The Blosc development team is pleased to announce the final release for Python-Blosc2 3.0.0. Now, we will be producing conda(-forge) packages, as well as providing wheels for the most common platforms, as usual.
You can think of Python-Blosc2 3.0 as an extension of NumPy/numexpr that:
- Can deal with ndarrays compressed using first-class codecs & filters.
- Performs many kind of math expressions, including reductions, indexing...
- Supports broadcasting operations.
- Supports NumPy ufunc mechanism: mix and match NumPy and Blosc2 computations.
- Integrates with Numba and Cython via UDFs (User Defined Functions).
- Adheres to modern NumPy casting rules way better than numexpr.
- Computes expressions only when needed. They can also be stored for later use.
Install it with:
pip install blosc2==3.0.0 # if you prefer wheels conda install -c conda-forge python-blosc2 mkl # if you prefer conda and MKL
For more info, you can have a look at the release notes in:
https://github.com/Blosc/python-blosc2/releases
Code example:
from time import time import blosc2 import numpy as np # Create some data operands N = 20_000 a = blosc2.linspace(0, 1, N * N, dtype="float32", shape=(N, N)) b = blosc2.linspace(1, 2, N * N, shape=(N, N)) c = blosc2.linspace(-10, 10, N) # broadcasting is supported # Expression t0 = time() expr = ((a**3 + blosc2.sin(c * 2)) < b) & (c > 0) print(f"Time to create expression: {time()-t0:.5f}") # Evaluate while reducing (yep, reductions are in) along axis 1 t0 = time() out = blosc2.sum(expr, axis=1) t1 = time() - t0 print(f"Time to compute with Blosc2: {t1:.5f}") # Evaluate using NumPy na, nb, nc = a[:], b[:], c[:] t0 = time() nout = np.sum(((na**3 + np.sin(nc * 2)) < nb) & (nc > 0), axis=1) t2 = time() - t0 print(f"Time to compute with NumPy: {t2:.5f}") print(f"Speedup: {t2/t1:.2f}x") assert np.all(out == nout) print("All results are equal!")
This will output something like (using an Intel i9-13900X CPU here):
Time to create expression: 0.00033 Time to compute with Blosc2: 0.46387 Time to compute with NumPy: 2.57469 Speedup: 5.55x All results are equal!
See a more in-depth example, explaining why Python-Blosc2 is so fast, at:
https://www.blosc.org/python-blosc2/getting_started/overview.html#operating-with-ndarrays
The sources and documentation are managed through github services at:
https://github.com/Blosc/python-blosc2
Python-Blosc2 is distributed using the BSD license, see https://github.com/Blosc/python-blosc2/blob/main/LICENSE.txt for details.
Follow https://fosstodon.org/@Blosc2 to get informed about the latest developments.
Enjoy!
- Blosc Development Team Compress better, compute bigger