
Nom Nom Data Granted Revolutionary Self-Healing Data and AI Patent
AUSTIN, Texas--(BUSINESS WIRE)--Nom Nom Data Inc., is a Data Intelligence Company, headquartered in Austin, Texas. ("Nom Nom" or the "Company") founded by Chairman Niko Kontogiannis and CEO Nam Nguyen, is a pioneer in AI preprocessing, Data Labelling and Data Engineering as a Service, today announced it was granted a revolutionary self-healing Data and AI Patent from the United States Patent and Trademark Office (USPTO) on May 13, 2025.
Whoever leverages our patented self-healing Data and AI technology will take a dominant position for a future shaped by an AI agentic world. The race to become the primary interface for automated management of any processes involving Data and AI has begun!
Share
U.S. Patent No. 12,298,995 was created by Nom Nom to innovate fixing errors and performance issues in ETL-related data processes, utilizing Natural Language Processing and Generative AI.
Our Patent process involves feeding task configurations and executions using natural language processing to automatically resolve and fix task configurations and SQL or Python code, using Generative AI.
This groundbreaking self-healing Data innovation is a game changer for AI companies like xAI, OpenAI and Anthropic, Cloud Service providers like Amazon's AWS, Microsoft's Azure, Google's Google Cloud, Oracle's Oracle Cloud and Snowflake, and Data Management and Infrastructure companies like DataBricks, Scale AI, Dell and Nvidia, to name a few industry leaders in the areas of expertise. Our Data innovation revolutionizes how these companies will compute and process Data, utilizing Nom Nom's patented technology, making Data bulletproof, self-healing and optimized with AI.
Nom Nom Chairman and Co-founder Niko Kontogiannis says, 'We look forward to utilizing our IP and creating strategic licensing partnerships with the industry leading companies, to accelerate the rapid adoption of our revolutionary self-healing Data and AI technology.'
Reliable, trusted and structured Data is the fuel and energy source that allows AI to perform with exceptional precision, Nom Nom is at the forefront of this Data and AI movement.
With Databricks recent announcement to acquire Neon, OpenAI acquiring Windsurf, and Apple partnering with Amazon backed Anthropic to launch an AI-assisted coding platform, it validates the rise and desire of AI-native integrated development environments (IDE) and who will secure a dominant position in the emerging agentic AI world.
'Vibe coding' refers to a programming method where AI agents generate code, it's gaining viral adoption in the AI landscape. Nom Nom's revolutionary self-healing Data and AI Patented technology, will not only accelerate this agentic AI movement, it will exponentially improve how the data is processed and utilized with natural language processing and Generative AI.
As published by TechCrunch, during a fireside chat with Meta CEO Mark Zuckerberg at Meta's LlamaCon conference, Microsoft CEO Satya Nadella said that 20% to 30% of code is now written by AI. Microsoft CTO Kevin Scott previously said he expects 95% of all code to be AI generated by 2030. It was also reported during Google's recent earnings call, CEO Sundar Pichai said AI was generating more than 30% of Google's code.
Nom Nom CEO and Co-founder Nam Nguyen says, 'How we utilize Data with our innovative AI patented technology, is now helping to define the battle for who will become the primary interface for automated management of any processes involving Data and AI. This allows whoever leverages our patented self-healing Data and AI technology to take a dominant position for a future shaped by an AI agentic world.
'We are excited about our upcoming and future partnerships and collaborating with all these innovative companies.'
About Nom Nom
Nom Nom is a data intelligence company, we are pioneers in AI preprocessing, data labeling and data engineering as a service. We manage data and power AI for small and medium-sized enterprises to the leading Fortune 500 companies. We are a trusted data foundry, our data engine generates all the necessary data to fuel all the leading LLMs. Our innovative audit logging technology, provides detailed data access tracking and modifications, ensuring transparency and compliance with regulatory requirements. Our data disposition protocols are meticulously designed to identify and manage data efficiently, allowing for secure disposal or archiving as needed.
We make AI simple and your data scalable!
Hashtags

Try Our AI Features
Explore what Daily8 AI can do for you:
Comments
No comments yet...
Related Articles


Business Wire
37 minutes ago
- Business Wire
Zip Unveils Suite of 50 AI Agents to Automate High-Impact Tasks Across Finance, Legal, Procurement, IT, and Security
SAN FRANCISCO--(BUSINESS WIRE)-- Zip, the AI platform for procurement, today unveiled a groundbreaking suite of 50 purpose-built AI agents at its inaugural Zip AI Summit in Brooklyn, New York. Leveraging Zip's agentic AI suite for procurement, companies can now eliminate millions of hours of manual, tedious work currently plaguing every department across the enterprise – from tariff assessments to contract reviews, compliance checks, and more. With this launch, Zip introduces agentic procurement orchestration, a breakthrough new category that automates the entire purchasing process, giving the world's largest organizations a competitive edge in an increasingly volatile and resource-tight global market. 'Zip's approach to agentic AI is going to make global companies more secure, save them millions of hours of laborious work, and generate billions in hard-dollar savings,' said Rujul Zaparde, Co-Founder and CEO of Zip. Procurement represents the second-largest spend category after payroll, yet remarkably few organizations have successfully applied AI, leaving trillions of dollars managed through manual, error-prone processes. Zip, which became the first procurement platform to introduce generative AI features back in 2023, has already helped hundreds of global companies streamline purchasing – delivering over 4.6 million actionable AI insights and saving customers billions. Today's launch represents a fundamental leap forward as Zip moves beyond AI-assisted workflows to deploying intelligent agents that autonomously complete entire tasks on their own. 'Today Zip is cutting through the agentic AI hype with AI agents that actually work,' said Rujul Zaparde, Co-Founder and CEO of Zip. 'Not vague chatbots. Not generic assistants. Real, specialized AI agents that do one job and do it perfectly. Zip's approach to agentic AI is going to make global companies more secure, save them millions of hours of laborious work, and generate billions in hard-dollar savings.' OpenAI, Canva, Wiz, and Webflow are among the first companies to leverage Zip's groundbreaking AI agents. These and other long-time Zip customers have collaborated closely within the Zip AI Lab – launched during the company's landmark Series D funding round – flagging pain points across the purchasing lifecycle that the platform now addresses autonomously. 'We've worked closely with the Zip team to power their agentic platform and it's been really exciting to see how quickly they've turned real-world procurement pain points into focused AI task agents with our APIs,' said Kathryn Devlin, Head of Procure-to-Pay Operations, Travel and Expense at OpenAI. 'As part of our overall collaboration, we're excited to be among the first to integrate their AI agents to help manage spending and drive efficiency across the organization.' Zip's Agentic AI Suite at a Glance Zip's suite of 50+ AI agents enables customers to automate complex procurement tasks, including: AI Agent Builder: Provides an easy, no-code platform to build, customize, deploy and train AI agents. Tariff Analysis Agent: Dynamically assesses the impact of global trade policies on vendor pricing, helping companies navigate complex international procurement landscapes. Competitive Research Agent: Surfaces vendor alternatives and market rates to inform smarter, more strategic sourcing decisions. RFP Generation Agent: Drafts tailored Request for Proposal documents based on specific purchase requirements, dramatically reducing manual preparation time. DORA Assessment Agent: Screens vendors for DORA exposure and surfaces red flags for legal and procurement. GDPR Compliance Agent: Flags potential privacy risks in vendor documents, ensuring regulatory compliance. ESG Profile Agent: Identifies and evaluates ethical and sustainability concerns in potential supplier relationships. 'We live in a world where procurement leaders need to utilize AI for our advantage, and Zip's approach to agentic AI does exactly that,' said Idan Cohen, Technology Procurement at Wiz. 'We'll save so much time on the technical work and day-to-day tasks that we need to do as part of the procurement process, and be enabled to really focus on what we're supposed to do – being a true partner to the business and to our vendors.' "Zip created an entirely new category of procurement applications, so it is appropriate to see them pressing forward and launching a suite of AI Agents, plus an AI Agent builder, that will drive efficiency, compliance and, ultimately, savings. Shaped by input from many of their hundreds of clients, Zip is providing a pathway to the future of procurement. We can't wait to see Zip Agents in action," said Patrick Reymann, Research Director, Procurement and Enterprise Applications, IDC. For more information or to request a demo, visit About Zip Zip is the world's leading agentic procurement orchestration platform, empowering businesses to accelerate the procurement process, mitigate risk, and drive growth by offering a single front door to unify the teams, tasks, and tools involved in working with suppliers. With Zip, businesses can maximize employee adoption of purchasing policies and increase spend visibility and control. As the leading solution for optimizing business spend, Zip's AI-powered platform is trusted by hundreds of leading enterprises worldwide, including AMD, Anthropic, Coinbase, Discover, Dollar Tree, HP, Instacart, Invesco, Lyft, Northwestern Mutual, Prudential, Reddit, Sephora, and Snowflake to maximize the ROI of every dollar. To learn more, visit

Business Insider
an hour ago
- Business Insider
Starbucks' new OpenAI-powered tool helps baristas remember drink recipes and suggests food options
Starbucks is piloting a tool that'll help its baristas remember drink recipes. The Seattle-based coffee chain launched a new AI tool called Green Dot Assist, created with OpenAI. This tool, available on an iPad behind the counter in Starbucks stores, will work as an in-store virtual assistant for baristas. "Instead of flipping through manuals or searching for answers, partners can now ask questions on in-store iPads and receive instant, conversational responses," Starbucks said in a Tuesday press release. In an explanatory video of the tool, Starbucks said Green Dot Assist would show videos of how to make certain drinks, suggest tweaks and customizations to recipes, and recommend food pairings. For instance, a video on how to make Starbucks' Lavender Oatmilk Latte shows the app directing the barista to recommend a lemon loaf to the customer, as the loaf would "complement the latte's floral notes." "This marks a significant step forward in our commitment to streamlining operations, reducing friction, and giving partners more time to focus on crafting beverages and connecting with customers," Starbucks said in the release. Green Dot Assist is in use in 35 Starbucks stores in the US, "with more on the way," Starbucks said in the release. CNBC reported that a broader launch of the tool across the US and Canada is scheduled for Starbucks' fiscal year 2026, which begins in the fall. The new tool fits into CEO Brian Niccol's " Back to Starbucks" game plan, which aims to make Starbucks stores more inviting, improve operations, and reduce customer wait times. As part of the plan, Starbucks announced it would eliminate 30% of its menu offerings before the end of the fiscal year and has introduced a new mobile ordering system. The chain is also ramping up hiring baristas to fix its long-standing understaffing problem. Niccol said in April that Starbucks was focusing more on hiring baristas than on investing in equipment. "We're finding through our work that investments in labor, rather than equipment, are more effective at improving throughput and driving transaction growth," Niccol said on the company's earnings call in April.

Yahoo
2 hours ago
- Yahoo
Sam Altman thinks AI will have 'novel insights' next year
In a new essay published Tuesday called "The Gentle Singularity," OpenAI CEO Sam Altman shared his latest vision for how AI will change the human experience over the next 15 years. The essay is a classic example of Altman's futurism: hyping up the promise of AGI — and arguing that his company is quite close to the feat — while simultaneously downplaying its arrival. The OpenAI CEO frequently publishes essays of this nature, cleanly laying out a future in which AGI disrupts our modern conception of work, energy, and the social contract. But often, Altman's essays contain hints about what OpenAI is working on next. At one point in the essay, Altman claimed that next year, in 2026, the world will "likely see the arrival of [AI] systems that can figure out novel insights." While this is somewhat vague, OpenAI executives have recently indicated that the company is focused on getting AI models to come up with new, interesting ideas about the world. When announcing OpenAI's o3 and o4-mini AI reasoning models in April, co-founder and President Greg Brockman said these were the first models that scientists had used to generate new, helpful ideas. Altman's blog post suggests that in the coming year, OpenAI itself may ramp up its efforts to develop AI that can generate novel insights. OpenAI certainly wouldn't be the only company focused on this effort — several of OpenAI's competitors have shifted their focus to training AI models that can help scientists come up with new hypotheses, and thus, novel discoveries about the world. In May, Google released a paper on AlphaEvolve, an AI coding agent that the company claims to have generated novel approaches to complex math problems. Another startup backed by former Google CEO Eric Schmidt, FutureHouse, claims its AI agent tool has been capable of making a genuine scientific discovery. In May, Anthropic launched a program to support scientific research. If successful, these companies could automate a key part of the scientific process, and potentially break into massive industries such as drug discovery, material science, and other fields with science at their core. This wouldn't be the first time Altman has tipped his hat about OpenAI's plans in a blog. In January, Altman wrote another blog post suggesting that 2025 would be the year of agents. His company then proceeded to drop its first three AI agents: Operator, Deep Research, and Codex. But getting AI systems to generate novel insights may be harder than making them agentic. The broader scientific community remains somewhat skeptical of AI's ability to generate genuinely original insights. Earlier this year, Hugging Face's Chief Science Officer Thomas Wolf wrote an essay arguing that modern AI systems cannot ask great questions, which is key to any great scientific breakthrough. Kenneth Stanley, a former OpenAI research lead, also previously told TechCrunch that today's AI models cannot generate novel hypotheses. Stanley is now building out a team at Lila Sciences, a startup that raised $200 million to create an AI-powered laboratory specifically focused on getting AI models to come up with better hypotheses. This is a difficult problem, according to Stanley, because it involves giving AI models a sense for what is creative and interesting. Whether OpenAI truly creates an AI model that is capable of producing novel insights remains to be seen. Still, Altman's essay may feature something familiar -- a preview of where OpenAI is likely headed next. This article originally appeared on TechCrunch at Error in retrieving data Sign in to access your portfolio Error in retrieving data Error in retrieving data Error in retrieving data Error in retrieving data