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The best budget smartphone you can buy

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Some of us take a kind of “I eat to live” rather than an “I live to eat” approach to gadgets. They’re tools that help you get things done, not something you want to invest a lot of time or money in. If that’s you — and there’s no judgment here from a certifiable gadget nerd — then you can probably think of more worthwhile ways to spend $1,000 than on a phone.

Budget phones to the rescue. These devices are roughly $500 or under, though not all of them, and they’re more capable than ever. You won’t get all the bells and whistles, but you will save a little money to spend on, I don’t know, actual bells and whistles. It’s your world.

What I’m looking for

There’s no shortcut to properly testing a phone; I put my personal SIM card (physical or otherwise) in each phone I review and live with it for a minimum of one full week. I set up each phone from scratch, load it up with my apps, and go about living my life — stress testing the battery, using GPS navigation on my bike while streaming radio, taking rapid-fire portrait mode photos of my kid — everything I can throw at it. Starting over with a new phone every week either sounds like a dream or your personal hell, depending on how Into Phones you are. For me, switching has become so routine that it’s mostly painless.

At least a couple of years of OS upgrades and, ideally, three years of security updates. There’s no point in buying even a cheap phone if you have to replace it after just a couple of years because it stopped getting security patches.

Since you look at it roughly two thousand times a day, your phone’s screen is one place you shouldn’t compromise. An OLED has richer contrast and color than an LCD, and the big screens on today’s phones really need at least a 1080p resolution. Faster refresh rates like 90Hz and even 120Hz are becoming more common on budget phone screens; however, for my money, a smooth-scrolling LCD doesn’t look as nice as an OLED with a standard refresh rate.

If you plan to hang onto your phone for a while, you’ll want enough storage space to accommodate all the system files, photos, and videos you’ll accumulate over the years. Ideally, you’ll get at least 128GB built in.

Upgrades like telephoto cameras and optical image stabilization are rare in the under-$500 class, but you can still expect good, basic performance in good lighting from any modern smartphone. Low light is trickier. Phones in this class should offer a night mode to help with non-moving subjects in very dim light. And there are no bonus points awarded for adding extra macro and depth cameras to pad out the rear camera array — those 2- and 5-megapixel sensors are pretty much useless.

What compromises can you expect from a budget phone? Some combination of the following: slower processors, less storage, and worse cameras than flagship phones, almost across the board. Many have lower-resolution screens, and water resistance is often less robust than on a pricier phone.

A hands-on photo of Apple’s iPhone 16E.

$599

The Good

  • Reliable performance
  • Good, if limited, camera system
  • It’s the cheapest new iPhone you can buy

The Bad

  • No MagSafe
  • $599 feels like $100 too much
  • No ultrawide

Screen: 6.1-inch, 1170p OLED / Processor: A18 Cameras: 48-megapixel f/1.6 with OIS, 12-megapixel selfie / Charging: 20W wired, 7.5W wireless / Weather-resistance rating: IP68

If I were making this recommendation to you face-to-face, you’d hear a heavy sigh. Yes, this is the cheapest new iPhone Apple makes. Yes, it comes with most of the things that make an iPhone an iPhone. But it comes with some significant tradeoffs — some of which make more sense than others — and it’s not exactly cheap. If you’re amenable to last year’s model or a refurbished iPhone 14, one of those might actually be a better option. But for an unfussy person who just wants a new iPhone for the least amount of money, the 16E will do the trick.

There’s a single 48-megapixel rear camera on the back, meaning there’s no ultrawide like on the regular 16. That’s an understandable tradeoff — so is the use of the older “notch” design rather than the Dynamic Island. But it’s harder to understand why Apple left out MagSafe here — that’s the ring of magnets built into the back of virtually every other iPhone since 2020. The 16E still supports wireless charging, but it can’t take advantage of the ecosystem of magnetic chargers and accessories on its own; you’ll need to add a magnetic case. This is a silly omission, and Apple should feel bad about it.

Another heavy sigh: the 16E supports Apple Intelligence, which you won’t get if you opt for an iPhone 15 or 14. Should you care? It’s really hard to say. What exists of Apple Intelligence so far is underwhelming and the most interesting bits won’t arrive anytime soon. If you want to future-proof your purchase as much as possible, the 16E will be ready for Apple’s AI. But don’t buy one expecting a life-changing experience now. It’s just an iPhone after all, for better and worse, and right now it’s the best price you’ll find on a brand-new one.

Read my full iPhone 16E review.

The best Android phone under $500

Google Pixel 9A in peony pink on a purple background.Google Pixel 9A in peony pink on a purple background.

$499

The Good

  • Robust IP68 rating
  • Seven years of software updates
  • Brighter, bigger screen

The Bad

  • Missing a couple of AI features
  • AI is occasionally handy, usually weird

Screen: 6.3-inch, 1080p OLED, 120Hz / Processor: Tensor G4 Cameras: 48-megapixel f/1.7 with OIS, 13-megapixel ultrawide, 13-megapixel selfie / Battery: 5,100mAh / Charging: 23W wired, 7.5W wireless / Weather-resistance rating: IP68

Google’s Pixel A-series phones have been my go-to recommendation for a cheap Android phone for years, but there was still room for improvement. With the 9A, Google made some modest tweaks that make it even easier to recommend — and at $499, the price is right.

The phone uses a Tensor G4 chipset that doesn’t run as hot as some of its predecessors, and performance is reliable. The 6.3-inch OLED screen is a little bigger and a bit brighter than last year’s, which makes a noticeable difference when you use the phone outside. Durability also received a slight boost to IP68, which means it can withstand a drop in deeper water than the IP67-rated Pixel 8A.

The 9A’s camera is fine, though it comes up short against the rest of the Pixel 9 series in low light. Portrait mode could be better, too, and if you care a lot about image quality, then that might be a good reason to consider stepping up to a Pixel 9. But it does the trick for everyday snaps, and for the price, the 9A’s better qualities outweigh its shortcomings by a wide margin.

Read my full Google Pixel 9A review.

The budget phone with a big, beautiful screen

OnePlus 13R on a blue backgroundOnePlus 13R on a blue background

$497

The Good

  • Excellent battery life
  • Great screen for the price
  • Six years of security updates

The Bad

  • No wireless charging
  • Only splash-resistant
  • Fewer OS updates than Google and Samsung

Screen: 6.78-inch, 1264 x 2780 120Hz OLED / Processor: Snapdragon 8 Gen 3 Cameras: 50-megapixel f/1.8 with OIS, 50-megapixel 2x telephoto, 8-megapixel ultrawide, 16-megapixel selfie / Battery: 6,000mAh / Charging: 80W wired / Weather-resistance rating: IP65

The OnePlus 13R isn’t quite as well-rounded as my pick for the best overall budget Android phone, the Pixel 9A. It’s also a little pricier at $599 — although we’ve seen it on sale for $499 for extended periods of time — but for some people, the 13R’s upgrades will make it a better choice. It comes with one of the best big screens in its class, and many people love a big screen. The 13R also offers very strong battery performance; unless you’re a power user, you can probably manage two full days on a single charge.

There’s also very fast charging with the included charger, though you won’t find wireless charging at any speed. The 13R also lacks full water resistance; it should hold up fine against sprays and rain showers, but it isn’t rated to withstand full immersion. Plenty of people won’t find those omissions bothersome, but they make it harder to recommend to a general audience, especially at a higher price than the Pixel 9A.

Read my full OnePlus 13R review.

The best phone under $400

Samsung A53 5G on a deskSamsung A53 5G on a desk

$260

The Good

  • Bright, 120Hz OLED display
  • Robust IP67 dust and water resistance
  • Five years of security updates

The Bad

  • No wireless charging
  • Unremarkable camera system
  • So-so performance

Screen: 6.6-inch, 1080p resolution, 120Hz OLED / Processor: Exynos 1380 Cameras: 50-megapixel f/1.8 with OIS, 8-megapixel ultrawide, 5-megapixel macro, 13-megapixel selfie / Battery: 5,000mAh / Charging: 25W wired / Weather-resistance rating: IP67

The Samsung Galaxy A35 5G comes with surprisingly strong specs for its $399 price. They’re the kind of features you won’t really spot from the outside, but they’re important, particularly its IP67 rating for dust and water resistance. Unlike virtually every other phone at this price, the A35 5G is built to withstand water immersion, so you don’t need to sweat it if your phone lands in a toilet bowl or puddle.

Here’s another unexciting spec: four years of OS updates and five years of security updates. That’s not the very best in the budget category — the Pixel 9A takes that honor with seven years of updates — but it’s much better than the two or three years we typically see in phones well under $500.

Samsung A35 5G on a desk showing back panel.

The A35 5G comes with a water-resistance rating and software support policy that are unusually strong for its class.
Photo: Allison Johnson / The Verge

The camera is lackluster; it’s fine in bright light but struggles in dim and mixed indoor lighting. It doesn’t have the strongest processing performance you can find under $500, either, and the Samsung-made Exynos processor occasionally stutters when quickly bouncing between tasks. I was horrified — horrified! — when I accidentally texted my husband one of the automatically generated replies because it popped up at the last moment as I was trying to tap on something else. These things don’t happen when everything loads quickly.

Overall, the A35 5G is a compelling package — especially with its big, crowd-pleasing OLED display and strong battery performance. That being said, Samsung just released the Galaxy A36 5G in March. It offers a slightly larger 6.7-inch display and a more powerful Snapdragon 6 Gen 3 processor for the same price; however, the newer midrange device trades the microSD slot in favor of a second SIM card slot, so you lose out on the ability to expand your storage for photos, videos, and other media.

Other budget phones to consider

  • The 2025 Motorola Moto G Power offers a lot despite its starting price of $299.99. It features a 6.8-inch LCD display, a 5,000mAh battery, wireless charging support, and a 3.5mm headphone jack, which is increasingly rare in 2025. Additionally, the device combines both IP68 and IP69 ratings, meaning it’s rated for both submersion in water and exposure to high-pressure water jets and steam, in addition to full protection from dust.
  • The Samsung Galaxy S24 FE is another perfectly capable phone that doesn’t quite earn a recommendation here. It’s a little outside the scope of this guide at $649 anyway, but you do get a telephoto lens and a nice, big screen for that price. Still, you’re better off saving a bunch and picking up the Pixel 9A or trying to score a trade-in promo for the newer Galaxy S25. Read our review.
  • The Samsung Galaxy A56 recently launched in the US with a starting price of $499. The device has all the makings of a solid midrange phone, including a 6.7-inch OLED display, a 50-megapixel main camera, an Exynos 1580 chip, and a 5,000mAh battery with 45W wired charging. Although we haven’t tested it yet, it has some pretty stiff competition in the form of the Pixel 9A, which also has a starting price of $499.
  • We got our first glimpse of the TCL 60 XE Nxtpaper 5G back at CES 2025, and it’s finally in our hands for testing. The device features an Nxtpaper matte LCD screen that’s supposed to be easier on your eyes than a traditional LCD, as it reduces your exposure to blue light. It also features a “Max Ink Mode,” which turns the screen monochrome and silences notifications. This, in turn, can help extend the phone’s battery life to multiple days. Read our initial impressions.

Update, July 24th: Updated pricing / availability and added a mention of the 2025 Moto G Power, Galaxy A56, and TCL 60XE Nxtpaper 5G to the “other budget phones to consider” section.

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Artificial Intelligence

Combing the Rackspace blogfiles for operational AI pointers

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In a recent blog output, Rackspace refers to the bottlenecks familiar to many readers: messy data, unclear ownership, governance gaps, and the cost of running models once they become part of production. The company frames them through the lens of service delivery, security operations, and cloud modernisation, which tells you where it is putting its own effort.

One of the clearest examples of operational AI inside Rackspace sits in its security business. In late January, the company described RAIDER (Rackspace Advanced Intelligence, Detection and Event Research) as a custom back-end platform built for its internal cyber defense centre. With security teams working amid many alerts and logs, standard detection engineering doesn’t scale if dependent on the manual writing of security rules. Rackspace says its RAIDER system unifies threat intelligence with detection engineering workflows and uses its AI Security Engine (RAISE) and LLMs to automate detection rule creation, generating detection criteria it describes as “platform-ready” in line with known frameworks such as MITRE ATT&CK. The company claims it’s cut detection development time by more than half and reduced mean time to detect and respond. This is just the kind of internal process change that matters.

The company also positions agentic AI as a way of taking the friction out of complex engineering programmes. A January post on modernising VMware environments on AWS describes a model in which AI agents handle data-intensive analysis and many repeating tasks, yet it keeps “architectural judgement, governance and business decisions” remain in the human domain. Rackspace presents this workflow as stopping senior engineers being sidelined into migration projects. The article states the target is to keep day two operations in scope – where many migration plans fail as teams discover they have modernised infrastructure but not operating practices.

Elsewhere the company sets out a picture of AI-supported operations where monitoring becomes more predictive, routine incidents are handled by bots and automation scripts, and telemetry (plus historical data) are used to spot patterns and, it turn, recommend fixes. This is conventional AIOps language, but it Rackspace is tying such language to managed services delivery, suggesting the company uses AI to reduce the cost of labour in operational pipelines in addition to the more familiar use of AI in customer-facing environments.

In a post describing AI-enabled operations, the company stresses the importance of focus strategy, governance and operating models. It specifies the machinery it needed to industrialise AI, such as choosing infrastructure based on whether workloads involve training, fine-tuning or inference. Many tasks are relatively lightweight and can run inference locally on existing hardware.

The company’s noted four recurring barriers to AI adoption, most notably that of fragmented and inconsistent data, and it recommends investment in integration and data management so models have consistent foundations. This is not an opinion unique to Rackspace, of course, but having it writ large by a technology-first, big player is illustrative of the issues faced by many enterprise-scale AI deployments.

A company of even greater size, Microsoft, is working to coordinate autonomous agents’ work across systems. Copilot has evolved into an orchestration layer, and in Microsoft’s ecosystem, multi-step task execution and broader model choice do exist. However, it’s noteworthy that Redmond is called out by Rackspace on the fact that productivity gains only arrive when identity, data access, and oversight are firmly ensconced into operations.

Rackspace’s near-term AI plan comprises of AI-assisted security engineering, agent-supported modernisation, and AI-augmented service management. Its future plans can perhaps be discerned in a January article published on the company’s blog that concerns private cloud AI trends. In it, the author argues inference economics and governance will drive architecture decisions well into 2026. It anticipates ‘bursty’ exploration in public clouds, while moving inference tasks into private clouds on the grounds of cost stability, and compliance. That’s a roadmap for operational AI grounded in budget and audit requirements, not novelty.

For decision-makers trying to accelerate their own deployments, the useful takeaway is that Rackspace has treats AI as an operational discipline. The concrete, published examples it gives are those that reduce cycle time in repeatable work. Readers may accept the company’s direction and still be wary of the company’s claimed metrics. The steps to take inside a growing business are to discover repeating processes, examine where strict oversight is necessary because of data governance, and where inference costs might be reduced by bringing some processing in-house.

(Image source: Pixabay)

 

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Ronnie Sheth, CEO, SENEN Group: Why now is the time for enterprise AI to ‘get practical'

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Before you set sail on your AI journey, always check the state of your data – because if there is one thing likely to sink your ship, it is data quality.

Gartner estimates that poor data quality costs organisations an average of $12.9 million each year in wasted resources and lost opportunities. That’s the bad news. The good news is that organisations are increasingly understanding the importance of their data quality – and less likely to fall into this trap.

That’s the view of Ronnie Sheth, CEO of AI strategy, execution and governance firm SENEN Group. The company focuses on data and AI advisory, operationalisation and literacy, and Sheth notes she has been in the data and AI space ‘ever since [she] was a corporate baby’, so there is plenty of real-world experience behind the viewpoint. There is also plenty of success; Sheth notes that her company has a 99.99% client repeat rate.

“If I were to be very practical, the one thing I’ve noticed is companies jump into adopting AI before they’re ready,” says Sheth. Companies, she notes, will have an executive direction insisting they adopt AI, but without a blueprint or roadmap to accompany it. The result may be impressive user numbers, but with no measurable outcome to back anything up.

Even as recently as 2024, Sheth saw many organisations struggling because their data was ‘nowhere where it needed to be.’ “Not even close,” she adds. Now, the conversation has turned more practical and strategic. Companies are realising this, and coming to SENEN Group initially to get help with their data, rather than wanting to adopt AI immediately.

“When companies like that come to us, the first course of order is really fixing their data,” says Sheth. “The next course of order is getting to their AI model. They are building a strong foundation for any AI initiative that comes after that.

“Once they fix their data, they can build as many AI models as they want, and they can have as many AI solutions as they want, and they will get accurate outputs because now they have a strong foundation,” Sheth adds.

With breadth and depth in expertise, SENEN Group allows organisations to right their course. Sheth notes the example of one customer who came to them wanting a data governance initiative. Ultimately, it was the data strategy which was needed – the why and how, the outcomes of what they were trying to do with their data – before adding in governance and providing a roadmap for an operating model. “They’ve moved from raw data to descriptive analytics, moving into predictive analytics, and now we’re actually setting up an AI strategy for them,” says Sheth.

It is this attitude and requirement for practical initiatives which will be the cornerstone of Sheth’s discussion at AI & Big Data Expo Global in London this week. “Now would be the time to get practical with AI, especially enterprise AI adoption, and not think about ‘look, we’re going to innovate, we’re going to do pilots, we’re going to experiment,’” says Sheth. “Now is not the time to do that. Now is the time to get practical, to get AI to value. This is the year to do that in the enterprise.”

Watch the full video conversation with Ronnie Sheth below:

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Apptio: Why scaling intelligent automation requires financial rigour

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Greg Holmes, Field CTO for EMEA at Apptio, an IBM company, argues that successfully scaling intelligent automation requires financial rigour.

The “build it and they will come” model of technology adoption often leaves a hole in the budget when applied to automation. Executives frequently find that successful pilot programmes do not translate into sustainable enterprise-wide deployments because initial financial modelling ignored the realities of production scaling.

“When we integrate FinOps capabilities with automation, we’re looking at a change from being very reactive on cost management to being very proactive around value engineering,” says Holmes.

This shifts the assessment criteria for technical leaders. Rather than waiting “months or years to assess whether things are getting value,” engineering teams can track resource consumption – such as cost per transaction or API call – “straight from the beginning.”

The unit economics of scaling intelligent automation

Innovation projects face a high mortality rate. Holmes notes that around 80 percent of new innovation projects fail, often because financial opacity during the pilot phase masks future liabilities.

“If a pilot demonstrates that automating a process saves, say, 100 hours a month, leadership thinks that’s really successful,” says Holmes. “But what it fails to track is that the pilot sometimes is running on over-provisioned infrastructure, so it looks like it performs really well. But you wouldn’t over-provision to that degree during a real production rollout.”

Moving that workload to production changes the calculus. The requirements for compute, storage, and data transfer increase. “API calls can multiply, exceptions and edge cases appear at volume that might have been out of scope for the pilot phase, and then support overheads just grow as well,” he adds.

To prevent this, organisations must track the marginal cost at scale. This involves monitoring unit economics, such as the cost per customer served or cost per transaction. If the cost per customer increases as the customer base grows, the business model is flawed.

Conversely, effective scaling should see these unit costs decrease. Holmes cites a case study from Liberty Mutual where the insurer was able to find around $2.5 million of savings by bringing in consumption metrics and “not just looking at labour hours that they were saving.”

However, financial accountability cannot sit solely with the finance department. Holmes advocates for putting governance “back in the hands of the developers into their development tools and workloads.”

Integration with infrastructure-as-code tools like HashiCorp Terraform and GitHub allows organisations to enforce policies during deployment. Teams can spin up resources programmatically with immediate cost estimates.

“Rather than deploying things and then fixing them up, which gets into the whole whack-a-mole kind of problem,” Holmes explains, companies can verify they are “deploying the right things at the right time.”

When scaling intelligent automation, tension often simmers between the CFO, who focuses on return on investment, and the Head of Automation, who tracks operational metrics like hours saved.

“This translation challenge is precisely what TBM (Technology Business Management) and Apptio are designed to solve,” says Holmes. “It’s having a common language between technology and finance and with the business.”

The TBM taxonomy provides a standardised framework to reconcile these views. It maps technical resources (such as compute, storage, and labour) into IT towers and further up to business capabilities. This structure translates technical inputs into business outputs.

“I don’t necessarily know what goes into all the IT layers underneath it,” Holmes says, describing the business user’s perspective. “But because we’ve got this taxonomy, I can get a detailed bill that tells me about my service consumption and precisely which costs are driving  it to be more expensive as I consume more.”

Addressing legacy debt and budgeting for the long-term

Organisations burdened by legacy ERP systems face a binary choice: automation as a patch, or as a bridge to modernisation. Holmes warns that if a company is “just trying to mask inefficient processes and not redesign them,” they are merely “building up more technical debt.”

A total cost of ownership (TCO) approach helps determine the correct strategy. The Commonwealth Bank of Australia utilised a TCO model across 2,000 different applications – of various maturity stages – to assess their full lifecycle costs. This analysis included hidden costs such as infrastructure, labour, and the engineering time required to keep automation running.

“Just because of something’s legacy doesn’t mean you have to retire it,” says Holmes. “Some of those legacy systems are worth maintaining just because the value is so good.”

In other cases, calculating the cost of the automation wrappers required to keep an old system functional reveals a different reality. “Sometimes when you add up the TCO approach, and you’re including all these automation layers around it, you suddenly realise, the real cost of keeping that old system alive is not just the old system, it’s those extra layers,” Holmes argues.

Avoiding sticker shock requires a budgeting strategy that balances variable costs with long-term commitments. While variable costs (OPEX) offer flexibility, they can fluctuate wildly based on demand and engineering efficiency.

Holmes advises that longer-term visibility enables better investment decisions. Committing to specific technologies or platforms over a multi-year horizon allows organisations to negotiate economies of scale and standardise architecture.

“Because you’ve made those longer term commitments and you’ve standardised on different platforms and things like that, it makes it easier to build the right thing out for the long term,” Holmes says.

Combining tight management of variable costs with strategic commitments supports enterprises in scaling intelligent automation without the volatility that often derails transformation.

IBM is a key sponsor of this year’s Intelligent Automation Conference Global in London on 4-5 February 2026. Greg Holmes and other experts will be sharing their insights during the event. Be sure to check out the day one panel session, Scaling Intelligent Automation Successfully: Frameworks, Risks, and Real-World Lessons, to hear more from Holmes and swing by IBM’s booth at stand #362.

See also: Klarna backs Google UCP to power AI agent payments

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