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Kodie Dower
Kodie Dower
AI and machine learning have become the engines of enterprise innovation, and open-source tools are the fuel. Whether it’s speeding up development, cutting costs, or unlocking new capabilities, open source is powering a shift in how businesses approach AI. But as these tools become more integral, they present new challenges. Companies must work to keep systems secure and manage performance at scale while ensuring teams have the skills to make the most of them.
Our latest report, The State of Enterprise Open-Source AI, dives into how enterprises are balancing these forces. We’ve sifted through survey data from 100 IT decision-makers at large and midsize enterprises to shed light on the trends, challenges, and opportunities shaping the future of AI in the enterprise.
“Open-source AI is reshaping how enterprises innovate, offering tools that drive smarter decision-making and better operational efficiency. But as adoption grows, so does the need for strategies that balance experimentation with long-term stability and security,” says Peter Wang, Chief AI & Innovation Officer at Anaconda. “The challenge lies in building systems that not only solve today’s problems but scale seamlessly for the future.”
Find highlights from the research below.
Open-source AI is becoming the backbone of enterprise innovation, with adoption rates reflecting its growing importance across industries. These findings spotlight sectors leading the charge and tools setting the standard.
While open-source tools unlock innovation, they also come with security risks that can threaten enterprise stability and reputation. The data reveals the vulnerabilities organizations face and the steps businesses are taking to safeguard their systems. Addressing these challenges is vital for building trust and ensuring the safe deployment of AI/ML models.
Scaling AI is a balancing act: enterprises must handle increasing complexity without sacrificing performance or stability. The State of Enterprise Open-Source AI report uncovers the most pressing challenges organizations face when scaling AI initiatives and highlights best practices for maintaining reliability as AI systems grow in scope and ambition.
These highlights are just the beginning. Access the full State of Enterprise Open-Source AI report for a deeper look at the data, including breakdowns on RAG and LLM implementation and cross-team collaboration in open source. Plus, find practical strategies and detailed insights to help you realize the ROI of open-source AI at your enterprise.
Download the full report now to uncover the strategies driving AI success across industries.
Talk to one of our experts to find solutions for your AI journey.