Join our daily and weekly newspapers for exclusive content on the latest updates and industry-composure AI coverage. learn more
AstronomerThe company behind the Apache airflow-powered data orchestation platform Astro has achieved $ 93 million in series de funding, as enterprises want to conduct AI initiative through better management of their data pipelines rapidly.
Funding round led Ban capital venturesWith participation from Sales compensation And including existing investors insight, MeritechAnd Venrock, Bosch ventures Reflecting industrial interest in technology, is also trying to participate in the round.
In a special interview with venturebeat, astronomer CEO Andy Bayran reported that the company would use money to intensify research and development efforts and especially to expand its global footprint in Europe, Australia and New Zealand.
“For us, this is just a step on the way,” said Bayran. “We want to make something terrible here. I can’t be more excited about my enterprise partners, our customers, our product vision, which I think the data opes is super strong in the market after the market collapses.”
How to become a hidden key for data orchestation enterprise AI success
Funding targets what industry analysts have identified as “AI Implementation Interval” – significant technical and organizational barriers that prevent companies from deploying AI on a scale. The process of automatic and coordinating the complex data workflows in data orchestration, unequal systems has become an essential component of successful AI deployment.
Enrich SalemParticipated in Bain Capital Ventures, interpretation of important challenges facing enterprises today: “Every company operates a huge, fragmented data ecosystem – which uses a patchwork of equipment, teams and workflows, which struggles to provide credible insights, which are in the middle of this complication.
Salem said that despite its importance, “Today’s orchestation scenario is the place where cloud infrastructure was 15 years ago: Mission was critical, yet fragmented, brittle and often manufactured in in-house with limited scalability. Data engineers spend more time in maintaining pipelines than in innovation. Incredible, fickleness is lost, and the business falls. “
Company platform, AstronomyMade on Apache Airflow, an open-source framework that has seen explosive growth. According to the company recently released State of Airflow 2025 ReportWho surveyed over 5,000 data physicians, Airflow was downloaded alone in 2024 more than 324 million times – more than all years combined.
“Airflow has established itself as a perfect real standard for data pipeline orchestation,” the astronomer CMO Mark Wheeler explained. “When we look at the competitive scenario in the orchestration layer, the airflow has clearly emerged as a standard solution to move modern data efficiently from the source to the destination.”
From invisible plumbing to enterprise AI backbone: Development of data infrastructure
The growth of astronomers indicates a transformative change of how enterprise data sees orcharges from-from the hidden backand infrastructure to mission-cultural technology that enables AI initiative and enhances commercial value.
Salem said, “The BCV’s trust in Astronomer goes back. We have invested in the company’s seed round in 2019 and have supported the company for years, which is now leading their series D.” “Beyond the impressive growth, the data of the astronomer has become even more important at the age of the organizing AI, which requires scalable orchestration and model purification automation between the sea with a balloon of the data tools that do not talk to each other.”
According to the company’s internal data, 69% of the customers who have used their platforms for two or more years are using airflows for AI and machine learning applications. This adopting rate is much higher than the broad airflow community, suggesting that astronomer’s managed service enterprise AI deployment.
The company has observed 150% year-on-year growth in its annual recurring revenue and claims 130% net revenue retention rate indicating strong customer expansion.
“While market analysts may be looking for a clear winner in the battle of cloud data platform, the enterprises have clearly chosen a multi-co-operative strategy-as they earlier determined that multi-cloud would standardize any single cloud provider from far away,” the wheeller explained. “Leading enterprises refuse to lock in a single vendor, select multi-clouds and diverse data platform approaches to stay fit and take advantage of the latest innovations.”
Inside Ford’s mass AI operation: how weekly data power power of next generation vehicles
Major enterprises are already taking advantage of an astronomer’s platform for sophisticated AI use cases that would be challenging to apply without strong orchestration.
But Ford Motor CompanyThe Astronomers platform carries forward the company’s advanced driver Assistance System (ADAS) and its multi-millions of dollars.Mach1ml“Machine Learning Operations Platform.
Automotive legendary data process over one more than one stomachbite of the weekly and runs more than 300 parallel workflows, a hybrid public/private cloud platform for the development of AI models on the Public/Private Cloud platforms, and balances the CPU- and GPU-intensive tasks for the development of AI models. These workflows power everything from autonomous driving systems to Ford’s special Fordlm platform for large language models.
Ford initially used its mlops platform Kubflow For orchestration but important challenges faced, including a difficult learning state and tight integration Google CloudWhich is limited flexibility. After infection in the airflow for Mach1ml 2.0, Ford reports dramatically strengthened workflows and seamless integration in on-primeses, clouds and hybrid environment.
From AI experiments to production: How to divides orchestration divides implementation
A common challenge for enterprises is leading AI from proof-off-concept to production. According to astronomer’s research, organizations that establish strong data orchestation foundations are more successful in operating AI.
Salem said, “More ventures are running ML workflow and real-time AI pipelines, requiring scalable orchestration and model purpose automation.” “The astronomer today distributes it on it, and as an orchestrator, there is a system that sees everything crossing the stack – when the data moves, when the change moves, when the models are trained.”
More than 85% of the airflow users in the survey have expected an increase in external-honor or revenue-generating solutions built on airflow in the next year, stating how data orchestration is increasing customer-facing applications rather than only internal analysis.
This trend is evident in industries, from motor vehicles to legal technology companies that are building special AI models to automatically automatically to automatically make up professional workflows. These organizations are turning to astronomers to handle complex orchestration challenges arising when scaling the AI ​​system until the production environment that serves thousands of users.
Strategic Technology Extension: Airflow 3.0 and Cloud Partnership Status Astronomers for Market Leadership
The company recently announced general availability Airflow 3.0Which it describes as the most important release in the history of airflow “. The update introduces several transformational abilities designed specifically for AI workload, including “anytime, anytime, in any language” the ability to run “.
“Airflow 3.0 lays the foundation to execute the functions on any machine, on-arrogance or cloud, triggered by events in the data ecosystem,” Bayern said. “It also offers a proof of the concept to define tasks in languages ​​beyond the python, improves data team agility and facilitates migration from heritage systems to airflow.”
Astronomers have also expanded their industry participation, recently achieved the Google Cloud Ready – BigQuery designation, which is available for purchase directly for its platform. Google cloud marketplaceThis allows existing Google Cloud customers to accelerate the purchase of Astro and use their existing Google Cloud Commit Credit.
“We have only signed a terrible partnership with IBM,” Bayran told Venturebeat. “They are putting us in their comprehensive data portfolio of products. And we think there is a terrible opportunity for us, not only in North America, but also internationally, with IBM to gain a lot of speed.”
Integrated Data: Next development in enterprise data management
Salem believes that astronomer enterprise is deployed to redefine data operations, moving beyond orchestration that the company calls “integrated data” – a comprehensive approach that integrates observations, quality management and governance in the same platform.
Salem said, “We invested in an astronomer with a simple bet in 2019: airflow data would become a standard for orchestration.” “Today, it runs on over 80,000 companies and runs 30 million downloads in a month. We supported astronomers as they are not only riding that wave; they are building enterprise control aircraft on top of it.”
For enterprises struggling to realize value from their AI investments, astronomer growth indicates a significant change of how data infrastructure is made and managed – a where orchestration serves as a foundation for the entire data stack.
“As the AI ​​trusted the AI, scalable data for infrastructure, we are doubled on our investment,” Salem concluded. “Orciliation is just the beginning. Astronomers’ team is ready to unite the entire dataops stack.”