Chatbot user.
Open ChatGPT in a tab. Ask it questions. Copy the answer back into your doc. AI is a separate tool you visit.
Where most people areCohort 18 lecture. For VC firms.
Venture is a knowledge-work business. Knowledge work is what AI is eating first. Here's what that actually looks like inside a fund in 2026, and what it still can't touch.
Most professionals are using AI in a way that's already obsolete. There are three modes, and the gap between them is the gap between fast funds and slow ones.
Open ChatGPT in a tab. Ask it questions. Copy the answer back into your doc. AI is a separate tool you visit.
Where most people areAI lives inside the tools you use. It autocompletes emails, summarises docs, drafts memos. Helpful, but you're still doing the work.
Where good analysts areYou delegate whole tasks. The agent reads your inbox, pulls the deck, runs research, drafts the memo, files it in Notion. You review.
Where the leverage isThe fund of 2026 has analysts who operate AI.
Partner forwards you a deck on Tuesday morning. "Get me up to speed on this market by EOD." Here's what the next four hours look like for most analysts.
4 to 8 hours. Six tools. And you're the glue between every step.
Every action you take in a tool, an agent can take too. Buttons, searches, exports, copies: they're all just functions underneath.
pdf.extract() pitchbook.search() web.fetch() linkedin.lookup() notion.create() slack.postMessage() Every step in that four-hour workflow is a tool call. An agent can chain them all together and do the whole job in one shot.
Here's that same competitive landscape task as a single delegation to an agent that has access to your tools.
"Here's a deck for <Company>. Build me a competitive landscape with 5 closest comps, what they sell, pricing, headcount, last round, founder pedigree. Drop it in Notion as a memo."
Agent reads the deck, runs the searches, opens the websites, scrapes LinkedIn, drafts the memo, files it.
You speak. It acts. Four hours of admin work becomes thirty minutes of strategic review.
Walk through any VC's week and the same pattern shows up across multiple workflows. This is the map.
Manually scanning Twitter, newsletters, LinkedIn. Asking around. Hoping the right founder finds you.
Agents monitor your inbound, score signals across LinkedIn, X, Substack, and news, mine your own network for warm intros, and surface a ranked weekly list with reasoning.
Days of research per company. Reading reports, calling experts, building models. The bottleneck on how many deals you can seriously evaluate.
Custom research agents gather and synthesise data from 100+ sources per query. Domain-trained. Source-cited. Ready in minutes instead of days.
Dozens of hours per memo. Analyst writes draft, partner edits, back and forth. The bottleneck between "we like this deal" and "we filed the IC memo."
Agents trained on your fund's thesis and memo format. Pull the research, structure to your template, cite sources. Analyst reviews and refines.
50 portfolio companies, 50 different reporting formats, quarterly chase-down. By the time you see a problem, it's been three months.
Agents normalise KPIs across messy formats. Anomaly alerts when something drifts. Partners walk into board meetings with current data, not stale reports.
Quarterly LP letters. Data room maintenance. Comp sweeps. Hours of work that doesn't make a single deal happen.
Draft LP updates from portfolio data. Auto-update data rooms. Run comp benchmarks on a schedule. The ops layer runs itself.
Most of what AI replaces in a venture firm is the work that wasn't actually the job to begin with.
Use agents around the relationships and deals. Automate the work that takes time away from thinking strategically about an investment and building relationships with founders.
The funds making AI work are the ones who picked one workflow and got serious about it.
Where do you lose four hours a week to copy-paste? That's your candidate. Sourcing triage, comp sweeps, deck summaries, LP updates: pick the one that hurts most.
Write out every click. The mechanical steps go to the agent. The judgment calls (what to elevate, who to back) stay with you. Most workflows are 80% mechanical.
Skip the perfect platform. Tools like Claude, n8n, and a few hours with someone who can wire APIs together gets you 80% there. Iterate from there.
First version will miss things. That's data. Every correction tightens the agent. Within a month it's doing the job better than the analyst who used to do it.
The moat now is knowing what to build.
We run this lecture as a private session for partner teams and analyst cohorts. 30 minutes is enough to know whether it's a fit.