Data Engineer – Data & AI - Institutional Equities

0 years

0 Lacs

Posted:1 week ago| Platform: Linkedin logo

Apply

Work Mode

On-site

Job Type

Full Time

Job Description

Role Summary :


The Data Engineer is responsible for building and maintaining scalable, reliable, and high-performance data platforms. The role is hands-on, with a strong focus on engineering solutions for data storage, real-time processing, and platform integrations. Collaboration with Data Architects and Cloud Engineers is key to operationalizing and optimizing core data infrastructure components.


Key Responsibilities :


- Design, build, and optimize data pipelines for batch and real-time processing using Spark, Python, and related technologies.

- Set up, configure, and manage databases such as Postgres, ClickHouse, MongoDB, DynamoDB, and other analytical or NoSQL systems.

- Develop and maintain data models, indexing strategies, partitioning, and schema management to support scalable data solutions.

- Engineer and manage data storage formats and lakehouse table systems such as Delta Lake, Iceberg, and Hudi for efficient data access and analytics.

- Integrate databases with cloud components (AWS services, Databricks, internal microservices) to enable seamless data flow across platforms.

- Work with real-time platforms such as Kafka and Flink for streaming ingestion, event processing, and low-latency data delivery.

- Collaborate with Cloud Engineers to ensure infrastructure provisioning, networking connectivity, containerization, and access controls are aligned with data engineering needs.

- Troubleshoot and optimize data pipeline performance, including slow queries, write amplification, compaction issues, indexing strategies, and cluster configurations.

- Support platform observability and monitoring by installing, configuring, and monitoring systems like Prometheus and Grafana.


Required Skills:


- Strong Python skills

- Experience with distributed table formats (Delta Lake, Iceberg, Hudi).

-Competency in Kafka (consumer groups, offsets, partitions) and Flink for stream processing.

- Experience with PySpark for data ingestion and transformation workflows

- Deep knowledge of Postgres (indexing, replication, partitioning, optimization)

- Hands-on with ClickHouse (setup, tuning, materialized views, TTLs)

- Familiarity with NoSQL (MongoDB, DynamoDB) schema design and access patterns

- Familiarity with AWS (EC2, S3, VPC, IAM, Glue, Lambda)

- Understanding of database security, encryption, role management, and backup strategies


Good-to-Have Skills:


- Experience with Java frameworks such as Spring Batch or Hibernate

- Experience with Databricks workflows, catalog integration, or table ingestion patterns.

- Exposure to containerization (Docker) for database sandboxing or API deployments.

- Knowledge of infrastructure orchestration (Terraform) for database provisioning.

- Ability to contribute to datastore benchmarking and performance testing.

Mock Interview

Practice Video Interview with JobPe AI

Start Python Interview
cta

Start Your Job Search Today

Browse through a variety of job opportunities tailored to your skills and preferences. Filter by location, experience, salary, and more to find your perfect fit.

Job Application AI Bot

Job Application AI Bot

Apply to 20+ Portals in one click

Download Now

Download the Mobile App

Instantly access job listings, apply easily, and track applications.

coding practice

Enhance Your Python Skills

Practice Python coding challenges to boost your skills

Start Practicing Python Now

RecommendedJobs for You