Internal white paper — May 2026

The State of AI at COTU.

How we use AI across our investment processes today, what we've built, where the gaps are, and what our agent-powered future looks like.

Audience  COTU team Status  Internal draft Date  May 2026
1

Why this document exists

We are at an inflection point for how venture capital firms operate. AI is no longer a tool you bolt on to existing workflows — it is becoming the infrastructure around which the best investment teams are reorganizing themselves.

At COTU, we've been building in this direction for over a year. Some of what we've done is deliberate and structured. Some of it emerged organically from individual team members experimenting on their own. The result is a patchwork of genuinely impressive automation alongside significant gaps that cost us time and signal every week.

This document is an honest map of where we are. It covers each of our four core processes — deal sourcing, due diligence, portfolio monitoring, and LP relations — assessing what's working, what's missing, and what our next step should be. The goal is to give the whole team a shared view, and to lay the groundwork for building the AI-native version of COTU.

4
Core processes mapped
2
Active funds monitored
6
Agents proposed
2

Our investment process & principles

Before mapping where AI fits, it helps to be explicit about what we're optimizing for. Our investment process is designed around seven principles that define how we want to operate as a partnership.

Better alignment

Get all partners on the same facts fast. Every call and internal discussion captured in a shared record.

Speed to decision

First call to term sheet in under 2 weeks via a light DDQ, multi-partner call, and immediate TS on conviction.

Discipline

Focus on high-signal opportunities. Keep outreach, questions, and meetings scoped to what can change the decision.

Depth

Structured DDQs and memo recipes to cover model, market, team, GTM, and competition systematically.

Diversity of thought

All three partners engage live before a term sheet. Each brings an independent perspective before alignment.

Clear decisions

Go/no-go on or the day after the multi-partner call. Pass reasons documented in Attio every time.

Less admin

Standardized documentation and handoffs. Auto-drafting memos and structured question frameworks.

These principles translate into a clear decision pipeline with target timing:

Deck review Day 1–2

Partners review deck against criteria (MENA-focused, Pre-Seed/Seed, cap <$30M, team, market). Pass or progress.

First partner call Day 2–4

Partner meets founder. Assesses depth, clarity, chemistry, and velocity. Notes captured in Granola. Light DDQ may follow.

All-partner call Day 5–7

All three partners join. Decision on the call or next day. Heavy DDQ issued post-alignment.

Term sheet Day 7–14

TS issued same or next day after partner alignment. 30–45 days secured for deeper diligence.

Continuous Q&A + close Day 14+

Fluid thread with founder during DD period. Investment-grade DDQ completed. Documentation finalized in Drive.

System of record: Attio tracks all deals until investment with pass reasons documented. Granola records all calls and internal discussions. Google Drive becomes the home once a company is in portfolio (cap tables, legals, ongoing reporting).
3

Our tech stack

We bias toward tools that integrate well over tools that do everything. Each tool in our stack does one thing exceptionally well — the goal is a setup where data flows automatically between them, not one where we manually move it between silos.

CRM & deal flow
Attio
System of record for all deals, LPs, and portfolio companies.
Harmonic
Founder and company prospecting for outbound sourcing.
Docsend
Secure deck sharing with viewing analytics.
Meeting capture & knowledge
Granola
Automatic meeting transcription and note capture.
Notion
Internal documentation and knowledge base.
Communication & scheduling
Google Suite
Gmail, Calendar, Drive, and Meet for email, scheduling, storage, and video calls.
Slack
Internal team communication.
Blockit
Scheduling automation for partner meetings.
Automation & AI
Zapier
Workflow automation connecting all tools in the stack.
Claude
AI layer for analysis, drafting, and intelligent automation.
ElevenLabs
Voice generation for LP report narration.
Presentations & reporting
PowerPoint
Quarterly LP reports and pitch presentations.
4

Deal sourcing & screening

This is our most automated process today. The inbound pipeline is built around a centralized email address — dealflow@cotu.vc — that triggers a Zapier workflow the moment a pitch arrives.

Email → dealflow@cotu.vc
AI identifies startup
AI detects pass
AI extracts Docsend
Downloads deck → Drive
Attio record created
Slack notification

The pipeline handles edge cases intelligently: if the email contains a pass, the AI extracts the rejection reason and updates the Attio status automatically. If a Docsend link is present, it extracts the URL and passcode, then downloads the deck directly into the company's Google Drive folder. Confidence scoring flags low-certainty extractions for manual review. Any deal arriving at dealflow@cotu.vc is fully logged, filed, and visible to the team within minutes — with zero manual work.

For outbound, we use Harmonic for founder discovery, but this remains largely ad hoc — no structured workflow or tracking exists yet.

Working
Partial
Gap
Inbound pipeline

Fully automated end-to-end via Zapier + AI. One of COTU's most mature workflows.

Partner personal emails & WhatsApp

Deals arriving outside dealflow@cotu.vc need to be manually logged into Attio, which doesn't always happen in the moment.

Deck review

Partners use Claude to review decks, but there is no standardized approach across the team. Each partner applies their own method, with no shared scoring or thesis-fit framework.

Outbound sourcing

No structured process. Harmonic used ad hoc by individual partners. No sequencing, no tracking, no outreach drafting.

The fix is simple: every deal, regardless of where it lands, should hit Attio within minutes. That's Zara's job.
5

Due diligence

Our DD process is designed for speed and rigor simultaneously — first call to term sheet in under two weeks, with all three partners engaged before any decision. Meeting notes are automatically captured via Granola, organized into folders by type, and founders are assessed on four dimensions.

Depth
Domain knowledge & insight
Clarity
Communication & vision
Chemistry
Partnership fit
Velocity
Rate of progress

The ambition is to auto-draft roughly 70% of the deal memo from notes, deck, and DDQ responses — with partners adding the remaining analytical layer and the system flagging missing questions. In practice, this vision is partially realized. Claude is used to fill the deal memo template, but each partner does this independently, without a shared, standardized workflow.

The goal is recipes that auto-draft ~70% of the memo from notes, deck, and DDQ. Partners add the remaining analysis; the system flags missing questions. Today, we have the ingredients but not yet the recipe running consistently across the team.

COTU investment process doc, 2026
Meeting capture via Granola

All calls automatically captured and organized by stage. Notes linkable to Attio.

Attio as system of record

All deals tracked until investment. Pass reasons documented. LP reports sent in bulk. Fundraising pipeline managed.

Deal memo drafting

Claude is used to fill the template from deck + Granola notes, but each partner does this differently. The 70% auto-draft goal is not yet consistently achieved.

Granola → Attio sync

Requires a manual button press per note. Post-call observations depend on individual discipline.

Organizational memory

No system reads across calls, emails, and decks to build shared context. Each partner works from their own notes. No cross-deal pattern recognition.

The ingredients are there. What's missing is the recipe running the same way for every partner, every time. That's Karim's job.
6

Portfolio monitoring

We have built a portfolio monitoring platform — backed by Airtable and a Lovable front-end — that extracts KPIs from founder updates automatically and surfaces them in a structured dashboard. The core workflow is validated and functioning as a POC.

The vision for this platform has sharpened significantly. A web dashboard is a solid foundation — on top of that, the priority direction is a Slack-native interface where any partner can ask a question and get an instant, data-backed answer without opening any tool.

Priority direction — Slack-native portfolio intelligence

On top of the dashboard, partners simply type a question in Slack and get an answer drawn from all available data — updates, calls, data rooms, and emails.

@portfolio-bot  What's Supy's runway?
@portfolio-bot  What's Mnzil's gross margin this quarter?
@portfolio-bot  What action items do I have from the last Huspy board call?
@portfolio-bot  What valuation multiples are we seeing across our Series A companies?

Focus on the present, not the past. The priority is knowing how a company is performing now, and what we can do to help. Historical data remains useful as reference context — for example when onboarding a new team member — but the primary use case is current performance and actionability.

Where we capture data:

Founder update emails
Board & quarterly calls (Granola)
Data rooms
Slack channels

Performance metrics

  • Month-on-month growth
  • Monthly compounding growth since investment
  • Revenue per employee
  • ARR, burn rate
  • Company-specific KPIs (users, beds, paid users, etc.)
  • Fundraising round data & valuation multiples
  • P&Ls from data rooms

Milestone & action tracking

  • Critical milestones (major contracts, key customer wins)
  • Pivots — capture the why at the moment it happens
  • Action items from board calls & quarterly updates
  • Proactive reminders on outstanding actions
  • Data room intel during fundraising rounds
Portfolio monitoring platform

Core workflow validated and functioning as a POC. Not yet rolled out across the full portfolio.

Slack-native interface

Priority direction identified. Not yet built. Would sit on top of the dashboard and allow instant natural language queries.

Action item tracking

No system today captures and follows up on commitments made during board calls or quarterly reviews.

Slack channels

Real-time founder signal available but not yet integrated into any structured monitoring workflow.

A dashboard tells you what happened. A Slack bot tells you what to do next. That's Nora's job.
7

LP relations & admin

Our LP reporting process is one of the most distinctive applications of AI at COTU. Quarterly, we produce Fund I and Fund II reports. Ismail builds the PowerPoint from our template, Amir reviews and adds per-slide commentary, then ElevenLabs generates Amir's voice over each slide. The result is a narrated video presentation sent to LPs alongside the PDF on Docsend — distributed via Attio's bulk send. This personal touch is a meaningful differentiator that very few funds are doing today.

LP report distribution

Attio bulk send, Docsend tracking, ElevenLabs voice narration per slide. Personal and differentiated.

Calendar & booking

Partners use Blockit for scheduling — reducing back-and-forth email overhead.

LP report preparation

Still largely manual. PowerPoint built slide by slide from template. No AI assistance in narrative drafting or data pulling.

Inbound email management

No centralized logic. Each partner manages their own inbox. Signals and updates sometimes stay in personal emails or WhatsApp rather than making it into shared tools.

The most human part of our process — Amir's voice — is already automated. The most manual part — building the slides — shouldn't be. That's Layla's job.
8

What's next — our agent team

The next phase of COTU's AI journey is moving from automated workflows to autonomous agents — systems that don't just react to triggers, but actively monitor, reason, and act on behalf of the team.

The pattern that works: give each agent a name, a clear role, and access to the same tools a human teammate would use. Onboard them like employees. Let the team interact with them naturally.

ZA
Zara
Deal Flow Agent — monitors all inbound channels
Zara watches all partner inboxes, WhatsApp forwards, and LinkedIn messages for deal signals. Any pitch that arrives anywhere gets logged to Attio automatically — zero pipeline leakage. She also runs an initial screen against our criteria (MENA-focused, Pre-Seed/Seed, cap <$30M) and flags the top opportunities for partner review each morning with a brief thesis-fit note.
Closes the WhatsApp/email gap Auto-screens vs COTU criteria Zero pipeline leakage
KA
Karim
DD Agent — 70% auto-drafted memo for every partner
When a deal moves to active DD, Karim pulls the pitch deck from Drive, the Granola meeting notes, the DDQ responses, and any data room materials, then generates a structured deal memo using COTU's standard recipe — covering model, market, team, GTM, and competition. He flags missing sections and suggests follow-up questions. Every partner starts from the same 70% baseline and adds their own analytical layer on top.
Consistent 70% memo auto-draft Deck + notes + DDQ + data room Flags missing sections
MA
Maya
Memory Agent — COTU's institutional memory
Maya's job is to make sure nothing that happens inside COTU gets forgotten. She reads every Granola note from internal team meetings, every partner discussion, and every calendar invite — not from portfolio companies, but from within the team itself. She captures how our thinking on a sector evolved, why we passed on a deal, and what conviction looks like for us today. Any team member can ask "what's our current view on B2B SaaS in the Gulf?" and get an answer grounded in real team conversations.
Internal meetings & discussions Deal decisions & pass reasons Investment thesis evolution
OA
Omar
Outbound Agent — structured sourcing via Harmonic
Omar runs weekly searches on Harmonic based on COTU's active investment theses, surfaces the most relevant founders, and drafts personalized outreach messages for partner review. He tracks which founders have been contacted, when, and what the response was — turning ad hoc exploration into a repeatable, measurable outbound motion.
Harmonic-powered sourcing Personalized outreach drafts Outbound pipeline tracking
NO
Nora
Portfolio Intelligence Agent — real-time portfolio pulse
Nora's job is exclusively focused on portfolio companies post-investment. She ingests everything that comes from founders — monthly updates, board call transcripts, data room materials, and Slack channel messages — and turns it into a live, queryable view of the portfolio. She tracks current KPIs, flags companies that haven't reported recently, surfaces outstanding action items from board calls with proactive reminders, and captures pivots and milestones at the moment they happen. She lives in Slack so partners can ask a question at any time without opening a dashboard.
Slack-native queries Real-time KPI tracking Action items + proactive reminders Pivots & milestone capture
LA
Layla
LP Report Agent — accelerates quarterly reporting
Layla pulls the latest performance data and KPIs directly from our Google Drive — founder updates, decks, and reports stored by portfolio company — drafts the narrative sections of the LP report PowerPoint, and pre-fills slides with updated data and company summaries. Ismail and Amir focus on review and commentary rather than data gathering and first drafts, while preserving Amir's personal ElevenLabs voice narration layer.
Auto-filled LP slides Pulls from Google Drive Preserves ElevenLabs voice layer

We've already proven we can build tools that fit exactly how we work — the inbound deal pipeline and the portfolio monitoring POC are evidence of that. The agent layer is the natural next step: tools that don't wait to be triggered, but actively work alongside the team every day.

COTU — internal white paper, May 2026

The highest-leverage starting point is Maya — the memory agent. Organizational memory benefits every other process simultaneously: better DD alignment, better meeting follow-through, better outbound context. Build one thing well, and the next problem reveals itself.

Build order — process coverage matrix. The table below shows which agents impact which processes. Maya is the clear first build: she is the only agent that touches all four processes simultaneously. Coverage score drives prioritization.

Process
MA
Maya
NO
Nora
KA
Karim
ZA
Zara
OA
Omar
LA
Layla
Deal sourcing
Due diligence
Portfolio monitoring
LP relations
Coverage score 4/4 1/4 1/4 1/4 1/4 1/4
Primary impact
Secondary impact
No direct impact