Robotic semantic understanding image - 1
Technology developed by Amazon’s Robotics AI organization uses machine learning to map obstacles in warehouses and navigate more fluidly.

The quest to deploy autonomous robots within Amazon fulfillment centers

Company is testing a new class of robots that use artificial intelligence and computer vision to move freely throughout facilities.

Every day at Amazon fulfillment centers, more than half a million robots assist with stocking inventory, filling orders, and sorting packages for delivery. These robots follow directions provided by cloud-based algorithms and navigate along a grid of encoded markers. Virtual and physical barriers restrict their interactions with people, as well as where they can and cannot go.

Related content
Amazon fulfillment centers use thousands of mobile robots. To keep products moving, Amazon Robotics researchers have crafted unique solutions.

Now, the company is testing a new class of robots that use artificial intelligence and computer vision to roam freely throughout the fulfillment center (FC). They are helping associates accomplish tasks such as transporting oversized and unwieldy items through the shape-shifting maze of people, pallets, and pillars laid out across the fulfillment center floor, which can cover several dozen football fields.

“This is the first instance of AI being used in autonomous mobility at Amazon,” said Siddhartha Srinivasa, director of Amazon Robotics AI.

Experimental robot
An experimental robot being developed by Amazon’s Robotics AI organization is shown transporting containers filled with large packages through a warehouse environment.

The key to success for these new robots is what Amazon scientists call semantic understanding: the ability of robots to understand the three-dimensional structure of their world in a way that distinguishes each object in it and with knowledge about how each object behaves. With this understanding updated in real-time, the robots can safely navigate cluttered, dynamic environments.

For now, these robots are deployed in a few fulfillment centers where they are performing a narrow set of tasks. Researchers are exploring how to integrate these robots seamlessly and safely with the established processes that Amazon associates follow to fulfill millions of customer orders every day.

Related content
Teaching robots to stow items presents a challenge so large it was previously considered impossible — until now.

“We don’t develop technology for technology’s sake,” said Srinivasa. “We want to develop technology with an end goal in mind of empowering our associates to perform their activities better and safer. If we don’t integrate seamlessly end-to-end, then people will not use our technology.”

Robots today

About 10% of the items ordered from the Amazon Store are too long, wide, or otherwise unwieldy to fit in pods or on conveyor belts in many Amazon FCs. Today, FC employees transport these oversized items across the fulfillment center with pulleys and forklifts, navigating the ever-shifting maze of pods, pallets, robots, and people. The goal is to have robots handle this sometimes awkward task.

Robots in Amazon warehouse
Robots operating in Amazon warehouses must work in an always changing environment in close proximity to people, pallets, and other obstacles.

Ben Kadlec, perception lead for Amazon Robotics AI, is leading the development of the AI for the new robots. His team has deployed the robots for preliminary testing as autonomous transports for non-conveyable items.

To succeed, the robots need to be able to map their environment in real-time and understand what’s a stationary object — and what’s not — and use that information to make on-the-fly decisions about where to go, and how to avoid collisions to safely deliver the oversized items to their intended destinations.

“Navigating through those dynamic spaces is one aspect of the challenge,” he said. “The other one is working in close proximity with humans. That has to do with first recognizing that this thing in front of you is a human and it might move, you might need to keep a further distance from it to be safe, you might need to predict the direction the human is going.”

Teaching robots what’s what

We humans learn about the objects in our environment and how to safely navigate around them through curiosity and trial and error, along with the guidance of family, friends, and teachers. Kadlec and his team use machine learning.

The process begins with semantic understanding, or scene comprehension, based on data collected with the robot’s cameras and LIDAR.

“When the robot takes a picture of the world, it gets pixel values and depth measurements,” explained Lionel Gueguen, an Amazon Robotics AI machine learning applied scientist. “So, it knows at that distance, there are points in space — an obstacle of some sort. But that is the only knowledge the robot has without semantic understanding.”

Semantic understanding
The robot’s AI can differentiate between stationary and moving obstacles by layering semantics on top of sensor data so the robot behaves differently around people, pallets, or pillars in a warehouse.

Semantic understanding, he continued, is about teaching the robot to define that point in space — to determine if it belongs to a person, a pod, or a pillar. Or, if it’s a cable lying across the floor, or a forklift, or another robot.

When these labels are layered on top of the three-dimensional visual representation, the robot can then classify the point in space as stable or mobile and use that information to calculate the safest path to its destination.

“The navigation system does what we call semantically aware planning and navigation,” said Srinivasa. “The intuition is very simple: The way a robot moves around a trash can is probably going to be different from the way it navigates around a person or a precious asset. The only way the robot can know that is if it’s able to identify, ‘Oh that’s the trash can or that’s the person.’ And that’s what our AI is able to do.”

Related content
Preliminary tests show a prototype pinch-grasping robot achieved a 10-fold reduction in damage on items such as books and boxes.

To teach the robots semantics, scientists collected thousands of images taken by the robots as they navigated. Then, teams trace the shape of each object in each image and label it. Data scientists use this labeled data to train a machine learning model that segments and labels each object in the cameras’ field of view, a process known as semantic segmentation.

Layered on top of the semantic understanding are predictive models that teach the robot how to treat each object detected. When it detects a pillar, for example, it knows that pillars are static and will always be there. The team is working on another model to predict the paths of the people the robot encounters, and adjust course accordingly.

“Our work is improving the representation of static obstacles in the present as well as starting to model the near future of where the dynamic obstacles are going to be,” said Gueguen. “And that representation is passed down in such a way that the robot can plan accordingly to, on one hand, avoid static obstacles and on the other hand avoid dynamic obstacles.”

Fulfillment center deployment

Kadlec and his team have deployed a few dozen robots for preliminary testing and refinement at a few fulfillment centers. There, they are moving packages, collecting more data, and delivering insights to the science team on how to improve their real-world performance.

“It’s really exciting,” Kadlec said. “We can see the future scale that we want to be operating at. We see a clear path to being successful.”

Once Kadlec and his colleagues succeed in the full-scale deployment of autonomous mobile robot fleets that can transport precious, oversized packages, they can apply the learnings to additional robots.

“The particular problem we’re going after right now is pretty narrow, but the capability is very general,” Kadlec said.

The road ahead

Among the challenges of deploying free-roaming robots in Amazon fulfillment centers is making them acceptable to associates, Srinivasa noted.

“If the robot sneaks up on you really fast and hits the brake a millimeter before it touches you, that might be functionally safe, but not necessarily acceptable behavior,” he said. “And so, there’s an interesting question around how do you generate behavior that is not only safe and fluent, but also acceptable, that is also legible, which means that it’s human understandable.”

Related content
By managing and automating many of the steps involved in continual learning, Janus is helping Amazon’s latest robots adapt to a changing environment.

Amazon scientists who study human-robot interaction are developing techniques for robots to indicate their next move to other people without bright lights and loud sounds. One way they’re doing this is through imitation learning, where robots watch how people move around each other and learn to imitate the behavior.

The challenge of acceptance, Srinivasa said, is part of the broader challenge of seamlessly integrating robots into the process path at Amazon fulfillment centers.

“We are writing the book of robotics at Amazon,” he said, noting that it’s an ongoing process. “One of the joys of being in a place like Amazon is that we have direct access to and direct contact with our end users. We get to talk to our associates and ask them, ‘How do you feel about this?’ That internal customer feedback is critical to our development process.”

Research areas

Related content

BR, SP, Sao Paulo
Amazon launched the Generative AI Innovation Center in June 2023 to help AWS customers accelerate innovation and business success with Generative AI (https://press.aboutamazon.com/2023/6/aws-announces- generative -ai -innovation center). This Innovation Center provides opportunities to innovate in a fast-paced organization that contributes to breakthrough projects and technologies that are deployed across devices and the cloud. As a data scientist, you are proficient in designing and developing advanced generative AI solutions to solve diverse customer problems. You'll work with terabytes of text, images, and other types of data to solve real-world problems through Gen AI. You will work closely with account teams and ML strategists to define the use case, and with other ML scientists and engineers on the team to design experiments and find new ways to deliver customer value. The selected person will possess technical and customer-facing skills that will enable you to be part of the AWS technical team within our solution providers ecosystem/environment as well as directly to end customers. You will be able to lead discussion with customer and partner staff and senior management. A day in the life Here at AWS, we embrace our differences. We are committed to promoting our culture of inclusion. We have ten employee-led affinity groups, reaching 40,000 employees in more than 190 branches around the world. We have innovative benefit offerings and host annual and ongoing learning experiences, including our Conversations on Race and Ethnicity (CORE) and AmazeCon (gender diversity) conferences. Amazon's culture of inclusion is reinforced by our 16 Leadership Principles, which remind team members to seek diverse perspectives, learn and be curious, and build trust. About the team Work/life balance Our team highly values work-life balance. It's not about how many hours you spend at home or at work; it's about the flow you establish that brings energy to both parts of your life. We believe that finding the right balance between your personal and professional life is fundamental to lifelong happiness and fulfillment. We offer flexibility in working hours and encourage you to find your own work-life balance. Mentoring and career growth Our team is dedicated to supporting new members. We have a broad mix of experience levels and mandates and are building an environment that celebrates knowledge sharing and mentorship. Our senior members enjoy one-on-one guidance and thorough but gentle code reviews. We care about your career growth and strive to assign projects based on what will help each team member become a more well-rounded engineer and enable them to take on more complex tasks in the future. We are open to hiring candidates to work out of one of the following locations: Sao Paulo, SP, BRA
MX, DIF, Mexico City
Amazon launched the Generative AI Innovation Center (GAIIC) in Jun 2023 to help AWS customers accelerate the use of Generative AI to solve business and operational problems and promote innovation in their organization (https://press.aboutamazon.com/2023/6/aws-announces-generative-ai-innovation-center). GAIIC provides opportunities to innovate in a fast-paced organization that contributes to game-changing projects and technologies that get deployed on devices and in the cloud. As a Data Science Manager in GAIIC, you'll partner with technology and business teams to build new GenAI solutions that delight our customers. You will be responsible for directing a team of data scientists, deep learning architects, and ML engineers to build generative AI models and pipelines, and deliver state-of-the-art solutions to customer’s business and mission problems. Your team will be working with terabytes of text, images, and other types of data to address real-world problems. The successful candidate will possess both technical and customer-facing skills that will allow them to be the technical “face” of AWS within our solution providers’ ecosystem/environment as well as directly to end customers. You will be able to drive discussions with senior technical and management personnel within customers and partners, as well as the technical background that enables them to interact with and give guidance to data/research/applied scientists and software developers. The ideal candidate will also have a demonstrated ability to think strategically about business, product, and technical issues. Finally, and of critical importance, the candidate will be an excellent technical team manager, someone who knows how to hire, develop, and retain high quality technical talent. AWS Sales, Marketing, and Global Services (SMGS) is responsible for driving revenue, adoption, and growth from the largest and fastest growing small- and mid-market accounts to enterprise-level customers including public sector. The AWS Global Support team interacts with leading companies and believes that world-class support is critical to customer success. AWS Support also partners with a global list of customers that are building mission-critical applications on top of AWS services. A day in the life A day in the life Here at AWS, we embrace our differences. We are committed to furthering our culture of inclusion. We have ten employee-led affinity groups, reaching 40,000 employees in over 190 chapters globally. We have innovative benefit offerings, and host annual and ongoing learning experiences, including our Conversations on Race and Ethnicity (CORE) and AmazeCon (gender diversity) conferences. Amazon’s culture of inclusion is reinforced within our 16 Leadership Principles, which remind team members to seek diverse perspectives, learn and be curious, and earn trust. About the team Work/Life Balance Our team puts a high value on work-life balance. It isn’t about how many hours you spend at home or at work; it’s about the flow you establish that brings energy to both parts of your life. We believe striking the right balance between your personal and professional life is critical to life-long happiness and fulfillment. We offer flexibility in working hours and encourage you to find your own balance between your work and personal lives. Mentorship & Career Growth Our team is dedicated to supporting new members. We have a broad mix of experience levels and tenures, and we’re building an environment that celebrates knowledge sharing and mentorship. Our senior members enjoy one-on-one mentoring and thorough, but kind, code reviews. We care about your career growth and strive to assign projects based on what will help each team member develop into a better-rounded engineer and enable them to take on more complex tasks in the future. We are open to hiring candidates to work out of one of the following locations: Mexico City, DIF, MEX
US, CA, Palo Alto
The Amazon Search Mission Understanding (SMU) team is at the forefront of revolutionizing the online shopping experience through the Amazon search page. Our ambition extends beyond facilitating a seamless shopping journey; we are committed to creating the next generation of intelligent shopping assistants. Leveraging cutting-edge Large Language Models (LLMs), we aim to redefine navigation and decision-making in e-commerce by deeply understanding our users' shopping missions, preferences, and goals. By developing responsive and scalable solutions, we not only accomplish the shopping mission but also foster unparalleled trust among our customers. Through our advanced technology, we generate valuable insights, providing a guided navigation system into various search missions, ensuring a comprehensive and holistic shopping experience. Our dedication to continuous improvement through constant measurement and enhancement of the shopper experience is crucial, as we strategically navigate the balance between immediate results and long-term business growth. We are seeking an Applied Scientist who is not just adept in the theoretical aspects of Machine Learning (ML), Artificial Intelligence (AI), and Large Language Models (LLMs) but also possesses a pragmatic, hands-on approach to navigating the complexities of innovation. The ideal candidate will have a profound expertise in developing, deploying, and contributing to the next-generation shopping search engine, including but not limited to Retrieval-Augmented Generation (RAG) models, specifically tailored towards enhancing the Rufus application—an integral part of our mission to revolutionize shopping assistance. You will take the lead in conceptualizing, building, and launching groundbreaking models that significantly improve our understanding of and capabilities in enhancing the search experience. A successful applicant will display a comprehensive skill set across machine learning model development, implementation, and optimization. This includes a strong foundation in data management, software engineering best practices, and a keen awareness of the latest developments in distributed systems technology. We are looking for individuals who are determined, analytically rigorous, passionate about applied sciences, creative, and possess strong logical reasoning abilities. Join the Search Mission Understanding team, a group of pioneering ML scientists and engineers dedicated to building core ML models and developing the infrastructure for model innovation. As part of Amazon Search, you will experience the dynamic, innovative culture of a startup, backed by the extensive resources of Amazon.com (AMZN), a global leader in internet services. Our collaborative, customer-centric work environment spans across our offices in Palo Alto, CA, and Seattle, WA, offering a unique blend of opportunities for professional growth and innovation. Key job responsibilities Collaborate with cross-functional teams to identify requirements for ML model development, focusing on enhancing mission understanding through innovative AI techniques, including retrieval-Augmented Generation or LLM in general. Design and implement scalable ML models capable of processing and analyzing large datasets to improve search and shopping experiences. Must have a strong background in machine learning, AI, or computational sciences. Lead the management and experiments of ML models at scale, applying advanced ML techniques to optimize science solution. Serve as a technical lead and liaison for ML projects, facilitating collaboration across teams and addressing technical challenges. Requires strong leadership and communication skills, with a PhD in Computer Science, Machine Learning, or a related field. We are open to hiring candidates to work out of one of the following locations: Palo Alto, CA, USA | Seattle, WA, USA
US, WA, Seattle
Amazon is looking for a passionate, talented, and inventive Senior Applied Scientist with a strong machine learning background to help build industry-leading language technology. Our mission is to provide a delightful experience to Amazon’s customers by pushing the envelope in Natural Language Processing (NLP), Generative AI, Large Language Model (LLM), Natural Language Understanding (NLU), Machine Learning (ML), Retrieval-Augmented Generation, Responsible AI, Agent, Evaluation, and Model Adaptation. As part of our AI team in Amazon AWS, you will work alongside internationally recognized experts to develop novel algorithms and modeling techniques to advance the state-of-the-art in human language technology. Your work will directly impact millions of our customers in the form of products and services, as well as contributing to the wider research community. You will gain hands on experience with Amazon’s heterogeneous text and structured data sources, and large-scale computing resources to accelerate advances in language understanding. The Science team at AWS Bedrock builds science foundations of Bedrock, which is a fully managed service that makes high-performing foundation models available for use through a unified API. We are adamant about continuously learning state-of-the-art NLP/ML/LLM technology and exploring creative ways to delight our customers. In our daily job we are exposed to large scale NLP needs and we apply rigorous research methods to respond to them with efficient and scalable innovative solutions. At AWS Bedrock, you’ll experience the benefits of working in a dynamic, entrepreneurial environment, while leveraging AWS resources, one of the world’s leading cloud companies and you’ll be able to publish your work in top tier conferences and journals. We are building a brand new team to help develop a new NLP service for AWS. You will have the opportunity to conduct novel research and influence the science roadmap and direction of the team. Come join this greenfield opportunity! Amazon Bedrock team is part of Utility Computing (UC) About the team AWS Utility Computing (UC) provides product innovations — from foundational services such as Amazon’s Simple Storage Service (S3) and Amazon Elastic Compute Cloud (EC2), to consistently released new product innovations that continue to set AWS’s services and features apart in the industry. As a member of the UC organization, you’ll support the development and management of Compute, Database, Storage, Internet of Things (Iot), Platform, and Productivity Apps services in AWS, including support for customers who require specialized security solutions for their cloud services. Diverse Experiences AWS values diverse experiences. Even if you do not meet all of the qualifications and skills listed in the job description, we encourage candidates to apply. If your career is just starting, hasn’t followed a traditional path, or includes alternative experiences, don’t let it stop you from applying. Why AWS? Amazon Web Services (AWS) is the world’s most comprehensive and broadly adopted cloud platform. We pioneered cloud computing and never stopped innovating — that’s why customers from the most successful startups to Global 500 companies trust our robust suite of products and services to power their businesses. Inclusive Team Culture Here at AWS, it’s in our nature to learn and be curious. Our employee-led affinity groups foster a culture of inclusion that empower us to be proud of our differences. Ongoing events and learning experiences, including our Conversations on Race and Ethnicity (CORE) and AmazeCon (gender diversity) conferences, inspire us to never stop embracing our uniqueness. Mentorship & Career Growth We’re continuously raising our performance bar as we strive to become Earth’s Best Employer. That’s why you’ll find endless knowledge-sharing, mentorship and other career-advancing resources here to help you develop into a better-rounded professional. Work/Life Balance We value work-life harmony. Achieving success at work should never come at the expense of sacrifices at home, which is why we strive for flexibility as part of our working culture. When we feel supported in the workplace and at home, there’s nothing we can’t achieve in the cloud. Hybrid Work We value innovation and recognize this sometimes requires uninterrupted time to focus on a build. We also value in-person collaboration and time spent face-to-face. Our team affords employees options to work in the office every day or in a flexible, hybrid work model near one of our U.S. Amazon offices. We are open to hiring candidates to work out of one of the following locations: Seattle, WA, USA
US, WA, Seattle
Alexa Personality Fundamentals is chartered with infusing Alexa's trustworthy, reliable, considerate, smart, and playful personality. Come join us in creating the future of personality forward AI here at Alexa. Key job responsibilities As a Data Scientist with Alexa Personality, your work will involve machine learning, Large Language Model (LLM) and other generative technologies. You will partner with engineers, applied scientists, voice designers, and quality assurance to ensure that Alexa can sing, joke, and delight our customers in every interaction. You will take a central role in defining our experimental roadmap, sourcing training data, authoring annotation criteria and building automated benchmarks to track the improvement of our Alexa's personality. We are open to hiring candidates to work out of one of the following locations: Bellevue, WA, USA | Seattle, WA, USA
US, CA, Palo Alto
The Amazon Search Mission Understanding (SMU) team is at the forefront of revolutionizing the online shopping experience through the Amazon search page. Our ambition extends beyond facilitating a seamless shopping journey; we are committed to creating the next generation of intelligent shopping assistants. Leveraging cutting-edge Large Language Models (LLMs), we aim to redefine navigation and decision-making in e-commerce by deeply understanding our users' shopping missions, preferences, and goals. By developing responsive and scalable solutions, we not only accomplish the shopping mission but also foster unparalleled trust among our customers. Through our advanced technology, we generate valuable insights, providing a guided navigation system into various search missions, ensuring a comprehensive and holistic shopping experience. Our dedication to continuous improvement through constant measurement and enhancement of the shopper experience is crucial, as we strategically navigate the balance between immediate results and long-term business growth. We are seeking an Applied Scientist who is not just adept in the theoretical aspects of Machine Learning (ML), Artificial Intelligence (AI), and Large Language Models (LLMs) but also possesses a pragmatic, hands-on approach to navigating the complexities of innovation. The ideal candidate will have a profound expertise in developing, deploying, and contributing to the next-generation shopping search engine, including but not limited to Retrieval-Augmented Generation (RAG) models, specifically tailored towards enhancing the Rufus application—an integral part of our mission to revolutionize shopping assistance. You will take the lead in conceptualizing, building, and launching groundbreaking models that significantly improve our understanding of and capabilities in enhancing the search experience. A successful applicant will display a comprehensive skill set across machine learning model development, implementation, and optimization. This includes a strong foundation in data management, software engineering best practices, and a keen awareness of the latest developments in distributed systems technology. We are looking for individuals who are determined, analytically rigorous, passionate about applied sciences, creative, and possess strong logical reasoning abilities. Join the Search Mission Understanding team, a group of pioneering ML scientists and engineers dedicated to building core ML models and developing the infrastructure for model innovation. As part of Amazon Search, you will experience the dynamic, innovative culture of a startup, backed by the extensive resources of Amazon.com (AMZN), a global leader in internet services. Our collaborative, customer-centric work environment spans across our offices in Palo Alto, CA, and Seattle, WA, offering a unique blend of opportunities for professional growth and innovation. Key job responsibilities Collaborate with cross-functional teams to identify requirements for ML model development, focusing on enhancing mission understanding through innovative AI techniques, including retrieval-Augmented Generation or LLM in general. Design and implement scalable ML models capable of processing and analyzing large datasets to improve search and shopping experiences. Must have a strong background in machine learning, AI, or computational sciences. Lead the management and experiments of ML models at scale, applying advanced ML techniques to optimize science solution. Serve as a technical lead and liaison for ML projects, facilitating collaboration across teams and addressing technical challenges. Requires strong leadership and communication skills, with a PhD in Computer Science, Machine Learning, or a related field. We are open to hiring candidates to work out of one of the following locations: Palo Alto, CA, USA | Seattle, WA, USA
US, WA, Bellevue
The Artificial General Intelligence (AGI) team is looking for a passionate, talented, and inventive Applied Science Manager with a strong deep learning background, to lead the development of industry-leading technology with multimodal systems. Key job responsibilities As an Applied Science Manager with the AGI team, you will lead the development of novel algorithms and modeling techniques to advance the state of the art with multimodal systems. Your work will directly impact our customers in the form of products and services that make use of vision and language technology. You will leverage Amazon’s heterogeneous data sources and large-scale computing resources to accelerate development with multimodal Large Language Models (LLMs) and Generative Artificial Intelligence (GenAI) in Computer Vision. About the team The AGI team has a mission to push the envelope with multimodal LLMs and GenAI in Computer Vision, in order to provide the best-possible experience for our customers. We are open to hiring candidates to work out of one of the following locations: Bellevue, WA, USA | Seattle, WA, USA | Sunnyvale, CA, USA
US, WA, Bellevue
Do you enjoy solving complex problems, driving research innovation, and creating insightful models that tackle real-world challenges? Join Amazon's Modeling and Optimization team. Our science models and data-driven solutions continuously reshape Amazon global supply chain - one of the most sophisticated networks in the world. Key job responsibilities In this role, you will use science to drive measurable improvements across customer experience, network speed, cost efficiency, safety, sustainability, and capital investment returns. You will collaborate with scientists to solve complex problems and with cross-functional teams to analyze systems and drive business value. You will develop optimization, simulation, and predictive models to identify improvement opportunities. You will develop innovative, scalable solutions. You will quantify expected improvements and evaluate trade-offs between competing objectives. You will communicate model insights to stakeholders and influence positive changes in Amazon's systems and operations. A day in the life Collaboration will be key - you will collaborate with scientists to design end-to-end solutions, work with business stakeholders to simplify and streamline processes, and partner with engineers to simplify systems and enhance their performances. The focus is on driving value through scientific thinking, technical knowledge, simplification, and cross-functional teamwork. About the team Our team of scientists specializes in network modeling, optimization, algorithms, control theory, machine learning and related disciplines. Our focus is driving supply chain improvements through applied science. By analyzing data and building insightful models, we identify opportunities and influence positive change across Amazon's end-to-end systems and operations - from vendors to customers. We are open to hiring candidates to work out of one of the following locations: Bellevue, WA, USA
US, MA, Boston
The Artificial General Intelligence (AGI) - Automations team is developing AI technologies to automate workflows, processes for browser automation, developers and ops teams. As part of this, we are developing services and inference engine for these automation agents, and techniques for reasoning, planning, and modeling workflows. If you are interested in a startup mode team in Amazon to build the next level of agents then come join us. Scientists in AGI - Automations will develop cutting edge multimodal LLMs to observe, model and derive insights from manual workflows to automate them. You will get to work in a joint scrum with engineers for rapid invention, develop cutting edge automation agent systems, and take them to launch for millions of customers. Key job responsibilities - Build automation agents by developing novel multimodal LLMs. A day in the life An Applied Scientist with the AGI team will support the science solution design, run experiments, research new algorithms, and find new ways of optimizing the customer experience.; while setting examples for the team on good science practice and standards. Besides theoretical analysis and innovation, an Applied Scientist will also work closely with talented engineers and scientists to put algorithms and models into practice. We are open to hiring candidates to work out of one of the following locations: Boston, MA, USA
US, MA, Boston
The Artificial General Intelligence (AGI) - Automations team is developing AI technologies to automate workflows, processes for browser automation, developers and ops teams. As part of this, we are developing services and inference engine for these automation agents, and techniques for reasoning, planning, and modeling workflows. If you are interested in a startup mode team in Amazon to build the next level of agents then come join us. Scientists in AGI - Automations will develop cutting edge multimodal LLMs to observe, model and derive insights from manual workflows to automate them. You will get to work in a joint scrum with engineers for rapid invention, develop cutting edge automation agent systems, and take them to launch for millions of customers. Key job responsibilities - Build automation agents by developing novel multimodal LLMs. A day in the life An Applied Scientist with the AGI team will support the science solution design, run experiments, research new algorithms, and find new ways of optimizing the customer experience.; while setting examples for the team on good science practice and standards. Besides theoretical analysis and innovation, an Applied Scientist will also work closely with talented engineers and scientists to put algorithms and models into practice. We are open to hiring candidates to work out of one of the following locations: Boston, MA, USA