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15 Luxury Luggage Brands on the Market

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All products featured on Vogue are independently selected by our editors. However, we may earn affiliate revenue on this article and commission when you buy something.

More so than any of the travel accessories a trip requires, a lot can hinge on the suitcase. To travel smart is to invest in the best luxury luggage brands—because a well-made suitcase can last for decades. But as Vogue’s senior living writer Elise Taylor can attest, a luxury suitcase doesn’t need to be precious. “There’s always such a fine line with luggage for me,” she says. “I’m not a ‘luxury’ traveler. I fly economy and take public transportation daily…but I travel enough that I have to have a suitcase that lasts.”

Vogue’s Favorite Luxury Luggage Brands:

This staying power is what sets luxury suitcases apart from the rest. Investing in quality luggage makes prepping for (and reaching) your destination all the better. A lightweight steel case might mean you can pack a bit extra and avoid an overweight baggage fee. The eye-catching rollaboard from Calpak in a cheerful color will ensure no one else mistakes their luggage for yours. And the nostalgia-inclined will delight in leather-trimmed cases from Steamline, Globe-Trotter, and T Anthony.

Ahead, Vogue breaks down the best luxury luggage brands for travelers, from heritage labels to buzzworthy direct-to-consumer brands.

Co-founded by Indré Rockefeller (a Vogue alumni) and Andy Krantz in 2016, Paravel is one of the few luggage brands that is as stylish as it is sustainable. Take, for example, its Aviator case—its shell is made of a recycled polycarbonate material, the lining is woven with fibers sourced from recycled plastic water bottles, the handle is composed of recycled aircraft-grade aluminum, and it all zips together with a recycled zipper. In addition to luggage, look to the brand for Dopp kits, packing cubes, and all variety of travel essentials inspired by Rockefeller and Krantz’s jet-set habits. Vogue’s senior shopping editor Talia Abbas has the Aviator Carry-On in black and white, and uses it for both short weekends and longer weeks away. “I was a little hesitant choosing white at first, but it’s not in-your-office obvious, and the scuffs are surprisingly minimal. The hard shell wipes down easily, too for when it has to go back into the closet!”

If you’re looking for heritage, quality, and craftsmanship, Rimowa—founded in 1898—is the just the ticket. With cases crafted almost entirely of lightweight but sturdy aluminum and a patented multi-wheel system, Rimowa caters to the no-nonsense traveler looking for slick functionality. (Celebrity fans of the brand run the gamut, from Rihanna to Martha Stewart.) And as of late, the company is finding ways to infuse a bit of fashion into its heritage designs; recent collaborations include Off-White, Supreme, Daniel Arsham, and Dior, and most recently, Rimowa released a magnetic “luggage harness” that can be strapped over various suitcase sizes to streamline your hand-carry items.

Rimowa

Essential check-in suitcase

Rimowa

Essential Trunk Plus wheeled suitcase

Though Away has only been around for eight years, the New York-based brand has left its mark on the world—just visit any airport to see for yourself. Though Away was initially founded on its luggage’s ability to recharge your iPhones, the brand has expanded into a full range of suitcases—batteries not always included! You can’t go wrong with any of the products offered by this direct-to-consumer brand, which names everything in the most helpful of ways: The Carry-On, The Bigger Carry-On, etc.

Away

The Large: Aluminum Edition

Before Nicolas Ghesquière, and way before Marc Jacobs, Louis Vuitton was a maker of travel trunks. In 1854, Mr. Louis Vuitton had the novel idea to make trunks flat and rectangular (previously, they featured rounded tops) so that they could be easily stacked—the rest is history. Anyone who has caught Vuitton’s roving exhibitions dedicated to travel, Volez, Voyagez, Voguez, knows the extent of the maison’s dedication to the art of travel. Today, the brand continues to craft some of the finest pieces of luggage. Most often, these bags are splashed in Vuitton’s monogram or Damier Ebene canvas textiles.

Born in 2005, Steamline luggage was founded on nostalgia for the bygone heyday of travel. Think safari-ready leather travel trunks but with all the bells and whistles of a modern-day case. Its range of luggage includes vintage-esque rollaboards and a lovely collection of hat-box-shaped cross-bodies and cosmetics cases.

Named after Peru’s national symbol (a ceremonial, decorative knife), Tumi was founded in New Jersey in 1975. Since then, the brand has prided itself on technology-first design, most notably their black ballistic nylon travel bags. Durability and functionality are at the core of their design principles, a quality that appeals to Vogue’s Elise Taylor. “One year I broke three (yes, three!) weekender bags because I kept buying cheap ones I saw online. So I invested in Tumi’s continental carry-on.” Despite the hefty price tag, she’s a self-proclaimed happy customer. “It’s holding up remarkably well considering what I put it through—like overhead bin compartments it is way too big for (not the fault of the suitcase but rather because I’ve overstuffed it with random clothes), the cargo hold of Greek island ferries, and the chaotic luggage rack of the LAX-it bus.”

Tumi

Alpha 3 expanded packing case

Tumi

International carry-on luggage

Nearly everything from July, an Australian-based brand, is customizable. Bubble leathers and bold-colored graphic monograms can help to set your case apart from your fellow passengers. Plus, this brand is perfect for those carry-on-only packers who want to get the most out of their single bag; July celebrates its latest release as being the lightest carry-on on the market.

Globe-Trotter may look as though its riffing off of old-fashion luggage wares, but really, its dipping into its own archive for design inspiration. Founded in Germany in 1897, the company eventually moved to the U.K. in 1932, where its been producing leather-based luggage by hand for almost a century. Famous Globe-Trotter owners of yore include Winston Churchill and Queen Elizabeth, with contemporary celebrity customers including Kate Moss and Angelina Jolie.

Globe-Trotter

Safari leather-trimmed cosmetics case

Globe-Trotter

Centenary carry-on suitcase

With star-studded campaigns starring the likes of Ryan Gosling plus Bad Bunny and Kendall Jenner, Gucci’s heritage as a luggage atelier enters a new era. For polished and poised travel, the Savoy line is a favorite—the trolley’s GG Supreme canvas was inspired by an archival design from the 1930s and translates beautifully to the collection of covetable suitcases.

Gucci

Savoy leather-trimmed printed coated-canvas suitcase

Gucci

FPM Milano monogrammed coated-canvas and aluminum suitcase

This British brand has been around since 1914, but underwent a rebrand last year, focusing on functional, contemporary design that reflect the brand’s expert craftsmanship. Each suitcase also comes with a lifetime warranty.

Little has changed about the way Bric’s crafts its signature leather collections since the company was founded in 1952 by Mario Briccola. Today, the leather goods are still produced at family-run factories in Como. Even the label’s hard polycarbonate cases feature leather trim details to honor Bric’s artisanal heritage.

Bric’s

Capri 2.0 spinner expandable luggage

Bric’s

Bellagio carry-on spinner

There’s an iconic photograph showing Marilyn Monroe boarding an airplane, looking ever the portrait of wanderlust glamour. In her hand is a case by T Anthony, and it’s the brand’s heritage that keeps its loyal customers coming back. Since the label’s founding in 1948, the iconic New York luggage maker has prided itself on its ethically and responsibly designed wares.

Created by one of the founders of Tumi, Roam is a brand of luggage that leans on the personality of travelers to determine its assortment. The majority of its products are customizable, with the ability to mix and match colors. Plus, all of Roam’s luggage is crafted in the U.S.

The nostalgic set who don’t want to carry leather-strapped hat boxes might find what they’re looking for in Floyd, a brand dedicated to skateboarding and Venice Beach culture of the 1970s. Founded in 2019 by two Munich-based creatives, the brand brings the groove back to flying with its retro-hued Makrolon polycarbonate cases that can be paired with interchangeable wheels (inspired by those of skateboards, of course).

Founded in Los Angeles in 1989, Calpak sets itself apart with stylish luggage at a great price point. Known for slick hard-case bags, Calpak’s designs have an air of playfulness about them. In 2016, the brand offered an assortment of faux-marble luggage and it also collaborated with hairstylist Jen Atkin on a case in a distinct shade of red—excellent for spotting on the baggage carousel.

Calpak

Hue mini carry-on hardshell suitcase

Calpak

Hue large hardshell suitcase


Everything You Should Know

How we chose these luxury luggage brands

Leaning on our deep understanding of luxury and the factors that justify an investment (including elevated materials, practical details, and strong design), we curated a list that prioritizes both form and function. The final edit highlights designers with a longstanding reputation, as well as newcomers who have established themselves as worthy additions to the travel industry.

What size suitcase should I buy?

The right size suitcase depends on the length and type of journey you’re embarking on. A carry-on is always useful to have for quick trips (or for frequent fliers who hate waiting at the luggage carousel). Additionally, a large checked luggage will ensure you’re always prepared no matter the occasion.

Are hard shell suitcases better than soft?

Whether you choose a hard shell suitcase or soft is more a matter of preference than better versus worse. Hard shell suitcases offer more protection and are easier to clean, while soft shells are more flexible and typically include an exterior pocket.

Should I use a luggage cover?

This practical layer that wraps around your luggage can help protect against the scuffs, scratches, and bad weather it encounters from its journey to and from the airplane. If you’re determined to keep the exterior of your luggage in pristine condition, a cover might be a good idea. (Tip: Go for a clear luggage cover, like Calpak’s, so you can maintain the original look of your suitcase.)



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3 No-Brainer Artificial Intelligence (AI) Stocks to Buy on a Dip

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The market has returned to its highs, along with many top artificial intelligence (AI) names. However, another market dip could always be around the corner.

Let’s look at three top AI stocks that have made strong runs that would be good buys on a pullback.

Image source: Getty Images.

1. Palantir

With a high valuation but attractive growth opportunities, Palantir Technologies (PLTR -0.34%) is a stock that would be attractive on a dip. The company has emerged as one of the market’s most compelling AI growth stories, and its momentum has been gaining speed.

In the first quarter, Palantir posted its seventh consecutive period of accelerating growth, with revenue up 39%. The rise is being led by its U.S. commercial segments, which saw sales jump 71% and the value of future deals soar 127%.

While there is a lot of talk about which company is building the best AI model, Palantir is focused on something far more practical: making AI useful. Its Artificial Intelligence Platform (AIP) uses AI models to help solve real-world problems.

AIP does this by gathering data and then connecting it to physical assets and operational workflows, allowing companies to make AI more useful. As a result, the platform is being used for a growing list of purposes, including hospitals monitoring for sepsis, insurers using it in their underwriting, and energy companies optimizing their pipeline infrastructure.

The company’s largest customer is the U.S. government, which is starting to embrace AI to become more efficient. Last quarter, Palantir’s government revenue climbed 45%.

The company also recently landed a major deal with NATO, expanding into international defense just as Europe ramps up military spending. That gives it three potential growth engines: domestic commercial enterprises, the U.S. government, and now the international public sector.

Yes, the stock is expensive by traditional metrics, but Palantir looks like it’s laying the groundwork to become one of the next megacaps. As such, any pullback could be a great buying opportunity.

2. Nvidia

Nvidia (NVDA -0.42%) has once again been helping lead the market higher. The company recently got good news when the Trump administration said the U.S. would ease chip export controls, allowing the company to resume selling its H20 chips to China. This will add billions in revenue.

Nvidia remains the undisputed champion of AI infrastructure, with its graphics processing units (GPUs) the backbone of this build-out due to their fast processing speeds. And the company has sped up its development cycle to ensure it remains on top.

Over the past two years, data center revenue has exploded from $4.3 billion to more than $39 billion — incredible growth for a company the size of Nvidia. It held a 92% share in the GPU market in the first quarter.

Its chips drive sales, but its secret weapon is its CUDA software. The company created the free platform in 2006 as a way to expand the use of GPUs beyond their original purpose of speeding up graphics in video games.

While it was slow to play out in other end markets, Nvidia smartly pushed CUDA into academia and research labs, where early AI research was being done. That led developers to build directly on CUDA, leading to a growing collection of tools and libraries designed to maximize GPU performance for AI workloads.

If shares of Nvidia dip, be ready to pounce. Data center spending continues to ramp up, and the company has a big opportunity in the automotive market, too, as autonomous and smart vehicles start to become more prevalent.

3. Microsoft

Another company that has seen its stock run up in price is Microsoft (MSFT -0.32%). It dominates the enterprise software space with its Microsoft 365 suite of worker productivity products and has one of the leading cloud computing companies in Azure.

The cloud remains the company’s fastest-growing business, with the unit producing revenue growth of 30% or more each of the past seven quarters. Azure revenue jumped 33% last quarter (35% in constant currency), with nearly half of that coming from AI services. Growth could have been even higher, but Microsoft has been hitting capacity constraints.

As such, it plans to ramp up capital expenditures (capex) in fiscal 2026 with a focus on adding GPUs and servers. It said those assets are more directly tied to AI revenue than buying the buildings that house them. That’s a smart move that should support continued cloud computing momentum.

Microsoft’s $10 billion investment in OpenAI gave it an early AI lead, especially with Azure initially being granted exclusive access to its leading large language models (LLMs). Companies continue to be attracted to OpenAI’s popular AI models, and Azure gives its customers direct access to them.

It has also embedded OpenAI’s models throughout its ecosystem to run its Copilot, which is gaining popularity with businesses. At $30 per enterprise user per month, it offers a lot of strong upside.

That said, the OpenAI partnership is getting complicated. The exclusivity deal is over, and the two sides are reportedly negotiating new terms as the AI provider looks to restructure. Still, Microsoft remains entitled to 49% of OpenAI Global’s profits up to a tenfold return on its investment — potentially a huge payday.

Microsoft remains in a strong long-term position. The stock’s recent run-up makes it an attractive candidate to buy on any pullback.



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Prediction of birthweight with early and mid-pregnancy antenatal markers utilising machine learning and explainable artificial intelligence

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