2026 Applied Science Internship - Reinforcement Learning & Optimization (Machine Learning) - United States, PhD Student Science Recruiting Job at Amazon.com Services LLC, Seattle, WA

RHhhL1ZjUFRpUEVRMDZUL2RyRFJ4RXkycnc9PQ==
  • Amazon.com Services LLC
  • Seattle, WA

Job Description

DESCRIPTION

Unlock the Future with Amazon Science!

Calling all visionary minds passionate about the transformative power of machine learning! Amazon is seeking boundary-pushing graduate student scientists who can turn revolutionary theory into awe-inspiring reality. Join our team of visionary scientists and embark on a journey to revolutionize the field by harnessing the power of cutting-edge techniques in bayesian optimization, time series, multi-armed bandits and more.

At Amazon, we don't just talk about innovation – we live and breathe it. You'll conducting research into the theory and application of deep reinforcement learning. You will work on some of the most difficult problems in the industry with some of the best product managers, scientists, and software engineers in the industry. You will propose and deploy solutions that will likely draw from a range of scientific areas such as supervised, semi-supervised and unsupervised learning, reinforcement learning, advanced statistical modeling, and graph models.

Throughout your journey, you'll have access to unparalleled resources, including state-of-the-art computing infrastructure, cutting-edge research papers, and mentorship from industry luminaries. This immersive experience will not only sharpen your technical skills but also cultivate your ability to think critically, communicate effectively, and thrive in a fast-paced, innovative environment where bold ideas are celebrated.

Join us at the forefront of applied science, where your contributions will shape the future of AI and propel humanity forward. Seize this extraordinary opportunity to learn, grow, and leave an indelible mark on the world of technology.

Amazon has positions available for Machine Learning Applied Science Internships in, but not limited to Arlington, VA; Bellevue, WA; Boston, MA; New York, NY; Palo Alto, CA; San Diego, CA; Santa Clara, CA; Seattle, WA.

Key job responsibilities
We are particularly interested in candidates with expertise in: Optimization, Programming/Scripting Languages, Statistics, Reinforcement Learning, Causal Inference, Large Language Models, Time Series, Graph Modeling, Supervised/Unsupervised Learning, Deep Learning, Predictive Modeling

In this role, you will work alongside global experts to develop and implement novel, scalable algorithms and modeling techniques that advance the state-of-the-art in areas at the intersection of Reinforcement Learning and Optimization within Machine Learning. You will tackle challenging, groundbreaking research problems on production-scale data, with a focus on developing novel RL algorithms and applying them to complex, real-world challenges.

The ideal candidate should possess the ability to work collaboratively with diverse groups and cross-functional teams to solve complex business problems. A successful candidate will be a self-starter, comfortable with ambiguity, with strong attention to detail and the ability to thrive in a fast-paced, ever-changing environment.

A day in the life
- Develop scalable, efficient, automated processes for large scale data analyses, model development, model validation and model implementation.
- Design, development and evaluation of highly innovative ML models for solving complex business problems.
- Research and apply the latest ML techniques and best practices from both academia and industry.
- Think about customers and how to improve the customer delivery experience.
- Use and analytical techniques to create scalable solutions for business problems.

BASIC QUALIFICATIONS

- Are enrolled in a PhD
- Are 18 years of age or older
- Work 40 hours/week minimum and commit to 12 week internship maximum
- Can relocate to where the internship is based
- Experience programming in Java, C++, Python or related language
- Experience with one or more of the following: Optimization, Programming/Scripting Languages, Statistics, Reinforcement Learning, Causal Inference, Large Language Models, Time Series, Graph Modeling, Supervised/Unsupervised Learning, Deep Learning, Predictive Modeling

Job Tags

Full time, Internship, Relocation,

Similar Jobs

Parkway Family Mazda

Pre-Owned Sales Representative Job at Parkway Family Mazda

SUMMARY Pre-owned vehicle salesESSENTIAL DUTIES include the following. Other duties may be assigned.Sells and delivers a minimum...  ...parts, fumes or airborne particles, and toxic or caustic chemicals. The noise level in the work environment is usually moderate.... 

Domino's Franchise

Delivery Driver - 2302 Cadet Dr Job at Domino's Franchise

 ...! Job Description Earn Money while having fun. NEVER GO HUNGRY! Delivery drivers can earn up to $25-$30+hourly. Cash paid daily! Opportunity for advancement to management positions. Delivery drivers must be at least 18yrs old. Have a reliable car/truck with... 

ecomaids of Greater Omaha

House Cleaner Job at ecomaids of Greater Omaha

 ...Schedules - reliable hours, Overtime hours available on nights and weekend if desired ~ Reliable company vehicles ~ All-natural cleaning products that are healthy for you to use on a daily basis ~ Company supplied High-quality cleaning equipment and supplies... 

Outstanding Resource Pvt Ltd

Telesales Consultant Job at Outstanding Resource Pvt Ltd

 ...This is an excellent opportunity for sales professionals and entry-level candidates to kickstart their careers in sales and make a...  ...Do you have a High School Diploma? Do you have a life or a health insurance license? (Not required) Who is your current or latest employer... 

Leidos

Electronics Engineer Job at Leidos

 ...could have imagined. We Want You! The National Airspace Systems Integration Support (NISC) program at Leidos is seeking an Electronics Engineer to provide support to the Federal Aviation Administration (FAA) Central Service Area - Engineering Services Group located in...