How we built a 1000x Growth Product in 1 Year | Perplexity AI, Aravind Srinivas

EO
17 Jan 202411:47

Summary

TLDRArvind Srinivas, co-founder and CEO of Perplexity AI, discusses the innovative conversational search engine that aims to transform online information consumption. Launched on December 7th, 2022, Perplexity has grown exponentially to 10 million monthly active users by offering instant answers to natural language queries. With a strong academic background, including a PhD from Berkeley and an internship at OpenAI, Srinivas shares his journey into AI and deep learning, leading to the development of technologies like ChatGPT. Perplexity's approach is to provide not just answers, but also citations, reflecting an academic rigor. The company's growth strategy focuses on product quality and user trust, with a Pro plan priced at $20 a month to ensure market fit for their unique service. Srinivas emphasizes the importance of focusing on a few key areas, learning from mistakes, and the privilege of working on something you love to drive the company's mission forward.

Takeaways

  • 🚀 Arvind Srinivas is the co-founder and CEO of Perplexity AI, a conversational search engine that aims to revolutionize how people find information online by providing instant answers to natural language questions.
  • 📈 Perplexity AI has experienced significant growth, reaching about 10 million monthly active users within a year since its launch on December 7th, 2022.
  • 🧠 Arvind's interest in AI began with a machine learning contest and was further developed through his PhD in AI and deep learning at Berkeley and an internship at OpenAI, where he was inspired by the publication of GPT 1.
  • 💡 Perplexity AI's approach to search is to provide not just answers, but also citations for every sentence, drawing from the founders' academic background and the principle of backing up claims with references.
  • 🀖 The company's product, Copilot, is designed to interact with users by asking clarifying questions and expanding on their prompts, similar to how a friend might help refine a question.
  • 📊 The growth of Perplexity AI has been organic, with users discovering the platform through word-of-mouth and social media, often as an alternative when other AI platforms fail to deliver satisfactory results.
  • 🎌 Arvind emphasizes the importance of focusing on improving every component of the product, likening the process to conducting an orchestra where each part is crucial for success.
  • 💞 The Pro plan for Perplexity AI is priced at $20 a month, the same as ChatGPT Plus, to ensure that users value the unique combination of large language models and search capabilities that Perplexity offers.
  • 🏋‍♂ Arvind advises startups to focus on a very limited number of things to maintain quality and speed, and to earn the right to introduce new features by first satisfying existing user needs.
  • 🔄 He also stresses the importance of urgency and iteration, encouraging a culture of asking 'why not today?' to foster a startup environment that thrives on execution and continuous improvement.
  • 🧘‍♂ Arvind finds fulfillment in his work and views the ability to make a difference through AI as a privilege, despite the stress and long hours that come with being an entrepreneur.

Q & A

  • What is the main goal of Perplexity AI?

    -The main goal of Perplexity AI is to revolutionize how people consume information online by providing a conversational and search engine that delivers answers to users' questions in natural language, instead of just a list of links.

  • When was Perplexity AI launched?

    -Perplexity AI was launched on December 7th, 2022.

  • How has the user base of Perplexity AI grown since its launch?

    -Since its launch, Perplexity AI has grown from serving around 2000-3000 queries on the first day to serving over 3 to 4 million queries a day, marking a significant increase in its user base.

  • What was Arvind Srinivas' background before founding Perplexity AI?

    -Arvind Srinivas grew up in India, studied at one of the IITs, and was deeply interested in algorithms and programming. He went on to do his PhD in AI and deep learning at Berkeley and worked as a research intern at OpenAI.

  • What inspired Arvind to delve deeper into AI and machine learning?

    -Arvind was inspired to delve deeper into AI and machine learning after winning a machine learning contest, which was his first exposure to the field.

  • How does Perplexity AI differentiate itself from traditional search engines?

    -Perplexity AI differentiates itself by providing conversational answers to users' questions, including references or citations for every sentence, similar to academic papers or journalistic essays, rather than just a list of links.

  • What is the 'Copilot' feature in Perplexity AI?

    -The 'Copilot' feature in Perplexity AI is a system that interactively asks clarifying questions to expand and refine the user's initial query, aiming to help users who are not expert prompt engineers to get more accurate and relevant answers.

  • Why did Perplexity AI decide to price its Pro plan at $20 a month, the same as ChatGPT Plus?

    -Perplexity AI priced its Pro plan at $20 a month to ensure that users who pay for their service are doing so because they value the unique combination of large language models and search capabilities offered by Perplexity, rather than just the subsidized cost of GPT 4.

  • What is the strategy for product development at Perplexity AI?

    -The strategy for product development at Perplexity AI is to focus on very few things at a time, ensuring high quality and user trust. They believe in earning the right to ship new features by first delivering on existing user needs and improving the product continuously.

  • How does Arvind Srinivas approach decision-making in a complex situation?

    -Arvind approaches decision-making by identifying the most important factors, usually narrowing it down to the top two choices, and focusing on those. He believes in reformulating the problem to simplify it and then iterating on the solution.

  • What advice does Arvind give for starting a company?

    -Arvind advises starting a company based on what you truly love, as passion tends to remain constant despite the dynamic changes in the world. He emphasizes that the mission should not be solely about making money but about creating a high-quality product that serves the mission.

  • How does Arvind describe the experience of working on Perplexity AI?

    -Arvind describes the experience as fulfilling and a privilege. He often feels like there's more work to be done and is driven by the desire to improve and execute on his vision.

Outlines

00:00

🚀 Introduction to Perplexity AI and its Founder

Arvind Srinivas, the co-founder and CEO of Perplexity AI, introduces the company as a conversational and search engine that aims to revolutionize online information consumption by providing instant answers to natural language questions. The product was launched on December 7th, 2022, and has since grown to 10 million monthly active users. Arvind's background includes studying at an IIT in India, winning a machine learning contest, and pursuing a PhD in AI and deep learning at Berkeley. He also interned at OpenAI and was inspired by the success of Google's founders, Larry Page and Sergey Brin, to pursue entrepreneurship. Perplexity AI's mission is to create an ultimate search engine that understands and delivers precise information to users.

05:03

📈 Perplexity AI's Growth and Approach to Quality

Perplexity AI has experienced significant growth, now serving 3 to 4 million queries daily. The company focuses on maintaining answer quality by meticulously improving each component of their system, from filtering out spammy sites to ensuring concise and accurate summaries. Arvind emphasizes the importance of not just throwing money at the problem but carefully orchestrating the various components of their service. The Pro plan, priced at $20 a month, is positioned to demonstrate the unique value of Perplexity's combined search and AI capabilities. The company's strategy is to concentrate on a few key areas, ensuring high-quality output and user trust. They believe in earning the right to introduce new features by consistently delivering on their mission to become the ultimate knowledge app.

10:05

💡 Focus, Execution, and the Importance of Passion in Startups

Arvind shares his philosophy on startup operations, advocating for a focus on a single, critical aspect due to limited resources and the need for speed and quality. He discusses the importance of urgency and the mindset of always questioning if tasks can be completed sooner. Arvind also stresses the significance of making decisions by identifying the most important factors rather than simply listing pros and cons. He advises startups to focus on what they are passionate about and to align their missions with improving their product and user experience rather than chasing valuation. Arvind finds fulfillment in the dynamic challenges of building a company and views the opportunity to make continuous improvements as a privilege.

Mindmap

Keywords

💡Perplexity AI

Perplexity AI is a conversational and search engine developed by Arvind Srinivas, aiming to revolutionize how people consume information online by providing instant answers to natural language questions. It is a key theme of the video as it represents the innovative product that Arvind and his team have created to change the way we interact with the internet.

💡Natural Language Processing (NLP)

Natural Language Processing is a field of AI that enables computers to understand and interpret human language. In the context of the video, NLP is central to how Perplexity AI functions, allowing it to comprehend user questions and provide relevant answers, which is a significant aspect of the company's mission to improve online information consumption.

💡Machine Learning

Machine Learning is a subset of AI that involves algorithms that learn from and make predictions or decisions based on data. Arvind's initial interest in machine learning contests led him to delve deeper into the field, which is foundational to the development of Perplexity AI and its ability to analyze and utilize internet data.

💡Generative AI

Generative AI refers to the ability of an AI system to create new content that resembles the input data it was trained on. In the video, Arvind mentions how Perplexity AI uses generative AI to predict the next word on the internet and ensure effective communication with humans, highlighting the advanced capabilities of the technology.

💡Reinforcement Learning (RL)

Reinforcement Learning is a type of machine learning where an agent learns to make decisions by taking actions in an environment to maximize a reward. Arvind's research on combining generative AI and RL has resulted in technologies like ChatGPT, which is a significant part of Perplexity AI's functionality.

💡Entrepreneurship

Entrepreneurship is the process of designing, launching, and running a new business. Arvind's interest in entrepreneurship, inspired by figures like Larry Page and Sergey Brin from Google, led him to found Perplexity AI. It is a key concept as it underpins his journey from academia to creating a company that aims to be the ultimate knowledge app.

💡Product Market Fit

Product Market Fit refers to a situation where a product satisfies a market need profitably. Arvind discusses the importance of establishing product market fit for Perplexity AI's core offering, which is the combination of large language models (LLMs) and search capabilities, rather than just offering subsidized access to GPT-4.

💡AI-Powered Search

AI-Powered Search is a method of searching that uses AI algorithms to understand and process search queries, providing more accurate and relevant results. Perplexity AI's approach to search is a central theme of the video, as it differentiates the platform from traditional search engines by offering conversational answers with citations.

💡Academic Background

Academia provides a foundation of rigorous research and evidence-based practices. Arvind and his co-founder's academic background in PhDs influences Perplexity AI's approach to providing answers with citations, mirroring the academic practice of backing up claims with references, which is a unique aspect of the platform.

💡User Experience

User Experience (UX) is all about how a person feels when interacting with a system, which is crucial for the success of any product. Arvind emphasizes the importance of improving every aspect of the user experience in Perplexity AI, from handling spammy sites to providing concise and accurate summaries, to ensure a high-quality outcome for the user.

💡Startup Strategy

Startup Strategy involves the methods and actions a startup takes to achieve its goals and grow its business. Arvind discusses the strategy of focusing on a few key areas, moving fast, and shipping high-quality products as essential for startups like Perplexity AI. This strategy is vital for establishing trust and success in a competitive market.

Highlights

Arvind Srinivas is the co-founder and CEO of Perplexity AI, a conversational and search engine designed to deliver answers in natural language.

Perplexity aims to revolutionize online information consumption by providing instant answers to questions instead of traditional search results.

The product launched on December 7th, 2022, and has grown to approximately 10 million monthly active users within a year.

Arvind's early interest in algorithms and programming led him to a machine learning contest and eventually to a PhD in AI and deep learning at Berkeley.

His internship at OpenAI in 2018 was a significant reality check, highlighting the need for improvement in programming and first principles thinking.

The advent of GPT 1 during his internship inspired Arvind to focus on the importance of learning from internet data.

Arvind and his advisor spent two years learning and coding to understand generative AI and RL, leading to Perplexity's innovative technologies like ChatGPT.

ChatGPT's unique ability to predict and communicate with humans sets it apart from merely predicting the next word on the internet.

Arvind's entrepreneurial interest was influenced by the story of Larry Page and Sergey Brin, as detailed in the book 'How Google Works'.

He envisioned two career paths for himself: being a professor or an entrepreneur to execute on his own vision.

Perplexity is the world's first conversational answer engine, providing answers with corresponding references or citations for credibility.

The company's approach is inspired by academic principles, where every claim is backed by a reference, similar to a research paper.

Perplexity's CoPilot feature interactively expands and clarifies user prompts, guiding them to a refined question similar to a conversation with a knowledgeable friend.

The product has grown exponentially, now serving over 3 to 4 million queries a day, demonstrating a significant user preference for its approach.

Quality of answers is maintained by meticulously improving every component of the system, from sourcing high-quality data to concise summarization.

The Pro plan is priced at $20 a month, aligning with the cost of OpenAI's GPT 4 to ensure market fit for Perplexity's unique offering.

Arvind emphasizes the importance of focusing on a few key areas for startups, given limited resources and the need for rapid execution.

The company culture at Perplexity AI encourages urgency and quality, with a focus on earning the right to ship new features by exceeding user expectations.

Arvind advises startups to focus on what they love and to view money as a means to serve their mission, rather than an end in itself.

He finds fulfillment in the dynamic challenges of entrepreneurship, viewing the ability to contribute and improve as a privilege.

Transcripts

00:00

I'm Arvind Srinivas.

00:01

I'm the co-founder and CEO of perplexity AI. Perplexity is a conversational and

00:06

search engine that aims to deliver answers to you, to whatever questions you may ask.

00:10

We are trying to revolutionize how people consume information online.

00:14

Instead of getting ten blue links, they can just ask questions in natural language

00:17

and just get it answered instantly.

00:18

And we launch the product on December 7th, 2022.

00:21

We have like about 10 million monthly active users at this point.

00:24

It's basically grown thousand X over a period of one year.

00:39

So I grew up in India, studied in one of the IIT's there,

00:42

and I was really into algorithms programing ever since the beginning.

00:46

A friend of mine told me about a machine learning contest, which I didn't even know

00:50

what machine learning was, what?

00:51

All they told me was, hey, there's this data set and you can figure out a way

00:55

to predict the output given the input.

00:57

And it was fun.

00:58

And I won the contest and I didn't spend a lot of time on it,

01:00

and it came more naturally.

01:02

So I decided to go deeper into it.

01:04

And I went and did my PhD in Berkeley on AI and deep learning.

01:07

I worked at OpenAI in 2018 summer as a research intern.

01:11

I thought I was good, okay, I did really well in India.

01:13

I came to Berkeley.

01:14

I'm like, definitely one of the top AI PhD students.

01:17

And then I went to OpenAI and I felt like really bad because people

01:20

were so much better than me.

01:21

It was a big reality check that, okay, I could improve a lot more in programing.

01:25

I could improve a lot more in first principles.

01:27

Thinking my clarity of thoughts.

01:29

After an internship at OpenAI in 2018, that was when GPT 1 was published.

01:34

We realized that there is this new form of learning using all the internet data

01:37

and learning from it, and I figured that was going to be more important.

01:40

So I told my advisor that this is the right thing to do.

01:43

We should go work on this.

01:44

And he was actually like pretty open minded and said, okay, you know what?

01:47

Like I'm not a specialist here, but let's try.

01:50

I mean, if this is the next thing, the best way to learn a new topic is

01:53

to force yourself to teach it to others.

01:55

So we spent a lot of time holidays, weekends, just learning and coding

01:59

and just understanding all these things.

02:01

And we did this for two years.

02:02

All that helped me find a new research topic, which is how to combine

02:06

generative AI and RL together, which is what results in these amazing

02:10

technologies like ChatGPT.

02:12

ChatGPT is not just predicting the next word on the internet.

02:15

It's doing that and then making sure that you know how to communicate with humans.

02:20

I'd always been interested in entrepreneurship

02:22

because I've been in the Bay area.

02:23

I watched this TV show, Silicon Valley, which is pretty real, but never really

02:27

found an example of an academic turned entrepreneur that I really resonated with.

02:31

It was all like undergrad dropouts.

02:33

At one point, I was in the library in the late nights reading books,

02:37

and then I stumbled upon this book, wrote the story of Larry and Sergey

02:40

in the book How Google Works.

02:42

Larry had written the foreword.

02:43

In it, I had only two career pathways for myself.

02:47

It was either to be a professor or an entrepreneur, and the reason is

02:51

that no other career pathway would let me execute on my own vision.

02:55

I would have to be working on someone else's vision.

02:58

I wouldn't be able to bring out what the ideas I have in my head into reality.

03:08

Artificial intelligence would be the ultimate version of Google.

03:12

So we had the ultimate search engine.

03:13

It would understand everything on the web, it would understand

03:16

exactly what you wanted, and it would give you the right thing.

03:20

Yeah.

03:20

Perplexity is the world's first conversational answer engine.

03:24

What does that mean?

03:25

Earlier, we were used to entering something like keywords

03:28

or a bunch of phrases, and Google gives you ten blue links and

03:30

you open each of them and start reading.

03:32

Perplexity is trying to build a future where you don't have to do this.

03:35

You can just come and ask a question, just like how you would ask a friend,

03:38

and that AI replies to you with the answer, but not just the answer.

03:42

Every sentence that it says also has a corresponding reference,

03:45

or we call it a citation.

03:47

This is all coming from our academic background.

03:49

Like my co-founder, Dennis and I are PhDs.

03:51

We figured that we would use this principle that everything in a paper that

03:55

you write in academia, you have to back it up with reference from some other paper.

03:58

And that's how perplexity works.

04:00

It's almost like how a journalist essay is written or research paper is written.

04:04

Often you're curious about something, but you don't exactly know what you want.

04:07

Even so, how can I help you if you don't know what you want?

04:09

People are not expert, prompt engineers they're never going to be.

04:12

Don't blame the user for not having a good prompt.

04:15

Blame the AI for not being able to expand or help them expand themselves

04:19

to a good prompt.

04:20

That's why we built this thing called copilot on our side, where as you

04:23

ask a question, copilot will last.

04:25

Clarifying questions on your prompt is basically getting expanded interactively.

04:29

This is similar to talking to a friend like, hey, you know what?

04:32

I'm figuring out which school to go to.

04:33

I was like, oh, okay, cool. What are you actually interested in?

04:36

Are you interested in like, English majors?

04:37

So you're interested in computer science?

04:39

And then I think I might be interested in both English and computer science.

04:42

Okay. Yeah.

04:42

You know what? Yale might be a good option for you.

04:45

Like, that's how you talk to a friend, right?

04:46

We want that experience to come to a search engine,

04:49

to that human intelligence needed to do that is being done by an AI now.

04:54

And we think this is the future of how people are going to interact

04:57

with information on the internet.

04:58

We launched the product on December 7th, 2022, our first day,

05:02

I think we saw around 2000 3000 queries.

05:04

Now we serve more than 3 to 4 million queries a day.

05:07

It's basically grown thousand X over a period of one year.

05:10

Growth so far has been that somebody says ChatGPT doesn't work for this particular

05:15

thing, or like Bard sucks at this thing.

05:17

And then like, people just tweet, oh, look at this perplexity thing.

05:20

It just gets it. Look at this thing.

05:21

This is how we maintain the quality of the answer comes down to improving every

05:25

single component here a component of like, does it have spammy sites

05:28

or does it have like high quality sites?

05:29

How good are you at writing that amazing, concise summary without hallucination?

05:34

We are playing the orchestra here.

05:36

These are all like individual musicians and any one musician failing

05:40

will make the result fail.

05:41

That's why this is a hard thing to build.

05:42

That's why this is not something where, oh, because you're a startup,

05:45

you're going to lose.

05:46

Because even for a big company, playing the orchestra is hard.

05:49

Of course, if you have more money, you can hire better musicians and like you

05:52

play a better orchestra over time.

05:53

But that's still the part of orchestrating.

05:55

But the user doesn't care where it goes wrong in any of these.

05:59

For the user, they read an answer and they're like, oh, this is good.

06:03

Or like, this is not good, right?

06:05

So that's why this particular product is super hard to build.

06:09

And that's why, like, we are so focused on improving every aspect of this.

06:13

This is a really hard problem.

06:14

And we believe it can be solved over time as we gather more data from users

06:18

as improve our own like stacks in each of these components, your experience is going

06:22

to keep getting better.

06:23

So the Pro plan is priced at $20 a month.

06:25

It's the exact same pricing as ChatGPT plus, I'll tell you why.

06:29

So we use OpenAI's GPT four.

06:32

If we priced it lower than chat GPT plus, people would come and pay for it,

06:36

but not necessarily for what we're probably because we subsidized GPT 4

06:41

and gave it to the user.

06:42

And subsidy in any industry has product market fit.

06:45

But then do you have product market fit as a company because you're subsidizing

06:49

something everybody wants, which is GPT 4, or do you have product

06:53

market fit for your core offering, which is combining LLM and search together?

06:57

And it's very important for you to not conflate something with something else.

07:00

So we decided, okay, we'll price it at the same price and then see how many people

07:04

are still paying for our product, because they realize that we are the best provider

07:08

of search and algorithms together.

07:09

Either they have to cancel GPT subscription, come here,

07:12

or they have to pay for both.

07:13

Just like how you pay for both Netflix and HBO.

07:16

That's why we decided to do this, and we are super happy that that worked, because

07:19

that means what if a user comes and pays for us, communicates to us one thing,

07:23

which is they value that you are providing the best service of this one particular

07:26

thing, that they want the highest quality.

07:32

Yeah, the best strategy for startups is to focus on very few things,

07:36

like literally even one thing, because there's not much time.

07:39

As a startup, you're supposed to move fast, and as a startup you have

07:42

very few shots at failure.

07:43

You're also supposed to ship high quality things so that the user trusts you.

07:47

So physically impossible for you to do many things.

07:49

We're still a small team, around 30 people.

07:51

When you have fewer people, you can only do fewer things.

07:54

So therefore you spend a lot of time thinking about what to do.

07:58

And once you've decided, you just do it.

08:00

There is a quote I really like from the Airbnb founder

08:03

that you have to earn the right to ship a new feature from your user, because

08:07

the user wants already a bunch of things.

08:09

Your job is to actually go and do that for them, and once they are happy,

08:12

you're like, hey, give me new features when you're doing pretty well.

08:15

That's when you got to go and ship new features.

08:16

We have this mentality in the company that don't immediately say yes

08:20

to every single obvious idea that you can do, try to really think about

08:24

what the user wants and how does it work in the context of our mission, which is

08:28

to make the world's most knowledge centric company ultimate knowledge app

08:31

And once we have strategized that well, we would just focus on execution.

08:35

We wouldn't get distracted.

08:37

And once it's shipped and it's in a good enough state, we would finish the project

08:40

and move on to the next thing.

08:41

And then it becomes like a repeatable workflow.

08:44

And it's also the culture you want to set.

08:46

Like you tell people, okay, I'll do it tomorrow.

08:48

Why can't you do it today? Just ask that question.

08:50

Don't tell them to do no, no, no, you do it today

08:52

because just ask can we do it today?

08:54

And if they have a solid explanation for why it cannot be done today, then fair.

08:58

But maybe they didn't even consider they thought okay, they could do it tomorrow.

09:01

So not in a way where it comes across as toxic, but more

09:04

like trying to push them towards urgency.

09:07

Hey look, we are a startup. We need to execute.

09:10

Like if we don't, all our potential just decays.

09:13

If you have a rolling ball and you do nothing, it will automatically stop.

09:17

But if you have a rolling ball and you keep kicking it, it'll go even faster.

09:21

Something is complex because there's a lot of information.

09:24

Then force your brain to say, okay, this is a lot,

09:27

but what is the one most important thing?

09:29

What is the second most important thing? Usually there's not more than two.

09:32

Let's say there's like one thing that has two choices.

09:34

And there are like three things that are eight choices.

09:36

Now your brain is not able to process eight choices at once.

09:38

It's usually has 3 or 4 at best.

09:40

So your job is actually to figure out what is that two choices.

09:44

In fact, there is like a advice from Reid Hoffman that says, in life,

09:47

whenever you're going to make decisions, people usually do pros and cons

09:51

where they write down the pros, they write down the cons and then see

09:54

which has more, and they pick that option.

09:57

But that's like the wrong way of doing things, because that way you're weighing

10:01

everything equally important, where things are not equally important.

10:04

Usually some things are way more important than others, so you've got to be able to

10:08

take something and pick the most important thing out of it and focus on that.

10:12

Usually it works.

10:13

Reformulate the problem better, and so the complex problem becomes

10:16

much simpler and then iterate.

10:18

Look, I'm not saying I'm really good at this today.

10:21

I can still improve and so can everybody. So believe in the improvement process.

10:25

Don't believe in like being perfect. And we all learn.

10:28

We all make mistakes and it's fine.

10:30

So I've given this advice in other interviews I want to continue

10:32

to say this not just for consistency.

10:34

I really believe in it.

10:35

When you are starting a company, do what you really love because the world

10:39

is not something that's static, it changes dynamically really fast.

10:42

I would say what you love doesn't usually change, so start with that.

10:46

The mission is not about making money.

10:48

That said, the mission requires money and therefore we will make money

10:52

in order to like serve the mission.

10:54

The metric should never be like oh, by X year or X month.

10:58

I'm going to increase the valuation by alpha times X. It should be really focused

11:02

on okay, I should make the product better.

11:04

I should have more users.

11:05

I should have a higher quality product, more accuracy.

11:09

A lot of people, when they wake up, they feel like going back to bed.

11:12

They feel like want to sleep 1 or 2 more hours more,

11:15

and nothing's really going to change.

11:16

For me, it's the opposite.

11:17

I'm like waking up sooner than I wanted to, sleeping later than I wanted to.

11:22

When the day ends, I always feel like there's more stuff I could have done,

11:25

so that's actually a privilege.

11:27

I also feel stress, but the opposite wouldn't make me feel

11:30

any fulfillment, honestly.

11:32

So it's very fulfilling.

11:33

It's definitely a privilege and I want to keep going this way.

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日本語の芁玄は必芁ですか