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Data Scientist

Data Scientist

GyanSys Inc.Greater Bengaluru Area, India
4 days ago
Job description

We have great opportunity for Data Scientist for Bangalore Location. Below are the details.

Looking for resource to work from office, Bangalore.

B.E. / B. Tech / M. Tech / MCA in computer science, artificial intelligence, or a related field

  • 6+ years of IT experience with a min of 3+ years in Data Science (AI / ML)
  • Strong programming skills in Python
  • Experience with deep learning frameworks (e.g., TensorFlow, PyTorch)
  • Hands-on AI / ML modeling experience of complex datasets combined with a strong understanding of the theoretical foundations of AI / ML(Research Oriented).
  • Expertise in most of the following areas : supervised & unsupervised learning, deep learning, reinforcement learning, federated learning, time series forecasting, Bayesian statistics, and optimization.
  • Hands-on experience on design, and optimizing LLM, natural language processing (NLP) systems, frameworks, and tools.
  • Building RAG application independently using available open source LLM models.
  • Comfortable working in the cloud and high-performance computing environments (e.g., AWS / Azure / GCP, Databricks).

Note : SLCA, we need person with both strong technical skills and communicate with stakeholders.

Kindly share best profiles with details feedback from internal team. Also please share below prescreening questionnaire :

Q. Years of experience in Machine Learning?

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Q. Do you have experience in Deep Learning? if yes, how many years?

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Q. Which Deep Learning Framework have you worked with? how do you rate yourself in it out of 10 ?

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Q. Have you trained or finetuned a deep learning model? if finetuned, name few pretrained models you have finetuned?

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Q. Which NLP libraries or frameworks have you used (e.g., NLTK, spaCy, Hugging Face Transformers)?

Ans.

Q. Have you worked on CV projects? What types of tasks (e.g., object detection, image segmentation) have you handled?

Q. Which CV architectures or pre-trained models have you utilized (e.g., CNNs, ResNet, YOLO)?

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Q. Do you have experience / exposure on working with LLM ? if yes, Which LLM have you used (e.g., GPT3.5, Gemini, Llama)

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