{"query":"collaborators Anna Bernasconi","hops":1,"type":null,"search_terms":"collaborators anna bernasconi","graph_context":[{"type":"Person","score":5.091681003570557,"summary":"Anna Bernasconi","entity":{"name":"Anna Bernasconi","id":"person_anna_bernasconi","type":"Person"},"context":[{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2024","type":"Publication","author_ids":["person_alessandro_poggiali","person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"title":"Quantum clustering with k-Means: A hybrid approach","volume":"992","pages":"114466","issn":"0304-3975","bibtex_key":"POGGIALI2024114466","keyword_tag":"j","id":"pub_POGGIALI2024114466","entry_type":"article","category":"journal","venue_id":"venue_theoretical_computer_science","doi":"10.1016/j.tcs.2024.114466"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2023","title":"XOR-AND-XOR Logic Forms for Autosymmetric Functions and Applications to Quantum Computing","author_ids":["person_anna_bernasconi","person_alessandro_berti","person_valentina_ciriani","person_gianna_maria_del_corso","person_innocenzo_fulginiti"],"type":"Publication","volume":"42","number":"6","pages":"1861-1872","keyword_tag":"j","bibtex_key":"9914618","id":"pub_9914618","category":"journal","entry_type":"article","venue_id":"venue_ieee_transactions_on_computer_aided_design_of_integrated_circuits_and_systems","doi":"10.1109/TCAD.2022.3213214"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2024","publisher":"IEEE","bibtex_key":"bernasconi2024quantum","keyword_tag":"j","id":"pub_bernasconi2024quantum","type":"Publication","author_ids":["person_anna_bernasconi","person_alessandro_berti","person_gianna_maria_del_corso","person_alessandro_poggiali"],"title":"Quantum Subroutine for Efficient Matrix Multiplication","entry_type":"article","category":"journal","venue_id":"venue_ieee_access","doi":"10.1109/ACCESS.2024.3446176"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2024","type":"Publication","author_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"title":"The role of encodings and distance metrics for the quantum nearest neighbor","volume":"6","number":"2","pages":"62","publisher":"Springer","bibtex_key":"berti2024role","keyword_tag":"j","id":"pub_berti2024role","entry_type":"article","category":"journal","venue_id":"venue_quantum_machine_intelligence","doi":"10.1007/s42484-024-00197-6"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2024","author_ids":["person_anna_bernasconi","person_alessandro_berti","person_gianna_maria_del_corso","person_riccardo_guidotti","person_alessandro_poggiali"],"type":"Publication","title":"Quantum subroutine for variance estimation: algorithmic design and applications","volume":"6","number":"2","pages":"78","publisher":"Springer","keyword_tag":"j","bibtex_key":"bernasconi2024quantumVAR","id":"pub_bernasconi2024quantumVAR","category":"journal","entry_type":"article","venue_id":"venue_quantum_machine_intelligence","doi":"doi.org/10.1007/s42484-024-00213-9"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2024","title":"Variational Compression of Circuits for State Preparation","author_ids":["person_alessandro_berti","person_giacomo_antonioli","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti","person_alessandro_poggiali"],"type":"Publication","volume":"02","pages":"44-48","keyword_tag":"c","bibtex_key":"berti2024compression","id":"pub_berti2024compression","category":"conference","entry_type":"inproceedings","venue_id":"venue_2024_ieee_international_conference_on_quantum_computing_and_engineering_qce","doi":"10.1109/QCE60285.2024.10250"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"address":"Cham","year":"2022","title":"Effect of Different Encodings and Distance Functions on Quantum Instance-Based Classifiers","author_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"type":"Publication","pages":"96--108","publisher":"Springer International Publishing","keyword_tag":"c","bibtex_key":"BBCG22","id":"pub_BBCG22","category":"conference","entry_type":"inproceedings","venue_id":"venue_advances_in_knowledge_discovery_and_data_mining","doi":"10.1007/978-3-031-05936-0_8"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"volume":"3284","pages":"188--200","year":"2022","bibtex_key":"poggiali2022clustering","keyword_tag":"c","id":"pub_poggiali2022clustering","type":"Publication","title":"Clustering Classical Data with Quantum k-Means","author_ids":["person_alessandro_poggiali","person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"entry_type":"inproceedings","category":"conference","venue_id":"venue_proceedings_of_the_23rd_italian_conference_on_theoretical_computer_science_ceur_workshop_proceedings_roma_italy"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2023","keyword_tag":"w","bibtex_key":"workshop2023poggialidetection","id":"pub_workshop2023poggialidetection","author_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_alessandro_poggiali"],"title":"Quantum Based Outlier Detection","type":"Publication","entry_type":"misc","category":"workshop","venue_id":"venue_workshop_on_quantum_artificial_intelligence_napoli_italia"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2021","bibtex_key":"poster2023bertieffect","keyword_tag":"p","id":"pub_poster2023bertieffect","type":"Publication","title":"Effects of Different Encodings and Distance Functions on Quantum Instance-based Classifiers","author_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"entry_type":"misc","category":"poster","venue_id":"venue_quantum_techniques_on_machine_learning_qtml_tokyo_japan_online_attendance"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2025","bibtex_key":"workshop2024compression","keyword_tag":"w","id":"pub_workshop2024compression","author_ids":["person_alessandro_berti","person_giacomo_antonioli","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti","person_alessandro_poggiali"],"type":"Publication","title":"Variational Compression of Circuits for State Preparation","entry_type":"misc","category":"workshop","venue_id":"venue_2nd_international_workshop_on_ai_for_quantum_and_quantum_for_ai_aiqxqia"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"pages":"509--518","year":"2025","bibtex_key":"antoniolioutlier2025","keyword_tag":"c","id":"pub_antoniolioutlier2025","type":"Publication","author_ids":["person_giacomo_antonioli","person_alessandro_berti","person_alessandro_poggiali","person_anna_bernasconi","person_gianna_maria_del_corso"],"title":"Outlier Detection and other applications of Quantum Matrix Multiplication","entry_type":"inproceedings","category":"conference","venue_id":"venue_2025_ieee_international_parallel_and_distributed_processing_symposium_workshops_ipdpsw"}},{"neighborType":"Publication","distance":1,"path_rels":["AUTHORED"],"neighbor":{"year":"2023","bibtex_key":"poggiali2023quantum","keyword_tag":"c","id":"pub_poggiali2023quantum","type":"Publication","title":"Quantum feature selection with variance estimation","author_ids":["person_alessandro_poggiali","person_anna_bernasconi","person_alessandro_berti","person_gianna_maria_del_corso","person_riccardo_guidotti"],"entry_type":"inproceedings","category":"conference","venue_id":"venue_proceedings_of_esann","doi":"10.14428/esann/2023.ES2023-99"}},{"neighborType":"Degree","distance":1,"path_rels":["SUPERVISED_BY"],"neighbor":{"thesis_title":"Effectiveness of Quantum Algorithms: From Compilation to Measurement","field":"Ph.D. in Computer Science","level":"Phd","degree_date":"6 May 2024","grade":"Excellent","external_reviewer_ids":["person_daniel_kyungdeock_park","person_francesco_petruccione"],"supervisor_ids":["person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"dates":"11/2020-05/2024","id":"degree_phd_unipi","type":"Degree","institution_id":"inst_university_of_pisa","committee_ids":["person_paola_boito","person_paolo_ferragina"]}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"04/2022","advisor_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"event_type":"thesis_supervision","thesis_level":"master","student_id":"person_alessandro_poggiali","id":"event_thesis_3_quantum_clustering_with_k_mean","title":"Quantum clustering with k-means","degree_program":"Master's in Computer Science (LM-18), University of Pisa","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"04/2024","advisor_ids":["person_alessandro_berti","person_anna_bernasconi"],"event_type":"thesis_supervision","thesis_level":"bachelor","student_id":"person_giuliano_difranco","id":"event_thesis_5_effectiveness_of_grover_s_algo","degree_program":"Bachelor's in Computer Science (L-31), University of Pisa","title":"Effectiveness of Grover's Algorithm on NISQ Quantum Computers","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"07/2021","advisor_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso"],"event_type":"thesis_supervision","thesis_level":"bachelor","student_id":"person_alessio_la_greca","id":"event_thesis_7_quantum_game_design_maze_expl","degree_program":"Bachelor's in Computer Science (L-31), University of Pisa","title":"Quantum Game Design: Maze Exploration with Grover's Algorithm","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"10/2022","advisor_ids":["person_alessandro_berti","person_anna_bernasconi"],"event_type":"thesis_supervision","thesis_level":"bachelor","student_id":"person_dylan_nico_ambrosi","id":"event_thesis_6_study_and_implementation_of_th","degree_program":"Bachelor's in Computer Science (L-31), University of Pisa","title":"Study and implementation of the Quantum K-Nearest-Neighbours","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"in progress","advisor_ids":["person_alessandro_berti","person_anna_bernasconi"],"event_type":"thesis_supervision","thesis_level":"bachelor","student_id":"person_davide_rossi","id":"event_thesis_4_gray_code_for_flip_flop_qram_o","degree_program":"Bachelor's in Computer Science (L-31), University of Pisa","title":"Gray code for Flip-Flop QRAM optimization","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"09/2024","advisor_ids":["person_anna_bernasconi","person_alessandro_berti","person_roberto_grossi"],"event_type":"thesis_supervision","thesis_level":"bachelor_physics","student_id":"person_simone_ferilli","id":"event_thesis_8_classification_challenges_ana","degree_program":"Bachelor's in Physics (L-30), University of Pisa","title":"Classification challenges: analysis of a binary quantum classifier","type":"Event","institution_id":"inst_university_of_pisa"}},{"neighborType":"Event","distance":1,"path_rels":["CO_ADVISED_THESIS"],"neighbor":{"date":"06/2023","advisor_ids":["person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso"],"event_type":"thesis_supervision","thesis_level":"master","student_id":"person_innocenzo_fulginiti","id":"event_thesis_2_towards_a_quantum_version_of_t","degree_program":"Master's in Computer Science (LM-18), University of Pisa","title":"Towards a quantum version of the Markov Clustering Algorithm","type":"Event","institution_id":"inst_university_of_pisa"}}]},{"type":"ResearchGroup","score":3.6199889183044434,"summary":"Coordinated by Anna Bernasconi, Gianna Maria Del Corso, and Riccardo Guidotti. The group develops quantum algorithms, including efficient state preparation, AI-oriented quantum approaches, and quantum subroutines.","entity":{"name":"Quantum Algorithms Group","description":"Coordinated by Anna Bernasconi, Gianna Maria Del Corso, and Riccardo Guidotti. The group develops quantum algorithms, including efficient state preparation, AI-oriented quantum approaches, and quantum subroutines.","location":"University of Pisa, Pisa, Italy","dates":"09/2020 -- present","id":"group_4_quantum_algorithms_group","type":"ResearchGroup","institution_id":"inst_department_of_computer_science"},"context":[{"neighborType":"Person","distance":1,"path_rels":["MEMBER_OF_GROUP"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Institution","distance":1,"path_rels":["GROUP_AT"],"neighbor":{"name":"Department of Computer Science","id":"inst_department_of_computer_science","type":"Institution"}}]},{"type":"Position","score":3.1966552734375,"summary":"Technology Transfer Collaborator","entity":{"reference":"Prot. 695/2020 prot. n. 39610 of 24/04/2020","activities":"Alessandro Berti supported participants in the Contamination Lab Pisa programs by sharing experiences and best practices, seeking contacts, selecting speakers, and contributing to event organization for the Contamination Lab.","formal_position":"Collaborator","dates":"04/24/2020 -- 09/14/2020","location":"University of Pisa, Research and Technology Transfer Services, Lungarno Pacinotti 43/44, 56126, Pisa (PI)","id":"pos_6_technology_transfer_collaborat","title":"Technology Transfer Collaborator","type":"Position","department":"University of Pisa","is_current":false,"contact_ids":["person_mauro_bellandi"],"institution_id":"inst_university_of_pisa"},"context":[{"neighborType":"Person","distance":1,"path_rels":["HELD_POSITION"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Institution","distance":1,"path_rels":["POSITION_AT"],"neighbor":{"country":"Italy","city":"Pisa","name":"University of Pisa","id":"inst_university_of_pisa","type":"Institution"}}]},{"type":"ResearchProject","score":1.5868180990219116,"summary":"SoBigData++ builds a Data Infrastructure to facilitate big data research, scientific collaboration, and skill sharing.","entity":{"funder":"Social Mining & Big Data Ecosystem","website":"http://www.sobigdata.eu","role":"participant","publication_ids":["pub_POGGIALI2024114466","pub_poggiali2022clustering"],"description":"SoBigData++ builds a Data Infrastructure to facilitate big data research, scientific collaboration, and skill sharing.","dates":"2020 -- 2024","id":"project_6_sobigdata","title":"SoBigData++","type":"ResearchProject","cup":"G.A. \\#871042"},"context":[{"neighborType":"Person","distance":1,"path_rels":["PARTICIPATED_IN_PROJECT"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Publication","distance":1,"path_rels":["PRODUCED_BY_PROJECT"],"neighbor":{"year":"2024","type":"Publication","author_ids":["person_alessandro_poggiali","person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"title":"Quantum clustering with k-Means: A hybrid approach","volume":"992","pages":"114466","issn":"0304-3975","bibtex_key":"POGGIALI2024114466","keyword_tag":"j","id":"pub_POGGIALI2024114466","entry_type":"article","category":"journal","venue_id":"venue_theoretical_computer_science","doi":"10.1016/j.tcs.2024.114466"}},{"neighborType":"Publication","distance":1,"path_rels":["PRODUCED_BY_PROJECT"],"neighbor":{"volume":"3284","pages":"188--200","year":"2022","bibtex_key":"poggiali2022clustering","keyword_tag":"c","id":"pub_poggiali2022clustering","type":"Publication","title":"Clustering Classical Data with Quantum k-Means","author_ids":["person_alessandro_poggiali","person_alessandro_berti","person_anna_bernasconi","person_gianna_maria_del_corso","person_riccardo_guidotti"],"entry_type":"inproceedings","category":"conference","venue_id":"venue_proceedings_of_the_23rd_italian_conference_on_theoretical_computer_science_ceur_workshop_proceedings_roma_italy"}}]},{"type":"Award","score":1.250411033630371,"summary":"He took second place in a contest launched by RAI in collaboration with the European Parliament, the European Commission, and the Department for European Policies, together with the Ministry of Foreign Affairs, to promote awareness of citizenship rights and European identity.","entity":{"year":"2012","description":"He took second place in a contest launched by RAI in collaboration with the European Parliament, the European Commission, and the Department for European Policies, together with the Ministry of Foreign Affairs, to promote awareness of citizenship rights and European identity.","granting_institution_id":"inst_rai","location":"{\"city\":\"Rome\",\"country\":\"Italy\"}","id":"award_15_new_talents_for_europe","title":"New Talents for Europe","type":"Award","category":"other"},"context":[{"neighborType":"Person","distance":1,"path_rels":["RECEIVED_AWARD"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Institution","distance":1,"path_rels":["GRANTED_BY"],"neighbor":{"name":"RAI","id":"inst_rai","type":"Institution"}}]},{"type":"ResearchGroup","score":0.8681541681289673,"summary":"The Pisa Quantum Group is an interdisciplinary collective of researchers and PhD students from the Departments of Computer Science and Physics of the University of Pisa, focusing on advanced topics in Quantum Computing and Information Theory. The group conducts theoretical and experimental research on quantum algorithms, quantum computing models, quantum information theory, and quantum communic…","entity":{"name":"Pisa Quantum Group","description":"The Pisa Quantum Group is an interdisciplinary collective of researchers and PhD students from the Departments of Computer Science and Physics of the University of Pisa, focusing on advanced topics in Quantum Computing and Information Theory. The group conducts theoretical and experimental research on quantum algorithms, quantum computing models, quantum information theory, and quantum communication protocols. Collaboration between physicists and computer scientists fosters studies on quantum circuits, quantum simulations, and emerging applications of quantum technologies.","dates":"11/2024 -- present","location":"Pisa, Italy, ","id":"group_1_pisa_quantum_group","type":"ResearchGroup","institution_id":"inst_university_of_pisa"},"context":[{"neighborType":"Person","distance":1,"path_rels":["MEMBER_OF_GROUP"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Institution","distance":1,"path_rels":["GROUP_AT"],"neighbor":{"country":"Italy","city":"Pisa","name":"University of Pisa","id":"inst_university_of_pisa","type":"Institution"}}]},{"type":"TrainingActivity","score":0.830539345741272,"summary":"This event highlighted the latest progress in the IBM Quantum roadmap, focusing on advanced software tools such as Qiskit and the new IBM Heron R2 processor. The conference introduced leading-edge quantum technologies, including services like Qiskit Transpiler Service and Qiskit Code Assistant, and proposed strategies for optimizing large-scale quantum circuits in industrial contexts. This init…","entity":{"website":"https://www.ibm.com/events/reg/flow/ibm/q7e1efmb/landing/page/landing","organizer":"IBM Watson Research Center","organizer_id":"inst_ibm_watson_research_center","name":"IBM Quantum Developer Conference","description":"This event highlighted the latest progress in the IBM Quantum roadmap, focusing on advanced software tools such as Qiskit and the new IBM Heron R2 processor. The conference introduced leading-edge quantum technologies, including services like Qiskit Transpiler Service and Qiskit Code Assistant, and proposed strategies for optimizing large-scale quantum circuits in industrial contexts. This initiative offered a chance to examine practical quantum technology applications and collaborate with international experts, strengthening quantum development expertise.","dates":"11/13/2024 -- 11/15/2024","location":"{\"venue\":\"IBM Watson Research Center\",\"city\":\"Yorktown Heights\",\"country\":\"New York\"}","id":"training_1_ibm_quantum_developer_conferen","type":"TrainingActivity"},"context":[{"neighborType":"Person","distance":1,"path_rels":["ATTENDED_TRAINING"],"neighbor":{"skills":"{\"agentic_coding\":[\"Roo Code\",\"Claude Code\"],\"programming\":[\"Python\",\"Java\",\"C\",\"C++\"],\"quantum_libraries\":[\"Qiskit\",\"Pennylane\"],\"ide\":[\"Visual Studio Code\"],\"os\":[\"Mac OS X\",\"GNU/Linux\",\"Windows\"],\"analytics\":[\"Jupyter\"]}","qualification":"Ph.D. in Computer Science","research_interests":"Alessandro Berti's research spans three main topics: quantum algorithms for AI (Quantum AI), techniques for quantum state preparation, and variational quantum circuits. Regarding Quantum AI, he focuses on classification , clustering , and outlier detection . He investigates their complexity and accuracy, emphasizing how quantum input loading affects performance, especially when transforming classical data into quantum states. Efficient data loading shapes the viability of running quantum algorithms on large datasets. He also studies variational quantum circuits to mitigate noise in current quantum architectures. Specifically, these circuits form a quantum reservoir computing model that learns quantum gates with error tolerance for superconducting qubits . Moreover, Alessandro explores quantum data compression methods that reduce the number of gates needed to encode classical data into quantum states and limit noise effects of certain architectures .","languages":"[{\"language\":\"Italian\",\"level\":\"Native Speaker\",\"certification\":null},{\"language\":\"English\",\"level\":\"Advanced\",\"certification\":\"Certification: English for Research Publication and Presentation Purposes - C1 (University of Pisa, 2021)\"}]","is_primary":true,"identifiers":"{\"orcid\":\"https://orcid.org/0000-0001-9144-9572\"}","citizenship":"Italian","name":"Alessandro Berti","biography":"Alessandro Berti is currently a postdoctoral researcher at the Department of Physics, University of Pisa, where he focuses on quantum algorithms. He also serves as a subject expert in quantum computing at the Department of Computer Science. In 2019, he launched an entrepreneurial project by starting a startup that taught him valuable skills in business dynamics. At the same time, he created a podcasting project that promotes scientific and technical knowledge and helps him connect with prominent international experts. Later, in 2020, Alessandro founded a community that fosters dialogue between university students and Big Tech. This community now counts more than 2300 members and receives support from more than 8 Italian universities. Subsequently, Alessandro decided to devote himself to academic research, winning a Ph.D. scholarship at the Department of Computer Science of the University of Pisa in the same year and completing his doctorate in 2024. His research revolves around quantum algorithms, especially those oriented toward artificial intelligence and efficient techniques for quantum state preparation. He also patented a quantum state preparation technique with the support of the University of Pisa. During a period of study abroad at Fermilab's SQMS center in the United States, Alessandro collaborated with NASA, USRA, and Fermilab on the development of a quantum reservoir computing model that learns quantum gates. Throughout his Ph.D., Alessandro also worked on teaching activities in both Bachelor's and Master's degrees in Computer Science, including laboratory lectures for the course Introduction to Quantum Computing. He actively spreads scientific knowledge through events such as Bright Night and university initiatives that promote the Department of Computer Science's research. Alessandro Berti has authored 16 scientific contributions in peer-reviewed journals and international conferences, workshops, and poster presentations. He also served as a program committee member at several international conferences.","id":"person_alessandro_berti","type":"Person","personal_interests":"{\"personal_interests\":[\"Video and Audio Editing\",\"Visual Effects\",\"3D Modeling\"],\"software\":[\"Adobe Premiere\",\"Adobe Illustrator\",\"Adobe After Effects\",\"Autodesk 3ds Max\"],\"driving_license\":[\"Type B\"]}"}},{"neighborType":"Institution","distance":1,"path_rels":["ORGANIZED_BY"],"neighbor":{"name":"IBM Watson Research Center","id":"inst_ibm_watson_research_center","type":"Institution"}}]}],"total":7}