Job Summary
We are looking for a Machine Learning Engineer (AI/ML) with 3-5 years of experience to develop and deploy scalable AI models. The ideal candidate has hands-on experience with machine learning algorithms deep learning frameworks and cloud-based ML solutions. You will work on real-world AI applications optimize ML models and collaborate with data scientists software engineers and product teams to deliver AI-powered solutions.
Key Responsibilities
- Develop train and deploy ML models for applications in NLP computer vision recommendation systems or predictive analytics.
- Design and implement ML pipelines for model training validation and deployment.
- Preprocess and analyze large datasets to extract meaningful insights and improve model performance.
- Optimize and fine-tune ML models using techniques like feature engineering hyperparameter tuning and distributed training.
- Deploy ML models in production using MLOps best practices with cloud platforms (GCP AWS or Azure).
- Collaborate with cross-functional teams to integrate AI models into production systems.
- Monitor and maintain deployed models ensuring their performance and retraining when necessary.
- Stay up-to-date with industry trends emerging AI/ML technologies and best practices.
Qualifications :
- Bachelors or Masters degree in Computer Science Data Science AI or a related field.
- 3-5 years of experience in machine learning AI or data science roles.
- Strong programming skills in Python (TensorFlow PyTorch Scikit-learn Pandas NumPy).
- Experience in building and deploying ML models on cloud platforms (Google Cloud Platform AWS or Azure).
- Hands-on experience with ML algorithms (classification regression clustering reinforcement learning).
- Familiarity with deep learning architectures (CNNs RNNs Transformers GANs).
- Understanding of MLOps practices (CI/CD pipelines model monitoring and retraining).
- Experience working with large-scale datasets using SQL BigQuery or Spark.
- Knowledge of containerization and orchestration using Docker and Kubernetes.
Additional Information :
Discover some of the global benefits that empower our people to become the best version of themselves:
- Finance: Competitive salary package share plan company performance bonuses value-based recognition awards referral bonus;
- Career Development: Career coaching global career opportunities non-linear career paths internal development programmes for management and technical leadership;
- Learning Opportunities: Complex projects rotations internal tech communities training certifications coaching online learning platforms subscriptions pass-it-on sessions workshops conferences;
- Work-Life Balance: Hybrid work and flexible working hours employee assistance programme;
- Health: Global internal wellbeing programme access to wellbeing apps;
- Community: Global internal tech communities hobby clubs and interest groups inclusion and diversity programmes events and celebrations.
At Endava were committed to creating an open inclusive and respectful environment where everyone feels safe valued and empowered to be their best. We welcome applications from people of all backgrounds experiences and perspectivesbecause we know that inclusive teams help us deliver smarter more innovative solutions for our customers. Hiring decisions are based on merit skills qualifications and potential. If you need adjustments or support during the recruitment process please let us know.
Remote Work :
No
Employment Type :
Full-time
Job SummaryWe are looking for a Machine Learning Engineer (AI/ML) with 3-5 years of experience to develop and deploy scalable AI models. The ideal candidate has hands-on experience with machine learning algorithms deep learning frameworks and cloud-based ML solutions. You will work on real-world AI ...
Job Summary
We are looking for a Machine Learning Engineer (AI/ML) with 3-5 years of experience to develop and deploy scalable AI models. The ideal candidate has hands-on experience with machine learning algorithms deep learning frameworks and cloud-based ML solutions. You will work on real-world AI applications optimize ML models and collaborate with data scientists software engineers and product teams to deliver AI-powered solutions.
Key Responsibilities
- Develop train and deploy ML models for applications in NLP computer vision recommendation systems or predictive analytics.
- Design and implement ML pipelines for model training validation and deployment.
- Preprocess and analyze large datasets to extract meaningful insights and improve model performance.
- Optimize and fine-tune ML models using techniques like feature engineering hyperparameter tuning and distributed training.
- Deploy ML models in production using MLOps best practices with cloud platforms (GCP AWS or Azure).
- Collaborate with cross-functional teams to integrate AI models into production systems.
- Monitor and maintain deployed models ensuring their performance and retraining when necessary.
- Stay up-to-date with industry trends emerging AI/ML technologies and best practices.
Qualifications :
- Bachelors or Masters degree in Computer Science Data Science AI or a related field.
- 3-5 years of experience in machine learning AI or data science roles.
- Strong programming skills in Python (TensorFlow PyTorch Scikit-learn Pandas NumPy).
- Experience in building and deploying ML models on cloud platforms (Google Cloud Platform AWS or Azure).
- Hands-on experience with ML algorithms (classification regression clustering reinforcement learning).
- Familiarity with deep learning architectures (CNNs RNNs Transformers GANs).
- Understanding of MLOps practices (CI/CD pipelines model monitoring and retraining).
- Experience working with large-scale datasets using SQL BigQuery or Spark.
- Knowledge of containerization and orchestration using Docker and Kubernetes.
Additional Information :
Discover some of the global benefits that empower our people to become the best version of themselves:
- Finance: Competitive salary package share plan company performance bonuses value-based recognition awards referral bonus;
- Career Development: Career coaching global career opportunities non-linear career paths internal development programmes for management and technical leadership;
- Learning Opportunities: Complex projects rotations internal tech communities training certifications coaching online learning platforms subscriptions pass-it-on sessions workshops conferences;
- Work-Life Balance: Hybrid work and flexible working hours employee assistance programme;
- Health: Global internal wellbeing programme access to wellbeing apps;
- Community: Global internal tech communities hobby clubs and interest groups inclusion and diversity programmes events and celebrations.
At Endava were committed to creating an open inclusive and respectful environment where everyone feels safe valued and empowered to be their best. We welcome applications from people of all backgrounds experiences and perspectivesbecause we know that inclusive teams help us deliver smarter more innovative solutions for our customers. Hiring decisions are based on merit skills qualifications and potential. If you need adjustments or support during the recruitment process please let us know.
Remote Work :
No
Employment Type :
Full-time
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