PSignite
PSignite

Machine Learning Engineer

TLDR

Design, deploy, and scale end-to-end ML pipelines on AWS, collaborating with data scientists to drive pricing, promotions analytics, and business decisions.

Job Description

CPGvision is a recognized leader in Trade Promotion Management (TPM), Trade Promotion Optimization (TPO), and Revenue Growth Management (RGM). Leveraging the power of the Salesforce platform, we enable consumer goods companies to achieve their RGM objectives through our fully integrated, user-friendly solution suite.


About the Team

Our Data Science team builds scalable machine learning models that power advanced analytics for the CPG and Retail industries. We help global brands optimize their pricing and promotional strategies by forecasting sales volume, measuring promotion effectiveness, and analyzing price elasticity of demand.

We are looking for a Machine Learning Engineer to strengthen the engineering backbone of our ML systems - designing robust training pipelines, deploying models to production, and ensuring our solutions run reliably at scale on cloud infrastructure.


Work Mode

Fully remote. On-site collaboration 2-3 days per quarter.


Key Responsibilities

  • ML Pipeline Development: Design, build, and maintain end-to-end machine learning pipelines covering data ingestion, feature engineering, model training, evaluation, and serving.
  • Model Training & Optimization: Train and optimize gradient boosting models (LightGBM, XGBoost) and deep learning architectures such as Temporal Fusion Transformers (TFT) for time-series forecasting at scale.
  • Cloud Infrastructure: Deploy and manage ML workloads on AWS (S3, EC2, Lambda), including containerized training jobs, scheduled retraining, and model artifact management.
  • Production Deployment: Package models for production use with proper versioning, monitoring, and automated testing. Ensure reproducibility and traceability of experiments.
  • Code Quality & Best Practices: Write clean, well-tested, modular Python code following software engineering best practices (OOP, design patterns, typing, linting, CI/CD).
  • Collaboration: Work closely with Data Scientists and business stakeholders to translate analytical prototypes into production-ready solutions and communicate technical decisions clearly.

You Must Have

  • A degree in Computer Science, Data Science, Engineering, Applied Mathematics, or a related field.
  • Minimum 2 years of commercial experience as a Machine Learning Engineer, Data Engineer, or a similar role with strong ML focus.
  • Strong Python skills with emphasis on best practices (OOP, type hints, testing, clean architecture, packaging).
  • Hands-on experience training and deploying gradient boosting models (LightGBM, XGBoost).
  • Working knowledge of AWS (S3, EC2, Lambda) and the ability to set up and manage cloud-based ML workloads.
  • Proficiency in Docker for containerizing ML services and pipelines.
  • Solid SQL skills for data extraction and transformation.
  • Comfortable working in a Linux terminal environment.
  • Communicative English, sufficient for reading documentation, code reviews, and presenting technical decisions to the team.

Nice to Have

  • Experience with experiment tracking and model registry tools (e.g. MLflow).
  • Experience with OCR tools
  • Experience with deep learning models for time-series, in particular Temporal Fusion Transformers (TFT) or similar architectures.
  • Experience with workflow orchestration (e.g. Airflow, Prefect, Step Functions).
  • Familiarity with hyperparameter optimization frameworks (e.g. Optuna).
  • Knowledge of Infrastructure as Code (e.g. Terraform, CloudFormation).
  • Familiarity with CPG/FMCG or Retail data domains.
  • Experience with Explainable AI tools (e.g. SHAP).

What We Offer

  • Choice of employment contract or B2B.
  • Fully remote work with quarterly on-site meetups (2-3 days).
  • Work with large-scale datasets and real impact on decisions of major corporations.
  • A structured development process from research through to production deployment.
  • Access to cloud computing infrastructure (AWS) and a modern technology stack.
  • Opportunity to shape the ML engineering culture and tooling within the team.
  • Mentorship support.
  • Multisport card.
  • Private medical care.

 

PSignite invests in the development of its employees. We are committed and aspire to leverage the qualities and appreciate each person's unique competencies to bring to our company. We are an Equal Opportunity, Affirmative Action employer. Minorities, women, veterans, and individuals with disabilities are encouraged to apply.

Benefits

Education Stipend

A structured development process from research through to production deployment.

Equity Compensation

Opportunity to shape the ML engineering culture and tooling within the team.

Health Insurance

Private medical care.

Home Office Stipend

Access to cloud computing infrastructure (AWS) and a modern technology stack.

Learning Budget

Mentorship support.

Paid Time Off

Choice of employment contract or B2B.

Remote-Friendly

Fully remote work with quarterly on-site meetups (2-3 days).

Wellness Stipend

Multisport card.

PSignite builds a powerful solution suite that integrates seamlessly with the Salesforce platform, specifically designed for consumer goods companies. Our focus is on Trade Promotion Management and Optimization, helping businesses drive revenue growth effectively and efficiently. We stand out by combining user-friendliness with advanced analytics to meet the specific needs of the CPG market.

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