D2 Connect
D2 Product Preview: The Multimodal Shift - Rethinking Data Infra for the Age of Vision, A/V & LLMs
MEETING

D2 Product Preview: The Multimodal Shift - Rethinking Data Infra for the Age of Vision, A/V & LLMs

# D2 Product Preview

As AI applications increasingly combine vision, audio, video, and LLMs, teams are drowning in fragmented infrastructure. A typical production AI workflow requires stitching together 5+ services: cloud storage for raw files, a separate metadata database, an orchestrator like Airflow, embedding services, vector databases for similarity search, and hundreds of lines of glue code to keep everything in sync. Every time a model improves or business requirements change, you're rewriting pipelines and re-processing entire datasets. This isn't building AI - it's maintaining infrastructure.

In this session, you'll see how a declarative approach to AI data infrastructure eliminates the glue code and maintenance burden. Instead of writing pipelines, you define transformations as computed columns and tables

And we'll walk through a real multimodal workflow, e.g. starting with raw video, extracting audio, transcribing with Whisper, generating embeddings with CLIP, and building semantic search. Then we'll show what happens when you update upstream data and/or add new transformations.

This session is most relevant for ML Engineers, AI App Developers, and technical leaders who are:

  1. Building production AI applications that combine images, video, audio, or documents with LLMs
  2. Currently managing multiple services (S3 + Postgres + Airflow + Vector DB + custom scripts)
  3. Hitting scaling pain points: slow iteration, complex model updates, or lack of reproducibility
  4. Looking to reduce infrastructure complexity without sacrificing capability

Agenda

From9:00 PM
To9:05 PM
GMT
Tags:
Opening
Problem Framing
  • Host intro
  • Why multimodal is changing the default data stack (vision, A/V, LLMs)
  • What breaks in traditional infra when modalities multiply
  • What we’ll cover during this session
+ Read More
From9:06 PM
To9:15 PM
GMT
Tags:
Roundtable
Solution
  • Define end-to-end pipelines in Python
  • Platform-managed orchestration + incremental compute
  • Reproducibility, iteration speed, and maintainability at scale
+ Read More
From9:16 PM
To9:25 PM
GMT
Tags:
Founder Presentation
Live Demo
  • Walkthrough of workflows
  • Real examples of the solution in action
+ Read More
From9:26 PM
To9:40 PM
GMT
Tags:
Roundtable
Q&A
  • Where pipelines get slow or brittle (data, orchestration, eval, cost)
  • What “production-ready multimodal workflows” should look like
  • Feedback on product direction + must-have capabilities
+ Read More
From9:41 PM
To5:45 AM+1
GMT
Tags:
Closing
Closing
  • Key insights captured
  • Follow-up materials (optional)
+ Read More

Attendees

Bessie's Avatar
Bessie's Avatar
Bessie
member
Arlene's Avatar
Arlene's Avatar
Arlene
member
Cody's Avatar
Cody's Avatar
Cody
member
Colleen's Avatar
Colleen's Avatar
Colleen
member
Kathryn's Avatar
Kathryn's Avatar
Kathryn
member
Bessie's Avatar
Bessie's Avatar
Bessie
member
Already registered?
Starting in 21 days
February 25, 9:00 PM GMT
Online
Organized by
Marcel Kornacker
Marcel Kornacker
Starting in 21 days
February 25, 9:00 PM GMT
Online
Organized by
Marcel Kornacker
Marcel Kornacker
Privacy Policy