Your Role and Responsibilities- 10+ years of experience in Data Science with a background in machine learning, deep learning, and natural language processing.
- Robust background in traditional AI methodologies, encompassing both machine learning and deep learning frameworks.
- Familiarity with model serving platforms such as TGIS and vLLM.
- Hands-on experience in transformer-based and diffuser-based models (e.g., BERT, GPT, T5, Llama, Stable diffusion) is desirable. Experience in testing AI algorithms and models is advantageous.
- Proficiency in Python, C++, Go, Java, and relevant ML libraries (e.g., TensorFlow, PyTorch) to develop production-grade quality products is essential.
- Proficient in full-stack development, adept at frontend (HTML, CSS, JavaScript) and backend (Django, Flask, Spring Boot). Experience integrating AI tech into full-stack projects is a plus. Skilled in integrating, cleansing, and shaping data, with expertise in various databases including open-source databases like MongoDB, CouchDB, CockroachDB.
- Proficient in developing optimal data pipeline architectures for AI applications, ensuring adherence to client’s SLAs.
- Familiarity with Linux platform and experience in Linux app development is desirable.
- Experienced in DevOps, skilled in Git, CI/CD pipelines (Jenkins, Travis CI, GitLab CI), and containerization (Docker, Kubernetes).
- Experience in Generative Ai would be a huge plus.
- AI compiler/runtime skills would be a huge plus.
- Open-source Contribution is a huge plus. Experience in contributing to open-source AI projects or utilizing open-source AI frameworks is beneficial.
- Strong problem-solving and analytical skills, with experience in optimizing AI algorithms for performance and scalability.
- Familiar with Agile methodologies, adept at collaborative teamwork. Experience in Agile development of AI-based solutions is advantageous, ensuring efficient project delivery through iterative development processes.
What you will do :
- Utilize expertise in AI/ML and Data Science to develop and deploy AI models in production environments, ensuring scalability, reliability, and efficiency.
- Implement and optimize machine learning algorithms, neural networks, and statistical modeling techniques to solve complex problems.
- Hands-on experience in developing and deploying large language models (LLMs) in production environments, with a good understanding of distributed systems, microservice architecture, and REST APIs.
- Collaborate with cross-functional teams to integrate MLOps pipelines with CI/CD tools for continuous integration and deployment.
- Stay updated with the latest advancements in AI/ML technologies and contribute to the development and improvement of AI frameworks and libraries.
- Communicate technical concepts effectively to non-technical stakeholders, demonstrating excellent communication and interpersonal skills.
- Ensure compliance with industry best practices and standards in AI engineering, maintaining high standards of code quality, performance, and security.
- Experience in using container orchestration platforms such as Kubernetes to deploy and manage machine learning models in production environments.
Required Technical and Professional Expertise
- Data Science and Generative AI Experience:
- 7+ years of experience in Data Science and Generative AI.
- Background in machine learning, deep learning, and natural language processing.
- Model Experience:
- Hands-on experience with transformer-based and diffuser-based models (e.g., BERT, GPT, T5, Llama, Stable diffusion).
- Desirable experience in testing AI algorithms and models.
- Traditional AI Methodologies:
- Robust background in traditional AI methodologies, including machine learning and deep learning frameworks.
- Familiarity with model serving platforms such as TGIS and vLLM.
- Programming Proficiency:
- Proficiency in Python, C++, Go, Java.
- Experience with relevant ML libraries (e.g., TensorFlow, PyTorch) for developing production-grade quality products.
- Full-Stack Development:
- Proficient in full-stack development, including frontend (HTML, CSS, JavaScript) and backend (Django, Flask, Spring Boot).
- Experience integrating AI tech into full-stack projects.
- Data Handling Skills:
- Skilled in integrating, cleansing, and shaping data.
- Expertise in various databases including open-source databases like MongoDB, CouchDB, CockroachDB.
- Data Pipeline Architectures:
- Proficient in developing optimal data pipeline architectures for AI applications.
- Ensuring adherence to client’s SLAs.
- DevOps Experience:
- Experienced in DevOps practices.
- Skills in Git, CI/CD pipelines (Jenkins, Travis CI, GitLab CI), and containerization (Docker, Kubernetes).
- Open-Source Contribution:
- Open-source Contribution is a plus.
- Experience in contributing to open-source AI projects or utilizing open-source AI frameworks.
- Problem-Solving Skills:
- Strong problem-solving and analytical skills.
- Experience in optimizing AI algorithms for performance and scalability.
- AI Compiler/Runtime Skills:
- AI compiler/runtime skills would be a plus.
- Agile Methodologies:
- Familiarity with Agile methodologies.
- Experience in Agile development of AI-based solutions.
- Ensuring efficient project delivery through iterative development processes
Preferred Technical and Professional Expertise
- AI/ML and Data Science Proficiency:
- 7+ years of expertise in AI/ML and Data Science to develop and deploy AI models in production environments, ensuring scalability, reliability, and efficiency.
- Algorithm Implementation and Optimization:
- Proven ability to implement and optimize machine learning algorithms, neural networks, and statistical modeling techniques to solve complex problems effectively.
- Large Language Models (LLMs) Development:
- Hands-on experience in developing and deploying large language models (LLMs) in production environments.
- Proficiency in distributed systems, microservice architecture, and REST APIs.
- MLOps Integration:
- Experience in collaborating with cross-functional teams to integrate MLOps pipelines with CI/CD tools for continuous integration and deployment, ensuring seamless integration of AI/ML models into production workflows.
- Continuous Learning and Contribution:
- Demonstrated commitment to staying updated with the latest advancements in AI/ML technologies.
- Proven ability to contribute to the development and improvement of AI frameworks and libraries.
- Effective Communication:
- Strong communication skills with the ability to communicate technical concepts effectively to non-technical stakeholders.
- Demonstrated excellence in interpersonal skills, fostering collaboration across diverse teams.
- Adherence to Industry Standards:
- Proven track record of ensuring compliance with industry best practices and standards in AI engineering.
- Maintained high standards of code quality, performance, and security in AI projects.
- Container Orchestration:
- Experience in using container orchestration platforms such as Kubernetes to deploy and manage machine learning models in production environments, ensuring efficient scalability and management of AI infrastructure.