JLL

Data Engineer 2

JLL  •  Republic of India (Onsite)  •  4 days ago
Apply
AI can make mistakes so check important info. Chat history is never stored.

Job Description

JLL empowers you to shape a brighter way

Our people at JLL are shaping the future of real estate for a better world by combining world class services, advisory and technology for our clients. We are committed to hiring the best, most talented people and empowering them to thrive, grow meaningful careers and to find a place where they belong. Whether you’ve got deep experience in commercial real estate, skilled trades or technology, or you’re looking to apply your relevant experience to a new industry, join our team as we help shape a brighter way forward.

About the Role

We are looking for a Data Engineer II with hands-on data engineering experience and a growing passion for Agentic AI to join our Azara Data & AI Engineering team at JLL Technologies. You will build and maintain data pipelines, transformation workflows, and data services that power Azara, our AI-driven data intelligence platform for commercial real estate — while actively developing AI-augmented and agentic capabilities to make those workflows smarter, self-healing, and more autonomous. This role is ideal for a data engineer who wants to go beyond traditional pipelines and apply Agentic AI to real-world data engineering challenges at enterprise scale.

Key Responsibilities

Data Engineering & Pipeline Development

  • Design, build, and maintain scalable data ingestion, transformation, and serving pipelines using Python and PySpark on Databricks
  • Develop data services and APIs (FastAPI) that expose curated data assets to downstream applications and AI services
  • Write and optimize SQL for data transformation, aggregation, and quality validation across large-scale datasets
  • Implement pipeline monitoring, alerting, and data quality checks to ensure reliability and SLA compliance
  • Manage data workflows using orchestration tools (Azure Data Factory, Airflow, or Databricks Workflows)

Agentic AI Integration

  • Build AI agents that automate data engineering tasks such as self-healing pipelines, anomaly detection, and automated data quality remediation
  • Develop agentic workflows using LangGraph or LangChain that integrate with data platforms and enterprise data sources
  • Implement LLM-powered natural language to data query capabilities (e.g., Databricks Genie-style interactions) for data access layers
  • Integrate LLM APIs (Azure OpenAI) into data services for intelligent data enrichment, classification, and summarization
  • Collaborate with AI engineers to deploy RAG pipelines that leverage data assets as knowledge sources for agent workflows

Data Platform & Cloud Infrastructure

  • Build and maintain data models, Delta Lake tables, and lakehouse architecture components on Databricks and Azure
  • Implement data access patterns, caching (Redis), and partitioning strategies for efficient data serving
  • Develop event-driven data workflows using Azure Service Bus and Dapr for real-time pipeline triggers
  • Assist in distributed task processing (Celery) for scalable, async data workloads
  • Contribute to CI/CD pipelines and infrastructure-as-code for data platform components

Quality & Engineering Practices

  • Write unit tests and integration tests (pytest) for pipeline logic, data transformations, and AI-integrated components
  • Participate in code reviews with attention to data quality, pipeline reliability, and AI-specific concerns (hallucination, cost, prompt safety)
  • Implement structured logging and observability for pipeline health and AI workflow performance
  • Follow data governance, security, and compliance practices for enterprise data handling

Collaboration & Growth

  • Collaborate with senior data engineers, AI engineers, and product managers in an Agile environment
  • Document data models, pipeline design decisions, and agentic workflow patterns
  • Participate in GenAI knowledge-sharing sessions and actively upskill in emerging Agentic AI frameworks and techniques
  • Progressively take ownership of data domains and pipeline components with increasing independence

Required Qualifications

  • 3–5 years of professional data engineering experience with strong proficiency in Python and SQL
  • Hands-on experience building and maintaining data pipelines on a cloud data platform (Databricks, Azure Synapse, or equivalent)
  • Working experience with PySpark or equivalent distributed data processing framework
  • Experience with data orchestration tools (Azure Data Factory, Airflow, Databricks Workflows, or similar)
  • Familiarity with Delta Lake, lakehouse architecture, or similar open table formats
  • 1+ year of hands-on experience with AI/ML integration, LLM APIs, or agent frameworks (LangGraph, LangChain, or equivalent)
  • Experience with Python web frameworks (FastAPI preferred) for building data services and APIs
  • Experience with AI-powered development tools (Cursor AI, GitHub Copilot, or similar) for AI-augmented development across the SDLC
  • Familiarity with Git version control and collaborative development workflows
  • Basic understanding of Microsoft Azure cloud platform

Preferred Qualifications

  • Experience with Databricks Genie or natural language to SQL query platforms
  • Familiarity with vector databases (Qdrant, PgVector, ChromaDB) for RAG pipeline integration
  • Exposure to LangGraph multi-agent orchestration for data automation workflows
  • Experience with event-driven patterns (Azure Service Bus, Dapr) and real-time streaming
  • Familiarity with Azure cloud services (Data Lake, Azure Data Factory, Key Vault, Blob Storage)
  • Experience with distributed task processing (Celery, Redis) for async data workloads
  • Familiarity with containerization (Docker) and Kubernetes for data service deployment
  • Exposure to data governance frameworks, data cataloging tools, or data quality platforms
  • Familiarity with observability tools (Datadog, LangSmith) for pipeline and AI workflow monitoring

Technical Skills & Competencies

Data Engineering

  • Languages: Python, SQL, PySpark
  • Platforms: Databricks (Delta Lake, Workflows, Genie)
  • Cloud: Azure (Data Lake, ADF, Blob Storage, Key Vault)
  • Orchestration: Azure Data Factory, Databricks Workflows, Airflow (awareness)
  • Patterns: ELT/ETL, lakehouse architecture, streaming and batch pipelines

Agentic AI & Integration

  • Agent Frameworks: LangGraph (primary), LangChain
  • LLM Providers: Azure OpenAI, OpenAI
  • Techniques: RAG for data, NL-to-SQL, prompt engineering, function calling
  • Vector Databases: Qdrant, PgVector, or ChromaDB (awareness)

Core Engineering

  • Frameworks: FastAPI, Pydantic, Celery
  • Databases: PostgreSQL, Redis
  • Event-Driven: Azure Service Bus, Dapr (awareness)
  • DevOps: Git, CI/CD, Docker basics

Experience & Education

  • Bachelor's degree in Computer Science, Engineering, Data Science, or a related technical field, or equivalent professional experience
  • 3–5 years of professional data engineering experience with demonstrable pipeline and AI integration skills
  • Good communication skills and ability to work collaboratively in a team environment
  • Demonstrated curiosity and passion for applying AI to data engineering challenges
  • Familiarity with Agile methodologies and principles

What We Can Do for You

At JLL, we make sure that you become the best version of yourself by helping you realise your full potential in an entrepreneurial and inclusive work environment. If you have a passion for learning and adopting new technologies, JLL will continuously provide you with platforms to enrich your technical expertise. We will empower your ambitions through our dedicated Total Rewards Program, competitive pay, and benefits package.

Location:

On-site –Bengaluru, KA

Scheduled Weekly Hours:

40

If this job description resonates with you, we encourage you to apply even if you don’t meet all of the requirements. We’re interested in getting to know you and what you bring to the table!

At JLL, we harness the power of artificial intelligence (AI) to efficiently accelerate meaningful connections between candidates and opportunities. Using AI capabilities, we analyze your application for relevant skills, experiences, and qualifications to generate valuable insights about how your unique profile aligns with the specific requirements of the role you're pursuing.

JLL Privacy Notice

Jones Lang LaSalle (JLL), together with its subsidiaries and affiliates, is a leading global provider of real estate and investment management services. We take our responsibility to protect the personal information provided to us seriously. Generally the personal information we collect from you are for the purposes of processing in connection with JLL’s recruitment process. We endeavour to keep your personal information secure with appropriate level of security and keep for as long as we need it for legitimate business or legal reasons. We will then delete it safely and securely.

For more information about how JLL processes your personal data, please view our Candidate Privacy Statement

For additional details please see our career site pages for each country.

Jones Lang LaSalle (“JLL”) is an Equal Opportunity Employer and is committed to working with and providing reasonable accommodations to individuals with disabilities. If you need a reasonable accommodation because of a disability for any part of the employment process – including the online application and/or overall selection process – you may email us at HRSCLeaves@jll.com This email is only to request an accommodation. Please direct any other general recruiting inquiries to our Contact Us page > I want to work for JLL.

JLL

About JLL

We’re a leading professional services firm that specializes in real estate and investment management. JLL shapes the future of real estate for a better world by using the most advanced technology to create rewarding opportunities, amazing spaces and sustainable real estate solutions for our clients, our people and our communities.

We want the most ambitious clients to work with us, and the most ambitious people to work for us. Join us.

Industry
Real Estate & Property
Company Size
10,000+ employees
Headquarters
Chicago, Illinois
Year Founded
Unknown
Website
jll.com
Social Media