Model Customization

LLM Fine-tuning & Custom Models

Adapt foundation models to speak your domain’s language precisely.

Core Capabilities

LLM Fine-Tuning Services for Every Industry

From single-domain model adaptation to enterprise fine-tuning pipelines — custom AI models that work in production, not just in proof-of-concept demos.

Domain-Specific-LLM-Fine-Tuning

Domain-Specific LLM Fine-Tuning

Adapt foundation models to your exact domain using supervised fine-tuning on your proprietary datasets — legal, medical, finance, or engineering, where generic outputs are not good enough. 

  • Proprietary dataset training  
  • Domain-accurate outputs  
  • Any vertical or industry 
Instruction-Fine-Tuning-&-Alignment

Instruction Fine-Tuning & Alignment

Train your model to follow your specific instructions, produce outputs in your required format, and refuse responses outside your defined scope — RLHF and RLAIF alignment included where quality demands it. 

  • Custom instruction following  
  • Output format control  
  • RLHF & RLAIF alignment 
Brand-Voice-&-Tone-Fine-Tuning

Brand Voice & Tone Fine-Tuning

Build a model that generates content in your exact brand style, terminology, and tone — without prompt engineering gymnastics. Consistent output across every touchpoint, every time. 

  • Brand-consistent outputs  
  • Tone & style control  
  • No prompt engineering needed 
Code-Generation-Model-Fine-Tuning

Code Generation Model Fine-Tuning

Fine-tune code generation models on your proprietary codebase, internal libraries, and coding conventions — developers get an AI pair programmer that already knows your stack. 

  • Codebase-aware model  
  • Internal library training  
  • Convention-matched output 
Multilingual-&-Regional-Language-Fine-Tuning

Multilingual & Regional Language Fine-Tuning

Adapt models for regional languages, dialects, and industry-specific vocabulary that generic multilingual models handle poorly — Urdu, Arabic, and low-resource language fine-tuning available. 

  • Regional language support  
  • Dialect & vocabulary tuning  
  • Low-resource languages
Document-Classification-&-Extraction-Models

Document Classification & Extraction Models

Train specialised models to extract, classify, and structure information from your specific document types — contracts, clinical notes, invoices, and regulatory filings — with accuracy general-purpose models cannot match. 

  • Contract & invoice parsing  
  • Clinical note extraction  
  • Regulatory filing structure 
Real-World Applications

Built for Clients. Shipped to Production.

From autonomous document processors to intelligent enterprise platforms – here is what we have delivered.
View All Case Studies
Credit & Lending

AI Credit Underwriting Platform - Fintech SaaS

An SME lender deployed a six-stage AI agent pipeline from document ingestion to explainable decisions. Analysts review flagged cases only. Fast decisions, consistent underwriting, and full FCA audit compliance.

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AI Credit Underwriting
AI Infrastructure

LLM Routing Platform - Cost, Quality & Latency Optimisation

Task-aware routing classifies requests, estimates complexity, and selects optimal models via LiteLLM. All decisions are logged while dashboards provide visibility and optimisation.

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LLM Routing Platform
Government & Public Sector

On-Premise LLM & RAG Platform - Government Enterprise AI

An on-premise LLM on NVIDIA DGX hardware with a secure RAG pipeline over internal data. Staff query in natural language with zero data leakage.

View Case Study →
Government AI Platform
How It Works

From Use Case to Production

No black boxes. No surprises. Working agents in your hands, sprint by sprint.

Data Audit & Curation

Step 1
We assess your raw business data, clean and format it to training standards, and flag gaps before a single training run begins — garbage-in prevention is where model quality is won or lost.

Baseline Evaluation

Step 2
We benchmark the best available foundation model against your actual tasks — giving you an honest performance baseline and defining exactly what the fine-tuned model needs to beat.

Fine-Tuning & Alignment

Step 3
Supervised fine-tuning using LoRA, QLoRA, or full fine-tuning based on your model size, compute budget, and accuracy requirements — RLHF applied where outputs need to align with human quality judgements.

Domain Benchmarking & Human Evaluation

Step 4
The fine-tuned model is evaluated against domain-specific benchmarks and human reviewers from your team — not generic leaderboards, but performance on the exact tasks you need the model to do.

Deployment & Infrastructure Setup

Step 5
Your model is deployed on your cloud or private on-premises environment. No fine-tuned weights leave your control. Monitoring, versioning, and rollback are configured from day one. 100% model ownership transferred.

Reach Out

Contact Us

Contact us (#6)

We typically respond within 24 hours.