FULLTIME
Data lead
MIT Group of Institutions, Kothrud, Pune
Not specified · onsite · Posted 3d ago
Sourced from
Undisclosed7–10 yrsfulltimeNot specified
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Section · 01
About this role
1. Group Data Infrastructure & Integration
- Audit the current state of data systems across all entities — ERPs, CRMs, LMS platforms, admissions systems, marketing tools, accounting software — and produce a consolidated data landscape.
- Design and implement a centralised data warehouse or lakehouse architecture that aggregates data from all entity systems into a single, queryable layer accessible to the Chairman's Office.
- Build and maintain ETL/ELT pipelines from source systems (likely a mix of SAP, Tally, Mastersoft , Salesforce, Merritto, custom LMS, Google Ads, Meta Ads, and institution-specific tools) into the central data layer.
- Ensure data pipelines are reliable, monitored, and automatically alerting on failures — the Chairman's Office must be able to trust the numbers.
- Evaluate and implement appropriate data stack tooling (e.g., dbt, Airbyte, BigQuery/Snowflake, Metabase/Superset/Power BI) proportionate to group scale and IT capability.
2. Reporting Dashboards & EP Office Intelligence
- Build and maintain the group's master performance dashboard — a single-pane view of KPIs across the Education Trust and MIT Group Ventures, updated automatically on a daily or weekly basis.
- Design entity-level dashboards for Management — so operating leaders have real-time visibility into their own performance before the monthly Chairman review.
- Own the data layer underlying the monthly review packs prepared by the Senior Strategic Analyst — ensure data is pre-validated, reconciled, and ready for narrative synthesis.
- Build early-warning alerts: automated flags when enrolment targets, collection rates, marketing spend efficiency, or outlet revenue deviate materially from plan.
- Produce a monthly data health report for the EP— flagging data quality issues, missing data, and system gaps across entities.
3. AI Data Partnership — Working Alongside the AI Lead
- Work in close partnership with the EP Office AI Lead to ensure all AI applications and platforms deployed across MIT Group businesses are fed accurate, clean, and well-structured data.
- Serve as the data layer owner for every AI initiative across the group
- Collaborate with the AI Lead on data requirements for each AI use case: define what data is needed, in what format, at what frequency, and build the pipelines to supply it reliably.
- Own data quality validation for AI inputs — ensuring that models and AI applications do not produce misleading outputs due to dirty, incomplete, or mis-labelled source data from group systems.
- Jointly review AI application performance with the AI Lead on a monthly basis — identifying where data gaps, drift, or schema changes may be degrading model or application quality.
- Build and maintain a group-level AI data catalogue: a documented inventory of all datasets currently feeding AI applications, their update frequency, ownership, and quality status.
4. Data Governance & Quality
- Define and enforce a group-wide data dictionary — standard definitions for all key metrics (e.g., 'confirmed enrolment', 'net revenue', 'active student') so that the same term means the same thing across all 7+ institutions.
- Establish data ownership accountability at each entity — designate data stewards and put in place lightweight governance processes for data entry quality at source.
- Implement data validation checks within pipelines to catch errors, duplicates, and outliers before they reach Chairman's Office dashboards.
- Ensure all data handling complies with applicable data protection regulations (IT Act, DPDPA 2023) and institutional data policies.
- Maintain a data audit trail for all EP Office reporting — so any number in a board deck can be traced back to its source within minutes.
5. Analytical Modelling & Decision Support
- Build and maintain financial and operational models that underpin strategic decisions — enrolment forecasting, revenue projections, campus capacity modelling, marketing attribution.
- Develop cohort analyses and longitudinal student data models to support academic performance tracking, attrition analysis, and placement outcome reporting.
- Build scenario models for significant decisions: new campus feasibility, programme mix optimisation, pricing sensitivity, marketing budget allocation.
- Produce ad hoc analytical outputs as directed by the Chairman — turning a strategic question into a data-backed answer within 48-72 hours for standard requests.
6. Data Capability Building Across Entities
- Work with functional heads (Finance, Admissions, Marketing, HR, Placement) across entities to improve the quality and consistency of data captured at source.
- Train entity-level analysts and reporting staff on standard tools and data definitions — so the Chairman's Office is not the only node with data literacy.
- Evaluate and recommend BI or analytics tools for entity-level use — enabling operating leaders to self-serve on routine reporting rather than escalating every data request.
- Document all data architecture, pipeline logic, and dashboard definitions — ensuring institutional knowledge does not reside in one person.
Experience
- 7–10 years of total experience, with at least 4 years in a data engineering, analytics engineering, or senior data analyst role.
- Backgrounds that work well: Senior Data Analyst or Analytics Engineer at a mid-to-large ed-tech, consumer, or financial services company; Data Lead or Head of Data at a growth-stage startup with multi-source data complexity; BI Lead or Data Platform engineer at a professional services or institutional group.
- Prior experience in education, multi-campus institutions, or multi-unit consumer businesses (F&B, retail) is a strong plus.
- Has built or owned a data warehouse or centralised analytics platform from scratch — not just consumed one built by others.
Technical Skills
- SQL: expert-level, comfortable with complex joins, window functions, CTEs, and query optimisation across large datasets.
- Python: proficient for data pipeline scripting, transformation logic, and exploratory analysis (Pandas, NumPy).
- Data pipeline & orchestration: hands-on experience with at least one modern ETL/ELT tool (Airbyte, Fivetran, dbt, Apache Airflow, or equivalent).
- Cloud data warehouse: working experience with BigQuery, Snowflake, Redshift, or Azure Synapse.
- BI & visualisation: proficient in at least one BI tool — Power BI strongly preferred; Metabase, Superset, or Looker also acceptable.
- Data modelling: understanding of dimensional modelling, star/snowflake schemas, and data vault concepts.
- Familiarity with common source systems: Tally/SAP for finance, Salesforce or equivalent CRM, Google Ads/Meta Ads APIs, LMS platforms.
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Section · 02
Skills
crmPythonERPSQLSnowflakeETLData ModelingCi/CdArtificial IntelligenceTallySAPAzure SynapsePower BiPandasNumpyData GovernancesalesforceLookerGoogle AdsFacebook AdsbigquerylmsredshiftData Vaultapache airfloweltdbtStar SchemaDimensional ModelingfivetranAirbytesnowflake schemaMetabaseSupersetdimensional modellingGoogle Ads APIMeta Ads APIMastersoftMerritto