AI Technical Lead
Job Description
REQUIREMENTS
- Master’s degree in AI, Data Science, Computer Science, Business Analytics, or Technology Management is preferred.
- Certifications in AI, cloud platforms, data science, enterprise architecture, project management, or agile delivery are an advantage.
- Strong knowledge of AI, machine learning, deep learning, Generative AI, NLP, LLMs, analytics, and automation.
- Hands-on experience with platforms and models such as OpenAI, Azure OpenAI, Anthropic Claude, Google Gemini, Meta Llama, Mistral, or similar.
- Experience with Agentic AI, RAG, vector databases, embeddings, semantic search, AI copilots, chatbots, and workflow automation.
- Familiarity with frameworks such as LangChain, LlamaIndex, Semantic Kernel, AutoGen, CrewAI, LangGraph, or equivalent tools.
- Strong programming and engineering experience, preferably in Python and modern API/microservices-based architectures.
- Knowledge of cloud platforms such as Azure, AWS, or Google Cloud.
- Understanding of MLOps, LLMOps, CI/CD, monitoring, evaluation, model governance, and production deployment.
- Strong awareness of data privacy, cybersecurity, prompt injection risks, data leakage prevention, and responsible AI practices.
- Excellent leadership, communication, stakeholder management, problem-solving, and strategic planning skills.
- Experience in product-based software companies, SaaS, fintech, banking technology, capital markets technology, enterprise software, or regulated industries is preferred.
- Experience integrating AI into enterprise products, internal workflows, or customer-facing platforms is highly desirable.
- Capable of turning AI from a concept into secure, scalable, practical, and tangible solutions.
RESPONSIBILITIES
- Identify AI opportunities across products, software development, QA, DevOps, support, sales, finance, HR, and operations.
- Establish responsible AI practices covering security, privacy, compliance, explainability, auditability, and human oversight.
- Present AI adoption progress, effectiveness and risks to executive leadership.
- Lead AI research, experimentation, prototyping, proof-of-concepts, and MVP development.
- Evaluate emerging AI technologies, LLMs, frameworks, tools, platforms, and cloud AI services.
- Build reusable AI components, prompt libraries, knowledge bases, automation templates, and internal accelerators.
- Convert R&D outcomes into production-ready product features, internal tools, or strategic business capabilities.
- Act as the company’s AI champion and drive AI adoption across all departments.
- Conduct awareness sessions, training programs, workshops, and use-case discovery sessions.
- Help teams use AI to improve productivity, documentation, development, testing, support, analysis, and decision-making.
- Create internal AI usage guidelines, prompt engineering guides, best practices, and safe-use policies.
- Track adoption, productivity gains, quality improvements, and process efficiencies.
- Lead the design and implementation of AI-powered features within the company’s products.
- Build and deploy Agentic workflows, copilots, chatbots, intelligent assistants, smart search, document intelligence, analytics, and automation features.
- Work with product, architecture, development, QA, DevOps, and business teams to deliver secure, scalable, and reliable AI solutions.
- Design AI solution architectures using LLMs, RAG pipelines, vector databases, APIs, orchestration frameworks, cloud services, and monitoring tools.
- Support AI-related product demos, client presentations, proposals, and solution positioning.
Are you interested in this position?
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