Senior Digitalization Specialist - Microsoft Power Platform & Python Development
SGP, Singapore, 80 Bendemeer Road, Suite 04-01, Singapore
KBR, Inc.
Title:
Senior Digitalization Specialist - Microsoft Power Platform & Python DevelopmentKBR Singapore is seeking a highly skilled Senior Digitalization Specialist to lead digital transformation initiatives using Microsoft Power Platform and Python development. The successful candidate will play a pivotal role in modernizing EPC operations, optimizing project workflows, and implementing innovative digital solutions across various Energy projects.
Job Responsibilities:
Digital Solution Development
Design, develop, and deploy enterprise-grade applications using Microsoft Power Platform (Power Apps, Power Automate, Power BI, Power Virtual Agents)
Create custom Python applications and automation scripts to support complex engineering and project management workflows
Integrate Power Platform solutions with existing engineering software and project management tools
Develop data analytics and visualization solutions to support decision-making and performance monitoring across projects
Oil & Gas EPC Domain Expertise
Apply a deep understanding of EPC project lifecycles to identify digitalization opportunities across engineering, procurement, and construction phases
Implement digital solutions for piping design workflows, equipment procurement tracking, construction progress monitoring, and commissioning processes
Develop custom applications to support HSE (Health, Safety & Environment) compliance, quality assurance, and regulatory reporting
Process Optimization & Automation
Analyze existing business processes to identify opportunities for digital transformation and automation
Design and implement workflow automation solutions to reduce manual effort and enhance project efficiency
Develop automated reporting systems for project KPIs, cost tracking, and schedule management
Create integration solutions between engineering software (e.g., AutoCAD Plant 3D, PDMS, SmartPlant) and business systems
Data Management & Analytics
Design and implement data governance frameworks for project and operational data
Develop Python-based ETL processes to integrate data from multiple sources
Create advanced analytics and machine learning models to enhance engineering efficiency
Build comprehensive dashboards and reporting solutions using Power BI to improve stakeholder visibility
Job Requirements:
Degree in any Engineering discipline
Minimum of 10 years of professional experience in software development and digitalization
Expert-level proficiency in the Microsoft Power Platform suite (Power Apps, Power Automate, Power BI, Power Virtual Agents)
Advanced Python programming skills, including experience with frameworks such as Pandas, NumPy, and other data science libraries
Strong experience with database technologies (SQL Server, Azure SQL, PostgreSQL) and data modeling
Proficiency in cloud platforms, preferably Microsoft Azure (Logic Apps, Functions, Data Factory)
Experience with API development and integration patterns
Knowledge of version control systems (Git), CI/CD pipelines, and DevOps practices
Minimum of 5 years of experience in the Oil & Gas industry, preferably in an EPC environment
Deep understanding of EPC project lifecycles, engineering workflows, and industry standards
Familiarity with engineering software commonly used in the Oil & Gas sector (AutoCAD, SmartPlant, AVEVA, Bentley MicroStation)
Familiarity with industry standards and regulations, HSE requirements, and quality standards such as API, ASME, NACE, and ISO
Familiarity with project management methodologies and tools used in large-scale projects
* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰
Tags: API Development APIs Azure CI/CD Data Analytics Data governance Data management DevOps Engineering ETL Git KPIs Machine Learning ML models NumPy Pandas Pipelines PostgreSQL Power BI Python SQL
Perks/benefits: Career development
More jobs like this
Explore more career opportunities
Find even more open roles below ordered by popularity of job title or skills/products/technologies used.