The ML Engineer will build and refine ML models, manage experimentation environments, collaborate with teams, and ensure model performance in production.
Join us at Provectus to be a part of a team that is dedicated to building cutting-edge technology solutions that have a positive impact on society. Our company specializes in AI and ML technologies, cloud services, and data engineering, and we take pride in our ability to innovate and push the boundaries of what's possible.
As an ML Engineer, you’ll be provided with all opportunities for development and growth.
Let's work together to build a better future for everyone!
Requirements:
- Comfortable with standard ML algorithms and underlying math.
- Strong hands-on experience with LLMs in production, RAG architecture, and agentic systems
- AWS Bedrock experience strongly preferred
- Practical experience with solving classification and regression tasks in general, feature engineering.
- Practical experience with ML models in production.
- Practical experience with one or more use cases from the following: NLP, LLMs, and Recommendation engines.
- Solid software engineering skills (i.e., ability to produce well-structured modules, not only notebook scripts).
- Python expertise, Docker.
- Experience with data pipelines
- English level - strong Intermediate.
- Excellent communication and problem-solving skills.
Will be a plus:
- Practical experience with cloud platforms (AWS stack is preferred, e.g. Amazon SageMaker, ECR, EMR, S3, AWS Lambda).
- Practical experience with deep learning models.
- Experience with taxonomies or ontologies.
- Practical experience with machine learning pipelines to orchestrate complicated workflows.
- Practical experience with Spark/Dask, Great Expectations.
Responsibilities:
- Create ML models from scratch or improve existing models.
- Collaborate with the engineering team, data scientists, and product managers on production models.
- Develop experimentation roadmap.
- Set up a reproducible experimentation environment and maintain experimentation pipelines.
- Monitor and maintain ML models in production to ensure optimal performance.
- Write clear and comprehensive documentation for ML models, processes, and pipelines.
- Stay updated with the latest developments in ML and AI and propose innovative solutions.
Top Skills
Amazon Sagemaker
Aws Bedrock
Aws Stack
Dask
Data Pipelines
Docker
Llms
Ml Algorithms
Python
Spark
Similar Jobs
Artificial Intelligence • Information Technology • Consulting
As an ML Engineer, create and improve ML models, collaborate with teams, maintain experimentation pipelines, and stay updated with ML advancements.
Top Skills:
AWSDaskDockerPythonSpark
Information Technology • Security • Software • Cybersecurity • App development • Data Privacy
The Product Analyst will own iOS analytics infrastructure, analyze product performance, optimize traffic acquisition, and guide product decisions with data insights.
Top Skills:
AppsflyerAsaDbtGaGoogle AdsGoogle Tag ManagerGtmIos AnalyticsLookerPythonRSQL
Cloud • Security • Software • Cybersecurity • Automation
The Strategic Account Executive manages key accounts, driving sales activities and ensuring customer success while collaborating with various teams for product adoption and feedback.
Top Skills:
Application Lifecycle ManagementGitSoftware Development Tools
What you need to know about the Melbourne Tech Scene
Home to 650 biotech companies, 10 major research institutes and nine universities, Melbourne is among one of the top cities for biotech. In fact, some of the greatest medical advancements were conceptualized and developed here, including Symex Lab's "lab-on-a-chip" solution that monitors hormones to predict ovulation for conception, and Denteric's vaccine for periodontal gum disease. Yet, the thousands of people working in the city's healthtech sector are just getting started, to say nothing of the tech advancements across all other sectors.