Explore Senior Software Engineer II - AI/ML jobs and discover a pivotal career at the intersection of advanced software engineering and cutting-edge artificial intelligence. This senior-level role is designed for seasoned professionals who architect, build, and scale the intelligent systems that power modern applications. Unlike entry-level positions, a Senior Software Engineer II operates with a high degree of autonomy and technical leadership, responsible for the end-to-end delivery of complex AI/ML platforms and services. Professionals in these jobs typically translate ambitious product visions into robust, scalable technical realities, ensuring that machine learning models are not just innovative but also reliable, efficient, and integrated seamlessly into production environments. The common responsibilities in this profession are multifaceted. Individuals typically design and develop the core infrastructure that enables machine learning workflows, including data pipelines, model training systems, and low-latency serving architectures. A significant focus is placed on operational excellence: building observability, monitoring, and automation to ensure system resilience and performance. These engineers lead technical design and architecture reviews, mentor other engineers, and collaborate cross-functionally with data scientists, product managers, and platform teams to align technical strategy with business goals. They own critical services from conception through deployment, production hardening, and ongoing lifecycle management, ensuring security, scalability, and developer experience are foundational. Typical skills and requirements for these high-impact jobs are rigorous. Candidates generally possess 6+ years of software engineering experience with a substantial portion dedicated to distributed systems and cloud infrastructure (AWS, GCP, Azure). Strong backend development proficiency in languages like Python, Go, or Java is essential, coupled with deep expertise in container orchestration (Kubernetes) and scalable system design. For AI/ML specialization, practical experience with frameworks like TensorFlow or PyTorch and a solid understanding of ML operational (MLOps) principles—such as model versioning, continuous training, and A/B testing—are paramount. Beyond technical prowess, successful professionals demonstrate exceptional problem-solving skills, the ability to influence technical and business stakeholders, and a commitment to mentoring. A degree in computer science or equivalent experience is standard, but a proven track record of shipping and operating complex systems is the ultimate qualifier. If you are seeking jobs where you can define the architectural foundations of AI-driven products and lead technical excellence, the Senior Software Engineer II - AI/ML path represents a premier opportunity to shape the future of technology.