Today,
at AWS re:Invent, Amazon Web Services, Inc. (AWS) announced two new initiatives designed to make
machine learning more accessible for anyone interested in learning and
experimenting with the technology. The AWS AI & ML Scholarship is
a new education and scholarship program aimed at preparing
underrepresented and underserved students globally for careers in
machine learning. The program uses AWS DeepRacer and the new AWS
DeepRacer Student League to teach students foundational machine learning
concepts by giving them hands-on experience training machine learning
models for autonomous race cars, while providing educational content
centered on machine learning fundamentals. AWS is further increasing
access to machine learning through Amazon SageMaker Studio Lab, which
gives everyone access to a no-cost version of Amazon SageMaker-an AWS
service that helps customers build, train, and deploy machine learning
models.
"The
two initiatives we are announcing today are designed to open up
educational opportunities in machine learning to make it more widely
accessible to anyone who is interested in the technology," said Swami
Sivasubramanian, Vice President of Amazon Machine Learning at AWS.
"Machine learning will be one of the most transformational technologies
of this generation. If we are going to unlock the full potential of this
technology to tackle some of the world's most challenging problems, we
need the best minds entering the field from all backgrounds and walks of
life. We want to inspire and excite a diverse future workforce through
this new scholarship program and break down the cost barriers that
prevent many from getting started with machine learning."
New
$10 million education and scholarship program is designed to prepare
underrepresented and underserved students globally for careers in
machine learning
The
World Economic Forum estimates that technological advances and
automation will create 97 million new technology jobs by 2025, including
in the field of artificial intelligence and machine learning. While the
job opportunities in technology are growing, diversity is lagging
behind in science and technology careers. Making educational resources
available to anyone interested in technology is critical to encouraging a
more robust, diverse pipeline of people in artificial intelligence and
machine learning careers. The new AWS AI & ML Scholarship aims to
help underrepresented and underserved high school and college students
learn foundational machine learning concepts and prepare them for
careers in artificial intelligence and machine learning. In addition to
no-cost access to dozens of hours of free machine learning model
training and educational materials, 2,000 qualifying students from
underrepresented and underserved communities will win a scholarship for
the AI Programming with Python Udacity Nanodegree program, designed to
give scholarship recipients the programming tools and techniques
fundamental to machine learning. Graduates from the first Nanodegree
program will be invited to take a technical assessment. Five hundred
students who receive the highest scores in this assessment will earn a
second Udacity Nanodegree program scholarship on deep learning and
machine learning engineering to help further prepare them for a career
in artificial intelligence and machine learning. These top 500 students
will also have access to mentorship opportunities from tenured Amazon
and Intel technology experts for career insights and advice.
Delivered
in collaboration with Intel and supported by the talent transformation
platform Udacity, the AWS AI & ML Scholarship program allows
students from around the world to access dozens of hours of free
training modules and tutorials on the basics of machine learning and its
real-world applications. Students can use AWS DeepRacer to turn theory
into hands-on action by learning how to train machine learning models to
power a virtual race car. Students who successfully complete
educational modules by passing knowledge-check quizzes, meet certain AWS
DeepRacer lap time performance targets, and submit an essay will be
considered for Udacity Nanodegree program scholarships. Students can
also put their virtual race cars to the test in the new AWS DeepRacer
Student League. The AWS DeepRacer Student League helps people of all
skill levels learn how to build machine learning models with a fully
autonomous 1/18th scale
race car driven by machine learning, a 3D racing simulator, and a
global competition. AWS DeepRacer has been used by enterprises like
Capital One, BMW, Deloitte, JP Morgan Chase, Accenture, and Liberty
Mutual to teach their employees to build, train, and deploy machine
learning models in a hands-on way. To get started with the AWS AI &
ML Scholarship, visit awsaimlscholarship.com.
Amazon
SageMaker Studio Lab provides no-cost access to a machine learning
development environment to put machine learning in the hands of everyone
Amazon
SageMaker Studio Lab offers a free version of Amazon SageMaker, which
is used by researchers and data scientists worldwide to build, train,
and deploy machine learning models quickly. Amazon SageMaker Studio Lab
removes the need to have an AWS account or provide billing details to
get up and running with machine learning on AWS. Users simply sign up
with an email address through a web browser, and Amazon SageMaker Studio
Lab provides access to a machine learning development environment.
Amazon SageMaker Studio Lab provides unlimited user sessions that
include 15 gigabytes of persistent storage to store projects and up to
12 hours of CPU and four hours of GPU compute for training machine
learning models at no cost. There are no cloud resources to build,
scale, or manage with Amazon SageMaker Studio Lab, so users can start,
stop, and restart working on machine learning projects as easily as
closing and opening a laptop. When users are done experimenting and want
to take their ideas to production, they can easily export their machine
learning projects to Amazon SageMaker Studio to deploy and scale their
models on AWS. Amazon SageMaker Studio Lab can be used as a no-cost
learning environment for students or a no-cost prototyping environment
for data scientists where everyone can quickly and easily start building
and training machine learning models with no financial obligation or
long-term commitments. To learn more about Amazon SageMaker Studio Lab,
visit aws.amazon.com/sagemaker/studio-lab.
Earlier
this year, Amazon announced a new Leadership Principle: Success and
Scale Bring Broad Responsibility. AWS is scaling and investing in
initiatives to live up to this new Leadership Principle, including
Amazon's commitment to provide 29 million people with access to free
cloud computing skills training by 2025, science, technology,
engineering, and math (STEM) education programs for young learners
including Amazon Future Engineer, AWS Girls' Tech Day, and AWS GetIT, as
well as collaborations with colleges and universities. Now, AWS is
making it easier for more people from underrepresented groups and
underserved populations to get started with machine learning-with free
education, scholarships, and access to the same machine learning
technology used by the world's leading startups, research institutions,
and enterprises. The two initiatives announced today further advance
Amazon's efforts to make education and training opportunities widely
accessible.
AWS
and Intel have a 15-year relationship dedicated to developing,
building, and supporting cloud services that are designed to manage cost
and complexity, accelerate business outcomes, and scale to meet current
and future computing requirements. "As an industry, we must do more to
create a diverse and inclusive tech workforce," said Michelle Johnston
Holthaus, Executive Vice President and GM of the Sales, Marketing, and
Communications Group at Intel. "Intel is proud to support initiatives
like the AWS AI & ML Scholarship program, which aligns with our
commitment to provide more access to STEM opportunities for
underrepresented groups and helps diversify the future generation of
machine learning practitioners. What makes this education and
scholarship program unique is that students are given access to a rich
set of learning materials at the outset. This is critical to really move
the needle. Learning isn't contingent on winning but instead part of
the process."
Girls
in Tech is a global nonprofit organization dedicated to eliminating the
gender gap in tech. "Driving diversity in machine learning requires
intentional programs that create opportunities and break down barriers
like the new AWS AI & ML Scholarship program," said Adriana
Gascoigne, Founder and CEO of Girls in Tech. "Progress in bringing more
women and underrepresented communities into the field of machine
learning will only be achieved if everyone works together to close the
diversity gap. Girls in Tech is glad to see multi-faceted programs like
the AWS AI & ML Scholarship to help close the gap in machine
learning education and open career potential among these groups."
Hugging
Face is an AI community for building, training, and deploying state of
the art models powered by the reference open source in machine learning.
"At Hugging Face, our mission is to democratize state of the art
machine learning," said Jeff Boudier, Director of Product Marketing at
Hugging Face. "With Amazon SageMaker Studio Lab, AWS is doing just that
by enabling anyone to learn and experiment with ML through a web
browser, without the need for a high-powered PC or a credit card to get
started. This makes ML more accessible and easier to share with the
community. We are excited to be part of this launch and contribute
Hugging Face transformers examples and resources to make ML even more
accessible!"
Santa
Clara University's mission with the Department of Finance is to educate
students, at the undergraduate and graduate levels, to serve their
organizations and society in the Jesuit tradition. "Amazon SageMaker
Studio Lab will help my students learn the building blocks of machine
learning by removing the cloud configuration steps required to get
started. Now, in my natural language processing classes, students have
more time to enhance their skills," said Sanjiv Das, Professor of
Finance and Data Science at Santa Clara University. "Amazon SageMaker
Studio Lab enables students to onboard to AWS quickly, work and
experiment for a few hours, and easily pick up where they left off.
Amazon SageMaker Studio Lab brings the ease of use of Jupyter notebooks
in the cloud to both beginner and advanced students studying machine
learning."
University
of Pennsylvania Engineering is the birthplace of the modern computer.
It was there that ENIAC, the world's first electronic, large-scale,
general-purpose digital computer, was developed in 1946. For over 70
years, the field of computer science at Penn has been marked by exciting
innovations. "One of the hardest parts about programming with machine
learning is configuring the environment to build. Students usually have
to choose the compute instances, security polices, and provide a credit
card," said Dan Roth, Professor of Computer and Information Science at
University of Pennsylvania. "My students needed Amazon SageMaker Studio
Lab to abstract away all of the complexity of setup and provide a free
powerful sandbox to experiment. This lets them write code immediately
without needing to spend time configuring the ML environment."