5 to 8 years of Industry Experience in software development
We are looking for a Senior Data Scientist with 5-8 years of experience to lead the development and deployment of advanced machine learning and deep learning solutions. The ideal candidate should be hands-on with Python, PyTorch, and modern ML practices, and must have experience in technically mentoring a team of data scientists.
As a Senior Data Scientist, you will work closely with cross-functional teams
to deliver end-to-end AI/ML projects and ensure scalable, maintainable
solutions.
Key Responsibilities:
Lead and contribute to the
design, development, and deployment of machine learning and deep learning
models.
Collaborate with product
managers, software engineers, and stakeholders to define project goals and
deliverables.
Ensure reproducibility,
scalability, and maintainability of ML pipelines.
Translate business requirements
into well-architected data science solutions.
Mentor and provide technical
guidance to a team of data scientists and ML engineers.
Conduct code reviews, encourage
best practices in ML and software engineering.
Develop and maintain model
training pipelines using Docker, Git, and CI/CD practices.
Communicate findings and
recommendations through presentations and technical documentation.
Must-Have Skills:
Programming: Proficient in Python
with efficient usage of supporting libraries like numpy, pandas, etc. Hands-on
experience in ML/DL frameworks like Scikit-learn, PyTorch.
Machine Learning & Deep
Learning: Strong understanding of supervised/unsupervised learning, neural
networks, computer vision, and model evaluation, Fundamentals of Statistics,
Designing models.
Data Handling: Solid experience
with SQL and working with structured/unstructured data.
Tools & Platforms:
Familiarity with Git, Docker, and Linux environments.
Leadership: Demonstrated
experience in technically leading and mentoring a team of data scientists or ML
engineers.
Knowledge of latest state of the
art in AI
Exposure to MLOps tools like
MLflow, or similar.
Experience working with vision,
image data.
Experience with cloud platforms
(AWS, GCP, or Azure).
Contributions to open-source
projects or research publications.
Knowledge of data engineering
practices and distributed computing frameworks like Spark.