T3AC — Prerequisites Custom LLM

Supported AI Providers and Models

Provider

Category

Models

OpenAI

openai

gpt-5, nova-2-lite, gpt-4.1, gpt-4o, gpt-4, gpt-3.5-turbo

Anthropic (Claude)

claude

claude-3.5-sonnet-latest, claude-3.5-haiku-latest, claude-3-opus-latest

Google (Gemini)

gemini

gemini-1.5-pro, gemini-1.5-flash, gemini-2.0-flash, gemini-2.0-flash-lite, gemini-2.0-pro-exp

Mistral

mistral

mistral-large-latest

Custom LLM

customllm

User-defined (when enable_custom_llm_model is enabled)

Prerequisites of Hardware & Software

Server Requirements

  • OS: Ubuntu 20.04+ (Linux)

  • CPU: 4+ cores

  • RAM: 16 GB minimum (32+ GB recommended)

  • Disk: 100 GB free + 10–100 GB storage for embeddings

  • GPU: Based on the model matrix above

System Access

  • SSH access (terminal)

  • Admin/root rights to install software and Docker

TYPO3 Access

  • TYPO3 Backend System Administrator access

Network & Security

  • Open ports (for example: 8000, 443)

  • SSL/TLS for public endpoints

  • Firewall configuration as required

Required Software

  • Python 3.8+ with pip

  • Docker

  • NVIDIA GPU drivers and CUDA (if GPU is used)

  • Python packages: - torch - transformers - sentence-transformers - Additional packages as required

T3AC – Scope of Work (SOW) Custom AI LLM Integration

Scope Overview

  • Installation of LLM models

  • Installation of required software and libraries

  • Pre-processing of content (chunking and embedding)

  • Secure embedding storage:

    • On-premise using ChromaDB

    • Cloud-based using Pinecone

  • Deployment of on-prem open-source LLMs for RAG

  • Secure and documented FastAPI delivery

  • Daily or weekly incremental updates

  • Administrative documentation

  • Onboarding and training

Workflow & Implementation Steps

  1. Data Processing & Embedding

    • Pre-process and chunk data

    • Generate semantic embeddings (Sitemap, Website, PDF, Text, Q&A).

  2. Vector Database Integration

    • Store embeddings in ChromaDB (on-prem)

    • Store embeddings in Pinecone (cloud, if needed)

  3. LLM Deployment & API Layer

  4. Training & Handover

    • Admin and technical documentation

    • Live training sessions

    • Go-live support