Sr. Data Scientist

TMS
united kingdom
1 week ago
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Role: Sr. Data Scientist
Duration: Long Term
Location: London- Hybird

Looking for Data Scientist,Who build and support Generative AI, Machine learning, Deep Learning and Data science solutions across the organization.

Specific Emerging Technology team objectives are:

Gen AI/ML technology implementation with business and product owners

Emerging Tech Governance function covering policies, guidelines and processes to govern AI/ML enabled components as well as third party AI governance

Lead and support other enterprise-level AI exploration tools and capabilities

Provide guidance and support for safe development and deployment of AI

What You Need to Have:

Ph.D. or master's degree in computer science, Data Science, Machine Learning, or a related field.

A minimum of 7 years of experience in data science, with a strong focus on generative AI, deep learning, machine learning, NLP, and large language models.

Proven track record of developing and deploying successful deep learning and NLP models in real-world applications.

Proficiency in programming languages such as Python, and experience with machine learning frameworks such as PyTorch, TensorFlowor similar.

Strong understanding of natural language processing (NLP) techniques and experience with large language models like GPT, BERT, or similar.

Proficiency in machine learning and and deep learning algorithms such as Neural networks, multi-class classifications, decision trees, support vector machines etc.

Prior experience working on building Gen AI frameworks and leveraging and/or finetuning LLM's.

Excellent problem-solving skills and the ability to think critically and creatively.

Strong communication and leadership skills, with a demonstrated ability to work effectively in a collaborative environment.

Exposure/experience in containerization technologies like docker, Kubernetes, AWS EKS etc.

Knowledge of popular Cloud computing vendor (AWS and Azure) infrastructure & services e.g. AWS Bedrock, AWS S3, AWS Sagemaker, Azure AI search, Azure OpenAI, Azure blob storage etc.

What Would Make You Stand Out:

Passionate about the power of data, GenAI and predictive analytics to drive better business outcomes for customers

Proven ability to work effectively in a distributed working environment and ability to work efficiently and productively in a fast-paced environment

Familiarity with credit ratings agencies, regulations, and data products around the world

Outstanding written and verbal communication skills

A champion of good code quality and architectural practices.

Strong interpersonal skills and ability to work proactively and as a team player

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