Data Analytics and AI Specialist
We are looking for a detail-oriented
Data Analyst
with a strong foundation in
statistics
and practical experience turning raw data into clear, actionable insights. You will work with business stakeholders to understand reporting needs, build reliable datasets (ideally from
SAP HANA
or related sources), and develop interactive dashboards and analytical outputs using
Power BI
. Experience with modern analytics/AI tools for modeling and insight generation is a strong plus.
Key Responsibilities
-
Analyze large datasets to identify patterns, trends, anomalies, and drivers of business performance.
-
Apply
statistical methods
(descriptive statistics, hypothesis testing, correlation/regression, forecasting basics) to support decision-making.
-
Build and maintain
Power BI dashboards
(DAX, data modeling, performance optimization, drill-through storytelling).
-
Develop and optimize data models and semantic layers (star schema, dimensional modeling, measures, KPIs).
-
Extract, transform, and validate data from sources such as
SAP HANA
, ERP systems, spreadsheets, and APIs.
-
Define and track KPI definitions with stakeholders; ensure consistent metric governance across teams.
-
Create clear reports and executive-ready insights (storytelling with data, root-cause analysis).
-
Ensure data quality and documentation (data dictionaries, refresh schedules, report logic).
-
Collaborate with IT/Data teams on access, security, and data pipelines.
Required Qualifications
-
Bachelor’s degree in
Statistics, Mathematics, Computer Science, Data Science, Engineering, Economics
, or related field.
-
Strong working knowledge of
statistics
and analytical thinking (ability to choose the right method for the problem).
-
Hands-on experience with
Power BI
including data modeling and DAX.
-
Proficiency in
SQL
(querying, joins, aggregates, window functions are a plus).
-
Strong communication skills—able to explain insights to technical and non-technical audiences.
Preferred / Nice-to-Have
-
Experience working with
SAP HANA
(calculation views, SQLScript exposure, performance concepts).
-
Experience with Python/R for analytics (pandas, statsmodels, scikit-learn basics).
-
Familiarity with AI-enabled analytics tools (Copilot, AutoML, forecasting tools, LLM-assisted analysis).
-
Experience in manufacturing/operations/finance analytics (OEE, yield, scrap, supply chain KPIs, etc.).
-
Knowledge of data governance practices (data quality checks, access control, documentation).
What Success Looks Like (First 90 Days)
-
Deliver 2–3 high-impact dashboards or reports aligned to key business KPIs.
-
Establish consistent KPI definitions and improve data quality for at least one critical dataset.
-
Reduce manual reporting time through automation and optimized refresh models.