Enterprise

Galileo emerges from stealth to streamline AI model development

Comment

Holographic human type AI robot and programming data on a black background.
Image Credits: Yuichiro Chino / Getty Images

As the use of AI becomes more common throughout the enterprise, the demand for products that make it easier to inspect, discover and fix critical AI errors is increasing. After all, AI is costly — Gartner predicted in 2021 that a third of tech providers would invest $1 million or more in AI by 2023 — and debugging an algorithm gone wrong threatens to inflate the development budget. A separate Gartner report found that only 53% of projects make it from prototypes to production, presumably due in part to errors — a substantial loss, if one were to total up the spending.

Fed up with the high failure rate — and the fact that menial (if important) data preparation tasks, like loading and cleaning data, still take up the bulk of data scientists’ time — Vikram Chatterji, Atindriyo Sanyal and Yash Sheth co-founded Galileo, a service designed to act as a collaborative system of record for AI model development. Galileo monitors the AI development processes, leveraging statistical algorithms to pinpoint potential points of system failure.

“There were no purpose-built machine learning data tools in the market, so [we] started Galileo to build the machine learning data tooling stack, beginning with a [specialization in] unstructured data,” Chatterji told TechCrunch via email. “[The service] helps machine learning teams improve their data sets … by surfacing critical cohorts of data that may be underrepresented or erroneous, while being an all-round solution to encourage data scientists to proactively track data changes in production and mitigates mistakes and gaps in their models from leaking into the real world.”

Chatterji has a background in data science, having worked at Google for three years at Google AI. Sanyal was a senior software engineer at Apple, focusing mainly on Siri-related products, before becoming an engineering lead on Uber’s AI team. As for Sheth, he also worked at Google as a staff software engineer, managing the Google Speech Recognizer platform.

With Galileo, which today emerged from stealth with $5.1 million in seed funding, Chatterji, Sanyal and Sheth set out to create a product that could scale across the entire AI workflow — from pre-development to post-production — as well as data modalities like text, speech and vision. Available in private beta and built to be deployable in an on-premises environment, Galileo aims to systematize pipelines across teams using “auto-loggers” and algorithms that spotlight system-breaking issues.

Finding these issues is often a major pain point for data scientists. According to one recent survey (from MLOps Community), 84.3% of data scientists and machine learning engineers say that the time required to detect and diagnose problems with a model is a problem for their teams, while over one in four (26.2%) admit that it takes them a week or more to detect and fix issues.

“The discussion around machine learning within the enterprise has shifted from ‘What do I use this for?’ to ‘How can I make my machine learning workflows faster, better, cheaper?,’” Chatterji said. “Galileo … enforces the necessary rigor and the proactive application of research-backed techniques every step of the way in productionizing machine learning models …  [It] leads to an order of magnitude improvement on how teams deal with the messy, mind-numbing task of improving their machine learning datasets.”

Galileo fits into the emerging practice of MLOps, which combines machine learning, DevOps and data engineering to deploy and maintain AI models in production environments. The market for MLOps services could reach $4 billion by 2025, by one estimation, and includes startups like Databricks, DataRobot, Algorithmia and incumbents like Google Cloud and Amazon Web Services.

While investor interest in MLOps is on the rise, cash doesn’t necessarily translate to success. Even the best MLOps platforms today can’t solve every common problem associated with AI workflows, particularly when business executives aren’t able to quantify the return on investment of these initiatives. The MLOps Community poll found that convincing stakeholders when a new model is better, for example, remains an issue “at least sometimes” for over 80% of machine learning practitioners.

Chatterji points to Kaggle CEO Anthony Goldbloom’s investment in Galileo — The Factory led the round with participation from Goldbloom — as a sign of the company’s differentiation. Chatterji says that Galileo currently has “dozens” of paying customers ranging from Fortune 500 companies to early-stage startups — revenue that Galileo plans to leverage to triple the size of its 14-person team by the end of the year.

“Galileo has focused on flipping the otherwise painstaking task of machine learning data inspection, to make it easy and provide intelligent data insights fast,” Chatterji said. “The user only has to add a few lines of code.”

To date, Galileo has raised $5.1 million in total venture capital.

More TechCrunch

Intuitive Machines made history when it became the first private company to land a spacecraft on the moon, so it makes sense to adapt that tech for Mars.

Intuitive Machines wants to help NASA return samples from Mars

As Google revamps itself for the AI era, offering AI overviews within its search results, the company is introducing a new way to filter for just text-based links. With the…

Google adds ‘Web’ search filter for showing old-school text links as AI rolls out

Ilya Sutskever, OpenAI’s longtime chief scientist and one of its co-founders, has left the company. OpenAI CEO Sam Altman announced the news in a post on X Tuesday evening. pic.twitter.com/qyPMIcvcsY…

Ilya Sutskever, OpenAI co-founder and longtime chief scientist, departs

Blue Origin’s New Shepard rocket will take a crew to suborbital space for the first time in nearly two years later this month, the company announced on Tuesday.  The NS-25…

Blue Origin to resume crewed New Shepard launches on May 19

This will enable developers to use the on-device model to power their own AI features.

Google is building its Gemini Nano AI model into Chrome on the desktop

It ran 110 minutes, but Google managed to reference AI a whopping 121 times during Google I/O 2024 (by its own count). CEO Sundar Pichai referenced the figure to wrap…

Google mentioned ‘AI’ 120+ times during its I/O keynote

Firebase Genkit is an open source framework that enables developers to quickly build AI into new and existing applications.

Google launches Firebase Genkit, a new open source framework for building AI-powered apps

In the coming months, Google says it will open up the Gemini Nano model to more developers.

Patreon and Grammarly are already experimenting with Gemini Nano, says Google

As part of the update, Reddit also launched a dedicated AMA tab within the web post composer.

Reddit introduces new tools for ‘Ask Me Anything,’ its Q&A feature

Here are quick hits of the biggest news from the keynote as they are announced.

Google I/O 2024: Here’s everything Google just announced

LearnLM is already powering features across Google products, including in YouTube, Google’s Gemini apps, Google Search and Google Classroom.

LearnLM is Google’s new family of AI models for education

The official launch comes almost a year after YouTube began experimenting with AI-generated quizzes on its mobile app. 

Google is bringing AI-generated quizzes to academic videos on YouTube

Around 550 employees across autonomous vehicle company Motional have been laid off, according to information taken from WARN notice filings and sources at the company.  Earlier this week, TechCrunch reported…

Motional cut about 550 employees, around 40%, in recent restructuring, sources say

The keynote kicks off at 10 a.m. PT on Tuesday and will offer glimpses into the latest versions of Android, Wear OS and Android TV.

Google I/O 2024: Watch all of the AI, Android reveals

Google Play has a new discovery feature for apps, new ways to acquire users, updates to Play Points, and other enhancements to developer-facing tools.

Google Play preps a new full-screen app discovery feature and adds more developer tools

Soon, Android users will be able to drag and drop AI-generated images directly into their Gmail, Google Messages and other apps.

Gemini on Android becomes more capable and works with Gmail, Messages, YouTube and more

Veo can capture different visual and cinematic styles, including shots of landscapes and timelapses, and make edits and adjustments to already-generated footage.

Google Veo, a serious swing at AI-generated video, debuts at Google I/O 2024

In addition to the body of the emails themselves, the feature will also be able to analyze attachments, like PDFs.

Gemini comes to Gmail to summarize, draft emails, and more

The summaries are created based on Gemini’s analysis of insights from Google Maps’ community of more than 300 million contributors.

Google is bringing Gemini capabilities to Google Maps Platform

Google says that over 100,000 developers already tried the service.

Project IDX, Google’s next-gen IDE, is now in open beta

The system effectively listens for “conversation patterns commonly associated with scams” in-real time. 

Google will use Gemini to detect scams during calls

The standard Gemma models were only available in 2 billion and 7 billion parameter versions, making this quite a step up.

Google announces Gemma 2, a 27B-parameter version of its open model, launching in June

This is a great example of a company using generative AI to open its software to more users.

Google TalkBack will use Gemini to describe images for blind people

Google’s Circle to Search feature will now be able to solve more complex problems across psychics and math word problems. 

Circle to Search is now a better homework helper

People can now search using a video they upload combined with a text query to get an AI overview of the answers they need.

Google experiments with using video to search, thanks to Gemini AI

A search results page based on generative AI as its ranking mechanism will have wide-reaching consequences for online publishers.

Google will soon start using GenAI to organize some search results pages

Google has built a custom Gemini model for search to combine real-time information, Google’s ranking, long context and multimodal features.

Google is adding more AI to its search results

At its Google I/O developer conference, Google on Tuesday announced the next generation of its Tensor Processing Units (TPU) AI chips.

Google’s next-gen TPUs promise a 4.7x performance boost

Google is upgrading Gemini, its AI-powered chatbot, with features aimed at making the experience more ambient and contextually useful.

Google’s Gemini updates: How Project Astra is powering some of I/O’s big reveals

Veo can generate few-seconds-long 1080p video clips given a text prompt.

Google’s image-generating AI gets an upgrade