Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and Copilots
    • Innovation & Leadership
    • Cybersecurity
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
  • Summit NA
  • Dynamics Communities
  • Ask Copilot
Twitter Instagram
  • Summit NA
  • Dynamics Communities
  • AI Copilot Summit NA
  • Ask Cloud Wars
Twitter LinkedIn
Cloud Wars
  • Home
  • Top 10
  • CW Minute
  • CW Podcast
  • Categories
    • AI and CopilotsWelcome to the Acceleration Economy AI Index, a weekly segment where we cover the most important recent news in AI innovation, funding, and solutions in under 10 minutes. Our goal is to get you up to speed – the same speed AI innovation is taking place nowadays – and prepare you for that upcoming customer call, board meeting, or conversation with your colleague.
    • Innovation & Leadership
    • CybersecurityThe practice of defending computers, servers, mobile devices, electronic systems, networks, and data from malicious attacks.
    • Data
  • Member Resources
    • Cloud Wars AI Agent
    • Digital Summits
    • Guidebooks
    • Reports
  • About Us
    • Our Story
    • Tech Analysts
    • Marketing Services
    • Login / Register
Cloud Wars
    • Login / Register
Home » Domino Equips Data Scientists for AI Success
AI and Copilots

Domino Equips Data Scientists for AI Success

An Enterprise AI Impact Series
Aaron BackBy Aaron BackJanuary 13, 2022Updated:February 11, 20226 Mins Read
Facebook Twitter LinkedIn Email
To adjust the volume hover the cursor over the volume bar
Share
Facebook Twitter LinkedIn Email
đź”– Bookmark the Enterprise AI Impact channel

The context and purpose behind this series: “The 17 Companies Reshaping the Landscape of Enterprise AI“.


Who They Are

Domino Data Lab logo

Anyone involved in surfacing data insights in their company knows that wrangling the data is a monumental task. Further, getting the right tools in the hands of the right people is paramount. This notion is deeply rooted in the mission of Domino Data Lab which is to “unleash the power of data science to address the world’s most important challenges.”

Started in 2013 by CEO Nick Elprin and CTO Chris Yang, Domino set out to provide an Enterprise MLOps platform to “enable thousands of data scientists to develop better medicines, grow more productive crops, adapt risk models to major economic shifts”, and much more.

In October 2021, Domino secured $100 million in Series F funding which brings its total funding to a little north of $220 million. This will help Domino as it has sights set on a global market with offices in San Francisco, London, and Bengaluru, India.

I like to describe Domino as an “experiment platform”: it lets data scientists improve their analyses faster by making it easy to run, track/reproduce, share, and deploy analytical models. Normally these capabilities would require a lot of engineering work and hassle to build and maintain, but Domino gives you these “power tools” out of the box.

Nick Elprin, CEO in an interview with Data Science Weekly

Understanding our customers and delivering what they need is the core of our business. We built our first prototype in four weeks and immediately went back to the data scientists to ask them what they thought. We listened to their feedback, and thankfully, some people even started to use our platform. We kept that rapid feedback cycle going — asking if our work was useful, then taking feedback and using it to improve

Chris Yang, CTO, in an interview on Medium

What They Do

First, what is machine learning? Basically, it’s a branch of artificial intelligence and computer science. The primary focus is using data and algorithms to learn and improve over time. Think of it this way, artificial intelligence without data is like a fish without water.

Second, this gets to the root of Domino Data Lab’s strength: Machine Learning Operations (or MLOps). Since Domino is narrowing its focus on this branch of AI, it can deliver cutting-edge solutions to its customers.

So, what does Domino offer that equips data scientists and empowers them to change the world?

The Domino Enterprise MLOps platform has 4 critical pillars that make it an indispensable tool.

Open and Flexible

Use the tools & infrastructure you want

Built for Teams

Reproduce work and compound knowledge

Integrated Workflows

Reduce friction across the end-to-end lifecycle

Enterprise Scale

Safely and universally scale data science


Underpinning the platform is a component structure the addresses the full MLOps cycle.

Knowledge Center

  • Find, reuse, reproduce, and discuss work.
  • Centralize learnings and foster collaboration.
  • Instill consistent standards and best practices.
  • Manage research projects and progress

Workbench

  • On-demand compute
  • Self-serve workspaces
  • Run, track, and compare experiments

Launchpad

  • Host/Export model APIs
  • Publish Apps for business stakeholders
  • Schedule data refreshes

Model Monitor

  • Monitor all models for data drift & quality
  • Send proactive alerts
  • Assess business impact

Enterprise Infrastructure Foundation

  • Monitor all models for data drift & quality
  • Send proactive alerts
  • Assess business impact

Most Unique / Impactful Application

Domino actually has two products as part of its platform: Domino Data Science and Domino Model Monitor. While both products are strong, the Domino Model Monitor (DMM) provides an easy view into what’s happening across the entire organization.

DMM delivers three elements that provide data scientists with what they need to focus on value-added projects.

Establish a Consistent Approach for Model Monitoring

Model Monitoring - Health Checks
  • Monitor models from any language, framework, or deployment infrastructure
  • Break down departmental silos and eliminate inconsistent or infrequent monitoring practices
  • Establish a standard for model health metrics across your organization

Detect Problems Before They Cause Serious Business Impact

Model Monitoring - Detect Problems
  • Track data drift for both input features and output predictions
  • Track prediction quality with respect to ground truth labels
  • Analyze failure conditions by running different tests in an interactive way
  • Quickly assess whether a model needs to be retrained or rebuilt

Automate Production Model Monitoring at Enterprise Scale

Model Monitoring - Automate Production
  • Schedule health checks to ensure business-critical models remain in good shape
  • Send proactive alerts so data scientists can focus on value-added work
  • Help IT/Ops teams take charge of monitoring production models
  • Integrate with any model hosting system using APIs

Who Have They Impacted

Sustainability is more than a hot topic today, but one that needs continued action behind it. And some companies are taking action. One such company is Bayer, a world-leading provider of agricultural productions.

Bayer logo

Bayer’s team of data scientists is 500+ in numbers. Empowered with Domino’s “science@scale” platform, the Bayer data science community was able to improve over 100 data model decisions.

However, this was not an easy task. The research-based approach consists of “constant exploration, iteration, and agility.” Further, they are intended to be “probabilistic, not deterministic”. This required data scientists to be strongly collaborative in their efforts as “models must constantly be tracked, retrained, and iterated on to reflect changing data and other factors that lead to model drift”

“Domino has made it easier for users across the global enterprise, using different tools and with varied backgrounds and skill sets, to work with each other, leverage past work, and collaborate quickly.”

Naveen Singla, Data Science Center of Excellence Lead at Bayer

So, what was the outcome of this work? Bayer leadership realized the huge opportunities by leveraging Domino.

  • Open and flexible ease of use: Domino allows Bayer’s hundreds of data scientists to focus on driving innovation, using their preferred hardware, software, tools, and languages — including RStudio, Python, Flask, and Shiny — with centralized management.
  • Collaboration: Domino automatically versions not just code, but entire experiments along with the data, the environments, discussion threads, and necessary artifacts, meaning work is never lost and is always reproducible.
  • Adoption: Bayer set up Domino within a robust discovery environment in “science@scale”, where it facilitates accelerated model development along with model delivery via the Domino API and Shiny apps. More than 75% of the company’s 500-strong community of data scientists now actively use Domino and adoption continues to expand.

Artificial Intelligence data science data scientist Enterprise AI Battleground Enterprise AI Impact featured
Share. Facebook Twitter LinkedIn Email
Aaron Back
  • Website
  • Twitter
  • LinkedIn

Aaron Back (Bearded Analyst), Chief Content Officer for Acceleration Economy, focuses on empowering individuals and organizations with the information they need to make crucial decisions. He surfaces practical insights through podcasts, news desk interviews, analysis reports, and more to equip you with what you need to #competefast in the acceleration economy. | 🎧 Love listening to podcasts wherever you go? Then check out my "Back @ IT" podcast and listen wherever you get your podcasts delivered: https://back-at-it.simplecast.com #wdfa

Related Posts

AI Agents, Data Quality, and the Next Era of Software | Tinder on Customers

July 3, 2025

AI Agent & Copilot Podcast: AIS’ Brent Wodicka on Operationalizing AI, the Metrics That Matter

July 3, 2025

Ajay Patel Talks AI Strategy and Enterprise Adoption Trends | Cloud Wars Live

July 2, 2025

Slack API Terms Update Restricts Data Exports and LLM Usage

July 2, 2025
Add A Comment

Leave A Reply Cancel Reply

You must be logged in to post a comment.

Recent Posts
  • AI Agents, Data Quality, and the Next Era of Software | Tinder on Customers
  • AI Agent & Copilot Podcast: AIS’ Brent Wodicka on Operationalizing AI, the Metrics That Matter
  • Ajay Patel Talks AI Strategy and Enterprise Adoption Trends | Cloud Wars Live
  • Slack API Terms Update Restricts Data Exports and LLM Usage
  • Google Cloud Still World’s Hottest Cloud and AI Vendor; Oracle #2, SAP #3

  • Ask Cloud Wars AI Agent
  • Tech Guidebooks
  • Industry Reports
  • Newsletters

Join Today

Most Popular Guidebooks

Accelerating GenAI Impact: From POC to Production Success

November 1, 2024

ExFlow from SignUp Software: Streamlining Dynamics 365 Finance & Operations and Business Central with AP Automation

September 10, 2024

Delivering on the Promise of Multicloud | How to Realize Multicloud’s Full Potential While Addressing Challenges

July 19, 2024

Zero Trust Network Access | A CISO Guidebook

February 1, 2024

Advertisement
Cloud Wars
Twitter LinkedIn
  • Home
  • About Us
  • Privacy Policy
  • Get In Touch
  • Marketing Services
  • Do not sell my information
© 2025 Cloud Wars.

Type above and press Enter to search. Press Esc to cancel.

  • Login
Forgot Password?
Lost your password? Please enter your username or email address. You will receive a link to create a new password via email.