doc/src/manual/memory-management.md
Julia uses automatic memory management through its built-in garbage collector (GC). This section provides an overview of how Julia manages memory and how you can configure and optimize memory usage for your applications.
Julia features a garbage collector with the following characteristics:
The garbage collector automatically reclaims memory used by objects that are no longer reachable from your program, freeing you from manual memory management in most cases.
Julia uses a two-tier allocation strategy:
mallocThis hybrid approach optimizes for both allocation speed and memory efficiency, with the pool allocator providing fast allocation for the many small objects typical in Julia programs.
Julia's garbage collector is designed with the expectation that your system has adequate swap space configured. The GC uses heuristics that assume it can allocate memory beyond physical RAM when needed, relying on the operating system's virtual memory management.
If your system has limited or no swap space, you may experience out-of-memory errors during garbage collection. In such cases, you can use the --heap-size-hint option to limit Julia's memory usage.
You can provide a hint to Julia about the maximum amount of memory to use:
julia --heap-size-hint=4G # To set the hint to ~4GB
julia --heap-size-hint=50% # or to 50% of physical memory
The --heap-size-hint option tells the garbage collector to trigger collection more aggressively when approaching the specified limit. This is particularly useful in:
You can also set this via the JULIA_HEAP_SIZE_HINT environment variable:
export JULIA_HEAP_SIZE_HINT=2G
julia
Julia's garbage collector can leverage multiple threads to improve performance on multi-core systems.
By default, Julia uses multiple threads for garbage collection:
You can configure GC threading using:
julia --gcthreads=4,1 # 4 mark threads, 1 sweep thread
julia --gcthreads=8 # 8 mark threads, 0 sweep threads
Or via environment variable:
export JULIA_NUM_GC_THREADS=4,1
julia
For compute-intensive workloads:
For memory-intensive workloads:
@time and adjust thread counts accordinglyUse the @time macro to see memory allocation and GC overhead:
julia> @time some_computation()
2.123456 seconds (1.50 M allocations: 58.725 MiB, 17.17% gc time)
Enable detailed GC logging to understand collection patterns:
julia> GC.enable_logging(true)
julia> # Run your code
julia> GC.enable_logging(false)
This logs each garbage collection event with timing and memory statistics.
While generally not recommended, you can manually trigger garbage collection:
GC.gc() # Force a garbage collection
GC.enable(false) # Disable automatic GC (use with caution!)
GC.enable(true) # Re-enable automatic GC
Warning: Disabling GC can lead to memory exhaustion. Only use this for specific performance measurements or debugging.
The best way to minimize GC impact is to reduce unnecessary allocations:
x .+= y instead of x = x + y)StaticArrays.jl for small, fixed-size arraysconst for global constantsFor detailed guidance on profiling memory allocations and identifying performance bottlenecks, see the [Profiling](@ref man-profiling) section.
Julia works best when:
--heap-size-hintIf garbage collection is taking too much time:
--gcthreads settings--gcthreads=N,1While Julia's GC prevents most memory leaks, issues can still occur:
For more detailed information about Julia's garbage collector internals, see the Garbage Collection section in the Developer Documentation.