惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

K
Kaspersky official blog
Engineering at Meta
Engineering at Meta
D
DataBreaches.Net
Stack Overflow Blog
Stack Overflow Blog
Microsoft Security Blog
Microsoft Security Blog
Y
Y Combinator Blog
B
Blog RSS Feed
GbyAI
GbyAI
P
Proofpoint News Feed
aimingoo的专栏
aimingoo的专栏
MyScale Blog
MyScale Blog
D
Docker
阮一峰的网络日志
阮一峰的网络日志
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
Recorded Future
Recorded Future
美团技术团队
The Register - Security
The Register - Security
V
Visual Studio Blog
H
Hackread – Cybersecurity News, Data Breaches, AI and More
T
Tailwind CSS Blog
爱范儿
爱范儿
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
T
The Blog of Author Tim Ferriss
博客园 - 司徒正美
量子位
B
Blog
F
Fortinet All Blogs
Martin Fowler
Martin Fowler
博客园 - 【当耐特】
MongoDB | Blog
MongoDB | Blog
A
About on SuperTechFans
I
InfoQ
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
有赞技术团队
有赞技术团队
雷峰网
雷峰网
大猫的无限游戏
大猫的无限游戏
J
Java Code Geeks
L
LangChain Blog
Latest news
Latest news
S
SegmentFault 最新的问题
Exploit-DB.com RSS Feed
Exploit-DB.com RSS Feed
Blog — PlanetScale
Blog — PlanetScale
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
Cisco Talos Blog
Cisco Talos Blog
F
Full Disclosure
C
Cisco Blogs
D
Darknet – Hacking Tools, Hacker News & Cyber Security
W
WeLiveSecurity
T
Tenable Blog
T
Tor Project blog

The Register

Shadow IT has given way to shadow AI. Enter AI-BOMs Zed team releases version 1.0 of Rust-built editor: Traditional editor and AI tool Microsoft boss tells investors the company is working to 'win back fans' What type of 'C2 on a sleep cycle' do they leave behind? Novel Chinese spy group found in critical networks in Poland, Asia NASA boss: Make Pluto A Planet Again GitHub says sorry and vows to do better as uptime slips and devs complain Age checks could turn internet into an ID checkpoint, complains Proton CEO Microsoft gives your Word documents an AI co-author you didn’t ask for Datadog digs down into GPU efficiency as AI costs soar If malware via monitor cables is a matter of national security, this might be the gadget for you Thunderbird in hand worth 2 Outlooks as fresh FOSS fave and Firefox arrive Grafana offers AI assistant for free, warns users not to go mad Right to repair champ Framework punts modular 13in laptop with Core Ultra Series 3 France's 'Secure' ID agency probes breach as crooks claim 19M records Scotland Yard can keep using live facial recognition on Londoners, say judges UK tribunal sends £2B claim accusing Microsoft of overcharging for licensing to trial Nation-states want to cause harm, not just steal cash - stop handing your cyber defenses to the cheapest contractor Murder, she wrote: Ex-FBI chief wants some ransomware crims charged with homicide Phone-to-satellite use goes into orbit, growing 25% in 8 months macOS ClickFix attacks deliver AppleScript stealers to snarf credentials, wallets Anthropic bakes memory fixes into Bun 1.1.13 as developers complain of leaks The spaghettified DBMS chart that shows Oracle's crown is slowly slipping Yet another ex-ransomware negotiator admits turning rogue after payoff from crimelords FAA grounds Blue Origin's New Glenn as it probes missed satellite delivery 'mishap' AMD's Ryzen 9 9950X3D2 Dual Edition tested: Gratuitous overkill with a price to match AI-assisted intruders pwned Vercel via OAuth abuse and a pilfered employee account Crook claims to leak 'video surveillance footage' of companies Met police trials snoop tech platform in push to cuff more London shoplifters England's school phone ban gets teeth, just in time to bite no one Adaptavist Group breach spawns imposter emails as ransomware crew claims mega-haul Panasonic creates device-locked QR codes to speed facial biometric capture Iran claims US used backdoors to knock out networking equipment during war NASA Inspector fears new spacesuits won’t be ready for Moon landing Vibe coding upstart Lovable denies data leak, cites 'intentional behavior,' then throws HackerOne under the bus Trump-branded datacenter project fails to make itself great, again World's blandest man steps down from CEO job to spend more time in tastefully appointed home Chase got a spiff of $77 million to create one job with New York datacenter Scot becomes second Scattered Spider-linked crook to plead guilty in US You too can build a nuclear battery from junk you have lying around the house Schmoozebots: study finds flattery will get AI everywhere One of Europe's sovereign cloud picks may not be so-sovereign after all New Android development tool designed for robots, not humans AI is reshaping Britain's datacenter map away from London HP's remote desktop push retreats as Anyware heads for end of life 'Invisible mouse' made a mess of PC rebuild NASA working on ‘Big Bang’ upgrade to keep the Voyagers alive for longer Indonesia’s game rating system paused amid claims it leaked developer creds and glimpses of major new titles Just like phishing for gullible humans, prompt injecting AIs is here to stay Atlassian’s new data collection policy protects rich customers while AI eats the rest Intel eases reliance on TSMC with 'Merica-made Core Series 3 processors NASA gets the ball rolling on its part in Europe's jinxed Mars rover mission Attention data hoarders: Alexa loses its Plex appeal as voice feature gets canned Locked-out iPhone user tells The Reg that Apple is scrambling to fix character flaw passcode bug Would you like fries with that terminal? Capita won disastrous UK pensions gig after acing performance checks NodeWeaver says its perpetual licensing beats VMware’s perpetual price hikes Maine to pause big bit barns as local opposition spreads If you want into Anthropic's Claude club, you may have to show ID DuckDB uses RDBMS to tackle lakehouse 'small changes' issue Iran has something America can only dream of: cheap broadband Brussels tells Google to hand rivals its search crown jewels as privacy row brews Visual Studio 18.5 lands with AI debugging at a price Git identity spoof fools Claude into giving bad code the nod McGraw Hill linked to 13.5M-record data leak Microsoft announces product it doesn't want anyone to buy Obsolete Google nag drowns out vital bar information at Swedish concert hall Cops hand Motorola £25M to keep 2000-era radios alive Server-room lock was nothing but a crock QUIC will soon be as important as TCP – but it's vastly different Nobody knows how many CVEs Anthropic's Project Glasswing has actually found Allbirds shoe company moving to AI infra is the top 20-year-old Enlightenment E16 bug finally gets patched Bad teacher bots can leave hidden marks on model students Autovista blames ransomware for service disruption Networks not ready for the challenges of AI traffic Windows takes a crash dump after one McDonald's too many French cops free mother and son after crypto kidnapping US states can't account for datacenter tax breaks. Literally Salesforce debuts Headless 360 agentic platform Fission impossible: Uncle Sam wants nuclear power in space UK told its Big Tech habit is now a national security risk UKAEA lays out roadmap to take Britain closer to fusion Waymo's self-driving cars face their toughest test yet: London The only technology that died more times than VR is AI, and that seems to have worked out Boeing soars past Airbus for the first time in years Commvault has a Ctrl+Z for rogue AI agents Nvidia slaps forehead: AI, that's what quantum needs! Oracle taps Bloom for fuel cells to support datacenter binge GitHub recalls Phabricator with preview of Stacked PRs Physicist proposes two-button calculator Amazon pays $11.5B to satisfy satellite-envy while cowering in Musk's shadow No honor among thieves as 0APT threatens rival ransomware gang Krybit NASA insiders oddly relaxed about latest budget threats Microsoft raises UK Surface prices as RAM crisis reaches the checkout OpenAI CEO Sam Altman home attack suspect charged Microsoft kills off Outlook Lite as memory costs skyrocket UK state bank considers lengthening disastrous IT program Japan going back to the future by reviving its chip industry Windows Update: Torture chamber for seldom-used PCs Japanese rocket came unglued, causing mission fail
Cost per sample? Try cost per attempt
Anastasia Raskolova · 2026-06-11 · via The Register

This article is aimed at bioinformatics platform leads, ML infrastructure engineers, and genomics budget owners who are now running GPU-accelerated workflows in the cloud. It's about a hidden cost problem that almost every genomics infrastructure team is paying for — and very few are actively measuring. The observations here are specific to short-read sequencing workflows, which remain the dominant data type in production genomics environments.

Short-read sequencing pipelines, standard in next-generation sequencing (NGS) workflows, used to be CPU-heavy. You'd run them on a cluster, they'd grind through alignment and variant calling over hours, and the bottleneck was CPU throughput. GPU acceleration wasn't the story.

That has changed. AI-driven variant calling, GPU-accelerated alignment tools like Parabricks, and deep learning models running on top of sequencing data have all moved toward the GPU, which means teams are managing serious GPU infrastructure for the first time.

The cost model that comes with GPU cloud differs sharply from CPU clusters, and people are bringing CPU-era assumptions about pipeline reliability and cost accounting into a GPU environment. That mismatch is costing them.

We work with a lot of these teams, and when we ask about infrastructure costs, they almost always lead with the same number: cost per sample. That's what gets reported upward, what sits in the budget. What that number hides is where things get interesting.

When pipelines fail

A typical short-read germline variant calling pipeline has maybe ten to 15 distinct processing steps. You start with raw FASTQ files off the sequencer, run quality control, alignment, duplicate marking, base quality score recalibration, variant calling, annotation — each step hands off to the next.

These pipelines mostly run on workflow managers like Nextflow or Snakemake, which do have built-in mechanisms for resuming failed jobs. Nextflow has a flag designed to let you pick up from step eight of 11 rather than restarting from scratch. In principle, that's exactly the right solution.

In practice, the problem is configuration. For that flag to work, Nextflow needs to find its cache directory — the folder that records which steps completed successfully. If the solutions architect set up the compute environment without properly configuring persistent disk space for that cache, the file isn't there when you need it, and the pipeline restarts from step one anyway. That's a setup failure rather than a tool limitation, but the result is the same: you've paid for compute you didn't get output from.

When a large task fails mid-execution rather than at a clean step boundary, even proper checkpointing won't save you, because the task has to be rerun in full.

A problem difficult to measure

Genomics teams working with Nebius consistently report that 15 to 40 percent of their pipeline runs hit at least one failure and restart before completion. Pinning the figure down precisely is hard, and we have no definitive numbers that reflect the reality here.

The range is wide because it depends heavily on how mature the infrastructure setup is. Teams with well-configured environments sit at the low end; teams newer to GPU cloud, or running on spot instances with higher interruption rates, sit at the high end.

What makes this invisible is that if your metric is cost per completed sample, a failed run that eventually completes still looks like one sample at normal cost. The retry disappears from the number that gets reported.

For example, a GPU-accelerated whole genome sequencing pipeline — germline variant calling — takes roughly two GPU-hours on an H200. At current on-demand rates that's about $9 of compute per sample, and that's the visible cost.

Now apply a 25 percent failure rate — toward the conservative end of what teams report. For every four samples you complete, one run failed, restarted, and ran from the beginning. Your real cost per completed sample isn't $9 anymore — it's $11.25, a 25 percent hidden markup.

Scale that to a team processing 2,000 samples a month: the visible compute bill says $18,000, but the real cost is $22,500. That's $4,500 a month — $54,000 a year — in compute that produced no output. For a mid-size genomics team, that's a meaningful fraction of the cloud budget, and it shows up nowhere as waste.

That's before you touch storage.

The hidden costs

The storage picture is more nuanced than people expect. A standard whole genome generates roughly 200 gigabytes of raw FASTQ data, but that's the uncompressed figure. In practice, almost everything going into cold storage is compressed, typically down to around 30 gigabytes per sample, so the storage cost per sample is quite manageable.

Where it gets complicated is retrieval. When you want to reanalyze archived samples — say, running a new cohort through an updated pipeline — you pull those compressed files back, and your infrastructure then needs to decompress them. That 30-gigabyte compressed file expands to 200 gigabytes, which means you need the disk space and memory headroom to handle the expansion. If the environment wasn't sized for it, you get failures or severe slowdowns at the decompression step, which becomes another category of hidden cost that's rarely accounted for up front.

In cancer research, the numbers are much larger. Somatic mutation calling runs at 60x to 100x sequencing depth, so 600-gigabyte FASTQ files aren't unusual. Everything I've described scales accordingly.

The key point: retrieval from cold storage always has a cost, regardless of where your compute lives relative to your storage. Some platforms charge for data egress between regions on top of that. Either way, the teams that haven't modeled their reanalysis frequency as a real line item are almost always surprised when they do.

Tracking, tracking and tracking...

Bioinformatics engineers know the failure rates, because they're the ones watching jobs fail at 2am. But by the time the numbers roll up to whoever controls the budget, it's just "cloud costs." There's no line item for "compute we paid for and got no output from."

Cloud billing by service and instance type doesn't surface this. You see your GPU compute spend, your storage spend, your egress. You don't see "20% of your GPU spend this month was on runs that didn't complete." That decomposition requires deliberate instrumentation, and most teams haven't built it yet.

What teams should measure instead of cost per sample

Teams should measure a few things instead. First, completion rate: the percentage of pipeline runs that complete without failure or restart. That's your pipeline reliability score, directly linked to compute waste.

Second, cost per attempted sample versus cost per completed sample. If those numbers are meaningfully different, you have a problem worth fixing.

Third, storage retrieval frequency and the infrastructure overhead of decompression: how often you're pulling archived data back, and whether you've properly sized the disk and memory headroom for it. This is the gap between what looks cheap in the storage bill and what it costs to use the data.

One thing genomics infrastructure teams should do differently starting this week

Instrument your pipeline failure rate, right now, before anything else.

The number itself doesn't fix anything, but it makes the problem visible. Once you can show that 15 or 25 percent of your compute spend is going toward runs that restart — with real dollar figures attached — the conversation about fixing the underlying infrastructure becomes easy to have. People move fast when they can see the waste.

Everything else follows from that — better checkpointing configuration, smarter storage architecture, more stable compute — but you have to see the problem first.

Discover the breakthroughs shaping the future of AI in healthcare and life sciences. Visit https://nebius.com/solutions/life-sciences-and-healthcare to learn more and register for the 2026 AI Discovery Awards ceremony: nebius.com/ai-discovery-award.

Anastasia Raskolova

Anastasia is a senior product manager for healthcare & life sciences at Nebius, where she focuses on infrastructure product for drug discovery and clinical AI workflows. Before that, she spent her career building ML products across computer vision, recommendation systems, and generative AI  — and stays grounded in the clinical reality through volunteering in the Emergency Department at Massachusetts General Hospital.

Contributed by Nebius.