Machine Learning Engineer – Conversational AI & Personalization
Team: Technology, Information and Media
Location: Bengaluru
Commitment: Full-time
Workplace Type: onsite
Salary:
Role Overview
We are seeking a highly skilled Machine Learning Engineer to build and scale AI-powered conversational and personalization systems. This role focuses on designing robust ML architectures that integrate large language models (LLMs), retrieval systems, and recommendation engines into reliable, production-grade platforms.
You will work at the forefront of applied AI—developing multilingual NLP systems, optimizing LLM orchestration, and deploying scalable machine learning pipelines that power intelligent chat, contextual recommendations, and personalized user experiences.
The ideal candidate thrives in fast-paced environments, understands both modern LLM ecosystems and classical ML approaches, and has a strong foundation in production ML system design.
Key Responsibilities
Conversational AI & LLM Engineering
Design and deploy scalable conversational AI systems supporting multi-turn dialogue, contextual memory, and
personalization.Build and optimize LLM orchestration layers including prompt engineering, routing logic, fallback strategies, and multi-model
selection.Integrate and manage models across platforms such as OpenAI, Claude, Qwen, LLaMA, and other modern LLM
providers.Develop evaluation pipelines to measure response accuracy, contextual alignment, tone consistency, and hallucination
reduction.Optimize production systems for latency, throughput, and cost efficiency using batching, caching, and prompt optimization techniques.
Retrieval & Knowledge Augmentation
Implement and manage vector search infrastructure using tools such as Qdrant, Pinecone, FAISS, or
equivalent.Architect Retrieval-Augmented Generation (RAG) pipelines to enhance model outputs with contextual
knowledge.Work with structured and unstructured datasets to improve relevance and factual
accuracy.Design document ingestion, embedding, and indexing workflows for scalable knowledge systems.
Personalization & ML Pipelines
Build end-to-end ML pipelines for user segmentation, classification, and recommendation
systems.Develop ranking models and intelligent content transformation systems combining LLMs with traditional ML
techniques.Create adaptive personalization engines that evolve based on user behavior and contextual
signals.Ensure robust monitoring, retraining strategies, and model lifecycle management.
Multilingual NLP & Model Optimization
Fine-tune and deploy models for Hindi and multilingual Natural Language Understanding (NLU) and Natural Language Generation (NLG).Experiment with and productionize open-source LLMs such as Qwen, Mixtral, and LLaMA in low-latency
environments.Evaluate and optimize closed-source LLM performance for cost and quality
trade-offs.Implement pipelines using frameworks like LangChain, RAG toolkits, FAISS/Chroma vector stores, and multilingual translation systems such as IndicTrans2 and NLLB.
Cross-Functional Collaboration
Partner with product teams and domain experts to translate business needs into scalable ML
solutions.Contribute to system design decisions around architecture, scalability, and
deployment.Continuously benchmark, experiment, and iterate to improve model performance and system
robustness.Drive best practices in ML experimentation, evaluation, and production deployment.
Required Qualifications
5+ years of experience in Machine Learning or Applied AI
roles.Strong hands-on expertise with Large Language Models, RAG systems, and vector
databases.Proven experience building and deploying production-grade ML
systems.Proficiency in Python and ML/NLP frameworks such as PyTorch, TensorFlow, and Hugging Face
Transformers.Experience with multilingual NLP systems, particularly Indian language
processing.Deep understanding of prompt engineering, evaluation methodologies, and hallucination
mitigation.Solid knowledge of scalable system design, model serving, latency optimization, and cost-aware deployment strategies.
Core Skills
Machine Learning Engineering · Generative AI · Large Language Models (LLMs) · Retrieval-Augmented Generation (RAG) · Vector Search Systems · Multilingual NLP · Model Fine-Tuning · Recommendation Systems · Production ML Architecture · Scalable AI Systems
This role is for one of our clients :
Industry : Technology , information and Internet
Seniority level : Mid Senior
Min Experience: 5 years
Location: Bangalore
JobType: full-time