Many scientists rely on NumPy for its simplicity and strong CPU performance, but scaling beyond a single node is challenging. The researchers at SLAC need to process massive datasets under tight beam time constraints, often needing to modify code on the fly. This is where cuPyNumeric comes in—a drop-in replacement for NumPy that distributes work across CPUs and GPUs. With its familiar NumPy interface, cuPyNumeric makes it easy to scale computations without rewriting code, helping scientists focus on their research instead of debugging. It’s a great example of how the SciPy ecosystem enables cutting-edge science.
talk-data.com
Topic
Beam
Apache Beam
data_processing
batch_processing
stream_processing
1
tagged
Activity Trend
2
peak/qtr
2020-Q1
2026-Q1
Top Events
Data Engineering Podcast
3
O'Reilly Data Engineering Books
1
O'Reilly Data Science Books
1
Data Council Austin 2024 - Day 1
1
Airflow Summit 2023
1
Special Event: Beam Unconference organised by EEF, Alembic & bitcrowd
1
SciPy 2025
1
DATA MINER Big Data Europe Conference 2020
1
ADSP: Algorithms + Data Structures = Programs
1
Airflow Summit 2022
1
Data Science Retreat Demo Day #38
1
Making Data Simple
1
Filtering by:
SciPy 2025
×