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Joe Murphy

Speaker

Joe Murphy

2

talks

Principal Architect Acceldata

Joe Murphy, Principal Architect for Acceldata’s Field Engineering team, guides enterprise clients through the implementation of data observability. With over 30 years of experience in enterprise architecture and complex system implementation at Acceldata, Informatica, and IBM, Joe has collaborated with some of the world’s largest financial services companies. His extensive experience in complex architectures is key to driving effective data observability solutions.

Bio from: Big Data LDN 2025

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Your AI is only as good as your data. Downtime, pipeline failures, and blind spots threaten revenue, compliance, and trust. Join Acceldata at Big Data London to explore Agentic Data Management (ADM), where AI agents autonomously resolve issues, optimize pipelines, and ensure governance. Powered by xLake Reasoning Engine, ADM delivers trusted, AI-ready data with self-healing operations. Hear how enterprises like Dun & Bradstreet boosted reliability and compliance. Ideal for data leaders, engineers, architects, analysts, product managers, and governance heads seeking autonomous data excellence. Visit Booth M70 for live demos

Sponsored by: Acceldata | Agentic Data Management: Trusted Data for Enterprise AI on Databricks

An intelligent, action-driven approach to bridge Data Engineering and AI/ML workflows, delivering continuous data trust through comprehensive monitoring, validation, and remediation across the entire Databricks data lifecycle. Learn how Acceldata’s Agentic Data Management (ADM) platform: Ensures end-to-end data reliability across Databricks from ingestion, transformation, feature engineering, and model deployment. Bridges data engineering and AI teams by providing unified insights across Databricks jobs, notebooks and pipelines with proactive data insights and actions. Accelerates the delivery of trustworthy enterprise AI outcomes by detecting multi-variate anomalies, monitoring feature drift, and maintaining lineage within Databricks-native environments.