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Product Releases

Stay informed about the latest developments and innovations from Snorkel AI. New product releases include updates that enhance functionality, performance, and usability, helping enterprises scale their AI projects with even greater efficiency.

All articles on Product Releases

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Speech AI Demystified | FDCAI Lightning Talk
Sirisha Rella, Technical Product Marketing Manager at Nvidia, recently gave a Lightning Talk presentation on “demystifying” speech AI at Snorkel AI’s Future of Data-Centric AI virtual conference.
January 10, 2023
Team Snorkel
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Demo: Using Snorkel Flow to train Microsoft Azure Form Recognizer models
Snorkel Flow debuts a new integration with Microsoft Azure Form Recognizer to help organizations leverage Azure AI services.
January 5, 2023
Team Snorkel
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Snorkel Flow 2022 year-end release roundup
See what’s in our latest Snorkel Flow release and how we’re accelerating data-centric AI development further.
January 3, 2023
Aparna Lakshmiratan
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Deepening Snorkel AI’s partnership with Microsoft Azure AI
Snorkel AI is excited to build on our partnership with Microsoft Azure to help enterprises and government agencies solve their most impactful problems and unlock value from their data using AI. Learn how Azure customers can easily deploy Snorkel Flow on their Azure cloud infrastructure to accelerate AI application development with data-centric workflows and programmatic labeling.
November 22, 2022
Henry Ehrenberg
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Data-centric Foundation Model Development: Bridging the gap between foundation models and enterprise AI
Introducing new capabilities for Data-centric Foundation Model Development in Snorkel Flow Powerful new large language or foundation models (FMs) like GPT-3, Stable Diffusion, BERT, and more have taken the AI space by storm, going viral—even beyond technical practitioners—thanks to incredible capabilities around text generation, image synthesis, and more. However, enterprises face fundamental barriers to using these foundation models on real,
November 17, 2022
Alex Ratner
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Better not bigger: How to get GPT-3 quality at 0.1% the cost
We created Data-centric Foundation Model Development to bridge the gaps between foundation models and enterprise AI. New Snorkel Flow capabilities (Foundation Model Fine-tuning, Warm Start, and Prompt Builder) give data science and machine learning teams the tools they need to effectively put foundation models (FMs) to use for performance-critical enterprise use cases. The need is clear: despite undeniable excitement about
November 17, 2022
Stephen Bach
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Jason Fries
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Braden Hancock
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Summer 2022 Snorkel Flow release roundup
On the heels of the second annual Future of Data-Centric AI event, we’re energized by what we learned from data scientists, machine learning engineers, and AI leaders who are adopting data-centric approaches to accelerate AI success. The Snorkel Flow platform provides these teams with a seamless workflow across training data creation, model training, and analysis—the scaffolding to make data-centric AI
August 30, 2022
Molly Friederich
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Introducing Continuous Model Feedback to drive rapid data quality improvement
Continuous Model Feedback, available in beta as part of the new Studio experience, is Snorkel Flow’s latest capabilities to make training data creation and model development more integrated, automated, and guided.
August 29, 2022
Molly Friederich
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Introducing Cluster View: Instant data insight made actionable to speed AI development
Programmatic labeling moves a classic technique from interesting to high-impact So much of real-world AI development entails working with text data that’s messy — in fact, 80%+ of enterprise data is unstructured. And while state-of-the-art models get a lot of the glory, creating the training data that conveys what your model needs to learn is more often the biggest determiner of AI
June 30, 2022
Molly Friederich
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Event recap: Adopting trustworthy AI for government
We’re currently experiencing such a rapid AI revolution and adoption of technologies, ranging from autonomous cars to virtual assistants and robotic surgeries and so much more, making it challenging for our government agencies to keep up. Especially when adding AI technologies to the mix, it can be even harder to manage.The crucial adoption of trustworthy AI and its successful integration
May 23, 2022
Alexis Zumwalt
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Spring 2022 Snorkel Flow release roundup
Latest features and platform improvements for Snorkel Flow 2022 is off to a strong start as we continue to make the benefits of data-centric AI more accessible to the enterprise. With this release, we’re further empowering AI/ML teams to drive rapid, analysis-driven training data iteration and development. Improvements include streamlined data exploration and programmatic labeling workflows, integrated active learning and AutoML,
April 14, 2022
Molly Friederich
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Snorkel AI welcomes industry leaders to the team
 
March 21, 2022
Alex Ratner
Advancing Snorkel from research to production
The Snorkel AI founding team started the Snorkel Research Project at Stanford AI Lab in 2015, where we set out to explore a higher-level interface to machine learning through training data. This project was sponsored by Google, Intel, DARPA, and several other leading organizations and the research was represented in over 40 academic conferences such as ACL, NeurIPS, Nature and
January 18, 2022
Team Snorkel
Building a Successful AI Startup
ScienceTalks with Saam Motamedi We at Snorkel AI have received many requests from data scientists and machine learning engineers who aspire to be founders, where do they start and how should they get started on their entrepreneurial journey? We genuinely believe that data scientists and machine learning engineers will build the next generation of mega-enterprises. Over the summer, we’ve recorded
October 18, 2021
Team Snorkel
Multi-Label Classification, Sequence Labeling, and More
Snorkel Flow LTS Release Summer ‘21 By adopting Snorkel Flow, a data-centric AI development platform powered by programmatic labeling, our customers have changed how they build and deploy AI applications. We’ve seen our customers save tens-of-millions of dollars in manual labeling costs and person-years of time by applying weak supervision with Snorkel Flow.Over the last few months, we’ve been hard
September 15, 2021
Patrick Kolencherry
Snorkel AI Raises $85m Series C at $1b Valuation for Data-Centric AI
We started the Snorkel project at the Stanford AI lab in 2015 around two core hypotheses:
August 9, 2021
Alex Ratner
Building Industrial-Strength NLP Applications With Ines Montani
In this episode of Science Talks, Explosion AI’s Ines Montani sat down with Snorkel AI’s Braden Hancock to discuss her path into machine learning, key design decisions behind the popular spaCy library for industrial-strength NLP, the importance of bringing together different stakeholders in the ML development process, and more.This episode is part of the #ScienceTalks video series hosted by the Snorkel AI team. You
April 29, 2021
Team Snorkel
Introducing Application Studio and Announcing Our $35m Series B Funding
Over the past year, we’ve worked hard to deliver Snorkel Flow, the first AI platform to provide all the power of machine learning without the pains of hand-labeling. Snorkel Flow lets you label data programmatically, train models flexibly, improve performance iteratively, and deploy AI applications quickly. We are incredibly proud of the value that our customers, including two of the
April 5, 2021
Alex Ratner
Snorkel AI Welcomes Devang Sachdev as Vice President of Marketing
We are inventing a new way to build enterprise AI applications. Taking a data-centric approach, we are making machine learning iterable, faster to deploy, and ultimately more practical.That is a fantastic opportunity, but it also presents one of our biggest challenges – figuring out how to bridge the gap between developers at the vanguard of machine learning and business leaders
July 28, 2020
Alex Ratner
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Snorkel AI: Putting Data First in ML Development
Today I’m excited to announce Snorkel AI’s launch out of stealth! Snorkel AI, which spun out of the Stanford AI Lab in 2019, was founded on two simple premises: first, that the labeled training data machine learning models learn from is increasingly what determines the success or failure of AI applications. And second, that we can do much better than labeling this
July 14, 2020
Alex Ratner