• Professional Development
  • Medicine & Nursing
  • Arts & Crafts
  • Health & Wellbeing
  • Personal Development

44 Algorithm courses

From Essays to Research Papers: How a Plagiarism Checker Tool Can Help

By david hude

Introduction In today’s academic landscape, the integrity of one's work is more crucial than ever. With the prevalence of information readily available online, ensuring that your work is original can be challenging. This is where tools like a Plagiarism Checker come into play, offering invaluable assistance to students, researchers, and educators alike. These tools not only help in maintaining the authenticity of academic work but also bolster the credibility of the individual behind it. In this article, we'll explore the multifaceted role of plagiarism checker tools in academia, from essays to research papers. Understanding Plagiarism Definition of Plagiarism Plagiarism is the act of using someone else’s words, ideas, or expressions without proper acknowledgement. It’s a serious offence in academic and professional settings, leading to consequences ranging from loss of credibility to legal repercussions. Types of Plagiarism in Academic Writing Direct Plagiarism: Copying text verbatim without citation. Self-Plagiarism: Reusing one's previous work without acknowledgement. Mosaic Plagiarism: Borrowing phrases from a source without using quotation marks. Accidental Plagiarism: Unintentional failure to cite sources properly. Challenges Faced in Academic Writing Common Issues in Essay Writing Writing essays involves synthesizing information from various sources while presenting it in a unique voice. Common issues include unintentional plagiarism, inadequate citation, and difficulty in integrating sources seamlessly. Research Papers and Their Complexities Research papers require in-depth analysis, original research, and a comprehensive understanding of existing literature. Challenges include properly crediting sources, avoiding plagiarism, and maintaining originality. The Role of Plagiarism Checker Tools What is a Plagiarism Checker? A plagiarism checker is a tool designed to detect similarities between submitted text and existing content in its database. It scans documents and highlights matching phrases, helping users identify potential plagiarism. How Plagiarism Checkers Work Plagiarism checkers compare the text against a vast database of published works, websites, and academic papers. They use algorithms to detect similarities and provide a report detailing any matches found, indicating the percentage of copied content. Benefits of Using Plagiarism Checker Tools Ensuring Originality Plagiarism checker tools ensure that your work is original by detecting any unintentional copying from other sources. This helps in producing authentic and unique content. Enhancing Academic Credibility By verifying the originality of your work, plagiarism checkers enhance your academic credibility, demonstrating a commitment to integrity and scholarly excellence. Using Plagiarism Checker Tools for Essays How to Use a Plagiarism Checker for Essays Upload Your Document: Start by uploading your essay to the plagiarism checker. Run the Check: Initiate the plagiarism check and wait for the results. Review the Report: Analyze the report to identify any sections that need proper citation or rephrasing. Tips for Effective Essay Writing Plan Ahead: Outline your essay and plan your sources. Cite Properly: Use appropriate citation styles for references. Revise Thoroughly: Revise your essay to ensure clarity and originality. Utilizing Plagiarism Checker Tools for Research Papers Checking Research Papers for Plagiarism Prepare Your Draft: Ensure your research paper is ready for submission. Use a Plagiarism Checker: Upload and scan your paper. Address Plagiarism: Modify any flagged sections to enhance originality. Best Practices for Citing Sources Use a Consistent Style: Follow a specific citation style (APA, MLA, etc.). Credit All Sources: Ensure every piece of borrowed information is cited. Maintain a Reference List: Keep a comprehensive list of all references. Case Study: Impact of Plagiarism Checkers in Academia Real-Life Example of Plagiarism Detection In a notable case, a university discovered extensive plagiarism in student theses using plagiarism checkers. The tool identified significant matches with online sources, leading to disciplinary actions and highlighting the need for rigorous plagiarism checks. Lessons Learned from Case Studies Case studies reveal the importance of proactive plagiarism detection and the role of technology in maintaining academic integrity. They underscore the need for students and educators to use these tools regularly. Comparison of Popular Plagiarism Checker Tools Overview of Top Plagiarism Checkers Turnitin: Widely used in educational institutions for its comprehensive database and detailed reports. Grammarly: Combines grammar checking with plagiarism detection, ideal for writers and students. Copyscape: Popular for checking web content plagiarism, particularly useful for bloggers and online writers. Features and Pricing Turnitin: Offers extensive academic resources but can be expensive. Grammarly: Provides a user-friendly interface with moderate pricing. Copyscape: Cost-effective for simple plagiarism detection needs. The Future of Plagiarism Detection Advancements in Plagiarism Detection Technology Technological advancements are enhancing the accuracy and efficiency of plagiarism detection, with AI playing a pivotal role in identifying complex plagiarism patterns. The Role of AI in Plagiarism Checking AI-powered tools are capable of detecting paraphrasing and more nuanced forms of plagiarism, making them indispensable in the future of academic integrity. Academic Integrity and Ethics The Ethical Use of Plagiarism Checker Tools Using plagiarism checkers ethically involves ensuring that they are used to improve the originality of your work rather than to circumvent academic responsibilities. Encouraging Honest Academic Practices Educators should encourage the use of plagiarism checkers as a learning tool to promote honesty and diligence in academic work. Common Myths About Plagiarism Checker Tools Misconceptions and Clarifications “Plagiarism checkers are 100% accurate.”: While highly effective, they are not foolproof. “They can replace proper citation.”: Plagiarism checkers are a complement, not a substitute for proper citation practices. Addressing Fears and Concerns Concerns about privacy and the accuracy of plagiarism checkers can be mitigated by choosing reputable tools and understanding their limitations. Steps to Implement Plagiarism Checker Tools in Academia Integrating Tools into the Academic Workflow Institutions should incorporate plagiarism checkers into their academic processes, making them a standard part of assignment submission and evaluation. Training Students and Faculty Provide training on how to use plagiarism checkers effectively and ethically, ensuring everyone understands their role in upholding academic integrity. How New Assignment Help Utilizes Plagiarism Checker Tools Our Approach to Maintaining Originality At New Assignment Help, we use advanced plagiarism checker tools to ensure that every assignment is original and free from plagiarism. Our tools help students submit work with confidence, knowing it's unique. Benefits for Students Using New Assignment Help Students benefit from enhanced academic credibility, better grades, and a deeper understanding of proper citation practices by using our plagiarism detection services. Conclusion Plagiarism checker tools are invaluable in maintaining academic integrity and ensuring the originality of essays and research papers. As technology advances, these tools will continue to evolve, offering more sophisticated ways to detect and prevent plagiarism. Embracing these tools is essential for anyone serious about upholding academic standards and producing high-quality, credible work. Read Our Last Article: Unlock Your Academic Potential with Assignment Help Online

From Essays to Research Papers: How a Plagiarism Checker Tool Can Help
Delivered In-PersonFlexible Dates
FREE

Expansion of Online Gambling in Developing Regions

By mostbetcasino

As digital transformation accelerates globally, online gambling is experiencing significant growth in emerging markets. These regions, driven by increasing smartphone penetration and improved internet connectivity, are becoming hotspots for betting platforms. Many industry leaders, including mostbetcasino, are capitalizing on this trend by offering accessible and localized gaming solutions. The rapid development of digital payment systems has also contributed to the expansion of online gambling. Players in regions such as Southeast Asia, Africa, and Latin America now have access to diverse transaction methods, from mobile wallets to cryptocurrency. This shift removes barriers that previously hindered participation in online betting, allowing a broader audience to engage with gambling platforms. Regulatory landscapes in emerging markets vary significantly, with some governments embracing the industry while others impose restrictions. Countries that introduce clear licensing frameworks create opportunities for operators to establish legitimate and secure platforms. On the other hand, regulatory uncertainties can slow down the expansion of digital gambling, forcing operators to navigate complex legal challenges. Technological advancements, including artificial intelligence and blockchain, have further enhanced the user experience in online gambling. AI-driven algorithms help personalize content, while blockchain ensures transparency and security in transactions. These innovations build trust among players, an essential factor for the sustained growth of the industry in developing regions. Mobile gaming plays a crucial role in the expansion of online betting. In many emerging markets, smartphones are the primary device for internet access. Betting platforms now optimize their websites and apps for mobile use, ensuring seamless experiences regardless of device specifications. The introduction of 5G technology in some areas has also improved connectivity, allowing for high-speed, uninterrupted gaming sessions. Localization strategies are key to attracting and retaining users in new markets. Gambling operators focus on adapting their platforms to meet regional preferences, such as offering language support, culturally relevant promotions, and region-specific betting options. This approach not only improves engagement but also fosters loyalty among players. One of the primary drivers of online gambling growth is the rising interest in sports betting. Many emerging markets have strong sports cultures, with football, cricket, and basketball being particularly popular. Betting platforms that integrate real-time data, live streaming, and interactive betting features provide an engaging experience for sports enthusiasts. The growing interest in live dealer games and social gambling further influences market expansion. Players in developing regions often seek interactive gaming experiences that replicate land-based casino environments. Online platforms cater to this demand by offering multiplayer options, chat functions, and live-streamed table games. Responsible gambling measures remain a priority as digital betting gains traction. Operators must implement tools to promote responsible gaming, including self-exclusion options, deposit limits, and access to support services. Ensuring ethical practices will be critical for maintaining industry credibility in new markets. As online gambling continues to evolve, mostbet az casino is among the platforms leading the charge in these regions. By leveraging technology, adapting to regulatory changes, and prioritizing user experience, the industry is set to thrive in developing economies. With further advancements on the horizon, emerging markets will play an increasingly important role in shaping the future of online betting.

Expansion of Online Gambling in Developing Regions
Delivered In-PersonFlexible Dates
FREE

Free Plagiarism Checkers for PowerPoint

By John smith

Have you ever worried about accidentally using someone else's work in your PowerPoint presentations without proper attribution? Or maybe you want to ensure your academic or professional slides are original and free of plagiarism. Maintaining originality is crucial in both academic and professional settings, and that's where free plagiarism checkers for PowerPoint come to the rescue. These tools help you ensure that your presentations are authentic and that all sources are correctly cited. What is a Plagiarism Checker for PowerPoint? A plagiarism checker for PowerPoint is a digital tool designed to scan the content of your slides for any instances of plagiarism. It compares your text, images, and other content against a vast database of sources to identify any potential matches. These tools use algorithms and extensive databases of web pages, academic papers, and other published content to identify similarities between your presentation and existing sources. Advanced tools may also use artificial intelligence to detect paraphrased content that still closely resembles the original source. Why Use Free Plagiarism Checkers for PowerPoint? Not everyone has the budget for premium plagiarism detection software. Free tools offer a cost-effective solution for students, educators, and professionals who need to ensure their work is original. Most free plagiarism checkers are available online and can be used directly from your browser, without needing any downloads or installations. This makes them a convenient option for quick checks, whether you're at home, at work, or on the go. Features to Look for in a Plagiarism Checker for PowerPoint The most important feature of a plagiarism checker is its ability to accurately detect copied content. Look for tools with high detection rates and comprehensive databases. A good plagiarism checker should be easy to use, with a simple interface that allows you to quickly upload your PowerPoint files and get results without hassle. Consider whether the plagiarism checker integrates with other platforms you use, such as Microsoft Office, Google Drive, or cloud storage services. Some plagiarism checkers offer customization options, such as choosing the database they scan against or adjusting the sensitivity of the checker. These features can be useful if you have specific needs, like checking against academic databases or avoiding self-plagiarism. How to Use Online Plagiarism Checkers for PowerPoint Effectively Start with the best possible version of your PowerPoint presentation. Ensure that all quotes, data, and images are correctly cited before running the plagiarism check. After running your presentation through the plagiarism checker, carefully review the report. Check any flagged content and make necessary revisions to ensure your work is original and properly attributed. Once you've addressed any potential issues, make a final pass through your presentation to refine your slides and ensure clarity and originality. Benefits of Using Plagiarism Checkers Using plagiarism checkers helps maintain academic integrity by ensuring your work is original and that all sources are properly cited, which is crucial for students and researchers. In the professional world, originality is key. Plagiarism checkers help ensure that your presentations reflect your own work and ideas, boosting your credibility. Plagiarism checkers save you time by quickly identifying potential issues, allowing you to focus on refining your content instead of manually checking for plagiarism. Potential Drawbacks of Free Plagiarism Checkers Free plagiarism checkers may have limitations in their databases, potentially missing some sources or failing to detect more sophisticated forms of plagiarism, like paraphrasing. Uploading your PowerPoint presentations to online tools may raise privacy concerns, especially if they contain sensitive or proprietary information. Always ensure the tool you use has a robust privacy policy. Relying too heavily on plagiarism checkers can reduce your vigilance in ensuring originality. It's essential to balance using these tools with your own checks and citations. Plagiarism Checker Tools for Different Needs For academic purposes, tools like MyAssignmentHelp's plagiarism checker offer advanced features tailored to academic writing, ensuring your research is properly cited and free of plagiarism. Professionals can benefit from plagiarism checkers that provide comprehensive scanning and detailed reports, helping to maintain a high standard of originality in corporate presentations. For casual or personal presentations, simpler tools may suffice, offering basic checks to ensure your slides are free from unintentional plagiarism. The Future of Plagiarism Checking Technology Advances in AI and machine learning are continually improving the capabilities of plagiarism checkers, making them more accurate and user-friendly. Future developments may include better integration with presentation software, real-time scanning features, and enhanced support for multimedia content in presentations. Conclusion In today's digital age, ensuring originality in your PowerPoint presentations is more important than ever. Free plagiarism checkers provide a valuable service, helping you maintain academic and professional integrity. While they have their limitations, their benefits make them an essential tool for anyone creating presentations. FAQs Free plagiarism checkers are generally reliable for basic checks, but they may not catch all instances of plagiarism or offer as detailed feedback as premium versions. While plagiarism checkers are a helpful aid, they cannot replace the need for manual citation and proper attribution. Always review and cite your sources carefully. Most reputable plagiarism checkers, like MyAssignmentHelp, have privacy policies in place to protect user data. However, it's always wise to avoid uploading sensitive or confidential presentations to online tools. Some plagiarism checkers offer limited support for multimedia content, such as images and videos. However, text-based content remains their primary focus. Yes, tools like MyAssignmentHelp's plagiarism checker offer features tailored to academic presentations, helping you ensure your slides are original and properly cited.

Free Plagiarism Checkers for PowerPoint
Delivered In-PersonFlexible Dates
FREE

Python Classes in Abu Dhabi

By Time Training Center

Upskill your knowledge with Time Training Center’s Python Classes in Abu Dhabi.In this course you will master Python’s fundamental skills and web frameworks.Learn the core concepts of python such as data structures, algorithms and its  implementation. Enroll now! Call us: 97126713828 Mail : info@timetraining.ae Learn more:https://www.timetraining.ae/course/python-training-course Address: Office 203, ADCP Tower - B,Behind City Seasons, Electra Street, Abu Dhabi United Arab Emirates

Python Classes in Abu Dhabi
Delivered In-PersonFlexible Dates
FREE

Online Options

Show all 427

Artificial Intelligence in Game Development- Tic Tac Toe AI

By Packt

Artificial intelligence & Javascript 2D Game Development - MinMax algorithm - "Computer vs You" Tic Tac Toe AI game

Artificial Intelligence in Game Development- Tic Tac Toe AI
Delivered Online On Demand9 hours 35 minutes
£101.99

Machine Learning and Data Science with Python: A Complete Beginners Guide

By Packt

This course will be mainly focusing on machine learning algorithms. Throughout this course, we are preparing our machine to make it ready for a prediction test.

Machine Learning and Data Science with Python: A Complete Beginners Guide
Delivered Online On Demand10 hours 19 minutes
£93.99

Quantum Algorithms for Computational Finance

By Qureca

About the course “Quantum Computing for Finance” is an emerging multidisciplinary field of quantum physics, finance, mathematics, and computer science, in which quantum computations are applied to solve complex problems. “Quantum Algorithms for Computational Finance” is an advanced course in the emerging field of quantum computing for finance. This technical course will develop an understanding in quantum algorithms for its implementation on quantum computers. Through this course, you will learn the basics of various quantum algorithms including: Grover’s and Rudolf’s algorithm, Quantum amplitude Estimation (QAE) algorithm envisioned as a quadratic speed-up over Classical Monte-Carlo simulations, Combinatorial optimization algorithms namely Quantum Approximate Optimization Algorithm (QAOA), and Variational Quantum Eigensolver (VQE), and Quantum-inspired optimization algorithms – Simulated Coherent Ising Machine (Sim-CIM), and Simulated Bifurcation Algorithm (SBA). This course is meant for all those learners who want to explore the long-term employability of quantum computing in finance, assuming that you are familiar with the concepts of quantitative and computational finance. In addition, the course contains several Python based programming exercises for learners to practice the algorithms explained throughout the course. This course is the second part of the specialised educational series: “Quantum Computing for Finance”. What Skills you will learn Ability to perform quantum arithmetic operations and simulations. An understanding of the Quantum Amplitude Estimation algorithm and its variants. The computational and modelling techniques for option pricing and portfolio optimization on a quantum computer. The skills for a career in quantum finance including Quantum Algorithmic Research, Quantitative Asset Management and Trading, financial engineering, and risk management, using quantum computing technology. Course Prerequisites All potential learners must have prior knowledge or familiarity with basic quantum algorithms/basic quantum programming. Before enrolling this course, we recommend all learners to complete the first course “Introduction to Quantitative and Computational Finance” of the series “Quantum Computing for Finance”, if they have no previous experience with the concepts of quantitative and computational finance. Duration The estimated duration to complete this course is approximately 6 weeks (~4hrs/week). Course assessment To complete the course and earn the certification, you must pass all the quizzes at the end of each lesson by scoring 80% or more on each of them. Instructors QuantFiQuantFi is a French start-up research firm formed in 2019 with the objective of using the science of quantum computing to provide solutions to the financial services industry. With its staff of PhD's and PhD students, QuantFi engages in fundamental and applied research in in the field of quantum finance, collaborating with industrial partners and universities in seeking breakthroughs in such areas as portfolio optimisation, asset pricing, and trend detection.

Quantum Algorithms for Computational Finance
Delivered Online On Demand
£800

Total NTP and PTP for engineers

5.0(3)

By Systems & Network Training

NTP and PTP training course description This course looks at timing and synchronization as provided by NTP and PTP. Hands on sessions primarily involve using Wireshark to analyse the protocols. What will you learn Recognise the importance of timing and synchronisation. Explain how NTP works. Explain how PTP works. NTP and PTP training course details Who will benefit: Anyone using NTP or PTP but particularly relevant for those in the broadcast industry. Prerequisites: TCP/IP foundation for engineers Duration 1 day NTP and PTP training course contents Introduction Clock drift. Timing and synchronization. Importance in computing. Importance in broadcasting. NTP NTP versions, v0 to v4. Architecture. The intersection algorithm. Accuracy. Clock strata, Stratum 0, 1, 2 and 3. Protocol modes. Hands on NTP configuration More NTP NTP packet header. Timestamps. Variables in the header. Clock synchronization algorithm. SNTP. The Windows Time service. Hands on Wireshark and NTP analysis. PTP PTP v2, IEEE 1588. Architecture. Accuracy. Synchronization with PTP. Offset and delay. Hands on Analysing PTP packet flows. More PTP Ordinary clocks, boundary clocks, masters and grandmasters. PTP specific switch types. Hardware time stamping. SMPTE ST2059-2. PTP packet header. PTP domains. Best master clock algorithm. Hands on More Wireshark and PTP.

Total NTP and PTP for engineers
Delivered in Internationally or OnlineFlexible Dates
£967

Graph Theory Algorithms

4.7(160)

By Janets

Register on the Graph Theory Algorithms today and build the experience, skills and knowledge you need to enhance your professional development and work towards your dream job. Study this course through online learning and take the first steps towards a long-term career. The course consists of a number of easy to digest, in-depth modules, designed to provide you with a detailed, expert level of knowledge. Learn through a mixture of instructional video lessons and online study materials. Receive online tutor support as you study the course, to ensure you are supported every step of the way. Get a digital certificate as a proof of your course completion. The Graph Theory Algorithms is incredibly great value and allows you to study at your own pace. Access the course modules from any internet-enabled device, including computers, tablet, and smartphones. The course is designed to increase your employability and equip you with everything you need to be a success. Enrol on the now and start learning instantly! What You Get With The Graph Theory Algorithms Receive a e-certificate upon successful completion of the course Get taught by experienced, professional instructors Study at a time and pace that suits your learning style Get instant feedback on assessments 24/7 help and advice via email or live chat Get full tutor support on weekdays (Monday to Friday) Course Design The course is delivered through our online learning platform, accessible through any internet-connected device. There are no formal deadlines or teaching schedules, meaning you are free to study the course at your own pace. You are taught through a combination of Video lessons Online study materials Certification After the successful completion of the final assessment, you will receive a CPD-accredited certificate of achievement. The PDF certificate is for £9.99, and it will be sent to you immediately after through e-mail. You can get the hard copy for £15.99, which will reach your doorsteps by post. Who Is This Course For: The course is ideal for those who already work in this sector or are an aspiring professional. This course is designed to enhance your expertise and boost your CV. Learn key skills and gain a professional qualification to prove your newly-acquired knowledge. Requirements: The online training is open to all students and has no formal entry requirements. To study the Graph Theory Algorithms, all your need is a passion for learning, a good understanding of English, numeracy, and IT skills. You must also be over the age of 16. Course Content Module 01: Introduction Introduction 00:14:00 Module 02: Common Problem Common Problem 00:10:00 Module 03: Depth First Search Depth First Search 00:11:00 Module 04: Breadth First Search Breadth First Search 00:08:00 Module 05: Breadth First Search Shortest Path on a Grid Breadth First Search Shortest Path on a Grid 00:17:00 Module 06: Trees Storage and Representation of Trees 00:10:00 Beginner Tree Algorithms 00:10:00 Rooting Tree 00:05:00 Center(s) of a Tree 00:06:00 Isomorphisms in Trees 00:11:00 Isomorphisms in Trees Source Code 00:10:00 Lowest Common Ancestor 00:17:00 Module 07: Topological Sort Topological Sort 00:14:00 Shortest and Longest Paths on DAGs 00:10:00 Khan's Algorithm 00:13:00 Module 08: Dijkstra Dijkstra's Shortest Path Algorithm Source Code 00:09:00 Dijkstra's Shortest Path Algorithm 00:25:00 Module 09: Bellman-Ford Algorithm Bellman-Ford Algorithm 00:15:00 Module 10: Floyd-Warshall Algorithm Floyd-Warshall Algorithm 00:16:00 Floyd-Warshall Algorithm Source Code 00:09:00 Module 11: Bridge and Algorithm Points Algorithm to Find Bridges and Articulation Points 00:20:00 Algorithm to Find Bridges and Articulation Points Source Code 00:09:00 Module 12: Tarjan Algorithm Tarjan's Algorithm for Finding Strongly Connected Components 00:17:00 Tarjan's Algorithm for Finding Strongly Connected Components Source Code 00:07:00 Module 13: Travelling Salesman Problem (TSP) Travelling Salesman Problem (TSP) with Dynamic Programming 00:21:00 Travelling Salesman Problem (TSP) with Dynamic Programming Source Code 00:14:00 Module 14: Eulerian Paths and Circuits Existence of Eulerian Paths and Circuit 00:10:00 Finding Eulerian Paths and Circuits 00:16:00 Eulerian Paths Source Code 00:08:00 Module 15: Prim's Minimum Spanning Tree Algorithm Prim's Minimum Spanning Tree Algorithm (Lazy Version) 00:15:00 Prim's Minimum Spanning Tree Algorithm ( Eager Version) 00:15:00 Prim's Minimum Spanning Tree Algorithm Source Code ( Eager Version) 00:09:00 Module 16: Network Flow Max Flow Ford-Fulkerson Method 00:13:00 Max Flow Ford-Fulkerson Method Source Code 00:17:00 Network Flow: Unweighted Bipartite Graph Matching 00:11:00 Network Flow: Mice and Owls 00:08:00 Network Flow: Elementary Math 00:11:00 Network Flow: Edmond-Karp Algorithm Source Code 00:06:00 Network Flow: Edmond-Karp Algorithm Source Code 00:10:00 Network Flow: Capacity Scaling 00:10:00 Network Flow: Capacity Scaling Source Code 00:06:00 Network Flow: Dinic's Algorithm 00:12:00 Network Flow: Dinic's Algorithm Source Code 00:09:00 Frequently Asked Questions Are there any prerequisites for taking the course? There are no specific prerequisites for this course, nor are there any formal entry requirements. All you need is an internet connection, a good understanding of English and a passion for learning for this course. Can I access the course at any time, or is there a set schedule? You have the flexibility to access the course at any time that suits your schedule. Our courses are self-paced, allowing you to study at your own pace and convenience. How long will I have access to the course? For this course, you will have access to the course materials for 1 year only. This means you can review the content as often as you like within the year, even after you've completed the course. However, if you buy Lifetime Access for the course, you will be able to access the course for a lifetime. Is there a certificate of completion provided after completing the course? Yes, upon successfully completing the course, you will receive a certificate of completion. This certificate can be a valuable addition to your professional portfolio and can be shared on your various social networks. Can I switch courses or get a refund if I'm not satisfied with the course? We want you to have a positive learning experience. If you're not satisfied with the course, you can request a course transfer or refund within 14 days of the initial purchase. How do I track my progress in the course? Our platform provides tracking tools and progress indicators for each course. You can monitor your progress, completed lessons, and assessments through your learner dashboard for the course. What if I have technical issues or difficulties with the course? If you encounter technical issues or content-related difficulties with the course, our support team is available to assist you. You can reach out to them for prompt resolution.

Graph Theory Algorithms
Delivered Online On Demand8 hours 34 minutes
£25

Computer Science: Graph Theory Algorithms

4.9(27)

By Apex Learning

Overview This comprehensive course on Computer Science: Graph Theory Algorithms will deepen your understanding on this topic. After successful completion of this course you can acquire the required skills in this sector. This Computer Science: Graph Theory Algorithms comes with accredited certification, which will enhance your CV and make you worthy in the job market. So enrol in this course today to fast track your career ladder. How will I get my certificate? You may have to take a quiz or a written test online during or after the course. After successfully completing the course, you will be eligible for the certificate. Who is This course for? There is no experience or previous qualifications required for enrolment on this Computer Science: Graph Theory Algorithms. It is available to all students, of all academic backgrounds. Requirements Our Computer Science: Graph Theory Algorithms is fully compatible with PC's, Mac's, Laptop, Tablet and Smartphone devices. This course has been designed to be fully compatible with tablets and smartphones so you can access your course on Wi-Fi, 3G or 4G. There is no time limit for completing this course, it can be studied in your own time at your own pace. Career Path Having these various qualifications will increase the value in your CV and open you up to multiple sectors such as Business & Management, Admin, Accountancy & Finance, Secretarial & PA, Teaching & Mentoring etc. Course Curriculum 17 sections • 44 lectures • 08:37:00 total length •Promo: 00:03:00 •Introduction: 00:14:00 •Common Problem: 00:10:00 •Depth First Search: 00:11:00 •Breadth First Search: 00:08:00 •Breadth First Search Shortest Path on a Grid: 00:17:00 •Storage and Representation of Trees: 00:10:00 •Beginner Tree Algorithms: 00:10:00 •Rooting Tree: 00:05:00 •Center(s) of a Tree: 00:06:00 •Isomorphisms in Trees: 00:11:00 •Isomorphisms in Trees Source Code: 00:10:00 •Lowest Common Ancestor: 00:17:00 •Topological Sort: 00:14:00 •Shortest and Longest Paths on DAGs: 00:10:00 •Khan's Algorithm: 00:13:00 •Dijkstra's Shortest Path Algorithm: 00:25:00 •Dijkstra's Shortest Path Algorithm Source Code: 00:09:00 •Bellman-Ford Algorithm: 00:15:00 •Floyd-Warshall Algorithm: 00:16:00 •Floyd-Warshall Algorithm Source Code: 00:09:00 •Algorithm to Find Bridges and Articulation Points: 00:20:00 •Algorithm to Find Bridges and Articulation Points Source Code: 00:09:00 •Tarjan's Algorithm for Finding Strongly Connected Components: 00:17:00 •Tarjan's Algorithm for Finding Strongly Connected Components Source Code: 00:07:00 •Travelling Salesman Problem (TSP) with Dynamic Programming: 00:21:00 •Travelling Salesman Problem (TSP) with Dynamic Programming Source Code: 00:14:00 •Existence of Eulerian Paths and Circuit: 00:10:00 •Finding Eulerian Paths and Circuits: 00:16:00 •Eulerian Paths Source Code: 00:08:00 •Prim's Minimum Spanning Tree Algorithm (Lazy Version): 00:15:00 •Prim's Minimum Spanning Tree Algorithm ( Eager Version): 00:15:00 •Prim's Minimum Spanning Tree Algorithm Source Code ( Eager Version): 00:09:00 •Max Flow Ford-Fulkerson Method: 00:13:00 •Max Flow Ford-Fulkerson Method Source Code: 00:17:00 •Network Flow: Unweighted Bipartite Graph Matching: 00:11:00 •Network Flow: Mice and Owls: 00:08:00 •Network Flow: Elementary Math: 00:11:00 •Network Flow: Edmond-Karp Algorithm: 00:06:00 •Network Flow: Edmond-Karp Algorithm Source Code: 00:10:00 •Network Flow: Capacity Scaling: 00:10:00 •Network Flow: Capacity Scaling Source Code: 00:06:00 •Network Flow: Dinic's Algorithm: 00:12:00 •Network Flow: Dinic's Algorithm Source Code: 00:09:00

Computer Science: Graph Theory Algorithms
Delivered Online On Demand8 hours 37 minutes
£12

Data Science & Machine Learning With Python

4.7(160)

By Janets

Discover the power of data science and machine learning with Python! Learn essential techniques, algorithms, and tools to analyze data, build predictive models, and unlock insights. Dive into hands-on projects, from data manipulation to advanced machine learning applications. Elevate your skills and unleash the potential of Python for data-driven decision-making.

Data Science & Machine Learning With Python
Delivered Online On Demand4 weeks
£25

Python 3: Project-based Python, Algorithms, Data Structures

By Packt

Learn to program with Python 3, visualize algorithms and data structures, and implement them in Python projects

Python 3: Project-based Python, Algorithms, Data Structures
Delivered Online On Demand14 hours 29 minutes
£135.99

Complete Python Machine Learning & Data Science Fundamentals

4.5(3)

By Studyhub UK

The 'Complete Python Machine Learning & Data Science Fundamentals' course covers the foundational concepts of machine learning, data science, and Python programming. It includes hands-on exercises, data visualization, algorithm evaluation techniques, feature selection, and performance improvement using ensembles and parameter tuning. Learning Outcomes: Understand the fundamental concepts and types of machine learning, data science, and Python programming. Learn to prepare the system and environment for data analysis and machine learning tasks. Master the basics of Python, NumPy, Matplotlib, and Pandas for data manipulation and visualization. Gain insights into dataset summary statistics, data visualization techniques, and data preprocessing. Explore feature selection methods and evaluation metrics for classification and regression algorithms. Compare and select the best machine learning model using pipelines and ensembles. Learn to export, save, load machine learning models, and finalize the chosen models for real-time predictions. Why buy this Complete Python Machine Learning & Data Science Fundamentals? Unlimited access to the course for forever Digital Certificate, Transcript, student ID all included in the price Absolutely no hidden fees Directly receive CPD accredited qualifications after course completion Receive one to one assistance on every weekday from professionals Immediately receive the PDF certificate after passing Receive the original copies of your certificate and transcript on the next working day Easily learn the skills and knowledge from the comfort of your home Certification After studying the course materials of the Complete Python Machine Learning & Data Science Fundamentals there will be a written assignment test which you can take either during or at the end of the course. After successfully passing the test you will be able to claim the pdf certificate for £5.99. Original Hard Copy certificates need to be ordered at an additional cost of £9.60. Who is this course for? This Complete Python Machine Learning & Data Science Fundamentals course is ideal for Students Recent graduates Job Seekers Anyone interested in this topic People already working in the relevant fields and want to polish their knowledge and skill. Prerequisites This Complete Python Machine Learning & Data Science Fundamentals does not require you to have any prior qualifications or experience. You can just enrol and start learning.This Complete Python Machine Learning & Data Science Fundamentals was made by professionals and it is compatible with all PC's, Mac's, tablets and smartphones. You will be able to access the course from anywhere at any time as long as you have a good enough internet connection. Career path As this course comes with multiple courses included as bonus, you will be able to pursue multiple occupations. This Complete Python Machine Learning & Data Science Fundamentals is a great way for you to gain multiple skills from the comfort of your home. Course Curriculum Course Overview & Table of Contents Course Overview & Table of Contents 00:09:00 Introduction to Machine Learning - Part 1 - Concepts , Definitions and Types Introduction to Machine Learning - Part 1 - Concepts , Definitions and Types 00:05:00 Introduction to Machine Learning - Part 2 - Classifications and Applications Introduction to Machine Learning - Part 2 - Classifications and Applications 00:06:00 System and Environment preparation - Part 1 System and Environment preparation - Part 1 00:08:00 System and Environment preparation - Part 2 System and Environment preparation - Part 2 00:06:00 Learn Basics of python - Assignment Learn Basics of python - Assignment 1 00:10:00 Learn Basics of python - Assignment Learn Basics of python - Assignment 2 00:09:00 Learn Basics of python - Functions Learn Basics of python - Functions 00:04:00 Learn Basics of python - Data Structures Learn Basics of python - Data Structures 00:12:00 Learn Basics of NumPy - NumPy Array Learn Basics of NumPy - NumPy Array 00:06:00 Learn Basics of NumPy - NumPy Data Learn Basics of NumPy - NumPy Data 00:08:00 Learn Basics of NumPy - NumPy Arithmetic Learn Basics of NumPy - NumPy Arithmetic 00:04:00 Learn Basics of Matplotlib Learn Basics of Matplotlib 00:07:00 Learn Basics of Pandas - Part 1 Learn Basics of Pandas - Part 1 00:06:00 Learn Basics of Pandas - Part 2 Learn Basics of Pandas - Part 2 00:07:00 Understanding the CSV data file Understanding the CSV data file 00:09:00 Load and Read CSV data file using Python Standard Library Understanding the CSV data file 00:09:00 Load and Read CSV data file using NumPy Load and Read CSV data file using Python Standard Library 00:09:00 Load and Read CSV data file using Pandas Load and Read CSV data file using Pandas 00:05:00 Dataset Summary - Peek, Dimensions and Data Types Dataset Summary - Peek, Dimensions and Data Types 00:09:00 Dataset Summary - Class Distribution and Data Summary Dataset Summary - Class Distribution and Data Summary 00:09:00 Dataset Summary - Explaining Correlation Dataset Summary - Explaining Correlation 00:11:00 Dataset Summary - Explaining Skewness - Gaussian and Normal Curve Dataset Summary - Explaining Skewness - Gaussian and Normal Curve 00:07:00 Dataset Visualization - Using Histograms Dataset Visualization - Using Histograms 00:07:00 Dataset Visualization - Using Density Plots Dataset Visualization - Using Density Plots 00:06:00 Dataset Visualization - Box and Whisker Plots Dataset Visualization - Box and Whisker Plots 00:05:00 Multivariate Dataset Visualization - Correlation Plots Multivariate Dataset Visualization - Correlation Plots 00:08:00 Multivariate Dataset Visualization - Scatter Plots Multivariate Dataset Visualization - Scatter Plots 00:05:00 Data Preparation (Pre-Processing) - Introduction Data Preparation (Pre-Processing) - Introduction 00:09:00 Data Preparation - Re-scaling Data - Part 1 Data Preparation - Re-scaling Data - Part 1 00:09:00 Data Preparation - Re-scaling Data - Part 2 Data Preparation - Re-scaling Data - Part 2 00:09:00 Data Preparation - Standardizing Data - Part 1 Data Preparation - Standardizing Data - Part 1 00:07:00 Data Preparation - Standardizing Data - Part 2 Data Preparation - Standardizing Data - Part 2 00:04:00 Data Preparation - Normalizing Data Data Preparation - Normalizing Data 00:08:00 Data Preparation - Binarizing Data Data Preparation - Binarizing Data 00:06:00 Feature Selection - Introduction Feature Selection - Introduction 00:07:00 Feature Selection - Uni-variate Part 1 - Chi-Squared Test Feature Selection - Uni-variate Part 1 - Chi-Squared Test 00:09:00 Feature Selection - Uni-variate Part 2 - Chi-Squared Test Feature Selection - Uni-variate Part 2 - Chi-Squared Test 00:10:00 Feature Selection - Recursive Feature Elimination Feature Selection - Recursive Feature Elimination 00:11:00 Feature Selection - Principal Component Analysis (PCA) Feature Selection - Principal Component Analysis (PCA) 00:09:00 Feature Selection - Feature Importance Feature Selection - Feature Importance 00:07:00 Refresher Session - The Mechanism of Re-sampling, Training and Testing Refresher Session - The Mechanism of Re-sampling, Training and Testing 00:12:00 Algorithm Evaluation Techniques - Introduction Algorithm Evaluation Techniques - Introduction 00:07:00 Algorithm Evaluation Techniques - Train and Test Set Algorithm Evaluation Techniques - Train and Test Set 00:11:00 Algorithm Evaluation Techniques - K-Fold Cross Validation Algorithm Evaluation Techniques - K-Fold Cross Validation 00:09:00 Algorithm Evaluation Techniques - Leave One Out Cross Validation Algorithm Evaluation Techniques - Leave One Out Cross Validation 00:05:00 Algorithm Evaluation Techniques - Repeated Random Test-Train Splits Algorithm Evaluation Techniques - Repeated Random Test-Train Splits 00:07:00 Algorithm Evaluation Metrics - Introduction Algorithm Evaluation Metrics - Introduction 00:09:00 Algorithm Evaluation Metrics - Classification Accuracy Algorithm Evaluation Metrics - Classification Accuracy 00:08:00 Algorithm Evaluation Metrics - Log Loss Algorithm Evaluation Metrics - Log Loss 00:03:00 Algorithm Evaluation Metrics - Area Under ROC Curve Algorithm Evaluation Metrics - Area Under ROC Curve 00:06:00 Algorithm Evaluation Metrics - Confusion Matrix Algorithm Evaluation Metrics - Confusion Matrix 00:10:00 Algorithm Evaluation Metrics - Classification Report Algorithm Evaluation Metrics - Classification Report 00:04:00 Algorithm Evaluation Metrics - Mean Absolute Error - Dataset Introduction Algorithm Evaluation Metrics - Mean Absolute Error - Dataset Introduction 00:06:00 Algorithm Evaluation Metrics - Mean Absolute Error Algorithm Evaluation Metrics - Mean Absolute Error 00:07:00 Algorithm Evaluation Metrics - Mean Square Error Algorithm Evaluation Metrics - Mean Square Error 00:03:00 Algorithm Evaluation Metrics - R Squared Algorithm Evaluation Metrics - R Squared 00:04:00 Classification Algorithm Spot Check - Logistic Regression Classification Algorithm Spot Check - Logistic Regression 00:12:00 Classification Algorithm Spot Check - Linear Discriminant Analysis Classification Algorithm Spot Check - Linear Discriminant Analysis 00:04:00 Classification Algorithm Spot Check - K-Nearest Neighbors Classification Algorithm Spot Check - K-Nearest Neighbors 00:05:00 Classification Algorithm Spot Check - Naive Bayes Classification Algorithm Spot Check - Naive Bayes 00:04:00 Classification Algorithm Spot Check - CART Classification Algorithm Spot Check - CART 00:04:00 Classification Algorithm Spot Check - Support Vector Machines Classification Algorithm Spot Check - Support Vector Machines 00:05:00 Regression Algorithm Spot Check - Linear Regression Regression Algorithm Spot Check - Linear Regression 00:08:00 Regression Algorithm Spot Check - Ridge Regression Regression Algorithm Spot Check - Ridge Regression 00:03:00 Regression Algorithm Spot Check - Lasso Linear Regression Regression Algorithm Spot Check - Lasso Linear Regression 00:03:00 Regression Algorithm Spot Check - Elastic Net Regression Regression Algorithm Spot Check - Elastic Net Regression 00:02:00 Regression Algorithm Spot Check - K-Nearest Neighbors Regression Algorithm Spot Check - K-Nearest Neighbors 00:06:00 Regression Algorithm Spot Check - CART Regression Algorithm Spot Check - CART 00:04:00 Regression Algorithm Spot Check - Support Vector Machines (SVM) Regression Algorithm Spot Check - Support Vector Machines (SVM) 00:04:00 Compare Algorithms - Part 1 : Choosing the best Machine Learning Model Compare Algorithms - Part 1 : Choosing the best Machine Learning Model 00:09:00 Compare Algorithms - Part 2 : Choosing the best Machine Learning Model Compare Algorithms - Part 2 : Choosing the best Machine Learning Model 00:05:00 Pipelines : Data Preparation and Data Modelling Pipelines : Data Preparation and Data Modelling 00:11:00 Pipelines : Feature Selection and Data Modelling Pipelines : Feature Selection and Data Modelling 00:10:00 Performance Improvement: Ensembles - Voting Performance Improvement: Ensembles - Voting 00:07:00 Performance Improvement: Ensembles - Bagging Performance Improvement: Ensembles - Bagging 00:08:00 Performance Improvement: Ensembles - Boosting Performance Improvement: Ensembles - Boosting 00:05:00 Performance Improvement: Parameter Tuning using Grid Search Performance Improvement: Parameter Tuning using Grid Search 00:08:00 Performance Improvement: Parameter Tuning using Random Search Performance Improvement: Parameter Tuning using Random Search 00:06:00 Export, Save and Load Machine Learning Models : Pickle Export, Save and Load Machine Learning Models : Pickle 00:10:00 Export, Save and Load Machine Learning Models : Joblib Export, Save and Load Machine Learning Models : Joblib 00:06:00 Finalizing a Model - Introduction and Steps Finalizing a Model - Introduction and Steps 00:07:00 Finalizing a Classification Model - The Pima Indian Diabetes Dataset Finalizing a Classification Model - The Pima Indian Diabetes Dataset 00:07:00 Quick Session: Imbalanced Data Set - Issue Overview and Steps Quick Session: Imbalanced Data Set - Issue Overview and Steps 00:09:00 Iris Dataset : Finalizing Multi-Class Dataset Iris Dataset : Finalizing Multi-Class Dataset 00:09:00 Finalizing a Regression Model - The Boston Housing Price Dataset Finalizing a Regression Model - The Boston Housing Price Dataset 00:08:00 Real-time Predictions: Using the Pima Indian Diabetes Classification Model Real-time Predictions: Using the Pima Indian Diabetes Classification Model 00:07:00 Real-time Predictions: Using Iris Flowers Multi-Class Classification Dataset Real-time Predictions: Using Iris Flowers Multi-Class Classification Dataset 00:03:00 Real-time Predictions: Using the Boston Housing Regression Model Real-time Predictions: Using the Boston Housing Regression Model 00:08:00 Resources Resources - Python Machine Learning & Data Science Fundamentals 00:00:00

Complete Python Machine Learning & Data Science Fundamentals
Delivered Online On Demand10 hours 29 minutes
£10.99

Data Science & Machine Learning with Python

4.9(27)

By Apex Learning

Overview This comprehensive course on Data Science & Machine Learning with Python will deepen your understanding on this topic. After successful completion of this course you can acquire the required skills in this sector. This Data Science & Machine Learning with Python comes with accredited certification from CPD, which will enhance your CV and make you worthy in the job market. So enrol in this course today to fast track your career ladder. How will I get my certificate? You may have to take a quiz or a written test online during or after the course. After successfully completing the course, you will be eligible for the certificate. Who is This course for? There is no experience or previous qualifications required for enrolment on this Data Science & Machine Learning with Python. It is available to all students, of all academic backgrounds. Requirements Our Data Science & Machine Learning with Python is fully compatible with PC's, Mac's, Laptop, Tablet and Smartphone devices. This course has been designed to be fully compatible with tablets and smartphones so you can access your course on Wi-Fi, 3G or 4G. There is no time limit for completing this course, it can be studied in your own time at your own pace. Career Path Learning this new skill will help you to advance in your career. It will diversify your job options and help you develop new techniques to keep up with the fast-changing world. This skillset will help you to- Open doors of opportunities Increase your adaptability Keep you relevant Boost confidence And much more! Course Curriculum 2 sections • 90 lectures • 10:24:00 total length •Course Overview & Table of Contents: 00:09:00 •Introduction to Machine Learning - Part 1 - Concepts , Definitions and Types: 00:05:00 •Introduction to Machine Learning - Part 2 - Classifications and Applications: 00:06:00 •System and Environment preparation - Part 1: 00:08:00 •System and Environment preparation - Part 2: 00:06:00 •Learn Basics of python - Assignment 1: 00:10:00 •Learn Basics of python - Assignment 2: 00:09:00 •Learn Basics of python - Functions: 00:04:00 •Learn Basics of python - Data Structures: 00:12:00 •Learn Basics of NumPy - NumPy Array: 00:06:00 •Learn Basics of NumPy - NumPy Data: 00:08:00 •Learn Basics of NumPy - NumPy Arithmetic: 00:04:00 •Learn Basics of Matplotlib: 00:07:00 •Learn Basics of Pandas - Part 1: 00:06:00 •Learn Basics of Pandas - Part 2: 00:07:00 •Understanding the CSV data file: 00:09:00 •Load and Read CSV data file using Python Standard Library: 00:09:00 •Load and Read CSV data file using NumPy: 00:04:00 •Load and Read CSV data file using Pandas: 00:05:00 •Dataset Summary - Peek, Dimensions and Data Types: 00:09:00 •Dataset Summary - Class Distribution and Data Summary: 00:09:00 •Dataset Summary - Explaining Correlation: 00:11:00 •Dataset Summary - Explaining Skewness - Gaussian and Normal Curve: 00:07:00 •Dataset Visualization - Using Histograms: 00:07:00 •Dataset Visualization - Using Density Plots: 00:06:00 •Dataset Visualization - Box and Whisker Plots: 00:05:00 •Multivariate Dataset Visualization - Correlation Plots: 00:08:00 •Multivariate Dataset Visualization - Scatter Plots: 00:05:00 •Data Preparation (Pre-Processing) - Introduction: 00:09:00 •Data Preparation - Re-scaling Data - Part 1: 00:09:00 •Data Preparation - Re-scaling Data - Part 2: 00:09:00 •Data Preparation - Standardizing Data - Part 1: 00:07:00 •Data Preparation - Standardizing Data - Part 2: 00:04:00 •Data Preparation - Normalizing Data: 00:08:00 •Data Preparation - Binarizing Data: 00:06:00 •Feature Selection - Introduction: 00:07:00 •Feature Selection - Uni-variate Part 1 - Chi-Squared Test: 00:09:00 •Feature Selection - Uni-variate Part 2 - Chi-Squared Test: 00:10:00 •Feature Selection - Recursive Feature Elimination: 00:11:00 •Feature Selection - Principal Component Analysis (PCA): 00:09:00 •Feature Selection - Feature Importance: 00:07:00 •Refresher Session - The Mechanism of Re-sampling, Training and Testing: 00:12:00 •Algorithm Evaluation Techniques - Introduction: 00:07:00 •Algorithm Evaluation Techniques - Train and Test Set: 00:11:00 •Algorithm Evaluation Techniques - K-Fold Cross Validation: 00:09:00 •Algorithm Evaluation Techniques - Leave One Out Cross Validation: 00:05:00 •Algorithm Evaluation Techniques - Repeated Random Test-Train Splits: 00:07:00 •Algorithm Evaluation Metrics - Introduction: 00:09:00 •Algorithm Evaluation Metrics - Classification Accuracy: 00:08:00 •Algorithm Evaluation Metrics - Log Loss: 00:03:00 •Algorithm Evaluation Metrics - Area Under ROC Curve: 00:06:00 •Algorithm Evaluation Metrics - Confusion Matrix: 00:10:00 •Algorithm Evaluation Metrics - Classification Report: 00:04:00 •Algorithm Evaluation Metrics - Mean Absolute Error - Dataset Introduction: 00:06:00 •Algorithm Evaluation Metrics - Mean Absolute Error: 00:07:00 •Algorithm Evaluation Metrics - Mean Square Error: 00:03:00 •Algorithm Evaluation Metrics - R Squared: 00:04:00 •Classification Algorithm Spot Check - Logistic Regression: 00:12:00 •Classification Algorithm Spot Check - Linear Discriminant Analysis: 00:04:00 •Classification Algorithm Spot Check - K-Nearest Neighbors: 00:05:00 •Classification Algorithm Spot Check - Naive Bayes: 00:04:00 •Classification Algorithm Spot Check - CART: 00:04:00 •Classification Algorithm Spot Check - Support Vector Machines: 00:05:00 •Regression Algorithm Spot Check - Linear Regression: 00:08:00 •Regression Algorithm Spot Check - Ridge Regression: 00:03:00 •Regression Algorithm Spot Check - Lasso Linear Regression: 00:03:00 •Regression Algorithm Spot Check - Elastic Net Regression: 00:02:00 •Regression Algorithm Spot Check - K-Nearest Neighbors: 00:06:00 •Regression Algorithm Spot Check - CART: 00:04:00 •Regression Algorithm Spot Check - Support Vector Machines (SVM): 00:04:00 •Compare Algorithms - Part 1 : Choosing the best Machine Learning Model: 00:09:00 •Compare Algorithms - Part 2 : Choosing the best Machine Learning Model: 00:05:00 •Pipelines : Data Preparation and Data Modelling: 00:11:00 •Pipelines : Feature Selection and Data Modelling: 00:10:00 •Performance Improvement: Ensembles - Voting: 00:07:00 •Performance Improvement: Ensembles - Bagging: 00:08:00 •Performance Improvement: Ensembles - Boosting: 00:05:00 •Performance Improvement: Parameter Tuning using Grid Search: 00:08:00 •Performance Improvement: Parameter Tuning using Random Search: 00:06:00 •Export, Save and Load Machine Learning Models : Pickle: 00:10:00 •Export, Save and Load Machine Learning Models : Joblib: 00:06:00 •Finalizing a Model - Introduction and Steps: 00:07:00 •Finalizing a Classification Model - The Pima Indian Diabetes Dataset: 00:07:00 •Quick Session: Imbalanced Data Set - Issue Overview and Steps: 00:09:00 •Iris Dataset : Finalizing Multi-Class Dataset: 00:09:00 •Finalizing a Regression Model - The Boston Housing Price Dataset: 00:08:00 •Real-time Predictions: Using the Pima Indian Diabetes Classification Model: 00:07:00 •Real-time Predictions: Using Iris Flowers Multi-Class Classification Dataset: 00:03:00 •Real-time Predictions: Using the Boston Housing Regression Model: 00:08:00 •Resources - Data Science & Machine Learning with Python: 00:00:00

Data Science & Machine Learning with Python
Delivered Online On Demand10 hours 24 minutes
£12
1...345

Educators matching "Algorithm"

Show all 14