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Conference: SLAS 2015 Call for abstracts


The July 28 deadline for podium abstract submissions for SLAS2015 is just a few weeks away. Please consider responding to this call to play an important role in the industry-leading event located at the intersection of science and technology. Abstract submissions from industry, academia and government professionals are welcome.
Submit Your Abstract »

SLAS is currently accepting both podium and poster presentation abstracts for consideration towards the scientific program at SLAS2015. Program tracks include:
  • Assay Development and Screening
  • Automation and High-Throughput Technologies
  • Bioanalytical Techniques
  • Biomarker Development and Applications
  • Drug Target Strategies
  • Informatics
  • Micro/Nano Technologies
Visit the SLAS2015 Web site for detailed track descriptions.
Presenting at SLAS2015 positions both you and your organization as a leader in your field. Serving as a presenter is also sure to expand your professional network and provide you with qualified insights from peers that will improve your research moving forward. If you have expertise in the field scientific automation - or an interesting story or case study to share - please consider this opportunity to contribute to the SLAS2015 scientific program.
The Tony B. Academic Travel Award
SLAS is proud to once again offer the Tony B. Academic Travel Award to facilitate the attendance of students and emerging academic professionals to present their scientific work at SLAS2015. Award recipients receive airfare or mileage reimbursement, conference registration and shared accommodations at SLAS2015. Undergraduate and graduate students, postdoctoral associates, and junior faculty are encouraged to apply. Click here for complete details on the Tony B. Academic Travel Award.
The SLAS Innovation Award
All presenters selected to deliver podium presentations can nominate themselves to be considered for the 2015 SLAS Innovation Award. The final round of judging for this award will take place at SLAS2015 in Washington, DC. This prestigious award carries with it a $10,000 cash prize to recognize the top-rated podium presentation, among all those nominated, delivered at the SLAS Annual Conference.Click here for complete details on the SLAS Innovation Award.

Questions? Contact Amy McGorry of SLAS Headquarters by e-mail or by calling 1.​630​.256​.7527​ ext.​ 101.

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