Job Information
Honeywell Sr Advanced Data Engineer in Bangalore, India
The Sr Advanced Data Engineer – AI‑Ready Data Platforms is responsible for architecting, building, and optimizing large‑scale data systems that power Honeywell Aerospace’s enterprise data strategy and AI‑ready data layer .
This role plays a critical part in ensuring that the organization’s data platforms are scalable, governed, performant, and aligned to AI and advanced analytics use cases . The Sr Advanced Data Engineer partners closely with AI/ML teams, data scientists, platform teams, and business stakeholders to ensure that data is available, trusted, and production‑ready to support analytics, advanced analytics, and AI initiatives in a timely manner.
Key Responsibilities
Architecture & System Design
Design and own end‑to‑end, scalable enterprise data architectures , including:
Data Lake
Data Mesh
Medallion (Bronze / Silver / Gold) architectures
Align data architecture decisions with long‑term business goals and AI strategy
Select, evaluate, and standardize the enterprise data technology stack , including:
Cloud‑native data services
Snowflake enterprise data warehouse
Databricks analytical data lake platforms
Actively participate in AI initiatives , ensuring the data layer is AI‑ready and fit for enterprise AI consumption
Pipeline & Infrastructure Development
Build, manage, and optimize complex ETL / ELT pipelines using tools such as:
Apache Airflow
Azure Data Factory
AWS Glue
Informatica
Design and implement real‑time and near‑real‑time data pipelines using:
Apache Kafka
Spark Structured Streaming
Establish standardized data ingestion and transformation pipelines across enterprise systems
Ensure high‑quality, timely availability of data for analytics, advanced analytics, and AI use cases
Performance Tuning & Optimization
Identify and resolve performance bottlenecks in distributed data systems
Optimize query performance, processing latency, and cloud costs through:
Partitioning strategies
Clustering
Indexing
Work closely with data platform and cloud teams to ensure adoption of latest data technologies and optimizations
Data Governance, Quality & Observability
Define and enforce enterprise data quality standards using frameworks such as Great Expectations
Implement and support data governance, lineage, and observability tools
Ensure compliance with global data regulations (e.g., GDPR, CCPA) by implementing:
Data encryption
Role‑Based Access Control (RBAC)
Maintain strong guardrails for data usage, access, and quality across the enterprise
Leadership, Collaboration & Mentorship
Provide technical leadership and guidance to junior and mid‑level data engineers
Conduct code reviews and promote best practices in documentation and data engineering standards
Act as a technical bridge between leadership, data scientists, AI teams, and business stakeholders
Translate business and AI requirements into actionable, scalable data solutions
YOU MUST HAVE
Advanced Skill Requirement
Experience & Capabilities
8–12 years of experience in data engineering or advanced data platform roles
Proven experience designing and operating enterprise‑scale data platforms
Strong hands‑on experience building AI‑ready, governed, and automated data layers
Experience working in large, global, and regulated enterprise environments
Advanced Skill Requirements
Core Languages
- Expert proficiency in Python and SQL
Big Data & Analytics Platforms
Deep experience with:
Snowflake (enterprise data warehouse)
Databricks (analytical data lake platforms)
Strong understanding of distributed data processing concepts
Cloud Platforms
Hands‑on experience with AWS, Azure, and/or Google Cloud Platform (GCP) , including services such as:
S3 / ADLS
BigQuery
Redshift
Emerging & Advanced Technologies
Familiarity with Vector Databases to support AI and LLM use cases
Experience implementing CI/CD pipelines for data engineering workloads
Education
- Bachelor’s or Master’s degree in Engineering , Computer Science, Information Technology, Data Engineering, or a related field
Who Will Succeed in This Role
Experienced data engineers who can design, build, and scale enterprise data platforms
Professionals who ensure the data layer is robust, governed, automated, and AI‑ready
Engineers with strong focus on performance, accuracy, reliability, and compliance
Individuals who can support analytics, advanced analytics, and AI applications with high‑quality, trusted data
Honeywell helps organizations solve the world's most complex challenges in automation, the future of aviation and energy transition. As a trusted partner, we provide actionable solutions and innovation through our Aerospace Technologies, Building Automation, Energy and Sustainability Solutions, and Industrial Automation business segments – powered by our Honeywell Forge software – that help make the world smarter, safer and more sustainable.
Honeywell is an equal opportunity employer. Qualified applicants will be considered without regard to age, race, creed, color, national origin, ancestry, marital status, affectional or sexual orientation, gender identity or expression, disability, nationality, sex, religion, or veteran status.