Sr. Solution Architect (Data) FTE Location : Remote is okay If candidate is in Mumbai this would be onsite in Andheri East, Mumbai, Maharashtra
Experience : 12–15 years Start : End of December (urgent)
Role summary We’re looking for a senior, hands-on Solution Architect (Data) to lead design and delivery of enterprise data & analytics solutions. You’ll own architecture for ETL / ELT, data warehousing, analytics pipelines, data governance, and integrations with LMS / Ed Tech systems — turning education data into actionable insights and production-grade platforms used by districts, schools, and publishers. This is a highly technical role requiring 12–15 years of experience, proven leadership in data architecture, deep ETL / analytics know-how, and familiarity with education data ecosystems or similarly regulated verticals.
Key responsibilities
Define end-to-end data architecture and roadmaps for large-scale education data platforms (ingestion → storage → modeling → serving → analytics / ML).
Lead design and implementation of robust ETL / ELT pipelines and orchestration (batch + streaming) to bring together disparate education systems (LMS, SIS, assessment, content platforms).
Design and optimize data warehouses / data lakes (schema strategy, partitioning, performance, cost).
Drive integration patterns and APIs for interoperability (One Roster, Ed-Fi, LTI, custom APIs), and lead vendor / partner integrations.
Establish data governance, privacy, lineage, and security practices suitable for student data (PII handling, role-based access, encryption, audit).
Collaborate with product managers, engineering leads, data scientists, and customer success to translate customer needs into deliverable solutions.
Produce architecture artifacts : solution blueprints, CI / CD patterns for data delivery, runbooks, and SLA / operational playbooks.
Mentor engineering and data teams; run architecture reviews and technical critiques.
Support pre-sales and RFP responses with technical solutioning and estimations when required.
Champion best practices for observability (metrics, logging), testing, and cost governance in data platforms.
Must-have skills & experience (non-negotiable)
12–15 years in data engineering, analytics, or data architecture roles with progressive ownership.
Hands-on experience building and operating ETL / ELT pipelines and orchestration frameworks (Airflow, dbt, Talend, Informatica, or equivalent).
Strong design and operational experience with cloud data platforms (AWS / GCP / Azure) — data warehouses / lakes such as Snowflake, Big Query, Redshift, Databricks, or similar.
Proven track record in data modeling (dimensional / 3 NF), master data management, schema design, and query performance optimization.
Experience with streaming technologies (Kafka, Kinesis, Pub / Sub) and hybrid batch / streaming patterns.
Familiar with BI / analytics tooling and self-service analytics (Tableau, Power BI, Looker, Superset) and delivering dashboards / reports to non-technical stakeholders.
Strong knowledge of data security, privacy, and governance frameworks (encryption, RBAC, GDPR / FERPA implications for education data).
Solid API and integration experience (REST, Graph QL, SOAP) and familiarity with education interoperability standards (One Roster, Ed-Fi, LTI) is highly desirable.
Excellent communication skills — able to present technical concepts to product, sales, and executive stakeholders.
Proven leadership : mentoring, technical decision making, and running architecture review boards.
Nice-to-have / Preferred
Prior experience in Ed Tech, education data projects, or working with school / district customers. (Knowledge of Ed-Fi, One Roster, SIS / LMS systems is a plus.)
Experience building or operating AI / ML pipelines and MLOps for predictive analytics (student success models, recommendation engines).
Experience with data cataloging / lineage tools (Great Expectations, Amundsen, Data Hub, Collibra).
Familiarity with GDPR, FERPA, state education data privacy regulations.
Experience with CI / CD for data (Git Ops for pipelines, automated testing for data).
Previous role in consulting / solutions architecture working directly with customers on design and implementation.
Technical stack (examples we expect you to be comfortable with)
Cloud : AWS / GCP / Azure (production experience).
Data storage / compute : Snowflake / Big Query / Redshift / Databricks / S3 / GCS.
Orchestration / ETL : Airflow, dbt, Prefect, Informatica, Talend, or custom pipelines.
Streaming : Kafka, Kinesis, Pub / Sub.
BI & analytics : Tableau, Power BI, Looker, Superset.
Data ops & governance : Great Expectations, Data Catalogs, lineage tools.
Dev tools : Git, Terraform, Docker, Kubernetes, CI systems.
Languages : SQL (expert), Python, Scala / Java (optional).
Solution Architect • Kozhikode, Kerala, India