搜索
Udemy - Apache Spark for Java Developers
磁力链接/BT种子名称
Udemy - Apache Spark for Java Developers
磁力链接/BT种子简介
种子哈希:
536c359c7abd62fee7f59569b87a978aec9e147b
文件大小:
11.41G
已经下载:
2891
次
下载速度:
极快
收录时间:
2021-03-18
最近下载:
2025-09-20
移花宫入口
移花宫.com
邀月.com
怜星.com
花无缺.com
yhgbt.icu
yhgbt.top
磁力链接下载
magnet:?xt=urn:btih:536C359C7ABD62FEE7F59569B87A978AEC9E147B
推荐使用
PIKPAK网盘
下载资源,10TB超大空间,不限制资源,无限次数离线下载,视频在线观看
下载BT种子文件
磁力链接
迅雷下载
PIKPAK在线播放
世界之窗
91视频
含羞草
欲漫涩
逼哩逼哩
成人快手
51品茶
抖阴破解版
极乐禁地
91短视频
暗网Xvideo
TikTok成人版
PornHub
听泉鉴鲍
少女日记
草榴社区
哆哔涩漫
呦乐园
萝莉岛
悠悠禁区
拔萝卜
疯马秀
最近搜索
肉丝内
2025极品淫妻
錯
nubiles-casting
调教妻
增强破解
光屁股
露脸高清720p版
大学生的日常
包臀裙
ぱにぱに
超幼
爆乳
系列.zip
酒店
天宝
大奶女友
uncensored 1080p
超近
爱妻
ktv小妹
操
高级
老逼
夜乐
心·心
老婆 大奶
超熟女
热裤
黑水
文件列表
43. Recommender Systems/2. Building the Model.mp4
270.2 MB
41. Decision Trees/2. Building the Model.mp4
265.6 MB
40. Logistic Regression/3. Coding a Logistic Regression.mp4
241.1 MB
38. Pipelines/1. Pipelines.mp4
234.0 MB
42. K Means Clustering/1. K Means Clustering.mp4
221.8 MB
16. SparkSQL Getting Started/1. SparkSQL Getting Started.mp4
208.6 MB
26. More Aggregations/1. How to use the agg method in Spark.mp4
205.5 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/5. Using KafkaUtils to access a DStream.mp4
197.3 MB
14. RDD Performance/7. Caching and Persistence.mp4
196.2 MB
2. Getting Started/2. Installing Spark.mp4
176.6 MB
29. SparkSQL Performance/1. Understand the SparkUI for SparkSQL.mp4
176.4 MB
25. Pivot Tables/2. Coding a Pivot Table in Spark.mp4
173.6 MB
9. Keyword Ranking Practical/3. Worked Solution (continued) with Sorting.mp4
163.8 MB
46. Streaming Chapter 3- Structured Streaming/1. Structured Streaming Overview.mp4
160.4 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/3. Using a Kafka Event Simulator.mp4
160.1 MB
39. Case Study/2. Case Study - Walkthrough Part 1.mp4
158.9 MB
24. DataFrames API/1. SQL vs DataFrames.mp4
154.3 MB
23. Ordering/1. Ordering.mp4
153.5 MB
39. Case Study/3. Case Study - Walkthrough Part 2.mp4
146.9 MB
19. In Memory Data/1. In Memory Data.mp4
146.5 MB
17. Datasets/4. Filters using Columns.mp4
145.7 MB
22. Multiple Groupings/1. Multiple Groupings.mp4
145.6 MB
8. Reading from Disk/1. Reading from Disk.mp4
144.7 MB
24. DataFrames API/2. DataFrame Grouping.mp4
143.6 MB
9. Keyword Ranking Practical/2. Worked Solution.mp4
142.6 MB
14. RDD Performance/4. Shuffles.mp4
140.2 MB
46. Streaming Chapter 3- Structured Streaming/2. Data Sinks.mp4
138.7 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/4. Starting a Streaming Job.mp4
134.1 MB
46. Streaming Chapter 3- Structured Streaming/5. What is the Batch Size in Structured Streaming.mp4
132.2 MB
37. Non-Numeric Data/2. Understanding Vectors.mp4
131.4 MB
46. Streaming Chapter 3- Structured Streaming/4. Windows and Watermarks.mp4
129.2 MB
35. Model Fitting Parameters/2. Training, Test and Holdout Data.mp4
129.0 MB
18. The Full SQL Syntax/1. Using a Spark Temporary View for SQL.mp4
126.5 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/8. Adding a Slide Interval.mp4
126.4 MB
36. Feature Selection/3. Identifying and Eliminating Duplicated Features.mp4
124.9 MB
37. Non-Numeric Data/1. Using OneHotEncoding.mp4
122.0 MB
35. Model Fitting Parameters/1. Setting Linear Regression Parameters.mp4
118.4 MB
30. HashAggregation/3. How can I force Spark to use HashAggregation.mp4
116.0 MB
10. Sorts and Coalesce/2. Why Coalesce is the Wrong Solution.mp4
114.8 MB
30. HashAggregation/2. How does HashAggregation work.mp4
114.3 MB
46. Streaming Chapter 3- Structured Streaming/3. Structured Streaming Output Modes.mp4
114.2 MB
9. Keyword Ranking Practical/1. Practical Requirements.mp4
111.6 MB
14. RDD Performance/1. Transformations and Actions.mp4
110.8 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/5. Streaming Transformations.mp4
102.8 MB
20. Groupings and Aggregations/1. Groupings and Aggregations.mp4
101.8 MB
11. Deploying to AWS EMR (Optional)/2. Packing a Spark Jar for EMR.mp4
99.3 MB
28. User Defined Functions/3. Using a UDF in Spark SQL.mp4
98.7 MB
30. HashAggregation/1. Explaining Execution Plans.mp4
98.5 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/6. Writing a Kafka Aggegration.mp4
98.3 MB
36. Feature Selection/1. Describing the Features.mp4
98.2 MB
41. Decision Trees/1. Overview of Decision Trees.mp4
95.7 MB
29. SparkSQL Performance/3. Update - Setting spark.sql.shuffle.partitions.mp4
94.9 MB
28. User Defined Functions/1. How to use a Lambda to write a UDF in Spark.mp4
92.7 MB
3. Reduces on RDDs/1. Reduces on RDDs.mp4
92.6 MB
10. Sorts and Coalesce/1. Why do sorts not work with foreach in Spark.mp4
92.5 MB
12. Joins/2. Left Outer Joins and Optionals.mp4
91.9 MB
11. Deploying to AWS EMR (Optional)/1. How to start an EMR Spark Cluster.mp4
88.7 MB
33. Linear Regression Models/3. Assembling a Vector of Features.mp4
85.5 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/2. Installing Kafka.mp4
85.3 MB
27. Practical Exercise/1. Building a Pivot Table with Multiple Aggregations.mp4
84.6 MB
1. Introduction/3.1 Practicals.zip.zip
83.1 MB
6. PairRDDs/3. Coding a ReduceByKey.mp4
82.3 MB
6. PairRDDs/2. Building a PairRDD.mp4
81.4 MB
31. SparkSQL Performance vs RDDs/1. SparkSQL Performance vs RDDs.mp4
79.1 MB
17. Datasets/1. Dataset Basics.mp4
76.0 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/8. Windowing Batches.mp4
75.6 MB
5. Tuples/2. Tuples and RDDs.mp4
75.4 MB
7. FlatMaps and Filters/1. FlatMaps.mp4
72.4 MB
17. Datasets/2. Filters using Expressions.mp4
72.0 MB
13. Big Data Big Exercise/2. Warmup.mp4
71.5 MB
34. Training Data/5. Assessing Model Accuracy with R2 and RMSE.mp4
70.4 MB
32. Module 3 - SparkML for Machine Learning/5. The Model Building Process.mp4
68.7 MB
14. RDD Performance/3. Narrow vs Wide Transformations.mp4
68.7 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/6. Streaming Aggregations.vtt
68.7 MB
41. Decision Trees/4. Random Forests.mp4
67.2 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/6. Streaming Aggregations.mp4
67.1 MB
33. Linear Regression Models/4. Model Fitting.mp4
66.3 MB
6. PairRDDs/4. Using the Fluent API.mp4
65.9 MB
36. Feature Selection/2. Correlation of Fetures.mp4
65.0 MB
29. SparkSQL Performance/2. How does SQL and DataFrame performance compare.mp4
64.4 MB
11. Deploying to AWS EMR (Optional)/3. Running a Spark Job on EMR.mp4
64.4 MB
21. Date Formatting/1. Date Formatting.mp4
63.6 MB
13. Big Data Big Exercise/11. Walkthrough - Step 9, adding titles and using the Big Data file.mp4
62.1 MB
5. Tuples/1. RDDs of Objects.mp4
61.8 MB
1. Introduction/3. Module 1 - Introduction.mp4
60.7 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/4. Integrating Kafka with Spark.mp4
60.1 MB
6. PairRDDs/1. Overview of PairRDDs.mp4
59.8 MB
33. Linear Regression Models/2. Beginning Coding Linear Regressions.mp4
58.7 MB
39. Case Study/1. Requirements.mp4
58.4 MB
6. PairRDDs/5. Grouping By Key.mp4
55.1 MB
12. Joins/1. Inner Joins.mp4
54.4 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/2. Streaming Chapter 1 - Introduction to Streaming.mp4
54.2 MB
1. Introduction/1. Welcome.mp4
54.0 MB
41. Decision Trees/3. Interpreting a Decision Tree.mp4
53.2 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/3. DStreams.mp4
52.2 MB
34. Training Data/2. Using data from Kaggle.mp4
51.3 MB
4. Mapping and Outputting/4. If you've had a NotSerializableException in Spark.mp4
51.0 MB
4. Mapping and Outputting/3. Counting Big Data Items.mp4
49.4 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/1. Overview of Kafka.mp4
49.4 MB
34. Training Data/3. Practical Walkthrough.mp4
49.3 MB
13. Big Data Big Exercise/5. Walkthrough - Step 3.mp4
48.8 MB
34. Training Data/4. Splitting Training Data with Random Splits.mp4
48.4 MB
4. Mapping and Outputting/1. Mapping Operations.mp4
47.4 MB
28. User Defined Functions/2. Using more than one input parameter in Spark UDF.mp4
47.2 MB
14. RDD Performance/2. The DAG and SparkUI.mp4
45.4 MB
14. RDD Performance/5. Dealing with Key Skews.mp4
45.0 MB
7. FlatMaps and Filters/2. Filters.mp4
44.1 MB
4. Mapping and Outputting/2. Outputting Results to the Console.mp4
43.8 MB
32. Module 3 - SparkML for Machine Learning/4. Supervised vs Unsupervised Learning.mp4
42.3 MB
25. Pivot Tables/1. How does a Pivot Table work.mp4
41.1 MB
11. Deploying to AWS EMR (Optional)/5. Calculating EMR costs and Terminating the cluster.mp4
39.7 MB
17. Datasets/3. Filters using Lambdas.mp4
38.5 MB
11. Deploying to AWS EMR (Optional)/4. Understanding the Job Progress Output.mp4
37.0 MB
43. Recommender Systems/1. Overview and Matrix Factorisation.mp4
36.6 MB
13. Big Data Big Exercise/3. Main Exercise Requirments.mp4
36.3 MB
46. Streaming Chapter 3- Structured Streaming/6. Kafka Structured Streaming Pipelines.mp4
36.3 MB
14. RDD Performance/6. Avoiding groupByKey and using map-side-reduces instead.mp4
35.7 MB
13. Big Data Big Exercise/4. Walkthrough - Step 2.mp4
35.5 MB
10. Sorts and Coalesce/3. What is Coalesce used for in Spark.mp4
35.3 MB
15. Module 2 - Chapter 1 SparkSQL Introduction/2. Introducing SparkSQL.mp4
35.2 MB
40. Logistic Regression/2. TrueFalse Negatives and Postives.mp4
34.7 MB
12. Joins/2. Left Outer Joins and Optionals.vtt
31.7 MB
12. Joins/3. Right Outer Joins.mp4
31.4 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/7. SparkUI for Streaming Jobs.mp4
28.3 MB
33. Linear Regression Models/1. Introducing Linear Regression.mp4
27.9 MB
32. Module 3 - SparkML for Machine Learning/2. What is Machine Learning.mp4
27.9 MB
15. Module 2 - Chapter 1 SparkSQL Introduction/1.1 biglog.txt.txt
25.5 MB
13. Big Data Big Exercise/8. Walkthrough - Step 6.mp4
24.2 MB
34. Training Data/1. Training vs Test and Holdout Data.mp4
23.9 MB
32. Module 3 - SparkML for Machine Learning/3. Coming up in this Module - and introducing Kaggle.mp4
23.7 MB
15. Module 2 - Chapter 1 SparkSQL Introduction/1.2 Code.zip.zip
23.2 MB
12. Joins/4. Full Joins and Cartesians.mp4
22.4 MB
13. Big Data Big Exercise/9. Walkthrough - Step 7.mp4
22.2 MB
13. Big Data Big Exercise/10. Walkthrough - Step 8.mp4
21.3 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/7. Adding a Window.mp4
21.1 MB
13. Big Data Big Exercise/7. Walkthrough - Step 5.mp4
20.0 MB
13. Big Data Big Exercise/1. Introducing the Requirements.mp4
18.3 MB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/1.1 Code.zip.zip
15.3 MB
13. Big Data Big Exercise/6. Walkthrough - Step 4.mp4
14.5 MB
30. HashAggregation/4. SQL vs DataFrames Performance Results.mp4
12.1 MB
36. Feature Selection/4. Data Preparation.mp4
10.5 MB
32. Module 3 - SparkML for Machine Learning/1.1 MLCode.zip.zip
5.8 MB
45. Streaming Chapter 2 - Streaming with Apache Kafka/3.1 viewing-figures-generation.zip.zip
3.8 MB
40. Logistic Regression/1.1 MLCodeChapters9-12.zip.zip
3.6 MB
13. Big Data Big Exercise/1.1 Practical Guide.pdf.pdf
666.1 kB
43. Recommender Systems/2. Building the Model.vtt
29.4 kB
41. Decision Trees/2. Building the Model.vtt
25.5 kB
42. K Means Clustering/1. K Means Clustering.vtt
25.0 kB
14. RDD Performance/7. Caching and Persistence.vtt
24.6 kB
2. Getting Started/2. Installing Spark.vtt
23.8 kB
38. Pipelines/1. Pipelines.vtt
23.6 kB
40. Logistic Regression/3. Coding a Logistic Regression.vtt
22.9 kB
16. SparkSQL Getting Started/1. SparkSQL Getting Started.vtt
22.5 kB
26. More Aggregations/1. How to use the agg method in Spark.vtt
20.7 kB
29. SparkSQL Performance/1. Understand the SparkUI for SparkSQL.vtt
20.4 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/5. Using KafkaUtils to access a DStream.vtt
19.3 kB
14. RDD Performance/4. Shuffles.vtt
19.0 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/3. Using a Kafka Event Simulator.vtt
18.5 kB
23. Ordering/1. Ordering.vtt
18.1 kB
9. Keyword Ranking Practical/2. Worked Solution.vtt
17.3 kB
36. Feature Selection/1. Describing the Features.vtt
17.1 kB
30. HashAggregation/2. How does HashAggregation work.vtt
16.9 kB
25. Pivot Tables/2. Coding a Pivot Table in Spark.vtt
16.8 kB
37. Non-Numeric Data/1. Using OneHotEncoding.vtt
16.5 kB
19. In Memory Data/1. In Memory Data.vtt
16.4 kB
41. Decision Trees/1. Overview of Decision Trees.vtt
16.2 kB
24. DataFrames API/1. SQL vs DataFrames.vtt
16.0 kB
35. Model Fitting Parameters/2. Training, Test and Holdout Data.vtt
15.9 kB
9. Keyword Ranking Practical/3. Worked Solution (continued) with Sorting.vtt
15.7 kB
22. Multiple Groupings/1. Multiple Groupings.vtt
15.4 kB
3. Reduces on RDDs/1. Reduces on RDDs.vtt
15.1 kB
10. Sorts and Coalesce/2. Why Coalesce is the Wrong Solution.vtt
15.1 kB
46. Streaming Chapter 3- Structured Streaming/1. Structured Streaming Overview.vtt
15.1 kB
30. HashAggregation/3. How can I force Spark to use HashAggregation.vtt
14.8 kB
18. The Full SQL Syntax/1. Using a Spark Temporary View for SQL.vtt
14.8 kB
24. DataFrames API/2. DataFrame Grouping.vtt
14.5 kB
20. Groupings and Aggregations/1. Groupings and Aggregations.vtt
14.5 kB
35. Model Fitting Parameters/1. Setting Linear Regression Parameters.vtt
14.4 kB
36. Feature Selection/3. Identifying and Eliminating Duplicated Features.vtt
14.4 kB
39. Case Study/1. Requirements.vtt
14.3 kB
8. Reading from Disk/1. Reading from Disk.vtt
14.3 kB
39. Case Study/2. Case Study - Walkthrough Part 1.vtt
14.0 kB
46. Streaming Chapter 3- Structured Streaming/2. Data Sinks.vtt
13.8 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/4. Starting a Streaming Job.vtt
13.7 kB
37. Non-Numeric Data/2. Understanding Vectors.vtt
13.5 kB
46. Streaming Chapter 3- Structured Streaming/3. Structured Streaming Output Modes.vtt
13.5 kB
46. Streaming Chapter 3- Structured Streaming/5. What is the Batch Size in Structured Streaming.vtt
13.2 kB
39. Case Study/3. Case Study - Walkthrough Part 2.vtt
13.1 kB
6. PairRDDs/3. Coding a ReduceByKey.vtt
13.0 kB
9. Keyword Ranking Practical/1. Practical Requirements.vtt
12.9 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/1. Overview of Kafka.vtt
12.7 kB
11. Deploying to AWS EMR (Optional)/2. Packing a Spark Jar for EMR.vtt
12.5 kB
46. Streaming Chapter 3- Structured Streaming/4. Windows and Watermarks.vtt
12.4 kB
14. RDD Performance/1. Transformations and Actions.vtt
12.1 kB
11. Deploying to AWS EMR (Optional)/1. How to start an EMR Spark Cluster.vtt
12.0 kB
14. RDD Performance/3. Narrow vs Wide Transformations.vtt
11.7 kB
33. Linear Regression Models/3. Assembling a Vector of Features.vtt
11.5 kB
32. Module 3 - SparkML for Machine Learning/4. Supervised vs Unsupervised Learning.vtt
11.4 kB
17. Datasets/4. Filters using Columns.vtt
11.4 kB
28. User Defined Functions/1. How to use a Lambda to write a UDF in Spark.vtt
11.2 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/8. Adding a Slide Interval.vtt
11.0 kB
10. Sorts and Coalesce/1. Why do sorts not work with foreach in Spark.vtt
10.9 kB
6. PairRDDs/2. Building a PairRDD.vtt
10.7 kB
5. Tuples/2. Tuples and RDDs.vtt
10.6 kB
7. FlatMaps and Filters/1. FlatMaps.vtt
10.3 kB
28. User Defined Functions/3. Using a UDF in Spark SQL.vtt
10.0 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/5. Streaming Transformations.vtt
10.0 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/2. Installing Kafka.vtt
10.0 kB
6. PairRDDs/1. Overview of PairRDDs.vtt
10.0 kB
40. Logistic Regression/2. TrueFalse Negatives and Postives.vtt
9.9 kB
32. Module 3 - SparkML for Machine Learning/5. The Model Building Process.vtt
9.8 kB
29. SparkSQL Performance/3. Update - Setting spark.sql.shuffle.partitions.vtt
9.7 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/6. Writing a Kafka Aggegration.vtt
9.7 kB
27. Practical Exercise/1. Building a Pivot Table with Multiple Aggregations.vtt
9.6 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/8. Windowing Batches.vtt
9.6 kB
13. Big Data Big Exercise/2. Warmup.vtt
9.6 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/2. Streaming Chapter 1 - Introduction to Streaming.vtt
9.5 kB
11. Deploying to AWS EMR (Optional)/3. Running a Spark Job on EMR.vtt
9.0 kB
12. Joins/1. Inner Joins.vtt
8.8 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/3. DStreams.vtt
8.7 kB
30. HashAggregation/1. Explaining Execution Plans.vtt
8.7 kB
34. Training Data/5. Assessing Model Accuracy with R2 and RMSE.vtt
8.7 kB
5. Tuples/1. RDDs of Objects.vtt
8.6 kB
33. Linear Regression Models/4. Model Fitting.vtt
8.4 kB
46. Streaming Chapter 3- Structured Streaming/6. Kafka Structured Streaming Pipelines.vtt
8.2 kB
31. SparkSQL Performance vs RDDs/1. SparkSQL Performance vs RDDs.vtt
8.0 kB
13. Big Data Big Exercise/3. Main Exercise Requirments.vtt
7.9 kB
14. RDD Performance/5. Dealing with Key Skews.vtt
7.9 kB
29. SparkSQL Performance/2. How does SQL and DataFrame performance compare.vtt
7.9 kB
33. Linear Regression Models/2. Beginning Coding Linear Regressions.vtt
7.7 kB
4. Mapping and Outputting/1. Mapping Operations.vtt
7.6 kB
33. Linear Regression Models/1. Introducing Linear Regression.vtt
7.5 kB
6. PairRDDs/4. Using the Fluent API.vtt
7.5 kB
14. RDD Performance/2. The DAG and SparkUI.vtt
7.4 kB
36. Feature Selection/2. Correlation of Fetures.vtt
7.4 kB
17. Datasets/1. Dataset Basics.vtt
7.4 kB
14. RDD Performance/6. Avoiding groupByKey and using map-side-reduces instead.vtt
7.4 kB
17. Datasets/2. Filters using Expressions.vtt
7.3 kB
25. Pivot Tables/1. How does a Pivot Table work.vtt
7.2 kB
21. Date Formatting/1. Date Formatting.vtt
7.1 kB
41. Decision Trees/4. Random Forests.vtt
7.0 kB
13. Big Data Big Exercise/5. Walkthrough - Step 3.vtt
7.0 kB
4. Mapping and Outputting/3. Counting Big Data Items.vtt
6.9 kB
15. Module 2 - Chapter 1 SparkSQL Introduction/2. Introducing SparkSQL.vtt
6.8 kB
41. Decision Trees/3. Interpreting a Decision Tree.vtt
6.8 kB
4. Mapping and Outputting/4. If you've had a NotSerializableException in Spark.vtt
6.7 kB
43. Recommender Systems/1. Overview and Matrix Factorisation.vtt
6.6 kB
13. Big Data Big Exercise/11. Walkthrough - Step 9, adding titles and using the Big Data file.vtt
6.3 kB
34. Training Data/2. Using data from Kaggle.vtt
6.3 kB
11. Deploying to AWS EMR (Optional)/4. Understanding the Job Progress Output.vtt
6.1 kB
34. Training Data/4. Splitting Training Data with Random Splits.vtt
5.9 kB
34. Training Data/1. Training vs Test and Holdout Data.vtt
5.9 kB
28. User Defined Functions/2. Using more than one input parameter in Spark UDF.vtt
5.7 kB
4. Mapping and Outputting/2. Outputting Results to the Console.vtt
5.6 kB
6. PairRDDs/5. Grouping By Key.vtt
5.6 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/4. Integrating Kafka with Spark.vtt
5.5 kB
13. Big Data Big Exercise/1. Introducing the Requirements.vtt
5.5 kB
7. FlatMaps and Filters/2. Filters.vtt
5.4 kB
1. Introduction/3. Module 1 - Introduction.vtt
5.4 kB
11. Deploying to AWS EMR (Optional)/5. Calculating EMR costs and Terminating the cluster.vtt
5.3 kB
10. Sorts and Coalesce/3. What is Coalesce used for in Spark.vtt
5.2 kB
13. Big Data Big Exercise/4. Walkthrough - Step 2.vtt
5.1 kB
36. Feature Selection/4. Data Preparation.vtt
4.9 kB
34. Training Data/3. Practical Walkthrough.vtt
4.9 kB
32. Module 3 - SparkML for Machine Learning/2. What is Machine Learning.vtt
4.8 kB
13. Big Data Big Exercise/8. Walkthrough - Step 6.vtt
4.3 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/7. SparkUI for Streaming Jobs.vtt
4.2 kB
12. Joins/4. Full Joins and Cartesians.vtt
4.2 kB
17. Datasets/3. Filters using Lambdas.vtt
4.1 kB
12. Joins/3. Right Outer Joins.vtt
4.1 kB
1. Introduction/1. Welcome.vtt
4.0 kB
32. Module 3 - SparkML for Machine Learning/3. Coming up in this Module - and introducing Kaggle.vtt
3.5 kB
13. Big Data Big Exercise/9. Walkthrough - Step 7.vtt
3.0 kB
13. Big Data Big Exercise/7. Walkthrough - Step 5.vtt
3.0 kB
30. HashAggregation/4. SQL vs DataFrames Performance Results.vtt
2.7 kB
13. Big Data Big Exercise/10. Walkthrough - Step 8.vtt
2.6 kB
13. Big Data Big Exercise/6. Walkthrough - Step 4.vtt
2.2 kB
45. Streaming Chapter 2 - Streaming with Apache Kafka/7. Adding a Window.vtt
1.9 kB
2. Getting Started/1. Warning - Java 91011 is not supported by Spark.html
1.3 kB
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/3.1 LoggingServer.zip.zip
560 Bytes
1. Introduction/2. Downloading the Code.html
447 Bytes
15. Module 2 - Chapter 1 SparkSQL Introduction/1. Code for SQLDataFrames Section.html
446 Bytes
44. Module 4 -Spark Streaming and Structured Streaming with Kafka/1. Welcome to Module 4 - Spark Streaming.html
345 Bytes
32. Module 3 - SparkML for Machine Learning/1. Welcome to Module 3.html
282 Bytes
40. Logistic Regression/1. Code for chapters 9-12.html
188 Bytes
随机展示
相关说明
本站不存储任何资源内容,只收集BT种子元数据(例如文件名和文件大小)和磁力链接(BT种子标识符),并提供查询服务,是一个完全合法的搜索引擎系统。 网站不提供种子下载服务,用户可以通过第三方链接或磁力链接获取到相关的种子资源。本站也不对BT种子真实性及合法性负责,请用户注意甄别!