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ML Engineer (Classical ML + GenAI)

ThinkWise Consulting LLP

2 - 5 years

Hyderabad

Posted: 06/05/2026

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Job Description

ML Engineer (Classical ML + GenAI)

Location - Hyderabad

Experience - 4+ years


This role delivers AI use cases from first principles to production. The profile spans classical ML (predictive modelling, process optimisation) and GenAI (LLM-powered applications, RAG, agents) not a specialist in one, but genuinely capable across both. The defining quality is the ability to take a business problem, select the right technical approach, and see it through to a reliable, deployed product not just a proof of concept.


CORE RESPONSIBILITIES

Own the full technical lifecycle of AI use cases: problem and mvp scoping data analysis model/application development pilot productionisation

Build GenAI applications: RAG pipelines, LLM-powered features, agents, and prompt orchestration workflows for classical and more manufacturing related use cases

Build and productionise classical ML and Deep Learning models for manufacturing use cases (e.g., predictive maintenance, smart allocation, predictive DFM )

Evaluate and iterate define success metrics, run experiments, measure model and application performance in production


KEY SKILLS

Classical ML and Deep Learning experience

GenAI: LLM APIs,RAG patterns, LangChain / LlamaIndex, fine-tuning, prompt engineering at scale Data: can prepare their own datasets, experience in data processing for structured and highly unstructured data

Productionisation: writing clean, testable code; working with Docker; understanding how their models will be served

Evaluation mindset: knows how to define and measure quality for both ML models and GenAI applications


WHAT GOOD LOOKS LIKE

Has taken at least one classical ML use case, one Deep Learning and one complex GenAI use case from prototype to production

Can write production-quality code and understands what it takes to deploy reliably

Comfortable with ambiguity in problem definition can scope progressive MVP scopes to allow early value

Good engineering instincts: doesn't over-engineer, but doesn't produce fragile one-off scripts either

Would be great if the candidate has some experience in applying AI to complex engineering data (e.g., 3D geometries, complex documents)


WHAT THIS ROLE IS NOT

Not a pure research scientist the bar is production delivery, not publication Not an LLM specialist only

classical ML and DL use cases are equally in scope and require genuine capability on diverse data and use cases

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