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AI/ML Engineer (Python and Numpy)

Location

India

JobType

full-time

About the job

Info This job is sourced from a job board

About the role

This is a remote position.

We are seeking a AI/ML Engineer (Python and Numpy) to join our team.

Responsibilties:

  • Design and implement machine learning models for mood detection and emotional trend analysis using TensorFlow or PyTorch.
  • Analyze user inputs (text-based or interactive features) to generate personalized insights.

Feature Development:

  • Collaborate with the team to integrate AI-powered features like the "Emotional Insights Dashboard."
  • Develop algorithms to track and predict emotional patterns based on user engagement.

Data Handling:

  • Preprocess, clean, and analyze data to train and test AI models.
  • Ensure compliance with data privacy regulations, such as GDPR, and maintain user confidentiality.

Collaboration and Integration:

  • Work closely with backend developers to ensure smooth integration of AI models.
  • Test and optimize models to ensure they work efficiently on mobile platforms.

Continuous Improvement:

Monitor the performance of AI features and iterate based on user feedback.

Research and implement state-of-the-art AI techniques to enhance app functionality.



Requirements

Proven experience in AI/ML development using frameworks like TensorFlow, Keras, or PyTorch.
Experience with data analysis, feature engineering, and model optimization.


Skills:
  • Strong understanding of supervised and unsupervised learning methods.
  • Knowledge of natural language processing (NLP) is a plus.
  • Proficiency in Python and libraries such as Pandas, NumPy, and Scikit-learn.

Personal Traits:

  • Passionate about using AI for mental health solutions.
  • Open to feedback and thrives in a collaborative environment.
  • Comfortable working in a remote, volunteer-based team.


Benefits

  • Work Location: Remote
  • 5 days working

Skills

Python
backend
compliance
Keras
machine learning
NLP
NumPy
Pandas
TensorFlow
user feedback
Pytorch