Let’s get started
By clicking ‘Next’, I agree to the Terms of Service
and Privacy Policy
Jobs / Job page
Machine Learning Engineer (The Model Innovator) image - Rise Careers
Job details

Machine Learning Engineer (The Model Innovator)

Are you passionate about solving complex problems with cutting-edge machine learning techniques? Do you love transforming raw data into intelligent systems that can make predictions, automate processes, and provide deep insights? If you're excited about building scalable, high-performance machine learning models that drive business innovation, then our client has the perfect opportunity for you. We’re looking for a Machine Learning Engineer (aka The Model Innovator) to develop, deploy, and optimize machine learning models that transform how we leverage data for decision-making.

As a Machine Learning Engineer at our client, you will work alongside data scientists, software engineers, and product managers to build machine learning solutions that power intelligent applications and services. You’ll be responsible for creating scalable algorithms, refining model performance, and ensuring that our AI systems deliver high-quality results in real-world environments.

Key Responsibilities:

  1. Design and Develop Machine Learning Models:
    • Build and deploy machine learning models using algorithms such as regression, classification, clustering, and deep learning. You’ll work with large datasets to train models that solve real-world problems like prediction, recommendation, and automation.
  2. Model Training and Hyperparameter Tuning:
    • Experiment with different model architectures and optimize hyperparameters to improve model accuracy and efficiency. You’ll apply cross-validation, regularization, and other techniques to ensure high-performing models.
  3. Data Processing and Feature Engineering:
    • Collaborate with data engineers and scientists to preprocess, clean, and transform large datasets into formats that are suitable for machine learning. You’ll perform feature engineering to extract meaningful features that enhance model performance.
  4. Deploy Models into Production:
    • Implement machine learning models in production environments, ensuring that they are scalable, reliable, and efficient. You’ll work with cloud platforms and DevOps teams to deploy models using technologies like Docker, Kubernetes, and CI/CD pipelines.
  5. Monitor and Improve Model Performance:
    • Continuously monitor model performance in production, detecting issues such as model drift or degradation. You’ll retrain and optimize models as needed, ensuring that they remain accurate and relevant over time.
  6. Collaborate with Cross-Functional Teams:
    • Work closely with software developers, product managers, and data scientists to integrate machine learning models into products and services. You’ll ensure that AI solutions meet business objectives and deliver measurable value.
  7. Stay Current with AI and Machine Learning Trends:
    • Keep up-to-date with the latest developments in machine learning, deep learning, and AI. You’ll explore new algorithms, tools, and techniques to continuously improve the machine learning solutions you develop.

Required Skills:

  • Machine Learning Expertise: Strong knowledge of machine learning algorithms, including supervised and unsupervised learning techniques. You’re experienced with tools like TensorFlow, PyTorch, Scikit-learn, and Keras for building and deploying models.
  • Programming and Software Development: Proficiency in programming languages such as Python, R, or Scala, with experience writing production-level code. You can build, test, and deploy machine learning solutions efficiently.
  • Data Engineering and Feature Engineering: Hands-on experience with data preprocessing, feature selection, and engineering. You understand how to handle large datasets and optimize them for machine learning workflows.
  • Model Deployment and DevOps: Experience deploying machine learning models into production using cloud platforms (AWS, GCP, Azure) and containerization tools like Docker. You know how to implement models that scale efficiently.
  • Collaboration and Communication: Excellent collaboration skills, with the ability to work closely with cross-functional teams to translate business requirements into machine learning solutions. You can explain technical concepts clearly to non-technical stakeholders.

Educational Requirements:

  • Bachelor’s or Master’s degree in Computer Science, Data Science, AI, or a related field. Equivalent experience in machine learning engineering is highly valued.
  • Certifications or additional coursework in machine learning, AI, or data science are a plus.

Experience Requirements:

  • 3+ years of experience in machine learning engineering, with hands-on experience building and deploying machine learning models in production environments.
  • Proven track record of working with large datasets, designing machine learning pipelines, and delivering AI-driven solutions that solve business problems.
  • Experience working with cloud-based AI services (AWS SageMaker, Google AI Platform, Azure ML) is highly desirable.
  • Health and Wellness: Comprehensive medical, dental, and vision insurance plans with low co-pays and premiums.
  • Paid Time Off: Competitive vacation, sick leave, and 20 paid holidays per year.
  • Work-Life Balance: Flexible work schedules and telecommuting options.
  • Professional Development: Opportunities for training, certification reimbursement, and career advancement programs.
  • Wellness Programs: Access to wellness programs, including gym memberships, health screenings, and mental health resources.
  • Life and Disability Insurance: Life insurance and short-term/long-term disability coverage.
  • Employee Assistance Program (EAP): Confidential counseling and support services for personal and professional challenges.
  • Tuition Reimbursement: Financial assistance for continuing education and professional development.
  • Community Engagement: Opportunities to participate in community service and volunteer activities.
  • Recognition Programs: Employee recognition programs to celebrate achievements and milestones.

Average salary estimate

$110000 / YEARLY (est.)
min
max
$90000K
$130000K

If an employer mentions a salary or salary range on their job, we display it as an "Employer Estimate". If a job has no salary data, Rise displays an estimate if available.

What You Should Know About Machine Learning Engineer (The Model Innovator), Unreal Gigs

Are you ready to embark on an exciting journey as a Machine Learning Engineer at The Model Innovator? If you're passionate about harnessing the power of data to create intelligent systems, this could be the perfect opportunity for you! You'll be diving headfirst into the world of cutting-edge machine learning, where you'll take raw data and transform it into insights that can drive business innovation. Your role will involve designing and developing scalable machine learning models, collaborating with a talented team of data scientists and software engineers, and deploying your models in real-world environments. From building algorithms for prediction and automation to hyperparameter tuning for optimal performance, your days will be filled with exhilarating challenges. You'll play a crucial role in monitoring model performance and adapting to any changes, ensuring our AI systems remain sharp and effective. Plus, staying on top of the latest trends in machine learning will be part of your routine, allowing you to explore new ideas and techniques that can enhance our capabilities. The more you contribute, the more you'll grow professionally, thanks to the extensive support for training, development, and career advancement offered here at The Model Innovator. Join us in redefining the boundaries of what's possible with machine learning!

Frequently Asked Questions (FAQs) for Machine Learning Engineer (The Model Innovator) Role at Unreal Gigs
What are the responsibilities of a Machine Learning Engineer at The Model Innovator?

At The Model Innovator, a Machine Learning Engineer is responsible for designing and developing machine learning models, deploying them in production environments, and continuously monitoring their performance. You will collaborate with cross-functional teams to integrate these models into applications, ensuring they are scalable and reliable. Your role also involves data processing, feature engineering, and staying current with the latest trends in AI and machine learning.

Join Rise to see the full answer
What qualifications are required for the Machine Learning Engineer position at The Model Innovator?

To qualify as a Machine Learning Engineer at The Model Innovator, candidates typically need a Bachelor's or Master's degree in Computer Science, Data Science, AI, or a related field. Additionally, having 3+ years of experience in machine learning engineering, strong programming skills in languages such as Python or R, and proficiency in machine learning tools like TensorFlow and Scikit-learn is essential.

Join Rise to see the full answer
What skills are essential for a Machine Learning Engineer at The Model Innovator?

Essential skills for a Machine Learning Engineer at The Model Innovator include expertise in machine learning algorithms, programming proficiency, and experience in data engineering and feature engineering. The role also requires experience deploying models using cloud platforms and a strong ability to collaborate effectively with teams. Communication skills are critical to explaining complex concepts to non-technical stakeholders.

Join Rise to see the full answer
How does The Model Innovator support professional development for Machine Learning Engineers?

The Model Innovator is committed to the professional growth of its employees, offering opportunities for training, certification reimbursement, and career advancement programs. Machine Learning Engineers can take advantage of these resources to enhance their skills and stay current with industry advancements in AI and machine learning.

Join Rise to see the full answer
What kind of work environment can a Machine Learning Engineer expect at The Model Innovator?

A Machine Learning Engineer at The Model Innovator can expect a flexible and supportive work environment that encourages work-life balance. With options for telecommuting and flexible schedules, employees are empowered to manage their time effectively while collaborating with talented colleagues to drive innovation.

Join Rise to see the full answer
Common Interview Questions for Machine Learning Engineer (The Model Innovator)
Can you explain the process you follow for developing a machine learning model?

When answering this question in an interview for the Machine Learning Engineer role at The Model Innovator, highlight your systematic approach: starting with problem formulation, followed by data collection and preprocessing, model selection and training, hyperparameter tuning, and finally deployment and monitoring. Demonstrate your understanding of the nuances at each stage.

Join Rise to see the full answer
How do you handle overfitting in machine learning models?

To address overfitting, consider discussing methods such as using validation datasets, employing techniques like cross-validation, regularization (L1 and L2), and simplifying models. At The Model Innovator, showcasing an understanding of these strategies is critical to ensure that your models perform well on unseen data.

Join Rise to see the full answer
What are some techniques you use for feature engineering?

When discussing feature engineering techniques in an interview, emphasize your proficiency in data cleaning, normalization, and transformation techniques, as well as your experience with domain-specific feature extraction. Describe how each technique adds value to model performance, especially in the context of projects you've handled at The Model Innovator.

Join Rise to see the full answer
Describe an experience where you deployed a machine learning model into production.

In your response, outline the specific steps you took to deploy a model, any challenges faced (such as scaling issues), and how you overcame them. Highlight any collaboration with DevOps teams or use of tools like Docker or Kubernetes during that process, emphasizing your experience relevant to The Model Innovator's practices.

Join Rise to see the full answer
How do you stay updated with the latest advancements in AI and machine learning?

Explain methods you use to stay informed, such as following leading data science blogs, participating in online courses, or joining AI communities. Mention specific conferences or publications that you pay attention to, showing your initiative and commitment to continuous learning in the field of machine learning at The Model Innovator.

Join Rise to see the full answer
Can you walk me through hyperparameter tuning for a machine learning model?

In your response, discuss the significance of hyperparameters in model performance, and mention specific techniques like grid search or random search. Highlight any experiences you've had with tuning hyperparameters for projects, which will demonstrate both your technical expertise and thorough understanding of model optimization relevant to The Model Innovator.

Join Rise to see the full answer
What programming languages and tools are you comfortable using for machine learning?

Mention your proficiency in languages like Python, R, or Scala, and discuss frameworks and libraries you frequently use, such as TensorFlow or Scikit-learn. Explain how your technical skills will aid in contributing to machine learning projects at The Model Innovator.

Join Rise to see the full answer
What do you consider when ensuring a machine learning model is scalable?

When discussing scalability, emphasize considerations such as algorithm selection, data pipeline efficiency, deployment strategies, and cloud platform features. Relate these considerations to how you would approach model deployment at The Model Innovator to meet business objectives effectively.

Join Rise to see the full answer
What steps do you take to evaluate the performance of your machine learning models?

Explain how you utilize metrics like accuracy, precision, recall, and F1-score, depending on the problem type. Discuss the importance of evaluating model performance not just in training conditions but also in production environments, crucial for the work you'll do at The Model Innovator.

Join Rise to see the full answer
How do you approach collaboration with cross-functional teams?

In your answer, emphasize the importance of clear communication and understanding different perspectives. Provide examples of how you have successfully collaborated with data scientists, software engineers, and product managers, which is essential to achieving successful outcomes at The Model Innovator.

Join Rise to see the full answer
Similar Jobs
Photo of the Rise User
Continental Hybrid 3000 Continental Parkway, Clinton, MS
Posted 11 days ago
Posted yesterday
Photo of the Rise User
Posted 7 days ago
Photo of the Rise User
gpac Hybrid Katy, TX
Posted 3 days ago
Photo of the Rise User
Posted 5 days ago
Photo of the Rise User
AECOM Remote Ottawa, ON, Canada
Posted 10 days ago
MATCH
Calculating your matching score...
FUNDING
DEPARTMENTS
SENIORITY LEVEL REQUIREMENT
TEAM SIZE
No info
LOCATION
No info
EMPLOYMENT TYPE
Full-time, remote
DATE POSTED
December 6, 2024

Subscribe to Rise newsletter

Risa star 🔮 Hi, I'm Risa! Your AI
Career Copilot
Want to see a list of jobs tailored to
you, just ask me below!