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Founding Data Scientist

Inveno

Singapore

On-site

SGD 70,000 - 100,000

Full time

14 days ago

Job summary

A technology startup in Singapore seeks a Data Scientist to develop machine learning models for automating resource planning in warehouses. This role involves optimizing processes and building an ML infrastructure. Candidates should have experience with optimization models and a solid foundation in Python and data science. A relevant degree is required.

Qualifications

  • Experience in designing and deploying constraint-based optimization models.
  • Proficiency in Python and data science tools.
  • Ability to translate operational problems into solvable ML models.

Responsibilities

  • Build the machine learning foundation for resource planning.
  • Architect and implement the core optimization engine.
  • Collaborate with engineering to design workflows.

Skills

constraint-based optimization models
Python
supervised ML
pandas
scikit-learn
MLOps

Education

Bachelor's or Master's degree in Computer Science, Operations Research, Statistics, or a related quantitative field

Tools

Google OR-Tools
Gurobi
CPLEX
NumPy
AWS
Azure
GCP
Docker
Kubernetes
PySpark
Job description
    You will be joining our tech team as the first Data Scientist at Inveno, a NYC based startup focused on automating manual resource planning in US Warehouses. Your primary responsibility will be to build the machine learning foundation that will revolutionize how resources are planned across thousands of warehouses in the US and optimize the processing of millions of packages. By harnessing operational data and developing custom AI and optimization models, you will enable warehouse managers to plan with precision, speed, and scale, thus eliminating inefficiencies and improving overall productivity.The founding team at Inveno consists of a warehouse operations expert with 8 years of experience at logistics startups, a CEO with a successful track record of building and exiting companies, and a CTO who has scaled engineering systems across various ventures internationally. The startup has already made significant progress, with the V1 product set to go live with the first client in 2 months and a paid contract secured with a global conglomerate.As a Data Scientist at Inveno, you will have the opportunity to lead the development and deployment of a foundational model that powers a critical sector. Your key responsibilities will include architecting and implementing the core optimization engine, building machine learning models using real-world warehouse data, collaborating with engineering to design workflows, and establishing MLOps best practices to ensure a robust and scalable ML infrastructure.To excel in this role, you must have experience in designing and deploying constraint-based optimization models using tools like Google OR-Tools, Gurobi, or CPLEX. Proficiency in Python and the data science stack is essential, along with a strong foundation in supervised ML techniques. You should be able to translate complex operational problems into solvable mathematical or ML models and hold a Bachelors or Masters degree in Computer Science, Operations Research, Statistics, or a related quantitative field.,

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