Janakiram MSV is an analyst, advisor and an architect at Janakiram & Associates. He was the founder and CTO of Get Cloud Ready Consulting, a niche cloud migration and cloud operations firm that got acquired by Aditi Technologies. Through his speaking, writing and analysis, he helps businesses take advantage of the emerging technologies.
The rise of large language models is going to bring significant advancements in observability, transforming how businesses monitor their infrastructure and workloads. This evolution is marked by the integration of generative AI-driven analytics that can predict and diagnose system anomalies faster and with greater accuracy than ever before.
For example, Splunk has adopted machine learning to automate incident responses, predicting and managing potential issues to streamline operational workflows. Similarly, Dynatrace integrates AI to bolster its diagnostic capabilities, providing real-time, precise analysis across its environments, thereby improving the speed and accuracy of problem resolutions.
Flip AI's approach involves minimal intrusion and requires only read access to data, ensuring that enterprise data governance standards are upheld. This method addresses the privacy and security concerns, which are crucial for enterprises wary of external data handling risks.
Dynatrace Flip AI Datadog New Relic Splunk Observability Analytics
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