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[Job-29268] Machine Learning Engineering, Colombia

Roles & Responsibilities

  • 4+ years in data engineering or applied data science roles, preferably with experience on AWS
  • Proficient in exploratory data analysis (EDA), statistical profiling, and feature engineering for time-series forecasting
  • Experience in data wrangling from relational databases (RDS, Oracle, PostgreSQL) into analytics-ready formats
  • Hands-on experience with Amazon SageMaker (training, evaluation, Clarify) and AWS data/ML services

Requirements:

  • Conduct Exploratory Data Analysis (EDA) and statistical profiling, perform feature engineering for time-series forecasting, and derive actionable insights
  • Wrangle and prepare data from relational databases (RDS, Oracle, PostgreSQL) into analytics-ready formats and build data ingestion/processing pipelines
  • Develop and evaluate classical ML models for time-series forecasting, regression, and capacity/throughput, using metrics such as RMSE, MAE, and MAPE; implement SHAP explainability where applicable
  • Create data visualizations and dashboards using Amazon QuickSight or equivalent BI tools; collaborate with stakeholders to translate business rules into feature engineering pipelines and deliver within milestone-driven, Firm Fixed Price projects

Job description

We are tech transformation specialists, uniting human expertise with AI to create scalable tech solutions.
With over 8,000 CI&Ters around the world, we’ve built partnerships with more than 1,000 clients during our 30 years of history. Artificial Intelligence is our reality. 

We are looking for a Data & Analytics Engineer supporting an AI/ML implementation for demand forecasting and resource optimization in the public transportation / fare collection industry. Works alongside an AWS ProServe ML Specialist on EDA, feature engineering, capacity modeling, and operational dashboards.
 
 
Responsibilities:
  • Exploratory Data Analysis (EDA):

    • Conduct EDA and statistical profiling to identify trends and insights from data.
    • Perform feature engineering specifically for time-series forecasting.
  • Data Wrangling and Preparation:

    • Extract and transform data from relational databases (RDS, Oracle, PostgreSQL) into analytics-ready formats.
    • Develop pipelines for data ingestion and processing.
  • Machine Learning Modeling:

    • Build classical ML models for time-series forecasting, regression, and capacity/throughput modeling.
    • Evaluate model performance using metrics such as RMSE, MAE, and MAPE, documenting performance results.
  • Data Visualization:

    • Create insightful data visualizations and dashboards using Amazon QuickSight or equivalent BI tools.
  • Python Data Stack:

    • Utilize the Python data stack (pandas, NumPy, scikit-learn, matplotlib/seaborn) for data manipulation and analysis.
  • Model Explainability:

    • Apply SHAP or other model explainability techniques to interpret model outputs.
  • Collaboration and Communication:

    • Work closely with stakeholders to translate business rules into effective feature engineering pipelines.
    • Engage in milestone-driven, Firm Fixed Price delivery models, ensuring timely project completion.

 

Requirements for this challenge:

  • 4+ years in data engineering or applied data science roles, preferably with experience on AWS.
  • Proficient in exploratory data analysis (EDA), statistical profiling, and feature engineering for time-series forecasting.
  • Experience in data wrangling from relational databases (RDS, Oracle, PostgreSQL) into analytics-ready formats.
  • Strong understanding of classical ML modeling techniques, including time-series forecasting and regression.
  • Familiarity with model evaluation metrics (RMSE, MAE, MAPE) and performance documentation.
  • Experience in data visualization and dashboard development using Amazon QuickSight or equivalent BI tools.
  • Hands-on experience with Amazon SageMaker (training, evaluation, Clarify).
  • Proficient in the Python data stack, including pandas, NumPy, scikit-learn, matplotlib, and seaborn.
  • Working knowledge of SQL and dimensional modeling.
  • Familiarity with SHAP or model explainability techniques is a plus.
 
Expected Certifications
 
  • AWS Certified Cloud Practitioner
  • AWS Certified Data Engineer – Associate
  • AWS Certified Machine Learning – Associate or AWS Certified Machine Learning – Specialty
 
 
 
#LI-LO1
Our benefits include:

- Premium Healthcare
- Meal voucher
- Maternity and Parental leaves
- Mobile services subsidy
- Sick pay-Life insurance
- CI&T University   
- Colombian Holidays
- Paid Vacations
And many others. 


Collaboration is our superpower, diversity unites us, and excellence is our standard. 
We value diverse identities and life experiences, fostering a diverse, inclusive, and safe work environment. We encourage applications from diverse and underrepresented groups to our job positions.

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