About Prismforce

Prismforce is a Vertical SaaS company revolutionizing the Talent Supply Chain for global Technology,
R&D/Engineering, and IT Services companies. Our AI-powered product suite enhances business
performance by enabling operational flexibility, accelerating decision-making, and boosting
profitability. Our mission is to become the leading industry cloud/SaaS platform for tech services and
talent organizations worldwide.
We’re looking for a passionate and curious Generative AI Engineer to join our team in Bangalore.
You’ll work on cutting-edge NLP and ML projects, leveraging large language models (LLMs) and
advanced deep learning techniques to solve complex business challenges.
Job Description :
Role: Gen AI Engineering
Reporting to: Data Scientist
Location: Bangalore
Exp: 1-4 Years



Key Responsibilities
 Fine-tune LLMs using techniques like LoRA and QLoRA
 Evaluate and improve RAG (Retrieval-Augmented Generation) pipelines for
groundedness, accuracy, and relevance
 Apply transfer learning and transformer architectures in model development
 Validate model accuracy and performance using appropriate metrics
 Collaborate with product teams and communicate insights to senior leadership
 Participate in problem-solving sessions and contribute innovative ideas
 Maintain an experimental mindset and continuously explore new approaches
 Identify and integrate relevant data sources to build meaningful datasets
 Automate data collection and preprocessing for structured and unstructured data
 Handle large-scale data to feed analytical and predictive models
 Build and optimize machine learning and deep learning models, including NLP
solutions
Requirements:
Education & Experience
 Bachelor’s degree in a quantitative field (Computer Science, Engineering, Physics,
Mathematics, Operations Research) or equivalent experience
 1–4 years of hands-on experience in Gen AI and NLP
 Prior experience in startups or high-growth environments is a plus

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  • Technical Skills  Deep expertise in NLP techniques: text generation, sentiment analysis, NER, and language modeling  Hands-on experience with LLMs and RAG pipelines  Proficiency in neural network frameworks: TensorFlow, PyTorch  Familiarity with transformer architecture and transfer learning  Fluency in at least one programming language: Python, R, or Julia  Experience with Gen AI libraries: Hugging Face, OpenAI, etc.  Strong foundation in ML algorithms: supervised, unsupervised, reinforcement learning, Bayesian inference  Fine Tuning, Transfer Learning, Pytorch, TensorflowAnalytical