EdTech Jobs
Infopro Learning

AI Developer

Infopro Learning
🇮🇳In-Person - NOIDA, India₹800K–₹1.6M/yri6h ago
Prep for this Role

Summary

Build and deploy production-ready AI and machine learning systems that solve real business problems for end users. Work hands-on with a collaborative team to design, validate, and continuously improve AI solutions across multiple domains.

Key Responsibilities: Design and develop ML/DL models (classical ML, NLP, computer vision, transformers, GenAI) for business challenges; collaborate on data engineering, feature engineering, and dataset preparation. Deploy models to production using MLOps pipelines, Docker, Kubernetes, and cloud platforms; optimize for performance and monitor continuously.
Skills & Tools: Proficiency in machine learning frameworks, Python, and cloud platforms (AWS, Azure, GCP); hands-on experience with MLOps, Docker, Kubernetes, and CI/CD pipelines. Strong communication skills, attention to ethical AI practices, and ability to work cross-functionally with engineers, data scientists, and product teams.
Qualifications: Bachelor's degree in Computer Science, Engineering, or related field with 2-4 years of professional experience in ML/AI development or similar technical role. Demonstrated portfolio or experience deploying ML models to production environments.
Location: Onsite - Noida, Uttar Pradesh, India
Compensation: Not provided by employer. Typical compensation for this role is ₹12,00,000 – ₹20,00,000/year based on title, seniority, and location.

Job Description

AI Developer | Onsite, Noida | Open to India-based candidates only

Position type: Full-time employee

Location: Onsite - Noida, India

Why this role exists
We are building AI solutions that solve real business problems, not demos or experiments that live on a slide. As an AI Developer on our team, you will design, build, deploy, and continuously improve production-ready AI and machine learning systems used by real users. This role is for someone who enjoys hands-on development, cares about quality and scalability, and wants to see their work move from idea to impact.

This is a full-time, onsite role based in our Noida office. You will work closely with engineers, data scientists, and product partners in a collaborative, fast-moving environment.

What you will do

Build and deliver AI solutions

  • Design, develop, and validate machine learning and deep learning models to address domain-specific business challenges

  • Work across a range of approaches including classical ML, NLP, computer vision, reinforcement learning, and transformer-based models

  • Apply Generative AI techniques, including working with large language models and retrieval-based systems, where appropriate

Data engineering and preparation

  • Collaborate with data scientists and engineers to source, clean, and preprocess large datasets

  • Perform feature engineering and data selection to improve model inputs and outcomes

Production deployment and MLOps

  • Deploy models into production environments that support real-time or near real-time use cases

  • Build and maintain MLOps pipelines for deployment, monitoring, versioning, and retraining

  • Use Docker, Kubernetes, CI/CD pipelines, and cloud platforms such as AWS, Azure, or GCP

  • Integrate models into applications through APIs or model-serving frameworks

Performance, quality, and improvement

  • Optimize models for performance, latency, scalability, and resource efficiency

  • Implement testing strategies including unit testing, regression testing, and A/B testing

  • Monitor model performance and improve solutions based on data, feedback, and usage patterns

Collaboration and communication

  • Work closely with cross-functional teams including engineering, product, and subject matter experts

  • Document model architectures, training processes, and experimental results

  • Communicate technical concepts clearly to both technical and non-technical stakeholders

Ethical and responsible AI

  • Contribute to ethical AI practices with attention to fairness, transparency, and accountability

  • Help identify and mitigate risks such as bias, hallucinations, or incorrect outputs