Senior Machine Learning Engineer

Work set-up: 
Full Remote
Contract: 
Experience: 
Mid-level (2-5 years)
Work from: 

Offer summary

Qualifications:

Bachelor's or Master's degree in Computer Science, Engineering, Statistics, or related field., At least 5 years of industry experience in building and deploying machine learning models., Proficiency in Python and machine learning libraries like scikit-learn, TensorFlow, or PyTorch., Experience with cloud platforms such as AWS SageMaker or Google Vertex AI, and scalable backend systems..

Key responsibilities:

  • Design, develop, and deploy machine learning models for various applications.
  • Build and maintain feature pipelines and conduct model experimentation and evaluation.
  • Collaborate with cross-functional teams and mentor junior engineers.
  • Monitor and maintain models in production, ensuring performance and reliability.

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ItsaCheckmate Scaleup https://itsacheckmate.com/
201 - 500 Employees
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Job description

We’re seeking a Mid-Level Machine Learning Engineer to join our growing Data Science & Engineering team. In this role, you will design, develop, and deploy ML models that power our cutting-edge technologies like voice ordering, prediction algorithms and customer-facing analytics. You’ll collaborate closely with data engineers, backend engineers, and product managers to take models from prototyping through to production, continuously improving accuracy, scalability, and maintainability.

Essential Job Functions

• Model Development: Design and build next-generation ML models using advanced tools like PyTorch, Gemini, and Amazon SageMaker - primarily on Google Cloud or AWS platforms.

• Feature Engineering: Build robust feature pipelines; extract, clean, and transform largescale transactional and behavioral data. Engineer features like time- based attributes, aggregated order metrics, categorical encodings (LabelEncoder, frequency encoding).

• Experimentation & Evaluation: Define metrics, run A/B tests, conduct cross-validation, and analyze model performance to guide iterative improvements. Train and tune regression models (XGBoost, LightGBM, scikit-learn, TensorFlow/Keras) to minimize MAE/RMSE and maximize R².

• Own the entire modeling lifecycle end-to-end, including feature creation, model development, testing, experimentation, monitoring, explainability, and model maintenance.

• Monitoring & Maintenance: Implement logging, monitoring, and alerting for model drift and data-quality issues; schedule retraining workflows.

• Collaboration & Mentorship: Collaborate closely with data science, engineering, and product teams to define, explore, and implement solutions to open-ended problems that advance the capabilities and applications of Checkmate, mentor junior engineers on best practices in ML engineering.

• Documentation & Communication: Produce clear documentation of model architecture, data schemas, and operational procedures; present findings to technical and non-technical stakeholders.

Requirements

  • Academics: Bachelors/Master’s degree in Computer Science, Engineering, Statistics, or related field

  • Experience:

5+ years of industry experience (or 1+ year post-PhD).

Building and deploying advanced machine learning models that drive business impact

Proven experience shipping production-grade ML models and optimization systems, including expertise in experimentation and evaluation techniques.

Hands-on experience building and maintaining scalable backend systems and ML inference pipelines for real-time or batch prediction

  • Programming & Tools:

Proficient in Python and libraries such as pandas, NumPy, scikit-learn; familiarity with TensorFlow or PyTorch.

Hands-on with at least one cloud ML platform (AWS SageMaker, Google Vertex AI, or Azure ML).

  • Data Engineering:

Hands-on experience with SQL and NoSQL databases; comfortable working with Spark or similar distributed frameworks.

Strong foundation in statistics, probability, and ML algorithms like XGBoost/LightGBM; ability to interpret model outputs and optimize for business metrics.

Experience with categorical encoding strategies and feature selection.

Solid understanding of regression metrics (MAE, RMSE, R²) and hyperparameter tuning.

  • Cloud & DevOps: Proven skills deploying ML solutions in AWS, GCP, or Azure; knowledge of Docker, Kubernetes, and CI/CD pipelines
  • Collaboration: Excellent communication skills; ability to translate complex technical concepts into clear, actionable insights.
  • Working Terms: Candidates must be flexible and work during US hours at least until 6 p.m. ET in the USA, which is essential for this role & must also have their own system/work setup for remote work.

Required profile

Experience

Level of experience: Mid-level (2-5 years)
Spoken language(s):
English
Check out the description to know which languages are mandatory.

Other Skills

  • Collaboration
  • Communication

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