About Marmik Soni Tessolve

Marmik Soni, Sr. Design Lead, Tessolve Marmik Soni is a seasoned semiconductor industry professional with over 15 years of experience, currently serving as the Senior Design Lead at Tessolve's Center of Excellence (CoE). In this role, he leads the AI team in developing innovative AI and Machine Learning solutions across multiple business units. As an experienced Generative AI (GenAI) Strategist and AI Solution Architect, Marmik possesses a robust background in VLSI design. He is also a certified expert of ISO 26262 Automotive Functional Safety. Throughout his career, he has spearheaded chip design research and development, effectively managing large engineering teams. Under his leadership, Tessolve's CoE has developed over 25 AI-driven tools, positioning the company at the forefront of technological innovation. His expertise includes UVM testbench automation, assertion generation, and coverage closure, underscoring his commitment to advancing semiconductor design and verification through AI. Marmik has also been instrumental in securing research funding, mentoring scholars, and delivering expert talks at prestigious institutions. In recent years, he has delivered over 15 presentations on AI integration at various chip design conferences and summits. His work at the CoE has enhanced efficiencies, reduced cycle times, and fostered innovative AI solutions across business units and internal divisions, including finance, HR, recruitment, procurement, and program management.

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Tessolve – Revolutionizing Design Verification with AI-Driven Tools

Tessolve AI Strategy Tessolve's AI Center of Excellence (CoE) follows a structured strategy to continuously train and improve AI models through iterative learning and validation. The process begins with a rich training dataset, supplemented by recorded user prompts to refine AI responses. The first trained version, Model v1, is developed and undergoes a validation phase