Transforming Banking with Generative AI
Kohima AI delivers enterprise-grade AI solutions purpose-built for Australian financial services. We start simple, learn from your domain experts and then personalise our AI led solutions to align to your values and business objective. Our products reduces regulatory analysis time by upto 60% while ensuring compliance with APRA, ASIC, and AUSTRAC requirements.
Some of the questions we are helping to answer for Australian executives are
- Are we doing what APRA expects from the board members?
- How can we strengthen our Financial crime protection program and avoid hefty fines from Austrac?
- Is GenAI a trojan horse? What enablers, harness and playbook do we need to ride it well? These solutions form our product suit - “Boardroom AGI” built to embed AI powered governance intelligence in Australian banking.
Regulatory Analysis - CPS 230 Assistant
RAG-based operational risk intelligence for Australian prudential standards
BCP Meeting Analysis
Automated trigger detection from business continuity planning discussions
Safe by Design - AI RIsks Demo
Constitutional AI security testing and evaluation workbench
Insights & Resources
Latest articles on AI implementation in Australian banking
Why Kohima AI?
🏦 Built for Australian Banking
🏦 Built for Australian Banking
Purpose-built for Australian prudential standards (APRA CPS 230, ASIC regulations) with deep understanding of local regulatory requirements.Key Differentiators:
- AUSTRAC compliance frameworks
- Australian financial regulation expertise
- Privacy Act adherence
- Local data sovereignty
⚡ Proven Impact
⚡ Proven Impact
Deliver measurable outcomes that transform compliance operations and reduce regulatory burden.Quantified Results:
- 90% reduction in regulatory analysis time
- 42% time savings for C-suite executives on compliance matters
- Real-time regulatory change detection
- Automated compliance documentation
🔒 Enterprise Security
🔒 Enterprise Security
Bank-grade security with transparent operational policies and industry-leading standards.Security Features:
- Anthropic Claude-powered LLMs
- End-to-end encryption
- Audit trail generation
- Multi-factor authentication ready
🤖 Advanced AI Architecture
🤖 Advanced AI Architecture
State-of-the-art RAG systems, Constitutional AI, and agent-based frameworks.Technical Capabilities:
- Retrieval-Augmented Generation (RAG) for regulatory documents
- Vector databases optimized for financial services
- Constitutional AI safety controls
- Multi-stage query processing
- Contextual embeddings (768-1024 dimensions)
Our Solutions
- Regulatory Compliance
- Risk Management
- AI Safety
- AML & Transaction Monitoring
🔐 Regulatory Analysis Platform
Transform how your organization handles regulatory compliance with AI-powered analysis of Australian banking regulations.Core Features:- Comprehensive Coverage: APRA, ASIC, AML/CTF regulations
- Citation Tracking: Full audit trails with source references
- Real-time Updates: Monitor regulatory changes as they happen
- Impact Assessment: Automated analysis of regulatory implications
- Mortgage lending compliance (APRA prudential standards)
- Consumer credit compliance analysis
- Regulatory change impact assessment
- Executive briefing automation
Getting Started
Explore Solutions
Review our AI-powered compliance solutions to identify the best fit for your organization’s needs
Trusted by Financial Institutions
Enterprise Ready: Our solutions are designed for regulated financial institutions with strict security, compliance, and governance requirements. All platforms integrate seamlessly with existing IT infrastructure.
Latest Insights
Stay updated with our latest articles on AI implementation in Australian banking:Enterprise Gen AI Framework
15 frameworks for scaling from POC to production
AML Transaction Monitoring
Comprehensive remediation guide for AUSTRAC compliance
CPS 230 Compliance
Practical guide for AI systems in banking
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