AWS and Gray Lab at Johns Hopkins Whiting School of Engineering announce groundbreaking database for AI/ML antibody design

The Antibody Developability Benchmark is powered by one of the most diverse antibody datasets, enabling transparent performance evaluation for AI-guided antibody design.

Overview by Amazon Nova
  • AWS and Johns Hopkins Engineering have launched the Antibody Developability Benchmark, a large-scale, diverse dataset for evaluating AI-guided antibody design.
  • The dataset includes 50 seed antibodies with four structural formats targeting 42 antigens, measuring six key developability traits.
  • It features engineered variants with both favorable and unfavorable developability outcomes, validated through wet-lab experiments.
  • The benchmark supports zero-shot learning, allowing models to be evaluated without prior exposure to the dataset, enhancing confidence in results.
  • The benchmark results are now available as part of Amazon Bio Discovery; additional benchmarks will be added over time and released in a paper later this year.
Was this answer helpful?

In 1986 the US Food and Drug Administration issued its first approval for human use of a therapeutic antibody. Despite steady advances in methodology, genetic sequencing, and biomedical science, 40 years later the process of discovering and optimizing therapeutic antibodies often remains prohibitively expensive, in terms of both cost and time. Recent experiences with pandemic-style infectious-disease outbreaks lend an even greater urgency to the need to more quickly and efficiently identify and develop these antibodies.

Artificial-intelligence- and machine-learning-guided approaches to antibody design, in the form of biological foundation models (BioFM), represent a significant opportunity to address these challenges. Models built using protein language models (pLMs) and structure-based deep-learning frameworks have significant potential to predict antibody developability properties — the characteristics that determine whether a molecule is manufacturable, stable, and safe as a therapeutic. The development of those tools could drastically shorten discovery timelines while also reducing experimental costs.

That potential, however, has been hindered by the lack of a public dataset that would allow researchers to benchmark those tools, a crucial step in the development of trustworthy in-silico tools for drug discovery. While there are existing public antibody datasets, they are too frequently limited by a focus on a single antibody format or target. Others are composed of naturally occurring or clinically advanced antibodies, a bias that severely limits their utility for training or evaluating predictive models.

“Trust in the predictions made by these models must be grounded in evaluations against experimental data that is sufficiently large and diverse,” explained Luca Giancardo, an applied scientist with Amazon Web Services (AWS) who works on the Amazon Bio Discovery team. “That data must be representative of the real sequence space encountered during antibody engineering and balanced in terms of developability outcomes.”

Jeffrey Gray is a professor in the Chemical and Biomolecular Engineering Department at the Johns Hopkins Whiting School of Engineering, where he leads the Gray Lab, which focuses on the computational prediction and design of protein structures. He is also the original developer of RosettaDock, a tool for the prediction of the structure of protein complexes from their constituent proteins.

Gray noted that while AI has made tremendous progress in the prediction and design of antibody properties, his own lab’s benchmarks have shown that current models do not yet reliably predict critical developability features, such as solubility and specificity, needed for efficient design of therapeutics. He cited the lack of diverse data in standardized conditions as a primary limitation for training models. That, coupled with the absence of a comprehensive, heterogenous, large-scale database, has acted as a significant drag on the potential of developing AI tools for antibody development.

Antibody developability benchmark

To that end, AWS, in collaboration with the Gray Lab and Johns Hopkins Engineering are announcing the launch of the Antibody Developability Benchmark, powered by the largest and most diverse antibody dataset in public literature. This is the first large-scale benchmark of antibody biophysical and biochemical properties designed to support the development and rigorous evaluation of in-silico antibody property predictors.

  • 0

    seed antibodies

  • 0

    structural formats

  • 0

    antigen targets

The Antibody Developability Benchmark is 20 times as diverse — in terms of antibody formats, targets, and developability profiles — as benchmarks currently available in the scientific literature. While other datasets may contain more individual antibody designs, they typically explore a single target or antibody framework with limited property coverage. The Antibody Developability Benchmark is unique in its combination of scale and heterogeneity, encompassing 50 seed antibodies, four structural formats, and 42 antigens. It also includes both favorable and unfavorable developability outcomes.

Gray lauded the opportunity to work with AWS experts, noting that the collaboration has enabled the creation of a dataset larger and more diverse than any of the publicly available datasets. He called the project an important next step toward fulfilling the promise of AI to improve human health.

AntibodyBenchmark-01-16x9.png
Existing public antibody datasets typically focus on a single target or format with limited property coverage (left). The Antibody Developability Benchmark is 20 times more diverse — spanning 50 seed antibodies, 4 structural formats, 42 antigens, and both favorable and unfavorable outcomes (right).

The Antibody Developability Benchmark includes the first heterogeneous antibody-property dataset explicitly designed to capture favorable and unfavorable developability profiles across multiple antigens and mutation strategies. Crucially, all data was affirmed via wet-lab experiments, providing ground truth validation that existing public benchmarks lack.

“This dataset will allow researchers to confidently be able to answer ‘Which model is better suited for our purposes?’,” noted Giancardo, whose Bio Discovery team led the development of the dataset. “Today there are many computational models coming out that are mostly evaluated on either proprietary data or public datasets, which are not representative of antibody heterogeneity. That means deciding what is better or worse is very, very hard — if not impossible.”

The unmatched diversity and deliberate heterogeneity of the Antibody Developability Benchmark will help make those determinations possible.

Michael Chungyoun, a PhD researcher at JHU who worked on the project, observed that the benchmark covers a wide space of antibodies, particularly in terms of their properties. He noted that allowing researchers to check against a very diverse benchmark can save time and labor by helping them compare models and choose the best approach.

The antibody dataset

The dataset consists of 50 clinically and scientifically relevant seed antibodies spanning four structural formats — IgG, VHH, NearGermline-IgG, and scFv — targeting 42 distinct antigens. It measures expression, purity, thermostability, aggregation, polyreactivity, and hydrophobicity — six traits that are essential in the development of viable therapeutic antibodies.

antibody structural format
The 50 seed antibodies in the Antibody Developability Benchmark span four structural formats: IgG (35), VHH (7), NearGermline-IgG (5), and scFv (3).

“The composition is a deliberate design choice,” Giancardo noted. “We strove to find a balance between heterogeneity of antibody classes, therapeutic targets, and mutation types, with the aim of creating benchmarks that would be generalizable across the structural diversity of the modern therapeutic-antibody landscape.”

Researchers at the Gray Lab, assisted by a sponsored research grant from AWS, helped select the seed antibodies for inclusion in the dataset. They were intentional about the seeds they chose, Chungyoun noted, opting in some cases for existing clinical-stage antibodies or FDA-approved antibodies. The team also selected antibodies more akin to those that circulate in the human body but aren't approved therapeutics. Those are called germline antibodies.

Chungyoun explained that germline antibodies are those found in the human body, and they have important biophysical characteristics. While some of those characteristics are shared with therapeutic antibodies, there are also differences between the two. The extent of those differences, and how to bridge that gap, is a vital and unanswered question.

Traditional antibody-based drug discovery begins with antibodies that come from animals or humans. Chungyoun explained that germline antibodies occasionally need to be modified to look more like therapeutics. That process is one researchers are still exploring.

Mutation strategy

The dataset also includes engineered variants of each seed antibody, generated by applying systematic mutation strategies to each seed.

“Initially, the hardest thing was essentially coming up with example sequences that would cover the broad spectrum of properties and the ways of mutating these sequences,” Giancardo explained. “It's challenging because you have to do it a priori until you do it, and then you don't know what will come out.”

Working with Johns Hopkins Engineering, Giancardo and his team systematically engineered variants employing a variety of approaches, including protein-language-model-guided (pLM-guided) versus non-pLM-guided mutation selection and amino acid substitutions versus insertions/deletions.

“Protein language models are essentially the equivalent of large language models [LLMs] for the protein world,” Giancardo said. “There are multiple ways of looking at proteins. A common way is expressing them as a string of amino acids, which are essentially letters.” When some of the letters in the amino acid chains are masked, the models can be trained to fill in the gaps — the same "self-supervised" approach used to train LLMs. The models can also be trained to predict what changes inserting a different letter or letters — i.e., mutation — will yield. That approach resulted in a wide variety of mutations — up to 99 engineered variants per seed.

The breadth and depth of those mutations contribute to another distinguishing feature of the Antibody Developability Benchmark: its deliberate heterogeneity. The inclusion of both favorable, or developable, and unfavorable, or poorly developable, examples sets it apart from existing datasets.

“This range is essential for training and evaluating machine learning models, which require balanced label distributions and exposure to the failure modes they are intended to predict and avoid,” Giancardo explained. He also clarified that those failures still fall within a range of viability.

“These are not examples that are obviously wrong but rather bad examples that have a fighting chance," he added. "These all still meet some baseline quality assessment, meaning researchers could reasonably send them to a wet-lab partner to test.”

Zero-shot learning

Gray and his team at Hopkins Engineering also collaborated with their AWS counterparts by selecting and running existing open-source antibody design and prediction models on their own. They then shared their findings with the Bio Discovery team, who compared the results those models generated against the benchmarking dataset without exposing those models to the information in that dataset.

“This is essentially zero-shot inference,” Giancardo said. That siloed approach allowed both sides to have greater confidence in the results the Antibody Developability Benchmark generated. “The fact that we operated separately gave us confidence that we were not introducing errors. There is no data leakage of any sort, even from an external perspective.”

The teams compared their data and used those results to further fine-tune the Antibody Developability Benchmark. That iterative process means researchers who utilize the benchmark can have greater confidence about the viability of their models before the necessary, and costly, step of working with a wet lab partner. That can also shorten the overall timeline in terms of experimentation.

“When you are confident enough to do a screen, then you can turn to the wet lab, get new metrics, and further train on those results, which will be much, much, much more meaningful,” Giancardo explained.

The future

Researchers at both AWS and Hopkins Engineering emphasized the importance of sharing model benchmarks based on the Antibody Developability Benchmark Dataset with the larger scientific community. The benchmark results are now available as part of Amazon Bio Discovery; additional benchmarks will be added over time and released in a paper later this year.

The sharp uptick in proposed protein AI models has researchers excited, but the expense and time commitment of wet labs has meant researchers have thus far been unable to compare those models head to head, Chungyoun observed. He noted that the launch of this dataset means those researchers now have an opportunity to learn which model properties improve performance. That can serve to illuminate the connection between what models learn and how those models can be improved to better predict those properties.

The dataset won’t remain static either: more models and properties will be added in the future.

"The database has the potential to surface models and tools that may have previously gone unrecognized — research published in lesser-known venues or work that simply didn't receive the attention it deserved," said Nina Cheng, a senior science manager in the AWS Life Sciences organization. "This database can play a key role in bringing that kind of overlooked work to light."

Acknowledgements

Amazon Bio Discovery Science and product team: Luca Giancardo, Yue Zhao, Melih Yilmaz, Kemal Sonmez, Lan Guo, Gordon Trang, Edward Lee, Chuanyui Teh, Fangda Xu, Nina Cheng, Jiwon Kim.

Research areas

Related content

US, CA, Santa Clara
We are seeking an Applied Scientist II to join Amazon Customer Service's Science team, where you will build AI-based automated customer service solutions using state-of-the-art techniques in retrieval-augmented generation (RAG), agentic AI, and post-training of large language models. You will work at the intersection of research and production, developing intelligent systems that directly impact millions of customers while collaborating with scientists, engineers, and product managers in a fast-paced, innovative environment. Key job responsibilities - Design, develop, and deploy information retrieval systems and RAG pipelines using embedding models, reranking algorithms, and generative models to improve customer service automation - Conduct post-training of large language models using techniques such as Supervised Fine-Tuning (SFT), Direct Preference Optimization (DPO), and Group Relative Policy Optimization (GRPO) to optimize model performance for customer service tasks - Build and curate high-quality datasets for model training and evaluation, ensuring data quality and relevance for customer service applications - Design and implement comprehensive evaluation frameworks, including data curation, metrics development, and methods such as LLM-as-a-judge to assess model performance - Develop AI agents for automated customer service, understanding their advantages and common pitfalls, and implementing solutions that balance automation with customer satisfaction - Independently perform research and development with minimal guidance, staying current with the latest advances in machine learning and AI - Collaborate with cross-functional teams including engineering, product management, and operations to translate research into production systems - Publish findings and contribute to the broader scientific community through papers, patents, and open-source contributions - Monitor and improve deployed models based on real-world performance metrics and customer feedback A day in the life As an Applied Scientist II, you will start your day reviewing metrics from deployed models and identifying opportunities for improvement. You might spend your morning experimenting with new post-training techniques to improve model accuracy, then collaborate with engineers to integrate your latest model into production systems. You will participate in design reviews, share your findings with the team, and mentor junior scientists. You will balance research exploration with practical implementation, always keeping the customer experience at the forefront of your work. You will have the autonomy to drive your own research agenda while contributing to team goals and deliverables. About the team The Amazon Customer Service Science team is dedicated to revolutionizing customer support through advanced AI and machine learning. We are a diverse group of scientists and engineers working on some of the most challenging problems in natural language understanding and AI automation. Our team values innovation, collaboration, and a customer-obsessed mindset. We encourage experimentation, celebrate learning from failures, and are committed to maintaining Amazon's high bar for scientific rigor and operational excellence. You will have access to world-class computing resources, massive datasets, and the opportunity to work alongside some of the brightest minds in AI and machine learning.
US, CA, Sunnyvale
Amazon is seeking exceptional talent to help develop the next generation of advanced robotics systems that will transform automation at Amazon's scale. We're building revolutionary robotic systems that combine innovative AI, sophisticated control systems, and advanced mechanical design to create adaptable automation solutions capable of working safely alongside humans in dynamic environments. This is a unique opportunity to shape the future of robotics and automation at unprecedented scale, working with world-class teams pushing the boundaries of what's possible in robotic manipulation, locomotion, and human-robot interaction. This role presents an opportunity to shape the future of robotics through innovative applications of deep learning and large language models. We leverage advanced robotics, machine learning, and artificial intelligence to solve complex operational challenges at unprecedented scale. Our fleet of robots operates across hundreds of facilities worldwide, working in sophisticated coordination to fulfill our mission of customer excellence. We are pioneering the development of robotics foundation models that: - Enable unprecedented generalization across diverse tasks - Integrate multi-modal learning capabilities (visual, tactile, linguistic) - Accelerate skill acquisition through demonstration learning - Enhance robotic perception and environmental understanding - Streamline development processes through reusable capabilities The ideal candidate will contribute to research that bridges the gap between theoretical advancement and practical implementation in robotics. You will be part of a team that's revolutionizing how robots learn, adapt, and interact with their environment. Join us in building the next generation of intelligent robotics systems that will transform the future of automation and human-robot collaboration. As a Senior Applied Scientist, you will develop and improve machine learning systems that help robots perceive, reason, and act in real-world environments. You will leverage state-of-the-art models (open source and internal research), evaluate them on representative tasks, and adapt/optimize them to meet robustness, safety, and performance needs. You will invent new algorithms where gaps exist. You’ll collaborate closely with research, controls, hardware, and product-facing teams, and your outputs will be used by downstream teams to further customize and deploy on specific robot embodiments. Key job responsibilities As a Senior Applied Scientist in the Foundations Model team, you will: - Leverage state-of-the-art models for targeted tasks, environments, and robot embodiments through fine-tuning and optimization. - Execute rapid, rigorous experimentation with reproducible results and solid engineering practices, closing the gap between sim and real environments. - Build and run capability evaluations/benchmarks to clearly profile performance, generalization, and failure modes. - Contribute to the data and training workflow: collection/curation, dataset quality/provenance, and repeatable training recipes. - Write clean, maintainable, well commented and documented code, contribute to training infrastructure, create tools for model evaluation and testing, and implement necessary APIs - Stay current with latest developments in foundation models and robotics, assist in literature reviews and research documentation, prepare technical reports and presentations, and contribute to research discussions and brainstorming sessions. - Work closely with senior scientists, engineers, and leaders across multiple teams, participate in knowledge sharing, support integration efforts with robotics hardware teams, and help document best practices and methodologies.
US, CA, Sunnyvale
Amazon's AGI Information is seeking an exceptional Applied Scientist to drive science advancements in the Amazon Knowledge Graph team (AKG). AKG is re-inventing knowledge graphs for the LLM era, optimizing for LLM grounding. At the same time, AKG is innovating to utilize LLMs in the knowledge graph construction pipelines to overcome obstacles that traditional technologies could not overcome. As a member of the AKG IR team, you will have the opportunity to work on interesting problems with immediate customer impact. The team is addressing challenges in web-scale knowledge mining, fact verification, multilingual information retrieval, and agent memory operating over Graphs. You will also have the opportunity to work with scientists working on the other challenges, and with the engineering teams that deliver the science advancements to our customers. A successful candidate has a strong machine learning and agent background, is a master of state-of-the-art techniques, has a strong publication record, has a desire to push the envelope in one or more of the above areas, and has a track record of delivering to customers. The ideal candidate enjoys operating in dynamic environments, is self-motivated to take on new challenges, and enjoys working with customers, stakeholders, and engineering teams to deliver big customer impact, shipping solutions via rapid experimentation and then iterating on user feedback and interactions. Key job responsibilities As an Applied Scientist, you will leverage your technical expertise and experience to demonstrate leadership in tackling large complex problems. You will collaborate with applied scientists and engineers to develop novel algorithms and modeling techniques to build the knowledge graph that delivers fresh factual knowledge to our customers, and that automates the knowledge graph construction pipelines to scale to many billions of facts. Your first responsibility will be to solve entity resolution to enable conflating facts from multiple sources into a single graph entity for each real world entity. You will develop generic solutions that work fo all classes of data in AKG (e.g., people, places, movies, etc.), that cope with sparse, noisy data, that scale to hundreds of millions of entities, and that can handle streaming data. You will define a roadmap to make progress incrementally and you will insist on scientific rigor, leading by example.
US, WA, Redmond
Amazon Leo is an initiative to launch a constellation of Low Earth Orbit satellites that will provide low-latency, high-speed broadband connectivity to unserved and underserved communities around the world. As a Communications Engineer in Modeling and Simulation, this role is primarily responsible for the developing and analyzing high level system resource allocation techniques for links to ensure optimal system and network performance from the capacity, coverage, power consumption, and availability point of view. Be part of the team defining the overall communication system and architecture of Amazon Leo’s broadband wireless network. This is a unique opportunity to innovate and define novel wireless technology with few legacy constraints. The team develops and designs the communication system of Leo and analyzes its overall system level performance, such as overall throughput, latency, system availability, packet loss, etc., as well as compatibility for both connectivity and interference mitigation with other space and terrestrial systems. This role in particular will be responsible for 1) evaluating complex multi-disciplinary trades involving RF bandwidth and network resource allocation to customers, 2) understanding and designing around hardware/software capabilities and constraints to support a dynamic network topology, 3) developing heuristic or solver-based algorithms to continuously improve and efficiently use available resources, 4) demonstrating their viability through detailed modeling and simulation, 5) working with operational teams to ensure they are implemented. This role will be part of a team developing the necessary simulation tools, with particular emphasis on coverage, capacity, latency and availability, considering the yearly growth of the satellite constellation and terrestrial network. Export Control Requirement: Due to applicable export control laws and regulations, candidates must be a U.S. citizen or national, U.S. permanent resident (i.e., current Green Card holder), or lawfully admitted into the U.S. as a refugee or granted asylum. Key job responsibilities • Work within a project team and take the responsibility for the Leo's overall communication system design and architecture • Extend existing code/tools and create simulation models representative of the target system, primarily in MATLAB • Design interconnection strategies between fronthaul and backhaul nodes. Analyze link availability, investigate link outages, and optimize algorithms to study and maximize network performance • Use RF and optical link budgets with orbital constellation dynamics to model time-varying system capacity • Conduct trade-off analysis to benefit customer experience and optimization of resources (costs, power, spectrum), including optimization of satellite constellation design and link selection • Work closely with implementation teams to simulate expected system level performance and provide quick feedback on potential improvements • Analyze and minimize potential self-interference or interference with other communication systems • Provide visualizations, document results, and communicate them across multi-disciplinary project teams to make key architectural decisions
US, WA, Seattle
We are looking for detail-oriented, organized, and responsible individuals who are eager to learn how to apply their causal inference / structural econometrics skillsets to solve real world problems. The intern will work in the area of Store Economics and Science (SEAS) and develop models to SEAS. Our PhD Economist Internship Program offers hands-on experience in applied economics, supported by mentorship, structured feedback, and professional development. Interns work on real business and research problems, building skills that prepare them for full-time economist roles at Amazon and beyond. You will learn how to build data sets and perform applied econometric analysis collaborating with economists, scientists, and product managers. These skills will translate well into writing applied chapters in your dissertation and provide you with work experience that may help you with placement. These are full-time positions at 40 hours per week, with compensation being awarded on an hourly basis. About the team The Stores Economics and Science Team (SEAS) is a Stores-wide interdisciplinary team at Amazon with a "peak jumping" mission focused on disruptive innovation. The team applies science, economics, and engineering expertise to tackle the business's most critical problems, working to move from local to global optima across Amazon Stores operations. SEAS builds partnerships with organizations throughout Amazon Stores to pursue this mission, exploring frontier science while learning from the experience and perspective of others. Their approach involves testing solutions first at a small scale, then aligning more broadly to build scalable solutions that can be implemented across the organization. The team works backwards from customers using their unique scientific expertise to add value, takes on long-run and high-risk projects that business teams typically wouldn't pursue, helps teams with kickstart problems by building practical prototypes, raises the scientific bar at Amazon, and builds and shares software that makes Amazon more productive.
US, WA, Seattle
Amazon is seeking exceptional talent to help develop the next generation of advanced robotics systems that will transform automation at Amazon's scale. We're building revolutionary robotic systems that combine cutting-edge AI, sophisticated control systems, and advanced electromechanical design to create adaptable automation solutions capable of working safely alongside humans in dynamic environments. This is a unique opportunity to shape the future of robotics and automation at an unprecedented scale, working with world-class teams pushing the boundaries of what's possible in robotic manipulation, locomotion, and human-robot interaction. Amazon is seeking a talented and motivated Principal Applied Scientist to develop tactile sensors and guide the sensing strategy for our gripper design. The ideal candidate will have extensive experience in sensor development, analysis, testing and integration. This candidate must have the ability to work well both independently and in a multidisciplinary team setting. Key job responsibilities - Author functional requirements, design verification plans and test procedures - Develop design concepts which meet the requirements - Work with engineering team members to implement the concepts in a product design - Support product releases to manufacturing and customer deployments - Work efficiently to support aggressive schedules
US, CA, Cupertino
The AWS Neuron Science Team is looking for talented scientists to enhance our software stack, accelerating customer adoption of Trainium and Inferentia accelerators. In this role, you will work directly with external and internal customers to identify key adoption barriers and optimization opportunities. You'll collaborate closely with our engineering teams to implement innovative solutions and engage with academic and research communities to advance state-of-the-art ML systems. As part of a strategic growth area for AWS, you'll work alongside distinguished engineers and scientists in an exciting and impactful environment. We actively work on these areas: - AI for Systems: Developing and applying ML/RL approaches for kernel/code generation and optimization - Machine Learning Compiler: Creating advanced compiler techniques for ML workloads - System Robustness: Building tools for accuracy and reliability validation - Efficient Kernel Development: Designing high-performance kernels optimized for our ML accelerator architectures A day in the life AWS Utility Computing (UC) provides 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, Platform, and Productivity Apps services in AWS, including support for customers who require specialized security solutions for their cloud services. Additionally, this role may involve exposure to and experience with Amazon's growing suite of generative AI services and other cloud computing offerings across the AWS portfolio. About the team AWS Neuron is the software of Trainium and Inferentia, the AWS Machine Learning chips. Inferentia delivers best-in-class ML inference performance at the lowest cost in the cloud to our AWS customers. Trainium is designed to deliver the best-in-class ML training performance at the lowest training cost in the cloud, and it’s all being enabled by AWS Neuron. Neuron is a Software that include ML compiler and native integration into popular ML frameworks. Our products are being used at scale with external customers like Anthropic and Databricks as well as internal customers like Alexa, Amazon Bedrocks, Amazon Robotics, Amazon Ads, Amazon Rekognition and many more.
US, TX, Austin
Amazon Security is seeking an Applied Scientist to work on GenAI acceleration within the Secure Third Party Tools (S3T) organization. The S3T team has bold ambitions to re-imagine security products that serve Amazon's pace of innovation at our global scale. This role will focus on leveraging large language models and agentic AI to transform third-party security risk management, automate complex vendor assessments, streamline controllership processes, and dramatically reduce assessment cycle times. You will drive builder efficiency and deliver bar-raising security engagements across Amazon. Key job responsibilities Own and drive end-to-end technical delivery for scoped science initiatives focused on third-party security risk management, independently defining research agendas, success metrics, and multi-quarter roadmaps with minimal oversight. Understanding approaches to automate third-party security review processes using state-of-the-art large language models, development intelligent systems for vendor assessment document analysis, security questionnaire automation, risk signal extraction, and compliance decision support. Build advanced GenAI and agentic frameworks including multi-agent orchestration, RAG pipelines, and autonomous workflows purpose-built for third-party risk evaluation, security documentation processing, and scalable vendor assessment at enterprise scale. Build ML-powered risk intelligence capabilities that enhance third-party threat detection, vulnerability classification, and continuous monitoring throughout the vendor lifecycle. Coordinate with Software Engineering and Data Engineering to deploy production-grade ML solutions that integrate seamlessly with existing third-party risk management workflows and scale across the organization. About the team Security is central to maintaining customer trust and delivering delightful customer experiences. At Amazon, our Security organization is designed to drive bar-raising security engagements. Our vision is that Builders raise the Amazon security bar when they use our recommended tools and processes, with no overhead to their business. Diverse Experiences Amazon Security 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 Amazon Security? At Amazon, security is central to maintaining customer trust and delivering delightful customer experiences. Our organization is responsible for creating and maintaining a high bar for security across all of Amazon’s products and services. We offer talented security professionals the chance to accelerate their careers with opportunities to build experience in a wide variety of areas including cloud, devices, retail, entertainment, healthcare, operations, and physical stores. Inclusive Team Culture In Amazon Security, it’s in our nature to learn and be curious. Ongoing DEI events and learning experiences inspire us to continue learning and to embrace our uniqueness. Addressing the toughest security challenges requires that we seek out and celebrate a diversity of ideas, perspectives, and voices. Training & 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, training, 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 flexible work hours and arrangements are part of our culture. When we feel supported in the workplace and at home, there’s nothing we can’t achieve.
US, CA, Mountain View
At AWS Healthcare AI, we're revolutionizing healthcare delivery through AI solutions that serve millions globally. As a pioneer in healthcare technology, we're building next-generation services that combine Amazon's world-class AI infrastructure with deep healthcare expertise. Our mission is to accelerate our healthcare businesses by delivering intuitive and differentiated technology solutions that solve enduring business challenges. The AWS Healthcare AI organization includes services such as HealthScribe, Comprehend Medical, HealthLake, and more. We're seeking a Senior Applied Scientist to join our team working on our AI driven clinical solutions that are transforming how clinicians interact with patients and document care. Key job responsibilities To be successful in this mission, we are seeking an Applied Scientist to contribute to the research and development of new, highly influencial AI applications that re-imagine experiences for end-customers (e.g., consumers, patients), frontline workers (e.g., customer service agents, clinicians), and back-office staff (e.g., claims processing, medical coding). As a leading subject matter expert in NLU, deep learning, knowledge representation, foundation models, and reinforcement learning, you will collaborate with a team of scientists to invent novel, generative AI-powered experiences. This role involves defining research directions, developing new ML techniques, conducting rigorous experiments, and ensuring research translates to impactful products. You will be a hands-on technical innovator who is passionate about building scalable scientific solutions. You will set the standard for excellence, invent scalable, scientifically sound solutions across teams, define evaluation methods, and lead complex reviews. This role wields significant influence across AWS, Amazon, and the global research community.
US, CA, San Francisco
The Amazon Center for Quantum Computing (CQC) is a multi-disciplinary team of scientists, engineers, and technicians, all working to innovate in quantum computing for the benefit of our customers. We are looking to hire an Applied Scientist to design and model novel superconducting quantum devices (including qubits), readout and control schemes, and advanced quantum processors. The ideal candidate will have a track record of original scientific contributions, strong engineering principles, and/or software development experience. Resourcefulness, as well as strong organizational and communication skills, is essential. About the team The Amazon Center for Quantum Computing (CQC) is a multi-disciplinary team of scientists, engineers, and technicians, on a mission to develop a fault-tolerant quantum computer. Inclusive Team Culture Here at Amazon, 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 conferences, inspire us to never stop embracing our uniqueness. Diverse Experiences Amazon values diverse experiences. Even if you do not meet all of the preferred 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. 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. Export Control Requirement Due to applicable export control laws and regulations, candidates must be either a U.S. citizen or national, U.S. permanent resident (i.e., current Green Card holder), or lawfully admitted into the U.S. as a refugee or granted asylum, or be able to obtain a US export license. If you are unsure if you meet these requirements, please apply and Amazon will review your application for eligibility. Export Control Requirement: Due to applicable export control laws and regulations, candidates must be either a U.S. citizen or national, U.S. permanent resident (i.e., current Green Card holder), or lawfully admitted into the U.S. as a refugee or granted asylum, or be able to obtain a U.S export license. If you are unsure if you meet these requirements, please apply and Amazon will review your application for eligibility.