Claude Adoption

Claude AI Automation

Move to AWS. Automate with Claude.
Scale Without Limits.

Legacy Infrastructure Is Holding Your Business Back

Most enterprises are running critical operations on aging on-premise systems, manual approval chains, and disconnected toolsets, consuming budget and talent that should be driving growt

Trusted by enterprises across regulated industries

40%
Average infrastructure
cost reduction post-migration
70%
Reduction in manual
processing time
8 wks
Typical time to first
production deployment
3.2×
Average ROI within
12 months of go-live
The Business Challenge

Legacy Infrastructure Is Holding Your Business Back

Most enterprises are running critical operations on aging on-premise systems, manual approval chains, and disconnected toolsets — consuming budget and talent that should be driving growth.

Escalating Infrastructure Costs

Ageing data centre hardware demands constant capital expenditure on maintenance, licensing, and upgrades — with no elasticity for demand spikes.

Manual Workflows Bottlenecking Teams

Report generation, data extraction, compliance checks, and approval routing consume skilled employees in repetitive, low-value tasks that AI can handle reliably.

Fragmented, Siloed Systems

Disconnected applications and data stores prevent real-time decision-making, slow onboarding, and create inconsistent customer and employee experiences.

Inability to Scale at Speed

Fixed on-premise capacity means growth opportunities are constrained by procurement cycles. Cloud-native architecture on AWS eliminates this ceiling entirely.

The T3 Solution

Two Capabilities. One Transformation.

T3 combines AWS cloud migration expertise with Claude AI integration to modernise your infrastructure and automate the work your teams should never have been doing manually.

AWS Cloud Migration

Migrate with Zero Business Disruption

T3 plans, architects, and executes your migration to AWS — moving workloads, databases, and applications in a sequenced programme that maintains uptime throughout. We apply the AWS Cloud Adoption Framework (CAF) and Well-Architected Review to every engagement.

  • Discovery, dependency mapping & migration roadmap
  • Lift-and-shift, re-platform, or full re-architecture
  • AWS FinOps — right-sizing & cost governance from day one
  • Post-migration optimisation & team enablement
Claude AI Workflow Automation

Automate Intelligence, Not Just Tasks

Claude, developed by Anthropic, is a large language model purpose-built for safe, enterprise-grade reasoning. T3 integrates Claude via the Anthropic API into your AWS environment — automating document analysis, content generation, policy interpretation, and decision support at scale.

  • Workflow audit — identifying highest-ROI automation targets
  • Custom Claude integration into existing business applications
  • AWS Bedrock & Lambda deployment — fully managed, scalable
  • Governance controls, audit logging & human-in-the-loop design
Our Approach

A Structured Path from Legacy to Cloud-Native AI

Every T3 engagement follows a six-phase delivery model — from discovery to optimisation — with clear milestones, defined ownership, and measurable outcomes at every stage.

01
Phase 1

Discovery & Assessment

Full infrastructure audit, application dependency mapping, and workflow analysis to identify migration priorities and automation opportunities with quantified ROI.

02
Phase 2

Architecture Design

AWS target-state architecture design aligned to the Well-Architected Framework — covering networking, security, compute, storage, and AI service integration via AWS Bedrock.

03
Phase 3

Foundation Build

Establish the AWS Landing Zone — identity, networking, security baselines, and CI/CD pipelines — creating a governed foundation for all subsequent migrations and AI deployments.

04
Phase 4

Workload Migration

Sequenced migration of workloads using AWS Migration Hub — prioritised by risk and business criticality, with parallel-run validation and rollback procedures at each wave.

05
Phase 5

Claude AI Integration

Deploy Claude via AWS Bedrock or direct Anthropic API into prioritised workflows — including prompt engineering, API integration, safeguard configuration, and user acceptance testing.

06
Phase 6

Optimise & Scale

Ongoing AWS cost optimisation, Claude performance tuning, and continuous automation expansion — ensuring measurable ROI improvement quarter over quarter.

Industry Use Cases

Where AWS + Claude Delivers the Greatest Impact

Claude AI can be applied to any text-heavy, document-intensive, or decision-support workflow. Below are the most common deployment patterns across enterprise environments.

Document Processing & Extraction

Claude reads, classifies, and extracts structured data from contracts, invoices, reports, and regulatory submissions — replacing hours of manual review per document.

Internal Knowledge Assistants

Deploy Claude as a retrieval-augmented assistant over your internal documentation, policies, and knowledge bases — giving employees instant, accurate answers without IT tickets.

Compliance & Risk Summarisation

Claude monitors regulatory updates, cross-references internal policies, and generates compliance gap summaries — reducing the time compliance officers spend on preliminary analysis.

Data Pipeline Automation

AWS Lambda, Step Functions, and Claude combine to automate ETL processes, data validation, and anomaly flagging — accelerating reporting cycles from days to minutes.

HR & Onboarding Workflows

Claude handles screening question responses, generates onboarding documentation, and provides personalised policy guidance — reducing HR administrative load by up to 60%.

Executive Reporting & Briefings

Claude synthesises operational data, financial figures, and external intelligence into structured executive summaries — transforming raw data into board-ready narratives in seconds.

Enterprise AI governance and security — resilient systems built on strong foundations
Security & Governance

Enterprise-Grade Controls, Built In From Day One

Security is not a post-migration consideration at T3 — it is an architectural input. Every AWS environment we build and every Claude integration we deploy adheres to the same security and governance standards required in regulated industries.

Zero-Trust Architecture on AWS

IAM least-privilege, VPC segmentation, AWS GuardDuty, and Security Hub are configured by default across every T3-built environment.

Human-in-the-Loop AI Governance

All Claude deployments include defined approval gates, output review workflows, and audit logging — ensuring human oversight is embedded at critical decision points.

Data Residency & Privacy Compliance

AWS region selection, data classification, and Anthropic's enterprise data privacy guarantees are configured to meet UK GDPR, ISO 27001, and sector-specific requirements.

The Business Case Is Measurable

Outcomes from T3-delivered AWS migration and Claude AI automation programmes across enterprise clients.

40–60%
Infrastructure cost reduction
within 12 months
70%
Reduction in document
processing time
5× faster
Time-to-insight for
executive reporting
99.9%
Uptime SLA on AWS
production workloads
8 wks
Typical time to first
live AI workflow
Client Outcomes

What Organisations Achieve with T3

T3 Consultants team working on AI and cloud strategy

T3 migrated our entire on-premise estate to AWS in 14 weeks without a single hour of unplanned downtime. The cost savings in year one alone exceeded the full project investment. We then extended the engagement to deploy Claude across our compliance review process — what used to take a team of four analysts two days now takes 45 minutes.

Chief Technology Officer
Global Financial Services Organisation, UK

T3 brought a level of rigour to the AWS architecture that our internal team simply did not have time to develop. The Claude integration they built for our procurement team has eliminated approximately 1,200 hours of manual contract review annually. The governance framework they designed gives our board the confidence to scale AI further.

Chief Operating Officer
Multinational Retail & Logistics Group

Why T3 — Not a Generic Systems Integrator

The combination of AWS cloud architecture expertise and Anthropic Claude specialisation in a single practice is rare. T3 delivers both — with the accountability of a boutique consultancy and the technical depth of a specialist house.

Dual Specialisation

Deep expertise in both AWS architecture and Claude AI — not a generalist IT consultancy selling everything to everyone.

Outcome-Based Delivery

Every engagement has defined, measurable success criteria — cost reduction targets, automation throughput goals, and uptime SLAs — agreed before work begins.

Regulated Industry Experience

Financial services, healthcare, legal, and public sector environments require a different standard of rigour. T3 operates in these sectors daily.

Accelerated Time to Value

T3's pre-built accelerators and proven playbooks reduce discovery time, eliminate common failure modes, and shorten the path from contract to production by weeks.

Delivery Timeline

From Kick-Off to Production in 24 Weeks

A representative end-to-end timeline for a mid-enterprise AWS migration with Claude AI workflow integration. Timelines are adjusted at scoping based on estate complexity.

1
Wks 1–2
Discovery & Assessment
Infrastructure audit, dependency mapping, automation opportunity scoring
2
Wks 3–4
Architecture & Design
AWS target-state design, Landing Zone spec, Claude integration architecture
3
Wks 5–8
Foundation Build
AWS Landing Zone, IAM, networking, security controls, CI/CD pipelines live
4
Wks 9–16
Workload Migration
Wave-based migration with parallel-run validation, cutover & hypercare
5
Wks 17–22
Claude AI Integration
Agent build, prompt engineering, UAT, governance controls, first workflows live
6
Wks 23–24+
Optimise & Scale
FinOps review, Claude performance tuning, automation expansion roadmap
Week 2: Signed-off migration roadmap & automation business case
Week 8: AWS Landing Zone live — no legacy systems migrated yet, full rollback available
Week 20: First Claude AI workflow in production — measurable time savings visible
Agent Implementation

What Makes a Claude Agent Succeed in Production

Deploying Claude as an autonomous or semi-autonomous agent requires more than API access. The following conditions must be met — technically, organisationally, and operationally — before an agent can be trusted to operate reliably at scale. T3 assesses and builds every one of these foundations as part of each engagement.

Layer 1

Technical Foundations

R1
Clean, Accessible Data

Agents are only as accurate as the data they access. Source data must be structured, deduplicated, and available via a reliable API or retrieval layer (RAG). Agents operating on unvalidated or stale data will produce unreliable outputs.

R2
Defined Tool & API Boundaries

Every action an agent can take must be explicitly defined and scoped. T3 maps and validates each tool — database queries, API calls, file operations — and enforces strict permission boundaries so agents cannot exceed their intended scope.

R3
Robust Orchestration Infrastructure

AWS Step Functions, Lambda, and EventBridge provide the orchestration layer. Agents require reliable retry logic, timeout handling, error routing, and dead-letter queues — not just a direct API call in a script.

R4
Latency & Cost Budgeting

Each agent invocation carries a token cost and a latency profile. Workflows must be designed with acceptable latency thresholds, context window limits, and monthly API cost budgets agreed before deployment.

Layer 2

Governance & Safety Controls

R5
Human-in-the-Loop Checkpoints

Every consequential agent action — sending communications, modifying records, triggering payments — must pass through a defined human review gate until confidence thresholds are established and validated by operational data.

R6
Full Audit Trail & Explainability

Every agent decision, tool call, input, and output must be logged with timestamps, context snapshots, and reasoning traces. This is a regulatory requirement in financial services, healthcare, and legal sectors — not optional.

R7
Prompt Governance & Version Control

System prompts and instruction sets are treated as code — stored in version control, peer-reviewed before changes, and tested against a regression suite before production deployment. Unversioned prompts are an operational risk.

R8
Failure & Escalation Protocols

Agents must degrade gracefully. When an agent cannot complete a task with sufficient confidence, it must route to a human escalation path — not silently fail, produce a hallucinated output, or loop indefinitely.

Layer 3

Organisational Readiness

R9
Defined Use Case with Measurable Outcomes

Agents built around vague briefs fail. Every T3 agent deployment starts with a scoped use case, defined inputs and outputs, success criteria, and baseline metrics against which performance will be measured.

R10
Named Operational Owner

Every production agent must have a named business owner responsible for its outputs, a technical owner responsible for its operation, and a review cadence. Agents without owners drift, degrade, and create liability.

R11
Staff Training & Change Management

Teams that interact with agent outputs must understand what the agent can and cannot do, how to interpret its outputs, and when to override or escalate. T3 delivers targeted enablement sessions alongside every deployment.

R12
Continuous Monitoring & Review Cadence

Model behaviour evolves with API updates. Production agents require ongoing output sampling, accuracy monitoring via CloudWatch, and a quarterly review cycle to retune prompts and validate performance against changing business conditions.

Not sure if your organisation is agent-ready?

T3 offers a structured Agent Readiness Assessment — a two-week engagement that evaluates all 12 requirements, produces a gap analysis, and delivers a prioritised remediation plan before any development begins.

Ready to Modernise Your Infrastructure and Automate Your Workflows?

Book a 45-minute strategy call with a T3 consultant. We will assess your current environment, identify the highest-impact migration and automation opportunities, and outline a practical delivery roadmap, at no cost and with no obligation

Why T3 for AI Adoption?

T3 is an award-winning Responsible AI advisory and implementation partner that translates cutting-edge research into practical, safe, deployable AI systems.

  • Shaped major global standards and policy (EU AI Act, ISO/IEC 42001, NIST AI RMF, OECD AI Principles, G7 AI Code of Conduct)
  • Advised 2/3 of the world’s leading Big Tech organisations
  • Trained 50+ board members and advised 20+ governments
  • Led by senior AI operators: the founder of Google’s Responsible Innovation & Ethical ML teams (Responsible AI at scale) and Oracle’s former Chief Data Scientist (global AI/ML build-out)
  • Winner of 3 AI awards in 2025 (including AI Leader of the Year, Top 33 Women Shaping the Future of Responsible AI, and North America AI Leader of the Year)

We bridge business ambition with engineering excellence.

Book a free AI Adoption Consultation

All firms looking to reduce cost

Who does it Impact?

Our AI implementation and engineering services support organisations ready to move from experimentation to secure, scalable AI systems delivering measurable impact.

Enterprises scaling AI

Large Enterprises Scaling AI

Organisations that have piloted AI and now need structured architecture, governance and production-grade deployment to scale reliably.

Regulated industries

Financial Institutions

Banks, asset managers, and insurers requiring secure, compliant and performance-monitored AI integration within complex legacy systems.

AI-native product companies

High-Growth Fintech & AI-Enabled Firms

Product-driven companies embedding AI into their core offering and seeking scalable, optimized and well-governed infrastructure.

Business functions operationalising AI

Enterprise Business Functions

Legal, compliance, operations and HR teams operationalising defined AI use cases into stable, integrated and measurable solutions.
In The Spotlight

AI Latest Stories

At T3, we deliver AI implementation with engineering discipline, secure, scalable, measurable

Frequently Asked Questions

Change management is augmented by artificial intelligence (AI) to predict the mood of employees, identify resistance points, personalize messaging, help with training programs, and track acceptance metrics in real time. It accelerates implementation, enhances decision-making, and facilitates data-driven customization of change plans.

No, AI will assist change managers but not replace them. Human leadership is still needed to manage emotions, build trust, and work through complex organizational dynamics during transition, even as AI can automate administrative tasks, reveal insights, and suggest actions.

Artificial intelligence (AI) for change management refers to the application of AI techniques, including machine learning, natural language processing, and predictive analytics, to aid in decision-making, communication, risk management, and employee engagement in transformation efforts.

  • Understand business priority
  • Assess the saving & pain point by engaging domain leads across business units (repetitive process, error prone, high data volume, bottlenneck in decision making etc.)
  • Apply  capability mapping (pattern recognition, NLP, Computer Vision genAI)
  • Prioritise with an AI Scoring matrix
  • Prototype & test

Discover Our Services

Serving Organisations Across the UK, EU, US and Beyond

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START IMPROVING

AI Readiness

AI Strategy

AI Implementation

AI Adoption

Ready to Modernise Your Infrastructure and Automate Your Workflows?

Book a 45-minute strategy call with a T3 consultant. We will assess your current environment, identify the highest-impact migration and automation opportunities, and outline a practical delivery roadmap, at no cost and with no obligation

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