Data Engineer (Data Platform & DevOps)
NeoRecruitRole Overview
NeoRecruit is hiring a mid-level Data Engineer (Data Platform & DevOps). This is a full-time role in Bengaluru. Part of NeoRecruit's Devops hiring. Full responsibilities, required qualifications, and the apply link are listed in the description below.
Resume Keywords to Include
Make sure these keywords appear in your resume to improve ATS scoring
Sign up free to auto-tailor your resume with all these keywords and get a higher ATS score
Job Description
Job Title: Data Engineer (Data Platform & DevOps)
Experience: 47 years
Location: Bangalore (Onsite)
Employment Type: Full-Time
Overview
Our client one of the largest data science companies is seeking to hire a Data Engineer (Data Platform & DevOps) to design, build, and operate scalable data and ML platforms on AWS, Azure, or GCP. This role blends strong data engineering fundamentals with DevOps practices, supporting production-grade data pipelines, ML workflow orchestration, and analytics platforms. You'll collaborate closely with data science, platform, and product teams to enable reliable, automated, and secure data and ML systems.
What You'll Do
- Build & Operate Data Pipelines:
Design, develop, and maintain robust data pipelines for ingestion, transformation, and analytics using cloud-native and open-source technologies.
- ML Workflow Orchestration:
Orchestrate end-to-end machine learning workflows.
- DevOps & CI/CD for Data & ML:
Design and operate CI/CD pipelines using GitHub Actions and Jenkins to automate build, test, and deployment of data pipelines, Airflow DAGs, Databricks jobs, and ML services.
- Artifact & Dependency Management:
Manage Python packages, Docker images, and ML artifacts using JFrog Artifactory or similar artifact repositories.
- Cloud Platforms:
Design and operate data platforms using Databricks, AWS, Azure, or GCP, along with cloud services such as object storage, managed compute, and data warehouses.
- Infrastructure as Code:
Provision and manage infrastructure using Terraform or equivalent IaC tools, following best practices for security, scalability, and cost efficiency.
- Observability & Reliability:
Implement monitoring, logging, alerting, and data quality checks for data pipelines, ML workflows, and analytics jobs.
- Security & Governance:
Implement IAM, secrets management, and least-privilege access across cloud platforms and CI/CD pipelines.
- Cross-Functional Collaboration:
Partner with data scientists, ML engineers, analysts, and platform teams to productionalize and scale data and ML workloads.
What You'll Bring
- Experience:
Experience as a Data Engineer, or Platform Engineer working on data-intensive systems with DevOps practices.
- Cloud Platforms:
Hands-on experience with one or more cloud platforms: AWS, Azure, or GCP.
- Databricks:
Experience building and operating data pipelines and analytics or ML workloads on Databricks, AWS, Azure, or GCP.
- Data Orchestration:
Strong experience with Apache AirflowAWS Glue, Lambda, Step FunctionsAzure Data Factory for orchestrating data and ML pipelines.
- CI/CD & DevOps:
Hands-on experience with GitHub Actions and/or Jenkins, including pipeline automation and release workflows.
- Artifact Management:
Experience with JFrog Artifactory (or similar tools) for managing artifacts and dependencies.
- Programming:
Strong proficiency in Python; experience with Bash or shell scripting.
- Containers & Packaging:
Experience with Docker; familiarity with Kubernetes (EKS, AKS, or GKE) is a plus.
- Data Technologies:
Strong SQL skills and understanding of data modeling and analytical data stores.
- Security & Compliance:
Knowledge of IAM, secrets management, and secure CI/CD and data pipeline practices.
- Collaboration:
Strong communication skills and ability to work effectively with cross-functional teams.
Nice to Have
- Streaming and event-driven architectures (Kafka, Kinesis, Pub/Sub, Event Hubs).
- ML platforms and tooling (MLflow, SageMaker, Azure ML, Vertex AI).
- Big data frameworks (Spark, PySpark).
- Data quality, lineage, and observability tooling.
- Familiarity with Informatica Power Center and CloudEra Data Platform.
Preferred Qualifications
- BE/B.Tech or M.Tech degree in Computer Science, Engineering, or related fields.
- Prior experience working on Data Engineering Projects related to Pharma and Clinical Domain.
- AWSAzureGCP certifications (Certified Data Engineer or Solutions Architect).
Frequently Asked Questions
How do I apply for the Data Engineer (Data Platform & DevOps) position at NeoRecruit?
Use the Apply button above to submit your application directly to NeoRecruit. Most applications take less than 5 minutes if your resume and contact details are ready, and you'll be routed to the employer's official application system to finish.
Where is the Data Engineer (Data Platform & DevOps) position at NeoRecruit located?
This position is based in Bengaluru. NeoRecruit has not indicated remote or hybrid options for this role, so candidates should plan for on-site work.
What does a Data Engineer (Data Platform & DevOps) at NeoRecruit earn?
NeoRecruit has not disclosed a salary range in this posting. Many employers share specifics later in the interview process; you can also ask during a recruiter screen if compensation transparency is important to you.
When was the Data Engineer (Data Platform & DevOps) role at NeoRecruit posted?
This role was posted on March 19, 2026 (81 days ago). It's still listed as actively hiring; we re-confirm openings against the source system multiple times per day and remove closed roles.
AI-powered job search
Get every job scored to your resume
Upload your resume and get jobs ranked, your resume tailored, and employee contacts found automatically.
Get Started FreeNo credit card to start