (FFI)" [fillcolor=palegreen3]; |
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labelloc="b"; |
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label="Runtime"; |
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} |
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``` |
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The parts in green are what you will need to implement. |
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Note that your code generator (`protoc-gen-zlang`) does *not* need to generate |
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any C code (eg. `foo.c`). While upb itself is written in C, upb's parsers and |
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serializers are fully table-driven, which means there is never any need or even |
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benefit to generating C code for each proto. upb is capable of full-speed |
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parsing even when schema data is loaded at runtime from strings embedded into |
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`foo.z`. This is a key benefit of upb compared with C++ protos, which have |
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traditionally relied on generated parsers in `foo.pb.cc` files to achieve full |
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parsing speed, and suffered a ~10x speed penalty in the parser when the schema |
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data was loaded at runtime. |
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## Prerequisites |
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There are a few things that the language runtime must provide in order to wrap |
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upb. |
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1. **FFI**: To wrap upb, your language must be able to call into a C API |
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through a Foreign Function Interface (FFI). Most languages support FFI in |
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some form, either through "native extensions" (in which you write some C |
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code to implement new methods in your language) or through a direct FFI (in |
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which you can call into regular C functions directly from your language |
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using a special library). |
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2. **Finalizers, Destructors, or Cleaners**: The runtime must provide |
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finalizers or destructors of some sort. There must be a way of triggering a |
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call to a C function when the language garbage collects or otherwise |
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destroys an object. We don't care much whether it is a finalizer, a |
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destructor, or a cleaner, as long as it gets called eventually when the |
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object is destroyed. upb allocates memory in C space, and a finalizer is our |
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only way of making sure that memory is freed and does not leak. |
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3. **HashMap with weak values**: (optional) This is not a strong requirement, |
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but it is sometimes helpful to have a global hashmap with weak values to act |
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as a `upb_msg* -> wrapper` object cache. We want the values to be weak (not |
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the keys). There is some question about whether we want to continue to use |
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this pattern going forward. |
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## Reflection vs. MiniTables |
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The first key design decision you will need to make is whether your generated |
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code will access message data via reflection or minitables. Generally more |
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dynamic languages will want to use reflection and more static languages will |
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want to use minitables. |
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### Reflection |
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Reflection-based data access makes the most sense in highly dynamic language |
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interpreters, where method dispatch is generally resolved via strings and hash |
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table lookups. |
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In such languages, you can often implement a special method like `__getattr__` |
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(Python) or `method_missing` (Ruby) that receives the method name as a string. |
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Using upb's reflection, you can look up a field name using the method name, |
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thereby using a hash table belonging to upb instead of one provided by the |
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language. |
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```python |
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class FooMessage: |
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# Written in Python for illustration, but in practice we will want to |
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# implement this in C for speed. |
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def __getattr__(self, name): |
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field = FooMessage.descriptor.fields_by_name[name] |
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return field.get_value(self) |
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``` |
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Using this design, we only need to attach a single `__getattr__` method to each |
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message class, instead of defining a getter/setter for each field. In this way |
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we can avoid duplicating hash tables between upb and the language interpreter, |
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reducing memory usage. |
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Reflection-based access requires loading full reflection at runtime. Your |
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generated code will need to embed serialized descriptors (ie. a serialized |
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message of `descriptor.proto`), which has some amount of size overhead and |
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exposes all message/field names to the binary. It also forces a hash table |
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lookup in the critical path of field access. If method calls in your language |
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already have this overhead, then this is no added burden, but for statically |
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dispatched languages it would cause extra overhead. |
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If we take this path to its logical conclusion, all class creation can be |
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performed fully dynamically, using only a binary descriptor as input. The |
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"generated code" becomes little more than an embedded descriptor plus a |
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library call to load it. Python has recently gone down this path. Generated |
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code now looks something like this: |
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```python |
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# main_pb2.py |
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from google3.net.proto2.python.internal import builder as _builder |
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from google3.net.proto2.python.public import descriptor_pool as _descriptor_pool |
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DESCRIPTOR = _descriptor_pool.Default().AddSerializedFile("<...>") |
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_builder.BuildMessageAndEnumDescriptors(DESCRIPTOR, globals()) |
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_builder.BuildTopDescriptorsAndMessages(DESCRIPTOR, 'google3.main_pb2', globals()) |
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``` |
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This is all the runtime needs to create all of the classes for messages defined |
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in that serialized descriptor. This code has no pretense of readability, but |
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a separate `.pyi` stub file provides a fully expanded and readable list of all |
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methods a user can expect to be available: |
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```python |
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# main_pb2.pyi |
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from google3.net.proto2.python.public import descriptor as _descriptor |
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from google3.net.proto2.python.public import message as _message |
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from typing import ClassVar as _ClassVar, Optional as _Optional |
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DESCRIPTOR: _descriptor.FileDescriptor |
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class MyMessage(_message.Message): |
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__slots__ = ["my_field"] |
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MY_FIELD_FIELD_NUMBER: _ClassVar[int] |
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my_field: str |
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def __init__(self, my_field: _Optional[str] = ...) -> None: ... |
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``` |
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To use reflection-based access: |
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1. Load and access descriptor data using the interfaces in google3/third_party/upb/upb/def.h. |
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2. Access message data using the interfaces in google3/third_party/upb/upb/reflection.h. |
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### MiniTables |
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MiniTables are a "lite" schema representation that are much smaller that |
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reflection. MiniTables omit names, options, and almost everything else from the |
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`.proto` file, retaining only enough information to parse and serialize binary |
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format. |
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MiniTables can be loaded into upb through *MiniDescriptors*. MiniDescriptors are |
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a byte-oriented format that can be embedded into your generated code and passed |
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to upb to construct MiniTables. MiniDescriptors only use printable characters, |
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and therefore do not require escaping when embedding them into generated code |
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strings. Overall the size savings of MiniDescriptors are ~60x compared with |
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regular descriptors. |
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MiniTables and MiniDescriptors are a natural choice for compiled languages that |
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resolve method calls at compile time. For languages that are sometimes compiled |
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and sometimes interpreted, there might not be an obvious choice. When a method |
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call is statically bound, we want to remove as much overhead as possible, |
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especially from accessors. In the extreme case, we can use unsafe APIs to read |
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raw memory at a known offset: |
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```java |
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// Example of a maximally-optimized generated accessor. |
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class FooMessage { |
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public long getBarField() { |
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// Using Unsafe should give us performance that is comparable to a |
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// native member access. |
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// |
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// The constant "24" is obtained from upb at compile time. |
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sun.misc.Unsafe.getLong(this.ptr, 24); |
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} |
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} |
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``` |
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This design is very low-level, and tightly couples the generated code to one |
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specific version of the schema and compiler. A slower but safer version would |
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look up a field by field number: |
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```java |
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// Example of a more loosely-coupled accessor. |
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class FooMessage { |
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public long getBarField() { |
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// The constant "2" is the field number. Internally this will look |
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// up the number "2" in the MiniTable and use that to read the value |
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// from the message. |
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upb.glue.getLong(this.ptr, 2); |
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} |
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} |
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``` |
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One downside of MiniTables is that they cannot support parsing or serializing |
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to JSON or TextFormat, because they do now know the field names. It should be |
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possible to generate reflection data "on the side", into separate generated |
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code files, so that reflection is only pulled in if it is being used. However |
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APIs to do this do not exist yet. |
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To use MiniTable-based access: |
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1. Load and access MiniDescriptors data using the interfaces in google3/third_party/upb/upb/mini_table.h. |
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2. Access message data using the interfaces in google3/third_party/upb/upb/mini_table_accessors.h. |
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## Memory Management |
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One of the core design challenges when wrapping upb is memory management. Every |
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language runtime will have some memory management system, whether it is |
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garbage collection, reference counting, manual memory management, or some hybrid |
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of these. upb is written in C and uses arenas for memory management, but upb is |
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designed to integrate with a wide variety of memory management schemes, and it |
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provides a number of tools for making this integration as smooth as possible. |
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### Arenas |
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upb defines data structures in C to represent messages, arrays (repeated |
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fields), and maps. A protobuf message is a hierarchical tree of these objects. |
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For example, a relatively simple protobuf tree might look something like this: |
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```dot {align="center"} |
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digraph G { |
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rankdir=LR; |
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newrank=true; |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=1, ordering=out] |
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upb_msg -> upb_msg2; |
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upb_msg -> upb_array; |
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upb_msg [label="upb Message" fillcolor=1] |
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upb_msg2 [label="upb Message"]; |
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upb_array [label="upb Array"] |
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} |
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``` |
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All upb objects are allocated from an arena. An arena lets you allocate objects |
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individually, but you cannot free individual objects; you can only free the arena |
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as a whole. When the arena is freed, all of the individual objects allocated |
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from that arena are freed together. |
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```dot {align="center"} |
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digraph G { |
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rankdir=LR; |
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newrank=true; |
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subgraph cluster_0 { |
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label = "upb Arena" |
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graph[style="rounded,filled" fillcolor=gray] |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=1, ordering=out] |
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upb_msg -> upb_array; |
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upb_msg -> upb_msg2; |
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upb_msg [label="upb Message" fillcolor=1] |
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upb_msg2 [label="upb Message"]; |
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upb_array [label="upb Array"]; |
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} |
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} |
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``` |
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In simple cases, the entire tree of objects will all live in a single arena. |
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This has the nice property that there cannot be any dangling pointers between |
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objects, since all objects are freed at the same time. |
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However upb allows you to create links between any two objects, whether or |
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not they are in the same arena. The library does not know or care what arenas |
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the objects are in when you create links between them. |
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```dot {align="center"} |
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digraph G { |
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rankdir=LR; |
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newrank=true; |
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subgraph cluster_0 { |
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label = "upb Arena 1" |
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graph[style="rounded,filled" fillcolor=gray] |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=1, ordering=out] |
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upb_msg -> upb_array; |
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upb_msg -> upb_msg2; |
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upb_msg [label="upb Message 1" fillcolor=1] |
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upb_msg2 [label="upb Message 2"]; |
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upb_array [label="upb Array"]; |
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} |
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subgraph cluster_1 { |
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label = "upb Arena 2" |
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graph[style="rounded,filled" fillcolor=gray] |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=1] |
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upb_msg3; |
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} |
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upb_msg2 -> upb_msg3; |
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upb_msg3 [label="upb Message 3"]; |
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} |
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``` |
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When objects are on separate arenas, it is the user's responsibility to ensure |
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that there are no dangling pointers. In the example above, this means Arena 2 |
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must outlive Message 1 and Message 2. |
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### Integrating GC with upb |
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In languages with automatic memory management, the goal is to handle all of the |
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arenas behind the scenes, so that the user does not have to manage them manually |
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or even know that they exist. |
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We can achieve this goal if we set up the object graph in a particular way. The |
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general strategy is to create wrapper objects around all of the C objects, |
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including the arena. Our key goal is to make sure the arena wrapper is not |
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GC'd until all of the C objects in that arena have become unreachable. |
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For this example, we will assume we are wrapping upb in Python: |
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```dot {align="center"} |
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digraph G { |
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rankdir=LR; |
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newrank=true; |
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compound=true; |
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subgraph cluster_1 { |
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label = "upb Arena" |
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graph[style="rounded,filled" fillcolor=gray] |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=1, ordering=out] |
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upb_msg -> upb_array [style=dashed]; |
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upb_msg -> upb_msg2 [style=dashed]; |
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upb_msg [label="upb Message" fillcolor=1] |
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upb_msg2 [label="upb Message"]; |
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upb_array [label="upb Array"] |
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dummy [style=invis] |
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} |
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subgraph cluster_python { |
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node [style="rounded,filled" shape=box colorscheme=accent8 fillcolor=2] |
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peripheries=0 |
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py_upb_msg [label="Python Message"]; |
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py_upb_msg2 [label="Python Message"]; |
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py_upb_arena [label="Python Arena"]; |
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} |
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py_upb_msg -> upb_msg [style=dashed]; |
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py_upb_msg2->upb_msg2 [style=dashed]; |
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py_upb_msg2 -> py_upb_arena [color=springgreen4]; |
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py_upb_msg -> py_upb_arena [color=springgreen4]; |
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py_upb_arena -> dummy [lhead=cluster_1, color=red]; |
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{ |
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rank=same; |
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upb_msg; |
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py_upb_msg; |
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} |
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{ |
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rank=same; |
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upb_array; |
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upb_msg2; |
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py_upb_msg2; |
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} |
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{ rank=same; |
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dummy; |
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py_upb_arena; |
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} |
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dummy->upb_array [style=invis]; |
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dummy->upb_msg2 [style=invis]; |
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subgraph cluster_01 { |
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node [shape=plaintext] |
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peripheries=0 |
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key [label=<<table border="0" cellpadding="2" cellspacing="0" cellborder="0"> |
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<tr><td align="right" port="i1">raw ptr</td></tr> |
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<tr><td align="right" port="i2">unique ptr</td></tr> |
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<tr><td align="right" port="i3">shared (GC) ptr</td></tr> |
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</table>>] |
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key2 [label=<<table border="0" cellpadding="2" cellspacing="0" cellborder="0"> |
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<tr><td port="i1"> </td></tr> |
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<tr><td port="i2"> </td></tr> |
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<tr><td port="i3"> </td></tr> |
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</table>>] |
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key:i1:e -> key2:i1:w [style=dashed] |
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key:i2:e -> key2:i2:w [color=red] |
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key:i3:e -> key2:i3:w [color=springgreen4] |
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} |
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key2:i1:w -> upb_msg [style=invis]; |
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{ |
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rank=same; |
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key; |
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upb_msg; |
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} |
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} |
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``` |
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In this example we have three different kinds of pointers: |
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* **raw ptr**: This is a pointer that carries no ownership. |
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* **unique ptr**: This is a pointer has *unique ownership* of the target. The owner |
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will free the target in its destructor (or finalizer, or cleaner). There can |
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only be a single unique pointer to a given object. |
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* **shared (GC) ptr**: This is a pointer that has *shared ownership* of the |
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target. Many objects can point to the target, and the target will be deleted |
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only when all such references are gone. In a runtime with automatic memory |
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management (GC), this is a reference that participates in GC. In Python such |
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references use reference counting, but in other VMs they may use mark and |
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sweep or some other form of GC instead. |
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The Python Message wrappers have only raw pointers to the underlying message, |
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but they contain a shared pointer to the arena that will ensure that the raw |
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pointer remains valid. Only when all message wrapper objects are destroyed |
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will the Python Arena become unreachable, and the upb arena ultimately freed. |
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### Links between arenas with "Fuse" |
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The design given above works well for objects that live in a single arena. But |
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what if a user wants to create a link between two objects in different arenas? |
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TODO |
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## UTF-8 vs. UTF-16 |
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TODO |
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## Object Cache |
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TODO
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