Arjun Naskar ☕️

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Arjun Naskar ☕️ banner
Arjun Naskar ☕️

Arjun Naskar ☕️

@anaskar

Currently demand gen @basetenco | Alum @MIT @Homejoy @Hireready @RemindHQ @ycombinator @clickup|

Online Katılım Ocak 2009
2.1K Takip Edilen583 Takipçiler
Arjun Naskar ☕️
Arjun Naskar ☕️@anaskar·
@harris dunno about naming conventions but Baseten's new SF office has their rooms in alphabetical order. Makes booking and finding EASY 🙌
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Aaron Harris
Aaron Harris@harris·
conference room naming strategy will tell you everything you need to know about a company
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Arjun Naskar ☕️
Arjun Naskar ☕️@anaskar·
Here's to the Day 0 supporters that don't waver in their conviction in the founders. "When you work on early stage, you make a concentrated commitment to a person and an overall idea and then you suspend disbelief and work on the company for a long time"
Dannie Herzberg@DannieHerz

Congrats to @saranormous, who somehow manages to be everywhere at once and shows up in a superhuman way for every team she backs. I/we feel the impact literally every day. Working with Sarah and @conviction is an unfair advantage. forbes.com/sites/rashishr…

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Arjun Naskar ☕️
Arjun Naskar ☕️@anaskar·
frontier intelligence is jagged. the only companies that beat it long-term are the ones post-training on their own production data. every correction, every edit, every retry their users make is signal. until now it's been wasted and locked in. it's the only way to break the shackles of Big Token is to unleash your unfair advantage. congrats @trajectorylabs -> this is what that looks like at scale.
Ronak Malde@rronak_

Today, @MichaelElabd, @QuantumArjun, and I are excited to announce Trajectory. We are a research lab and product company building the platform for Continual Learning. Our platform unlocks the signal already sitting in product usage, so companies can continuously post-train large-scale agentic models that outperform the frontier. @trajectorylabs We’ve raised $15M from @Conviction, @BessemerVP, @radicalvcfund, @jeffdean, @drfeifei and more. We’re partnering with some of the best AI-native companies: @ClayRunHQ @Harvey, @DecagonAI, @mercor_ai, @RogoAI to power their agentic systems, some of which we are already in production with. We’ve brought together a world class research team from DeepMind, OpenAI, Apple, Meta Superintelligence, Amazon AGI, Scale AI, and an elite product team from Stripe and Figma. AI will never again start on day one. Every correction, every retry, every edit will make products smarter. This is Continual Learning.

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Arjun Naskar ☕️ retweetledi
Arian Agrawal
Arian Agrawal@AgrawalArian·
Go-to-market strategy is one of the strongest demonstrations of a founder’s depth. Go-to-market is both a creative and insightful exercise of who your buyer could be and what they need. It’s grounded in evidence from the market and conversations with those buyers. It’s hard work and it requires rapid iteration. Go-to-market is not traction. Traction without go to market is an incomplete story, but go to market without traction can work - it is category dependent. Go-to-market is a tangible point of view, and a bottoms up exercise to be married with compared to your tops down TAM. At a time when AI has accelerated revenue in ways we have never seen before, I think it is more important now than ever before to understand this distinction. It’s also the most important exercise early stage founders need to do regardless of domain. This is particularly true in deep tech or infrastructure plays, when traction will always be a laggard. Longer form thoughts coming soon. But curious to get other opinions from folks looking and building across domains today Cc @nunzi46 @anaskar
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Rachel Rapp
Rachel Rapp@rachelrapp·
Spending a few days in Miami, first time — anyone have recs on what to do/see/where to eat?
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Arian Agrawal
Arian Agrawal@AgrawalArian·
Genuinely curious how people tolerate this behavior I’m used to humans saying that they will do something and forget to do it. It’s a natural“human mistake” But the agent version of this is saying “I did it!” And they didn’t do anything at all. It is driving me insane
Arian Agrawal@AgrawalArian

I’ve always prescribed to move fast and break things. That’s the beauty of startups. Also, the downside isn’t that low. But agents, have taken that to another level

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Arjun Naskar ☕️
I worked at ClickUp on the GTM side for 3.5 years. Love it or hate it, @DJ_CURFEW’s AI mandate is real. I started working at CU in the fall of 2022 when GPT-2 came out. Zeb saw the downstream effects early and was a big proponent of moving employees and the product in that direction. We had unfettered access to tools and tokens. We had hackathons and awards to incentivize. We had AI adoption be a performance review pillar. It was not a casual exploration. It was earnest from Day 1. Not everyone would adapt as easily or as quickly. But everyone came along. My team in particular owned Growth Ops and GTME. We built amazing systems with real revenue impact and were able to scale ourselves at least 50x. We were eons ahead of my counterparts at other companies. Vendors’ mouths would drop when I said what we were building. Not everything was a success. We learned through doing and shipping what applications of agents and systems were accretive vs noise. On the product side, he made swift moves and shipped things that exceeded my expectations. More importantly, he called correctly that data was the last moat. As usual, Zeb is ahead of the trend. Many companies will follow suit in the coming years. Again, you don’t have to like it, but it’s the reality of the times we’re in.
Zeb Evans@DJ_CURFEW

Today we reduced headcount by 22%. The business is the strongest it's ever been. So I think it's important to be direct about what I'm seeing and why. First, I made this decision and I own it. I did it because the way to operate at the highest level of productivity is changing, and to win the future, ClickUp needs to change with it. Second, this wasn't about cutting costs. Most savings from this change will flow directly back into the people who stay. We'll be introducing million-dollar salary bands. If you create outsized impact using AI, you'll be paid outside of traditional bands. Most importantly, I have the deepest gratitude for those affected. We're doing this from a position of strength specifically so we can take care of people properly. Everyone affected receives a package aimed at honoring their contributions and easing the transition. I only see two options: wait for this to play out gradually in the market or be honest about what I'm seeing and act proactively. THE 100X ORGANIZATION The primary change is that we're restructuring around what I call 100x org. The goal is 100x output. The roles required to build at the highest level are fundamentally different than they were a year ago. Incremental improvements to existing systems won't get us there. We need new ones. That means creating enough disruption to rebuild rather than iterate on what's already broken. The common narrative is that AI makes everyone more productive. It doesn't. Many of the workflows of today, if left unchanged, create bottlenecks in AI systems. These roles will evolve. But waiting for that to happen naturally means falling behind now. The 100x org is actually heavily dependent on people - infinitely more than today. This is only possible with 10x people that have embraced and adopted new ways of working. THE BUILDERS, AGENT MANAGERS, AND FRONT-LINERS — THE BUILDERS: 10X ENGINEERS I don't think most companies have internalized what's actually happening with AI in engineering. The common narrative is that AI makes all engineers more productive. That may be true in isolation, but at an organization level - that is the farthest thing from reality. Here's what we've validated recently at ClickUp: the great engineers, the ones who can orchestrate, architect, and review, are becoming 100x engineers. They're not writing code. They're directing agents that write code. The skill is judgment. AI makes the best engineers wildly more productive, and everyone else using AI slows these engineers down. Think about it - the bottlenecks are (1) orchestration - telling AI what to do, and (2) reviewing - what AI did. Everything is leapfrogged and no longer needed. So who do you want orchestrating and reviewing code? And how do you want your best engineers to spend their time? If your best engineers are spending time reviewing other people's code, then this is inherently an inefficient bottleneck. These engineers can review their agent's code much faster than reviewing human code. The new world is about enabling your 10x engineers to become 100x. The wrong strategy is to push every engineer to use infinite tokens. Companies doing this are celebrating 500% more pull requests. But customer outcomes don't match the volume of code being generated. I call this the great reckoning of AI coding, and every company will face this soon if not already. More code is just another bottleneck to the best engineers, and ultimately to your company's impact as well. — THE BUILDERS: 10X PRODUCT MANAGERS Product management and design roles are merging. Designers that have customer focus, become more like product managers. And product managers that have intuition for UX become more like designers. The bottleneck of user research is gone. It takes us just one mention of an agent to kickoff research and analyze results. The bottleneck of product <> design iteration is also gone. The product builder iterates on their own, along with agents and skills that ensure alignment with quality and strategy. Also controversial today - I believe that the wrong strategy is to have your PMs shipping code - that just introduces another bottleneck that the best engineers will waste their time on. To be clear, PMs should be coding but they should do this in a playground to iterate, validate, and scope. That code should not go to production. Everything outside of managing systems, orchestrating AI, and reviewing output becomes a bottleneck. That's why the other roles that are critical along with these are the systems managers (to reduce bottlenecks) along with a bottleneck you can't replace - customer meeting time. — THE SYSTEM MANAGERS Ironically, the people that automate their jobs with AI will always have a job. They become owners of the AI systems - agent managers. We have many examples of these people at ClickUp. The underlying systems in which we operate are absolutely critical to get right. I think most companies are delusional to think they can iterate on existing systems and compete in this new world. You must create enough disruption so that old systems are deprecated entirely. If there's any definition for 'AI native' that's what it is. — THE FRONT-LINERS In a world that will become saturated with AI communication, the human touch will matter more than anything to customers. This is a bottleneck that you shouldn't replace - even when agents are high enough quality to do video meetings. One-on-one meeting time with customers is something that shouldn't be automated. The systems around the meetings should be - so that front-liners spend nearly 100% of their time with customers. REWARDING 100X IMPACT In a world where companies are able to do so much more with less, where does that excess money go? In our case, much of the savings in this new operating model will flow directly back to those that enabled it. We must reward people that create productivity accordingly. This aligns incentives on both sides. Plus, in a world where your best people create 100x impact, you can't afford to lose them. You should aim to retain these employees for decades. The context they have and their ability to efficiently orchestrate and review will be nearly impossible to replace. Compensation bands of today should be thrown out the door. We're introducing $1 million cash/year salary bands with a path available to nearly everyone in the company if they produce 100x impact by creating or managing AI systems. THE FUTURE Nearly every company will make changes like these. The ones that do it proactively will define what comes next. The future is not fewer people. It's different work, new roles, and better rewards for those who embrace it. We're already seeing entirely new roles emerge, like Agent Managers, that didn't exist a year ago. ClickUp is positioning to lead this shift, not just internally, but for our customers too. I've never been more certain about where we're headed.

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Arjun Naskar ☕️
@united flight between SFO and NYC has the audacity to show a @Starlink ad and then announce there’s no wifi connection on their busiest route the entire way (happened on the departing leg too) Who’s building personal wifi hotspots for flight? Will pay out of pocket.
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Arjun Naskar ☕️
@adityaag #3 is a biggie. Have seen too many HMs ignore late stage info due to sunk cost fallacy and desperation #5 don’t hire out of desperation. More expensive.
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Aditya Agarwal
Aditya Agarwal@adityaag·
4 thoughts on early-stage hiring: 1/ If an engineer is trying to pick between a pre Series-B company and a BigCo/BigLab --> stop talking to them immediately. They are clearly not ready for a startup. 2/ If someone isn't willing to take a 70% cash paycut (relative to BigCo/BigLab) --> stop talking to them immediately. They will be unhappy/stressed. 3/ You learn a lot about a candidate during the negotiation/closing process. Do not be afraid to walk away if you get new information. 4/ Startups have zero work-life balance. If you are not willing to put in the hours, you are not in the right headspace to grind.
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Dannie Herzberg
Dannie Herzberg@DannieHerz·
Had the best time talking with @niki4conviction about what top talent looks like in today’s market, the unique culture we’re building at Baseten, and why the people you hire define the company you become. Thanks for hosting me and for the unwavering support we get from the entire team at @conviction
Niki Nguyen@niki4conviction

The pipeline of wisdom? Fully loaded. The close rate on great advice? 100%. I got a chance to sit down with the one and only @DannieHerz, president at @baseten, and talk all things GTM in this new era of AI. A few of my favorite takeaways: ✅ The AI-era sales hire is the tech enthusiast who uses the product, talks to engineers in their network, and earns trust by not sounding rehearsed. ✅ Culture = intensity + joy. Hire killers who are also a delight. ✅ Great recruiting isn't a pitch, it's relationship driven. No hard sell, just real work together with great people. Dannie joined Baseten for that exact reason.

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Arjun Naskar ☕️
Arjun Naskar ☕️@anaskar·
@AgrawalArian @JPBrebner you're trading off spending time with customer support with spending time with your security engineer when you let hackers through your vibe coded front door.
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Arian Agrawal
Arian Agrawal@AgrawalArian·
I feel like anytime I have to talk to a customer support rep for a saas product, I’d rather just build it and end the contract. Cc @JPBrebner
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Paul Anleitner
Paul Anleitner@PaulAnleitner·
If Pizza Hut can return, then we can resurrect Blockbuster. And we should. While Netflix made things more “convenient” we lost something irreplaceable: The ritual of going to a place with your family or friends to choose a story together. That experience was special.
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