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  • Hi.

  • My name is Sergey Maidanov.

  • In this video, we'll be talking about Python and how

  • it can help accelerate technical computing and machine learning.

  • I will also highlight some key features of Intel distribution

  • for Python.

  • Stay with me to learn more.

  • Python is known as a popular and powerful language

  • used across various application domains.

  • Being an interpreted language, it

  • has inherited performance constraints

  • limiting its usage to environments not very demanding

  • for performance.

  • Python's low efficiency in production environments

  • creates an organizational challenge

  • when companies and institutions need

  • to have two distinct things.

  • The one that prototypes in numerical model in Python

  • and the other, that it writes it in a different language

  • to deploy it in production.

  • Our team's mission at Intel is to bring Python performance up

  • when a prototype numerical or machine learning

  • model can be deployed in production without the need

  • to rewrite it in a different programming language.

  • Since our target customers [INAUDIBLE] with development

  • productivity, we aim to build performance on Intel

  • architecture out-of-the-box with relatively small effort

  • on the user side.

  • Let me briefly outline what Intel Python is

  • and how it brings performance efficiency.

  • We deliver pre-built Python along with the most

  • popular packages for numerical computing and data science,

  • such as NumPy, SciPy, and Scikit-learn

  • All are linked with Intel's performance

  • libraries such as MKL and DAAL for near-to-native code speeds.

  • Intel Python is also accompanied with productivity tools

  • such as Jupyter notebooks and [INAUDIBLE]..

  • It also shipped with Conda and PIP

  • package managers that allow you to seamlessly install

  • any other package available in the community.

  • For machine learning, our distribution

  • comes with optimized deep software, Caffe and Theano,

  • as well as classic machines learning libraries

  • like, Scikit-learn and pyDAAL.

  • We also package Cython and Numba for tuning performance hotspots

  • to native speeds.

  • And for [INAUDIBLE] performance, we

  • ship MPI for Py accelerated with Intel MPI.

  • Python distribution is available in a variety of options,

  • so don't forget to follow the links below to access it.

  • Let me illustrate the out-of-the-box performance

  • on the example of Black-Scholes formal application being run

  • in prototype environment on Intel Core-based processor

  • and in production on Intel Xeon and Xeon Phi servers.

  • The bars show performance that we

  • can attain with the stock NumPy, illustrated

  • by the dark blue bars, and with NumPy

  • shipped with Intel Python, represented by the light bars.

  • You can see that Intel's NumPy delivers

  • significantly better performance on Intel Core-based system.

  • But it scales on relatively small problem sizes

  • shown on the horizontal axis as the total number of options

  • to price.

  • This is typical for prototype environment.

  • You build and test your model on relatively small problem

  • first, and then deploy in production

  • to run it in full scale on powerful CPUs.

  • This graph shows how the same application

  • scales in production on the Intel Xeon-based server.

  • You can see that Intel Python delivers

  • much better performance and scales really well

  • to large problems.

  • Next, this graph shows how the same application scales

  • on Intel Xeon Phi-based system.

  • You can see that Intel Python delivers

  • even better performance on these highly parallel workload that

  • scales well for large enough problems.

  • Besides, Intel Python engineering,

  • we work with all major Python vendors and the open source

  • community to make these optimizations broadly

  • accessible.

  • And we encourage you to take advantage of Intel Python's

  • exceptional performance in your own numerical and machine

  • learning projects.

  • Every option to get Python is free

  • for academic and commercial use, so don't

  • forget to follow the links to access it.

  • And thanks for watching.

Hi.

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