Raas Infotek
WebsiteLead Machine Learning Engineer(only -w2)
Company
Role
Lead Machine Learning Engineer(only -w2)
Job type
Contractor
Found on Mokaru
2 months ago
Salary
Job description
Hi
I hope you are doing well.
We have an urgent position listed below. Please send your most recent resume along with the expected rate if you are interested.
Job Role:Lead Machine Learning Engineer
Location : Washington DC, Onsite
Visa: USC/GC only-w2
Job Description
Skills: Python AI, Langchain , Langgraph
This role is responsible for developing, optimizing, and evaluating machine learning models focused on time series forecasting and natural language processing. The individual applies solid technical expertise to deliver scalable solutions, ensures adherence to best practices, and supports project objectives through effective use of Python, Spark, Kafka, and relevant ML frameworks. (1.) Key Responsibilities
- Develop and implement time series forecasting models using Python, scikit-learn, TensorFlow, and StatsModels, ensuring robust predictions and model accuracy.
- Integrate and process large-scale streaming data with Apache Kafka and Spark, enabling real-time feature engineering and data transformation for ML pipelines.
- Evaluate machine learning models with cross-validation, ROC/AUC, Precision/Recall, F1-score, and Confusion Matrix to ensure optimal performance and reliability.
- Apply NLP techniques using NLTK and SpaCy to preprocess and analyze textual data for forecasting applications.
- Optimize model training and deployment workflows using Apache Airflow and Hadoop, maintaining efficiency and scalability in production environments.
- Collaborate within the development team to advocate and implement coding standards and best practices in Python and ML model development.
- Prepare technical documentation and status reports to communicate progress, risks, and mitigation strategies for assigned modules.
Skill Requirements
- Solid Proficiency In Machine Learning And Nlp, Including Supervised And Unsupervised Learning, Deep Learning, And Reinforcement Learning.
- Solid Experience With Python, Numpy, Pandas, Scikitlearn, Tensorflow, Pytorch, Xgboost, And Lightgbm For Model Development And Evaluation.
- Solid Understanding Of Time Series Analysis And Forecasting Methodologies.
- Solid Skills In Apache Spark And Kafka For Distributed Data Processing And Streaming Analytics.
- Solid Knowledge Of Ml Model Evaluation Metrics And Techniques, Including Crossvalidation And Statistical Analysis.
- Solid Ability To Apply Nlp Frameworks Such As Nltk And Spacy For Text Data Processing.


