jobs in JLand Group - JLG

JLand Group - JLG Hiring! Full Time Full-Stack Engineer in Federal Territory - Ricebowl

Full-Stack Engineer

JLand Group - JLG

Undisclosed

KL City, Federal Territory

Share
Save

Working Location

  • Kuala Lumpur Federal Territory Malaysia

Job Description

Responsibilities

Company Description

Hatchlabs is Johor Capital Group's (JCG) wholly-owned, AI-native digital-solutions company. We build production software with small, senior teams using AI as a force multiplier — “problems to products in weeks, not months.” Our first flagship build is the IDEAS Platform — the operating system for JCG's investment mandate in Johor and the Johor–Singapore Special Economic Zone. It runs continuous market discovery, anchor and partner engagement, an eight-stage investment workflow, and portfolio stewardship on one shared data spine, with an agentic AI layer assisting human judgement at every step. The platform is built cloud-native on Microsoft Azure, in the Malaysia West region, for in-country data residency.


Role Description

  • Data pipeline. Build the Discover module's data backbone: ingestion from open data, subscriptions and listeners into a managed lakehouse, using Azure data services (Microsoft Fabric and/or Data Factory, ADLS).
  • Lakehouse. Model and transform data through bronze/silver/gold layers; own data quality, freshness and incremental loads.
  • Analytics. Implement signal scoring and analytical queries that turn raw market data into ranked opportunities.
  • Front end. Build the analytics-facing surfaces — the Command Centre views, dashboards and persona-specific reporting — in React / Next.js over the same spine.
  • Search & retrieval. Wire the vector and search layer (Azure AI Search) that powers retrieval for the platform's AI agents, in partnership with the AI engineer.
  • Discipline. Keep the analytical and operational data paths cleanly separated, and the data models portable and well-documented.


Qualifications

  • Full-stack capability (React / Next.js, TypeScript, Node.js) with genuine strength on the data side.
  • Strong SQL and data-modelling skills; experience building ETL/ELT pipelines and working with a lakehouse or warehouse.
  • Python for data work.
  • Able to reason about data quality, incremental loading, schema evolution and pipeline reliability — not just write queries.
  • Fluent with AI-assisted development.


Nice-to-have

  • Microsoft Fabric, Azure Data Factory, Synapse or Databricks experience.
  • Dbt or similar transformation tooling; Parquet / DuckDB familiarity.
  • Azure AI Search or other vector-search experience; exposure to RAG pipelines.
  • Data governance / cataloguing (Microsoft Purview).


First 90 Days, Success Look Like

  • A working ingestion-to-lakehouse pipeline feeding a live opportunity log in the Discover module.
  • First signal-scoring logic running and surfaced in the Command Centre.
  • Clean, documented, portable data models the rest of the team can build on.


How We Work

  •  Small, senior, AI-native team — you will use AI coding and agent tooling daily, and we expect you to be opinionated about where it helps and where it doesn't.
  • Iterative delivery in short cycles; we ship working software each cycle and build each module behind an API before its interface.
  • Azure-first and Microsoft-aligned (Entra ID, Azure DevOps/GitHub, Azure PaaS), with data resident in Malaysia and a strong audit and governance posture appropriate to a regulated capital-markets context.


Additionally, you may forward your resume to *************

Important Information

Never provide your bank or credit card details when applying for jobs. Do not transfer any money or complete unrelated online surveys. If you see something suspicious, Report this Job ad.

Learn More