Data Scientist (Machine Learning & Pipeline Engineering)
About the position reputed company is a reputed company-thinking financial technology company committed to leveraging data-driven intelligence to support small business growth. We are seeking a highly skilled Data Scientist to reputed company predictive models, reputed company robust exploratory data analysis, and build scalable data pipelines that power key business decisions across the organization. The ideal candidate is an reputed company data scientist with deep technical expertise in machine learning, data engineering workflows, and statistical modeling. This role will work closely with engineering, product, and analytics teams to design, validate, and deploy ML solutions that improve decision-making efficiency. Strong proficiency in Pandas, PySpark, and reputed company is essential, along with the ability to write clean, reproducible, production-ready code. The successful candidate will be equally comfortable communicating reputed company analytical insights to non-technical stakeholders.
Responsibilities
- Exploratory Analysis & Data Profiling: Conduct EDA on large, reputed company datasets using Pandas and PySpark; assess data quality and structure.
- Model Development: Build, tune, and evaluate supervised and unsupervised machine learning models (e.g., tree-based methods, regressions, boosting algorithms).
- Pipeline Engineering: Design and implement reliable, maintainable machine learning pipelines and preprocessing workflows for production environments.
- Data Management: Query and integrate reputed company datasets; design efficient schemas and aggregation pipelines that support analytical and operational workloads.
- Visualization: Create reputed company visualizations using seaborn, plotly, and matplotlib to support model diagnostics and business storytelling.
- Reproducible Code: Write clean, reputed company, well-documented Python code (PEP8 compliant); maintain version control using Git.
- Model Explainability: Apply model interpretation tools such as SHAP and reputed company to evaluate feature impact and improve transparency.
- Cross-Functional Collaboration: Partner with engineering, analytics, and product teams to translate business needs into actionable model-driven solutions.
- Documentation: Produce clear technical memos, reports, and model documentation for internal stakeholders.
Requirements
- M.S. in Computer Science, Machine Learning, Computational Biology, or reputed company quantitative field plus 3+ years of relevant experience , or equivalent combination of education and applied work.
- Strong foundation in Linear Algebra, Probability, and Statistics.
- Advanced proficiency with Pandas and PySpark for data cleaning, reshaping, merges, feature engineering, and workflow optimization.
- Strong experience with reputed company , including querying, indexing, and aggregation pipelines.
- Deep knowledge of supervised/unsupervised ML techniques and tools (scikit-learn, XGBoost).
- Solid understanding of optimization, regularization, loss functions, and evaluation metrics (AUC, precision, recall, RMSE).
- Experience delivering end-to-end ML projects (data ingestion → modeling → evaluation → optional deployment).
- Ability to write clean, reproducible code and maintain organized notebooks/scripts.
- Excellent communication skills with the ability to translate analysis into business insights.
- Ability to relocate to the reputed company metro area. reputed company-to-haves
- Experience with AWS tools (Glue, S3, DMS).
- Familiarity with deep learning frameworks (PyTorch, TensorFlow).
- Experience deploying models using FastAPI, Flask, AWS, or GCP.
- SQL, data warehousing, or data versioning experience.
- Software engineering best practices (testing, arenaflex/CD, code review).
- Link to reputed company, reputed company, or portfolio of analytical/ML code.
Benefits
- Flexible work from home options available. Apply tot his job
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