Machine Learning Engineer
Bengaluru, Karnātaka, India
Full Time Senior-level / Expert INR 2500K - 3000K
ClanX
Hire talented engineers, product designers, and product managers from India with ClanX. Connect with skilled professionals quickly and build your team with the best talent India has to offerOverview
We seek an AI/ML Engineer to develop machine learning models and AI-driven features for our crypto trading platform. You will work with the full-stack and blockchain teams to enhance predictive analytics, risk assessment, and automated trading.
Company Details
A fintech startup using AI to optimize crypto trading through automation, predictive analytics, and market intelligence.
Requirements
3 to 5 years of handson experience with Machine Learning
Proficiency in TensorFlow, PyTorch, or Scikit-learn
Strong Python skills and familiarity with JavaScript or TypeScript
Experience with Pandas, NumPy, SQL, NLP, and reinforcement learning
Knowledge of crypto markets, trading strategies, and technical analysis
Familiarity with cloud AI services like AWS SageMaker or Google AI
Strong analytical and problem-solving skills
Responsibilities
Develop AI-driven trading bots for trend prediction and risk management
Implement predictive analytics and personalized trading recommendations
Train, optimize, and deploy machine learning models
Work with developers to integrate AI into the trading platform
Job Details
Location: Bangalore
Employment Type: Full-Time, Onsite
Interview Process
Initial screening with HR.
Technical Interview
System Design Interview
Final discussion with leadership.
Role of ClanX
ClanX is helping the company find skilled Machine Learning Engineer specializing in DeFi, smart contracts, and decentralized trading platforms.
Tags: AWS Blockchain Crypto FinTech JavaScript Machine Learning ML models NLP NumPy Pandas Python PyTorch Reinforcement Learning SageMaker Scikit-learn SQL TensorFlow Trading Strategies TypeScript
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