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142 lines
9.0 KiB
Markdown
142 lines
9.0 KiB
Markdown
# Introduction
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The current Nock implementation is a limitation on the performance of Urbit. When performance of code is not limited by
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algorithmic concerns, generally the only approach to increasing performance is to jet the code in question. For code such
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as arithmetic, encryption, or bitwise operations this is the correct approach. For code with more complex control flow or
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memory management behavior, writing a jet is a difficult and error-prone process.
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It is possible for interpreted languages to be made very fast. Evaluation of a Nock-9 currently takes many tens or even a
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few hundreds of microseconds, which in a deep and heterogenous call trace such as that of Ames quickly adds up to multiple
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milliseconds to process one event. Memory management overhead after nock evaluation completes adds >1 millisecond, and
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memory management overhead during evaluation is harder to measure but likely to be significant.
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Functional programming language implementations mostly do not mutate, they allocate. This means that many allocations are
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are discarded quickly. Nock is extreme about this: there is no possible way to mutate in Nock (with the only exception being
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a case of optimization where there is no sharing). Therefore allocation should be fast, and garbage should not incur
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management overhead.
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Further, while a computed-goto bytecode interpreter is far faster than naive structural recursion over the noun tree or a
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switch-cased interpreter, it still requires a computed jump in between every instruction, and does not admit well-known
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low-level optimizations.
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Urbit is a personal server. Nock is the language in which that personal server's software is provided. Browsers are personal
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clients, and Javascript is the language in which browser software is provided. Javascript at one time had a reputation for
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slowness due to its interpreted nature. But modern Javascript is quite fast, and this has had a qualitative, not simply
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quantitative, effect on the types of software written for the browser platform.
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Making Nock much faster than it is currently would plausibly have the same effect for Urbit.
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It would provide immediate benefits in the form of Ames throughput and JSON handling for client interaction.
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Further, applications not presently feasible on Urbit would rapidly become feasible.
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This proposal also includes changes which would allow for incremental snapshotting and large looms, thus removing other
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limitations to implementing applications for Urbit on Urbit.
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# Ideas
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## Lexical memory management
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The current worker uses (explicit/manual) reference counting to manage allocated objects, and adds objects
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scavenged on reclamation to a free list. This means that evaluation is subject to the overhead of reference counting all
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allocated objects and of maintaining free lists when dead objects are scavenged. For a language which allocates at the
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rate Nock (or really any functional language) does, this is not optimal.
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However, the reference-counting scheme has the desirable property of having predictable, lexically-mappable behavior for
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memory management. This behavior means that two runs of the same nock program produce the same code traces, even within
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memory management code.
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This could be achieved similarly by the following system.
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Two 'call' stacks are maintained. Perhaps they share a memory arena and grow towards each other, analogous to roads without
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heaps. Logically, they are one, interleaved stack, that is, a push to the top of the (logical) stack pushes onto the opposite
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stack from the current top of the (logical) stack.
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Noun allocation is performed by extending the stack frame and writing the noun on the stack. There is no heap*.
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When it is time to pop a stack frame and return a value to the control represented by the previous stack frame,
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a limited form of copying collection is performed. The return value is copied to return-target stack frame, which
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because of the interleaved stack, also has free space adjacent. Descendant nouns referenced by the current noun are
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copied in their turn, and pointers updated.
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Note that only references to the returning frame need to initiate copies, and there can be no references to data in
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the returning frame from outside the current frame, because there is no mutation and no cyclical references in Nock.
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So the copied nouns can reference nouns "further up" the stack, but nouns further up the stack cannot reference nouns
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in the current stack frame.
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### Optimization: hash-indexed heap for large nouns
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While for most computation this scheme should be an improvement, it can result in repeated copies up-the-stack
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of large nouns. Nouns over a certain size can be ejected to an external heap indexed by a hashed table, thus providing
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de-duplication and eliminating the need to copy.
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### Advantages
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* Allocation in this model is very fast as it involves only a pointer increment.
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* Allocations are compact (not interleaved with free space) and tend toward adjacency of relative structures,
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leading to generally better cache locality.
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* Pause times for 'collection' are lexically limited *by the size of the noun returned, less parts of the noun
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originating above the returning frame in lexical scope.*
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* The predictable and repeatable memory managment behavior is retained.
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* Memory management overhead is proportional to the size of nouns returned, *not* the size of
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discarded memory as is presently the case.
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* Memory management does not require any data structures to persist between collections.
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(Ephemeral memory for the collector can be allocated above the frame being scavenged.)
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* Big loom/snapshots: the implementation will use 64 bit pointers and thus remove the 2GB limit on loom/snapshot size.
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* Incremental snapshots: By ejecting the result of an arvo event computation to the hash table,
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incremental snapshotting can be done by storing only new hashes in the table.
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* Control structures for the interpreter itself are stored off the loom, simplifying it drastically.
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### Disadvantages
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* Copying and pointer adjustment could be expensive for large nouns (but see 'Optimization', above)
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* Slightly less eager scavenging than reference counting, allocations persist for a lexical scope.
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* Snapshots would not be compatible with current loom
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## Just-in-time compilation
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Nock code for execution is currently compiled at runtime to bytecode, which is interpreted by a looping interpreter using
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'computed gotos', that is, program addresses for labels are computed and stored in an array, which is indexed by the
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opcodes of the bytecode representation.
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This approach is much faster than a naive looping or recursive structural interpreter. It can be made faster, especially
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for code which is "hot" i.e. routinely called in rapid iteration.
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The approach is to keep a counter on a segment of bytecode which is incremented each time it is run. This counter would
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persist in between invocations of Arvo, so as to notice code which is 'hot' across the event loop. When a counter hits
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a threshhold, the bytecode is translated into an LLVM graph, which can be fed to LLVM and result in a function pointer.
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This function pointer is then stored as an "automatic jet" of the code.
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Of course, the JIT compiler should also respect jet hints and link in existing jets, as LLVM is not likely to e.g.
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optimize the naive O((x, y)^2) `%+ add x y` invocation into code using the ALU.
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This approach of JIT compilation of hotspot code is used to great effect by Javascript in a context where
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code loading is ephemeral and the performance benefits from a particular invocation of the JIT compiler last only
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for the duration that a page is loaded. In a context where an Urbit persistently loops through much the same code for
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every event (until Arvo or an application are updated) the overhead could be amortized across an even greater number of
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invocations, over a longer period of time.
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An even simpler approach is to simply JIT every formula to machine code, with the assumption that most code
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will not be ephemeral.
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# Tasks
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## A new Mars
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***Time (core): 2 months***
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***Time (jet porting): ?***
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A new Mars implementation is written in Racket-derived C, containing a bytecode interpreter for Nock as well as snapshotting
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and event logging. The implementation initially uses Boehm GC or similar off-the-shelf memory management. Jets are supported by porting them to use an allocator supplied by the interpreter.
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## Lexical memory
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***Time: 3 months***
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The new mars implementation is converted to use lexical memory management as described above.
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Jets may allocate memory using an allocation function provided by the interpreter, and may use this
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memory as they wish, but *must not* mutate memory that they did not allocate.
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Question: is Beohm modular or flexible enough that we can use all or part of it to implement this strategy?
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## Jets-In-Time compilation of Nock bytecode
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***Time: 4 months***
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The new mars creates jets on-the-fly by using LLVM to compile Nock bytecode to machine code, whenever some metric of heat is reached (this metric is probably just a counter, as Urbit code will tend to be highly persistent rather than ephemeral).
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