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Biswaroop Palit shared thisI'm looking for a scrappy new grad or early-career engineer to build agents for content workflows with the latest AI agents (Claude, Cowork, Codex, Gemini CLI,…) If you're excited about agents, automation, and moving fast, DM me.Biswaroop Palit shared thisThere is a huge opportunity for resourceful and entrepreneurial talent within organizations to go in and reimagine workflows for a world of AI agents. The way you automate work with agents requires real work. It means setting up unstructured data in a way agents can easily access, learning the workflow and processes and creating skills or plans for agents to leverage, connecting disparate systems together, and likely changing the process itself to support getting the agents the need to do much of the work. Then you have to design where humans will play a role to oversee the workflows, how you validate the work, and so on. Most of the gains you see from coding don’t take this level of effort because the agent knows more, it gets context more easily, and the users are technically. But for the rest of knowledge work there’s no way around this; there’s really no way to shortcut any of this work. It has to be done by a person or people on the team. You will see a huge growth of roles within enterprises, and people that specialize in this will be hugely valuable in the economy. Great way for early career folks to make a huge dent quickly as well.
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Biswaroop Palit shared thisAI agents are graduating from chatbots to coworkers capable of handling tasks independently. To enable these agents, the Skills standard is rapidly becoming the npm for AI expertise: write once, deploy across multiple platforms - Codex, Claude etc. We just open-sourced one for Box that teaches the agent to do common knowledge work tasks - classify docs, call the right APIs, and organize content at scale. All from a single natural-language prompt. Get started with: npm install --global @Box/cli npx skills add https://lnkd.in/gvymB55Y --skill boxBiswaroop Palit shared thisWe ran an experiment. Gave OpenAI Codex access to the Box Content API with zero guardrails. It pulled full files locally to run OCR, ignored our folder conventions, and hallucinated API method names. Then we gave it three things: → Data stays in Box — server-side AI for content understanding instead of downloading files for local OCR → Identity before endpoints — the agent picks its auth actor before its first API call, eliminating a class of permission bugs → Verify or it didn't happen — every task ends with a runnable proof, not code that looks right From a single prompt: a folder of mixed documents — invoices, contracts, reports — classified and organized into the right structure. Correctly. The model didn't get smarter. The context did. This is the shift most teams are missing — from "general AI assistant" to a domain-specific agent with institutional knowledge baked in. Full walkthrough linked below. https://lnkd.in/ges5WXJ7 What's the biggest context problem your team is hitting with AI agents right now?Teaching AI Agents to Work With Your Content: Building a Box Skill for OpenAI CodexTeaching AI Agents to Work With Your Content: Building a Box Skill for OpenAI Codex
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Biswaroop Palit shared thisIf you are at the MCP Dev Summit - hit up Fernando to learn about building AI for the enterpriseBiswaroop Palit shared thisThrilled to be speaking at the MCP Dev Summit North America in NYC on April 2-3! In our session, we’ll explore how Box’s MCP Server enables AI agents to securely interact with enterprise content to drive real business value. If you’re in New York or attending, stop by or DM me to connect. Let’s shape the future of agentic AI!
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Biswaroop Palit shared thisLLMs are very fluent in CLI - it is the most frequent tool-use pattern in their training data. That's why we built the Box CLI as a first-class interface for agents. One install, and any agent gets governed access to enterprise content. npm install --global @box/cliBiswaroop Palit shared thisToday, Box is launching a new version of the Box CLI, built for a world where developers and agents are working side by side in the terminal. AI coding tools like Claude Code, Gemini CLI, and Codex CLI already live in the terminal. Now, your content in Box does too. What this adds to your toolkit: ✔️ Authenticate instantly with your own Box credentials via OAuth ✔️Automate complex, multi-step workflows — upload files, extract metadata, apply watermarks, trigger document signing — all from the command line ✔️Give your AI agents a composable interface to retrieve, transform, and act on content in Box without extra configuration The terminal has always been the most powerful environment for automation. What's changed is who is doing the automating. Developers and agents can now work together seamlessly, with Box content at the center. Dive in to get started: https://lnkd.in/gxrvwk7cBox CLI: the content CLI for developers and agentsBox CLI: the content CLI for developers and agents
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Biswaroop Palit shared this"Every software company in the world, needs to have an OpenClaw strategy" - Jensen at NVIDIA GTC Nvidia just launched Agent Toolkit - an open platform for autonomous enterprise agents. Box is the governed content layer underneath: secure access, policy enforcement, full audit trails. No shadow copies, no ungoverned data. This is the agent infrastructure for the enterprise powering how knowledge work will be done in the future.Biswaroop Palit shared thisBox is teaming up with NVIDIA to close a critical gap in enterprise AI agent infrastructure — giving agents the access they need to be productive, with the security controls that make them safe to deploy. As part of the NVIDIA Agent Toolkit, NVIDIA NemoClaw and OpenShell enable a secure open-source runtime for autonomous agents that works alongside Box's governed file system to give agents the context and content access they need to do meaningful work: reading, creating, and storing files with the same rigor enterprises demand from human employees. Here's what Box + OpenShell delivers: → Isolated Sandbox Supervisor for every agent, with security policies enforced at the runtime layer → Box access controls and permissions enforced via the OpenShell Policy Engine and Gateway → Full audit trail on every file agents read, create, or modify — no shadow copies, no data leaving its governed environment → Pre-built Box Skills enabling agents to engage and take actions with their file system securely via the Box CLI → Use case specific skills for Invoice Extraction and Contract Lifecycle Management As enterprises scale toward agent-to-human ratios that would have seemed implausible just a few years ago, informal approaches to file access become untenable. Organizations need to govern and manage how agents are interacting with their critical enterprise data. Read how Box is the file system for your agent strategy → https://lnkd.in/gjJtwbRf
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Biswaroop Palit shared this"Make something agents want" The best framing for what's coming next in software. The entire stack has to be reimagined: API-first, CLIs as first-class interfaces, filesystems agents can actually work with and collaborate with other agents and human team members. Filesystems for agents is what we're building at Box - core infrastructure for a world with trillions of agents https://lnkd.in/dQzV-qUQ
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Biswaroop Palit shared thisYesterday Box announced it quarterly earnings. Aaron talked about what our team is driving (screenshot of earnings call transcript below). Without a governed filesystem, agents are just stateless processes that forget everything the moment they stop running. This is why Box Platform is such a strategic asset right now. It's the shared memory layer between agents, people, and applications. The content an agent produces doesn't live in a vacuum - it flows into workflows, gets reviewed by humans and shared across teammates, it lands in Salesforce and gets audited by compliance. We are hiring exceptional talent across multiple roles to help us build this future. If you want to work at the intersection of enterprise software and AI, now is the time. Please reach out!!
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Biswaroop Palit shared thisAt Box, we are building the platform for agents to automate knowledge work in the enterprise. Some of the most exciting work I have done in a while!! Are you a developer that loves to experiment at the bleeding edge (trying every agent harness, setting up Openclaw and integrations around it, have set up your own evals etc) - we are hiring for our platform team. Please reach out to Carter!Biswaroop Palit shared thisThere has *never* been a better time to be in DevRel, let's break it down 👇 1️⃣ In a world of OpenClaw, Codex, Claude Cowork and other agentic systems, it’s becoming clear that the future of software has to be API-first. 2️⃣ This means every SaaS company must become a platform company, and the APIs, SDKs, docs and overall developer / agent experience are as important as the product itself. 3️⃣ As people are more interested in solutions than products, DevRel will be the key storytelling muscle in these companies, teaching developer (and LLMs) how to solve problems through the use of multiple tools, including their company's. And the best part is, the only requirement for getting into DevRel is that you love to build things. And it's never been easy or more exciting to build than right now. Shameless plug: I am hiring for my team at Box. We're doing incredibly exciting things with content, files and agents and if you'd like to learn more please shoot me a DM!
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Biswaroop Palit shared thisThe default way we interact with software is changing. Instead of logging into the 50th UI, the UI is starting to show up inside your workflow. Workflows are becoming the product surface!! That’s why I’m excited about what we just launched with Anthropic: MCP Apps are now supported in the Box Connector in Claude - bringing visual experiences into the chat - Search for a file and Claude can surface a rich visual representation (slides, diagrams, images, decks) so you can identify the right content without leaving the conversation - A more complete “app layer” for enterprise work: the Box MCP server already gives agents tools across content management, Box AI, search, collaboration, and Hubs. Now the experience becomes far more intuitive with UI in the loopBiswaroop Palit shared thisSupport for MCP Apps is now live in the Box connector in Anthropic’s Claude, and it’s changing how AI handles your files. Until now, asking an AI to find a diagram meant getting back walls of text or raw JSON. You’d squint at descriptions, switch between windows, and lose your train of thought. That friction is gone. The Box Connector now renders your content visually—right inside the conversation. Search for a slide deck, see the actual slides. Reference a chart, view the chart. What this unlocks: - Ask complex questions across entire document hubs, not just single files - Auto-extract metadata from contracts, invoices, and forms - Give AI agents secure access to your proprietary content Here’s the question worth asking: How much time does your team lose context-switching between chat windows and the content they’re actually trying to work with? Discover more → https://lnkd.in/gGFy4SffSupport for MCP Apps in the Box Connector in ClaudeSupport for MCP Apps in the Box Connector in Claude
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Biswaroop Palit liked thisBiswaroop Palit liked thisFor all book lovers in the SF Bay Area, my wife, Pia Chatterjee, is hosting a conversation with Laura Dave, New York TImes bestselling author, (https://lauradave.com/) to discuss her latest book "The First Time I Saw Him" at Kepler's Books in Menlo Park on April 25th at 4:30pm as part of their Independent Book Store Day celebrations (https://lnkd.in/gzu-zpiE). A great opportunity to meet the author and get a signed copy of her book.Independent Bookstore Day with Literary Trivia and Laura Dave — Kepler's Literary FoundationIndependent Bookstore Day with Literary Trivia and Laura Dave — Kepler's Literary Foundation
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Biswaroop Palit liked thisBiswaroop Palit liked thisIt’s a wrap! After over 15 years of teaching AI, this year's BANA 275: NLP and LLMs course has been the most enjoyable experience yet. Engaging with students while building real-world scalable systems was truly rewarding. For the first time, my course evolved in real-time as new Generative AI and Agentic AI tools emerged. I was able to integrate my practitioner experience from alltius.ai into the classroom, making the content feel relevant and allowing us to explore practical details that are often challenging to address theoretically. Interestingly, discussions in class led to several epiphanies for me that I could take back to my work. The heavy workload and demanding exercises were balanced by the enthusiasm of the students. They were great sports, and I had a fantastic journey with them! I encourage anyone teaching courses on AI, analytics, or the business value of AI to engage in hands-on building. This approach is essential to keep pace with the constant changes in the technological landscape. Update: If you are looking for some excellent students who understand LLMs and how to build AgenticAI applications, please DM me.
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Biswaroop Palit liked thisBiswaroop Palit liked thisClaude’s approach to MCP (Connectors) is very different from ChatGPT and frankly, better. Let me explain: Definitions 1. MCP connector: A connector allows an AI system (Claude, ChatGPT) to interact with a business system. I use it to connect to our CRM, Box and a few other tools. It's what turns AI from a chatbot into an operational layer. 2. Context Window: This is how much data the AI can see at one time. The more context, the more you pay $$$. Before you even enter your first prompt these tools are filling up your context window behind the scenes. How do OpenAI (ChatGPT) and Anthropic (Claude) handle this problem? OpenAI – Only allows 5k of token context for Custom MCP tools. It loads everything, but your descriptions must be very brief and for more complex enterprise tools this can be difficult. Claude – It allows many tools to be registered, but only pulls the relevant tools into context based on what the user is trying to do. It runs an internal search against tool descriptions and loads only what's needed. One approach treats connectors like cargo you're always carrying. The other treats them like inventory you pull from a shelf. If you're architecting AI integrations at scale, this distinction isn't academic — it's the difference between a system that works with 5 tools and one that works with 50. (And yes — this is also why some builders are starting to bypass MCP entirely in favor of CLI tooling. But that's a post for another day.)
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Biswaroop Palit liked thisBiswaroop Palit liked thisThe next era of AI engineering: self-improving AI agentic systems! We, at NeoSigma, are building this future. By closing the feedback loop between production data and system improvements, we help teams capture failures, convert them into structured evaluation signals, and use them to drive continuous improvements in agent behavior. We show how our system works on Tau3 bench across retail, telecom, and airline domains. We start with a baseline agent and run our system directly on top of it, where it: - observes and mines failures from production traces - automatically clusters them into underlying failure modes - converts failure clusters into reusable living eval cases - proposes and experiments multiple harness changes and validates them - accepts only changes that both improve performance and don’t regress on previously fixed failures. The result: agent performance on the validation set (with a fixed underlying model, GPT5.4) improves from 0.56 → 0.78 (~40% jump in accuracy). At each iteration, the agent explores multiple candidate updates, retaining only those that both improve validation performance and satisfy the regression gate (≥80%). Failures are not just fixed; they are encoded into the system's evaluation layer, ensuring that similar issues are unlikely to recur. The bottleneck in building agentic systems has shifted. It is no longer writing code; it's everything that comes after: catching failures, validating behavior, improving agent harness and keeping systems reliable as they evolve. If you're deploying production agent systems and want to reliably maintain and improve agent harness from production signals, we'd love to talk. Full blog and Tau3 bench results here (with Ritvik Kapila) https://lnkd.in/gjPmFTHE Special thanks to Shyamal Hitesh Anadkat (ex-OpenAI), Tim Weingarten (ex-Anthropic, Claude Cowork), Victor Barres (Sierra), Reah Miyara (Google DeepMind), Chirag Mahapatra (Mercor), Karthik Narasimhan (GPT co-creator, ex-OpenAI, Sierra) for reviewing and providing valuable feedback on this blog post.
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Biswaroop Palit liked thisBiswaroop Palit liked thisThere is a huge opportunity for resourceful and entrepreneurial talent within organizations to go in and reimagine workflows for a world of AI agents. The way you automate work with agents requires real work. It means setting up unstructured data in a way agents can easily access, learning the workflow and processes and creating skills or plans for agents to leverage, connecting disparate systems together, and likely changing the process itself to support getting the agents the need to do much of the work. Then you have to design where humans will play a role to oversee the workflows, how you validate the work, and so on. Most of the gains you see from coding don’t take this level of effort because the agent knows more, it gets context more easily, and the users are technically. But for the rest of knowledge work there’s no way around this; there’s really no way to shortcut any of this work. It has to be done by a person or people on the team. You will see a huge growth of roles within enterprises, and people that specialize in this will be hugely valuable in the economy. Great way for early career folks to make a huge dent quickly as well.
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Biswaroop Palit liked thisBiswaroop Palit liked thisI’m very excited to share that I recently joined Fireworks AI to lead our Enterprise GTM globally! Like the founding team, I too believe that every company should own their inference with the same level of sovereignty they apply to their data. Fireworks’ platform has been battle tested by the fastest growing companies in AI and tech, and we are committed to solving the same for enterprises looking to differentiate with AI. A huge thank you to Lin Qiao for the opportunity to build alongside her! If you are a seller or solutions engineer or want to develop the expertise to build custom models, and are looking to be part of this once in a lifetime opportunity in computing, then DM me.
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Biswaroop Palit liked thisHad the privilege of spending time with one of the true pioneers of AI Yann LeCun. His focus on world models, building AI for the ‘physics driven’ real world, is very inspiring. Advanced Machine Intelligence is on its way to lead us into the next wave of AI. We are still very early in the AI journey, and the world will need a lot more compute. Grateful for the time and perspective. Giridhar Malpani Rahul Attuluri Vamshidhar Reddy Abhijeet SinghBiswaroop Palit liked thisAn afternoon well spent in Paris with Yann LeCun, and two of the most rockstar founders in our portfolio. Abhinav Sinha (Compute) and Rahul Attuluri (Talent). If one were to sketch the early contours of a world model a few years later, this is roughly where it might have begun :)
Experience & Education
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Box
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Publications
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Application of the Discrete Hodge Helmholtz Decomposition to Image and Video Processing
Lecture Notes in Computer Science: International Conference on Pattern Recognition and Machine Intelligence
Patents
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APPLICATION BACKUP AND MANAGEMENT
US 20190391880
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APPLICATION MIGRATION BETWEEN ENVIRONMENTS
US 20200050518
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APPLICATION MIGRATION BETWEEN ENVIRONMENTS
US 20190391883
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Centralized Multi-Cloud Workload Protection with Platform Agnostic Centralized File Browse and File Retrieval Time Machine
US 20190163763
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DATA BACKUP AND DISASTER RECOVERY BETWEEN ENVIRONMENTS
US 20200110675
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DATA DISCOVERY IN RELATIONAL DATABASES
US 20190392059
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Display screen or portion thereof with graphical user interface
US D786891
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FOREVER INCREMENTAL BACKUPS FOR DATABASE AND FILE SERVERS
US 20190179711
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INCREMENTAL REPLICATION OF DATA BACKUP COPIES
US 20200019424
Languages
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English
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Hindi
Native or bilingual proficiency
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Bengali
Native or bilingual proficiency
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Arjun Malhotra
Good Capital • 3K followers
India has abundant expertise across every domain - logistics operators, subject matter experts, local service providers, etc. What's scarce isn't capability. It's the systems that coordinate this capability at scale. Most companies see this fragmentation and default to vertical integration: build everything in-house, own all capabilities, control every aspect of delivery. This works if you have unlimited capital and time. Most companies have neither. But there's an alternative approach that we've noticed two of our portcos execute remarkably well, in completely different industries - 1. When Meesho looked at India's logistics, and they saw thousands of fragmented local operators. Instead of building warehouses and delivery fleets, they built Valmo - an orchestration platform coordinating existing partners. Individual pilots with smartphones earn sustainable incomes, small hub operators build viable businesses, and Meesho gets coverage across 15,000+ pin codes at 12% lower cost than traditional third-party-logistics. 2. Entri saw similar fragmentation in education. India has abundant teaching expertise already running offline/online programs. Entri partners with them for content while owning demand generation, platform infra, quality monitoring, and placements. This allows them to launch new categories in weeks and scale across languages without the capital intensity of building in-house teams for every vertical. If I had to pull a common thread, it's that in fragmented markets like India, the orchestration layer often matters more than asset ownership. Coordinate what exists rather than rebuilding from scratch.
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Chaitanya Chokkareddy
Ozonetel Communications • 6K followers
2% of the mission's total ₹10,300 crore budget -while 44% has gone to compute. "Investments solely in compute are inherently transient- their value fades once consumed. On the other hand, investments in datasets build durable, reusable assets that continue to deliver value over time," said Chaitanya. Shared my thoughts on voice AI and datasets. Paywall article. https://lnkd.in/gbSRxmSQ
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Chris Pisarski
Crustdata (YC F24) • 21K followers
The most promising founders in stealth in 2025. We used Crustdata to search for stealth founders with traditionally impressive backgrounds and here are the results: Sandeep Kachru: Previously head of Data platform at Airtable and data engineer at Facebook and Google. Rohan Shah: Founder of 3 startups and previously at McKinsey. University: University of Pennsylvania Lawrence Ibarria: Founder of 2 startups in the robotics space and previously was an Associate Director at McKinsey. University: Georgia Institute of Technology Arthur Dubois: Previously was VP of engineering at Xwing (acquired) University: Stanford and McGill Theophile Gervet Previously was a Research Scientist in Mistral AI and held lead/senior positions in Skild AI and Relyance AI. Adriane McFetridge: Previously was a Director of Engineering at Netflix. University: University of Texas. Vallari Mehta: Previously was a ML engineer at Lyft, Criteo and Veritas tech. University: Carnegie Mellon. Obafemi A.: Previously worked as an Investor in Lead Edge Capital and has a wide range of internship experience from Uber to General Atlantic. University: Stanford and Texas McCombs School of Business. Connor Owens: Has a wide range of experience at big name companies such as Google, YouTube and Meta. University: Stanford School of Business and Northwestern University. Michael Pao: Was previously the head of product at Uber and the cofounder of Trove (acquired). University: Harvard Business School and University of Pennsylvania
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