- Design develop train validate and deploy machine learning and AI models including LLM-based solutions. - Build and optimize NLP applications leveraging transformer models and generative AI technologies. - Perform LLM fine-tuning prompt engineering and model evaluation for domain-specific use cases. - Develop scalable data processing and machine learning pipelines using PySpark/Spark and Databricks. - Work with structured and unstructured datasets across SQL and NoSQL environments. - Collaborate with data engineering and business teams to translate business requirements into AI/ML solutions. - Conduct exploratory data analysis feature engineering and model performance tuning. - Implement best practices for model governance validation monitoring and lifecycle management. - Utilize Azure Cloud services for data storage model training deployment and orchestration. - Create technical documentation and communicate findings to technical and non-technical stakeholders.
If you would like to learn more please reach out to Elite Technical.
Required Skills
Required Skills:
- 5-8 years of experience in Data Science Machine Learning or AI Engineering roles. - Strong experience with: o Large Language Models (LLMs) o Natural Language Processing (NLP) o Classical Machine Learning/Data Science algorithms - Hands-on experience in: o Python o PySpark / Apache Spark o Databricks o MongoDB or other NoSQL databases o PostgreSQL and SQL development o Azure Cloud platform - Experience designing training validating and deploying machine learning models. - Knowledge of LLM fine-tuning techniques and model optimization. - Strong understanding of data structures algorithms and statistical modeling concepts. - Experience working with large-scale datasets and distributed computing frameworks. - Strong analytical and problem-solving abilities - Excellent communication and collaboration skills
Local candidates ONLY - Seeking candidates with strong expertise in Large Language Models (LLMs) Natural Language Processing (NLP) and classical data science algorithms along with hands-on experience building scalable data and AI pipelines in cloud-based environments.
Key Responsibilities: - Design develop train validate and deploy machine learning and AI models including LLM-based solutions. - Build and optimize NLP applications leveraging transformer models and generative AI technologies. - Perform LLM fine-tuning prompt engineering and model evaluation for do...
Key Responsibilities:
- Design develop train validate and deploy machine learning and AI models including LLM-based solutions. - Build and optimize NLP applications leveraging transformer models and generative AI technologies. - Perform LLM fine-tuning prompt engineering and model evaluation for domain-specific use cases. - Develop scalable data processing and machine learning pipelines using PySpark/Spark and Databricks. - Work with structured and unstructured datasets across SQL and NoSQL environments. - Collaborate with data engineering and business teams to translate business requirements into AI/ML solutions. - Conduct exploratory data analysis feature engineering and model performance tuning. - Implement best practices for model governance validation monitoring and lifecycle management. - Utilize Azure Cloud services for data storage model training deployment and orchestration. - Create technical documentation and communicate findings to technical and non-technical stakeholders.
If you would like to learn more please reach out to Elite Technical.
Required Skills
Required Skills:
- 5-8 years of experience in Data Science Machine Learning or AI Engineering roles. - Strong experience with: o Large Language Models (LLMs) o Natural Language Processing (NLP) o Classical Machine Learning/Data Science algorithms - Hands-on experience in: o Python o PySpark / Apache Spark o Databricks o MongoDB or other NoSQL databases o PostgreSQL and SQL development o Azure Cloud platform - Experience designing training validating and deploying machine learning models. - Knowledge of LLM fine-tuning techniques and model optimization. - Strong understanding of data structures algorithms and statistical modeling concepts. - Experience working with large-scale datasets and distributed computing frameworks. - Strong analytical and problem-solving abilities - Excellent communication and collaboration skills
Local candidates ONLY - Seeking candidates with strong expertise in Large Language Models (LLMs) Natural Language Processing (NLP) and classical data science algorithms along with hands-on experience building scalable data and AI pipelines in cloud-based environments.