Role:
Senior Associate – Data Science & Machine Learning
Experience:
5 to 8 Years
Work Mode:
Hybrid (3 days office per week)
Location:
Gurugram (GGN)/Bengaluru (BEN)
Notice Period:
Immediate to 2 weeks ONLY
Employment Type:
Full-Time
About the Role
We are seeking an experienced
Data Science & Machine Learning Engineer
who can design, build, and deploy advanced ML and AI-driven solutions. This role demands deep technical expertise in ML algorithms, deep learning architectures, LLMs, and model operationalization on cloud platforms.
Key Responsibilities
-
Build predictive models using classification, regression, clustering, and time-series techniques.
-
Perform feature engineering, algorithm selection, hyperparameter tuning, and model evaluation.
-
Build
deep learning models
using PyTorch or TensorFlow (CNNs, RNNs, transformers).
-
Develop
GenAI applications
using embeddings, LLMs, prompt engineering, RAG pipelines, LangChain, LlamaIndex, HuggingFace models.
-
Design and implement
end-to-end ML pipelines
from ingestion to deployment.
-
Build scalable data pipelines and work with cloud-based ML platforms (AWS/GCP/Azure ML).
-
Deploy, monitor, and maintain ML models using
MLOps tools
and CI/CD workflows.
-
Work closely with product and engineering teams to integrate ML solutions.
Must-Have Skills
-
Strong fundamentals:
Statistics, Probability, Linear Algebra, Optimization
-
Machine Learning:
-
Classification, Regression, Clustering
-
Model evaluation (AUC, F1, Recall, ROC curves)
-
Cross-validation, bias-variance trade-off
-
Deep Learning:
-
CNNs, RNNs, Transformers
-
Hands-on PyTorch / TensorFlow
-
GenAI & NLP:
-
LLMs (GPT, LLaMA, Claude, etc.)
-
Embeddings, RAG, vector databases
-
Prompt engineering, model fine-tuning
-
Programming:
-
Python (NumPy, Pandas, Scikit-learn)
-
PyTorch/TensorFlow
-
SQL
-
MLOps:
-
CI/CD
-
Model deployment & monitoring
-
Lifecycle management
-
Version control (Git) and cloud ML platforms (AWS/GCP/Azure)
Good to Have
-
Experience with Hugging Face models
-
Knowledge of Docker/Kubernetes
-
Exposure to reinforcement learning
-
Experience with A/B testing or experimentation frameworks
Required Candidate Information
(For screening – mandatory)
-
Total Experience
-
Relevant DS/ML Experience
-
Current CTC
-
Expected CTC
-
Notice Period (
Immediate – 2 weeks only
)
-
Current Location
-
Preferred Location
-
LinkedIn Profile URL
How to Apply
Send your updated CV to:
📩
Vijay.S@xebia.com