We are looking for 7+ years experience AI Engineer, who would have an experience in artificial intelligence engineering to join the revolution, using deep learning, neuro linguistic programming (NLP), computer vision, chatbots and robotics to help various business improvements.
Technical Skills :
- Four or more years of experience with Python, Geneal AI tools
- Familiarity with the AWS ecosystem, specifically Redshift and RDS
- Experience in RAG (Retrieval-augmented generation) modelling
- Experience with ML, deep learning, TensorFlow, Python, NLP
- Knowledge of basic algorithms, object-oriented and functional design principles, and best-practice patterns
- Experience in REST API development, NoSQL database design, and RDBMS design and optimization
- Communication skills, especially for explaining technical concepts to nontechnical business leaders
- Experience in insurance domain
- Professional certification.
- Strong understanding of distributed systems : They need to understand the complexities of modern architecture, including microservices, cloud-native environments, and hybrid infrastructure.
- Proficiency in observability tools : They are familiar with tools for logging, metrics, and tracing, such as ELK Stack, Prometheus, Grafana, and distributed tracing systems.
- Scripting and automation : They can automate tasks and create scripts to manage observability infrastructure.
- Should have experience with cloud platforms like AWS, Azure, and GCP
Key Responsibilities and Skill :
Analyze and explain AI and machine learning (ML) solutions while setting and maintaining high ethical standardsAdvise C-suite executives and business leaders on a broad range of technology, strategy, and policy issues associated with AIWork on functional design, process design (including scenario design, flow mapping), prototyping, testing, training, and defining support procedures, in collaboration with an advanced engineering team and executive leadershipUnderstand company and client challenges and how integrating AI capabilities can help lead to solutionsUnderstand the application of architecture to instrument them for observability. Need to automate the onboarding of applications in a factory model.Use agile software development processes to make iterative improvements to our backend systemsDevelop models that can be used to make predictions and answer questions for the overall business.Metric & Instrumentation Standards : Defining common metric standards for every stage of the Application Lifecycle process and Instrumentation standards and scripting including OTel standards alignmentCollaboration and Communication : They collaborate with development, SRE, and other teams to ensure observability practices are integrated into workflows and to share insights.(ref : hirist.tech)