AI ML Research Engineer
Job description
We are seeking an AI/ML Research Engineer with a profound passion for the field of artificial intelligence. This role is ideal for someone who views challenges as milestones waiting to be surpassed, who approaches problem-solving with both creativity and precision, and whose passion for AI and ML is matched by an outstanding technical skill set. You will lead the charge in developing state-of-the-art AI models, optimizing performance, and transitioning theoretical models into production-ready solutions. Areas of Research
- Graph Self-Supervised Learning
- Temporal Graph Learning.
- Multi-modal graph representation learning
- HIIL DRL Techniques for conversational intelligence
- Mechanistic interpretation of LLMs
- Topological Deep Learning
- Cognitive Assessment using AI Techniques
- Autonomous Knowledge Graphs
- Neuro-symbolic AI
- AGI
- Federated Graph Neural Networks Responsibilities
- Collaborate seamlessly within a multidisciplinary team of researchers to invent new technologies and algorithms based on identified needs, contributing to the company's cutting-edge advancements in the field.
- Uncover intricate patterns within data and apply advanced techniques to quantitatively analyze information.
- Map data into the appropriate machine learning algorithmic space, ensuring optimal representation for model development.
- Conceptualize and engineer machine learning and deep learning systems, pushing the boundaries of innovation in algorithmic design.
- Enhance and elevate existing state-of-the-art machine learning algorithms to address complex problems.
- Execute rigorous unit tests on developing packages, ensuring the reliability and robustness of the implemented solutions.
- Conduct comprehensive machine learning tests and experiments, leveraging a keen research mindset to explore novel approaches.
- Train and retrain systems as needed, incorporating adaptability and foresight into the continuous improvement process.
- Conduct thorough literature reviews, staying at the forefront of the latest developments in the specified research areas.
- Analyze and interpret research findings, actively contributing to the publication of groundbreaking research papers in prestigious conferences and journals.
- Engage proactively in regular team meetings to share progress, address challenges, and brainstorm potential improvements.
- Profound comprehension of data structures, algorithms, and software architecture, showcasing a strong foundation in computational principles.
- In-depth understanding of machine learning algorithms, reflecting a keen insight into the intricacies of advanced learning methodologies.
- Proven ability to thrive in a dynamic research environment, showcasing adaptability, curiosity, and a proactive approach to tackling complex challenges.
- Advanced knowledge of probability, statistics, and linear algebra, underlining a solid theoretical background crucial for cutting-edge research.
- Proficient in crafting robust Python code, highlighting the capacity to develop efficient and scalable solutions.
- Familiarity with leading machine learning libraries such as TensorFlow, PyTorch, and scikit-learn, illustrating a hands-on approach to leveraging state-of-the-art tools.
- Exceptional communication skills, enabling the effective dissemination of complex concepts to both technical and non-technical audiences.
- Collaborative spirit with a demonstrated ability to work seamlessly within a team, fostering an environment conducive to shared innovation.
- Outstanding analytical and problem-solving prowess, emphasizing a strategic and innovative mindset essential for pushing the boundaries of research in AI and related fields.
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