Gen AI Lab Package for Banks
A turnkey program that lets your bank establish its own secure, internal AI environment — infrastructure, software, an operational LLM and the people skills to run it. Everything you need to start delivering Generative and Agentic AI use cases from inside the bank’s perimeter.
AI Platform Capacity
CONCURRENT USERS
~225 users
Combined capacity for bank-wide AI services
MODEL CAPACITY
Up to 200B+
Parameter LLMs frontier & foundation models
AI PERFORMANCE
~21 PFLOPS
Aggregate FP4 inference throughput
WORKLOAD COVERAGE
Inference + Tuning
RAG, Agentic AI and on-device fine-tuning
SCALABILITY
Up to 4 units
Linear growth as adoption expands
Software Environment
Software installation
All required packages and dependencies installed and prepared to run the AI environment.
Environment setup
System and security settings configured to match the bank's operational standards.
Database preparation
Databases provisioned and prepared to support the AI workloads inside the bank.
Network connections
Connectivity established with the bank's internal network, fully on-premise.
LLM Use Case Deployment
RAG Use Case
Smartera 3S delivers one practical banking AI use case directly inside the bank — a Retrieval-Augmented Generation (RAG) assistant that answers natural-language questions by retrieving grounded information from the bank’s own knowledge sources. The use case is shaped around banking realities — policies, procedures, product manuals, regulatory references and operational knowledge — so the bank starts seeing value from day one rather than from a pilot that never ships.
- Grounded answers sourced from the bank's own documents
- Banking-tailored — policies, products, procedures, regulations
- On-premise deployment — no data leaves the bank's perimeter
- Operational handover with documentation and runbook
Technical Enablement
Maximizing Business Value from AI
For executives, business owners, product and strategy teams — focused on translating AI capabilities into measurable banking outcomes.
- AI use-case discovery & prioritization
- ROI, KPIs and value realization
- Operating model & governance
- Strategic roadmap for AI adoption
Developing & Operating GenAI
For data, engineering and infrastructure teams — focused on building, customizing and operating Generative AI internally.
- Agentic orchestration & tooling
- MLOps, monitoring & security
- Use-case development lifecycle