About Client :
Our Client is a global IT services company headquartered in Southborough, Massachusetts, USA. Founded in 1996, with a revenue of $1.8B, with 35,000+ associates worldwide, specializes in digital engineering, and IT services company helping clients modernize their technology infrastructure, adopt cloud and AI solutions, and accelerate innovation. It partners with major firms in banking, healthcare, telecom, and media.
Our Client is known for combining deep industry expertise with agile development practices, enabling scalable and cost-effective digital transformation. The company operates in over 50 locations across more than 25 countries, has delivery centers in Asia, Europe, and North America and is backed by Baring Private Equity Asia.
Job Title : ML Engineer
Experience Level : 8-15 Years
Job Location : Hyderabad
Budget : 2,00,000 Per Month
Job Type : Contract
Work Mode : Remote
Notice Period : Immediate Joiners
Client : CMMI Level 5
Job Description :
We are seeking a highly motivated and experienced ML Manager / Lead Data Scientist to join our
growing ML / GenAI team.
You will play a key role in designing, developing and productionalizing ML / GenAI applications by
evaluating models, training and / or fine tuning them. As a lead, you require a deep
understanding of both machine learning algorithms and software architecture. You need to take
ownership of projects from conception to deployment, collaborating with engineers and
stakeholders to ensure successful project delivery.
What we're looking for :
and deploying them into production
performant applications for customers.
members)
AI.
prompt development, including data cleaning, transformation, and augmentation.
improve LLM performance.
Generative AI solutions. This includes designing RAG (Retrieval-Augmented Generation)
pipelines, agentic workflows, and model fine-tuning strategies.
platform involving data warehouses, machine learning platforms, dashboards or CRM
tools.
exploratory data analysis, dealing outliers, handling imbalances, analyzing data
distributions (univariate, bivariate, multivariate), transforming numerical and categorical
data into features, feature selection, model selection, model training and deployment.
includes building core components for prompt engineering, vector search, data
processing, model evaluation, and inference serving.
environments for real life applications
learning techniques.
TensorFlow, PyTorch, Scikit-learn, LangChain).
services.
Good to Have
Developer certifications or equivalent.
Azure.
Ml Engineer • Tirupati, IN