SummaryWe are seeking a highly skilled and experienced Senior Data Scientist to our dynamic team. This role is pivotal in driving the company's data-driven initiatives by developing and deploying advanced machine learning models and leveraging AI technologies to extract actionable insights from complex datasets. The ideal candidate will bring over five years of hands-on experience in machine learning, data analysis, and AI model deployment, primarily using Python.Location: We are seeking talents from LATAM.Responsibilities Design, develop, and implement robust machine learning models tailored to solvecomplex business problems and improve product offerings.Utilize AI technologies to analyze large and diverse datasets, uncovering trends,patterns, and insights that inform strategic decision-making.Collaborate with cross-functional teams including product managers, engineers, andanalysts to translate business requirements into scalable data science solutions.Lead the end-to-end lifecycle of AI model deployment, ensuring models areproduction-ready, maintainable, and performant within cloud environments.Conduct rigorous statistical modeling and data analysis to validate model assumptions, evaluate performance, and optimize algorithms.Develop and maintain data visualization tools and dashboards to communicate findings effectively to both technical and non-technical stakeholders.Mentor junior data scientists and contribute to building a culture of continuous learning and innovation within the data science team.Stay current with the latest advancements in machine learning, AI, and data sciencemethodologies to continuously enhance LTK's data capabilities.Collaborate with data engineering teams to ensure data quality, availability, and efficient data pipelines that support machine learning workflows.Participate in defining best practices for data science processes, including modelgovernance, reproducibility, and ethical AI considerations.RequirementsMust-Have Skills Proven expertise in designing, building, and deploying machine learning models usingsupervised, unsupervised, and reinforcement learning techniques. Experience with modelselection, feature engineering, hyperparameter tuning, and performance evaluation isessential.Advanced proficiency in Python programming, including libraries such as scikit-learn,TensorFlow, PyTorch, and pandas for data manipulation, model development, andexperimentation. Ability to write clean, efficient, and well-documented code.Strong analytical skills to interpret complex datasets, perform exploratory data analysis, and derive meaningful insights that drive business value. Experience with statistical testing and hypothesis validation is critical.Deep understanding of statistical concepts and methods, including regression,classification, time series analysis, and probabilistic modeling to support robustdata-driven conclusions.Expertise in creating compelling visualizations using tools like Matplotlib, Seaborn, orequivalent to effectively communicate data insights and model results to diverseaudiences.Experience deploying AI and machine learning models into production environments,ensuring scalability, reliability, and integration with existing systems. Familiarity withcontainerization and orchestration technologies is a plus.Proficient in SQL for querying and managing relational databases, optimizing queries,and working with large datasets stored in systems such as MySQL, PostgreSQL, orMicrosoft SQL Server.Nice-to-Have Skills Cloud Computing: Experience working with cloud platforms such as AWS, GoogleCloud Platform, or Azure to build, deploy, and manage machine learning models anddata pipelines. Knowledge of cloud-native services for AI/ML is advantageous. Big Data Technologies: Familiarity with big data ecosystems including Hadoop, Spark,or similar frameworks to process and analyze large-scale datasets efficiently. Data Engineering: Understanding of data engineering principles and tools to collaborate effectively with engineering teams on data ingestion, transformation, and pipeline automation. Experience with ETL processes and workflow orchestration tools is beneficial.