Senior Software Engineer - Machine Learning
Janea Systems · Remote
Remote
senior
machine learning
Apply on Janea Systems →
J Janea Systems (USA) is a dynamic team of the best & brightest software engineering specialists and solutions innovators, from around the world. From kernel to cloud, we provide high-impact software development services to Fortune 500 companies.
We are urgently looking an exceptionally talented Senior Machine Learning Engineer to join our rapidly growing consulting team. In this role, you will have the opportunity to work at the cutting edge of the software industry and help work on the client's internal AI/ML practice, as well as utilize your LLM, Data Engineering, ML, and ML Ops skills while working with a team of highly skilled professionals in the AI/ML domain.
Location
Remote 100%
Compensation
Salary
Work Schedule
Full time/ Flexible working hours
Reports to
Team Lead
Member of
Engineering Team
To be considered for this position, you must have the following qualifications:
Bachelor's or Master’s degree in Computer Science or a related field
4+ years of experience as a Software Engineer, Platform Engineer, ML Engineer, Data Scientist, AI Engineer, or Data Engineer
Flexibility in experience with different programming languages and willingness to adjust to project needs
Strong knowledge of Python
Knowledge of machine learning algorithms, data pre-processing methods, and ML frameworks (such as PyTorch, TensorFlow, Keras)
Experience with containers and Kubernetes in cloud environments (AWS, MS Azure, or GCP)
Familiarity with data-oriented workflow orchestration frameworks (KubeFlow, Airflow, Argo)
Understanding of software testing, benchmarking, and continuous integration principles
Ability to translate business needs into technical requirements
Excellent communication and problem-solving skills, with the ability to break down complex challenges and develop innovative solutions
Being self-motivated and adaptable, with the ability to work effectively in fast-paced, dynamic environment
Ideal candidates will also have:
Familiarity with agent frameworks (such as Langchain, Langgraph, IllamaIndex)
Familiarity with developing RAG systems
Experience with Natural Language Processing (NLP)
Familiarity with monitoring tools (such as DataDog or Langfuse)
Any associate cloud certification (AWS preferred)
Responsibilities:
Design scalable data pipelines and infrastructure for enterprise ML systems
Implement ML models and systems into production
Collaborate with data scientists and software engineers
Deploy scalable tools and services for machine learning training and inference
Evaluate new technologies to improve ML system performance and reliability
Apply software engineering best practices, including CI/CD, to ML development
Facilitate the development and deployment of ML proof-of-concepts
Review, refactor, optimize, containerize, deploy, version, and monitor ML models
Implement monitoring and alerting solutions to ensure the reliability and performance of machine learning systems
Optimize and automate the machine learning deployment process to ensure efficiency and reproducibility
Collaborate with cross-functional teams to troubleshoot and resolve issues related to machine learning deployments
Stay updated with industry trends and apply knowledge to drive innovation
Promote industry best practices and enhance team expertise
Why join Janea? Because world-class talent deserves world-class opportunities. What we offer:
Competitive compensation with benefits, paid vacation, and sick leave.
The opportunity to work with a globally diverse team of top engineering talent on the industry’s toughest engineering challenges.
Ultra-flexible working conditions – we provide a generous office equipment allowance so you can work from home, we can also provide you with a desk at an office/coworking facility near you, or use both. No business travel necessary.
An enjoyable, start-up work environment, with excellent opportunities for professional growth and development.
Flexible working hours – as a remote-first company, our focus has always been on getting the job done well, not when or where it gets done.
#LI-DNI
Posted 2025-10-29