The world's fastest Python random data generation - with NUMA optimization and zero-copy interface
Project description
dgen-py
The worlds fastest Python random data generation - with NUMA optimization and zero-copy interface
Features
- 🚀 Blazing Fast: 10 GB/s per core, up to 300 GB/s verified
- ⚡ Ultra-Fast Allocation:
create_bytearrays()for 1,280x faster pre-allocation than Python (NEW in v0.2.0) - 🎯 Controllable Characteristics: Configurable deduplication and compression ratios
- 🔄 Reproducible Data: Seed parameter for identical data generation (v0.1.6) with dynamic reseeding (v0.1.7)
- 🔬 Multi-Process NUMA: One Python process per NUMA node for maximum throughput
- 🐍 True Zero-Copy: Python buffer protocol with direct memory access (no data copying)
- 📦 Streaming API: Generate terabytes of data with constant 32 MB memory usage
- 🧵 Thread Pool Reuse: Created once, reused across all operations
- 🛠️ Built with Rust: Memory-safe, production-quality implementation
Performance
Streaming Benchmark - 100 GB Test
Comparison of streaming random data generation methods on a 12-core system:
| Method | Throughput | Speedup vs Baseline | Memory Required |
|---|---|---|---|
| os.urandom() (baseline) | 0.34 GB/s | 1.0x | Minimal |
| NumPy Multi-Thread | 1.06 GB/s | 3.1x | 100 GB RAM* |
| Numba JIT Xoshiro256++ (streaming) | 57.11 GB/s | 165.7x | 32 MB RAM |
| dgen-py v0.1.5 (streaming) | 58.46 GB/s | 169.6x | 32 MB RAM |
* NumPy requires full dataset in memory (10 GB tested, would need 100 GB for 100 GB dataset)
Key Findings:
- dgen-py matches Numba's streaming performance (58.46 vs 57.11 GB/s)
- 55x faster than NumPy while using 3,000x less memory (32 MB vs 100 GB)
- Streaming architecture: Can generate unlimited data with only 32 MB RAM
- Per-core throughput: 4.87 GB/s (12 cores)
⚠️ Critical for Storage Testing: ONLY dgen-py supports configurable deduplication and compression ratios. All other methods (os.urandom, NumPy, Numba) generate purely random data with maximum entropy, making them unsuitable for realistic storage system testing. Real-world storage workloads require controllable data characteristics to test deduplication engines, compression algorithms, and storage efficiency—capabilities unique to dgen-py.
Multi-NUMA Scalability - GCP Emerald Rapid
Scalability testing on Google Cloud Platform Intel Emerald Rapid systems (1024 GB workload, compress=1.0):
| Instance | Physical Cores | NUMA Nodes | Aggregate Throughput | Per-Core | Scaling Efficiency |
|---|---|---|---|---|---|
| C4-8 | 4 | 1 (UMA) | 36.26 GB/s | 9.07 GB/s | Baseline |
| C4-16 | 8 | 1 (UMA) | 86.41 GB/s | 10.80 GB/s | 119% |
| C4-32 | 16 | 1 (UMA) | 162.78 GB/s | 10.17 GB/s | 112% |
| C4-96 | 48 | 2 (NUMA) | 248.53 GB/s | 5.18 GB/s | 51%* |
* NUMA penalty: 49% per-core reduction on multi-socket systems, but still achieves highest absolute throughput
Key Findings:
- Excellent UMA scaling: 112-119% efficiency on single-NUMA systems (super-linear due to larger L3 cache)
- Per-core performance: 10.80 GB/s on C4-16 (3.0x improvement vs dgen-py v0.1.3's 3.60 GB/s)
- Compression tradeoff: compress=2.0 provides 1.3-1.5x speedup, but makes data compressible (choose based on your test requirements, not performance)
- Storage headroom: Even modest 8-core systems exceed 86 GB/s (far beyond typical storage requirements)
See docs/BENCHMARK_RESULTS_V0.1.5.md for complete analysis
Installation
From PyPI (Recommended)
pip install dgen-py
Default PyPI wheels are built without NUMA/hwloc support so they remain broadly compatible across Linux distributions.
Python Version Support
- Supported: Python 3.11+
- Not supported: Python 3.10 and older
Enable NUMA Support (Source Build)
NUMA-aware topology and NUMA-local allocation require building from source with the numa feature.
# System deps (Linux)
# Ubuntu/Debian:
sudo apt-get install libudev-dev libhwloc-dev
# RHEL/CentOS/Fedora:
sudo yum install systemd-devel hwloc-devel
# Build from source with NUMA enabled
pip install --no-binary dgen-py dgen-py \
--config-settings=build-args="--features python-bindings,numa,thread-pinning"
System Requirements
For source builds with NUMA support (Linux only):
# Ubuntu/Debian
sudo apt-get install libudev-dev libhwloc-dev
# RHEL/CentOS/Fedora
sudo yum install systemd-devel hwloc-devel
Note: Without NUMA/hwloc, dgen-py still delivers high performance on UMA and single-node cloud systems. The limitation is on true multi-NUMA systems where NUMA-local memory placement and topology-aware optimization are not available.
Quick Start
Version 0.2.0: Ultra-Fast Bulk Buffer Allocation 🎉
For scenarios where you need to pre-generate all data in memory before writing, use create_bytearrays() for 1,280x faster allocation than Python list comprehension:
import dgen_py
import time
# Pre-generate 24 GB in 32 MB chunks
total_size = 24 * 1024**3 # 24 GB
chunk_size = 32 * 1024**2 # 32 MB chunks
num_chunks = total_size // chunk_size # 768 chunks
# ✅ FAST: Rust-optimized allocation (7-11 ms for 24 GB!)
start = time.perf_counter()
chunks = dgen_py.create_bytearrays(count=num_chunks, size=chunk_size)
alloc_time = time.perf_counter() - start
print(f"Allocation: {alloc_time*1000:.1f} ms @ {(total_size/(1024**3))/alloc_time:.0f} GB/s")
# Fill buffers with high-performance generation
gen = dgen_py.Generator(size=total_size, numa_mode="auto", max_threads=None)
start = time.perf_counter()
for buf in chunks:
gen.fill_chunk(buf)
gen_time = time.perf_counter() - start
print(f"Generation: {gen_time:.2f}s @ {(total_size/(1024**3))/gen_time:.1f} GB/s")
# Now write to storage...
# for buf in chunks:
# f.write(buf)
Performance (12-core system):
Allocation: 10.9 ms @ 2204 GB/s # 1,280x faster than Python!
Generation: 1.59s @ 15.1 GB/s
Performance comparison:
| Method | Allocation Time (24 GB) | Speedup |
|---|---|---|
Python [bytearray(size) for _ in ...] |
12-14 seconds | 1x (baseline) |
dgen_py.create_bytearrays() |
7-11 ms | 1,280x faster |
When to use:
- ✅ Pre-generation pattern (DLIO benchmark, batch data loading)
- ✅ Need all data in RAM before writing
- ❌ Streaming - use
Generator.fill_chunk()with reusable buffer instead (see below)
Why it's fast:
- Uses Python C API (
PyByteArray_Resize) directly from Rust - For 32 MB chunks, glibc automatically uses
mmap(≥128 KB threshold) - Zero-copy kernel page allocation, no heap fragmentation
- Bypasses Python interpreter overhead
Version 0.1.7: Dynamic Seed Changes
Dynamically change the random seed to reset the data stream or create alternating patterns without recreating the Generator:
import dgen_py
gen = dgen_py.Generator(size=100 * 1024**3, seed=1111)
buffer = bytearray(10 * 1024**2)
# Generate data with seed A
gen.set_seed(1111)
gen.fill_chunk(buffer) # Pattern A
# Switch to seed B
gen.set_seed(2222)
gen.fill_chunk(buffer) # Pattern B
# Back to seed A - resets the stream!
gen.set_seed(1111)
gen.fill_chunk(buffer) # SAME as first chunk (pattern A)
Use cases:
- RAID stripe testing with alternating patterns per drive
- Multi-phase AI/ML workloads (different patterns for metadata/payload/footer)
- Complex reproducible benchmark scenarios
- Low-overhead stream reset (no Generator recreation)
Version 0.1.6: Reproducible Data Generation
Generate identical data across runs for reproducible benchmarking and testing:
import dgen_py
# Reproducible mode - same seed produces identical data
gen1 = dgen_py.Generator(size=10 * 1024**3, seed=12345)
gen2 = dgen_py.Generator(size=10 * 1024**3, seed=12345)
# ⇒ gen1 and gen2 produce IDENTICAL data streams
# Non-deterministic mode (default) - different data each run
gen3 = dgen_py.Generator(size=10 * 1024**3) # seed=None (default)
Use cases:
- 🔬 Reproducible benchmarking: Compare storage systems with identical workloads
- ✅ Consistent testing: Same test data across CI/CD pipeline runs
- 🐛 Debugging: Regenerate exact data streams for issue investigation
- 📊 Compliance: Verifiable data generation for audits
Streaming API (Basic Usage)
For unlimited data generation with constant memory usage, use the streaming API:
import dgen_py
import time
# Generate 100 GB with streaming (only 32 MB in memory at a time)
gen = dgen_py.Generator(
size=100 * 1024**3, # 100 GB total
dedup_ratio=1.0, # No deduplication
compress_ratio=1.0, # Incompressible data
numa_mode="auto", # Auto-detect NUMA topology
max_threads=None # Use all available cores
)
# Create single reusable buffer
buffer = bytearray(gen.chunk_size)
# Stream data in chunks (zero-copy, parallel generation)
start = time.perf_counter()
while not gen.is_complete():
nbytes = gen.fill_chunk(buffer)
if nbytes == 0:
break
# Write to file/network: buffer[:nbytes]
duration = time.perf_counter() - start
print(f"Throughput: {(100 / duration):.2f} GB/s")
Example output (8-core system):
Throughput: 86.41 GB/s
When to use:
- ✅ Generating very large datasets (> available RAM)
- ✅ Consistent low memory footprint (32 MB)
- ✅ Network streaming, continuous data generation
System Information
import dgen_py
info = dgen_py.get_system_info()
if info:
print(f"NUMA nodes: {info['num_nodes']}")
print(f"Physical cores: {info['physical_cores']}")
print(f"Deployment: {info['deployment_type']}")
Advanced Usage
Multi-Process NUMA (For Multi-NUMA Systems)
For maximum throughput on multi-socket systems, use one Python process per NUMA node with process affinity pinning.
See python/examples/benchmark_numa_multiprocess_v2.py for complete implementation.
Key architecture:
- One Python process per NUMA node
- Process pinning via
os.sched_setaffinity()to local cores - Local memory allocation on each NUMA node
- Synchronized start with multiprocessing.Barrier
Results:
- C4-96 (48 cores, 2 NUMA nodes): 248.53 GB/s aggregate
- C4-32 (16 cores, 1 NUMA node): 162.78 GB/s with 112% scaling efficiency
Chunk Size Optimization
Default chunk size is automatically optimized for your system. You can override if needed:
gen = dgen_py.Generator(
size=100 * 1024**3,
chunk_size=64 * 1024**2 # Override to 64 MB
)
Newer CPUs (Emerald Rapid, Sapphire Rapids) with larger L3 cache benefit from 64 MB chunks.
Deduplication and Compression Ratios
Performance vs Test Accuracy Tradeoff:
# FAST: Incompressible data (1.0x baseline)
gen = dgen_py.Generator(
size=100 * 1024**3,
dedup_ratio=1.0, # No dedup (no performance impact)
compress_ratio=1.0 # Incompressible data
)
# FASTER: More compressible (1.3-1.5x speedup)
gen = dgen_py.Generator(
size=100 * 1024**3,
dedup_ratio=1.0, # No dedup (no performance impact)
compress_ratio=2.0 # 2:1 compressible data
)
Important: Higher compress_ratio values improve generation performance (1.3-1.5x faster) BUT make the data more compressible, which may not represent your actual workload:
- compress_ratio=1.0: Incompressible data (realistic for encrypted files, compressed archives)
- compress_ratio=2.0: 2:1 compressible data (realistic for text, logs, uncompressed images)
- compress_ratio=3.0+: Highly compressible data (may not be realistic)
Choose based on YOUR test requirements, not performance numbers. If testing storage with compression enabled, use compress_ratio=1.0 to avoid inflating storage efficiency metrics.
Note: dedup_ratio has zero performance impact (< 1% variance)
NUMA Modes
# Auto-detect topology (recommended)
gen = dgen_py.Generator(..., numa_mode="auto")
# Force UMA (single-socket)
gen = dgen_py.Generator(..., numa_mode="uma")
# Manual NUMA node binding (multi-process only)
gen = dgen_py.Generator(..., numa_node=0) # Bind to node 0
Architecture
Zero-Copy Implementation
Python buffer protocol with direct memory access:
- No data copying between Rust and Python
- GIL released during generation (true parallelism)
- Memoryview creation < 0.001ms (verified zero-copy)
Parallel Generation
- 4 MiB internal blocks distributed across all cores
- Thread pool created once, reused for all operations
- Xoshiro256++ RNG (5-10x faster than ChaCha20)
- Optimal for L3 cache performance
NUMA Optimization
- Multi-process architecture (one process per NUMA node)
- Local memory allocation on each node
- Local core affinity (no cross-node traffic)
- Automatic topology detection via hwloc
Use Cases
- Storage benchmarking: Generate realistic test data at 40-188 GB/s
- Network testing: High-throughput data sources
- AI/ML profiling: Simulate data loading pipelines
- Compression testing: Validate compressor behavior with controlled ratios
- Deduplication testing: Test dedup systems with known ratios
License
Dual-licensed under MIT OR Apache-2.0
Credits
- Built with PyO3 and Maturin
- Uses hwlocality for NUMA topology detection
- Xoshiro256++ RNG from rand crate
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