REMOTECONTRACT
AI Research Scientist – LLMs (Remote | $100 –$120/hr)
Synthires
Remote · remote · Posted 2d ago
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Section · 01
About this role
LLM Research Scientist (Pre-training & Post-Training)
Location: Remote
Engagement Type: Hourly Contract
Compensation: $100–$120/hour
About the Opportunity This opportunity is for experienced
Machine Learning Researchers and
LLM Research Scientists interested in contributing to advanced AI research and evaluation projects. The role focuses on training, fine-tuning, and improving large language models (LLMs), conducting empirical research, and advancing state-of-the-art foundation model capabilities. You will work on challenging research problems spanning
LLM pre-training, post-training, data curation, model evaluation, alignment, and optimization .
Responsibilities
- Train transformer-based language models from scratch and fine-tune open-weight foundation models.
- Design and optimize pre-training and post-training pipelines for large language models.
- Construct, curate, and optimize large-scale training datasets from raw web and other data sources.
- Develop data filtering, deduplication, quality classification, and curriculum learning strategies.
- Diagnose and resolve optimization failures, convergence issues, and training instabilities.
- Build and evaluate supervised fine-tuning (SFT), preference optimization (DPO, RLHF, RLAIF), and reward modeling pipelines.
- Design evaluation benchmarks and analyze model performance using rigorous experimental methodologies.
- Collaborate with AI researchers to improve model reasoning, alignment, efficiency, and overall performance.
Required Qualifications
- 3+ years of machine learning research experience (PhD research qualifies).
- Strong expertise in one or more of the following areas:
- Foundation Model Pre-training
- LLM Post-Training
- Large-Scale Data Curation
- Reinforcement Learning for LLMs
- Model Alignment and AI Safety
- LLM Evaluation and Benchmark Development
- Strong experience with
PyTorch, JAX, TensorFlow , or similar machine learning frameworks.
- Deep understanding of transformer architectures, large language models, optimization techniques, and modern deep learning methodologies.
- Strong Python programming skills.
- Excellent analytical, research, and scientific communication skills.
- Ability to work independently in a remote research environment.
Preferred Qualifications
- PhD in Computer Science, Machine Learning, Artificial Intelligence, Natural Language Processing, or a related field.
- Degree from a
Top-100 university , experience at a
FAANG or leading AI company, or an equivalent research track record through publications or impactful open-source contributions.
- Experience with:
- Scaling Laws
- Curriculum Learning
- LLM Evaluation
- Reinforcement Learning
- AI Alignment
- AI Safety Research
- Publications in leading AI conferences or significant open-source contributions.
Compensation
- Competitive compensation of $100–$120/hour.
- Weekly payments.
- Independent contractor engagement. Application Process 1.
Upload Resume 2.
Complete an AI Interview Based on Your Resume 3.
Submit Application
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Section · 02