MPower Plus | Data Scientist

MPower Plus
East London
1 year ago
Applications closed

Job Title :

Data Scientist (AI / ML)Job Location: United Kingdom (Remote job - will have few onsite visits per month for meetings) – London, UKJob Type: Contract (B2B / Freelance)Duration : 6-12+ months (possible extension) Job Description:Currently should live in United Kingdom with valid Citizenship / Work Permit to work in United KingdomPython coding test will be there in the interviewShould be an immediate joiner with maximum 2 weeks’ notice period Responsibilities and Skills:Should have minimum 4 years of experience Should have strong experience in Python DevelopmentShould have hands on experience in LLM and AIShould be very strong in Fine tuning LLM and Model training and evaluationProficient in Python and familiar with libraries such as frameworks, particularly NumPy. TensorFlow, PyTorchDesign, implement, and optimize training processes for large language models.Fine-tune pre-trained models to improve performance on specific tasks or datasets.Collate, clean, and organize datasets required for training and evaluation.Ensure data quality and integrity throughout the training process.Develop and execute benchmarks to assess model performance.Analyze model outputs, interpret results, and provide actionable insights for improvements.

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