You will get World-class Healthcare Search Engine powered by Gen AI

Vivek S.Status: Offline
Vivek S. Vivek S.
4.7
Top Rated

Let a pro handle the details

Buy Generative AI services from Vivek, priced and ready to go.
Vivek S.Status: Offline
Vivek S. Vivek S.
4.7
Top Rated

Let a pro handle the details

Buy Generative AI services from Vivek, priced and ready to go.

Project details

CellBot is a unique and sophisticated Health Search Engine that is powered by Generative AI and LLMs. CellBot takes in any kind of health or pharma topic that you chose to provide and pulls matching information from world's leading health data repositories. Then the user can ask any questions on these topics and get accurate answers to their queries.

CellBot will enable a suite of medical and pharma workflows in healthcare, pharma research, drug discovery and more.

Key Project Components:

1) Custom LLM Model Usage: Leverage state-of-the-art Language Models to enhance the intelligence and natural language understanding of the chatbot.

2) Model Fine Tuning: Tailor the model to suit specific project requirements, ensuring optimal performance and relevance.

3) Chat Interface: Design an intuitive and user-friendly chat interface for seamless interaction between users and the chatbot.

4) Custom Embedding Usage: Implement custom embeddings to enhance the representation of textual data.

5) Retrieval QA Addon (Document Search): Integrate a powerful Document Search feature using Retrieval QnA to provide users with precise information.
AI Algorithms
Large Language Model, Multimodal Large Language Model, Transformer Model
AI Applications
AI Chatbot, AI Text-to-Speech, AIOps, Automatic Speech Recognition, Conversational AI, Natural Language Generation, Natural Language Understanding, Text Recognition
AI Development Language
Python
AI Tools
PyTorch, TensorFlow, Word2vec
AI Models
ChatGPT, GPT-4, LLaMA, Whisper
What's included
Service Tiers Starter
$100
Standard
$1,500
Advanced
$4,000
Delivery Time 3 days 30 days 70 days
Number of Revisions
013
AI Model Integration
Batch Normalization
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Database Integration
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Detailed Code Comments
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Image Upscaling
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MLOps
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Model Deployment
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Model Documentation
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Model Monitoring
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Model Testing & Optimization
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Model Tuning
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Natural Language Processing
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NLP Tokenization
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Pre-Training
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Prompt Engineering
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Setup File
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Source Code
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Optional add-ons You can add these on the next page.
Additional Revision
+$1,000
4.7
4 reviews
75% Complete
25% Complete
1% Complete
(0)
1% Complete
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1% Complete
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AP

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4.85
Jan 2, 2024
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SJ

Sunil J.
5.00
Jan 30, 2023
Email subject detection and response automation using GPT3 It was a pleasure to work with Vivek and happy with the work done which met all our requirements.

AM

Amol M.
5.00
Jan 24, 2023
Need to Deploy AI model from Huggingface to Aws sagemaker Proactive and Quick

OA

Orlando A.
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Jan 23, 2023
Machine Learning Expert for Image Classification Consulting Project
Vivek S.Status: Offline

About Vivek

Vivek S.Status: Offline
Senior Full-Stack Engineer | GenAI, LLM, RAG, FastAPI, AWS | SaaS
100% Job Success
4.7  (4 reviews)
Bengaluru, India - 2:23 pm local time
Those who build intelligent product features WITHOUT modern development tooling and production-grade backend architecture usually see fragile systems and expensive rewrites. I do it differently.

Clients contact me when they face below:
• Their LLM feature works but isn’t stable
• A RAG pipeline needs proper backend integration
• An AI prototype must become production-ready
• Performance and scalability issues are emerging
• They need a senior engineer who can join an ongoing project and take ownership

I specialize in designing and deploying Gen AI systems integrated into clean full-stack architecture. My focus is not experimentation it’s production.

Core Specialization
• Generative AI application development
• Large Language Model (LLM) systems
• Retrieval-Augmented Generation (RAG) pipelines
• Agentic workflows (LangGraph-based orchestration)
• Vector database integration (Pinecone, Weaviate, FAISS)
• Structured output validation and evaluation systems
• SaaS backend architecture
• API-first full-stack engineering
• AWS cloud deployment

Planning & Product Structuring:
• Linear
• Framer AI

Engineering & Implementation:
• Cursor
• Claude Code
• GitHub Copilot
• Replit

Backend Architecture & API Layer:
• Python
• FastAPI
• PostgreSQL
• Supabase
• Firebase
• REST APIs
• OpenAPI
• Async Architecture

Frontend & Deployment:
• Tailwind CSS
• Modern Component Frameworks
• Vercel

Cloud Infrastructure & Scalability:
• AWS (S3, EC2, Lambda, App Runner, Bedrock)
• Docker
• CI/CD Pipelines
• Multi-Tenant SaaS Architecture

Monitoring & Production Reliability:
• Sentry
• Structured Logging
• Observability Systems

What I Build:
• LLM-powered SaaS features
• RAG-based knowledge systems
• Multi-step agent workflows
• Document intelligence and automation tools
• AI copilots integrated into existing platforms
• Full-stack SaaS platforms with Generative AI layers
• Backend restructuring for AI-enabled products

I work primarily with funded startups and mid-size product companies.

My Typical engagements include:
• Joining an active engineering team as senior backend/AI lead
• Hardening LLM and RAG systems before scale
• Designing full-stack architecture for new AI features
• Refactoring unstable AI integrations
• Leading backend modernization for SaaS products

I’m comfortable stepping into ongoing projects, reviewing codebases, and stabilizing systems quickly.

If you’re experimenting with AI concepts, there are many lower-cost options available.

If you’re building AI-enabled SaaS features that need to handle real users, real data, and real scale senior architecture matters.

I focus on long-term maintainability, measurable performance, and clean engineering.

Share your current stack, your AI roadmap, and the bottlenecks you’re facing. I’ll evaluate it and propose a structured approach.

Steps for completing your project

After purchasing the project, send requirements so Vivek can start the project.

Delivery time starts when Vivek receives requirements from you.

Vivek works on your project following the steps below.

Revisions may occur after the delivery date.

Clear requirements

Clear requirements for the project

Data

Appropriate data as per requirements

Review the work, release payment, and leave feedback to Vivek.