--- widget: - text: |2- John Doe 123 Main Street, Cityville, CA 12345 johndoe@email.com (555) 123-4567 linkedin.com/in/johndoe Professional Summary Experienced and results-driven Data Scientist with a strong background in statistical analysis, machine learning, and data visualization. Proven track record of delivering actionable insights and driving data-driven decision-making processes. Adept at leveraging advanced analytics to solve complex business problems. Education Master of Science in Data Science ABC University, Cityville, CA May 2021 Bachelor of Science in Computer Science XYZ University, Townsville, CA Graduation Date: May 2018 Professional Experience Data Scientist | Tech Innovators Inc., Cityville, CA | June 2021 - Present Lead data analysis projects, extracting valuable insights to inform business strategies. Develop and deploy machine learning models to optimize key processes, resulting in a 15% increase in efficiency. Collaborate with cross-functional teams to design and implement data-driven solutions. Utilize Python, R, and SQL for data extraction, transformation, and analysis. Create compelling data visualizations to communicate findings to non-technical stakeholders. Data Analyst | Data Solutions Co., Townsville, CA | January 2019 - May 2021 Conducted exploratory data analysis to identify trends, patterns, and anomalies. Implemented data cleaning and preprocessing techniques to ensure data quality. Produced comprehensive reports and dashboards, aiding in executive decision-making. Collaborated with business units to define and refine analytical requirements. Skills Programming Languages: Python, R Data Analysis Tools: Pandas, NumPy Machine Learning: Scikit-Learn, TensorFlow, Keras Database Management: SQL Data Visualization: Matplotlib, Seaborn Statistical Analysis: Hypothesis testing, Regression analysis Communication: Strong written and verbal communication skills Certifications Certified Data Scientist (CDS) Machine Learning Specialist Certification tags: - spacy - token-classification - cv - resume parsing - resume extraction - named entity recognition - resume language: - en model-index: - name: en_cv_info_extr results: - task: name: NER type: token-classification metrics: - name: NER Precision type: precision value: 0.8333333333 - name: NER Recall type: recall value: 0.8067729084 - name: NER F Score type: f_score value: 0.8198380567 library_name: spacy pipeline_tag: token-classification --- # Information extraction from Resumes/CVs written in English ### Model Description This model is designed for information extraction from resumes/CVs written in English. It employs a transformer-based architecture with spaCy for named entity recognition (NER) tasks. The model aims to parse various sections of resumes, including personal details, education history, professional experience, skills, and certifications, enabling users to extract structured information for further processing or analysis. ### Model Details | Feature | Description | | --- | --- | | `Language` | English | | `Task` | Named Entity Recognition (NER) | | `Objective` | Information extraction from resumes/CVs | | `Spacy Components` | Transformer, Named Entity Recognition (NER) | | `Author` | [Youssef Chafiqui](https://huggingface.co/ychafiqui) | ### NER Entities The model recognizes various entities corresponding to different sections of a resume. Below are the entities used by the model: | Label | Description | | --- | --- | | 'FNAME' | First name | | 'LNAME' | Last name | | 'ADDRESS' | Address | | 'CERTIFICATION' | Certification | | 'EDUCATION' | Education section | | 'EMAIL' | Email address | | 'EXPERIENCE' | Experience section | | 'HOBBY' | Hobby | | 'HSKILL' | Hard skill | | 'LANGUAGE' | Language | | 'PHONE' | Phone number | | 'PROFILE' | Profile | | 'PROJECT' | Project section | | 'SSKILL' | Soft skill | ### Evaluation Metrics | Type | Score | | --- | --- | | `F1 score` | 81.98 | | `Precision` | 83.33 | | `Recall` | 80.68 | ## Usage ### Presequities Install spaCy library ```bash pip install spacy ``` Install Transformers library ```bash pip install transformers ``` Download the model ```bash pip install https://huggingface.co/ychafiqui/en_cv_info_extr/resolve/main/en_cv_info_extr-any-py3-none-any.whl ``` ### Load the model ```python import spacy nlp = spacy.load("en_cv_info_extr") ``` ### Inference using the model ```python doc = nlp('put your resume here') for ent in doc.ents: print(ent.text, "-", ent.label_) ```