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Meet Tesla’s Optimus: The Humanoid Robot That Can Do Anything

Tesla’s Optimus robot showcases the future of humanoid robots, capable of serving, dancing, and taking selfies. Explore its capabilities and the impact of AI in Asia.

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Tesla Optimus robot

TL;DR:

  • Tesla unveiled Optimus, a versatile humanoid robot, at the ‘We, Robot’ event.
  • Optimus can perform various tasks such as serving drinks, dancing, and taking selfies.
  • The robot’s cost is projected to be between $20,000 and $30,000.
  • Internet users were impressed, with some expressing interest in purchasing the robot.

The Rise of Humanoid Robots in Tech

Imagine a world where robots can serve you drinks, dance with you, and even take selfies. This is no longer a dream; it’s a reality with Tesla’s Optimus robot. At Tesla’s ‘We, Robot’ event in California, several humanoid Optimus robots showcased their remarkable abilities, leaving attendees and internet users amazed.

Optimus: The Multi-Talented Robot

Optimus is not just a robot; it’s a versatile humanoid friend that can perform a variety of tasks. From serving drinks to dancing and taking selfies, Optimus can do it all. Elon Musk, the CEO of Tesla, brought several Optimus robots to the event, demonstrating their capabilities and encouraging attendees to interact with them.

What Can Optimus Do?

  • Serve Drinks: Optimus can serve drinks at the bar, making it a perfect assistant for events and gatherings.
  • Dance: The robot can dance, adding a fun element to any occasion.
  • Take Selfies: Optimus can take selfies, capturing memorable moments with ease.
  • Talk: The robot can engage in conversations, making it a friendly companion.

The Cost of Innovation

Elon Musk revealed that Optimus would cost between $20,000 and $30,000 in the long term. While this may seem steep, the robot’s versatility and capabilities make it a worthwhile investment for many.

Internet Reactions to Optimus

The internet was abuzz with reactions to Optimus. Many users were impressed by the robot’s capabilities and the historical significance of the event. Some users, however, raised eyebrows at Optimus’s interacting skills, questioning whether a human was behind the controls.

User Comments

“When the hand dexterity of Optimus is equal to that of a human being, I would be interested in buying one. Particularly if it can access information on various subjects and learn. I could use the help working on our rental properties and around our place in Arizona.”

“Didn’t it feel like you were in some time travel trip to be there? This event made history for sure.”

“The ones mingling and serving drinks were remotely operated but still really impressive.”

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“Is it really Optimus talking? Kinda feeling there’s a human behind it.”

The Future of Humanoid Robots

The unveiling of Optimus marks a significant milestone in the development of humanoid robots. As technology advances, these robots are becoming more capable and versatile, paving the way for a future where they can assist us in various aspects of our lives.

Potential Applications

  • Hospitality: Robots like Optimus can be used in hotels, restaurants, and events to serve guests and enhance their experience.
  • Healthcare: Humanoid robots can assist in hospitals and care homes, providing support to patients and staff.
  • Education: Robots can be used in classrooms to teach and engage students in innovative ways.
  • Home Assistance: Robots can help with household chores, providing assistance to families and the elderly.
  • Tesla’s Optimus robot is a testament to the incredible advancements in AI and AGI. As these technologies continue to evolve, they will transform the way we live and work, opening up new possibilities and opportunities. The future of humanoid robots is bright, and Optimus is just the beginning.

Comment and Share:

What do you think about Tesla’s Optimus robot? Would you consider buying one for your home or business? Share your thoughts and experiences with AI and AGI technologies in the comments below. Don’t forget to subscribe for updates on AI and AGI developments.

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7 Mind-Blowing New ChatGPT Use Cases in 2025

Discover 7 powerful new ChatGPT use cases for 2025 — from sales training to strategic planning. Built for real businesses, not just techies.

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ChatGPT use cases in 2025

TL;DR — What You Need to Know:

  • ChatGPT use cases in 2025 — they’re changing the way we work – and fast
  • It’s new capabilities are shockingly useful — from real-time strategy building to smarter email, training, and customer service.
  • The tech’s no longer the limiting factor. How you use it is what sets winners apart.
  • You don’t need a dev team — just smart prompts, good judgement, and a bit of experimentation.

Welcome to Your New ChatGPT Use Cases in 2025

Something extraordinary is happening with AI — and this time, it’s not just another update. ChatGPT’s latest model has quietly become one of the most powerful tools on the planet, capable of outperforming human professionals in everything from sales role-play to strategic planning.

Here’s what’s changed: 2025’s AI isn’t just faster or more fluent. It’s fundamentally more useful. And while most people are still asking it to write birthday poems or summarise PDFs, smart businesses are doing something entirely different.

They’re solving real problems.

So here are 7 powerful, practical, and slightly mind-blowing ways you can use ChatGPT right now — whether you’re running a startup, scaling a business, or just trying to survive your inbox.

1. The Intelligence Quantum Leap

Let’s start with the big one. GPT-4o — OpenAI’s flagship model for 2025 — doesn’t just understand language. It reasons. It plans. It scores higher than the average human on standardised IQ tests.

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And yes, that’s both impressive and terrifying.

But the real win for business? You now have on-demand access to a logic machine that can unpack strategy, simulate market moves, and give brutally clear feedback on your plans — without needing a whiteboard or a 5-hour workshop.

Ask ChatGPT:

“Compare three go-to-market strategies for a mid-priced SaaS product in Southeast Asia targeting logistics firms.”

It’ll give you a side-by-side breakdown faster than most consultants.

Why it matters:

The days of ‘I’ll get back to you after I crunch the data’ are over. You now crunch in real time. Strategy meetings just got smarter — and shorter.

2. Email Management: The Silent Revolution

Email is where good ideas go to die. But what if AI could handle the grunt work — without sounding like a robot?

In 2025, it can. ChatGPT now plugs seamlessly into tools like Zapier, Make.com, and even Outlook or Gmail via APIs. That means you can automate 80% of your email workflow:

  • Draft responses in your tone of voice
  • Auto-tag or file messages based on content
  • Trigger follow-ups without lifting a finger

Real use case:

A boutique agency in Singapore uses ChatGPT to scan all inbound client emails, draft smart replies with custom links, and log actions in Notion. Result? 40% time saved, zero missed follow-ups.

But beware:

Letting AI send emails unsupervised is asking for trouble. Use a “draft-and-review” loop — AI writes it, you approve it.

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3. Voice-Powered Strategy: AI That Walks With You

Here’s a glimpse of the future: You’re walking to get kopi. You press and hold your ChatGPT app. You say:

“I’m thinking about launching a mini-course for HR leaders on AI literacy. Maybe bundle it with a coaching session. Can you sketch out a funnel?”

By the time you get back to your desk, it’s done. A structured funnel. Headline ideas. Audience personas. Even suggested pricing tiers.

This is now live.

The new voice interaction mode in ChatGPT feels like talking to a strategist who never gets tired. It remembers what you said, clarifies details, and adapts based on your feedback. Use it during your commute. In the gym. While cooking.

Think about it:

Your best thinking doesn’t always happen at your desk. Now, it doesn’t have to.

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4. Sales Role-Play (That Doesn’t Suck)

Sales teams have always known the value of practice. But let’s be honest: traditional role-play is awkward, slow, and often skipped.

Now imagine this: You open ChatGPT and say:

“Pretend you’re a CFO pushing back on my pitch for enterprise expense software. Hit me with your top three objections.”

It does. Relentlessly. Then you tweak it:

“Now play a more sceptical CFO. Use financial jargon. Be unimpressed.”

It does that too.

Why it works:

There’s no fear of judgement. No awkwardness. Just high-impact reps that sharpen your message and steel your nerves.

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Results?

One founder I know used this daily before calls — and closed 4 out of 5 deals that quarter. That’s not hype. That’s practice made perfect.

5. Marketing Psychology at Scale

Your customers are constantly telling you what they care about. But the signal’s buried in reviews, chats, complaints, comments, and survey feedback.

ChatGPT is now ridiculously good at sifting through this mess and surfacing insights — emotional tone, patterns in word choice, common objections, even specific desires.

Example prompt:

“Analyse these 250 customer reviews. What do customers love most? What words do they use to describe our product? What are their biggest frustrations?”

What you get is a heatmap of customer psychology.

Smart marketers use this to:

Reframe messaging

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Write landing pages in the customer’s voice

Identify overlooked objections early

Bonus trick:

Feed this analysis into your ad copywriting prompts. CTRs go up. Every. Single. Time.

6. 24/7 Customer Engagement — That Doesn’t Feel Robotic

We’ve all used chatbots that sound like your uncle trying to be cool. Not anymore.

With GPT-4o and custom instructions, you can now build a digital agent that actually sounds like your brand, asks smart follow-ups, and guides users toward decisions.

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Imagine this:

You run an e-commerce site. A customer asks about shipping options. Instead of a static FAQ or slow email reply, ChatGPT:

  • Asks where they’re based
  • Calculates delivery timelines
  • Recommends a bundled offer
  • Logs the lead to your CRM

All in real time.

Result?

One online skincare brand reported a 50% increase in cart completions just by switching to an AI-led chat system.

The real kicker? Customers prefer talking to it.

7. Your Digital Ops Manual — Finally Done

Every business struggles with documenting processes. SOPs are boring, messy, and constantly out of date.

But ChatGPT? It lives for this.

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Feed it rough notes, voice memos, old docs — and it turns them into clear, structured workflows.

Now take it one step further:
Set up a private knowledge base where your team can ask questions naturally and get precise answers.

“What’s our refund process for EU customers?”
“How do I update a client billing profile?”
“What’s the Slack etiquette for our sales team?”

ChatGPT answers. With citations.

Training time drops. Mistakes go down. New hires ramp up faster.

Best of all?

It gets smarter the more your team uses it.

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So… What’s Stopping You Trying These ChatGPT Use Cases in 2025?

Every use case in this article is live. Affordable. And 100% usable today. No code. No dev team. No six-month roadmap.

Just smarter thinking — and a willingness to try.

So here’s the real question:

What’s your excuse for not using AI like this yet… and how long can you afford to wait?

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  • Or try these out now on the free version of ChatGPT by tapping here.

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AI Just Killed 8 Jobs… But Created 15 New Ones Paying £100k+

AI is eliminating roles — but creating new ones that pay £100k+. Here are 15 fast-growing jobs in AI and how to prepare for them in Asia.

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AI jobs paying £100k

TL;DR — What You Need to Know:

  • AI is replacing roles in moderation, customer service, writing, and warehousing—but it’s not all doom.
  • In its place, AI created jobs paying £100k: prompt engineers, AI ethicists, machine learning leads, and more.
  • The winners? Those who pivot now and get skilled, while others wait it out.

Let’s not sugar-coat it: AI has already taken your job.

Or if it hasn’t yet, it’s circling. Patiently. Quietly.

But here’s the twist: AI isn’t just wiping out roles — it’s creating some of the most lucrative career paths we’ve ever seen. The catch? You’ll need to move faster than the machines do.

The headlines love a doomsday spin — robots stealing jobs, mass layoffs, the end of work. But if you read past the fear, you’ll spot a very different story: one where new six-figure jobs are exploding in demand.

And they’re not just for coders or people with PhDs in quantum linguistics. Many of these jobs value soft skills, writing, ethics, even common sense — just with a new AI twist.

So here’s your clear-eyed guide:

  • 8 jobs that AI is quietly (or not-so-quietly) killing
  • 15 roles growing faster than a ChatGPT thread on Reddit — and paying very, very well.

8 Jobs AI Is Already Eliminating (or Shrinking Fast)

1. Social Media Content Moderators

Remember the armies of humans reviewing TikTok, Instagram, and Facebook posts for nudity or hate speech? Well, they’re disappearing. TikTok now uses AI to catch 80% of violations before humans ever see them. It’s faster, tireless, and cheaper.

Most social platforms are following suit. The remaining humans deal with edge cases or trauma-heavy content no one wants to automate… but the bulk of the work is now machine-led.

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2. Customer Service Representatives

You’ve chatted with a bot recently. So has everyone.
Klarna’s AI assistant replaced 700 human agents in one swoop. IKEA has quietly shifted call centre support to fully automated systems. These AI tools handle everything from order tracking to password resets.

The result? Companies save money. Customers get 24/7 responses. And entry-level service jobs vanish.

3. Telemarketers and Call Centre Agents

Outbound sales? It’s been digitised. AI voice systems now make thousands of simultaneous calls, shift tone mid-sentence, and even spot emotional cues. They never need a lunch break — and they’re hard to distinguish from a real person.

Companies now use humans to plan campaigns, but the actual calls? Fully automated. If your job was cold-calling, it’s time to reskill — fast.

4. Data Entry Clerks

Manual input is gone. OCR + AI means documents are scanned, sorted, and uploaded instantly. IBM has paused hiring for 7,800 back-office jobs as automation takes over.

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Across insurance, banking, healthcare — companies that once hired data entry clerks by the dozen now need just a few to manage exceptions.

5. Retail Cashiers

Self-checkout kiosks were just the start. Amazon Go stores use computer vision to eliminate the checkout experience altogether — just grab and go.

Walmart and Tesco are rolling out similar models. Even mid-sized retailers are using AI to reduce cashier shifts by 10–25%. Humans now restock and assist — not scan.

6. Warehouse & Fulfilment Staff

Amazon’s warehouses are a case study in automation. Autonomous robots pick, pack, and ship faster than any human.
The result? Fewer injuries, more efficiency… and fewer humans.

Even smaller logistics firms are adopting warehouse AI, as costs drop and robots become “as-a-service”.

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7. Translators & Content Writers (Basic-Level)

Generative AI is fast, multilingual, and on-brand. Duolingo replaced much of its content writing team with GPT-driven systems.

Marketing teams now use AI for product descriptions, blogs, and ads. Humans still do strategy — but the daily word count? AI’s job now.

8. Entry-Level Graphic Designers

AI tools like Midjourney, Ideogram, and Adobe Firefly generate visuals from a sentence. Logos, pitch decks, ad banners — all created in seconds. The entry-level designer who used to churn out social graphics? No longer essential.

Top-tier creatives still thrive. But production design? That’s already AI’s turf.

Are you futureproofed—or just hoping you’re not next?

15 AI-Driven Jobs Now Paying £100k+

Now for the exciting bit. While AI clears out repetitive roles, it also opens new high-paying jobs that didn’t exist 3 years ago.

These aren’t sci-fi ideas. These are real jobs being filled today — many in Singapore, Australia, India, and Korea — with salaries to match.

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1. Machine Learning Engineer

The architects of AI itself. They build the algorithms powering everything from fraud detection to self-driving cars.
Salary: £85k–£210k
Needed: Python, TensorFlow/PyTorch, strong maths. Highly sought after across finance, healthcare, and Big Tech.

2. Data Scientist

Translates oceans of data into actual insights. Think Netflix recommendations, pricing strategies, or disease forecasting.
Salary: £70k–£160k
Key skills: Python, SQL, R, storytelling. A killer combo of tech + communication.

3. Prompt Engineer

No code needed — just words.
They craft the perfect prompts to steer AI models like ChatGPT toward accurate, helpful results.
Salary: £110k–£200k+
Writers, marketers, and linguists are all pivoting into this role. It’s exploding.

4. AI Product Manager

You don’t build the AI — you make it useful.
This role bridges business needs and tech teams to launch products that solve real problems.
Salary: £120k–£170k
Ideal for ex-consultants, startup leads, or technical PMs with an eye for product-market fit.

5. AI Ethics / Governance Specialist

Someone has to keep the machines honest. These specialists ensure AI is fair, safe, and compliant.
Salary: £100k–£170k
Perfect for lawyers, philosophers, or policy pros who understand AI’s social impact.

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6. AI Compliance / Audit Specialist

GDPR. HIPAA. The EU AI Act.
These specialists check that AI systems follow legal rules and ethical standards.
Salary: £90k–£150k
Especially hot in finance, healthcare, and enterprise tech.

7. Data Engineer / MLOps Engineer

Behind every smart model is a ton of infrastructure.
Data Engineers build it. MLOps Engineers keep it running.
Salary: £90k–£140k
You’ll need DevOps, cloud computing, and Python chops.

8. AI Solutions Architect

The big-picture thinker. Designs AI systems that actually work at scale.
Salary: £110k–£160k
In demand in cloud, consulting, and enterprise IT.

9. Computer Vision Engineer

They teach machines to see.
From autonomous cars to medical scans to supermarket cameras — it’s all vision.
Salary: £120k+
Strong Python + OpenCV/TensorFlow is a must.

10. Robotics Engineer (AI + Machines)

Think factory bots, surgical arms, or drone fleets.
You’ll need both hardware knowledge and machine learning skills.
Salary: £100k–£150k+
A rare mix = big pay.

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11. Autonomous Vehicle Engineer

Still one of AI’s toughest challenges — and best-paid verticals.
Salary: £120k+
Roles in perception, planning, and safety. Tesla, Waymo, and China’s Didi all hiring like mad.

12. AI Cybersecurity Specialist

Protect AI… with AI.
This job prevents attacks on models and builds AI-powered threat detection.
Salary: £120k+
Perfect for seasoned security pros looking to specialise.

13. Human–AI Interaction Designer (UX for AI)

Humans don’t trust what they don’t understand.
These designers make AI usable, friendly, and ethical.
Salary: £100k–£135k
Great path for UXers who want to go deep into AI systems.

14. LLM Trainer / Model Fine-tuner

You teach ChatGPT how to behave. Literally.
Using reinforcement learning, you align models with human values.
Salary: £100k–£180k
Ideal for teachers, researchers, or anyone great at structured thinking.

15. AI Consultant / Solutions Specialist

Advises companies on where and how to use AI.
Part analyst, part strategist, part translator.
Salary: £120k+
Management consultants and ex-founders thrive here.

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The Bottom Line: You Don’t Need to Fear AI. You Need to Work With It.

If AI is your competition, you’re already behind. But if it’s your co-pilot, you’re ahead of 90% of the workforce.

This isn’t just about learning to code. It’s about learning to think differently.
To communicate with machines.
To spot where humans still matter — and amplify that with tech.

Because while AI might be killing off 8 jobs…

It’s creating 15 new ones that pay double — and need smart, curious, adaptable people.

So—

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Will you let AI automate you… or will you get paid to run it?


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“Sounds Impressive… But for Whom?” Why AI’s Overconfident Medical Summaries Could Be Dangerous

New research shows AI chatbots often turn cautious medical findings into overconfident generalisations. Discover what that means for healthcare communication.

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AI-generated medical summaries

TL;DR — What You Need to Know

  • Medical research thrives on precision — but humans and AIs both love to overgeneralise with AI-generated medical summaries.
  • New research shows large language models routinely turn cautious medical claims into sweeping, misleading statements.
  • Even the best models aren’t immune — and the problem could quietly distort how science is understood and applied.

Why AI-Generated Medical Summaries Could Be Misleading

In medicine, the golden rule is: never say more than your data justifies.

Clinicians and researchers live by this. Journal reviewers demand it. Medical writing, as a result, is often painstakingly specific — sometimes to the point of impenetrability. Take this gem of a conclusion from a real-world trial:

“In a randomised trial of 498 European patients with relapsed or refractory multiple myeloma, the treatment increased median progression-free survival by 4.6 months, with grade three to four adverse events in 60 per cent of patients and modest improvements in quality-of-life scores, though the findings may not generalise to older or less fit populations.”

Meticulous? Yes. Memorable? Not quite.

So, what happens when that careful wording gets trimmed down — for a press release, an infographic, or (increasingly) an AI-generated summary?

It becomes something like:

“The treatment improves survival and quality of life.”

Technically? Not a lie. But practically? That’s a stretch.

From nuance to nonsense: how ‘generics’ mislead

Statements like “the treatment is effective” are what philosophers call generics — sweeping claims without numbers, context, or qualifiers. They’re dangerously seductive in medical research because they sound clear, authoritative, and easy to act on.

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But they gloss over crucial questions: For whom? How many? Compared to what? And they’re everywhere.

In a review of over 500 top journal articles, more than half included generalisations that went beyond the data — often with no justification. And over 80% of those were, yep, generics.

This isn’t just sloppiness. It’s human nature. We like tidy stories. We like certainty. But when we simplify science to make it snappy, we risk getting it wrong — and getting it dangerously wrong in fields like medicine.

Enter AI. And it’s making the problem worse.

Our latest research put 10 of the world’s most popular large language models (LLMs) to the test — including ChatGPT, Claude, LLaMA and DeepSeek. We asked them to summarise thousands of real medical abstracts.

Even when prompted for accuracy, most models:

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  • Dropped qualifiers
  • Flattened nuance
  • Turned cautious claims into confident-sounding generics

In short: they said more than the data allowed.

In some cases, 73% of summaries included over-generalisations. And when compared to human-written summaries, the bots were five times more likely to overstate findings.

Worryingly, newer models — including the much-hyped GPT-4o — were more likely to generalise than earlier ones.

Why is this happening?

Partly, it’s in the training data. If scientific papers, press releases and past summaries already overgeneralise, the AI inherits that tendency. And through reinforcement learning — where human approval influences model behaviour — AIs learn to prioritise sounding confident over being correct. After all, users often reward answers that feel clear and decisive.

The stakes? Huge.

Medical professionals, students and researchers are turning to LLMs in droves. In a recent survey of 5,000 researchers:

  • Nearly half already use AI to summarise scientific work.
  • 58% believe AI outperforms humans in this task.

That confidence might be misplaced. If AI tools continue to repackage nuanced science into generic soundbites, we risk spreading misunderstandings at scale — especially dangerous in healthcare.

What needs to change?

For humans:

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  • Editorial guidelines need to explicitly discourage generics without justification.
  • Researchers using AI summaries should double-check outputs, especially in critical fields like medicine.

For AI developers:

  • Models should be fine-tuned to favour caution over confidence.
  • Built-in prompts should steer summaries away from overgeneralisation.

For everyone:

  • Tools that benchmark overgeneralisation — like the methodology in our study — should become part of AI model evaluation before deployment in high-stakes domains.

Because here’s the bottom line: in medicine, precision saves lives. Misleading simplicity doesn’t.

So… next time your chatbot says “The drug is effective,” will you ask: for whom, exactly?

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