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Remote Machine Learning Jobs in Sicklerville, NJ

Data Scientist

Conshohocken, PA · On-site +1

$175K/yr

Remote (Preference for Northeast/Mid-Atlantic; monthly travel to Plymouth Meeting, PA as needed ... Develop predictive models, scoring frameworks, and machine learning solutions that enhance business ...

... machine learning models, including data labeling, content evaluation, and user-based testing. Projects may vary in scope and format, offering both remote and in-person opportunities (such as device ...

... machine learning models, including data labeling, content evaluation, and user-based testing. Projects may vary in scope and format, offering both remote and in-person opportunities (such as device ...

Overview Location * US-Remote or Marlton, NJ area Job Title * Software Engineer Salary ... Build and integrate AI-enabled capabilities into applications, including machine learning models ...

Data Scientist

Camden, NJ · On-site +1

$109K - $150K/yr

You will leverage machine learning and advanced analytics to improve forecast accuracy, optimize ... Hybrid work model based in Camden, NJ (Monday & Friday remote; Tuesday-Thursday in-office) * 10-15 ...

Data Scientist

Camden, NJ · On-site +1

$109K - $150K/yr

You will leverage machine learning and advanced analytics to improve forecast accuracy, optimize ... Hybrid work model based in Camden, NJ (Monday & Friday remote; Tuesday-Thursday in-office) * 10-15 ...

Data Scientist

Camden, NJ · On-site +1

$109K - $157K/yr

You will leverage machine learning and advanced analytics to improve forecast accuracy, optimize ... Friday remote; Tuesday Thursday in-office)10 15% travel for company and customer ...

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Showing results 1-20

Remote Machine Learning information

See Sicklerville, NJ salary details

$24.9K

$41.6K

$86.1K

How much do remote machine learning jobs pay per year?

As of Jul 13, 2026, the average yearly pay for remote machine learning in Sicklerville, NJ is $41,641.00, according to ZipRecruiter salary data. Most workers in this role earn between $31,800.00 and $45,000.00 per year, depending on experience, location, and employer.

What engineer makes $500,000 a year?

Senior machine learning engineers with extensive experience, advanced skills in deep learning and data modeling, and often working at large tech companies or in specialized industries can earn salaries approaching or exceeding $500,000 annually. Compensation may include base salary, bonuses, and stock options, especially in high-demand markets.

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

To thrive as a Remote Machine Learning Engineer, you need a strong background in mathematics, statistics, programming (often Python), and experience with machine learning frameworks, typically supported by a relevant degree. Familiarity with tools such as TensorFlow, PyTorch, cloud platforms (like AWS or GCP), and version control systems is crucial. Strong problem-solving abilities, self-management, and effective virtual communication distinguish top performers in remote settings. These competencies ensure the engineer can build effective models, collaborate across distributed teams, and deliver impactful solutions independently.

How to make 2000 a week working from home?

Remote machine learning professionals can earn $2,000 or more weekly by taking on high-paying freelance projects, consulting roles, or working for companies that offer remote positions with competitive salaries. Building specialized skills in programming, data analysis, and tools like Python, TensorFlow, or cloud platforms can increase earning potential. Consistent work, a strong portfolio, and networking are key to reaching this income level from home.

What Are Remote Machine Learning Jobs?

Machine learning is a method of analyzing data via automating analytical model building. The premise is that systems can learn from data. Machine learning positions include machine learning engineer, computer vision engineer, and senior deep learning engineer. In a remote machine learning job, you work from home in a branch of artificial intelligence performing duties related to computational processing and data. Your goal is to design models that solve business problems, such as helping organizations avoid unknown risks or find profitable opportunities. Your responsibilities include maintaining data pipelines, performing model research and implementation, building machine learning systems, and onboarding new utilities.

What is a remote machine learning job?

A remote machine learning job involves working with algorithms, data, and models to develop predictive systems or automate tasks, all while working from a location outside of a traditional office setting. Professionals in this role use techniques from statistics and computer science to analyze data, train machine learning models, and deploy solutions for real-world applications. Remote machine learning jobs can span various industries, including technology, healthcare, finance, and e-commerce. These roles typically require strong programming skills, knowledge of machine learning frameworks, and the ability to communicate findings effectively with team members or stakeholders. Working remotely offers flexibility, but also requires discipline and self-motivation to succeed.

What are some effective strategies for collaborating with team members while working remotely as a Machine Learning Engineer?

Collaboration in a remote Machine Learning role often relies on clear communication through digital tools such as Slack, Zoom, and project management platforms like Jira or Asana. Regular check-ins and stand-up meetings help keep everyone aligned on project goals and timelines. Sharing code and models via version control systems (like Git) and using collaborative notebooks (such as JupyterHub or Google Colab) are also common practices. Building strong documentation habits and proactively seeking feedback can help ensure smooth teamwork and project success, even across different time zones.

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

AspectRemote Machine LearningData Scientist
Required CredentialsBachelor's/Master's in CS, ML certificationsBachelor's/Master's in CS, Statistics, or related field
Work EnvironmentRemote, collaborative teams, tech companiesRemote or on-site, diverse industries, analytics focus
Industry UsageTech, AI startups, researchFinance, healthcare, e-commerce, tech
Search & Comparison IntentOften compared for technical roles in AI/MLBroader data analysis roles, but overlapping skills

Remote Machine Learning specialists focus on developing algorithms and models primarily in tech environments, often requiring advanced programming and ML knowledge. Data Scientists analyze data to extract insights, sometimes utilizing ML techniques. While both roles share skills and credentials, Remote Machine Learning emphasizes model development, whereas Data Scientists focus on data analysis and interpretation.

Are there remote machine learning jobs?

Yes, remote machine learning jobs are widely available across various industries, often requiring skills in programming, data analysis, and familiarity with tools like Python, TensorFlow, or PyTorch. Many companies offer flexible schedules and remote work options for qualified candidates, especially in tech and research sectors.

Will MLE be replaced by AI?

Machine Learning Engineers (MLEs) design, develop, and deploy AI models, and their role involves understanding algorithms, data preprocessing, and model optimization. While AI automation tools can handle certain tasks, MLEs are essential for creating, fine-tuning, and maintaining complex AI systems, making complete replacement unlikely in the near term.
What are popular job titles related to Remote Machine Learning jobs in Sicklerville, NJ? For Remote Machine Learning jobs in Sicklerville, NJ, the most frequently searched job titles are:
What job categories do people searching Remote Machine Learning jobs in Sicklerville, NJ look for? The top searched job categories for Remote Machine Learning jobs in Sicklerville, NJ are:
What cities near Sicklerville, NJ are hiring for Remote Machine Learning jobs? Cities near Sicklerville, NJ with the most Remote Machine Learning job openings:
Infographic showing various Remote Machine Learning job openings in Sicklerville, NJ as of July 2026, with employment types broken down into 1% As Needed, 74% Full Time, 23% Part Time, 1% Temporary, and 1% Contract. Highlights an 89% Physical, 1% Hybrid, and 10% Remote job distribution, with an average salary of $41,641 per year, or $20 per hour.
Principal Machine Learning Engineer

Principal Machine Learning Engineer

Medical Guardian

Philadelphia, PA • Remote

Full-time

Medical, Dental, Vision, Life, Retirement, PTO

Re-posted 24 days ago


Job description

About Medical Guardian: 

Founded in 2005, Medical Guardian is a fast-growing digital health and safety company on a mission to help people live a life without limits. With 13 consecutive years on the Inc. 5000 list of Fastest Growing Companies, we're redefining what it means to age confidently and independently. 

We support over 625,000 members nationwide with life-saving emergency response systems and remote patient monitoring solutions. Trusted by families, healthcare providers, and care managers, our work is powered by a culture of innovation, compassion, and purpose. 

Medical Guardian boasts a 95% customer satisfaction rate, a #1 ranking on 16 medical alert consumer choice sites and achieves a 4.7+ star rating on Google Reviews. 

Position Overview:

We are looking for a Principal Machine Learning Engineer to serve as a hands-on technical leader for machine learning, predictive modeling, scoring, decisioning, and applied AI initiatives. This role will primarily focus on building, validating, deploying, and improving machine learning models, while also bringing principal-level judgment to problem definition, model design, stakeholder engagement, and production readiness. 

This is a hands-on model-building role first. The ideal candidate should be comfortable spending most of their time working directly with data, features, models, scoring logic, validation methods, production workflows, and model improvement. They should also be able to operate with the maturity of a principal-level engineer: shaping unclear problems, making pragmatic technical decisions, mentoring others, and driving work forward without waiting for perfect requirements. 

Key Responsibilities: 

Hands-On Model Development 

  • Build, test, validate, and improve machine learning models for scoring, prediction, prioritization, risk detection, engagement, intervention targeting, and decision support. 
  • Perform exploratory data analysis, data quality assessment, feature engineering, model training, model selection, and performance evaluation. 
  • Develop practical ML models that balance predictive performance, explainability, stability, maintainability, and business usefulness. 
  • Work with structured, semi-structured, and operational data to create model-ready datasets and reusable features. 
  • Use tools such as Python, SQL, Spark, Databricks, MLflow, scikit-learn, XGBoost, or similar platforms and libraries. 
  • Move quickly from data exploration to prototype to validated model to production-ready capability. 

Scoring, Scorecards, and Transparent Models 

  • Design and implement predictive scores, risk tiers, score bands, thresholds, cut points, and intervention logic. 
  • Build transparent and interpretable models where explainability is important, including logistic regression, generalized linear models, decision trees, monotonic models, calibrated models, scorecard-style models, or explainable boosting approaches. 
  • Evaluate models for accuracy, calibration, stability, drift, fairness, interpretability, and operational usefulness. 
  • Help stakeholders understand what a score represents, how it should be used, how it should not be used, and how changes in the score should be interpreted. 
  • Document model logic, features, assumptions, limitations, validation results, and recommended usage in a way that business and technical stakeholders can understand. 
  • Define the evidence needed to show that a model or score is valid, stable, explainable, actionable, and useful. 

Production ML and MLOps 

  • Partner with data engineering, analytics engineering, platform engineering, and application engineering teams to move models from experimentation into reliable production workflows. 
  • Support model deployment, batch scoring, real-time or near-real-time inference, model versioning, monitoring, retraining, and performance tracking. 
  • Help define data pipelines, feature pipelines, inference flows, model outputs, feedback loops, and monitoring requirements. 
  • Ensure models are observable, supportable, secure, scalable, and aligned with enterprise architecture and governance expectations. 
  • Establish practical monitoring and feedback loops to determine whether models continue to perform and create value over time. 

Product and Rapid-Build Execution 

  • Operate effectively in a rapid-build, startup-like environment where speed, ownership, and pragmatic decision-making are important. 
  • Turn early-stage ideas, ambiguous business needs, and rough concepts into working ML products, scores, prototypes, and production capabilities. 
  • Bring a product-engineering mindset to ML development, including user needs, workflow integration, adoption, usability, feedback loops, and measurable outcomes. 
  • Drive work forward without waiting for perfect requirements, while still identifying critical assumptions, risks, dependencies, and evidence needed before scaling. 
  • Partner with business and product stakeholders to define MVPs, iterate quickly, learn from usage, and improve models over time. 
  • Make smart tradeoffs between quick prototypes, durable platforms, transparent models, GenAI-enabled workflows, and longer-term ML architecture. 

Generative AI and AI Automation 

  • Support the design and development of GenAI-enabled solutions, including LLM-powered workflows, RAG, summarization, conversational agents, document intelligence, and decision-support tools. 
  • Help evaluate when GenAI is appropriate versus when traditional ML, rules, analytics, or transparent scoring models are a better fit. 
  • Partner with product, engineering, and business stakeholders to integrate predictive models, scores, and GenAI outputs into practical workflows. 
  • Apply appropriate evaluation, guardrails, monitoring, privacy controls, and human-in-the-loop processes for GenAI use cases. 
  • Help the organization balance innovation with explainability, safety, reliability, privacy, and operational usefulness. 

Requirement Shaping and Stakeholder Partnership 

  • Work directly with business, product, analytics, operations, and engineering stakeholders to clarify what a model is intended to predict, explain, recommend, or trigger. 
  • Translate business questions into measurable ML objectives, target variables, features, validation approaches, and success metrics. 
  • Ask practical questions early: who will use the score, what action will it inform, what does a false positive or false negative mean, and how will we know the model is creating value? 
  • Communicate model behavior, tradeoffs, limitations, and recommended usage clearly to both technical and non-technical audiences. 
  • Help the team avoid becoming an AI ticket factory by shaping solutions, not just executing requests. 

Principal-Level Technical Leadership 

  • Provide technical leadership through hands-on example, strong engineering judgment, and clear recommendations. 
  • Proactively identify model risks, data gaps, unclear requirements, design issues, and opportunities for improvement. 
  • Help establish practical standards for model development, validation, documentation, monitoring, and production readiness. 
  • Mentor other engineers and data scientists through code reviews, design reviews, modeling guidance, and shared best practices. 
  • Demonstrate high ownership by driving clarity, execution, and continuous improvement. 

Required Qualifications: 

  • 8+ years of professional experience in machine learning, data science, software engineering, analytics engineering, applied AI, or related technical fields. 
  • 5+ years of hands-on machine learning model development experience, including feature engineering, model training, validation, evaluation, and iteration. 
  • 3+ years of experience deploying, operationalizing, or supporting models in production or business-critical environments. 
  • Strong hands-on experience with Python and SQL. 
  • Experience with modern ML and data platforms such as Databricks, Spark, MLflow, Snowflake, Azure, AWS, or similar technologies. 
  • Strong understanding of model evaluation, calibration, thresholding, score interpretation, monitoring, drift, retraining, and production ML lifecycle management. 
  • Experience translating ambiguous business problems into concrete ML designs, model requirements, validation plans, and measurable outcomes. 
  • Ability to explain model behavior, model performance, assumptions, limitations, and tradeoffs to both technical and non-technical stakeholders. 
  • Strong engineering discipline, including clean code, reproducibility, versioning, testing, documentation, and maintainability. 
  • Ability to work independently as a senior hands-on contributor while also providing technical leadership and modeling judgment. 

Preferred Qualifications: 

  • 10+ years of relevant professional experience in ML, data science, applied AI, software engineering, decisioning systems, commercial software, or production analytics. 
  • Experience building scorecards, risk scores, health scores, engagement scores, churn scores, fraud scores, credit-style models, prioritization models, or operational decision-support models. 
  • Experience with transparent or interpretable models such as logistic regression, GLMs, GAMs, decision trees, monotonic models, calibrated models, scorecard-based models, or Explainable Boosting Machines. 
  • Experience designing score bands, thresholds, risk tiers, intervention rules, recommended actions, or decision logic based on model outputs. 
  • Experience working in commercial software, SaaS, digital products, gaming, fintech, healthtech, consumer technology, marketplace, or other product-driven environments. 
  • Experience building ML, AI, analytics, or decisioning capabilities embedded into customer-facing products, operational workflows, commercial platforms, or revenue-impacting systems. 
  • Experience in startup, scale-up, innovation lab, new product development, or rapid-build environments where the candidate had to operate with ambiguity and drive work forward independently. 
  • Experience partnering with product managers, designers, software engineers, business leaders, and operational teams to turn ML models into usable product capabilities. 
  • Experience building MVPs, validating assumptions, iterating based on feedback, and maturing prototypes into production systems. 
  • Experience with GenAI, LLMs, RAG, AI agents, prompt engineering, model evaluation, conversational AI, summarization, document intelligence, or AI-enabled workflow automation. 
  • Experience combining traditional ML models with GenAI-enabled workflows, such as using predictive scores to trigger outreach, summarize customer/member context, recommend next actions, or support human decision-making. 
  • Experience in healthcare, population health, remote patient monitoring, insurance, financial services, safety, operations, or other domains where model trust and explainability are important. 
  • Experience with MLOps practices including model registries, deployment pipelines, monitoring, drift detection, retraining strategies, and model governance. 

Success in This Role Looks Like: 

  • High-quality models and scores are built, validated, deployed, monitored, and improved over time. 
  • Model outputs are explainable and trusted by business and operational stakeholders. 
  • Scores are connected to real decisions, workflows, interventions, or measurable outcomes. 
  • The organization moves faster because this person can turn ambiguity into working ML capabilities. 
  • The ML team has stronger standards for model development, validation, documentation, monitoring, and production readiness. 
  • Business partners understand what the models do, how to use them, where their limitations are, and how to interpret changes in outputs. 
  • The team avoids building models in isolation and instead builds ML capabilities that are connected to products, workflows, users, and business value. 
  • GenAI is applied thoughtfully where it improves workflow, decision support, summarization, automation, or user experience, without replacing appropriate model governance or human judgment. 

Requirements

Benefits

  • Health Care Plan (Medical, Dental & Vision)
  • Paid Time Off (Vacation, Sick Time Off & Holidays)
  • Company Paid Short Term Disability and Life Insurance
  • Retirement Plan (401k) with Company Match