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Remote Embedded Machine Learning Jobs in New York

Machine Learning Engineer

Manhattan, NY ยท On-site +1

$180K - $280K/yr

As a Machine Learning Engineer at Finch, you'll own the full lifecycle of AI systems, from ... for a remote-first role - this one is 4 days/week in our NYC office. Compensation The expected ...

Senior Machine Learning Engineer

New York, NY ยท Remote

$165K - $225K/yr

Career Renew is recruiting for one of its clients a Senior Machine Learning Engineer - this is a fully remote role for US/Canada based candidates. Salary range: 165-225K USD yearly plus benefits plus ...

Remote Commitment: 40 hours/week Role Responsibilities * Guide research and engineering teams to ... experience in Machine Learning , Data Science , Software Engineering , Computer Science ...

Senior Staff Machine Learning Engineer

New York, NY ยท On-site +1

$245K - $319K/yr

This position will be in Brooklyn, NY or for remote candidates based in the United States. Etsy is ... A foundational and practical understanding of machine learning principles and the critical steps ...

Senior Staff Machine Learning Engineer

Brooklyn, NY ยท On-site +1

$245K - $319K/yr

This position will be in Brooklyn, NY or for remote candidates based in the United States. Etsy is ... A foundational and practical understanding of machine learning principles and the critical steps ...

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Remote Embedded Machine Learning information

What are the key skills and qualifications needed to thrive as a Remote Embedded Machine Learning Engineer, and why are they important?

To thrive as a Remote Embedded Machine Learning Engineer, you need a solid background in embedded systems, machine learning algorithms, and programming languages like C/C++ and Python, often supported by a degree in computer science, electrical engineering, or related fields. Familiarity with microcontrollers, edge AI frameworks (such as TensorFlow Lite or Edge Impulse), and version control systems is typically required. Strong problem-solving skills, effective communication, and self-motivation are essential soft skills for collaborating remotely and troubleshooting complex issues. These skills ensure successful deployment of intelligent solutions on resource-constrained devices and effective teamwork in distributed environments.

What is a Remote Embedded Machine Learning Engineer?

A Remote Embedded Machine Learning Engineer is a professional who develops and deploys machine learning models on embedded systems like microcontrollers, IoT devices, and edge hardware, all while working remotely. Their work involves optimizing algorithms to run efficiently on devices with limited computing power, memory, and battery life. These engineers typically use frameworks such as TensorFlow Lite or TinyML to design intelligent features that operate directly on hardware, enabling real-time decision-making without relying heavily on cloud connectivity. They collaborate with cross-functional teams and often troubleshoot both software and hardware issues from a remote location.

What is the difference between Remote Embedded Machine Learning vs Remote Data Scientist?

AspectRemote Embedded Machine LearningRemote Data Scientist
Required CredentialsBachelor's or Master's in Computer Science, Electrical Engineering, or related fields; experience with embedded systems and ML frameworksBachelor's or Master's in Data Science, Statistics, or related fields; proficiency in data analysis and ML algorithms
Work EnvironmentEmbedded hardware devices, IoT systems, real-time processing environmentsCloud platforms, data analysis labs, remote offices
Employer & Industry UsageTech companies, IoT device manufacturers, automotive, roboticsFinance, healthcare, marketing, tech firms

Remote Embedded Machine Learning specialists focus on integrating ML models into embedded hardware for real-time applications, often working with IoT and robotics. In contrast, Remote Data Scientists analyze large datasets to extract insights, primarily working in cloud or office environments. Both roles require strong analytical skills but differ in technical focus and work settings.

What are some common challenges faced by Remote Embedded Machine Learning Engineers, and how can they be addressed?

Remote Embedded Machine Learning Engineers often encounter challenges related to hardware access, debugging embedded devices remotely, and collaborating with cross-functional teams across time zones. To address these, it's important to set up robust remote development environments, use simulation tools when physical hardware isn't available, and establish clear communication channels for effective teamwork. Regular virtual meetings and detailed documentation also help ensure alignment and smooth progress, despite the remote nature of the work.
What are the most commonly searched types of Embedded Machine Learning jobs in New York? The most popular types of Embedded Machine Learning jobs in New York are:
What job categories do people searching Remote Embedded Machine Learning jobs in New York look for? The top searched job categories for Remote Embedded Machine Learning jobs in New York are:
What cities in New York are hiring for Remote Embedded Machine Learning jobs? Cities in New York with the most Remote Embedded Machine Learning job openings:
Machine Learning Engineer / Data Scientist

Machine Learning Engineer / Data Scientist

Fusemachines

Manhattan, NY โ€ข Remote

Other

Posted 14 days ago


Job description

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 clientsโ€™ 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,ย  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

Weโ€™re hiring a mid-to-senior Machine Learning Engineer / Data Scientist to build and deploy machine learning solutions that drive measurable business impact. Youโ€™ll work across the ML lifecycleโ€”from problem framing and data exploration to model development, evaluation, deployment, and monitoringโ€”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

  • You deliver models that perform well and move business metrics (revenue lift, cost reduction, risk reduction, improved forecast accuracy, operational efficiency).

  • Your work is reproducible and production-aware: clear data lineage, robust evaluation, and a credible path to deployment/monitoring.

  • Stakeholders trust your judgment in selecting methods and communicating uncertainty honestly.

Required Qualifications

  • 3โ€“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

  • Experience with Databricks for applied ML (e.g., Spark, Delta Lake, MLflow, Databricks Jobs/Workflows).

  • Experience deploying models to production (APIs, batch pipelines) and maintaining them over time (monitoring, retraining).

  • Experience with orchestration tools (Airflow, Prefect, Dagster) and modern data stacks (Snowflake/BigQuery/Redshift/Databricks).

  • Experience with cloud platforms (AWS/GCP/Azure/IBM) and containerization (Docker).

  • Experience with responsible AI and governance best practices (privacy/PII handling, auditability, access controls).

  • Consulting or client-facing delivery experience.

Certifications (Strong Plus)

Candidates with at least one relevant certification are especially encouraged to apply:

  • Cloud certifications: AWS, Google Cloud, Microsoft Azure, or IBM (data/AI/ML tracks)

  • Databricks certifications (Data Scientist, Data Engineer, or related)

Nice-to-Have

  • Causal inference experience (e.g., quasi-experimental methods, propensity scores, uplift/heterogeneous treatment effects, experimentation beyond A/B tests).

  • Agentic development experience: designing and evaluating agentic workflows (tool use, planning, memory/state, guardrails) and integrating them into products.

  • Deep familiarity with agentic coding tools and workflows for accelerated product development (e.g., AI-assisted IDEs, code agents, automated testing/refactoring, repo-aware assistants), including strong judgment on quality, security, and maintainability.

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.

Important: Immigration Sponsorship Policy

Fusemachines is unable to proceed with candidates who require any form of work authorization or immigration support from the company. This restriction applies to all types of support, including:

  • Direct Company Sponsorship: Such as H-1B, J-1, or TN visas.

  • Employer of Record: Listing Fusemachines as the immigration employer on any government documentation.

  • Written Documentation: Providing letters or other support for any work authorization (e.g., OPT, STEM OPT, CPT).

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