VIVirtusa
Data Scientists ML
Hyderabad ₹50K-4 LPA Posted 25 Apr 2025
FULL TIME
Machine Learning
Numpy
XGBoost
Job Description
Job description
- The Data & Analytics team is responsible for integrating new data sources, creating data models,
- developing data dictionaries, and building machine learning models for Wholesale Bank. The
- primary objective is to design and deliver data products that assist squads at Wholesale Bank in
- achieving business outcomes and generating valuable business insights. Within this job family,
- we distinguish between Data Analysts and Data Scientists Requirements
- We are seeking a highly skilled Data Science and Machine Learning specialist with 2+ years of
- experience in Advanced Analytics, Statistical and ML model development. In this role,
- candidates will be responsible for leveraging data-driven insights and machine learning
- techniques to solve complex business problems, optimize processes, and drive innovation. The
- ideal candidate will be skilled in working with large datasets
- Key Responsibilities:
- Extract and analyze data from company databases to drive the optimization and
- enhancement of product development and marketing strategies.
- Analyze large datasets to uncover trends, patterns, and insights that can influence
- business decisions.
- Leverage predictive and AI/ML modeling techniques to enhance and optimize customer
- experience, boost revenue generation, improve ad targeting, and more.
- Design, implement, and optimize machine learning models for a wide range of
- applications such as predictive analytics, natural language processing, recommendation
- systems, and more.
- Conduct experiments to fine tune machine learning models and evaluate their
- performance using appropriate metrics. Qualifications:
- Bachelors, Master's or Ph.D in Computer Science, Data Science, Mathematics,
- Statistics, or a related field.
- 2+ years of experience in Analytics, Machine learning, Deep learning.
- Proficiency in programming languages such as Python, and familiarity with machine
- learning libraries (e.g., Numpy, Pandas, TensorFlow, Keras, PyTorch, Scikit-learn).
- Strong experience with data wrangling, cleaning, and transforming raw data into
- structured, usable formats.
- Hands on experience in developing, training, and deploying machine learning models for
- various applications (e.g., predictive analytics, recommendation systems, anomaly
- detection).
- In depth understanding of machine learning algorithms (supervised, unsupervised,
- reinforcement learning) and their appropriate use cases Good to Have:
