By clicking the Apply button I understand that my employment application process with Takeda will commence and that the information I provide in my application will be processed in line with Takedas Privacy Notice and Terms of Use. I further attest that all information I submit in my employment application is true to the best of my knowledge.
Job Description
募集部門の紹介
我々データサイエンスグループは製造部門に所属し国内にある3つの工場の仲間たちや間接部門グローバル組織と協力しながら製造収量の改善や生産性の向上などを目的とした高度なデータ分析やデジタルツインモデルの開発に取り組んでいます
Our Data Science group is part of the manufacturing division working in collaboration with colleagues from three manufacturing sites in Japan indirect departments and global organizations to conduct advanced data analysis and develop digital twin models aimed at improving manufacturing yield and enhancing productivity.
職務内容
- 技術移管の加速や医薬品製造プロセスの高度な自動制御化を目的としてDigital twin modelsの開発実装をリードする
- 開発するモデル(予測シミュレーションソフトセンシング)には熱力学輸送現象流体力学分子動力学などの第一原理に基づいたMechanistic modelビッグデータに基づく統計/機械学習モデルそしてそれらのHybrid modelが含まれる
- GMP環境へのモデル実装に必要なドキュメントを準備し製造部門や品質部門と協力しながらモデルの実運用に向けての検証を成功させる
- 既存もしくはこれから導入されるデジタルインフラやプラットフォームを最大限に利用して実生産現場へのモデル実装を社内外のステークホルダーと共に推進しサステイナブルなモデル利用方法の確立とモデルのライフサイクル管理を担当する
- 専門家としての知識を利用してプロセス可視化問題解決予測モデリングなどに必要なデータの準備をサポートする
- シミュレーションモデルや高度なデータ分析技術を利用して高い製品品質を維持しながら生産収量や生産性の向上逸脱や廃棄率故障率の削減を実現する
- 関係者と協力してデータサイエンス技術の適用機会を特定し多くの価値創造に貢献する
- Lead the development and implementation of digital twin models aimed at accelerating technology transfer and advancing the automation of pharmaceutical manufacturing processes.
- The models to be developed (predictive simulation soft sensing) include mechanistic models based on first principles such as thermodynamics transport phenomena fluid dynamics and molecular dynamics as well as statistical/machine learning models derived from big data and hybrid models combining both.
- Prepare the necessary documentation for implementing the models in a GMP environment collaborating with manufacturing and quality departments to successfully validate the models for operational use.
- Leverage existing or future digital infrastructures and platforms to facilitate model implementation in real production environments alongside internal and external stakeholders while establishing a sustainable model utilization approach and managing the model lifecycle.
- Support data preparation required for process visualization problem-solving and predictive modeling by utilizing expertise as a data scientist.
- Utilize simulation models and advanced data analytics to improve production yield and productivity while reducing deviations and discard/failure rates all while maintaining high product quality.
- Collaborate with stakeholders to identify opportunities for applying data science technologies and contribute to creating significant value.
応募要件
学歴
- University degree in STEM (Science Technology Engineering or Mathematics preferably: Chemical/Biochemical Engineering) with a post-graduate degree (Masters/PhD) would be highly desirable
実務経験
- 3 years in pharmaceutical/chemical/biotech industry
- Hands-on experience with digitizing industrial processes computational modeling process simulation soft sensor modeling (PAT) and data analytics
- Excellent knowledgeable with statistical/machine learning/deep learning/AI methodologies
- Familiar with cGMP requirements and quality system
- Hardware experience (e.g. building experimental setups)
- Capabilities to translate business needs into data analytics concepts and the other way
- Demonstrated ability to develop innovative solutions for real-world business problems
- High level project management skills
- Ability to interface with international stakeholders and to connect internal and external data analytics experts of both academia and industries
スキル資格
- Strong expertise in Machine Learning and AI/Deep Learning algorithms (PCA PLS RF XGB SVM LSTM etc.) cross-validation and hyper-parameter tuning techniques model interpretation and deployment
- Expertise in mechanistic and hybrid modeling (e.g. gPROMS Aspen)
- Expertise in (multi-variate and multi-step) Time Series Analysis
- Experience with Soft sensor development for drug manufacturing processes is a strong asset
- Good programming knowledge of Python required further skills such as GitHub Julia SQL PowerBI Plotly Streamlit R RShiny etc. are advantageous.
- Experience with Databricks SIMCA Online & Offline Dataiku DataRobot AspenTech Inmation OSI PI Discoverant
- Prior experience of SCRUM and other project management methodologies is a strong asset
語学
- Fluent oral and written communication skills in Japanese and English
その他
- Work in Office: 8 days/month or more
- Business Trips: Depending on the assigned project domestic manufacturing site visits may occur
求める人物像
- データサイエンスや数値シミュレーションモデリングの専門家として適切なソリューションを提案し社内外のステークホルダーと連携しながらデジタルツインモデルの開発実装を強力にドライブできる方
- 最新技術をサスティナブルな形で現場実装し製品品質を高いレベルで維持しながら生産収率や生産性の向上を実現することに歓びを感じることができる方
- 国や組織考え方など多様性ある環境を好み国内外を問わず仲間たちと協力しながらプロジェクトを推進する状況を楽しめる方
- Expertise in data science and numerical simulation modeling with the ability to propose suitable solutions and drive the development and implementation of digital twin models in collaboration with internal and external stakeholders.
- Passion for sustainably implementing cutting-edge technologies on-site achieving improvements in production yield and productivity while maintaining high levels of product quality.
- Enjoys working in a diverse environment with varying perspectives countries and organizations and thrives on advancing projects in collaboration with colleagues both domestically and internationally.
Takeda Compensation and Benefits Summary:
Allowances: Commutation Housing Overtime Work etc.
Salary Increase: Annually Bonus Payment: Twice a year
Working Hours: Headquarters (Osaka/ Tokyo) 9:00-17:30 Production Sites (Osaka/ Yamaguchi) 8:00-16:45 (Narita) 8:30-17:15 Research Site (Kanagawa) 9:00-17:45
Holidays: Saturdays Sundays National Holidays May Day Year-End Holidays etc. (approx. 123 days in a year)
Paid Leaves: Annual Paid Leave Special Paid Leave Sick Leave Family Support Leave Maternity Leave Childcare Leave Family Nursing Leave.
Flexible Work Styles: Flextime Telework
Benefits: Social Insurance Retirement and Corporate Pension Employee Stock Ownership Program etc.
Important Notice concerning working conditions:
Locations
Osaka (Juso) JapanHikari Japan Tokyo Japan
Worker Type
Employee
Worker Sub-Type
Regular
Time Type
Full time
Required Experience:
IC
By clicking the Apply button I understand that my employment application process with Takeda will commence and that the information I provide in my application will be processed in line with Takedas Privacy Notice and Terms of Use. I further attest that all information I submit in my employment appl...
By clicking the Apply button I understand that my employment application process with Takeda will commence and that the information I provide in my application will be processed in line with Takedas Privacy Notice and Terms of Use. I further attest that all information I submit in my employment application is true to the best of my knowledge.
Job Description
募集部門の紹介
我々データサイエンスグループは製造部門に所属し国内にある3つの工場の仲間たちや間接部門グローバル組織と協力しながら製造収量の改善や生産性の向上などを目的とした高度なデータ分析やデジタルツインモデルの開発に取り組んでいます
Our Data Science group is part of the manufacturing division working in collaboration with colleagues from three manufacturing sites in Japan indirect departments and global organizations to conduct advanced data analysis and develop digital twin models aimed at improving manufacturing yield and enhancing productivity.
職務内容
- 技術移管の加速や医薬品製造プロセスの高度な自動制御化を目的としてDigital twin modelsの開発実装をリードする
- 開発するモデル(予測シミュレーションソフトセンシング)には熱力学輸送現象流体力学分子動力学などの第一原理に基づいたMechanistic modelビッグデータに基づく統計/機械学習モデルそしてそれらのHybrid modelが含まれる
- GMP環境へのモデル実装に必要なドキュメントを準備し製造部門や品質部門と協力しながらモデルの実運用に向けての検証を成功させる
- 既存もしくはこれから導入されるデジタルインフラやプラットフォームを最大限に利用して実生産現場へのモデル実装を社内外のステークホルダーと共に推進しサステイナブルなモデル利用方法の確立とモデルのライフサイクル管理を担当する
- 専門家としての知識を利用してプロセス可視化問題解決予測モデリングなどに必要なデータの準備をサポートする
- シミュレーションモデルや高度なデータ分析技術を利用して高い製品品質を維持しながら生産収量や生産性の向上逸脱や廃棄率故障率の削減を実現する
- 関係者と協力してデータサイエンス技術の適用機会を特定し多くの価値創造に貢献する
- Lead the development and implementation of digital twin models aimed at accelerating technology transfer and advancing the automation of pharmaceutical manufacturing processes.
- The models to be developed (predictive simulation soft sensing) include mechanistic models based on first principles such as thermodynamics transport phenomena fluid dynamics and molecular dynamics as well as statistical/machine learning models derived from big data and hybrid models combining both.
- Prepare the necessary documentation for implementing the models in a GMP environment collaborating with manufacturing and quality departments to successfully validate the models for operational use.
- Leverage existing or future digital infrastructures and platforms to facilitate model implementation in real production environments alongside internal and external stakeholders while establishing a sustainable model utilization approach and managing the model lifecycle.
- Support data preparation required for process visualization problem-solving and predictive modeling by utilizing expertise as a data scientist.
- Utilize simulation models and advanced data analytics to improve production yield and productivity while reducing deviations and discard/failure rates all while maintaining high product quality.
- Collaborate with stakeholders to identify opportunities for applying data science technologies and contribute to creating significant value.
応募要件
学歴
- University degree in STEM (Science Technology Engineering or Mathematics preferably: Chemical/Biochemical Engineering) with a post-graduate degree (Masters/PhD) would be highly desirable
実務経験
- 3 years in pharmaceutical/chemical/biotech industry
- Hands-on experience with digitizing industrial processes computational modeling process simulation soft sensor modeling (PAT) and data analytics
- Excellent knowledgeable with statistical/machine learning/deep learning/AI methodologies
- Familiar with cGMP requirements and quality system
- Hardware experience (e.g. building experimental setups)
- Capabilities to translate business needs into data analytics concepts and the other way
- Demonstrated ability to develop innovative solutions for real-world business problems
- High level project management skills
- Ability to interface with international stakeholders and to connect internal and external data analytics experts of both academia and industries
スキル資格
- Strong expertise in Machine Learning and AI/Deep Learning algorithms (PCA PLS RF XGB SVM LSTM etc.) cross-validation and hyper-parameter tuning techniques model interpretation and deployment
- Expertise in mechanistic and hybrid modeling (e.g. gPROMS Aspen)
- Expertise in (multi-variate and multi-step) Time Series Analysis
- Experience with Soft sensor development for drug manufacturing processes is a strong asset
- Good programming knowledge of Python required further skills such as GitHub Julia SQL PowerBI Plotly Streamlit R RShiny etc. are advantageous.
- Experience with Databricks SIMCA Online & Offline Dataiku DataRobot AspenTech Inmation OSI PI Discoverant
- Prior experience of SCRUM and other project management methodologies is a strong asset
語学
- Fluent oral and written communication skills in Japanese and English
その他
- Work in Office: 8 days/month or more
- Business Trips: Depending on the assigned project domestic manufacturing site visits may occur
求める人物像
- データサイエンスや数値シミュレーションモデリングの専門家として適切なソリューションを提案し社内外のステークホルダーと連携しながらデジタルツインモデルの開発実装を強力にドライブできる方
- 最新技術をサスティナブルな形で現場実装し製品品質を高いレベルで維持しながら生産収率や生産性の向上を実現することに歓びを感じることができる方
- 国や組織考え方など多様性ある環境を好み国内外を問わず仲間たちと協力しながらプロジェクトを推進する状況を楽しめる方
- Expertise in data science and numerical simulation modeling with the ability to propose suitable solutions and drive the development and implementation of digital twin models in collaboration with internal and external stakeholders.
- Passion for sustainably implementing cutting-edge technologies on-site achieving improvements in production yield and productivity while maintaining high levels of product quality.
- Enjoys working in a diverse environment with varying perspectives countries and organizations and thrives on advancing projects in collaboration with colleagues both domestically and internationally.
Takeda Compensation and Benefits Summary:
Allowances: Commutation Housing Overtime Work etc.
Salary Increase: Annually Bonus Payment: Twice a year
Working Hours: Headquarters (Osaka/ Tokyo) 9:00-17:30 Production Sites (Osaka/ Yamaguchi) 8:00-16:45 (Narita) 8:30-17:15 Research Site (Kanagawa) 9:00-17:45
Holidays: Saturdays Sundays National Holidays May Day Year-End Holidays etc. (approx. 123 days in a year)
Paid Leaves: Annual Paid Leave Special Paid Leave Sick Leave Family Support Leave Maternity Leave Childcare Leave Family Nursing Leave.
Flexible Work Styles: Flextime Telework
Benefits: Social Insurance Retirement and Corporate Pension Employee Stock Ownership Program etc.
Important Notice concerning working conditions:
Locations
Osaka (Juso) JapanHikari Japan Tokyo Japan
Worker Type
Employee
Worker Sub-Type
Regular
Time Type
Full time
Required Experience:
IC
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