5 min read
Feb. 28, 2024
5 tips for pursuing an AI/ML career at AWS
AWS employees who work in artificial intelligence (AI) and machine learning (ML) roles share what it takes to break into this emerging field and why AWS is an exciting place for talent with diverse skills and experiences
Written by the Life at AWS team
AWS AI/ML employees chat about their roles in Amazon's San Francisco office.
For those looking to pursue a career in artificial intelligence and machine learning (AI/ML), the journey doesn’t always follow a clearly defined path. As evidenced by the diverse experience of AWS employees working in AI/ML, there are many possible backgrounds and skill sets that can contribute to a successful career in this space.
AWS roles in AI/ML run the gamut, with careers spanning engineering, science, and product management across all professional levels, to name a few. We sat down with six AWS employees working in a variety of AI/ML roles to learn more about their education and experience and asked them to share advice for breaking into this popular field.
1.
Hone your soft skills
While specialized technical knowledge is often required for many AI and ML roles, AWS builders in this space stressed the importance of continuously honing your soft skills. Amazon’s 16 Leadership Principles provide a glimpse into our work culture, which has guided Amazon and AWS to build countless innovations over the years. AI and ML innovation is no different.
Roger Dahlstrom, a senior solutions architecture manager for AWS’s GenAI Labs, said some of the skills that are really important for generative AI roles are not technical at all.
“Some of them are being imaginative, some of them are being able to embrace ambiguity, some of them are being able to suspend thinking that something is impossible,” Dahlstrom said. “Some of them are being able to formulate instructions really, really well, which is not a purely technical skill.”
2.
Discover what drives you
AI/ML enabled Ashley Gordon, a senior marketing manager for strategic accounts, to retain her passion for mission-driven work while opening a new world of career possibilities. She previously worked in the nonprofit world, telling the stories of more than 300 chimpanzees for scientific research. Then she discovered she could continue to pursue her mission-focused efforts by helping people around the world through technology.
“I encourage individuals to really step forward in their imagination to prove that they can have an incredible career,” she said. “What I have found is that AWS has afforded me plenty of opportunities to help people know more about technology, but also to change people’s lives.”
3.
Learn and be curious
One of Amazon’s Leadership Principles is Learn and Be Curious, which highlights the need for successful leaders to never stop learning and always seek to improve themselves. It’s a characteristic that hiring managers look for when interviewing candidates because it’s essential to Amazon’s Day 1 culture and continuous innovation.
“We’ve recruited talent that has the ability to learn and quickly pivot to new challenges, and I think that’s really one of the best things about AWS. We focus on what you can do in the future, particularly when that future is unknown or uncertain,” said Brooke Jamieson, a senior developer advocate in AWS Developer Relations. “If you have the ability to learn new skills, develop new capabilities quickly, it's a super exciting place to be because you can ride that wave as it is developing.”
Jamieson is passionate about sharing her thirst for knowledge with others, too. She has authored blogs about "the ABCs of Generative AI" and "How to Learn Generative AI from Scratch" to help other builders unlock their curiosity and potential.
Diego Socolinsky, a senior applied science manager on the AWS Generative AI Innovation Center team, said that learning new skills and developing new talents are part of what makes AWS such an inspiring place to work and grow your career.
“My team members are not just constantly learning new things because they're interested, but they're also constantly sharing them with each other,” he said. “I find that my team are my teachers. I learn from every single one of them every day, and I know they learn from each other every day. If one of my teammates recommends something for me to look at or to read, it's almost guaranteed that's going to be useful and interesting.”
4.
Find the courage to challenge yourself
Some find their way to AI/ML by viewing new challenges as opportunities. That’s how Bianca Buckridee evolved her career from a bank call center to kindergarten teacher to financial services before landing in the AI/ML space. She now oversees marketing for the AWS Generative AI Innovation Center.
Taking risks and pushing through fear enabled her to launch innovative social media customer service applications in the banking industry.
“I would say pushing through your own fear is probably the most important part of this all,” she said. “You can do it, sometimes you just have to really force yourself to get in there. For me, my guiding principle is, ‘if it terrifies me, I absolutely have to do it.’ That’s what I recommend—find the way to push through that fear.”
5.
Own your career journey
The excitement of groundbreaking innovation is what attracted Sam Lisowski, a senior account manager for Gen AI Startups, to pursue an AI/ML career path. She studied an entirely different domain in school—Spanish writing and marketing—but her stepfather encouraged her to get into tech.
“He pulled me aside and said, ‘Sam, you’re an incredibly curious person and you’re always looking to dive in further,” she said. “I joined Amazon because I was looking to further explore technology and mentorship, be at the forefront of innovation, and with a large provider that was disrupting in the tech space.”
Dahlstrom also points out how well AWS is structured for career growth. He’s held multiple roles since he first joined AWS as a solutions architect in the enterprise space. He then went on to help build the AWS Data Lab, and from there helped start the resident architect program. Now, he’s one of the builders behind the AWS’s Gen AI Labs.
“If you want to build a career in generative AI at AWS, there are some skills everybody needs. One is to understand and embrace our Leadership Principles, which really are the way that we conduct ourselves and our business—from Earning Trust to Customer Obsession and all the others,” Dahlstrom said.
He recommends showing a willingness to be curious, embrace ambiguity, and really show that you can invest in yourself and learn. These are strong indicators that someone's going to be successful at AWS.
“Throughout my career at AWS, it’s been really seamless and fun to try that new thing—and skate where the puck is going—to keep on top of your career,” he said. “Keep investing in yourself, and trust that AWS is going to invest in you, as well.”
As these stories demonstrate, there are many routes one can take to arrive at an AI/ML career at AWS. Domain experience, communication skills, scientific knowledge, risk-taking, and even serendipity enabled these professionals to find their paths into AI and ML careers.
To meet generative AI training needs, AWS has launched free and low-cost courses for people of all roles and experience levels based on audience—developer and technical, and business and nontechnical. Amazon also aims to provide free AI skills training to 2 million people by 2025.
Unlock your potential in generative AI
Unlock your potential in generative AI If you’re passionate about cutting-edge technology and want to make a real impact, we’d love to hear from you. Check out our open roles in generative AI and apply today.
After reading this blog post, did your perception of AWS as an employer change?
Thank you for your response.
Interested in AWS?
We’re always glad to connect with talented people. Tell us a bit about what you want to do and we’ll keep you posted on relevant roles and what we’re building at AWS.
Stories we think you'll like
Article title orem ipsum dolor sit amet, consectetur adipiscing elit
Curabitur congue et est vel scelerisque. Mauris efficitur non metus id maximus. Donec aliquet, libero ac semper imperdiet, tortor eros facilisis velit, sit amet egestas tellus orci non libero.
Read more »
Article title orem ipsum dolor sit amet, consectetur adipiscing elit
Curabitur congue et est vel scelerisque. Mauris efficitur non metus id maximus. Donec aliquet, libero ac semper imperdiet, tortor eros facilisis velit, sit amet egestas tellus orci non libero.
Read more »
Article title orem ipsum dolor sit amet, consectetur adipiscing elit
Curabitur congue et est vel scelerisque. Mauris efficitur non metus id maximus. Donec aliquet, libero ac semper imperdiet, tortor eros facilisis velit, sit amet egestas tellus orci non libero.
Read more »