Conseil en stratégie spécialisé dans l’impact investing - Accompagne les projets de développement inclusifs et durables
AI Architect
Location
India
Posted
98 days ago
Salary
₹300K / year
Seniority
Lead
Job Description
AI Architect
AVAHI
• Architect and implement AI solutions leveraging Microsoft Copilot, AI Agents, and Azure OpenAI. • Collaborate with business stakeholders to identify AI opportunities and define solution roadmaps. • Design AI frameworks for automation, productivity, and decision intelligence across enterprise systems. • Provide technical leadership to development teams on AI adoption, best practices, and integration. • Evaluate emerging technologies and recommend AI-driven strategies for digital transformation. • Ensure compliance with security, governance, and responsible AI practices.
Job Requirements
- 10+ years in technology with at least 4+ years in AI/ML solution architecture.
- Proven expertise in Microsoft Copilot, Microsoft AI Agent, and Azure AI ecosystem.
- Strong understanding of Azure Cognitive Services, Azure OpenAI, and cloud-native AI architectures.
- Hands-on experience in GenAI, NLP, machine learning models, and enterprise integrations.
- Ability to design end-to-end AI solutions with scalability, performance, and business impact in mind.
- Excellent communication and leadership skills to engage with CXOs, business leaders, and engineering teams.
- Preferred Qualifications Microsoft Certified: Azure AI Engineer Associate / Solutions Architect Expert.
- Experience working in enterprise-scale digital transformation projects.
- Knowledge of responsible AI frameworks and governance.
Benefits
- Remote-First Flexibility: Enjoy work-life harmony in a remote-first environment that allows you to work from anywhere.
- Innovative Culture: We embrace a startup mindset, encouraging creativity, agility, and growth.
- Career Development: Avahi is committed to your growth, offering mentorship and opportunities to advance your career, with potential for full-time roles after initial contracts.
- Purpose-Driven Mission: Join us in making a difference. Avahi is dedicated to championing diversity, supporting women in tech, and fostering sustainable practices.
- Global Collaboration: Work alongside a diverse, talented team, sharing insights and collaborating to create innovative solutions that make a real impact.
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