🌟 Senior Data Scientist SME & AI Architect (10+ Years Experience) 🧠
Senior Data Scientist Subject Matter Expert (SME)
You will be the principal technical leader, driving strategy, setting standards, and delivering high-impact solutions that transform business outcomes.
Key Responsibilities
AI/ML Strategy & Architecture:
Define the technical roadmap and architectural standards for deploying and scaling complex AI systems, particularly those involving Generative AI (GenAI)
, large language models (LLMs
), and specialized models in Computer Vision and NLP.Big Data Engineering:
Design, build, and optimize high-throughput, distributed data pipelines and features using Apache Spark (Scala)
and Hive
on massive datasets to support model training and inference.Cross-Cloud Execution:
Lead the design and deployment of ML models and data infrastructure across multiple major cloud providers (AWS, Azure, and GCP
), ensuring portability, scalability, and cost efficiency.Specialized Model Development:
Lead hands-on development, fine-tuning, and deployment of production-grade models in key specialized areas:Computer Vision:
Developing and optimizing models for image recognition, object detection, and video analytics.NLP:
Building sophisticated systems for sentiment analysis, entity extraction, semantic search, and RAG architectures leveraging LLMs.Generative AI:
Exploring and implementing cutting-edge GenAI techniques for content creation, data augmentation, and innovative product features.SME Consulting & Mentorship:
Act as the internal authority and consultant, providing technical guidance, architectural review, and mentorship to junior data scientists and engineering teams.MLOps & Governance:
Establish best practices for MLOps, model monitoring, version control, and model risk governance in a multi-cloud production environment.
Required Skills and Expertise (10+ Years)
1. Big Data and Cloud Mastery
Programming & Big Data:
10+ years of extensive, hands-on experience with Apache Spark
, with strong preference for production development using Scala
. Deep expertise with Apache Hive
for data querying and management.Cloud Proficiency:
Demonstrated expertise in deploying and managing data/ML workloads across at least two
of the three major cloud platforms: AWS
(Sagemaker, EMR, S3), Azure
(Azure ML, Synapse Analytics), and GCP
(Vertex AI, BigQuery).Data Architecture:
Expert knowledge of distributed systems, data partitioning, optimization techniques, and data warehousing concepts in a cloud-native context.
2. Advanced AI/ML Specialization
Generative AI (GenAI) & LLMs:
Proven experience with the architecture and implementation of Generative AI solutions, including prompt engineering, fine-tuning, and deploying Large Language Models (LLMs)
.Computer Vision:
In-depth knowledge of deep learning frameworks (TensorFlow, PyTorch) and experience with Computer Vision tasks (e.g., CNNs, object detection models like YOLO).NLP:
Expert practical experience in NLP techniques, including transformer models, embedding generation, and building complex text-based applications.
3. Leadership & Soft Skills
Technical Leadership:
Proven track record of leading complex data science projects from research to production deployment.Communication:
Exceptional ability to translate complex technical findings into clear, strategic recommendations for technical and executive audiences.Mentorship:
Experience mentoring and training senior engineers and data scientists.
Education and Certification
- Master’s or Ph.D. in Computer Science, Data Science, Engineering, or a highly quantitative field.
- Relevant professional cloud certifications (e.g., AWS Certified Machine Learning Specialty, Google Cloud Professional Data Engineer) are highly desirable.