Data that can
carry AI at scale
AI is redefining how enterprises create value, operate at scale, and compete. Data is a critical underpinning – without reliable, well-governed data foundations, AI cannot scale safely or perform in production. Hitachi Digital Services helps enterprises build GenAI-ready data platforms engineered for reliability – so data is governed, observable, and cost-optimized from edge to core to multicloud.
We modernize, automate, and operate the data value chain using Data Reliability Engineering for AI, fusing DataOps, FinOps, and SRE practices to deliver resilient, self-healing data ecosystems that keep AI accurate and running.
When Data Isn’t Reliable, AI Becomes a Liability
Most enterprises already have data platforms in place – lakes, warehouses, pipelines, analytics tools, and cloud services. But many were built for reporting, not for AI operating continuously at enterprise scale. As AI moves into core business processes, gaps in data reliability, visibility, and governance surface fast. Quality issues propagate into models, costs rise without transparency, and control struggles to keep pace.
Our Data Practice brings together five solution areas. Each capability strengthens the next, creating a unified data fabric that supports AI at scale.
Architect Data Platforms That Can Evolve With AI
Modernize legacy data environments into scalable, cloud-ready platforms designed to support AI workloads. We apply a data fabric approach to reduce fragmentation, improve performance, and embed reliability from the start.
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Data Fabric Architecture
Implement cloud-ready data fabrics connecting edge, core, and multicloud environments -
Scalable Data Platforms
Deploy hybrid data lakes and warehouses built for scale, performance, and flexibility
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Cloud Data Migration
Modernize legacy platforms through structured data migration and ETL, including on-prem to cloud transitions -
DataOps Automation
Integrate automation to reduce latency, improve pipeline reliability, and accelerate decision-making
Embed Trust, Control, and Compliance by Design
As AI scales, governance must move faster. We embed governance directly into data flows using automation, enabling trusted self-service while meeting regulatory and compliance requirements.
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Governance Frameworks
Establish consistent governance models, business glossaries, and data ownership structures -
Automated Data Controls
Automate data quality, classification, lineage, and metadata management across domains
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Policy Enforcement
Enforce privacy, security, and regulatory alignment across hybrid and multicloud environments -
Audit Transparency
Enable traceability and controlled access for analytics, automation, and AI use cases
Connect Data Across the Enterprise with Reliability Built In
AI depends on data that can move securely and consistently across systems. We simplify integration and automation across hybrid environments, ensuring data flows remain governed, observable, and resilient as they scale.
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Integration Automation
Reduce integration effort and complexity through automation and standardized patterns -
Hybrid Connectivity
Connect cloud, on-prem, and edge environments with consistent control and orchestration
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Real-Time Data Flow
Enable real-time and batch data movement to support operational and AI-driven use cases -
Secure Data Movement
Maintain security, compliance, and reliability across all data flows and dependencies
Keep Data and AI Running in Production
Reliability is not an afterthought – it is engineered. Through Data Reliability Engineering for AI, powered by HARC, we apply DataOps, FinOps, and SRE practices to ensure data platforms remain observable, resilient, and cost-aware under real-world AI workloads.
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Observability Engineering
Engineer monitoring, early-warning detection, and proactive issue prevention across pipelines -
Self-Healing Pipelines
Enable automated remediation and continuous validation across data systems
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Performance Optimization
Optimize performance and cost through FinOps-aligned monitoring and resource management -
Data Trust Assurance
Improve data availability, consistency, and reliability across analytics and AI environments
Activate Reliable Data for Enterprise AI
Turn trusted data into actionable insight and AI-driven outcomes. We enable analytics, AI, and GenAI on top of governed, reliable data foundations – with lifecycle control and monitoring built in.
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Automated AI Pipelines
Automate data preparation, feature engineering, and model deployment across environments -
AI Accelerators
Accelerate time to value with pre-built analytics, AI, and industry-specific accelerators
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Model Lifecycle Management
Monitor models, detect drift, and maintain accuracy over time using AI/MLOps practices -
Responsible AI Enablement
Enable explainable, governed, and production-ready AI aligned to business outcomes
How We Work
We help businesses modernize, integrate, and run data platforms that perform, scale, and evolve. Our global teams embed quality, observability, and resilience into every data platform.
We Build Reliability into Every Byte
- Mission-critical reliability and SRE-led operations
- Unified DataOps + FinOps methodology
- Integrated IT/OT expertise
- Global systems integrator with 8 delivery centers
- 110 years of engineering heritage
- 30% productivity gain with DataOps and DRE
- Proven engineering-led reliability (SRE and DRE) boost accuracy, trust, resilience
Partners
Collaboration with industry leaders extends our reach and accelerates results.
INSIGHTS
Insights
Insights
Insights