Professional Certificate in AI Implementation Best Practices Planning
-- ViewingNowThe Professional Certificate in AI Implementation Best Practices Planning is a comprehensive course designed to meet the surging industry demand for AI expertise. This certificate program empowers learners with essential skills to plan, implement, and manage AI projects effectively, addressing critical aspects like data strategy, ethical considerations, and infrastructure management.
3,724+
Students enrolled
GBP £ 140
GBP £ 202
Save 44% with our special offer
ě´ ęłźě ě ëí´
100% ě¨ëźě¸
ě´ëěë íěľ
ęłľě ę°ëĽí ě¸ěŚě
LinkedIn íëĄíě ěśę°
ěëŁęšě§ 2ę°ě
죟 2-3ěę°
ě¸ě ë ěě
ë기 ę¸°ę° ěě
ęłźě ě¸ëśěŹí
â˘
• AI Strategy and Planning: Developing a successful AI strategy is crucial for organizations. This unit covers the process of identifying business problems that can be solved with AI, setting AI objectives, and creating an AI roadmap. It also discusses the importance of aligning AI strategy with business strategy.
â˘
• Data Preparation for AI: Data is the backbone of AI systems, and preparing data for AI is a critical step in the implementation process. This unit covers data collection, data cleaning, data preprocessing, and data augmentation techniques. It also discusses the importance of data governance and data security.
â˘
• AI Model Selection and Development: This unit covers the process of selecting the appropriate AI model based on the business problem, data availability, and computational resources. It also discusses the different types of AI models, such as supervised learning, unsupervised learning, and reinforcement learning. The unit also covers the model development process, including training, validation, and testing.
â˘
• AI Model Deployment and Integration: Once the AI model is developed, it needs to be deployed in the production environment. This unit covers the different deployment options, such as on-premises, cloud, or hybrid deployment. It also discusses the importance of integration with existing systems and processes.
â˘
• AI Model Monitoring and Maintenance: AI models require continuous monitoring and maintenance to ensure they are delivering accurate results. This unit covers the different monitoring techniques, such as performance monitoring, data drift detection, and model drift detection. It also discusses the importance of model retraining and updating.
â˘
• AI Ethics and Bias: AI systems can perpetuate biases and ethical issues if not designed and implemented carefully. This unit covers the different ethical considerations, such as fairness, accountability, transparency, and privacy. It also discusses the importance of identifying and mitigating biases in AI systems.
â˘
• AI Governance and Compliance: AI systems must comply with various regulations and laws. This unit covers the
ę˛˝ë Ľ 경ëĄ
ě í ěęą´
- 죟ě ě ëí 기본 ě´í´
- ěě´ ě¸ě´ ëĽěë
- ěť´í¨í° ë° ě¸í°ëˇ ě ꡟ
- 기본 ěť´í¨í° 기ě
- ęłźě ěëŁě ëí íě
ěŹě ęłľě ěę˛Šě´ íěíě§ ěěľëë¤. ě ꡟěąě ěí´ ě¤ęłë ęłźě .
ęłźě ěí
ě´ ęłźě ě ę˛˝ë Ľ ę°ë°ě ěí ě¤ěŠě ě¸ ě§ěęłź 기ě ě ě ęłľíŠëë¤. ꡸ę˛ě:
- ě¸ě ë°ě 기ę´ě ěí´ ě¸ěŚëě§ ěě
- ęśíě´ ěë 기ę´ě ěí´ ęˇě ëě§ ěě
- ęłľě ě겊ě ëł´ěě
ęłźě ě ěąęłľě ěźëĄ ěëŁí늴 ěëŁ ě¸ěŚě뼟 ë°ę˛ ëŠëë¤.
ě ěŹëë¤ě´ ę˛˝ë Ľě ěí´ ě°ëŚŹëĽź ě ííëę°
댏롰 ëĄëŠ ě¤...
ě죟 돝ë ě§ëʏ
ě˝ě¤ ěę°ëŁ
- 죟 3-4ěę°
- 쥰기 ě¸ěŚě ë°°ěĄ
- ę°ë°Ší ëąëĄ - ě¸ě ë ě§ ěě
- 죟 2-3ěę°
- ě 기 ě¸ěŚě ë°°ěĄ
- ę°ë°Ší ëąëĄ - ě¸ě ë ě§ ěě
- ě 체 ě˝ě¤ ě ꡟ
- ëě§í¸ ě¸ěŚě
- ě˝ě¤ ěëŁ
ęłźě ě ëł´ ë°ę¸°
íěŹëĄ ě§ëś
ě´ ęłźě ě ëšěŠě ě§ëśí기 ěí´ íěŹëĽź ěí ě˛ęľŹě뼟 ěě˛íě¸ě.
ě˛ęľŹěëĄ ę˛°ě ę˛˝ë Ľ ě¸ěŚě íë