AryaXAI stands at the forefront of AI innovation, revolutionizing AI for mission-critical, highly regulated industries by building explainable, safe, and aligned systems that scale responsibly.
Our mission is to create AI tools that empower researchers, engineers, and organizations — including banks, financial institutions, and large enterprises — to unlock AI's full potential while maintaining transparency, safety, and regulatory compliance.
Our team thrives on a shared passion for cutting-edge innovation, collaboration, and a relentless drive for excellence. At AryaXAI, every team member contributes hands‑on in a flat organizational structure that values curiosity, initiative, and exceptional performance, ensuring that our work not only advances technology but also meets the rigorous demands of regulated sectors.
Role Overview
As a Senior Data Scientist at AryaXAI, you will be uniquely positioned to tackle large-scale, enterprise-level challenges in regulated environments. You’ll lead complex AI implementations that prioritize explainability, risk management, and compliance, directly impacting mission-critical use cases in the financial services industry and beyond. Your expertise will be crucial in deploying sophisticated models that address the nuances and stringent requirements of regulated sectors.
Responsibilities
- Model Evaluation & Customization: Evaluate, fine‑tune, and implement appropriate AI/ML models on AryaXAI.com tailored for enterprise and regulated use cases, considering factors such as accuracy, computational efficiency, scalability, and regulatory constraints.
- Architectural Assessment: Assess and recommend model architectures that meet the high standards required by complex business problems in financial services and other regulated industries.
- Enterprise Integration: Lead the deployment of AI models into production environments, ensuring seamless integration with existing enterprise systems while upholding strict compliance and security standards.
- Advanced AI Techniques: Drive the development and implementation of state‑of‑the‑art AI architectures, incorporating advanced explainability, AI safety, and alignment techniques suited for regulated applications.
- Specialization & Innovation: Take ownership of specialized areas within machine learning or deep learning to address challenges related to complex datasets, regulatory requirements, and enterprise-grade AI solutions.
- Collaboration & Quality Assurance: Collaborate closely with Machine Learning Engineers and Software Development Engineers to roll out features, manage quality assurance, and ensure all deployed models meet performance and compliance benchmarks.
- Documentation & Compliance: Create and maintain detailed technical and product documentation with an emphasis on auditability and adherence to regulatory standards.
Qualifications
- Educational & Professional Background: A solid academic background in machine learning, deep learning, or reinforcement learning, ideally complemented by experience in regulated industries such as financial services or enterprise sectors.
- Regulated industry experience (financial services, banking, or insurance preferred).
- A proven track record (2+ years) of hands‑on experience in data science within highly regulated environments, with a deep understanding of the unique challenges and compliance requirements in these settings.
- Technical Expertise: Demonstrated proficiency with deep learning frameworks such as TensorFlow or PyTorch, and experience implementing advanced techniques such as transformer models or GANs.
- Diverse Data Handling: Experience working with varied data types — including textual, tabular, categorical, and image data — and the ability to develop models for complex enterprise‑level datasets.
- Expertise in deploying AI solutions in cloud and on‑premise environments, ensuring robust, scalable, and secure integrations with enterprise systems.
- Publications & Contributions: Peer‑reviewed publications or significant contributions to open‑source AI tools are highly regarded.