- Location
- Ahmedabad, Gujarat, India
- Job type
- Full-time
Required skills
- Python
- AWS
- Apache
- Apache Spark
- Azure
- cross-functional
- data science
- data structures
- deep learning
- Docker
- GCP
- Git
- Kite
- Kubeflow
- Kubernetes
- machine learning
- NLP
- NumPy
- Pandas
- Serverless
- Spark
- SQL
- statistics
- TensorFlow
- version control
- Pytorch
About the role
Black Kite Technologies Pvt Ltd
Website:
blackkitetechnologies.com
Job details:
Job Description : Machine Learning Engineer - LLM and Agentic AI
Key Responsibilities
- Research and Development: Research, design, and fine-tune machine learning models, with a focus on Large Language Models (LLMs) and Agentic AI systems.
- Model Optimization: Fine-tune and optimize pre-trained LLMs for domain-specific use cases, ensuring scalability and performance.
- Integration: Collaborate with software engineers and product teams to integrate AI models into customer-facing applications and platforms.
- Data Engineering: Perform data preprocessing, pipeline creation, feature engineering, and exploratory data analysis (EDA) to prepare datasets for training and evaluation.
- Production Deployment: Design and implement robust model deployment pipelines, including monitoring and managing model performance in production.
- Experimentation: Prototype innovative solutions leveraging cutting-edge techniques like reinforcement learning, few-shot learning, and generative AI.
- Technical Mentorship: Mentor junior team members on best practices in machine learning and software engineering.
Requirements
Core Technical Skills :
- Proficiency in Python for machine learning and data science tasks.
- Expertise in ML frameworks and libraries like PyTorch, TensorFlow, Hugging Face, Scikit-learn, or similar.
- Solid understanding of Large Language Models (LLMs) such as GPT, T5, BERT, or Bloom, including fine-tuning techniques.
- Experience working on NLP tasks such as text classification, entity recognition, summarization, or question answering.
- Knowledge of deep learning architectures, such as transformers, RNNs, and CNNs.
- Strong skills in data manipulation using tools like Pandas, NumPy, and SQL.
- Familiarity with cloud services like AWS, GCP, or Azure, and experience deploying ML models using tools like Docker, Kubernetes, or serverless functions.
Additional Skills (Good To Have)
- Exposure to Agentic AI (e.g., autonomous agents, decision-making systems) and practical implementation.
- Understanding of MLOps tools (e.g., MLflow, Kubeflow) to streamline workflows and ensure production reliability.
- Experience with generative AI models (GANs, VAEs) and reinforcement learning techniques.
- Hands-on experience in prompt engineering and few-shot/fine-tuned approaches for LLMs.
- Familiarity with vector databases like Pinecone, Weaviate, or FAISS for efficient model retrieval.
- Version control (Git) and familiarity with collaborative development practices.
General Skills
- Strong analytical and mathematical background, including proficiency in linear algebra, statistics, and probability.
- Solid understanding of algorithms and data structures to solve complex ML problems.
- Ability to handle and process large datasets using distributed frameworks like Apache Spark or Dask (optional but useful).
Soft Skills
- Excellent problem-solving and critical-thinking abilities.
- Strong communication and collaboration skills to work with cross-functional teams.
- Self-motivated, with a continuous learning mindset to keep up with emerging technologies.
(ref:hirist.tech)
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