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Job Title


Machine Learning Engineer / Data Scientist


Company : MyData Insights


Location : Kannur, Kerala


Created : 2026-02-21


Job Type : Full Time


Job Description

Job Title: Machine Learning Engineer / Data Scientist Work Mode-Remote || Contract Role Experience: 4–8 Years (Mid–Senior Level)Role SummaryWe are seeking a skilled Machine Learning Engineer / Data Scientist to design, build, and deploy end-to-end ML solutions that drive measurable business impact. The role spans the full ML lifecycle—from problem framing and data exploration to modeling, deployment, monitoring, and stakeholder communication.Key ResponsibilitiesTranslate business problems into ML solutions (classification, regression, time series, clustering, anomaly detection, recommendations).Perform data extraction and analysis using SQL and Python.Build robust feature engineering pipelines and prevent data leakage.Develop and tune ML models (XGBoost, LightGBM, CatBoost, neural networks).Apply statistical methods (hypothesis testing, experiment design, confidence intervals).Develop time series forecasting models with proper backtesting.Build deep learning models using PyTorch or TensorFlow/Keras.Evaluate models using appropriate metrics (AUC, F1, RMSE, MAE, MAPE, business KPIs).Support production deployment (batch/API) and implement monitoring & retraining strategies.Communicate insights and recommendations to technical and non-technical stakeholders.Required SkillsStrong Python (pandas, numpy, scikit-learn)Strong SQL (joins, window functions, aggregations)Solid foundation in Statistics & ExperimentationHands-on experience in:Classification & RegressionTime Series ForecastingClustering & SegmentationDeep Learning (PyTorch / TensorFlow)Experience with model evaluation, cross-validation, calibration, and explainability (e.g., SHAP).Ability to handle messy data and ambiguous business problems.Strong communication and stakeholder management skills.Preferred SkillsExperience with Databricks (Spark, Delta Lake, MLflow)MLOps practices (model versioning, monitoring, retraining pipelines)Orchestration tools: Airflow / Prefect / DagsterModern data platforms: Snowflake / BigQuery / RedshiftCloud platforms: AWS / GCP / Azure / IBMContainerization (Docker)Responsible AI & governance practicesClient-facing / consulting experienceNice to HaveCausal inference & uplift modelingAgentic workflow development (tool use, planning, memory, guardrails)Experience with AI-assisted development tools and code agentsCertifications (Strong Plus)Cloud certifications (AWS / GCP / Azure / IBM – Data/AI tracks)Databricks certifications (Data Scientist / Data Engineer)