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Data and AI Foundation – Data for AI

AI is only as good as your data.

Most AI projects fail because of data problems, not algorithm problems.

We build and manage AI-ready data foundations, with data engineering for AI, labeling services, GenAI guardrails, and AI/ML Ops that reduce hallucinations, accelerate time-to-value, and make your AI initiatives actually work.

0 %
of AI project time typically wasted on data prep
0 %
reduction in data preparation time
0 %
GenAI governance coverage

How ADA Data for AI Makes Your AI Initiatives Succeed

Everything your data needs to become working AIfrom engineering to operations.

Data With Media Title

AI Data Engineering & Integration

Data pipelines built for AI, not just reporting. 

 Data engineering specifically designed for AI workloadsfeature pipelines, training data preparation, model serving infrastructure, and real-time inference feeds. We connect, transform, and structure your data for what AI models actually need. Feature engineering, data versioning, and ML-ready transformations included. 

Feature pipelines — for ML model training
Real-time — inference-ready data feeds

Data Labeling Services

Training data that makes AI actually work.

Domain-specific data labeling and annotation services for AI/ML model trainingtext annotation, image/video labeling, entity extraction, sentiment tagging, and custom taxonomy development. Quality assurance workflows and vertical expertise in BFSI, Retail, and Telco ensure training data that reflects real-world complexity. 

Scaled labeling capacity
Domain expertise — Financial Services, Retail, Telco, Healthcare

Data Migration

Migrate to infrastructure built for AI workloads.

Data migration with AI as the destination — not just cloud migration, but migration to platforms optimised for ML training, feature stores, and model serving. Databricks ML, Snowflake ML, Vertex AI, and SageMaker implementations with AI workload requirements built into architecture from day one. 

AI-optimised, not just cloud-migrated
ML platforms: Databricks ML, Vertex AI, SageMaker

GenAI Guardrails & AI Governance

GenAI without governance is a liability, not an asset.

Governance frameworks specifically designed for GenAI and AI agent deploymentshallucination prevention, compliance filters, prompt injection protection, output validation, and explainability requirements. Goes beyond general data governance to address AI-specific risks that regulators and boards are asking about. 

Hallucination prevention — compliance filters, output validation
0 %
governance coverage for GenAI deployments

AI/ML Ops

Get AI from pilot to production at scale.

Operationalisation of AI/ML models — model deployment, performance monitoring, drift detection, automated retraining pipelines, and feature store management. The last mile that turns trained models into business value. Integrated with ADA’s AI accelerators and composable architecture. 

Production-grade — AI operations at scale
Drift detection — automated retraining pipelines

How it works

Assess

Data audit, AI readiness scorecard, governance gap analysis, and use case prioritisation. We find what’s blocking your AI before you spend on solutions that won’t work.

Design

Architecture planning for AI workloads, governance framework, migration roadmap, and labeling taxonomy. The blueprint for AI-ready data that actually scales.

Engineer

Feature pipeline development, training data preparation, data labeling operations, and ML infrastructure setup. Turning your data into what AI models actually need.

Govern

GenAI guardrails, hallucination prevention, compliance filters, and explainability frameworks. The layer that prevents AI from becoming a liability.

Operate

Model deployment, performance monitoring, drift detection, and automated retraining. Continuous AI operations that keep models working in production.

Assess

Data audit, AI readiness scorecard, governance gap analysis, and use case prioritisation. We find what’s blocking your AI before you spend on solutions that won’t work.

Design

Architecture planning for AI workloads, governance framework, migration roadmap, and labeling taxonomy. The blueprint for AI-ready data that actually scales.

Engineer

Feature pipeline development, training data preparation, data labeling operations, and ML infrastructure setup. Turning your data into what AI models actually need.

Govern

GenAI guardrails, hallucination prevention, compliance filters, and explainability frameworks. The layer that prevents AI from becoming a liability.

Operate

Model deployment, performance monitoring, drift detection, and automated retraining. Continuous AI operations that keep models working in production.

Built for your industry. Designed for AI that works.

Vertical-specific AI data foundations with governance and compliance built in.

Financial Services

Customer Data for AI 

Compliance-embedded governance for regulated AI. 

Financial services AI faces unique challenges: models must be explainable to regulators, training data must be auditable, and GenAI must not hallucinate on financial advice. We build AI-ready data foundations with compliance embedded — from feature stores for credit risk models to GenAI guardrails that prevent regulatory violations. Your AI that satisfies both data scientists and compliance officers. 

Key Use Cases: 

  • Feature stores for credit risk and fraud models 
  • Explainability frameworks for regulatory requirements 
  • GenAI guardrails for customer-facing AI (no hallucinated financial advice) 
  • Training data preparation for propensity and risk models 
  • AI governance for model audit trails 

Compliance-embedded — AI governance for regulators | Explainability — for model audit trails 

Retail

 Data for AI 

AI that understands products, customers, and commerce. 

Retail AI needs data that understands commerce context — product attributes, customer behaviour, inventory dynamics, and seasonal patterns. We engineer data specifically for retail AI use cases: recommendation engines, demand forecasting, dynamic pricing, and personalisation models. Training data that reflects how retail actually works. 

Key Use Cases: 

  • Feature engineering for recommendation engines 
  • Training data for demand forecasting models 
  • Data pipelines for dynamic pricing AI 
  • Product attribute extraction and labeling 
  • Real-time inference feeds for personalisation 

Commerce-aware — AI data for retail context | Real-time — inference-ready for personalisation 

Telecommunications

Customer Data for AI 

AI for churn, upsell, and network optimisation. 

Telcos have massive data assets perfect for AI — subscriber behaviour, network usage, service interactions — but it’s trapped in legacy systems and siloed formats. We engineer AI-ready subscriber data for churn prediction, upsell propensity, network optimisation, and even data monetisation. From BSS/OSS extraction to production ML pipelines. 

Key Use Cases: 

  • Feature stores for churn and upsell models 
  • Data engineering from BSS/OSS systems for AI 
  • Training data for network optimisation AI 
  • Real-time inference pipelines for next-best-action 
  • AI governance for subscriber data usage 

Scale-ready — high-volume telco data for AI | Real-time — inference pipelines for activation 

Customer Stories

See all customer stories
How a Global Media Group Built AI-powered Creative Generation with Governed Data 
Consumer Goods Data For AI

How a Global Media Group Built AI-powered Creative Generation with Governed Data 

Where every touchpoint earns trust, every interaction creates value, and every decision is powered by realtime insight.
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Engagement
How PepsiCo Built AI-ready Data for Manufacturing Intelligence 
Consumer Goods Data For AI

How PepsiCo Built AI-ready Data for Manufacturing Intelligence 

Where every touchpoint earns trust, every interaction creates value, and every decision is powered by realtime insight.
See full story
0 %
Batch Deviation Addressed
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