Local TEXAS candidate with DL proof required please attach texas DL for Quick Response
CANDIDATE HAVE TO GO F2F INTERVIEW FOR CLIENT ROUND
Hello,
We are searching for Professionals below business requirements for one of our clients. Please read through the requirements and connect with us in case it suits your profile.
NLP (Natural Language Processing)
Generative AI & Large Language Models (LLM)
Python Skills
Educational Qualifications: Graduate or Doctorate degree in information technology, Neuroscience, Business Informatics, Biomedical Engineering, Computer Science, Artificial Intelligence, or a related field. Specialization in Natural Language Processing is preferred.
Experience Requirements: 8-10 years of experience in developing Data Science, AI, and ML solutions, with a specific focus on generative AI and LLMs in the MedTech/Healthcare/Life Sciences domain.
Prior experience in identifying new opportunities to optimize the business through analytics, AI/ML and use case prioritization.
The individual should be a thought leader having a well-balanced analytical business acumen, domain, and technical expertise.
Large Language Model Expertise: Experience in working with and fine-tuning Large Language Models (LLMs), including the design, optimization of NLP systems, frameworks, and tools.
Application Development with LLMs: Experience in building scalable applications using LLMs, utilizing frameworks such as LangChain, LlamaIndex, etc and productionizing machine learning and AI models.
Language Model Development: Utilize off-the-shelf LLM services, such as Azure OpenAI, to integrate LLM capabilities into applications.
Cloud Computing Expertise: Proven architect kind of experience in cloud computing, particularly with Azure Cloud Services.
Technical Proficiency: Strong skills in UNIX/Linux environments and command-line tools.
Programming and ML Skills: Proficiency in Python, with a deep understanding of machine learning algorithms, deep learning, and generative models.
Advanced AI Skills and Testing: Familiarity with deep learning frameworks (e.g., TensorFlow, PyTorch), hands-on experience in deploying AI/ML solutions as a service/REST API on Cloud or Kubernetes, and proficiency in testing of developed AI components.
Responsibilities also include data analysis/preprocessing for training and fine-tuning language models.