History of SCOT lead image.jpg
In a little over a decade, Amazon’s Supply Chain Optimization Technologies team (SCOT) has built one of the largest and most sophisticated automated decision-making systems in the world.

Solving some of the largest, most complex operations problems

How Amazon’s Supply Chain Optimization Technologies team has evolved over time to meet a challenge of staggering complexity.

Amazon’s ability to grow to an unprecedented scale, while simultaneously meeting the growing expectations of its customers, particularly around delivery speeds, is a success story on many levels.

One of the keys to that success is a team that is fundamental to Amazon’s increasingly rapid transformation. A largely unsung team that in little more than a decade has built one of the largest and most sophisticated automated decision-making systems in the world. A team that has harnessed simulation, mathematical optimization, and machine learning to create the capability to deliver products at speeds once thought impossible at the mass market scale — in some cases within 2 hours — across a fulfillment network of dizzying complexity.

This is Amazon’s Supply Chain Optimization Technologies team (SCOT). If the Amazon Store were a human body, think of SCOT as its nervous system: essential to life, quietly acting in the background to automatically optimize critical functions and flows.

“At SCOT, using science and technology to optimize the supply chain is not just an enabler, it's our core focus,” says Ashish Agiwal, vice president, Fulfillment Optimization.

Today, SCOT’s systems have end-to-end responsibility for orchestrating Amazon Store’s supply chain.

SCOT is responsible for computing the delivery promises Amazon Store customers see when ordering, forecasting demand for its hundreds of millions of products, deciding which products to stock and in what quantities, allocating stock to warehouses and fulfillment centers (FCs) in anticipation of regional customer needs, offering markdown pricing when necessary, working out how to consolidate customer orders for maximum efficiency, coordinating inbound and inventory management from millions of sellers worldwide, and so much more.

But it was not always thus. Far from it, says Deepak Bhatia, vice president of SCOT, whose team’s methodologies and mechanisms will be a topic of conversation at INFORMS, the world’s largest operations research and analytics conference, taking place next week in Indianapolis, Indiana.

“A very different world”

In 2011 when Bhatia joined Amazon, the team that would evolve into SCOT was much smaller, he recalls, and its main concern was trying to automate Amazon’s product buying and inventory management.

“It was a very different world. The notion of an end-to-end supply chain tech function wasn’t there. But there were powerful intellects and a lot of energy in that team.”

It was a huge deal. Will it improve things, and if so by how much? Will it completely break? In the beginning, we took baby steps. We made changes one product category at a time.
Deepak Bhatia

In 2011, Amazon’s total revenue reached nearly $48 billion, and it was already clear to the senior leadership that the company’s scale would require the automation of buying and the management of inventory; monitoring spreadsheets was not a long-term solution. Indeed, even then the sheer range of products offered by Amazon meant the “illusion of control” was already kicking in among the groups managing inventory, says Bhatia. In fact, Bhatia notes, the sheer complexity and scale meant the challenge was beyond the scope of any team, let alone an individual.

In response, Bhatia and his colleagues set out to develop complex algorithms that could make buying and inventory placement decisions for a given category of products. And while that was all well and good in theory, trying it for real was a watershed moment.

“It was a huge deal. Will it improve things, and if so by how much? Will it completely break? In the beginning, we took baby steps. We made changes one product category at a time.”

Media category products were the early adopters. In randomized, controlled trials that ran over several months, some of these products were managed in the traditional way, and some by the new algorithms. Crucially, human judgement could still override the system’s decisions if deemed necessary.

The trial went well — the algorithms’ decisions were overridden only a small percentage of the time — and the approach was expanded across additional categories, including consumables such as groceries.

Going all in

“Then one day, in a high-level meeting someone said: ‘What if we go all in and make these categories 100% automated?’, Bhatia recalls. “Someone responded ‘All hell will break loose’.” And that, Bhatia notes, is where Amazon’s comfort with risk-taking came into play. “They decided to go all in.” That was around 2014. And the systems worked as designed, improving customer experience outcomes like in-stock rates while reducing costs.

One day, in a high-level meeting someone said: ‘What if we go all in and make these categories 100% automated?’ Someone responded ‘All hell will break loose’.
Deepak Bhatia

“After this success, automating one product category at a time started to feel too risk-averse,” says Bhatia.

Over the next few years, the technology was rapidly rolled out across the retail business, all the while being iterated and improved upon, with increasing success in terms of efficiency and customer satisfaction. At the same time, the rapidly growing SCOT team was developing technologies that would enable them to join the dots from one end of the Amazon supply chain to the other.

For example, SCOT grew its own demand forecasting team, with a sharp focus on scientific and technological innovation. The forecasting aspect of SCOT’s work started out as a patchwork of models, which evolved eventually to deep learning approaches to decide what features of the retail data were most important.

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Today, building on a 2018 in-house research breakthrough, the forecasting team is using a single model that learns business-critical demand patterns without even being told what to look for. Called the Multi-Horizon Quantile Recurrent Forecaster, the model can accurately forecast shifting seasonal demand, future planned-event demand spikes and even “cold-start forecasting” for products with limited sales history.

Forecast accuracy is particularly important at Amazon’s scale.

“SCOT is directing hundreds of billions of dollars of product flows. That means just a few percentage points of change in our topline predictions equates to several fulfillment centers worth of products,” says Salal Humair, a SCOT vice president and Amazon distinguished scientist.

As SCOT’s demand forecasting has improved, so too has its ability to ensure that products were best positioned to fulfill those anticipated customer orders.

The challenge of One-Day Delivery

While Amazon’s largely manual inventory management system became increasingly automated in the early part of the previous decade, those changes proved insufficient for the logistical challenges that lay ahead: Amazon’s ever more ambitious customer-delivery promises, particularly its One-Day Delivery promise in the US in 2019, and Prime Now, Amazon's 2-hour grocery businesses.

“Before we announced the One-Day Delivery promise, a detailed SCOT simulation called Mechanical Sensei was the key to figuring out how much additional inventory we would need, where it would be placed, and how that would affect shipping costs,” says Humair.

So, at a time when Amazon was continuing to expand globally, the company’s bold delivery promises meant there was a pressing need to locate products closer to Amazon customers. This meant a significant increase in local distribution facilities, and yet another challenge: which items should be locally placed?

“Most of our systems were designed to operate under the simplifying assumption that demand for each item sold on the website is independent, but we know that’s not the case in reality,” says Jeffrey Maurer, vice president, Inventory Planning and Control. “When one product goes out of stock, or isn’t available for fast delivery, demand shifts to other products. We can’t make every product locally available in every location, so how do we account for these constraints while trying to maximize customer satisfaction?”

That nut has yet to be comprehensively cracked, but the simple fact of adding local warehousing resulted in a supply chain network of such layered complexity, that the SCOT team realized its automated network would need yet another radical redesign.

From left to right, Ashish Agiwal, vice president, Fulfillment Optimization; Deepak Bhatia, vice president of SCOT; Salal Humair, a SCOT vice president and Amazon distinguished scientist; Jeffrey Maurer, vice president, Inventory Planning and Control; and Piyush Saraogi, vice president, Fulfillment By Amazon.
From left to right, Ashish Agiwal, vice president, Fulfillment Optimization; Deepak Bhatia, vice president of SCOT; Salal Humair, a SCOT vice president and Amazon distinguished scientist; Jeffrey Maurer, vice president, Inventory Planning and Control; and Piyush Saraogi, vice president, Fulfillment By Amazon.

It took them several years to solve for the new set of challenges.

“We had to iterate, fail, iterate, fail, iterate, fail many times,” Humair recalls.

Then, in 2020, the team unveiled its latest breakthrough: the “multi-echelon system”. This is a multi-product, multi-layered, multi-fulfillment center model for optimizing inventory levels for varying delivery speeds in a space where future demand, product lead times and capacity constraints are all uncertain, and where real-time customer promises and fulfillment make the demand patterns seen by FCs very hard to characterize.

“We have a strong sense of pride for the work the SCOT team is doing,” says Bhatia. “These sorts of solutions are just unheard of in academia and industry.”

The SCOT team was able to demonstrate significant improvements to inventory buying and placement through the multi-echelon system, but rolling it out across the business was a challenge.

“Not only did the teams, systems and coordination mechanisms all need to be rebuilt, but we also had to keep the business running,” says Humair. “We had to change the engine while still flying the plane!”

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And then there was COVID. “The impact of COVID on our supply chain brought capacity management to the forefront,” says Maurer. “It was no longer enough to be approximately right at network level in terms of capacity management; we needed to get it exactly right at every facility and connection in our network.”

Ultimately, the successful combination of powerful forecasting, multi-echelon inventory management‚ and several other algorithms and systems — running the gamut from fulfillment to customer promise, inventory health, and inventory placement — along with unparalleled distribution capacity enabled Amazon to deal with the effects of COVID as well as the enormous surges in demand created by shopping events such as Cyber Monday and Amazon’s own Prime Day. The latter, this year, resulted in the record-breaking purchase of more than 300 million items across more than 20 countries.

Future challenges

So what are the current and future challenges in SCOT’s sights?

“The range of problems requiring disruptive technology solutions is not exhausted,” Humair notes.

For example, about 60% of the Amazon Store’s sales is through Fulfillment by Amazon (FBA), a service for small-and-medium sized businesses to provide unique selection for Amazon customers at low costs and fast speeds.

Optimizing supply chain efficiency would be hard enough at Amazon’s scale, even if Amazon was in full control of every aspect of its fulfillment network. “However we work with millions of FBA sellers with different cost structures and inventory management practices who independently decide what to sell, how much to inbound, and how to price their products,” notes Piyush Saraogi, vice president, FBA.

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These businesses share Amazon’s storage capacity and transportation network, but make their own decisions on pricing and inventory management. COVID played a role here as well: capacity constraints meant the FBA team had to adopt limits on restocking.

“Balancing the supply and demand of capacity in a network with 60% FBA inventory is an incredibly complex business problem,” Saraogi says. “To balance capacity in the marketplace setting, we have to invent new approaches that offer predictability to our sellers and are consistent with our general laissez-faire approach to FBA, while giving Amazon the flexibility to balance the network and ensure our store has all the in-stock selection customers are looking for.

Sellers may have developed a blockbuster new product, received fresh capital, or shifted distribution toward FBA. The science for leveraging this key seller input in a scalable manner into our inventory and capacity management systems is an unchartered territory that our scientists, engineers, and product managers are working on.”

“This is a big challenge for SCOT,” Bhatia agrees. “How can we support all our independent third-party sellers in ways that result in a triple win, for them, for Amazon, and for our customers?”

The SCOT team also wrestles with something that is increasingly prevalent in the modern world of complex optimization modelling and machine learning: how to explain automated decisions to the people who need to understand why things are happening as they are.

“We have hundreds of people fielding questions from selling partners and other stakeholders,” says Humair. “Why have my in-stock rates changed? Why do I have more inventory? Each such question requires manual deep dives, hundreds of person hours to answer.” The team is currently developing new methods to make its systems more explainable.

These systems optimize millions of customer promises every second and billions of customer order fulfillment plans daily. This is done by evaluating hundreds of millions of potential transport routes across the network and tracking over a billion real-time inventory updates every day
Ashish Agiwal

Indeed, the very fact that such technology is extremely complex and requires a sophisticated technical background to fully understand makes the idea of going all-in on data science a daunting proposition,” says Humair.

“Data is always ambiguous, so you need a lot of conviction and judgment to stay the course. But it has yielded spectacular benefits for Amazon, for our selling partners, and, most importantly, for our customers.”

Another big challenge is managing transportation through Amazon’s growing delivery fleet of trucks, planes, sort centers, and delivery stations. SCOT’s Fulfillment Optimization team, led by Agiwal, runs the systems that makes outbound fulfillment decisions.

“These systems optimize millions of customer promises every second and billions of customer order fulfillment plans daily. This is done by evaluating hundreds of millions of potential transport routes across the network and tracking over a billion real-time inventory updates every day,” he says.

Amazon’s operation of its own transportation network has created what Agiwal calls “a very exciting problem space” that his team is now addressing. “Designing the network topology, optimizing connections in a multi-tier multi-modal network, and coordinating all operational resources at Amazon scale is unprecedented,” he notes.

“Our new priority is ensuring that our own delivery trucks or cargo planes are as full as possible while also meeting our customer-delivery windows,” says Bhatia.

That problem space also illustrates why Amazon SCOT is so unique.

“We are solving some of the largest, most complex problems in operations using solutions entirely built in-house,” says Agiwal. “We have some of the best scientists, engineers and product managers in the world, working together and controlling their own destiny. We have the luxury of large and diverse data sets and the ability to innovate and experiment at a massive scale with immediate, measurable impact on customer experience and costs. It is truly gratifying.”

That complexity also explains why SCOT is so appealing to data scientists, economists, and machine learning scientists of all stripes.

“Our problem dimensionality is high and closed-form solutions are rarely applicable,” notes Maurer. “Our teams continually invent and implement new algorithms and evolve the fundamental structure of our systems as the physical network changes. SCOT is a great place for people who are drawn to exceptionally complex problem spaces and motivated by having high production impact.”

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Economic Decision Science is a central science team working across a variety of topics in the EU Stores business and beyond. We work closely EU business leaders to drive change at Amazon. We focus on solving long-term, ambiguous and challenging problems, while providing advisory support to help solve short-term business pain points. Key topics include pricing, product selection, delivery speed, profitability, and customer experience. We tackle these issues by building novel econometric models, machine learning systems, and high-impact experiments which we integrate into business, financial, and system-level decision making. Our work is highly collaborative and we regularly partner with EU- and US-based interdisciplinary teams. We are looking for a Senior Economist who is able to provide structure around complex business problems, hone those complex problems into specific, scientific questions, and test those questions to generate insights. The ideal candidate will work with various science, engineering, operations and analytics teams to estimate models and algorithms on large scale data, design pilots and measure their impact, and transform successful prototypes into improved policies and programs at scale. If you have an entrepreneurial spirit, you know how to deliver results fast, and you have a deeply quantitative, highly innovative approach to solving problems, and long for the opportunity to build pioneering solutions to challenging problems, we want to talk to you. Key job responsibilities - Provide data-driven guidance and recommendations on strategic questions facing the EU Retail leadership - Scope, design and implement version-zero (V0) models and experiments to kickstart new initiatives, thinking, and drive system-level changes across Amazon - Build a long-term research agenda to understand, break down, and tackle the most stubborn and ambiguous business challenges - Influence business leaders and work closely with other scientists at Amazon to deliver measurable progress and change We are open to hiring candidates to work out of one of the following locations: London, GBR
US, WA, Seattle
We are looking for an Applied Scientist to join our Seattle team. As an Applied Scientist, you are able to use a range of science methodologies to solve challenging business problems when the solution is unclear. Our team solves a broad range of problems ranging from natural knowledge understanding of third-party shoppable content, product and content recommendation to social media influencers and their audiences, determining optimal compensation for creators, and mitigating fraud. We generate deep semantic understanding of the photos, and videos in shoppable content created by our creators for efficient processing and appropriate placements for the best customer experience. For example, you may lead the development of reinforcement learning models such as MAB to rank content/product to be shown to influencers. To achieve this, a deep understanding of the quality and relevance of content must be established through ML models that provide those contexts for ranking. In order to be successful in our team, you need a combination of business acumen, broad knowledge of statistics, deep understanding of ML algorithms, and an analytical mindset. You thrive in a collaborative environment, and are passionate about learning. Our team utilizes a variety of AWS tools such as SageMaker, S3, and EC2 with a variety of skillset in shallow and deep learning ML models, particularly in NLP and CV. You will bring knowledge in many of these domains along with your own specialties. Key job responsibilities • Use statistical and machine learning techniques to create scalable and lasting systems. • Analyze and understand large amounts of Amazon’s historical business data for Recommender/Matching algorithms • Design, develop and evaluate highly innovative models for NLP. • Work closely with teams of scientists and software engineers to drive real-time model implementations and new feature creations. • Establish scalable, efficient, automated processes for large scale data analyses, model development, model validation and implementation. • Research and implement novel machine learning and statistical approaches, including NLP and Computer Vision A day in the life In this role, you’ll be utilizing your NLP or CV skills, and creative and critical problem-solving skills to drive new projects from ideation to implementation. Your science expertise will be leveraged to research and deliver often novel solutions to existing problems, explore emerging problems spaces, and create or organize knowledge around them. About the team Our team puts a high value on your work and personal life happiness. 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 you. 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 establish your own harmony between your work and personal life. We are open to hiring candidates to work out of one of the following locations: New York, NY, USA | Seattle, WA, USA
US, WA, Seattle
Amazon is looking for a passionate, talented, and inventive Applied Scientist with background in Natural Language Processing (NLP), Deep Learning, Generative AI (GenAI) to help build industry-leading technology in contact center. The ideal candidate should have a robust foundation in NLP and machine learning and a keen interest in advancing the field. The ideal candidate would also enjoy operating in dynamic environments, have the self-motivation to take on challenging problems to deliver big customer impact, and move fast to ship solutions and innovate along the development process. As part of our Transcribe science team in Amazon AWS AI, you will have the opportunity to build the next generation call center analytic solutions. You will work along side a supportive and collaborative team with a healthy mix of scientists, software engineers and language engineers to research and develop state-of-the-art technology for natural language processing. A day in the life 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: Bellevue, WA, USA | Seattle, WA, USA
US, WA, Seattle
The Automated Reasoning Group in AWS Platform is looking for an Applied Scientist with experience in building scalable solver solutions that delight customers. You will be part of a world-class team building the next generation of automated reasoning tools and services. AWS has the most services and more features within those services, than any other cloud provider–from infrastructure technologies like compute, storage, and databases–to emerging technologies, such as machine learning and artificial intelligence, data lakes and analytics, and Internet of Things. You will apply your knowledge to propose solutions, create software prototypes, and move prototypes into production systems using modern software development tools and methodologies. In addition, you will support and scale your solutions to meet the ever-growing demand of customer use. You will use your strong verbal and written communication skills, are self-driven and own the delivery of high quality results in a fast-paced environment. Each day, hundreds of thousands of developers make billions of transactions worldwide on AWS. They harness the power of the cloud to enable innovative applications, websites, and businesses. Using automated reasoning technology and mathematical proofs, AWS allows customers to answer questions about security, availability, durability, and functional correctness. We call this provable security, absolute assurance in security of the cloud and in the cloud. See https://aws.amazon.com/security/provable-security/ As an Applied Scientist in AWS Platform, you will play a pivotal role in shaping the definition, vision, design, roadmap and development of product features from beginning to end. You will: - Define and implement new solver applications that are scalable and efficient approaches to difficult problems - Apply software engineering best practices to ensure a high standard of quality for all team deliverables - Work in an agile, startup-like development environment, where you are always working on the most important stuff - Deliver high-quality scientific artifacts - Work with the team to define new interfaces that lower the barrier of adoption for automated reasoning solvers - Work with the team to help drive business decisions The AWS Platform is the glue that holds the AWS ecosystem together. From identity features such as access management and sign on, cryptography, console, builder & developer tools, to projects like automating all of our contractual billing systems, AWS Platform is always innovating with the customer in mind. The AWS Platform team sustains over 750 million transactions per second. Learn and Be Curious. We have a formal mentor search application that lets you find a mentor that works best for you based on location, job family, job level etc. Your manager can also help you find a mentor or two, because two is better than one. In addition to formal mentors, we work and train together so that we are always learning from one another, and we celebrate and support the career progression of our team members. Inclusion and Diversity. Our team is diverse! We drive towards an inclusive culture and work environment. We are intentional about attracting, developing, and retaining amazing talent from diverse backgrounds. Team members are active in Amazon’s 10+ affinity groups, sometimes known as employee resource groups, which bring employees together across businesses and locations around the world. These range from groups such as the Black Employee Network, Latinos at Amazon, Indigenous at Amazon, Families at Amazon, Amazon Women and Engineering, LGBTQ+, Warriors at Amazon (Military), Amazon People With Disabilities, and more. Key job responsibilities Work closely with internal and external users on defining and extending application domains. Tune solver performance for application-specific demands. Identify new opportunities for solver deployment. About the team Solver science is a talented team of scientists from around the world. Expertise areas include solver theory, performance, implementation, and applications. 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: Portland, OR, USA | Seattle, WA, USA