How Amazon Is Delivering Packages Faster With The Help Of Generative AI
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Summary
Amazon is leveraging generative AI to revolutionize package delivery, enhancing speed and efficiency across its operations. In massive fulfillment centers, AI-driven robots and algorithms optimize everything from product handling to delivery route planning. While AI offers sustainability and cost benefits, it also raises concerns about job automation and environmental impact of data centers. Integrating AI into its logistics, Amazon continues to push boundaries in e-commerce, with AI-enabled robots, better demand forecasting, and innovative customer experiences like personalized shopping recommendations.
Highlights
Amazon's generative AI optimizes package handling and delivery, boosting speed and sustainability in operations. 🌍
Hundreds of AI-enabled robots and algorithms reduce delivery times, often achieving same-day deliveries. 🚚
AI's role extends to improving workforce ergonomics and safety, potentially minimizing workplace injuries. 🦺
Amazon's investments in AI open doors for new job roles alongside increasing automation. 🔧
Environmental concerns rise as AI data centers demand significant power, prompting Amazon to tackle sustainability. 🌿
Key Takeaways
Amazon uses generative AI to supercharge package delivery, making it faster and more efficient than ever! 🚀
AI-driven robots and algorithms are the stars in Amazon's warehouses, handling millions of packages with precision and speed. 🤖
Amazon's pioneering use of AI allows for better delivery route planning, demand forecasting, and even hyper-personalized shopping experiences. 🎯
While AI innovations enhance efficiency, there are concerns about job automation and the environmental cost of running data centers. 🌱
The future of e-commerce is AI-powered, and Amazon is leading the charge, continuously evolving its operations for maximum impact. ⚡
Overview
Amazon is at the forefront of integrating generative AI into its logistics, transforming the way packages are delivered. Inside its state-of-the-art facilities, AI-driven robots and algorithms orchestrate a seamless dance of technology and human effort, optimizing processes and reducing delivery times. From product sorting to route planning, every stage is enhanced by sophisticated AI tools, pushing the boundaries of what's possible in e-commerce.
The journey of AI at Amazon began long before it became a buzzword. By collecting vast amounts of data early on, Amazon has crafted precise algorithms that power its logistics and drive efficiency. This technological edge enables Amazon to accomplish feats like same-day delivery, making it a leader in speedy package distribution. However, with the perks come the pitfalls, such as environmental challenges and fears over job automation.
Despite potential downsides, Amazon remains committed to its AI-driven vision, aiming to seamlessly blend technology with human roles. This journey entails constant innovation, where even delivery vans are becoming smarter, equipped with AI-enabled tools to make routes more efficient. As customers enjoy quicker and more personalized shopping experiences, Amazon continues to refine and expand its AI capabilities, keeping its competitive edge sharp in the ever-evolving retail world.
How Amazon Is Delivering Packages Faster With The Help Of Generative AI Transcription
00:00 - 00:30 So fulfillment centers ship into this building. This building sorts those packages. Then they flow out to our delivery stations. Inside this 1,000,000 square foot warehouse in Northern California, amazon packages are handled by hundreds of people and hundreds of robots, all increasingly driven by tech's biggest craze. Generative AI underpins everything we're doing here with perceiving, grasping and moving products with the Robin arms to managing fleet congestion with our Pegasus robotic drives. For years, Amazon has sped up package delivery two-day,
00:30 - 01:00 one-day, and now, more and more, same-day made possible by more workers but also by rapidly improving algorithms and AI-enabled robots. What you see here is I like to call it our dance floor. And thanks to being an online retailer from the start, Amazon has a big advantage when it comes to the massive data needed for generative AI. Absolutely. Amazon has been better at it than probably every other retailer out there. Think better predictions of exactly what you're going
01:00 - 01:30 to order from where and when. Hundreds of thousands of robots and more efficient delivery routes. But not all the change that could come from generative AI is positive. In the event that they were able to leverage generative AI and fully automate the fulfillment center, I think that would be problematic. The other downside that we don't talk about enough is the negative impact on the environment: the costs of running data centers, the use of electricity, the use of water for cooling.
01:30 - 02:00 Still, Amazon says AI helps cut costs and its carbon footprint thanks to more efficient planning. It seems subtle, but at this scale, getting like just one more product in the right spot means that it's shipping less distance when you order it. Better speed, lower distance traveled, better sustainability. CNBC visited Amazon's largest California sort center and a same-day warehouse nearby to see firsthand how it's putting AI to work at every step of operations, and sat down with Amazon's head of transportation
02:00 - 02:30 technology to find out just how far the e-commerce giant plans to take it. When Amazon Prime launched in 2005, two-day shipping was virtually unheard of. And although it's now standard and free for millions of items if you're a Prime member, it's a grueling logistical lift. Along here, you see Robin arms, which are robotic arms. They're loading packages, with employees, onto Pegasus
02:30 - 03:00 drive units. Those Pegasus drive units are then sorting packages by neighborhood. Steve Armato started at Amazon as a software engineer before Prime, in 2001. A lot of the things you see today, those weren't there in 2001. We had five fulfillment centers back then. Now we have hundreds. The delivery vans that you see in the neighborhood, none of that was there. Traditional retailers like Walmart and Target were selling online, but they hadn't started making promises of speed.
03:00 - 03:30 Back then, you know, mail order when Amazon started, you'd be lucky if you could get something in 2 to 3 weeks. And, you know, Amazon would still promise like a week and they would yet get it to you in a few days. So that was amazing. So how did Amazon pull it off? The short answer is data. Long before generative AI became all the rage with the release of ChatGPT in 2022, general AI was a huge differentiator for Amazon. As an early online-only retailer, Amazon had a unique ability to collect mass aggregate data on shopping behavior and use it to create algorithms to maximize
03:30 - 04:00 sales and speedy logistics. We've been working on AI over 25 years.For employees, a lot of it is around ergonomics and safety. For customers, it's around vast selection, great speeds. Exploiting technology to drive e-commerce sales. That's essentially what Amazon has done since '97. Since the beginning. They are, I would say, hands down the most data heavy and data savvy company.
04:00 - 04:30 It's not that Walmart and Target and Costco and others don't have their own reams of data, but they're looking at things a little bit differently, and they have much older systems. Amazon is decades younger than its major retail competitors, but its stock value and footprint have grown incredibly fast. Hundreds of warehouses, more than 1.5 million U.S. employees and more speed. In 2014, amazon launched Prime Now with some deliveries arriving in an hour or less. Then in 2018, Amazon vastly increased its driver
04:30 - 05:00 network with the launch of its Delivery Service Partner program, where it contracts driving out to some 4,400 small delivery businesses that employ 390,000 drivers. By 2019, one-day shipping was the norm. Then in 2020, Amazon began using transformer architecture, the backbones of what we know of today as generative AI, to develop models for demand forecasting and supply chain optimization. By 2022, it was rolling AI transformer models into its robotics. All that made shipping times even faster.
05:00 - 05:30 Today, drivers are delivering 20 million packages per day across 20 countries, and in the first quarter of 2024, more than 2 billion items arrived the same or next day. 60% of our deliveries for Prime customers in March were same-day or next-day, so there are a lot of those fast orders for our top 60 metropolitan areas. Could you have gotten to that 60% number without generative AI? Well, I think we've been working on this for decades to
05:30 - 06:00 get to this speed. And it's a combination of engineering, people, processes, and technology. Generative AI is a big unlock for us, particularly for new products where we have sparse or no history for that sales history for that product. It's going to come faster because of generative AI. But all this speed comes at a huge cost, in actual cap ex, but also human labor, a burden that can be reduced, Amazon says, with the use of robots.
06:00 - 06:30 Before robotics, pickers would need to walk distances between aisles to pick products, kind of like a library. And now it's being brought to you more like self-service. And so that's that's great for ergonomics. It's great for less walking. Amazon has faced scrutiny in recent years over its workplace injury record, with federal citations for safety violations and a year-long Senate probe that found Prime Day was a major cause of worker injuries. Amazon has appealed the citations and said the report
06:30 - 07:00 ignores progress it's made, and it says AI can help. One algorithmic improvement is to take our faster selling products and place those on the shelves at waist height. That's your ergonomic power zone. So less reaching, less bending. Amazon's big shift to automation started in 2012 with the purchase of Kiva Systems for $775 million. Now, Amazon has deployed at least 750,000 robots, more than double the number it had in 2021. So generative AI helps with prioritization.
07:00 - 07:30 So some of the two-day deliveries might stand aside and let the robot with a next-day delivery go on its mission first and take a straight line to its destination. Amazon's next generation of drive units, called Proteus, are fully autonomous. They're actually outside of this fenced area, moving things around. They're using generative AI and computer vision to avoid obstacles and find the right place to stop, the right place to park. And then there's Robin arms, which Amazon says have handled some 2 billion packages so far.
07:30 - 08:00 Would these 20 Robin arms be able to do what they're doing without generative AI? I think that we would see that they would require a lot more training. And so generative AI has been really a step function improvement in being able to infer from our vast product catalogue about how to handle a given product, even if I haven't seen that product before. And although it's only in a couple of warehouses for now, there's a humanoid robot called Digit that can grasp and handle items in a similar way to how people can. And Amazon has a new deal with AI startup
08:00 - 08:30 Covariant, hiring its founders and licensing its models that help robots handle a wider range of physical objects. Of course, this brings up the big question, could Amazon one day replace all warehouse workers if AI helps robots get too capable? There's kind of a balancing act for Amazon. How can they implement automation to improve efficiency and manage labor expenses? But how can they do it in a way that complements their use of humans and doesn't replace them? Amazon says the robots work with people and they're
08:30 - 09:00 creating new roles. We're investing over $1.2 billion to upskill more than 300,000 employees by end of next year. One study found that each robot adopted in manufacturing replaced about three workers. Other research shows that companies that deploy more robots add more jobs overall. So someone needs to maintain this if it breaks down. Or if something does get dropped on the dance floor, we have a process and special training to go clean that
09:00 - 09:30 up. And so each of those creates new categories of jobs, some of which have higher earnings potential as well. The truth is, at the end of the day, Amazon's responsibility is not to employ, you know, kind of a million Americans, even though it does. Their responsibility is to their shareholders. Another big way to please shareholders is to cut down on the huge amount of time and money it takes to get inventory from sellers to customers. To do this, amazon has always used algorithms to predict how much of what inventory is needed, when
09:30 - 10:00 and where. Every product has like a regional nuance. We recently regionalized our entire national network. And by doing a regional network, that means that products are more likely to ship from fulfillment centers close to you. What's new with generative AI is the ability to predict where to place brand new items. So we're able to use generative AI to create a link between products we have seen before, where we do have a sales history, and a new product we haven't seen before yet, and get it in the right place the first
10:00 - 10:30 time. So when we place a product in the right place ahead of time before you click buy, it's traveling less distance, which is a win for speed and sustainability. Amazon also says AI is helping sustainability with a specific model that makes better choices about which packaging to use, and by reducing the number of damaged items that get sent to and returned by customers. Amazon says its AI is three times better than humans at identifying damaged products. We ship billions of packages.
10:30 - 11:00 We have the data about those packages. So we're able to use computer vision together with generative AI and that vast product and package data, to then detect damages and being able to sideline a package if we think it might be damaged before we ship it to a customer. But training and running AI is itself a carbon intensive process, a fact that could make it hard for Amazon to achieve its 2019 climate pledge to reach net zero carbon by 2040. By 2027, AI servers are projected to use up as much
11:00 - 11:30 power every year as a small country. And Amazon Web Services has data centers filled with servers running AI workloads, although this also gives it an edge over other e-commerce players because it can train its AI in-house. Amazon has also invested $4 billion in AI startup anthropic, which makes chatbot Claude a competitor to OpenAI's ChatGPT. And Amazon makes its own AI-focused microchips and its own generative AI tools for developers, which are used in operations. We use tools like Amazon Q, Amazon Bedrock.
11:30 - 12:00 That allows us to evaluate different models against the, you know, what does good look like? So what are the metrics for success of this business application? One big metric for success that shareholders are watching: if Amazon's huge investment in AI will translate to profits. I have yet to see huge lift in anybody's retail business due to generative AI, including Amazon. I think that a lot of their biggest impact has happened because of the earlier investments, not
12:00 - 12:30 necessarily some of these more recent investments. I've seen a lot of hype, but no actual numbers. One area Amazon is hoping AI will translate to true savings is the most expensive part of the delivery process. Getting that package the last mile to your door. Amazon is now using more than 20 machine learning models to figure out the most efficient routes for its delivery drivers. If there is more congestion on a road or if a road is
12:30 - 13:00 closed, AI is able to help us determine whether that diversion is still there or take that different route. In 2021, CNBC talked to Amazon drivers about the pressures and pitfalls of the job, from dog bites to urinating in bottles to save time. People are running through stop signs, running through yellow lights. Everybody I knew was buckling their seat belt behind their backs, because the time it took just to buckle your seat belt, unbuckle your seat belt every time, was enough time to get you behind
13:00 - 13:30 schedule. The hope is, with better routes and vehicle coordination, drivers will feel less pressure to cut corners or skip breaks. It should enhance the driver experience, but it will still be challenging. In 2022, Amazon also rolled out new fully electric Rivian vans and now has 15,000 of them across the U.S. They're equipped with large screens where the new mapping and routing is displayed, as well as AI-enabled cameras that watch the road, sides of the vehicle and the driver. There's no camera recording if the driver is not
13:30 - 14:00 driving and there's a privacy mode. Another area where privacy often comes up is around the huge amount of data it collects on shopping behavior. Now, with generative AI, that data can be used to generate better hyper-personalized product recommendations to a shopper, thanks to new developer tools like Amazon Personalize. What do you say to people when they're concerned about their privacy? Or that it feels creepy that Amazon predicts their shopping behavior so closely? Well, we're looking at aggregate sales history. We're looking at geographic regions and their
14:00 - 14:30 behavior. If a particular customer were in San Francisco, it's not about that one customer. It's about what the aggregate behavior in that area is. Sellers can also use gen AI to write more targeted product listings, or to generate images of their products in different seasonal and lifestyle settings. For shoppers, last year Amazon.com started populating with AI generated review highlights. Any product that you look at is going to have reviews, hundreds or even thousands. What I love about AI review summarization is it gives
14:30 - 15:00 you just a couple of quick bullet points, and so that's helping me make a more informed buying decision. And in February, Amazon launched a new gen AI powered conversational shopping assistant called Rufus, to further streamline those product recommendations. Some consumers may be put off by product recommendations that are based on their purchase history. Now Amazon may have to, if they don't already implement, an opt out, some sort of feature where a consumer could say, you know, please don't look at my
15:00 - 15:30 purchase history when giving me recommendations. Despite concerns, Amazon is committed to injecting generative AI into every possible step of operations to boost speed, efficiency and eventually, it hopes, its bottom line. If you can reduce packaging, is that a good thing? Yes. If you can reduce the amount of time and the amount of miles you have to travel to get from point A to point B, is that a good thing? Yes. These are all good ideas, you know, kind of definitely feel free to show us the receipts at any