About Fusemachines
Founded in 2013, Fusemachines is a global provider of enterprise AI products and services, on a mission to democratize AI. Leveraging proprietary AI Studio and AI Engines, the company helps drive the clients’ AI Enterprise Transformation, regardless of where they are in their Digital AI journeys. With offices in North America, Asia, and Latin America, Fusemachines provides a suite of enterprise AI offerings and specialty services that allow organizations of any size to implement and scale AI. Fusemachines serves companies in industries such as retail, manufacturing, and government.
Fusemachines continues to actively pursue the mission of democratizing AI for the masses by providing high-quality AI education in underserved communities and helping organizations achieve their full potential with AI.
Type: Full-time, Remote
Role Overview
We’re hiring a mid-to-senior Machine Learning Engineer / Data Scientist to build and deploy machine learning solutions that drive measurable business impact. You’ll work across the ML lifecycle—from problem framing and data exploration to model development, evaluation, deployment, and monitoring—often in partnership with client stakeholders and internal delivery teams.
You should be strong in core data science and applied machine learning, comfortable working with real-world data, and capable of turning modeling work into production-ready systems.
Key Responsibilities
Problem Framing & Stakeholder Partnership
Translate business questions into ML problem statements (classification, regression, time series forecasting, clustering, anomaly detection, recommendation, etc.)
Collaborate with stakeholders to define success metrics, evaluation plans, and practical constraints (latency, interpretability, cost, data availability)
Data Analysis & Feature Engineering
Use SQL and Python to extract, join, and analyze data from relational databases and data warehouses
Perform data profiling, missingness analysis, leakage checks, and exploratory analysis to guide modeling choices
Build robust feature pipelines (aggregation, encoding, scaling, embeddings where appropriate) and document assumptions
Model Development (Core ML)
Train and tune supervised learning models for tabular data (e.g., logistic/linear models, tree-based methods, gradient boosting such as XGBoost/LightGBM/CatBoost, and neural nets for structured data)
Apply strong tabular modeling practices: handling missing data, categorical encoding, leakage prevention, class imbalance strategies, calibration, and robust cross-validation
Build time series models (statistical and ML/DL approaches) and validate with proper backtesting
Apply clustering and segmentation techniques (k-means, hierarchical, DBSCAN, Gaussian mixtures) and evaluate stability and usefulness
Apply statistics in practice (hypothesis testing, confidence intervals, sampling, experiment design) to support inference and decision-making
Deep Learning
Build and train deep learning models using PyTorch or TensorFlow/Keras
Use best practices for training (regularization, calibration, class imbalance handling, reproducibility, sound train/val/test design)
Evaluation, Explainability, and Iteration
Choose appropriate metrics (AUC/F1/PR, RMSE/MAE/MAPE, calibration, lift, and business KPIs) and create evaluation reports
Perform error analysis and interpretation (feature importance/SHAP, cohort slicing) and iterate based on evidence
Productionization & MLOps (Project-Dependent)
Package models for deployment (batch scoring pipelines or real-time APIs) and collaborate with engineers on integration
Implement practical MLOps: versioning, reproducible training, automated evaluation, monitoring for drift/performance, and retraining plans
Documentation & Communication
Communicate tradeoffs and recommendations clearly to technical and non-technical stakeholders
Create documentation and lightweight demos that make results actionable
Success in This Role Looks Like
Required Qualifications
3–8 years of experience in data science, machine learning engineering, or applied ML (mid-to-senior)
Strong Python skills for data analysis and modeling (pandas/numpy/scikit-learn or equivalent)
Strong SQL skills (joins, window functions, aggregation, performance awareness)
Solid foundation in statistics (hypothesis testing, uncertainty, bias/variance, sampling) and practical experimentation mindset
Hands-on experience across multiple model types, including:
Classification & regression
Time series forecasting
Clustering/segmentation
Experience with deep learning in PyTorch or TensorFlow/Keras
Strong problem-solving skills: ability to work with ambiguous goals and messy data
Clear communication skills and ability to translate analysis into decisions
Preferred Qualifications
Certifications (Strong Plus)
Candidates with at least one relevant certification are especially encouraged to apply:
Nice-to-Have
_Fusemachines is an Equal Opportunities Employer, committed to diversity and inclusion. All qualified applicants will receive consideration for employment without regard to race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or any other characteristic protected by applicable federal, state, or local laws.
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