Machine Learning Researcher
Alljoined
About Alljoined
Alljoined aims to solve the communication bottleneck between humans and technology by decoding thoughts from the brain, entirely non-invasively. We apply deep learning research to large scale EEG datasets collected on affordable hardware to decode stimuli like images, and eventually emotion, intent, train of thought and more. Targeting healthcare applications first, we will eventually create a general consumer interface for productivity, entertainment and AI applications.
We are actively growing our world-class team of researchers to build the most performant and accessible interface to greatly improve the quality of individual lives as well as the well-being of society as a whole.
About the Role
We’re seeking a talented and experienced Machine Learning Researcher to join our core R&D team. This role involves designing and implementing advanced machine learning models for EEG-based neural decoding, publishing high-impact research, and developing the core infrastructure for our brain decoding systems. You will work closely with leading experts in neural decoding and AI, pushing the boundaries of what’s possible in brain computer interfaces.
Key Responsibilities
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Research & Model Development:
Develop, train, and refine state-of-the-art deep learning models for neural decoding, building on the latest advancements in ML architectures (e.g., transformers, diffusion models, etc).
Explore novel approaches for modeling high-frequency timeseries EEG datasets along with a number of adjacent data modalities.
Translate research insights into production-grade code that integrates seamlessly with our in-house BCI stack.
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Collaboration & Publication:
Collaborate with a team of neuroscientists and ML engineers to create scalable, end-to-end neural decoding solutions.
Publish findings at top-tier ML and AI conferences (e.g., NeurIPS, ICML, ICLR, CVPR) and contribute to open-source communities where appropriate.
Qualifications
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Educational Background & Experience:
Bachelor’s degree in Computer Science or a related domain (e.g., AI, Computational Neuroscience, Mathematics, Biomedical Engineering, etc), with 5-7 years of experience in ML research or applied ML engineering; OR
Graduate degree (M.S., Ph.D.) in Computer Science or a related domain (e.g., AI, Computational Neuroscience, Biomedical Engineering) with 3+ years of experience in ML research or applied ML engineering.
Candidates with a Ph.D. and/or experience in high profile ML research labs are strongly preferred.
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Technical Expertise:
Strong foundation in contemporary machine learning techniques, including multimodal representation learning, generative models, transformers, LLMs, and other advanced network architectures.
A track record of high-quality research demonstrated by publications in top ML conferences or journals (e.g., NeurIPS, ICML, ICLR, CVPR).
Strong proficiency in Python and PyTorch, familiarity with ML tooling, and distributed training.
Experience working in a production-quality codebase with modern code review standards.
Compensation Range
$120,000 - $220,000/year + equity
While this represents our expected range based on market data, final compensation will be determined based on your specific qualifications and may be outside this range.
Benefits
Options for housing support
Visa sponsorship
3% 401k matching
Health insurance