Job Closed
This listing is no longer active.
Architecting intelligent IT solutions in Enterprise Security, Modern Infrastructure & Platform Engineering.
Data Scientist – AI Engineer
Location
New York
Posted
126 days ago
Salary
0
Seniority
Junior
Job Description
Data Scientist – AI Engineer
Arctiq
• Build, validate, and deploy statistical and AI models to solve complex business problems. • Design and refine predictive features, ensuring data quality and model interpretability. • Leverage Azure Machine Learning and Microsoft’s suite of data services to scale model training and deployment. • Apply statistical rigor to analyze data trends and communicate findings to non-technical stakeholders.
Job Requirements
- Strong background in Statistics and Data Analytics.
- Advanced proficiency in Python (Pandas, Scikit-learn, etc.) and SQL.
- Experience navigating the Microsoft Azure data stack (Synapse, Azure Data Factory, or Azure ML).
Related Guides
Related Categories
Related Job Pages
More Data Scientist Jobs
• Analyzes business requirements and determines a suitable solution autonomously, evaluating if an ML-based solution is feasible • Good understanding of business requirements • Develops and fine-tunes models through reproducible experiments • Builds ML solutions incorporating software engineering quality standards (SDLC) and data engineering best practices • Participates in the technical design of features with guidance • Understands and optimizes and monitors model performances • Prioritizes tasks with autonomy based on requirements and proper context.
• Lead the data science lifecycle, from discovery and exploration to delivery and customer hand-off • Translate ambiguous business problems into clear problem statements and deliver working, production-ready solutions • Partner with customers and internal stakeholders to co-design use cases, define success criteria, and ensure models are adopted and successful in production • Build quick, iterative prototypes to test ideas, and work cross-functionally to deploy validated solutions into production environments • Own and improve pipelines for data integration, validation, and monitoring, ensuring long-term stability and performance • Analyze large-scale structured and unstructured datasets to extract insights and power model development • Apply machine learning, NLP, graph analytics, and other advanced techniques to solve challenging problems such as semantic search, or anomaly detection • Create and maintain internal data science tooling to streamline experimentation, testing, and delivery • Support internal teams and customers with issue resolution, ensuring data science solutions continue to deliver value post-deployment • Follow and advocate for best practices in MLOps, DataOps, and clean code to ensure reproducibility, maintainability, and scalability
• Einblicke in die Welt der Datenanalyse und des maschinellen Lernens erhalten • Unterstützung bei administrativen und organisatorischen Aufgaben • Verantwortung für eigene kleine Projekte, die als Grundlage für die Abschlussarbeit dienen können • Aktive Teilnahme an Data Science-Projekten und Nutzung verschiedener Methoden des maschinellen Lernens • Aufbereitung, Analyse von Daten sowie Erstellung von Visualisierungen und Berichten
Senior Data Scientist – Marketing Modeling, AI – Consumer Lending
ExperianBased in Dublin, Leinster, Ireland, Experian is a global information services company that operates in 40 countries around the world and has additional headquar
• Design, code, and test AI agents that support autonomous decision-making in marketing campaigns, customer acquisition, and portfolio optimization. • Apply hands-on coding knowledge to create agentic AI techniques to solve complex business problems in consumer lending. • Conduct exploratory data analysis and develop predictive models using credit bureau data and other consumer datasets. • Prototype and improve on intelligent agent behaviors using Python, Spark and modern agentic frameworks. • Support the deployment and monitoring of AI models in production environments, ensuring performance, reliability and compliance. • Collaborate with company partners to translate our requirements into scalable AI solutions. • Contribute to the development of new analytical products and services that enhance marketing effectiveness and customer engagement.




