Template to ask for referrals
(For freshers)
👇👇
Hi [Name],
I hope this message finds you well.
My name is [Your Name], and I recently graduated with a degree in [Your Degree] from [Your University]. I am passionate about data analytics and have developed a strong foundation through my coursework and practical projects.
I am currently seeking opportunities to start my career as a Data Analyst and came across the exciting roles at [Company Name].
I am reaching out to you because I admire your professional journey and expertise in the field of data analytics. Your role at [Company Name] is particularly inspiring, and I am very interested in contributing to such an innovative and dynamic team.
I am confident that my skills and enthusiasm would make me a valuable addition to this role [Job ID / Link]. If possible, I would be incredibly grateful for your referral or any advice you could offer on how to best position myself for this opportunity.
Thank you very much for considering my request. I understand how busy you must be and truly appreciate any assistance you can provide.
Best regards,
[Your Full Name]
[Your Email Address]
(For freshers)
👇👇
Hi [Name],
I hope this message finds you well.
My name is [Your Name], and I recently graduated with a degree in [Your Degree] from [Your University]. I am passionate about data analytics and have developed a strong foundation through my coursework and practical projects.
I am currently seeking opportunities to start my career as a Data Analyst and came across the exciting roles at [Company Name].
I am reaching out to you because I admire your professional journey and expertise in the field of data analytics. Your role at [Company Name] is particularly inspiring, and I am very interested in contributing to such an innovative and dynamic team.
I am confident that my skills and enthusiasm would make me a valuable addition to this role [Job ID / Link]. If possible, I would be incredibly grateful for your referral or any advice you could offer on how to best position myself for this opportunity.
Thank you very much for considering my request. I understand how busy you must be and truly appreciate any assistance you can provide.
Best regards,
[Your Full Name]
[Your Email Address]
❤4
company name: JP Morgan Chase
role: sde-1
batch: 2024/23 passouts
link:https://jpmc.fa.oraclecloud.com/hcmUI/CandidateExperience/en/sites/CX_1001/job/210667642
role: sde-1
batch: 2024/23 passouts
link:https://jpmc.fa.oraclecloud.com/hcmUI/CandidateExperience/en/sites/CX_1001/job/210667642
JPMC Candidate Experience page
Software Engineer I
Join an agile team that designs and delivers market-leading technology products in a secure and scalable way
S&P Global is hiring Data Analyst 🚀🔥
Experience : 0-6 Months
Location : Bangalore
Apply link : https://careers.spglobal.com/jobs/319690?lang=en-us&utm_source=linkedin
Experience : 0-6 Months
Location : Bangalore
Apply link : https://careers.spglobal.com/jobs/319690?lang=en-us&utm_source=linkedin
Data Analyst in Bangalore, India | S&P Global
S&P Global is hiring a Data Analyst in Bangalore, India. Review all of the job details and apply today!
❤1
Data Engineering Roadmap for Beginners (2025)
> Language → Python + SQL.
> OS Basics → Linux + Bash + Git.
> Data Modeling → Normalization + Star/Snowflake Schema.
> Databases → PostgreSQL + MySQL + MongoDB.
> Data Warehousing → Snowflake + BigQuery + Redshift.
> Data Processing → Apache Spark + PySpark.
> Workflow Orchestration → Airflow + Prefect.
> Data Lakes → Delta Lake + Apache Hudi + Iceberg.
> Streaming → Kafka + Flink
> Cloud Platforms → AWS (S3, Glue, EMR) / GCP (GCS, Dataflow, BigQuery) / Azure (Data Factory, Synapse).
> Data Quality/Validation → Great Expectations.
> Containerization → Docker + Kubernetes.
> Infra as Code → Terraform.
> Visualization → dbt + Looker/PowerBI/Tableau.
> Language → Python + SQL.
> OS Basics → Linux + Bash + Git.
> Data Modeling → Normalization + Star/Snowflake Schema.
> Databases → PostgreSQL + MySQL + MongoDB.
> Data Warehousing → Snowflake + BigQuery + Redshift.
> Data Processing → Apache Spark + PySpark.
> Workflow Orchestration → Airflow + Prefect.
> Data Lakes → Delta Lake + Apache Hudi + Iceberg.
> Streaming → Kafka + Flink
> Cloud Platforms → AWS (S3, Glue, EMR) / GCP (GCS, Dataflow, BigQuery) / Azure (Data Factory, Synapse).
> Data Quality/Validation → Great Expectations.
> Containerization → Docker + Kubernetes.
> Infra as Code → Terraform.
> Visualization → dbt + Looker/PowerBI/Tableau.
❤5
✅ Step-by-Step Approach to Learn Data Analytics 📈🧠
➊ Excel Fundamentals:
✔ Master formulas, pivot tables, data validation, charts, and graphs.
➋ SQL Basics:
✔ Learn to query databases, use SELECT, FROM, WHERE, JOIN, GROUP BY, and aggregate functions.
➌ Data Visualization:
✔ Get proficient with tools like Tableau or Power BI to create insightful dashboards.
➍ Statistical Concepts:
✔ Understand descriptive statistics (mean, median, mode), distributions, and hypothesis testing.
➎ Data Cleaning & Preprocessing:
✔ Learn how to handle missing data, outliers, and data inconsistencies.
➏ Exploratory Data Analysis (EDA):
✔ Explore datasets, identify patterns, and formulate hypotheses.
➐ Python for Data Analysis (Optional but Recommended):
✔ Learn Pandas and NumPy for data manipulation and analysis.
➑ Real-World Projects:
✔ Analyze datasets from Kaggle, UCI Machine Learning Repository, or your own collection.
➒ Business Acumen:
✔ Understand key business metrics and how data insights impact business decisions.
➓ Build a Portfolio:
✔ Showcase your projects on GitHub, Tableau Public, or a personal website. Highlight the impact of your analysis.
👍 Tap ❤️ for more!
➊ Excel Fundamentals:
✔ Master formulas, pivot tables, data validation, charts, and graphs.
➋ SQL Basics:
✔ Learn to query databases, use SELECT, FROM, WHERE, JOIN, GROUP BY, and aggregate functions.
➌ Data Visualization:
✔ Get proficient with tools like Tableau or Power BI to create insightful dashboards.
➍ Statistical Concepts:
✔ Understand descriptive statistics (mean, median, mode), distributions, and hypothesis testing.
➎ Data Cleaning & Preprocessing:
✔ Learn how to handle missing data, outliers, and data inconsistencies.
➏ Exploratory Data Analysis (EDA):
✔ Explore datasets, identify patterns, and formulate hypotheses.
➐ Python for Data Analysis (Optional but Recommended):
✔ Learn Pandas and NumPy for data manipulation and analysis.
➑ Real-World Projects:
✔ Analyze datasets from Kaggle, UCI Machine Learning Repository, or your own collection.
➒ Business Acumen:
✔ Understand key business metrics and how data insights impact business decisions.
➓ Build a Portfolio:
✔ Showcase your projects on GitHub, Tableau Public, or a personal website. Highlight the impact of your analysis.
👍 Tap ❤️ for more!
❤7