India - Senior BI Developer (Remote)

Inchcape Shipping Services
Colchester
1 year ago
Applications closed

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Who are Inchcape?

At Inchcape, our vision is to have a connected world, in which our customers trade successfully and make better decisions in every port, everywhere. We use technology and our global network to help our partners connect to a smoother, smarter ocean.

Inchcape combines its worldwide infrastructure with local expertise through our global network of over proprietary offices, across countries and a team of more than , committed professionals. Our diverse global customer base includes owners and charterers in the oil, cruise, container, and bulk commodity sectors as well as naval, government, and intergovernmental organizations.

We have an ambitious growth model and a career here is certainly going to be a rewarding one that will allow you to bring your skills & experience. We embrace change and are open to new thinking and pushing for positive change in our industry.

Contract type: Permanent/Full Time

Location: Remote

Budget- INR Lakh PA

Job Purpose:

The Senior BI Developer is a pivotal role within the BI & Analytics team, responsible for leading end-to-end business intelligence solution development, including dashboard and report creation, and the maintenance of BI visualization tools and ETL processes. This role ensures data integrity, quality, and accessibility by designing robust data warehouses and models, and optimizing queries and ETL flows. The Senior BI Developer will mentor junior developers, drive innovation, continuous improvement and transform data into actionable insights to support strategic business decisions and enhance our technology function.

 What you'll do:

Develop, implement, and document databases, data collection systems, data sets, data analytics, and other strategies that optimize statistical efficiency and quality. Create and maintain data warehouses, data models, and data architecture to ensure data integrity and accessibility. Lead the design and development of analytical solutions and self-service dashboards to empower business users. Conduct full lifecycle analysis including requirements gathering, activities, design, development, and deployment of analysis and reporting capabilities. Monitor performance and quality control plans to identify and implement improvements. Utilize ETL/ELT processes to create datasets ready for analysis. Maintain and support BI platforms, ensuring comprehensive environment management of tools like Alteryx and Tableau on AWS. Review and optimize query and ETL flows for performance. Collaborate with the Infrastructure team on the management and optimization of cloud environments. Provide expert advice and guidance to business users on data sources, data relevance, quality, timeliness, and completeness.Implement and oversee data governance practices to ensure data security, privacy, and compliance. Collaborate with cross-functional teams, especially the new Data team, to ensure seamless integration and alignment of BI initiatives with business objectives.Continuously explore and adopt the latest BI tools, techniques, and best practices to drive innovation and efficiency.

Key Deliverables

Delivery of industry best practices standards for BI tools such as Alteryx, Tableau, PowerBI, and SQL. Design and implementation of datawarehouse/datamarts and data security frameworks. Identification and implementation of process improvement opportunities. Execution of administrative activities related to the Analytics & BI platform, including user and identity management and overall platform configuration and administration. Development of self-service predictive analytics and complex data visualizations

Key Deliverables

Who you are:

Knowledge

Proven experience as BI Developer, BI Engineer, BI Architect or Data Analyst. + years in an IT environment with at least + years of working experience in delivering analytics and BI projects. Background in data warehouse design ( dimensional modelling). In-depth understanding of database management systems, OLAP, and OLTP. Programming skills (, SQL, Python) and exposure to data manipulation libraries (Pandas, Numpy, SQLAlchemy, PySpark, Airflow, etc.). Strong experience with BI technologies, frontend and backend (, Tableau, PowerBI, Qlik, Sisense, Looker and Alteryx, Pentaho Data Integrator, Talend, KNIME, Astronomer, Apache NiFi). Strong understanding of SDLC/engineering processes and tools (, Jira, Confluence, Git, Bitbucket). Good understanding of agile delivery methodologies Scrum, Kanban, Scaled Agile, SAFe, etc. Excellent English verbal and written communication skills. Ability to work independently with excellent time management and organizational skills. Strong leadership and mentoring skills with experience in leading projects. Innovative problem-solving skills and a continuous improvement mindset. Passion for Data technology delivering business value. Adaptability and willingness to stay updated with industry trends.

Desirable

Certified in any of the Analytical and BI tools, ideally Tableau Certified Associate/Data Analyst or above, Alteryx Core Certified or above. Python programming skills, exposure to libraries for web applications for data science and analytics, such as Streamlit, Gradio, Flask, Panel, Bokeh, or Shiny. Experience of, and assisted in, the implementation of governance, controls, and standards. Prior BI and Analytics experience across multiple industries Any Shipping or Maritime experience. Certifications in BI tools or data engineering, ideally Tableau Certified Associate/Data Analyst or above, Alteryx Core Certified or above. Advanced degrees (, Master's) in relevant fields.

LI-MB

Knowledge

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