Transform Your AI with RAG as a Service
Boost your AI with smarter, real-time data recall.Leverage Retrieval-Augmented Generation (RAG) to power your AI models with real-time, relevant data and improve accuracy, delivering contextual responses effortlessly.
-
Chatbot
-
AI Games
-
AI Trading BOT
-
AI CONSULTING
-
Machine Learning
-
Deep Learning
-
Generative AI
-
AI Integration
Proven Partner for Renowned Brands




























































RAG (Retrieval-Augmented Generation) Services
RAG — Take your Q&A a step further with retrieval-augmented generation. RAG-as-a-Service (Retrieval Augmented Generation-as-a-Service) combines the power of real-time knowledge retrieval with industry-specific language models to deliver accurate, context-rich, dynamic response to users across a multitude of industries.
Retrieval-Augmented Generation (RAG) Services We Offer
Search using AI and knowledge retrieval
Should you have further questions, you can elaborate on these based on the search are matched with real-time data, resulting in specific in-context queries for enterprise-level applications.
Smart Chatbots & Virtual Assistants
Adopt intelligent AI chatbots that serve answers and insights, powered by real-time domain knowledge.
Content Generation Based on Personalization
Use AI to generate tailor-made content, summaries, and reports pulled from contemporary knowledge sources as reference materials.
Data Refinement & Insights Extraction
This frees up data scientists for higher-level work and produces knowledge graphs that are dynamic, improving data discovery and enrichment with insights extraction, creating enhanced business intelligence.
RAG in Healthcare & Legal Domains
Streamline compliance reports, case law research, and medical knowledge retrieval to enhance decision-making.
Extractive Document Summarization
Utilize AI to analyze documents and distill salient insights, summaries, and recommendations from big datasets.
Your AI, Always in the Know
No more outdated facts or blind spots. RAG fetches fresh, relevant insights exactly when your users need them.
RAG vs Fine-Tuned Models: Which is Better for Your Business?
Choosing between Retrieval-Augmented Generation and fine-tuned models can shape your AI strategy, and here’s how to decide what fits best.
Retrieval Augmented Generation (RAG)
RAG enhances LLMs by retrieving relevant information from external sources to ground their responses in factual data.
Fine-Tuned Models
Fine-tuning adapts a pre-existing LLM to a specific dataset, improving its performance on targeted tasks.
RAG vs. Fine-Tuning
RAG offers dynamic, context-aware responses, while fine-tuning provides task-specific optimization.
RAG as a Service for Various Industries
Healthcare
AI-powered diagnostics patient insights, and medical knowledge bases.
Legal
Legal case law research, summaries of contracts,compliance automation.
Finance
Market analysis in real-time,fraud detection, personalized advisory.
E-Commerce
Intelligent product suggestions, AI-backed customer support.
Education
Automated assessments,AI tutors, personalized learning materials.
Media & Publishing
Automated content curation & intelligent news summarization.
Context That Clicks in Every Industry
Whether you’re in law, healthcare, or e-commerce, our RAG framework adapts to your workflows and data effortlessly.

How We Construct Intelligent RAG Solutions
Since your business might have specific query needs, we define the queries the way
it best suits your business.


SOLUTIONS
Problem Analysis & Knowledge Source Identification
Define the AI objective and relevant knowledge bases (structured/unstructured data, databases, APIs).
Training and Customization of Model
Use domain-specific datasets to train large language models (LLMs) for high relevance.
Integration of Retrieval Mechanism
Retrieving data streams with vector search, knowledge graphs, and embedding models.
Deployment & Fine-Tuning of System
Deploy scalable RAG solutions, optimizing latency, response accuracy, and security.
Continuous Learning & Refinement
Ensure ongoing improvements using feedback loops and model fine-tuning.
How We Implement RAG: Step-by-Step for Business Impact
Requirement gathering & use case definition
Understand client needs, and define data sources.
Understand client needs, and define data sources.
Use proper AI models and train them to find predictions.
Testing & Optimization
Verifying everything is working correctly, in time, and in the real world.

Data Processing & Preprocessing
Formatting and cleaning of data for reusable object retrieval
System Integration
Integrating and deploying RAG into the client’s infrastructure and/or cloud environment.
Deployment & Continuous Improvement
Implementing and iterating the system based on user feedback.
Technology stack we used
OpenAI GPT-4
LLaMA
Falcon AI
DALLE
Stable Diffusion
Midjourney
Whisper AI
PyTorch
Anthropic Claude AI
Python
JavaScript
TensorFlow
AWS
Google Cloud AI
PostgreSQL
MongoDB
Redis
Azure AI
services
Decreased Manual Workload
Automation of data retrieval and data analysis reduces costs by 50%.
Increased Efficiency
Due to real-time AI insights, decision-making in businesses gets faster by 30–40%.
Enhanced Customer Satisfaction
AI-powered support improves engagement and cuts down response time by 60%.
No Hidden Costs, Just Clear ROI
Know exactly what you’re paying for. Our RAG services are priced with full transparency and zero hidden fees.
Challenges & Solutions in Implementing RAG
Challenge | Solutions |
---|---|
Data Privacy Concerns | Encrypt all information; Ensure GDPR-compliant security techniques |
Model Hallucinations | Fine-tune using robust, reality-grounded external knowledge sources. |
Retrieval Latency | Parallelization, Vector DBs, Cosine similarity, Hierarchical skip lists. |
Cloud-Based RAG | Overview, Usage, Advantages, Cost, and more |
Potential Business Outcomes with our AI Integration?
Real-Time Knowledge Retrieval
Always up-to-date, which means AI-based content will be relevant.
Higher Accuracy & Contextual Awareness
AI is grounded with real data, eliminating hallucinations in response.
Scalable & Customizable
Tailor RAG models for your industry requirements and business-specific datasets.
Cost & Time Efficiency
Save on time and manual effort in sourcing data and generating content.
Better User Engagement
Deliver smart, relevant experiences across channels.
Stay Sharp with RAG-Powered AI Solutions!
Got big ideas but need smarter retrieval? Our RAG experts fuse NLP with real-time data fetching to build AI that’s always relevant and razor-accurate.
Got questions? We have answers!
RAG (Retrieval-Augmented Generation) is an AI framework that supplements regular language models with up-to-date source information retrieved from external sources. This enables responses to be much more accurate, relevant, and context-sensitive than traditional AI models.
Classical AI systems depend on pre-trained data, which may quickly become stale. On the other hand, RAG-enabled AI pulls up live data from databases, APIs, or the web, making sure the responses are much more accurate and up to date.
- ✔ Enhanced context understanding and precision
- ✔ Zero AI hallucinations: responses are based on real data
- ✔ Data up to October 2023 along with current information retrieval
- ✔ Adjustable for various sectors and corporate applications
- ✔ Bot, search, document, and content processing/creation improvement
- Finding relevant sources of knowledge (APIs, databases, documents)
- Training AI to Find and Digest Information
- Example: using the model with live search and indexing systems
- Efficiency in Response, Context-Based Accuracy
RAG-powered AI has potential applications in healthcare, finance, e-commerce, legal, media, education, and customer support—making information retrieval, decision-making, and automation smarter and more efficient.
We utilize advanced LLMs (GPT-4, LLaMA, PaLM), vector databases (FAISS, Pinecone), knowledge graphs (Neo4j, Amazon Neptune), and retrieval frameworks (ElasticSearch, OpenSearch).
- Data privacy & security risks – handled with encryption and access controls
- Response time latency – optimized via vector search and indexing
- Implementation cost – reduced through cloud-based RAGs
Costs depend on data complexity, integration variety, and model customization. ROI analysis can highlight the business value.
Yes. RAG enhances existing chatbots, knowledge bases, search engines, and decision-support systems.
Start with a consultation to see how RAG-powered AI can transform your workflows and intelligence operations.
Get Estimate
Let’s create something extraordinary. Connect with Sunrise Technologies today!
Our Locations

Sydney
MLC Centre, 19-29 Martin Place, Sydney, Australia 2000
Perth
56 Palmerston St, Perth-WA, Australia 6000
Dubai
Binary Tower, 20th Floor, Office Number 96, Business Bay, Dubai, UAE
Melbourne
14 Mason Street, Melbourne, VIC, Australia 3175
Chennai, India
Level 7, 143, MGR Main Rd, Perungudi, Chennai, India 600096
Brisbane
80 Ann, Brisbane, QLD, Australia 4000