Machine Learning Engineer - LLM Post-training (Contract or Internship)
DFINITY Stiftung
Publication date:
11 October 2024Workload:
100%Contract type:
Permanent position- Place of work:Zürich, Zürich, Switzerland
Employment Type: 4-6 Month Contract or Internship
We are looking for a Software Engineer with a focus on data preparation and AI model training. You will work on assembling, annotating, and cleaning training data, while contributing to reward modeling and supervised fine-tuning tasks.
Y ou might thrive in this role if you:
- Have a deep understanding of machine learning and machine learning applications.
- Working knowledge and experience tuning large language models (multimodal) and building evaluations.
- Be willing to dive into large codebases to debug.
- Someone who thrives in a dynamic and technically complex environment.
- Track record of delivering outside-the-box novel solutions to solve real-world constraints.
Responsibilities
- Data Assembly & Annotation: Gather and annotate training data for AI models, ensuring it meets the quality requirements for reward modeling and supervised fine-tuning.
- Data Cleaning & Processing: Conduct data cleaning and preprocessing to ensure models receive high-quality input.
- Model Training: Participate in the training and fine-tuning of models, ensuring that they meet performance and accuracy standards.
- Collaboration: Work with AI engineers, data scientists, and other team members to ensure efficient workflows and data handling.
- Continuous Improvement: Support iterative improvements to models based on performance monitoring and feedback.
Requirements
- Experience: At least 3 years of experience working in a software engineering role focused on AI/ML tasks.
- Data Expertise: Hands-on experience assembling, annotating, and cleaning training data for machine learning models.
- Technical Skills: Proficiency in Python and experience with AI frameworks like TensorFlow or PyTorch.
- Model Training: Familiarity with model training, reward modeling, and supervised fine-tuning techniques.
- Attention to Detail: Strong focus on data quality and attention to detail when handling large datasets.
Bonus Points
- Experience working with reward modeling for AI systems.
- Familiarity with data labeling tools and techniques for supervised fine-tuning.
- Knowledge of cloud platforms for AI/ML workloads.