AI Engineer
Company: Northeastern University
Location: Boston
Posted on: April 2, 2026
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Job Description:
About the Opportunity This job description is intended to
describe the general nature and level of work being performed by
people assigned to this classification. It is not intended to be
construed as an exhaustive list of all responsibilities, duties and
skills required of personnel so classified . JOB SUMMARY The AI
Engineer will be responsible for designing, developing, and
implementing AI systems and data pipelines that enhance and
automate university operations across multiple departments. This
role is crucial in transforming manual processes into AI-driven
solutions, focusing on building robust data pipelines, creating
efficient machine learning models, and integrating AI capabilities
into existing systems to improve efficiency, accuracy, and service
quality while reducing operational costs. Utilize expertise in
machine learning, natural language processing, data engineering,
and AI system integration with existing enterprise infrastructure.
This role is hybrid and in the office a minimum of three days a
week to facilitate collaboration and teamwork. In-office presence
is an essential part of our on-campus culture and allows for
engaging directly with staff and students, sharing ideas, and
contributing to a dynamic work environment. Being on-site allows
for stronger connections, more effective problem-solving, and
enhanced team synergy, all of which are key to achieving our
collective goals and driving success. * Applicants must be
authorized to work in the United States. The University is unable
to work sponsor for this role, now or in the future MINIMUM
QUALIFICATIONS Knowledge and skills required for this position are
normally obtained through a Bachelor's degree in Computer Science,
Artificial Intelligence, Machine Learning, or related field;
Master's degree preferred and 5 years of experience in AI/ML
engineering roles, with at least 2 years working with production AI
systems in enterprise environments. Experience with AI system
implementation in higher education or similar complex
organizational settings preferred. Ability to manage projects,
prioritize tasks and deliver on schedule. Other necessary skills:
AI/ML Development Expertise: Strong proficiency in developing and
deploying machine learning models and AI systems in production
environments, with deep knowledge of contemporary AI frameworks,
tools, and best practices. Software Engineering: Excellent software
development skills with proficiency in Python, TensorFlow/PyTorch,
and experience with containerized deployments and MLOps practices.
Data Pipeline Engineering: Extensive experience with end-to-end
data pipelines using tools like Apache Airflow, Prefect, cloud
platforms (AWS, Azure, GCP), data warehousing solutions (Snowflake,
Redshift), processing frameworks (Spark, Kafka), and container
technologies (Docker, Kubernetes), with proficiency in Python, SQL,
and version control/CI/CD practices. Machine Learning Engineering:
Demonstrated experience in the full ML lifecycle including data
preparation, feature engineering, model training, validation,
deployment, and monitoring in production. Natural Language
Processing: Advanced knowledge of NLP techniques and large language
models (LLMs), including prompt engineering, context management,
and implementation strategies for enterprise applications. Cloud
Computing: Experience deploying and scaling AI systems in cloud
environments (AWS, Azure, or GCP), with knowledge of cloud-native
AI services. Solution Architecture: Ability to design scalable,
secure, and efficient AI system architectures that meet enterprise
requirements and performance standards. System Integration: Ability
to integrate AI solutions with existing enterprise systems, APIs,
databases, and authentication services to create cohesive user
experiences. Performance Optimization: Experience optimizing AI
models for both accuracy and computational efficiency in
resource-constrained environments. Security Awareness: Knowledge of
security best practices for AI systems, including data protection,
model security, and prevention of adversarial attacks. Data
Science: Strong understanding of data structures, algorithms,
statistical analysis, and data visualization techniques relevant to
AI applications. KEY RESPONSIBILITIES & ACCOUNTABILITIES AI System
Design and Development Design, develop, and implement AI solutions
to automate and enhance university operations, including service
desk automation, administrative task processing, and QA testing
systems. Create robust, scalable architectures that integrate with
existing university systems and accommodate future growth. Data
Pipeline Development and Management Design and implement end-to-end
data pipelines that efficiently collect, process, and prepare data
for AI systems. Build robust ETL processes using tools like Apache
Airflow, cloud services, and data warehousing solutions to ensure
reliable data flow between source systems and AI applications.
Implement data quality checks, monitoring, and governance practices
throughout the pipeline. Machine Learning Implementation and
Fine-tuning Develop and fine-tune machine learning models for
specific university use cases, including customizing large language
models through prompt engineering, transfer learning, and domain
adaptation. Create efficient training pipelines and establish
systematic evaluation protocols. System Integration and Deployment
Integrate AI systems with existing university infrastructure,
including identity management, knowledge bases, ticketing systems,
and communication platforms. Deploy models to production
environments following established MLOPs practices and ensuring
appropriate monitoring. Performance Monitoring and Optimization
Monitor AI system and data pipeline performance, detect and address
drift or degradation, optimize resource utilization, and
continuously improve model accuracy and efficiency based on
real-world usage patterns and feedback. Position Type Information
Technology Additional Information Northeastern University considers
factors such as candidate work experience, education and skills
when extending an offer. Northeastern has a comprehensive benefits
package for benefit eligible employees. This includes medical,
vision, dental, paid time off, tuition assistance, wellness & life,
retirement- as well as commuting & transportation. Visit
https://hr.northeastern.edu/benefits/ for more information. All
qualified applicants are encouraged to apply and will receive
consideration for employment without regard to race, religion,
color, national origin, age, sex, sexual orientation, disability
status, or any other characteristic protected by applicable law.
Compensation Grade/Pay Type: 113S Expected Hiring Range:
$113,865.00 - $165,105.00 With the pay range(s) shown above, the
starting salary will depend on several factors, which may include
your education, experience, location, knowledge and expertise, and
skills as well as a pay comparison to similarly-situated employees
already in the role. Salary ranges are reviewed regularly and are
subject to change.
Keywords: Northeastern University, Salem , AI Engineer, IT / Software / Systems , Boston, Massachusetts