Dialogue with a16z Co-founder: AI, Entrepreneurship, Fairness, and 'American Opportunity'

比推Dipublikasikan tanggal 2026-02-05Terakhir diperbarui pada 2026-02-05

Abstrak

In a podcast interview, a16z co-founder Ben Horowitz discusses the transformative impact of AI, the state of entrepreneurship, and societal challenges. He believes AI is rapidly reshaping the economy and startup landscape, with significant industry changes expected within 12-24 months due to existing internet infrastructure enabling fast deployment. The biggest risk to progress is not technology but policy, particularly overregulation that could hinder innovation. Horowitz argues that while AI may increase inequality through a "Kobe Bryant effect"—amplifying returns for top performers—it also democratizes access to tools like education, legal advice, and mentorship via smartphones. He emphasizes that absolute fairness is less critical than ensuring opportunities for upward mobility, citing historical examples where automation created new jobs despite displacing old ones. On entrepreneurship, he explains how a16z differentiated itself by focusing on serving founders' needs—providing knowledge, networks, and confidence—rather than traditional VC prestige. He also shares insights from management icon Andy Grove, stressing the psychological challenges of leadership, such as making tough decisions like reorganizations. Horowitz highlights AI's potential in fields like software development (boosting productivity) and creative industries (enabling new art forms), and discusses a16z's collaboration with the Las Vegas Police Department to deploy AI-driven public safety solutions, r...

Podcast Source: Invest Like The Best

Interviewee: Ben Horowitz(Co-founder of a16z)

Broadcast Date: February 3, 2026

Compiled by: BitpushNews


Preface

Ben Horowitz believes that AI is rapidly reshaping the economy and the entrepreneurial landscape, and will significantly change various industries in the next year or two, creating new opportunities and companies. However, the biggest risk of this revolution is not technology, but policy—excessive regulation could directly slow down or even halt technological leadership.
Regarding unemployment and unfairness, he judges that AI will change the employment structure and amplify returns for the top performers, but it will also lower the barrier to entry and expand the sources of opportunity. Historically, every wave of automation has been accompanied by the disappearance of jobs and the birth of new professions. The key is not absolute fairness, but whether society still provides opportunities for upward mobility. In the AI era, both risks and opportunities are being amplified simultaneously.

The following is the original interview:

The United States in 2026: What is the "State of Play" in Your Eyes?

Interviewer: Ben, an interesting start—how do you view the current state of the U.S.? What does 2026 feel like to you? What's the "state of play"?

Ben: I think the tech industry is very healthy. The U.S. is highly competitive, and the entrepreneurial culture is excellent. From my perspective, that's the most critical part.

I travel around the world frequently, and almost everywhere I go, people ask: How can we have a "Silicon Valley"? The UK, France—they all ask the same question. They have many elements: talent, universities, research. But their problem is: the regulatory environment is worse, especially in the EU, which is becoming increasingly unfriendly to startups; more deeply, it's a cultural issue—in many places, young people don't feel that "doing something bigger than themselves" or "making the world a better place" is a value that society truly prioritizes, so it's hard to get people to dedicate their lives to a mission.

But in the U.S., this is astonishing: people are willing to fight for a mission.

As for the economy, I think it's better than most people imagine. We've implemented many stimulus measures: lower energy prices, less regulation, friendlier tax systems—these are starting to take effect gradually.

More importantly, there's AI. It will affect everything. There's hardly a problem for which you can't say: we have an opportunity to solve it with AI. Car crash deaths, cancer... many major problems could potentially have AI solutions. For the first time, we have a technology that can touch almost every difficult problem. This is new.

Why Will the Impact Be More "Felt" in the Next 12 to 24 Months?

Interviewer: You mentioned that more noticeable changes will occur in the next 12 to 24 months. Why that timeframe?

Ben: Because it's happening now, but it needs deployment and diffusion. Historically, technology deployment was slow often because of infrastructure: cars needed roads, traffic lights; the internet needed fiber optics, smartphones.

But AI is different. Internet infrastructure already exists. If a company wants to use AI, it can do so directly; it doesn't need to first build a "world that can use it." So the diffusion speed will be much faster.

Interviewer: What factors are most likely to interrupt the U.S.'s trajectory of solving problems with technology? What is the biggest risk?

Ben: Policy.

My father once told me: A bad government can destroy everything. No matter how many smart people you have, how good the culture is, or how strong the country is, it can be ruined by bad policy. Look at Venezuela—it was once extremely wealthy, then it turned to communism, and the result was collapse.

Europe also has many smart people, but the output is minimal. In some Eastern European countries during the communist era, much innovation and creativity almost "disappeared." Hungary, Romania produced a large number of genius scientists and entrepreneurs, but once the political system changed, the innovation ecosystem was cut off.

This could happen in the U.S. too. We might even "ban AI." The previous (Biden) administration's executive order once stipulated that selling GPUs required federal approval—that was an official executive order, later overturned. But we were that close to "withdrawing from the global chip competition." It's very fragile.

Another point: Technological solutions are usually more effective than policy solutions. Policy often has huge side effects. For example, during the pandemic, you could use policy to keep everyone at home, but there were many side effects, and the effectiveness wasn't guaranteed; in contrast, if you could develop drugs or vaccines, that was a better path.

The climate issue is similar: No matter how much Europe reduces emissions, if China doesn't, the effect is limited; but if you can develop safe and efficient nuclear energy or fusion, that's a solution that truly "changes the system."

Similarly, policies like "defunding the police" didn't make people safer; technology might actually improve public safety. In short, if you want to make the world better, almost any problem today can potentially be solved by entrepreneurs using technology—for entrepreneurs, there has never been a better era.

AI Enables Restaurant Owners to "Build Their Own Systems": Will This Overturn Your Investment Logic?

Interviewer: I had a long conversation with a restaurant owner in New York yesterday. He said he's going to use AI to transform the entire restaurant operation, even to "build an operating system" himself, without needing many traditional software companies. Will SaaS companies like Toast be replaced? How will this change the way you look at investment opportunities?

Ben: On the positive side: Everything is open for competition again. Many people overreact to traditional software companies, thinking they will all die, but companies like Salesforce, SAP aren't easily disrupted; replacing them requires heavy engineering and organizational capabilities.

However, it's true that: many things have become "something you can do yourself." This will significantly increase the "number of interesting companies."

Another phenomenon is: AI products are "much easier to use" than many historical technology products, so revenue growth is faster. For example, Cursor is essentially an IDE, but it reached a scale of revenue that might have taken over a decade in the past. The growth speed is shocking.

But from an investment perspective, what's really changing is: The "physical laws" of company building have changed. There used to be an iron rule for software companies: you can't catch up to a good product made by a small team by throwing money at it—Google couldn't hire two thousand engineers and catch up to a product someone else built in three years; that wasn't realistic.

Now it's different: if you have data, GPUs, money, you can brute-force many things to a result. Look at some players catching up in the large model competition in a very short time—that was almost impossible in the past. At the same time, the market size might far exceed historical imagination: not $50 billion, but maybe $5 trillion. Valuation, long-term value, competitive catch-up ability—these are all becoming unprecedented.

AI Research Talent Will Be "Priceless"

Interviewer: When you discuss AI investment internally, what's the biggest difference compared to four years ago?

Ben: The thing about AI researchers is very different. If you haven't actually participated in training large models with "hundreds of millions of dollars worth of resources" at places like Google, Meta, OpenAI, Anthropic, then even if you have the money, you might not know how to do it.

Because this isn't something you can learn in school. It's a bit like alchemy—more art than pure theory. The probability of success on the first try isn't high.

This also explains the phenomenon that seems absurd to outsiders: why are people willing to spend hundreds of millions, even billions of dollars to "poach" top AI researchers? Because if there are maybe only forty people in the world who truly know how to do this, and they might determine the fate of a $4 trillion company—the math changes.

AI and Inequality

Interviewer: In venture capital, people often talk about "power law," which背后 is actually inequality. AI amplifies this trend: billion-dollar researchers, super companies, wealth concentration. How do you view the good and bad of inequality?

Ben: The inequality caused by AI, I think, is an extension of the "Kobe effect."

Initially, how much an athlete could earn was limited by the size of the live audience; with television and global broadcasting, the market expanded, and a player could become a billionaire—that was impossible before. The internet allowed products to achieve global distribution quickly, further accelerating wealth concentration; AI adds another layer on top of this: the same product becomes more valuable, so the creator gets richer.

This is indeed the "bad side."

But the "good side" is: AI is extremely democratizing from day one. As long as you have a phone—and now most people have smartphones—you have a very powerful intelligent assistant. Every child can have a top-tier tutor. This might be one of the biggest opportunity equalizers we've ever seen: education, consulting, law, accounting, advice—all in your pocket.

My father also taught me: Life isn't fair. When the government tries to "correct everything to be completely fair," it often doesn't become fairer; instead, power gets concentrated in the hands of "those who execute the system," which historically has often led to disaster. What's truly important is: giving people opportunities—not necessarily exactly the same opportunities, but at least "having a chance."

A system that provides opportunities will inevitably produce inequality, but you can systematically allow more people to have opportunities. I think AI is very strong in this aspect.

"You Must Have Capital, Otherwise You'll Be Permanently Stuck at the Bottom"?

Interviewer: There's a saying online: you have a few years left to accumulate capital, otherwise you'll become part of the "permanent underclass." Because AI will make society need less labor, and those without capital will find it harder to break through. What do you think?

Ben: I don't think the door will close behind you. New technologies often multiply opportunities.

Look at cryptocurrency: many who made money didn't start with much, some even had almost no capital, they just entered the technology curve earlier. If something grows exponentially, even a little capital can multiply many times—you just need "one coin" to get in early.

As for "AI will massively destroy jobs," I think the predictability is overestimated. Humans have been automating since the agricultural age; back then, 95% of jobs were in agriculture, and almost all disappeared, but today there are a huge number of professions that people back then couldn't even imagine.

So sitting here today, it's hard to imagine what new jobs AI will create. Demand for creative work might rise, processing work might fall, but it might not be that simple. More crucially: if AI started around 2012 (image, NLP), and exploded with ChatGPT in 2022—where is the "great job destruction"? Why hasn't it happened? How can you be sure it will definitely happen next and won't create new jobs? I don't think it's that predictable.

The Next 10 to 20 Years: What Is Your Ambition?

Interviewer: In the next 10 to 20 years, what is your ambition?

Ben: I was deeply influenced by Andy Grove. He had a simple but profound view: When you are an industry leader, the growth of the industry depends on you. The market needs you to expand; no one will do it for you.

I see that the reason the U.S. is the U.S. is partly due to the fact: we won the Industrial Revolution. Entrepreneurs like Henry Ford, Edison created technology, technology brought military领先, economic领先, cultural influence—it wasn't accidental.

Now we are at a similar turning point: AI's transformation of government, society, business is equivalent to a new industrial revolution. We will either become the leader and provider of this technology, or we won't. If not, we will lose our status as an economic powerhouse, military powerhouse, and center of cultural influence. I think that would be terrible.

So one of our missions is, at the levels of funding, policy, helping entrepreneurs build companies, etc., to do our best to ensure the next generation of great companies come from the U.S. or the ally system.

What Did Andy Grove Teach You?

Interviewer: Specifically, what was Andy Grove's biggest influence on you? What did you learn?

Note: Andy Grove was the key figure who took Intel from a chip company to a global tech giant, known as "one of Silicon Valley's greatest professional managers," a founder of modern tech company management methods. Many entrepreneurs (e.g., Zuckerberg, etc.) regard him as a management mentor.

Ben: His influence on me is so great it's hard to break it down. "High Output Management" is my favorite management book; I even wrote the preface for the new edition.

Management theory itself isn't hard; an eighth grader can understand it; the difficulty is the psychological aspect—especially young people can't do it: it's confrontational, requires seeing through the surface to the organization, requires being very firm at certain moments, requires putting the overall interest of the organization above the individual.

He has a story: he went to manage Intel's Santa Clara factory, which had the worst indicators. He went to the site, put a roll of toilet paper under a chair. When management started making excuses, he took out the toilet paper and said: "Clean up your mess, then tell me when you can meet the target." Two months later the factory met the target, and afterwards it was always the best, so he got "Manager of the Year."

The Most Common Mistake Founders Make

Interviewer: When did you start personally experiencing this kind of "psychologically difficult" management lesson? How do you get young people to truly appreciate it?

Ben: The common path for founders is: invent something, then need to build a company, but don't know how, so make mistakes, mistakes damage the company, and make you lose confidence, then you start hesitating—and hesitation leads to failure.

Many founders become overly reliant on team input, but the team doesn't have the overall concept; only the leader does. If you delegate decision-making, it creates a power vacuum, and the organization starts to become political—someone will jump into the空白 to seize power.

One of the hardest situations is reorganization (reorg). Reorganization is essentially redistributing power to improve efficiency, but someone will inevitably lose power, and it might be a trusted, excellent veteran who will be very angry. If you compromise to avoid conflict, let him keep his power, you transfer power from the people doing the work to management—the organization will break.

Young people are unwilling to confront because they lack experience, aren't sure the reorg will really save the company, so they choose the "known way to avoid pain" rather than the "theoretically optimal organization," and end up destroying the company.

The Start of a16z: How Did You Manage to Sprint from Zero into the Top Tier?

Interviewer: What was the state when you first started a16z? In the first three days, three months, three years, how did you think about this business?

Ben: The background of the venture capital industry at the time was: there hadn't been a new "top-tier" venture capital firm for a long time. The threshold for being top-tier came from prestige: you had to have invested in Apple, Cisco, Google, Yahoo, etc. A new firm starting from zero couldn't immediately have that track record.

And venture capital is extremely stratified. During booms, everyone makes money, but truly top entrepreneurs only choose top-tier firms: it affects hiring, follow-on funding, market trust. So if you're not top-tier, it's hard to survive long-term.

We knew we had to become top-tier, but our track record wasn't enough, so we changed our approach: VC is a good product for LPs, but it's not a good product for entrepreneurs. If we could make the "product for entrepreneurs" better, we could win.

We came from an entrepreneurial background and knew what founders lacked: confidence, knowledge, network, judgment frameworks. We wanted to build a firm that could systematically empower founders, make them more like real CEOs, not forced to rely on others.

Second point: at the time, VCs almost never marketed, because they lived off mysterious prestige; the more they talked, the more likely they were to be exposed. But we came out publicly expressing views, speaking out, so the media reported on us a lot, and everyone quickly knew we offered a different "product."

Why the Name "Andreessen Horowitz"?

Interviewer: Why did you decide to be so high-profile from the start? And why name the firm after yourselves?

Ben: Mark asked me: why don't VCs market? He traced it back to earlier financial history: JP Morgan, Rothschild, etc., even funded both sides during WWII, so they极度 avoided exposure; this "low-key tradition" continued. Later, the VC prestige system was established, and there was no incentive to market.

After we marketed, we received a lot of criticism: some said we were narcissistic, named it after ourselves, too high-profile. But the practical reason was very real: we were fundraising in 2009, on the edge of the financial crisis. The LPs' biggest worry was: you are excellent entrepreneurs, will you run off to start another company in two years? The LPs would be "left in the fund."

I thought of a way: name the fund after us, so LPs know "this is tied to our reputation," we won't easily leave. This method actually worked.

Interviewer: From taking off in 2009 to reaching cruising altitude, roughly when did you "stabilize"? What was the hardest part?

Ben: Initially, we didn't really understand investing. We had done angel investing, but had no institutional VC experience. We made quite a few mistakes: missed ones we should have invested in, and invested in some we shouldn't have. Missing good deals might hurt more.

Another mistake was our偏差 in GP profile judgment. We overemphasized "must have been a CEO to be an investor," thinking only then would they know how to help founders become CEOs. This shaped the culture and had benefits, but the reality is: many CEOs don't really want to be investors; and many CEOs aren't good at teaching others how to be CEOs.

Fund I was very successful: small size, strong projects (Skype, Slack, Okta, Stripe, etc.), basically impossible not to explode. Fund II wasn't as good as I. By Fund III we realized the GP profile was problematic; that period was scary, later it became a good fund because of Coinbase, Databricks, Lyft, GitHub, etc. After Fund III, we were more certain about "what this firm needs to be."

A later bigger challenge was scaling. We always believed "software is eating the world," and VC should be able to scale. But the structure of traditional VC, the way partner power is分配, is hard to expand. We gradually formed a multi-team structure: each team 4-5 people, plus platform capabilities, covering different technology markets. It became more formed around 2018 (crypto fund) onwards, later扩展到 the whole company.

Why Don't You Do "AI Private Equity Roll-Up Optimization"?

Interviewer: Some say large VCs might eventually become institutions like Blackstone, Apollo? Especially now with the big wave of "AI private equity buyout + optimization."

Ben: AI private equity roll-up optimization is indeed a very good business model: like how spreadsheets drove traditional private equity back in the day, AI might create a new kind of private equity: buy companies, optimize with AI, increase value.

But we won't do it, for two reasons:

First, culturally opposite. We are about "building new things," believe in entrepreneurs, pursue growth; private equity core is "entry price," emphasizes cost and optimization, not typical VC mindset.

Second, I don't want to do a business that "makes money by optimizing existing things, layoffs, etc." We prefer to help new technology companies create the future.

The Cost of Scaling: Culture Drifts, So Culture Must Be Defined by "Behavior"

Interviewer: What trade-offs does your large scale bring?

Ben: The larger the scale, the more you must be extremely focused on culture, otherwise culture will drift. Our investment in culture probably exceeds that of any VC: sign a culture document before joining; I spend an hour with each employee explaining culture; execution is also very strict.

Interviewer: How do you define culture? How do you design it and ensure people truly follow it?

Ben: The most important insight comes from Bushido: Culture is not a set of ideas, but a set of actions.

If you write culture as "integrity," "support each other," "do the right thing," that's mostly empty slogans. You must turn it into specific behaviors: for example, if you say "respect entrepreneurs," what is the behavior?

  • Cannot be late for meetings with entrepreneurs. I even fined people by the minute in the early days of my startup.

  • Must reply promptly. Even if rejecting, say "no" clearly and explain why.

  • We will survey the entrepreneur's experience after you reject them to ensure it was good.

  • If you belittle entrepreneurs to make yourself look smart, you will be fired. We are "dream builders," not "dream killers."

Culture is implemented through actions, not pretty words.

Father's Influence: Shift from Left to Right, "Flowers Are Cheap, Divorce Is Expensive"

Interviewer: You mentioned your father gave you a lot of influence, like "life isn't fair." Can you talk more about him?

Ben: He was a so-called "red diaper baby." My grandparents were communists, held secret meetings, had party cards. My grandfather was fired during the McCarthy era due to communist background.

My father was left-wing when young, was an editor for the famous left-wing magazine "Ramparts," and also had connections with the Black Panthers. Later he left politics for a while, then reemerged on the right-wing stance. He understood the problems of socialism, communism very well, which helped me a lot.

He said something to me that I remember for life: go to the library and pick any book about socialism, you'll see page after page about how to "distribute wealth," but you won't find a single sentence about how to "create wealth." This taught me systems thinking.

He wasn't the "new age father" type, more like the old-era father: didn't talk often, but occasionally gave you a very sharp, very practical piece of advice. Once I was with my three kids, weather 102 Fahrenheit, car broke down, kids spilled a whole gallon of apple juice on the carpet... I was about to崩溃. My father looked at me and said: "Son, you know what's cheap? Flowers. You know what's expensive? Divorce."—he had been married four times, so he knew what he was talking about.

The Frontier That Excites You Most Now: Programming, Film & TV, and "Postmodern" AI Art

Interviewer: What attracts and inspires you most right now?

Ben: The programming field has been amazing recently. People used to say "AI can write code," but there would be security vulnerabilities, like "vibe coding." But after this holiday season, there was an inflection point: truly great programmers started saying—"Wow, this is really helping me," productivity seems to have suddenly increased 100x. There are few technologies that can make the world change overnight, but it's happening regularly now.

We also spend a lot of time talking to Hollywood people about AI. AI might make movies better, cheaper: you shoot three takes, then AI generates high-quality variants and combinations, no need to shoot 15-20 takes. A powerful tool for creators. Music is the same, might enter a "postmodern art" phase. Like when hip-hop was criticized for sampling "not being music," but that was actually the moment a new art form was born.

Interviewer: Which hip-hop figures influenced you the most?

Ben: Nas is a very good friend of mine, he's had a big influence. His way of seeing the world is so different, constantly gives me new perspectives. We both really like Rakim. He has a lyric "Turn up the bass... I’m letting knowledge be born", Nas paused and asked me: "Why is he handing out cigars?" I said I didn't know. Nas said: "This is about knowledge being born, you hand out cigars when a child is born." I'd listened to that song a thousand times and never caught that.

He often hears what I can't hear, sees what I can't see. This completely different perspective is very precious.

Interestingly, we also did the Coinbase investment together. Nas called me earlier asking about Bitcoin, I explained the原理 to him. Later I asked Chris Dixon about the founders of this company, Chris said one of them loved hip-hop. I invited Nas to my house to watch a game, everyone met and talked—that促成 the investment.

Las Vegas Police Department Collaboration Project

Interviewer: Can you talk about your collaboration project with the Las Vegas Police Department? It seems like a case of "new technology improving public systems."

Ben: The Las Vegas Police Department has several characteristics that attracted me:

They are led by an elected sheriff, don't report to the mayor, so they didn't get caught up in the "defund the police" political movement, one of the few cities that didn't cut budgets. They also didn't go towards over-militarization, more community policing. The data speaks for itself: Las Vegas's murder solve rate is 94%, San Francisco about 75%, Chicago 30%+, national average under 60%.

I asked Sheriff Kevin McMahill: why is the solve rate so high? He said: when a murder happens, someone always knows who the killer is, but they don't tell the police. They tell us, because we are part of the community.

I thought this would be a perfect "proving ground" for technology deployment. We invested in a lot of public safety technology in our American Dynamism project. I said: we are going to become the most high-tech police department in the U.S., even globally—I'll pay for it.

We built a drone program, 911 dispatch technology, AI camera system, etc. Whenever there's a 911 call or gunshot detection, a drone can be on scene within 90 seconds; video is immediately pushed to every officer's phone nearby.

After deployment, crime rates dropped over 50%; officer-involved shootings of suspects dropped nearly 75%. Everyone is safer—suspects, ordinary citizens, police are all safer.

What surprised me most was: a lot of violent conflicts come from "misdescription." For example, a carjacking is reported as "2004 blue Hyundai," but it might actually be "2008 green Hyundai." Police stop the wrong car, some people have trauma with police, there's a gun in the car,就容易发生悲剧. With AI cameras, we know it's the target car, and can even know there's a baby in the car. So we don't send one officer to "try," but organize a full force, safely control the situation.

Policing is inherently dangerous, but intelligence and technology significantly reduce the danger.

Another连带 effect is: technology makes the police profession "dignified, attractive" again. In the past, because no one wanted to be a police officer, we had to lower standards; now standards are反而提高. The drone center is very advanced, even has futuristic-looking vehicles on patrol, making many people want to join. Las Vegas has a high proportion of veterans, so talent pool is strong too.

Final Question: What Is the Greatest Kindness You've Experienced?

Interviewer: My last question is always the same: what is the kindest thing someone has ever done for you?

Ben: I had a mentor, Ken Coleman, he was an executive at Silicon Graphics at the time. I was introduced to him in my sophomore year of college, and he gave me a summer internship. Without that job, I probably wouldn't have come to Silicon谷, and none of what followed would have happened. This was something he didn't have to do for me, but it changed my life.

Interviewer: This type of answer is the most common in the 500+ interviews I've done: someone was willing to bet on you when they didn't have to. Ben, very glad to finally have this conversation with you, thank you for your time.


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Pertanyaan Terkait

QAccording to Ben Horowitz, what is the biggest risk to the AI revolution, and why?

ABen Horowitz believes the biggest risk to the AI revolution is policy, specifically over-regulation. He argues that bad government policies, such as excessive regulation or even a potential ban on AI, could directly slow down or halt technological leadership. He cites examples like a previous U.S. administration's executive order that nearly required federal approval to sell GPUs, which could have crippled global chip competition.

QHow does Ben Horowitz view the impact of AI on inequality and opportunity?

ABen Horowitz acknowledges that AI can amplify wealth concentration, similar to the 'Kobe Effect,' where top performers gain disproportionately due to global scale. However, he also sees a positive side: AI is highly democratizing from day one. With a smartphone, anyone can access powerful AI assistants, top-tier educational resources, and professional advice (e.g., legal, accounting), making it one of the greatest opportunity equalizers. He emphasizes that while life is inherently unfair, what matters is providing opportunities for upward mobility, which AI enhances.

QWhat was the key strategy a16z used to break into the top tier of venture capital firms despite starting with no track record?

Aa16z's key strategy was to redefine the 'product' offered to entrepreneurs. Recognizing that venture capital was a good product for LPs but not for founders, they focused on systematically empowering founders with confidence, knowledge, networks, and judgment frameworks. They also broke industry norms by actively marketing and publicly sharing their views, which quickly differentiated them and attracted media attention, helping them gain credibility and access to top deals.

QWhy does Ben Horowitz believe that AI will not lead to permanent mass unemployment?

ABen Horowitz is skeptical about predictions of mass unemployment due to AI, drawing parallels to historical automation shifts. He notes that from agriculture to modern times, automation eliminated jobs but also created new, previously unimaginable professions. He points out that AI has been developing since around 2012 (e.g., in image recognition and NLP), yet no massive job destruction has occurred. He argues it is difficult to predict what new jobs AI will create and that opportunities often multiply with new technologies.

QWhat is the core principle Ben Horowitz emphasizes for maintaining company culture as an organization scales?

ABen Horowitz emphasizes that culture must be defined by actions, not just ideas or slogans. He believes that to prevent cultural drift at scale, companies must translate cultural values into specific, enforceable behaviors. For example, at a16z, 'respect for entrepreneurs' is actionized through rules like never being late to meetings with founders, responding promptly to communications, and never demeaning entrepreneurs to appear smart. This behavioral approach ensures culture is practical and consistently upheld.

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Grok AI: Merevolusi Teknologi Percakapan di Era Web3 Pendahuluan Dalam lanskap kecerdasan buatan yang terus berkembang dengan cepat, Grok AI menonjol sebagai proyek yang patut diperhatikan yang menjembatani domain teknologi canggih dan interaksi pengguna. Dikembangkan oleh xAI, sebuah perusahaan yang dipimpin oleh pengusaha terkenal Elon Musk, Grok AI berupaya untuk mendefinisikan ulang cara kita berinteraksi dengan kecerdasan buatan. Seiring dengan berkembangnya gerakan Web3, Grok AI bertujuan untuk memanfaatkan kekuatan AI percakapan untuk menjawab pertanyaan kompleks, memberikan pengguna pengalaman yang tidak hanya informatif tetapi juga menghibur. Apa itu Grok AI? Grok AI adalah chatbot AI percakapan yang canggih yang dirancang untuk berinteraksi dengan pengguna secara dinamis. Berbeda dengan banyak sistem AI tradisional, Grok AI menerima berbagai pertanyaan yang lebih luas, termasuk yang biasanya dianggap tidak pantas atau di luar respons standar. Tujuan inti proyek ini meliputi: Penalaran yang Andal: Grok AI menekankan penalaran akal sehat untuk memberikan jawaban logis berdasarkan pemahaman kontekstual. Pengawasan yang Dapat Diskalakan: Integrasi bantuan alat memastikan bahwa interaksi pengguna dipantau dan dioptimalkan untuk kualitas. Verifikasi Formal: Keamanan adalah hal yang utama; Grok AI menggabungkan metode verifikasi formal untuk meningkatkan keandalan output-nya. Pemahaman Konteks Panjang: Model AI unggul dalam mempertahankan dan mengingat riwayat percakapan yang luas, memfasilitasi diskusi yang bermakna dan sadar konteks. Ketahanan Adversarial: Dengan fokus pada peningkatan pertahanannya terhadap input yang dimanipulasi atau berbahaya, Grok AI bertujuan untuk mempertahankan integritas interaksi pengguna. Intinya, Grok AI bukan hanya perangkat pengambilan informasi; ini adalah mitra percakapan yang imersif yang mendorong dialog yang dinamis. Pencipta Grok AI Otak di balik Grok AI tidak lain adalah Elon Musk, seorang individu yang identik dengan inovasi di berbagai bidang, termasuk otomotif, perjalanan luar angkasa, dan teknologi. Di bawah naungan xAI, sebuah perusahaan yang fokus pada kemajuan teknologi AI dengan cara yang bermanfaat, visi Musk bertujuan untuk membentuk kembali pemahaman tentang interaksi AI. Kepemimpinan dan etos dasar sangat dipengaruhi oleh komitmen Musk untuk mendorong batasan teknologi. Investor Grok AI Meskipun rincian spesifik mengenai investor yang mendukung Grok AI masih terbatas, secara publik diakui bahwa xAI, inkubator proyek ini, didirikan dan didukung terutama oleh Elon Musk sendiri. Usaha dan kepemilikan Musk sebelumnya memberikan dukungan yang kuat, lebih lanjut memperkuat kredibilitas dan potensi pertumbuhan Grok AI. Namun, hingga saat ini, informasi mengenai yayasan investasi tambahan atau organisasi yang mendukung Grok AI tidak tersedia secara mudah, menandai area untuk eksplorasi potensial di masa depan. Bagaimana Grok AI Bekerja? Mekanisme operasional Grok AI sama inovatifnya dengan kerangka konseptualnya. Proyek ini mengintegrasikan beberapa teknologi mutakhir yang memfasilitasi fungsionalitas uniknya: Infrastruktur yang Kuat: Grok AI dibangun menggunakan Kubernetes untuk orkestrasi kontainer, Rust untuk kinerja dan keamanan, dan JAX untuk komputasi numerik berkinerja tinggi. Ketiga elemen ini memastikan bahwa chatbot beroperasi secara efisien, dapat diskalakan dengan efektif, dan melayani pengguna dengan cepat. Akses Pengetahuan Real-Time: Salah satu fitur pembeda Grok AI adalah kemampuannya untuk mengakses data real-time melalui platform X—sebelumnya dikenal sebagai Twitter. Kemampuan ini memberikan AI akses ke informasi terbaru, memungkinkannya untuk memberikan jawaban dan rekomendasi yang tepat waktu yang mungkin terlewat oleh model AI lainnya. Dua Mode Interaksi: Grok AI menawarkan pengguna pilihan antara “Mode Menyenangkan” dan “Mode Reguler.” Mode Menyenangkan memungkinkan gaya interaksi yang lebih bermain dan humoris, sementara Mode Reguler fokus pada memberikan respons yang tepat dan akurat. Fleksibilitas ini memastikan pengalaman yang disesuaikan yang memenuhi berbagai preferensi pengguna. Intinya, Grok AI menggabungkan kinerja dengan keterlibatan, menciptakan pengalaman yang kaya dan menghibur. Garis Waktu Grok AI Perjalanan Grok AI ditandai oleh tonggak penting yang mencerminkan tahap pengembangan dan penerapannya: Pengembangan Awal: Fase dasar Grok AI berlangsung selama sekitar dua bulan, di mana pelatihan awal dan penyempurnaan model dilakukan. Rilis Beta Grok-2: Dalam kemajuan signifikan, beta Grok-2 diumumkan. Rilis ini memperkenalkan dua versi chatbot—Grok-2 dan Grok-2 mini—masing-masing dilengkapi dengan kemampuan untuk chatting, coding, dan penalaran. Akses Publik: Setelah pengembangan beta, Grok AI menjadi tersedia untuk pengguna platform X. Mereka yang memiliki akun yang diverifikasi dengan nomor telepon dan aktif selama setidaknya tujuh hari dapat mengakses versi terbatas, membuat teknologi ini tersedia untuk audiens yang lebih luas. Garis waktu ini mencakup pertumbuhan sistematis Grok AI dari awal hingga keterlibatan publik, menekankan komitmennya untuk perbaikan berkelanjutan dan interaksi pengguna. Fitur Utama Grok AI Grok AI mencakup beberapa fitur kunci yang berkontribusi pada identitas inovatifnya: Integrasi Pengetahuan Real-Time: Akses ke informasi terkini dan relevan membedakan Grok AI dari banyak model statis, memungkinkan pengalaman pengguna yang menarik dan akurat. Gaya Interaksi yang Beragam: Dengan menawarkan mode interaksi yang berbeda, Grok AI memenuhi berbagai preferensi pengguna, mengundang kreativitas dan personalisasi dalam berkomunikasi dengan AI. Dasar Teknologi yang Canggih: Pemanfaatan Kubernetes, Rust, dan JAX memberikan proyek ini kerangka kerja yang solid untuk memastikan keandalan dan kinerja optimal. Pertimbangan Diskursus Etis: Penyertaan fungsi penghasil gambar menunjukkan semangat inovatif proyek ini. Namun, hal ini juga menimbulkan pertimbangan etis seputar hak cipta dan penggambaran yang menghormati tokoh-tokoh yang dikenali—diskusi yang sedang berlangsung dalam komunitas AI. Kesimpulan Sebagai entitas perintis di bidang AI percakapan, Grok AI mencakup potensi untuk pengalaman pengguna yang transformatif di era digital. Dikembangkan oleh xAI dan didorong oleh pendekatan visioner Elon Musk, Grok AI mengintegrasikan pengetahuan real-time dengan kemampuan interaksi yang canggih. Ini berupaya untuk mendorong batasan apa yang dapat dicapai oleh kecerdasan buatan sambil tetap fokus pada pertimbangan etis dan keselamatan pengguna. Grok AI tidak hanya mewujudkan kemajuan teknologi tetapi juga mewakili paradigma percakapan baru di lanskap Web3, menjanjikan untuk melibatkan pengguna dengan pengetahuan yang mahir dan interaksi yang menyenangkan. Seiring proyek ini terus berkembang, ia berdiri sebagai bukti apa yang dapat dicapai di persimpangan teknologi, kreativitas, dan interaksi yang mirip manusia.

441 Total TayanganDipublikasikan pada 2024.12.26Diperbarui pada 2024.12.26

Apa Itu GROK AI

Apa Itu ERC AI

Euruka Tech: Gambaran Umum tentang $erc ai dan Ambisinya di Web3 Pendahuluan Dalam lanskap teknologi blockchain dan aplikasi terdesentralisasi yang berkembang pesat, proyek-proyek baru muncul dengan frekuensi tinggi, masing-masing dengan tujuan dan metodologi yang unik. Salah satu proyek tersebut adalah Euruka Tech, yang beroperasi di domain cryptocurrency dan Web3 yang luas. Fokus utama Euruka Tech, khususnya tokennya $erc ai, adalah untuk menghadirkan solusi inovatif yang dirancang untuk memanfaatkan kemampuan teknologi terdesentralisasi yang terus berkembang. Artikel ini bertujuan untuk memberikan gambaran komprehensif tentang Euruka Tech, eksplorasi tujuannya, fungsionalitas, identitas penciptanya, calon investor, dan signifikansinya dalam konteks yang lebih luas dari Web3. Apa itu Euruka Tech, $erc ai? Euruka Tech dicirikan sebagai proyek yang memanfaatkan alat dan fungsionalitas yang ditawarkan oleh lingkungan Web3, dengan fokus pada integrasi kecerdasan buatan dalam operasinya. Meskipun rincian spesifik tentang kerangka proyek ini agak samar, proyek ini dirancang untuk meningkatkan keterlibatan pengguna dan mengotomatiskan proses di ruang crypto. Proyek ini bertujuan untuk menciptakan ekosistem terdesentralisasi yang tidak hanya memfasilitasi transaksi tetapi juga menggabungkan fungsionalitas prediktif melalui kecerdasan buatan, sehingga penamaan tokennya, $erc ai. Tujuannya adalah untuk menyediakan platform intuitif yang memfasilitasi interaksi yang lebih cerdas dan pemrosesan transaksi yang efisien dalam lingkup Web3 yang terus berkembang. Siapa Pencipta Euruka Tech, $erc ai? Saat ini, informasi mengenai pencipta atau tim pendiri di balik Euruka Tech masih tidak ditentukan dan agak tidak jelas. Ketidakhadiran data ini menimbulkan kekhawatiran, karena pengetahuan tentang latar belakang tim sering kali penting untuk membangun kredibilitas dalam sektor blockchain. Oleh karena itu, kami telah mengkategorikan informasi ini sebagai tidak diketahui sampai rincian konkret tersedia di domain publik. Siapa Investor Euruka Tech, $erc ai? Demikian pula, identifikasi investor atau organisasi pendukung untuk proyek Euruka Tech tidak disediakan dengan mudah melalui penelitian yang tersedia. Aspek yang sangat penting bagi pemangku kepentingan atau pengguna potensial yang mempertimbangkan keterlibatan dengan Euruka Tech adalah jaminan yang datang dari kemitraan keuangan yang mapan atau dukungan dari perusahaan investasi yang terkemuka. Tanpa pengungkapan tentang afiliasi investasi, sulit untuk menarik kesimpulan komprehensif tentang keamanan finansial atau keberlangsungan proyek. Sesuai dengan informasi yang ditemukan, bagian ini juga berada pada status tidak diketahui. Bagaimana Euruka Tech, $erc ai Bekerja? Meskipun kurangnya spesifikasi teknis yang mendetail untuk Euruka Tech, penting untuk mempertimbangkan ambisi inovatifnya. Proyek ini berusaha memanfaatkan kemampuan komputasi kecerdasan buatan untuk mengotomatiskan dan meningkatkan pengalaman pengguna dalam lingkungan cryptocurrency. Dengan mengintegrasikan AI dengan teknologi blockchain, Euruka Tech bertujuan untuk menyediakan fitur seperti perdagangan otomatis, penilaian risiko, dan antarmuka pengguna yang dipersonalisasi. Esensi inovatif dari Euruka Tech terletak pada tujuannya untuk menciptakan koneksi yang mulus antara pengguna dan kemungkinan luas yang ditawarkan oleh jaringan terdesentralisasi. Melalui pemanfaatan algoritma pembelajaran mesin dan AI, proyek ini bertujuan untuk meminimalkan tantangan bagi pengguna baru dan menyederhanakan pengalaman transaksional dalam kerangka Web3. Simbiosis antara AI dan blockchain ini menggarisbawahi signifikansi token $erc ai, yang berdiri sebagai jembatan antara antarmuka pengguna tradisional dan kemampuan canggih dari teknologi terdesentralisasi. Garis Waktu Euruka Tech, $erc ai Sayangnya, sebagai akibat dari informasi yang terbatas mengenai Euruka Tech, kami tidak dapat menyajikan garis waktu yang mendetail tentang perkembangan utama atau tonggak dalam perjalanan proyek ini. Garis waktu ini, yang biasanya sangat berharga dalam memetakan evolusi suatu proyek dan memahami trajektori pertumbuhannya, saat ini tidak tersedia. Ketika informasi tentang peristiwa penting, kemitraan, atau penambahan fungsional menjadi jelas, pembaruan pasti akan meningkatkan visibilitas Euruka Tech di dunia crypto. Klarifikasi tentang Proyek “Eureka” Lainnya Penting untuk dicatat bahwa banyak proyek dan perusahaan berbagi nomenklatur serupa dengan “Eureka.” Penelitian telah mengidentifikasi inisiatif seperti agen AI dari NVIDIA Research, yang fokus pada pengajaran robot tugas kompleks menggunakan metode generatif, serta Eureka Labs dan Eureka AI, yang meningkatkan pengalaman pengguna dalam analitik pendidikan dan layanan pelanggan, masing-masing. Namun, proyek-proyek ini berbeda dari Euruka Tech dan tidak boleh disamakan dengan tujuan atau fungsionalitasnya. Kesimpulan Euruka Tech, bersama dengan token $erc ai-nya, mewakili pemain yang menjanjikan namun saat ini masih samar dalam lanskap Web3. Meskipun rincian tentang pencipta dan investor masih belum diungkapkan, ambisi inti untuk menggabungkan kecerdasan buatan dengan teknologi blockchain tetap menjadi titik fokus yang menarik. Pendekatan unik proyek ini dalam mendorong keterlibatan pengguna melalui otomatisasi canggih dapat membedakannya seiring dengan kemajuan ekosistem Web3. Seiring dengan terus berkembangnya pasar crypto, pemangku kepentingan harus memperhatikan kemajuan seputar Euruka Tech, karena pengembangan inovasi yang terdokumentasi, kemitraan, atau peta jalan yang terdefinisi dapat menghadirkan peluang signifikan di masa depan. Saat ini, kami menunggu wawasan yang lebih substansial yang dapat mengungkap potensi Euruka Tech dan posisinya dalam lanskap crypto yang kompetitif.

399 Total TayanganDipublikasikan pada 2025.01.02Diperbarui pada 2025.01.02

Apa Itu ERC AI

Apa Itu DUOLINGO AI

DUOLINGO AI: Mengintegrasikan Pembelajaran Bahasa dengan Inovasi Web3 dan AI Dalam era di mana teknologi membentuk kembali pendidikan, integrasi kecerdasan buatan (AI) dan jaringan blockchain menandai batasan baru untuk pembelajaran bahasa. Masuklah DUOLINGO AI dan cryptocurrency terkaitnya, $DUOLINGO AI. Proyek ini bercita-cita untuk menggabungkan kekuatan pendidikan dari platform pembelajaran bahasa terkemuka dengan manfaat teknologi Web3 yang terdesentralisasi. Artikel ini menggali aspek-aspek kunci dari DUOLINGO AI, menjelajahi tujuannya, kerangka teknologi, perkembangan sejarah, dan potensi masa depan sambil mempertahankan kejelasan antara sumber daya pendidikan asli dan inisiatif cryptocurrency independen ini. Gambaran Umum DUOLINGO AI Pada intinya, DUOLINGO AI berusaha untuk membangun lingkungan terdesentralisasi di mana pelajar dapat memperoleh imbalan kriptografi untuk mencapai tonggak pendidikan dalam kemahiran bahasa. Dengan menerapkan kontrak pintar, proyek ini bertujuan untuk mengotomatiskan proses verifikasi keterampilan dan alokasi token, sesuai dengan prinsip Web3 yang menekankan transparansi dan kepemilikan pengguna. Model ini menyimpang dari pendekatan tradisional dalam akuisisi bahasa dengan sangat bergantung pada struktur tata kelola yang dipimpin oleh komunitas, memungkinkan pemegang token untuk menyarankan perbaikan pada konten kursus dan distribusi imbalan. Beberapa tujuan notable dari DUOLINGO AI meliputi: Pembelajaran Gamified: Proyek ini mengintegrasikan pencapaian blockchain dan token non-fungible (NFT) untuk mewakili tingkat kemahiran bahasa, mendorong motivasi melalui imbalan digital yang menarik. Penciptaan Konten Terdesentralisasi: Ini membuka jalan bagi pendidik dan penggemar bahasa untuk berkontribusi pada kursus mereka, memfasilitasi model pembagian pendapatan yang menguntungkan semua kontributor. Personalisasi Berbasis AI: Dengan menggunakan model pembelajaran mesin yang canggih, DUOLINGO AI mempersonalisasi pelajaran untuk beradaptasi dengan kemajuan belajar individu, mirip dengan fitur adaptif yang ditemukan di platform yang sudah mapan. Pencipta Proyek dan Tata Kelola Hingga April 2025, tim di balik $DUOLINGO AI tetap anonim, praktik yang umum dalam lanskap cryptocurrency terdesentralisasi. Anonimitas ini dimaksudkan untuk mempromosikan pertumbuhan kolektif dan keterlibatan pemangku kepentingan daripada fokus pada pengembang individu. Kontrak pintar yang diterapkan di blockchain Solana mencatat alamat dompet pengembang, yang menandakan komitmen terhadap transparansi terkait transaksi meskipun identitas penciptanya tidak diketahui. Menurut peta jalannya, DUOLINGO AI bertujuan untuk berkembang menjadi Organisasi Otonom Terdesentralisasi (DAO). Struktur tata kelola ini memungkinkan pemegang token untuk memberikan suara pada isu-isu penting seperti implementasi fitur dan alokasi kas. Model ini sejalan dengan etos pemberdayaan komunitas yang ditemukan dalam berbagai aplikasi terdesentralisasi, menekankan pentingnya pengambilan keputusan kolektif. Investor dan Kemitraan Strategis Saat ini, tidak ada investor institusi atau modal ventura yang dapat diidentifikasi secara publik yang terkait dengan $DUOLINGO AI. Sebaliknya, likuiditas proyek ini terutama berasal dari bursa terdesentralisasi (DEX), menandai kontras yang tajam dengan strategi pendanaan perusahaan teknologi pendidikan tradisional. Model akar rumput ini menunjukkan pendekatan yang dipimpin oleh komunitas, mencerminkan komitmen proyek terhadap desentralisasi. Dalam whitepapernya, DUOLINGO AI menyebutkan pembentukan kolaborasi dengan “platform pendidikan blockchain” yang tidak ditentukan yang bertujuan untuk memperkaya penawaran kursusnya. Meskipun kemitraan spesifik belum diungkapkan, upaya kolaboratif ini menunjukkan strategi untuk menggabungkan inovasi blockchain dengan inisiatif pendidikan, memperluas akses dan keterlibatan pengguna di berbagai jalur pembelajaran. Arsitektur Teknologi Integrasi AI DUOLINGO AI menggabungkan dua komponen utama yang didorong oleh AI untuk meningkatkan penawaran pendidikannya: Mesin Pembelajaran Adaptif: Mesin canggih ini belajar dari interaksi pengguna, mirip dengan model kepemilikan dari platform pendidikan besar. Ia secara dinamis menyesuaikan kesulitan pelajaran untuk mengatasi tantangan spesifik pelajar, memperkuat area yang lemah melalui latihan yang ditargetkan. Agen Percakapan: Dengan menggunakan chatbot bertenaga GPT-4, DUOLINGO AI menyediakan platform bagi pengguna untuk terlibat dalam percakapan yang disimulasikan, mendorong pengalaman pembelajaran bahasa yang lebih interaktif dan praktis. Infrastruktur Blockchain Dibangun di atas blockchain Solana, $DUOLINGO AI memanfaatkan kerangka teknologi yang komprehensif yang mencakup: Kontrak Pintar Verifikasi Keterampilan: Fitur ini secara otomatis memberikan token kepada pengguna yang berhasil melewati tes kemahiran, memperkuat struktur insentif untuk hasil pembelajaran yang nyata. Lencana NFT: Token digital ini menandakan berbagai tonggak yang dicapai pelajar, seperti menyelesaikan bagian dari kursus mereka atau menguasai keterampilan tertentu, memungkinkan mereka untuk memperdagangkan atau memamerkan pencapaian mereka secara digital. Tata Kelola DAO: Anggota komunitas yang memiliki token dapat terlibat dalam tata kelola dengan memberikan suara pada proposal kunci, memfasilitasi budaya partisipatif yang mendorong inovasi dalam penawaran kursus dan fitur platform. Garis Waktu Sejarah 2022–2023: Konseptualisasi Landasan untuk DUOLINGO AI dimulai dengan pembuatan whitepaper, menyoroti sinergi antara kemajuan AI dalam pembelajaran bahasa dan potensi terdesentralisasi dari teknologi blockchain. 2024: Peluncuran Beta Peluncuran beta terbatas memperkenalkan penawaran dalam bahasa-bahasa populer, memberikan imbalan kepada pengguna awal dengan insentif token sebagai bagian dari strategi keterlibatan komunitas proyek. 2025: Transisi DAO Pada bulan April, peluncuran mainnet penuh terjadi dengan peredaran token, mendorong diskusi komunitas mengenai kemungkinan ekspansi ke bahasa Asia dan pengembangan kursus lainnya. Tantangan dan Arah Masa Depan Hambatan Teknis Meskipun memiliki tujuan ambisius, DUOLINGO AI menghadapi tantangan signifikan. Skalabilitas tetap menjadi perhatian yang berkelanjutan, terutama dalam menyeimbangkan biaya yang terkait dengan pemrosesan AI dan mempertahankan jaringan terdesentralisasi yang responsif. Selain itu, memastikan penciptaan konten berkualitas dan moderasi di tengah penawaran terdesentralisasi menimbulkan kompleksitas dalam mempertahankan standar pendidikan. Peluang Strategis Melihat ke depan, DUOLINGO AI memiliki potensi untuk memanfaatkan kemitraan mikro-credentialing dengan institusi akademis, menyediakan validasi keterampilan bahasa yang diverifikasi oleh blockchain. Selain itu, ekspansi lintas rantai dapat memungkinkan proyek ini untuk menjangkau basis pengguna yang lebih luas dan ekosistem blockchain tambahan, meningkatkan interoperabilitas dan jangkauannya. Kesimpulan DUOLINGO AI mewakili perpaduan inovatif antara kecerdasan buatan dan teknologi blockchain, menghadirkan alternatif yang berfokus pada komunitas untuk sistem pembelajaran bahasa tradisional. Meskipun pengembangannya yang anonim dan model ekonomi yang muncul membawa risiko tertentu, komitmen proyek terhadap pembelajaran gamified, pendidikan yang dipersonalisasi, dan tata kelola terdesentralisasi menerangi jalan ke depan untuk teknologi pendidikan di ranah Web3. Seiring kemajuan AI dan evolusi ekosistem blockchain, inisiatif seperti DUOLINGO AI dapat mendefinisikan ulang bagaimana pengguna terlibat dengan pendidikan bahasa, memberdayakan komunitas dan memberikan imbalan atas keterlibatan melalui mekanisme pembelajaran yang inovatif.

451 Total TayanganDipublikasikan pada 2025.04.11Diperbarui pada 2025.04.11

Apa Itu DUOLINGO AI

Diskusi

Selamat datang di Komunitas HTX. Di sini, Anda bisa terus mendapatkan informasi terbaru tentang perkembangan platform terkini dan mendapatkan akses ke wawasan pasar profesional. Pendapat pengguna mengenai harga AI (AI) disajikan di bawah ini.

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