Chennai

Data Engineer

Engineering & Technology Team On site

Company Description

JMAN Group is a fast-growing data engineering & data science consultancy. We work primarily with Private Equity Funds and their Portfolio Companies to create commercial value using Data & Artificial Intelligence. In addition, we also work with growth businesses, large corporates, multinationals, and charities.


We are headquartered in London with Offices in New York, London and Chennai. Our team of over 450 people is a unique blend of individuals with skills across commercial consulting, data science and software engineering.


We were founded by cousins Anush Newman (Co-founder & CEO) and Leo Valan (Co-founder & CTO) and have grown rapidly since 2019. In May 2023 we took a minority investment from Baird Capital and in January 2024 we opened an office in New York with the ambition of growing our US business to be as large as, if not bigger than, our European business by 2027.


Position

Technical Specifications:

  • 3 + years of experience in data platform build or any related field.
  • Familiarity and has worked with cloud-based data warehousing solutions (e.g., Snowflake, Redshift, Databricks, Fabric) and principles
  • Proficient in SQL and Apache Spark / Python programming languages.
  • Experience with cloud platforms like AWS, Azure, or GCP. Experience in data pipelines and ETL/ELT tools, including AWS Glue/Azure Data Factory/ Synapse/Matillion/DBT
  • Experience in implementing or working with data governance frameworks and practices to ensure data integrity and regulatory compliance. Knowledge of data quality tools and practices.
  • Good to have skills include o Data visualization using Power BI, Tableau, or Looker, and familiarity with full-stack technologies.
  • Experience with containerization technologies (e.g., Docker, Kubernetes)
  • Experience with CI/CD pipelines and DevOps methodologies.
  • Excellent communication, collaboration, and problem-solving skills.
  • Ability to work independently, adapt to changing priorities, and learn new technologies quickly

Requirements

Responsibilities:

  • Design and implement data pipelines using ETL/ELT tools and techniques.
  • Configure and manage data storage solutions, including relational databases, data warehouses, and data lakes.
  • Develop and implement data quality checks and monitoring processes.
  • Automate data platform deployments and operations using scripting and DevOps tools (e.g., Git, CI/CD pipeline).
  • Ensuring compliance with data governance and security standards throughout the data platform development process.
  • Troubleshoot and resolve data platform issues promptly and effectively.
  • Collaborate with the Data Architect to understand data platform requirements and design specifications.
  • Assist with data modelling and optimization tasks.
  • Work with business stakeholders to translate their needs into technical solutions.
  • Document the data platform architecture, processes, and best practices.
  • Stay up to date with the latest trends and technologies in full stack development, data engineering, and DevOps.
  • Proactively suggest improvements and innovations for the data platform.

Required Skillset:

  • ETL or ELT: AWS Glue/ Azure Data Factory/ Synapse/ Matillion/dbt.
  • Data Warehousing: Azure SQL Server/Redshift/Big Query/Databricks/Snowflake (Anyone - Mandatory).
  • Data Visualization: Looker, Power BI, Tableau. SQL and Apache Spark / Python programming languages
  • Containerization technologies (e.g., Docker, Kubernetes) Cloud Experience: AWS/Azure/GCP.
  • Scripting and DevOps tools (e.g., Git, CI/CD pipeline)
  • AWS Certification - AWS Foundational certificates or AWS Technical Certificates
Scroll to Top

Prep for Exit

Maximize valuation and de-risk transaction with robust, extensive and high-quality data
  • Does the target have the data assets required to drive value creation (including Al deployment)?
  • How do I get better data on my target and the wider market?

Value Creation

Accelerate value creation plan delivery using Data, Machine Learning & Gen Al
  • How do I use a data-driven approach to make my business more profitable?
  • How do I achieve as high a multiple as possible ?

Core Reporting

Track company performance and quantify value creation leavers with accurate real time data from automated systems
  • How can I get a real-time, detailed and consistent... view of my operational and financial metrics?
  • What is happening in our portfolio companies and across our fund?

Data Advisory

Balance short-term extraction of value from data with laying the right digital foundations.
  • How do I assess the maturity of my data foundations and value creation plan levers ?
  • How can I collaboratively create and deploy a roadmap of value-first initiatives that pay for future foundational investments?

Due Diligence

Understand target's market position and ability to execute their business plan
  • Does the target have the data assets required to drive value creation Including Al deployment ?
  • How do I get better data on my target and the wider market?