

Infotree Global Solutions
AI/ML Engineer
β - Featured Role | Apply direct with Data Freelance Hub
This role is for an AI/ML Engineer, a 6-month contract position with a pay rate of "$XX/hour". Candidates must be pursuing a degree in Data Science or related fields, with strong skills in Python, machine learning, and basic cybersecurity knowledge.
π - Country
United States
π± - Currency
$ USD
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π° - Day rate
600
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ποΈ - Date
May 31, 2026
π - Duration
Unknown
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ποΈ - Location
Unknown
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π - Contract
Unknown
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π - Security
Unknown
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π - Location detailed
San Jose, CA
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π§ - Skills detailed
#Data Science #Pandas #"ETL (Extract #Transform #Load)" #ML (Machine Learning) #Datasets #AI (Artificial Intelligence) #NLP (Natural Language Processing) #Python #Supervised Learning #Visualization #PyTorch #Clustering #TensorFlow #Cloud #Data Analysis #Cybersecurity #Regression #Neural Networks #Security #Unsupervised Learning #Libraries #Anomaly Detection #Automation #Computer Science #Logistic Regression #NumPy
Role description
Job description
We are seeking a motivated Cybersecurity Data Science Intern with a strong foundation in data science, machine learning, and a demonstrated interest in cybersecurity. This role bridges the gap between advanced data-driven techniques and practical security operations. You will work alongside experienced cybersecurity professionals to analyze security telemetry, develop models for threat detection, and apply modern data science methods to real-world security problems
Responsibilities
β’ Support the development of data-driven models to improve detection of threats, anomalies, and insider risks.
β’ Apply machine learning techniques such as gradient descent, logistic regression, clustering, and neural networks to cybersecurity use cases.
β’ Perform exploratory data analysis (EDA) on diverse security datasets (endpoint, network, cloud, identity, vulnerability).
β’ Collaborate with the security operations and threat intelligence teams to design metrics, features, and models that enhance detection and response.
β’ Contribute to automation workflows, anomaly scoring models, and visualization dashboards for SOC analysts.
β’ Research and experiment with AI/ML techniques (e.g., embeddings, NLP, anomaly detection) to extract actionable insights from large volumes of security data.
β’ Present findings and proof-of-concept results to both technical and non-technical stakeholders.
Required Qualifications
β’ Currently pursuing a degree (Bachelorβs, Masterβs, or PhD) in Data Science, Computer Science, Cybersecurity, Applied Math, or related field.
β’ Strong understanding of machine learning fundamentals (gradient descent, optimization, supervised/unsupervised learning).
β’ Experience with Python and data science libraries (NumPy, Pandas, scikit-learn, PyTorch or TensorFlow).
β’ Basic knowledge of cybersecurity concepts such as threats, vulnerabilities, intrusion detection, and MITRE ATT&CK.
β’ Ability to analyze large datasets and communicate findings clearly.
Job description
We are seeking a motivated Cybersecurity Data Science Intern with a strong foundation in data science, machine learning, and a demonstrated interest in cybersecurity. This role bridges the gap between advanced data-driven techniques and practical security operations. You will work alongside experienced cybersecurity professionals to analyze security telemetry, develop models for threat detection, and apply modern data science methods to real-world security problems
Responsibilities
β’ Support the development of data-driven models to improve detection of threats, anomalies, and insider risks.
β’ Apply machine learning techniques such as gradient descent, logistic regression, clustering, and neural networks to cybersecurity use cases.
β’ Perform exploratory data analysis (EDA) on diverse security datasets (endpoint, network, cloud, identity, vulnerability).
β’ Collaborate with the security operations and threat intelligence teams to design metrics, features, and models that enhance detection and response.
β’ Contribute to automation workflows, anomaly scoring models, and visualization dashboards for SOC analysts.
β’ Research and experiment with AI/ML techniques (e.g., embeddings, NLP, anomaly detection) to extract actionable insights from large volumes of security data.
β’ Present findings and proof-of-concept results to both technical and non-technical stakeholders.
Required Qualifications
β’ Currently pursuing a degree (Bachelorβs, Masterβs, or PhD) in Data Science, Computer Science, Cybersecurity, Applied Math, or related field.
β’ Strong understanding of machine learning fundamentals (gradient descent, optimization, supervised/unsupervised learning).
β’ Experience with Python and data science libraries (NumPy, Pandas, scikit-learn, PyTorch or TensorFlow).
β’ Basic knowledge of cybersecurity concepts such as threats, vulnerabilities, intrusion detection, and MITRE ATT&CK.
β’ Ability to analyze large datasets and communicate findings clearly.






